Opening Panel | Generative AI: Hype or Reality | AWS Startup Showcase S3 E1
(light airy music) >> Hello, everyone, welcome to theCUBE's presentation of the AWS Startup Showcase, AI and machine learning. "Top Startups Building Generative AI on AWS." This is season three, episode one of the ongoing series covering the exciting startups from the AWS ecosystem, talking about AI machine learning. We have three great guests Bratin Saha, VP, Vice President of Machine Learning and AI Services at Amazon Web Services. Tom Mason, the CTO of Stability AI, and Aidan Gomez, CEO and co-founder of Cohere. Two practitioners doing startups and AWS. Gentlemen, thank you for opening up this session, this episode. Thanks for coming on. >> Thank you. >> Thank you. >> Thank you. >> So the topic is hype versus reality. So I think we're all on the reality is great, hype is great, but the reality's here. I want to get into it. Generative AI's got all the momentum, it's going mainstream, it's kind of come out of the behind the ropes, it's now mainstream. We saw the success of ChatGPT, opens up everyone's eyes, but there's so much more going on. Let's jump in and get your early perspectives on what should people be talking about right now? What are you guys working on? We'll start with AWS. What's the big focus right now for you guys as you come into this market that's highly active, highly hyped up, but people see value right out of the gate? >> You know, we have been working on generative AI for some time. In fact, last year we released Code Whisperer, which is about using generative AI for software development and a number of customers are using it and getting real value out of it. So generative AI is now something that's mainstream that can be used by enterprise users. And we have also been partnering with a number of other companies. So, you know, stability.ai, we've been partnering with them a lot. We want to be partnering with other companies as well. In seeing how we do three things, you know, first is providing the most efficient infrastructure for generative AI. And that is where, you know, things like Trainium, things like Inferentia, things like SageMaker come in. And then next is the set of models and then the third is the kind of applications like Code Whisperer and so on. So, you know, it's early days yet, but clearly there's a lot of amazing capabilities that will come out and something that, you know, our customers are starting to pay a lot of attention to. >> Tom, talk about your company and what your focus is and why the Amazon Web Services relationship's important for you? >> So yeah, we're primarily committed to making incredible open source foundation models and obviously stable effusions been our kind of first big model there, which we trained all on AWS. We've been working with them over the last year and a half to develop, obviously a big cluster, and bring all that compute to training these models at scale, which has been a really successful partnership. And we're excited to take it further this year as we develop commercial strategy of the business and build out, you know, the ability for enterprise customers to come and get all the value from these models that we think they can get. So we're really excited about the future. We got hugely exciting pipeline for this year with new modalities and video models and wonderful things and trying to solve images for once and for all and get the kind of general value and value proposition correct for customers. So it's a really exciting time and very honored to be part of it. >> It's great to see some of your customers doing so well out there. Congratulations to your team. Appreciate that. Aidan, let's get into what you guys do. What does Cohere do? What are you excited about right now? >> Yeah, so Cohere builds large language models, which are the backbone of applications like ChatGPT and GPT-3. We're extremely focused on solving the issues with adoption for enterprise. So it's great that you can make a super flashy demo for consumers, but it takes a lot to actually get it into billion user products and large global enterprises. So about six months ago, we released our command models, which are some of the best that exist for large language models. And in December, we released our multilingual text understanding models and that's on over a hundred different languages and it's trained on, you know, authentic data directly from native speakers. And so we're super excited to continue pushing this into enterprise and solving those barriers for adoption, making this transformation a reality. >> Just real quick, while I got you there on the new products coming out. Where are we in the progress? People see some of the new stuff out there right now. There's so much more headroom. Can you just scope out in your mind what that looks like? Like from a headroom standpoint? Okay, we see ChatGPT. "Oh yeah, it writes my papers for me, does some homework for me." I mean okay, yawn, maybe people say that, (Aidan chuckles) people excited or people are blown away. I mean, it's helped theCUBE out, it helps me, you know, feed up a little bit from my write-ups but it's not always perfect. >> Yeah, at the moment it's like a writing assistant, right? And it's still super early in the technologies trajectory. I think it's fascinating and it's interesting but its impact is still really limited. I think in the next year, like within the next eight months, we're going to see some major changes. You've already seen the very first hints of that with stuff like Bing Chat, where you augment these dialogue models with an external knowledge base. So now the models can be kept up to date to the millisecond, right? Because they can search the web and they can see events that happened a millisecond ago. But that's still limited in the sense that when you ask the question, what can these models actually do? Well they can just write text back at you. That's the extent of what they can do. And so the real project, the real effort, that I think we're all working towards is actually taking action. So what happens when you give these models the ability to use tools, to use APIs? What can they do when they can actually affect change out in the real world, beyond just streaming text back at the user? I think that's the really exciting piece. >> Okay, so I wanted to tee that up early in the segment 'cause I want to get into the customer applications. We're seeing early adopters come in, using the technology because they have a lot of data, they have a lot of large language model opportunities and then there's a big fast follower wave coming behind it. I call that the people who are going to jump in the pool early and get into it. They might not be advanced. Can you guys share what customer applications are being used with large language and vision models today and how they're using it to transform on the early adopter side, and how is that a tell sign of what's to come? >> You know, one of the things we have been seeing both with the text models that Aidan talked about as well as the vision models that stability.ai does, Tom, is customers are really using it to change the way you interact with information. You know, one example of a customer that we have, is someone who's kind of using that to query customer conversations and ask questions like, you know, "What was the customer issue? How did we solve it?" And trying to get those kinds of insights that was previously much harder to do. And then of course software is a big area. You know, generating software, making that, you know, just deploying it in production. Those have been really big areas that we have seen customers start to do. You know, looking at documentation, like instead of you know, searching for stuff and so on, you know, you just have an interactive way, in which you can just look at the documentation for a product. You know, all of this goes to where we need to take the technology. One of which is, you know, the models have to be there but they have to work reliably in a production setting at scale, with privacy, with security, and you know, making sure all of this is happening, is going to be really key. That is what, you know, we at AWS are looking to do, which is work with partners like stability and others and in the open source and really take all of these and make them available at scale to customers, where they work reliably. >> Tom, Aidan, what's your thoughts on this? Where are customers landing on this first use cases or set of low-hanging fruit use cases or applications? >> Yeah, so I think like the first group of adopters that really found product market fit were the copywriting companies. So one great example of that is HyperWrite. Another one is Jasper. And so for Cohere, that's the tip of the iceberg, like there's a very long tail of usage from a bunch of different applications. HyperWrite is one of our customers, they help beat writer's block by drafting blog posts, emails, and marketing copy. We also have a global audio streaming platform, which is using us the power of search engine that can comb through podcast transcripts, in a bunch of different languages. Then a global apparel brand, which is using us to transform how they interact with their customers through a virtual assistant, two dozen global news outlets who are using us for news summarization. So really like, these large language models, they can be deployed all over the place into every single industry sector, language is everywhere. It's hard to think of any company on Earth that doesn't use language. So it's, very, very- >> We're doing it right now. We got the language coming in. >> Exactly. >> We'll transcribe this puppy. All right. Tom, on your side, what do you see the- >> Yeah, we're seeing some amazing applications of it and you know, I guess that's partly been, because of the growth in the open source community and some of these applications have come from there that are then triggering this secondary wave of innovation, which is coming a lot from, you know, controllability and explainability of the model. But we've got companies like, you know, Jasper, which Aidan mentioned, who are using stable diffusion for image generation in block creation, content creation. We've got Lensa, you know, which exploded, and is built on top of stable diffusion for fine tuning so people can bring themselves and their pets and you know, everything into the models. So we've now got fine tuned stable diffusion at scale, which is democratized, you know, that process, which is really fun to see your Lensa, you know, exploded. You know, I think it was the largest growing app in the App Store at one point. And lots of other examples like NightCafe and Lexica and Playground. So seeing lots of cool applications. >> So much applications, we'll probably be a customer for all you guys. We'll definitely talk after. But the challenges are there for people adopting, they want to get into what you guys see as the challenges that turn into opportunities. How do you see the customers adopting generative AI applications? For example, we have massive amounts of transcripts, timed up to all the videos. I don't even know what to do. Do I just, do I code my API there. So, everyone has this problem, every vertical has these use cases. What are the challenges for people getting into this and adopting these applications? Is it figuring out what to do first? Or is it a technical setup? Do they stand up stuff, they just go to Amazon? What do you guys see as the challenges? >> I think, you know, the first thing is coming up with where you think you're going to reimagine your customer experience by using generative AI. You know, we talked about Ada, and Tom talked about a number of these ones and you know, you pick up one or two of these, to get that robust. And then once you have them, you know, we have models and we'll have more models on AWS, these large language models that Aidan was talking about. Then you go in and start using these models and testing them out and seeing whether they fit in use case or not. In many situations, like you said, John, our customers want to say, "You know, I know you've trained these models on a lot of publicly available data, but I want to be able to customize it for my use cases. Because, you know, there's some knowledge that I have created and I want to be able to use that." And then in many cases, and I think Aidan mentioned this. You know, you need these models to be up to date. Like you can't have it staying. And in those cases, you augmented with a knowledge base, you know you have to make sure that these models are not hallucinating. And so you need to be able to do the right kind of responsible AI checks. So, you know, you start with a particular use case, and there are a lot of them. Then, you know, you can come to AWS, and then look at one of the many models we have and you know, we are going to have more models for other modalities as well. And then, you know, play around with the models. We have a playground kind of thing where you can test these models on some data and then you can probably, you will probably want to bring your own data, customize it to your own needs, do some of the testing to make sure that the model is giving the right output and then just deploy it. And you know, we have a lot of tools. >> Yeah. >> To make this easy for our customers. >> How should people think about large language models? Because do they think about it as something that they tap into with their IP or their data? Or is it a large language model that they apply into their system? Is the interface that way? What's the interaction look like? >> In many situations, you can use these models out of the box. But in typical, in most of the other situations, you will want to customize it with your own data or with your own expectations. So the typical use case would be, you know, these are models are exposed through APIs. So the typical use case would be, you know you're using these APIs a little bit for testing and getting familiar and then there will be an API that will allow you to train this model further on your data. So you use that AI, you know, make sure you augmented the knowledge base. So then you use those APIs to customize the model and then just deploy it in an application. You know, like Tom was mentioning, a number of companies that are using these models. So once you have it, then you know, you again, use an endpoint API and use it in an application. >> All right, I love the example. I want to ask Tom and Aidan, because like most my experience with Amazon Web Service in 2007, I would stand up in EC2, put my code on there, play around, if it didn't work out, I'd shut it down. Is that a similar dynamic we're going to see with the machine learning where developers just kind of log in and stand up infrastructure and play around and then have a cloud-like experience? >> So I can go first. So I mean, we obviously, with AWS working really closely with the SageMaker team, do fantastic platform there for ML training and inference. And you know, going back to your point earlier, you know, where the data is, is hugely important for companies. Many companies bringing their models to their data in AWS on-premise for them is hugely important. Having the models to be, you know, open sources, makes them explainable and transparent to the adopters of those models. So, you know, we are really excited to work with the SageMaker team over the coming year to bring companies to that platform and make the most of our models. >> Aidan, what's your take on developers? Do they just need to have a team in place, if we want to interface with you guys? Let's say, can they start learning? What do they got to do to set up? >> Yeah, so I think for Cohere, our product makes it much, much easier to people, for people to get started and start building, it solves a lot of the productionization problems. But of course with SageMaker, like Tom was saying, I think that lowers a barrier even further because it solves problems like data privacy. So I want to underline what Bratin was saying earlier around when you're fine tuning or when you're using these models, you don't want your data being incorporated into someone else's model. You don't want it being used for training elsewhere. And so the ability to solve for enterprises, that data privacy and that security guarantee has been hugely important for Cohere, and that's very easy to do through SageMaker. >> Yeah. >> But the barriers for using this technology are coming down super quickly. And so for developers, it's just becoming completely intuitive. I love this, there's this quote from Andrej Karpathy. He was saying like, "It really wasn't on my 2022 list of things to happen that English would become, you know, the most popular programming language." And so the barrier is coming down- >> Yeah. >> Super quickly and it's exciting to see. >> It's going to be awesome for all the companies here, and then we'll do more, we're probably going to see explosion of startups, already seeing that, the maps, ecosystem maps, the landscape maps are happening. So this is happening and I'm convinced it's not yesterday's chat bot, it's not yesterday's AI Ops. It's a whole another ballgame. So I have to ask you guys for the final question before we kick off the company's showcasing here. How do you guys gauge success of generative AI applications? Is there a lens to look through and say, okay, how do I see success? It could be just getting a win or is it a bigger picture? Bratin we'll start with you. How do you gauge success for generative AI? >> You know, ultimately it's about bringing business value to our customers. And making sure that those customers are able to reimagine their experiences by using generative AI. Now the way to get their ease, of course to deploy those models in a safe, effective manner, and ensuring that all of the robustness and the security guarantees and the privacy guarantees are all there. And we want to make sure that this transitions from something that's great demos to actual at scale products, which means making them work reliably all of the time not just some of the time. >> Tom, what's your gauge for success? >> Look, I think this, we're seeing a completely new form of ways to interact with data, to make data intelligent, and directly to bring in new revenue streams into business. So if businesses can use our models to leverage that and generate completely new revenue streams and ultimately bring incredible new value to their customers, then that's fantastic. And we hope we can power that revolution. >> Aidan, what's your take? >> Yeah, reiterating Bratin and Tom's point, I think that value in the enterprise and value in market is like a huge, you know, it's the goal that we're striving towards. I also think that, you know, the value to consumers and actual users and the transformation of the surface area of technology to create experiences like ChatGPT that are magical and it's the first time in human history we've been able to talk to something compelling that's not a human. I think that in itself is just extraordinary and so exciting to see. >> It really brings up a whole another category of markets. B2B, B2C, it's B2D, business to developer. Because I think this is kind of the big trend the consumers have to win. The developers coding the apps, it's a whole another sea change. Reminds me everyone use the "Moneyball" movie as example during the big data wave. Then you know, the value of data. There's a scene in "Moneyball" at the end, where Billy Beane's getting the offer from the Red Sox, then the owner says to the Red Sox, "If every team's not rebuilding their teams based upon your model, there'll be dinosaurs." I think that's the same with AI here. Every company will have to need to think about their business model and how they operate with AI. So it'll be a great run. >> Completely Agree >> It'll be a great run. >> Yeah. >> Aidan, Tom, thank you so much for sharing about your experiences at your companies and congratulations on your success and it's just the beginning. And Bratin, thanks for coming on representing AWS. And thank you, appreciate for what you do. Thank you. >> Thank you, John. Thank you, Aidan. >> Thank you John. >> Thanks so much. >> Okay, let's kick off season three, episode one. I'm John Furrier, your host. Thanks for watching. (light airy music)
SUMMARY :
of the AWS Startup Showcase, of the behind the ropes, and something that, you know, and build out, you know, Aidan, let's get into what you guys do. and it's trained on, you know, it helps me, you know, the ability to use tools, to use APIs? I call that the people and you know, making sure the first group of adopters We got the language coming in. Tom, on your side, what do you see the- and you know, everything into the models. they want to get into what you guys see and you know, you pick for our customers. then you know, you again, All right, I love the example. and make the most of our models. And so the ability to And so the barrier is coming down- and it's exciting to see. So I have to ask you guys and ensuring that all of the robustness and directly to bring in new and it's the first time in human history the consumers have to win. and it's just the beginning. I'm John Furrier, your host.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
John | PERSON | 0.99+ |
Tom | PERSON | 0.99+ |
Tom Mason | PERSON | 0.99+ |
Aidan | PERSON | 0.99+ |
Red Sox | ORGANIZATION | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Andrej Karpathy | PERSON | 0.99+ |
Bratin Saha | PERSON | 0.99+ |
December | DATE | 0.99+ |
2007 | DATE | 0.99+ |
John Furrier | PERSON | 0.99+ |
Aidan Gomez | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Amazon Web Services | ORGANIZATION | 0.99+ |
Billy Beane | PERSON | 0.99+ |
Bratin | PERSON | 0.99+ |
Moneyball | TITLE | 0.99+ |
one | QUANTITY | 0.99+ |
Ada | PERSON | 0.99+ |
last year | DATE | 0.99+ |
two | QUANTITY | 0.99+ |
Earth | LOCATION | 0.99+ |
yesterday | DATE | 0.99+ |
Two practitioners | QUANTITY | 0.99+ |
Amazon Web Services | ORGANIZATION | 0.99+ |
ChatGPT | TITLE | 0.99+ |
next year | DATE | 0.99+ |
Code Whisperer | TITLE | 0.99+ |
third | QUANTITY | 0.99+ |
this year | DATE | 0.99+ |
App Store | TITLE | 0.99+ |
first time | QUANTITY | 0.98+ |
first | QUANTITY | 0.98+ |
Inferentia | TITLE | 0.98+ |
EC2 | TITLE | 0.98+ |
GPT-3 | TITLE | 0.98+ |
both | QUANTITY | 0.98+ |
Lensa | TITLE | 0.98+ |
SageMaker | ORGANIZATION | 0.98+ |
three things | QUANTITY | 0.97+ |
Cohere | ORGANIZATION | 0.96+ |
over a hundred different languages | QUANTITY | 0.96+ |
English | OTHER | 0.96+ |
one example | QUANTITY | 0.96+ |
about six months ago | DATE | 0.96+ |
One | QUANTITY | 0.96+ |
first use | QUANTITY | 0.96+ |
SageMaker | TITLE | 0.96+ |
Bing Chat | TITLE | 0.95+ |
one point | QUANTITY | 0.95+ |
Trainium | TITLE | 0.95+ |
Lexica | TITLE | 0.94+ |
Playground | TITLE | 0.94+ |
three great guests | QUANTITY | 0.93+ |
HyperWrite | TITLE | 0.92+ |
Rachel Skaff, AWS | International Women's Day
(gentle music) >> Hello, and welcome to theCUBE's coverage of International Women's Day. I'm John Furrier, host of theCUBE. I've got a great guest here, CUBE alumni and very impressive, inspiring, Rachel Mushahwar Skaff, who's a managing director and general manager at AWS. Rachel, great to see you. Thanks for coming on. >> Thank you so much. It's always a pleasure to be here. You all make such a tremendous impact with reporting out what's happening in the tech space, and frankly, investing in topics like this, so thank you. >> It's our pleasure. Your career has been really impressive. You worked at Intel for almost a decade, and that company is very tech, very focused on Moore's law, cadence of technology power in the industry. Now at AWS, powering next-generation cloud. What inspired you to get into tech? How did you get here and how have you approached your career journey, because it's quite a track record? >> Wow, how long do we have? (Rachel and John laugh) >> John: We can go as long as you want. (laughs) It's great. >> You know, all joking aside, I think at the end of the day, it's about this simple statement. If you don't get goosebumps every single morning that you're waking up to do your job, it's not good enough. And that's a bit about how I've made all of the different career transitions that I have. You know, everything from building out data centers around the world, to leading network and engineering teams, to leading applications teams, to going and working for, you know, the largest semiconductor in the world, and now at AWS, every single one of those opportunities gave me goosebumps. And I was really focused on how do I surround myself with humans that are better than I am, smarter than I am, companies that plan in decades, but live in moments, companies that invest in their employees and create like artists? And frankly, for me, being part of a company where people know that life is finite, but they want to make an infinite impact, that's a bit about my career journey in a nutshell. >> Yeah. What's interesting is that, you know, over the years, a lot's changed, and a theme that we're hearing from leaders now that are heading up large teams and running companies, they have, you know, they have 20-plus years of experience under their belt and they look back and they say, "Wow, "things have changed and it's changing faster now, "hopefully faster to get change." But they all talk about confidence and they talk about curiosity and building. When did you know that this was going to be something that you got the goosebumps? And were there blockers in your way and how did you handle that? (Rachel laughs) >> There's always blockers in our way, and I think a lot of people don't actually talk about the blockers. I think they make it sound like, hey, I had this plan from day one, and every decision I've made has been perfect. And for me, I'll tell you, right, there are moments in your life that mark a differentiation and those moments that you realize nothing will be the same. And time is kind of divided into two parts, right, before this moment and after this moment. And that's everything from, before I had kids, that's a pretty big moment in people's lives, to after I had kids, and how do you work through some of those opportunities? Before I got married, before I got divorced. Before I went to this company, after I left this company. And I think the key for all of those is just having an insatiable curiosity around how do you continue to do better, create better and make better? And I'll tell you, those blockers, they exist. Coming back from maternity leave, hard. Coming back from a medical leave, hard. Coming back from caring for a sick parent or a sick friend, hard. But all of those things start to help craft who you are as a human being, not as a leader, but as a human being, and allows you to have some empathy with the people that you surround yourself with, right? And for me, it's, (sighs) you can think about these blockers in one of two ways. You can think about it as, you know, every single time that you're tempted to react in the same way to a blocker, you can be a prisoner of your past, or you can change how you react and be a pioneer of the future. It's not a blocker when you think about it in those terms. >> Mindset matters, and that's really a great point. You brought up something that's interesting, I want to bring this up. Some of the challenges in different stages of our lives. You know, one thing that's come out of this set of interviews, this, of day and in conversations is, that I haven't heard before, is the result of COVID, working at home brought empathy about people's personal lives to the table. That came up in a couple interviews. What's your reaction to that? Because that highlights that we're human, to your point of view. >> It does. It does. And I'm so thankful that you don't ask about balance because that is a pet peeve of mine, because there is no such thing as balance. If you're in perfect balance, you are not moving and you're not changing. But when you think about, you know, the impact of COVID and how the world has changed since that, it has allowed all of us to really think about, you know, what do we want to do versus what do we have to do? And I think so many times, in both our professional lives and our personal lives, we get caught up in doing what we think we have to do to get ahead versus taking a step back and saying, "Hey, what do I want to do? "And how do I become a, you know, "a better human?" And many times, John, I'm asked, "Hey, "how do you define success or achievement?" And, you know, my answer is really, for me, the greatest results that I've achieved, both personally and professionally, is when I eliminate the word success and balance from my vocabulary, and replace them with two words: What's my contribution and what's my impact? Those things make a difference, regardless of gender. And I'll tell you, none of it is easy, ever. I think all of us have been broken, we've been stretched, we've been burnt out. But I also think what we have to talk about as leaders in the industry is how we've also found endurance and resilience. And when we felt unsteady, we've continued to go forward, right? When we can't decide, the best answer is do what's uncomfortable. And all of those things really stemmed from a part of what happened with COVID. >> Yeah, yeah, I love the uncomfortable and the balance highlight. You mentioned being off balance. That means you're growing, you're not standing still. I want to get your thoughts on this because one thing that has come out again this year, and last year as well, is having a team with you when you do it. So if you're off balance and you're going to stretch, if you have a good team with you, that's where people help each other. Not just pick them up, but like maybe get 'em back on track again. So, but if you're solo, you fall, (laughs) you fall harder. So what's your reaction to that? 'Cause this has come up, and this comes up in team building, workforce formation, goal setting, contribution. What's your reaction to that? >> So my reaction to that that is pretty simple. Nobody gets there on their own at all, right? Passion and ambition can only take you so far. You've got to have people and teams that are supporting you. And here's the funny thing about people, and frankly, about being a leader that I think is really important: People don't follow for you. People follow for who you help them become. Think about that for a second. And when you think about all the amazing things that companies and teams are able to do, it's because of those people. And it's because you have leaders that are out there, inspiring them to take what they believe is impossible and turn it into the possible. That's the power of teams. >> Can you give an example of your approach on how you do that? How do you build your teams? How do you grow them? How do you lead them effectively and also make 'em inclusive, diverse and equitable? >> Whew. I'll give you a great example of some work that we're doing at AWS. This year at re:Invent, for the first time in its history, we've launched an initiative with theCUBE called Women of the Cloud. And part of Women of the Cloud is highlighting the business impact that so many of our partners, our customers and our employees have had on the social, on the economic and on the financials of many companies. They just haven't had the opportunity to tell their story. And at Amazon, right, it is absolutely integral to us to highlight those examples and continue to extend that ethos to our partners and our customers. And I think one of the things that I shared with you at re:Invent was, you know, as U2's Bono put it, (John laughs) "We'll build it better than we did before "and we are the people "that we've been waiting for." So if we're not out there, advocating and highlighting all the amazing things that other women are doing in the ecosystem, who will? >> Well, I've got to say, I want to give you props for that program. Not only was it groundbreaking, it's still running strong. And I saw some things on LinkedIn that were really impressive in its network effect. And I met at least half a dozen new people I never would have met before through some of that content interaction and engagement. And this is like the power of the current world. I mean, getting the voices out there creates momentum. And it's good for Amazon. It's not just personal brand building for my next job or whatever, you know, reason. It's sharing and it's attracting others, and it's causing people to connect and meet each other in that world. So it's still going strong. (laughs) And this program we did last year was part of Rachel Thornton, who's now at MessageBird, and Mary Camarata. They were the sponsors for this International Women's Day. They're not there anymore, so we decided we're going to do it again because the impact is so significant. We had the Amazon Education group on. It's amazing and it's free, and we've got to get the word out. I mean, talk about leveling up fast. You get in and you get trained and get certified, and there's a zillion jobs out (laughs) there in cloud, right, and partners. So this kind of leadership is really important. What was the key learnings that you've taken away and how do you extend this opportunity to nurture the talent out there in the field? Because when you throw the content out there from great leaders and practitioners and developers, it attracts other people. >> It does. It does. So look, I think there's two types of people, people that are focused on being and people who are focused on doing. And let me give you an example, right? When we think about labels of, hey, Rachel's a female executive who launched Women of the Cloud, that label really limits me. I'd rather just be a great executive. Or, hey, there's a great entrepreneur. Let's not be a great entrepreneur. Just go build something and sell it. And that's part of this whole Women of the cloud, is I don't want people focused on what their label is. I want people sharing their stories about what they're doing, and that's where the lasting impact happens, right? I think about something that my grandmother used to tell me, and she used to tell me, "Rachel, how successful "you are, doesn't matter. "The lasting impact that you have "is your legacy in this very finite time "that you have on Earth. "Leave a legacy." And that's what Women of the Cloud is about. So that people can start to say, "Oh, geez, "I didn't know that that was possible. "I didn't think about my career in that way." And, you know, all of those different types of stories that you're hearing out there. >> And I want to highlight something you said. We had another Amazonian on the program for this day earlier and she coined a term, 'cause inside Amazon, you have common language. One of them is bar raising. Raise the bar, that's an Amazonian (Rachel laughs) term. It means contribute and improve and raise the bar of capability. She said, "Bar raising is gender neutral. "The bar is a bar." And I'm like, wow, that was amazing. Now, that means your contribution angle there highlights that. What's the biggest challenge to get that mindset set in culture, in these- >> Oh. >> 'Cause it's that simple, contribution is neutral. >> It absolutely is neutral, but it's like I said earlier, I think so many times, people are focused on success and being a great leader versus what's the contribution I'm making and how am I doing as a leader, you know? And when it comes to a lot of the leadership principles that Amazon has, including bar raising, which means insisting on the highest standards, and then those standards continue to raise every single time. And what that is all about is having all of our employees figure out, how do I get better every single day, right? That's what it's about. It's not about being better than the peer next to you. It's about how do I become a better leader, a better human being than I was yesterday? >> Awesome. >> You know, I read this really cute quote and I think it really resonates. "You meditate to upgrade your software "and you work out to upgrade your hardware." And while it's important that we're all ourselves at work, we can't deny that a lot of times, ourselves still need that meditation or that workout. >> Well, I hope I don't have any zero days in my software out there, so, but I'm going to definitely work on that. I love that quote. I'm going to use that. Thank you very much. That was awesome. I got to ask you, I know you're really passionate about, and we've talked about this, around, so you're a great leader but you're also focused on what's behind you in the generation, pipelining women leaders, okay? Seats at the table, mentoring and sponsorship. What can we do to build a strong pipeline of leaders in technology and business? And where do you see the biggest opportunity to nurture the talent in these fields? >> Hmm, you know, that's great, great question. And, you know, I just read a "Forbes" article by another Amazonian, Tanuja Randery, who talked about, you know, some really interesting stats. And one of the stats that she shared was, you know, by 2030, less than 25% of tech specialists will be female, less than 25%. That's only a 6% growth from where we are in 2023, so in seven years. That's alarming. So we've really got to figure out what are the kinds of things that we're going to go do from an Amazon perspective to impact that? And one of the obvious starting points is showcasing tech careers to girls and young women, and talking openly about what a technology career looks like. So specifically at Amazon, we've got an AWS Git IT program that helps schools and educators bring in tech role models to show them what potential careers look like in tech. I think that's one great way that we can help build the pipeline, but once we get the pipeline, we also have to figure out how we don't let that pipeline leak. Meaning how do we keep women and, you know, young women on their tech career? And I think big part of that, John, is really talking about how hard it is, but it's also greater than you can ever imagine. And letting them see executives that are very authentic and will talk about, geez, you know, the challenges of COVID were a time of crisis and accelerated change, and here's what it meant to me personally and here's what we were able to solve professionally. These younger generations are all about social impact, they're about economic impact and they're about financial impact. And if we're not talking about all three of those, both from how AWS is leading from the front, but how its executives are also taking that into their personal lives, they're not going to want to go into tech. >> Yeah, and I think one of the things you mentioned there about getting people that get IT, good call out there, but also, Amazon's going to train 30 million people, put hundreds of millions of dollars into education. And not only are they making it easier to get in to get trained, but once you're in, even savvy folks that are in there still have to accelerate. And there's more ways to level up, more things are happening, but there's a big trend around people changing careers either in their late 20s, early 30s, or even those moments you talk about, where it's before and after, even later in the careers, 40s, 50s. Leaders like, well, good experience, good training, who were in another discipline who re-skilled. So you have, you know, more certifications coming in. So there's still other pivot points in the pipeline. It's not just down here. And that, I find that interesting. Are you seeing that same leadership opportunities coming in where someone can come into tech older? >> Absolutely. You know, we've got some amazing programs, like Amazon Returnity, that really focuses on how do we get other, you know, how do we get women that have taken some time off of work to get back into the workforce? And here's the other thing about switching careers. If I look back on my career, I started out as a civil engineer, heavy highway construction. And now I lead a sales team at the largest cloud company in the world. And there were, you know, twists and turns around there. I've always focused on how do we change and how do we continue to evolve? So it's not just focused on, you know, young women in the pipeline. It's focused on all gender and all diverse types throughout their career, and making sure that we're providing an inclusive environment for them to bring in their unique skillsets. >> Yeah, a building has good steel. It's well structured. Roads have great foundations. You know, you got the builder in you there. >> Yes. >> So I have to ask you, what's on your mind as a tech athlete, as an executive at AWS? You know, you got your huge team, big goals, the economy's got a little bit of a headwind, but still, cloud's transforming, edge is exploding. What's your outlook as you look out in the tech landscape these days and how are you thinking about it? What your plans? Can you share a little bit about what's on your mind? >> Sure. So, geez, there's so many trends that are top of mind right now. Everything from zero trust to artificial intelligence to security. We have more access to data now than ever before. So the opportunities are limitless when we think about how we can apply technology to solve some really difficult customer problems, right? Innovation sometimes feels like it's happening at a rapid pace. And I also say, you know, there are years when nothing happens, and then there's years when centuries happen. And I feel like we're kind of in those years where centuries are happening. Cloud technologies are refining sports as we know them now. There's a surge of innovation in smart energy. Everyone's supply chain is looking to transform. Custom silicon is going mainstream. And frankly, AWS's customers and partners are expecting us to come to them with a point of view on trends and on opportunities. And that's what differentiates us. (John laughs) That's what gives me goosebumps- >> I was just going to ask you that. Does that give you goosebumps? How could you not love technology with that excitement? I mean, AI, throw in AI, too. I just talked to Swami, who heads up the AI and database, and we just talked about the past 24 months, the change. And that is a century moment happening. The large language models, computer vision, more compute. Compute's booming than ever before. Who thought that was going to happen, is still happening? Massive change. So, I mean, if you're in tech, how can you not love tech? >> I know, even if you're not in tech, I think you've got to start to love tech because it gives you access to things you've never had before. And frankly, right, change is the only constant. And if you don't like change, you're going to like being irrelevant even less than you like change. So we've got to be nimble, we've got to adapt. And here's the great thing, once we figure it out, it changes all over again. And it's not something that's easy for any of us to operate. It's hard, right? It's hard learning new technology, it's hard figuring out what do I do next? But here's the secret. I think it's hard because we're doing it right. It's not hard because we're doing it wrong. It's just hard to be human and it's hard to figure out how we apply all this different technology in a way that positively impacts us, you know, economically, financially, environmentally and socially. >> And everyone's different, too. So you got to live those (mumbles). I want to get one more question in before we, my last question, which is about you and your impact. When you talk to your team, your sales, you got a large sales team, North America. And Tanuja, who you mentioned, is in EMEA, we're going to speak with her as well. You guys lead the front lines, helping customers, but also delivering the revenue to the company, which has been fantastic, by the way. So what's your message to the troops and the team out there? When you say, "Take that hill," like what is the motivational pitch, in a few sentences? What's the main North Star message in today's marketplace when you're doing that big team meeting? >> I don't know if it's just limited to a team meeting. I think this is a universal message, and the universal message for me is find your edge, whatever that may be. Whether it is the edge of what you know about artificial intelligence and neural networks or it's the edge of how do we migrate our applications to the cloud more quickly. Or it's the edge of, oh, my gosh, how do I be a better parent and still be great at work, right? Find your edge, and then sharpen it. Go to the brink of what you think is possible, and then force yourself to jump. Get involved. The world is run by the people that show up, professionally and personally. (John laughs) So show up and get started. >> Yeah as Steve Jobs once said, "The future "that everyone looks at was created "by people no smarter than you." And I love that quote. That's really there. Final question for you. I know we're tight on time, but I want to get this in. When you think about your impact on your company, AWS, and the industry, what's something you want people to remember? >> Oh, geez. I think what I want people to remember the most is it's not about what you've said, and this is a Maya Angelou quote. "It's not about what you've said to people "or what you've done, "it's about how you've made them feel." And we can all think back on leaders or we can all think back on personal moments in our lives where we felt like we belonged, where we felt like we did something amazing, where we felt loved. And those are the moments that sit with us for the rest of our lives. I want people to remember how they felt when they were part of something bigger. I want people to belong. It shouldn't be uncommon to talk about feelings at work. So I want people to feel. >> Rachel, thank you for your time. I know you're really busy and we stretched you a little bit there. Thank you so much for contributing to this wonderful day of great leaders sharing their stories. And you're an inspiration. Thanks for everything you do. We appreciate you. >> Thank you. And let's go do some more Women of the Cloud videos. >> We (laughs) got more coming. Bring those stories on. Back up the story truck. We're ready to go. Thanks so much. >> That's good. >> Thank you. >> Okay, this is theCUBE's coverage of International Women's Day. It's not just going to be March 8th. That's the big celebration day. It's going to be every quarter, more stories coming. Stay tuned at siliconangle.com and thecube.net here, with bringing all the stories. I'm John Furrier, your host. Thanks for watching. (gentle music)
SUMMARY :
and very impressive, inspiring, Thank you so much. and how have you approached long as you want. to going and working for, you know, and how did you handle that? and how do you work through Some of the challenges in And I'm so thankful that you don't ask and the balance highlight. And it's because you have leaders that I shared with you at re:Invent and how do you extend this opportunity And let me give you an example, right? and raise the bar of capability. contribution is neutral. than the peer next to you. "and you work out to And where do you see And one of the stats that she shared the things you mentioned there And there were, you know, twists You know, you got the and how are you thinking about it? And I also say, you know, I was just going to ask you that. And if you don't like change, And Tanuja, who you mentioned, is in EMEA, of what you know about And I love that quote. And we can all think back on leaders Rachel, thank you for your time. Women of the Cloud videos. We're ready to go. It's not just going to be March 8th.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Telco | ORGANIZATION | 0.99+ |
Rachel | PERSON | 0.99+ |
Tim Cook | PERSON | 0.99+ |
Jeff Frick | PERSON | 0.99+ |
Telcos | ORGANIZATION | 0.99+ |
Tanuja Randery | PERSON | 0.99+ |
Rachel Thornton | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Nayaki | PERSON | 0.99+ |
Sanjay | PERSON | 0.99+ |
Peter Burris | PERSON | 0.99+ |
2014 | DATE | 0.99+ |
Ford | ORGANIZATION | 0.99+ |
Tanuja | PERSON | 0.99+ |
Rachel Skaff | PERSON | 0.99+ |
Todd Skidmore | PERSON | 0.99+ |
Nokia | ORGANIZATION | 0.99+ |
Barcelona | LOCATION | 0.99+ |
John | PERSON | 0.99+ |
Australia | LOCATION | 0.99+ |
ORGANIZATION | 0.99+ | |
Bob Stefanski | PERSON | 0.99+ |
Steve Jobs | PERSON | 0.99+ |
Tom Joyce | PERSON | 0.99+ |
Lisa Martin | PERSON | 0.99+ |
Laura Cooney | PERSON | 0.99+ |
John Furrier | PERSON | 0.99+ |
Todd | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
2011 | DATE | 0.99+ |
Mary Camarata | PERSON | 0.99+ |
Meg Whitman | PERSON | 0.99+ |
IBM | ORGANIZATION | 0.99+ |
Tesla | ORGANIZATION | 0.99+ |
Blackberry | ORGANIZATION | 0.99+ |
Coca-Cola | ORGANIZATION | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
Sanjay Srivastava | PERSON | 0.99+ |
Silicon Valley | LOCATION | 0.99+ |
BMC Software | ORGANIZATION | 0.99+ |
U.S. | LOCATION | 0.99+ |
Siri | TITLE | 0.99+ |
BMC | ORGANIZATION | 0.99+ |
HP | ORGANIZATION | 0.99+ |
Motorola | ORGANIZATION | 0.99+ |
Jeff | PERSON | 0.99+ |
Samsung | ORGANIZATION | 0.99+ |
Mihir Shukla | PERSON | 0.99+ |
2023 | DATE | 0.99+ |
Nayaki Nayyar | PERSON | 0.99+ |
Apple | ORGANIZATION | 0.99+ |
Rachel Mushahwar Skaff | PERSON | 0.99+ |
6% | QUANTITY | 0.99+ |
ORGANIZATION | 0.99+ | |
Share A Coke | ORGANIZATION | 0.99+ |
Keynote Analysis with Sarbjeet Johal & Chris Lewis | MWC Barcelona 2023
(upbeat instrumental music) >> TheCUBE's live coverage is made possible by funding from Dell Technologies, creating technologies that drive human progress. (uplifting instrumental music) >> Hey everyone. Welcome to Barcelona, Spain. It's theCUBE Live at MWC '23. I'm Lisa Martin, Dave Vellante, our co-founder, our co-CEO of theCUBE, you know him, you love him. He's here as my co-host. Dave, we have a great couple of guests here to break down day one keynote. Lots of meat. I can't wait to be part of this conversation. Chris Lewis joins us, the founder and MD of Lewis Insight. And Sarbjeet Johal, one of you know him as well. He's a Cube contributor, cloud architect. Guys, welcome to the program. Thank you so much for joining Dave and me today. >> Lovely to be here. >> Thank you. >> Chris, I want to start with you. You have covered all aspects of global telecoms industries over 30 years working as an analyst. Talk about the evolution of the telecom industry that you've witnessed, and what were some of the things you heard in the keynote that excite you about the direction it's going? >> Well, as ever, MWC, there's no lack of glitz and glamour, but it's the underlying issues of the industry that are really at stake here. There's not a lot of new revenue coming into the telecom providers, but there's a lot of adjustment, readjustment of the underlying operational environment. And also, really importantly, what came out of the keynotes is the willingness and the necessity to really engage with the API community, with the developer community, people who traditionally, telecoms would never have even touched. So they're sorting out their own house, they're cleaning their own stables, getting the cost base down, but they're also now realizing they've got to engage with all the other parties. There's a lot of cloud providers here, there's a lot of other people from outside so they're realizing they cannot do it all themselves. It's quite a tough lesson for a very conservative, inward looking industry, right? So should we be spending all this money and all this glitz and glamour of MWC and all be here, or should would be out there really building for the future and making sure the services are right for yours and my needs in a business and personal lives? So a lot of new changes, a lot of realization of what's going on outside, but underlying it, we've just got to get this right this time. >> And it feels like that monetization is front and center. You mentioned developers, we've got to work with developers, but I'm hearing the latest keynote from the Ericsson CEOs, we're going to monetize through those APIs, we're going to charge the developers. I mean, first of all, Chris, am I getting that right? And Sarbjeet, as somebody who's close to the developer community, is that the right way to build bridges? But Chris, are we getting that right? >> Well, let's take the first steps first. So, Ericsson, of course, acquired Vonage, which is a massive API business so they want to make money. They expect to make money by bringing that into the mainstream telecom community. Now, whether it's the developers who pay for it, or let's face it, we are moving into a situation as the telco moves into a techco model where the techco means they're going to be selling bits of the technology to developer guys and to other application developers. So when he says he needs to charge other people for it, it's the way in which people reach in and will take going through those open APIs like the open gateway announced today, but also the way they'll reach in and take things like network slicing. So we're opening up the telecom community, the treasure chest, if you like, where developers' applications and other third parties can come in and take those chunks of technology and build them into their services. This is a complete change from the old telecom industry where everybody used to come and you say, "all right, this is my product, you've got to buy it and you're going to pay me a lot of money for it." So we are looking at a more flexible environment where the other parties can take those chunks. And we know we want collectivity built into our financial applications, into our government applications, everything, into the future of the metaverse, whatever it may be. But it requires that change in attitude of the telcos. And they do need more money 'cause they've said, the baseline of revenue is pretty static, there's not a lot of growth in there so they're looking for new revenues. It's in a B2B2X time model. And it's probably the middle man's going to pay for it rather than the customer. >> But the techco model, Sarbjeet, it looks like the telcos are getting their money on their way in. The techco company model's to get them on their way out like the app store. Go build something of value, build some kind of app or data product, and then when it takes off, we'll take a piece of the action. What are your thoughts from a developer perspective about how the telcos are approaching it? >> Yeah, I think before we came here, like I said, I did some tweets on this, that we talk about all kind of developers, like there's game developers and front end, back end, and they're all talking about like what they're building on top of cloud, but nowhere you will hear the term "telco developer," there's no API from telcos given to the developers to build IoT solutions on top of it because telco as an IoT, I think is a good sort of hand in hand there. And edge computing as well. The glimmer of hope, if you will, for telcos is the edge computing, I believe. And even in edge, I predicted, I said that many times that cloud players will dominate that market with the private 5G. You know that story, right? >> We're going to talk about that. (laughs) >> The key is this, that if you see in general where the population lives, in metros, right? That's where the world population is like flocking to and we have cloud providers covering the local zones with local like heavy duty presence from the big cloud providers and then these telcos are getting sidetracked by that. Even the V2X in cars moving the autonomous cars and all that, even in that space, telcos are getting sidetracked in many ways. What telcos have to do is to join the forces, build some standards, if not standards, some consortium sort of. They're trying to do that with the open gateway here, they have only eight APIs. And it's 2023, eight APIs is nothing, right? (laughs) So they should have started this 10 years back, I think. So, yeah, I think to entice the developers, developers need the employability, we need to train them, we need to show them some light that hey, you can build a lot on top of it. If you tell developers they can develop two things or five things, nobody will come. >> So, Chris, the cloud will dominate the edge. So A, do you buy it? B, the telcos obviously are acting like that might happen. >> Do you know I love people when they've got their heads in the clouds. (all laugh) And you're right in so many ways, but if you flip it around and think about how the customers think about this, business customers and consumers, they don't care about all this background shenanigans going on, do they? >> Lisa: No. >> So I think one of the problems we have is that this is a new territory and whether you call it the edge or whatever you call it, what we need there is we need connectivity, we need security, we need storage, we need compute, we need analytics, and we need applications. And are any of those more important than the others? It's the collective that actually drives the real value there. So we need all those things together. And of course, the people who represented at this show, whether it's the cloud guys, the telcos, the Nokia, the Ericssons of this world, they all own little bits of that. So that's why they're all talking partnerships because they need the combination, they cannot do it on their own. The cloud guys can't do it on their own. >> Well, the cloud guys own all of those things that you just talked about though. (all laugh) >> Well, they don't own the last bit of connectivity, do they? They don't own the access. >> Right, exactly. That's the one thing they don't own. So, okay, we're back to pipes, right? We're back to charging for connectivity- >> Pipes are very valuable things, right? >> Yeah, for sure. >> Never underestimate pipes. I don't know about where you live, plumbers make a lot of money where I live- >> I don't underestimate them but I'm saying can the telcos charge for more than that or are the cloud guys going to mop up the storage, the analytics, the compute, and the apps? >> They may mop it up, but I think what the telcos are doing and we've seen a lot of it here already, is they are working with all those major cloud guys already. So is it an unequal relationship? The cloud guys are global, massive global scale, the telcos are fundamentally national operators. >> Yep. >> Some have a little bit of regional, nobody has global scale. So who stitches it all together? >> Dave: Keep your friends close and your enemies closer. >> Absolutely. >> I know that saying never gets old. It's true. Well, Sarbjeet, one of the things that you tweeted about, I didn't get to see the keynote but I was looking at your tweets. 