Image Title

Search Results for Meta:

Gayatree Ganu, Meta | WiDS 2023


 

(upbeat music) >> Hey everyone. Welcome back to "The Cube"'s live coverage of "Women in Data Science 2023". As every year we are here live at Stanford University, profiling some amazing women and men in the fields of data science. I have my co-host for this segment is Hannah Freitag. Hannah is from Stanford's Data Journalism program, really interesting, check it out. We're very pleased to welcome our first guest of the day fresh from the keynote stage, Gayatree Ganu, the VP of Data Science at Meta. Gayatree, It's great to have you on the program. >> Likewise, Thank you for having me. >> So you have a PhD in Computer Science. You shared some really cool stuff. Everyone knows Facebook, everyone uses it. I think my mom might be one of the biggest users (Gayatree laughs) and she's probably watching right now. People don't realize there's so much data behind that and data that drives decisions that we engage with. But talk to me a little bit about you first, PhD in Computer Science, were you always, were you like a STEM kid? Little Gayatree, little STEM, >> Yeah, I was a STEM kid. I grew up in Mumbai, India. My parents are actually pharmacists, so they were not like math or stats or anything like that, but I was always a STEM kid. I don't know, I think it, I think I was in sixth grade when we got our first personal computer and I obviously used it as a Pacman playing machine. >> Oh, that's okay. (all laugh) >> But I was so good at, and I, I honestly believe I think being good at games kind of got me more familiar and comfortable with computers. Yeah. I think I always liked computers, I, yeah. >> And so now you lead, I'm looking at my notes here, the Engagement Ecosystem and Monetization Data Science teams at Facebook, Meta. Talk about those, what are the missions of those teams and how does it impact the everyday user? >> Yeah, so the engagement is basically users coming back to our platform more, there's, no better way for users to tell us that they are finding value on the things that we are doing on Facebook, Instagram, WhatsApp, all the other products than coming back to our platform more. So the Engagement Ecosystem team is looking at trends, looking at where there are needs, looking at how users are changing their behaviors, and you know, helping build strategy for the long term, using that data knowledge. Monetization is very different. You know, obviously the top, top apex goal is have a sustainable business so that we can continue building products for our users. And so, but you know, I said this in my keynote today, it's not about making money, our mission statement is not, you know, maximize as much money as you can make. It's about building a meaningful connection between businesses, customers, users, and, you know especially in these last two or three funky, post-pandemic years, it's been such a big, an important thing to do for small businesses all over all, all around the world for users to find like goods and services and products that they care about and that they can connect to. So, you know, there is truly an connection between my engagement world and the monetization world. And you know, it's not very clear always till you go in to, like, you peel the layers. Everything we do in the ads world is also always first with users as our, you know, guiding principle. >> Yeah, you mentioned how you supported especially small businesses also during the pandemic. You touched a bit upon it in the keynote speech. Can you tell our audience what were like special or certain specific programs you implemented to support especially small businesses during these times? >> Yeah, so there are 200 million businesses on our platform. A lot of them small businesses, 10 million of them run ads. So there is a large number of like businesses on our platform who, you know use the power of social media to connect to the customers that matter to them, to like you, you know use the free products that we built. In the post-pandemic years, we built a lot of stuff very quickly when Covid first hit for business to get the word out, right? Like, they had to announce when special shopping hours existed for at-risk populations, or when certain goods and services were available versus not. We had grants, there's $100 million grant that we gave out to small businesses. Users could show sort of, you know show their support with a bunch of campaigns that we ran, and of course we continue running ads. Our ads are very effective, I guess, and, you know getting a very reliable connection with from the customer to the business. And so, you know, we've run all these studies. We support, I talked about two examples today. One of them is the largest black-owned, woman black-owned wine company, and how they needed to move to an online program and, you know, we gave them a grant, and supported them through their ads campaign and, you know, they saw 60% lift in purchases, or something like that. So, a lot of good stories, small stories, you know, on a scale of 200 million, that really sort of made me feel proud about the work we do. And you know, now more than ever before, I think people can connect so directly with businesses. You can WhatsApp them, I come from India, every business is on WhatsApp. And you can, you know, WhatsApp them, you can send them Facebook messages, and you can build this like direct connection with things that matter to you. >> We have this expectation that we can be connected anywhere. I was just at Mobile World Congress for MWC last week, where, obviously talking about connectivity. We want to be able to do any transaction, whether it's post on Facebook or call an Uber, or watch on Netflix if you're on the road, we expect that we're going to be connected. >> Yeah. >> And what we, I think a lot of us don't realize I mean, those of us in tech do, but how much data science is a facilitator of all of those interactions. >> Yeah! >> As we, Gayatree, as we talk about, like, any business, whether it is the black women-owned wine business, >> Yeah. >> great business, or a a grocer or a car dealer, everybody has to become data-driven. >> Yes. >> Because the consumer has the expectation. >> Yes. >> Talk about data science as a facilitator of just pretty much everything we are doing and conducting in our daily lives. >> Yeah, I think that's a great question. I think data science as a field wasn't really defined like maybe 15 years ago, right? So this is all in our lifetimes that we are seeing this. Even in data science today, People come from so many different backgrounds and bring their own expertise here. And I think we, you know, this conference, all of us get to define what that means and how we can bring data to do good in the world. Everything you do, as you said, there is a lot of data. Facebook has a lot of data, Meta has a lot of data, and how do we responsibly use this data? How do we use this data to make sure that we're, you know representing all diversity? You know, minorities? Like machine learning algorithms don't do well with small data, they do well with big data, but the small data matters. And how do you like, you know, bring that into algorithms? Yeah, so everything we do at Meta is very, very data-driven. I feel proud about that, to be honest, because while data gets a bad rap sometimes, having no data and making decisions in the blind is just the absolute worst thing you can do. And so, you know, we, the job as a data scientist at Facebook is to make sure that we use this data, use this responsibly, make sure that we are representing every aspect of the, you know, 3 billion users who come to our platform. Yeah, data serves all the products that we build here. >> The responsibility factor is, is huge. You know, we can't talk about AI without talking about ethics. One of the things that I was talking with Hannah and our other co-host, Tracy, about during our opening is something I just learned over the weekend. And that is that the CTO of ChatGPT is a woman. (Gayatree laughs) I didn't know that. And I thought, why isn't she getting more awareness? There's a lot of conversations with their CEO. >> Yeah. >> Everyone's using it, playing around with it. I actually asked it yesterday, "What's hot in Data Science?" (all laugh) I was like, should I have asked that to let itself in, what's hot? (Gayatree laughs) But it, I thought that was phenomenal, and we need to be talking about this more. >> Yeah. >> This is something that they're likening to the launch of the iPhone, which has transformed our lives. >> I know, it is. >> ChatGPT, and its chief technologist is a female, how great is that? >> And I don't know whether you, I don't know the stats around this, but I think CTO is even less, it's even more rare to have a woman there, like you have women CEOs because I mean, we are building upon years and years of women not choosing technical fields and not choosing STEM, and it's going to take some time, but yeah, yeah, she's a woman. Isn't it amazing? It's wonderful. >> Yes, there was a great, there's a great "Fast Company" article on her that I was looking at yesterday and I just thought, we need to do what we can to help spread, Mira Murati is her name, because what she's doing is, one of the biggest technological breakthroughs we may ever see in our lifetime. It gives me goosebumps just thinking about it. (Gayatree laughs) I also wanted to share some stats, oh, sorry, go ahead, Hannah. >> Yeah, I was going to follow up on the thing that you mentioned that we had many years with like not enough women choosing a career path in STEM and that we have to overcome this trend. What are some, like what is some advice you have like as the Vice-President Data Science? Like what can we do to make this feel more, you know, approachable and >> Yeah. >> accessible for women? >> Yeah, I, there's so much that we have done already and you know, want to continue, keep doing. Of course conferences like these were, you know and I think there are high school students here there are students from my Alma Mater's undergrad year. It's amazing to like get all these women together to get them to see what success could look like. >> Yeah. >> What being a woman leader in this space could look like. So that's, you know, that's one, at Meta I lead recruiting at Meta and we've done a bunch to sort of open up the thinking around data science and technical jobs for women. Simple things like what you write in your job description. I don't know whether you know this, or this is a story you've heard before, when you see, when you have a job description and there are like 10 things that you need to, you know be good at to apply to this job, a woman sees those 10 and says, okay, I don't meet the qualifications of one of them and she doesn't apply. And a man sees one that he meets the qualifications to and he applies. And so, you know, there's small things you can do, and just how you write your job description, what goals you set for diversity and inclusion for your own organization. We have goals, Facebook's always been pretty up there in like, you know, speaking out for diversity and Sheryl Sandberg has been our Chief Business Officer for a very long time and she's been, like, amazing at like pushing from more women. So yeah, every step of the way, I think, we made a lot of progress, to be honest. I do think women choose STEM fields a lot more than they did. When I did my Computer Science I was often one of one or two women in the Computer Science class. It takes some time to, for it to percolate all the way to like having more CTOs and CEOs, >> Yeah. >> but it's going to happen in our lifetime, and you know, three of us know this, women are going to rule the world, and it (laughs) >> Drop the mic, girl! >> And it's going to happen in our lifetime, so I'm excited about it. >> And we have responsibility in helping make that happen. You know, I'm curious, you were in STEM, you talked about Computer Science, being one of the only females. One of the things that the nadb.org data from 2022 showed, some good numbers, the number of women in technical roles is now 27.6%, I believe, so up from 25, it's up in '22, which is good, more hiring of women. >> Yeah. >> One of the biggest challenges is attrition. What keeps you motivated? >> Yeah. >> To stay what, where you are doing what you're doing, managing a family and helping to drive these experiences at Facebook that we all expect are just going to happen? >> Yeah, two things come to mind. It does take a village. You do need people around you. You know, I'm grateful for my husband. You talked about managing a family, I did the very Indian thing and my parents live with us, and they help take care of the kids. >> Right! (laughs) >> (laughs) My kids are young, six and four, and I definitely needed help over the last few years. It takes mentors, it takes other people that you look up to, who've gone through all of those same challenges and can, you know, advise you to sort of continue working in the field. I remember when my kid was born when he was six months old, I was considering quitting. And my husband's like, to be a good role model for your children, you need to continue working. Like, just being a mother is not enough. And so, you know, so that's one. You know, the village that you build around you your supporters, your mentors who keep encouraging you. Sheryl Sandberg said this to me in my second month at Facebook. She said that women drop out of technical fields, they become managers, they become sort of administrative more, in their nature of their work, and her advice was, "Don't do that, Don't stop the technical". And I think that's the other thing I'd say to a lot of women. Technical stuff is hard, but you know, keeping up with that and keeping sort of on top of it actually does help you in the long run. And it's definitely helped me in my career at Facebook. >> I think one of the things, and Hannah and I and Tracy talked about this in the open, and I think you'll agree with us, is the whole saying of you can't be what you can't see, and I like to way, "Well, you can be what you can see". That visibility, the great thing that WiDS did, of having you on the stage as a speaker this morning so people can understand, everyone, like I said, everyone knows Meta, >> Yeah. >> everyone uses Facebook. And so it's important to bring that connection, >> Yeah. >> of how data is driving the experiences, the fact that it's User First, but we need to be able to see women in positions, >> Yes. >> like you, especially with Sheryl stepping down moving on to something else, or people that are like YouTube influencers, that have no idea that the head of YouTube for a very long time, Susan Wojcicki is a woman. >> (laughs) Yes. Who pioneered streaming, and I mean how often do you are you on YouTube every day? >> Yep, every day. >> But we have to be able to see and and raise the profile of these women and learn from them and be inspired, >> Absolutely. >> to keep going and going. I like what I do, I'm making a difference here. >> Yeah, yeah, absolutely. >> And I can be the, the sponsor or the mentor for somebody down the road. >> Absolutely. >> Yeah, and then referring back to what we talked in the beginning, show that data science is so diverse and it doesn't mean if you're like in IT, you're like sitting in your dark room, >> Right. (laughs) >> coding all day, but you know, >> (laughs) Right! >> to show the different facets of this job and >> Right! >> make this appealing to women, >> Yeah. for sure. >> And I said this in my keynote too, you know, one of the things that helped me most is complimenting the data and the techniques and the algorithms with how you work with people, and you know, empathy and alignment building and leadership, strategic thinking. And I think honestly, I think women do a lot of this stuff really well. We know how to work with people and so, you know, I've seen this at Meta for sure, like, you know, all of these skills soft skills, as we call them, go a long way, and like, you know, doing the right things and having a lasting impact. And like I said, women are going to rule the world, you know, in our lifetimes. (laughs) >> Oh, I can't, I can't wait to see that happen. There's some interesting female candidates that are already throwing their hats in the ring for the next presidential election. >> Yes. >> So we'll have to see where that goes. But some of the things that are so interesting to me, here we are in California and Palo Alto, technically Stanford is its own zip code, I believe. And we're in California, we're freaking out because we've gotten so much rain, it's absolutely unprecedented. We need it, we had a massive drought, an extreme drought, technically, for many years. I've got friends that live up in Tahoe, I've been getting pictures this morning of windows that are >> (laughs) that are covered? >> Yes, actually, yes. (Gayatree laughs) That, where windows like second-story windows are covered in snow. >> Yeah. >> Climate change. >> Climate change. >> There's so much that data science is doing to power and power our understanding of climate change whether it's that, or police violence. >> Yeah. (all talk together) >> We had talk today on that it was amazing. >> Yes. So I want more people to know what data science is really facilitating, that impacts all of us, whether you're in a technical role or not. >> And data wins arguments. >> Yes, I love that! >> I said this is my slide today, like, you know, there's always going to be doubters and naysayers and I mean, but there's hard evidence, there's hard data like, yeah. In all of these fields, I mean the data that climate change, the data science that we have done in the environmental and climate change areas and medical, and you know, medicine professions just so much, so much more opportunity, and like, how much we can learn more about the world. >> Yeah. >> Yeah, it's a pretty exciting time to be a data scientist. >> I feel like, we're just scratching the surface. >> Yeah. >> With the potential and the global impact that we can make with data science. Gayatree, it's been so great having you on theCUBE, thank you. >> Right, >> Thank you so much, Gayatree. >> So much, I love, >> Thank you. >> I'm going to take Data WiD's arguments into my personal life. (Gayatree laughs) I was actually just, just a quick anecdote, funny story. I was listening to the radio this morning and there was a commercial from an insurance company and I guess the joke is, it's an argument between two spouses, and the the voiceover comes in and says, "Let's watch a replay". I'm like, if only they, then they got the data that helped the woman win the argument. (laughs) >> (laughs) I will warn you it doesn't always help with arguments I have with my husband. (laughs) >> Okay, I'm going to keep it in the middle of my mind. >> Yes! >> Gayatree, thank you so much. >> Thank you so much, >> for sharing, >> Thank you both for the opportunity. >> And being a great female that we can look up to, we really appreciate your insights >> Oh, likewise. >> and your time. >> Thank you. >> All right, for our guest, for Hannah Freitag, I'm Lisa Martin, live at Stanford University covering "Women in Data Science '23". Stick around, our next guest joins us in just a minute. (upbeat music) I have been in the software and technology industry for over 12 years now, so I've had the opportunity as a marketer to really understand and interact with customers across the entire buyer's journey. Hi, I'm Lisa Martin and I'm a host of theCUBE. (upbeat music) Being a host on theCUBE has been a dream of mine for the last few years. I had the opportunity to meet Jeff and Dave and John at EMC World a few years ago and got the courage up to say, "Hey, I'm really interested in this. I love talking with customers, gimme a shot, let me come into the studio and do an interview and see if we can work together". I think where I really impact theCUBE is being a female in technology. We interview a lot of females in tech, we do a lot of women in technology events and one of the things I.

Published Date : Mar 8 2023

SUMMARY :

in the fields of data science. and data that drives and I obviously used it as a (all laugh) and comfortable with computers. And so now you lead, I'm and you know, helping build Yeah, you mentioned how and you can build this I was just at Mobile World a lot of us don't realize has to become data-driven. has the expectation. and conducting in our daily lives. And I think we, you know, this conference, And that is that the CTO and we need to be talking about this more. to the launch of the iPhone, which has like you have women CEOs and I just thought, we on the thing that you mentioned and you know, want to and just how you write And it's going to One of the things that the One of the biggest I did the very Indian thing and can, you know, advise you to sort of and I like to way, "Well, And so it's important to bring that have no idea that the head of YouTube and I mean how often do you I like what I do, I'm Yeah, yeah, for somebody down the road. (laughs) Yeah. and like, you know, doing the right things that are already throwing But some of the things that are covered in snow. There's so much that Yeah. on that it was amazing. that impacts all of us, and you know, medicine professions to be a data scientist. I feel like, and the global impact and I guess the joke is, (laughs) I will warn you I'm going to keep it in the and one of the things I.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Susan WojcickiPERSON

0.99+

Lisa MartinPERSON

0.99+

HannahPERSON

0.99+

Mira MuratiPERSON

0.99+

CaliforniaLOCATION

0.99+

TracyPERSON

0.99+

FacebookORGANIZATION

0.99+

Hannah FreitagPERSON

0.99+

Sheryl SandbergPERSON

0.99+

10QUANTITY

0.99+

GayatreePERSON

0.99+

$100 millionQUANTITY

0.99+

JeffPERSON

0.99+

27.6%QUANTITY

0.99+

60%QUANTITY

0.99+

TahoeLOCATION

0.99+

threeQUANTITY

0.99+

SherylPERSON

0.99+

oneQUANTITY

0.99+

Palo AltoLOCATION

0.99+

2022DATE

0.99+

OneQUANTITY

0.99+

IndiaLOCATION

0.99+

200 millionQUANTITY

0.99+

six monthsQUANTITY

0.99+

sixQUANTITY

0.99+

MetaORGANIZATION

0.99+

10 thingsQUANTITY

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

two spousesQUANTITY

0.99+

Engagement EcosystemORGANIZATION

0.99+

10 millionQUANTITY

0.99+

yesterdayDATE

0.99+

todayDATE

0.99+

last weekDATE

0.99+

25QUANTITY

0.99+

Mumbai, IndiaLOCATION

0.99+

YouTubeORGANIZATION

0.99+

JohnPERSON

0.99+

fourQUANTITY

0.99+

two examplesQUANTITY

0.99+

UberORGANIZATION

0.99+

DavePERSON

0.99+

over 12 yearsQUANTITY

0.98+

firstQUANTITY

0.98+

two thingsQUANTITY

0.98+

200 million businessesQUANTITY

0.98+

StanfordORGANIZATION

0.98+

bothQUANTITY

0.98+

InstagramORGANIZATION

0.98+

Women in Data Science 2023TITLE

0.98+

WhatsAppORGANIZATION

0.98+

Gayatree GanuPERSON

0.98+

ChatGPTORGANIZATION

0.98+

second monthQUANTITY

0.97+

nadb.orgORGANIZATION

0.97+

sixth gradeQUANTITY

0.97+

first guestQUANTITY

0.97+

'22DATE

0.97+

Ryan Gill, Open Meta | Monaco Crypto Summit 2022


 

[Music] hello everyone welcome back to the live coverage here in monaco for the monaco crypto summit i'm john furrier host of thecube uh we have a great great guest lineup here already in nine interviews small gathering of the influencers and the people making it happen powered by digital bits sponsored by digital bits presented by digital bits of course a lot happening around decentralization web 3 the metaverse we've got a a powerhouse influencer on the qb ryan gills the founder of openmeta been in the issue for a while ryan great to see you thanks for coming on great to be here thank you you know one of the things that we were observing earlier conversations is you have young and old coming together the best and brightest right now in the front line it's been there for a couple years you know get some hype cycles going on but that's normal in these early growth markets but still true north star is in play that is democratize remove the intermediaries create immutable power to the people the same kind of theme has been drum beating on now come the metaverse wave which is the nfts now the meta verses you know at the beginning of this next wave yeah this is where we're at right now what are you working on tell us what's what's open meta working on yeah i mean so there is a reason for all of this right i think we go through all these different cycles and there's an economic incentive engine and it's designed in because people really like making money but there's a deeper reason for it all and the words the buzzwords the terms they change based off of different cycles this one is a metaverse i just saw it a little early you know so i recognized the importance of an open metaverse probably in 2017 and really decided to dedicate 10 years to that um so we're very early into that decade and we're starting to see more of a movement building and uh you know i've catalyzed a lot of that from from the beginning and making sure that while everything moves to a closed corporate side of things there's also an equal bottom-up approach which i think is just more important and more interesting well first of all i want to give you a lot of props for seeing it early and recognizing the impact and potential collateral damage of not not having open and i was joking earlier about the facebook little snafu with the the exercise app and ftc getting involved and you know i kind of common new york times guy comment online like hey i remember aol wanted to monopolize dial up internet and look the open web obviously changed all that they went to sign an extinction not the same comparable here but you know everyone wants to have their own little walled guard and they feel comfortable first-party data the data business so balancing the benefit of data and all the ip that could come into whether it's a visualization or platform it has to be open without open then you're going to have fragmentation you're going to have all kinds of perverse incentives how does the metaverse continue with such big players like meta themselves x that new name for facebook you know big bully tons of cash you know looking to you know get their sins forgiven um so to speak i mean you got google probably will come in apple's right around the corner amazon you get the whales out there how do is it proprietary is walled garden the new proprietary how do you view all that because it's it's still early and so there's a lot of change can happen well it's an interesting story that's really playing out in three acts right we had the first act which was really truly open right there was this idea that the internet is for the end user this is all just networking and then web 2 came and we got a lot of really great business models from it and it got closed up you know and now as we enter this sort of third act we have the opportunity to learn from both of those right and so i think web 3 needs to go back to the values of web one with the lessons in hindsight of web 2. and all of the winners from web 2 are clearly going to want to keep winning in web 3. so you can probably guess every single company and corporation on earth will move into this i think most governments will move into it as well and um but they're not the ones that are leading it the ones that are leading it are are just it's a culture of people it's a movement that's building and accumulating over time you know it's weird it's uh the whole web 2 thing is the history is interesting because you know when i started my podcasting company in 2004 there's only like three of us you know the dave weiner me evan williams and jack dorsey and we thought and the blogging just was getting going and the dream was democratization at the time mainstream media was the enemy and then now blogs are media so and then all sudden it like maybe it was the 2008 area with the that recession it stopped and then like facebook came in obviously twitter was formed from the death of odio podcasting company so the moment in time in history was a glimmic glimmer of hope well we went under my company went under we all went under but then that ended and then you had the era of twitter facebook linkedin reddit was still around so it kind of stopped where did it where did it pick up was it the ethereum bitcoin and ethereum brought that back where'd the open come back well it's a generational thing if you if you go back to like you know apple as a startup they were trying to take down ibm right it was always there's always the bigger thing that was that we we're trying to sort of unbundle or unpackage because they have too much power they have too much influence and now you know facebook and apple and these big tech companies they are that on on the planet and they're doing it bigger than it's ever been done but when they were startups they existed to try to take that from a bigger company so i think you know it's not an it's not a fact that like facebook or zuckerberg is is the villain here it's just the fact that we're reaching peak centralization anything past this point it becomes more and more unhealthy right and an open metaverse is just a way to build a solution instead of more of a problem and i think if we do just allow corporations to build and own them on the metaverse these problems will get bigger and larger more significant they will touch more people on earth and we know what that looks like so why not try something different so what's the playbook what's the current architecture of the open meta verse that you see and how do people get involved is there protocols to be developed is there new things that are needed how does the architecture layout take us through that your mindset vision on that and then how can people get involved yeah so the the entity structure of what i do is a company called crucible out of the uk um but i i found out very quickly that just a purely for-profit closed company a commercial company won't achieve this objective there's limitations to that so i run a dao as well out of switzerland it's called open meta we actually we named it this six months before facebook changed their name and so this is just the track we're on right and what we develop is a protocol uh we believe that the internet built by game developers is how you define the metaverse and that protocol is in the dao it is in the dow it's that's crucial crucible protocol open meta okay you can think of crucible as labs okay no we're building we're building everything so incubator kind of r d kind of thing exactly yeah and i'm making the choice to develop things and open them up create public goods out of them harness things that are more of a bottom-up approach you know and what we're developing is the emergence protocol which is basically defining the interface between the wallets and the game engines right so you have unity and unreal which all the game developers are sort of building with and we have built software that drops into those game engines to map ownership between the wallet and the experience in the game so integration layer basically between the wallet kind of how stripe is viewed from a software developer's campaign exactly but done on open rails and being done for a skill set of world building that is coming and game developers are the best suited for this world building and i like to own what i built yeah i don't like other people to own what i build and i think there's an entire generation that's that's really how do you feel about the owning and sharing component is that where you see the scale coming into play here i can own it and scale it through the relationship of the open rails yeah i mean i think the truth is that the open metaverse will be a smaller network than even one corporate virtual world for a while because these companies have billions of people right yeah every room you've ever been in on earth people are using two or three of facebook's products right they just have that adoption but they don't have trust they don't have passion they don't have the movement that you see in web3 they don't have the talent the level of creative talent those people care about owning what they create on the on what can someone get involved with question is that developer is that a sponsor what do people do to get involved with do you and your team and to make it bigger i mean it shouldn't be too small so if this tracks you can assume it gets bigger if you care about an open metaverse you have a seat at the table if you become a member of the dao you have a voice at the table you can make decisions with us we are building developing technology that can be used openly so if you're a game developer and you use unity or unreal we will open the beta this month later and then we move directly into what's called a game jam so a global hackathon for game developers where we just go through a giant exploration of what is possible i mean you think about gaming i always said the early adopters of all technology and the old web one was porn and that was because they were they were agnostic of vendor pitches or whatever is it made money they've worked we don't tell them we've always been first we don't tolerate vaporware gaming is now the new area where it is so the audience doesn't want vapor they want it to work they want technology to be solid they want community so it's now the new arbiter so gaming is the pretext to metaverse clearly gaming is swallowing all of media and probably most of the world and this game mechanics under the hood and all kinds of underlying stuff now how does that shape the developer community so like take the classic software developer may not be a game developer how do they translate over you seeing crossover from the software developers that are out there to be game developers what's your take on that it's an interesting question because i come to a lot of these events and the entire web 3 movement is web developers it's in the name yeah right and we have a whole wave of exploration and nfts being sold of people who really love games they're they're players they're gamers and they're fans of games but they are not in the skill set of game development this is a whole discipline yeah it's a whole expertise right you have to understand ik retargeting rigging bone meshes and mapping of all of that stuff and environment building and rendering and all these things it's it's a stacked skill set and we haven't gone through any exploration yet with them that is the next cycle that we're going to and that's what i've spent the last three or four years preparing for yeah and getting the low code is going to be good i was saying earlier to the young gun we had on his name was um oscar belly he's argo versus he's 25 years old he's like he made a quote i'm too old to get into esports like 22 old 25 come on i'd love to be in esports i was commenting that there could be someone sitting next to us in the metaverse here on tv on our digital tv program in the future that's going to be possible the first party citizenship between physical experience absolutely and meta versus these cameras all are a layer in which you can blend the two yeah so that that's that's going to be coming sooner and it's really more of the innovation around these engines to make it look real and have someone actually moving their body not like a stick figure yes or a lego block this is where most people have overlooked because what you have is you have two worlds you have web 3 web developers who see this opportunity and are really going for it and then you have game developers who are resistant to it for the most part they have not acclimated to this but the game developers are more of the keys to it because they understand how to build worlds yeah they do they understand how to build they know what success looks like they know what success looks like if you if you talk about the metaverse with anyone the most you'll hear is ready player one yeah maybe snow crash but those things feel like games yeah right so the metaverse and gaming are so why are game developers um like holding back is because they're like ah it's too not ready yet i'm two more elite or is it more this is you know this is an episode on its own yeah um i'm actually a part of a documentary if you go to youtube and you say why gamers hate nfts there's a two-part documentary about an hour long that robin schmidt from the defiant did and it's really a very good deep dive into this but i think we're just in a moment in time right now if you remember henry ford when he he produced the car everybody wanted faster horses yeah they didn't understand the cultural shift that was happening they just wanted an incremental improvement right and you can't say that right now because it sounds arrogant but i do believe that this is a moment in time and i think once we get through this cultural shift it will be much more clear why it's important it's not pure speculation yeah it's not clout it's not purely money there's something happening that's important for humanity yeah and if we don't do it openly it will be more of a problem yeah i totally agree with you on that silent impact is number one and people some people just don't see it because it's around the corner visionaries do like yourselves we do my objective over the next say three to six months is to identify which game developers see the value in web 3 and are leaning into it because we've built technology that solves interoperability between engines mapping ownership from wallets all the sort of blueprints that are needed in order for a game developer to build this way we've developed that we just need to identify where are they right because the loudest voices are the ones that are pushing back against this yeah and if you're not on twitter you don't see how many people really see this opportunity and i talked to epic and unity and nvidia and they all agree that this is where the future is going but the one question mark is who wants it where are they you know it's interesting i talked to lauren besel earlier she's from the music background we were talking about open source and how music i found that is not open it's proprietary i was talking about when i was in college i used to deal software you'd be like what do you mean deal well at t source code was proprietary and that started the linux movement in the 80s that became a systems revolution and then open source then just started to accelerate now people like it's free software is like not a big deal everyone knows it's what it was never proprietary but we were fighting the big proprietary code bases you mentioned that earlier is there a proprietary thing for music well not really because it's licensed rights right so in the metaverse who's the proprietary is it the walled garden is the is it is it the gamers so is it the consoles is it the investment that these gaming companies have in the software itself so i find that that open source vibe is very much circulating around your world actually open maps in the word open but open source software has a trajectory you know foundations contributors community building same kind of mindset music not so much because no one's it's not direct comparable but i think here it's interesting the gaming culture could be that that proprietary ibm the the state the playstation the xbox you know if you dive into the modding community right the modding community has sort of been this like gray area of of gaming and they will modify games that already exist but they do it with the values of open source they do it with composability and there's been a few breakthroughs counter-strike is a mod right some of the largest games of all time came from mods of other games look at quake had a comeback i played first multiplayer doom when it came out in the 90s and that was all mod based exactly yeah quake and quake was better but you know i remember the first time on a 1.5 cable mode and playing with my friends remember vividly now the graphics weren't that good but that was mod it's mod so then you go i mean and then you go into these other subcultures like dungeons and dragons which was considered to be such a nerdy thing but it's just a deeply human thing it's a narrative building collective experience like these are all the bottom-up type approaches modding uh world building so you're going to connect so i'm just kind of thinking out loud here you're going to connect the open concept of source with open meta bring game developers and software drills together create a fabric of a baseline somewhat somewhat collected platform tooling and components and let it just sell form see what happens better self form that's your imposing composability is much faster yeah than a closed system and you got what are your current building blocks you have now you have the wallet and you have so we built an sdk on both unity and unreal okay as a part of a system that is a protocol that plugs into those two engines and we have an inventory service we have an avatar system we basically kind of leaned into this idea of a persona being the next step after a pfp so so folks that are out there girls and boys who are sitting there playing games they could build their own game on this thing absolutely this is the opportunity for them entrepreneurs to circumvent the system and go directly with open meta and build their own open environment like i said before i i like to own the things i built i've had that entrepreneurial lesson but i don't think in the future you should be so okay with other companies or other intermediaries owning you and what you build i think i mean opportunity to build value yeah and i think i think your point the mod culture is not so much going to be the answer it's what that was like the the the the dynamic of modding yes is developing yes and then therefore you get the benefit of sovereign identity yeah you get the benefit of unbanking that's not the way we market this but those are benefits that come along with it and it allows you to live a different life and may the better product win yeah i mean that's what you're enabling yeah ryan thanks so much for coming on real final question what's going on here why are we here in monaco what's going on this is the inaugural event presented by digital bits why are we here monaco crypto summit i'm here uh some friends of mine brittany kaiser and and lauren bissell invited me here yeah i've known al for for a number of years and i'm just here to support awesome congratulations and uh we'll keep in touch we'll follow up on the open meta great story we love it thanks for coming on okay cube coverage continues here live in monaco i'm john furrier and all the action here on the monaco crypto summit love the dame come back next year it'll be great back with more coverage to wrap up here on the ground then the yacht club event we're going to go right there as well that's in a few hours so we're going to be right back [Music] you

Published Date : Aug 2 2022

SUMMARY :

the nfts now the meta verses you know at

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Ryan GillPERSON

0.99+

2017DATE

0.99+

2004DATE

0.99+

amazonORGANIZATION

0.99+

10 yearsQUANTITY

0.99+

brittany kaiserPERSON

0.99+

appleORGANIZATION

0.99+

25QUANTITY

0.99+

twoQUANTITY

0.99+

lauren beselPERSON

0.99+

john furrierPERSON

0.99+

threeQUANTITY

0.99+

two enginesQUANTITY

0.99+

two-partQUANTITY

0.99+

ryanPERSON

0.99+

facebookORGANIZATION

0.99+

bothQUANTITY

0.99+

first actQUANTITY

0.99+

lauren bissellPERSON

0.99+

ukLOCATION

0.98+

billions of peopleQUANTITY

0.98+

2008DATE

0.98+

six monthsQUANTITY

0.98+

evan williamsPERSON

0.98+

first timeQUANTITY

0.98+

xboxCOMMERCIAL_ITEM

0.98+

switzerlandLOCATION

0.98+

jack dorseyPERSON

0.97+

next yearDATE

0.97+

nine interviewsQUANTITY

0.97+

googleORGANIZATION

0.96+

openmetaORGANIZATION

0.96+

playstationCOMMERCIAL_ITEM

0.96+

ryan gillsPERSON

0.95+

twitterORGANIZATION

0.95+

hoursQUANTITY

0.95+

this month laterDATE

0.95+

oneQUANTITY

0.94+

third actQUANTITY

0.94+

one questionQUANTITY

0.94+

Monaco Crypto Summit 2022EVENT

0.94+

nvidiaORGANIZATION

0.94+

monacoEVENT

0.94+

youtubeORGANIZATION

0.94+

redditORGANIZATION

0.93+

earthLOCATION

0.93+

firstQUANTITY

0.93+

henry fordPERSON

0.92+

four yearsQUANTITY

0.92+

zuckerbergORGANIZATION

0.91+

25 years oldQUANTITY

0.91+

first partyQUANTITY

0.89+

new yorkLOCATION

0.89+

robin schmidtPERSON

0.89+

80sDATE

0.87+

90sDATE

0.83+

epicORGANIZATION

0.82+

both unityQUANTITY

0.82+

oscar bellyPERSON

0.81+

an hour longQUANTITY

0.81+

two worldsQUANTITY

0.79+

three actsQUANTITY

0.77+

1.5QUANTITY

0.76+

summitEVENT

0.75+

six months beforeDATE

0.75+

number oneQUANTITY

0.75+

quakeTITLE

0.75+

first multiplayerQUANTITY

0.73+

a number of yearsQUANTITY

0.73+

every single companyQUANTITY

0.73+

22 oldQUANTITY

0.71+

monaco crypto summitEVENT

0.68+

nextEVENT

0.67+

player oneQUANTITY

0.65+

tonsQUANTITY

0.64+

thingsQUANTITY

0.63+

a couple yearsQUANTITY

0.63+

aboutQUANTITY

0.62+

Joe Mikhail, Meta Co. | Accenture Lab's 30th Anniversary


 

>> Announcer: From The Computer History Museum in Mountain View, California, it's theCUBE On The Ground with Accenture Labs' 30th anniversary celebration. >> Welcome to a special CUBE On The Ground presentation of our coverage of Accenture Labs' 30th birthday party. They've been in business for 30 years. Accenture is doing some great things from here, 30 years ago, to the future. Future's all about AI, blockchain, you name it, virtual reality, augmented reality. I'm John Furrier with theCUBE. Our next guest is Joe Mikhail, who's the chief revenue officer of a company called Meta. Welcome to the conversation here at the Accenture Labs party. >> Thank you, John, and congratulations to Accenture. >> They have this theme, Magical, but really, it is a magical time. At my age, I've been in this business long enough, it's like I wish I was 20 again, because the technology is really amazing. Augmented reality, you guys do a lot of new stuff. Tell us what your company does, and you guys are doing some really cool stuff. >> Absolutely. We're really pioneering in augmented reality. For those who don't really understand augmented reality, it basically overlays digital data and virtual optics in the real world. With that comes, really, a change in paradigm of what's possible. Our forte is really in being a spatial interface company. We're not only changing the fidelity of the images you see in augmented reality, but how you interface with them, naturally based on neuroscience. >> Joe, first, take a step back, 'cause a lot of folks here in Silicon Valley, they all know what AR is, or augmented reality, something analyst relations work. But augmented reality is the big future. I always say AI stands for, not artificial intelligence, but augmented intelligence. That's what software's doing. What's your definition of augmented reality? >> Augmented reality is the ability to really change how man/machine interface around information, objects outside of 2D panels, and bringing the digital into our world. >> Let's talk about your company, Meta. You guys are doing some pretty cool stuff. Your CTO's not here, which, we'll get him on theCUBE soon. If you're watching, we'll get you on. But there's some cool stuff going on around visualization. I mean, we've covered big data since the day Hadoop was born 2009, 2010 timeframe. Visualization is key, but now, when you go to the next level, 3D, holograms, this is the future. The user interface is going to be augmented at work or at play. What are you guys doing? >> Absolutely, many things when it comes to data visualization. First of all, the third dimension, obviously adds a new way to see data, so, obviously, everything going from a 2D data analysis, you add a dimension, that gives you, obviously, added productivity. But in addition to that, you know, visualizing concepts. Mind-mapping, being able to correlate ideas, and not just data points. And, again, product design cycles and so on, productivity increases. Thirdly, ideation. Taking all that data, getting a 3D model with all its complexity into a simple form that we can collaborate around and design. >> You know, the next generation of users that are coming through the system, if you will, young kids, they're gamers. They love graphics. We're living in kind of a gaming culture, if you will, not to say gaming, literally, but per se, the interface is very rich in graphics, very rich in data. How is that going to impact CIOs? 'Cause they are looking at a old world of IT, put the servers on the racks, move the packets through the network. Now they have an opportunity with mobile, and now with global internet to put things out there like AR, like blockchain, smart contracts, AI. >> I think it's definitely an area that all CIOs should be looking at today, in many aspects. Number one, just like mobile, bring-your-own-device came into the office space. There will be, obviously, an impact from not just productivity solutions in the office, but as we get to consumer and AR, dealing with that and the implications of that. But, a more important, pressing issue for CIOs would be the fact that this is the future of compute. There is not a need anymore for 2D panels, or in the near future for 2D panels and keyboards and mouse interfaces, and how does that change IT support and, again, data sharing, collaboration, and all these-- >> And we see Siri, voice-activated, that's pretty classic. Throw the old movie Minority Report out there, where you're using your hands out there in the 3D space. This is an interface. >> Yes, it truly is. >> How real is that? I mean, come on, tell us! >> It's real, it's here, it's now. You can get a demo today for the audience. Soon, we can definitely invite you and get a demo. It is here. We're able to interact naturally today. We're on second-generation product. We have the widest field of view, which truly gives you immersion. You can walk around a hologram. You can stretch a hologram. You can surround yourselves with unlimited 3D images and panels and windows. >> So, what's the applications? What does this mean for the typical person out in the real world, whether they work in an enterprise, or a business, or a consumer? >> Absolutely. Early adopters right now are in business, enterprises. High-ROI type of applications and product design, so, rapidly iterating on concepts and ideas, getting all the way to sales and marketing, so once you have that design, then, how can you sell it and demonstrate it. All the way to maintenance, training, et cetera. That's the early adopters. Education is next, very close by. In the near future, and then, of course, we're thinking and trending towards consumers. What does shopping look like in the future? >> Check out Meta. It's a cool company. Now, Accenture Labs are having their party, and Accenture's been around for a while. I'm old enough to remember Arthur Andersen, the Big Six accounting firms, Accenture Consulting. These guys are not Johnny-come-latelies. They're doing some cool stuff. What's your role with Accenture Labs? You're on a panel here at this event, it's kind of a celebration. They're bringing the magic to life, talking about the magic of AI and cool things. What are you guys doing here, and what's Accenture Labs doing? >> Yeah, absolutely. We've been in collaboration with Accenture Labs for a little while, and it's been very, very exciting and productive. Number one, we're aligned on vision and strategy, so, currently, it's productivity. We're supporting productivity, we are going to develop a new platform, and so, for example, we've done a study together where we measured basic instructions around a LEGO, this was for the public, around building a LEGO piece used in our headset, using three-dimensional instructions versus 2D instructions, and Accenture brought that magic of quantifying productivity, and it was proved to be 20% faster with respect to instruction and training. >> So, Accenture has some chops, here, technically. >> Absolutely, absolutely. They do. (both laughing) And in the future, I mean, they're a big part of our ecosystem. This is what we're an enabler. We're a spatial interface-- >> What is the ecosystem for AI? That's a good question, 'cause people want to know, like, it's in a new, emerging area. Young kids are going to love this. New software development's coming in. What does the ecosystem look like in this new AR area, and what's the hiring profile? >> Yeah, that's a good question. Let me focus on ecosystem. I would say 50% of our current customers are developers, so the development community is adopting AR and they're building some really interesting and cool things. But the ecosystem comes from developers' content, so there's a lot of content developers, you know, high-fidelity 3D models. Enterprises are consuming all of this, and then channel partners, system integrators such as Accenture that are seeing the opportunity and bridging that gap for a lot of our corporate customers that are still forming their strategies. >> Joe Mikhail here, the chief revenue officer of Meta. I got to ask you, what percentage of your employees and customers are gamers? High amount, medium, low? Got to be a lot of gamers. >> There are some. Obviously, we integrate with Unity. A lot of our developers have come from that world, but our customers, we're a productivity company, and all of our customers are corporates at this time. Of course, we're interested to see what gamers can do on our platform. >> What's the low-hanging fruit for enterprise with respect to AR, because this is the question. No one debates the future. They see some augmentation coming on, obviously wearables, things of that nature, but software's going to power it all. What is the use case for enterprise? What's the low-hanging fruit? >> The lowest-hanging fruit is 3D CAD visualization in the product design cycle. That's just the lowest-hanging fruit right now. And then, training and education. >> You guys excited? >> We are very, very excited. The market's huge. >> All right, final question for you. For the folks that don't know the AR world, what is the future of AR going to be? What's the impact on society, what's the impact on daily lives of people with augmented reality? >> I think there are many, many impacts. One of our core values is technology serving humanity, so for us, it's very important to remove the barriers of devices coming between you and me, and being able to just look up content directly and interact with that. I think that's going to change how we think, how we collaborate, and then, of course, life sciences is huge, so there's a lot of companies starting to look at the future operating system, and the empathy that could come between a doctor and a patient looking at a case instead of just talking, you know? >> Joe, great, thanks for coming on. I'll give you a quick last word, here. What are you guys looking for as a company? You hiring, what's the strategy, what's the plan? Give a quick soundbite for what you guys are doing. >> Absolutely. We're growing. The market demand is huge, and we are hiring. We're looking for engineering, smart engineers that are interested in the space. We are growing on the sales and marketing side. We are absolutely interested in being part of our family, but I would say the biggest interest is in ecosystem partnerships. >> How long are you around for? >> Five years. >> Five years. Congratulations, Accenture Labs, 30 years celebration, where all the magic's happening, that's the theme. They got a magic show. We couldn't get video of that. They wouldn't let us record it. Joe from Meta, chief revenue officer, thanks for sharing your insight here on theCUBE. Appreciate it. >> Thanks, John. >> There'll be more coverage here at Accenture Labs' next 30 years. This is theCUBE coverage. We'll be right back. Thanks for watching. (upbeat music)

Published Date : Jul 19 2017

SUMMARY :

with Accenture Labs' 30th anniversary celebration. at the Accenture Labs party. and you guys are doing some really cool stuff. of the images you see in augmented reality, But augmented reality is the big future. and bringing the digital into our world. What are you guys doing? But in addition to that, you know, visualizing concepts. You know, the next generation of users the fact that this is the future of compute. Throw the old movie Minority Report out there, We have the widest field of view, What does shopping look like in the future? They're bringing the magic to life, and Accenture brought that magic And in the future, What is the ecosystem for AI? that are seeing the opportunity and bridging that gap Joe Mikhail here, the chief revenue officer of Meta. and all of our customers are corporates at this time. What is the use case for enterprise? in the product design cycle. We are very, very excited. For the folks that don't know the AR world, and the empathy that could come between What are you guys looking for as a company? smart engineers that are interested in the space. thanks for sharing your insight here on theCUBE. This is theCUBE coverage.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
2009DATE

0.99+

JohnPERSON

0.99+

Joe MikhailPERSON

0.99+

John FurrierPERSON

0.99+

SiriTITLE

0.99+

AccentureORGANIZATION

0.99+

JoePERSON

0.99+

Accenture LabsORGANIZATION

0.99+

30 yearsQUANTITY

0.99+

50%QUANTITY

0.99+

Accenture Labs'ORGANIZATION

0.99+

Silicon ValleyLOCATION

0.99+

20%QUANTITY

0.99+

Accenture ConsultingORGANIZATION

0.99+

Minority ReportTITLE

0.99+

Five yearsQUANTITY

0.99+

MetaORGANIZATION

0.99+

Accenture LabORGANIZATION

0.99+

HadoopPERSON

0.99+

20QUANTITY

0.99+

second-generationQUANTITY

0.99+

2010DATE

0.99+

LEGOORGANIZATION

0.99+

Mountain View, CaliforniaLOCATION

0.99+

todayDATE

0.99+

third dimensionQUANTITY

0.98+

firstQUANTITY

0.97+

FirstQUANTITY

0.96+

JohnnyPERSON

0.96+

OneQUANTITY

0.96+

30 years agoDATE

0.96+

30th anniversaryQUANTITY

0.95+

bothQUANTITY

0.94+

ThirdlyQUANTITY

0.92+

30th AnniversaryQUANTITY

0.89+

Big SixORGANIZATION

0.88+

30th birthday partyQUANTITY

0.86+

Arthur AndersenPERSON

0.84+

UnityTITLE

0.76+

next 30 yearsDATE

0.74+

MetaPERSON

0.73+

theCUBEORGANIZATION

0.71+

Computer History MuseumORGANIZATION

0.68+

LabsEVENT

0.66+

2DQUANTITY

0.65+

3DQUANTITY

0.61+

Number oneQUANTITY

0.58+

oneQUANTITY

0.55+

Gabriela de Queiroz, Microsoft | WiDS 2023


 

(upbeat music) >> Welcome back to theCUBE's coverage of Women in Data Science 2023 live from Stanford University. This is Lisa Martin. My co-host is Tracy Yuan. We're excited to be having great conversations all day but you know, 'cause you've been watching. We've been interviewing some very inspiring women and some men as well, talking about all of the amazing applications of data science. You're not going to want to miss this next conversation. Our guest is Gabriela de Queiroz, Principal Cloud Advocate Manager of Microsoft. Welcome, Gabriela. We're excited to have you. >> Thank you very much. I'm so excited to be talking to you. >> Yeah, you're on theCUBE. >> Yeah, finally. (Lisa laughing) Like a dream come true. (laughs) >> I know and we love that. We're so thrilled to have you. So you have a ton of experience in the data space. I was doing some research on you. You've worked in software, financial advertisement, health. Talk to us a little bit about you. What's your background in? >> So I was trained in statistics. So I'm a statistician and then I worked in epidemiology. I worked with air pollution and public health. So I was a researcher before moving into the industry. So as I was talking today, the weekly paths, it's exactly who I am. I went back and forth and back and forth and stopped and tried something else until I figured out that I want to do data science and that I want to do different things because with data science we can... The beauty of data science is that you can move across domains. So I worked in healthcare, financial, and then different technology companies. >> Well the nice thing, one of the exciting things that data science, that I geek out about and Tracy knows 'cause we've been talking about this all day, it's just all the different, to your point, diverse, pun intended, applications of data science. You know, this morning we were talking about, we had the VP of data science from Meta as a keynote. She came to theCUBE talking and really kind of explaining from a content perspective, from a monetization perspective, and of course so many people in the world are users of Facebook. It makes it tangible. But we also heard today conversations about the applications of data science in police violence, in climate change. We're in California, we're expecting a massive rainstorm and we don't know what to do when it rains or snows. But climate change is real. Everyone's talking about it, and there's data science at its foundation. That's one of the things that I love. But you also have a lot of experience building diverse teams. Talk a little bit about that. You've created some very sophisticated data science solutions. Talk about your recommendation to others to build diverse teams. What's in it for them? And maybe share some data science project or two that you really found inspirational. >> Yeah, absolutely. So I do love building teams. Every time I'm given the task of building teams, I feel the luckiest person in the world because you have the option to pick like different backgrounds and all the diverse set of like people that you can find. I don't think it's easy, like people say, yeah, it's very hard. You have to be intentional. You have to go from the very first part when you are writing the job description through the interview process. So you have to be very intentional in every step. And you have to think through when you are doing that. And I love, like my last team, we had like 10 people and we were so diverse. Like just talking about languages. We had like 15 languages inside a team. So how beautiful it is. Like all different backgrounds, like myself as a statistician, but we had people from engineering background, biology, languages, and so on. So it's, yeah, like every time thinking about building a team, if you wanted your team to be diverse, you need to be intentional. >> I'm so glad you brought up that intention point because that is the fundamental requirement really is to build it with intention. >> Exactly, and I love to hear like how there's different languages. So like I'm assuming, or like different backgrounds, I'm assuming everybody just zig zags their way into the team and now you're all women in data science and I think that's so precious. >> Exactly. And not only woman, right. >> Tracy: Not only woman, you're right. >> The team was diverse not only in terms of like gender, but like background, ethnicity, and spoken languages, and language that they use to program and backgrounds. Like as I mentioned, not everybody did the statistics in school or computer science. And it was like one of my best teams was when we had this combination also like things that I'm good at the other person is not as good and we have this knowledge sharing all the time. Every day I would feel like I'm learning something. In a small talk or if I was reviewing something, there was always something new because of like the richness of the diverse set of people that were in your team. >> Well what you've done is so impressive, because not only have you been intentional with it, but you sound like the hallmark of a great leader of someone who hires and builds teams to fill gaps. They don't have to know less than I do for me to be the leader. They have to have different skills, different areas of expertise. That is really, honestly Gabriela, that's the hallmark of a great leader. And that's not easy to come by. So tell me, who were some of your mentors and sponsors along the way that maybe influenced you in that direction? Or is that just who you are? >> That's a great question. And I joke that I want to be the role model that I never had, right. So growing up, I didn't have anyone that I could see other than my mom probably or my sister. But there was no one that I could see, I want to become that person one day. And once I was tracing my path, I started to see people looking at me and like, you inspire me so much, and I'm like, oh wow, this is amazing and I want to do do this over and over and over again. So I want to be that person to inspire others. And no matter, like I'll be like a VP, CEO, whoever, you know, I want to be, I want to keep inspiring people because that's so valuable. >> Lisa: Oh, that's huge. >> And I feel like when we grow professionally and then go to the next level, we sometimes we lose that, you know, thing that's essential. And I think also like, it's part of who I am as I was building and all my experiences as I was going through, I became what I mentioned is unique person that I think we all are unique somehow. >> You're a rockstar. Isn't she a rockstar? >> You dropping quotes out. >> I'm loving this. I'm like, I've inspired Gabriela. (Gabriela laughing) >> Oh my God. But yeah, 'cause we were asking our other guests about the same question, like, who are your role models? And then we're talking about how like it's very important for women to see that there is a representation, that there is someone they look up to and they want to be. And so that like, it motivates them to stay in this field and to start in this field to begin with. So yeah, I think like you are definitely filling a void and for all these women who dream to be in data science. And I think that's just amazing. >> And you're a founder too. In 2012, you founded R Ladies. Talk a little bit about that. This is present in more than 200 cities in 55 plus countries. Talk about R Ladies and maybe the catalyst to launch it. >> Yes, so you always start, so I'm from Brazil, I always talk about this because it's such, again, I grew up over there. So I was there my whole life and then I moved to here, Silicon Valley. And when I moved to San Francisco, like the doors opened. So many things happening in the city. That was back in 2012. Data science was exploding. And I found out something about Meetup.com, it's a website that you can join and go in all these events. And I was going to this event and I joke that it was kind of like going to the Disneyland, where you don't know if I should go that direction or the other direction. >> Yeah, yeah. >> And I was like, should I go and learn about data visualization? Should I go and learn about SQL or should I go and learn about Hadoop, right? So I would go every day to those meetups. And I was a student back then, so you know, the budget was very restricted as a student. So we don't have much to spend. And then they would serve dinner and you would learn for free. And then I got to a point where I was like, hey, they are doing all of this as a volunteer. Like they are running this meetup and events for free. And I felt like it's a cycle. I need to do something, right. I'm taking all this in. I'm having this huge opportunity to be here. I want to give back. So that's what how everything started. I was like, no, I have to think about something. I need to think about something that I can give back. And I was using R back then and I'm like how about I do something with R. I love R, I'm so passionate about R, what about if I create a community around R but not a regular community, because by going to this events, I felt that as a Latina and as a woman, I was always in the corner and I was not being able to participate and to, you know, be myself and to network and ask questions. I would be in the corner. So I said to myself, what about if I do something where everybody feel included, where everybody can participate, can share, can ask questions without judgment? So that's how R ladies all came together. >> That's awesome. >> Talk about intentions, like you have to, you had that go in mind, but yeah, I wanted to dive a little bit into R. So could you please talk more about where did the passion for R come from, and like how did the special connection between you and R the language, like born, how did that come from? >> It was not a love at first sight. >> No. >> Not at all. Not at all. Because that was back in Brazil. So all the documentation were in English, all the tutorials, only two. We had like very few tutorials. It was not like nowadays that we have so many tutorials and courses. There were like two tutorials, other documentation in English. So it's was hard for me like as someone that didn't know much English to go through the language and then to learn to program was not easy task. But then as I was going through the language and learning and reading books and finding the people behind the language, I don't know how I felt in love. And then when I came to to San Francisco, I saw some of like the main contributors who are speaking in person and I'm like, wow, they are like humans. I don't know, it was like, I have no idea why I had this love. But I think the the people and then the community was the thing that kept me with the R language. >> Yeah, the community factors is so important. And it's so, at WIDS it's so palpable. I mean I literally walk in the door, every WIDS I've done, I think I've been doing them for theCUBE since 2017. theCUBE has been here since the beginning in 2015 with our co-founders. But you walk in, you get this sense of belonging. And this sense of I can do anything, why not? Why not me? Look at her up there, and now look at you speaking in the technical talk today on theCUBE. So inspiring. One of the things that I always think is you can't be what you can't see. We need to be able to see more people that look like you and sound like you and like me and like you as well. And WIDS gives us that opportunity, which is fantastic, but it's also helping to move the needle, really. And I was looking at some of the Anitab.org stats just yesterday about 2022. And they're showing, you know, the percentage of females in technical roles has been hovering around 25% for a while. It's a little higher now. I think it's 27.6 according to any to Anitab. We're seeing more women hired in roles. But what are the challenges, and I would love to get your advice on this, for those that might be in this situation is attrition, women who are leaving roles. What would your advice be to a woman who might be trying to navigate family and work and career ladder to stay in that role and keep pushing forward? >> I'll go back to the community. If you don't have a community around you, it's so hard to navigate. >> That's a great point. >> You are lonely. There is no one that you can bounce ideas off, that you can share what you are feeling or like that you can learn as well. So sometimes you feel like you are the only person that is going through that problem or like, you maybe have a family or you are planning to have a family and you have to make a decision. But you've never seen anyone going through this. So when you have a community, you see people like you, right. So that's where we were saying about having different people and people like you so they can share as well. And you feel like, oh yeah, so they went through this, they succeed. I can also go through this and succeed. So I think the attrition problem is still big problem. And I'm sure will be worse now with everything that is happening in Tech with layoffs. >> Yes and the great resignation. >> Yeah. >> We are going back, you know, a few steps, like a lot of like advancements that we did. I feel like we are going back unfortunately, but I always tell this, make sure that you have a community. Make sure that you have a mentor. Make sure that you have someone or some people, not only one mentor, different mentors, that can support you through this trajectory. Because it's not easy. But there are a lot of us out there. >> There really are. And that's a great point. I love everything about the community. It's all about that network effect and feeling like you belong- >> That's all WIDS is about. >> Yeah. >> Yes. Absolutely. >> Like coming over here, it's like seeing the old friends again. It's like I'm so glad that I'm coming because I'm all my old friends that I only see like maybe once a year. >> Tracy: Reunion. >> Yeah, exactly. And I feel like that our tank get, you know- >> Lisa: Replenished. >> Exactly. For the rest of the year. >> Yes. >> Oh, that's precious. >> I love that. >> I agree with that. I think one of the things that when I say, you know, you can't see, I think, well, how many females in technology would I be able to recognize? And of course you can be female technology working in the healthcare sector or working in finance or manufacturing, but, you know, we need to be able to have more that we can see and identify. And one of the things that I recently found out, I was telling Tracy this earlier that I geeked out about was finding out that the CTO of Open AI, ChatGPT, is a female. I'm like, (gasps) why aren't we talking about this more? She was profiled on Fast Company. I've seen a few pieces on her, Mira Murati. But we're hearing so much about ChatJTP being... ChatGPT, I always get that wrong, about being like, likening it to the launch of the iPhone, which revolutionized mobile and connectivity. And here we have a female in the technical role. Let's put her on a pedestal because that is hugely inspiring. >> Exactly, like let's bring everybody to the front. >> Yes. >> Right. >> And let's have them talk to us because like, you didn't know. I didn't know probably about this, right. You didn't know. Like, we don't know about this. It's kind of like we are hidden. We need to give them the spotlight. Every woman to give the spotlight, so they can keep aspiring the new generation. >> Or Susan Wojcicki who ran, how long does she run YouTube? All the YouTube influencers that probably have no idea who are influential for whatever they're doing on YouTube in different social platforms that don't realize, do you realize there was a female behind the helm that for a long time that turned it into what it is today? That's outstanding. Why aren't we talking about this more? >> How about Megan Smith, was the first CTO on the Obama administration. >> That's right. I knew it had to do with Obama. Couldn't remember. Yes. Let's let's find more pedestals. But organizations like WIDS, your involvement as a speaker, showing more people you can be this because you can see it, >> Yeah, exactly. is the right direction that will help hopefully bring us back to some of the pre-pandemic levels, and keep moving forward because there's so much potential with data science that can impact everyone's lives. I always think, you know, we have this expectation that we have our mobile phone and we can get whatever we want wherever we are in the world and whatever time of day it is. And that's all data driven. The regular average person that's not in tech thinks about data as a, well I'm paying for it. What's all these data charges? But it's powering the world. It's powering those experiences that we all want as consumers or in our business lives or we expect to be able to do a transaction, whether it's something in a CRM system or an Uber transaction like that, and have the app respond, maybe even know me a little bit better than I know myself. And that's all data. So I think we're just at the precipice of the massive impact that data science will make in our lives. And luckily we have leaders like you who can help navigate us along this path. >> Thank you. >> What advice for, last question for you is advice for those in the audience who might be nervous or maybe lack a little bit of confidence to go I really like data science, or I really like engineering, but I don't see a lot of me out there. What would you say to them? >> Especially for people who are from like a non-linear track where like going onto that track. >> Yeah, I would say keep going. Keep going. I don't think it's easy. It's not easy. But keep going because the more you go the more, again, you advance and there are opportunities out there. Sometimes it takes a little bit, but just keep going. Keep going and following your dreams, that you get there, right. So again, data science, such a broad field that doesn't require you to come from a specific background. And I think the beauty of data science exactly is this is like the combination, the most successful data science teams are the teams that have all these different backgrounds. So if you think that we as data scientists, we started programming when we were nine, that's not true, right. You can be 30, 40, shifting careers, starting to program right now. It doesn't matter. Like you get there no matter how old you are. And no matter what's your background. >> There's no limit. >> There was no limits. >> I love that, Gabriela, >> Thank so much. for inspiring. I know you inspired me. I'm pretty sure you probably inspired Tracy with your story. And sometimes like what you just said, you have to be your own mentor and that's okay. Because eventually you're going to turn into a mentor for many, many others and sounds like you're already paving that path and we so appreciate it. You are now officially a CUBE alumni. >> Yes. Thank you. >> Yay. We've loved having you. Thank you so much for your time. >> Thank you. Thank you. >> For our guest and for Tracy's Yuan, this is Lisa Martin. We are live at WIDS 23, the eighth annual Women in Data Science Conference at Stanford. Stick around. Our next guest joins us in just a few minutes. (upbeat music)

Published Date : Mar 8 2023

SUMMARY :

but you know, 'cause you've been watching. I'm so excited to be talking to you. Like a dream come true. So you have a ton of is that you can move across domains. But you also have a lot of like people that you can find. because that is the Exactly, and I love to hear And not only woman, right. that I'm good at the other Or is that just who you are? And I joke that I want And I feel like when You're a rockstar. I'm loving this. So yeah, I think like you the catalyst to launch it. And I was going to this event And I was like, and like how did the special I saw some of like the main more people that look like you If you don't have a community around you, There is no one that you Make sure that you have a mentor. and feeling like you belong- it's like seeing the old friends again. And I feel like that For the rest of the year. And of course you can be everybody to the front. you didn't know. do you realize there was on the Obama administration. because you can see it, I always think, you know, What would you say to them? are from like a non-linear track that doesn't require you to I know you inspired me. you so much for your time. Thank you. the eighth annual Women

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Tracy YuanPERSON

0.99+

Megan SmithPERSON

0.99+

Gabriela de QueirozPERSON

0.99+

Susan WojcickiPERSON

0.99+

GabrielaPERSON

0.99+

Lisa MartinPERSON

0.99+

BrazilLOCATION

0.99+

2015DATE

0.99+

2012DATE

0.99+

San FranciscoLOCATION

0.99+

San FranciscoLOCATION

0.99+

TracyPERSON

0.99+

ObamaPERSON

0.99+

LisaPERSON

0.99+

Mira MuratiPERSON

0.99+

MicrosoftORGANIZATION

0.99+

CaliforniaLOCATION

0.99+

Silicon ValleyLOCATION

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

UberORGANIZATION

0.99+

27.6QUANTITY

0.99+

twoQUANTITY

0.99+

30QUANTITY

0.99+

40QUANTITY

0.99+

15 languagesQUANTITY

0.99+

R LadiesORGANIZATION

0.99+

two tutorialsQUANTITY

0.99+

AnitabORGANIZATION

0.99+

10 peopleQUANTITY

0.99+

oneQUANTITY

0.99+

YouTubeORGANIZATION

0.99+

todayDATE

0.99+

55 plus countriesQUANTITY

0.99+

first partQUANTITY

0.99+

more than 200 citiesQUANTITY

0.99+

firstQUANTITY

0.98+

nineQUANTITY

0.98+

SQLTITLE

0.98+

theCUBEORGANIZATION

0.98+

WIDS 23EVENT

0.98+

Stanford UniversityORGANIZATION

0.98+

2017DATE

0.98+

CUBEORGANIZATION

0.97+

StanfordLOCATION

0.97+

Women in Data ScienceTITLE

0.97+

around 25%QUANTITY

0.96+

DisneylandLOCATION

0.96+

EnglishOTHER

0.96+

one mentorQUANTITY

0.96+

Women in Data Science ConferenceEVENT

0.96+

once a yearQUANTITY

0.95+

WIDSORGANIZATION

0.92+

this morningDATE

0.91+

Meetup.comORGANIZATION

0.91+

FacebookORGANIZATION

0.9+

HadoopTITLE

0.89+

WiDS 2023EVENT

0.88+

Anitab.orgORGANIZATION

0.87+

ChatJTPTITLE

0.86+

OneQUANTITY

0.86+

one dayQUANTITY

0.85+

ChatGPTTITLE

0.84+

pandemicEVENT

0.81+

Fast CompanyORGANIZATION

0.78+

CTOPERSON

0.76+

OpenORGANIZATION

0.76+

Keynote Analysis | WiDS 2023


 

