Harry Glaser, Modlbit, Damon Bryan, Hyperfinity & Stefan Williams, Snowflake | Snowflake Summit 2022
>>Thanks. Hey, everyone, welcome back to the cubes. Continuing coverage of snowflakes. Summit 22 live from Caesars Forum in Las Vegas. Lisa Martin here. I have three guests here with me. We're gonna be talking about Snowflake Ventures and the snowflakes start up Challenge. That's in its second year. I've got Harry Glaser with me. Co founder and CEO of Model Bit Start Up Challenge finalist Damon Bryan joins us as well. The CTO and co founder of Hyper Affinity. Also a startup Challenge Finalists. And Stephane Williams to my left here, VP of Corporate development and snowflake Ventures. Guys, great to have you all on this little mini panel this morning. >>Thank you. >>Thank you. >>Let's go ahead, Harry, and we'll start with you. Talk to the audience about model. But what do you guys do? And then we'll kind of unpack the snowflake. The Snowflakes challenge >>Model bit is the easiest way for data scientists to deploy machine learning models directly into Snowflake. We make use of the latest snowflake functionality called Snow Park for python that allows those models to run adjacent to the data so that machine learning models can be much more efficient and much more powerful than they were before. >>Awesome. Damon. Give us an overview of hyper affinity. >>Yes, so hyper affinity were Decision Intelligence platform. So we helped. Specifically retailers and brands make intelligent decisions through the use of their own customer, data their product data and put data science in a I into the heart of the decision makers across their business. >>Nice Step seven. Tell us about the startup challenge. We talked a little bit about it yesterday with CMO Denise Pearson, but I know it's in its second year. Give us the idea of the impetus for it, what it's all about and what these companies embody. >>Yeah, so we This is the second year that we've done it. Um, we it was really out of, um Well, it starts with snowflake Ventures when we started to invest in companies, and we quickly realised that there's there's a massive opportunity for companies to be building on top of the Lego blocks, uh, of snowflake. And so, um, open up the competition. Last year it was the inaugural competition overlay analytics one, Um, and since then, you've seen a number of different functionalities and features as part of snowflakes snow part. Being one of them native applications is a really exciting one going forward. Um, the companies can really use to accelerate their ability to kind of deliver best in class applications using best in class technology to deliver real customer outcomes and value. Um, so we've we've seen tremendous traction across the globe, 250 applicants across 50. I think 70 countries was mentioned today, so truly global in nature. And it's really exciting to see how some of the start ups are taking snowflake to to to new and interesting use cases and new personas and new industries. >>So you had 200 over 250 software companies applied for this. How did you did you narrow it down to three? >>We did. Yeah, >>you do that. >>So, behind the scenes, we had a sub judging panel, the ones you didn't see up on stage, which I was luckily part of. We had kind of very distinct evaluation criteria that we were evaluating every company across. Um and we kind of took in tranches, right? We we took the first big garden, and we kind of try to get that down to a top 50 and top 50. Then we really went into the details and we kind of across, um, myself in ventures with some of my venture partners. Um, some of the market teams, some of the product and engineering team, all kind of came together and evaluated all of these different companies to get to the top 10, which was our semifinalists and then the semi finalists, or had a chance to present in front of the group. So we get. We got to meet over Zoom along the way where they did a pitch, a five minute pitch followed by a Q and A in a similar former, I guess, to what we just went through the startup challenge live, um, to get to the top three. And then here we are today, just coming out of the competition with with With folks here on the table. >>Wow, Harry talked to us about How did you just still down what model bit is doing into five minutes over Zoom and then five minutes this morning in person? >>I think it was really fun to have that pressure test where, you know, we've only been doing this for a short time. In fact model. It's only been a company for four or five months now, and to have this process where we pitch and pitch again and pitch again and pitch again really helped us nail the one sentence value proposition, which we hadn't done previously. So in that way, very grateful to step on in the team for giving us that opportunity. >>That helps tremendously. I can imagine being a 4 to 5 months young start up and really trying to figure out I've worked with those young start ups before. Messaging is challenging the narrative. Who are we? What do we do? How are we changing or chasing the market? What are our customers saying we are? That's challenging. So this was a good opportunity for you, Damon. Would you say the same as well for hyper affinity? >>Yeah, definitely conquer. It's really helped us to shape our our value proposition early and how we speak about that. It's quite complicated stuff, data science when you're trying to get across what you do, especially in retail, that we work in. So part of what our platform does is to help them make sense of data science and Ai and implement that into commercial decisions. So you have to be really kind of snappy with how you position things. And it's really helped us to do that. We're a little bit further down the line than than these guys we've been going for three years. So we've had the benefit of working with a lot of retailers to this point to actually identify what their problems are and shape our product and our proposition towards. >>Are you primarily working with the retail industry? >>Yes, Retail and CPG? Our primary use case. We have seen any kind of consumer related industries. >>Got it. Massive changes right in retail and CPG the last couple of years, the rise of consumer expectations. It's not going to go back down, right? We're impatient. We want brands to know who we are. I want you to deliver relevant content to me that if I if I bought a tent, go back on your website, don't show me more tense. Show me things that go with that. We have this expectation. You >>just explain the whole business. But >>it's so challenging because the brothers brands have to respond to that. How do you what is the value for retailers working with hyper affinity and snowflake together. What's that powerhouse? >>Yeah, exactly. So you're exactly right. The retail landscape is changing massively. There's inflation everywhere. The pandemic really impacted what consumers really value out of shopping with retailers. And those decisions are even harder for retailers to make. So that's kind of what our platform does. It helps them to make those decisions quickly, get the power of data science or democratise it into the hands of those decision makers. Um, so our platform helps to do that. And Snowflake really underpins that. You know, the scalability of snowflake means that we can scale the data and the capability that platform in tangent with that and snowflake have been innovating a lot of things like Snow Park and then the new announcements, announcements, uni store