46% of telcos think they won't make it to the next decade. That's a big number. Did that surprise you? >> No, actually it didn't surprise me because the competition is like closing in on them and the telcos are competing with telcos as well and the telcos are competing with cloud providers on the other side, right? So the smaller ones are getting squeezed. It's the bigger players, they can hook up the newer platforms, I think they will survive. It's like that part is like any other industry, if you will. But the key is here, I think why the pain points were sort of described on the main stage is that they're crying out loud to tell the big tech cloud providers that "hey, you pay your fair share," like we talked, right? You are not paying, you're generating so much content which reverses our networks and you are not paying for it. So they are not able to recoup the cost of laying down their networks. By the way, one thing actually I want to mention is that they said the cloud needs earth. The cloud and earth, it's like there's no physical need to cloud, you know that, right? So like, I think it's the other way around. I think the earth needs the cloud because I'm a cloud guy. (Sarbjeet and Lisa laugh) >> I think you need each other, right? >> I think so too. >> They need each other. When they said cloud needs earth, right? I think they're still in denial that the cloud is a big force. They have to partner. When you can't compete with somebody, what do you do? Partner with them. >> Chris, this is your world. Are they in denial? >> No, I think they're waking up to the pragmatism of the situation. >> Yeah. >> They're building... As we said, most of the telcos, you find have relationships with the cloud guys, I think you're right about the industry. I mean, do you think what's happened since US was '96, the big telecom act when we started breaking up all the big telcos and we had lots of competition came in, we're seeing the signs that we might start to aggregate them back up together again. So it's been an interesting experiment for like 30 years, hasn't it too? >> It made the US less competitive, I would argue, but carry on. >> Yes, I think it's true. And Europe is maybe too competitive and therefore, it's not driven the investment needed. And by the way, it's not just mobile, it's fixed as well. You saw the Orange CEO was talking about the her investment and the massive fiber investments way ahead of many other countries, way ahead of the UK or Germany. We need that fiber in the ground to carry all your cloud traffic to do this. So there is a scale issue, there is a competition issue, but the telcos are very much aware of it. They need the cloud, by the way, to improve their operational environments as well, to change that whole old IT environment to deliver you and I better service. So no, it absolutely is changing. And they're getting scale, but they're fundamentally offering the basic product, you call it pipes, I'll just say they're offering broadband to you and I and the business community. But they're stepping on dangerous ground, I think, when saying they want to charge the over the top guys for all the traffic they use. Those over the top guys now build a lot of the global networks, the backbone submarine network. They're putting a lot of money into it, and by giving us endless data for our individual usage, that cat is out the bag, I think to a large extent. >> Yeah. And Orange CEO basically said that, that they're not paying their fair share. I'm for net neutrality but the governments are going to have to fund this unless you let us charge the OTT. >> Well, I mean, we could of course renationalize. Where would that take us? (Dave laughs) That would make MWC very interesting next year, wouldn't it? To renationalize it. So, no, I think you've got to be careful what we wish for here. Creating the absolute clear product that is required to underpin all of these activities, whether it's IoT or whether it's cloud delivery or whether it's just our own communication stuff, delivering that absolutely ubiquitously high quality for business and for consumer is what we have to do. And telcos have been too conservative in the past. >> I think they need to get together and create standards around... I think they have a big opportunity. We know that the clouds are being built in silos, right? So there's Azure stack, there's AWS and there's Google. And those are three main ones and a few others, right? So that we are fighting... On the cloud side, what we are fighting is the multicloud. How do we consume that multicloud without having standards? So if these people get together and create some standards around IoT and edge computing sort of area, people will flock to them to say, "we will use you guys, your API, we don't care behind the scenes if you use AWS or Google Cloud or Azure, we will come to you." So market, actually is looking for that solution. I think it's an opportunity for these guys, for telcos. But the problem with telcos is they're nationalized, as you said Chris versus the cloud guys are still kind of national in a way, but they're global corporations. And some of the telcos are global corporations as well, BT covers so many countries and TD covers so many... DT is in US as well, so they're all over the place. >> But you know what's interesting is that the TM forum, which is one of the industry associations, they've had an open digital architecture framework for quite some years now. Google had joined that some years ago, Azure in there, AWS just joined it a couple of weeks ago. So when people said this morning, why isn't AWS on the keynote? They don't like sharing the limelight, do they? But they're getting very much in bed with the telco. So I think you'll see the marriage. And in fact, there's a really interesting statement, if you look at the IoT you mentioned, Bosch and Nokia have been working together 'cause they said, the problem we've got, you've got a connectivity network on one hand, you've got the sensor network on the other hand, you're trying to merge them together, it's a nightmare. So we are finally seeing those sort of groups talking to each other. So I think the standards are coming, the cooperation is coming, partnerships are coming, but it means that the telco can't dominate the sector like it used to. It's got to play ball with everybody else. >> I think they have to work with the regulators as well to loosen the regulation. Or you said before we started this segment, you used Chris, the analogy of sports, right? In sports, when you're playing fiercely, you commit the fouls and then ask for ref to blow the whistle. You're now looking at the ref all the time. The telcos are looking at the ref all the time. >> Dave: Yeah, can I do this? Can I do that? Is this a fair move? >> They should be looking for the space in front of the opposition. >> Yeah, they should be just on attack mode and commit these fouls, if you will, and then ask for forgiveness then- >> What do you make of that AWS not you there- >> Well, Chris just made a great point that they don't like to share the limelight 'cause I thought it was very obvious that we had Google Cloud, we had Microsoft there on day one of this 80,000 person event. A lot of people back from COVID and they weren't there. But Chris, you brought up a great point that kind of made me think, maybe you're right. Maybe they're in the afternoon keynote, they want their own time- >> You think GSMA invited them? >> I imagine so. You'd have to ask GSMA. >> I would think so. >> Get Max on here and ask that. >> I'm going to ask them, I will. >> But no, and they don't like it because I think the misconception, by the way, is that everyone says, "oh, it's AWS, it's Google Cloud and it's Azure." They're not all the same business by any stretch of the imagination. AWS has been doing loads of great work, they've been launching private network stuff over the last couple of weeks. Really interesting. Google's been playing catch up. We know that they came in readily late to the market. And Azure, they've all got slightly different angles on it. So perhaps it just wasn't right for AWS and the way they wanted to pitch things so they don't have to be there, do they? >> That's a good point. >> But the industry needs them there, that's the number one cloud. >> Dave, they're there working with the industry. >> Yeah, of course. >> They don't have to be on the keynote stage. And in fact, you think about this show and you mentioned the 80,000 people, the activity going on around in all these massive areas they're in, it's fantastic. That's where the business is done. The business isn't done up on the keynote stage. >> That's why there's the glitz and the glamour, Chris. (all laugh) >> Yeah. It's not glitz, it's espresso. It's not glamour anymore, it's just espresso. >> We need the espresso. >> Yeah. >> I think another thing is that it's interesting how an average European sees the tech market and an average North American, especially you from US, you have to see the market. Here, people are more like process oriented and they want the rules of the road already established before they can take a step- >> Chris: That's because it's your pension in the North American- >> Exactly. So unions are there and the more employee rights and everything, you can't fire people easily here or in Germany or most of the Europe is like that with the exception of UK. >> Well, but it's like I said, that Silicone Valley gets their money on the way out, you know? And that's how they do it, that's how they think it. And they don't... They ask for forgiveness. I think the east coast is more close to Europe, but in the EU, highly regulated, really focused on lifetime employment, things like that. >> But Dave, the issue is the telecom industry is brilliant, right? We keep paying every month whatever we do with it. >> It's a great business, to your point- >> It's a brilliant business model. >> Dave: It's fantastic. >> So it's about then getting the structure right behind it. And you know, we've seen a lot of stratification where people are selling off towers, Orange haven't sold their towers off, they made a big point about that. Others are selling their towers off. Some people are selling off their underlying network, Telecom Italia talking about KKR buying the whole underlying network. It's like what do you want to be in control of? It's a great business. >> But that's why they complain so much is that they're having to sell their assets because of the onerous CapEx requirements, right? >> Yeah, they've had it good, right? And dare I say, perhaps they've not planned well enough for the future. >> They're trying to protect their past from the future. I mean, that's... >> Actually, look at the... Every "n" number of years, there's a new faster network. They have to dig the ground, they have to put the fiber, they have to put this. Now, there are so many booths showing 6G now, we are not even done with 5G yet, now the next 6G you know, like then- >> 10G's coming- >> 10G, that's a different market. (Dave laughs) >> Actually, they're bogged down by the innovation, I think. >> And the generational thing is really important because we're planning for 6G in all sorts of good ways but actually what we use in our daily lives, we've gone through the barrier, we've got enough to do that. So 4G gives us enough, the fiber in the ground or even old copper gives us enough. So the question is, what are we willing to pay for more than that basic connectivity? And the answer to your point, Dave, is not a lot, right? So therefore, that's why the emphasis is on the business market on that B2B and B2B2X. >> But we'll pay for Netflix all day long. >> All day long. (all laugh) >> The one thing Chris, I don't know, I want to know your viewpoints and we have talked in the past as well, there's absence of think tanks in tech, right? So we have think tanks on the foreign policy and economic policy in every country, and we have global think tanks, but tech is becoming a huge part of the economy, global economy as well as national economies, right? But we don't have think tanks on like policy around tech. For example, this 4G is good for a lot of use cases. Then 5G is good for smaller number of use cases. And then 6G will be like, fewer people need 6G for example. Why can't we have sort of those kind of entities dictating those kind of like, okay, is this a wiser way to go about it? >> Lina Khan wants to. She wants to break up big tech- >> You're too young to remember but the IT used to have a show every four years in Geneva, there were standards around there. So I think there are bodies. I think the balance of power obviously has gone from the telecom to the west coast to the IT markets. And it's changing the balance about, it moves more quickly, right? Telecoms has never moved quickly enough. I think there is hope by the way, that telecoms now that we are moving to more softwarized environment, and God forbid, we're moving into CICD in the telecom world, right? Which is a massive change, but I think there's hopes for it to change. The mentality is changing, the culture is changing, but to change those old structured organizations from the British telecom or the France telecom into the modern world, it's a hell of a long journey. It's not an overnight journey at all. >> Well, of course the theme of the event is velocity. >> Yeah, I know that. >> And it's been interesting sitting here with the three of you talking about from a historic perspective, how slow and molasseslike telecom has been. They don't have a choice anymore. As consumers, we have this expectation we're going to get anything we want on our mobile device, 24 by seven. We don't care about how the sausage is made, we just want the end result. So do you really think, and we're only on day one guys... And Chris we'll start with you. Is the theme really velocity? Is it disruption? Are they able to move faster? >> Actually, I think invisibility is the real answer. (Lisa laughs) We want communication to be invisible, right? >> Absolutely. >> We want it to work. When we switch our phones on, we want it to work and we want to... Well, they're not even phones anymore, are they really? I mean that's the... So no, velocity, we've got... There is momentum in the industry, there's no doubt about that. The cloud guys coming in, making telecoms think about the way they run their own business, where they meet, that collision point on the edges you talked about Sarbjeet. We do have velocity, we've got momentum. There's so many interested parties. The way I think of this is that the telecom industry used to be inward looking, just design its own technology and then expect everyone else to dance to our tune. We're now flipping that 180 degrees and we are now having to work with all the different outside forces shaping us. Whether it's devices, whether it's smart cities, governments, the hosting guys, the Equinoxis, all these things. So everyone wants a piece of this telecom world so we've got to make ourselves more open. That's why you get in a more open environment. >> But you did... I just want to bring back a point you made during COVID, which was when everybody switched to work from home, started using their landlines again, telcos had to respond and nothing broke. I mean, it was pretty amazing. >> Chris: It did a good job. >> It was kind of invisible. So, props to the telcos for making that happen. >> They did a great job. >> So it really did. Now, okay, what have you done for me lately? So now they've got to deal with the future and they're talking monetization. But to me, monetization is all about data and not necessarily just the network data. Yeah, they can sell that 'cause they own that but what kind of incremental value are they going to create for the consumers that... >> Yeah, actually that's a problem. I think the problem is that they have been strangled by the regulation for a long time and they cannot look at their data. It's a lot more similar to the FinTech world, right? I used to work at Visa. And then Visa, we did trillion dollars in transactions in '96. Like we moved so much money around, but we couldn't look at these things, right? So yeah, I think regulation is a problem that holds you back, it's the antithesis of velocity, it slows you down. >> But data means everything, doesn't it? I mean, it means everything and nothing. So I think the challenge here is what data do the telcos have that is useful, valuable to me, right? So in the home environment, the fact that my broadband provider says, oh, by the way, you've got 20 gadgets on that network and 20 on that one... That's great, tell me what's on there. I probably don't know what's taking all my valuable bandwidth up. So I think there's security wrapped around that, telling me the way I'm using it if I'm getting the best out of my service. >> You pay for that? >> No, I'm saying they don't do it yet. I think- >> But would you pay for that? >> I think I would, yeah. >> Would you pay a lot for that? I would expect it to be there as part of my dashboard for my monthly fee. They're already charging me enough. >> Well, that's fine, but you pay a lot more in North America than I do in Europe, right? >> Yeah, no, that's true. >> You're really overpaying over there, right? >> Way overpaying. >> So, actually everybody's looking at these devices, right? So this is a radio operated device basically, right? And then why couldn't they benefit from this? This is like we need to like double click on this like 10 times to find out why telcos failed to leverage this device, right? But I think the problem is their reliance on regulations and their being close to the national sort of governments and local bodies and authorities, right? And in some countries, these telcos are totally controlled in very authoritarian ways, right? It's not like open, like in the west, most of the west. Like the world is bigger than five, six countries and we know that, right? But we end up talking about the major economies most of the time. >> Dave: Always. >> Chris: We have a topic we want to hit on. >> We do have a topic. Our last topic, Chris, it's for you. You guys have done an amazing job for the last 25 minutes talking about the industry, where it's going, the evolution. But Chris, you're registered blind throughout your career. You're a leading user of assertive technologies. Talk about diversity, equity, inclusion, accessibility, some of the things you're doing there. >> Well, we should have had 25 minutes on that and five minutes on- (all laugh) >> Lisa: You'll have to come back. >> Really interesting. So I've been looking at it. You're quite right, I've been using accessible technology on my iPhone and on my laptop for 10, 20 years now. It's amazing. And what I'm trying to get across to the industry is to think about inclusive design from day one. When you're designing an app or you're designing a service, make sure you... And telecom's a great example. In fact, there's quite a lot of sign language around here this week. If you look at all the events written, good to see that coming in. Obviously, no use to me whatsoever, but good for the hearing impaired, which by the way is the biggest category of disability in the world. Biggest chunk is hearing impaired, then vision impaired, and then cognitive and then physical. And therefore, whenever you're designing any service, my call to arms to people is think about how that's going to be used and how a blind person might use it or how a deaf person or someone with physical issues or any cognitive issues might use it. And a great example, the GSMA and I have been talking about the app they use for getting into the venue here. I downloaded it. I got the app downloaded and I'm calling my guys going, where's my badge? And he said, "it's top left." And because I work with a screen reader, they hadn't tagged it properly so I couldn't actually open my badge on my own. Now, they changed it overnight so it worked this morning, which is fantastic work by Trevor and the team. But it's those things that if you don't build it in from scratch, you really frustrate a whole group of users. And if you think about it, people with disabilities are excluded from so many services if they can't see the screen or they can't hear it. But it's also the elderly community who don't find it easy to get access to things. Smart speakers have been a real blessing in that respect 'cause you can now talk to that thing and it starts talking back to you. And then there's the people who can't afford it so we need to come down market. This event is about launching these thousand dollars plus devices. Come on, we need below a hundred dollars devices to get to the real mass market and get the next billion people in and then to educate people how to use it. And I think to go back to your previous point, I think governments are starting to realize how important this is about building the community within the countries. You've got some massive projects like NEOM in Saudi Arabia. If you have a look at that, if you get a chance, a fantastic development in the desert where they're building a new city from scratch and they're building it so anyone and everyone can get access to it. So in the past, it was all done very much by individual disability. So I used to use some very expensive, clunky blind tech stuff. I'm now using mostly mainstream. But my call to answer to say is, make sure when you develop an app, it's accessible, anyone can use it, you can talk to it, you can get whatever access you need and it will make all of our lives better. So as we age and hearing starts to go and sight starts to go and dexterity starts to go, then those things become very useful for everybody. >> That's a great point and what a great champion they have in you. Chris, Sarbjeet, Dave, thank you so much for kicking things off, analyzing day one keynote, the ecosystem day, talking about what velocity actually means, where we really are. We're going to have to have you guys back 'cause as you know, we can keep going, but we are out of time. But thank you. >> Pleasure. >> We had a very spirited, lively conversation. >> Thanks, Dave. >> Thank you very much. >> For our guests and for Dave Vellante, I'm Lisa Martin, you're watching theCUBE live in Barcelona, Spain at MWC '23. We'll be back after a short break. See you soon. (uplifting instrumental music)
SUMMARY :
that drive human progress. the founder and MD of Lewis Insight. of the telecom industry and making sure the services are right is that the right way to build bridges? the treasure chest, if you like, But the techco model, Sarbjeet, is the edge computing, I believe. We're going to talk from the big cloud providers So, Chris, the cloud heads in the clouds. And of course, the people Well, the cloud guys They don't own the access. That's the one thing they don't own. I don't know about where you live, the telcos are fundamentally Some have a little bit of regional, Dave: Keep your friends Well, Sarbjeet, one of the and the telcos are competing that the cloud is a big force. Are they in denial? to the pragmatism of the situation. the big telecom act It made the US less We need that fiber in the ground but the governments are conservative in the past. We know that the clouds are but it means that the telco at the ref all the time. in front of the opposition. that we had Google Cloud, You'd have to ask GSMA. and the way they wanted to pitch things But the industry needs them there, Dave, they're there be on the keynote stage. glitz and the glamour, Chris. It's not glitz, it's espresso. sees the tech market and the more employee but in the EU, highly regulated, the issue is the telecom buying the whole underlying network. And dare I say, I mean, that's... now the next 6G you know, like then- 10G, that's a different market. down by the innovation, I think. And the answer to your point, (all laugh) on the foreign policy Lina Khan wants to. And it's changing the balance about, Well, of course the theme Is the theme really velocity? invisibility is the real answer. is that the telecom industry But you did... So, props to the telcos and not necessarily just the network data. it's the antithesis of So in the home environment, No, I'm saying they don't do it yet. Would you pay a lot for that? most of the time. topic we want to hit on. some of the things you're doing there. So in the past, We're going to have to have you guys back We had a very spirited, See you soon.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Nokia | ORGANIZATION | 0.99+ |
Chris | PERSON | 0.99+ |
Lisa Martin | PERSON | 0.99+ |
Chris Lewis | PERSON | 0.99+ |
Dave | PERSON | 0.99+ |
Europe | LOCATION | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Lina Khan | PERSON | 0.99+ |
Lisa | PERSON | 0.99+ |
Bosch | ORGANIZATION | 0.99+ |
Germany | LOCATION | 0.99+ |
Ericsson | ORGANIZATION | 0.99+ |
Telecom Italia | ORGANIZATION | 0.99+ |
Sarbjeet | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
KKR | ORGANIZATION | 0.99+ |
20 gadgets | QUANTITY | 0.99+ |
Geneva | LOCATION | 0.99+ |
25 minutes | QUANTITY | 0.99+ |
10 times | QUANTITY | 0.99+ |
Saudi Arabia | LOCATION | 0.99+ |
US | LOCATION | 0.99+ |
ORGANIZATION | 0.99+ | |
Sarbjeet Johal | PERSON | 0.99+ |
Trevor | PERSON | 0.99+ |
Orange | ORGANIZATION | 0.99+ |
180 degrees | QUANTITY | 0.99+ |
30 years | QUANTITY | 0.99+ |
five minutes | QUANTITY | 0.99+ |
iPhone | COMMERCIAL_ITEM | 0.99+ |
Ericssons | ORGANIZATION | 0.99+ |
North America | LOCATION | 0.99+ |
telco | ORGANIZATION | 0.99+ |
20 | QUANTITY | 0.99+ |
46% | QUANTITY | 0.99+ |
three | QUANTITY | 0.99+ |
Dell Technologies | ORGANIZATION | 0.99+ |
next year | DATE | 0.99+ |
Barcelona, Spain | LOCATION | 0.99+ |
'96 | DATE | 0.99+ |
GSMA | ORGANIZATION | 0.99+ |
telcos | ORGANIZATION | 0.99+ |
Visa | ORGANIZATION | 0.99+ |
trillion dollars | QUANTITY | 0.99+ |
thousand dollars | QUANTITY | 0.99+ |
Breaking Analysis: MWC 2023 highlights telco transformation & the future of business
>> From the Cube Studios in Palo Alto in Boston, bringing you data-driven insights from The Cube and ETR. This is "Breaking Analysis" with Dave Vellante. >> The world's leading telcos are trying to shed the stigma of being monopolies lacking innovation. Telcos have been great at operational efficiency and connectivity and living off of transmission, and the costs and expenses or revenue associated with that transmission. But in a world beyond telephone poles and basic wireless and mobile services, how will telcos modernize and become more agile and monetize new opportunities brought about by 5G and private wireless and a spate of new innovations and infrastructure, cloud data and apps? Hello, and welcome to this week's Wikibon CUBE Insights powered by ETR. In this breaking analysis and ahead of Mobile World Congress or now, MWC23, we explore the evolution of the telco business and how the industry is in many ways, mimicking transformations that took place decades ago in enterprise IT. We'll model some of the traditional enterprise vendors using ETR data and investigate how they're faring in the telecommunications sector, and we'll pose some of the key issues facing the industry this decade. First, let's take a look at what the GSMA has in store for MWC23. GSMA is the host of what used to be called Mobile World Congress. They've set the theme for this year's event as "Velocity" and they've rebranded MWC to reflect the fact that mobile technology is only one part of the story. MWC has become one of the world's premier events highlighting innovations not only in Telco, mobile and 5G, but the collision between cloud, infrastructure, apps, private networks, smart industries, machine intelligence, and AI, and more. MWC comprises an enormous ecosystem of service providers, technology companies, and firms from virtually every industry including sports and entertainment. And as well, GSMA, along with its venue partner at the Fira Barcelona, have placed a major emphasis on sustainability and public and private partnerships. Virtually every industry will be represented at the event because every industry is impacted by the trends and opportunities in this space. GSMA has said it expects 80,000 attendees at MWC this year, not quite back to 2019 levels, but trending in that direction. Of course, attendance from Chinese participants has historically been very high at the show, and obviously the continued travel issues from that region are affecting the overall attendance, but still very strong. And despite these concerns, Huawei, the giant Chinese technology company. has the largest physical presence of any exhibitor at the show. And finally, GSMA estimates that more than $300 million in economic benefit will result from the event which takes place at the end of February and early March. And The Cube will be back at MWC this year with a major presence thanks to our anchor sponsor, Dell Technologies and other supporters of our content program, including Enterprise Web, ArcaOS, VMware, Snowflake, Cisco, AWS, and others. And one of the areas we're interested in exploring is the evolution of the telco stack. It's a topic that's often talked about and one that we've observed taking place in the 1990s when the vertically integrated IBM mainframe monopoly gave way to a disintegrated and horizontal industry structure. And in many ways, the same thing is happening today in telecommunications, which is shown on the left-hand side of this diagram. Historically, telcos have relied on a hardened, integrated, and incredibly reliable, and secure set of hardware and software services that have been fully vetted and tested, and certified, and relied upon for decades. And at the top of that stack on the left are the crown jewels of the telco stack, the operational support systems and the business support systems. For the OSS, we're talking about things like network management, network operations, service delivery, quality of service, fulfillment assurance, and things like that. For the BSS systems, these refer to customer-facing elements of the stack, like revenue, order management, what products they sell, billing, and customer service. And what we're seeing is telcos have been really good at operational efficiency and making money off of transport and connectivity, but they've lacked the innovation in services and applications. They own the pipes and that works well, but others, be the over-the-top content companies, or private network providers and increasingly, cloud providers have been able to bypass the telcos, reach around them, if you will, and drive innovation. And so, the right-most diagram speaks to the need to disaggregate pieces of the stack. And while the similarities to the 1990s in enterprise IT are greater than the differences, there are things that are different. For example, the granularity of hardware infrastructure will not likely be as high where competition occurred back in the 90s at every layer of the value chain with very little infrastructure integration. That of course changed in the 2010s with converged infrastructure and hyper-converged and also software defined. So, that's one difference. And the advent of cloud, containers, microservices, and AI, none of that was really a major factor in the disintegration of legacy IT. And that probably means that disruptors can move even faster than did the likes of Intel and Microsoft, Oracle, Cisco, and the Seagates of the 1990s. As well, while many of the products and services will come from traditional enterprise IT names like Dell, HPE, Cisco, Red Hat, VMware, AWS, Microsoft, Google, et cetera, many of the names are going to be different and come from traditional network equipment providers. These are names like Ericsson and Huawei, and Nokia, and other names, like Wind River, and Rakuten, and Dish Networks. And there are enormous opportunities in data to help telecom companies and their competitors go beyond telemetry data into more advanced analytics and data monetization. There's also going to be an entirely new set of apps based on the workloads and use cases ranging from hospitals, sports arenas, race tracks, shipping ports, you name it. Virtually every vertical will participate in this transformation as the industry evolves its focus toward innovation, agility, and open ecosystems. Now remember, this is not a binary state. There are going to be greenfield companies disrupting the apple cart, but the incumbent telcos are going to have to continue to ensure newer systems work with their legacy infrastructure, in their OSS and BSS existing systems. And as we know, this is not going to be an overnight task. Integration is a difficult thing, transformations, migrations. So that's what makes this all so interesting because others can come in with Greenfield and potentially disrupt. There'll be interesting partnerships and ecosystems will form and coalitions will also form. Now, we mentioned that several traditional enterprise companies are or will be playing in this space. Now, ETR doesn't have a ton of data on specific telecom equipment and software providers, but it does have some interesting data that we cut for this breaking analysis. What we're showing here in this graphic is some of the names that we've followed over the years and how they're faring. Specifically, we did the cut within the telco sector. So the Y-axis here shows net score or spending velocity. And the horizontal axis, that shows the presence or pervasiveness in the data set. And that table insert in the upper left, that informs as to how the dots are plotted. You know, the two columns there, net score and the ends. And that red-dotted line, that horizontal line at 40%, that is an indicator of a highly elevated level. Anything above that, we consider quite outstanding. And what we'll do now is we'll comment on some of the cohorts and share with you how they're doing in telecommunications, and that sector, that vertical relative to their position overall in the data set. Let's start with the public cloud players. They're prominent in every industry. Telcos, telecommunications is no exception and it's quite an interesting cohort here. On the one hand, they can help telecommunication firms modernize and become more agile by eliminating the heavy lifting and you know, all the cloud, you know, value prop, data center costs, and the cloud benefits. At the same time, public cloud players are bringing their services to the edge, building out their own global networks and are a disruptive force to traditional telcos. All right, let's talk about Azure first. Their net score is basically identical to telco relative to its overall average. AWS's net score is higher in telco by just a few percentage points. Google Cloud platform is eight percentage points higher in telco with a 53% net score. So all three hyperscalers have an equal or stronger presence in telco than their average overall. Okay, let's look at the traditional enterprise hardware and software infrastructure cohort. Dell, Cisco, HPE, Red Hat, VMware, and Oracle. We've highlighted in this chart just as sort of indicators or proxies. Dell's net score's 10 percentage points higher in telco than its overall average. Interesting. Cisco's is a bit higher. HPE's is actually lower by about nine percentage points in the ETR survey, and VMware's is lower by about four percentage points. Now, Red Hat is really interesting. OpenStack, as we've previously reported is popular with telcos who want to build out their own private cloud. And the data shows that Red Hat OpenStack's net score is 15 percentage points higher in the telco sector than its overall average. OpenShift, on the other hand, has a net score that's four percentage points lower in telco than its overall average. So this to us talks to the pace of adoption of microservices and containers. You know, it's going to happen, but it's going to happen more slowly. Finally, Oracle's spending momentum is somewhat lower in the sector than its average, despite the firm having a decent telco business. IBM and Accenture, heavy services companies are both lower in this sector than their average. And real quickly, snowflake's net score is much lower by about 12 percentage points relative to its very high average net score of 62%. But we look for them to be a player in this space as telcos need to modernize their analytics stack and share data in a governed manner. Databricks' net score is also much lower than its average by about 13 points. And same, I would expect them to be a player as open architectures and cloud gains steam in telco. All right, let's close out now on what we're going to be talking about at MWC23 and some of the key issues that we'll be unpacking. We've talked about stack disaggregation in this breaking analysis, but the key here will be the pace at which it will reach the operational efficiency and reliability of closed stacks. Telcos, you know, in a large part, they're engineering heavy firms and much of their work takes place, kind of in the basement, in the dark. It's not really a big public hype machine, and they tend to move slowly and cautiously. While they understand the importance of agility, they're going to be careful because, you know, it's in their DNA. And so at the same time, if they don't move fast enough, they're going to get hurt and disrupted by competitors. So that's going to be a topic of conversation, and we'll be looking for proof points. And the other comment I'll make is around integration. Telcos because of their conservatism will benefit from better testing and those firms that can innovate on the testing front and have labs and certifications and innovate at that level, with an ecosystem are going to be in a better position. Because open sometimes means wild west. So the more players like Dell, HPE, Cisco, Red Hat, et cetera, that do that and align with their ecosystems and provide those resources, the faster adoption is going to go. So we'll be looking for, you know, who's actually doing that, Open RAN or Radio Access Networks. That fits in this discussion because O-RAN is an emerging network architecture. It essentially enables the use of open technologies from an ecosystem and over time, look at O-RAN is going to be open, but the questions, you know, a lot of questions remain as to when it will be able to deliver the operational efficiency of traditional RAN. Got some interesting dynamics going on. Rakuten is a company that's working hard on this problem, really focusing on operational efficiency. Then you got Dish Networks. They're also embracing O-RAN. They're coming at it more from service innovation. So that's something that we'll be monitoring and unpacking. We're going to look at cloud as a disruptor. On the one hand, cloud can help drive agility, as we said earlier and optionality, and innovation for incumbent telcos. But the flip side is going to also do the same for startups trying to disrupt and cloud attracts startups. While some of the telcos are actually embracing the cloud, many are being cautious. So that's going to be an interesting topic of discussion. And there's private wireless networks and 5G, and hyperlocal private networks, they're being deployed, you know, at the edge. This idea of open edge is also a really hot topic and this trend is going to accelerate. You know, the importance here is that the use cases are going to be widely varied. The needs of a hospital are going to be different than those of a sports venue are different from a remote drilling location, and energy or a concert venue. Things like real-time AI inference and data flows are going to bring new services and monetization opportunities. And many firms are going to be bypassing traditional telecommunications networks to build these out. Satellites as well, we're going to see, you know, in this decade, you're going to have, you're going to look down at Google Earth and you're going to see real-time. You know, today you see snapshots and so, lots of innovations going in that space. So how is this going to disrupt industries and traditional industry structures? Now, as always, we'll be looking at data angles, right? 'Cause it's in The Cube's DNA to follow the data and what opportunities and risks data brings. The Cube is going to be on location at MWC23 at the end of the month. We got a great set. We're in the walkway between halls four and five, right in Congress Square, it's booths CS60. So we'll have a full, they're called Stan CS60. We have a full schedule. I'm going to be there with Lisa Martin, Dave Nicholson and the entire Cube crew, so don't forget to stop by. All right, that's a wrap. I want to thank Alex Myerson, who's on production and manages the podcast, Ken Schiffman as well. 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 Silicon Angle, does some great stuff for us. Thank you all. Remember, all these episodes are available as podcasts. Wherever you listen, just search "Breaking Analysis" podcasts I publish each week on wikibon.com and silicon angle.com. And all the video content is available on demand at thecube.net. You can email me directly at david.vellante@silicon angle.com. You can DM me at dvellante or comment on my LinkedIn post. Please do check out etr.ai for 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 at Mobile World Congress, and/or at next time on "Breaking Analysis." (bright music) (bright music fades)
SUMMARY :
From the Cube Studios and some of the key issues
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Alex Myerson | PERSON | 0.99+ |
Lisa Martin | PERSON | 0.99+ |
Dave Nicholson | PERSON | 0.99+ |
IBM | ORGANIZATION | 0.99+ |
Cisco | ORGANIZATION | 0.99+ |
Ericsson | ORGANIZATION | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Dell | ORGANIZATION | 0.99+ |
Huawei | ORGANIZATION | 0.99+ |
Ken Schiffman | PERSON | 0.99+ |
Kristin Martin | PERSON | 0.99+ |
Cheryl Knight | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Nokia | ORGANIZATION | 0.99+ |
Rakuten | ORGANIZATION | 0.99+ |
Rob Hof | PERSON | 0.99+ |
Oracle | ORGANIZATION | 0.99+ |
Red Hat | ORGANIZATION | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
GSMA | ORGANIZATION | 0.99+ |
Accenture | ORGANIZATION | 0.99+ |
ORGANIZATION | 0.99+ | |
2019 | DATE | 0.99+ |
53% | QUANTITY | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
Wind River | ORGANIZATION | 0.99+ |
HPE | ORGANIZATION | 0.99+ |
Dell Technologies | ORGANIZATION | 0.99+ |
more than $300 million | QUANTITY | 0.99+ |
40% | QUANTITY | 0.99+ |
Telcos | ORGANIZATION | 0.99+ |
Congress Square | LOCATION | 0.99+ |
First | QUANTITY | 0.99+ |
VMware | ORGANIZATION | 0.99+ |
Telco | ORGANIZATION | 0.99+ |
Dish Networks | ORGANIZATION | 0.99+ |
telco | ORGANIZATION | 0.99+ |
2010s | DATE | 0.99+ |
Intel | ORGANIZATION | 0.99+ |
david.vellante@silicon angle.com | OTHER | 0.99+ |
MWC23 | EVENT | 0.99+ |
1990s | DATE | 0.99+ |
62% | QUANTITY | 0.99+ |
Mobile World Congress | EVENT | 0.99+ |
two columns | QUANTITY | 0.99+ |
each week | QUANTITY | 0.99+ |
Seagates | ORGANIZATION | 0.99+ |
Red Hat | ORGANIZATION | 0.99+ |
today | DATE | 0.99+ |
early March | DATE | 0.99+ |
both | QUANTITY | 0.99+ |
thecube.net | OTHER | 0.99+ |
MWC | EVENT | 0.99+ |
ETR | ORGANIZATION | 0.98+ |
this year | DATE | 0.98+ |
Cube Studios | ORGANIZATION | 0.98+ |
one part | QUANTITY | 0.98+ |
Chinese | OTHER | 0.98+ |
Boston | LOCATION | 0.98+ |
decades ago | DATE | 0.97+ |
three | QUANTITY | 0.97+ |
90s | DATE | 0.97+ |
about 13 points | QUANTITY | 0.97+ |
Humphreys & Ferron-Jones | Trusted security by design, Compute Engineered for your Hybrid World
(upbeat music) >> Welcome back, everyone, to our Cube special programming on "Securing Compute, Engineered for the Hybrid World." We got Cole Humphreys who's with HPE, global server security product manager, and Mike Ferron-Jones with Intel. He's the product manager for data security technology. Gentlemen, thank you for coming on this special presentation. >> All right, thanks for having us. >> So, securing compute, I mean, compute, everyone wants more compute. You can't have enough compute as far as we're concerned. You know, more bits are flying around the internet. Hardware's mattering more than ever. Performance markets hot right now for next-gen solutions. When you're talking about security, it's at the center of every single conversation. And Gen11 for the HPE has been big-time focus here. So let's get into the story. What's the market for Gen11, Cole, on the security piece? What's going on? How do you see this impacting the marketplace? >> Hey, you know, thanks. I think this is, again, just a moment in time where we're all working towards solving a problem that doesn't stop. You know, because we are looking at data protection. You know, in compute, you're looking out there, there's international impacts, there's federal impacts, there's state-level impacts, and even regulation to protect the data. So, you know, how do we do this stuff in an environment that keeps changing? >> And on the Intel side, you guys are a Tier 1 combination partner, Better Together. HPE has a deep bench on security, Intel, We know what your history is. You guys have a real root of trust with your code, down to the silicon level, continuing to be, and you're on the 4th Gen Xeon here. Mike, take us through the Intel's relationship with HPE. Super important. You guys have been working together for many, many years. Data security, chips, HPE, Gen11. Take us through the relationship. What's the update? >> Yeah, thanks and I mean, HPE and Intel have been partners in delivering technology and delivering security for decades. And when a customer invests in an HPE server, like at one of the new Gen11s, they're getting the benefit of the combined investment that these two great companies are putting into product security. On the Intel side, for example, we invest heavily in the way that we develop our products for security from the ground up, and also continue to support them once they're in the market. You know, launching a product isn't the end of our security investment. You know, our Intel Red Teams continue to hammer on Intel products looking for any kind of security vulnerability for a platform that's in the field. As well as we invest heavily in the external research community through our bug bounty programs to harness the entire creativity of the security community to find those vulnerabilities, because that allows us to patch them and make sure our customers are staying safe throughout that platform's deployed lifecycle. You know, in 2021, between Intel's internal red teams and our investments in external research, we found 93% of our own vulnerabilities. Only a small percentage were found by unaffiliated external entities. >> Cole, HPE has a great track record and long history serving customers around security, actually, with the solutions you guys had. With Gen11, it's more important than ever. Can you share your thoughts on the talent gap out there? People want to move faster, breaches are happening at a higher velocity. They need more protection now than ever before. Can you share your thoughts on why these breaches are happening, and what you guys are doing, and how you guys see this happening from a customer standpoint? What you guys fill in with Gen11 with solution? >> You bet, you know, because when you hear about the relentless pursuit of innovation from our partners, and we in our engineering organizations in India, and Taiwan, and the Americas all collaborating together years in advance, are about delivering solutions that help protect our customer's environments. But what you hear Mike talking about is it's also about keeping 'em safe. Because you look to the market, right? What you see in, at least from our data from 2021, we have that breaches are still happening, and lot of it has to do with the fact that there is just a lack of adequate security staff with the necessary skills to protect the customer's application and ultimately the workloads. And then that's how these breaches are happening. Because ultimately you need to see some sort of control and visibility of what's going on out there. And what we were talking about earlier is you see time. Time to seeing some incident happen, the blast radius can be tremendous in today's technical, advanced world. And so you have to identify it and then correct it quickly, and that's why this continued innovation and partnership is so important, to help work together to keep up. >> You guys have had a great track record with Intel-based platforms with HPE. Gen11's a really big part of the story. Where do you see that impacting customers? Can you explain the benefits of what's going on with Gen11? What's the key story? What's the most important thing we should be paying attention to here? >> I think there's probably three areas as we look into this generation. And again, this is a point in time, we will continue to evolve. But at this particular point it's about, you know, a fundamental approach to our security enablement, right? Partnering as a Tier 1 OEM with one of the best in the industry, right? We can deliver systems that help protect some of the most critical infrastructure on earth, right? I know of some things that are required to have a non-disclosure because it is some of the most important jobs that you would see out there. And working together with Intel to protect those specific compute workloads, that's a serious deal that protects not only state, and local, and federal interests, but, really, a global one. >> This is a really- >> And then there's another one- Oh sorry. >> No, go ahead. Finish your thought. >> And then there's another one that I would call our uncompromising focus. We work in the industry, we lead and partner with those in the, I would say, in the good side. And we want to focus on enablement through a specific capability set, let's call it our global operations, and that ability to protect our supply chain and deliver infrastructure that can be trusted and into an operating environment. You put all those together and you see very significant and meaningful solutions together. >> The operating benefits are significant. I just want to go back to something you just said before about the joint NDAs and kind of the relationship you kind of unpacked, that to me, you know, I heard you guys say from sand to server, I love that phrase, because, you know, silicone into the server. But this is a combination you guys have with HPE and Intel supply-chain security. I mean, it's not just like you're getting chips and sticking them into a machine. This is, like, there's an in-depth relationship on the supply chain that has a very intricate piece to it. Can you guys just double down on that and share that, how that works and why it's important? >> Sure, so why don't I go ahead and start on that one. So, you know, as you mentioned the, you know, the supply chain that ultimately results in an end user pulling, you know, a new Gen11 HPE server out of the box, you know, started, you know, way, way back in it. And we've been, you know, Intel, from our part are, you know, invest heavily in making sure that all of our entire supply chain to deliver all of the Intel components that are inside that HPE platform have been protected and monitored ever since, you know, their inception at one of any of our 14,000, you know, Intel vendors that we monitor as part of our supply-chain assurance program. I mean we, you know, Intel, you know, invests heavily in compliance with guidelines from places like NIST and ISO, as well as, you know, doing best practices under things like the Transported Asset Protection Alliance, TAPA. You know, we have been intensely invested in making sure that when a customer gets an Intel processor, or any other Intel silicone product, that it has not been tampered with or altered during its trip through the supply chain. HPE then is able to pick up that, those components that we deliver, and add onto that their own supply-chain assurance when it comes down to delivering, you know, the final product to the customer. >> Cole, do you want to- >> That's exactly right. Yeah, I feel like that integration point is a really good segue into why we're talking today, right? Because that then comes into a global operations network that is pulling together these servers and able to deploy 'em all over the world. And as part of the Gen11 launch, we have security services that allow 'em to be hardened from our factories to that next stage into that trusted partner ecosystem for system integration, or directly to customers, right? So that ability to have that chain of trust. And it's not only about attestation and knowing what, you know, came from whom, because, obviously, you want to trust and make sure you're get getting the parts from Intel to build your technical solutions. But it's also about some of the provisioning we're doing in our global operations where we're putting cryptographic identities and manifests of the server and its components and moving it through that supply chain. So you talked about this common challenge we have of assuring no tampering of that device through the supply chain, and that's why this partnering is so important. We deliver secure solutions, we move them, you're able to see and control that information to verify they've not been tampered with, and you move on to your next stage of this very complicated and necessary chain of trust to build, you know, what some people are calling zero-trust type ecosystems. >> Yeah, it's interesting. You know, a lot goes on under the covers. That's good though, right? You want to have greater security and platform integrity, if you can abstract the way the complexity, that's key. Now one of the things I like about this conversation is that you mentioned this idea of a hardware-root-of-trust set of technologies. Can you guys just quickly touch on that, because that's one of the major benefits we see from this combination of the partnership, is that it's not just one, each party doing something, it's the combination. But this notion of hardware-root-of-trust technologies, what is that? >> Yeah, well let me, why don't I go ahead and start on that, and then, you know, Cole can take it from there. Because we provide some of the foundational technologies that underlie a root of trust. Now the idea behind a root of trust, of course, is that you want your platform to, you know, from the moment that first electron hits it from the power supply, that it has a chain of trust that all of the software, firmware, BIOS is loading, to bring that platform up into an operational state is trusted. If you have a breach in one of those lower-level code bases, like in the BIOS or in the system firmware, that can be a huge problem. It can undermine every other software-based security protection that you may have implemented up the stack. So, you know, Intel and HPE work together to coordinate our trusted boot and root-of-trust technologies to make sure that when a customer, you know, boots that platform up, it boots up into a known good state so that it is ready for the customer's workload. So on the Intel side, we've got technologies like our trusted execution technology, or Intel Boot Guard, that then feed into the HPE iLO system to help, you know, create that chain of trust that's rooted in silicon to be able to deliver that known good state to the customer so it's ready for workloads. >> All right, Cole, I got to ask you, with Gen11 HPE platforms that has 4th Gen Intel Xeon, what are the customers really getting? >> So, you know, what a great setup. I'm smiling because it's, like, it has a good answer, because one, this, you know, to be clear, this isn't the first time we've worked on this root-of-trust problem. You know, we have a construct that we call the HPE Silicon Root of Trust. You know, there are, it's an industry standard construct, it's not a proprietary solution to HPE, but it does follow some differentiated steps that we like to say make a little difference in how it's best implemented. And where you see that is that tight, you know, Intel Trusted Execution exchange. The Intel Trusted Execution exchange is a very important step to assuring that route of trust in that HPE Silicon Root of Trust construct, right? So they're not different things, right? We just have an umbrella that we pull under our ProLiant, because there's ILO, our BIOS team, CPLDs, firmware, but I'll tell you this, Gen11, you know, while all that, keeping that moving forward would be good enough, we are not holding to that. We are moving forward. Our uncompromising focus, we want to drive more visibility into that Gen11 server, specifically into the PCIE lanes. And now you're going to be able to see, and measure, and make policies to have control and visibility of the PCI devices, like storage controllers, NICs, direct connect, NVME drives, et cetera. You know, if you follow the trends of where the industry would like to go, all the components in a server would be able to be seen and attested for full infrastructure integrity, right? So, but this is a meaningful step forward between not only the greatness we do together, but, I would say, a little uncompromising focus on this problem and doing a little bit more to make Gen11 Intel's server just a little better for the challenges of the future. >> Yeah, the Tier 1 partnership is really kind of highlighted there. Great, great point. I got to ask you, Mike, on the 4th Gen Xeon Scalable capabilities, what does it do for the customer with Gen11 now that they have these breaches? Does it eliminate stuff? What's in it for the customer? What are some of the new things coming out with the Xeon? You're at Gen4, Gen11 for HP, but you guys have new stuff. What does it do for the customer? Does it help eliminate breaches? Are there things that are inherent in the product that HP is jointly working with you on or you were contributing in to the relationship that we should know about? What's new? >> Yeah, well there's so much great new stuff in our new 4th Gen Xeon Scalable processor. This is the one that was codenamed Sapphire Rapids. I mean, you know, more cores, more performance, AI acceleration, crypto acceleration, it's all in there. But one of my favorite security features, and it is one that's called Intel Control-Flow Enforcement Technology, or Intel CET. And why I like CET is because I find the attack that it is designed to mitigate is just evil genius. This type of attack, which is called a return, a jump, or a call-oriented programming attack, is designed to not bring a whole bunch of new identifiable malware into the system, you know, which could be picked up by security software. What it is designed to do is to look for little bits of existing, little bits of existing code already on the server. So if you're running, say, a web server, it's looking for little bits of that web-server code that it can then execute in a particular order to achieve a malicious outcome, something like open a command prompt, or escalate its privileges. Now in order to get those little code bits to execute in an order, it has a control mechanism. And there are different, each of the different types of attacks uses a different control mechanism. But what CET does is it gets in there and it disrupts those control mechanisms, uses hardware to prevent those particular techniques from being able to dig in and take effect. So CET can, you know, disrupt it and make sure that software behaves safely and as the programmer intended, rather than picking off these little arbitrary bits in one of these return, or jump, or call-oriented programming attacks. Now it is a technology that is included in every single one of the new 4th Gen Xeon Scalable processors. And so it's going to be an inherent characteristic the customers can benefit from when they buy a new Gen11 HPE server. >> Cole, more goodness from Intel there impacting Gen11 on the HPE side. What's your reaction to that? >> I mean, I feel like this is exactly why you do business with the big Tier 1 partners, because you can put, you know, trust in from where it comes from, through the global operations, literally, having it hardened from the factory it's finished in, moving into your operating environment, and then now protecting against attacks in your web hosting services, right? I mean, this is great. I mean, you'll always have an attack on data, you know, as you're seeing in the data. But the more contained, the more information, and the more control and trust we can give to our customers, it's going to make their job a little easier in protecting whatever job they're trying to do. >> Yeah, and enterprise customers, as you know, they're always trying to keep up to date on the skills and battle the threats. Having that built in under the covers is a real good way to kind of help them free up their time, and also protect them is really killer. This is a big, big part of the Gen11 story here. Securing the data, securing compute, that's the topic here for this special cube conversation, engineering for a hybrid world. Cole, I'll give you the final word. What should people pay attention to, Gen11 from HPE, bottom line, what's the story? >> You know, it's, you know, it's not the first time, it's not the last time, but it's our fundamental security approach to just helping customers through their digital transformation defend in an uncompromising focus to help protect our infrastructure in these technical solutions. >> Cole Humphreys is the global server security product manager at HPE. He's got his finger on the pulse and keeping everyone secure in the platform integrity there. Mike Ferron-Jones is the Intel product manager for data security technology. Gentlemen, thank you for this great conversation, getting into the weeds a little bit with Gen11, which is great. Love the hardware route-of-trust technologies, Better Together. Congratulations on Gen11 and your 4th Gen Xeon Scalable. Thanks for coming on. >> All right, thanks, John. >> Thank you very much, guys, appreciate it. Okay, you're watching "theCube's" special presentation, "Securing Compute, Engineered for the Hybrid World." I'm John Furrier, your host. Thanks for watching. (upbeat music)
SUMMARY :
for the Hybrid World." And Gen11 for the HPE has So, you know, how do we do this stuff And on the Intel side, you guys in the way that we develop and how you guys see this happening and lot of it has to do with the fact that Gen11's a really big part of the story. that you would see out there. And then Finish your thought. and that ability to that to me, you know, I heard you guys say out of the box, you know, and manifests of the is that you mentioned this idea is that you want your is that tight, you know, that HP is jointly working with you on and as the programmer intended, impacting Gen11 on the HPE side. and the more control and trust and battle the threats. you know, it's not the first time, is the global server security for the Hybrid World."
