Image Title

Search Results for AltaVista:

Breaking Analysis: ChatGPT Won't Give OpenAI First Mover Advantage


 

>> From theCUBE Studios in Palo Alto in Boston, bringing you data-driven insights from theCUBE and ETR. This is Breaking Analysis with Dave Vellante. >> OpenAI The company, and ChatGPT have taken the world by storm. Microsoft reportedly is investing an additional 10 billion dollars into the company. But in our view, while the hype around ChatGPT is justified, we don't believe OpenAI will lock up the market with its first mover advantage. Rather, we believe that success in this market will be directly proportional to the quality and quantity of data that a technology company has at its disposal, and the compute power that it could deploy to run its system. Hello and welcome to this week's Wikibon CUBE insights, powered by ETR. In this Breaking Analysis, we unpack the excitement around ChatGPT, and debate the premise that the company's early entry into the space may not confer winner take all advantage to OpenAI. And to do so, we welcome CUBE collaborator, alum, Sarbjeet Johal, (chuckles) and John Furrier, co-host of the Cube. Great to see you Sarbjeet, John. Really appreciate you guys coming to the program. >> Great to be on. >> Okay, so what is ChatGPT? Well, actually we asked ChatGPT, what is ChatGPT? So here's what it said. ChatGPT is a state-of-the-art language model developed by OpenAI that can generate human-like text. It could be fine tuned for a variety of language tasks, such as conversation, summarization, and language translation. So I asked it, give it to me in 50 words or less. How did it do? Anything to add? >> Yeah, think it did good. It's large language model, like previous models, but it started applying the transformers sort of mechanism to focus on what prompt you have given it to itself. And then also the what answer it gave you in the first, sort of, one sentence or two sentences, and then introspect on itself, like what I have already said to you. And so just work on that. So it it's self sort of focus if you will. It does, the transformers help the large language models to do that. >> So to your point, it's a large language model, and GPT stands for generative pre-trained transformer. >> And if you put the definition back up there again, if you put it back up on the screen, let's see it back up. Okay, it actually missed the large, word large. So one of the problems with ChatGPT, it's not always accurate. It's actually a large language model, and it says state of the art language model. And if you look at Google, Google has dominated AI for many times and they're well known as being the best at this. And apparently Google has their own large language model, LLM, in play and have been holding it back to release because of backlash on the accuracy. Like just in that example you showed is a great point. They got almost right, but they missed the key word. >> You know what's funny about that John, is I had previously asked it in my prompt to give me it in less than a hundred words, and it was too long, I said I was too long for Breaking Analysis, and there it went into the fact that it's a large language model. So it largely, it gave me a really different answer the, for both times. So, but it's still pretty amazing for those of you who haven't played with it yet. And one of the best examples that I saw was Ben Charrington from This Week In ML AI podcast. And I stumbled on this thanks to Brian Gracely, who was listening to one of his Cloudcasts. Basically what Ben did is he took, he prompted ChatGPT to interview ChatGPT, and he simply gave the system the prompts, and then he ran the questions and answers into this avatar builder and sped it up 2X so it didn't sound like a machine. And voila, it was amazing. So John is ChatGPT going to take over as a cube host? >> Well, I was thinking, we get the questions in advance sometimes from PR people. We should actually just plug it in ChatGPT, add it to our notes, and saying, "Is this good enough for you? Let's ask the real question." So I think, you know, I think there's a lot of heavy lifting that gets done. I think the ChatGPT is a phenomenal revolution. I think it highlights the use case. Like that example we showed earlier. It gets most of it right. So it's directionally correct and it feels like it's an answer, but it's not a hundred percent accurate. And I think that's where people are seeing value in it. Writing marketing, copy, brainstorming, guest list, gift list for somebody. Write me some lyrics to a song. Give me a thesis about healthcare policy in the United States. It'll do a bang up job, and then you got to go in and you can massage it. So we're going to do three quarters of the work. That's why plagiarism and schools are kind of freaking out. And that's why Microsoft put 10 billion in, because why wouldn't this be a feature of Word, or the OS to help it do stuff on behalf of the user. So linguistically it's a beautiful thing. You can input a string and get a good answer. It's not a search result. >> And we're going to get your take on on Microsoft and, but it kind of levels the playing- but ChatGPT writes better than I do, Sarbjeet, and I know you have some good examples too. You mentioned the Reed Hastings example. >> Yeah, I was listening to Reed Hastings