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Breaking Analysis: Answering the top 10 questions about SuperCloud


 

>> From the theCUBE studios in Palo Alto in Boston, bringing you data driven insights from theCUBE and ETR. This is "Breaking Analysis" with Dave Vellante. >> Welcome to this week's Wikibon, theCUBE's insights powered by ETR. As we exited the isolation economy last year, supercloud is a term that we introduced to describe something new that was happening in the world of cloud. In this Breaking Analysis, we address the 10 most frequently asked questions we get around supercloud. Okay, let's review these frequently asked questions on supercloud that we're going to try to answer today. Look at an industry that's full of hype and buzzwords. Why the hell does anyone need a new term? Aren't hyperscalers building out superclouds? We'll try to answer why the term supercloud connotes something different from hyperscale clouds. And we'll talk about the problems that superclouds solve specifically. And we'll further define the critical aspects of a supercloud architecture. We often get asked, isn't this just multi-cloud? Well, we don't think so, and we'll explain why in this Breaking Analysis. Now in an earlier episode, we introduced the notion of super PaaS. Well, isn't a plain vanilla PaaS already a super PaaS? Again, we don't think so, and we'll explain why. Who will actually build and who are the players currently building superclouds? What workloads and services will run on superclouds? And 8-A or number nine, what are some examples that we can share of supercloud? And finally, we'll answer what you can expect next from us on supercloud? Okay, let's get started. Why do we need another buzzword? Well, late last year, ahead of re:Invent, we were inspired by a post from Jerry Chen called "Castles in the Cloud." Now in that blog post, he introduced the idea that there were sub-markets emerging in cloud that presented opportunities for investors and entrepreneurs that the cloud wasn't going to suck the hyperscalers. Weren't going to suck all the value out of the industry. And so we introduced this notion of supercloud to describe what we saw as a value layer emerging above the hyperscalers CAPEX gift, we sometimes call it. Now it turns out, that we weren't the only ones using the term as both Cornell and MIT have used the phrase in somewhat similar, but different contexts. The point is something new was happening in the AWS and other ecosystems. It was more than IaaS and PaaS, and wasn't just SaaS running in the cloud. It was a new architecture that integrates infrastructure, platform and software as services to solve new problems that the cloud vendors in our view, weren't addressing by themselves. It seemed to us that the ecosystem was pursuing opportunities across clouds that went beyond conventional implementations of multi-cloud. And we felt there was a structural change going on at the industry level, the supercloud, metaphorically was highlighting. So that's the background on why we felt a new catch phrase was warranted, love it or hate it. It's memorable and it's what we chose. Now to that last point about structural industry transformation. Andy Rappaport is sometimes and often credited with identifying the shift from the vertically integrated IBM mainframe era to the fragmented PC microprocesor-based era in his HBR article in 1991. In fact, it was David Moschella, who at the time was an IDC Analyst who first introduced the concept in 1987, four years before Rappaport's article was published. Moschella saw that it was clear that Intel, Microsoft, Seagate and others would replace the system vendors, and put that forth in a graphic that looked similar to the first two on this chart. We don't have to review the shift from IBM as the center of the industry to Wintel, that's well understood. What isn't as well known or accepted is what Moschella put out in his 2018 book called "Seeing Digital" which introduced the idea of "The Matrix" that's shown on the right hand side of this chart. Moschella posited that new services were emerging built on top of the internet and hyperscale clouds that would integrate other innovations and would define the next era of computing. He used the term Matrix because the conceptual depiction included not only horizontal technology rose like the cloud and the internet, but for the first time included connected industry verticals, the columns in this chart. Moschella pointed out that whereas historically, industry verticals had a closed value chain or stack and ecosystem of R&D, and production, and manufacturing, and distribution. And if you were in that industry, the expertise within that vertical generally stayed within that vertical and was critical to success. But because of digital and data, for the first time, companies were able to traverse industries, jump across industries and compete because data enabled them to do that. Examples, Amazon and content, payments, groceries, Apple, and payments, and content, and so forth. There are many examples. Data was now this unifying enabler and this marked a change in the structure of the technology landscape. And supercloud is meant to imply more than running in hyperscale clouds, rather it's the combination of multiple technologies enabled by CloudScale with new industry participants from those verticals, financial services and healthcare, manufacturing, energy, media, and virtually all in any industry. Kind of an extension of every company is a software company. Basically, every company now has the opportunity to build their own cloud or supercloud. And we'll come back to that. Let's first address what's different about superclouds relative to hyperscale clouds? You know, this one's pretty straightforward and obvious, I think. Hyperscale clouds, they're walled gardens where they want your data in their cloud and they want to keep you there. Sure, every cloud player realizes that not all data will go to their particular cloud so they're meeting customers where their data lives with initiatives like Amazon Outposts and Azure Arc, and Google Anthos. But at the end of the day, the more homogeneous they can make their environments, the better control, security, cost, and performance they can deliver. The more complex the environment, the more difficult it is to deliver on their brand promises. And of course, the lesser margin that's left for them to capture. Will the hyperscalers get more serious about cross-cloud services? Maybe, but they have plenty of work to do within their own clouds and within enabling their own ecosystems. They had a long way to go a lot of runway. So let's talk about specifically, what problems superclouds solve? We've all seen the stats from IDC or Gartner, or whomever the customers on average use more than one cloud. You know, two clouds, three clouds, five clouds, 20 clouds. And we know these clouds operate in disconnected silos for the most part. And that's a problem because each cloud requires different skills because the development environment is different as is the operating environment. They have different APIs, different primitives, and different management tools that are optimized for each respective hyperscale cloud. Their functions and value props don't extend to their competitors' clouds for the most part. Why would they? As a result, there's friction when moving between different clouds. It's hard to share data, it's hard to move work. It's hard to secure and govern data. It's hard to enforce organizational edicts and policies across these clouds, and on-prem. Supercloud is an architecture designed to create a single environment that enables management of workloads and data across clouds in an effort to take out complexity, accelerate application development, streamline operations and share data safely, irrespective of location. It's pretty straightforward, but non-trivial, which is why I always ask a company's CEO and executives if stock buybacks and dividends will yield as much return as building out superclouds that solve really specific and hard problems, and create differential value. Okay, let's dig a bit more into the architectural aspects of supercloud. In other words, what are the salient attributes of supercloud? So first and foremost, a supercloud runs a set of specific services designed to solve a unique problem and it can do so in more than one cloud. Superclouds leverage the underlying cloud native tooling of a hyperscale cloud, but they're optimized for a specific objective that aligns with the problem that they're trying to solve. For example, supercloud might be optimized for lowest cost or lowest latency, or sharing data, or governing, or securing that data, or higher performance for networking, for example. But the point is, the collection of services that is being delivered is focused on a unique value proposition that is not being delivered by the hyperscalers across clouds. A supercloud abstracts the underlying and siloed primitives of the native PaaS layer from the hyperscale cloud and then using its own specific platform as a service tooling, creates a common experience across clouds for developers and users. And it does so in a most efficient manner, meaning it has the metadata knowledge and management capabilities that can optimize for latency, bandwidth, or recovery, or data sovereignty, or whatever unique value that supercloud is delivering for the specific use case in their domain. And a supercloud comprises a super PaaS capability that allows ecosystem partners through APIs to add incremental value on top of the supercloud platform to fill gaps, accelerate features, and of course innovate. The services can be infrastructure-related, they could be application services, they could be data services, security services, user services, et cetera, designed and packaged to bring unique value to customers. Again, that hyperscalers are not delivering across clouds or on-premises. Okay, so another common question we get is, isn't that just multi-cloud? And what we'd say to that is yes, but no. You can call it multi-cloud 2.0, if you want, if you want to use it, it's kind of a commonly used rubric. But as Dell's Chuck Whitten proclaimed at Dell Technologies World this year, multi-cloud by design, is different than multi-cloud by default. Meaning to date, multi-cloud has largely been a symptom of what we've called multi-vendor or of M&A, you buy a company and they happen to use Google Cloud, and so you bring it in. And when you look at most so-called, multi-cloud implementations, you see things like an on-prem stack, which is wrapped in a container and hosted on a specific cloud or increasingly a technology vendor has done the work of building a cloud native version of their stack and running it on a specific cloud. But historically, it's been a unique experience within each cloud with virtually no connection between the cloud silos. Supercloud sets out to build incremental value across clouds and above hyperscale CAPEX that goes beyond cloud compatibility within each cloud. So if you want to call it multi-cloud 2.0, that's fine, but we chose to call it supercloud. Okay, so at this point you may be asking, well isn't PaaS already a version of supercloud? And again, we would say no, that supercloud and its corresponding superPaaS layer which is a prerequisite, gives the freedom to store, process and manage, and secure, and connect islands of data across a continuum with a common experience across clouds. And the services offered are specific to that supercloud and will vary by each offering. Your OpenShift, for example, can be used to construct a superPaaS, but in and of itself, isn't a superPaaS, it's generic. A superPaaS might be developed to support, for instance, ultra low latency database work. It would unlikely again, taking the OpenShift example, it's unlikely that off-the-shelf OpenShift would be used to develop such a low latency superPaaS layer for ultra low latency database work. The point is supercloud and its inherent superPaaS will be optimized to solve specific problems like that low latency example for distributed databases or fast backup and recovery for data protection, and ransomware, or data sharing, or data governance. Highly specific use cases that the supercloud is designed to solve for. Okay, another question we often get is who has a supercloud today and who's building a supercloud, and who are the contenders? Well, most companies that consider themselves cloud players will, we believe, be building or are building superclouds. Here's a common ETR graphic that we like to show with Net Score or spending momentum on the Y axis and overlap or pervasiveness in the ETR surveys on the X axis. And we've randomly chosen a number of players that we think are in the supercloud mix, and we've included the hyperscalers because they are enablers. Now remember, this is a spectrum of maturity it's a maturity model and we've added some of those industry players that we see building superclouds like CapitalOne, Goldman Sachs, Walmart. This is in deference to Moschella's observation around The Matrix and the industry structural changes that are going on. This goes back to every company, being a software company and rather than pattern match an outdated SaaS model, we see new industry structures emerging where software and data, and tools, specific to an industry will lead the next wave of innovation and bring in new value that traditional technology companies aren't going to solve, and the hyperscalers aren't going to solve. You know, we've talked a lot about Snowflake's data cloud as an example of supercloud. After being at Snowflake Summit, we're more convinced than ever that they're headed in this direction. VMware is clearly going after cross-cloud services you know, perhaps creating a new category. Basically, every large company we see either pursuing supercloud initiatives or thinking about it. Dell showed project Alpine at Dell Tech World, that's a supercloud. Snowflake introducing a new application development capability based on their superPaaS, our term of course, they don't use the phrase. Mongo, Couchbase, Nutanix, Pure Storage, Veeam, CrowdStrike, Okta, Zscaler. Yeah, all of those guys. Yes, Cisco and HPE. Even though on theCUBE at HPE Discover, Fidelma Russo said on theCUBE, she wasn't a fan of cloaking mechanisms, but then we talked to HPE's Head of Storage Services, Omer Asad is clearly headed in the direction that we would consider supercloud. Again, those cross-cloud services, of course, their emphasis is connecting as well on-prem. That single experience, which traditionally has not existed with multi-cloud or hybrid. And we're seeing the emergence of companies, smaller companies like Aviatrix and Starburst, and Clumio and others that are building versions of superclouds that solve for a specific problem for their customers. Even ISVs like Adobe, ADP, we've talked to UiPath. They seem to be looking at new ways to go beyond the SaaS model and add value within their cloud ecosystem specifically, around data as part of their and their customers digital transformations. So yeah, pretty much every tech vendor with any size or momentum and new industry players are coming out of hiding, and competing. Building superclouds that look a lot like Moschella's Matrix, with machine intelligence and blockchains, and virtual realities, and gaming, all enabled by the internet and hyperscale cloud CAPEX. So it's moving fast and it's the future in our opinion. So don't get too caught up in the past or you'll be left behind. Okay, what about examples? We've given a number in the past, but let's try to be a little bit more specific. Here are a few we've selected and we're going to answer the two questions in one section here. What workloads and services will run in superclouds and what are some examples? Let's start with analytics. Our favorite example is Snowflake, it's one of the furthest along with its data cloud, in our view. It's a supercloud optimized for data sharing and governance, query performance, and security, and ecosystem enablement. When you do things inside of that data cloud, what we call a super data cloud. Again, our term, not theirs. You can do things that you could not do in a single cloud. You can't do this with Redshift, You can't do this with SQL server and they're bringing new data types now with merging analytics or at least accommodate analytics and transaction type data, and bringing open source tooling with things like Apache Iceberg. And so it ticks the boxes we laid out earlier. I would say that a company like Databricks is also in that mix doing it, coming at it from a data science perspective, trying to create that consistent experience for data scientists and data engineering across clouds. Converge databases, running transaction and analytic workloads is another example. Take a look at what Couchbase is doing with Capella and how it's enabling stretching the cloud to the edge with ARM-based platforms and optimizing for low latency across clouds, and even out to the edge. Document database workloads, look at MongoDB, a very developer-friendly platform that with the Atlas is moving toward a supercloud model running document databases very, very efficiently. How about general purpose workloads? This is where VMware comes into to play. Very clearly, there's a need to create a common operating environment across clouds and on-prem, and out to the edge. And I say VMware is hard at work on that. Managing and moving workloads, and balancing workloads, and being able to recover very quickly across clouds for everyday applications. Network routing, take a look at what Aviatrix is doing across clouds, industry workloads. We see CapitalOne, it announced its cost optimization platform for Snowflake, piggybacking on Snowflake supercloud or super data cloud. And in our view, it's very clearly going to go after other markets is going to test it out with Snowflake, running, optimizing on AWS and it's going to expand to other clouds as Snowflake's business and those other clouds grows. Walmart working with Microsoft to create an on-premed Azure experience that's seamless. Yes, that counts, on-prem counts. If you can create that seamless and continuous experience, identical experience from on-prem to a hyperscale cloud, we would include that as a supercloud. You know, we've written about what Goldman is doing. Again, connecting its on-prem data and software tooling, and other capabilities to AWS for scale. And we can bet dollars to donuts that Oracle will be building a supercloud in healthcare with its Cerner acquisition. Supercloud is everywhere you look. So I'm sorry, naysayers it's happening all around us. So what's next? Well, with all the industry buzz and debate about the future, John Furrier and I, have decided to host an event in Palo Alto, we're motivated and inspired to further this conversation. And we welcome all points of view, positive, negative, multi-cloud, supercloud, hypercloud, all welcome. So theCUBE on Supercloud is coming on August 9th, out of our Palo Alto studios, we'll be running a live program on the topic. We've reached out to a number of industry participants, VMware, Snowflake, Confluent, Sky High Security, Gee Rittenhouse's new company, HashiCorp, CloudFlare. We've hit up Red Hat and we expect many of these folks will be in our studios on August 9th. And we've invited a number of industry participants as well that we're excited to have on. From industry, from financial services, from healthcare, from retail, we're inviting analysts, thought leaders, investors. We're going to have more detail in the coming weeks, but for now, if you're interested, please reach out to me or John with how you think you can advance the discussion and we'll see if we can fit you in. So mark your calendars, stay tuned for more information. Okay, that's it for today. Thanks to Alex Myerson who handles production and manages the podcast for Breaking Analysis. And I want to thank Kristen Martin and Cheryl Knight, they help get the word out on social and in our newsletters. And Rob Hof is our editor in chief over at SiliconANGLE, who does a lot of editing and appreciate you posting on SiliconANGLE, Rob. Thanks to all of you. Remember, all these episodes are available as podcasts wherever you listen. All you got to do is search Breaking Analysis podcast. It publish each week on wikibon.com and siliconangle.com. You can email me directly at david.vellante@siliconangle.com or DM me @DVellante, or comment on my LinkedIn post. And please do check out ETR.ai for the best survey data. And the enterprise tech business will be at AWS NYC Summit next Tuesday, July 12th. So if you're there, please do stop by and say hello to theCUBE, it's at the Javits Center. This is Dave Vellante for theCUBE insights powered by ETR. Thanks for watching. And we'll see you next time on "Breaking Analysis." (bright music)

Published Date : Jul 9 2022

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From the theCUBE studios and how it's enabling stretching the cloud

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Breaking Analysis: Answering the top 10 questions about supercloud


 

>> From theCUBE Studios in Palo Alto and Boston, bringing you data-driven insights from theCUBE and ETR. This is "Breaking Analysis" with Dave Vallante. >> Welcome to this week's Wikibon CUBE Insights powered by ETR. As we exited the isolation economy last year, Supercloud is a term that we introduced to describe something new that was happening in the world of cloud. In this "Breaking Analysis," we address the 10 most frequently asked questions we get around Supercloud. Okay, let's review these frequently asked questions on Supercloud that we're going to try to answer today. Look at an industry that's full of hype and buzzwords. Why the hell does anyone need a new term? Aren't hyperscalers building out Superclouds? We'll try to answer why the term Supercloud connotes something different from hyperscale clouds. And we'll talk about the problems that Superclouds solve specifically, and we'll further define the critical aspects of a Supercloud architecture. We often get asked, "Isn't this just multi-cloud?" Well, we don't think so, and we'll explain why in this "Breaking Analysis." Now, in an earlier episode, we introduced the notion of super PaaS. Well, isn't a plain vanilla PaaS already a super PaaS? Again, we don't think so, and we'll explain why. Who will actually build and who are the players currently building Superclouds? What workloads and services will run on Superclouds? And eight A or number nine, what are some examples that we can share of Supercloud? And finally, we'll answer what you can expect next from us on Supercloud. Okay, let's get started. Why do we need another buzzword? Well, late last year ahead of re:Invent, we were inspired by a post from Jerry Chen called castles in the cloud. Now, in that blog post, he introduced the idea that there were submarkets emerging in cloud that presented opportunities for investors and entrepreneurs. That the cloud wasn't going to suck the hyperscalers, weren't going to suck all the value out of the industry. And so we introduced this notion of Supercloud to describe what we saw as a value layer emerging above the hyperscalers CAPEX gift, we sometimes call it. Now, it turns out that we weren't the only ones using the term, as both Cornell and MIT, have used the phrase in somewhat similar, but different contexts. The point is, something new was happening in the AWS and other ecosystems. It was more than IS and PaaS, and wasn't just SaaS running in the cloud. It was a new architecture that integrates infrastructure, platform and software as services, to solve new problems that the cloud vendors, in our view, weren't addressing by themselves. It seemed to us that the ecosystem was pursuing opportunities across clouds that went beyond conventional implementations of multi-cloud. And we felt there was a structural change going on at the industry level. The Supercloud metaphorically was highlighting. So that's the background on why we felt a new catch phrase was warranted. Love it or hate it, it's memorable and it's what we chose. Now, to that last point about structural industry transformation. Andy Rapaport is sometimes and often credited with identifying the shift from the vertically integrated IBM mainframe era to the fragmented PC microprocesor based era in his HBR article in 1991. In fact, it was David Moschella, who at the time was an IDC analyst who first introduced the concept in 1987, four years before Rapaport's article was published. Moschella saw that it was clear that Intel, Microsoft, Seagate and others would replace the system vendors and put that forth in a graphic that looked similar to the first two on this chart. We don't have to review the shift from IBM as the center of the industry to Wintel. That's well understood. What isn't as well known or accepted is what Moschella put out in his 2018 book called "Seeing Digital" which introduced the idea of the matrix that's shown on the right hand side of this chart. Moschella posited that new services were emerging, built on top of the internet and hyperscale clouds that would integrate other innovations and would define the next era of computing. He used the term matrix, because the conceptual depiction included, not only horizontal technology rows, like the cloud and the internet, but for the first time included connected industry verticals, the columns in this chart. Moschella pointed out that, whereas historically, industry verticals had a closed value chain or stack and ecosystem of R&D and production and manufacturing and distribution. And if you were in that industry, the expertise within that vertical generally stayed within that vertical and was critical to success. But because of digital and data, for the first time, companies were able to traverse industries jump across industries and compete because data enabled them to do that. Examples, Amazon and content, payments, groceries, Apple and payments, and content and so forth. There are many examples. Data was now this unifying enabler and this marked a change in the structure of the technology landscape. And Supercloud is meant to imply more than running in hyperscale clouds. Rather, it's the combination of multiple technologies, enabled by cloud scale with new industry participants from those verticals; financial services, and healthcare, and manufacturing, energy, media, and virtually all and any industry. Kind of an extension of every company is a software company. Basically, every company now has the opportunity to build their own cloud or Supercloud. And we'll come back to that. Let's first address what's different about Superclouds relative to hyperscale clouds. Now, this one's pretty straightforward and obvious, I think. Hyperscale clouds, they're walled gardens where they want your data in their cloud and they want to keep you there. Sure, every cloud player realizes that not all data will go to their particular cloud. So they're meeting customers where their data lives with initiatives like Amazon Outposts and Azure Arc and Google Antos. But at the end of the day, the more homogeneous they can make their environments, the better control, security, costs, and performance they can deliver. The more complex the environment, the more difficult it is to deliver on their brand promises. And, of course, the less margin that's left for them to capture. Will the hyperscalers get more serious about cross cloud services? Maybe, but they have plenty of work to do within their own clouds and within enabling their own ecosystems. They have a long way to go, a lot of runway. So let's talk about specifically, what problems Superclouds solve. We've all seen the stats from IDC or Gartner or whomever, that customers on average use more than one cloud, two clouds, three clouds, five clouds, 20 clouds. And we know these clouds operate in disconnected silos for the most part. And that's a problem, because each cloud requires different skills, because the development environment is different as is the operating environment. They have different APIs, different primitives, and different management tools that are optimized for each respective hyperscale cloud. Their functions and value props don't extend to their competitors' clouds for the most part. Why would they? As a result, there's friction when moving between different clouds. It's hard to share data. It's hard to move work. It's hard to secure and govern data. It's hard to enforce organizational edicts and policies across these clouds and on-prem. Supercloud is an architecture designed to create a single environment that enables management of workloads and data across clouds in an effort to take out complexity, accelerate application development, streamline operations, and share data safely, irrespective of location. It's pretty straightforward, but non-trivial, which is why I always ask a company's CEO and executives if stock buybacks and dividends will yield as much return as building out Superclouds that solve really specific and hard problems and create differential value. Okay, let's dig a bit more into the architectural aspects of Supercloud. In other words, what are the salient attributes of Supercloud? So, first and foremost, a Supercloud runs a set of specific services designed to solve a unique problem, and it can do so in more than one cloud. Superclouds leverage the underlying cloud native tooling of a hyperscale cloud, but they're optimized for a specific objective that aligns with the problem that they're trying to solve. For example, Supercloud might be optimized for lowest cost or lowest latency or sharing data or governing or securing that data or higher performance for networking, for example. But the point is, the collection of services that is being delivered is focused on a unique value proposition that is not being delivered by the hyperscalers across clouds. A Supercloud abstracts the underlying and siloed primitives of the native PaaS layer from the hyperscale cloud, and then using its own specific platform as a service tooling, creates a common experience across clouds for developers and users. And it does so in the most efficient manner, meaning it has the metadata knowledge and management capabilities that can optimize for latency, bandwidth, or recovery or data sovereignty, or whatever unique value that Supercloud is delivering for the specific use case in their domain. And a Supercloud comprises a super PaaS capability that allows ecosystem partners through APIs to add incremental value on top of the Supercloud platform to fill gaps, accelerate features, and of course, innovate. The services can be infrastructure related, they could be application services, they could be data services, security services, user services, et cetera, designed and packaged to bring unique value to customers. Again, that hyperscalers are not delivering across clouds or on premises. Okay, so another common question we get is, "Isn't that just multi-cloud?" And what we'd say to that is yeah, "Yes, but no." You can call it multi-cloud 2.0, if you want. If you want to use, it's kind of a commonly used rubric. But as Dell's Chuck Whitten proclaimed at Dell Technologies World this year, multi-cloud, by design, is different than multi-cloud by default. Meaning, to date, multi-cloud has largely been a symptom of what we've called multi-vendor or of M&A. You buy a company and they happen to use Google cloud. And so you bring it in. And when you look at most so-called multi-cloud implementations, you see things like an on-prem stack, which is wrapped in a container and hosted on a specific cloud. Or increasingly, a technology vendor has done the work of building a cloud native version of their stack and running it on a specific cloud. But historically, it's been a unique experience within each cloud, with virtually no connection between the cloud silos. Supercloud sets out to build incremental value across clouds and above hyperscale CAPEX that goes beyond cloud compatibility within each cloud. So, if you want to call it multi-cloud 2.0, that's fine, but we chose to call it Supercloud. Okay, so at this point you may be asking, "Well isn't PaaS already a version of Supercloud?" And again, we would say, "No." That Supercloud and its corresponding super PaaS layer, which is a prerequisite, gives the freedom to store, process, and manage and secure and connect islands of data across a continuum with a common experience across clouds. And the services offered are specific to that Supercloud and will vary by each offering. OpenShift, for example, can be used to construct a super PaaS, but in and of itself, isn't a super PaaS, it's generic. A super PaaS might be developed to support, for instance, ultra low latency database work. It would unlikely, again, taking the OpenShift example, it's unlikely that off the shelf OpenShift would be used to develop such a low latency, super PaaS layer for ultra low latency database work. The point is, Supercloud and its inherent super PaaS will be optimized to solve specific problems like that low latency example for distributed databases or fast backup in recovery for data protection and ransomware, or data sharing or data governance. Highly specific use cases that the Supercloud is designed to solve for. Okay, another question we often get is, "Who has a Supercloud today and who's building a Supercloud and who are the contenders?" Well, most companies that consider themselves cloud players will, we believe, be building or are building Superclouds. Here's a common ETR graphic that we like to show with net score or spending momentum on the Y axis, and overlap or pervasiveness in the ETR surveys on the X axis. And we've randomly chosen a number of players that we think are in the Supercloud mix. And we've included the hyperscalers because they are enablers. Now, remember, this is a spectrum of maturity. It's a maturity model. And we've added some of those industry players that we see building Superclouds like Capital One, Goldman Sachs, Walmart. This is in deference to Moschella's observation around the matrix and the industry structural changes that are going on. This goes back to every company being a software company. And rather than pattern match and outdated SaaS model, we see new industry structures emerging where software and data and tools specific to an industry will lead the next wave of innovation and bring in new value that traditional technology companies aren't going to solve. And the hyperscalers aren't going to solve. We've talked a lot about Snowflake's data cloud as an example of Supercloud. After being at Snowflake Summit, we're more convinced than ever that they're headed in this direction. VMware is clearly going after cross cloud services, perhaps creating a new category. Basically, every large company we see either pursuing Supercloud initiatives or thinking about it. Dell showed Project Alpine at Dell Tech World. That's a Supercloud. Snowflake introducing a new application development capability based on their super PaaS, our term, of course. They don't use the phrase. Mongo, Couchbase, Nutanix, Pure Storage, Veeam, CrowdStrike, Okta, Zscaler. Yeah, all of those guys. Yes, Cisco and HPE. Even though on theCUBE at HPE Discover, Fidelma Russo said on theCUBE, she wasn't a fan of cloaking mechanisms. (Dave laughing) But then we talked to HPE's head of storage services, Omer Asad, and he's clearly headed in the direction that we would consider Supercloud. Again, those cross cloud services, of course, their emphasis is connecting as well on-prem. That single experience, which traditionally has not existed with multi-cloud or hybrid. And we're seeing the emergence of smaller companies like Aviatrix and Starburst and Clumio and others that are building versions of Superclouds that solve for a specific problem for their customers. Even ISVs like Adobe, ADP, we've talked to UiPath. They seem to be looking at new ways to go beyond the SaaS model and add value within their cloud ecosystem, specifically around data as part of their and their customer's digital transformations. So yeah, pretty much every tech vendor with any size or momentum, and new industry players are coming out of hiding and competing, building Superclouds that look a lot like Moschella's matrix, with machine intelligence and blockchains and virtual realities and gaming, all enabled by the internet and hyperscale cloud CAPEX. So it's moving fast and it's the future in our opinion. So don't get too caught up in the past or you'll be left behind. Okay, what about examples? We've given a number in the past but let's try to be a little bit more specific. Here are a few we've selected and we're going to answer the two questions in one section here. What workloads and services will run in Superclouds and what are some examples? Let's start with analytics. Our favorite example of Snowflake. It's one of the furthest along with its data cloud, in our view. It's a Supercloud optimized for data sharing and governance, and query performance, and security, and ecosystem enablement. When you do things inside of that data cloud, what we call a super data cloud. Again, our term, not theirs. You can do things that you could not do in a single cloud. You can't do this with Redshift. You can't do this with SQL server. And they're bringing new data types now with merging analytics or at least accommodate analytics and transaction type data and bringing open source tooling with things like Apache Iceberg. And so, it ticks the boxes we laid out earlier. I would say that a company like Databricks is also in that mix, doing it, coming at it from a data science perspective trying to create that consistent experience for data scientists and data engineering across clouds. Converge databases, running transaction and analytic workloads is another example. Take a look at what Couchbase is doing with Capella and how it's enabling stretching the cloud to the edge with arm based platforms and optimizing for low latency across clouds, and even out to the edge. Document database workloads, look at Mongo DB. A very developer friendly platform that where the Atlas is moving toward a Supercloud model, running document databases very, very efficiently. How about general purpose workloads? This is where VMware comes into play. Very clearly, there's a need to create a common operating environment across clouds and on-prem and out to the edge. And I say, VMware is hard at work on that, managing and moving workloads and balancing workloads, and being able to recover very quickly across clouds for everyday applications. Network routing, take a look at what Aviatrix is doing across clouds. Industry workloads, we see Capital One. It announced its cost optimization platform for Snowflake, piggybacking on Snowflake's Supercloud or super data cloud. And in our view, it's very clearly going to go after other markets. It's going to test it out with Snowflake, optimizing on AWS, and it's going to expand to other clouds as Snowflake's business and those other clouds grows. Walmart working with Microsoft to create an on-premed Azure experience that's seamless. Yes, that counts, on-prem counts. If you can create that seamless and continuous experience, identical experience from on-prem to a hyperscale cloud, we would include that as a Supercloud. We've written about what Goldman is doing. Again, connecting its on-prem data and software tooling, and other capabilities to AWS for scale. And you can bet dollars to donuts that Oracle will be building a Supercloud in healthcare with its Cerner acquisition. Supercloud is everywhere you look. So I'm sorry, naysayers, it's happening all around us. So what's next? Well, with all the industry buzz and debate about the future, John Furrier and I have decided to host an event in Palo Alto. We're motivated and inspired to further this conversation. And we welcome all points of view, positive, negative, multi-cloud, Supercloud, HyperCloud, all welcome. So theCUBE on Supercloud is coming on August 9th out of our Palo Alto studios. We'll be running a live program on the topic. We've reached out to a number of industry participants; VMware, Snowflake, Confluent, Skyhigh Security, G. Written House's new company, HashiCorp, CloudFlare. We've hit up Red Hat and we expect many of these folks will be in our studios on August 9th. And we've invited a number of industry participants as well that we're excited to have on. From industry, from financial services, from healthcare, from retail, we're inviting analysts, thought leaders, investors. We're going to have more detail in the coming weeks, but for now, if you're interested, please reach out to me or John with how you think you can advance the discussion, and we'll see if we can fit you in. So mark your calendars, stay tuned for more information. Okay, that's it for today. Thanks to Alex Myerson who handles production and manages the podcast for "Breaking Analysis." And I want to thank Kristen Martin and Cheryl Knight. They help get the word out on social and in our newsletters. And Rob Hof is our editor in chief over at SiliconANGLE, who does a lot of editing and appreciate you posting on SiliconANGLE, Rob. Thanks to all of you. Remember, all these episodes are available as podcasts wherever you listen. All you got to do is search, breaking analysis podcast. I publish each week on wikibon.com and siliconangle.com. Or you can email me directly at david.vellante@siliconangle.com. Or DM me @DVallante, or comment on my LinkedIn post. And please, do check out etr.ai for the best survey data in the enterprise tech business. We'll be at AWS NYC summit next Tuesday, July 12th. So if you're there, please do stop by and say hello to theCUBE. It's at the Javits Center. This is Dave Vallante for theCUBE Insights, powered by ETR. Thanks for watching. And we'll see you next time on "Breaking Analysis." (slow music)

Published Date : Jul 8 2022

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This is "Breaking Analysis" stretching the cloud to the edge

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


 

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

Published Date : Jul 2 2022

SUMMARY :

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

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Tony Baer, dbInsight | MongoDB World 2022


 

>>Welcome back to the big apple, everybody. The Cube's continuous coverage here of MongoDB world 2022. We're at the new Javet center. It's it's quite nice. It was built during the pandemic. I believe on top of a former bus terminal. I'm told by our next guest Tony bear, who's the principal at DB insight of data and database expert, longtime analyst, Tony. Good to see you. Thanks for coming >>On. Thanks >>For having us. You face to face >>And welcome to New York. >>Yeah. Right. >>New York is open for business. >>So, yeah. And actually, you know, it's interesting. We've been doing a lot of these events lately and, and especially the ones in Vegas, it's the first time everybody's been out, you know, face to face, not so much here, you know, people have been out and about a lot of masks >>In, >>In New York city, but, but it's good. And, and this new venue is fantastic >>Much nicer than the old Javits. >>Yeah. And I would say maybe 3000 people here. >>Yeah. Probably, but I think like most conferences right now are kind of, they're going through like a slow ramp up. And like for instance, you know, sapphires had maybe about one third, their normal turnout. So I think that you're saying like one third to one half seems to be the norm right now are still figuring out how we're, how and where we're gonna get back together. Yeah. >>I think that's about right. And, and I, but I do think that that in most of the cases that we've seen, it's exceeded people's expectations at tenants, but anyway sure. Let's talk about Mongo, very interesting company. You know, we've been kind of been watching their progression from just sort of document database and all the features and functions they're adding, you just published a piece this morning in venture beat is time for Mongo to get into analytics. Yes. You know? Yes. One of your favorite topics. Well, can they expand analytics? They seem to be doing that. Let's dig into it. Well, >>They're taking, they've been taking slow. They've been taking baby steps and there's good reason for that because first thing is an operational database. The last thing you wanna do is slow it down with very complex analytics. On the other hand, there's huge value to be had if you would, if you could, you know, turn, let's say a smart, if you can turn, let's say an operational database or a transaction database into a smart transaction database. In other words, for instance, you know, let's say if you're, you're, you're doing, you know, an eCommerce site and a customer has made an order, that's basically been out of the norm. Whether it be like, you know, good or bad, it would be nice. Basically, if at that point you could then have a next best action, which is where analytics comes in. But it's a very lightweight form of analytics. It's not gonna, it's actually, I think probably the best metaphor for this is real time credit scoring. It's not that they're doing your scoring you in real time. It's that the model has been computed offline so that when you come on in real time, it can make a smart decision. >>Got it. Okay. So, and I think it was your article where I, I wrote down some examples. Sure. Operational, you know, use cases, patient data. There's certainly retail. We had Forbes on earlier, right? Obviously, so very wide range of, of use cases for operational will, will Mongo, essentially, in your view, is it positioned to replace traditional R D BMS? >>Well, okay. That's a long that's, that's much, it's >>Sort of a loaded question, but >>That's, that's a very loaded question. I think that for certain cases, I think it will replace R D BMS, but I still, I mean, where I, where I depart from Mongo is I do not believe that they're going to replace all R D D BMSs. I think, for instance, like when you're doing financial transactions, you know, the world has been used to table, you know, you know, columns and rows and tables. That's, it's a natural form for something that's very structured like that. On the other hand, when you take a look, let's say OT data, or you're taking a look at home listings that tends to more naturally represent itself as documents. And so there's a, so it's kind of like documents are the way that let's say you normally see the world. Relational is the way that you would structure the world. >>Okay. Well, I like that. So, but I mean, in the early days, obviously, and even to this day, it's like the target for Mongo has been Oracle. Yeah. Right, right. And so, and then, you know, you talk to a lot of Oracle customers as do I sure. And they are running the most mission, critical applications in the world, and it's like banking and financial and so many. And, and, and, you know, they've kind of carved out that space, but are we, should we be rethinking the definition of, of mission critical? Is that changing? >>Well, number one, I think what we've traditionally associated mission critical systems with is our financial transaction systems and to a less, and also let's say systems that schedule operations. But the fact is there are many forms of operations where for instance, let's say you're in a social network, do you need to have that very latest update? Or, you know, basically, can you go off, let's say like, you know, a server that's eventually consistent. In other words, the, do you absolutely have, you know, it's just like when you go on Twitter, do you naturally see all the latest tweets? It's not the system's not gonna crash for that reason. Whereas let's say if you're doing it, you know, let's say an ATM banking ATM system, that system better be current. So I think there's a delineation. The fact is, is that in a social network, arguably that operational system is mission critical, but it's mission critical in a different way from a, you know, from, let's say a banking system. >>So coming back to this idea of, of this hybrid, I think, you know, I think Gartner calls it H tab hybrid, transactional analytics >>Is changed by >>The minute, right. I mean, you mentioned that in, in your article, but basically it's bringing analytics to transactions bringing those, those roles together. Right. Right. And you're saying with Mongo, it's, it's lightweight now take, you use two other examples in your article, my SQL heat wave. Right. I think you had a Google example as well, DB, those are, you're saying much, much heavier analytics, is that correct? Or >>I we'll put it this way. I think they're because they're coming from a relational background. And because they also are coming from companies that already have, you know, analytic database or data warehouses, if you will, that their analytic, you know, capabilities are gonna be much more fully rounded than what Mongo has at this point. It's not a criticism of a Mongo MongoDB per >>Per, is that by design though? Or ne not necessarily. Is that a function of maturity? >>I think it's function of maturity. Oh, okay. I mean, look, to a certain extent, it's also a function of design in terms of that the document model is a little, it's not impossible to basically model it for analytics, but it takes more, you know, transformation to, to decide which, you know, let's say field in that document is gonna be a column. >>Now, the big thing about some of these other, these hybrid systems is, is eliminating the need for two databases, right? Eliminating the need for, you know, complex ETL. Is, is that a value proposition that will emerge with, with Mongo in your view? >>You know, I, I mean, put it this way. I think that if you take a look at how they've, how Mongo is basically has added more function to its operations, someone talking about analytics here, for instance, adding streaming, you know, adding, adding, search, adding time series, that's a matter of like where they've eliminated the need to do, you know, transformation ETL, but that's not for analytics per se for analytics. I think through, you know, I mean through replication, there's still gonna be some transformation in terms of turning, let's say data, that's, that's formed in a document into something that's represented by columns. There is a form of transformation, you know, so that said, and Mongo is already, you know, it has some NA you know, nascent capability there, but it's all, but this is still like at a rev 1.0 level, you know, I expect a lot more >>Of so refin you, how Amazon says in the fullness of time, all workloads will be in the cloud. And we could certainly debate that. What do we mean by cloud? So, but there's a sort of analog for Mongo that I'll ask you in the fullness of time, will Mongo be in a position to replace data warehouses or data lakes? No. Or, or, or, and we know the answer is no. So that's of course, yeah. But are these two worlds on a quasi collision course? I think they >>More on a convergence course or the collision course, because number one is I said, the first principle and operational database is the last thing you wanna do is slow it down. And to do all this complex modeling that let's say that you would do in a data bricks, or very complex analytics that you would do in a snowflake that is going to get, you know, you know, no matter how much you partition the load, you know, in Atlas, and yes, you can have separate nodes. The fact is you really do not wanna burden the operational database with that. And that's not what it's meant for, but what it is meant for is, you know, can I make a smart decision on the spot? In other words, kinda like close the loop on that. And so therefore there's a, a form of lightweight analytic that you can perform in there. And actually that's also the same principle, you know, on which let's say for instance, you know, my SQL heat wave and Allo DBR based on, they're not, they're predicated on, they're not meant to replace, you know, whether it be exit data or big query, the idea there is to do more of the lightweight stuff, you know, and keep the database, you know, keep the operations, you know, >>Operating. And, but from a practitioner's standpoint, I, I, I can and should isolate you're saying that node, right. That's what they'll do. Sure. How does that affect cuz my understanding is that that the Mon Mongo specifically, but I think document databases generally will have a primary node. Right? And then you can set up secondary nodes, which then you have to think about availability, but, but would that analytic node be sort of fenced off? Is that part of the >>Well, that's actually what they're, they've already, I mean, they already laid the groundwork for it last year, by saying that you can set up separate nodes and dedicate them to analytics and what they've >>As, as a primary, >>Right? Yes, yes. For analytics and what they've added, what they're a, what they are adding this year is the fact to say like that separate node does not have to be the same instance class, you know, as, as, as, as the, >>What, what does that mean? Explain >>That in other words, it's a, you know, you could have BA you know, for instance, you could have a node for operations, that's basically very eye ops intensive, whereas you could have a node let's say for analytics that might be more compute intensive or, or more he, or, or more heavily, you know, configured with, with memory per se. And so the idea here is you can tailor in a node to the workload. So that's, you know what they're saying with, you know, and I forget what they're calling it, but the idea that you can have a different type, you can specify a different type of node, a different type of instance for the analytic node, I think is, you know, is a major step forward >>And that, and that that's enabled by the cloud and architecture. >>Of course. Yes. I mean, we're separating, compute from data is, is, is the starter. And so yeah. Then at that point you can then start to, you know, you know, to go less vanilla. I think, you know, the re you know, the, you know, the, I guess the fruition of this is going to be when they say, okay, you can run your, let's say your operational nodes, you know, dedicated, but we'll let you run your analytic nodes serverless. Can't do it yet, but I've gotta believe that's on the roadmap. >>Yeah. So seq brings a lot of overhead. So you get MQL, but now square this circle for me, cuz now you got Mago talking sequel. >>They had to start doing that some time. I mean, and I it's been a court take I've had from them from the, from the get go, which I said, I understand that you're looking at this as an alternative to SQL and that's perfectly valid, but don't deny the validity of SQL or the reason why we, you know, we need it. The fact is that you have, okay, the number, you know, according to Ty index, JavaScript is the seventh, most popular language. Most SQL follows closely behind at the ninth, most popular language you don't want to cl. And the fact is those people exist in the enterprise and they're, and they're disproportionately concentrated in analytics. I mean, you know, it's getting a little less, so now we're seeing like, you know, basically, you know, Python, the programmatic, but still, you know, a lot of sequel expertise there. It does not make, it makes no sense for Mongo to, to, to ignore or to overlook that audience. I think now they're, you know, you know, they're taking baby steps to start, you know, reaching out to them. >>It's interesting. You see it going both ways. See Oracle announces a Mongo, DB, Mongo. I mean, it's just convergence. You called it not, I love collisions, you know, >>I know it's like, because you thrive on drama and I thrive on can't. We all love each other, but you know, act. But the thing is actually, I've been, I wrote about this. I forget when I think it was like 2014 or 2016. It's when we, I was noticed I was noting basically the, you know, the rise of all these specialized databases and probably Amazon, you know, AWS is probably the best exemplar of that. I've got 15 or 16 or however, number of databases and they're all dedicated purpose. Right. But I also was, you know, basically saw that inevitably there was gonna be some overlap. It's not that all databases were gonna become one and the same we're gonna be, we're gonna become back into like the, you know, into a pan G continent or something like that. But that you're gonna have a relational database that can do JSON and, and a, and a document database that can do relational. I mean, you know, it's, to me, that's a no brainer. >>So I asked Andy Ja one time, I'd love to get your take on this, about those, you know, multiple data stores at the time. They probably had a thousand. I think they're probably up to 15 now, right? Different APIs, different S et cetera. And his response. I said, why don't you make it easier for, for customers and maybe build an abstraction or converge these? And he said, well, it's by design. What if you buy this? And, and what your thoughts are, cuz I, you know, he's a pretty straight shooter. Yeah. It's by design because it allows us as the market moves, we can move with it. And if we, if we give developers access to those low level primitives and APIs, then they can move with, with at market speed. Right. And so that again, by design, now we heard certainly Mongo poo pooing that today they didn't mention, they didn't call out Amazon. Yeah. Oracle has no compunction about specifically calling out Amazon. They do it all the time. What do you make of that? Can't Amazon have its cake and eat it too. In other words, extend some of the functionality of those specific databases without going to the Swiss army. >>I I'll put it this way. You, you kind of tapped in you're, you're sort of like, you know, killing me softly with your song there, which is that, you know, I was actually kind of went on a rant about this, actually know in, you know, come, you know, you know, my year ahead sort of out predictions. And I said, look, cloud folks, it's great that you're making individual SAS, you know, products easy to use. But now that I have to mix and match SAS products, you know, the burden of integration is on my shoulders. Start making my life easier. I think a good, you know, a good example of this would be, you know, for instance, you could take something like, you know, let's say like a Google big query. There's no reason why I can't have a piece of that that might, you know, might be paired, say, you know, say with span or something like that. >>The idea being is that if we're all working off a common, you know, common storage, we, you know, it's in cloud native, we can separate the computer engines. It means that we can use the right engine for the right part of the task. And the thing is that maybe, you know, myself as a consumer, I should not have to be choosing between big query and span. But the thing is, I should be able to say, look, I want to, you know, globally distribute database, but I also wanna do some analytics and therefore behind the scenes, you know, new microservices, it could connect the two wouldn't >>Microsoft synapse be an example of doing that. >>It should be an example. I wish I, I would love to hear more from Microsoft about this. They've been radio silent for about the past two or three years in data. You hardly hear about it, but synapse is actually those actually one of the ideas I had in mind now keep in mind that with synapse, you're not talking about, let's say, you know, I mean, it's, it's obviously a sequel data warehouse. It's not pure spark. It's basically their, it was their curated version of spark, but that's fine. But again, I would love to hear Microsoft talk more about that. They've been very quiet. >>Yeah. You, you, the intent is there to >>Simplify >>It exactly. And create an abstraction. Exactly. Yeah. They have been quiet about it. Yeah. Yeah. You would expect that, that maybe they're still trying to figure it out. So what's your prognosis from Mongo? I mean, since this company IP, you know, usually I, I tell and I tell everybody this, especially my kids, like don't buy a stock at IPO. You'll always get a better chance at a cheaper price to buy it. Yeah. And even though that was true with Mongo, you didn't have a big window. No. Like you did, for instance, with, with Facebook, certainly that's been the case with snowflake and sure. Alibaba, I mean, I name a zillion style was almost universal. Yeah. But, but since that, that, that first, you know, few months, period, this, this company has been on a roll. Right. And it, it obviously has been some volatility, but the execution has been outstanding. >>No question about that. I mean, the thing is, look what I, what I, and I'm just gonna talk on the product side on the sales side. Yeah. But on the product side, from the get go, they made a product that was easy for developers. Whereas let's say someone's giving an example, for instance, Cosmo CB, where to do certain operations. They had to go through multiple services in, you know, including Azure portal with Atlas, it's all within Atlas. So they've really, it's been kinda like design thinking from the start initially with, with the core Mongo DB, you know, you, the on premise, both this predates Atlas, I mean, part of it was that they were coming with a language that developers knew was just Javas script. The construct that they knew, which was JS on. So they started with that home core advantage, but they weren't the only ones doing that. But they did it with tooling that was very intuitive to developers that met developers, where they lived and what I give them, you know, then additional credit for is that when they went to the cloud and it wasn't an immediate thing, Atlas was not an overnight success, but they employed that same design thinking to Atlas, they made Atlas a good cloud experience. They didn't just do a lift and shift the cloud. And so that's why today basically like five or six years later, Atlas's most of their business. >>Yeah. It's what, 60% of the business now. Yeah. And then Dave, on the, on the earning scholar, maybe it wasn't Dave and somebody else in response to question said, yeah, ultimately this is the future will be be 90% of the business. I'm not gonna predict when. So my, my question is, okay, so let's call that the midterm midterm ATLA is gonna be 90% of the business with some exceptions that people just won't move to the cloud. What's next is the edge. A new opportunity is Mongo architecturally suited for the, I mean, it's certainly suited for the right, the home Depot store. Sure. You know, at the edge. Yeah. If you, if you consider that edge, which I guess it is form of edge, but how about the far edge EVs cell towers, you know, far side, real time, AI inferencing, what's the requirement there, can Mongo fit there? Any thoughts >>On that? I think the AI and the inferencing stuff is interesting. It's something which really Mongo has not tackled yet. I think we take the same principle, which is the lightweight stuff. In other words, you'll say, do let's say a classification or a prediction or some sort of prescriptive action in other words, where you're not doing some convolution, neural networking and trying to do like, you know, text, text to voice or, or, or vice versa. Well, you're not trying to do all that really fancy stuff. I think that's, you know, if you're keeping it SIM you know, kinda like the kiss principle, I think that's very much within Mongo's future. I think with the realm they have, they basically have the infrastructure to go out to the edge. I think with the fact that they've embraced GraphQL has also made them a lot more extensible. So I think they certainly do have, you know, I, I do see the edge as being, you know, you know, in, in, you know, in their, in their pathway. I do see basically lightweight analytics and lightweight, let's say machine learning definitely in their >>Future. And, but, and they would, would you agree that they're in a better position to tap that opportunity than say a snowflake or an Oracle now maybe M and a can change that. R D can maybe change that, but fundamentally from an architectural standpoint yeah. Are they in a better position? >>Good question. I think that that Mongo snowflake by virtual fact, I mean that they've been all, you know, all cloud start off with, I think makes it more difficult, not impossible to move out to the edge, but it means that, and I, and know, and I, and I said, they're really starting to making some tentative moves in that direction. I'm looking forward to next week to, you know, seeing what, you know, hearing what we're gonna, what they're gonna be saying about that. But I do think, right. You know, you know, to answer your question directly, I'd say like right now, I'd say Mongo probably has a, you know, has a head start there. >>I'm losing track of time. I could go forever with you. Tony bear DB insight with tons of insights. Thanks so much for coming back with. >>It's only one insight insight, Dave. Good to see you again. All >>Right. Good to see you. Thank you. Okay. Keep it right there. Right back at the Java center, Mongo DB world 2022, you're watching the cube.