and a native APP framework really helping us to make developments to our product as quick as snowflakes are doing it. So it's really beneficial. >>You get kind of that tailwind from snowflakes acceleration. It sounds like >>exactly that. Yeah. So as soon as we hear about new things were like, Can we use it? You know, and Snow Park in particular was music to our ears, and we actually part of private preview for that. So we've been using that while and again some of the new developments will be. I'm on the phone to my guys saying, Can we use this? Get it, get it implemented pretty quickly. So yeah, >>fantastic. Sounds like a great aligned partnership there, Harry. Talk to us a little bit about model bit and how it's enabling customers. Maybe you've got a favourite customer example at model bit plus snowflake, the power that delivers to the end user customer? >>Absolutely. I mean, as I said, it allows you to deploy the M L model directly into snowflake. But sometimes you need to use the exact same machine learning model in multiple endpoints simultaneously. For example, one of our customers uses model bit to train and deploy a lead scoring model. So you know when somebody comes into your website and they fill out the form like they want to talk to a sales person, is this gonna be a really good customer? Do we think or maybe not so great? Maybe they won't pay quite as much, and that lead scoring model actually runs on the website using model bit so that you can deploy display a custom experience to that customer we know right away. If this is an A, B, C or D lead, and therefore do we show them a salesperson contact form? Do we just put them in the marketing funnel? Based on that lead score simultaneously, the business needs to know in the back office the score of the lead so that they can do things like routed to the appropriate salesperson or update their sales forecasts for the end of the quarter. That same model also runs in the in the snowflake warehouse so that those back office systems can be powered directly off of snowflake. The fact that they're able to train and deploy one model into two production environment simultaneously and manage all that is something they can only do with bottled it. >>Lead scoring has been traditionally challenging for businesses in every industry, but it's so incredibly important, especially as consumers get pickier and pickier with. I don't want I don't want to be measured. I want to opt out. What sounds like what model but is enabling is especially alignment between sales and marketing within companies, which is That's also a big challenge at many companies face for >>us. It starts with the data scientist, right? The fact that sales and marketing may not be aligned might be an issue with the source of truth. And do we have a source of truth at this company? And so the idea that we can empower these data scientists who are creating this value in the company by giving them best in class tools and resources That's our dream. That's our mission. >>Talk to me a little bit, Harry. You said you're only 4 to 5 months old. What were the gaps in the market that you and your co founders saw and said, Guys, we've got to solve this. And Snowflake is the right partner to help us do it. >>Absolutely. We This is actually our second start up, and we started previously a data Analytics company that was somewhat successful, and it got caught up in this big wave of migration of cloud tools. So all of data tools moved and are moving from on premise tools to cloud based tools. This is really a migration. That snowflake catalyst Snowflake, of course, is the ultimate in cloud based data platforms, moving customers from on premise data warehouses to modern cloud based data clouds that dragged and pulled the rest of the industry along with it. Data Science is one of the last pieces of the data industry that really hasn't moved to the cloud yet. We were almost surprised when we got done with our last start up. We were thinking about what to do next. The data scientists were still using Jupiter notebooks locally on their laptops, and we thought, This is a big market opportunity and we're We're almost surprised it hasn't been captured yet, and we're going to get in there. >>The other thing. I think it's really interesting on your business that we haven't talked about is just the the flow of data, right? So that the data scientist is usually taking data out of a of a of a day like something like Smoke like a data platform and the security kind of breaks down because then it's one. It's two, it's three, it's five, it's 20. Its, you know, big companies just gets really big. And so I think the really interesting thing with what you guys are doing is enabling the data to stay where it's at, not copping out keeping that security, that that highly governed environment that big companies want but allowing the data science community to really unlock that value from the data, which is really, really >>cool. Wonderful for small startups like Model Bit. Because you talk to a big company, you want them to become a customer. You want them to use your data science technology. They want to see your fed ramp certification. They want to talk to your C. So we're two guys in Silicon Valley with a dream. But if we can tell them the data is staying in snowflake and you have that conversation with Snowflake all the time and you trust them were just built on top. That is an easy and very smooth way to have that conversation with the customer. >>Would you both say that there's credibility like you got street cred, especially being so so early in this stage? Harry, with the partnership with With Snowflake Damon, we'll start with you. >>Yeah, absolutely. We've been using Snowflake from day one. We leave from when we started our company, and it was a little bit of an unknown, I guess maybe 23 years ago, especially in retail. A lot of retailers using all the legacy kind of enterprise software, are really starting to adopt the cloud now with what they're doing and obviously snowflake really innovating in that area. So what we're finding is we use Snowflake to host our platform and our infrastructure. We're finding a lot of retailers doing that as well, which makes it great for when they wanted to use products like ours because of the whole data share thing. It just becomes really easy. And it really simplifies it'll and data transformation and data sharing. >>Stephane, talk about the startup challenge, the innovation that you guys have seen, and only the second year I can. I can just hear it from the two of you. And I know that the winner is back in India, but tremendous amount of of potential, like to me the last 2.5 days, the flywheel that is snowflake is getting faster and faster and more and more powerful. What are some of the things that excite you about working on the start up challenge and some of the vision going forward that it's driving. >>I think the incredible thing about Snowflake is that we really focus as a company on the data infrastructure and and we're hyper focused on enabling and incubating and encouraging partners to kind of stand on top of a best of breed platform, um, unlocked value across the different, either personas within I T organisations or industries like hypothermia is doing. And so it's it's it's really incredible to see kind of domain knowledge and subject matter expertise, able to kind of plug into best of breed underlying data infrastructure and really divide, drive, drive real meaningful outcomes