fireside chat with ChatGPT, and the answers were coming as sort of voice, in the voice format. And it was amazing what, he was having very sort of philosophy kind of talk with the ChatGPT, the longer sentences, like he was going on, like, just like we are talking, he was talking for like almost two minutes and then ChatGPT was answering. It was not one sentence question, and then a lot of answers from ChatGPT and yeah, you're right. I, this is our ability. I've been thinking deep about this since yesterday, we talked about, like, we want to do this segment. The data is fed into the data model. It can be the current data as well, but I think that, like, models like ChatGPT, other companies will have those too. They can, they're democratizing the intelligence, but they're not creating intelligence yet, definitely yet I can say that. They will give you all the finite answers. Like, okay, how do you do this for loop in Java, versus, you know, C sharp, and as a programmer you can do that, in, but they can't tell you that, how to write a new algorithm or write a new search algorithm for you. They cannot create a secretive code for you to- >> Not yet. >> Have competitive advantage. >> Not yet, not yet. >> but you- >> Can Google do that today? >> No one really can. The reasoning side of the data is, we talked about at our Supercloud event, with Zhamak Dehghani who's was CEO of, now of Nextdata. This next wave of data intelligence is going to come from entrepreneurs that are probably cross discipline, computer science and some other discipline. But they're going to be new things, for example, data, metadata, and data. It's hard to do reasoning like a human being, so that needs more data to train itself. So I think the first gen of this training module for the large language model they have is a corpus of text. Lot of that's why blog posts are, but the facts are wrong and sometimes out of context, because that contextual reasoning takes time, it takes intelligence. So machines need to become intelligent, and so therefore they need to be trained. So you're going to start to see, I think, a lot of acceleration on training the data sets. And again, it's only as good as the data you can get. And again, proprietary data sets will be a huge winner. Anyone who's got a large corpus of content, proprietary content like theCUBE or SiliconANGLE as a publisher will benefit from this. Large FinTech companies, anyone with large proprietary data will probably be a big winner on this generative AI wave, because it just, it will eat that up, and turn that back into something better. So I think there's going to be a lot of interesting things to look at here. And certainly productivity's going to be off the charts for vanilla and the internet is going to get swarmed with vanilla content. So if you're in the content business, and you're an original content producer of any kind, you're going to be not vanilla, so you're going to be better. So I think there's so much at play Dave (indistinct). >> I think the playing field has been risen, so we- >> Risen and leveled? >> Yeah, and leveled to certain extent. So it's now like that few people as consumers, as consumers of AI, we will have a advantage and others cannot have that advantage. So it will be democratized. That's, I'm sure about that. But if you take the example of calculator, when the calculator came in, and a lot of people are, "Oh, people can't do math anymore because calculator is there." right? So it's a similar sort of moment, just like a calculator for the next level. But, again- >> I see it more like open source, Sarbjeet, because like if you think about what ChatGPT's doing, you do a query and it comes from somewhere the value of a post from ChatGPT is just a reuse of AI. The original content accent will be come from a human. So if I lay out a paragraph from ChatGPT, did some heavy lifting on some facts, I check the facts, save me about maybe- >> Yeah, it's productive. >> An hour writing, and then I write a killer two, three sentences of, like, sharp original thinking or critical analysis. I then took that body of work, open source content, and then laid something on top of it. >> And Sarbjeet's example is a good one, because like if the calculator kids don't do math as well anymore, the slide rule, remember we had slide rules as kids, remember we first started using Waze, you know, we were this minority and you had an advantage over other drivers. Now Waze is like, you know, social traffic, you know, navigation, everybody had, you know- >> All the back roads are crowded. >> They're car crowded. (group laughs) Exactly. All right, let's, let's move on. What about this notion that futurist Ray Amara put forth and really Amara's Law that we're showing here, it's, the law is we, you know, "We tend to overestimate the effect of technology in the short run and underestimate it in the long run." Is that the case, do you think, with ChatGPT? What do you think Sarbjeet? >> I think that's true actually. There's a lot of, >> We don't debate this. >> There's a lot of awe, like when people see the results from ChatGPT, they say what, what the heck? Like, it can do this? But then if you use it more and more and more, and I ask the set of similar question, not the same question, and it gives you like same answer. It's like reading