Published Date : Jun 7 2022

SUMMARY :

We're at the new Javet center. You face to face and especially the ones in Vegas, it's the first time everybody's been out, you know, And, and this new venue is fantastic And like for instance, you know, sapphires had maybe about one third, their normal turnout. you just published a piece this morning in venture beat is time for Mongo It's that the model has been computed offline so that when you come on in Operational, you know, use cases, patient data. That's a long that's, that's much, it's transactions, you know, the world has been used to table, you know, you know, columns and rows and and then, you know, you talk to a lot of Oracle customers as do I sure. you know, it's just like when you go on Twitter, do you naturally see all the latest tweets? I mean, you mentioned that in, in your article, but basically it's bringing analytics to transactions bringing are coming from companies that already have, you know, analytic database or data warehouses, Per, is that by design though? but it takes more, you know, transformation to, to decide which, you know, Eliminating the need for, you know, complex ETL. I think through, you know, I mean through replication, there's still gonna be some transformation in terms of turning, but there's a sort of analog for Mongo that I'll ask you in the fullness of time, And actually that's also the same principle, you know, on which let's say for instance, And then you can set up secondary nodes, which then you have to think about availability, the fact to say like that separate node does not have to be the same instance class, you know, for the analytic node, I think is, you know, is a major step forward you know, the re you know, the, you know, the, I guess the fruition of this is going to be when they but now square this circle for me, cuz now you got Mago talking sequel. I think now they're, you know, you know, they're taking baby steps to start, you know, reaching out to them. You called it not, I love collisions, you know, I mean, you know, it's, to me, that's a no brainer. I said, why don't you make it easier for, for customers and maybe build an abstraction or converge these? I think a good, you know, a good example of this would be, you know, for instance, you could take something But the thing is, I should be able to say, look, I want to, you know, globally distribute database, let's say, you know, I mean, it's, it's obviously a sequel data warehouse. I mean, since this company IP, you know, usually I, I tell and I tell everybody this, to developers that met developers, where they lived and what I give them, you know, but how about the far edge EVs cell towers, you know, you know, you know, in, in, you know, in their, in their pathway. And, but, and they would, would you agree that they're in a better position to tap that opportunity I mean that they've been all, you know, all cloud start off with, I could go forever with you. Good to see you again. Right back at the Java center, Mongo DB

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Radhika Krishnan, Hitachi Vantara and Peder Ulander, MongoDB | MongoDB World 20222


 

(upbeat music) >> Welcome back to the Javits in the big apple, New York City. This is theCUBE's coverage of MongoDB World 2022. We're here for a full day of coverage. We're talking to customers, partners, executives and analysts as well. Peder Ulander is here. He's the Chief Marketing Officer of MongoDB and he's joined by Radhika Krishnan, who's the Chief Product Officer at Hitachi Ventara. Folks, welcome back to theCUBE. Great to see you both again. >> Good to see you. >> Thank you David, it's good to be back again. >> Peder, first time since 2019, we've been doing a lot of these conferences and many of them, it's the first time people have been out in a physical event in three years. Amazing. >> I mean, after three years to come back here in our hometown of New York and get together with a few thousand of our favorite customers, partners, analysts, and such, to have real good discussions around where we're taking the world with regards to our developer data platform. It's been great. >> I think a big part of that story of course, is ecosystem and partnerships and Radhika, I remember I was at an event when Hitachi announced its strategy and it's name change, and really tried to understand why and the what's behind that. And of course, Hitachi's a company that looks out over the long term, and of course it has to perform tactically, but it thinks about the future. So give us the update on what's new at Hitachi Ventara, especially as it relates to data. >> Sure thing, Dave. As many, many folks might be aware, there's a very strong heritage that Hitachi has had in the data space, right. By virtue of our products and our presence in the data storage market, which dates back to many decades, right? And then on the industrial side, the parent company Hitachi has been heavily focused on the OT sector. And as you know, there is a pretty significant digital transformation underway in the OT arena, which is all being led by data. So if you look at our mission statement, for instance, it's actually engineering the data driven because we do believe that data is the fundamental platform that's going to drive that digital transformation, irrespective of what industry you're in. >> So one of the themes that you guys both talk about is modernization. I mean, you can take a cloud, I remember Alan Nance, who was at the time, he was a CIO at Philips, he said, look, you could take a cloud workload, or on-prem workload, stick it into the cloud and lift it and shift it. And in your case, you could just put it on, run it on an RDBMS, but you're not going to affect the operational models. >> Peder Ulander: It's just your mess for less, man. >> If you do that. >> It's your mess, for less. >> And so, he goes, you'll get a few, you know, you'll get a couple of zeros out of that. But if you want to have, in his case, billion dollar impact to the business, you have to modernize. So what does modernize mean to each of you? >> Maybe Peder, you can start. >> Yeah, no, I'm happy to start. I think it comes down to what's going on in the industry. I mean, we are truly moving from a world of data centers to centers of data, and these centers of data are happening further and further out along the network, all the way down to the edges. And if you look at the transformation of infrastructure or software that has enabled us to get there, we've seen apps go from monoliths to microservices. We've seen compute go from physical to serverless. We've seen networking go from old wireline copper to high powered 5G networks. They've all transformed. What's the one layer that hasn't completely transformed yet, data, right? So if we do see this world where things are getting further and further out, you've got to rethink your data architecture and how you basically support this move to modernization. And we feel that MongoDB with our partners, especially with Hitachi, we're best suited to really kind of help with this transition for our customers as they move from data centers to centers of data. >> So architecture. And at the failure, I will say this and you tell me if you agree or not. A lot of the failures of sort of the big data architectures of today are there's, everything's in this monolithic database, you've got to go through a series of hyper-specialized professionals to get to the data. If you're a business individual, you're so frustrated because the market's changing faster than you can get answers. So you guys, I know, use this concept of data fabric, people talk about data mesh. So how do you think, Radhika, about modernization in the future of data, which by its very nature is distributed? >> Yeah. So Dave, everybody talks about the hybrid cloud, right? And so the reality is, every one of our customers is having to deal with data that's straddled across on-prem as well as the public cloud and many other places as well. And so it becomes incredibly important that you have a fairly seamless framework, that's relatively low friction, that allows you to go from the capture of the data, which could be happening at the edge, could be happening at the core, any number of places, all the way to publish, right. Which is ultimately what you want to do with data because data exists to deliver insights, right? And therefore you dramatically want to minimize the friction in the process. And that is exactly what we're attempting to do with our data fabric construct, right. We're essentially saying, customers don't have to worry about, like you mentioned, they may have federated data structures, architectures, data lakes, fitting in multiple locations. How do you ensure that you're not having to double up custom code in order to drive the pipelines, in order to drive the data movement from one location to the other and so forth. And so essentially what we're providing is a mechanism whereby they can be confident about the quality of the data at the end of the day. And this is so paramount. Every customer that I talk to is most worried about ensuring that they have data that is trustworthy. >> So this is a really important point because I've always felt like, from a data quality standpoint, you know you get the data engineers who might not have any business context, trying to figure out the quality problem. If you can put the data responsibility in the hands of the business owner, who, he or she, has context, that maybe starts to solve this problem. There's some buts though. So infrastructure becomes an operational detail. Let's hide that. Don't worry about it. Figure it out, okay, so the business can run, but you need self-service infrastructure and you have to figure out how to have federated governance so that the right people can have access. So how do you guys think about that problem in the future? 'Cause it's almost like this vision creates those two challenges. Oh, by the way, you got to get your organization behind it. Right, 'cause there's an organizational construct as well. But those are, to me, wonderful opportunities but they create technology challenges. So how are you guys thinking about that and how are you working on it? >> Yeah, no, that's exactly right, Dave. As we talk to data practitioners, the recurring theme that we keep hearing is, there is just a lot of use cases that require you to have deep understanding of data and require you to have that background in data sciences and so on, such as data governance and vary for their use cases. But ultimately, the reason that data exists is to be able to drive those insights for the end customer, for the domain expert, for the end user. And therefore it becomes incredibly important that we be able to bridge that chasm that exists today between the data universe and the end customer. And that is what we essentially are focused on by virtue of leaning into capabilities like publishing, right? Like self, ad hoc reporting and things that allow citizen data scientists to be able to take advantage of the plethora of data that exists. >> Peder, I'm interested in this notion of IT and OT. Of course, Hitachi is a partner, established in both. Talk about Mongo's position in thinking. 'Cause you've got on-prem customers, you're running now across all clouds. I call it super cloud connecting all these things. But part of that is the edge. Is Mongo running there? Can Mongo run there, sort of a lightweight version? How do you see that evolve? Give us some details there. >> So I think first and foremost, we were born on-prem, obviously with the origins of MongoDB, a little over five years ago, we introduced Atlas and today we run across a hundred different availability zones around the globe, so we're pretty well covered there. The third bit that I think people miss is we also picked up a product called Realm. Realm is an embedded database for mobile devices. So if you think about car companies, Toyota, for example, building connected cars, they'll have Realm in the car for the telemetry, connects back into an Atlas system for the bigger operational side of things. So there's this seamless kind of, or consistency that runs between data center to cloud to edge to device, that MongoDB plays across all the way through. And then taking that to the next level. We talked about this before we sat down, we're also building in the security elements of that because obviously you not only have that data in rest and data in motion, but what happens when you have that data in use? And announced, I think today? We purchased a little company, Aroki, experts in encryption, some of the smartest security minds on the planet. And today we introduce query-able encryption, which basically enables developers, without any security background, to be able to build searchable capabilities into their applications to access data and do it in a way where the security rules and the privacy all remain constant, regardless of whether that developer or the end user actually knows how that works. >> This is a great example of people talk about shift left, designing security in, for the developer, right from the start, not as a bolt-on. It's a great example. >> And I'm actually going to ground that with a real life customer example, if that's okay, Dave. We actually have a utility company in North Carolina that's responsible for energy and water. And so you can imagine, I mean, you alluded to the IO to use case, the industrial use case and this particular customer has to contend with millions of sensors that are constantly streaming data back, right. And now think about the challenge that they were encountering. They had all this data streaming in and in large quantities and they were actually resident on numerous databases, right. And so they had this very real challenge of getting to that quality data that I, data quality that I talked about earlier, as well, they had this challenge of being able to consolidate all of it and make sense of it. And so that's where our partnership with MongoDB really paid off where we were able to leverage Pentaho to integrate all of the data, have that be resident on MongoDB. And now they're leveraging some of the data capabilities, the data fabric capabilities that we bring to the table to actually deliver meaningful insights to their customers. Now their customers are actually able to save on their electricity and water bills. So great success story right there. >> So I love the business impact there, and also you mentioned Pentaho, I remember that acquisition was transformative for Hitachi because it was the beginning of sort of your new vector, which became Hitachi Ventara. What is Lumada? That's, I presume the evolution of Pentaho? You brought in organic, and added capabilities on top of that, bringing in your knowledge of IOT and OT? Explain what Lumada is. >> Yeah, no, that's a great question, Dave. And I'll say this, I mentioned this early on, we fundamentally believe that data is the backbone for all digital transformation. And so to that end, Hitachi has actually been making a series of acquisitions as well as investing organically to build up these data capabilities. And so Pentaho, as you know, gives us some of that front-end capability in terms of integrations and so forth. And the Lumada platform, the umbrella brand name is really connoting everything that we do in the data space that allow customers to go through that, to derive those meaningful insights. Lumada literally stands for illuminating data. And so that's exactly what we do. Irrespective of what vertical, what use case we're talking about. As you know very well, Hitachi is very prominent in just about every vertical. We're in like 90% of the Fortune 500 customers across banking and financial, retail, telecom. And as you know very well, very, very strong in the industrial space as well. >> You know, it's interesting, Peder, you and Radhika were both talking about this sort of edge model. And so if I understand it correctly, and maybe you could bring in sort of the IOT requirements as well. You think about AI, most of the AI that's done today is modeling in the cloud. But in the future and as we're seeing this, it's real-time inferencing at the edge and it's massive amounts of data. But you're probably not, you're going to persist some, I'm hearing, probably not going to persist all of it, some of it's going to be throwaway. And then you're going to send some back to the cloud. I think of EVs or, a deer runs in front of the vehicle and they capture that, okay, send that back. The amounts of data is just massive. Is that the right way to think about this new model? Is that going to require new architectures and hearing that Mongo fits in. >> Yeah. >> Beautifully with that. >> So this is a little bit what we talked about earlier, where historically there have been three silos of data. Whether it's classic system of record, system of engagement or system of intelligence and they've each operated independently. But as applications are pushing in further and further to the edge and real time becomes more and more important, you need to be able to take all three types of workloads or models, data models and actually incorporate it into a single platform. That's the vision we have behind our developer data platform. And it enables us to handle those transactional, operational and analytical workloads in real time, right. One of the things that we announced here this week was our columnar indexing, which enables some of that step into the analytics so that we can actually do in-app analytics for those things that are not going back into the data warehouse or not going back into the cloud, real time happening with the application itself. >> As you add, this is interesting, as basically Mongo's becoming this all-in-one database, as you add those capabilities, are you able to preserve, it sounds like you've still focused on simplicity, developer product productivity. Are there trade off, as you add, does it detract from those things or are you able to architecturally preserve those? >> I think it comes down to how we're thinking through the use case and what's going to be important for the developers. So if you look at the model today, the legacy model was, let's put it all in one big monolith. We recognize that that doesn't work for everyone but the counter to that was this explosion of niche databases, right? You go to certain cloud providers, you get to choose between 15 different databases for whatever workload you want. Time series here, graph here, in-memory here. It becomes a big mess that is pushed back on the company to glue back together and figure out how to work within those systems. We're focused on really kind of embracing the document model. We obviously believe that's a great general purpose model for all types of workloads. And then focusing in on not taking a full search platform that's doing everything from log management all the way through in-app, we're optimizing for in-app experiences. We're optimizing analytics for in-app experiences. We're optimizing all of the different things we're doing for what the developer is trying to go accomplish. That helps us maintain consistency on the architectural design. It helps us maintain consistency in the model by which we're engaging with our customers. And I think it helps us innovate as quickly as we've been been able to innovate. >> Great, thank you. Radhika, we'll give you the last word. We're seeing this convergence of function in the data based, data models, but at the same time, we're seeing the distribution of data. We're not, you're clearly not fighting that, you're embracing that. What does the future look like from Hitachi Ventara's standpoint over the next half decade or even further out? >> So, we're trying to lean into what customers are trying to solve for, Dave. And so that fundamentally comes down to use cases and the approaches just may look dramatically different with every customer and every use case, right? And that's perfectly fine. We're leaning into those models, whether that is data refining on the edge or the core or the cloud. We're leaning into it. And our intent really is to ensure that we're providing that frictionless experience from end to end, right. And I'll give a couple of examples. We had this very large bank, one of the top 10 banks here in the US, that essentially had multiple data catalogs that they were using to essentially sort through their metadata and make sense of all of this data that was coming into their systems. And we were able to essentially, dramatically simplify it. Cut down on the amount of time that it takes to deliver insights to them, right. And it was like, the metric shared was 600% improvement. And so this is the kind of thing that we're manically focused on is, how do we deliver that quantifiable end-customer improvement, right? Whether it's in terms of shortening the amount to drive the insights, whether it's in terms of the number of data practitioners that they have to throw at a problem, the level of manual intervention that is required, so we're automating everything. We're trying to build in a lot of security as Peder talked about, that is a common goal for both sides. We're trying to address it through a combination of security solutions at varying ends of the spectrum. And then finally, as well, delivering that resiliency and scale that is required. Because again, the one thing we know for sure that we can take for granted is data is exploding, right? And so you need that scale, you need that resiliency. You need for customers to feel like there is high quality, it's not dirty, it's not dark and it's something that they can rely upon. >> Yeah, if it's not trusted, they're not going to use it. The interesting thing about the partnership, especially with Hitachi, is you're in so many different examples and use cases. You've got IT. You've got OT. You've got industrial and so many different examples. And if Mongo can truly fit into all those, it's just, the rocket ship's going to continue. Peder, Radhika, thank you so much for coming back in theCUBE, it's great to see you both. >> Thank you, appreciate it. >> Thank you, my pleasure. >> All right. Keep it right there. This is Dave Vellante from the Javits Center in New York City at MongoDB World 2022. We'll be right back. (upbeat music)

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Sanjeev Mohan, SanjMo | MongoDB World 2022


 

>>Mhm. Mhm. Yeah. Hello, everybody. Welcome to the Cubes. Coverage of Mongo db World 2022. This is the first Mongo live mongo DB World. Since 2019, the Cube has covered a number of of mongo shows actually going back to when the company was called Engine. Some of you may recall Margo since then has done an i p o p o in 2017, it's It's been a rocket ship company. It's up. It'll probably do 1.2 billion in revenue this year. It's got a billion dollars in cash on the balance sheet. Uh, despite the tech clash, it's still got a 19 or $20 million valuation growing above 50% a year. Uh, company just had a really strong quarter, and and there seems to be hitting on all cylinders. My name is Dave Volonte. And here to kick it off with me as Sanjeev Mohan, who was the principal at Sanremo. So great to see you. You become a wonderful cube contributor, Former Gartner analyst. Really sharp? No, the database space in the data space generally really well, so thanks for coming back on >>you. You know, it's just amazing how exciting. The entire data space is like they used to say. Companies are All companies are software companies. All companies are data >>companies, >>so data has become the the foundation. >>They say software is eating the world. Data is eating software and a little little quips here. But this is a good size show. Four or 5000 people? I don't really know exactly. You know the numbers, but it's exciting. And of course, a lot of financial services were here at the Javits Centre. Um, let's let's lay down the basics for people of Mongo, DB is a is a document database, but they've been advancing. That's a document database as an alternative to R D. B M s. Explain that, but explain also how Mongo has broadened its capabilities and serving a lot more use cases. >>So that's my forte is like databases technology. But before even I talk about that, I have to say I am blown away by this mongo db world because mongo db uh, in beckons to all of us during the pandemic has really come of age, and it's a billion dollar company. Now we are in this brand new Javits Centre That's been built during the pandemic. And and now the company is holding this event the high 1000 people last year. So I think this company has really grown. And why has it drawn is because its offerings have grown to more developers than just a document database document databases. Revolution revolutionised the whole DBM s space where no sequel came up. Because for a change, you don't need a structured schema. You could start bringing data in this document model scheme, uh, like varying schema. But since then, they've added, uh, things like such. So they have you seen such? They added a geospatial. They had a time series last year, and this year they keep adding more and more so like, for example, they are going to add some column store indexes. So from being a purely transactional, they are now starting to address analytical. And they're starting to address more use cases, like, you know, uh, like what? What was announced this morning at keynote was faceted search. So they're expanding the going deeper and deeper into these other data >>structures. Taking Lucy made a search of first class citizens, but I want to ask you some basic questions about document database. So it's no fixed schemes. You put anything in there? Actually, so more data friendly. They're trying to simplify the use of data. Okay, that's that's pretty clear. >>What are the >>trade offs of a document database? >>So it's not like, you know, one technology has solved every problem. Every technology comes with its own tradeoffs. So in a document, you basically get rid of joining tables with primary foreign keys because you can have a flexible schemer and so and wouldn't sing single document. So it's very easy to write and and search. But when you have a lot of repeated elements and you start getting more and more complex, your document size can start expanding quite a bit because you're trying to club everything into a single space. So So that is where the complexity goes >>up. So what does that mean for for practitioner, it means they have to think about what? How they how they are ultimately gonna structure, how they're going to query so they can get the best performances that right. So they're gonna put some time in up front in order to make it pay back at the tail end, but clearly it's it's working. But is that the correct way of thinking about >>100% in, uh, the sequel world? You didn't care about the sequel. Analytical queries You just cared about how your data model was structured and then sequel would would basically such any model. But in the new sequel world, you have to know your patterns before you. You invest into the database so it's changed that equation where you come in knowing what you are signing up. >>So a couple of questions, if I can kind of Colombo questions so to Margo talks about how it's really supporting mission critical applications and at the same time, my understanding is the architecture of mongo specifically, or a document database in general. But specifically, you've got a a primary, uh, database, and you and that is the sort of the master, if you will, right and then you can create secondaries. But so help me square the circle between mission critical and really maybe a more of a focus on, say, consistency versus availability. Do customers have to sort of think about and design in that availability? How do they do that? How a Mongol customers handling that. >>So I have to say, uh, my experience of mongo db was was that the whole company, the whole ethos was developed a friendly. So, to be honest, I don't think Mongo DB was as much focused on high availability, disaster, recovery, even security. To some extent, they were more focused on developer productivity. >>And you've experienced >>simplicity. Make it simple, make the developers productive as fast as you can. What has really, uh, was an inflexion point for Mongo DB was the launch of Atlas because the atlas they were able to introduce all of these management features and hide it abstracted from the end users. So now they've got, you know, like 2014 is when Atlas came out and it was in four regions. But today they're in 100 regions, so they keep expanding, then every hyper scale cloud provider, and they've abstracted that whole managed. >>So Atlas, of course, is the managed database as a service in the cloud. And so it's those clouds, cloud infrastructure and cloud tooling that has allowed them to go after those high available application. My other question is when you talk about adding search, geospatial time series There are a lot of specialised databases that take time series persons. You have time series specialists that go deep into time series can accompany like Mongo with an all in one strategy. Uh, how close can they get to that functionality? Do they have to be? You know, it's kind of a classic Microsoft, you know, maybe not perfect, but good enough. I mean, can they compete with those other areas? Uh, with those other specialists? And what happens to those specialists if the answer is yes. What's your take on that? If that question >>makes sense So David, this is not a mongo db only issue This is this is an issue with, you know, anytime serious database, any graph database Should I put a graph database or should I put a multifunctional database multidimensional database? And and I really think there is no right or wrong answer. It just really comes down to your use case. If you have an extremely let's, uh, complex graph, you know, then maybe you should go with best of breed purpose built database. But more and more, we're starting to see that organisations are looking to simplify their environment by going in for maybe a unified database that has multiple data structures. Yeah, well, >>it's certainly it's interesting when you hear Mongo speak. They don't They don't call out Oracle specifically, but when they talk about legacy r d m r d B m s that don't scale and are complex and are expensive, they're talking about Oracle first. And of course, there are others. Um, And then when they talk about, uh, bespoke databases the horses for courses, databases that they show a picture of that that's like the poster child for Amazon. Of course, they don't call out Amazon. They're a great partner of Amazon's. But those are really the sort of two areas that mangoes going after, Um, now Oracle. Of course, we'll talk about their converged strategy, and they're taking a similar approach. But so help us understand the difference. There is just because they're sort of or close traditional r d B M s, and they have all the drawbacks associated with that. But by the way, there are some benefits as well. So how do you see that all playing >>out? So you know it. Really, uh, it's coming down to the the origins of these databases. Uh, I think they're converging to a point where they are offering similar services. And if you look at some of the benchmark numbers or you talk to users, I from a business point of view, I I don't think there's too much of a difference. Uh, technology writes. The difference is that Mongo DB started in the document space. They were more interested in availability rather than consistency. Oracle started in the relation database with focus on financial services, so asset compliance is what they're based on. And since then they've been adding other pieces, so so they differ from where they started. Oracle has been in the industry for some since 19 seventies, so they have that maturity. But then they have that legacy, >>you know, I love. Recently, Oracle announced the mongo db uh, kpi. So basically saying why? Why leave Oracle when you can just, you know, do the market? So that, to me, is a sign that Mongo DB is doing well because the Oracle calls you out, whether your workday or snowflake or mongo. You know, whoever that's a sign to me that you've got momentum and you're stealing share in that marketplace, and clearly Mongo is they're growing at 50 plus percent per year. So thinking about the early I mentioned 10 gen Early on, I remember that one of the first conferences I went to mongo conferences. It was just It was all developers. A lot of developers here as well. But they have really, since 2014, expanded the capabilities you talk about, Atlas, you talked about all these other you know, types of databases that they've added. If it seems like Mongo is becoming a platform company, uh, what are your thoughts on that in terms of them sort of up levelling the message there now, a billion dollar plus company. What's the next? You know, wave for Mongo. >>So, uh, Oracle announced mongo db a p i s a W s has document d. B has cost most db so they all have a p. I compatible a p. I s not the source code because, you know, mongo DB has its own SPL licence, so they have written their own layer on top. But at the end of the day, you know, if you if you these companies have to keep innovating to catch up with Mongo DB because we can announce a brand new capability, then all these other players have to catch up. So other cloud providers have 80% or so of capabilities, but they'll never have 100% of what Mongo DB has. So people who are diehard Mongo DB fans they prefer to stay on mongo db. They are now able to write more applications like you know, mongo DB bought realm, which is their front end. Uh, like, you know, like, if you're on social media kind of thing, you can build your applications and sink it with Atlas. So So mongo DB is now at a point where they are adding more capabilities that more like developers like, You know, five G is coming. Autonomous cars are coming, so now they can address Iot kind of use cases. So that's why it's becoming such a juggle, not because it's becoming a platform rather than a single document database. >>So atlases, the near the midterm future. Today it's about 60% of revenues, but they have what we call self serve, which is really the traditional on premise stuff. They're connecting those worlds. You're bringing up the point that. Of course, they go across clouds. You also bring up the point that they've got edge plays. We're gonna talk to Verizon later on today. And they're they've got, uh, edge edge activity going on with developers. I I call it Super Cloud. Right, This layer that floats above. Now, of course, a lot of the super Cloud concert says we're gonna hide the underlying complexity. But for developers, they wanna they might want to tap those primitives, so presumably will let them do that. But But that hybrid that what we call Super Cloud that is a new wave of innovation, is it not? And do you? Do you agree with that? And do you see that as a real opportunity from Mongo in terms of penetrating a new tan? >>Yes. So I see this is a new opportunity. In fact, one of the reasons mongo DB has grown so quickly is because they are addressing more markets than they had three pandemic. Um, Also, there are all gradations of users. Some users want full control. They want an eye as kind of, uh, someone passed. And some businesses are like, you know, we don't care. We don't want to deal with the database. So today we heard, uh, mongo db. Several went gear. So now they have surveillance capability, their past. But if you if you're more into communities, they have communities. Operator. So they're addressing the full stack of different types of developers different workloads, different geographical regions. So that that's why the market is expected. >>We're seeing abstraction layers, you know, throughout the started a physical virtual containers surveillance and eventually SuperClubs Sanjeev. Great analysis. Thanks so much for taking your time to come with the cube. Alright, Keep it right there. But right back, right after this short break. This is Dave Volonte from the Javits Centre. Mongo db World 2022. Thank you. >>Mm.

Published Date : Jun 7 2022

SUMMARY :

So great to see you. like they used to say. You know the numbers, but it's exciting. So they have you seen such? Taking Lucy made a search of first class citizens, but I want to ask you So it's not like, you know, one technology has solved every problem. But is that the correct way of thinking about But in the new sequel world, you have to know your patterns before you. is the sort of the master, if you will, right and then you can create secondaries. So I have to say, uh, my experience of mongo db was was that the So now they've got, you know, like 2014 is when Atlas came out and So Atlas, of course, is the managed database as a service in the cloud. let's, uh, complex graph, you know, then maybe you should go So how do you see that all playing in the industry for some since 19 seventies, so they have that So that, to me, is a sign that Mongo DB is doing well because the Oracle calls you out, db. They are now able to write more applications like you know, mongo DB bought realm, So atlases, the near the midterm future. So now they have surveillance We're seeing abstraction layers, you know, throughout the started a physical virtual containers surveillance

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Scott Mullins, AWS | AWS Summit New York 2019


 

>> Narrator: Live from New York, it's theCube! Covering AWS Global Summit 2019, brought to you by Amazon Web Services. >> Welcome back, we're here at the Javits Center in New York City for AWS Summit, I'm Stu Miniman, my cohost is Corey Quinn and happy to welcome to the program Scott Mullins, who's the head of Worldwide Financial Services Business Development with Amazon Web Services based here in The Big Apple, thanks so much for joining us. >> Thanks for having me, Stu, thanks for having me, Corey. >> All right so we had obviously financial services big location here in New York City. We just had FINRA on our program, had a great conversation about how they're using AWS for their environments, but give us a thumbnail if you will about your business, your customers and what you're seeing there. >> Sure, we're working with financial institutions all the way from the newest FinTech startups, all the way to organizations like FINRA, the largest exchanges and brokers dealers like Nasdaq, as well as insurers and the largest banks. And I've been here for five years and in that time period I actually went from being a customer speaking at the AWS Summit here in the Javits Center on stage like Steve Randich was today to watching more and more financial institutions coming forward, talking about their use in the cloud. >> Yeah before we get into technology, one of the biggest trends of moving to cloud is I'm moving from CapEx more to OpEx and oh my gosh there's uncertainty because I'm not locking in some massive contract that I'm paying up front or depreciating over five years but I've got flexibility and things are going to change. I'm curious what you're seeing as the financial pieces of how people both acquire and keep on the books what they're doing. >> Yeah it can be a little bit different, right, then what most people are used to. They're used to kind of that muscle memory and that rhythm of how you procured technology in the past and there can be a stage of adjustment, but cost isn't really the thing that people I think look to the most when it comes to cloud today, it's all about agility and FINRA is a great example. Steve has talked about over and over again over the last several years how they were able to gain such business agility and actually to do more, the fact that they're now processing 155 billion market events every night and able to run all their surveillance routines. That's really indicative of the value that people are looking for. Being able to actually get products to market faster and reducing development cycles from 18 months to three months, like Allianz, one of our customers over in Europe has been able to do. Being able to go faster I think actually trumps cost from the standpoint of what that biggest value driver that we're seeing our customers going after in financial services. >> We're starting to see such a tremendous difference as far as the people speaking at these keynotes. Once upon a time you had Netflix and folks like that on stage telling a story about how they're using cloud to achieve all these amazing things, but when you take a step back and start blinking a little bit, they fundamentally stream movies and yes, produce some awesome original content. With banks and other financial institutions if the ATM starts spitting out the wrong number, that's a different point on the spectrum of are people going to riot in the street. I'm not saying it's further along, people really like their content but it's still a different use case with a different risk profile. Getting serious companies that have world shaking impact to trust public cloud took time and we're seeing it with places like FINRA, Capital One has been very active as far as evangelizing their use of cloud. It's just been transformative. What does that look like, from being a part of that? >> Well you know it's interesting, so you know you just said it, financial services is the business of risk management. And so to get more and when you see more and more of these financial institutions coming forward and talking about their use of cloud, what that really equates to is comfort, they've got that muscle memory now, they've probably been working with us in some way, shape or form for some great period of time and so if you look at last year, you had Dean Del Vecchio from Guardian Life Insurance come out on stage at Reinvent and say to the crowd "Hey we're a 158 year old insurance company but we've now closed our data center and we're fully on AWS and we've completed the transformation of our organization". The year before you saw Goldman Sachs walk out and say "Yeah we've been working with AWS for about four years now and we're actually using them for some very interesting use cases within Goldman Sachs". And so typically what you've seen is that over the course of about a two year to sometimes a four year time period, you've got institutions that are working deeply with us, but they're not talking about it. They're gaining that muscle memory, they're putting those first use cases to begin to scale that work up and then when they're ready man, they're ready to talk about it and they're excited to talk about it. What's interesting though is today we're having this same summit that we're having here in Cape Town in Africa and we had a customer, Old Mutual, who's one of the biggest insurers there, they just started working with us in earnest back in May and they were on stage today, so you're seeing that actually beginning to happen a lot quicker, where people are building that muscle memory faster and they're much more eager to talk about it. You're going to see that trend I think continue in financial services over the next few years so I'm very excited for future summits as well as Reinvent because the stories that we're going to see are going to come faster. You're going to see more use cases that go a lot deeper in the industry and you're going to see it covering a lot more of the industry. >> It's very much not, IT is no longer what people think of in terms of Tech companies in San Francisco building products. It's banks, it's health care and these companies are transitioning to become technology companies but when your entire, as you mentioned, the entire industry becomes about risk management, it's challenging sometimes to articulate things when you're not both on the same page. I was working with a financial partner years ago at a company I worked for and okay they're a financial institution, they're ready to sign off on this but before that they'd like to tour US East one first and validate that things are as we say they are. The answer is yeah me too, sadly, you folks have never bothered to invite me to tour an active AZ, maybe next year. It's challenging to I guess meet people where they are and speak the right language, the right peace for a long time. >> And that's why you see us have a financial services team in the first place, right? Because your financial services or health care or any of the other industries, they're very unique and they have a very specific language and so we've been very focused on making sure that we speak that language that we have an understanding of what that industry entails and what's important to that industry because as you know Amazon's a very customer obsessed organization and we want to work backwards from our customers and so it's been very important for us to actually speak that language and be able to translate that to our service teams to say hey this is important to financial services and this is why, here's the context for that. I think as we've continued to see more and more financial institutions take on that technology company mindset, I'm a technology company that happens to run a bank or happens to run an exchange company or happens to run an insurance business, it's actually been easier to talk to them about the services that we offer because now they have that mindset, they're moving more towards DevOps and moving more towards agile. And so it's been really easy to actually communicate hey, here are the appropriate changes you have to make, here's how you evolve governance, here's how you address security and compliance and the different levels of resiliency that actually improve from the standpoint of using these services. >> All right so Scott, back before I did this, I worked for some large technology suppliers and there were some groups on Wall Street that have huge IT budgets and IT staffs and actually were very cutting edge in what they were building, in what they were doing and very proud of their IT knowledge, and they were like, they have some of the smartest people in the industry and they spend a ton of money because they need an edge. Talking about transactions on stock markets, if I can translate milliseconds into millions of dollars if I can act faster. So you know, those companies, how are they moving along to do the I need to build it myself and differentiate myself because of my IT versus hey I can now have access to all the services out there because you're offering them with new ones every day, but geez how do I differentiate myself if everybody can use some of these same tools. >> So that's my background as well and so you go back that and milliseconds matter, milliseconds are money, right? When it comes to trading and actually building really bespoke applications on bespoke infrastructure. So I think what we're seeing from a transitional perspective is that you still have that mindset where hey we're really good at technology, we're really good at building applications. But now it's a new toolkit, you have access to a completely new toolkit. It's almost like The Matrix, you know that scene where Neo steps into that white room and hey says "I need this" and then the shelves just show up, that's kind how it is in the cloud, you actually have the ability to leverage the latest and greatest technologies at your fingertips when you want to build and I think that's something that's been a really compelling thing for financial institutions where you don't have to wait to get infrastructure provisioned for you. Before I worked for AWS, I worked for large financial institutions as well and when we had major projects that we had to do that sometimes had a regulatory implication, we were told by our infrastructure team hey that's going to be six months before we can actually get your dev environment built so you can actually begin to develop what you need. And actually we had to respond within about thirty days and so you had a mismatch there. With the cloud you can provision infrastructure easily and you have an access to an array of services that you can use to build immediately. And that means value, that means time to market, that means time to answering questions from customers, that means really a much faster time to answering questions from regulatory agencies and so we're seeing the adoption and the embrace of those services be very large and very significant. >> It's important to make sure that the guardrails are set appropriately, especially for a risk managed firm but once you get that in place correctly, it's an incredible boost of productivity and capability, as opposed to the old crappy way of doing governance of oh it used to take six weeks to get a server in so we're going to open a ticket now whenever you want to provision an instance and it only takes four, yay we're moving faster. It feels like there's very much a right way and a wrong way to start embracing cloud technology. >> Yeah and you know human nature is to take the run book you have today and try to apply it to tomorrow and that doesn't always work because you can use that run book and you'll get down to line four and suddenly line four doesn't exist anymore because of what's happened from a technological change perspective. Yeah I think that's why things like AWS control tower and security hub, which are those guardrails, those services that we announced recently that have gone GA. We announced them a couple of weeks ago at Reinforce in Boston. Those are really interesting to financial services customers because it really begins to help automate a lot of those compliance controls and provisioning those through control tower and then monitoring those through security hub and so you've seen us focus on how do we actually make that easier for customers to do. We know that risk management, we know that governance and controls is very important in financial services. We actually offer our customers a way to look from a country specific angle, add the different countries and the rule sets and the requirements that exist in those countries and how you map those to our controls and how you map those into your own controls and all the considerations that you have, we've got them on our public website. If you went to atlas.aws right now, that's our compliance center, you could actually pick the countries you're interested in and we'll have that mapping for you. So you'll see us continue to invest in things like that to make that much easier for customers to actually deploy quickly and to evolve those governance frameworks. >> And things like with Artifact, where it's just grab whatever compliance report you need, submit it and it's done without having to go through a laborious process. It's click button, receive compliance in some cases. >> If you're not familiar with it you can go into the AWS console and you've got Artifact right there and if you need a SOC report or you need some other type of artifact, you can just download it right there through the console, yeah it's very convenient. >> Yeah so Scott you know we talked about some of the GRC pieces in place, what are you seeing trends out there kind of globally, you know GDRP was something that was on everybody's mind over the last year or so. California has new regulations that are coming in place, so anything specific in your world or just the trends that you're seeing that might impact our environments-- >> I think that the biggest trends I would point to are data analytics, data analytics, data analytics, data analytics. And on top of that obviously machine learning. You know, data is the lifeblood of financial services, it's what makes everything go. And you can look at what's happening in this space where you've got companies like Bloomberg and Refinitiv who are making their data products available on AWS so you can get B-Pipe on AWS today, you can also get the elektron platform from Refintiv and then what people are trying to do in relation to hey I want to organize my data, I want to make it much easier to actually find value in data, both either from the standpoint of regulatory reporting, as you heard Steve talk about on stage today. FINRA is building a very large data repository that they have to from the standpoint of a regulatory perspective with CAT. Broker dealers have to actually feed the CAT and so they are also worried about here in the US, how do I actually organize my data, get all the elements I have to report to CAT together and actually do that in a very efficient way. So that's a big data analytic project. Things that are helping to make that much easier are leg formations, so we came up with leg formation last year and so you've got many financial institutions that are looking at how do you make building a data leg that much easier and then how do you layer analytics on top of that, whether it's using Amazon elastic map reduce or EMR to actually run regulatory reporting jobs or how do I begin to leverage machine learning to actually make my data analytics from a standpoint of trade surveillance or fraud detection that much more enriched and actually looking for those anomalies rather than just looking for a whole bunch of false positives. So data analytics I think is what I would point to as the biggest trend and how to actually make data more useful and how to get to data insights faster. >> On the one end it seems like there's absolutely a lot of potential in this, on the other it feels in many cases with large scale data analytics, it's we have all these tools for machine learning and the rest that we can wind up passing out to you but you need to figure out what to do with them, how to make it work and it's unclear outside of a few specific use cases and I think you've alluded to a couple of those how to take in a typical business that maybe doesn't have an enormous pile of data and start applying machine learning to it in a way that makes intelligent sense. That feels right now like a storytelling failure to some extent industry wide. We're starting to see some stories emerge but it still feels a little "Gold Rush"-y to some extent. >> Yeah I would say, and my advice would be don't try to boil the ocean or don't try to boil the data leg, meaning you want to do machine learning, you've got a great amount of earnestness about that but picture use case, really hone in on what you're trying to accomplish and work backwards from that. And we offer tooling that can be really helpful in that, you know with stage maker you can train your models and you can actually make data science available to a much broader array of people than just your data scientists. And so where we see people focusing first, is where it matters to their business. So if you've got a regulatory obligation to do surveillance or fraud detection, those are great use cases to start with. How do I enhance my existing surveillance or fraud detection, so that I'm not just wading again through a sea of false positives. How do I actually reduce that workload for a human analyst using machine learning. That's a one step up and then you can go from there, you can actually continue to work deeper into the use cases and say okay how do I treat those parameters, how do I actually look for different things that I'm used to with the rules based systems. You can also look at offering more value to customers so with next best offer with Amazon Personalize, we now have encapsulated the service that we use on the amazon.com retail site as a service that we offer to customers so you don't have to build all that tooling yourself, you can actually just consume Personalize as a service to help with those personalized recommendations for customers. >> Scott, really appreciate all the updates on your customers in the financial services industry, thanks so much for joining us. >> Happy to be here guys, thanks for having me. >> All right for Corey Quinn, I'm Stu Miniman, back with more here at AWS Summit in New York City 2019, thanks as always for watching theCube.

