Sunil Senan, Infosys & Chris Degnan, Snowflake | Snowflake Summit 2022
>>mhm. >>Good morning. Live from Las Vegas. That snowflake Summit 22. Lisa Martin With Day Volonte David's Great. We have three wall to wall days of coverage at Snowflake Summit 22 this year. >>Yeah, it's all about data and bringing data to applications. And we've got some big announcements coming this week. Super exciting >>collaboration around data. We are excited to welcome our first two guests before the keynote. We have seen Nielsen in S V. P of data and Analytics Service offering head at emphasis. And Chris Dignan alumni is back with us to chief revenue officer at stuff like guys. Great to have you on the programme. Thanks for having us. Thank you very much. So he'll tell us what's going on with emphasis and snowflake and the partnership. Give us all that good stuff. >>Yeah, No, I think with the convergence of, uh, data digital and computing economy, um, you know that convergence is creating so much possibilities for for customers, uh, snowflake and emphases working together to help our customers realise the vision and these possibilities that are getting driven. We share a very strategic partnership where we are thinking ahead for our customers in terms of what, uh, we can do together in order to build solutions in order to bring out the expertise that is needed for such transformations and also influencing the thinking, Um, and the and the point of view in the market together so that, you know there is there is cohesive approach to doing this transformation and getting to those business outcomes. So it's a It's a partnership that's very successful and its strategic for for our customers, and we continue to invest for the market. >>Got some great customer. Some of my favourite CVS, Nike, William Sanoma. Gotta love that one. Chris talked to us about the snowflake data cloud. What makes it so unique and compelling in the market? >>Well, I think our customers, really they are going through digital transformation today, and they're moving from on premise to the cloud and historically speaking, there just hasn't been the right tool set to help them do that. I think snowflake brings to the table an opportunity for them to take all of their data and take it and and allow it to go from one cloud to the other so they can sit on a W s it can sit on Azure can sit on G, C, P and I can move around from cloud to cloud, and they can do analytics on top of that. >>So data has been traditionally really hard. And we saw that in the big data movement. But we learned a lot. Uh, and AI has been, you know, challenging. So what are you seeing with with customers? What are they struggling with? And how are you guys helping them? >>Yeah. So if you look at the customer journey, they have invested in a number of technologies in the past and are now at a juncture where they need to transform that landscape. They have the challenges of legacy debt that they need to, you know, get rid of or transform. They have the challenges of really bringing, you know, a cohesive understanding within the enterprise as to what these possibilities are for their business. Given the strategy that they are pursuing, um, business and I t cycles are not necessarily aligned. Um, you have the challenge of very fragmented data landscape that they have created over a period of time. How do you, you know, put all these together and work with a specific outcome in mind so that you're not doing transformation for the purpose of transformation. But to be able to actually drive new business models, new data driven products and services ability for you to collaborate with your partners and create unique competitive advantage in the market. And how do you bring those purposes together with the transformation that that's really happening? And and that's where you know our our customers, um, you know, grapple with the challenges of bringing it together. So, >>Chris, how do you see? Because it was talking about, uh, legacy that I think technical debt. Um, you kind of started out making the data warehouse easier. Then this data cloud thing comes out. You're like, Oh, that's an interesting vision and all of a sudden it's way more than vision. You get this huge ecosystem you're extending, we're gonna hear the announcements this morning. We won't. We won't spill the beans, but but really expanding the data cloud. So it's hard to keep up with with where you're at. So I think modernisation, right? So how do you think about modernisation? How are your customers thinking about it? And what's the scope of Snowflake. >>Well, you know, I think historically, you asked about AI and Ml and, you know, in the A I world historically, they've lacked data, and I think because we're the data cloud, we're bringing data, you know, and making it available and democratising it for everybody. And then, you know, partners like emphasis are actually helping us bring, you know, applications and new business models to to the table to our customers and their innovating on top of the data that we already have in the Snowflake Data Club. >>Chris, can you talk about some of the verticals where you guys are successful with emphasis that the three that I mentioned are retailers, But I know that finance, healthcare and life sciences are are huge for smooth, like talk to me, give us a perspective of the verticals that are coming to you. Guys saying help us out with transport. >>You know, I'll give you just an example. So So in the in the retail space, for example, Kraft Heinz is a is a joint customer of ours. And, you know, they've been all in on on snowflakes, Data Cloud and one of our big customers as well it is is Albertsons, and Albertans realises, Oh my gosh, I have all this information around the consumer in in the grocery stores and Kraft Heinz. They want access to that, and they actually can make supply chain decisions a lot faster if they have access to it. So with snowflakes data sharing, we can actually allow them to share data. Albertans share data directly with Kraft, Heinz and Kraft. Heinz can actually make supply chain decisions in real time so that these are some of the stuff that emphasis and stuff like help our customers self. >>So traditionally, the data pipeline goes through some very highly specialised individuals, whether the data engineer, the data scientists and data analyst. So that example that you just gave our organisation you mentioned before democratisation. So democratisation needs to be as a businessperson, I actually can get access to the data. So in that example that you gave between Kraft, Heinz and and and Albertson, is it the the highly hyper specialised teams sharing that data? Or is it actually extending into the line of business focus? >>That's so that's the interesting part for us is I think, snowflake, we just recently reorganise my sales team this year into verticals, and the reason we did that is customers no longer want to talk to us about speeds and feeds of how fast my database goes. They want to actually talk about business outcomes. How do I solve for demand forecasting? How do I supply fix my supply chain issues? Those are things. Those are the. That's how we're aligning with emphasis. So well is they've been doing this for a long time, Can only we haven't. And so we need their help on getting us to the next level of of the sales motion and talking to our customers on solving these business challenges in >>terms of that next level. So no question for you. Where are the customer conversations happening? At what level? I mean, we've seen such dramatic changes in the market in the last couple of years. Now we're dealing with inflation rising interest rates. Ukraine. Are you seeing the conversations in terms of building data platforms rising up the C suite? As every company recognises, we're going to be a data company. We're not gonna be a business. >>Absolutely. And I think all the macroeconomic forces that you talked about that's working on the enterprises globally is actually leading them to think about how to future proof their business models. Right? And there are tonnes of learning that they've hired in the last two or three years and digitising in embracing more digital models. The conversation with the customers have really pivoted towards business outcome. It is a C suite conversation. It is no longer just an incremental change for the for the companies they recognise. That data has been touted as a strategic asset for a long time, but I think it's taking a purpose and a meaning as to what it does for for the customers, the conversations are around industry verticals. You know, what are the specific challenges and opportunities that the the enterprises have, uh, and how you realise those and these cuts across multiple different layers. You know, we're talking about how your democratised data, which in our point of view, is absolute, must in terms of putting a foundation that doesn't take super specialised people to be able to run every operation and every bit of data that you process we have invested in building autonomous data and a state that can process data as it comes in without any manual intervention and take it all the way to consumption but also investing in those industry solutions. Along with snowflake, we launched the healthcare and life Sciences solution. We launched the only channel for retail and CPG. And these are great examples of how Snowflake Foundation enables democratisation on one side but also help solve business problems. In fact, with Snowflake, we have a very, uh, special partnership because our point of view on data economy is about how you connect with the network partners externally, and snowflake brings native capabilities. On this, we leverage that to Dr Exchanges for our customers and one of the services company in the recycling business. Uh, we're actually building and in exchange, which will allow the data points from multiple different sources and partners to come together. So they have a better understanding of their customers, their operations, the field operations and things >>like building a data ecosystem. Yes. Alright, They they Is it a two sided market place where you guys are observers and providing the the technology and the process, you know, guidance. What's your role in that? >>Yeah. So, um, we were seeing their revolution coming? Uh, two stages. Maybe even more. Um, customers are comfortable building an ecosystem. That's kind of private for them. Which means that they know who they are sharing data with. They know what the data is getting used for. And how do you really put governance on this? So that on one side you can trust it on the other side. There is a good use of that data, Uh, and not, uh, you know, compromise on their quality or privacy and some of the other regulations. But we do see this opening up to the two sided market places as well. Uh, some of the industry's lend themselves extremely well for that kind of play. We have seen that happening in trading area. We've seen that happen. And, uh, you know, the credit checks and things like that which are usually open for, you know, those kind of ecosystem. But the conversations and the and the programmes are really leading towards towards that in the market. >>You know, Lisa, one of things I wrote about this weekend is I was decided to come to stuff like summit and and see one of the, you know, thesis I have is that we're going to move not just beyond analytics, including analytics, but also building data products that can be monetised and and I'm hoping we're going to see some of that here. Are you seeing that Christian in the customer? It's It's >>a great question, David. So So we have You know, I just thought of it as as he was talking about. We have a customer who's a very large customer of ours who's in the financial services space, and they handle roughly 40% of the credit card transactions that happen in the US and they're coming to us and saying they want to go from zero in data business today to a $2 billion business over the next five years, and they're leaning on us to help them do that. And one of the things that's exciting for me is they're coming to us not saying Hey, how do you do it? You know, they're saying, Hey, we want to build a consumption model on top of snowflake and we want to use you as the delivery mechanism and the billing mechanism to help us actually monetise that data. So yes, the answer is. You know, I I used to sell to, you know, chief Data Officers and and see IOS. Now I'm talking to VPs of sales and I'm talking to chief operating officers and I'm talking to CEOs about how do we actually create a new revenue stream? And that's just I mean, it's exhilarating to have those conversations. That's >>data products. They don't have to worry about the infrastructure that comes from the cloud. They don't have to worry about the governance, as Senior was saying, Just put >>it in stuff like Just >>put stuff like that. So I call it The super cloud is kind of a, you know, a funny little tongue in cheek. But it's happening. It's this layer. It's not just multiple clouds. You see a lot of your critical competitors adjacent competitors saying, Hey, we're now running in in Google or we're running in Azure. We've been running on AWS. This is different. This is different, isn't it? It's a cloud that floats above the The infrastructure of the hyper scale is, and that's that's a new era. I think >>it's a new error. I think they're you know, I think the hyper scholars want to, you know, keep us as a as a data warehouse and and we're not. The customers are not letting them so So I think that's you know where emphasis kind of saw the light early on. And they were our innovation partner of the year, uh, this past year and they're helping us in our customers innovate, >>but you're uniquely qualified to do that where? I don't think it's the hyper scholars agenda. At least I never say never with the hyper scale is, but yeah, they have focused on providing infrastructure. And, yeah, they have databases and other tools. But that that cross cloud that continuum to your point, talking to VPs of sales and how do you generate revenue? That maybe, is a conversation that they have, but not explicitly as to how to actually do it in a data >>cloud. That's right. I mean, those and those are the Those are the fun conversations because you're you're saying, Hey, we can actually create a new revenue stream. And how can we actually help you solve our joint customers problems? So, yes, it is. Well, >>that's competitive differentiation for businesses. I mean, this is, as I mentioned Every company has to be a data company. If they're not, they're probably not going to be around much longer. They've got to be able to to leverage a data platform like snowflake, to find insights, be able to act on them and create value new services, new products to stay competitive, to stay ahead of the competition. That's no longer nice to have >>100%. I mean, I think they're they're all scared. I mean, you know, like if you look in the financial services space, they look at some of the fintech, as you know, the giant £800 gorillas look at the small fintech has huge threats to the business, and they're coming to us and say, How can we innovate our business now? And they're looking at us as the the innovator, and they're looking at emphasis to help them do that. So I think these are These are incredible times. >>So the narrative on Wall Street, of course, this past earnings season was consumption and who has best visibility and and they they were able to snowflake had a couple of large customers dial down consumption, some consumer facing. Here's the thing. If you're selling a data product for more than it costs you to make. If you dial down consumption in the future, you're gonna dial down revenue. So that's it's going to become less and less discretionary over time. And that, to me, is the next error. That's really exciting. >>The key, The key there is understanding the unit of measure. I think that's the number. One question that we get from customers is what is the unit of measure that we care about, that we want to monetise because to your point, it costs you more to make the product. You're not going to sell it right? And so I think that those are the things that the energy that we're spending with customers today is advising them, jointly advising them on how to actually monetise the specific, you know, unit of measure that they care >>about because when they get the Amazon bill or the snowflake bill, the CFO starts knocking the door. The answer has to be well, look at all the revenue that we generated and all the operating profit and the free cash flow that we drove, and then it's like, Oh, I get it. Keep doing it well, if I'm >>if I'm going on sales calls with the VP of sales and his their sales team, fantastic, right generated helping them generate revenue, right? That's a great conversation >>dynamic. And I think the adoption is really driven through the value, uh, that they can drive in their ecosystem. Their products are similar to products and services that these companies sell. And if you're embedding data inside Syria into your products services, that makes you that much more competitive in the market and drive value for your stakeholders. And that's essentially the future business model that we're talking about. On one side, the other one is the agility. Things aren't remaining constant, they are constantly changing, and we talked about some of those forces earlier. All of this is changing. The landscape is changing the the needs in the economy and things like that, and how you adapt to those kind of models in the future and pivoted on data capabilities that lets you identify new opportunities and and create new value. >>Speaking of creating new value last question guys, before we wrap, what's the go to market approach here between the two companies working customers go to get engaged. I imagine both sides. >>Yeah. I mean, the way that partnership looks good to me is is sell with co selling. So So I think, you know, we look at developing joint solutions with emphasis. They've done a wonderful job of leading into our partnership. So, you know, Sue Neill and I have a regular cadence where we talked every quarter, and our sales teams and our partner teams are are all leaning in and co selling. I don't know if you >>have Absolutely, um, you know, we we proactively identify, you know, the opportunities for our customers. And we work together at all levels within, you know, between the two companies to be able to bring a cohesive solution and a proposition for the customers. Really help them understand how to, you know, what is it that they can, um, get to and how you get that journey actually executed. And it's a partnership that works very seamlessly through that entire process, not just upstream when we're selling, but also downstream and we're executing. And we've had tremendous success together and look forward to more. >>Congratulations on that success, guys. Thank you so much for coming on talking about new possibilities with data and AI and sharing some of the impact that the technologies are making. We appreciate your insights. >>Thank you. Thank >>you. Thank you So much >>for our guests and a Volonte. I'm Lisa Martin. You're watching the Cube live in Las Vegas from Snowflake Summit 22 back after the keynote with more breaking news. Mhm, mhm.
SUMMARY :
We have three wall to wall days of coverage Yeah, it's all about data and bringing data to applications. Great to have you on the programme. Um, and the and the point of view in the market together so that, you know there is there is cohesive Chris talked to us about the snowflake data cloud. I think snowflake brings to the table an opportunity for them to Uh, and AI has been, you know, challenging. And and that's where you know our our customers, um, you know, grapple with the challenges So how do you think about modernisation? and I think because we're the data cloud, we're bringing data, you know, and making it available and democratising Chris, can you talk about some of the verticals where you guys are successful with emphasis that the three that I mentioned are And, you know, they've been all in on on So in that example that you gave between Kraft, of the sales motion and talking to our customers on solving these business challenges in Are you seeing the conversations in terms and opportunities that the the enterprises have, uh, and how you realise those you know, guidance. Uh, and not, uh, you know, compromise on their quality or privacy and some and and see one of the, you know, thesis I have is that we're going to move not just me is they're coming to us not saying Hey, how do you do it? They don't have to worry about the infrastructure that comes from the cloud. So I call it The super cloud is kind of a, you know, a funny little tongue in cheek. I think they're you know, I think the hyper scholars want to, you know, keep us as a as a data warehouse talking to VPs of sales and how do you generate revenue? And how can we actually help you solve our joint customers problems? I mean, this is, as I mentioned Every company has to be a data company. space, they look at some of the fintech, as you know, the giant £800 gorillas look at the small fintech If you dial down consumption in the future, on how to actually monetise the specific, you know, unit of measure that they care The answer has to be well, look at all the revenue that we generated and all the operating profit and the free and how you adapt to those kind of models in the future and pivoted on data Speaking of creating new value last question guys, before we wrap, what's the go to market approach here between the two companies So So I think, you know, we look at developing joint solutions with emphasis. have Absolutely, um, you know, we we proactively identify, and AI and sharing some of the impact that the technologies are making. Thank you. Thank you So much Summit 22 back after the keynote with more breaking news.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Lisa Martin | PERSON | 0.99+ |
David | PERSON | 0.99+ |
Chris | PERSON | 0.99+ |
Sue Neill | PERSON | 0.99+ |
Lisa | PERSON | 0.99+ |
Kraft | ORGANIZATION | 0.99+ |
$2 billion | QUANTITY | 0.99+ |
Las Vegas | LOCATION | 0.99+ |
Chris Degnan | PERSON | 0.99+ |
two companies | QUANTITY | 0.99+ |
Nike | ORGANIZATION | 0.99+ |
Heinz | ORGANIZATION | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
Kraft Heinz | ORGANIZATION | 0.99+ |
Chris Dignan | PERSON | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Snowflake Foundation | ORGANIZATION | 0.99+ |
both | QUANTITY | 0.99+ |
Syria | LOCATION | 0.99+ |
US | LOCATION | 0.99+ |
IOS | TITLE | 0.99+ |
One question | QUANTITY | 0.99+ |
£800 | QUANTITY | 0.99+ |
three | QUANTITY | 0.99+ |
Snowflake Summit 22 | EVENT | 0.99+ |
Infosys | ORGANIZATION | 0.99+ |
Snowflake Summit 22 | EVENT | 0.99+ |
first two guests | QUANTITY | 0.99+ |
this week | DATE | 0.98+ |
Snowflake | ORGANIZATION | 0.98+ |
one side | QUANTITY | 0.98+ |
one | QUANTITY | 0.98+ |
Snowflake Summit 2022 | EVENT | 0.98+ |
Albertsons | ORGANIZATION | 0.98+ |
this year | DATE | 0.97+ |
two sided | QUANTITY | 0.97+ |
today | DATE | 0.97+ |
40% | QUANTITY | 0.97+ |
Ukraine | LOCATION | 0.96+ |
Sunil Senan | PERSON | 0.96+ |
ORGANIZATION | 0.96+ | |
Kraft, Heinz and and and Albertson | ORGANIZATION | 0.95+ |
Albertans | ORGANIZATION | 0.92+ |
two stages | QUANTITY | 0.9+ |
three years | QUANTITY | 0.9+ |
this morning | DATE | 0.88+ |
one cloud | QUANTITY | 0.87+ |
CVS | ORGANIZATION | 0.87+ |
100% | QUANTITY | 0.86+ |
past year | DATE | 0.86+ |
snowflake | ORGANIZATION | 0.84+ |
Wall Street | LOCATION | 0.84+ |
next five years | DATE | 0.84+ |
zero | QUANTITY | 0.82+ |
last couple of years | DATE | 0.82+ |
William | ORGANIZATION | 0.76+ |
Snowflake Data Club | ORGANIZATION | 0.74+ |
two | QUANTITY | 0.69+ |
Volonte | PERSON | 0.69+ |
Summit 22 | EVENT | 0.69+ |
Snowflake | EVENT | 0.65+ |
Albertans | OTHER | 0.61+ |
Christian | ORGANIZATION | 0.6+ |
Azure | TITLE | 0.6+ |
Nielsen | ORGANIZATION | 0.59+ |
Data Cloud | ORGANIZATION | 0.58+ |
Service | ORGANIZATION | 0.53+ |
Cube | TITLE | 0.51+ |
Sanoma | PERSON | 0.51+ |
tonnes | QUANTITY | 0.5+ |
last | DATE | 0.37+ |
Volonte David | ORGANIZATION | 0.34+ |
S V. | ORGANIZATION | 0.33+ |
Diya Jolly, Okta | CUBE Conversation, May 2020
from the cube studios in Palo Alto in Boston connecting with thought leaders all around the world this is a cube conversation vibrator this is Dave Volante and welcome to this special cube conversation as you know I've been running a CXO series now for several weeks really trying to understand how leaders are dealing and coping with the Cova 19 crisis today we want to switch gears a little bit and talk not only about how leadership has sort of navigated through this crisis but also start to imagine what it's going to look like coming out of it I'm going to introduce you to a company that have been talking about now for the last well six to nine months company called octave as you know from my previous breaking analysis this is a company that not only is in the security business they really kind of made their mark with identification management but also really there's a data angle normally when you think about security you thinking about auto security it means that less user flexibility it means less value from the user standpoint what what octa has done really successfully is bring together both endpoint security as well as that data angle and so the company is about six hundred million dollars in revenue they've got an eighteen billion dollar valuation which you know may sound kind of rich at 30 X a revenue multiple but as I've reported the company is growing very rapidly I've talked about the you know the rule of 40 octa is really a rule of 50 type of company you know by that definition they're with me here to talk about the product side of things as dia jolly who's the chief product officer yeah thanks so much for coming on the cube I hope you're doing okay how are things out in California things are going well good to meet you as well Dave I hope you're doing well as well yeah we're hanging in there you know the studios are rocking the cube you know continues our daily reporting I want to start with your role you're relatively new to octa you've got a really interesting background particularly understanding endpoints you're at Google Google home of Google Nest you spent some time you know worrying about looking after Xbox do you a good understanding of what's going on in the marketplace but talk about your your role and how specifically you're bringing that to enterprise sure so I drove about this I I say that I've done every kind of known product management imaginable the man at this point