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William Murphy, BigID | AWS Startup Showcase: Innovations with CloudData & CloudOps


 

>>Good day. And thanks for joining us as we continue our series here on the Coupa, the AWS startup showcase featuring today, big ID and what this is, will Murphy was the vice president of business development and alliances at big idea. Well, good day to you. How are you going today? Thanks John. I'm doing well. I'm glad to be here. That's great. And acute belong to, I might add, so it's nice to have you back. Um, let's first off, let's share the big ID story. Uh, you've been around for just a handful of years accolades coming from every which direction. So obviously, uh, what you're doing, you're doing very well, but for our viewers who might not be too familiar with big ID, just give us a 30,000 foot level of your core competence. Yeah, absolutely. So actually we just had our five-year anniversary for big ID, uh, which we're quite excited about. >>Um, and that five-year comes with some pretty big red marks. We've raised over $200 million for a unicorn now. Um, but where that comes to and how that came about was that, um, we're dealing with, um, longstanding problems with modern data landscape security governance, privacy initiatives, um, and starting in 2016 with the, uh, authorship of GDPR, the European privacy law organizations, how to treat data differently than they did before they couldn't afford to just sit on all this data that was collected for a couple of reasons, right? Uh, one of them being that it's expensive. So you're constantly storing data, whether that's on-prem or in the cloud is we're going to talk about there's expense that you have to pay to secure the data and keep it from being leaked. You have to pay for access control. It's paid for a lot of different things and you're not getting any value out of that. >>And then there's the idea of like the customer trust piece, which is like, if anything happens to that data, um, your reputational, uh, your reputation as a company and the trust you have between your customers and your organization is broken. So big ID. What we did is we decided that there was a foundation that needed to be built. The foundation was data discovery. If you even an organization knows where its data is, whose data it is, where it is, um, and what it is, and also who has access to it, they can start to make actionable decisions based on the data and based on this new data intelligence. So we're trying to help organizations keep up with modern data initiatives and we're empowering organizations to handle their data sensitive, personal regulated. And what's actually quite interesting is we allow organizations to define what's sensitive to them because like people, organizations are all different. >>And so what's sensitive to one organization might not be to another, it goes beyond the wall. And so we're giving organizations that new power and flexibility, and this is what I still find striking is that obviously with this exponential growth of data and machine learning, just bringing billions of inputs, it seems like right. All of a sudden you have this fast reservoir data, is that the companies in large part, um, don't know a lot about the data that they're harvest state and where it is. And so it's not actionable, it's kind of dark data, right. Just out there reciting. >>Um, and so as I understand it, this, this is your focus basically is tell people, Hey, here's your landscape. Uh, here's how you can better put it to action, why it's valuable and we're going to help them protect it. Um, and they're not aware of these things, which I still find a little striking in this day and age, >>And it goes even further. So, you know, when you start to, when you start to reveal the truth and what's going on with data, there's a couple things that some organizations do. Uh, and I think human instincts, some organizations want to bury their head in the sand. I'm like, everything's fine. Uh, which is, as we know, and we've seen the news frequently, not a sustainable approach. Uh, there's the, there's the, like, let's be a, we're overwhelmed. We don't, we don't even know. We don't even know where to start. Then there's the natural reaction, which is okay. We have to centralize and control everything which defeats the purpose of having, um, shared drives and collaboration and, um, geographically disparate workforces, which we've seen particularly over the last year, how important that resiliency within organizations is to be able to work in different areas. And so, um, it really restricts the value that, um, organizations can get from their data, which is important. And it's important in a ton of ways. Um, and for customers that have allowed their, their data to be, to be stored and harvested by these organizations, they're not getting value out of it either. It's just risk. And we've got to move data from the liability side of the balance sheet, um, to the assets out of the balance sheet. And that comes first and foremost with knowledge. >>So everybody's vote cloud, right? Everybody was on prem and also we build a bigger house and build a bigger house, better security, right in front of us, got it, got to grow. And that's where I assume AWS has come in with you. And, and this was a two year partnership that you've been engaged with in AWS. So maybe shine a little light on that, about the partnership that you've created with AWS, and then how you then in turn transition that, to leverage that for the betterment of your >>Customer base. Yeah. So AWS has been a great partner. Um, they are very forward-looking for an organization, as large as they are very forward looking that they can't do everything that their customers need. And it's better for the ecosystem as a whole to enable small companies like us. And we were very small when we started our relationship with them, uh, to, to join their partner organization. So we're an advanced partner. Now we're part of ISV accelerate. So it's a slightly more lead partner organization. Um, and we're there because our customers are there and AWS like us, but we both have a customer obsessed culture. Um, but organizations are embracing the cloud and there's fear of the cloud. There's there really shouldn't be in the, in the way that we thought of it, maybe five or 10 years ago. And that, um, companies like AWS are spending a lot more money on security than most organizations can. >>So like they have huge security teams, they're building massive infrastructure. And then on top of that, companies themselves can do, can use, uh, products like big ID and other products to make themselves more secure, um, from outside threats and from, from inside threats as well. So, um, we are trying to with them approach modern data challenge as well. So even within AWS, if you put all the information in, like, let's say S3 buckets, that doesn't really tell you anything. It's like, you know, I, I