Published Date : Jul 11 2019

SUMMARY :

brought to you by Amazon Web Services. and happy to welcome to the program Scott Mullins, but give us a thumbnail if you will about your business, and in that time period I actually went but I've got flexibility and things are going to change. and that rhythm of how you procured technology in the past and we're seeing it with places like FINRA, And so to get more and when you see more and more but before that they'd like to tour US East one first and be able to translate that to our service teams to do the I need to build it myself and so you had a mismatch there. as opposed to the old crappy way of doing governance of and all the considerations that you have, where it's just grab whatever compliance report you need, and if you need a SOC report Yeah so Scott you know we talked about and how to actually make data more useful and the rest that we can wind up passing out to you and you can actually make data science available Scott, really appreciate all the updates back with more here at AWS Summit in New York City 2019,

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Dana Gardner, Interarbor Solutions | Citrix Synergy 2019


 

>> Live from Atlanta, Georgia, It's theCUBE covering Citrix Synergy Atlanta 2019. Brought to you by Citrix. >> Hey, welcome back to theCUBE's coverage day two of our coverage of Citrix Synergy 2019. Lisa Martin with my cohost Keith Townsend, and we've got another CUBE alumni joining us, Dana Gardner, President and Principle Analyst at Interarbor Solutions. >> Sorry, my language skills are declining on day two. >> It's been a long day. >> It has been a long day. We've had, speaking of, had a lot of great conversations with Citrix Execs, customers, analysts over the last day and a half. People are very excited about what Citrix is doing with intelligence, experience, and really helping businesses to transform their workforces. But you have been following Citrix for a long time. >> Yes. >> So, talk to us about some of the early days back in the 90's. I'd love to get your perspectives on what you saw back then and what your thoughts are about some of the things that they're announcing at this event. >> Sure, well back in 1995-1996, the internet was still the new kid on the block, and browsers were kind of cool but, how would they ever help a business? And then, along comes this company that says, "Oh, we're not going to deliver things through a browser, we're going to deliver the whole app experience, apps that you're familiar with, your Windows-based apps over the wire. Over the internet protocol." Wow, so I remember at Internet Expo in New York at the Javits Center, Ed Iacobucci, The co-founder of Citrix got up there and explained how, yeah, we're going to deliver apps. And basically what they were describing is cloud computing as we know it today. Wow, it was very interesting, but we all kind of look at him like he was a little crazy. (host laughing) Yes. >> And, that's been a long time, man. Citrix has made a name for itself since then. You know, the day I was talking to David Hansel, yesterday and I said, "You know what, Citrix is a verb. I'm going to Citrix in an application. They established something for themselves." And, ironically, on stage yesterday he said, "85 percent of the IT budget goes to keeping the lights on." And I would firmly, as pre-kenote yesterday I'd say, you know what Citrix is firmly in that 85 percent of, they are rock, fast, hard technology partner, but they're in that 85 percent. But this intelligent experience I think kind of pushes them into that 15 percent of innovation. What did you think about yesterday's announcement? >> Well, based on my memory from 1996, I think it's consistent. That they're looking for something that's two or three years, maybe more out that will mature then. But they're not afraid of tackling it now. They had some really strong established businesses, but they're not resting on their laurels. They're looking at, I think a problem that almost everybody can identify with. In the past, their problems were people they could identify with in IT. The end user wasn't aware that anybody was Citrixing behind the scenes. Now, they're identifying issues that people have with work. The fact they were taking apps and services from multiple clouds, multiple data centers some of them our own company, some of our partners, some across an ecosystem or a supply chain, and it's becoming rather crowded. Disenfranchised. Fragmented. And people, I think are struggling to keep up with that amount of diversity. So, we're dealing with, yet again a heterogeneity problem, a reoccurring problem in technology. And Citrix is identifying with something that's a higher elevation than they had in the past. So, they're not addressing just IT although, that's where the actions going to take place to solve some of these problems. But they're focused on just about all of us. Whether we're working in a small, two or three person mom and pop shop or a 30,000 seat enterprise. >> And they've also done this pivot in the last, what we've heard in the last 24 hours, of really being positioned to the general user. Something that I didn't know until yesterday was that the majority of enterprise software has been designed for power users, which is one percent of the users. And so, they've really made that positioning pivot yesterday to, this is for the Marketing Managers, somebody in supply chain who has a day that is bombarded with seven to ten apps. They're losing hours and hours of productivity a week. You can look at that in terms of the amount of dollars that's being spent or wasted. But really making this, bringing those tasks to the user, those actions to the user. Rather than forcing the users to go out to all the different apps, put those pieces together. Oh, and then trying to get back to our actual day-to-day function. >> Right, we wouldn't have to talk about user experience if these things had been designed properly in the first place. It's a bit myopic on behalf of the IT power designer, that they often craft the product for themselves. That, this is still the dark arts behind the curtain thinking. It's very difficult for a highly efficient, productive IT group to create something for a non-IT audience. And I don't blame them, but it has to happen. It's going to happen one way or the other. So, we've seen companies that have taken extraordinary steps on usability, Apple computer is probably the poster child for this. Look at where it got them. There were lots of mobile phones around ten years ago, before the iPhone. Why did the iPhone become so popular, so dominant? Because of the usability. So, Citrix is I think, perhaps doing IT a favor by getting out in front of this. But still, if we're going to get IT in the hands of all people for productivity, what I look to is a fit-for-purpose mentality. No more, no less. You can't design it as if it's your own baby and your own special design, I don't know, once in a lifetime opportunity to strut your stuff. It has to be fit-for-purpose and it can't just be monolithic, where we're looking at little bits and pieces. So, the software's recent acquisition that Citrix made is going to be able to start picking out productivity units, for lack of a better term, from different applications, assimilate those in an environment, the workspace, where the productivity, the work flow, the goal of accomplishing business outcomes comes first and foremost. >> So Dana, let's talk a little bit about, you know the next level. Because it's broken. Even when you look at modern applications, one of the applications they showed on stage yesterday, was a cloud application. Salesforce. I mean, we know a people who make a good deal of money simplifying Salesforce, which is a born in the cloud application. This isn't just about cloud versus legacy, this is about end-user experiences, and end-users using applications in a way that makes them productive. One of the things that caught me as soon as Citrix said that they want to be the future of work, I tweeted out, "Well, you can't be the future of work unless you start to automate processes," and boom, intelligent experience. And the first thing that came to my mind was when we attended an event a couple weeks ago for RPA, Robotic Process Automation tool, that was very user-centric, but used the term "bots". Robots, sulfer robots that did the job. Citrix only used the term, "bots" once yesterday. What's your sense, is this a competitive solution to those partners? Or is this more of a complementary solution? >> I think Citrix is correctly trying to keep the horse in front of the cart and not the other way around. We have to look at work as flows of productivity first, and not conforming to the app second. But to get out in front and say, "Oh, it's all going to be animated and the robot will tell you what to do," I think does a disservice. So, let's take first things first. But let's not also lose track of the fact that by elevating work to a process and not just being locked into one platform, one cloud, one set of microservices on one framework, that we have the opportunity to integrate in analytics along the whole path. From beginning to end. And that we can even have the context of what you're doing feed back into how the analytics come at you. And reinforce one another. So, we need to get the process stuff set first. we need to recognize that people need to rethink getting off a desktop, getting out of email, looking at the full process. Looking at working across organizational boundaries. So, extra enterprise, supply-chain interactions, contingent workforce. Then, bring in analytics. So, first things first but it's going to be a very interesting mash-up when we can elevate process, get out of sort of silos, manage that heterogeneity and inject intelligence and context along the way. That changes the game. >> So, you've seen the workforce dramatically transform throughout your career. There are five generations of people in the workforce today. Madeleine Albright, there she was on stage this morning, 82 years old. I thought that was, what an inspiration? But companies have different generations, different experiences, different experiences with technology, differing expectations. What, in your opinion, did you hear yesterday from Citrix that is going to help businesses enable five different generations to be as productive as they want to be. >> Right, it's an extension of what Citrix has been doing for decades, and it's allowing more flexibility into where you are is accommodated. What device you're using can be accommodated. The fact that you want to be outside your home office but secure can be accommodated. So, what I heard was instead of locking in an application mentality, where everybody has to learn to use the same app, we need to have flexibility. And it's not just ages and generations. It's geographics, it's language, it's culture. People do business and they do work differently around the world. And they should be very well entitled to continue to do that. So, we need to create the systems that adjust to the people and read the people's work habits. And then reinforce them rather than force them into, let's say a monolithic ERP type of affair. And we've know that a large percentage of ERP projects over the years have failed. And it's not that the technology doesn't work, it's that sometimes, you can put a round peg in a square hole. >> Wow, speaking of round peg, square hole, IT, you know, they're preaching to the choir I think on this piece. You know, we want thing to be simpler. We want to get engaged. We want to solve this problem. But, is Citrix talking to the wrong audience when it comes to process automation? To your point, you have to have the large view of it, and a lot of timeS, especially folks at this conference, may not have the large view. How does Citrix get to the CMO's the COO's, the process people versus the technology folks. >> I think that's a significant challenge. Keith and I recorded a podcast with David Henchel earlier today and it'll be out in a few weeks on Briefings Direct, and I asked him that, I said, "You're well-known in the IT department. They use a verb, they're Citrixing. The end user, not so much. But if you're going to impact work as you intend to and as you've laid out here at Synergy, you do need to become more of a household word, and you need to brand and you need to impact." And we know one of the hardest things to do is to get people to change their behavior. You don't do that behind the scenes. In some ways, Citrix has been very modest. They haven't been the Citrix inside, they haven't branded and gone to market with. They've usually let their partners like Microsoft and now even Google Cloud be on the front page, even as they're behind the scenes. But I think they need to think a little bit differently. If they're going to impact people, people need to understand the value that Citrix is bringing. But identifying themselves as they have at this show with work and productivity issues, usability and intelligence will start that process. But I do think they can go further on their go-to-market and not just bring this message to their sales accounts, but to a larger work productivity, human capital management enterprise architect type of base. >> And they are making those impacts. Keith and I today have already spoken with their three innovation award nominees. There were over a thousand nominations. And we spoke with Schroders, which is a wealth management company based out of the UK and how they have been able, a 200 year old company, to really transform their culture with Citrix's workspace was, it was done so strategically, so methodically. But how they enabled that and a seamless integration in terms of their customer experience and engagement with their wealth managers was really compelling. Not only are they able to retain their probably longstanding wealth management clients, but they have the ability now, and the technology capabilities to allow their people to work remote three days a week if they want to or from wherever, and actually work on getting new clients. So, the business impact is really clear. We also spoke with Indiana University. They have gone from just enabling the students on the seven campuses to 130,000 plus across campuses online. They're enabling sight impaired people to also, by virtualization, have access to computer technology. So, you're talking about going from tens of thousands to a ten X at a minimum multiplier, and enabling professors to have conversations and hold classes with people in Budapest. Big impact. >> So Lisa, you're bringing up the point that user experience isn't just employing experience, it's end user and-- >> Absolutely >> Consumer experience. If you're going to do this and do it right, don't consider it just for your employees. It's for reaching out to the very edge of the markets, and that includes consumers and students and mom and pop shops and everything in-between. So when you do this right, and not only will you be delivering intelligence and context to your employees, you'll be able to start to better serve your customers. And that's what digital transformation is really about. >> It is, and the cultural transformation that Citrix is undergoing and that they're enabling their businesses to achieve, like the two we just talked about, are critical catalysts for digital transformation. But to me, employee experience and customer experiences are hand in hand because every employee, whatever function you're in, in some way you're a touchpoint to the customer. If you're in retail, you're presenting a shop-able moment as often as you can. But you also are dealing with customers who have choice to turn and go to another provider of that product or service. So, having those employees not only be satisfied, but have the tools that they need and the intelligence to deliver the content. >> So, I'd be happy to go to a brick and mortor shop. I'll walk in there physically if they can help me in the shopping experience be smarter, but if I can do it online in my bedroom on my browser, then I'll do it there. So it's no so much the interface or even the place anymore, it's who's going to give me the information to make the right decision and make me feel confident that I'm spending my money the most productively. Whether I'm a consumer or a business. So B-to-B. That's what's going to be the killer app, is the smart decision making, and the experience of bringing the right information, right place, right time. That's key. And that's what Citrix has repositioned itself for. I think it's really quite a dramatic shift for the company but they've done it before. >> Well, Dana it's been great having you back on theCUBE unpacking this. It's been an exciting day and a half for us and we look forward to having you back on theCUBE sometime soon. >> My pleasure. >> For Keith Townsend, I'm Lisa Martin. You're watching theCUBE Live from Citrix Synergy 2019. Thanks for watching.

Published Date : May 22 2019

SUMMARY :

Brought to you by Citrix. and we've got another CUBE alumni joining us, analysts over the last day and a half. So, talk to us about some of the early days the internet was still the new kid on the block, "85 percent of the IT budget goes to are struggling to keep up with You can look at that in terms of the amount of dollars It's a bit myopic on behalf of the IT power designer, And the first thing that came to my mind and not conforming to the app second. that is going to help businesses And it's not that the technology doesn't work, But, is Citrix talking to the wrong audience But I think they need to think a little bit differently. on the seven campuses to It's for reaching out to the very edge of the markets, and the intelligence to deliver the content. and the experience of bringing and we look forward to having you back on theCUBE Thanks for watching.

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Keynote Analysis | Inforum DC 2018


 

>> Live from Washington DC, it's theCUBE. Covering Inforum DC 2018. Brought to you by Infor. >> Well, welcome to the nation's capital, a rain soaked Washington DC. We're here for Inforum 18, Dave Vellante, John Walls We're in the Walter Washington Convention Center. The fourth time, theCUBE has been at an Infor show and getting bigger and better than ever, David. >> That's right John. This is, let's see, the first one was in New Orleans several years ago. Then Infor skipped a year, and then did Javits couple years in a row. That's sort of the headquarters of where Infor is, very close to the Javits Center. And Charles Phillips, of course, lives in New York City. And this year they decided to come to the nation's capital. I mean, Infor is an interesting company. About $3billion in revenue, essentially it is a private equity roll up. From Golden Gate and others, that really the roots of it are in Lawson Softwares. Some of you may remember Lawson Softwares, the enterprise software company. And then Charles Phillips came on, and of course he was the architect of Oracle's M and A. Probably spent $30 plus billion for Larry Ellison, remaking Oracle. Completely transforming Oracle, brought some of that expertise to Infor in this private equity play, this roll up. And then bought many, many software companies, rolled them up together and really started to compete, using a different model. So, Infor's sort of expertise, if you will is around so called Micro verticals, so they cover a lot of different industries, hospitality industries, they got also manufacturing, ERP, >> Retail financial >> Retail financial, health care, and then they also have horizontal applications like Human Capital management. Their differentiation, is several fold. One major point is they go after what they call the last mile. So they call this micro verticals. So the last mile functionality that would normally have to be customized, Infor does that work for you. Now, the advantage of that is two fold. One is you don't have to do a bunch of custom mods all that hard work is done. The second is, another part of the differentiation is cloud. So they chose, several years ago to go with AWS cloud to put their SaaS on the cloud. Charles Phillips said 'hey when we were an on-prem software company, we didn't manage our own servers for our customers. Or manage customer servers, we didn't do that. So why would we do it in the cloud? We don't want to compete with Google and Microsoft and Amazon in terms of scale, so were going to put our software on the Amazon cloud.' So that's another point of differentiation, the reason that is so important in the context of custom mods, is if you're rolling out new upgrades on a periodic basis, and you hear this a lot from Servicenow customers, for example another cloud software company. You can't do custom mods and then take advantage of the new releases. Because you're going to be way behind. Okay, so you have to have that hard work done so that you can avoid those custom modification. And that is something Infor has been very proud of. So as I say, $3billion company. Last year they took a $2billion investment from Koch industries. Now that investment, largely went to recapitalising the company, the private equity guys probably took some money off the table as did the four, what I call the four horsemen. They were the four, sort of new founders of Infor including Charles Phillips, Pam Murphey who is still there and then two others Duncan Angove and Stephan who have left the company, so they have got some succession planning now. We saw a different, two new faces up on stage Soma and we're going to have some other folks on that we'll introduce you to. But so, now we're entering a new phase and it's the phase of what Charles Phillip's coined 'Human Potentials'. So big focus this year on human capital management, we heard that. Big focus on AI, they talked a lot about robotic process automation. I just had a meeting, last night at the airport in DCA with the head of marketing at an RPA company, UiPath, they are smoking hot, they just raised 225 million they have gone from 2 million to 200 million over night. And that space is exploding, it was interesting to hear Charles Phillips talk a lot today about Robotic process automation, RPA. Which is essentially software >> Break that down for me. >> So RPA is software robots and software robots are used to automate mundane tasks. Having machines do very specific tasks and you are seeing this a lot in financial services and a lot of back office automation. It's not physical robots moving around, it's basically software based processes that machines can do. Repetitive processes, that machines can do better. Machines don't get tired, so they can do these repetitive tasks, take that away those mundane tasks away from humans. You heard a lot of conversation about that today. You also heard a little competitive fire. So Oracle is now taking ads out against Infor, we've seen that. All the cabs here, many of the cabs have Oracle branding on them. So Oracle is paying attention to Infor. >> And they're right down the road here too, by the way. You know, I mean, Western Virginia not far so this is their backyard. >> Well congratulations Infor, Oracle is paying attention to you that means, must mean you're hurting them We've seen this before with others, I mean we certainly saw it, you know in past days with IBM, we see it extensively with Workday. We've seen some kind of, tit for tat with SalesForce, even though SalesForce is one of Oracles largest customers. So that's been kind of fun, fun to watch. And now Infor, so Infor clearly is doing some damage, to the traditional guys. Oracle, SAP, Workday maybe not so much Workday is growing like crazy, but Infor claims it is growing SaaS revenue 50% faster than Oracle's SaaS revenue. It's growing double the rate of SAP, and growing as fast almost as Workday, is kind of what it claims. And so, this whole enterprise resource planning, HCM, vertical market software, horizontal software the market is always been hot. It's a huge, huge market. Many, many, tens of billions, it's probably a hundred billion dollar TAM. And the big, big whales are of course Oracle and SAP, and then of course, SalesForce and you've seen the emergence of companies like ServiceNow which has quite a bit of different strategy but with Oracle, with Infor's sort of Oracle heritage a lot of people in the company came from Oracle so they know where the skeletons are buried they know how to compete, they have relationships with the customers. And they're offering some differentiation, as they say with those Micro verticals, the last mile, and the pure cloud model. Now, if you look at the income statement you'll see the SaaS portion of the business only represents about 25% of the revenues but remember, that's a ratable model. So you're only recognizing revenue as you're, as the months go on, so you're billing sort of monthly if you will, or recognizing monthly. And so, as a result that skews and dampens the effects of the SaaS software, I think from a booking stand point is probably much higher, proportion of bookings I would guess closer to 50% as they said they took $2billion last year from Koch industries. That $2billion dollars didn't really hit the balance sheets, they get about $330million on the balance sheet. And they've a lot of debt, because they you know did you know, it was a private equity you know leverage deal. They did a lot of acquisitions, so they've probably got about $5.7billions of what they call net debt, which presumably is debt after cash. So I would guess close to $6billion in debt. They're a quasi, they're not a public company they're a private company, but they act in many ways like a public company, I would suspect within the next couple of years here, if this kind of growth continues that you'll see an IPO, from Infor. Although, presumably Koch industries, we heard Koch on stage today, they said they've made $15billion in investments in technology companies. $2billion, this has to be one of their largest. And, but that's patient capital. They get the benefit of the cash flow, they can probably take dividends if they want to do that. And if they're smart, and they invest and they can take market share from Oracle and SAP and others, and gain share in the market space, they can do an IPO. They're revenues are $3billion, their valuation, they implied a valuation based on the Koch industries investment is $15billion. So if they can take that $15billion to $30billion 20 to 30 billion, there's going to be a nice return. >> You know I thought, what's interesting about Koch too they talked about this, it's certainly as you talked about 2billion right. They put the money in, but they're also, it's a symbiotic relationship, in that that Koch is using it's organization as a test lab. For a lot of products and services, that Infor is producing. And allowing them to refine that under the Koch umbrella before they take it out to the market place. So that's pretty true, I feel like seems to makes sense. You have a company that has 60,000 world wide employees, you're in dozens of countries, you've a chance to let them take their products to scale, in maybe a somewhat more friendlier, controlled environment before you take it out to the marketplace. That seems to make a lot of sense. >> Yeah, we heard the CIO of Koch industries today and I talked to him last year, and we were talking about some of the technical debt that they had, again going back to those custom modifications that I was talking about earlier. They were in this terrible virtuous cycle almost a negative virtuous cycle where they had so many custom mods that they couldn't make changes. So the applications were becoming voxalised, so they were becoming non competitive and that is the last thing that a line of business wants to hear, is 'hey we can't make the changes, right IT says no, we can't touch the code, it's working or changes take too long. They take months or sometimes years, to get to a major release and so as a result Koch was looking for ways to simplify its application portfolio and its application infrastructure. The other thing that Koch industries has brought is, you might notice on the show floor here, you see Accenture, you see Deloitte, you're seeing Grant Thornton, now these guys weren't really going after, or going hard after the Infor base before. I think, a company like Koch industries does a lot of business with these SIs and so I think Koch has introduced the SIs to the Infor opportunity and maybe nudged them a little bit and say 'hey as a big you know supplier to us, we're a big customer of yours we want you to pay attention to that opportunity and in earnest go look at ways to partner with Infor. And that's happened, my intelligence suggests there are many multi million dollar deals that are being capitalized by these big SIs and they do a ton of business with SAP and Oracle. So that's another positive in the tail wind that Koch industries, I think it's brought to the table. >> Alright, you mention human potential which is the real overarching theme of the show here this week. Again, we're here in Washington DC. I was just listening to Van Jones from CNN. One of their anchors and political contributor talking about that as his personal mantra but certainly that intersects with what Infor is talking about in terms of unlocking human potential and using technology to do that. Share a little light from Charles Phillip's perspective the key note address that he gave, in terms of how do they view human potential and unlocking it with the use of their services? >> Well we're going to have Charles Phillip's on so we'll certainly ask him that but Charles Phillip's is a guy with a lot of potential. And that he is realizing that potential >> Lot of track record too >> Exactly, this is an individual with a military background, he became I don't know if you know the story but he became a highly successful Wall Street analyst. He wrote the seminal piece in the 90s that said the software industry, is too many software players and is going to consolidate. Larry Ellison, prior to reading that used to denigrate competitors for writing cheques not code. Meaning, his competitors were acquiring companies instead of innovating. Well then, he went on a spending spree probably 30, 35 million dollars in acquisitions orchestrated by Charles Phillips. And they totally remade Oracle starting with a soft hostile takeover. And then now you see Oracle, obviously this Saas powerhouse with many many companies that were bought in. Charles Phillips left Oracle, became the CEO of Infor and we heard today, architected an entirely new strategy with a stack, they call this thing the Stack. I'll just go through this briefly, I wrote about it last year, in the WikiBon blog. They've got the Infor platform, the Infor OS and then it goes all the way up to AI, the last mile software, the cloud. They have this thing called GT nexus, which is a supply chain network and that where their IoT play fits. Then they bought a company last year called Birst, to do BI and analytics, and then on top of that is Coleman. So they've got this stack that they are basically infusing into their applications, and I will answer your question. Essentially what they want to do is, use automation and artificial intelligence to essentially coach people, worker, as they're doing their jobs. So we heard today, that there are more openings than there are unemployed >> Employees, yeah. >> And productivity is going down. So Infor, Charles Phillips wants to attack that problem through software and automation. How do you do that? Well, if you could use artificial intelligence to monitor people's KPIs, they didn't use those terms but that is essentially what they are doing. And then provide feedback on outcomes, 'hey you could have done it differently. You could have done it more quickly. The outcome could have been better if.' Also, analyzing other factors like the relationship for example, using data to analyze the relationship between say tenure or were you recently promoted or turn over on the productivity of for instance stores, retail stores for example. And so, you're seeing an infusion of AI and software and automation in to the entire application portfolio to unlock the human potential. That's one part of it, the other part of it is Charles Phillips is big on diversity, big on women in business, and so that's another angle that I am sure we are going to hear more about this week. >> I thought it was interesting too any time a show comes to Washington there is a reason. And it's generally federal sector based, policy based. There's a regulatory undertone of some kind. And it was addressed somewhat on the key note stage here this morning. But the idea, the notion was that federal regulation and federal mandates, whatever, can't keep up the pace. They just can't, and it really is up to the tech sector because it works on a much different time frame, right? I mean, changes are made by the minute, whereas policy gets shaped by the year. You know, up on the hill here, not far about 3 miles 2 miles from here. So, the tech sector's responsibility in that regard in terms of being more diverse, of having more inclusivity, of looking at environmental considerations. All these things, and of unleashing human potential. And not at making a government do that. Not letting a regulation do that. That certainly plays in the Infor's thinking as well, I would think? >> Yes, so first of all we were down here at the AWS public sector event in June. And there were ten thousand people here. So AWS has a huge presence here. Infor and AWS are big time partners. And remember the CIA was the first deal, the first cloud deal, that AWS did, they won. IBM contested it, the judge eviscerated IBM in his ruling. Basically saying they were gaming the system. They were purposely misinterpreting the RFP. Amazon won hands down, it was a huge victory for Amazon. Forced IBM to go out and capitulate and purchase Softlayer for $2billion. I believe that only helps a company like Infor who has decided to be all public cloud, with AWS and drafting off AWS' deep ties to various government agencies, in the GovCloud. So for instance, AWS was first with fedramp. First with a lot of different certifications and security hurdles. And so Infor can just draft off of that. The CIA, again a big account, we heard the CIA talk in June about how security on the worst day of cloud is better than its client server applications on their best day. And so, I suspect Infor is doing business with the CIA although that's not come out publicly. But I would think that there is an advantage Infor has because of that AWS relationship. And that makes DC all the much more important for them. Well, we are at Inforum 18, we have a full 2 days of scheduling for you. Great guest coming up here on theCUBE. I am with Dave Vellante, I'm John Walls We'll continue here on theCUBE live from DC right after this break.

Published Date : Sep 25 2018

SUMMARY :

Brought to you by Infor. We're in the Walter Washington Convention Center. brought some of that expertise to So the last mile functionality that would normally So Oracle is paying attention to Infor. And they're right down the road here too, by the way. And so, as a result that skews and dampens the before they take it out to the market place. and that is the last thing that a line of business but certainly that intersects with what Infor is talking And that he is realizing that potential that said the software industry, and automation in to the entire application portfolio But the idea, the notion was that federal regulation And that makes DC all the much more important for them.

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Rob Thomas, IBM | Change the Game: Winning With AI 2018


 

>> [Announcer] Live from Times Square in New York City, it's theCUBE covering IBM's Change the Game: Winning with AI, brought to you by IBM. >> Hello everybody, welcome to theCUBE's special presentation. We're covering IBM's announcements today around AI. IBM, as theCUBE does, runs of sessions and programs in conjunction with Strata, which is down at the Javits, and we're Rob Thomas, who's the General Manager of IBM Analytics. Long time Cube alum, Rob, great to see you. >> Dave, great to see you. >> So you guys got a lot going on today. We're here at the Westin Hotel, you've got an analyst event, you've got a partner meeting, you've got an event tonight, Change the game: winning with AI at Terminal 5, check that out, ibm.com/WinWithAI, go register there. But Rob, let's start with what you guys have going on, give us the run down. >> Yeah, it's a big week for us, and like many others, it's great when you have Strata, a lot of people in town. So, we've structured a week where, today, we're going to spend a lot of time with analysts and our business partners, talking about where we're going with data and AI. This evening, we've got a broadcast, it's called Winning with AI. What's unique about that broadcast is it's all clients. We've got clients on stage doing demonstrations, how they're using IBM technology to get to unique outcomes in their business. So I think it's going to be a pretty unique event, which should be a lot of fun. >> So this place, it looks like a cool event, a venue, Terminal 5, it's just up the street on the west side highway, probably a mile from the Javits Center, so definitely check that out. Alright, let's talk about, Rob, we've known each other for a long time, we've seen the early Hadoop days, you guys were very careful about diving in, you kind of let things settle and watched very carefully, and then came in at the right time. But we saw the evolution of so-called Big Data go from a phase of really reducing investments, cheaper data warehousing, and what that did is allowed people to collect a lot more data, and kind of get ready for this era that we're in now. But maybe you can give us your perspective on the phases, the waves that we've seen of data, and where we are today and where we're going. >> I kind of think of it as a maturity curve. So when I go talk to clients, I say, look, you need to be on a journey towards AI. I think probably nobody disagrees that they need something there, the question is, how do you get there? So you think about the steps, it's about, a lot of people started with, we're going to reduce the cost of our operations, we're going to use data to take out cost, that was kind of the Hadoop thrust, I would say. Then they moved to, well, now we need to see more about our data, we need higher performance data, BI data warehousing. So, everybody, I would say, has dabbled in those two area. The next leap forward is self-service analytics, so how do you actually empower everybody in your organization to use and access data? And the next step beyond that is, can I use AI to drive new business models, new levers of growth, for my business? So, I ask clients, pin yourself on this journey, most are, depends on the division or the part of the company, they're at different areas, but as I tell everybody, if you don't know where you are and you don't know where you want to go, you're just going to wind around, so I try to get them to pin down, where are you versus where do you want to go? >> So four phases, basically, the sort of cheap data store, the BI data warehouse modernization, self-service analytics, a big part of that is data science and data science collaboration, you guys have a lot of investments there, and then new business models with AI automation running on top. Where are we today? Would you say we're kind of in-between BI/DW modernization and on our way to self-service analytics, or what's your sense? >> I'd say most are right in the middle between BI data warehousing and self-service analytics. Self-service analytics is hard, because it requires you, sometimes to take a couple steps back, and look at your data. It's hard to provide self-service if you don't have a data catalog, if you don't have data security, if you haven't gone through the processes around data governance. So, sometimes you have to take one step back to go two steps forward, that's why I see a lot of people, I'd say, stuck in the middle right now. And the examples that you're going to see tonight as part of the broadcast are clients that have figured out how to break through that wall, and I think that's pretty illustrative of what's possible. >> Okay, so you're saying that, got to maybe take a step back and get the infrastructure right with, let's say a catalog, to give some basic things that they have to do, some x's and o's, you've got the Vince Lombardi played out here, and also, skillsets, I imagine, is a key part of that. So, that's what they've got to do to get prepared, and then, what's next? They start creating new business models, imagining this is where the cheap data officer comes in and it's an executive level, what are you seeing clients as part of digital transformation, what's the conversation like with customers? >> The biggest change, the great thing about the times we live in, is technology's become so accessible, you can do things very quickly. We created a team last year called Data Science Elite, and we've hired what we think are some of the best data scientists in the world. Their only job is to go work with clients and help them get to a first success with data science. So, we put a team in. Normally, one month, two months, normally a team of two or three people, our investment, and we say, let's go build a model, let's get to an outcome, and you can do this incredibly quickly now. I tell clients, I see somebody that says, we're going to spend six months evaluating and thinking about this, I was like, why would you spend six months thinking about this when you could actually do it in one month? So you just need to get over the edge and go try it. >> So we're going to learn more about the Data Science Elite team. We've got John Thomas coming on today, who is a distinguished engineer at IBM, and he's very much involved in that team, and I think we have a customer who's actually gone through that, so we're going to talk about what their experience was with the Data Science Elite team. Alright, you've got some hard news coming up, you've actually made some news earlier with Hortonworks and Red Hat, I want to talk about that, but you've also got some hard news today. Take us through that. >> Yeah, let's talk about all three. First, Monday we announced the expanded relationship with both Hortonworks and Red Hat. This goes back to one of the core beliefs I talked about, every enterprise is modernizing their data and application of states, I don't think there's any debate about that. We are big believers in Kubernetes and containers as the architecture to drive that modernization. The announcement on Monday was, we're working closer with Red Hat to take all of our data services as part of Cloud Private for Data, which are basically microservice for data, and we're running those on OpenShift, and we're starting to see great customer traction with that. And where does Hortonworks come in? Hadoop has been the outlier on moving to microservices containers, we're working with Hortonworks to help them make that move as well. So, it's really about the three of us getting together and helping clients with this modernization journey. >> So, just to remind people, you remember ODPI, folks? It was all this kerfuffle about, why do we even need this? Well, what's interesting to me about this triumvirate is, well, first of all, Red Hat and Hortonworks are hardcore opensource, IBM's always been a big supporter of open source. You three got together and you're proving now the productivity for customers of this relationship. You guys don't talk about this, but Hortonworks had to, when it's public call, that the relationship with IBM drove many, many seven-figure deals, which, obviously means that customers are getting value out of this, so it's great to see that come to fruition, and it wasn't just a Barney announcement a couple years ago, so congratulations on that. Now, there's this other news that you guys announced this morning, talk about that. >> Yeah, two other things. One is, we announced a relationship with Stack Overflow. 50 million developers go to Stack Overflow a month, it's an amazing environment for developers that are looking to do new things, and we're sponsoring a community around AI. Back to your point before, you said, is there a skills gap in enterprises, there absolutely is, I don't think that's a surprise. Data science, AI developers, not every company has the skills they need, so we're sponsoring a community to help drive the growth of skills in and around data science and AI. So things like Python, R, Scala, these are the languages of data science, and it's a great relationship with us and Stack Overflow to build a community to get things going on skills. >> Okay, and then there was one more. >> Last one's a product announcement. This is one of the most interesting product annoucements we've had in quite a while. Imagine this, you write a sequel query, and traditional approach is, I've got a server, I point it as that server, I get the data, it's pretty limited. We're announcing technology where I write a query, and it can find data anywhere in the world. I think of it as wide-area sequel. So it can find data on an automotive device, a telematics device, an IoT device, it could be a mobile device, we think of it as sequel the whole world. You write a query, you can find the data anywhere it is, and we take advantage of the processing power on the edge. The biggest problem with IoT is, it's been the old mantra of, go find the data, bring it all back to a centralized warehouse, that makes it impossible to do it real time. We're enabling real time because we can write a query once, find data anywhere, this is technology we've had in preview for the last year. We've been working with a lot of clients to prove out used cases to do it, we're integrating as the capability inside of IBM Cloud Private for Data. So if you buy IBM Cloud for Data, it's there. >> Interesting, so when you've been around as long as I have, long enough to see some of the pendulums swings, and it's clearly a pendulum swing back toward decentralization in the edge, but the key is, from what you just described, is you're sort of redefining the boundary, so I presume it's the edge, any Cloud, or on premises, where you can find that data, is that correct? >> Yeah, so it's multi-Cloud. I mean, look, every organization is going to be multi-Cloud, like 100%, that's going to happen, and that could be private, it could be multiple public Cloud providers, but the key point is, data on the edge is not just limited to what's in those Clouds. It could be anywhere that you're collecting data. And, we're enabling an architecture which performs incredibly well, because you take advantage of processing power on the edge, where you can get data anywhere that it sits. >> Okay, so, then, I'm setting up a Cloud, I'll call it a Cloud architecture, that encompasses the edge, where essentially, there are no boundaries, and you're bringing security. We talked about containers before, we've been talking about Kubernetes all week here at a Big Data show. And then of course, Cloud, and what's interesting, I think many of the Hadoop distral vendors kind of missed Cloud early on, and then now are sort of saying, oh wow, it's a hybrid world and we've got a part, you guys obviously made some moves, a couple billion dollar moves, to do some acquisitions and get hardcore into Cloud, so that becomes a critical component. You're not just limiting your scope to the IBM Cloud. You're recognizing that it's a multi-Cloud world, that' what customers want to do. Your comments. >> It's multi-Cloud, and it's not just the IBM Cloud, I think the most predominant Cloud that's emerging is every client's private Cloud. Every client I talk to is building out a containerized architecture. They need their own Cloud, and they need seamless connectivity to any public Cloud that they may be using. This is why you see such a premium being put on things like data ingestion, data curation. It's not popular, it's not exciting, people don't want to talk about it, but we're the biggest inhibitors, to this AI point, comes back to data curation, data ingestion, because if you're dealing with multiple Clouds, suddenly your data's in a bunch of different spots. >> Well, so you're basically, and we talked about this a lot on theCUBE, you're bringing the Cloud model to the data, wherever the data lives. Is that the right way to think about it? >> I think organizations have spoken, set aside what they say, look at their actions. Their actions say, we don't want to move all of our data to any particular Cloud, we'll move some of our data. We need to give them seamless connectivity so that they can leave their data where they want, we can bring Cloud-Native Architecture to their data, we could also help move their data to a Cloud-Native architecture if that's what they prefer. >> Well, it makes sense, because you've got physics, latency, you've got economics, moving all the data into a public Cloud is expensive and just doesn't make economic sense, and then you've got things like GDPR, which says, well, you have to keep the data, certain laws of the land, if you will, that say, you've got to keep the data in whatever it is, in Germany, or whatever country. So those sort of edicts dictate how you approach managing workloads and what you put where, right? Okay, what's going on with Watson? Give us the update there. >> I get a lot of questions, people trying to peel back the onion of what exactly is it? So, I want to make that super clear here. Watson is a few things, start at the bottom. You need a runtime for models that you've built. So we have a product called Watson Machine Learning, runs anywhere you want, that is the runtime for how you execute models that you've built. Anytime you have a runtime, you need somewhere where you can build models, you need a development environment. That is called Watson Studio. So, we had a product called Data Science Experience, we've evolved that into Watson Studio, connecting in some of those features. So we have Watson Studio, that's the development environment, Watson Machine Learning, that's the runtime. Now you move further up the stack. We have a set of APIs that bring in human features, vision, natural language processing, audio analytics, those types of things. You can integrate those as part of a model that you build. And then on top of that, we've got things like Watson Applications, we've got Watson for call centers, doing customer service and chatbots, and then we've got a lot of clients who've taken pieces of that stack and built their own AI solutions. They've taken some of the APIs, they've taken some of the design time, the studio, they've taken some of the Watson Machine Learning. So, it is really a stack of capabilities, and where we're driving the greatest productivity, this is in a lot of the examples you'll see tonight for clients, is clients that have bought into this idea of, I need a development environment, I need a runtime, where I can deploy models anywhere. We're getting a lot of momentum on that, and then that raises the question of, well, do I have expandability, do I have trust in transparency, and that's another thing that we're working on. >> Okay, so there's API oriented architecture, exposing all these services make it very easy for people to consume. Okay, so we've been talking all week at Cube NYC, is Big Data is in AI, is this old wine, new bottle? I mean, it's clear, Rob, from the conversation here, there's a lot of substantive innovation, and early adoption, anyway, of some of these innovations, but a lot of potential going forward. Last thoughts? >> What people have to realize is AI is not magic, it's still computer science. So it actually requires some hard work. You need to roll up your sleeves, you need to understand how I get from point A to point B, you need a development environment, you need a runtime. I want people to really think about this, it's not magic. I think for a while, people have gotten the impression that there's some magic button. There's not, but if you put in the time, and it's not a lot of time, you'll see the examples tonight, most of them have been done in one or two months, there's great business value in starting to leverage AI in your business. >> Awesome, alright, so if you're in this city or you're at Strata, go to ibm.com/WinWithAI, register for the event tonight. Rob, we'll see you there, thanks so much for coming back. >> Yeah, it's going to be fun, thanks Dave, great to see you. >> Alright, keep it right there everybody, we'll be back with our next guest right after this short break, you're watching theCUBE.

Published Date : Sep 18 2018

SUMMARY :

brought to you by IBM. Long time Cube alum, Rob, great to see you. But Rob, let's start with what you guys have going on, it's great when you have Strata, a lot of people in town. and kind of get ready for this era that we're in now. where you want to go, you're just going to wind around, and data science collaboration, you guys have It's hard to provide self-service if you don't have and it's an executive level, what are you seeing let's get to an outcome, and you can do this and I think we have a customer who's actually as the architecture to drive that modernization. So, just to remind people, you remember ODPI, folks? has the skills they need, so we're sponsoring a community and it can find data anywhere in the world. of processing power on the edge, where you can get data a couple billion dollar moves, to do some acquisitions This is why you see such a premium being put on things Is that the right way to think about it? to a Cloud-Native architecture if that's what they prefer. certain laws of the land, if you will, that say, for how you execute models that you've built. I mean, it's clear, Rob, from the conversation here, and it's not a lot of time, you'll see the examples tonight, Rob, we'll see you there, thanks so much for coming back. we'll be back with our next guest

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Rob Thomas, IBM | Change the Game: Winning With AI


 

>> Live from Times Square in New York City, it's The Cube covering IBM's Change the Game: Winning with AI, brought to you by IBM. >> Hello everybody, welcome to The Cube's special presentation. We're covering IBM's announcements today around AI. IBM, as The Cube does, runs of sessions and programs in conjunction with Strata, which is down at the Javits, and we're Rob Thomas, who's the General Manager of IBM Analytics. Long time Cube alum, Rob, great to see you. >> Dave, great to see you. >> So you guys got a lot going on today. We're here at the Westin Hotel, you've got an analyst event, you've got a partner meeting, you've got an event tonight, Change the game: winning with AI at Terminal 5, check that out, ibm.com/WinWithAI, go register there. But Rob, let's start with what you guys have going on, give us the run down. >> Yeah, it's a big week for us, and like many others, it's great when you have Strata, a lot of people in town. So, we've structured a week where, today, we're going to spend a lot of time with analysts and our business partners, talking about where we're going with data and AI. This evening, we've got a broadcast, it's called Winning with AI. What's unique about that broadcast is it's all clients. We've got clients on stage doing demonstrations, how they're using IBM technology to get to unique outcomes in their business. So I think it's going to be a pretty unique event, which should be a lot of fun. >> So this place, it looks like a cool event, a venue, Terminal 5, it's just up the street on the west side highway, probably a mile from the Javits Center, so definitely check that out. Alright, let's talk about, Rob, we've known each other for a long time, we've seen the early Hadoop days, you guys were very careful about diving in, you kind of let things settle and watched very carefully, and then came in at the right time. But we saw the evolution of so-called Big Data go from a phase of really reducing investments, cheaper data warehousing, and what that did is allowed people to collect a lot more data, and kind of get ready for this era that we're in now. But maybe you can give us your perspective on the phases, the waves that we've seen of data, and where we are today and where we're going. >> I kind of think of it as a maturity curve. So when I go talk to clients, I say, look, you need to be on a journey towards AI. I think probably nobody disagrees that they need something there, the question is, how do you get there? So you think about the steps, it's about, a lot of people started with, we're going to reduce the cost of our operations, we're going to use data to take out cost, that was kind of the Hadoop thrust, I would say. Then they moved to, well, now we need to see more about our data, we need higher performance data, BI data warehousing. So, everybody, I would say, has dabbled in those two area. The next leap forward is self-service analytics, so how do you actually empower everybody in your organization to use and access data? And the next step beyond that is, can I use AI to drive new business models, new levers of growth, for my business? So, I ask clients, pin yourself on this journey, most are, depends on the division or the part of the company, they're at different areas, but as I tell everybody, if you don't know where you are and you don't know where you want to go, you're just going to wind around, so I try to get them to pin down, where are you versus where do you want to go? >> So four phases, basically, the sort of cheap data store, the BI data warehouse modernization, self-service analytics, a big part of that is data science and data science collaboration, you guys have a lot of investments there, and then new business models with AI automation running on top. Where are we today? Would you say we're kind of in-between BI/DW modernization and on our way to self-service analytics, or what's your sense? >> I'd say most are right in the middle between BI data warehousing and self-service analytics. Self-service analytics is hard, because it requires you, sometimes to take a couple steps back, and look at your data. It's hard to provide self-service if you don't have a data catalog, if you don't have data security, if you haven't gone through the processes around data governance. So, sometimes you have to take one step back to go two steps forward, that's why I see a lot of people, I'd say, stuck in the middle right now. And the examples that you're going to see tonight as part of the broadcast are clients that have figured out how to break through that wall, and I think that's pretty illustrative of what's possible. >> Okay, so you're saying that, got to maybe take a step back and get the infrastructure right with, let's say a catalog, to give some basic things that they have to do, some x's and o's, you've got the Vince Lombardi played out here, and also, skillsets, I imagine, is a key part of that. So, that's what they've got to do to get prepared, and then, what's next? They start creating new business models, imagining this is where the cheap data officer comes in and it's an executive level, what are you seeing clients as part of digital transformation, what's the conversation like with customers? >> The biggest change, the great thing about the times we live in, is technology's become so accessible, you can do things very quickly. We created a team last year called Data Science Elite, and we've hired what we think are some of the best data scientists in the world. Their only job is to go work with clients and help them get to a first success with data science. So, we put a team in. Normally, one month, two months, normally a team of two or three people, our investment, and we say, let's go build a model, let's get to an outcome, and you can do this incredibly quickly now. I tell clients, I see somebody that says, we're going to spend six months evaluating and thinking about this, I was like, why would you spend six months thinking about this when you could actually do it in one month? So you just need to get over the edge and go try it. >> So we're going to learn more about the Data Science Elite team. We've got John Thomas coming on today, who is a distinguished engineer at IBM, and he's very much involved in that team, and I think we have a customer who's actually gone through that, so we're going to talk about what their experience was with the Data Science Elite team. Alright, you've got some hard news coming up, you've actually made some news earlier with Hortonworks and Red Hat, I want to talk about that, but you've also got some hard news today. Take us through that. >> Yeah, let's talk about all three. First, Monday we announced the expanded relationship with both Hortonworks and Red Hat. This goes back to one of the core beliefs I talked about, every enterprise is modernizing their data and application of states, I don't think there's any debate about that. We are big believers in Kubernetes and containers as the architecture to drive that modernization. The announcement on Monday was, we're working closer with Red Hat to take all of our data services as part of Cloud Private for Data, which are basically microservice for data, and we're running those on OpenShift, and we're starting to see great customer traction with that. And where does Hortonworks come in? Hadoop has been the outlier on moving to microservices containers, we're working with Hortonworks to help them make that move as well. So, it's really about the three of us getting together and helping clients with this modernization journey. >> So, just to remind people, you remember ODPI, folks? It was all this kerfuffle about, why do we even need this? Well, what's interesting to me about this triumvirate is, well, first of all, Red Hat and Hortonworks are hardcore opensource, IBM's always been a big supporter of open source. You three got together and you're proving now the productivity for customers of this relationship. You guys don't talk about this, but Hortonworks had to, when it's public call, that the relationship with IBM drove many, many seven-figure deals, which, obviously means that customers are getting value out of this, so it's great to see that come to fruition, and it wasn't just a Barney announcement a couple years ago, so congratulations on that. Now, there's this other news that you guys announced this morning, talk about that. >> Yeah, two other things. One is, we announced a relationship with Stack Overflow. 50 million developers go to Stack Overflow a month, it's an amazing environment for developers that are looking to do new things, and we're sponsoring a community around AI. Back to your point before, you said, is there a skills gap in enterprises, there absolutely is, I don't think that's a surprise. Data science, AI developers, not every company has the skills they need, so we're sponsoring a community to help drive the growth of skills in and around data science and AI. So things like Python, R, Scala, these are the languages of data science, and it's a great relationship with us and Stack Overflow to build a community to get things going on skills. >> Okay, and then there was one more. >> Last one's a product announcement. This is one of the most interesting product annoucements we've had in quite a while. Imagine this, you write a sequel query, and traditional approach is, I've got a server, I point it as that server, I get the data, it's pretty limited. We're announcing technology where I write a query, and it can find data anywhere in the world. I think of it as wide-area sequel. So it can find data on an automotive device, a telematics device, an IoT device, it could be a mobile device, we think of it as sequel the whole world. You write a query, you can find the data anywhere it is, and we take advantage of the processing power on the edge. The biggest problem with IoT is, it's been the old mantra of, go find the data, bring it all back to a centralized warehouse, that makes it impossible to do it real time. We're enabling real time because we can write a query once, find data anywhere, this is technology we've had in preview for the last year. We've been working with a lot of clients to prove out used cases to do it, we're integrating as the capability inside of IBM Cloud Private for Data. So if you buy IBM Cloud for Data, it's there. >> Interesting, so when you've been around as long as I have, long enough to see some of the pendulums swings, and it's clearly a pendulum swing back toward decentralization in the edge, but the key is, from what you just described, is you're sort of redefining the boundary, so I presume it's the edge, any Cloud, or on premises, where you can find that data, is that correct? >> Yeah, so it's multi-Cloud. I mean, look, every organization is going to be multi-Cloud, like 100%, that's going to happen, and that could be private, it could be multiple public Cloud providers, but the key point is, data on the edge is not just limited to what's in those Clouds. It could be anywhere that you're collecting data. And, we're enabling an architecture which performs incredibly well, because you take advantage of processing power on the edge, where you can get data anywhere that it sits. >> Okay, so, then, I'm setting up a Cloud, I'll call it a Cloud architecture, that encompasses the edge, where essentially, there are no boundaries, and you're bringing security. We talked about containers before, we've been talking about Kubernetes all week here at a Big Data show. And then of course, Cloud, and what's interesting, I think many of the Hadoop distral vendors kind of missed Cloud early on, and then now are sort of saying, oh wow, it's a hybrid world and we've got a part, you guys obviously made some moves, a couple billion dollar moves, to do some acquisitions and get hardcore into Cloud, so that becomes a critical component. You're not just limiting your scope to the IBM Cloud. You're recognizing that it's a multi-Cloud world, that' what customers want to do. Your comments. >> It's multi-Cloud, and it's not just the IBM Cloud, I think the most predominant Cloud that's emerging is every client's private Cloud. Every client I talk to is building out a containerized architecture. They need their own Cloud, and they need seamless connectivity to any public Cloud that they may be using. This is why you see such a premium being put on things like data ingestion, data curation. It's not popular, it's not exciting, people don't want to talk about it, but we're the biggest inhibitors, to this AI point, comes back to data curation, data ingestion, because if you're dealing with multiple Clouds, suddenly your data's in a bunch of different spots. >> Well, so you're basically, and we talked about this a lot on The Cube, you're bringing the Cloud model to the data, wherever the data lives. Is that the right way to think about it? >> I think organizations have spoken, set aside what they say, look at their actions. Their actions say, we don't want to move all of our data to any particular Cloud, we'll move some of our data. We need to give them seamless connectivity so that they can leave their data where they want, we can bring Cloud-Native Architecture to their data, we could also help move their data to a Cloud-Native architecture if that's what they prefer. >> Well, it makes sense, because you've got physics, latency, you've got economics, moving all the data into a public Cloud is expensive and just doesn't make economic sense, and then you've got things like GDPR, which says, well, you have to keep the data, certain laws of the land, if you will, that say, you've got to keep the data in whatever it is, in Germany, or whatever country. So those sort of edicts dictate how you approach managing workloads and what you put where, right? Okay, what's going on with Watson? Give us the update there. >> I get a lot of questions, people trying to peel back the onion of what exactly is it? So, I want to make that super clear here. Watson is a few things, start at the bottom. You need a runtime for models that you've built. So we have a product called Watson Machine Learning, runs anywhere you want, that is the runtime for how you execute models that you've built. Anytime you have a runtime, you need somewhere where you can build models, you need a development environment. That is called Watson Studio. So, we had a product called Data Science Experience, we've evolved that into Watson Studio, connecting in some of those features. So we have Watson Studio, that's the development environment, Watson Machine Learning, that's the runtime. Now you move further up the stack. We have a set of APIs that bring in human features, vision, natural language processing, audio analytics, those types of things. You can integrate those as part of a model that you build. And then on top of that, we've got things like Watson Applications, we've got Watson for call centers, doing customer service and chatbots, and then we've got a lot of clients who've taken pieces of that stack and built their own AI solutions. They've taken some of the APIs, they've taken some of the design time, the studio, they've taken some of the Watson Machine Learning. So, it is really a stack of capabilities, and where we're driving the greatest productivity, this is in a lot of the examples you'll see tonight for clients, is clients that have bought into this idea of, I need a development environment, I need a runtime, where I can deploy models anywhere. We're getting a lot of momentum on that, and then that raises the question of, well, do I have expandability, do I have trust in transparency, and that's another thing that we're working on. >> Okay, so there's API oriented architecture, exposing all these services make it very easy for people to consume. Okay, so we've been talking all week at Cube NYC, is Big Data is in AI, is this old wine, new bottle? I mean, it's clear, Rob, from the conversation here, there's a lot of substantive innovation, and early adoption, anyway, of some of these innovations, but a lot of potential going forward. Last thoughts? >> What people have to realize is AI is not magic, it's still computer science. So it actually requires some hard work. You need to roll up your sleeves, you need to understand how I get from point A to point B, you need a development environment, you need a runtime. I want people to really think about this, it's not magic. I think for a while, people have gotten the impression that there's some magic button. There's not, but if you put in the time, and it's not a lot of time, you'll see the examples tonight, most of them have been done in one or two months, there's great business value in starting to leverage AI in your business. >> Awesome, alright, so if you're in this city or you're at Strata, go to ibm.com/WinWithAI, register for the event tonight. Rob, we'll see you there, thanks so much for coming back. >> Yeah, it's going to be fun, thanks Dave, great to see you. >> Alright, keep it right there everybody, we'll be back with our next guest right after this short break, you're watching The Cube.