I'm done both Hardware Don software so dealt a lot with endpoints as you talked about that a lot with sass dealt with consumer dealt with enterprise and all over the place completely different sizes so after really my role as a chief product officer is to be able to understand and what our customers need right and what are the challenges they're facing and not just the challenges they're facing today but also what are the challenges that they'll face tomorrow that they don't even know about and then help build products to be able to overcome that both with our engineering teams as well as with our sales engineering team so that we can take it to market now my background is unique because I've seen so many identity being used in so many different ways across so many different use cases whether it's enterprise or its consumer and that given that we covered both sides spectrum I can bring that to bear yes so what I've reported previously is that that you guys kind of made your mark with with identification management but in terms of both workforce but also customer identification management which has been I think allowed you to be very very successful I want to bring up a chart and share something that I've I've shared a lot of data with our audience previously some guys if you bring that up so this is data from enterprise Technology Research our data partner and for those who follow this program you know we we generally talk in in two metrics a net score which is a measure of spending momentum and and also market share which really isn't real market share but it's it's pervasiveness in the survey and what you can see here is the latest April survey from over 1200 CIOs and IT practitioners and we're isolating on an octa and and we brought it back to July 15 survey you see a couple of points here I want to make one is it something to the right this is pervasiveness or market share so octa in the market is doing very very well it's why the valuation is so high what's driving the growth and then you can see in the green a 55% net net score very very strong it's one of the leaders in security but as I said it's more than than that so dia from a product standpoint what is powering this momentum sure so as you well know the world is working from home what after does is it provides Identity Management that allows you to connect to any technology and by any technology it primarily means technology technology that's not just on premise like your applications on-premise old-school applications or into software that's on premise but it also means technology that's in the clouds of SAS applications application infrastructure that's in the cloud etc and on the other hand it also allows companies to deploy applications where they can connect to their customers online so as more and more of the world moves to work from home you need to be able to securely and seamlessly allow your employees your partners to be able to connect from their home and to be able to do their work and that's the foundation that we provide now if you look at if you we've heard a lot in the press about companies like zoom slack people that provide online collaboration and their usage has gone up we're seeing similar trends across both octa as well as the entire security industry in general right and if you look at information recently since over to started phishing attacks have increased by six hundred and sixty seven percent and what we've seen in response is one of our products which is multi-factor authentication we've experienced in eighty percent growth in usage so really as Corvette has pushed forward there was a trend for people to be able to work remotely for people to be able to access cloud apps and but as ubered has suddenly poured gas on the fire for that we're seeing our customers reaching out to us a lot more needing more support and just the level of awareness and the level of interest raising let's talk about some of the trends that you guys see in the marketplace and like to better understand how that informs your product or you know roadmap and decisions you know obviously this cloud you guys have made a really good mark in the cloud space you know with both your your operating model your pricing model the modern stack the other is a reference that upfront which data talked a lot about digital transformation digital us data course the third is purity related to trust we've talked a lot on the cube about how the perimeter is there is no particular anymore the Queen is left her castle and so what are the big trends that you see the big waves that that you're riding and how does that inform your product directly sure so a few different things I think number one if you think about the way I've phrase this is or the way I think about it is the following any big technological trend you see today right whether it's the move the cloud whether it's mobile whether it's artificial intelligence intelligence you think about the neural nets etc or it's a personalized consumer experience all of that fundamentally depends on identity so the most important the so from a from being an identity provider the most important thing for us is to be able to build something that is flexible enough that is broad enough that it is able to span multiple uses right so we've taken from a product perspective that means we can follow two philosophies we can either the try and go solve each of these pain points one by one or we can actually try to build a platform that is more open that's more extensible and that's more flexible so that we can solve many of these use cases right and not only can we solve it because there's it extensible our customers can customize it they can build on top of it our partners can build on top of it so that's one thing that's one product philosophy that we hold dear and so we have the Octagon cloud which is a platform which provides both workforce identity as well as customer identity using the same underlying components the same multi-factor authentication we use for workforce we package up as an SDK so that our customer identity customers that's number one the second thing is you rightfully mention is data you can't really secure identity without data so we have very we have a lot of data across our customers we know when the users logging in we know what device they're logging in front we know the security posture on the device we know where they're logging in from we know their different behaviors were apps they go into or during wartime of the day etc so being able to harness all this data to say hey and apply ml model squared to say hey is the user secure or not is a very very core foundation of our product so for example we have what we call risk-based authentication you can not only do things like hey this user seems to be logging on from a location they've never logged on from but you could even do things like well you may not want to stop the user they may be traveling so instead of just asking them for a for a password you ask them for a multi-factor right so that's the other piece of it and in many ways data and security and usability are three legs of a triangle the more data you have the more you can allow a user you more security you can provide a user without creating more friction so it's sometimes helpful for the audience to understand a company in a edit Avant act in the landscape so the obvious platform out there is Active Directory now Microsoft with Azure Active Directory you know really you know trying to and and that's really been on their platforms but with api's you know Microsoft has got a thumbs in every pie how does octave differentiate from some of the other traditional platforms that are out there and and what gives you confidence that it and you can continue to do so going forward post kovat that's it that's a fantastic question Dave um so I think we divide if you think about our competitors on the workforce side we've got Microsoft and a couple of other competitors and on the customer Identity side really it's a bill versus buy story right most companies customer identity internally so let's take workforce first Microsoft is the dominant player there they've got Active Directory they've now got Azure Active Directory and from a Microsoft perspective I think Microsoft is always been great at building products or building technology that interconnected run the world is going to more there's more and more technology proliferation in the world and the way we differentiate is by becoming a neutral and independent platform so whether you're on a Microsoft stack whether you're on a Google stack whether you're on an amazon stack we are able to connect with you deeply we connect just as well with all 365 as they connect with Salesforce as we connect with AWS right and that has been our core philosophy and not only is that a philosophy for other when other vendors it's a philosophy for ourselves as well we have multi-factor authentication so do many other providers like duo if you want to use ours great if you don't want to use ours with our platform who use the one that's best for your technology and I think what we've always believed in from a product perspective is this independence this neutrality this ability to plug-and-play any technology you want into a platform to be able to do what you want and the technology that's best for your business's need so what's interesting what you said about the sort of make versus buy that's particularly relevant for the customer identification management because let's say you know I'm buying from Amazon I've got Amazon they know who I am but if I understand it correctly customers now are able to look across brands maybe cohort selling maybe make specific offers analyze the data that's an advantage that you bring that maybe do it yourself doesn't Frank maybe talk about that a little bit sure so really if you think about if you think about a bill versus buying even ten years ago life used to be relatively simple maybe 15 years ago you had a website you as your username your the password you weren't really using you don't have multiple channels you didn't have multiple devices as prevalent you didn't have multiple apps in a lot of cases connected to each other right and in that in that day and age password was fairly secure you weren't doing a lot of personalization with the user data or had a lot of sensitive user data so building a custom identity solution having your customer managing your customers identity yourself was fairly easy now it's becoming more and more hard number one I just talked about the phishing attacks they're an equal number of attacks on the customer identity side right so how do you actually secure this identity how do you actually use things like multi-factor authentication how do you keep up with all the latest in multi-factor authentication touch ID face ID etcetera and that's one the second thing we provide is scale for a number of companies we also provide the ability to scale dramatically which scaling identity and being being able to authenticate someone and keep someone authenticated in real time is actually a very big channel challenge as you get to more and more scale and then the last thing that you mentioned is this ability we provide a single view of the user which is super super powerful because now if you think about one of our customers Albertsons they have multiple different apps there are multiple different digital experiences and he don't have a siloed view of their customer across all these experiences here one identity for your customer that customer uses that one identity to log on to all your digital experiences across all channels and we're able to bring that data back together so if Albertsons wants to say hey somebody shot a in or bought something in one particular app but I know people that buy this particular object like something else that's available in another app they can give a promotion for it or they can give a discomfort that's so that makes a lot of sense I went into the PR platform get our data partner and I looked at which industries are really showing moment so remember this survey focus was run right in the heart of the the Cova 19 pandemic from from mid-march the mid April so it's a good of good current data point and there were four that stood out large companies healthcare and pharma telco which is courses this work-from-home thing and then consumer the example that you just gave from Albertsons is really you know sort of around that consumer there are a lot of industries that obviously been hit airlines restaurants hospitality but but these four really stood out as growth areas despite the kovat 19 pandemic I want to ask you about octane you just got it had your big user conference anything product specific that came out of that that our audience should know about I mean I'm an interested in access gateway I know that wasn't necessarily a new announcement but Cloud Gateway what were the highlights of some of those things from a product stamp yeah of course so we did we did made a very difficult decision to pivot octane virtually and we did this because a number of our customers are given what they're facing with the Kovach pandemic wanted to hear more around news around what our product launches are how they could use this with cetera and really I'd say there are three key product launches that I want to highlight here we had a number of