make this analogy. Sometimes I live in Manhattan. If I were to collect all the keys of everybody that lived in a 10 block radius around me and put it into a dumpster, uh, and keep doing that, I would theoretically know where all the keys were there in the dumpster. Now, if somebody asked me, I'd like my keys back, uh, I'd have a really hard time giving them that because I've got to sort through, you know, 10,000 people's keys. >>And I don't really know a lot about it, but those key sale a lot, you know, it says, are you in an old building, are you in a new building? You have a bike, do you have a car? Do you have a gym locker? There's all sorts of information. And I think this analogy holds up for data because of the way you store your data is important, but, um, you can gain a lot of theoretically innocuous, but valuable information from the data that's there while not compromising the sensitive data. And as an AWS has been a fabulous partner in this, they've helped us build a AWS security, have integration out of the box. Um, we now work with over 12 different AWS native, uh, applications from anything like S3 Redshift and Sienna, uh, Kinesis, as well as, um, apps built on AWS like snowflake and Databricks that we, that we connect to. >>And AWS, the technical team of department teams have been an enormous part of our success there. We're very proud of joining the marketplace to be where our customers want to buy enterprise software more and more. Um, and that's another area that we're collaborating, uh, in, in, in joint accounts now to bring more value in simplicity to our joint customers. What's your process in terms of your customer and, uh, evaluating their needs because you just talked about earlier, you had different approaches to security. Some people put their head in the sand, right? Some people admit that there's a problem. Some people fully engaged. So I assume there's also different levels of sophistication in terms of whatever you have in place and then what their needs are. So if you would shine a little light on that, you know, where they are in terms of their data landscape and AWS and its tools, but you just touched them on multiple tools you have in your service. >>Now, all that comes together to develop what would be, I guess, a unique program for a company's specific needs. It is. We started talking to the largest enterprise accounts when we were founded and we still have a real proclivity and expertise in that area. So the issues with the large enterprise accounts and the uniqueness there is scale. They have a tremendous amount of data, HR data, financial data, customer data, you name it, right? Like, we'll go. We can, we can go dry mouth talking about how many you're saying data. So many times with, with these large customers, um, freight Ws scale, wasn't an issue. They can store it, they can analyze it. They can do tons. It where we were helping is that we could make that safer. So if you want to perform data analytics, you want to ensure that sensitive data is not being, or that you want to make sure you're not violating local, not national or industry specific regulations. >>Financial services is a great example. There's dozens of regulations at the federal level in the United States and each state has their own regulations. This becomes increasingly complex. So AWS handles this by, by allowing an amazing amount of customization for their customers. They have data centers in the right places. They have experts on, on, uh, vertical, specific issues. Big ID handles this similarly in some ways, but we handle it through ostensive ability. So one of our big things is we have to be able to connect to every everywhere where our customers have data. So we want to build a foundation of like, let's say first let's understand the goals is the goal compliance with the law, which it should be for everybody that should just be like, we need to, we need to comply with the law. Like that's, that's easy. Yeah. Then as the next piece, like, are we dealing with something legacy? >>Was there a breach? Do we need to understand what happened? Are we trying to be forward-looking and understanding? We want to make sure we can lock down our most sensitive data, tier our storage tier, our security tier are our analytics efforts, which also is cost-effective. So you don't have to do, uh, everything everywhere, um, or is the goal a little bit like we needed to get a return on investment faster, and we can't do that without de-risking some of that. So we've taken those lessons from the enterprise where it's exceedingly difficult, uh, to work because of the strict requirements, because the customers expect more. And I think like AWS, we're bringing a down market. Uh, we have some, a new product coming out. Uh, it's exclusive for, uh, AWS now called small ID, which is a cloud native, a smaller version, lighter weight version of our product for customers in the more commercial space in the SMB space where they can start to build a foundation of understanding their data or, um, protection for security for, for, for privacy. >>And, and before I let you go here, what I'd like to hear about is practical application. You know, somebody that, that you've, you know, that you were able to help and assist you evaluated. Cause you've talked about the format here. You've talked about your process and talk about some future, I guess, challenges, opportunities, but, but just to give our viewers an idea of maybe the kind of success you've already had to, uh, give them a perspective on that, this share a couple stories. If you wouldn't mind with some work that you guys did and rolled up your sleeves and, and, uh, created that additional value >>For your customers. Yeah, absolutely. So I'll give a couple examples. I'm going to, I'm going to keep everyone anonymized, uh, as a privacy based company, in many ways, what we, we try to respect colors. Um, but let's talk about different types of sensitive data. So we have customers that, um, intellectual property is their biggest concern. So they, they do care about compliance. They want to comply with all local and national laws where they, where they, their company resides all their offices are, but they were very concerned about sensitive data sprawl around intellectual property. They have a lot of patents. They have a lot of sensitive data that way. So one of the things we did is we were able to provide custom tags and classifications for their sensitive data based on intellectual property. And they could see across their cloud environment, across their on-premise environment across shared drives, et cetera. >>We're sensitive data had sprawl where it had moved, who's having access to it. And they were able to start realigning their storage strategy and their content management strategy, data governance strategy, based on that, and start to, uh, move sensitive data back to certain locations, lock that down on a higher level could create more access control