from the same bucket of text in, the interior read (indistinct) where the ChatGPT, you will see that in some couple of segments. It's very, it sounds so boring that the ChatGPT is coming out the same two sentences every time. So it is kind of good, but it's not as good as people think it is right now. But we will have, go through this, you know, hype sort of cycle and get realistic with it. And then in the long term, I think it's a great thing in the short term, it's not something which will (indistinct) >> What's your counter point? You're saying it's not. >> I, no I think the question was, it's hyped up in the short term and not it's underestimated long term. That's what I think what he said, quote. >> Yes, yeah. That's what he said. >> Okay, I think that's wrong with this, because this is a unique, ChatGPT is a unique kind of impact and it's very generational. People have been comparing it, I have been comparing to the internet, like the web, web browser Mosaic and Netscape, right, Navigator. I mean, I clearly still remember the days seeing Navigator for the first time, wow. And there weren't not many sites you could go to, everyone typed in, you know, cars.com, you know. >> That (indistinct) wasn't that overestimated, the overhyped at the beginning and underestimated. >> No, it was, it was underestimated long run, people thought. >> But that Amara's law. >> That's what is. >> No, they said overestimated? >> Overestimated near term underestimated- overhyped near term, underestimated long term. I got, right I mean? >> Well, I, yeah okay, so I would then agree, okay then- >> We were off the charts about the internet in the early days, and it actually exceeded our expectations. >> Well there were people who were, like, poo-pooing it early on. So when the browser came out, people were like, "Oh, the web's a toy for kids." I mean, in 1995 the web was a joke, right? So '96, you had online populations growing, so you had structural changes going on around the browser, internet population. And then that replaced other things, direct mail, other business activities that were once analog then went to the web, kind of read only as you, as we always talk about. So I think that's a moment where the hype long term, the smart money, and the smart industry experts all get the long term. And in this case, there's more poo-pooing in the short term. "Ah, it's not a big deal, it's just AI." I've heard many people poo-pooing ChatGPT, and a lot of smart people saying, "No this is next gen, this is different and it's only going to get better." So I think people are estimating a big long game on this one. >> So you're saying it's bifurcated. There's those who say- >> Yes. >> Okay, all right, let's get to the heart of the premise, and possibly the debate for today's episode. Will OpenAI's early entry into the market confer sustainable competitive advantage for the company. And if you look at the history of tech, the technology industry, it's kind of littered with first mover failures. Altair, IBM, Tandy, Commodore, they and Apple even, they were really early in the PC game. They took a backseat to Dell who came in the scene years later with a better business model. Netscape, you were just talking about, was all the rage in Silicon Valley, with the first browser, drove up all the housing prices out here. AltaVista was the first search engine to really, you know, index full text. >> Owned by Dell, I mean DEC. >> Owned by Digital. >> Yeah, Digital Equipment >> Compaq bought it. And of course as an aside, Digital, they wanted to showcase their hardware, right? Their super computer stuff. And then so Friendster and MySpace, they came before Facebook. The iPhone certainly wasn't the first mobile device. So lots of failed examples, but there are some recent successes like AWS and cloud. >> You could say smartphone. So I mean. >> Well I know, and you can, we can parse this so we'll debate it. Now Twitter, you could argue, had first mover advantage. You kind of gave me that one John. Bitcoin and crypto clearly had first mover advantage, and sustaining that. Guys, will OpenAI make it to the list on the right with ChatGPT, what do you think? >> I think categorically as a company, it probably won't, but as a category, I think what they're doing will, so OpenAI as a company, they get funding, there's power dynamics involved. Microsoft put a billion dollars in early on, then they just pony it up. Now they're reporting 10 billion more. So, like, if the browsers, Microsoft had competitive advantage over Netscape, and used monopoly power, and convicted by the Department of Justice for killing Netscape with their monopoly, Netscape should have had won that battle, but Microsoft killed it. In this case, Microsoft's not killing it, they're buying into it. So I think the embrace extend Microsoft power here makes OpenAI vulnerable for that one vendor solution. So the AI as a company might not make the list, but the category of what this is, large language model AI, is probably will be on the right hand side. >> Okay, we're going to come back to the government intervention and maybe do some comparisons, but what are your thoughts on this premise here? That, it will basically set- put forth the premise that it, that ChatGPT, its early entry into the market will not confer competitive advantage