different announcements and it was a very successful conference but the three that are the most relevant here one is we've always talked about being a platform and we've set this for the past four or five years I think and but over the last your and going into the next couple of years we're investing very very heavily in making our platform even more powerful even more extensible even more customizable and so that it can go across the scenarios you described right which is whether you're on Prem with Auto access gateway or you're in the cloud or in some kind of hybrid environment or you using some mix-and-match or work from home people in the office etc so really what we did this year over the last year was deepen our platform footprint and we started releasing the four components available in a platform which we call platform services so we have six components and we were directories that is customizable and and flexible so you can build your own emails except for N equals four users adds information related to them we have an integration platform that we've made available at a deep level where where our customers can use SDKs tools etc to be able to integrate with octa in a platform which we've talked a lot about and then we released three new platform services and one was what we call arc identity engine we had released we talked about this last year and this year we talked about it last year from a customer identity perspective this year we brought her into our workforce identity but also what that does is it allows you a lot more flexibility for situations like we're in right it allows you flexibility to define security policies at the parabola it so you could decide hey for my email I don't want my customers to have to use a multi-factor authentication for but for Salesforce I would definitely want them to use a multi-factor authentication if they're not in the office and it also allows you to have a lot more flexible factor recovery so for example if you forgot your password one of the biggest pain points of co-ed has been the number of helpdesk costs have been rising through the roof the phone calls are ringing nonstop right and one of the biggest reasons for helpdesk are says oh I can't login I got locked out either lost a factor or L forgot my password it helps with that um so that's one set of announcements the second set of announcements was we launched a brand new devices platform and personally this is my personal favorite but really what the devices platform allows you to do is the feature in it that we launched is called Fast Pass and what phosphorous allows you to do is it actually takes phosphorous to the next level it allows you to basically use logging into your device and us understanding the posture of the device and all the user context around you to be able to log you directly dr. then I imagine if you're on a Mac or a iOS device or an Android or a Windows device just being able to face match into your iOS or being able to touch ID into your Windows hello and you're automatically logged into lockdown right that is that and and the way we do that is we have this client on across all these operating systems that can really understand the security posture of the device it can understand of the device is managed if it's safe if it's jailbroken if it's unmanaged it can also connect with multiple signals on the device so if you have an EDR and MDM vendor we can ingest those signals and what they think of the risk we can also ingest signals directly from apps if apps things like um G suite and Salesforce actually track user behavior to determine risk they can pass those signals to us and then we can make a decision on hey we should allow the user to authenticate directly into octa because they've authenticated their device which we can make a decision that says no let's provider let's ask them to step up with a multi-factor authentication or we can say no this is too risky let's deny access and all of this is configurable by the IT admin they can decide the risk levels they're comfortable with they can decide the different risk levels by different apps so that was another major announcement and then and as a product person you rarely ever get the chance to actually increase security and usability at one time which is why it's my favorite you increase both security and usability together now the last one was action was a workflows engine we call it workflows lifecycle management and we it's really we launched a graphical no cord user interface identity is so important so many business processes for our customers there's so many business processes built an identity for example if someone joins her company you usually either have a script that allows them access to the applications they need to or you actually have an IT admin sitting in there trying to manually provide access or when they leave right what workflow lifecycle management or lifecycle management workflows allows you to do is it actually allows you to provide it actually provides you the no core graphical user interface where you can build all these flows so now you don't need someone that knows coding you can even have a business unit so for example I for me in the product for the product org I can have someone say hey building a business process similar it's something you would build in sort of like an iPad and allow everyone that comes in to be able to have access to fig mom because we use pigma a lot right those are the kinds of things you can do and it's super powerful and it takes the ability of our already existing lifecycle management product to the next level well thank you for that that's that summary dear so I want to kind of close with I mean those of you have been following the cube for a while there I think there's some similarities between octa and and and service now that obviously obvious differences but we started following you know ServiceNow pre-ipo is less than a hundred million dollar company and we've seen that company build out as a platform company and that's really what octa is doing here we're talking about a total available market that's yeah probably north of 50 billion so the the question I have he is you know what Frederic and pod started 11 years ago playing on the dynamics coming out of the financial crisis that got us to where we are today now you've got the challenge of you've achieved reached escape velocity now you've got this you know massive growth opportunity in front of you how do you see the product portfolio evolving expanding and I'm also interested in postcode with 19 you know no whiteboards no face-to-face contact not at least not for a while and how you're kind of managing through that but but how can we expect the product portfolio to expand over time what can you share with us so one of the given how pervasive identity has become and given how not just broad but at the same time deep it is there are multiple different places or product portfolio >> and a number of different places were thinking about right so one is you mentioned today we play in workforce identity and customer identity but we haven't even begun to talk about how we might play in consumer right one of the one of the biggest perk matter is consumers and consumers protecting their own identity so often an employee is not using their identity to lock the seals ports and you have an attack on a company and offered an employee actually logging into their Gmail their personal Gmail or their personal or some personal website that bank and they get and their credential get compromised in their fluency impossible so the more protective the more directly consumers the more we indirectly protect both enterprises from work from an employer as well as a customer perspective howdy we're an enterprise company so it doesn't mean that we are going to go direct to consumer there are ways to make employees more secure by what the director calls were so that's one the second thing is managing identities I think we've as the number of applications as the number of technologies are proliferate managing and an employee's life cycle who that governing that the life cycle is not administering etc is also fully stock also becoming very very challenging it was all well and good we'll never can ask and you were on that that's not true anymore an average company uses I think close to 200 applications and then if you broaden back to other resources like infrastructure there's a lot lock more so how do you actually build automated systems that based on the employee status based on their rule based on the project they're on provides them the right access for the right amount of time the third thing you mentioned is and you should pass on this initially but this is the there's this concept of zero security right and the perimeters disappeared how do you provide security so if you look at the industry at large today there are tons of different security vendors trying to provide security at each point if you talk to any see-saw out there it's really really hard to cobble all of this together and one of the things we were trying to do is we're trying to figure out how with our partners we can build a silly end-to-end solution for n - n zero trust for our customers so that's that's another area that the of the product portfolio we're pushing and then finally with the whole digital transformation and customer identity yes more and more companies want their customers to go back online yes more and more customers convenience of being able to interact online with Billy if you think about it the world has changed dramatically over the last three years with privacy laws with things like gdpr CCP etc how do you actually manage your customers obviously you actually manage their content how do you ensure that while you're using all this data from across these apps that we talked about here you and you're using for the first benefit how do you make sure that the minister private is secure and and how do you ensure your customers that's another major area that I think our customers are asking us for helping and so those are areas or so that you should be a big signature the next two to three years some of it will be through partnership that's generally that high-level directions we're headed in wealthy you so much for coming on the key on the key and sharing the product roadmap and some other details about the great company really interested in watching its continued ascendancy good luck in the marketplace and thank you for watching everybody this is Dave Villante you conversations we'll see you next time [Music]
SUMMARY :
of the trends that you guys see in the
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
July 15 | DATE | 0.99+ |
Amazon | ORGANIZATION | 0.99+ |
Dave Villante | PERSON | 0.99+ |
May 2020 | DATE | 0.99+ |
Albertsons | ORGANIZATION | 0.99+ |
eighty percent | QUANTITY | 0.99+ |
Dave Volante | PERSON | 0.99+ |
Dave | PERSON | 0.99+ |
Microsoft | ORGANIZATION | 0.99+ |
55% | QUANTITY | 0.99+ |
California | LOCATION | 0.99+ |
last year | DATE | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
April | DATE | 0.99+ |
iOS | TITLE | 0.99+ |
Windows | TITLE | 0.99+ |
Diya Jolly | PERSON | 0.99+ |
three | QUANTITY | 0.99+ |
two metrics | QUANTITY | 0.99+ |
iPad | COMMERCIAL_ITEM | 0.99+ |
this year | DATE | 0.99+ |
kovat 19 pandemic | EVENT | 0.99+ |
11 years ago | DATE | 0.99+ |
AWS | ORGANIZATION | 0.99+ |
octave | ORGANIZATION | 0.99+ |
Gmail | TITLE | 0.99+ |
15 years ago | DATE | 0.99+ |
Boston | LOCATION | 0.99+ |
over 1200 CIOs | QUANTITY | 0.99+ |
Android | TITLE | 0.99+ |
one | QUANTITY | 0.99+ |
Cova 19 pandemic | EVENT | 0.99+ |
dia jolly | PERSON | 0.99+ |
tomorrow | DATE | 0.98+ |
six components | QUANTITY | 0.98+ |
six hundred and sixty seven percent | QUANTITY | 0.98+ |
less than a hundred million dollar | QUANTITY | 0.98+ |
about six hundred million dollars | QUANTITY | 0.98+ |
each point | QUANTITY | 0.98+ |
six | QUANTITY | 0.98+ |
ten years ago | DATE | 0.98+ |
today | DATE | 0.98+ |
mid April | DATE | 0.98+ |
both | QUANTITY | 0.98+ |
both sides | QUANTITY | 0.98+ |
third | QUANTITY | 0.97+ |
second thing | QUANTITY | 0.97+ |
Billy | PERSON | 0.97+ |
one time | QUANTITY | 0.97+ |
two philosophies | QUANTITY | 0.97+ |
mid-march | DATE | 0.97+ |
Azure Active Directory | TITLE | 0.97+ |
Mac | COMMERCIAL_ITEM | 0.96+ |
third thing | QUANTITY | 0.96+ |
one identity | QUANTITY | 0.96+ |
four | QUANTITY | 0.96+ |
Okta | PERSON | 0.96+ |
ORGANIZATION | 0.96+ | |
Xbox | COMMERCIAL_ITEM | 0.96+ |
nine months | QUANTITY | 0.96+ |
Cova 19 crisis | EVENT | 0.95+ |
each | QUANTITY | 0.95+ |
one thing | QUANTITY | 0.94+ |
Azure | TITLE | 0.94+ |
first benefit | QUANTITY | 0.94+ |
four users | QUANTITY | 0.94+ |
Kovach pandemic | EVENT | 0.93+ |
Aaron Kalb, Alation | CUBEConversation, January 2019