for for for our customers in the community. Um, it's just been incredible to see. I mean, we just saw three today. Um, there was 250 incredible applications that past the initial. Like, do they check all the boxes and then actually, wow, they just take you to these completely different areas. You never thought that the technology would go and solve. And yet here we are talking about, you know, really interesting use cases that have partners are taking us to two >>150. Did that surprise you? And what was it last year. >>I think it was actually close to close to 2 to 40 to 50 as well, and I think it was above to 50 this year. I think that's the number that is in my head from last year, but I think it's actually above that. But the momentum is, Yeah, it's there and and again, we're gonna be back next year with the full competition, too. So >>awesome. Harry, what is what are some of the things that are next for model bed as it progresses through its early stages? >>You know, one thing I've learned and I think probably everyone at this table has internalised this lesson. Product market fit really is everything for a start up. And so for us, it's We're fortunate to have a set of early design partners who will become our customers, who we work with every day to build features, get their feedback, make sure they love the product, and the most exciting thing that happened to me here this week was one of our early design partner. Customers wanted us to completely rethink how we integrate with gets so that they can use their CI CD workflows their continuous integration that they have in their own get platform, which is advanced. They've built it over many years, and so can they back, all of model, but with their get. And it was it was one of those conversations. I know this is getting a little bit in the weeds, but it was one of those conversations that, as a founder, makes your head explode. If we can have a critical mass of those conversations and get to that product market fit, then the flywheel starts. Then the investment money comes. Then you're hiring a big team and you're off to the races. >>Awesome. Sounds like there's a lot of potential and momentum there. Damon. Last question for you is what's next for hyper affinity. Obviously you've got we talked about the street cred. >>Yeah, what's >>next for the business? >>Well, so yeah, we we've got a lot of exciting times coming up, so we're about to really fully launch our products. So we've been trading for three years with consultancy in retail analytics and data science and actually using our product before it was fully ready to launch. So we have the kind of main launch of our product and we actually starting to onboard some clients now as we speak. Um, I think the climate with regards to trying to find data, science, resources, you know, a problem across the globe. So it really helps companies like ours that allow, you know, allow retailers or whoever is to democratise the use of data science. And perhaps, you know, really help them in this current climate where they're struggling to get world class resource to enable them to do that >>right so critical stuff and take us home with your overall summary of snowflake summit. Fourth annual, nearly 10,000 people here. Huge increase from the last time we were all in person. What's your bumper sticker takeaway from Summit 22 the Startup Challenge? >>Uh, that's a big closing statement for me. It's been just the energy. It's been incredible energy, incredible excitement. I feel the the products that have been unveiled just unlock a tonne, more value and a tonne, more interesting things for companies like the model bit I profanity and all the other startups here. And to go and think about so there's there's just this incredible energy, incredible excitement, both internally, our product and engineering teams, the partners that we have spoke. I've spoken here with the event, the portfolio companies that we've invested in. And so there's there's there's just this. Yeah, incredible momentum and excitement around what we're able to do with data in today's world, powered by underlying platform, like snowflakes. >>Right? And we've heard that energy, I think, through l 30 plus guests we've had on the show since Tuesday and certainly from the two of you as well. Congratulations on being finalist. We wish you the best of luck. You have to come back next year and talk about some of the great things. More great >>things hopefully will be exhibited next year. >>Yeah, that's a good thing to look for. Guys really appreciate your time and your insights. Congratulations on another successful start up challenge. >>Thank you so much >>for Harry, Damon and Stefan. I'm Lisa Martin. You're watching the cubes. Continuing coverage of snowflakes. Summit 22 live from Vegas. Stick around. We'll be right back with a volonte and our final guest of the day. Mhm, mhm
SUMMARY :
Guys, great to have you all on this little mini panel this morning. But what do you guys do? Model bit is the easiest way for data scientists to deploy machine learning models directly into Snowflake. Give us an overview of hyper affinity. So we helped. Give us the idea of the impetus for it, what it's all about and what these companies And it's really exciting to see how some of the start ups are taking snowflake to So you had 200 over 250 software companies applied We did. So, behind the scenes, we had a sub judging panel, I think it was really fun to have that pressure test where, you know, I can imagine being a 4 to 5 months young start up of snappy with how you position things. Yes, Retail and CPG? I want you to deliver relevant content to me that just explain the whole business. it's so challenging because the brothers brands have to respond to that. You know, the scalability of snowflake means that we can scale the You get kind of that tailwind from snowflakes acceleration. I'm on the phone to my guys saying, Can we use this? bit plus snowflake, the power that delivers to the end user customer? the business needs to know in the back office the score of the lead so that they can do things like routed to the appropriate I want to opt out. And so the idea that And Snowflake is the right partner to help us do it. dragged and pulled the rest of the industry along with it. So that the data scientist is usually taking data out of a of a of a day like something But if we can tell them the data is staying in snowflake and you have that conversation with Snowflake all the time Would you both say that there's credibility like you got street cred, especially being so so are really starting to adopt the cloud now with what they're doing and obviously snowflake really innovating in that area. And I know that the winner is back in India, but tremendous amount of of and really divide, drive, drive real meaningful outcomes for for for our customers in the community. And what was it last year. But the momentum Harry, what is what are some of the things that are next for model bed as and the most exciting thing that happened to me here this week was one of our early design partner. Last question for you is what's next for hyper affinity. So it really helps companies like ours that allow, you know, allow retailers or whoever is to democratise Huge increase from the last time we were all in person. the partners that we have spoke. show since Tuesday and certainly from the two of you as well. Yeah, that's a good thing to look for. We'll be right back with a volonte and our final guest of the day.