to >> For OpenAI. >> To Open- Yeah, do you agree with that? >> I agree with that actually. It, because Google has been at it, and they have been holding back, as John said because of the scrutiny from the Fed, right, so- >> And privacy too. >> And the privacy and the accuracy as well. But I think Sam Altman and the company on those guys, right? They have put this in a hasty way out there, you know, because it makes mistakes, and there are a lot of questions around the, sort of, where the content is coming from. You saw that as your example, it just stole the content, and without your permission, you know? >> Yeah. So as quick this aside- >> And it codes on people's behalf and the, those codes are wrong. So there's a lot of, sort of, false information it's putting out there. So it's a very vulnerable thing to do what Sam Altman- >> So even though it'll get better, others will compete. >> So look, just side note, a term which Reid Hoffman used a little bit. Like he said, it's experimental launch, like, you know, it's- >> It's pretty damn good. >> It is clever because according to Sam- >> It's more than clever. It's good. >> It's awesome, if you haven't used it. I mean you write- you read what it writes and you go, "This thing writes so well, it writes so much better than you." >> The human emotion drives that too. I think that's a big thing. But- >> I Want to add one more- >> Make your last point. >> Last one. Okay. So, but he's still holding back. He's conducting quite a few interviews. If you want to get the gist of it, there's an interview with StrictlyVC interview from yesterday with Sam Altman. Listen to that one it's an eye opening what they want- where they want to take it. But my last one I want to make it on this point is that Satya Nadella yesterday did an interview with Wall Street Journal. I think he was doing- >> You were not impressed. >> I was not impressed because he was pushing it too much. So Sam Altman's holding back so there's less backlash. >> Got 10 billion reasons to push. >> I think he's almost- >> Microsoft just laid off 10000 people. Hey ChatGPT, find me a job. You know like. (group laughs) >> He's overselling it to an extent that I think it will backfire on Microsoft. And he's over promising a lot of stuff right now, I think. I don't know why he's very jittery about all these things. And he did the same thing during Ignite as well. So he said, "Oh, this AI will write code for you and this and that." Like you called him out- >> The hyperbole- >> During your- >> from Satya Nadella, he's got a lot of hyperbole. (group talks over each other) >> All right, Let's, go ahead. >> Well, can I weigh in on the whole- >> Yeah, sure. >> Microsoft thing on whether OpenAI, here's the take on this. I think it's more like the browser moment to me, because I could relate to that experience with ChatG, personally, emotionally, when I saw that, and I remember vividly- >> You mean that aha moment (indistinct). >> Like this is obviously the future. Anything else in the old world is dead, website's going to be everywhere. It was just instant dot connection for me. And a lot of other smart people who saw this. Lot of people by the way, didn't see it. Someone said the web's a toy. At the company I was worked for at the time, Hewlett Packard, they like, they could have been in, they had invented HTML, and so like all this stuff was, like, they just passed, the web was just being passed over. But at that time, the browser got better, more websites came on board. So the structural advantage there was online web usage was growing, online user population. So that was growing exponentially with the rise of the Netscape browser. So OpenAI could stay on the right side of your list as durable, if they leverage the category that they're creating, can get the scale. And if they can get the scale, just like Twitter, that failed so many times that they still hung around. So it was a product that was always successful, right? So I mean, it should have- >> You're right, it was terrible, we kept coming back. >> The fail whale, but it still grew. So OpenAI has that moment. They could do it if Microsoft doesn't meddle too much with too much power as a vendor. They could be the Netscape Navigator, without the anti-competitive behavior of somebody else. So to me, they have the pole position. So they have an opportunity. So if not, if they don't execute, then there's opportunity. There's not a lot of barriers to entry, vis-a-vis say the CapEx of say a cloud company like AWS. You can't replicate that, Many have tried, but I think you can replicate OpenAI. >> And we're going to talk about that. Okay, so real quick, I want to bring in some ETR data. This isn't an ETR heavy segment, only because this so new, you know, they haven't coverage yet, but they do cover AI. So basically what we're seeing here is a slide on the vertical axis's net score, which is a measure of spending momentum, and in the horizontal axis's is presence in the dataset. Think of it as, like, market presence. And in the insert right there, you can see how the dots are plotted, the two columns. And so, but the key point here that we want to make, there's a bunch of companies on the left, is he like, you know, DataRobot and C3 AI and some others, but the big whales, Google, AWS, Microsoft, are really