Image Title

Search Results for Andy Jessee:

Breaking Analysis: Databricks faces critical strategic decisions…here’s why


 

>> From theCUBE Studios in Palo Alto and Boston, bringing you data-driven insights from theCUBE and ETR. This is Breaking Analysis with Dave Vellante. >> Spark became a top level Apache project in 2014, and then shortly thereafter, burst onto the big data scene. Spark, along with the cloud, transformed and in many ways, disrupted the big data market. Databricks optimized its tech stack for Spark and took advantage of the cloud to really cleverly deliver a managed service that has become a leading AI and data platform among data scientists and data engineers. However, emerging customer data requirements are shifting into a direction that will cause modern data platform players generally and Databricks, specifically, we think, to make some key directional decisions and perhaps even reinvent themselves. Hello and welcome to this week's wikibon theCUBE Insights, powered by ETR. In this Breaking Analysis, we're going to do a deep dive into Databricks. We'll explore its current impressive market momentum. We're going to use some ETR survey data to show that, and then we'll lay out how customer data requirements are changing and what the ideal data platform will look like in the midterm future. We'll then evaluate core elements of the Databricks portfolio against that vision, and then we'll close with some strategic decisions that we think the company faces. And to do so, we welcome in our good friend, George Gilbert, former equities analyst, market analyst, and current Principal at TechAlpha Partners. George, good to see you. Thanks for coming on. >> Good to see you, Dave. >> All right, let me set this up. We're going to start by taking a look at where Databricks sits in the market in terms of how customers perceive the company and what it's momentum looks like. And this chart that we're showing here is data from ETS, the emerging technology survey of private companies. The N is 1,421. What we did is we cut the data on three sectors, analytics, database-data warehouse, and AI/ML. The vertical axis is a measure of customer sentiment, which evaluates an IT decision maker's awareness of the firm and the likelihood of engaging and/or purchase intent. The horizontal axis shows mindshare in the dataset, and we've highlighted Databricks, which has been a consistent high performer in this survey over the last several quarters. And as we, by the way, just as aside as we previously reported, OpenAI, which burst onto the scene this past quarter, leads all names, but Databricks is still prominent. You can see that the ETR shows some open source tools for reference, but as far as firms go, Databricks is very impressively positioned. Now, let's see how they stack up to some mainstream cohorts in the data space, against some bigger companies and sometimes public companies. This chart shows net score on the vertical axis, which is a measure of spending momentum and pervasiveness in the data set is on the horizontal axis. You can see that chart insert in the upper right, that informs how the dots are plotted, and net score against shared N. And that red dotted line at 40% indicates a highly elevated net score, anything above that we think is really, really impressive. And here we're just comparing Databricks with Snowflake, Cloudera, and Oracle. And that squiggly line leading to Databricks shows their path since 2021 by quarter. And you can see it's performing extremely well, maintaining an elevated net score and net range. Now it's comparable in the vertical axis to Snowflake, and it consistently is moving to the right and gaining share. Now, why did we choose to show Cloudera and Oracle? The reason is that Cloudera got the whole big data era started and was disrupted by Spark. And of course the cloud, Spark and Databricks and Oracle in many ways, was the target of early big data players like Cloudera. Take a listen to Cloudera CEO at the time, Mike Olson. This is back in 2010, first year of theCUBE, play the clip. >> Look, back in the day, if you had a data problem, if you needed to run business analytics, you wrote the biggest check you could to Sun Microsystems, and you bought a great big, single box, central server, and any money that was left over, you handed to Oracle for a database licenses and you installed that database on that box, and that was where you went for data. That was your temple of information. >> Okay? So Mike Olson implied that monolithic model was too expensive and inflexible, and Cloudera set out to fix that. But the best laid plans, as they say, George, what do you make of the data that we just shared? >> So where Databricks has really come up out of sort of Cloudera's tailpipe was they took big data processing, made it coherent, made it a managed service so it could run in the cloud. So it relieved customers of the operational burden. Where they're really strong and where their traditional meat and potatoes or bread and butter is the predictive and prescriptive analytics that building and training and serving machine learning models. They've tried to move into traditional business intelligence, the more traditional descriptive and diagnostic analytics, but they're less mature there. So what that means is, the reason you see Databricks and Snowflake kind of side by side is there are many, many accounts that have both Snowflake for business intelligence, Databricks for AI machine learning, where Snowflake, I'm sorry, where Databricks also did really well was in core data engineering, refining the data, the old ETL process, which kind of turned into ELT, where you loaded into the analytic repository in raw form and refine it. And so people have really used both, and each is trying to get into the other. >> Yeah, absolutely. We've reported on this quite a bit. Snowflake, kind of moving into the domain of Databricks and vice versa. And the last bit of ETR evidence that we want to share in terms of the company's momentum comes from ETR's Round Tables. They're run by Erik Bradley, and now former Gartner analyst and George, your colleague back at Gartner, Daren Brabham. And what we're going to show here is some direct quotes of IT pros in those Round Tables. There's a data science head and a CIO as well. Just make a few call outs here, we won't spend too much time on it, but starting at the top, like all of us, we can't talk about Databricks without mentioning Snowflake. Those two get us excited. Second comment zeros in on the flexibility and the robustness of Databricks from a data warehouse perspective. And then the last point is, despite competition from cloud players, Databricks has reinvented itself a couple of times over the year. And George, we're going to lay out today a scenario that perhaps calls for Databricks to do that once again. >> Their big opportunity and their big challenge for every tech company, it's managing a technology transition. The transition that we're talking about is something that's been bubbling up, but it's really epical. First time in 60 years, we're moving from an application-centric view of the world to a data-centric view, because decisions are becoming more important than automating processes. So let me let you sort of develop. >> Yeah, so let's talk about that here. We going to put up some bullets on precisely that point and the changing sort of customer environment. So you got IT stacks are shifting is George just said, from application centric silos to data centric stacks where the priority is shifting from automating processes to automating decision. You know how look at RPA and there's still a lot of automation going on, but from the focus of that application centricity and the data locked into those apps, that's changing. Data has historically been on the outskirts in silos, but organizations, you think of Amazon, think Uber, Airbnb, they're putting data at the core, and logic is increasingly being embedded in the data instead of the reverse. In other words, today, the data's locked inside the app, which is why you need to extract that data is sticking it to a data warehouse. The point, George, is we're putting forth this new vision for how data is going to be used. And you've used this Uber example to underscore the future state. Please explain? >> Okay, so this is hopefully an example everyone can relate to. The idea is first, you're automating things that are happening in the real world and decisions that make those things happen autonomously without humans in the loop all the time. So to use the Uber example on your phone, you call a car, you call a driver. Automatically, the Uber app then looks at what drivers are in the vicinity, what drivers are free, matches one, calculates an ETA to you, calculates a price, calculates an ETA to your destination, and then directs the driver once they're there. The point of this is that that cannot happen in an application-centric world very easily because all these little apps, the drivers, the riders, the routes, the fares, those call on data locked up in many different apps, but they have to sit on a layer that makes it all coherent. >> But George, so if Uber's doing this, doesn't this tech already exist? Isn't there a tech platform that does this already? >> Yes, and the mission of the entire tech industry is to build services that make it possible to compose and operate similar platforms and tools, but with the skills of mainstream developers in mainstream corporations, not the rocket scientists at Uber and Amazon. >> Okay, so we're talking about horizontally scaling across the industry, and actually giving a lot more organizations access to this technology. So by way of review, let's summarize the trend that's going on today in terms of the modern data stack that is propelling the likes of Databricks and Snowflake, which we just showed you in the ETR data and is really is a tailwind form. So the trend is toward this common repository for analytic data, that could be multiple virtual data warehouses inside of Snowflake, but you're in that Snowflake environment or Lakehouses from Databricks or multiple data lakes. And we've talked about what JP Morgan Chase is doing with the data mesh and gluing data lakes together, you've got various public clouds playing in this game, and then the data is annotated to have a common meaning. In other words, there's a semantic layer that enables applications to talk to the data elements and know that they have common and coherent meaning. So George, the good news is this approach is more effective than the legacy monolithic models that Mike Olson was talking about, so what's the problem with this in your view? >> So today's data platforms added immense value 'cause they connected the data that was previously locked up in these monolithic apps or on all these different microservices, and that supported traditional BI and AI/ML use cases. But now if we want to build apps like Uber or Amazon.com, where they've got essentially an autonomously running supply chain and e-commerce app where humans only care and feed it. But the thing is figuring out what to buy, when to buy, where to deploy it, when to ship it. We needed a semantic layer on top of the data. So that, as you were saying, the data that's coming from all those apps, the different apps that's integrated, not just connected, but it means the same. And the issue is whenever you add a new layer to a stack to support new applications, there are implications for the already existing layers, like can they support the new layer and its use cases? So for instance, if you add a semantic layer that embeds app logic with the data rather than vice versa, which we been talking about and that's been the case for 60 years, then the new data layer faces challenges that the way you manage that data, the way you analyze that data, is not supported by today's tools. >> Okay, so actually Alex, bring me up that last slide if you would, I mean, you're basically saying at the bottom here, today's repositories don't really do joins at scale. The future is you're talking about hundreds or thousands or millions of data connections, and today's systems, we're talking about, I don't know, 6, 8, 10 joins and that is the fundamental problem you're saying, is a new data error coming and existing systems won't be able to handle it? >> Yeah, one way of thinking about it is that even though we call them relational databases, when we actually want to do lots of joins or when we want to analyze data from lots of different tables, we created a whole new industry for analytic databases where you sort of mung the data together into fewer tables. So you didn't have to do as many joins because the joins are difficult and slow. And when you're going to arbitrarily join thousands, hundreds of thousands or across millions of elements, you need a new type of database. We have them, they're called graph databases, but to query them, you go back to the prerelational era in terms of their usability. >> Okay, so we're going to come back to that and talk about how you get around that problem. But let's first lay out what the ideal data platform of the future we think looks like. And again, we're going to come back to use this Uber example. In this graphic that George put together, awesome. We got three layers. The application layer is where the data products reside. The example here is drivers, rides, maps, routes, ETA, et cetera. The digital version of what we were talking about in the previous slide, people, places and things. The next layer is the data layer, that breaks down the silos and connects the data elements through semantics and everything is coherent. And then the bottom layers, the legacy operational systems feed that data layer. George, explain what's different here, the graph database element, you talk about the relational query capabilities, and why can't I just throw memory at solving this problem? >> Some of the graph databases do throw memory at the problem and maybe without naming names, some of them live entirely in memory. And what you're dealing with is a prerelational in-memory database system where you navigate between elements, and the issue with that is we've had SQL for 50 years, so we don't have to navigate, we can say what we want without how to get it. That's the core of the problem. >> Okay. So if I may, I just want to drill into this a little bit. So you're talking about the expressiveness of a graph. Alex, if you'd bring that back out, the fourth bullet, expressiveness of a graph database with the relational ease of query. Can you explain what you mean by that? >> Yeah, so graphs are great because when you can describe anything with a graph, that's why they're becoming so popular. Expressive means you can represent anything easily. They're conducive to, you might say, in a world where we now want like the metaverse, like with a 3D world, and I don't mean the Facebook metaverse, I mean like the business metaverse when we want to capture data about everything, but we want it in context, we want to build a set of digital twins that represent everything going on in the world. And Uber is a tiny example of that. Uber built a graph to represent all the drivers and riders and maps and routes. But what you need out of a database isn't just a way to store stuff and update stuff. You need to be able to ask questions of it, you need to be able to query it. And if you go back to prerelational days, you had to know how to find your way to the data. It's sort of like when you give directions to someone and they didn't have a GPS system and a mapping system, you had to give them turn by turn directions. Whereas when you have a GPS and a mapping system, which is like the relational thing, you just say where you want to go, and it spits out the turn by turn directions, which let's say, the car might follow or whoever you're directing would follow. But the point is, it's much easier in a relational database to say, "I just want to get these results. You figure out how to get it." The graph database, they have not taken over the world because in some ways, it's taking a 50 year leap backwards. >> Alright, got it. Okay. Let's take a look at how the current Databricks offerings map to that ideal state that we just laid out. So to do that, we put together this chart that looks at the key elements of the Databricks portfolio, the core capability, the weakness, and the threat that may loom. Start with the Delta Lake, that's the storage layer, which is great for files and tables. It's got true separation of compute and storage, I want you to double click on that George, as independent elements, but it's weaker for the type of low latency ingest that we see coming in the future. And some of the threats highlighted here. AWS could add transactional tables to S3, Iceberg adoption is picking up and could accelerate, that could disrupt Databricks. George, add some color here please? >> Okay, so this is the sort of a classic competitive forces where you want to look at, so what are customers demanding? What's competitive pressure? What are substitutes? Even what your suppliers might be pushing. Here, Delta Lake is at its core, a set of transactional tables that sit on an object store. So think of it in a database system, this is the storage engine. So since S3 has been getting stronger for 15 years, you could see a scenario where they add transactional tables. We have an open source alternative in Iceberg, which Snowflake and others support. But at the same time, Databricks has built an ecosystem out of tools, their own and others, that read and write to Delta tables, that's what makes the Delta Lake and ecosystem. So they have a catalog, the whole machine learning tool chain talks directly to the data here. That was their great advantage because in the past with Snowflake, you had to pull all the data out of the database before the machine learning tools could work with it, that was a major shortcoming. They fixed that. But the point here is that even before we get to the semantic layer, the core foundation is under threat. >> Yep. Got it. Okay. We got a lot of ground to cover. So we're going to take a look at the Spark Execution Engine next. Think of that as the refinery that runs really efficient batch processing. That's kind of what disrupted the DOOp in a large way, but it's not Python friendly and that's an issue because the data science and the data engineering crowd are moving in that direction, and/or they're using DBT. George, we had Tristan Handy on at Supercloud, really interesting discussion that you and I did. Explain why this is an issue for Databricks? >> So once the data lake was in place, what people did was they refined their data batch, and Spark has always had streaming support and it's gotten better. The underlying storage as we've talked about is an issue. But basically they took raw data, then they refined it into tables that were like customers and products and partners. And then they refined that again into what was like gold artifacts, which might be business intelligence metrics or dashboards, which were collections of metrics. But they were running it on the Spark Execution Engine, which it's a Java-based engine or it's running on a Java-based virtual machine, which means all the data scientists and the data engineers who want to work with Python are really working in sort of oil and water. Like if you get an error in Python, you can't tell whether the problems in Python or where it's in Spark. There's just an impedance mismatch between the two. And then at the same time, the whole world is now gravitating towards DBT because it's a very nice and simple way to compose these data processing pipelines, and people are using either SQL in DBT or Python in DBT, and that kind of is a substitute for doing it all in Spark. So it's under threat even before we get to that semantic layer, it so happens that DBT itself is becoming the authoring environment for the semantic layer with business intelligent metrics. But that's again, this is the second element that's under direct substitution and competitive threat. >> Okay, let's now move down to the third element, which is the Photon. Photon is Databricks' BI Lakehouse, which has integration with the Databricks tooling, which is very rich, it's newer. And it's also not well suited for high concurrency and low latency use cases, which we think are going to increasingly become the norm over time. George, the call out threat here is customers want to connect everything to a semantic layer. Explain your thinking here and why this is a potential threat to Databricks? >> Okay, so two issues here. What you were touching on, which is the high concurrency, low latency, when people are running like thousands of dashboards and data is streaming in, that's a problem because SQL data warehouse, the query engine, something like that matures over five to 10 years. It's one of these things, the joke that Andy Jassy makes just in general, he's really talking about Azure, but there's no compression algorithm for experience. The Snowflake guy started more than five years earlier, and for a bunch of reasons, that lead is not something that Databricks can shrink. They'll always be behind. So that's why Snowflake has transactional tables now and we can get into that in another show. But the key point is, so near term, it's struggling to keep up with the use cases that are core to business intelligence, which is highly concurrent, lots of users doing interactive query. But then when you get to a semantic layer, that's when you need to be able to query data that might have thousands or tens of thousands or hundreds of thousands of joins. And that's a SQL query engine, traditional SQL query engine is just not built for that. That's the core problem of traditional relational databases. >> Now this is a quick aside. We always talk about Snowflake and Databricks in sort of the same context. We're not necessarily saying that Snowflake is in a position to tackle all these problems. We'll deal with that separately. So we don't mean to imply that, but we're just sort of laying out some of the things that Snowflake or rather Databricks customers we think, need to be thinking about and having conversations with Databricks about and we hope to have them as well. We'll come back to that in terms of sort of strategic options. But finally, when come back to the table, we have Databricks' AI/ML Tool Chain, which has been an awesome capability for the data science crowd. It's comprehensive, it's a one-stop shop solution, but the kicker here is that it's optimized for supervised model building. And the concern is that foundational models like GPT could cannibalize the current Databricks tooling, but George, can't Databricks, like other software companies, integrate foundation model capabilities into its platform? >> Okay, so the sound bite answer to that is sure, IBM 3270 terminals could call out to a graphical user interface when they're running on the XT terminal, but they're not exactly good citizens in that world. The core issue is Databricks has this wonderful end-to-end tool chain for training, deploying, monitoring, running inference on supervised models. But the paradigm there is the customer builds and trains and deploys each model for each feature or application. In a world of foundation models which are pre-trained and unsupervised, the entire tool chain is different. So it's not like Databricks can junk everything they've done and start over with all their engineers. They have to keep maintaining what they've done in the old world, but they have to build something new that's optimized for the new world. It's a classic technology transition and their mentality appears to be, "Oh, we'll support the new stuff from our old stuff." Which is suboptimal, and as we'll talk about, their biggest patron and the company that put them on the map, Microsoft, really stopped working on their old stuff three years ago so that they could build a new tool chain optimized for this new world. >> Yeah, and so let's sort of close with what we think the options are and decisions that Databricks has for its future architecture. They're smart people. I mean we've had Ali Ghodsi on many times, super impressive. I think they've got to be keenly aware of the limitations, what's going on with foundation models. But at any rate, here in this chart, we lay out sort of three scenarios. One is re-architect the platform by incrementally adopting new technologies. And example might be to layer a graph query engine on top of its stack. They could license key technologies like graph database, they could get aggressive on M&A and buy-in, relational knowledge graphs, semantic technologies, vector database technologies. George, as David Floyer always says, "A lot of ways to skin a cat." We've seen companies like, even think about EMC maintained its relevance through M&A for many, many years. George, give us your thought on each of these strategic options? >> Okay, I find this question the most challenging 'cause remember, I used to be an equity research analyst. I worked for Frank Quattrone, we were one of the top tech shops in the banking industry, although this is 20 years ago. But the M&A team was the top team in the industry and everyone wanted them on their side. And I remember going to meetings with these CEOs, where Frank and the bankers would say, "You want us for your M&A work because we can do better." And they really could do better. But in software, it's not like with EMC in hardware because with hardware, it's easier to connect different boxes. With software, the whole point of a software company is to integrate and architect the components so they fit together and reinforce each other, and that makes M&A harder. You can do it, but it takes a long time to fit the pieces together. Let me give you examples. If they put a graph query engine, let's say something like TinkerPop, on top of, I don't even know if it's possible, but let's say they put it on top of Delta Lake, then you have this graph query engine talking to their storage layer, Delta Lake. But if you want to do analysis, you got to put the data in Photon, which is not really ideal for highly connected data. If you license a graph database, then most of your data is in the Delta Lake and how do you sync it with the graph database? If you do sync it, you've got data in two places, which kind of defeats the purpose of having a unified repository. I find this semantic layer option in number three actually more promising, because that's something that you can layer on top of the storage layer that you have already. You just have to figure out then how to have your query engines talk to that. What I'm trying to highlight is, it's easy as an analyst to say, "You can buy this company or license that technology." But the really hard work is making it all work together and that is where the challenge is. >> Yeah, and well look, I thank you for laying that out. We've seen it, certainly Microsoft and Oracle. I guess you might argue that well, Microsoft had a monopoly in its desktop software and was able to throw off cash for a decade plus while it's stock was going sideways. Oracle had won the database wars and had amazing margins and cash flow to be able to do that. Databricks isn't even gone public yet, but I want to close with some of the players to watch. Alex, if you'd bring that back up, number four here. AWS, we talked about some of their options with S3 and it's not just AWS, it's blob storage, object storage. Microsoft, as you sort of alluded to, was an early go-to market channel for Databricks. We didn't address that really. So maybe in the closing comments we can. Google obviously, Snowflake of course, we're going to dissect their options in future Breaking Analysis. Dbt labs, where do they fit? Bob Muglia's company, Relational.ai, why are these players to watch George, in your opinion? >> So everyone is trying to assemble and integrate the pieces that would make building data applications, data products easy. And the critical part isn't just assembling a bunch of pieces, which is traditionally what AWS did. It's a Unix ethos, which is we give you the tools, you put 'em together, 'cause you then have the maximum choice and maximum power. So what the hyperscalers are doing is they're taking their key value stores, in the case of ASW it's DynamoDB, in the case of Azure it's Cosmos DB, and each are putting a graph query engine on top of those. So they have a unified storage and graph database engine, like all the data would be collected in the key value store. Then you have a graph database, that's how they're going to be presenting a foundation for building these data apps. Dbt labs is putting a semantic layer on top of data lakes and data warehouses and as we'll talk about, I'm sure in the future, that makes it easier to swap out the underlying data platform or swap in new ones for specialized use cases. Snowflake, what they're doing, they're so strong in data management and with their transactional tables, what they're trying to do is take in the operational data that used to be in the province of many state stores like MongoDB and say, "If you manage that data with us, it'll be connected to your analytic data without having to send it through a pipeline." And that's hugely valuable. Relational.ai is the wildcard, 'cause what they're trying to do, it's almost like a holy grail where you're trying to take the expressiveness of connecting all your data in a graph but making it as easy to query as you've always had it in a SQL database or I should say, in a relational database. And if they do that, it's sort of like, it'll be as easy to program these data apps as a spreadsheet was compared to procedural languages, like BASIC or Pascal. That's the implications of Relational.ai. >> Yeah, and again, we talked before, why can't you just throw this all in memory? We're talking in that example of really getting down to differences in how you lay the data out on disk in really, new database architecture, correct? >> Yes. And that's why it's not clear that you could take a data lake or even a Snowflake and why you can't put a relational knowledge graph on those. You could potentially put a graph database, but it'll be compromised because to really do what Relational.ai has done, which is the ease of Relational on top of the power of graph, you actually need to change how you're storing your data on disk or even in memory. So you can't, in other words, it's not like, oh we can add graph support to Snowflake, 'cause if you did that, you'd have to change, or in your data lake, you'd have to change how the data is physically laid out. And then that would break all the tools that talk to that currently. >> What in your estimation, is the timeframe where this becomes critical for a Databricks and potentially Snowflake and others? I mentioned earlier midterm, are we talking three to five years here? Are we talking end of decade? What's your radar say? >> I think something surprising is going on that's going to sort of come up the tailpipe and take everyone by storm. All the hype around business intelligence metrics, which is what we used to put in our dashboards where bookings, billings, revenue, customer, those things, those were the key artifacts that used to live in definitions in your BI tools, and DBT has basically created a standard for defining those so they live in your data pipeline or they're defined in their data pipeline and executed in the data warehouse or data lake in a shared way, so that all tools can use them. This sounds like a digression, it's not. All this stuff about data mesh, data fabric, all that's going on is we need a semantic layer and the business intelligence metrics are defining common semantics for your data. And I think we're going to find by the end of this year, that metrics are how we annotate all our analytic data to start adding common semantics to it. And we're going to find this semantic layer, it's not three to five years off, it's going to be staring us in the face by the end of this year. >> Interesting. And of course SVB today was shut down. We're seeing serious tech headwinds, and oftentimes in these sort of downturns or flat turns, which feels like this could be going on for a while, we emerge with a lot of new players and a lot of new technology. George, we got to leave it there. Thank you to George Gilbert for excellent insights and input for today's episode. I want to thank Alex Myerson who's on production and manages the podcast, of course Ken Schiffman as well. Kristin Martin and Cheryl Knight help get the word out on social media and in our newsletters. And Rob Hof is our EIC over at Siliconangle.com, he does some great editing. Remember all these episodes, they're available as podcasts. Wherever you listen, all you got to do is search Breaking Analysis Podcast, we publish each week on wikibon.com and siliconangle.com, or you can email me at David.Vellante@siliconangle.com, or DM me @DVellante. Comment on our LinkedIn post, and please do check out ETR.ai, great survey data, enterprise tech focus, phenomenal. This is Dave Vellante for theCUBE Insights powered by ETR. Thanks for watching, and we'll see you next time on Breaking Analysis.

Published Date : Mar 10 2023

SUMMARY :

bringing you data-driven core elements of the Databricks portfolio and pervasiveness in the data and that was where you went for data. and Cloudera set out to fix that. the reason you see and the robustness of Databricks and their big challenge and the data locked into in the real world and decisions Yes, and the mission of that is propelling the likes that the way you manage that data, is the fundamental problem because the joins are difficult and slow. and connects the data and the issue with that is the fourth bullet, expressiveness and it spits out the and the threat that may loom. because in the past with Snowflake, Think of that as the refinery So once the data lake was in place, George, the call out threat here But the key point is, in sort of the same context. and the company that put One is re-architect the platform and architect the components some of the players to watch. in the case of ASW it's DynamoDB, and why you can't put a relational and executed in the data and manages the podcast, of

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Alex MyersonPERSON

0.99+

David FloyerPERSON

0.99+

Mike OlsonPERSON

0.99+

2014DATE

0.99+

George GilbertPERSON

0.99+

Dave VellantePERSON

0.99+

GeorgePERSON

0.99+

Cheryl KnightPERSON

0.99+

Ken SchiffmanPERSON

0.99+

Andy JassyPERSON

0.99+

OracleORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

Erik BradleyPERSON

0.99+

DavePERSON

0.99+

UberORGANIZATION

0.99+

thousandsQUANTITY

0.99+

Sun MicrosystemsORGANIZATION

0.99+

50 yearsQUANTITY

0.99+

AWSORGANIZATION

0.99+

Bob MugliaPERSON

0.99+

GartnerORGANIZATION

0.99+

AirbnbORGANIZATION

0.99+

60 yearsQUANTITY

0.99+

MicrosoftORGANIZATION

0.99+

Ali GhodsiPERSON

0.99+

2010DATE

0.99+

DatabricksORGANIZATION

0.99+

Kristin MartinPERSON

0.99+

Rob HofPERSON

0.99+

threeQUANTITY

0.99+

15 yearsQUANTITY

0.99+

Databricks'ORGANIZATION

0.99+

two placesQUANTITY

0.99+

BostonLOCATION

0.99+

Tristan HandyPERSON

0.99+

M&AORGANIZATION

0.99+

Frank QuattronePERSON

0.99+

second elementQUANTITY

0.99+

Daren BrabhamPERSON

0.99+

TechAlpha PartnersORGANIZATION

0.99+

third elementQUANTITY

0.99+

SnowflakeORGANIZATION

0.99+

50 yearQUANTITY

0.99+

40%QUANTITY

0.99+

ClouderaORGANIZATION

0.99+

Palo AltoLOCATION

0.99+

five yearsQUANTITY

0.99+

Dominique Bastos, Persistent Systems | International Women's Day 2023


 

(gentle upbeat music) >> Hello, everyone, welcome to theCUBE's coverage of International Women's Day. I'm John Furrier host here in Palo Alto, California. theCUBE's second year covering International Women's Day. It's been a great celebration of all the smart leaders in the world who are making a difference from all kinds of backgrounds, from technology to business and everything in between. Today we've got a great guest, Dominique Bastos, who's the senior Vice President of Cloud at Persistent Systems, formerly with AWS. That's where we first met at re:Invent. Dominique, great to have you on the program here for International Women's Day. Thanks for coming on. >> Thank you John, for having me back on theCUBE. This is an honor, especially given the theme. >> Well, I'm excited to have you on, I consider you one of those typecast personas where you've kind of done a lot of things. You're powerful, you've got great business acumen you're technical, and we're in a world where, you know the world's coming completely digital and 50% of the world is women, 51%, some say. So you got mostly male dominated industry and you have a dual engineering background and that's super impressive as well. Again, technical world, male dominated you're in there in the mix. What inspires you to get these engineering degrees? >> I think even it was more so shifted towards males. When I had the inspiration to go to engineering school I was accused as a young girl of being a tomboy and fiddling around with all my brother's toys versus focusing on my dolls and other kind of stereotypical toys that you would give a girl. I really had a curiosity for building, a curiosity for just breaking things apart and putting them back together. I was very lucky in that my I guess you call it primary school, maybe middle school, had a program for, it was like electronics, that was the class electronics. So building circuit boards and things like that. And I really enjoyed that aspect of building. I think it was more actually going into engineering school. Picking that as a discipline was a little bit, my mom's reaction to when I announced that I wanted to do engineering which was, "No, that's for boys." >> Really. >> And that really, you know, I think she, it came from a good place in trying to protect me from what she has experienced herself in terms of how women are received in those spaces. So I kind of shrugged it off and thought "Okay, well I'm definitely now going to do this." >> (laughs) If I was told not to, you're going to do it. >> I was told not to, that's all I needed to hear. And also, I think my passion was to design cars and I figured if I enroll in an industrial engineering program I could focus on ergonomic design and ultimately, you know have a career doing something that I'm passionate about. So yeah, so my inspiration was kind of a little bit of don't do this, a lot of curiosity. I'm also a very analytical person. I've been, and I don't know what the science is around left right brain to be honest, but been told that I'm a very much a logical person versus a feeler. So I don't know if that's good or bad. >> Straight shooter. What were your engineering degrees if you don't mind sharing? >> So I did industrial engineering and so I did a dual degree, industrial engineering and robotics. At the time it was like a manufacturing robotics program. It was very, very cool because we got to, I mean now looking back, the evolution of robotics is just insane. But you, you know, programmed a robotic arm to pick things up. I actually crashed the Civil Engineering School's Concrete Canoe Building Competition where you literally have to design a concrete canoe and do all the load testing and the strength testing of the materials and basically then, you know you go against other universities to race the canoe in a body of water. We did that at, in Alabama and in Georgia. So I was lucky to experience that two times. It was a lot of fun. >> But you knew, so you knew, deep down, you were technical you had a nerd vibe you were geeking out on math, tech, robotics. What happened next? I mean, what were some of the challenges you faced? How did you progress forward? Did you have any blockers and roadblocks in front of you and how did you handle those? >> Yeah, I mean I had, I had a very eye-opening experience with, in my freshman year of engineering school. I kind of went in gung-ho with zero hesitation, all the confidence in the world, 'cause I was always a very big nerd academically, I hate admitting this but myself and somebody else got most intellectual, voted by the students in high school. It's like, you don't want to be voted most intellectual when you're in high school. >> Now it's a big deal. (laughs) >> Yeah, you want to be voted like popular or anything like that? No, I was a nerd, but in engineering school, it's a, it was very humbling. That whole confidence that I had. I experienced prof, ooh, I don't want to name the school. Everybody can google it though, but, so anyway so I had experience with some professors that actually looked at me and said, "You're in the wrong program. This is difficult." I, and I think I've shared this before in other forums where, you know, my thermodynamic teacher basically told me "Cheerleading's down the hall," and it it was a very shocking thing to hear because it really made me wonder like, what am I up against here? Is this what it's going to be like going forward? And I decided not to pay attention to that. I think at the moment when you hear something like that you just, you absorb it and you also don't know how to react. And I decided immediately to just walk right past him and sit down front center in the class. In my head I was cursing him, of course, 'cause I mean, let's be real. And I was like, I'm going to show this bleep bleep. And proceeded to basically set the curve class crushed it and was back to be the teacher's assistant. So I think that was one. >> But you became his teacher assistant after, or another one? >> Yeah, I gave him a mini speech. I said, do not do this. You, you could, you could have broken me and if you would've done this to somebody who wasn't as steadfast in her goals or whatever, I was really focused like I'm doing this, I would've backed out potentially and said, you know this isn't something I want to experience on the daily. So I think that was actually a good experience because it gave me an opportunity to understand what I was up against but also double down in how I was going to deal with it. >> Nice to slay the misogynistic teachers who typecast people. Now you had a very technical career but also you had a great career at AWS on the business side you've handled 'em all of the big accounts, I won't say the names, but like we're talking about monster accounts, sales and now basically it's not really selling, you're managing a big account, it's like a big business. It's a business development thing. Technical to business transition, how do you handle that? Was that something you were natural for? Obviously you, you stared down the naysayers out of the gate in college and then in business, did that continue and how did you drive through that? >> So I think even when I was coming out of university I knew that I wanted to have a balance between the engineering program and business. A lot of my colleagues went on to do their PEs so continue to get their masters basically in engineering or their PhDs in engineering. I didn't really have an interest for that. I did international business and finance as my MBA because I wanted to explore the ability of taking what I had learned in engineering school and applying it to building businesses. I mean, at the time I didn't have it in my head that I would want to do startups but I definitely knew that I wanted to get a feel for what are they learning in business school that I missed out in engineering school. So I think that helped me when I transitioned, well when I applied, I was asked to come apply at AWS and I kind of went, no I'm going to, the DNA is going to be rejected. >> You thought, you thought you'd be rejected from AWS. >> I thought I'd be, yeah, because I have very much a startup founder kind of disruptive personality. And to me, when I first saw AWS at the stage early 2016 I saw it as a corporation. Even though from a techie standpoint, I was like, these people are insane. This is amazing what they're building. But I didn't know what the cultural vibe would feel like. I had been with GE at the beginning of my career for almost three years. So I kind of equated AWS Amazon to GE given the size because in between, I had done startups. So when I went to AWS I think initially, and I do have to kind of shout out, you know Todd Weatherby basically was the worldwide leader for ProServe and it was being built, he built it and I went into ProServe to help from that standpoint. >> John: ProServe, Professional services >> Professional services, right. To help these big enterprise customers. And specifically my first customer was an amazing experience in taking, basically the company revolves around strategic selling, right? It's not like you take a salesperson with a conventional schooling that salespeople would have and plug them into AWS in 2016. It was very much a consultative strategic approach. And for me, having a technical background and loving to solve problems for customers, working with the team, I would say, it was a dream team that I joined. And also the ability to come to the table with a technical background, knowing how to interact with senior executives to help them envision where they want to go, and then to bring a team along with you to make that happen. I mean, that was like magical for me. I loved that experience. >> So you like the culture, I mean, Andy Jassy, I've interviewed many times, always talked about builders and been a builder mentality. You mentioned that earlier at the top of this interview you've always building things, curious and you mentioned potentially your confidence might have been shaken. So you, you had the confidence. So being a builder, you know, being curious and having confidence seems to be what your superpower is. A lot of people talk about the confidence angle. How important is that and how important is that for encouraging more women to get into tech? Because I still hear that all the time. Not that they don't have confidence, but there's so many signals that potentially could shake confidence in industry >> Yeah, that's actually a really good point that you're making. A lot of signals that women get could shake their confidence and that needs to be, I mean, it's easy to say that it should be innate. I mean that's kind of like textbook, "Oh it has to come from within." Of course it does. But also, you know, we need to understand that in a population where 50% of the population is women but only 7% of the positions in tech, and I don't know the most current number in tech leadership, is women, and probably a smaller percentage in the C-suite. When you're looking at a woman who's wanting to go up the trajectory in a tech company and then there's a subconscious understanding that there's a limit to how far you'll go, your confidence, you know, in even subconsciously gets shaken a little bit because despite your best efforts, you're already seeing the cap. I would say that we need to coach girls to speak confidently to navigate conflict versus running away from it, to own your own success and be secure in what you bring to the table. And then I think a very important thing is to celebrate each other and the wins that we see for women in tech, in the industry. >> That's awesome. What's, the, in your opinion, the, you look at that, the challenges for this next generation women, and women in general, what are some of the challenges for them and that they need to overcome today? I mean, obviously the world's changed for the better. Still not there. I mean the numbers one in four women, Rachel Thornton came on, former CMO of AWS, she's at MessageBird now. They had a study where only one in four women go to the executive board level. And so there's still, still numbers are bad and then the numbers still got to get up, up big time. That's, and the industry's working on that, but it's changed. But today, what are some of the challenges for this current generation and the next generation of women and how can we and the industry meet, we being us, women in the industry, be strong role models for them? >> Well, I think the challenge is one of how many women are there in the pipeline and what are we doing to retain them and how are we offering up the opportunities to fill. As you know, as Rachel said and I haven't had an opportunity to see her, in how are we giving them this opportunity to take up those seats in the C-suite right, in these leadership roles. And I think this is a little bit exacerbated with the pandemic in that, you know when everything shut down when people were going back to deal with family and work at the same time, for better or for worse the brunt of it fell on probably, you know the maternal type caregiver within the family unit. You know, I've been, I raised my daughter alone and for me, even without the pandemic it was a struggle constantly to balance the risk that I was willing to take to show up for those positions versus investing even more of that time raising a child, right? Nevermind the unconscious bias or cultural kind of expectations that you get from the male counterparts where there's zero understanding of what a mom might go through at home to then show up to a meeting, you know fully fresh and ready to kind of spit out some wisdom. It's like, you know, your kid just freaking lost their whatever and you know, they, so you have to sort a bunch of things out. I think the challenge that women are still facing and will we have to keep working at it is making sure that there's a good pipeline. A good amount of young ladies of people taking interest in tech. And then as they're, you know, going through the funnel at stages in their career, we're providing the mentoring we're, there's representation, right? To what they're aspiring to. We're celebrating their interest in the field, right? And, and I think also we're doing things to retain them, because again, the pandemic affected everybody. I think women specifically and I don't know the statistics but I was reading something about this were the ones to tend to kind of pull it back and say well now I need to be home with, you know you name how many kids and pets and the aging parents, people that got sick to take on that position. In addition to the career aspirations that they might have. We need to make it easier basically. >> I think that's a great call out and I appreciate you bringing that up about family and being a single mom. And by the way, you're savage warrior to doing that. It's amazing. You got to, I know you have a daughter in computer science at Stanford, I want to get to that in a second. But that empathy and I mentioned Rachel Thornton, who's the CMO MessageBird and former CMO of AWS. Her thing right now to your point is mentoring and sponsorship is very key. And her company and the video that's on the site here people should look at that and reference that. They talk a lot about that empathy of people's situation whether it's a single mom, family life, men and women but mainly women because they're the ones who people aren't having a lot of empathy for in that situation, as you called it out. This is huge. And I think remote work has opened up this whole aperture of everyone has to have a view into how people are coming to the table at work. So, you know, props are bringing that up, and I recommend everyone look at check out Rachel Thornton. So how do you balance that, that home life and talk about your daughter's journey because sounds like she's nerding out at Stanford 'cause you know Stanford's called Nerd Nation, that's their motto, so you must be proud. >> I am so proud, I'm so proud. And I will say, I have to admit, because I did encounter so many obstacles and so many hurdles in my journey, it's almost like I forgot that I should set that aside and not worry about my daughter. My hope for her was for her to kind of be artistic and a painter or go into something more lighthearted and fun because I just wanted to think, I guess my mom had the same idea, right? She, always been very driven. She, I want to say that I got very lucky that she picked me to be her mom. Biologically I'm her mom, but I told her she was like a little star that fell from the sky and I, and ended up with me. I think for me, balancing being a single mom and a career where I'm leading and mentoring and making big decisions that affect people's lives as well. You have to take the best of everything you get from each of those roles. And I think that the best way is play to your strengths, right? So having been kind of a nerd and very organized person and all about, you know, systems for effectiveness, I mean, industrial engineering, parenting for me was, I'm going to make it sound super annoying and horrible, but (laughs) >> It's funny, you know, Dave Vellante and I when we started SiliconANGLE and theCUBE years ago, one of the things we were all like sports lovers. So we liked sports and we are like we looked at the people in tech as tech athletes and except there's no men and women teams, it's one team. It's all one thing. So, you know, I consider you a tech athlete you're hard charging strong and professional and smart and beautiful and brilliant, all those good things. >> Thank you. >> Now this game is changing and okay, and you've done startups, and you've done corporate jobs, now you're in a new role. What's the current tech landscape from a, you know I won't say athletic per standpoint but as people who are smart. You have all kinds of different skill sets. You have the startup warriors, you have the folks who like to be in the middle of the corporate world grow up through corporate, climb the corporate ladder. You have investors, you have, you know, creatives. What have you enjoyed most and where do you see all the action? >> I mean, I think what I've enjoyed the most has been being able to bring all of the things that I feel I'm strong at and bring it together to apply that to whatever the problem is at hand, right? So kind of like, you know if you look at a renaissance man who can kind of pop in anywhere and, oh, he's good at, you know sports and he's good at reading and, or she's good at this or, take all of those strengths and somehow bring them together to deal with the issue at hand, versus breaking up your mindset into this is textbook what I learned and this is how business should be done and I'm going to draw these hard lines between personal life and work life, or between how you do selling and how you do engineering. So I think my, the thing that I loved, really loved about AWS was a lot of leaders saw something in me that I potentially didn't see, which was, yeah you might be great at running that big account but we need help over here doing go to market for a new product launch and boom, there you go. Now I'm in a different org helping solve that problem and getting something launched. And I think if you don't box yourself in to I'm only good at this, or, you know put a label on yourself as being the rockstar in that. It leaves room for opportunities to present themselves but also it leaves room within your own mind to see yourself as somebody capable of doing anything. Right, I don't know if I answered the question accurately. >> No, that's good, no, that's awesome. I love the sharing, Yeah, great, great share there. Question is, what do you see, what do you currently during now you're building a business of Persistent for the cloud, obviously AWS and Persistent's a leader global system integrator around the world, thousands and thousands of customers from what we know and been reporting on theCUBE, what's next for you? Where do you see yourself going? Obviously you're going to knock this out of the park. Where do you see yourself as you kind of look at the continuing journey of your mission, personal, professional what's on your mind? Where do you see yourself going next? >> Well, I think, you know, again, going back to not boxing yourself in. This role is an amazing one where I have an opportunity to take all the pieces of my career in tech and apply them to building a business within a business. And that involves all the goodness of coaching and mentoring and strategizing. And I'm loving it. I'm loving the opportunity to work with such great leaders. Persistent itself is very, very good at providing opportunities, very diverse opportunities. We just had a huge Semicolon; Hackathon. Some of the winners were females. The turnout was amazing in the CTO's office. We have very strong women leading the charge for innovation. I think to answer your question about the future and where I may see myself going next, I think now that my job, well they say the job is never done. But now that Chloe's kind of settled into Stanford and kind of doing her own thing, I have always had a passion to continue leading in a way that brings me to, into the fold a lot more. So maybe, you know, maybe in a VC firm partner mode or another, you know CEO role in a startup, or my own startup. I mean, I never, I don't know right now I'm super happy but you never know, you know where your drive might go. And I also want to be able to very deliberately be in a role where I can continue to mentor and support up and coming women in tech. >> Well, you got the smarts but you got really the building mentality, the curiosity and the confidence really sets you up nicely. Dominique great story, great inspiration. You're a role model for many women, young girls out there and women in tech and in celebration. It's a great day and thank you for sharing that story and all the good nuggets there. Appreciate you coming on theCUBE, and it's been my pleasure. Thanks for coming on. >> Thank you, John. Thank you so much for having me. >> Okay, theCUBE's coverage of International Women's Day. I'm John Furrier, host of theCUBE here in Palo Alto getting all the content, check out the other interviews some amazing stories, lessons learned, and some, you know some funny stories and some serious stories. So have some fun and enjoy the rest of the videos here for International Women's Days, thanks for watching. (gentle inspirational music)

Published Date : Mar 9 2023

SUMMARY :

Dominique, great to have you on Thank you John, for and 50% of the world is I guess you call it primary And that really, you know, (laughs) If I was told not design and ultimately, you know if you don't mind sharing? and do all the load testing the challenges you faced? I kind of went in gung-ho Now it's a big deal. and you also don't know how to react. and if you would've done this to somebody Was that something you were natural for? and applying it to building businesses. You thought, you thought and I do have to kind And also the ability to come to the table Because I still hear that all the time. and that needs to be, I mean, That's, and the industry's to be home with, you know and I appreciate you bringing that up and all about, you know, It's funny, you know, and where do you see all the action? And I think if you don't box yourself in I love the sharing, Yeah, I think to answer your and all the good nuggets there. Thank you so much for having me. learned, and some, you know

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Rachel ThorntonPERSON

0.99+

RachelPERSON

0.99+

Todd WeatherbyPERSON

0.99+

GeorgiaLOCATION

0.99+

GEORGANIZATION

0.99+

Dominique BastosPERSON

0.99+

AWSORGANIZATION

0.99+

JohnPERSON

0.99+

AlabamaLOCATION

0.99+

Dave VellantePERSON

0.99+

Andy JassyPERSON

0.99+

2016DATE

0.99+

John FurrierPERSON

0.99+

DominiquePERSON

0.99+

Palo AltoLOCATION

0.99+

50%QUANTITY

0.99+

thousandsQUANTITY

0.99+

ChloePERSON

0.99+

two timesQUANTITY

0.99+

International Women's DaysEVENT

0.99+

International Women's DayEVENT

0.99+

51%QUANTITY

0.99+

oneQUANTITY

0.99+

Palo Alto, CaliforniaLOCATION

0.99+

PersistentORGANIZATION

0.99+

ProServeORGANIZATION

0.99+

StanfordORGANIZATION

0.99+

Persistent SystemsORGANIZATION

0.99+

MessageBirdORGANIZATION

0.99+

second yearQUANTITY

0.99+

7%QUANTITY

0.99+

early 2016DATE

0.98+

one teamQUANTITY

0.98+

firstQUANTITY

0.98+

theCUBEORGANIZATION

0.98+

singleQUANTITY

0.98+

Civil Engineering SchoolORGANIZATION

0.98+

four womenQUANTITY

0.98+

todayDATE

0.97+

TodayDATE

0.97+

eachQUANTITY

0.97+

pandemicEVENT

0.97+

first customerQUANTITY

0.97+

International Women's Day 2023EVENT

0.95+

single momQUANTITY

0.95+

AmazonORGANIZATION

0.94+

CloudORGANIZATION

0.88+

one thingQUANTITY

0.87+

almost three yearsQUANTITY

0.87+

zero understandingQUANTITY

0.86+

Concrete Canoe Building CompetitionEVENT

0.86+

Nerd NationORGANIZATION

0.84+

zeroQUANTITY

0.84+

secondQUANTITY

0.8+

CTOORGANIZATION

0.76+

SiliconANGLEORGANIZATION

0.74+

Teresa Carlson, Flexport | International Women's Day


 

(upbeat intro music) >> Hello everyone. Welcome to theCUBE's coverage of International Women's Day. I'm your host, John Furrier, here in Palo Alto, California. Got a special remote guest coming in. Teresa Carlson, President and Chief Commercial Officer at Flexport, theCUBE alumni, one of the first, let me go back to 2013, Teresa, former AWS. Great to see you. Thanks for coming on. >> Oh my gosh, almost 10 years. That is unbelievable. It's hard to believe so many years of theCUBE. I love it. >> It's been such a great honor to interview you and follow your career. You've had quite the impressive run, executive level woman in tech. You've done such an amazing job, not only in your career, but also helping other women. So I want to give you props to that before we get started. Thank you. >> Thank you, John. I, it's my, it's been my honor and privilege. >> Let's talk about Flexport. Tell us about your new role there and what it's all about. >> Well, I love it. I'm back working with another Amazonian, Dave Clark, who is our CEO of Flexport, and we are about 3,000 people strong globally in over 90 countries. We actually even have, we're represented in over 160 cities and with local governments and places around the world, which I think is super exciting. We have over 100 network partners and growing, and we are about empowering the global supply chain and trade and doing it in a very disruptive way with the use of platform technology that allows our customers to really have visibility and insight to what's going on. And it's a lot of fun. I'm learning new things, but there's a lot of technology in this as well, so I feel right at home. >> You quite have a knack from mastering growth, technology, and building out companies. So congratulations, and scaling them up too with the systems and processes. So I want to get into that. Let's get into your personal background. Then I want to get into the work you've done and are doing for empowering women in tech. What was your journey about, how did it all start? Like, I know you had a, you know, bumped into it, you went Microsoft, AWS. Take us through your career, how you got into tech, how it all happened. >> Well, I do like to give a shout out, John, to my roots and heritage, which was a speech and language pathologist. So I did start out in healthcare right out of, you know, university. I had an undergraduate and a master's degree. And I do tell everyone now, looking back at my career, I think it was super helpful for me because I learned a lot about human communication, and it has done me very well over the years to really try to understand what environments I'm in and what kind of individuals around the world culturally. So I'm really blessed that I had that opportunity to work in healthcare, and by the way, a shout out to all of our healthcare workers that has helped us get through almost three years of COVID and flu and neurovirus and everything else. So started out there and then kind of almost accidentally got into technology. My first small company I worked for was a company called Keyfile Corporation, which did workflow and document management out of Nashua, New Hampshire. And they were a Microsoft goal partner. And that is actually how I got into big tech world. We ran on exchange, for everybody who knows that term exchange, and we were a large small partner, but large in the world of exchange. And those were the days when you would, the late nineties, you would go and be in the same room with Bill Gates and Steve Ballmer. And I really fell in love with Microsoft back then. I thought to myself, wow, if I could work for a big tech company, I got to hear Bill on stage about saving, he would talk about saving the world. And guess what my next step was? I actually got a job at Microsoft, took a pay cut and a job downgrade. I tell this story all the time. Took like three downgrades in my role. I had been a SVP and went to a manager, and it's one of the best moves I ever made. And I shared that because I really didn't know the world of big tech, and I had to start from the ground up and relearn it. I did that, I just really loved that job. I was at Microsoft from 2000 to 2010, where I eventually ran all of the U.S. federal government business, which was a multi-billion dollar business. And then I had the great privilege of meeting an amazing man, Andy Jassy, who I thought was just unbelievable in his insights and knowledge and openness to understanding new markets. And we talked about government and how government needed the same great technology as every startup. And that led to me going to work for Andy in 2010 and starting up our worldwide public sector business. And I pinch myself some days because we went from two people, no offices, to the time I left we had over 10,000 people, billions in revenue, and 172 countries and had done really amazing work. I think changing the way public sector and government globally really thought about their use of technology and Cloud computing in general. And that kind of has been my career. You know, I was there till 2020, 21 and then did a small stint at Splunk, a small stint back at Microsoft doing a couple projects for Microsoft with CEO, Satya Nadella, who is also an another amazing CEO and leader. And then Dave called me, and I'm at Flexport, so I couldn't be more honored, John. I've just had such an amazing career working with amazing individuals. >> Yeah, I got to say the Amazon One well-documented, certainly by theCUBE and our coverage. We watched you rise and scale that thing. And like I said at a time, this will when we look back as a historic run because of the build out. I mean as a zero to massive billions at a historic time where government was transforming, I would say Microsoft had a good run there with Fed, but it was already established stuff. Federal business was like, you know, blocking and tackling. The Amazon was pure build out. So I have to ask you, what was your big learnings? Because one, you're a Seattle big tech company kind of entrepreneurial in the sense of you got, here's some working capital seed finance and go build that thing, and you're in DC and you're a woman. What did you learn? >> I learned that you really have to have a lot of grit. You, my mom and dad, these are kind of more southern roots words, but stick with itness, you know. you can't give up and no's not in your vocabulary. I found no is just another way to get to yes. That you have to figure out what are all the questions people are going to ask you. I learned to be very patient, and I think one of the things John, for us was our secret sauce was we said to ourselves, if we're going to do something super transformative and truly disruptive, like Cloud computing, which the government really had not utilized, we had to be patient. We had to answer all their questions, and we could not judge in any way what they were thinking because if we couldn't answer all those questions and prove out the capabilities of Cloud computing, we were not going to accomplish our goals. And I do give so much credit to all my colleagues there from everybody like Steve Schmidt who was there, who's still there, who's the CISO, and Charlie Bell and Peter DeSantis and the entire team there that just really helped build that business out. Without them, you know, we would've just, it was a team effort. And I think that's the thing I loved about it was it was not just sales, it was product, it was development, it was data center operations, it was legal, finance. Everybody really worked as a team and we were on board that we had to make a lot of changes in the government relations team. We had to go into Capitol Hill. We had to talk to them about the changes that were required and really get them to understand why Cloud computing could be such a transformative game changer for the way government operates globally. >> Well, I think the whole world and the tech world can appreciate your work and thank you later because you broke down those walls asking those questions. So great stuff. Now I got to say, you're in kind of a similar role at Flexport. Again, transformative supply chain, not new. Computing wasn't new when before Cloud came. Supply chain, not a new concept, is undergoing radical change and transformation. Online, software supply chain, hardware supply chain, supply chain in general, shipping. This is a big part of our economy and how life is working. Similar kind of thing going on, build out, growth, scale. >> It is, it's very much like that, John, I would say, it's, it's kind of a, the model with freight forwarding and supply chain is fairly, it's not as, there's a lot of technology utilized in this global supply chain world, but it's not integrated. You don't have a common operating picture of what you're doing in your global supply chain. You don't have easy access to the information and visibility. And that's really, you know, I was at a conference last week in LA, and it was, the themes were so similar about transparency, access to data and information, being able to act quickly, drive change, know what was happening. I was like, wow, this sounds familiar. Data, AI, machine learning, visibility, common operating picture. So it is very much the same kind of themes that you heard even with government. I do believe it's an industry that is going through transformation and Flexport has been a group that's come in and said, look, we have this amazing idea, number one to give access to everyone. We want every small business to every large business to every government around the world to be able to trade their goods, think about supply chain logistics in a very different way with information they need and want at their fingertips. So that's kind of thing one, but to apply that technology in a way that's very usable across all systems from an integration perspective. So it's kind of exciting. I used to tell this story years ago, John, and I don't think Michael Dell would mind that I tell this story. One of our first customers when I was at Keyfile Corporation was we did workflow and document management, and Dell was one of our customers. And I remember going out to visit them, and they had runners and they would run around, you know, they would run around the floor and do their orders, right, to get all those computers out the door. And when I think of global trade, in my mind I still see runners, you know, running around and I think that's moved to a very digital, right, world that all this stuff, you don't need people doing this. You have machines doing this now, and you have access to the information, and you know, we still have issues resulting from COVID where we have either an under-abundance or an over-abundance of our supply chain. We still have clogs in our shipping, in the shipping yards around the world. So we, and the ports, so we need to also, we still have some clearing to do. And that's the reason technology is important and will continue to be very important in this world of global trade. >> Yeah, great, great impact for change. I got to ask you about Flexport's inclusion, diversity, and equity programs. What do you got going on there? That's been a big conversation in the industry around keeping a focus on not making one way more than the other, but clearly every company, if they don't have a strong program, will be at a disadvantage. That's well reported by McKinsey and other top consultants, diverse workforces, inclusive, equitable, all perform better. What's Flexport's strategy and how are you guys supporting that in the workplace? >> Well, let me just start by saying really at the core of who I am, since the day I've started understanding that as an individual and a female leader, that I could have an impact. That the words I used, the actions I took, the information that I pulled together and had knowledge of could be meaningful. And I think each and every one of us is responsible to do what we can to make our workplace and the world a more diverse and inclusive place to live and work. And I've always enjoyed kind of the thought that, that I could help empower women around the world in the tech industry. Now I'm hoping to do my little part, John, in that in the supply chain and global trade business. And I would tell you at Flexport we have some amazing women. I'm so excited to get to know all. I've not been there that long yet, but I'm getting to know we have some, we have a very diverse leadership team between men and women at Dave's level. I have some unbelievable women on my team directly that I'm getting to know more, and I'm so impressed with what they're doing. And this is a very, you know, while this industry is different than the world I live in day to day, it's also has a lot of common themes to it. So, you know, for us, we're trying to approach every day by saying, let's make sure both our interviewing cycles, the jobs we feel, how we recruit people, how we put people out there on the platforms, that we have diversity and inclusion and all of that every day. And I can tell you from the top, from Dave and all of our leaders, we just had an offsite and we had a big conversation about this is something. It's a drum beat that we have to think about and live by every day and really check ourselves on a regular basis. But I do think there's so much more room for women in the world to do great things. And one of the, one of the areas, as you know very well, we lost a lot of women during COVID, who just left the workforce again. So we kind of went back unfortunately. So we have to now move forward and make sure that we are giving women the opportunity to have great jobs, have the flexibility they need as they build a family, and have a workplace environment that is trusted for them to come into every day. >> There's now clear visibility, at least in today's world, not withstanding some of the setbacks from COVID, that a young girl can look out in a company and see a path from entry level to the boardroom. That's a big change. A lot than even going back 10, 15, 20 years ago. What's your advice to the folks out there that are paying it forward? You see a lot of executive leaderships have a seat at the table. The board still underrepresented by most numbers, but at least you have now kind of this solidarity at the top, but a lot of people doing a lot more now than I've seen at the next levels down. So now you have this leveled approach. Is that something that you're seeing more of? And credit compare and contrast that to 20 years ago when you were, you know, rising through the ranks? What's different? >> Well, one of the main things, and I honestly do not think about it too much, but there were really no women. There were none. When I showed up in the meetings, I literally, it was me or not me at the table, but at the seat behind the table. The women just weren't in the room, and there were so many more barriers that we had to push through, and that has changed a lot. I mean globally that has changed a lot in the U.S. You know, if you look at just our U.S. House of Representatives and our U.S. Senate, we now have the increasing number of women. Even at leadership levels, you're seeing that change. You have a lot more women on boards than we ever thought we would ever represent. While we are not there, more female CEOs that I get an opportunity to see and talk to. Women starting companies, they do not see the barriers. And I will share, John, globally in the U.S. one of the things that I still see that we have that many other countries don't have, which I'm very proud of, women in the U.S. have a spirit about them that they just don't see the barriers in the same way. They believe that they can accomplish anything. I have two sons, I don't have daughters. I have nieces, and I'm hoping someday to have granddaughters. But I know that a lot of my friends who have granddaughters today talk about the boldness, the fortitude, that they believe that there's nothing they can't accomplish. And I think that's what what we have to instill in every little girl out there, that they can accomplish anything they want to. The world is theirs, and we need to not just do that in the U.S., but around the world. And it was always the thing that struck me when I did all my travels at AWS and now with Flexport, I'm traveling again quite a bit, is just the differences you see in the cultures around the world. And I remember even in the Middle East, how I started seeing it change. You've heard me talk a lot on this program about the fact in both Saudi and Bahrain, over 60% of the tech workers were females and most of them held the the hardest jobs, the security, the architecture, the engineering. But many of them did not hold leadership roles. And that is what we've got to change too. To your point, the middle, we want it to get bigger, but the top, we need to get bigger. We need to make sure women globally have opportunities to hold the most precious leadership roles and demonstrate their capabilities at the very top. But that's changed. And I would say the biggest difference is when we show up, we're actually evaluated properly for those kind of roles. We have a ways to go. But again, that part is really changing. >> Can you share, Teresa, first of all, that's great work you've done and I wan to give you props of that as well and all the work you do. I know you champion a lot of, you know, causes in in this area. One question that comes up a lot, I would love to get your opinion 'cause I think you can contribute heavily here is mentoring and sponsorship is huge, comes up all the time. What advice would you share to folks out there who were, I won't say apprehensive, but maybe nervous about how to do the networking and sponsorship and mentoring? It's not just mentoring, it's sponsorship too. What's your best practice? What advice would you give for the best way to handle that? >> Well yeah, and for the women out there, I would say on the mentorship side, I still see mentorship. Like, I don't think you can ever stop having mentorship. And I like to look at my mentors in different parts of my life because if you want to be a well-rounded person, you may have parts of your life every day that you think I'm doing a great job here and I definitely would like to do better there. Whether it's your spiritual life, your physical life, your work life, you know, your leisure life. But I mean there's, and there's parts of my leadership world that I still seek advice from as I try to do new things even in this world. And I tried some new things in between roles. I went out and asked the people that I respected the most. So I just would say for sure have different mentorships and don't be afraid to have that diversity. But if you have mentorships, the second important thing is show up with a real agenda and questions. Don't waste people's time. I'm very sensitive today. If you're, if you want a mentor, you show up and you use your time super effectively and be prepared for that. Sponsorship is a very different thing. And I don't believe we actually do that still in companies. We worked, thank goodness for my great HR team. When I was at AWS, we worked on a few sponsorship programs where for diversity in general, where we would nominate individuals in the company that we felt that weren't, that had a lot of opportunity for growth, but they just weren't getting a seat at the table. And we brought 'em to the table. And we actually kind of had a Chatham House rules where when they came into the meetings, they had a sponsor, not a mentor. They had a sponsor that was with them the full 18 months of this program. We would bring 'em into executive meetings. They would read docs, they could ask questions. We wanted them to be able to open up and ask crazy questions without, you know, feeling wow, I just couldn't answer this question in a normal environment or setting. And then we tried to make sure once they got through the program that we found jobs and support and other special projects that they could go do. But they still had that sponsor and that group of individuals that they'd gone through the program with, John, that they could keep going back to. And I remember sitting there and they asked me what I wanted to get out of the program, and I said two things. I want you to leave this program and say to yourself, I would've never had that experience if I hadn't gone through this program. I learned so much in 18 months. It would probably taken me five years to learn. And that it helped them in their career. The second thing I told them is I wanted them to go out and recruit individuals that look like them. I said, we need diversity, and unless you all feel that we are in an inclusive environment sponsoring all types of individuals to be part of this company, we're not going to get the job done. And they said, okay. And you know, but it was really one, it was very much about them. That we took a group of individuals that had high potential and a very diverse with diverse backgrounds, held 'em up, taught 'em things that gave them access. And two, selfishly I said, I want more of you in my business. Please help me. And I think those kind of things are helpful, and you have to be thoughtful about these kind of programs. And to me that's more sponsorship. I still have people reach out to me from years ago, you know, Microsoft saying, you were so good with me, can you give me a reference now? Can you talk to me about what I should be doing? And I try to, I'm not pray 100%, some things pray fall through the cracks, but I always try to make the time to talk to those individuals because for me, I am where I am today because I got some of the best advice from people like Don Byrne and Linda Zecker and Andy Jassy, who were very honest and upfront with me about my career. >> Awesome. Well, you got a passion for empowering women in tech, paying it forward, but you're quite accomplished and that's why we're so glad to have you on the program here. President and Chief Commercial Officer at Flexport. Obviously storied career and your other jobs, specifically Amazon I think, is historic in my mind. This next chapter looks like it's looking good right now. Final question for you, for the few minutes you have left. Tell us what you're up to at Flexport. What's your goals as President, Chief Commercial Officer? What are you trying to accomplish? Share a little bit, what's on your mind with your current job? >> Well, you kind of said it earlier. I think if I look at my own superpowers, I love customers, I love partners. I get my energy, John, from those interactions. So one is to come in and really help us build even a better world class enterprise global sales and marketing team. Really listen to our customers, think about how we interact with them, build the best executive programs we can, think about new ways that we can offer services to them and create new services. One of my favorite things about my career is I think if you're a business leader, it's your job to come back around and tell your product group and your services org what you're hearing from customers. That's how you can be so much more impactful, that you listen, you learn, and you deliver. So that's one big job. The second job for me, which I am so excited about, is that I have an amazing group called flexport.org under me. And flexport.org is doing amazing things around the world to help those in need. We just announced this new funding program for Tech for Refugees, which brings assistance to millions of people in Ukraine, Pakistan, the horn of Africa, and those who are affected by earthquakes. We just took supplies into Turkey and Syria, and Flexport, recently in fact, just did sent three air shipments to Turkey and Syria for these. And I think we did over a hundred trekking shipments to get earthquake relief. And as you can imagine, it was not easy to get into Syria. But you know, we're very active in the Ukraine, and we are, our goal for flexport.org, John, is to continue to work with our commercial customers and team up with them when they're trying to get supplies in to do that in a very cost effective, easy way, as quickly as we can. So that not-for-profit side of me that I'm so, I'm so happy. And you know, Ryan Peterson, who was our founder, this was his brainchild, and he's really taken this to the next level. So I'm honored to be able to pick that up and look for new ways to have impact around the world. And you know, I've always found that I think if you do things right with a company, you can have a beautiful combination of commercial-ity and giving. And I think Flexport does it in such an amazing and unique way. >> Well, the impact that they have with their system and their technology with logistics and shipping and supply chain is a channel for societal change. And I think that's a huge gift that you have that under your purview. So looking forward to finding out more about flexport.org. I can only imagine all the exciting things around sustainability, and we just had Mobile World Congress for Big Cube Broadcast, 5Gs right around the corner. I'm sure that's going to have a huge impact to your business. >> Well, for sure. And just on gas emissions, that's another thing that we are tracking gas, greenhouse gas emissions. And in fact we've already reduced more than 300,000 tons and supported over 600 organizations doing that. So that's a thing we're also trying to make sure that we're being climate aware and ensuring that we are doing the best job we can at that as well. And that was another thing I was honored to be able to do when we were at AWS, is to really cut out greenhouse gas emissions and really go global with our climate initiatives. >> Well Teresa, it's great to have you on. Security, data, 5G, sustainability, business transformation, AI all coming together to change the game. You're in another hot seat, hot roll, big wave. >> Well, John, it's an honor, and just thank you again for doing this and having women on and really representing us in a big way as we celebrate International Women's Day. >> I really appreciate it, it's super important. And these videos have impact, so we're going to do a lot more. And I appreciate your leadership to the industry and thank you so much for taking the time to contribute to our effort. Thank you, Teresa. >> Thank you. Thanks everybody. >> Teresa Carlson, the President and Chief Commercial Officer of Flexport. I'm John Furrier, host of theCUBE. This is International Women's Day broadcast. Thanks for watching. (upbeat outro music)