there, um, but also proliferate and, uh, share data that more teams needed access to. Um, and so that's an example of a use case that I don't think we imagined necessarily in 2016 when we were focused on privacy, but we've seen that the value can come from it. Um, so yeah, no, I mean, the other piece is, so we've worked with some of the largest AWS customers in the world. Their concern is how do we even start to scan the Tedder, terabytes and petabytes of data in any reasonable fashion? >>Uh, without it being out of date, if we create this data map, if we prayed this data inventory, uh, it's going to be out of date day one, as soon as we say, it's complete, we've already added more. That's where our scalability fit Sam. We were able to do a full scan of their entire AWS environment and, uh, months, and then keep up with the new data that was going into their AWS environment. This is a, this is huge. This was groundbreaking for them. So our hyper scan capability, uh, that we've wrote, brought out that we rolled out to AWS first, um, was a game changer for them to understand what data they had and where it is who's it is et cetera at a way that they never thought they could keep up with. You know, I I'm, I brought back to the beginning of code when the British government was keeping track of all the COVID cases on spreadsheets and spreadsheet broke. >>Um, it was also out of date, as soon as they entered something else. It was already out of date. They couldn't keep up with them. Like there's better ways to do that. Uh, luckily they think they've moved on from, from that, uh, manual system, but automation using the correct human inputs when necessary, then let, let machine learning, let, uh, big data take care of things that it can, uh, don't waste human hours that are precious and expensive unnecessarily and make better decisions based on that data. You know, you raised a great point too, which I hadn't thought of about the fact is you do your snapshot today and you start evaluating all their needs for today. And by the time you're going to get that done, their needs have now exponentially grown. It's like painting the golden gate bridge, right. You get that year and now you've got to pay it again. I said it got bigger, but anyway, they will. Thanks for the time. We certainly appreciate it. Thanks for joining us here on the sort of showcase and just remind me that if you ever asked for my keys, keep them out of that dumpster to be here.

Published Date : Mar 24 2021

SUMMARY :

So actually we just had our five-year anniversary for big ID, uh, which we're quite excited about. Um, and that five-year comes with some pretty big red marks. And then there's the idea of like the customer trust piece, which is like, if anything happens to that data, All of a sudden you have this Um, and so as I understand it, this, this is your focus basically is tell people, Um, and for customers that have allowed their, their data to be, to be stored and harvested And that's where I assume AWS has come in with you. And we were very small when we started our relationship with them, uh, to, to join their partner organization. So, um, we are trying to with them approach modern And I don't really know a lot about it, but those key sale a lot, you know, it says, AWS and its tools, but you just touched them on multiple tools you have in your So the issues with the large enterprise accounts and the uniqueness there is scale. So one of our big things is we have to So you don't have to do, And, and before I let you go here, what I'd like to hear about is practical application. So one of the things we did is we were able to provide Um, and so that's an example of a use case that I don't think we imagined necessarily in 2016 to AWS first, um, was a game changer for them to understand what data they had and where it is who's and just remind me that if you ever asked for my keys, keep them out of that dumpster to

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William Murphy, BigID | AWS Startup Showcase


 

(upbeat music) >> Well, good day and thank you for joining us as we continue our series here on theCUBE of the AWS Startup Showcase featuring today BigID. And with us is Will Murphy, who's the Vice President of the Business Development and Alliances at BigID. Will, good day to you, how are you doing today? >> Thanks John, I'm doing well. I'm glad to be here. >> Yeah, that's great. And theCUBE alum too, I might add so it's nice to have you back. Let's first off, let's share the BigID story. You've been around for just a handful of years. Accolades coming from every which direction so obviously what you're doing, you're doing very well. But for our viewers who might not be too familiar with BigID, just give us a 30,000 foot level of your core competence. >> Yeah absolutely. So actually we just had our five-year anniversary for BigID, which we're quite excited about. And that five year comes with some pretty big red marks. We've raised over $200 million for a unicorn now. But where that comes to and how that came about was that we're dealing with longstanding problems with modern data landscapes, security governance, privacy initiatives. And starting in 2016 with the authorship of GDPR, the European privacy law organizations had to treat data differently than they did before. They couldn't afford to just sit on all this data that was collected. For a couple reasons, right? One of them being that it's expensive. So you're constantly storing data whether that's on-prem or in the cloud as we're going to talk about. There's expense to that. You have to pay to secure the data and keep it from being leaked, You have to pay for access control, you have to pay for a lot of different things. And you're not getting any value out of that. And then there's the idea of the customer trust piece, which is like if anything happens to that data, your reputation as a company and the trust you have between your customers and your organization is broken. So BigID, what we did is we decided that there was a foundation that needed to be built. The foundation was data discovery. If an organization knows where its data is, whose data it is, where it is, and what it is and also who has access to it, they can start to make actionable decisions based on the data and based on this new data intelligence. So, we're trying to help organizations keep up with modern data initiatives. And we're empowering organizations to handle their data, sensitive, personal regulated. What's actually quite interesting is we allow organizations to define what's sensitive to them because like people, organizations are all different. And so what's sensitive to one organization might not be to another. It goes beyond the wall. And so we're giving organizations that new power and flexibility. >> And this is what I still find striking is that obviously with this exponential growth of data you got machine learning, just bringing billions of inputs. It seems like