(ambient music) >> Good morning, everyone. Lisa Martin with theCUBE, live at the eighth Annual Women in Data Science Conference. This is one of my absolute favorite events of the year. We engage with tons of great inspirational speakers, men and women, and what's happening with WiDS is a global movement. I've got two fabulous co-hosts with me today that you're going to be hearing and meeting. Please welcome Tracy Zhang and Hannah Freitag, who are both from the sata journalism program, master's program, at Stanford. So great to have you guys. >> So excited to be here. >> So data journalism's so interesting. Tracy, tell us a little bit about you, what you're interested in, and then Hannah we'll have you do the same thing. >> Yeah >> Yeah, definitely. I definitely think data journalism is very interesting, and in fact, I think, what is data journalism? Is definitely one of the big questions that we ask during the span of one year, which is the length of our program. And yeah, like you said, I'm in this data journalism master program, and I think coming in I just wanted to pivot from my undergrad studies, which is more like a traditional journalism, into data. We're finding stories through data, so that's why I'm also very excited about meeting these speakers for today because they're all, they have different backgrounds, but they all ended up in data science. So I think they'll be very inspirational and I can't wait to talk to them. >> Data in stories, I love that. Hannah, tell us a little bit about you. >> Yeah, so before coming to Stanford, I was a research assistant at Humboldt University in Berlin, so I was in political science research. And I love to work with data sets and data, but I figured that, for me, I don't want this story to end up in a research paper, which is only very limited in terms of the audience. And I figured, okay, data journalism is the perfect way to tell stories and use data to illustrate anecdotes, but to make it comprehensive and accessible for a broader audience. So then I found this program at Stanford and I was like, okay, that's the perfect transition from political science to journalism, and to use data to tell data-driven stories. So I'm excited to be in this program, I'm excited for the conference today and to hear from these amazing women who work in data science. >> You both brought up great points, and we were chatting earlier that there's a lot of diversity in background. >> Tracy: Definitely. >> Not everyone was in STEM as a young kid or studied computer science. Maybe some are engineering, maybe some are are philosophy or economic, it's so interesting. And what I find year after year at WiDS is it brings in so much thought diversity. And that's what being data-driven really demands. It demands that unbiased approach, that diverse, a spectrum of diverse perspectives, and we definitely get that at WiDS. There's about 350 people in person here, but as I mentioned in the opening, hundreds of thousands will engage throughout the year, tens of thousands probably today at local events going on across the globe. And it just underscores the importance of every organization, whether it's a bank or a grocer, has to be data-driven. We have that expectation as consumers in our consumer lives, and even in our business lives, that I'm going to engage with a business, whatever it is, and they're going to know about me, they're going to deliver me a personalized experience that's relevant to me and my history. And all that is powered by data science, which is I think it's fascinating. >> Yeah, and the great way is if you combine data with people. Because after all, large data sets, they oftentimes consist of stories or data that affects people. And to find these stories or advanced research in whatever fields, maybe in the financial business, or in health, as you mentioned, the variety of fields, it's very powerful, powerful tool to use. >> It's a very power, oh, go ahead Tracy. >> No, definitely. I just wanted to build off of that. It's important to put a face on data. So a dataset without a name is just some numbers, but if there's a story, then I think it means something too. And I think Margot was talking about how data science is about knowing or understanding the past, I think that's very interesting. That's a method for us to know who we are. >> Definitely. There's so many opportunities. I wanted to share some of the statistics from AnitaB.org that I was just looking at from 2022. We always talk at events like WiDS, and some of the other women in tech things, theCUBE is very much pro-women in tech, and has been for a very long, since the beginning of theCUBE. But we've seen the numbers of women technologists historically well below 25%, and we see attrition rates are high. And so we often talk about, well, what can we do? And part of that is raising the awareness. And that's one of the great things about WiDS, especially WiDS happening on International Women's Day, today, March 8th, and around event- >> Tracy: A big holiday. >> Exactly. But one of the nice things I was looking at, the AnitaB.org research, is that representation of tech women is on the rise, still below pre-pandemic levels, but it's actually nearly 27% of women in technical roles. And that's an increase, slow increase, but the needle is moving. We're seeing much more gender diversity across a lot of career levels, which is exciting. But some of the challenges remain. I mean, the representation of women technologists is growing, except at the intern level. And I thought that was really poignant. We need to be opening up that pipeline and going younger. And you'll hear a lot of those conversations today about, what are we doing to reach girls in grade school, 10 year olds, 12 year olds, those in high school? How do we help foster them through their undergrad studies- >> And excite them about science and all these fields, for sure. >> What do you think, Hannah, on that note, and I'll ask you the same question, what do you think can be done? The theme of this year's International Women's Day is Embrace Equity. What do you think can be done on that intern problem to help really dial up the volume on getting those younger kids interested, one, earlier, and two, helping them stay interested? >> Yeah. Yeah, that's a great question. I think it's important to start early, as you said, in school. Back in the day when I went to high school, we had this one day per year where we could explore as girls, explore a STEM job and go into the job for one day and see how it's like to work in a, I dunno, in IT or in data science, so that's a great first step. But as you mentioned, it's important to keep girls and women excited about this field and make them actually pursue this path. So I think conferences or networking is very powerful. Also these days with social media and technology, we have more ability and greater ways to connect. And I think we should even empower ourselves even more to pursue this path if we're interested in data science, and not be like, okay, maybe it's not for me, or maybe as a woman I have less chances. So I think it's very important to connect with other women, and this is what WiDS is great about. >> WiDS is so fantastic for that network effect, as you talked about. It's always such, as I was telling you about before we went live, I've covered five or six WiDS for theCUBE, and it's always such a day of positivity, it's a day of of inclusivity, which is exactly what Embrace Equity is really kind of about. Tracy, talk a little bit about some of the things that you see that will help with that hashtag Embrace Equity kind of pulling it, not just to tech. Because we're talking and we saw Meta was a keynote who's going to come to talk with Hannah and me in a little bit, we see Total Energies on the program today, we see Microsoft, Intuit, Boeing Air Company. What are some of the things you think that can be done to help inspire, say, little Tracy back in the day to become interested in STEM or in technology or in data? What do you think companies can and should be doing to dial up the volume for those youngsters? >> Yeah, 'cause I think somebody was talking about, one of the keynote speakers was talking about how there is a notion that girls just can't be data scientists. girls just can't do science. And I think representation definitely matters. If three year old me see on TV that all the scientists are women, I think I would definitely have the notion that, oh, this might be a career choice for me and I can definitely also be a scientist if I want. So yeah, I think representation definitely matters and that's why conference like this will just show us how these women are great in their fields. They're great data scientists that are bringing great insight to the company and even to the social good as well. So yeah, I think that's very important just to make women feel seen in this data science field and to listen to the great woman who's doing amazing work. >> Absolutely. There's a saying, you can't be what you can't see. >> Exactly. >> And I like to say, I like to flip it on its head, 'cause we can talk about some of the negatives, but there's a lot of positives and I want to share some of those in a minute, is that we need to be, that visibility that you talked about, the awareness that you talked about, it needs to be there but it needs to be sustained and maintained. And an organization like WiDS and some of the other women in tech events that happen around the valley here and globally, are all aimed at raising the profile of these women so that the younger, really, all generations can see what they can be. We all, the funny thing is, we all have this expectation whether we're transacting on Uber ride or we are on Netflix or we're buying something on Amazon, we can get it like that. They're going to know who I am, they're going to know what I want, they're going to want to know what I just bought or what I just watched. Don't serve me up something that I've already done that. >> Hannah: Yeah. >> Tracy: Yeah. >> So that expectation that everyone has is all about data, though we don't necessarily think about it like that. >> Hannah: Exactly. >> Tracy: Exactly. >> But it's all about the data that, the past data, the data science, as well as the realtime data because we want to have these experiences that are fresh, in the moment, and super relevant. So whether women recognize it or not, they're data driven too. Whether or not you're in data science, we're all driven by data and we have these expectations that every business is going to meet it. >> Exactly. >> Yeah. And circling back to young women, I think it's crucial and important to have role models. As you said, if you see someone and you're younger and you're like, oh I want to be like her. I want to follow this path, and have inspiration and a role model, someone you look up to and be like, okay, this is possible if I study the math part or do the physics, and you kind of have a goal and a vision in mind, I think that's really important to drive you. >> Having those mentors and sponsors, something that's interesting is, I always, everyone knows what a mentor is, somebody that you look up to, that can guide you, that you admire. I didn't learn what a sponsor was until a Women in Tech event a few years ago that we did on theCUBE. And I was kind of, my eyes were open but I didn't understand the difference between a mentor and a sponsor. And then it got me thinking, who are my sponsors? And I started going through LinkedIn, oh, he's a sponsor, she's a sponsor, people that help really propel you forward, your recommenders, your champions, and it's so important at every level to build that network. And we have, to your point, Hannah, there's so much potential here for data drivenness across the globe, and there's so much potential for women. One of the things I also learned recently , and I wanted to share this with you 'cause I'm not sure if you know this, ChatGPT, exploding, I was on it yesterday looking at- >> Everyone talking about it. >> What's hot in data science? And it was kind of like, and I actually asked it, what was hot in data science in 2023? And it told me that it didn't know anything prior to 2021. >> Tracy: Yes. >> Hannah: Yeah. >> So I said, Oh, I'm so sorry. But everyone's talking about ChatGPT, it is the most advanced AI chatbot ever released to the masses, it's on fire. They're likening it to the launch of the iPhone, 100 million-plus users. But did you know that the CTO of ChatGPT is a woman? >> Tracy: I did not know, but I learned that. >> I learned that a couple days ago, Mira Murati, and of course- >> I love it. >> She's been, I saw this great profile piece on her on Fast Company, but of course everything that we're hearing about with respect to ChatGPT, a lot on the CEO. But I thought we need to help dial up the profile of the CTO because she's only 35, yet she is at the helm of one of the most groundbreaking things in our lifetime we'll probably ever see. Isn't that cool? >> That is, yeah, I completely had no idea. >> I didn't either. I saw it on LinkedIn over the weekend and I thought, I have to talk about that because it's so important when we talk about some of the trends, other trends from AnitaB.org, I talked about some of those positive trends. Overall hiring has rebounded in '22 compared to pre-pandemic levels. And we see also 51% more women being hired in '22 than '21. So the data, it's all about data, is showing us things are progressing quite slowly. But one of the biggest challenges that's still persistent is attrition. So we were talking about, Hannah, what would your advice be? How would you help a woman stay in tech? We saw that attrition last year in '22 according to AnitaB.org, more than doubled. So we're seeing women getting into the field and dropping out for various reasons. And so that's still an extent concern that we have. What do you think would motivate you to stick around if you were in a technical role? Same question for you in a minute. >> Right, you were talking about how we see an increase especially in the intern level for women. And I think if, I don't know, this is a great for a start point for pushing the momentum to start growth, pushing the needle rightwards. But I think if we can see more increase in the upper level, the women representation in the upper level too, maybe that's definitely a big goal and something we should work towards to. >> Lisa: Absolutely. >> But if there's more representation up in the CTO position, like in the managing level, I think that will definitely be a great factor to keep women in data science. >> I was looking at some trends, sorry, Hannah, forgetting what this source was, so forgive me, that was showing that there was a trend in the last few years, I think it was Fast Company, of more women in executive positions, specifically chief operating officer positions. What that hasn't translated to, what they thought it might translate to, is more women going from COO to CEO and we're not seeing that. We think of, if you ask, name a female executive that you'd recognize, everyone would probably say Sheryl Sandberg. But I was shocked to learn the other day at a Women in Tech event I was doing, that there was a survey done by this organization that showed that 78% of people couldn't identify. So to your point, we need more of them in that visible role, in the executive suite. >> Tracy: Exactly. >> And there's data that show that companies that have women, companies across industries that have women in leadership positions, executive positions I should say, are actually more profitable. So it's kind of like, duh, the data is there, it's telling you this. >> Hannah: Exactly. >> Right? >> And I think also a very important point is work culture and the work environment. And as a woman, maybe if you enter and you work two or three years, and then you have to oftentimes choose, okay, do I want family or do I want my job? And I think that's one of the major tasks that companies face to make it possible for women to combine being a mother and being a great data scientist or an executive or CEO. And I think there's still a lot to be done in this regard to make it possible for women to not have to choose for one thing or the other. And I think that's also a reason why we might see more women at the entry level, but not long-term. Because they are punished if they take a couple years off if they want to have kids. >> I think that's a question we need to ask to men too. >> Absolutely. >> How to balance work and life. 'Cause we never ask that. We just ask the woman. >> No, they just get it done, probably because there's a woman on the other end whose making it happen. >> Exactly. So yeah, another thing to think about, another thing to work towards too. >> Yeah, it's a good point you're raising that we have this conversation together and not exclusively only women, but we all have to come together and talk about how we can design companies in a way that it works for everyone. >> Yeah, and no slight to men at all. A lot of my mentors and sponsors are men. They're just people that I greatly admire who saw raw potential in me 15, 18 years ago, and just added a little water to this little weed and it started to grow. In fact, theCUBE- >> Tracy: And look at you now. >> Look at me now. And theCUBE, the guys Dave Vellante and John Furrier are two of those people that are sponsors of mine. But it needs to be diverse. It needs to be diverse and gender, it needs to include non-binary people, anybody, shouldn't matter. We should be able to collectively work together to solve big problems. Like the propaganda problem that was being discussed in the keynote this morning with respect to China, or climate change. Climate change is a huge challenge. Here, we are in California, we're getting an atmospheric river tomorrow. And Californians and rain, we're not so friendly. But we know that there's massive changes going on in the climate. Data science can help really unlock a lot of the challenges and solve some of the problems and help us understand better. So there's so much real-world implication potential that being data-driven can really lead to. And I love the fact that you guys are studying data journalism. You'll have to help me understand that even more. But we're going to going to have great conversations today, I'm so excited to be co-hosting with both of you. You're going to be inspired, you're going to learn, they're going to learn from us as well. So let's just kind of think of this as a community of men, women, everything in between to really help inspire the current generations, the future generations. And to your point, let's help women feel confident to be able to stay and raise their hand for fast-tracking their careers. >> Exactly. >> What are you guys, last minute, what are you looking forward to most for today? >> Just meeting these great women, I can't wait. >> Yeah, learning from each other. Having this conversation about how we can make data science even more equitable and hear from the great ideas that all these women have. >> Excellent, girls, we're going to have a great day. We're so glad that you're here with us on theCUBE, live at Stanford University, Women in Data Science, the eighth annual conference. I'm Lisa Martin, my two co-hosts for the day, Tracy Zhang, Hannah Freitag, you're going to be seeing a lot of us, we appreciate. Stick around, our first guest joins Hannah and me in just a minute. (ambient music)

Published Date : Mar 8 2023

SUMMARY :

So great to have you guys. and then Hannah we'll have Is definitely one of the Data in stories, I love that. And I love to work with and we were chatting earlier and they're going to know about me, Yeah, and the great way is And I think Margot was And part of that is raising the awareness. I mean, the representation and all these fields, for sure. and I'll ask you the same question, I think it's important to start early, What are some of the things and even to the social good as well. be what you can't see. and some of the other women in tech events So that expectation that everyone has that every business is going to meet it. And circling back to young women, and I wanted to share this with you know anything prior to 2021. it is the most advanced Tracy: I did not of one of the most groundbreaking That is, yeah, I and I thought, I have to talk about that for pushing the momentum to start growth, to keep women in data science. So to your point, we need more that have women in leadership positions, and the work environment. I think that's a question We just ask the woman. a woman on the other end another thing to work towards too. and talk about how we can design companies and it started to grow. And I love the fact that you guys great women, I can't wait. and hear from the great ideas Women in Data Science, the

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Mira MuratiPERSON

0.99+

HannahPERSON

0.99+

TracyPERSON

0.99+

Lisa MartinPERSON

0.99+

Hannah FreitagPERSON

0.99+

Tracy ZhangPERSON

0.99+

CaliforniaLOCATION

0.99+

MicrosoftORGANIZATION

0.99+

Sheryl SandbergPERSON

0.99+

twoQUANTITY

0.99+

Tracy ZhangPERSON

0.99+

LisaPERSON

0.99+

Boeing Air CompanyORGANIZATION

0.99+

BerlinLOCATION

0.99+

one yearQUANTITY

0.99+

IntuitORGANIZATION

0.99+

2023DATE

0.99+

Dave VellantePERSON

0.99+

78%QUANTITY

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

AmazonORGANIZATION

0.99+

MargotPERSON

0.99+

tens of thousandsQUANTITY

0.99+

one dayQUANTITY

0.99+

International Women's DayEVENT

0.99+

2022DATE

0.99+

yesterdayDATE

0.99+

last yearDATE

0.99+

tomorrowDATE

0.99+

three yearsQUANTITY

0.99+

10 yearQUANTITY

0.99+

12 yearQUANTITY

0.99+

three yearQUANTITY

0.99+

LinkedInORGANIZATION

0.99+

Humboldt UniversityORGANIZATION

0.99+

bothQUANTITY

0.99+

International Women's DayEVENT

0.99+

hundreds of thousandsQUANTITY

0.98+

oneQUANTITY

0.98+

'22DATE

0.98+

todayDATE

0.98+

WiDSEVENT

0.98+

John FurrierPERSON

0.98+

UberORGANIZATION

0.98+

two co-hostsQUANTITY

0.98+

35QUANTITY

0.98+

eighth Annual Women in Data Science ConferenceEVENT

0.97+

first stepQUANTITY

0.97+

first guestQUANTITY

0.97+

one thingQUANTITY

0.97+

fiveQUANTITY

0.97+

sixQUANTITY

0.97+

'21DATE

0.97+

about 350 peopleQUANTITY

0.96+

100 million-plus usersQUANTITY

0.95+

2021DATE

0.95+

theCUBEORGANIZATION

0.95+

AnitaB.orgORGANIZATION

0.95+

StanfordORGANIZATION

0.95+

Manish Singh, Dell Technologies & Doug Wolff, Dell Technologies | MWC Barcelona 2023


 

>> Announcer: theCUBE's live coverage is made possible by funding from Dell Technologies, creating technologies that drive human progress. (upbeat music) >> Welcome to the Fira in Barcelona, everybody. This is theCUBE's coverage of MWC 23, day one of that coverage. We have four days of wall-to-wall action going on, the place is going crazy. I'm here with Dave Nicholson, Lisa Martin is also in the house. Today's ecosystem day, and we're really excited to have Manish Singh who's the CTO of the Telecom Systems Business unit at Dell Technologies. He's joined by Doug Wolf who's the head of strategy for the Telecom Systems Business unit at Dell. Gents, welcome. What a show. I mean really the first major MWC or used to be Mobile World Congress since you guys have launched your telecom business, you kind of did that sort of in the Covid transition, but really exciting, obviously a huge, huge venue to match the huge market. So Manish, how did you guys get into this? What did you see? What was the overall thinking to get Dell into this business? >> Manish: Yeah, well, I mean just to start with you know, if you look at the telecom ecosystem today, the service providers in particular, they are looking for network transformation, driving more disaggregation into their network so that they can get better utilization of the infrastructure, but then also get more agility, more cloud native characteristics onto their, for their networks in particular. And then further on, it's important for them to really start to accelerate the pace of innovation on the networks itself, to start more supply chain diversity, that's one of the challenges that they've been having. And so there've been all these market forces that have been really getting these service providers to really start to transform the way they have built the infrastructure in the past, which was legacy monolithic architectures to more cloud native disaggregated. And from a Dell perspective, you know, that really gives us the permission to play, to really, given all the expertise on the work we have done in the IT with all the IT transformations to leverage all that expertise and bring that to the service providers and really help them in accelerating their network transformation. So that's where the journey started. We've been obviously ever since then working on expanding the product portfolio on our compute platforms to bring Teleco great compute platforms with more capabilities than we can talk about that. But then working with partners and building the ecosystem to again create this disaggregated and open ecosystem that will be more cloud native and really meet the objective that the service providers are after. >> Dave Vellante: Great, thank you. So, Doug the strategy obviously is to attack this market, as Manish said, from an open standpoint, that's sort of new territory. It's like a little bit like the wild, wild west. So maybe you could double click on what Manish was saying from a, from a strategy standpoint, yes, the Telecos need to be more flexible, they need to be more open, but they also need this reliability piece. So talk about that from a strategy standpoint of what you guys saw. >> Doug: Yeah, absolutely. As Manish mentioned, you know, Dell getting into open systems isn't something new. You know, Dell has been kind of playing in that world for years and years, but the opportunity in Telecom that came was opening of the RAN, the core network, the edge, all of these with 5G really created a wide opening for us. So we started developing products and solutions, you know, built our first Telecom grade servers for open RAN over the last year, we'll talk about those at the show. But you know, as, as Manish mentioned, an open ecosystem is new to Telecom. I've been in the Telecom business along with Manish for, you know, 25 plus years and this is a new thing that they're embarking on. So started with virtualization about five, six years ago, and now moving to cloud native architectures on the core, suddenly there's this need to have multiple parties partner really well, share specifications, and put that together for an operator to consume. And I think that's just the start of really where all the challenges are and the opportunities that we see. >> Where are we in this transition cycle? When the average consumer hears 5G, feels like it's been around for a long time because it was hyped beforehand. >> Doug: Yeah. >> If you're talking about moving to an open infrastructure model from a proprietary closed model, when is the opportunity for Dell to become part of that? Is it, are there specific sites that have already transitioned to 5G, therefore they've either made the decision to be open or not? Or are there places where the 5G transition has taken place, and they might then make a transition to open brand with 5G? Where, where are we in that cycle? What does the opportunity look like? >> I'll kind of take it from the typology of the operator, and I'm sure Manish will build on this, but if I look back on the core, started to get virtualized you know, back around 2015-16 with some of the lead operators like AT&T et cetera. So Dell has been partnering with those operators for some years. So it really, it's happening on the core, but it's moving with 5G to more of a cloud-like architecture, number one. And number two, they're going beyond just virtualizing the network. You know, they previously had used OpenStack and most of them are migrating to more of a cloud native architecture that Manish mentioned. And that is a bit different in terms of there's more software vendors in that ecosystem because the software is disaggregated also. So Dell's been playing in the core for a number of years, but we brought out new solutions we've announced at the show for the core. And the parts that are really starting that transition of maybe where the core was back in 2015 is on the RAN and on the edge in particular. >> Because NFV kind of predated the ascendancy of cloud. >> Exactly, yeah. >> Right, so it really didn't have the impact that people had hoped. And there's some, when you look back, 'cause it's not same wine, new bottle as the open systems movement, there are a lot of similarities but you know, you mentioned cloud, and cloud native, you really didn't have, back in the nineties, true engineered systems. You didn't really have AI that, you know, to speak of at the sort of volume of the data that we have. So Manish, from a CTO's perspective, how are you attacking some of those differences in bringing that to market? >> Manish: Yeah, I mean, I think you touched on some very important points there. So first of all, the duck's point, a lot of this transformation started in the core, right? And as the technology evolution progress, the opportunities opened up. It has now come into the edge and the radio access network as well, in particular with open RAN. And so when we talk about the disaggregation of the infrastructure from the software itself and an open ecosystem, this now starts to create the opportunity to accelerate innovation. And I really want to pick up on the point that you'd said on AI, for example. AI and machine learning bring a whole new set of capabilities and opportunities for these service providers to drive better optimization, better performance, better sustainability and energy efficiency on their infrastructure, on and on and on. But to really tap into these technologies, they really need to open that up to third parties implementation solutions that are coming up. And again, the end objective remains to accelerate that innovation. Now that said, all these things need to be brought together, right? And delivered and deployed in the network without any degradation in the KPIs and actually improving the performance on different vectors, right? So this is what the current state of play is. And with this aggregation I'm definitely a believer that all these new technologies, including AI, machine learning, and there's a whole area, host area of problems that can be solved and attacked and are actually getting attacked by applying AI and machine learning onto these networks. >> Open obviously is good. Nobody's ever going to, you know, argue that open is a bad thing. It's like democracy is a good thing, right? At least amongst us. And so, but, the RAN, the open RAN, has to be as reliable and performant, right, as these, closed networks. Or maybe not, maybe it doesn't have to be identical. Just has to be close enough in order for that tipping point to occur. Is that a fair summarization? What are you guys hearing from carriers in terms of their willingness to sort of put their toe in the water and, and what could we expect in terms of the maturity model of, of open RAN and adoption? >> Right, so I mean I think on, on performance that, that's a tough one. I think the operators will demand performance and you've seen experiments, you've really seen more of the Greenfield operators kind of launch. >> Okay. >> Doug: Open RAN or vRAN type solutions. >> So they're going to disrupt. >> Doug: Yeah, they're going to disrupt. >> Yeah. >> Doug: And there's flexibility in an open RAN architecture also for 5G that they, that they're interested in and I think the Brownfield operators are too, but let's say maybe the Greenfield jump first in terms of doing that from a mass deployment perspective. But I still think that it's going to be critical to meet very similar SLAs and end user performance. And, you know, I think that's where, you know, maturity of that model is what's required. I think Brownfield operators are conservative in terms of, you know, going with something they know, but the opportunities and the benefits of that architecture and building new flexible, potentially cost advantaged over time solutions, that's what the, where the real interest is going forward. >> And new services that you can introduce much more quickly. You know, the interesting thing about Dell to me, you don't compete with the carriers, the public cloud vendors though, the carriers are concerned about them sort of doing an end run on them. So you provide a potential partnership for the carriers that's non-threatening, right? 'Cause you're, you're an arms dealer, you're selling hardware and software, right? But, but how do you see that? Because we heard in the keynote today, one of the Teleco, I think it was the chairman of Telefonica said, you know, cloud guys can't do this alone. You know, they need, you know, this massive, you know, build out. And so, what do you think about that in terms of your relationship with the carriers not being threatening? I mean versus say potentially the cloud guys, who are also your partners, I understand, it's a really interesting dynamic, isn't it? >> Manish: Yeah, I mean I think, you know, I mean, the way I look at it, the carriers actually need someone like Dell who really come in who can bring in the right capabilities, the right infrastructure, but also bring in the ecosystem together and deliver a performance solution that they can deploy and that they can trust, number one. Number two, to your point on cloud, I mean, from a Dell perspective, you know, we announced our Dell Telecom Multicloud Foundation and as part of that last year in September, we announced what we call is the Dell Telecom Infrastructure Blocks. The first one we announced with Wind River, and this is, think of it as the, you know, hardware and the cashier all pre-integrated with lot of automation around it, factory integrated, you know, delivered to customers in an integrated model with all the licenses, everything. And so it starts to solve the day zero, day one, day two integration deployment and then lifecycle management for them. So to broaden the discussion, our view is it's a multicloud world, the future is multicloud where you can have different clouds which can be optimized for different workloads. So for example, while our work with Wind River initially was very focused on virtualization of the radio access network, we just announced our infrastructure block with Red Hat, which is very much targeted and optimized for core network and edge, right? So, you know, there are different workflows which will require different capabilities also. And so, you know, again, we are bringing those things to these service providers to again, bring those cloud characteristics and cloud native architecture for their network. >> And It's going to be hybrid, to your point. >> David N.: And you, just hit on something, you said cloud characteristics. >> Yeah. >> If you look at this through the lens of kind of the general world of IT, sometimes when people hear the word cloud, they immediately leap to the idea that it's a hyperscale cloud provider. In this scenario we're talking about radio towers that have intelligence living on them and physically at the base. And so the cloud characteristics that you're delivering might be living physically in these remote locations all over the place, is that correct? >> Yeah, I mean that, that's true. That will definitely happen over time. But I think, I think we've seen the hyperscalers enter, you know, public cloud providers, enter at the edge and they're dabbling maybe with private, but I think the public RAN is another further challenge. I think that maybe a little bit down the road for them. So I think that is a different characteristic that you're talking about managing the macro RAN environment. >> Manish: If I may just add one more perspective of this cloud, and I mean, again, the hyperscale cloud, right? I mean that world's been great when you can centralize a lot of compute capability and you can then start to, you know, do workload aggregation and use the infrastructure more efficient. When it comes to Telecom, it is inherently it distributed architecture where you have access, you talked about radio access, your port, and it is inherently distributed because it has to provide the coverage and capacity. And so, you know, it does require different kind of capabilities when you're going out and about, and this is where I was talking about things like, you know, we just talked, we just have been working on our bare metal orchestration, right? This is what we are bringing is a capability where you can actually have distributed infrastructure, you can deploy, you can actually manage, do lifecycle management, in a distributed multicloud form. So it does require, you know, different set of capabilities that need to be enabled. >> Some, when talking about cloud, would argue that it's always been information technology, it always will be information technology, and especially as what we might refer to as public cloud or hyperscale cloud providers, are delivering things essentially on premises. It's like, well, is that cloud? Because it feels like some of those players are going to be delivering physical infrastructure outside of their own data centers in order to address this. It seems the nature, the nature of the beast is that some of these things need to be distributed. So it seems perfectly situated for Dell. That's why you guys are both at Dell now and not working for other Telecom places, right? >> Exactly. Exactly, yes. >> It's definitely an exciting space. It's transformed, the networks are under transformation and I do think that Dell's very well positioned to, to really help the customers, the service providers in accelerating their transformation journey with an open ecosystem. >> Dave V.: You've got the brand, and the breadth, and the resources to actually attract an ecosystem. But I wonder if you could sort of take us through your strategy of ecosystem, the challenges that you've seen in developing that ecosystem and what the vision is that ultimately, what's the outcome going to be of that open ecosystem? >> Yeah, I can start. So maybe just to give you the big picture, right? I mean the big picture, is disaggregation with performance, right, TCO models to the service providers, right? And it starts at the infrastructure layer, builds on bringing these cloud capabilities, the cast layer, right? Bringing the right accelerators. All of this requires to pull the ecosystem. So give you an example on the infrastructure in a Teleco grade servers like XR8000 with Sapphire, the new intel processors that we've just announced, and an extended array of servers. These are Teleco grade, short depth, et cetera. You know, the Teleco great characteristic. Working with the partners like Marvel for bringing in the accelerators in there, that's important to again, drive the performance and optimize for the TCO. Working then with partners like Wind River, Red Hat, et cetera, to bring in the cast capabilities so you can start to see how this ecosystem starts to build up. And then very recently we announced our private 5G solution with AirSpan and Expeto on the core site. So bringing those workloads together. Similarly, we have an open RAN solution we announce with Fujitsu. So it's, it's open, it's disaggregated, but bringing all these together. And one of the last things I would say is, you know, to make all this happen and make all of these, we've also been putting together our OTEL, our open Telecom ecosystem lab, which is very much geared, really gives this open ecosystem a playground where they can come in and do all that heavy lifting, which is anyways required, to do the integration, optimization, and board. So put all these capabilities in place, but the end goal, the end vision again, is that cloud native disaggregated infrastructure that starts to innovate at the speed of software and scales at the speed of cloud. >> And this is different than the nineties. You didn't have something like OTEL back then, you know, you didn't have the developer ecosystem that you have today because on top of everything that you just said, Manish, are new workloads and new applications that are going to be developed. Doug, anything you'd add to what Manish said? >> Doug: Yeah, I mean, as Manish said, I think adding to the infrastructure layers, which are, you know, critical for us to, to help integrate, right? Because we kind of took a vertical Teleco stack and we've disaggregated it, and it's gotten a little bit more complex. So our Solutions Dell Technology infrastructure block, and our lab infrastructure with OTEL, helps put those pieces together. But without the software players in this, you know, that's what we really do, I think in OTEL. And that's just starting to grow. So integrating with those software providers with that integration is something that the operators need. So we fill a gap there in terms of either providing engineered solutions so they can readily build on or actually bringing in that software provider. And I think that's what you're going to see more from us going forward is just extending that ecosystem even further. More software players effectively. >> In thinking about O-RAN, are they, is it possible to have the low latency, the high performance, the reliability capabilities that carriers are used to and the flexibility? Or can you sort of prioritize one over the other from a go to market and rollout standpoint and optimize one, maybe get a foothold in the market? How do you see that balance? >> Manish: Oh the answer is absolutely yes you can have both We are on that journey, we are on that journey. This is where all these things I was talking about in terms of the right kind of accelerators, right kind of capabilities on the infrastructure, obviously retargeting the software, there are certain changes, et cetera that need to be done on the software itself to make it more cloud native. And then building all the surrounding capabilities around the CICD pipeline and all where it's not just day zero or day one that you're doing the cloud-like lifecycle management of this infrastructure. But the answer to your point, yes, absolutely. It's possible, the technology is there, and the ecosystem is coming together, and that's the direction. Now, are there challenges? Absolutely there are challenges, but directionally that's the direction the industry is moving to. >> Dave V.: I guess my question, Manish, is do they have to go in lockstep? Because I would argue that the public cloud when it first came out wasn't nearly as functional as what I could get from my own data center in terms of recovery, you know, backup and recovery is a perfect example and it took, you know, a decade plus to get there. But it was the flexibility, and the openness, and the developer affinity, the programmability, that attracted people. Do you see O-RAN following a similar path? Or does it, my question is does it have to have that carrier class reliability today? >> David N.: Everything on day one, does it have to have everything on day one? >> Yeah, I mean, I would say, you know, like again, the Greenfield operators I think we're, we're willing do a little bit more experimentation. I think the operators, Brownfield operators that have existing, you know, deployments, they're going to want to be closer. But I think there's room for innovation here. And clearly, you know, Manish came from, from Meta and we're, we've been very involved with TIP, we're very involved with the O-RAN alliance, and as Manish mentioned, with all those accelerators that we're working with on our infrastructure, that is a space that we're trying to help move the ball forward. So I think you're seeing deployments from mainstream operators, but it's maybe not in, you know, downtown New York deployment, they're more rural deployments. I think that's getting at, you know, kind of your question is there's maybe a little bit more flexibility there, they get to experiment with the technology and the flexibility and then I think it will start to evolve >> Dave V.: And that's where the disruption's going to come from, I think. >> David N.: Well, where was the first place you could get reliable 4K streaming of video content? It wasn't ABC, CBS, NBC. It was YouTube. >> Right. >> So is it possible that when you say Greenfield, are a lot of those going to be what we refer to as private 5G networks where someone may set up a private 5G network that has more functions and capabilities than the public network? >> That's exactly where I was going is that, you know, that that's why you're seeing us getting very active in 5G solutions that Manish mentioned with, you know, Expeto and AirSpan. There's more of those that we haven't publicly announced. So I think you'll be seeing more announcements from us, but that is really, you know, a new opportunity. And there's spectrum there also, right? I mean, there's public and private spectrum. We plan to work directly with the operators and do it in their spectrum when needed. But we also have solutions that will do it, you know, on non-public spectrum. >> So let's close out, oh go ahead. You you have something to add there? >> I'm just going to add one more point to Doug's point, right? Is if you look on the private 5G and the end customer, it's the enterprise, right? And they're, they're not a service provider. They're not a carrier. They're more used to deploying, you know, enterprise infrastructure, maintaining, managing that. So, you know, private 5G, especially with this open ecosystem and with all the open run capabilities, it naturally tends to, you know, blend itself very well to meet those requirements that the enterprise would have. >> And people should not think of private 5G as a sort of a replacement for wifi, right? It's to to deal with those, you know, intense situations that can afford the additional cost, but absolutely require the reliability and the performance and, you know, never go down type of scenario. Is that right? >> Doug: And low latencies usually, the primary characteristics, you know, for things like Industry 4.0 manufacturing requirements, those are tough SLAs. They're just, they're different than the operator SLAs for coverage and, you know, cell performance. They're now, you know, Five9 type characteristics, but on a manufacturing floor. >> That's why we don't use wifi on theCUBE to broadcast, we need a hard line. >> Yeah, but why wouldn't it replace wifi over time? I mean, you know, I still have a home phone number that's hardwired to align, but it goes to a voicemail. We don't even have handset anymore for it, yeah. >> I think, well, unless the cost can come down, but I think that wifi is flexible, it's cheap. It's, it's kind of perfect for that. >> Manish: And it's good technology. >> Dave V.: And it works great. >> David N.: For now, for now. >> Dave V.: But you wouldn't want it in those situations, and you're arguing that maybe. >> I'm saying eventually, what, put a sim in a device, I don't know, you know, but why not? >> Yeah, I mean, you know, and Dell offers, you know, from our laptop, you know, our client side, we do offer wifi, we do offer 4G and 5G solutions. And I think those, you know, it's a volume and scale issue, I think for the cost structure you're talking about. >> Manish: Come to our booth and see the connected laptop. >> Dave V.: Well let's, let's close on that. Why don't you guys talk a little bit about what you're going on at the show, I did go by the booth, you got a whole big lineup of servers. You got some, you know, cool devices going on. So give us the rundown and you know, let's end with the takeaways here. >> The simple rundown, a broad range of new powered servers, broad range addressing core, edge, RAN, optimized for those with all the different kind of acceleration capabilities. You can see that, you can see infrastructure blocks. These are with Wind River, with Red Hat. You can see OTEL, the open telecom ecosystem lab where all that playground, the integration, the real work, the real sausage makings happening. And then you will see some interesting solutions in terms of co-creation that we are doing, right? So you, you will see all of that and not to forget the connected laptops. >> Dave V.: Yeah, yeah, cool. >> Doug: Yeah and, we mentioned it before, but just to add on, I think, you know, for private 5G, you know, we've announced a few offers here at the show with partners. So with Expeto and AirSpan in particular, and I think, you know, I just want to emphasize the partnerships that we're doing. You know, we're doing some, you know, fundamental integration on infrastructure, bare metal and different options for the operators to get engineered systems. But building on that ecosystem is really, the move to cloud native is where Dell is trying to get in front of. And we're offering solutions and a much larger ecosystem to go after it. >> Dave V.: Great. Manish and Doug, thanks for coming on the program. It was great to have you, awesome discussion. >> Thank you for having us. >> Thanks for having us. >> All right, Dave Vellante for Dave Nicholson and Lisa Martin. We're seeing the disaggregation of the Teleco network into open ecosystems with integration from companies like Dell and others. Keep it right there for theCUBE's coverage of MWC 23. We'll be right back. (upbeat tech music)

Published Date : Feb 27 2023

SUMMARY :

that drive human progress. I mean really the first just to start with you know, of what you guys saw. for open RAN over the last year, When the average consumer hears 5G, and on the edge in particular. the ascendancy of cloud. in bringing that to market? So first of all, the duck's point, And so, but, the RAN, the open RAN, the Greenfield operators but the opportunities and the And new services that you and this is, think of it as the, you know, And It's going to be you said cloud characteristics. and physically at the base. you know, public cloud providers, So it does require, you know, the nature of the beast Exactly, yes. the service providers in and the resources to actually So maybe just to give you ecosystem that you have today something that the operators need. But the answer to your and it took, you know, a does it have to have that have existing, you know, deployments, going to come from, I think. you could get reliable 4K but that is really, you You you have something to add there? that the enterprise would have. It's to to deal with those, you know, the primary characteristics, you know, we need a hard line. I mean, you know, I still the cost can come down, Dave V.: But you wouldn't And I think those, you know, and see the connected laptop. So give us the rundown and you know, and not to forget the connected laptops. the move to cloud native is where Dell coming on the program. of the Teleco network

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
DougPERSON

0.99+

Dave VellantePERSON

0.99+

Dave NicholsonPERSON

0.99+

Lisa MartinPERSON

0.99+

FujitsuORGANIZATION

0.99+

ABCORGANIZATION

0.99+

2015DATE

0.99+

DellORGANIZATION

0.99+

Doug WolfPERSON

0.99+

OTELORGANIZATION

0.99+

CBSORGANIZATION

0.99+

Manish SinghPERSON

0.99+

NBCORGANIZATION

0.99+

Dell TechnologiesORGANIZATION

0.99+

David N.PERSON

0.99+

AT&TORGANIZATION

0.99+

MarvelORGANIZATION

0.99+

AirSpanORGANIZATION

0.99+

BrownfieldORGANIZATION

0.99+

TelefonicaORGANIZATION

0.99+

GreenfieldORGANIZATION

0.99+

TelecoORGANIZATION

0.99+

ManishORGANIZATION

0.99+

Red HatORGANIZATION

0.99+

ExpetoORGANIZATION

0.99+

Wind RiverORGANIZATION

0.99+

YouTubeORGANIZATION

0.99+

last yearDATE

0.99+

Dave V.PERSON

0.99+

ManishPERSON

0.99+

MWC 23EVENT

0.99+

Doug WolffPERSON

0.99+

firstQUANTITY

0.99+

Dell Telecom Multicloud FoundationORGANIZATION

0.99+

BarcelonaLOCATION

0.99+

SeptemberDATE

0.99+

Mobile World CongressEVENT

0.99+

25 plus yearsQUANTITY

0.99+

O-RANORGANIZATION

0.99+

TelecosORGANIZATION

0.98+

todayDATE

0.98+

Supercloud Applications & Developer Impact | Supercloud2


 

(gentle music) >> Okay, welcome back to Supercloud 2, live here in Palo Alto, California for our live stage performance. Supercloud 2 is our second Supercloud event. We're going to get these out as fast as we can every couple months. It's our second one, you'll see two and three this year. I'm John Furrier, my co-host, Dave Vellante. A panel here to break down the Supercloud momentum, the wave, and the developer impact that we bringing back Vittorio Viarengo, who's a VP for Cross-Cloud Services at VMware. Sarbjeet Johal, industry influencer and Analyst at StackPayne, his company, Cube alumni and Influencer. Sarbjeet, great to see you. Vittorio, thanks for coming back. >> Nice to be here. >> My pleasure. >> Vittorio, you just gave a keynote where we unpacked the cross-cloud services, what VMware is doing, how you guys see it, not just from VMware's perspective, but VMware looking out broadly at the industry and developers came up and you were like, "Developers, developer, developers", kind of a goof on the Steve Ballmer famous meme that everyone's seen. This is a huge star, sorry, I mean a big piece of it. The developers are the canary in the coal mines. They're the ones who are being asked to code the digital transformation, which is fully business transformation and with the market the way it is right now in terms of the accelerated technology, every enterprise grade business model's changing. The technology is evolving, the builders are kind of, they want go faster. I'm saying they're stuck in a way, but that's my opinion, but there's a lot of growth. >> Yeah. >> The impact, they got to get released up and let it go. Those developers need to accelerate faster. It's been a big part of productivity, and the conversations we've had. So developer impact is huge in Supercloud. What's your, what do you guys think about this? We'll start with you, Sarbjeet. >> Yeah, actually, developers are the masons of the digital empires I call 'em, right? They lay every brick and build all these big empires. On the left side of the SDLC, or the, you know, when you look at the system operations, developer is number one cost from economic side of things, and from technology side of things, they are tech hungry people. They are developers for that reason because developer nights are long, hours are long, they forget about when to eat, you know, like, I've been a developer, I still code. So you want to keep them happy, you want to hug your developers. We always say that, right? Vittorio said that right earlier. The key is to, in this context, in the Supercloud context, is that developers don't mind mucking around with platforms or APIs or new languages, but they hate the infrastructure part. That's a fact. They don't want to muck around with servers. It's friction for them, it is like they don't want to muck around even with the VMs. So they want the programmability to the nth degree. They want to automate everything, so that's how they think and cloud is the programmable infrastructure, industrialization of infrastructure in many ways. So they are happy with where we are going, and we need more abstraction layers for some developers. By the way, I have this sort of thinking frame for last year or so, not all developers are same, right? So if you are a developer at an ISV, you behave differently. If you are a developer at a typical enterprise, you behave differently or you are forced to behave differently because you're not writing software.- >> Well, developers, developers have changed, I mean, Vittorio, you and I were talking earlier on the keynote, and this is kind of the key point is what is a developer these days? If everything is software enabled, I mean, even hardware interviews we do with Nvidia, and Amazon and other people building silicon, they all say the same thing, "It's software on a chip." So you're seeing the role of software up and down the stack and the role of the stack is changing. The old days of full stack developer, what does that even mean? I mean, the cloud is a half a stack kind of right there. So, you know, developers are certainly more agile, but cloud native, I mean VMware is epitome of operations, IT operations, and the Tan Zoo initiative, you guys started, you went after the developers to look at them, and ask them questions, "What do you need?", "How do you transform the Ops from virtualization?" Again, back to your point, so this hardware abstraction, what is software, what is cloud native? It's kind of messy equation these days. How do you guys grokel with that? >> I would argue that developers don't want the Supercloud. I dropped that up there, so, >> Dave: Why not? >> Because developers, they, once they get comfortable in AWS or Google, because they're doing some AI stuff, which is, you know, very trendy right now, or they are in IBM, any of the IPA scaler, professional developers, system developers, they love that stuff, right? Yeah, they don't, the infrastructure gets in the way, but they're just, the problem is, and I think the Supercloud should be driven by the operators because as we discussed, the operators have been left behind because they're busy with day-to-day jobs, and in most cases IT is centralized, developers are in the business units. >> John: Yeah. >> Right? So they get the mandate from the top, say, "Our bank, they're competing against". They gave teenagers or like young people the ability to do all these new things online, and Venmo and all this integration, where are we? "Oh yeah, we can do it", and then build it, and then deploy it, "Okay, we caught up." but now the operators are back in the private cloud trying to keep the backend system running and so I think the Supercloud is needed for the primarily, initially, for the operators to get in front of the developers, fit in the workflow, but lay the foundation so it is secure.- >> So, so I love this thinking because I love the rift, because the rift points to what is the target audience for the value proposition and if you're a developer, Supercloud enables you so you shouldn't have to deal with Supercloud. >> Exactly. >> What you're saying is get the operating environment or operating system done properly, whether it's architecture, building the platform, this comes back to architecture platform conversations. What is the future platform? Is it a vendor supplied or is it customer created platform? >> Dave: So developers want best to breed, is what you just said. >> Vittorio: Yeah. >> Right and operators, they, 'cause developers don't want to deal with governance, they don't want to deal with security, >> No. >> They don't want to deal with spinning up infrastructure. That's the role of the operator, but that's where Supercloud enables, to John's point, the developer, so to your question, is it a platform where the platform vendor is responsible for the architecture, or there is it an architectural standard that spans multiple clouds that has to emerge? Based on what you just presented earlier, Vittorio, you are the determinant of the architecture. It's got to be open, but you guys determine that, whereas the nirvana is, "Oh no, it's all open, and it just kind of works." >> Yeah, so first of all, let's all level set on one thing. You cannot tell developers what to do. >> Dave: Right, great >> At least great developers, right? Cannot tell them what to do. >> Dave: So that's what, that's the way I want to sort of, >> You can tell 'em what's possible. >> There's a bottle on that >> If you tell 'em what's possible, they'll test it, they'll look at it, but if you try to jam it down their throat, >> Yeah. >> Dave: You can't tell 'em how to do it, just like your point >> Let me answer your answer the question. >> Yeah, yeah. >> So I think we need to build an architect, help them build an architecture, but it cannot be proprietary, has to be built on what works in the cloud and so what works in the cloud today is Kubernetes, is you know, number of different open source project that you need to enable and then provide, use this, but when I first got exposed to Kubernetes, I said, "Hallelujah!" We had a runtime that works the same everywhere only to realize there are 12 different distributions. So that's where we come in, right? And other vendors come in to say, "Hey, no, we can make them all look the same. So you still use Kubernetes, but we give you a place to build, to set those operation policy once so that you don't create friction for the developers because that's the last thing you want to do." >> Yeah, actually, coming back to the same point, not all developers are same, right? So if you're ISV developer, you want to go to the lowest sort of level of the infrastructure and you want to shave off the milliseconds from to get that performance, right? If you're working at AWS, you are doing that. If you're working at scale at Facebook, you're doing that. At Twitter, you're doing that, but when you go to DMV and Kansas City, you're not doing that, right? So your developers are different in nature. They are given certain parameters to work with, certain sort of constraints on the budget side. They are educated at a different level as well. Like they don't go to that end of the degree of sort of automation, if you will. So you cannot have the broad stroking of developers. We are talking about a citizen developer these days. That's a extreme low, >> You mean Low-Code. >> Yeah, Low-Code, No-code, yeah, on the extreme side. On one side, that's citizen developers. On the left side is the professional developers, when you say developers, your mind goes to the professional developers, like the hardcore developers, they love the flexibility, you know, >> John: Well app, developers too, I mean. >> App developers, yeah. >> You're right a lot of, >> Sarbjeet: Infrastructure platform developers, app developers, yes. >> But there are a lot of customers, its a spectrum, you're saying. >> Yes, it's a spectrum >> There's a lot of customers don't want deal with that muck. >> Yeah. >> You know, like you said, AWS, Twitter, the sophisticated developers do, but there's a whole suite of developers out there >> Yeah >> That just want tools that are abstracted. >> Within a company, within a company. Like how I see the Supercloud is there shouldn't be anything which blocks the developers, like their view of the world, of the future. Like if you're blocked as a developer, like something comes in front of you, you are not developer anymore, believe me, (John laughing) so you'll go somewhere else >> John: First of all, I'm, >> You'll leave the company by the way. >> Dave: Yeah, you got to quit >> Yeah, you will quit, you will go where the action is, where there's no sort of blockage there. So like if you put in front of them like a huge amount of a distraction, they don't like it, so they don't, >> Well, the idea of a developer, >> Coming back to that >> Let's get into 'cause you mentioned platform. Get year in the term platform engineering now. >> Yeah. >> Platform developer. You know, I remember back in, and I think there's still a term used today, but when I graduated my computer science degree, we were called "Software engineers," right? Do people use that term "Software engineering", or is it "Software development", or they the same, are they different? >> Well, >> I think there's a, >> So, who's engineering what? Are they engineering or are they developing? Or both? Well, I think it the, you made a great point. There is a factor of, I had the, I was blessed to work with Adam Bosworth, that is the guy that created some of the abstraction layer, like Visual Basic and Microsoft Access and he had so, he made his whole career thinking about this layer, and he always talk about the professional developers, the developers that, you know, give him a user manual, maybe just go at the APIs, he'll build anything, right, from system engine, go down there, and then through obstruction, you get the more the procedural logic type of engineers, the people that used to be able to write procedural logic and visual basic and so on and so forth. I think those developers right now are a little cut out of the picture. There's some No-code, Low-Code environment that are maybe gain some traction, I caught up with Adam Bosworth two weeks ago in New York and I asked him "What's happening to this higher level developers?" and you know what he is told me, and he is always a little bit out there, so I'm going to use his thought process here. He says, "ChapGPT", I mean, they will get to a point where this high level procedural logic will be written by, >> John: Computers. >> Computers, and so we may not need as many at the high level, but we still need the engineers down there. The point is the operation needs to get in front of them >> But, wait, wait, you seen the ChatGPT meme, I dunno if it's a Dilbert thing where it's like, "Time to tic" >> Yeah, yeah, yeah, I did that >> "Time to develop the code >> Five minutes, time to decode", you know, to debug the codes like five hours. So you know, the whole equation >> Well, this ChatGPT is a hot wave, everyone's been talking about it because I think it illustrates something that's NextGen, feels NextGen, and it's just getting started so it's going to get better. I mean people are throwing stones at it, but I think it's amazing. It's the equivalent of me seeing the browser for the first time, you know, like, "Wow, this is really compelling." This is game-changing, it's not just keyword chat bots. It's like this is real, this is next level, and I think the Supercloud wave that people are getting behind points to that and I think the question of Ops and Dev comes up because I think if you limit the infrastructure opportunity for a developer, I think they're going to be handicapped. I mean that's a general, my opinion, the thesis is you give more aperture to developers, more choice, more capabilities, more good things could happen, policy, and that's why you're seeing the convergence of networking people, virtualization talent, operational talent, get into the conversation because I think it's an infrastructure engineering opportunity. I think this is a seminal moment in a new stack that's emerging from an infrastructure, software virtualization, low-code, no-code layer that will be completely programmable by things like the next Chat GPT or something different, but yet still the mechanics and the plumbing will still need engineering. >> Sarbjeet: Oh yeah. >> So there's still going to be more stuff coming on. >> Yeah, we have, with the cloud, we have made the infrastructure programmable and you give the programmability to the programmer, they will be very creative with that and so we are being very creative with our infrastructure now and on top of that, we are being very creative with the silicone now, right? So we talk about that. That's part of it, by the way. So you write the code to the particle's silicone now, and on the flip side, the silicone is built for certain use cases for AI Inference and all that. >> You saw this at CES? >> Yeah, I saw at CES, the scenario is this, the Bosch, I spoke to Bosch, I spoke to John Deere, I spoke to AWS guys, >> Yeah. >> They were showcasing their technology there and I was spoke to Azure guys as well. So the Bosch is a good example. So they are building, they are right now using AWS. I have that interview on camera, I will put it some sometime later on there online. So they're using AWS on the back end now, but Bosch is the number one, number one or number two depending on what day it is of the year, supplier of the componentry to the auto industry, and they are creating a platform for our auto industry, so is Qualcomm actually by the way, with the Snapdragon. So they told me that customers, their customers, BMW, Audi, all the manufacturers, they demand the diversity of the backend. Like they don't want all, they, all of them don't want to go to AWS. So they want the choice on the backend. So whatever they cook in the middle has to work, they have to sprinkle the data for the data sovereign side because they have Chinese car makers as well, and for, you know, for other reasons, competitive reasons and like use. >> People don't go to, aw, people don't go to AWS either for political reasons or like competitive reasons or specific use cases, but for the most part, generally, I haven't met anyone who hasn't gone first choice with either, but that's me personally. >> No, but they're building. >> Point is the developer wants choice at the back end is what I'm hearing, but then finish that thought. >> Their developers want the choice, they want the choice on the back end, number one, because the customers are asking for, in this case, the customers are asking for it, right? But the customers requirements actually drive, their economics drives that decision making, right? So in the middle they have to, they're forced to cook up some solution which is vendor neutral on the backend or multicloud in nature. So >> Yeah, >> Every >> I mean I think that's nirvana. I don't think, I personally don't see that happening right now. I mean, I don't see the parody with clouds. So I think that's a challenge. I mean, >> Yeah, true. >> I mean the fact of the matter is if the development teams get fragmented, we had this chat with Kit Colbert last time, I think he's going to come on and I think he's going to talk about his keynote in a few, in an hour or so, development teams is this, the cloud is heterogenous, which is great. It's complex, which is challenging. You need skilled engineering to manage these clouds. So if you're a CIO and you go all in on AWS, it's hard. Then to then go out and say, "I want to be completely multi-vendor neutral" that's a tall order on many levels and this is the multicloud challenge, right? So, the question is, what's the strategy for me, the CIO or CISO, what do I do? I mean, to me, I would go all in on one and start getting hedges and start playing and then look at some >> Crystal clear. Crystal clear to me. >> Go ahead. >> If you're a CIO today, you have to build a platform engineering team, no question. 'Cause if we agree that we cannot tell the great developers what to do, we have to create a platform engineering team that using pieces of the Supercloud can build, and let's make this very pragmatic and give examples. First you need to be able to lay down the run time, okay? So you need a way to deploy multiple different Kubernetes environment in depending on the cloud. Okay, now we got that. The second part >> That's like table stakes. >> That are table stake, right? But now what is the advantage of having a Supercloud service to do that is that now you can put a policy in one place and it gets distributed everywhere consistently. So for example, you want to say, "If anybody in this organization across all these different buildings, all these developers don't even know, build a PCI compliant microservice, They can only talk to PCI compliant microservice." Now, I sleep tight. The developers still do that. Of course they're going to get their hands slapped if they don't encrypt some messages and say, "Oh, that should have been encrypted." So number one. The second thing I want to be able to say, "This service that this developer built over there better satisfy this SLA." So if the SLA is not satisfied, boom, I automatically spin up multiple instances to certify the SLA. Developers unencumbered, they don't even know. So this for me is like, CIO build a platform engineering team using one of the many Supercloud services that allow you to do that and lay down. >> And part of that is that the vendor behavior is such, 'cause the incentive is that they don't necessarily always work together. (John chuckling) I'll give you an example, we're going to hear today from Western Union. They're AWS shop, but they want to go to Google, they want to use some of Google's AI tools 'cause they're good and maybe they're even arguably better, but they're also a Snowflake customer and what you'll hear from them is Amazon and Snowflake are working together so that SageMaker can be integrated with Snowflake but Google said, "No, you want to use our AI tools, you got to use BigQuery." >> Yeah. >> Okay. So they say, "Ah, forget it." So if you have a platform engineering team, you can maybe solve some of that vendor friction and get competitive advantage. >> I think that the future proximity concept that I talk about is like, when you're doing one thing, you want to do another thing. Where do you go to get that thing, right? So that is very important. Like your question, John, is that your point is that AWS is ahead of the pack, which is true, right? They have the >> breadth of >> Infrastructure by a lot >> infrastructure service, right? They breadth of services, right? So, how do you, When do you bring in other cloud providers, right? So I believe that you should standardize on one cloud provider, like that's your primary, and for others, bring them in on as needed basis, in the subsection or sub portfolio of your applications or your platforms, what ever you can. >> So yeah, the Google AI example >> Yeah, I mean, >> Or the Microsoft collaboration software example. I mean there's always or the M and A. >> Yeah, but- >> You're going to get to run Windows, you can run Windows on Amazon, so. >> By the way, Supercloud doesn't mean that you cannot do that. So the perfect example is say that you're using Azure because you have a SQL server intensive workload. >> Yep >> And you're using Google for ML, great. If you are using some differentiated feature of this cloud, you'll have to go somewhere and configure this widget, but what you can abstract with the Supercloud is the lifecycle manage of the service that runs on top, right? So how does the service get deployed, right? How do you monitor performance? How do you lifecycle it? How you secure it that you can abstract and that's the value and eventually value will win. So the customers will find what is the values, obstructing in making it uniform or going deeper? >> How about identity? Like take identity for instance, you know, that's an opportunity to abstract. Whether I use Microsoft Identity or Okta, and I can abstract that. >> Yeah, and then we have APIs and standards that we can use so eventually I think where there is enough pain, the right open source will emerge to solve that problem. >> Dave: Yeah, I can use abstract things like object store, right? That's pretty simple. >> But back to the engineering question though, is that developers, developers, developers, one thing about developers psychology is if something's not right, they say, "Go get fixing. I'm not touching it until you fix it." They're very sticky about, if something's not working, they're not going to do it again, right? So you got to get it right for developers. I mean, they'll maybe tolerate something new, but is the "juice worth the squeeze" as they say, right? So you can't go to direct say, "Hey, it's, what's a work in progress? We're going to get our infrastructure together and the world's going to be great for you, but just hang tight." They're going to be like, "Get your shit together then talk to me." So I think that to me is the question. It's an Ops question, but where's that value for the developer in Supercloud where the capabilities are there, there's less friction, it's simpler, it solves the complexity problem. I don't need these high skilled labor to manage Amazon. I got services exposed. >> That's what we talked about earlier. It's like the Walmart example. They basically, they took away from the developer the need to spin up infrastructure and worry about all the governance. I mean, it's not completely there yet. So the developer could focus on what he or she wanted to do. >> But there's a big, like in our industry, there's a big sort of flaw or the contention between developers and operators. Developers want to be on the cutting edge, right? And operators want to be on the stability, you know, like we want governance. >> Yeah, totally. >> Right, so they want to control, developers are like these little bratty kids, right? And they want Legos, like they want toys, right? Some of them want toys by way. They want Legos, they want to build there and they want make a mess out of it. So you got to make sure. My number one advice in this context is that do it up your application portfolio and, or your platform portfolio if you are an ISV, right? So if you are ISV you most probably, you're building a platform these days, do it up in a way that you can say this portion of our applications and our platform will adhere to what you are saying, standardization, you know, like Kubernetes, like slam dunk, you know, it works across clouds and in your data center hybrid, you know, whole nine yards, but there is some subset on the next door systems of innovation. Everybody has, it doesn't matter if you're DMV of Kansas or you are, you know, metaverse, right? Or Meta company, right, which is Facebook, they have it, they are building something new. For that, give them some freedom to choose different things like play with non-standard things. So that is the mantra for moving forward, for any enterprise. >> Do you think developers are happy with the infrastructure now or are they wanting people to get their act together? I mean, what's your reaction, or you think. >> Developers are happy as long as they can do their stuff, which is running code. They want to write code and innovate. So to me, when Ballmer said, "Developer, develop, Developer, what he meant was, all you other people get your act together so these developers can do their thing, and to me the Supercloud is the way for IT to get there and let developer be creative and go fast. Why not, without getting in trouble. >> Okay, let's wrap up this segment with a super clip. Okay, we're going to do a sound bite that we're going to make into a short video for each of you >> All right >> On you guys summarizing why Supercloud's important, why this next wave is relevant for the practitioners, for the industry and we'll turn this into an Instagram reel, YouTube short. So we'll call it a "Super clip. >> Alright, >> Sarbjeet, you want, you want some time to think about it? You want to go first? Vittorio, you want. >> I just didn't mind. (all laughing) >> No, okay, okay. >> I'll do it again. >> Go back. No, we got a fresh one. We'll going to already got that one in the can. >> I'll go. >> Sarbjeet, you go first. >> I'll go >> What's your super clip? >> In software systems, abstraction is your friend. I always say that. Abstraction is your friend, even if you're super professional developer, abstraction is your friend. We saw from the MFC library from C++ days till today. Abstract, use abstraction. Do not try to reinvent what's already being invented. Leverage cloud, leverage the platform side of the cloud. Not just infrastructure service, but platform as a service side of the cloud as well, and Supercloud is a meta platform built on top of these infrastructure services from three or four or five cloud providers. So use that and embrace the programmability, embrace the abstraction layer. That's the key actually, and developers who are true developers or professional developers as you said, they know that. >> Awesome. Great super clip. Vittorio, another shot at the plate here for super clip. Go. >> Multicloud is awesome. There's a reason why multicloud happened, is because gave our developers the ability to innovate fast and ever before. So if you are embarking on a digital transformation journey, which I call a survival journey, if you're not innovating and transforming, you're not going to be around in business three, five years from now. You have to adopt the Supercloud so the developer can be developer and keep building great, innovating digital experiences for your customers and IT can get in front of it and not get in trouble together. >> Building those super apps with Supercloud. That was a great super clip. Vittorio, thank you for sharing. >> Thanks guys. >> Sarbjeet, thanks for coming on talking about the developer impact Supercloud 2. On our next segment, coming up right now, we're going to hear from Walmart enterprise architect, how they are building and they are continuing to innovate, to build their own Supercloud. Really informative, instructive from a practitioner doing it in real time. Be right back with Walmart here in Palo Alto. Thanks for watching. (gentle music)