Published Date : Mar 6 2023

SUMMARY :

and Chief Commercial Officer It's hard to believe so honor to interview you I, it's my, it's been Tell us about your new role and insight to what's going on. and are doing for And that led to me going in the sense of you got, I learned that you really Now I got to say, you're in kind of And I remember going out to visit them, I got to ask you about And I would tell you at Flexport to 20 years ago when you were, you know, And I remember even in the Middle East, I know you champion a lot of, you know, And I like to look at my to have you on the program here. And I think we did over a I can only imagine all the exciting things And that was another thing I Well Teresa, it's great to have you on. and just thank you again for and thank you so much for taking the time Thank you. and Chief Commercial Officer of Flexport.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Satya NadellaPERSON

0.99+

Jeremy BurtonPERSON

0.99+

DavePERSON

0.99+

CiscoORGANIZATION

0.99+

Teresa CarlsonPERSON

0.99+

Dave VellantePERSON

0.99+

Dave VallentePERSON

0.99+

Ryan PetersonPERSON

0.99+

MicrosoftORGANIZATION

0.99+

Andy JassyPERSON

0.99+

TeresaPERSON

0.99+

JohnPERSON

0.99+

Linda ZeckerPERSON

0.99+

AmazonORGANIZATION

0.99+

MikePERSON

0.99+

John FurrierPERSON

0.99+

Steve BallmerPERSON

0.99+

CanadaLOCATION

0.99+

GoogleORGANIZATION

0.99+

AWSORGANIZATION

0.99+

FlexportORGANIZATION

0.99+

Dave ClarkPERSON

0.99+

Mike FrancoPERSON

0.99+

Stu MinimanPERSON

0.99+

2010DATE

0.99+

SyriaLOCATION

0.99+

HallmarkORGANIZATION

0.99+

UkraineLOCATION

0.99+

Don ByrnePERSON

0.99+

Keyfile CorporationORGANIZATION

0.99+

Steve SchmidtPERSON

0.99+

DellORGANIZATION

0.99+

five yearsQUANTITY

0.99+

Dave StanfordPERSON

0.99+

TurkeyLOCATION

0.99+

BostonLOCATION

0.99+

JuneDATE

0.99+

Middle EastLOCATION

0.99+

second jobQUANTITY

0.99+

Michael DellPERSON

0.99+

dozensQUANTITY

0.99+

2013DATE

0.99+

MayDATE

0.99+

2019DATE

0.99+

LALOCATION

0.99+

Amazon Web ServicesORGANIZATION

0.99+

100%QUANTITY

0.99+

Heather Ruden & Jenni Troutman | International Women's Day


 

(upbeat music) >> Hello, everyone. Welcome to theCUBE's special presentation of International Women's Day. I'm John Furrier, host of theCUBE. Jenni Troutman is here, Director of Products and Services, and Training and Certification at AWS, and Heather Ruden, Director of Education Programs, Training and Certification. Thanks for coming on theCUBE and for the International Women's Day special program. >> Thanks so much for having us. >> So, I'll just get it out of the way. I'm a big fan of what you guys do. I've been shouting at the top of my lungs, "It's free. Get cloud training and you'll have a six figure job." Pretty much. I'm over amplifying. But this is really a big opportunity in the industry, education and the skills gap, and the skill velocities that's changing. New roles are coming on around cloud native, cloud native operators, cybersecurity. There's so much excitement going on around the industry, and all these open positions, and they need new talent. So you can't get a degree for some of these things. So, nope, it doesn't matter what school you went to, everyone's kind of level. This is a really big deal. So, Heather, share with us your thoughts as well on this topic. Jenni, you too. Like, where are you guys at? 'Cause this is a big opportunity for women and anyone to level up in the industry. >> Absolutely. So I'll jump in and then I'll hand it over to Jenni. We're your dream team here. We can talk about both sides of this. So I run a set of programs here at AWS that are really intended to help build the next generation of cloud builders. And we do that with a variety of programs, whether it is targeting young learners from kind of 12 and up. We have AWS GetIT that is designed to get women ambassadors or women mentors in front of girls 12 to 14 and get them curious about a career in STEM. We also have a program that is all digital online. It's available in 11 languages. It's got hundreds of courses. That's called AWS Educate that is designed to do exactly what you just talked about, expose the opportunities and start building cloud skills for learners at age 13 and up. They can go online and register with an email and start learning. We want them to understand not only what the opportunity is for them, but the ways that they can help influence and bring more diversity and more inclusion and into the cloud technology space, and just keep building all those amazing builders that we need here for our customers and partners. And those are the programs that I manage, but Jenni also has an amazing program, a set of programs. And so I'll hand it over to her as you get into the professional side of this things. >> So Jenni, you're on the product side. You've got the keys to the kingdom on all the materials and shaping it. What's your view on this? 'Cause this is a huge opportunity and it's always changing. What's the latest and greatest? >> It is a massive opportunity and to give you a sense, there was a study in '21 where IT executives said that talent availability is the biggest challenge to emerging tech adoption. 64% of IT executives said that up from only 4% the year before. So the challenge is growing really fast, which for everyone that's ready to go out there and learn and try something new is a massive opportunity. And that's really why I'm here. We provide all kinds of learning experiences for people across different cloud technologies to be able to not only gain the knowledge around cloud, but also the confidence to be able to build in the cloud. And so we look across different learner levels, different roles, different opportunities, and we provide those experiences where people can actually get hands-on in a totally risk-free environment and practice building in the cloud so they can go and be ready to get their certifications, their AWS certifications, give them the credentials to be able to show an employer they can do it, and then go out and get these jobs. It's really exciting. And we go kind of end to end from the very beginning. What is cloud? I want to know what it is all the way through to I can prove that I can build in the cloud and I'm ready for a job. >> So Jenni, you nailed that confidence word. I think I want to double click on that. And Heather, you talked about you're the dream team. You guys, you're the go to market, you bring this to the marketplace. Jenni, you get the products. This is the key, but to me the the international women days angle is, is that what I hear over and over again is that, "It's too technical. I'm not qualified." It can be scary. We had a guest on who has two double E degrees in robotics and aerospace and she's hard charging. She almost lost her confidence twice she said in her career. But she was hard charging. It can get scary, but also the ability to level up fast is just as good. So if you can break through that confidence and keep the curiosity and be a builder, talk about that dynamic 'cause you guys are in the middle of it, you're in the industry, how do you handle that? 'Cause I think that's a big thing that comes up over and over again. And confidence is not just women, it's men too. But women can always, that comes up as a theme. >> It is. It is a big challenge. I mean, I've struggled with it personally and I mentor a lot of women and that is the number one challenge that is holding women back from really being able to advance is the confidence to step out there and show what they can do. And what I love about some of the products we've put out recently is we have AWS Skill Builder. You can go online, you can get all kinds of free core training and if you want to go deeper, you can go deeper. And there's a lot of different options on there. But what it does is not only gives you that based knowledge, but you can actually go in. We have something called AWS Labs. You can go in and you can actually practice on the AWS console with the services that people are using in their jobs every day without any risk of doing something that is going to blow up in your face. You're not going to suddenly get this big AWS bill. You're not going to break something that's out there running. You just go in. It's your own little environment that gets wiped when you're done and you can practice. And there's lots of different ways to learn as well. So if you go in there and you're watching a video and to your point you're like, "Oh my gosh, this is too technical. I can't understand it. I don't know what I'm going to go do." You can go another route. There's something called AWS Cloud Quest. It's a game. You go in and it's like you're gaming and it walks you through. You're actually in a virtual world. You're walking through and it's telling you, "Hey, go build this and if you need help, here's hints and here's tips." And it continues to build on itself. So you're learning and you're applying practical skills and it's at your own pace. You don't have to watch somebody else talking that is going at a pace that maybe accelerates beyond what you're ready. You can do it at your own pace, you can redo it, you can try it again until you feel confident that you know it and you're really ready to move on to the next thing. Personally, I find that hugely valuable. I go in and do these myself and I sit there and I have a lot of engineers on my team, very smart people. And I have my own imposter syndrome. I get nervous to go talk to them. Like, are they going to think I'm totally lost? And so I go in and I learn some of this myself by experiment. And then I feel like, okay, now I can go ask them some intelligent questions and they're not going to be like, "Oh gosh, my leader is totally unaware of what we're doing." And so I think that we all struggle with confidence. I think everybody does, but I see it especially in women as I mentor them. And that's what I encourage them to do is go and on your own time, practice a bit, get a little bit of experience and once you feel like you can throw a couple words out there that you know what they mean and suddenly other people look at you like, "Oh, she knows what she's talking about." And you can kind of get past that feeling. >> Well Jenni, you nailed it. Heather, she just mentioned she's in the job and she's going and she's still leveling up. That's the end when you're in, but it's also the barriers to entry are lowering. You guys are doing a good job of getting people in, but also growing fast too. So there's two dynamics at play here. How do people do this? What's the playbook? Because I think that's really key, easy to get in. And then once you're in, you can level up fast at your own pace to ride the wave. And then there's new stuff coming. I mean, every re:Invent there's 5,000 announcements. So it's like zillion new things and AI taught now. >> re:Invent is a perfect example of that ongoing imposter syndrome or confidence check for all of us. I think something that that Jenni said too is we really try and meet learners where they are and make sure that we have the support, whether it's accessibility requirements or we have the content that is built for the age that we're talking to, or we have a workforce development program called re/Start that is for people that have very little tech experience and really want to talk about a career in cloud, but they need a little bit more handholding. They need a combination of instructor-led and digital. But then we have AWS educators, I mentioned. If you want to be more self-directed, all of these tools are intended to work well together and to be complimentary and to take you on a journey as a learner. And the more skills you have, the more you increase your knowledge, the more you can take on more. But meeting folks where they are with a variety of programs, tools, languages, and accessibility really helps ensure that we can do that for learners throughout the world. >> That's awesome. Let's get into it. Let's get into the roadmaps of people and their personas. And you guys can share the programs that you have and where people could fit in. 'Cause this comes up a lot when I talk to folks. There's the young person who's I'm a gamer or whatever, I want to get a job. I'm in high school or an elementary or I want to tinker around or I'm in college or I'm learning, I'm an entry level kind of entry. Then you have the re-skilling. I'm going to change my careers, I'm kind of bored, I want to do something compelling. How do I get into the cloud game? And then the advanced re-skill is I want to get into cyber and AI and then there's other. Could you break down? Did I get that right or did I miss anything? And then what's available for those kind of lanes? So those persona lanes? >> Well, let's see, I could start with maybe the high schooler stuff and then we can bring Jenni in as well. I would say a great place to start for anyone is aws.amazon.com/training. That's going to give them the full suite of options that they could take on. If you're in high school, you can go onto AWS Educate. All you need is an email. And if you're 13 years and older, you can start exploring the types of jobs that are available in the cloud and you could start taking some introductory classes. You can do some of those labs in a safe environment that Jenni mentioned. That's a great place to start. If you are in an environment where you have an educator that is willing to go on this with you, this journey with you, we have this AWS GetIT program that is, again, educator-led. So it's an afterschool or it's an a program where we match mentors and students up with cloud professionals and they do some real-time experimentation. They build an app, they work on things together, and do a presentation at the end. The other thing I would say too is that if you are in a university, I would double check and see if the AWS Academy curriculum is already in your university. And if so, explore some of those classes there. We have instructor-led, educator-ready. course curriculum that we've designed that help people get to those certifications and get closer to those jobs and as well as hopefully then lead people right into skill builder and all the things that Jenni talked about to help them as they start out in a professional environment. >> So is the GetIT, is that an instructor-led that the person has to find someone for? Or is this available for them? >> It is through teachers. It's through educators. We are in, we've reached over 19,000 students. We're available in eight countries. There are ways for educators to lead this, but we want to make sure that we are helping the kids be successful and giving them an educator environment to do that. If they want to do it on their own, then they can absolutely go through AWS Educate or even and to explore where they want to get started. >> So what about someone who's educated in their middle of their career, might want to switch from being a biologist to a cloud cybersecurity guru or a cloud native operator? >> Yeah, so in that case, AWS re/Start is one of the great program for them to explore. We run that program with collaborating organizations in 160 cities in 80 countries throughout the world. That is a multi-week cohort-based program where we do take folks through a very clear path towards certification and job skilling that will help them get into those opportunities. Over 98% of the cohorts, the graduates of those cohorts get an interview and are hopefully on their path to getting a job. So that really has global reach. The partnership with collaborating organizations helps us ensure that we find communities that are often unreached by cloud skills training and we really work to keep a diverse focus on those cohorts and bring those folks into the cloud. >> Okay. Jenni, you've got the Skill Builder action here. What's going on on your side? Because you must have to manage all the change. I mean, AI is hot right now. I'm sure you're cranking away on curriculum and content for SageMaker, large language models, computer vision, cybersecurity. >> We do. There are a lot of options. >> How is your world? Tell us about what people can take out of way from your side. >> Yeah. So a great way to think about it is if they're already out in the workforce or they're entering the workforce, but they are technical, have technical skills is what are the roles that are interesting in the technologies that are interesting. Because the way we put out our training and our certifications is aligned to paths. So if you're look interested in a specific role. If you're interested in architecting a cloud environment or in security as you mentioned, and you want to go deep in security, there are AWS certifications that give you that. If you achieve them, they're very difficult. But if you work to them and achieve them, they give you the credential that you can take to an employer and say, "Look, I can do this job." And they are in very high demand. In fact that's where if you look at some of the publications that have come out, they talk about, what are people making if they have different certifications? What are the most in-demand certifications that are out there? And those are what help people get jobs. And so you identify what is that role or that technology area I want to learn. And then you have multiple options for how you build those skills depending on how you want to learn. And again, that's really our focus, is on providing experiences based on how people learn and making it accessible to them. 'Cause not everybody wants to learn in the same way. And so there is AWS Skill Builder where people can go learn on their own that is really great particularly for people who maybe are already working and have to learn in the evenings, on the weekends. People who like to learn at their own pace, who just want to be hands-on, but are self-starters. And they can get those whole learning plans through there all the way aligned to the certification and then they can go get their certification. There's also classroom training. So a lot of people maybe want to do continuous learning through an online, but want to go really deep with an expert in the room and maybe have a more focused period of time if they can go for a couple days. And so they can do classroom training. We provide a lot of classroom training. We have partners all over the globe who provide classroom training. And so there's that and what we find to be the most powerful is when you couple the two. If you can really get deep, you have an expert, you can ask questions, but first before you go do that, you get some of that foundational that you've kind of learned on your own. And then after you go back and reinforce, you go back online, you try out things that maybe you learned in the classroom, but you didn't quite, you hadn't used it enough yet to quite know how to do it. Now you can go back and actually use it, experiment and play around. And so we really encourage that kind of, figure out what are some areas you're interested in, go learn it and then go get a job and continue to learn because then once you learn that first area, you start to build confidence in it. Suddenly other areas become interesting. 'Cause as you said, cloud is changing fast. And once you learn a space, first of all you have to keep going back to stay up on it as it changes. But you quickly find that there are other areas that are really interesting too. >> I've observed that the training side, it's just like cloud itself, it's very agile. You can get hands-on quickly, you don't need to take a class, and then get in weeks later. You're in it like it's real time. So you're immersed in gamification and all kinds of ways to funnel into the either advanced tracks and certification. So you guys do a great job and I want to give you props for that and a shout out. The question I have for you guys is can you scope the opportunity for these certifications and opportunities for women in particular? What are some of the top jobs pulling down? Scope out the opportunity because I think when people hear that they really fall out of their chair, they go, "Wow, I didn't know I could make $200,000 doing cybersecurity." Well, yeah or maybe more. I just made the number, I don't actually know, but like I know people do make that much in cyber, but there are huge financial opportunities with certifications and education. Can you scope that order of magnitude? Can you share any data? >> Yeah, so in the US they certainly are. Certifications on average aligned to six digit type jobs. And if you go out and do a search, there are research studies out there that are refreshed every year that say what are the top IT industry certifications and how much money do they make? And the reason I don't put a number out there is because it's constantly changing and in fact it keeps going up, >> It's going up, not going down. >> But I would encourage people to do that quick search. What are the top IT industry certifications. Again, based on the country you're in, it makes a difference. But if you're US, there's a lot of data out there for the US and then there is some for other countries as well around how much on average people make. >> Do you list like the higher level certifications, stack rank them in terms of order? Like say, I'm a type A personnel, I want to climb Mount Everest, I want to get the highest level certification. How do I know that? Is it like laddered up or is like how do you guys present that? >> Yeah, so we have different types of certifications. There is a foundational, which we call the cloud practitioner. That one is more about just showing that you know something about cloud. It's not aligned to a specific job role. But then we have what we call associate level certifications, which are aligned to roles. So there's the solutions architect, cloud developer, so developer operations. And so you can tell by the role and associate is kind of that next level. And then the roles often have a professional level, which is even more advanced. And basically that's saying you're kind of an Uber expert at that point. And then there are technology specialties, which are less about a specific role, although some would argue a security technology specialty might align very well to a security role, but they're more about showing the technology. And so typically, it goes foundational, advanced, professional, and then the specialties are more on the side. They're not aligned, but they're deep. They're deep within that area. >> So you can go dig and pick your deep dive and jump into where you're comfortable. Heather, talk about the commitment in terms of dollars. I know Amazon's flaunted some numbers like 30 million or something, people they want to have trained, hundreds of millions of dollars in investment. This is key, obviously, more people trained on cloud, more operators, more cloud usage, obviously. I see the business connection. What's the women relationship to the numbers? Or what the experience is? How do you guys see that? Obviously International Women's Day, get the confidence, got the curiosity. You're a builder, you're in. It's that easy. >> It doesn't always feel that way, I'm sure to everybody, but we'd like to think that it is. Amazon and AWS do invest hundreds of millions of dollars in free training every year that is accessible to everyone out there. I think that sometimes the hardest obstacles to get overcome are getting started and we try and make it as easy as possible to get started with the tools that we've talked about already today. We run into plenty of cohorts of women as part of our re/Start program that are really grateful for the opportunity to see something, see a new way of thinking, see a new opportunity for them. We don't necessarily break out our funding by women versus men. We want to make sure that we are open and diverse for everybody to come in and get the training that they need to. But we definitely want to make sure that we are accessible and available to women and all genders outside of the US and inside the US. >> Well, I know the number's a lot lower than they should be and that's obviously why we're promoting this heavily. There's a lot more interest I see in tech. So digital transformation is gender neutral. I mean, it's like the world eats software and uses software, uses the cloud. So it has to get 50/50 in my opinion. So you guys do a great job. Now that we're done kind of promoting Amazon, which I wanted to do 'cause I think it's super important. Let's talk about you guys. What got you guys involved in tech? What was the inspiration and share some stories about your experiences and advice for folks watching? >> So I've always been in traditionally male dominated roles. I actually started in aviation and then moved to tech. And what I found was I got a mentor early on, a woman who was senior to me and who was kind of who I saw as the smartest person out there. She was incredibly smart, she was incredibly kind, and she was always lifting women up. And I kind of latched onto her and followed her around and she was such an amazing mentor. She brought me from throughout tech, from company to company, job to job, was always positioning me in front of other people as the go-to person. And I realized, "Wow, I want to be like her." And so that's been my focus as well in tech is you can be deeply technical in tech or you can be not deeply technical and be in tech and you can be successful both ways, but the way you're going to be most successful is if you find other people, build them up and help put them out in front. And so I personally love to mentor women and to put them in places where they can feel comfortable being out in front of people. And that's really been my career. I have tried to model her approach as much as I can. >> That's a really interesting observation. It's the pattern we've been seeing in all these interviews for the past two years of doing the International Women's Day is that networking, mentoring and sponsorship are one thing. So it's all one thing. It's not just mentoring. It's like people think, "Oh, just mentoring. What does that mean? Advice?" No, it's sponsorship, it's lifting people up, creating a keiretsu, creating networks. Really important. Heather, what's your experience? >> Yeah, I'm sort of the example of somebody who never thought they'd be in tech, but I happened to graduate from college in the Silicon Valley in the early nineties and next thing you know, it's more than a couple years later and I'm deeply in tech and I think it when we were having the conversation about confidence and willingness to learn and try that really spoke to me as well. I think I had to get out of my own way sometimes and just be willing to not be the smartest person in the room and just be willing to ask a lot of questions. And with every opportunity to ask questions, I think somebody, I ended up with good mentors, male and female, that saw the willingness to ask questions and the willingness to be humble in my approach to learning. And that really helped. I'm also very aware that nobody's journey is the same and I need to create an environment on my team and I need to be a role model within AWS and Amazon for allowing people to show up in the way that they're going to be most successful. And sometimes that will mean giving them learning opportunities. Sometimes that will be hooking them up with a mentor. Sometimes that will be giving them the freedom to do what they need for their family or their personal life. And modeling that behavior regardless of gender has always been how I choose to show up and what I ask my leaders to do. And the more we can do that, I've seen the team been able to grow and flourish in that way and support our entire team. >> I love that story. You also have a great leader, Maureen Lonergan, who I've met many conversations with, but also it starts at the top. Andy Jassy who can come across, he's kind of technical, he's dirty, he's a builder mentality. He has first principles and you're bringing up this first principles concept and whether that's passing it forward, what you've learned, having first principles helps in an organization. Can you guys talk about what that's like at your company? 'Cause everyone's different. And sometimes whether, and I sometimes I worry about what I say, but I also have my first principles. So talk about how principles matter in how you guys interface with others and letting people be their authentic self. >> Yeah, I'll jump in Jenni and then you can. The Amazon leadership principles are super important to how we interact with each other and it really does provide a set of guidelines for how we work with each other and how we work for our customers and with our partners. But most of all it gives us a common language and a common set of expectations. And I will be honest, they're not always easy. When you come from an environment that tends to be less open to feedback and less open to direct conversations than you find at Amazon, it could take a while to get used to that, but for me at least, it was extremely empowering to have those tools and those principles as guidance for how to operate and to gain the confidence in using them. I've also been able to participate in hundreds and hundreds of interviews in the time that I've been here as part of an interview team of bar raisers. I think that really helps us understand whether or not folks are going to be successful at AWS and at Amazon and helps them understand if they're going to be able to be successful. >> Bar raising is an Amazon term and it's gender neutral, right Jenni? >> It is gender neutral. >> Bar is a bar, it raises. >> That's right. And it's funny, we say that our culture here is peculiar. And when I started, I had been in consulting for several years, so I worked with a lot of different companies in tech and so I thought I'd seen everything and I came here and I went, "Hmm." I see what they mean by peculiar. It is very different environment. >> In the fullness of time, it'll all work out. >> That's right, that's right. Well and it's funny because when you first started, it's a lot to figure out to how to operate in an environment where people do use a 16 leadership principles. I've worked at a lot of companies with three or four core values and nobody can state those. We could state all 16 leadership principles and we use them in our regular everyday dialogue. That is an awkward thing when you first come to have people saying, "Oh, I'm going to use bias for action in this situation and I'm going to go move fast. And they're actually used in everyday conversations. But after a couple years suddenly you realize, "Oh, I'm doing that." And maybe even sometimes at the dinner table I'm doing that, which can get to be a bit much. But it creates an environment where we can all be different. We can all think differently. We can all have different ways of doing things, but we have a common overall approach to what we're trying to achieve. And that's really, it gives us a good framework for that. >> Jenni, it's great insight. Heather, thank you so much for sharing your stories. We're going to do this not once a year. We're going to continue this Women in Tech program every quarter. We'll check in with you guys and find out what's new. And thank you for what you do. We appreciate that getting the word out and really is an opportunity for everyone with education and cloud and it's only going to get more opportunities at the edge in AI and so much more tech. Thank you for coming on the program. >> Thank you for having us. >> Thanks, John. >> Thank you. That's the International Women's Day segment here with leaders from AWS. I'm John Furrier. Thanks for watching. (upbeat musiC)

Published Date : Mar 3 2023

SUMMARY :

and for the International and anyone to level up in the industry. to do exactly what you just talked about, You've got the keys to the and to give you a sense, the ability to level up fast and that is the number one challenge you can level up fast at your and to be complimentary and to take you the programs that you have is that if you are in a university, or even and to explore where and we really work to keep a and content for SageMaker, There are a lot of options. How is your world? and you want to go deep in security, and I want to give you props And if you go out and do a search, Again, based on the country you're in, or is like how do you guys present that? And so you can tell by So you can go dig and available to women and all genders So it has to get 50/50 in my opinion. and you can be successful both ways, for the past two years of doing and flourish in that way in how you guys interface with others Jenni and then you can. and so I thought I'd seen In the fullness of And maybe even sometimes at the and it's only going to get more That's the International

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
JenniPERSON

0.99+

Maureen LonerganPERSON

0.99+

AWSORGANIZATION

0.99+

$200,000QUANTITY

0.99+

Jenni TroutmanPERSON

0.99+

John FurrierPERSON

0.99+

AmazonORGANIZATION

0.99+

HeatherPERSON

0.99+

Andy JassyPERSON

0.99+

JohnPERSON

0.99+

Heather RudenPERSON

0.99+

13 yearsQUANTITY

0.99+

hundredsQUANTITY

0.99+

threeQUANTITY

0.99+

first principlesQUANTITY

0.99+

11 languagesQUANTITY

0.99+

12QUANTITY

0.99+

30 millionQUANTITY

0.99+

5,000 announcementsQUANTITY

0.99+

USLOCATION

0.99+

aws.amazon.com/trainingOTHER

0.99+

160 citiesQUANTITY

0.99+

UberORGANIZATION

0.99+

International Women's DayEVENT

0.99+

Silicon ValleyLOCATION

0.99+

International Women's DayEVENT

0.99+

International Women's DayEVENT

0.99+

64%QUANTITY

0.99+

twoQUANTITY

0.99+

80 countriesQUANTITY

0.99+

over 19,000 studentsQUANTITY

0.99+

GetITTITLE

0.99+

eight countriesQUANTITY

0.99+

both sidesQUANTITY

0.99+

two dynamicsQUANTITY

0.99+

twiceQUANTITY

0.98+

hundreds of millions of dollarsQUANTITY

0.98+

Over 98%QUANTITY

0.98+

Mount EverestLOCATION

0.98+

todayDATE

0.98+

14QUANTITY

0.98+

theCUBEORGANIZATION

0.98+

'21DATE

0.98+

one thingQUANTITY

0.98+

firstQUANTITY

0.98+

LaDavia Drane, AWS | International Women's Day


 

(bright music) >> Hello, everyone. Welcome to theCUBE special presentation of International Women's Day. I'm John Furrier, host of theCUBE. This is a global special open program we're doing every year. We're going to continue it every quarter. We're going to do more and more content, getting the voices out there and celebrating the diversity. And I'm excited to have an amazing guest here, LaDavia Drane, who's the head of Global Inclusion Diversity & Equity at AWS. LaDavia, we tried to get you in on AWS re:Invent, and you were super busy. So much going on. The industry has seen the light. They're seeing everything going on, and the numbers are up, but still not there, and getting better. This is your passion, our passion, a shared passion. Tell us about your situation, your career, how you got into it. What's your story? >> Yeah. Well, John, first of all, thank you so much for having me. I'm glad that we finally got this opportunity to speak. How did I get into this work? Wow, you know, I'm doing the work that I love to do, number one. It's always been my passion to be a voice for the voiceless, to create a seat at the table for folks that may not be welcome to certain tables. And so, it's been something that's been kind of the theme of my entire professional career. I started off as a lawyer, went to Capitol Hill, was able to do some work with members of Congress, both women members of Congress, but also, minority members of Congress in the US Congress. And then, that just morphed into what I think has become a career for me in inclusion, diversity, and equity. I decided to join Amazon because I could tell that it's a company that was ready to take it to the next level in this space. And sure enough, that's been my experience here. So now, I'm in it, I'm in it with two feet, doing great work. And yeah, yeah, it's almost a full circle moment for me. >> It's really an interesting background. You have a background in public policy. You mentioned Capitol Hill. That's awesome. DC kind of moves slow, but it's a complicated machinery there. Obviously, as you know, navigating that, Amazon grew significantly. We've been at every re:Invent with theCUBE since 2013, like just one year. I watched Amazon grow, and they've become very fast and also complicated, like, I won't say like Capitol, 'cause that's very slow, but Amazon's complicated. AWS is in the realm of powering a generation of public policy. We had the JEDI contract controversy, all kinds of new emerging challenges. This pivot to tech was great timing because one, (laughs) Amazon needed it because they were growing so fast in a male dominated world, but also, their business is having real impact on the public. >> That's right, that's right. And when you say the public, I'll just call it out. I think that there's a full spectrum of diversity and we work backwards from our customers, and our customers are diverse. And so, I really do believe, I agree that I came to the right place at the right time. And yeah, we move fast and we're also moving fast in this space of making sure that both internally and externally, we're doing the things that we need to do in order to reach a diverse population. >> You know, I've noticed how Amazon's changed from the culture, male dominated culture. Let's face it, it was. And now, I've seen over the past five years, specifically go back five, is kind of in my mental model, just the growth of female leaders, it's been impressive. And there was some controversy. They were criticized publicly for this. And we said a few things as well in those, like around 2014. How is Amazon ensuring and continuing to get the female employees feel represented and empowered? What's going on there? What programs do you have? Because it's not just doing it, it's continuing it, right? And 'cause there is a lot more to do. I mean, the half (laughs) the products are digital now for everybody. It's not just one population. (laughs) Everyone uses digital products. What is Amazon doing now to keep it going? >> Well, I'll tell you, John, it's important for me to note that while we've made great progress, there's still more that can be done. I am very happy to be able to report that we have big women leaders. We have leaders running huge parts of our business, which includes storage, customer experience, industries and business development. And yes, we have all types of programs. And I should say that, instead of calling it programs, I'm going to call it strategic initiatives, right? We are very thoughtful about how we engage our women. And not only how we hire, attract women, but how we retain our women. We do that through engagement, groups like our affinity groups. So Women at Amazon is an affinity group. Women in finance, women in engineering. Just recently, I helped our Black employee network women's group launch, BEN Women. And so you have these communities of women who come together, support and mentor one another. We have what we call Amazon Circles. And so these are safe spaces where women can come together and can have conversations, where we are able to connect mentors and sponsors. And we're seeing that it's making all the difference in the world for our women. And we see that through what we call Connections. We have an inclusion sentiment tracker. So we're able to ask questions every single day and we get a response from our employees and we can see how are our women feeling, how are they feeling included at work? Are they feeling as though they can be who they are authentically at Amazon? And so, again, there's more work that needs to be done. But I will say that as I look at the data, as I'm talking to engaging women, I really do believe that we're on the right path. >> LaDavia, talk about the urgent needs of the women that you're hearing from the Circles. That's a great program. The affinity circles, the groups are great. Now, you have the groups, what are you hearing? What are the needs of the women? >> So, John, I'll just go a little bit into what's becoming a conversation around equity. So, initially I think we talked a lot about equality, right? We wanted everyone to have fair access to the same things. But now, women are looking for equity. We're talking about not just leveling the playing field, which is equality, but don't give me the same as you give everyone else. Instead, recognize that I may have different circumstances, I may have different needs. And give me what I need, right? Give me what I need, not just the same as everyone else. And so, I love seeing women evolve in this way, and being very specific about what they need more than, or what's different than what a man may have in the same situation because their circumstances are not always the same and we should treat them as such. >> Yeah, I think that's a great equity point. I interviewed a woman here, ex-Amazonian, she's now a GSI, Global System Integrator. She's a single mom. And she said remote work brought her equity because people on her team realized that she was a single mom. And it wasn't the, how do you balance life, it was her reality. And what happened was, she had more empathy with the team because of the new work environment. So, I think this is an important point to call out, that equity, because that really makes things smoother in terms of the interactions, not the assumptions, you have to be, you know, always the same as a man. So, how does that go? What's the current... How would you characterize the progress in that area right now? >> I believe that employers are just getting better at this. It's just like you said, with the hybrid being the norm now, you have an employer who is looking at people differently based on what they need. And it's not a problem, it's not an issue that a single mother says, "Well, I need to be able to leave by 5:00 PM." I think that employers now, and Amazon is right there along with other employers, are starting just to evolve that muscle of meeting the needs. People don't have to feel different. You don't have to feel as though there's some kind of of special circumstance for me. Instead, it's something that we, as employers, we're asking for. And we want to meet those needs that are different in some situations. >> I know you guys do a lot of support of women outside of AWS, and I had a story I recorded for the program. This woman, she talked about how she was a nerd from day one. She's a tomboy. They called her a tomboy, but she always loved robotics. And she ended up getting dual engineering degrees. And she talked about how she didn't run away and there was many signals to her not to go. And she powered through, at that time, and during her generation, that was tough. And she was successful. How are you guys taking the education to STEM, to women, at young ages? Because we don't want to turn people away from tech if they have the natural affinity towards it. And not everyone is going to be, as, you know, (laughs) strong, if you will. And she was a bulldog, she was great. She's just like, "I'm going for it. I love it so much." But not everyone's like that. So, this is an educational thing. How do you expose technology, STEM for instance, and making it more accessible, no stigma, all that stuff? I mean, I think we've come a long way, but still. >> What I love about women is we don't just focus on ourselves. We do a very good job of thinking about the generation that's coming after us. And so, I think you will see that very clearly with our women Amazonians. I'll talk about three different examples of ways that Amazonian women in particular, and there are men that are helping out, but I'll talk about the women in particular that are leading in this area. On my team, in the Inclusion, Diversity & Equity team, we have a program that we run in Ghana where we meet basic STEM needs for a afterschool program. So we've taken this small program, and we've turned their summer camp into this immersion, where girls and boys, we do focus on the girls, can come and be completely immersed in STEM. And when we provide the technology that they need, so that they'll be able to have access to this whole new world of STEM. Another program which is run out of our AWS In Communities team, called AWS Girls' Tech Day. All across the world where we have data centers, we're running these Girls' Tech Day. They're basically designed to educate, empower and inspire girls to pursue a career in tech. Really, really exciting. I was at the Girls' Tech Day here recently in Columbus, Ohio, and I got to tell you, it was the highlight of my year. And then I'll talk a little bit about one more, it's called AWS GetIT, and it's been around for a while. So this is a program, again, it's a global program, it's actually across 13 countries. And it allows girls to explore cloud technology, in particular, and to use it to solve real world problems. Those are just three examples. There are many more. There are actually women Amazonians that create these opportunities off the side of their desk in they're local communities. We, in Inclusion, Diversity & Equity, we fund programs so that women can do this work, this STEM work in their own local communities. But those are just three examples of some of the things that our Amazonians are doing to bring girls along, to make sure that the next generation is set up and that the next generation knows that STEM is accessible for girls. >> I'm a huge believer. I think that's amazing. That's great inspiration. We need more of that. It's awesome. And why wouldn't we spread it around? I want to get to the equity piece, that's the theme for this year's IWD. But before that, getting that segment, I want to ask you about your title, and the choice of words and the sequence. Okay, Global Inclusion, Diversity, Equity. Not diversity only. Inclusion is first. We've had this debate on theCUBE many years now, a few years back, it started with, "Inclusion is before diversity," "No, diversity before inclusion, equity." And so there's always been a debate (laughs) around the choice of words and their order. What's your opinion? What's your reaction to that? Is it by design? And does inclusion come before diversity, or am I just reading it to it? >> Inclusion doesn't necessarily come before diversity. (John laughs) It doesn't necessarily come before equity. Equity isn't last, but we do lead with inclusion in AWS. And that is very important to us, right? And thank you for giving me the opportunity to talk a little bit about it. We lead with inclusion because we want to make sure that every single one of our builders know that they have a place in this work. And so it's important that we don't only focus on hiring, right? Diversity, even though there are many, many different levels and spectrums to diversity. Inclusion, if you start there, I believe that it's what it takes to make sure that you have a workplace where everyone knows you're included here, you belong here, we want you to stay here. And so, it helps as we go after diversity. And we want all types of people to be a part of our workforce, but we want you to stay. And inclusion is the thing. It's the thing that I believe makes sure that people stay because they feel included. So we lead with inclusion. Doesn't mean that we put diversity or equity second or third, but we are proud to lead with inclusion. >> Great description. That was fabulous. Totally agree. Double click, thumbs up. Now let's get into the theme. Embracing equity, 'cause this is a term, it's in quotes. What does that mean to you? You mentioned it earlier, I love it. What does embrace equity mean? >> Yeah. You know, I do believe that when people think about equity, especially non-women think about equity, it's kind of scary. It's, "Am I going to give away what I have right now to make space for someone else?" But that's not what equity means. And so I think that it's first important that we just educate ourselves about what equity really is. It doesn't mean that someone's going to take your spot, right? It doesn't mean that the pie, let's use that analogy, gets smaller. The pie gets bigger, right? >> John: Mm-hmm. >> And everyone is able to have their piece of the pie. And so, I do believe that I love that IWD, International Women's Day is leading with embracing equity because we're going to the heart of the matter when we go to equity, we're going to the place where most people feel most challenged, and challenging people to think about equity and what it means and how they can contribute to equity and thus, embrace equity. >> Yeah, I love it. And the advice that you have for tech professionals out there on this, how do you advise other groups? 'Cause you guys are doing a lot of great work. Other organizations are catching up. What would be your advice to folks who are working on this equity challenge to reach gender equity and other equitable strategic initiatives? And everyone's working on this. Sustainability and equity are two big projects we're seeing in every single company right now. >> Yeah, yeah. I will say that I believe that AWS has proven that equity and going after equity does work. Embracing equity does work. One example I would point to is our AWS Impact Accelerator program. I mean, we provide 30 million for early stage startups led by women, Black founders, Latino founders, LGBTQ+ founders, to help them scale their business. That's equity. That's giving them what they need. >> John: Yeah. >> What they need is they need access to capital. And so, what I'd say to companies who are looking at going into the space of equity, I would say embrace it. Embrace it. Look at examples of what companies like AWS is doing around it and embrace it because I do believe that the tech industry will be better when we're comfortable with embracing equity and creating strategic initiatives so that we could expand equity and make it something that's just, it's just normal. It's the normal course of business. It's what we do. It's what we expect of ourselves and our employees. >> LaDavia, you're amazing. Thank you for spending the time. My final couple questions really more around you. Capitol Hill, DC, Amazon Global Head of Inclusion, Diversity & Equity, as you look at making change, being a change agent, being a leader, is really kind of similar, right? You've got DC, it's hard to make change there, but if you do it, it works, right? (laughs) If you don't, you're on the side of the road. So, as you're in your job now, what are you most excited about? What's on your agenda? What's your focus? >> Yeah, so I'm most excited about the potential of what we can get done, not just for builders that are currently in our seats, but for builders in the future. I tend to focus on that little girl. I don't know her, I don't know where she lives. I don't know how old she is now, but she's somewhere in the world, and I want her to grow up and for there to be no question that she has access to AWS, that she can be an employee at AWS. And so, that's where I tend to center, I center on the future. I try to build now, for what's to come, to make sure that this place is accessible for that little girl. >> You know, I've always been saying for a long time, the software is eating the world, now you got digital transformation, business transformation. And that's not a male only, or certain category, it's everybody. And so, software that's being built, and the systems that are being built, have to have first principles. Andy Jassy is very strong on this. He's been publicly saying, when trying to get pinned down about certain books in the bookstore that might offend another group. And he's like, "Look, we have first principles. First principles is a big part of leading." What's your reaction to that? How would you talk to another professional and say, "Hey," you know this, "How do I make the right call? Am I doing the wrong thing here? And I might say the wrong thing here." And is it first principles based? What's the guardrails? How do you keep that in check? How would you advise someone as they go forward and lean in to drive some of the change that we're talking about today? >> Yeah, I think as leaders, we have to trust ourselves. And Andy actually, is a great example. When I came in as head of ID&E for AWS, he was our CEO here at AWS. And I saw how he authentically spoke from his heart about these issues. And it just aligned with who he is personally, his own personal principles. And I do believe that leaders should be free to do just that. Not to be scripted, but to lead with their principles. And so, I think Andy's actually a great example. I believe that I am the professional in this space at this company that I am today because of the example that Andy set. >> Yeah, you guys do a great job, LaDavia. What's next for you? >> What's next. >> World tour, you traveling around? What's on your plate these days? Share a little bit about what you're currently working on. >> Yeah, so you know, at Amazon, we're always diving deep. We're always diving deep, we're looking for root cause, working very hard to look around corners, and trying to build now for what's to come in the future. And so I'll continue to do that. Of course, we're always planning and working towards re:Invent, so hopefully, John, I'll see you at re:Invent this December. But we have some great things happening throughout the year, and we'll continue to... I think it's really important, as opposed to looking to do new things, to just continue to flex the same muscles and to show that we can be very, very focused and intentional about doing the same things over and over each year to just become better and better at this work in this space, and to show our employees that we're committed for the long haul. So of course, there'll be new things on the horizon, but what I can say, especially to Amazonians, is we're going to continue to stay focused, and continue to get at this issue, and doing this issue of inclusion, diversity and equity, and continue to do the things that work and make sure that our culture evolves at the same time. >> LaDavia, thank you so much. I'll give you the final word. Just share some of the big projects you guys are working on so people can know about them, your strategic initiatives. Take a minute to plug some of the major projects and things that are going on that people either know about or should know about, or need to know about. Take a minute to share some of the big things you guys got going on, or most of the things. >> So, one big thing that I would like to focus on, focus my time on, is what we call our Innovation Fund. This is actually how we scale our work and we meet the community's needs by providing micro grants to our employees so our employees can go out into the world and sponsor all types of different activities, create activities in their local communities, or throughout the regions. And so, that's probably one thing that I would like to focus on just because number one, it's our employees, it's how we scale this work, and it's how we meet our community's needs in a very global way. And so, thank you John, for the opportunity to talk a bit about what we're up to here at Amazon Web Services. But it's just important to me, that I end with our employees because for me, that's what's most important. And they're doing some awesome work through our Innovation Fund. >> Inclusion makes the workplace great. Empowerment, with that kind of program, is amazing. LaDavia Drane, thank you so much. Head of Global Inclusion and Diversity & Equity at AWS. This is International Women's Day. I'm John Furrier with theCUBE. Thanks for watching and stay with us for more great interviews and people and what they're working on. Thanks for watching. (bright music)

Published Date : Mar 2 2023

SUMMARY :

And I'm excited to have that I love to do, number one. AWS is in the realm of powering I agree that I came to the And 'cause there is a lot more to do. And so you have these communities of women of the women that you're And give me what I need, right? not the assumptions, you have to be, "Well, I need to be able the education to STEM, And it allows girls to and the choice of words and the sequence. And so it's important that we don't What does that mean to you? It doesn't mean that the pie, And everyone is able to And the advice that you I mean, we provide 30 million because I do believe that the to make change there, that she has access to AWS, And I might say the wrong thing here." I believe that I am the Yeah, you guys do a great job, LaDavia. World tour, you traveling around? and to show that we can Take a minute to share some of the And so, thank you John, Inclusion makes the workplace great.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
AWSORGANIZATION

0.99+

JohnPERSON

0.99+

AndyPERSON

0.99+

AmazonORGANIZATION

0.99+

Andy JassyPERSON

0.99+

John FurrierPERSON

0.99+

Amazon Web ServicesORGANIZATION

0.99+

GhanaLOCATION

0.99+

CongressORGANIZATION

0.99+

LaDavia DranePERSON

0.99+

5:00 PMDATE

0.99+

two feetQUANTITY

0.99+

30 millionQUANTITY

0.99+

International Women's DayEVENT

0.99+

LaDaviaPERSON

0.99+

thirdQUANTITY

0.99+

Columbus, OhioLOCATION

0.99+

firstQUANTITY

0.99+

ID&EORGANIZATION

0.99+

three examplesQUANTITY

0.99+

todayDATE

0.99+

Girls' Tech DayEVENT

0.99+

Capitol HillLOCATION

0.99+

first principQUANTITY

0.98+

three examplesQUANTITY

0.98+

13 countriesQUANTITY

0.98+

first principlesQUANTITY

0.98+

First principlesQUANTITY

0.98+

oneQUANTITY

0.98+

2013DATE

0.98+

Capitol HillLOCATION

0.98+

secondQUANTITY

0.98+

Capitol Hill, DCLOCATION

0.97+

one yearQUANTITY

0.97+

single motherQUANTITY

0.97+

AmazonianOTHER

0.96+

theCUBEORGANIZATION

0.96+

GSIORGANIZATION

0.96+

bothQUANTITY

0.96+

each yearQUANTITY

0.96+

LatinoOTHER

0.96+

one thingQUANTITY

0.95+

One exampleQUANTITY

0.93+

single momQUANTITY

0.93+

two big projectsQUANTITY

0.93+

DCLOCATION

0.91+

Wayne Duso, AWS & Iyad Tarazi, Federated Wireless | MWC Barcelona 2023


 