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
India | LOCATION | 0.99+ |
John Furrier | PERSON | 0.99+ |
NIST | ORGANIZATION | 0.99+ |
ISO | ORGANIZATION | 0.99+ |
Mike | PERSON | 0.99+ |
Taiwan | LOCATION | 0.99+ |
John | PERSON | 0.99+ |
Cole | PERSON | 0.99+ |
Transported Asset Protection Alliance | ORGANIZATION | 0.99+ |
HP | ORGANIZATION | 0.99+ |
HPE | ORGANIZATION | 0.99+ |
93% | QUANTITY | 0.99+ |
2021 | DATE | 0.99+ |
Mike Ferron-Jones | PERSON | 0.99+ |
Intel | ORGANIZATION | 0.99+ |
Cole Humphreys | PERSON | 0.99+ |
TAPA | ORGANIZATION | 0.99+ |
Gen11 | ORGANIZATION | 0.99+ |
today | DATE | 0.98+ |
first time | QUANTITY | 0.98+ |
14,000 | QUANTITY | 0.98+ |
one | QUANTITY | 0.98+ |
Humphreys | PERSON | 0.98+ |
each party | QUANTITY | 0.98+ |
earth | LOCATION | 0.97+ |
Gen11 | COMMERCIAL_ITEM | 0.97+ |
Americas | LOCATION | 0.97+ |
Gen11s | COMMERCIAL_ITEM | 0.96+ |
Securing Compute, Engineered for the Hybrid World | TITLE | 0.96+ |
Xeon | COMMERCIAL_ITEM | 0.94+ |
4th Gen Xeon Scalable processor | COMMERCIAL_ITEM | 0.94+ |
each | QUANTITY | 0.93+ |
4th Gen Xeon | COMMERCIAL_ITEM | 0.92+ |
Ferron-Jones | PERSON | 0.91+ |
Sapphire Rapids | COMMERCIAL_ITEM | 0.91+ |
first electron | QUANTITY | 0.9+ |
two great companies | QUANTITY | 0.89+ |
decades | QUANTITY | 0.86+ |
three areas | QUANTITY | 0.85+ |
Gen11 | EVENT | 0.84+ |
ILO | ORGANIZATION | 0.83+ |
Control-Flow Enforcement Technology | OTHER | 0.82+ |
Breaking Analysis: Cloud players sound a cautious tone for 2023
>> From the Cube Studios in Palo Alto in Boston bringing you data-driven insights from the Cube and ETR. This is Breaking Analysis with Dave Vellante. >> The unraveling of market enthusiasm continued in Q4 of 2022 with the earnings reports from the US hyperscalers, the big three now all in. As we said earlier this year, even the cloud is an immune from the macro headwinds and the cracks in the armor that we saw from the data that we shared last summer, they're playing out into 2023. For the most part actuals are disappointing beyond expectations including our own. It turns out that our estimates for the big three hyperscaler's revenue missed by 1.2 billion or 2.7% lower than we had forecast from even our most recent November estimates. And we expect continued decelerating growth rates for the hyperscalers through the summer of 2023 and we don't think that's going to abate until comparisons get easier. Hello and welcome to this week's Wikibon Cube Insights powered by ETR. In this Breaking Analysis, we share our view of what's happening in cloud markets not just for the hyperscalers but other firms that have hitched a ride on the cloud. And we'll share new ETR data that shows why these trends are playing out tactics that customers are employing to deal with their cost challenges and how long the pain is likely to last. You know, riding the cloud wave, it's a two-edged sword. Let's look at the players that have gone all in on or are exposed to both the positive and negative trends of cloud. Look the cloud has been a huge tailwind for so many companies like Snowflake and Databricks, Workday, Salesforce, Mongo's move with Atlas, Red Hats Cloud strategy with OpenShift and so forth. And you know, the flip side is because cloud is elastic what comes up can also go down very easily. Here's an XY graphic from ETR that shows spending momentum or net score on the vertical axis and market presence in the dataset on the horizontal axis provision or called overlap. This is data from the January 2023 survey and that the red dotted lines show the positions of several companies that we've highlighted going back to January 2021. So let's unpack this for a bit starting with the big three hyperscalers. The first point is AWS and Azure continue to solidify their moat relative to Google Cloud platform. And we're going to get into this in a moment, but Azure and AWS revenues are five to six times that of GCP for IaaS. And at those deltas, Google should be gaining ground much faster than the big two. The second point on Google is notice the red line on GCP relative to its starting point. While it appears to be gaining ground on the horizontal axis, its net score is now below that of AWS and Azure in the survey. So despite its significantly smaller size it's just not keeping pace with the leaders in terms of market momentum. Now looking at AWS and Microsoft, what we see is basically AWS is holding serve. As we know both Google and Microsoft benefit from including SaaS in their cloud numbers. So the fact that AWS hasn't seen a huge downward momentum relative to a January 2021 position is one positive in the data. And both companies are well above that magic 40% line on the Y-axis, anything above 40% we consider to be highly elevated. But the fact remains that they're down as are most of the names on this chart. So let's take a closer look. I want to start with Snowflake and Databricks. Snowflake, as we reported from several quarters back came down to Earth, it was up in the 80% range in the Y-axis here. And it's still highly elevated in the 60% range and it continues to move to the right, which is positive but as we'll address in a moment it's customers can dial down consumption just as in any cloud. Now, Databricks is really interesting. It's not a public company, it never made it to IPO during the sort of tech bubble. So we don't have the same level of transparency that we do with other companies that did make it through. But look at how much more prominent it is on the X-axis relative to January 2021. And it's net score is basically held up over that period of time. So that's a real positive for Databricks. Next, look at Workday and Salesforce. They've held up relatively well, both inching to the right and generally holding their net scores. Same from Mongo, which is the brown dot above its name that says Elastic, it says a little gets a little crowded which Elastic's actually the blue dot above it. But generally, SaaS is harder to dial down, Workday, Salesforce, Oracles, SaaS and others. So it's harder to dial down because commitments have been made in advance, they're kind of locked in. Now, one of the discussions from last summer was as Mongo, less discretionary than analytics i.e. Snowflake. And it's an interesting debate but maybe Snowflake customers, you know, they're also generally committed to a dollar amount. So over time the spending is going to be there. But in the short term, yeah maybe Snowflake customers can dial down. Now that highlighted dotted red line, that bolded one is Datadog and you can see it's made major strides on the X-axis but its net score has decelerated quite dramatically. Openshift's momentum in the survey has dropped although IBM just announced that OpenShift has a a billion dollar ARR and I suspect what's happening there is IBM consulting is bundling OpenShift into its modernization projects. It's got a, that sort of captive base if you will. And as such it's probably not as top of mind to the respondents but I'll bet you the developers are certainly aware of it. Now the other really notable call out here is CloudFlare, We've reported on them earlier. Cloudflare's net score has held up really well since January of 2021. It really hasn't seen the downdraft of some of these others, but it's making major major moves to the right gaining market presence. We really like how CloudFlare is performing. And the last comment is on Oracle which as you can see, despite its much, much lower net score continues to gain ground in the market and thrive from a profitability standpoint. But the data pretty clearly shows that there's a downdraft in the market. Okay, so what's happening here? Let's dig deeper into this data. Here's a graphic from the most recent ETR drill down asking customers that said they were going to cut spending what technique they're using to do so. Now, as we've previously reported, consolidating redundant vendors is by far the most cited approach but there's two key points we want to make here. One is reducing excess cloud resources. As you can see in the bars is the second most cited technique and it's up from the previous polling period. The second we're not showing, you know directly but we've got some red call outs there. Reducing cloud costs jumps to 29% and 28% respectively in financial services and tech telco. And it's much closer to second. It's basically neck and neck with consolidating redundant vendors in those two industries. So they're being really aggressive about optimizing cloud cost. Okay, so as we said, cloud is great 'cause you can dial it up but it's just as easy to dial down. We've identified six factors that customers tell us are affecting their cloud consumption and there are probably more, if you got more we'd love to hear them but these are the ones that are fairly prominent that have hit our radar. First, rising mortgage rates mean banks are processing fewer loans means less cloud. The crypto crash means less trading activity and that means less cloud resources. Third lower ad spend has led companies to reduce not only you know, their ad buying but also their frequency of running their analytics and their calculations. And they're also often using less data, maybe compressing the timeframe of the corpus down to a shorter time period. Also very prominent is down to the bottom left, using lower cost compute instances. For example, Graviton from AWS or AMD chips and tiering storage to cheaper S3 or deep archived tiers. And finally, optimizing based on better pricing plans. So customers are moving from, you know, smaller companies in particular moving maybe from on demand or other larger companies that are experimenting using on demand or they're moving to spot pricing or reserved instances or optimized savings plans. That all lowers cost and that means less cloud resource consumption and less cloud revenue. Now in the days when everything was on prem CFOs, what would they do? They would freeze CapEx and IT Pros would have to try to do more with less and often that meant a lot of manual tasks. With the cloud it's much easier to move things around. It still takes some thinking and some effort but it's dramatically simpler to do so. So you can get those savings a lot faster. Now of course the other huge factor is you can cut or you can freeze. And this graphic shows data from a recent ETR survey with 159 respondents and you can see the meaningful uptick in hiring freezes, freezing new IT deployments and layoffs. And as we've been reporting, this has been trending up since earlier last year. And note the call out, this is especially prominent in retail sectors, all three of these techniques jump up in retail and that's a bit of a concern because oftentimes consumer spending helps the economy make a softer landing out of a pullback. But this is a potential canary in the coal mine. If retail firms are pulling back it's because consumers aren't spending as much. And so we're keeping a close eye on that. So let's boil this down to the market data and what this all means. So in this graphic we show our estimates for Q4 IaaS revenues compared to the "actual" IaaS revenues. And we say quote because AWS is the only one that reports, you know clean revenue and IaaS, Azure and GCP don't report actuals. Why would they? Because it would make them look even, you know smaller relative to AWS. Rather, they bury the figures in overall cloud which includes their, you know G-Suite for Google and all the Microsoft SaaS. And then they give us little tidbits about in Microsoft's case, Azure, they give growth rates. Google gives kind of relative growth of GCP. So, and we use survey data and you know, other data to try to really pinpoint and we've been covering this for, I don't know, five or six years ever since the cloud really became a thing. But looking at the data, we had AWS growing at 25% this quarter and it came in at 20%. So a significant decline relative to our expectations. AWS announced that it exited December, actually, sorry it's January data showed about a 15% mid-teens growth rate. So that's, you know, something we're watching. Azure was two points off our forecast coming in at 38% growth. It said it exited December in the 35% growth range and it said that it's expecting five points of deceleration off of that. So think 30% for Azure. GCP came in three points off our expectation coming in 35% and Alibaba has yet to report but we've shaved a bid off that forecast based on some survey data and you know what maybe 9% is even still not enough. Now for the year, the big four hyperscalers generated almost 160 billion of revenue, but that was 7 billion lower than what what we expected coming into 2022. For 2023, we're expecting 21% growth for a total of 193.3 billion. And while it's, you know, lower, you know, significantly lower than historical expectations it's still four to five times the overall spending forecast that we just shared with you in our predictions post of between 4 and 5% for the overall market. We think AWS is going to come in in around 93 billion this year with Azure closing in at over 71 billion. This is, again, we're talking IaaS here. Now, despite Amazon focusing investors on the fact that AWS's absolute dollar growth is still larger than its competitors. By our estimates Azure will come in at more than 75% of AWS's forecasted revenue. That's a significant milestone. AWS is operating margins by the way declined significantly this past quarter, dropping from 30% of revenue to 24%, 30% the year earlier to 24%. Now that's still extremely healthy and we've seen wild fluctuations like this before so I don't get too freaked out about that. But I'll say this, Microsoft has a marginal cost advantage relative to AWS because one, it has a captive cloud on which to run its massive software estate. So it can just throw software at its own cloud and two software marginal costs. Marginal economics despite AWS's awesomeness in high degrees of automation, software is just a better business. Now the upshot for AWS is the ecosystem. AWS is essentially in our view positioning very smartly as a platform for data partners like Snowflake and Databricks, security partners like CrowdStrike and Okta and Palo Alto and many others and SaaS companies. You know, Microsoft is more competitive even though AWS does have competitive products. Now of course Amazon's competitive to retail companies so that's another factor but generally speaking for tech players, Amazon is a really thriving ecosystem that is a secret weapon in our view. AWS happy to spin the meter with its partners even though it sells competitive products, you know, more so in our view than other cloud players. Microsoft, of course is, don't forget is hyping now, we're hearing a lot OpenAI and ChatGPT we reported last week in our predictions post. How OpenAI is shot up in terms of market sentiment in ETR's emerging technology company surveys and people are moving to Azure to get OpenAI and get ChatGPT that is a an interesting lever. Amazon in our view has to have a response. They have lots of AI and they're going to have to make some moves there. Meanwhile, Google is emphasizing itself as an AI first company. In fact, Google spent at least five minutes of continuous dialogue, nonstop on its AI chops during its latest earnings call. So that's an area that we're watching very closely as the buzz around large language models continues. All right, let's wrap up with some assumptions for 2023. We think SaaS players are going to continue to be sticky. They're going to be somewhat insulated from all these downdrafts because they're so tied in and customers, you know they make the commitment up front, you've got the lock in. Now having said that, we do expect some backlash over time on the onerous and generally customer unfriendly pricing models of most large SaaS companies. But that's going to play out over a longer period of time. Now for cloud generally and the hyperscalers specifically we do expect accelerating growth rates into Q3 but the amplitude of the demand swings from this rubber band economy, we expect to continue to compress and become more predictable throughout the year. Estimates are coming down, CEOs we think are going to be more cautious when the market snaps back more cautious about hiring and spending and as such a perhaps we expect a more orderly return to growth which we think will slightly accelerate in Q4 as comps get easier. Now of course the big risk to these scenarios is of course the economy, the FED, consumer spending, inflation, supply chain, energy prices, wars, geopolitics, China relations, you know, all the usual stuff. But as always with our partners at ETR and the Cube community, we're here for you. We have the data and we'll be the first to report when we see a change at the margin. Okay, that's a wrap for today. I want to thank Alex Morrison who's on production and manages the podcast, Ken Schiffman as well out of our Boston studio getting this up on LinkedIn Live. Thank you for that. Kristen Martin also 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. He does some great editing for us. Thank you all. Remember all these episodes are available as podcast. Wherever you listen, just search Breaking Analysis podcast. I publish each week on wikibon.com, at siliconangle.com where you can see all the data and you want to get in touch. Just all you can do is email me david.vellante@siliconangle.com or DM me @dvellante if you if you got something interesting, I'll respond. If you don't, it's either 'cause I'm swamped or it's just not tickling me. You can comment on our LinkedIn post as well. And please check out ETR.ai for 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 upbeat music)
SUMMARY :
From the Cube Studios and how long the pain is likely to last.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Alex Morrison | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Alibaba | ORGANIZATION | 0.99+ |
Cheryl Knight | PERSON | 0.99+ |
Kristen Martin | PERSON | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Ken Schiffman | PERSON | 0.99+ |
January 2021 | DATE | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
ORGANIZATION | 0.99+ | |
Rob Hof | PERSON | 0.99+ |
2.7% | QUANTITY | 0.99+ |
January | DATE | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
December | DATE | 0.99+ |
January of 2021 | DATE | 0.99+ |
five | QUANTITY | 0.99+ |
January 2023 | DATE | 0.99+ |
Snowflake | ORGANIZATION | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
1.2 billion | QUANTITY | 0.99+ |
20% | QUANTITY | 0.99+ |
IBM | ORGANIZATION | 0.99+ |
Databricks | ORGANIZATION | 0.99+ |
29% | QUANTITY | 0.99+ |
30% | QUANTITY | 0.99+ |
six factors | QUANTITY | 0.99+ |
second point | QUANTITY | 0.99+ |
24% | QUANTITY | 0.99+ |
2022 | DATE | 0.99+ |
david.vellante@siliconangle.com | OTHER | 0.99+ |
X-axis | ORGANIZATION | 0.99+ |
2023 | DATE | 0.99+ |
28% | QUANTITY | 0.99+ |
193.3 billion | QUANTITY | 0.99+ |
ETR | ORGANIZATION | 0.99+ |
38% | QUANTITY | 0.99+ |
7 billion | QUANTITY | 0.99+ |
21% | QUANTITY | 0.99+ |
Earth | LOCATION | 0.99+ |
25% | QUANTITY | 0.99+ |
Mongo | ORGANIZATION | 0.99+ |
Oracle | ORGANIZATION | 0.99+ |
Atlas | ORGANIZATION | 0.99+ |
two industries | QUANTITY | 0.99+ |
last week | DATE | 0.99+ |
six years | QUANTITY | 0.99+ |
first point | QUANTITY | 0.99+ |
Red Hats | ORGANIZATION | 0.99+ |
35% | QUANTITY | 0.99+ |
four | QUANTITY | 0.99+ |
159 respondents | QUANTITY | 0.99+ |
Okta | ORGANIZATION | 0.99+ |
Veronika Durgin, Saks | The Future of Cloud & Data
(upbeat music) >> Welcome back to Supercloud 2, an open collaborative where we explore the future of cloud and data. Now, you might recall last August at the inaugural Supercloud event we validated the technical feasibility and tried to further define the essential technical characteristics, and of course the deployment models of so-called supercloud. That is, sets of services that leverage the underlying primitives of hyperscale clouds, but are creating new value on top of those clouds for organizations at scale. So we're talking about capabilities that fundamentally weren't practical or even possible prior to the ascendancy of the public clouds. And so today at Supercloud 2, we're digging further into the topic with input from real-world practitioners. And we're exploring the intersection of data and cloud, And importantly, the realities and challenges of deploying technology for a new business capability. I'm pleased to have with me in our studios, west of Boston, Veronika Durgin, who's the head of data at Saks. Veronika, welcome. Great to see you. Thanks for coming on. >> Thank you so much. Thank you for having me. So excited to be here. >> And so we have to say upfront, you're here, these are your opinions. You're not representing Saks in any way. So we appreciate you sharing your depth of knowledge with us. >> Thank you, Dave. Yeah, I've been doing data for a while. I try not to say how long anymore. It's been a while. But yeah, thank you for having me. >> Yeah, you're welcome. I mean, one of the highlights of this past year for me was hanging out at the airport with you after the Snowflake Summit. And we were just chatting about sort of data mesh, and you were saying, "Yeah, but." There was a yeah, but. You were saying there's some practical realities of actually implementing these things. So I want to get into some of that. And I guess starting from a perspective of how data has changed, you've seen a lot of the waves. I mean, even if we go back to pre-Hadoop, you know, that would shove everything into an Oracle database, or, you know, Hadoop was going to save our data lives. And the cloud came along and, you know, that was kind of a disruptive force. And, you know, now we see things like, whether it's Snowflake or Databricks or these other platforms on top of the clouds. How have you observed the change in data and the evolution over time? >> Yeah, so I started as a DBA in the data center, kind of like, you know, growing up trying to manage whatever, you know, physical limitations a server could give us. So we had to be very careful of what we put in our database because we were limited. We, you know, purchased that piece of hardware, and we had to use it for the next, I don't know, three to five years. So it was only, you know, we focused on only the most important critical things. We couldn't keep too much data. We had to be super efficient. We couldn't add additional functionality. And then Hadoop came along, which is like, great, we can dump all the data there, but then we couldn't get data out of it. So it was like, okay, great. Doesn't help either. And then the cloud came along, which was incredible. I was probably the most excited person. I'm lying, but I was super excited because I no longer had to worry about what I can actually put in my database. Now I have that, you know, scalability and flexibility with the cloud. So okay, great, that data's there, and I can also easily get it out of it, which is really incredible. >> Well, but so, I'm inferring from what you're saying with Hadoop, it was like, okay, no schema on write. And then you got to try to make sense out of it. But so what changed with the cloud? What was different? >> So I'll tell a funny story. I actually successfully avoided Hadoop. The only time- >> Congratulations. >> (laughs) I know, I'm like super proud of it. I don't know how that happened, but the only time I worked for a company that had Hadoop, all I remember is that they were running jobs that were taking over 24 hours to get data out of it. And they were realizing that, you know, dumping data without any structure into this massive thing that required, you know, really skilled engineers wasn't really helpful. So what changed, and I'm kind of thinking of like, kind of like how Snowflake started, right? They were marketing themselves as a data warehouse. For me, moving from SQL Server to Snowflake was a non-event. It was comfortable, I knew what it was, I knew how to get data out of it. And I think that's the important part, right? Cloud, this like, kind of like, vague, high-level thing, magical, but the reality is cloud is the same as what we had on prem. So it's comfortable there. It's not scary. You don't need super new additional skills to use it. >> But you're saying what's different is the scale. So you can throw resources at it. You don't have to worry about depreciating your hardware over three to five years. Hey, I have an asset that I have to take advantage of. Is that the big difference? >> Absolutely. Actually, from kind of like operational perspective, which it's funny. Like, I don't have to worry about it. I use what I need when I need it. And not to take this completely in the opposite direction, people stop thinking about using things in a very smart way, right? You like, scale and you walk away. And then, you know, the cool thing about cloud is it's scalable, but you also should not use it when you don't need it. >> So what about this idea of multicloud. You know, supercloud sort of tries to go beyond multicloud. it's like multicloud by accident. And now, you know, whether it's M&A or, you know, some Skunkworks is do, hey, I like Google's tools, so I'm going to use Google. And then people like you are called on to, hey, how do we clean up this mess? And you know, you and I, at the airport, we were talking about data mesh. And I love the concept. Like, doesn't matter if it's a data lake or a data warehouse or a data hub or an S3 bucket. It's just a node on the mesh. But then, of course, you've got to govern it. You've got to give people self-serve. But this multicloud is a reality. So from your perspective, from a practitioner's perspective, what are the advantages of multicloud? We talk about the disadvantages all the time. Kind of get that, but what are the advantages? >> So I think the first thing when I think multicloud, I actually think high-availability disaster recovery. And maybe it's just how I grew up in the data center, right? We were always worried that if something happened in one area, we want to make sure that we can bring business up very quickly. So to me that's kind of like where multicloud comes to mind because, you know, you put your data, your applications, let's pick on AWS for a second and, you know, US East in AWS, which is the busiest kind of like area that they have. If it goes down, for my business to continue, I would probably want to move it to, say, Azure, hypothetically speaking, again, or Google, whatever that is. So to me, and probably again based on my background, disaster recovery high availability comes to mind as multicloud first, but now the other part of it is that there are, you know, companies and tools and applications that are being built in, you know, pick your cloud. How do we talk to each other? And more importantly, how do we data share? You know, I work with data. You know, this is what I do. So if, you know, I want to get data from a company that's using, say, Google, how do we share it in a smooth way where it doesn't have to be this crazy, I don't know, SFTP file moving. So that's where I think supercloud comes to me in my mind, is like practical applications. How do we create that mesh, that network that we can easily share data with each other? >> So you kind of answered my next question, is do you see use cases going beyond H? I mean, the HADR was, remember, that was the original cloud use case. That and bursting, you know, for, you know, Thanksgiving or, you know, for Black Friday. So you see an opportunity to go beyond that with practical use cases. >> Absolutely. I think, you know, we're getting to a world where every company is a data company. We all collect a lot of data. We want to use it for whatever that is. It doesn't necessarily mean sell it, but use it to our competitive advantage. So how do we do it in a very smooth, easy way, which opens additional opportunities for companies? >> You mentioned data sharing. And that's obviously, you know, I met you at Snowflake Summit. That's a big thing of Snowflake's. And of course, you've got Databricks trying to do similar things with open technology. What do you see as the trade-offs there? Because Snowflake, you got to come into their party, you're in their world, and you're kind of locked into that world. Now they're trying to open up. You know, and of course, Databricks, they don't know our world is wide open. Well, we know what that means, you know. The governance. And so now you're seeing, you saw Amazon come out with data clean rooms, which was, you know, that was a good idea that Snowflake had several years before. It's good. It's good validation. So how do you think about the trade-offs between kind of openness and freedom versus control? Is the latter just far more important? >> I'll tell you it depends, right? It's kind of like- >> Could be insulting to that. >> Yeah, I know. It depends because I don't know the answer. It depends, I think, because on the use case and application, ultimately every company wants to make money. That's the beauty of our like, capitalistic economy, right? We're driven 'cause we want to make money. But from the use, you know, how do I sell a product to somebody who's in Google if I am in AWS, right? It's like, we're limiting ourselves if we just do one cloud. But again, it's difficult because at the same time, every cloud provider wants for you to be locked in their cloud, which is why probably, you know, whoever has now data sharing because they want you to stay within their ecosystem. But then again, like, companies are limited. You know, there are applications that are starting to be built on top of clouds. How do we ensure that, you know, I can use that application regardless what cloud, you know, my company is using or I just happen to like. >> You know, and it's true they want you to stay in their ecosystem 'cause they'll make more money. But as well, you think about Apple, right? Does Apple do it 'cause they can make more money? Yes, but it's also they have more control, right? Am I correct that technically it's going to be easier to govern that data if it's all the sort of same standard, right? >> Absolutely. 100%. I didn't answer that question. You have to govern and you have to control. And honestly, it's like it's not like a nice-to-have anymore. There are compliances. There are legal compliances around data. Everybody at some point wants to ensure that, you know, and as a person, quite honestly, you know, not to be, you know, I don't like when my data's used when I don't know how. Like, it's a little creepy, right? So we have to come up with standards around that. But then I also go back in the day. EDI, right? Electronic data interchange. That was figured out. There was standards. Companies were sending data to each other. It was pretty standard. So I don't know. Like, we'll get there. >> Yeah, so I was going to ask you, do you see a day where open standards actually emerge to enable that? And then isn't that the great disruptor to sort of kind of the proprietary stack? >> I think so. I think for us to smoothly exchange data across, you know, various systems, various applications, we'll have to agree to have standards. >> From a developer perspective, you know, back to the sort of supercloud concept, one of the the components of the essential characteristics is you've got this PaaS layer that provides consistency across clouds, and it has unique attributes specific to the purpose of that supercloud. So in the instance of Snowflake, it's data sharing. In the case of, you know, VMware, it might be, you know, infrastructure or self-serve infrastructure that's consistent. From a developer perspective, what do you hear from developers in terms of what they want? Are we close to getting that across clouds? >> I think developers always want freedom and ability to engineer. And oftentimes it's not, (laughs) you know, just as an engineer, I always want to build something, and it's not always for the, to use a specific, you know, it's something I want to do versus what is actually applicable. I think we'll land there, but not because we are, you know, out of the kindness of our own hearts. I think as a necessity we will have to agree to standards, and that that'll like, move the needle. Yeah. >> What are the limitations that you see of cloud and this notion of, you know, even cross cloud, right? I mean, this one cloud can't do it all. You know, but what do you see as the limitations of clouds? >> I mean, it's funny, I always think, you know, again, kind of probably my background, I grew up in the data center. We were physically limited by space, right? That there's like, you can only put, you know, so many servers in the rack and, you know, so many racks in the data center, and then you run out space. Earth has a limited space, right? And we have so many data centers, and everybody's collecting a lot of data that we actually want to use. We're not just collecting for the sake of collecting it anymore. We truly can't take advantage of it because servers have enough power, right, to crank through it. We will run enough space. So how do we balance that? How do we balance that data across all the various data centers? And I know I'm like, kind of maybe talking crazy, but until we figure out how to build a data center on the Moon, right, like, we will have to figure out how to take advantage of all the compute capacity that we have across the world. >> And where does latency fit in? I mean, is it as much of a problem as people sort of think it is? Maybe it depends too. It depends on the use case. But do multiple clouds help solve that problem? Because, you know, even AWS, $80 billion company, they're huge, but they're not everywhere. You know, they're doing local zones, they're doing outposts, which is, you know, less functional than their full cloud. So maybe I would choose to go to another cloud. And if I could have that common experience, that's an advantage, isn't it? >> 100%, absolutely. And potentially there's some maybe pricing tiers, right? So we're talking about latency. And again, it depends on your situation. You know, if you have some sort of medical equipment that is very latency sensitive, you want to make sure that data lives there. But versus, you know, I browse on a website. If the website takes a second versus two seconds to load, do I care? Not exactly. Like, I don't notice that. So we can reshuffle that in a smart way. And I keep thinking of ways. If we have ways for data where it kind of like, oh, you are stuck in traffic, go this way. You know, reshuffle you through that data center. You know, maybe your data will live there. So I think it's totally possible. I know, it's a little crazy. >> No, I like it, though. But remember when you first found ways, you're like, "Oh, this is awesome." And then now it's like- >> And it's like crowdsourcing, right? Like, it's smart. Like, okay, maybe, you know, going to pick on US East for Amazon for a little bit, their oldest, but also busiest data center that, you know, periodically goes down. >> But then you lose your competitive advantage 'cause now it's like traffic socialism. >> Yeah, I know. >> Right? It happened the other day where everybody's going this way up. There's all the Wazers taking. >> And also again, compliance, right? Every country is going down the path of where, you know, data needs to reside within that country. So it's not as like, socialist or democratic as we wish for it to be. >> Well, that's a great point. I mean, when you just think about the clouds, the limitation, now you go out to the edge. I mean, everybody talks about the edge in IoT. Do you actually think that there's like a whole new stove pipe that's going to get created. And does that concern you, or do you think it actually is going to be, you know, connective tissue with all these clouds? >> I honestly don't know. I live in a practical world of like, how does it help me right now? How does it, you know, help me in the next five years? And mind you, in five years, things can change a lot. Because if you think back five years ago, things weren't as they are right now. I mean, I really hope that somebody out there challenges things 'cause, you know, the whole cloud promise was crazy. It was insane. Like, who came up with it? Why would I do that, right? And now I can't imagine the world without it. >> Yeah, I mean a lot of it is same wine, new bottle. You know, but a lot of it is different, right? I mean, technology keeps moving us forward, doesn't it? >> Absolutely. >> Veronika, it was great to have you. Thank you so much for your perspectives. If there was one thing that the industry could do for your data life that would make your world better, what would it be? >> I think standards for like data sharing, data marketplace. I would love, love, love nothing else to have some agreed upon standards. >> I had one other question for you, actually. I forgot to ask you this. 'Cause you were saying every company's a data company. Every company's a software company. We're already seeing it, but how prevalent do you think it will be that companies, you've seen some of it in financial services, but companies begin to now take their own data, their own tooling, their own software, which they've developed internally, and point that to the outside world? Kind of do what AWS did. You know, working backwards from the customer and saying, "Hey, we did this for ourselves. We can now do this for the rest of the world." Do you see that as a real trend, or is that Dave's pie in the sky? >> I think it's a real trend. Every company's trying to reinvent themselves and come up with new products. And every company is a data company. Every company collects data, and they're trying to figure out what to do with it. And again, it's not necessarily to sell it. Like, you don't have to sell data to monetize it. You can use it with your partners. You can exchange data. You know, you can create products. Capital One I think created a product for Snowflake pricing. I don't recall, but it just, you know, they built it for themselves, and they decided to kind of like, monetize on it. And I'm absolutely 100% on board with that. I think it's an amazing idea. >> Yeah, Goldman is another example. Nasdaq is basically taking their exchange stack and selling it around the world. And the cloud is available to do that. You don't have to build your own data center. >> Absolutely. Or for good, right? Like, we're talking about, again, we live in a capitalist country, but use data for good. We're collecting data. We're, you know, analyzing it, we're aggregating it. How can we use it for greater good for the planet? >> Veronika, thanks so much for coming to our Marlborough studios. Always a pleasure talking to you. >> Thank you so much for having me. >> You're really welcome. All right, stay tuned for more great content. From Supercloud 2, this is Dave Vellante. We'll be right back. (upbeat music)
SUMMARY :
and of course the deployment models Thank you so much. So we appreciate you sharing your depth But yeah, thank you for having me. And the cloud came along and, you know, So it was only, you know, And then you got to try I actually successfully avoided Hadoop. you know, dumping data So you can throw resources at it. And then, you know, the And you know, you and I, at the airport, to mind because, you know, That and bursting, you know, I think, you know, And that's obviously, you know, But from the use, you know, You know, and it's true they want you to ensure that, you know, you know, various systems, In the case of, you know, VMware, but not because we are, you know, and this notion of, you know, can only put, you know, which is, you know, less But versus, you know, But remember when you first found ways, Like, okay, maybe, you know, But then you lose your It happened the other day the path of where, you know, is going to be, you know, How does it, you know, help You know, but a lot of Thank you so much for your perspectives. to have some agreed upon standards. I forgot to ask you this. I don't recall, but it just, you know, And the cloud is available to do that. We're, you know, analyzing Always a pleasure talking to you. From Supercloud 2, this is Dave Vellante.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Dave | PERSON | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Veronika | PERSON | 0.99+ |
Veronika Durgin | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Apple | ORGANIZATION | 0.99+ |
ORGANIZATION | 0.99+ | |
100% | QUANTITY | 0.99+ |
two seconds | QUANTITY | 0.99+ |
Saks | ORGANIZATION | 0.99+ |
$80 billion | QUANTITY | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
three | QUANTITY | 0.99+ |
Snowflake | ORGANIZATION | 0.99+ |
last August | DATE | 0.99+ |
Capital One | ORGANIZATION | 0.99+ |
Oracle | ORGANIZATION | 0.99+ |
M&A | ORGANIZATION | 0.99+ |
Skunkworks | ORGANIZATION | 0.99+ |
five years | QUANTITY | 0.99+ |
Nasdaq | ORGANIZATION | 0.98+ |
Supercloud 2 | EVENT | 0.98+ |
Earth | LOCATION | 0.98+ |
Databricks | ORGANIZATION | 0.98+ |
Supercloud | EVENT | 0.98+ |
today | DATE | 0.98+ |
Snowflake Summit | EVENT | 0.98+ |
US East | LOCATION | 0.98+ |
five years ago | DATE | 0.97+ |
SQL Server | TITLE | 0.97+ |
first thing | QUANTITY | 0.96+ |
Boston | LOCATION | 0.95+ |
Black Friday | EVENT | 0.95+ |
Hadoop | TITLE | 0.95+ |
over 24 hours | QUANTITY | 0.95+ |
one | QUANTITY | 0.94+ |
first | QUANTITY | 0.94+ |
supercloud | ORGANIZATION | 0.94+ |
one thing | QUANTITY | 0.93+ |
Moon | LOCATION | 0.93+ |
Thanksgiving | EVENT | 0.93+ |
over three | QUANTITY | 0.92+ |
one other question | QUANTITY | 0.91+ |
one cloud | QUANTITY | 0.9+ |
one area | QUANTITY | 0.9+ |
Snowflake | TITLE | 0.89+ |
multicloud | ORGANIZATION | 0.86+ |
Azure | ORGANIZATION | 0.85+ |
Supercloud 2 | ORGANIZATION | 0.83+ |
> 100% | QUANTITY | 0.82+ |
Goldman | ORGANIZATION | 0.81+ |
Snowflake | EVENT | 0.8+ |
a second | QUANTITY | 0.73+ |
several years before | DATE | 0.72+ |
this past year | DATE | 0.71+ |
second | QUANTITY | 0.7+ |
Marlborough | LOCATION | 0.7+ |
supercloud | TITLE | 0.66+ |
next five years | DATE | 0.65+ |
multicloud | TITLE | 0.59+ |
PaaS | TITLE | 0.55+ |
Keith Townsend, The CTO Advisor | AWS re:Invent 2022
(upbeat music) >> Hello, beautiful cloud community, and welcome back to AWS reInvent. It is day four here in fabulous Las Vegas, Nevada. My voice can feel it, clearly. I'm Savannah Peterson with my co-host Paul Gillin. Paul, how you doing? >> Doing fine, Savannah. >> Are your feet about where my voice is? >> Well, getting little rest here as we have back to back segments. >> Yeah, yeah, we'll keep you off those. Very excited about this next segment. We get to have a chat with one of our very favorite analysts, Keith Townsend. Welcome back to theCUBE. >> Savannah Page. I'm going to use your south names, Savannah Page. Thank you for having me, Paul. Good to see you again. It's been been too long since CubeCon Valencia. >> Valencia. >> Valencia. >> Well at that beautiful lisp, love that. Keith, how's the show been for you so far? >> It has been great. I tweeted it a couple of days ago. Amazon reInvent is back. >> Savannah: Whoo! Love that. >> 50, 60 thousand people, you know? After 40 thousand, I stop countin'. It has been an amazing show. I don't know if it's just the assignment of returning, but easily the best reInvent of the four that I've attended. >> Savannah: Love that. >> Paul: I love that we have you here because, you know, we tend to get anchored to these desks, and we don't really get a sense of what's going on out there. You've been spending the last four days traversing the floor and talking to people. What are you hearing? Are there any mega themes that are emerging? >> Keith: So, a couple of mega themes is... We were in the Allen session with Adam, and Adam bought up the idea of hybrid cloud. At the 2019 show, that would be unheard of. There's only one cloud, and that's the AWS cloud, when you're at the Amazon show. Booths, folks, I was at the VMware booth and there's a hybrid cloud sign session. People are talking about multicloud. Yes, we're at the AWS show, but the reality that most customers' environments are complex. Adam mentioned that it's hybrid today and more than likely to be hybrid in the future in Amazon, and the ecosystem has adjusted to that reality. >> Paul: Now, is that because they want sell more outposts? >> You know, outpost is definitely a part of the story, but it's a tactile realization that outposts alone won't get it. So, you know, from Todd Consulting, to Capgemini, to PWC, to many of the integrations on the show floor... I even saw company that's doing HP-UX in the cloud or on-prem. The reality is these, well, we've deemed these legacy systems aren't going anywhere. AWS announced the mainframe service last year for converting mainframe code into cloud workloads, and it's just not taking on the, I think, the way that the Amazon would like, and that's a reality that is too complex for all of it to run in the cloud. >> Paul: So it sounds like the strategy is to envelop and consume then if you have mainframe conversion services and HP-UX in the cloud, I mean, you're talking about serious legacy stuff there. >> Keith: You're talking about serious legacy stuff. They haven't de-emphasized their relationship with VMware. You know, hybrid is not a place, it is a operating model. So VMware cloud on AWS allows you to do both models concurrently if you have those applications that need layer two. You have these workloads that just don't... SAP just doesn't... Sorry, AWS, SAP in the cloud and EC2 just doesn't make financial sense. It's a reality. It's accepting of that and meeting customers where they're at. >> And all the collaboration, I mean, you've mentioned so many companies in that answer, and I think it's very interesting to see how much we're all going to have to work together to make the cloud its own operating system. Cloud as an OS came up on our last conversation here and I think it's absolutely fascinating. >> Keith: Yeah, cloud is the OS I think is a thing. This idea that I'm going to use the cloud as my base layer of abstraction. I've talked to a really interesting startup... Well actually it's a open source project cross plane of where they're taking that cloud model and now I can put my VMware vsphere, my AWS, GCP, et cetera, behind that and use that operating model to manage my overall infrastructure. So, the maturity of the market has fascinated me over the past year, year and a half. >> It really feels like we're at a new inflection point. I totally agree. I want to talk about something completely different. >> Keith: Okay. >> Because I know that we both did this challenge. So one of the things that's really inspiring quite frankly about being here at AWS reInvent, and I know you all at home don't have an opportunity to walk the floor and get the experience and get as many steps as Paul gets in, but there's a real emphasis on giving back. This community cares about giving back and AWS is doing a variety of different activations to donate to a variety of different charities. And there's a DJ booth. I've been joking. It kind of feels like you're arriving at a rave when you get to reInvent. And right next to that, there is a hydrate and help station with these reusable water bottles. This is actually firm. It's not one of those plastic ones that's going to end up in the recycled bin or the landfill. And every single time that you fill up your water bottle, AWS will donate $3 to help women in Kenya get access to water. One of the things that I found really fascinating about the activation is women in sub-Saharan Africa spend 16 million hours carrying water a day, which is a wild concept to think about, and water is heavy. Keith, my man, I know that you did the activation. They had you carrying two 20 pound jugs of water. >> Keith: For about 15 feet. It's not the... >> (laughs) >> 20 pound jugs of water, 20 gallons, whatever the amount is. It was extremely heavy. I'm a fairly sizeable guy. Six four, six five. >> You're in good shape, yeah. >> Keith: Couple of a hundred pounds. >> Yeah. >> Keith: And I could not imagine spending that many hours simply getting fresh water. We take it for granted. Every time I run the water in the sink, my family gets on me because I get on them when they leave the sink water. It's like my dad's left the light on. If you leave the water on in my house, you are going to hear it from me because, you know, things like this tickle in my mind like, wow, people walk that far. >> Savannah: That's your whole day. >> Just water, and that's probably not even enough water for the day. >> Paul: Yeah. We think of that as being, like, an 18th century phenomenon, but it's very much today in parts of Sub-Saharan Africa. >> I know, and we're so privileged. For me, it was just, we work in technology. Everyone here is pretty blessed, and to do that activation really got my head in the right space to think, wow I'm so lucky. The team here, the fabulous production team, can go refill my water bottle. I mean, so simple. They've also got a fitness activation going on. You can jump on a bike, a treadmill, and if you work out for five minutes, they donate $5 to Fred Hutch up in Seattle. And that was nice. I did a little cross-training in between segments yesterday and I just, I really love seeing that emphasis. None of this matters if we're not taking care of community. >> Yeah, I'm going to go out and google Fred Hutch, and just donate the five bucks. 'Cause I'm not, I'm not. >> (laughs) >> I'll run forever, but I'm not getting on a bike. >> This from a guy who did 100 5Ks in a row last year. >> Yeah. I did 100 5Ks in a row, and I'm not doing five minutes on a bike. That's it. That's crazy, right? >> I mean there is a treadmill And they have the little hands workout thing too if you want. >> About five minutes though. >> Savannah: I know. >> Like five minutes is way longer than what you think it is. >> I mean, it's true. I was up there in a dress in sequence. Hopefully, I didn't scar any anyone on the show floor yesterday. It's still toss up. >> I'm going to take us back to back. >> Take us back Paul. >> Back to what we were talking about. I want to know what you're hearing. So we've had a lot of people on this show, a lot of vendors on the show who have said AWS is our most important cloud partner, which would imply that AWS's lead is solidifying its lead and pulling away from the pack as the number one. Do you hear that as well? Or is that lip service? >> Keith: So I always think about AWS reInvent as the Amazon victory lap. This is where they come and just thumb their noses at all the other cloud providers and just show how far ahead they're are. Werner Vogels, CTO at Amazon's keynotes, so I hadn't watched it yet, but at that keynote, this is where they literally take the victory lap and say that we're going to expose what we did four or five years ago on stage, and what we did four or five years ago is ahead of every cloud provider with maybe the exception of GCP and they're maybe three years behind. So customers are overwhelmingly choosing Amazon for these reasons. Don't get me wrong, Corey Quinn, Gardner folks, really went at Adam yesterday about Amazon had three majors outages in December last year. AWS has way too many services that are disconnected, but from the pure capability, I talked to a born in the cloud data protection company who could repatriate their data protection and storage on-prem private data center, save money. Instead, they double down on Amazon. They're using, they modernize their application and they're reduced their cost by 60 to 70%. >> Massive. >> This is massive. AWS is keeping up with customers no matter where they're at on the spectrum. >> Savannah: I love that you use the term victory lap. We've had a lot of folks from AWS here up on the show this week, and a couple of them have said they live for this. I mean, and it's got to be pretty cool. You've got 70 thousand plus people obsessed with your product and so many different partners doing so many different things from the edge to hospital to the largest companies on earth to the Israeli Ministry of Defense we were just talking about earlier, so everybody needs the cloud. I feel like that's where we're at. >> Keith: Yeah, and the next step, I think the next level opportunity for AWS is to get to that analyst or that citizen developer, being able to enable the end user to use a lambda, use these data services to create new applications, and the meanwhile, there's folks on the show floor filling that gap that enable develop... the piece of owner, the piece of parlor owner, to create a web portal that compares his prices and solutions to other vendors in his area and adjust dynamically. You go into a restaurant now and there is no price menu. There's a QR code that Amazon is powering much of that dynamic relationship between the restaurateur, the customer, and even the menu and availability. It's just a wonderful time. >> I always ask for the print menu. I'm sorry. >> Yeah. You want the printed menu. >> Look down, my phone doesn't work. >> Gimme something I could shine my light on. >> I know you didn't have have a chance to look at Vogel's keynote yet, but I mean you mentioned citizen developer. One of the things they announced this morning was essentially a low code lambda interface. So you can plug, take your lamb dysfunctions and do drag and drop a connection between them. So they are going after that market. >> Keith: So I guess I'll take my victory lap because that was my prediction. That's where Amazon's next... >> Well done, Keith. >> Because Lambda is that thing when you look at what server list was and the name of the concept of being, not having to have to worry about servers in your application development, the logical next step, I won't take too much of a leap. That logical first step is, well, code less code. This is something that Kelsey Hightower has talked about a lot. Low code, no code, the ability to empower people without having these artificial barriers, learning how to code in a different language. This is the time where I can go to Valencia, it's pronounced, where I can go to Valencia and not speak Spanish and just have my phone. Why can't we do, at business value, for people who have amazing ideas and enable those amazing ideas before I have to stick a developer in between them and the system. >> Paul: Low-code market is growing 35% a year. It's not surprising, given the potential that's out there. >> And as a non-technical person, who works in technology, I've been waiting for this moment. So keep predicting this kind of thing, Keith. 'Cause hopefully it'll keep happening. Keith, I'm going to give you the challenge we've been giving all of our guests this week. >> Keith: Okay. >> And I know you're going to absolutely crush this. So we are looking for your 32nd Instagram real, sizzle hot take, biggest takeaway from this year's show. >> So 32nd Instagram, I'll even put it on TikTok. >> Savannah: Heck yeah. >> Hybrid cloud, hybrid infrastructure. This is way bigger than Amazon. Whether we're talking about Amazon, AWS, I mean AWS's solutions, Google Cloud, Azure, OCI, on-prem. Customers want it all. They want a way to manage it all, and they need the skill and tools to enable their not-so-growing work force to do it. That is, that's AWS reInvent 2019 to 2022. >> Absolutely nailed it. Keith Townsend, it is always such a joy to have you here on theCUBE. Thank you for joining us >> Savannah Page. Great to have you. Paul, you too. You're always a great co-host. >> (laughs) We co-hosted for three days. >> We've got a lot of love for each other here. And we have even more love for all of you tuning into our fabulous livestream from AWS reInvent Las Vegas, Nevada, with Paul Gillin. I'm Savannah Peterson. You're watching theCUBE, the leader in high tech coverage. (upbeat music)
SUMMARY :
Paul, how you doing? as we have back to back segments. We get to have a chat Good to see you again. Keith, how's the show been for you so far? I tweeted it a couple of days ago. Savannah: Whoo! of the four that I've attended. and talking to people. and that's the AWS cloud, on the show floor... like the strategy is to Sorry, AWS, SAP in the cloud and EC2 And all the collaboration, I mean, This idea that I'm going to use the cloud I want to talk about something One of the things that I It's not the... I'm a fairly sizeable guy. It's like my dad's left the light on. that's probably not even of that as being, like, in the right space to and just donate the five bucks. but I'm not getting on a bike. 100 5Ks in a row last year. and I'm not doing five minutes on a bike. if you want. than what you think it is. on the show floor yesterday. as the number one. I talked to a born in the at on the spectrum. on the show this week, Keith: Yeah, and the next step, I always ask for the print menu. Gimme something I One of the things they because that was my prediction. This is the time where It's not surprising, given the Keith, I'm going to give you the challenge to absolutely crush this. So 32nd Instagram, That is, that's AWS reInvent 2019 to 2022. to have you here on theCUBE. Great to have you. We co-hosted for three days. And we have even more love for all of you
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Adam | PERSON | 0.99+ |
Paul Gillin | PERSON | 0.99+ |
Keith Townsend | PERSON | 0.99+ |
Savannah | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Keith | PERSON | 0.99+ |
Paul | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Seattle | LOCATION | 0.99+ |
Werner Vogels | PERSON | 0.99+ |
five minutes | QUANTITY | 0.99+ |
PWC | ORGANIZATION | 0.99+ |
$3 | QUANTITY | 0.99+ |
$5 | QUANTITY | 0.99+ |
20 gallons | QUANTITY | 0.99+ |
Valencia | LOCATION | 0.99+ |
Savannah Page | PERSON | 0.99+ |
Six | QUANTITY | 0.99+ |
Todd Consulting | ORGANIZATION | 0.99+ |
five bucks | QUANTITY | 0.99+ |
Corey Quinn | PERSON | 0.99+ |
Capgemini | ORGANIZATION | 0.99+ |
Kenya | LOCATION | 0.99+ |
December last year | DATE | 0.99+ |
16 million hours | QUANTITY | 0.99+ |
three | QUANTITY | 0.99+ |
2019 | DATE | 0.99+ |
last year | DATE | 0.99+ |
yesterday | DATE | 0.99+ |
six | QUANTITY | 0.99+ |
32nd | QUANTITY | 0.99+ |
18th century | DATE | 0.99+ |
2022 | DATE | 0.99+ |
Patrick Coughlin, Splunk | AWS re:Invent 2022
>>Hello and welcome back to the Cube's coverage of AWS Reinvent 2022. I'm John Furrier, host of the Cube. We got a great conversation with Patrick Kauflin, vice president of Go to Market Strategy and specialization at Splunk. We're talking about the open cybersecurity scheme of framework, also known as the O C sf, a joint strategic collaboration between Splunk and aws. It's got a lot of traction momentum. Patrick, thanks for coming on the cube for reinvent coverage. >>John, great to be here. I'm excited for this. >>You know, I love this open source movement and open source and continues to add value, almost sets the standards. You know, we were talking at the CNCF Linux Foundation this past fall about how standards are coming outta open source. Not so much the the classic standards groups, but you start to see the developers voting with their code groups deciding what to adopt de facto standards and security is a real key part of that where data becomes key for resilience. And this has been the top conversation at reinvent and all around the industry, is how to make data a key part of building into cyber resilience. So I wanna get your thoughts about the problem that you see that's emerging that you guys are solving with this group kind of collaboration around the ocs f >>Yeah, well look, John, I I think, I think you, you've already, you've already hit the high notes there. Data is proliferating across the enterprise. The attack surface area is rapidly expanding. The threat landscape is ever changing. You know, we, we just had a, a lot of scares around open SSL before that we had vulnerabilities and, and Confluence and Atlassian, and you go back to log four J and SolarWinds before that and, and challenges with the supply chain. In this year in particular, we've had a, a huge acceleration in, in concerns and threat vectors around operational technology. In our customer base alone, we saw a huge uptake, you know, and double digit percentage of customers that we're concerned about the traditional vectors like, like ransomware, like business email compromise, phishing, but also from insider threat and others. So you've got this, this highly complex environment where data continues to proliferate and flow through new applications, new infrastructure, new services, driving different types of outcomes in the digitally transformed enterprise of today. >>And, and what happens there is, is our customers, particularly in security, are, are left with having to stitch all of this together. And they're trying to get visibility across multiple different services, infrastructure applications across a number of different point solutions that they've bought to help them protect, defend, detect, and respond better. And it's a massive challenge. And you know, when our, when our customers come to us, they are often looking for ways to drive more consolidation across a variety of different solutions. They're looking to drive better outcomes in terms of speed to detection. How do I detect faster? How do I bind the thing that when bang in the night faster? How do I then fix it quickly? And then how do I layer in some automation so hopefully I don't have to do it again? Now, the challenge there that really OCF Ocsf helps to, to solve is to do that effectively, to detect and to respond at the speed at which attackers are demanding. >>Today we have to have normalization of data across this entire landscape of tools, infrastructure, services. We have to have integration to have visibility, and these tools have to work together. But the biggest barrier to that is often data is stored in different structures and in different formats across different solution providers, across different tools that are, that are, that our customers are using. And that that lack of data, normalization, chokes the integration problem. And so, you know, several years ago, a number of very smart people, and this was, this was a initiative s started by Splunk and AWS came together and said, look, we as an industry have to solve this for our customers. We have to start to shoulder this burden for our customers. We can't, we can't make our customers have to be systems integrators. That's not their job. Our job is to help make this easier for them. And so OCS was born and over the last couple of years we've built out this, this collaboration to not just be AWS and Splunk, but over 50 different organizations, cloud service providers, solution providers in the cybersecurity space have come together and said, let's decide on a single unified schema for how we're gonna represent event data in this industry. And I'm very proud to be here today to say that we've launched it and, and I can't wait to see where we go next. >>Yeah, I mean, this is really compelling. I mean, it's so much packed in that, in that statement, I mean, data normalization, you mentioned chokes, this the, the solution and integration as you call it. But really also it's like data's not just stored in silos. It may not even be available, right? So if you don't have availability of data, that's an important point. Number two, you mentioned supply chain, there's physical supply chain that's coming up big time at reinvent this time as well as in open source, the software supply chain. So you now have the perimeter's been dead for multiple years. We've been talking with that for years, everybody knows that. But now combined with the supply chain problem, both physical and software, there's so much more to go on. And so, you know, the leaders in the industry, they're not sitting on their hands. They know this, but they're just overloaded. So, so how do leaders deal with this right now before we get into the ocs f I wanna just get your thoughts on what's the psychology of the, of the business leader who's facing this landscape? >>Yeah, well, I mean unfortunately too many leaders feel like they have to face these trade offs between, you know, how and where they are really focusing cyber resilience investments in the business. And, and often there is a siloed approach across security, IT developer operations or engineering rather than the ability to kind of drive visibility integration and, and connection of outcomes across those different functions. I mean, the truth is the telemetry that, that you get from an application for application performance monitoring or infrastructure monitoring is often incredibly valuable when there's a security incident and vice versa. Some of the security data that, that you may see in a security operation center can be incredibly valuable in trying to investigate a, a performance degradation in an application and understanding where that may come from. And so what we're seeing is this data layer is collapsing faster than the org charts are or the budget line items are in the enterprise. And so at Splunk here, you know, we believe security resilience is, is fundamentally a data problem. And one of the things that we do often is, is actually help connect the dots for our customers and bring our customers together across the silos they may have internally so that they can start to see a holistic picture of what resilience means for their enterprise and how they can drive faster detection outcomes and more automation coverage. >>You know, we recently had an event called Super Cloud, we're going into the next gen kind of a cloud, how data and security are all kind of part of this NextGen application. It's not just us. And we had a panel that was titled The Innovators Dilemma, kind of talk about you some of the challenges. And one of the panelists said, it's not the innovator's dilemma, it's the integrator's dilemma. And you mentioned that earlier, and I think this a key point right now into integration is so critical, not having the data and putting pieces together now open source is becoming a composability market. And I think having things snap together and work well, it's a platform system conversation, not a tool conversation. So I really wanna get into where the OCS f kind of intersects with this area people are working on. It's not just solution architects or cloud cloud native SREs, especially where DevSecOps is. So this that's right, this intersection is critical. How does Ocsf integrate into that integration of the data making that available to make machine learning and automation smarter and more relevant? >>Right, right. Well look, I mean, I I think that's a fantastic question because, you know, we talk about, we use Bud buzzwords like machine learning and, and AI all the time. And you know, I know they're all over the place here at Reinvent and, and the, there's so much promise and hope out there around these technologies and these innovations. However, machine learning AI is only as effective as the data is clean and normalized. And, and we will not realize the promise of these technologies for outcomes in resilience unless we have better ways to normalize data upstream and better ways to integrate that data to the downstream tools where detection and response is happening. And so Ocsf was really about the industry coming together and saying, this is no longer the job of our customers. We are going to create a unified schema that represents the, an event that we will all bite down on. >>Even some of us are competitors, you know, this is, this is that, that no longer matters because at the point, the point is how do we take this burden off of our customers and how do we make the industry safer together? And so 15 initial members came together along with AWS and Splunk to, to start to create that, that initial schema and standardize it. And if you've ever, you know, if you've ever worked with a bunch of technical grumpy security people, it's kind of hard to drive consensus about around just about anything. But, but I, I'm really happy to see how quickly this, this organization has come together, has open sourced the schema, and, and, and just as you said, like I think this, this unlocks the potential for real innovation that's gonna be required to keep up with the bad guys. But right now is getting stymied and held back by the lack of normalization and the lack of integration. >>I've always said Splunk was a, it eats data for breakfast, lunch, and dinner and turns it into insights. And I think you bring up the silo thing. What's interesting is the cross company sharing, I think this hits point on, so I see this as a valuable opportunity for the industry. What's the traction on that? Because, you know, to succeed it does take a village, it takes a community of security practitioners and, and, and architects and developers to kind of coalesce around this defacto movement has been, has been the uptake been good? How's traction? Can you share your thoughts on how this is translating across companies? >>Yeah, absolutely. I mean, look, I, I think cybersecurity has a, has a long track record of, of, of standards development. There's been some fantastic standards recently. Things like sticks and taxi for threat intelligence. There's been things like the, you know, the Mir attack framework coming outta mi mir and, and, and the adoption, the traction that we've seen with Attack in particular has been amazing to, to watch how that has kind of roared onto the scene in the last couple of years and has become table stakes for how you do security operations and incident response. And, you know, I think with ocs f we're gonna see something similar here, but, you know, we are in literally the first innings of, of this. So right now, you know, we're architecting this into our, into every part of our sort of backend systems here at Polan. I know our our collaborators at AWS and elsewhere are doing it too. >>And so I think it starts with bringing this standard now that the standard exists on a, you know, in schema format and there, there's, you know, confluence and Jira tickets around it, how do we then sort of build this into the code of, of the, the collaborators that have been leading the way on this? And you know, it's not gonna happen overnight, but I think in the coming quarters you'll start to see this schema be the standard across the leaders in this space. Companies like Splunk and AWS and others who are leading the way. And often that's what helps drive adoption of a standard is if you can get the, the big dogs, so to speak, to, to, to embrace it. And, and, you know, there's no bigger one than aws and I think there's no, no more important one than Splunk in the cybersecurity space. And so as we adopt this, we hope others will follow. And, and like I said, we've got over 50 organizations contributing to it today. And so I think we're off to a running >>Start. You know, it's interesting, choking innovation or having things kind of get, get slowed down has really been a problem. We've seen successes recently over the past few years. Like Kubernetes has really unlocked and accelerated the cloud native worlds of runtime with containers to, to kind of have the consensus of the community to say, Hey, if we just do this, it gets better. I think this is really compelling with the o the ocs F because if people can come together around this and get unified as well as all the other official standards, things can go highly accelerated. So I think, I think it looks really good and I think it's great initiative and I really appreciate your insight on that, on, on your relationship with Amazon. Okay. It's not just a partnership, it's a strategic collaboration. Could you share that relationship dynamic, how to start, how's it going, what's strategic about it? Share to the audience kind of the relationship between Splunk and a on this important OCS ocsf initiative. >>Look, I, I mean I think this, this year marks the, the 10th year anniversary that, that Splunk and AWS have been collaborating in a variety of different ways. I, I think our, our companies have a fantastic and, and long standing relationship and we've, we've partnered on a number of really important projects together that bring value obviously to our individual companies, but also to our shared customers. When I think about some of the most important customers at Splunk that I spend a significant amount of time with, I I I know how many of those are, are AWS customers as well, and I know how important AWS is to them. So I think it's, it's a, it's a collaboration that is rooted in, in a respect for each other's technologies and innovation, but also in a recognition that, that our shared customers want to see us work better together over time. And it's not, it's not two companies that have kind of decided in a back room that they should work together. It's actually our customers that are, that are pushing us. And I think we're, we're both very customer centric organizations and I think that has helped us actually be better collaborators and better partners together because we're, we're working back backwards from our customers >>As security becomes a physical and software approach. We've seen the trend where even Steven Schmidt at Amazon Web Services is, is the cso, he is not the CSO anymore. So, and I asked him why, he says, well, security's also physical stuff too. So, so he's that's right. Whole lens is now expanded. You mentioned supply chain, physical, digital, this is an important inflection point. Can you summarize in your mind why open cybersecurity schema for is important? I know the unification, but beyond that, what, why is this so important? Why should people pay attention to this? >>You know, I, if, if you'll let me be just a little abstract in meta for a second. I think what's, what's really meaningful at the highest level about the O C S F initiative, and that goes beyond, I think, the tactical value it will provide to, to organizations and to customers in terms of making them safer over the coming years and, and decades. I think what's more important than that is it's really the, one of the first times that you've seen the industry come together and say, we got a problem. We need to solve. That, you know, doesn't really have anything to do with, with our own economics. Our customers are, are hurt. And yeah, some of us may be competitors, you know, we got different cloud service providers that are participating in this along with aws. We got different cybersecurity solution providers participating in this along with Splunk. >>But, but folks who've come together and say, we can actually solve this problem if, if we're able to kind of put aside our competitive differences in the markets and approach this from the perspective of what's best for information security as a whole. And, and I think that's what I'm most proud of and, and what I hope we can do more of in other places in this industry, because I think that kind of collaboration from real market leaders can actually change markets. It can change the, the, the trend lines in terms of how we are keeping up with the bad guys. And, and I'd like to see a lot more of >>That. And we're seeing a lot more new kind of things emerging in the cloud next kind of this next generation architecture and outcomes are happening. I think it's interesting, you know, we always talk about sustainability, supply chain sustainability about making the earth a better place. But you're hitting on this, this meta point about businesses are under threat of going under. I mean, we want to keep businesses to businesses to be sustainable, not just, you know, the, the environment. So if a business goes outta business business, which they, their threats here are, can be catastrophic for companies. I mean, there is, there is a community responsibility to protect businesses so they can sustain and and stay Yeah. Stay producing. This is a real key point. >>Yeah. Yeah. I mean, look, I think, I think one of the things that, you know, we, we, we complain a lot of in, in cyber security about the lack of, of talent, the talent shortage in cyber security. And every year we kinda, we kind of whack ourselves over the head about how hard it is to bring people into this industry. And it's true. But one of the things that I think we forget, John, is, is how important mission is to so many people in what they do for a living and how they work. And I think one of the things that cybersecurity is strongest in information Security General and has been for decades is this sense of mission and people work in this industry be not because it's, it's, it's always the, the, the most lucrative, but because it, it really drives a sense of safety and security in the enterprises and the fabric of the economy that we use every day to go through our lives. And when I think about the spun customers and AWS customers, I think about the, the different products and tools that power my life and, and we need to secure them. And, and sometimes that means coming to work every day at that company and, and doing your job. And sometimes that means working with others better, faster, and stronger to help drive that level of, of, of maturity and security that this industry >>Needs. It's a human, is a human opportunity, human problem and, and challenge. That's a whole nother segment. The role of the talent and the human machines and with scale. Patrick, thanks so much for sharing the information and the insight on the Open cybersecurity schema frame and what it means and why it's important. Thanks for sharing on the Cube, really appreciate it. >>Thanks for having me, John. >>Okay, this is AWS Reinvent 2022 coverage here on the Cube. I'm John Furry, you're the host. Thanks for watching.