dominant in this market. So that's really the key takeaway that, can we- >> I notice IBM is way low. >> Yeah, IBM's low, and actually bring that back up and you, but then you see Oracle who actually is injecting. So I guess that's the other point is, you're not necessarily going to go buy AI, and you know, build your own AI, you're going to, it's going to be there and, it, Salesforce is going to embed it into its platform, the SaaS companies, and you're going to purchase AI. You're not necessarily going to build it. But some companies obviously are. >> I mean to quote IBM's general manager Rob Thomas, "You can't have AI with IA." information architecture and David Flynn- >> You can't Have AI without IA >> without, you can't have AI without IA. You can't have, if you have an Information Architecture, you then can power AI. Yesterday David Flynn, with Hammersmith, was on our Supercloud. He was pointing out that the relationship of storage, where you store things, also impacts the data and stressablity, and Zhamak from Nextdata, she was pointing out that same thing. So the data problem factors into all this too, Dave. >> So you got the big cloud and internet giants, they're all poised to go after this opportunity. Microsoft is investing up to 10 billion. Google's code red, which was, you know, the headline in the New York Times. Of course Apple is there and several alternatives in the market today. Guys like Chinchilla, Bloom, and there's a company Jasper and several others, and then Lena Khan looms large and the government's around the world, EU, US, China, all taking notice before the market really is coalesced around a single player. You know, John, you mentioned Netscape, they kind of really, the US government was way late to that game. It was kind of game over. And Netscape, I remember Barksdale was like, "Eh, we're going to be selling software in the enterprise anyway." and then, pshew, the company just dissipated. So, but it looks like the US government, especially with Lena Khan, they're changing the definition of antitrust and what the cause is to go after people, and they're really much more aggressive. It's only what, two years ago that (indistinct). >> Yeah, the problem I have with the federal oversight is this, they're always like late to the game, and they're slow to catch up. So in other words, they're working on stuff that should have been solved a year and a half, two years ago around some of the social networks hiding behind some of the rules around open web back in the days, and I think- >> But they're like 15 years late to that. >> Yeah, and now they got this new thing on top of it. So like, I just worry about them getting their fingers. >> But there's only two years, you know, OpenAI. >> No, but the thing (indistinct). >> No, they're still fighting other battles. But the problem with government is that they're going to label Big Tech as like a evil thing like Pharma, it's like smoke- >> You know Lena Khan wants to kill Big Tech, there's no question. >> So I think Big Tech is getting a very seriously bad rap. And I think anything that the government does that shades darkness on tech, is politically motivated in most cases. You can almost look at everything, and my 80 20 rule is in play here. 80% of the government activity around tech is bullshit, it's politically motivated, and the 20% is probably relevant, but off the mark and not organized. >> Well market forces have always been the determining factor of success. The governments, you know, have been pretty much failed. I mean you look at IBM's antitrust, that, what did that do? The market ultimately beat them. You look at Microsoft back in the day, right? Windows 95 was peaking, the government came in. But you know, like you said, they missed the web, right, and >> so they were hanging on- >> There's nobody in government >> to Windows. >> that actually knows- >> And so, you, I think you're right. It's market forces that are going to determine this. But Sarbjeet, what do you make of Microsoft's big bet here, you weren't impressed with with Nadella. How do you think, where are they going to apply it? Is this going to be a Hail Mary for Bing, or is it going to be applied elsewhere? What do you think. >> They are saying that they will, sort of, weave this into their products, office products, productivity and also to write code as well, developer productivity as well. That's a big play for them. But coming back to your antitrust sort of comments, right? I believe the, your comment was like, oh, fed was late 10 years or 15 years earlier, but now they're two years. But things are moving very fast now as compared to they used to move. >> So two years is like 10 Years. >> Yeah, two years is like 10 years. Just want to make that point. (Dave laughs) This thing is going like wildfire. Any new tech which comes in that I think they're going against distribution channels. Lina Khan has commented time and again that the marketplace model is that she wants to have some grip on. Cloud marketplaces are a kind of monopolistic kind of way. >> I don't, I don't see this, I don't see a Chat AI. >> You told me it's not Bing, you had an interesting comment. >> No, no. First of all, this is great from Microsoft. If you're Microsoft- >> Why? >> Because Microsoft doesn't have the AI chops that Google