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Satyen Sangani, CEO, Alation
(tranquil music) >> Alation was an early pioneer in solving some of the most challenging problems in so-called big data. Founded early last decade, the company's metadata management and data catalog have always been considered leading examples of modern tooling by customers and analysts alike. Governance is one area that customers identified as a requirement to extend their use of Alation's platform. And it became an opportunity for the company to expand its scope and total available market. Alation is doing just that today, announcing new data governance capabilities, and partner integrations that align with the market's direction of supporting federated governance. In other words, a centralized view of policy to accommodate distributed data in this world of an ever expanding data cloud, which we talk about all the time in theCUBE. And with me to discuss these trends and this announcement is Satyen Sangani, who's the CEO and co-founder of Alation. Satyen, welcome back to the CUBE. Good to see you. >> Thank you Dave, It's great to be back. >> Okay, so you heard my open, please tell us about the patterns that you were seeing in the market and what you were hearing from customers that led you in this direction and then we'll get into the announcement. >> Yeah, so I think there are really two patterns, right? I mean, when we started building this notion of a data catalog, as you said a decade ago, there was this idea that metadata management broadly classified was something that belonged in IT, lived in IT and was essentially managed by IT, right? I always liken it to kind of an inventory management system within a warehouse relative to Amazon.com, which has obviously broadly published for the business. And so, with the idea of bringing all of this data directly to the business and allowing people arbitrarily, depending on their role to use the data. You know, you saw one trend, which was just this massive, shift in how much data was available at any given time. I think the other thing that happened was that at the same time, data governance went through a real transitionary phase where there was a lot of demand often spurred by regulations. Whether that's GDPR, CCPA or more recently than that, certainly the Basel accord. And if you think about all of those regulations, people had to get something in a place. Now what we ended up finding out was when we were selling in to add accounts, people would say, well guess what? I've got this data governance thing going on, but nobody's really using it. I built this business glossary, it's been three years. Nothing's been really very effective. And we were never able to get the value and we need to get value because there are so many more people now accessing and using and leveraging the data. And so with that, we started really considering whether or not we needed to build a formal capability in the market. And that's what we're today that we're doing. >> I liked the way you framed that. And if you think back, we were there as you were in the early big day-to-days. And all the talk was about volume, variety and velocity. And those are sort of IT concepts. How do you deal with all these technical challenges? And then the fourth V which you just mentioned was value. And that's where the line of business really comes in. So let's get into the news. What are you announcing today? >> So we're announcing a new application on top of Alation's Catalog platform, which is an Alations data governance application. That application will be released with our 2021.3 release on September 14th. And what's exciting about that is that we are going to now allow customers to discreetly and elegantly and quickly consume a new application to get data governance regimes off the ground and initiatives off the ground, much more quickly than they've ever been able to do. This app is really all about time to value. It's about allowing customers to be able to consume what they need when they need it in order to be able to get successful governance initiatives going. And so that's what we're trying to deliver. >> So maybe you could talk a little bit about how you think about data governance and specifically your data governance approach. And maybe what's different about Alation's solution. >> Yeah, I think there's a couple of things that are different. I think the first thing that's most critically different is that we move beyond this notion of sort of policy declaration into the world of policy application and policy enforcement, right? I think a lot of data governance regimes basically stand up and say, look you know, it's all about people and then process and then technology. And what we need to do is declare who all the governors are and who all the stewards are. And then we're going to get all our policies in the same place and then the business will follow them. And the reality is people don't change their workflows to go off and arbitrarily follow some data governance policy that they don't know exists, or they don't want to actually have to follow up. And so really what you've got to do is make sure that the policy and the knowledge exists as in where the data exists. And that's why it's so critical to build governance into the catalog. And so what we're doing here is we're basically saying, look, you could declare policies with a new policy center inside of Alation. Those policies will get automatically created in some cases by integrating with technologies like Snowflake. But beyond that, what we're also doing is we're saying, look, we're going to move into the world of taking those policies and applying them to the data on an automated basis using ML and AI and basically saying that now it doesn't have to be some massive boil the ocean three-year regime to get very little value in a very limited business loss rate. Rather all of your data sets, all of your terms can be put into a single place on an automated basis. That's constantly being used by people and constantly being updated by the new systems that are coming online. And that's what's exciting about it. >> So I just want to follow up on that. So if I'm hearing you correctly, it's the humans are in the loop, but it's not the only source of policy, right? The machines are assisting. And in some cases managing end-to-end that policy. Is that right? >> You've got it. I think the the biggest challenge with data governance today is that it basically relies a little bit like the Golden Gate Bridge. You know, you start painting it and by the time you're done painting it, you've got to go back and start painting it again, because it relies upon people. And there's just too much change in the weather and there's too much traffic and there's just too much going on in the world of data. And frankly in today's world, that's not even an apt analogy because often what happens is midway through. You've got to restart painting from the very beginning because everything's changed. And so there's so much change in the IT landscape that the traditional way of doing data governance just doesn't work. >> Got it, so in winning through the press release, three things kind of stood out. I wonder if we could unpack them, there were multi-cloud, governance and security. And then of course the AI or what I like to call machine intelligence in there. And what you call the people centric approach. So I wonder if we could dig in into these and help us understand how they fit together. So thinking about multi-cloud governance, how do you think about that? Why is that so challenging and how are you solving that problem? >> Yeah, well every cloud technology provider has its own set of capabilities and platforms. And often those slight differences are causing differences in how those technologies are adopted. And so some teams optimize for certain capabilities and certain infrastructure over others. And that's true even within businesses. And of course, IT teams are also trying to diversify their IT portfolios. And that's another reason to go multi-cloud. So being able to have a governance capability that spans, certainly all of the good grade called megascalers, but also these new, huge emerging platforms like Snowflake of course and others. Those are really critical capabilities that are important for our customers to be able to get a handle on top of. And so this idea of being cloud agnostic and being able to sort of have a single control plane for all of your policies, for all of your data sets, that's a critical must have in a governance regime today. So that's point number one. >> Okay and then the machine learning piece, the AI, you're obviously