SUMMARY :
I'm John Furrier, host of the Cube. John, great to be here. Not so much the the classic standards groups, and you go back to log four J and SolarWinds before that and, And you know, when our, when our customers come But the biggest barrier to that is often data And so, you know, the leaders in the industry, they're not sitting on their hands. And one of the things that we do often is, And one of the panelists said, it's not the innovator's dilemma, it's the integrator's dilemma. And you know, I know they're all over the place here at Reinvent and, and the, has open sourced the schema, and, and, and just as you said, like I think this, And I think you bring up the silo thing. that has kind of roared onto the scene in the last couple of years and has become table And you know, it's not gonna happen overnight, but I think in the coming quarters you'll start to see I think this is really compelling with the o the And I think we're, we're both very customer centric organizations I know the unification, but beyond that, what, why is you know, we got different cloud service providers that are participating in this along with aws. And, and I'd like to see a lot more of I think it's interesting, you know, we always talk about sustainability, But one of the things that I think we forget, John, is, is how important The role of the talent and the human machines and with scale. Okay, this is AWS Reinvent 2022 coverage here on the Cube.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
AWS | ORGANIZATION | 0.99+ |
Patrick Kauflin | PERSON | 0.99+ |
John | PERSON | 0.99+ |
Patrick | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Splunk | ORGANIZATION | 0.99+ |
Steven Schmidt | PERSON | 0.99+ |
John Furry | PERSON | 0.99+ |
John Furrier | PERSON | 0.99+ |
Amazon Web Services | ORGANIZATION | 0.99+ |
Patrick Coughlin | PERSON | 0.99+ |
two companies | QUANTITY | 0.99+ |
aws | ORGANIZATION | 0.99+ |
Today | DATE | 0.99+ |
one | QUANTITY | 0.99+ |
both | QUANTITY | 0.99+ |
today | DATE | 0.98+ |
CNCF Linux Foundation | ORGANIZATION | 0.98+ |
Confluence | ORGANIZATION | 0.98+ |
15 initial members | QUANTITY | 0.98+ |
this year | DATE | 0.98+ |
several years ago | DATE | 0.98+ |
Reinvent | ORGANIZATION | 0.97+ |
OCS | ORGANIZATION | 0.97+ |
single | QUANTITY | 0.97+ |
over 50 organizations | QUANTITY | 0.97+ |
SolarWinds | ORGANIZATION | 0.96+ |
first times | QUANTITY | 0.95+ |
J | ORGANIZATION | 0.95+ |
The Innovators Dilemma | TITLE | 0.95+ |
Splunk | PERSON | 0.94+ |
Polan | ORGANIZATION | 0.92+ |
Ocsf | ORGANIZATION | 0.89+ |
decades | QUANTITY | 0.89+ |
NextGen | ORGANIZATION | 0.88+ |
earth | LOCATION | 0.88+ |
Go to Market Strategy | ORGANIZATION | 0.87+ |
Ocsf | TITLE | 0.87+ |
Mir | TITLE | 0.86+ |
Cube | COMMERCIAL_ITEM | 0.85+ |
Atlassian | ORGANIZATION | 0.85+ |
organizations | QUANTITY | 0.82+ |
10th year anniversary | QUANTITY | 0.82+ |
last couple of years | DATE | 0.81+ |
over 50 | QUANTITY | 0.79+ |
2022 | TITLE | 0.79+ |
years | QUANTITY | 0.76+ |
Reinvent 2022 | TITLE | 0.75+ |
OCF | ORGANIZATION | 0.74+ |
first innings | QUANTITY | 0.74+ |
DevSecOps | TITLE | 0.73+ |
second | QUANTITY | 0.7+ |
past fall | DATE | 0.68+ |
C | TITLE | 0.66+ |
Jira | TITLE | 0.65+ |
years | DATE | 0.63+ |
Super Cloud | EVENT | 0.58+ |
the panelists | QUANTITY | 0.56+ |
Kubernetes | TITLE | 0.53+ |
Molly Burns Qlik & Samir Shah, AARP | AWS re:Invent 2022
(slow upbeat music) >> Good afternoon and welcome back to Sin City. We're here at AWS reInvent with wall-to-wall coverage on theCUBE. My name is Savannah Peterson, joined with Dave Vellante, and very excited to have two exciting guests from Qlik and AARP with us. Molly and Samir, thank you so much for being here. Welcome to the show. >> Thank you for having us. >> Thank you for having us. >> How's it been so far for you, Molly? >> It's been a great show so far. We've got a big booth presence out here. We've had a lot of people coming by, doing demo stations and just really, really coming to the voice of the customer, so we've really enjoyed the event. >> Ah, love a good VOC conversation myself. How about for you, Samir? >> Oh, it's been great meeting a lot of product folks, meeting a lot of other people, trying to do similar things that we're doing, getting confirmation we're doing the right thing, and learning new things. And obviously, you know, here with Molly, it's been a highlight of my experience. >> What's the best thing you learned from your peers, this week? >> You know, some of the things, that we're all talking about, is how do we get data in the right place at the right time? And, you know, that's something that people are now starting to think about. >> Very hot topic. >> You know, doing it, and then not only getting it to the right place, but taking insights and taking action on it as it's getting there. So those are the conversations that are getting around, in the circle I've been hanging around with. >> You hearing the same thing at the booth or? >> Yeah, absolutely. >> And how are you guys responding? >> Well, I think, as a company, and the shifts in the market, people are really trying to determine what workloads belong in which Cloud, what belongs on-prem? And so talking about those realtime transformations, the integration points, the core systems they're coming from, and really how to unlock that data, is just really powerful and meaningful. So that's been a pretty consistent theme throughout the conference, and a lot of conversations that we have on a regular basis. >> I believe that, Molly, let's stick with you for a second. Just in case the audience isn't familiar, tell us a little more about Qlik. >> Yeah, so Qlik is a robust, end-to-end data pipeline. Starting with really looking at all of your source systems whether it's mainframe, SAP, relational database, kind of name your flavor as it's related to sources. Getting those sources over into the target landing spot whether it be Amazon, or other cloud players, or even if you're, if you're managing hybrid workloads. So that's kind of one piece of the end-to-end platform. And then the second piece is really having all that data, analytics ready, coming right through that real-time data pipeline, and really being able to use the data, to monetize the data, to make sense of the data. And then Qlik really does all that data preparation work underneath the visualization layer, which is where all the work happens. And then you get to see the output of that through the visualization of Qlik, which is, you know, the dashboards, the things that our people, people are used to seeing. >> I love that! So at AARP, what are you using Qlik for? What sort of dashboards are you pulling together? >> So when we started our journey to AWS, we knew that, you know, we're going to have our applications, they're distributed in the Cloud, but again, how do we get the data there, in the right place at the right time? So, as members are, taking action, they're calling into the call center, using our website, using our mobile apps. We want to want it to be able to take that information stream it, so we use Qlik, to take those changes when they happen as they happen, be able to stream it to Kafka and then push that data out to the applications that need it in the time that they needed it. So, instead of waiting for a batch job to happen overnight, we're able to now push this data in real time. And by doing that, we're able to personalize the engagement for our members. So if you come in, we know what you're doing, we can personalize the value that we put in front of you, and just make that engagement a lot more engaging for you. >> Yeah. >> And in the channel that you choose to want to come in with, right? Rather than a channel that we are trying to push to you. >> Everyone wants that personalized experience as we discussed, I love AARP, I've done a lot of work with AARP, I look forward to being a member, but in case the audience isn't familiar, you have the largest membership database of any company on Earth that I'm aware of. How many members does AARP have? >> We have nearly 38 million members, and 66,000 volunteers, and 2300 employees across every state in the United States. >> It's a perfect use case for Qlik, right? 'Cause you've been around for a while. You've got data in the million different places. You're trying to get, you've got a mainframe, right? You know, I hear Amazon's trying to put all the mainframes in the Cloud, but I'm guessing the business case isn't there for you. But you want the data that's coming out of that mainframe to be part of that data pipeline, right? So can you paint a picture, of how, what Molly was describing about the data pipeline, how that fits with AARP? >> Yeah, it's actually, it was a perfect use case. And you know, when we engaged with Qlik, what we wanted to be able to do is take that data in the mainframe, and get it distributed into the Cloud, accurately, securely, and make sure that we can track the lineage, and be able to say, hey, application A only needs name and address, application B needs, name, address, and payment. So we were able to do all of that within a couple of weeks, right? And getting that data out there, knowing that it's going to the right place, knowing it's secure, and knowing it's accurate, regardless of the application it goes to, we don't have to worry about seeking data across different applications. Now we know that there's a source of truth, and everything is done through the pipeline, and it's controlled in a way that, we can measure everything that's going through, how it's going through, and how it's being used by the applications, that are consuming it? >> So you've got the providence and the lineage of that data and that's what Qlik ensures, is that right? Is that your role or is that a partner role, combined? >> No, yes, that's absolutely Qlik's role. So for our new offering, Qlik Cloud data integration, it's a comprehensive solution, delivered as a service, delivers real time, automates, transformations, catalog and lineage, all extremely important. And in the case of Samir and AARP, they're trying to unlock the most valuable assets of their data in SAP and mainframe. And surprisingly, sometimes most valuable data in an organization is the hardest to actually get access to. >> Sure. >> So be, you know, just statistically, 70% of Fortune 500 companies still rely on mainframe. So when you think about that, and even when Samir and I are talking about it. >> That's a lot. >> Yeah. >> And that's a lot of scale, that's a lot of data. >> It's a lot of data. >> Yeah. >> So, you know, mainframe isn't a thing of the past. Companies are still relying on it. People have been saying that for years but when we're talking about getting the complex data out of there to really make something meaningful for AARP, we're really proud of the results, and the opportunity that we've been able to provide to really improve the member experience. And how people are able to consume AARP, and all the different offerings that they have? Kind of like you mentioned Savannah, and the way that you go about it. >> Well, it's also the high risk data. High value data, high risk data. You don't want to mess with it. You want to make sure that you've got that catalog to be able to say, okay, this is what we did with that data, this is where it came from. And then you essentially publish to other tools, analytic tools in the Cloud. Can you paint a picture of how that extends to the Cloud? >> Sure, so there's a couple of different things that we do with it. So once we get the data, into our streaming apps, we can publish it over to like our website. We can publish it to the call center, to mobile apps, to our data warehouse, where we can run analytics and AI on it. And then obviously a lot of our journeys, we use a journey orchestration tool, and we've built a CDP, a customer data platform, to get those insights in there, to drive, you know, personalization and experience. >> I'm smiling as you're talking, Samir, because I'm thinking of all the personalized experiences that my mother has with AARP, and it is so fun to learn about the technology that's serving that to her. >> Exactly. >> This segment actually becoming a bit more personal for me than I expected for a couple of reasons. So this is great. Molly, Qlik has been a part of the AWS ecosystem since the get go. How have things changed over the years? >> Yeah, so Qlik still remains the enterprise integration tool of choice for AWS especially- >> Let's call that a casual and just brag. >> Yeah. >> Because that's awesome. That's great, congratulations on that. >> Thank you for SAP and mainframe. So the relationship continues to evolve but we've been part of the ecosystem from since inception. So we look at, how we continue to evolve the partnership? And honestly, a lot of our customers landing spot is AWS. So the partnership evolves really on two fronts. One with Amazon itself, in a partnership lane, and two, with our customers, and what we're doing with them, and how we're able to really optimize what that looks like? And then secondly, earlier this year we announced an offering Amazon and Qlik, called Qlik Ramp, where we can come in and do, a half day architecture deep dive, look at SAP mainframe, and how they get to the Amazon landing spots, whether it's S3, Redshift, or EMR? So we got a lot of different things kind of going on in the Amazon ecosystem, whether it's customer forward and first, and how can we maximize the relationship spend et cetera, with Amazon. And then also how can we deliver, you know, kind of a shorter time to value throughout that process with something like a Qlik ramp, because we want to qualify, and solve customers needs, as equally as we want to you know, say when we're not the right fit. >> So data is a complicated- >> Love that honesty and transparency. >> Data is a complicated situation for most companies, right? And there's a lack of resource, lack of talent. There's hyper specialization. And you were just talking about the evolution of the Cloud and the relationship. How does automation fit into the equation? Are you able to automate a lot of that data integration through the pipeline? >> Yeah. >> Is it was a, what's your journey look like there? Were you resistant to that at first? 'Cause you got to trust the data. Take us through that. >> Yeah, so the first thing, we wanted to make sure is security right? We've got a lot of data, we're going to make sure privacy- >> Very personal data too. >> Exactly. And privacy and security is number one. So we want to make sure anything that we're doing with the data is secure, and it's not given out anywhere. In terms of automation, so what we've been able to do is being able to take these changes, and you know, in technology, the one thing you can guarantee is it's going to break. Network's going to go down, or a server goes down, a database goes down, and that's the only guarantee we have. And by using the product that we have today, we're able to take those outages, and minimize them because there's retry processes, there's ways of going back and saying, hey, I've missed this much data. How do we bring it back in? You don't want data to get out of sync because that causes downstream problems. >> Yeah. >> So all of that is done through the product, right? We don't have to worry about it. You know, we get notifications, but it's not like, oh, I've got to pay someone at two o'clock in the morning because the network's gone down and how's the data sync going to come back up, when it comes back up? All of that's done for us. >> Yeah, and just to add to that, automation, is a key component. I mean, the data engineering teams definitely see the value of automation and how we're able to deliver that. So, improving the experience but also the overall landscape of the environment is critical. >> Yeah, we've seen the stats, data scientists, data pro spend, you know, 80% of their time wrangling data, 20% of their time. >> Data preparation. >> You know extracting value from it. So. >> Yeah, it's so sad. It's such a waste of human capital, and you're obviously relieving that, and letting folks do their job more efficiently. >> The thing is too, you know, as I'm somebody who's love data you dive into the data, you get really excited then after a while you're like, Ugh! >> I'm still here. >> I'm slogging through this data. Taking a bath in it. >> But I think. >> I want to get to the insights. >> I think that world's changing a little bit. >> Yes, definitely. >> So as we're starting to get data that's coming through it's got high fidelity, and richness, right? So in the old days we'd put in a database, normalize it, and then, you know we'd go and do our magic, and hopefully, you know something comes out, and the least of frustration, you just spoke about. Well now, because it's moving in real time, and we can send the data to areas in the way we want it, and add automation, and machine learning on top of that, so that, now it becomes a commodity to massage that data into the in the format that you want it. Then you can concentrate on the value work, right? Which is really where people should be spending the time, rather than, oh, I've got to manipulate the data, make sure it's done in a consistent way, and then make sure it's compliant and done, the same way every single time. >> It may be too early to, you know quantify the business impact, but have you seen, for example, you know, what I was describing creates data silos. 'Cause nobody's going to use the data if it's not trusted. So what happens is it goes to a silo, they put a brick wall around it, and then, you know, they do their thing with it. They trust it for that one use case and then they don't share it. Has that begun to change as you've seen more integration that's automated and augmented? >> Absolutely. I mean, you know, if you're bringing in data and you're showing that it's consistent, and this is where governance and compliance comes in, right? So as long as you have a data catalog, you can make sure that this data's coming through with the lineage that you said is going to, here's the source, here's the target, here's who gets what they only need rather than giving them everything. And by being able to document that, in a way, that's automated rather than somebody going in, and running a report, it's key. Because that's where the trust comes in, rather than, oh, Samir has to go in and manipulate this stream so that, you know, Molly can get the reports she wants. Instead, hey, it's all going in there, the reports are coming out, they're audited, and that's where the trust factor comes. >> And that enables scale. >> Yeah. >> Cloud confidence and scale. Big topics of the show this week. >> Yep. >> It's been the whole thing. Molly, what's next for Qlik? >> Yeah, Qliks on a big journey. So we've released a lot of things most recently, Qlik Cloud data integration as a service, but we're just continuing to grow from a customer base, from a capabilities perspective. We also recently just became HIPAA compliant and went through some other services. >> Congratulations, that is not an easy process. >> Thank you, thank you. >> Yeah. >> And so for us it's really just about expanding and having, that same level of fidelity of the data, and really just getting all of that pushed out to the market so everybody really sees the full value of Qlik, and that we can make your data Qlik. And just for a minute, back to your earlier point. >> Beautiful pun drop there, Molly. Just going to see that. >> Thank you Savannah. >> Yeah. >> But back to your earlier point, just about the time that people are spending, when you're able to automate, and you're getting data delivered in real time, and operational systems are able to see that. 'Cause you're trying to create the least amount of disruption you can, right? 'Cause that's a critical part of the business. When you start to automate and relieve that burden then people have time to spend time on the real things. >> Right. >> Future forward, prescriptive analytics, machine learning, not data preparation, solving problems, fixing soft gaps. >> Staring a spreadsheet, yeah. >> Right? It's actually the full end-to-end pipeline. And so that's really where I feel like the power is unleashed. And as more sources and targets come to light, right? They're all over the showroom floor, so we don't have to mention any of 'em by name, but it's just continuing, to move into that world to have more SaaS integrations. And to be able to serve the customer, and meet them exactly where they're at, at the place that they want to be. And for Samir, and what we did in the transformation there, unlocking that data for mainframe and SAP, getting it into Qlik Cloud, has been a huge business driver for them. And so, because of partners like AWS and Samir and AARP, we're constantly evolving. And really trying to listen to the voice of the customer, to become better for all of you. >> Excellent. >> Love that community first attitude. Very clear that you both have it, both AARP and Qlik with that attitude. We have a new challenge this year to reInvent on theCUBE, little prompt here. >> Okay. >> We're going to put 30 seconds on the clock, although I'm not super crazy about watching the clock. So, feel comfortable with whatever however much time you need. >> Whatever works. >> Yeah, yeah, yeah, yeah, whatever works. But we're looking for equivocally, your Instagram reel, your hot take, your thought leadership, sizzle, with the key theme from this year's show. Molly, your smile is platinum and perfect. So I'm going to start with you. I feel like you've got this. >> Okay, great. >> Yeah. >> Just the closing statement is what you're looking for. >> Sure, yeah, sexy little sound bite. What do you, what's going to be your big takeaway from your experience here in Vegas this week? >> Yeah, so the experience at Vegas this week has been great but I think it's more than just the experience at Vegas, it's really the experience of the year, where we're at with the technology shift. And we're continuing to see, the need for Cloud, the move to Cloud, mixed workloads, hybrid workloads, unlocking core data, making sure that we're getting insights analytics, and value out of that. And really just working through that, kind of consistent evolution, which is exactly what it is. It's never, you never get to a point where, that's it, there's a bow on it, and it's perfect. It's continuously involving, evolving. >> Yeah. >> And I think that's the most important part that you have to take away. Samir's got his environment in a great place today but in six months, there may be some new things or transformations that he wants to look at, and we want to be there at the ready to work with him, roll up our sleeves, and kind of get into that. So the shift of the Cloud is here to stay. Qlik is a hundred percent here to stay. Here ready to serve our customers in any capacity that we can. And I think that's really my big takeaway from this week. And I've loved it, like this has been a great, this has been great with both of you. You both are super high energy. >> Aw, thank you. >> And Samir and I have had a great time over the event as well. >> Well, nailed it. You absolutely nailed it. All right, Samir, shoot your shot. >> So. >> Savannah. >> What I would say, I'm pretty, so. (laughing) >> I like to keep the smiles organic on stage, my perverse sense of humor, everyone just tolerates. >> Yeah, the one thing I think, I'm hearing a lot is, we have to look at data in motion. Streaming data is the way it's going to go. Whether it's customer data, operational data, it doesn't matter, right? We can't have these silos that you spoke about. Those days are gone, right? And if we really want to make a difference, and utilize all of the technology that's being built out there, all of the new features that were, you know, just in the keynotes. We can't have these separate silos, and the data has to go across, trusted data, it has to go across. The second thing I think we're all talking about is, we have to look at things differently. Unlearning the old is harder than learning the new. So we were just talking about event driven architecture. >> Understatement of the century. Sidebar, that was, yeah. >> So, you know, a lot of us techies are used to calling APIs. Well, now we have to push the data out, instead of pulling it. That just means retraining our brains, retraining our architects, retraining our developers, to think in a different way. And then the last thing I think I've learned is, us technology folks have put the customer first right? >> Yes, absolutely. >> What does a customer want? How do they want to feel when they engage with you? Because if we don't do that, none of this technology matters. And you know, we have to get away from the day where the IT guys go in the back black room, (laughing) coat up and then, you know, push something out, and don't think about what am I doing, and how am I impacting your mother? >> Yes, the end customer. It's no longer the person at the end of a terminal. Look at the green screen. >> And just one last thing. I think also it's fit for purpose transformations. And that's how we have to start thinking about how we're doing business. 'Cause there's a paradigm shift, right? From ETL to ELT, right? Extract, Load, Transform your data. And so as we're seeing that, I think it's really just about that fit for purpose, and looking at the transformations, the right transformations. And what's going to move the needle for the business. >> What a great closing note! Molly, Samir, thank you both for being here. >> Both: Thank you! >> This was a really fantastic chat, love where we took it. And thank all of you for tuning in to our live coverage from AWS reInvent here in fabulous Las Vegas, Nevada. I just want to give my mom a quick shout out, since she got a holler throughout this segment, as well as Stacy and all of my friends at AARP, I missed you all. My name's Savannah Peterson, joined with Dave Vellante. You're watching theCUBE. We are the technology leader in coverage for events like this. (slow upbeat music)
SUMMARY :
Molly and Samir, thank you really coming to the How about for you, Samir? And obviously, you know, in the right place at the right time? in the circle I've been and the shifts in the market, Just in case the audience isn't familiar, and really being able to use the data, that need it in the time And in the channel that you choose but in case the audience isn't familiar, state in the United States. of that mainframe to be part and get it distributed into the Cloud, is the hardest to actually get access to. So be, you know, just statistically, And that's a lot of and the way that you go about it. how that extends to the Cloud? to drive, you know, and it is so fun to learn part of the AWS ecosystem Because that's awesome. So the relationship continues to evolve and the relationship. 'Cause you got to trust the data. and that's the only guarantee we have. and how's the data sync Yeah, and just to you know, 80% of their You know extracting value from it. and you're obviously relieving that, Taking a bath in it. I think that world's into the in the format that you want it. and then, you know, they And by being able to Big topics of the show this week. It's been the whole thing. and went through some other services. Congratulations, that and that we can make your data Qlik. Just going to see that. just about the time that not data preparation, at the place that they want to be. Very clear that you both have it, 30 seconds on the clock, So I'm going to start with you. Just the closing statement to be your big takeaway the need for Cloud, the move to Cloud, So the shift of the Cloud is here to stay. And Samir and I have had a great time All right, Samir, shoot your shot. What I would say, I like to keep the and the data has to go across, Understatement of the century. put the customer first And you know, we have at the end of a terminal. and looking at the transformations, Molly, Samir, thank you And thank all of you for tuning in
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Dave Vellante | PERSON | 0.99+ |
Samir | PERSON | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Molly | PERSON | 0.99+ |
Stacy | PERSON | 0.99+ |
Vegas | LOCATION | 0.99+ |
20% | QUANTITY | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
AARP | ORGANIZATION | 0.99+ |
Sin City | LOCATION | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
80% | QUANTITY | 0.99+ |
Savannah | PERSON | 0.99+ |
30 seconds | QUANTITY | 0.99+ |
70% | QUANTITY | 0.99+ |
2300 employees | QUANTITY | 0.99+ |
Earth | LOCATION | 0.99+ |
second piece | QUANTITY | 0.99+ |
Both | QUANTITY | 0.99+ |
both | QUANTITY | 0.99+ |
66,000 volunteers | QUANTITY | 0.99+ |
two | QUANTITY | 0.99+ |
Las Vegas, Nevada | LOCATION | 0.99+ |
One | QUANTITY | 0.99+ |
United States | LOCATION | 0.99+ |
Qlik | ORGANIZATION | 0.99+ |
AAR | ORGANIZATION | 0.99+ |
Samir Shah | PERSON | 0.99+ |
this week | DATE | 0.99+ |
today | DATE | 0.99+ |
two fronts | QUANTITY | 0.98+ |
Qlik | PERSON | 0.98+ |
first thing | QUANTITY | 0.98+ |
six months | QUANTITY | 0.98+ |
HIPAA | TITLE | 0.98+ |
second thing | QUANTITY | 0.97+ |
Qliks | ORGANIZATION | 0.97+ |
two exciting guests | QUANTITY | 0.97+ |
one piece | QUANTITY | 0.97+ |
earlier this year | DATE | 0.96+ |
nearly 38 million members | QUANTITY | 0.96+ |
Qlik | TITLE | 0.95+ |
hundred percent | QUANTITY | 0.95+ |
first | QUANTITY | 0.95+ |
Jay Boisseau, Dell Technologies | SuperComputing 22
>>We are back in the final stretch at Supercomputing 22 here in Dallas. I'm your host Paul Gillum with my co-host Dave Nicholson, and we've been talking to so many smart people this week. It just, it makes, boggles my mind are next guest. J Poso is the HPC and AI technology strategist at Dell. Jay also has a PhD in astronomy from the University of Texas. And I'm guessing you were up watching the Artemis launch the other night? >>I, I wasn't. I really should have been, but, but I wasn't, I was in full super computing conference mode. So that means discussions at, you know, various venues with people into the wee hours. >>How did you make the transition from a PhD in astronomy to an HPC expert? >>It was actually really straightforward. I did theoretical astrophysics and I was modeling what white dwarfs look like when they create matter and then explode as type one A super Novi, which is a class of stars that blow up. And it's a very important class because they blow up almost exactly the same way. So if you know how bright they are physically, not just how bright they appear in the sky, but if you can determine from first principles how bright they're, then you have a standard ruler for the universe when they go off in a galaxy, you know how far the galaxy is about how faint it is. So to model these though, you had to understand equations of physics, including electron degeneracy pressure, as well as normal fluid dynamics kinds of of things. And so you were solving for an explosive burning front, ripping through something. And that required a supercomputer to have anywhere close to the fat fidelity to get a reasonable answer and, and hopefully some understanding. >>So I've always said electrons are degenerate. I've always said it and I, and I mentioned to Paul earlier, I said, finally we're gonna get a guest to consort through this whole dark energy dark matter thing for us. We'll do that after, after, after the segment. >>That's a whole different, >>So, well I guess super computing being a natural tool that you would use. What is, what do you do in your role as a strategist? >>So I'm in the product management team. I spend a lot of time talking to customers about what they want to do next. HPC customers are always trying to be maximally productive of what they've got, but always wanting to know what's coming next. Because if you think about it, we can't simulate the entire human body cell for cell on any supercomputer day. We can simulate parts of it, cell for cell or the whole body with macroscopic physics, but not at the, you know, atomic level, the entire organism. So we're always trying to build more powerful computers to solve larger problems with more fidelity and less approximations in it. And so I help people try to understand which technologies for their next system might give them the best advance in capabilities for their simulation work, their data analytics work, their AI work, et cetera. Another part of it is talking to our great technology partner ecosystem and learning about which technologies they have. Cause it feeds the first thing, right? So understanding what's coming, and Dell has a, we're very proud of our large partner ecosystem. We embrace many different partners in that with different capabilities. So understanding those helps understand what your future systems might be. That those are two of the major roles in it. Strategic customers and strategic technologies. >>So you've had four days to wander the, this massive floor here and lots of startups, lots of established companies doing interesting things. What have you seen this week that really excites you? >>So I'm gonna tell you a dirty little secret here. If you are working for someone who makes super computers, you don't get as much time to wander the floor as you would think because you get lots of meetings with people who really want to understand in an NDA way, not just in the public way that's on the floor, but what's, what are you not telling us on the floor? What's coming next? And so I've been in a large number of customer meetings as well as being on the floor. And while I can't obviously share the everything, that's a non-disclosure topic in those, some things that we're hearing a lot about, people are really concerned with power because they see the TDP on the roadmaps for all the silicon providers going way up. And so people with power comes heat as waste. And so that means cooling. >>So power and cooling has been a big topic here. Obviously accelerators are, are increasing in importance in hpc not just for AI calculations, but now also for simulation calculations. And we are very proud of the three new accelerator platforms we launched here at the show that are coming out in a quarter or so. Those are two of the big topics we've seen. You know, there's, as you walk the floor here, you see lots of interesting storage vendors. HPC community's been do doing storage the same way for roughly 20 years. But now we see a lot of interesting players in that space. We have some great things in storage now and some great things that, you know, are coming in a year or two as well. So it's, it's interesting to see that diversity of that space. And then there's always the fun, exciting topics like quantum computing. We unveiled our first hybrid classical quantum computing system here with I on Q and I can't say what the future holds in this, in this format, but I can say we believe strongly in the future of quantum computing and that this, that future will be integrated with the kind of classical computing infrastructure that we make and that will help make quantum computing more powerful downstream. >>Well, let's go down that rabbit hole because, oh boy, boy, quantum computing has been talked about for a long time. There was a lot of excitement about it four or five years ago, some of the major vendors were announcing quantum computers in the cloud. Excitement has kind of died down. We don't see a lot of activity around, no, not a lot of talk around commercial quantum computers, yet you're deep into this. How close are we to have having a true quantum computer or is it a, is it a hybrid? More >>Likely? So there are probably more than 20 and I think close to 40 companies trying different approaches to make quantum computers. So, you know, Microsoft's pursuing a topol topological approach, do a photonics based approach. I, on Q and i on trap approach. These are all different ways of trying to leverage the quantum properties of nature. We know the properties exist, we use 'em in other technologies. We know the physics, but trying the engineering is very difficult. It's very difficult. I mean, just like it was difficult at one point to split the atom. It's very difficult to build technologies that leverage quantum properties of nature in a consistent and reliable and durable way, right? So I, you know, I wouldn't wanna make a prediction, but I will tell you I'm an optimist. I believe that when a tremendous capability with, with tremendous monetary gain potential lines up with another incentive, national security engineering seems to evolve faster when those things line up, when there's plenty of investment and plenty of incentive things happen. >>So I think a lot of my, my friends in the office of the CTO at Dell Technologies, when they're really leading this effort for us, you know, they would say a few to several years probably I'm an optimist, so I believe that, you know, I, I believe that we will sell some of the solution we announced here in the next year for people that are trying to get their feet wet with quantum. And I believe we'll be selling multiple quantum hybrid classical Dell quantum computing systems multiple a year in a year or two. And then of course you hope it goes to tens and hundreds of, you know, by the end of the decade >>When people talk about, I'm talking about people writ large, super leaders in supercomputing, I would say Dell's name doesn't come up in conversations I have. What would you like them to know that they don't know? >>You know, I, I hope that's not true, but I, I, I guess I understand it. We are so good at making the products from which people make clusters that we're number one in servers, we're number one in enterprise storage. We're number one in so many areas of enterprise technology that I, I think in some ways being number one in those things detracts a little bit from a subset of the market that is a solution subset as opposed to a product subset. But, you know, depending on which analyst you talk to and how they count, we're number one or number two in the world in supercomputing revenue. We don't always do the biggest splashy systems. We do the, the frontier system at t, the HPC five system at ENI in Europe. That's the largest academic supercomputer in the world and the largest industrial super >>That's based the world on Dell. Dell >>On Dell hardware. Yep. But we, I think our vision is really that we want to help more people use HPC to solve more problems than any vendor in the world. And those problems are various scales. So we are really concerned about the more we're democratizing HPC to make it easier for more people to get in at any scale that their budget and workloads require, we're optimizing it to make sure that it's not just some parts they're getting, that they are validated to work together with maximum scalability and performance. And we have a great HPC and AI innovation lab that does this engineering work. Cuz you know, one of the myths is, oh, I can just go buy a bunch of servers from company X and a network from company Y and a storage system from company Z and then it'll all work as an equivalent cluster. Right? Not true. It'll probably work, but it won't be the highest performance, highest scalability, highest reliability. So we spend a lot of time optimizing and then we are doing things to try to advance the state of HPC as well. What our future systems look like in the second half of this decade might be very different than what they look like right. Now. >>You mentioned a great example of a limitation that we're running up against right now. You mentioned an entire human body as a, as a, as an organism >>Or any large system that you try to model at the atomic level, but it's a huge macro system, >>Right? So will we be able to reach milestones where we can get our arms entirely around something like an entire human organism with simply quantitative advances as opposed to qualitative advances? Right now, as an example, let's just, let's go down to the basics from a Dell perspective. You're in a season where microprocessor vendors are coming out with next gen stuff and those next NextGen microprocessors, GPUs and CPUs are gonna be plugged into NextGen motherboards, PCI e gen five, gen six coming faster memory, bigger memory, faster networking, whether it's NS or InfiniBand storage controllers, all bigger, better, faster, stronger. And I suspect that systems like Frontera, I don't know, but I suspect that a lot of the systems that are out there are not on necessarily what we would think of as current generation technology, but maybe they're n minus one as a practical matter. So, >>But yeah, I mean they have a lifetime, so Exactly. >>The >>Lifetime is longer than the evolution. >>That's the normal technologies. Yeah. So, so what some people miss is this is, this is the reality that when, when we move forward with the latest things that are being talked about here, it's often a two generation move for an individual, for an individual organization. Yep. >>So now some organizations will have multiple systems and they, the system's leapfrog and technology generations, even if one is their real large system, their next one might be newer technology, but smaller, the next one might be a larger one with newer technology and such. Yeah. So the, the biggest super computing sites are, are often running more than one HPC system that have been specifically designed with the latest technologies and, and designed and configured for maybe a different subset of their >>Workloads. Yeah. So, so the, the, to go back to kinda the, the core question, in your opinion, do we need that qualitative leap to something like quantum computing in order to get to the point, or is it simply a question of scale and power at the, at the, at the individual node level to get us to the point where we can in fact gain insight from a digital model of an entire human body, not just looking at a, not, not just looking at an at, at an organ. And to your point, it's not just about human body, any system that we would characterize as being chaotic today, so a weather system, whatever. Do you, are there any milestones that you're thinking of where you're like, wow, you know, I have, I, I understand everything that's going on, and I think we're, we're a year away. We're a, we're, we're a, we're a compute generation away from being able to gain insight out of systems that right now we can't simply because of scale. It's a very, very long question that I just asked you, but I think I, but hopefully, hopefully you're tracking it. What, what are your, what are your thoughts? What are these, what are these inflection points that we, that you've, in your mind? >>So I, I'll I'll start simple. Remember when we used to buy laptops and we worried about what gigahertz the clock speed was Exactly. Everybody knew the gigahertz of it, right? There's some tasks at which we're so good at making the hardware that now the primary issues are how great is the screen? How light is it, what's the battery life like, et cetera. Because for the set of applications on there, we we have enough compute power. We don't, you don't really need your laptop. Most people don't need their laptop to have twice as powerful a processor that actually rather up twice the battery life on it or whatnot, right? We make great laptops. We, we design for all of those, configure those parameters now. And what, you know, we, we see some customers want more of x, somewhat more of y but the, the general point is that the amazing progress in, in microprocessors, it's sufficient for most of the workloads at that level. Now let's go to HPC level or scientific and technical level. And when it needs hpc, if you're trying to model the orbit of the moon around the earth, you don't really need a super computer for that. You can get a highly accurate model on a, on a workstation, on a server, no problem. It won't even really make it break a sweat. >>I had to do it with a slide rule >>That, >>That >>Might make you break a sweat. Yeah. But to do it with a, you know, a single body orbiting with another body, I say orbiting around, but we both know it's really, they're, they're both ordering the center of mass. It's just that if one is much larger, it seems like one's going entirely around the other. So that's, that's not a super computing problem. What about the stars in a galaxy trying to understand how galaxies form spiral arms and how they spur star formation. Right now you're talking a hundred billion stars plus a massive amount of inter stellar medium in there. So can you solve that on that server? Absolutely not. Not even close. Can you solve it on the largest super computer in the world today? Yes and no. You can solve it with approximations on the largest super computer in the world today. But there's a lot of approximations that go into even that. >>The good news is the simulations produce things that we see through our great telescopes. So we know the approximations are sufficient to get good fidelity, but until you really are doing direct numerical simulation of every particle, right? Right. Which is impossible to do. You need a computer as big as the universe to do that. But the approximations and the science in the science as well as the known parts of the science are good enough to give fidelity. So, and answer your question, there's tremendous number of problem scales. There are problems in every field of science and study that exceed the der direct numerical simulation capabilities of systems today. And so we always want more computing power. It's not macho flops, it's real, we need it, we need exo flops and we will need zeta flops beyond that and yada flops beyond that. But an increasing number of problems will be solved as we keep working to solve problems that are farther out there. So in terms of qualitative steps, I do think technologies like quantum computing, to be clear as part of a hybrid classical quantum system, because they're really just accelerators for certain kinds of algorithms, not for general purpose algorithms. I do think advances like that are gonna be necessary to solve some of the very hardest problem. It's easy to actually formulate an optimization problem that is absolutely intractable by the larger systems in the world today, but quantum systems happen to be in theory when they're big and stable enough, great at that kind of problem. >>I, that should be understood. Quantum is not a cure all for absolutely. For the, for the shortage of computing power. It's very good for certain, certain >>Problems. And as you said at this super computing, we see some quantum, but it's a little bit quieter than I probably expected. I think we're in a period now of everybody saying, okay, there's been a lot of buzz. We know it's gonna be real, but let's calm down a little bit and figure out what the right solutions are. And I'm very proud that we offered one of those >>At the show. We, we have barely scratched the surface of what we could talk about as we get into intergalactic space, but unfortunately we only have so many minutes and, and we're out of them. Oh, >>I'm >>J Poso, HPC and AI technology strategist at Dell. Thanks for a fascinating conversation. >>Thanks for having me. Happy to do it anytime. >>We'll be back with our last interview of Supercomputing 22 in Dallas. This is Paul Gillen with Dave Nicholson. Stay with us.
SUMMARY :
We are back in the final stretch at Supercomputing 22 here in Dallas. So that means discussions at, you know, various venues with people into the wee hours. the sky, but if you can determine from first principles how bright they're, then you have a standard ruler for the universe when We'll do that after, after, after the segment. What is, what do you do in your role as a strategist? We can simulate parts of it, cell for cell or the whole body with macroscopic physics, What have you seen this week that really excites you? not just in the public way that's on the floor, but what's, what are you not telling us on the floor? the kind of classical computing infrastructure that we make and that will help make quantum computing more in the cloud. We know the properties exist, we use 'em in other technologies. And then of course you hope it goes to tens and hundreds of, you know, by the end of the decade What would you like them to know that they don't know? detracts a little bit from a subset of the market that is a solution subset as opposed to a product subset. That's based the world on Dell. So we are really concerned about the more we're You mentioned a great example of a limitation that we're running up against I don't know, but I suspect that a lot of the systems that are out there are not on That's the normal technologies. but smaller, the next one might be a larger one with newer technology and such. And to your point, it's not just about human of the moon around the earth, you don't really need a super computer for that. But to do it with a, you know, a single body orbiting with another are sufficient to get good fidelity, but until you really are doing direct numerical simulation I, that should be understood. And as you said at this super computing, we see some quantum, but it's a little bit quieter than We, we have barely scratched the surface of what we could talk about as we get into intergalactic J Poso, HPC and AI technology strategist at Dell. Happy to do it anytime. This is Paul Gillen with Dave Nicholson.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Dave Nicholson | PERSON | 0.99+ |
Paul Gillum | PERSON | 0.99+ |
Jay Boisseau | PERSON | 0.99+ |
Paul | PERSON | 0.99+ |
Jay | PERSON | 0.99+ |
Dallas | LOCATION | 0.99+ |
Europe | LOCATION | 0.99+ |
J Poso | PERSON | 0.99+ |
Dell | ORGANIZATION | 0.99+ |
tens | QUANTITY | 0.99+ |
two | QUANTITY | 0.99+ |
Paul Gillen | PERSON | 0.99+ |
Dell Technologies | ORGANIZATION | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
University of Texas | ORGANIZATION | 0.99+ |
first | QUANTITY | 0.99+ |
four | DATE | 0.99+ |
first principles | QUANTITY | 0.99+ |
next year | DATE | 0.99+ |
more than 20 | QUANTITY | 0.99+ |
two generation | QUANTITY | 0.98+ |
Supercomputing 22 | TITLE | 0.98+ |
one point | QUANTITY | 0.98+ |
twice | QUANTITY | 0.98+ |
hundreds | QUANTITY | 0.98+ |
today | DATE | 0.97+ |
five years ago | DATE | 0.97+ |
both | QUANTITY | 0.97+ |
earth | LOCATION | 0.96+ |
more than one | QUANTITY | 0.96+ |
one | QUANTITY | 0.96+ |
a year | QUANTITY | 0.96+ |
this week | DATE | 0.96+ |
first thing | QUANTITY | 0.95+ |
20 years | QUANTITY | 0.94+ |
four days | QUANTITY | 0.93+ |
second half of this decade | DATE | 0.93+ |
ENI | ORGANIZATION | 0.91+ |
Z | ORGANIZATION | 0.9+ |
40 companies | QUANTITY | 0.9+ |
e gen five | COMMERCIAL_ITEM | 0.86+ |
a year | QUANTITY | 0.84+ |
hundred billion stars | QUANTITY | 0.83+ |
HPC | ORGANIZATION | 0.83+ |
three new accelerator platforms | QUANTITY | 0.81+ |
end of the decade | DATE | 0.8+ |
hpc | ORGANIZATION | 0.8+ |
Frontera | ORGANIZATION | 0.8+ |
single body | QUANTITY | 0.79+ |
X | ORGANIZATION | 0.76+ |
NextGen | ORGANIZATION | 0.73+ |
Supercomputing 22 | ORGANIZATION | 0.69+ |
five system | QUANTITY | 0.62+ |
gen six | QUANTITY | 0.61+ |
number one | QUANTITY | 0.57+ |
approximations | QUANTITY | 0.53+ |
particle | QUANTITY | 0.53+ |
a quarter | QUANTITY | 0.52+ |
Y | ORGANIZATION | 0.49+ |
type | OTHER | 0.49+ |
22 | OTHER | 0.49+ |
Dhabaleswar “DK” Panda, Ohio State State University | SuperComputing 22
>>Welcome back to The Cube's coverage of Supercomputing Conference 2022, otherwise known as SC 22 here in Dallas, Texas. This is day three of our coverage, the final day of coverage here on the exhibition floor. I'm Dave Nicholson, and I'm here with my co-host, tech journalist extraordinaire, Paul Gillum. How's it going, >>Paul? Hi, Dave. It's going good. >>And we have a wonderful guest with us this morning, Dr. Panda from the Ohio State University. Welcome Dr. Panda to the Cube. >>Thanks a lot. Thanks a lot to >>Paul. I know you're, you're chopping at >>The bit, you have incredible credentials, over 500 papers published. The, the impact that you've had on HPC is truly remarkable. But I wanted to talk to you specifically about a product project you've been working on for over 20 years now called mva, high Performance Computing platform that's used by more than 32 organ, 3,200 organizations across 90 countries. You've shepherded this from, its, its infancy. What is the vision for what MVA will be and and how is it a proof of concept that others can learn from? >>Yeah, Paul, that's a great question to start with. I mean, I, I started with this conference in 2001. That was the first time I came. It's very coincidental. If you remember the Finman Networking Technology, it was introduced in October of 2000. Okay. So in my group, we were working on NPI for Marinette Quadrics. Those are the old technology, if you can recollect when Finman was there, we were the very first one in the world to really jump in. Nobody knew how to use Infin van in an HPC system. So that's how the Happy Project was born. And in fact, in super computing 2002 on this exhibition floor in Baltimore, we had the first demonstration, the open source happy, actually is running on an eight node infinite van clusters, eight no zeros. And that was a big challenge. But now over the years, I means we have continuously worked with all infinite van vendors, MPI Forum. >>We are a member of the MPI Forum and also all other network interconnect. So we have steadily evolved this project over the last 21 years. I'm very proud of my team members working nonstop, continuously bringing not only performance, but scalability. If you see now INFIN event are being deployed in 8,000, 10,000 node clusters, and many of these clusters actually use our software, stack them rapid. So, so we have done a lot of, like our focuses, like we first do research because we are in academia. We come up with good designs, we publish, and in six to nine months, we actually bring it to the open source version and people can just download and then use it. And that's how currently it's been used by more than 3000 orange in 90 countries. And, but the interesting thing is happening, your second part of the question. Now, as you know, the field is moving into not just hvc, but ai, big data, and we have those support. This is where like we look at the vision for the next 20 years, we want to design this MPI library so that not only HPC but also all other workloads can take advantage of it. >>Oh, we have seen libraries that become a critical develop platform supporting ai, TensorFlow, and, and the pie torch and, and the emergence of, of, of some sort of default languages that are, that are driving the community. How, how important are these frameworks to the, the development of the progress making progress in the HPC world? >>Yeah, no, those are great. I mean, spite our stencil flow, I mean, those are the, the now the bread and butter of deep learning machine learning. Am I right? But the challenge is that people use these frameworks, but continuously models are becoming larger. You need very first turnaround time. So how do you train faster? How do you do influencing faster? So this is where HPC comes in and what exactly what we have done is actually we have linked floor fighters to our happy page because now you see the MPI library is running on a million core system. Now your fighters and tenor four clan also be scaled to to, to those number of, large number of course and gps. So we have actually done that kind of a tight coupling and that helps the research to really take advantage of hpc. >>So if, if a high school student is thinking in terms of interesting computer science, looking for a place, looking for a university, Ohio State University, bruns, world renowned, widely known, but talk about what that looks like from a day on a day to day basis in terms of the opportunity for undergrad and graduate students to participate in, in the kind of work that you do. What is, what does that look like? And is, and is that, and is that a good pitch to for, for people to consider the university? >>Yes. I mean, we continuously, from a university perspective, by the way, the Ohio State University is one of the largest single campus in, in us, one of the top three, top four. We have 65,000 students. Wow. It's one of the very largest campus. And especially within computer science where I am located, high performance computing is a very big focus. And we are one of the, again, the top schools all over the world for high performance computing. And we also have very strength in ai. So we always encourage, like the new students who like to really work on top of the art solutions, get exposed to the concepts, principles, and also practice. Okay. So, so we encourage those people that wish you can really bring you those kind of experience. And many of my past students, staff, they're all in top companies now, have become all big managers. >>How, how long, how long did you say you've been >>At 31 >>Years? 31 years. 31 years. So, so you, you've had people who weren't alive when you were already doing this stuff? That's correct. They then were born. Yes. They then grew up, yes. Went to university graduate school, and now they're on, >>Now they're in many top companies, national labs, all over the universities, all over the world. So they have been trained very well. Well, >>You've, you've touched a lot of lives, sir. >>Yes, thank you. Thank >>You. We've seen really a, a burgeoning of AI specific hardware emerge over the last five years or so. And, and architectures going beyond just CPUs and GPUs, but to Asics and f PGAs and, and accelerators, does this excite you? I mean, are there innovations that you're seeing in this area that you think have, have great promise? >>Yeah, there is a lot of promise. I think every time you see now supercomputing technology, you see there is sometime a big barrier comes barrier jump. Rather I'll say, new technology comes some disruptive technology, then you move to the next level. So that's what we are seeing now. A lot of these AI chips and AI systems are coming up, which takes you to the next level. But the bigger challenge is whether it is cost effective or not, can that be sustained longer? And this is where commodity technology comes in, which commodity technology tries to take you far longer. So we might see like all these likes, Gaudi, a lot of new chips are coming up, can they really bring down the cost? If that cost can be reduced, you will see a much more bigger push for AI solutions, which are cost effective. >>What, what about on the interconnect side of things, obvi, you, you, your, your start sort of coincided with the initial standards for Infin band, you know, Intel was very, very, was really big in that, in that architecture originally. Do you see interconnects like RDMA over converged ethernet playing a part in that sort of democratization or commoditization of things? Yes. Yes. What, what are your thoughts >>There for internet? No, this is a great thing. So, so we saw the infinite man coming. Of course, infinite Man is, commod is available. But then over the years people have been trying to see how those RDMA mechanisms can be used for ethernet. And then Rocky has been born. So Rocky has been also being deployed. But besides these, I mean now you talk about Slingshot, the gray slingshot, it is also an ethernet based systems. And a lot of those RMA principles are actually being used under the hood. Okay. So any modern networks you see, whether it is a Infin and Rocky Links art network, rock board network, you name any of these networks, they are using all the very latest principles. And of course everybody wants to make it commodity. And this is what you see on the, on the slow floor. Everybody's trying to compete against each other to give you the best performance with the lowest cost, and we'll see whoever wins over the years. >>Sort of a macroeconomic question, Japan, the US and China have been leapfrogging each other for a number of years in terms of the fastest supercomputer performance. How important do you think it is for the US to maintain leadership in this area? >>Big, big thing, significantly, right? We are saying that I think for the last five to seven years, I think we lost that lead. But now with the frontier being the number one, starting from the June ranking, I think we are getting that leadership back. And I think it is very critical not only for fundamental research, but for national security trying to really move the US to the leading edge. So I hope us will continue to lead the trend for the next few years until another new system comes out. >>And one of the gating factors, there is a shortage of people with data science skills. Obviously you're doing what you can at the university level. What do you think can change at the secondary school level to prepare students better to, for data science careers? >>Yeah, I mean that is also very important. I mean, we, we always call like a pipeline, you know, that means when PhD levels we are expecting like this even we want to students to get exposed to, to, to many of these concerts from the high school level. And, and things are actually changing. I mean, these days I see a lot of high school students, they, they know Python, how to program in Python, how to program in sea object oriented things. Even they're being exposed to AI at that level. So I think that is a very healthy sign. And in fact we, even from Ohio State side, we are always engaged with all this K to 12 in many different programs and then gradually trying to take them to the next level. And I think we need to accelerate also that in a very significant manner because we need those kind of a workforce. It is not just like a building a system number one, but how do we really utilize it? How do we utilize that science? How do we propagate that to the community? Then we need all these trained personal. So in fact in my group, we are also involved in a lot of cyber training activities for HPC professionals. So in fact, today there is a bar at 1 1 15 I, yeah, I think 1215 to one 15. We'll be talking more about that. >>About education. >>Yeah. Cyber training, how do we do for professionals? So we had a funding together with my co-pi, Dr. Karen Tom Cook from Ohio Super Center. We have a grant from NASA Science Foundation to really educate HPT professionals about cyber infrastructure and ai. Even though they work on some of these things, they don't have the complete knowledge. They don't get the time to, to learn. And the field is moving so fast. So this is how it has been. We got the initial funding, and in fact, the first time we advertised in 24 hours, we got 120 application, 24 hours. We couldn't even take all of them. So, so we are trying to offer that in multiple phases. So, so there is a big need for those kind of training sessions to take place. I also offer a lot of tutorials at all. Different conference. We had a high performance networking tutorial. Here we have a high performance deep learning tutorial, high performance, big data tutorial. So I've been offering tutorials at, even at this conference since 2001. Good. So, >>So in the last 31 years, the Ohio State University, as my friends remind me, it is properly >>Called, >>You've seen the world get a lot smaller. Yes. Because 31 years ago, Ohio, in this, you know, of roughly in the, in the middle of North America and the United States was not as connected as it was to everywhere else in the globe. So that's, that's pro that's, I i it kind of boggles the mind when you think of that progression over 31 years, but globally, and we talk about the world getting smaller, we're sort of in the thick of, of the celebratory seasons where, where many, many groups of people exchange gifts for varieties of reasons. If I were to offer you a holiday gift, that is the result of what AI can deliver the world. Yes. What would that be? What would, what would, what would the first thing be? This is, this is, this is like, it's, it's like the genie, but you only get one wish. >>I know, I know. >>So what would the first one be? >>Yeah, it's very hard to answer one way, but let me bring a little bit different context and I can answer this. I, I talked about the happy project and all, but recently last year actually we got awarded an S f I institute award. It's a 20 million award. I am the overall pi, but there are 14 universities involved. >>And who is that in that institute? >>What does that Oh, the I ici. C e. Okay. I cycle. You can just do I cycle.ai. Okay. And that lies with what exactly what you are trying to do, how to bring lot of AI for masses, democratizing ai. That's what is the overall goal of this, this institute, think of like a, we have three verticals we are working think of like one is digital agriculture. So I'll be, that will be my like the first ways. How do you take HPC and AI to agriculture the world as though we just crossed 8 billion people. Yeah, that's right. We need continuous food and food security. How do we grow food with the lowest cost and with the highest yield? >>Water >>Consumption. Water consumption. Can we minimize or minimize the water consumption or the fertilization? Don't do blindly. Technologies are out there. Like, let's say there is a weak field, A traditional farmer see that, yeah, there is some disease, they will just go and spray pesticides. It is not good for the environment. Now I can fly it drone, get images of the field in the real time, check it against the models, and then it'll tell that, okay, this part of the field has disease. One, this part of the field has disease. Two, I indicate to the, to the tractor or the sprayer saying, okay, spray only pesticide one, you have pesticide two here. That has a big impact. So this is what we are developing in that NSF A I institute I cycle ai. We also have, we have chosen two additional verticals. One is animal ecology, because that is very much related to wildlife conservation, climate change, how do you understand how the animals move? Can we learn from them? And then see how human beings need to act in future. And the third one is the food insecurity and logistics. Smart food distribution. So these are our three broad goals in that institute. How do we develop cyber infrastructure from below? Combining HP c AI security? We have, we have a large team, like as I said, there are 40 PIs there, 60 students. We are a hundred members team. We are working together. So, so that will be my wish. How do we really democratize ai? >>Fantastic. I think that's a great place to wrap the conversation here On day three at Supercomputing conference 2022 on the cube, it was an honor, Dr. Panda working tirelessly at the Ohio State University with his team for 31 years toiling in the field of computer science and the end result, improving the lives of everyone on Earth. That's not a stretch. If you're in high school thinking about a career in computer science, keep that in mind. It isn't just about the bits and the bobs and the speeds and the feeds. It's about serving humanity. Maybe, maybe a little, little, little too profound a statement, I would argue not even close. I'm Dave Nicholson with the Queue, with my cohost Paul Gillin. Thank you again, Dr. Panda. Stay tuned for more coverage from the Cube at Super Compute 2022 coming up shortly. >>Thanks a lot.