right now. Also you had this vast reservoir of data. Is that the companies in large part don't know a lot about the data that they're harvesting and where it is, and so it's not actionable. It's kind of dark data, right? Just out there residing. And so as I understand it, this is your focus basically is to tell people, hey here's your landscape, here's how you can better put it to action why it's valuable and we're going to help you protect it. And they're not aware of these things which I still find a little striking in this day and age >> And it goes even further. So you know, when you start to reveal the truth and what's going on with data, there's a couple things that some organizations do. And enter the human instincts. Some organizations want to bury their head in the sand like everything's fine. Which is as we know and we've seen the news frequently not a sustainable approach. There's the like let's be we're overwhelmed. Yeah. We don't even know where to start. Then there's the unnatural reaction, which is okay, we have to centralize and control everything. Which defeats the purpose of having shared drives and collaboration in geographically disparate workforces, which we've seen in particularly over the last year, how important that resiliency within organizations is to be able to work in different areas. And so it really restricts the value that organizations can get from their data, which is important. And it's important in a ton of ways. And for customers that have allowed their data to be stored and harvested by these organizations, like they're not getting value out of it neither. It's just risk. And we've got to move data from the liability side of the balance sheet to the assets side of the balance sheet. And that comes first and foremost with knowledge. >> So everybody's going cloud, right? Used to be, you know, everybody's on prem. And all of a sudden we build a bigger house. And so because you build a bigger house, you need better security, right? Your perimeter's got to grow. And that's where I assume AWS has come in with you. And this is a two year partnership that you've been engaged with in AWS. So maybe shine a little light on that. About the partnership that you've created with AWS and then how you then in turn transition that to leverage that for the benefit of your customer base. >> Yeah. So AWS has been a great partner. They are very forward-looking for an organization as large as they are. Very forward looking that they can't do everything that their customers need. And it's better for the ecosystem as a whole to enable small companies like us, and we were very small when we started our relationship with them, to join their partner organization. So we're an advanced partner now. We're part of ISV Accelerate. So it's a slightly more lead partner organization. And we're there because our customers are there. And AWS like us, we both have a customer obsessed culture. But organizations are embracing the cloud. And there's fear of the cloud, but there really shouldn't be in the way that we thought of it maybe five or 10 years ago. And that companies like AWS are spending a lot more money on security than most organizations can. So like they have huge security teams, they're building massive infrastructure. And then on top of that, companies themselves can can use products like big ID and other products to make themselves more secure from outside threats and from inside threats as well. So we are trying to with them approach modern data challenges well. So even within AWS, if you put all the information in like let's say S3 buckets, it doesn't really tell you anything. It's like, you know, I make this analogy sometimes. I live in Manhattan and if I were to collect all the keys of everybody that lived in a 10 block radius around me and put it into a dumpster and keep doing that, I would theoretically know where all the keys were. They're in the dumpster. Now, if somebody asked me, I'd like my keys back, I'd have a really hard time giving them that. Because I've got to sort through, you know, 10,000 people's keys. And I don't really know a lot about it. But those key say a lot, you know? It says like, are you in an old building? Are you in a new building? Do you have a bike? Do you have a car? Do you have a gym locker? There's all sorts of information. And I think that this analogy holds up for data but ifs of the way you store your data is important. But you can gain a lot of theoretically innocuous but valuable information from the data that's there, while not compromising the sensitive data. And as an AWS has been a fabulous partner in this. They've helped us build a AWS security, have integration out of the box. We now work with over 12 different AWS native applications from anything like S3, Redshift, Athena, Kinesis, as well as apps built on AWS, like Snowflake and Databricks that we connect to. And in AWS, the technical teams, department teams have been an enormous part of our success there. We're very proud to have joined the marketplace, to be where our customers want to buy enterprise software more and more. And that's another area that we're collaborating in joint accounts now to bring more value and simplicity to our joint customers. >> So what's your process in terms of your customer and evaluating their needs? 'Cause you just talked about it earlier that you had different approaches to security. Some people put their head in the sand, right? Some people admit that there's a problem. Some people fully are engaged. So I assume there's also a different level of sophistication in terms of what they already have in place and then what their needs are. So if you were to shine a little light on that, about assessing where they are in terms of their data landscape. And now AWS and its tools, which you just touched on. You know, the multiple tools you have in your service. Now, all that comes together to develop what would be I guess, a unique program for a company's specific needs. >> It is. We started talking to the largest enterprise accounts when we were founded and we still have a real proclivity and expertise in that area. So the issues with the large enterprise accounts and the uniqueness there is scale. They have a tremendous amount of data: HR data financial data, customer data, you name it. Right? Like, we could go dry mouth talking about how many insane data so many times with these large customers. For AWS, scale wasn't an issue. They can store it. They can analyze it. They can do tons with it. Where we were helping is that we could make that safer. So if you want to perform data analytics, you want to ensure that sensitive data is not being part of that. You want to make sure you're not violating local, national or industry specific regulations. Financial services is a great example. There's dozens of regulations at the federal level in United States. And each state has their own regulations. This becomes increasingly complex. So AWS handles