>> Hello everyone. Welcome to this Cube conversation here in Palo Alto. On John Furrier, co host of the Cube. I'm here. Aaron Kalb is the co founder and VP of design and Alation. Great to see them on some fresh funding news. Aaron, Thanks for coming. And spend the time. Good to see you again. >> Good to see you, John. Thanks for having me >> So big news. You guys got a very big round of financing because you go to the next level. A startup. Certainly coming out that start up phase and growth phase super exciting news. You guys doing some very innovative things around, date around community around people and really kind of cracking the code on this humanization democratization of data, but actually helping businesses. I want to talk about it with you. First. Give us the update on the financing, the amount what it means to the company. A lot of cash. >> Yeah. So we're very excited to have raised a fifty million dollar round. Sapphire led the round, and we also had, you know, re ups from all of our existing investors. And, you know, as as a co founder, he always had big dreams for growth. And it's just validating tohave. Ah, a community of investors who can see the future, too, as well as our great community of over one hundred customers now who want to build this data democratized future with us. >> We've been following you guys since the founding obviously watching you guys great use of capital. Fifty million's a lot of capital, so obviously validation check. Good, good job. But now you go to a whole other level growth. What's the capital gonna be deployed for? What's going on with company where you guys I and in terms of innovation, what's the key focus? >> It's a great question. So you know, obviously we have revenue from our customers. But getting this extra infusion from VC lets us just supercharge our development. It's growth. It's going to more customers, both domestically and abroad, goingto a broader user base. And we're Enterprise-wide Adoption within those customers, as well as innovation in the core product, new technology, great design and futures. that are really going to change the organization's access and use data to make better decisions? >> What was the key Learnings As you guys went into this round of funding outside the validation to get through due diligence, all that good stuff. But you guys have made some successful milestones. What was the key? Notable accomplishments that Alation hit to kind of hit this trigger point here for the fifty million? >> Yeah, I'm glad you asked about that. I think that the key thing that's changed it's enabled this. This next phase is that the data catalog market has really come into its own right. In the beginning, in the early days, we were knocking on doors, trying to say, You know, we don't even know it was going to be called data catalog in our first few months. And even though we had the technology, we said, Hey, we got this thing and we know it's useful. Please buy it. Please want it. And the question was, you know, what's the data catalog by what I ever even look at that? And it's just turned a corner. Now, you know, Thanks. In part of things like Gartner telling companies you know, in the next year by twenty twenty, if you have a data catalog, you're goingto see twice the ROI from your existing data investments than if you don't your stories like that are making companies say? Of course, you want to data catalog. It just turned out a dime. Now they're asking, Which data catalog should we get? Why is yours the best in this change of the market maturing? I think it's the biggest change we've seen >> with one thing that we've observed. I want to get your reaction to This is that I'll stay with cloud computing economics, a phenomenally C scale data data science working the cloud. We see great success there. Now there's multiple clouds, multi clouds, a big trend, but also the validation that it's not just all cloud anymore. The on premises activity steel is relevant, although it might have a cloud. Operations really kind of changes the role of data. You mentioned the data catalogue kind of being kind of having a common mainstream visibility from the analysts like Gardner and others on Wiki Bond as well. It makes data the center of the innovation. Now you have data challenges around. Okay, where's the data deployed? Where my using the data? Because data scientists want ease of data, they want quality data. They want to make sure their their algorithm, whether it's machine learning component or software actually running a good data. So data effectiveness is now part of the operations of most businesses. What's your reaction to that? Which your thoughts. Is that how you see it? Is there something different there? What's going on with the whole date at the center? >> Absolutely hit on two key themes for us. One of that idea of the center and the other is your point about data quality and data trust. So, so centrality, we think, is really essential. You know, we're seeing cataloging technology crop up more and more. A lot of people were coming out with catalogs or catalog kind of add ons to their products. But what our customers really tell us is they want the data catalog to be the hub, that one stop shop where they go to to access any data, wherever it lives, whether it's in the cloud or on Prem, whether it's in a relational database or a file system, so is one of Alations key. Differentiators early on was being that central index, much like Google is out of the front page to the Internet, even though it's linking to ad pages all over the place. And the other thing in terms of that data quality and data trustworthiness has been a differentiator, and this was something that was part of our technology when we launched that we didn't put the label out till later. Is this idea of Behavior IO, that's kind of looking at previous human behavior to influence future human behavior to be better. And there's another place we really took some inspiration from Google and Terry Winograd at Stanford before that, you know, he observed. You know, if you remember back before Google search sucked, frankly, right, the results on top are not the most development were not the most trustworthy. And the reason was those algorithms were based on saying, how often does your key word appear in that website? Built, in other words, and so you'd get results on top. That might just not be very good. Or even that were created by spammers who put in a lot of words to get SEO and and, you know, that isn't the best result for you on what Google did was turned that around with page rank and say, Let's use the signals that other people are getting behind about the pages they find valuable to get the best result on top. And Alation is the exact same thing our patented proprietary behavior technology lets us say Who's using this data? How were they using it? Is it reputable? And that enables us to get the right data and transfer the data in front of decision makers. >> And you call that Behavioral IO >> Behavior IO, that's right. >> I mean, certainly remember Google algorithmic search was pooh poohed. It first had to be a portal. Everyone kind of my age. You can't remember those those days and the results were key word stuff by spammer's. But algorithmic search accelerated the quality. So I got to ask you the behavioral Io to kind of impact a little bit. Go a little deeper. What does that mean for customers? Because now I'll see as people start thinking, OK, I need to catalogue my data because now I need to have replication, all kinds of least technical things that are going on around integrity of the data. But why Behavioral Aya? What's the angle on that? What's the impact of the customer? Why is this important? Absolutely so. >> Might have to work through an example, you know we joke about. You might be looking around in your SharePoint drive and find an Excel file called Q three Numbers final. Underscore final. Okay, that seems that'S inject the final numbers, and then you see next to it when it says underscore final underscore, final underscore finalist. Okay, well, is that one final? And it turns out what Data says about itself is less reliable than what other people say about the data. Same thing with Google that if everyone's linking with Wikipedia Page, that's a more reliable page than one that just has, you know, paid for a higher placement, Right? So what a means an organization is with Alation will tell you. You know, this is the data table that was refreshed yesterday and that the CFO and everybody in this department is using every day. That's a really strong signal. That's trustworthy data, as opposed to something that was only used once a year ago. >> So relevance is key there. >> Absolutely. It's relevant. And trustworthiness. We find both all right, indicated more strongly by who's using it and how than by the data itself. >> Are you seeing adoption with data scientist and people who were wrangling date or data analysts that if the date is not high quality, they abandoned. The usage is they're getting kind of stats around that are because that we're hearing a lot of Hey, you know, that I'm not going to really work on the data. But I'm not going to do all the heavy lifting on the front end the data qualities, not there. >> Absolutely. We see a really cool upward spiral. So in Alation, we have a mix of manual, human curated metadata, you know, data stewards and that a curator saying, this is endorsed data. It's a certified data. This is applicable for this context. But we also do this automatic behavior. Io. We parse the query logs. These logs were, you know, put there for audit on debugging purposes. But we were mining that for behavioral insight, and we'll show them side by side on what we see is overtime on day one. There's no manual curation. But as that curation gets added in, we see a strong correlation between the best highest quality data and the most used data. And we also see an upward spiral where, if on day one. People are using data that isn't trustworthy that stale or miscalculated as soon as Ah, an Alation steward slaps a deprecation or a warning on the data asset because of technology like trust check talking about last time I was here, that technology, that's the O part of behavior IO We then stop the future behavior from being on bad data, and we see an upward spiral where suddenly the bad sata is no longer being used and everyone's guided put the pound. >> One thing I'm really impressed with you guys on is you have a great management team and overall team with mixed disciplines. Okay, I think last night about your role, Stanford and the human side of the world. But you have to search analogy, which is interesting because you have search folks. You got hardcore data data geeks all working together. And if you think about Discovery and navigation, which is the Google parent, I need to find a Web page and go, Go, go to it. You guys were in that same business of helping people discover data and act on it or take action. Same kind of paradigm, so explain some customer impact anecdotes. People who bought Alation, what your service and offering and what happened after and what was it like before? We talk about some of that? And because I think you're onto something pretty big here with this discovery. Actionable data perspective. >> Yeah, well, one of our values, it Alation, is that we measure our success through customer impact, you know, not do financing or other other milestones that we are excited about them. So I I would love to talk about our customers. One example of a business impact is an example that our champion at Safeway Albertsons describes where, after safe, it was acquired by Albertson's. They've been sort of pioneers of sort of digital, ah, loyalty and engagement. And there was a move to kind of stop that in its tracks and switch should just mailing people big books of coupons that of customizing, you know, deals for you based on your buying behavior. And they talked about getting a thirty x ROI on the dollars they've spent on Alation by basically proving the value of their program and kind of maximizing their relationship with their customers. But the stories they're even more exciting to me, then just business impacts in dollars and cents when we can leave a positive impact on people's lives with data. There's a few examples of that Munich reinsurance, the biggest being sure and also a primary ensure in Europe, had some coverage and Forbes about the way that they use Alation, other data tools to be able to help people get back on their feet more quickly after, ah, earthquakes and other natural disasters. And similarly, there's a piece in The Wall Street Journal about how Pfizer is able to create diagnostics and treatments for rare diseases where it wouldn't have been a good ROI even invest in those if they didn't get that increased efficient CNN analytics from Alation on the other data. >> So it's not just one little vertical. It's kind of mean data is horizontally. Scaleable is not like one. Industry is going to leverage Alation, >> Absolutely so you know, I mentioned just now. Insurance and health care and retail were also in tech were in basically every vertical you can imagine and even multiple sectors. You know, I've been focusing on industry, but there's another case that you can read about at the city of San Diego were there. They're doing an open data initiative, enabling people to figure out everything from where parking is easiest, the hardest to anything else. >> The behavioral Io. And it's all about context and behavior, role of data and all this. It's kind of fundamental to businesses. >> That's right. It's all about taking everything about how people using data today and driving people to be even more data driven, more accurate, better able to satisfy their curiosity and be more rational in >> the future. So if I'm a from a potential customer and I heard a rAlation, get the buzz out there, why would I need you? What air? Some signals that would indicate