(light music) >> Announcer: TheCUBE's live coverage is made possible by funding from Dell Technologies. Creating technologies that drive human progress. (upbeat music) >> Welcome back to the Fira in Barcelona. Dave Vellante with Dave Nicholson. Lisa Martin's been here all week. John Furrier is in our Palo Alto studio, banging out all the news. Don't forget to check out siliconangle.com, thecube.net. This is day four, our last segment, winding down. MWC23, super excited to be here. Wayne Duso, friend of theCUBE, VP of engineering from products at AWS is here with Iyad Tarazi, who's the CEO of Federated Wireless. Gents, welcome. >> Good to be here. >> Nice to see you. >> I'm so stoked, Wayne, that we connected before the show. We texted, I'm like, "You're going to be there. I'm going to be there. You got to come on theCUBE." So thank you so much for making time, and thank you for bringing a customer partner, Federated Wireless. Everybody knows AWS. Iyad, tell us about Federated Wireless. >> We're a software and services company out of Arlington, Virginia, right outside of Washington, DC, and we're really focused on this new technology called Shared Spectrum and private wireless for 5G. Think of it as enterprises consuming 5G, the way they used to consume WiFi. >> Is that unrestricted spectrum, or? >> It is managed, organized, interference free, all through cloud platforms. That's how we got to know AWS. We went and got maybe about 300 products from AWS to make it work. Quite sophisticated, highly available, and pristine spectrum worth billions of dollars, but available for people like you and I, that want to build enterprises, that want to make things work. Also carriers, cable companies everybody else that needs it. It's really a new revolution for everyone. >> And that's how you, it got introduced to AWS. Was that through public sector, or just the coincidence that you're in DC >> No, I, well, yes. The center of gravity in the world for spectrum is literally Arlington. You have the DOD spectrum people, you have spectrum people from National Science Foundation, DARPA, and then you have commercial sector, and you have the FCC just an Uber ride away. So we went and found the scientists that are doing all this work, four or five of them, Virginia Tech has an office there too, for spectrum research for the Navy. Come together, let's have a party and make a new model. >> So I asked this, I'm super excited to have you on theCUBE. I sat through the keynotes on Monday. I saw Satya Nadella was in there, Thomas Kurian there was no AWS. I'm like, where's AWS? AWS is everywhere. I mean, you guys are all over the show. I'm like, "Hey, where's the number one cloud?" So you guys have made a bunch of announcements at the show. Everybody's talking about the cloud. What's going on for you guys? >> So we are everywhere, and you know, we've been coming to this show for years. But this is really a year that we can demonstrate that what we've been doing for the IT enterprise, IT people for 17 years, we're now bringing for telcos, you know? For years, we've been, 17 years to be exact, we've been bringing the cloud value proposition, whether it's, you know, cost efficiencies or innovation or scale, reliability, security and so on, to these enterprise IT folks. Now we're doing the same thing for telcos. And so whether they want to build in region, in a local zone, metro area, on-prem with an outpost, at the edge with Snow Family, or with our IoT devices. And no matter where they want to start, if they start in the cloud and they want to move to the edge, or they start in the edge and they want to bring the cloud value proposition, like, we're demonstrating all of that is happening this week. And, and very much so, we're also demonstrating that we're bringing the same type of ecosystem that we've built for enterprise IT. We're bringing that type of ecosystem to the telco companies, with CSPs, with the ISP vendors. We've seen plenty of announcements this week. You know, so on and so forth. >> So what's different, is it, the names are different? Is it really that simple, that you're just basically taking the cloud model into telco, and saying, "Hey, why do all this undifferentiated heavy lifting when we can do it for you? Don't worry about all the plumbing." Is it really that simple? I mean, that straightforward. >> Well, simple is probably not what I'd say, but we can make it straightforward. >> Conceptually. >> Conceptually, yes. Conceptually it is the same. Because if you think about, firstly, we'll just take 5G for a moment, right? The 5G folks, if you look at the architecture for 5G, it was designed to run on a cloud architecture. It was designed to be a set of services that you could partition, and run in different places, whether it's in the region or at the edge. So in many ways it is sort of that simple. And let me give you an example. Two things, the first one is we announced integrated private wireless on AWS, which allows enterprise customers to come to a portal and look at the industry solutions. They're not worried about their network, they're worried about solving a problem, right? And they can come to that portal, they can find a solution, they can find a service provider that will help them with that solution. And what they end up with is a fully validated offering that AWS telco SAS have actually put to its paces to make sure this is a real thing. And whether they get it from a telco, and, and quite frankly in that space, it's SIs such as Federated that actually help our customers deploy those in private environments. So that's an example. And then added to that, we had a second announcement, which was AWS telco network builder, which allows telcos to plan, deploy, and operate at scale telco network capabilities on the cloud, think about it this way- >> As a managed service? >> As a managed service. So think about it this way. And the same way that enterprise IT has been deploying, you know, infrastructure as code for years. Telco network builder allows the telco folks to deploy telco networks and their capabilities as code. So it's not simple, but it is pretty straightforward. We're making it more straightforward as we go. >> Jump in Dave, by the way. He can geek out if you want. >> Yeah, no, no, no, that's good, that's good, that's good. But actually, I'm going to ask an AWS question, but I'm going to ask Iyad the AWS question. So when we, when I hear the word cloud from Wayne, cloud, AWS, typically in people's minds that denotes off-premises. Out there, AWS data center. In the telecom space, yes, of course, in the private 5G space, we're talking about a little bit of a different dynamic than in the public 5G space, in terms of the physical infrastructure. But regardless at the edge, there are things that need to be physically at the edge. Do you feel that AWS is sufficiently, have they removed the H word, hybrid, from the list of bad words you're not allowed to say? 'Cause there was a point in time- >> Yeah, of course. >> Where AWS felt that their growth- >> They'll even say multicloud today, (indistinct). >> No, no, no, no, no. But there was a period of time where, rightfully so, AWS felt that the growth trajectory would be supported solely by net new things off premises. Now though, in this space, it seems like that hybrid model is critical. Do you see AWS being open to the hybrid nature of things? >> Yeah, they're, absolutely. I mean, just to explain from- we're a services company and a solutions company. So we put together solutions at the edge, a smart campus, smart agriculture, a deployment. One of our biggest deployment is a million square feet warehouse automation project with the Marine Corps. >> That's bigger than the Fira. >> Oh yeah, it's bigger, definitely bigger than, you know, a small section of here. It's actually three massive warehouses. So yes, that is the edge. What the cloud is about is that massive amount of efficiency has happened by concentrating applications in data centers. And that is programmability, that is APIs that is solutions, that is applications that can run on it, where people know how to do it. And so all that efficiency now is being ported in a box called the edge. What AWS is doing for us is bringing all the business and technical solutions they had into the edge. Some of the data may send back and forth, but that's actually a smaller piece of the value for us. By being able to bring an AWS package at the edge, we're bringing IoT applications, we're bringing high speed cameras, we're able to integrate with the 5G public network. We're able to bring in identity and devices, we're able to bring in solutions for students, embedded laptops. All of these things that you can do much much faster and cheaper if you are able to tap in the 4,000, 5,000 partners and all the applications and all the development and all the models that AWS team did. By being able to bring that efficiency to the edge why reinvent that? And then along with that, there are partners that you, that help do integration. There are development done to make it hardened, to make the data more secure, more isolated. All of these things will contribute to an edge that truly is a carbon copy of the data center. >> So Wayne, it's AWS, Regardless of where the compute, networking and storage physically live, it's AWS. Do you think that the term cloud will sort of drift away from usage? Because if, look, it's all IT, in this case it's AWS and federated IT working together. How, what's your, it's sort of a obscure question about cloud, because cloud is so integrated. >> You Got this thing about cloud, it's just IT. >> I got thing about cloud too, because- >> You and Larry Ellison. >> Because it's no, no, no, I'm, yeah, well actually there's- >> There's a lot of IT that's not cloud, just say that okay. >> Now, a lot of IT that isn't cloud, but I would say- >> But I'll (indistinct) cloud is an IT tool, and you see AWS obviously with the Snow fill in the blank line of products and outpost type stuff. Fair to say that you're, doesn't matter where it is, it could be AWS if it's on the edge, right? >> Well, you know, everybody wants to define the cloud as what it may have been when it started. But if you look at what it was when it started and what it is today, it is different. But the ability to bring the experience, the AWS experience, the services, the operational experience and all the things that Iyad had been talking about from the region all to all the way to, you know, the IoT device, if you would, that entire continuum. And it doesn't matter where you start. Like if you start in region and you need to bring your value to other places because your customers are asking you to do so, we're enabling that experience where you need to bring it. If you started at the edge, and- but you want to build cloud value, you know, whether it's again, cost efficiency, scalability, AI, ML or analytics into those capabilities, you can start at the edge with the same APIs, with the same service, the same capabilities, and you can build that value in right from the get go. You don't build this bifurcation or many separations and try to figure out how do I glue them together? There is no gluing together. So if you think of cloud as being elastic, scalable flexible, where you can drive innovation, it's the same exact model on the continuum. And you can start at either end, it's up to you as a customer. >> And I think if, the key to me is the ecosystem. I mean, if you can do for this industry what you've done for the technology- enterprise technology business from an ecosystem standpoint, you know everybody talks about flywheel, but that gives you like the massive flywheel. I don't know what the ratio is, but it used to be for every dollar spent on a VMware license, $15 is spent in the ecosystem. I've never heard similar ratios in the AWS ecosystem, but it's, I go to reinvent and I'm like, there's some dollars being- >> That's a massive ecosystem. >> (indistinct). >> And then, and another thing I'll add is Jose Maria Alvarez, who's the chairman of Telefonica, said there's three pillars of the future-ready telco, low latency, programmable networks, and he said cloud and edge. So they recognizing cloud and edge, you know, low latency means you got to put the compute and the data, the programmable infrastructure was invented by Amazon. So what's the strategy around the telco edge? >> So, you know, at the end, so those are all great points. And in fact, the programmability of the network was a big theme in the show. It was a huge theme. And if you think about the cloud, what is the cloud? It's a set of APIs against a set of resources that you use in whatever way is appropriate for what you're trying to accomplish. The network, the telco network becomes a resource. And it could be described as a resource. We, I talked about, you know, network as in code, right? It's same infrastructure in code, it's telco infrastructure as code. And that code, that infrastructure, is programmable. So this is really, really important. And in how you build the ecosystem around that is no different than how we built the ecosystem around traditional IT abstractions. In fact, we feel that really the ecosystem is the killer app for 5G. You know, the killer app for 4G, data of sorts, right? We started using data beyond simple SMS messages. So what's the killer app for 5G? It's building this ecosystem, which includes the CSPs, the ISVs, all of the partners that we bring to the table that can drive greater value. It's not just about cost efficiency. You know, you can't save your way to success, right? At some point you need to generate greater value for your customers, which gives you better business outcomes, 'cause you can monetize them, right? The ecosystem is going to allow everybody to monetize 5G. >> 5G is like the dot connector of all that. And then developers come in on top and create new capabilities >> And how different is that than, you know, the original smartphones? >> Yeah, you're right. So what do you guys think of ChatGPT? (indistinct) to Amazon? Amazon turned the data center into an API. It's like we're visioning this world, and I want to ask that technologist, like, where it's turning resources into human language interfaces. You know, when you see that, you play with ChatGPT at all, or I know you guys got your own. >> So I won't speak directly to ChatGPT. >> No, don't speak from- >> But if you think about- >> Generative AI. >> Yeah generative AI is important. And, and we are, and we have been for years, in this space. Now you've been talking to AWS for a long time, and we often don't talk about things we don't have yet. We don't talk about things that we haven't brought to market yet. And so, you know, you'll often hear us talk about something, you know, a year from now where others may have been talking about it three years earlier, right? We will be talking about this space when we feel it's appropriate for our customers and our partners. >> You have talked about it a little bit, Adam Selipsky went on an interview with myself and John Furrier in October said you watch, you know, large language models are going to be enormous and I know you guys have some stuff that you're working on there. >> It's, I'll say it's exciting. >> Yeah, I mean- >> Well proof point is, Siri is an idiot compared to Alexa. (group laughs) So I trust one entity to come up with something smart. >> I have conversations with Alexa and Siri, and I won't judge either one. >> You don't need, you could be objective on that one. I definitely have a preference. >> Are the problems you guys solving in this space, you know, what's unique about 'em? What are they, can we, sort of, take some examples here (indistinct). >> Sure, the main theme is that the enterprise is taking control. They want to have their own networks. They want to focus on specific applications, and they want to build them with a skeleton crew. The one IT person in a warehouse want to be able to do it all. So what's unique about them is that they're now are a lot of automation on robotics, especially in warehousing environment agriculture. There simply aren't enough people in these industries, and that required precision. And so you need all that integration to make it work. People also want to build these networks as they want to control it. They want to figure out how do we actually pick this team and migrate it. Maybe just do the front of the house first. Maybe it's a security team that monitor the building, maybe later on upgrade things that use to open doors and close doors and collect maintenance data. So that ability to pick what you want to do from a new processors is really important. And then you're also seeing a lot of public-private network interconnection. That's probably the undercurrent of this show that haven't been talked about. When people say private networks, they're also talking about something called neutral host, which means I'm going to build my own network, but I want it to work, my Verizon (indistinct) need to work. There's been so much progress, it's not done yet. So much progress about this bring my own network concept, and then make sure that I'm now interoperating with the public network, but it's my domain. I can create air gaps, I can create whatever security and policy around it. That is probably the power of 5G. Now take all of these tiny networks, big networks, put them all in one ecosystem. Call it the Amazon marketplace, call it the Amazon ecosystem, that's 5G. It's going to be tremendous future. >> What does the future look like? We're going to, we just determined we're going to be orchestrating the network through human language, okay? (group laughs) But seriously, what's your vision for the future here? You know, both connectivity and cloud are on on a continuum. It's, they've been on a continuum forever. They're going to continue to be on a continuum. That being said, those continuums are coming together, right? They're coming together to bring greater value to a greater set of customers, and frankly all of us. So, you know, the future is now like, you know, this conference is the future, and if you look at what's going on, it's about the acceleration of the future, right? What we announced this week is really the acceleration of listening to customers for the last handful of years. And, we're going to continue to do that. We're going to continue to bring greater value in the form of solutions. And that's what I want to pick up on from the prior question. It's not about the network, it's not about the cloud, it's about the solutions that we can provide the customers where they are, right? And if they're on their mobile phone or they're in their factory floor, you know, they're looking to accelerate their business. They're looking to accelerate their value. They're looking to create greater safety for their employees. That's what we can do with these technologies. So in fact, when we came out with, you know, our announcement for integrated private wireless, right? It really was about industry solutions. It really isn't about, you know, the cloud or the network. It's about how you can leverage those technologies, that continuum, to deliver you value. >> You know, it's interesting you say that, 'cause again, when we were interviewing Adam Selipsky, everybody, you know, all journalists analysts want to know, how's Adam Selipsky going to be different from Andy Jassy, what's the, what's he going to do to Amazon to change? And he said, listen, the real answer is Amazon has changed. If Andy Jassy were here, we'd be doing all, you know, pretty much the same things. Your point about 17 years ago, the cloud was S3, right, and EC2. Now it's got to evolve to be solutions. 'Cause if that's all you're selling, is the bespoke services, then you know, the future is not as bright as the past has been. And so I think it's key to look for what are those outcomes or solutions that customers require and how you're going to meet 'em. And there's a lot of challenges. >> You continue to build value on the value that you've brought, and you don't lose sight of why that value is important. You carry that value proposition up the stack, but the- what you're delivering, as you said, becomes maybe a bigger or or different. >> And you are getting more solution oriented. I mean, you're not hardcore solutions yet, but we're seeing more and more of that. And that seems to be a trend. We've even seen in the database world, making things easier, connecting things. Not really an abstraction layer, which is sort of antithetical to your philosophy, but it creates a similar outcome in terms of simplicity. Yeah, you're smiling 'cause you guys always have a different angle, you know? >> Yeah, we've had this conversation. >> It's right, it's, Jassy used to say it's okay to be misunderstood. >> That's Right. For a long time. >> Yeah, right, guys, thanks so much for coming to theCUBE. I'm so glad we could make this happen. >> It's always good. Thank you. >> Thank you so much. >> All right, Dave Nicholson, for Lisa Martin, Dave Vellante, John Furrier in the Palo Alto studio. We're here at the Fira, wrapping out MWC23. Keep it right there, thanks for watching. (upbeat music)

Published Date : Mar 2 2023

SUMMARY :

that drive human progress. banging out all the news. and thank you for bringing the way they used to consume WiFi. but available for people like you and I, or just the coincidence that you're in DC and you have the FCC excited to have you on theCUBE. and you know, we've been the cloud model into telco, and saying, but we can make it straightforward. that you could partition, And the same way that enterprise Jump in Dave, by the way. that need to be physically at the edge. They'll even say multicloud AWS felt that the growth trajectory I mean, just to explain from- and all the models that AWS team did. the compute, networking You Got this thing about cloud, not cloud, just say that okay. on the edge, right? But the ability to bring the experience, but that gives you like of the future-ready telco, And in fact, the programmability 5G is like the dot So what do you guys think of ChatGPT? to ChatGPT. And so, you know, you'll often and I know you guys have some stuff it's exciting. Siri is an idiot compared to Alexa. and I won't judge either one. You don't need, you could Are the problems you that the enterprise is taking control. that continuum, to deliver you value. is the bespoke services, then you know, and you don't lose sight of And that seems to be a trend. it's okay to be misunderstood. For a long time. so much for coming to theCUBE. It's always good. in the Palo Alto studio.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Dave NicholsonPERSON

0.99+

Dave VellantePERSON

0.99+

Marine CorpsORGANIZATION

0.99+

Adam SelipskyPERSON

0.99+

Lisa MartinPERSON

0.99+

AWSORGANIZATION

0.99+

National Science FoundationORGANIZATION

0.99+

WaynePERSON

0.99+

Iyad TaraziPERSON

0.99+

Dave NicholsonPERSON

0.99+

Jose Maria AlvarezPERSON

0.99+

Thomas KurianPERSON

0.99+

AmazonORGANIZATION

0.99+

VerizonORGANIZATION

0.99+

Andy JassyPERSON

0.99+

Federated WirelessORGANIZATION

0.99+

Wayne DusoPERSON

0.99+

$15QUANTITY

0.99+

OctoberDATE

0.99+

Satya NadellaPERSON

0.99+

John FurrierPERSON

0.99+

17 yearsQUANTITY

0.99+

MondayDATE

0.99+

TelefonicaORGANIZATION

0.99+

DARPAORGANIZATION

0.99+

ArlingtonLOCATION

0.99+

Larry EllisonPERSON

0.99+

Virginia TechORGANIZATION

0.99+

DavePERSON

0.99+

SiriTITLE

0.99+

fiveQUANTITY

0.99+

Palo AltoLOCATION

0.99+

fourQUANTITY

0.99+

Washington, DCLOCATION

0.99+

siliconangle.comOTHER

0.99+

FCCORGANIZATION

0.99+

BarcelonaLOCATION

0.99+

Dell TechnologiesORGANIZATION

0.99+

JassyPERSON

0.99+

DCLOCATION

0.99+

OneQUANTITY

0.99+

telcoORGANIZATION

0.98+

thecube.netOTHER

0.98+

this weekDATE

0.98+

second announcementQUANTITY

0.98+

three years earlierDATE

0.98+

Andy Sheahen, Dell Technologies & Marc Rouanne, DISH Wireless | MWC Barcelona 2023


 

>> (Narrator) The CUBE's live coverage is made possible by funding by Dell Technologies. Creating technologies that drive human progress. (upbeat music) >> Welcome back to Fira Barcelona. It's theCUBE live at MWC23 our third day of coverage of this great, huge event continues. Lisa Martin and Dave Nicholson here. We've got Dell and Dish here, we are going to be talking about what they're doing together. Andy Sheahen joins as global director of Telecom Cloud Core and Next Gen Ops at Dell. And Marc Rouanne, one of our alumni is back, EVP and Chief Network Officer at Dish Wireless. Welcome guys. >> Great to be here. >> (Both) Thank you. >> (Lisa) Great to have you. Mark, talk to us about what's going on at Dish wireless. Give us the update. >> Yeah so we've built a network from scratch in the US, that covered the US, we use a cloud base Cloud native, so from the bottom of the tower all the way to the internet uses cloud distributed cloud, emits it, so there are a lot of things about that. But it's unique, and now it's working, so we're starting to play with it and that's pretty cool. >> What's some of the proof points, proof in the pudding? >> Well, for us, first of all it was to do basic voice and data on a smartphone and for me the success would that you won't see the difference for a smartphone. That's base line. the next step is bringing this to the enterprise for their use case. So we've covered- now we have services for smartphones. We use our brand, Boost brand, and we are distributing that across the US. But as I said, the real good stuff is when you start to making you know the machines and all the data and the applications for the enterprise. >> Andy, how is Dell a facilitator of what Marc just described and the use cases and what their able to deliver? >> We're providing a number of the servers that are being used out in their radio access network. The virtual DU servers, we're also providing some bare metal orchestration capabilities to help automate the process of deploying all these hundreds and thousands of nodes out in the field. Both of these, the servers and the bare metal orchestra product are things that we developed in concert with Dish, working together to understand the way, the best way to automate, based on the tooling their using in other parts of their network, and we've been with you guys since day one, really. >> (Marc) Absolutely, yeah. >> Making each others solutions better the whole way. >> Marc, why Dell? >> So, the way the networks work is you have a cloud, and you have a distributed edge you need someone who understands the diversity of the edge in order to bring the cloud software to the edge, and Dell is the best there, you know, you can, we can ask them to mix and match accelerators, processors memory, it's very diverse distributed edge. We are building twenty thousands sides so you imagine the size and the complexity and Dell was the right partner for that. >> (Andy) Thank you. >> So you mentioned addressing enterprise leads, which is interesting because there's nothing that would prevent you from going after consumer wireless technically, right but it sounds like you have taken a look at the market and said "we're going to go after this segment of the market." >> (Marc) Yeah. >> At least for now. Are there significant differences between what an enterprise expects from a 5G network than, verses a consumer? >> Yeah. >> (Dave) They have higher expectations, maybe, number one I guess is, if my bill is 150 dollars a month I can have certain levels of expectations whereas a large enterprise the may be making a much more significant investment, are their expectations greater? >> (Marc) Yeah. >> Do you have a higher bar to get over? >> So first, I mean first we use our network for consumers, but for us it's an enterprise. That's the consumer segment, an enterprise. So we expose the network like we would to a car manufacturer, or to a distributor of goods of food and beverage. But what you expect when you are an enterprise, you expect, manage your services. You expect to control the goodness of your services, and for this you need to observe what's happening. Are you delivering the right service? What is the feedback from the enterprise users, and that's what we call the observability. We have a data centric network, so our enterprises are saying "Yeah connecting is enough, but show us how it works, and show us how we can learn from the data, improve, improve, and become more competitive." That's the big difference. >> So what you say Marc, are some of the outcomes you achieved working with Dell? TCO, ROI, CapX, OpX, what are some of the outcomes so far, that you've been able to accomplish? >> Yeah, so obviously we don't share our numbers, but we're very competitive. Both on the CapX and the OpX. And the second thing is that we are much faster in terms of innovation, you know one of the things that Telecorp would not do, was to tap into the IT industry. So we access to the silicon and we have access to the software and at a scale that none of the Telecorp could ever do and for us it's like "wow" and it's a very powerful industry and we've been driving the consist- it's a bit technical but all the silicone, the accelerators, the processors, the GPU, the TPUs and it's like wow. It's really a transformation. >> Andy, is there anything anagallis that you've dealt with in the past to the situation where you have this true core edge, environment where you have to instrument the devices that you provide to give that level of observation or observability, whatever the new word is, that we've invented for that. >> Yeah, yeah. >> I mean has there, is there anything- >> Yeah absolutely. >> Is this unprecedented? >> No, no not at all. I mean Dell's been really working at the edge since before the edge was called the edge right, we've been selling, our hardware and infrastructure out to retail shops, branch office locations, you know just smaller form factors outside of data centers for a very long time and so that's sort of the consistency from what we've been doing for 30 years to now the difference is the volume, the different number of permutations as Marc was saying. The different type of accelerator cards, the different SKUS of different server types, the sheer volume of nodes that you have in a nationwide wireless network. So the volumes are much different, the amount of data is much different, but the process is really the same. It's about having the infrastructure in the right place at the right time and being able to understand if it's working well or if it's not and it's not just about a red light or a green light but healthy and unhealthy conditions and predicting when the red lights going to come on. And we've been doing that for a while it's just a different scale, and a different level of complexity when you're trying to piece together all these different components from different vendors. >> So we talk a lot about ecosystem, and sometimes because of the desire to talk about the outcomes and what the end users, customers, really care about sometimes we will stop at the layer where say a Dell lives, and we'll see that as the sum total of the component when really, when you talk about a server that Dish is using that in and of itself is an ecosystem >> Yep, yeah >> (Dave) or there's an ecosystem behind it you just mentioned it, the kinds of components and the choices that you make when you optimize these devices determine how much value Dish, >> (Andy) Absolutely. >> Can get out of that. How deep are you on that hardware? I'm a knuckle dragging hardware guy. >> Deep, very deep, I mean just the number of permutations that were working through with Dish and other operators as well, different accelerator cards that we talked about, different techniques for timing obviously there's different SKUs with the silicon itself, different chip sets, different chips from different providers, all those things have to come together, and we build the basic foundation and then we also started working with our cloud partners Red Hat, Wind River, all these guys, VM Ware, of course and that's the next layer up, so you've got all the different hardware components, you've got the extraction layer, with your virtualization layer and or ubernetise layer and all of that stuff together has to be managed compatibility matrices that get very deep and very big, very quickly and that's really the foundational challenge we think of open ran is thinking all these different pieces are going to fit together and not just work today but work everyday as everything gets updated much more frequently than in the legacy world. >> So you care about those things, so we don't have to. >> That's right. >> That's the beauty of it. >> Yes. >> Well thank you. (laughter) >> You're welcome. >> I want to understand, you know some of the things that we've been talking about, every company is a data company, regardless of whether it's telco, it's a retailer, if it's my bank, it's my grocery store and they have to be able to use data as quickly as possible to make decisions. One of the things they've been talking here is the monetization of data, the monetization of the network. How do you, how does Dell help, like a Dish be able to achieve the monetization of their data. >> Well as Marc was saying before the enterprise use cases are what we are all kind of betting on for 5G, right? And enterprises expect to have access to data and to telemetry to do whatever use cases they want to execute in their particular industry, so you know, if it's a health care provider, if it's a factory, an agricultural provider that's leveraging this network, they need to get the data from the network, from the devices, they need to correlate it, in order to do things like automatically turn on a watering system at a certain time, right, they need to know the weather around make sure it's not too windy and you're going to waste a lot of water. All that has data, it's going to leverage data from the network, it's going to leverage data from devices, it's going to leverage data from applications and that's data that can be monetized. When you have all that data and it's all correlated there's value, inherit to it and you can even go onto a forward looking state where you can intelligently move workloads around, based on the data. Based on the clarity of the traffic of the network, where is the right place to put it, and even based on current pricing for things like on demand insists from cloud providers. So having all that data correlated allows any enterprise to make an intelligent decision about how to move a workload around a network and get the most efficient placing of that workload. >> Marc, Andy mentions things like data and networks and moving data across the networks. You have on your business card, Chief Network Officer, what potentially either keeps you up at night in terror or gets you very excited about the future of your network? What's out there in the frontier and what are those key obstacles that have to be overcome that you work with? >> Yeah, I think we have the network, we have the baseline, but we don't yet have the consumption that is easy by the enterprise, you know an enterprise likes to say "I have 4K camera, I connect it to my software." Click, click, right? And that's where we need to be so we're talking about it APIs that are so simple that they become a click and we engineers we have a tendency to want to explain but we should not, it should become a click. You know, and the phone revolution with the apps became those clicks, we have to do the same for the enterprise, for video, for surveillance, for analytics, it has to be clicks. >> While balancing flexibility, and agility of course because you know the folks who were fans of CLIs come in light interfaces, who hate gooeys it's because they feel they have the ability to go down to another level, so obviously that's a balancing act. >> But that's our job. >> Yeah. >> Our job is to hide the complexity, but of course there is complexity. It's like in the cloud, an emprise scaler, they manage complex things but it's successful if they hide it. >> (Dave) Yeah. >> It's the same. You know we have to be emprise scaler of connectivity but hide it. >> Yeah. >> So that people connect everything, right? >> Well it's Andy's servers, we're all magicians hiding it all. >> Yeah. >> It really is. >> It's like don't worry about it, just know, >> Let us do it. >> Sit down, we will serve you the meal. Don't worry how it's cooked. >> That's right, the enterprises want the outcome. >> (Dave) Yeah. >> They don't want to deal with that bottom layer. But it is tremendously complex and we want to take that on and make it better for the industry. >> That's critical. Marc I'd love to go back to you and just I know that you've been in telco for such a long time and here we are day three of MWC the name changed this year, from Mobile World Congress, reflecting mobilism isn't the only thing, obviously it was the catalyst, but what some of the things that you've heard at the event, maybe seen at the event that give you the confidence that the right players are here to help move Dish wireless forward, for example. >> You know this is the first, I've been here for decades it's the first time, and I'm a Chief Network Officer, first time we don't talk about the network. >> (Andy) Yeah. >> Isn't that surprising? People don't tell me about speed, or latency, they talk about consumption. Apps, you know videos surveillance, or analytics or it's, so I love that, because now we're starting to talk about how we can consume and monetize but that's the first time. We use to talk about gigabytes and this and that, none of that not once. >> What does that signify to you, in terms of the evolution? >> Well you know, we've seen that the demand for the healthcare, for the smart cities, has been here for a decade, proof of concepts for a decade but the consumption has been behind and for me this is the oldest team is waking up to we are going to make it easy, so that the consumption can take off. The demand is there, we have to serve it. And the fact that people are starting to say we hide the complexity that's our problem, but don't even mention it, I love it. >> Yep. Drop the mic. >> (Andy and Marc) Yeah, yeah. >> Andy last question for you, some of the things we know Dell has a big and verging presents in telco, we've had a chance to see the booth, see the cool things you guys are featuring there, Dave did a great tour of it, talk about some of the things you've heard and maybe even from customers at this event that demonstrate to you that Dell is going in the right direction with it's telco strategy. >> Yeah, I mean personally for me this has been an unbelievable event for Dell we've had tons and tons of customer meetings of course and the feedback we're getting is that the things we're bring to market whether it's infrablocks, or purposeful servers that are designed for the telecom network are what our customers need and have always wanted. We get a lot of wows, right? >> (Lisa) That's nice. >> "Wow we didn't know Dell was doing this, we had no idea." And the other part of it is that not everybody was sure that we were going to move as fast as we have so the speed in which we've been able to bring some of these things to market and part of that was working with Dish, you know a pioneer, to make sure we were building the right things and I think a lot of the customers that we talked to really appreciate the fact that we're doing it with the industry, >> (Lisa) Yeah. >> You know, not at the industry and that comes across in the way they are responding and what their talking to us about now. >> And that came across in the interview that you just did. Thank you both for joining Dave and me. >> Thank you >> Talking about what Dell and Dish are doing together the proof is in the pudding, and you did a great job at explaining that, thanks guys, we appreciate it. >> Thank you. >> All right, our pleasure. For our guest and for Dave Nicholson, I'm Lisa Martin, you're watching theCUBE live from MWC 23 day three. We will be back with our next guest, so don't go anywhere. (upbeat music)

Published Date : Mar 1 2023

SUMMARY :

that drive human progress. we are going to be talking about Mark, talk to us about what's that covered the US, we use a cloud base and all the data and the and the bare metal orchestra product solutions better the whole way. and Dell is the best at the market and said between what an enterprise and for this you need to but all the silicone, the instrument the devices and so that's sort of the consistency from deep are you on that hardware? and that's the next So you care about those Well thank you. One of the things and get the most efficient the future of your network? You know, and the phone and agility of course It's like in the cloud, an emprise scaler, It's the same. Well it's Andy's Sit down, we will serve you the meal. That's right, the and make it better for the industry. that the right players are here to help it's the first time, and but that's the first easy, so that the consumption some of the things we know and the feedback we're getting is that so the speed in which You know, not at the industry And that came across in the the proof is in the pudding, We will be back with our next

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Dave NicholsonPERSON

0.99+

Marc RouannePERSON

0.99+

MarcPERSON

0.99+

Andy SheahenPERSON

0.99+

DavePERSON

0.99+

Lisa MartinPERSON

0.99+

AndyPERSON

0.99+

DellORGANIZATION

0.99+

TelecorpORGANIZATION

0.99+

USLOCATION

0.99+

Wind RiverORGANIZATION

0.99+

MarkPERSON

0.99+

Red HatORGANIZATION

0.99+

30 yearsQUANTITY

0.99+

DishORGANIZATION

0.99+

Dell TechnologiesORGANIZATION

0.99+

DISH WirelessORGANIZATION

0.99+

second thingQUANTITY

0.99+

first timeQUANTITY

0.99+

hundredsQUANTITY

0.99+

first timeQUANTITY

0.99+

oneQUANTITY

0.99+

BothQUANTITY

0.99+

bothQUANTITY

0.99+

firstQUANTITY

0.98+

OneQUANTITY

0.98+

Dish wirelessORGANIZATION

0.98+

LisaPERSON

0.98+

MWCEVENT

0.98+

third dayQUANTITY

0.98+

telcoORGANIZATION

0.98+

Mobile World CongressEVENT

0.98+

Next Gen OpsORGANIZATION

0.97+

TCOORGANIZATION

0.97+

Dish WirelessORGANIZATION

0.97+

CapXORGANIZATION

0.97+

this yearDATE

0.96+

BoostORGANIZATION

0.95+

150 dollars a monthQUANTITY

0.94+

OpXORGANIZATION

0.92+

Telecom Cloud CoreORGANIZATION

0.91+

thousandsQUANTITY

0.9+

ROIORGANIZATION

0.9+

tons and tons of customerQUANTITY

0.86+

Rachel Thorton, Andrea Euenheim, & Asha Thurthi, MessageBird | International Women's Day


 

(relaxing music) >> Hello, everyone. Welcome to theCUBE's coverage of International Women's Day. I'm John Furrier, your host. We got a great lineup of of guests this program and this segment, we got talking about hot company called, MessageBird. We got three amazing executives and leaders. Rachel Thornton, who's the chief marketing officer, and Andrea Euenheim, Chief People Officer, and Asha Thurthi, Chief Product Officer, We've got the CMO, Chief People Officer, and the Chief Product Officer. We've got everyone who's building that company. This is about building a startup culture that empowers women in tech. Ladies, thanks for coming on and thanks for taking the time. >> Thank you, John, for having us. >> Rachel, you know, you've seen big organizations, you're the CMO at AWS, now at MessageBird. This is a world where now there's new standards, you've got global culture, you can start off anywhere. A lot of things involved in being a C-suite leader, from not only marketing product to customers, but building a product, hiring the right team, team dynamics, power dynamics. So as female leaders, you guys are building that culture that empowers women to not only find their voices, but to use their voices to lead. What's the secret? What are you guys doing? Give us a taste of what's it like right now. Give us a feeling for what's going on in this world for you guys right now. >> I'll go first. I actually want to say that I was the, when MessageBird was building out their team, I was super excited to join because I was so impressed with the fact that the product officer was a woman, the HR officer was a woman. It was so great to see women in those leadership roles and I was just really positive and bullish on that. I felt like any company that was really building out that leadership team and thinking about being conscious of how do we have diverse perspectives and doing that is only going to make the product better. So I was super excited to join and I have really, really enjoyed being on a leadership team where I think we're 50% women. I think that is true. Like it's half women, which is really amazing. >> And that's to be the standard because I mean, software is in every product. Digital transformation is everyone and the world is not 17% women. I mean, let's just face it. So this is really a product issue as well and team issue because I mean, it just makes sense. I mean, this is really still, the industry's behind, this is a big problem. >> But I do think that, like I said, watching what's happening here, it gives me hope. Actually, it makes me inspired for to see other companies adopt it. I think, you know, both Asha and Andrea and you guys chime in, have just, you know, they're doing great jobs as leaders. I feel like we're all sort of, you know, able to speak, able to share our voice and able to inspire the folks in the company when they see that. >> Asha, talk, wait, Asha, could you weigh in on this because people matter in companies and now you have work at home, remote, you're seeing very successful configurations of teams, technical to business across the board, building products and working as a team. What's your take on this and what's your perspective? >> No, no, great question. The time is now. I really feel like the time has come for women to take what's really due for them and not just because we're women, because we are equally strong and contributing on the table. So I'm super excited for the generation that's to come because great voices really represent great customers because customers come in all different shapes and forms and people who are building the products, plus running companies should represent the customers, that end of the day, buy your products. So voice on the table is extremely important and so is making an attempt to make sure that you are hiring across all walks of life, all the way from sea level to even at IC level, ensuring that there is inclusion and diversity from a representation perspective. >> You've got the keys to the kingdom there as the product officer, Chief Product Officer, you know, you got to interface with engineering, you got to interface with the customers and like I mentioned earlier, the products are used by everyone now. This is all the, what's your experience been? What have you learned? Because again, a lot of engineers are male dominated and around the world, teams are male. What's your experience? How do you blend that together? How do you bring that harmony and so, and productivity? >> Yeah. >> Yeah. No, like I think the first thing is I think acknowledging the current state, which is women in tech, specifically because you asked about my role, continues to be a challenge. Women in tech be it in the product side of the equation or design side of the equation or engineering side of the equation, I think continues to be a challenge. I think all companies will have to lean in, especially starting education from STEM degrees, going forward to see how do you kind of make an effort to ensure that women in technology is not as high of a barrier that it used to be. Women in color in technology is not as high of a barrier as well. And how do you kind of make sure that when you are hiring, when you are advocating for your company, when you're setting up your interview loops, to actually setting up the right platform for all of these employees to thrive. You are ensuring that every walk of this, is kind of including women and making sure that all voice are voices are represented. Andrea, Rachel, I'd love your take as well because products just one piece of this whole equation where you build product. I'm kind of curious to see how you-- >> Andrea, weigh in, because this is like a hiring thing too. Like if you have a special test, like, okay, do we have the right makeup this person's going to, is there a bro test for example? I've heard companies have that where they have this kind of special questions that identify bros 'cause they don't want that in their culture. Is there a playbook? Is there a best practice in sourcing and identifying and interviewing loops? For instance, we just heard, Asha, that was great on the product side, Andrea, this is a big challenge. Putting teams together, having the right cohesive harmony, talent, looking for people, having the right interview loops, identifying that bro or the right makeup that you want to bring in or interview out. What's the strategy? How do you put these teams together because this is the real secret sauce. >> Not sure whether it's a secret sauce, but I think what we have shown that message for, is that we have made a very conscious effort and decision to start leading by example from the top to really build a leadership team that is already combining all the great traits on top of a good diversity in the team. Not only from a gender but also a skills and personality point of view. And then, from there, really making a planful intentional way down to say where do we hire which talent? What is it that we're still missing as a piece of the puzzle to really make the right decisions on leadership but also team compositions to really look at what's the customer needs, how can we build great products, how can we also compose great engineering teams to meet those expectations that our customers have and how do we build for the future? And that needs to happen in all different parts of the organization to really see that we can make a great effort across the board. >> And, you know, Rachel, last year, your talk inspired a lot of folks in conversation around sponsorship and you talk about networking and mentoring, but you highlighted sponsorship, I remember that clearly and that got great play in the conversation. So it's not just mentoring for mentoring's sake, there's also sponsorships. So there's really identifying, hiring, and then working with. And according to McKenzie's report that you guys are highlighting at me, MessageBird one in four C-suite leaders are identified as women and and with more hurdles to climb every day, especially at a startup. >> And I think that's why it has to be a combination of how do you think about your team composition? How do you think about your leadership composition? So all the things that Andrea just said, but then how do you make sure, as you're bringing folks in, you're constructing the right loop so people feel like this is a great place they want to be a part of, that it represents a diverse group of people. And then once they're in, how do you mentor people? What's the mentorship program you put in place? But the sponsorship program, I think like, sponsorship as well as mentorship also matters because you want to make sure when you identify folks in the organization, that you feel are ready for the next step, that you have identified as high potential, how do you come together as a leadership team and have a program that sponsors them, that gets them training or maybe it's executive coaching but also just makes them visible to leaders across the organization. So when it's time to put together the case for that promotion or maybe that new project or that that new group they would lead, everyone is aware of them and everyone has had some sort of interaction with them. So it really is building the right sort of sponsorship framework to help people get the kind of visibility and the kind of support they need to then unlock their potential in other areas. Whether, again, that's promotion or just taking on new groups or taking on new projects. >> Awesome. Well, you guys are fabulous. >> And in addition to this. >> Oh, go ahead, go ahead. >> No, in addition to this, I think it's also what is critical. Even though we're not the biggest company without Amazon and not Microsoft, but I think it's still important to also give exposure to the great people that we have, to make sure that everybody has visibility, everybody has a voice, and to make sure that we can then build sponsorship and mentorship across the different levels and teams and to build a great succession pipeline to really make sure that people can be considered for the next big project that is coming independent of any skill that they might have. But being a voice and having the experience that counts as most important. >> I love that inclusion, you jumped ahead. I wanted to get some questions 'cause you guys are a great group here. I guess the first question I had on the list here, is for you guys, what does it take to build an environment of inclusion? Because that's really key where female identified employees aren't just asked to questions, they take risks, they ask the right questions, they get involved, they're heard, they're recognized. What's it take to build that kind of environment? >> I can go, I think two things come to mind. One, I would say is commitment. Like commitment at the top. That you're not just going to lip sync, but you're going to walk the talk, that this is important to you as a company and who you stand or what you stand for as a human being. And you are going to put in the effort as a leadership team at the top to actually set the right example. Like MessageBird, I think Rachel said in her intro, 50% of the C level is women and you start right there. The second thing I would say is giving our people voice, you know, giving them confidence. Women because of, I don't know, thousands of years of social conditioning as such, hesitate to kind of speak up. So setting the right example, giving them the voice and encouraging them to take the challenges even if they're sponsored or not, to kind of make sure that they're willing to try new things and be not afraid of risk as much, I think is also super important. >> I think that's very, it is so, so true about the voice and about encouragement and just, I think all, you know, making sure people feel like across, you know, the entire organization, that they feel like they have a voice, their voice can be heard. And that we as a leadership team are supportive in those environments and people feel like I can take risks, I can't ask questions, I can push the envelope in terms of, "Hey, do you know, do we agree with this point? Is there room for discussion?" I think when people see that that's encouraged and it's encouraged for everyone, that's powerful. >> The McKinsey study had a lot of data in there. What's the summary on that on the people side? Obviously, the women are underrepresented, one in four, the C-suite leaders are women, but there's also people who are climbing through the ranks. I mean, what's the big takeaway from the McKinsey study beyond the obvious one in four stat? Is there any other messages in there that people should pay attention to? >> I think Asha said it really well with building the pipeline at the top. And I think that's something that we all think about every day. I think Andrea and her team do such a great job in helping us with that, but that is huge. Like, you're going to, you have to really think how can you build that pipeline out? And I think encouraging people, women, underrepresented groups, everyone to just think what do I want to do? What are the companies out there that I think would be great to work for? How can I find the right environment to support me? I think that's important and I think that helps build that pipeline. >> Okay. When you're a startup, you're a lot different than the big company, right? So the big companies are different. You guys are growing, startups are a lot about, you know, don't run a cash, hard charging, creative, teamwork. But it could be tough under fire. The startup, what's the learnings? How do you guys look at that and how do you guys manage that? Because it's super impart of the culture, of where the phase of these startups are in. >> I think the advantage that we have is we're not a big company. So I think in that way, there is a way to really build a culture of empowerment and us making decisions together and independent of where you come from, what experience you have, it's really what you can bring to the table. It's not having the fear of political cohesion. >> Yeah. >> That you have in larger corporations at times. To really build that great team that we are building right now. To say, all that matters to us is to build great products for our customers. And there's a lot of discussion about quota and one in four and I know large corporations are a lot more tied to meeting requirements that are depending on national laws and whatever, which is sometimes required to force a change in culture and how to do business. But I think us as a company, we just see a strong, strong benefit in not worrying about the gender. It's really like making an effort at the beginning to build the culture and the company that is just looking for a great team and a great culture independent of quotas. >> Actually, on the product side, Asha, on the product side. I want to get your thoughts because I know from startups, you know, being done a few myself, product market fit is huge, right? So you got, that's the goal and there's a lot of pressure. Rachel, you got to go to put the go to market together and you got to build the product. If you don't hit it, you got to br agile, you got to be fast, which could cause a lot of friction. You know, it's 'cause people got to reset, regroup. It's not for the faint of heart. How do you, pipeline folks, women are great for that. Are people aware? Do you have to, are people ready for it? Is there a training? How do you get someone ready or is there a test if they're startup ready? >> No, no, it's a great question. So like, we have a value at the company that's called move 200 miles an hour. All startups, I think, will totally resonate with this. As Andrea was saying, it's a balancing act. >> John: Yeah. >> How do you ensure that you're moving 200 miles an hour, but at the same time ensuring that you're hiring the right people who ultimately represent the customer. One example, Rachel and I were talking about this earlier, we actually represent 40% of the B2C emails that send globally. Imagine as the audience who's receiving one of these emails, think your favorites, you know, brand in Nordstrom that's actually sending you an email on the other end. Think about the customer on the other end. So it does require company commitment to ensure that the people you hire, represent ultimately the customer you're going after. So even if you're a startup, that's moving 200 miles an hour with lesser resources than any other bigger company, you have to commit to actually ensuring that your team has the right diversity. Starting all the way from sourcing to ensuring that this person is thriving and getting hopefully promoted to one day replace all of us. Let's put it that way. >> Rachel, weigh in on the startup velocity, challenges, dynamism, thoughts. >> You go, Andrea. >> It's not for everyone, you know, in that way, but it's something that if you find the right environment and the right people who thrive in such an environment like we do, it's magic. And building on that magic that we have is so powerful that we cannot afford giving voice to one group that is stronger than the others. We're counting on each other and this is a key element to who we are and how we want to build going forward. >> Rachel, your reaction, you're in a startup scene, whitewater rafting, heavy. Speed. >> It is very different. It's very different. But I love it. And what Andrea said is totally true. I think it isn't for everyone, but when you find a great organization and when you find a great group of people, it is magic. You know, it just, it's amazing the things you can do and it is a palpable feeling in the company when everyone is, you know, working on the same thing and excited about the same thing. >> You know, it's interesting about startups, not to take a tangent here, but a lot of startups just, it's not as much resource as a big company that that department doesn't exist. A lot of people doing multiple things. Wait a minute, someone doesn't write my emails for me, doesn't do the PowerPoints. Where's the marketing department? Where's the big budgets? There's a lot of juggling and a lot of versatility required, but also, there's opportunities to identify talent that could be hired for something that could move into something else. And this is part of the growth. And that's one side. On the other side, and this is a question, I promise, there's burnout, right? So you have burnout and fatigue, whether it's cultural and, or, I don't see an opportunity to really, truly a lot of aperture for new opportunities. So can you guys share your thoughts on this dynamic? Because in startups, there's a double-edged sword that could be burnout or there could be opportunity. >> I'll go and then I'll have Asha on the product side. I think that's true everywhere. I don't know, it could be that in some startups, it's exasperated, but I think that actually is true whether you're in a big company or a small company. I think, you know, depending on the industry, depending on the company size, depending on what you're going after, you know, you have to be clear about what it is you're going to deliver, how you're going to do it. And I do think it's important that everyone be able to say for themselves, "Hey, I'm excited about this product or I'm excited about this company and here's what I'm going to do," but I'm also going to make sure that I'm not putting myself in such a way that it does, you know, burnout does happen, but I don't think it can confine it to startups. I think it can happen anywhere. >> Okay. Yeah, exactly. We've seen that now. >> Yeah, I couldn't agree more. John, you've three moms on the call and definitely, we've all kind of come out of Covid into this space. I'm not going to lie, it's really hard. >> Yeah. >> It's really hard, actually balancing and juggling multiple different priorities that you have to. Especially in a startup world, when you move so many different miles an hour and you don't have enough support around you, it is really hard. The one advice I do have for women, which I kind of tell myself very repeatedly, is it's completely okay to be honest, I have taken an intentional action to be a lot more vulnerable over the years. Talk about, you know, having to pick up my child or, you know, having to spend the evening out when I need to spend time with my family. And being open about it because when I do it at the top, I can accept the space for enough people to talk about it a as well. So really, helping women set their own boundaries without feeling guilty about it. Because by nature, we end up, you know, taking care of everything around us. So how do you take care of yourself, fill your cup first so you don't burnout, to your question, I think is extremely critical. >> Yeah. Yeah, that's a really great point. Good point. I think about honesty and transparency comes in with boundaries, but also empathy. I think a lot of people, there's a lot of awareness now to this factor of teamwork and remote and creativity. Productivity is kind of a new, not new thing, but it's kind of more forefront and that's super important. How do you guys promote that? Because you still got to move fast, you got to schedule things differently. I mean, I find myself much more schedule oriented and it's hard to coordinate. How do you guys balance that because it's a management challenge, an opportunity at the same time to have that inclusivity vibe. >> I think on the empathy part on balancing, I just think you have to focus on it. It has to be a conscious choice. And I think, you know, sometimes we do it great and I only speak for myself. Sometimes I do it great, sometimes I don't. But I definitely think you have to focus on it. Think about it, think about where are you, you know, where are you scheduling things, what are you doing? How are you making sure you're thinking about your team, thinking about the, you know, the example you're providing or the example you're setting. >> Thoughts on the boundaries and when does something not a boundary, when it's not productive. 'Cause, you know, so I got my boundaries and they're like, "Wait, whoa, whoa, stay in your lane." No one likes to hear that. Stay in your lane thing. I mean, not to say that that people shouldn't stay in their lane. I just find that a little bit off-putting like, you know, stay in your lane. That sounds like a, it's against the culture. What do you guys think about how people should be thinking about their norms in these environments whether it's inclusivity and diversity? What are some of the areas to stay away from and what are the areas to promote in terms of how they'll communicate these boundaries and, or, good lanes, I should say. I mean, maybe I shouldn't say, stay in your lane's a bad thing, but, so it could be more off-putting. >> I can touch on something which is what can you do more of? I really resonated so much with Rachel's comment from last year on sponsorship. I am the product of sponsorship so it really resonates with me. Also, wouldn't even be sitting here with these two wonderful women and you. In addition to that, I think allyship, I think that's extremely important. What I would love to, you know, see everybody set the right example on is promoting a lot more of allyship where you kind of encourage, not just women, underrepresented minority, knowing really well the backgrounds that they come from and the, you know, situational context around it and seeing how can you be a great ally. And what great ally looks like for me is simple things. If you're in a meeting full of people and you see the underrepresented folks not talking or sharing their voice, how can you, as the senior person in the room, and you know, any person in the room, actually share the voice out and get their thoughts. If you can have many different people present in your company, all hands or what have you, what other forums that can be, how do you ensure that it's not just you always, but like you're putting in the spotlight on other people and, you know, when calibrations come in, when recruiting comes in, how do you ensure that your loops are diverse? So long story short, how do you ensure that you are setting the right example even if you don't belong to one of these groups, that I think do more of. >> Well, that's a great call out on the allies on mentorship programs and support networks. These are important. How should someone go forward and build a mentorship program and support networks so people can help each other out? Is there a way you guys have found best practices, Rachel and team? Is there a strategy that works well? >> Actually, Asha has some great examples here, so I'm going to toss it over to her. >> Thank you, Andy. Team, like this is what I would love for everyone to do more of. Like, we just kicked off 2023, why not make it a goal for this year? Let's seize the year to ensure that, you know, I'll start off with tech, especially where women are underrepresented. We ensure that all of your rock stars, all of your women, at least have a mentor, either within the organization or you reach out to your network externally and pair this person up with a mentor. What ultimately helps us, people having somebody they can bounce off their ideas off, get tips, get advice on how to tackle a particular situation. So really, pairing people up to ensure that they have a way to kind of bounce off ideas and see how can they elevate themselves, I think will go a long way. >> I mean, this is a big problem. Rachel, you've been a leader, you've seen this happen before. How do people climb through the ranks successfully? And you've seen people, maybe, fail a little bit. Is there a best practice or advice you could share with folks that are out there watching and listening on, you know, how to be savvy on climbing through the ranks, whether it's finding mentors being the right place at the right time. I always have the old saying, you know, "Hang around the basketball rim and you'll get a rebound." So is it timing, is it placement? What's your best practice advice for coming through the rim? >> I have a little, and then again, I think I've been very impressed with the team Asha built and just the things that she's done in her career. And I think that for women in tech, that's crucial. I would just say overall, finding your voice, using your voice, but also thinking about who's around you, who's supportive, who are the mentors or who are the people you would love to either mentor or have mentored you. And be sure to speak up and and make that known. And then I also think, don't be afraid to, like I said, use your voice, ask questions. Don't be afraid to also help people up. I think, Asha, what you said a few minutes ago is so true. Like, if there are folks in the room that aren't, you know, as vocal, that you know have amazing ideas, be sure that you're there to help them up, to help them with their voice 'cause you want to make sure that it just brings more to the conversation. >> Asha, you're running a product group, that's a big challenge. What's your thoughts on that? Can you share your opinion? >> Yeah, imposter syndrome is a real thing. I would definitely say confidence is self-taught is what I have really learned over the years and really kind of knowing that the next person to you may not be any smarter than you or may not be any less smart than you. So really, treating everybody as an equal around you and finding that inner strength and inner voice to be able to speak for yourself and to be able to share your ideas and do the best that you possibly can. Bring the A game and when you need help, asking for it. So really, just knowing that and taking initiative and we're here to help. >> Awesome. Andrea, you're here. I want to get your thoughts on building out a mentoring program and networks for women so they can have this great environment. What's it take to do that? I mean, it's hard to do. Building out meaningful networking mentorship program and sport network for women to help each other's hard. What's your experience? >> I think you need some strong leaders within an organization who are willing to sponsor and support. You need somebody to start it. It's usually senior female leaders who are kickstarting a networking environment and some good groups to have some great impact and then, also making sure that they get the visibility to see we accomplish great things together. We raise the topics that not everybody would see. And really bringing the other voice to the table to have like contradicting perspectives on what a company should do on the product side, but also on the general strategic side of things. And then building from there to say, "How can we also build great project teams that support these ideas and to really get the momentum going." Not big programs, but will really impact all communities that will push the topics. >> Awesome. Well, great, great, great panel here. Building a startup culture that empowers women in tech. You guys are amazing. Final question, rapid fire, go down the line. We'll start with Rachel, Andrea, Asha. What's it take to have that kind of success for startup? If you could share quickly what your advice is for people watching and succeeding in a startup. >> I would say focus, intention, and commitment. >> John: Andrea. >> I would say courage, backbone, authenticity. >> I couldn't agree more with Rachel. Focus and commitment. It is for me too. >> Well, you guys are amazing. Congratulations. And MessageBird, again, great ratios. You guys are succeeding. You're a standard for the industry and congratulations and thank you for taking the time on theCUBE's coverage National Women's Day. We also have women in data science at Stanford, with other programs going on today. It's a big day. Thank you very much for coming on. Really appreciate it. Thank you. >> Thank you, Jim. >> Okay, this is theCUBE's coverage of international news. I'm John Furrier, your host. Thanks for watching. (relaxing music)

Published Date : Feb 27 2023

SUMMARY :

and thanks for taking the time. in this world for you guys right now. that the product officer was a woman, and the world is not 17% women. I think, you know, in companies and now you that end of the day, buy your products. and around the world, teams are male. that when you are hiring, that you want to bring the organization to really see that you guys are highlighting at me, that you have identified Well, you guys are fabulous. and to make sure that we I had on the list here, that this is important to you as a company I think all, you know, that on the people side? how can you build that pipeline out? and how do you guys manage that? and independent of where you come from, and how to do business. and you got to build the product. So like, we have a value at the company that the people you hire, Rachel, weigh in on the and the right people who Rachel, your reaction, amazing the things you can do So can you guys share your in such a way that it does, you know, We've seen that now. I'm not going to lie, having to pick up my child or, you know, an opportunity at the same time to have I just think you have to focus on it. I mean, not to say that and you know, any person in the room, a way you guys have found best so I'm going to toss it over to her. ensure that, you know, I always have the old saying, you know, the people you would love to Can you share your opinion? and do the best that you possibly can. I mean, it's hard to do. I think you need some strong leaders What's it take to have that I would say focus, I would say courage, I couldn't agree more with Well, you guys are I'm John Furrier, your host.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
RachelPERSON

0.99+

AndreaPERSON

0.99+

AshaPERSON

0.99+

Andrea EuenheimPERSON

0.99+

Rachel ThorntonPERSON

0.99+

Asha ThurthiPERSON

0.99+

JohnPERSON

0.99+

MicrosoftORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

Rachel ThortonPERSON

0.99+

John FurrierPERSON

0.99+

JimPERSON

0.99+

AndyPERSON

0.99+

40%QUANTITY

0.99+

50%QUANTITY

0.99+

17%QUANTITY

0.99+

International Women's DayEVENT

0.99+

AWSORGANIZATION

0.99+

last yearDATE

0.99+

2023DATE

0.99+

MessageBirdORGANIZATION

0.99+

McKinseyORGANIZATION

0.99+

National Women's DayEVENT

0.99+

oneQUANTITY

0.99+

first questionQUANTITY

0.99+

200 miles an hourQUANTITY

0.99+

bothQUANTITY

0.99+

200 miles an hourQUANTITY

0.99+

three momsQUANTITY

0.98+

one pieceQUANTITY

0.98+

NordstromORGANIZATION

0.98+

theCUBEORGANIZATION

0.98+

OneQUANTITY

0.98+

second thingQUANTITY

0.98+

fourQUANTITY

0.98+

agileTITLE

0.97+

One exampleQUANTITY

0.97+

two thingsQUANTITY

0.97+

todayDATE

0.97+

one sideQUANTITY

0.96+

firstQUANTITY

0.96+

thousands of yearsQUANTITY

0.94+

this yearDATE

0.93+

two wonderful womenQUANTITY

0.92+

first thingQUANTITY

0.92+

one groupQUANTITY

0.91+

CovidPERSON

0.87+

one dayQUANTITY

0.86+

Welcome to Supercloud2


 