Published Date : Sep 13 2018

SUMMARY :

brought to you by IBM. Rob, great to see you. what you guys have going on, it's great when you have on the phases, the waves that we've seen where you want to go, you're the BI data warehouse modernization, a data catalog, if you and get the infrastructure right with, and help them get to a first and I think we have a as the architecture to news that you guys announced that are looking to do new things, I point it as that server, I get the data, of processing power on the the edge, where essentially, it's not just the IBM Cloud, Is that the right way to think about it? We need to give them seamless connectivity certain laws of the land, that is the runtime for people to consume. and it's not a lot of time, register for the event tonight. Yeah, it's going to be fun, we'll be back with our next guest

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Sam Kroonenburg, A Cloud Guru | Serverlessconf 2017


 

>> Narrator: From Hell's Kitchen in New York City, it's theCUBE, on the ground at Serverlessconf brought to you by SiliconAngle Media >> Hi, I'm Stu Miniman, here with theCUBE at Serverless Conference in New York City, Hell's Kitchen. Happy to have with me, first time guest on the program Sam Kroonenburg, we had your brother on the program at the AWS Summit not far from here, at the Javits Center in New York City, but you're also one of the co-founders its the two brothers for A Cloud Guru. Thanks so much for joining me, and thank you for allowing us to come get some phenomenal content here. >> Yeah, no problem. Thank you for coming for the conference today. >> Alright, so Sam, take me back, you know, we talked to your brother a little bit about, well it was an interesting story, he said actually I got turned down for a job from Amazon and ended up creating a training company. But you built this and you built it on Serverless. >> I did yeah. >> So walk us through a little bit the thought process, the timing, you know, aren't you a little bit ahead of your time on that? >> Yeah, it was mid 2015, it was a strange time. We decided we wanted to build this school, this online learning platform, but the challenge we had was that we didn't have a lot of time, we both had families, kids, you know, mortgages, financial commitments. Basically I had four weeks. I had four weeks of leave owing to me, from my employer at the time. My wife and I had been planning this big family holiday with the kids for years and we were about to take it, and I remember having this phone call with Ryan and we were talking about how there were these people taking these online courses and they were really liking them. And we thought, what if we could build this school to teach people cloud computing. It was such a buzz and we just thought, there's something in this. But the challenge was the timing. I remember my wife turned to me and she said, "Look you've got to do it, we'll cancel the holiday, "take the four weeks and give it a try." So that's what we did, we actually flew down to live with Aaron, my in-laws and help look after the kids and I locked myself in a bedroom for four weeks and tried to build an online school. And that was there was no epiphany to go Serverless there was no grand plan. It was, we had a constraint, which was time. I had no time to build this thing. And so ended up using some of the latest technologies like AWS Lambda, API Gateway, a whole bunch of Serverless technologies because I saw that they would help me build this faster. And I could get something to market in the four weeks that I had. I actually spent the first couple of days trying to skin and configure Moodle, the learning management system and I tore my hair out and yeah, ended up putting this thing together with Serverless technologies. >> Ryan just walked by-- >> Oh, there he is. >> It's a llama unicorn with a cat or something like that. >> I'm going to put in the background. >> In the back of our video. Sam, what's your brother doing here? >> He's always trying to troll me. >> So talk to us, you know one of the things the maturation, kind of the speed of change in the industry for new technologies is just so fast these days. Take us through from those early days to you know Serverless today. What's your experience been? What would you say to people that look at this technology? >> I think it's a lot easier to get into now than it was two years ago. The ecosystem has grown around it, the core technologies are pretty much the same as they were two years ago, function as a service, execute functions in the cloud very similar, but the tooling around it, the ecosystem around it has grown. There's great deployment tools, orchestration systems that have come along. It's a lot easier to just get in now and early on, when we started we had to roll a lot of things ourselves, which took a lot of time, and that's what you're trying to stop, is losing time. Yeah, so there's that and the community has really grown, there's a lot of support in the community now. >> So if you had to do it all over, you could have done it in a weekend, rather than the four weeks. >> Yeah, instead of the four weeks. >> Yeah, I mean what's-- >> That's the interesting thing about what happened to us, we would not exist, our business would not exist if it wasn't for Serverless technologies. I literally couldn't, we could not have, built that school. It's not like it was the most amazing school when we launched it, but it was enough. It was just enough to get people using it, to get to market, to start to build a business around it. >> Alright, talk to me about this event. So, its the 5th Serverlessconf, not unheard of a company that does training to get involved with physical events, 'cause you bring them together, you know, what's the thought process, talk to us a little bit about that journey and this event itself. >> Yeah, I mean, a lot of this is organic for us. We built, it was early last year, you know we're part of the Serverless communities, a lot of pioneering going on here, a lot of people facing the same challenges. And we thought, well there's no event to bring all of these people together. And there's a lot of very fast pace of change here, a lot of rapid ideation and new technologies. Let's bring everyone together and see what we can do. That's what we did with Serverlessconf. We've never run a conference before, we just hired a warehouse in Brooklyn, a bunch of Australians and British guys coming over and we just invited a bunch of people on Twitter and 250 people turned out to the first one. It just got bigger and bigger from there. So this is actually the 5th Serverlessconf now. >> Well, its a hot week again, so we appreciate that the air conditioning works at this one. >> Yes, we have air conditioning at this one. >> 460 people here, you brought in some great speakers, we had a number of them on our program this week, speak to us, I mean you've got sponsors here, you've got good speakers, give us some of the highlights. >> We've got all of the main Cloud vendors are here, Google, IBM, Microsoft, Amazon and it's actually the product teams who build this stuff. That's what I love about this event, it's actually the people who build it. It's vendor neutral, it's really cool. You get great thought leaders from the community, Simon Wardley was a highlight this morning, his talk on Value Chain Mapping and Strategy was really interesting. Randall Hunt from AWS X Space X, talking about the continuous integration process when building rockets. Space X was absolutely fascinating and what bugs in production mean when you're building a rocket. It means the rocket blows up. Really interesting variety of talks from those tooling providers, companies like us who are just building on Serverless and then Serverless tooling companies and vendors. Really fascinating. >> Alright, Sam what should we be looking for in the future from Serverless and from A Cloud Guru? >> We're going to be doing a whole lot more Serverless content. You're going to see a lot of really interesting new content through our site, a lot of teaching on Serverless, we're going to be doing more Serverless Conferences. You'll see a lot from us, not just us, but from the wider community who come to the conference, who we know well, a lot of the experts, we're going to be doing a lot of work with those people. >> Well Sam Kroonenburg, really appreciate you joining us, appreciate the media sponsorship to allow theCube to come get some great content and share it with our communities, hope to see you at many more events in the future. >> Thank you for coming. >> Thank you so much. Sam Kroonenburg, I'm Stu Miniman. Thank you for watching theCUBE. (upbeat music)

Published Date : Oct 14 2017

SUMMARY :

and thank you for allowing us Thank you for coming for the conference today. Alright, so Sam, take me back, you know, but the challenge we had was that In the back of our video. So talk to us, you know one of the things to get into now than it was two years ago. rather than the four weeks. That's the interesting thing about to get involved with physical events, a lot of people facing the same challenges. so we appreciate that the we had a number of them on our program this week, and it's actually the product teams who build this stuff. but from the wider community who come to the conference, appreciate the media sponsorship to allow theCube Thank you for watching theCUBE.

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Wikibon Presents: Software is Eating the Edge | The Entangling of Big Data and IIoT


 

>> So as folks make their way over from Javits I'm going to give you the least interesting part of the evening and that's my segment in which I welcome you here, introduce myself, lay out what what we're going to do for the next couple of hours. So first off, thank you very much for coming. As all of you know Wikibon is a part of SiliconANGLE which also includes theCUBE, so if you look around, this is what we have been doing for the past couple of days here in the TheCUBE. We've been inviting some significant thought leaders from over on the show and in incredibly expensive limousines driven them up the street to come on to TheCUBE and spend time with us and talk about some of the things that are happening in the industry today that are especially important. We tore it down, and we're having this party tonight. So we want to thank you very much for coming and look forward to having more conversations with all of you. Now what are we going to talk about? Well Wikibon is the research arm of SiliconANGLE. So we take data that comes out of TheCUBE and other places and we incorporated it into our research. And work very closely with large end users and large technology companies regarding how to make better decisions in this incredibly complex, incredibly important transformative world of digital business. What we're going to talk about tonight, and I've got a couple of my analysts assembled, and we're also going to have a panel, is this notion of software is eating the Edge. Now most of you have probably heard Marc Andreessen, the venture capitalist and developer, original developer of Netscape many years ago, talk about how software's eating the world. Well, if software is truly going to eat the world, it's going to eat at, it's going to take the big chunks, big bites at the Edge. That's where the actual action's going to be. And what we want to talk about specifically is the entangling of the internet or the industrial internet of things and IoT with analytics. So that's what we're going to talk about over the course of the next couple of hours. To do that we're going to, I've already blown the schedule, that's on me. But to do that I'm going to spend a couple minutes talking about what we regard as the essential digital business capabilities which includes analytics and Big Data, and includes IIoT and we'll explain at least in our position why those two things come together the way that they do. But I'm going to ask the august and revered Neil Raden, Wikibon analyst to come on up and talk about harvesting value at the Edge. 'Cause there are some, not now Neil, when we're done, when I'm done. So I'm going to ask Neil to come on up and we'll talk, he's going to talk about harvesting value at the Edge. And then Jim Kobielus will follow up with him, another Wikibon analyst, he'll talk specifically about how we're going to take that combination of analytics and Edge and turn it into the new types of systems and software that are going to sustain this significant transformation that's going on. And then after that, I'm going to ask Neil and Jim to come, going to invite some other folks up and we're going to run a panel to talk about some of these issues and do a real question and answer. So the goal here is before we break for drinks is to create a community feeling within the room. That includes smart people here, smart people in the audience having a conversation ultimately about some of these significant changes so please participate and we look forward to talking about the rest of it. All right, let's get going! What is digital business? One of the nice things about being an analyst is that you can reach back on people who were significantly smarter than you and build your points of view on the shoulders of those giants including Peter Drucker. Many years ago Peter Drucker made the observation that the purpose of business is to create and keep a customer. Not better shareholder value, not anything else. It is about creating and keeping your customer. Now you can argue with that, at the end of the day, if you don't have customers, you don't have a business. Now the observation that we've made, what we've added to that is that we've made the observation that the difference between business and digital business essentially is one thing. That's data. A digital business uses data to differentially create and keep customers. That's the only difference. If you think about the difference between taxi cab companies here in New York City, every cab that I've been in in the last three days has bothered me about Uber. The reason, the difference between Uber and a taxi cab company is data. That's the primary difference. Uber uses data as an asset. And we think this is the fundamental feature of digital business that everybody has to pay attention to. How is a business going to use data as an asset? Is the business using data as an asset? Is a business driving its engagement with customers, the role of its product et cetera using data? And if they are, they are becoming a more digital business. Now when you think about that, what we're really talking about is how are they going to put data to work? How are they going to take their customer data and their operational data and their financial data and any other kind of data and ultimately turn that into superior engagement or improved customer experience or more agile operations or increased automation? Those are the kinds of outcomes that we're talking about. But it is about putting data to work. That's fundamentally what we're trying to do within a digital business. Now that leads to an observation about the crucial strategic business capabilities that every business that aspires to be more digital or to be digital has to put in place. And I want to be clear. When I say strategic capabilities I mean something specific. When you talk about, for example technology architecture or information architecture there is this notion of what capabilities does your business need? Your business needs capabilities to pursue and achieve its mission. And in the digital business these are the capabilities that are now additive to this core question, ultimately of whether or not the company is a digital business. What are the three capabilities? One, you have to capture data. Not just do a good job of it, but better than your competition. You have to capture data better than your competition. In a way that is ultimately less intrusive on your markets and on your customers. That's in many respects, one of the first priorities of the internet of things and people. The idea of using sensors and related technologies to capture more data. Once you capture that data you have to turn it into value. You have to do something with it that creates business value so you can do a better job of engaging your markets and serving your customers. And that essentially is what we regard as the basis of Big Data. Including operations, including financial performance and everything else, but ultimately it's taking the data that's being captured and turning it into value within the business. The last point here is that once you have generated a model, or an insight or some other resource that you can act upon, you then have to act upon it in the real world. We call that systems of agency, the ability to enact based on data. Now I want to spend just a second talking about systems of agency 'cause we think it's an interesting concept and it's something Jim Kobielus is going to talk about a little bit later. When we say systems of agency, what we're saying is increasingly machines are acting on behalf of a brand. Or systems, combinations of machines and people are acting on behalf of the brand. And this whole notion of agency is the idea that ultimately these systems are now acting as the business's agent. They are at the front line of engaging customers. It's an extremely rich proposition that has subtle but crucial implications. For example I was talking to a senior decision maker at a business today and they made a quick observation, they talked about they, on their way here to New York City they had followed a woman who was going through security, opened up her suitcase and took out a bird. And then went through security with the bird. And the reason why I bring this up now is as TSA was trying to figure out how exactly to deal with this, the bird started talking and repeating things that the woman had said and many of those things, in fact, might have put her in jail. Now in this case the bird is not an agent of that woman. You can't put the woman in jail because of what the bird said. But increasingly we have to ask ourselves as we ask machines to do more on our behalf, digital instrumentation and elements to do more on our behalf, it's going to have blow back and an impact on our brand if we don't do it well. I want to draw that forward a little bit because I suggest there's going to be a new lifecycle for data. And the way that we think about it is we have the internet or the Edge which is comprised of things and crucially people, using sensors, whether they be smaller processors in control towers or whether they be phones that are tracking where we go, and this crucial element here is something that we call information transducers. Now a transducer in a traditional sense is something that takes energy from one form to another so that it can perform new types of work. By information transducer I essentially mean it takes information from one form to another so it can perform another type of work. This is a crucial feature of data. One of the beauties of data is that it can be used in multiple places at multiple times and not engender significant net new costs. It's one of the few assets that you can say about that. So the concept of an information transducer's really important because it's the basis for a lot of transformations of data as data flies through organizations. So we end up with the transducers storing data in the form of analytics, machine learning, business operations, other types of things, and then it goes back and it's transduced, back into to the real world as we program the real world and turning into these systems of agency. So that's the new lifecycle. And increasingly, that's how we have to think about data flows. Capturing it, turning it into value and having it act on our behalf in front of markets. That could have enormous implications for how ultimately money is spent over the next few years. So Wikibon does a significant amount of market research in addition to advising our large user customers. And that includes doing studies on cloud, public cloud, but also studies on what's happening within the analytics world. And if you take a look at it, what we basically see happening over the course of the next few years is significant investments in software and also services to get the word out. But we also expect there's going to be a lot of hardware. A significant amount of hardware that's ultimately sold within this space. And that's because of something that we call true private cloud. This concept of ultimately a business increasingly being designed and architected around the idea of data assets means that the reality, the physical realities of how data operates, how much it costs to store it or move it, the issues of latency, the issues of intellectual property protection as well as things like the regulatory regimes that are being put in place to govern how data gets used in between locations. All of those factors are going to drive increased utilization of what we call true private cloud. On premise technologies that provide the cloud experience but act where the data naturally needs to be processed. I'll come a little bit more to that in a second. So we think that it's going to be a relatively balanced market, a lot of stuff is going to end up in the cloud, but as Neil and Jim will talk about, there's going to be an enormous amount of analytics that pulls an enormous amount of data out to the Edge 'cause that's where the action's going to be. Now one of the things I want to also reveal to you is we've done a fair amount of data, we've done a fair amount of research around this question of where or how will data guide decisions about infrastructure? And in particular the Edge is driving these conversations. So here is a piece of research that one of our cohorts at Wikibon did, David Floyer. Taking a look at IoT Edge cost comparisons over a three year period. And it showed on the left hand side, an example where the sensor towers and other types of devices were streaming data back into a central location in a wind farm, stylized wind farm example. Very very expensive. Significant amounts of money end up being consumed, significant resources end up being consumed by the cost of moving the data from one place to another. Now this is even assuming that latency does not become a problem. The second example that we looked at is if we kept more of that data at the Edge and processed at the Edge. And literally it is a 85 plus percent cost reduction to keep more of the data at the Edge. Now that has enormous implications, how we think about big data, how we think about next generation architectures, et cetera. But it's these costs that are going to be so crucial to shaping the decisions that we make over the next two years about where we put hardware, where we put resources, what type of automation is possible, and what types of technology management has to be put in place. Ultimately we think it's going to lead to a structure, an architecture in the infrastructure as well as applications that is informed more by moving cloud to the data than moving the data to the cloud. That's kind of our fundamental proposition is that the norm in the industry has been to think about moving all data up to the cloud because who wants to do IT? It's so much cheaper, look what Amazon can do. Or what AWS can do. All true statements. Very very important in many respects. But most businesses today are starting to rethink that simple proposition and asking themselves do we have to move our business to the cloud, or can we move the cloud to the business? And increasingly what we see happening as we talk to our large customers about this, is that the cloud is being extended out to the Edge, we're moving the cloud and cloud services out to the business. Because of economic reasons, intellectual property control reasons, regulatory reasons, security reasons, any number of other reasons. It's just a more natural way to deal with it. And of course, the most important reason is latency. So with that as a quick backdrop, if I may quickly summarize, we believe fundamentally that the difference today is that businesses are trying to understand how to use data as an asset. And that requires an investment in new sets of technology capabilities that are not cheap, not simple and require significant thought, a lot of planning, lot of change within an IT and business organizations. How we capture data, how we turn it into value, and how we translate that into real world action through software. That's going to lead to a rethinking, ultimately, based on cost and other factors about how we deploy infrastructure. How we use the cloud so that the data guides the activity and not the choice of cloud supplier determines or limits what we can do with our data. And that's going to lead to this notion of true private cloud and elevate the role the Edge plays in analytics and all other architectures. So I hope that was perfectly clear. And now what I want to do is I want to bring up Neil Raden. Yes, now's the time Neil! So let me invite Neil up to spend some time talking about harvesting value at the Edge. Can you see his, all right. Got it. >> Oh boy. Hi everybody. Yeah, this is a really, this is a really big and complicated topic so I decided to just concentrate on something fairly simple, but I know that Peter mentioned customers. And he also had a picture of Peter Drucker. I had the pleasure in 1998 of interviewing Peter and photographing him. Peter Drucker, not this Peter. Because I'd started a magazine called Hired Brains. It was for consultants. And Peter said, Peter said a number of really interesting things to me, but one of them was his definition of a customer was someone who wrote you a check that didn't bounce. He was kind of a wag. He was! So anyway, he had to leave to do a video conference with Jack Welch and so I said to him, how do you charge Jack Welch to spend an hour on a video conference? And he said, you know I have this theory that you should always charge your client enough that it hurts a little bit or they don't take you seriously. Well, I had the chance to talk to Jack's wife, Suzie Welch recently and I told her that story and she said, "Oh he's full of it, Jack never paid "a dime for those conferences!" (laughs) So anyway, all right, so let's talk about this. To me, things about, engineered things like the hardware and network and all these other standards and so forth, we haven't fully developed those yet, but they're coming. As far as I'm concerned, they're not the most interesting thing. The most interesting thing to me in Edge Analytics is what you're going to get out of it, what the result is going to be. Making sense of this data that's coming. And while we're on data, something I've been thinking a lot lately because everybody I've talked to for the last three days just keeps talking to me about data. I have this feeling that data isn't actually quite real. That any data that we deal with is the result of some process that's captured it from something else that's actually real. In other words it's proxy. So it's not exactly perfect. And that's why we've always had these problems about customer A, customer A, customer A, what's their definition? What's the definition of this, that and the other thing? And with sensor data, I really have the feeling, when companies get, not you know, not companies, organizations get instrumented and start dealing with this kind of data what they're going to find is that this is the first time, and I've been involved in analytics, I don't want to date myself, 'cause I know I look young, but the first, I've been dealing with analytics since 1975. And everything we've ever done in analytics has involved pulling data from some other system that was not designed for analytics. But if you think about sensor data, this is data that we're actually going to catch the first time. It's going to be ours! We're not going to get it from some other source. It's going to be the real deal, to the extent that it's the real deal. Now you may say, ya know Neil, a sensor that's sending us information about oil pressure or temperature or something like that, how can you quarrel with that? Well, I can quarrel with it because I don't know if the sensor's doing it right. So we still don't know, even with that data, if it's right, but that's what we have to work with. Now, what does that really mean? Is that we have to be really careful with this data. It's ours, we have to take care of it. We don't get to reload it from source some other day. If we munge it up it's gone forever. So that has, that has very serious implications, but let me, let me roll you back a little bit. The way I look at analytics is it's come in three different eras. And we're entering into the third now. The first era was business intelligence. It was basically built and governed by IT, it was system of record kind of reporting. And as far as I can recall, it probably started around 1988 or at least that's the year that Howard Dresner claims to have invented the term. I'm not sure it's true. And things happened before 1988 that was sort of like BI, but 88 was when they really started coming out, that's when we saw BusinessObjects and Cognos and MicroStrategy and those kinds of things. The second generation just popped out on everybody else. We're all looking around at BI and we were saying why isn't this working? Why are only five people in the organization using this? Why are we not getting value out of this massive license we bought? And along comes companies like Tableau doing data discovery, visualization, data prep and Line of Business people are using this now. But it's still the same kind of data sources. It's moved out a little bit, but it still hasn't really hit the Big Data thing. Now we're in third generation, so we not only had Big Data, which has come and hit us like a tsunami, but we're looking at smart discovery, we're looking at machine learning. We're looking at AI induced analytics workflows. And then all the natural language cousins. You know, natural language processing, natural language, what's? Oh Q, natural language query. Natural language generation. Anybody here know what natural language generation is? Yeah, so what you see now is you do some sort of analysis and that tool comes up and says this chart is about the following and it used the following data, and it's blah blah blah blah blah. I think it's kind of wordy and it's going to refined some, but it's an interesting, it's an interesting thing to do. Now, the problem I see with Edge Analytics and IoT in general is that most of the canonical examples we talk about are pretty thin. I know we talk about autonomous cars, I hope to God we never have them, 'cause I'm a car guy. Fleet Management, I think Qualcomm started Fleet Management in 1988, that is not a new application. Industrial controls. I seem to remember, I seem to remember Honeywell doing industrial controls at least in the 70s and before that I wasn't, I don't want to talk about what I was doing, but I definitely wasn't in this industry. So my feeling is we all need to sit down and think about this and get creative. Because the real value in Edge Analytics or IoT, whatever you want to call it, the real value is going to be figuring out something that's new or different. Creating a brand new business. Changing the way an operation happens in a company, right? And I think there's a lot of smart people out there and I think there's a million apps that we haven't even talked about so, if you as a vendor come to me and tell me how great your product is, please don't talk to me about autonomous cars or Fleet Managing, 'cause I've heard about that, okay? Now, hardware and architecture are really not the most interesting thing. We fell into that trap with data warehousing. We've fallen into that trap with Big Data. We talk about speeds and feeds. Somebody said to me the other day, what's the narrative of this company? This is a technology provider. And I said as far as I can tell, they don't have a narrative they have some products and they compete in a space. And when they go to clients and the clients say, what's the value of your product? They don't have an answer for that. So we don't want to fall into this trap, okay? Because IoT is going to inform you in ways you've never even dreamed about. Unfortunately some of them are going to be really stinky, you know, they're going to be really bad. You're going to lose more of your privacy, it's going to get harder to get, I dunno, mortgage for example, I dunno, maybe it'll be easier, but in any case, it's not going to all be good. So let's really think about what you want to do with this technology to do something that's really valuable. Cost takeout is not the place to justify an IoT project. Because number one, it's very expensive, and number two, it's a waste of the technology because you should be looking at, you know the old numerator denominator thing? You should be looking at the numerators and forget about the denominators because that's not what you do with IoT. And the other thing is you don't want to get over confident. Actually this is good advice about anything, right? But in this case, I love this quote by Derek Sivers He's a pretty funny guy. He said, "If more information was the answer, "then we'd all be billionaires with perfect abs." I'm not sure what's on his wishlist, but you know, I would, those aren't necessarily the two things I would think of, okay. Now, what I said about the data, I want to explain some more. Big Data Analytics, if you look at this graphic, it depicts it perfectly. It's a bunch of different stuff falling into the funnel. All right? It comes from other places, it's not original material. And when it comes in, it's always used as second hand data. Now what does that mean? That means that you have to figure out the semantics of this information and you have to find a way to put it together in a way that's useful to you, okay. That's Big Data. That's where we are. How is that different from IoT data? It's like I said, IoT is original. You can put it together any way you want because no one else has ever done that before. It's yours to construct, okay. You don't even have to transform it into a schema because you're creating the new application. But the most important thing is you have to take care of it 'cause if you lose it, it's gone. It's the original data. It's the same way, in operational systems for a long long time we've always been concerned about backup and security and everything else. You better believe this is a problem. I know a lot of people think about streaming data, that we're going to look at it for a minute, and we're going to throw most of it away. Personally I don't think that's going to happen. I think it's all going to be saved, at least for a while. Now, the governance and security, oh, by the way, I don't know where you're going to find a presentation where somebody uses a newspaper clipping about Vladimir Lenin, but here it is, enjoy yourselves. I believe that when people think about governance and security today they're still thinking along the same grids that we thought about it all along. But this is very very different and again, I'm sorry I keep thrashing this around, but this is treasured data that has to be carefully taken care of. Now when I say governance, my experience has been over the years that governance is something that IT does to make everybody's lives miserable. But that's not what I mean by governance today. It means a comprehensive program to really secure the value of the data as an asset. And you need to think about this differently. Now the other thing is you may not get to think about it differently, because some of the stuff may end up being subject to regulation. And if the regulators start regulating some of this, then that'll take some of the degrees of freedom away from you in how you put this together, but you know, that's the way it works. Now, machine learning, I think I told somebody the other day that claims about machine learning in software products are as common as twisters in trail parks. And a lot of it is not really what I'd call machine learning. But there's a lot of it around. And I think all of the open source machine learning and artificial intelligence that's popped up, it's great because all those math PhDs who work at Home Depot now have something to do when they go home at night and they construct this stuff. But if you're going to have machine learning at the Edge, here's the question, what kind of machine learning would you have at the Edge? As opposed to developing your models back at say, the cloud, when you transmit the data there. The devices at the Edge are not very powerful. And they don't have a lot of memory. So you're only going to be able to do things that have been modeled or constructed somewhere else. But that's okay. Because machine learning algorithm development is actually slow and painful. So you really want the people who know how to do this working with gobs of data creating models and testing them offline. And when you have something that works, you can put it there. Now there's one thing I want to talk about before I finish, and I think I'm almost finished. I wrote a book about 10 years ago about automated decision making and the conclusion that I came up with was that little decisions add up, and that's good. But it also means you don't have to get them all right. But you don't want computers or software making decisions unattended if it involves human life, or frankly any life. Or the environment. So when you think about the applications that you can build using this architecture and this technology, think about the fact that you're not going to be doing air traffic control, you're not going to be monitoring crossing guards at the elementary school. You're going to be doing things that may seem fairly mundane. Managing machinery on the factory floor, I mean that may sound great, but really isn't that interesting. Managing well heads, drilling for oil, well I mean, it's great to the extent that it doesn't cause wells to explode, but they don't usually explode. What it's usually used for is to drive the cost out of preventative maintenance. Not very interesting. So use your heads. Come up with really cool stuff. And any of you who are involved in Edge Analytics, the next time I talk to you I don't want to hear about the same five applications that everybody talks about. Let's hear about some new ones. So, in conclusion, I don't really have anything in conclusion except that Peter mentioned something about limousines bringing people up here. On Monday I was slogging up and down Park Avenue and Madison Avenue with my client and we were visiting all the hedge funds there because we were doing a project with them. And in the miserable weather I looked at him and I said, for godsake Paul, where's the black car? And he said, that was the 90s. (laughs) Thank you. So, Jim, up to you. (audience applauding) This is terrible, go that way, this was terrible coming that way. >> Woo, don't want to trip! And let's move to, there we go. Hi everybody, how ya doing? Thanks Neil, thanks Peter, those were great discussions. So I'm the third leg in this relay race here, talking about of course how software is eating the world. And focusing on the value of Edge Analytics in a lot of real world scenarios. Programming the real world for, to make the world a better place. So I will talk, I'll break it out analytically in terms of the research that Wikibon is doing in the area of the IoT, but specifically how AI intelligence is being embedded really to all material reality potentially at the Edge. But mobile applications and industrial IoT and the smart appliances and self driving vehicles. I will break it out in terms of a reference architecture for understanding what functions are being pushed to the Edge to hardware, to our phones and so forth to drive various scenarios in terms of real world results. So I'll move a pace here. So basically AI software or AI microservices are being infused into Edge hardware as we speak. What we see is more vendors of smart phones and other, real world appliances and things like smart driving, self driving vehicles. What they're doing is they're instrumenting their products with computer vision and natural language processing, environmental awareness based on sensing and actuation and those capabilities and inferences that these devices just do to both provide human support for human users of these devices as well as to enable varying degrees of autonomous operation. So what I'll be talking about is how AI is a foundation for data driven systems of agency of the sort that Peter is talking about. Infusing data driven intelligence into everything or potentially so. As more of this capability, all these algorithms for things like, ya know for doing real time predictions and classifications, anomaly detection and so forth, as this functionality gets diffused widely and becomes more commoditized, you'll see it burned into an ever-wider variety of hardware architecture, neuro synaptic chips, GPUs and so forth. So what I've got here in front of you is a sort of a high level reference architecture that we're building up in our research at Wikibon. So AI, artificial intelligence is a big term, a big paradigm, I'm not going to unpack it completely. Of course we don't have oodles of time so I'm going to take you fairly quickly through the high points. It's a driver for systems of agency. Programming the real world. Transducing digital inputs, the data, to analog real world results. Through the embedding of this capability in the IoT, but pushing more and more of it out to the Edge with points of decision and action in real time. And there are four capabilities that we're seeing in terms of AI enabled, enabling capabilities that are absolutely critical to software being pushed to the Edge are sensing, actuation, inference and Learning. Sensing and actuation like Peter was describing, it's about capturing data from the environment within which a device or users is operating or moving. And then actuation is the fancy term for doing stuff, ya know like industrial IoT, it's obviously machine controlled, but clearly, you know self driving vehicles is steering a vehicle and avoiding crashing and so forth. Inference is the meat and potatoes as it were of AI. Analytics does inferences. It infers from the data, the logic of the application. Predictive logic, correlations, classification, abstractions, differentiation, anomaly detection, recognizing faces and voices. We see that now with Apple and the latest version of the iPhone is embedding face recognition as a core, as the core multifactor authentication technique. Clearly that's a harbinger of what's going to be universal fairly soon which is that depends on AI. That depends on convolutional neural networks, that is some heavy hitting processing power that's necessary and it's processing the data that's coming from your face. So that's critically important. So what we're looking at then is the AI software is taking root in hardware to power continuous agency. Getting stuff done. Powered decision support by human beings who have to take varying degrees of action in various environments. We don't necessarily want to let the car steer itself in all scenarios, we want some degree of override, for lots of good reasons. They want to protect life and limb including their own. And just more data driven automation across the internet of things in the broadest sense. So unpacking this reference framework, what's happening is that AI driven intelligence is powering real time decisioning at the Edge. Real time local sensing from the data that it's capturing there, it's ingesting the data. Some, not all of that data, may be persistent at the Edge. Some, perhaps most of it, will be pushed into the cloud for other processing. When you have these highly complex algorithms that are doing AI deep learning, multilayer, to do a variety of anti-fraud and higher level like narrative, auto-narrative roll-ups from various scenes that are unfolding. A lot of this processing is going to begin to happen in the cloud, but a fair amount of the more narrowly scoped inferences that drive real time decision support at the point of action will be done on the device itself. Contextual actuation, so it's the sensor data that's captured by the device along with other data that may be coming down in real time streams through the cloud will provide the broader contextual envelope of data needed to drive actuation, to drive various models and rules and so forth that are making stuff happen at the point of action, at the Edge. Continuous inference. What it all comes down to is that inference is what's going on inside the chips at the Edge device. And what we're seeing is a growing range of hardware architectures, GPUs, CPUs, FPGAs, ASIC, Neuro synaptic chips of all sorts playing in various combinations that are automating more and more very complex inference scenarios at the Edge. And not just individual devices, swarms of devices, like drones and so forth are essentially an Edge unto themselves. You'll see these tiered hierarchies of Edge swarms that are playing and doing inferences of ever more complex dynamic nature. And much of this will be, this capability, the fundamental capabilities that is powering them all will be burned into the hardware that powers them. And then adaptive learning. Now I use the term learning rather than training here, training is at the core of it. Training means everything in terms of the predictive fitness or the fitness of your AI services for whatever task, predictions, classifications, face recognition that you, you've built them for. But I use the term learning in a broader sense. It's what's make your inferences get better and better, more accurate over time is that you're training them with fresh data in a supervised learning environment. But you can have reinforcement learning if you're doing like say robotics and you don't have ground truth against which to train the data set. You know there's maximize a reward function versus minimize a loss function, you know, the standard approach, the latter for supervised learning. There's also, of course, the issue, or not the issue, the approach of unsupervised learning with cluster analysis critically important in a lot of real world scenarios. So Edge AI Algorithms, clearly, deep learning which is multilayered machine learning models that can do abstractions at higher and higher levels. Face recognition is a high level abstraction. Faces in a social environment is an even higher level of abstraction in terms of groups. Faces over time and bodies and gestures, doing various things in various environments is an even higher level abstraction in terms of narratives that can be rolled up, are being rolled up by deep learning capabilities of great sophistication. Convolutional neural networks for processing images, recurrent neural networks for processing time series. Generative adversarial networks for doing essentially what's called generative applications of all sort, composing music, and a lot of it's being used for auto programming. These are all deep learning. There's a variety of other algorithm approaches I'm not going to bore you with here. Deep learning is essentially the enabler of the five senses of the IoT. Your phone's going to have, has a camera, it has a microphone, it has the ability to of course, has geolocation and navigation capabilities. It's environmentally aware, it's got an accelerometer and so forth embedded therein. The reason that your phone and all of the devices are getting scary sentient is that they have the sensory modalities and the AI, the deep learning that enables them to make environmentally correct decisions in the wider range of scenarios. So machine learning is the foundation of all of this, but there are other, I mean of deep learning, artificial neural networks is the foundation of that. But there are other approaches for machine learning I want to make you aware of because support vector machines and these other established approaches for machine learning are not going away but really what's driving the show now is deep learning, because it's scary effective. And so that's where most of the investment in AI is going into these days for deep learning. AI Edge platforms, tools and frameworks are just coming along like gangbusters. Much development of AI, of deep learning happens in the context of your data lake. This is where you're storing your training data. This is the data that you use to build and test to validate in your models. So we're seeing a deepening stack of Hadoop and there's Kafka, and Spark and so forth that are driving the training (coughs) excuse me, of AI models that are power all these Edge Analytic applications so that that lake will continue to broaden in terms, and deepen in terms of a scope and the range of data sets and the range of modeling, AI modeling supports. Data science is critically important in this scenario because the data scientist, the data science teams, the tools and techniques and flows of data science are the fundamental development paradigm or discipline or capability that's being leveraged to build and to train and to deploy and iterate all this AI that's being pushed to the Edge. So clearly data science is at the center, data scientists of an increasingly specialized nature are necessary to the realization to this value at the Edge. AI frameworks are coming along like you know, a mile a minute. TensorFlow has achieved a, is an open source, most of these are open source, has achieved sort of almost like a defacto standard, status, I'm using the word defacto in air quotes. There's Theano and Keras and xNet and CNTK and a variety of other ones. We're seeing range of AI frameworks come to market, most open source. Most are supported by most of the major tool vendors as well. So at Wikibon we're definitely tracking that, we plan to go deeper in our coverage of that space. And then next best action, powers recommendation engines. I mean next best action decision automation of the sort of thing Neil's covered in a variety of contexts in his career is fundamentally important to Edge Analytics to systems of agency 'cause it's driving the process automation, decision automation, sort of the targeted recommendations that are made at the Edge to individual users as well as to process that automation. That's absolutely necessary for self driving vehicles to do their jobs and industrial IoT. So what we're seeing is more and more recommendation engine or recommender capabilities powered by ML and DL are going to the Edge, are already at the Edge for a variety of applications. Edge AI capabilities, like I said, there's sensing. And sensing at the Edge is becoming ever more rich, mixed reality Edge modalities of all sort are for augmented reality and so forth. We're just seeing a growth in certain, the range of sensory modalities that are enabled or filtered and analyzed through AI that are being pushed to the Edge, into the chip sets. Actuation, that's where robotics comes in. Robotics is coming into all aspects of our lives. And you know, it's brainless without AI, without deep learning and these capabilities. Inference, autonomous edge decisioning. Like I said, it's, a growing range of inferences that are being done at the Edge. And that's where it has to happen 'cause that's the point of decision. Learning, training, much training, most training will continue to be done in the cloud because it's very data intensive. It's a grind to train and optimize an AI algorithm to do its job. It's not something that you necessarily want to do or can do at the Edge at Edge devices so, the models that are built and trained in the cloud are pushed down through a dev ops process down to the Edge and that's the way it will work pretty much in most AI environments, Edge analytics environments. You centralize the modeling, you decentralize the execution of the inference models. The training engines will be in the cloud. Edge AI applications. I'll just run you through sort of a core list of the ones that are coming into, already come into the mainstream at the Edge. Multifactor authentication, clearly the Apple announcement of face recognition is just a harbinger of the fact that that's coming to every device. Computer vision speech recognition, NLP, digital assistance and chat bots powered by natural language processing and understanding, it's all AI powered. And it's becoming very mainstream. Emotion detection, face recognition, you know I could go on and on but these are like the core things that everybody has access to or will by 2020 and they're core devices, mass market devices. Developers, designers and hardware engineers are coming together to pool their expertise to build and train not just the AI, but also the entire package of hardware in UX and the orchestration of real world business scenarios or life scenarios that all this intelligence, the submitted intelligence enables and most, much of what they build in terms of AI will be containerized as micro services through Docker and orchestrated through Kubernetes as full cloud services in an increasingly distributed fabric. That's coming along very rapidly. We can see a fair amount of that already on display at Strata in terms of what the vendors are doing or announcing or who they're working with. The hardware itself, the Edge, you know at the Edge, some data will be persistent, needs to be persistent to drive inference. That's, and you know to drive a variety of different application scenarios that need some degree of historical data related to what that device in question happens to be sensing or has sensed in the immediate past or you know, whatever. The hardware itself is geared towards both sensing and increasingly persistence and Edge driven actuation of real world results. The whole notion of drones and robotics being embedded into everything that we do. That's where that comes in. That has to be powered by low cost, low power commodity chip sets of various sorts. What we see right now in terms of chip sets is it's a GPUs, Nvidia has gone real far and GPUs have come along very fast in terms of power inference engines, you know like the Tesla cars and so forth. But GPUs are in many ways the core hardware sub straight for in inference engines in DL so far. But to become a mass market phenomenon, it's got to get cheaper and lower powered and more commoditized, and so we see a fair number of CPUs being used as the hardware for Edge Analytic applications. Some vendors are fairly big on FPGAs, I believe Microsoft has gone fairly far with FPGAs inside DL strategy. ASIC, I mean, there's neuro synaptic chips like IBM's got one. There's at least a few dozen vendors of neuro synaptic chips on the market so at Wikibon we're going to track that market as it develops. And what we're seeing is a fair number of scenarios where it's a mixed environment where you use one chip set architecture at the inference side of the Edge, and other chip set architectures that are driving the DL as processed in the cloud, playing together within a common architecture. And we see some, a fair number of DL environments where the actual training is done in the cloud on Spark using CPUs and parallelized in memory, but pushing Tensorflow models that might be trained through Spark down to the Edge where the inferences are done in FPGAs and GPUs. Those kinds of mixed hardware scenarios are very, very, likely to be standard going forward in lots of areas. So analytics at the Edge power continuous results is what it's all about. The whole point is really not moving the data, it's putting the inference at the Edge and working from the data that's already captured and persistent there for the duration of whatever action or decision or result needs to be powered from the Edge. Like Neil said cost takeout alone is not worth doing. Cost takeout alone is not the rationale for putting AI at the Edge. It's getting new stuff done, new kinds of things done in an automated consistent, intelligent, contextualized way to make our lives better and more productive. Security and governance are becoming more important. Governance of the models, governance of the data, governance in a dev ops context in terms of version controls over all those DL models that are built, that are trained, that are containerized and deployed. Continuous iteration and improvement of those to help them learn to do, make our lives better and easier. With that said, I'm going to hand it over now. It's five minutes after the hour. We're going to get going with the Influencer Panel so what we'd like to do is I call Peter, and Peter's going to call our influencers. >> All right, am I live yet? Can you hear me? All right so, we've got, let me jump back in control here. We've got, again, the objective here is to have community take on some things. And so what we want to do is I want to invite five other people up, Neil why don't you come on up as well. Start with Neil. You can sit here. On the far right hand side, Judith, Judith Hurwitz. >> Neil: I'm glad I'm on the left side. >> From the Hurwitz Group. >> From the Hurwitz Group. Jennifer Shin who's affiliated with UC Berkeley. Jennifer are you here? >> She's here, Jennifer where are you? >> She was here a second ago. >> Neil: I saw her walk out she may have, >> Peter: All right, she'll be back in a second. >> Here's Jennifer! >> Here's Jennifer! >> Neil: With 8 Path Solutions, right? >> Yep. >> Yeah 8 Path Solutions. >> Just get my mic. >> Take your time Jen. >> Peter: All right, Stephanie McReynolds. Far left. And finally Joe Caserta, Joe come on up. >> Stephie's with Elysian >> And to the left. So what I want to do is I want to start by having everybody just go around introduce yourself quickly. Judith, why don't we start there. >> I'm Judith Hurwitz, I'm president of Hurwitz and Associates. We're an analyst research and fault leadership firm. I'm the co-author of eight books. Most recent is Cognitive Computing and Big Data Analytics. I've been in the market for a couple years now. >> Jennifer. >> Hi, my name's Jennifer Shin. I'm the founder and Chief Data Scientist 8 Path Solutions LLC. We do data science analytics and technology. We're actually about to do a big launch next month, with Box actually. >> We're apparent, are we having a, sorry Jennifer, are we having a problem with Jennifer's microphone? >> Man: Just turn it back on? >> Oh you have to turn it back on. >> It was on, oh sorry, can you hear me now? >> Yes! We can hear you now. >> Okay, I don't know how that turned back off, but okay. >> So you got to redo all that Jen. >> Okay, so my name's Jennifer Shin, I'm founder of 8 Path Solutions LLC, it's a data science analytics and technology company. I founded it about six years ago. So we've been developing some really cool technology that we're going to be launching with Box next month. It's really exciting. And I have, I've been developing a lot of patents and some technology as well as teaching at UC Berkeley as a lecturer in data science. >> You know Jim, you know Neil, Joe, you ready to go? >> Joe: Just broke my microphone. >> Joe's microphone is broken. >> Joe: Now it should be all right. >> Jim: Speak into Neil's. >> Joe: Hello, hello? >> I just feel not worthy in the presence of Joe Caserta. (several laughing) >> That's right, master of mics. If you can hear me, Joe Caserta, so yeah, I've been doing data technology solutions since 1986, almost as old as Neil here, but been doing specifically like BI, data warehousing, business intelligence type of work since 1996. And been doing, wholly dedicated to Big Data solutions and modern data engineering since 2009. Where should I be looking? >> Yeah I don't know where is the camera? >> Yeah, and that's basically it. So my company was formed in 2001, it's called Caserta Concepts. We recently rebranded to only Caserta 'cause what we do is way more than just concepts. So we conceptualize the stuff, we envision what the future brings and we actually build it. And we help clients large and small who are just, want to be leaders in innovation using data specifically to advance their business. >> Peter: And finally Stephanie McReynolds. >> I'm Stephanie McReynolds, I had product marketing as well as corporate marketing for a company called Elysian. And we are a data catalog so we help bring together not only a technical understanding of your data, but we curate that data with human knowledge and use automated intelligence internally within the system to make recommendations about what data to use for decision making. And some of our customers like City of San Diego, a large automotive manufacturer working on self driving cars and General Electric use Elysian to help power their solutions for IoT at the Edge. >> All right so let's jump right into it. And again if you have a question, raise your hand, and we'll do our best to get it to the floor. But what I want to do is I want to get seven questions in front of this group and have you guys discuss, slog, disagree, agree. Let's start here. What is the relationship between Big Data AI and IoT? Now Wikibon's put forward its observation that data's being generated at the Edge, that action is being taken at the Edge and then increasingly the software and other infrastructure architectures need to accommodate the realities of how data is going to work in these very complex systems. That's our perspective. Anybody, Judith, you want to start? >> Yeah, so I think that if you look at AI machine learning, all these different areas, you have to be able to have the data learned. Now when it comes to IoT, I think one of the issues we have to be careful about is not all data will be at the Edge. Not all data needs to be analyzed at the Edge. For example if the light is green and that's good and it's supposed to be green, do you really have to constantly analyze the fact that the light is green? You actually only really want to be able to analyze and take action when there's an anomaly. Well if it goes purple, that's actually a sign that something might explode, so that's where you want to make sure that you have the analytics at the edge. Not for everything, but for the things where there is an anomaly and a change. >> Joe, how about from your perspective? >> For me I think the evolution of data is really becoming, eventually oxygen is just, I mean data's going to be the oxygen we breathe. It used to be very very reactive and there used to be like a latency. You do something, there's a behavior, there's an event, there's a transaction, and then you go record it and then you collect it, and then you can analyze it. And it was very very waterfallish, right? And then eventually we figured out to put it back into the system. Or at least human beings interpret it to try to make the system better and that is really completely turned on it's head, we don't do that anymore. Right now it's very very, it's synchronous, where as we're actually making these transactions, the machines, we don't really need, I mean human beings are involved a bit, but less and less and less. And it's just a reality, it may not be politically correct to say but it's a reality that my phone in my pocket is following my behavior, and it knows without telling a human being what I'm doing. And it can actually help me do things like get to where I want to go faster depending on my preference if I want to save money or save time or visit things along the way. And I think that's all integration of big data, streaming data, artificial intelligence and I think the next thing that we're going to start seeing is the culmination of all of that. I actually, hopefully it'll be published soon, I just wrote an article for Forbes with the term of ARBI and ARBI is the integration of Augmented Reality and Business Intelligence. Where I think essentially we're going to see, you know, hold your phone up to Jim's face and it's going to recognize-- >> Peter: It's going to break. >> And it's going to say exactly you know, what are the key metrics that we want to know about Jim. If he works on my sales force, what's his attainment of goal, what is-- >> Jim: Can it read my mind? >> Potentially based on behavior patterns. >> Now I'm scared. >> I don't think Jim's buying it. >> It will, without a doubt be able to predict what you've done in the past, you may, with some certain level of confidence you may do again in the future, right? And is that mind reading? It's pretty close, right? >> Well, sometimes, I mean, mind reading is in the eye of the individual who wants to know. And if the machine appears to approximate what's going on in the person's head, sometimes you can't tell. So I guess, I guess we could call that the Turing machine test of the paranormal. >> Well, face recognition, micro gesture recognition, I mean facial gestures, people can do it. Maybe not better than a coin toss, but if it can be seen visually and captured and analyzed, conceivably some degree of mind reading can be built in. I can see when somebody's angry looking at me so, that's a possibility. That's kind of a scary possibility in a surveillance society, potentially. >> Neil: Right, absolutely. >> Peter: Stephanie, what do you think? >> Well, I hear a world of it's the bots versus the humans being painted here and I think that, you know at Elysian we have a very strong perspective on this and that is that the greatest impact, or the greatest results is going to be when humans figure out how to collaborate with the machines. And so yes, you want to get to the location more quickly, but the machine as in the bot isn't able to tell you exactly what to do and you're just going to blindly follow it. You need to train that machine, you need to have a partnership with that machine. So, a lot of the power, and I think this goes back to Judith's story is then what is the human decision making that can be augmented with data from the machine, but then the humans are actually training the training side and driving machines in the right direction. I think that's when we get true power out of some of these solutions so it's not just all about the technology. It's not all about the data or the AI, or the IoT, it's about how that empowers human systems to become smarter and more effective and more efficient. And I think we're playing that out in our technology in a certain way and I think organizations that are thinking along those lines with IoT are seeing more benefits immediately from those projects. >> So I think we have a general agreement of what kind of some of the things you talked about, IoT, crucial capturing information, and then having action being taken, AI being crucial to defining and refining the nature of the actions that are being taken Big Data ultimately powering how a lot of that changes. Let's go to the next one. >> So actually I have something to add to that. So I think it makes sense, right, with IoT, why we have Big Data associated with it. If you think about what data is collected by IoT. We're talking about a serial information, right? It's over time, it's going to grow exponentially just by definition, right, so every minute you collect a piece of information that means over time, it's going to keep growing, growing, growing as it accumulates. So that's one of the reasons why the IoT is so strongly associated with Big Data. And also why you need AI to be able to differentiate between one minute versus next minute, right? Trying to find a better way rather than looking at all that information and manually picking out patterns. To have some automated process for being able to filter through that much data that's being collected. >> I want to point out though based on what you just said Jennifer, I want to bring Neil in at this point, that this question of IoT now generating unprecedented levels of data does introduce this idea of the primary source. Historically what we've done within technology, or within IT certainly is we've taken stylized data. There is no such thing as a real world accounting thing. It is a human contrivance. And we stylize data and therefore it's relatively easy to be very precise on it. But when we start, as you noted, when we start measuring things with a tolerance down to thousandths of a millimeter, whatever that is, metric system, now we're still sometimes dealing with errors that we have to attend to. So, the reality is we're not just dealing with stylized data, we're dealing with real data, and it's more, more frequent, but it also has special cases that we have to attend to as in terms of how we use it. What do you think Neil? >> Well, I mean, I agree with that, I think I already said that, right. >> Yes you did, okay let's move on to the next one. >> Well it's a doppelganger, the digital twin doppelganger that's automatically created by your very fact that you're living and interacting and so forth and so on. It's going to accumulate regardless. Now that doppelganger may not be your agent, or might not be the foundation for your agent unless there's some other piece of logic like an interest graph that you build, a human being saying this is my broad set of interests, and so all of my agents out there in the IoT, you all need to be aware that when you make a decision on my behalf as my agent, this is what Jim would do. You know I mean there needs to be that kind of logic somewhere in this fabric to enable true agency. >> All right, so I'm going to start with you. Oh go ahead. >> I have a real short answer to this though. I think that Big Data provides the data and compute platform to make AI possible. For those of us who dipped our toes in the water in the 80s, we got clobbered because we didn't have the, we didn't have the facilities, we didn't have the resources to really do AI, we just kind of played around with it. And I think that the other thing about it is if you combine Big Data and AI and IoT, what you're going to see is people, a lot of the applications we develop now are very inward looking, we look at our organization, we look at our customers. We try to figure out how to sell more shoes to fashionable ladies, right? But with this technology, I think people can really expand what they're thinking about and what they model and come up with applications that are much more external. >> Actually what I would add to that is also it actually introduces being able to use engineering, right? Having engineers interested in the data. Because it's actually technical data that's collected not just say preferences or information about people, but actual measurements that are being collected with IoT. So it's really interesting in the engineering space because it opens up a whole new world for the engineers to actually look at data and to actually combine both that hardware side as well as the data that's being collected from it. >> Well, Neil, you and I have talked about something, 'cause it's not just engineers. We have in the healthcare industry for example, which you know a fair amount about, there's this notion of empirical based management. And the idea that increasingly we have to be driven by data as a way of improving the way that managers do things, the way the managers collect or collaborate and ultimately collectively how they take action. So it's not just engineers, it's supposed to also inform business, what's actually happening in the healthcare world when we start thinking about some of this empirical based management, is it working? What are some of the barriers? >> It's not a function of technology. What happens in medicine and healthcare research is, I guess you can say it borders on fraud. (people chuckling) No, I'm not kidding. I know the New England Journal of Medicine a couple of years ago released a study and said that at least half their articles that they published turned out to be written, ghost written by pharmaceutical companies. (man chuckling) Right, so I think the problem is that when you do a clinical study, the one that really killed me about 10 years ago was the women's health initiative. They spent $700 million gathering this data over 20 years. And when they released it they looked at all the wrong things deliberately, right? So I think that's a systemic-- >> I think you're bringing up a really important point that we haven't brought up yet, and that is is can you use Big Data and machine learning to begin to take the biases out? So if you let the, if you divorce your preconceived notions and your biases from the data and let the data lead you to the logic, you start to, I think get better over time, but it's going to take a while to get there because we do tend to gravitate towards our biases. >> I will share an anecdote. So I had some arm pain, and I had numbness in my thumb and pointer finger and I went to, excruciating pain, went to the hospital. So the doctor examined me, and he said you probably have a pinched nerve, he said, but I'm not exactly sure which nerve it would be, I'll be right back. And I kid you not, he went to a computer and he Googled it. (Neil laughs) And he came back because this little bit of information was something that could easily be looked up, right? Every nerve in your spine is connected to your different fingers so the pointer and the thumb just happens to be your C6, so he came back and said, it's your C6. (Neil mumbles) >> You know an interesting, I mean that's a good example. One of the issues with healthcare data is that the data set is not always shared across the entire research community, so by making Big Data accessible to everyone, you actually start a more rational conversation or debate on well what are the true insights-- >> If that conversation includes what Judith talked about, the actual model that you use to set priorities and make decisions about what's actually important. So it's not just about improving, this is the test. It's not just about improving your understanding of the wrong thing, it's also testing whether it's the right or wrong thing as well. >> That's right, to be able to test that you need to have humans in dialog with one another bringing different biases to the table to work through okay is there truth in this data? >> It's context and it's correlation and you can have a great correlation that's garbage. You know if you don't have the right context. >> Peter: So I want to, hold on Jim, I want to, >> It's exploratory. >> Hold on Jim, I want to take it to the next question 'cause I want to build off of what you talked about Stephanie and that is that this says something about what is the Edge. And our perspective is that the Edge is not just devices. That when we talk about the Edge, we're talking about human beings and the role that human beings are going to play both as sensors or carrying things with them, but also as actuators, actually taking action which is not a simple thing. So what do you guys think? What does the Edge mean to you? Joe, why don't you start? >> Well, I think it could be a combination of the two. And specifically when we talk about healthcare. So I believe in 2017 when we eat we don't know why we're eating, like I think we should absolutely by now be able to know exactly what is my protein level, what is my calcium level, what is my potassium level? And then find the foods to meet that. What have I depleted versus what I should have, and eat very very purposely and not by taste-- >> And it's amazing that red wine is always the answer. >> It is. (people laughing) And tequila, that helps too. >> Jim: You're a precision foodie is what you are. (several chuckle) >> There's no reason why we should not be able to know that right now, right? And when it comes to healthcare is, the biggest problem or challenge with healthcare is no matter how great of a technology you have, you can't, you can't, you can't manage what you can't measure. And you're really not allowed to use a lot of this data so you can't measure it, right? You can't do things very very scientifically right, in the healthcare world and I think regulation in the healthcare world is really burdening advancement in science. >> Peter: Any thoughts Jennifer? >> Yes, I teach statistics for data scientists, right, so you know we talk about a lot of these concepts. I think what makes these questions so difficult is you have to find a balance, right, a middle ground. For instance, in the case of are you being too biased through data, well you could say like we want to look at data only objectively, but then there are certain relationships that your data models might show that aren't actually a causal relationship. For instance, if there's an alien that came from space and saw earth, saw the people, everyone's carrying umbrellas right, and then it started to rain. That alien might think well, it's because they're carrying umbrellas that it's raining. Now we know from real world that that's actually not the way these things work. So if you look only at the data, that's the potential risk. That you'll start making associations or saying something's causal when it's actually not, right? So that's one of the, one of the I think big challenges. I think when it comes to looking also at things like healthcare data, right? Do you collect data about anything and everything? Does it mean that A, we need to collect all that data for the question we're looking at? Or that it's actually the best, more optimal way to be able to get to the answer? Meaning sometimes you can take some shortcuts in terms of what data you collect and still get the right answer and not have maybe that level of specificity that's going to cost you millions extra to be able to get. >> So Jennifer as a data scientist, I want to build upon what you just said. And that is, are we going to start to see methods and models emerge for how we actually solve some of these problems? So for example, we know how to build a system for stylized process like accounting or some elements of accounting. We have methods and models that lead to technology and actions and whatnot all the way down to that that system can be generated. We don't have the same notion to the same degree when we start talking about AI and some of these Big Datas. We have algorithms, we have technology. But are we going to start seeing, as a data scientist, repeatability and learning and how to think the problems through that's going to lead us to a more likely best or at least good result? >> So I think that's a bit of a tough question, right? Because part of it is, it's going to depend on how many of these researchers actually get exposed to real world scenarios, right? Research looks into all these papers, and you come up with all these models, but if it's never tested in a real world scenario, well, I mean we really can't validate that it works, right? So I think it is dependent on how much of this integration there's going to be between the research community and industry and how much investment there is. Funding is going to matter in this case. If there's no funding in the research side, then you'll see a lot of industry folk who feel very confident about their models that, but again on the other side of course, if researchers don't validate those models then you really can't say for sure that it's actually more accurate, or it's more efficient. >> It's the issue of real world testing and experimentation, A B testing, that's standard practice in many operationalized ML and AI implementations in the business world, but real world experimentation in the Edge analytics, what you're actually transducing are touching people's actual lives. Problem there is, like in healthcare and so forth, when you're experimenting with people's lives, somebody's going to die. I mean, in other words, that's a critical, in terms of causal analysis, you've got to tread lightly on doing operationalizing that kind of testing in the IoT when people's lives and health are at stake. >> We still give 'em placebos. So we still test 'em. All right so let's go to the next question. What are the hottest innovations in AI? Stephanie I want to start with you as a company, someone at a company that's got kind of an interesting little thing happening. We start thinking about how do we better catalog data and represent it to a large number of people. What are some of the hottest innovations in AI as you see it? >> I think it's a little counter intuitive about what the hottest innovations are in AI, because we're at a spot in the industry where the most successful companies that are working with AI are actually incorporating them into solutions. So the best AI solutions are actually the products that you don't know there's AI operating underneath. But they're having a significant impact on business decision making or bringing a different type of application to the market and you know, I think there's a lot of investment that's going into AI tooling and tool sets for data scientists or researchers, but the more innovative companies are thinking through how do we really take AI and make it have an impact on business decision making and that means kind of hiding the AI to the business user. Because if you think a bot is making a decision instead of you, you're not going to partner with that bot very easily or very readily. I worked at, way at the start of my career, I worked in CRM when recommendation engines were all the rage online and also in call centers. And the hardest thing was to get a call center agent to actually read the script that the algorithm was presenting to them, that algorithm was 99% correct most of the time, but there was this human resistance to letting a computer tell you what to tell that customer on the other side even if it was more successful in the end. And so I think that the innovation in AI that's really going to push us forward is when humans feel like they can partner with these bots and they don't think of it as a bot, but they think about as assisting their work and getting to a better result-- >> Hence the augmentation point you made earlier. >> Absolutely, absolutely. >> Joe how 'about you? What do you look at? What are you excited about? >> I think the coolest thing at the moment right now is chat bots. Like to be able, like to have voice be able to speak with you in natural language, to do that, I think that's pretty innovative, right? And I do think that eventually, for the average user, not for techies like me, but for the average user, I think keyboards are going to be a thing of the past. I think we're going to communicate with computers through voice and I think this is the very very beginning of that and it's an incredible innovation. >> Neil? >> Well, I think we all have myopia here. We're all thinking about commercial applications. Big, big things are happening with AI in the intelligence community, in military, the defense industry, in all sorts of things. Meteorology. And that's where, well, hopefully not on an every day basis with military, you really see the effect of this. But I was involved in a project a couple of years ago where we were developing AI software to detect artillery pieces in terrain from satellite imagery. I don't have to tell you what country that was. I think you can probably figure that one out right? But there are legions of people in many many companies that are involved in that industry. So if you're talking about the dollars spent on AI, I think the stuff that we do in our industries is probably fairly small. >> Well it reminds me of an application I actually thought was interesting about AI related to that, AI being applied to removing mines from war zones. >> Why not? >> Which is not a bad thing for a whole lot of people. Judith what do you look at? >> So I'm looking at things like being able to have pre-trained data sets in specific solution areas. I think that that's something that's coming. Also the ability to, to really be able to have a machine assist you in selecting the right algorithms based on what your data looks like and the problems you're trying to solve. Some of the things that data scientists still spend a lot of their time on, but can be augmented with some, basically we have to move to levels of abstraction before this becomes truly ubiquitous across many different areas. >> Peter: Jennifer? >> So I'm going to say computer vision. >> Computer vision? >> Computer vision. So computer vision ranges from image recognition to be able to say what content is in the image. Is it a dog, is it a cat, is it a blueberry muffin? Like a sort of popular post out there where it's like a blueberry muffin versus like I think a chihuahua and then it compares the two. And can the AI really actually detect difference, right? So I think that's really where a lot of people who are in this space of being in both the AI space as well as data science are looking to for the new innovations. I think, for instance, cloud vision I think that's what Google still calls it. The vision API we've they've released on beta allows you to actually use an API to send your image and then have it be recognized right, by their API. There's another startup in New York called Clarify that also does a similar thing as well as you know Amazon has their recognition platform as well. So I think in a, from images being able to detect what's in the content as well as from videos, being able to say things like how many people are entering a frame? How many people enter the store? Not having to actually go look at it and count it, but having a computer actually tally that information for you, right? >> There's actually an extra piece to that. So if I have a picture of a stop sign, and I'm an automated car, and is it a picture on the back of a bus of a stop sign, or is it a real stop sign? So that's going to be one of the complications. >> Doesn't matter to a New York City cab driver. How 'about you Jim? >> Probably not. (laughs) >> Hottest thing in AI is General Adversarial Networks, GANT, what's hot about that, well, I'll be very quick, most AI, most deep learning, machine learning is analytical, it's distilling or inferring insights from the data. Generative takes that same algorithmic basis but to build stuff. In other words, to create realistic looking photographs, to compose music, to build CAD CAM models essentially that can be constructed on 3D printers. So GANT, it's a huge research focus all around the world are used for, often increasingly used for natural language generation. In other words it's institutionalizing or having a foundation for nailing the Turing test every single time, building something with machines that looks like it was constructed by a human and doing it over and over again to fool humans. I mean you can imagine the fraud potential. But you can also imagine just the sheer, like it's going to shape the world, GANT. >> All right so I'm going to say one thing, and then we're going to ask if anybody in the audience has an idea. So the thing that I find interesting is traditional programs, or when you tell a machine to do something you don't need incentives. When you tell a human being something, you have to provide incentives. Like how do you get someone to actually read the text. And this whole question of elements within AI that incorporate incentives as a way of trying to guide human behavior is absolutely fascinating to me. Whether it's gamification, or even some things we're thinking about with block chain and bitcoins and related types of stuff. To my mind that's going to have an enormous impact, some good, some bad. Anybody in the audience? I don't want to lose everybody here. What do you think sir? And I'll try to do my best to repeat it. Oh we have a mic. >> So my question's about, Okay, so the question's pretty much about what Stephanie's talking about which is human and loop training right? I come from a computer vision background. That's the problem, we need millions of images trained, we need humans to do that. And that's like you know, the workforce is essentially people that aren't necessarily part of the AI community, they're people that are just able to use that data and analyze the data and label that data. That's something that I think is a big problem everyone in the computer vision industry at least faces. I was wondering-- >> So again, but the problem is that is the difficulty of methodologically bringing together people who understand it and people who, people who have domain expertise people who have algorithm expertise and working together? >> I think the expertise issue comes in healthcare, right? In healthcare you need experts to be labeling your images. With contextual information where essentially augmented reality applications coming in, you have the AR kit and everything coming out, but there is a lack of context based intelligence. And all of that comes through training images, and all of that requires people to do it. And that's kind of like the foundational basis of AI coming forward is not necessarily an algorithm, right? It's how well are datas labeled? Who's doing the labeling and how do we ensure that it happens? >> Great question. So for the panel. So if you think about it, a consultant talks about being on the bench. How much time are they going to have to spend on trying to develop additional business? How much time should we set aside for executives to help train some of the assistants? >> I think that the key is not, to think of the problem a different way is that you would have people manually label data and that's one way to solve the problem. But you can also look at what is the natural workflow of that executive, or that individual? And is there a way to gather that context automatically using AI, right? And if you can do that, it's similar to what we do in our product, we observe how someone is analyzing the data and from those observations we can actually create the metadata that then trains the system in a particular direction. But you have to think about solving the problem differently of finding the workflow that then you can feed into to make this labeling easy without the human really realizing that they're labeling the data. >> Peter: Anybody else? >> I'll just add to what Stephanie said, so in the IoT applications, all those sensory modalities, the computer vision, the speech recognition, all that, that's all potential training data. So it cross checks against all the other models that are processing all the other data coming from that device. So that the natural language process of understanding can be reality checked against the images that the person happens to be commenting upon, or the scene in which they're embedded, so yeah, the data's embedded-- >> I don't think we're, we're not at the stage yet where this is easy. It's going to take time before we do start doing the pre-training of some of these details so that it goes faster, but right now, there're not that many shortcuts. >> Go ahead Joe. >> Sorry so a couple things. So one is like, I was just caught up on your incentivizing programs to be more efficient like humans. You know in Ethereum that has this notion, which is bot chain, has this theory, this concept of gas. Where like as the process becomes more efficient it costs less to actually run, right? It costs less ether, right? So it actually is kind of, the machine is actually incentivized and you don't really know what it's going to cost until the machine processes it, right? So there is like some notion of that there. But as far as like vision, like training the machine for computer vision, I think it's through adoption and crowdsourcing, so as people start using it more they're going to be adding more pictures. Very very organically. And then the machines will be trained and right now is a very small handful doing it, and it's very proactive by the Googles and the Facebooks and all of that. But as we start using it, as they start looking at my images and Jim's and Jen's images, it's going to keep getting smarter and smarter through adoption and through very organic process. >> So Neil, let me ask you a question. Who owns the value that's generated as a consequence of all these people ultimately contributing their insight and intelligence into these systems? >> Well, to a certain extent the people who are contributing the insight own nothing because the systems collect their actions and the things they do and then that data doesn't belong to them, it belongs to whoever collected it or whoever's going to do something with it. But the other thing, getting back to the medical stuff. It's not enough to say that the systems, people will do the right thing, because a lot of them are not motivated to do the right thing. The whole grant thing, the whole oh my god I'm not going to go against the senior professor. A lot of these, I knew a guy who was a doctor at University of Pittsburgh and they were doing a clinical study on the tubes that they put in little kids' ears who have ear infections, right? And-- >> Google it! Who helps out? >> Anyway, I forget the exact thing, but he came out and said that the principle investigator lied when he made the presentation, that it should be this, I forget which way it went. He was fired from his position at Pittsburgh and he has never worked as a doctor again. 'Cause he went against the senior line of authority. He was-- >> Another question back here? >> Man: Yes, Mark Turner has a question. >> Not a question, just want to piggyback what you're saying about the transfixation of maybe in healthcare of black and white images and color images in the case of sonograms and ultrasound and mammograms, you see that happening using AI? You see that being, I mean it's already happening, do you see it moving forward in that kind of way? I mean, talk more about that, about you know, AI and black and white images being used and they can be transfixed, they can be made to color images so you can see things better, doctors can perform better operations. >> So I'm sorry, but could you summarize down? What's the question? Summarize it just, >> I had a lot of students, they're interested in the cross pollenization between AI and say the medical community as far as things like ultrasound and sonograms and mammograms and how you can literally take a black and white image and it can, using algorithms and stuff be made to color images that can help doctors better do the work that they've already been doing, just do it better. You touched on it like 30 seconds. >> So how AI can be used to actually add information in a way that's not necessarily invasive but is ultimately improves how someone might respond to it or use it, yes? Related? I've also got something say about medical images in a second, any of you guys want to, go ahead Jennifer. >> Yeah, so for one thing, you know and it kind of goes back to what we were talking about before. When we look at for instance scans, like at some point I was looking at CT scans, right, for lung cancer nodules. In order for me, who I don't have a medical background, to identify where the nodule is, of course, a doctor actually had to go in and specify which slice of the scan had the nodule and where exactly it is, so it's on both the slice level as well as, within that 2D image, where it's located and the size of it. So the beauty of things like AI is that ultimately right now a radiologist has to look at every slice and actually identify this manually, right? The goal of course would be that one day we wouldn't have to have someone look at every slice to like 300 usually slices and be able to identify it much more automated. And I think the reality is we're not going to get something where it's going to be 100%. And with anything we do in the real world it's always like a 95% chance of it being accurate. So I think it's finding that in between of where, what's the threshold that we want to use to be able to say that this is, definitively say a lung cancer nodule or not. I think the other thing to think about is in terms of how their using other information, what they might use is a for instance, to say like you know, based on other characteristics of the person's health, they might use that as sort of a grading right? So you know, how dark or how light something is, identify maybe in that region, the prevalence of that specific variable. So that's usually how they integrate that information into something that's already existing in the computer vision sense. I think that's, the difficulty with this of course, is being able to identify which variables were introduced into data that does exist. >> So I'll make two quick observations on this then I'll go to the next question. One is radiologists have historically been some of the highest paid physicians within the medical community partly because they don't have to be particularly clinical. They don't have to spend a lot of time with patients. They tend to spend time with doctors which means they can do a lot of work in a little bit of time, and charge a fair amount of money. As we start to introduce some of these technologies that allow us to from a machine standpoint actually make diagnoses based on those images, I find it fascinating that you now see television ads promoting the role that the radiologist plays in clinical medicine. It's kind of an interesting response. >> It's also disruptive as I'm seeing more and more studies showing that deep learning models processing images, ultrasounds and so forth are getting as accurate as many of the best radiologists. >> That's the point! >> Detecting cancer >> Now radiologists are saying oh look, we do this great thing in terms of interacting with the patients, never have because they're being dis-intermediated. The second thing that I'll note is one of my favorite examples of that if I got it right, is looking at the images, the deep space images that come out of Hubble. Where they're taking data from thousands, maybe even millions of images and combining it together in interesting ways you can actually see depth. You can actually move through to a very very small scale a system that's 150, well maybe that, can't be that much, maybe six billion light years away. Fascinating stuff. All right so let me go to the last question here, and then I'm going to close it down, then we can have something to drink. What are the hottest, oh I'm sorry, question? >> Yes, hi, my name's George, I'm with Blue Talon. You asked earlier there the question what's the hottest thing in the Edge and AI, I would say that it's security. It seems to me that before you can empower agency you need to be able to authorize what they can act on, how they can act on, who they can act on. So it seems if you're going to move from very distributed data at the Edge and analytics at the Edge, there has to be security similarly done at the Edge. And I saw (speaking faintly) slides that called out security as a key prerequisite and maybe Judith can comment, but I'm curious how security's going to evolve to meet this analytics at the Edge. >> Well, let me do that and I'll ask Jen to comment. The notion of agency is crucially important, slightly different from security, just so we're clear. And the basic idea here is historically folks have thought about moving data or they thought about moving application function, now we are thinking about moving authority. So as you said. That's not necessarily, that's not really a security question, but this has been a problem that's been in, of concern in a number of different domains. How do we move authority with the resources? And that's really what informs the whole agency process. But with that said, Jim. >> Yeah actually I'll, yeah, thank you for bringing up security so identity is the foundation of security. Strong identity, multifactor, face recognition, biometrics and so forth. Clearly AI, machine learning, deep learning are powering a new era of biometrics and you know it's behavioral metrics and so forth that's organic to people's use of devices and so forth. You know getting to the point that Peter was raising is important, agency! Systems of agency. Your agent, you have to, you as a human being should be vouching in a secure, tamper proof way, your identity should be vouching for the identity of some agent, physical or virtual that does stuff on your behalf. How can that, how should that be managed within this increasingly distributed IoT fabric? Well a lot of that's been worked. It all ran through webs of trust, public key infrastructure, formats and you know SAML for single sign and so forth. It's all about assertion, strong assertions and vouching. I mean there's the whole workflows of things. Back in the ancient days when I was actually a PKI analyst three analyst firms ago, I got deep into all the guts of all those federation agreements, something like that has to be IoT scalable to enable systems agency to be truly fluid. So we can vouch for our agents wherever they happen to be. We're going to keep on having as human beings agents all over creation, we're not even going to be aware of everywhere that our agents are, but our identity-- >> It's not just-- >> Our identity has to follow. >> But it's not just identity, it's also authorization and context. >> Permissioning, of course. >> So I may be the right person to do something yesterday, but I'm not authorized to do it in another context in another application. >> Role based permissioning, yeah. Or persona based. >> That's right. >> I agree. >> And obviously it's going to be interesting to see the role that block chain or its follow on to the technology is going to play here. Okay so let me throw one more questions out. What are the hottest applications of AI at the Edge? We've talked about a number of them, does anybody want to add something that hasn't been talked about? Or do you want to get a beer? (people laughing) Stephanie, you raised your hand first. >> I was going to go, I bring something mundane to the table actually because I think one of the most exciting innovations with IoT and AI are actually simple things like City of San Diego is rolling out 3200 automated street lights that will actually help you find a parking space, reduce the amount of emissions into the atmosphere, so has some environmental change, positive environmental change impact. I mean, it's street lights, it's not like a, it's not medical industry, it doesn't look like a life changing innovation, and yet if we automate streetlights and we manage our energy better, and maybe they can flicker on and off if there's a parking space there for you, that's a significant impact on everyone's life. >> And dramatically suppress the impact of backseat driving! >> (laughs) Exactly. >> Joe what were you saying? >> I was just going to say you know there's already the technology out there where you can put a camera on a drone with machine learning within an artificial intelligence within it, and it can look at buildings and determine whether there's rusty pipes and cracks in cement and leaky roofs and all of those things. And that's all based on artificial intelligence. And I think if you can do that, to be able to look at an x-ray and determine if there's a tumor there is not out of the realm of possibility, right? >> Neil? >> I agree with both of them, that's what I meant about external kind of applications. Instead of figuring out what to sell our customers. Which is most what we hear. I just, I think all of those things are imminently doable. And boy street lights that help you find a parking place, that's brilliant, right? >> Simple! >> It improves your life more than, I dunno. Something I use on the internet recently, but I think it's great! That's, I'd like to see a thousand things like that. >> Peter: Jim? >> Yeah, building on what Stephanie and Neil were saying, it's ambient intelligence built into everything to enable fine grain microclimate awareness of all of us as human beings moving through the world. And enable reading of every microclimate in buildings. In other words, you know you have sensors on your body that are always detecting the heat, the humidity, the level of pollution or whatever in every environment that you're in or that you might be likely to move into fairly soon and either A can help give you guidance in real time about where to avoid, or give that environment guidance about how to adjust itself to your, like the lighting or whatever it might be to your specific requirements. And you know when you have a room like this, full of other human beings, there has to be some negotiated settlement. Some will find it too hot, some will find it too cold or whatever but I think that is fundamental in terms of reshaping the sheer quality of experience of most of our lived habitats on the planet potentially. That's really the Edge analytics application that depends on everybody having, being fully equipped with a personal area network of sensors that's communicating into the cloud. >> Jennifer? >> So I think, what's really interesting about it is being able to utilize the technology we do have, it's a lot cheaper now to have a lot of these ways of measuring that we didn't have before. And whether or not engineers can then leverage what we have as ways to measure things and then of course then you need people like data scientists to build the right model. So you can collect all this data, if you don't build the right model that identifies these patterns then all that data's just collected and it's just made a repository. So without having the models that supports patterns that are actually in the data, you're not going to find a better way of being able to find insights in the data itself. So I think what will be really interesting is to see how existing technology is leveraged, to collect data and then how that's actually modeled as well as to be able to see how technology's going to now develop from where it is now, to being able to either collect things more sensitively or in the case of say for instance if you're dealing with like how people move, whether we can build things that we can then use to measure how we move, right? Like how we move every day and then being able to model that in a way that is actually going to give us better insights in things like healthcare and just maybe even just our behaviors. >> Peter: Judith? >> So, I think we also have to look at it from a peer to peer perspective. So I may be able to get some data from one thing at the Edge, but then all those Edge devices, sensors or whatever, they all have to interact with each other because we don't live, we may, in our business lives, act in silos, but in the real world when you look at things like sensors and devices it's how they react with each other on a peer to peer basis. >> All right, before I invite John up, I want to say, I'll say what my thing is, and it's not the hottest. It's the one I hate the most. I hate AI generated music. (people laughing) Hate it. All right, I want to thank all the panelists, every single person, some great commentary, great observations. I want to thank you very much. I want to thank everybody that joined. John in a second you'll kind of announce who's the big winner. But the one thing I want to do is, is I was listening, I learned a lot from everybody, but I want to call out the one comment that I think we all need to remember, and I'm going to give you the award Stephanie. And that is increasing we have to remember that the best AI is probably AI that we don't even know is working on our behalf. The same flip side of that is all of us have to be very cognizant of the idea that AI is acting on our behalf and we may not know it. So, John why don't you come on up. Who won the, whatever it's called, the raffle? >> You won. >> Thank you! >> How 'about a round of applause for the great panel. (audience applauding) Okay we have a put the business cards in the basket, we're going to have that brought up. We're going to have two raffle gifts, some nice Bose headsets and speaker, Bluetooth speaker. Got to wait for that. I just want to say thank you for coming and for the folks watching, this is our fifth year doing our own event called Big Data NYC which is really an extension of the landscape beyond the Big Data world that's Cloud and AI and IoT and other great things happen and great experts and influencers and analysts here. Thanks for sharing your opinion. Really appreciate you taking the time to come out and share your data and your knowledge, appreciate it. Thank you. Where's the? >> Sam's right in front of you. >> There's the thing, okay. Got to be present to win. We saw some people sneaking out the back door to go to a dinner. >> First prize first. >> Okay first prize is the Bose headset. >> Bluetooth and noise canceling. >> I won't look, Sam you got to hold it down, I can see the cards. >> All right. >> Stephanie you won! (Stephanie laughing) Okay, Sawny Cox, Sawny Allie Cox? (audience applauding) Yay look at that! He's here! The bar's open so help yourself, but we got one more. >> Congratulations. Picture right here. >> Hold that I saw you. Wake up a little bit. Okay, all right. Next one is, my kids love this. This is great, great for the beach, great for everything portable speaker, great gift. >> What is it? >> Portable speaker. >> It is a portable speaker, it's pretty awesome. >> Oh you grabbed mine. >> Oh that's one of our guys. >> (lauging) But who was it? >> Can't be related! Ava, Ava, Ava. Okay Gene Penesko (audience applauding) Hey! He came in! All right look at that, the timing's great. >> Another one? (people laughing) >> Hey thanks everybody, enjoy the night, thank Peter Burris, head of research for SiliconANGLE, Wikibon and he great guests and influencers and friends. And you guys for coming in the community. Thanks for watching and thanks for coming. Enjoy the party and some drinks and that's out, that's it for the influencer panel and analyst discussion. Thank you. (logo music)