that I should call Alation. What's some of that Corvette? What's the pitch? >> Yeah, it's a great question. No, I sometimes joke with the team that you know every five minutes another enterprise reaches that point where they can't do it the old way anymore. And the needle ations. And the reason for that is that data is growing exponentially and people can only grow at most, you know, linearly. So I compare it a bit again to the days of of Yahoo When the Internet was small, you make a table of contents for it. But as there came to be trillions of red pages, you needed an automatic index with pay drink to make sense of it. So I would say, once you find that your analytics team has spread out and they're spending, you know eighty percent of their time calling up other people to find where development data is, you're asked to Your point is this data high quality show even spend my time on it? You know that's probably not money is well spent with these highly paid people spending other times scrounging If you switch from scrounging to finding understanding and trusting their data for quick and accurate analysis, give us >> a call. So basically the pitches, if you want to be like Yahoo, do it the old way. We know what happened. Yeah, you want to be like Google, two algorithmic and have data >> God rAlation, and you'll be around for a while very well. After that, maybe the one see that that's my words. >> And and that's part of turning that corner. I think in the beginning we were trying to tell people this could be a nice toe have. And now customers are coming to us realizing it's a must have to stay a relevant, you know, And if you've made all these investments in data infrastructure and data people, but you can't connect the dots is you said, between the human side and the tech side that money's all wasted and you're going to not be able to compete against your competitors and impact of customers what you want. >> Well, Eric, congratulations. Certainly is the co founder. It's great success. And how hard is that you start ups? You guys worked hard and again. Why following you guys? Been interesting to see that growth and this innovation involved in creative, A lot of energy. You guys do a good job. So final question, talk about the secret sauce of Alation. What's the key innovation formula? And now that you got the funding where you're going to double down on, where's the innovation going to come next? So the innovation formula and where the innovation, the future, >> absolutely innovation has been critical for us to get here on our customers didn't just buy the exciting features with behavioral and trust. Check that we had but also are buying into the idea that we're going to continue to be the leaders and to innovate. Andi, we're going to do that. So I think the secret sauce which we've had in the past, we're going to continue to innovate in this vein, is to be really conscious of water computers great at and what humans uniquely good at what you humans like doing and trying to have the human and computers work together to really help the human achieve their goals. Right? So, Doctor, the Google example. You know, there's a bunch of systems for collaboratively ranking things, but it takes work to, you know, write a review on the upper Amazon. Google had the insight that we could leverage people are already doing and make it about it. Out of that, we're going to continue to do that. >> The other kind of innovation you'll see is bringing Alation to a wider and wider audience, with less and less technical skill needed. So I came from Syria Apple, and the idea is you have to learn a programming language to Queria database. You could just speak in English. That helps you ask answer questions like What's the weather today? Imagine taking that same kind of experience of seamless integration to the more important questions enterprises are asking. >> We'll have to tap your expertise is we want to have an app called the Cube Syria, which is a cube. What's the innovation in Silicon Valley and have it just spit out a video on the kidding? Final question just to double down on that piece, because I think the human interactions a big part of what you're saying I've always loved that about with your vision is. But this points to a major problems. Seeing whether it's, you know, media, the news cycle These days, people are challenging the efficacy of finding the research and the real deep research on the media. So I was seeing scale on data scale is a huge challenge. You mentioned the growth of data. Computers can scale things, but the knowledge and the curation kind of dynamic of packaging it, finding it, acting on it. It's kind of where you guys are hitting. Talk about that tie name, my getting that right and set is that important? Because, you know, certainly scale is table stakes these days. >> That is super insightful John, because I think human cognition and human thought excuse me, is the bottleneck four being data driven right we have on the Internet trillions of Web pages, you know, more than the Library of Alexandria a hundred times over, and we have in databases millions of columns and trillions of rose. But for that to actually impact the business and impact the world in a positive way, it's got to go through a person who could understand it. And so, in the same way that Google became the mechanism by which the Internet becomes accessible, we think that Alation for organizations is becoming the way that data can become actionable. And the other thing I would say is, you know, in this age of alternative facts and mistrust of data, you know, we've sort of realizing the just having more information out there doesn't actually make people wiser and better able to reason. It can actually be a lot of noise that muddies the signal and confuses people. So we think Alation by also using human computer interaction to help separate the signal from the noise and the quality from the garbage can help stop the garbage in garbage out and make people more rational and more curious and have more trust than what there. Hearing understanding >> build that Paige rang kind of metaphor is interesting because the human gestures, whether it's work or engaging on the data, is a signal tube, not just algorithmic meta data extraction. >> Absolutely anything you do with data and any tool, even outside of Alation. Alation will capture that and use it to guide future behavior for you and your appears to be better and smarter. >> Fifty million dollars. Where's this all going to lead to wins the next innovation. What do you guys see? The future for rAlation? >> Well, you know, I, uh I was just thinking before the show I used to be an apple kind of in the golden Age when Apple was really innovative. And there was the joke where they released something new and say, Redman, start your photocopier. So in this interview, I'm going to be a little close to the chest about the specifics, but we're releasing. But I will tell you we have a room that we're really excited about to go to a broader and broader audience that impactor customers more fully >> well you feel free to say one more thing? >> Yeah. I think the secret to the future is Aaron. Thanks for coming on. >> Really preachy. Congratulations on the funding. He has got a very innovative formula. Good luck. And we'll be following you guys. Thanks, but come on, keep commerce. Thanks so much. Eric Kalb, co founder and VP of designing Alation. Interesting formula. Great. Successful. Former great innovation. Alation. Check him out. I'm Jennifer here in Palo Alto for cube conversation. Thanks for watching.
SUMMARY :
Good to see you again. Good to see you, of cracking the code on this humanization democratization of data, but actually helping businesses. and we also had, you know, re ups from all of our existing investors. been following you guys since the founding obviously watching you guys great use of capital. So you know, obviously we have revenue from our customers. What was the key Learnings As you guys went into this round of funding outside the validation to get through due diligence, And the question was, you know, what's the data catalog by what I ever even look at that? Is that how you see it? One of that idea of the center and the other is your point So I got to ask you the behavioral Io Okay, that seems that'S inject the final numbers, and then you see next to it when it says underscore And trustworthiness. a lot of Hey, you know, that I'm not going to really work on the data. we have a mix of manual, human curated metadata, you know, One thing I'm really impressed with you guys on is you have a great management team and overall team with mixed disciplines. you know, deals for you based on your buying behavior. Industry is going to leverage Alation, the hardest to anything else. It's kind of fundamental to businesses. more data driven, more accurate, better able to satisfy their curiosity and be more rational So if I'm a from a potential customer and I heard a rAlation, get the buzz out there, the days of of Yahoo When the Internet was small, you make a table of contents for it. So basically the pitches, if you want to be like Yahoo, do it the old way. maybe the one see that that's my words. And now customers are coming to us realizing it's a must have to stay a relevant, you know, And now that you got the funding where you're going to double down on, where's the innovation going to come next? things, but it takes work to, you know, write a review on the upper Amazon. and the idea is you have to learn a programming language to Queria database. It's kind of where you guys are hitting. And the other thing I would say is, you know, in this age of alternative facts build that Paige rang kind of metaphor is interesting because the human gestures, whether it's work or Alation will capture that and use it to guide future behavior for you and your appears to be better and smarter. What do you guys see? But I will tell you we have a room that we're really excited about to go to a broader and broader Thanks for coming on. And we'll be following you guys.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Eric | PERSON | 0.99+ |
Eric Kalb | PERSON | 0.99+ |
Aaron Kalb | PERSON | 0.99+ |
Jennifer | PERSON | 0.99+ |
Aaron | PERSON | 0.99+ |
John | PERSON | 0.99+ |
Pfizer | ORGANIZATION | 0.99+ |
Palo Alto | LOCATION | 0.99+ |
Europe | LOCATION | 0.99+ |
Yahoo | ORGANIZATION | 0.99+ |
Terry Winograd | PERSON | 0.99+ |
January 2019 | DATE | 0.99+ |
ORGANIZATION | 0.99+ | |
Amazon | ORGANIZATION | 0.99+ |
CNN | ORGANIZATION | 0.99+ |
San Diego | LOCATION | 0.99+ |
fifty million | QUANTITY | 0.99+ |
Silicon Valley | LOCATION | 0.99+ |
Fifty million dollars | QUANTITY | 0.99+ |
Apple | ORGANIZATION | 0.99+ |
Fifty million | QUANTITY | 0.99+ |
Gartner | ORGANIZATION | 0.99+ |
Gardner | PERSON | 0.99+ |
yesterday | DATE | 0.99+ |
First | QUANTITY | 0.99+ |
Excel | TITLE | 0.99+ |
Safeway Albertsons | ORGANIZATION | 0.99+ |
eighty percent | QUANTITY | 0.99+ |
twice | QUANTITY | 0.99+ |
Alation | ORGANIZATION | 0.99+ |
One | QUANTITY | 0.98+ |
thirty | QUANTITY | 0.98+ |
both | QUANTITY | 0.98+ |
Alation | PERSON | 0.98+ |
Stanford | ORGANIZATION | 0.98+ |
Library of Alexandria | ORGANIZATION | 0.98+ |
John Furrier | PERSON | 0.98+ |
next year | DATE | 0.98+ |
first | QUANTITY | 0.98+ |
today | DATE | 0.98+ |
millions of columns | QUANTITY | 0.97+ |
over one hundred customers | QUANTITY | 0.97+ |
one thing | QUANTITY | 0.97+ |
two | QUANTITY | 0.97+ |
trillions of red pages | QUANTITY | 0.97+ |
Albertson | ORGANIZATION | 0.97+ |
one | QUANTITY | 0.96+ |
Alations | ORGANIZATION | 0.96+ |
two key themes | QUANTITY | 0.95+ |
Redman | PERSON | 0.95+ |
trillions of rose | QUANTITY | 0.95+ |
Forbes | ORGANIZATION | 0.95+ |
apple | ORGANIZATION | 0.95+ |
The Wall Street Journal | TITLE | 0.94+ |
Cube | ORGANIZATION | 0.94+ |
last night | DATE | 0.93+ |
Syria | LOCATION | 0.93+ |
fifty million dollar | QUANTITY | 0.92+ |
twenty twenty | QUANTITY | 0.91+ |
trillions of Web pages | QUANTITY | 0.91+ |
English | OTHER | 0.91+ |
Syria | COMMERCIAL_ITEM | 0.9+ |
Wikipedia | ORGANIZATION | 0.89+ |
first few months | QUANTITY | 0.89+ |
day one | QUANTITY | 0.89+ |
Sapphire | ORGANIZATION | 0.88+ |
day one | QUANTITY | 0.87+ |
a year ago | DATE | 0.86+ |
One thing | QUANTITY | 0.86+ |
Corvette | COMMERCIAL_ITEM | 0.83+ |
Aaron Kalb, Alation | BigData NYC 2017