Published Date : Feb 17 2023

SUMMARY :

the Supercloud momentum, and developers came up and you were like, and the conversations we've had. and cloud is the and the role of the stack is changing. I dropped that up there, so, developers are in the business units. the ability to do all because the rift points to What is the future platform? is what you just said. the developer, so to your question, You cannot tell developers what to do. Cannot tell them what to do. You can tell 'em your answer the question. but we give you a place to build, and you want to shave off the milliseconds they love the flexibility, you know, platform developers, you're saying. don't want deal with that muck. that are abstracted. Like how I see the Supercloud is So like if you put in front of them you mentioned platform. and I think there's the developers that, you The point is the operation to decode", you know, the browser for the first time, you know, going to be more stuff coming on. and on the flip side, the middle has to work, but for the most part, generally, Point is the developer So in the middle they have to, the parody with clouds. I mean the fact of the matter Crystal clear to me. in depending on the cloud. So if the SLA is not satisfied, boom, 'cause the incentive is that So if you have a platform AWS is ahead of the pack, So I believe that you should standardize or the M and A. you can run Windows on Amazon, so. So the perfect example is abstract and that's the value Like take identity for instance, you know, the right open source will Dave: Yeah, I can use abstract things and the world's going to be great for you, the need to spin up infrastructure on the stability, you know, So that is the mantra for moving forward, Do you think developers are happy and to me the Supercloud is for each of you for the industry you want some time to think about it? I just didn't mind. got that one in the can. platform side of the cloud. Vittorio, another shot at the the ability to innovate thank you for sharing. the developer impact Supercloud 2.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Dave VellantePERSON

0.99+

DavePERSON

0.99+

BMWORGANIZATION

0.99+

WalmartORGANIZATION

0.99+

JohnPERSON

0.99+

SarbjeetPERSON

0.99+

John FurrierPERSON

0.99+

BoschORGANIZATION

0.99+

VittorioPERSON

0.99+

NvidiaORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

AudiORGANIZATION

0.99+

AWSORGANIZATION

0.99+

Steve BallmerPERSON

0.99+

QualcommORGANIZATION

0.99+

Adam BosworthPERSON

0.99+

Palo AltoLOCATION

0.99+

FacebookORGANIZATION

0.99+

New YorkLOCATION

0.99+

Vittorio ViarengoPERSON

0.99+

Kit ColbertPERSON

0.99+

BallmerPERSON

0.99+

fourQUANTITY

0.99+

Sarbjeet JohalPERSON

0.99+

five hoursQUANTITY

0.99+

VMwareORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

Palo Alto, CaliforniaLOCATION

0.99+

MicrosoftORGANIZATION

0.99+

Five minutesQUANTITY

0.99+

NextGenORGANIZATION

0.99+

StackPayneORGANIZATION

0.99+

Visual BasicTITLE

0.99+

second partQUANTITY

0.99+

12 different distributionsQUANTITY

0.99+

CESEVENT

0.99+

FirstQUANTITY

0.99+

TwitterORGANIZATION

0.99+

Kansas CityLOCATION

0.99+

second oneQUANTITY

0.99+

threeQUANTITY

0.99+

bothQUANTITY

0.99+

KansasLOCATION

0.98+

first timeQUANTITY

0.98+

WindowsTITLE

0.98+

last yearDATE

0.98+

Breaking Analysis: Google's Point of View on Confidential Computing


 

>> From theCUBE studios in Palo Alto in Boston, bringing you data-driven insights from theCUBE and ETR. This is Breaking Analysis with Dave Vellante. >> Confidential computing is a technology that aims to enhance data privacy and security by providing encrypted computation on sensitive data and isolating data from apps in a fenced off enclave during processing. The concept of confidential computing is gaining popularity, especially in the cloud computing space where sensitive data is often stored and of course processed. However, there are some who view confidential computing as an unnecessary technology in a marketing ploy by cloud providers aimed at calming customers who are cloud phobic. Hello and welcome to this week's Wikibon CUBE Insights powered by ETR. In this Breaking Analysis, we revisit the notion of confidential computing, and to do so, we'll invite two Google experts to the show, but before we get there, let's summarize briefly. There's not a ton of ETR data on the topic of confidential computing. I mean, it's a technology that's deeply embedded into silicon and computing architectures. But at the highest level, security remains the number one priority being addressed by IT decision makers in the coming year as shown here. And this data is pretty much across the board by industry, by region, by size of company. I mean we dug into it and the only slight deviation from the mean is in financial services. The second and third most cited priorities, cloud migration and analytics, are noticeably closer to cybersecurity in financial services than in other sectors, likely because financial services has always been hyper security conscious, but security is still a clear number one priority in that sector. The idea behind confidential computing is to better address threat models for data in execution. Protecting data at rest and data and transit have long been a focus of security approaches, but more recently, silicon manufacturers have introduced architectures that separate data and applications from the host system. Arm, Intel, AMD, Nvidia and other suppliers are all on board, as are the big cloud players. Now the argument against confidential computing is that it narrowly focuses on memory encryption and it doesn't solve the biggest problems in security. Multiple system images updates different services and the entire code flow aren't directly addressed by memory encryption, rather to truly attack these problems, many believe that OSs need to be re-engineered with the attacker and hacker in mind. There are so many variables and at the end of the day, critics say the emphasis on confidential computing made by cloud providers is overstated and largely hype. This tweet from security researcher Rodrigo Branco sums up the sentiment of many skeptics. He says, "Confidential computing is mostly a marketing campaign for memory encryption. It's not driving the industry towards the hard open problems. It is selling an illusion." Okay. Nonetheless, encrypting data in use and fencing off key components of the system isn't a bad thing, especially if it comes with the package essentially for free. There has been a lack of standardization and interoperability between different confidential computing approaches. But the confidential computing consortium was established in 2019 ostensibly to accelerate the market and influence standards. Notably, AWS is not part of the consortium, likely because the politics of the consortium were probably a conundrum for AWS because the base technology defined by the the consortium is seen as limiting by AWS. This is my guess, not AWS's words, and but I think joining the consortium would validate a definition which AWS isn't aligned with. And two, it's got a lead with this Annapurna acquisition. This was way ahead with Arm integration and so it probably doesn't feel the need to validate its competitors. Anyway, one of the premier members of the confidential computing consortium is Google, along with many high profile names including Arm, Intel, Meta, Red Hat, Microsoft, and others. And we're pleased to welcome two experts on confidential computing from Google to unpack the topic, Nelly Porter is head of product for GCP confidential computing and encryption, and Dr. Patricia Florissi is the technical director for the office of the CTO at Google Cloud. Welcome Nelly and Patricia, great to have you. >> Great to be here. >> Thank you so much for having us. >> You're very welcome. Nelly, why don't you start and then Patricia, you can weigh in. Just tell the audience a little bit about each of your roles at Google Cloud. >> So I'll start, I'm owning a lot of interesting activities in Google and again security or infrastructure securities that I usually own. And we are talking about encryption and when encryption and confidential computing is a part of portfolio in additional areas that I contribute together with my team to Google and our customers is secure software supply chain. Because you need to trust your software. Is it operate in your confidential environment to have end-to-end story about if you believe that your software and your environment doing what you expect, it's my role. >> Got it. Okay. Patricia? >> Well, I am a technical director in the office of the CTO, OCTO for short, in Google Cloud. And we are a global team. We include former CTOs like myself and senior technologists from large corporations, institutions and a lot of success, we're startups as well. And we have two main goals. First, we walk side by side with some of our largest, more strategic or most strategical customers and we help them solve complex engineering technical problems. And second, we are devise Google and Google Cloud engineering and product management and tech on there, on emerging trends and technologies to guide the trajectory of our business. We are unique group, I think, because we have created this collaborative culture with our customers. And within OCTO, I spend a lot of time collaborating with customers and the industry at large on technologies that can address privacy, security, and sovereignty of data in general. >> Excellent. Thank you for that both of you. Let's get into it. So Nelly, what is confidential computing? From Google's perspective, how do you define it? >> Confidential computing is a tool and it's still one of the tools in our toolbox. And confidential computing is a way how we would help our customers to complete this very interesting end-to-end lifecycle of the data. And when customers bring in the data to cloud and want to protect it as they ingest it to the cloud, they protect it at rest when they store data in the cloud. But what was missing for many, many years is ability for us to continue protecting data and workloads of our customers when they running them. And again, because data is not brought to cloud to have huge graveyard, we need to ensure that this data is actually indexed. Again, there is some insights driven and drawn from this data. You have to process this data and confidential computing here to help. Now we have end to end protection of our customer's data when they bring the workloads and data to cloud, thanks to confidential computing. >> Thank you for that. Okay, we're going to get into the architecture a bit, but before we do, Patricia, why do you think this topic of confidential computing is such an important technology? Can you explain, do you think it's transformative for customers and if so, why? >> Yeah, I would maybe like to use one thought, one way, one intuition behind why confidential commuting matters, because at the end of the day, it reduces more and more the customer's thresh boundaries and the attack surface. That's about reducing that periphery, the boundary in which the customer needs to mind about trust and safety. And in a way, is a natural progression that you're using encryption to secure and protect the data. In the same way that we are encrypting data in transit and at rest, now we are also encrypting data while in use. And among other beneficials, I would say one of the most transformative ones is that organizations will be able to collaborate with each other and retain the confidentiality of the data. And that is across industry, even though it's highly focused on, I wouldn't say highly focused, but very beneficial for highly regulated industries. It applies to all of industries. And if you look at financing for example, where bankers are trying to detect fraud, and specifically double finance where you are, a customer is actually trying to get a finance on an asset, let's say a boat or a house, and then it goes to another bank and gets another finance on that asset. Now bankers would be able to collaborate and detect fraud while preserving confidentiality and privacy of the data. >> Interesting. And I want to understand that a little bit more but I'm going to push you a little bit on this, Nelly, if I can because there's a narrative out there that says confidential computing is a marketing ploy, I talked about this upfront, by cloud providers that are just trying to placate people that are scared of the cloud. And I'm presuming you don't agree with that, but I'd like you to weigh in here. The argument is confidential computing is just memory encryption and it doesn't address many other problems. It is over hyped by cloud providers. What do you say to that line of thinking? >> I absolutely disagree, as you can imagine, with this statement, but the most importantly is we mixing multiple concepts, I guess. And exactly as Patricia said, we need to look at the end-to-end story, not again the mechanism how confidential computing trying to again, execute and protect a customer's data and why it's so critically important because what confidential computing was able to do, it's in addition to isolate our tenants in multi-tenant environments the cloud covering to offer additional stronger isolation. They called it cryptographic isolation. It's why customers will have more trust to customers and to other customers, the tenant that's running on the same host but also us because they don't need to worry about against threats and more malicious attempts to penetrate the environment. So what confidential computing is helping us to offer our customers, stronger isolation between tenants in this multi-tenant environment, but also incredibly important, stronger isolation of our customers, so tenants from us. We also writing code, we also software providers will also make mistakes or have some zero days. Sometimes again us introduced, sometimes introduced by our adversaries. But what I'm trying to say by creating this cryptographic layer of isolation between us and our tenants and amongst those tenants, we're really providing meaningful security to our customers and eliminate some of the worries that they have running on multi-tenant spaces or even collaborating to gather this very sensitive data knowing that this particular protection is available to them. >> Okay, thank you. Appreciate that. And I think malicious code is often a threat model missed in these narratives. Operator access, yeah, maybe I trust my clouds provider, but if I can fence off your access even better, I'll sleep better at night. Separating a code from the data, everybody's, Arm, Intel, AMD, Nvidia, others, they're all doing it. I wonder if, Nelly, if we could stay with you and bring up the slide on the architecture. What's architecturally different with confidential computing versus how operating systems and VMs have worked traditionally. We're showing a slide here with some VMs, maybe you could take us through that. >> Absolutely. And Dave, the whole idea for Google and now industry way of dealing with confidential computing is to ensure that three main property is actually preserved. Customers don't need to change the code. They can operate on those VMs exactly as they would with normal non-confidential VMs, but to give them this opportunity of lift and shift or no changing their apps and performing and having very, very, very low latency and scale as any cloud can, something that Google actually pioneer in confidential computing. I think we need to open and explain how this magic was actually done. And as I said, it's again the whole entire system have to change to be able to provide this magic. And I would start with we have this concept of root of trust and root of trust where we will ensure that this machine, when the whole entire post has integrity guarantee, means nobody changing my code on the most low level of system. And we introduce this in 2017 called Titan. It was our specific ASIC, specific, again, inch by inch system on every single motherboard that we have that ensures that your low level former, your actually system code, your kernel, the most powerful system is actually proper configured and not changed, not tampered. We do it for everybody, confidential computing included. But for confidential computing, what we have to change, we bring in AMD, or again, future silicon vendors and we have to trust their former, their way to deal with our confidential environments. And that's why we have obligation to validate integrity, not only our software and our former but also former and software of our vendors, silicon vendors. So we actually, when we booting this machine, as you can see, we validate that integrity of all of the system is in place. It means nobody touching, nobody changing, nobody modifying it. But then we have this concept of AMD secure processor, it's special ASICs, best specific things that generate a key for every single VM that our customers will run or every single node in Kubernetes or every single worker thread in our Hadoop or Spark capability. We offer all of that. And those keys are not available to us. It's the best keys ever in encryption space because when we are talking about encryption, the first question that I'm receiving all the time, where's the key, who will have access to the key? Because if you have access to the key then it doesn't matter if you encrypted or not. So, but the case in confidential computing provides so revolutionary technology, us cloud providers, who don't have access to the keys. They sitting in the hardware and they head to memory controller. And it means when hypervisors that also know about these wonderful things saying I need to get access to the memories that this particular VM trying to get access to, they do not decrypt the data, they don't have access to the key because those keys are random, ephemeral and per VM, but the most importantly, in hardware not exportable. And it means now you would be able to have this very interesting role that customers or cloud providers will not be able to get access to your memory. And what we do, again, as you can see our customers don't need to change their applications, their VMs are running exactly as it should run and what you're running in VM, you actually see your memory in clear, it's not encrypted, but God forbid is trying somebody to do it outside of my confidential box. No, no, no, no, no, they would not be able to do it. Now you'll see cyber and it's exactly what combination of these multiple hardware pieces and software pieces have to do. So OS is also modified. And OS is modified such way to provide integrity. It means even OS that you're running in your VM box is not modifiable and you, as customer, can verify. But the most interesting thing, I guess, how to ensure the super performance of this environment because you can imagine, Dave, that encrypting and it's additional performance, additional time, additional latency. So we were able to mitigate all of that by providing incredibly interesting capability in the OS itself. So our customers will get no changes needed, fantastic performance and scales as they would expect from cloud providers like Google. >> Okay, thank you. Excellent. Appreciate that explanation. So, again, the narrative on this as well, you've already given me guarantees as a cloud provider that you don't have access to my data, but this gives another level of assurance, key management as they say is key. Now humans aren't managing the keys, the machines are managing them. So Patricia, my question to you is, in addition to, let's go pre confidential computing days, what are the sort of new guarantees that these hardware-based technologies are going to provide to customers? >> So if I am a customer, I am saying I now have full guarantee of confidentiality and integrity of the data and of the code. So if you look at code and data confidentiality, the customer cares and they want to know whether their systems are protected from outside or unauthorized access, and that recovered with Nelly, that it is. Confidential computing actually ensures that the applications and data internals remain secret, right? The code is actually looking at the data, the only the memory is decrypting the data with a key that is ephemeral and per VM and generated on demand. Then you have the second point where you have code and data integrity, and now customers want to know whether their data was corrupted, tampered with or impacted by outside actors. And what confidential computing ensures is that application internals are not tampered with. So the application, the workload as we call it, that is processing the data, it's also, it has not been tampered and preserves integrity. I would also say that this is all verifiable. So you have attestation and these attestation actually generates a log trail and the log trail guarantees that, provides a proof that it was preserved. And I think that the offer's also a guarantee of what we call ceiling, this idea that the secrets have been preserved and not tampered with, confidentiality and integrity of code and data. >> Got it. Okay, thank you. Nelly, you mentioned, I think I heard you say that the applications, it's transparent, you don't have to change the application, it just comes for free essentially. And we showed some various parts of the stack before. I'm curious as to what's affected, but really more importantly, what is specifically Google's value add? How do partners participate in this, the ecosystem, or maybe said another way, how does Google ensure the compatibility of confidential computing with existing systems and applications? >> And a fantastic question by the way. And it's very difficult and definitely complicated world because to be able to provide these guarantees, actually a lot of work was done by community. Google is very much operate in open, so again, our operating system, we working with operating system repository OSs, OS vendors to ensure that all capabilities that we need is part of the kernels, are part of the releases and it's available for customers to understand and even explore if they have fun to explore a lot of code. We have also modified together with our silicon vendors a kernel, host kernel to support this capability and it means working this community to ensure that all of those patches are there. We also worked with every single silicon vendor as you've seen, and that's what I probably feel that Google contributed quite a bit in this whole, we moved our industry, our community, our vendors to understand the value of easy to use confidential computing or removing barriers. And now I don't know if you noticed, Intel is pulling the lead and also announcing their trusted domain extension, very similar architecture. And no surprise, it's, again, a lot of work done with our partners to, again, convince, work with them and make this capability available. The same with Arm this year, actually last year, Arm announced their future design for confidential computing. It's called Confidential Computing Architecture. And it's also influenced very heavily with similar ideas by Google and industry overall. So it's a lot of work in confidential computing consortiums that we are doing, for example, simply to mention, to ensure interop, as you mentioned, between different confidential environments of cloud providers. They want to ensure that they can attest to each other because when you're communicating with different environments, you need to trust them. And if it's running on different cloud providers, you need to ensure that you can trust your receiver when you are sharing your sensitive data workloads or secret with them. So we coming as a community and we have this attestation sig, the, again, the community based systems that we want to build and influence and work with Arm and every other cloud providers to ensure that we can interrupt and it means it doesn't matter where confidential workloads will be hosted, but they can exchange the data in secure, verifiable and controlled by customers way. And to do it, we need to continue what we are doing, working open, again, and contribute with our ideas and ideas of our partners to this role to become what we see confidential computing has to become, it has to become utility. It doesn't need to be so special, but it's what we want it to become. >> Let's talk about, thank you for that explanation. Let's talk about data sovereignty because when you think about data sharing, you think about data sharing across the ecosystem and different regions and then of course data sovereignty comes up. Typically public policy lags, the technology industry and sometimes is problematic. I know there's a lot of discussions about exceptions, but Patricia, we have a graphic on data sovereignty. I'm interested in how confidential computing ensures that data sovereignty and privacy edicts are adhered to, even if they're out of alignment maybe with the pace of technology. One of the frequent examples is when you delete data, can you actually prove that data is deleted with a hundred percent certainty? You got to prove that and a lot of other issues. So looking at this slide, maybe you could take us through your thinking on data sovereignty. >> Perfect. So for us, data sovereignty is only one of the three pillars of digital sovereignty. And I don't want to give the impression that confidential computing addresses it all. That's why we want to step back and say, hey, digital sovereignty includes data sovereignty where we are giving you full control and ownership of the location, encryption and access to your data. Operational sovereignty where the goal is to give our Google Cloud customers full visibility and control over the provider operations, right? So if there are any updates on hardware, software stack, any operations, there is full transparency, full visibility. And then the third pillar is around software sovereignty where the customer wants to ensure that they can run their workloads without dependency on the provider's software. So they have sometimes is often referred as survivability, that you can actually survive if you are untethered to the cloud and that you can use open source. Now let's take a deep dive on data sovereignty, which by the way is one of my favorite topics. And we typically focus on saying, hey, we need to care about data residency. We care where the data resides because where the data is at rest or in processing, it typically abides to the jurisdiction, the regulations of the jurisdiction where the data resides. And others say, hey, let's focus on data protection. We want to ensure the confidentiality and integrity and availability of the data, which confidential computing is at the heart of that data protection. But it is yet another element that people typically don't talk about when talking about data sovereignty, which is the element of user control. And here, Dave, is about what happens to the data when I give you access to my data. And this reminds me of security two decades ago, even a decade ago, where we started the security movement by putting firewall protections and login accesses. But once you were in, you were able to do everything you wanted with the data. An insider had access to all the infrastructure, the data and the code. And that's similar because with data sovereignty we care about whether it resides, where, who is operating on the data. But the moment that the data is being processed, I need to trust that the processing of the data will abide by user control, by the policies that I put in place of how my data is going to be used. And if you look at a lot of the regulation today and a lot of the initiatives around the International Data Space Association, IDSA, and Gaia-X, there is a movement of saying the two parties, the provider of the data and the receiver of the data are going to agree on a contract that describes what my data can be used for. The challenge is to ensure that once the data crosses boundaries, that the data will be used for the purposes that it was intended and specified in the contract. And if you actually bring together, and this is the exciting part, confidential computing together with policy enforcement, now the policy enforcement can guarantee that the data is only processed within the confines of a confidential computing environment, that the workload is cryptographically verified that there is the workload that was meant to process the data and that the data will be only used when abiding to the confidentiality and integrity safety of the confidential computing environment. And that's why we believe confidential computing is one necessary and essential technology that will allow us to ensure data sovereignty, especially when it comes to user control. >> Thank you for that. I mean it was a deep dive, I mean brief, but really detailed. So I appreciate that, especially the verification of the enforcement. Last question, I met you two because as part of my year end prediction post, you guys sent in some predictions and I wasn't able to get to them in the predictions post. So I'm thrilled that you were able to make the time to come on the program. How widespread do you think the adoption of confidential computing will be in 23 and what's the maturity curve look like, this decade in your opinion? Maybe each of you could give us a brief answer. >> So my prediction in five, seven years, as I started, it'll become utility. It'll become TLS as of, again, 10 years ago we couldn't believe that websites will have certificates and we will support encrypted traffic. Now we do and it's become ubiquity. It's exactly where confidential computing is getting and heading, I don't know we deserve yet. It'll take a few years of maturity for us, but we will be there. >> Thank you. And Patricia, what's your prediction? >> I will double that and say, hey, in the future, in the very near future, you will not be able to afford not having it. I believe as digital sovereignty becomes evermore top of mind with sovereign states and also for multi national organizations and for organizations that want to collaborate with each other, confidential computing will become the norm. It'll become the default, if I say, mode of operation. I like to compare that today is inconceivable. If we talk to the young technologists, it's inconceivable to think that at some point in history, and I happen to be alive that we had data at rest that was not encrypted, data in transit that was not encrypted, and I think that will be inconceivable at some point in the near future that to have unencrypted data while in use. >> And plus I think the beauty of the this industry is because there's so much competition, this essentially comes for free. I want to thank you both for spending some time on Breaking Analysis. There's so much more we could cover. I hope you'll come back to share the progress that you're making in this area and we can double click on some of these topics. Really appreciate your time. >> Anytime. >> Thank you so much. >> In summary, while confidential computing is being touted by the cloud players as a promising technology for enhancing data privacy and security, there are also those, as we said, who remain skeptical. The truth probably lies somewhere in between and it will depend on the specific implementation and the use case as to how effective confidential computing will be. Look, as with any new tech, it's important to carefully evaluate the potential benefits, the drawbacks, and make informed decisions based on the specific requirements in the situation and the constraints of each individual customer. But the bottom line is silicon manufacturers are working with cloud providers and other system companies to include confidential computing into their architectures. Competition, in our view, will moderate price hikes. And at the end of the day, this is under the covers technology that essentially will come for free. So we'll take it. I want to thank our guests today, Nelly and Patricia from Google, and thanks to Alex Myerson who's on production and manages the podcast. Ken Schiffman as well out of our Boston studio, Kristin Martin and Cheryl Knight help get the word out on social media and in our newsletters. And Rob Hof is our editor-in-chief over at siliconangle.com. Does some great editing for us, thank you all. Remember all these episodes are available as podcasts. Wherever you listen, just search Breaking Analysis podcast. I publish each week on wikibon.com and siliconangle.com where you can get all the news. If you want to get in touch, you can email me at david.vellante@siliconangle.com or dm me @DVellante. And you can also comment on my LinkedIn post. Definitely you want to check out etr.ai for the best survey data in the enterprise tech business. I know we didn't hit on a lot today, but there's some amazing data and it's always being updated, so check that out. This is Dave Vellante for theCUBE Insights, powered by ETR. Thanks for watching and we'll see you next time on Breaking Analysis. (upbeat music)

Published Date : Feb 11 2023

SUMMARY :

bringing you data-driven and at the end of the day, Just tell the audience a little and confidential computing Got it. and the industry at large for that both of you. in the data to cloud into the architecture a bit, and privacy of the data. people that are scared of the cloud. and eliminate some of the we could stay with you and they head to memory controller. So, again, the narrative on this as well, and integrity of the data and of the code. how does Google ensure the compatibility and ideas of our partners to this role One of the frequent examples and that the data will be only used of the enforcement. and we will support encrypted traffic. And Patricia, and I happen to be alive beauty of the this industry and the constraints of

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
NellyPERSON

0.99+

PatriciaPERSON

0.99+

International Data Space AssociationORGANIZATION

0.99+

Alex MyersonPERSON

0.99+

AWSORGANIZATION

0.99+

IDSAORGANIZATION

0.99+

Rodrigo BrancoPERSON

0.99+

Dave VellantePERSON

0.99+

DavePERSON

0.99+

MicrosoftORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

NvidiaORGANIZATION

0.99+

2019DATE

0.99+

2017DATE

0.99+

Kristin MartinPERSON

0.99+

Nelly PorterPERSON

0.99+

Ken SchiffmanPERSON

0.99+

Rob HofPERSON

0.99+

Cheryl KnightPERSON

0.99+

last yearDATE

0.99+

Palo AltoLOCATION

0.99+

Red HatORGANIZATION

0.99+

two partiesQUANTITY

0.99+

AMDORGANIZATION

0.99+

Patricia FlorissiPERSON

0.99+

IntelORGANIZATION

0.99+

oneQUANTITY

0.99+

fiveQUANTITY

0.99+

second pointQUANTITY

0.99+

david.vellante@siliconangle.comOTHER

0.99+

MetaORGANIZATION

0.99+

secondQUANTITY

0.99+

thirdQUANTITY

0.99+

OneQUANTITY

0.99+

twoQUANTITY

0.99+

ArmORGANIZATION

0.99+

eachQUANTITY

0.99+

two expertsQUANTITY

0.99+

FirstQUANTITY

0.99+

first questionQUANTITY

0.99+

Gaia-XORGANIZATION

0.99+

two decades agoDATE

0.99+

bothQUANTITY

0.99+

this yearDATE

0.99+

seven yearsQUANTITY

0.99+

OCTOORGANIZATION

0.99+

zero daysQUANTITY

0.98+

10 years agoDATE

0.98+

each weekQUANTITY

0.98+

todayDATE

0.97+

Breaking Analysis: Google's PoV on Confidential Computing


 

>> From theCUBE Studios in Palo Alto in Boston, bringing you data-driven insights from theCUBE and ETR. This is Breaking Analysis with Dave Vellante. >> Confidential computing is a technology that aims to enhance data privacy and security, by providing encrypted computation on sensitive data and isolating data, and apps that are fenced off enclave during processing. The concept of, I got to start over. I fucked that up, I'm sorry. That's not right, what I said was not right. On Dave in five, four, three. Confidential computing is a technology that aims to enhance data privacy and security by providing encrypted computation on sensitive data, isolating data from apps and a fenced off enclave during processing. The concept of confidential computing is gaining popularity, especially in the cloud computing space, where sensitive data is often stored and of course processed. However, there are some who view confidential computing as an unnecessary technology in a marketing ploy by cloud providers aimed at calming customers who are cloud phobic. Hello and welcome to this week's Wikibon Cube Insights powered by ETR. In this Breaking Analysis, we revisit the notion of confidential computing, and to do so, we'll invite two Google experts to the show. But before we get there, let's summarize briefly. There's not a ton of ETR data on the topic of confidential computing, I mean, it's a technology that's deeply embedded into silicon and computing architectures. But at the highest level, security remains the number one priority being addressed by IT decision makers in the coming year as shown here. And this data is pretty much across the board by industry, by region, by size of company. I mean we dug into it and the only slight deviation from the mean is in financial services. The second and third most cited priorities, cloud migration and analytics are noticeably closer to cybersecurity in financial services than in other sectors, likely because financial services has always been hyper security conscious, but security is still a clear number one priority in that sector. The idea behind confidential computing is to better address threat models for data in execution. Protecting data at rest and data in transit have long been a focus of security approaches, but more recently, silicon manufacturers have introduced architectures that separate data and applications from the host system, ARM, Intel, AMD, Nvidia and other suppliers are all on board, as are the big cloud players. Now, the argument against confidential computing is that it narrowly focuses on memory encryption and it doesn't solve the biggest problems in security. Multiple system images, updates, different services and the entire code flow aren't directly addressed by memory encryption. Rather to truly attack these problems, many believe that OSs need to be re-engineered with the attacker and hacker in mind. There are so many variables and at the end of the day, critics say the emphasis on confidential computing made by cloud providers is overstated and largely hype. This tweet from security researcher Rodrigo Bronco, sums up the sentiment of many skeptics. He says, "Confidential computing is mostly a marketing campaign from memory encryption. It's not driving the industry towards the hard open problems. It is selling an illusion." Okay. Nonetheless, encrypting data in use and fencing off key components of the system isn't a bad thing, especially if it comes with the package essentially for free. There has been a lack of standardization and interoperability between different confidential computing approaches. But the confidential computing consortium was established in 2019 ostensibly to accelerate the market and influence standards. Notably, AWS is not part of the consortium, likely because the politics of the consortium were probably a conundrum for AWS because the base technology defined by the consortium is seen as limiting by AWS. This is my guess, not AWS' words. But I think joining the consortium would validate a definition which AWS isn't aligned with. And two, it's got to lead with this Annapurna acquisition. It was way ahead with ARM integration, and so it's probably doesn't feel the need to validate its competitors. Anyway, one of the premier members of the confidential computing consortium is Google, along with many high profile names, including Aem, Intel, Meta, Red Hat, Microsoft, and others. And we're pleased to welcome two experts on confidential computing from Google to unpack the topic. Nelly Porter is Head of Product for GCP Confidential Computing and Encryption and Dr. Patricia Florissi is the Technical Director for the Office of the CTO at Google Cloud. Welcome Nelly and Patricia, great to have you. >> Great to be here. >> Thank you so much for having us. >> You're very welcome. Nelly, why don't you start and then Patricia, you can weigh in. Just tell the audience a little bit about each of your roles at Google Cloud. >> So I'll start, I'm owning a lot of interesting activities in Google and again, security or infrastructure securities that I usually own. And we are talking about encryption, end-to-end encryption, and confidential computing is a part of portfolio. Additional areas that I contribute to get with my team to Google and our customers is secure software supply chain because you need to trust your software. Is it operate in your confidential environment to have end-to-end security, about if you believe that your software and your environment doing what you expect, it's my role. >> Got it. Okay, Patricia? >> Well, I am a Technical Director in the Office of the CTO, OCTO for short in Google Cloud. And we are a global team, we include former CTOs like myself and senior technologies from large corporations, institutions and a lot of success for startups as well. And we have two main goals, first, we walk side by side with some of our largest, more strategic or most strategical customers and we help them solve complex engineering technical problems. And second, we advice Google and Google Cloud Engineering, product management on emerging trends and technologies to guide the trajectory of our business. We are unique group, I think, because we have created this collaborative culture with our customers. And within OCTO I spend a lot of time collaborating with customers in the industry at large on technologies that can address privacy, security, and sovereignty of data in general. >> Excellent. Thank you for that both of you. Let's get into it. So Nelly, what is confidential computing from Google's perspective? How do you define it? >> Confidential computing is a tool and one of the tools in our toolbox. And confidential computing is a way how we would help our customers to complete this very interesting end-to-end lifecycle of the data. And when customers bring in the data to cloud and want to protect it as they ingest it to the cloud, they protect it at rest when they store data in the cloud. But what was missing for many, many years is ability for us to continue protecting data and workloads of our customers when they run them. And again, because data is not brought to cloud to have huge graveyard, we need to ensure that this data is actually indexed. Again, there is some insights driven and drawn from this data. You have to process this data and confidential computing here to help. Now we have end-to-end protection of our customer's data when they bring the workloads and data to cloud thanks to confidential computing. >> Thank you for that. Okay, we're going to get into the architecture a bit, but before we do Patricia, why do you think this topic of confidential computing is such an important technology? Can you explain? Do you think it's transformative for customers and if so, why? >> Yeah, I would maybe like to use one thought, one way, one intuition behind why confidential computing matters because at the end of the day, it reduces more and more the customer's thrush boundaries and the attack surface. That's about reducing that periphery, the boundary in which the customer needs to mind about trust and safety. And in a way is a natural progression that you're using encryption to secure and protect data in the same way that we are encrypting data in transit and at rest. Now, we are also encrypting data while in the use. And among other beneficials, I would say one of the most transformative ones is that organizations will be able to collaborate with each other and retain the confidentiality of the data. And that is across industry, even though it's highly focused on, I wouldn't say highly focused but very beneficial for highly regulated industries, it applies to all of industries. And if you look at financing for example, where bankers are trying to detect fraud and specifically double finance where a customer is actually trying to get a finance on an asset, let's say a boat or a house, and then it goes to another bank and gets another finance on that asset. Now bankers would be able to collaborate and detect fraud while preserving confidentiality and privacy of the data. >> Interesting and I want to understand that a little bit more but I got to push you a little bit on this, Nellie if I can, because there's a narrative out there that says confidential computing is a marketing ploy I talked about this up front, by cloud providers that are just trying to placate people that are scared of the cloud. And I'm presuming you don't agree with that, but I'd like you to weigh in here. The argument is confidential computing is just memory encryption, it doesn't address many other problems. It is over hyped by cloud providers. What do you say to that line of thinking? >> I absolutely disagree as you can imagine Dave, with this statement. But the most importantly is we mixing a multiple concepts I guess, and exactly as Patricia said, we need to look at the end-to-end story, not again, is a mechanism. How confidential computing trying to execute and protect customer's data and why it's so critically important. Because what confidential computing was able to do, it's in addition to isolate our tenants in multi-tenant environments the cloud offering to offer additional stronger isolation, they called it cryptographic isolation. It's why customers will have more trust to customers and to other customers, the tenants running on the same host but also us because they don't need to worry about against rats and more malicious attempts to penetrate the environment. So what confidential computing is helping us to offer our customers stronger isolation between tenants in this multi-tenant environment, but also incredibly important, stronger isolation of our customers to tenants from us. We also writing code, we also software providers, we also make mistakes or have some zero days. Sometimes again us introduce, sometimes introduced by our adversaries. But what I'm trying to say by creating this cryptographic layer of isolation between us and our tenants and among those tenants, we really providing meaningful security to our customers and eliminate some of the worries that they have running on multi-tenant spaces or even collaborating together with very sensitive data knowing that this particular protection is available to them. >> Okay, thank you. Appreciate that. And I think malicious code is often a threat model missed in these narratives. You know, operator access. Yeah, maybe I trust my cloud's provider, but if I can fence off your access even better, I'll sleep better at night separating a code from the data. Everybody's ARM, Intel, AMD, Nvidia and others, they're all doing it. I wonder if Nell, if we could stay with you and bring up the slide on the architecture. What's architecturally different with confidential computing versus how operating systems and VMs have worked traditionally? We're showing a slide here with some VMs, maybe you could take us through that. >> Absolutely, and Dave, the whole idea for Google and now industry way of dealing with confidential computing is to ensure that three main property is actually preserved. Customers don't need to change the code. They can operate in those VMs exactly as they would with normal non-confidential VMs. But to give them this opportunity of lift and shift though, no changing the apps and performing and having very, very, very low latency and scale as any cloud can, some things that Google actually pioneer in confidential computing. I think we need to open and explain how this magic was actually done, and as I said, it's again the whole entire system have to change to be able to provide this magic. And I would start with we have this concept of root of trust and root of trust where we will ensure that this machine within the whole entire host has integrity guarantee, means nobody changing my code on the most low level of system, and we introduce this in 2017 called Titan. So our specific ASIC, specific inch by inch system on every single motherboard that we have that ensures that your low level former, your actually system code, your kernel, the most powerful system is actually proper configured and not changed, not tempered. We do it for everybody, confidential computing included, but for confidential computing is what we have to change, we bring in AMD or future silicon vendors and we have to trust their former, their way to deal with our confidential environments. And that's why we have obligation to validate intelligent not only our software and our former but also former and software of our vendors, silicon vendors. So we actually, when we booting this machine as you can see, we validate that integrity of all of this system is in place. It means nobody touching, nobody changing, nobody modifying it. But then we have this concept of AMD Secure Processor, it's special ASIC best specific things that generate a key for every single VM that our customers will run or every single node in Kubernetes or every single worker thread in our Hadoop spark capability. We offer all of that and those keys are not available to us. It's the best case ever in encryption space because when we are talking about encryption, the first question that I'm receiving all the time, "Where's the key? Who will have access to the key?" because if you have access to the key then it doesn't matter if you encrypted or not. So, but the case in confidential computing why it's so revolutionary technology, us cloud providers who don't have access to the keys, they're sitting in the hardware and they fed to memory controller. And it means when hypervisors that also know about this wonderful things saying I need to get access to the memories, that this particular VM I'm trying to get access to. They do not decrypt the data, they don't have access to the key because those keys are random, ephemeral and per VM, but most importantly in hardware not exportable. And it means now you will be able to have this very interesting world that customers or cloud providers will not be able to get access to your memory. And what we do, again as you can see, our customers don't need to change their applications. Their VMs are running exactly as it should run. And what you've running in VM, you actually see your memory clear, it's not encrypted. But God forbid is trying somebody to do it outside of my confidential box, no, no, no, no, no, you will now be able to do it. Now, you'll see cyber test and it's exactly what combination of these multiple hardware pieces and software pieces have to do. So OS is also modified and OS is modified such way to provide integrity. It means even OS that you're running in your VM box is not modifiable and you as customer can verify. But the most interesting thing I guess how to ensure the super performance of this environment because you can imagine Dave, that's increasing and it's additional performance, additional time, additional latency. So we're able to mitigate all of that by providing incredibly interesting capability in the OS itself. So our customers will get no changes needed, fantastic performance and scales as they would expect from cloud providers like Google. >> Okay, thank you. Excellent, appreciate that explanation. So you know again, the narrative on this is, well, you've already given me guarantees as a cloud provider that you don't have access to my data, but this gives another level of assurance, key management as they say is key. Now humans aren't managing the keys, the machines are managing them. So Patricia, my question to you is in addition to, let's go pre-confidential computing days, what are the sort of new guarantees that these hardware based technologies are going to provide to customers? >> So if I am a customer, I am saying I now have full guarantee of confidentiality and integrity of the data and of the code. So if you look at code and data confidentiality, the customer cares and they want to know whether their systems are protected from outside or unauthorized access, and that we covered with Nelly that it is. Confidential computing actually ensures that the applications and data antennas remain secret. The code is actually looking at the data, only the memory is decrypting the data with a key that is ephemeral, and per VM, and generated on demand. Then you have the second point where you have code and data integrity and now customers want to know whether their data was corrupted, tempered with or impacted by outside actors. And what confidential computing ensures is that application internals are not tempered with. So the application, the workload as we call it, that is processing the data is also has not been tempered and preserves integrity. I would also say that this is all verifiable, so you have attestation and this attestation actually generates a log trail and the log trail guarantees that provides a proof that it was preserved. And I think that the offers also a guarantee of what we call sealing, this idea that the secrets have been preserved and not tempered with, confidentiality and integrity of code and data. >> Got it. Okay, thank you. Nelly, you mentioned, I think I heard you say that the applications is transparent, you don't have to change the application, it just comes for free essentially. And we showed some various parts of the stack before, I'm curious as to what's affected, but really more importantly, what is specifically Google's value add? How do partners participate in this, the ecosystem or maybe said another way, how does Google ensure the compatibility of confidential computing with existing systems and applications? >> And a fantastic question by the way, and it's very difficult and definitely complicated world because to be able to provide these guarantees, actually a lot of work was done by community. Google is very much operate and open. So again our operating system, we working this operating system repository OS is OS vendors to ensure that all capabilities that we need is part of the kernels are part of the releases and it's available for customers to understand and even explore if they have fun to explore a lot of code. We have also modified together with our silicon vendors kernel, host kernel to support this capability and it means working this community to ensure that all of those pages are there. We also worked with every single silicon vendor as you've seen, and it's what I probably feel that Google contributed quite a bit in this world. We moved our industry, our community, our vendors to understand the value of easy to use confidential computing or removing barriers. And now I don't know if you noticed Intel is following the lead and also announcing a trusted domain extension, very similar architecture and no surprise, it's a lot of work done with our partners to convince work with them and make this capability available. The same with ARM this year, actually last year, ARM announced future design for confidential computing, it's called confidential computing architecture. And it's also influenced very heavily with similar ideas by Google and industry overall. So it's a lot of work in confidential computing consortiums that we are doing, for example, simply to mention, to ensure interop as you mentioned, between different confidential environments of cloud providers. They want to ensure that they can attest to each other because when you're communicating with different environments, you need to trust them. And if it's running on different cloud providers, you need to ensure that you can trust your receiver when you sharing your sensitive data workloads or secret with them. So we coming as a community and we have this at Station Sig, the community-based systems that we want to build, and influence, and work with ARM and every other cloud providers to ensure that they can interop. And it means it doesn't matter where confidential workloads will be hosted, but they can exchange the data in secure, verifiable and controlled by customers really. And to do it, we need to continue what we are doing, working open and contribute with our ideas and ideas of our partners to this role to become what we see confidential computing has to become, it has to become utility. It doesn't need to be so special, but it's what what we've wanted to become. >> Let's talk about, thank you for that explanation. Let's talk about data sovereignty because when you think about data sharing, you think about data sharing across the ecosystem in different regions and then of course data sovereignty comes up, typically public policy, lags, the technology industry and sometimes it's problematic. I know there's a lot of discussions about exceptions but Patricia, we have a graphic on data sovereignty. I'm interested in how confidential computing ensures that data sovereignty and privacy edicts are adhered to, even if they're out of alignment maybe with the pace of technology. One of the frequent examples is when you delete data, can you actually prove the data is deleted with a hundred percent certainty, you got to prove that and a lot of other issues. So looking at this slide, maybe you could take us through your thinking on data sovereignty. >> Perfect. So for us, data sovereignty is only one of the three pillars of digital sovereignty. And I don't want to give the impression that confidential computing addresses it at all, that's why we want to step back and say, hey, digital sovereignty includes data sovereignty where we are giving you full control and ownership of the location, encryption and access to your data. Operational sovereignty where the goal is to give our Google Cloud customers full visibility and control over the provider operations, right? So if there are any updates on hardware, software stack, any operations, there is full transparency, full visibility. And then the third pillar is around software sovereignty, where the customer wants to ensure that they can run their workloads without dependency on the provider's software. So they have sometimes is often referred as survivability that you can actually survive if you are untethered to the cloud and that you can use open source. Now, let's take a deep dive on data sovereignty, which by the way is one of my favorite topics. And we typically focus on saying, hey, we need to care about data residency. We care where the data resides because where the data is at rest or in processing need to typically abides to the jurisdiction, the regulations of the jurisdiction where the data resides. And others say, hey, let's focus on data protection, we want to ensure the confidentiality, and integrity, and availability of the data, which confidential computing is at the heart of that data protection. But it is yet another element that people typically don't talk about when talking about data sovereignty, which is the element of user control. And here Dave, is about what happens to the data when I give you access to my data, and this reminds me of security two decades ago, even a decade ago, where we started the security movement by putting firewall protections and logging accesses. But once you were in, you were able to do everything you wanted with the data. An insider had access to all the infrastructure, the data, and the code. And that's similar because with data sovereignty, we care about whether it resides, who is operating on the data, but the moment that the data is being processed, I need to trust that the processing of the data we abide by user's control, by the policies that I put in place of how my data is going to be used. And if you look at a lot of the regulation today and a lot of the initiatives around the International Data Space Association, IDSA and Gaia-X, there is a movement of saying the two parties, the provider of the data and the receiver of the data going to agree on a contract that describes what my data can be used for. The challenge is to ensure that once the data crosses boundaries, that the data will be used for the purposes that it was intended and specified in the contract. And if you actually bring together, and this is the exciting part, confidential computing together with policy enforcement. Now, the policy enforcement can guarantee that the data is only processed within the confines of a confidential computing environment, that the workload is in cryptographically verified that there is the workload that was meant to process the data and that the data will be only used when abiding to the confidentiality and integrity safety of the confidential computing environment. And that's why we believe confidential computing is one necessary and essential technology that will allow us to ensure data sovereignty, especially when it comes to user's control. >> Thank you for that. I mean it was a deep dive, I mean brief, but really detailed. So I appreciate that, especially the verification of the enforcement. Last question, I met you two because as part of my year-end prediction post, you guys sent in some predictions and I wasn't able to get to them in the predictions post, so I'm thrilled that you were able to make the time to come on the program. How widespread do you think the adoption of confidential computing will be in '23 and what's the maturity curve look like this decade in your opinion? Maybe each of you could give us a brief answer. >> So my prediction in five, seven years as I started, it will become utility, it will become TLS. As of freakin' 10 years ago, we couldn't believe that websites will have certificates and we will support encrypted traffic. Now we do, and it's become ubiquity. It's exactly where our confidential computing is heeding and heading, I don't know we deserve yet. It'll take a few years of maturity for us, but we'll do that. >> Thank you. And Patricia, what's your prediction? >> I would double that and say, hey, in the very near future, you will not be able to afford not having it. I believe as digital sovereignty becomes ever more top of mind with sovereign states and also for multinational organizations, and for organizations that want to collaborate with each other, confidential computing will become the norm, it will become the default, if I say mode of operation. I like to compare that today is inconceivable if we talk to the young technologists, it's inconceivable to think that at some point in history and I happen to be alive, that we had data at rest that was non-encrypted, data in transit that was not encrypted. And I think that we'll be inconceivable at some point in the near future that to have unencrypted data while we use. >> You know, and plus I think the beauty of the this industry is because there's so much competition, this essentially comes for free. I want to thank you both for spending some time on Breaking Analysis, there's so much more we could cover. I hope you'll come back to share the progress that you're making in this area and we can double click on some of these topics. Really appreciate your time. >> Anytime. >> Thank you so much, yeah. >> In summary, while confidential computing is being touted by the cloud players as a promising technology for enhancing data privacy and security, there are also those as we said, who remain skeptical. The truth probably lies somewhere in between and it will depend on the specific implementation and the use case as to how effective confidential computing will be. Look as with any new tech, it's important to carefully evaluate the potential benefits, the drawbacks, and make informed decisions based on the specific requirements in the situation and the constraints of each individual customer. But the bottom line is silicon manufacturers are working with cloud providers and other system companies to include confidential computing into their architectures. Competition in our view will moderate price hikes and at the end of the day, this is under-the-covers technology that essentially will come for free, so we'll take it. I want to thank our guests today, Nelly and Patricia from Google. And thanks to Alex Myerson who's on production and manages the podcast. Ken Schiffman as well out of our Boston studio. Kristin Martin and Cheryl Knight help get the word out on social media and in our newsletters, and Rob Hoof is our editor-in-chief over at siliconangle.com, does some great editing for us. Thank you all. Remember all these episodes are available as podcasts. Wherever you listen, just search Breaking Analysis podcast. I publish each week on wikibon.com and siliconangle.com where you can get all the news. If you want to get in touch, you can email me at david.vellante@siliconangle.com or DM me at D Vellante, and you can also comment on my LinkedIn post. Definitely you want to check out etr.ai for the best survey data in the enterprise tech business. I know we didn't hit on a lot today, but there's some amazing data and it's always being updated, so check that out. This is Dave Vellante for theCUBE Insights powered by ETR. Thanks for watching and we'll see you next time on Breaking Analysis. (subtle music)

Published Date : Feb 10 2023

SUMMARY :

bringing you data-driven and at the end of the day, and then Patricia, you can weigh in. contribute to get with my team Okay, Patricia? Director in the Office of the CTO, for that both of you. in the data to cloud into the architecture a bit, and privacy of the data. that are scared of the cloud. and eliminate some of the we could stay with you and they fed to memory controller. to you is in addition to, and integrity of the data and of the code. that the applications is transparent, and ideas of our partners to this role One of the frequent examples and a lot of the initiatives of the enforcement. and we will support encrypted traffic. And Patricia, and I happen to be alive, the beauty of the this industry and at the end of the day,

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
NellyPERSON

0.99+

PatriciaPERSON

0.99+

Alex MyersonPERSON

0.99+

AWSORGANIZATION

0.99+

International Data Space AssociationORGANIZATION

0.99+

DavePERSON

0.99+

AWS'ORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

Dave VellantePERSON

0.99+

Rob HoofPERSON

0.99+

Cheryl KnightPERSON

0.99+

Nelly PorterPERSON

0.99+

GoogleORGANIZATION

0.99+

NvidiaORGANIZATION

0.99+

IDSAORGANIZATION

0.99+

Rodrigo BroncoPERSON

0.99+

2019DATE

0.99+

Ken SchiffmanPERSON

0.99+

IntelORGANIZATION

0.99+

AMDORGANIZATION

0.99+

2017DATE

0.99+

ARMORGANIZATION

0.99+

AemORGANIZATION

0.99+

NelliePERSON

0.99+

Kristin MartinPERSON

0.99+

Red HatORGANIZATION

0.99+

two partiesQUANTITY

0.99+

Palo AltoLOCATION

0.99+

last yearDATE

0.99+

Patricia FlorissiPERSON

0.99+

oneQUANTITY

0.99+

MetaORGANIZATION

0.99+

twoQUANTITY

0.99+

thirdQUANTITY

0.99+

Gaia-XORGANIZATION

0.99+

second pointQUANTITY

0.99+

two expertsQUANTITY

0.99+

david.vellante@siliconangle.comOTHER

0.99+

secondQUANTITY

0.99+

bothQUANTITY

0.99+

first questionQUANTITY

0.99+

fiveQUANTITY

0.99+

OneQUANTITY

0.99+

theCUBE StudiosORGANIZATION

0.99+

two decades agoDATE

0.99+

'23DATE

0.99+

eachQUANTITY

0.99+

a decade agoDATE

0.99+

threeQUANTITY

0.99+

zero daysQUANTITY

0.98+

fourQUANTITY

0.98+

OCTOORGANIZATION

0.98+

todayDATE

0.98+

Breaking Analysis: Enterprise Technology Predictions 2023


 