this by allowing an amazing amount of customization for their customers. They have data centers in the right places. They have experts on vertical specific issues. BigID handles this similarly in some ways, but we handle it through extensibility. So one of our big things is we have to be able to connect to everywhere where our customers have data. So we want to build a foundation of like let's say first, let's understand the goals. Is the goal compliant with the law? Which it should be for everybody. That should just be like, we need to comply with the law. Like that's easy. Yeah. Then there's the next piece, like are we dealing with something legacy? Was there a breach? Do we need to understand what happened? Are we trying to be forward-looking and understanding? We want to make sure we can lock down our most sensitive data. Tier our storage, tier our security, tier are our analytics efforts which also is cost-effective. So you don't have to do everything everywhere. Or is the goal a little bit like we needed to get our return on investment faster. And we can't do that without de-risking some of that. So we've taken those lessons from the enterprise where it's exceedingly difficult to work because of the strict requirements because the customers expect more. And I think like AWS, we're bringing it down market. We have some new product coming out. It's exclusive for AWS now called SmallID, which is a cloud native. A smaller version, lighter weight version of our product for customers in the more commercial space. In the SMB space where they can start to build a foundation of understanding their data for protection and for security, for privacy. >> Will, and before I let you go here what I'd like to hear about is practical application. You know, somebody that you've, you know, that you were able to help and assist, you evaluated. 'Cause you've talked about the format here. You talked about your process and talked about some future, I guess, challenges, opportunities. But just to give our viewers an idea of maybe the kind of success you've already had. To give them a perspective on that. Just share a couple of stories, if you wouldn't mind. Whether there's some work that you guys did and rolled up your sleeves and created that additional value for your customers. >> Yeah, absolutely. So I'll give a couple examples. I'm going to keep everyone anonymized. As a privacy based company, in many ways, we try to respect-- >> Probably a good idea, right? (Will chuckles) >> But let's talk about different types of sensitive data. So we have customers that intellectual property is their biggest concern. So they do care about compliance. They want to comply with all the local and national laws where their company resides and all their offices are. But they were very concerned about sensitive data sprawl around intellectual property. They have a lot of patents. They have a lot of sensitive data that way. So one of the things we did is we were able to provide custom tags and classifications for their sensitive data based on intellectual property. And they could see across their cloud environment, across their on-premise environment, across shared drives et cetera, where sensitive data had sprawl. Where it had moved, who's having access to it. And they were able to start realigning their storage strategy and their content management strategy, data governance strategy, based on that. And start to move sensitive data back to certain locations, lock that down on a higher level. Could create more access control there, but also proliferate and share data that more teams needed access to. And so that's an example of a use case that I don't think we imagined necessarily in 2016 when we were focused on privacy but we've seen that the value can come from it. Yeah. >> So it's a good... Please, yeah, go ahead. >> No, I mean, the other (mumbles). So we've worked with some of the largest AWS customers in the world. Their concern is how do we even start to scan the Tedder terabytes and petabytes of data in any reasonable fashion without it being out of date. If we create this data map, if we create this data inventory, it's going to be out of date day one. As soon as we say, it's complete, we've already added more. >> John: Right. >> That's where our scalability fits in. We were able to do a full scan of their entire AWS environment in months. And then keep up with the new data that was going into their AWS environment. This is huge. This was groundbreaking for them. So our hyper scan capability that we brought out, that we rolled out to AWS first, was a game changer for them. To understand what data they had, where it is, who's it is et cetera, at a way that they never thought they could keep up with. You know, I brought back to the beginning of code when the British government was keeping track of all the COVID cases on spreadsheets and spreadsheets broke. It was also out of date. As soon as they entered something else it was already out of date. They couldn't keep up with it. Like there's better ways to do that. Luckily they think they've moved on from that manual system. But automation using the correct human inputs when necessary. Then let machine learning, let big data take care of things that it can. Don't waste human hours that are precious and expensive unnecessarily. And make better decisions based on that data. >> Yeah. You raised a great point too which I hadn't thought of about. The fact is, you do your snapshot today and you start evaluating all their needs for today. And by the time you're able to get that done their needs have now exponentially grown. It's like painting the golden gate bridge. Right? You get done and now you got to paint it again, except it got bigger. We added lanes, but anyway. Hey, Will. Thanks for the time. We certainly appreciate it. Thanks for joining us here on the startup showcase. And just remind me that if you ever asked for my keys keep them out of that dumpster. Okay? (Will chuckles) >> Thanks, John. Glad to be here. >> Pleasure. (soft music)

Published Date : Mar 12 2021