injecting that into the application, but maybe tell us what that means both maybe technically and from a business stand point. >> Yeah, so this idea of a data policy, right? Can be sometimes by operational teams, but basically it's a set of rules around how one should and should not be able to use data, right? And so those are great rules. It could be that people who are in one country shouldn't be able to access the data of another country, very simple role, right? But how do you actually enforce that? Like you can declare it, but if there is a end point on a server that allows you to access the data, the policy is effectively moot. And so what you got to go do is make sure that at the point of leverage or at the point of usage, people know what the policy happens to be. And that's where AI come in. You can say let's document all the data sets that happened to be domiciled in Korea or in China. And therefore make sure that those are arbitrarily segregated so that when people want to use that as datasets, they know that the policy exists and they know that it's been applied to that particular dataset. That's somewhere where AI and ML can be super valuable rather than a human being trying to document thousands of databases or tens of thousands of data sets, which is really kind of a (mumbles) exercise. And so, that application of automation is really critical and being able to do governance at the scale that most enterprises have to do it. >> You got it 'cause humans just can't do that at scale. Now what do you mean by people-centric approach? Can you explain that? >> Yeah, often what I find with governance is that there's this notion of kind of there's this heavy notion of how one should deal with the data, right? So often what I find is that there are certain folks who think, oh well, we're going to declare the rules and people are just going to follow them. And if you've ever been well, a parent or in some cases seeing government operate, you realize that that actually isn't how things work. And involve them in how things are run. And if you do that, right? You're going to get a lot more success in how you apply rules and procedures because people will understand that and people know why they exist. And so what we do within this governance regime is we basically say, look, we want to make sure that the people who are using the data, leveraging the data are also the people who are stewarding the data. There shouldn't be a separate role of data steward that is arbitrarily defined off, just because you've been assigned to a job that you never wanted to do. Rather it should be a part of your day job. And it should be something that you do because you really want to do it. And it's a part of your workflow. And so this idea of being people centric is all about how do you engage the analyst, the product managers, the sales operation managers, to document those sales data sets and those product data sets. So that in fact, those people can be the ones who are answering the questions, not somebody off to the side who knows nothing about the data. >> Yeah, I think you've talked in previous CUBE interviews about context and that really fits to this discussion. So these capabilities are part of an application, which is what? it's a module onto your existing platform. And it's sort of it's a single platform, right? I mean, we're not bespoke products. Maybe you can talk about that. >> Yeah, that's exactly right. I mean, it's funny because we've evolved and built a relation with a lot of capability. I mean, interestingly we're launching this data governance application but I would say 60% of our almost 300 customers would say they do a form or a significant part of data governance, leveraging relations. So it's not like we're new to this market. We've been selling in this market for years. What's different though, is that we've talked a lot about the catalog as a platform over the last year. And we think that that's a really important concept because what is a platform? It's a capability that has multiple applications built on top of it, definitionally. And it's also a capability where third party developers can leverage APIs and SDKs to build applications. And thirdly, it has all of the requisite capabilities and content. So that those application developers, whether it's first party from Alation or third party can really build those applications efficiently, elegantly and economically well. And the catalog is a natural platform because it contains all of the knowledge of the datasets. And it has all of the people who might be leveraging data in some fundamental way. And so this idea of building this data governance module allows a very specialized audience of people in governance to be able to leverage the full capabilities of the platform, to be able to do their work faster, easier, much more simply and easily than they ever could have. And that's why we're so excited about this launch, because we think it's one example of many applications, whether it's ourselves building it or third parties that could be done so much more elegantly than it previously could have been. Because we have so much knowledge of the data and so much knowledge of how the company operates. >> Irrespective of the underlying cloud platform is what I heard before. >> irrespective of the underlying cloud platform, because the data as you know, lives everywhere. It's going to live in AWS, it's going to live in Snowflake. It's going to live on-premise inside of an Oracle database. That's not going to be changed. It's going to live in Teradata. It's going to live all over the place. And as a consequence of that, we've got to be able to connect to everything and we've got to be able to know everything. >> Okay, so that leads me to another big part of the announcement, which is the partnership and integration with Snowflake. Talk about how that came about. I mean, why snowflake? How should customers think about the future of data management. In the context of this relationship, obviously Snowflake talks about the data cloud. I want to understand that better and where you fit. >> Yeah, so interestingly, this partnership like most great partnerships was born in the field. We at the late part of last year had observed with Snowflake that we were in scores of their biggest accounts. And we found that when you found a really, really large Snowflake engagement, often you were going to be complementing that with a reasonable engagement with Alation. And so seeing that pattern as we were going out and raising our funding route at the beginning of this year, we basically found that Snowflake obviously with their Snowflake Ventures Investment arm realized how strategic having a great answer in the governance market happened to be. Now there are other use cases that we do with Snowflake. We can certainly get into those. But what we realized was that if you had a huge scale, Snowflake engagement, governance was a rate limiter to customers' ability to grow faster. And therefore also Snowflake's ability to grow faster within that account. And so we worked with them to not only develop a partnership but much more critically a roadmap that was really robust. And so we're now starting to deliver on that roadmap and are super excited to share a lot of those capabilities in this release. And so that means that we're automatically ingesting policies and controls from Snowflake into Alation, giving full transparency into both setting and also modifying and understanding those policies for anybody. And so that gives you another control plane through which to be able to manage all of the data inside of your enterprise, irrespective of how many instances of Snowflake you have and irrespective of how many controls you have available to you. >> And again, on which cloud runs on. So I want to follow up with that really interesting because Snowflake's promise of the data cloud, is it essentially abstracts the underlying complexity of the cloud. And I'm trying to understand, okay, how much of this is vision, how much is is real? And it's fine to have a Northstar, but sometimes you get lost in the marketing. And then the other part of the promise, and of course, big value proposition is data sharing. I mean, I think they've nailed that use case, but the challenge when you start sharing data is federated governance. And as well, I think you mentioned Oracle, Teradata that stuff's not all in the cloud, a lot of that stuff on-prem and you guys can deal with that as well. So help us sort of to those circles, if you can. Where do you fit into that equation? >> I think, so look, Snowflake is a magical technology and in the sense that if you look at the data, I mean, it