(upbeat music beginning) >> From the Cube Studios in Palo Alto and Boston, bringing you data-driven insights from the Cube and ETR, this is "Breaking Analysis" with Dave Vellante. >> Making predictions about the future of enterprise tech is more challenging if you strive to lay down forecasts that are measurable. In other words, if you make a prediction, you should be able to look back a year later and say, with some degree of certainty, whether the prediction came true or not, with evidence to back that up. Hello and welcome to this week's Wikibon Cube Insights, powered by ETR. In this breaking analysis, we aim to do just that, with predictions about the macro IT spending environment, cost optimization, security, lots to talk about there, generative AI, cloud, and of course supercloud, blockchain adoption, data platforms, including commentary on Databricks, snowflake, and other key players, automation, events, and we may even have some bonus predictions around quantum computing, and perhaps some other areas. To make all this happen, we welcome back, for the third year in a row, my colleague and friend Eric Bradley from ETR. Eric, thanks for all you do for the community, and thanks for being part of this program. Again. >> I wouldn't miss it for the world. I always enjoy this one. Dave, good to see you. >> Yeah, so let me bring up this next slide and show you, actually come back to me if you would. I got to show the audience this. These are the inbounds that we got from PR firms starting in October around predictions. They know we do prediction posts. And so they'll send literally thousands and thousands of predictions from hundreds of experts in the industry, technologists, consultants, et cetera. And if you bring up the slide I can show you sort of the pattern that developed here. 40% of these thousands of predictions were from cyber. You had AI and data. If you combine those, it's still not close to cyber. Cost optimization was a big thing. Of course, cloud, some on DevOps, and software. Digital... Digital transformation got, you know, some lip service and SaaS. And then there was other, it's kind of around 2%. So quite remarkable, when you think about the focus on cyber, Eric. >> Yeah, there's two reasons why I think it makes sense, though. One, the cybersecurity companies have a lot of cash, so therefore the PR firms might be working a little bit harder for them than some of their other clients. (laughs) And then secondly, as you know, for multiple years now, when we do our macro survey, we ask, "What's your number one spending priority?" And again, it's security. It just isn't going anywhere. It just stays at the top. So I'm actually not that surprised by that little pie chart there, but I was shocked that SaaS was only 5%. You know, going back 10 years ago, that would've been the only thing anyone was talking about. >> Yeah. So true. All right, let's get into it. First prediction, we always start with kind of tech spending. Number one is tech spending increases between four and 5%. ETR has currently got it at 4.6% coming into 2023. This has been a consistently downward trend all year. We started, you know, much, much higher as we've been reporting. Bottom line is the fed is still in control. They're going to ease up on tightening, is the expectation, they're going to shoot for a soft landing. But you know, my feeling is this slingshot economy is going to continue, and it's going to continue to confound, whether it's supply chains or spending. The, the interesting thing about the ETR data, Eric, and I want you to comment on this, the largest companies are the most aggressive to cut. They're laying off, smaller firms are spending faster. They're actually growing at a much larger, faster rate as are companies in EMEA. And that's a surprise. That's outpacing the US and APAC. Chime in on this, Eric. >> Yeah, I was surprised on all of that. First on the higher level spending, we are definitely seeing it coming down, but the interesting thing here is headlines are making it worse. The huge research shop recently said 0% growth. We're coming in at 4.6%. And just so everyone knows, this is not us guessing, we asked 1,525 IT decision-makers what their budget growth will be, and they came in at 4.6%. Now there's a huge disparity, as you mentioned. The Fortune 500, global 2000, barely at 2% growth, but small, it's at 7%. So we're at a situation right now where the smaller companies are still playing a little bit of catch up on digital transformation, and they're spending money. The largest companies that have the most to lose from a recession are being more trepidatious, obviously. So they're playing a "Wait and see." And I hope we don't talk ourselves into a recession. Certainly the headlines and some of their research shops are helping it along. But another interesting comment here is, you know, energy and utilities used to be called an orphan and widow stock group, right? They are spending more than anyone, more than financials insurance, more than retail consumer. So right now it's being driven by mid, small, and energy and utilities. They're all spending like gangbusters, like nothing's happening. And it's the rest of everyone else that's being very cautious. >> Yeah, so very unpredictable right now. All right, let's go to number two. Cost optimization remains a major theme in 2023. We've been reporting on this. You've, we've shown a chart here. What's the primary method that your organization plans to use? You asked this question of those individuals that cited that they were going to reduce their spend and- >> Mhm. >> consolidating redundant vendors, you know, still leads the way, you know, far behind, cloud optimization is second, but it, but cloud continues to outpace legacy on-prem spending, no doubt. Somebody, it was, the guy's name was Alexander Feiglstorfer from Storyblok, sent in a prediction, said "All in one becomes extinct." Now, generally I would say I disagree with that because, you know, as we know over the years, suites tend to win out over, you know, individual, you know, point products. But I think what's going to happen is all in one is going to remain the norm for these larger companies that are cutting back. They want to consolidate redundant vendors, and the smaller companies are going to stick with that best of breed and be more aggressive and try to compete more effectively. What's your take on that? >> Yeah, I'm seeing much more consolidation in vendors, but also consolidation in functionality. We're seeing people building out new functionality, whether it's, we're going to talk about this later, so I don't want to steal too much of our thunder right now, but data and security also, we're seeing a functionality creep. So I think there's further consolidation happening here. I think niche solutions are going to be less likely, and platform solutions are going to be more likely in a spending environment where you want to reduce your vendors. You want to have one bill to pay, not 10. Another thing on this slide, real quick if I can before I move on, is we had a bunch of people write in and some of the answer options that aren't on this graph but did get cited a lot, unfortunately, is the obvious reduction in staff, hiring freezes, and delaying hardware, were three of the top write-ins. And another one was offshore outsourcing. So in addition to what we're seeing here, there were a lot of write-in options, and I just thought it would be important to state that, but essentially the cost optimization is by and far the highest one, and it's growing. So it's actually increased in our citations over the last year. >> And yeah, specifically consolidating redundant vendors. And so I actually thank you for bringing that other up, 'cause I had asked you, Eric, is there any evidence that repatriation is going on and we don't see it in the numbers, we don't see it even in the other, there was, I think very little or no mention of cloud repatriation, even though it might be happening in this in a smattering. >> Not a single mention, not one single mention. I went through it for you. Yep. Not one write-in. >> All right, let's move on. Number three, security leads M&A in 2023. Now you might say, "Oh, well that's a layup," but let me set this up Eric, because I didn't really do a great job with the slide. I hid the, what you've done, because you basically took, this is from the emerging technology survey with 1,181 responses from November. And what we did is we took Palo Alto and looked at the overlap in Palo Alto Networks accounts with these vendors that were showing on this chart. And Eric, I'm going to ask you to explain why we put a circle around OneTrust, but let me just set it up, and then have you comment on the slide and take, give us more detail. We're seeing private company valuations are off, you know, 10 to 40%. We saw a sneak, do a down round, but pretty good actually only down 12%. We've seen much higher down rounds. Palo Alto Networks we think is going to get busy. Again, they're an inquisitive company, they've been sort of quiet lately, and we think CrowdStrike, Cisco, Microsoft, Zscaler, we're predicting all of those will make some acquisitions and we're thinking that the targets are somewhere in this mess of security taxonomy. Other thing we're predicting AI meets cyber big time in 2023, we're going to probably going to see some acquisitions of those companies that are leaning into AI. We've seen some of that with Palo Alto. And then, you know, your comment to me, Eric, was "The RSA conference is going to be insane, hopping mad, "crazy this April," (Eric laughing) but give us your take on this data, and why the red circle around OneTrust? Take us back to that slide if you would, Alex. >> Sure. There's a few things here. First, let me explain what we're looking at. So because we separate the public companies and the private companies into two separate surveys, this allows us the ability to cross-reference that data. So what we're doing here is in our public survey, the tesis, everyone who cited some spending with Palo Alto, meaning they're a Palo Alto customer, we then cross-reference that with the private tech companies. Who also are they spending with? So what you're seeing here is an overlap. These companies that we have circled are doing the best in Palo Alto's accounts. Now, Palo Alto went and bought Twistlock a few years ago, which this data slide predicted, to be quite honest. And so I don't know if they necessarily are going to go after Snyk. Snyk, sorry. They already have something in that space. What they do need, however, is more on the authentication space. So I'm looking at OneTrust, with a 45% overlap in their overall net sentiment. That is a company that's already existing in their accounts and could be very synergistic to them. BeyondTrust as well, authentication identity. This is something that Palo needs to do to move more down that zero trust path. Now why did I pick Palo first? Because usually they're very inquisitive. They've been a little quiet lately. Secondly, if you look at the backdrop in the markets, the IPO freeze isn't going to last forever. Sooner or later, the IPO markets are going to open up, and some of these private companies are going to tap into public equity. In the meantime, however, cash funding on the private side is drying up. If they need another round, they're not going to get it, and they're certainly not going to get it at the valuations they were getting. So we're seeing valuations maybe come down where they're a touch more attractive, and Palo knows this isn't going to last forever. Cisco knows that, CrowdStrike, Zscaler, all these companies that are trying to make a push to become that vendor that you're consolidating in, around, they have a chance now, they have a window where they need to go make some acquisitions. And that's why I believe leading up to RSA, we're going to see some movement. I think it's going to pretty, a really exciting time in security right now. >> Awesome. Thank you. Great explanation. All right, let's go on the next one. Number four is, it relates to security. Let's stay there. Zero trust moves from hype to reality in 2023. Now again, you might say, "Oh yeah, that's a layup." A lot of these inbounds that we got are very, you know, kind of self-serving, but we always try to put some meat in the bone. So first thing we do is we pull out some commentary from, Eric, your roundtable, your insights roundtable. And we have a CISO from a global hospitality firm says, "For me that's the highest priority." He's talking about zero trust because it's the best ROI, it's the most forward-looking, and it enables a lot of the business transformation activities that we want to do. CISOs tell me that they actually can drive forward transformation projects that have zero trust, and because they can accelerate them, because they don't have to go through the hurdle of, you know, getting, making sure that it's secure. Second comment, zero trust closes that last mile where once you're authenticated, they open up the resource to you in a zero trust way. That's a CISO of a, and a managing director of a cyber risk services enterprise. Your thoughts on this? >> I can be here all day, so I'm going to try to be quick on this one. This is not a fluff piece on this one. There's a couple of other reasons this is happening. One, the board finally gets it. Zero trust at first was just a marketing hype term. Now the board understands it, and that's why CISOs are able to push through it. And what they finally did was redefine what it means. Zero trust simply means moving away from hardware security, moving towards software-defined security, with authentication as its base. The board finally gets that, and now they understand that this is necessary and it's being moved forward. The other reason it's happening now is hybrid work is here to stay. We weren't really sure at first, large companies were still trying to push people back to the office, and it's going to happen. The pendulum will swing back, but hybrid work's not going anywhere. By basically on our own data, we're seeing that 69% of companies expect remote and hybrid to be permanent, with only 30% permanent in office. Zero trust works for a hybrid environment. So all of that is the reason why this is happening right now. And going back to our previous prediction, this is why we're picking Palo, this is why we're picking Zscaler to make these acquisitions. Palo Alto needs to be better on the authentication side, and so does Zscaler. They're both fantastic on zero trust network access, but they need the authentication software defined aspect, and that's why we think this is going to happen. One last thing, in that CISO round table, I also had somebody say, "Listen, Zscaler is incredible. "They're doing incredibly well pervading the enterprise, "but their pricing's getting a little high," and they actually think Palo Alto is well-suited to start taking some of that share, if Palo can make one move. >> Yeah, Palo Alto's consolidation story is very strong. Here's my question and challenge. Do you and me, so I'm always hardcore about, okay, you've got to have evidence. I want to look back at these things a year from now and say, "Did we get it right? Yes or no?" If we got it wrong, we'll tell you we got it wrong. So how are we going to measure this? I'd say a couple things, and you can chime in. One is just the number of vendors talking about it. That's, but the marketing always leads the reality. So the second part of that is we got to get evidence from the buying community. Can you help us with that? >> (laughs) Luckily, that's what I do. I have a data company that asks thousands of IT decision-makers what they're adopting and what they're increasing spend on, as well as what they're decreasing spend on and what they're replacing. So I have snapshots in time over the last 11 years where I can go ahead and compare and contrast whether this adoption is happening or not. So come back to me in 12 months and I'll let you know. >> Now, you know, I will. Okay, let's bring up the next one. Number five, generative AI hits where the Metaverse missed. Of course everybody's talking about ChatGPT, we just wrote last week in a breaking analysis with John Furrier and Sarjeet Joha our take on that. We think 2023 does mark a pivot point as natural language processing really infiltrates enterprise tech just as Amazon turned the data center into an API. We think going forward, you're going to be interacting with technology through natural language, through English commands or other, you know, foreign language commands, and investors are lining up, all the VCs are getting excited about creating something competitive to ChatGPT, according to (indistinct) a hundred million dollars gets you a seat at the table, gets you into the game. (laughing) That's before you have to start doing promotion. But he thinks that's what it takes to actually create a clone or something equivalent. We've seen stuff from, you know, the head of Facebook's, you know, AI saying, "Oh, it's really not that sophisticated, ChatGPT, "it's kind of like IBM Watson, it's great engineering, "but you know, we've got more advanced technology." We know Google's working on some really interesting stuff. But here's the thing. ETR just launched this survey for the February survey. It's in the field now. We circle open AI in this category. They weren't even in the survey, Eric, last quarter. So 52% of the ETR survey respondents indicated a positive sentiment toward open AI. I added up all the sort of different bars, we could double click on that. And then I got this inbound from Scott Stevenson of Deep Graham. He said "AI is recession-proof." I don't know if that's the case, but it's a good quote. So bring this back up and take us through this. Explain this chart for us, if you would. >> First of all, I like Scott's quote better than the Facebook one. I think that's some sour grapes. Meta just spent an insane amount of money on the Metaverse and that's a dud. Microsoft just spent money on open AI and it is hot, undoubtedly hot. We've only been in the field with our current ETS survey for a week. So my caveat is it's preliminary data, but I don't care if it's preliminary data. (laughing) We're getting a sneak peek here at what is the number one net sentiment and mindshare leader in the entire machine-learning AI sector within a week. It's beating Data- >> 600. 600 in. >> It's beating Databricks. And we all know Databricks is a huge established enterprise company, not only in machine-learning AI, but it's in the top 10 in the entire survey. We have over 400 vendors in this survey. It's number eight overall, already. In a week. This is not hype. This is real. And I could go on the NLP stuff for a while. Not only here are we seeing it in open AI and machine-learning and AI, but we're seeing NLP in security. It's huge in email security. It's completely transforming that area. It's one of the reasons I thought Palo might take Abnormal out. They're doing such a great job with NLP in this email side, and also in the data prep tools. NLP is going to take out data prep tools. If we have time, I'll discuss that later. But yeah, this is, to me this is a no-brainer, and we're already seeing it in the data. >> Yeah, John Furrier called, you know, the ChatGPT introduction. He said it reminded him of the Netscape moment, when we all first saw Netscape Navigator and went, "Wow, it really could be transformative." All right, number six, the cloud expands to supercloud as edge computing accelerates and CloudFlare is a big winner in 2023. We've reported obviously on cloud, multi-cloud, supercloud and CloudFlare, basically saying what multi-cloud should have been. We pulled this quote from Atif Kahn, who is the founder and CTO of Alkira, thanks, one of the inbounds, thank you. "In 2023, highly distributed IT environments "will become more the norm "as organizations increasingly deploy hybrid cloud, "multi-cloud and edge settings..." Eric, from one of your round tables, "If my sources from edge computing are coming "from the cloud, that means I have my workloads "running in the cloud. "There is no one better than CloudFlare," That's a senior director of IT architecture at a huge financial firm. And then your analysis shows CloudFlare really growing in pervasion, that sort of market presence in the dataset, dramatically, to near 20%, leading, I think you had told me that they're even ahead of Google Cloud in terms of momentum right now. >> That was probably the biggest shock to me in our January 2023 tesis, which covers the public companies in the cloud computing sector. CloudFlare has now overtaken GCP in overall spending, and I was shocked by that. It's already extremely pervasive in networking, of course, for the edge networking side, and also in security. This is the number one leader in SaaSi, web access firewall, DDoS, bot protection, by your definition of supercloud, which we just did a couple of weeks ago, and I really enjoyed that by the way Dave, I think CloudFlare is the one that fits your definition best, because it's bringing all of these aspects together, and most importantly, it's cloud agnostic. It does not need to rely on Azure or AWS to do this. It has its own cloud. So I just think it's, when we look at your definition of supercloud, CloudFlare is the poster child. >> You know, what's interesting about that too, is a lot of people are poo-pooing CloudFlare, "Ah, it's, you know, really kind of not that sophisticated." "You don't have as many tools," but to your point, you're can have those tools in the cloud, Cloudflare's doing serverless on steroids, trying to keep things really simple, doing a phenomenal job at, you know, various locations around the world. And they're definitely one to watch. Somebody put them on my radar (laughing) a while ago and said, "Dave, you got to do a breaking analysis on CloudFlare." And so I want to thank that person. I can't really name them, 'cause they work inside of a giant hyperscaler. But- (Eric laughing) (Dave chuckling) >> Real quickly, if I can from a competitive perspective too, who else is there? They've already taken share from Akamai, and Fastly is their really only other direct comp, and they're not there. And these guys are in poll position and they're the only game in town right now. I just, I don't see it slowing down. >> I thought one of your comments from your roundtable I was reading, one of the folks said, you know, CloudFlare, if my workloads are in the cloud, they are, you know, dominant, they said not as strong with on-prem. And so Akamai is doing better there. I'm like, "Okay, where would you want to be?" (laughing) >> Yeah, which one of those two would you rather be? >> Right? Anyway, all right, let's move on. Number seven, blockchain continues to look for a home in the enterprise, but devs will slowly begin to adopt in 2023. You know, blockchains have got a lot of buzz, obviously crypto is, you know, the killer app for blockchain. Senior IT architect in financial services from your, one of your insight roundtables said quote, "For enterprises to adopt a new technology, "there have to be proven turnkey solutions. "My experience in talking with my peers are, "blockchain is still an open-source component "where you have to build around it." Now I want to thank Ravi Mayuram, who's the CTO of Couchbase sent in, you know, one of the predictions, he said, "DevOps will adopt blockchain, specifically Ethereum." And he referenced actually in his email to me, Solidity, which is the programming language for Ethereum, "will be in every DevOps pro's playbook, "mirroring the boom in machine-learning. "Newer programming languages like Solidity "will enter the toolkits of devs." His point there, you know, Solidity for those of you don't know, you know, Bitcoin is not programmable. Solidity, you know, came out and that was their whole shtick, and they've been improving that, and so forth. But it, Eric, it's true, it really hasn't found its home despite, you know, the potential for smart contracts. IBM's pushing it, VMware has had announcements, and others, really hasn't found its way in the enterprise yet. >> Yeah, and I got to be honest, I don't think it's going to, either. So when we did our top trends series, this was basically chosen as an anti-prediction, I would guess, that it just continues to not gain hold. And the reason why was that first comment, right? It's very much a niche solution that requires a ton of custom work around it. You can't just plug and play it. And at the end of the day, let's be very real what this technology is, it's a database ledger, and we already have database ledgers in the enterprise. So why is this a priority to move to a different database ledger? It's going to be very niche cases. I like the CTO comment from Couchbase about it being adopted by DevOps. I agree with that, but it has to be a DevOps in a very specific use case, and a very sophisticated use case in financial services, most likely. And that's not across the entire enterprise. So I just think it's still going to struggle to get its foothold for a little bit longer, if ever. >> Great, thanks. Okay, let's move on. Number eight, AWS Databricks, Google Snowflake lead the data charge with Microsoft. Keeping it simple. So let's unpack this a little bit. This is the shared accounts peer position for, I pulled data platforms in for analytics, machine-learning and AI and database. So I could grab all these accounts or these vendors and see how they compare in those three sectors. Analytics, machine-learning and database. Snowflake and Databricks, you know, they're on a crash course, as you and I have talked about. They're battling to be the single source of truth in analytics. They're, there's going to be a big focus. They're already started. It's going to be accelerated in 2023 on open formats. Iceberg, Python, you know, they're all the rage. We heard about Iceberg at Snowflake Summit, last summer or last June. Not a lot of people had heard of it, but of course the Databricks crowd, who knows it well. A lot of other open source tooling. There's a company called DBT Labs, which you're going to talk about in a minute. George Gilbert put them on our radar. We just had Tristan Handy, the CEO of DBT labs, on at supercloud last week. They are a new disruptor in data that's, they're essentially making, they're API-ifying, if you will, KPIs inside the data warehouse and dramatically simplifying that whole data pipeline. So really, you know, the ETL guys should be shaking in their boots with them. Coming back to the slide. Google really remains focused on BigQuery adoption. Customers have complained to me that they would like to use Snowflake with Google's AI tools, but they're being forced to go to BigQuery. I got to ask Google about that. AWS continues to stitch together its bespoke data stores, that's gone down that "Right tool for the right job" path. David Foyer two years ago said, "AWS absolutely is going to have to solve that problem." We saw them start to do it in, at Reinvent, bringing together NoETL between Aurora and Redshift, and really trying to simplify those worlds. There's going to be more of that. And then Microsoft, they're just making it cheap and easy to use their stuff, you know, despite some of the complaints that we hear in the community, you know, about things like Cosmos, but Eric, your take? >> Yeah, my concern here is that Snowflake and Databricks are fighting each other, and it's allowing AWS and Microsoft to kind of catch up against them, and I don't know if that's the right move for either of those two companies individually, Azure and AWS are building out functionality. Are they as good? No they're not. The other thing to remember too is that AWS and Azure get paid anyway, because both Databricks and Snowflake run on top of 'em. So (laughing) they're basically collecting their toll, while these two fight it out with each other, and they build out functionality. I think they need to stop focusing on each other, a little bit, and think about the overall strategy. Now for Databricks, we know they came out first as a machine-learning AI tool. They were known better for that spot, and now they're really trying to play catch-up on that data storage compute spot, and inversely for Snowflake, they were killing it with the compute separation from storage, and now they're trying to get into the MLAI spot. I actually wouldn't be surprised to see them make some sort of acquisition. Frank Slootman has been a little bit quiet, in my opinion there. The other thing to mention is your comment about DBT Labs. If we look at our emerging technology survey, last survey when this came out, DBT labs, number one leader in that data integration space, I'm going to just pull it up real quickly. It looks like they had a 33% overall net sentiment to lead data analytics integration. So they are clearly growing, it's fourth straight survey consecutively that they've grown. The other name we're seeing there a little bit is Cribl, but DBT labs is by far the number one player in this space. >> All right. Okay, cool. Moving on, let's go to number nine. With Automation mixer resurgence in 2023, we're showing again data. The x axis is overlap or presence in the dataset, and the vertical axis is shared net score. Net score is a measure of spending momentum. As always, you've seen UI path and Microsoft Power Automate up until the right, that red line, that 40% line is generally considered elevated. UI path is really separating, creating some distance from Automation Anywhere, they, you know, previous quarters they were much closer. Microsoft Power Automate came on the scene in a big way, they loom large with this "Good enough" approach. I will say this, I, somebody sent me a results of a (indistinct) survey, which showed UiPath actually had more mentions than Power Automate, which was surprising, but I think that's not been the case in the ETR data set. We're definitely seeing a shift from back office to front soft office kind of workloads. Having said that, software testing is emerging as a mainstream use case, we're seeing ML and AI become embedded in end-to-end automations, and low-code is serving the line of business. And so this, we think, is going to increasingly have appeal to organizations in the coming year, who want to automate as much as possible and not necessarily, we've seen a lot of layoffs in tech, and people... You're going to have to fill the gaps with automation. That's a trend that's going to continue. >> Yep, agreed. At first that comment about Microsoft Power Automate having less citations than UiPath, that's shocking to me. I'm looking at my chart right here where Microsoft Power Automate was cited by over 60% of our entire survey takers, and UiPath at around 38%. Now don't get me wrong, 38% pervasion's fantastic, but you know you're not going to beat an entrenched Microsoft. So I don't really know where that comment came from. So UiPath, looking at it alone, it's doing incredibly well. It had a huge rebound in its net score this last survey. It had dropped going through the back half of 2022, but we saw a big spike in the last one. So it's got a net score of over 55%. A lot of people citing adoption and increasing. So that's really what you want to see for a name like this. The problem is that just Microsoft is doing its playbook. At the end of the day, I'm going to do a POC, why am I going to pay more for UiPath, or even take on another separate bill, when we know everyone's consolidating vendors, if my license already includes Microsoft Power Automate? It might not be perfect, it might not be as good, but what I'm hearing all the time is it's good enough, and I really don't want another invoice. >> Right. So how does UiPath, you know, and Automation Anywhere, how do they compete with that? Well, the way they compete with it is they got to have a better product. They got a product that's 10 times better. You know, they- >> Right. >> they're not going to compete based on where the lowest cost, Microsoft's got that locked up, or where the easiest to, you know, Microsoft basically give it away for free, and that's their playbook. So that's, you know, up to UiPath. UiPath brought on Rob Ensslin, I've interviewed him. Very, very capable individual, is now Co-CEO. So he's kind of bringing that adult supervision in, and really tightening up the go to market. So, you know, we know this company has been a rocket ship, and so getting some control on that and really getting focused like a laser, you know, could be good things ahead there for that company. Okay. >> One of the problems, if I could real quick Dave, is what the use cases are. When we first came out with RPA, everyone was super excited about like, "No, UiPath is going to be great for super powerful "projects, use cases." That's not what RPA is being used for. As you mentioned, it's being used for mundane tasks, so it's not automating complex things, which I think UiPath was built for. So if you were going to get UiPath, and choose that over Microsoft, it's going to be 'cause you're doing it for more powerful use case, where it is better. But the problem is that's not where the enterprise is using it. The enterprise are using this for base rote tasks, and simply, Microsoft Power Automate can do that. >> Yeah, it's interesting. I've had people on theCube that are both Microsoft Power Automate customers and UiPath customers, and I've asked them, "Well you know, "how do you differentiate between the two?" And they've said to me, "Look, our users and personal productivity users, "they like Power Automate, "they can use it themselves, and you know, "it doesn't take a lot of, you know, support on our end." The flip side is you could do that with UiPath, but like you said, there's more of a focus now on end-to-end enterprise automation and building out those capabilities. So it's increasingly a value play, and that's going to be obviously the challenge going forward. Okay, my last one, and then I think you've got some bonus ones. Number 10, hybrid events are the new category. Look it, if I can get a thousand inbounds that are largely self-serving, I can do my own here, 'cause we're in the events business. (Eric chuckling) Here's the prediction though, and this is a trend we're seeing, the number of physical events is going to dramatically increase. That might surprise people, but most of the big giant events are going to get smaller. The exception is AWS with Reinvent, I think Snowflake's going to continue to grow. So there are examples of physical events that are growing, but generally, most of the big ones are getting smaller, and there's going to be many more smaller intimate regional events and road shows. These micro-events, they're going to be stitched together. Digital is becoming a first class citizen, so people really got to get their digital acts together, and brands are prioritizing earned media, and they're beginning to build their own news networks, going direct to their customers. And so that's a trend we see, and I, you know, we're right in the middle of it, Eric, so you know we're going to, you mentioned RSA, I think that's perhaps going to be one of those crazy ones that continues to grow. It's shrunk, and then it, you know, 'cause last year- >> Yeah, it did shrink. >> right, it was the last one before the pandemic, and then they sort of made another run at it last year. It was smaller but it was very vibrant, and I think this year's going to be huge. Global World Congress is another one, we're going to be there end of Feb. That's obviously a big big show, but in general, the brands and the technology vendors, even Oracle is going to scale down. I don't know about Salesforce. We'll see. You had a couple of bonus predictions. Quantum and maybe some others? Bring us home. >> Yeah, sure. I got a few more. I think we touched upon one, but I definitely think the data prep tools are facing extinction, unfortunately, you know, the Talons Informatica is some of those names. The problem there is that the BI tools are kind of including data prep into it already. You know, an example of that is Tableau Prep Builder, and then in addition, Advanced NLP is being worked in as well. ThoughtSpot, Intelius, both often say that as their selling point, Tableau has Ask Data, Click has Insight Bot, so you don't have to really be intelligent on data prep anymore. A regular business user can just self-query, using either the search bar, or even just speaking into what it needs, and these tools are kind of doing the data prep for it. I don't think that's a, you know, an out in left field type of prediction, but it's the time is nigh. The other one I would also state is that I think knowledge graphs are going to break through this year. Neo4j in our survey is growing in pervasion in Mindshare. So more and more people are citing it, AWS Neptune's getting its act together, and we're seeing that spending intentions are growing there. Tiger Graph is also growing in our survey sample. I just think that the time is now for knowledge graphs to break through, and if I had to do one more, I'd say real-time streaming analytics moves from the very, very rich big enterprises to downstream, to more people are actually going to be moving towards real-time streaming, again, because the data prep tools and the data pipelines have gotten easier to use, and I think the ROI on real-time streaming is obviously there. So those are three that didn't make the cut, but I thought deserved an honorable mention. >> Yeah, I'm glad you did. Several weeks ago, we did an analyst prediction roundtable, if you will, a cube session power panel with a number of data analysts and that, you know, streaming, real-time streaming was top of mind. So glad you brought that up. Eric, as always, thank you very much. I appreciate the time you put in beforehand. I know it's been crazy, because you guys are wrapping up, you know, the last quarter survey in- >> Been a nuts three weeks for us. (laughing) >> job. I love the fact that you're doing, you know, the ETS survey now, I think it's quarterly now, right? Is that right? >> Yep. >> Yep. So that's phenomenal. >> Four times a year. I'll be happy to jump on with you when we get that done. I know you were really impressed with that last time. >> It's unbelievable. This is so much data at ETR. Okay. Hey, that's a wrap. Thanks again. >> Take care Dave. Good seeing you. >> All right, many thanks to our team here, Alex Myerson as production, he manages the podcast force. Ken Schiffman as well is a critical component of our East Coast studio. Kristen Martin and Cheryl Knight help get the word out on social media and in our newsletters. And Rob Hoof is our editor-in-chief. He's at siliconangle.com. He's just a great editing for us. Thank you all. Remember all these episodes that are available as podcasts, wherever you listen, podcast is doing great. Just search "Breaking analysis podcast." Really appreciate you guys listening. I publish each week on wikibon.com and siliconangle.com, or you can email me directly if you want to get in touch, david.vellante@siliconangle.com. That's how I got all these. I really appreciate it. I went through every single one with a yellow highlighter. It took some time, (laughing) but I appreciate it. You could DM me at dvellante, or comment on our LinkedIn post and please check out etr.ai. Its data is amazing. Best survey data in the enterprise tech business. This is Dave Vellante for theCube Insights, powered by ETR. Thanks for watching, and we'll see you next time on "Breaking Analysis." (upbeat music beginning) (upbeat music ending)

Published Date : Jan 29 2023

SUMMARY :

insights from the Cube and ETR, do for the community, Dave, good to see you. actually come back to me if you would. It just stays at the top. the most aggressive to cut. that have the most to lose What's the primary method still leads the way, you know, So in addition to what we're seeing here, And so I actually thank you I went through it for you. I'm going to ask you to explain and they're certainly not going to get it to you in a zero trust way. So all of that is the One is just the number of So come back to me in 12 So 52% of the ETR survey amount of money on the Metaverse and also in the data prep tools. the cloud expands to the biggest shock to me "Ah, it's, you know, really and Fastly is their really the folks said, you know, for a home in the enterprise, Yeah, and I got to be honest, in the community, you know, and I don't know if that's the right move and the vertical axis is shared net score. So that's really what you want Well, the way they compete So that's, you know, One of the problems, if and that's going to be obviously even Oracle is going to scale down. and the data pipelines and that, you know, Been a nuts three I love the fact I know you were really is so much data at ETR. and we'll see you next time

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Alex MyersonPERSON

0.99+

EricPERSON

0.99+

Eric BradleyPERSON

0.99+

CiscoORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

Rob HoofPERSON

0.99+

AmazonORGANIZATION

0.99+

OracleORGANIZATION

0.99+

Dave VellantePERSON

0.99+

10QUANTITY

0.99+

Ravi MayuramPERSON

0.99+

Cheryl KnightPERSON

0.99+

George GilbertPERSON

0.99+

Ken SchiffmanPERSON

0.99+

AWSORGANIZATION

0.99+

Tristan HandyPERSON

0.99+

DavePERSON

0.99+

Atif KahnPERSON

0.99+

NovemberDATE

0.99+

Frank SlootmanPERSON

0.99+

APACORGANIZATION

0.99+

ZscalerORGANIZATION

0.99+

PaloORGANIZATION

0.99+

David FoyerPERSON

0.99+

FebruaryDATE

0.99+

January 2023DATE

0.99+

DBT LabsORGANIZATION

0.99+

OctoberDATE

0.99+

Rob EnsslinPERSON

0.99+

Scott StevensonPERSON

0.99+

John FurrierPERSON

0.99+

69%QUANTITY

0.99+

GoogleORGANIZATION

0.99+

CrowdStrikeORGANIZATION

0.99+

4.6%QUANTITY

0.99+

10 timesQUANTITY

0.99+

2023DATE

0.99+

ScottPERSON

0.99+

1,181 responsesQUANTITY

0.99+

Palo AltoORGANIZATION

0.99+

third yearQUANTITY

0.99+

BostonLOCATION

0.99+

AlexPERSON

0.99+

thousandsQUANTITY

0.99+

OneTrustORGANIZATION

0.99+

45%QUANTITY

0.99+

33%QUANTITY

0.99+

DatabricksORGANIZATION

0.99+

two reasonsQUANTITY

0.99+

Palo AltoLOCATION

0.99+

last yearDATE

0.99+

BeyondTrustORGANIZATION

0.99+

7%QUANTITY

0.99+

IBMORGANIZATION

0.99+

Breaking Analysis: CEO Nuggets from Microsoft Ignite & Google Cloud Next


 

>> From theCUBE Studios in Palo Alto and Boston, bringing you data-driven insights from theCUBE and ETR, this is Breaking Analysis with Dave Vellante. >> This past week we saw two of the Big 3 cloud providers present the latest update on their respective cloud visions, their business progress, their announcements and innovations. The content at these events had many overlapping themes, including modern cloud infrastructure at global scale, applying advanced machine intelligence, AKA AI, end-to-end data platforms, collaboration software. They talked a lot about the future of work automation. And they gave us a little taste, each company of the Metaverse Web 3.0 and much more. Despite these striking similarities, the differences between these two cloud platforms and that of AWS remains significant. With Microsoft leveraging its massive application software footprint to dominate virtually all markets and Google doing everything in its power to keep up with the frenetic pace of today's cloud innovation, which was set into motion a decade and a half ago by AWS. Hello and welcome to this week's Wikibon CUBE Insights, powered by ETR. In this Breaking Analysis, we unpack the immense amount of content presented by the CEOs of Microsoft and Google Cloud at Microsoft Ignite and Google Cloud Next. We'll also quantify with ETR survey data the relative position of these two cloud giants in four key sectors: cloud IaaS, BI analytics, data platforms and collaboration software. Now one thing was clear this past week, hybrid events are the thing. Google Cloud Next took place live over a 24-hour period in six cities around the world, with the main gathering in New York City. Microsoft Ignite, which normally is attended by 30,000 people, had a smaller event in Seattle, in person with a virtual audience around the world. AWS re:Invent, of course, is much different. Yes, there's a virtual component at re:Invent, but it's all about a big live audience gathering the week after Thanksgiving, in the first week of December in Las Vegas. Regardless, Satya Nadella keynote address was prerecorded. It was highly produced and substantive. It was visionary, energetic with a strong message that Azure was a platform to allow customers to build their digital businesses. Doing more with less, which was a key theme of his. Nadella covered a lot of ground, starting with infrastructure from the compute, highlighting a collaboration with Arm-based, Ampere processors. New block storage, 60 regions, 175,000 miles of fiber cables around the world. He presented a meaningful multi-cloud message with Azure Arc to support on-prem and edge workloads, as well as of course the public cloud. And talked about confidential computing at the infrastructure level, a theme we hear from all cloud vendors. He then went deeper into the end-to-end data platform that Microsoft is building from the core data stores to analytics, to governance and the myriad tooling Microsoft offers. AI was next with a big focus on automation, AI, training models. He showed demos of machines coding and fixing code and machines automatically creating designs for creative workers and how Power Automate, Microsoft's RPA tooling, would combine with Microsoft Syntex to understand documents and provide standard ways for organizations to communicate with those documents. There was of course a big focus on Azure as developer cloud platform with GitHub Copilot as a linchpin using AI to assist coders in low-code and no-code innovations that are coming down the pipe. And another giant theme was a workforce transformation and how Microsoft is using its heritage and collaboration and productivity software to move beyond what Nadella called productivity paranoia, i.e., are remote workers doing their jobs? In a world where collaboration is built into intelligent workflows, and he even showed a glimpse of the future with AI-powered avatars and partnerships with Meta and Cisco with Teams of all firms. And finally, security with a bevy of tools from identity, endpoint, governance, et cetera, stressing a suite of tools from a single provider, i.e., Microsoft. So a couple points here. One, Microsoft is following in the footsteps of AWS with silicon advancements and didn't really emphasize that trend much except for the Ampere announcement. But it's building out cloud infrastructure at a massive scale, there is no debate about that. Its plan on data is to try and provide a somewhat more abstracted and simplified solutions, which differs a little bit from AWS's approach of the right database tool, for example, for the right job. Microsoft's automation play appears to provide simple individual productivity tools, kind of a ground up approach and make it really easy for users to drive these bottoms up initiatives. We heard from UiPath that forward five last month, a little bit of a different approach of horizontal automation, end-to-end across platforms. So quite a different play there. Microsoft's angle on workforce transformation is visionary and will continue to solidify in our view its dominant position with Teams and Microsoft 365, and it will drive cloud infrastructure consumption by default. On security as well as a cloud player, it has to have world-class security, and Azure does. There's not a lot of debate about that, but the knock on Microsoft is Patch Tuesday becomes Hack Wednesday because Microsoft releases so many patches, it's got so much Swiss cheese in its legacy estate and patching frequently, it becomes a roadmap and a trigger for hackers. Hey, patch Tuesday, these are all the exploits that you can go after so you can act before the patches are implemented. And so it's really become a problem for users. As well Microsoft is competing with many of the best-of-breed platforms like CrowdStrike and Okta, which have market momentum and appear to be more attractive horizontal plays for customers outside of just the Microsoft cloud. But again, it's Microsoft. They make it easy and very inexpensive to adopt. Now, despite the outstanding presentation by Satya Nadella, there are a couple of statements that should raise eyebrows. Here are two of them. First, as he said, Azure is the only cloud that supports all organizations and all workloads from enterprises to startups, to highly regulated industries. I had a conversation with Sarbjeet Johal about this, to make sure I wasn't just missing something and we were both surprised, somewhat, by this claim. I mean most certainly AWS supports more certifications for example, and we would think it has a reasonable case to dispute that claim. And the other statement, Nadella made, Azure is the only cloud provider enabling highly regulated industries to bring their most sensitive applications to the cloud. Now, reasonable people can debate whether AWS is there yet, but very clearly Oracle and IBM would have something to say about that statement. Now maybe it's not just, would say, "Oh, they're not real clouds, you know, they're just going to hosting in the cloud if you will." But still, when it comes to mission-critical applications, you would think Oracle is really the the leader there. Oh, and Satya also mentioned the claim that the Edge browser, the Microsoft Edge browser, no questions asked, he said, is the best browser for business. And we could see some people having some questions about that. Like isn't Edge based on Chrome? Anyway, so we just had to question these statements and challenge Microsoft to defend them because to us it's a little bit of BS and makes one wonder what else in such as awesome keynote and it was awesome, it was hyperbole. Okay, moving on to Google Cloud Next. The keynote started with Sundar Pichai doing a virtual session, he was remote, stressing the importance of Google Cloud. He mentioned that Google Cloud from its Q2 earnings was on a $25-billion annual run rate. What he didn't mention is that it's also on a 3.6 billion annual operating loss run rate based on its first half performance. Just saying. And we'll dig into that issue a little bit more later in this episode. He also stressed that the investments that Google has made to support its core business and search, like its global network of 22 subsea cables to support things like, YouTube video, great performance obviously that we all rely on, those innovations there. Innovations in BigQuery to support its search business and its threat analysis that it's always had and its AI, it's always been an AI-first company, he's stressed, that they're all leveraged by the Google Cloud Platform, GCP. This is all true by the way. Google has absolutely awesome tech and the talk, as well as his talk, Pichai, but also Kurian's was forward thinking and laid out a vision of the future. But it didn't address in our view, and I talked to Sarbjeet Johal about this as well, today's challenges to the degree that Microsoft did and we expect AWS will at re:Invent this year, it was more out there, more forward thinking, what's possible in the future, somewhat less about today's problem, so I think it's resonates less with today's enterprise players. Thomas Kurian then took over from Sundar Pichai and did a really good job of highlighting customers, and I think he has to, right? He has to say, "Look, we are in this game. We have customers, 9 out of the top 10 media firms use Google Cloud. 8 out of the top 10 manufacturers. 9 out of the top 10 retailers. Same for telecom, same for healthcare. 8 out of the top 10 retail banks." He and Sundar specifically referenced a number of companies, customers, including Avery Dennison, Groupe Renault, H&M, John Hopkins, Prudential, Minna Bank out of Japan, ANZ bank and many, many others during the session. So you know, they had some proof points and you got to give 'em props for that. Now like Microsoft, Google talked about infrastructure, they referenced training processors and regions and compute optionality and storage and how new workloads were emerging, particularly data-driven workloads in AI that required new infrastructure. He explicitly highlighted partnerships within Nvidia and Intel. I didn't see anything on Arm, which somewhat surprised me 'cause I believe Google's working on that or at least has come following in AWS's suit if you will, but maybe that's why they're not mentioning it or maybe I got to do more research there, but let's park that for a minute. But again, as we've extensively discussed in Breaking Analysis in our view when it comes to compute, AWS via its Annapurna acquisition is well ahead of the pack in this area. Arm is making its way into the enterprise, but all three companies are heavily investing in infrastructure, which is great news for customers and the ecosystem. We'll come back to that. Data and AI go hand in hand, and there was no shortage of data talk. Google didn't mention Snowflake or Databricks specifically, but it did mention, by the way, it mentioned Mongo a couple of times, but it did mention Google's, quote, Open Data cloud. Now maybe Google has used that term before, but Snowflake has been marketing the data cloud concept for a couple of years now. So that struck as a shot across the bow to one of its partners and obviously competitor, Snowflake. At BigQuery is a main centerpiece of Google's data strategy. Kurian talked about how they can take any data from any source in any format from any cloud provider with BigQuery Omni and aggregate and understand it. And with the support of Apache Iceberg and Delta and Hudi coming in the future and its open Data Cloud Alliance, they talked a lot about that. So without specifically mentioning Snowflake or Databricks, Kurian co-opted a lot of messaging from these two players, such as life and tech. Kurian also talked about Google Workspace and how it's now at 8 million users up from 6 million just two years ago. There's a lot of discussion on developer optionality and several details on tools supported and the open mantra of Google. And finally on security, Google brought out Kevin Mandian, he's a CUBE alum, extremely impressive individual who's CEO of Mandiant, a leading security service provider and consultancy that Google recently acquired for around 5.3 billion. They talked about moving from a shared responsibility model to a shared fate model, which is again, it's kind of a shot across AWS's bow, kind of shared responsibility model. It's unclear that Google will pay the same penalty if a customer doesn't live up to its portion of the shared responsibility, but we can probably assume that the customer is still going to bear the brunt of the pain, nonetheless. Mandiant is really interesting because it's a services play and Google has stated that it is not a services company, it's going to give partners in the channel plenty of room to play. So we'll see what it does with Mandiant. But Mandiant is a very strong enterprise capability and in the single most important area security. So interesting acquisition by Google. Now as well, unlike Microsoft, Google is not competing with security leaders like Okta and CrowdStrike. Rather, it's partnering aggressively with those firms and prominently putting them forth. All right. Let's get into the ETR survey data and see how Microsoft and Google are positioned in four key markets that we've mentioned before, IaaS, BI analytics, database data platforms and collaboration software. First, let's look at the IaaS cloud. ETR is just about to release its October survey, so I cannot share the that data yet. I can only show July data, but we're going to give you some directional hints throughout this conversation. This chart shows net score or spending momentum on the vertical axis and overlap or presence in the data, i.e., how pervasive the platform is. That's on the horizontal axis. And we've inserted the Wikibon estimates of IaaS revenue for the companies, the Big 3. Actually the Big 4, we included Alibaba. So a couple of points in this somewhat busy data chart. First, Microsoft and AWS as always are dominant on both axes. The red dotted line there at 40% on the vertical axis. That represents a highly elevated spending velocity and all of the Big 3 are above the line. Now at the same time, GCP is well behind the two leaders on the horizontal axis and you can see that in the table insert as well in our revenue estimates. Now why is Azure bigger in the ETR survey when AWS is larger according to the Wikibon revenue estimates? And the answer is because Microsoft with products like 365 and Teams will often be considered by respondents in the survey as cloud by customers, so they fit into that ETR category. But in the insert data we're stripping out applications and SaaS from Microsoft and Google and we're only isolating on IaaS. The other point is when you take a look at the early October returns, you see downward pressure as signified by those dotted arrows on every name. The only exception was Dell, or Dell and IBM, which showing slightly improved momentum. So the survey data generally confirms what we know that AWS and Azure have a massive lead and strong momentum in the marketplace. But the real story is below the line. Unlike Google Cloud, which is on pace to lose well over 3 billion on an operating basis this year, AWS's operating profit is around $20 billion annually. Microsoft's Intelligent Cloud generated more than $30 billion in operating income last fiscal year. Let that sink in for a moment. Now again, that's not to say Google doesn't have traction, it does and Kurian gave some nice proof points and customer examples in his keynote presentation, but the data underscores the lead that Microsoft and AWS have on Google in cloud. And here's a breakdown of ETR's proprietary net score methodology, that vertical axis that we showed you in the previous chart. It asks customers, are you adopting the platform new? That's that lime green. Are you spending 6% or more? That's the forest green. Is you're spending flat? That's the gray. Is you're spending down 6% or worse? That's the pinkest color. Or are you replacing the platform, defecting? That's the bright red. You subtract the reds from the greens and you get a net score. Now one caveat here, which actually is really favorable from Microsoft, the Microsoft data that we're showing here is across the entire Microsoft portfolio. The other point is, this is July data, we'll have an update for you once ETR releases its October results. But we're talking about meaningful samples here, the ends. 620 for AWS over a thousand from Microsoft in more than 450 respondents in the survey for Google. So the real tell is replacements, that bright red. There is virtually no churn for AWS and Microsoft, but Google's churn is 5x, those two in the survey. Now 5% churn is not high, but you'd like to see three things for Google given it's smaller size. One is less churn, two is much, much higher adoption rates in the lime green. Three is a higher percentage of those spending more, the forest green. And four is a lower percentage of those spending less. And none of these conditions really applies here for Google. GCP is still not growing fast enough in our opinion, and doesn't have nearly the traction of the two leaders and that shows up in the survey data. All right, let's look at the next sector, BI analytics. Here we have that same XY dimension. Again, Microsoft dominating the picture. AWS very strong also in both axes. Tableau, very popular and respectable of course acquired by Salesforce on the vertical axis, still looking pretty good there. And again on the horizontal axis, big presence there for Tableau. And Google with Looker and its other platforms is also respectable, but it again, has some work to do. Now notice Streamlit, that's a recent Snowflake acquisition. It's strong in the vertical axis and because of Snowflake's go-to-market (indistinct), it's likely going to move to the right overtime. Grafana is also prominent in the Y axis, but a glimpse at the most recent survey data shows them slightly declining while Looker actually improves a bit. As does Cloudera, which we'll move up slightly. Again, Microsoft just blows you away, doesn't it? All right, now let's get into database and data platform. Same X Y dimensions, but now database and data warehouse. Snowflake as usual takes the top spot on the vertical axis and it is actually keeps moving to the right as well with again, Microsoft and AWS is dominant in the market, as is Oracle on the X axis, albeit it's got less spending velocity, but of course it's the database king. Google is well behind on the X axis but solidly above the 40% line on the vertical axis. Note that virtually all platforms will see pressure in the next survey due to the macro environment. Microsoft might even dip below the 40% line for the first time in a while. Lastly, let's look at the collaboration and productivity software market. This is such an important area for both Microsoft and Google. And just look at Microsoft with 365 and Teams up into the right. I mean just so impressive in ubiquitous. And we've highlighted Google. It's in the pack. It certainly is a nice base with 174 N, which I can tell you that N will rise in the next survey, which is an indication that more people are adopting. But given the investment and the tech behind it and all the AI and Google's resources, you'd really like to see Google in this space above the 40% line, given the importance of this market, of this collaboration area to Google's success and the degree to which they emphasize it in their pitch. And look, this brings up something that we've talked about before on Breaking Analysis. Google doesn't have a tech problem. This is a go-to-market and marketing challenge that Google faces and it's up against two go-to-market champs and Microsoft and AWS. And Google doesn't have the enterprise sales culture. It's trying, it's making progress, but it's like that racehorse that has all the potential in the world, but it's just missing some kind of key ingredient to put it over at the top. It's always coming in third, (chuckles) but we're watching and Google's obviously, making some investments as we shared with earlier. All right. Some final thoughts on what we learned this week and in this research: customers and partners should be thrilled that both Microsoft and Google along with AWS are spending so much money on innovation and building out global platforms. This is a gift to the industry and we should be thankful frankly because it's good for business, it's good for competitiveness and future innovation as a platform that can be built upon. Now we didn't talk much about multi-cloud, we haven't even mentioned supercloud, but both Microsoft and Google have a story that resonates with customers in cross cloud capabilities, unlike AWS at this time. But we never say never when it comes to AWS. They sometimes and oftentimes surprise you. One of the other things that Sarbjeet Johal and John Furrier and I have discussed is that each of the Big 3 is positioning to their respective strengths. AWS is the best IaaS. Microsoft is building out the kind of, quote, we-make-it-easy-for-you cloud, and Google is trying to be the open data cloud with its open-source chops and excellent tech. And that puts added pressure on Snowflake, doesn't it? You know, Thomas Kurian made some comments according to CRN, something to the effect that, we are the only company that can do the data cloud thing across clouds, which again, if I'm being honest is not really accurate. Now I haven't clarified these statements with Google and often things get misquoted, but there's little question that, as AWS has done in the past with Redshift, Google is taking a page out of Snowflake, Databricks as well. A big difference in the Big 3 is that AWS doesn't have this big emphasis on the up-the-stack collaboration software that both Microsoft and Google have, and that for Microsoft and Google will drive captive IaaS consumption. AWS obviously does some of that in database, a lot of that in database, but ISVs that compete with Microsoft and Google should have a greater affinity, one would think, to AWS for competitive reasons. and the same thing could be said in security, we would think because, as I mentioned before, Microsoft competes very directly with CrowdStrike and Okta and others. One of the big thing that Sarbjeet mentioned that I want to call out here, I'd love to have your opinion. AWS specifically, but also Microsoft with Azure have successfully created what Sarbjeet calls brand distance. AWS from the Amazon Retail, and even though AWS all the time talks about Amazon X and Amazon Y is in their product portfolio, but you don't really consider it part of the retail organization 'cause it's not. Azure, same thing, has created its own identity. And it seems that Google still struggles to do that. It's still very highly linked to the sort of core of Google. Now, maybe that's by design, but for enterprise customers, there's still some potential confusion with Google, what's its intentions? How long will they continue to lose money and invest? Are they going to pull the plug like they do on so many other tools? So you know, maybe some rethinking of the marketing there and the positioning. Now we didn't talk much about ecosystem, but it's vital for any cloud player, and Google again has some work to do relative to the leaders. Which brings us to supercloud. The ecosystem and end customers are now in a position this decade to digitally transform. And we're talking here about building out their own clouds, not by putting in and building data centers and installing racks of servers and storage devices, no. Rather to build value on top of the hyperscaler gift that has been presented. And that is a mega trend that we're watching closely in theCUBE community. While there's debate about the supercloud name and so forth, there little question in our minds that the next decade of cloud will not be like the last. All right, we're going to leave it there today. Many thanks to Sarbjeet Johal, and my business partner, John Furrier, for their input to today's episode. Thanks to Alex Myerson who's on production and manages the podcast and Ken Schiffman as well. Kristen Martin and Cheryl Knight helped get the word out on social media and in our newsletters. And Rob Hof is our editor in chief over at SiliconANGLE, who does some wonderful editing. And check out SiliconANGLE, a lot of coverage on Google Cloud Next and Microsoft Ignite. Remember, all these episodes are available as podcast wherever you listen. Just search Breaking Analysis podcast. I publish each week on wikibon.com and siliconangle.com. And you can always get in touch with me via email, david.vellante@siliconangle.com or you can DM me at dvellante or comment on my LinkedIn posts. And please do check out etr.ai, the best survey data in the enterprise tech business. This is Dave Vellante for the CUBE Insights, powered by ETR. Thanks for watching and we'll see you next time on Breaking Analysis. (gentle music)

Published Date : Oct 15 2022

SUMMARY :

with Dave Vellante. and the degree to which they

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
AWSORGANIZATION

0.99+

IBMORGANIZATION

0.99+

NadellaPERSON

0.99+

Alex MyersonPERSON

0.99+

NvidiaORGANIZATION

0.99+

Dave VellantePERSON

0.99+

Kevin MandianPERSON

0.99+

OracleORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

Cheryl KnightPERSON

0.99+

Kristen MartinPERSON

0.99+

Thomas KurianPERSON

0.99+

DellORGANIZATION

0.99+

Ken SchiffmanPERSON

0.99+

OctoberDATE

0.99+

Satya NadellaPERSON

0.99+

SeattleLOCATION

0.99+

John FurrierPERSON

0.99+

3.6 billionQUANTITY

0.99+

Rob HofPERSON

0.99+

SundarPERSON

0.99+

PrudentialORGANIZATION

0.99+

JulyDATE

0.99+

New York CityLOCATION

0.99+

H&MORGANIZATION

0.99+

KurianPERSON

0.99+

twoQUANTITY

0.99+

6%QUANTITY

0.99+

Minna BankORGANIZATION

0.99+

5xQUANTITY

0.99+

Sarbjeet JohalPERSON

0.99+

Breaking Analysis: How the cloud is changing security defenses in the 2020s


 

>> Announcer: From theCUBE studios in Palo Alto in Boston, bringing you data-driven insights from theCUBE and ETR. This is "Breaking Analysis" with Dave Vellante. >> The rapid pace of cloud adoption has changed the way organizations approach cybersecurity. Specifically, the cloud is increasingly becoming the first line of cyber defense. As such, along with communicating to the board and creating a security aware culture, the chief information security officer must ensure that the shared responsibility model is being applied properly. Meanwhile, the DevSecOps team has emerged as the critical link between strategy and execution, while audit becomes the free safety, if you will, in the equation, i.e., the last line of defense. Hello, and welcome to this week's, we keep on CUBE Insights, powered by ETR. In this "Breaking Analysis", we'll share the latest data on hyperscale, IaaS, and PaaS market performance, along with some fresh ETR survey data. And we'll share some highlights and the puts and takes from the recent AWS re:Inforce event in Boston. But first, the macro. It's earning season, and that's what many people want to talk about, including us. As we reported last week, the macro spending picture is very mixed and weird. Think back to a week ago when SNAP reported. A player like SNAP misses and the Nasdaq drops 300 points. Meanwhile, Intel, the great semiconductor hope for America misses by a mile, cuts its revenue outlook by 15% for the year, and the Nasdaq was up nearly 250 points just ahead of the close, go figure. Earnings reports from Meta, Google, Microsoft, ServiceNow, and some others underscored cautious outlooks, especially those exposed to the advertising revenue sector. But at the same time, Apple, Microsoft, and Google, were, let's say less bad than expected. And that brought a sigh of relief. And then there's Amazon, which beat on revenue, it beat on cloud revenue, and it gave positive guidance. The Nasdaq has seen this month best month since the isolation economy, which "Breaking Analysis" contributor, Chip Symington, attributes to what he calls an oversold rally. But there are many unknowns that remain. How bad will inflation be? Will the fed really stop tightening after September? The Senate just approved a big spending bill along with corporate tax hikes, which generally don't favor the economy. And on Monday, August 1st, the market will likely realize that we are in the summer quarter, and there's some work to be done. Which is why it's not surprising that investors sold the Nasdaq at the close today on Friday. Are people ready to call the bottom? Hmm, some maybe, but there's still lots of uncertainty. However, the cloud continues its march, despite some very slight deceleration in growth rates from the two leaders. Here's an update of our big four IaaS quarterly revenue data. The big four hyperscalers will account for $165 billion in revenue this year, slightly lower than what we had last quarter. We expect AWS to surpass 83 billion this year in revenue. Azure will be more than 2/3rds the size of AWS, a milestone from Microsoft. Both AWS and Azure came in slightly below our expectations, but still very solid growth at 33% and 46% respectively. GCP, Google Cloud Platform is the big concern. By our estimates GCP's growth rate decelerated from 47% in Q1, and was 38% this past quarter. The company is struggling to keep up with the two giants. Remember, both GCP and Azure, they play a shell game and hide the ball on their IaaS numbers, so we have to use a survey data and other means of estimating. But this is how we see the market shaping up in 2022. Now, before we leave the overall cloud discussion, here's some ETR data that shows the net score or spending momentum granularity for each of the hyperscalers. These bars show the breakdown for each company, with net score on the right and in parenthesis, net score from last quarter. lime green is new adoptions, forest green is spending up 6% or more, the gray is flat, pink is spending at 6% down or worse, and the bright red is replacement or churn. Subtract the reds from the greens and you get net score. One note is this is for each company's overall portfolio. So it's not just cloud. So it's a bit of a mixed bag, but there are a couple points worth noting. First, anything above 40% or 40, here as shown in the chart, is considered elevated. AWS, as you can see, is well above that 40% mark, as is Microsoft. And if you isolate Microsoft's Azure, only Azure, it jumps above AWS's momentum. Google is just barely hanging on to that 40 line, and Alibaba is well below, with both Google and Alibaba showing much higher replacements, that bright red. But here's the key point. AWS and Azure have virtually no churn, no replacements in that bright red. And all four companies are experiencing single-digit numbers in terms of decreased spending within customer accounts. People may be moving some workloads back on-prem selectively, but repatriation is definitely not a trend to bet the house on, in our view. Okay, let's get to the main subject of this "Breaking Analysis". TheCube was at AWS re:Inforce in Boston this week, and we have some observations to share. First, we had keynotes from Steven Schmidt who used to be the chief information security officer at Amazon on Web Services, now he's the CSO, the chief security officer of Amazon. Overall, he dropped the I in his title. CJ Moses is the CISO for AWS. Kurt Kufeld of AWS also spoke, as did Lena Smart, who's the MongoDB CISO, and she keynoted and also came on theCUBE. We'll go back to her in a moment. The key point Schmidt made, one of them anyway, was that Amazon sees more data points in a day than most organizations see in a lifetime. Actually, it adds up to quadrillions over a fairly short period of time, I think, it was within a month. That's quadrillion, it's 15 zeros, by the way. Now, there was drill down focus on data protection and privacy, governance, risk, and compliance, GRC, identity, big, big topic, both within AWS and the ecosystem, network security, and threat detection. Those are the five really highlighted areas. Re:Inforce is really about bringing a lot of best practice guidance to security practitioners, like how to get the most out of AWS tooling. Schmidt had a very strong statement saying, he said, "I can assure you with a 100% certainty that single controls and binary states will absolutely positively fail." Hence, the importance of course, of layered security. We heard a little bit of chat about getting ready for the future and skating to the security puck where quantum computing threatens to hack all of the existing cryptographic algorithms, and how AWS is trying to get in front of all that, and a new set of algorithms came out, AWS is testing. And, you know, we'll talk about that maybe in the future, but that's a ways off. And by its prominent presence, the ecosystem was there enforced, to talk about their role and filling the gaps and picking up where AWS leaves off. We heard a little bit about ransomware defense, but surprisingly, at least in the keynotes, no discussion about air gaps, which we've talked about in previous "Breaking Analysis", is a key factor. We heard a lot about services to help with threat detection and container security and DevOps, et cetera, but there really wasn't a lot of specific talk about how AWS is simplifying the life of the CISO. Now, maybe it's inherently assumed as AWS did a good job stressing that security is job number one, very credible and believable in that front. But you have to wonder if the world is getting simpler or more complex with cloud. And, you know, you might say, "Well, Dave, come on, of course it's better with cloud." But look, attacks are up, the threat surface is expanding, and new exfiltration records are being set every day. I think the hard truth is, the cloud is driving businesses forward and accelerating digital, and those businesses are now exposed more than ever. And that's why security has become such an important topic to boards and throughout the entire organization. Now, the other epiphany that we had at re:Inforce is that there are new layers and a new trust framework emerging in cyber. Roles are shifting, and as a direct result of the cloud, things are changing within organizations. And this first hit me in a conversation with long-time cyber practitioner and Wikibon colleague from our early Wikibon days, and friend, Mike Versace. And I spent two days testing the premise that Michael and I talked about. And here's an attempt to put that conversation into a graphic. The cloud is now the first line of defense. AWS specifically, but hyperscalers generally provide the services, the talent, the best practices, and automation tools to secure infrastructure and their physical data centers. And they're really good at it. The security inside of hyperscaler clouds is best of breed, it's world class. And that first line of defense does take some of the responsibility off of CISOs, but they have to understand and apply the shared responsibility model, where the cloud provider leaves it to the customer, of course, to make sure that the infrastructure they're deploying is properly configured. So in addition to creating a cyber aware culture and communicating up to the board, the CISO has to ensure compliance with and adherence to the model. That includes attracting and retaining the talent necessary to succeed. Now, on the subject of building a security culture, listen to this clip on one of the techniques that Lena Smart, remember, she's the CISO of MongoDB, one of the techniques she uses to foster awareness and build security cultures in her organization. Play the clip >> Having the Security Champion program, so that's just, it's like one of my babies. That and helping underrepresented groups in MongoDB kind of get on in the tech world are both really important to me. And so the Security Champion program is purely purely voluntary. We have over 100 members. And these are people, there's no bar to join, you don't have to be technical. If you're an executive assistant who wants to learn more about security, like my assistant does, you're more than welcome. Up to, we actually, people grade themselves when they join us. We give them a little tick box, like five is, I walk on security water, one is I can spell security, but I'd like to learn more. Mixing those groups together has been game-changing for us. >> Now, the next layer is really where it gets interesting. DevSecOps, you know, we hear about it all the time, shifting left. It implies designing security into the code at the dev level. Shift left and shield right is the kind of buzz phrase. But it's getting more and more complicated. So there are layers within the development cycle, i.e., securing the container. So the app code can't be threatened by backdoors or weaknesses in the containers. Then, securing the runtime to make sure the code is maintained and compliant. Then, the DevOps platform so that change management doesn't create gaps and exposures, and screw things up. And this is just for the application security side of the equation. What about the network and implementing zero trust principles, and securing endpoints, and machine to machine, and human to app communication? So there's a lot of burden being placed on the DevOps team, and they have to partner with the SecOps team to succeed. Those guys are not security experts. And finally, there's audit, which is the last line of defense or what I called at the open, the free safety, for you football fans. They have to do more than just tick the box for the board. That doesn't cut it anymore. They really have to know their stuff and make sure that what they sign off on is real. And then you throw ESG into the mix is becoming more important, making sure the supply chain is green and also secure. So you can see, while much of this stuff has been around for a long, long time, the cloud is accelerating innovation in the pace of delivery. And so much is changing as a result. Now, next, I want to share a graphic that we shared last week, but a little different twist. It's an XY graphic with net score or spending velocity in the vertical axis and overlap or presence in the dataset on the horizontal. With that magic 40% red line as shown. Okay, I won't dig into the data and draw conclusions 'cause we did that last week, but two points I want to make. First, look at Microsoft in the upper-right hand corner. They are big in security and they're attracting a lot of dollars in the space. We've reported on this for a while. They're a five-star security company. And every time, from a spending standpoint in ETR data, that little methodology we use, every time I've run this chart, I've wondered, where the heck is AWS? Why aren't they showing up there? If security is so important to AWS, which it is, and its customers, why aren't they spending money with Amazon on security? And I asked this very question to Merrit Baer, who resides in the office of the CISO at AWS. Listen to her answer. >> It doesn't mean don't spend on security. There is a lot of goodness that we have to offer in ESS, external security services. But I think one of the unique parts of AWS is that we don't believe that security is something you should buy, it's something that you get from us. It's something that we do for you a lot of the time. I mean, this is the definition of the shared responsibility model, right? >> Now, maybe that's good messaging to the market. Merritt, you know, didn't say it outright, but essentially, Microsoft they charge for security. At AWS, it comes with the package. But it does answer my question. And, of course, the fact is that AWS can subsidize all this with egress charges. Now, on the flip side of that, (chuckles) you got Microsoft, you know, they're both, they're competing now. We can take CrowdStrike for instance. Microsoft and CrowdStrike, they compete with each other head to head. So it's an interesting dynamic within the ecosystem. Okay, but I want to turn to a powerful example of how AWS designs in security. And that is the idea of confidential computing. Of course, AWS is not the only one, but we're coming off of re:Inforce, and I really want to dig into something that David Floyer and I have talked about in previous episodes. And we had an opportunity to sit down with Arvind Raghu and J.D. Bean, two security experts from AWS, to talk about this subject. And let's share what we learned and why we think it matters. First, what is confidential computing? That's what this slide is designed to convey. To AWS, they would describe it this way. It's the use of special hardware and the associated firmware that protects customer code and data from any unauthorized access while the data is in use, i.e., while it's being processed. That's oftentimes a security gap. And there are two dimensions here. One is protecting the data and the code from operators on the cloud provider, i.e, in this case, AWS, and protecting the data and code from the customers themselves. In other words, from admin level users are possible malicious actors on the customer side where the code and data is being processed. And there are three capabilities that enable this. First, the AWS Nitro System, which is the foundation for virtualization. The second is Nitro Enclaves, which isolate environments, and then third, the Nitro Trusted Platform Module, TPM, which enables cryptographic assurances of the integrity of the Nitro instances. Now, we've talked about Nitro in the past, and we think it's a revolutionary innovation, so let's dig into that a bit. This is an AWS slide that was shared about how they protect and isolate data and code. On the left-hand side is a classical view of a virtualized architecture. You have a single host or a single server, and those white boxes represent processes on the main board, X86, or could be Intel, or AMD, or alternative architectures. And you have the hypervisor at the bottom which translates instructions to the CPU, allowing direct execution from a virtual machine into the CPU. But notice, you also have blocks for networking, and storage, and security. And the hypervisor emulates or translates IOS between the physical resources and the virtual machines. And it creates some overhead. Now, companies like VMware have done a great job, and others, of stripping out some of that overhead, but there's still an overhead there. That's why people still like to run on bare metal. Now, and while it's not shown in the graphic, there's an operating system in there somewhere, which is privileged, so it's got access to these resources, and it provides the services to the VMs. Now, on the right-hand side, you have the Nitro system. And you can see immediately the differences between the left and right, because the networking, the storage, and the security, the management, et cetera, they've been separated from the hypervisor and that main board, which has the Intel, AMD, throw in Graviton and Trainium, you know, whatever XPUs are in use in the cloud. And you can see that orange Nitro hypervisor. That is a purpose-built lightweight component for this system. And all the other functions are separated in isolated domains. So very strong isolation between the cloud software and the physical hardware running workloads, i.e., those white boxes on the main board. Now, this will run at practically bare metal speeds, and there are other benefits as well. One of the biggest is security. As we've previously reported, this came out of AWS's acquisition of Annapurna Labs, which we've estimated was picked up for a measly $350 million, which is a drop in the bucket for AWS to get such a strategic asset. And there are three enablers on this side. One is the Nitro cards, which are accelerators to offload that wasted work that's done in traditional architectures by typically the X86. We've estimated 25% to 30% of core capacity and cycles is wasted on those offloads. The second is the Nitro security chip, which is embedded and extends the root of trust to the main board hardware. And finally, the Nitro hypervisor, which allocates memory and CPU resources. So the Nitro cards communicate directly with the VMs without the hypervisors getting in the way, and they're not in the path. And all that data is encrypted while it's in motion, and of course, encryption at rest has been around for a while. We asked AWS, is this an, we presumed it was an Arm-based architecture. We wanted to confirm that. Or is it some other type of maybe hybrid using X86 and Arm? They told us the following, and quote, "The SoC, system on chips, for these hardware components are purpose-built and custom designed in-house by Amazon and Annapurna Labs. The same group responsible for other silicon innovations such as Graviton, Inferentia, Trainium, and AQUA. Now, the Nitro cards are Arm-based and do not use any X86 or X86/64 bit CPUs. Okay, so it confirms what we thought. So you may say, "Why should we even care about all this technical mumbo jumbo, Dave?" Well, a year ago, David Floyer and I published this piece explaining why Nitro and Graviton are secret weapons of Amazon that have been a decade in the making, and why everybody needs some type of Nitro to compete in the future. This is enabled, this Nitro innovations and the custom silicon enabled by the Annapurna acquisition. And AWS has the volume economics to make custom silicon. Not everybody can do it. And it's leveraging the Arm ecosystem, the standard software, and the fabrication volume, the manufacturing volume to revolutionize enterprise computing. Nitro, with the alternative processor, architectures like Graviton and others, enables AWS to be on a performance, cost, and power consumption curve that blows away anything we've ever seen from Intel. And Intel's disastrous earnings results that we saw this past week are a symptom of this mega trend that we've been talking about for years. In the same way that Intel and X86 destroyed the market for RISC chips, thanks to PC volumes, Arm is blowing away X86 with volume economics that cannot be matched by Intel. Thanks to, of course, to mobile and edge. Our prediction is that these innovations and the Arm ecosystem are migrating and will migrate further into enterprise computing, which is Intel's stronghold. Now, that stronghold is getting eaten away by the likes of AMD, Nvidia, and of course, Arm in the form of Graviton and other Arm-based alternatives. Apple, Tesla, Amazon, Google, Microsoft, Alibaba, and others are all designing custom silicon, and doing so much faster than Intel can go from design to tape out, roughly cutting that time in half. And the premise of this piece is that every company needs a Nitro to enable alternatives to the X86 in order to support emergent workloads that are data rich and AI-based, and to compete from an economic standpoint. So while at re:Inforce, we heard that the impetus for Nitro was security. Of course, the Arm ecosystem, and its ascendancy has enabled, in our view, AWS to create a platform that will set the enterprise computing market this decade and beyond. Okay, that's it for today. Thanks to Alex Morrison, who is on production. And he does the podcast. And Ken Schiffman, our newest member of our Boston Studio team is also on production. Kristen Martin and Cheryl Knight help spread the word on social media and in the community. And Rob Hof is our editor in chief over at SiliconANGLE. He does some great, great work for us. Remember, all these episodes are available as podcast. Wherever you listen, just search "Breaking Analysis" podcast. I publish each week on wikibon.com and siliconangle.com. Or you can email me directly at David.Vellante@siliconangle.com or DM me @dvellante, comment on my LinkedIn post. And please do check out etr.ai for the best survey data in the enterprise tech business. This is Dave Vellante for theCUBE Insights, powered by ETR. Thanks for watching. Be well, and we'll see you next time on "Breaking Analysis." (upbeat theme music)

Published Date : Jul 30 2022

SUMMARY :

This is "Breaking Analysis" and the Nasdaq was up nearly 250 points And so the Security Champion program the SecOps team to succeed. of the shared responsibility model, right? and it provides the services to the VMs.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Alex MorrisonPERSON

0.99+

David FloyerPERSON

0.99+

Mike VersacePERSON

0.99+

MichaelPERSON

0.99+

AWSORGANIZATION

0.99+

Steven SchmidtPERSON

0.99+

AmazonORGANIZATION

0.99+

Kurt KufeldPERSON

0.99+

AppleORGANIZATION

0.99+

Dave VellantePERSON

0.99+

TeslaORGANIZATION

0.99+

AlibabaORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

J.D. BeanPERSON

0.99+

Ken SchiffmanPERSON

0.99+

Arvind RaghuPERSON

0.99+

Lena SmartPERSON

0.99+

Kristen MartinPERSON

0.99+

Cheryl KnightPERSON

0.99+

40%QUANTITY

0.99+

Rob HofPERSON

0.99+

DavePERSON

0.99+

SchmidtPERSON

0.99+

Palo AltoLOCATION

0.99+

2022DATE

0.99+

fiveQUANTITY

0.99+

NvidiaORGANIZATION

0.99+

two daysQUANTITY

0.99+

Annapurna LabsORGANIZATION

0.99+

6%QUANTITY

0.99+

SNAPORGANIZATION

0.99+

five-starQUANTITY

0.99+

Chip SymingtonPERSON

0.99+

47%QUANTITY

0.99+

AnnapurnaORGANIZATION

0.99+

$350 millionQUANTITY

0.99+

BostonLOCATION

0.99+

Merrit BaerPERSON

0.99+

CJ MosesPERSON

0.99+

40QUANTITY

0.99+

MerrittPERSON

0.99+

15%QUANTITY

0.99+

25%QUANTITY

0.99+

AMDORGANIZATION

0.99+

Breaking Analysis: AWS re:Inforce marks a summer checkpoint on cybersecurity


 