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Kiran Narsu, Alation & William Murphy, BigID | 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 LeBron welcome to the cube studio I'm John Ferrier here in Palo Alto in our remote coverage of the tech industry we are in our quarantine crew here getting all the stories in the technology industry from all the thought leaders and all the newsmakers we've got a great story here about data data compliance and really about the platforms around how enterprises are using data I've got two great guests and some news to announce Kieran our CEO is the vice president of business development with elation and William Murphy vice president of technology alliances of big ID got some interesting news a integration partnership between the two companies really kind of compelling especially now as people have to look at the cloud scale what's happening in our world certainly in the new realities of kovin 19 and going forward the role of data new kinds of applications and the speed and agility are gonna require more and more automation more reality around making sure things are in place so guys thanks for coming on appreciate it Kieran William thanks for joining me thank you thank you so let's take a step back elation you guys have been on the cube many times we've been following you guys been a leader and Enterprise catalog a new approach it's a real new technology approach and methodology and team approach to building out the data catalogues so talk about the Alliance here why what's the news why you guys in Creighton is integration partnership well let me start and thank you for having us today you know as you know elation launched the data catalog a category seven years ago and even today we're acknowledging the leader as a leader in that space you know and but we really began with the core belief that ultimately data management will be drive driven more and more by business demand and less by information suppliers so you know another way to think about that is you know how people behave with data will drive how companies manage data so our philosophy put very simply is to start with people and not first not data and our customers really seem to agree with this approach and we've got close to 200 brands using our data you know our tool every single day to drive vibrant data communities and and foster a real data culture in the environment so one of the things that was really exciting to us is the in been in data privacy by large corporate customers to get their arms around this and you know we really strive to improve our ability to use the tool inside you know these enterprises across more use cases so the partnership that we're announcing with big ID today is really you know Big Ideas the leading modern data intelligence platform for privacy and what we're trying to do is to bring bring a level of integration between our two technologies so that enterprises in better manage and scale their their data privacy compliance capability William talked about big ID what you guys are doing you guys also have a date intelligence platform we've been covering gdpr for a very long time I once called I won't say it again because it wasn't really that complimentary but the reality has sit in and they and the users now understand more than ever privacy super important companies have to deal with this you guys have a solution take a minute to explain big-big ID and what you guys are doing yeah absolutely so our founders Demetri Shirota and Nimrod Beck's founded big idea in 2016 Sam you know gdpr was authored and the big reason there is that data changed and how companies and enterprises doubled data was changing pretty much forever that profound change meant that the status quo could no longer exist and so privacy was gonna have to become a day-to-day reality to these enterprises but what big ID realized is that to start to do to do anything with privacy you actually have to understand where your data is what it is and whose it is and so that's really the genesis of what dimitri nimrod created which which is a privacy centric data discovery and intelligence platform that allows our enterprise customers and we have over 70 customers in the enterprise space many within the Fortune hundred to be able to find classify and correlate sensitive data as they defined it across data sources whether its own Prem or in the cloud and this gives our users and kind of unprecedented ability to look into their data to get better visibility which if both allows for collaboration and also allows for real-time decision-making a big place with better accuracy and confidence that regulations are not being broken and that customers data is being treated appropriately great I'm just reading here from the release that I want to get you guys thoughts and unpack some of the concepts on here but the headline is elation strengthens privacy capabilities with big ID part nur ship empowering organizations to mitigate risks delivering privacy aware data use and improved adherence to data privacy regulations it's a mouthful but the bottom line is is that there's a lot of stuff to that's a lot of complexity around these rules and these platforms and what's interesting you mentioned discovery the enterprise discovery side of the business has always been a complex nightmare I think what's interesting about this partnership from my standpoint is that you guys are bringing an interface into a complex platform and creating an easy abstraction to kind of make it usable I mean the end of the day you know we're seeing the trends with Amazon they have Kendre which they announced and they're gonna have a ship soon fast speed of insights has to be there so unifying data interfaces with back-end is really what seems to be the pattern is that the magic going on here can you guys explain what's going on with this and what's the outcome gonna be for customers yeah I guess I'll kick off and we'll please please chime in I think really there's three overarching challenges that I think enterprises are facing is they're grappling with these regulations as as we'll talked about you know number one it's really hard to both identify and classify private data right it's it's not as easy as it might sound and you know we can talk a little bit more about that it's also very difficult to flag at the point of analysis when somebody wants to find information the relevant policies that might apply to the given data that they're looking to it to run an analysis on and lastly the enterprise's are constantly in motion as enterprises change and by new businesses and enter new markets and launch new products these policies have to keep up with that change and these are real challenges to address and you know with Big Idea halation we're trying to really accelerate that compliance right with the the you know the combination of our tools you know reduce the the cost and complexity of compliance and fundamentally keep up through a single interface so that users can know what to do with data at the point of consumption and I think that's the way to think about it well I don't know if you want to add something to that absolutely I think when Karen and I have been working on this for actually many months at this point but most companies don't have a business plan of just saying let's store as much data as possible without getting anything out of it but in order to get something out of it the ability to find that data rapidly and then analyze it so that decision makers make up-to-date decisions is pretty vital a lot of these things when they have to be done manually take a long time they're huge business issues there and so the ability to both automate data discovery and then cataloging across elation and big ID gives those decision makers whether the data steward the data analyst the chief data officer an ability to really dive