reveals a very, very clear story of the ability to adopt Snowflake very quickly. So any data team with an organization can get up and running with the Snowflake instance with extraordinary speed and capability. Now that means that you could have scores, hundreds of instances of Snowflake within a single institution. And to the extent that you want to be able to govern that data to your point, you've got to have a single control plane through which you can manage all of those various instances. Whether they're combined or merged or completely federated and distinct from each other. Now, the other problem that comes up on governance is also discoverability. If you have all these instances, how do you know what the right hand is doing if the left hand is working independently of it? You need some way to be able to coordinate that effort. And so that idea of discoverability and governance is really the value proposition that Alation brings to the table. And the idea there is that people can then can get up and running much more quickly because, hey, what if I want to spin up a Snowflake instance, but there's somebody else, two teams over those already solved the problem or has the data that I need? Well, then maybe I don't even need to do that anymore. Or maybe I can build on top of that work to be able to get to even better outcome even faster. And so that's the sort of kind of one plus one equals three equation that we're trying to build with them. >> So that makes sense and that leads me to one of my favorite topics with the notion is this burgeoning movement around the concept of a data mesh in it. In other words, the notion that increasingly organizations are going to push to decentralize their data architectures and at the same time support a centralized policy. What do you think about this trend? How do you see Alation fitting in? >> Yeah, maybe in a different CUBE conversation. We can talk a little bit about my sort of stylized history of data, but I've got this basic theory that like everybody started out what sort of this idea of a single source of truth. That was a great term back in the 90s where people were like, look, we just need to build a single source of truth and we can take all of our data and physically land it up in a single place. And when we do that, it's going to all be clean, available and perfect. And we'll get back to the garden of Eden, right? And I think that idea has always been sort of this elusive thing that nobody's ever been able to really accomplish, right? Because in any data environment, what you're going to find is that if people use data, they create more data, right? And so in that world, you know, like that notion of centralization is always going to be fighting this idea of data sprawl. And so this concept of data mesh I think is, you know, there's formal technical definitions. But I'll stick with maybe a very informal one, which is the one that you offered. Which is just sort of this decentralized mode of architecture. You can't have decentralization if nobody knows how to access those different data points, 'cause otherwise they'll just have copies and sprawl and rework. And so you need a catalog and you need centralized policies so that people know what's available to them. And people have some way of being able to get conformed data. Like if you've got data spread out all over the place, how do you know which is the right master? How do you know what's the right customer record? How do you know what's your right chart of accounts? You've got to have services that exist in order to be able to find that stuff and to be able to leverage them consistently. And so, to me the data mesh is really a continuation of this idea, which the catalog really enabled. Which is if you can build a single source of reference, not a single source of truth, but a single place where people can find and discover the data, then you can govern a single plane and you can build consistent architectural rules so that different services can exist in a decentralized way without having to sort of bear all the costs of centralization. And I think that's a super exciting trend 'cause it gives power back to people who want to use the data more quickly and efficiently. >> And I think as we were talking about before, it's not about just the IT technical aspects, hey, it works. It's about putting power in the hands of the lines of business. And a big part of the data mesh conversation is around building data products and putting context or putting data in the hands of the people who have the context. And so it seems to me that Alation, okay, so you could have a catalog that is of the line of businesses catalog, but then there's an Uber catalog that sort of rolls up. So you've got full visibility. It seems that you've fit perfectly into that data mesh. And whether it's a data hub, a data warehouse, data lake, I mean, you don't care. I mean, that's just another node that you can help manage. >> That's exactly right. I mean, it's funny because we all look at these market scapes where people see these vendor landscapes of 500 or 800 different data and AI and ML and data architecture vendors. And often I get asked, well, why doesn't somebody come along and like consolidate all this stuff? And the reality is that tools are a reflection of how people think. And when people have different problems and different sets of experiences, they're going to want to use the best tool in order to be able to solve their problem. And so the nice thing about having a mesh architecture is you can use whatever tool you want. You just have to expose your data in a consistent way. And if you have a catalog, you can be able to have different teams using different infrastructure, different tools, different fundamental methods of building the software. But as long as they're exposing it in a consistent way, it doesn't matter. You don't necessarily need to care how it's built. You just need to know that you've got good data available to you. And that's exactly what a catalog does. >> Well, at least your catalog. I think the data mesh, it should be tools that are agnostic. And I think there are certain tools that are, I think you guys started with that principle. Not every data catalog is going to enable that, but I think that is the trend Satyen. And I think you guys have always fit into that. It's just that I think you were ahead of the time. Hey, we'll give you the last word. Give us the closing thoughts and bring us home. >> Well, I mean that's exactly right. Like, not all the catalogs are created equal and certainly not all governance is created equal. And I think most people say these words and think that are simple to get into. And then it's a death by a thousand cuts. I was literally on the phone with a chief data officer yesterday of a major distributor. And they basically said, look, like we've got sprawl everywhere. We've got data everywhere. We've got it in every type of system. And so having that sophistication turned into something that's actually easy to use is a super hard problem. And it's the one that we're focused on every single day that we wake up and every single night when we go to sleep. And so, that's kind of what we do. And we're here to make governance easy, to make data discovery easy. Those are the things that we hold our hats on. And we're super excited to put this release out 'cause we think it's going to make customers so much more capable of building on top of the problems that they've already solved. And that's what we're here to do. >> Good stuff, Satyen. Thanks so much, congratulations on the announcement and great to see you again. >> You too, Dave. Great talking. >> All right, thanks for watching this CUBE conversation. This is Dave Vellante, we'll see you next time. (tranquil music)
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and partner integrations that align in the market and what you And if you think about And all the talk was about And so that's what And maybe what's different And the reality is people And in some cases managing that the traditional way And what you call the And so this idea of being cloud that into the application, And so what you got to Now what do you mean by And it should be something that you do And it's sort of it's a And it has all of the people Irrespective of the because the data as you of the announcement, And so that gives you And it's fine to have a Northstar, And so that's the sort of kind and that leads me to And so in that world, you know, And so it seems to me that Alation, And so the nice thing about And I think you guys have And it's the one that we're and great to see you again. You too, Dave. we'll see you next time.