(bright upbeat melody) >> Hello everyone, welcome back to Supercloud2. I'm John Furrier, my co-host Dave Vellante, here at theCUBE in Palo Alto, California, for our live stage performance all day for Supercloud2. Unpacking this next generation movement in cloud computing. Dave, Supercloud1 was in August. We had great response and acceleration of that momentum. We had some haters too. We had some folks out there throwing shade on this. But at the same time, a lot of leaders came out of the woodwork, a lot of practitioners. And this Supercloud2 event I think will expose and illustrate some of the examples of what's happening in the industry and more importantly, kind of where it's going. >> Well it's great to be back in our studios in Palo Alto, John. Seems like just yesterday was August 9th, where the community was really refining the definition of Super Cloud. We were identifying the essential characteristics, with some of the leading technologists in Silicon Valley. We were digging into the deployment models. Whereas this Supercloud, Supercloud2 is really taking a practitioner view. We're going to hear from Walmart today. They've built a Supercloud. They called it the Walmart Cloud native platform. We're going to hear from other data practitioners, like Saks. We're going to hear from Western Union. They've got 200 locations around the world, how they're dealing with data sovereignty. And of course we've got some local technologists and practitioners coming in, analysts, consultants, theCUBE community. I'm really excited to be here. >> And we've got some great keynotes from executives at VMware. We're going to expose some of the things that they're working on around cross cloud services, which leads into multicloud. I think the practitioner angle highlights my favorite part of this program, 'cause you're starting to see the builders, a term coined by Andy Jassy, early days of AWS. That builder movement has been continuing to go. And you're seeing the enterprise, global enterprises adopt this builder mentality with Cloud Native. This is going to power the next generation global economy. And I think the role of the cloud computing vendors like AWS, Azure, Google, Alibaba are going to be the source engine of innovation. And what gets built on top of and with the clouds will be a big significant market value for all businesses and their business models. So I think the market wants the supercloud, the business models are pointing to Supercloud. The technology needs supercloud. And society, from an economic standpoint and from a use case standpoint, needs supercloud. You're seeing it today. Everyone's talking about chat GPT. This is an example of what will come out of this next generation and it's just getting started. So to me, you're either on the supercloud side of the camp or you're on the old school, hugging onto the old school mentality of wait a minute, that's cloud computing. So I think if you're not on the super cloud wave, you're going to be driftwood. And that's a term coined by Pat Gelsinger. And this is really the reality. Are you on the super cloud side? Or are you on the old huggin' the old model? And that's going to be a determinant. And you're going to see who's going to be the players on that, Dave. This is going to be a real big year. >> Everybody's heard the phrase follow the money. Well, my philosophy is follow the data. And that's a big part of what Supercloud2 is, because the data is where the money is across the clouds. And people want more simplicity, or greater simplicity across the clouds. So it's really, there's two forces here. You've got the ecosystem that's saying, hey the hyperscalers, they've done a great job but there's problems that they're not solving. So we're going to lean in and solve those problems. At the same time, you have the practitioners saying we have multicloud, we have to deal with this, help us. It's got to be simpler. Because we want to share data across clouds. We want to build data products, we want to monetize and drive revenue and cut costs. >> This is the key thing. The builder movement is hitting a wall, and that wall will be broken down because the business models of the companies themselves are demanding that the value from the data with security has to be embedded. So I think you're going to see a big year this next year or so where the builders will accelerate through this next generation, supercloud wave, will be a builder's wave for business. And I think that's going to be the nuance here. And all the people that are on the side of Supercloud are all pro-business, pro-technology. The ones that aren't are like, wait a minute I used to do things differently. They're stuck. And so I think this is going to be a question of are we stuck? Are builders accelerating? Will the business models develop around it? That's digital transformation. At the end of the day, the market's speaking, Dave. The market wants more. Chat GPT, you're seeing AI starting to flourish, powered by data. It's unstoppable, supercloud's unstoppable. >> One of our headliners today is Zhamak Dehghani, the creator of Data Mesh. We've got some news around her. She's going to be live in studio. Super excited about that. Kit Colbert in Supercloud, the first Supercloud in last August, laid out an initial architecture for Supercloud. He's going to advance that today, tell us what's changed, and really dig into and really talk about the meat on the bone, if you will. And we've got some other technologists that are coming in saying, Hey, is it a platform? Is it an architecture? What's the right model here? So we're going to debate that a little bit today. >> And before we close, I'll just say look at the guests, look at the talk tracks. You're seeing a diversity of startups doing cloud networking, you're seeing big practitioners building their own thing, being builders for business value and business model advantages. And you got companies like VMware, who have been on the wave of virtualization. So the, everyone who's involved in super cloud, they're seeing it, they're on the front lines. They're seeing the trend. They are riding that wave. And they have, they're bringing data to the table. So to me, you look at who's involved and you judge it that way. To me, that's the way I look at this. And because we're making it open, Supercloud is going to continue to be debated. But more importantly, the results are going to come in. The market supports it, the business needs it, tech's there, and will it happen? So I think the builders movement, Dave, is going to be big to watch. And then ultimately how that business transformation kicks in, and I think those are the two variables that I would watch on Supercloud. >> Our mission has always been around free content, giving back to the community. So I really want to thank our sponsors today. We've had a great partnership with VMware, who's not only contributed some financial support, but also great content. Alkira, ChaosSearch, prosimo, all phenomenal, allowing us to achieve our mission of serving our audiences and really trying to give more than we take from. >> Free content, that's our mission. Dave, great to kick it off. Kickin' off Supercloud2 all day, we've got some great programs here. We've got VMware coming up next. We have Victoria Viering, who's been on before. He's got a great vision for cross cloud service. We're getting also a keynote with Kit Colbert, who's going to lay out the fragmentation and the benefits that that solves, from solvent fragmentation and silos, breaking down the silos and bringing multicloud future to the table via Super Cloud. So stay with us. We'll be right back after this short break. (bright upbeat music) (music fades)

Published Date : Feb 17 2023

SUMMARY :

and illustrate some of the examples We're going to hear from Walmart today. And that's going to be a determinant. At the same time, you And so I think this is going to the meat on the bone, if you will. Dave, is going to be big to watch. giving back to the community. and the benefits that that solves,

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Dave VellantePERSON

0.99+

DavePERSON

0.99+

Pat GelsingerPERSON

0.99+

AlibabaORGANIZATION

0.99+

Kit ColbertPERSON

0.99+

Zhamak DehghaniPERSON

0.99+

WalmartORGANIZATION

0.99+

AWSORGANIZATION

0.99+

Andy JassyPERSON

0.99+

GoogleORGANIZATION

0.99+

Silicon ValleyLOCATION

0.99+

AugustDATE

0.99+

Victoria VieringPERSON

0.99+

August 9thDATE

0.99+

John FurrierPERSON

0.99+

200 locationsQUANTITY

0.99+

VMwareORGANIZATION

0.99+

SupercloudORGANIZATION

0.99+

Palo Alto, CaliforniaLOCATION

0.99+

Supercloud2EVENT

0.99+

two forcesQUANTITY

0.99+

last AugustDATE

0.99+

yesterdayDATE

0.99+

firstQUANTITY

0.99+

two variablesQUANTITY

0.99+

todayDATE

0.98+

OneQUANTITY

0.98+

supercloudORGANIZATION

0.98+

AzureORGANIZATION

0.97+

ChaosSearchORGANIZATION

0.95+

super cloud waveEVENT

0.94+

Supercloud1EVENT

0.94+

Super CloudTITLE

0.93+

AlkiraPERSON

0.83+

Palo Alto, JohnLOCATION

0.83+

this next yearDATE

0.81+

Data MeshORGANIZATION

0.8+

supercloud waveEVENT

0.79+

wave ofEVENT

0.79+

Western UnionLOCATION

0.78+

SaksORGANIZATION

0.76+

GPTORGANIZATION

0.73+

Supercloud2ORGANIZATION

0.72+

Cloud NativeTITLE

0.69+

SupercloudTITLE

0.67+

Supercloud2COMMERCIAL_ITEM

0.66+

multicloudORGANIZATION

0.57+

SupercloudCOMMERCIAL_ITEM

0.53+

Supercloud2TITLE

0.53+

theCUBEORGANIZATION

0.51+

super cloudTITLE

0.51+

CloudTITLE

0.41+

Jon Turow, Madrona Venture Group | CloudNativeSecurityCon 23


 

(upbeat music) >> Hello and welcome back to theCUBE. We're here in Palo Alto, California. I'm your host, John Furrier with a special guest here in the studio. As part of our Cloud Native SecurityCon Coverage we had an opportunity to bring in Jon Turow who is the partner at Madrona Venture Partners formerly with AWS and to talk about machine learning, foundational models, and how the future of AI is going to be impacted by some of the innovation around what's going on in the industry. ChatGPT has taken the world by storm. A million downloads, fastest to the million downloads there. Before some were saying it's just a gimmick. Others saying it's a game changer. Jon's here to break it down, and great to have you on. Thanks for coming in. >> Thanks John. Glad to be here. >> Thanks for coming on. So first of all, I'm glad you're here. First of all, because two things. One, you were formerly with AWS, got a lot of experience running projects at AWS. Now a partner at Madrona, a great firm doing great deals, and they had this future at modern application kind of thesis. Now you are putting out some content recently around foundational models. You're deep into computer vision. You were the IoT general manager at AWS among other things, Greengrass. So you know a lot about data. You know a lot about some of this automation, some of the edge stuff. You've been in the middle of all these kind of areas that now seem to be the next wave coming. So I wanted to ask you what your thoughts are of how the machine learning and this new automation wave is coming in, this AI tools are coming out. Is it a platform? Is it going to be smarter? What feeds AI? What's your take on this whole foundational big movement into AI? What's your general reaction to all this? >> So, thanks, Jon, again for having me here. Really excited to talk about these things. AI has been coming for a long time. It's been kind of the next big thing. Always just over the horizon for quite some time. And we've seen really compelling applications in generations before and until now. Amazon and AWS have introduced a lot of them. My firm, Madrona Venture Group has invested in some of those early players as well. But what we're seeing now is something categorically different. That's really exciting and feels like a durable change. And I can try and explain what that is. We have these really large models that are useful in a general way. They can be applied to a lot of different tasks beyond the specific task that the designers envisioned. That makes them more flexible, that makes them more useful for building applications than what we've seen before. And so that, we can talk about the depths of it, but in a nutshell, that's why I think people are really excited. >> And I think one of the things that you wrote about that jumped out at me is that this seems to be this moment where there's been a multiple decades of nerds and computer scientists and programmers and data thinkers around waiting for AI to blossom. And it's like they're scratching that itch. Every year is going to be, and it's like the bottleneck's always been compute power. And we've seen other areas, genome sequencing, all kinds of high computation things where required high forms computing. But now there's no real bottleneck to compute. You got cloud. And so you're starting to see the emergence of a massive acceleration of where AI's been and where it needs to be going. Now, it's almost like it's got a reboot. It's almost a renaissance in the AI community with a whole nother macro environmental things happening. Cloud, younger generation, applications proliferate from mobile to cloud native. It's the perfect storm for this kind of moment to switch over. Am I overreading that? Is that right? >> You're right. And it's been cooking for a cycle or two. And let me try and explain why that is. We have cloud and AWS launch in whatever it was, 2006, and offered more compute to more people than really was possible before. Initially that was about taking existing applications and running them more easily in a bigger scale. But in that period of time what's also become possible is new kinds of computation that really weren't practical or even possible without that vast amount of compute. And so one result that came of that is something called the transformer AI model architecture. And Google came out with that, published a paper in 2017. And what that says is, with a transformer model you can actually train an arbitrarily large amount of data into a model, and see what happens. That's what Google demonstrated in 2017. The what happens is the really exciting part because when you do that, what you start to see, when models exceed a certain size that we had never really seen before all of a sudden they get what we call emerging capabilities of complex reasoning and reasoning outside a domain and reasoning with data. The kinds of things that people describe as spooky when they play with something like ChatGPT. That's the underlying term. We don't as an industry quite know why it happens or how it happens, but we can measure that it does. So cloud enables new kinds of math and science. New kinds of math and science allow new kinds of experimentation. And that experimentation has led to this new generation of models. >> So one of the debates we had on theCUBE at our Supercloud event last month was, what's the barriers to entry for say OpenAI, for instance? Obviously, I weighed in aggressively and said, "The barriers for getting into cloud are high because all the CapEx." And Howie Xu formerly VMware, now at ZScaler, he's an AI machine learning guy. He was like, "Well, you can spend $100 million and replicate it." I saw a quote that set up for 180,000 I can get this other package. What's the barriers to entry? Is ChatGPT or OpenAI, does it have sustainability? Is it easy to get into? What is the market like for AI? I mean, because a lot of entrepreneurs are jumping in. I mean, I just read a story today. San Francisco's got more inbound migration because of the AI action happening, Seattle's booming, Boston with MIT's been working on neural networks for generations. That's what we've found the answer. Get off the neural network, Boston jump on the AI bus. So there's total excitement for this. People are enthusiastic around this area. >> You can think of an iPhone versus Android tension that's happening today. In the iPhone world, there are proprietary models from OpenAI who you might consider as the leader. There's Cohere, there's AI21, there's Anthropic, Google's going to have their own, and a few others. These are proprietary models that developers can build on top of, get started really quickly. They're measured to have the highest accuracy and the highest performance today. That's the proprietary side. On the other side, there is an open source part of the world. These are a proliferation of model architectures that developers and practitioners can take off the shelf and train themselves. Typically found in Hugging face. What people seem to think is that the accuracy and performance of the open source models is something like 18 to 20 months behind the accuracy and performance of the proprietary models. But on the other hand, there's infinite flexibility for teams that are capable enough. So you're going to see teams choose sides based on whether they want speed or flexibility. >> That's interesting. And that brings up a point I was talking to a startup and the debate was, do you abstract away from the hardware and be software-defined or software-led on the AI side and let the hardware side just extremely accelerate on its own, 'cause it's flywheel? So again, back to proprietary, that's with hardware kind of bundled in, bolted on. Is it accelerator or is it bolted on or is it part of it? So to me, I think that the big struggle in understanding this is that which one will end up being right. I mean, is it a beta max versus VHS kind of thing going on? Or iPhone, Android, I mean iPhone makes a lot of sense, but if you're Apple, but is there an Apple moment in the machine learning? >> In proprietary models, here does seem to be a jump ball. That there's going to be a virtuous flywheel that emerges that, for example, all these excitement about ChatGPT. What's really exciting about it is it's really easy to use. The technology isn't so different from what we've seen before even from OpenAI. You mentioned a million users in a short period of time, all providing training data for OpenAI that makes their underlying models, their next generation even better. So it's not unreasonable to guess that there's going to be power laws that emerge on the proprietary side. What I think history has shown is that iPhone, Android, Windows, Linux, there seems to be gravity towards this yin and yang. And my guess, and what other people seem to think is going to be the case is that we're going to continue to see these two poles of AI. >> So let's get into the relationship with data because I've been emerging myself with ChatGPT, fascinated by the ease of use, yes, but also the fidelity of how you query it. And I felt like when I was doing writing SQL back in the eighties and nineties where SQL was emerging. You had to be really a guru at the SQL to get the answers you wanted. It seems like the querying into ChatGPT is a good thing if you know how to talk to it. Labeling whether your input is and it does a great job if you feed it right. If you ask a generic questions like Google. It's like a Google search. It gives you great format, sounds credible, but the facts are kind of wrong. >> That's right. >> That's where general consensus is coming on. So what does that mean? That means people are on one hand saying, "Ah, it's bullshit 'cause it's wrong." But I look at, I'm like, "Wow, that's that's compelling." 'Cause if you feed it the right data, so now we're in the data modeling here, so the role of data's going to be critical. Is there a data operating system emerging? Because if this thing continues to go the way it's going you can almost imagine as you would look at companies to invest in. Who's going to be right on this? What's going to scale? What's sustainable? What could build a durable company? It might not look what like what people think it is. I mean, I remember when Google started everyone thought it was the worst search engine because it wasn't a portal. But it was the best organic search on the planet became successful. So I'm trying to figure out like, okay, how do you read this? How do you read the tea leaves? >> Yeah. There are a few different ways that companies can differentiate themselves. Teams with galactic capabilities to take an open source model and then change the architecture and retrain and go down to the silicon. They can do things that might not have been possible for other teams to do. There's a company that that we're proud to be investors in called RunwayML that provides video accelerated, sorry, AI accelerated video editing capabilities. They were used in everything, everywhere all at once and some others. In order to build RunwayML, they needed a vision of what the future was going to look like and they needed to make deep contributions to the science that was going to enable all that. But not every team has those capabilities, maybe nor should they. So as far as how other teams are going to differentiate there's a couple of things that they can do. One is called prompt engineering where they shape on behalf of their own users exactly how the prompt to get fed to the underlying model. It's not clear whether that's going to be a durable problem or whether like Google, we consumers are going to start to get more intuitive about this. That's one. The second is what's called information retrieval. How can I get information about the world outside, information from a database or a data store or whatever service into these models so they can reason about them. And the third is, this is going to sound funny, but attribution. Just like you would do in a news report or an academic paper. If you can state where your facts are coming from, the downstream consumer or the human being who has to use that information actually is going to be able to make better sense of it and rely better on it. So that's prompt engineering, that's retrieval, and that's attribution. >> So that brings me to my next point I want to dig in on is the foundational model stack that you published. And I'll start by saying that with ChatGPT, if you take out the naysayers who are like throwing cold water on it about being a gimmick or whatever, and then you got the other side, I would call the alpha nerds who are like they can see, "Wow, this is amazing." This is truly NextGen. This isn't yesterday's chatbot nonsense. They're like, they're all over it. It's that everybody's using it right now in every vertical. I heard someone using it for security logs. I heard a data center, hardware vendor using it for pushing out appsec review updates. I mean, I've heard corner cases. We're using it for theCUBE to put our metadata in. So there's a horizontal use case of value. So to me that tells me it's a market there. So when you have horizontal scalability in the use case you're going to have a stack. So you publish this stack and it has an application at the top, applications like Jasper out there. You're seeing ChatGPT. But you go after the bottom, you got silicon, cloud, foundational model operations, the foundational models themselves, tooling, sources, actions. Where'd you get this from? How'd you put this together? Did you just work backwards from the startups or was there a thesis behind this? Could you share your thoughts behind this foundational model stack? >> Sure. Well, I'm a recovering product manager and my job that I think about as a product manager is who is my customer and what problem he wants to solve. And so to put myself in the mindset of an application developer and a founder who is actually my customer as a partner at Madrona, I think about what technology and resources does she need to be really powerful, to be able to take a brilliant idea, and actually bring that to life. And if you spend time with that community, which I do and I've met with hundreds of founders now who are trying to do exactly this, you can see that the stack is emerging. In fact, we first drew it in, not in January 2023, but October 2022. And if you look at the difference between the October '22 and January '23 stacks you're going to see that holes in the stack that we identified in October around tooling and around foundation model ops and the rest are organically starting to get filled because of how much demand from the developers at the top of the stack. >> If you look at the young generation coming out and even some of the analysts, I was just reading an analyst report on who's following the whole data stacks area, Databricks, Snowflake, there's variety of analytics, realtime AI, data's hot. There's a lot of engineers coming out that were either data scientists or I would call data platform engineering folks are becoming very key resources in this area. What's the skillset emerging and what's the mindset of that entrepreneur that sees the opportunity? How does these startups come together? Is there a pattern in the formation? Is there a pattern in the competency or proficiency around the talent behind these ventures? >> Yes. I would say there's two groups. The first is a very distinct pattern, John. For the past 10 years or a little more we've seen a pattern of democratization of ML where more and more people had access to this powerful science and technology. And since about 2017, with the rise of the transformer architecture in these foundation models, that pattern has reversed. All of a sudden what has become broader access is now shrinking to a pretty small group of scientists who can actually train and manipulate the architectures of these models themselves. So that's one. And what that means is the teams who can do that have huge ability to make the future happen in ways that other people don't have access to yet. That's one. The second is there is a broader population of people who by definition has even more collective imagination 'cause there's even more people who sees what should be possible and can use things like the proprietary models, like the OpenAI models that are available off the shelf and try to create something that maybe nobody has seen before. And when they do that, Jasper AI is a great example of that. Jasper AI is a company that creates marketing copy automatically with generative models such as GPT-3. They do that and it's really useful and it's almost fun for a marketer to use that. But there are going to be questions of how they can defend that against someone else who has access to the same technology. It's a different population of founders who has to find other sources of differentiation without being able to go all the way down to the the silicon and the science. >> Yeah, and it's going to be also opportunity recognition is one thing. Building a viable venture product market fit. You got competition. And so when things get crowded you got to have some differentiation. I think that's going to be the key. And that's where I was trying to figure out and I think data with scale I think are big ones. Where's the vulnerability in the stack in terms of gaps? Where's the white space? I shouldn't say vulnerability. I should say where's the opportunity, where's the white space in the stack that you see opportunities for entrepreneurs to attack? >> I would say there's two. At the application level, there is almost infinite opportunity, John, because almost every kind of application is about to be reimagined or disrupted with a new generation that takes advantage of this really powerful new technology. And so if there is a kind of application in almost any vertical, it's hard to rule something out. Almost any vertical that a founder wishes she had created the original app in, well, now it's her time. So that's one. The second is, if you look at the tooling layer that we discussed, tooling is a really powerful way that you can provide more flexibility to app developers to get more differentiation for themselves. And the tooling layer is still forming. This is the interface between the models themselves and the applications. Tools that help bring in data, as you mentioned, connect to external actions, bring context across multiple calls, chain together multiple models. These kinds of things, there's huge opportunity there. >> Well, Jon, I really appreciate you coming in. I had a couple more questions, but I will take a minute to read some of your bios for the audience and we'll get into, I won't embarrass you, but I want to set the context. You said you were recovering product manager, 10 plus years at AWS. Obviously, recovering from AWS, which is a whole nother dimension of recovering. In all seriousness, I talked to Andy Jassy around that time and Dr. Matt Wood and it was about that time when AI was just getting on the radar when they started. So you guys started seeing the wave coming in early on. So I remember at that time as Amazon was starting to grow significantly and even just stock price and overall growth. From a tech perspective, it was pretty clear what was coming, so you were there when this tsunami hit. >> Jon: That's right. >> And you had a front row seat building tech, you were led the product teams for Computer Vision AI, Textract, AI intelligence for document processing, recognition for image and video analysis. You wrote the business product plan for AWS IoT and Greengrass, which we've covered a lot in theCUBE, which extends out to the whole edge thing. So you know a lot about AI/ML, edge computing, IOT, messaging, which I call the law of small numbers that scale become big. This is a big new thing. So as a former AWS leader who's been there and at Madrona, what's your investment thesis as you start to peruse the landscape and talk to entrepreneurs as you got the stack? What's the big picture? What are you looking for? What's the thesis? How do you see this next five years emerging? >> Five years is a really long time given some of this science is only six months out. I'll start with some, no pun intended, some foundational things. And we can talk about some implications of the technology. The basics are the same as they've always been. We want, what I like to call customers with their hair on fire. So they have problems, so urgent they'll buy half a product. The joke is if your hair is on fire you might want a bucket of cold water, but you'll take a tennis racket and you'll beat yourself over the head to put the fire out. You want those customers 'cause they'll meet you more than halfway. And when you find them, you can obsess about them and you can get better every day. So we want customers with their hair on fire. We want founders who have empathy for those customers, understand what is going to be required to serve them really well, and have what I like to call founder-market fit to be able to build the products that those customers are going to need. >> And because that's a good strategy from an emerging, not yet fully baked out requirements definition. >> Jon: That's right. >> Enough where directionally they're leaning in, more than in, they're part of the product development process. >> That's right. And when you're doing early stage development, which is where I personally spend a lot of my time at the seed and A and a little bit beyond that stage often that's going to be what you have to go on because the future is going to be so complex that you can't see the curves beyond it. But if you have customers with their hair on fire and talented founders who have the capability to serve those customers, that's got me interested. >> So if I'm an entrepreneur, I walk in and say, "I have customers that have their hair on fire." What kind of checks do you write? What's the kind of the average you're seeing for seed and series? Probably seed, seed rounds and series As. >> It can depend. I have seen seed rounds of double digit million dollars. I have seen seed rounds much smaller than that. It really depends on what is going to be the right thing for these founders to prove out the hypothesis that they're testing that says, "Look, we have this customer with her hair on fire. We think we can build at least a tennis racket that she can use to start beating herself over the head and put the fire out. And then we're going to have something really interesting that we can scale up from there and we can make the future happen. >> So it sounds like your advice to founders is go out and find some customers, show them a product, don't obsess over full completion, get some sort of vibe on fit and go from there. >> Yeah, and I think by the time founders come to me they may not have a product, they may not have a deck, but if they have a customer with her hair on fire, then I'm really interested. >> Well, I always love the professional services angle on these markets. You go in and you get some business and you understand it. Walk away if you don't like it, but you see the hair on fire, then you go in product mode. >> That's right. >> All Right, Jon, thank you for coming on theCUBE. Really appreciate you stopping by the studio and good luck on your investments. Great to see you. >> You too. >> Thanks for coming on. >> Thank you, Jon. >> CUBE coverage here at Palo Alto. I'm John Furrier, your host. More coverage with CUBE Conversations after this break. (upbeat music)

Published Date : Feb 2 2023

SUMMARY :

and great to have you on. that now seem to be the next wave coming. It's been kind of the next big thing. is that this seems to be this moment and offered more compute to more people What's the barriers to entry? is that the accuracy and the debate was, do you that there's going to be power laws but also the fidelity of how you query it. going to be critical. exactly how the prompt to get So that brings me to my next point and actually bring that to life. and even some of the analysts, But there are going to be questions Yeah, and it's going to be and the applications. the radar when they started. and talk to entrepreneurs the head to put the fire out. And because that's a good of the product development process. that you can't see the curves beyond it. What kind of checks do you write? and put the fire out. to founders is go out time founders come to me and you understand it. stopping by the studio More coverage with CUBE

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
AmazonORGANIZATION

0.99+

JonPERSON

0.99+

AWSORGANIZATION

0.99+

JohnPERSON

0.99+

John FurrierPERSON

0.99+

Andy JassyPERSON

0.99+

2017DATE

0.99+

January 2023DATE

0.99+

Jon TurowPERSON

0.99+

OctoberDATE

0.99+

18QUANTITY

0.99+

MITORGANIZATION

0.99+

$100 millionQUANTITY

0.99+

Palo AltoLOCATION

0.99+

10 plus yearsQUANTITY

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

GoogleORGANIZATION

0.99+

twoQUANTITY

0.99+

October 2022DATE

0.99+

hundredsQUANTITY

0.99+

MadronaORGANIZATION

0.99+

AppleORGANIZATION

0.99+

Madrona Venture PartnersORGANIZATION

0.99+

January '23DATE

0.99+

two groupsQUANTITY

0.99+

Matt WoodPERSON

0.99+

Madrona Venture GroupORGANIZATION

0.99+

180,000QUANTITY

0.99+

October '22DATE

0.99+

JasperTITLE

0.99+

Palo Alto, CaliforniaLOCATION

0.99+

six monthsQUANTITY

0.99+

2006DATE

0.99+

million downloadsQUANTITY

0.99+

Five yearsQUANTITY

0.99+

SQLTITLE

0.99+

last monthDATE

0.99+

two polesQUANTITY

0.99+

firstQUANTITY

0.99+

Howie XuPERSON

0.99+

VMwareORGANIZATION

0.99+

thirdQUANTITY

0.99+

20 monthsQUANTITY

0.99+

GreengrassORGANIZATION

0.99+

Madrona Venture GroupORGANIZATION

0.98+

secondQUANTITY

0.98+

OneQUANTITY

0.98+

SupercloudEVENT

0.98+

RunwayMLTITLE

0.98+

San FranciscoLOCATION

0.98+

ZScalerORGANIZATION

0.98+

yesterdayDATE

0.98+

oneQUANTITY

0.98+

FirstQUANTITY

0.97+

CapExORGANIZATION

0.97+

eightiesDATE

0.97+

ChatGPTTITLE

0.96+

Dr.PERSON

0.96+

Andy Thurai, Constellation Research | CloudNativeSecurityCon 23


 

(upbeat music) (upbeat music) >> Hi everybody, welcome back to our coverage of the Cloud Native Security Con. I'm Dave Vellante, here in our Boston studio. We're connecting today with Palo Alto, with John Furrier and Lisa Martin. We're also live from the show floor in Seattle. But right now, I'm here with Andy Thurai who's from Constellation Research, friend of theCUBE, and we're going to discuss the intersection of AI and security, the potential of AI, the risks and the future. Andy, welcome, good to see you again. >> Good to be here again. >> Hey, so let's get into it, can you talk a little bit about, I know this is a passion of yours, the ethical considerations surrounding AI. I mean, it's front and center in the news, and you've got accountability, privacy, security, biases. Should we be worried about AI from a security perspective? >> Absolutely, man, you should be worried. See the problem is, people don't realize this, right? I mean, the ChatGPT being a new shiny object, it's all the craze that's about. But the problem is, most of the content that's produced either by ChatGPT or even by others, it's an access, no warranties, no accountability, no whatsoever. Particularly, if it is content, it's okay. But if it is something like a code that you use for example, one of their site projects that GitHub's co-pilot, which is actually, open AI + Microsoft + GitHub's combo, they allow you to produce code, AI writes code basically, right? But when you write code, problem with that is, it's not exactly stolen, but the models are created by using the GitHub code. Actually, they're getting sued for that, saying that, "You can't use our code". Actually there's a guy, Tim Davidson, I think he's named the professor, he actually demonstrated how AI produces exact copy of the code that he has written. So right now, it's a lot of security, accountability, privacy issues. Use it either to train or to learn. But in my view, it's not ready for enterprise grade yet. >> So, Brian Behlendorf today in his keynotes said he's really worried about ChatGPT being used to automate spearfishing. So I'm like, okay, so let's unpack that a little bit. Is the concern there that it just, the ChatGPT writes such compelling phishing content, it's going to increase the probability of somebody clicking on it, or are there other dimensions? >> It could, it's not necessarily just ChatGPT for that matter, right? AI can, actually, the hackers are using it to an extent already, can use to individualize content. For example, one of the things that you are able to easily identify when you're looking at the emails that are coming in, the phishing attack is, you look at some of the key elements in it, whether it's a human or even if it's an automated AI based system. They look at certain things and they say, "Okay, this is phishing". But if you were to read an email that looks exact copy of what I would've sent to you saying that, "Hey Dave, are you on for tomorrow? Or click on this link to do whatever. It could individualize the message. That's where the volume at scale to individual to masses, that can be done using AI, which is what scares me. >> Is there a flip side to AI? How is it being utilized to help cybersecurity? And maybe you could talk about some of the more successful examples of AI in security. Like, are there use cases or are there companies out there, Andy, that you find, I know you're close to a lot of firms that are leading in this area. You and I have talked about CrowdStrike, I know Palo Alto Network, so is there a positive side to this story? >> Yeah, I mean, absolutely right. Those are some of the good companies you mentioned, CrowdStrike, Palo Alto, Darktrace is another one that I closely follow, which is a good company as well, that they're using AI for security purposes. So, here's the thing, right, when people say, when they're using malware detection systems, most of the malware detection systems that are in today's security and malware systems, use some sort of a signature and pattern scanning in the malware. You know how many identified malwares are there today in the repository, in the library? More than a billion, a billion. So, if you are to check for every malware in your repository, that's not going to work. The pattern based recognition is not going to work. So, you got to figure out a different way of identification of pattern of usage, not just a signature in a malware, right? Or there are other areas you could use, things like the usage patterns. For example, if Andy is coming in to work at a certain time, you could combine a facial recognition saying, that should he be in here at that time, and should he be doing things, what he is supposed to be doing. There are a lot of things you could do using that, right? And the AIOps use cases, which is one of my favorite areas that I work, do a lot of work, right? That it has use cases for detecting things that are anomaly, that are not supposed to be done in a way that's supposed to be, reducing the noise so it can escalate only the things what you're supposed to. So, AIOps is a great use case to use in security areas which they're not using it to an extent yet. Incident management is another area. >> So, in your malware example, you're saying, okay, known malware, pretty much anybody can deal with that now. That's sort of yesterday's problem. >> The unknown is the problem. >> It's the unknown malware really trying to understand the patterns, and the patterns are going to change. It's not like you're saying a common signature 'cause they're going to use AI to change things up at scale. >> So, here's the problem, right? The malware writers are also using AI now, right? So, they're not going to write the old malware, send it to you. They are actually creating malware on the fly. It is possible entirely in today's world that they can create a malware, drop in your systems and it'll it look for the, let me get that name right. It's called, what are we using here? It's called the TTPs, Tactics, Techniques and procedures. It'll look for that to figure out, okay, am I doing the right pattern? And then malware can sense it saying that, okay, that's the one they're detecting. I'm going to change it on the fly. So, AI can code itself on the fly, rather malware can code itself on the fly, which is going to be hard to detect. >> Well, and when you talk about TTP, when you talk to folks like Kevin Mandia of Mandiant, recently purchased by Google or other of those, the ones that have the big observation space, they'll talk about the most malicious hacks that they see, involve lateral movement. So, that's obviously something that people are looking for, AI's looking for that. And of course, the hackers are going to try to mask that lateral movement, living off the land and other things. How do you see AI impacting the future of cyber? We talked about the risks and the good. One of the things that Brian Behlendorf also mentioned is that, he pointed out that in the early days of the internet, the protocols had an inherent element of trust involved. So, things like SMTP, they didn't have security built in. So, they built up a lot of technical debt. Do you see AI being able to help with that? What steps do you see being taken to ensure that AI based systems are secure? >> So, the major difference between the older systems and the newer systems is the older systems, sadly even today, a lot of them are rules-based. If it's a rules-based systems, you are dead in the water and not able, right? So, the AI-based systems can somewhat learn from the patterns as I was talking about, for example... >> When you say rules-based systems, you mean here's the policy, here's the rule, if it's not followed but then you're saying, AI will blow that away, >> AI will blow that away, you don't have to necessarily codify things saying that, okay, if this, then do this. You don't have to necessarily do that. AI can somewhat to an extent self-learn saying that, okay, if that doesn't happen, if this is not a pattern that I know which is supposed to happen, who should I escalate this to? Who does this system belong to? And the other thing, the AIOps use case we talked about, right, the anomalies. When an anomaly happens, then the system can closely look at, saying that, okay, this is not normal behavior or usage. Is that because system's being overused or is it because somebody's trying to access something, could look at the anomaly detection, anomaly prevention or even prediction to an extent. And that's where AI could be very useful. >> So, how about the developer angle? 'Cause CNCF, the event in Seattle is all around developers, how can AI be integrated? We did a lot of talk at the conference about shift-left, we talked about shift-left and protect right. Meaning, protect the run time. So, both are important, so what steps should be taken to ensure that the AI systems are being developed in a secure and ethically sound way? What's the role of developers in that regard? >> How long do you got? (Both laughing) I think it could go for base on that. So, here's the problem, right? Lot of these companies are trying to see, I mean, you might have seen that in the news that Buzzfeed is trying to hire all of the writers to create the thing that ChatGPT is creating, a lot of enterprises... >> How, they're going to fire their writers? >> Yeah, they replace the writers. >> It's like automated automated vehicles and automated Uber drivers. >> So, the problem is a lot of enterprises still haven't done that, at least the ones I'm speaking to, are thinking about saying, "Hey, you know what, can I replace my developers because they are so expensive? Can I replace them with AI generated code?" There are a few issues with that. One, AI generated code is based on some sort of a snippet of a code that has been already available. So, you get into copyright issues, that's issue number one, right? Issue number two, if AI creates code and if something were to go wrong, who's responsible for that? There's no accountability right now. Or you as a company that's creating a system that's responsible, or is it ChatGPT, Microsoft is responsible. >> Or is the developer? >> Or the developer. >> The individual developer might be. So, they're going to be cautious about that liability. >> Well, so one of the areas where I'm seeing a lot of enterprises using this is they are using it to teach developers to learn things. You know what, if you're to code, this is a good way to code. That area, it's okay because you are just teaching them. But if you are to put an actual production code, this is what I advise companies, look, if somebody's using even to create a code, whether with or without your permission, make sure that once the code is committed, you validate that the 100%, whether it's a code or a model, or even make sure that the data what you're feeding in it is completely out of bias or no bias, right? Because at the end of the day, it doesn't matter who, what, when did that, if you put out a service or a system out there, it is involving your company liability and system, and code in place. You're going to be screwed regardless of what, if something were to go wrong, you are the first person who's liable for it. >> Andy, when you think about the dangers of AI, and what keeps you up at night if you're a security professional AI and security professional. We talked about ChatGPT doing things, we don't even, the hackers are going to get creative. But what worries you the most when you think about this topic? >> A lot, a lot, right? Let's start off with an example, actually, I don't know if you had a chance to see that or not. The hackers used a bank of Hong Kong, used a defect mechanism to fool Bank of Hong Kong to transfer $35 million to a fake account, the money is gone, right? And the problem that is, what they did was, they interacted with a manager and they learned this executive who can control a big account and cloned his voice, and clone his patterns on how he calls and what he talks and the whole name he has, after learning that, they call the branch manager or bank manager and say, "Hey, you know what, hey, move this much money to whatever." So, that's one way of kind of phishing, kind of deep fake that can come. So, that's just one example. Imagine whether business is conducted by just using voice or phone calls itself. That's an area of concern if you were to do that. And imagine this became an uproar a few years back when deepfakes put out the video of Tom Cruise and others we talked about in the past, right? And Tom Cruise looked at the video, he said that he couldn't distinguish that he didn't do it. It is so close, that close, right? And they are doing things like they're using gems... >> Awesome Instagram account by the way, the guy's hilarious, right? >> So, they they're using a lot of this fake videos and fake stuff. As long as it's only for entertainment purposes, good. But imagine doing... >> That's right there but... >> But during the election season when people were to put out saying that, okay, this current president or ex-president, he said what? And the masses believe right now whatever they're seeing in TV, that's unfortunate thing. I mean, there's no fact checking involved, and you could change governments and elections using that, which is scary shit, right? >> When you think about 2016, that was when we really first saw, the weaponization of social, the heavy use of social and then 2020 was like, wow. >> To the next level. >> It was crazy. The polarization, 2024, would deepfakes... >> Could be the next level, yeah. >> I mean, it's just going to escalate. What about public policy? I want to pick your brain on this because I I've seen situations where the EU, for example, is going to restrict the ability to ship certain code if it's involved with critical infrastructure. So, let's say, example, you're running a nuclear facility and you've got the code that protects that facility, and it can be useful against some other malware that's outside of that country, but you're restricted from sending that for whatever reason, data sovereignty. Is public policy, is it aligned with the objectives in this new world? Or, I mean, normally they have to catch up. Is that going to be a problem in your view? >> It is because, when it comes to laws it's always miles behind when a new innovation happens. It's not just for AI, right? I mean, the same thing happened with IOT. Same thing happened with whatever else new emerging tech you have. The laws have to understand if there's an issue and they have to see a continued pattern of misuse of the technology, then they'll come up with that. Use in ways they are ahead of things. So, they put a lot of restrictions in place and about what AI can or cannot do, US is way behind on that, right? But California has done some things, for example, if you are talking to a chat bot, then you have to basically disclose that to the customer, saying that you're talking to a chat bot, not to a human. And that's just a very basic rule that they have in place. I mean, there are times that when a decision is made by the, problem is, AI is a black box now. The decision making is also a black box now, and we don't tell people. And the problem is if you tell people, you'll get sued immediately because every single time, we talked about that last time, there are cases involving AI making decisions, it gets thrown out the window all the time. If you can't substantiate that. So, the bottom line is that, yes, AI can assist and help you in making decisions but just use that as a assistant mechanism. A human has to be always in all the loop, right? >> Will AI help with, in your view, with supply chain, the software supply chain security or is it, it's always a balance, right? I mean, I feel like the attackers are more advanced in some ways, it's like they're on offense, let's say, right? So, when you're calling the plays, you know where you're going, the defense has to respond to it. So in that sense, the hackers have an advantage. So, what's the balance with software supply chain? Are the hackers have the advantage because they can use AI to accelerate their penetration of the software supply chain? Or will AI in your view be a good defensive mechanism? >> It could be but the problem is, the velocity and veracity of things can be done using AI, whether it's fishing, or malware, or other security and the vulnerability scanning the whole nine yards. It's scary because the hackers have a full advantage right now. And actually, I think ChatGPT recently put out two things. One is, it's able to direct the code if it is generated by ChatGPT. So basically, if you're trying to fake because a lot of schools were complaining about it, that's why they came up with the mechanism. So, if you're trying to create a fake, there's a mechanism for them to identify. But that's a step behind still, right? And the hackers are using things to their advantage. Actually ChatGPT made a rule, if you go there and read the terms and conditions, it's basically honor rule suggesting, you can't use this for certain purposes, to create a model where it creates a security threat, as that people are going to listen. So, if there's a way or mechanism to restrict hackers from using these technologies, that would be great. But I don't see that happening. So, know that these guys have an advantage, know that they're using AI, and you have to do things to be prepared. One thing I was mentioning about is, if somebody writes a code, if somebody commits a code right now, the problem is with the agile methodologies. If somebody writes a code, if they commit a code, you assume that's right and legit, you immediately push it out into production because need for speed is there, right? But if you continue to do that with the AI produced code, you're screwed. >> So, bottom line is, AI's going to speed us up in a security context or is it going to slow us down? >> Well, in the current version, the AI systems are flawed because even the ChatGPT, if you look at the the large language models, you look at the core piece of data that's available in the world as of today and then train them using that model, using the data, right? But people are forgetting that's based on today's data. The data changes on a second basis or on a minute basis. So, if I want to do something based on tomorrow or a day after, you have to retrain the models. So, the data already have a stale. So, that in itself is stale and the cost for retraining is going to be a problem too. So overall, AI is a good first step. Use that with a caution, is what I want to say. The system is flawed now, if you use it as is, you'll be screwed, it's dangerous. >> Andy, you got to go, thanks so much for coming in, appreciate it. >> Thanks for having me. >> You're very welcome, so we're going wall to wall with our coverage of the Cloud Native Security Con. I'm Dave Vellante in the Boston Studio, John Furrier, Lisa Martin and Palo Alto. We're going to be live on the show floor as well, bringing in keynote speakers and others on the ground. Keep it right there for more coverage on theCUBE. (upbeat music) (upbeat music) (upbeat music) (upbeat music)

Published Date : Feb 2 2023

SUMMARY :

and security, the potential of I mean, it's front and center in the news, of the code that he has written. that it just, the ChatGPT AI can, actually, the hackers are using it of the more successful So, here's the thing, So, in your malware the patterns, and the So, AI can code itself on the fly, that in the early days of the internet, So, the AI-based systems And the other thing, the AIOps use case that the AI systems So, here's the problem, right? and automated Uber drivers. So, the problem is a lot of enterprises So, they're going to be that the data what you're feeding in it about the dangers of AI, and the whole name he So, they they're using a lot And the masses believe right now whatever the heavy use of social and The polarization, 2024, would deepfakes... Is that going to be a And the problem is if you tell people, So in that sense, the And the hackers are using So, that in itself is stale and the cost Andy, you got to go, and others on the ground.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Tim DavidsonPERSON

0.99+

Brian BehlendorfPERSON

0.99+

AndyPERSON

0.99+

Dave VellantePERSON

0.99+

Lisa MartinPERSON

0.99+

Andy ThuraiPERSON

0.99+

SeattleLOCATION

0.99+

Kevin MandiaPERSON

0.99+

100%QUANTITY

0.99+

MicrosoftORGANIZATION

0.99+

EUORGANIZATION

0.99+

Tom CruisePERSON

0.99+

Palo AltoORGANIZATION

0.99+

UberORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

DarktraceORGANIZATION

0.99+

John FurrierPERSON

0.99+

$35 millionQUANTITY

0.99+

CrowdStrikeORGANIZATION

0.99+

OneQUANTITY

0.99+

Constellation ResearchORGANIZATION

0.99+

BuzzfeedORGANIZATION

0.99+

More than a billion, a billionQUANTITY

0.99+

GitHubORGANIZATION

0.99+

BostonLOCATION

0.99+

Palo Alto NetworkORGANIZATION

0.99+

DavePERSON

0.99+

2016DATE

0.99+

tomorrowDATE

0.99+

bothQUANTITY

0.99+

two thingsQUANTITY

0.99+

first stepQUANTITY

0.99+

todayDATE

0.99+

MandiantORGANIZATION

0.99+

one exampleQUANTITY

0.99+

2024DATE

0.99+

ChatGPTORGANIZATION

0.98+

CloudNativeSecurityConEVENT

0.98+

Bank of Hong KongORGANIZATION

0.98+

oneQUANTITY

0.98+

ChatGPTTITLE

0.98+

yesterdayDATE

0.98+

Constellation ResearchORGANIZATION

0.97+

2020DATE

0.97+

firstQUANTITY

0.97+

InstagramORGANIZATION

0.97+

BothQUANTITY

0.97+

theCUBEORGANIZATION

0.94+

Hong KongLOCATION

0.93+

one wayQUANTITY

0.92+

PaloORGANIZATION

0.92+

Cloud Native Security Con.EVENT

0.89+

nine yardsQUANTITY

0.89+

CNCFEVENT

0.88+

AIOpsORGANIZATION

0.86+

first personQUANTITY

0.85+

CaliforniaORGANIZATION

0.78+

Issue number twoQUANTITY

0.75+

deepfakesORGANIZATION

0.74+

few years backDATE

0.74+

Boston StudioLOCATION

0.73+

Liz Rice, Isovalent | CloudNativeSecurityCon 23


 

(upbeat music) >> Hello, everyone, from Palo Alto, Lisa Martin here. This is The Cube's coverage of CloudNativeSecurityCon, the inaugural event. I'm here with John Furrier in studio. In Boston, Dave Vellante joins us, and our guest, Liz Rice, one of our alumni, is joining us from Seattle. Great to have everyone here. Liz is the Chief Open Source officer at Isovalent. She's also the Emeritus Chair Technical Oversight Committee at CNCF, and a co-chair of this new event. Everyone, welcome Liz. Great to have you back on theCUBE. Thanks so much for joining us today. >> Thanks so much for having me, pleasure. >> So CloudNativeSecurityCon. This is the inaugural event, Liz, this used to be part of KubeCon, it's now its own event in its first year. Talk to us about the importance of having it as its own event from a security perspective, what's going on? Give us your opinions there. >> Yeah, I think security was becoming so- at such an important part of the conversation at KubeCon, CloudNativeCon, and the TAG security, who were organizing the co-located Cloud Native Security Day which then turned into a two day event. They were doing this amazing job, and there was so much content and so much activity and so much interest that it made sense to say "Actually this could stand alone as a dedicated event and really dedicate, you know, all the time and resources of running a full conference, just thinking about cloud native security." And I think that's proven to be true. There's plenty of really interesting talks that we're going to see. Things like a capture the flag. There's all sorts of really good things going on this week. >> Liz, great to see you, and Dave, great to see you in Boston Lisa, great intro. Liz, you've been a CUBE alumni. You've been a great contributor to our program, and being part of our team, kind of extracting that signal from the CNCF cloud native world KubeCon. This event really kind of to me is a watershed moment, because it highlights not only security as a standalone discussion event, but it's also synergistic with KubeCon. And, as co-chair, take us through the thought process on the sessions, the experts, it's got a practitioner vibe there. So we heard from Priyanka early on, bottoms up, developer first. You know KubeCon's shift left was big momentum. This seems to be a breakout of very focused security. Can you share the rationale and the thoughts behind how this is emerging, and how you see this developing? I know it's kind of a small event, kind of testing the waters it seems, but this is really a directional shift. Can you share your thoughts? >> Yeah I'm just, there's just so many different angles that you can consider security. You know, we are seeing a lot of conversations about supply chain security, but there's also runtime security. I'm really excited about eBPF tooling. There's also this opportunity to talk about how do we educate people about security, and how do security practitioners get involved in cloud native, and how do cloud native folks learn about the security concepts that they need to keep their deployments secure. So there's lots of different groups of people who I think maybe at a KubeCon, KubeCon is so wide, it's such a diverse range of topics. If you really just want to focus in, drill down on what do I need to do to run Kubernetes and cloud native applications securely, let's have a really focused event, and just drill down into all the different aspects of that. And I think that's great. It brings the right people together, the practitioners, the experts, the vendors to, you know, everyone can be here, and we can find each other at a smaller event. We are not spread out amongst the thousands of people that would attend a KubeCon. >> It's interesting, Dave, you know, when we were talking, you know, we're going to bring you in real quick, because AWS, which I think is the bellweather for, you know, cloud computing, has now two main shows, AWS re:Invent and re:Inforce. Security, again, broken out there. you see the classic security events, RSA, Black Hat, you know, those are the, kind of, the industry kind of mainstream security, very wide. But you're starting to see the cloud native developer first with both security and cloud native, kind of, really growing so fast. This is a major trend for a lot of the ecosystem >> You know, and you hear, when you mention those other conferences, John you hear a lot about, you know, shift left. There's a little bit of lip service there, and you, we heard today way more than lip service. I mean deep practitioner level conversations, and of course the runtime as well. Liz, you spent a lot of time obviously in your keynote on eBPF, and I wonder if you could share with the audience, you know, why you're so excited about that. What makes it a more effective tool compared to other traditional methods? I mean, it sounds like it simplifies things. You talked about instrumenting nodes versus workloads. Can you explain that a little bit more detail? >> Yeah, so with eBPF programs, we can load programs dynamically into the kernel, and we can attach them to all kinds of different events that could be happening anywhere on that virtual machine. And if you have the right knowledge about where to hook into, you can observe network events, you can observe file access events, you can observe pretty much anything that's interesting from a security perspective. And because eBPF programs are living in the kernel, there's only one kernel shared amongst all of the applications that are running on that particular machine. So you don't- you no longer have to instrument each individual application, or each individual pod. There's no more need to inject sidecars. We can apply eBPF based tooling on a per node basis, which just makes things operationally more straightforward, but it's also extremely performant. We can hook these programs into events that typically very lightweight, small programs, kind of, emitting an event, making a decision about whether to drop a packet, making a decision about whether to allow file access, things of that nature. There's super fast, there's no need to transition between kernel space and user space, which is usually quite a costly operation from performance perspective. So eBPF makes it really, you know, it's taking the security tooling, and other forms of tooling, networking and observability. We can take these tools into the kernel, and it's really efficient there. >> So Liz- >> So, if I may, one, just one quick follow up. You gave kind of a space age example (laughs) in your keynote. When, do you think a year from now we'll be able to see, sort of, real world examples in in action? How far away are we? >> Well, some of that is already pretty widely deployed. I mean, in my keynote I was talking about Cilium. Cilium is adopted by hundreds of really big scale deployments. You know, the users file is full of household names who've been using cilium. And as part of that they will be using network policies. And I showed some visualizations this morning of network policy, but again, network policy has been around, pretty much since the early days of Kubernetes. It can be quite fiddly to get it right, but there are plenty of people who are using it at scale today. And then we were also looking at some runtime security detections, seeing things like, in my example, exfiltrating the plans to the Death Star, you know, looking for suspicious executables. And again, that's a little bit, it's a bit newer, but we do have people running that in production today, proving that it really does work, and that eBPF is a scalable technology. It's, I've been fascinated by eBPF for years, and it's really amazing to see it being used in the real world now. >> So Liz, you're a maintainer on the Cilium project. Talk about the use of eBPF in the Cilium project. How is it contributing to cloud native security, and really helping to change the dials on that from an efficiency, from a performance perspective, as well as a, what's in it for me as a business perspective? >> So Cilium is probably best known as a networking plugin for Kubernetes. It, when you are running Kubernetes, you have to make a decision about some networking plugin that you're going to use. And Cilium is, it's an incubating project in the CNCF. It's the most mature of the different CNIs that's in the CNCF at the moment. As I say, very widely deployed. And right from day one, it was based on eBPF. And in fact some of the people who contribute to the eBPF platform within the kernel, are also working on the Cilium project. They've been kind of developed hand in hand for the last six, seven years. So really being able to bring some of that networking capability, it required changes in the kernel that have been put in place several years ago, so that now we can build these amazing tools for Kubernetes operators. So we are using eBPF to make the networking stack for Kubernetes and cloud native really efficient. We can bypass some of the parts of the network stack that aren't necessarily required in a cloud native deployment. We can use it to make these incredibly fast decisions about network policy. And we also have a sub-project called Tetragon, which is a newer part of the Cilium family which uses eBPF to observe these runtime events. The things like people opening a file, or changing the permissions on a file, or making a socket connection. All of these things that as a security engineer you are interested in. Who is running executables who is making network connections, who's accessing files, all of these operations are things that we can observe with Cilium Tetragon. >> I mean it's exciting. We've chatted in the past about that eBPF extended Berkeley Packet Filter, which is about the Linux kernel. And I bring that up Liz, because I think this is the trend I'm trying to understand with this event. It's, I hear bottoms up developer, developer first. It feels like it's an under the hood, infrastructure, security geek fest for practitioners, because Brian, in his keynote, mentioned BIND in reference the late Dan Kaminsky, who was, obviously found that error in BIND at the, in DNS. He mentioned DNS. There's a lot of things that's evolving at the silicone, kernel, kind of root levels of our infrastructure. This seems to be a major shift in focus and rightfully so. Is that something that you guys talk about, or is that coincidence, or am I just overthinking this point in terms of how nerdy it's getting in terms of the importance of, you know, getting down to the low level aspects of protecting everything. And as we heard also the quote was no software secure. (Liz chuckles) So that's up and down the stack of the, kind of the old model. What's your thoughts and reaction to that? >> Yeah, I mean I think a lot of folks who get into security really are interested in these kind of details. You know, you see write-ups of exploits and they, you know, they're quite often really involved, and really require understanding these very deep detailed technical levels. So a lot of us can really geek out about the details of that. The flip side of that is that as an application developer, you know, as- if you are working for a bank, working for a media company, you're writing applications, you shouldn't have to be worried about what's happening at the kernel level. This might be kind of geeky interesting stuff, but really, operationally, it should be taken care of for you. You've got your work cut out building business value in applications. So I think there's this interesting, kind of dual track going on almost, if you like, of the people who really want to get involved in those nitty gritty details, and understand how the underlying, you know, kernel level exploits maybe working. But then how do we make that really easy for people who are running clusters to, I mean like you said, nothing is ever secure, but trying to make things as secure as they can be easily, and make things visual, make things accessible, make things, make it easy to check whether or not you are compliant with whatever regulations you need to be compliant with. That kind of focus on making things usable for the platform team, for the application developers who deliver apps on the platform, that's the important (indistinct)- >> I noticed that the word expert was mentioned, I mentioned earlier with Priyanka. Was there a rationale on the 72 sessions, was there thinking around it or was it kind of like, these are urgent areas, they're obvious low hanging fruit. Was there, take us through the selection process of, or was it just, let's get 72 sessions going to get this (Liz laughs) thing moving? >> No, we did think quite carefully about how we wanted to, what the different focus areas we wanted to include. So we wanted to make sure that we were including things like governance and compliance, and that we talk about not just supply chain, which is clearly a very hot topic at the moment, but also to talk about, you know, threat detection, runtime security. And also really importantly, we wanted to have space to talk about education, to talk about how people can get involved. Because maybe when we talk about all these details, and we get really technical, maybe that's, you know, a bit scary for people who are new into the cloud native security space. We want to make sure that there are tracks and content that are accessible for newcomers to get involved. 'Cause, you know, given time they'll be just as excited about diving into those kind of kernel level details. But everybody needs a place to start, and we wanted to make sure there were conversations about how to get started in security, how to educate other members of your team in your organization about security. So hopefully there's something for everyone. >> That education piece- >> Liz, what's the- >> Oh sorry, Dave. >> What the buzz on on AI? We heard Dan talk about, you know, chatGPT, using it to automate spear phishing. There's always been this tension between security and speed to market, but CISOs are saying, "Hey we're going to a zero trust architecture and that's helping us move faster." Will, in your, is the talk on the floor, AI is going to slow us down a little bit until we figure it out? Or is it actually going to be used as an offensive defensive tool if I can use that angle? >> Yeah, I think all of the above. I actually had an interesting chat this morning. I was talking with Andy Martin from Control Plane, and we were talking about the risk of AI generated code that attempts to replicate what open source libraries already do. So rather than using an existing open source package, an organization might think, "Well, I'll just have my own version, and I'll have an AI write it for me." And I don't, you know, I'm not a lawyer so I dunno what the intellectual property implications of this will be, but imagine companies are just going, "Well you know, write me an SSL library." And that seems terrifying from a security perspective, 'cause there could be all sorts of very slightly different AI generated libraries that pick up the same vulnerabilities that exist in open source code. So, I think we're going to go through a pretty interesting period of vulnerabilities being found in AI generated code that look familiar, and we'll be thinking "Haven't we seen these vulnerabilities before? Yeah, we did, but they were previously in handcrafted code and now we'll see the same things being generated by AI." I mean, in the same way that if you look at an AI generated picture and it's got I don't know, extra fingers, or, you know, extra ears or something that, (Dave laughs) AI does make mistakes. >> So Liz, you talked about the education, the enablement, the 72 sessions, the importance of CloudNativeSecurityCon being its own event this year. What are your hopes and dreams for the practitioners to be able to learn from this event? How do you see the event as really supporting the growth, the development of the cloud native security community as a whole? >> Yeah, I think it's really important that we think of it as a Cloud Native Security community. You know, there are lots of interesting sort of hacker community security related community. Cloud native has been very community focused for a long time, and we really saw, particularly through the tag, the security tag, that there was this growing group of people who were, really wanted to work at that intersection between security and cloud native. And yeah, I think things are going really well this week so far, So I hope this is, you know, the first of many additions of this conference. I think it will also be interesting to see how the balance between a smaller, more focused event, compared to the giant KubeCon and cloud native cons. I, you know, I think there's space for both things, but whether or not there will be other smaller focus areas that want to stand alone and justify being able to stand alone as their own separate conferences, it speaks to the growth of cloud native in general that this is worthwhile doing. >> Yeah. >> It is, and what also speaks to, it reminds me of our tagline here at theCUBE, being able to extract the signal from the noise. Having this event as a standalone, being able to extract the value in it from a security perspective, that those practitioners and the community at large is going to be able to glean from these conversations is something that will be important, that we'll be keeping our eyes on. >> Absolutely. Makes sense for me, yes. >> Yeah, and I think, you know, one of the things, Lisa, that I want to get in, and if you don't mind asking Dave his thoughts, because he just did a breaking analysis on the security landscape. And Dave, you know, as Liz talking about some of these root level things, we talk about silicon advances, powering machine learning, we've been covering a lot of that. You've been covering the general security industry. We got RSA coming up reinforced with AWS, and as you see the cloud native developer first, really driving the standards of the super cloud, the multicloud, you're starting to see a lot more application focus around latency and kind of controlling that, These abstraction layer's starting to see a lot more growth. What's your take, Dave, on what Liz and- is talking about because, you know, you're analyzing the horses on the track, and there's sometimes the old guard security folks, and you got open source continuing to kick butt. And even on the ML side, we've been covering some of these foundation models, you're seeing a real technical growth in open source at all levels and, you know, you still got some proprietary machine learning stuff going on, but security's integrating all that. What's your take and your- what's your breaking analysis on the security piece here? >> I mean, to me the two biggest problems in cyber are just the lack of talent. I mean, it's just really hard to find super, you know, deep expertise and get it quickly. And I think the second is it's just, it's so many tools to deal with. And so the architecture of security is just this mosaic and a mess. That's why I'm excited about initiatives like eBPF because it does simplify things, and developers are being asked to do a lot. And I think one of the other things that's emerging is when you- when we talk about Industry 4.0, and IIoT, you- I'm seeing a lot of tools that are dedicated just to that, you know, slice of the world. And I don't think that's the right approach. I think that there needs to be a more comprehensive view. We're seeing, you know, zero trust architectures come together, and it's going to take some time, but I think that you're going to definitely see, you know, some rethinking of how to architect security. It's a game of whack-a-mole, but I think the industry is just- the technology industry is doing a really really good job of, you know, working hard to solve these problems. And I think the answer is not just another bespoke tool, it's a broader thinking around architectures and consolidating some of those tools, you know, with an end game of really addressing the problem in a more comprehensive fashion. >> Liz, in the last minute or so we have your thoughts on how automation and scale are driving some of these forcing functions around, you know, taking away the toil and the muck around developers, who just want stuff to be code, right? So infrastructure as code. Is that the dynamic here? Is this kind of like new, or is it kind of the same game, different kind of thing? (chuckles) 'Cause you're seeing a lot more machine learning, a lot more automation going on. What's, is that having an impact? What's your thoughts? >> Automation is one of the kind of fundamental underpinnings of cloud native. You know, we're expecting infrastructure to be written as code, We're expecting the platform to be defined in yaml essentially. You know, we are expecting the Kubernetes and surrounding tools to self-heal and to automatically scale and to do things like automated security. If we think about supply chain, you know, automated dependency scanning, think about runtime. Network policy is automated firewalling, if you like, for a cloud native era. So, I think it's all about making that platform predictable. Automation gives us some level of predictability, even if the underlying hardware changes or the scale changes, so that the application developers have something consistent and standardized that they can write to. And you know, at the end of the day, it's all about the business applications that run on top of this infrastructure >> Business applications and the business outcomes. Liz, we so appreciate your time talking to us about this inaugural event, CloudNativeSecurityCon 23. The value in it for those practitioners, all of the content that's going to be discussed and learned, and the growth of the community. Thank you so much, Liz, for sharing your insights with us today. >> Thanks for having me. >> For Liz Rice, John Furrier and Dave Vellante, I'm Lisa Martin. You're watching the Cube's coverage of CloudNativeSecurityCon 23. (electronic music)