>> From theCUBE Studios in Palo Alto and Boston bringing you data driven insights from theCUBE and ETR. This is Breaking Analysis with Dave Vellante. >> After a two year hiatus, AWS re:Inforce is back on as an in-person event in Boston next week. Like the All-Star break in baseball, re:Inforce gives us an opportunity to evaluate the cyber security market overall, the state of cloud security and cross cloud security and more specifically what AWS is up to in the sector. Welcome to this week's Wikibon cube insights powered by ETR. In this Breaking Analysis we'll share our view of what's changed since our last cyber update in May. We'll look at the macro environment, how it's impacting cyber security plays in the market, what the ETR data tells us and what to expect at next week's AWS re:Inforce. We start this week with a checkpoint from Breaking Analysis contributor and stock trader Chip Simonton. We asked for his assessment of the market generally in cyber stocks specifically. So we'll summarize right here. We've kind of moved on from a narrative of the sky is falling to one where the glass is half empty you know, and before today's big selloff it was looking more and more like glass half full. The SNAP miss has dragged down many of the big names that comprise the major indices. You know, earning season as always brings heightened interest and this time we're seeing many cross currents. It starts as usual with the banks and the money centers. With the exception of JP Morgan the numbers were pretty good according to Simonton. Investment banks were not so great with Morgan and Goldman missing estimates but in general, pretty positive outlooks. But the market also shrugged off IBM's growth. And of course, social media because of SNAP is getting hammered today. The question is no longer recession or not but rather how deep the recession will be. And today's PMI data was the weakest since the start of the pandemic. Bond yields continue to weaken and there's a growing consensus that Fed tightening may be over after September as commodity prices weaken. Now gas prices of course are still high but they've come down. Tesla, Nokia and AT&T all indicated that supply issues were getting better which is also going to help with inflation. So it's no shock that the NASDAQ has done pretty well as beaten down as tech stocks started to look oversold you know, despite today's sell off. But AT&T and Verizon, they blamed their misses in part on people not paying their bills on time. SNAP's huge miss even after guiding lower and then refusing to offer future guidance took that stock down nearly 40% today and other social media stocks are off on sympathy. Meta and Google were off, you know, over 7% at midday. I think at one point hit 14% down and Google, Meta and Twitter have all said they're freezing new hires. So we're starting to see according to Simonton for the first time in a long time, the lower income, younger generation really feeling the pinch of inflation. Along of course with struggling families that have to choose food and shelter over discretionary spend. Now back to the NASDAQ for a moment. As we've been reporting back in mid-June and NASDAQ was off nearly 33% year to date and has since rallied. It's now down about 25% year to date as of midday today. But as I say, it had been, you know much deeper back in early June. But it's broken that downward trend that we talked about where the highs are actually lower and the lows are lower. That's started to change for now anyway. We'll see if it holds. But chip stocks, software stocks, and of course the cyber names have broken those down trends and have been trading above their 50 day moving averages for the first time in around four months. And again, according to Simonton, we'll see if that holds. If it does, that's a positive sign. Now remember on June 24th, we recorded a Breaking Analysis and talked about Qualcomm trading at a 12 X multiple with an implied 15% growth rate. On that day the stock was 124 and it surpassed 155 earlier this month. That was a really good call by Simonton. So looking at some of the cyber players here SailPoint is of course the anomaly with the Thoma Bravo 7 billion acquisition of the company holding that stock up. But the Bug ETF of basket of cyber stocks has definitely improved. When we last reported on cyber in May, CrowdStrike was off 23% year to date. It's now off 4%. Palo Alto has held steadily. Okta is still underperforming its peers as it works through the fallout from the breach and the ingestion of its Auth0 acquisition. Meanwhile, Zscaler and SentinelOne, those high flyers are still well off year to date, with Ping Identity and CyberArk not getting hit as hard as their valuations hadn't run up as much. But virtually all these tech stocks generally in cyber issues specifically, they've been breaking their down trend. So it will now come down to earnings guidance in the coming months. But the SNAP reaction is quite stunning. I mean, the environment is slowing, we know that. Ad spending gets cut in that type of market, we know that too. So it shouldn't be a huge surprise to anyone but as Chip Simonton says, this shows that sellers are still in control here. So it's going to take a little while to work through that despite the positive signs that we're seeing. Okay. We also turned to our friend Eric Bradley from ETR who follows these markets quite closely. He frequently interviews CISOs on his program, on his round tables. So we asked to get his take and here's what ETR is saying. Again, as we've reported while CIOs and IT buyers have tempered spending expectations since December and early January when they called for an 8% plus spending growth, they're still expecting a six to seven percent uptick in spend this year. So that's pretty good. Security remains the number one priority and also is the highest ranked sector in the ETR data set when you measure in terms of pervasiveness in the study. Within security endpoint detection and extended detection and response along with identity and privileged account management are the sub-sectors with the most spending velocity. And when you exclude Microsoft which is just dominant across the board in so many sectors, CrowdStrike has taken over the number one spot in terms of spending momentum in ETR surveys with CyberArk and Tanium showing very strong as well. Okta has seen a big dropoff in net score from 54% last survey to 45% in July as customers maybe put a pause on new Okta adoptions. That clearly shows in the survey. We'll talk about that in a moment. Look Okta still elevated in terms of spending momentum, but it doesn't have the dominant leadership position it once held in spend velocity. Year on year, according to ETR, Tenable and Elastic are seeing the biggest jumps in spending momentum, with SailPoint, Tanium, Veronis, CrowdStrike and Zscaler seeing the biggest jump in new adoptions since the last survey. Now on the downside, SonicWall, Symantec, Trellic which is McAfee, Barracuda and TrendMicro are seeing the highest percentage of defections and replacements. Let's take a deeper look at what the ETR data tells us about the cybersecurity space. This is a popular view that we like to share with net score or spending momentum on the Y axis and overlap or pervasiveness in the data on the X axis. It's a measure of presence in the data set we used to call it market share. With the data, the dot positions, you see that little inserted table, that's how the dots are plotted. And it's important to note that this data is filtered for firms with at least 100 Ns in the survey. That's why some of the other ones that we mentioned might have dropped off. The red dotted line at 40% that indicates highly elevated spending momentum and there are several firms above that mark including of course, Microsoft, which is literally off the charts in both dimensions in the upper right. It's quite incredible actually. But for the rest of the pack, CrowdStrike has now taken back its number one net score position in the ETR survey. And CyberArk and Okta and Zscaler, CloudFlare and Auth0 now Okta through the acquisition, are all above the 40% mark. You can stare at the data at your leisure but I'll just point out, make three quick points. First Palo Alto continues to impress and as steady as she goes. Two, it's a very crowded market still and it's complicated space. And three there's lots of spending in different pockets. This market has too many tools and will continue to consolidate. Now I'd like to drill into a couple of firms net scores and pick out some of the pure plays that are leading the way. This series of charts shows the net score or spending velocity or granularity for Okta, CrowdStrike, Zscaler and CyberArk. Four of the top pure plays in the ETR survey that also have over a hundred responses. Now the colors represent the following. Bright red is defections. We're leaving the platform. The pink is we're spending less, meaning we're spending 6% or worse. The gray is flat spend plus or minus 5%. The forest green is spending more, i.e, 6% or more and the lime green is we're adding the platform new. That red dotted line at the 40% net score mark is the same elevated level that we like to talk about. All four are above that target. Now that blue line you see there is net score. The yellow line is pervasiveness in the data. The data shown in each bar goes back 10 surveys all the way back to January 2020. First I want to call out that all four again are seeing down trends in spending momentum with the whole market. That's that blue line. They're seeing that this quarter, again, the market is off overall. Everybody is kind of seeing that down trend for the most part. Very few exceptions. Okta is being hurt by fewer new additions which is why we highlighted in red, that red dotted area, that square that we put there in the upper right of that Okta bar. That lime green, new ads are off as well. And the gray for Okta, flat spending is noticeably up. So it feels like people are pausing a bit and taking a breather for Okta. And as we said earlier, perhaps with the breach earlier this year and the ingestion of Auth0 acquisition the company is seeing some friction in its business. Now, having said that, you can see Okta's yellow line or presence in the data set, continues to grow. So it's a good proxy from market presence. So Okta remains a leader in identity. So again, I'll let you stare at the data if you want at your leisure, but despite some concerns on declining momentum, notice this very little red at these companies when it comes to the ETR survey data. Now one more data slide which brings us to our four star cyber firms. We started a tradition a few years ago where we sorted the ETR data by net score. That's the left hand side of this graphic. And we sorted by shared end or presence in the data set. That's the right hand side. And again, we filtered by companies with at least 100 N and oh, by the way we've excluded Microsoft just to level the playing field. The red dotted line signifies the top 10. If a company cracks the top 10 in both spending momentum and presence, we give them four stars. So Palo Alto, CrowdStrike, Okta, Fortinet and Zscaler all made the cut this time. Now, as we pointed out in May if you combined Auth0 with Okta, they jumped to the number two on the right hand chart in terms of presence. And they would lead the pure plays there although it would bring down Okta's net score somewhat, as you can see, Auth0's net score is lower than Okta's. So when you combine them it would drag that down a little bit but it would give them bigger presence in the data set. Now, the other point we'll make is that Proofpoint and Splunk both dropped off the four star list this time as they both saw marked declines in net score or spending velocity. They both got four stars last quarter. Okay. We're going to close on what to expect at re:Inforce this coming week. Re:Inforce, if you don't know, is AWS's security event. They first held it in Boston back in 2019. It's dedicated to cloud security. The past two years has been virtual and they announced that reinvent that it would take place in Houston in June, which everybody said, that's crazy. Who wants to go to Houston in June and turns out nobody did so they postponed the event, thankfully. And so now they're back in Boston, starting on Monday. Not that it's going to be much cooler in Boston. Anyway, Steven Schmidt had been the face of AWS security at all these previous events as the Chief Information Security Officer. Now he's dropped the I from his title and is now the Chief Security Officer at Amazon. So he went with Jesse to the mothership. Presumably he dropped the I because he deals with physical security now too, like at the warehouses. Not that he didn't have to worry about physical security at the AWS data centers. I don't know. Anyway, he and CJ Moses who is now the new CISO at AWS will be keynoting along with some others including MongoDB's Chief Information Security Officer. So that should be interesting. Now, if you've been following AWS you'll know they like to break things down into, you know, a couple of security categories. Identity, detection and response, data protection slash privacy slash GRC which is governance, risk and compliance, and we would expect a lot more talk this year on container security. So you're going to hear also product updates and they like to talk about how they're adding value to services and try to help, they try to help customers understand how to apply services. Things like GuardDuty, which is their threat detection that has machine learning in it. They'll talk about Security Hub, which centralizes views and alerts and automates security checks. They have a service called Detective which does root cause analysis, and they have tools to mitigate denial of service attacks. And they'll talk about security in Nitro which isolates a lot of the hardware resources. This whole idea of, you know, confidential computing which is, you know, AWS will point out it's kind of become a buzzword. They take it really seriously. I think others do as well, like Arm. We've talked about that on previous Breaking Analysis. And again, you're going to hear something on container security because it's the hottest thing going right now and because AWS really still serves developers and really that's what they're trying to do. They're trying to enable developers to design security in but you're also going to hear a lot of best practice advice from AWS i.e, they'll share the AWS dogfooding playbooks with you for their own security practices. AWS like all good security practitioners, understand that the keys to a successful security strategy and implementation don't start with the technology, rather they're about the methods and practices that you apply to solve security threats and a top to bottom cultural approach to security awareness, designing security into systems, that's really where the developers come in, and training for continuous improvements. So you're going to get heavy doses of really strong best practices and guidance and you know, some good preaching. You're also going to hear and see a lot of partners. They'll be very visible at re:Inforce. AWS is all about ecosystem enablement and AWS is going to host close to a hundred security partners at the event. This is key because AWS doesn't do it all. Interestingly, they don't even show up in the ETR security taxonomy, right? They just sort of imply that it's built in there even though they have a lot of security tooling. So they have to apply the shared responsibility model not only with customers but partners as well. They need an ecosystem to fill gaps and provide deeper problem solving with more mature and deeper security tooling. And you're going to hear a lot of positivity around how great cloud security is and how it can be done well. But the truth is this stuff is still incredibly complicated and challenging for CISOs and practitioners who are understaffed when it comes to top talent. Now, finally, theCUBE will be at re:Inforce in force. John Furry and I will be hosting two days of broadcast so please do stop by if you're in Boston and say hello. We'll have a little chat, we'll share some data and we'll share our overall impressions of the event, the market, what we're seeing, what we're learning, what we're worried about in this dynamic space. Okay. That's it for today. Thanks for watching. Thanks to Alex Myerson, who is on production and manages the podcast. Kristin Martin and Cheryl Knight, they helped get the word out on social and in our newsletters and Rob Hoff is our Editor in Chief over at siliconangle.com. You did some great editing. Thank you all. Remember all these episodes they're available, this podcast. Wherever you listen, all you do is search Breaking Analysis podcast. I publish each week on wikibon.com and siliconangle.com. You can get in touch with me by emailing avid.vellante@siliconangle.com or DM me @dvellante, or comment on my LinkedIn post and please do check out etr.ai for the best survey data in the enterprise tech business. This is Dave Vellante for theCUBE Insights powered by ETR. Thanks for watching and we'll see you in Boston next week if you're there or next time on Breaking Analysis (soft music)

Published Date : Jul 22 2022

SUMMARY :

in Palo Alto and Boston and of course the cyber names

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Alex MyersonPERSON

0.99+

Eric BradleyPERSON

0.99+

Steven SchmidtPERSON

0.99+

Cheryl KnightPERSON

0.99+

VerizonORGANIZATION

0.99+

Dave VellantePERSON

0.99+

AWSORGANIZATION

0.99+

Chip SimontonPERSON

0.99+

Rob HoffPERSON

0.99+

AT&TORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

January 2020DATE

0.99+

BostonLOCATION

0.99+

IBMORGANIZATION

0.99+

June 24thDATE

0.99+

HoustonLOCATION

0.99+

GoogleORGANIZATION

0.99+

OktaORGANIZATION

0.99+

Kristin MartinPERSON

0.99+

JulyDATE

0.99+

SNAPORGANIZATION

0.99+

SymantecORGANIZATION

0.99+

CJ MosesPERSON

0.99+

John FurryPERSON

0.99+

NokiaORGANIZATION

0.99+

6%QUANTITY

0.99+

TeslaORGANIZATION

0.99+

JessePERSON

0.99+

40%QUANTITY

0.99+

CrowdStrikeORGANIZATION

0.99+

FourQUANTITY

0.99+

54%QUANTITY

0.99+

MayDATE

0.99+

Palo AltoORGANIZATION

0.99+

QualcommORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

SimontonPERSON

0.99+

JP MorganORGANIZATION

0.99+

8%QUANTITY

0.99+

14%QUANTITY

0.99+

Palo AltoLOCATION

0.99+

SailPointORGANIZATION

0.99+

TrendMicroORGANIZATION

0.99+

MondayDATE

0.99+

15%QUANTITY

0.99+

McAfeeORGANIZATION

0.99+

ZscalerORGANIZATION

0.99+

2019DATE

0.99+

FortinetORGANIZATION

0.99+

two daysQUANTITY

0.99+

JuneDATE

0.99+

45%QUANTITY

0.99+

10 surveysQUANTITY

0.99+

sixQUANTITY

0.99+

CyberArkORGANIZATION

0.99+

Thoma BravoORGANIZATION

0.99+

TenableORGANIZATION

0.99+

avid.vellante@siliconangle.comOTHER

0.99+

next weekDATE

0.99+

SentinelOneORGANIZATION

0.99+

early JuneDATE

0.99+

MetaORGANIZATION

0.99+

Breaking Analysis: H1 of ‘22 was ugly…H2 could be worse Here’s why we’re still optimistic


 

>> From theCUBE Studios in Palo Alto in Boston, bringing you data driven insights from theCUBE and ETR. This is Breaking Analysis with Dave Vellante. >> After a two-year epic run in tech, 2022 has been an epically bad year. Through yesterday, The NASDAQ composite is down 30%. The S$P 500 is off 21%. And the Dow Jones Industrial average 16% down. And the poor holders at Bitcoin have had to endure a nearly 60% decline year to date. But judging by the attendance and enthusiasm, in major in-person tech events this spring. You'd never know that tech was in the tank. Moreover, walking around the streets of Las Vegas, where most tech conferences are held these days. One can't help but notice that the good folks of Main Street, don't seem the least bit concerned that the economy is headed for a recession. Hello, and welcome to this weeks Wiki Bond Cube Insights powered by ETR. In this Breaking Analysis we'll share our main takeaways from the first half of 2022. And talk about the outlook for tech going forward, and why despite some pretty concerning headwinds we remain sanguine about tech generally, but especially enterprise tech. Look, here's the bumper sticker on why many folks are really bearish at the moment. Of course, inflation is high, other than last year, the previous inflation high this century was in July of 2008, it was 5.6%. Inflation has proven to be very, very hard to tame. You got gas at $7 dollars a gallon. Energy prices they're not going to suddenly drop. Interest rates are climbing, which will eventually damage housing. Going to have that ripple effect, no doubt. We're seeing layoffs at companies like Tesla and the crypto names are also trimming staff. Workers, however are still in short supply. So wages are going up. Companies in retail are really struggling with the right inventory, and they can't even accurately guide on their earnings. We've seen a version of this movie before. Now, as it pertains to tech, Crawford Del Prete, who's the CEO of IDC explained this on theCUBE this very week. And I thought he did a really good job. He said the following, >> Matt, you have a great statistic that 80% of companies used COVID as their point to pivot into digital transformation. And to invest in a different way. And so what we saw now is that tech is now where I think companies need to focus. They need to invest in tech. They need to make people more productive with tech and it played out in the numbers. Now so this year what's fascinating is we're looking at two vastly different markets. We got gasoline at $7 a gallon. We've got that affecting food prices. Interesting fun fact recently it now costs over $1,000 to fill an 18 wheeler. All right, based on, I mean, this just kind of can't continue. So you think about it. >> Don't put the boat in the water. >> Yeah, yeah, yeah. Good luck if ya, yeah exactly. So a family has kind of this bag of money, and that bag of money goes up by maybe three, 4% every year, depending upon earnings. So that is sort of sloshing around. So if food and fuel and rent is taking up more, gadgets and consumer tech are not, you're going to use that iPhone a little longer. You're going to use that Android phone a little longer. You're going to use that TV a little longer. So consumer tech is getting crushed, really it's very, very, and you saw it immediately in ad spending. You've seen it in Meta, you've seen it in Facebook. Consumer tech is doing very, very, it is tough. Enterprise tech, we haven't been in the office for two and a half years. We haven't upgraded whether that be campus wifi, whether that be servers, whether that be commercial PCs as much as we would have. So enterprise tech, we're seeing double digit order rates. We're seeing strong, strong demand. We have combined that with a component shortage, and you're seeing some enterprise companies with a quarter of backlog, I mean that's really unheard of. >> And higher prices, which also profit. >> And therefore that drives up the prices. >> And this is a theme that we've heard this year at major tech events, they've really come roaring back. Last year, theCUBE had a huge presence at AWS Reinvent. The first Reinvent since 2019, it was really well attended. Now this was before the effects of the omicron variant, before they were really well understood. And in the first quarter of 2022, things were pretty quiet as far as tech events go But theCUBE'a been really busy this spring and early into the summer. We did 12 physical events as we're showing here in the slide. Coupa, did Women in Data Science at Stanford, Coupa Inspire was in Las Vegas. Now these are both smaller events, but they were well attended and beat expectations. San Francisco Summit, the AWS San Francisco Summit was a bit off, frankly 'cause of the COVID concerns. They were on the rise, then we hit Dell Tech World which was packed, it had probably around 7,000 attendees. Now Dockercon was virtual, but we decided to include it here because it was a huge global event with watch parties and many, many tens of thousands of people attending. Now the Red Hat Summit was really interesting. The choice that Red Hat made this year. It was purposefully scaled down and turned into a smaller VIP event in Boston at the Western, a couple thousand people only. It was very intimate with a much larger virtual presence. VeeamON was very well attended, not as large as previous VeeamON events, but again beat expectations. KubeCon and Cloud Native Con was really successful in Spain, Valencia, Spain. PagerDuty Summit was again a smaller intimate event in San Francisco. And then MongoDB World was at the new Javits Center and really well attended over the three day period. There were lots of developers there, lots of business people, lots of ecosystem partners. And then the Snowflake summit in Las Vegas, it was the most vibrant from the standpoint of the ecosystem with nearly 10,000 attendees. And I'll come back to that in a moment. Amazon re:Mars is the Amazon AI robotic event, it's smaller but very, very cool, a lot of innovation. And just last week we were at HPE Discover. They had around 8,000 people attending which was really good. Now I've been to over a dozen HPE or HPE Discover events, within Europe and the United States over the past decade. And this was by far the most vibrant, lot of action. HPE had a little spring in its step because the company's much more focused now but people was really well attended and people were excited to be there, not only to be back at physical events, but also to hear about some of the new innovations that are coming and HPE has a long way to go in terms of building out that ecosystem, but it's starting to form. So we saw that last week. So tech events are back, but they are smaller. And of course now a virtual overlay, they're hybrid. And just to give you some context, theCUBE did, as I said 12 physical events in the first half of 2022. Just to compare that in 2019, through June of that year we had done 35 physical events. Yeah, 35. And what's perhaps more interesting is we had our largest first half ever in our 12 year history because we're doing so much hybrid and virtual to compliment the physical. So that's the new format is CUBE plus digital or sometimes just digital but that's really what's happening in our business. So I think it's a reflection of what's happening in the broader tech community. So everyone's still trying to figure that out but it's clear that events are back and there's no replacing face to face. Or as I like to say, belly to belly, because deals are done at physical events. All these events we've been to, the sales people are so excited. They're saying we're closing business. Pipelines coming out of these events are much stronger, than they are out of the virtual events but the post virtual event continues to deliver that long tail effect. So that's not going to go away. The bottom line is hybrid is the new model. Okay let's look at some of the big themes that we've taken away from the first half of 2022. Now of course, this is all happening under the umbrella of digital transformation. I'm not going to talk about that too much, you've had plenty of DX Kool-Aid injected into your veins over the last 27 months. But one of the first observations I'll share is that the so-called big data ecosystem that was forming during the hoop and around, the hadoop infrastructure days and years. then remember it dispersed, right when the cloud came in and kind of you know, not wiped out but definitely dampened the hadoop enthusiasm for on-prem, the ecosystem dispersed, but now it's reforming. There are large pockets that are obviously seen in the various clouds. And we definitely see a ecosystem forming around MongoDB and the open source community gathering in the data bricks ecosystem. But the most notable momentum is within the Snowflake ecosystem. Snowflake is moving fast to win the day in the data ecosystem. They're providing a single platform that's bringing different data types together. Live data from systems of record, systems of engagement together with so-called systems of insight. These are converging and while others notably, Oracle are architecting for this new reality, Snowflake is leading with the ecosystem momentum and a new stack is emerging that comprises cloud infrastructure at the bottom layer. Data PaaS layer for app dev and is enabling an ecosystem of partners to build data products and data services that can be monetized. That's the key, that's the top of the stack. So let's dig into that further in a moment but you're seeing machine intelligence and data being driven into applications and the data and application stacks they're coming together to support the acceleration of physical into digital. It's happening right before our eyes in every industry. We're also seeing the evolution of cloud. It started with the SaaS-ification of the enterprise where organizations realized that they didn't have to run their own software on-prem and it made sense to move to SaaS for CRM or HR, certainly email and collaboration and certain parts of ERP and early IS was really about getting out of the data center infrastructure management business called that cloud 1.0, and then 2.0 was really about changing the operating model. And now we're seeing that operating model spill into on-prem workloads finally. We're talking about here about initiatives like HPE's Green Lake, which we heard a lot about last week at Discover and Dell's Apex, which we heard about in May, in Las Vegas. John Furrier had a really interesting observation that basically this is HPE's and Dell's version of outposts. And I found that interesting because outpost was kind of a wake up call in 2018 and a shot across the bow at the legacy enterprise infrastructure players. And they initially responded with these flexible financial schemes, but finally we're seeing real platforms emerge. Again, we saw this at Discover and at Dell Tech World, early implementations of the cloud operating model on-prem. I mean, honestly, you're seeing things like consoles and billing, similar to AWS circa 2014, but players like Dell and HPE they have a distinct advantage with respect to their customer bases, their service organizations, their very large portfolios, especially in the case of Dell and the fact that they have more mature stacks and knowhow to run mission critical enterprise applications on-prem. So John's comment was quite interesting that these firms are basically building their own version of outposts. Outposts obviously came into their wheelhouse and now they've finally responded. And this is setting up cloud 3.0 or Supercloud, as we like to call it, an abstraction layer, that sits above the clouds that serves as a unifying experience across a continuum of on-prem across clouds, whether it's AWS, Azure, or Google. And out to both the near and far edge, near edge being a Lowes or a Home Depot, but far edge could be space. And that edge again is fragmented. You've got the examples like the retail stores at the near edge. Outer space maybe is the far edge and IOT devices is perhaps the tiny edge. No one really knows how the tiny edge is going to play out but it's pretty clear that it's not going to comprise traditional X86 systems with a cool name tossed out to the edge. Rather, it's likely going to require a new low cost, low power, high performance architecture, most likely RM based that will enable things like realtime AI inferencing at that edge. Now we've talked about this a lot on Breaking Analysis, so I'm not going to double click on it. But suffice to say that it's very possible that new innovations are going to emerge from the tiny edge that could really disrupt the enterprise in terms of price performance. Okay, two other quick observations. One is that data protection is becoming a much closer cohort to the security stack where data immutability and air gaps and fast recovery are increasingly becoming a fundamental component of the security strategy to combat ransomware and recover from other potential hacks or disasters. And I got to say from our observation, Veeam is leading the pack here. It's now claiming the number one revenue spot in a statistical dead heat with the Dell's data protection business. That's according to Veeam, according to IDC. And so that space continues to be of interest. And finally, Broadcom's acquisition of Dell. It's going to have ripple effects throughout the enterprise technology business. And there of course, there are a lot of questions that remain, but the one other thing that John Furrier and I were discussing last night John looked at me and said, "Dave imagine if VMware runs better on Broadcom components and OEMs that use Broadcom run VMware better, maybe Broadcom doesn't even have to raise prices on on VMware licenses. Maybe they'll just raise prices on the OEMs and let them raise prices to the end customer." Interesting thought, I think because Broadcom is so P&L focused that it's probably not going to be the prevailing model but we'll see what happens to some of the strategic projects rather like Monterey and Capitola and Thunder. We've talked a lot about project Monterey, the others we'll see if they can make the cut. That's one of the big concerns because it's how OEMs like the ones that are building their versions of outposts are going to compete with the cloud vendors, namely AWS in the future. I want to come back to the comment on the data stack for a moment that we were talking about earlier, we talked about how the big data ecosystem that was once coalescing around hadoop dispersed. Well, the data value chain is reforming and we think it looks something like this picture, where cloud infrastructure lives at the bottom. We've said many times the cloud is expanding and evolving. And if companies like Dell and HPE can truly build a super cloud infrastructure experience then they will be in a position to capture more of the data value. If not, then it's going to go to the cloud players. And there's a live data layer that is increasingly being converged into platforms that not only simplify the movement in ELTing of data but also allow organizations to compress the time to value. Now there's a layer above that, we sometimes call it the super PaaS layer if you will, that must comprise open source tooling, partners are going to write applications and leverage platform APIs and build data products and services that can be monetized at the top of the stack. So when you observe the battle for the data future it's unlikely that any one company is going to be able to do this all on their own, which is why I often joke that the 2020s version of a sweaty Steve Bomber running around the stage, screaming, developers, developers developers, and getting the whole audience into it is now about ecosystem ecosystem ecosystem. Because when you need to fill gaps and accelerate features and provide optionality a list of capabilities on the left hand side of this chart, that's going to come from a variety of different companies and places, we're talking about catalogs and AI tools and data science capabilities, data quality, governance tools and it should be of no surprise to followers of Breaking Analysis that on the right hand side of this chart we're including the four principles of data mesh, which of course were popularized by Zhamak Dehghani. So decentralized data ownership, data as products, self-serve platform and automated or computational governance. Now whether this vision becomes a reality via a proprietary platform like Snowflake or somehow is replicated by an open source remains to be seen but history generally shows that a defacto standard for more complex problems like this is often going to emerge prior to an open source alternative. And that would be where I would place my bets. Although even that proprietary platform has to include open source optionality. But it's not a winner take all market. It's plenty of room for multiple players and ecosystem innovators, but winner will definitely take more in my opinion. Okay, let's close with some ETR data that looks at some of those major platform plays who talk a lot about digital transformation and world changing impactful missions. And they have the resources really to compete. This is an XY graphic. It's a view that we often show, it's got net score on the vertical access. That's a measure of spending momentum, and overlap or presence in the ETR survey. That red, that's the horizontal access. The red dotted line at 40% indicates that the platform is among the highest in terms of spending velocity. Which is why I always point out how impressive that makes AWS and Azure because not only are they large on the horizontal axis, the spending momentum on those two platforms rivals even that of Snowflake which continues to lead all on the vertical access. Now, while Google has momentum, given its goals and resources, it's well behind the two leaders. We've added Service Now and Salesforce, two platform names that have become the next great software companies. Joining likes of Oracle, which we show here and SAP not shown along with IBM, you can see them on this chart. We've also plotted MongoDB, which we think has real momentum as a company generally but also with Atlas, it's managed cloud database as a service specifically and Red Hat with trying to become the standard for app dev in Kubernetes environments, which is the hottest trend right now in application development and application modernization. Everybody's doing something with Kubernetes and of course, Red Hat with OpenShift wants to make that a better experience than do it yourself. The DYI brings a lot more complexity. And finally, we've got HPE and Dell both of which we've talked about pretty extensively here and VMware and Cisco. Now Cisco is executing on its portfolio strategy. It's got a lot of diverse components to its company. And it's coming at the cloud of course from a networking and security perspective. And that's their position of strength. And VMware is a staple of the enterprise. Yes, there's some uncertainty with regards to the Broadcom acquisition, but one thing is clear vSphere isn't going anywhere. It's entrenched and will continue to run lots of IT for years to come because it's the best platform on the planet. Now, of course, these are just some of the players in the mix. We expect that numerous non-traditional technology companies this is important to emerge as new cloud players. We've put a lot of emphasis on the data ecosystem because to us that's really going to be the main spring of digital, i.e., a digital company is a data company and that means an ecosystem of data partners that can advance outcomes like better healthcare, faster drug discovery, less fraud, cleaner energy, autonomous vehicles that are safer, smarter, more efficient grids and factories, better government and virtually endless litany of societal improvements that can be addressed. And these companies will be building innovations on top of cloud platforms creating their own super clouds, if you will. And they'll come from non-traditional places, industries, finance that take their data, their software, their tooling bring them to their customers and run them on various clouds. Okay, that's it for today. Thanks to Alex Myerson, who is on production and does the podcast for Breaking Analysis, Kristin Martin and Cheryl Knight, they help get the word out. And Rob Hoofe is our editor and chief over at Silicon Angle who helps edit our posts. Remember all these episodes are available as podcasts wherever you listen. All you got to do is search Breaking Analysis podcast. I publish each week on wikibon.com and siliconangle.com. You can email me directly at david.vellante@siliconangle.com or DM me at dvellante, or comment on my LinkedIn posts. And please do check out etr.ai for the best survey data in the enterprise tech business. This is Dave Vellante for theCUBE's Insights powered by ETR. Thanks for watching be well. And we'll see you next time on Breaking Analysis. (upbeat music)

Published Date : Jul 2 2022

SUMMARY :

This is Breaking Analysis that the good folks of Main Street, and it played out in the numbers. haven't been in the office And higher prices, And therefore that is that the so-called big data ecosystem

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Alex MyersonPERSON

0.99+

TeslaORGANIZATION

0.99+

Rob HoofePERSON

0.99+

CiscoORGANIZATION

0.99+

Cheryl KnightPERSON

0.99+

Dave VellantePERSON

0.99+

JohnPERSON

0.99+

DellORGANIZATION

0.99+

Kristin MartinPERSON

0.99+

July of 2008DATE

0.99+

EuropeLOCATION

0.99+

5.6%QUANTITY

0.99+

MattPERSON

0.99+

SpainLOCATION

0.99+

GoogleORGANIZATION

0.99+

BostonLOCATION

0.99+

San FranciscoLOCATION

0.99+

MontereyORGANIZATION

0.99+

IBMORGANIZATION

0.99+

12 yearQUANTITY

0.99+

2018DATE

0.99+

DiscoverORGANIZATION

0.99+

Zhamak DehghaniPERSON

0.99+

Las VegasLOCATION

0.99+

Palo AltoLOCATION

0.99+

2019DATE

0.99+

MayDATE

0.99+

JuneDATE

0.99+

AWSORGANIZATION

0.99+

IDCORGANIZATION

0.99+

Last yearDATE

0.99+

OracleORGANIZATION

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

BroadcomORGANIZATION

0.99+

Silicon AngleORGANIZATION

0.99+

Crawford Del PretePERSON

0.99+

30%QUANTITY

0.99+

80%QUANTITY

0.99+

HPEORGANIZATION

0.99+

12 physical eventsQUANTITY

0.99+

DavePERSON

0.99+

KubeConEVENT

0.99+

last weekDATE

0.99+

United StatesLOCATION

0.99+

AndroidTITLE

0.99+

DockerconEVENT

0.99+

40%QUANTITY

0.99+

two and a half yearsQUANTITY

0.99+

35 physical eventsQUANTITY

0.99+

Steve BomberPERSON

0.99+

CapitolaORGANIZATION

0.99+

Cloud Native ConEVENT

0.99+

Red Hat SummitEVENT

0.99+

two leadersQUANTITY

0.99+

San Francisco SummitEVENT

0.99+

last yearDATE

0.99+

21%QUANTITY

0.99+

david.vellante@siliconangle.comOTHER

0.99+

VeeamORGANIZATION

0.99+

yesterdayDATE

0.99+

OneQUANTITY

0.99+

John FurrierPERSON

0.99+

VeeamONEVENT

0.99+

this yearDATE

0.99+

16%QUANTITY

0.99+

$7 a gallonQUANTITY

0.98+

each weekQUANTITY

0.98+

over $1,000QUANTITY

0.98+

35QUANTITY

0.98+

PagerDuty SummitEVENT

0.98+

Matt Burr, Pure Storage


 

(Intro Music) >> Hello everyone and welcome to this special cube conversation with Matt Burr who is the general manager of FlashBlade at Pure Storage. Matt, how you doing? Good to see you. >> I'm doing great. Nice to see you again, Dave. >> Yeah. You know, welcome back. We're going to be broadcasting this is at accelerate. You guys get big news. Of course, FlashBlade S we're going to dig into it. The famous FlashBlade now has new letter attached to it. Tell us what it is, what it's all about. >> (laughing) >> You know, it's easy to say. It's just the latest and greatest version of the FlashBlade, but obviously it's a lot more than that. We've had a lot of success with FlashBlade kind of across the board in particular with Meta and their research super cluster, which is one of the largest AI super clusters in the world. But, it's not enough to just build on the thing that you had, right? So, with the FlashBlade S, we've increased modularity, we've done things like, building co-design software and hardware and leveraging that into something that increases, or it actually doubles density, performance, power efficiency. On top of that, you can scale independently, storage, networking, and compute, which is pretty big deal because it gives you more flexibility, gives you a little more granularity around performance or capacity, depending on which direction you want to go. And we believe that, kind of the end of this is fundamentally the, I guess, the way to put it is sort of the highest performance and capacity optimization, unstructured data platform on the market today without the need for, kind of, an expensive data tier of cash or expected data cash and tier. So we're pretty excited about, what we've ended up with here. >> Yeah. So I think sometimes people forget, about how much core engineering Meta does. Facebook, you go on Facebook and play around and post things, but yeah, their backend cloud is just amazing. So talk a little bit more about the problem targets for FlashBlade. I mean, it's pretty wide scope and we're going to get into that, but what's the core of that. >> Yeah. We've talked about that extensively in the past, the use cases kind of generally remain the same. I know, we'll probably explore this a little bit more deeply, but you know, really what we're talking about here is performance and scalability. We have written essentially an unlimited Metadata software level, which gives us the ability to expand, we're already starting to think about computing an exabyte scale. Okay. So, the problem that the customer has of, Hey, I've got a Greenfield, object environment, or I've got a file environment and my 10 K and 7,500 RPM disc is just spiraling out of control in my environment. It's an environmental problem. It's a management problem, we have effectively, simplified the process of bringing together highly performant, very large multi petabyte to eventually exabyte scale unstructured data systems. >> So people are obviously trying to inject machine intelligence, AI, ML into applications, bring data into applications, bringing those worlds closer together. Analytics is obviously exploding. You see some other things happening in the news, read somewhere, protection and the like, where does FlashBlade fit in terms of FlashBlade S in some terms of some of these new use cases. >> All those things, we're only going wider and broader. So, we've talked in the past about having a having a horizontal approach to this market. The unstructured data market has often had vertical specificity. You could see successful infrastructure companies in oil and gas that may not play median entertainment, where you see, successful companies that play in media entertainment, but don't play well in financial services, for example. We're sort of playing the long game here with this and we're focused on, bringing an all Q L C architecture that combines our traditional kind of pure DFM with the software that is, now I guess seven years hardened from the original FlashBlade system. And so, when we look at customers and we look at kind of customers in three categories, right, we have customers that sort of fit into a very traditional, more than three, but kind of make bucketized this way, customers that fit into kind of this EDA HPC space, then you have that sort of data protection, which I believe kind of ransomware falls under that as well. The world has changed, right? So customers want their data back faster. Rapid restore is a real thing, right? We have customers that come to us and say, anybody can back up my data, but if I want to get something back fast and I mean in less than a week or a couple days, what do I do? So we can solve that problem. And then as you sort of accurately pointed out where you started, there is the AI ML side of things where the Invidia relationship that we have, right. DGX is are a pretty powerful weapon in that market and solving those problems. But they're not cheap. And keeping those DGX's running all the time requires an extremely efficient underpinning of a flash system. And we believe we have that market as well. >> It's interesting when pure was first coming out as a startup, you obviously had some cool new tech, but you know, your stack wasn't as hard. And now you've got seven years under your belt. The last time you were on the cube, we talked about some of the things that you guys were doing differently. We talked about UFFO, unified fast file and object. How does this new product, FlashBlade S, compare to some previous generations of FlashBlade in terms of solving unstructured data and some of these other trends that we've been talking about? >> Yeah. I touched on this a little bit earlier, but I want to go a little bit deeper on this concept of modularity. So for those that are familiar with Pure Storage, we have what's called the evergreen storage program. It's not as much a program as it is an engineering philosophy. The belief that everything we build should be modular in nature so that we can have essentially a chassi that has an a 100% modular components inside of it. Such that we can upgrade all of those features, non disruptively from one version to the next, you should think about that as you know, if you have an iPhone, when you go get a new iPhone, what do you do with your old iPhone? You either throw it away or you sell it. Well, imagine if your iPhone just got newer and better each time you renewed your, whatever it is, two year or three year subscription with apple. That's effectively what we have as a core philosophy, core operating engineering philosophy within pure. That is now a completely full and robust program with this instantiation of the FlashBlade S. And so kind of what that means is, for a customer I'm future proofed for X number of years, knowing that we have a run rate of being able to keep customers on the flash array side from the FA 400 all the way through the flash array X and Excel, which is about a 10 year time span. So, that then, and of itself sort of starts to play into customers that have concerns around ESG. Right? Last time I checked power space and cooling, still mattered in data center. So although I have people that tell me all the time, power space clearly doesn't matter anymore, but I know at the end of the day, most customers seem to say that it does, you're not throwing away refrigerator size pieces of equipment that once held spinning disc, something that's a size of a microwave that's populated with DFMs with all LC flash that you can actually upgrade over time. So if you want to scale more performance, we can do that through adding CPU. If you want to scale more capacity, we can do that through adding more And we're in control of those parameters because we're building our own DFM, our direct fabric modules on our own storage notes, if you will. So instead of relying on the consumer packaging of an SSD, we're upgrading our own stuff and growing it as we can. So again, on the ESG side, I think for many customers going into the next decade, it's going to be a huge deal. >> Yeah. Interesting comments, Matt. I mean, I don't know if you guys invented it, but you certainly popularize the idea of, no Fort lift upgrades and sort of set the industry on its head when you guys really drove that evergreen strategy and kind of on that note, you guys talk about simplicity. I remember last accelerate went deep with cause on your philosophy of keeping things simple, keeping things uncomplicated, you guys talk about using better science to do that. And you a lot of talk these days about outcomes. How does FlashBlade S support those claims and what do you guys mean by better science? >> Yeah. You know, better science is kind of a funny term. It was an internal term that I was on a sales call actually. And the customer said, well, I understand the difference between these two, but could you tell me how we got there and I was a little stumped on the answer. And I just said, well, I think we have better scientists and that kind of morphed into better science, a good example of that is our Metadata architecture, right? So our scalable Metadata allows us to avoid having that cashing tier, that other architectures have to rely on in order to anticipate, which files are going to need to be in read cash and read misses become very expensive. Now, a good follow up question there, not to do your job, but it's the question that I always get is, well, when you're designing your own hardware and your own software, what's the real material advantage of that? Well, the real material advantage of that is that you are in control of the combination and the interaction of those two things you don't give up the sort of the general purpose nature, if you will, of the performance characteristics that come along with things like commodity, you get a very specific performance profile. That's tailored to the software that's being married to it. Now in some instances you could say, well, okay, does that really matter? Well, when you start to talking about 20, 40, 50, 100, 500, petabyte data sets, every percentage matters. And so those individual percentages equate to space savings. They equate to power and cooling savings. We believe that we're going to have industry best dollars per lot. We're going to have industry best, kind of dollar PRU. So really the whole kind of game here is a round scale. >> Yeah. I mean, look, there's clearly places for the pure software defined. And then when cloud first came out, everybody said, oh, build the cloud and commodity, they don't build custom art. Now you see all the hyper scalers building custom software, custom hardware and software integration, custom Silicon. So co-innovation between hardware and software. It seems pretty as important, if not more important than ever, especially for some of these new workloads who knows what the edge is going to bring. What's the downside of not having that philosophy in your view? Is it just, you can't scale to the degree that you want, you can't support the new workloads or performance? What should customers be thinking about there? >> I think the downside plays in two ways. First is kind of the future and at scale, as I alluded to earlier around cost and just savings over time. Right? So if you're using a you know a commodity SSD, there's packaging around that SSD that is wasteful both in terms of- It's wasteful in the environmental sense and wasteful in the sort of computing performance sense. So that's kind of one thing. On the second side, it's easier for us to control the controllables around reliability when you can eliminate the number of things that actually sit in that workflow and by workflow, I mean when a right is acknowledged from a host and it gets down to the media, the more control you have over that, the more reliability you have over that piece. >> Yeah. I know. And we talked about ESG earlier. I know you guys, I'm going to talk a little bit about more news from accelerate within Invidia. You've certainly heard Jensen talk about the wasted CPU cycles in the data center. I think he's forecasted, 25 to 30% of the cycles are wasted on doing things like storage offload, or certainly networking and security. So now it sort of confirms your ESG thought, we can do things more efficiently, but as it relates to Invidia and some of the news around AIRI's, what is the AI RI? What's that stand for? What's the high level overview of AIRI. >> So the AIRI has been really successful for both us and Invidia. It's a really great partnership we're appreciative of the partnership. In fact, Tony pack day will be speaking here at accelerate. So, really looking forward to that, Look, there's a couple ways to look at this and I take the macro view on this. I know that there's a equally as good of a micro example, but I think the macro is really kind of where it's at. We don't have data center space anymore, right? There's only so many data centers we can build. There's only so much power we can create. We are going to reach a point in time where municipalities are going to struggle against the businesses that are in their municipalities for power. And now you're essentially bidding big corporations against people who have an electric bill. And that's only going to last so long, you know who doesn't win in that? The big corporation doesn't win in that. Because elected officials will have to find a way to serve the people so that they can get power. No matter how skewed we think that may be. That is the reality. And so, as we look at this transition, that first decade of disc to flash transition was really in the block world. The second decade, which it's really fortunate to have a multi decade company, of course. But the second decade of riding that wave from disk to flash is about improving space, power, efficiency, and density. And we sort of reach that, it's a long way of getting to the point about iMedia where these AI clusters are extremely powerful things. And they're only going to get bigger, right? They're not going to get smaller. It's not like anybody out there saying, oh, it's a Thad, or, this isn't going to be something that's going to yield any results or outcomes. They yield tremendous outcomes in healthcare. They yield tremendous outcomes in financial services. They use tremendous outcome in cancer research, right? These are not things that we as a society are going to give up. And in fact, we're going to want to invest more on them, but they come at a cost and one of the resources that is required is power. And so when you look at what we've done in particular with Invidia. You found something that is extremely power efficient that meets the needs of kind of going back to that macro view of both the community and the business. It's a win-win. >> You know and you're right. It's not going to get smaller. It's just going to continue to in momentum, but it could get increasingly distributed. And you think about, I talked about the edge earlier. You think about AI inferencing at the edge. I think about Bitcoin mining, it's very distributed, but it consumes a lot of power and so we're not exactly sure what the next level architecture is, but we do know that science is going to be behind it. Talk a little bit more about your Invidia relationship, because I think you guys were the first, I might be wrong about this, but I think you were the first storage company to announce a partnership with Invidia several years ago, probably four years ago. How is this new solution with a AIRI slash S building on that partnership? What can we expect with Invidia going forward? >> Yeah. I think what you can expect to see is putting the foot on the gas on kind of where we've been with Invidia. So, as I mentioned earlier Meta is by some measurements, the world's largest research super cluster, they're a huge Invidia customer and built on pure infrastructure. So we see kind of those types of well reference architectures, not that everyone's going to have a Meta scale reference architecture, but the base principles of what they're solving for are the base principles of what we're going to begin to see in the enterprise. I know that begin sounds like a strange word because there's already a big business in DGX. There's already a sizable business in performance, unstructured data. But those are only going to get exponentially bigger from here. So kind of what we see is a deepening and a strengthening of the of the relationship and opportunity for us to talk, jointly to customers that are going to be building these big facilities and big data centers for these types of compute related problems and talking about efficiency, right? DGX are much more efficient and Flash Blades are much more efficient. It's a great pairing. >> Yeah. I mean you're definitely, a lot of AI today is modeling in the cloud, seeing HPC and data just slam together all kinds of new use cases. And these types of partnerships are the only way that we're going to solve the future problems and go after these future opportunities. I'll give you a last word you got to be excited with accelerate, what should people be looking for, add accelerate and beyond. >> You know, look, I am really excited. This is going on my 12th year at Pure Storage, which has to be seven or eight accelerates whenever we started this thing. So it's a great time of the year, maybe take a couple off because of because of COVID, but I love reconnecting in particular with partners and customers and just hearing kind of what they have to say. And this is kind of a nice one. This is four years or five years worth of work for my team who candidly I'm extremely proud of for choosing to take on some of the solutions that they, or excuse me, some of the problems that they chose to take on and find solutions for. So as accelerate roles around, I think we have some pretty interesting evolutions of the evergreen program coming to be announced. We have some exciting announcements in the other product arenas as well, but the big one for this event is FlashBlade. And I think that we will see. Look, no one's going to completely control this transition from disc to flash, right? That's a that's a macro trend. But there are these points in time where individual companies can sort of accelerate the pace at which it's happening. And that happens through cost, it happens through performance. My personal belief is this will be one of the largest points of those types of acceleration in this transformation from disc to flash and unstructured data. This is such a leap. This is essentially the equivalent of us going from the 400 series on the block side to the X, for those that you're familiar with the flash array lines. So it's a huge, huge leap for us. I think it's a huge leap for the market. And look, I think you should be proud of the company you work for. And I am immensely proud of what we've created here. And I think one of the things that is a good joy in life is to be able to talk to customers about things you care about. I've always told people my whole life, inefficiency is the bane of my existence. And I think we've rooted out ton of inefficiency with this product and looking forward to going and reclaiming a bunch of data center space and power without sacrificing any performance. >> Well congratulations on making it into the second decade. And I'm looking forward to the orange and the third decade, Matt Burr, thanks so much for coming back in the cubes. It's good to see you. >> Thanks, Dave. Nice to see you as well. We appreciate it. >> All right. And thank you for watching. This is Dave Vellante for the Cube. And we'll see you next time. (outro music)

Published Date : May 24 2022

SUMMARY :

Good to see you. to see you again, Dave. We're going to be broadcasting kind of the end of this the problem targets for FlashBlade. in the past, the use cases kind of happening in the news, We have customers that come to us and say, that you guys were doing differently. that tell me all the time, and kind of on that note, the general purpose nature, if you will, to the degree that you want, First is kind of the future and at scale, and some of the news around AIRI's, that meets the needs of I talked about the edge earlier. of the of the relationship are the only way that we're going to solve of the company you work for. and the third decade, Nice to see you as well. This is Dave Vellante for the Cube.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Matt BurrPERSON

0.99+

DavePERSON

0.99+

InvidiaORGANIZATION

0.99+

Dave VellantePERSON

0.99+

100%QUANTITY

0.99+

25QUANTITY

0.99+

AIRIORGANIZATION

0.99+

seven yearsQUANTITY

0.99+

five yearsQUANTITY

0.99+

10 KQUANTITY

0.99+

four yearsQUANTITY

0.99+

sevenQUANTITY

0.99+

ExcelTITLE

0.99+

three yearQUANTITY

0.99+

FirstQUANTITY

0.99+

12th yearQUANTITY

0.99+

7,500 RPMQUANTITY

0.99+

MattPERSON

0.99+

two yearQUANTITY

0.99+

appleORGANIZATION

0.99+

less than a weekQUANTITY

0.99+

first decadeQUANTITY

0.99+

FacebookORGANIZATION

0.99+

seven yearsQUANTITY

0.99+

second sideQUANTITY

0.99+

eightQUANTITY

0.99+

second decadeQUANTITY

0.99+

firstQUANTITY

0.99+

bothQUANTITY

0.99+

40QUANTITY

0.99+

four years agoDATE

0.99+

more than threeQUANTITY

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

100QUANTITY

0.98+

next decadeDATE

0.98+

two waysQUANTITY

0.98+

50QUANTITY

0.98+

one versionQUANTITY

0.98+

several years agoDATE

0.98+

30%QUANTITY

0.98+

twoQUANTITY

0.97+

oneQUANTITY

0.97+

TonyPERSON

0.97+

two thingsQUANTITY

0.97+

500QUANTITY

0.97+

Pure StorageORGANIZATION

0.97+

FlashBladeTITLE

0.97+

todayDATE

0.94+

third decadeQUANTITY

0.94+

FlashBladeEVENT

0.94+

a couple daysQUANTITY

0.9+

first storage companyQUANTITY

0.88+

each timeQUANTITY

0.88+

ESGORGANIZATION

0.87+

JensenPERSON

0.85+

DGXORGANIZATION

0.85+

FlashBlade STITLE

0.85+

three categoriesQUANTITY

0.85+

FlashBlade SCOMMERCIAL_ITEM

0.82+

about a 10 yearQUANTITY

0.82+

400 seriesQUANTITY

0.78+

Steven Mih, Ahana & Girish Baliga, Uber | CUBE Conversation


 

(bright music) >> Hey everyone, welcome to this CUBE conversation featuring Ahana, I'm your host Lisa Martin. I've got two guests here with me today. Steven Mih joins us, the Presto Foundation governing board member, co-founder and CEO of Ahana, and Girish Baliga Presto Foundation governing board chair and senior engineering manager at Uber. Guys thanks for joining us. >> Thanks for having us. >> Thanks for having us. >> So Steven we're going to dig into and unpack Presto in the next few minutes or so, but Steven let's go ahead and start with you. Talk to us about some of the challenges with the open data lake house market. What are some of those key challenges that organizations are facing? >> Yeah, just pulling up the slide you know, what we see is that many organizations are dealing with a lot more data and very different data types and putting that all into, traditionally as the data warehouse, which has been the workhorse for BI and analytics traditionally, it becomes very, very expensive, and there's a lot of lock in associated with that. And so what's happening is that people are putting the data semistructured and unstructured data for example, in cloud data lakes or other data lakes, and they find that they can query directly with a SQL query engine like Presto. And that lets you have a much more approach to dealing with getting insights out of your data. And that's what this is all about, and that's why companies are moving to a modern architecture. Girish maybe you can share some of your thoughts on how Uber uses Presto for this. >> Yeah, at Uber we use Presto in our internal deployments. So at Uber we have our own data centers, we store data locally in our data centers, but we have made the conscious choice to go with an open data stack. Our entire data stack is built around open source technologies like Hadoop, Hive, Spark and Presto. And so Presto is an invaluable engine that is able to connect to all these different storage and data formats and allow us to have a single entry point for our users, to run their SQL engines and get insights rather quickly compared to some of the other engines that we have at Uber. >> So let's talk a little bit about Presto so that the audience gets a good overview of that. Steven starting with you, you talked about the challenges of the traditional data warehouse application. Talk to us about why Presto was founded the open, the project, give us that background information if you will. >> Absolutely, so Presto was originally developed out of the biggest hyperscaler out there which is Facebook now known as Meta. And they donated that project to the, and open sourced it and donated it to the Linux Foundation. And so Presto is a SQL query engine, it's a storage SQL query engine, that runs directly on open data lakes, so you can put your data into open formats like 4K or C, and get insights directly from that at a very good price performance ratio. The Presto Foundation of which Girish and I are part of, we're all working together as a consortium of companies that all want to see Presto continue to get bigger and bigger. Kind of like Kubernetes has a, has an organization called CNCF, Presto has Presto Foundation all under the umbrella of the Linux Foundation. And so there's a lot of exciting things that are coming on the roadmap that make Presto very unique. You know, RaptorX is a multilevel caching system that it's been fantastic, Aria optimizations are another area, we Ahana have developed some security features with donating the integrations with Apache Ranger and that's the type of things that we do to help the community. But maybe Girish can talk about some of the exciting items on the roadmap that you're looking forward to. >> Absolutely, I think from Uber's point of view just a sheer scale of data and our volume of query traffic. So we run about half a million Presto queries a day, right? And we have thousands of machines in our Presto deployments. So at that scale in addition to functionality you really want a system that can handle traffic reliably, that can scale, and that is backed by a strong community which guarantees that if you pull in the new version of Presto, you won't break anything, right? So all of those things are very important to us. So I think that's where we are relying on our partners particularly folks like Facebook and Twitter and Ahana to build and maintain this ecosystem that gives us those guarantees. So that is on the reliability front, but on the roadmap side we are also excited to see where Presto is extending. So in addition to the projects that Steven talked about, we are also looking at things like Presto and Spark, right? So take the Presto SQL and run it as a Spark job for instance, or running Presto on real-time analytics applications something that we built and contributed from Uber side. So we are all taking it in very different directions, we all have different use cases to support, and that's the exciting thing about the foundation. That it allows us all to work together to get Presto to a bigger and better and more flexible engine. >> You guys mentioned Facebook and I saw on the slide I think Twitter as well. Talk to me about some of the organizations that are leveraging the Presto engine and some of the business benefits. I think Steve you talked about insights, Steven obviously being able to get insights from data is critical for every business these days. >> Yeah, a major, major use case is finding the ad hoc and interactive queries, and being able to drive insights from doing so. And so, as I mentioned there's so much data that's being generated and stored, and to be able to query that data in place, at a, with very, very high performance, meaning that you can get answers back in seconds of time. That lets you have the interactive ability to drill into data and innovate your business. And so this is fantastic because it's been developed at hyperscalers like Uber that allow you to have open source technology, pick that up, and just download it right from prestodb.io, and then start to run with this and join the community. I think from an open source perspective this project under the governance of Linux Foundation gives you the confidence that it's fully transparent and you'll never see any licensing changes by the Linux Foundation charter. And therefore that means the technology remains free forever without later on limitations occurring, which then would perhaps favor commercialization of any one vendor. That's not the case. So maybe Girish your thoughts on how we've been able to attract industry giants to collaborate, to innovate further, and your thoughts on that. >> Yeah, so of the interesting I've seen in the space is that there is a bifurcation of companies in this ecosystem. So there are these large internet scale companies like Facebook, and Uber, and Twitter, which basically want to use something like Presto for their internal use cases. And then there is the second set of companies, enterprise companies like Ahana which basically wanted to take Presto and provide it as a service for other companies to use as an alternative to things like Snowflake and other systems right? So, and the foundation is a great place for both sets of companies to come together and work. The internet scale companies bring in the scale, the reliability, the different kind of ways in which you can challenge the system, optimize it, and so forth, and then companies like Ahana bring in the flexibility and the extensibility. So you can work with different clouds, different storage formats, different engines, and I think it's a great partnership that we can see happening primarily through the foundational spaces. Which you would be hard pressed to find in a single vendor or a, you know, a single-source system that is there on the market today. >> How long ago was the Presto Foundation initiated? >> It's been over three years now and it's been going strong, we're over a dozen members and it's open to everyone. And it's all governed like the Linux Foundation so we use best practices from that and you can just check it out at prestodb.io where you can get the software, or you can hear about how to join the foundation. So it includes members like Intel, and HPE as well, and we're really excited for new members to come, and contribute in and participate. >> Sounds like you've got good momentum there in the foundation. Steven talk a little bit about the last two years. Have you seen the acceleration in use cases in the number of users as we've been in such an interesting environment where the need for real-time insights is essential for every business initially a few couple of years ago to survive but now to be, to really thrive, is it, have you seen the acceleration in Presto in that timeframe? >> Absolutely, we see there's acceleration of being more data-driven and especially moving to cloud and having more data in the cloud, we think that innovation is happening, digital innovation is happening very fast and Presto is a major enabler of that, again, being able to get, drive insights from the data this is not just your typical business data, it's now getting into really clickstream data, knowing about how customers are operating today, Uber is a great example of all the different types of innovations they can drive, whether it be, you know, knowing in real time what's happening with rides, or offering you a subscription for special deals to use the service more. So, you know, Ahana we really love Presto, and we provide a SaaS manage service of the open source and provide free trials, and help people get up to speed that may not have the same type of skills as Uber or Facebook does. And we work with all companies in that way. >> Think about the consumers these days, we're very demanding, right? When I think one of the things that was in short supply during the last two years was patience. And if I think of Uber as a great example, I want to know if I'm asking for a ride I want to know exactly in real time what's coming for me? Where is it now? How many more minutes is it going to take? I mean, that need to fulfill real-time insights is critical across every industry but have you seen anything in the last couple years that's been more leading edge, like e-commerce or retail for example? I'm just curious. >> Girish you want to take that one or? >> Yeah, sure. So I can speak from the Uber point of view. So real-time insights has really exploded as an area, particularly as you mentioned with this just-in-time economy, right? Just to talk about it a little bit from Uber side, so some of the insights that you mentioned about when is your ride coming, and things of that nature, right? Look at it from the driver's point of view who are, now we have Uber Eats, so look at it from the restaurant manager's point of view, right? They also want to know how is their business coming? How many customer orders are coming for instance? what is the conversion rate? And so forth, right? And today these are all insights that are powered by a system which has a Presto as an front-end interface at Uber. And these queries run like, you have like tens of thousands of queries every single second, and the queries run in like a second and so forth. So you are really talking about production systems running on top of Presto, production serving systems. So coming to other use cases like eCommerce, we definitely have seen some of that uptake happen as well, so in the broader community for instance, we have companies like Stripe, and other folks who are also using this hashtag which is very similar to us based on another open source technology called Pino, using Presto as an interface. And so we are seeing this whole open data lakehouse more from just being, you know, about interactive analytics to driving all different kinds of analytics. Having anything to do with data and insights in this space. >> Yeah, sounds like the evolution has been kind of on a rocket ship the last couple years. Steven, one more time we're out of time, but can you mention that URL where folks can go to learn more? >> Yeah, prestodb.io and that's the Presto Foundation. And you know, just want to say that we'll be sharing the use case at the Startup Showcase coming up with theCUBE. We're excited about that and really welcome everyone to join the community, it's a real vibrant, expanding community and look forward to seeing you online. >> Sounds great guys. Thank you so much for sharing with us what Presto Foundation is doing, all of the things that it is catalyzing, great stuff, we look forward to hearing that customer use case, thanks for your time. >> Thank you. >> Thanks Lisa, thank you. >> Thanks everyone. >> For Steven and Girish, I'm Lisa Martin, you're watching theCUBE the leader in live tech coverage. (bright music)

Published Date : Mar 24 2022

SUMMARY :

and Girish Baliga Presto in the next few minutes or so, And that lets you have that is able to connect to so that the audience gets and that's the type of things that we do So that is on the reliability front, and some of the business benefits. and then start to run with So, and the foundation is a great place and it's open to everyone. in the number of users as we've been and having more data in the cloud, I mean, that need to fulfill so some of the insights that you mentioned Yeah, sounds like the evolution and look forward to seeing you online. all of the things that it For Steven and Girish, I'm Lisa Martin,

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Lisa MartinPERSON

0.99+

StevenPERSON

0.99+

StevePERSON

0.99+

GirishPERSON

0.99+

LisaPERSON

0.99+

UberORGANIZATION

0.99+

Steven MihPERSON

0.99+

Presto FoundationORGANIZATION

0.99+

FacebookORGANIZATION

0.99+

AhanaORGANIZATION

0.99+

Linux FoundationORGANIZATION

0.99+

CNCFORGANIZATION

0.99+

TwitterORGANIZATION

0.99+

IntelORGANIZATION

0.99+

two guestsQUANTITY

0.99+

HPEORGANIZATION

0.99+

PrestoORGANIZATION

0.99+

second setQUANTITY

0.99+

both setsQUANTITY

0.99+

over three yearsQUANTITY

0.99+

AhanaPERSON

0.98+

KubernetesORGANIZATION

0.98+

SparkTITLE

0.97+

Girish BaligaPERSON

0.97+

about half a millionQUANTITY

0.97+

todayDATE

0.97+

over a dozen membersQUANTITY

0.96+

oneQUANTITY

0.96+

PrestoTITLE

0.96+

SQLTITLE

0.95+

singleQUANTITY

0.95+

thousands of machinesQUANTITY

0.94+

every single secondQUANTITY

0.93+

Girish Baliga Presto FoundationORGANIZATION

0.92+

prestodb.ioOTHER

0.91+

last couple yearsDATE

0.9+

4KOTHER

0.89+

Startup ShowcaseEVENT

0.88+

one vendorQUANTITY

0.88+

Noah Gaynor & CJ Hetheringon | Unstoppable Domains Partner Showcase


 