>> Announcer: Live from midtown Manhattan, it's the Cube. Covering Big Data New York City 2017. Brought to you by SiliconANGLE Media and its ecosystem sponsors. >> Welcome back everyone, we are here live in New York City, in Manhattan for BigData NYC, our event we've been doing for five years in conjunction with Strata Data which is formerly Strata Hadoop, which was formerly Strata Conference, formerly Hadoop World. We've been covering the big data space going on ten years now. This is the Cube. I'm here with Aaron Kalb, whose Head of Product and co-founder at Alation. Welcome to the cube. >> Aaron Kalb: Thank you so much for having me. >> Great to have you on, so co-founder head of product, love these conversations because you're also co-founder, so it's your company, you got a lot of equity interest in that, but also head of product you get to have the 20 mile stare, on what the future looks, while inventing it today, bringing it to market. So you guys have an interesting take on the collaboration of data. Talk about what the means, what's the motivation behind that positioning, what's the core thesis around Alation? >> Totally so the thing we've observed is a lot of people working in the data space, are concerned about the data itself. How can we make it cheaper to store, faster to process. And we're really concerned with the human side of it. Data's only valuable if it's used by people, how do we help people find the data, understand the data, trust in the data, and that involves a mix of algorithmic approaches and also human collaboration, both human to human and human to computer to get that all organized. >> John Furrier: It's interesting you have a symbolics background from Stanford, worked at Apple, involved in Siri, all this kind of futuristic stuff. You can't go a day without hearing about Alexia is going to have voice-activated, you've got Siri. AI is taking a really big part of this. Obviously all of the hype right now, but what it means is the software is going to play a key role as an interface. And this symbolic systems almost brings on this neural network kind of vibe, where objects, data, plays a critical role. >> Oh, absolutely, yeah, and in the early days when we were co-founding the company, we talked about what is Siri for the enterprise? Right, I was you know very excited to work on Siri, and it's really a kind of fun gimmick, and it's really useful when you're in the car, your hands are covered in cookie dough, but if you could answer questions like what was revenue last quarter in the UK and get the right answer fast, and have that dialogue, oh do you mean fiscal quarter or calendar quarter. Do you mean UK including Ireland, or whatever it is. That would really enable better decisions and a better outcome. >> I was worried that Siri might do something here. Hey Siri, oh there it is, okay be careful, I don't want it to answer and take over my job. >> (laughs) >> Automation will take away the job, maybe Siri will be doing interviews. Okay let's take a step back. You guys are doing well as a start up, you've got some great funding, great investors. How are you guys doing on the product? Give us a quick highlight on where you guys are, obviously this is BigData NYC a lot going on, it's Manhattan, you've got financial services, big industry here. You've got the Strata Data event which is the classic Hadoop industry that's morphed into data. Which really is overlapping with cloud, IoTs application developments all kind of coming together. How do you guys fit into that world? >> Yeah, absolutely, so the idea of the data lake is kind of interesting. Psychologically it's sort of a hoarder mentality, oh everything I've ever had I want to keep in the attic, because I might need it one day. Great opportunity to evolve these new streams of data, with IoT and what not, but just cause you can get to it physically doesn't mean it's easy to find the thing you want, the needle in all that big haystack and to distinguish from among all the different assets that are available, which is the one that is actually trustworthy for your need. So we find that all these trends make the need for a catalog to kind of organize that information and get what you want all the more valuable. >> This has come up a lot, I want to get into the integration piece and how you're dealing with your partnerships, but the data lake integration has been huge, and having the catalog has come up with, has been the buzz. Foundationally if you will saying catalog is important. Why is it important to do the catalog work up front, with a lot of the data strategies? >> It's a great question, so, we see data cataloging as step zero. Before you can prep the data in a tool like Trifacta, PACSAT, or Kylo. Before you can visualize it in a tool like Tableau, or MicroStrategy. Before you can do some sort of cool prediction of what's going to happen in the future, with a data science engine, before any of that. These are all garbage in garbage out processes. The step zero is find the relevant data. Understand it so you can get it in the right format. Trust that it's good and then you can do whatever comes next >> And governance has become a key thing here, we've heard of the regulations, GDPR outside of the United States, but also that's going to have an arms length reach over into the United States impact. So these little decisions, and there's going to be an Equifax someday out there. Another one's probably going to come around the corner. How does the policy injection change the catalog equation? A lot of people are building machine learning algorithms on top of catalogs, and they're worried they might have to rewrite everything. How do you balance the trade off between good catalog design and flexibility on the algorithm side? >> Totally yes it's a complicated thing with governance and consumption right. There's people who are concerned with keeping the data safe, and there are people concerned with turning that data into real value, and these can seem to be at odds. What we find is actually a catalog as a foundation for both, and they are not as opposed as they seem. What Alation fundamentally does is we make a map of where the data is, who's using what data, when, how. And that can actually be helpful if your goal is to say let's follow in the footsteps of the best analyst and make more insights generated or if you want to say, hey this data is being used a lot, let's make sure it's being used correctly. >> And by the right people. >> And by the right people exactly >> Equifax they were fishing that pond dry months, months before it actually happened. With good tools like this they might have seen this right? Am I getting it right? >> That's exactly right, how can you observe what's going on to make sure it's compliant and that the answers are correct and that it's happening quickly and driving results. >> So in a way you're taking the collective intelligence of the user behavior and using that into understanding what to do with the data modeling? >> That's exactly right. We want to make each person in your organization as knowledgeable as all of their peers combined. >> So the benefit then for the customer would be if you see something that's developing you can double down on it. And if the users are using a lot of data, then you can provision more technology, more software. >> Absolutely, absolutely. It's sort of like when I was going to Stanford, there was a place where the grass was all dead, because people were riding their bikes diagonally across it. And then somebody smart was like, we're going to put a real gravel path there. So the infrastructure should follow the usage, instead of being something you try to enforce on people. >> It's a classic design meme that goes around. Good design is here, the more effective design is the path. >> Exactly. >> So let's get into the integration. So one of the hot topics here this year obviously besides cloud and AI, with cloud really being more the driver, the tailwind for the growth, AI being more the futuristic head room, is integration. You guys have some partnerships that you announced with integration, what are some of the key ones, and why are they important? >> Absolutely, so, there have been attempts in the past to centralize all the data in one place have one warehouse or one lake have one BI tool. And those generally fail, for different reasons, different teams pick different stacks that work for them. What we think is important is the single source of reference One hub with spokes out to all those different points. If you think about it it's like Google, it's one index of the whole web even though the web is distributed all over the place. To make that happen it's very important that we have partnerships to get data in from various sources. So we have partnerships with database vendors, with Cloudera and Hortonworks, with different BI tools. What's new are a few things. One is with Cloudera Navigator, they have great technical metadata around security and lineage over HGFS, and that's a way to bolster our catalog to go even deeper into what's happening in the files before things get surfaced and higher for places where we have a deeper offering today. >> So it's almost a connector to them in a way, you kind of share data. >> That's exactly right, we've a lot of different connectors, this is one new one that we have. Another, go ahead. >> I was going to go ahead continue. >> I was just going to say another place that is exciting is data prep tools, so Trifacta and Paxata are both places where you can find and understand an alation and then begin to manipulate in those tools. We announced with Paxata yesterday, the ability to click to profile, so if you want to actually see what's in some raw compressed avro file, you can see that in one click. >> It's interesting, Paxata has really been almost lapping, Trifacta because they were the leader in my mind, but now you've got like a Nascar race going on between the two firms, because data wrangling is a huge issue. Data prep is where everyone is stuck right now, they just want to do the data science, it's interesting. >> They are both amazing companies and I'm happy to partner with both. And actually Trifacta and Alation have a lot of joint customers we're psyched to work with as well. I think what's interesting is that data prep, and this is beginning to happen with analyst definitions of that field. It isn't just preparing the data to be used, getting it cleaned and shaped, it's also preparing the humans to use the data giving them the confidence, the tools, the knowledge to know how to manipulate it. >> And it's great progress. So the question I wanted to ask is now the other big trend here is, I mean it's kind of a subtext in this show, it's not really front and center but we've been seeing it kind of emerge as a concept, we see in the cloud world, on premise vs cloud. On premise a lot of people bring in the dev ops model in, and saying I may move to the cloud for bursting and some native applications, but at the end of the day there is a lot of work going on on premise. A lot of companies are kind of cleaning house, retooling, replatforming, whatever you want to do resetting. They are kind of getting their house in order to do on prem cloud ops, meaning a business model of cloud operations on site. A lot of people doing that, that will impact the story, it's going to impact some of the server modeling, that's a hot trend. How do you guys deal with the on premise cloud dynamic? >> Totally, so we just want to do what's right for the customer, so we deploy both on prem and in the cloud and then from wherever the Alation server is it will point to usually a mix of sources, some that are in the cloud like vetshifter S3 often with Amazon today, and also sources that are on prem. I do think I'm seeing a trend more and more toward the cloud and we have people that are migrating from HGFS to S3 is one thing we hear a lot about it. Strata with sort of dupe interest. But I think what's happening is people are realizing as each Equifax in turn happens, that this old wild west model of oh you surround your bank with people on horseback and it's physically in one place. With data it isn't like that, most people are saying I'd rather have the A+ teams at Salesforce or Amazon or Google be responsible for my security, then the people I can get over in the midwest. >> And the Paxata guys have loved the term Data Democracy, because that is really democratization, making the data free but also having the governance thing. So tell me about the Data Lake governance, because I've never loved the term Data Lake, I think it's more of a data ocean, but now you see data lake, data lake, data lake. Are they just silos of data lakes happening now? Are people trying to connect them? That's key, so that's been a key trend here. How do you handle the governance across multiple data lakes? >> That's right so the key is to have that single source of reference, so that regardless of which lake or warehouse, or little siloed Sequel server somewhere, that you can search in a single portal and find that thing no matter where it is. >> John: Can you guys do that? >> We can do that, yeah, I think the metaphor for people who haven't seen it really is Google, if you think about it, you don't even know what physical server a webpage is hosted from. >> Data lakes should just be invisible >> Exactly. >> So your interfacing with multiple data lakes, that's a value proposition for you. >> That's right so it could be on prem or in the cloud, multi-cloud. >> Can you share an example of a customer that uses that and kind of how it's laid out? >> Absolutely, so one great example of an interesting data environment is eBay. They have the biggest teradata warehouse in the world. They also have I believe two huge data lakes, they have hive on top of that, and Presto is used to sort of virtualize it across a mixture of teradata, and hive and then direct Presto query It gets very complicated, and they have, they are a very data driven organization, so they have people who are product owners who are in jobs where data isn't in their job title and they know how to look at excel and look at numbers and make choices, but they aren't real data people. Alation provides that accessibility so that they can understand it. >> We used to call the Hadoop world the car show for the data world, where for a long time it was about the engine