Published Date : Feb 2 2023

SUMMARY :

Great to have you back on theCUBE. This is the inaugural event, Liz, and the TAG security, kind of testing the waters it seems, that you can consider security. the bellweather for, you know, and of course the runtime as well. of the applications that are running You gave kind of a space exfiltrating the plans to the Death Star, and really helping to change the dials of the network stack that in terms of the importance of, you know, of the people who really I noticed that the but also to talk about, you know, We heard Dan talk about, you know, And I don't, you know, I'm not a lawyer for the practitioners to be you know, the first of many and the community at large Yeah, and I think, you know, hard to find super, you know, Is that the dynamic here? so that the application developers all of the content that's going of CloudNativeSecurityCon 23.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Dan KaminskyPERSON

0.99+

BrianPERSON

0.99+

Dave VellantePERSON

0.99+

DavePERSON

0.99+

Lisa MartinPERSON

0.99+

Liz RicePERSON

0.99+

Andy MartinPERSON

0.99+

Liz RicePERSON

0.99+

SeattleLOCATION

0.99+

LizPERSON

0.99+

Palo AltoLOCATION

0.99+

BostonLOCATION

0.99+

DanPERSON

0.99+

LisaPERSON

0.99+

JohnPERSON

0.99+

John FurrierPERSON

0.99+

AWSORGANIZATION

0.99+

two dayQUANTITY

0.99+

72 sessionsQUANTITY

0.99+

PriyankaPERSON

0.99+

eBPFTITLE

0.99+

CNCFORGANIZATION

0.99+

CloudNativeSecurityConEVENT

0.99+

Control PlaneORGANIZATION

0.99+

KubeConEVENT

0.99+

todayDATE

0.99+

CloudNativeConEVENT

0.99+

Cloud Native Security DayEVENT

0.99+

CUBEORGANIZATION

0.99+

CiliumTITLE

0.99+

secondQUANTITY

0.99+

Boston LisaLOCATION

0.99+

oneQUANTITY

0.99+

each individual applicationQUANTITY

0.98+

bothQUANTITY

0.98+

firstQUANTITY

0.98+

CloudNativeSecurityCon 23EVENT

0.98+

hundredsQUANTITY

0.97+

each individual podQUANTITY

0.97+

both thingsQUANTITY

0.97+

first yearQUANTITY

0.97+

TetragonTITLE

0.97+

BINDORGANIZATION

0.96+

this weekDATE

0.96+

Jesse Cugliotta & Nicholas Taylor | The Future of Cloud & Data in Healthcare


 

(upbeat music) >> Welcome back to Supercloud 2. This is Dave Vellante. We're here exploring the intersection of data and analytics in the future of cloud and data. In this segment, we're going to look deeper into the life sciences business with Jesse Cugliotta, who leads the Healthcare and Life Sciences industry practice at Snowflake. And Nicholas Nick Taylor, who's the executive director of Informatics at Ionis Pharmaceuticals. Gentlemen, thanks for coming in theCUBE and participating in the program. Really appreciate it. >> Thank you for having us- >> Thanks for having me. >> You're very welcome, okay, we're go really try to look at data sharing as a use case and try to understand what's happening in the healthcare industry generally and specifically, how Nick thinks about sharing data in a governed fashion whether tapping the capabilities of multiple clouds is advantageous long term or presents more challenges than the effort is worth. And to start, Jesse, you lead this industry practice for Snowflake and it's a challenging and vibrant area. It's one that's hyper-focused on data privacy. So the first question is, you know there was a time when healthcare and other regulated industries wouldn't go near the cloud. What are you seeing today in the industry around cloud adoption and specifically multi-cloud adoption? >> Yeah, for years I've heard that healthcare and life sciences has been cloud diverse, but in spite of all of that if you look at a lot of aspects of this industry today, they've been running in the cloud for over 10 years now. Particularly when you look at CRM technologies or HR or HCM, even clinical technologies like EDC or ETMF. And it's interesting that you mentioned multi-cloud as well because this has always been an underlying reality especially within life sciences. This industry grows through acquisition where companies are looking to boost their future development pipeline either by buying up smaller biotechs, they may have like a late or a mid-stage promising candidate. And what typically happens is the larger pharma could then use their commercial muscle and their regulatory experience to move it to approvals and into the market. And I think the last few decades of cheap capital certainly accelerated that trend over the last couple of years. But this typically means that these new combined institutions may have technologies that are running on multiple clouds or multiple cloud strategies in various different regions to your point. And what we've often found is that they're not planning to standardize everything onto a single cloud provider. They're often looking for technologies that embrace this multi-cloud approach and work seamlessly across them. And I think this is a big reason why we, here at Snowflake, we've seen such strong momentum and growth across this industry because healthcare and life science has actually been one of our fastest growing sectors over the last couple of years. And a big part of that is in fact that we run on not only all three major cloud providers, but individual accounts within each and any one of them, they had the ability to communicate and interoperate with one another, like a globally interconnected database. >> Great, thank you for that setup. And so Nick, tell us more about your role and Ionis Pharma please. >> Sure. So I've been at Ionis for around five years now. You know, when when I joined it was, the IT department was pretty small. There wasn't a lot of warehousing, there wasn't a lot of kind of big data there. We saw an opportunity with Snowflake pretty early on as a provider that would be a lot of benefit for us, you know, 'cause we're small, wanted something that was fairly hands off. You know, I remember the days where you had to get a lot of DBAs in to fine tune your databases, make sure everything was running really, really well. The notion that there's, you know, no indexes to tune, right? There's very few knobs and dials, you can turn on Snowflake. That was appealing that, you know, it just kind of worked. So we found a use case to bring the platform in. We basically used it as a logging replacement as a Splunk kind of replacement with a platform called Elysium Analytics as a way to just get it in the door and give us the opportunity to solve a real world use case, but also to help us start to experiment using Snowflake as a platform. It took us a while to A, get the funding to bring it in, but B, build the momentum behind it. But, you know, as we experimented we added more data in there, we ran a few more experiments, we piloted in few more applications, we really saw the power of the platform and now, we are becoming a commercial organization. And with that comes a lot of major datasets. And so, you know, we really see Snowflake as being a very important part of our ecology going forward to help us build out our infrastructure. >> Okay, and you are running, your group runs on Azure, it's kind of mono cloud, single cloud, but others within Ionis are using other clouds, but you're not currently, you know, collaborating in terms of data sharing. And I wonder if you could talk about how your data needs have evolved over the past decade. I know you came from another highly regulated industry in financial services. So what's changed? You sort of touched on this before, you had these, you know, very specialized individuals who were, you know, DBAs, and, you know, could tune databases and the like, so that's evolved, but how has generally your needs evolved? Just kind of make an observation over the last, you know, five or seven years. What have you seen? >> Well, we, I wasn't in a group that did a lot of warehousing. It was more like online trade capture, but, you know, it was very much on-prem. You know, being in the cloud is very much a dirty word back then. I know that's changed since I've left. But in, you know, we had major, major teams of everyone who could do everything, right. As I mentioned in the pharma organization, there's a lot fewer of us. So the data needs there are very different, right? It's, we have a lot of SaaS applications. One of the difficulties with bringing a lot of SaaS applications on board is obviously data integration. So making sure the data is the same between them. But one of the big problems is joining the data across those SaaS applications. So one of the benefits, one of the things that we use Snowflake for is to basically take data out of these SaaS applications and load them into a warehouse so we can do those joins. So we use technologies like Boomi, we use technologies like Fivetran, like DBT to bring this data all into one place and start to kind of join that basically, allow us to do, run experiments, do analysis, basically take better, find better use for our data that was siloed in the past. You mentioned- >> Yeah. And just to add on to Nick's point there. >> Go ahead. >> That's actually something very common that we're seeing across the industry is because a lot of these SaaS applications that you mentioned, Nick, they're with from vendors that are trying to build their own ecosystem in walled garden. And by definition, many of them do not want to integrate with one another. So from a, you know, from a data platform vendor's perspective, we see this as a huge opportunity to help organizations like Ionis and others kind of deal with the challenges that Nick is speaking about because if the individual platform vendors are never going to make that part of their strategy, we see it as a great way to add additional value to these customers. >> Well, this data sharing thing is interesting. There's a lot of walled gardens out there. Oracle is a walled garden, AWS in many ways is a walled garden. You know, Microsoft has its walled garden. You could argue Snowflake is a walled garden. But the, what we're seeing and the whole reason behind the notion of super-cloud is we're creating an abstraction layer where you actually, in this case for this use case, can share data in a governed manner. Let's forget about the cross-cloud for a moment. I'll come back to that, but I wonder, Nick, if you could talk about how you are sharing data, again, Snowflake sort of, it's, I look at Snowflake like the app store, Apple, we're going to control everything, we're going to guarantee with data clean rooms and governance and the standards that we've created within that platform, we're going to make sure that it's safe for you to share data in this highly regulated industry. Are you doing that today? And take us through, you know, the considerations that you have in that regard. >> So it's kind of early days for us in Snowflake in general, but certainly in data sharing, we have a couple of examples. So data marketplace, you know, that's a great invention. It's, I've been a small IT shop again, right? The fact that we are able to just bring down terabyte size datasets straight into our Snowflake and run analytics directly on that is huge, right? The fact that we don't have to FTP these massive files around run jobs that may break, being able to just have that on tap is huge for us. We've recently been talking to one of our CRO feeds- CRO organizations about getting their data feeds in. Historically, this clinical trial data that comes in on an FTP file, we have to process it, take it through the platforms, put it into the warehouse. But one of the CROs that we talked to recently when we were reinvestigate in what data opportunities they have, they were a Snowflake customer and we are, I think, the first production customer they have, have taken that feed. So they're basically exposing their tables of data that historically came in these FTP files directly into our Snowflake instance now. We haven't taken advantage of that. It only actually flipped the switch about three or four weeks ago. But that's pretty big for us again, right? We don't have to worry about maintaining those jobs that take those files in. We don't have to worry about the jobs that take those and shove them on the warehouse. We now have a feed that's directly there that we can use a tool like DBT to push through directly into our model. And then the third avenue that's came up, actually fairly recently as well was genetics data. So genetics data that's highly, highly regulated. We had to be very careful with that. And we had a conversation with Snowflake about the data white rooms practice, and we see that as a pretty interesting opportunity. We are having one organization run genetic analysis being able to send us those genetic datasets, but then there's another organization that's actually has the in quotes "metadata" around that, so age, ethnicity, location, et cetera. And being able to join those two datasets through some kind of mechanism would be really beneficial to the organization. Being able to build a data white room so we can put that genetic data in a secure place, anonymize it, and then share the amalgamated data back out in a way that's able to be joined to the anonymized metadata, that could be pretty huge for us as well. >> Okay, so this is interesting. So you talk about FTP, which was the common way to share data. And so you basically, it's so, I got it now you take it and do whatever you want with it. Now we're talking, Jesse, about sharing the same copy of live data. How common is that use case in your industry? >> It's become very common over the last couple of years. And I think a big part of it is having the right technology to do it effectively. You know, as Nick mentioned, historically, this was done by people sending files around. And the challenge with that approach, of course, while there are multiple challenges, one, every time you send a file around your, by definition creating a copy of the data because you have to pull it out of your system of record, put it into a file, put it on some server where somebody else picks it up. And by definition at that point you've lost governance. So this creates challenges in general hesitation to doing so. It's not that it hasn't happened, but the other challenge with it is that the data's no longer real time. You know, you're working with a copy of data that was as fresh as at the time at that when that was actually extracted. And that creates limitations in terms of how effective this can be. What we're starting to see now with some of our customers is live sharing of information. And there's two aspects of that that are important. One is that you're not actually physically creating the copy and sending it to someone else, you're actually exposing it from where it exists and allowing another consumer to interact with it from their own account that could be in another region, some are running in another cloud. So this concept of super-cloud or cross-cloud could becoming realized here. But the other important aspect of it is that when that other- when that other entity is querying your data, they're seeing it in a real time state. And this is particularly important when you think about use cases like supply chain planning, where you're leveraging data across various different enterprises. If I'm a manufacturer or if I'm a contract manufacturer and I can see the actual inventory positions of my clients, of my distributors, of the levels of consumption at the pharmacy or the hospital that gives me a lot of indication as to how my demand profile is changing over time versus working with a static picture that may have been from three weeks ago. And this has become incredibly important as supply chains are becoming more constrained and the ability to plan accurately has never been more important. >> Yeah. So the race is on to solve these problems. So it start, we started with, hey, okay, cloud, Dave, we're going to simplify database, we're going to put it in the cloud, give virtually infinite resources, separate compute from storage. Okay, check, we got that. Now we've moved into sort of data clean rooms and governance and you've got an ecosystem that's forming around this to make it safer to share data. And then, you know, nirvana, at least near term nirvana is we're going to build data applications and we're going to be able to share live data and then you start to get into monetization. Do you see, Nick, in the near future where I know you've got relationships with, for instance, big pharma like AstraZeneca, do you see a situation where you start sharing data with them? Is that in the near term? Is that more long term? What are the considerations in that regard? >> I mean, it's something we've been thinking about. We haven't actually addressed that yet. Yeah, I could see situations where, you know, some of these big relationships where we do need to share a lot of data, it would be very nice to be able to just flick a switch and share our data assets across to those organizations. But, you know, that's a ways off for us now. We're mainly looking at bringing data in at the moment. >> One of the things that we've seen in financial services in particular, and Jesse, I'd love to get your thoughts on this, is companies like Goldman or Capital One or Nasdaq taking their stack, their software, their tooling actually putting it on the cloud and facing it to their customers and selling that as a new monetization vector as part of their digital or business transformation. Are you seeing that Jesse at all in healthcare or is it happening today or do you see a day when that happens or is healthier or just too scary to do that? >> No, we're seeing the early stages of this as well. And I think it's for some of the reasons we talked about earlier. You know, it's a much more secure way to work with a colleague if you don't have to copy your data and potentially expose it. And some of the reasons that people have historically copied that data is that they needed to leverage some sort of algorithm or application that a third party was providing. So maybe someone was predicting the ideal location and run a clinical trial for this particular rare disease category where there are only so many patients around the world that may actually be candidates for this disease. So you have to pick the ideal location. Well, sending the dataset to do so, you know, would involve a fairly complicated process similar to what Nick was mentioning earlier. If the company who was providing the logic or the algorithm to determine that location could bring that algorithm to you and you run it against your own data, that's a much more ideal and a much safer and more secure way for this industry to actually start to work with some of these partners and vendors. And that's one of the things that we're looking to enable going into this year is that, you know, the whole concept should be bring the logic to your data versus your data to the logic and the underlying sharing mechanisms that we've spoken about are actually what are powering that today. >> And so thank you for that, Jesse. >> Yes, Dave. >> And so Nick- Go ahead please. >> Yeah, if I could add, yeah, if I could add to that, that's something certainly we've been thinking about. In fact, we'd started talking to Snowflake about that a couple of years ago. We saw the power there again of the platform to be able to say, well, could we, we were thinking in more of a data share, but could we share our data out to say an AI/ML vendor, have them do the analytics and then share the data, the results back to us. Now, you know, there's more powerful mechanisms to do that within the Snowflake ecosystem now, but you know, we probably wouldn't need to have onsite AI/ML people, right? Some of that stuff's very sophisticated, expensive resources, hard to find, you know, it's much better for us to find a company that would be able to build those analytics, maintain those analytics for us. And you know, we saw an opportunity to do that a couple years ago and we're kind of excited about the opportunity there that we can just basically do it with a no op, right? We share the data route, we have the analytics done, we get the result back and it's just fairly seamless. >> I mean, I could have a whole another Cube session on this, guys, but I mean, I just did a a session with Andy Thurai, a Constellation research about how difficult it's been for organization to get ROI because they don't have the expertise in house so they want to either outsource it or rely on vendor R&D companies to inject that AI and machine intelligence directly into applications. My follow-up question to you Nick is, when you think about, 'cause Jesse was talking about, you know, let the data basically stay where it is and you know bring the compute to that data. If that data lives on different clouds, and maybe it's not your group, but maybe it's other parts of Ionis or maybe it's your partners like AstraZeneca, or you know, the AI/ML partners and they're potentially on other clouds or that data is on other clouds. Do you see that, again, coming back to super-cloud, do you see it as an advantage to be able to have a consistent experience across those clouds? Or is that just kind of get in the way and make things more complex? What's your take on that, Nick? >> Well, from the vendors, so from the client side, it's kind of seamless with Snowflake for us. So we know for a fact that one of the datasets we have at the moment, Compile, which is a, the large multi terabyte dataset I was talking about. They're on AWS on the East Coast and we are on Azure on the West Coast. And they had to do a few tweaks in the background to make sure the data was pushed over from, but from my point of view, the data just exists, right? So for me, I think it's hugely beneficial that Snowflake supports this kind of infrastructure, right? We don't have to jump through hoops to like, okay, well, we'll download it here and then re-upload it here. They already have the mechanism in the background to do these multi-cloud shares. So it's not important for us internally at the moment. I could see potentially at some point where we start linking across different groups in the organization that do have maybe Amazon or Google Cloud, but certainly within our providers. We know for a fact that they're on different services at the moment and it just works. >> Yeah, and we learned from Benoit Dageville, who came into the studio on August 9th with first Supercloud in 2022 that Snowflake uses a single global instance across regions and across clouds, yeah, whether or not you can query across you know, big regions, it just depends, right? It depends on latency. You might have to make a copy or maybe do some tweaks in the background. But guys, we got to jump, I really appreciate your time. Really thoughtful discussion on the future of data and cloud, specifically within healthcare and pharma. Thank you for your time. >> Thanks- >> Thanks for having us. >> All right, this is Dave Vellante for theCUBE team and my co-host, John Furrier. Keep it right there for more action at Supercloud 2. (upbeat music)

Published Date : Jan 3 2023

SUMMARY :

and analytics in the So the first question is, you know And it's interesting that you Great, thank you for that setup. get the funding to bring it in, over the last, you know, So one of the benefits, one of the things And just to add on to Nick's point there. that you mentioned, Nick, and the standards that we've So data marketplace, you know, And so you basically, it's so, And the challenge with Is that in the near term? bringing data in at the moment. One of the things that we've seen that algorithm to you and you And so Nick- the results back to us. Or is that just kind of get in the way in the background to do on the future of data and cloud, All right, this is Dave Vellante

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Jesse CugliottaPERSON

0.99+

Dave VellantePERSON

0.99+

GoldmanORGANIZATION

0.99+

AstraZenecaORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

John FurrierPERSON

0.99+

Capital OneORGANIZATION

0.99+

JessePERSON

0.99+

Andy ThuraiPERSON

0.99+

AWSORGANIZATION

0.99+

August 9thDATE

0.99+

NickPERSON

0.99+

NasdaqORGANIZATION

0.99+

Nicholas Nick TaylorPERSON

0.99+

fiveQUANTITY

0.99+

AmazonORGANIZATION

0.99+

IonisORGANIZATION

0.99+

DavePERSON

0.99+

Ionis PharmaORGANIZATION

0.99+

Nicholas TaylorPERSON

0.99+

Ionis PharmaceuticalsORGANIZATION

0.99+

SnowflakeORGANIZATION

0.99+

first questionQUANTITY

0.99+

Benoit DagevillePERSON

0.99+

AppleORGANIZATION

0.99+

seven yearsQUANTITY

0.99+

OracleORGANIZATION

0.99+

2022DATE

0.99+

todayDATE

0.99+

over 10 yearsQUANTITY

0.98+

SnowflakeTITLE

0.98+

oneQUANTITY

0.98+

OneQUANTITY

0.98+

two aspectsQUANTITY

0.98+

firstQUANTITY

0.98+

this yearDATE

0.97+

eachQUANTITY

0.97+

two datasetsQUANTITY

0.97+

West CoastLOCATION

0.97+

four weeks agoDATE

0.97+

around five yearsQUANTITY

0.97+

threeQUANTITY

0.95+

first productionQUANTITY

0.95+

East CoastLOCATION

0.95+

third avenueQUANTITY

0.95+

one organizationQUANTITY

0.94+

theCUBEORGANIZATION

0.94+

couple years agoDATE

0.93+

single cloudQUANTITY

0.92+

single cloud providerQUANTITY

0.92+

hree weeks agoDATE

0.91+

one placeQUANTITY

0.88+

AzureTITLE

0.86+

last couple of yearsDATE

0.85+

Breaking Analysis: AI Goes Mainstream But ROI Remains Elusive


 

>> From theCUBE Studios in Palo Alto in Boston, bringing you data-driven insights from theCUBE and ETR, this is "Breaking Analysis" with Dave Vellante. >> A decade of big data investments combined with cloud scale, the rise of much more cost effective processing power. And the introduction of advanced tooling has catapulted machine intelligence to the forefront of technology investments. No matter what job you have, your operation will be AI powered within five years and machines may actually even be doing your job. Artificial intelligence is being infused into applications, infrastructure, equipment, and virtually every aspect of our lives. AI is proving to be extremely helpful at things like controlling vehicles, speeding up medical diagnoses, processing language, advancing science, and generally raising the stakes on what it means to apply technology for business advantage. But business value realization has been a challenge for most organizations due to lack of skills, complexity of programming models, immature technology integration, sizable upfront investments, ethical concerns, and lack of business alignment. Mastering AI technology will not be a requirement for success in our view. However, figuring out how and where to apply AI to your business will be crucial. That means understanding the business case, picking the right technology partner, experimenting in bite-sized chunks, and quickly identifying winners to double down on from an investment standpoint. Hello and welcome to this week's Wiki-bond CUBE Insights powered by ETR. In this breaking analysis, we update you on the state of AI and what it means for the competition. And to do so, we invite into our studios Andy Thurai of Constellation Research. Andy covers AI deeply. He knows the players, he knows the pitfalls of AI investment, and he's a collaborator. Andy, great to have you on the program. Thanks for coming into our CUBE studios. >> Thanks for having me on. >> You're very welcome. Okay, let's set the table with a premise and a series of assertions we want to test with Andy. I'm going to lay 'em out. And then Andy, I'd love for you to comment. So, first of all, according to McKinsey, AI adoption has more than doubled since 2017, but only 10% of organizations report seeing significant ROI. That's a BCG and MIT study. And part of that challenge of AI is it requires data, is requires good data, data proficiency, which is not trivial, as you know. Firms that can master both data and AI, we believe are going to have a competitive advantage this decade. Hyperscalers, as we show you dominate AI and ML. We'll show you some data on that. And having said that, there's plenty of room for specialists. They need to partner with the cloud vendors for go to market productivity. And finally, organizations increasingly have to put data and AI at the center of their enterprises. And to do that, most are going to rely on vendor R&D to leverage AI and ML. In other words, Andy, they're going to buy it and apply it as opposed to build it. What are your thoughts on that setup and that premise? >> Yeah, I see that a lot happening in the field, right? So first of all, the only 10% of realizing a return on investment. That's so true because we talked about this earlier, the most companies are still in the innovation cycle. So they're trying to innovate and see what they can do to apply. A lot of these times when you look at the solutions, what they come up with or the models they create, the experimentation they do, most times they don't even have a good business case to solve, right? So they just experiment and then they figure it out, "Oh my God, this model is working. Can we do something to solve it?" So it's like you found a hammer and then you're trying to find the needle kind of thing, right? That never works. >> 'Cause it's cool or whatever it is. >> It is, right? So that's why, I always advise, when they come to me and ask me things like, "Hey, what's the right way to do it? What is the secret sauce?" And, we talked about this. The first thing I tell them is, "Find out what is the business case that's having the most amount of problems, that that can be solved using some of the AI use cases," right? Not all of them can be solved. Even after you experiment, do the whole nine yards, spend millions of dollars on that, right? And later on you make it efficient only by saving maybe $50,000 for the company or a $100,000 for the company, is it really even worth the experiment, right? So you got to start with the saying that, you know, where's the base for this happening? Where's the need? What's a business use case? It doesn't have to be about cost efficient and saving money in the existing processes. It could be a new thing. You want to bring in a new revenue stream, but figure out what is a business use case, how much money potentially I can make off of that. The same way that start-ups go after. Right? >> Yeah. Pretty straightforward. All right, let's take a look at where ML and AI fit relative to the other hot sectors of the ETR dataset. This XY graph shows net score spending velocity in the vertical axis and presence in the survey, they call it sector perversion for the October survey, the January survey's in the field. Then that squiggly line on ML/AI represents the progression. Since the January 21 survey, you can see the downward trajectory. And we position ML and AI relative to the other big four hot sectors or big three, including, ML/AI is four. Containers, cloud and RPA. These have consistently performed above that magic 40% red dotted line for most of the past two years. Anything above 40%, we think is highly elevated. And we've just included analytics and big data for context and relevant adjacentness, if you will. Now note that green arrow moving toward, you know, the 40% mark on ML/AI. I got a glimpse of the January survey, which is in the field. It's got more than a thousand responses already, and it's trending up for the current survey. So Andy, what do you make of this downward trajectory over the past seven quarters and the presumed uptick in the coming months? >> So one of the things you have to keep in mind is when the pandemic happened, it's about survival mode, right? So when somebody's in a survival mode, what happens, the luxury and the innovations get cut. That's what happens. And this is exactly what happened in the situation. So as you can see in the last seven quarters, which is almost dating back close to pandemic, everybody was trying to keep their operations alive, especially digital operations. How do I keep the lights on? That's the most important thing for them. So while the numbers spent on AI, ML is less overall, I still think the AI ML to spend to sort of like a employee experience or the IT ops, AI ops, ML ops, as we talked about, some of those areas actually went up. There are companies, we talked about it, Atlassian had a lot of platform issues till the amount of money people are spending on that is exorbitant and simply because they are offering the solution that was not available other way. So there are companies out there, you can take AoPS or incident management for that matter, right? A lot of companies have a digital insurance, they don't know how to properly manage it. How do you find an intern solve it immediately? That's all using AI ML and some of those areas actually growing unbelievable, the companies in that area. >> So this is a really good point. If you can you bring up that chart again, what Andy's saying is a lot of the companies in the ETR taxonomy that are doing things with AI might not necessarily show up in a granular fashion. And I think the other point I would make is, these are still highly elevated numbers. If you put on like storage and servers, they would read way, way down the list. And, look in the pandemic, we had to deal with work from home, we had to re-architect the network, we had to worry about security. So those are really good points that you made there. Let's, unpack this a little bit and look at the ML AI sector and the ETR data and specifically at the players and get Andy to comment on this. This chart here shows the same x y dimensions, and it just notes some of the players that are specifically have services and products that people spend money on, that CIOs and IT buyers can comment on. So the table insert shows how the companies are plotted, it's net score, and then the ends in the survey. And Andy, the hyperscalers are dominant, as you can see. You see Databricks there showing strong as a specialist, and then you got to pack a six or seven in there. And then Oracle and IBM, kind of the big whales of yester year are in the mix. And to your point, companies like Salesforce that you mentioned to me offline aren't in that mix, but they do a lot in AI. But what are your takeaways from that data? >> If you could put the slide back on please. I want to make quick comments on a couple of those. So the first one is, it's surprising other hyperscalers, right? As you and I talked about this earlier, AWS is more about logo blocks. We discussed that, right? >> Like what? Like a SageMaker as an example. >> We'll give you all the components what do you need. Whether it's MLOps component or whether it's, CodeWhisperer that we talked about, or a oral platform or data or data, whatever you want. They'll give you the blocks and then you'll build things on top of it, right? But Google took a different way. Matter of fact, if we did those numbers a few years ago, Google would've been number one because they did a lot of work with their acquisition of DeepMind and other things. They're way ahead of the pack when it comes to AI for longest time. Now, I think Microsoft's move of partnering and taking a huge competitor out would open the eyes is unbelievable. You saw that everybody is talking about chat GPI, right? And the open AI tool and ChatGPT rather. Remember as Warren Buffet is saying that, when my laundry lady comes and talk to me about stock market, it's heated up. So that's how it's heated up. Everybody's using ChatGPT. What that means is at the end of the day is they're creating, it's still in beta, keep in mind. It's not fully... >> Can you play with it a little bit? >> I have a little bit. >> I have, but it's good and it's not good. You know what I mean? >> Look, so at the end of the day, you take the massive text of all the available text in the world today, mass them all together. And then you ask a question, it's going to basically search through that and figure it out and answer that back. Yes, it's good. But again, as we discussed, if there's no business use case of what problem you're going to solve. This is building hype. But then eventually they'll figure out, for example, all your chats, online chats, could be aided by your AI chat bots, which is already there, which is not there at that level. This could build help that, right? Or the other thing we talked about is one of the areas where I'm more concerned about is that it is able to produce equal enough original text at the level that humans can produce, for example, ChatGPT or the equal enough, the large language transformer can help you write stories as of Shakespeare wrote it. Pretty close to it. It'll learn from that. So when it comes down to it, talk about creating messages, articles, blogs, especially during political seasons, not necessarily just in US, but anywhere for that matter. If people are able to produce at the emission speed and throw it at the consumers and confuse them, the elections can be won, the governments can be toppled. >> Because to your point about chatbots is chatbots have obviously, reduced the number of bodies that you need to support chat. But they haven't solved the problem of serving consumers. Most of the chat bots are conditioned response, which of the following best describes your problem? >> The current chatbot. >> Yeah. Hey, did we solve your problem? No. Is the answer. So that has some real potential. But if you could bring up that slide again, Ken, I mean you've got the hyperscalers that are dominant. You talked about Google and Microsoft is ubiquitous, they seem to be dominant in every ETR category. But then you have these other specialists. How do those guys compete? And maybe you could even, cite some of the guys that you know, how do they compete with the hyperscalers? What's the key there for like a C3 ai or some of the others that are on there? >> So I've spoken with at least two of the CEOs of the smaller companies that you have on the list. One of the things they're worried about is that if they continue to operate independently without being part of hyperscaler, either the hyperscalers will develop something to compete against them full scale, or they'll become irrelevant. Because at the end of the day, look, cloud is dominant. Not many companies are going to do like AI modeling and training and deployment the whole nine yards by independent by themselves. They're going to depend on one of the clouds, right? So if they're already going to be in the cloud, by taking them out to come to you, it's going to be extremely difficult issue to solve. So all these companies are going and saying, "You know what? We need to be in hyperscalers." For example, you could have looked at DataRobot recently, they made announcements, Google and AWS, and they are all over the place. So you need to go where the customers are. Right? >> All right, before we go on, I want to share some other data from ETR and why people adopt AI and get your feedback. So the data historically shows that feature breadth and technical capabilities were the main decision points for AI adoption, historically. What says to me that it's too much focus on technology. In your view, is that changing? Does it have to change? Will it change? >> Yes. Simple answer is yes. So here's the thing. The data you're speaking from is from previous years. >> Yes >> I can guarantee you, if you look at the latest data that's coming in now, those two will be a secondary and tertiary points. The number one would be about ROI. And how do I achieve? I've spent ton of money on all of my experiments. This is the same thing theme I'm seeing across when talking to everybody who's spending money on AI. I've spent so much money on it. When can I get it live in production? How much, how can I quickly get it? Because you know, the board is breathing down their neck. You already spend this much money. Show me something that's valuable. So the ROI is going to become, take it from me, I'm predicting this for 2023, that's going to become number one. >> Yeah, and if people focus on it, they'll figure it out. Okay. Let's take a look at some of the top players that won, some of the names we just looked at and double click on that and break down their spending profile. So the chart here shows the net score, how net score is calculated. So pay attention to the second set of bars that Databricks, who was pretty prominent on the previous chart. And we've annotated the colors. The lime green is, we're bringing the platform in new. The forest green is, we're going to spend 6% or more relative to last year. And the gray is flat spending. The pinkish is our spending's going to be down on AI and ML, 6% or worse. And the red is churn. So you don't want big red. You subtract the reds from the greens and you get net score, which is shown by those blue dots that you see there. So AWS has the highest net score and very little churn. I mean, single low single digit churn. But notably, you see Databricks and DataRobot are next in line within Microsoft and Google also, they've got very low churn. Andy, what are your thoughts on this data? >> So a couple of things that stands out to me. Most of them are in line with my conversation with customers. Couple of them stood out to me on how bad IBM Watson is doing. >> Yeah, bring that back up if you would. Let's take a look at that. IBM Watson is the far right and the red, that bright red is churning and again, you want low red here. Why do you think that is? >> Well, so look, IBM has been in the forefront of innovating things for many, many years now, right? And over the course of years we talked about this, they moved from a product innovation centric company into more of a services company. And over the years they were making, as at one point, you know that they were making about majority of that money from services. Now things have changed Arvind has taken over, he came from research. So he's doing a great job of trying to reinvent themselves as a company. But it's going to have a long way to catch up. IBM Watson, if you think about it, that played what, jeopardy and chess years ago, like 15 years ago? >> It was jaw dropping when you first saw it. And then they weren't able to commercialize that. >> Yeah. >> And you're making a good point. When Gerstner took over IBM at the time, John Akers wanted to split the company up. He wanted to have a database company, he wanted to have a storage company. Because that's where the industry trend was, Gerstner said no, he came from AMEX, right? He came from American Express. He said, "No, we're going to have a single throat to choke for the customer." They bought PWC for relatively short money. I think it was $15 billion, completely transformed and I would argue saved IBM. But the trade off was, it sort of took them out of product leadership. And so from Gerstner to Palmisano to Remedi, it was really a services led company. And I think Arvind is really bringing it back to a product company with strong consulting. I mean, that's one of the pillars. And so I think that's, they've got a strong story in data and AI. They just got to sort of bring it together and better. Bring that chart up one more time. I want to, the other point is Oracle, Oracle sort of has the dominant lock-in for mission critical database and they're sort of applying AI there. But to your point, they're really not an AI company in the sense that they're taking unstructured data and doing sort of new things. It's really about how to make Oracle better, right? >> Well, you got to remember, Oracle is about database for the structure data. So in yesterday's world, they were dominant database. But you know, if you are to start storing like videos and texts and audio and other things, and then start doing search of vector search and all that, Oracle is not necessarily the database company of choice. And they're strongest thing being apps and building AI into the apps? They are kind of surviving in that area. But again, I wouldn't name them as an AI company, right? But the other thing that that surprised me in that list, what you showed me is yes, AWS is number one. >> Bring that back up if you would, Ken. >> AWS is number one as you, it should be. But what what actually caught me by surprise is how DataRobot is holding, you know? I mean, look at that. The either net new addition and or expansion, DataRobot seem to be doing equally well, even better than Microsoft and Google. That surprises me. >> DataRobot's, and again, this is a function of spending momentum. So remember from the previous chart that Microsoft and Google, much, much larger than DataRobot. DataRobot more niche. But with spending velocity and has always had strong spending velocity, despite some of the recent challenges, organizational challenges. And then you see these other specialists, H2O.ai, Anaconda, dataiku, little bit of red showing there C3.ai. But these again, to stress are the sort of specialists other than obviously the hyperscalers. These are the specialists in AI. All right, so we hit the bigger names in the sector. Now let's take a look at the emerging technology companies. And one of the gems of the ETR dataset is the emerging technology survey. It's called ETS. They used to just do it like twice a year. It's now run four times a year. I just discovered it kind of mid-2022. And it's exclusively focused on private companies that are potential disruptors, they might be M&A candidates and if they've raised enough money, they could be acquirers of companies as well. So Databricks would be an example. They've made a number of investments in companies. SNEAK would be another good example. Companies that are private, but they're buyers, they hope to go IPO at some point in time. So this chart here, shows the emerging companies in the ML AI sector of the ETR dataset. So the dimensions of this are similar, they're net sentiment on the Y axis and mind share on the X axis. Basically, the ETS study measures awareness on the x axis and intent to do something with, evaluate or implement or not, on that vertical axis. So it's like net score on the vertical where negatives are subtracted from the positives. And again, mind share is vendor awareness. That's the horizontal axis. Now that inserted table shows net sentiment and the ends in the survey, which informs the position of the dots. And you'll notice we're plotting TensorFlow as well. We know that's not a company, but it's there for reference as open source tooling is an option for customers. And ETR sometimes like to show that as a reference point. Now we've also drawn a line for Databricks to show how relatively dominant they've become in the past 10 ETS surveys and sort of mind share going back to late 2018. And you can see a dozen or so other emerging tech vendors. So Andy, I want you to share your thoughts on these players, who were the ones to watch, name some names. We'll bring that data back up as you as you comment. >> So Databricks, as you said, remember we talked about how Oracle is not necessarily the database of the choice, you know? So Databricks is kind of trying to solve some of the issue for AI/ML workloads, right? And the problem is also there is no one company that could solve all of the problems. For example, if you look at the names in here, some of them are database names, some of them are platform names, some of them are like MLOps companies like, DataRobot (indistinct) and others. And some of them are like future based companies like, you know, the Techton and stuff. >> So it's a mix of those sub sectors? >> It's a mix of those companies. >> We'll talk to ETR about that. They'd be interested in your input on how to make this more granular and these sub-sectors. You got Hugging Face in here, >> Which is NLP, yeah. >> Okay. So your take, are these companies going to get acquired? Are they going to go IPO? Are they going to merge? >> Well, most of them going to get acquired. My prediction would be most of them will get acquired because look, at the end of the day, hyperscalers need these capabilities, right? So they're going to either create their own, AWS is very good at doing that. They have done a lot of those things. But the other ones, like for particularly Azure, they're going to look at it and saying that, "You know what, it's going to take time for me to build this. Why don't I just go and buy you?" Right? Or or even the smaller players like Oracle or IBM Cloud, this will exist. They might even take a look at them, right? So at the end of the day, a lot of these companies are going to get acquired or merged with others. >> Yeah. All right, let's wrap with some final thoughts. I'm going to make some comments Andy, and then ask you to dig in here. Look, despite the challenge of leveraging AI, you know, Ken, if you could bring up the next chart. We're not repeating, we're not predicting the AI winter of the 1990s. Machine intelligence. It's a superpower that's going to permeate every aspect of the technology industry. AI and data strategies have to be connected. Leveraging first party data is going to increase AI competitiveness and shorten time to value. Andy, I'd love your thoughts on that. I know you've got some thoughts on governance and AI ethics. You know, we talked about ChatGBT, Deepfakes, help us unpack all these trends. >> So there's so much information packed up there, right? The AI and data strategy, that's very, very, very important. If you don't have a proper data, people don't realize that AI is, your AI is the morals that you built on, it's predominantly based on the data what you have. It's not, AI cannot predict something that's going to happen without knowing what it is. It need to be trained, it need to understand what is it you're talking about. So 99% of the time you got to have a good data for you to train. So this where I mentioned to you, the problem is a lot of these companies can't afford to collect the real world data because it takes too long, it's too expensive. So a lot of these companies are trying to do the synthetic data way. It has its own set of issues because you can't use all... >> What's that synthetic data? Explain that. >> Synthetic data is basically not a real world data, but it's a created or simulated data equal and based on real data. It looks, feels, smells, taste like a real data, but it's not exactly real data, right? This is particularly useful in the financial and healthcare industry for world. So you don't have to, at the end of the day, if you have real data about your and my medical history data, if you redact it, you can still reverse this. It's fairly easy, right? >> Yeah, yeah. >> So by creating a synthetic data, there is no correlation between the real data and the synthetic data. >> So that's part of AI ethics and privacy and, okay. >> So the synthetic data, the issue with that is that when you're trying to commingle that with that, you can't create models based on just on synthetic data because synthetic data, as I said is artificial data. So basically you're creating artificial models, so you got to blend in properly that that blend is the problem. And you know how much of real data, how much of synthetic data you could use. You got to use judgment between efficiency cost and the time duration stuff. So that's one-- >> And risk >> And the risk involved with that. And the secondary issues which we talked about is that when you're creating, okay, you take a business use case, okay, you think about investing things, you build the whole thing out and you're trying to put it out into the market. Most companies that I talk to don't have a proper governance in place. They don't have ethics standards in place. They don't worry about the biases in data, they just go on trying to solve a business case >> It's wild west. >> 'Cause that's what they start. It's a wild west! And then at the end of the day when they are close to some legal litigation action or something or something else happens and that's when the Oh Shit! moments happens, right? And then they come in and say, "You know what, how do I fix this?" The governance, security and all of those things, ethics bias, data bias, de-biasing, none of them can be an afterthought. It got to start with the, from the get-go. So you got to start at the beginning saying that, "You know what, I'm going to do all of those AI programs, but before we get into this, we got to set some framework for doing all these things properly." Right? And then the-- >> Yeah. So let's go back to the key points. I want to bring up the cloud again. Because you got to get cloud right. Getting that right matters in AI to the points that you were making earlier. You can't just be out on an island and hyperscalers, they're going to obviously continue to do well. They get more and more data's going into the cloud and they have the native tools. To your point, in the case of AWS, Microsoft's obviously ubiquitous. Google's got great capabilities here. They've got integrated ecosystems partners that are going to continue to strengthen through the decade. What are your thoughts here? >> So a couple of things. One is the last mile ML or last mile AI that nobody's talking about. So that need to be attended to. There are lot of players in the market that coming up, when I talk about last mile, I'm talking about after you're done with the experimentation of the model, how fast and quickly and efficiently can you get it to production? So that's production being-- >> Compressing that time is going to put dollars in your pocket. >> Exactly. Right. >> So once, >> If you got it right. >> If you get it right, of course. So there are, there are a couple of issues with that. Once you figure out that model is working, that's perfect. People don't realize, the moment you decide that moment when the decision is made, it's like a new car. After you purchase the value decreases on a minute basis. Same thing with the models. Once the model is created, you need to be in production right away because it starts losing it value on a seconds minute basis. So issue number one, how fast can I get it over there? So your deployment, you are inferencing efficiently at the edge locations, your optimization, your security, all of this is at issue. But you know what is more important than that in the last mile? You keep the model up, you continue to work on, again, going back to the car analogy, at one point you got to figure out your car is costing more than to operate. So you got to get a new car, right? And that's the same thing with the models as well. If your model has reached a stage, it is actually a potential risk for your operation. To give you an idea, if Uber has a model, the first time when you get a car from going from point A to B cost you $60. If the model decayed the next time I might give you a $40 rate, I would take it definitely. But it's lost for the company. The business risk associated with operating on a bad model, you should realize it immediately, pull the model out, retrain it, redeploy it. That's is key. >> And that's got to be huge in security model recency and security to the extent that you can get real time is big. I mean you, you see Palo Alto, CrowdStrike, a lot of other security companies are injecting AI. Again, they won't show up in the ETR ML/AI taxonomy per se as a pure play. But ServiceNow is another company that you have have mentioned to me, offline. AI is just getting embedded everywhere. >> Yep. >> And then I'm glad you brought up, kind of real-time inferencing 'cause a lot of the modeling, if we can go back to the last point that we're going to make, a lot of the AI today is modeling done in the cloud. The last point we wanted to make here, I'd love to get your thoughts on this, is real-time AI inferencing for instance at the edge is going to become increasingly important for us. It's going to usher in new economics, new types of silicon, particularly arm-based. We've covered that a lot on "Breaking Analysis", new tooling, new companies and that could disrupt the sort of cloud model if new economics emerge. 'Cause cloud obviously very centralized, they're trying to decentralize it. But over the course of this decade we could see some real disruption there. Andy, give us your final thoughts on that. >> Yes and no. I mean at the end of the day, cloud is kind of centralized now, but a lot of this companies including, AWS is kind of trying to decentralize that by putting their own sub-centers and edge locations. >> Local zones, outposts. >> Yeah, exactly. Particularly the outpost concept. And if it can even become like a micro center and stuff, it won't go to the localized level of, I go to a single IOT level. But again, the cloud extends itself to that level. So if there is an opportunity need for it, the hyperscalers will figure out a way to fit that model. So I wouldn't too much worry about that, about deployment and where to have it and what to do with that. But you know, figure out the right business use case, get the right data, get the ethics and governance place and make sure they get it to production and make sure you pull the model out when it's not operating well. >> Excellent advice. Andy, I got to thank you for coming into the studio today, helping us with this "Breaking Analysis" segment. Outstanding collaboration and insights and input in today's episode. Hope we can do more. >> Thank you. Thanks for having me. I appreciate it. >> You're very welcome. All right. I want to thank Alex Marson who's on production and manages the podcast. Ken Schiffman as well. Kristen Martin and Cheryl Knight helped get the word out on social media and our newsletters. And Rob Hoof is our editor-in-chief over at Silicon Angle. He does some great editing for us. Thank you all. Remember all these episodes are available as podcast. Wherever you listen, all you got to do is search "Breaking Analysis" podcast. I publish each week on wikibon.com and silicon angle.com or you can email me at david.vellante@siliconangle.com to get in touch, or DM me at dvellante or comment on our LinkedIn posts. Please check out ETR.AI for the best survey data and the enterprise tech business, Constellation Research. Andy publishes there some awesome information on AI and data. This is Dave Vellante for theCUBE Insights powered by ETR. Thanks for watching everybody and we'll see you next time on "Breaking Analysis". (gentle closing tune plays)

Published Date : Dec 29 2022

SUMMARY :

bringing you data-driven Andy, great to have you on the program. and AI at the center of their enterprises. So it's like you found a of the AI use cases," right? I got a glimpse of the January survey, So one of the things and it just notes some of the players So the first one is, Like a And the open AI tool and ChatGPT rather. I have, but it's of all the available text of bodies that you need or some of the others that are on there? One of the things they're So the data historically So here's the thing. So the ROI is going to So the chart here shows the net score, Couple of them stood out to me IBM Watson is the far right and the red, And over the course of when you first saw it. I mean, that's one of the pillars. Oracle is not necessarily the how DataRobot is holding, you know? So it's like net score on the vertical database of the choice, you know? on how to make this more Are they going to go IPO? So at the end of the day, of the technology industry. So 99% of the time you What's that synthetic at the end of the day, and the synthetic data. So that's part of AI that blend is the problem. And the risk involved with that. So you got to start at data's going into the cloud So that need to be attended to. is going to put dollars the first time when you that you can get real time is big. a lot of the AI today is I mean at the end of the day, and make sure they get it to production Andy, I got to thank you for Thanks for having me. and manages the podcast.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
DavePERSON

0.99+

Alex MarsonPERSON

0.99+

AndyPERSON

0.99+

Andy ThuraiPERSON

0.99+

Dave VellantePERSON

0.99+

AWSORGANIZATION

0.99+

IBMORGANIZATION

0.99+

Ken SchiffmanPERSON

0.99+

Tom DavenportPERSON

0.99+

AMEXORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

Cheryl KnightPERSON

0.99+

Rashmi KumarPERSON

0.99+

Rob HoofPERSON

0.99+

GoogleORGANIZATION

0.99+

UberORGANIZATION

0.99+

KenPERSON

0.99+

OracleORGANIZATION

0.99+

OctoberDATE

0.99+

6%QUANTITY

0.99+

$40QUANTITY

0.99+

January 21DATE

0.99+

ChipotleORGANIZATION

0.99+

$15 billionQUANTITY

0.99+

fiveQUANTITY

0.99+

RashmiPERSON

0.99+

$50,000QUANTITY

0.99+

$60QUANTITY

0.99+

USLOCATION

0.99+

JanuaryDATE

0.99+

AntonioPERSON

0.99+

John AkersPERSON

0.99+

Warren BuffetPERSON

0.99+

late 2018DATE

0.99+

IkeaORGANIZATION

0.99+

American ExpressORGANIZATION

0.99+

MITORGANIZATION

0.99+

PWCORGANIZATION

0.99+

99%QUANTITY

0.99+

HPEORGANIZATION

0.99+

DominoORGANIZATION

0.99+

ArvindPERSON

0.99+

Palo AltoLOCATION

0.99+

30 billionQUANTITY

0.99+

last yearDATE

0.99+

Constellation ResearchORGANIZATION

0.99+

GerstnerPERSON

0.99+

120 billionQUANTITY

0.99+

$100,000QUANTITY

0.99+

Unpacking Palo Alto Networks Ignite22 | Palo Alto Networks Ignite22


 

>> Announcer: TheCUBE presents Ignite '22, brought to you by Palo Alto Networks. >> Welcome back to Las Vegas. It's theCUBE covering Palo Alto Networks '22, from the MGM Grand, Lisa Martin with Dave Vellante. Dave, we are going to unpack in the next few minutes what we heard and saw at day one of Palo Alto Networks, Ignite. A lot of great conversations, some great guests on the program today. >> Yeah last event, CUBE event of the year. Probably last major tech event of the year. It's kind of an interesting choice of timing, two weeks after reInvent. But you know, this crowd is it's a lot of like network engineers, SecOps pros. There's not a lot of suits here. I think they were here yesterday, all the partners. >> Yeah. >> We talked to Carl Sunderland about, Hey, these, these guys want to know how do I grow my business? You know, so it was a lot of C level executives talking about their business, and how they partner with Palo Alto to grow. The crowd today is really, you know hardcore security professionals. >> Yeah. >> So we're hearing a story of consolidation. >> Yes. >> No surprise. We've talked about that and reported on it, you know, quite extensively. The one big takeaway, and I want, I came in, as you know, wanting to understand, okay, can you through m and a maintain, you know, build a suite of great, big portfolio and at the same time maintain best of breed? And the answer was consistent. We heard it from Nikesh, we heard it from Nir Zuk. The answer was you can't be best of breed without having that large portfolio, single data lake, you know? Single version of the truth, of there is such a thing. That was interesting, that in security, you have to have that visibility. I would imagine, that's true for a lot of things. Data, see what Snowflake and Databricks are both trying to do, now AWS. So to join, we heard that last week, so that was one of the big takeaways. What were your, some of your thoughts? >> Just impressed with the level of threat intelligence that Unit 42 has done. I mean, we had Wendy Whitmer on, and she was one of the alumni, great guest. The landscape has changed so dramatically. Every business, in any industry, nobody's safe. They have such great intelligence on what's going on with malware, with ransomware, with Smishing, that they're able to get, help organizations on their way to becoming cyber resilient. You know, we've been talking a lot about cyber resiliency lately. I always want to understand, well what does it mean? How do different organizations and customers define it? Can they actually really get there? And Wendy talked about yes, it is a journey, but organizations can achieve cyber resiliency. But they need to partner with Palo Alto Networks to be able to understand the landscape and ensure that they've got security established across their organization, as it's now growingly Multicloud. >> Yeah, she's a blonde-haired Wonder Woman, superhero. I always ask security pros that question. But you know, when you talk to people like Wendy Whitmore, Kevin Mandy is somebody else. And the people at AWS, or the big cloud companies, who are on the inside, looking at the threat intelligence. They have so much data, and they have so much knowledge. They can, they analyze, they could identify the fingerprints of nation states, different, you know, criminal organizations. And the the one thing, I think it was Wendy who said, maybe it was somebody else, I think it was Wendy, that they're they're tearing down and reforming, right? >> Yes. >> After they're discovered. Okay, they pack up and leave. They're like, you know, Oceans 11. >> Yep. >> Okay. And then they recruit them and bring them back in. So that was really fascinating. Nir Zuk, we'd never had him on theCUBE before. He was tremendous founder and and CTO of Palo Alto Networks, very opinionated. You know, very clear thinker, basically saying, look you're SOC is going to be run by AI >> Yeah. >> within the next five years. And machines are going to do things that humans can't do at scale, is really what he was saying. And then they're going to get better at that, and they're going to do other things that you have done well that they haven't done well, and then they're going to do well. And so, this is an interesting discussion about you know, I remember, you know we had an event with MIT. Eric Brynjolfsson and Andy McAfee, they wrote the book "Second Machine Age." And they made the point, machines have always replaced humans. This is the first time ever that machines are replacing humans in cognitive functions. So what does that mean? That means that humans have to rely on, you know, creativity. There's got to be new training, new thinking. So it's not like you're going to be out of a job, you're just going to be doing a different job. >> Right. I thought Nir Zuk did a great job of explaining that. We often hear people that are concerned with machines taking jobs. He did a great job of, and you did a great recap, of articulating the value that both bring, and the opportunities to the humans that the machines actually deliver as well. >> Yeah so, you know, we didn't, we didn't get deep into the products today. Tomorrow we're going to have a little bit more deep dive on products. We did, we had some partners on, AWS came on, talked about their ecosystem. BJ Jenkins so, you know, BJ Jenkins again I mean super senior executive. And if I were Nikesh, he's doing exactly what I would do. Putting him on a plane and saying, go meet with customers, go make rain, right? And that's what he's doing is, he's an individual who really knows how to interact with the C-suite, has driven value, you know, over the years. So they've got that angle goin', they're driving go to market. They've got the technology piece and they've, they got to build out the ecosystem. That I think is the big opportunity for them. You know, if they're going to double as a company, this ecosystem has to quadruple. >> Yeah, yeah. >> In my opinion. And I, we saw the same thing at CrowdStrike. We said the same thing about Service Now in 2013. And so, what's happened is the GSIs, the global system integrators start to get involved. They start to partner with them and then they get to get that flywheel effect. And then there's a supercloud, I think that, you know I think Nir Zuk said, Hey, we are basically building out that, he didn't use the term supercloud. But, we're building out that cross cloud capability. You don't need another stove pipe for the edge. You know, so they got on-prem, they got AWS, Azure, you said you have to, absolutely have to run on Microsoft. 'Cause I don't believe today, right? Today they run on, I heard somebody say they run on AWS and Google. >> Yeah. >> I haven't heard much about Microsoft. >> Right. >> Both AWS and Google are here. Microsoft, the bigger competitor in security, but Nir Zuk was unequivocal. Yes, of course you have to run, you got to run it on an Alibaba cloud. He didn't say that, but if you want to secure the China cloud, you got to run on Alibaba. >> Absolutely. >> And Oracle he said. Didn't mention IBM, but no reason they can't run on IBM's cloud. But unless IBM doesn't want 'em to. >> Well they're very customer focused and customer first. So it'll be interesting to see if customers take them in that direction. >> Well it's a good point, right? If customers say, Hey we want you running in this cloud, they will. And, but he did call out Oracle, which I thought was interesting. And so, Oracle's all about mission critical data, mission critical apps. So, you know, that's a good sign. You know, I mean there's so much opportunity in cyber, but so much confusion. You know, sneak had a raise today. It was a down round, no surprise there. But you know, these companies are going to start getting tight on cash, and you've seen layoffs, right? And so, I dunno who said it, I think it was Carl at the end said in a downturn, the strongest companies come out stronger. And that's generally, generally been the case. That kind of rich get richer. We see that in the last downturn? Yes and no, to a certain extent. It's still all about execution. I mean I think about EMC coming out of the last downturn. They did come out stronger and then they started to rocket, but then look what happened. They couldn't remain independent. They were just using m and a as a technique to hide the warts. You know so, what Nir Zuk said that was most interesting to me is when we acquire, we acquire with the intent of integrating. ServiceNow has a similar philosophy. I think that's why they've been somewhat successful. And Oracle, for sure, has had a similar philosophy. So, and that idea of shifting labor into vendor R and D has always been a winning formula. >> I think we heard that today. Excited for day two tomorrow. We've got some great conversations. We're going to be able to talk with some customers, the chief product officer is on. So we have more great content coming from our last live show over the year. Dave, it's been great co-hosting day one with you. Look forward to doing it tomorrow. >> Yeah, thanks for doing this. >> All right. >> All right. For Dave Vellante, I'm Lisa Martin. You've been watching theCUBE, the leader in live enterprise and emerging tech coverage. See you tomorrow. (gentle music fades)