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Satyen Sangani, Alation | CUBE Conversation, June 2021
(upbeat music) >> Announcer: From theCUBE studios in Palo Alto, in Boston connecting with all leaders all around the world, this is theCUBE conversation. >> Lisa Martin here with theCUBE conversation. One of our alumni is joining me Satyen Sangani the CEO and Co-Founder of Alation is back. Satyen, it's great to see you this morning. >> I know it's so great to see you especially so soon after we last talked. >> Yeah, we only spoke a couple of months ago when you guys launched the Alation Cloud Service and now big news raising 110 million in Series D led by Riverwood Capital from participation with some new investors, including Snowflake Ventures. Talk to us about this new funding raise. >> Yeah, it's so funny. I mean, we've seen market demand pick up ever since the sort of tail end of last year. And it's just been incredible. And quarter after quarter we keep on hitting and exceeding our numbers and we keep on hiring faster and faster and faster and it just doesn't seem like it's ever been fast enough. And so we've been aggressive since the beginning of the year. And even actually before that in spending and, taking the company from roughly 275 people at the end of the year to now, by the end of this year, 525 people. So with that kind of growth we definitely wanted to have the capital to, carry us to this year and then certainly beyond. And, so we went out and raised around and, obviously we're able to do that on great terms and to find a phenomenal partner in Riverwood. And so super excited about the outcome. >> Exactly saw a lot of demand as you and I talked about just a couple of months ago the acceleration of the business during the pandemic. Talk to me about, as you mentioned the demand has never been higher. Let's talk about the demand for the data intelligence platform how the funding is going to help. What are some of the things that you're specifically going to do? >> Yeah, so there's you know we're going to grow the business in a pretty balanced way. And so from our perspective, that means a couple of things right? So starting with sales and marketing, we've got just a need for more feet on the street. Everybody understands generally that they've got problems in data governance, data management, data search and discovery, enablement to people around data. These are things that people are now starting to understand but they don't always necessarily know how to solve the problem in the most efficient and best way. And many of the traditional approaches that sort of command and control top down, you know, let's go hire an army of consultants to figure this stuff out, tends to be the first thing that comes to mind. And so we're building our sales organization is one thing that we're going to do. The second thing that we're going to do is invest in our customer success and customer journey because everybody's looking for best practice and last but not least workforce investing in product and R&D. And so we're going to be growing the R&D organization by almost a factor of two, and that's going to be globally. And, just being the best in the market means you've got to still solve all these unsolved problems. And we're going to do that. >> Sounds like a tremendous amount of momentum kind of igniting this next era for Alation. When we talk about customers, I love that you're doubling down on the customer success. That's absolutely critical. That's why you're in business. But one of the things that we talk about with customers in every industry is being data-driven. And as we see data intelligence emerging as a very, very critical technology investment to enable an enterprise to become more data-driven or actually data-driven, what are some of the things that you're seeing that those customers are saying Alation help us with XYZ? >> Yeah, so I think everybody feels like they need to be on this. So let's first of all, talk about data intelligence. Like, what is this category? So historically there has been these sort of data management categories where the general approach has been let's curate or manage or clean the data in this manual way in order to be able to get good data in front of people so they can start to use it, right. And that data cleaning, that data work that data stewardship has lived often in IT sometimes with very technical people in the business. And it just doesn't scale. There's just too much data out there and there's too much demand for data. So the demand for data is increasing, the supply for data is increasing. So now there's this category of data intelligence. And basically what it's doing it's saying, look all these things that we're talking about machine learning, AI, all of that can be applied to actually the management of data. People can be way more intelligent about how they do this work. They can be more intelligent how they search. They can be more intelligent about how they curate the data. And so what we're seeing is that people are saying, look, I've got so much data. My entire business relies upon data, and now I need you Alation or somebody to help me do this better to do this faster, to do this more efficiently. And all of these really traditional approaches where you use, you know, predominantly workflows and all this stuff it's just not working. And so that's why people are coming after us. >> Well, that need for data in real time is something that we saw during the pandemic. It's for many industries and many different types of situations. It's no longer a nice to have. It's really going to be the defining element between those businesses that succeed in really kind of leveraged COVID as an accelerant versus those that don't succeed. But I'm curious where your conversations are going within the customer base. As we see the need for data across an organization, but the need to access data that they can trust quickly, data that tells the truth, data that can be shared. Are you seeing this elevate up to C-suite in terms of your customer conversations? >> Yeah, and it is and it is because of one really critical reason because a lot of these data projects both fail and under exceed expectations and they do it for reasons that the C-suite doesn't understand. And so now the C-suite is getting forced to say, well, why is this happening? Why are these not going like, wow, you know the boardroom is saying like, well, we need to do more AI. Well, why aren't we doing more AI? Well, it's 'cause your data isn't really clean 'cause you don't actually have the data that you think you have. Because people don't share your data because people are, you know, your data is locked in some on-premise instance in, some access database that nobody's ever heard of. And so all of these reasons are things that now because they're impeding the business or getting to more senior levels in the organization >> That's kind of what I was thinking. I want to talk now about the investment this particular Series D that we talked about. So you've got investment, as I mentioned from a couple of new partners, but talk to me about the Snowflake and the Salesforce Ventures and how that is helping to catalyze what Alation is doing. >> Yeah, so we've, you know had a long time relationship with Salesforce but we found in the last year in particular that our relationship with Snowflake has just taken off in a way that I have seen few partnerships taking off in in certainly in my career. And, you know, it started really with just scores of customers. I mean, literally scores of customers that are all global to 1000s and fortune 500s where we would often just say, hey, what's your data source. And, you know, let's start with Alation and they'd be like, yeah we are either about to invest in Snowflake or we're invested in Snowflake or, something like that. So we'd often see customers on the journey with Snowflake and Alation at the exact same time. And then the next order conversation became well, you know if we're expanding and rolling out with Snowflake, which customers, you know, everybody looks at Snowflakes 168 net percent net expansion rate where every customer is spending a dollar 68 more than they were last year on average. And, you know, says, wow, if I'm going to scale that much we need to govern all of that data. And so Snowflake customers came to Snowflake and to Alation at the same time, and we've been the natural solution of choice. And so that kind of marriage has been quite symbiotic and we're super excited to partner with them. You know, they think exclusively about data consumption. We think about, you know, finding, discovering understanding data. So it's a really natural marriage. And so we're really excited to partner with them and you're going to see a lot from the two companies moving forward. >> So it sounds like that really was driven from joint customers in terms of facilitating maybe an expansion of the partnership that Alation and Snowflake have. Talk to me a little bit more about what some of the things are that we can expect in the next year. >> Yeah, so I won't take away from the stories that we're about to release, but you are going to see really exciting innovations and product between Snowflake and Alation over the course of the next couple of months. And in particular, you're going to see, you know some fun announcements at the snowflake summit coming up next week. So stay tuned for that. Not surprisingly data governance is going to be a big topic for us. Data search and discovery is going to be a big topic for us. Data privacy and security is going to be a big topic us. And so those are all areas where you're going to see lots of fun products innovation. And then on the other side, you're going to see a lot of go to market innovation. So