(bright music) >> Hello, welcome to theCUBE's presentation of the Unstoppable Domains Partner Showcase. I'm John Furrier host of theCUBE. We're here talking about the metaverse and what it all means, what it brings to the table. We've got two pioneers here in the metaverse breaking it down, doing great stuff. Both co-founders of companies, Noah Gainer, co-founder and CEO Parcel. And CJ Hetherington Co-Founder of Atlantis World, digging deep and doing all the great stuff in the Midwest. Chill and thanks for coming on theCUBE. >> Thank you so much for having us. >> Thanks for having us. >> So, first of all, I want to say congratulations for the work you guys are doing. This is one of the biggest waves we've seen coming on. It's a changing user expectations, it's a changing architecture, it's real technology involved, there's a lot of action. 30% of people at University of California, Berkeley are dropping out of the Computer Science program to get into Web3. This is the biggest technological change, business model change, user experience change. And we've been seeing going back multiple inflection points. This is a big deal. So the metaverse is real. Some people say, "Well, you know, it's not com..." It's coming it's just a matter of time. So let's get into it. What are you guys doing? Tell us about your company's Parcel and Atlantis World. Noah, start with you. >> Sure, so Parcel is a marketplace for virtual real estate. So you can think of something like OpenSea, which everyone is familiar with, but we solely focus on virtual land and virtual real estate in a number of virtual world, maybe part of decent land or the sandbox. So we feature those on our platform and, you know, we take it the next level with the user experience. So we have fully interactive maps. We have price estimates. You can think of it like a estimate on Zillow and in general, we're building the fully verticalized solution for virtual real estate users. And that will extend into rentals, like Airbnbing out your virtual condo or getting a mortgage on your virtual home, as well as, you know, cultivating the community around it. And especially helping empower creators and architects and builders and getting them work and getting their work on display. >> I'm looking forward to digging into that, that sounds very cool. CJ what's Atlantis world doing? What do you got going on? >> Yeah, exactly. So at Atlantis world, we're building the Web3, social metaverse by connecting Web3 with social, gaming, and education in one light web virtual world, that's accessible to everybody. So by going with actually a light web first and a pixel approach so that you can play on mobile or a really old device, because the problem with existing metaverses is that they set an incredibly high cost barrier to entry and also tech isn't necessarily readily available globally in terms of things like VR headsets and gaming PCs. Like for example, when I was in Africa, I travel a lot. If my book would break, it's not even that I couldn't necessarily afford to buy anyone, it's actually not available there. So we're ruling out a lot of the global kind of population from a metaverse experience. And we're building something which is like 3D pixel and super light weight, to kind of bridge that gap and build something which is ready to be massive up till now and onboard billions of users into Web3. So they'll all basically be using Web3 applications in a gamified way and going really hard on connecting that with social features, like voice chat and talking, getting, and virtual events and vaulting and all of that stuff. >> You know, I love what you guys are doing, you're pioneering a whole another area, but what's great about the whole crypto area, is that, since you know, 2017 onwards you saw Ethereum set the developer market started coming in strong. So you start to see that development. And now we got the metaverse. So I got to ask you guys what's the current definition of the metaverse. I mean everyone's... I mean, since Facebook changed their name to Meta, it's been a hype cycle and everyone's like, "Woh..." First of all, you know why they did that. But they're actually putting a lot of DAO in this. This is a wave, we talked about that. But what is the metaverse? How do you describe it? Why is it relevant? Virtual real estate, that sounds cool. What does this all come together? Explain it for the people out there that might not be getting it right. >> Yeah, I feel like for me, the critical difference between an ordinary gamer, what one might think of as game and a metaverse is actually Web3. For me, Web3 is metaverse. And for me it's really because Web3 enables real world utility, but inside of a virtual environment. So for example, inside of Atlantis, you might run into a DeFi bank and understand by interacting with other game characters, which are programmed to teach you about DeFi and like, what is Avel, how to deposit. And so you're actually getting a real world utility out of doing something in a virtual environment. And for me, that's what really bridges the gap into metaverse. Yeah, I'm really kind of bullish on that. (chuckles) >> Noah, what's your take? Define the current state of the definition of the metaverse? What is the metaverse? >> Yeah, to me, it's the 3D internet. And I do agree with what CJ's saying, how, you know, what makes it the most compelling and will ultimately the most successful is that addition of a blockchain and essentialized, you know, tributed ledger technology. Because you can have the closed metaverse, which nobody wants that future. And I don't believe that will be the future. you know, versus the open metaverse, which is blockchain-based, the users are the owners of the assets and the land and everything around it. And it's really foreign by the people. But I see the metaverse as just an extension of the internet we're already using today but we're going to have hardware that makes it 3D and more immersive like AR and VR. >> Yeah, I think- >> Yeah, definitely- >> Go on CJ. >> Around kind of like eight or nine months ago when we started to build Atlantis, we decided that the metaverse was a virtual world where you could live, work, play, and earn, and that's what we've been building. It started off as like building the metaverse that has DeFi and over the kind of time it's gone on our community has grown, we've started to understand the future of our product and our mission and values. It started to become the Web3 metaverse, right? And then on top of that, the Web3 social metaverse, so it's a combination of what all these things. >> You know, it's interesting. And I'm a little bit older than you guys, I wish I was your age, but when the web came along, people were saying the same thing. That the web's terrible. It's a stupid thing. It's never going to be real. And yeah, there was problems. It was slow to dial up back in the day. But yeah, now with gaming, I got to say, I had to look at the gaming evolution being a gamer myself, old school, I guess, but the gaming culture is proxy to what I see kind of happening in the metaverse. And let me get your reaction to that. I'm not saying directly, but you saw what gaming did, right? In game currency, some, you know, pockets of the same kind of dynamic where a lot of value is happening, the expectations were different for users. So how does the metaverse... How does gaming cross over? What's the ecosystem of metaverse? Obviously it's a cultural shift, one. Infrastructure, two. But I can just see this new generation of thinking. It's a whole nother level. Can you guys share your thoughts on that riff? >> Absolutely. Yeah, absolutely. It's like for us, we really believe that we can enable a social revolution, where workers from impoverished and remote regions can actually be onboarded into these digital player to earn economies and also learn to earn economies. So it's about leveraging Web3 and blockchain gaming, whatever actually you want to call it, to enable this revolution and actually onboard new people into a completely new working and dynamic. One of the other things we envision for Atlantis, imagine like you run around this game world and you complete quests inside of the game. And these quests basically involve talking to the non-player characters, the NPCs, which are basically pre-programmed. I don't know if anyone's ever played an MMORPG before, but it can be super fun. And they'll actually teach you how to use different crypto applications. Whether that's a DeFi bank, NFT marketplace, kind of digital asset exchange. And once you all do that, the kind of end goal in vision is that you'll be rewarded with tokens. So users will earn crypto for learning about crypto. And if anybody wants to do that right now, they can actually go to rabbithole.gg. It's a different project to Atlantis, but they building learn to earn, and you go on you complete quests and interact with different crypto applications. And it's so crucial for onboarding. And yeah, it's going to be really powerful, the kind of revolution that play to earn and learn to earn will enable. >> I'll check out the rabbihole.gg sounds awesome. What's your take on the reaction to that riff on this convergence of culture tech, gaming, vibe that's kind of divine the metaverse what's your take on that, Noah? >> Yeah, I mean... I think gaming will be the on ramp for maybe the first billion people, you know, into blockchain. It's something people already do and are already paying for, and they now have the opportunity to get paid to play. So the incentives are extremely strong and I think that will be a great way to usher people in, teach 'em about blockchain without realizing that they're using blockchain. And then once they're already in it and have already used it, then it becomes much more natural to user than other applications. >> It's funny, people always talk about, "Oh, user experience!" You know, expectations drive experience, right? If you expect something and if they're used to gaming, I see the great, great call out there, good point. Well, let me ask you guys a question, 'cause I think this is comes out a lot in terms of like the market shifts and metaverse, as an old expression, "Great markets pull the products out of companies or out of the industry." What organic growth have you guys seen in the metaverse that's been either a surprise or a natural evolution of just success and just growth, because the market's hungry for this and it is relevant. It's new, what's pulling out? What's coming out of the organic aspect of the metaverse? >> I think a lot of art and architecture and design. And, you know, it's empowering a lot of independent creators and allowing 'em to stretch their skills in a way that they maybe couldn't do before, but now can do and get compensated for. Like, we see really see the rise of the creator coming in the next couple of years in the open metaverse and finally they will be the ruling class. They won't get the short end of the stick, which artists have for... I mean all the time. >> Yeah, some of the wall street bet skies in the same way, feel the same way. CJ, What's your take on... What's getting pulled out on the organic execution growth of the interactions and metaverse evolution? >> Of course, yeah. I would, first of all love to go back to the previous point on gaming and just kind of like, definitely agree with what Noah said. And the thing is that gaming is 3.4 billion user market, and they're typically an experimental by nature people and group of users, right? So it's definitely a huge onboarding opportunity for teaching users about Web3 and using Web3 in a gamified way and making that kind of inherently fun and engaging. And again, in terms of organic growth, Web3 is incredible for that. We place a huge emphasis on, I think, collaborate versus compete and try to enable network effects for everybody who is involved in Atlantis and becoming part of our fast growing ecosystem. Like we have eight blockchain, more than 10 DeFi apps, like Aave, Yearn, Balanced, 1inch, Perpetual. All of the DAOs like The Exile, MetaCartel, lobsterdao, PizzaDAO, all of the NFT communities. Like we're actually building a yacht for bought yacht club on the beach in Atlantis. So that's fun. But yeah, we grew our community. We're very early stage still. We've been building only for eight or nine months, but we grew our community to like 20 to 30,000 community members across social channels. And we recently raised over a million dollars from our community and we're fully bootstrapped and taken no private money. So the ability to actually do that and to coordinate both kind of community efforts and fundraising and resources is really testament to Web3 and what it's becoming in the community aspect of that. And also its future and the kind of dawn and domination of the Metaverse. >> Well, I got to say, I just got to give you props for that. I think that fundraising dynamic is a real entrepreneurial new thing, that's awesome. You've got active community vote with their contribution and whether it's money and or other value, right? You got social value. This is the whole thing about the metaverse, there's a new community culture going next level here. >> We believe in community and we believe in Web3. And we know we don't understand why most leading metaverses are focusing fully on huge IP and actually ignoring Web3. So we're actually trying to build the infrastructure layer for Web3 applications and for Web3 driven utility inside of the metaverse. And what we mean by that imagine that any developer or any project or any team or any company could occupy a plot for free inside of the metaverse, customize it by branding and then effectively set up shop, whether that's a Web3 integration, so it's a DeFi Bank, or it's an exchange. Or whether that's an NFT marketplace or a music venue or a coworking space. We're really excited about that. And we really believe we've designed the value capture mechanism for virtual land in the metaverse and we're approaching it in a different way to land in the real world. >> That's awesome. Well, let's get that infrastructure conversation, unstoppable domains obviously there having the partner showcase here. You guys are partners. This NFT kind of like access method is a huge... I love it by the way. I think it's phenomenal. I love the value there, but it's also digital identity and it's distributed naming. So you kind of got this enablement vibe, you got solve a problem. How is it working with you guys? Take us through what does unstoppable metaverse... Why does unstoppable matter to the metaverse? >> Yeah, unstoppable is very great mostly for identity and having a kind of crush chain identity inside of the metaverse and just kind of in Web3 in general. And unstoppable, we enable log in with unstoppable. So if you have, for example, an unstoppable domain which is like a human readable kind of crypto wallet address, but you can also do some incredible, stuff with it, and there is a lot of fun and exciting utility, effectively, like if you would have, I don't know, like unstoppable.dao you would be able to use that to log in to the Atlantis metaverse and it would represent some of your identity and social graph in game with your peers. >> Awesome, Noah, what's your take on the unstoppable angle on this? >> Yeah, I mean, it makes it social. So, instead of you can have a feed, you know, something we're thinking about at Parcel is like a feed of all the real estate transactions, and you could follow certain people, you can follow your friends and see a feed of everything that your friends are doing in English or human readable terms that are not just like a wallet address. So, that's obviously a big one and they're also giving people more options in terms of, naming and top level domains if you want to be something.wallet or .nft, or hopefully eventually .metaverse- >> John: Yes. >> Will help expand that ecosystem much more. In addition to like on our... Like backend being able to capture email when they login and to provide better marketing for our users. >> What would you guys say to other metaverse partners looking for work with unstoppable domains for their login and digital identity, what would you recommend? >> It doesn't make sense to- >> I believe- >> Connect with the best DAO and integrate that if you want to keep shipping stuff for your community and keeping it exciting and engaging and enabling user choice in how they choose to display their identity in virtual environments. >> Yeah, there's practically no downside and plenty of upside, again, having those users who are already using unstoppable domains quickly, you know, log into your site and plug in. >> All right. That's awesome. Good stuff with unstoppable. I got to ask you guys give an example of on your products, I love the metaverse progression. I love the pioneering work you guys are doing. And again, the funding things are different. The user expectations are different. The technology experience are different. Billions of people going to be in enabled for it. What are the cool things you guys got going on? CJ, we were talking before we came on camera about the tree thing you got going on. Take us through some of the things that are exciting that people may not know about or may know about. What should they pay attention to share, share some insight? >> Yeah, of course. So one of the fun things, actually that we're building on that on these sites together with our full team and also some outside contributors from the community and two kin protocol, which is a regenerative finance protocol. And I'll get into that a little bit in a minute. Effectively what we're actually doing is planting a carbon capturing virtual forest inside of the metaverse that will in future also be bio diverse. So how we're approaching that is imagine that you can plant NFT trees inside of the metaverse, providing that your will deposit X amount of kind of USD stablecoin or Ether or some digital asset. You can actually use that to deposit inside of the tree. And we will use some, probably something like super fluid, which is like a kind of smart projecting infrastructure platform. And we all essentially enable every single second funds being sent from the contract and actually purchasing real world carbon credits. So legitimate, you know, government bags to carbon credits from the voluntary kind of public market that have actually been bridged on chain, transformed into a crypto asset, and they will be locked away inside of these trees inside of game forever. And in future, we also hope to have like user on animals, roaming the great forest of Atlantis, which will have biodiversity and endangered species credit, locked inside. And we hope to support a variety of different kind of sustainable assets and things like that to really populate this ecosystem. >> So it's you're doing climate change good for real, as well as rendering it as an asset for everyone to see and enjoy. >> Absolutely. And for me, that's what makes the metaverse the metaverse, that's what I talked about. It's how Web3 enables the metaverse to cross over into our real world, ordinary life from URL to IRL and actually provide some incredible positive impact for all of humanity on the planet. >> And Noah, you have some action going on there. I mean, I would be like, "oh, virtual real estate, isn't it unlimited real estate?" But when you have users come together, this value, we've seen this in gaming, what are some of the cool things you got going on over there at Parcel? >> Yeah, I think one thing that stands out, which maybe not enough people are thinking about are AR virtual world. So, right now a lot of people are focused on the VR types, central and sandbox and, and Atlantis, but there very well may be a billion people using augmented reality before there are a billion using virtual reality just because of the nature of the hardware development and apple may come out with their AR headset by the end of the year. So there are a few projects there they've taken the real world to map and Parcel it out into hexagons, and you can actually buy that, and you own that, that piece and you can put your own custom content there. And on that social impact point, we have heard about a few projects that are trying to use it for good. And like one project is bought up some land in the Amazon rain forest and some of the proceeds go to conservation of the rain forest. So, you know, we're all about using blockchain for good and right, coming together as a globe. >> I can't wait to see the commercial real estate division of your group with all the work from, a remote coming on. Guys, great stuff you got going on, again, you guys are pioneering an area that is coming big. It's coming strong, its got a lot of... A momentum, vitality, and energy to it. Put a plug in for your companies. Noah, we'll start with you. What's going on with Parcel, share a plug for the company. What you're looking for, do some key highlights, news, take a minute to, to give a plug. >> Sure. Yeah, great. We are the destination for virtual real estate and that extends well beyond just the buyers and sellers. That's everyone across the whole chain with property managers and property developers, but then also the builders and creators and artists, and we are working right now on aggregating the best creator directory in the metaverse. So you can think of it as a place where artists can come showcase their work and get hired. As well as just generally like bridging this knowledge gap that is much wider than we even expected. So we have our Parcel learn product coming soon, which is a fully fledged, knowledge base with education, informational content and lots of rich data. >> Where can people get involved? What's the channels? Are all channels open? Where can we find you? >> Yeah, our websites Parcel.so on Twitter, you can find us at ParcelNFT and you can link to our discord from either one of those. It's the best way to get involved. >> All right, CJ, put a plug in for the last world, I know you got a lot of action to share. >> Yeah, of course. I would love to see everybody there. Thanks so much for having us. And thanks for listening. Like I said, at the start of the call, we're building the Web3 social metaverse and we're connecting Web3 with social gaming and education, in one light web virtual world that's accessible to everybody. We're also doing some crazy stuff like planting their cabin, capturing virtual forest and all of that, and trying to be the infrastructure layer for Web3 driven real world utility inside of the metaverse. And we believe that we have designed the critical value capture mechanism for virtual learn. I we'll be sharing more all of that very soon and continuing to integrate the best apps from across the Web3 ecosystem and showcasing them at the center of Atlantis. You can go to discord.gg/atlantisworld. If you would love to learn more about us, you can go to wiki.atlantis.world. And there is some documentation now, which includes back story and team and some of our milestones and achievements so far from winning hackathons to raising grants and launching our Alpha belt, soft launching it. And we all have the public free to play coming in March. And where most active, I would say on discord and Twitter. On Twitter you can find us atlantisOx, or just search Atlantis world. And it's the first one that come up. >> All right. CJ, thank you. Noah, thanks for coming out. I really appreciate you spending the time here, and unstoppable showcase and being a partner. Again they got the great digital identity, great plug there for them here. Thanks for sharing that and thanks for sharing the time. Appreciate you guys are pioneer of some good stuff. Appreciate it. >> Thanks so much man. >> I so appreciate that. >> All right, theCUBE's unstoppable domains partner showcase. Thanks for watching. (bright music)

Published Date : Mar 10 2022

SUMMARY :

of the Unstoppable Thank you so much for the work you guys are doing. and in general, we're building the fully What do you got going on? and a pixel approach so that you can play of the metaverse. to teach you about DeFi and the land and everything around it. and over the kind of time it's gone on kind of happening in the metaverse. the kind of revolution that play to earn that's kind of divine the metaverse So the incentives are extremely strong I see the great, great coming in the next couple of growth of the interactions and domination of the Metaverse. This is the whole thing inside of the metaverse. I love the value there, inside of the metaverse and a feed of all the real and to provide better DAO and integrate that you know, log into your site and plug in. about the tree thing you got going on. forest inside of the metaverse for everyone to see and enjoy. for all of humanity on the planet. are some of the cool things and some of the proceeds share a plug for the company. in the metaverse. and you can link to our discord plug in for the last world, inside of the metaverse. thanks for sharing the time. Thanks for watching.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
NoahPERSON

0.99+

John FurrierPERSON

0.99+

AfricaLOCATION

0.99+

FacebookORGANIZATION

0.99+

CJ HetheringtonPERSON

0.99+

Noah GainerPERSON

0.99+

20QUANTITY

0.99+

eightQUANTITY

0.99+

MarchDATE

0.99+

2017DATE

0.99+

30%QUANTITY

0.99+

JohnPERSON

0.99+

AtlantisLOCATION

0.99+

Web3TITLE

0.99+

appleORGANIZATION

0.99+

two pioneersQUANTITY

0.99+

wiki.atlantis.world.OTHER

0.99+

nine monthsQUANTITY

0.99+

eightDATE

0.99+

BothQUANTITY

0.99+

PerpetualTITLE

0.99+

AaveTITLE

0.99+

DeFiTITLE

0.99+

one projectQUANTITY

0.98+

over a million dollarsQUANTITY

0.98+

Noah GaynorPERSON

0.98+

CJ HetheringonPERSON

0.98+

more than 10QUANTITY

0.98+

YearnTITLE

0.98+

The ExileTITLE

0.97+

CJPERSON

0.97+

bothQUANTITY

0.97+

first oneQUANTITY

0.97+

Unstoppable Domains Partner ShowcaseEVENT

0.97+

theCUBEORGANIZATION

0.97+

PizzaDAOTITLE

0.97+

NFTORGANIZATION

0.97+

lobsterdaoTITLE

0.96+

Atlantis WorldORGANIZATION

0.96+

AtlantisTITLE

0.96+

30,000 community membersQUANTITY

0.95+

oneQUANTITY

0.95+

a billionQUANTITY

0.95+

.nftOTHER

0.95+

Billions of peopleQUANTITY

0.95+

OneQUANTITY

0.95+

EnglishOTHER

0.94+

1inchTITLE

0.93+

first billion peopleQUANTITY

0.92+

metaverseTITLE

0.92+

TwitterORGANIZATION

0.91+

nine months agoDATE

0.91+

twoQUANTITY

0.91+

end of the yearDATE

0.91+

todayDATE

0.91+

FirstQUANTITY

0.9+

University of CaliforniaORGANIZATION

0.9+

next couple of yearsDATE

0.9+

BalancedTITLE

0.88+

one thingQUANTITY

0.88+

.metaverseOTHER

0.86+

MetaCartelTITLE

0.85+

AvelTITLE

0.83+

DeFi bankORGANIZATION

0.83+

billion peopleQUANTITY

0.82+

OpenSeaTITLE

0.82+

ParcelTITLE

0.82+

billions of usersQUANTITY

0.8+

3.4 billion user marketQUANTITY

0.8+

ParcelNFTORGANIZATION

0.74+

Breaking Analysis: Cyber, Blockchain & NFTs Meet the Metaverse


 

>> From theCUBE Studios in Palo Alto in Boston, bringing you data-driven insights from theCUBE and ETR. This is "Breaking Analysis" with Dave Vellante. >> When Facebook changed its name to Meta last fall, it catalyzed a chain reaction throughout the tech industry. Software firms, gaming companies, chip makers, device manufacturers, and others have joined in hype machine. Now, it's easy to dismiss the metaverse as futuristic hyperbole, but do we really believe that tapping on a smartphone, or staring at a screen, or two-dimensional Zoom meetings are the future of how we work, play, and communicate? As the internet itself proved to be larger than we ever imagined, it's very possible, and even quite likely that the combination of massive processing power, cheap storage, AI, blockchains, crypto, sensors, AR, VR, brain interfaces, and other emerging technologies will combine to create new and unimaginable consumer experiences, and massive wealth for creators of the metaverse. Hello, and welcome to this week's Wiki Bond Cube Insights, powered by ETR. In this "Breaking Analysis" we welcome in cyber expert, hacker gamer, NFT expert, and founder of ORE System, Nick Donarski. Nick, welcome, thanks so much for coming on theCUBE. >> Thank you, sir, glad to be here. >> Yeah, okay, so today we're going to traverse two parallel paths, one that took Nick from security expert and PenTester to NFTs, tokens, and the metaverse. And we'll simultaneously explore the complicated world of cybersecurity in the enterprise, and how the blockchain, crypto, and NFTs will provide key underpinnings for digital ownership in the metaverse. We're going to talk a little bit about blockchain, and crypto, and get things started there, and some of the realities and misconceptions, and how innovations in those worlds have led to the NFT craze. We'll look at what's really going on in NFTs and why they're important as both a technology and societal trend. Then, we're going to dig into the tech and try to explain why and how blockchain and NFTs are going to lay the foundation for the metaverse. And, finally, who's going to build the metaverse. And how long is it going to take? All right, Nick, let's start with you. Tell us a little bit about your background, your career. You started as a hacker at a really, really young age, and then got deep into cyber as a PenTester. You did some pretty crazy stuff. You have some great stories about sneaking into buildings. You weren't just doing it all remote. Tell us about yourself. >> Yeah, so I mean, really, I started a long time ago. My dad was really the foray into technology. I wrote my first program on an Apple IIe in BASIC in 1989. So, I like to say I was born on the internet, if you will. But, yeah, in high school at 16, I incorporated my first company, did just tech support for parents and teachers. And then in 2000 I transitioned really into security and focused there ever since. I joined Rapid7 and after they picked up Medis boy, I joined HP. I was one of their founding members of Shadowlabs and really have been part of the information security and the cyber community all throughout, whether it's training at various different conferences or talking. My biggest thing and my most awesome moments as various things of being broken into, is really when I get to actually work with somebody that's coming up in the industry and who's new and actually has that light bulb moment of really kind of understanding of technology, understanding an idea, or getting it when it comes to that kind of stuff. >> Yeah, and when you think about what's going on in crypto and NFTs and okay, now the metaverse it's you get to see some of the most innovative people. Now I want to first share a little bit of data on enterprise security and maybe Nick get you to comment. We've reported over the past several years on the complexity in the security business and the numerous vendor choices that SecOps Pros face. And this chart really tells that story in the cybersecurity space. It's an X,Y graph. We've shown it many times from the ETR surveys where the vertical axis, it's a measure of spending momentum called net score. And the horizontal axis is market share, which represents each company's presence in the data set, and a couple of points stand out. First, it's really crowded. In that red dotted line that you see there, that's 40%, above that line on the net score axis, marks highly elevated spending momentum. Now, let's just zoom in a bit and I've cut the data by those companies that have more than a hundred responses in the survey. And you can see here on this next chart, it's still very crowded, but a few call-outs are noteworthy. First companies like SentinelOne, Elastic, Tanium, Datadog, Netskope and Darktrace. They were all above that 40% line in the previous chart, but they've fallen off. They still have actually a decent presence in the survey over 60 responses, but under that hundred. And you can see Auth0 now Okta, big $7 billion acquisition. They got the highest net score CrowdStrike's up there, Okta classic they're kind of enterprise business, and Zscaler and others above that line. You see Palo Alto Networks and Microsoft very impressive because they're both big and they're above that elevated spending velocity. So Nick, kind of a long-winded intro, but it was a little bit off topic, but I wanted to start here because this is the life of a SecOps pro. They lack the talent in a capacity to keep bad guys fully at bay. And so they have to keep throwing tooling at the problem, which adds to the complexity and as a PenTester and hacker, this chaos and complexity means cash for the bad guys. Doesn't it? >> Absolutely. You know, the more systems that these organizations find to integrate into the systems, means that there's more components, more dollars and cents as far as the amount of time and the engineers that need to actually be responsible for these tools. There's a lot of reasons that, the more, I guess, hands in the cookie jar, if you will, when it comes to the security architecture, the more links that are, or avenues for attack built into the system. And really one of the biggest things that organizations face is being able to have engineers that are qualified and technical enough to be able to support that architecture as well, 'cause buying it from a vendor and deploying it, putting it onto a shelf is good, but if it's not tuned properly, or if it's not connected properly, that security tool can just hold up more avenues of attack for you. >> Right, okay, thank you. Now, let's get into the meat of the discussion for today and talk a little bit about blockchain and crypto for a bit. I saw sub stack post the other day, and it was ripping Matt Damon for pedaling crypto on TV ads and how crypto is just this big pyramid scheme. And it's all about allowing criminals to be anonymous and it's ransomware and drug trafficking. And yes, there are definitely scams and you got to be careful and lots of dangers out there, but these are common criticisms in the mainstream press, that overlooked the fact by the way that IPO's and specs are just as much of a pyramid scheme. Now, I'm not saying there shouldn't be more regulation, there should, but Bitcoin was born out of the 2008 financial crisis, cryptocurrency, and you think about, it's really the confluence of software engineering, cryptography and game theory. And there's some really powerful innovation being created by the blockchain community. Crypto and blockchain are really at the heart of a new decentralized platform being built out. And where today, you got a few, large internet companies. They control the protocols and the platform. Now the aspiration of people like yourself, is to create new value opportunities. And there are many more chances for the little guys and girls to get in on the ground floor and blockchain technology underpins all this. So Nick, what's your take, what are some of the biggest misconceptions around blockchain and crypto? And do you even pair those two in the same context? What are your thoughts? >> So, I mean, really, we like to separate ourselves and say that we are a blockchain company, as opposed to necessarily saying(indistinct) anything like that. We leverage those tools. We leverage cryptocurrencies, we leverage NFTs and those types of things within there, but blockchain is a technology, which is the underlying piece, is something that can be used and utilized in a very large number of different organizations out there. So, cryptocurrency and a lot of that negative context comes with a fear of something new, without having that regulation in place, without having the rules in place. And we were a big proponent of, we want the regulation, right? We want to do right. We want to do it by the rules. We want to do it under the context of, this is what should be done. And we also want to help write those rules as well, because a lot of the lawmakers, a lot of the lobbyists and things, they have a certain aspect or a certain goal of when they're trying to get these things. Our goal is simplicity. We want the ability for the normal average person to be able to interact with crypto, interact with NFTs, interact with the blockchain. And basically by saying, blockchain in quotes, it's very ambiguous 'cause there's many different things that blockchain can be, the easiest way, right? The easiest way to understand blockchain is simply a distributed database. That's really the core of what blockchain is. It's a record keeping mechanism that allows you to reference that. And the beauty of it, is that it's quote unquote immutable. You can't edit that data. So, especially when we're talking about blockchain, being underlying for technologies in the future, things like security, where you have logging, you have keeping, whether you're talking about sales, where you may have to have multiple different locations (indistinct) users from different locations around the globe. It creates a central repository that provides distribution and security in the way that you're ensuring your data, ensuring the validation of where that data exists when it was created. Those types of things that blockchain really is. If you go to the historical, right, the very early on Bitcoin absolutely was made to have a way of not having to deal with the fed. That was the core functionality of the initial crypto. And then you had a lot of the illicit trades, those black markets that jumped onto it because of what it could do. The maturity of the technology though, of where we are now versus say back in 97 is a much different world of blockchain, and there's a much different world of cryptocurrency. You still have to be careful because with any fed, you're still going to have that FUD that goes out there and sells that fear, uncertainty and doubt, which spurs a lot of those types of scams, and a lot of those things that target end users that we face as security professionals today. You still get mailers that go out, looking for people to give their social security number over during tax time. Snail mail is considered a very ancient technology, but it still works. You still get a portion of the population that falls for those tricks, fishing, whatever it might be. It's all about trying to make sure that you have fear about what is that change. And I think that as we move forward, and move into the future, the simpler and the more comfortable these types of technologies become, the easier it is to utilize and indoctrinate normal users, to be able to use these things. >> You know, I want to ask you about that, Nick, because you mentioned immutability, there's a lot of misconceptions about that. I had somebody tell me one time, "Blockchain's Bs," and they say, "Well, oh, hold on a second. They say, oh, they say it's a mutable, but you can hack Coinbase, whatever it is." So I guess a couple of things, one is that the killer app for blockchain became money. And so we learned a lot through that. And you had Bitcoin and it really wasn't programmable through its interface. And then Ethereum comes out. I know, you know a lot about Ether and you have solidity, which is a lot simpler, but it ain't JavaScript, which is ubiquitous. And so now you have a lot of potential for the initial ICO's and probably still the ones today, the white papers, a lot of security flaws in there. I'm sure you can talk to that, but maybe you can help square that circle about immutability and security. I've mentioned game theory before, it's harder to hack Bitcoin and the Bitcoin blockchain than it is to mine. So that's why people mine, but maybe you could add some context to that. >> Yeah, you know it goes to just about any technology out there. Now, when you're talking about blockchain specifically, the majority of the attacks happen with the applications and the smart contracts that are actually running on the blockchain, as opposed to necessarily the blockchain itself. And like you said, the impact for whether that's loss of revenue or loss of tokens or whatever it is, in most cases that results from something that was a phishing attack, you gave up your credentials, somebody said, paste your private key in here, and you win a cookie or whatever it might be, but those are still the fundamental pieces. When you're talking about various different networks out there, depending on the blockchain, depends on how much the overall security really is. The more distributed it is, and the more stable it is as the network goes, the better or the more stable any of the code is going to be. The underlying architecture of any system is the key to success when it comes to the overall security. So the blockchain itself is immutable, in the case that the owner are ones have to be trusted. If you look at distributed networks, something like Ethereum or Bitcoin, where you have those proof of work systems, that disperses that information at a much more remote location, So the more disperse that information is, the less likely it is to be able to be impacted by one small instance. If you look at like the DAO Hack, or if you look at a lot of the other vulnerabilities that exist on the blockchain, it's more about the code. And like you said, solidity being as new as it is, it's not JavaScript. The industry is very early and very infantile, as far as the developers that are skilled in doing this. And with that just comes the inexperience and the lack of information that you don't learn until JavaScript is 10 or 12 years old. >> And the last thing I'll say about this topic, and we'll move on to NFTs, but NFTs relate is that, again, I said earlier that the big internet giants have pretty much co-opted the platform. You know, if you wanted to invest in Linux in the early days, there was no way to do that. You maybe have to wait until red hat came up with its IPO and there's your pyramid scheme folks. But with crypto it, which is again, as Nick was explaining underpinning is the blockchain, you can actually participate in early projects. Now you got to be careful 'cause there are a lot of scams and many of them are going to blow out if not most of them, but there are some, gems out there, because as Nick was describing, you've got this decentralized platform that causes scaling issues or performance issues, and people are solving those problems, essentially building out a new internet. But I want to get into NFTs, because it's sort of the next big thing here before we get into the metaverse, what Nick, why should people pay attention to NFTs? Why do they matter? Are they really an important trend? And what are the societal and technological impacts that you see in this space? >> Yeah, I mean, NFTs are a very new technology and ultimately it's just another entry on the blockchain. It's just another piece of data in the database. But how it's leveraged in the grand scheme of how we, as users see it, it can be the classic idea of an NFT is just the art, or as good as the poster on your wall. But in the case of some of the new applications, is where are you actually get that utility function. Now, in the case of say video games, video games and gamers in general, already utilize digital items. They already utilize digital points. As in the case of like Call of Duty points, those are just different versions of digital currencies. You know, World of Warcraft Gold, I like to affectionately say, was the very first cryptocurrency. There was a Harvard course taught on the economy of WOW, there was a black market where you could trade your end game gold for Fiat currencies. And there's even places around the world that you can purchase real world items and stay at hotels for World of Warcraft Gold. So the adoption of blockchain just simply gives a more stable and a more diverse technology for those same types of systems. You're going to see that carry over into shipping and logistics, where you need to have data that is single repository for being able to have multiple locations, multiple shippers from multiple global efforts out there that need to have access to that data. But in the current context, it's either sitting on a shipping log, it's sitting on somebody's desk. All of those types of paper transactions can be leveraged as NFTs on the blockchain. It's just simply that representation. And once you break the idea of this is just a piece of art, or this is a cryptocurrency, you get into a world where you can apply that NFT technology to a lot more things than I think most people think of today. >> Yeah, and of course you mentioned art a couple of times when people sold as digital art for whatever, it was 60, 65 million, 69 million, that caught a lot of people's attention, but you're seeing, I mean, there's virtually infinite number of applications for this. One of the Washington wizards, tokenized portions of his contract, maybe he was creating a new bond, that's really interesting use cases and opportunities, and that kind of segues into the latest, hot topic, which is the metaverse. And you've said yourself that blockchain and NFTs are the foundation of the metaverse, they're foundational elements. So first, what is the metaverse to you and where do blockchain and NFTs, fit in? >> Sure, so, I mean, I affectionately refer to the metaverse just a VR and essentially, we've been playing virtual reality games and all the rest for a long time. And VR has really kind of been out there for a long time. So most people's interpretation or idea of what the metaverse is, is a virtual reality version of yourself and this right, that idea of once it becomes yourself, is where things like NFT items, where blockchain and digital currencies are going to come in, because if you have a manufacturer, so you take on an organization like Nike, and they want to put their shoes into the metaverse because we, as humans, want to individualize ourselves. We go out and we want to have that one of one shoe or that, t-shirt or whatever it is, we're going to want to represent that same type of individuality in our virtual self. So NFTs, crypto and all of those digital currencies, like I was saying that we've known as gamers are going to play that very similar role inside of the metaverse. >> Yeah. Okay. So basically you're going to take your physical world into the metaverse. You're going to be able to, as you just mentioned, acquire things- I loved your WOW example. And so let's stay on this for a bit, if we may, of course, Facebook spawned a lot of speculation and discussion about the concept of the metaverse and really, as you pointed out, it's not new. You talked about why second life, really started in 2003, and it's still around today. It's small, I read recently, it's creators coming back into the company and books were written in the early 90s that used the term metaverse. But Nick, talk about how you see this evolving, what role you hope to play with your company and your community in the future, and who builds the metaverse, when is it going to be here? >> Yeah, so, I mean, right now, and we actually just got back from CES last week. And the Metaverse is a very big buzzword. You're going to see a lot of integration of what people are calling, quote unquote, the metaverse. And there was organizations that were showing virtual office space, virtual malls, virtual concerts, and those types of experiences. And the one thing right now that I don't think that a lot of organizations have grasp is how to make one metaverse. There's no real player one, if you will always this yet, There's a lot of organizations that are creating their version of the metaverse, which then again, just like every other software and game vendor out there has their version of cryptocurrency and their version of NFTs. You're going to see it start to pop up, especially as Oculus is going to come down in price, especially as you get new technologies, like some of the VR glasses that look more augmented reality and look more like regular glasses that you're wearing, things like that, the easier that those technologies become as in adopting into our normal lifestyle, as far as like looks and feels, the faster that stuff's going to actually come out to the world. But when it comes to like, what we're doing is we believe that the metaverse should actually span multiple different blockchains, multiple different segments, if you will. So what ORE system is doing, is we're actually building the underlying architecture and technologies for developers to bring their metaverse too. You can leverage the ORE Systems NFTs, where we like to call our utility NFTs as an in-game item in one game, or you can take it over and it could be a t-shirt in another game. The ability for having that cross support within the ecosystem is what really no one has grasp on yet. Most of the organizations out there are using a very classic business model. Get the user in the game, make them spend their money in the game, make all their game stuff as only good in their game. And that's where the developer has you, they have you in their bubble. Our goal, and what we like to affectionately say is, we want to bring white collar tools and technology to blue collar folks, We want to make it simple. We want to make it off the shelf, and we want to make it a less cost prohibitive, faster, and cheaper to actually get out to all the users. We do it by supporting the technology. That's our angle. If you support the technology and you support the platform, you can build a community that will build all of the metaverse around them. >> Well, and so this is interesting because, if you think about some of the big names, we've Microsoft is talking about it, obviously we mentioned Facebook. They have essentially walled gardens. Now, yeah, okay, I could take Tik Tok and pump it into Instagram is fine, but they're really siloed off. And what you're saying is in the metaverse, you should be able to buy a pair of sneakers in one location and then bring it to another one. >> Absolutely, that's exactly it. >> And so my original kind of investment in attractiveness, if you will, to crypto, was that, the little guy can get an early, but I worry that some of these walled gardens, these big internet giants are going to try to co-op this. So I think what you're doing is right on, and I think it's aligned with the objectives of consumers and the users who don't want to be forced in to a pen. They want to be able to live freely. And that's really what you're trying to do. >> That's exactly it. You know, when you buy an item, say a Skin in Fortnite or Skin in Call of Duty, it's only good in that game. And not even in the franchise, it's only good in that version of the game. In the case of what we want to do is, you can not only have that carry over and your character. So say you buy a really cool shirt, and you've got that in your Call of Duty or in our case, we're really Osiris Protocol, which is our proof of concept video game to show that this all thing actually works, but you can actually go in and you can get a gun in Osiris Protocol. And if we release, Osiris Protocol two, you'll be able to take that to Osiris Protocol two. Now the benefit of that is, is you're going to be the only one in the next version with that item, if you haven't sold it or traded it or whatever else. So we don't lock you into a game. We don't lock you into a specific application. You own that, you can trade that freely with other users. You can sell that on the open market. We're embracing what used to be considered the black market. I don't understand why a lot of video games, we're always against the skins and mods and all the rest. For me as a gamer and coming up, through the many, many years of various different Call of Duties and everything in my time, I wish I could still have some this year. I still have a World of Warcraft account. I wasn't on, Vanilla, Burning Crusade was my foray, but I still have a character. If you look at it that way, if I had that wild character and that gear was NFTs, in theory, I could actually pass that onto my kid who could carry on that character. And it would actually increase in value because they're NFT back then. And then if needed, you could trade those on the open market and all the rest. It just makes gaming a much different thing. >> I love it. All right, Nick, hey, we're out of time, but I got to say, Nick Donarski, thanks so much for coming on the program today, sharing your insights and really good luck to you and building out your technology platform and your community. >> Thank you, sir, it's been an absolute pleasure. >> And thank you for watching. Remember, all these episodes are available as podcasts, just search "Breaking Analysis Podcast", and you'll find them. I publish pretty much every week on siliconangle.com and wikibond.com. And you can reach me @dvellante on Twitter or comment on my LinkedIn posts. You can always email me david.vellante@siliconangle.com. And don't forget, check out etr.plus for all the survey data. This is Dave Vellante for theCUBE Insights, powered by ETR, happy 2022 be well, and we'll see you next time. (upbeat music)

Published Date : Jan 17 2022

SUMMARY :

bringing you data-driven and even quite likely that the combination and how the blockchain, crypto, and NFTs and the cyber community all throughout, and the numerous vendor hands in the cookie jar, if you will, and the platform. and security in the way that and probably still the ones any of the code is going to be. and many of them are going to of data in the database. Yeah, and of course you and all the rest for a long time. and discussion about the believe that the metaverse is in the metaverse, and the users who don't want and mods and all the rest. really good luck to you Thank you, sir, it's all the survey data.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
NikeORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

Dave VellantePERSON

0.99+

NetskopeORGANIZATION

0.99+

2003DATE

0.99+

DatadogORGANIZATION

0.99+

DarktraceORGANIZATION

0.99+

Nick DonarskiPERSON

0.99+

SentinelOneORGANIZATION

0.99+

NickPERSON

0.99+

ElasticORGANIZATION

0.99+

TaniumORGANIZATION

0.99+

1989DATE

0.99+

Palo Alto NetworksORGANIZATION

0.99+

Palo AltoLOCATION

0.99+

10QUANTITY

0.99+

HPORGANIZATION

0.99+

FacebookORGANIZATION

0.99+

Call of DutyTITLE

0.99+

ORE SystemORGANIZATION

0.99+

40%QUANTITY

0.99+

2000DATE

0.99+

Osiris Protocol twoTITLE

0.99+

OculusORGANIZATION

0.99+

FirstQUANTITY

0.99+

69 millionQUANTITY

0.99+

Matt DamonPERSON

0.99+

World of Warcraft GoldTITLE

0.99+

OktaORGANIZATION

0.99+

World of WarcraftTITLE

0.99+

JavaScriptTITLE

0.99+

Call of DutiesTITLE

0.99+

first programQUANTITY

0.99+

ZscalerORGANIZATION

0.99+

theCUBE StudiosORGANIZATION

0.99+

Burning CrusadeTITLE

0.99+

Osiris ProtocolTITLE

0.99+

each companyQUANTITY

0.99+

twoQUANTITY

0.99+

oneQUANTITY

0.98+

single repositoryQUANTITY

0.98+

ETRORGANIZATION

0.98+

siliconangle.comOTHER

0.98+

david.vellante@siliconangle.comOTHER

0.98+

first companyQUANTITY

0.98+

LinuxTITLE

0.98+

CESEVENT

0.98+

ShadowlabsORGANIZATION

0.98+

todayDATE

0.98+

over 60 responsesQUANTITY

0.98+

bothQUANTITY

0.98+

more than a hundred responsesQUANTITY

0.98+

BostonLOCATION

0.97+

two parallel pathsQUANTITY

0.97+

HarvardORGANIZATION

0.97+

Rapid7ORGANIZATION

0.97+

this yearDATE

0.97+

early 90sDATE

0.97+

16QUANTITY

0.97+

firstQUANTITY

0.97+

BASICTITLE

0.97+

one gameQUANTITY

0.97+

one locationQUANTITY

0.97+

OneQUANTITY

0.96+

last fallDATE

0.96+

one small instanceQUANTITY

0.96+

Auth0ORGANIZATION

0.96+

theCUBEORGANIZATION

0.95+

2008 financial crisisEVENT

0.95+

FortniteTITLE

0.95+

two-dimensionalQUANTITY

0.95+

Ricardo Rocha, CERN | KubeCon + CloudNativeCon NA 2020


 

from around the globe it's thecube with coverage of kubecon and cloudnativecon north america 2020 virtual brought to you by red hat the cloud native computing foundation and ecosystem partners hey welcome back everybody jeff frick here with thecube coming to you from our palo alto studios for the continuing coverage of kubecon cloud native con 2020 north america there was the european version earlier in the summer it's all virtual uh so the good news is we don't have to get on planes and we can get guests from all over the world and we're excited to welcome back for his return to the cube ricardo rocha he is a staff member and computing engineer at cern ricardo great to see you hello thanks for having me absolutely and you're coming in from uh from geneva so you're you already had a good thursday i bet yeah we're just finishing right now yeah right so in in getting ready for this um interview i was looking at the interview that you did i think it was two cube cons ago uh in may of 2019 and it just strikes me a lot of people know what cern is but a lot of people don't know what's cern in so i wonder if you can just give you know kind of the 101 of what cern's mission is and what is some of the work that you guys do there yeah sure uh so cern is the european organization for uh nuclear research we are the largest particle physics laboratory in the world and our main mission is uh fundamental research so we try to answer big questions about why don't we see antimatter what is dark matter or dark energy other questions about the origin of the universe and to answer these questions we build very large machines particle accelerators where we try to recreate some of [Music] the moments just after the universe was created the big bang to try to understand better what was the state of the matter at that time the result of all of this is very often a lot of data that has to be analyzed and that's why we traditionally have had a huge requirements for computing resources during the the start of cern we always had this this large large requirements right and so you have this large particle accelerators as you said large machines the one that you've got now the the latest one how long has that one been operational yeah so it started uh like maybe around 10 years ago the first launch was a bit before that uh and it's uh it's a very large uh it's the largest one ever built so it's 27 kilometers in perimeter we inject protons into different uh directions and then we we make them collide where we build these huge detectors that can can see what's happening in these collisions uh the the main the main particle accelerator is this one we do have other experiments we have a nancy meta factory that is just uh down from my office and we have other types of experiments as well going right 27 kilometers that's a big that's a big number and then and then again just so people get some type of sense of scale so then you you you speed up the particles you smash them together you see what happens they collect all the data what types of data sets are generated off off just a one you know kind of event and i don't even know if that's a relative you know if that's a valid measure how do how do you measure kind of quantities of data around event just you know kind of for orders of magnitude right so uh the way it works is as you said we accelerate the particles to very close to the speed of light and we increase the energy by by having the beams well controlled and then at specific points we make them collide we have this gigantic detectors underground all of this is 100 meters in the ground and these detectors are pretty much a very large camera that would take something like 40 million pictures a second and the result of this is a huge amount of data each of these detectors can generate up to one petabyte of second this is not something we can record so what we do is we have hardware filters that will bring this down to something we can manage which is in the order of a few tens of gigabytes per second wow so you've been you've got a very serious computing challenge ahead of you because you're the one that's on the hook for for grabbing the data recording the data making the data available for for people to use um on their experiments um so we're here at kubecon cloud native con where did containers come into the story uh and and kubernetes specifically what was the real uh challenge that you're trying to overcome yeah so uh this is a a long story of uh using distributed computing at cern and other types of computing so as i mentioned we generate a lot of data we generate something like 7 but of 70 petabytes of data every year and we accumulated something over one half an exabyte of data by now so uh traditionally we've had to build this software ourselves um which was uh because there was not so many people around that would have this kind of needs but this revolution with containers and the clouds appearing kind of allowed us to to join other other communities and benefit also from their work and not have to do everything ourselves so this is the main probe for us to start doing this the other point is more containerization we traditionally are very we have a lot of needs to share information but also share resources between physicists and engineers so this idea of containerizing the work including all the code all the data and then sharing this with our colleagues is very appealing the fact that we can also take this unit of work and just deploy it in any infrastructure that has a standardized api like kubernetes and scale that monitoring the same way it's also very appealing so all of these things kind of connect with our way of working our natural way of working i would say right so you've talked about the this upgrade is coming um to the particle accelerator in a couple four or five years whatever that timeline is relatively soon um this as you've said before is a huge step function in the data that's that that's going to come off these experiments i mean how are you keeping up on the compute side with the fundamental shift in on kind of the physics side and the data that's going to be generated to make sure that you can keep up and i think you said it in a prior interview somewhere along the way that you know you don't want to be the bottleneck when there's all this great work being done but if it's not captured and made available for people to do stuff with the data then you know it's not uh it's not the greatest experiment so how are you keeping up and and what's the relative scale to have what you got to do on the compute side to keep up with the the guys on the physics side yeah so the the the idea well we what we will have to deal with is an increase of 10 times of more data than we have today we already have a lot and very soon we'll have a lot more but this is not i would say this is not the first time this kind of uh step happens uh in our computing we always kind of found a new technology or a new way to do things that would improve in in this case uh what we do is we do what we always do which is we try to look for all sorts of new technologies or all sorts of new resources that we could make use of in this case a lot is involving improving our own software to replace what we currently use with hardware triggers to replace that with software-based using accelerators gpus and other types of accelerators this will play a big role and also making our software more efficient in this way the second thing that we are doing is trying to make our infrastructure more agile and this is where cloud native kubernetes plays a huge role so that we can benefit from external resources uh we we can always think of like expanding our in on-premises resources but it's also very good to be able to just go and fish around if there's something available externally kubernetes plays a very big role in that respect as well yeah i'd love to dig into that a little deeper because the cloud native foundation is a super active foundation obviously a ton of activity around kubernetes so what does that mean to you as an infrastructure provider you know to your own company being on the hook to have now you know kind of an open source community that's supporting you indirectly via ongoing developments and ongoing projects and having as you said kind of this broader group of brain power to pull from to help you move your own infrastructure along yeah i think this this is great we've had really good experiences in the past we've been uh heavy users of uh linux from from from for a very long time we've used openstack for our private cloud and we've been heavily involved in that community as well we not only uh contribute as end users but we also uh offer some some manpower for development and helping with the community and we are doing the same with kubernetes uh and this is uh this is really we we end up getting a lot more than we we are putting in the community we are quite involved but uh it's so large and and and with such big players that have very similar needs to ours that uh we end up having a lot a lot more back than we are putting in we try to help as much as possible but uh yeah we have limited resources as well now open source is an amazing it's just an amazing innovation uh machine and and obviously it's proved as its value over a lot of things from linux to kubernetes being one of the most recent i want to shift gears a little bit right and ask you just your your take on public cloud right one of the huge benefits of public cloud is is the flexibility to add capacity shrink capacity as you need it and you talked again in a prior thing i was looking at you know that you definitely have spikes uh in demand spikes whether there's a high frequency of experiments i don't know how frequently you run those things versus maybe a conference or something where you said people you know want to get access to the data run experiments prior to your conference do you where does public cloud play in your thoughts and maybe you're there today maybe you're not how do you think about you know kind of public cloud generically but more specifically you know that ability to add a little bit more flex in your compute horsepower or are you just going up into the right up into the right and not really flexing down very much yeah so this is this is something we've been working on for a few years now uh we it's uh it's uh it's i would say it's an ongoing work it's a situation that will will not uh be very clear for the for the next few years but again what what we try to do is just to explore as much as possible all kinds of resources that can help us what we did in the kubecon last year was this demonstration that we can actually scale we can scale out and burst for for this uh spiky workloads we have we can burst to the to the public cloud quite easily using this kind of cloud native technologies that we have today and this is extremely important because it kind of changes our mindset instead of having to to think only on investing on premises we can think that maybe we can cover for the majority of use cases but then explore and burst to the public cloud this has to be easy in terms of infrastructure and that we are at that point right now with kubernetes we also have kind of workload that is maybe easier to do these things than than a traditional i.t where services are very interconnected in our case we are more thinking of batch workloads where we can just submit jobs uh and then fetch the data back right this also has a few challenges but but it's i would say it's it's easier than the traditional ite service deployments the other aspect where the public cloud is also very interesting is uh for resources that we don't have in large quantities so we have a very large farm for with cpus we have some gpus and it's very good to be able to explore this new accelerator technologies and maybe expand our available pool of accelerators by going to the public cloud maybe to use them but also to validate to see which ones are best for our use cases and explore that option as well it's not only general capacity it's really like dedicated um hardware that we might not even have ever like we think of tpus or ipu's it's something that is very interesting that we can scale and just go go use them in the public cloud yeah that's a really interesting point because because the cloud providers are big enough now right that they're building all kind of specialized specialized server specialized uh cpu specialized gpus dpus is a new one i've heard a data processing unit as you said there's fpgas and all kinds of accelerators so it is a really rich environment for as you said to do your experiments and find what the optimal solution is for whatever that particular workload is but ricardo i want to shift gears a little bit as we come to the end of 2020 thankfully for a whole bunch of reasons as you look forward to 2021 i mean clearly anticipating and starting to plan to get ready for your upgrade as a priority i'm just curious what are your other priorities and how does you know kind of the compute infrastructure in terms of an investment within cern you know kind of rank with the investment around the physical things that you're building the big machines because without the compute those other things really don't provide much data and i know those are we always talked about how expensive the particle accelerators is it's an interesting number and it's big but you guys are a big piece of that as well so what are your priorities looking forward to 2021 yeah from from the compute side i think we are keeping the the priorities in similar to what we've been doing the last few years which is to make sure that we improve all our automation to improve efficiency as well to prepare for these upgrades we have but also there's a lot of activity in this new uh area with machine learning popping up we have a ton of services appearing where people want to to start doing machine learning in many many use cases in some cases they want to do the filtering in the detectors in other cases they want to generate simulation data a lot faster using machine learning as well so i think this will be something that will be a huge topic for next year even for the next couple of years which is to see how we can offer our users and physicists the best service so that they don't have to care about the infrastructure they don't have to know about the details of how they scale their their model training their serving of their models all of this i think this will be a very big topic um it's something that it's becoming really a big part of of the world computing for high energy physics and for cern as well that's great we see that a lot you know just applied machine learning to very specific problems you talked about you still can't even record all that information that comes off those things you have to do some compression technology and other things so real opportunities barely scratched on the surface of machine learning and ai but i'm sure you're going to be using it a ton well ricardo give you give you the last word um we're in at cncf's uh kubecon cloud native con you know what do you get out of these types of shows and why is this such again kind of why is it such an important piece of your way you get your job done yeah honestly uh with all this uh situation right now i kind of really miss this kind of conferences in person uh it's really a huge opportunity to connect with uh with the other end users but also with with the community and to talk to the developers discuss things over uh coffee beer this is something that is really something that is really useful to to have this kind of meetings every year uh i think what what uh i always try to say is uh this this wall infrastructure is is truly making a big impact in the way we do things so we can only thank the community uh it's it allows us to to kind of shift to focusing on a higher level to focus more on our use cases instead of having to focus so much on the infrastructure we kind of start giving it as a given that the infrastructure scales and we can just use it and focus on optimizing our own software so this is a huge contribution we can only thank the cncf projects and everyone involved great well thank you for that uh that summary and that that's a terrific summary so ricardo thank you so much for all your hard work answering really big helping answer really big questions and uh and for joining us today and sharing your insight thank you very much all right he's ricardo i'm jeff you're watching the cube from our palo alto studios for continuing coverage of kubecon cloud nativecon 2020. thanks for watching see you next time [Music] you

Published Date : Nov 19 2020

SUMMARY :

the relative scale to have what you got

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Ricardo RochaPERSON

0.99+

100 metersQUANTITY

0.99+

10 timesQUANTITY

0.99+

2021DATE

0.99+

27 kilometersQUANTITY

0.99+

jeff frickPERSON

0.99+

last yearDATE

0.99+

CERNORGANIZATION

0.99+

todayDATE

0.99+

second thingQUANTITY

0.99+

five yearsQUANTITY

0.99+

ricardoPERSON

0.98+

palo altoORGANIZATION

0.98+

40 million picturesQUANTITY

0.98+

KubeConEVENT

0.98+

first launchQUANTITY

0.98+

first timeQUANTITY

0.98+

next yearDATE

0.98+

CloudNativeConEVENT

0.97+

jeffPERSON

0.96+

ricardo rochaPERSON

0.96+

north americaLOCATION

0.95+

around 10 years agoDATE

0.95+

genevaLOCATION

0.95+

fourQUANTITY

0.95+

101QUANTITY

0.94+

over one half an exabyte of dataQUANTITY

0.93+

70 petabytes of dataQUANTITY

0.93+

kubeconORGANIZATION

0.92+

next couple of yearsDATE

0.92+

7QUANTITY

0.92+

every yearQUANTITY

0.91+

linuxTITLE

0.9+

last few yearsDATE

0.89+

up to one petabyteQUANTITY

0.89+

may of 2019DATE

0.87+

end of 2020DATE

0.87+

2020DATE

0.87+

next few yearsDATE

0.86+

a ton of servicesQUANTITY

0.84+

nancy meta factoryORGANIZATION

0.82+

NA 2020EVENT

0.8+

eachQUANTITY

0.8+

cloudnativeconORGANIZATION

0.8+

a lot of peopleQUANTITY

0.79+

a lot of dataQUANTITY

0.79+

oneQUANTITY

0.78+

few tens of gigabytes per secondQUANTITY

0.78+

so many peopleQUANTITY

0.76+

kubeconEVENT

0.75+

openstackTITLE

0.74+

challengesQUANTITY

0.7+

kubecon cloudORGANIZATION

0.66+

thursdayDATE

0.66+

secondQUANTITY

0.66+

a secondQUANTITY

0.64+

lot of peopleQUANTITY

0.63+

a few yearsQUANTITY

0.62+

hatORGANIZATION

0.61+

cernORGANIZATION

0.61+

europeanOTHER

0.58+

lot of dataQUANTITY

0.58+

foundationORGANIZATION

0.57+

in the summerDATE

0.55+

redPERSON

0.54+

cloud nativecon 2020EVENT

0.54+

lot of activityQUANTITY

0.53+

two cubeQUANTITY

0.49+

conEVENT

0.4+

Vaughn Stewart, PureStorage | VeeamOn 2018


 