deeper than they have previously with better speed you know one of the things that we've been talking about for a long time with big data as these data links and they're fairly easy to pull I mean you can put a bunch of data into a corpus and you you act on them but as you start to get across these silos there's a need for you know getting a process down around managing just not only the data wrangling but the policies behind it and platforms are becoming more complex can you guys talk about the product market fit here because there's sass involved so there's also a customer activity what's the product market fit that you guys see with this integration what are some of the things that you're envisioning to emerge out of this value proposition I think I can start I think you're exactly right enterprises have made huge investments in you know historically data warehouses data Mart's data lakes all kinds of other technology infrastructure aimed at making the data easier to get to but they've effectively just layered on to the problem so elations catalog has made it incredibly much more effective at helping organizations to find to understand trust to reuse and use that data so that stewards and people who know about the data can inform users who may need need to run a particular report or conduct a specific analysis can accelerate that process and compress the time the insights much much more than then it's are possible with today's technologies and if you if you overlay that on to the data privacy challenge its compounded and I think you know will it would be great for you to comment on what the data discovery capability it's a big ID do to improve that that even further yeah absolutely so as to companies we're trying to bridge this gap between data governance and privacy and and John as you mentioned there's been a proliferation of a lot of tools whether their data lakes data analysis tools etc what Big Idea is able to do is we're looking across over 70 different types of data platforms whether they be legacy systems like SharePoint and sequel whether they be on pram or in the cloud whether it's data at rest or in motion and we're able to auto populate our metadata findings into relations data catalog the main purpose there being that those data stewards and have access to the most authentic real time data possible so on the terms of the customer value they're going to see what more built in privacy aware features is its speed but you know what I mean the problem is compounded with the data getting that catalog and getting insights out of it but for this partnership is it speed to outcome what does the outcome that you guys are envisioning here for the customer I think it's a combination of speed as you said you know they can much more rapidly get up to speed so an analyst who needs to make a decision about specific data set whether they can use it or not and know at the point of analysis if this data is governed by policies that has been informed by big IDs so the elation catalog user can make a much more rapid decision about how to use that the second piece is the complexity and costs of compliance they can really reduce and start to winnow down their technology footprint because with the combination of the discovery that big ID provides the the the ongoing discovery the big ID provides and the enterprise it data catalog provided violation we give the framework for being able to keep up with these changes in policies as rules and as companies change so they don't have to keep reinventing the wheel every time so we think that there's a significant speed time the market advantage as well as an ability to really consolidate technology footprint well I'll add to that yeah yeah just one moment so elation when they helped create this marketplace seven years ago one of the goals there and I think we're Big Ideas assisting as well as the trusting confidence that both the users of these software's the data store of the analysts have and the data that they're using and then the the trust and confidence are building with their end consumers is much better knowing that there is the this is both bi-directional and ongoing continuously you know I've always been impressed with relations vision it's big vision around the role of the human and data and it's always been impressive and yeah I think the world spinning in that direction you starting to see that now William I want to get your thoughts with big id because you know one of the things is challenging out there from what we're hearing is you know people want to protect the sensitive data obviously with the hacks and everything else and personal information there's all kinds of regulation and believe me state by state nation by nation it's crazy complex at the same time they've got to ensure this compliance tripwires everywhere right so you have this kind of nested complex web of stuff and some real security concerns at the same time you want to make data available for machine learning and for things like that this is the real kind of things that the problem has twisted around so if I'm an enterprise I'm like oh man this is a pain in the butt so how are you guys seeing this evolve because this solution is one step in that direction what are some of the pain points what are some of the examples can you share any insights around how people are overcoming that because they want to get the data out there they want to create applications that are gonna be modern robust and augmented with whether it's augmented AI of some sort or some sort of application at the same time protecting the information and compliance it's a huge problem challenge your thoughts absolutely so to your point regulations and compliance measures both state-by-state and internationally they're growing I mean I think when we saw GDP our four years ago in the proliferation of other things whether it be in Latin America in Asia Pacific or across the United States potentially even at the federal level in the future it's not making it easier to add complexity to that every industry and many companies individually have their own policies in the way that they describe data whether what's sensitive to them is it patent numbers is it loyalty card numbers is it any number of different things where they could just that that enterprise says that this type of data is particularly sensitive the way we're trying to do this is we're saying that if we can be a force multiplier for the individuals within our organization that are in charge of the stewardship over their data whether it be on the privacy side on the security side or on the data and analytics side that's what we want to do and automation is a huge piece of this so yes the ID has a number of patents in the machine learning area around data discovery and classification cluster analysis being able to find duplicate of data out there and when we put that in conjunction with what elations doing and actually gave the users of the data