Published Date : Dec 14 2022

SUMMARY :

brought to you by Palo Alto Networks. in the next few minutes CUBE event of the year. We talked to Carl Sunderland So we're hearing a And the answer was consistent. that they're able to But you know, when you talk to people They're like, you know, Oceans 11. And then they recruit them and then they're going to do well. and the opportunities to the humans You know, if they're going to double I think that, you know Yes, of course you have to run, And Oracle he said. So it'll be interesting to see We see that in the last downturn? I think we heard that today. See you tomorrow.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Lisa MartinPERSON

0.99+

BJ JenkinsPERSON

0.99+

IBMORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

Dave VellantePERSON

0.99+

Carl SunderlandPERSON

0.99+

Kevin MandyPERSON

0.99+

OracleORGANIZATION

0.99+

Wendy WhitmorePERSON

0.99+

Eric BrynjolfssonPERSON

0.99+

GoogleORGANIZATION

0.99+

2013DATE

0.99+

Nir ZukPERSON

0.99+

Andy McAfeePERSON

0.99+

Palo Alto NetworksORGANIZATION

0.99+

AWSORGANIZATION

0.99+

WendyPERSON

0.99+

DavePERSON

0.99+

AlibabaORGANIZATION

0.99+

TodayDATE

0.99+

Las VegasLOCATION

0.99+

todayDATE

0.99+

MITORGANIZATION

0.99+

TomorrowDATE

0.99+

Lisa MartinPERSON

0.99+

EMCORGANIZATION

0.99+

tomorrowDATE

0.99+

last weekDATE

0.99+

Second Machine AgeTITLE

0.99+

oneQUANTITY

0.99+

yesterdayDATE

0.99+

CrowdStrikeORGANIZATION

0.99+

SnowflakeORGANIZATION

0.98+

Wendy WhitmerPERSON

0.98+

TheCUBEORGANIZATION

0.98+

Wonder WomanPERSON

0.98+

BothQUANTITY

0.98+

bothQUANTITY

0.98+

ServiceNowORGANIZATION

0.98+

MulticloudORGANIZATION

0.97+

DatabricksORGANIZATION

0.97+

Oceans 11ORGANIZATION

0.97+

Ignite '22EVENT

0.97+

Unit 42ORGANIZATION

0.96+

MGM GrandORGANIZATION

0.95+

ChinaLOCATION

0.95+

SingleQUANTITY

0.92+

day twoQUANTITY

0.91+

CarlPERSON

0.91+

one thingQUANTITY

0.87+

day oneQUANTITY

0.87+

CUBEORGANIZATION

0.86+

AzureORGANIZATION

0.85+

firstQUANTITY

0.85+

Palo AltoORGANIZATION

0.8+

single dataQUANTITY

0.78+

IgniteORGANIZATION

0.77+

theCUBEORGANIZATION

0.77+

Palo Alto Networks '22EVENT

0.75+

next five yearsDATE

0.72+

BJ Jenkins, Palo Alto Networks | Palo Alto Networks Ignite22


 

>> TheCUBE presents Ignite 22 brought to you by Palo Alto Networks. >> Welcome back to Las Vegas, everyone. We're glad you're with us. This is theCUBE live at Palo Alto Ignite 22 at the MGM Grant in Las Vegas. Lisa Martin here with Dave Vellante, day one of our coverage. We've had great conversations. The cybersecurity landscape is so interesting Dave, it's such a challenging problem to solve but it's so diverse and dynamic at the same time. >> You know, Lisa theCUBE started in May of 2010 in Boston. We called it the chowder event, chowder and Lobster. It was a EMC world, 2010. BJ Jenkins, who's here, of course, was a longtime friend of theCUBE and made the, made the transition into from, well, it's still data, data to, to cyber. So >> True. And BJ is back with us. BJ Jenkins, president Palo Alto Networks great to have you back on theCUBE. >> It is great to be here in person on theCube >> Isn't it great? >> In Vegas. It's awesome. >> And we can tell by your voice will be, will be gentle. You, you've been in Vegas typical Vegas occupational hazard of losing the voice. >> Yeah. It was one of the benefits of Covid. I didn't lose my voice at home sitting talking to a TV. You lose it when you come to Vegas. >> Exactly. >> But it's a small price to pay. >> So things kick off yesterday with the partner summit. You had a keynote then, you had a customer, a CISO on stage. You had a keynote today, which we didn't get to see. But talk to us a little bit about the lay of the land. What are you hearing from CISOs, from CIOs as we know security is a board level conversation. >> Yeah, I, you know it's been an interesting three or four months here. Let me start with that. I think, cybersecurity in general is still front and center on CIOs and CISO's minds. It has to be, if you saw Wendy's presentation today and the threats out there companies have to have it front and center. I do think it's been interesting though with the macro uncertainty. We've taken to calling this year the revenge of the CFO and you know these deals in cybersecurity are still a top priority but they're getting finance and procurements, scrutiny which I think in this environment is a necessity but it's still a, you know, number one number two imperative no matter who you talked to, in my mind >> It was interesting what Nikesh was saying in the last conference call that, hey we just have to get more approvals. We know this. We're, we're bringing more go-to-market people on board. We, we have, we're filling the pipeline 'cause we know they're going to split up deals big deals go into smaller chunks. So the question I have for you is is how are you able to successfully integrate those people so that you can get ahead of that sort of macro transition? >> Yeah I, you know, I think there's two things I'd say about uncertain macro situations and Dave, you know how old I am. I'm pretty old. I've been through a lot of cycles. And in those cycles I've always found stronger companies with stronger value proposition separate themselves actually in uncertain, economic times. And so I think there's actually an opportunity here. The message tilts a little bit though where it's been about innovation and new threat vectors to one of you have 20, 30, 40 vendors you can consolidate become more effective in your security posture and save money on your TCOs. So one of the things as we bring people on board it's training them on that business value proposition. How do you take a customer who's got 20 or 30 tools take 'em down to 5 or 10 where Palo is more central and strategic and be able to demonstrate that value. So we do that through, we're making a huge investment in our people but macroeconomic times also puts some stronger people back on the market and we're able to incorporate them into the business. >> What are the conditions that are necessary for that consolidation? Like I would imagine if you're, if you're a big customer of a big, you know, competitor of yours that that migration is going to be harder than if you're dealing with lots of little point tools. Do those, do those point tools, are they sort of is it the end of the subscription? Is it just stuff that's off the books now? What's, the condition that is ripe for that kind of consolidation? >> Look, I think the challenge coming into this year was skills. And so customers had all of these point products. It required a lot more human intervention as Nikesh was talking about to integrate them or make them work. And as all of us know finding people with cybersecurity skills over the last 12 months has been incredibly hard. That drove, if you know, if you think about that a CIO and a CISO sitting there going, I have all all this investment in tools. I don't have the people to operate 'em. What do I need to do? What we tried to do is elevate that conversation because in a customer, everybody who's bought one of those, they they bought it to solve a problem. And there's people with affinity for that tool. They're not just going to say I want to get consolidated and give up my tool. They're going to wrap their arms around it. And so what we needed to do and this changed our ecosystem strategy too how we leverage partners. We needed to get into the CIO and CISO and say look at this chaos you have here and the challenges around people that it's, it's presenting you. We can help solve that by, by standardizing, consolidating taking that integration away from you as Nikesh talked about, and making it easier for your your high skill people to work on high skill, you know high challenges in there. >> Let chaos reign, and then reign in the chaos. >> Yes. >> Andy Grove. >> I was looking at some stats that there's 26 million developers but less than 3 million cybersecurity professionals. >> Talked about that skills gap and what CISOs and CIOs are facing is do you consider from a value prop perspective Palo Alto Networks to be a, a facilitator of helping organizations deal with that skills gap? >> I think there's a short term and a long term. I think Nikesh today talked about the long term that we'll never win this battle with human beings. We're going to have to win it with automation. That, that's the long term the short term right here and now is that people need people with cybersecurity skills. Now what we're trying to do, you know, is multifaceted. We work with universities to standardize programs to develop skills that people can come into the marketplace with. We run our own programs inside the company. We have a cloud academy program now where we take people high aptitude for sales and technical aptitude and we will put them through a six month boot camp on cloud and they'll come out of that ready to really work with the leading experts in cloud security. The third angle is partners, right, there are partners in the marketplace who want to drive their business into high services areas. They have people, they know how to train. We give them, we partner with them to give them training. Hopefully that helps solve some of the short-term gaps that are out there today. >> So you made the jump from data storage to security and >> Yeah. >> You know, network security, all kinds of security. What was that like? What you must have learned a lot in the last better part of a decade? >> Yeah. >> Take us through that. >> You know, so the first jump was from EMC. I was 15 years there to be CEO of Barracuda. And you know, it was interesting because EMC was, you know large enterprise for the most part. At Barracuda we had, you know 250,000 small and mid-size enterprises. And it was, it's interesting to get into security in small and mid-size businesses because, you know Wendy today was talking about nation states. For small and mid-size business, it's common thievery right? It's ransomware, it's, and, those customers don't have, you know, the human and financial resources to keep up with the threat factor. So, you know, Nikesh talked about how it's taken 'em four and a half years to get into cybersecurity. I remember my first week at Barracuda, I was talking with a customer who had, you know, breached data shut down. There wasn't much bitcoin back then so it was just a pure ransom. And I'm like, wow, this is, you know, incredible industry. So it's been a good, you know, transition for me. I still think data is at the heart of all of this. Right? And I have always believed there's a strong connection between the things I learned growing up at EMC and what I put into practice today at Palo Alto Networks. >> And how about a culture because I, you know I know have observed the EMC culture >> Yeah. >> And you were there in really the heyday. >> Yeah. >> Right? Which was an awesome place. And it seems like Palo Alto obviously, different times but you know, similar like laser focus on solving problems, you know, obviously great, you know value sellers, you know, you guys aren't the commodity >> Yeah. For Product. But there seemed to be some similarities from afar. I don't know Palo Alto as well as I know EMC. >> I think there's a lot. When I joined EMC, it was about, it was 2 billion in in revenue and I think when I left it was over 20, 20, 21. And, you know, we're at, you know hopefully 5, 5 5 in revenue. I feel like it's this very similar, there's a sense of urgency, there's an incredible focus on the customer. you know, Near and Moche are definitely different individuals but the both same kind of disruptive, Israeli force out there driving the business. There are a lot of similarities. I, you know, the passion, I feel privileged as a, you know go to market person that I have this incredible portfolio to go, you know, work with customers on. It's a lucky position to be in, but very I feel like it is a movie I've seen before. >> Yeah. And but, and the course, the challenges from the, the target that you're disrupting is different. It was, you know, EMC had a lot of big, you know IBM obviously was, you know, bigger target whereas you got thousands of, you know, smaller companies. >> Yes. >> And, and so that's a different dynamic but that's why the consolidation play is so important. >> Look at, that's why I joined Palo Alto Networks when I was at Barracuda for nine years. It just fascinated me, that there was 3000 plus players in security and why didn't security evolve like the storage market did or the server market or network where working >> Yeah, right. >> You know, two or three big gorillas came to, to dominate those markets. And it's, I think it's what Nikesh talked about today. There was a new problem in best of breed. It was always best of breed. You can never in security go in and, you know, say, Hey it's good I saved us some money but I got the third best product in the marketplace. And there was that kind of gap between products. I, believe in why I joined here I think this is my last gig is we have a chance to change that. And this is the first company as I look from the outside in that had best of breed as, you know Nikesh said 13 categories. >> Yeah. >> And you know, we're in the leaders quadrant and it's a conversation I have with customers. You don't have to sacrifice best of breed but get the benefits of a platform. And I, think that resonates today. I think we have a chance to change the industry from that viewpoint. >> Give us a little view of the voice of the customer. You had, was it Sabre? >> Yeah. >> That was on >> Scott Moser, The CISO from Sabre. >> Give us a view, what are you hearing from the voice of the customer? Obviously they're quite a successful customer but challenges, concerns, the partnership. >> Yeah. Look, I think security is similar to industries where we come up with magic marketing phrases and, you know, things to you know, make you want to procure our solutions. You know, zero trust is one. And you know, you'll talk to customers and they're like, okay, yes. And you know, the government, right? Joe, Joe Biden's putting out zero trust executive orders. And the, the problem is if you talk to customers, it's a journey. They have legacy infrastructure they have business drivers that you know they just don't deal with us. They've got to deal with the business side who's trying to make the money that keeps the, the company going. it's really helped them draw a map from where they're at today to zero trust or to a better security architecture. Or, you know, they're moving their apps into the cloud. How am I going to migrate? Right? Again, that discussion three years ago was around lift and shift, right? Today it's about, well, no I need cloud native developed apps to service the business the way I want to, I want to service it. How do I, so I, I think there's this element of a trusted partner and relationship. And again, I think this is why you can't have 40 or 50 of those. You got to start narrowing it down if you want to be able to meet and beat the threats that are out there for you. So I, you know, the customers, I see a lot of 'em. It's, here's where I'm at help me get here to a better position. And they know it's, you know Scott said in our keynote today, you don't just, you know have layer three firewall policies and decide, okay tomorrow I'm going to go to layer seven. That, that's not how it works. Right? There's, and, and by the way these things are a mission critical type areas. So there's got to be a game plan that you help customers go through to get there. >> Definitely. Last question, my last question for you is, is security being a board level conversation I was reading some stats from a survey I think it was the what's new in Cypress survey that that Palo Alto released today that showed that while significant numbers of organizations think they've got a cyber resiliency playbook, there's a lot of disconnect or lack of alignment at the boardroom. Are you in those conversations? How can you help facilitate that alignment between the executive team and the board when it comes to security being so foundational to any business? >> Yeah, it's, I've been on three, four public company boards. I'm on, I'm on two today. I would say four years ago, this was a almost a taboo topic. It was a, put your head in the sand and pray to God nothing happened. And you know, the world has changed significantly. And because of the number of breaches the impact it's had on brand, boards have to think about this in duty of care and their fiduciary duty. Okay. So then you start with a board that may not have the technical skills. The first problem the security industry had is how do I explain your risk profile in a way you can understand it. I'm, I'm on the board of Generac that makes home generators. It's a manufacturing, you know, company but they put Wifi modules in their boxes so that the dealers could help do the maintenance on 'em. And all of a sudden these things were getting attacked. Right? And they're being used for bot attacks. >> Yeah. >> Everybody on their board had a manufacturing background. >> Ah. >> So how do you help that board understand the risk they have that's what's changed over the last four years. It's a constant discussion. It's one I have with CISOs where they're like help us put it in layman's terms so they understand they know what we're doing and they feel confident but at the same time understand the marketplace better. And that's a journey for us. >> That Generac example is a great one because, you know, think about IOT Technologies. They've historically been air gaped >> Yes. >> By design. And all of a sudden the business comes in and says, "Hey we can put wifi in there", you know >> Connect it to a home Wifi system that >> Make our lives so much easier. Next thing you know, it's being used to attack. >> Yeah. >> So that's why, as you go around the world are you discerning, I know you were just in Japan are you discerning significant differences in sort of attitudes toward, towards cyber? Whether it's public policy, you know things like regulation where you, they don't want you sharing data, but as as a cyber company, you want to share that data with you know, public and private? >> Look it, I, I think around the world we see incredible government activity first of all. And I think given the position we're in we get to have some unique conversations there. I would say worldwide security is an imperative. I, no matter where I go, you know it's in front of everybody's mind. The, on the, the governance side, it's really what do we need to adapt to make sure we meet local regulations. And I, and I would just tell you Dave there's ways when you do that, and we talk with governments that because of how they want to do it reduce our ability to give them full insight into all the threats and how we can help them. And I do think over time governments understand that we can anonymize the data. There's, but that, that's a work in process. Definitely there is a balance. We need to have privacy, we need to have, you know personal security for people. But there's ways to collect that data in an anonymous way and give better security insight back into the architectures that are out there. >> All right. A little shift the gears here. A little sports question. We've had some great Boston's sports guests on theCUBE right? I mean, Randy Seidel, we were talking about him. Peter McKay, Snyk, I guess he's a competitor now but you know, there's no question got >> He got a little funding today. I saw that. >> Down round. But they still got a lot of money. Not of a down round, but they were, but yeah, but actually, you know, he was on several years ago and it was around the time they were talking about trading Brady. He said Never trade Brady. And he got that right. We, I think we can agree Brady's the goat. >> Yes. >> The big question I have for you is, Belichick. Do you ever question Has your belief in him as the greatest coach of all time wavered, you know, now that- No. Okay. >> Never. >> Weigh in on that. >> Never, he says >> Still the Goat. >> I'll give you my best. You know, never In Bill we trust. >> Okay. Still. >> All right >> I, you know, the NFL is a unique property that's designed for parody and is designed, I mean actively designed to not let Mr. Craft and Bill Belichick do what they do every year. I feel privileged as a Boston sports fan that in our worst years we're in the seventh playoff spot. And I have a lot of family in Chicago who would kill for that position, by the way. And you know, they're in perpetual rebuilding. And so look, and I think he, you know the way he's been able to manage the cap and the skill levels, I think we have a top five defense. There's different ways to win titles. And if I, you know, remember in Brady's last title with Boston, the defense won us that Super Bowl. >> Well thanks for weighing in on that because there's a lot of crazy talk going on. Like, 'Hey, if he doesn't beat Arizona, he's got to go.' I'm like, what? So, okay, I'm sometimes it takes a good good loyal fan who's maybe, you know, has >> The good news in Boston is we're emotional fans too so I understand you got to keep the long term long term in mind. And we're, we're in a privileged position in Boston. We've got Celtics, we've got Bruins we've got the Patriots right on the edge of the playoffs and we need the Red Sox to get to work. >> Yeah, no, you know they were last, last year so maybe they're going to win it all like they usually do. So >> Fingers crossed. >> Crazy worst to first. >> Exactly. Well you said, in Bill we trust it sounds like from our conversation in BJ we trust from the customers, the partners. >> I hope so. >> Thank you so much BJ, for coming back on theCUBE giving us the lay of the land, what's new, the voice of the customer and how Palo Alto was really differentiated in the market. We always appreciate your, coming on the show you >> Honor and privilege seeing you here. Thanks. >> You may be thinking that you were watching ESPN just now but you know, we call ourselves the ESPN at Tech News. This is Lisa Martin for Dave Vellante and our guest. You're watching theCUBE, the Leader and live emerging in enterprise tech coverage. (upbeat music)

Published Date : Dec 14 2022

SUMMARY :

brought to you by Palo Alto Networks. Alto Ignite 22 at the MGM Grant We called it the chowder great to have you back on theCUBE. It's awesome. hazard of losing the voice. You lose it when you come to Vegas. You had a keynote then, you had the revenge of the CFO and you know So the question I have for you is Yeah I, you know, I think of a big, you know, competitor of yours I don't have the people to operate 'em. Let chaos reign, and I was looking at some stats you know, is multifaceted. What you must have learned a lot And you know, it was interesting And you were there but you know, similar like laser focus there seemed to be some portfolio to go, you know, a lot of big, you know And, and so that's a different dynamic like the storage market did in and, you know, say, Hey And you know, we're the voice of the customer. Give us a view, what are you hearing And you know, the government, right? How can you help facilitate that alignment And you know, the world Everybody on their but at the same time understand you know, think about IOT Technologies. we can put wifi in there", you know Next thing you know, it's we need to have, you know but you know, there's no question got I saw that. but actually, you know, he was of all time wavered, you I'll give you my best. And if I, you know, remember good loyal fan who's maybe, you know, has so I understand you got Yeah, no, you know they worst to first. Well you coming on the show you Honor and privilege seeing you here. but you know, we call ourselves

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Dave VellantePERSON

0.99+

Randy SeidelPERSON

0.99+

BJ JenkinsPERSON

0.99+

Bill BelichickPERSON

0.99+

Red SoxORGANIZATION

0.99+

BJPERSON

0.99+

VegasLOCATION

0.99+

Lisa MartinPERSON

0.99+

BradyPERSON

0.99+

20QUANTITY

0.99+

40QUANTITY

0.99+

ScottPERSON

0.99+

EMCORGANIZATION

0.99+

DavePERSON

0.99+

JoePERSON

0.99+

ChicagoLOCATION

0.99+

PatriotsORGANIZATION

0.99+

BostonLOCATION

0.99+

Scott MoserPERSON

0.99+

50QUANTITY

0.99+

Palo Alto NetworksORGANIZATION

0.99+

CelticsORGANIZATION

0.99+

IBMORGANIZATION

0.99+

twoQUANTITY

0.99+

May of 2010DATE

0.99+

Andy GrovePERSON

0.99+

Las VegasLOCATION

0.99+

BarracudaORGANIZATION

0.99+

threeQUANTITY

0.99+

Joe BidenPERSON

0.99+

2010DATE

0.99+

SabreORGANIZATION

0.99+

250,000QUANTITY

0.99+

tomorrowDATE

0.99+

last yearDATE

0.99+

2 billionQUANTITY

0.99+

thousandsQUANTITY

0.99+

15 yearsQUANTITY

0.99+

nine yearsQUANTITY

0.99+

six monthQUANTITY

0.99+

todayDATE

0.99+

30QUANTITY

0.99+

GeneracORGANIZATION

0.99+

BelichickPERSON

0.99+

JapanLOCATION

0.99+

WendyPERSON

0.99+

yesterdayDATE

0.99+

Peter McKayPERSON

0.99+

NikeshORGANIZATION

0.99+

TodayDATE

0.99+

21QUANTITY

0.99+

13 categoriesQUANTITY

0.99+

Super BowlEVENT

0.99+

CraftPERSON

0.99+

ESPNORGANIZATION

0.99+

Palo AltoORGANIZATION

0.99+

two thingsQUANTITY

0.99+

four and a half yearsQUANTITY

0.99+

Palo AltoLOCATION

0.99+

four monthsQUANTITY

0.99+

BostonORGANIZATION

0.99+

third angleQUANTITY

0.98+

ArizonaORGANIZATION

0.98+

30 toolsQUANTITY

0.98+

oneQUANTITY

0.98+

Haseeb Budhani, Rafay & Rakesh Singh, Regeneron | AWS re:Invent 2022


 

(upbeat music) >> Welcome back to theCUBE's live coverage of AWS re:Invent. Friends, it's good to see you. Lisa Martin here with Dave Vellante. This is our fourth day of CUBE wall-to-wall coverage, Dave. I can't believe it. And the expo hall is still going incredibly strong. >> Yeah, it is. It feels like the biggest re:Invent ever. I'm told it's almost as big as 2019. I don't know, maybe I was half asleep at 2019. That's very possible. But I'm excited because in 2017 Andy Jassy came on theCUBE and he said if Amazon had to do it all over again, if it knew then what it had now, we would've done the whole thing in containers or using Lambda, using serverless and using containers. Didn't have that opportunity back then. And I'm excited 'cause Rafay Systems is someone we've worked with a lot as an innovator in this space. >> Yep, and we're going to be talking with Rafay again. I think it's your 10th time Haseeb on the show >> Like once or twice. >> And a great customer who's going to talk about their serverless journey. Haseeb Budhani joins us once again, the CEO of Rafay. Great to see you. Rakesh Singh is here as well, the Head of Cloud and DevOps at Regeneron. Guys, it's great to have you on the program. How you feeling on day four of re:Invent? >> Excitement is as high as ever basically. >> Isn't it amazing? >> Rakesh: That's true. >> Haseeb: I just need some sleep. >> I'm with you on that. Caffeine and sleep. >> So many parties. So many meetings, oh my God. >> But the great thing is, Haseeb, that people want to engage with you. They're loving what Rafay is doing. You guys are a great testament to that, which we're going to uncover on the show. What are some of the things that you're hearing in the booth from customers? What's been some of the feedback? >> So firstly, as I said, it feels like the biggest one ever. I've been coming to re:Invent a long time and I mean, I know the numbers say it's not, but oh my God, this is a lot of people. Every time we've spoken over the last year and the point I always make to you, and we've spoken enough time about this is that enterprises are truly adopting this idea of Kubernetes containers, serverless, et cetera. And they're all trying to figure out what is the enterprise strategy for these things? They're thinking beyond technology and thinking operationalization of these technologies. And that's not the same thing. There's a toy and then there's the real thing. And that's not the same thing. And that's the gap that every enterprise customer I talked to and the booth traffic has been just amazing. I mean, but coming here I was thinking, my God, this is really expensive. And I'm thinking, wow, this is a great investment. Because we met such amazing companies who all essentially are saying exactly the same thing, which is as we go and productize and bring our high value applications to the modern infrastructure space, like Kubernetes, Lambda, et cetera, solving for the automation governance is really, really hard because, well, at one point, I guess when the economy was doing crazy well, I could keep hiring people, but I can't do that anymore either. So they're out looking for automation strategies that allow them to do more with the teams they have. And that's exactly what Rafay is here for. >> Yeah. Lisa, Adam Selipsky in his keynote, I love the, he said, "If you want to save money, the cloud is the place to do it." >> Exactly. Yep. Let's talk about Regeneron. Everyone knows it's a household word especially over the last couple of years, but talk about, Rakesh, Regeneron as a technology company that delivers life-saving pharmaceuticals. And where does cloud and Rafay fit into your strategy? >> So cloud has been a backbone of our compute strategy within Regeneron for a very long time now. The evolution from a traditional compute structure to more serverless compute has been growing at a rapid pace. And I would say like we are seeing exponential growth within the adaption of the compute within containers and Kubernetes world. So we've been on this journey for a long time and I think it's not stopping anytime soon. So we have more and more workload, which is running on Kubernetes containers and we are looking forward to our partnership with Rafay to further enhance it, as Haseeb mentioned, the efficiency is the key. We need to do more with less. Resourcing is critical and cloud is evolved from that journey that do more things in a more efficient manner. >> That was the original catalyst as we got to help our development team, be more productive. >> That's correct. >> Eliminate the heavy lifting. And then you started presumably doing some of the less heavy, but still heavy lifting and we talked off camera and then you're increasingly moving toward serverless. >> Rakesh: That's correct. >> Can you describe that journey? What that's like? >> So I think like with the whole adoption that things are taking a much faster pace. Basically we are putting more compute onto containers and the DevOps journey is increasingly getting more, more faster. >> Go ahead. 'Cause I want to understand where Rafay sits in this whole equation. I was talking about, I'm not a developer, but I was talking to developer yesterday trying to really understand the benefits of containers and serverless and I said, take me through what you have to do when you're using containers. He said, I got to build the container image then I got to deploy an EC2 instance where I got to choose and I got to allocate memory of the fence the app in a VM then I got to run the computing instance against the app. And then, oh by the way, I got to pay 'cause all that EC2 that whole time. Depending on how you approach serverless you're going to eliminate a lot of those steps. >> That is correct. So what we do is basically like in a traditional sense, the computer is sitting idle at quite a lot basically. >> But you're paying. >> And you're still paying for that. Serverless technologies allows us to use the compute as needed basis. So whenever you need it, it is available. You run your workload on that and after that it shuts down or goes to minimal state and you don't need to pay as much as your paying. >> And then where do you guys fit in that whole equation? >> Look, serverless has a paradigm. If you step back from the idea of containers versus Lambda or whatever functions. The idea should be that the list you just read out of what developers have to do. Here's what they really should do. They should write their code, they should check it in, and they never have to think about it again. That should be the case. If they want to debug their application, there should be a nice front end where they go and they interact with their application and that's it. What is Kubernetes? I don't care. That's the right answer. And we did not start this journey as an industry there because usually the initial adopters are developers who do the heavy lifting. Developers want to learn, they want to solve these problems. But then eventually the expectation is that the platform organization and an enterprise is going to own this platform for me so I can go back to doing my job, which is writing code. And that's where Rakesh's team comes in. So Rakesh team is building the standard at Regeneron. Whether you're writing a long-lasting app, which is going to run in a container or you're going to write an event-driven application, which is going to be a function, whatever. You write your app, we will give you the necessary tooling and plumbing to take care of all these things. And this is my problem. My being Rakesh. Rakesh is my customer. He has his customers. We as Rafay, A, we have to make Rakesh's system successful because we have to give them right automation to do all these things so that he can service hundred, or in his case, thousands and thousands of different individuals. But then collectively, we have to make sure that the developer experience is optimal so that truly they just write their code and EC2, they don't want to deal with this. In fact, on Monday evening, in the Kubernetes keynote by Barry Cooks, one of the things he said was that in a CIO sort of survey they did, CIO said, 80% of the time of developers is wasted on infrastructure stuff and not on innovation. We need to bring that 80% back so that a hundred percent of the work is on innovation and today it's not. >> And that's what you do. >> That's what we do. >> In your world as a developer, I only have to worry about my writing my code and what functions I'm going to call. >> That is correct. And it is important because the efficiencies of a developer need to be focused on doing the things which business is asking for. The 80% of the work like to make sure the things are secure, they're done the right way, the standards are followed, scanning part of it, that work if we can offload to a platform, for example, Rafay, saves a lot of works, a lot of work cycles from the developers perspective. >> Thank you for that. It was nice little tutorial on the benefits. >> Absolutely. So you transform the developer experience. >> That's correct. >> How does that impact Regeneron overall business? We uplevel that. Give me that view. >> So with that, like what happens, the key thing is the developers productivity increases. We are able to do more with less. And that is the key thing to our strategy that like with the increase in business demand, with the increase in lot of compute things, which we are doing, we need to do and hiring resources is getting more difficult than ever. And we need to make sure that we are leveraging platforms and tools basically to do, enable our developers to focus on key business activity rather than doing redundant things and things which we can leverage some other tooling and platform for that business. >> Is this something in terms of improving the developer experience and their productivity faster time to market? Is this accelerating? >> That's correct. >> Is this even like accelerating drug discovery in some cases? >> So COVID is like a great example for that. Like we were able to fast track our drug discovery and like we were able to turn it into an experience where we were able to discover new drugs and get it to the market in a much faster pace. That whole process was expedited using these tools and processes basically. So we are very proud of that. >> So my understanding is you're running Rafay with EKS. A lot of choices out there. Why? Why did you choose to go in that direction? >> So Regeneron has heavily invested in cloud recently, over the years basically. And then we are focusing on hybrid cloud now that we we are like, again, these multiple cloud providers of platforms which are coming in are strategies to focus on hybrid cloud and Rafay is big leader in that particular space where we felt that we need to engage or partner with Rafay to enable those capabilities, not just on AWS, but across the board. One single tool, one single process, one single knowledge base helps us achieve more efficiencies. >> Less chaos, less complexity. >> That's correct. Let's say when you're in customer conversations, which I know you've had many this week, but you probably do that all the time. Regeneron is a great use case for Rafay. It's so tangible, life sciences. We all get that, especially coming out of the pandemic. What do you say to customers are the top three differentiators of Rafay and why they should go Rafay on top of EKS? >> What's really interesting about these conversations is that, look, we have some pretty cool features in our product. Obviously we must have something interesting otherwise nobody would buy our product. And we have access management and zero trust models and cluster provisioning, all these very nice things. But it always comes down to exactly the same thing, which is every large enterprise that started a journey, independent or Rafay because they didn't know who we were, it's fine. Last year we were a young company, now we are a larger company and they all are basically building towards a roadmap which Rafay truly understands. And in my opinion, and I'm confident when I say this, we understand their life, their journey better than any other company in the market. The reason why we have the flurry of customers we have, the reason why the product has the capacity that it does is because for whatever reason, look, it's scale lock. That's for the history books. But we have complete clarity on what a pharmaceutical company or financial customers company or a high tech company the journey they will take to the cloud and automation for modern infrastructure, we get it. And what I'm selling them is the is the why, not the what. There's a lot of great answers for the what? What do we do? Rakesh doesn't care. I mean, he's trying to solve a bigger problem. He's trying to get his researchers to go faster. So then when they want to run a model, they should be able to do it right now. That's what he cares about. Then he looks for a tool to solve the business problem. And we figured out how to have that conversation and explain why Rafay helps him, essentially multiply the bandwidth that he has in his organization. And of course to that end we have some great technology/ But that's a secondary issue, the first, to me the why is more important than the what. And then we talk about how, which he has to pay us money. That's the how. But yeah, we get there too. But look, this is the important thing. Every enterprise is on exactly the same journey, Lisa. And that if you think about it from just purely economic efficiencies perspective that is not a good investment for our industry. If everybody's solving the same problem that's a waste of resources. Let's find a way to do, what is the point of the cloud? We used to all build data centers. That was not efficient. We all went to the cloud because it's more efficient to have somebody else, AWS, solve this problem for us so we can now focus on the next level problem. And then Rafay solving that problem so that he can focus on his drug discovery, not on Kubernetes. >> That's correct. It's all about efficiencies. Like doing things, learn from each other's experience and build upon it. So the things have been solved. One way you need to leverage that, reuse it. So the principles are the same. >> So then what's next? You had done an amazing job transforming the company. You're facilitating drug discovery faster than ever before. From an infrastructure perspective, what's next on your journey? >> So right now the roadmap what we have is basically talking about making sure that the workload are running more efficient, they're more secure. As we go into these expandable serverless technology, there are more challenging opportunities for us to solve. Those challenges are coming up. We need to make sure that with the new, the world we are living in, we are more securely doing stuff what we were doing previously. More efficiencies is also the key and more distributed. Like if we can leverage the power of cloud in doing more things on demand is on our roadmap. And I think that is where we are all driving. >> And when you said hybrid, you're talking about connecting to your on-prem tools and data? How about cross cloud? >> We are invested in multiple cloud platform itself and we are looking forward to leveraging a technology, which is truly cloud native and we can leverage things together on that. >> And I presume you're helping with that, obviously. >> Last question for both of you. We're making an Instagram reel. Think of this as a sizzle reel, like a 32nd elevator pitch. Question, first one goes to you, Rakesh. If you had a bumper sticker, you put it on, I don't know, say a DeLorean, I hear those are coming back. What would it say about Regeneron as a technology company that's delivering therapeutics? >> It's a tough question, but I would try my best. The bumper sticker would say, discover drug more faster, more efficient. >> Perfect. Haseeb, question about Rafay. What's the bumper sticker? If you had a billboard in on Highway 101 in Redwood City about Rafay and what it's enabling organizations enterprises across the globe to achieve, what would it say? >> I'll tell you what our customers say. So our customers call us the vCenter for Kubernetes and we all know what a vCenter is. We all know why vCenter's so amazingly successful because it takes IT engineers and gives them superpowers. You can run a data center. What is the vCenter for this new world? It us. So vCenter is obviously a trademark with our friends at VMware, so that's why I'm, but our customers truly call us the vCenter for Kubernetes. And I think that's an incredible moniker because that truly codifies our roadmap. It codifies what we are selling today. >> There's nothing more powerful and potent in the voice of the customer. Thank you both for coming on. Thank you for sharing the Regeneron story. Great to have you back on, Haseeb. You need a pin for the number of times you've been on theCUBE. >> At least a gold star. >> We'll work on that. Guys, thank you. We appreciate your time. >> Haseeb: Thank you very much. >> For our guests and for Dave Vellante, I'm Lisa Martin. You're watching theCUBE, the leader in live enterprise and emerging tech coverage. (upbeat music)

Published Date : Dec 1 2022

SUMMARY :

And the expo hall is still It feels like the biggest re:Invent ever. Yep, and we're going to again, the CEO of Rafay. Excitement is as I'm with you on that. So many meetings, oh my God. What are some of the and the point I always make to you, the cloud is the place to do it." especially over the last couple of years, We need to do more with less. as we got to help our development some of the less heavy, and the DevOps journey is increasingly of the fence the app in a VM the computer is sitting idle and you don't need to pay is that the platform I only have to worry The 80% of the work like to on the benefits. So you transform the developer experience. How does that impact And that is the key thing to our strategy and get it to the market go in that direction? not just on AWS, but across the board. are the top three differentiators of Rafay And of course to that end we So the things have been solved. So then what's next? sure that the workload and we are looking forward And I presume you're Question, first one goes to you, Rakesh. but I would try my best. across the globe to What is the vCenter for this new world? and potent in the voice of the customer. We appreciate your time. the leader in live enterprise

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Lisa MartinPERSON

0.99+

Dave VellantePERSON

0.99+

Dave VellantePERSON

0.99+

HaseebPERSON

0.99+

RakeshPERSON

0.99+

RegeneronORGANIZATION

0.99+

AWSORGANIZATION

0.99+

80%QUANTITY

0.99+

LisaPERSON

0.99+

RafayPERSON

0.99+

Adam SelipskyPERSON

0.99+

thousandsQUANTITY

0.99+

Andy JassyPERSON

0.99+

DavePERSON

0.99+

AmazonORGANIZATION

0.99+

Rakesh SinghPERSON

0.99+

hundredQUANTITY

0.99+

Haseeb BudhaniPERSON

0.99+

Monday eveningDATE

0.99+

Last yearDATE

0.99+

RafayORGANIZATION

0.99+

2017DATE

0.99+

Barry CooksPERSON

0.99+

10th timeQUANTITY

0.99+

2019DATE

0.99+

firstQUANTITY

0.99+

bothQUANTITY

0.99+

Highway 101LOCATION

0.99+

yesterdayDATE

0.99+

EC2TITLE

0.99+

twiceQUANTITY

0.99+

Rafay SystemsORGANIZATION

0.99+

LambdaTITLE

0.99+

RakeshORGANIZATION

0.99+

onceQUANTITY

0.99+

fourth dayQUANTITY

0.99+

hundred percentQUANTITY

0.99+

last yearDATE

0.98+

Redwood CityLOCATION

0.98+

VMwareORGANIZATION

0.98+

this weekDATE

0.97+

oneQUANTITY

0.96+

EKSORGANIZATION

0.96+

first oneQUANTITY

0.95+

InstagramORGANIZATION

0.94+

pandemicEVENT

0.94+

one single processQUANTITY

0.94+

KubernetesORGANIZATION

0.93+

vCenterTITLE

0.92+

zero trustQUANTITY

0.91+

firstlyQUANTITY

0.91+

one pointQUANTITY

0.91+

day fourQUANTITY

0.89+

cloudORGANIZATION

0.88+

three differentiatorsQUANTITY

0.87+

One single toolQUANTITY

0.86+

todayDATE

0.86+

Glen Kurisingal & Nicholas Criss, T-Mobile | AWS re:Invent 2022


 

>>Good morning friends. Live from Las Vegas. It's the Cube Day four of our coverage of AWS. Reinvent continues. Lisa Martin here with Dave Valante. You >>Can tell it's day four. Yeah. >>You can tell, you >>Get punchy. >>Did you? Yes. Did you know that the Vegas rodeo is coming into town? I'm kind of bummed down, leaving tonight. >>Really? You rodeo >>Fan this weekend? No, but to see a bunch of cowboys in Vegas, >>I'd like to see the Raiders. I'd like to see the Raiders get tickets. >>Yeah. And the hockey team. Yeah. We have had an amazing event, Dave. The cubes. 10th year covering reinvent 11th. Reinvent >>Our 10th year here. Yeah. Yes. Yeah. I mean we covered remotely in during Covid, but >>Yes, yes, yes. Awesome content. Anything jump out at you that we really, we, we love talking to aws, the ecosystem. We got a customer next. Anything jump out at you that's really a kind of a key takeaway? >>Big story. The majority of aws, you know, I mean people ask me what's different under a Adam than under Andy. And I'm like, really? It's the maturity of AWS is what's different, you know, ecosystem, connecting the dots, moving towards solutions, you know, that's, that's the big thing. And it's, you know, in a way it's kind of boring relative to other reinvents, which are like, oh wow, oh my god, they announced outposts. So you don't see anything like that. It's more taking the platform to the next level, which is a good >>Thing. The next level it is a good thing. Speaking of next level, we have a couple of next level guests from T-Mobile joining us. We're gonna be talking through their customers story, their business transformation with aws. Glenn Curing joins us, the director product and technology. And Nick Chris, senior manager, product and technology guys. Welcome. Great to have you on brand. You're on T-Mobile brand. I love it. >>Yeah, >>I mean we are always T-Mobile. >>I love it. So, so everyone knows T-Mobile Blend, you guys are in the digital commerce domain. Talk to us about what that is, what functions that delivers for T-Mobile. Yeah, >>So the digital commerce domain operates and runs a platform called the Digital commerce platform. What this essentially does, it's a set of APIs that are headless that power the shopping experiences. When you talk about shopping experiences at T-Mobile, a customer comes to either a T-Mobile website or goes to a store. And what they do is they start with the discovery process of a phone. They take it through the process, they decide to purchase the phone day at, at the phone to cart, and then eventually they decide to, you know, basically pull the trigger and, and buy the phone at, at which point they submit the order. So that whole experience, essentially from start to finish is powered by the digital commerce platform. Just this year we have processed well over three and a half million orders amounting to a billion and a half dollars worth of business for T-Mobile. >>Wow. Big outcomes. Nick, talk about the before stage, obviously the, the customer experience is absolutely critical because if, if it goes awry, people churn. We know that and nobody wants, you know, brand reputation is is at stake. Yep. Talk about some of the challenges before that you guys faced and how did you work with AWS and part its partner ecosystem to address those challenges? >>Sure. Yeah. So actually before I started working with Glen on the commerce domain, I was part of T-Mobile's cloud team. So we were the team that kind of brought in AWS and commerce platform was really the first tier one system to go a hundred percent cloud native. And so for us it was very much a learning experience and a journey to learn how to operate on the cloud and which was fundamentally different from how we were doing things in the old on-prem days. When >>You talk about headless APIs, you talk, I dunno if you saw Warren a Vogel's keynote this morning, but you're talking about loosely coupled, a loosely coupled system that you can evolve without ripping out the whole system or without bringing the whole system down. Can you explain that in a little bit more >>Detail? Absolutely. So the concept of headless API exactly opens up that possibility. What it allows us to do is to build and operator platform that runs sort of loosely coupled from the user experiences. So when you think about this from a simplistic standpoint, you have a set of APIs that are headless and you've got the website that connects to it, the retail store applications that connect to it, as well as the customer care applications that connect to it. And essentially what that does is it allows us to basically operate all these platforms without being sort of tightly coupled to >>Each other. Yeah, he was talking about this morning when, when AWS announced s3, you know, there was just a handful of services maybe at just two or three. I think now there's 200 and you know, it's never gone down, it's never been, you know, replaced essentially. And so, you know, the whole thing was it's an asynchronous system that's loosely coupled and then you create that illusion of synchronicity for the customer. >>Exactly. >>Which was, I thought, you know, really well described, but maybe you guys could talk about what the genesis was for this system. Take us kind of to the, from the before or after, you know, the classic as as was and the, and as is. Did you talk about that? >>Yeah, I can start and then hand it off to Nick for some more details. So we started this journey back in 2016 and at that point T-Mobile had seven or eight different commerce platforms. Obviously you can think about the complexity involved in running and operating platforms. We've all talked about T-Mobile being the uncarrier. It's a brand that we have basically popularized in the telco industry. We would come out with these massive uncarrier moves and every time that announcement was made, teams have to scramble because you've got seven systems, seven teams, every single system needs to be updated, right? So that's where we started when we kicked off this transformational journey over time, essentially we have brought it down to one platform that supports all these experiences and what that allows us to do is not only time to market gets reduced immensely, but it also allows us to basically reduce our operational cost. Cuz we don't have to have teams running seven, eight systems. It's just one system with one team that can focus on making it a world class, you know, platform. >>Yeah, I think one of the strategies that definitely paid off for us, cuz going all the way back to the beginning, our little platform was powering just a tiny little corner of the, of the webspace, right? But even in those days we approached it from we're gonna build functions in a way that is sort of agnostic to what the experience is gonna be. So over time as we would build a capability that one particular channel needed primary, we were still thinking about all the other channels that needed it. So now over a few years that investment pays off and you have basically the same capabilities working in the same way across all the channels. >>When did the journey start? >>2016. >>2016, yeah. It's been, it's been six years. >>What are some of the game changers in, in this business transformation that you would say these are some of the things that really ignited our transformation? >>Yeah, there's particularly one thing that we feel pretty proud about, which is the fact that we now operate what we call active active stacks. And what that means is you've got a single stack of the eCommerce platform start to finish that can run in an independent manner, but we can also start adding additional stacks that are basically loosely coupled from each other but can, but can run to support the business. What that basically enables is it allows us to run in active active mode, which itself is a big deal from a system uptime perspective. It really changes the game. It allows us to push releases without worrying about any kind of downtime. We've done canary releases, we are in the middle of retail season and we can introduce changes without worrying about it. And more importantly, I think what it has also allowed us to do is essentially practice disaster recovery while doing a release. Cuz that's exactly what we do is every time we do a release we are switching between these separate stacks and essentially are practicing our DR strategy. >>So you do this, it's, it's you separate across regions I presume? Yes. Is that right? Yes. This was really interesting conversation because as you well know in the on-prem world, you never tested that disaster recovery was too risky because you're afraid you're gonna take your whole business down and you're essentially saying that the testing is fundamental to the implementation. >>Absolutely. >>It, it is the thing that you do for every release. So you know, at least every week or so you are doing this and you know, in the old world, the active passive world on paper you had a bunch of capabilities and in in incidents that are even less than say a full disaster recovery scenario, you would end up making the choice not to use that capability because there was too much complexity or risk or problem. When we put this in place. Now if I, I tell people everything we do got easier after that. >>Is it a challenge for you or how do you deal with the challenge? Correct me if it's not a, a challenge that sometimes Amazon services are not available in both regions. I think for instance, the observability thing that they just announced this week is it's not cross region or maybe I'm getting that wrong, but there are services where, you know, you might not be able to do data sharing across region. How do you manage that? Or maybe there's different, you know, levels of certifications. How do you manage that discontinuity or is that not an issue for you? >>Yeah, I mean it, it is certainly a concern and so the stacks, like Glen said, they are largely decoupled and that what that means is practically every component and there's a lot of lot of components in there. I have redundancy from an availability zone point of view. But then where the real magic happens is when you come in as a user to the stack, we're gonna initially kind of lock you on one stack. And then the key thing that we do is we, we understand the difference between what, what we would call the critical data. So think of like your shopping carts and then contextual data that we can relatively easily reload if we need to. And so that critical data is constantly in an async fashion. So it's not interrupting your performance, being broadcast out to a place where we can recover it if we need to, if we need to send you to another stack and then we call that dehydration. And if you end up getting bumped to a new stack, we rehydrate you on that stack and reload that, that contextual data. So to make that whole thing happen, we rely on something we call the global cart store and that's basically powered by Dynamo. So Dynamo is highly, highly reliable and multi >>Reason. So, and, and presume you're doing some form of server list for the stateless stuff and, and maybe taking control of the run time for the stateful things you, are you leaning into to servers and lambda or Not yet cuz you want control over the, the, the EC two and the memory configs. What, what's, I mean, I know we're going inside the plumbing a little bit, but it's kind of fun. >>That's always fun. You >>Went Yeah, and, and it has been a journey. Back in 2016 when we started, we were all on EC twos and across, you know, over the last three or four years we have kind of gone through that journey where we went from easy two to, to containers and we are at some point we'll get to where we will be serverless, we've got a few functions running. But you know, in that journey, I think when you look at the full end of the spectrum, we are somewhere towards the, the process of sort of going from, you know, containers to, to serverless. >>Yeah. So today your team is setting up the containers, they're fencing 'em off, fencing off the app and doing all that sort of sort of semi heavy lifting. Yeah. How do you deal with the, you know, this is one of the things Lisa, you and I were talking about is the skill sets. We always talk about this. What's that? What's your team look like and what are the skill sets that you've got that you're deploying? >>Yeah, I mean, as you can imagine, it's a challenge and it's a, a highly specialized skill set that you need. And you talk about cloud, you know, I, I tell developers when we bring new folks in, in the old days, you could just be like really good at Java and study that for and be good at that for decades. But in the cloud world, you have to be wide in, in your breadth. And so you have to understand those 200 services, right? And so one of the things that really has helped us is we've had a partner. So UST Global is a digital services company and they've really kind of been on the journey up the same timeline that we were. And I had worked with them on the cloud team, you know, before I came to commerce. And when I came to, to the commerce team, we were really struggling, especially from that operational perspective. >>The, the team was just not adapting to that new cloud reality. They were used to the on-prem world, but we brought these folks in because not only were they really able to understand the stuff, but they had built a lot of the platforms that we were gonna be leveraging for commerce with us on the cloud team. So for example, we have built, T-Mobile operates our own customized Kubernetes platform. We've done some stuff for serverless development, C I C D, cloud security. And so not only did these folks have the right skill sets, but they knew how we were approaching it from a T-mobile cloud perspective. And so it's kind of kind of fun to see, you know, when they came on board with this journey with us, we were both, both companies were relatively new and, and learning. Now I look and, you know, I I think that they're like a, a platinum sponsor these days here of aws and so it's kind of cool to see how we've all grown together, >>A lot of evolution, a lot of maturation. Glen, I wanna know from you when we're almost out of time here, but tell me the what the digital commerce domain, you kind of talked about this in the beginning, but I wanna know what's the value in it for me as a customer? All of this under the hood plumbing? Yeah, the maturation, the transformation. How does it benefit mean? >>Great question. So as a customer, all they care about is coming into, going to the website, walking into a store, and without spending too much time completed that transaction and walkout, they don't care about what's under the hood, right? So this transformational journey from, you know, like I talked about, we started with easy twos back in the day. It was what we call the wild west in the, on a cloud native platform to where we have reached today. You know, the journey we have collectively traversed with the USD has allowed us to basically build a system that allows a customer to walk into a store and not spend a whole hour dealing with a sales rep that's trying to sell them things. They can walk in and out quickly, they go to the website, literally within a couple minutes they can complete the transaction and leave. That's what customers want. It is. And that has really sort of helped us when you think about T-Mobile and the fact that we are now poised to be a leader in the US in telco at this whole concept of systems that really empower the customers to quickly complete their transaction has been one of the key components of allowing us to kind of make that growth. Right. So >>Right. And a big driver of revenue. >>Exactly. >>I have one final question for each of you. We're making a Instagram reel, so think about if you had 30 seconds to describe T-Mobile as a technology company that sells phones or a technology company that delights people, what, what would you say if you had a billboard, what would it say about that? Glen, what do you think? >>So T-Mobile, from a technology company perspective, the, the whole purpose of setting up T-mobile's, you know, shopping experience is about bringing customers in, surprising and delighting them with the frictionless shopping experiences that basically allow them to come in and complete the transaction and move on with their lives. It's not about keeping them in the store for too long when they don't want to do it. And essentially the idea is to just basically surprise and delight our customers. >>Perfect. Nick, what would you say, what's your billboard about T-Mobile as a technology company that's delivering great services to its customers? >>Yeah, I think, you know, Glen really covered it well. What I would just add to that is I think the way that we are approaching it these days, really starting from that 2016 period is we like to say we don't think of ourselves as a telco company anymore. We think of ourselves as a technology company that happens to do telco among other things, right? And so we've approached this from a point of view of we're here to provide the best possible experience we can to our customers and we take it personally when, when we don't reach that high bar. And so what we've done in the last few years as a transformation is really given us the toolbox that we need to be able to meet that promise. >>Awesome. Guys, it's been a pleasure having you on the program, talking about the transformation of T-Mobile. Great to hear what you're doing with aws, the maturation, and we look forward to having you back on to see what's next. Thank you. >>Awesome. Thank you so much. >>All right, for our guests and Dave Ante, I'm Lisa Martin, you watching The Cube, the leader in live enterprise and emerging tech coverage.