>> Announcer: Live from Chicago, Illinois it's the CUBE, covering Veeamon 2018. Brought to you by Veeam. >> We're back in Chicago, Veeamon 2018, you're watching the CUBE, the leader in live tech coverage. We go out to the events, we extract the signal from the noise. My name is Dave Vellante and I'm here with my co-host Stu Miniman. Day one of our two day coverage of Veeamon, On our second year. Vaughn Stewart is here who is the vice president of Technology at Pure Storage, Cube alum, good friend. Great to see you man. >> Good to see you Dave, Stu. >> Dave: Thanks so much for coming on. >> Vaughn: Great to be back. >> So Pure, you know, I remember when you joined Pure and you were like, "Dave, this is going to be the rocket ship of a lifetime." it's turned out to be the case. First company since NetApp to hit a billion dollars in the storage business. It's like independent storage companies are back. >> Yeah. (laughs) >> So give us the update, what's happening at Pure? >> So fantastic year. Wrapped up end of January, right. So first independent storage company to hit a billion dollars. Actually, we're kind of on the cusp of maybe being the the fastest infrastructure company, if not the fastest tied with being the fastest to hit a billion dollars. So the growth rates been great, the products, obviously, have been off the charts. Whether you're looking at it from an analyst's perspective, you know, the gardener reports, the IDC market scape, so if you look at from the customers perspective with the NPS scores, right. Just crushing in terms of the products, the customers stating that we're not overstating the capabilities, and we make some pretty bold statements. But when you kind of boil it back to where we're at now, I think our focus is helping customers adopt a data centric architecture as a part of their IT or data center modernization plans, right. This is, we've kind of gone through this phase of like virtualizing everything, now everything's in the cloud and now we're starting to mature a little bit and we're always looking at this tsunami of data that's being created and it's more around, where's your data going to reside? Because there's going to be some gravity around it and bring the compute to where the data should reside. And so our products and our strategy is to help customers again, this data-centric architecture, adopt new technologies that are going to help them radically shift how they operate, changing the cost of operations, changing the complexity to either let an existing storage team scale to a larger capacity per full-time, you know, FTE or to allow actually the application teams or the private cloud teams to just manage their infrastructure stack, right. We're seeing we're seeing kind of growth in both areas. I think beyond that, our technology with our evergreen storage as a subscription model has also been able to be transformative for Enterprise about how do they acquire, refresh, and introduce new technologies within the storage space. And so it's been pretty exciting. >> So let's talk about some of that. I remember, I've I've been around a long time Stu, as you know, so Al Shughart, the legend, once told me when I was just a pup trying to understand the business. He said, "Dave, the storage business is simple. The customers want it to be dirt cheap, rock solid, and lightning fast." >> Vaughn: Yeah. >> This is the days of spinning discs, which we're kind of dirt cheap, but they really weren't that rock solid and they really weren't that lightning fast. So you guys actually delivered on that promise but you added some other things. Simplicity, the business model of reduced friction. You mentioned Evergreen, so it's not, obviously, not just about flash, where we say, "oh, flash, Pure storage flash, we have flash too." It's so much more than that. The way you positioned it just now the company in terms of data centricity. And, as they say, the business model innovations have really worked well for you. You've been able to stay ahead of the competition. I wonder if you could comment. >> Sure. So I, for your audience, I think it's important to maybe back up a bit. Pure was born in in the the wave of a number of all flash arrays. >> Dave: Yeah. Right? And a fair amount of them were acquired by large existing storage vendors. And I think now that the dust has settled a bit, you know, we were kind of the phoenixes that rose through those ashes, if you will, within the storage space and I think, really, the key driver there was, it wasn't about performance. Flash makes everything faster. >> Dave: Right. It was about a combination of the business model, the operational simplicity, but also, what I would call, the Tier One Feature Sets, right. You had to deliver on six nines of greater availability. You had to have all the data management capabilities to plug into a large partner ecosystem like veeam, which, you know, we're at Veeam live and that was kind of what I would call Act one of Pure, which was, you know, flash ray based, you know, storage for your traditional enterprise apps. Last year we introduced flash blade, right. This was a radically different architecture. It was to scale out a scale out blade-based storage platform that scaled capacity and performance linearly. And the adoption in that space has been this next-generation apps, which... Are just..the sets are growing, you know, out of control and beyond what we would have ever expected with an Enterprise app. So whether it's AI, machine learning, deep learning, analytics, or this new use case we're seeing, which is rapid data recovery. The flash blade, because of the combination of its low latency and massive parallel throughput, has really been a big growth vector for us and it's kind of act two, if you will, of Pure Storage. >> Dave: Go ahead Stu. >> Yeah, Vaughn I'd love to hear more your thoughts on, kind of, an application proliferation. so I think back, you know, you and I lived through that wave of virtualization. While I love virtualization, one of the challenges I had with it was I could take my old application that was probably already too long in the tooth and stick it in a VM and then keep it for another five to ten years because it didn't care about the hardware, their OS, and all that standpoint. Today, talk about cloud native apps, talk about IOT and analytics and all of these micro services and everything like that. It's a huge impact on infrastructure and how we build things. It brings up to speed how we bridge from, kind of, the old world and the new world. >> Yeah, I'm glad that you asked this question. I wish you would be coming to our conference next week - >> Stu: Well, Dave will be there. >> because we'll have a session discussing this and it'll include an internal case study. And so that's all the details I can give right now. For a long time I think a lot of IT vendors, particularly, those who made hardware products, try to position this on-prem versus the cloud, right. and it was really the wrong mindset. Cloud is just one more deployment model for an organization to look at. The question that I think organizations have is, what fits where? And I think, to your point, if you're looking to build a new application or re-platform an existing, what you have today versus in the past was, you had a contained set of APIs and interfaces to work with, right. If you were building on, say, you know, a database vendor's enterprise business suite that was the tools that you got to use. Today you look at what's available, an open source or in the public cloud space, and you get to build a massively disaggregated application that's comprised of functions and and microservices, right. And it gets to leverage these notions of scaling on demand and being being very elastic. What I would share with you and what we discussed with customers is, your development team will want to go as fast as they can and leverage all these new tools and they're iterating very quickly, and the cloud is an ideal platform for that. But you need to plan and look forward to, around what's the the volume of data that you may be dealing with? What's the access requirements of that data over time? And where's it going to be a better position? Should it sit in the cloud? Should it sit on Prem? Should it sit in a private to public cloud hybrid type of architecture model and leverage, say, the compute and all the software agility within the cloud and yet still have stewardship over your data and not have to deal with with maybe unforeseen things like charges per, you know, API call or egress charges things of that nature. >> And Edge as the whole, >> And so I'm grossly simplifying a lot this. but these are the conversations that you get within the enterprise, which is where the sweet spot is. These are real considerations that that they have right there past the is cloud secure or, you know? They're past the data sovereignty type of concerns. They're more around how is this going to scale long-term because, for example, I'll give you an example. So we rolled out meta, which is our AI as part of our support for our products. This all getting ahead of the customers and predicting faults, getting them... This is what helps us achieve greater than six nines availability across the entire fleet for the last two and a half years, right. It's, it's getting ahead of the problems. When we work on looking at some of the AI that we create around meta and we want to test it, we have to download a year's worth of phone home data from the cloud. That takes 45 days to download today and it's not going to get any faster as the install base gets larger, right. And so those are challenges that you have to look at and say, maybe I started in the cloud but maybe I need to look at something in a hybrid model because it's going to impact my business agility. And so these are conversations that we can have and our architects have with customers based on whatever their criteria or forecast look like. >> So just about a year ago Scott Dietzen stepped down as CEO, brought in Charlie - >> Vaughn: Yeah >> new leader. It was kind of, kind of interesting, it was right on the heels of Frank Slootman doing something similar. Frank Slootman just stepped down as chairman and so how's the new leadership going? What, what has Charlie brought? I can't wait to interview him next week on the CUBE but give us your take as somebody who's been an industry observer and, obviously, a long-time Pure employee. >> So ,so a great question. So just for the audience to know, so Dietzen is still with us, right. He stepped down from being the CEO and is now the chairman of the board. and I owe a large gratitude of debt to Scott. Scott brought me into Pure and I'm always encouraged when, you know, every now and then you get that that direct email from him, you know, you know, keep, you know, keep being a thorn in someone's side and push this forward. That was a little self-serving, so I apologize. But what I like about Charlie is, and, and understand I was, I was with Ned F for 13 years, right. And so we did this large growth cycle, not as early as with Pure, but going through a lot of the same growth pains and and whatnot that we have today. But we did all that growth under Worman Joven before they changed over. What was nice about Scott is, he told me on day one that he didn't know how far he would take Pure but it was apparent to him that he had taken it as far as he could, he would find his, his, his heir and obviously Charlie was the choice. And what Charlie's brought in has been a lot of structure, right. The formation of business units, a lot of accountability, a lot of, what I would say, that maturation phase from startup, right. That's kind of grown to the, to the the maximum output of your current organizational structures, to looking forward into a structure that that is going to allow us to scale better over time, right. Continue to grow as well as.. I think Charlie be the first to tell ya, you know, Pure's on a trajectory to hit two billion dollars and can do that on inertia in the current products, right. Charlie's focus or one of Charlie's focuses over the last handful of months is, is, what are we going to become two years from now and what investments do we need to start making in the near term to get prepared for two years from now? >> So I, I brought up Frank Slootman who's in the service now because I know, I know Frank and Scott were close, right? There's some board action going on there over the years, they're part of the Silicon Valley mafia with the Mai Bucherii. But but I, and we can joke about that but there's a there's a culture of succession that has really taken hold in in certain parts of the valley and, and again, very similar to what we saw as service now, where was the new guy was brought in to take them to the next level. And the existing CEO, you know, mature enough, you know, maybe, maybe worked so hard for all these years too, maybe felt like they need a little break. but still mature enough to say, okay, I know my limitations and I want to bring somebody else in. So it's been sort of this new thing and I want to tie it back to something we were talking to before on the CUBE. I mean, you guys hit escape velocity. When you look back at the sort of the virtualization craze with Three Par and Isilon, Data Domain, Compelling. Yeah, they kind of hit a billion-dollar status you know, they hit unicorn, but they never hit billion dollar revenue. And, and so now, and then the other thing you talked about was some of the bigger players decided to buy up flash companies. >> Vaughn: Yeah. >> And they said, you know, rather than pay 2.5 billion dollars for a data domain or Three Par, we'll spend a billion dollars or, in some cases, hundreds of millions of dollars and then we'll organically grow that internally. Did it work? Yeah, maybe yeah, you know. Maybe some of it, maybe not. But, but you guys stayed the course and are now on track to do two billion. >> Vaughn: Yeah >> So here's my question, long-winded sort of narrative babble, sorry about that. I used to question Worman Joven all the time Tucci, even. Can you stay independent? Right? That was the big question. You know, because Converged is coming. But now it looks like being an independent is actually in vogue. Best-of-breed is actually still a viable business model. >> So obviously I'm not in on the inside of whatever the board decisions may be. >> Yeah, but you're an observer who know this business. We're kind of talking about Vaughn the prognosticator, analyst, if you will. >> What I think is different today, and Stu and I were talking about this because we ran into each other over in the corner with Duncan. You know, the emergence of all the flash vendors and them getting acquired and really what's happened by and large is just the same old products just got flash injected into them and, you know, got, you know, the the vendors hope to get another decade out of them. But okay, they're faster, but it doesn't fundamentally change your business model or your operations and sometimes that's a good thing, right. For some customers, right, their change averse. >> Right, they don't want that disruption. >> Yeah. For us, right, we're trying to usher in now this this next wave of shared accelerated storage and it's a disaggregated model, right. Start to look up it at what, you know, in a commercial sense, if you will. What are the enter.. what are the the hyper scalars, you know, delivering, you know? They're not running data direct attached storage. They're not doing HCI, right? They've got pools of compute and pools of storage and it's either disk and cold or it's flash flash and hot and, you know, they've got network and it's all over Ethernet, so it's greatly simplified. We're trying to help our customers with, with that type of architecture. Whether they're looking at simplifying their private cloud or extending the private cloud to the public cloud, or what's even more interesting, as they look at like their data pipelines, you know, a lot of, you know.. There's, there's AI and analytics in every organization of every size. They may or may not sit inside the IT department but they tend to follow that model of eighths and software. So I'm just going to do it on DAS and I'm going to build this siloed cluster. And, you know, it must be cheap regardless of whatever the efficiency I get out of it. And what we're trying to help large organizations look at is data pipelines and flow and the flexibility that you gain by separating compute from storage and not having to worry about the performance issues or constraints of disk-based systems from a decade ago because technologies like flash and now with non-volatile memory Express and non-volatile memory expressed over fabrics, right. You're getting direct memory to memory communications from the servers to the storage. So you're getting all the benefits of pooling and sharing your storage with all the benefits of it without a local bus in terms of speed and performance. And so it can change, particularly, a large volume of data. You can change your agility. >> So that that is certainly a tailwind for you but it was a tailwind for a lot of companies and you have the product. Let's assume best product just for sake of argument. I'm sure you would agree. But best product doesn't always win, right? So what I'm hearing is there was business model innovation. >> Vaughn: Yeah. >> Obviously very strong go to market. You guys knew where all the skeletons were buried with all the reps that you guys hired. But there were other factors involved in your ascendancy, which maybe is independent of the structure of the industry because the industry structure is changing. It's going from, you know, now remote cloud services into these digital, this digital matrix and somehow you have to fit into that digital matrix and participate in that. >> Yeah, it's.. I think you brought up two points,\. So I think if you if you're going to be a start-up, to be successful, it's not just technology. You've hit the head on the nail there. Pure had.. the technology had to deliver, Pure had that. The business model was innovative, the marketing was off the hook, right? For a start-up, you know, we were punching above our weight but you also have sales, have sales force execution and, you know, you never know what you get when you walk into a start-up. But you've got to.. If you don't hit on all four of those dimensions then you don't achieve escape velocity. In terms of shifting from startup to, you know, becoming mainstream. Not only did we achieve a billion dollars last year, we were cashflow positive for the year and we were profitable for Q4, right? So that puts a lot of wind in ourselves as we go forward. You know, with, at the end of last year, a half a billion dollars in the bank and now a billion dollars in the bank. You know, for us to go you know figure out what we're going to grow and go into. I think moving forward and being independent, I think we'll see, right? I think there's always a tick-tock in our industry, right? Things are distributed, they're centralized, their distributed, I want one throat to choke, I want best-of-breed. I think with all the distributed apps and all the analytics platforms that are going to start to become more important than what we're used to in the X83 space. I think best-of-breed is starting to rise up right now and so I think the runway for Pure to stay independent is there. Don't get me wrong, we're going to have to do our works with plugging into clouds, right? And all those those ecosystems because customers want a transparent experience. But we'll be sharing some news on that, I think next week. >> Well and excited to here that. The cartel will continue to suck up startups, no question about it. But, you know, we love companies like Pure, put Nutanix in that mix and it was sad to us to see all their run of the virtualization comers, they just disappeared. Because if it's just the cartel building new products, you're not going to have the level of innovation that you get with VC funded startups in the valley. you just, you're just not. >> Well, in the US you're seeing, I mean, you're, in the US you're seeing VC investment starting to diversify a bit, right? >> Dave: Yeah >> Colorado's getting hot, the Boston area is, it has been there for a while but it's getting hot. >> IOT and security. >> And, you know, that's been the great thing about, you know, about IT in the US, right, is we've been an innovative landscape. I think the barrier has probably forced some innovators out based on just the cost of living. So, you know, who knows what the mix will look like a decade from now, but yeah, we're still going to be Silicon Valley centric for the near-term. >> So I love talking you because we can have these conversations. We were joking off-camera, we could go for 90 minutes, which we easily could. We got to, we got to go soon but let's talk about Veeam, relationship with Veeam. You guys are kind of birds of a feather in a lot of ways but, but take us through that. >> Yeah, so the opportunity to partner with Veeam was a no-brainer. There were synergies there, right? Pure and Veeam both trying to just disrupt legacy markets, doing it through simplicity, right? Riding the wave of, you know, virtualization as a primary business focus but not exclusive. our Net Promoter scores with both companies are off the charts, right. Customers love it and, you know, we're multiples higher than any of our competitors. And so bringing the technologies together were real simple. So last month we announced, four or five weeks ago we announced and released a new set of solutions and integrations. It was comprised around three areas of benefit, right? Accelerating backups, increasing the speed at which you could recover data, and adding a new level of agility within your ecosystem. So delivering those three value props were based on us supporting their Universal API adapters. So now that they can offload some of the backup process to array-based snapshots and that preserves the performance, makes the window collapse faster. That's where when production data sits on the flash array. We've also certified putting the flash blade behind the Veeam servers as a backup data repository and the benefits of that from a backup window are faster data ingestion times across your real estate. Obviously, smaller footprint, lower cost within the data center. The bigger impact on both of these is on rapid data recovery. So with Veeam, through their explorer integrations, you can pull files, disks, VMs, applications, right out of the array snapshots. If the array is still online but someone's just munched the data, if the array is no longer there and you need to pull from the flash blade, flash blade gives them a capability that they never had with disk, which is they can start because, you know, how Veeam recovers, right? They actually start the data services and recover them from the backup repository and then live migrate it back to the production environment. With the live, with the back and the data repository being all flash, now they can bring up a significant, if not all of your data back online and then trickle restore it back to the production data sets. We had a customer with a large distributed database that was on a more traditional disk backup system that was really focused on ingest, right? Make the backup window not so much focused on the restore times. It took them in excess of 36 hours to put back their database and this was the mission critical database to the organization. We've come in and replaced that. 36 hours is now 30 minutes. So is all flashes as repository for your backup for everyone? Maybe not for every organization but we're seeing a big growth ramp on that in the enterprise. The last piece that we've brought to market together in integrations is, integrating with their data labs. That's their environment to be able to on-demand create, test, and DEV infrastructures for you and that pairs really well with all flash arrays and snapshots because it's instantaneous, consumes no new storage, and our automatic QOS preserves that, preserves the resources for the production environment from the lab. And so those are our three areas: accelerate backups, rapid restores, and give you some agility with your test DEV. >> Okay and the agility in the ecosystem is oftentimes underappreciated, right? >> I'm amazed at the customers that I.. Large enterprise customers, right? Revenues in the tens of billions of dollars that you still meet with today, where they've half staffs that their job is to restore, you know, an Oracle database to an Oracle developer and that's all the guy does 40, guy or gal, does 40 hours a week, it's amazing. >> Right, Vaughn, great to see you again. >> Dave, awesome. >> Thanks so much for coming to the CUBE. We'll see you next week Pure Accelerate at San Francisco. We're there Wednesday, I believe, we're broadcasting. So look for all the things that Vaughn teased. He showed a little leg on some stuff, so we'll be covering that next week. We're back here tomorrow. Stu and I will be kicking off at 9:30 with Peter MacKay, so don't miss that. We're out for today, Veeamon 2018 the CUBE. See you tomorrow (electronic music)

Published Date : May 15 2018

SUMMARY :

Brought to you by Veeam. Great to see you man. and you were like, "Dave, and bring the compute to as you know, so Al Shughart, the legend, ahead of the competition. to maybe back up a bit. you know, we were kind of the phoenixes of the business model, so I think back, you know, I wish you would be coming and the cloud is an and say, maybe I started in the cloud and so how's the new leadership going? So just for the audience to know, of the virtualization craze And they said, you know, Joven all the time Tucci, even. So obviously I'm not in on the inside Vaughn the prognosticator, of all the flash vendors from the servers to the storage. and you have the product. and somehow you have to fit and now a billion dollars in the bank. Well and excited to here that. the Boston area is, it on just the cost of living. So I love talking you because Riding the wave of, you and that's all the guy So look for all the

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Frank SlootmanPERSON

0.99+

VaughnPERSON

0.99+

Dave VellantePERSON

0.99+

DavePERSON

0.99+

Peter MacKayPERSON

0.99+

CharliePERSON

0.99+

Frank SlootmanPERSON

0.99+

StuPERSON

0.99+

90 minutesQUANTITY

0.99+

45 daysQUANTITY

0.99+

Al ShughartPERSON

0.99+

Stu MinimanPERSON

0.99+

2.5 billion dollarsQUANTITY

0.99+

30 minutesQUANTITY

0.99+

DietzenPERSON

0.99+

tomorrowDATE

0.99+

BostonLOCATION

0.99+

40QUANTITY

0.99+

fiveQUANTITY

0.99+

USLOCATION

0.99+

WednesdayDATE

0.99+

ScottPERSON

0.99+

Vaughn StewartPERSON

0.99+

two billion dollarsQUANTITY

0.99+

TodayDATE

0.99+

Last yearDATE

0.99+

13 yearsQUANTITY

0.99+

next weekDATE

0.99+

two billionQUANTITY

0.99+

two dayQUANTITY

0.99+

San FranciscoLOCATION

0.99+

ChicagoLOCATION

0.99+

FrankPERSON

0.99+

last monthDATE

0.99+

Scott DietzenPERSON

0.99+

Silicon ValleyLOCATION

0.99+

fourDATE

0.99+

Chicago, IllinoisLOCATION

0.99+

NutanixORGANIZATION

0.99+

firstQUANTITY

0.99+

VeeamORGANIZATION

0.99+

last yearDATE

0.99+

two pointsQUANTITY

0.99+

36 hoursQUANTITY

0.99+

todayDATE

0.99+

ten yearsQUANTITY

0.99+

both companiesQUANTITY

0.99+

hundreds of millions of dollarsQUANTITY

0.99+

DuncanPERSON

0.99+

PureORGANIZATION

0.99+

second yearQUANTITY

0.99+

Pure StorageORGANIZATION

0.98+

ColoradoLOCATION

0.98+

end of JanuaryDATE

0.98+

9:30DATE

0.98+

PurePERSON

0.98+

Wrap Up | ServiceNow Knowledge18


 

>> Narrator: Live from Las Vegas, it's the CUBE covering ServiceNow Knowledge 2018. Brought to you by ServiceNow. >> Welcome back everyone, we are wrapping up three big days of the CUBE's live coverage of ServiceNow Knowledge 18. I'm your host Rebecca Knight along with my cohost Dave Vellante and Jeffrick. It has been such fun co-hosting with you both. It's always a ghast to be with you so three days, what have we learned? We've learned we're making the world of work work better for people. Beyond that what do you think? >> New branding you know there which I think underscores ServiceNow's desire to get into the C-Suite. Become a strategic partner. Some of the things we heard this week, platform of platforms. The next great enterprise software company is what they aspire to, just from a financial standpoint. This company literally wants to be a hundred billion dollar valuation company. I think they got a reasonable shot at doing that. They're well on their way to four billion dollars in revenue. It's hard to be a software company and hit a billion. You know the number of companies who get there ar very limited and they are the latest. We're also seeing many products, one platform and platforms in this day and age beat products. Cloud has been a huge tailwind for ServiceNow. We've seen the SaaSification of industries and now we're seeing significant execution on the original vision at penetration into deeply into these accounts. And I got to say when you come to events like this and talk to customers. There's amazing enthusiasm as much of if not more than any show that we do. I mean I really got, what's your take? >> We go to so many shows and it's not hard to figure out the health of a show. Right you walk around the floor, what's the energy, how many people are there? What's the ecosystem I mean, even now as I look around we're at the very end of the third day and there is action at most of the booths still. So it's a super healthy ecosystem. I think it grew another 4,000 people from this year of the year of year growth. So it's clearly on the rise. SaaS is a big thing, I think it's really interesting play and the kind of simple workflow. Not as much conversation really about the no code and the low code that we've heard in the past. Maybe they're past that but certainly a lot of conversation about the vertical stack applications that they're building and I think at the end of the day. We talked about this before, it's competition for your screen. You know what is it that you work in everyday. Right if you use, I don't care what application. SalesForce or any SaaS application which we all have a lot of on our desktop today. If you use it as a reporting tool it's a pain. It's double entry, it's not good. But what is the tool that you execute your business on everyday? And that's really a smart strategy for them to go after that. The other thing that I just think is ripe and we talked about a little bit. I don't know if they're down playing it because they're not where they want to be at or they're just downplaying it but the opportunity for machine learning and artificial intelligence to more efficiently impact workflows with the data from the workflow is a huge opportunity. So what was a bunch of workflows and approvals and this and that should all get, most of it should just get knocked out via AI over a short period of time. So I think they're in a good spot and then the other thing which we hear over and over. You know Frank Slootman IT our homies I still love that line. But as has been repeated IT is everywhere so what a great way to get into HR. To get into legal, to get into facilities management, to get into these other things. Where like hey this is a really cool efficient little tool can I build a nice app for my business? So seemed to be executing on that strategy. >> Yeah CJ just said IT will always be at our core. Rebecca the keynote was interesting. It got mixed reviews and I think part of that is they're struggling we heard tat from some of our guests. There's a hybrid audience now. You got the IT homies, you got the DevOps crowd and then you got the business leaders and so the keynote on day one was really reaching an audience. Largely outside of the core audience. You know I think day two and day three were much more geared toward that direct hit. Now I guess that's not a bad thing. >> No and I think that I mean as you noted it's a hybrid audience so you're trying to reach and touch and inspire and motivate a lot of different partners, customers, analysts. People who are looking at your business in a critical way. The first day John Donahoe it struck me as very sort of aspirational. Really talking about what is our purpose, what do we do as an organization. What are our values, what problems are we trying to solve here and I think that that laying out there in the way that he did was effective because it really did bring it back to, here's what we're about. >> Yeah the other thing I learned is succession has been very successful. Frank Slootman stepped down last year as CEO. He's maintained his chairman title, he's now stepped down as chairman. Fred kind of you know went away for a little while. Fred's back now as chairman. John Donahoe came in. People don't really put much emphasis on this but Fred Luddy was the chief product officer. Dan McGee was the COO, CJ Desai took over for both of them. He said on the CUBE. You know you texted me, you got big shoes to fill. He said I kept that just to remind me and he seems to have just picked up right where those guys left off. You know Pat Casey I think is understated and vital to the culture of this company. You know Jeff you see that, he's like a mini Fred you know and I think that's critical to maintain that cultural foundation. >> But as we said you know going the way that Pat talked about kind of just bifurcation in the keynote and the audiences in the building and out of the building. Which I've never heard before kind of an interesting way to cut it. The people that are here are their very passionate community and they're all here and they're adding 4,000 every single year. The people that are outside of the building maybe don't know as much about it and really maybe that aspirational kind of messaging touched them a little bit more cause they're not into the nitty gritty. It's really interesting too just cause this week is such a busy week in technology. The competition for attention, eyeballs and time. I was struck this morning going through some of our older stuff where Fred would always say. You know I'm so thankful that people will take the time to spend it with us this week. And when people had choices to go to Google IO, Microsoft build, of course we're at Nutanix next, Red Hat Summit I'm sure I'm missing a bunch of other ones. >> Busy week. >> The fact that people are here for three days of conference again they're still here is a pretty good statement in terms of the commitment of their community. >> Now the other thing I want to mention is four years ago Jeff was I think might have been five years ago. We said on the CUBE this company's on a collision course with SalesForce and you can really start to see it take shape. Of the customer service management piece. We know that SalesForce really isn't designed for CSM. Customer Service Management. But he talked about it so they are on a collision course there. They've hired a bunch of people from SalesForce. SalesForce is not going to rollover you know they're going to fight hard for that hard, Oracle's going to fight hard for that. So software companies believe that they should get their fair share of the spend. As long as that spend is a 100%. That's the mentality of a software company. Especially those run by Marc Benioff and Larry Ellis and so it's going to be really interesting to see how these guys evolve. They're going to start bumping into people. This guy's got pretty sharp elbows though. >> Yeah and I think the customer relation is very different. We were at PagerDuty Summit last right talked to Nick Meta who just got nominated for entrepreneur of the year I think for Ink from GainSight and he really talked about what does a customer management verses opportunity management. Once you have the customer and you've managed that sale and you've made that sale. That's really were SalesForce has strived in and that's we use it for in our own company but once you're in the customer. Like say you're in IBM or you're in Boeing. How do you actually manage your relationship in Boeing cause it's not Boeing and your sales person. There's many many many relationships, there's many many many activities, there's somewhere you're winning, somewhere you're losing. Somewhere you're new, somewhere you're old and so the opportunity there is way beyond simply managing you know a lead to an opportunity to a closed sale. That' just the very beginning of a process and actually having a relationship with the customer. >> The other thing is so you can, one of the measurements of progress in 2013 this company 95% of its business was in IT. Their core ITSM, change management, help desk etc. Today that number's down to about two thirds so a third of the business is outside of IT. We're talking about multi-hundreds of millions of dollars. So ITOM, HR, the security practice. They're taking these applications and they're becoming multi-hundred million dollar businesses. You know some of them aren't there yet but they're you know north of 50, 75 we're taking about hundreds of customers. Higher average price, average contract values. You know they don't broadcast that here but you know you look at peel back the numbers and you can see just tremendous financial story. The renewal rates are really really high. You know in the mid 90s, high 90s which is unheard of and so I think this company is going to be the next great enterprise software company and their focus on the user experience I think is important because if you think about the great enterprise software companies. SalesForce, Oracle, SAP, maybe put IBM in there because they sort of acquired their way to it. But those three, they're not the greatest user experiences in the world. They're working on the UI but they're, you know Oracle, we use Oracle. It's clunky, it's powerful. >> They're solving such different problems. Right when those companies came up they were solving a very different problem. Oracle on their relational database side. Very different problem. You know ARP was so revolutionary when SAP came out and I still just think it's so funny that we get these massive gains of efficiency. We had it in the ARP days and now we're getting it again. So they're coming at it from a very different angle. That they're fortunate that there are more modern architecture, there are more modern UI. You know unfortunately if you're legacy you're kind of stuck in your historical. >> In your old ways right? >> Paradigm. >> So the go to market gets more complicated as they start selling to all these other divisions. You're seeing overlay, sales forces you know it's going to be interesting. IBM just consolidated it's big six shows into one. You wonder what's going to happen with this. Are they going to have to create you know mini Knowledges for all these different lines of business. We'll see how that evolves. You think with the one platform maybe they keep it all together. I hope they don't lose that core. You think of VM world, rigt there's still a core technical audience and I think that brings a lot of the energy and credibility to a show like this. >> They still do have some little regional shows and there's a couple different kind of series that they're getting out because as we know. Once you get, well just different right. AWS reinvents over $40,000 last year. Oracle runs it I don't even know what Oracle runs. A 65,000, 75,000. SalesForce hundred thousand but they kind of cheat. They give away lot of tickets but it is hard to keep that community together. You know we've had a number of people come up to us while we're off air to say hi, that we've had on before. The company's growing, things are changing, new leadership so to maintain that culture I think that's why Pat is so important and the key is that connection to the past and that connection to Fred. That kind of carried forward. >> The other thing we have to mention is the ecosystem when we first started covering ServiceNow Knowledge it was you know fruition partners, cloud Sherpas I mean it. Who are these guys and now you see the acquisitions, it's EY is here, Deloitte is here, Accenture is here. >> Got Fruition. >> PWC you see Unisys is here. I mean big name companies, Capgemini, KPMG with big install bases. Strong relationships it's why you see the sales guys at ServiceNow bellying up to these companies because they know it's going to drive more business for them. So pretty impressive story I mean it's hard to be critical of these guys, your price is too high. Okay I mean alright. But the value's there so people are lining up so. >> Yeah I mean it's a smoking hot company as you said. What do they needed to do next? What do you need to see from them next? >> Well I mean the thing is they laid out the roadmap. You know they announced twice a year at different cities wit each a letter of the alphabet. They got to execute on that. I mean this is one of those companies that's theirs to lose. It really is, they got the energy. They got to retain the talent, attract new talent, the street's certainly buying their story. Their free cash flow is growing faster than their revenue which is really impressive. They're extremely well run company. Their CFO is a rockstar stud behind the scenes. I mean they got studs in development, they got a great CEO they got a great CFO. Really strong chief product officer, really strong general managers who've got incredible depth in expertise. I mean it's theirs to lose, I mean they really just have to keep executing on that roadmap keeping their customer focus and you know hoping that there's not some external factor that blows everything up. >> Yeah good point, good point. What about the messaging? We've heard as you said, it's new branding so it's making the world of work work better, there's this focus on the user experience. The idea that the CIO is no longer just so myopic in his or her portfolio. Really has to think much more broadly about the business. A real business leader, I mean is this. Are you hearing this at other conferences too? Is it jiving with the other? >> You know everyone talks about the new way to work, the new to work, the new way to work and the consumers they sort of IT and you know all the millennials that want to operate everything on their phone. That's all fine and dandy. Again at the end of the day, where do people work? Because again you're competing everyone has, excuse me many many applications unfortunately that we have to run to get our day job done and so if you can be the one that people use as the primary way that they get work done. That's the goal... >> Rebecca: That's where the money is. >> That's the end game right. >> Well I owe that so the messaging to me is interesting because IT practitioners as a community are some of the most under appreciated. You know overworked and they're only here from the business when things go bad. For decades we've seen this the thing that struck me at ServiceNow Knowledge 13 when we first came here was wow. These IT people ar pumped. You know you walk around a show the IT like this, they're kind of dragging their feet, heads down and the ServiceNow customers are excited. They're leading innovation in their companies. They're developing new applications on these platforms. It's a persona that I think is being reborn and it sound exciting to see. >> It's funny you bring up the old chest because before it was a lot about just letting IT excuse me, do their work with a little bit more creativity. Better tools, build their own store, build an IT services Amazon likened store. We're not hearing any of that anymore. >> Do more with less, squeeze, squeeze. >> If we're part of delivering value as we've talked about with the banking application and link from MoonsStar you know now these people are intimately involved with the forward facing edge of the company. So it's not talking about we'll have a cool service store. I remember like 2014 that was like a big theme. We're not hearing that anymore, we've moved way beyond that in terms of being a strategic partner in the business. Which we here over and over but these are you know people that header now the strategic partner for the business. >> Okay customers have to make bets and they're making bets on ServiceNow. They've obviously made a bunch of bets on Oracle. Increasingly they're making bets on Amazon. You know we're seeing that a lot. They've made big bets on VM ware, obviously big bets on SAP so CIOs they go to shows like this to make sure that they made the right bet and they're not missing some blind spots. To talk to their peers but you can see that their laying the chips on the table. I guess pun intended, I mean they're paying off. >> That's great, that's a great note to end on I think. So again a pleasure co-hosting with both of you. It's been a lot of fun, it's been a lot of hard work but a lot of fun too. >> Thank you Rebecca and so the CUBE season Jeff. I got to shout out to you and the team. I mean you guys, it's like so busy right now. >> I thought you were going to ask if we were going next. I was going to say oh my god. >> Next week I know I'm in Chicago at VMON. >> Right we have VMON, DON, we've got a couple of on the grounds. SAP Sapphire is coming up. >> Dave: Pure Accelerate. >> Pure Accelerate, OpenStack, we're going back to Vancouver. Haven't been there for a while. Informatica World, back down here in Las Vegas Pure Storage, San Francisco... >> We got the MIT's CTO conference coming up. We got Google Next. >> Women Transforming Technology. Just keep an eye on the website upcoming. We can't give it all straight but... >> The CUBE.net, SiliconAngle.com, WikiBon.com, bunch of free content.- you heard it here first. >> There you go. >> For Rebecca Knight and Jeffrick and Dave Vellante this has been the CUBE's coverage of ServiceNow Knowledge 18. We will see you next time. >> Thanks everybody, bye bye.

Published Date : May 10 2018

SUMMARY :

Brought to you by ServiceNow. It's always a ghast to be with you so And I got to say when you come to events like this and the kind of simple workflow. and so the keynote on day one No and I think that I mean as you noted You know Jeff you see that, the time to spend it with us this week. in terms of the commitment of their community. and so it's going to be really interesting to see and so the opportunity there I think this company is going to be the next great and I still just think it's so funny that we get these So the go to market gets more complicated and the key is that connection to the past you know fruition partners, cloud Sherpas I mean it. it's why you see Yeah I mean it's a smoking hot company as you said. and you know hoping that there's not The idea that the CIO is no longer just and so if you can be the one that people use as the so the messaging to me is interesting It's funny you bring up the old chest Do more with less, and link from MoonsStar you know now these people but you can see that their laying the chips on the table. That's great, that's a great note to end on I think. I got to shout out to you and the team. I thought you were going to ask if we were going next. Right we have VMON, DON, we're going back to Vancouver. We got the MIT's CTO conference coming up. Just keep an eye on the website upcoming. bunch of free content.- you heard it here first. We will see you next time.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
RebeccaPERSON

0.99+

Dan McGeePERSON

0.99+

Frank SlootmanPERSON

0.99+

JeffPERSON

0.99+

Rebecca KnightPERSON

0.99+

2013DATE

0.99+

BoeingORGANIZATION

0.99+

IBMORGANIZATION

0.99+

ChicagoLOCATION

0.99+

OracleORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

Larry EllisPERSON

0.99+

KPMGORGANIZATION

0.99+

Fred LuddyPERSON

0.99+

VancouverLOCATION

0.99+

Dave VellantePERSON

0.99+

Marc BenioffPERSON

0.99+

Nick MetaPERSON

0.99+

John DonahoePERSON

0.99+

Pat CaseyPERSON

0.99+

PatPERSON

0.99+

FredPERSON

0.99+

DeloitteORGANIZATION

0.99+

AWSORGANIZATION

0.99+

UnisysORGANIZATION

0.99+

CJ DesaiPERSON

0.99+

three daysQUANTITY

0.99+

JeffrickPERSON

0.99+

4,000QUANTITY

0.99+

bothQUANTITY

0.99+

last yearDATE

0.99+

MicrosoftORGANIZATION

0.99+

TodayDATE

0.99+

95%QUANTITY

0.99+

CapgeminiORGANIZATION

0.99+

4,000 peopleQUANTITY

0.99+

100%QUANTITY

0.99+

Next weekDATE

0.99+

threeQUANTITY

0.99+

SAPORGANIZATION

0.99+

PWCORGANIZATION

0.99+

2014DATE

0.99+

SalesForceORGANIZATION

0.99+

oneQUANTITY

0.99+

AccentureORGANIZATION

0.99+

mid 90sDATE

0.99+

ServiceNowORGANIZATION

0.98+

four years agoDATE

0.98+

one platformQUANTITY

0.98+

CUBEORGANIZATION

0.98+

over $40,000QUANTITY

0.98+

MoonsStarORGANIZATION

0.98+

four billion dollarsQUANTITY

0.98+

third dayQUANTITY

0.98+

ServiceNow Knowledge 18TITLE

0.97+

GainSightORGANIZATION

0.97+

CJPERSON

0.97+

C-SuiteTITLE

0.97+

this weekDATE

0.97+

multi-hundred million dollarQUANTITY

0.97+

EYORGANIZATION

0.97+

firstQUANTITY

0.96+

hundred thousandQUANTITY

0.96+

todayDATE

0.96+

twice a yearQUANTITY

0.96+

Wikibon Predictions Webinar with Slides


 

(upbeat music) >> Hi, welcome to this year's Annual Wikibon Predictions. This is our 2018 version. Last year, we had a very successful webinar describing what we thought was going to happen in 2017 and beyond and we've assembled a team to do the same thing again this year. I'm very excited to be joined by the folks listed here on the screen. My name is Peter Burris. But with me is David Floyer, Jim Kobielus is remote. George Gilbert's here in our Pal Alto studio with me. Neil Raden is remote. David Vellante is here in the studio with me. And Stuart Miniman is back in our Marlboro office. So thank you analysts for attending and we look forward to a great teleconference today. Now what we're going to do over the course of the next 45 minutes or so is we're going to hit about 13 of the 22 predictions that we have for the coming year. So if you have additional questions, I want to reinforce this, if you have additional questions or things that don't get answered, if you're a client, give us a call. Reach out to us. We'll leave you with the contact information at the end of the session. But to start things off we just want to make sure that everybody understands where we're coming from. And let you know who is Wikibon. So Wikibon is a company that starts with the idea of what's important as to research communities. Communities are where the action is. Community is where the change is happening. And community is where the trends are being established. And so we use digital technologies like theCUbE, CrowdChat and others to really ensure that we are surfacing the best ideas that are in a community and making them available to our clients so that they can succeed successfully, they can be more successful in their endeavors. When we do that, our focus has always been on a very simple premise. And that is that we're moving to an era of digital business. For many people, digital business can mean virtually anything. For us it means something very specific. To us, the difference between business and digital business is data. A digital business uses data to differentially create and keep a customer. So borrowing from what Peter Drucker said if the goal of business is to create customers and keep and sustain customers, the goal of digital business is to use data to do that. And that's going to inform an enormous number of conversations and an enormous number of decisions and strategies over the next few years. We specifically believe that all businesses are going to have establish what we regard as the five core digital business capabilities. First, they're going to have to put in place concrete approaches to turning more data into work. It's not enough to just accrete data, to capture data or to move data around. You have to be very purposeful and planful in how you establish the means by which you turn that data into work so that you can create and keep more customers. Secondly, it's absolutely essential that we build kind of the three core technology issues here, technology capabilities of effectively doing a better job of capturing data and IoT and people, or internet of things and people, mobile computing for example, is going to be a crucial feature of that. You have to then once you capture that data, turn it into value. And we think this is the essence of what big data and in many respects AI is going to be all about. And then once you have the possibility, kind of the potential energy of that data in place, then you have to turn it into kinetic energy and generate work in your business through what we call systems of agency. Now, all of this is made possible by this significant transformation that happens to be conterminous with this transition to digital business. And that is the emergence of the cloud. The technology industry has always been defined by the problems it was able to solve, catalyzed by the characteristics of the technology that made it possible to solve them. And cloud is crucial to almost all of the new types of problems that we're going to solve. So these are the five digital business capabilities that we're going to talk about, where we're going to have our predictions. Let's start first and foremost with this notion of turn more data into work. So our first prediction relates to how data governance is likely to change in a global basis. If we believe that we need to turn more data into work well, businesses haven't generally adopted many of the principles associated with those practices. They haven't optimized to do that better. They haven't elevated those concepts within the business as broadly and successfully as they have or as they should. We think that's going to change in part by the emergence of GDPR or the General Data Protection Regulation. It's going to go in full effect in May 2018. A lot has been written about it. A lot has been talked about. But our core issues ultimately are is that the dictates associated with GDPR are going to elevate the conversation on a global basis. And it mandates something that's now called the data protection officer. We're going to talk about that in a second David Vellante. But if is going to have real teeth. So we were talking with one chief privacy officer not too long ago who suggested that had the Equifax breach occurred under the rules of GDPR that the actual finds that would have been levied would have been in excess of 160 billion dollars which is a little bit more than the zero dollars that has been fined thus far. Now we've seen new bills introduced in Congress but ultimately our observation and our conversations with a lot of data chief privacy officers or data protection officers is that in the B2B world, GDPR is going to strongly influence not just our businesses behavior regarding data in Europe but on a global basis. Now that has an enormous implication David Vellante because it certainly suggest this notion of a data protection officer is something now we've got another potential chief here. How do we think that's going to organize itself over the course of the next few years? >> Well thank you Peter. There are a lot of chiefs (laughs) in the house and sometimes it gets confusing as the CIO, there's the CDO and that's either chief digital officer or chief data officer. There's the CSO, could be strategy, sometimes that could be security. There's the CPO, is that privacy or product. As he says, it gets confusing sometimes. On theCUbE we talked to all of these roles so we wanted to try to add some clarity to that. First thing we want to say is that the CIO, the chief information officer, that role is not going away. A lot of people predict that, we think that's nonsense. They will continue to have a critical role. Digital transformations are the priority in organizations. And so the chief digital officer is evolving from more than just a strategy role to much more of an operation role. Generally speaking, these chiefs tend to report in our observation to the chief operating officer, president COO. And we see the chief digital officer as increasing operational responsibility aligning with the COO and getting incremental responsibility that's more operational in nature. So the prediction really is that the chief digital officer is going to emerge as a charismatic leader amongst these chiefs. And by 2022, nearly 50% of organizations will position the chief digital officer in a more prominent role than the CIO, the CISO, the CDO and the CPO. Those will still be critical roles. The CIO will be an enabler. The chief information security officer has a huge role obviously to play especially in terms of making security a teams sport and not just falling on IT's shoulders or the security team's shoulders. The chief data officer who really emerged from a records and data management role in many cases, particularly within regulated industries will still be responsible for that data architecture and data access working very closely with the emerging chief privacy officer and maybe even the chief data protection officer. Those roles will be pretty closely aligned. So again, these roles remain critical but the chief digital officer we see as increasing in prominence. >> Great, thank you very much David. So when we think about these two activities, what we're really describing is over the course of the next few years, we strongly believe that data will be regarded more as an asset within business and we'll see resources devoted to it and we'll see certainly management devoted to it. Now, that leads to the next set of questions as data becomes an asset, the pressure to acquire data becomes that much more acute. We believe strongly that IoT has an enormous implication longer term as a basis for thinking about how data gets acquired. Now, operational technology has been in place for a long time. We're not limiting ourselves just operational technology when we talk about this. We're really talking about the full range of devices that are going to provide and extend information and digital services out to consumers, out to the Edge, out to a number of other places. So let's start here. Over the course of the next few years, the Edge analytics are going to be an increasingly important feature overall of how technology decisions get made, how technology or digital business gets conceived and even ultimately how business gets defined. Now David Floyer's done a significant amount of work in this domain and we've provided that key finding on the right hand side. And what it shows is that if you take a look at an Edge based application, a stylized Edge based application and you presume that all the data moves back to an centralized cloud, you're going to increase your costs dramatically over a three year period. Now that moderates the idea or moderates the need ultimately for providing an approach to bringing greater autonomy, greater intelligence down to the Edge itself and we think that ultimately IoT and Edge analytics become increasingly synonymous. The challenge though is that as we evolve, while this has a pressure to keep more of the data at the Edge, that ultimately a lot of the data exhaust can someday become regarded as valuable data. And so as a consequence of that, there's still a countervailing impression to try to still move all data not at the moment of automation but for modeling and integration purposes, back to some other location. The thing that's going to determine that is going to be rate at which the cost of moving the data around go down. And our expectation is over the next few years when we think about the implications of some of the big cloud suppliers, Amazon, Google, others, that are building out significant networks to facilitate their business services may in fact have a greater impact on the common carriers or as great an impact on the common carriers as they have on any server or other infrastructure company. So our prediction over the next few years is watch what Amazon, watch what Google do as they try to drive costs down inside their networks because that will have an impact how much data moves from the Edge back to the cloud. It won't have an impact necessarily on the need for automation at the Edge because latency doesn't change but it will have a cost impact. Now that leads to a second consideration and the second consideration is ultimately that when we talk about greater autonomy at the Edge we need to think about how that's going to play out. Jim Kobielus. >> Jim: Hey thanks a lot Peter. Yeah, so what we're seeing at Wikibon is that more and more of the AI applications, more of the AI application development involves AI and more and more of the AI involves deployment of those models, deep learning machine learning and so forth to the Edges of the internet of things and people. And much of that AI will be operating autonomously with little or no round-tripping back to the cloud. What that's causing, in fact, we're seeing really about a quarter of the AI development projects (static interference with web-conference) as Edge deployment. What that involves is that more and more of that AI will be, those applications will be bespoke. They'll be one of a kind, or unique or an unprecedented application and what that means is that, you know, there's a lot of different deployment scenarios within which organizations will need to use new forms of learning to be able to ready that data, those AI applications to do their jobs effectively albeit to predictions of real time, guiding of an autonomous vehicle and so forth. Reinforcement learning is the core of what many of these kinds of projects, especially those that involve robotics. So really software is hitting the world and you know the biggest parts are being taken out of the Edge, much of that is AI, much of that autonomous, where there is no need or less need for real time latency in need of adaptive components, AI infused components where as they can learn by doing. From environmental variables, they can adapt their own algorithms to take the right actions. So, they'll have far reaching impacts on application development in 2018. For the developer, the new developer really is a data scientist at heart. They're going to have to tap into a new range of sources of data especially Edge sourced data from the senors on those devices. They're going to need to do commitment training and testing especially reinforcement learning which doesn't involve trained data so much as it involves being able to build an algorithm that can learn to maximum what's called accumulative reward function and if you do the training there adaptly in real time at the Edge and so forth and so on. So really, much of this will be bespoke in the sense that every Edge device increasingly will have its own set of parameters and its own set of objective functions which will need to be optimized. So that's one of the leading edge forces, trends, in development that we see in the coming year. Back to you Peter. >> Excellent Jim, thank you very much. The next question here how are you going to create value from data? So once you've, we've gone through a couple trends and we have multiple others about what's going to happen at the Edge. But as we think about how we're going to create value from data, Neil Raden. >> Neil: You know, the problem is that data science emerged rapidly out of sort of a perfect storm of big data and cloud computing and so forth. And people who had been involved in quantitative methods you know rapidly glommed onto the title because it was, lets face it, it was very glamorous and paid very well. But there weren't really good best practices. So what we have in data science is a pretty wide field of things that are called data science. My opinion is that the true data scientists are people who are scientists and are involved in developing new or improving algorithms as opposed to prepping data and applying models. So the whole field really kind of generated very quickly, in really, just in a few years. To me I called it generation zero which is more like data prep and model management all done manually. And it wasn't really sustainable in most organizations because for obvious reasons. So generation one, then some vendors stepped up with tool kits or benchmarks or whatever for data scientists and made it a little better. And generation two is what we're going to see in 2018, is the need for data scientists to no longer prep data or at least not spend very much time with it. And not to do model management because the software will not only manage the progression of the models but even recommend them and generate them and select the data and so forth. So it's in for a very big change and I think what you're going to see is that the ranks of data scientists are going to sort of bifurcate to old style, let me sit down and write some spaghetti code in R or Java or something and those that use these advanced tool kits to really get the work done. >> That's great Neil and of course, when we start talking about getting the work done, we are becoming increasingly dependent upon tools, aren't we George? But the tool marketplace for data science, for big data, has been somewhat fragmented and fractured. And hasn't necessarily focused on solving the problems of the data scientists. But in many respects focusing the problems that the tools themselves have. What's going to happen in the coming year when we start thinking about Neil's prescription that as the tools improve what's going to happen to the tools. >> Okay so, the big thing that we see supporting what Neil's talking about, what Neil was talking about is partly a symptom of a product issue and a go to market issue where the produce issue was we had a lot of best of breed products that were all designed to fit together. That in the broader big data space, that's the same issue that we faced with more narrowly with ArpiM Hadoop where you know, where we were trying to fit together a bunch of open source packages that had an admin and developer burden. More broadly, what Neil is talking about is sort of a richer end to end tools that handle both everything from the ingest all to the way to the operationalization and feedback of the models. But part of what has to go on here is that with open source, these open source tools the price point and the functional footprints that many of the vendors are supporting right now can't feed an enterprise sales force. Everyone talks with their open source business models about land and expand and inside sales. But the problem is once you want to go to wide deployment in an enterprise, you still need someone negotiating commercial terms at a senior level. You still need the technical people fitting the tools into a broader architecture. And most of the vendors that we have who are open source vendors today, don't have either the product breadth or the deal size to support traditional enterprise software. An account team would typically a million and a half to two million quota every year so we see consolidation and the consolidation again driven by the need for simplicity for the admins and the developers and for business model reasons to support enterprise sales force. >> All right, so what we're going to see happen in the course of the coming year is a lot of specialization and recognition of what is data science, what are the practices, how is it going to work, supported by an increasing quality of tools and a lot of tool vendors are going to be left behind. Now the third kind of notion here for those core technology capabilities is we still have to enact based on data. The good new is that big data is starting to show some returns in part because of some of the things that AI and other technologies are capable of doing. But we have to move beyond just creating the potential for, we have to turn that into work and that's what we mean ultimately by this notion of systems of agency. The idea that data driven applications will increasingly be act on behalf of a brand, on behalf of a company and building those systems out is going to be crucial. It's going to have a whole new set of disciplines and expertise required. So when we think about what's going to be required, it always starts with this notion of AI. A lot of folks are presuming however, that AI is going to be relatively easy to build or relatively easy to put together. We have a different opinion George. What do we think is going to happen as these next few years unfold related to AI adoption in large enterprises? >> Okay so, let's go back to the lessons we learned from sort of the big data, the raw, you know, let's put a data link in place which was sort of the top of everyone's agenda for several years. The expectation was it was going to cure cancer, taste like chocolate and cost a dollar. And uh. (laughing) It didn't quite work out that way. Partly because we had a burden on the administrator again of so many tools that weren't all designed to fit together, even though they were distributed together. And then the data scientists, the guys who had to take all this data that wasn't carefully curated yet. And turn that into advanced analytics and machine learning models. We have many of the same problems now with tool sets that are becoming more integrated but at lower levels. This is partly what Neil Raden was just talking about. What we have to recognize is something that we see all along, I mean since the beginning of (laughs) corporate computing. We have different levels of extraction and you know at the very bottom, when you're dealing with things like Tensorflow or MXNet, that's not for mainstream enterprises. That's for you know, the big sophisticated tech companies who are building new algorithms on those frameworks. There's a level above that where you're using like a spark cluster in the machine learning built into that. That's slightly more accessible but when we talk about mainstream enterprises taking advantage of AI, the low hanging fruit is for them to use the pre-trained models that the public cloud vendors have created with all the consumer data on speech, image recognition, natural language processing. And then some of those capabilities can be further combined into applications like managing a contact center and we'll see more from like Amazon, like recommendation engines, fulfillment optimization, pricing optimization. >> So our expectation ultimately George is that we're going to see a lot of this, a lot of AI adoption happen through existing applications because the vendors that are capable of acquiring a talent, taking or experimenting, creating value, software vendors are going to be where a lot of the talent ends up. So Neil, we have an example of that. Give us an example of what we think is going to happen in 2018 when we start thinking about exploiting AI and applications. >> Neil: I think that it's fairly clear to be the application of what's called advanced analytics and data science and even machine learning. But really, it's rapidly becoming a commonplace in organizations not just at the bottom of the triangle here. But I like the example of SalesForce.com. What they've done with Einstein, is they've made machine learning and I guess you can say, AI applications available to their customer base and why is that a good thing? Because their customer base already has a giant database of clean data that they can use. So you're going to see a huge number of applications being built with Einstein against Salesforce.com data. But there's another thing to consider and that is a long time ago Salesforce.com built connectors to a zillion times of external data. So, if you're a SalesForce.com customer using Einstein, you're going to be able to use those advanced tools without knowing anything about how to train a machine learning model and start to build those things. And I think that they're going to lead the industry in that sense. That's going to push their revenue next year to, I don't know, 11 billion dollars or 12 billion dollars. >> Great, thanks Neil. All right so when we think about further evidence of this and further impacts, we ultimately have to consider some of the challenges associated with how we're going to create application value continually from these tools. And that leads to the idea that one of the cobblers children, it's going to gain or benefit from AI will in fact be the developer organization. Jim, what's our prediction for how auto-programming impacts development? >> Jim: Thank you very much Peter. Yeah, automation, wow. Auto-programming like I said is the epitome of enterprise application development for us going forward. People know it as co-generation but that really understates the control of auto-programming as it's evolving. Within 2018, what we're going to see is that machine learning driven co-generation approach of becoming the forefront of innovation. We're seeing a lot of activity in the industry in which applications use ML to drive the productivity of developers for all kinds of applications. We're also seeing a fair amount of what's called RPA, robotic process automation. And really, how they differ is that ML will deliver or will drive co-generation, from what I call the inside out meaning, creating reams of code that are geared to optimize a particular application scenario. This is RPA which really takes over the outside in approach which is essentially, it's the evolution of screen scraping that it's able to infer the underlined code needed for applications of various sorts from the external artifacts, the screens and from sort of the flow of interactions and clips and so forth for a given application. We're going to see that ML and RPA will compliment each other in the next generation of auto-programming capabilities. And so, you know, really application development tedium is really the enemy of, one of the enemies of productivity (static interference with web-conference). This is a lot of work, very detailed painstaking work. And what they need is to be better, more nuanced and more adaptive auto-programming tools to be able to build the code at the pace that's absolutely necessary for this new environment of cloud computing. So really AI-related technologies can be applied and are being applied to application development productivity challenges of all sorts. AI is fundamental to RPA as well. We're seeing a fair number of the vendors in that stage incorporate ML driven OCR and natural language processing and screen scraping and so forth into their core tools to be able to quickly build up the logic albeit to drive sort of the verbiage outside in automation of fairly complex orchestration scenario. In 2018, we'll see more of these technologies come together. But you know, they're not a silver bullet. 'Cause fundamentally and for organizations that are considering going deeply down into auto-programming they're going to have to factor AI into their overall plans. They need to get knowledgeable about AI. They're going to need to bring more AI specialists into their core development teams to be able to select from the growing range of tools that are out there, RPA and ML driven auto-programming. Overall, really what we're seeing is that the AI, the data scientists, who's been the fundamental developer of AI, they're coming into the core of development tools and skills in organizations. And they're going to be fundamental to this whole trend in 2018 and beyond. If AI gets proven out in auto-programming, these developers will then be able to evangelize the core utility of the this technology, AI. In a variety of other backend but critically important investments that organizations will be making in 2018 and beyond. Especially in IT operations and in management, AI is big in that area as well. Back to you there, Peter. >> Yeah, we'll come to that a little bit later in the presentation Jim, that's a crucial point but the other thing we want to note here regarding ultimately how folks will create value out of these technologies is to consider the simple question of okay, how much will developers need to know about infrastructure? And one of the big things we see happening is this notion of serverless. And here we've called it serverless, developer more. Jim, why don't you take us through why we think serverless is going to have a significant impact on the industry, at least certainly from a developer perspective and developer productivity perspective. >> Jim: Yeah, thanks. Serverless is really having an impact already and has for the last several years now. Now, everybody, many are familiar in the developer world, AWS Lambda which is really the ground breaking public cloud service that incorporates the serverless capabilities which essentially is an extraction layer that enables developers to build stateless code that executes in a cloud environment without having to worry about and to build microservices, we don't have to worry about underlined management of containers and virtual machines and so forth. So in many ways, you know, serverless is a simplification strategy for developers. They don't have to worry about the underlying plumbing. They can worry, they need to worry about the code, of course. What are called Lambda functions or functional methods and so forth. Now functional programming has been around for quite a while but now it's coming to the form in this new era of serverless environment. What we'll see in 2018 is that we're predicting is that more than 50% of lean microservices employees, in the public cloud will be deployed in serverless environments. There's AWS and Microsoft has the Azure function. IMB has their own. Google has their own. There's a variety of private, there's a variety of multiple service cloud code bases for private deployment of serverless environments that we're seeing evolving and beginning to deploy in 2018. They all involve functional programming which really, along, you know, when coupled with serverless clouds, enables greater scale and speed in terms of development. And it's very agile friendly in the sense that you can quickly Github a functionally programmed serverless microservice in a hurry without having to manage state and so forth. It's very DevOps friendly. In the very real sense it's a lot faster than having to build and manage and tune. You know, containers and DM's and so forth. So it can enable a more real time and rapid and iterative development pipeline going forward in cloud computing. And really fundamentally what serverless is doing is it's pushing more of these Lamba functions to the Edge, to the Edges. If you're at an AWS Green event last week or the week before, but you notice AWS is putting a big push on putting Lambda functions at the Edge and devices for the IoT as we're going to see in 2018. Pretty much the entire cloud arena. Everybody will push more of the serverless, functional programming to the Edge devices. It's just a simplification strategy. And that actually is a powerful tool for speeding up some of the development metabolism. >> All right, so Jim let me jump in here and say that we've now introduced the, some of these benefits and really highlighted the role that the cloud is going to play. So, let's turn our attention to this question of cloud optimization. And Stu, I'm going to ask you to start us off by talking about what we mean by true private cloud and ultimately our prediction for private cloud. Do we have, why don't you take us through what we think is going to happen in this world of true private cloud? >> Stuart: Sure Peter, thanks a lot. So when Wikibon, when we launched the true private cloud terminology which was about two weeks ago next week, two years ago next week, it was in some ways coming together of a lot of trends similar to things that you know, George, Neil and James have been talking about. So, it is nothing new to say that we needed to simplify the IT stack. We all know, you know the tried and true discussion of you know, way too much of the budget is spent kind of keeping lights on. What we'd like to say is kind of running the business. If you squint through this beautiful chart that we have on here, a big piece of this is operational staffing is where we need to be able to make a significant change. And what we've been really excited and what led us to this initial market segment and what we're continuing to see good growth on is the move from traditional, really siloed infrastructure to you want to have, you know, infrastructure where it is software based. You want IT to really be able to focus on the application services that they're running. And what our focus for the this for the 2018 is of course it's the central point, it's the data that matters here. The whole reason we've infrastructured this to be able to run applications and one of the things that is a key determiner as to where and what I use is the data and how can I not only store that data but actually gain value from that data. Something we've talked about time and again and that is a major determining factor as to am I building this in a public cloud or am I doing it in you know my core. Is it something that is going to live on the Edge. So that's what we were saying here with the true private cloud is not only are we going to simplify our environment and therefore it's really the operational model that we talked about. So we often say the line, cloud is not a destination. But it's an operational model. So a true private cloud giving me some of the you know, feel and management type of capability that I had had in the public cloud. It's, as I said, not just virtualization. It's much more than that. But how can I start getting services and one of the extensions is true private cloud does not live in isolation. When we have kind of a core public cloud and Edge deployments, I need to think about the operational models. Where data lives, what processing happens need to be as environments, and what data we'll need to move between them and of course there's fundamental laws of physics that we need to consider in that. So, the prediction of course is that we know how much gear and focus has been on the traditional data center. And true private cloud helps that transformation to modernization and the big focus is many of these applications we've been talking about and uses of data sets are starting to come into these true private cloud environments. So, you know, we've had discussions. There's Spark, there's modern databases. Many of these, there's going to be many reasons why they might live in the private cloud environment. And therefore that's something that we're going to see tremendous growth and a lot of focus. And we're seeing a new wave of companies that are focusing on this to deliver solutions that will do more than just a step function for infrastructure or get us outside of our silos. But really helps us deliver on those cloud native applications where we pull in things like what Jim was talking about with serverless and the like. >> All right, so Stu, what that suggests ultimately is that data is going to dictate that everything's not going to end up in the private or in the public cloud or centralized public clouds because of latency costs, data governance and IP protection reasons. And there will be some others. At bare minimum, that means that we're going to have it in most large enterprises as least a couple of clouds. Talk to us about what this impact of multi cloud is going to look like over the course of the next few years. >> Stuart: Yeah, critical point there Peter. Because, right, unfortunately, we don't have one solution. There's nobody that we run into that say, oh, you know, I just do a single you know, one environment. You know it would be great if we only had one application to worry about. But as you've done this lovely diagram here, we all use lots of SaaS and increasingly, you know, Oracle, Microsoft, SalesForce, you know, all pushing everybody to multiple SaaS environments that has major impacts on my security and where my data lives. Public clouds, no doubt is growing at leaps and bounds. And many customers are choosing applications to live in different places. So just as in data centers, I would kind of look at it from an application standpoint and build up what I need. Often, there's you know, Amazon doing phenomenal. But you know, maybe there's things that I'm doing with Azure. Maybe there's things that's I'm doing with Google or others as well as my service providers for locality, for you know, specialized services, that there's reasons why people are doing it. And what customers would love is an operational model that can actually span between those. So we are very early in trying to attack this multi cloud environment. There's everything from licensing to security to you know, just operationally how do I manage those. And a piece of them that we were touching on in this prediction year, is Kubernetes actually can be a key enabler for that cloud native environment. As Jim talked about the serverless, what we'd really like is our developer to be able to focus on building their application and not think as much about the underlined infrastructure whether that be you know, racket servers that I built myself or public cloud infrastructures. So we really want to think more it's at the data and application level. It's SaaS and pass is the model and Kubernetes holds the promise to solve a piece of this puzzle. Now Kubernetes is not by no means a silver bullet for everything that we need. But it absolutely, it is doing very well. Our team was at the Linux, the CNCF show at KubeCon last week and there is you know, broad adoption from over 40 of the leading providers including Amazon is now a piece. Even SalesForce signed up to the CNCF. So Kubernetes is allowing me to be able to manage multi cloud workflows and therefore the prediction we have here Peter is that 50% of developing teams will be building, sustaining multi cloud with Kubernetes as a foundational component of that. >> That's excellent Stu. But when we think about it, the hardware of technology especially because of the opportunities associated with true private cloud, the hardware technologies are also going to evolve. There will be enough money here to sustain that investment. David Floyer, we do see another architecture on the horizon where for certain classes of workloads, we will be able to collapse and replicate many of these things in an economical, practical way on premise. We call that UniGrid, NVME is, over fabric is a crucial feature of UniGrid. >> Absolutely. So, NVMe takes, sorry NVMe over fabric or NVMe-oF takes NVMe which is out there as storage and turns it into a system framework. It's a major change in system architecture. We call this UniGrid. And it's going to be a focus of our research in 2018. Vendors are already out there. This is the fastest movement from early standards into products themselves. You can see on the chart that IMB have come out with NVMe over fabrics with the 900 storage connected to the power. Nine systems. NetApp have the EF750. A lot of other companies are there. Meta-Lox is out there looking for networks, for high speed networks. Acceler has a major part of the storage software. So and it's going to be used in particular with things like AI. So what are the drivers and benefits of this architecture? The key is that data is the bottleneck for application. We've talked about data. The amount of data is key to making applications more effective and higher value. So NVMe and NVMe over fabrics allows data to be accessed in microseconds as opposed to milliseconds. And it allows gigabytes of data per second as opposed to megabytes of data per second. And it also allows thousands of processes to access all of the data in very very low latencies. And that gives us amazing parallelism. So what's is about is disaggregation of storage and network and processes. There are some huge benefits from that. Not least of which is you save about 50% of the processor you get back because you don't have to do storage and networking on it. And you save from stranded storage. You save from stranded processor and networking capabilities. So it's overall, it's going to be cheaper. But more importantly, it makes it a basis for delivering systems of intelligence. And systems of intelligence are bringing together systems of record, the traditional systems, not rewriting them but attaching them to real time analytics, real time AI and being able to blend those two systems together because you've got all of that additional data you can bring to bare on a particular problem. So systems themselves have reached pretty well the limit of human management. So, one of the great benefits of UniGrid is to have a single metadata lab from all of that data, all of those processes. >> Peter: All those infrastructure elements. >> All those infrastructure elements. >> Peter: And application. >> And applications themselves. So what that leads to is a huge potential to improve automation of the data center and the application of AI to operations, operational AI. >> So George, it sounds like it's going to be one of the key potential areas where we'll see AI be practically adopted within business. What do we think is going to happen here as we think about the role that AI is going to play in IT operations management? >> Well if we go back to the analogy with big data that we thought was going to you know, cure cancer, taste like chocolate, cost a dollar, and it turned out that the application, the most wide spread application of big data was to offload ETL from expensive data warehouses. And what we expect is the first widespread application of AI embedded in applications for horizontal use where Neil mentioned SalesForce and the ability to use Einstein as SalesForce data and connected data. Now because the applications we're building are so complex that as Stu mentioned you know, we have this operational model with a true private cloud. It's actually not just the legacy stuff that's sucking up all the admin overhead. It's the complexity of the new applications and the stringency of the SLA's, means that we would have to turn millions of people into admins, the old you know, when the telephone networks started, everyone's going to have to be an operator. The only way we can get past this is if we sort of apply machine learning to IT Ops and application performance management. The key here is that the models can learn how the infrastructure is laid out and how it operates. And it can also learn about how all the application services and middleware works, behaving independently and with each other and how they tie with the infrastructure. The reason that's important is because all of a sudden you can get very high fidelity root cause analysis. In the old management technology, if you had an underlined problem, you'd have a whole sort of storm of alerts, because there was no reliable way to really triangulate on the or triage the root cause. Now, what's critical is if you have high fidelity root cause analysis, you can have really precise recommendations for remediation or automated remediation which is something that people will get comfortable with over time, that's not going to happen right away. But this is critical. And this is also the first large scale application of not just machine learning but machine data and so this topology of collecting widely desperate machine data and then applying models and then reconfiguring the software, it's training wheels for IoT apps where you're going to have it far more distributed and actuating devices instead of software. >> That's great, George. So let me sum up and then we'll take some questions. So very quickly, the action items that we have out of this overall session and again, we have another 15 or so predictions that we didn't get to today. But one is, as we said, digital business is the use of data assets to compete. And so ultimately, this notion is starting to diffuse rapidly. We're seeing it on theCUbE. We're seeing it on the the CrowdChats. We're seeing it in the increase of our customers. Ultimately, we believe that the users need to start preparing for even more business scrutiny over their technology management. For example, something very simple and David Floyer, you and I have talked about this extensively in our weekly action item research meeting, the idea of backing up and restoring a system is no longer in a digital business world. It's not just backing up and restoring a system or an application, we're talking about restoring the entire business. That's going to require greater business scrutiny over technology management. It's going to lead to new organizational structures. New challenges of adopting systems, et cetera. But, ultimately, our observations is that data is going to indicate technology directions across the board whether we talk about how businesses evolve or the roles that technology takes in business or we talk about the key business capability, digital business capabilities, of capturing data, turning it into value and then turning into work. Or whether we talk about how we think about cloud architecture and which organizations of cloud resources we're going to utilize. It all comes back to the role that data's going to play in helping us drive decisions. The last action item we want to put here before we get to the questions is clients, if we don't get to your question right now, contact us. Send us an inquiry. Support@silicongangle.freshdesk.com. And we'll respond to you as fast as we can over the course of the next day, two days, to try to answer your question. All right, David Vellante, you've been collecting some questions here. Why don't we see if we can take a couple of them before we close out. >> Yeah, we got about five or six minutes in the chat room, Jim Kobielus has been awesome helping out and so there's a lot of detailed answer there. The first, there's some questions and comments. The first one was, are there too many chiefs? And I guess, yeah. There's some title inflation. I guess my comment there would be titles are cheap, results aren't. So if you're creating chief X officers just for the, to check a box, you're probably wasting money. So you've got to give them clear roles. But I think each of these chiefs has clear roles to the extent that they are you know empowered. Another comment came up which is we don't want you know, Hadoop spaghetti soup all over again. Well true that. Are we at risk of having Hadoop spaghetti soup as the centricity of big data moves from Hadoop to AI and ML and deep learning? >> Well, my answer is we are at risk of that but that there's customer pressure and vendor economic pressure to start consolidating. And we'll also see, what we didn't see in the ArpiM big data era, with cloud vendors, they're just going to start making it easier to use some of the key services together. That's just natural. >> And I'll speak for Neil on this one too, very quickly, that the idea ultimately is as the discipline starts to mature, we won't have people that probably aren't really capable of doing some of this data science stuff, running around and buying a tool to try to supplement their knowledge and their experience. So, that's going to be another factor that I think ultimately leads to clarity in how we utilize these tools as we move into an AI oriented world. >> Okay, Jim is on mute so if you wouldn't mind unmuting him. There was a question, is ML a more informative way of describing AI? Jim, when you and I were in our Boston studio, I sort of asked a similar question. AI is sort of the uber category. Machine learning is math. Deep learning is a more sophisticated math. You have a detailed answer in the chat. But maybe you can give a brief summary. >> Jim: Sure, sure. I don't want too pedantic here but deep learning is essentially, it's a lot more hierarchical deeper stacks of neural network of layers to be able to infer high level extractions from data, you know face recognitions, sentiment analysis and so forth. Machine learning is the broader phenomenon. That's simply along a different and part various approaches for distilling patterns, correlations and algorithms from the data itself. What we've seen in the last week, five, six tenure, let's say, is that all of the neural network approaches for AI have come to the forefront. And in fact, the core often market place and the state of the art. AI is an ancient paradigm that's older than probably you or me that began and for the longest time was rules based system, expert systems. Those haven't gone away. The new era of AI we see as a combination of both statical approaches as well as rules based approaches, and possibly even orchestration based approaches like graph models or building broader context or AI for a variety of applications especially distributed Edge application. >> Okay, thank you and then another question slash comment, AI like graphics in 1985, we move from a separate category to a core part of all apps. AI infused apps, again, Jim, you have a very detailed answer in the chat room but maybe you can give the summary version. >> Jim: Well quickly now, the most disruptive applications we see across the world, enterprise, consumer and so forth, the advantage involves AI. You know at the heart of its machine learning, that's neural networking. I wouldn't say that every single application is doing AI. But the ones that are really blazing the trail in terms of changing the fabric of our lives very much, most of them have AI at their heart. That will continue as the state of the art of AI continues to advance. So really, one of the things we've been saying in our research at Wikibon `is that the data scientists or those skills and tools are the nucleus of the next generation application developer, really in every sphere of our lives. >> Great, quick comment is we will be sending out these slides to all participants. We'll be posting these slides. So thank you Kip for that question. >> And very importantly Dave, over the course of the next few days, most of our predictions docs will be posted up on Wikibon and we'll do a summary of everything that we've talked about here. >> So now the questions are coming through fast and furious. But let me just try to rapid fire here 'cause we only got about a minute left. True private cloud definition. Just say this, we have a detailed definition that we can share but essentially it's substantially mimicking the public cloud experience on PRIM. The way we like to say it is, bringing the cloud operating model to your data versus trying to force fit your business into the cloud. So we've got detailed definitions there that frankly are evolving. about PaaS, there's a question about PaaS. I think we have a prediction in one of our, you know, appendices predictions but maybe a quick word on PaaS. >> Yeah, very quick word on PaaS is that there's been an enormous amount of effort put on the idea of the PaaS marketplace. Cloud Foundry, others suggested that there would be a PaaS market that would evolve because you want to be able to effectively have mobility and migration and portability for this large cloud application. We're not seeing that happen necessarily but what we are seeing is that developers are increasingly becoming a force in dictating and driving cloud decision making and developers will start biasing their choices to the platforms that demonstrate that they have the best developer experience. So whether we call it PaaS, whether we call it something else. Providing the best developer experience is going to be really important to the future of the cloud market place. >> Okay great and then George, George O, George Gilbert, you'll follow up with George O with that other question we need some clarification on. There's a question, really David, I think it's for you. Will persistent dims emerge first on public clouds? >> Almost certainly. But public clouds are where everything is going first. And when we talked about UniGrid, that's where it's going first. And then, the NVMe over fabrics, that architecture is going to be in public clouds. And it has the same sort of benefits there. And NV dims will again develop pretty rapidly as a part of the NVMe over fabrics. >> Okay, we're out of time. We'll look through the chat and follow up with any other questions. Peter, back to you. >> Great, thanks very much Dave. So once again, we want to thank you everybody here that has participated in the webinar today. I apologize for, I feel like Hans Solo and saying it wasn't my fault. But having said that, none the less, I apologize Neil Raden and everybody who had to deal with us finding and unmuting people but we hope you got a lot out of today's conversation. Look for those additional pieces of research on Wikibon, that pertain to the specific predictions on each of these different things that we're talking about. And by all means, Support@silicongangle.freshdesk.com, if you have an additional question but we will follow up with as many as we can from those significant list that's starting to queue up. So thank you very much. This closes out our webinar. We appreciate your time. We look forward to working with you more in 2018. (upbeat music)