has, right? Google is got so much core competency on how they run their search, how they run their backends, their cloud, even though they don't get a lot of cloud market share in the enterprise, they got a kick ass cloud cause they needed one. >> Totally. >> They've invented SRE. I mean Google's development and engineering chops are off the scales, right? Amazon's got some good chops, but Google's got like 10 times more chops than AWS in my opinion. Cloud's a whole different story. Microsoft gets AI, they get a playbook, they get a product they can render into, the not only Bing, productivity software, helping people write papers, PowerPoint, also don't forget the cloud AI can super help. We had this conversation on our Supercloud event, where AI's going to do a lot of the heavy lifting around understanding observability and managing service meshes, to managing microservices, to turning on and off applications, and or maybe writing code in real time. So there's a plethora of use cases for Microsoft to deploy this. combined with their R and D budgets, they can then turbocharge more research, build on it. So I think this gives them a car in the game, Google may have pole position with AI, but this puts Microsoft right in the game, and they already have a lot of stuff going on. But this just, I mean everything gets lifted up. Security, cloud, productivity suite, everything. >> What's under the hood at Google, and why aren't they talking about it? I mean they got to be freaked out about this. No? Or do they have kind of a magic bullet? >> I think they have the, they have the chops definitely. Magic bullet, I don't know where they are, as compared to the ChatGPT 3 or 4 models. Like they, but if you look at the online sort of activity and the videos put out there from Google folks, Google technology folks, that's account you should look at if you are looking there, they have put all these distinctions what ChatGPT 3 has used, they have been talking about for a while as well. So it's not like it's a secret thing that you cannot replicate. As you said earlier, like in the beginning of this segment, that anybody who has more data and the capacity to process that data, which Google has both, I think they will win this. >> Obviously living in Palo Alto where the Google founders are, and Google's headquarters next town over we have- >> We're so close to them. We have inside information on some of the thinking and that hasn't been reported by any outlet yet. And that is, is that, from what I'm hearing from my sources, is Google has it, they don't want to release it for many reasons. One is it might screw up their search monopoly, one, two, they're worried about the accuracy, 'cause Google will get sued. 'Cause a lot of people are jamming on this ChatGPT as, "Oh it does everything for me." when it's clearly not a hundred percent accurate all the time. >> So Lina Kahn is looming, and so Google's like be careful. >> Yeah so Google's just like, this is the third, could be a third rail. >> But the first thing you said is a concern. >> Well no. >> The disruptive (indistinct) >> What they will do is do a Waymo kind of thing, where they spin out a separate company. >> They're doing that. >> The discussions happening, they're going to spin out the separate company and put it over there, and saying, "This is AI, got search over there, don't touch that search, 'cause that's where all the revenue is." (chuckles) >> So, okay, so that's how they deal with the Clay Christensen dilemma. What's the business model here? I mean it's not advertising, right? Is it to charge you for a query? What, how do you make money at this? >> It's a good question, I mean my thinking is, first of all, it's cool to type stuff in and see a paper get written, or write a blog post, or gimme a marketing slogan for this or that or write some code. I think the API side of the business will be critical. And I think Howie Xu, I know you're going to reference some of his comments yesterday on Supercloud, I think this brings a whole 'nother user interface into technology consumption. I think the business model, not yet clear, but it will probably be some sort of either API and developer environment or just a straight up free consumer product, with some sort of freemium backend thing for business. >> And he was saying too, it's natural language is the way in which you're going to interact with these systems. >> I think it's APIs, it's APIs, APIs, APIs, because these people who are cooking up these models, and it takes a lot of compute power to train these and to, for inference as well. Somebody did the analysis on the how many cents a Google search costs to Google, and how many cents the ChatGPT query costs. It's, you know, 100x or something on that. You can take a look at that. >> A 100x on which side? >> You're saying two orders of magnitude more expensive for ChatGPT >> Much more, yeah. >> Than for Google. >> It's very expensive. >> So Google's got the data, they got the infrastructure and they got, you're saying they got the cost (indistinct) >> No actually it's a simple query as well, but they are trying to put together the answers, and they're going through a lot more data versus index data already, you know. >> Let me clarify, you're saying that Google's version of ChatGPT is more efficient? >> No, I'm, I'm