Published Date : Sep 28 2017

SUMMARY :

is that the cloud is being extended out to the Edge, the next time I talk to you I don't want to hear that are made at the Edge to individual users We've got, again, the objective here is to have community From the Hurwitz Group. And finally Joe Caserta, Joe come on up. And to the left. I've been in the market for a couple years now. I'm the founder and Chief Data Scientist We can hear you now. And I have, I've been developing a lot of patents I just feel not worthy in the presence of Joe Caserta. If you can hear me, Joe Caserta, so yeah, I've been doing We recently rebranded to only Caserta 'cause what we do to make recommendations about what data to use the realities of how data is going to work in these to make sure that you have the analytics at the edge. and ARBI is the integration of Augmented Reality And it's going to say exactly you know, And if the machine appears to approximate what's and analyzed, conceivably some degree of mind reading but the machine as in the bot isn't able to tell you kind of some of the things you talked about, IoT, So that's one of the reasons why the IoT of the primary source. Well, I mean, I agree with that, I think I already or might not be the foundation for your agent All right, so I'm going to start with you. a lot of the applications we develop now are very So it's really interesting in the engineering space And the idea that increasingly we have to be driven I know the New England Journal of Medicine So if you let the, if you divorce your preconceived notions So the doctor examined me, and he said you probably have One of the issues with healthcare data is that the data set the actual model that you use to set priorities and you can have a great correlation that's garbage. What does the Edge mean to you? And then find the foods to meet that. And tequila, that helps too. Jim: You're a precision foodie is what you are. in the healthcare world and I think regulation For instance, in the case of are you being too biased We don't have the same notion to the same degree but again on the other side of course, in the Edge analytics, what you're actually transducing What are some of the hottest innovations in AI and that means kind of hiding the AI to the business user. I think keyboards are going to be a thing of the past. I don't have to tell you what country that was. AI being applied to removing mines from war zones. Judith what do you look at? and the problems you're trying to solve. And can the AI really actually detect difference, right? So that's going to be one of the complications. Doesn't matter to a New York City cab driver. (laughs) So GANT, it's a huge research focus all around the world So the thing that I find interesting is traditional people that aren't necessarily part of the AI community, and all of that requires people to do it. So for the panel. of finding the workflow that then you can feed into that the person happens to be commenting upon, It's going to take time before we do start doing and Jim's and Jen's images, it's going to keep getting Who owns the value that's generated as a consequence But the other thing, getting back to the medical stuff. and said that the principle investigator lied and color images in the case of sonograms and ultrasound and say the medical community as far as things in a second, any of you guys want to, go ahead Jennifer. to say like you know, based on other characteristics I find it fascinating that you now see television ads as many of the best radiologists. and then I'm going to close it down, It seems to me that before you can empower agency Well, let me do that and I'll ask Jen to comment. agreements, something like that has to be IoT scalable and context. So I may be the right person to do something yesterday, Or persona based. that block chain or its follow on to the technology into the atmosphere, so has some environmental change, the technology out there where you can put a camera And boy street lights that help you find a parking place, That's, I'd like to see a thousand things like that. that are always detecting the heat, the humidity, patterns that are actually in the data, but in the real world when you look at things and I'm going to give you the award Stephanie. and for the folks watching, We saw some people sneaking out the back door I can see the cards. Stephanie you won! Picture right here. This is great, great for the beach, great for everything All right look at that, the timing's great. that's it for the influencer panel and analyst discussion.

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Day One Wrap | BigData NYC 2017


 