Published Date : Dec 16 2017

SUMMARY :

And that is the emergence of the cloud. but the chief digital officer we see how much data moves from the Edge back to the cloud. and more and more of the AI involves deployment and we have multiple others that the ranks of data scientists are going to sort Neil's prescription that as the tools improve And most of the vendors that we have that AI is going to be relatively easy to build the low hanging fruit is for them to use of the talent ends up. of the triangle here. And that leads to the idea the logic albeit to drive sort of the verbiage And one of the big things we see happening is in the sense that you can quickly the role that the cloud is going to play. Is it something that is going to live on the Edge. is that data is going to dictate that and Kubernetes holds the promise to solve the hardware technologies are also going to evolve. of the processor you get back and the application of AI to So George, it sounds like it's going to be one of the key and the stringency of the SLA's, over the course of the next day, two days, to the extent that they are you know empowered. in the ArpiM big data era, with cloud vendors, as the discipline starts to mature, AI is sort of the uber category. and the state of the art. in the chat room but maybe you can give the summary version. at Wikibon `is that the data scientists these slides to all participants. over the course of the next few days, bringing the cloud operating model to your data Providing the best developer experience is going to be with that other question we need some clarification on. that architecture is going to be in public clouds. Peter, back to you. on Wikibon, that pertain to the specific predictions

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
David FloyerPERSON

0.99+

David VellantePERSON

0.99+

JimPERSON

0.99+

NeilPERSON

0.99+

DavidPERSON

0.99+

StuartPERSON

0.99+

Jim KobielusPERSON

0.99+

Neil RadenPERSON

0.99+

EuropeLOCATION

0.99+

AmazonORGANIZATION

0.99+

2018DATE

0.99+

AWSORGANIZATION

0.99+

Peter BurrisPERSON

0.99+

GeorgePERSON

0.99+

WikibonORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

2017DATE

0.99+

Stuart MinimanPERSON

0.99+

George GilbertPERSON

0.99+

Peter DruckerPERSON

0.99+

May 2018DATE

0.99+

PeterPERSON

0.99+

MicrosoftORGANIZATION

0.99+

General Data Protection RegulationTITLE

0.99+

DavePERSON

0.99+

1985DATE

0.99+

50%QUANTITY

0.99+

Last yearDATE

0.99+

George OPERSON

0.99+

OracleORGANIZATION

0.99+

Hans SoloPERSON

0.99+

Support@silicongangle.freshdesk.comOTHER

0.99+

12 billion dollarsQUANTITY

0.99+

second considerationQUANTITY

0.99+

11 billion dollarsQUANTITY

0.99+

Nine systemsQUANTITY

0.99+

Arun Murthy, Hortonworks | DataWorks Summit 2017


 

>> Announcer: Live from San Jose, in the heart of Silicon Valley, it's theCUBE covering DataWorks Summit 2017. Brought to you by Hortonworks. >> Good morning, welcome to theCUBE. We are live at day 2 of the DataWorks Summit, and have had a great day so far, yesterday and today, I'm Lisa Martin with my co-host George Gilbert. George and I are very excited to be joined by a multiple CUBE alumni, the co-founder and VP of Engineering at Hortonworks Arun Murthy. Hey, Arun. >> Thanks for having me, it's good to be back. >> Great to have you back, so yesterday, great energy at the event. You could see and hear behind us, great energy this morning. One of the things that was really interesting yesterday, besides the IBM announcement, and we'll dig into that, was that we had your CEO on, as well as Rob Thomas from IBM, and Rob said, you know, one of the interesting things over the last five years was that there have been only 10 companies that have beat the S&P 500, have outperformed, in each of the last five years, and those companies have made big bets on data science and machine learning. And as we heard yesterday, these four meta-trains IoT, cloud streaming, analytics, and now the fourth big leg, data science. Talk to us about what Hortonworks is doing, you've been here from the beginning, as a co-founder I've mentioned, you've been with Hadoop since it was a little baby. How is Hortonworks evolving to become one of those big users making big bets on helping your customers, and yourselves, leverage machine loading to really drive the business forward? >> Absolutely, a great question. So, you know, if you look at some of the history of Hadoop, it started off with this notion of a data lake, and then, I'm talking about the enterprise side of Hadoop, right? I've been working for Hadoop for about 12 years now, you know, the last six of it has been as a vendor selling Hadoop to enterprises. They started off with this notion of data lake, and as people have adopted that vision of a data lake, you know, you bring all the data in, and now you're starting to get governance and security, and all of that. Obviously the, one of the best ways to get value over the data is the notion of, you know, can you, sort of, predict what is going to happen in your world of it, with your customers, and, you know, whatever it is with the data that you already have. So that notion of, you know, Rob, our CEO, talks about how we're trying to move from a post-transactional world to a pre-transactional world, and doing the analytics and data sciences will be, obviously, with me. We could talk about, and there's so many applications of it, something as similar as, you know, we did a demo last year of, you know, of how we're working with a freight company, and we're starting to show them, you know, predict which drivers and which routes are going to have issues, as they're trying to move, alright? Four years ago we did the same demo, and we would say, okay this driver has, you know, we would show that this driver had an issue on this route, but now, within the world, we can actually predict and let you know to take preventive measures up front. Similarly internally, you know, you can take things from, you know, mission-learning, and log analytics, and so on, we have a internal problem, you know, where we have to test two different versions of HDP itself, and as you can imagine, it's a really, really hard problem. We have the support, 10 operating systems, seven databases, like, if you multiply that matrix, it's, you know, tens of thousands of options. So, if you do all that testing, we now use mission-learning internally, to look through the logs, and kind of predict where the failures were, and help our own, sort of, software engineers understand where the problems were, right? An extension of that has been, you know, the work we've done in Smartsense, which is a service we offer our enterprise customers. We collect logs from their Hadoop clusters, and then they can actually help them understand where they can either tune their applications, or even tune their hardware, right? They might have a, you know, we have this example I really like where at a really large enterprise Financial Services client, they had literally, you know, hundreds and, you know, and thousands of machines on HDP, and we, using Smartsense, we actually found that there were 25 machines which had bad NIC configuration, and we proved to them that by fixing those, we got a 30% to put back on their cluster. At that scale, it's a lot of money, it's a lot of cap, it's a lot of optics So, as a company, we try to ourselves, as much as we, kind of, try to help our customers adopt it, that make sense? >> Yeah, let's drill down on that even a little more, cause it's pretty easy to understand what's the standard telemetry you would want out of hardware, but as you, sort of, move up the stack the metrics, I guess, become more custom. So how do you learn, not just from one customer, but from many customers especially when you can't standardize what you're supposed to pull out of them? >> Yeah so, we're sort of really big believers in, sort of, doctoring your own stuff, right? So, we talk about the notion of data lake, we actually run a Smartsense data lake where we actually get data across, you know, the hundreds of of our customers, and we can actually do predictive mission-learning on that data in our own data lake. Right? And to your point about how we go up the stack, this is, kind of, where we feel like we have a natural advantage because we work on all the layers, whether it's the sequel engine, or the storage engine, or, you know, above and beyond the hardware. So, as we build these models, we understand that we need more, or different, telemetry right? And we put that back into the product so the next version of HDP will have that metrics that we wanted. And, now we've been doing this for a couple of years, which means we've done three, four, five turns of the crank, obviously something we always get better at, but I feel like, compared to where we were a couple of years ago when Smartsense first came out, it's actually matured quite a lot, from that perspective. >> So, there's a couple different paths you can add to this, which is customers might want, as part of their big data workloads, some non-Hortonworks, you know, services or software when it's on-prem, and then can you also extend this management to the Cloud if they want to hybrid setup where, in the not too distant future, the Cloud vendor will be also a provider for this type of management. >> So absolutely, in fact it's true today when, you know, we work with, you know, Microsoft's a great partner of ours. We work with them to enable Smartsense on HDI, which means we can actually get the same telemetry back, whether you're running the data on an on-prem HDP, or you're running this on HDI. Similarly, we shipped a version of our Cloud product, our Hortonworks Data Cloud, on Amazon and again Smartsense preplanned there, so whether you're on an Amazon, or a Microsoft, or on-prem, we get the same telemetry, we get the same data back. We can actually, if you're a customer using many of these products, we can actually give you that telemetry back. Similarly, if you guys probably know this we have, you were probably there in an analyst when they announced the Flex Support subscription, which means that now we can actually take the support subscription you have to get from Hortonworks, and you can actually use it on-prem or on the Cloud. >> So in terms of transforming, HDP for example, just want to make sure I'm understanding this, you're pulling in data from customers to help evolve the product, and that data can be on-prem, it can be in a Microsoft lesur, it can be an AWS? >> Exactly. The HDP can be running in any of these, we will actually pull all of them to our data lake, and they actually do the analytics for us and then present it back to the customers. So, in our support subscription, the way this works is we do the analytics in our lake, and it pushes it back, in fact to our support team tickets, and our sales force, and all the support mechanisms. And they get a set of recommendations saying Hey, we know this is the work loads you're running, we see these are the opportunities for you to do better, whether it's tuning a hardware, tuning an application, tuning the software, we sort of send the recommendations back, and the customer can go and say Oh, that makes sense, the accept that and we'll, you know, we'll update the recommendation for you automatically. Then you can have, or you can say Maybe I don't want to change my kernel pedometers, let's have a conversation. And if the customer, you know, is going through with that, then they can go and change it on their own. We do that, sort of, back and forth with the customer. >> One thing that just pops into my mind is, we talked a lot yesterday about data governance, are there particular, and also yesterday on stage were >> Arun: With IBM >> Yes exactly, when we think of, you know, really data-intensive industries, retail, financial services, insurance, healthcare, manufacturing, are there particular industries where you're really leveraging this, kind of, bi-directional, because there's no governance restrictions, or maybe I shouldn't say none, but. Give us a sense of which particular industries are really helping to fuel the evolution of Hortonworks data lake. >> So, I think healthcare is a great example. You know, when we started off, sort of this open-source project, or an atlas, you know, a couple of years ago, we got a lot of traction in the healthcare sort of insurance industry. You know, folks like Aetna were actually founding members of that, you know, sort of consortium of doing this, right? And, we're starting to see them get a lot of leverage, all of this. Similarly now as we go into, you know, Europe and expand there, things like GDPR, are really, really being pardoned, right? And, you guys know GDPR is a really big deal. Like, you pay, if you're not compliant by, I think it's like March of next year, you pay a portion of your revenue as fines. That's, you know, big money for everybody. So, I think that's what we're really excited about the portion with IBM, because we feel like the two of us can help a lot of customers, especially in countries where they're significantly, highly regulated, than the United States, to actually get leverage our, sort of, giant portfolio of products. And IBM's been a great company to atlas, they've adopted wholesale as you saw, you know, in the announcements yesterday. >> So, you're doing a Keynote tomorrow, so give us maybe the top three things, you're giving the Keynote on Data Lake 3.0, walk us through the evolution. Data Lakes 1.0, 2.0, 3.0, where you are now, and what folks can expect to hear and see in your Keynote. >> Absolutely. So as we've, kind of, continued to work with customers and we see the maturity model of customers, you know, initially people are staying up a data lake, and then they'd want, you know, sort of security, basic security what it covers, and so on. Now, they want governance, and as we're starting to go to that journey clearly, our customers are pushing us to help them get more value from the data. It's not just about putting the data lake, and obviously managing data with governance, it's also about Can you help us, you know, do mission-learning, Can you help us build other apps, and so on. So, as we look to there's a fundamental evolution that, you know, Hadoop legal system had to go through was with advance of technologies like, you know, a Docker, it's really important first to help the customers bring more than just workloads, which are sort of native to Hadoop. You know, Hadoop started off with MapReduce, obviously Spark's went great, and now we're starting to see technologies like Flink coming, but increasingly, you know, we want to do data science. To mass market data science is obviously, you know, people, like, want to use Spark, but the mass market is still Python, and R, and so on, right? >> Lisa: Non-native, okay. >> Non-native. Which are not really built, you know, these predate Hadoop by a long way, right. So now as we bring these applications in, having technology like Docker is really important, because now we can actually containerize these apps. It's not just about running Spark, you know, running Spark with R, or running Spark with Python, which you can do today. The problem is, in a true multi-tenant governed system, you want, not just R, but you want specifics of a libraries for R, right. And the libraries, you know, George wants might be completely different than what I want. And, you know, you can't do a multi-tenant system where you install both of them simultaneously. So Docker is a really elegant solution to problems like those. So now we can actually bring those technologies into a Docker container, so George's Docker containers will not, you know, conflict with mine. And you can actually go to the races, you know after the races, we're doing data signs. Which is really key for technologies like DSX, right? Because with DSX if you see, obviously DSX supports Spark with technologies like, you know, Zeppelin which is a front-end, but they also have Jupiter, which is going to work the mass market users for Python and R, right? So we want to make sure there's no friction whether it's, sort of, the guys using Spark, or the guys using R, and equally importantly DSX, you know, in the short map will also support things like, you know, the classic IBM portfolio, SBSS and so on. So bringing all of those things in together, making sure they run with data in the data lake, and also the computer in the data lake, is really big for us. >> Wow, so it sounds like your Keynote's going to be very educational for the folks that are attending tomorrow, so last question for you. One of the themes that occurred in the Keynote this morning was sharing a fun-fact about these speakers. What's a fun-fact about Arun Murthy? >> Great question. I guess, you know, people have been looking for folks with, you know, 10 years of experience on Hadoop. I'm here finally, right? There's not a lot of people but, you know, it's fun to be one of those people who've worked on this for about 10 years. Obviously, I look forward to working on this for another 10 or 15 more, but it's been an amazing journey. >> Excellent. Well, we thank you again for sharing time again with us on theCUBE. You've been watching theCUBE live on day 2 of the Dataworks Summit, hashtag DWS17, for my co-host George Gilbert. I am Lisa Martin, stick around we've got great content coming your way.

Published Date : Jun 14 2017

SUMMARY :

Brought to you by Hortonworks. We are live at day 2 of the DataWorks Summit, and Rob said, you know, one of the interesting and we're starting to show them, you know, when you can't standardize what you're or the storage engine, or, you know, some non-Hortonworks, you know, services when, you know, we work with, you know, And if the customer, you know, Yes exactly, when we think of, you know, Similarly now as we go into, you know, Data Lakes 1.0, 2.0, 3.0, where you are now, with advance of technologies like, you know, And the libraries, you know, George wants One of the themes that occurred in the Keynote this morning There's not a lot of people but, you know, Well, we thank you again for sharing time again

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
George GilbertPERSON

0.99+

Lisa MartinPERSON

0.99+

IBMORGANIZATION

0.99+

RobPERSON

0.99+

HortonworksORGANIZATION

0.99+

Rob ThomasPERSON

0.99+

GeorgePERSON

0.99+

LisaPERSON

0.99+

30%QUANTITY

0.99+

San JoseLOCATION

0.99+

MicrosoftORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

25 machinesQUANTITY

0.99+

10 operating systemsQUANTITY

0.99+

hundredsQUANTITY

0.99+

Arun MurthyPERSON

0.99+

Silicon ValleyLOCATION

0.99+

twoQUANTITY

0.99+

AetnaORGANIZATION

0.99+

10 yearsQUANTITY

0.99+

ArunPERSON

0.99+

todayDATE

0.99+

SparkTITLE

0.99+

yesterdayDATE

0.99+

AWSORGANIZATION

0.99+

bothQUANTITY

0.99+

PythonTITLE

0.99+

last yearDATE

0.99+

Four years agoDATE

0.99+

15QUANTITY

0.99+

tomorrowDATE

0.99+

CUBEORGANIZATION

0.99+

threeQUANTITY

0.99+

DataWorks SummitEVENT

0.99+

seven databasesQUANTITY

0.98+

fourQUANTITY

0.98+

DataWorks Summit 2017EVENT

0.98+

United StatesLOCATION

0.98+

Dataworks SummitEVENT

0.98+

10QUANTITY

0.98+

EuropeLOCATION

0.97+

10 companiesQUANTITY

0.97+

OneQUANTITY

0.97+

one customerQUANTITY

0.97+

thousands of machinesQUANTITY

0.97+

about 10 yearsQUANTITY

0.96+

GDPRTITLE

0.96+

DockerTITLE

0.96+

SmartsenseORGANIZATION

0.96+

about 12 yearsQUANTITY

0.95+

this morningDATE

0.95+

eachQUANTITY

0.95+

two different versionsQUANTITY

0.95+

five turnsQUANTITY

0.94+

RTITLE

0.93+

four meta-trainsQUANTITY

0.92+

day 2QUANTITY

0.92+

Data Lakes 1.0COMMERCIAL_ITEM

0.92+

FlinkORGANIZATION

0.91+

firstQUANTITY

0.91+

HDPORGANIZATION

0.91+

Krish Subramanian, Rishidot Research - Cisco DevNet Create 2017 - #DevNetCreate - #theCUBE


 

>> Announcer: Live from San Francisco, it's theCube. Covering DevNet Create 2017, brought to you by Cisco. >> Hey welcome back everyone. Live here in San Francisco, exclusive coverage with theCube at Cisco's inaugural DevNet Create event. I'm John Furrier with my co-host Peter Burris. We're breaking down the new foray into the open source world with a big presence. Cisco expanding their DevNet core developer classic program and creating an open source model with collaboration, 90% of that activity is non-Cisco, really a good formula. And to help us this down is Krish Subramanian, Principal Analyst at Rishidot Research, formerly of Red Hat, formerly of a start up that was recently sold. Can't talk about it because it's not released yet. Friend of theCube, Cube alumni, part of the Clouderati, going way back. Krish, we've seen a lot of the waves of how cloud has evolved from the early days. I remember when EngineYard was a startup, Haruku was a couple guys, we were having our meetups. >> And the AWS was still like people who weren't able to make money. >> They were poo-pooing the hell out of it. It was EC2 and S3 with a couple different, I mean RightScale did everything back then, so think about the changes. And now Cisco here with the formula, they have the right formula, I got to give them props for that, doing it right. They're not trying to come in and do a land grab and sort of, "Ahh, we're Cisco", throwing their elbows around. Really doing it right, your thoughts? >> Yeah, definitely, come back to what some other legacy companies tried to do. Cisco didn't try to jump in and say, "Hey, we are going to run public cloud, compete with Amazon", and sort of take them down. They sort of waited for right moment, they initially started with the InterCloud, which will go much further, but when IoT came into picture, they were there right for that and they were there taking advantage of that. And with the increasing focus on developers, they are going right to capture the minds of developers. Especially for IoT, that is critical for Cisco to go-- >> Well, I'm really glad you're on with Peter. We have two analysts here who know the industry up and down, from every dimension. Of course, I'll add my color, but I want to ask both of you guys a couple questions. One, do you think Cisco's making the right moves by coming out and really focusing on their core competency, which is the network? They also bought AppDynamics, so that is a big purchase. So, you got apps meets infrastructure, programmable infrastructure, which means infrastructure as code. You really can't have infrastructure as code unless Cisco gets behind it, they're the leader. So, with IoT looming, this seems like a good move for Cisco. What do you think? >> Yeah, definitely, they are going in the right direction, so it's really like IoT's still in the early stages and we have to wait and see how it is going to evolve, but Cisco is very persistent. Especially I like the AppDynamics acquisition because they are clearly telling the world that we understand that applications are the future and developers need the right tools if they are to develop their apps on Cisco infrastructure. And with the emphasis on programmability, Cisco is taking right steps towards capturing developer attention and I hope with successful events like this, they will be able to get there. >> Peter, I want to go to you for a second because we just found out, in talking to Suzy, I did not know this, but in your previous life, when you ran research at META Group, folks may not know what that was, it was a big research firm at the time, you did some really similar work around the infrastructure developer. >> Yeah >> Okay, and our comment was, "What is old is now new". I got a degree in operating systems and computer science and that seems to be the model. What is this notion of an infrastructure developer? It was mentioned in the keynote today. Does that exist in this new scenario? Do you see it being viable? It seems like the messaging is tight. What is your reaction to this notion? You've done a lot of work on that. >> Well, as a way of answering the question John, and I'll play off of something you just said, when we talk about the degree with which this is relevant to Cisco, here's what I say. Everybody's always looking for what is it that's different from today, relative to yesterday? And there's a lot of things that are different. One of the most important ones is that yesterday's computing industry emphasized a priority set of models about how you do things. So, if you thought about the network, the network had a modeled structure. You sat there and you designed a network to be as relevant to as many things as possible. Same with the database. You sat there and you designed the database to be as relevant to whatever notion of applications. When we start talking about the new world, now what we're discovering is the data is going to force a reconfiguration. That's what big data is. In many respects, it's non-structured, non-modeled data, but we still want to do analytics. Same thing with the network. We want the network to evolve and emerge, have emerging characteristics that allow us to do things that we never really anticipated when we first put this stuff down. And so, the thing that an infrastructure developer, at least as we conceived it, and we were way ahead and probably wrong for that reason, but the way we conceive it is someone has to take some degree of responsibility for starting to characterize, fill that gap, characterize the services in the infrastructure that need to be made available to application developers in a way that makes coherent and consistent sense so that an application written to an infrastructure, in fact, may become a service to another application at some point in time in the future, because they make consistent assumptions about where they operate within that margin between the application and the infrastructure. >> John: Does that environment exist today, in your opinion? >> It does in certain places. It does in certain places. I think the whole notion of containers is making, in Kubernetes for example, is making some very powerful presumptions about how applications are going to interact with each other in the future. Now, we had SOA, but we also talked about Conway's law, it just never happened because the structure of the organizations that were using SOA just guaranteed you end up with monolithic, crap applications anyway. >> Explain Conway's law real quick for people who didn't-- >> Yeah, Conway's law is, it's been mentioned in theCube a couple times, basically, it's a suggestion that the structure of the application is a reflection of the structure of the organization that created it. And so, if you have a silo-based application development organization that's looking at the application for the finance group, or the marketing group, you are going to get a structured, siloed-oriented application, no matter what underlying technology you use. And that's been that way forever. >> And so, Krish, I want to get your thoughts because let's take that to the next level. So, one of the benefits of cloud was horizontally scalable model. That really kind of, to me, was the big ah-ha moment around software. And with DevOps, which is now called cloud native, which is the same thing, infrastructures code was, hey, I'm not not an infrastructure person. I just want it to be available for me and help me configure it out and programmable, as Suzy was saying. Okay, so if you take what Peter's saying about data, you've lived through the infrastructure as a service, platform as a service, SAS wars or evolution, however you want to look at it. And, now you see that kind of coalescing into SAS and infrastructure and PAS kind of folding away and kind of becoming less of a contentious conversation. But, now that same thing's happening with data, we believe. I mean I think, maybe he may disagree, but now data's now the new data layer. What's your thoughts on that? Because now, if you inject data into what was the old cloud stack, new things are really possible. >> Yeah, the thing is, data brings in a new dimensionality to what we are seeing right now. Everything from infrastructure to application, everything requires a mindset change in terms of seeing them as services. So, even if it is a physical hardware you are dealing with, you have to make it more service-like by putting an API in front of it. So, it's changing the way how we consume these services. But, data is the one that is bringing business value to customers. When you make data easily, sort of like, inter operate with the services, let's say call it, for lack of a better term, a services ocean kind of IT model you have in your enterprise. So, when you offer to bring data into it, it offers you a lot of opportunities which didn't exist in the past. It opens up new avenues in which you could manipulate data, make sense out of it and probably get more value than what you were getting in the past. >> What's interesting, if you bring micro services, if you think about Docker and Kubernetes, as you were saying, and you bring data now into the equation and the notion of microservices, you can apply all that microservices knowledge to data. That's what you were saying, from what I hear. Or concepts of-- >> Sort of like you will bring data close to take, earlier as Peter pointed out, data was in silos, representative of the organizational structure. So, by taking a more services approach and spreading the services across these siloed, PAS, siloed organization, you are bringing the entire organization into one single umbrella, sharing the data and thereby benefiting much more than what they were getting in the past. >> So John, in the opening, one of the things we talked about, and I'll repeat it here because he's probably going to see it and I'd love to hear your comments on it, is that we went to hardware-defined networking. And then we went to software-defined networking. And, Wikibon's working on a proposition and I'm sure we'll find reasons why it's not going to play out, but again, I'd like to hear your position, is what I'll call data-defined infrastructure. So, we were on theCube last week at Informatica and we heard a lot about the role that metadata's going to play in discovery of data resources and whatnot. I can imagine adding metadata when we start talking about dependencies and time and location and things that are relevant to how a network or how an infrastructure might configure itself to serve the data, becoming a feature of the programmability of the underlying infrastructure so that we end up, in five years, we do talk about data-defined infrastructure. Just as today, we're talking about software-defined infrastructure, where the infrastructure, literally, responds to the needs of the data because that, ultimately, is the most flexible way of think about this. What do you think? >> Yeah, I fully agree with you. In fact, data brings in a new dimensionality to the equation where applications, it's a morph based on what is there in the data. So, on-the-fly, the infrastructure needs to be modified. So, data sort of brings in a new way of doing infrastructure from what we have done in the past. I fully agree with the role of data in that and how, through the application, that influences how we deal with infrastructure. It does change completely. >> All right, so I got to ask you guys a question. Journeys, is journey to DevOps, journey to digital transformation, certainly has a lot of cloud, has a lot of open source involved with it. We're seeing the Ford CEO get fired, he hasn't been on the job for four years, right? So, you guys both work with end users and advise them, so what's your advise to CXOs where, hey the clock now is, I thought four years was short. It really should be seven to 10 on the transformation scale, but people are getting axed in their third year, so they got to show results. How does an executive make all this stuff happen in such a short time? Or should they just reset expectations? >> When the executive comes in, he, or she, not only should look at their core business, they should also think that they are a technology business and change the mindset completely. That mindset change needs a push from the top that's going to accelerate the change down the lane and I think the executive should think that they are becoming a CEO, or CXO, of a technology company, rather than a manufacturing company or a automobile company kind of thing. >> I think that's true, but look, we haven't studied what happened at Ford in detail because I'm sure there's some subtleties in there that we just don't fully understand, but on the surface, it sounds like he might have gotten a little bit of a raw deal, just from the pure standpoint of-- >> Well the stock was down 39%, so my guess is total Wall Street hatchet job, but -- >> Peter: Exactly. >> We don't know a lot of the politics, but Val Bercovici, who was on earlier, who has a lot of experience in organizations that net app since 97, or late 90s, brought an interesting point, you were saying earlier. Tesla creates a car that's a service. And so, to me, I hate to use the cliche, "Everything as a service", but essentially, that's what software's going to. So, where you make up a day, that's why I'm kind of poking at the data thing because I think you're on to som-- >> But it's the end of the day, Tesla still has to have a shop that bends metal, there's still some car manufacturing things that have to happen. And, in many respects, whether the old CEO is saying, well the value proposition is, someday this autonomous vehicle is going to happen, but right now, we still got to build cars that can compete in the world market. There's a lot of subtleties here. There are-- >> Yeah, but Tesla does upgrade with software over the network. >> For an 80 to $100,000 price point and there's about four billion people that are going to buy cars in the next five years that may, or may not, be able to buy a 80,000 to $100,000 car. So anyway, coming back to your core point, I think what it really means is that if you're in a situation where you don't have visibility in a how, some of these new, digital approaches are going to create value for your business, you're doomed. So, I think the first thing you got to do is you got to be very explicit. This is how digital technology's going to create value for my business, that's number one. And, be able to articulate that to, virtually, anybody that's capable of understanding it, including Wall Street. But, to do that, you have to step back and say, and what is it about that digital technology that's going to create value for my business. And the thing that's going to do it, or not, is the data. >> And the asset configuration around, the work around the assets. >> Especially the asset configuration, as it's defined by the data. And, increasingly, there's an economics terms, what we're going to see happen over the next 10 years is the asset specificities are going to go down dramatically. In other words, the ability to which, or the degree to which an asset can only be configured to a specific purpose. Software's going to change that dynamic dramatically. And that, in many respects, is one of the fundamental, underlying things that's going on here. But, at the end of the day, you have to say, what role is data going to play in my business? How am I going to articulate that role by saying that I'm going to incorporate digital in this way? And then, put in place a plan that demonstrates that you're competent about some of these things. And, if your shareholders don't like it, they're not going to like it from anybody, not just you. >> Krish, I want to get your thoughts on the Cloud Native Compute Foundation. Why it's so successful. Why, in your opinion, do you think, there just booming with vendors, a lot of cash infusion, a lot of activity, projects went from one, three, 10. We had Dan on earlier, a lot of growth in the cloud native. And then, also, Kubernetes as a, kind of as an emerging, really interesting dynamic, vis-a-vis multicloud. So why cloud native is so popular and the impact of Kubernetes. >> Cloud native is popular because of late, developers are understanding that the role we are building applications is not going to work in cloud. When containers came into picture, that really made it easy for developers to develop cloud native apps. It got them to take advantage of the more distributed nature of the underlying infrastructure. So, the containers are the main reason why cloud native has become the household term, even in the enterprises. That could be one of the reason why Cloud Native Foundation is popular. Because they came at the right time to host all these development projects and evangelize with the developers and take steps in that. As far as Kubernetes is concerned, it worked at Google's CE. If it can work at Google's CE and then solve Google's problem, it should be able to help-- >> If it's good for Google, it's good for me. That's their strategy. >> And also, people are slowly realizing that as more and more enterprises go to cloud, they are realizing that going with a single cloud provider may not solve all their problems because different cloud providers have different set of services. So, they want to take advantage of all that. But, they want a single pane of glass to manage everything. Kubernetes is this general to be that at the cloud-- >> Krish, thanks for coming on. Peter, thanks for the comments, I'll just wrap up the analyst segment by saying, in my opinion, I think Cisco's making a good move here because, to your point about Google and Kubernetes is, and that's one of many examples of great software being contributed to open source. And open source, for all the times I've been involved with it since I was in college, is this more great software coming to the table now than ever before and that's creating great innovation. So, combined with the cloud and cloud native and Kubernetes, a perfect storm of innovation is coming. And it's coming, not from vendors, it's coming from open source. And, so the smart vendors are putting their toe in the water and really figuring it out. And again, the-- >> Peter: It is coming from vendor support though. >> Well the vendors are smart by putting their people in open source as a proxy for contribution. That's the open source model. That, to me, is the new R&D. It's a new innovation strategy, coupled with some proprietary R&D. Not saying they should be going all open source. >> I agree with it completely. In fact, I would even go one step further and say open source is completely disrupting the traditional enterprise software in modern business. Think about someone like Capital One putting critical software as open source and disrupting all the vendors in the space, so it's-- >> Well, let's continue the conversation in studio or tomorrow. Again, open source is horizontally scaling as well. Great stuff, great projects. More exclusive coverage from the inaugural event for Cisco's DevNet Create after this short break. (up-tempo music) >> Hi, I'm April Mitchell and I'm the senior director of strategy--

Published Date : May 24 2017

SUMMARY :

Covering DevNet Create 2017, brought to you by Cisco. of how cloud has evolved from the early days. And the AWS was still like people I got to give them props for that, doing it right. Especially for IoT, that is critical for Cisco to go-- but I want to ask both of you guys a couple questions. and developers need the right tools around the infrastructure developer. and that seems to be the model. but the way we conceive it of the organizations that were using SOA or the marketing group, you are going to get let's take that to the next level. So, it's changing the way how we consume these services. and the notion of microservices, you can apply all and spreading the services across these siloed, of the things we talked about, and I'll repeat it here So, on-the-fly, the infrastructure needs to be modified. All right, so I got to ask you guys a question. and change the mindset completely. of the politics, but Val Bercovici, who was on earlier, that can compete in the world market. does upgrade with software over the network. And the thing that's going to do it, or not, is the data. And the asset configuration around, is the asset specificities are going to go down dramatically. and the impact of Kubernetes. that the role we are building applications If it's good for Google, it's good for me. Kubernetes is this general to be that at the cloud-- is this more great software coming to the table now Peter: It is coming That, to me, is the new R&D. and disrupting all the vendors in the space, so it's-- More exclusive coverage from the inaugural event

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Peter BurrisPERSON

0.99+

AmazonORGANIZATION

0.99+

JohnPERSON

0.99+

Krish SubramanianPERSON

0.99+

PeterPERSON

0.99+

TeslaORGANIZATION

0.99+

CiscoORGANIZATION

0.99+

META GroupORGANIZATION

0.99+

John FurrierPERSON

0.99+

KrishPERSON

0.99+

GoogleORGANIZATION

0.99+

AWSORGANIZATION

0.99+

Red HatORGANIZATION

0.99+

Cloud Native Compute FoundationORGANIZATION

0.99+

80,000QUANTITY

0.99+

San FranciscoLOCATION

0.99+

FordORGANIZATION

0.99+

Rishidot ResearchORGANIZATION

0.99+

last weekDATE

0.99+

four yearsQUANTITY

0.99+

April MitchellPERSON

0.99+

third yearQUANTITY

0.99+

yesterdayDATE

0.99+

five yearsQUANTITY

0.99+

39%QUANTITY

0.99+

sevenQUANTITY

0.99+

InformaticaORGANIZATION

0.99+

AppDynamicsORGANIZATION

0.99+

SOATITLE

0.99+

bothQUANTITY

0.99+

80QUANTITY

0.99+

SuzyPERSON

0.99+

Cloud Native FoundationORGANIZATION

0.99+

DevNet CreateEVENT

0.99+

late 90sDATE

0.98+

90%QUANTITY

0.98+

Val BercoviciPERSON

0.98+

OneQUANTITY

0.98+

todayDATE

0.98+

tomorrowDATE

0.98+

10QUANTITY

0.98+

two analystsQUANTITY

0.98+

97DATE

0.98+

EngineYardORGANIZATION

0.97+

KubernetesTITLE

0.97+

$100,000QUANTITY

0.97+

Capital OneORGANIZATION

0.97+

oneQUANTITY

0.97+

ConwayORGANIZATION

0.97+

DanPERSON

0.97+

RightScaleORGANIZATION

0.96+

HarukuORGANIZATION

0.96+

CubeORGANIZATION

0.96+

threeQUANTITY

0.94+

Sean Convery, ServiceNow - ServiceNow Knowledge 17 - #know17 - #theCUBE


 

>> Announcer: Live from Orlando, Florida, it's the Cube. Covering Servicenow, Knowledge 17. Brought to you by Servicenow. >> Welcome back to Orlando everybody this is the Cube the leader in live tech coverage, we go out to the events, we extract the signal from the noise, and we are here for our fifth year at Knowledge this is Knowledge 17, Sean Convery's here he's the general manager of the security business unit at Servicenow, an area that I'm very excited about Shawn. Welcome back to the Cube, it's good to see you again. >> It's great to be here, thanks for having me. >> So let's see you guys launched last year at RSA we talked in depth at Servicenow Knowledge about what you guys were doing. You quoted a stat the other day which I thought was pretty substantial at the financial analyst meeting, 1.1 million job shortfall in cyber. That is huge. That's the problem that you're trying to address. >> Well it's unbelievable, I was- you know we were just doing the keynote earlier this morning and I was recounting, most people in security get in it because they have some, you know desire to save the world right? To to- they watched a movie, they read a book, they're really excited and motivated to come in- >> What's was yours, was it comic book, was it- >> It was, uh, War Games with Matthew Broderick, I was 10 years old which totally dates me, movie came out in '83 so nobody has to look it up. (laughing) And you know I was just, you know blown away by this idea of using technology and being able to change things and the trouble is analysts show up to work and they don't have that experience, and nobody's expected, but they're not even close right? They wind up being told okay here's all this potential phishing email, we'd like you to spend 20 minutes on each one trying to figure out if it actually is phishing. And there's 600 messages. So tell me when you're done and I'll give you the next 600 messages. And so it's not motivating >> Not as sexy as War Games. >> It's not as sexy as War Games exactly. And then the CICO's say, well I can't even afford the people who are well trained. So I hire people right out of school, it takes me six months to train them, they're productive for six months, and then they leave for double their salary. So you wind up with a, sort of a 50 percent productivity rate out of you new hires, and it's just, it's just a recipe for for the past right? You know, we need to think more about how we, how we change things. >> So let's sort of remind our audience in terms of security, you're not building firewalls, you're not, you know competing with a lot of the brand name securities like MacAfee or FireEye, or Palo Alto networks, you're complementing them. Talk about where you fit in the security ecosystem. >> Sure. So if you boil down the entire security market, you can really think about protection and detection as the main two areas, so protection think of a firewall, an antivirus, something that stops something bad, and think of detection as uh, I'm going to flag potentially bad things that I think are bad but I'm not to certain that I want to absolutely stop them. And so what that does is it creates a queue of behavior that needs to be analyzed today by humans, right? So this is where the entire SIM market and everything else was created to aggregate all those alerts. So once you've got the alerts, you know awesome, but you've got to sort of walk thought them and process them. So what Servicenow has focused on is the response category. And visualization, aggregation is nice, but will be much better is to provide folks the mechanism to actually respond to what's happening. Both from a vulnerability standpoint, and from an incidence standpoint. And this is really where Servicenow's expertise shines because we know workflow, we know automation, we know about system of action, right? So that's our pedigree and IT frankly is several years ahead of where the security industry is right now until we can leverage that body of expertise not just with Servicenow, but with now all of our partners to help accelerate the transformation for security team. >> So I got to cut right to the chase. So last year we talked about- and of course every time we get a briefing for instance from a security vendor, where- we're given a stat that is on average it takes 200 sometimes you've seen as high as 300 but let's say 200 days to detect an incident then the answer is so buy our prevention, or our detection solution. >> Yeah. >> I asked you last year and I tweeted out, you know a couple days ago is, has Servicenow affected that? Can you affect- I asked you last year, can you affect that, can you compress that timeframe, you said "we think so." Um what kind of progress have you made? >> Sure so you have to remember about that 200 day stat that that is a industry average across all incidents right? So the Ponemon institute pulls this data together once a year, they survey over 300 companies, and they found that I think it's 206 days is the average right now. And so to identify an- a breach, and then another 75 days to contain it. So together it's nine months, which is a frighteningly long period of time. And so what we wanted to do is measure across all of our productions security operations customers what is their average time to identify and time to contain. So it turns out, it's so small we have to convert it to hours. It's 29 hours to identify, 33 hours to contain, which actually is a 160x improvement in identification, and a 50x improvement in containment. And so we're really excited about that. But you know, frankly, I'm not satisfied. You know, I'm still measuring in hours. Granted we've moved from months to hours, but I want it from hours, to minutes, to seconds, and really, you know we can show how we can do that in minutes today with certain types of attacks. But, there's still the long breaches. >> That's a dramatic reduction, you know I know it's, that 206 whatever it is is an average of averages. >> For sure. >> But the delta between what you're seeing and your customer base is not explainable by, oh well the Servicenow customers just happen to be better at it or lucky year, it's clearly an impact that you're having. >> Well sure, let's be you know as honest as we can be here right? The, you know the people who are adopting security operations are forward thinking security customers so you would expect that they're better, right? And so your- there program should already be more mature than the average program. And if you look across those statistics, like 200 and some days, you know that includes four year long breaches, and it also includes companies that frankly don't pay as much attention to security as they should. But even if you factor all of that out, it's still a massive massive difference. >> So if I looked at the bell curve of your customers versus some of the average in that survey, you'd see, the the shift, the lump would shift way to the left, right? >> Correct. Correct. And, and you know we actually have a customer, Ron Wakely from ANP Financial Services out of Australia, who was just up on stage talking about a 60 percent improvement in his vulnerability and response time. So from identifying the vulnerabilities via Quaales, Rapid 7, Tenable, whoever their scanning vendor is, all the way through IT patching, 60 percent faster, and given that, I think it's something like 80 percent of vulnerabi- or 80 percent of attacks, come from existing vulnerabilities, that's big change. >> So do get- you got to level it when you're measuring things and you change the variable that you're measuring, as opposed to the number, right? That means you're doing a good thing. So to go from, from hours to minutes, is it continuous improvement, or are there some big, you know potential challenges that you can see that if you overcome those challenges, those are going to give you some monumental shifts in the performance. >> I, I think we're ready. I think when we come back next year, the numbers will be even better and this is why, so many of our customers started by saying "I have no process at all, I have manual, you know I'm using spreadsheets, and emails, and notebooks, you know, and trying to manage the security incident when it happens." So let me just get to a system of action, let me get to a common place where I can do all of this investigation. And that's where most of our production customers are so if you look across the ones who gave us the 29 hour and the 33 hour set, that really just getting that benefit from having a place for everybody to work together where we're going, but this is already shipping in our product is the ability to automate the investigation, so back to, back to the, you know, the poor 10 year old who didn't get to save the world, you know, now he gets to say, this entire investigation stage is entirely automated. So if I hand an analyst, for example, an infected server, there's 10 steps they need to do before they even make a decision on anything right? They have to get the network connections, get the running processes, compare them to the processes that should be on the system, look up on a reputation site all the ones that are wrong like all these manual steps. We can automate that entire process so that the analyst gets to make the decision, he's sort of presented the data, here's the report, now decide. The analogy I always use is the, the doctor who's sort of rushing down in an ER show, and somebody hands him an MRI or an X-ray and he's looking at it, you know, through the fluorescent, you know, lights as he's walking and he's like "oh" you know "five millileters of" whatever and "do this" right? >> Right. >> That's the way an analyst wants to work right? They want the data so they can decide. >> I tell you this is the classic way that machines help people do better work right? Which we hear about over and over and over. Let the machines do the machine part, collecting all the shitty boring data, um, and then present you know the data to the person to make the decision. >> Absolutely. >> Probably with recommendations as well right? With some weighted average recommendations >> Yeah and this is where it gets really exciting, because the more we start automating these tasks, you know the human still wants to make the decision but as we grow and grow this industry, one of the benefits of us being in a cloud, is we can start to measure what's happening across all of our customers, so when attack X occurs, this is the behavior that most of our customers follow, so now if you're a new customer, we can just say "in your industry, customers like you tend to do this". >> Right. >> Right? And really excited by what our engineering team is starting to put together. >> Do you have a formal, or at some point maybe down the road a formal process where customers can opt in to an aggregation of, you know we're all in this together we're probably going to share our breach data with one another so that we can start to apply a lot more data across properties to come to better resolutions quicker. >> Well we actually announced today something called trusted security circles. So this is a capability to allow all of our customers to share indicators, so when you're investigating an issue, the indicators are something that are called an indicator of compromise, or an IOC, so we can share those indicators between customers, but we can do that in an anonymous way right? And so you know, the analogy I give you is, what do you do when you lose power in your house? Right? You grab the flashlight, you check the breakers, and then you look out the window, because what are you trying to find out? >> Is anybody else out? >> Is anybody else out exactly. So, you can't do that in security, you're all alone, because if you disclose anything, you risk putting your company further in a bad spot right? Cause now it's reputation damage, somebody discloses the information, so now we've been able to allow people to do this anonymously right so it's automatic. I share something with both of you, you only see that I shared if it's relevant, meaning the service now instance found it in your own environment, and then if all three of us are in a trusted circle, when any one of us shares, we know it was one of the three, but we don't know which one. So the company's protected. >> So just anecdotally when I speak to customers, everybody still is spending more on prevention than on detection. And there's a recognition that that has to shift, and it's starting to. Now you're coming in saying, invest in response. Which, remember from our conversation last year is right on I'm super excited about that because I think the recognition must occur at the board room that you are going to get infiltrated it's the response that is going to determine the quality of your security. And you still have to spend on prevention and detection. But as you go to the market, first of all can you affirm or deny that you're seeing that shift from prevention to detection in spending, is it happening sort of fast enough, and then as you go in and advise people to think about spending on responding, what's their reaction? What are you finding is the, are the headwinds and what's the reception like? >> Sure. So you know to answer your first question about protection to detection, I would say that if you look at the mature protection technologies, right they are continuing to innovate, but certainly what you would expect a firewall to do this year, is somewhat what you expected it to do last year. But the detection category really feels like where there's a lot of innovation, right? So you're seeing you know new capabilities on the endpoint side network side, anomol- you're just seeing all sorts of diff- >> Analytics. >> Analytics, absolutely. And so uh, I do see more spent simply because more of these attacks are too, too nasty to stop, right? You sort of have to detect them and do some more analysis before you can make the decision. To your second question about, you know, what's the reception been when we started talking about response. You know, I haven't had a single meeting with a customer where they haven't said, "wow" like "we need that", right? It was very- I've never had anybody go "Well yeah our program is mature, we're fine, we don't need this." Um, the question is always just where do we start? And so we see, you know vulnerability management as one great place to start incident response is another great place to start. We introduced the third way to start, just today as well. We started shipping this new capability called vendor risk management, which actually acknowledges the the, you know we talked about the perimeter list network what five years ago? Something like that, we're saying oh the perimeter's gone, you know, mobile devices, whatever. But there's another perimeter that's been eroding as well, which is the distinction between a corporate network and your vendors and suppliers. And so your vendors and suppliers become massive sources of potential threat if they're not protected. And so the assessment process, you know, there's telcos who have 50,000 vendors. So you think about the exposure of that many companies and the process to figure out, do they have a strong password policy, right? Do they follow the best practices around network security, those kinds of things, we're allowing you to manage that entire process now. >> So you're obviously hunting within the service now customer-based presumably, right? You want to have somebody to have the platform in order to take advantage of your product. >> Sure. >> Um, could you talk about that dynamic, but also other products that you integrate with. What are you getting from the customers, do I do I have this capability- this is who I use for firewall who I use for detection do you integrate them, I'm sure you're getting that a lot. Maybe talk to that. >> Sure sure. So first off, it's important to share that the Servicenow platform as a whole is very easy to integrate with. There's API's throughout the entire system, you know we can very easily parse even emails, we have a lot of customers that you know have an email generated from an alert system, and we can parse out everything in the email and map it right into a structured workflow, so you can kind of move from unstructured email immediately into now it's in service now. But we have 40 vendors that we directly integrate with today and when I was here about a year ago, I think that number was maybe three or two. And so we're up at 40 now, and that really encompasses a lot of the popular products so we can for example, you know, a common use case, we talked about phishing a little bit right? You know, let me process a potential phishing email, pull out the URL, the subject line, all the things that might indicate bad behavior, let me look them up automatically on these public threat sources like Virus Total or Meta Defender, and then if the answer is they don't think it's bad, I can just close the incident right? If they think it's bad, now I can ask the Palo Alto Firewall, are you already blocking this particular URL, and if the Palo Alto Firewall says "yeah I was already blocking it", again you can close the incident. Only the emails that were known to be bad, and your existing perimeter capabilities didn't stop, did you need to involve people. >> I have to ask you, it goes back to the conversation we had with Robert Gates last year, but I felt like Stuxnet was this milestone, where the, the game just got escalated big time. And it went from sort of harmless, sometimes not harmless, really up the level of risk. Because now others, you know the bad guys really dug into what they could do, and it became pretty substantial. I was asking Gates generally about some future warfare in cyber, and he, this is obviously before the whole Russian hacking, but certainly Snowden and Wikileaks and so fourth was around. And he said, "The United States has to be very careful about how it responds. We have maybe many more capabilities but if we show our hand, others are going to see those weapons, and have access to those weapons, cause it's digital." I wonder as a security expert if you could sort of comment on the state of security, the future of that threat generically, or generally. Where do you see that going? >> Well there's a couple of things that come to mind as you're talking. Uh, one is you're right, Stuxnet was an eye opener I think for a lot of people in the industry that that, that these kinds of vulnerabilities are being used for, you know nation state purposes rather than, you know just sort of, uh random bad behavior. So yeah I would go back to what I said earlier and say that, um, we have to take the noise, the mundane off the table. We have to automate that, you're absolutely right. These sort of nation state attackers, if you're at a Global 2000 organization, right your intellectual property is valuable, the data you have about your employees is valuable, right all this information is going to be sought by competitors, by nation states, you have to be able to focus on those kinds of attacks, which back to my kind of War Games analogy, like that's what these people wanted to do, they wanted to find the needle in the haystack, and instead they're focusing on something more basic. And so I think if we can up the game, that changes things. The second, and really interesting thing for me is this challenge around vulnerability, so you talked about Gates saying that he has to be careful sort of how much he tips his hand. I think it was recently disclosed that the NSA had a stockpile of vulnerabilities that they were not disclosing to weaponize themselves. And that's a really paradoxical question right? You know, do you share it so that everybody can be protected including your own people, right? Imagine Acrobat, you find some problem in Acrobat, like well do you use it to exploit the enemy, or do you use it to protect your own environment? >> It's quite a dilemma. >> You- it's a huge dilemma cause you're assuming either they have it or they don't have the same vulnerability and so I'm fascinated by how that whole plays out. Yeah, it's a little frightening. >> And you know, in the land of defense, you think okay United States, you know biggest defense, spends the most money, has the, you know the most, you know, amazing machines whatever. Um, but in cyber, you know you presume that's the case, but you don't really know, I think of high frequency trading, you know, it was a lit of Russian mathmeticians that actually developed that, so clearly other states have, you know smart people that can you know create, you know, dangerous threats. And it's, it's- >> You only have to live once to, that's kind of the defense game. You got to defend them all, you have to bat 1000 on the defense side, or you know, get it and react, from the other guys side, he can just pow pow pow pow pow, you just got to get through once. >> So this is why your strategy of response is such a winner. >> Well this is where it comes back to risk as well right? At the end of the day you're right, you know a determined adversary you know, sorry to break it to everybody at some point is going to be able to find some way to do some damages. The question is how do you quantify the various risks within your organization? How do you focus your energy from a technology perspective, from a people standpoint, on the things that have the most potential to do your organization harm, and then, you know there's just no way people can stop everything unless you, you know unplug. >> And then there's the business. Then there's the business part of it too right? Cause this is like insurance when do you stop buying more insurance, you know? You could always invest more at what point does the investment no longer justify the cost because there's no simple answer. >> Well this is where, uh you know, we talked to chief information security officers all the time who are struggling with the board of directors conversation. How do I actually have an emotional conversation that's not mired in data on how things are going? And today they often have to fall back on stats like you know we process 5 million alerts per day, or we have, you know x number of vulnerabilities. But with security operations what they can do is say things like well my mean time to identify, you know was 42 hours, and this quarter it's 14 hours, and so the dollars you gave me, here's the impact. You know I have 50 critical vulnerabilities last quarter, this quarter I have 70, but only on my mission critical system, so that indicates future need to fund or reprioritize, right? So suddenly now you've got data where you can actually have a meaningful conversation about where things are from a posture prospective. >> These are the assets that we've, you know quantified the value of, these are the ones that were prioritizing the protection on and here's why we came up with that priority, let's look at that and, you know agree. >> Exactly. You know large organizations, I was talking to the CISO of a fortune ten, 50 I guess and he was sharing that it takes 40 percent of their time in incident response is spent tracking down who owns the IP address. 40 percent. So imagine, you spent 40 percent of a, you know 25 hour response time investigating who owns the asset, and then you find out it's a lab system, or it's a spare. You just wasted 40 percent of your time. But if you can instead know, oh this is your finance reporting infrastructure, okay you super high priority, let's focus in on that. So this is where the business service mapping, the CMDB becomes such a differentiator, when it's in the hands of our customers. >> Super important topic Sean Convery, thanks very much for coming back in the cube and, uh great work. Love it. >> It's great to be here, thanks for having me. >> Alright keep it right there everybody we'll be right back with our next guest, this is the Cube, we're live from Servicenow Knowledge 17 in Orlando. We'll be right back.

Published Date : May 10 2017

SUMMARY :

Brought to you by Servicenow. Welcome back to the Cube, it's good to see you again. So let's see you guys launched last year at And you know I was just, you know blown away So you wind up with a, sort of a 50 percent productivity you know competing with a lot of the brand name securities So if you boil down the entire security market, So I got to cut right to the chase. you know a couple days ago is, and really, you know we can show how we can do that you know I know it's, that 206 whatever it is But the delta between what you're seeing The, you know the people who are adopting And, and you know we actually have a customer, So do get- you got to level it when you're measuring and he's looking at it, you know, through the fluorescent, That's the way an analyst wants to work right? um, and then present you know the data you know the human still wants to make the decision is starting to put together. to an aggregation of, you know we're all in this together You grab the flashlight, you check the breakers, So, you can't do that in security, you're all alone, and then as you go in and advise people to think about So you know to answer your first question And so the assessment process, you know, in order to take advantage of your product. but also other products that you integrate with. so we can for example, you know, a common use case, Because now others, you know the bad guys the data you have about your employees is valuable, and so I'm fascinated by how that whole plays out. so clearly other states have, you know smart people or you know, get it and react, from the other guys side, So this is why your strategy of response and then, you know there's just no way Cause this is like insurance when do you and so the dollars you gave me, These are the assets that we've, you know and then you find out it's a lab system, thanks very much for coming back in the cube this is the Cube, we're live from

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Sean ConveryPERSON

0.99+

ANP Financial ServicesORGANIZATION

0.99+

Ron WakelyPERSON

0.99+

AustraliaLOCATION

0.99+

six monthsQUANTITY

0.99+

50xQUANTITY

0.99+

40 percentQUANTITY

0.99+

70QUANTITY

0.99+

160xQUANTITY

0.99+

14 hoursQUANTITY

0.99+

80 percentQUANTITY

0.99+

10 stepsQUANTITY

0.99+

25 hourQUANTITY

0.99+

20 minutesQUANTITY

0.99+

ServicenowORGANIZATION

0.99+

33 hourQUANTITY

0.99+

last yearDATE

0.99+

next yearDATE

0.99+

bothQUANTITY

0.99+

42 hoursQUANTITY

0.99+

29 hoursQUANTITY

0.99+

threeQUANTITY

0.99+

nine monthsQUANTITY

0.99+

33 hoursQUANTITY

0.99+

29 hourQUANTITY

0.99+

50 percentQUANTITY

0.99+

GatesPERSON

0.99+

first questionQUANTITY

0.99+

60 percentQUANTITY

0.99+

second questionQUANTITY

0.99+

twoQUANTITY

0.99+

40 vendorsQUANTITY

0.99+

1.1 millionQUANTITY

0.99+

200 daysQUANTITY

0.99+

600 messagesQUANTITY

0.99+

todayDATE

0.99+

oneQUANTITY

0.99+

NSAORGANIZATION

0.99+

fifth yearQUANTITY

0.99+

75 daysQUANTITY

0.99+

Matthew BroderickPERSON

0.99+

200QUANTITY

0.99+

OrlandoLOCATION

0.99+

206 daysQUANTITY

0.99+

KnowledgeORGANIZATION

0.99+

secondQUANTITY

0.99+

CMDBORGANIZATION

0.99+

'83DATE

0.99+

Orlando, FloridaLOCATION

0.99+

ServiceNowORGANIZATION

0.99+

over 300 companiesQUANTITY

0.99+

five milliletersQUANTITY

0.99+

Ponemon instituteORGANIZATION

0.98+

last quarterDATE

0.98+

QuaalesORGANIZATION

0.98+

five years agoDATE

0.98+

third wayQUANTITY

0.98+

four yearQUANTITY

0.98+

two areasQUANTITY

0.98+

50 critical vulnerabilitiesQUANTITY

0.98+

TenableORGANIZATION

0.98+

Knowledge 17ORGANIZATION

0.98+

Robert GatesPERSON

0.98+

MacAfeeORGANIZATION

0.98+

StuxnetPERSON

0.98+

CICOORGANIZATION

0.98+

BothQUANTITY

0.98+

this yearDATE

0.98+

ShawnPERSON

0.98+

50,000 vendorsQUANTITY

0.98+