SUMMARY :
Welcome back to The Cube's coverage of Supercomputing Conference 2022, And we have a wonderful guest with us this morning, Dr. Thanks a lot to But I wanted to talk to you specifically about a product project you've So in my group, we were working on NPI for So we have steadily evolved this project over the last 21 years. that are driving the community. So we have actually done that kind of a tight coupling and that helps the research And is, and is that, and is that a good pitch to for, So, so we encourage those people that wish you can really bring you those kind of experience. you were already doing this stuff? all over the world. Thank this area that you think have, have great promise? I think every time you see now supercomputing technology, with the initial standards for Infin band, you know, Intel was very, very, was really big in that, And this is what you see on the, Sort of a macroeconomic question, Japan, the US and China have been leapfrogging each other for a number the number one, starting from the June ranking, I think we are getting that leadership back. And one of the gating factors, there is a shortage of people with data science skills. And I think we need to accelerate also that in a very significant and in fact, the first time we advertised in 24 hours, we got 120 application, that's pro that's, I i it kind of boggles the mind when you think of that progression over 31 years, I am the overall pi, And that lies with what exactly what you are trying to do, to the tractor or the sprayer saying, okay, spray only pesticide one, you have pesticide two here. I think that's a great place to wrap the conversation here On
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Dave Nicholson | PERSON | 0.99+ |
Paul Gillum | PERSON | 0.99+ |
Dave | PERSON | 0.99+ |
Paul Gillin | PERSON | 0.99+ |
October of 2000 | DATE | 0.99+ |
Paul | PERSON | 0.99+ |
NASA Science Foundation | ORGANIZATION | 0.99+ |
2001 | DATE | 0.99+ |
Baltimore | LOCATION | 0.99+ |
8,000 | QUANTITY | 0.99+ |
14 universities | QUANTITY | 0.99+ |
31 years | QUANTITY | 0.99+ |
20 million | QUANTITY | 0.99+ |
24 hours | QUANTITY | 0.99+ |
last year | DATE | 0.99+ |
Karen Tom Cook | PERSON | 0.99+ |
60 students | QUANTITY | 0.99+ |
Ohio State University | ORGANIZATION | 0.99+ |
90 countries | QUANTITY | 0.99+ |
six | QUANTITY | 0.99+ |
Earth | LOCATION | 0.99+ |
Panda | PERSON | 0.99+ |
today | DATE | 0.99+ |
65,000 students | QUANTITY | 0.99+ |
3,200 organizations | QUANTITY | 0.99+ |
North America | LOCATION | 0.99+ |
Python | TITLE | 0.99+ |
United States | LOCATION | 0.99+ |
Dallas, Texas | LOCATION | 0.99+ |
over 500 papers | QUANTITY | 0.99+ |
June | DATE | 0.99+ |
One | QUANTITY | 0.99+ |
more than 32 organ | QUANTITY | 0.99+ |
120 application | QUANTITY | 0.99+ |
Ohio | LOCATION | 0.99+ |
more than 3000 orange | QUANTITY | 0.99+ |
first ways | QUANTITY | 0.99+ |
one | QUANTITY | 0.99+ |
nine months | QUANTITY | 0.99+ |
40 PIs | QUANTITY | 0.99+ |
Asics | ORGANIZATION | 0.99+ |
MPI Forum | ORGANIZATION | 0.98+ |
China | ORGANIZATION | 0.98+ |
Two | QUANTITY | 0.98+ |
Ohio State State University | ORGANIZATION | 0.98+ |
8 billion people | QUANTITY | 0.98+ |
Intel | ORGANIZATION | 0.98+ |
HP | ORGANIZATION | 0.97+ |
Dr. | PERSON | 0.97+ |
over 20 years | QUANTITY | 0.97+ |
US | ORGANIZATION | 0.97+ |
Finman | ORGANIZATION | 0.97+ |
Rocky | PERSON | 0.97+ |
Japan | ORGANIZATION | 0.97+ |
first time | QUANTITY | 0.97+ |
first demonstration | QUANTITY | 0.96+ |
31 years ago | DATE | 0.96+ |
Ohio Super Center | ORGANIZATION | 0.96+ |
three broad goals | QUANTITY | 0.96+ |
one wish | QUANTITY | 0.96+ |
second part | QUANTITY | 0.96+ |
31 | QUANTITY | 0.96+ |
Cube | ORGANIZATION | 0.95+ |
eight | QUANTITY | 0.95+ |
over 31 years | QUANTITY | 0.95+ |
10,000 node clusters | QUANTITY | 0.95+ |
day three | QUANTITY | 0.95+ |
first | QUANTITY | 0.95+ |
INFIN | EVENT | 0.94+ |
seven years | QUANTITY | 0.94+ |
Dhabaleswar “DK” Panda | PERSON | 0.94+ |
three | QUANTITY | 0.93+ |
S f I institute | TITLE | 0.93+ |
first thing | QUANTITY | 0.93+ |
David Schmidt, Dell Technologies and Scott Clark, Intel | SuperComputing 22
(techno music intro) >> Welcome back to theCube's coverage of SuperComputing Conference 2022. We are here at day three covering the amazing events that are occurring here. I'm Dave Nicholson, with my co-host Paul Gillin. How's it goin', Paul? >> Fine, Dave. Winding down here, but still plenty of action. >> Interesting stuff. We got a full day of coverage, and we're having really, really interesting conversations. We sort of wrapped things up at Supercomputing 22 here in Dallas. I've got two very special guests with me, Scott from Intel and David from Dell, to talk about yeah supercomputing, but guess what? We've got some really cool stuff coming up after this whole thing wraps. So not all of the holiday gifts have been unwrapped yet, kids. Welcome gentlemen. >> Thanks so much for having us. >> Thanks for having us. >> So, let's start with you, David. First of all, explain the relationship in general between Dell and Intel. >> Sure, so obviously Intel's been an outstanding partner. We built some great solutions over the years. I think the market reflects that. Our customers tell us that. The feedback's strong. The products you see out here this week at Supercompute, you know, put that on display for everybody to see. And then as we think about AI in machine learning, there's so many different directions we need to go to help our customers deliver AI outcomes. Right, so we recognize that AI has kind of spread outside of just the confines of everything we've seen here this week. And now we've got really accessible AI use cases that we can explain to friends and family. We can talk about going into retail environments and how AI is being used to track inventory, to monitor traffic, et cetera. But really what that means to us as a bunch of hardware folks is we have to deliver the right platforms and the right designs for a variety of environments, both inside and outside the data center. And so if you look at our portfolio, we have some great products here this week, but we also have other platforms, like the XR4000, our shortest rack server ever that's designed to go into Edge environments, but is also built for those Edge AI use cases that supports GPUs. It supports AI on the CPU as well. And so there's a lot of really compelling platforms that we're starting to talk about, have already been talking about, and it's going to really enable our customers to deliver AI in a variety of ways. >> You mentioned AI on the CPU. Maybe this is a question for Scott. What does that mean, AI on the CPU? >> Well, as David was talking about, we're just seeing this explosion of different use cases. And some of those on the Edge, some of them in the Cloud, some of them on Prem. But within those individual deployments, there's often different ways that you can do AI, whether that's training or inference. And what we're seeing is a lot of times the memory locality matters quite a bit. You don't want to have to pay necessarily a cost going across the PCI express bus, especially with some of our newer products like the CPU Max series, where you can have a huge about of high bandwidth memory just sitting right on the CPU. Things that traditionally would have been accelerator only, can now live on a CPU, and that includes both on the inference side. We're seeing some really great things with images, where you might have a giant medical image that you need to be able to do extremely high resolution inference on or even text, where you might have a huge corpus of extremely sparse text that you need to be able to randomly sample very efficiently. >> So how are these needs influencing the evolution of Intel CPU architectures? >> So, we're talking to our customers. We're talking to our partners. This presents both an opportunity, but also a challenge with all of these different places that you can put these great products, as well as applications. And so we're very thoughtfully trying to go to the market, see where their needs are, and then meet those needs. This industry obviously has a lot of great players in it, and it's no longer the case that if you build it, they will come. So what we're doing is we're finding where are those choke points, how can we have that biggest difference? Sometimes there's generational leaps, and I know David can speak to this, can be huge from one system to the next just because everything's accelerated on the software side, the hardware side, and the platforms themselves. >> That's right, and we're really excited about that leap. If you take what Scott just described, we've been writing white papers, our team with Scott's team, we've been talking about those types of use cases using doing large image analysis and leveraging system memory, leveraging the CPU to do that, we've been talking about that for several generations now. Right, going back to Cascade Lake, going back to what we would call 14th generation power Edge. And so now as we prepare and continue to unveil, kind of we're in launch season, right, you and I were talking about how we're in launch season. As we continue to unveil and launch more products, the performance improvements are just going to be outstanding and we'll continue that evolution that Scott described. >> Yeah, I'd like to applaud Dell just for a moment for its restraint. Because I know you could've come in and taken all of the space in the convention center to show everything that you do. >> Would have loved to. >> In the HPC space. Now, worst kept secrets on earth at this point. Vying for number one place is the fact that there is a new Mission Impossible movie coming. And there's also new stuff coming from Intel. I know, I think allegedly we're getting close. What can you share with us on that front? And I appreciate it if you can't share a ton of specifics, but where are we going? David just alluded to it. >> Yeah, as David talked about, we've been working on some of these things for many years. And it's just, this momentum is continuing to build, both in respect to some of our hardware investments. We've unveiled some things both here, both on the CPU side and the accelerator side, but also on the software side. OneAPI is gathering more and more traction and the ecosystem is continuing to blossom. Some of our AI and HPC workloads, and the combination thereof, are becoming more and more viable, as well as displacing traditional approaches to some of these problems. And it's this type of thing where it's not linear. It all builds on itself. And we've seen some of these investments that we've made for a better half of a decade starting to bear fruit, but that's, it's not just a one time thing. It's just going to continue to roll out, and we're going to be seeing more and more of this. >> So I want to follow up on something that you mentioned. I don't know if you've ever heard that the Charlie Brown saying that sometimes the most discouraging thing can be to have immense potential. Because between Dell and Intel, you offer so many different versions of things from a fit for function perspective. As a practical matter, how do you work with customers, and maybe this is a question for you, David. How do you work with customers to figure out what the right fit is? >> I'll give you a great example. Just this week, customer conversations, and we can put it in terms of kilowatts to rack, right. How many kilowatts are you delivering at a rack level inside your data center? I've had an answer anywhere from five all the way up to 90. There's some that have been a bit higher that probably don't want to talk about those cases, kind of customers we're meeting with very privately. But the range is really, really large, right, and there's a variety of environments. Customers might be ready for liquid today. They may not be ready for it. They may want to maximize air cooling. Those are the conversations, and then of course it all maps back to the workloads they wish to enable. AI is an extremely overloaded term. We don't have enough time to talk about all the different things that tuck under that umbrella, but the workloads and the outcomes they wish to enable, we have the right solutions. And then we take it a step further by considering where they are today, where they need to go. And I just love that five to 90 example of not every customer has an identical cookie cutter environment, so we've got to have the right platforms, the right solutions, for the right workloads, for the right environments. >> So, I like to dive in on this power issue, to give people who are watching an idea. Because we say five kilowatts, 90 kilowatts, people are like, oh wow, hmm, what does that mean? 90 kilowatts is more than 100 horse power if you want to translate it over. It's a massive amount of power, so if you think of EV terms. You know, five kilowatts is about a hairdryer's around a kilowatt, 1,000 watts, right. But the point is, 90 kilowatts in a rack, that's insane. That's absolutely insane. The heat that that generates has got to be insane, and so it's important. >> Several houses in the size of a closet. >> Exactly, exactly. Yeah, in a rack I explain to people, you know, it's like a refrigerator. But, so in the arena of thermals, I mean is that something during the development of next gen architectures, is that something that's been taken into consideration? Or is it just a race to die size? >> Well, you definitely have to take thermals into account, as well as just the power of consumption themselves. I mean, people are looking at their total cost of ownership. They're looking at sustainability. And at the end of the day, they need to solve a problem. There's many paths up that mountain, and it's about choosing that right path. We've talked about this before, having extremely thoughtful partners, we're just not going to common-torily try every single solution. We're going to try to find the ones that fit that right mold for that customer. And we're seeing more and more people, excuse me, care about this, more and more people wanting to say, how do I do this in the most sustainable way? How do I do this in the most reliable way, given maybe different fluctuations in their power consumption or their power pricing? We're developing more software tools and obviously partnering with great partners to make sure we do this in the most thoughtful way possible. >> Intel put a lot of, made a big investment by buying Habana Labs for its acceleration technology. They're based in Israel. You're based on the west coast. How are you coordinating with them? How will the Habana technology work its way into more mainstream Intel products? And how would Dell integrate those into your servers? >> Good question. I guess I can kick this off. So Habana is part of the Intel family now. They've been integrated in. It's been a great journey with them, as some of their products have launched on AWS, and they've had some very good wins on MLPerf and things like that. I think it's about finding the right tool for the job, right. Not every problem is a nail, so you need more than just a hammer. And so we have the Xeon series, which is incredibly flexible, can do so many different things. It's what we've come to know and love. On the other end of the spectrum, we obviously have some of these more deep learning focused accelerators. And if that's your problem, then you can solve that problem in incredibly efficient ways. The accelerators themselves are somewhere in the middle, so you get that kind of Goldilocks zone of flexibility and power. And depending on your use case, depending on what you know your workloads are going to be day in and day out, one of these solutions might work better for you. A combination might work better for you. Hybrid compute starts to become really interesting. Maybe you have something that you need 24/7, but then you only need a burst to certain things. There's a lot of different options out there. >> The portfolio approach. >> Exactly. >> And then what I love about the work that Scott's team is doing, customers have told us this week in our meetings, they do not want to spend developer's time porting code from one stack to the next. They want that flexibility of choice. Everyone does. We want it in our lives, in our every day lives. They need that flexibility of choice, but they also, there's an opportunity cost when their developers have to choose to port some code over from one stack to another or spend time improving algorithms and doing things that actually generate, you know, meaningful outcomes for their business or their research. And so if they are, you know, desperately searching I would say for that solution and for help in that area, and that's what we're working to enable soon. >> And this is what I love about oneAPI, our software stack, it's open first, heterogeneous first. You can take SYCL code, it can run on competitor's hardware. It can run on Intel hardware. It's one of these things that you have to believe long term, the future is open. Wall gardens, the walls eventually crumble. And we're just trying to continue to invest in that ecosystem to make sure that the in-developer at the end of the day really gets what they need to do, which is solving their business problem, not tinkering with our drivers. >> Yeah, I actually saw an interesting announcement that I hadn't been tracking. I hadn't been tracking this area. Chiplets, and the idea of an open standard where competitors of Intel from a silicone perspective can have their chips integrated via a universal standard. And basically you had the top three silicone vendors saying, yeah, absolutely, let's work together. Cats and dogs. >> Exactly, but at the end of the day, it's whatever menagerie solves the problem. >> Right, right, exactly. And of course Dell can solve it from any angle. >> Yeah, we need strong partners to build the platforms to actually do it. At the end of the day, silicone without software is just sand. Sand with silicone is poorly written prose. But without an actual platform to put it on, it's nothing, it's a box that sits in the corner. >> David, you mentioned that 90% of power age servers now support GPUs. So how is this high-performing, the growth of high performance computing, the demand, influencing the evolution of your server architecture? >> Great question, a couple of ways. You know, I would say 90% of our platforms support GPUs. 100% of our platforms support AI use cases. And it goes back to the CPU compute stack. As we look at how we deliver different form factors for customers, we go back to that range, I said that power range this week of how do we enable the right air coolant solutions? How do we deliver the right liquid cooling solutions, so that wherever the customer is in their environment, and whatever footprint they have, we're ready to meet it? That's something you'll see as we go into kind of the second half of launch season and continue rolling out products. You're going to see some very compelling solutions, not just in air cooling, but liquid cooling as well. >> You want to be more specific? >> We can't unveil everything at Supercompute. We have a lot of great stuff coming up here in the next few months, so. >> It's kind of like being at a great restaurant when they offer you dessert, and you're like yeah, dessert would be great, but I just can't take anymore. >> It's a multi course meal. >> At this point. Well, as we wrap, I've got one more question for each of you. Same question for each of you. When you think about high performance computing, super computing, all of the things that you're doing in your partnership, driving artificial intelligence, at that tip of the spear, what kind of insights are you looking forward to us being able to gain from this technology? In other words, what cool thing, what do you think is cool out there from an AI perspective? What problem do you think we can solve in the near future? What problems would you like to solve? What gets you out of bed in the morning? Cause it's not the little, it's not the bits and the bobs and the speeds and the feats, it's what we're going to do with them, so what do you think, David? >> I'll give you an example. And I think, I saw some of my colleagues talk about this earlier in the week, but for me what we could do in the past two years to unable our customers in a quarantine pandemic environment, we were delivering platforms and solutions to help them do their jobs, help them carry on in their lives. And that's just one example, and if I were to map that forward, it's about enabling that human progress. And it's, you know, you ask a 20 year version of me 20 years ago, you know, if you could imagine some of these things, I don't know what kind of answer you would get. And so mapping forward next decade, next two decades, I can go back to that example of hey, we did great things in the past couple of years to enable our customers. Just imagine what we're going to be able to do going forward to enable that human progress. You know, there's great use cases, there's great image analysis. We talked about some. The images that Scott was referring to had to do with taking CAT scan images and being able to scan them for tumors and other things in the healthcare industry. That is stuff that feels good when you get out of bed in the morning, to know that you're enabling that type of progress. >> Scott, quick thoughts? >> Yeah, and I'll echo that. It's not one specific use case, but it's really this wave front of all of these use cases, from the very micro of developing the next drug to finding the next battery technology, all the way up to the macro of trying to have an impact on climate change or even the origins of the universe itself. All of these fields are seeing these massive gains, both from the software, the hardware, the platforms that we're bringing to bear to these problems. And at the end of the day, humanity is going to be fundamentally transformed by the computation that we're launching and working on today. >> Fantastic, fantastic. Thank you, gentlemen. You heard it hear first, Intel and Dell just committed to solving the secrets of the universe by New Years Eve 2023. >> Well, next Supercompute, let's give us a little time. >> The next Supercompute Convention. >> Yeah, next year. >> Yeah, SC 2023, we'll come back and see what problems have been solved. You heard it hear first on theCube, folks. By SC 23, Dell and Intel are going to reveal the secrets of the universe. From here, at SC 22, I'd like to thank you for joining our conversation. I'm Dave Nicholson, with my co-host Paul Gillin. Stay tuned to theCube's coverage of Supercomputing Conference 22. We'll be back after a short break. (techno music)
SUMMARY :
covering the amazing events Winding down here, but So not all of the holiday gifts First of all, explain the and the right designs for What does that mean, AI on the CPU? that you need to be able to and it's no longer the case leveraging the CPU to do that, all of the space in the convention center And I appreciate it if you and the ecosystem is something that you mentioned. And I just love that five to 90 example But the point is, 90 kilowatts to people, you know, And at the end of the day, You're based on the west coast. So Habana is part of the Intel family now. and for help in that area, in that ecosystem to make Chiplets, and the idea of an open standard Exactly, but at the end of the day, And of course Dell can that sits in the corner. the growth of high performance And it goes back to the CPU compute stack. in the next few months, so. when they offer you dessert, and the speeds and the feats, in the morning, to know And at the end of the day, of the universe by New Years Eve 2023. Well, next Supercompute, From here, at SC 22, I'd like to thank you
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
David | PERSON | 0.99+ |
Maribel | PERSON | 0.99+ |
John | PERSON | 0.99+ |
Keith | PERSON | 0.99+ |
Equinix | ORGANIZATION | 0.99+ |
Matt Link | PERSON | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Indianapolis | LOCATION | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
Scott | PERSON | 0.99+ |
Dave Nicholson | PERSON | 0.99+ |
Tim Minahan | PERSON | 0.99+ |
Paul Gillin | PERSON | 0.99+ |
Lisa Martin | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Dave | PERSON | 0.99+ |
Lisa | PERSON | 0.99+ |
Europe | LOCATION | 0.99+ |
Stephanie Cox | PERSON | 0.99+ |
Akanshka | PERSON | 0.99+ |
Budapest | LOCATION | 0.99+ |
Indiana | LOCATION | 0.99+ |
Steve Jobs | PERSON | 0.99+ |
October | DATE | 0.99+ |
India | LOCATION | 0.99+ |
Stephanie | PERSON | 0.99+ |
Nvidia | ORGANIZATION | 0.99+ |
Chris Lavilla | PERSON | 0.99+ |
2006 | DATE | 0.99+ |
Tanuja Randery | PERSON | 0.99+ |
Cuba | LOCATION | 0.99+ |
Israel | LOCATION | 0.99+ |
Keith Townsend | PERSON | 0.99+ |
Akanksha | PERSON | 0.99+ |
Dell | ORGANIZATION | 0.99+ |
Akanksha Mehrotra | PERSON | 0.99+ |
London | LOCATION | 0.99+ |
September 2020 | DATE | 0.99+ |
Intel | ORGANIZATION | 0.99+ |
David Schmidt | PERSON | 0.99+ |
90% | QUANTITY | 0.99+ |
$45 billion | QUANTITY | 0.99+ |
October 2020 | DATE | 0.99+ |
Africa | LOCATION | 0.99+ |
Lucas Snyder, Indiana University and Karl Oversteyns, Purdue University | SuperComputing 22
(upbeat music) >> Hello, beautiful humans and welcome back to Supercomputing. We're here in Dallas, Texas giving you live coverage with theCUBE. I'm joined by David Nicholson. Thank you for being my left arm today. >> Thank you Savannah. >> It's a nice little moral. Very excited about this segment. We've talked a lot about how the fusion between academia and the private sector is a big theme at this show. You can see multiple universities all over the show floor as well as many of the biggest companies on earth. We were very curious to learn a little bit more about this from people actually in the trenches. And we are lucky to be joined today by two Purdue students. We have Lucas and Karl. Thank you both so much for being here. >> One Purdue, one IU, I think. >> Savannah: Oh. >> Yeah, yeah, yeah. >> I'm sorry. Well then wait, let's give Indiana University their fair do. That's where Lucas is. And Karl is at Purdue. Sorry folks. I apparently need to go back to school to learn how to read. (chuckles) In the meantime, I know you're in the middle of a competition. Thank you so much for taking the time out. Karl, why don't you tell us what's going on? What is this competition? What brought you all here? And then let's dive into some deeper stuff. >> Yeah, this competition. So we're a joint team between Purdue and IU. We've overcome our rivalries, age old rivalries to computer at the competition. It's a multi-part competition where we're going head to head against other teams from all across the world, benchmarking our super computing cluster that we designed. >> Was there a moment of rift at all when you came together? Or was everyone peaceful? >> We came together actually pretty nicely. Our two advisors they were very encouraging and so we overcame that, no hostility basically. >> I love that. So what are you working on and how long have you guys been collaborating on it? You can go ahead and start Lucas. >> So we've been prepping for this since the summer and some of us even before that. >> Savannah: Wow. >> And so currently we're working on the application phase of the competition. So everybody has different specialties and basically the competition gives you a set of rules and you have to accomplish what they tell you to do in the allotted timeframe and run things very quickly. >> And so we saw, when we came and first met you, we saw that there are lights and sirens and a monitor looking at the power consumption involved. So part of this is how much power is being consumed. >> Karl: That's right. >> Explain exactly what are the what are the rules that you have to live within? >> So, yeah, so the main constraint is the time as we mentioned and the power consumption. So for the benchmarking phase, which was one, two days ago there was a hard camp of 3000 watts to be consumed. You can't go over that otherwise you would be penalized for that. You have to rerun, start from scratch basically. Now there's a dynamic one for the application section where it's it modulates at random times. So we don't know when it's going to go down when it's going to go back up. So we have to adapt to that in real time. >> David: Oh, interesting. >> Dealing with a little bit of real world complexity I guess probably is simulation is here. I think that's pretty fascinating. I want to know, because I am going to just confess when I was your age last week, I did not understand the power of supercomputing and high performance computing. Lucas, let's start with you. How did you know this was the path you wanted to go down in your academic career? >> David: Yeah, what's your background? >> Yeah, give us some. >> So my background is intelligence systems engineering which is kind of a fusion. It's between, I'm doing bioengineering and then also more classical computer engineering. So my background is biology actually. But I decided to go down this path kind of on a whim. My professor suggested it and I've kind of fallen in love with it. I did my summer internship doing HPC and I haven't looked back. >> When did you think you wanted to go into this field? I mean, in high school, did you have a special teacher that sparked it? What was it? >> Lucas: That's funny that you say that. >> What was in your background? >> Yes, I mean, in high school towards the end I just knew that, I saw this program at IU and it's pretty new and I just thought this would be a great opportunity for me and I'm loving it so far. >> Do you have family in tech or is this a different path for you? >> Yeah, this is a different path for me, but my family is so encouraging and they're very happy for me. They text me all the time. So I couldn't be happier. >> Savannah: Just felt that in my heart. >> I know. I was going to say for the parents out there get the tissue out. >> Yeah, yeah, yeah. (chuckles) >> These guys they don't understand. But, so Karl, what's your story? What's your background? >> My background, I'm a major in unmanned Aerial systems. So this is a drones commercial applications not immediately connected as you might imagine although there's actually more overlap than one might think. So a lot of unmanned systems today a lot of it's remote sensing, which means that there's a lot of image processing that takes place. Mapping of a field, what have you, or some sort of object, like a silo. So a lot of it actually leverages high performance computing in order to map, to visualize much replacing, either manual mapping that used to be done by humans in the field or helicopters. So a lot of cost reduction there and efficiency increases. >> And when did you get this spark that said I want to go to Purdue? You mentioned off camera that you're from Belgium. >> Karl: That's right. >> Did you, did you come from Belgium to Purdue or you were already in the States? >> No, so I have family that lives in the States but I grew up in Belgium. >> David: Okay. >> I knew I wanted to study in the States. >> But at what age did you think that science and technology was something you'd be interested in? >> Well, I've always loved computers from a young age. I've been breaking computers since before I can remember. (chuckles) Much to my parents dismay. But yeah, so I've always had a knack for technology and that's sort of has always been a hobby of mine. >> And then I want to ask you this question and then Lucas and then Savannah will get some time. >> Savannah: It cool, will just sit here and look pretty. >> Dream job. >> Karl: Dream job. >> Okay. So your undergrad both you. >> Savannah: Offering one of my questions. Kind of, It's adjacent though. >> Okay. You're undergrad now? Is there grad school in your future do you feel that's necessary? Is that something you want to pursue? >> I think so. Entrepreneurship is something that's been in the back of my head for a while as well. So may be or something. >> So when I say dream job, understand could be for yourself. >> Savannah: So just piggyback. >> Dream thing after academia or stay in academia. What's do you think at this point? >> That's a tough question. You're asking. >> You'll be able to review this video in 10 years. >> Oh boy. >> This is give us your five year plan and then we'll have you back on theCUBE and see 2027. >> What's the dream? There's people out here watching this. I'm like, go, hey, interesting. >> So as I mentioned entrepreneurship I'm thinking I'll start a company at some point. >> David: Okay. >> Yeah. In what? I don't know yet. We'll see. >> David: Lucas, any thoughts? >> So after graduation, I am planning to go to grad school. IU has a great accelerated master's degree program so I'll stay an extra year and get my master's. Dream job is, boy, that's impossible to answer but I remember telling my dad earlier this year that I was so interested in what NASA was doing. They're sending a probe to one of the moons of Jupiter. >> That's awesome. From a parent's perspective the dream often is let's get the kids off the payroll. So I'm sure that your families are happy to hear that you have. >> I think these two will be right in that department. >> I think they're going to be okay. >> Yeah, I love that. I was curious, I want to piggyback on that because I think when NASA's doing amazing we have them on the show. Who doesn't love space. >> Yeah. >> I'm also an entrepreneur though so I very much empathize with that. I was going to ask to your dream job, but also what companies here do you find the most impressive? I'll rephrase. Because I was going to say, who would you want to work with? >> David: Anything you think is interesting? >> But yeah. Have you even had a chance to walk the floor? I know you've been busy competing >> Karl: Very little. >> Yeah, I was going to say very little. Unfortunately I haven't been able to roam around very much. But I look around and I see names that I'm like I can't even, it's crazy to see them. Like, these are people who are so impressive in the space. These are people who are extremely smart. I'm surrounded by geniuses everywhere I look, I feel like, so. >> Savannah: That that includes us. >> Yeah. >> He wasn't talking about us. Yeah. (laughs) >> I mean it's hard to say any of these companies I would feel very very lucky to be a part of, I think. >> Well there's a reason why both of you were invited to the party, so keep that in mind. Yeah. But so not a lot of time because of. >> Yeah. Tomorrow's our day. >> Here to get work. >> Oh yes. Tomorrow gets play and go talk to everybody. >> Yes. >> And let them recruit you because I'm sure that's what a lot of these companies are going to be doing. >> Yeah. Hopefully it's plan. >> Have you had a second at all to look around Karl. >> A Little bit more I've been going to the bathroom once in a while. (laughs) >> That's allowed I mean, I can imagine that's a vital part of the journey. >> I've ruin my gaze a little bit to what's around all kinds of stuff. Higher education seems to be very important in terms of their presence here. I find that very, very impressive. Purdue has a big stand IU as well, but also others all from Europe as well and Asia. I think higher education has a lot of potential in this field. >> David: Absolutely. >> And it really is that union between academia and the private sector. We've seen a lot of it. But also one of the things that's cool about HPC is it's really not ageist. It hasn't been around for that long. So, I mean, well, at this scale it's obviously this show's been going on since 1988 before you guys were even probably a thought. But I think it's interesting. It's so fun to get to meet you both. Thank you for sharing about what you're doing and what your dreams are. Lucas and Karl. >> David: Thanks for taking the time. >> I hope you win and we're going to get you off the show here as quickly as possible so you can get back to your teams and back to competing. David, great questions as always, thanks for being here. And thank you all for tuning in to theCUBE Live from Dallas, Texas, where we are at Supercomputing. My name's Savannah Peterson and I hope you're having a beautiful day. (gentle upbeat music)
SUMMARY :
Thank you for being my left arm today. Thank you both so much for being here. I apparently need to go back from all across the world, and so we overcame that, So what are you working on since the summer and some and you have to accomplish and a monitor looking at the So for the benchmarking phase, How did you know this was the path But I decided to go down I saw this program at They text me all the time. I was going to say for Yeah, yeah, yeah. But, so Karl, what's your story? So a lot of unmanned systems today And when did you get that lives in the States I can remember. ask you this question Savannah: It cool, will of my questions. Is that something you want to pursue? I think so. So when I say dream job, understand What's do you think at this point? That's a tough question. You'll be able to review and then we'll have you back What's the dream? So as I mentioned entrepreneurship I don't know yet. planning to go to grad school. to hear that you have. I think these two will I was curious, I want to piggyback on that I was going to ask to your dream job, Have you even had I can't even, it's crazy to see them. Yeah. I mean it's hard to why both of you were invited go talk to everybody. And let them recruit you Have you had a second I've been going to the I mean, I can imagine that's I find that very, very impressive. It's so fun to get to meet you both. going to get you off the show
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Savannah | PERSON | 0.99+ |
David | PERSON | 0.99+ |
David Nicholson | PERSON | 0.99+ |
Belgium | LOCATION | 0.99+ |
Karl | PERSON | 0.99+ |
NASA | ORGANIZATION | 0.99+ |
3000 watts | QUANTITY | 0.99+ |
Lucas | PERSON | 0.99+ |
IU | ORGANIZATION | 0.99+ |
Europe | LOCATION | 0.99+ |
Karl Oversteyns | PERSON | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
five year | QUANTITY | 0.99+ |
Asia | LOCATION | 0.99+ |
Lucas Snyder | PERSON | 0.99+ |
Dallas, Texas | LOCATION | 0.99+ |
Purdue | ORGANIZATION | 0.99+ |
two advisors | QUANTITY | 0.99+ |
Tomorrow | DATE | 0.99+ |
two | QUANTITY | 0.99+ |
Purdue | LOCATION | 0.99+ |
1988 | DATE | 0.99+ |
last week | DATE | 0.99+ |
Jupiter | LOCATION | 0.99+ |
both | QUANTITY | 0.99+ |
Purdue University | ORGANIZATION | 0.99+ |
10 years | QUANTITY | 0.99+ |
One | QUANTITY | 0.99+ |
today | DATE | 0.99+ |
two days ago | DATE | 0.98+ |
one | QUANTITY | 0.98+ |
Indiana University | ORGANIZATION | 0.98+ |
Indiana University | ORGANIZATION | 0.97+ |
earlier this year | DATE | 0.93+ |
earth | LOCATION | 0.93+ |
first | QUANTITY | 0.92+ |
Supercomputing | ORGANIZATION | 0.9+ |
2027 | TITLE | 0.86+ |
HPC | ORGANIZATION | 0.8+ |
theCUBE | ORGANIZATION | 0.8+ |
States | LOCATION | 0.56+ |
second | QUANTITY | 0.48+ |
22 | QUANTITY | 0.38+ |
Anthony Dina, Dell Technologies and Bob Crovella, NVIDIA | SuperComputing 22
>>How do y'all, and welcome back to Supercomputing 2022. We're the Cube, and we are live from Dallas, Texas. I'm joined by my co-host, David Nicholson. David, hello. Hello. We are gonna be talking about data and enterprise AI at scale during this segment. And we have the pleasure of being joined by both Dell and Navidia. Anthony and Bob, welcome to the show. How you both doing? Doing good. >>Great. Great show so far. >>Love that. Enthusiasm, especially in the afternoon on day two. I think we all, what, what's in that cup? Is there something exciting in there that maybe we should all be sharing with you? >>Just say it's just still Yeah, water. >>Yeah. Yeah. I love that. So I wanna make sure that, cause we haven't talked about this at all during the show yet, on the cube, I wanna make sure that everyone's on the same page when we're talking about data unstructured versus structured data. I, it's in your title, Anthony, tell me what, what's the difference? >>Well, look, the world has been based in analytics around rows and columns, spreadsheets, data warehouses, and we've made predictions around the forecast of sales maintenance issues. But when we take computers and we give them eyes, ears, and fingers, cameras, microphones, and temperature and vibration sensors, we now translate that into more human experience. But that kind of data, the sensor data, that video camera is unstructured or semi-structured, that's what that >>Means. We live in a world of unstructured data structure is something we add to later after the fact. But the world that we see and the world that we experience is unstructured data. And one of the promises of AI is to be able to take advantage of everything that's going on around us and augment that, improve that, solve problems based on that. And so if we're gonna do that job effectively, we can't just depend on structured data to get the problem done. We have to be able to incorporate everything that we can see here, taste, smell, touch, and use >>That as, >>As part of the problem >>Solving. We want the chaos, bring it. >>Chaos has been a little bit of a theme of our >>Show. It has been, yeah. And chaos is in the eye of the beholder. You, you think about, you think about the reason for structuring data to a degree. We had limited processing horsepower back when everything was being structured as a way to allow us to be able to, to to reason over it and gain insights. So it made sense to put things into rows and tables. How does, I'm curious, diving right into where Nvidia fits into this, into this puzzle, how does NVIDIA accelerate or enhance our ability to glean insight from or reason over unstructured data in particular? >>Yeah, great question. It's really all about, I would say it's all about ai and Invidia is a leader in the AI space. We've been investing and focusing on AI since at least 2012, if not before, accelerated computing that we do it. Invidia is an important part of it, really. We believe that AI is gonna revolutionize nearly every aspect of computing. Really nearly every aspect of problem solving, even nearly every aspect of programming. And one of the reasons is for what we're talking about now is it's a little impact. Being able to incorporate unstructured data into problem solving is really critical to being able to solve the next generation of problems. AI unlocks, tools and methodologies that we can realistically do that with. It's not realistic to write procedural code that's gonna look at a picture and solve all the problems that we need to solve if we're talking about a complex problem like autonomous driving. But with AI and its ability to naturally absorb unstructured data and make intelligent reason decisions based on it, it's really a breakthrough. And that's what NVIDIA's been focusing on for at least a decade or more. >>And how does NVIDIA fit into Dell's strategy? >>Well, I mean, look, we've been partners for many, many years delivering beautiful experiences on workstations and laptops. But as we see the transition away from taking something that was designed to make something pretty on screen to being useful in solving problems in life sciences, manufacturing in other places, we work together to provide integrated solutions. So take for example, the dgx a 100 platform, brilliant design, revolutionary bus technologies, but the rocket ship can't go to Mars without the fuel. And so you need a tank that can scale in performance at the same rate as you throw GPUs at it. And so that's where the relationship really comes alive. We enable people to curate the data, organize it, and then feed those algorithms that get the answers that Bob's been talking about. >>So, so as a gamer, I must say you're a little shot at making things pretty on a screen. Come on. That was a low blow. That >>Was a low blow >>Sassy. What I, >>I Now what's in your cup? That's what I wanna know, Dave, >>I apparently have the most boring cup of anyone on you today. I don't know what happened. We're gonna have to talk to the production team. I'm looking at all of you. We're gonna have to make that better. One of the themes that's been on this show, and I love that you all embrace the chaos, we're, we're seeing a lot of trend in the experimentation phase or stage rather. And it's, we're in an academic zone of it with ai, companies are excited to adopt, but most companies haven't really rolled out their strategy. What is necessary for us to move from this kind of science experiment, science fiction in our heads to practical application at scale? Well, >>Let me take this, Bob. So I've noticed there's a pattern of three levels of maturity. The first level is just what you described. It's about having an experience, proof of value, getting stakeholders on board, and then just picking out what technology, what algorithm do I need? What's my data source? That's all fun, but it is chaos over time. People start actually making decisions based on it. This moves us into production. And what's important there is normality, predictability, commonality across, but hidden and embedded in that is a center of excellence. The community of data scientists and business intelligence professionals sharing a common platform in the last stage, we get hungry to replicate those results to other use cases, throwing even more information at it to get better accuracy and precision. But to do this in a budget you can afford. And so how do you figure out all the knobs and dials to turn in order to make, take billions of parameters and process that, that's where casual, what's >>That casual decision matrix there with billions of parameters? >>Yeah. Oh, I mean, >>But you're right that >>That's, that's exactly what we're, we're on this continuum, and this is where I think the partnership does really well, is to marry high performant enterprise grade scalability that provides the consistency, the audit trail, all of the things you need to make sure you don't get in trouble, plus all of the horsepower to get to the results. Bob, what would you >>Add there? I think the thing that we've been talking about here is complexity. And there's complexity in the AI problem solving space. There's complexity everywhere you look. And we talked about the idea that NVIDIA can help with some of that complexity from the architecture and the software development side of it. And Dell helps with that in a whole range of ways, not the least of which is the infrastructure and the server design and everything that goes into unlocking the performance of the technology that we have available to us today. So even the center of excellence is an example of how do I take this incredibly complex problem and simplify it down so that the real world can absorb and use this? And that's really what Dell and Vidia are partnering together to do. And that's really what the center of excellence is. It's an idea to help us say, let's take this extremely complex problem and extract some good value out of >>It. So what is Invidia's superpower in this realm? I mean, look, we're we are in, we, we are in the era of Yeah, yeah, yeah. We're, we're in a season of microprocessor manufacturers, one uping, one another with their latest announcements. There's been an ebb and a flow in our industry between doing everything via the CPU versus offloading processes. Invidia comes up and says, Hey, hold on a second, gpu, which again, was focused on graphics processing originally doing something very, very specific. How does that translate today? What's the Nvidia again? What's, what's, what's the superpower? Because people will say, well, hey, I've got a, I've got a cpu, why do I need you? >>I think our superpower is accelerated computing, and that's really a hardware and software thing. I think your question is slanted towards the hardware side, which is, yes, it is very typical and we do make great processors, but the processor, the graphics processor that you talked about from 10 or 20 years ago was designed to solve a very complex task. And it was exquisitely designed to solve that task with the resources that we had available at that time. Time. Now, fast forward 10 or 15 years, we're talking about a new class of problems called ai. And it requires both exquisite, soft, exquisite processor design as well as very complex and exquisite software design sitting on top of it as well. And the systems and infrastructure knowledge, high performance storage and everything that we're talking about in the solution today. So Nvidia superpower is really about that accelerated computing stack at the bottom. You've got hardware above that, you've got systems above that, you have middleware and libraries and above that you have what we call application SDKs that enable the simplification of this really complex problem to this domain or that domain or that domain, while still allowing you to take advantage of that processing horsepower that we put in that exquisitely designed thing called the gpu >>Decreasing complexity and increasing speed to very key themes of the show. Shocking, no one, you all wanna do more faster. Speaking of that, and I'm curious because you both serve a lot of different unique customers, verticals and use cases, is there a specific project that you're allowed to talk about? Or, I mean, you know, you wanna give us the scoop, that's totally cool too. We're here for the scoop on the cube, but is there a specific project or use case that has you personally excited Anthony? We'll start with that. >>Look, I'm, I've always been a big fan of natural language processing. I don't know why, but to derive intent based on the word choices is very interesting to me. I think what compliments that is natural language generation. So now we're having AI programs actually discover and describe what's inside of a package. It wouldn't surprise me that over time we move from doing the typical summary on the economic, the economics of the day or what happened in football. And we start moving that towards more of the creative advertising and marketing arts where you are no longer needed because the AI is gonna spit out the result. I don't think we're gonna get there, but I really love this idea of human language and computational linguistics. >>What a, what a marriage. I agree. Think it's fascinating. What about you, Bob? It's got you >>Pumped. The thing that really excites me is the problem solving, sort of the tip of the spear in problem solving. The stuff that you've never seen before, the stuff that you know, in a geeky way kind of takes your breath away. And I'm gonna jump or pivot off of what Anthony said. Large language models are really one of those areas that are just, I think they're amazing and they're just kind of surprising everyone with what they can do here on the show floor. I was looking at a demonstration from a large language model startup, basically, and they were showing that you could ask a question about some obscure news piece that was reported only in a German newspaper. It was about a little shipwreck that happened in a hardware. And I could type in a query to this system and it would immediately know where to find that information as if it read the article, summarized it for you, and it even could answer questions that you could only only answer by looking pic, looking at pictures in that article. Just amazing stuff that's going on. Just phenomenal >>Stuff. That's a huge accessibility. >>That's right. And I geek out when I see stuff like that. And that's where I feel like all this work that Dell and Invidia and many others are putting into this space is really starting to show potential in ways that we wouldn't have dreamed of really five years ago. Just really amazing. And >>We see this in media and entertainment. So in broadcasting, you have a sudden event, someone leaves this planet where they discover something new where they get a divorce and they're a major quarterback. You wanna go back somewhere in all of your archives to find that footage. That's a very laborist project. But if you can use AI technology to categorize that and provide the metadata tag so you can, it's searchable, then we're off to better productions, more interesting content and a much richer viewer experience >>And a much more dynamic picture of what's really going on. Factoring all of that in, I love that. I mean, David and I are both nerds and I know we've had take our breath away moments, so I appreciate that you just brought that up. Don't worry, you're in good company. In terms of the Geek Squad over >>Here, I think actually maybe this entire show for Yes, exactly. >>I mean, we were talking about how steampunk some of the liquid cooling stuff is, and you know, this is the only place on earth really, or the only show where you would come and see it at this level in scale and, and just, yeah, it's, it's, it's very, it's very exciting. How important for the future of innovation in HPC are partnerships like the one that Navia and Dell have? >>You wanna start? >>Sure, I would, I would just, I mean, I'm gonna be bold and brash and arrogant and say they're essential. Yeah, you don't not, you do not want to try and roll this on your own. This is, even if we just zoomed in to one little beat, little piece of the technology, the software stack that do modern, accelerated deep learning is incredibly complicated. There can be easily 20 or 30 components that all have to be the right version with the right buttons pushed, built the right way, assembled the right way, and we've got lots of technologies to help with that. But you do not want to be trying to pull that off on your own. That's just one little piece of the complexity that we talked about. And we really need, as technology providers in this space, we really need to do as much as we do to try to unlock the potential. We have to do a lot to make it usable and capable as well. >>I got a question for Anthony. All >>Right, >>So in your role, and I, and I'm, I'm sort of, I'm sort of projecting here, but I think, I think, I think your superpower personally is likely in the realm of being able to connect the dots between technology and the value that that technology holds in a variety of contexts. That's right. Whether it's business or, or whatever, say sentences. Okay. Now it's critical to have people like you to connect those dots. Today in the era of pervasive ai, how important will it be to have AI have to explain its answer? In other words, words, should I trust the information the AI is giving me? If I am a decision maker, should I just trust it on face value? Or am I going to want a demand of the AI kind of what you deliver today, which is No, no, no, no, no, no. You need to explain this to me. How did you arrive at that conclusion, right? How important will that be for people to move forward and trust the results? We can all say, oh hey, just trust us. Hey, it's ai, it's great, it's got Invidia, you know, Invidia acceleration and it's Dell. You can trust us, but come on. So many variables in the background. It's >>An interesting one. And explainability is a big function of ai. People want to know how the black box works, right? Because I don't know if you have an AI engine that's looking for potential maladies in an X-ray, but it misses it. Do you sue the hospital, the doctor or the software company, right? And so that accountability element is huge. I think as we progress and we trust it to be part of our everyday decision making, it's as simply as a recommendation engine. It isn't actually doing all of the decisions. It's supporting us. We still have, after decades of advanced technology algorithms that have been proven, we can't predict what the market price of any object is gonna be tomorrow. And you know why? You know why human beings, we are so unpredictable. How we feel in the moment is radically different. And whereas we can extrapolate for a population to an individual choice, we can't do that. So humans and computers will not be separated. It's a, it's a joint partnership. But I wanna get back to your point, and I think this is very fundamental to the philosophy of both companies. Yeah, it's about a community. It's always about the people sharing ideas, getting the best. And anytime you have a center of excellence and algorithm that works for sales forecasting may actually be really interesting for churn analysis to make sure the employees or students don't leave the institution. So it's that community of interest that I think is unparalleled at other conferences. This is the place where a lot of that happens. >>I totally agree with that. We felt that on the show. I think that's a beautiful note to close on. Anthony, Bob, thank you so much for being here. I'm sure everyone feels more educated and perhaps more at peace with the chaos. David, thanks for sitting next to me asking the best questions of any host on the cube. And thank you all for being a part of our community. Speaking of community here on the cube, we're alive from Dallas, Texas. It's super computing all week. My name is Savannah Peterson and I'm grateful you're here. >>So I.
SUMMARY :
And we have the pleasure of being joined by both Dell and Navidia. Great show so far. I think we all, cause we haven't talked about this at all during the show yet, on the cube, I wanna make sure that everyone's on the same page when we're talking about But that kind of data, the sensor data, that video camera is unstructured or semi-structured, And one of the promises of AI is to be able to take advantage of everything that's going on We want the chaos, bring it. And chaos is in the eye of the beholder. And one of the reasons is for what we're talking about now is it's a little impact. scale in performance at the same rate as you throw GPUs at it. So, so as a gamer, I must say you're a little shot at making things pretty on a I apparently have the most boring cup of anyone on you today. But to do this in a budget you can afford. the horsepower to get to the results. and simplify it down so that the real world can absorb and use this? What's the Nvidia again? So Nvidia superpower is really about that accelerated computing stack at the bottom. We're here for the scoop on the cube, but is there a specific project or use case that has you personally excited And we start moving that towards more of the creative advertising and marketing It's got you And I'm gonna jump or pivot off of what That's a huge accessibility. And I geek out when I see stuff like that. and provide the metadata tag so you can, it's searchable, then we're off to better productions, so I appreciate that you just brought that up. I mean, we were talking about how steampunk some of the liquid cooling stuff is, and you know, this is the only place on earth really, There can be easily 20 or 30 components that all have to be the right version with the I got a question for Anthony. to have people like you to connect those dots. And anytime you have a center We felt that on the show.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
David | PERSON | 0.99+ |
David Nicholson | PERSON | 0.99+ |
Bob | PERSON | 0.99+ |
Anthony | PERSON | 0.99+ |
Bob Crovella | PERSON | 0.99+ |
Dell | ORGANIZATION | 0.99+ |
20 | QUANTITY | 0.99+ |
Invidia | ORGANIZATION | 0.99+ |
NVIDIA | ORGANIZATION | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Mars | LOCATION | 0.99+ |
Vidia | ORGANIZATION | 0.99+ |
Nvidia | ORGANIZATION | 0.99+ |
10 | QUANTITY | 0.99+ |
both | QUANTITY | 0.99+ |
Dave | PERSON | 0.99+ |
Dallas, Texas | LOCATION | 0.99+ |
Dell Technologies | ORGANIZATION | 0.99+ |
15 years | QUANTITY | 0.99+ |
Dallas, Texas | LOCATION | 0.99+ |
Navidia | ORGANIZATION | 0.99+ |
One | QUANTITY | 0.99+ |
first level | QUANTITY | 0.99+ |
both companies | QUANTITY | 0.98+ |
Today | DATE | 0.98+ |
one | QUANTITY | 0.98+ |
2012 | DATE | 0.98+ |
today | DATE | 0.98+ |
billions | QUANTITY | 0.98+ |
earth | LOCATION | 0.97+ |
10 | DATE | 0.96+ |
Anthony Dina | PERSON | 0.96+ |
five years ago | DATE | 0.96+ |
30 components | QUANTITY | 0.95+ |
Navia | ORGANIZATION | 0.95+ |
day two | QUANTITY | 0.94+ |
one little piece | QUANTITY | 0.91+ |
tomorrow | DATE | 0.87+ |
three levels | QUANTITY | 0.87+ |
HPC | ORGANIZATION | 0.86+ |
20 years ago | DATE | 0.83+ |
one little | QUANTITY | 0.77+ |
billions of parameters | QUANTITY | 0.75+ |
a decade | QUANTITY | 0.74+ |
decades | QUANTITY | 0.68+ |
German | OTHER | 0.68+ |
dgx a 100 platform | COMMERCIAL_ITEM | 0.67+ |
themes | QUANTITY | 0.63+ |
second | QUANTITY | 0.57+ |
22 | QUANTITY | 0.48+ |
Squad | ORGANIZATION | 0.4+ |
Supercomputing 2022 | ORGANIZATION | 0.36+ |
Kelly Gaither, University of Texas | SuperComputing 22
>>Good afternoon everyone, and thank you so much for joining us. My name is Savannah Peterson, joined by my co-host Paul for the afternoon. Very excited. Oh, Savannah. Hello. I'm, I'm pumped for this. This is our first bit together. Exactly. >>It's gonna be fun. Yes. We have a great guest to kick off with. >>We absolutely do. We're at Supercomputing 2022 today, and very excited to talk to our next guest. We're gonna be talking about data at scale and data that really matters to us joining us. Kelly Gayer, thank you so much for being here and you are with tech. Tell everyone what TAC is. >>Tech is the Texas Advanced Computing Center at the University of Texas at Austin. And thank you so much for having me here. >>It is wonderful to have you. Your smile's contagious. And one of the themes that's come up a lot with all of our guests, and we just talked about it, is how good it is to be back in person, how good it is to be around our hardware, community tech. You did some very interesting research during the pandemic. Can you tell us about that? >>I can. I did. So when we realized sort of mid-March, we realized that, that this was really not normal times and the pandemic was statement. Yes. That pandemic was really gonna touch everyone. I think a lot of us at the center and me personally, we dropped everything to plug in and that's what we do. So UT's tagline is what starts here changes the world and tax tagline is powering discoveries that change the world. So we're all about impact, but I plugged in with the research group there at UT Austin, Dr. Lauren Myers, who's an epidemiologist, and just we figured out how to plug in and compute so that we could predict the spread of, of Covid 19. >>And you did that through the use of mobility data, cell phone signals. Tell us more about what exactly you were choreographing. >>Yeah, so that was really interesting. Safe graph during the pandemic made their mobility data. Typically it was used for marketing purposes to know who was going into Walmart. The offenses >>For advertising. >>Absolutely, yeah. They made all of their mobility data available for free to people who were doing research and plugging in trying to understand Covid. 19, I picked that data up and we used it as a proxy for human behavior. So we knew we had some idea, we got weekly mobility updates, but it was really mobility all day long, you know, anonymized. I didn't know who they were by cell phones across the US by census block group or zip code if we wanted to look at it that way. And we could see how people were moving around. We knew what their neighbor, their home neighborhoods were. We knew how they were traveling or not traveling. We knew where people were congregating, and we could get some idea of, of how people were behaving. Were they really, were they really locking down or were they moving in their neighborhoods or were they going outside of their neighborhoods? >>What a, what a fascinating window into our pandemic lives. So now that you were able to do this for this pandemic, as we look forward, what have you learned? How quickly could we forecast? What's the prognosis? >>Yeah, so we, we learned a tremendous amount. I think during the pandemic we were reacting, we were really trying. It was a, it was an interesting time as a scientist, we were reacting to things almost as if the earth was moving underneath us every single day. So it was something new every day. And I've told people since I've, I haven't, I haven't worked that hard since I was a graduate student. So it was really daylight to dark 24 7 for a long period of time because it was so important. And we knew, we, we knew we were, we were being a part of history and affecting something that was gonna make a difference for a really long time. And, and I think what we've learned is that indeed there is a lot of data being collected that we can use for good. We can really understand if we get organized and we get set up, we can use this data as a means of perhaps predicting our next pandemic or our next outbreak of whatever. It is almost like using it as a canary in the coal mine. There's a lot in human behavior we can use, given >>All the politicization of, of this last pandemic, knowing what we know now, making us better prepared in theory for the next one. How confident are you that at least in the US we will respond proactively and, and effectively when the next one comes around? >>Yeah, I mean, that's a, that's a great question and, and I certainly understand why you ask. I think in my experience as a scientist, certainly at tech, the more transparent you are with what you do and the more you explain things. Again, during the pandemic, things were shifting so rapidly we were reacting and doing the best that we could. And I think one thing we did right was we admitted where we felt uncertain. And that's important. You have to really be transparent to the general public. I, I don't know how well people are gonna react. I think if we have time to prepare, to communicate and always be really transparent about it. I think those are three factors that go into really increasing people's trust. >>I think you nailed it. And, and especially during times of chaos and disaster, you don't know who to trust or what to believe. And it sounds like, you know, providing a transparent source of truth is, is so critical. How do you protect the sensitive data that you're working with? I know it's a top priority for you and the team. >>It is, it is. And we, we've adopted the medical mantra, do no harm. So we have, we feel a great responsibility there. There's, you know, two things that you have to really keep in mind when you've got sensitive data. One is the physical protection of it. And so that's, that's governed by rule, federal rules, hipaa, ferpa, whatever, whatever kind of data that you have. So we certainly focus on the physical protection of it, but there's also sort of the ethical protection of it. What, what is the quote? There's lies, damn lies and statistics. >>Yes. Twain. >>Yeah. So you, you really have to be responsible with what you're doing with the data, how you're portraying the results. And again, I think it comes back to transparency is is basically if people are gonna reproduce what I did, I have to be really transparent with what I did. >>I, yeah, I think that's super important. And one of the themes with, with HPC that we've been talking about a lot too is, you know, do people trust ai? Do they trust all the data that's going into these systems? And I love that you just talked about the storytelling aspect of that, because there is a duty, it's not, you can cut data kind of however you want. I mean, I come from marketing background and we can massage it to, to do whatever we want. So in addition to being the deputy director at Tech, you are also the DEI officer. And diversity I know is important to you probably both as an individual, but also in the work that you're doing. Talk to us about that. >>Yeah, I mean, I, I very passionate about diversity, equity and inclusion in a sense of belongingness. I think that's one of the key aspects of it. Core >>Of community too. >>I got a computer science degree back in the eighties. I was akin to a unicorn in a, in an engineering computer science department. And, but I was really lucky in a couple of respects. I had a, I had a father that was into science that told me I could do anything I, I wanted to set my mind to do. So that was my whole life, was really having that support system. >>He was cheers to dad. >>Yeah. Oh yeah. And my mom as well, actually, you know, they were educators. I grew up, you know, in that respect, very, very privileged, but it was still really hard to make it. And I couldn't have told you back in that time why I made it and, and others didn't, why they dropped out. But I made it a mission probably back, gosh, maybe 10, 15 years ago, that I was really gonna do all that I could to change the needle. And it turns out that there are a number of things that you can do grassroots. There are certainly best practices. There are rules and there are things that you really, you know, best practices to follow to make people feel more included in an organization, to feel like they belong it, shared mission. But there are also clever things that you can do with programming to really engage students, to meet people and students where they are interested and where they are engaged. And I think that's what, that's what we've done over, you know, the course of our programming over the course of about maybe since 2016. We have built a lot of programming ATAC that really focuses on that as well, because I'm determined the needle is gonna change before it's all said and done. It just really has to. >>So what, what progress have you made and what goals have you set in this area? >>Yeah, that, that's a great question. So, you know, at first I was a little bit reluctant to set concrete goals because I really didn't know what we could accomplish. I really wasn't sure what grassroots efforts was gonna be able to, you're >>So honest, you can tell how transparent you are with the data as well. That's >>Great. Yeah, I mean, if I really, most of the successful work that I've done is both a scientist and in the education and outreach space is really trust relationships. If I break that trust, I'm done. I'm no longer effective. So yeah, I am really transparent about it. But, but what we did was, you know, the first thing we did was we counted, you know, to the extent that we could, what does the current picture look like? Let's be honest about it. Start where we are. Yep. It was not a pretty picture. I mean, we knew that anecdotally it was not gonna be a great picture, but we put it out there and we leaned into it. We said, this is what it is. We, you know, I hesitated to say we're gonna look 10% better next year because I'm, I'm gonna be honest, I don't always know we're gonna do our best. >>The things that I think we did really well was that we stopped to take time to talk and find out what people were interested in. It's almost like being present and listening. My grandmother had a saying, you have two errors in one mouth for a reason, just respect the ratio. Oh, I love that. Yeah. And I think it's just been building relationships, building trust, really focusing on making a difference, making it a priority. And I think now what we're doing is we've been successful in pockets of people in the center and we are, we are getting everybody on board. There's, there's something everyone can do, >>But the problem you're addressing doesn't begin in college. It begins much, much, that's right. And there's been a lot of talk about STEM education, particularly for girls, how they're pushed out of the system early on. Also for, for people of color. Do you see meaningful progress being made there now after years of, of lip service? >>I do. I do. But it is, again, grassroots. We do have a, a, a researcher who was a former teacher at the center, Carol Fletcher, who is doing research and for CS for all we know that the workforce, so if you work from the current workforce, her projected workforce backwards, we know that digital skills of some kind are gonna be needed. We also know we have a, a, a shortage. There's debate on how large that shortage is, but about roughly about 1 million unmet jobs was projected in 2020. It hasn't gotten a lot better. We can work that problem backwards. So what we do there is a little, like a scatter shot approach. We know that people come in all forms, all shapes, all sizes. They get interested for all different kinds of reasons. We expanded our set of pathways so that we can get them where they can get on to the path all the way back K through 12, that's Carol's work. Rosie Gomez at the center is doing sort of the undergraduate space. We've got Don Hunter that does it, middle school, high school space. So we are working all parts of the problem. I am pretty passionate about what we consider opportunity youth people who never had the opportunity to go to college. Is there a way that we can skill them and get, get them engaged in some aspect and perhaps get them into this workforce. >>I love that you're starting off so young. So give us an example of one of those programs. What are you talking to kindergartners about when it comes to CS education? >>You know, I mean, gaming. Yes. Right. It's what everybody can wrap their head around. So most kids have had some sort of gaming device. You talk in the context, in the context of something they understand. I'm not gonna talk to them about high performance computing. It, it would go right over their heads. And I think, yeah, you know, I, I'll go back to something that you said Paul, about, you know, girls were pushed out. I don't know that girls are being pushed out. I think girls aren't interested and things that are being presented and I think they, I >>Think you're generous. >>Yeah. I mean, I was a young girl and I don't know why I stayed. Well, I do know why I stayed with it because I had a father that saw something in me and I had people at critical points in my life that saw something in me that I didn't see. But I think if we ch, if we change the way we teach it, maybe in your words they don't get pushed out or they, or they won't lose interest. There's, there's some sort of computing in everything we do. Well, >>Absolutely. There's also the bro culture, which begins at a very early >>Age. Yeah, that's a different problem. Yeah. That's just having boys in the classroom. Absolutely. You got >>It. That's a whole nother case. >>That's a whole other thing. >>Last question for you, when we are sitting here, well actually I've got, it's two parter, let's put it that way. Is there a tool or something you wish you could flick a magic wand that would make your job easier? Where you, you know, is there, can you identify the, the linchpin in the DEI challenge? Or is it all still prototyping and iterating to figure out the best fit? >>Yeah, that is a, that's a wonderful question. I can tell you what I get frustrated with is that, that >>Counts >>Is that I, I feel like a lot of people don't fully understand the level of effort and engagement it takes to do something meaningful. The >>Commitment to a program, >>The commitment to a program. Totally agree. It's, there is no one and done. No. And in fact, if I do that, I will lose them forever. They'll be, they will, they will be lost in the space forever. Rather. The engagement is really sort of time intensive. It's relationship intensive, but there's a lot of follow up too. And the, the amount of funding that goes into this space really is not, it, it, it's not equal to the amount of time and effort that it really takes. And I think, you know, I think what you work in this space, you realize that what you gain is, is really more of, it's, it really feels good to make a difference in somebody's life, but it's really hard to do on a shoer budget. So if I could kind of wave a magic wand, yes, I would increase understanding. I would get people to understand that it's all of our responsibility. Yes, everybody is needed to make the difference and I would increase the funding that goes to the programs. >>I think that's awesome, Kelly, thank you for that. You all heard that. More funding for diversity, equity, and inclusion. Please Paul, thank you for a fantastic interview, Kelly. Hopefully everyone is now inspired to check out tac perhaps become a, a Longhorn, hook 'em and, and come deal with some of the most important data that we have going through our systems and predicting the future of our pandemics. Ladies and gentlemen, thank you for joining us online. We are here in Dallas, Texas at Supercomputing. My name is Savannah Peterson and I look forward to seeing you for our next segment.