>> Announcer: Live from midtown Manhattan, it's theCUBE covering BigData New York City 2017. Brought to you by SiliconANGLE Media, and its ecosystem sponsors. >> Hello everyone, welcome back to our day one, at Big Data NYC, of three days of wall to wall coverage. This is theCUBE. I'm John Furrier, with my co-hosts Jim Kobielus and Peter Burris. We do this event every year, this is theCUBE's BigData NYC. It's our event that we run in New York City. We have a lot of great content, we have theCUBE going live, we don't go to Strata anymore. We do our own event in conjunction, they have their own event. You can go pay over there and get the booth space, but we do our media event and attract all the influencers, the VIPs, the executives, the entrepreneurs, we've been doing it for five years, we're super excited, and thank our sponsors for allowing us to get here and really appreciate the community for continuing to support theCUBE. We're here to wrap up day one what's going on in New York, certainly we've had a chance to check out the Strata situations, Strata Data, which is Cloudera, and O'Reilly, mainly O'Reilly media, they run that, kind of old school event, guys. Let's kind of discuss the impact of the event in context to the massive growth that's going outside of their event. And their event is a walled garden, you got to pay to get in, they're very strict. They don't really let a lot of people in, but, okay. Outside of that the event it going global, the activity around big data is going global. It's more than Hadoop, we certainly thought about that's old news, but what's the big trend this year? As the horizontally scalable cloud enters the equation. >> I think the big trend, John, is the, and we've talked about in our research, is that we have finally moved away from big data, being associated with a new type of infrastructure. The emergence of AI, deep learning, machine learning, cognitive, all these different names for relatively common things, are an indications that we're starting to move up into people thinking about applications, people thinking about services they can use to get access, or they can get access to build their applications. There's not enough skills. So I think that's probably the biggest thing is that the days of failure being measured by whether or not you can scale your cluster up, are finally behind us. We're using the cloud, other resources, we have enough expertise, the technologies are becoming simpler and more straightforward to do that. And now we're thinking about how we're going to create value out of all of this, which is how we're going to use the data to learn something new about what we're doing in the organization, combine it with advanced software technologies that actually dramatically reduce the amount of work that's necessary to make a decision. >> And the other trend I would say, on top of that, just to kind of put a little cherry on top of that, kind of the business focus which is again, not the speeds and feeds, although under the hood, lot of great innovation going on from deep learning, and there's a ton of stuff. However, the conversation is the business value, how it's transforming work and, but the one thing that nobody's talking about is, this is why I'm not bullish on these one shows, one show meets all kind of thing like O'Reilly Media does, because there's multiple personas in a company now in the ecosystem. There are now a variety of buyers of some products. At least in the old days, you'd go talk to the IT CIO and you're in. Not anymore. You have an analytics person, a Chief Data Officer, you might have an IT person, you might have a cloud person. So you're seeing a completely broader set of potential buyers that are driving the change. We heard Paxata talk about that. And this is a dynamic. >> Yeah, definitely. We see a fair amount of, what I'm sensing about Strata, how it's evolving these big top shows around data, it's evolving around addressing a broader, what we call maker culture. It's more than software developers. It's business analysts, it's the people who build the hardware for the internet of things into which AI and machine learning models are being containerized and embedded. I've, you know, one of the takeaways from today so far, and the keynotes are tomorrow at Strata, but I've been walking the atrium at the Javits Center having some interesting conversations, in addition, of course, to the ones we've been having here at theCUBE. And what I'm notic-- >> John: What are those hallway conversations that you're having? >> Yeah. >> What's going on over there? >> Yeah, what I've, the conversations I've had today have been focused on, the chief trend that I'm starting to sense here is that the productionization of the machine learning development process or pipeline, is super hot. It spans multiple data platforms, of course. You've got a bit of Hadoop in the refinery layer, you've got a bit of in-memory columnar databases, like the Act In discussed at their own, but the more important, not more important, but just as important is that what users are looking at is how can we build these DevOps pipelines for continuous management of releases of machine learning models for productionization, but also for ongoing evaluation and scoring and iteration and redeployment into business applications. You know there's, I had conversations with Mapbar, I had conversations with IBM, I mean, these were atrium conversations about things that they are doing. IBM had an announcement today on the wires and so forth with some relevance to that. And so I'm seeing a fair, I'm hearing, I'm sensing a fair amount of It's The Apps, it's more than just Hadoop. But it's very much the flow of these, these are the core pieces, like AI, core pieces of intellectual property in the most disruptive applications that are being developed these days in all manner, in business and industry in the consumer space. >> So I did not go over to the show floor yet, I've not been over to the Atrium. But, I'll bet you dollars to donuts this is indicative of something that always happens in a complex technology environment. And again, this is something we've thought about particularly talked about here on theCUBE, in fact we talked to Paxata about it a little bit as well. And that is, as an organization gains experience, it starts to specialize. But there's always moments, there' always inflection points in the process of gaining that experience. And by that, or one of the indications of that is that you end up with some people starting to specialize, but not quite sure what they're specializing in yet. And I think that's one of the things that's happening right now is that the skills gap is significant. At the same time that the skills gap is being significant, we're seeing people start to declare their specializations that they don't have skills, necessarily, to perform yet. And the tools aren't catching up. So there's still this tension model, open source, not necessarily focusing on the core problem. Skills looking for tools, and explosion in the number of tools out there, not focused on how you simplify, streamline, and put into operation. How all these things work together. It's going to be an interesting couple of years, but the good news, ultimately, is that we are starting to see for the first time, even on theCUBE interviews today, the emergence of a common language about how we think about the characteristics of the problem. And I think that that heralds a new round of experience and a new round of thinking about what is all the business analysts, the data scientists, the developer, the infrastructure person, business person. >> You know, you bring up that comment, those comments, about the specialists and the skills. We talked, Jim and I talked on the segment this morning about tool shed. We're talking about there are so many tools out there, and everyone loves a good tool, a hammer. But the old expression is if you're a hammer, everything looks like a nail, that's cliche. But what's happened is there are a plethora of tools, right, and tools are good. Platforms are better. As people start to replatformize everything they could have too many tools. So we asked the C Chief Data Officer, he goes yeah, I try to manage the tool tsunami, but his biggest issue was he buys a hammer, and it turns into a lawnmower. That's a vendor mentality of-- >> What a truck. Well, but that's a classic example of what I'm talking about. >> Or someone's trying to use a hammer to mow the lawn right? Again, so this is what you're getting at. >> Yeah! >> The companies out there are groping for relevance, and that's how you can see the pretenders from the winners. >> Well, a tool, fundamentally, is pedagogical. A tool describes the way work is going to be performed, and that's been a lot of what's been happening over the course of the past few years. Now, businesses that get more experience, they're describing their own way of thinking throughout a problem. And they're still not clear on how to bring the tools together because the tools are being generated, put into the marketplace by an expanding array of folks and companies, and they're now starting to shuffle for position. But I think ultimately, what we're going to see happen over the next year and I think this is an inflection point, going back to this big tent notion, is the idea that ultimately we are going to see greater specialization over the next few years. My guess is that this year will probably, should get better, or should get bigger, I'm not certain it will because it's focused on the problems that we already solved and not moving into the problems that we need to focus on. >> Yeah, I mean, a lot of the problems I have with the O'Reilly show is that they try to throw default leadership out there, and there's some smart people that go to that, but the problem is is that it's too monetization, they try to make too much money from the event when this action's happening. And this is where the tool becomes, the hammer becomes a lawnmower, because what's happening is that the vendor's trying to stay alive. And you mentioned this earlier, to your point, the customers that are buyers of the technology don't want to have something that's not going to be a fit, that's going to be agile from us. They don't want the hammer that they bought to turn into something that they didn't buy it for. And sometimes, teams can't make that leap, skillset-wise, to literally pivot overnight. Especially as a startup. So this is where the selection of the companies makes a big difference. And a lot of the clients, a lot of customers that we're serving on the end user side are reaching the conclusion that the tools themselves, while important, are clearly not where the value is. The value is in how they put them together for their business. And that's something that's going to have to, again, that's a maturation process, roles, responsibilities, the chief data officer, they're going to have a role in that or not, but ultimately, they're going to have to start finding their pipelines, their process for ingestion out to analysis. >> Let me get your reaction, you guys, your reactions to this tape. Because one of the things that I heard today, and I think this validates a bigger trend as we talk about the landscape of the markup from the event to how people are behaving and promoting and building products and companies. The pattern that I'm hearing, we said it multiple times on theCUBE today and one from the guy who's basically reading the script, is, in his interview, explaining 'cause it's so factual, I asked him the straight-up question, how do you deal with suppliers? What's happening is the trend is don't show me sizzle. I want to see the steak. Don't sell me hype, I got too many business things to work on right now, I need to nail down some core things. I got application development, I got security to build out big time, and then I got all those data channels that I need, I don't have time for you to sell me a hammer that might not be a hammer in the future! So I need real results, I need real performance that's going to have a business impact. That is the theme, and that trumps the hype. I see that becoming a huge thing right now. Your thoughts, reactions, guys-- >> Well I'll start-- >> What's your reaction then? True or false on the trend? Be-- >> Peter: True! >> Get down to business. >> I'll say that much, true, but go ahead. >> I'll say true as well, but let me just add some context. I think a show like O'Reilly Strata is good up to a point, especially to catalyze an industry, a growing industry like big data's own understanding of it, of the value that all these piece parts, Hadoop and Spark and so forth, can add, can provide when deployed in a unit according to some emerging patterns, whatever. But at a certain point where a space like this becomes well-established, it just becomes a pure marketing event. And customers, at a certain point say, you know, I come here for ideas about things that I can do in my environ, my business, that could actually many ways help me to do new things. You know, you can't get that at a marketing-oriented, you can get that, as a user, more at a research-oriented show. When it's an emerging market, like let's say Spark has been, like the Spark Summit was in the beginning, those are kind of like, when industries go through the phase those are sort of in the beginning, sort of research-focused shows where industry, the people who are doing the development of this new architecture, they talk ideas. Now I think in 2017, where we're at now, is what the idea is everybody's trying to get their heads around, they're all around AI, what the heck that is. For a show like an O'Reilly Ready show to have relevance in a market that's in this much ferment of really innovation around AI and deep learning, there needs to be a core research focus that you don't get at this point in the lifecycle of Strata, for example. So that's my take on what's going on. >> So, my take is this. And first of all, I agree with everything you said, so it's not in opposition to anything. Many years ago I had this thought that I think still is very true. And that is the value of industry, the value of infrastructure is inversely correlated with the degree to which anybody knows anything about it. So if I know a lot about my infrastructure, it's not creating a lot of business value. In fact, more often than not, it's not working, which is why people end up knowing more about it. But the problem is, the way that technology has always been sold is as a differentiated, some sort of value-add thing. So you end up with this tension. And this is an application domain, a very, very complex application domain like big data. The tension is, my tool is so great that, and it's differentiating all those other stuff, yeah but it becomes valuable to me if and only if nobody knows it exists. So I think, and one of the reasons why I bring this up, John, is many of the companies that are in the big data space today that are most successful are companies that are positioning themselves as a service. There's a lot of interesting SaaS applications for big data analysis, pipeline management, all the other things you can talk about, that are actually being rendered as a service, and not as a product. So that all you need to know is what the tool does. You don't need to know the tool. And I don't know that that's necessarily going to last, but I think it's very, very interesting that a lot of the more successful companies that we're talking to are themselves mere infrastructure SaaS companies. >> Because-- >> AtScale is interesting, though. They came in as a service. But their service has an interesting value proposition. They can allow you to essentially virtualize the data to play with it, so people can actually sandbox data. And if it gets traction, they can then double-down on it. So to me that's a freebie. To me, I'm a customer, I got to love that kind of environment because you're essentially giving almost a developer-like environment-- >> Peter: Value without necessarily-- >> Yeah, the cost, and the guy gets the signal from the marketplace, his customer, of what data resolves. To me that's a very cool scene. I don't, you saying that's bad, or? >> No, no, I think it's interesting. I think it's-- >> So you're saying service is-- >> So what I'm saying is, what I'm saying is, that the value of infrastructure is inversely proportional to the degree to which anybody knows anything about it. But you've got a bunch of companies who are selling, effectively, infrastructure software, so it's a value-add thing, and that creates a problem. And a lot of other companies not only have the ability to sell something as a service as opposed to a product, they can put the service froward, and people are using the service and getting what they need out of it without knowing anything about the tool. >> I like that. Let me just maybe possibly restate what you just said. When a market goes toward a SaaS go-to-market delivery model for solutions, the user, the buyer's focus is shifted away from what the solution can do, I mean, how it works under the cover. >> Peter: Quote, value-add-- >> To what it can do potentially for you. >> The business, that's right. >> But you're not going to, don't get distracted by the implementation details. You have then as a user become laser-focused on, wow, there's a bunch of things that this can do for me. I don't care how it works, really. You SaaS provider, you worry about that stuff. I can worry now about somehow extracting the value. I'm not distracted. >> This show, or this domain, is one of the domains where SaaS has moved, just as we're thinking about moving up the stack, the SaaS business model is moving down the stack in the big data world. >> All right, so, in summary, the stack is changing. Predictions for the next few days. What are we going to see come out of Strata Data, and our BigData NYC? 'Cause remember, this show was always a big hit, but it's very clear from the data on our dashboards, we're seeing all the social data. Microsoft Ignite is going on, and Microsoft Azure, just in the past few years, has burst on the scene. Cloud is sucking the oxygen out of the big data event. Or is it? >> I doubt it was sucking it out of the event, but you know, theCUBE is in, theCUBE is not at Ignite. Where's theCUBE right now? >> John: BigData NYC. >> No, it's here, but it's also at the Splunk show. >> John: That's true. >> And isn't it interesting-- >> John: We're sucking the data out of two events. >> Did a lot of people coming in, exactly. A lot of people coming-- >> We're live streaming in a streaming data kind of-- >> John just said we suck, there's that record saying that. >> We're sucking all the data. >> So we are-- >> We're sharing data. These videos are data-driven. >> Yeah, absolutely, but the point is, ultimately, is that, is that Splunk is an example of a company that's putting forward a service about how you do this and not necessarily a product focus. And a lot of the folks that are coming on theCUBE here are also going on to theCUBE down in Washington D.C., which is where the Splunk show's at. And so I think one of the things, one of the predictions I'll make, is that we're going to hear over the next couple of days more companies talk about their SaaS trash. >> Yeah, I mean I just think, I agree with you, but I also agree with the comments about the technology coming together. And here's one thing I want to throw on the table. I've gotten the sense a few times about connecting the dots on it, we'll put it out publicly for comment right now. The role that communities will play outside of developer, is going to be astronomical. I think we're seeing signals, certainly open-source communities have been around for a long time. They continue to grow shoulders of giants before them. Even these events like O'Reilly, which are a small community that they rely on is now not the only game in town. We're seeing the notion of a community strategy in things like Blockchain, you're seeing it in business, you're seeing people rolling out their recruitment to say, data scientists. You're seeing a community model developing in business, yes or no? >> Yes, but I would say, I would put it this way, John. That it's always been there. The difference is that we're now getting enough experience with things that have occurred, for example, collaboration, communal, communal collaboration in open-source software that people are now saying, and they've developed a bunch of social networking techniques where they can actually analyze how those communities work together, but now they're saying, hmm, I've figured out how to do an assessment analysis understanding that community. I'm going to see if I can take that same concept and apply it over here to how sales works, or how B-to-B engagement works, or how marketing gets conducted, or how sales and marketing work together. And they're discovering that the same way of thinking is actually very fruitful over there. So I totally agree, 100%. >> So they don't rely on other people's version of a community, they can essentially construct their own. >> They are, they are-- >> John: Or enabling their own. >> That's right, they are bringing that approach to thinking about a community-driven business and they're applying it to a lot of new ways, and that's very exciting. >> As the world gets connected with mobile and internet of things as we're seeing, it's one big online community. We're seeing things, I'm writing a post right now, what you could, what B-to-B markets should learn from the fake news problem. And that is content and infrastructure are now contextually tied together. >> Peter: Totally. >> And related. The payload of the fake news is also related to the gamification of the network effect, hence the targeting, hence the weaponization. >> Hey, we wrote the three Cs, we wrote a piece on the three Cs of strategy a year and a half ago. Content, community, context. And at the end of the day, the most important thing to what you're saying about, is that there is, you know, right now people talk about social networking. Social media, you think Facebook. Facebook is a community with a single context, stay in touch with your friends. >> Connections. >> Connections. But what you're really saying is that for the first time we're now going to see an enormous amount of technology being applied to the fullness of all the communities. We're going to see a lot more communities being created with the software, each driven by what content does, creates value, against the context of how it works, where the community's defined in terms of what do we do? >> Let me focus on the fact that bringing, using community as a framework for understanding how the software world is evolving. The software world is evolving towards, I've said this many times in my work about a resurge, the data scientists or data people, data science skills are the core developers in this new era. Now, what is data science all about at its heart? Machine learning, building, and training machine learning models. And so training machine learning models is everything towards making sure that they are fit for their predicted purpose of classification. Training data, where you get all the training data from to feed all, to train all these models? Where do you get all the human resources to label, to do the labeling of the data sets, and so forth, that you need communities, crowdsourcing and whatnot, and you need sustainable communities that can supply the data and the labeling services, and so forth, to be able to sustain the AI and machine learning revolution. So content, creating data and so forth, really rules in this new era, like-- >> The interest in machine learning is at an all-time high, I guess. >> Jim: Yeah, oh yeah, very much so. >> Got it, I agree. I think the social grab, interest grab, value grab is emerging. I think communities, content, context, communities are relevant. I think a lot of things are going to change, and that the scuttlebutt that I'm hearing in this area now is it's not about the big event anymore. It's about the digital component. I think you're seeing people recognize that, but they still want to do the face-to-face. >> You know what, that's right. That's right, they still want, let's put it this way. That there are, that the whole point of community is we do things together. And there are some things that are still easier to do together if we get together. >> But B-to-B marketing, you just can't say, we're not going to do events when there's a whole machinery behind events. Legion batch marketing, we call it. There's a lot of stuff that goes on in that funnel. You can't just say hey, we're going to do a blog post. >> People still need to connect. >> So it's good, but there's some online tools that are happening, so of course. You wanted to say something? >> Yeah, I just want to say one thing. Face to face validates the source of expertise. I don't really fully trust an expert, I can't in my heart engage with them, 'til I actually meet them and figure out in person whether they really do have the goods, or whether they're repurposing some thinking that they got from elsewhere and they gussy it up. So face, there's no substitute for face-to-face to validate the expertise. The expertise that you value enough to want to engage in your solution, or whatever it might be. >> Awesome, I agree. Online activities, the content, we're streaming the data, theCUBE, this is our annual event in New York City. We've got three days of coverage, Tuesday, Wednesday, Thursday, here, theCUBE in Manhattan, right around the corner from Strata Hadoop, the Javits Center of influencers. We're here with the VIPs, with the entrepreneurs, with the CEOs and all the top analysts from WikiBon and around the community. Be there tomorrow all day, day one wrap up is done. Thanks for watching, see you tomorrow. (rippling music)

Published Date : Sep 27 2017

SUMMARY :

Brought to you by SiliconANGLE Media, of the event in context to the massive growth is that the days of failure being measured by of potential buyers that are driving the change. and the keynotes are tomorrow at Strata, is that the productionization of the machine learning is that the skills gap is significant. But the old expression is if you're a hammer, of what I'm talking about. Again, so this is what you're getting at. and that's how you can see the pretenders from the winners. is the idea that ultimately we are going to see And a lot of the clients, a lot of customers from the event to how people are behaving of it, of the value that all these piece parts, And that is the value of industry, So to me that's a freebie. from the marketplace, his customer, of what data resolves. I think it's-- And a lot of other companies not only have the ability for solutions, the user, the buyer's focus To what it can do by the implementation details. is one of the domains where SaaS has moved, Cloud is sucking the oxygen out of the big data event. I doubt it was sucking it out of the event, but you know, Did a lot of people coming in, exactly. We're sharing data. And a lot of the folks that are coming on theCUBE here is now not the only game in town. and apply it over here to how sales works, of a community, they can essentially construct their own. and they're applying it to a lot of new ways, from the fake news problem. hence the targeting, hence the weaponization. And at the end of the day, the most important thing We're going to see a lot more communities being created that can supply the data and the labeling services, is at an all-time high, I guess. and that the scuttlebutt that I'm hearing And there are some things that are still easier to do There's a lot of stuff that goes on in that funnel. that are happening, so of course. The expertise that you value enough to want to engage and around the community.

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Ryan Kroonenburg, A Cloud Guru | AWS Summit 2017


 

>> Narrator: Live from Manhattan, It's theCUBE. Covering AWS Summit, New York City, 2017. Brought to you by Amazon Web Services. >> Welcome back to Midtown. We're at the Javits Center here. (sound cuts out) 2017, along with Stu Miniman, I'm John Walls and you're watching The Cube as we continue with what's happening here. About five thousand people on the show floor and they said some twenty thousand registrants. Right Stew? That people came in and wanted to watch the keynotes live. >> It could be ten thousand that walked through before the days-- >> Right, it's hard to tell. >> Yeah. >> And right now half of them are outside looking for a cab I think. That's the way it works here. Ryan Kroonenburg is also here. He's the founder of a company called A Cloud Guru. >> Yes. >> I like Ryan already. I liked him as soon as we met him because he said, "like the beer, Kroonenburg." So you resonated with the two of us, Ryan. >> Ryan like the airline and Kroonenburg like the beer. >> We appreciate that. Alright, so you're a cloud education company. >> Yes. >> And you bill yourself or at least in the conversation as you want to be the Netflix of cloud education. That's what you're doing. Tell us a little bit about the founding of the company. It began with your brother? >> Yes, yeah. >> Just two years ago and now you've grown to some 40 employees. >> Yeah, so I used to be a solutions architect and I was desperate to get a job at AWS so I became obsessed with getting trained in AWS. And at the time, a company I worked for had a training freeze. So we couldn't go out and do in-classroom training. If I had to do that myself, I'd have to pay for it myself. And I found that there wasn't a lot of good on-line training companies two years ago. I didn't get the job with AWS and turned out to be the best thing that ever happened to me. And so I decided to create my own course on AWS. Launched that, started going viral and that was the birth of A Cloud Guru. >> Ryan, bring is in a little inside of building the company, so you're not only teaching cloud, but you're built on cloud and not just any cloud, but using the LAN to server list from pretty early on that. >> Exactly, so we practice what we preach. You know, we are real AWS engineers. We built the entire platform serverlessly. We think we're the world's first serverless start-up. We're certainly the world's first serverless learning management system. So we don't pay for any servers whatsoever. There's no virtual/physical servers. And we're basically, purely AWS native. We do use a bunch of third party services like Xero and PayPal and things like that. But most of our platforms are AWS. >> Yeah, in the keynote this morning, Adrian Cockroft talked about Bustle, A New York based start-up that uses a lot of serverless, but you built the company before you even had funding and now you've got a little bit of funding. Can you give any insight? Do the investors looks at that and say, wow, this is a great model? >> Yeah, so we raised a decent series A. One of the founders of Warby Parker is on our board now so that's really exciting. A guy called Andy and he's helping us scale. One of the reasons we took funding was helping to scale. So our infrastructure scales automatically with AWS because it's built on Lambda and API Gateway. But we as a company are struggling to scale in like finding the right employees and all of that sort of thing, so that's where we're getting some help. >> Alright, what are you hearing from people taking your courses? What new things are they asking for? How are you expanding the scope of your offerings? >> Everyone is obviously very interested in AWS, but they also want to learn other cloud-computing platforms now, especially Azure, so we are expanding the scope of our content to do Azure as well as Guru. The other problem people are having is, AWS innovates so quickly. You know, there's like a thousand updates last year. There's 19 new updates last week. So there having trouble keeping up so we run just a weekly TV show called, AWS This Week, and we basically just tell people what's new this week. And the great thing about New York Summit is there's been like five or six announcements here so I'm going to be busy on Friday, filming. >> Is there any one particular area of training that you see more people drifting toward or following toward? >> I think serverless and big data are the hot topics. Big data, by that I mean AI, machine learning. That's just exploding right now. And just serverless architectures because the future of cloud is serverless. Why pay for virtual, physical machines by the hour or by the minute and have system administrators, network administrators, database administrators when all you actually want to focus on is your code and your end customers and serverless allows you to do that. >> So what's your process then? In terms of you staying on top of it, right? Because now you have to. >> Ryan: Yeah. >> I mean, you, you're it, right? You're the point of expertise. So how do you ... I guess, remain in that kind of relationship with AWS that you're the cusp? >> So, I obviously read all the blogs. Our students, We've got 300,000 students right now and our discussion forums are very very active so if they have announced something that I've missed, the students tell me, like, we'll know within a few hours. So, that's it really. It's just forever learning, but I love learning anyway so it's fun to get paid to learn. >> John: Sure. You bet. >> Ryan, how many people have gone through the training so far? Do you know how many of them get certified after they do that? And how many are kind of repeat customers? >> We've got 300,00 have gone through the training so far. We do track our pass rates. Our pass rates vary from anywhere between, normally 80 to 90%. Not everyone will pass on the first go because the exams are tough and it's also quite stressful. Sitting these exams can be quite stressful. In terms of the number of students that actually go on to get certified, that's not something we track just yet, but we're looking to change that as well. But yeah, we have a very good pass rate. >> So how does it work? I want to learn, you know, whatever. I want to dive into AI, whatever it is. I come to you, you've got something for me there right? You've got, I don't know how many hours of work I have to do, but take us through how it really works. >> Yeah so, it's video training. Online video training. So say you want to learn DynamoDB. We have a 19 hour course on that. And we go right into the very depths of DynamoDB. So you watch the videos. we'll show you what we're doing in the labs. We'll give you all the sample code if we're using code and then you can go and do it yourself. We very much believe in, the only way to learn Cloud is by getting your hands dirty. To actually go and do it yourself. So people watch the labs, do the stuff themselves and then complete the course. If it's a certification course, then at the end what they'll do is go and book the exam and hopefully, they'll pass the exam as well. >> So Ryan, you're in there looking at all this stuff, especially things like server lists. What are you looking for, for kind of the maturation? Is there anything that do you give feedback to Amazon? The community give you feedback? I have to imagine that there's some good feedback loops there? >> Yeah, I'm lucky enough to be an AWS community hero. So we get get briefed by Amazon on things that are coming out. You know, under MDA of course. We give a lot of feedback on that. No, I think serverless is the next big revolution. I hate hype and buzz words and things like that, but the thing about serverless is that, now you don't have to worry about servers. You can just focus on your code and you don't need to worry about any of the normal administration behind it and it's like ridiculously cheap. You get a million lambda implications a month for free. That's just part of Free Tier. We actually only just came off of Lambda Free Tier a couple of months ago and we've got 300,000 students. So, it's very very very cheap so its amazing. It's driving new revolution. >> What advice would you give to someone if they were looking to start a business and using serverless as a platform? >> Yeah, definitely check out AWS of course, we build our entire business off AWS. Design, try if you can, architect everything in a serverless fashion because like I keep saying, you don't have to worry about management of operating systems, virus patching, security, any of that. AWS, they take all... They take care of all of the heavy lifting for you. >> So I know you are a big fan of Lambda, but have you looked at some of the other serverless options out there? Is there any concern around, there's open source options out there. >> Ryan: Yeah. >> How do we get compatibility and not be just locked into Amazon? >> Azure Functions looks really good. See, this thing about vendor lock-in, I mean, you've got the serverless framework as well. If you build your applications on the serverless framework, you can move between platforms quite easily. That is coming so you could build it out on AWS and then move over to Azure if you wanted. The founder of serverless frameworks is a good friend of mine. So I definitely recommended checking it out. And that would be my advice. If you are going to go serverless use the serverless framework so then you don't have to worry about vendor lock in. But at the same time, Amazon, they reduce their prices all the time. So it is a good vendor to be with. >> I just think your story is great. I think that the best "no" you ever got in your life was from AWS. And now you're giving them a big "yes". >> Yeah, absolutely, I love AWS. They're such amazing people as well. They've all become my-- through my business and people I used to work with have all become really good friends of mine as well. It's been a great journey in last two years. >> You've done well for them, they've done well for you. It's a good relationship. >> Exactly. >> Ryan, thanks for being with us. >> Thank you. >> And continued success. >> Right, thanks guys. >> Good for you. You bet, Ryan Kroonenburg. The founder of A Cloud Guru. Along with his brother, Sam, making a pretty good business out of things on the AWS platform right now. Back with more here from AWS Summit, right after this. You're watching The Cube. (fast music)

Published Date : Aug 14 2017

SUMMARY :

Brought to you by Amazon Web Services. We're at the Javits Center here. That's the way it works here. So you resonated with the two of us, Ryan. Alright, so you're a cloud education company. And you bill yourself or at least in the conversation grown to some 40 employees. I didn't get the job with AWS and turned out the company, so you're not only teaching cloud, We built the entire platform serverlessly. the company before you even had funding One of the reasons we took funding was And the great thing about New York Summit and serverless allows you to do that. Because now you have to. So how do you ... something that I've missed, the students In terms of the number of students that actually go on I want to learn, you know, whatever. and then you can go and do it yourself. Is there anything that do you give feedback to Amazon? and you don't need to worry about like I keep saying, you don't have to So I know you are a big fan of Lambda, and then move over to Azure if you wanted. I think that the best "no" you have all become really good friends of mine as well. It's a good relationship. on the AWS platform right now.

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Wrap Up | AWS Summit 2017


 

>> Announcer: Live from Manhattan, it's theCUBE covering AWS Summit New York City 2017. Brought to you by Amazon Web Services. >> Welcome back live to Midtown Manhattan, along with Stu Miniman, I am John Walls. We're here on theCUBE and we're wrapping up our coverage here at AWS Summit. Again, kind of tough to get a feeling for just how many folks were here. But some were in that seven, eight, $9,000 range and most of them are still here I think, out on the show floor here behind us. Good keynotes this morning. Good programming throughout the day as well and then really good buzz here on the show floor. So, good day I think, for AWS Stu, and we've talked about it, it is kind of remarkable to see the number of people who turned out for a regional show. >> Yeah John, you know I've been to some shows in the Javits Center where people wander in, they get some swag, they look for a free beer and a t-shirt and then that's kind of their... These people are, you know, kind of diggin' in. I know there's a bunch of sessions been going on. The pavilion here has had all these little breakout sessions. There was one on, you know, VMware and VMware and AWS and it was, you know, not only the seats, which usually it was like oh come on in, you know, come get a prize and things like that. >> John: Right, right. >> There was five rows of people standing pressed in and asking questions like, "How do I set up "the networking on this, how does this work?" Things like this, so it's like a mini AWS re:Invent, so their big show, one we've done theCUBE at a number of years, I've been there a number of years. I commented on our intro that this is larger than the first Amazon re:Invent that I went to like four years ago. >> How about that, in that short of period of time? >> Yeah and that's one of the things about Amazon and public Cloud in general and all of these technologies, the growth and the speed of change is just amazing. It used to be we talked from a software standpoint, it was like okay, I'm tied to that Intel release of every 18 months that I'm going to click out, then it was like okay, we kind of go to a yearly cycle. Now it was more like well not only is a lot of software released, you know, continuous integration and continuous deployment CICD, which sometimes it's every six weeks, sometimes it's daily, but Amazon's releasing new features every day. We talked in the intro, oh there were three major releases and we had the guy I'm talking about, the machine learning stuff and he's like oh you mean the three announcements that we had in machine learning? And we're like oh, we only heard about one of those. Wait, you had a couple others underneath there? Oh, let's talk about the F1 compute instance and the FPGAs. There's always so much in Amazon and when you go into any environment in the little boxes that they put in there and you start peeling the onion, it's impressive. >> It is. >> And there's just depth and customers are interested in it and people are using it. You know, I was used to so much in my career where something gets announced and a year later it's like hello, is anybody using this? As opposed to at this show, a bunch of the announcements, I already talked to a bunch of people that have been in private beta, they've been testing this out, they're excited about it and because it's just so easy to get on all of these new features. >> Right, and I mean, we've seen it here, we've heard from many people here from a lot of different walks of life. You mentioned some of the past shows, AWS Public Sector. I was at that not too long ago in Washington, D.C. and you see a company that has its units very focused and very driven and doing very well and the right relationships. Buzzword, serverless, right? We heard it a lot today. Serverless applications, serverless computing. From more than one source, we heard it from several folks and so obviously this is not just a popular piece of nomenclature for the day, this is a trend, a theme that's going to be evolving and maturing over the next year or two. >> Yeah I mean everybody for the last couple years they've kind of been looking at it with their head sideways. I'm not sure that I understand it. We talked to two companies today, it was IOPipe and A Cloud Guru that their company, their IT infrastructure was all built on serverless, and they both got funding recently, so this isn't just oh yeah, some developer does some cool stuff on the side, microservices, buzz buzz, things like that. We talked to FICO is using serverless for their admin functions, certain areas they're not ready to roll it out across the board, governance compliance, things like that, I need to understand it. It is still very early, but that being said, there's a lot of usage in it. Last year it was oh, if you want to develop for the Alexa platform, the Amazon Echo type thing, that uses serverless, so we're seeing lots and lots of cases. That really is a new way of architecting the way to roll out really microservices driven applications and when we talk about the big challenge of our time, it's distributed architectures and how do I have new applications? We talked to a number of companies moving from the old way of doing my application to building new application, that's the long hole in the 10. This is not something that happens overnight, but I can start playing with it in a much smaller form factor and do it for pennies not years and millions of dollars so there is really serverless has really in many ways eclipsed kind of the container's discussion for the hot buzz in the industry. Kubernetes fits into that whole picture, but not just serverless in general, but AWS Lambda is the leader of the pack out there and you know, yet another reason why Amazon just going strong, their revenue still doing well, keeps adding to what they're doing and you don't hear many people griping when you walk around the show floor as to what they wish they had. It's a very positive experience. >> And you hear criticisms saying, "They only had 42% growth year to year." It's not what it used to be. But 42 as you know, most people would gladly be in that position. What about your thoughts about the maturation of the Cloud? You mentioned transformative and things are evolving and growing, where do you put it now? Is this second phase, next phase, late phase? Where are we in terms of what's happening and what AWS is making happen? >> So a couple years ago we know that Cloud is here to stay. There's still the joke a friend of friend of mine in the keynote. 20,000 people registered for this event and it was like well, I guess this Cloud thing might have legs, so we are still early in the overall wave of this. I've been in a number of conferences this year that we've done theCUBE on. You talk about the infrastructure companies and companies that have built on virtualization. They said, "We went through a decade "of tremendous growth with virtualization." Virtualization is still very important. Amazon builds their infrastructure not on VMWare, but they leverage virtualization technologies, but the next 10 years will be this huge wave of really that going up the uptake of the S curve so we're past really the classic crossing the chasm. We're in the early majority going to mid majority of people using it and there's just no shortage of new use cases that people can use it for. We've talked to lots of companies that start up and say, "I'm just leveraging Cloud because it's easy." THere's VCs that look at that as how to get involved and as I've just mentioned before, there's companies now that are building themselves on serverless so this is even kind of the next piece that follows these waves we are early in Cloud if you look at kind of overall ham of IT, public Cloud is still a very small piece. At Wikiban we've been talking for the last I think two years about what we really the multi Cloud environment. There's true private Cloud and there's public Cloud and how do I get that operational model that I can scale, I can build really a distributed architecture? I shift more to an operational expense rather than a capital expense, so it's flexibility, it's agility, it's speed, and it's very interesting, exciting times. There's no more exciting time to be in tech than today, maybe tomorrow, because we know the only thing constant is that the pace of change keeps increasing. >> It does increase and two big drivers of that, we heard again today, artificial intelligence, machine learning. How would you rate or how would you characterize the impotence that they're providing in terms of pushing the envelope? >> Absolutely there was some good announcements today, I don't know that there's any today that you'd say, "I'm going to look back five years from now and be like, 'Wow, I was in New York City when that was announced.'" >> John: Right, but just in general? >> But in general, let me say one of the things that I didn't hear today, I was was little bit disappointed, I mentioned it in the open, we talked to a couple of the partners here, you know the Kubernetes option. Adrian Kovrov got up on stage. He had written a blog post there was an announcement last week, no mention of where Kubernetes is going to fit in here. Definitely they're committed to it, they're making developments, but maybe something will come out in beta soon. I would expect by the time we get to the re:Invent show in November that we will have more clarity here. I was hoping to hear that more and that was something that didn't come out of Amazon, but they're embracing it. Customers are asking for it, developers, there's a ground swell on that, so they're involved with it. Lambda and serverless absolutely. Amazon is at the vanguard, they're pushing things forward. Machine learning and IoT, Amazon is at the table. It is still very early, they're driving a lot of things forward. Yeah, you know, you get enough, it's like come on, there's no BitCoin discussed today, why is that? So some of the other vendors there, but Amazon is in all the appropriate conversations. There's not any wide gaps that you'd say customers like hate these. Amazon's not in this base and I expect them to and therefore I'm going to choose another platform provider. That being said, it's not a winner-take-all, it is a multi Cloud world, most of these environments, we talked about even if I do serverless, if I architect them a certain way I can move them and make changes, Kubernetes the same way. So Amazon, one of the things that they pride themselves on is they need to keep proving to their customers every month that they are the ones that they fuse on because otherwise it is relatively easy to make a change, but they're the big dog, they got the leadership position, and it's always impressive to watch them. >> It is and you speak of impressive. re:Invent, is just what, two and a half months away, three months away, we'll be out there as well. Huge show, probably one of the largest shows by far that we attend and looking forward to that and seeing you down the road. Always a pleasure to be with you. >> Thanks so much. >> And great job as always. Stu Miniman does an outstanding job providing analysis for Wikiban, so on behalf of Stu and all the crew here at theCUBE, we thank you for joining us here at the AWS Summit in Midtown. We've been live at the Javits Center. Have a good week and we'll see you down the road here on theCUBE. (light electronic music)

Published Date : Aug 14 2017

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Anuj Dutia, Verizon | AWS Summit 2017


 

>> Announcer: Live, from Manhattan, it's the Cube, covering AWS Summit, New York City, 2017. Brought to you by Amazon Web Services. >> And you are watching the Cube. Along with Stu Miniman, I'm John Walls. We're at the Javits Center, here, Midtown Manhattan, for the AWS Summit. We're continuing our coverage here live on the Cube. We'll broadcast outlet of the silicon angle tv platform, and we're joined now by Anuj Dutia, who is Senior Manager of Product and New Business at Verizon. Anuj, it's good to see you today, sir. >> Thank you, thanks for having me. >> You bet, absolutely. Now, you have a partnership in the works with AWS. I know you had an announcement today, of sorts. Also, adding a little more flavor to that, I want you to tell us a little bit about that announcement, and the significance of that. >> Yeah, absolutely. We're really observing the industry's, our customers are the biggest, Fortune 500 customer's enterprises, they're moving their vote close to AWS. So, once they move their vote close to AWS, they want us to connect to their applications, our networks to connect to their applications in a seamless way. They want to make sure that the end user experience, the application experience, when the application's under AWS, is seamless. So, what we're trying to do is we're trying to make sure we instantiate the workshop appliances in AWS, so that we're able to give them internet connectivity. So, we have a service offer, which is across the platforms. You know, we have our private cloud, we have AWS, we have the end CPE devices. For our customers, they want to have hybrid environment. They want to make sure that they are able to connect with each of these business applications with the best user experience. So, that's what we are enabling them to do with this service. >> I'm wondering if you could help clarify for us, because those of us that have watched a while, I mean, I remember when Verizon bought Terremark recently, I know you're still working through some of the details, but people still come to me and say oh, you're talking to Verizon, I hear they're selling off all their data centers. So, of course, that's kind of the headlines when you dig in to what you were talking about, the hybrid solutions, lots of partners. What is the role of cloud in Verizon, and what are some of those important solutions you're putting together? >> Sure, so we have our own offering, you know, which is the hosted network services. It's an open stack, base back form that we have around the world, but we're not in the business of, we want the customers to be connected, so we're in the business of networks. So, if our customers are moving on to a public cloud, or a private cloud, or their own data centers, we want to enable them to have that internet connectivity, and make sure they're able to take advantage of the application that we're routing, as well as the transport diversity. You know, we have a product called Secure Cloud Interconnect, or Direct Connect in AWS terms, which is one of the transports that will be used their high priority applications, and internet for another one. So, basically, we want to make sure we are able to give them the advantage of the through transports, as well as enabling them to have the best experience. So, regardless of what deployment they have, to your question, we want to make sure we are their partners in enabling them to do that. >> Yeah, the open stack solution, I mean, that's really building NFV, so what you care about is delivering services to the end user, correct? >> Correct, correct. So, we do have a concept of white boxes, or genetic platforms on the CP side. So, if I'm an enterprise with 5000 stores, as an example. I want to deploy these lightweight white boxes around the country, and then haul all the traffic to my private data center, to AWS, to other cloud providers. We will be able to do that, and with this partnership, we will be able to get them closer to their applications within AWS, that's the whole plan of action. >> Yeah, all of the carriers, including Verizon, have lots of edge deployments, that's been one of the hottest topics. Does that fit in with what you're doing with Amazon? Maybe you can, you know, what does Edge mean to kind of your business unit, your customers? What's important there? >> Absolutely, absolutely. As far as Edge is concerned, right? There is a thick Edge, and there is a thin Edge. When you say a thick Edge, you want to have all the applications, network applications, routing, firewall, you name it, everything to be sitting in the Edge. If I'm a bank, I may need that, but if I'm a retailer, I may not. I may say, no, I want to have my security applications in the cloud. The cloud could be our private cloud, it could be customers' cloud, or it could be AWS. We will enable to connect those Edge devices, the thicker version, or thinner version, to each of these cloud locations, so that it's a seamless connectivity for the enterprises. So, our strength is in the virtualization, and in the network connectivity. But all focused on the network. That's our whole use case, and we want to make sure if a customer walks in to our door with these different hybrid deployments, we're able to support them without any exceptions. >> We talked a lot so far about what you do, or the goals or the mission that you have, put it on the other side of the fence, from a customer expectation, and from a customer demand. How has that changed? >> That's a good question. So, what we've seen is our customers have a lot of options. We are not in the business of telling them where their applications should reside, where their business applications should reside. Now, if, as an organization, if they've decided to move their critical applications to AWS, or have them in their private data centers, so they are coming to us, customers are coming to us and telling us, we want, what is our business goal? Our business goal is to have, when my employee tries to reach my HR application, it should be seamless. It should not matter whether I host it in my data center, yours, AWS, or on the Edge. They don't care, they want to have access to those four top applications, or 40 top applications all the time. So, we've seen customers coming in and saying, and telling us, we're not asking you where to host the business apps, we have already made a decision, we are going to host it in these four clouds. One of them definitely being AWS. And we're like, okay, we will enable you, you just tell us what kind of connectivity you guys need, where do you want to host it, and with AWS being their key data center for hosting their business applications, now we have an automated, orchestrated way. So, you have your 5000 devices, with a click of a button, we'll instantiate something on AWS for you. That way, you're able to connect to all of your business applications seamlessly. So, with the demand that, going back to your question, the demand that we're seeing is hey, we want to have a variety of deployment models, we don't want to be locked down, we don't want to spend a whole lot on our data centers, we like the AWS solution, so we're going to have our business apps hosted at AWS, but at the same time, we want to make sure everything is connected for our users, and there is no latency that they experience. Customers are still having a lot of challenges about kind of getting their arms around this whole multi cloud environment, and networking a lot of times is kind of networking security and management sit at kind of the top of the challenges there. How would you rate how we're doing as an industry, how have we moved the ball forward, and what do we still need to do, to be able to make this seamless, manageable, much easier going forward? >> It's a great question. We come across these customers all the time, right? They see a bunch of PowerPoint presentations and advertisements, in all the different forms, and they think that they think that they're able to do that all by themselves, and have the cost efficiency. The key challenge is the key know how, and connecting it with the whole end to end network, as well as applications. So, what we bring to the table is exactly that. We partner with AWS and other cloud providers, but AWS being the biggest one, we try to make sure we are, get them the fully orchestrated solution. So, our whole solution is we're enabling, in this service, right, we're enabling Cisco and Viptela solutions on AWS. So, our whole value prop with them is you place an order with Verizon, we take care of making sure you're connected to AWS, seamlessly, with the appliance of your choice, which in this case happens to be Cisco, Viptela solutions, and the reliable network from Verizon, but completely automated and orchestrated. What we've been observing is customers go down the DIY path, and that's absolutely fair, sometimes they succeed, but most often they come back and say I don't know how to make it work end to end. I'm able to do this little piece part, have done my dev opps here, so it works, but when I move my production load, I don't know what to do. And, that's the value of this partnership, that we're looking to provide that seamless experience to our customers. >> And also, we've been talking a lot about enterprise, but that market is mostly small and midsize. I mean, which one do you think sells the wind in it's sails right now? I mean, or is it apples and oranges, because they have different concerns, different levels and different options? >> That's an interesting question. They are apples and oranges, at least in my opinion, and I'll tell you why. Because the needs for the top Fortune 500, Fortune 1000 companies, is very different from a dentist's office or a lawyer's office. But, there is a middle line. The middle line is, what if I'm a coffee shop with 8000 stores? Am I on this side, or that side? Because, each of these 8000 stores are like small businesses, if you will, but as a company I'm a tier one, so I have my own needs from a corporate network standpoint. So, what we're trying to do is we're trying to make sure we take advantage of our partnership with AWS, where we are saying we're able to enable you if you are moving your production workloads anyway. But, if that's something you want to scale, then probably you've got to have a hybrid deployment and we make that happen for you. But, to your question, right? I do think they're apples and oranges, because their needs are very different. The need for the application availability for an enterprise, but a big tier one enterprise, is way higher than, say a dentist's office. If Outlook 365, Office 365 doesn't work for a dentist office for an hour, who cares? But, if it doesn't work for a big. >> Just don't let your dentist hear you say that. Be careful. >> All right. >> Everybody buy your dentist, right? >> Yeah, exactly. >> All right, Anuj, thanks for being with us. >> Thank you, thanks for having me. >> We appreciate the time. >> Thank you. >> Good luck down the road. >> Thanks >> Anuj Dutia from Verizon joining us here on the Cube. We continue live from New York City. AWS Summit. Back in a bit.

Published Date : Aug 14 2017

SUMMARY :

Brought to you by Amazon Web Services. We're continuing our coverage here live on the Cube. and the significance of that. So, we have a service offer, which is across the platforms. So, of course, that's kind of the headlines Sure, so we have our own offering, you know, So, we do have a concept of white boxes, Yeah, all of the carriers, including Verizon, So, our strength is in the virtualization, or the goals or the mission that you have, the business apps, we have already made a decision, and advertisements, in all the different forms, I mean, which one do you think sells and we make that happen for you. Just don't let your dentist hear you say that. We continue live from New York City.

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Erica Windisch, IOpipe | AWS Summit 2017 NYC


 

>> Announcer: Live from Manhattan, it's the CUBE. Covering AWS Summit, New York City, 2017. Brought to you by Amazon web services. >> And we are live here at AWS Summit here at the Javits Center, New York City, we're midtown, Manhattan, a lot of activity going on outside, you can imagine all the buzz inside as well. Somewhere between 6, 7, 8,000 attendees, kind of tough to tell right now, but everybody's jammed inside here on the show floor and they've been here all day and they're going to stay for a while I think too. As I said, a lot of buzz going on, and good buzz too. Along with Stu Miniman, I'm John Walls and we're now joined by Erica Windisch who is the Co-founder and the CTO of IOpipe. Erica, thanks for being with us here on the CUBE. >> Thank you, thank you for having me. >> You have had a big day. >> Yes we have, yeah. >> It's always fun to talk about money but you did have a fairly significant announcement this morning to make. Tell us about that. >> Yeah, so this morning we announced funding, $2.5 million from several investors including NEA, Madrona, and Underscore. >> So, yeah, you don't often get to high-five everybody for a day like that. I mean that kind of validation, obviously is something that not you just take to the bank, you take it to the marketplace too. >> Yeah, absolutely. And we actually started, our first check was from Techstars so we joined Techstars here in New York City and did that last year for their summer program and it was really great and that was the first foundation that we really had, and then having that further validation from major VCs like NEA and Madrona, Underscore, you know that really was really validating for us as well as just the fact that we're building, we're hiring and we're building and having what I think is an increasingly awesome product. >> Sure, well tell us about IOpipe, for folks at home who are watching might not be familiar with your space, what you do and how you do it. >> Yeah, so we provide tools for software developers to build and manage their applications on Amazon Lambda. So, basically, it's all serverless, we're actually built on serverless as well, we monitor with IOpipe, we dogfood everything. And we are providing deeper insights into those application workloads as well as correlating that information in more useful ways. Deeper knowledge of what exactly is happening in the run times, so we're able to see the data we ingest tells us information on the processes and the containers and the virtual machines that are running your Lambda workload, so we can see things like memory leaks and we can see file descriptor leaks and displaced utilization leaks, things like that that Amazon doesn't collect or at least doesn't give you that information. So, we're looking at ways we can provide more value to users of Lambda and also extending it with plugins so we have a plugin for tracing where you can time aspects of your application as well as profiler, so you can enable a profiling plugin and you get a full flame graph. So you can see, these are all the functions and this one ran and this one ran and the stack looks like this and so you can see the full flame graph of what happened and when and full timing information. This kind of insight that nothing else really gives you. >> Yeah, Erica, every time we have a new technology we go through this kind of diffusion of innovation that goes through. Remember back, I go back thinking about when virtualization came, people, what is it, how do I use it? We saw that in containers and each wave seems to be going faster and faster so there's still plenty of people I talked to that were like, "serverless what?" You know, some new as a service, I mean I thought I knew it with SAS and everything else like that. You're digging into these environments further. Can you give us, what are some of the kind of key use cases you're seeing, what are the challenges that customers are having? What works, what doesn't work, help us unpack that some? >> So, I think there's a number of challenges that users run into today. One is the fact that it is new so some of the tools are still evolving. Operations tools, development tools are still evolving. Just this week, Amazon announced SAM local so you can do editing and debugging locally on your machine or your laptop. That wasn't available before, right? So these tools, we're very much still in a learning phase for some of the tools, but some of the things like what we're doing with IOpipe, in some ways is more traditional because we're bringing in some of the basic monitoring tools and capabilities that you would expect from other platforms. But the other side, also innovating because we're bridging that development and operations into a single tool so it's not development and operations, it's, not even just different tools for those two things, but single tools for those. So I think that's part of the solution, part of the problem, in terms of workloads, I think there's a lot of ETLs, streaming applications, very infrequent things like chron jobs, web applications, you can take flask applications or express applications and just port them directly over to Lambda with almost a lift and shift for those, right? So there's a lot of power for bringing on the web 'cause you pay per the request. You don't scale your application and build your application for the number of servers that you need to handle the requests, it scales it per request and you pay per request and that's what's powerful in both scale of operations and team and like financially, but also, yeah, I lost train of thought there, but it all scales that way, right? Like just according to the request. >> Yeah, bring us into a typical customer, I know there are no typical customers, everyone's a little bit different, but you've got the developers, you've got the operators, finance has always had, you know, there's challenges with cloud in general but serverless at least promises that it's going to be less expensive. What are those dynamics from an organizational standpoint that you see inside? >> In terms of cost? >> Not just cost, but do the developers make something and the operators are like, wait, you know, there's challenges there? Or who drives this initiative in general? Does finance come and say, has finance heard about this and said hey, I heard I could save 60-70% on my cloud if you just re-architect this on Lambda. Or is it the developers coming through and saying, oh, wow, this is great, and can do it, or are operators, who's driving the initiatives and what are some of those dynamics? >> So I see a combination of these things. Some organizations, and I don't want to say names 'cause I don't want to like, you know, they did this and that's how it is. But I get the impression that certain organizations they have a top-down approach where they're going like, everything is going to be serverless and the cost really matters. So you're going to build serverless unless you can't, right? Serverless by default, anything else as an exception. Then there's organizations where developers are really pushing for it because it simplifies their requirements, right? It's a self-service aspect, right, even if they can spit out VMs, even if they have self-service VMs, they won't have to spit out VMs, they don't have to build docker images, they don't have to look at how the operating system is configured. They write code and they deploy code. There's no other steps, right? They're not like, oh, what version of Python is on here and how do I install all the libraries and how do I, right, like with serverless you just write the code and you ship the code. Which is really, really nice. So, in a way it's like having a golden image that you can't change, and you just know you're always going to build for in every application and every organization is going to the same golden image. Which simplifies a lot of things. >> Stu and I were talking about serverless, the whole concept, because it's really not truly serverless it's just different server, or it's a different flavor of it basically. So, first off, what gave birth to that and then where do you think, with serverless computering, serverless application, so on and so forth, where's that going? >> Yeah. >> What's going to be the real value at the end of the day of that? >> So, first of all the term "serverless," I look at it as, yes there are servers, serverless is servers are not my concern as a developer, right, I am not worrying about what the server looks like or operating the servers necessarily. I care about building my application which is why we're looking at building tools that are bridging development and operations so that operations is part of your development. But I see, the direction of serverless, really interesting in a few ways. One is that it's going to be available for more use cases. So right now there's certain use cases that make sense and one of the challenges is figuring out which use cases it doesn't work for. Eventually, you're not going to have that question, potentially, right? So maybe we get to a point where you don't have to ask, the challenge isn't, is serverless good for this use case? Maybe it's good for all use cases eventually down the road, maybe. Another thing is... >> If I could just follow up on that. Some of the announcements today like AWS Glue has serverless in the background there. Seems very promising, things like machine learning, artificial intelligence, serverless, IOT where you know, I need to balance the surface area of attack there but with serverless it won't be active as much and there will be links that are a little bit more dynamic. So, lots of those new use cases seem to be built really well for serverless. What are some of the cases today that you just say, hey, don't even go serverless there. >> Oh don't go serverless, where to do that? Well, so, Lambda has an execution time window which can be limiting for some things that you might want to do. So, like, Lambda in particular may not be the best case for all video encoding tasks. Some video encoding tasks if you can time limit it can be fine. But it's not good for all video encoded tasks because it's a batch process, potentially. Serverless processes that can let's say paralyze that and say, we're going to run Lambda but we're going to say split this up into segments, for instance, you can do that, or if you do it as a stream, right? Like you pipe a video and blocks into Kinesis, right, you can make that work. But it becomes a challenge to those kinds of use cases. >> Yeah, there was the example I think in the keynote was, this high process that would have taken five years, we can do 155 seconds. >> Right, but you have to paralyze it, right? >> Stu: Exactly. >> And if you can't paralyze a task and you can't do it within five or ten minutes, you can't use Lambda for it today. But it also depends on how you define serverless, right, because if serverless is Lambda, that's one thing. But if serverless is these other SAS products as well potentially, like AWS Transcode service, well is that serverless? If it is, then there you go. There's a solution potentially for you. So there's very blurry lines sometimes around what is serverless, and we're looking at IOpipe around serverless functions. I feel the same way around cloud in general was that there's cloud compute and it kind of evolved over time and the cloud is everything like all these things are in a cloud. But originally when we're talking cloud, five years ago, ten years ago, it was all compute. That's what we were talking about. So these terms change over time, so it's hard to say what serverless will be in five years or ten years because it'll mean something different. >> Or next week, for that matter. >> Yeah. >> Erica, last question I have. $2.5 million, what's that going to drive, what should we expect to see from your company and give us any final thoughts on what you'd like to see for the maturation of the serverless technology field? >> Yeah, so we've been hiring and building out a team, we're working on improving the user experience of the product, we are adding additional plugins and enhancements to the service. We feel that we have a really good base with our 1.0 announcement, 'cause we're not just the 2.5 million, we also announced our 1.0. And the 1.0 has a really good base of functionality and we're looking at adding additional plugins and additional features that can extend the service. So we're looking at doing that with that money. And with serverless in general, I think this is really compelling, what we're going to see in the next year, because we're going to see more large enterprises and more enterprise adoption, I think. I mean I was involved early in cloud. I was involved early in docker. And this point of serverless is very much at the early days of these technologies, and I definitely see a rocket ship taking off, and I think in the next year it's going to be really interesting to kind of see it starting to orbit a little bit. >> Well, new product, new funding, and a new day for IOpipe. >> Yes. >> So congratulations on a good day and thank you for being with us here on the CUBE. >> Thank you very much. >> You bet, we'll continue here at the Javits Center we're in midtown Manhattan continuing our coverage of the AWS Summit, here on the CUBE. (futuristic music)

Published Date : Aug 14 2017

SUMMARY :

Brought to you by Amazon web services. and they're going to stay for a while I think too. but you did have a fairly significant announcement Yeah, so this morning we announced funding, obviously is something that not you just take to the bank, and did that last year for their summer program what you do and how you do it. and so you can see the full flame graph Can you give us, what are some of the kind of and capabilities that you would expect from other platforms. that you see inside? and the operators are like, wait, and the cost really matters. and then where do you think, with serverless computering, So maybe we get to a point where you don't have to ask, that you just say, hey, don't even go serverless there. that you might want to do. in the keynote was, this high process and you can't do it within five or ten minutes, and give us any final thoughts on what you'd like to see and additional features that can extend the service. and a new day for IOpipe. and thank you for being with us here on the CUBE. of the AWS Summit, here on the CUBE.