what was doing what, and then it became, what's the car, and now how's it drive. Seeing that same evolution now where all that stuff has to get done under the hood. >> Aaron: Exactly. >> But there are still people who care about that, right. They are the mechanics, they are the plumbers, whatever you want to call them, but then the data science are the guys really driving things and now end users potentially, and even applications bots or what nots. It seems to evolve, that's where we're kind of seeing the show change a little bit, and that's kind of where you see some of the AI things. I want to get your thoughts on how you or your guys are using AI, how you see AI, if it's AI at all if it's just machine learning as a baby step into AI, we all know what AI could be, but it's really just machine learning now. How do you guys use quote AI and how has it evolved? >> It's a really insightful question and a great metaphor that I love. If you think about it, it used to be how do you build the car, and now I can drive the car even though I couldn't build it or even fix it, and soon I don't even have to drive the car, the car will just drive me, all I have to know is where I want to go. That's sortof the progression that we see as well. There's a lot of talk about deep learning, all these different approaches, and it's super interesting and exciting. But I think even more interesting than the algorithms are the applications. And so for us it's like today how do we get that turn by turn directions where we say turn left at the light if you want to get there And eventually you know maybe the computer can do it for you The thing that is also interesting is to make these algorithms work no matter how good your algorithm is it's all based on the quality of your training data. >> John: Which is a historical data. Historical data in essence the more historical data you have you need that to train the data. >> Exactly right, and we call this behavior IO how do we look at all the prior human behavior to drive better behavior in the future. And I think the key for us is we don't want to have a bunch of unpaid >> John: You can actually get that URL behavioral IO. >> We should do it before it's too late (Both laugh) >> We're live right now, go register that Patrick. >> Yeah so the goal is we don't want to have a bunch of unpaid interns trying to manually attack things, that's error prone and that's slow. I look at things like Luis von Ahn over at CMU, he does a thing where as you're writing in a CAPTCHA to get an email account you're also helping Google recognize a hard to read address or a piece of text from books. >> John: If you shoot the arrow forward, you just take this kind of forward, you almost think augmented reality is a pretext to what we might see for what you're talking about and ultimately VR are you seeing some of the use cases for virtual reality be very enterprise oriented or even end consumer. I mean Tom Brady the best quarterback of all time, he uses virtual reality to play the offense virtually before every game, he's a power user, in pharma you see them using virtual reality to do data mining without being in the lab, so lab tests. So you're seeing augmentation coming in to this turn by turn direction analogy. >> It's exactly, I think it's the other half of it. So we use AI, we use techniques to get great data from people and then we do extra work watching their behavior to learn what's right. And to figure out if there are recommendations, but then you serve those recommendations, either it's Google glasses it appears right there in your field of view. We just have to figure out how do we make sure, that in a moment of you're making a dashboard, or you're making a choice that you have that information right on hand. >> So since you're a technical geek, and a lot of folks would love to talk about this, so I'll ask you a tough question cause this is something everyone is trying to chase for the holy grail. How do you get the right piece of data at the right place at the right time, given that you have all these legacy silos, latencies and network issues as well, so you've got a data warehouse, you've got stuff in cold storage, and I've got an app and I'm doing something, there could be any points of data in the world that could be in milliseconds potentially on my phone or in my device my internet of thing wearable. How do you make that happen? Because that's the struggle, at the same time keep all the compliance and all the overhead involved, is it more compute, is it an architectural challenge how do you view that because this is the big challenge of our time. >> Yeah again I actually think it's the human challenge more than the technology challenge. It is true that there is data all over the place kind of gathering dust, but again if you think about Google, billions of web pages, I only care about the one I'm about to use. So for us it's really about being in that moment of writing a query, building a chart, how do we say in that moment, hey you're using an out of date definition of profit. Or hey the database you chose to use, the one thing you chose out of the millions that is actually is broken and stale. And we have interventions to do that with our partners and through our own first party apps that actually change how decisions get made at companies. >> So to make that happen, if I imagine it, you'd have to need access to the data, and then write software that is contextually aware to then run, compute, in context to the user interaction. >> It's exactly right, back to the turn by turn directions concept you have to know both where you're trying to go and where you are. And so for us that can be the from where I'm writing a Sequel statement after join we can suggest the table most commonly joined with that, but also overlay onto that the fact that the most commonly joined table was deprecated by a data steward data curator. So that's the moment that we can change the behavior from bad to good. >> So a chief data officer out there, we've got to wrap up, but I wanted to ask one final question, There's a chief data officer out there they might be empowered or they might be just a CFO assistant that's managing compliance, either way, someone's going to be empowered in an organization to drive data science and data value forward because there is so much proof that data science works. From military to play you're seeing examples where being data driven actually has benefits. So everyone is trying to get there. How do you explain the vision of Alation to that prospect? Because they have so much to select from, there's so much noise, there's like, we call it the tool shed out there, there's like a zillion tools out there there's like a zillion platforms, some tools are trying to turn into something else, a hammer is trying to be a lawnmower. So they've got to be careful on who the select, so what's the vision of Alation to that chief data officer, or that person in charge of analytics to scale operational analytics. >> Absolutely so we say to the CDO we have a shared vision for this place where your company is making decisions based on data, instead of based on gut, or expensive consultants months too late. And the way we get there, the reason Alation adds value is, we're sort of the last tool you have to buy, because with this lake mentality, you've got your tool shed with all the tools, you've got your library with all the books, but they're just in a pile on the floor, if you had a tool that had everything organized, so you just said hey robot, I need an hammer and this size nail and this text book on this set of information and it could just come to you, and it would be correct and it would be quick, then you could actually get value out of all the expense you've already put in this infrastructure, that's especially true on the lake. >> And also tools describe the way the works done so in that model tools can be in the tool shed no one needs to know it's in there. >> Aaron: Exactly. >> You guys can help scale that. Well congratulations and just how far along are you guys in terms of number of employees, how many customers do you have? If you can share that, I don't know if that's confidential or what not >> Absolutely, so we're small but growing very fast planning to double in the next year, and in terms of customers, we've got 85 customers including some really big names. I mentioned eBay, Pfizer, Safeway Albertsons, Tesco, Meijer. >> And what are they saying to you guys, why are they buying, why are they happy? >> They share that same vision of a more data driven enterprise, where humans are empowered to find out, understand, and trust data to make more informed choices for the business, and that's why they come and come back. >> And that's the product roadmap, ethos, for you guys that's the guiding principle? >> Yeah the ultimate goal is to empower humans with information. >> Alright Aaron thanks for coming on the Cube. Aaron Kalb, co-founder head of product for Alation here in New York City for BigData NYC and also Strata Data I'm John Furrier thanks for watching. We'll be right back with more after this short break.
SUMMARY :
Brought to you by This is the Cube. Great to have you on, so co-founder head of product, Totally so the thing we've observed is a lot Obviously all of the hype right now, and get the right answer fast, and have that dialogue, I don't want it to answer and take over my job. How are you guys doing on the product? doesn't mean it's easy to find the thing you want, and having the catalog has come up with, has been the buzz. Understand it so you can get it in the right format. and flexibility on the algorithm side? and make more insights generated or if you want to say, Am I getting it right? That's exactly right, how can you observe what's going on We want to make each person in your organization So the benefit then for the customer would be So the infrastructure should follow the usage, Good design is here, the more effective design is the path. You guys have some partnerships that you announced it's one index of the whole web So it's almost a connector to them in a way, this is one new one that we have. the ability to click to profile, going on between the two firms, It isn't just preparing the data to be used, but at the end of the day there is a lot of work for the customer, so we deploy both on prem and in the cloud because that is really democratization, making the data free That's right so the key is to have that single source really is Google, if you think about it, So your interfacing with multiple data lakes, on prem or in the cloud, multi-cloud. They have the biggest teradata warehouse in the world. the car show for the data world, where for a long time and that's kind of where you see some of the AI things. and now I can drive the car even though I couldn't build it Historical data in essence the more historical data you have to drive better behavior in the future. Yeah so the goal is and ultimately VR are you seeing some of the use cases but then you serve those recommendations, and all the overhead involved, is it more compute, the one thing you chose out of the millions So to make that happen, if I imagine it, back to the turn by turn directions concept you have to know How do you explain the vision of Alation to that prospect? And the way we get there, no one needs to know it's in there. If you can share that, I don't know if that's confidential planning to double in the next year, for the business, and that's why they come and come back. Yeah the ultimate goal is Alright Aaron thanks for coming on the Cube.
SENTIMENT ANALYSIS :
ENTITIES
Entity | Category | Confidence |
---|---|---|
Luis von Ahn | PERSON | 0.99+ |
eBay | ORGANIZATION | 0.99+ |
Aaron Kalb | PERSON | 0.99+ |
Pfizer | ORGANIZATION | 0.99+ |
John | PERSON | 0.99+ |
Aaron | PERSON | 0.99+ |
Tesco | ORGANIZATION | 0.99+ |
John Furrier | PERSON | 0.99+ |
Safeway Albertsons | ORGANIZATION | 0.99+ |
Siri | TITLE | 0.99+ |
ORGANIZATION | 0.99+ | |
Amazon | ORGANIZATION | 0.99+ |
New York City | LOCATION | 0.99+ |
UK | LOCATION | 0.99+ |
20 mile | QUANTITY | 0.99+ |
Hortonworks | ORGANIZATION | 0.99+ |
BigData | ORGANIZATION | 0.99+ |
five years | QUANTITY | 0.99+ |
Equifax | ORGANIZATION | 0.99+ |
two firms | QUANTITY | 0.99+ |
Apple | ORGANIZATION | 0.99+ |
Meijer | ORGANIZATION | 0.99+ |
ten years | QUANTITY | 0.99+ |
Cloudera | ORGANIZATION | 0.99+ |
Trifacta | ORGANIZATION | 0.99+ |
85 customers | QUANTITY | 0.99+ |
Alation | ORGANIZATION | 0.99+ |
Patrick | PERSON | 0.99+ |
both | QUANTITY | 0.99+ |
Strata Data | ORGANIZATION | 0.99+ |
millions | QUANTITY | 0.99+ |
United States | LOCATION | 0.99+ |
Paxata | ORGANIZATION | 0.99+ |
SiliconANGLE Media | ORGANIZATION | 0.99+ |
excel | TITLE | 0.99+ |
Manhattan | LOCATION | 0.99+ |
last quarter | DATE | 0.99+ |
Ireland | LOCATION | 0.99+ |
GDPR | TITLE | 0.99+ |
Tom Brady | PERSON | 0.99+ |
each person | QUANTITY | 0.99+ |
Salesforce | ORGANIZATION | 0.98+ |
next year | DATE | 0.98+ |
NYC | LOCATION | 0.98+ |
one | QUANTITY | 0.98+ |
this year | DATE | 0.98+ |
yesterday | DATE | 0.98+ |
today | DATE | 0.97+ |
one lake | QUANTITY | 0.97+ |
Nascar | ORGANIZATION | 0.97+ |
one warehouse | QUANTITY | 0.97+ |
Strata Data | EVENT | 0.96+ |
Tableau | TITLE | 0.96+ |
One | QUANTITY | 0.96+ |
Both laugh | QUANTITY | 0.96+ |
billions of web pages | QUANTITY | 0.96+ |
single portal | QUANTITY | 0.95+ |