Published Date : Dec 1 2022

SUMMARY :

It's the Cube Day four of Yeah. I'm kind of bummed down, leaving tonight. I'd like to see the Raiders. We have had an amazing event, Dave. I mean we covered remotely in during Covid, Anything jump out at you that we really, It's the maturity of AWS is what's different, you know, Great to have you on brand. So, so everyone knows T-Mobile Blend, you guys are in the digital commerce domain. you know, basically pull the trigger and, and buy the phone at, at which point they submit Talk about some of the challenges before that you So we were the team that kind of brought in AWS and You talk about headless APIs, you talk, I dunno if you saw Warren a Vogel's keynote this morning, So when you think about this from And so, you know, the whole thing was it's an asynchronous system that's loosely coupled and Which was, I thought, you know, really well described, but maybe you guys could talk about you know, platform. So now over a few years that investment pays off and you have It's been, it's been six years. fact that we now operate what we call active active stacks. So you do this, it's, it's you separate across regions I presume? So you know, at least every week or so you are doing this and you know, you might not be able to do data sharing across region. we can recover it if we need to, if we need to send you to another stack and then we call that are you leaning into to servers and lambda or Not yet cuz you want control over the, You we were all on EC twos and across, you know, over the last three How do you deal with the, you know, this is one of the things Lisa, But in the cloud world, you have to be wide in, And so it's kind of kind of fun to see, you know, when they came on board with this but tell me the what the digital commerce domain, you kind of talked about this in the beginning, you know, like I talked about, we started with easy twos back in the day. And a big driver of revenue. what would you say if you had a billboard, what would it say about that? you know, shopping experience is about bringing customers in, surprising Nick, what would you say, what's your billboard about T-Mobile as a technology company that's delivering great services Yeah, I think, you know, Glen really covered it well. Guys, it's been a pleasure having you on the program, talking about the transformation of T-Mobile. Thank you so much. you watching The Cube, the leader in live enterprise and emerging tech coverage.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Lisa MartinPERSON

0.99+

Dave ValantePERSON

0.99+

Glen KurisingalPERSON

0.99+

Nicholas CrissPERSON

0.99+

AWSORGANIZATION

0.99+

Dave AntePERSON

0.99+

T-MobileORGANIZATION

0.99+

GlenPERSON

0.99+

30 secondsQUANTITY

0.99+

2016DATE

0.99+

Glenn CuringPERSON

0.99+

AmazonORGANIZATION

0.99+

UST GlobalORGANIZATION

0.99+

Las VegasLOCATION

0.99+

sevenQUANTITY

0.99+

Nick ChrisPERSON

0.99+

VegasLOCATION

0.99+

LisaPERSON

0.99+

DavePERSON

0.99+

one systemQUANTITY

0.99+

200 servicesQUANTITY

0.99+

twoQUANTITY

0.99+

one teamQUANTITY

0.99+

RaidersORGANIZATION

0.99+

one platformQUANTITY

0.99+

six yearsQUANTITY

0.99+

DynamoORGANIZATION

0.99+

threeQUANTITY

0.99+

NickPERSON

0.99+

seven systemsQUANTITY

0.99+

T-mobileORGANIZATION

0.99+

10th yearQUANTITY

0.99+

bothQUANTITY

0.99+

seven teamsQUANTITY

0.99+

both companiesQUANTITY

0.99+

tonightDATE

0.99+

USLOCATION

0.99+

AndyPERSON

0.99+

this weekDATE

0.98+

The CubeTITLE

0.98+

AdamPERSON

0.98+

T-Mobile BlendORGANIZATION

0.98+

hundred percentQUANTITY

0.98+

telcoORGANIZATION

0.98+

200QUANTITY

0.98+

one thingQUANTITY

0.98+

oneQUANTITY

0.98+

eight systemsQUANTITY

0.98+

eachQUANTITY

0.98+

todayDATE

0.97+

both regionsQUANTITY

0.97+

JavaTITLE

0.97+

CovidTITLE

0.96+

this yearDATE

0.96+

Day fourQUANTITY

0.95+

InstagramORGANIZATION

0.95+

a billion and a half dollarsQUANTITY

0.95+

one final questionQUANTITY

0.93+

day fourQUANTITY

0.93+

Day 4 Keynote Analysis | AWS re:Invent 2022


 

(upbeat music) >> Good morning everybody. Welcome back to Las Vegas. This is day four of theCUBE's wall-to-wall coverage of our Super Bowl, aka AWS re:Invent 2022. I'm here with my co-host, Paul Gillin. My name is Dave Vellante. Sanjay Poonen is in the house, CEO and president of Cohesity. He's sitting in as our guest market watcher, market analyst, you know, deep expertise, new to the job at Cohesity. He was kind enough to sit in, and help us break down what's happening at re:Invent. But Paul, first thing, this morning we heard from Werner Vogels. He was basically given a masterclass on system design. It reminded me of mainframes years ago. When we used to, you know, bury through those IBM blue books and red books. You remember those Sanjay? That's how we- learned back then. >> Oh God, I remember those, Yeah. >> But it made me think, wow, now you know IBM's more of a systems design, nobody talks about IBM anymore. Everybody talks about Amazon. So you wonder, 20 years from now, you know what it's going to be. But >> Well- >> Werner's amazing. >> He pulled out a 24 year old document. >> Yup. >> That he had written early in Amazon's evolution about synchronous design or about essentially distributed architectures that turned out to be prophetic. >> His big thing was nature is asynchronous. So systems are asynchronous. Synchronous is an illusion. It's an abstraction. It's kind of interesting. But, you know- >> Yeah, I mean I've had synonyms for things. Timeless architecture. Werner's an absolute legend. I mean, when you think about folks who've had, you know, impact on technology, you think of people like Jony Ive in design. >> Dave: Yeah. >> You got to think about people like Werner in architecture and just the fact that Andy and the team have been able to keep him engaged that long... I pay attention to his keynote. Peter DeSantis has obviously been very, very influential. And then of course, you know, Adam did a good job, you know, watching from, you know, having watched since I was at the first AWS re:Invent conference, at time was President SAP and there was only a thousand people at this event, okay? Andy had me on stage. I think I was one of the first guest of any tech company in 2011. And to see now this become like, it's a mecca. It's a mother of all IT events, and watch sort of even the transition from Andy to Adam is very special. I got to catch some of Ruba's keynote. So while there's some new people in the mix here, this has become a force of nature. And the last time I was here was 2019, before Covid, watched the last two ones online. But it feels like, I don't know 'about what you guys think, it feels like it's back to 2019 levels. >> I was here in 2019. I feel like this was bigger than 2019 but some people have said that it's about the same. >> I think it was 60,000 versus 50,000. >> Yes. So close. >> It was a little bigger in 2019. But it feels like it's more active. >> And then last year, Sanjay, you weren't here but it was 25,000, which was amazing 'cause it was right in that little space between Omicron, before Omicron hit. But you know, let me ask you a question and this is really more of a question about Amazon's maturity and I know you've been following them since early days. But the way I get the question, number one question I get from people is how is Amazon AWS going to be different under Adam than it was under Andy? What do you think? >> I mean, Adam's not new because he was here before. In some senses he knows the Amazon culture from prior, when he was running sales and marketing prior. But then he took the time off and came back. I mean, this will always be, I think, somewhat Andy's baby, right? Because he was the... I, you know, sent him a text, "You should be really proud of what you accomplished", but you know, I think he also, I asked him when I saw him a few weeks ago "Are you going to come to re:Invent?" And he says, "No, I want to leave this to be Adam's show." And Adam's going to have a slightly different view. His keynotes are probably half the time. It's a little bit more vision. There was a lot more customer stories at the beginning of it. Taking you back to the inspirational pieces of it. I think you're going to see them probably pulling up the stack and not just focused in infrastructure. Many of their platform services are evolved. Many of their, even application services. I'm surprised when I talk to customers. Like Amazon Connect, their sort of call center type technologies, an app layer. It's getting a lot. I mean, I've talked to a couple of Fortune 500 companies that are moving off Ayer to Connect. I mean, it's happening and I did not know that. So it's, you know, I think as they move up the stack, the platform's gotten more... The data centric stack has gotten, and you know, in the area we're working with Cohesity, security, data protection, they're an investor in our company. So this is an important, you know, both... I think tech player and a partner for many companies like us. >> I wonder the, you know, the marketplace... there's been a big push on the marketplace by all the cloud companies last couple of years. Do you see that disrupting the way softwares, enterprise software is sold? >> Oh, for sure. I mean, you have to be a ostrich with your head in the sand to not see this wave happening. I mean, what's it? $150 billion worth of revenue. Even though the growth rates dipped a little bit the last quarter or so, it's still aggregatively between Amazon and Azure and Google, you know, 30% growth. And I think we're still in the second or third inning off a grand 1 trillion or 2 trillion of IT, shifting not all of it to the cloud, but significantly faster. So if you add up all of the big things of the on-premise world, they're, you know, they got to a certain size, their growth is stable, but stalling. These guys are growing significantly faster. And then if you add on top of them, platform companies the data companies, Snowflake, MongoDB, Databricks, you know, Datadog, and then apps companies on top of that. I think the move to the Cloud is inevitable. In SaaS companies, I don't know why you would ever implement a CRM solution on-prem. It's all gone to the Cloud. >> Oh, it is. >> That happened 15 years ago. I mean, begin within three, five years of the advent of Salesforce. And the same thing in HR. Why would you deploy a HR solution now? You've got Workday, you've got, you know, others that are so some of those apps markets are are just never coming back to an on-prem capability. >> Sanjay, I want to ask you, you built a reputation for being able to, you know, forecast accurately, hit your plan, you know, you hit your numbers, you're awesome operator. Even though you have a, you know, technology degree, which you know, that's a two-tool star, multi-tool star. But I call it the slingshot economy. This is like, I mean I've seen probably more downturns than anybody in here, you know, given... Well maybe, maybe- >> Maybe me. >> You and I both. I've never seen anything like this, where where visibility is so unpredictable. The economy is sling-shotting. It's like, oh, hurry up, go Covid, go, go go build, build, build supply, then pull back. And now going forward, now pulling back. Slootman said, you know, on the call, "Hey the guide, is the guide." He said, "we put it out there, We do our best to hit it." But you had CrowdStrike had issues you know, mid-market, ServiceNow. I saw McDermott on the other day on the, on the TV. I just want to pay, you know, buy from the guy. He's so (indistinct) >> But mixed, mixed results, Salesforce, you know, Octa now pre-announcing, hey, they're going to be, or announcing, you know, better visibility, forward guide. Elastic kind of got hit really hard. HPE and Dell actually doing really well in the enterprise. >> Yep. >> 'Course Dell getting killed in the client. But so what are you seeing out there? How, as an executive, do you deal with such poor visibility? >> I think, listen, what the last two or three years have taught us is, you know, with the supply chain crisis, with the surge that people thought you may need of, you know, spending potentially in the pandemic, you have to start off with your tech platform being 10 x better than everybody else. And differentiate, differentiate. 'Cause in a crowded market, but even in a market that's getting tougher, if you're not differentiating constantly through technology innovation, you're going to get left behind. So you named a few places, they're all technology innovators, but even if some of them are having challenges, and then I think you're constantly asking yourselves, how do you move from being a point product to a platform with more and more services where you're getting, you know, many of them moving really fast. In the case of Roe, I like him a lot. He's probably one of the most savvy operators, also that I respect. He calls these speedboats, and you know, his core platform started off with the firewall network security. But he's built now a very credible cloud security, cloud AI security business. And I think that's how you need to be thinking as a tech executive. I mean, if you got core, your core beachhead 10 x better than everybody else. And as you move to adjacencies in these new platforms, have you got now speedboats that are getting to a point where they are competitive advantage? Then as you think of the go-to-market perspective, it really depends on where you are as a company. For a company like our size, we need partners a lot more. Because if we're going to, you know, stand on the shoulders of giants like Isaac Newton said, "I see clearly because I stand on the shoulders giants." I need to really go and cultivate Amazon so they become our lead partner in cloud. And then appropriately Microsoft and Google where I need to. And security. Part of what we announced last week was, last month, yeah, last couple of weeks ago, was the data security alliance with the biggest security players. What was I trying to do with that? First time ever done in my industry was get Palo Alto, CrowdStrike, Wallace, Tenable, CyberArk, Splunk, all to build an alliance with me so I could stand on their shoulders with them helping me. If you're a bigger company, you're constantly asking yourself "how do you make sure you're getting your, like Amazon, their top hundred customers spending more with that?" So I think the the playbook evolves, and I'm watching some of these best companies through this time navigate through this. And I think leadership is going to be tested in enormously interesting ways. >> I'll say. I mean, Snowflake is really interesting because they... 67% growth, which is, I mean, that's best in class for a company that's $2 billion. And, but their guide was still, you know, pretty aggressive. You know, so it's like, do you, you know, when it when it's good times you go, "hey, we can we can guide conservatively and know we can beat it." But when you're not certain, you can't dial down too far 'cause your investors start to bail on you. It's a really tricky- >> But Dave, I think listen, at the end of the day, I mean every CEO should not be worried about the short term up and down in the stock price. You're building a long-term multi-billion dollar company. In the case of Frank, he has, I think I shot to a $10 billion, you know, analytics data warehousing data management company on the back of that platform, because he's eyeing the market that, not just Teradata occupies today, but now Oracle occupies or other databases, right? So his tam as it grows bigger, you're going to have some of these things, but that market's big. I think same with Palo Alto. I mean Datadog's another company, 75% growth. >> Yeah. >> At 20% margins, like almost rule of 95. >> Amazing. >> When they're going after, not just the observability market, they're eating up the sim market, security analytics, the APM market. So I think, you know, that's, you look at these case studies of companies who are going from point product to platforms and are steadily able to grow into new tams. You know, to me that's very inspiring. >> I get it. >> Sanjay: That's what I seek to do at our com. >> I get that it's a marathon, but you know, when you're at VMware, weren't you looking at the stock price every day just out of curiosity? I mean listen, you weren't micromanaging it. >> You do, but at the end of the day, and you certainly look at the days of earnings and so on so forth. >> Yeah. >> Because you want to create shareholder value. >> Yeah. >> I'm not saying that you should not but I think in obsession with that, you know, in a short term, >> Going to kill ya. >> Makes you, you know, sort of myopically focused on what may not be the right thing in the long term. Now in the long arc of time, if you're not creating shareholder value... Look at what happened to Steve Bomber. You needed Satya to come in to change things and he's created a lot of value. >> Dave: Yeah, big time. >> But I think in the short term, my comments were really on the quarter to quarter, but over a four a 12 quarter, if companies are growing and creating profitable growth, they're going to get the valuation they deserve. >> Dave: Yeah. >> Do you the... I want to ask you about something Arvind Krishna said in the previous IBM earnings call, that IT is deflationary and therefore it is resistant to the macroeconomic headwinds. So IT spending should actually thrive in a deflation, in a adverse economic climate. Do you think that's true? >> Not all forms of IT. I pay very close attention to surveys from, whether it's the industry analysts or the Morgan Stanleys, or Goldman Sachs. The financial analysts. And I think there's a gluc in certain sectors that will get pulled back. Traditional view is when the economies are growing people spend on the top line, front office stuff, sales, marketing. If you go and look at just the cloud 100 companies, which are the hottest private companies, and maybe with the public market companies, there's way too many companies focused on sales and marketing. Way too many. I think during a downsizing and recession, that's going to probably shrink some, because they were all built for the 2009 to 2021 era, where it was all about the top line. Okay, maybe there's now a proposition for companies who are focused on cost optimization, supply chain visibility. Security's been intangible, that I think is going to continue to an investment. So I tell, listen, if you are a tech investor or if you're an operator, pay attention to CIO priorities. And right now, in our business at Cohesity, part of the reason we've embraced things like ransomware protection, there is a big focus on security. And you know, by intelligently being a management and a security company around data, I do believe we'll continue to be extremely relevant to CIO budgets. There's a ransomware, 20 ransomware attempts every second. So things of that kind make you relevant in a bank. You have to stay relevant to a buying pattern or else you lose momentum. >> But I think what's happening now is actually IT spending's pretty good. I mean, I track this stuff pretty closely. It's just that expectations were so high and now you're seeing earnings estimates come down and so, okay, and then you, yeah, you've got the, you know the inflationary factors and your discounted cash flows but the market's actually pretty good. >> Yeah. >> You know, relative to other downturns that if this is not a... We're not actually not in a downturn. >> Yeah. >> Not yet anyway. It may be. >> There's a valuation there. >> You have to prepare. >> Not sales. >> Yeah, that's right. >> When I was on CNBC, I said "listen, it's a little bit like that story of Joseph. Seven years of feast, seven years of famine." You have to prepare for potentially your worst. And if it's not the worst, you're in good shape. So will it be a recession 2023? Maybe. You know, high interest rates, inflation, war in Russia, Ukraine, maybe things do get bad. But if you belt tightening, if you're focused in operational excellence, if it's not a recession, you're pleasantly surprised. If it is one, you're prepared for it. >> All right. I'm going to put you in the spot and ask you for predictions. Expert analysis on the World Cup. What do you think? Give us the breakdown. (group laughs) >> As my... I wish India was in the World Cup, but you can't get enough Indians at all to play soccer well enough, but we're not, >> You play cricket, though. >> I'm a US man first. I would love to see one of Brazil, or Argentina. And as a Messi person, I don't know if you'll get that, but it would be really special for Messi to lead, to end his career like Maradonna winning a World Cup. I don't know if that'll happen. I'm probably going to go one of the Latin American countries, if the US doesn't make it far enough. But first loyalty to the US team, and then after one of the Latin American countries. >> And you think one of the Latin American countries is best bet to win or? >> I don't know. It's hard to tell. They're all... What happens now at this stage >> So close, right? >> is anybody could win. >> Yeah. You just have lots of shots of gold. I'm a big soccer fan. It could, I mean, I don't know if the US is favored to win, but if they get far enough, you get to the finals, anybody could win. >> I think they get Netherlands next, right? >> That's tough. >> Really tough. >> But... The European teams are good too, but I would like to see US go far enough, and then I'd like to see Latin America with team one of Argentina, or Brazil. That's my prediction. >> I know you're a big Cricket fan. Are you able to follow Cricket the way you like? >> At god unearthly times the night because they're in Australia, right? >> Oh yeah. >> Yeah. >> I watched the T-20 World Cup, select games of it. Yeah, you know, I'm not rapidly following every single game but the World Cup games, I catch you. >> Yeah, it's good. >> It's good. I mean, I love every sport. American football, soccer. >> That's great. >> You get into basketball now, I mean, I hope the Warriors come back strong. Hey, how about the Warriors Celtics? What do we think? We do it again? >> Well- >> This year. >> I'll tell you what- >> As a Boston Celtics- >> I would love that. I actually still, I have to pay off some folks from Palo Alto office with some bets still. We are seeing unprecedented NBA performance this year. >> Yeah. >> It's amazing. You look at the stats, it's like nothing. I know it's early. Like nothing we've ever seen before. So it's exciting. >> Well, always a pleasure talking to you guys. >> Great to have you on. >> Thanks for having me. >> Thank you. Love the expert analysis. >> Sanjay Poonen. Dave Vellante. Keep it right there. re:Invent 2022, day four. We're winding up in Las Vegas. We'll be right back. You're watching theCUBE, the leader in enterprise and emerging tech coverage. (lighthearted soft music)

Published Date : Dec 1 2022

SUMMARY :

When we used to, you know, Yeah. So you wonder, 20 years from now, out to be prophetic. But, you know- I mean, when you think you know, watching from, I feel like this was bigger than 2019 I think it was 60,000 But it feels like it's more active. But you know, let me ask you a question So this is an important, you know, both... I wonder the, you I mean, you have to be a ostrich you know, others that are so But I call it the slingshot economy. I just want to pay, you or announcing, you know, better But so what are you seeing out there? I mean, if you got core, you know, pretty aggressive. I think I shot to a $10 billion, you know, like almost rule of 95. So I think, you know, that's, I seek to do at our com. I mean listen, you and you certainly look Because you want to Now in the long arc of time, on the quarter to quarter, I want to ask you about And you know, by intelligently But I think what's happening now relative to other downturns It may be. But if you belt tightening, to put you in the spot but you can't get enough Indians at all But first loyalty to the US team, It's hard to tell. if the US is favored to win, and then I'd like to see Latin America the way you like? Yeah, you know, I'm not rapidly I mean, I love every sport. I mean, I hope the to pay off some folks You look at the stats, it's like nothing. talking to you guys. Love the expert analysis. in enterprise and emerging tech coverage.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
AndyPERSON

0.99+

Dave VellantePERSON

0.99+

MessiPERSON

0.99+

Sanjay PoonenPERSON

0.99+

FrankPERSON

0.99+

DavePERSON

0.99+

MicrosoftORGANIZATION

0.99+

WernerPERSON

0.99+

AmazonORGANIZATION

0.99+

GoogleORGANIZATION

0.99+

Paul GillinPERSON

0.99+

AdamPERSON

0.99+

Steve BomberPERSON

0.99+

SanjayPERSON

0.99+

Jony IvePERSON

0.99+

$2 billionQUANTITY

0.99+

DellORGANIZATION

0.99+

2019DATE

0.99+

2011DATE

0.99+

Peter DeSantisPERSON

0.99+

$150 billionQUANTITY

0.99+

$10 billionQUANTITY

0.99+

PaulPERSON

0.99+

last weekDATE

0.99+

AustraliaLOCATION

0.99+

Isaac NewtonPERSON

0.99+

last monthDATE

0.99+

Las VegasLOCATION

0.99+

2009DATE

0.99+

SlootmanPERSON

0.99+

60,000QUANTITY

0.99+

Goldman SachsORGANIZATION

0.99+

Arvind KrishnaPERSON

0.99+

IBMORGANIZATION

0.99+

TenableORGANIZATION

0.99+

2 trillionQUANTITY

0.99+

Las VegasLOCATION

0.99+

CohesityORGANIZATION

0.99+

50,000QUANTITY

0.99+

RubaPERSON

0.99+

24 yearQUANTITY

0.99+

secondQUANTITY

0.99+

30%QUANTITY

0.99+

Boston CelticsORGANIZATION

0.99+

CyberArkORGANIZATION

0.99+

OracleORGANIZATION

0.99+

MaradonnaPERSON

0.99+

CrowdStrikeORGANIZATION

0.99+

thirdQUANTITY

0.99+

last yearDATE

0.99+

WallaceORGANIZATION

0.99+

World CupEVENT

0.99+

SplunkORGANIZATION

0.99+

WarriorsORGANIZATION

0.99+

HPEORGANIZATION

0.99+

Palo AltoORGANIZATION

0.99+

Morgan StanleysORGANIZATION

0.99+

DatadogORGANIZATION

0.99+

Werner VogelsPERSON

0.99+

DatabricksORGANIZATION

0.99+

Palo AltoLOCATION

0.99+

Super BowlEVENT

0.99+

SnowflakeORGANIZATION

0.99+

bothQUANTITY

0.99+

World CupEVENT

0.99+

John Purcell, DoiT International & Danislav Penev, INFINOX Global | AWS re:Invent 2022


 

>>Hello friends and welcome back to Fabulous Las Vegas, Nevada, where we are live from the show floor at AWS Reinvent. My name is Savannah Peterson, joined by my fabulous co-host John Furrier. John, how was your lunch? >>My lunch was great. Wasn't very complex like it is today, so it was very easy, >>Appropriate for the conversation we're about >>To have. Great, great guests coming up Cube alumni and great question around complexity and how is wellbeing teams be good? >>Yes. And, and and on that note, let's welcome John from DeWit as well as Danny from Inox. I swear I'll be able to say that right by the end of this. Thank you guys so much for being here. How's the show going for you? >>Excellent so far. It's been a great, a great event. You know, back back to pre Covid days, >>You're still smiling day three. That's an awesome sign. John, what about you? >>Fantastic. It's, it's been busier than ever >>That that's exciting. I, I think we certainly feel that way here on the cube. We're doing dozens of videos, it's absolutely awesome. Just in case. So we can dig in a little deeper throughout the rest of the segment just in case the audience isn't familiar, let's get them acquainted with your companies. Let's start with do it John. >>Yeah, thanks Savannah. So do it as a global technology company and we're partnering with deleted cloud providers around the world and digital native companies to provide value and solve complexity. John, to your, to your introductory point with all of the complexities associated with operating in the cloud, scaling a business in the cloud, a lot of companies are just looking to sort of have somebody else take care of that problem for them or have somebody they can call when they run into, you know, into problems scaling. And so with a combination of tech, advanced technology, some of the best cloud experts in the world and unlimited tech support or we're offloading a lot of those problems for our customers and we're doing that on a global basis. So it's, it's an exciting time. >>I can imagine pretty much everyone here on the show floor is dealing with that challenge of complexity. So a couple customers for you in the house. What about you Danny? >>I, I come from a company which operates in a financial industry market. So we essentially a global broker, financial trading broker. Which what this means for those people who don't really understand, essentially we allow clients to be able to trade digitally and speculate with different pricing, pricing tools online. We offer a different products for different type of clients. We have institutional clients, we've got our affiliates, partners programs and we've got a retail clients and this is where AWS and Doit comes handy allows us to offer our products digitally across the globe. And one of the key values for us here is that we can actually offer a product in regions where other people don't. So for example, we don't compete in North America, we don't compete in EME in Europe, but we just do it in AWS to solve our complex challenges in regions that naturally by, depending on where they base, they have like issues and that's how we deliver our product. >>And which regions, Latin >>America, Latin, the entire Africa, subcontinent, middle East, southeast Asia, the culture is just demographic is different. And what you used to have here is not exactly what you have over there. And obviously that brings a lot of challenges with onboarding and clients, deposit, trading activities, CDN latency, all of >>That stuff. It's interesting how each region's different in their, their posture with the cloud. Someone roll their own, someone outta the box. So again, this brings up this theme this year guys, which is about end to end seeing purpose built like specialty solutions. A lot of solutions going end to end with data makes kind of makes it more complicated. So again, we got more complexity coming, but the greatest the cloud is, you can abstract that away. So we are seeing this is a big opportunity for partners to innovate. You're seeing a lot of joint engineering, a lot more complexities coming still, but still end to end is the end game so to speak. >>A absolutely John, I mean one, one of the sort of ways we describe what we try to do for our customers like Equinox is to be your co-pilot in the cloud, which essentially means, you know, >>What an apt analogy. >>I think so, yeah, >>Well, well >>Done there. I think it works. Yvanna. Yeah, so, so as I mentioned, these are the majority or almost all of our customers are pretty sophisticated tech savvy companies. So they don't, you know, they know for most, for the most part what they're trying to achieve. They're approaching scale, they're at scale or they're, or they're through that scale point and they, they just wanna have somebody they can call, right? They need technology to help abstract away the complex problem. So they're not doing so much manual cloud operational work or sometimes they just need help picking the next tech right to solve the end to end use case that that they're, that they're dealing with >>In business. And Danny, you're rolling out solutions so you're on, you're on the front lines, you gotta make it easier. You didn't want to get in the weeds on something that should be taken care of. >>Correct. I mean one of the reasons we go do it is you need to, in order to involve do it, you need to know your problems, understand your challenges, also like a self review only. And you have to be one way halfway through the cloud journey. You need to know your problems, what you want to achieve, where you want to end up a roadmap for the next five years, what you want to achieve. Are we fixing or developing a building? And then involve those guys to come and help you because they cannot just come with magic one and fix all your problems. You need to do that yourself. It's not like starting the journey by yourself. >>Yeah. One thing that's not played up in this event, I will say they may, I don't, they missed, maybe Verner will hit it tomorrow, but I think they kind of missed it a little bit. But the developer productivity's been a big issue. We've seen that this year. One of the big themes on the cube is developer productivity, more velocity on the development side to keep pace with what's on, what solutions are rolling out the customers. And the other one is skills gap. So, and people like, and people have old skills, like we see VMware being bought by Broadcom for instance, got a lot of IT operators at VMware, they gotta go cloud somewhere. So you got new talent, existing talent, skill gaps, people are comfortable, yet the new stuff's there, developers gotta be more productive. How do you guys see that? Cuz that's gonna be how that plays now, it's gonna impact the channel, the partnership relationship, your ability to deliver. >>What's your reaction to that first? Well I think we obviously have a tech savvy team. We've got developers, we've got dev, we've got infrastructure guys, but we only got so much resource that we can afford. And essentially by evolving due it, I've doubled our staff. So we got a tech savvy senior solution architects which comes to do the sexy stuff, actually develop and design a new better offering, better product that makes us competitive. And this is where we involved, essentially we use the due IT staff as an staff employees that our demand is richly army of qualified people. We can actually cherry pick who we want for the call to do X, Y, and Z. And they're there to, to support you. We just have to ask for help. And this is how we fill our gap from technical skills or budget constrained within, you know, within recruitment. >>And I think, I think what, what Danny is touching on, John, what you mentioned is, is really the, the sort of the core family principle of the company, right? It's hard enough for companies like Equinox to hire staff that can help them build their business and deliver the value proposition that they're, that they see, right? And so our reason for existence is to sort of take care of the rest, right? We can help, you know, operate your cloud, show you the most effective way to do that. Whether they're finops problems, whether they're DevOps problems, whether dev SEC ops problems, all of these sort of classic operational problems that get 'em the way of the core business mission. You're not in the business of running the cloud, you're in the business of delivering customer value. We can help you, you know, manage your cloud >>And it's your job to do it. >>It is to do it >>Can, couldn't raise this upon there. How long have y'all been working together? >>I would say 15 months. We took, we took a bit of a conservative approach. We hope for the baseball, prepare for the worst. So I didn't trust do it. I give them one account, start with DEF U A C because you cannot, you just have to learn the journey yourself. So I think I would, my advice for clients is give it the six months. Once you establish a relationship, build a relationship, give them one by one start slowly. You actually understand by yourself the skills, the capacity that they have. And also the, for me consultants is really important And after that just opens up and we are now involving them. We've got new project, we've got problem statement. The first thing we do, we don't Google it, we just say do it. Log a ticket, we got the team. You're >>A verb. >>Yeah. So >>In this case we have >>The puns are on list here on the Cuban general. But with something like that, it's great. >>I gotta ask you a question cuz this is interesting John. You know, we talked last year on the cube and, and again this is an example of how innovations playing out. If you look at the announcements, Adam Celski did and then sw, he had 13 or so announcements. I won't say it's getting boring, but when you hear boring, boring is good. When you start getting into these, these gaps in the platforms as it grows. I won't say they was boring cause that really wasn't boring. I like the data >>Itself. It's all fascinating, John, >>But it, but it's a lot of gap filling, you know, 50 connectors you got, you know, yeah. All glue layers being built in AI's critical. The match cloud is there. What's the innovation? You got a lot of gaps being filled, boring is good. Like Kubernetes, we say there boring means, it's being invisible. That means it's going away. What's the exciting things from your perspective in cloud here? >>Well, I think, I mean, boring is an interesting word to use cuz a company with the heritage of AWS is constantly evolving. I mean, at the core of that company's culture is innovation, technology, development and innovation. And they're building for builders as, as you know, just as well as I do. Yeah. And so, but what we find across our customer base is that companies that are scaling or at scale are using maybe a smaller set of those services, but they're really leveraging them in interesting ways. And there is a very long tail of deeper, more sophisticated fit for purpose, more specific services. And Adam announced, you know, who knows him another 20 or 30 services and it's happening year after year after year. And I think one of the things that, that Danny might attest to is, I, I spoke about the reason we exist and the reason we form the company is we hold it very, a very critical part of our mission is to stay abreast of all of those developments as they emerge so that Danny and and his crew don't have to, right? And so when they have a, a, a question about SageMaker or they have a question about sort of the new big data service that Adam has announced, we take it very seriously. Our job is to be able to answer that question quickly and >>Accurately. And I notice your shirt, if you could just give a little shirt there, ops, cloud ops, DevOps do it. The intersection of the finance, the tuning is now we're hearing a lot of price performance, cost recovery, not cost recovery, but cost management. Yeah. Optimizing. So we're seeing building scale, but now, now tuning almost a craft, the craft of the cloud is here. What's your reaction to that? It, >>It absolutely is. And this is a story as old as the cloud, honestly. And companies, you know, they'll, they'll, companies tend to follow the same sort of maturity journey when they first start, whether they're migrating to the cloud or they were born in the cloud as most of our customers are. There's a, there's a, there's an, there's an access to visibility and understanding and optimization to tuning a craft to use your term. And, and cost management truly is a 10 year old problem that is as prevalent and relevant today as it was, you know, 10 years ago. And there's a lot of talk about the economics associated with the cloud and it's not, certainly not always cheaper to run. In fact, it rarely is cheaper to run your business from any of the public cloud providers. The key is to do it and right size it and make sure it's operating in accordance and alignment with your business, right? It's okay for cloud process to go up so long as your top line is also >>Selling your proportion. You spend more cloud to save cloud. That's it's >>Penny wise, pound full. It's always a little bit, always a little bit of a, of a >>Dilemma on, on the cost saving. We didn't want to just save money. If you want to save money, just shut down your services, right? So it's about making money. So this is where do it comes, like we actually start making, okay, we spend a bit more now, but in about six months time I will be making more money. And we've just did that. We roll out the new application for all the new product offering host to AWS fully with the guys support, a lot of long, boring, boring, boring calls, but they're productive because we actually now have a better product, competitive, it's tailored for our clients, it's cost effective. And we are actually making money >>When something's invisible. It's working, you know, talking about it means it's, it's, it's operational. >>It's exactly, it's, >>Well to that point, John, one of the things we're most proud of in, you know, know this year was, was the launch of our product we called Flex Save, which essentially does exactly what you've described. It's, it's looking for automation and, and, and, and automatic ways of, yes. Saving money, but offering the opportunities to, to to improve the economics associated with your cloud infrastructure. >>Yeah. And improving the efficiency across the board. A hundred percent. It, it's, oh, it's awesome. Let's, and, and it's, it's my understanding there's some reporting and insights that you're able to then translate through from do it to your CTO and across the company. Denny, what's that like? What do you get to see working >>With them? Well, the problem is, like the CTO asked me to do all of that. It is funny he thinks that he's doing it, but essentially they have a excellent portal that basically looks up all of our instances on the one place. You got like good analytics on your cost, cost, anomalies, budget, costal location. But I didn't want to do that either. So what I have done is taken the next step. I actually sold this to the, to my company completely. So my finance teams goes there, they do it themselves, they log in, check, check, all the billing, the costal location. I actually has zero iteration with them if I don't hear anything from them, which is one of the benefits. But also there is lot of other products like the Flexe is virtually like you just click a finger and you start saving money just like that. Easy >>Is that easy button we've been talking about on >>The show? Yeah, exactly, exactly how it is. But there is obviously outside of the cost management, you actually can look at what is the resource you using do actually need it, how often you use it, think about the long term goal, what you're trying to achieve, and use the analytics to, and actually I have to say the analytics much better than AWS in, in, in, in cmp. It's, it's just more user friendly, more interactive as opposed to, you know, building the one in aws. >>It's good business model. Make things easy for your customers. Easy, simple >>To use. >>It's gotta be nice to hear John. >>Well, so first of all, thank you daddy. >>We, we work, but in all seriousness, you know, we, we work, Danny mentioned the trust word earlier. This is at the core of if we don't, if we're not able to build trust with our clients, our business is dead. It, it just doesn't exist. It can't scale. In fact, it'll go the opposite direction. And so we're, we work very, very hard to earn that trust and we're willing to start small to Danny's example, start small and grow. And that's why we're very, one of the things we're most proud of is, is how few customers tend to leave us year over year. We have customers that have been with us for 10 years. >>You know, Andy, Jesse always has, I just saw an interview, he was on the New York Times event in New York today as a CEO of Amazon. But he's always said in these build out phases, you gotta work backwards from the customer and innovate on behalf of the customer. Cause that's the answer that will always be a good answer for the outcome versus optimizing for just profit, you know what I'm saying? Or other things. So we're still in build out mode, >>You know, as a, as a, as a core fundamental sort of product concept. If you're not solving important problems for our customer, what are you, why, why are you investing? It just >>Doesn't make it. This is the beauty we do it. We actually, they wait for you to come to do the next step. They don't sell me anything. They don't bug me with emails. They're ready. When you're ready to make that journey, you just log a ticket and then come and help you. And this is the beauty. You just, it's just not your, your journey. >>I love it. That's a, that's a beautiful note to lead us to our new tradition on the cube. We have a little bit of a challenge for the both of you. We're looking for your 32nd Instagram real thought leadership sizzle anecdote. Either one of you wanna go first. John looks a little nauseous. Danny, you wanna give it a go? >>Well, we've got a few expressions, but we don't Google it. We just do it. And the key take, that's what we do now at, at, and also what we do is actually using their stuff as an influence employees richly. Like that's what we do. >>Well done, well done. Didn't even need the 30 seconds. Fantastic work, Danny. I love that. All right, John, now you do have to go. Okay, >>I'll goodness. You know, I'll, I'll, I'll, I'll I'll go back to what I mentioned earlier, if that's okay. I think we, you know, we exist as a company to sort of help our customers get back to focusing on why they started the business in the first place, which is innovating and delivering value to customers. And we'll help you take care of the rest. It's as simple as that. Awesome. >>Well done. You absolutely nailed it. I wanna just acknowledge your fan club over there watching. Hello everyone from the doit team. Good job team. I love, it's very cute when guests show up with an entourage to the cube. We like to see it. You obviously deserve the entourage. You're, you're both wonderful. Thanks again for being here on the show with Oh yeah, go ahead >>John. Well, I would just like to thank Danny for, for agreeing to >>Discern, thankfully >>Great to spend time with you. Absolutely. Let's do it. >>Thank you. Yeah, >>Yeah. Fantastic gentlemen. Well thank you all for tuning into this wonderful start to the afternoon here from AWS Reinvent. We are in Las Vegas, Nevada with John Furier. My name's Savannah Peterson, you're watching The Cube, the leader in high tech coverage.

Published Date : Nov 30 2022

SUMMARY :

from the show floor at AWS Reinvent. Wasn't very complex like it is today, so it was very easy, Great, great guests coming up Cube alumni and great question around complexity and how is wellbeing teams be I swear I'll be able to say that right by the end of this. You know, back back to pre Covid days, John, what about you? It's, it's been busier than ever in case the audience isn't familiar, let's get them acquainted with your companies. in the cloud, scaling a business in the cloud, a lot of companies are just looking to sort of have I can imagine pretty much everyone here on the show floor is dealing with that challenge of complexity. And one of the key values for us here is that we can actually offer a product in regions And what you used to have here So again, we got more complexity coming, but the greatest the cloud is, you can abstract that you know, they know for most, for the most part what they're trying to achieve. And Danny, you're rolling out solutions so you're on, you're on the front lines, you gotta make it easier. I mean one of the reasons we go do it is you need to, And the other one is skills gap. And this is how we fill our gap from We can help, you know, operate your cloud, show you the most effective way to do that. Can, couldn't raise this upon there. start with DEF U A C because you cannot, you just have to learn The puns are on list here on the Cuban general. I like the data But it, but it's a lot of gap filling, you know, 50 connectors you got, you know, yeah. I spoke about the reason we exist and the reason we form the company is we hold it very, The intersection of the finance, the tuning is now we're hearing a lot of price performance, that is as prevalent and relevant today as it was, you know, 10 years ago. You spend more cloud to save cloud. It's always a little bit, always a little bit of a, of a We roll out the new application for all the new product offering host It's working, you know, talking about it means it's, it's, it's operational. Well to that point, John, one of the things we're most proud of in, you know, know this year was, was the launch of our product we from do it to your CTO and across the company. Well, the problem is, like the CTO asked me to do all of that. more interactive as opposed to, you know, building the one in aws. Make things easy for your customers. This is at the core of if we don't, if we're not able to build trust with our clients, the outcome versus optimizing for just profit, you know what I'm saying? You know, as a, as a, as a core fundamental sort of product concept. This is the beauty we do it. for the both of you. And the key take, All right, John, now you do have to go. I think we, you know, we exist as a company to sort of help our customers get back to focusing Thanks again for being here on the show with Oh yeah, go ahead Great to spend time with you. Thank you. Well thank you all for tuning into this wonderful start to the afternoon here

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
JohnPERSON

0.99+

Adam CelskiPERSON

0.99+

DannyPERSON

0.99+

SavannahPERSON

0.99+

John FurierPERSON

0.99+

Savannah PetersonPERSON

0.99+

13QUANTITY

0.99+

AndyPERSON

0.99+

John FurrierPERSON

0.99+

EquinoxORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

New YorkLOCATION

0.99+

Danislav PenevPERSON

0.99+

JessePERSON

0.99+

AdamPERSON

0.99+

50 connectorsQUANTITY

0.99+

EuropeLOCATION

0.99+

YvannaPERSON

0.99+

AWSORGANIZATION

0.99+

BroadcomORGANIZATION

0.99+

10 yearsQUANTITY

0.99+

AmericaLOCATION

0.99+

15 monthsQUANTITY

0.99+

North AmericaLOCATION

0.99+

firstQUANTITY

0.99+

last yearDATE

0.99+

30 secondsQUANTITY

0.99+

DennyPERSON

0.99+

AfricaLOCATION

0.99+

32ndQUANTITY

0.99+

The CubeTITLE

0.99+

30 servicesQUANTITY

0.99+

bothQUANTITY

0.99+

oneQUANTITY

0.98+

todayDATE

0.98+

20QUANTITY

0.98+

LatinLOCATION

0.98+

tomorrowDATE

0.98+

one accountQUANTITY

0.98+

VMwareORGANIZATION

0.98+

this yearDATE

0.98+

John PurcellPERSON

0.97+

GoogleORGANIZATION

0.97+

southeast AsiaLOCATION

0.97+

Las Vegas, NevadaLOCATION

0.96+

about six monthsQUANTITY

0.96+

zeroQUANTITY

0.96+

dozens of videosQUANTITY

0.96+

DoiT InternationalORGANIZATION

0.96+

each regionQUANTITY

0.96+

10 years agoDATE

0.95+

INFINOX GlobalORGANIZATION

0.95+

AWS ReinventORGANIZATION

0.95+

CubeORGANIZATION

0.94+

this yearDATE

0.93+

DeWitORGANIZATION

0.93+

ML & AI Keynote Analysis | AWS re:Invent 2022


 

>>Hey, welcome back everyone. Day three of eight of us Reinvent 2022. I'm John Farmer with Dave Volante, co-host the q Dave. 10 years for us, the leader in high tech coverage is our slogan. Now 10 years of reinvent day. We've been to every single one except with the original, which we would've come to if Amazon actually marketed the event, but they didn't. It's more of a customer event. This is day three. Is the machine learning ai keynote sws up there. A lot of announcements. We're gonna break this down. We got, we got Andy Thra here, vice President, prince Constellation Research. Andy, great to see you've been on the cube before one of our analysts bringing the, bringing the, the analysis, commentary to the keynote. This is your wheelhouse. Ai. What do you think about Swami up there? I mean, he's awesome. We love him. Big fan Oh yeah. Of of the Cuban we're fans of him, but he got 13 announcements. >>A lot. A lot, >>A lot. >>So, well some of them are, first of all, thanks for having me here and I'm glad to have both of you on the same show attacking me. I'm just kidding. But some of the announcement really sort of like a game changer announcements and some of them are like, meh, you know, just to plug in the holes what they have and a lot of golf claps. Yeah. Meeting today. And you could have also noticed that by, when he was making the announcements, you know, the, the, the clapping volume difference, you could say, which is better, right? But some of the announcements are, are really, really good. You know, particularly we talked about, one of that was Microsoft took that out of, you know, having the open AI in there, doing the large language models. And then they were going after that, you know, having the transformer available to them. And Amazon was a little bit weak in the area, so they couldn't, they don't have a large language model. So, you know, they, they are taking a different route saying that, you know what, I'll help you train the large language model by yourself, customized models. So I can provide the necessary instance. I can provide the instant volume, memory, the whole thing. Yeah. So you can train the model by yourself without depending on them kind >>Of thing. So Dave and Andy, I wanna get your thoughts cuz first of all, we've been following Amazon's deep bench on the, on the infrastructure pass. They've been doing a lot of machine learning and ai, a lot of data. It just seems that the sentiment is that there's other competitors doing a good job too. Like Google, Dave. And I've heard folks in the hallway, even here, ex Amazonians saying, Hey, they're train their models on Google than they bring up the SageMaker cuz it's better interface. So you got, Google's making a play for being that data cloud. Microsoft's obviously putting in a, a great kind of package to kind of make it turnkey. How do they really stand versus the competition guys? >>Good question. So they, you know, each have their own uniqueness and the we variation that take it to the field, right? So for example, if you were to look at it, Microsoft is known for as industry or later things that they are been going after, you know, industry verticals and whatnot. So that's one of the things I looked here, you know, they, they had this omic announcement, particularly towards that healthcare genomics space. That's a huge space for hpz related AIML applications. And they have put a lot of things in together in here in the SageMaker and in the, in their models saying that, you know, how do you, how do you use this transmit to do things like that? Like for example, drug discovery, for genomics analysis, for cancer treatment, the whole, right? That's a few volumes of data do. So they're going in that healthcare area. Google has taken a different route. I mean they want to make everything simple. All I have to do is I gotta call an api, give what I need and then get it done. But Amazon wants to go at a much deeper level saying that, you know what? I wanna provide everything you need. You can customize the whole thing for what you need. >>So to me, the big picture here is, and and Swami references, Hey, we are a data company. We started, he talked about books and how that informed them as to, you know, what books to place front and center. Here's the, here's the big picture. In my view, companies need to put data at the core of their business and they haven't, they've generally put humans at the core of their business and data. And now machine learning are at the, at the outside and the periphery. Amazon, Google, Microsoft, Facebook have put data at their core. So the question is how do incumbent companies, and you mentioned some Toyota Capital One, Bristol Myers Squibb, I don't know, are those data companies, you know, we'll see, but the challenge is most companies don't have the resources as you well know, Andy, to actually implement what Google and Facebook and others have. >>So how are they gonna do that? Well, they're gonna buy it, right? So are they gonna build it with tools that's kind of like you said the Amazon approach or are they gonna buy it from Microsoft and Google, I pulled some ETR data to say, okay, who are the top companies that are showing up in terms of spending? Who's spending with whom? AWS number one, Microsoft number two, Google number three, data bricks. Number four, just in terms of, you know, presence. And then it falls down DataRobot, Anaconda data icu, Oracle popped up actually cuz they're embedding a lot of AI into their products and, and of course IBM and then a lot of smaller companies. But do companies generally customers have the resources to do what it takes to implement AI into applications and into workflows? >>So a couple of things on that. One is when it comes to, I mean it's, it's no surprise that the, the top three or the hyperscalers, because they all want to bring their business to them to run the specific workloads on the next biggest workload. As you was saying, his keynote are two things. One is the A AIML workloads and the other one is the, the heavy unstructured workloads that he was talking about. 80%, 90% of the data that's coming off is unstructured. So how do you analyze that? Such as the geospatial data. He was talking about the volumes of data you need to analyze the, the neural deep neural net drug you ought to use, only hyperscale can do it, right? So that's no wonder all of them on top for the data, one of the things they announced, which not many people paid attention, there was a zero eight L that that they talked about. >>What that does is a little bit of a game changing moment in a sense that you don't have to, for example, if you were to train the data, data, if the data is distributed everywhere, if you have to bring them all together to integrate it, to do that, it's a lot of work to doing the dl. So by taking Amazon, Aurora, and then Rich combine them as zero or no ETL and then have Apaches Apaches Spark applications run on top of analytical applications, ML workloads. That's huge. So you don't have to move around the data, use the data where it is, >>I, I think you said it, they're basically filling holes, right? Yeah. They created this, you know, suite of tools, let's call it. You might say it's a mess. It's not a mess because it's, they're really powerful but they're not well integrated and now they're starting to take the seams as I say. >>Well yeah, it's a great point. And I would double down and say, look it, I think that boring is good. You know, we had that phase in Kubernetes hype cycle where it got boring and that was kind of like, boring is good. Boring means we're getting better, we're invisible. That's infrastructure that's in the weeds, that's in between the toes details. It's the stuff that, you know, people we have to get done. So, you know, you look at their 40 new data sources with data Wrangler 50, new app flow connectors, Redshift Auto Cog, this is boring. Good important shit Dave. The governance, you gotta get it and the governance is gonna be key. So, so to me, this may not jump off the page. Adam's keynote also felt a little bit of, we gotta get these gaps done in a good way. So I think that's a very positive sign. >>Now going back to the bigger picture, I think the real question is can there be another independent cloud data cloud? And that's the, to me, what I try to get at my story and you're breaking analysis kind of hit a home run on this, is there's interesting opportunity for an independent data cloud. Meaning something that isn't aws, that isn't, Google isn't one of the big three that could sit in. And so let me give you an example. I had a conversation last night with a bunch of ex Amazonian engineering teams that left the conversation was interesting, Dave. They were like talking, well data bricks and Snowflake are basically batch, okay, not transactional. And you look at Aerospike, I can see their booth here. Transactional data bases are hot right now. Streaming data is different. Confluence different than data bricks. Is data bricks good at hosting? >>No, Amazon's better. So you start to see these kinds of questions come up where, you know, data bricks is great, but maybe not good for this, that and the other thing. So you start to see the formation of swim lanes or visibility into where people might sit in the ecosystem, but what came out was transactional. Yep. And batch the relationship there and streaming real time and versus you know, the transactional data. So you're starting to see these new things emerge. Andy, what do you, what's your take on this? You're following this closely. This seems to be the alpha nerd conversation and it all points to who's gonna have the best data cloud, say data, super clouds, I call it. What's your take? >>Yes, data cloud is important as well. But also the computational that goes on top of it too, right? Because when, when the data is like unstructured data, it's that much of a huge data, it's going to be hard to do that with a low model, you know, compute power. But going back to your data point, the training of the AIML models required the batch data, right? That's when you need all the, the historical data to train your models. And then after that, when you do inference of it, that's where you need the streaming real time data that's available to you too. You can make an inference. One of the things, what, what they also announced, which is somewhat interesting, is you saw that they have like 700 different instances geared towards every single workload. And there are some of them very specifically run on the Amazon's new chip. The, the inference in two and theran tr one chips that basically not only has a specific instances but also is run on a high powered chip. And then if you have that data to support that, both the training as well as towards the inference, the efficiency, again, those numbers have to be proven. They claim that it could be anywhere between 40 to 60% faster. >>Well, so a couple things. You're definitely right. I mean Snowflake started out as a data warehouse that was simpler and it's not architected, you know, in and it's first wave to do real time inference, which is not now how, how could they, the other second point is snowflake's two or three years ahead when it comes to governance, data sharing. I mean, Amazon's doing what always does. It's copying, you know, it's customer driven. Cuz they probably walk into an account and they say, Hey look, what's Snowflake's doing for us? This stuff's kicking ass. And they go, oh, that's a good idea, let's do that too. You saw that with separating compute from storage, which is their tiering. You saw it today with extending data, sharing Redshift, data sharing. So how does Snowflake and data bricks approach this? They deal with ecosystem. They bring in ecosystem partners, they bring in open source tooling and that's how they compete. I think there's unquestionably an opportunity for a data cloud. >>Yeah, I think, I think the super cloud conversation and then, you know, sky Cloud with Berkeley Paper and other folks talking about this kind of pre, multi-cloud era. I mean that's what I would call us right now. We are, we're kind of in the pre era of multi-cloud, which by the way is not even yet defined. I think people use that term, Dave, to say, you know, some sort of magical thing that's happening. Yeah. People have multiple clouds. They got, they, they end up by default, not by design as Dell likes to say. Right? And they gotta deal with it. So it's more of they're inheriting multiple cloud environments. It's not necessarily what they want in the situation. So to me that is a big, big issue. >>Yeah, I mean, again, going back to your snowflake and data breaks announcements, they're a data company. So they, that's how they made their mark in the market saying that, you know, I do all those things, therefore you have, I had to have your data because it's a seamless data. And, and Amazon is catching up with that with a lot of that announcements they made, how far it's gonna get traction, you know, to change when I to say, >>Yeah, I mean to me, to me there's no doubt about Dave. I think, I think what Swamee is doing, if Amazon can get corner the market on out of the box ML and AI capabilities so that people can make it easier, that's gonna be the end of the day tell sign can they fill in the gaps. Again, boring is good competition. I don't know mean, mean I'm not following the competition. Andy, this is a real question mark for me. I don't know where they stand. Are they more comprehensive? Are they more deeper? Are they have deeper services? I mean, obviously shows to all the, the different, you know, capabilities. Where, where, where does Amazon stand? What's the process? >>So what, particularly when it comes to the models. So they're going at, at a different angle that, you know, I will help you create the models we talked about the zero and the whole data. We'll get the data sources in, we'll create the model. We'll move the, the whole model. We are talking about the ML ops teams here, right? And they have the whole functionality that, that they built ind over the year. So essentially they want to become the platform that I, when you come in, I'm the only platform you would use from the model training to deployment to inference, to model versioning to management, the old s and that's angle they're trying to take. So it's, it's a one source platform. >>What about this idea of technical debt? Adrian Carro was on yesterday. John, I know you talked to him as well. He said, look, Amazon's Legos, you wanna buy a toy for Christmas, you can go out and buy a toy or do you wanna build a, to, if you buy a toy in a couple years, you could break and what are you gonna do? You're gonna throw it out. But if you, if you, if part of your Lego needs to be extended, you extend it. So, you know, George Gilbert was saying, well, there's a lot of technical debt. Adrian was countering that. Does Amazon have technical debt or is that Lego blocks analogy the right one? >>Well, I talked to him about the debt and one of the things we talked about was what do you optimize for E two APIs or Kubernetes APIs? It depends on what team you're on. If you're on the runtime gene, you're gonna optimize for Kubernetes, but E two is the resources you want to use. So I think the idea of the 15 years of technical debt, I, I don't believe that. I think the APIs are still hardened. The issue that he brings up that I think is relevant is it's an end situation, not an or. You can have the bag of Legos, which is the primitives and build a durable application platform, monitor it, customize it, work with it, build it. It's harder, but the outcome is durability and sustainability. Building a toy, having a toy with those Legos glued together for you, you can get the play with, but it'll break over time. Then you gotta replace it. So there's gonna be a toy business and there's gonna be a Legos business. Make your own. >>So who, who are the toys in ai? >>Well, out of >>The box and who's outta Legos? >>The, so you asking about what what toys Amazon building >>Or, yeah, I mean Amazon clearly is Lego blocks. >>If people gonna have out the box, >>What about Google? What about Microsoft? Are they basically more, more building toys, more solutions? >>So Google is more of, you know, building solutions angle like, you know, I give you an API kind of thing. But, but if it comes to vertical industry solutions, Microsoft is, is is ahead, right? Because they have, they have had years of indu industry experience. I mean there are other smaller cloud are trying to do that too. IBM being an example, but you know, the, now they are starting to go after the specific industry use cases. They think that through, for example, you know the medical one we talked about, right? So they want to build the, the health lake, security health lake that they're trying to build, which will HIPPA and it'll provide all the, the European regulations, the whole line yard, and it'll help you, you know, personalize things as you need as well. For example, you know, if you go for a certain treatment, it could analyze you based on your genome profile saying that, you know, the treatment for this particular person has to be individualized this way, but doing that requires a anomalous power, right? So if you do applications like that, you could bring in a lot of the, whether healthcare, finance or what have you, and then easy for them to use. >>What's the biggest mistake customers make when it comes to machine intelligence, ai, machine learning, >>So many things, right? I could start out with even the, the model. Basically when you build a model, you, you should be able to figure out how long that model is effective. Because as good as creating a model and, and going to the business and doing things the right way, there are people that they leave the model much longer than it's needed. It's hurting your business more than it is, you know, it could be things like that. Or you are, you are not building a responsibly or later things. You are, you are having a bias and you model and are so many issues. I, I don't know if I can pinpoint one, but there are many, many issues. Responsible ai, ethical ai. All >>Right, well, we'll leave it there. You're watching the cube, the leader in high tech coverage here at J three at reinvent. I'm Jeff, Dave Ante. Andy joining us here for the critical analysis and breaking down the commentary. We'll be right back with more coverage after this short break.

Published Date : Nov 30 2022

SUMMARY :

Ai. What do you think about Swami up there? A lot. of, you know, having the open AI in there, doing the large language models. So you got, Google's making a play for being that data cloud. So they, you know, each have their own uniqueness and the we variation that take it to have the resources as you well know, Andy, to actually implement what Google and they gonna build it with tools that's kind of like you said the Amazon approach or are they gonna buy it from Microsoft the neural deep neural net drug you ought to use, only hyperscale can do it, right? So you don't have to move around the data, use the data where it is, They created this, you know, It's the stuff that, you know, people we have to get done. And so let me give you an example. So you start to see these kinds of questions come up where, you know, it's going to be hard to do that with a low model, you know, compute power. was simpler and it's not architected, you know, in and it's first wave to do real time inference, I think people use that term, Dave, to say, you know, some sort of magical thing that's happening. you know, I do all those things, therefore you have, I had to have your data because it's a seamless data. the different, you know, capabilities. at a different angle that, you know, I will help you create the models we talked about the zero and you know, George Gilbert was saying, well, there's a lot of technical debt. Well, I talked to him about the debt and one of the things we talked about was what do you optimize for E two APIs or Kubernetes So Google is more of, you know, building solutions angle like, you know, I give you an API kind of thing. you know, it could be things like that. We'll be right back with more coverage after this short break.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
JeffPERSON

0.99+

George GilbertPERSON

0.99+

AmazonORGANIZATION

0.99+

MicrosoftORGANIZATION

0.99+

AdrianPERSON

0.99+

DavePERSON

0.99+

AndyPERSON

0.99+

GoogleORGANIZATION

0.99+

IBMORGANIZATION

0.99+

FacebookORGANIZATION

0.99+

Adrian CarroPERSON

0.99+

Dave VolantePERSON

0.99+

Andy ThraPERSON

0.99+

90%QUANTITY

0.99+

15 yearsQUANTITY

0.99+

JohnPERSON

0.99+

AdamPERSON

0.99+

13 announcementsQUANTITY

0.99+

LegoORGANIZATION

0.99+

John FarmerPERSON

0.99+

Dave AntePERSON

0.99+

twoQUANTITY

0.99+

10 yearsQUANTITY

0.99+

AWSORGANIZATION

0.99+

DellORGANIZATION

0.99+

LegosORGANIZATION

0.99+

Bristol Myers SquibbORGANIZATION

0.99+

OracleORGANIZATION

0.99+

Constellation ResearchORGANIZATION

0.99+

OneQUANTITY

0.99+

ChristmasEVENT

0.99+

second pointQUANTITY

0.99+

yesterdayDATE

0.99+

AnacondaORGANIZATION

0.99+

todayDATE

0.99+

Berkeley PaperORGANIZATION

0.99+

oneQUANTITY

0.99+

eightQUANTITY

0.98+

700 different instancesQUANTITY

0.98+

three yearsQUANTITY

0.98+

SwamiPERSON

0.98+

AerospikeORGANIZATION

0.98+

bothQUANTITY

0.98+

SnowflakeORGANIZATION

0.98+

two thingsQUANTITY

0.98+

60%QUANTITY

0.98+

Jerry Chen, Greylock | AWS re:Invent 2022


 

>>Welcome back. Everyone live here at the I'm John Fur, host of the Cube. We got a special insertion here off the program. Jerry Chen Greylock, 10 years with the Cube coming on. 10 years ago when the cube first came here, Jerry, you were in the hallway. We didn't have any guess list. He was like, Hey, you wanna come up in the cube so much. Now we got three sets. We're gonna do hundreds of interviews already. We're gonna have probably over 200 streaming live. Love it Shorts, Instagram reels, data lake. The cubes expanded. You've been there from the whole >>Time. Its like the, its like the, the mcu, the Marvel Cinematic Universe. The Cube Cinematic universe. You know, it's, its a whole franchise. Congratulations and happy early birthday, John. Thank you very much. Thanks >>For having me. Yeah, you know, I was just graduated high school when I first came to aws. Look, I wanna get your thoughts on, we're gonna do a quick segment here before AMD comes on. Got some great interviews with those guys. You've been here 10 years, you're out in the trenches. Just Andy, Adam Celski, just talked to the VCs, the investment thesis economy. Yeah. This headwinds, tailwinds, depending on which side you're on, you're gonna have a tailwind or headwind. What's the outlook? What's your take of reinvent this year? Aws, the ecosystem and the investment market. >>You know, I think it's, it is a great rebound. The energy's back when it was like pre covid, right? We're saying last year was kind of half the size and you know, be postcode. But I think the show, the energy's great. And Amazon just amazing, right? It's in this economy, what's going on right now in the world. They're still growing, still kicking butt. I think you're gonna see a lot of both enterprise customers and startups start to worry about cost, right? Because I think Amazon's gonna focus like, Hey, how can they help the customers? But the economy for the next year, I think we're gonna see some headwinds. So I think a lot of startups, a lot of customers are gonna worry about cost. >>You're on the board of a lot of startups that are in the cloud, rock sets. One we've covered. I think they're gonna come on here too tomorrow or today. What's your advice on the board level? Go to market. Dial up. Dial down. Sure. What's the strategy marketplace? I mean, how do you give the advice to start? What's the, what's the north star? What's the, what's the advice as the investor? >>Two or three things for most startups, hard roi, like how can you save money? So all the kinda fluffy marketing value you gotta have hard dollar savings, right? Number one, if can save money, you'll do well. Number two, to your point, the marketplace is becoming the channel for startups. These lot of large customers have deals with Amazon through the marketplace. So startup can sell through the marketplace to customers. These lot of CFOs are doing no new vendors, right? It's getting hard, hard to get approved as a startup. So the marketplace become a bigger, bigger deal. >>What about existing ecosystem partners that have been around for the past 10 years? They're independent. They may have their toe in the marketplace, may not, some of them not making their numbers, they're starting to hear things like maybe they'll be re pivoting. People are tooling up. What's the advice for the existing ecosystem partners? Because they're either gonna be like the next data bricks or kind of like maybe >>Everyone's looking for the next data bricks, right? You know, I think for existing partners, you're seeing what's happened. John deals are getting smaller, taking longer to close, right? It's just the reality of what's happening right now. And so for those partners are saying, Hey, focus on the heart roi, be okay with the smaller land and just expand in 23, 24. So just get kind of creative of how you work with customers. And I, like you said, I think Marketplace is is kind of a, a go-to light >>Book. So today, Aruba, the new leader of the, of the partner network, they've merged eight PN with the marketplace. They've now won Coherent organization, not fragmented, I was talking to them last night. They have more startups than ever before coming on board. So the velocity of new venture creation is up, up and to the right still, even in this economy. And as they always say, best time to invest is in a down market. That's like BC 1 0 1, entrepreneurship 1 0 1. What's your advice right now for builders out there looking for that round, trying to get some traction. The agility with the cloud still is there. You can still get time to value. You can still get traction fast. That doesn't go away. What's your advice for the startups? >>Narrow, narrower wedge, right. So I think with like 5,000 startups every single year, there's so much noise. John, look across the floor, a lot of great companies. B, a lot of noise. So I think the more focused wedge you have as a startup and how you can land deliver value, the better land, the very, very sharp wedge expand over time. But just be very specific how you land. >>Awesome. Jerry, great to have you on. I know we wanna make some room on appreciate AMD for squeezing a couple minutes out of their hour and the next hour we're gonna spend with them for your Sage advice final kind of new Insta challenge that Savannah put together, A new host instant challenge, instant challenges. If you had to do an Instagram reel right now, oh, about reinvent this year, what would that Instagram reel be right now? >>I would, I would do the expos scavenger hunt, right? We would have a race of different VCs. You give me a list of five companies, the VCs find the first five companies on the list wins. The wins the race. I think that would be a great challenge. >>All right. What's the most important story this year at Reinvent that you could share with the folks that you could share in terms of what's important, what they should pay attention to, or what's not being told? >>Well, I, I think you talked about your interview with Adam Slosky is the solutions and the what you call the next gen cloud. These high level services. What AWS is doing around these services, it's super interesting. They kind of don't say lead the way, but the responded customers. So they lead the way by kind of following where the customer's going and if, when Slutsky and AWS are doing these solutions, supply chain, et cetera, that tells you kind of where the market's >>Headed. Next Gen Cloud, Jerry, Chad, thanks. Coming on, you're watching The Cube, the leader in high tech coverage. I'm John Furrier. Will be right back with more cube coverages. Day two, day three, here at Reinvent at the short break.