the kind of unprecedented ability to curate deduplicate secure sensitive data all by a policy driven automated platform that's actually I think the magic gear is we want to make sure that when humans get involved their actions can be made how do I say this minimum minimum human interaction and when it's done it's done for a reason of remediation so they're there the second step not the first step here I'll get your thoughts you know I always riff on the idea of DevOps and it's a cloud term and when you apply that the data you talk about programmability scale automation but the humans are making calls whether you're a programmer and devops world or to a data customer of the catalog and halation i'm making decisions with my business I'm a human I'm taking action at the point of design or whatever this is where I think the magic can happen your thoughts on how this evolves for that use case because what you're doing is you're augmenting the value for the user by taking advantage of these things is is that right or am i around the right area yeah I think so I think the one way to think about elation and that analogy is that the the biggest struggle that enterprise business users have and we target the the consumers of data we're not a provider to the information suppliers if you will but the people who had need to make decisions every single day on the right set of data we're here to empower them to be able to do that with the data that they know has been given the thumbs up by people who know about the data connecting stewards who know about the subject matter at hand with the data that the analyst wants to use at the time of consumption and that powerful connection has been so effective in our customers that enabling them to do in our analytical work that they just couldn't dream of before so the key piece here is with the combination with big ID we can now layer in a privacy aware consumption angle which means if you have a question about running some customer propensity model and you don't know if you can use this data or that data the big ID data discovery platform informs the elation catalog of the usage capabilities of that given data set at the moment the analyst wants conduct his or her analysis with the appropriate data set as identified by the stewards and and as endorsed by the steward so that point in time is really critical because that's where the we can we can fundamentally shrink the decision sight yeah it's interesting and so have the point of attack on the user in this case the person in the business who's doing some real work that's where the action is yeah it's a whole nother meaning of actionable data right so you know this seems to where the values quits its agility really it's kind of what we're talking about here isn't it it is very agile on the differentiation between elation and big idea in what we're bringing to the market now is we're also bringing flexibility and you meant that the point of agility there is because we allow our customers to say what their policies are what their sense of gait is define that themselves within our platforms and then go out find that data classify and catalog at etc like that's giving them that extra flexibility the enterprise's today need so that it can make business decisions and faster and I actually operationalize data guys great job good good news it's I think this is kind of a interesting canary in the coal mine around the trends that are going on around how data is evolving what's next how you guys gonna go to market partnership obviously makes a lot of sense technical integration business model integration good fit what's next for you guys I'm sorry I mean I think the the great thing is that you know from the CEO down our organizations are very much aligned in terms of how we want to integrate our two solutions and how we want to go to market so myself and will have been really focused on making sure that the skill sets of the various constituents within both of our companies have the level of education and knowledge to bring these results to bear coupled with the integration of our two technologies well your thoughts yeah absolutely I mean between our CEOs who have a good cadence to care to myself who probably spend too much time on the phone at this point we might have to get him a guest bedroom or something alignments a huge key here ensuring that we've enabled our field to - and to evangelize this out to the marketplace itself and then doing whether it's this or our webinars or or however we're getting the news out it's important that the markets know that these capabilities are out there because the biggest obstacle honestly to adoption it's not that other solutions or build-it-yourself it's just lack of knowledge that it could be easier it could be done better that you could have you could know your data better you could catalog it better great final question to end the segment message to the potential customer out there what it what about their environment that might make them a great prospect for this solution is it is it a known problem is it a blind spot when would someone know to call you guys up in this to ship and leverage this partnership is it too much data as it's just too much many applications across geographies I'm just trying to understand the folks watching when it's an opportunity to call you guys welcome a relation perspective there that can never be too much data they the a signal that may may indicate an interest or a potential fit for us would be you know the need to be compliant with one or more data privacy regulations and as well said these are coming up left and right individual states in the in addition to the countries are rolling out data privacy regulations that require a whole set of capabilities to be in place and a very rigorous framework of compliance those those requirements and the ability to make decisions every single day all day long about what data to use and when and under what conditions are a perfect set of conditions for the use of a data catalog evacuation coupled with a data discovery and data privacy solution like big I well absolutely if you're an organization out there and you have a lot of customers you have a lot of employees you have a lot of different data sources and disparate locations whether they're on prime of the cloud these are solid indications that you should look at purchasing best-of-breed solutions like elation and Big Ideas opposed to trying to build something internally guys congratulations relations strengthening your privacy capabilities with the big ID partnership congratulations on the news and we'll we'll be tracking it thanks for coming I appreciate it thank you okay so cube coverage here in Palo Alto on remote interviews as we get through this kovat crisis we have our quarantine crew here in Palo Alto I'm John Fourier thanks for watching [Music] okay guys

Published Date : May 13 2020

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