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Josh Stella, Fugue | AWS Summit 2017


 

>> Announcer: Live from Manhattan, it's theCUBE. Covering AWS Summit, New York City 2017. Brought to you by Amazon Web Services. >> And we are live here at the Javits Center, continuing on theCUBE, our coverage of AWS Summit 2017, here in Midtown. Starting to wind down, tail end of the day but still a lot of excitement here on the show floor behind us, as there has been all day long. Joining us now along with Stu Miniman, I'm John Walls, is Josh Stella, who is the CEO and Co-Founder of Fugue, a Washington DC and Frederick, Maryland based company. Josh, thanks for being with us. >> Gentlemen, thanks for having me on theCUBE. >> You bet, first time, I think, right? >> Nope, second time. >> Oh, sorry, second time. >> Yeah. >> Alright, so a CUBE vet. >> A CUBE vet, there you go. >> Alright, so for our folks, viewers at home who might not be too familiar with Fugue. >> Josh: Sure. >> Tell us a little bit about what you do and I'm always curious about the origin of the name. Where'd that, you know, where that came from. >> Sure thing, sure. So what Fugue is, is an infrastructure automation system for the Cloud. So, it builds everything you need on the Cloud. It constantly monitors and operates it. It corrects it if anything goes wrong and it gives you a full view of everything in your infrastructure. We like to say you go fast. That's why you're going to Cloud, is to be able to go fast. You need to be able to see everything and get it right. Fugue gives you all of those capabilities at a different level than anything else out there. The name actually comes from music. From a form of musical composition called a fugue. And there might be some folks in the audience who remember Hofstadter's book Godel, Esher, Bach. That was actually where the idea came from. That and there aren't many English words left that are real words and I didn't want to make something up. >> So, you could get the website for it, so it was good to go? >> Yeah, we used fugue.co so that was part of it, sure. >> It worked out for you, then. >> It worked out, yeah. >> Well, for a guy I know who's big into astronomy, I guess Cloud would be, that seems to make sense, right? That you'd be tied into that. Just in general, Cloud migration now. What we're seeing with, this massive paradigm shift, right? >> Yes. >> That's occurring right now. What's in your mind, the biggest driver, you know, of that? Why are people now seriously on the uptake? >> Sure, so when I was at AWS, most of the growth that we saw was sort of, bottom-up. We would go into a new customer and they'd say, we didn't think we were on Cloud. And then we looked and there are 130 Cloud accounts, on AWS, scattered throughout the organization. That was kind of the first motion of Clouded option. We're really now in the second wave and this wave is strategic. It's where CIOs, CEOs and CTOs are saying this is the right way to go. They do security well, it's more cost-effective. More than anything, it allows us to move fast, iterate, be disruptive ourselves. Instead of letting the other guys, who are moving fast on Cloud disrupt us. So these are the big drivers. What Fugue does, is it allows your Cloud desk, and almost any of these organizations that are in this, sort of, phase two motion. It's not all bottom up. They're starting to say, how do we really want to get our hands around this? And so, what Fugue allows you to do is let your developers go even faster than they could without it but where things like policy has code, and infrastructure has code, are just baked in from the front. So, your developers can go really quickly, iterate and the system will actually tell them when they're doing something that isn't allowed by, for example, a regulatory regime or a compliance requirement. And, once you've built those things, Fugue makes sure their always running properly. So, it's a really powerful technology for migration. >> Josh, I'm wondering if you could take us in that dynamic you just talked about because the stuff where, the developers were just playing with it, we definitely saw it, you know. My joke, when I went to an audience was like, there's two types of customers out there. Those that know their using AWS and those that don't realize that they are using AWS. >> Josh: Yeah, exactly. >> But, when you switch to the top-down, it's, how do you get buy-in? How do you get, you know, that developer and the operator, you know, all on the same page. And, even you say today, most companies say, I have a Cloud strategy, but everybody's strategy is different and there's still, kind of, the ink's drying and as, you know, most people say, strategy means it's good for today. maybe not two years from now. >> Josh: Yeah. >> But, what are you seeing in the customer base, as some of those organizational dynamics, strategy dynamics. >> Sure, so, what we're seeing are, people are confused I think, still, about where this whole thing's going. There's a lot of clarity about where it's been, what it can do for you now. That's coming into a clear focus. But, we're in this moment of, not just moment, decade of huge change in computing. And we're still probably less than halfway through this sea change. So, I'd say the strategy, what we advise people, is the strategy has to be really thinking more about the future, that is unknown. As much as the present, that's known. And that's a difficult thing to do. Our approach to that has been, and then, how do you unify the, kind of, the intentions of the executives and the developers. Well, with developers you have to give them great tools. You have to give them things they want to use. You can't impose, kind of, these old enterprising systems on them. They will find ways around it. So, with Fugue, we wrote this very elegant functional programming language where the developers have far more power to do infrastructure as code than with anything else. It's a very beautiful, elegant language. Lots of developer tooling around that. We're just coming out within the next couple of weeks, here, an open beta on a visualization system. So, as you're writing your infrastructure as code, you automatically can see a diagram of everything that will be deployed. So, developers really like those aspects of Fugue. We speak their language. I'm the CEO, I've been a developer for 30 years. From the other side of the equation though, the executive level, the leadership of the organization, they need assurance that what's being built is going to be correct. Is going to be within the bounds of what's allowed by the organization and can adapt to change as it comes down the pike. So, and this gets back to strategy. So, we have the kind of, everything being built with virtual machines and attached disks. And now, you know, containers are really a huge trend, a really great trend but it's not the end. You have things like Lambda. You have things like machine learning as services. And the application boundaries around all of those things, the ones that are there now, and where it's going in the future. And so Fugue is very much architected to grow with that. >> Yeah, absolutely. I'm curious what you're seeing from customers. It used to be, I think back to, you know, virtualization. It was, you know, IT was a cost center and how do we squeeze money out. Then it was, how can IT respond to the business? And now, you know, the leading edge customers, it's how's IT driving business? I think about machine learning, you know, IOT, a lot of the customers we've talked to, that are using serverless, it's you know, I can be more profitable from day one. I can react much faster. What are the dynamics you're seeing? Kind of the role in IT and, you know, the business? >> Yes, thanks, that's a great question. So, you know, software's eating the world and the Cloud is software, if you do it right. The use of the Cloud is software. And so, we're definitely seeing that. Where it used to be that IT was this big fixed cost center, and you were trying to just get more efficiency out of it. You know, maybe extend your recap cycles if you could get away with it, kind of. Now, it's really a disruptive offensive capability. How am I going to build the next thing that expands my market share? That goes after, other people are trying to be disruptive. So, you have to be able to go really, really fast in order to do that, yeah. >> So, one of the announcements today was the AWS migration hub. And it sounds great, I've got all of these migrations out there and it's going to help them put together but it reminds me of, kind of, we have the manager of managers. Because, there's so many services out there, you know, public Cloud, you know, it used to be like, oh Cloud's going to simplify everything. It's like, no, Cloud is not simplifying anything. We always have, kind of, the complexity. How do you help with that? How are customers grappling with the speed of change and the complexity. >> Josh: Sure. >> It is now? >> So, through automation and code. And that's the whole way through the stack. People used to think about software just being application. Then in the more recent, I'd say in the last 18 months, people have really figured out that actually, no, the configuration of the system, the infrastructure, if you will, although even that's a bit anachronistic. Has to be code, so does security. Everything needs to be turned into code so that the build process is minutes, not days or hours. So, we have a customer in financial services, for example, that uses Fugue to build their entire CICD pipeline and then integrate itself with it, so that all of their infrastructure and security policies are completely automated whenever a developer does a pull request. So, if they do a pull request, out comes an infrastructure. If that infrastructure did not meet policy, it's a build fail. So, the way you adapt to all this complexity is through automation. And it's going to get worse, not better as these services proliferate. And as the application boundaries are drawn around wider and wider classes of services. >> Yeah, and that's I guess to ask about. Is that, if I come in to the Cloud and I have X workload, you know, and it's. And all of a sudden, here comes this and here comes that. Now I can do this, now I have new capabilities. And it's growing and growing. My managing becomes a whole different animal now, right? >> Josh: Yes. >> How do I control that? How do I keep a handle on that and not get overwhelmed by the ability to do more and then people within my own company wanting to do more. >> Yeah, so what you're getting at there, I think, is that people go into this thinking the day one problem is the hard one. It's not. >> John: Mine's going to be when it becomes exponentially larger. >> Yeah, and the day two on problem is the hard one. Now I've built this thing. Is it right anymore? >> John: Right. >> Is it doing what it's supposed to do? Who owns it? >> Right, so all these things are what Fugue was built to address. We don't just build stuff on Cloud. We monitor it every 30 seconds and if anything gets out of specification we fix it. So the effect of this is, as you're building and building and building, if Fugue is happy, your infrastructure is correct. So you no longer have to worry about what's out there, it is operating as intended at the infrastructural layer. So, I think that you're exactly right. You get to these large scales and you realize, wow, I have to automate everything. Typically inside of enterprises, they're kind of hand rolling a bunch of point solutions and bags of python and bash script to try to do it. It's a really hard problem. >> So Josh, it's been a year since you came out of stealth, you know, what's been exciting? What's been challenging? What do you expect to see by the time we catch up with you a year from now? >> Yeah, sure, so what's been exciting is the amount of real traction and interest we're getting out of, like, financial services, government and health care, those kinds of markets. I'd say, it's also been exciting to get the kind of feedback that we have from our early customers, which is, they really become evangelists for us and that feels great when you give people a technology that they don't just use but they love. That's very exciting. A year from now, you're going to see a lot from us. Over the next six to nine months, in terms of product releases. We're going to be putting something out at reinvent, I can't get too much into it. That really changes some of the dynamics around things like being able to adopt Cloud. So, a lot of exciting stuff's coming up. >> It sounds like you've got a pretty interesting runway ahead of you. And you certainly have your hands full. But I think you've got a pretty good hand on it. So, congratulations on a very good year. >> Thank you. >> And we wish you all the best success down the road as well. >> Great, thanks for your time. >> You bet, Josh,thank you. Josh Stella from Fugue joining us here on theCUBE. Back with more from the Javits Center, we're at Midtown Manhattan at AWS Summit 2017.

Published Date : Aug 14 2017

SUMMARY :

Brought to you by Amazon Web Services. still a lot of excitement here on the who might not be too familiar with Fugue. and I'm always curious about the origin of the name. So, it builds everything you need on the Cloud. What we're seeing with, this massive paradigm shift, right? Why are people now seriously on the uptake? And so, what Fugue allows you to do is let we definitely saw it, you know. the operator, you know, all on the same page. But, what are you seeing in the customer base, is the strategy has to be really thinking Kind of the role in IT and, you know, the business? and the Cloud is software, if you do it right. Because, there's so many services out there, you know, So, the way you adapt to all this complexity I have X workload, you know, and it's. and not get overwhelmed by the ability to do more day one problem is the hard one. John: Mine's going to be when it becomes Yeah, and the day two on problem is the hard one. You get to these large scales and you realize, and that feels great when you give people a technology And you certainly have your hands full. And we wish you all the best Back with more from the Javits Center,

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Kickoff | AWS Summit 2017


 

>> Announcer: Live from Manhattan it's the Cube. Covering AWS Summit New York City 2017. Brought to you buy Amazon Web Services. >> Hello and welcome to the Big Apple. AWS Summit kicking off here at the Javits Convention Center New York, New York. Along with Stu Miniman, I'm John Walls, welcome to the Cube as we continue our coverage here. Really I feel like this is ongoing, Stu, as far as what we're doing with AWS (mumbles) public sector summit. AWS from the outside in for a very long time. So tell me what you make of this. I mean regional show, we probably have four or 5,000 folks here, good turnout. What's the vibe you got, what's the feeling? >> It's really interesting 'cause we've covered a few of the regional summits but it's the first one that I've attended. I'm actually already have been starting to plan for AWS reinvent, which is the big show in November. Expecting probably around 50,000 people at that show, but I think four years ago, four and a half years ago when I went to the first (mumbles) summit in Las Vegas, it was about the size of what this show is. So Adrian Cockcroft got up on stage, said there were about 20,000 people registered. Of course registered doesn't mean that they're all here. A lot of people I know watching the live stream as well as it's free to attend so if I'm in New York City, there's just a few people in New York that care about tech probably. So maybe they'll pop in sometime for today, but in the keynote there's definitely a few thousand people. It's a good sized expo hall here. This could be a five or 6,000 person event for the size of the expo hall that they have here, and the Javits center can really hold some big activity here. Impressive at scope because Amazon and the cloud is still in early days. As Jeff (mumbles) says, there is no day two, we're always day one and what's going on. Went through a lot of announcements, a lot of momentum, a lot of revenue in this big cloud thing. >> You talk about Adrian too, we'll get to his keynote comments in a little bit. Talking about revenue growth still in the uptick year to year 42%. So still going there, but then on the other side you do se some writing going on that maybe upticks slowing down just a hair as far as cloud deployment goes. >> Yeah that's a great thing, 'cause we're all staring at the numbers and it's no longer, Amazon right now is not growing 75, 80% as opposed to the companies trying to catch up to them, like Microsoft, is growing at more of that 75 (talking over each other) >> But Amazon if you look at infrastructured service, is the largest out there. What was it, it was a 16 billion dollar run rate looking at the last 12 months looking back. Still over 40% growth rate. So yes is the growth slowing down a little bit, but that's just because they're not at a big number so it's a little tougher, but they keep adding services, they keep adding users. Some big users up on stage, some new services getting announced because the way Andy Jassy puts it, I mean everyday when you wake up, there's another three services from Amazon. So it's not like they had to say, oh geeze, can we hold something off? I go to the typical enterprise show and it's like, oh we're going to have this bundle announcements that we do. Amazon could have one of these every week somewhere and everyday could be like, here's three new services and they're kind of interesting because everyday that's kind of what they have. >> Yeah and I don't mean to paint it like the wolf is at the door, by any means, but the competitors are at the door. So how much of that factors into this space (mumbles) you pointed everybody else has this huge market share. They're not even (mumbles) they're like the elephant and the gorilla in the room, but at the same time, you do, as you're coming on, Google's still out there looking. There's another player as well. >> Well if you talk to the Amazon people, they don't care about the competitors, they care about their customers. So they focus very much on what their customers are doing. They work on really small teams. If we want to talk about a couple of the announcements today, one of the ones that, at least the community I was watching, it's AWS glue, which really helps to get ETL, which is the extract, transform, and load really a lot of the heavy lifting and undifferentiated heavy lifting that data scientists are doing. Matt Wood, who was up on the keynote said 75% of their time is done on this kind of stuff, and here's something that can greatly reduce it. Few people in the Twitter stream were talking about they've used the beta of it. They're really excited. It was one that didn't sound all that exciting, but once you get into it it's like, oh wow, game changer. This is going to free up so much time. Really accelerate that speed of what I'm doing. Adrian Cockcroft talked about speed and flight freeing me from some of the early constraints. I'm an infrastructure guy by background and everything was like, and I've got that boat anchor stuff that I need to move along and the refresh cycles, and what do I have budget for today? And now I can spin things up so much faster. They give an example of, oh I'm going to do this on Hive and it's going to take me five years to do it as opposed to if I do it in the nice AWS service it takes 155 seconds. We've had lots of examples like this. One of the earliest customers I remember talking to over four years ago, Cycle Computing was like, we would build the super computer and it would have taken us two years and millions of dollars to build, and instead we did the entire project in two months and it cost us $10,000. So those are the kind of transformational things that we expect to hear from Amazon. Lots of customers, but getting into the nuance of it's a lot of building new service. Hulu got on stage and it wasn't that, they didn't say we've killed all of our data centers and everything that you do under Hulu is now under AWS. They said, we wanted to do live TV and live TV is very different from what we had built for in our infrastructure, and the streaming services that Amazon had, and the reach, and the CDN, and everything that they can do there makes it so that we could do this much faster and integrate what we were doing before with the live TV. Put those things together, transformational, expand their business model, and helps move forward Hulu so as they're not just a media company, they're a technology company and Amazon and Amazon support as a partner helps them with that transformation. >> So they're changing their mission obviously, and then technologically they have the help to do that. Part of the migration of AWS migration, we talked about that as well, one of those new services that they rolled out today. I think the quote was migration is a journey and we're going to make it a little simpler right now. >> Yeah we've been hearing for the last couple of years the database. So you know whether I've got Oracle databases, whether it was running SQL before. I want to migrate them, and with Amazon now, I have so many different migration tools that this migration hub now is going to allow me to track all of my migrations across AWS. So this is not for the company that's saying, oh yeah I'm tinkering with some stuff and I'm doing some test dev, but the enterprise that has thousands of applications or lots of locations and lots of people, they now need managers of managers to watch this and some partners involved to help with a lot of these services, but really sprawling all of the services that Amazon have every time they put up one of those eye charts with just all of these different boxes. Every one of them, when you tend to dig in it's like, oh machine learning was a category before and now there's dozens of things inside it. You keep drilling down, I feel like it's that Christopher Nolan movie, Inception. We keep going levels deep as to kind of figure it out. We need to move at cloud time, which is really fast as opposed to kind of the old enterprise time. >> We hit on machine learning. We saw a lot of examples that cut across a pretty diverse set of brands and sectors, and really the democratization of machine learning more or less. At least that was the takeaway I got from it. >> And absolutely. When you mention the competition, this is where Google has a strong position in machine learning. Amazon and Microsoft also pushing there. So it is still early days in machine learning and while Amazon has an undisputed lead in overall cloud, machine learning is one of those areas where everybody's starting from kind of the starting point and Amazon's brought in a lot of really good people. They've got a lot of people working on teams and building out new services. The one that was announced at the end of the keynote is Amazon Macie, which is really around my sensitive data in a global context using machine learning to understand when something's being used when it shouldn't and things like that. I was buying my family some subway tickets and you could only buy two metro cards with one credit card because even if I put in all the data, it was like, no we're only going to let you buy two because if somebody got your credit card they could probably get that and do that. So that's the kind of thing that you're trying to act fast with data no matter where you are because malicious people and hackers, data is the new oil, as we said. It's something that we need to watch and be able to manage even better. So Amazon keeps adding tools and services to allow us to use our data, protect our data, and harness the value of data. I've really said, data is the new flywheel for technology going forward. Amazon for years talked about the flywheels of customers. They add new services, more customers come on board that drives new services and now data is really that next flywheel that's going to drive that next bunch of years of innovation to come. >> You've talked a lot about announcements that we just heard about in the keynote. Big announcement fairly recently about the cloud data computing foundation. So all of the sudden they, I'd say not giving the Heisman, if you will, the Kubernetes, but maybe not embracing it, right? Fair enough to say. Different story now. All of the sudden they're platinum level on the board. They have a voice on how Kubernetes is going to be rolled out going forward, or I guess maybe how Kubernetes is going to be working with AWS going forward. >> And my comment, I gave a quote to SiliconANGLE. I'm on the analyst side of the media. This side had written an article and I said, it's a good step. I saw a great headline that was like, Amazon gives $350,000. They're at least contributing with the financial piece, but when you dig in and read, there was a medium blog post written by Adrian Cockcroft. He didn't touch on it at all in the keynote this morning. Which I was a little surprised about, but what he said is, we're contributing, we're greatly involved, and there's all of these things that are happening in the CNCF, but Amazon has not said, and here is our service to enable Kubernetes as a first class citizen in there. They have the AWS container service, which is ACS which doesn't use Kubernetes. Until this recent news, I could layer Kubernetes on top and there are a lot of offerings to do that. What I'd like to be able to hear is, what service is really Amazon going to offer with that. My expectation not knowing any concrete details is by the time we get to the big show in November, they will have that baked out war, probably have some announcements there. Hoping at this show to be able to talk to some people to really find out what's happening inside really that Kubernetes piece, 'cause that helps not only with really migrations. If I'm built with Kubernetes, it's built with containers. Containers are also the underlying component when I'm doing things like serverless, AWS Lambda. So if I can use Kubernetes, I can build one way and use multiple environments. Whether that be public cloud or private clouds. So how much will Amazon embrace that, how much will they use this. as well we're enabling Kubernetes so if you've got a Kubernetes solution, you can now get into another migration service to Amazon or will they open up a little bit more? We've really been watching to see as Amazon builds out their hybrid cloud offering. Which is how do they get into the customer's data center because we've seen that maturation of public cloud only, everything into the public cloud to now Lambda starts to reach out a little bit with the green grass, they've got their snow balls, they've got the partnership with VMware, which we expect to hear lots more about at VMworld at the end of this month. They've got partnerships with Redhat and a whole lot of other companies that they're working at to really expanding how they get all of these wonderful Amazon services that are in the public cloud. How do they reach into the customer's data centers themselves and start leveraging those services? All of those free services of data that are getting added. Lots of companies would want to get access to them. >> Well full lineup of guests, as always. Great lineup of guests, but before we head out, you said you're with Wikibon, you do great analyst work there and you've got that inquiring mind. You're a curious guy. What are you curious about today? What do you kind of want to walk away from here tonight learning a little bit more about? >> So as I mentioned, the whole Kubernetes story absolutely is one that we want to hear about. Going to talk to a lot of the partners. So we've seen a lot of the analytics machine learning type solutions really getting to the public (mumbles) so it's good to get a pulse of really this ecosystem because while Amazon is, we've said it's not only the elephant in the room, Dave Alante, the chief analyst at Wikibon said, they're the cheetah, they move rally fast, they're really nimble. Amazon, not the easiest always to partner with. How's the room feel, how are the customers, how are the partners, how much are they really in on AWS, how many of them are multi cloud and I'm using Google for some of the data solutions and Microsoft apps really have me involved. So Amazon loves to say people that are all in. We had one of the speakers that talked, Zocdoc, which one that allows me to set appointments with doctors much faster using technology. Analytics say rather than 24 days you could do 24 hours. They went from no AWS to fully 100% in on AWS in less than 12 months. So those are really impressive ones. Obviously it's a technology center company but you see large companies. FICO was the other one up on stage. Actually hopping to have FICO on the program today. They are, what was it, over a 60 year old company so obviously they have a lot of legacy, and how AWS fits into their environment. I actually interviewed someone from FICO a couple of years ago at an OpenStack show talking about their embrace of containers and containers allows them to get into public cloud a little bit easier. So I'd love to kind of dig into those pieces. What's the post of the customers, what's the post of the partner ecosystem, and are there chinks in the armor? You mentioned the competitive piece there. Usually when you come to an Amazon show, it's all Amazon all the time. The number one gripe usually is it's kind of pricing, and Amazon's made some moves. We did a bunch of interviews the week of the Google Next event talking about Google cloud and there was a lot of kind of small medium business that said Google was priced better, Google has a clear advantage (mumbles) I'm going away from Amazon. The week after the show, Amazon changed their pricing, talked to some of the same people and they're like, yeah Amazon leveled the playing field. So Amazon listens and moves very fast. So if they're not the first to create an offering, they will spin something up very fast. They can readjust their security, their pricing to make sure that they are listening to their customers and meeting them not necessarily in response to competitors, but getting what the customers need and therefore if the customers are griping a little bit about something that they see that's interesting, or a pain point that they've had. Like we've talked about the AWS Glue wasn't something that a competitor had. It was that this is a pain point that they saw a lot of time is on it, and they are looking to take that pain out. One of the line that always gets poked about Amazon is they say your margin is our opportunity and your pain as a customer is our opportunity too. So Amazon always listening. >> All right, a lot on the plate here this day we have for you at AWS Summit. We'll be back with much more as we continue here on the Cube and AWS Summit 2017 from New York City. (upbeat techno music)

Published Date : Aug 14 2017

SUMMARY :

Brought to you buy Amazon Web Services. What's the vibe you got, what's the feeling? and the Javits center can really hold Talking about revenue growth still in the uptick So it's not like they had to say, oh geeze, but at the same time, you do, One of the earliest customers I remember talking to and then technologically they have the help to do that. and some partners involved to help and really the democratization of machine learning and harness the value of data. So all of the sudden they, and here is our service to enable Kubernetes and you've got that inquiring mind. and they are looking to take that pain out. on the Cube and AWS Summit 2017 from New York City.

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Bill Shinn, AWS | AWS Summit 2017


 

>> Announcer: Live from Manhattan It's theCUBE! Covering AWS Summit New York City 2017. Brought to you by Amazon Web Services. >> And welcome back here to New York. We're at the Javits Center here in midtown Manhattan for AWS Summit 2017. Along with Stu Miniman, I'm John Walls. Glad to have you here on theCUBE we continue our coverage here from New York City. Well, if you're making that move to the cloud these days, you're thinking about privacy, you're thinking about security, you're thinking about compliance. Big questions, and maybe some big problems that Bill Shin can answer for you. He is the Principal Security Architect at AWS, and Bill, thanks for being with us. >> Thanks for giving me the time. >> Hey CUBE rookie, right? This is- >> This is my first time. >> Your maiden voyage. >> First time for everything. >> Glad to have you, yeah. So I just hit on some of the high points, these are big, big questions for a lot of folks I would say. Just in general, before we jump in, how do you go about walking people into the water a little bit, and getting them thinking, get their arms around these topics? >> Absolutely. It's still among the first conversations we have with customers, it's our top priority at AWS, the security, and customers are concerned about their data security, regardless of where that data is. Once they move it into the cloud it's a real opportunity to be more secure, it's an opportunity to think about how they're doing security, and adapt and be a little faster. So we have a really prescriptive methodology for helping customers understand how to do a clouded option, and improve their security at the same time. We have a framework called the Well-Architected Framework, and there's a security pillar in that framework, it's built around five key areas. Identity access management, which is really what you should be thinking about first, because authorization is everything. Everything is code, everything is in API, so it all has to be authorized properly. Then we move into detective controls and talk about visibility and control, turning on CloudTrail, getting logging set up. All the detective controls so that before you even move a workload into the cloud, you know exactly what's happening, right? And then we move into infrastructure security, which includes your network trust boundaries, zone definition, things like firewall rules, load balancers, segmentation, as well as system security. Hardening and configuration state of all the resources in their account. Then we move on to data protection as we walk customers through this adoption journey. Things like encryption, backup, recovery, access control on data. And then finally incident response. We want to make sure that they have a really good, solid plan for incident response as they begin to move more and more of their business into the cloud. So to help them wade through the waters we bring it up. The CSO is a key partner in a clouded option, organizations need to make sure security is in lockstep with engineering as they move to the cloud. So we want to help with that. We also have the Cloud Adoption Framework, and there's a security perspective in that framework. Methodology for really treating security more like engineering these days. So you have Dev Ops and you have Dev Sec Ops. Security needs to have a backlog, they need to have sprints, they need to have user stories. It's very similar to how engineering would do it. In that way their partnering together as they move workloads into the cloud. >> Amazon's releasing so many new features, it's tough for a lot of us to keep up. Andy Jassey last year said, "Every day when you wake up, there's at least three new announcements coming out." So it's a new day, there are a number of announcements in your space, maybe bring us up to speed as to what we missed if you just woke up on the West Coast. >> Sure, sure. Customers love the pace of innovation, especially security organizations, they really like the fact that when we innovate on something, it means they might not have to put as much resources on that particular security opportunity or security concern. They can focus more on their code quality, more on engineering principles, things like that. So today, we happily announced Amazon Macie, love it, it performs data classification on your S3 objects. It provides user activity monitoring for who's accessing that data. It uses a lot of our machine learning algorithms under the hood to determine what is normal access behavior for that data. It has a very differentiated classification engine. So it does things like topic modeling, regular expressions, and a variety of other things to really identify that data. People were storing trillions of objects in S3, and they really want to know what their data is, whether it's important to them. Certainly customer's data is the most important thing, so being able to classify that data, perform user analytics on it, and then be able to alert and alarm on inappropriate activities. So take a look at Macie, it's really going make a big difference for customers who want to know that their data is secure in S3. >> Actually I got a question from the community looking at Macie came out, we've got a lot of questions about JDPR coming out. >> Bill: Okay sure, yeah. >> So Macie, or the underlying tech, can that be- >> Bill: Absolutely a great tool. We think the US is the greatest place to be to perform JDPR compliance. You really got to know your data, you have to know if you're moving data by European citizens around, you really have to understand that data. I think Macie will be a big part of a lot of customer strategy on JDPR compliance. To finish your question, we've announced quite a few things today, so Macie's one of them. We announced the next iteration of Cloud HSM, so it's cheaper, more automated, deals more with the clustering that you don't have to do. Deeper integration with things like CloudTrail. Customers really wanted a bit more control and integration with the services that what the previous iteration was, so we've offered that. We announced EFS volume encryption too, so EFS, or Elastic File System encryption at rest. It natively integrates with the key management system the same way that the many of our services do when you're storing data. We announced some config rules today to help customers better understand the access policies on their S3 buckets. So yeah, good stuff. >> John: Busy day, >> Busy day. >> I mean just from a security standpoint, when you are working with a new client, do you ever uncover, or do they discover things about themselves that need to be addressed? >> Bill: Yeah. I think the number one thing, and it's true for many organizations when they move to the cloud, is they want that agility, right? And when we talk to security organizations, one of the top things we advise them on is how to move faster. As much as we're having great conversations about WAF and Shield, the Web Application Firewall, and Shield, our D-DOS solution, Inspector, which performs configuration assessments, all the security services that we've launched, we're also having pretty deep conversations with security organizations these days about CodeStar, CodePipeline, CodeDeploy, and then DevOps tool chains, because security can get that fast engineering principles down, and their just as responsive. It also puts security in the hands of engineers and developers, you know that's the kind of conversations we're having. They discover that they kind of need to get a little closer to how development does their business. You know, talking in the same vocabulary as engineering and development. That's one of the things I think customers discover. Also it's a real opportunity, right? So if you don't have to look after a data center footprints and all the patch panels and switches and routers and firewalls and load balancers and things you have on premises, it really does allow a shift in focus for security organizations to focus on code quality, focus on user behavior, focus on a lot of things that every CSO would like to spend more time on. >> Bill, one of the things a lot of companies struggle with is how they keep up with everything that's happening, all the change there, when I talk to my friends in the security industry it's one of the things that they're most excited about. Is we need to be up on the latest fixes and the patches, and when I go to public cloud you don't ask somebody "Hey what version of AWS or Azure are you running on?" You're going to take care of that behind the scenes. How do you manage the application portfolio for customers, and get them into that framework so that they can, you know we were talking about, Cameron, Jean Kim just buy into that as security just becomes part of the process, as I get more out of agile. >> Yeah, so the question is really about helping customers understand all the services, and really get them integrated deeply. A couple of things, certainly the well architected framework, like I mentioned, is helpful for that. We have solution architects, professional services consultants, a very, very rich partner ecosystem that helps customers. A lot of training for security, there's some free training online, there's classroom, instructor-led training as well, so that training piece is important. I think the solutions are better together. We have a lot of great building blocks, but when you look at something like CloudTrail Cloud Watch Events, and Lambda together, we try and talk about the solutions, not just the individual building blocks. I think that's one key component too, to help them understand how to solve a security problem. Take, for example, monitoring the provisioning of identities and roles and permissions. We really want customers to know that that CloudTrail log, when someone attaches a role to a policy, that can go all the way to a slack channel, that can go all the way to a ticket system. You really want to talk about the end-to-end integration with our customers. Really to help them keep pace with our pace of innovation. We really try and get the blog in front of them, the security blog is a great source of information for all the security announcements we make. Follow Jeff Bar's Twitter, a bunch of things to help keep pace with all of our launches and things, yeah. >> You brought up server lists, if I look at the container space, which is related of course, security has been one of those questions. Bring us up to speed as to where you are with security containers, Lambda- >> Sure, I think Lambda's isolation is very strong, in Lambda we have a really confidence in the tenant isolation model for those functions. The nice thing about server lists is, when there's no code running, you really don't have a surface area to defend. I think from a security perspective, if you were building an application today, and you go to your security team and say "I'd really like to build this little piece of code, and tie these pieces of code together, and when they're not running there's nothing there that you need to defend." Or, would I like to build this big set of operating systems and fleet management and all the things I have to do. It's kind of a, it's a pretty easy conversation right? All the primitives are there in server-less. You have strong cryptography TLSM endpoints, you've got the IM policy framework so that identity access management has really consistent language across all the services, so principles, actions, resources, and conditions is the same across every service. It's not any different for server-less, so they can leverage the knowledge they have of how to manage identities and authorization in the same way. You've got integration of CloudTrail. So all the primitives are there, so customers can focus on their code and being builders. >> Stu: So it sounds like that's part of the way to attach security for IOT then if we're using those. >> I think for IOT it's a very similar architecture too, so you have similar policies that you can apply to what a device you can write to in the cloud. We have a really strong set of authorization and authentication features within the IOT platform so that it makes it easy for developers to build things, deploy them, and maintain them in a secure state. But you can go back to the Well-Architected Framework and the CAF, the Cloud Adoption Framework, you take those five key areas, you know identity, detective controls, infrastructure security, data protection, and IR incident response. It's pretty similar across all the different services. >> It just comes back to the fundamentals. >> It does, absolutely. And for customers, you know those control objectives haven't changed right? They have those control objectives today, they'll have them in the cloud, and we just want to make it easier and faster. >> Well Bill, thanks for being with us. >> You bet, thank you very much. >> Good to have you on theCUBE, look forward to seeing you again for the second time around. >> See you then hopefully >> Bill Shin, from AWS joining us here on theCUBE. Continuing our coverage from the AWS Summit here in New York in just a bit. (techno music)

Published Date : Aug 14 2017

SUMMARY :

Brought to you by Amazon Web Services. Glad to have you here on theCUBE So I just hit on some of the high points, We have a framework called the Well-Architected Framework, "Every day when you wake up, and then be able to alert and alarm Actually I got a question from the community deals more with the clustering that you don't have to do. and things you have on premises, and when I go to public cloud you don't ask somebody that can go all the way to a slack channel, if I look at the container space, and all the things I have to do. Stu: So it sounds like that's part of the way to attach to what a device you can write to in the cloud. And for customers, you know those control objectives Good to have you on theCUBE, Continuing our coverage from the AWS Summit

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Aaron Newman, CloudCheckr | AWS Summit 2017


 

>> Announcer: Live, from Manhattan, it's theCUBE. Covering AWS Summit New York City 2017. Brought to you by Amazon Web Services. >> John Walls: Welcome back here at the Javits Center. We're in midtown, New York, with Stu Miniman, I'm John Walls, here on theCUBE, continuing our coverage here all day, livestreaming from AWS Summit. Thanks for being with us here. Aaron Newman now joins us, he's the co-founder and CEO of CrowdCheckr, and... CloudCheckr rather, and Aaron, the first employee of the company, period, to be on theCUBE, so you're really breaking out in a big way today. >> Yeah, thanks for having us here, and we're excited to be a part of this. >> I see your tag, first I thought it was "I love AWS," and then I saw it closer, "I CloudChecked AWS." >> Absolutely, but also we love AWS. So it works either way. >> So, CloudCheckr, first off tell us a little bit about you, and then how did you get here? >> Okay so, CloudCheckr is a software company. I am the CEO and one of the founders of it. Been around about six years. We build software to help enable, um, enable you to move workloads into the cloud and then manage them successfully. So there's lots of challenges as you move, and how you're going to deal with those is a little different than you did in your data center, so it's important you have the right tools, and processes, and people in place, to manage that move. >> So is the game changing any in that respect? Has it changed any in the last year or two? Is it just that you've got more options now? >> Well, I mean absolutely, this is the disruption for our generation, right? This idea of moving from the data center into the cloud is that disruption. Previously, it was the internet was the big disruption. The cloud is really this generation's disruption, and it's really a matter of how quickly are people moving workloads. Every year AWS gets more mature, they offer more services and more regions, you know, more robust service, so it's just a case of how quickly can people move workloads over. If you go back to a couple years, people thought this was for test workloads, dev workloads. It's just not the case. It's for production workloads, and the people who are taking advantage of it have a competitive advantage today. >> This is a real complex space, so last year at re:Invent I believe, Amazon gave a presentation, they were like, the eight R's to get from where you were to where you want to be. There's lift-and-shift was replatform, there was refactoring, you know, to completely building from scratch, to kind of just trying to move the whole piece. What are you seeing from customers, I'm sure it's a lot of everything, but what are kind of some of the main challenges, what's really slowing things down, and what is changing over the last couple of years? >> Yeah, absolutely, I mean change never comes fast enough, and we'd all love to be able to rewrite all our apps to work in the cloud the way that it was meant to, and that's the right and the best way to do it, you're just going to get way more return in terms of cost and security, and all the other great things that come out of the cloud, but the fact is most people are still lifting and shifting, right? They're taking their apps the way that it ran at the data center, moving into the cloud. And so you see some advantages, but you just clearly don't see the real 10x advantages. So most people are doing that, and it's just that it's expensive. New workloads, as they go in, are architected with this cloud in mind, and that's really powerful, and that's great, but it's going to take time, and it's not going to take five years, it's not going to take ten years, it's going to take 20, 30, 40 years to really get rid of all this old architecture, and convert it over. The same way nobody's putting anything on a mainframe today, but there's a whole lot of the world that's still run by mainframes, right? But you would never put a new app on a mainframe. >> Yeah, if you look at refresh cycles, you know, your server, your network takes a certain amount of time, it's your applications that's a huge amount of time, and the problem we had is, I think back and most of your applications, they kind of suck, and your users of those applications would love for you to update them. So the migration costs are so high, how do we get over that hump? >> Well, it is just going to take time for the refresh cycles, but even more important, I think we need to start looking at going back to the universities. Are universities teaching the right architectures for how to build this stuff? And I can go for hours and hours on some of the minute details, but the idea was, I used to have an application, I'd buy 20 servers, and that's what I ran it on. Now it's like, I build an application, and I don't know where it's really going to sit, it's going to sit on a server somewhere, and that server may use it for minutes or hours, and then it may be on a different server, and all of a sudden you have to think about, how am I going to architect, how am I going to write the code, how am I going to deploy that code? All that stuff is a little different than when you had 20 servers. How am I going to patch it for security holes? So we need to be educating people about that. We need to show them how to do that, back to universities, continuing education programs, all of that, needs to get brought up to date. >> A couple years ago, it seemed like security was the thing that would stop a lot of people, to say, "I'm not ready to go into it." We were talking to one of the Amazon spokespeople about security, and it seems that it's almost a driver now, because I know I need to stay up to date, I need to manage my security much closer, and in many ways, if you're running on Amazon, if you're running on Azure, if you're running on a public hub, they're going to manage some of the patching and testing and everything. So what are you seeing in kind of the security landscape? Is it an opportunity, is it still a challenge? Is it still some of both? >> I think you're absolutely right, security was the biggest fear factor that people were like, and I'm from Rochester, New York, and there are some more older, old-school technology companies there that, their attitude was, "We're not going to go to the cloud, because we don't know where the data sits," and there's a lot of server huggers, that if I can't see the server, it's not secure, and that's just not the case. Let me start with, Amazon has way better security people than you could hire, right? They just have a scale, caliber, programs, all of that that's so much better than anyone else. And you know what, if you had any question about it, the day the head of technology, the CIO for the CIA, stood on stage at an Amazon conference, and said we are going to the cloud, it's like if you think your security needs to be higher than the CIA's, you're wrong. So, it absolutely does, if you do things in the cloud properly, it can be 10 times more secure than what you're in your own data center, right? But you need to do things like think about, how am I doing deployment, so I can get out patches, right? What's the big problem with security in the data center is I have a patch, it hits, and it's going to take me a year to get that out to my 10,000 servers. In the cloud, if I've done things where I have this idea of no-patching strategies, and redeploying instantaneously, then you could fix a patch in a day, right? And all of a sudden it can create a much more secure world, where we don't have these ransomware problems. You don't have all these worms and such causing havoc. >> Go ahead, John. >> You touched on something just a few minutes ago, and you're talking about 20, 30, 40 years, right, catching up, and legacy systems, and people who can leapfrog, and I'm thinking, that's like this perpetual cycle of never catching up, because the technology innovates so quickly, and things are moving so fast. So somebody that might feel like they're really behind? How do they ever just relax and get there if they feel like they really can't catch up? >> Well, so I guess I'll start by saying that people in this room are on the leading edge, and I like to say if you're not bleeding, you're not leading, right? If you're on that leading edge, you're going to have more challenges, you're not going to be able to relax and take it easy. The question is, you know, do you want to be a firm that's trying to take advantage of every competitive edge they can, trying to drive a little bit more, then you're not going to be relaxed. That's just the state of technology today is, it is a marathon, it's not a sprint. But that means you have to find a pace that's appropriate for you, and if you're a brand new software company, like CloudCheckr, I've never bought a server, I built everything in the cloud day-one, so I never have the old legacy architecture. That makes my life much easier. If I am the postal service, it's going to take me a long time to get off the system, and that's just the fact of life, you know. You don't have to throw away your old apps, they'll be around for a long time, but be proactive about saying, "I'm going to build something new," do it the right way so you don't have to wait for a refresh cycle for that. >> Walls: Right, gotcha. >> I mean think about, on the mainframe, remember some of the problems with getting apps off the mainframe was? Nobody had the source code anymore. You couldn't fix Y2K bugs, because you didn't have source code, so you couldn't redeploy it, because they wrote code, and the person that wrote it retired 15 years ago, and now what do I do? I'm stuck. So we're going to be in that same scenario for a long time. >> The other place where you're involved is, once we'd actually got in the cloud, how do we make sure my expenses don't just run away? So you know, maybe talk to us a little bit about that. Amazon's always an interesting one. I was talking in our intro this morning, early in this year, I was talking to a lot of SMB customers that were just like, Google's really attractive, and Amazon doesn't seem to be listening to us, and a week after the Google conference, Amazon changed their pricing, to be able to really match what Google's doing. So what are the some of the biggest challenges in pricing, how are you helping customers, where are some of the pitfalls that they're seeing? >> I mean, absolutely, AWS is the smartest people out there, they know when they need to change and pivot, and somehow they're a billion dollar company that can still pivot, which is a miracle. I don't know how they do it, but they are amazing at that. But let me start by giving you a little of the analogy of, think back to in the 1850's when you had power plants. Everybody built their own power plant, right? And it would cost a million dollars to build a power plant, and then most of your power would be free, right? And then they decided, let's build power plants, I'll spend 50 million dollars to build it, and then everyone will use that, right? We're in the same place now, 150 years later, but it's just different, it's technology. Instead of building a data center and spending millions of dollars on it, instead Amazon has built a data center that's designed for everybody to use, and it's so much more efficient to do that, just like, God, who would build their own power plant anymore? That's the analogy. But think about the other side of it, though, is now if I'm getting my power from a power plant, well I got to start putting in a meter, and understanding turning off the lights at night, and I got to put windows in to keep the heat in the house, and put insulation, right? So we're in the same situation. Yes, Amazon is cheaper, except if you turn all of your servers on, you leave them on, and you don't meter it, you don't understand it, you don't try to put insulation in. So you got to do those things in the cloud. It was easy before, because I just paid for the servers and I was done. Now it's complicated, but it's complicated because you're going to save a lot of money if you do it right. But you know, I love to make that analogy of the physical world, we're no different. You got to actually do things to get your build out. >> Are you starting to see many customers looking at Lambda, because that's something, at least many customers we've talked to, significantly reduced the cost of your infrastructure, because it's not just, I'm choosing when to use it, but only when the function calls it. >> So I think, AWS, you can effectively drive your cost to zero by using the cloud, and by effectively, it never gets to zero, but you can really keep driving it down the more work you put into it. But there's a balance, right? If you put too much work, you offset the savings you're going to have, right? So you go to the cloud, and you start doing work, more work to reduce costs by rightsizing, turning things off, and then you say, let me go to Lambda, because that's even cheaper, but today Lambda still, it doesn't have all the bells and whistles, it's still very much the bleeding edge. So, if you can do it, if you have a fresh application, the expertise to do it, it's a great place to go, and I think in 20 years, everybody's going to be doing everything serverless, all new stuff. We're very early though, right now. We're still inventing this stuff, we're still figuring it out, we're still trying to understand how do I structure an entire application using this serverless architecture? It's trickier than doing it, when you go out there and you try to find 20 programmers to run a project, to get ones that know how to build serverless is very hard, so that's the real challenge. It's not the technology challenge, it's the people, where am I going to find the resources, how much is it going to cost me, all of that. >> I'm still thinking about the power plant. I'm still back in 1850 right now. (laughs) Thanks for being with us. >> You're welcome. >> I appreciate the time here on theCUBE, and best of luck down the road, and glad to see that you are cloudchecking with AWS. >> Check your cloud before you wreck your cloud, right? >> There you go, alright. Aaron Newman, CloudCheckr. Continuing our coverage, we are just a moment here from AWS Summit 2017, we are live at the Javits Center, in New York City. (electronic music)

Published Date : Aug 14 2017

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Brought to you by Amazon Web Services. the company, period, to be on theCUBE, so you're really to be a part of this. I see your tag, first I thought it was So it works either way. and processes, and people in place, to manage that move. If you go back to a couple years, people thought this to where you want to be. and it's not going to take five years, and the problem we had is, I think back and Well, it is just going to take time for the So what are you seeing in kind of the security landscape? and that's just not the case. because the technology innovates so quickly, If I am the postal service, it's going to take me You couldn't fix Y2K bugs, because you didn't have and Amazon doesn't seem to be listening to us, think back to in the 1850's when you had power plants. Are you starting to see many customers looking at Lambda, driving it down the more work you put into it. Thanks for being with us. and best of luck down the road, and glad to see There you go, alright.