customers are moving data to the cloud, obviously and that's going to be a big place of discussion just enabling all of the field sales forces getting the stories and the customer stories to market. You're going to see a lot of that from us. >> In the last year, I'm curious if you saw any verticals in particular that really have pivoted with fuel from Alation. I think healthcare, life sciences, manufacturing anything that you, that really stood out to you in the last year >> You know, it's, I mean I think there's been the pandemic certainly hurt certain industries more than others transportation, travel and hospitality. And so we definitely saw a trend where there were dips in some of those industries but those were really temporary. And what we're finding is in a lot of those industries are now coming back bigger than ever. And the other industries in manufacturing and pharma in financial services, you know those are just as strong as they've ever been. And interestingly through the pandemic, what we found is that our user account within the company doubled. So even though the customer base itself didn't double the number of users on the platform across all of our customers, literally doubled on an active basis. And so, it's just been, interestingly enough it's just that across the board the growth has been consistent. And I think, really speaks to the fact that everybody's working from home and needs more data to do their job. >> Well, hopefully that's something that's going to be temporary. This, I was telling you, this is my first day back in the studio and not sitting in the home office. So in terms of the demand we talked about the demand we're customers, you're more than 250 customers now, big names, including one of the I think last year's most used terms household terms of Pfizer. Talk to me about the customer perspective on the funding and in terms of the things that you're going to be able to do to go to market. What are you hearing from your customer? >> Yeah I mean, literally the first thing I hear from 80 to 90% of my customers is go faster. You know, like there's this fun story, right? Where there's two people, they meet in the forest, they start walking together and then all of a sudden they both see a big bear. And the bear is, right about to come right after them. One person sits down and like puts on their running shoes. And they're like, well, you know, the other guy says, oh, there's no way you're going out run the bear. And they're like, well, I (indistinct)the bear. I've got to out run you. Right, and our customers are basically saying to us, look the bear of the data problem is gigantic. And yeah, you might be better than everything else out there, but I still have to as a customer contend with this massive data problem. And you know, if I have to do that, I need you to go faster because data's coming after me faster than ever. And I've got to contend with all of that work. And so they just want us to go faster and they want us to go faster in product. And they want us to go faster in developing the customer journey. And they want us to go faster in developing the ecosystem because many of our customers are you leveraging us as a platform. They want to see data on top of Alation. They want to see data privacy on top of Alation. They want to see data migration on top of Alation. So building out all these capabilities with our partners in our ecosystem and with partners like Snowflake and Salesforce, I mean, they just want us to move faster >> Moving faster, I think we all want that in certain senses but in any industry, consumers, users are getting more and more demanding as you're helping customers achieve their desire of going faster. How do you do that and help them foster a data culture that's, that supports that speed. >> Yeah, it's so interesting because cultural transformation, as you all know, like as we all know, that's like that's certainly slow work, right? Like you're not going to show up at an enterprise and say, hey, I installed Alation. You know what? You're going to have a totally different area culture. Everybody's going to start asking questions with data and the world's going to change, right. And so that, that, you know I'd love for that to be the eventual vision that we achieve. But it's certainly not where we are at today. I think, one of the things that I believe is that you can't go fast and big things you've got to break up big problems and turn them into small problems. And so one of the habits that we've seen within the organization, and one of the things that I talked to our team about every single day is look, you know make small promises and deliver on them. If you got to connect to data source, do that faster. If you're going to train a set of employees do that more quickly because customers have intent with data, but if they don't get the data in front of themselves quickly then they're just going to go to their gut decision. And so capturing that moment of intent and building a sort of velocity is where we see our best customer engagements go. And so that sort of incremental success approach, as opposed to the boil the ocean three month engagement, you know never see the finish line approach is really what I think makes us special and different. >> Tell me a little bit about speaking of culture, about Alations culture. What are some of the things that have changed in the last year? And it sounds like with the Series D round that you've just raised a lot of growth opportunities you mentioned that. Talk to me about the culture, how it's transformed in the last year and what you are excited for going forward. >> Yeah, it's so funny 'cause I always think about culture. You know, people think about culture and they say, companies (indistinct) culture and they think of that culture as being a fixed thing. And it's totally true that, yeah, there's got to be some shared vision, shared values shared ideals within a company in order for it to grow at the pace that we're growing, right. Adding 250 people in a 12 month period is not easy. But it's also the case that, you know, what we found is that there's a lot more specialization within the company. And so people now really, you know where you found the company on generalist you scale a company on specialists. And so getting those specialists inside of the company and respecting them and letting them do their jobs and really kind of building that expertise in the company is something that's been really fabulous and just wonderful to see the team work that way. I think the other thing that's been really interesting obviously is just the remote first work. I mean, we've seen zero loss in productivity and I've talked to CEOs who were like, yeah we need to get people back in the office. I don't really care where my team works. They're getting the job done and they're doing it fabulously for customers. And so if customers want them in front of them, totally great. Obviously love to see the team all the time but it is so wonderful to see how productive people can be when they don't have to spend two hours in a car every day. And so those have been two small things. I mean, at the core, there are other aspects of our culture that have been more permanent, but those two have been slightly different. >> That's great to hear that about the productivity. I was actually very excited to commute this morning for the first time. Although there was no traffic to navigate. As we look at the current market valuation, 1.2 billion the growth rate, the demand for the technologies. What are some, you mentioned some of the events that you're going to be at you mentioned Snowflakes event. Where can folks go to hear more information about this? >> Yeah, absolutely. You can come to our website, of course, at alation.com. There's a ton of information there. Anybody who's watching this interview obviously is a experienced and thoughtful enterprise IT buyers. So certainly, you know, this is a fairly expert audience but we do have tons of field resources that are available. The Alation Cloud instance allows you to get up and running super quickly. And you're going to see that speed increase further over the coming 12 months, but, you know start with alation.com and go from there. And then there's a whole bunch of people who are sitting behind that front door waiting to help you. >> Excellent, alation.com. Well, Satyen congratulations on the funding announcement. Thank you for joining me today helping us unpack what at means the impact, the demand from the customers and how we're going see Alation go even faster. I'm excited to see what happens next in the next couple of months. I'm sure I'll see you again. >> I know. Me too. Thank you Lisa, it's always great to talk. >> Likewise, for Satyen Sangani, I'm Lisa Martin. You're watching this CUBE conversation. (upbeat music)
SUMMARY :
all around the world, the CEO and Co-Founder of Alation is back. I know it's so great to see you of months ago when you guys launched And so super excited about the outcome. how the funding is going to help. And many of the traditional But one of the things that we talk about all of that can be applied to actually but the need to access data And so now the C-suite and how that is helping to And so that kind of marriage of the things are that we going to see, you know out to you in the last year it's just that across the board and in terms of the And the bear is, right about How do you do that and help And so one of the habits that we've seen in the last year and what you And so people now really, you know of the events that you're going to be at over the coming 12 months, but, you know in the next couple of months. Thank you Lisa, it's always great to talk. Likewise, for Satyen Sangani,
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