Published Date : Nov 30 2022

SUMMARY :

Everyone live here at the I'm John Fur, host of the Cube. Thank you very much. What's the outlook? But the economy for the next year, I think we're gonna see some headwinds. What's the strategy marketplace? So all the kinda fluffy marketing value you gotta have hard dollar savings, What's the advice for the existing ecosystem So just get kind of creative of how you work with customers. So the velocity of new venture creation is So I think the more focused wedge you have as a startup and how you can land deliver value, of their hour and the next hour we're gonna spend with them for your Sage advice final kind You give me a list of five companies, the VCs find the first five companies on the list wins. What's the most important story this year at Reinvent that you could share with the folks that you could share in terms Well, I, I think you talked about your interview with Adam Slosky is the solutions and the what you call the next gen cloud. Will be right back with more cube coverages.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
AndyPERSON

0.99+

Adam CelskiPERSON

0.99+

JohnPERSON

0.99+

Jerry Chen GreylockPERSON

0.99+

AWSORGANIZATION

0.99+

Adam SloskyPERSON

0.99+

AmazonORGANIZATION

0.99+

Jerry ChenPERSON

0.99+

JerryPERSON

0.99+

SavannahPERSON

0.99+

last yearDATE

0.99+

five companiesQUANTITY

0.99+

todayDATE

0.99+

10 yearsQUANTITY

0.99+

John FurrierPERSON

0.99+

John FurPERSON

0.99+

next yearDATE

0.99+

TwoQUANTITY

0.99+

three setsQUANTITY

0.99+

AMDORGANIZATION

0.99+

tomorrowDATE

0.99+

10 years agoDATE

0.98+

GreylockPERSON

0.98+

last nightDATE

0.98+

bothQUANTITY

0.98+

OneQUANTITY

0.98+

23QUANTITY

0.98+

ChadPERSON

0.98+

firstQUANTITY

0.97+

5,000 startupsQUANTITY

0.97+

24QUANTITY

0.97+

Marvel Cinematic UniverseORGANIZATION

0.97+

this yearDATE

0.97+

first five companiesQUANTITY

0.96+

Day twoQUANTITY

0.96+

over 200 streamingQUANTITY

0.95+

day threeQUANTITY

0.95+

The CubeTITLE

0.92+

three thingsQUANTITY

0.9+

eightQUANTITY

0.9+

InstagramORGANIZATION

0.84+

hundreds of interviewsQUANTITY

0.83+

past 10 yearsDATE

0.78+

every single yearQUANTITY

0.75+

SlutskyPERSON

0.74+

InventEVENT

0.73+

ArubaLOCATION

0.65+

Number twoQUANTITY

0.65+

Cube CinematicORGANIZATION

0.62+

ReinventORGANIZATION

0.57+

CoherentORGANIZATION

0.57+

reinventEVENT

0.56+

oneQUANTITY

0.52+

ReinventEVENT

0.47+

PNORGANIZATION

0.46+

2022DATE

0.33+

SiliconANGLE Report: Reporters Notebook with Adrian Cockcroft | AWS re:Invent 2022


 

(soft techno upbeat music) >> Hi there. Welcome back to Las Vegas. This is Dave Villante with Paul Gillon. Reinvent day one and a half. We started last night, Monday, theCUBE after dark. Now we're going wall to wall. Today. Today was of course the big keynote, Adam Selipsky, kind of the baton now handing, you know, last year when he did his keynote, he was very new. He was sort of still getting his feet wet and finding his guru swing. Settling in a little bit more this year, learning a lot more, getting deeper into the tech, but of course, sharing the love with other leaders like Peter DeSantis. Tomorrow's going to be Swamy in the keynote. Adrian Cockcroft is here. Former AWS, former network Netflix CTO, currently an analyst. You got your own firm now. You're out there. Great to see you again. Thanks for coming on theCUBE. >> Yeah, thanks. >> We heard you on at Super Cloud, you gave some really good insights there back in August. So now as an outsider, you come in obviously, you got to be impressed with the size and the ecosystem and the energy. Of course. What were your thoughts on, you know what you've seen so far, today's keynotes, last night Peter DeSantis, what stood out to you? >> Yeah, I think it's great to be back at Reinvent again. We're kind of pretty much back to where we were before the pandemic sort of shut it down. This is a little, it's almost as big as the, the largest one that we had before. And everyone's turned up. It just feels like we're back. So that's really good to see. And it's a slightly different style. I think there were was more sort of video production things happening. I think in this keynote, more storytelling. I'm not sure it really all stitched together very well. Right. Some of the stories like, how does that follow that? So there were a few things there and some of there were spelling mistakes on the slides, you know that ELT instead of ETL and they spelled ZFS wrong and something. So it just seemed like there was, I'm not quite sure just maybe a few things were sort of rushed at the last minute. >> Not really AWS like, was it? It's kind of remind the Patriots Paul, you know Bill Belichick's teams are fumbling all over the place. >> That's right. That's right. >> Part of it may be, I mean the sort of the market. They have a leader in marketing right now but they're going to have a CMO. So that's sort of maybe as lack of a single threaded leader for this thing. Everything's being shared around a bit more. So maybe, I mean, it's all fixable and it's mine. This is minor stuff. I'm just sort of looking at it and going there's a few things that looked like they were not quite as good as they could have been in the way it was put together. Right? >> But I mean, you're taking a, you know a year of not doing Reinvent. Yeah. Being isolated. You know, we've certainly seen it with theCUBE. It's like, okay, it's not like riding a bike. You know, things that, you know you got to kind of relearn the muscle memories. It's more like golf than is bicycle riding. >> Well I've done AWS keynotes myself. And they are pretty much scrambled. It looks nice, but there's a lot of scrambling leading up to when it actually goes. Right? And sometimes you can, you sometimes see a little kind of the edges of that, and sometimes it's much more polished. But you know, overall it's pretty good. I think Peter DeSantis keynote yesterday was a lot of really good meat there. There was some nice presentations, and some great announcements there. And today I was, I thought I was a little disappointed with some of the, I thought they could have been more. I think the way Andy Jesse did it, he crammed more announcements into his keynote, and Adam seems to be taking sort of a bit more of a measured approach. There were a few things he picked up on and then I'm expecting more to be spread throughout the rest of the day. >> This was more poetic. Right? He took the universe as the analogy for data, the ocean for security. Right? The Antarctic was sort of. >> Yeah. It looked pretty, >> yeah. >> But I'm not sure that was like, we're not here really to watch nature videos >> As analysts and journalists, You're like, come on. >> Yeah, >> Give it the meat >> That was kind the thing, yeah, >> It has always been the AWS has always been Reinvent has always been a shock at our approach. 100, 150 announcements. And they're really, that kind of pressure seems to be off them now. Their position at the top of the market seems to be unshakeable. There's no clear competition that's creeping up behind them. So how does that affect the messaging you think that AWS brings to market when it doesn't really have to prove that it's a leader anymore? It can go after maybe more of the niche markets or fix the stuff that's a little broken more fine tuning than grandiose statements. >> I think so AWS for a long time was so far out that they basically said, "We don't think about the competition, we are listen to the customers." And that was always the statement that works as long as you're always in the lead, right? Because you are introducing the new idea to the customer. Nobody else got there first. So that was the case. But in a few areas they aren't leading. Right? You could argue in machine learning, not necessarily leading in sustainability. They're not leading and they don't want to talk about some of these areas and-- >> Database. I mean arguably, >> They're pretty strong there, but the areas when you are behind, it's like they kind of know how to play offense. But when you're playing defense, it's a different set of game. You're playing a different game and it's hard to be good at both. I think and I'm not sure that they're really used to following somebody into a market and making a success of that. So there's something, it's a little harder. Do you see what I mean? >> I get opinion on this. So when I say database, David Foyer was two years ago, predicted AWS is going to have to converge somehow. They have no choice. And they sort of touched on that today, right? Eliminating ETL, that's one thing. But Aurora to Redshift. >> Yeah. >> You know, end to end. I'm not sure it's totally, they're fully end to end >> That's a really good, that is an excellent piece of work, because there's a lot of work that it eliminates. There's are clear pain points, but then you've got sort of the competing thing, is like the MongoDB and it's like, it's just a way with one database keeps it simple. >> Snowflake, >> Or you've got on Snowflake maybe you've got all these 20 different things you're trying to integrate at AWS, but it's kind of like you have a bag of Lego bricks. It's my favorite analogy, right? You want a toy for Christmas, you want a toy formula one racing car since that seems to be the theme, right? >> Okay. Do you want the fully built model that you can play with right now? Or do you want the Lego version that you have to spend three days building. Right? And AWS is the Lego technique thing. You have to spend some time building it, but once you've built it, you can evolve it, and you'll still be playing those are still good bricks years later. Whereas that prebuilt to probably broken gathering dust, right? So there's something about having an vulnerable architecture which is harder to get into, but more durable in the long term. And so AWS tends to play the long game in many ways. And that's one of the elements that they do that and that's good, but it makes it hard to consume for enterprise buyers that are used to getting it with a bow on top. And here's the solution. You know? >> And Paul, that was always Andy Chassy's answer to when we would ask him, you know, all these primitives you're going to make it simpler. You see the primitives give us the advantage to turn on a dime in the marketplace. And that's true. >> Yeah. So you're saying, you know, you take all these things together and you wrap it up, and you put a snowflake on top, and now you've got a simple thing or a Mongo or Mongo atlas or whatever. So you've got these layered platforms now which are making it simpler to consume, but now you're kind of, you know, you're all stuck in that ecosystem, you know, so it's like what layer of abstractions do you want to tie yourself to, right? >> The data bricks coming at it from more of an open source approach. But it's similar. >> We're seeing Amazon direct more into vertical markets. They spotlighted what Goldman Sachs is doing on their platform. They've got a variety of platforms that are supposedly targeted custom built for vertical markets. How do successful do you see that play being? Is this something that the customers you think are looking for, a fully integrated Amazon solution? >> I think so. There's usually if you look at, you know the MongoDB or data stacks, or the other sort of or elastic, you know, they've got the specific solution with the people that really are developing the core technology, there's open source equivalent version. The AWS is running, and it's usually maybe they've got a price advantage or it's, you know there's some data integration in there or it's somehow easier to integrate but it's not stopping those companies from growing. And what it's doing is it's endorsing that platform. So if you look at the collection of databases that have been around over the last few years, now you've got basically Elastic Mongo and Cassandra, you know the data stacks as being endorsed by the cloud vendors. These are winners. They're going to be around for a very long time. You can build yourself on that architecture. But what happened to Couch base and you know, a few of the other ones, you know, they don't really fit. Like how you going to bait? If you are now becoming an also ran, because you didn't get cloned by the cloud vendor. So the customers are going is that a safe place to be, right? >> But isn't it, don't they want to encourage those partners though in the name of building the marketplace ecosystem? >> Yeah. >> This is huge. >> But certainly the platform, yeah, the platform encourages people to do more. And there's always room around the edge. But the mainstream customers like that really like spending the good money, are looking for something that's got a long term life to it. Right? They're looking for a long commitment to that technology and that it's going to be invested in and grow. And the fact that the cloud providers are adopting and particularly AWS is adopting some of these technologies means that is a very long term commitment. You can base, you know, you can bet your future architecture on that for a decade probably. >> So they have to pick winners. >> Yeah. So it's sort of picking winners. And then if you're the open source company that's now got AWS turning up, you have to then leverage it and use that as a way to grow the market. And I think Mongo have done an excellent job of that. I mean, they're top level sponsors of Reinvent, and they're out there messaging that and doing a good job of showing people how to layer on top of AWS and make it a win-win both sides. >> So ever since we've been in the business, you hear the narrative hardware's going to die. It's just, you know, it's commodity and there's some truth to that. But hardware's actually driving good gross margins for the Cisco's of the world. Storage companies have always made good margins. Servers maybe not so much, 'cause Intel sucked all the margin out of it. But let's face it, AWS makes most of its money. We know on compute, it's got 25 plus percent operating margins depending on the seasonality there. What do you think happens long term to the infrastructure layer discussion? Okay, commodity cloud, you know, we talk about super cloud. Do you think that AWS, and the other cloud vendors that infrastructure, IS gets commoditized and they have to go up market or you see that continuing I mean history would say that still good margins in hardware. What are your thoughts on that? >> It's not commoditizing, it's becoming more specific. We've got all these accelerators and custom chips now, and this is something, this almost goes back. I mean, I was with some micro systems 20,30 years ago and we developed our own chips and HP developed their own chips and SGI mips, right? We were like, the architectures were all squabbling of who had the best processor chips and it took years to get chips that worked. Now if you make a chip and it doesn't work immediately, you screwed up somewhere right? It's become the technology of building these immensely complicated powerful chips that has become commoditized. So the cost of building a custom chip, is now getting to the point where Apple and Amazon, your Apple laptop has got full custom chips your phone, your iPhone, whatever and you're getting Google making custom chips and we've got Nvidia now getting into CPUs as well as GPUs. So we're seeing that the ability to build a custom chip, is becoming something that everyone is leveraging. And the cost of doing that is coming down to startups are doing it. So we're going to see many, many more, much more innovation I think, and this is like Intel and AMD are, you know they've got the compatibility legacy, but of the most powerful, most interesting new things I think are going to be custom. And we're seeing that with Graviton three particular in the three E that was announced last night with like 30, 40% whatever it was, more performance for HPC workloads. And that's, you know, the HPC market is going to have to deal with cloud. I mean they are starting to, and I was at Supercomputing a few weeks ago and they are tiptoeing around the edge of cloud, but those supercomputers are water cold. They are monsters. I mean you go around supercomputing, there are plumbing vendors on the booth. >> Of course. Yeah. >> Right? And they're highly concentrated systems, and that's really the only difference, is like, is it water cooler or echo? The rest of the technology stack is pretty much off the shelf stuff with a few tweets software. >> You point about, you know, the chips and what AWS is doing. The Annapurna acquisition. >> Yeah. >> They're on a dramatically different curve now. I think it comes down to, again, David Floyd's premise, really comes down to volume. The arm wafer volumes are 10 x those of X 86, volume always wins. And the economics of semis. >> That kind of got us there. But now there's also a risk five coming along if you, in terms of licensing is becoming one of the bottlenecks. Like if the cost of building a chip is really low, then it comes down to licensing costs and do you want to pay the arm license And the risk five is an open source chip set which some people are starting to use for things. So your dis controller may have a risk five in it, for example, nowadays, those kinds of things. So I think that's kind of the the dynamic that's playing out. There's a lot of innovation in hardware to come in the next few years. There's a thing called CXL compute express link which is going to be really interesting. I think that's probably two years out, before we start seeing it for real. But it lets you put glue together entire rack in a very flexible way. So just, and that's the entire industry coming together around a single standard, the whole industry except for Amazon, in fact just about. >> Well, but maybe I think eventually they'll get there. Don't use system on a chip CXL. >> I have no idea whether I have no knowledge about whether going to do anything CXL. >> Presuming I'm not trying to tap anything confidential. It just makes sense that they would do a system on chip. It makes sense that they would do something like CXL. Why not adopt the standard, if it's going to be as the cost. >> Yeah. And so that was one of the things out of zip computing. The other thing is the low latency networking with the elastic fabric adapter EFA and the extensions to that that were announced last night. They doubled the throughput. So you get twice the capacity on the nitro chip. And then the other thing was this, this is a bit technical, but this scalable datagram protocol that they've got which basically says, if I want to send a message, a packet from one machine to another machine, instead of sending it over one wire, I consider it over 16 wires in parallel. And I will just flood the network with all the packets and they can arrive in any order. This is why it isn't done normally. TCP is in order, the packets come in order they're supposed to, but this is fully flooding them around with its own fast retry and then they get reassembled at the other end. So they're not just using this now for HPC workloads. They've turned it on for TCP for just without any change to your application. If you are trying to move a large piece of data between two machines, and you're just pushing it down a network, a single connection, it takes it from five gigabits per second to 25 gigabits per second. A five x speed up, with a protocol tweak that's run by the Nitro, this is super interesting. >> Probably want to get all that AIML that stuff is going on. >> Well, the AIML stuff is leveraging it underneath, but this is for everybody. Like you're just copying data around, right? And you're limited, "Hey this is going to get there five times faster, pushing a big enough chunk of data around." So this is turning on gradually as the nitro five comes out, and you have to enable it at the instance level. But it's a super interesting announcement from last night. >> So the bottom line bumper sticker on commoditization is what? >> I don't think so. I mean what's the APIs? Your arm compatible, your Intel X 86 compatible or your maybe risk five one day compatible in the cloud. And those are the APIs, right? That's the commodity level. And the software is now, the software ecosystem is super portable across those as we're seeing with Apple moving from Intel to it's really not an issue, right? The software and the tooling is all there to do that. But underneath that, we're going to see an arms race between the top providers as they all try and develop faster chips for doing more specific things. We've got cranium for training, that instance has they announced it last year with 800 gigabits going out of a single instance, 800 gigabits or no, but this year they doubled it. Yeah. So 1.6 terabytes out of a single machine, right? That's insane, right? But what you're doing is you're putting together hundreds or thousands of those to solve the big machine learning training problems. These super, these enormous clusters that they're being formed for doing these massive problems. And there is a market now, for these incredibly large supercomputer clusters built for doing AI. That's all bandwidth limited. >> And you think about the timeframe from design to tape out. >> Yeah. >> Is just getting compressed It's relative. >> It is. >> Six is going the other way >> The tooling is all there. Yeah. >> Fantastic. Adrian, always a pleasure to have you on. Thanks so much. >> Yeah. >> Really appreciate it. >> Yeah, thank you. >> Thank you Paul. >> Cheers. All right. Keep it right there everybody. Don't forget, go to thecube.net, you'll see all these videos. Go to siliconangle.com, We've got features with Adam Selipsky, we got my breaking analysis, we have another feature with MongoDB's, Dev Ittycheria, Ali Ghodsi, as well Frank Sluman tomorrow. So check that out. Keep it right there. You're watching theCUBE, the leader in enterprise and emerging tech, right back. (soft techno upbeat music)

Published Date : Nov 30 2022

SUMMARY :

Great to see you again. and the ecosystem and the energy. Some of the stories like, It's kind of remind the That's right. I mean the sort of the market. the muscle memories. kind of the edges of that, the analogy for data, As analysts and journalists, So how does that affect the messaging always in the lead, right? I mean arguably, and it's hard to be good at both. But Aurora to Redshift. You know, end to end. of the competing thing, but it's kind of like you And AWS is the Lego technique thing. to when we would ask him, you know, and you put a snowflake on top, from more of an open source approach. the customers you think a few of the other ones, you know, and that it's going to and doing a good job of showing people and the other cloud vendors the HPC market is going to Yeah. and that's really the only difference, the chips and what AWS is doing. And the economics of semis. So just, and that's the entire industry Well, but maybe I think I have no idea whether if it's going to be as the cost. and the extensions to that AIML that stuff is going on. and you have to enable And the software is now, And you think about the timeframe Is just getting compressed Yeah. Adrian, always a pleasure to have you on. the leader in enterprise

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Adam SelipskyPERSON

0.99+

David FloydPERSON

0.99+

Peter DeSantisPERSON

0.99+

PaulPERSON

0.99+

Ali GhodsiPERSON

0.99+

Adrian CockcroftPERSON

0.99+

AWSORGANIZATION

0.99+

Frank SlumanPERSON

0.99+

Paul GillonPERSON

0.99+

AmazonORGANIZATION

0.99+

AppleORGANIZATION

0.99+

Andy ChassyPERSON

0.99+

Las VegasLOCATION

0.99+

AdamPERSON

0.99+

Dev IttycheriaPERSON

0.99+

Andy JessePERSON

0.99+

Dave VillantePERSON

0.99+

AugustDATE

0.99+

two machinesQUANTITY

0.99+

Bill BelichickPERSON

0.99+

10QUANTITY

0.99+

CiscoORGANIZATION

0.99+

todayDATE

0.99+

last yearDATE

0.99+

1.6 terabytesQUANTITY

0.99+

AMDORGANIZATION

0.99+

Goldman SachsORGANIZATION

0.99+

hundredsQUANTITY

0.99+

one machineQUANTITY

0.99+

three daysQUANTITY

0.99+

AdrianPERSON

0.99+

800 gigabitsQUANTITY

0.99+

TodayDATE

0.99+

iPhoneCOMMERCIAL_ITEM

0.99+

David FoyerPERSON

0.99+

two yearsQUANTITY

0.99+

GoogleORGANIZATION

0.99+

yesterdayDATE

0.99+

this yearDATE

0.99+

SnowflakeTITLE

0.99+

NvidiaORGANIZATION

0.99+

five timesQUANTITY

0.99+

oneQUANTITY

0.99+

NetflixORGANIZATION

0.99+

thecube.netOTHER

0.99+

IntelORGANIZATION

0.99+

fiveQUANTITY

0.99+

both sidesQUANTITY

0.99+

MongoORGANIZATION

0.99+

ChristmasEVENT

0.99+

last nightDATE

0.99+

HPORGANIZATION

0.98+

25 plus percentQUANTITY

0.98+

thousandsQUANTITY

0.98+

20,30 years agoDATE

0.98+

pandemicEVENT

0.98+

bothQUANTITY

0.98+

two years agoDATE

0.98+

twiceQUANTITY

0.98+

tomorrowDATE

0.98+

X 86COMMERCIAL_ITEM

0.98+

AntarcticLOCATION

0.98+

PatriotsORGANIZATION

0.98+

siliconangle.comOTHER

0.97+

Andy Tay, Accenture & Sara Alligood, AWS | AWS Executive Summit 2022


 

well you're watching the cube and I knew that you knew that I'm John Walls we're here in Las Vegas it's re invent 22. Big Show AWS putting it on the Big Show here late in 2022 that's going really well we're at the executive Summit right now sponsored by Accenture and we're going to talk about that relationship between Accenture and AWS um kind of where it is now and where it's going you know even bigger things down the road to help us do that two guests Andy Tay who's a senior managing director and the Accenture AWS business group lead at Accenture Andy thanks for being with us thanks for having me and Sarah whose last name was one of my all-time favorites all good because it is it's all good right okay it's all good Sarah all good worldwide leader of accenture's AWS business group for AWS and thank you both again for being here so let's talk about the relationship just in general high level here 30 000 feet a lot of great things have been happening we know a lot of great things are happening but how's this all you think evolved how did how has this come about that you two are just inextricably linked almost here in the cloud space Sarah why don't you jump on that yeah I'd love to um I think one of the the strongest factors that causes that Synergy for us is we both work backwards from our customer outcomes and so just by consistently doing that taking those customer signals um really obsessing over our customers success we know what we're marching towards and so then we kind of extract those themes and really work together to think about okay when we look at this holistically how do we go bigger better faster together and accomplish and solve those customer problems yeah Andy yeah John let me just maybe add and you know to amplify you know what Sarah just touched on um we both have common to our culture this notion of working from the client's perspective first so really delivering to the clients values or um you know in aws's parlance it's you know customer and so that's at the core and when we keep that at the core everything else becomes really easy where we invest what we build key clients we focus on what our team structure is et cetera Etc that's really easy so that sort of core core pillar number one in terms of our sort of you know success factors the second thing that I think really helps us is our sort of scale geographically you know certainly from an Accenture standpoint as you know John we're north of 800 000 people globally um couple that with aws's strength we really do have you know a field depth and breadth across the board that allows us to sort of see and feel what's happening in the market and allows us really to see around the corners as we like to think and say um and and that helps us be intentional on what we do um and then the third thing is really us we might know what we do but we sort of need to then play to our strengths and as you know we're two very different companies one focus on the technology side the other you know focus on the technology Services although we'll touch on you know some of the changes we're looking at as we go forward but that sort of playing to strength is key as well for us as a third pillar of success and so keeping those three things at the core really helps us move you know day to day and year by year and that's what you see in this continued partnership so what are you hearing from your customers these days we've talked a lot already today and it's kind of the buzzword you know modernization right everybody's talking about this transformation I don't care if you're in Mainframe or where you are everybody wants a modernized right now um you know what are you hearing from customers in that regard and I'm sure everybody's in a different state different yeah frame of mind you know some are embracing some are dragging uh what what's your take on the state of play right now well and I think it's like especially in these macroeconomic moments that we're in um time to value is critical for our customers um and then we have the talent shortage but even with those our customers still need us to solve for sustainability and still focus on inclusion diversity and equity and so we can't lower the bar in anything that we've already been doing we need to just keep doing more and building with them and so I think um for us really getting to the to the meat of what our customers need modernization is a big one but we're still seeing just so many of our customers look at basic transformation right how how do I dip in how do I start to move my environment move my people and get ready for what I need to do next for my business and so that that is a challenge and like we said with with the markets as volatile as they are right now I think a lot of customers are just trying to work with us to figure out how to do that in the most optimized and efficient way I just want to kind of rub people on the head and say it's going to be all right I mean it's so volatile as you pointed out Sarah right yeah I mean the market up and down and we're worried about a recession and companies and their plans they want to be Forward Thinking yeah but they've got to you know keep their powder dry too in some respects and get ready for that rainy day you know John it's funny um because you would think you know you've got the one hand you know rub that you know it's gonna be all right and and then on the other end you'll you know maybe clients should sort of hold temper and you know sort of just pause but I think clients get it they see it they feel it they understand the need to invest and I think you know there's a recent study back in 2008 those clients you know Sarah and I were reading the other day those clients who didn't invest ahead of those you know major if you remember those macroeconomic downturn times they came out really on the bad side um and so clients now are realizing that in these times these are the moments to invest and so they get it but they're faced with a couple of challenges one is time Sarah touched on you just don't have time and the second is Talent so we're working in a very intentional way on what we can do to help them there and and as you'll hear later on from Chris Wegman and Eric Farr um we're launching our velocity platform which really helps to compress that type and and get them faster you know time to Value we're also being very intentional on talent and how we help their talent so you know rotate so that we're not just taking the technology Journey but we're also having the people journey and then the third thing Sarah and I really focus on with our teams is figuring out new ways new sources of value for our clients and that's not just cost that's value the broader set and so we find that in moments like this it's actually an opportunity for us to really bring the best of AWS and Accenture to our clients well you hit value and I always find this one kind of tough because there is a big difference between cost and value my cost is X right whatever I write on my chat that's my cost so but but how do you help clients identify that value so that because it's you know it can be a little nebulous right can it not I mean it's uh but you have to validate you got to quantify at the end of the day because that's what the CEO wants to see it's what the CIO wants to see yeah you've got to identify values so how many how do you do that yeah yeah I mean we we have many different ways right velocity which Andy kind of touched on I think is is really um it's our foundational approach to help customers really kind of enter into their Cloud journey and focus on those key factors for Success right so we've got ISB Solutions built in there We've Got Talent and change built in we've got kind of what we're calling the fabric right that foundational technology layer and giving our customers all of that in a way that they can consume in a way that they can control and you know different modules essentially that they can leverage to move it's going to be tangible right they're going to be able to see I've now got access to all these things that I need I can move as I need to move and I'm not constantly you know looking around figuring out how to lock it all together we've given them that picture and that road map on how to really leverage this because we we need to be able to point to tangible outcomes and so that's critical yeah proof's got to be in the pudding and and you know to Sarah's point I think sort of we're entering into this sort of new dare I say new chapter of cloud and then you know sort of the first chapter was sort of those outcomes were around cost you know I've moved you into the cloud you can shut down your data center but now we've sort of got other sources of value now Beyond costs there's news new sources of revenue how do I become a platform company on top of the AWS cloud and then you know eke out new Revenue sources for myself how do I drive new experiences for my customers yeah um how do I maybe tap into the sustainability angle of things and how do I get greater Innovation from my talent how do I operate better in a Sarah said how do I become more Nimble more agile and more responsive to Market demands and so all those areas all those Dynamics all those outcomes are sources of value that were sort of really laser focused on and just ensuring that as a partnership we we help our clients on that Journey so what do you do about talent I mean you brought it up a couple of times UTP has um in terms of of training retaining recruiting all those key elements right now it's an ultra competitive environment right now yeah and there might be a little bit of a talent Gap in terms of what we're producing right so um you know how do you I guess make the most out of that and and make sure you keep the good people around yeah Talent is an interesting one John um and we were just touching on this uh before we got here um you know sort of from an Accenture standpoint um we're obviously focused on growing our AWS Talent um we've now got I think it's north of 27 000 people in Accenture with AWS certifications north of 34 000 certificates you know which is absolutely fantastic a small City it's just I mean it is very intentional in building that um as AWS rolls out new Services Adam touched on a whole bunch of them today we're at the core of that and ramping and building our talent so that we can drive and get our clients quicker to their value and then the second area of focus is what do we do to help our clients Talent how do we train them how do we enable them how do we you know get them to be more agile and you know being able to sort of operate in what we call that digital core operate in the cloud how do we do that and so we're focused um in in capabilities in fact our Accenture head of talent and people and change Christie Smith John is is here this week just for that and we're exploring ways in which we can get tighter and even more Innovative Around Talent and so I ultimately that that bleeds over to where the partnership goes right because if you can enhance that side of it then then everybody wins on that in terms of what you think you know where this is going yeah yeah it's already you know pretty good setup uh things are working pretty well but as the industry changes so rapidly and and you have to meet those needs how do you see the partnership evolving as well to meet those needs down the road we we have a very fortunate position in that our CEOs are both very engaged in this partnership and they push us think bigger go faster figure it out let's ride and there are definite pros and cons and some days I'm flying this close to the Sun but um it isn't a it's an absolute privilege to work with them the way that we get to and so we're always looking I mean Auntie said it earlier this is the relationship that helps us look around corners we've raised the bar and so we're constantly pushing each other pushing our teams just innovating together thinking it all through on where are we going and like I said reading those tea leaves reading those themes from our customers like hey we've just had five customers with the same similar feeling problem that we're trying to solve or we ran into the same issue in the field and how do we put that together and solve for it because we know it's not just five right we know they're more out there and so um I think you know it's it's leadership principles for us right at Amazon that guiding think big um you know insist on high standards that that'll always be core and Central to who we are and then you know fortunately Accenture has a really similar ethos yeah quick take on that Andy yeah I think as we look out you know I think um we're going to we've already seen but we're going to see this continued blurring of Industries um of um you know sort of clients moving into other Industries and yeah sort of this sort of agitation Market agitation um and so I think disruption you know disruption and and we're being you know focused on what do we need to be to do in order to help our clients on those Journeys and and to continue to you know get them you know faster Solutions is an area that we you know we are um really looking at and these are solutions that are either industry Solutions you'll hear a couple of them this week um you know we've got our insurance solution that we're we've developed as an intelligent underwriting capability leveraging AWS AIML to sort of be intelligent and cognitive um you know we've got other Solutions around the around Industries energy and Life Sciences but then also intelligent applications that might be touching you know areas I think earlier today Adam talked about AWS supply chain and that's an area that we are focused on and and proud to be a part of that and we're working very very closely with with Amazon on that uh to help you know our clients move ahead so I think we're going to see this continued blurring and we're going to obviously you know keep addressing that and just keep iterating well it looks like a relationship of trust and expertise right and it's worked out extremely well and uh if this is any indication where the interview went uh even better things are ahead for the partnership so thank you thank you for chiming in I appreciate your perspectives yeah thank you it's been great we continue our coverage here on thecube we're at re invent 22 we're in Las Vegas and you're watching thecube the leader in technical coverage foreign

Published Date : Nov 29 2022

SUMMARY :

area that we you know we are

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
SarahPERSON

0.99+

AWSORGANIZATION

0.99+

Andy TayPERSON

0.99+

2008DATE

0.99+

John WallsPERSON

0.99+

Eric FarrPERSON

0.99+

AmazonORGANIZATION

0.99+

Las VegasLOCATION

0.99+

Chris WegmanPERSON

0.99+

Sara AlligoodPERSON

0.99+

AccentureORGANIZATION

0.99+

five customersQUANTITY

0.99+

AndyPERSON

0.99+

awsORGANIZATION

0.99+

30 000 feetQUANTITY

0.99+

JohnPERSON

0.99+

AdamPERSON

0.99+

three thingsQUANTITY

0.99+

two guestsQUANTITY

0.99+

second thingQUANTITY

0.98+

Big ShowEVENT

0.98+

third thingQUANTITY

0.98+

twoQUANTITY

0.98+

oneQUANTITY

0.98+

bothQUANTITY

0.98+

fiveQUANTITY

0.97+

this weekDATE

0.96+

todayDATE

0.96+

third pillarQUANTITY

0.96+

second areaQUANTITY

0.95+

Big ShowEVENT

0.94+

first chapterQUANTITY

0.94+

secondQUANTITY

0.94+

Christie Smith JohnPERSON

0.93+

firstQUANTITY

0.88+

27 000 peopleQUANTITY

0.88+

earlier todayDATE

0.85+

ISBORGANIZATION

0.81+

AIMLTITLE

0.81+

800 000 peopleQUANTITY

0.8+

Accenture AWSORGANIZATION

0.79+

34 000 certificatesQUANTITY

0.74+

two very different companiesQUANTITY

0.72+

AuntiePERSON

0.69+

Executive Summit 2022EVENT

0.68+

accentureORGANIZATION

0.63+

in 2022DATE

0.61+

UTPORGANIZATION

0.61+

coupleQUANTITY

0.55+

Scott Castle, Sisense | AWS re:Invent 2022


 

>>Good morning fellow nerds and welcome back to AWS Reinvent. We are live from the show floor here in Las Vegas, Nevada. My name is Savannah Peterson, joined with my fabulous co-host John Furrier. Day two keynotes are rolling. >>Yeah. What do you thinking this? This is the day where everything comes, so the core gets popped off the bottle, all the announcements start flowing out tomorrow. You hear machine learning from swee lot more in depth around AI probably. And then developers with Verner Vos, the CTO who wrote the seminal paper in in early two thousands around web service that becames. So again, just another great year of next level cloud. Big discussion of data in the keynote bulk of the time was talking about data and business intelligence, business transformation easier. Is that what people want? They want the easy button and we're gonna talk a lot about that in this segment. I'm really looking forward to this interview. >>Easy button. We all want the >>Easy, we want the easy button. >>I love that you brought up champagne. It really feels like a champagne moment for the AWS community as a whole. Being here on the floor feels a bit like the before times. I don't want to jinx it. Our next guest, Scott Castle, from Si Sense. Thank you so much for joining us. How are you feeling? How's the show for you going so far? Oh, >>This is exciting. It's really great to see the changes that are coming in aws. It's great to see the, the excitement and the activity around how we can do so much more with data, with compute, with visualization, with reporting. It's fun. >>It is very fun. I just got a note. I think you have the coolest last name of anyone we've had on the show so far, castle. Oh, thank you. I'm here for it. I'm sure no one's ever said that before, but I'm so just in case our audience isn't familiar, tell us about >>Soy Sense is an embedded analytics platform. So we're used to take the queries and the analysis that you can power off of Aurora and Redshift and everything else and bring it to the end user in the applications they already know how to use. So it's all about embedding insights into tools. >>Embedded has been a, a real theme. Nobody wants to, it's I, I keep using the analogy of multiple tabs. Nobody wants to have to leave where they are. They want it all to come in there. Yep. Now this space is older than I think everyone at this table bis been around since 1958. Yep. How do you see Siente playing a role in the evolution there of we're in a different generation of analytics? >>Yeah, I mean, BI started, as you said, 58 with Peter Lu's paper that he wrote for IBM kind of get became popular in the late eighties and early nineties. And that was Gen one bi, that was Cognos and Business Objects and Lotus 1 23 think like green and black screen days. And the way things worked back then is if you ran a business and you wanted to get insights about that business, you went to it with a big check in your hand and said, Hey, can I have a report? And they'd come back and here's a report. And it wasn't quite right. You'd go back and cycle, cycle, cycle and eventually you'd get something. And it wasn't great. It wasn't all that accurate, but it's what we had. And then that whole thing changed in about two, 2004 when self-service BI became a thing. And the whole idea was instead of going to it with a big check in your hand, how about you make your own charts? >>And that was totally transformative. Everybody started doing this and it was great. And it was all built on semantic modeling and having very fast databases and data warehouses. Here's the problem, the tools to get to those insights needed to serve both business users like you and me and also power users who could do a lot more complex analysis and transformation. And as the tools got more complicated, the barrier to entry for everyday users got higher and higher and higher to the point where now you look, look at Gartner and Forester and IDC this year. They're all reporting in the same statistic. Between 10 and 20% of knowledge workers have learned business intelligence and everybody else is just waiting in line for a data analyst or a BI analyst to get a report for them. And that's why the focus on embedded is suddenly showing up so strong because little startups have been putting analytics into their products. People are seeing, oh my, this doesn't have to be hard. It can be easy, it can be intuitive, it can be native. Well why don't I have that for my whole business? So suddenly there's a lot of focus on how do we embed analytics seamlessly? How do we embed the investments people make in machine learning in data science? How do we bring those back to the users who can actually operationalize that? Yeah. And that's what Tysons does. Yeah. >>Yeah. It's interesting. Savannah, you know, data processing used to be what the IT department used to be called back in the day data processing. Now data processing is what everyone wants to do. There's a ton of data we got, we saw the keynote this morning at Adam Lesky. There was almost a standing of vision, big applause for his announcement around ML powered forecasting with Quick Site Cube. My point is people want automation. They want to have this embedded semantic layer in where they are not having all the process of ETL or all the muck that goes on with aligning the data. All this like a lot of stuff that goes on. How do you make it easier? >>Well, to be honest, I, I would argue that they don't want that. I think they, they think they want that, cuz that feels easier. But what users actually want is they want the insight, right? When they are about to make a decision. If you have a, you have an ML powered forecast, Andy Sense has had that built in for years, now you have an ML powered forecast. You don't need it two weeks before or a week after in a report somewhere. You need it when you're about to decide do I hire more salespeople or do I put a hundred grand into a marketing program? It's putting that insight at the point of decision that's important. And you don't wanna be waiting to dig through a lot of infrastructure to find it. You just want it when you need it. What's >>The alternative from a time standpoint? So real time insight, which is what you're saying. Yep. What's the alternative? If they don't have that, what's >>The alternative? Is what we are currently seeing in the market. You hire a bunch of BI analysts and data analysts to do the work for you and you hire enough that your business users can ask questions and get answers in a timely fashion. And by the way, if you're paying attention, there's not enough data analysts in the whole world to do that. Good luck. I am >>Time to get it. I really empathize with when I, I used to work for a 3D printing startup and I can, I have just, I mean, I would call it PTSD flashbacks of standing behind our BI guy with my list of queries and things that I wanted to learn more about our e-commerce platform in our, in our marketplace and community. And it would take weeks and I mean this was only in 2012. We're not talking 1958 here. We're talking, we're talking, well, a decade in, in startup years is, is a hundred years in the rest of the world life. But I think it's really interesting. So talk to us a little bit about infused and composable analytics. Sure. And how does this relate to embedded? Yeah. >>So embedded analytics for a long time was I want to take a dashboard I built in a BI environment. I wanna lift it and shift it into some other application so it's close to the user and that is the right direction to go. But going back to that statistic about how, hey, 10 to 20% of users know how to do something with that dashboard. Well how do you reach the rest of users? Yeah. When you think about breaking that up and making it more personalized so that instead of getting a dashboard embedded in a tool, you get individual insights, you get data visualizations, you get controls, maybe it's not even actually a visualization at all. Maybe it's just a query result that influences the ordering of a list. So like if you're a csm, you have a list of accounts in your book of business, you wanna rank those by who's priorities the most likely to churn. >>Yeah. You get that. How do you get that most likely to churn? You get it from your BI system. So how, but then the question is, how do I insert that back into the application that CSM is using? So that's what we talk about when we talk about Infusion. And SI started the infusion term about two years ago and now it's being used everywhere. We see it in marketing from Click and Tableau and from Looker just recently did a whole launch on infusion. The idea is you break this up into very small digestible pieces. You put those pieces into user experiences where they're relevant and when you need them. And to do that, you need a set of APIs, SDKs, to program it. But you also need a lot of very solid building blocks so that you're not building this from scratch, you're, you're assembling it from big pieces. >>And so what we do aty sense is we've got machine learning built in. We have an LQ built in. We have a whole bunch of AI powered features, including a knowledge graph that helps users find what else they need to know. And we, we provide those to our customers as building blocks so that they can put those into their own products, make them look and feel native and get that experience. In fact, one of the things that was most interesting this last couple of couple of quarters is that we built a technology demo. We integrated SI sensee with Office 365 with Google apps for business with Slack and MS teams. We literally just threw an Nlq box into Excel and now users can go in and say, Hey, which of my sales people in the northwest region are on track to meet their quota? And they just get the table back in Excel. They can build charts of it and PowerPoint. And then when they go to their q do their QBR next week or week after that, they just hit refresh to get live data. It makes it so much more digestible. And that's the whole point of infusion. It's bigger than just, yeah. The iframe based embedding or the JavaScript embedding we used to talk about four or five years >>Ago. APIs are very key. You brought that up. That's gonna be more of the integration piece. How does embedable and composable work as more people start getting on board? It's kind of like a Yeah. A flywheel. Yes. What, how do you guys see that progression? Cause everyone's copying you. We see that, but this is a, this means it's standard. People want this. Yeah. What's next? What's the, what's that next flywheel benefit that you guys coming out with >>Composability, fundamentally, if you read the Gartner analysis, right, they, when they talk about composable, they're talking about building pre-built analytics pieces in different business units for, for different purposes. And being able to plug those together. Think of like containers and services that can, that can talk to each other. You have a composition platform that can pull it into a presentation layer. Well, the presentation layer is where I focus. And so the, so for us, composable means I'm gonna have formulas and queries and widgets and charts and everything else that my, that my end users are gonna wanna say almost minority report style. If I'm not dating myself with that, I can put this card here, I can put that chart here. I can set these filters here and I get my own personalized view. But based on all the investments my organization's made in data and governance and quality so that all that infrastructure is supporting me without me worrying much about it. >>Well that's productivity on the user side. Talk about the software angle development. Yeah. Is your low code, no code? Is there coding involved? APIs are certainly the connective tissue. What's the impact to Yeah, the >>Developer. Oh. So if you were working on a traditional legacy BI platform, it's virtually impossible because this is an architectural thing that you have to be able to do. Every single tool that can make a chart has an API to embed that chart somewhere. But that's not the point. You need the life cycle automation to create models, to modify models, to create new dashboards and charts and queries on the fly. And be able to manage the whole life cycle of that. So that in your composable application, when you say, well I want chart and I want it to go here and I want it to do this and I want it to be filtered this way you can interact with the underlying platform. And most importantly, when you want to use big pieces like, Hey, I wanna forecast revenue for the next six months. You don't want it popping down into Python and writing that yourself. >>You wanna be able to say, okay, here's my forecasting algorithm. Here are the inputs, here's the dimensions, and then go and just put it somewhere for me. And so that's what you get withy sense. And there aren't any other analytics platforms that were built to do that. We were built that way because of our architecture. We're an API first product. But more importantly, most of the legacy BI tools are legacy. They're coming from that desktop single user, self-service, BI environment. And it's a small use case for them to go embedding. And so composable is kind of out of reach without a complete rebuild. Right? But with SI senses, because our bread and butter has always been embedding, it's all architected to be API first. It's integrated for software developers with gi, but it also has all those low code and no code capabilities for business users to do the minority report style thing. And it's assemble endless components into a workable digital workspace application. >>Talk about the strategy with aws. You're here at the ecosystem, you're in the ecosystem, you're leading product and they have a strategy. We know their strategy, they have some stuff, but then the ecosystem goes faster and ends up making a better product in most of the cases. If you compare, I know they'll take me to school on that, but I, that's pretty much what we report on. Mongo's doing a great job. They have databases. So you kind of see this balance. How are you guys playing in the ecosystem? What's the, what's the feedback? What's it like? What's going on? >>AWS is actually really our best partner. And the reason why is because AWS has been clear for many, many years. They build componentry, they build services, they build infrastructure, they build Redshift, they build all these different things, but they need, they need vendors to pull it all together into something usable. And fundamentally, that's what Cient does. I mean, we didn't invent sequel, right? We didn't invent jackal or dle. These are not, these are underlying analytics technologies, but we're taking the bricks out of the briefcase. We're assembling it into something that users can actually deploy for their use cases. And so for us, AWS is perfect because they focus on the hard bits. The the underlying technologies we assemble those make them usable for customers. And we get the distribution. And of course AWS loves that. Cause it drives more compute and it drives more, more consumption. >>How much do they pay you to say that >>Keynote, >>That was a wonderful pitch. That's >>Absolutely, we always say, hey, they got a lot of, they got a lot of great goodness in the cloud, but they're not always the best at the solutions and that they're trying to bring out, and you guys are making these solutions for customers. Yeah. That resonates with what they got with Amazon. For >>Example, we, last year we did a, a technology demo with Comprehend where we put comprehend inside of a semantic model and we would compile it and then send it back to Redshift. And it takes comprehend, which is a very cool service, but you kind of gotta be a coder to use it. >>I've been hear a lot of hype about the semantic layer. What is, what is going on with that >>Semantec layer is what connects the actual data, the tables in your database with how they're connected and what they mean so that a user like you or me who's saying I wanna bar chart with revenue over time can just work with revenue and time. And the semantic layer translates between what we did and what the database knows >>About. So it speaks English and then they converts it to data language. It's >>Exactly >>Right. >>Yeah. It's facilitating the exchange of information. And, and I love this. So I like that you actually talked about it in the beginning, the knowledge map and helping people figure out what they might not know. Yeah. I, I am not a bi analyst by trade and I, I don't always know what's possible to know. Yeah. And I think it's really great that you're doing that education piece. I'm sure, especially working with AWS companies, depending on their scale, that's gotta be a big part of it. How much is the community play a role in your product development? >>It's huge because I'll tell you, one of the challenges in embedding is someone who sees an amazing experience in outreach or in seismic. And to say, I want that. And I want it to be exactly the way my product is built, but I don't wanna learn a lot. And so you, what you want do is you want to have a community of people who have already built things who can help lead the way. And our community, we launched a new version of the SES community in early 2022 and we've seen a 450% growth in the c in that community. And we've gone from an average of one response, >>450%. I just wanna put a little exclamation point on that. Yeah, yeah. That's awesome. We, >>We've tripled our organic activity. So now if you post this Tysons community, it used to be, you'd get one response maybe from us, maybe from from a customer. Now it's up to three. And it's continuing to trend up. So we're, it's >>Amazing how much people are willing to help each other. If you just get in the platform, >>Do it. It's great. I mean, business is so >>Competitive. I think it's time for the, it's time. I think it's time. Instagram challenge. The reels on John. So we have a new thing. We're gonna run by you. Okay. We just call it the bumper sticker for reinvent. Instead of calling it the Instagram reels. If we're gonna do an Instagram reel for 30 seconds, what would be your take on what's going on this year at Reinvent? What you guys are doing? What's the most important story that you would share with folks on Instagram? >>You know, I think it's really what, what's been interesting to me is the, the story with Redshift composable, sorry. No, composable, Redshift Serverless. Yeah. One of the things I've been >>Seeing, we know you're thinking about composable a lot. Yes. Right? It's, it's just, it's in there, it's in your mouth. Yeah. >>So the fact that Redshift Serverless is now kind becoming the defacto standard, it changes something for, for my customers. Cuz one of the challenges with Redshift that I've seen in, in production is if as people use it more, you gotta get more boxes. You have to manage that. The fact that serverless is now available, it's, it's the default means it now people are just seeing Redshift as a very fast, very responsive repository. And that plays right into the story I'm telling cuz I'm telling them it's not that hard to put some analysis on top of things. So for me it's, it's a, maybe it's a narrow Instagram reel, but it's an >>Important one. Yeah. And that makes it better for you because you get to embed that. Yeah. And you get access to better data. Faster data. Yeah. Higher quality, relevant, updated. >>Yep. Awesome. As it goes into that 80% of knowledge workers, they have a consumer great expectation of experience. They're expecting that five ms response time. They're not waiting 2, 3, 4, 5, 10 seconds. They're not trained on theola expectations. And so it's, it matters a lot. >>Final question for you. Five years out from now, if things progress the way they're going with more innovation around data, this front end being very usable, semantic layer kicks in, you got the Lambda and you got serverless kind of coming in, helping out along the way. What's the experience gonna look like for a user? What's it in your mind's eye? What's that user look like? What's their experience? >>I, I think it shifts almost every role in a business towards being a quantitative one. Talking about, Hey, this is what I saw. This is my hypothesis and this is what came out of it. So here's what we should do next. I, I'm really excited to see that sort of scientific method move into more functions in the business. Cuz for decades it's been the domain of a few people like me doing strategy, but now I'm seeing it in CSMs, in support people and sales engineers and line engineers. That's gonna be a big shift. Awesome. >>Thank >>You Scott. Thank you so much. This has been a fantastic session. We wish you the best at si sense. John, always pleasure to share the, the stage with you. Thank you to everybody who's attuning in, tell us your thoughts. We're always eager to hear what, what features have got you most excited. And as you know, we will be live here from Las Vegas at reinvent from the show floor 10 to six all week except for Friday. We'll give you Friday off with John Furrier. My name's Savannah Peterson. We're the cube, the the, the leader in high tech coverage.

Published Date : Nov 29 2022

SUMMARY :

We are live from the show floor here in Las Vegas, Nevada. Big discussion of data in the keynote bulk of the time was We all want the How's the show for you going so far? the excitement and the activity around how we can do so much more with data, I think you have the coolest last name of anyone we've had on the show so far, queries and the analysis that you can power off of Aurora and Redshift and everything else and How do you see Siente playing a role in the evolution there of we're in a different generation And the way things worked back then is if you ran a business and you wanted to get insights about that business, the tools to get to those insights needed to serve both business users like you and me the muck that goes on with aligning the data. And you don't wanna be waiting to dig through a lot of infrastructure to find it. What's the alternative? and data analysts to do the work for you and you hire enough that your business users can ask questions And how does this relate to embedded? Maybe it's just a query result that influences the ordering of a list. And SI started the infusion term And that's the whole point of infusion. That's gonna be more of the integration piece. And being able to plug those together. What's the impact to Yeah, the And most importantly, when you want to use big pieces like, Hey, I wanna forecast revenue for And so that's what you get withy sense. How are you guys playing in the ecosystem? And the reason why is because AWS has been clear for That was a wonderful pitch. the solutions and that they're trying to bring out, and you guys are making these solutions for customers. which is a very cool service, but you kind of gotta be a coder to use it. I've been hear a lot of hype about the semantic layer. And the semantic layer translates between It's So I like that you actually talked about it in And I want it to be exactly the way my product is built, but I don't wanna I just wanna put a little exclamation point on that. And it's continuing to trend up. If you just get in the platform, I mean, business is so What's the most important story that you would share with One of the things I've been Seeing, we know you're thinking about composable a lot. right into the story I'm telling cuz I'm telling them it's not that hard to put some analysis on top And you get access to better data. And so it's, it matters a lot. What's the experience gonna look like for a user? see that sort of scientific method move into more functions in the business. And as you know, we will be live here from Las Vegas at reinvent from the show floor

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
ScottPERSON

0.99+

AWSORGANIZATION

0.99+

Savannah PetersonPERSON

0.99+

2012DATE

0.99+

Peter LuPERSON

0.99+

FridayDATE

0.99+

80%QUANTITY

0.99+

Las VegasLOCATION

0.99+

AmazonORGANIZATION

0.99+

30 secondsQUANTITY

0.99+

JohnPERSON

0.99+

450%QUANTITY

0.99+

ExcelTITLE

0.99+

10QUANTITY

0.99+

IBMORGANIZATION

0.99+

Savannah PetersonPERSON

0.99+

John FurrierPERSON

0.99+

Office 365TITLE

0.99+

IDCORGANIZATION

0.99+

1958DATE

0.99+

PowerPointTITLE

0.99+

20%QUANTITY

0.99+

ForesterORGANIZATION

0.99+

PythonTITLE

0.99+

Verner VosPERSON

0.99+

early 2022DATE

0.99+

GartnerORGANIZATION

0.99+

last yearDATE

0.99+

10 secondsQUANTITY

0.99+

five msQUANTITY

0.99+

Las Vegas, NevadaLOCATION

0.99+

this yearDATE

0.99+

first productQUANTITY

0.99+

awsORGANIZATION

0.98+

one responseQUANTITY

0.98+

late eightiesDATE

0.98+

Five yearsQUANTITY

0.98+

2QUANTITY

0.98+

tomorrowDATE

0.98+

SavannahPERSON

0.98+

Scott CastlePERSON

0.98+

oneQUANTITY

0.98+

SisensePERSON

0.97+

5QUANTITY

0.97+

EnglishOTHER

0.96+

Click and TableauORGANIZATION

0.96+

Andy SensePERSON

0.96+

LookerORGANIZATION

0.96+

two weeksDATE

0.96+

next weekDATE

0.96+

early ninetiesDATE

0.95+

InstagramORGANIZATION

0.95+

serverlessTITLE

0.94+

AWS ReinventORGANIZATION

0.94+

MongoORGANIZATION

0.93+

singleQUANTITY

0.93+

AuroraTITLE

0.92+

Lotus 1 23TITLE

0.92+

OneQUANTITY

0.92+

JavaScriptTITLE

0.92+

SESORGANIZATION

0.92+

next six monthsDATE

0.91+

MSORGANIZATION

0.91+

five yearsQUANTITY

0.89+

sixQUANTITY

0.89+

a weekDATE

0.89+

Soy SenseTITLE

0.89+

hundred grandQUANTITY

0.88+

RedshiftTITLE

0.88+

Adam LeskyPERSON

0.88+

Day two keynotesQUANTITY

0.87+

floor 10QUANTITY

0.86+

two thousandsQUANTITY

0.85+

Redshift ServerlessTITLE

0.85+

both businessQUANTITY

0.84+

3QUANTITY

0.84+