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Dustin Kirkland, Canonical | AWS Summit 2017


 

>> Announcer: Live from Manhattan, it's theCube, covering AWS Summit, New York City, 2017. Brought to you by Amazon Web Services. >> Welcome back to the Big Apple as we continue our coverage here on theCube of AWS Summit 2017. We're at the Javits Center. We're in midtown. A lot of hustle and bustle outsie and inside there, good buzz on the show floor with about 5,000 strong attending and some 20,000 registrants also for today's show. Along with Stu Miniman, I'm John Walls, and glad to have you here on theCube. And Dustin Kirkland now joins us. He's at Ubuntu, the product and strategy side of things at Canonical, and Dustin, good to see you back on theCube. >> Thank you very much. >> You just threw a big number out at us when we were talking off camera. I'll let you take it from there, but it shows you about the presence, you might say, of Ubuntu and AWS, what that nexus is right now. >> Ubuntu easily leads as the operating system in Amazon. About 70%, seven zero, 70% of all instances running in Amazon right now are running Ubuntu. And that's actually, despite the fact that Amazon have their own Amazon Linux and there are other, Windows, Rails, SUSE, Debian, Fedora, other alternatives. Ubuntu still represents seven out of 10 workloads in Amazon running right now. >> John: Huge number. >> So, Dustin, maybe give us a little insight as to what kind of workloads you're seeing. How much of this was people that, Ubuntu has a great footprint everywhere and therefore it kind of moved there. And how much of it is new and interesting things, IOT and machine learning and everything like that, where you also have support. >> When you're talking about that many instances, that's quite a bit of boat, right? So if you look at just EC2 and the two types of workloads, there are the long-running workloads. The workloads that are up for many months, years in some cases. I met a number of customers here this week that are running older versions of Ubuntu like 12.04 which are actually end of life, but as a customer of Canonical we continue providing security updates. So we have a product called Extended Security Maintenance. There's over a million instances of Ubuntu 12.04 which are already end of life but Canonical can continue providing security updates, critical security updates. That's great for the long-running workloads. The other thing that we do for long-running workloads are kernel live patches. So we're able to actually fix vulnerabilities in the Linux kernel without rebooting, using entirely upstream and open source technology to do that. So for those workloads that stay up for months or years, the combination of Extended Security Maintenance, covering it for a very long time, and the kernel live patch, ensuring that you're able to patch those vulnerabilities without rebooting those systems, it's great for hosting providers and some enterprise workloads. Now on the flip side, you also see a lot of workloads that are spikey, right. Workloads that come and go in bursts. Maybe they run at night or in the morning or just whenever an event happens. We see a lot of Ubuntu running there. It's really, a lot of that is focused on data and machine learning, artificial intelligence workloads, that run in that sort of bursty manner. >> Okay, so it was interesting, when I hear you talk about some things that have been running for a bunch of years, and on the other side of the spectrum is serverless and the new machine learning stuff where it tends to be there, what's Canonical doing there? What kind of exciting, any of the news, Macey, Glue, some of these other ones that came out, how much do those fit into the conversations you're having? >> Sure, they all really fit. When we talk about what we're doing to tune Ubuntu for those machine learning workloads, it really starts with the kernel. So we actually have an AWS-optimized Linux kernel. So we've taken the Ubuntu Linux kernel and we've tuned it, working with the Amazon kernel engineers, to ensure that we've carved out everything in that kernel that's not relevant inside of an Amazon data center and taken it out. And in doing so, we've actually made the kernel 15% smaller, which actually reduces the security footprint and the storage footprint of that kernel. And that means smaller downloads, smaller updates, and we've made it boot 30% faster. We've done that by adding support, turning on, configuring on some parameters that enable virtualization or divert IO drivers or specifically the Amazon drivers to work really well. We've also removed things like floppy disk drives and Bluetooth drivers, which you'll never find in a virtual machine in Amazon. And when you take all of those things in aggregate and you remove them from the kernel, you end up with a much smaller, better, more efficient package. So that's a great starting point. The other piece is we've ensured that the latest and greatest graphics adapters, the GPUs, GPGPUs from Invidia, that the experienced on Ubuntu out of the box just works. It works really well, and well at scale. You'll find almost all machine learning workloads are drastically improved inside of GPGPU instances. And for the dollar, you're able to compute sometimes hundreds or thousands of times more efficiently than a fewer CPU type workload. >> You're talking about machine learning, but on the artificial intelligence side of life, a lot of conversation about that at the keynotes this morning. A lot of good services, whatever, again, your activity in that and where that's going, do you think, over the next 12, 16 months? >> Yes, so artificial intelligence is a really nice place where we see a lot of Ubuntu, mainly because the nature of how AI is infiltrating our lives. It has these two sides. One side is at the edge, and those are really fundamentally connected devices. And for every one of those billions of devices out there, there are necessarily connections to an instance in the cloud somewhere. So if we take just one example, right, an autonomous vehicle. That vehicle is connected to the internet. Sometimes well, when you're at home, parked in the garage or parked at Whole Foods, right? But sometimes it's not. You're in the middle of the desert out in West Texas. That autonomous vehicle needs to have a lot of intelligence local to that vehicle. It gets downloaded opportunistically. And what gets downloaded are the results of that machine learning, the results of that artificial intelligence process. So we heard in the keynotes quite a bit about data modeling, right? Data modeling means putting a whole bunch of data into Amazon, which Amazon has made it really easy to do with things like Snowball and so forth. Once the data is there, then the big GPGPU instances crunch that data and the result is actually a very tight, tightly compressed bit of insight that then gets fed to devices. So an autonomous vehicle that every single night gets a little bit better by tweaking its algorithms, when to brake, when to change lanes, when to make a left turn safely or a right turn safely, those are constantly being updated by all the data that we're feeding that. Now why I said that's important from an Ubuntu perspective is that we find Ubuntu in both of those locations. So we open this by saying that Ubuntu is the leading operating system inside of Amazon, representing 70% of those instances. Ubuntu is, across the board, right now in 100% of the autonomous vehicles that are running today. So Uber's autonomous vehicle, the Tesla vehicles, the Google vehicles, a number of others from other manufacturers are all running Ubuntu on the CPU. There's usually three CPUs in a smart car. The CPU that's running the autonomous driving engine is, across the board, running Ubuntu today. The fact that it's the same OS makes it, makes life quite nice for the developers. The developers who are writing that software that's crunching the numbers in the cloud and making the critical real-time decisions in the vehicle. >> You talk about autonomous vehicles, I mean, it's about a car in general, thousands of data points coming in, in continual real time. >> Dustin: Right. >> So it's just not autonomous -- >> Dustin: Right. >> operations, right? So are you working in that way, diagnostics, navigation, all those areas? >> Yes, so we catch as headlines are a lot of the hobbyist projects, the fun stuff coming out of universities or startup space. Drones and robots and vacuum cleaners, right? And there's a lot of Ubuntu running there, anything from Raspberry Pis to smart appliances at home. But it's actually, I think, really where those artificially intelligent systems are going to change our lives, is in the industrial space. It's not the drone that some kids are flying around in the park, it's the drone that's surveying crops, that's coming to understand what areas of a field need more fertilizer or less water, right. And that's happening in an artificially intelligent way as smarter and smarter algorithms make its way onto those drones. It's less about the running Pandora and Spotify having to choose the right music for you when you're sitting in your car, and a lot more about every taxicab in the city taking data and analytics and understanding what's going on around them. It's a great way to detect traffic patterns, potentially threats of danger or something like that. That's far more industrial and less intresting than the fun stuff, you know, the fireworks that are shot off by a drone. >> Not nearly as sexy, right? It's not as much fun. >> But that's where the business is, you know. >> That's right. >> One of the things people have been looking at is how Amazon's really maturing their discussion of hyrid cloud. Now, you said that data centers, public cloud, edge devices, lots of mobile, we talked about IOT and everything, what do you see from customers, what do you think we're going to see from Amazon going forward to build these hybrid architectures and how does that fit in to autonomous vehicles and the like? >> So in the keynote we saw a couple of organizations who were spotlighted as all-in on Amazon, and that's great. And actually almost all of those logos that are all-in on Amazon are all-in on Amazon on Ubuntu and that's great. That's a very small number of logos compared to the number of organizations out there that are actually hybrid. Hybrid is certainly a ramp to being all-in but for quite a bit of the industry, that's the journey and the destination, too, in fact. That there's always going to be some amount compute that happens local and some amount of compute that happens in the cloud. Ubuntu helps provide an important portability layer. Knowing something runs well on Ubuntu locally, it's going to run well on Ubuntu in Amazon, or vise versa. The fact that it runs well in Amazon, it will also run well on Ubuntu locally. Now we have a support -- >> Yeah, I was just curious, you talked about some of the optimization you made for AWS. >> Dustin: Right. >> Is that now finding its way into other environments or do we have a little bit of a fork? >> We do, it does find it's way back into other environments so, you know, the Amazon hypervisors are usually Xen-based, although there are some interesting other things coming from Amazon there. Typically what we find on-prem is usually more KVM or Vmware based. Now, most of what goes into that virtual kernel that we build for Amazon actually applies to the virtual kernel that we built for Ubuntu that runs in Xen and Vmware and KVM. There's some subtle differences. Some, a few things that we've done very specifically for Amazon, but for the most part it's perfectly compatible all the way back to the virtual machines that you would run on-prem. >> Well, Dustin, always a pleasure, >> Yeah. >> to have you hear on theCube. >> Thanks, John. >> You're welcome back any time. >> All right. >> We appreciate the time and wish you the best of luck here the rest of the day, too. >> Great. >> Good deal. >> Thank you. >> Glad to be with us. Dustin Kirkland from Canonical joining us here on theCube. Back with more from AWS Summit 2017 here in New York City right after this.

Published Date : Aug 14 2017

SUMMARY :

Brought to you by Amazon Web Services. good buzz on the show floor with about 5,000 strong the presence, you might say, of Ubuntu and AWS, what And that's actually, despite the fact that Amazon where you also have support. Now on the flip side, you also see a lot of workloads And for the dollar, you're able to compute sometimes conversation about that at the keynotes this morning. The fact that it's the same OS makes it, it's about a car in general, thousands of data points than the fun stuff, you know, the fireworks that It's not as much fun. One of the things people have been looking at is So in the keynote we saw a couple of organizations some of the optimization you made for AWS. the virtual kernel that we built for Ubuntu that We appreciate the time and wish you the best of luck Glad to be with us.

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Stephan Scholl, Infor - Inforum 2017 - #Inforum2017 - #theCUBE


 

(fun, relaxing music) >> Announcer: Live from the Javits Center, in New York City, it's The Cube. Covering Inforum 2017. Brought to you by Infor. >> Welcome back to The Cube's coverage of Inforum 2017, I'm your host Rebecca Knight, along with my co-host, Dave Vellante. We're joined by Stephan Scholl, he is the president of Infor. Thanks so much for joining us. >> My pleasure. >> For returning to The Cube My pleasure, yeah, three years in a row, I think, or four now, yeah. >> Indeed. >> Well, we skipped a year in-between. >> That's right! Three years. Anyway, it's good to be here. >> This has been a hugely successful conference. We're hearing so much about the growth and momentum of Infor. Can you unpack this a little bit for our viewers? >> Yeah, I mean... People always forget, we only started this aggressive Cloud journey literally three years ago. When we announced at Inforum in New Orleans that we were pivoting the company to Infor industry-based CloudSuites, everybody looked at us and said, "Well, that's an interesting pivot." "Why are you doing that?" Well, as I said yesterday, we really saw a market dynamic that you see retail just getting crushed by what Amazon was doing, and it was obvious, today, but then it wasn't so obvious, but that was going to happen everywhere, and so we really got aggressive on believing we could put together a very different approach to tackling enterprise software. Everybody is so fatigued from buying from our competitors traditional, perpetual software, and then you end up modifying the hell out of it, and then you end up spending a gazillion dollars, and it takes forever, and then if it does work, you're stuck on old technology already, and you never get to the next round of evolution. So we said why don't we build CloudSuites, take the last model industry functionality that we have, put it in a Cloud, make it easy for our customers to implement it, and then we'll run it for them. And then, by the way, when the newest innovation comes up, we'll upgrade them automatically. That's what Cloud's about. So, that's where we saw that transformation happening. So in three years, we went from two percent, as I said, to 55 plus percent of our revenue. And, by the way, we're not a small company. Nobody at our size and scale has ever done that in enterprise software. So what an accomplishment. >> So a lot of large companies, some that you used to work for, are really slow. And, you know what, lot of times that's okay, 'cause IT tends to be really slow, as you move to the Cloud, and move to the situation where, "Okay, guys, new release coming!" What are your customers saying about that, how are you managing that sort of pace of change, that flywheel of Amazon, and you're now innovating on and pushing to your climate? >> Well, they're excited. And, I'll tell you, I remember standing up in Frankfurt, Germany, 18 months ago for a keynote, and said the Cloud is coming, I almost got kicked out of Germany. (laughing) They said it's not going to happen in Germany, "No, we're an engineering pedigree," "We're going to be on premise." >> "You don't understand the German market!" >> "You don't understand our marketplace!" And, we're really close friends with Andy Jassy at AWS, the CEO. The AWS guys are unbelievable, and innovative, and we said, "You know, you guys got to build" "your next data center in Frankfurt." So they put hundreds of millions of dollars investment in, built a data center. What's the fastest growing data center in Europe, right now, for them? Frankfurt! The German market, for us, our pipeline is tenfold increase from what it was a year ago. So, it's working in Germany, and it's happening on a global basis, we have, I think yesterday 75 customers from Saudi, from Dubai, from all the Middle East. Cloud is a great equalizer. And don't underestimate... I'll take luck to our advantage anytime. The luck part is, there's fatigue out there, they're exhausted, they've spent so much money over the last 20, 30 years, and never reached the promise of what they were sold then, and so now, with all the digital disruption, I think of the business competitive challenges that they have to deal with. I mean, I don't care, you could be in Wichita, Kansas building up an e-commerce website, and compete with a company in Saudi tomorrow. The barest entry in manufacturing, retail, look at government agencies, we're doing nine-figure transformations in the Cloud with public sector agencies. Again, two years ago, they would've said never going to happen. >> Rebecca: Yet the government does spend that kind of... >> Mike Rogers, the CIO, was saying to us, "Look at all the technical debt" "that we've accumulated over the years," "and it just keeps getting worse and worse and worse." "If we don't bite the bullet and move now," "it's just going to take that much longer." >> That's right. And they're leap-frogging. I mean, I'm so excited, government agencies! I mean, there's even some edicts in some places where Cloud-only. I mean, this whole Gold Coast opportunity, 40 plus different applications in Australia, all going into the Cloud to handle all the complexities they have around the commonwealth games that they're trying to deal with. I mean, just huge transformations on a global basis. >> At this conference, we're hearing about so many different companies, and, as you said, government agencies, municipalalities, transforming their business models, transforming their approaches. What are some of your favorite transformation stories? >> My favorite one that we're doing is Travis Perkins. John Carter, I think you guys maybe even interviewed him last year when he was here. CEO. Old, staid distribution business, and taking a whole new fresh approach. Undoing 40 to 50 different applications, taking his entire business, putting it online. He deals with contracts... So, they're the Home Depot of the UK market, and right now, if you drive up into that car port and you want to order something, it's manual! Sticky notes, phones, dumb terminals, I need five windows, I need five roofs, I need five pieces of wood. Everything is just a scurry. He wants to put it on, when you drive up next year, you're on an iPad, what would you like? Oh, by the way, you want to make a custom order on that window frame? You want to make green, yellow, red, you want to order different tiles of roof styling? Custom orders is the future! You, as a contractor, walking into that organization, want to make a custom order. That, today, is very complicated for a company like that to handle. So, the future is about undoing all that, embracing the custom order process, giving you a really unique, touchless buying process, where it's all on an iPad, it's all automated. You know what? Telling you here's your five new windows, here's a new frame want on it, and, by the way, you're going to get it in five days, and three hours, and 21 minutes. Deliver it to your door. And, by the way, these guys are huge. They're one of the biggest distribution companies in all of the United Kingdom, and so that's one of my favorite stories. >> Can we go over some of the metrics that you've been sharing. I know it's somewhat repetitive, but I'd like to get it on-record. There's 55%, 84, 88, over 1100, 3x, 60%, maybe start with the 60%. I think it's bookings grown, right? >> That's right, yeah. License sales growth last year alone. And, you know what, I looked at... You know, I see it, Paul always keeps me honest, but I think I can say it anyways, which is, I looked at everybody else. You look at the... I don't want you to mention any competitors' names, but you look at the top five competitors that we have, we grew faster than they did last year on sales of CloudSuite. >> Dave: Okay, so that's 60% bookings growth on Cloud. >> Correct. That's right. Yeah, I mean, when you think of our competitors, I saw 40s, I saw some 30s, I saw maybe 52 at the next one down. So, people don't think of us that way, so we were, at the enterprise scale, the fastest-growing Cloud company in the world. >> Okay, and then, 3x, that's 3x the number of customers who bought multiple products, is that correct? >> Correct. That's exactly right. So think about that transformation. They used to buy from us one product, feature-function rich, great, but now they're buying five products, eight products from us. So 3x increase, year over year, already happening. >> Okay, and then there was 1100 plus, is Go-Lives. >> People always ask us, "You're selling stuff." "Are they using it, is it working?" So you got to follow up with delivery, so we're spending a ton of money on certification, training, and ablement, look at the SI community, look at the... Deloitte, Accenture, Capgemini, and Grand Thornton. Four of the major SIs in the world, that weren't here last year, are all here this year. Platinum sponsors. So, delivery on Go Lives, the SI community is embracing us, helping us, I mean, I can't do hundred million dollar transformations on my own with these customers. I need Accenture, I need Deloitte. Look at Koch! Koch's going to be a massive transformation for financials, human-capital management, and so I've got Accenture and Deloitte helping us, taking a hundred plus billion dollar company on those two systems. >> And then 84, 88, is number of... >> Live customers, I'm sorry, total customers that we have in the Cloud. >> Cloud customers, okay, not total customers. >> No, no, we have 90 thousand plus customers, and then 84, 85 hundred of them are Cloud-based customers. >> You got a ways to go, then, to convert some of those customers. >> Well, that's our opportunity, that's exactly right. >> And then 55% of revenue came from the Cloud, obviously driven by the Cloud bookings growth. >> That's right. Exactly. So, I mean, just the acceleration, I mean, as I said, when we started this thing in New Orleans, two or three percent. Now, tipping point, revenue, I mean, it's one thing to sell software, but to actually turn it into revenue? Nobody at an enterprise scale has done 2% to 55% at our size. Lots of companies in the hundred million dollar range, small companies, you know, if we were a stand-alone Cloud company, we'd be one of the largest Cloud companies in the world. >> So the narrative from Oracle, I wonder if you can comment on this, is that the core of enterprise apps has not moved to the Cloud, and we, Oracle, are the guys to move it there, 'cause we are the only ones with that end-to-end Cloud on prem to Cloud strategy. And most companies can't put core apps, enterprise apps in the Cloud, especially on Amazon. So, what do you say to that? >> Well, it's 'cause they don't have the applications to do that. Oracle doesn't have the application horsepower. They don't have industry-based application suites. If you think of what fusion is, it's a mishmash of all the applications that they bought. There's no industry capability. >> Dave: It's horizontal, is what you're saying. >> It's horizontal. Oracle is fighting a battle against Amazon, they declared war against AWS. I'm glad they're doing that, go ahead! I mean, I don't know how you're going to do that, but they want to fight the infrastructure game. For us, infrastructure is commoditized. We're fighting the business applications layer game, and so, when you look at SAP or Oracle or anybody else, they have never done what we've done in our heritage, which is take key critical mission functionality for aerospace and defense, or automotive, we have the last mile functionality. I mean, I have companies like Ferrari, on of the most complicated companies, we've talked about those guys for years, no modifications! BAE, over in the UK, building the F-35 fighter jets and the Typhoon war planes. It doesn't get any more complicated than building an F-35 fighter jet. No modifications in their software, that they have with us. You can only build Cloud-based solutions if you don't modify the software. Oracle doesn't have that. Never had it. They're not a manufacturing pedigreed organization. SAP's probably more analogous to that, but even for SAP, they only have one complete big product sect covering retail, distribution, finance, it's the same piece of software they send to a bank, that they send to a retailer, that they send to a manufacturer. We don't do that. That's been our core forever. >> So your dogma is no custom mods, because you're basically saying you can't succeed in the Cloud with custom mods. >> Yeah. I mean, we have an extensive ability platform to do some neat things if you need to do that, but generally speaking, otherwise it's just lipstick on the pig if you're running modified applications. That's called hosting, and that's what these guys are largely doing. >> You know, a lot of people count hosting as Cloud. >> That's the game they're playing, right? >> They throw everything in the Cloud kitchen sink. >> That's right. >> Okay. >> And as we've talked with you before, we've spent billions... We all are R&D's at the application layer. We do some work in the integration layer, and so on, but most of our money is spent in the last mile, which, Oracle and SAP, they're all focused on HANA and infrastructure, and system speed, and performance, and all the stuff that we view as absolutely being commoditized. >> But that's really attractive to the SIs, the fact that they don't go that last mile, so why is it that the SIs are suddenly sort of coming to Infor? >> Well, you know what, because they finally see there is a lot of revenue still on the line in terms of change management, business-process re-engineering. You take a company like Travis Perkins, change their entire model of doing business. There isn't just modification revenue, or integration revenue, there is huge dollars to be had on change management, taking the company to CEO John Carter by the hand, and saying, "Here's how you're going to transform" "your entire business process." That more than makes up in many cases high-value dollars than focused on changing a widget from green to yellow. >> And it's right in the wheelhouse of these big consultancies. >> And they're making good money on digital transformation, so what are the digital use cases? Look at Accenture, they're did a great job. I think 20 plus percent of their business now is all coming from digital. That didn't exist three, four years ago. >> Well, you have a lot of historical experience from your Oracle days of working with those large SIs, they were critical, but they were doing different type of work then, and is it your premise that a lot of that's going away and that's shifting toward. >> The voice of the customer is everything, and it may take time, you can snow a customer once, which we've already done in this industry of software. We told them buy generic-based software, Oracle or SAP, modify it with an SI, take five years, implement it for a hundred million dollars, get stuck on this platform, and if you're lucky, maybe upgrade in ten years. Whoever does that today, as a playbook, as a customer, and if an SI can sell that, I'm not buying that. You think any customers I know today are buying that vision? I don't think so. >> Dave: Right there with the outsourcing business. >> Another thing that's come out of this conference is attention to the Brooklyn Nets deal. Can you talk a little big about it, it's very cool. >> I love those guys. >> Dave: We're from Boston, we love the Brooklyn Nets, too. >> Rebecca: They can play us anytime. Every day. >> Dave: For those draft picks. >> Bread on those guys. You know what it is. And Shaun, the GM, the energy... I use that a lot with my own guys. Brooklyn grit. And they're willing to look and upturn every aspect of the game to be more competitive. And so, we're in there with our technology, looking at every facet, what are they eating? What's the EQ stuff? Emotional occlusion. How's that team collaboration coming together? And then mapping it to... They have the best 3-D cameras on the court, so put positioning, and how are they aligning to each other? Who's doing the front guard in terms of holding the next person back so they can have enough room to do a three-point shot. Where should the three-point shot come from? So, taking all the EQ stuff, the IQ stuff, the performance, the teamwork, putting it all into a recipe for success. These guys are, I'm going to predict it here, these guys are going to rock it next couple years as a team. >> But it's not just what goes on in the court, too, it's also about fan engagement, too. >> All that. Well, fair enough, I get all excited about just making them a much better team, but the whole fan experience, walking into a place knowing that if I get up now, the washroom line isn't 15 miles long, and at the cash line for a beer isn't going to take me 20 minutes, that I'm on my app, you actually have all the information and sensors in place to know that, hey, right now's a great time, aisle number four, queue number three, is a one-minute wait for a beer, go. Or have runners, everything's on your phone, they don't do enough service. So there's a huge revenue opportunity along with it, from a business point of view, but I would also say is a customer service element. How many times have we sat in a game and go, "I'm not getting up there." (laughing) Unless you're sitting in the VIP area, well, there's revenue to be had all over the place. >> Yeah, they're missing out on our beer money, yeah. >> It's ways for a stadium services, which are essentially a liquor distribution system. >> Exactly right. But to do that, you got to connect point of sales systems, you got to connect a lot of components, centers in the bathroom, I mean you got to do a lot of work, so we're going to create the fan experience of the future with them. And preferences, the fact that they that when you walk in past the door with your app and if you have Brooklyn Nets app, that we know who your favorite player is, and you get a little text that says, Hey, you know what, 10% discount on the next shirt from your favorite player. Things like that. Making a personal connection with you about what you like is going to change the game. And that's happening everywhere. In retail... Everybody wants to have a one-to-one relationship. You want to order your Nike shoes online with a green lace and a red lace on the right, Nike allows you to do that. You want to order a shirt that they'll make for you with the different emblems on it and different technology to it, those are things they're doing, too. So, a very one-to-one relationship. >> Well, it's data, it's more than data, it's insights, and you guys are, everybody's a data company, but you're really becoming a data and insight-oriented company. Did you kind of stumble into that, or is this part of the grand plan six years ago, or, how'd you get here? >> Listen, this whole... I mean, to do Cloud-based solutions by industry is not just to solve for applications going from infrastructure on-premise to off-premise. What does it allow you to do? Well, if you're in AWS, I can run ten thousand core products... I can run a report in ten minutes with AWS that would take you a week, around sales information, customer information. Look at all the Netflix content. You log in on Netflix, "Suggestions for You". It's actually pretty accurate, isn't it? >> Scarily accurate, sometimes, yes. >> It's pretty smart what goes into the algorithm that looks at your past. Unfortunately, I log into my kid's section, and it has my name on it and I get all these wonderful recommendations for kids. But that's the kind of stuff that we're talking about. Customers need that. It's about real-time, it's not looking backwards anymore, it's about real-time decisioning, and analytics, and artificial intelligence, AI is the future, for sure. >> So more, more on the future, this is really fun, listening to you talk, because you are the president, and you have a great view of what's going on. What will we be talking about next year, at this time. Well, it won't be quite this time, it will be September, but what do you think? >> I think what you're going to see is massive global organizations up on stage, like the ones I mentioned, Travis Perkins, a Safeway, a Gold Coast, a Hertz. Hertz is under attack as a company. The entry point into the rental car business was very very hard. Who's going to go buy 800 thousand cars and get in the rental business, open ten thousand centers? You don't need to do that anymore today! >> Dave: Software! >> It's called software, the application business, so their business model is under attack. We're feverishly working with their CEO and their executive team and their board on redefining the future of Hertz. So, you're going to see here, next year, the conversation with a company like Hertz rebounding and growing and being successful, and... The best defense is a good offense, so they're on the offensive! They're going to use their size, their scale. You look at the retailers, I mean, I love the TAL story, and they may make one out of every six shirts. Amazon puts the same shirt online that they sell for $39.99, TAL's trying to sell for $89.99. They're saying enough of that. They built these beautiful analyzers, sensors, where you walk into this little room, and they do a sensor of a hundred different parts of your body, So they're going to get the perfect shirt for you. So, it's an experience center. So you walk into this little center, name's escaping me now, but they're going to take all the measurements, like a professional Italian tailor would do, you walk in, it's all automatic, you come out of there, they know all the components of your body, which is a good thing and a bad thing, sometimes, right, (laughing) they'll know it all, and then you go to this beautiful rack and you're going to pick what color do you want. Do you want a different color? So everything is moving to custom, and you'll pay more for that. Wouldn't you pay for a customized shirt that fits your body perfectly, rather than an off-the-rack kind of shirt at $89.99? That's how you compete with the generic-based e-commerce plays that are out there. That use case of TAL is going to happen in every facet. DSW, the DSW ones, these experience centers, the shoeless aisles, that whole experience. You walking in as... The most loyal women shoppers are DSW with their applications, right. >> Rebecca: (laughs) Yes, yes. >> And how many times have you tried a shoe on that doesn't fit properly, or it's not the one you want, or they don't have your size, or you want to make some configurations to it. You got one, too! >> Ashley came by and gave me this, 'cause I love DSW. >> I mean, they're what, one of the biggest shoe companies in the world not standing still, and Ashley is transforming, they went live on financials in like 90 days in the Cloud? Which for them, that kind of innovation happening that fast is unbelievable. So next year, the whole customer experience side is going to be revolutionary for these kinds of exciting organizations. So, rather than cowering from this digital transformation, they're embracing it. We're going to be the engine of digital transformation for them. I get so excited to have major corporations completely disrupting themselves to change their market for themselves moving forward. >> What is the Koch investment meant to you guys, can you talk about that a little bit? I mean, obviously, we hear two billion dollars, and blah, blah, blah, but can you go a little deeper for us? >> I mean, forget all the money stuff, for a minute, just the fact that we're part of a company that is, went from 40 million when Charles Koch started, taking over from his family, and went to 100 plus billion. Think about that innovation. Think about the horsepower, the culture, the aggressiveness, the tenacity, the will to win. We already had that. To combine that with their sheer size and scale is something that is exciting for me, one. Two is they view technology as the next big chapter for them. I mean, again, not resting on your laurels, I'm already 100 billion, they want to grow to 150, 200 billion, and they see technology as the root to getting there. Automating their plants, connecting all their components of their employees, gain the right employees to the right place, so workforce management, all the HR stuff that we're doing on transformation, the financials, getting a global consolidated view across 100 billion dollar business on our systems. That's transformation! That's big, big business for us, and what a great reference to have! A guy like Steve Fellmeier up yesterday, he'll be up here next year talking about how he's using us to transform their business. There's not many 100 billion dollar companies around, right, so what a great reference point for us to have them as a customer, and as a proved point of success. >> Well, we'll look forward to that in September, and seeing you back here next year, too. >> Look forward to it. >> Stephan, thanks so much for joining us. >> Thanks, appreciate it, thank you. >> I'm Rebecca Knight for Dave Vellante, that is it for us and The Cube at Inforum 2017. See you next time.

Published Date : Jul 12 2017

SUMMARY :

Brought to you by Infor. he is the president of Infor. For returning to The Cube Anyway, it's good to be here. the growth and momentum of Infor. and you never get to the next round of evolution. and move to the situation where, 18 months ago for a keynote, and said the Cloud is coming, and we said, "You know, you guys got to build" Rebecca: Yet the government "Look at all the technical debt" all going into the Cloud to handle all the complexities and, as you said, government agencies, Oh, by the way, you want to make a custom order but I'd like to get it on-record. I don't want you to mention any competitors' names, I saw maybe 52 at the next one down. but now they're buying five products, Four of the major SIs in the world, total customers that we have in the Cloud. and then 84, 85 hundred of them are Cloud-based customers. to convert some of those customers. obviously driven by the Cloud bookings growth. So, I mean, just the acceleration, I mean, as I said, is that the core of enterprise apps the applications to do that. it's the same piece of software they send to a bank, in the Cloud with custom mods. to do some neat things if you need to do that, and all the stuff that we view taking the company to CEO John Carter by the hand, And it's right in the wheelhouse I think 20 plus percent of their business now and is it your premise that a lot of that's going away and it may take time, you can snow a customer once, is attention to the Brooklyn Nets deal. Rebecca: They can play us anytime. so they can have enough room to do a three-point shot. But it's not just what goes on in the court, too, and at the cash line for a beer It's ways for a stadium services, And preferences, the fact that they that when you walk in and you guys are, everybody's a data company, I mean, to do Cloud-based solutions by industry But that's the kind of stuff that we're talking about. this is really fun, listening to you talk, and get in the rental business, and then you go to this beautiful rack that doesn't fit properly, or it's not the one you want, 'cause I love DSW. I get so excited to have major corporations gain the right employees to the right place, and seeing you back here next year, too. See you next time.

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Show Wrap with Dan Barnhardt - Inforum2017 - #Inforum2017 - #theCUBE


 

>> Narrator: Live from the Javits Center in New York City. It's the Cube, covering the Inforum 2017. Brought to you by Infor. >> We are wrapping up the Cube's day two coverage of conference here in New York City at Inforum. My name is Rebecca Knight, along with my cohost Dave Vellante. We're joined by Dan Barnhardt. He is the Infor Vice President of Communications. Thanks so much for joining us. >> Yes, thank you for having me. Thank you for being here two days in a row. >> It's been a lot of fun. We've had a great time. So yeah, congratulations, it's been a hugely successful conference, a lot of buzz. Recap it for us, what's been most exciting for you? >> Sure, this was our second year having a forum in New York, which is our home town. I think it was a more exciting conference than last year. We unveiled some incredible development updates, led by Coleman, our AI offering, which is an incredible announcement for us, as well as Networked CloudSuites, which takes the functionality from our GT Nexus commerce network, and bakes it into our CloudSuites, the mission critical industry CloudSuites, that we offer on the Amazon Web Services cloud. Those were really exciting developments, as well as some other announcements we made with regard to product. And then, in addition to product, we had a lot of customer momentum that we shared. Last year, we had customers like Whole Foods and Travis Perkins up here. We continued the momentum with big enterprise customers making big bets on Infor, led by Koch Industries who invested more than two billion dollars this year at Infor, and are now modernizing their human resources and their financial operations with Infor CloudSuites. Moving to the cloud HR for 130,000 employees at Koch Industries which is an incredible achievement for the product, and for cloud HR. And, that's very exciting, as well as other companies like FootLocker, which were recognized with the Innovation Award for our Progress Makers Award. They're using talent science, data science to power their employees, not to power their employees, but to drive their employees towards greater productivity and greater happiness, because they've got the right people in the right fit for FootLocker, that's very exciting. And, of course, Bank of America, our Customer of the Year, which uses our HR solutions for their workforce, which obviously is exceptionally large. >> Yes, there was a great ceremony this morning, with a lot of recognition. So, let's talk a little bit more about Coleman, this was the big product announcement, really the first product in AI for Infor. Tell us a little bit about the building blocks. >> For certain. We have a couple of AI offerings now, like predictive hotel pricing, predictive demand and assortment planning in retail, but we have been building towards Coleman and what we consider the age of networked intelligence for multiple years. Since we architected Infor CloudSuite to run mission critical ERP in the cloud, we developed the capability of having data, mission critical data that really runs a business, your manufacturing, finance, distribution core functions, in the cloud on AWS, which gives us hyper-scale compute power to crunch incredible data. So, that really became possible once we moved CloudSuite in 2014. And then in 2015, we acquired GT Nexus, which is a commerce network that unites, that brings in the 80 percent of enterprise data that lies outside the four walls, among suppliers, and logistics providers, and banks. That unified that into the CloudSuite and brought that data in, and we're able to crunch that using the compute power of AWS. And then last year at Inforum, we announced the acquisition of Predictix, which is a predictive solutions for retail. And when building those, Predictix was making such groundbreaking development in the area of machine learning that they spun off a separate group called Logicblox, just to focus on machine learning. And Inforum vested heavily, we didn't talk a lot about Logicblox, but that was going to deliver a lot of the capabilities along with Amazon's developments with Lex and Alexa to enable Coleman to come to reality. So we were able then to acquire Birst. Birst is a BI program that takes, and harmonizes, the data that comes across CloudSuite and GT Nexus in a digestible form that with the machine learning power from Logicblox can power Coleman. So now we have AI that's pervasive underneath the application, making decisions, recommending advice so that people can maximize their potential at work, not have to do more menial tasks like search and gather, which McKenzie has shown can take 20 percent of your work week just looking for the information and gathering the information to make decisions. Now, you can say Coleman get me this information, and Coleman is able to return that information to you instantly, and let you make decisions, which is very, very exciting breakthrough. >> So there's a lot there. When you and I talked prior to the show, I was kind of looking for okay, what's going to be new and different, and one of the things you said was we're really going to have a focus on innovation. So, in previous Inforums it's really been about, to me anyway, we do a lot of really hard work. We're hearing a lot about acquisitions, certainly AI and Coleman, how those acquisitions come together with your, you know, what Duncan Angove calls the layer cake, you know the wedding cake stack, the strategy stack, I call it. So do you feel like you've achieved those objectives of messaging that innovation, and what's the reaction then from the customer base? >> Without a doubt. I wouldn't characterize anything that we said last year as not innovative, we announced H&L Digital, our digital transformation arm which is doing some incredible custom projects, like for the Brooklyn Nets, essentially money balling the NBA. Look forward to seeing that in next season a little bit, and then more in the season to come. Some big projects with Travis Perkins and with some other customers, care dot com, that were mentioned. But this year we're unveiling Coleman, which takes a lot of pieces, as Duncan said sort of the wedding cake, and puts them together. This has been a development for years. And now we're able to unveil it, and we've chosen to name it Coleman in honor of Katherine Coleman Johnson, one of the ladies whose life was told in the movie Hidden Figures, and she was a pioneer African-American woman in Stem, which is an important cause for us. You know, Infor years ago when we were in New Orleans unveiled the Infor Education Alliance program so that we can invest in increasing Stem education among young people, all young people with a particular focus on minorities and women to increase the ranks of underrepresented communities in the technology industry. So this, Coleman, not only pays honor to Katherine Johnson the person, but also to her mission to increase the number of people that are choosing careers in Stem, which as we have shown is the future of work for human beings. >> So talk a little bit more about Infor's commitment to increasing number to increasing, not only Stem education, but as you said increasing the number of women and minorities who go into Stem careers. >> Certainly. We, you know Pam Murphy who is our chief operating officer, this has been an incredibly important cause to her as well as Charles Phillips our CEO. We launched the Women's Infor Network, WIN, several years ago and that's had some incredible results in helping to increase the number of women at Infor. Many years ago, I think it was Google that first released their diversity report, and it drew a lot of attention to how many women and how many minorities are in technology. And they got a lot of heat, because it was about 30, 35 percent of their workforce was female, and then as other companies started rolling out their diversity report, it was a consistent number between 30 to 35 percent, and what we identified from that was not that women are not getting the jobs, it's that there aren't as many women pursuing careers in this type of field. >> Rebecca: Pipeline. >> Yes. So in order to do that, we need to provide an environment that nurtures some of the specific needs that women have, and that we're promoting education. So we formed the WIN program to do that first task, and this year on International Women's Day in early March, we were able to show some of the results that came from that, particularly in senior positions, SVP, VP, and director level positions at Infor. Some have risen 60 percent the number of women in those roles since we launched the Women's Infor Network just a couple of years ago. And then we launched the Education Alliance Program. We partnered with institutions, like CUNY the City University of New York, the New York Urban League, and universities now across the globe, we've got them in India, in Thailand and China, in South Korea to help increase the number of people who are pursuing careers in Stem. We've also sponsored PBS series and Girls Who Code, we have a hack-athon going on here at Inforum with a bunch of young people who are building, sort of, add-on apps and widgets that go to company Infor. We're investing a lot in the growth of Stem education, and the next generation. >> And by the way, those numbers that you mentioned for Google and others at around 30, 34 percent, that's much better than the industry average. They're doing quote, unquote well and still far below the 50 percent which is what you would think, you know, based on population it would be. So mainly the average is around, or the actual number's around 17 percent in the technology business, and then the other thing I would add is Amazon, I believe, was pretty forthcoming about its compensation, you know. >> Salesforce really started it, Marc Benioff. >> And they got a lot of heat for it, but it's transparency is really the starting point, right? >> It was clear really early for companies like Salesforce, and Amazon, and Google, and Infor that this was not something that we needed to create talking points about, we were going to need to effect real change. And that was going to take investment and time, and thankfully with leadership like Charles Phillips, our CEO, and Marc Benioff were making investments to help make sure that the next generation of every human, but particularly women and minorities that are underrepresented right now in technology, have those skills that will be needed in the years to come. >> Right, you have to start with a benchmark and then know where you're moving from. >> Absolutely, just like if you're starting a project to transform your business, where do you want to go and what are the steps that are going to help you get there? >> Speaking of transforming your business, this is another big trend, is digital transformation. So now that we are at nearing the end of day two of this conference, what are you hearing from customers about this jaunting, sometimes painful process that they must endure, but really they must endure it in order to stay alive and to thrive? >> Without a doubt. A disruption is happening in every industry that we're seeing, and customers across all of the industries that Infor serves, like manufacturing, healthcare, retail, distribution, they are thinking about how do we survive in the new economy, when everything is digital, when every company needs to be a technology company. And we are working with our customers to help first modernize their systems. You can't be held back by old technology, you need to move to the cloud to get the flexibility and the agility that can adapt to changing business conditions and disruptions. No longer do you have years to adapt to things, they're happening overnight, you must have flexible solutions to do that. So, we have a lot of customers. We just had a panel with Travis Perkins, and with Pilot Flying J, who was on the Cube earlier, talking about how their, and Cook Industries our primary investor now, talking about how they're re-architecting their IT infrastructure to give them that agility so they can start thinking about what sort of projects could open up new streams of revenue. How could we, you know, do something else that we never thought of, but now we have the capability to do digitally that could be the future of our business? And it's really exciting to have all the CIOs, and SVPs of technology, VPs of technology, that are here at Inforum talking about what they're doing, and how they're imagining their business. It's really incredible to get a peek at what they're doing. >> You know, we were talking to Debbie earlier. One of the interesting things that I, my takeaway is on the digital transformation, is you know, we always say digital is data and then what we talked about was the ability to traverse industry value change, not just vertically but horizontally. Amazon buying Whole Foods is a perfect example, Amazon's a content company, Apple's getting into financial services. I wonder if you could comment on your thoughts on because you're so deep into micro-verticals, and what Debbie said was well I gave a consumer package good example to a process manufacturing company. And they were like what are you talking about, and she said look, let me connect the dots and the light bulbs went off. And they said wow, we could take that CPG example and apply it, so I wonder when we talk about digital transformation, if you see or can foresee your advantage in micro-verticals as translating across those verticals. >> Without a doubt. We talk about it as adjacent innovation. And Charles points back to an example, way back from the creation of the niche in glass, and how that led to additional businesses and industries like eyeglasses and fire preparedness, and we look at it that way for certain. We dive very deep into key industries, but when we look at them holistically across and we say oh, this is happening within the retail industry, we can identify key functionality that might change the industry of disruption, not disruption, distribution. Might disrupt the distribution industry, and we can apply the lessons learned by having that industry specialization into other industries and help them realize a potential that they weren't aware of before, because we uncovered it in one place. That's happening an awful lot with what we do with retail and assortment planning and healthcare. We run 70 percent of the large hospitals in the US, and we're learning a lot from retail and how we might help hospitals move more quickly. When you are managing life and death situations, if you are planning assortment or inventory for those key supplies within a hospital, and you can make even small adjustments that can have huge impact on patient care, so that's one of the benefits of our industry-first strategy, and the adjacent innovation that we cultivate there. >> I know we're not even finished with Inforum 2017, but we must look ahead to 2018. Talk a little bit about what your goals for next year's conference are. >> For sure. You're correct, we're not finished yet with Inforum. I know everyone here is really excited about Bruno Mars who's entertaining tonight, but we are looking forward to next year's conference as well, we're already talking about some of the innovative things that we'll announce, and the customer journeys that are beginning now, which we'd like to unveil there. We are going to be moving the conference from New York, we're going to move to Washington DC in late-September, September 24th to 27th in Washington DC, which we're very excited about to let our customers, they come back every year to learn more. We had seven thousand people attending this year, we want to give them a little bit of a variety, while still making sure that they can reach, you know, with one stop from Europe and from Asia, cause customers are traveling from all over the world, but we're very excited to see the growth that would be shared. This year, for instance, if you look at the sponsors, we had our primary SI partner Avaap was platinum partner last year. In addition to Avaap this year, we were joined by Accenture, and Deloitte, Capgemini, Grant Thorton, all of whom have built Infor practices over the last 12 months because there's so much momentum over our solutions that that is a revenue opportunity for them that they want to take advantage of. >> And the momentum is just going to keep on going next year in September. So I'll see you in September. >> Yeah, thank you very much. I appreciate you guys being here with us for the third year, second year in a row in New York. >> Indeed, thank you. I'm Rebecca Knight for Dave Vellante, we will have more from Inforum 2017 in a bit.

Published Date : Jul 12 2017

SUMMARY :

Brought to you by Infor. He is the Infor Vice President of Communications. Yes, thank you for having me. It's been a lot of fun. We continued the momentum with big enterprise really the first product in AI for Infor. a lot of the capabilities along with and different, and one of the things you said program so that we can invest in increasing increasing the number of women and minorities and it drew a lot of attention to how many women So in order to do that, we need to and still far below the 50 percent that this was not something that we and then know where you're moving from. So now that we are at nearing the end that could be the future of our business? and she said look, let me connect the dots and how that led to additional businesses but we must look ahead to 2018. at the sponsors, we had our primary SI partner Avaap And the momentum is just going to for the third year, second year in a row in New York. we will have more from Inforum 2017 in a bit.

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