SUMMARY :
Good afternoon everyone, and thank you so much for joining us. It's gonna be fun. Kelly Gayer, thank you so much for being here and you are with tech. And thank you so much for having me here. And one of the themes that's come up a to plug in and compute so that we could predict the spread of, And you did that through the use of mobility data, cell phone signals. Yeah, so that was really interesting. but it was really mobility all day long, you know, So now that you were able to do this for this pandemic, as we look forward, I think during the pandemic we were reacting, in the US we will respond proactively and, and effectively when And I think one thing we did right was we I think you nailed it. There's, you know, two things that you have to really keep And again, I think it comes back to transparency is is basically And I love that you just talked about the storytelling aspect of I think that's one of the key aspects of it. I had a, I had a father that was into science I grew up, you know, in that respect, very, very privileged, I really wasn't sure what grassroots efforts was gonna be able to, you're So honest, you can tell how transparent you are with the data as well. but what we did was, you know, the first thing we did was we counted, you And I think now what we're doing is we've been successful in Do you see meaningful progress being all we know that the workforce, so if you work from the current workforce, I love that you're starting off so young. And I think, yeah, you know, I, I'll go back to something that But I think if we ch, There's also the bro culture, which begins at a very early That's just having boys in the classroom. you know, is there, can you identify the, the linchpin in the DEI challenge? I can tell you what I get frustrated with of effort and engagement it takes to do something meaningful. you know, I think what you work in this space, you realize that what I look forward to seeing you for our next segment.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Kelly Gayer | PERSON | 0.99+ |
Kelly | PERSON | 0.99+ |
Savannah | PERSON | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Carol Fletcher | PERSON | 0.99+ |
Rosie Gomez | PERSON | 0.99+ |
2020 | DATE | 0.99+ |
Paul | PERSON | 0.99+ |
Lauren Myers | PERSON | 0.99+ |
Carol | PERSON | 0.99+ |
Kelly Gaither | PERSON | 0.99+ |
Walmart | ORGANIZATION | 0.99+ |
2016 | DATE | 0.99+ |
10% | QUANTITY | 0.99+ |
US | LOCATION | 0.99+ |
next year | DATE | 0.99+ |
Dallas, Texas | LOCATION | 0.99+ |
today | DATE | 0.99+ |
two errors | QUANTITY | 0.99+ |
first | QUANTITY | 0.99+ |
Covid 19 | OTHER | 0.99+ |
Austin | LOCATION | 0.99+ |
eighties | DATE | 0.99+ |
three factors | QUANTITY | 0.99+ |
both | QUANTITY | 0.99+ |
TAC | ORGANIZATION | 0.98+ |
two parter | QUANTITY | 0.98+ |
one mouth | QUANTITY | 0.98+ |
earth | LOCATION | 0.98+ |
UT | ORGANIZATION | 0.98+ |
mid-March | DATE | 0.97+ |
pandemic | EVENT | 0.97+ |
two things | QUANTITY | 0.97+ |
University of Texas | ORGANIZATION | 0.97+ |
first bit | QUANTITY | 0.97+ |
one | QUANTITY | 0.97+ |
One | QUANTITY | 0.97+ |
one thing | QUANTITY | 0.96+ |
Supercomputing | ORGANIZATION | 0.96+ |
Don Hunter | PERSON | 0.95+ |
Texas Advanced Computing Center | ORGANIZATION | 0.95+ |
ATAC | ORGANIZATION | 0.93+ |
Covid. 19 | OTHER | 0.93+ |
24 7 | QUANTITY | 0.86+ |
UT Austin | ORGANIZATION | 0.82+ |
10, 15 years ago | DATE | 0.81+ |
Supercomputing 2022 | ORGANIZATION | 0.79+ |
every single day | QUANTITY | 0.79+ |
about 1 million unmet jobs | QUANTITY | 0.77+ |
12 | QUANTITY | 0.74+ |
SuperComputing | ORGANIZATION | 0.74+ |
outbreak | EVENT | 0.7+ |
Dr. | PERSON | 0.56+ |
DEI | ORGANIZATION | 0.54+ |
Twain | PERSON | 0.51+ |
Dr. Dan Duffy and Dr. Bill Putman | SuperComputing 22
>>Hello >>Everyone and welcome back to Dallas where we're live from, Super computing. My name is Savannah Peterson, joined with my co-host David, and we have a rocket of a show for you this afternoon. The doctors are in the house and we are joined by nasa, ladies and gentlemen. So excited. Please welcome Dr. Dan Duffy and Dr. Bill Putman. Thank you so much for being here, guys. I know this is kind of last minute. How's it to be on the show floor? What's it like being NASA here? >>What's exciting? We haven't, we haven't been here for three years, so this is actually really exciting to come back and see everybody, to see the showroom floor, see the innovations that have happened over the last three years. It's pretty exciting. >>Yeah, it's great. And, and so, because your jobs are so cool, and I don't wanna even remotely give even too little of the picture or, or not do it justice, could you give the audience a little bit of background on what you do as I think you have one of the coolest jobs ever. YouTube bill. >>I, I appreciate that. I, I, I run high Performance Computing Center at NASA Goddard for science. It's high performance information technology. So we do everything from networking to security, to high performance computing, to data sciences, artificial intelligence and machine learning is huge for us now. Yeah, large amounts of data, big data sets, but we also do scientific visualizations and then cloud and commercial cloud computing, as well as on premises cloud computing. And quite frankly, we support a lot of what Bill and his team does. >>Bill, why don't you tell us what your team >>Does? Yeah, so I'm a, I'm an earth scientist. I work as the associate chief at the global modeling assimilation office. And our job is to really, you know, maximize the use of all the observations that NASA takes from space and build that into a coherent, consistent physical system of the earth. Right? And we're focused on utilizing the HC that, that Dan and the folks at the nccs provide to us, to the best of our abilities to integrate those observations, you know, on time scales from hours, days to, to seasonal to to monthly time scales. That's, that's the essence of our focus at the GMA o >>Casual modeling, all of NASA's earth data. That, that in itself as a sentence is pretty wild. I imagine you're dealing with a ton of data. >>Oh, massive amounts of data. Yes, >>Probably, I mean, as much as one probably could, now that I'm thinking about it. I mean, and especially with how far things have to travel. Bill, sticking with you, just to open us up, what technology here excites you the most about the future and that will make your job easier? Let's put it that way. >>To me, it's the accelerator technologies, right? So there's the limited, the limiting factor for, for us as scientists is how fast we can get an answer. And if we can get our answer faster through accelerated technologies, you know, with the support of the, of the nccs and the computing centers, but also the software engineers enabling that for us, then we can do more, right. And push the questions even further, you know, so once we've gotten fast enough to do what we want to do, there's always something next that we wanna look for. So, >>I mean, at nasa you have to exercise such patience, whether that be data, coming back, images from a rover, doesn't matter what it is. Sometimes there's a lot of time, days, hours, years, depending on the situation. Right? I really, I really admire that. What about you, Dan? What's got you really excited about the future here? So >>Bill talked about the, the accelerated technology, which is absolutely true and, and, and is needed to get us not to only to the point where we have the compute resources to do the simulations that Bill wants to do, and also do it in a energy efficient way. But it's really the software frameworks that go around that and the software frameworks, the technology that dealing with how to use those in an energy efficient and and most efficient way is extremely important. And that's some of the, you know, that's what I'm really here to try to understand better about is how can I support these scientists with not just the hardware, but the software frameworks by which they can be successful. >>Yeah. We've, we've had a lot of kind of philosophical discussion about this, the difference between the quantitative increases in power in computing that we're seeing versus the question of whether or not we need truly qualitative changes moving forward. Where do you see the limits of, of, of, you know, if you, if you're looking at the ability to gather more data and process more data more quickly, what you can do with that data changes when you're getting updates every second versus every month seems pretty obvious. Is there a, is there, but is there, is there a near term target that you have specifically where once you reach that target, if you weren't thinking ahead of that target, you'd kind of be going, Okay, well we solved that problem, we're getting the data in so fast that you can, you can ask me, what is the temperature in this area? And you can go, Oh, well, huh, an hour ago the data said this. Beyond that, do you need a qualitative change in our ability to process information and tease insight into out of chaos? Or do you just need more quantity to be able to get to the point where you can do things like predict weather six months in advance? What are, what are your thoughts on that? Yeah, >>It's an interesting question, right? And, and you ended it with predicting whether six months in advance, and actually I was thinking the other way, right? I was thinking going to finer and finer scales and shorter time scales when you talk about having data more frequently, right? So one of the things that I'm excited about as a modeler is going to hire resolution and representing smaller scale processes at nasa, we're, we're interested in observations that are global. So our models are global and we'd like to push those to as fine a resolution as possible to do things like severe storm predictions and so forth. So the faster we can get the data, the more data we can have, and that area would improve our ability to do that as well. So, >>And your background is in meteorology, right? >>Yes, I'm a meteorologist. >>Excellent. Okay. Yeah, yeah, >>Yeah. So, so I have to ask a question, and I'm sure all the audience cares about this. And I went through this when I was talking about the ghost satellites as well. What, what is it about weather that makes it so hard to predict? >>Oh, it's the classic chaos problem. The, the butterfly effects problem, and it's just true. You know, you always hear the story of a butterfly in Africa flaps, its rings and wings, and the weather changes in, in New York City, and it's just, computers are an excellent example of that, right? So we have a model of the earth, we can run it two times in a row and get the exact same answer, but if we flip a bit somewhere, then the answer changes 10 days later significantly. So it's a, it's a really interesting problem. So, >>Yeah. So do you have any issue with the fact that your colleague believes that butterflies are responsible for weather? No, I does that, does that, is it responsible for climate? Does that bother you at all? >>No, it doesn't. As a matter of fact, they actually run those butterfly like experi experiments within the systems where they do actually flip some bits and see what the uncertainties are that happen out 7, 8, 9 days out in advance to understand exactly what he's saying, to understand the uncertainties, but also the sensitivity with respect to the observations that they're taking. So >>Yeah, it's fascinating. It is. >>That is fascinating. Sticking with you for a second, Dan. So you're at the Center for Climate Simulation. Is that the center that's gonna help us navigate what happens over the next decade? >>Okay, so I, no one center is gonna help us navigate what's gonna happen over the next decade or the next 50 or a hundred years, right. It's gonna be everybody together. And I think NASA's role in that is really to pioneer the, the, the models that that bill and others are doing to understand what's gonna happen in not just the seasonal sub, but we also work with G, which is the God Institute for Space Studies. Yeah. Which does the decatal and, and the century long studies. Our, our job is to really help that research, understand what's happening with the client, but then feed that back into what observations we need to make next in order to better understand and better quantify the risks that we have to better quantify the mitigations that we can make to understand how and, and, and affect how the climate is gonna go for the future. So that's really what we trying to do. We're trying to do that research to understand the climate, understand what mitigations we can have, but also feedback into what observations we can make for the future. >>Yeah. And and what's the partnership ecosystem around that? You mentioned that it's gonna take all of us, I assume you work with a lot of >>Partners, Probably both of you. I mean, obviously the, the, the federal agencies work huge amounts together. Nasa, Noah is our huge partnerships. Sgs, a huge partnerships doe we've talked to doe several times this, so this, this this week already. So there's huge partnerships that go across the federal agency. We, we work also with Europeans as much as we can given the, the, the, you know, sort of the barriers of the countries and the financials. But we do collaborate as much as we can with, And the nice thing about NASA, I would say is the, all the observations that we take are public, they're paid for by the public. They're public, everybody can down them, anybody can down around the world. So that's also, and they're global measurements as Bill said, they're not just regional. >>Do you have, do you have specific, when you think about improving your ability to gain insights from data that that's being gathered? Yeah. Do you set out specific milestones that you're looking for? Like, you know, I hope by June of next year we will have achieved a place where we are able to accomplish X. Yeah. Do you, do you, Yeah. Bill, do you put, what, >>What milestones do we have here? So, yeah, I mean, do you have >>Yeah. Are, are you, are you sort of kept track of that way? Do you think of things like that? Like very specific things? Or is it just so fluid that as long as you're making progress towards the future, you feel okay? >>No, I would say we absolutely have milestones that we like to keep in track, especially from the modeling side of things, right? So whether it's observations that exist now that we want to use in our system, milestones to getting those observations integrated in, but also thinking even further ahead to the observations that we don't have yet. So we can use the models that we have today to simulate those kind of observations that we might want in the future that can help us do things that we can do right now. So those missions are, are aided by the work that we do at the GBO and, and the nccs, but, >>Okay, so if we, if we extrapolate really to the, to the what if future is really trying to understand the entire earth system as best as we can. So all the observations coming in, like you said, in in near real time, feeding that into an earth system model and to be able to predict short term, midterm or even long term predictions with, with some degree of certainty. And that may be things like climate change or it may be even more important, shorter term effects of, of severe weather. Yeah. Which is very important. And so we are trying to work towards that high resolution, immediate impact model that we can, that we can, you know, really share with the world and share those results as best, as best we can. >>Yeah. I, I have a quick, I have a quick follow up on that. I I bet we both did. >>So, so if you think about AI and ml, artificial intelligence and machine learning, something that, you know, people, people talk about a lot. Yeah. There's the concept of teaching a machine to go look for things, call it machine learning. A lot of it's machine teaching we're saying, you know, hit, you know, hit the rack on this side with a stick or the other side with the stick to get it to, to kind of go back and forth. Do you think that humans will be able to guide these systems moving forward enough to tease out the insights that we want? Or do you think we're gonna have to rely on what people think of as artificial intelligence to be able to go in with this massive amount of information with an almost infinite amount of variables and have the AI figure out that, you know what, it was the butterfly, It really was the butterfly. We all did models with it, but, but you understand the nuance that I'm saying. It's like we, we, we think we know what all the variables are and that it's chaotic because there's so many variables and there's so much data, but maybe there's something we're not taking into >>A account. Yeah, I I, I'm, I'm, I'm sure that's absolutely the case. And I'll, I'll start and let Bill, Bill jump in here. Yeah, there's a lot of nuances with a aiml. And so the, the, the, the real approach to get to where we want to be with this earth system model approach is a combination of both AI ML train models as best as we can and as unbiased way as we can. And there's a, there's a big conversation we have around that, but also with a physics or physical based model as well, Those two combined with the humans or the experts in the loop, we're not just gonna ask the artificial intelligence to predict anything and everything. The experts need to be in the loop to guide the training in as best as we, as, as we can in an unbiased, equitable way, but also interpret the results and not just give over to the ai. But that's the combination of that earth system model that we really wanna see. The future's a combination of AI l with physics based, >>But there's, there's a, there's an obvious place for a AI and ML in the modeling world that is in the parameterizations of the estimations that we have to do in our systems, right? So when we think about the earth system and modeling the earth system, there are many things like the equations of motions and thermodynamics that have fixed equations that we know how to solve on a computer. But there's a lot of things that happen physically in the atmosphere that we don't have equations for, and we have to estimate them. And machine learning through the use of high resolution models or observations in training the models to understand and, and represent that, yeah, that that's the place where it's really useful >>For us. There's so many factors, but >>We have to, but we have to make sure that we have the physics in that machine learning in those, in those training. So physics informed training isn't very important. So we're not just gonna go and let a model go off and do whatever it wants. It has to be constrained within physical constraints that the, that the experts know. >>Yeah. And with the wild amount of variables that affect our, our earth, quite frankly. Yeah, yeah. Which is geez. Which is insane. My god. So what's, what, what technology or what advancement needs to happen for your jobs to get easier, faster for our ability to predict to be even more successful than it is currently? >>You know, I think for me, the vision that I have for the future is that at some point, you know, all data is centrally located, essentially shared. We have our applications are then services that sit around all that data. I don't have to sit as a user and worry about, oh, is this all this data in place before I run my application? It's already there, it's already ready for me. My service is prepared and I just launch it out on that service. But that coupled with the performance that I need to get the result that I want in time. And I don't know when that's gonna happen, but at some point it might, you know, I don't know rooting for you, but that's, >>So there are, there are a lot of technologies we can talk about. What I'd like to mention is, is open science. So NASA is really trying to make a push and transformation towards open science. 2023 is gonna be the year of open science for nasa. And what does that mean? It means a lot of what Bill just said is that we have equity and fairness and accessibility and you can find the data, it's findability, it's fair data, you know, a fair findability accessibility reproducibility, and I forget what the eye stands for, but these are, these are tools and, and, and things that we need to, as, as a computing centers and including all the HC centers here, as well as the scientists need to support, to be as transparent as possible with the data sets and the, and the research that we're doing. And that's where I think is gonna be the best thing is if we can get this data out there that anybody can use in an equitable way and as transparent as possible, that's gonna eliminate, in my opinion, the bias over time because mistakes will be found and mistakes will be corrected over time. >>I love that. Yeah. The open source science end of this. No, it's great. And the more people that have access people I find in the academic world, especially people don't know what's going on in the private sector and vice versa. And so I love that you just brought that up. Closing question for you, because I suspect there might be some members of our audience who maybe have fantasized about working at nasa. You've both been working there for over a decade. Is it as cool as we all think of it? It is on the outside. >>I mean, it's, it's definitely pretty cool. >>You don't have to be modest about it, you know, >>I mean, just being at Goddard and being at the center where they build the James web web telescope and you can go to that clean room and see it, it's just fascinating. So it, it's really an amazing opportunity. >>Yeah. So NASA Goddard as a, as a center has, you know, information technologist, It has engineers, it has scientists, it has support staff, support team members. We have built more things, more instruments that have flown in this space than any other place in the world. The James Lab, we were part of that, part of a huge group of people that worked on James. We and James, we came through and was assembled in our, our, our clean room. It's one of the biggest clean rooms in, in, in the world. And we all took opportunities to go over and take selfies with this as they put those loveness mirrors on them. Yeah, it was awesome. It was amazing. And to see what the James we has done in such a short amount of time, the successes that they've gone through is just incredible. Now, I'm not a, I'm not a part of the James web team, but to be a, to be at the same center, to to listen to scientists like Bill talk about their work, to listen to scientists that, that talk about James, we, that's what's inspiring. And, and we get that all the time. >>And to have the opportunity to work with the astronauts that service the, the Hubble Telescope, you know, these things are, >>That's literally giving me goosebumps right now. I'm sitting over >>Here just, just an amazing opportunity. And woo. >>Well, Dan, Bill, thank you both so much for being on the show. I know it was a bit last minute, but I can guarantee we all got a lot out of it. David and I both, I know I speak for us in the whole cube audience, so thank you. We'll have you, anytime you wanna come talk science on the cube. Thank you all for tuning into our supercomputing footage here, live in Dallas. My name is Savannah Peterson. I feel cooler having sat next to these two gentlemen for the last 15 minutes and I hope you did too. We'll see you again soon.
SUMMARY :
The doctors are in the house and we are joined by We haven't, we haven't been here for three years, so this is actually really could you give the audience a little bit of background on what you do as I think you And quite frankly, we support a lot of what Bill and his And our job is to really, you know, maximize the use of all the observations I imagine you're dealing with a ton of data. Oh, massive amounts of data. what technology here excites you the most about the future and that will make your job easier? And push the questions even further, you know, I mean, at nasa you have to exercise such patience, whether that be data, coming back, images from a rover, And that's some of the, you know, be able to get to the point where you can do things like predict weather six months in advance? So the faster we can get the data, the more data we can have, and that area would improve our ability And I went through this when I was talking about the ghost satellites So we have a model of the earth, we can run it two times Does that bother you at all? what he's saying, to understand the uncertainties, but also the sensitivity with respect to the observations that they're taking. Yeah, it's fascinating. Is that the center that's gonna help us navigate what happens over the next decade? just the seasonal sub, but we also work with G, which is the God Institute for I assume you work with a lot of the, the, you know, sort of the barriers of the countries and the financials. Like, you know, I hope by Do you think of things like that? So we can use the models that we have today to simulate those kind of observations that we can, that we can, you know, really share with the world and share those results as best, I I bet we both did. We all did models with it, but, but you understand the nuance that I'm saying. And there's a, there's a big conversation we have around that, but also with a physics or physical based model as is in the parameterizations of the estimations that we have to do in our systems, right? There's so many factors, but We have to, but we have to make sure that we have the physics in that machine learning in those, in those training. to get easier, faster for our ability to predict to be even more successful you know, I don't know rooting for you, but that's, it's findability, it's fair data, you know, a fair findability accessibility reproducibility, And so I love that you just brought telescope and you can go to that clean room and see it, it's just fascinating. And to see what the James we has done in such a short amount of time, the successes that they've gone through is I'm sitting over And woo. next to these two gentlemen for the last 15 minutes and I hope you did too.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
David | PERSON | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Dan | PERSON | 0.99+ |
NASA | ORGANIZATION | 0.99+ |
Dallas | LOCATION | 0.99+ |
God Institute for Space Studies | ORGANIZATION | 0.99+ |
James | PERSON | 0.99+ |
Nasa | ORGANIZATION | 0.99+ |
Bill | PERSON | 0.99+ |
Africa | LOCATION | 0.99+ |
New York City | LOCATION | 0.99+ |
three years | QUANTITY | 0.99+ |
Dan Duffy | PERSON | 0.99+ |
Bill Putman | PERSON | 0.99+ |
earth | LOCATION | 0.99+ |
both | QUANTITY | 0.99+ |
today | DATE | 0.99+ |
two | QUANTITY | 0.98+ |
YouTube | ORGANIZATION | 0.98+ |
2023 | DATE | 0.98+ |
9 days | QUANTITY | 0.97+ |
an hour ago | DATE | 0.97+ |
8 | QUANTITY | 0.97+ |
Center for Climate Simulation | ORGANIZATION | 0.97+ |
7 | QUANTITY | 0.97+ |
one | QUANTITY | 0.97+ |
nasa | ORGANIZATION | 0.97+ |
next decade | DATE | 0.96+ |
June of next year | DATE | 0.96+ |
Dr. | PERSON | 0.94+ |
10 days later | DATE | 0.94+ |
six months | QUANTITY | 0.93+ |
two gentlemen | QUANTITY | 0.93+ |
this week | DATE | 0.92+ |
this afternoon | DATE | 0.92+ |
James Lab | ORGANIZATION | 0.9+ |
over a decade | QUANTITY | 0.87+ |
last three years | DATE | 0.85+ |
next 50 | DATE | 0.84+ |
Performance Computing Center | ORGANIZATION | 0.8+ |
GBO | ORGANIZATION | 0.77+ |
second | QUANTITY | 0.75+ |
two times in a row | QUANTITY | 0.72+ |
much | QUANTITY | 0.7+ |
last 15 minutes | DATE | 0.66+ |
Hubble Telescope | ORGANIZATION | 0.65+ |
NASA Goddard | ORGANIZATION | 0.65+ |
Noah | PERSON | 0.61+ |
Breaking Analysis: Snowflake caught in the storm clouds
>> From the CUBE Studios in Palo Alto in Boston, bringing you data driven insights from the Cube and ETR. This is Breaking Analysis with Dave Vellante. >> A better than expected earnings report in late August got people excited about Snowflake again, but the negative sentiment in the market is weighed heavily on virtually all growth tech stocks and Snowflake is no exception. As we've stressed many times the company's management is on a long term mission to dramatically simplify the way organizations use data. Snowflake is tapping into a multi hundred billion dollar total available market and continues to grow at a rapid pace. In our view, Snowflake is embarking on its third major wave of innovation data apps, while its first and second waves are still bearing significant fruit. Now for short term traders focused on the next 90 or 180 days, that probably doesn't matter. But those taking a longer view are asking, "Should we still be optimistic about the future of this high flyer or is it just another over hyped tech play?" Hello and welcome to this week's Wiki Bond Cube Insights powered by ETR. Snowflake's Quarter just ended. And in this breaking analysis we take a look at the most recent survey data from ETR to see what clues and nuggets we can extract to predict the near term future in the long term outlook for Snowflake which is going to announce its earnings at the end of this month. Okay, so you know the story. If you've been investor in Snowflake this year, it's been painful. We said at IPO, "If you really want to own this stock on day one, just hold your nose and buy it." But like most IPOs we said there will be likely a better entry point in the future, and not surprisingly that's been the case. Snowflake IPOed a price of 120, which you couldn't touch on day one unless you got into a friends and family Delio. And if you did, you're still up 5% or so. So congratulations. But at one point last year you were up well over 200%. That's been the nature of this volatile stock, and I certainly can't help you with the timing of the market. But longer term Snowflake is targeting 10 billion in revenue for fiscal year 2028. A big number. Is it achievable? Is it big enough? Tell you what, let's come back to that. Now shorter term, our expert trader and breaking analysis contributor Chip Simonton said he got out of the stock a while ago after having taken a shot at what turned out to be a bear market rally. He pointed out that the stock had been bouncing around the 150 level for the last few months and broke that to the downside last Friday. So he'd expect 150 is where the stock is going to find resistance on the way back up, but there's no sign of support right now. He said maybe at 120, which was the July low and of course the IPO price that we just talked about. Now, perhaps earnings will be a catalyst, when Snowflake announces on November 30th, but until the mentality toward growth tech changes, nothing's likely to change dramatically according to Simonton. So now that we have that out of the way, let's take a look at the spending data for Snowflake in the ETR survey. Here's a chart that shows the time series breakdown of snowflake's net score going back to the October, 2021 survey. Now at that time, Snowflake's net score stood at a robust 77%. And remember, net score is a measure of spending velocity. It's a proprietary network, and ETR derives it from a quarterly survey of IT buyers and asks the respondents, "Are you adopting the platform new? Are you spending 6% or more? Is you're spending flat? Is you're spending down 6% or worse? Or are you leaving the platform decommissioning?" You subtract the percent of customers that are spending less or churning from those that are spending more and adopting or adopting and you get a net score. And that's expressed as a percentage of customers responding. In this chart we show Snowflake's in out of the total survey which ranges... The total survey ranges between 1,200 and 1,400 each quarter. And the very last column... Oh sorry, very last row, we show the number of Snowflake respondents that are coming in the survey from the Fortune 500 and the Global 2000. Those are two very important Snowflake constituencies. Now what this data tells us is that Snowflake exited 2021 with very strong momentum in a net score of 82%, which is off the charts and it was actually accelerating from the previous survey. Now by April that sentiment had flipped and Snowflake came down to earth with a 68% net score. Still highly elevated relative to its peers, but meaningfully down. Why was that? Because we saw a drop in new ads and an increase in flat spend. Then into the July and most recent October surveys, you saw a significant drop in the percentage of customers that were spending more. Now, notably, the percentage of customers who are contemplating adding the platform is actually staying pretty strong, but it is off a bit this past survey. And combined with a slight uptick in planned churn, net score is now down to 60%. That uptick from 0% and 1% and then 3%, it's still small, but that net score at 60% is still 20 percentage points higher than our highly elevated benchmark of 40% as you recall from listening to earlier breaking analysis. That 40% range is we consider a milestone. Anything above that is actually quite strong. But again, Snowflake is down and coming back to churn, while 3% churn is very low, in previous quarters we've seen Snowflake 0% or 1% decommissions. Now the last thing to note in this chart is the meaningful uptick in survey respondents that are citing, they're using the Snowflake platform. That's up to 212 in the survey. So look, it's hard to imagine that Snowflake doesn't feel the softening in the market like everyone else. Snowflake is guiding for around 60% growth in product revenue against the tough compare from a year ago with a 2% operating margin. So like every company, the reaction of the street is going to come down to how accurate or conservative the guide is from their CFO. Now, earlier this year, Snowflake acquired a company called Streamlit for around $800 million. Streamlit is an open source Python library and it makes it easier to build data apps with machine learning, obviously a huge trend. And like Snowflake, generally its focus is on simplifying the complex, in this case making data science easier to integrate into data apps that business people can use. So we were excited this summer in the July ETR survey to see that they added some nice data and pick on Streamlit, which we're showing here in comparison to Snowflake's core business on the left hand side. That's the data warehousing, the Streamlit pieces on the right hand side. And we show again net score over time from the previous survey for Snowflake's core database and data warehouse offering again on the left as compared to a Streamlit on the right. Snowflake's core product had 194 responses in the October, 22 survey, Streamlit had an end of 73, which is up from 52 in the July survey. So significant uptick of people responding that they're doing business in adopting Streamlit. That was pretty impressive to us. And it's hard to see, but the net scores stayed pretty constant for Streamlit at 51%. It was 52% I think in the previous quarter, well over that magic 40% mark. But when you blend it with Snowflake, it does sort of bring things down a little bit. Now there are two key points here. One is that the acquisition seems to have gained exposure right out of the gate as evidenced by the large number of responses. And two, the spending momentum. Again while it's lower than Snowflake overall, and when you blend it with Snowflake it does pull it down, it's very healthy and steady. Now let's do a little pure comparison with some of our favorite names in this space. This chart shows net score or spending velocity in the Y-axis, an overlap or presence, pervasiveness if you will, in the data set on the X-axis. That red dotted line again is that 40% highly elevated net score that we like to talk about. And that table inserted informs us as to how the companies are plotted, where the dots set up, the net score, the ins. And we're comparing a number of database players, although just a caution, Oracle includes all of Oracle including its apps. But we just put it in there for reference because it is the leader in database. Right off the bat, Snowflake jumps out with a net score of 64%. The 60% from the earlier chart, again included Streamlit. So you can see its core database, data warehouse business actually is higher than the total company average that we showed you before 'cause the Streamlit is blended in. So when you separate it out, Streamlit is right on top of data bricks. Isn't that ironic? Only Snowflake and Databricks in this selection of names are above the 40% level. You see Mongo and Couchbase, they know they're solid and Teradata cloud actually showing pretty well compared to some of the earlier survey results. Now let's isolate on the database data platform sector and see how that shapes up. And for this analysis, same XY dimensions, we've added the big giants, AWS and Microsoft and Google. And notice that those three plus Snowflake are just at or above the 40% line. Snowflake continues to lead by a significant margin in spending momentum and it keeps creeping to the right. That's that end that we talked about earlier. Now here's an interesting tidbit. Snowflake is often asked, and I've asked them myself many times, "How are you faring relative to AWS, Microsoft and Google, these big whales with Redshift and Synapse and Big Query?" And Snowflake has been telling folks that 80% of its business comes from AWS. And when Microsoft heard that, they said, "Whoa, wait a minute, Snowflake, let's partner up." 'Cause Microsoft is smart, and they understand that the market is enormous. And if they could do better with Snowflake, one, they may steal some business from AWS. And two, even if Snowflake is winning against some of the Microsoft database products, if it wins on Azure, Microsoft is going to sell more compute and more storage, more AI tools, more other stuff to these customers. Now AWS is really aggressive from a partnering standpoint with Snowflake. They're openly negotiating, not openly, but they're negotiating better prices. They're realizing that when it comes to data, the cheaper that you make the offering, the more people are going to consume. At scale economies and operating leverage are really powerful things at volume that kick in. Now Microsoft, they're coming along, they obviously get it, but Google is seemingly resistant to that type of go to market partnership. Rather than lean into Snowflake as a great partner Google's field force is kind of fighting fashion. Google itself at Cloud next heavily messaged what they call the open data cloud, which is a direct rip off of Snowflake. So what can we say about Google? They continue to be kind of behind the curve when it comes to go to market. Now just a brief aside on the competitive posture. I've seen Slootman, Frank Slootman, CEO of Snowflake in action with his prior companies and how he depositioned the competition. At Data Domain, he eviscerated a company called Avamar with their, what he called their expensive and slow post process architecture. I think he actually called it garbage, if I recall at one conference I heard him speak at. And that sort of destroyed BMC when he was at ServiceNow, kind of positioning them as the equivalent of the department of motor vehicles. And so it's interesting to hear how Snowflake openly talks about the data platforms of AWS, Microsoft, Google, and data bricks. I'll give you this sort of short bumper sticker. Redshift is just an on-prem database that AWS morphed to the cloud, which by the way is kind of true. They actually did a brilliant job of it, but it's basically a fact. Microsoft Excel, a collection of legacy databases, which also kind of morphed to run in the cloud. And even Big Query, which is considered cloud native by many if not most, is being positioned by Snowflake as originally an on-prem database to support Google's ad business, maybe. And data bricks is for those people smart enough to get it to Berkeley that love complexity. And now Snowflake doesn't, they don't mention Berkeley as far as I know. That's my addition. But you get the point. And the interesting thing about Databricks and Snowflake is a while ago in the cube I said that there was a new workload type emerging around data where you have AWS cloud, Snowflake obviously for the cloud database and Databricks data for the data science and EML, you bring those things together and there's this new workload emerging that's going to be very powerful in the future. And it's interesting to see now the aspirations of all three of these platforms are colliding. That's quite a dynamic, especially when you see both Snowflake and Databricks putting venture money and getting their hooks into the loyalties of the same companies like DBT labs and Calibra. Anyway, Snowflake's posture is that we are the pioneer in cloud native data warehouse, data sharing and now data apps. And our platform is designed for business people that want simplicity. The other guys, yes, they're formidable, but we Snowflake have an architectural lead and of course we run in multiple clouds. So it's pretty strong positioning or depositioning, you have to admit. Now I'm not sure I agree with the big query knockoffs completely. I think that's a bit of a stretch, but snowflake, as we see in the ETR survey data is winning. So in thinking about the longer term future, let's talk about what's different with Snowflake, where it's headed and what the opportunities are for the company. Snowflake put itself on the map by focusing on simplifying data analytics. What's interesting about that is the company's founders are as you probably know from Oracle. And rather than focusing on transactional data, which is Oracle's sweet spot, the stuff they worked on when they were at Oracle, the founder said, "We're going to go somewhere else. We're going to attack the data warehousing problem and the data analytics problem." And they completely re-imagined the database and how it could be applied to solve those challenges and reimagine what was possible if you had virtually unlimited compute and storage capacity. And of course Snowflake became famous for separating the compute from storage and being able to completely shut down compute so you didn't have to pay for it when you're not using it. And the ability to have multiple clusters hit the same data without making endless copies and a consumption/cloud pricing model. And then of course everyone on the planet realized, "Wow, that's a pretty good idea." Every venture capitalist in Silicon Valley has been funding companies to copy that move. And that today has pretty much become mainstream in table stakes. But I would argue that Snowflake not only had the lead, but when you look at how others are approaching this problem, it's not necessarily as clean and as elegant. Some of the startups, the early startups I think get it and maybe had an advantage of starting later, which can be a disadvantage too. But AWS is a good example of what I'm saying here. Is its version of separating compute from storage was an afterthought and it's good, it's... Given what they had it was actually quite clever and customers like it, but it's more of a, "Okay, we're going to tier to storage to lower cost, we're going to sort of dial down the compute not completely, we're not going to shut it off, we're going to minimize the compute required." It's really not true as separation is like for instance Snowflake has. But having said that, we're talking about competitors with lots of resources and cohort offerings. And so I don't want to make this necessarily all about the product, but all things being equal architecture matters, okay? So that's the cloud S-curve, the first one we're showing. Snowflake's still on that S-curve, and in and of itself it's got legs, but it's not what's going to power the company to 10 billion. The next S-curve we denote is the multi-cloud in the middle. And now while 80% of Snowflake's revenue is AWS, Microsoft is ramping up and Google, well, we'll see. But the interesting part of that curve is data sharing, and this idea of data clean rooms. I mean it really should be called the data sharing curve, but I have my reasons for calling it multi-cloud. And this is all about network effects and data gravity, and you're seeing this play out today, especially in industries like financial services and healthcare and government that are highly regulated verticals where folks are super paranoid about compliance. There not going to share data if they're going to get sued for it, if they're going to be in the front page of the Wall Street Journal for some kind of privacy breach. And what Snowflake has done is said, "Put all the data in our cloud." Now, of course now that triggers a lot of people because it's a walled garden, okay? It is. That's the trade off. It's not the Wild West, it's not Windows, it's Mac, it's more controlled. But the idea is that as different parts of the organization or even partners begin to share data that they need, it's got to be governed, it's got to be secure, it's got to be compliant, it's got to be trusted. So Snowflake introduced the idea of, they call these things stable edges. I think that's the term that they use. And they track a metric around stable edges. And so a stable edge, or think of it as a persistent edge is an ongoing relationship between two parties that last for some period of time, more than a month. It's not just a one shot deal, one a done type of, "Oh guys shared it for a day, done." It sent you an FTP, it's done. No, it's got to have trajectory over time. Four weeks or six weeks or some period of time that's meaningful. And that metric is growing. Now I think sort of a different metric that they track. I think around 20% of Snowflake customers are actively sharing data today and then they track the number of those edge relationships that exist. So that's something that's unique. Because again, most data sharing is all about making copies of data. That's great for storage companies, it's bad for auditors, and it's bad for compliance officers. And that trend is just starting out, that middle S-curve, it's going to kind of hit the base of that steep part of the S-curve and it's going to have legs through this decade we think. And then finally the third wave that we show here is what we call super cloud. That's why I called it multi-cloud before, so it could invoke super cloud. The idea that you've built a PAS layer that is purpose built for a specific objective, and in this case it's building data apps that are cloud native, shareable and governed. And is a long-term trend that's going to take some time to develop. I mean, application development platforms can take five to 10 years to mature and gain significant adoption, but this one's unique. This is a critical play for Snowflake. If it's going to compete with the big cloud players, it has to have an app development framework like Snowpark. It has to accommodate new data types like transactional data. That's why it announced this thing called UniStore last June, Snowflake a summit. And the pattern that's forming here is Snowflake is building layer upon layer with its architecture at the core. It's not currently anyway, it's not going out and saying, "All right, we're going to buy a company that's got to another billion dollars in revenue and that's how we're going to get to 10 billion." So it's not buying its way into new markets through revenue. It's actually buying smaller companies that can complement Snowflake and that it can turn into revenue for growth that fit in to the data cloud. Now as to the 10 billion by fiscal year 28, is that achievable? That's the question. Yeah, I think so. Would the momentum resources go to market product and management prowess that Snowflake has? Yes, it's definitely achievable. And one could argue to $10 billion is too conservative. Indeed, Snowflake CFO, Mike Scarpelli will fully admit his forecaster built on existing offerings. He's not including revenue as I understand it from all the new stuff that's in the pipeline because he doesn't know what it's going to look like. He doesn't know what the adoption is going to look like. He doesn't have data on that adoption, not just yet anyway. And now of course things can change quite dramatically. It's possible that is forecast for existing businesses don't materialize or competition picks them off or a company like Databricks actually is able in the longer term replicate the functionality of Snowflake with open source technologies, which would be a very competitive source of innovation. But in our view, there's plenty of room for growth, the market is enormous and the real key is, can and will Snowflake deliver on the promises of simplifying data? Of course we've heard this before from data warehouse, the data mars and data legs and master data management and ETLs and data movers and data copiers and Hadoop and a raft of technologies that have not lived up to expectations. And we've also, by the way, seen some tremendous successes in the software business with the likes of ServiceNow and Salesforce. So will Snowflake be the next great software name and hit that 10 billion magic mark? I think so. Let's reconnect in 2028 and see. Okay, we'll leave it there today. I want to thank Chip Simonton for his input to today's episode. Thanks to Alex Myerson who's on production and manages the podcast. Ken Schiffman as well. Kristin Martin and Cheryl Knight help get the word out on social media and in our newsletters. And Rob Hove is our Editor in Chief over at Silicon Angle. He does some great editing for us. Check it out for all the news. 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. Or you can email me to get in touch David.vallante@siliconangle.com. DM me @dvellante or comment on our LinkedIn post. And please do check out etr.ai, they've got the best survey data in the enterprise tech business. This is Dave Vellante for the CUBE Insights, powered by ETR. Thanks for watching, thanks for listening and we'll see you next time on breaking analysis. (upbeat music)
SUMMARY :
insights from the Cube and ETR. And the ability to have multiple
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Alex Myerson | PERSON | 0.99+ |
Mike Scarpelli | PERSON | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Oracle | ORGANIZATION | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
November 30th | DATE | 0.99+ |
Ken Schiffman | PERSON | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
ORGANIZATION | 0.99+ | |
Chip Simonton | PERSON | 0.99+ |
October, 2021 | DATE | 0.99+ |
Rob Hove | PERSON | 0.99+ |
Cheryl Knight | PERSON | 0.99+ |
Frank Slootman | PERSON | 0.99+ |
Four weeks | QUANTITY | 0.99+ |
July | DATE | 0.99+ |
six weeks | QUANTITY | 0.99+ |
10 billion | QUANTITY | 0.99+ |
five | QUANTITY | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
Slootman | PERSON | 0.99+ |
BMC | ORGANIZATION | 0.99+ |
Databricks | ORGANIZATION | 0.99+ |
6% | QUANTITY | 0.99+ |
80% | QUANTITY | 0.99+ |
last year | DATE | 0.99+ |
October | DATE | 0.99+ |
Silicon Valley | LOCATION | 0.99+ |
40% | QUANTITY | 0.99+ |
1,400 | QUANTITY | 0.99+ |
$10 billion | QUANTITY | 0.99+ |
Snowflake | ORGANIZATION | 0.99+ |
April | DATE | 0.99+ |
3% | QUANTITY | 0.99+ |
77% | QUANTITY | 0.99+ |
64% | QUANTITY | 0.99+ |
60% | QUANTITY | 0.99+ |
194 responses | QUANTITY | 0.99+ |
Kristin Martin | PERSON | 0.99+ |
two parties | QUANTITY | 0.99+ |
51% | QUANTITY | 0.99+ |
2% | QUANTITY | 0.99+ |
Silicon Angle | ORGANIZATION | 0.99+ |
fiscal year 28 | DATE | 0.99+ |
billion dollars | QUANTITY | 0.99+ |
0% | QUANTITY | 0.99+ |
Avamar | ORGANIZATION | 0.99+ |
52% | QUANTITY | 0.99+ |
Berkeley | LOCATION | 0.99+ |
2028 | DATE | 0.99+ |
Mongo | ORGANIZATION | 0.99+ |
Data Domain | ORGANIZATION | 0.99+ |
1% | QUANTITY | 0.99+ |
late August | DATE | 0.99+ |
two | QUANTITY | 0.99+ |
three | QUANTITY | 0.99+ |
fiscal year 2028 | DATE | 0.99+ |
Patrick Coughlin | AWS re:Invent 2022
foreign welcome back to thecube's coverage of AWS re invent 2022 I'm John Furrier host of thecube we've got a great conversation with Patrick Coughlin vice president of go to market strategy and specialization at Splunk we're talking about the open cyber security schema framework also known as the ocsf a joint strategic collaboration between Splunk and AWS it's got a lot of traction momentum Patrick thanks for coming on thecube for reinvent coverage John great to be here I'm excited for this you know I love this open source movement and open source continues to add value almost sets the standards you know we were talking at the cncf Linux Foundation this past fall about how standards are coming out of Open Source not so much the the classic standards groups but you start to see the developers voting with their code groups deciding what to adopt to fact those standards and security is a real key part of that where data becomes key for resilience and this has been the top conversation at re invent and all around the industry is how to make data a key part of building into cyber resilience so I want to get your thoughts about the problem that you see that's emerging that you guys are solving with this group kind of collaboration around the ocsf yeah well look John I I think I think you you've already you've already hit the high notes there uh data is proliferating across the Enterprise uh the attack surface area is rapidly expanding the threat landscape is Ever Changing uh you know we we just had a a lot of uh uh scares around openssl before that we had vulnerabilities and Confluence in atlassian and you go back to log 4J and solarwinds before that um and challenges with the supply chain uh in this year in particular we've had a huge acceleration in in concerns and threat vectors around uh operational technology in our customer base alone we saw a huge uptick you know in double digit percentage of customers that we're concerned about the traditional vectors like like ransomware uh like business email compromise phishing but also from Insider threat and others um so you've got this this highly complex Flex environment where data continues to proliferate and flow through new applications new infrastructure new Services driving different types of outcomes in the digitally transformed Enterprise of today and and what happens there is is our customers particularly in security are left with having to stitch all of this together and they're trying to get visibility across multiple different Services infrastructure applications across a number of different point solutions that they've bought to help them protect defend detect and respond better and it's a massive Challenge and uh you know when our when our customers come to us they are often looking for ways to drive more consolidation uh across a variety of different solutions they're looking to drive better outcomes in terms of speed to detection how do I detect faster how do I find the thing that when banging in the night faster um how do I then fix it quickly and then how do I layer in some automation so hopefully I don't have to do it again now the Challenger that really ocf ocsf helps to to solve is to do that effectively to detect and to respond to the speed at which attackers are demanding today we have to have normalization of data across this entire landscape of tools infrastructure Services we have to have integration to have visibility um and these tools have to work together but the biggest barrier to that is often data is stored in different structures and in different formats across different solution providers across different tools that are that are that our customers are using um and that that lack of data normalization chokes the integration problem and so um you know several years ago a number of very smart people in this position this was a initiative started by Splunk and AWS came together and said look we as an industry have to solve this for our customers we have to start to shoulder this burden for our customers we can't we can't make our customers have to be systems integrators that's not their job our job is to help make this easier for them and so ocsf was born and over the last couple of years um we've built out this this collaboration to not just be AWS and Splunk uh but over uh 50 different organizations um uh um cloud service providers solution providers in the cyber security space have come together and said let's decide on a single unified schema for how we're going to represent event data in this industry um and uh I'm very proud to be here today to say that we've launched it and and um uh I can't wait to see where we go next yeah I mean this is really compelling I mean there's so much packed in that in that statement I mean data normalization you mentioned chokes this the the solution and the integration as you call it but really also it's like data is not just stored in silos it may not even be available right so if you don't have availability of data that's an important Point number two you mentioned supply chain there's physical supply chain is coming up big time at re invent this time as well as in open source the software supply chain so you now have the perimeter has been dead for multiple years we've been talking about that for years everybody knows that but now combined with the supply chain problem both physical and software there's so much more to go on and so you know the leaders in the industry they're not sitting on their hands they know this but they're just overloaded so so how do leaders deal with this right now before we get into the ocsf I want to just get your thoughts on what's the psychology of the of the business leader who's facing this landscape yeah well I mean unfortunately too many leaders feel like they have to face these trade-offs between you know how and where they are really focusing cyber resilience investments in the business um and and often there is a siled approach across security I.T developer operations or engineering rather than the ability to kind of Drive visibility integration and and connection of outcomes across those different functions I mean the truth is the Telemetry that that you get from an application for application performance monitoring or infrastructure monitoring is often incredibly valuable when there's a security incident and vice versa some of the security data um that you may see in a security operations center can be incredibly valuable when trying to investigate a performance degradation in an application and understanding where that may come from and so what we're seeing is this data layer is collapsing faster than the org charts are or the budget line items are in the Enterprise and so at Splunk here you know we believe security resilience is is fundamentally a data problem and one of the things that we do often is is actually help connect the dots for our customers and bring our customers together across the silos they may have internally so that they can start to see a holistic picture of what resilience means for their Enterprise and how they can drive faster detection outcomes and more automation coverage you know we recently had an event called super cloud we're going into the next gen kind of a cloud how data and security are all kind of part of this next-gen applications not just SAS and we had a panel that was titled the innovators dilemma kind of talk about getting some of the challenges and one of the panelists said it's not the innovators dilemma it's the integrators dilemma and you mentioned that earlier I think this is a key point right now integration is so critical not having the data and putting pieces together and now open source is becoming a composability market and I think having things snap together and work well it's a platform system conversation not a tool conversation so I really want to get into where the ocsf kind of intersects with this area people are working on it's not just solution Architects or cloud cloud native sres especially where devsecops is so this this intersection is critical how does ocsf integrate into that integration of the data making that available to make machine learning and automation smarter and more relevant right right well look I mean I I think that's a fantastic question because you know we talk about we use buzzwords like machine learning and AI all the time and you know I I know they're all over the place here at reinvented and and um there's so much promise and hope out there around these Technologies and these Innovations however uh machine learning AI is only as effective as the data is clean and normalized uh and and we will not realize the promise of these Technologies for outcomes in resilience unless we have better ways to normalize data upstream and better ways to integrate that data to the downstream tools where detection and response is happening and so ocsf was really about the industry coming together and saying this is no longer the job of our customers we are going to create a unified schema that represents the an event that we will all bite down on even some of us are competitors you know this is this is that that no longer matters because at the point the point is how do we take this burden off of our customers and how do we make the industry safer together um and so 15 initial members came together um along with AWS and Splunk to to start to create that uh that initial schema and standardize it and if you've ever you know if you ever worked with a bunch of technical grumpy security people it's kind of hard to drive consensus about around just about anything but uh um but I'm really happy to see how quickly this this organization Has Come Together has open sourced the schema um and and just as you said like I think this this unlocks the potential for real Innovation that's going to be required to keep up with the bad guys but right now is getting stymied and held back by the lack of normalization and the lack of integration I've always said Splunk was a it's AIDS data for breakfast lunch and dinner and turns it into insights and I think you bring up The Silo thing what's interesting is the cross company sharing I think this hits point on so I see this as a valuable opportunity for the industry what's the traction on that because you know to succeed it does take a village takes a community of security practitioners and and Architects and developers to kind of coalesce around this de facto movement has been has been uptake been good that's attraction can you share your thoughts on how this is translating across companies yeah absolutely I mean look I I think um cyber security has a long track record of of Standards development um there's been some fantastic standards recently things like um sticks and taxi for threat intelligence there's been things like the you know the minor attack framework coming out of my miter and and the adoption the traction that we've seen with attack in particular has been amazing to watch how that has kind of roared onto the scene in the last couple of years and has become table Stakes for um how you do security operations and incident response um and you know I think with ocsf we're going to see something similar here but you know we are in literally the first Innings of of this um so right now you know we're architecting this into our um into every part of our sort of back end systems here at spelunk I know um our collaborators at AWS and elsewhere are doing it too and so I think it starts with bringing this standard now the standard exists on a uh you know in schema format um and there's you know Confluence and jira tickets around it how do we then sort of build this into the code of of the the collaborators that have been leading the way on this and you know it's not going to happen overnight but I think in the coming quarters you'll start to see this schema um be the standard um across the leaders in this space companies like Splunk and AWS and others who are leading the way and often that's what helps Drive adoption of a standard is if you can get the big dogs so to speak to to embrace it and you know there's no bigger one than AWS and I think there's no no more important one than Splunk in the cyber security space and so as we adopt this we hope others will follow and like I said we've got over 50 organizations contributing to it today and so um I think we're off to a running start you know it's interesting choking Innovation or having things kind of get get slowed down has really been a problem we've seen successes recently over the past few years like kubernetes has really unlocked and accelerated the cloud native worlds of runtime with containers to kind of have the consensus of the community say hey if you we just do this it gets better I think this is really compelling with the ocsf because if people can come together around this and get unified as well as other the other official standards things can go highly accelerated so I think I think it looks really good and I think it's great initiative and I really appreciate your Insight on that on on your relationship with Amazon okay it's not just the Partnerships it's a strategic collaboration could you share that uh relationship Dynamic how to start how's it going what's strategic about it share to the audience kind of the relationship between Splunk and natives on this important ocsf initiative look I I mean I think this this year marks the the 10th year anniversary that that Splunk and AWS have been collaborating in a variety of different ways um I I think our our companies have um a fantastic and long-standing relationship and we've we've partnered on a number of really important projects together that bring value um obviously to our individual companies uh but also to our shared customers um uh when I think about some of the most important customers at Splunk that I spend a significant amount of time with um uh I I know how many of those are our AWS customers as well and I know how important AWS is to them so I think it's it's a it's a collaboration that is rooted in in a respect for each other's Technologies um and Innovation but also in a recognition that that our shared customers want to see us work better together over time and it's not it's not two companies that have kind of decided in a back room that they should work together it's actually our customers that are that are pushing us and I think we're both very customer-centric organizations and I think that has helped us actually be better collaborators and better Partners together um because we're working back backwards from our customers as security becomes a physical and software approach we've seen the trend where even Steven Schmidt at Amazon web services is the CSO he's not the CSO anymore so why he says well security is also physical stuff too so so lens is now expanded you mentioned supply chain physical digital this is an important inflection point can you summarize in your mind why open cyber security scheme information is important I know the unification but beyond that what why is this so important why should people pay attention to this you know I if if you'll let me be just a little abstract and meta for a second yeah I think what's what's really meaningful at the highest level about the ocsf initiative um and then it goes beyond I think the Tactical value it will provide to to organizations and to customers in terms of making them safer um over the coming years and and decades I think what's more important than that is it's really the one of the first times that you've seen um the industry come together and say we got a problem we need to solve that you know doesn't really have anything to do with with our own economics um our customers are are hurting and yeah some of us may be competitors um uh you know we got different cloud service providers that are participating in this along with AWS we've got different cyber security solution providers participating in this along with spelunk um but but folks have come together and say we can actually solve this problem um if if we're able to kind of put aside our competitive differences in the markets and approach this from the perspective of what's best for information security as a whole um and and I think that's what I'm most proud of uh and and what I hope we can do more of in other places in this industry because I think that kind of collaboration from real Market leaders can actually um change markets it can change the the the trend lines in terms of how we are keeping up with the bad guys and and I'd like to see a lot more of that and we're seeing a lot more new kind of things emerging in the cloud next kind of this next Generation architecture and alcohol thumbs are happening I think it's interesting you know we always talk about sustainability supply chain sustainability about making the earth a better place but you're hitting on this this meta point about businesses are under threat of going under I mean we want to keep businesses to businesses to be sustainable not just you know the the environment so if a business goes out of business which the threats here are can be catastrophic for companies I mean there is there is a community responsibility to protect businesses so they can sustain and stay stay producing this is a real key point yeah yeah I mean look I think I think one of the things that you know we We complain a lot in in cyber security about the lack of of talent the talent shortage and cyber security and every year we kind of we kind of uh whack ourselves over the head about how hard it is to bring people into this industry and it's true um but one of the things that I think we forget John is is how important mission is to so many people in what they do for a living and how they work and I think one of the things that cyber security is strongest in information security General and has been for decades is this sense of mission and people work in this industry not because it's it's it's always the the the most lucrative but because it really drives a sense of um Safety and Security in the Enterprises and the fabric of the economy that we use every day to go through our lives and when I think about the sport customers and AWS customers I think about um um the the different products and tools that power my life and and we need to secure them and and sometimes that means coming to work every day at that company and doing your job and sometimes that means working with others better faster and stronger to help drive that level of of maturity and security that this industry needs it's a human it's a human opportunity human problem and and challenge that's a whole other segment the role of the talent and the human machines and with scale Patrick thanks so much for sharing the information and the Insight on the open cyber security schema frame and what it means and why it's important thanks for sharing on thecube really appreciate it thanks for having me John okay this is AWS re invent 2022 coverage here on thecube I'm John Furrier the host thanks for watching foreign [Music]
SUMMARY :
one of the things that you know we We
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Patrick Coughlin | PERSON | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Splunk | ORGANIZATION | 0.99+ |
John Furrier | PERSON | 0.99+ |
Steven Schmidt | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Patrick | PERSON | 0.99+ |
15 initial members | QUANTITY | 0.99+ |
two companies | QUANTITY | 0.99+ |
one | QUANTITY | 0.99+ |
John | PERSON | 0.99+ |
today | DATE | 0.98+ |
decades | QUANTITY | 0.96+ |
this year | DATE | 0.96+ |
several years ago | DATE | 0.95+ |
10th year | QUANTITY | 0.95+ |
both | QUANTITY | 0.95+ |
single | QUANTITY | 0.95+ |
last couple of years | DATE | 0.92+ |
2022 | DATE | 0.92+ |
atlassian | TITLE | 0.91+ |
over 50 organizations | QUANTITY | 0.91+ |
earth | LOCATION | 0.9+ |
one of the things | QUANTITY | 0.88+ |
last couple of years | DATE | 0.88+ |
first | QUANTITY | 0.85+ |
ocsf | ORGANIZATION | 0.85+ |
second | QUANTITY | 0.78+ |
first times | QUANTITY | 0.78+ |
past fall | DATE | 0.73+ |
too many | QUANTITY | 0.73+ |
Challenger | TITLE | 0.73+ |
one of | QUANTITY | 0.72+ |
Splunk | PERSON | 0.72+ |
many people | QUANTITY | 0.72+ |
Linux Foundation | ORGANIZATION | 0.72+ |
things | QUANTITY | 0.7+ |
50 different organizations | QUANTITY | 0.68+ |
re:Invent 2022 | TITLE | 0.66+ |
the panelists | QUANTITY | 0.61+ |
past few years | DATE | 0.58+ |
spelunk | ORGANIZATION | 0.57+ |
ocsf | TITLE | 0.57+ |
over | QUANTITY | 0.56+ |
Point number two | QUANTITY | 0.55+ |
ocsf | PERSON | 0.5+ |
Confluence | ORGANIZATION | 0.46+ |
Silo | TITLE | 0.37+ |
Richard Hartmann, Grafana Labs | KubeCon + CloudNativeCon NA 2022
>>Good afternoon everyone, and welcome back to the Cube. I am Savannah Peterson here, coming to you from Detroit, Michigan. We're at Cuban Day three. Such a series of exciting interviews. We've done over 30, but this conversation is gonna be extra special, don't you think, John? >>Yeah, this is gonna be a good one. Griffon Labs is here with us. We're getting the conversation of what's going on in the industry management, watching the Kubernetes clusters. This is large scale conversations this week. It's gonna be a good one. >>Yeah. Yeah. I'm very excited. He's also got a fantastic Twitter handle, twitchy. H Please welcome Richie Hartman, who is the director of community here at Griffon. Richie, thank you so much for joining us. Thanks >>For having me. >>How's the show been for you? >>Busy. I, I mean, I, I, >>In >>A word, I have a ton of talks at at like maintain a thing and like the covering board searches at the TLC panel. I run forme day. So it's, it's been busy. It, yeah. Monday, I didn't have to run anything. That was quite nice. But there >>You, you have your hands in a lot. I'm not even gonna cover it. Looking at your bio, there's, there's so many different things that you're working on. I know that Grafana specifically had some announcements this week. Yeah, >>Yeah, yeah. We had quite a few, like the, the two largest ones is a, we now have a field Kubernetes integration on Grafana Cloud. So our, our approach is generally extremely open source first. So we try to push stuff into the exporters, like into the open source exporters, into mixes into things which are out there as open source for anyone to use. But that's little bit like a tool set, not a ready made solution. So when we talk integrations, we actually talk about things where you get this like one click experience, You log into your Grafana cloud, you click, I have a Kubernetes, which probably most of us have, and things just work like you in just the data. You have to write dashboards, you have to write alerts, you have to write everything to just get started with extremely opinionated dashboards, SLOs, alerts, again, all those things made by experts, so anyone can use them. And you don't have to reinvent the view for every single user. So that's the one. The other is, >>It's a big deal. >>Oh yeah, it is. Yeah. It is. It, we, we has, its heavily in integrations course. While, I mean, I don't have to convince anyone that perme is a DD factor standard in everything. Cloudnative. But again, it's, it's, it's sometimes a little bit hard to handle or a little bit not easy to get into. So, so smoothing this, this, this path onto onboarding yourself onto this stack and onto those types of solutions. Yes. Is what a lot of people need. Course, if you, if you look at the statistics from coupon, and we just heard this in the governing board session yesterday. Yeah. Like 60% of the people here are first time attendees. So there's a lot of people who just come into this thing and who need, like, this is your path. This is where you should be going. Or at least if you want to go, go there. This is how to get there. >>Here's your runway for takeoff. Yes. Yeah. I think that's a really good point. And I love that you, you had those numbers. I was curious. I, I had seen on Twitter, speaking of Twitter, I had seen, I had seen that, that there were a lot of people here coming for the first time. You're a community guy. Are we at an inflection point where this community is about to continue to scale? >>That's a very good question. Which I can't really answer. So I mean, >>Obviously I bet you're gonna try. >>I covid changed a few things. Yeah. Probably most people, >>A couple things. I mean, you know, casually, it's like such a gentle way of putting that, that was >>Beautiful. I'm gonna say yes, just to explode. All these new ERs are gonna learn Prometheus. They're gonna roll in with a open, open metrics, open telemetry. I love it, >>You know, But, but at the same time, like Cuban is, is ramping back up. But if you look at the, if you look at the registration numbers between Valencia Andro, it was more or less the same. Interesting. Which, so it didn't go onto this, onto this flu trajectory, which it was on like, up to, up to 2019. I expect this to take up again. But also with the economic situation, everything, I, I don't think >>It's, I think the jury's still out on hybrid. I think there's a lot, lot more hybrid. Let's see how the projects are gonna go. That's what I think it's gonna be the tell sign. How many people are in participating? How are the project's advancing? Some of the momentum, >>I mean, from the project level, Most of this is online anyway. Of course. That's how open source, right. I've been working for >>Ages. That's >>Cause you don't have any trouble budget or, or any office or, It's >>Always been that way. >>Yeah, precisely. So the projects are arguably spearheading this, this development and the, the online numbers. I I, I have some numbers in my head, but I'm, I'm not a hundred percent certain to, but they're higher for this time in Detroit than in volunteer as far somewhere. Cool. So that is growing and it's grown in parallel, which also is great. Cause it's much more accessible, much more inclusive. You don't have to have a budget of at least, let's say, I don't know, two to five k to, to fly over the pond and, and attend this thing. You can just do it from your home. So that is, that's a lot more inclusive. And I expect this to, to basically be a second more or less orthogonal growth, growth path. But the best thing about coupon is the hallway track. I'm just meeting people, talking to people and that kind of thing is not really possible with, >>It's, it's great to see people >>In person. No, and it makes such a difference. I mean, yeah. Even and interviewing people in person too. I mean, it does a, it's, it's, and, and this, this whole, I mean cncf, this whole community, every company here is community first. It's how these projects come to be. I think it's awesome. I feel like you got something you're saying to say, Johnny. >>Yeah. And I love some of the advancements. Rich Richie, we talked last time about, you know, open telemetry, open metrics. You're involved in dashboards. Yeah. One of the themes here is ease of use, simplicity, developer productivity. Where do you see the ease of use going from a project standpoint? For me, as you mentions everywhere, it's pretty much, it is, it's almost all corners of the world. Yep. And new people coming in. How, how are you making it easier? What's going on? Give us the update on that. >>So we also, funnily enough at precisely this topic in the TC panel just a few hours ago, about ease of use and about how to, how to make things easier to, to handle how developers currently, like if they just want to get into the cloud native seen, they have like, like we, we did some neck and math, like maybe 10 tools at least, which you have to be somewhat proficient in to just get started, which is honestly horrendous. Yeah. Course. Like with a server, I just had my survey install my thing and it runs, maybe I need a database, but that's roughly it. And this needs to change again. Like it's, it's nice that everything is, is un unraveled. And you have, you, you, you, you don't have those service boundaries which you had before. You can do all the horizontal scaling, you can do all the automatic scaling, all those things that they're super nice. But at the same time, this complexity, which used to be nicely compartmentalized, was deliberately broken up. And so it's becoming a lot harder to, to, like, we, we need to find new ways to compartmentalize this complexity back to, to human understandable levels again, in particular, as we keep onboarding new and new and new, new people, of course it's just not good use of anyone's time to, to just like learn the basics again and again and again. This is something which should be just compartmentalized and automated away. We're >>The three, We were talking to Matt Klein earlier and he was talking about as projects become mature and all over the place and have reach and and usage, you gotta work on the boring stuff. Yes. And when it's boring, that means you have success. Yes. But then you gotta work on the plumbing. What are some of the things that you guys are working on? Because people are relying on the product. >>Oh yeah. So for with my premises head on, the highlight feature is exponential or native or spars. Histograms. There's like three different names for one single concept. If you know Prometheus, you ha you currently have hard bucket boundaries where I say my latency is lower equal two seconds, one second, a hundred milliseconds, what have you. And I can put stuff into those histogram buckets accordingly to those predefined levels, which is extremely efficient, but like on the, on the code level. But it's not very nice for the humans course you need to understand your system before you're able to, to, to choose good cutoff points. And if you, if you, if you add new ones, that's completely fine. But if you want to actually change them, course you, you figured out that you made a fundamental mistake, you're going to have a break in the continue continuity of your observability data. And you cannot undo this in, into the past. So this is just gone native histograms. On the other hand, allow me to, to, okay, I'm not going to get get into the math, but basically you define a single formula, which there comes a good default. If you have good reasons, then you can change it. But if you don't, just don't talk, >>The people are in the math, Hit him up on Twitter. Twitter, h you'll get you that math. >>So the, >>The thing is people want the math, believe me. >>Oh >>Yeah. I mean we don't have time, but hit him up. Yeah. >>There's ProCon in two weeks in Munich and there will be whole talk about like the, the dirty details of all of the stuff. But the, the high level answer is it just does what people would expect it to do. And with very little overhead, you become, you get highly, highly or high resolution histograms, which is really important for a lot of use cases. But this is not just Prometheus with my open metrics head on the 2.0 feature, like the breaking highlight feature of Open Metrics 2.0 will be you guested precisely the same with my open telemetry head on. Low and behold the same underlying technology is being put or has been put into open telemetry. And we've worked for month and month and month and even longer between all different projects to, to assert that we have one single standard which is actually compatible with each other course. One of the worst things which you can have in the cloud ecosystem is if you have soly different things and they break in subtly wrong ways, like it's much better to just not work than to break in a way, which is just a little bit wrong. Of course you won't figure this out until it's too late. So we spent, like with all three hats, we spent insane amounts of time on making this happen and, and making this nice. >>Savannah, one of the things we have so much going on at Cube Con. I mean just you're unpacking like probably another day of cube. We can't go four days, but open time. >>I know, I know. I'm the same >>Open telemetry >>Challenge acceptance open. >>Sorry, we're gonna stay here. All the, They >>Shut the lights off on us last night. >>They literally gonna pull the plug on us. Yeah, yeah, yeah, yeah. They've done that before. It's not the first time we go until they kick us out. We love, love doing this. But Open telemetry is got a lot of news too. So that's, We haven't really talked much about that. >>We haven't at >>All. So there's a lot of stuff going on that, I won't call it boring. That's like code word's. That's cube talk for, for it's working. Yeah. So it's not bad, but there's a lot of stuff going on. Like open telemetry, open metrics, This is the stuff that matters cuz when you go in large scale, that's key. It's just what, missing all the, all the stuff. >>No, >>What are we missing? What are people missing? What's going on in the show that you think that's not actually being reported on? I mean it's a lot of high web assembly for instance got a lot >>Of high. Oh yeah, I was gonna say, I'm glad you're asking this because you, you've already mentioned about seven different hats that you wear. I can only imagine how many hats are actually in your hat cabinet. But you, you are someone with your, with your fingers in a lot of different things. So you can kind of give us a state of the union. Yeah. So go ahead. Let's talk about >>It. So I think you already hit a few good points. Ease of use is definitely one of them. And, and improving the developer experience and not having this like a value of pain. Yeah. That is one of the really big ones. It's going to be interesting cause it is boring. It is janitorial and it needs a different type of persona. A lot of, or maybe not most, but a large fraction of developers like the shiny stuff. And we could see this in Prometheus where like initially the people who contributed this the most where like those restless people who need to fix that one thing, this is impossible, are going to do it. Which changed over the years where the people who now contribute the most are off the janitorial. Like keep things boring, keep things running, still have substantial changes. But but not like more on the maintenance level. >>Yeah. The maintainers. I was just gonna bring that >>Up. Yeah. On the, on the keep things boring while still pushing 'em forward. Yeah. And the thing about ease of use is a lot of this is boring. A lot of this is strategy. A lot of this is toil. A lot of this takes lots of research also in areas where developers are not really good at, like UX for example, and ui like most software developers are really bad at those cause they just think differently from normal humans, I guess. >>So that's an interesting observation that you just made. I we could unpack that on a whole nother show as well. >>So the, the thing is this is going to be interesting for the open source scene course. This needs deliberate investment by companies who assign people to those projects and say, okay, fix that one thing or make it easier to use what have you. That is a lot easier with, with first party products and projects from companies cuz they can invest directly into the thing and they see much more of a value prop. It's, it's kind of normal by now to, to allow developers or even assigned developers onto open source projects. That's not so much the case for the tpms, for the architects, for the UX and your I people like for the documentation people that there's not as much awareness of that this is also driving value for everyone. Yes. And also there's not much as much. >>Yeah, that's a great point. This whole workflow production system of open source, which has grown and keeps growing and we'll keep growing. These be funded. And one of the things we were talking earlier in another session about is about the recession potentially we're hitting and the global issues, macroeconomics that might force some of these projects or companies not to get VC >>Funding. It's such a theme at the show. So, >>So to me, I said it's just not about VC funding. There's other funding mechanisms that's community oriented. There's companies participating, there's other meccas. Richie, if you could have your wishlist of how things could progress an open source, what would you want to see happen in terms of how it's, how things are funded, how things are executed. Cuz developers are going to run businesses. Cuz ultimately if you follow digital transformation to completion, it and developers aren't a department serving the business. They are the business. And that's coming fast. You know, what has to happen in your opinion, if you had the wish magic wand, what would you, what would you snap your fingers to make happen? >>If I had a magic wand that's very different from, from what is achievable. But let, let's >>Go with, Okay, go with the magic wand first. Cause we'll, we'll, we'll we'll riff on that. So >>I'm here for dreams. Yeah, yeah, >>Yeah. I mean I, I've been in open source for more than two, two decades, but now, and most of the open source is being driven forward by people who are not being paid for those. So for example, Gana is the first time I'm actually paid by a company to do my com community work. It's always been on the side. Of course I believe in it and I like doing it. I'm also not bad at it. And so I just kept doing it. But it was like at night on the weekends and everything. And to be honest, it's still at night and in the weekends, but the majority of it is during paid company time, which is awesome. Yeah. Most of the people who have driven this space forward are not in this position. They're doing it at night, they're doing it on the weekends. They're doing it out of dedication to a cause. Yeah. >>The commitment is insane. >>Yeah. At the same time you have companies mostly hyperscalers and either they have really big cloud offerings or they have really big advertisement business or both. And they're extracting a huge amount of value, which has been created in large part elsewhere. Like yes, they employ a ton of developers, but a lot of the technologies they built on and the shoulders of the giants they stand upon it are really poorly paid. And there are some efforts to like, I think the core foundation like which redistribute a little bit of money and such. But if I had my magic wand, everyone who is an open source and actually drives things forwards, get, I don't know, 20% of the value which they create just magically somehow. Yeah. >>Or, or other companies don't extract as much value and, and redistribute more like put more full-time engineers onto projects or whichever, like that would be the ideal state where the people who actually make the thing out of dedication are not more or less left on the sideline. Of course they're too dedicated to just say, Okay, I'm, I'm not doing this anymore. You figure this stuff out and let things tremble and falter. So I mean, it's like with nurses and such who, who just like, they, they know they have something which is important and they keep doing it. Of course they believe in it. >>I think this, I think this is an opportunity to start messaging this narrative because yeah, absolutely. Now we're at an inflection point where there's a big community, there is a shared responsibility in my opinion, to not spread the wealth, but make sure that it's equally balanced and, and the, and I think there's a way to do that. I don't know how yet, but I see that more than ever, it's not just come in, raid the kingdom, steal all the jewels, monetize it, and throw some token token money around. >>Well, in the burnout. Yeah, I mean I, the other thing that I'm thinking about too is it's, you know, it's, it's the, it's the financial aspect of this. It's the cognitive load. And I'm curious actually, when I ask you this question, how do you avoid burnout? You do a million different things and we're, you know, I'm sure the open source community that passion the >>Coach. Yeah. So it's just write code, >>It's, oh, my, my, my software engineering days are firmly over. I'm, I'm, I'm like, I'm the cat herer and the janitor and like this type of thing. I, I don't really write code anymore. >>It's how do you avoid burnout? >>So a i I didn't curse ahead burnout a few years ago. I was not nice, but that was still when I had like a full day job and that day job was super intense and on top I did all the things. Part of being honest, a lot of the people who do this are really dedicated and are really bad at setting boundaries between work >>And process. That's why I bring it up. Yeah. Literally why I bring it up. Yeah. >>I I I'm firmly in that area and I'm, I'm, I don't claim I have this fully figured out yet. It's also even more risky to some extent per like, it's, it's good if you're paid for this and you can do it during your work time. But on the other hand, if it's so nice and like if your hobby and your job are almost completely intersectional, it >>Becomes really, the lines are blurry. >>Yeah. And then yeah, like have work from home. You, you don't even commute anything or anymore. You just sit down at your computer and you just have fun doing your stuff and all of a sudden it's deep at night and you're still like, I want to keep going. >>Sounds like God, something cute. I >>Know. I was gonna say, I was like, passion is something we all have in common here on this. >>That's the key. That is the key point There is a, the, the passion project becomes the job. But now the contribution is interesting because now yeah, this ecosystem is, is has a commercial aspect. Again, this is the, this is the balance between commercialization and keeping that organic production system that's called open source. I mean, it's so fascinating and this is amazing. I want to continue that conversation. It's >>Awesome. Yeah. Yeah. This is, this is great. Richard, this entire conversation has been excellent. Thank you so much for joining us. How can people find you? I mean, I give em your Twitter handle, but if they wanna find out more about Grafana Prometheus and the 1700 things you do >>For grafana grafana.com, for Prometheus, promeus.io for my own stuff, GitHub slash richie age slash talks. Of course I track all my talks in there and like, I don't, I currently don't have a personal website cause I stop bothering, but my, like that repository is, is very, you find what I do over, like for example, the recording link will be uploaded to this GitHub. >>Yeah. Great. Follow. You also run a lot of events and a lot of community activity. Congratulations for you. Also, I talked about this last time, the largest IRC network on earth. You ran, built a data center from scratch. What happened? You done >>That? >>Haven't done a, he even built a cloud hyperscale compete with Amazon. That's the next one. Why don't you put that on the >>Plate? We'll be sure to feature whatever Richie does next year on the cube. >>I'm game. Yeah. >>Fantastic. On that note, Richie, again, thank you so much for being here, John, always a pleasure. Thank you. And thank you for tuning in to us here live from Detroit, Michigan on the cube. My name is Savannah Peterson and here's to hoping that you find balance in your life this weekend.
SUMMARY :
We've done over 30, but this conversation is gonna be extra special, don't you think, We're getting the conversation of what's going on in the industry management, Richie, thank you so much for joining us. I mean, I, I, I run forme day. You, you have your hands in a lot. You have to write dashboards, you have to write alerts, you have to write everything to just get started with Like 60% of the people here are first time attendees. And I love that you, you had those numbers. So I mean, I covid changed a few things. I mean, you know, casually, it's like such a gentle way of putting that, I love it, I expect this to take up again. Some of the momentum, I mean, from the project level, Most of this is online anyway. So the projects are arguably spearheading this, I feel like you got something you're saying to say, Johnny. it's almost all corners of the world. You can do all the horizontal scaling, you can do all the automatic scaling, all those things that they're super nice. What are some of the things that you But it's not very nice for the humans course you need The people are in the math, Hit him up on Twitter. Yeah. One of the worst things which you can have in the cloud ecosystem is if you have soly different things and Savannah, one of the things we have so much going on at Cube Con. I'm the same All the, They It's not the first time we go until they Like open telemetry, open metrics, This is the stuff that matters cuz when you go in large scale, So you can kind of give us a state of the union. And, and improving the developer experience and not having this like a I was just gonna bring that the thing about ease of use is a lot of this is boring. So that's an interesting observation that you just made. So the, the thing is this is going to be interesting for the open source scene course. And one of the things we were talking earlier in So, Richie, if you could have your wishlist of how things could But let, let's So Yeah, yeah, Gana is the first time I'm actually paid by a company to do my com community work. shoulders of the giants they stand upon it are really poorly paid. are not more or less left on the sideline. I think this, I think this is an opportunity to start messaging this narrative because yeah, Yeah, I mean I, the other thing that I'm thinking about too is it's, you know, I'm, I'm like, I'm the cat herer and the janitor and like this type of thing. a lot of the people who do this are really dedicated and are really Yeah. I I I'm firmly in that area and I'm, I'm, I don't claim I have this fully You, you don't even commute anything or anymore. I That is the key point There is a, the, the passion project becomes the job. things you do like that repository is, is very, you find what I do over, like for example, the recording link will be uploaded Also, I talked about this last time, the largest IRC network on earth. That's the next one. We'll be sure to feature whatever Richie does next year on the cube. Yeah. My name is Savannah Peterson and here's to hoping that you find balance in your life this weekend.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Richie Hartman | PERSON | 0.99+ |
Richie | PERSON | 0.99+ |
Matt Klein | PERSON | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Richard Hartmann | PERSON | 0.99+ |
Richard | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
John | PERSON | 0.99+ |
Grafana Labs | ORGANIZATION | 0.99+ |
Prometheus | TITLE | 0.99+ |
Rich Richie | PERSON | 0.99+ |
60% | QUANTITY | 0.99+ |
Griffon Labs | ORGANIZATION | 0.99+ |
two seconds | QUANTITY | 0.99+ |
one second | QUANTITY | 0.99+ |
Munich | LOCATION | 0.99+ |
20% | QUANTITY | 0.99+ |
10 tools | QUANTITY | 0.99+ |
Detroit | LOCATION | 0.99+ |
Monday | DATE | 0.99+ |
Detroit, Michigan | LOCATION | 0.99+ |
Grafana | ORGANIZATION | 0.99+ |
yesterday | DATE | 0.99+ |
Grafana Prometheus | TITLE | 0.99+ |
three | QUANTITY | 0.99+ |
five k | QUANTITY | 0.99+ |
first time | QUANTITY | 0.99+ |
two | QUANTITY | 0.98+ |
next year | DATE | 0.98+ |
both | QUANTITY | 0.98+ |
one | QUANTITY | 0.98+ |
this week | DATE | 0.98+ |
two decades | QUANTITY | 0.98+ |
one single concept | QUANTITY | 0.98+ |
GitHub | ORGANIZATION | 0.98+ |
2019 | DATE | 0.98+ |
Grafana cloud | TITLE | 0.98+ |
One | QUANTITY | 0.97+ |
last night | DATE | 0.97+ |
Savannah | PERSON | 0.97+ |
ORGANIZATION | 0.96+ | |
earth | LOCATION | 0.96+ |
four days | QUANTITY | 0.96+ |
over 30 | QUANTITY | 0.95+ |
Johnny | PERSON | 0.95+ |
one click | QUANTITY | 0.95+ |
Grafana Cloud | TITLE | 0.95+ |
CloudNativeCon | EVENT | 0.94+ |
few hours ago | DATE | 0.93+ |
2.0 | OTHER | 0.93+ |
Griffon | ORGANIZATION | 0.93+ |
hundred percent | QUANTITY | 0.92+ |
two weeks | QUANTITY | 0.92+ |
one thing | QUANTITY | 0.91+ |
grafana grafana.com | OTHER | 0.9+ |
more than two | QUANTITY | 0.89+ |
three different names | QUANTITY | 0.88+ |
two largest | QUANTITY | 0.88+ |
promeus.io | OTHER | 0.86+ |
a hundred milliseconds | QUANTITY | 0.86+ |
few years ago | DATE | 0.86+ |
single formula | QUANTITY | 0.85+ |
first | QUANTITY | 0.83+ |
Con. | EVENT | 0.83+ |
IRC | ORGANIZATION | 0.82+ |
Kubernetes | TITLE | 0.81+ |
seven different hats | QUANTITY | 0.8+ |
one single standard | QUANTITY | 0.79+ |
Valencia Andro | ORGANIZATION | 0.79+ |
NA 2022 | EVENT | 0.77+ |
Open Metrics 2.0 | OTHER | 0.74+ |
KubeCon + | EVENT | 0.7+ |
Savitha Raghunathan, Red Hat & Christopher Nuland, Konveyor | KubeCon + CloudNativeCon NA 2022
(upbeat music) >> Good afternoon and welcome back to KubeCon. John Furrier and I are live here from theCUBE Studios in Detroit, Michigan. And very excited for an afternoon shock full of content. John, how you holding up day too? >> I'm doing great and got a great content. This episode should be really good. We're going to be talking about modern applications, Red Hat and Konveyor, all the great stuff going on. >> Yes, and it's got a little bit of a community spin, very excited. You know I've been calling out the great Twitter handles of our guests all week and I'm not going to stop now. We have with us Coffee Art Lover, Savitha, and she's joined with Christopher here from Konveyor and Red Hat, welcome to the show. >> Thank you. >> How you doing and what's the vibe? >> The vibe is good. >> Yeah, pretty good. >> Has anything caught your attention? You guys are KubeCon veterans, we were talking about Valencia and shows prior. Anything sticking out to you this year? >> Yeah, just the amount of people here in this like post-COVID it's just so nice to see this many people get together. 'Cause the last couple of KubeCons that we've had they've been good but they've been much smaller and we haven't seen the same presence that we've had. And I feel like we're just starting to get back to normal what we had going like pre-COVID with KubeCon. >> Go ahead. >> Oh, sorry. And for me it's how everyone's like still respectful of everyone else and that's what sticking out to me. Like you go out of the conference center and you cannot see anyone like most or like respecting anyone's space. But here it's still there, it keeps you safe. So I'm super happy to be here. >> Yeah, I love that. I think that plays to the community. I mean, the CNCF community is really special. All these open source projects are layered. You run community at Red Hat so tell us a little bit more about that. >> So I have been focusing on the Konveyor community site for a while now since Konveyor got accepted into the CNCF Sandbox project. Yeah, it's so exciting and it's like I'm so thrilled and I'm so excited for the project. So it's something that I believe in and I do a lot of (indistinct) stuff and I learned a lot from the community. The community is what keeps me coming back to every KubeCon and keep me contributing. So I'm taking all the good stuff from there and then like trying to incorporate that into the conveyor community world. But not at a scale of like 20,000 or like 30,000 people but at a scale of like hundreds, we are in hundreds and hoping to like expand it to like thousands by next year. Hopefully, yeah. >> Talk about the project, give a quick overview what it is, where it's at now, obviously it's got traction, you got some momentum, I want to hear the customer. But give a quick overview of the project. Why are people excited about it? >> Sure. It is one of the open source of modernization tool sets that's available right now. So that's super exciting. So many people want to contribute to it. And what we basically do is like you see a lot of large companies and they want to like do the migration and the journey and we just want to help them, make their life easier. So we are in this environment which is like surrounded by cars, think of it like lane assist system or like think of it as an additional system, smart system but that's not taking control, like full control. But then it's there to like guide you through your journey safe and in a predictable way and you'll reach your destination point in a much happier, safer and like sooner. So that's what we are doing. I know that's a lot of talk but if you want the technical thing then I'll just say like we are here to help everyone who wants to modernize. Help them by refractoring and replatforming their applications in a safer and predictable way at scale. I think I got everything. What do you think Christopher? >> Yeah. I mean, we've seen a real need in the market to solve this problem as more and more companies are looking to go cloud native. And I feel like in the last 10 years we had this period where a lot of companies were kind of dabbling in the cloud and they're identifying the low hanging fruit for their migrations, or they were starting out with new applications in the cloud. We're just starting to move into a period where now they're trying to bring over legacy applications. Now they're trying to bring over the applications that have been running their business for 10, 20, even 30 years. And we're trying to help them solve the problem of how do we start with that? How do we take a holistic look at our applications and come up with a game plan of how we're going to bring those into being cloud native? >> Oh, yeah, go. >> One other thing I want to get to you mentioned replatforming and refactoring. A lot of discussion on what that means now. Refactoring with the cloud, we see a lot of great examples, people really getting a competitive advantage by refactoring in that case. But re-platforming also has meaning, it seems to be evolving. So guys can you share your your thoughts on what's re-platforming versus refactoring? >> I'll let you go. >> So for re-platforming, there's a few different stages that we can do this in. So we have this term in migration called lift and shift. It's basically taking something as is and just plopping it in and then having certain technologies around it that make it act in a similar way as it was before but in more of a cloud type of way. And this is a good way for people to get their feet wet, to get their applications into the cloud. But a lot of times they're not optimized around it, they're not able to scale, they're not able to have a lot of the cost effective things that go with it as well. So that's like the next step is that that's the refactoring. Where we're actually taking apart this idea, these domains is what we would call it for the business. And then breaking them down into their parts which then leads to things like microservices and things like being able to scale horizontally and proving that is. >> So the benefits of the cloud higher level services. >> Absolutely. >> So you shift to the platform which is cloud, lift and shift or get it over there, and then set it up so it can take advantage and increase the functionality. Is that kind of the difference? >> And one thing that we're seeing too is that these companies are operating this hybrid model. So they've brought some containers over and then they have legacy like virtual machines that they want to bring over into the cloud, but they're not in a position right now where they can re refactor or even- >> In position, it's not even on a table yet. >> So that's where we're also seeing opportunities where we can identify ways that we can actually lift and shift that VM closer at least to the containers. And that's where a lot of my conversations as a cloud success architect are of how do we refactor but also re-platform the most strategic candidate? >> So is Konveyor a good fit for these kinds of opportunities? >> Yes, 100%. It actually asks you like it starts certain phases like assessment phase, then it ask you a bunch of question about your infrastructure, applications and everything to gauge, and then provide you with the right strategy. It's not like one strategy. So it will provide you with the right strategy either re-platform, refracture or like what is best, retire, rehost, whatever, but replatform and refactor are the most that we are focused on right now. Hopefully that we might expand but I'm not sure. >> I think you just brought up a really good point and I was curious about this too 'cause Christopher you mentioned you're working with largely Fortune 50 companies, so some of the largest companies on earth. We're not talking about scale, we are talking about extraordinarily large scale. >> Thousands sometimes of applications. >> And I'm thinking a lot, I'm just sitting here listening to you thinking about the complexity. The complexity of each one of these situations. And I'm sure you've seen some of it before, you've been doing this for a while, and you're mentioning that Konveyor has different sorts of strategies. What's the flow like for that? I mean, just even thinking about it feels complex for me sitting here right now. >> Yeah, so typically when we're doing a large scale migration that lasts anywhere for like a year or two sometimes with these Fortune 50 companies. >> Some of this legacy stuff has got to be. >> This is usually when they're already at the point where they're ready to move and we're just there to tell them how to move it at that point. So you're right, there's years that have been going on to get to the point that even I'm involved. But from an assessment standpoint, we spend months just looking at applications and assessing them using tools like Konveyor to just figure out, okay, are you ready to go? Do you have the green light or do we have to pull the brakes? And you're right, so much goes into that and it's all strategic. >> Oh my gosh. >> So I guess, a quarter or a third of our time we're not even actually moving applications, we're assessing the applications and cutting up the strategy. >> That's right, there's many pieces to this puzzle. >> Absolutely. >> And I bet there's some even hidden in the corners under the couch that people forgot were even there. >> We learn new things every time too. Every migration we learn new patterns and new difficulties which is what's great about the community aspect. Because we take those and then we add them into the community, into Konveyor and then we can build off of that. So it's like you're sharing when we're doing those migrations or companies are using Konveyor and sharing that knowledge, we're building off what other people have done, we're expanding that. So there's a real advantage to using a tool like Konveyor when it comes to previous experiences. >> So tell me about some of the trends that you're seeing across the board with the folks that you're helping. >> Yeah, so trends wise like I said, I feel like the low hanging fruit has been already done in the last 10 years. We're seeing very critical like mission critical applications that are typically 10, 20 years old that need to get into the the cloud. Because that term data gravity is what's preventing them from moving into the cloud. And it's usually a large older what we would call monolithic application that's preventing them from moving. And trying to identify the ways that we can take that apart and strategically move it into the cloud. And we had a customer survey that went out to a few hundred different people that were using Konveyor. And the feedback we got was about 50% of them are currently migrating like have large migrations going on like this. And then another 30, 40% have that targeted next two years. >> So it's happening. >> It's happening now. This is a problem, this isn't a problem that we're trying to future proof, it is happening now for most corporations. They are focused on finding ways to be cost optimized and especially in the way our market is working in this post-COVID world, it's more critical than ever. And a lot of people are pouring even though they're cutting back expenses, they're still putting focus their IT for these type of migrations. >> What's the persona of people that you're trying to talk to about Konveyor? Who is out there? >> What's the community like? >> What's the community makeup and why should someone join the team? Why should someone come in and work on the project? >> So someone who is interested or trying to start their journey or someone who's already like going through a journey and someone who has went through the journey, right? They have the most experience of like what went wrong and where it could be improved. So we cater to like everyone out there pretty much, right? Because some point of the time right now it's cloud native right now this is a ecosystem. In five years it would be like totally different thing. So the mission of the project is going to be like similar or like probably same, help someone replatform and rehost things into the next generation of whatever that's going to come. So we need everyone. So that is the focus area or like the targeted audience. Right now we have interest from people who are actually actively ongoing the migration and the challenges that they are facing right now. >> So legacy enterprises that up and running, full workloads, multiple productions, hundreds and hundreds of apps, whose boss has said, "We're going to the cloud." And they go, oh boy. How do we do this? Lift and shift, get re-platform? There's a playbook, there's a method. You lift and shift, you get it in there, get the core competency, use some manage service restitch it together, go cloud native. So this is the cloud native roadmap. >> And the beauty of Konveyor is that it also gives you like plans. So like once it assists and analyzed it, it comes up with plans and reports so that you can actually take it to your management and say like, well, let's just target these, these and many application, X number of application in like two weeks. Now let's just do it in waves. So that is some feature that we are looking forward to in conveyor three which is going to be released in the first quarter of 2023. So it's exciting, right? >> It is exciting and it makes a lot of sense. >> It makes everyone happy, it makes the engineers happy. Don't have to be overworked. It also like makes the architects like Chris happy and it also makes- >> Pretty much so. >> As exemplified right here, love that. >> It makes the management happy because they see that there is like progress going on and they can like ramp it up or wrap it down holiday season. Do not touch prediction, right? Do not touch prediction. >> You hear that manager, do not touch production. >> It's also friendships too 'cause people want to be in a tribe that's experiencing the same things over and over again. I think that is really the comradery and the community data sharing. >> Yeah, that's the beauty of community, right? You can be on any number of teams but you are on the same team. Like any number of companies but on the same team. It also like reflected in the keynotes I think yesterday someone mentioned it. Sorry, I cannot recall the name of who mentioned it but it's like different companies, same team, similar goal. We all go through the journey together. >> Water level rises together too. We learn from each other and that's what community is really all about. You can tell folks at home might not be able to feel it but I can. You can tell how community first you both are. Last question for you before we wrap up, is there anything that you wish the world knew about Konveyor that they don't know right now, or more people knew? And if not, your marketing team is nailing it and we'll just give them a high five. >> I think it goes with just what we were talking about. It's not just a tool for individual applications and how to move it, it's how do we see things from a bigger picture? And this is what this tool ultimately is also trying to solve is how do we work together to move hundreds if not thousands of applications? Because it takes a village. >> Quite literally with that volume size. >> My biggest advice to people who are considering this who are in large enterprise or even smaller enterprise. Make sure that you understand this is a team effort. Make sure you're communicating and lessons learned on one team is going to be lessons learned for another team. So share that information. When you're doing migrations make sure that all that knowledge is spread because you're just going to end up repeating the same mistakes over and over again. >> That is a beautiful way to close the show. Savitha, Christopher, thank you so much for being with us. John, always a pleasure. And thank you for tuning into theCUBE live from Detroit. We'll be back with our next interview in just a few. (upbeat music)
SUMMARY :
John Furrier and I are live the great stuff going on. out the great Twitter handles Anything sticking out to you this year? Yeah, just the amount of people here and you cannot see anyone like most I mean, the CNCF community and I'm so excited for the project. But give a quick overview of the project. It is one of the open source And I feel like in the last 10 years So guys can you share So that's like the next step is that So the benefits of the and increase the functionality. over into the cloud, not even on a table yet. that VM closer at least to the containers. are the most that we are some of the largest companies listening to you thinking a large scale migration that lasts stuff has got to be. and we're just there to and cutting up the strategy. many pieces to this puzzle. even hidden in the corners and then we can build off of that. across the board with the And the feedback we got and especially in the So that is the focus area or So legacy enterprises that And the beauty of Konveyor is that it makes a lot of sense. It also like makes the It makes the management happy You hear that manager, and the community data sharing. It also like reflected in the keynotes and that's what community and how to move it, Make sure that you understand And thank you for tuning into
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Savitha | PERSON | 0.99+ |
Christopher | PERSON | 0.99+ |
John Furrier | PERSON | 0.99+ |
Chris | PERSON | 0.99+ |
100% | QUANTITY | 0.99+ |
hundreds | QUANTITY | 0.99+ |
two weeks | QUANTITY | 0.99+ |
John | PERSON | 0.99+ |
yesterday | DATE | 0.99+ |
Detroit | LOCATION | 0.99+ |
20,000 | QUANTITY | 0.99+ |
10 | QUANTITY | 0.99+ |
30,000 people | QUANTITY | 0.99+ |
Savitha Raghunathan | PERSON | 0.99+ |
20 | QUANTITY | 0.99+ |
thousands | QUANTITY | 0.99+ |
Konveyor | ORGANIZATION | 0.99+ |
first quarter of 2023 | DATE | 0.99+ |
two | QUANTITY | 0.99+ |
theCUBE Studios | ORGANIZATION | 0.99+ |
next year | DATE | 0.99+ |
Detroit, Michigan | LOCATION | 0.99+ |
a year | QUANTITY | 0.99+ |
Red Hat | ORGANIZATION | 0.98+ |
a quarter | QUANTITY | 0.98+ |
one team | QUANTITY | 0.98+ |
CNCF | ORGANIZATION | 0.98+ |
about 50% | QUANTITY | 0.98+ |
KubeCon | EVENT | 0.98+ |
One | QUANTITY | 0.98+ |
30 years | QUANTITY | 0.98+ |
Red Hat | ORGANIZATION | 0.98+ |
Thousands | QUANTITY | 0.97+ |
thousands of applications | QUANTITY | 0.96+ |
five years | QUANTITY | 0.96+ |
Christopher Nuland | PERSON | 0.96+ |
one | QUANTITY | 0.96+ |
three | QUANTITY | 0.96+ |
this year | DATE | 0.96+ |
one strategy | QUANTITY | 0.95+ |
both | QUANTITY | 0.95+ |
earth | LOCATION | 0.93+ |
a third | QUANTITY | 0.92+ |
one thing | QUANTITY | 0.92+ |
KubeCons | EVENT | 0.91+ |
30, 40% | QUANTITY | 0.9+ |
NA 2022 | EVENT | 0.89+ |
CloudNativeCon | EVENT | 0.89+ |
five | QUANTITY | 0.89+ |
last 10 years | DATE | 0.89+ |
ORGANIZATION | 0.88+ | |
10, 20 years old | QUANTITY | 0.87+ |
next two years | DATE | 0.86+ |
each one | QUANTITY | 0.86+ |
50 companies | QUANTITY | 0.86+ |
hundreds of apps | QUANTITY | 0.85+ |
first | QUANTITY | 0.83+ |
hundred | QUANTITY | 0.81+ |
50 | QUANTITY | 0.77+ |
Last | QUANTITY | 0.71+ |
CNCF Sandbox | ORGANIZATION | 0.69+ |
Valencia | LOCATION | 0.68+ |
Coffee | ORGANIZATION | 0.61+ |
Konveyor | TITLE | 0.58+ |
Art Lover | PERSON | 0.58+ |
thing | QUANTITY | 0.51+ |
COVID | EVENT | 0.49+ |
Breaking Analysis: Survey Says! Takeaways from the latest CIO spending data
>> From theCUBE Studios in Palo Alto and Boston, bringing you data driven insights from theCUBE and ETR. This is breaking analysis with Dave Vellante. >> The technology spending outlook is not pretty and very much unpredictable right now. The negative sentiment is of course being driven by the macroeconomic factors in earnings forecasts that have been coming down all year in an environment of rising interest rates. And what's worse, is many people think earnings estimates are still too high. But it's understandable why there's so much uncertainty. I mean, technology is still booming, digital transformations are happening in earnest, leading companies have momentum and they got cash runways. And moreover, the CEOs of these leading companies are still really optimistic. But strong guidance in an environment of uncertainty is somewhat risky. Hello and welcome to this week's Wikibon CUBE Insights Powered by ETR. In this breaking analysis, we share takeaways from ETR'S latest spending survey, which was released to their private clients on October 21st. Today, we're going to review the macro spending data. We're going to share where CIOs think their cloud spend is headed. We're going to look at the actions that organizations are taking to manage uncertainty and then review some of the technology companies that have the most positive and negative outlooks in the ETR data set. Let's first look at the sample makeup from the latest ETR survey. ETR captured more than 1300 respondents in this latest survey. Its highest figure for the year and the quality and seniority of respondents just keeps going up each time we dig into the data. We've got large contributions as you can see here from sea level executives in a broad industry focus. Now the survey is still North America centric with 20% of the respondents coming from overseas and there is a bias toward larger organizations. And nonetheless, we're still talking well over 400 respondents coming from SMBs. Now ETR for those of you who don't know, conducts a quarterly spending intention survey and they also do periodic drilldowns. So just by the way of review, let's take a look at the expectations in the latest drilldown survey for IT spending. Before we look at the broader technology spending intentions survey data, followers of this program know that we reported on this a couple of weeks ago, spending expectations that peaked last December at 8.3% are now down to 5.5% with a slight uptick expected for next year as shown here. Now one CIO in the ETR community said these figures could be understated because of inflation. Now that's an interesting comment. Real GDP in the US is forecast to be around 1.5% in 2022. So these figures are significantly ahead of that. Nominal GDP is forecast to be significantly higher than what is shown in that slide. It was over 9% in June for example. And one would interpret that survey respondents are talking about real dollars which reflects inflationary factors in IT spend. So you might say, well if nominal GDP is in the high single digits this means that IT spending is below GDP which is usually not the case. But the flip side of that is technology tends to be deflationary because prices come down over time on a per unit basis, so this would be a normal and even positive trend. But it's mixed right now with prices on hard to find hardware, they're holding more firms. Software, you know, software tends to be driven by lock in and competition and switching costs. So you have those countervailing factors. Services can be inflationary, especially now as wages rise but certain sectors like laptops and semis and NAND are seeing less demand and maybe even some oversupply. So the way to look at this data is on a relative basis. In other words, IT buyers are reporting 280 basis point drop in spending sentiment from the end of last year. Now, something that we haven't shared from the latest drilldown survey which we will now is how IT bar buyers are thinking about cloud adoption. This chart shows responses from 419 IT execs from that drilldown and depicts the percentage of workloads their organizations have in the cloud today and what the expectation is through years from now. And you can see it's 27% today and it's nearly 50% in three years. Now the nuance is if you look at the question, that ETRS, it's they asked about IaaS and PaaS, which to some could include on-prem. Now, let me come back to that. In particular, financial services, IT, telco and retail and services industry cited expectations for the future for three years out that we're well above the average of the mean adoption levels. Regardless of how you interpret this data there's most certainly plenty of public cloud in the numbers. And whether you believe cloud is an operating environment or a place out there in the cloud, there's plenty of room for workloads to move into a cloud model well beyond mid this decade. So you know, as ho hum as we've been toward recent as-a-service models announced from the likes of HPE with GreenLake and Dell with APEX, the timing of those offerings may be pretty good actually. Now let's expand on some of the data that we showed a couple weeks ago. This chart shows responses from 282 execs on actions their organizations are taking over the next three months. And the Deltas are quite traumatic from the early part of this charter than the left hand side. The brown line is hiring freezes, the black line is freezing IT projects, and the green line is hiring increases and that red line is layoffs. And we put a box around the sort of general area of the isolation economy timeframe. And you can see the wild swings on this chart. By mid last summer, people were kickstarting things and more hiring was going on and the black line shows IT project freezes, you know, came way down. And now, or on the way back up as our hiring freezes. So we're seeing these wild swings in organizational actions and strategies which underscores the lack of predictability. As with supply chains around the world, this is likely due to the fact that organizations, pre pandemic they were optimized for efficiency, not a lot of waste rather than business resilience. Meaning, you know, there's again not a lot of fluff in the system or if there was it got flushed out during the pandemic. And so the need for productivity and automation is becoming increasingly important, especially as actions that solely rely on headcount changes are very, very difficult to manage. Now, let's dig into some of the vendor commentary and take a look at some of the names that have momentum and some of the others possibly facing headwinds. Here's a list of companies that stand out in the ETR survey. Snowflake, once again leads the pack with a positive spending outlook. HashiCorp, CrowdStrike, Databricks, Freshworks and ServiceNow, they round out the top six. Microsoft, they seem to always be in the mix, as do a number of other security and related companies including CyberArk, Zscaler, CloudFlare, Elastic, Datadog, Fortinet, Tenable and to a certain extent Akamai, you can kind of put them sort of in that group. You know, CDN, they got to worry about security. Everybody worries about security, but especially the CDNs. Now the other software names that are highlighted here include Workday and Salesforce. On the negative side, you can see Dynatrace saw some negatives in the latest survey especially around its analytics business. Security is generally holding up better than other sectors but it's still seeing greater levels of pressure than it had previously. So lower spend. And defections relative to its observability peers, that's really for Dynatrace. Now the other one that was somewhat surprising is IBM. You see the IBM was sort of in that negative realm here but IBM reported an outstanding quarter this past week with double digit revenue growth, strong momentum in software, consulting, mainframes and other infrastructure like storage. It's benefiting from the Kyndryl restructuring and it's on track IBM to deliver 10 billion in free cash flow this year. Red Hat is performing exceedingly well and growing in the very high teens. And so look, IBM is in the midst of a major transformation and it seems like a company that is really focused now with hybrid cloud being powered by Red Hat and consulting and a decade plus of AI investments finally paying off. Now the other big thing we'll add is, IBM was once an outstanding acquire of companies and it seems to be really getting its act together on the M&A front. Yes, Red Hat was a big pill to swallow but IBM has done a number of smaller acquisitions, I think seven this year. Like for example, Turbonomic, which is starting to pay off. Arvind Krishna has the company focused once again. And he and Jim J. Kavanaugh, IBM CFO, seem to be very confident on the guidance that they're giving in their business. So that's a real positive in our view for the industry. Okay, the last thing we'd like to do is take 12 of the companies from the previous chart and plot them in context. Now these companies don't necessarily compete with each other, some do. But they are standouts in the ETR survey and in the market. What we're showing here is a view that we like to often show, it's net score or spending velocity on the vertical axis. And it's a measure, that's a measure of the net percentage of customers that are spending more on a particular platform. So ETR asks, are you spending more or less? They subtract less from the mores. I mean I'm simplifying, but that's what net score is. Now in the horizontal axis, that is a measure of overlap which is which measures presence or pervasiveness in the dataset. So bigger the better. We've inserted a table that informs how the dots in the companies are positioned. These companies are all in the green in terms of net score. And that right most column in the table insert is indicative of their presence in the dataset, the end. So higher, again, is better for both columns. Two other notes, the red dotted line there you see at 40%. Anything over that indicates an highly elevated spending momentum for a given platform. And we purposefully took Microsoft out of the mix in this chart because it skews the data due to its large size. Everybody else would cluster on the left and Microsoft would be all alone in the right. So we take them out. Now as we noted earlier, Snowflake once again leads with a net score of 64%, well above the 40% line. Having said that, while adoption rates for Snowflake remains strong the company's spending velocity in the survey has come down to Earth. And many more customers are shifting from where they were last year and the year before in growth mode i.e. spending more year to year with Snowflake to now shifting more toward flat spending. So a plus or minus 5%. So that puts pressure on Snowflake's net score, just based on the math as to how ETR calculates, its proprietary net score methodology. So Snowflake is by no means insulated completely to the macro factors. And this was seen especially in the data in the Fortune 500 cut of the survey for Snowflake. We didn't show that here, just giving you anecdotal commentary from the survey which is backed up by data. So, it showed steeper declines in the Fortune 500 momentum. But overall, Snowflake, very impressive. Now what's more, note the position of Streamlit relative to Databricks. Streamlit is an open source python framework for developing data driven, data science oriented apps. And it's ironic that it's net score and shared in is almost identical to those of data bricks, as the aspirations of Snowflake and Databricks are beginning to collide. Now, however, the Databricks net score has held up very well over the past year and is in the 92nd percentile of its machine learning and AI peers. And while it's seeing some softness, like Snowflake in the Fortune 500, Databricks has steadily moved to the right on the X axis over the last several surveys even though it was unable to get to the public markets and do an IPO during the lockdown tech bubble. Let's come back to the chart. ServiceNow is impressive because it's well above the 40% mark and it has 437 shared in on this cut, the largest of any company that we chose to plot here. The only real negative on ServiceNow is, more large customers are keeping spending levels flat. That's putting a little bit pressure on its net score, but that's just conservatives. It's kind of like Snowflakes, you know, same thing but in a larger scale. But it's defections, the ServiceNow as in Snowflake as well. It's defections remain very, very low, really low churn below 2% for ServiceNow, in fact, within the dataset. Now it's interesting to also see Freshworks hit the list. You can see them as one of the few ITSM vendors that has momentum and can potentially take on ServiceNow. Workday, on this chart, it's the other big app player that's above the 40% line and we're only showing Workday HCM, FYI, in this graphic. It's Workday Financials, that offering, is below the 40% line just for reference. Now let's talk about CrowdStrike. We attended Falcon last month, CrowdStrike's user conference and we're very impressed with the product visio, the company's execution, it's growing partnerships. And you can see in this graphic, the ETR survey data confirms the company's stellar performance with a net score at 50%, well above the 40% mark. And importantly, more than 300 mentions. That's second only to ServiceNow, amongst the 12 companies that we've chosen to highlight here. Only Microsoft, which is not shown here, has a higher net score in the security space than CrowdStrike. And when it comes to presence, CrowdStrike now has caught up to Splunk in terms of pervasion in the survey. Now CyberArk and Zscaler are the other two security firms that are right at that 40% red dotted line. CyberArk for names with over a hundred citations in the security sector, is only behind Microsoft and CrowdStrike. Zscaler for its part in the survey is seeing strong momentum in the Fortune 500, unlike what we said for Snowflake. And its pervasion on the X-axis has been steadily increasing. Again, not that Snowflake and CrowdStrike compete with each other but they're too prominent names and it's just interesting to compare peers and business models. Cloudflare, Elastic and Datadog are slightly below the 40% mark but they made the sort of top 12 that we showed to highlight here and they continue to have positive sentiment in the survey. So, what are the big takeaways from this latest survey, this really quick snapshot that we've taken. As you know, over the next several weeks we're going to dig into it more and more. As we've previously reported, the tide is going out and it's taking virtually all the tech ships with it. But in many ways the current market is a story of heightened expectations coming down to Earth, miscalculations about the economic patterns and the swings and imperfect visibility. Leading Barclays analyst, Ramo Limchao ask the question to guide or not to guide in a recent research note he wrote. His point being, should companies guide or should they be more cautious? Many companies, if not most companies, are actually giving guidance. Indeed, when companies like Oracle and IBM are emphatic about their near term outlook and their visibility, it gives one confidence. On the other hand, reasonable people are asking, will the red hot valuations that we saw over the last two years from the likes of Snowflake, CrowdStrike, MongoDB, Okta, Zscaler, and others. Will they return? Or are we in for a long, drawn out, sideways exercise before we see sustained momentum? And to that uncertainty, we add elections and public policy. It's very hard to predict right now. I'm sorry to be like a two-handed lawyer, you know. On the one hand, on the other hand. But that's just the way it is. Let's just say for our part, we think that once it's clear that interest rates are on their way back down and we'll stabilize it under 4% and we have clarity on the direction of inflation, wages, unemployment and geopolitics, the wild swings and sentiment will subside. But when that happens is anyone's guess. If I had to peg, I'd say 18 months, which puts us at least into the spring of 2024. What's your prediction? You know, it's almost that time of year. Let's hear it. Please keep in touch and let us know what you think. Okay, that's it for now. Many thanks to Alex Myerson. He is on production and he manages the podcast for us. Ken Schiffman as well is our newest addition to the Boston Studio. Kristin Martin and Cheryl Knight, they help get the word out on social media and in our newsletters. And Rob Hoff is our EIC, editor-in-chief over at SiliconANGLE. He does some wonderful editing for us. Thank you all. Remember all these episodes, they are available as podcasts. Wherever you listen, just search breaking analysis podcast. I publish each week on wikibon.com and siliconangle.com. Or you can email me at david.vellante@siliconangle.com or DM me @dvellante. Or feel free to comment on our LinkedIn posts. And please do check out etr.ai. They've got the best survey data in the enterprise tech business. If you haven't checked that out, you should. It'll give you an advantage. 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. (soft upbeat music)
SUMMARY :
in Palo Alto and Boston, and growing in the very high teens.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Alex Myerson | PERSON | 0.99+ |
IBM | ORGANIZATION | 0.99+ |
Dave Vellante | PERSON | 0.99+ |
Jim J. Kavanaugh | PERSON | 0.99+ |
Oracle | ORGANIZATION | 0.99+ |
Ken Schiffman | PERSON | 0.99+ |
October 21st | DATE | 0.99+ |
Cheryl Knight | PERSON | 0.99+ |
Ramo Limchao | PERSON | 0.99+ |
June | DATE | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
Arvind Krishna | PERSON | 0.99+ |
Earth | LOCATION | 0.99+ |
Rob Hoff | PERSON | 0.99+ |
10 billion | QUANTITY | 0.99+ |
282 execs | QUANTITY | 0.99+ |
12 companies | QUANTITY | 0.99+ |
Dell | ORGANIZATION | 0.99+ |
50% | QUANTITY | 0.99+ |
Databricks | ORGANIZATION | 0.99+ |
40% | QUANTITY | 0.99+ |
US | LOCATION | 0.99+ |
27% | QUANTITY | 0.99+ |
last year | DATE | 0.99+ |
Kristin Martin | PERSON | 0.99+ |
Boston | LOCATION | 0.99+ |
2022 | DATE | 0.99+ |
Zscaler | ORGANIZATION | 0.99+ |
GreenLake | ORGANIZATION | 0.99+ |
APEX | ORGANIZATION | 0.99+ |
8.3% | QUANTITY | 0.99+ |
Fortinet | ORGANIZATION | 0.99+ |
Today | DATE | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
david.vellante@siliconangle.com | OTHER | 0.99+ |
Freshworks | ORGANIZATION | 0.99+ |
Datadog | ORGANIZATION | 0.99+ |
18 months | QUANTITY | 0.99+ |
Tenable | ORGANIZATION | 0.99+ |
419 IT execs | QUANTITY | 0.99+ |
64% | QUANTITY | 0.99+ |
three years | QUANTITY | 0.99+ |
last month | DATE | 0.99+ |
5.5% | QUANTITY | 0.99+ |
Okta | ORGANIZATION | 0.99+ |
next year | DATE | 0.99+ |
92nd percentile | QUANTITY | 0.99+ |
spring of 2024 | DATE | 0.99+ |
CrowdStrike | ORGANIZATION | 0.99+ |
more than 300 mentions | QUANTITY | 0.99+ |
ETR | ORGANIZATION | 0.99+ |
second | QUANTITY | 0.99+ |
each week | QUANTITY | 0.99+ |
ServiceNow | ORGANIZATION | 0.99+ |
MongoDB | ORGANIZATION | 0.99+ |
Snowflake | ORGANIZATION | 0.99+ |
CyberArk | ORGANIZATION | 0.99+ |
North America | LOCATION | 0.99+ |
HPE | ORGANIZATION | 0.99+ |
HashiCorp | ORGANIZATION | 0.99+ |
theCUBE Studios | ORGANIZATION | 0.99+ |
SiliconANGLE | ORGANIZATION | 0.99+ |
more than 1300 respondents | QUANTITY | 0.99+ |
theCUBE | ORGANIZATION | 0.99+ |
mid last summer | DATE | 0.99+ |
437 | QUANTITY | 0.98+ |
ETRS | ORGANIZATION | 0.98+ |
this year | DATE | 0.98+ |
both columns | QUANTITY | 0.98+ |
minus 5% | QUANTITY | 0.98+ |
last December | DATE | 0.98+ |
Streamlit | TITLE | 0.98+ |
SuperComputing Intro | SuperComputing22
>>Hello everyone. My name is Savannah Peterson, coming to you from the Cube Studios in Palo Alto, California. We're gonna be talking about super computing an event coming up in Dallas this November. I'm joined by the infamous John Furrier. John, thank you for joining me today. >>Great to see you. You look great. >>Thank you. You know, I don't know if anyone's checked out the conference colors for for supercomputing, but I happen to match the accent pink and you are rocking their blue. I got the so on >>There it is. >>We don't always tie our fashion to the tech ladies and gentlemen, but we're, we're a new crew here at, at the Cube and I think it should be a thing that we, that we do moving forward. So John, you are a veteran and I'm a newbie to Supercomputing. It'll be my first time in Dallas. What can I expect? >>Basically it's a hardware nerd fest, basically of the top >>Minds. So it's like ces, >>It's like CES for like, like hardware. It's like really the coolest show if you're into like high performance computing, I mean game changing kind of, you know, physics, laws of physics and hardware. This is the show. I mean this is like the confluence of it's, it's really old. It started when I graduated college, 1988. And back then it was servers, you know, super computing was a concept. It was usually a box and it was hardware, big machine. And it would crank out calculations, simulations and, and you know, you were limited to the processor and all the, the systems components, just the architecture system software, I mean it was technical, it was, it was, it was hardware, it was fun. Very cool back then. But you know, servers got bigger and you got grid computing, you got clusters and then it be really became high performance computing concept. But that's now multiple disciplines, hence it's been around for a while. It's evergreen in the sense it's always changing, attracting talent, students, mentors, scholarships. It's kind of big funding and big companies are behind it. Wl, look, Packard Enterprise, Dell computing startups and hardware matters more than ever. You look at the cloud, what Amazon and, and the cloud hyper skills, they're building the fastest chips down at the root level hardware's back. And I think this show's gonna show a lot of that. >>There isn't the cloud without hardware to support it. So I think it's important that we're all headed here. You, you touched on the evolution there from super computing in the beginning and complex calculations and processing to what we're now calling high performance computing. Can you go a little bit deeper? What is, what does that mean, What does that cover? >>Well, I mean high high performance computing and now is a range of different things. So the super computing needs to be like a thing now. You got clusters and grids that's distributed, you got a backbone, it's well architected and there's a lot involved. This network and security, there's system software. So now it's multiple disciplines in high performance computing and you can do a lot more. And now with cloud computing you can do simulations, say drug research or drug testing. You have, you can do all kinds of cal genome sequencing. I mean the, the, the ability to actually use compute right now is so awesome. The field's got, you know, is rebooting itself in real time, you know, pun intended. So it's like really, it's really good thing. More compute makes things go faster, especially with more data. So high encapsulates all the, the engineering behind it. A lot of robotics coming in the future. All this is gonna be about the edge. You're seeing a lot more hardware making noise around things that are new use cases. You know, your Apple watch that's, you know, very high functionality to a cell tower. Cars again, high performance computing hits all these new use cases. >>It yeah, it absolutely does. I mean high performance computing touches pretty much every aspect of our lives in some capacity at this point and including how we drive our cars to, to get to the studio here in Palo Alto. Do you think that we're entering an era when all of this is about to scale exponentially versus some of the linear growth that we've seen in the space due to the frustration of some of us in the hardware world the last five to 10 years? >>Well, it's a good question. I think everyone has, has seen Moore's law, right? They've seen, you know, that's been, been well documented. I think the world's changing. You're starting to see the trend of more hardware that's specialized like DPU are now out there. You got GPUs, you're seeing the, you know, Bolton hardware, accelerators, you got chi layer software abstraction. So essentially it's, it's a software industry that's in impacted the hardware. So hardware really is software too and it's a lot more software in there. Again, system software's a lot different. So it's, I think it's, it's boomerang back up. I think there's an inflection point because if you look at cyber security and physical devices, they all kind of play in this world where they need compute at the edge. Edge is gonna be a big use case. You can see Dell Technologies there. I think they have a really big opportunity to sell more hardware. H WL Packard Enterprise, others, these are old school >>Box companies. >>So I think the distributed nature of cloud and hybrid and multi-cloud coming on earth and in space means a lot more high performance computing will be sold and and implemented. So that's my take on it. I just think I'm very bullish on this space. >>Ah, yes. And you know me, I get really personally excited about the edge. So I can't wait to see what's in store. Thinking about the variety of vendors and companies, I know we see some of the biggest players in the space. Who are you most excited to see in Dallas coming up in November? >>You know, HP enter, you look back on enterprise has always been informally, HP huge on hpc, Dell and hpe. This is their bread and butter. They've been making servers from many computers to Intel based servers now to arm-based servers and and building their own stuff. So you're gonna start to see a lot more of those players kind of transforming. We're seeing both Dell and HPE transforming and you're gonna see a lot of chip companies there. I'm sure you're gonna see a lot more younger talent, a lot, a lot of young talent are coming, like I said, robotics and the new physical world we're living in is software and IP connected. So it's not like the old school operational technology systems. You have, you know, IP enabled devices that opens up all kinds of new challenges around security vulnerabilities and also capabilities. So it's, I think it's gonna be a lot younger crowd I think than we usually see this year. And you seeing a lot of students, and again universities participating. >>Yeah, I noticed that they have a student competition that's a, a big part of the event. I'm curious when you say younger, are you expecting to see new startups and some interesting players in the space that maybe we haven't heard of before? >>I think we might see more use cases that are different. When I say younger, I don't mean so much on the Democratic but young, younger i new ideas, right? So I think you're gonna see a lot of smart people coming in that might not have the, you know, the, the lens from when it started in 1988 and remember 1988 to now so much has changed. In fact we just did AEG a segment on the cube called does hardware matter because for many, many years, over the past decades, like hardware doesn't matter, it's all about the cloud and we're not a box company. Boxes are coming back. So you know, that's gonna be music for for into the years of Dell Technologies HPE the world. But like hardware does matter and this, you're starting to see that here. So I think you'll see a lot a younger thinking, a little bit different thinking. You're gonna start to see more conf confluence of like machine learning. You're gonna see security and again, I mentioned space. These are areas where you're starting to see where hardware and high performance is gonna be part of all the new systems. And so it's just gonna be industrial to i o is gonna be a big part too. >>Yeah, absolutely. I, I was thinking about some of these use cases, I don't know if you heard about the new drones they're sending up into hurricanes, but it takes literally what a, what an edge use case, how durable it has to be and the rapid processing that has to happen as a result of the software. So many exciting things we could dive down the rabbit hole with. What can folks expect to see here on the cube during supercomputing? >>Well we're gonna talk to a lot of the leaders on the cube from this community, mostly from the practitioner's side, expert side. We're gonna have, we're gonna hear from Dell Technologies, Hewlett Packer Enterprise and a lot of other executives who are investing wanna find out what they're investing in, how it ties into the cloud. Cuz the cloud has become a great environment for multi-cloud with more grid-like capability and what's the future? Where's the hardware going, what's the evolution of the components? How is it being designed? And then how does it fit into the overall software open source market that's booming right now that cloud technology has been doing. So I wanna, we wanna try to connect the dots on the cube. >>Great. So we have a very easy task ahead of us. Hopefully everyone will enjoy the content and the guests that we leaving to, to our table here from from the show floor. When we think about, do you think there's gonna be any trends that we've seen in the past that might not be there? Has anything phased out of the super computing world? You're someone who's been around this game for a while? >>Yeah, that's a good question. I think the game is still the same but the players might shift a little bit. So for example, a lot more with the supply chain challenges you might see that impact. We're gonna watch that very closely to find out what components are gonna be in what. But I'm thinking more about system architecture because the use case is interesting. You know, I was talking to Dell folks about this, you know they have standard machines but then they have use cases for how do you put the equivalent of a data center next to say a mobile cell tower because now you have the capability for wireless and 5g. You gotta put the data center like CAPA speed functionality and capacity for compute at these edges in a smaller form factor. How do you do that? How do you handle all the IO and that's gonna be all these, all these things are nerd again nerdy conversations but they're gonna be very relevant. So I like the new use cases of power more compute in places that they've never been before. So I think that to me is where the exciting part is. Like okay, who's got the, who's really got the real deal going on here? That's something be the fun part. >>I think it allows for a new era in innovation and I don't say that lightly, but when we can put processing power literally anywhere, it certainly thrills the minds of hardware nerds. Like me, my I'm OG hardware, I know you are too, I won't reveal your roots, but I got my, my start in in hardware product design back in the day. So I can't wait >>To, well you then, you know, you know hardware, when you talk about processing power and memory, you can never have enough compute and memory. It's like, it's like the internet bandwidth. You can't never have enough bandwidth. Bandwidth, right? Network power, compute power, you know, bring it on, you know, >>Even battery life, simple things like that when it comes to hardware, especially when we're talking about being on the edge. It's just like our cell phones. Our cell phones are an edge device >>And we get, well when you combine cloud on premises hybrid and then multi-cloud and edge, you now have the ability to get compute at capabilities that were never fathom in the past. And most of the creativity is limited to the hardware capability and now that's gonna be unleashed. I think a lot of creativity. That's again back to the use cases and yes, again, you're gonna start to see more industrial stuff come out edge and I, I, I love the edge. I think this is a great use case for the edge. >>Me too. A absolutely so bold claim. I don't know if you're ready to, to draw a line in the sand. Are we on the precipice of a hardware renaissance? >>Definitely no doubt about it. When we, when we did the does hardware matter segment, it was really kind of to test, you know, everyone's talking about the cloud, but cloud also runs hardware. You look at what AWS is doing, for instance, all the innovation, it's at robotics, it's at that at the physical level, pro, pro, you know you got physics, I mean they're working on so low level engineering and the speed difference. I think from a workload standpoint, whoever can get the best out of the physics and the materials will have a winning formula. Cause you can have a lot more processing specialized processors. That's a new system architecture. And so to me the hype, definitely the HPC high press computing fits perfectly into that construct because now you got more power so that software can be more capable. And I think at the end of the day, nobody wants to write a app on our workload to run on on bad hardware, not have enough compute. >>Amen to that. On that note, John, how can people get in touch with you and us here on the show in anticipation of supercomputing? >>Of course hit the cube handle at the cube at Furrier, my last name F U R R I E R. And of course my dms are always open for scoops and story ideas. And go to silicon angle.com and the cube.net. >>Fantastic. John, I look forward to joining you in Dallas and thank you for being here with me today. And thank you all for joining us for this super computing preview. My name is Savannah Peterson and we're here on the cube live. Well not live prerecorded from Palo Alto. And look forward to seeing you for some high performance computing excitement soon.
SUMMARY :
My name is Savannah Peterson, coming to you from the Cube Studios Great to see you. supercomputing, but I happen to match the accent pink and you are rocking their blue. So John, you are a veteran and I'm a newbie to Supercomputing. So it's like ces, And back then it was servers, you know, super computing was a So I think it's important that we're all headed here. So now it's multiple disciplines in high performance computing and you can do a lot more. Do you think that we're entering an era when all of this is about to scale exponentially I think there's an inflection point because if you look at cyber security and physical devices, So I think the distributed nature of cloud and hybrid and multi-cloud coming on And you know me, I get really personally excited about the edge. So it's not like the old school operational technology systems. I'm curious when you say younger, are you expecting to see new startups and some interesting players in the space that maybe So you know, that's gonna be music for I, I was thinking about some of these use cases, I don't know if you heard about the new Cuz the cloud has become a great environment for multi-cloud with more grid-like When we think about, do you think there's gonna be any So I like the new use cases of Like me, my I'm OG hardware, I know you are too, bring it on, you know, It's just like our cell phones. And most of the creativity is limited to the hardware capability and now that's gonna to draw a line in the sand. it's at that at the physical level, pro, pro, you know you got physics, On that note, John, how can people get in touch with you and us here on And go to silicon angle.com and the cube.net. And look forward to seeing you for some high performance computing excitement
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
John | PERSON | 0.99+ |
Savannah Peterson | PERSON | 0.99+ |
Dallas | LOCATION | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
1988 | DATE | 0.99+ |
John Furrier | PERSON | 0.99+ |
Dell | ORGANIZATION | 0.99+ |
Dell Technologies | ORGANIZATION | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
Hewlett Packer Enterprise | ORGANIZATION | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
H WL Packard Enterprise | ORGANIZATION | 0.99+ |
November | DATE | 0.99+ |
hpc | ORGANIZATION | 0.99+ |
HP | ORGANIZATION | 0.99+ |
Palo Alto, California | LOCATION | 0.99+ |
today | DATE | 0.99+ |
HPE | ORGANIZATION | 0.99+ |
Packard Enterprise | ORGANIZATION | 0.99+ |
Apple | ORGANIZATION | 0.99+ |
Cube | ORGANIZATION | 0.98+ |
both | QUANTITY | 0.98+ |
first time | QUANTITY | 0.97+ |
hpe | ORGANIZATION | 0.95+ |
this year | DATE | 0.95+ |
CES | EVENT | 0.94+ |
10 years | QUANTITY | 0.92+ |
earth | LOCATION | 0.9+ |
Bolton | ORGANIZATION | 0.87+ |
AEG | ORGANIZATION | 0.85+ |
5g | QUANTITY | 0.85+ |
Cube Studios | ORGANIZATION | 0.81+ |
Furrier | ORGANIZATION | 0.81+ |
five | QUANTITY | 0.81+ |
Moore | PERSON | 0.78+ |
Intel | ORGANIZATION | 0.75+ |
cube.net | OTHER | 0.74+ |
this November | DATE | 0.71+ |
silicon angle.com | OTHER | 0.71+ |
past decades | DATE | 0.63+ |
Democratic | ORGANIZATION | 0.55+ |
Jon Sahs, Charles Mulrooney, John Frey, & Terry Richardson | Better Together with SHI
>>Hey everyone. Lisa Martin of the cube here, HPE and AMD better together with Shi is the name of our segment. And I'm here with four guests. Please. Welcome Charlie Mulrooney global presales engineering manager at Athi John saws also of Shi joins this global pre-sales technical consultant. And back with me are Terry Richardson, north American channel chief and Dr. John Fry, chief technologist, sustainable transformation at HPE. Welcome gang. Great to have you all here. >>Thank you, Lisa. Thanks. You good to be here? >>All right, Charlie, let's go ahead and start with you. Keeping the earth sustainable and minimizing carbon emissions. Greenhouse gases is a huge priority for businesses, right? Everywhere. Globally. Can you talk Charlie about what Shi is seeing in the marketplace with respect to sustainable? It? >>Sure. So starting about a year and a half, two years ago, we really noticed that our customers certainly our largest enterprise customers were putting into their annual reports, their chairman's letters, their sec filings that they had sustainability initiatives ranging from achieving carbon neutral or carbon zero goals starting with 2050 dates. And then since then we've seen 20, 40, and 2030 targets to achieve net neutrality and RFPs, RFIs that we're fielding. Certainly all now contain elements of that. So this is certainly top of mind for our largest customers, our fortune two 50 and fortune 500 customers. For sure. We're, we're seeing an onslaught of requests for this. We get into many conversations with the folks that are leading these efforts to understand, you know, here's what we have today. What can we do better? What can we do different to help make an impact on those goals? >>So making an impact top of mind, pretty much for everyone, as you mentioned, John SAS, let's bring you into the conversation. Now, when you're in customer conversations, what are some of the things that you talk about with respect tohis approach to sustainability, sustainable it, are you seeing more folks that are implementing things tactically versus strategically what's going on in the customer space? >>Well, so Charlie touched on something really important that, you know, the, the wake up moment for us was receiving, you know, proposal requests or customer meeting requests that were around sustainability. And it was really around two years ago, I suppose, for the first time. And those requests started coming from European based companies, cuz they had a bit of a head start over the us based global companies even. And what we found was that sustainability was already well down the road and that they were doing very interesting things to use renewable energy for data centers utilize the, they were already considering sustainability for new technologies as a high priority versus just performance cost and other factors that you typically have at the top. So as we started working with them, I guess at beginning it was more tactical cuz we really had to find a way to respond. >>We were starting to be asked about our own efforts and in regards to sustainability, we have our headquarters in Somerset and our second headquarters in Austin, Texas, those are lead gold certified. We've been installing solar panels, reducing waste across the company, recycling efforts and so forth charging stations for electric vehicles, all that sort of thing to make our company more sustainable in, in, in our offices and in our headquarters. But it's a lot more than that. And what we found was that we wanted to look to our vast number of, of customers and partners. We have over 30,000 partners that would work with globally and tens of thousands of customers. And we wanted to find best practices and technologies and services that we could talk about with these customers and apply and help integrate together as a, as a really large global reseller and integrator. We can have a play there and bring these things together from multiple partners that we work with to help solve customer problems. And so over time it's become more strategic and we've been as a company building the, the, the, the, the forward efforts through organizing a true formal sustainability team and growing that, and then also reporting for CDP Ecova and so forth. And it's really that all has been coming about in the last couple of years. And we take it very seriously. >>It sounds like, and it also sounds like from the customer's perspective, they're shifting from that tactical, maybe early initial approach to being more strategic, to really enabling sustainable it across their organization. And I imagine from a business driver's perspective, John saws and Charlie, are you hearing customers? You talked about it being part of RFPs, but also where are customers in terms of, we need to have a sustainable it strategy so that we can attract and retain the right investors we can attract and retain customers. Charlie, John, what are your thoughts on that? >>Yeah, that's top of mind with, with all the folks that we're talking to, I would say there's probably a three way tie for the importance of attracting and retaining investors. As you said, plus customers, customers are shopping, their customers are shopping for who has aligned their ESG priorities and sustainable priorities with their own and who is gonna help them with their own reporting of, you know, scope two and ultimately scope three reporting from greenhouse gas emissions and then the attracting and retaining talent. It's another element now of when you're bringing on new talent to your organization, they have a choice and they're thinking with their decision to accept a role or not within your organization of what your strategies are and do they align. So we're seeing those almost interchangeable in terms of priorities with, with the customers we're talking to. And it was a little surprising, cuz it, we thought initially this is really focused on investors attracting the investors, but it really has become quite a bit more than that. And it's been actually very interesting to see the development of that prioritization >>More comprehensive across the organization. Let's bring Dr. John Fry into the conversation and Terry your next. So stay tuned. Dr. Fry, can you talk about HPE and S H I partnering together? What are some of the key aspects of the relationship that help one another support and enable each other's aggressive goals where sustainability is concerned? >>Yeah, it's a great question. And one of the things about the sustainability domain in solving these climate challenges that we all have is we've got to come together and partner to solve them. No one company's going to solve them by themselves and for our collective customers the same way. From an HPE perspective, we bring the expertise on our products. We bring in sustainable it point of view, where we've written many white papers on the topic and even workbooks that help companies implement a sustainable it program. But our direct sales forces can't reach all of our customers. And in many cases we don't have the local knowledge that our business partners like Shi bring to the table. So they extend the reach, they bring their own expertise. Their portfolio that they offer to the customer is wider than just enterprise products. So by working together, we can do a better job of helping the customer meet their own needs, give them the right technology solutions and enhance that customer experience because they get more value from us collectively. >>It really is better together, which is in a very appropriate name for our segment here. Terry, let's bring you into the conversation. Talk to us about AMD. How is it helping customers to create that sustainable it strategy? And what are some of the differentiators that what AMD is doing that, that are able to be delivered through partners like Shi? >>Well, Lisa, you used the word enabling just a short while ago. And fundamentally AMD enables HPE and partners like Shi to bring differentiated solutions to customers. So in the data center space, we began our journey in 2017 with some fundamental design elements for our processor technology that were really keenly focused on improving performance, but also efficiency. So now the, the most common measure that we see for the types of customers that Charlie and John were talking about is really that measure of performance per wat. And you'll continue to see AMD enabled customers to, to try to find ways to, to do more in a sustainable way within the constraints that they may be facing, whether it's availability of power data center space, or just needing to meet overall sustainability goals. So we have skills and expertise and tools that we make available to HPE and two Shi to help them have even stronger differentiated conversations with customers. >>Sounds like to me, Terry, that it's, that AMD can be even more of an more than an enabler, but really an accelerator of what customers are able to do from a strategic perspective on sustainability. >>You you're right about that. And, and we actually have tools, greenhouse gas, TCO tools that can be leveraged to really quantify the impact of some of the, the new technology decisions that customers are making to allow them to achieve their goals. So we're really proud of the work that we're doing in partnership with companies like HPE and Shi >>Better together. As we said at the beginning in just a minute ago, Charlie, let's bring you back in, talk to us a little bit about what Shi is doing to leverage sustainable it and enable your customers to meet their sustainability goals and their initiatives. >>So for quite a while, we've had some offerings to help customers, especially in the end user compute side. A lot of customers were interested in, I've got assets for, you know, let's say a large sales force that had been carrying tablets or laptops and, you know, those need to be refreshed. What do I do with those? How do I responsibly retire or recycle those? And we've been offering solutions for that for quite some time. It's within the last year or two, when we started offering for them guarantees and assurances assurances of how they can, if that equipment is reusable by somebody else, how can we issue them? You know, credits for carbon credits for reuse of that equipment somewhere else. So it's not necessarily going to be e-waste, it's something that can be recycled and reused. We have other programs with helping extend the life of, of some systems where they look at well, I have a awful lot of data on these machines where historically they might want to just retire those because the, the, the sensitivity of the data needed to be handled very specifically. We can help them properly remove the sensitive data and still allow reuse of that equipment. So we've been able to come up with some creative solutions specifically around end user compute in the past, but we are looking to new ways now to really help extend that into data center infrastructure and beyond to really help with what are the needs, what are the, the best ways to help our customers handle the things that are challenging them. >>That's a great point that you bring up. Charlie and security kind of popped into my head here, John Saul's question for you when you're in customer conversations and you're talking about, or maybe they're talking about help us with waste reduction with recycling, where are you having those customer conversations? Cause I know sustainability is a board level, it's a C level discussion, but where are you having those conversations within the customer organization? >>Well, so it's a, it's a combination of organizations within the customer. These are these global organizations. Typically when we're talking about asset life cycle management, asset recovery, how do you do that in a sustainable green way and securely the customers we're dealing with? I mean, security is top sustainability is right up there too. O obviously, but Charlie touched on a lot of those things and these are global rollouts, tens of thousands of employees typically to, to have mobile devices, laptops, and phones, and so forth. And they often are looking for a true managed service around the world that takes into consideration things like the most efficient way to ship products to, to the employees. And how do you do that in a sustainably? You need to think about that. Does it all go to a central location or to each individual's home during the pandemic that made a lot of sense to do it that way? >>And I think the reason I wanted to touch on those things is that, well for, for example, one European pharmaceutical that states in their reports that they're already in scope one in scope two they're fully net zero at this point. And, and they say, but that only solves 3% of our overall sustainability goals. 97% is scope three, it's travel, it's shipping. It's, it's, it's all the, the, all these things that are out of their direct control a lot of times, but they're coming to us now as a, as a supplier and as, and, and we're filling out, you know, forms and RFPs and so forth to show that we can be a sustainable supplier in their supply chain because that's their next big goal >>Sustain sustainable supply chain. Absolutely. Yes. Dr. John Fry and Terry, I want to kind of get your perspectives. Charlie talked about from a customer requirements perspective, customers coming through RFP saying, Hey, we've gotta work with vendors who have clear sustainability initiatives that are well underway, HPE and AMD hearing the same thing Dr. Fry will start with you. And then Terry >>Sure, absolutely. We receive about 2,500 customer questionnaires just on sustainability every year. And that's come up from a few hundred. So yeah, absolutely accelerating. Then the conversations turn deeper. Can you help us quantify our carbon emissions and power consumption? Then the conversation has recently gone even further to when can HPE offer net zero or carbon neutral technology solutions to the customer so that they don't have to account for those solutions in their own carbon footprint. So the questions are getting more sophisticated, the need for the data and the accuracy of the data is climbing. And as we see potential regulatory disclosure requirements around carbon emissions, I think this trend is just gonna continue up. >>Yeah. And we see the same thing. We get asked more and more from our customers and partners around our own corporate sustainability goals. But the surveying that survey work that we've done with customers has led us to, you know, understand that, you know, approximately 75% of customers are gonna make sustainability goals, a key component of their RFIs in 2023, which is right around the corner. And, and, you know, 60% of those same customers really expect to have business level KPIs in the new year that are really related to sustainability. So this is not just a, a kind of a buzzword topic. This is, this is kind of business imperatives that, you know, the company, the companies like HPE and AMD and the partners like I, that really stand behind it and really are proactive in getting out in front of customers to help are really gonna be ahead of the game. >>That's a great point that you make Terry there that this isn't, we're not talking about a buzzword here. We're talking about a business imperative for businesses of probably all sizes across all industries and Dr. Far, you mentioned regulations. And something that we just noticed is that the S E C recently said, it's proposing some rules where companies must disclose greenhouse gas emissions. If they were, if that were to, to come into play, I'm gonna pun back to Charlie and John saws. How would Shi and, and frankly at HPE and AMD be able to help companies comply if that type of regulation were to be implemented. Charlie. >>Yeah. So we are in the process right now of building out a service to help customers specifically with that, with the reporting, we know reporting is a challenge. The scope two reporting is a challenge and scope three that I guess people thought was gonna be a ways out now, all of a sudden, Hey, if you have made a public statement that you're going to make an impact on your scope three targets, then you have to report on them. So that, that has become really important very quickly as word about this requirement is rumbling around there's concern. So we are actually working right now on something it's a little too early to fully disclose, but stay tuned, cuz we have something coming. That's interesting. >>Definitely PED my, my ears are, are, are perk here. Charlie, we'll stay tuned for that. Dr. Fry. Terry, can you talk about together with Shi HPE and AMD enabling customers to manage access to the da data obviously, which is critical and it's doing nothing but growing and proliferating key folks need access to it. We talked a little bit about security, but how are from a better together perspective, Dr. Fry will start with you, how are you really helping organizations on that sustainability journey to ensure that data can be accessible to those who need it when they need it? And at these days what it's real time requirements. >>Yeah. It's, it's an increasing challenge. In fact, we have changed the H HP story the way we talk about H HP's value proposition to talk about data first modernization. So how often do you collect data? Where do you store it? How do you avoid moving it? How do you make sure if you're going to collect data, you get insights from that data that change your business or add business value. And then how long do you retain that data afterward and all of that factors into sustainable it, because when I talk to technology executives, what they tell me again, and again, is there's this presumption within their user community, that storage is free. And so when, when they have needs for collecting data, for example, if, if once an hour would do okay, but the system would collect it once a minute, the default, the user asks for of course, once a minute. And then are you getting insights from that data? Or are we moving it that becomes more important when you're moving data back and forth between the public cloud or the edge, because there is quite a network penalty for moving that equipment across your network. There's huge power and carbon implications of doing that. So it's really making a better decision about what do we collect, why do we collect it, what we're gonna do with it when we collect and how we store it. >>And, and for years, customers have really talked about, you know, modernization and the need to modernize their data center. You know, I, I fundamentally believe that sustainability is really that catalyst to really drive true modernization. And as they think forward, you know, when we work with, with HPE, you know, they offer a variety of purpose-built servers that can play a role in, you know, specific customer workloads from the largest, super computers down to kind of general purpose servers. And when we work with partners like Shi, not only can they deliver the full suite of offerings for on premise deployments, they're also very well positioned to leverage the public cloud infrastructure for those workloads that really belong there. And, and that certainly can help customers kind of achieve an end to end sustainability goal. >>That's a great point that, that it needs to be strategic, but it also needs to be an end to end goal. We're just about out of time, but I wanted to give John saws the last word here, take us out, John, what are some of the things Charlie kind of teased some of the things that are coming out that piqued my interest, but what are some of the things that you are excited about as HPE AMD and Shi really help customers achieve their sustainability initiatives? >>Sure. Couple comments here. So Charlie, yeah, you touched on some upcoming capabilities that Shi will have around the area of monitoring and management. See, this is difficult for all customers to be able to report in this formal way. This is a train coming at everybody very quickly and they're not ready. Most customers aren't ready. And if we can help as, as a reseller integrator assessments, to be able to understand what they're currently running compare to different scenarios of where they could go to in a future state, that seems valuable if we can help in that way. That's, those are things that we're looking into specifically, you know, greenhouse gas, emissions, relevant assessments, and, and, and within the comments of, of, of Terry and, and John around the, the power per wat and the vast portfolio of, of technologies that they, that they had to address various workloads is, is fantastic. >>We'd be able to help point to technologies like that and move customers in that direction. I think as a, as an integrator and a technical advisor to customers, I saw an article on BBC this morning that I, I, I think if, if we think about how we're working with our customers and we can help them maybe think differently about how they're using their technology to solve problems. The BBC article mentioned this was Ethereum, a cryptocurrency, and they have a big project called merge. And today was a go live date. And BBC us news outlets have been reporting on it. They basically changed the model from a model called power of work, which takes a, a lot of compute and graphic, GPU power and so forth around the world. And it's now called power of stake, which means that the people that validate that their actions in this environment are correct. >>They have to put up a stake of their own cryptocurrency. And if they're wrong, it's taken from them. This new model reduces the emissions of their environment by 99 plus percent. The June emissions from Ethereum were, it was 120 telos per, per year, a Terra terat hours per year. And they reduced it actually, that's the equivalent of what the net Netherlands needed for energy, so comparable to a medium sized country. So if you can think differently about how to solve problems, it may be on-prem, it may be GreenLake. It may be, it may be the public cloud in some cases or other, you know, interesting, innovative technologies that, that AMD HPE, other partners that we can bring in along, along with them as well, we can solve problems differently. There is a lot going on >>The opportunities that you all talked about to really make such a huge societal impact and impact to our planet are exciting. We thank you so much for talking together about how HPE AMD and SSHA are really working in partnership in synergy to help your customers across every organization, really become much more focused, much more collaborative about sustainable it. Guys. We so appreciate your time and thank you for your insights. >>Thank you, Lisa. Thank you. My >>Pleasure. Thank you, Lisa. You're watching the cube, the leader in high tech enterprise coverage.
SUMMARY :
Great to have you all here. You good to be here? Can you talk Charlie about what Shi is seeing in the marketplace with respect to sustainable? the folks that are leading these efforts to understand, you know, here's what we have today. So making an impact top of mind, pretty much for everyone, as you mentioned, John SAS, cost and other factors that you typically have at the top. And it's really that and Charlie, are you hearing customers? is gonna help them with their own reporting of, you know, scope two and Dr. Fry, can you talk about HPE and S H I And in many cases we don't have the local knowledge that our business AMD is doing that, that are able to be delivered through partners like Shi? So in the data center space, we began our journey in 2017 with Sounds like to me, Terry, that it's, that AMD can be even more of an more than an of the, the new technology decisions that customers are making to allow them to achieve their goals. As we said at the beginning in just a minute ago, Charlie, let's bring you back in, the sensitivity of the data needed to be handled very specifically. That's a great point that you bring up. And how do you do that in a sustainably? and, and we're filling out, you know, forms and RFPs and so forth to show that we can HPE and AMD hearing the same thing Dr. Fry will start with you. And as we see potential that we've done with customers has led us to, you know, understand that, And something that we just noticed is that the S E C recently said, all of a sudden, Hey, if you have made a public statement that you're going to make that data can be accessible to those who need it when they need it? And then how long do you retain that data afterward and all of that factors into sustainable And as they think forward, you but what are some of the things that you are excited about as HPE AMD and Shi really of, of technologies that they, that they had to address various workloads is, of compute and graphic, GPU power and so forth around the world. So if you can think differently about how to solve problems, The opportunities that you all talked about to really make such a huge societal
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Charlie | PERSON | 0.99+ |
Charles Mulrooney | PERSON | 0.99+ |
Terry | PERSON | 0.99+ |
Lisa | PERSON | 0.99+ |
Lisa Martin | PERSON | 0.99+ |
Terry Richardson | PERSON | 0.99+ |
2017 | DATE | 0.99+ |
John | PERSON | 0.99+ |
John Frey | PERSON | 0.99+ |
AMD | ORGANIZATION | 0.99+ |
Jon Sahs | PERSON | 0.99+ |
John Saul | PERSON | 0.99+ |
Fry | PERSON | 0.99+ |
HPE | ORGANIZATION | 0.99+ |
Somerset | LOCATION | 0.99+ |
60% | QUANTITY | 0.99+ |
BBC | ORGANIZATION | 0.99+ |
SSHA | ORGANIZATION | 0.99+ |
3% | QUANTITY | 0.99+ |
2023 | DATE | 0.99+ |
John SAS | PERSON | 0.99+ |
97% | QUANTITY | 0.99+ |
2050 | DATE | 0.99+ |
June | DATE | 0.99+ |
2030 | DATE | 0.99+ |
99 plus percent | QUANTITY | 0.99+ |
once a minute | QUANTITY | 0.99+ |
two years ago | DATE | 0.99+ |
John Fry | PERSON | 0.99+ |
over 30,000 partners | QUANTITY | 0.99+ |
Austin, Texas | LOCATION | 0.99+ |
Charlie Mulrooney | PERSON | 0.99+ |
Shi | PERSON | 0.99+ |
four guests | QUANTITY | 0.98+ |
second headquarters | QUANTITY | 0.98+ |
John saws | PERSON | 0.98+ |
first time | QUANTITY | 0.98+ |
H HP | ORGANIZATION | 0.98+ |
today | DATE | 0.98+ |
S E C | ORGANIZATION | 0.97+ |
one | QUANTITY | 0.97+ |
zero | QUANTITY | 0.97+ |
Shi | ORGANIZATION | 0.97+ |
about 2,500 customer questionnaires | QUANTITY | 0.96+ |
Jon Sahs, Charles Mulrooney, John Frey, & Terry Richardson | Better Together with SHI
foreign [Music] Lisa Martin of the cube here hpe and AMD better together with Shi is the name of our segment and I'm here with four guests please welcome Charlie mulrooney Global pre-sales engineering manager at SHI John saw is also of shi joins us Global pre-sales Technical consultant and back with me are Terry Richardson North American Channel Chief and Dr John Fry Chief technologist of sustainable transformation at hpe welcome gang great to have you here all here Thank you Lisa thank you good to be here all right Charlie let's go ahead and start with you keeping the Earth sustainable and minimizing carbon emissions greenhouse gases is a huge priority for businesses right everywhere globally can you talk truly about what Shi is seeing in the marketplace with respect to sustainable I.T sure so starting about a year and a half two years ago we really noticed that our customers certainly our largest Enterprise customers were putting into their annual reports their Chairman's letters their SEC filings that they had sustainability initiatives ranging from achieving carbon neutral uh or carbon zero goals starting with 20 50 dates and then since then we've seen 20 40 and 2030 targets to achieve net neutrality and rfps rfis that we're Fielding certainly all now contain elements of that so this is certainly top of mind for our largest customers our Fortune 250 and Fortune 500 customers for sure where we're seeing an onslaught of requests for this we get into many conversations with the folks that are leading these efforts to understand you know here's what we have today what can we do better what can we do different to help make it an impact on those goals so making an impact top of Mind pretty much for everyone as you mentioned John Sal's let's bring you into the conversation now when you're in customer conversations what are some of the things that you talk about with respect to shi's approach to sustainability sustainable I.T are you seeing more folks that are implementing things tactically versus strategically what's going on in the customer space well so Charlie touched on something really important that you know the the wake-up moment for us was receiving you know proposal requests or customer meeting requests that were around sustainability and it was really around two years ago I suppose for the first time and those requests started coming from european-based companies because they had a bit of a head start uh over the U.S based global companies even um and what we found was that sustainability was already well down the road and that they were doing very interesting things to uh use renewable energy for data centers uh utilized they were already considering sustainability for new technologies as a high priority versus just performance costs and other factors that you typically had at the top so as we started working with them uh I guess that beginning was more tactical because we really had to find a way to respond uh we were starting to be asked about our own efforts and in regards to sustainability we have our headquarters in Somerset and our second Headquarters in Austin Texas um those are the gold certified we've been installing solar panels producing waste across the company recycling efforts and so forth charging stations for electric vehicles all that sort of thing to make our company more sustainable in in uh in our offices and in our headquarters um but it's a lot more than that and what we found was that we wanted to look to our vast number of supply of customers and partners we have over 30 000 partners that would work with globally and tens of thousands of customers and we wanted to find best practices and Technologies and services that we could uh talk about with these customers and apply and help integrate together as a as a really large Global uh reseller and integrator we can have a play there and bring these things together from multiple uh partners that we work with to help solve customer problems and so over time it's become more strategic and we've been uh as a company building the uh the the the forward efforts through organizing a true formal sustainability team and growing that um and then also reporting for CDP echovatus and so forth and it's really that all has been coming about in the last couple of years and we take it very seriously it sounds like it also sounds like from the customer's perspective they're shifting from that tactical maybe early initial approach to being more strategic to really enabling sustainable I.T across their organization and I imagine from a business driver's perspective John saws and Charlie are you hearing customers you talked about it being part of rfps but also where are customers in terms of we need to have a sustainable I.T strategy so that we can attract and retain the right investors we can attract and retain customers Charlie John what are your thoughts on that yeah that's top of mind with uh with all the folks that we're talking to uh I would say there's probably a three-way tie for the importance of uh attracting and retaining investors as you said plus customers customers are shopping their customers are shopping for who has aligned their ESG priorities in sustainable priorities uh with their own and who is going to help them with their own reporting of you know spoke to and ultimately scope three reporting from greenhouse gas emissions and then the attracting and retaining Talent uh it's another element now of when you're bringing on a new talent to your organization they have a choice and they're thinking with their decision to accept a role or not within your organization of what your strategies are and do they align so we're seeing those almost interchangeable in terms of priorities with with the customers we're talking to it was a little surprising because we thought initially this is really focused on investors attracting the investors but it really has become quite a bit more than that and it's been actually very interesting to see the development of that prioritization more comprehensive across the organization let's bring Dr John Fry into the conversation and Terry your neck so stay tuned Dr Frey can you talk about hpe and Shia partnering together what are some of the key aspects of the relationship that help one another support and enable each other's aggressive goals where sustainability is concerned yeah it's a great question and one of the things about the sustainability domain in solving these climate challenges that we all have is we've got to come together and partner to solve them no one company's going to solve them by themselves and for our Collective customers the same way from an hpe perspective we bring the expertise on our products we bring in a sustainable I.T point of view where we've written many white papers on the topic and even workbooks that help companies Implement a sustainable I.T program but our direct sales forces can't reach all of our customers and in many cases we don't have the local knowledge that our business partners like Shi bring to the table so they extend the reach they bring their own expertise their portfolio that they offer to the customer is wider than just Enterprise Products so by working together we can do a better job of helping the customer meet their own needs give them the right Technology Solutions and enhance that customer experience it's because they get more value from us collectively it really is better together which is a very appropriate name for our segment here Terry let's bring you into the conversation talk to us about AMD how is it helping customers to create that sustainable I.T strategy and what are some of the differentiators that what AMD is doing that that are able to be delivered through Partners like Shi well Lisa you use the word enabling um just a short while ago and fundamentally AMD enables hpe and partners like Shi to bring differentiated solutions to customers so in the data center space We Begin our journey in 2017 with some fundamental Design Elements for our processor technology that we're really keenly focused on improving performance but also efficiency so now the the most common measure that we see for the types of customers that Charlie and John were talking about was really that measure of performance per watt and you'll continue to see AMD enable um customers to to try to find ways to to do more in a sustainable way within the constraints that they may be facing whether it's availability of power data center space or just needing to meet overall sustainability goals so we have skills and expertise and tools that we make available to hpe and to Shi to help them have even stronger differentiated conversations with customers sounds like to me Terry that it's that AMD can be even more of an more than an enabler but really an accelerator of what customers are able to do from a strategic perspective on sustainability you're right about that and and we actually have tools greenhouse gas TCO tools that can be leveraged to really quantify the impact of some of the the new technology decisions that customers are making to allow them to achieve their goals so we're really proud of the work that we're doing in partnership with companies like hpe and Shi Better Together as we've said at the beginning and just a minute ago Charlie let's bring you back in talk to us a little bit about what Shi is doing to leverage sustainable I.T and enable your customers to meet their sustainability goals and their initiatives so for quite a while we've had uh some offerings to help customers especially in the end user compute side a lot of customers were interested in I've got assets for you know let's say a large sales force that had been carrying tablets or laptops and you know those need to be refreshed what do I do with those how do I responsibly retire or recycle those and we've been offering solutions for that for quite some time it's within the last year or two when we started offering for them guarantees and Assurance assurances of how they can if that equipment is reusable by somebody else how can we issue them you know credits for uh carving credits for reuse of that equipment somewhere else so it's not necessarily going to be E-Waste it's uh something that can be recycled and reused we have other programs with helping extend the life of of some systems where they look at boy I have an awful lot of data on these machines where historically they might want to just retire those because the the sensitivity of the data needed to be handled very specifically we can help them properly remove the sensitive data and still allow reuse of that equipment so we've been able to accomplish some Creative Solutions specifically around end user compute in the past but we are looking to new ways now to to really help extend that into Data Center infrastructure and Beyond to really help with what are the needs what are the the best ways to help our customers handle the things that are challenging them [Music] that's a great point that you bring up Charlie and the security kind of popped into my head here John saw his question for you when you're in customer conversations and you're talking about or maybe they're talking about help us with waste reduction with recycling where are you having those customer conversations I know sustainability is a board level it's a c-level discussion but where are you having those conversations within the customer organization well so it's a it's a combination of um organizations within the customer these are these Global organizations typically when we're talking about asset like cycle management asset recovery how do you do that in a sustainable Green Way and securely the customers we're dealing with I mean security is top sustainability is right up there too obviously but uh um Charlie touched on a lot of those things and these are Global rollouts tens of thousands of employees typically to to have mobile devices laptops and phones and so forth um and they often are looking for a true managed service around the world that takes into consideration things like the most efficient way to ship products to to the employees and how do you do that in a sustainable way you need to think about that does it all go to a central location um or to each individual's home during the pandemic that made a lot of sense to do it that way I think the reason I wanted to touch on those things is that well for for example one European pharmaceutical that the states and their reports that they are already in scope one in scope two they're fully uh Net Zero at this point and and they say but that only solves three percent of our overall sustainability goals uh 97 is scope three it's travel it's shipping it's it's uh it's all the all these things that are out of their direct control a lot of times but they're coming to us now as a as a supplier and ask and and we're filling out forms and rfps and so forth uh to show that we can be a sustainable supplier in their supply chain because that's their next big goal so sustainable supply chain absolutely Dr John Fry and Terry I want to kind of get your perspectives Charlie talked about from a customer requirements perspective customers coming through RFP saying hey we've got to work with vendors who have clear sustainability initiatives that are well underway hpe and AMD hearing the same thing Dr Fry will start with you and then Terry sure absolutely we receive about 2500 customer questionnaires just on sustainability every year and that's come up from a few hundred so yeah absolutely accelerating then the conversations turn deeper can you help us quantify our carbon emissions and power consumption then the conversation has recently gone even further to when can hpe offer Net Zero or carbon neutral Technology Solutions to the customer so that they don't have to account for those Solutions in their own carbon footprint so the questions are getting more sophisticated the need for the data and the accuracy of the data is climbing and as we see potential regulatory disclosure requirements around carbon emissions I think this trend is just going to continue up yeah and we see the same thing uh we get asked more and more from our customers and partners around our own corporate sustainability goals but the surveying that the survey work that we've done with customers has led us to you know understand that you know approximately 75 percent of customers are going to make sustainability goals a key component of their rfis in 2023 which is right around the corner and you know 60 of those same customers really expect to have business level kpis uh in the new year that are really related to sustainability so this is not just a a kind of a buzzword topic this is this is kind of business imperatives that you know the company the companies like hpe and AMD and the partners like Shi that really stand behind it and really are proactive in getting out in front of customers to help are really going to be ahead of the game that's a great point that you make Terry there that this isn't we're not talking about a buzzword here we're talking about a business imperative for businesses of probably all sizes across all Industries and Dr Farr you mentioned regulations and something that we just noticed is that the SEC recently said it's proposing some rules where companies must disclose greenhouse gas emissions um if they were if that were to to come into play I'm going to come back to Charlie and John saws how would Shi and frankly at hpe and AMD be able to help companies comply if that type of Regulation were to be implemented Charlie yeah so we are in the process right now of building out a service to help customers specifically with that with the reporting we know reporting is a challenge uh the scope 2 reporting is a challenge and scope three that I guess people thought was going to be a ways out now all of a sudden hey if you have made a public statement that you're going to make an impact on your scope three uh targets and you have to report on them so that that has become really important very quickly uh as word about this requirement is rumbling around uh there's concern so we are actually working right now on something it's a little too early to fully disclose but stay tuned because we have something coming that's interesting definitely peaked my ears are are parked here Charlie well stay tuned for that Dr Brian Terry can you talk about together with Shi hpe and AMD enabling customers to manage access to the data obviously which is critical and it's doing nothing but growing and proliferating key folks need access to it we talked a little bit about security but how are from a Better Together perspective Dr Fry will start with you how are you really helping organizations on that sustainability journey to ensure that data can be accessible to those who need it when they need it and these days what is real-time requirements yeah it's an increasing challenge in fact we have changed the HP Story the way we talk about hpe's value proposition to talk about data first modernization so how often do you collect data where do you store it how do you avoid moving it how do you make sure if you're going to collect data you get insights from that data that change your business or add business value and then how long do you retain that data afterward and all of that factors into sustainable I.T because when I talk to technology Executives what they tell me again and again is there's this presumption within their user community that storage is free and so when when they have needs for collecting data for example if if once an hour would do okay but the system would collect it once a minute the default the user asks for of course is once a minute and then are you getting insights from that data or are we moving it that becomes more important when you're moving data back and forth between the public cloud or the edge because there is quite a network penalty for moving that equipment across your network there's huge power and carbon implications of doing that so it's really making a better decision about what do we collect why do we collect it what we're going to do with it when we collect and how we store it and for years customers have really talked about you know modernization and the need to modernize their data center you know I fundamentally believe that sustainability is really that Catalyst to really Drive true modernization and as they think forward um you know when we work with with hpe you know they offer a variety of purpose-built servers that can play a role in you know specific customer workloads from the larger supercomputers down to kind of general purpose servers and when we work with Partners like Shi not only can they deliver the full Suite of um offerings for on-premise deployments they're also very well positioned to leverage the public Cloud infrastructure for those workloads that really belong there and that certainly can help customers kind of achieve an end-to-end sustainability goal that's a great point that that it needs to be strategic but it also needs to be an end-to-end goal we're just about out of time but I wanted to give John saws the last word here take us out John what are some of the things Charlie kind of teased some of the things that are coming out that piqued my interest but what are some of the things that you're excited about as hpe AMD and Shi really help customers achieve their sustainability initiatives sure um a couple of comments here um so Charlie yeah you touched on some upcoming capabilities uh that uh Shi will have around the area of monitoring and management see this is difficult for all customers to be able to report in this formal way this is a train coming at everybody very quickly and um they're not ready most customers aren't ready and if we can help um as as a reseller integrator assessments to be able to understand what they're currently running compared to different scenarios of where they could go to in a future state that seems valuable if we can help in that way that's those are things that we're looking into specifically uh you know greenhouse gas emissions relevant assessments and and um and what in the comments uh of Terry and John around the power per watt and um the vast um uh portfolio of technologies that they that they had to address various workloads is uh is fantastic we'd be able to help point to Technologies like that and move customers in that direction I think as a as an integrator and a technical advisor to customers I saw an article on BBC this morning that I I think if we think about how we're working with our customers and we can help them maybe think differently about how they're using their technology to solve problems um the BBC article mentioned this was ethereum a cryptocurrency and they have a big project called merge and today was a go live date and BBC US news outlets have been reporting on it they basically changed the model from a model called The Power of work which takes a a lot of compute and graphic GPU power and so forth around the world and it's now called a power of stake which means that the people that validate that their actions in this environment are correct they have to put up a stake of their own cryptocurrency and if they're wrong it's taken from them this new model reduces the emissions of their um uh environment by 99 plus percent the June emissions from ethereum were it was 120 uh terawatts per per year terawatt hours per year and they reduced it um actually that's the equivalent of what the Netherlands needed for energy so the comparable to a medium-sized country so if you can think differently about how to solve problems it may be on-prem it may be extremely it may be that may be the public cloud in some cases or other you know interesting Innovative Technologies that the AMD hpe other partners that we can bring in along along with them as well we can solve problems differently there is a lot going on the opportunities that you all talked about to really make such a huge societal impact and impact to our planet are exciting we thank you so much for talking together about how hpe AMD and sha are really working in partnership in Synergy to help your customers across every organization really become much more focused much more collaborative about sustainable I.T guys we so appreciate your time and thank you for your insights Thank you Lisa thank you my pleasure for my guests I'm Lisa Martin in a moment Dan Molina is going to join me he's the co-president and chief technology officer of nth generation you're watching the cube the leader in high tech Enterprise coverage [Music]
SUMMARY :
that they don't have to account for
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Dan Molina | PERSON | 0.99+ |
John | PERSON | 0.99+ |
Terry | PERSON | 0.99+ |
Charlie | PERSON | 0.99+ |
2017 | DATE | 0.99+ |
Charles Mulrooney | PERSON | 0.99+ |
Terry Richardson | PERSON | 0.99+ |
John Frey | PERSON | 0.99+ |
Lisa Martin | PERSON | 0.99+ |
2023 | DATE | 0.99+ |
Jon Sahs | PERSON | 0.99+ |
Somerset | LOCATION | 0.99+ |
AMD | ORGANIZATION | 0.99+ |
Charlie mulrooney | PERSON | 0.99+ |
Lisa | PERSON | 0.99+ |
SEC | ORGANIZATION | 0.99+ |
once a minute | QUANTITY | 0.99+ |
once an hour | QUANTITY | 0.99+ |
over 30 000 partners | QUANTITY | 0.99+ |
once a minute | QUANTITY | 0.99+ |
John Sal | PERSON | 0.99+ |
99 plus percent | QUANTITY | 0.99+ |
U.S | LOCATION | 0.99+ |
Brian Terry | PERSON | 0.99+ |
first time | QUANTITY | 0.99+ |
BBC | ORGANIZATION | 0.99+ |
pandemic | EVENT | 0.99+ |
Austin Texas | LOCATION | 0.99+ |
2030 | DATE | 0.98+ |
Shi | ORGANIZATION | 0.98+ |
Earth | LOCATION | 0.98+ |
hpe | ORGANIZATION | 0.98+ |
three percent | QUANTITY | 0.97+ |
today | DATE | 0.97+ |
John Fry | PERSON | 0.97+ |
second Headquarters | QUANTITY | 0.96+ |
approximately 75 percent | QUANTITY | 0.96+ |
Charlie John | PERSON | 0.96+ |
Shi | PERSON | 0.96+ |
four guests | QUANTITY | 0.96+ |
Fry | PERSON | 0.96+ |
Dr | PERSON | 0.95+ |
SHI | ORGANIZATION | 0.95+ |
Shia | PERSON | 0.95+ |
Frey | PERSON | 0.95+ |
North American Channel | ORGANIZATION | 0.95+ |
120 uh | QUANTITY | 0.95+ |
ESG | TITLE | 0.95+ |
BBC US | ORGANIZATION | 0.94+ |
tens of thousands of customers | QUANTITY | 0.94+ |
John Fry | PERSON | 0.93+ |
20 50 | DATE | 0.93+ |
about 2500 c | QUANTITY | 0.92+ |
Farr | PERSON | 0.91+ |
one | QUANTITY | 0.91+ |
two | QUANTITY | 0.91+ |