saying Google search results. >> Ah, search results. >> What are used to today, but cheaper. >> But that, does that, is that going to confer advantage to Google's large language (indistinct)? >> It will, because there were deep science (indistinct). >> Google, I don't think Google search is doing a large language model on their search, it's keyword search. You know, what's the weather in Santa Cruz? Or how, what's the weather going to be? Or you know, how do I find this? Now they have done a smart job of doing some things with those queries, auto complete, re direct navigation. But it's, it's not entity. It's not like, "Hey, what's Dave Vellante thinking this week in Breaking Analysis?" ChatGPT might get that, because it'll get your Breaking Analysis, it'll synthesize it. There'll be some, maybe some clips. It'll be like, you know, I mean. >> Well I got to tell you, I asked ChatGPT to, like, I said, I'm going to enter a transcript of a discussion I had with Nir Zuk, the CTO of Palo Alto Networks, And I want you to write a 750 word blog. I never input the transcript. It wrote a 750 word blog. It attributed quotes to him, and it just pulled a bunch of stuff that, and said, okay, here it is. It talked about Supercloud, it defined Supercloud. >> It's made, it makes you- >> Wow, But it was a big lie. It was fraudulent, but still, blew me away. >> Again, vanilla content and non accurate content. So we are going to see a surge of misinformation on steroids, but I call it the vanilla content. Wow, that's just so boring, (indistinct). >> There's so many dangers. >> Make your point, cause we got to, almost out of time. >> Okay, so the consumption, like how do you consume this thing. As humans, we are consuming it and we are, like, getting a nicely, like, surprisingly shocked, you know, wow, that's cool. It's going to increase productivity and all that stuff, right? And on the danger side as well, the bad actors can take hold of it and create fake content and we have the fake sort of intelligence, if you go out there. So that's one thing. The second thing is, we are as humans are consuming this as language. Like we read that, we listen to it, whatever format we consume that is, but the ultimate usage of that will be when the machines can take that output from likes of ChatGPT, and do actions based on that. The robots can work, the robot can paint your house, we were talking about, right? Right now we can't do that. >> Data apps. >> So the data has to be ingested by the machines. It has to be digestible by the machines. And the machines cannot digest unorganized data right now, we will get better on the ingestion side as well. So we are getting better. >> Data, reasoning, insights, and action. >> I like that mall, paint my house. >> So, okay- >> By the way, that means drones that'll come in. Spray painting your house. >> Hey, it wasn't too long ago that robots couldn't climb stairs, as I like to point out. Okay, and of course it's no surprise the venture capitalists are lining up to eat at the trough, as I'd like to say. Let's hear, you'd referenced this earlier, John, let's hear what AI expert Howie Xu said at the Supercloud event, about what it takes to clone ChatGPT. Please, play the clip. >> So one of the VCs actually asked me the other day, right? "Hey, how much money do I need to spend, invest to get a, you know, another shot to the openAI sort of the level." You know, I did a (indistinct) >> Line up. >> A hundred million dollar is the order of magnitude that I came up with, right? You know, not a billion, not 10 million, right? So a hundred- >> Guys a hundred million dollars, that's an astoundingly low figure. What do you make of it? >> I was in an interview with, I was interviewing, I think he said hundred million or so, but in the hundreds of millions, not a billion right? >> You were trying to get him up, you were like "Hundreds of millions." >> Well I think, I- >> He's like, eh, not 10, not a billion. >> Well first of all, Howie Xu's an expert machine learning. He's at Zscaler, he's a machine learning AI guy. But he comes from VMware, he's got his technology pedigrees really off the chart. Great friend of theCUBE and kind of like a CUBE analyst for us. And he's smart. He's right. I think the barriers to entry from a dollar standpoint are lower than say the CapEx required to compete with AWS. Clearly, the CapEx spending to build all the tech for the run a cloud. >> And you don't need a huge sales force. >> And in some case apps too, it's the same thing. But I think it's not that hard. >> But am I right about that? You don't need a huge sales force either. It's, what, you know >> If the product's good, it will sell, this is a new era. The better mouse trap will win. This is the new economics in software, right? So- >> Because you look at the amount of money Lacework, and Snyk, Snowflake, Databrooks. Look at the amount of money they've raised. I mean it's like a billion dollars before they get to IPO or more. 'Cause they need promotion, they need go to market. You don't need (indistinct) >> OpenAI's been working on this for multiple five years plus it's, hasn't, wasn't born yesterday. Took a lot of years to get going. And Sam is depositioning all the success, because he's trying to manage expectations, To your point Sarbjeet, earlier. It's like, yeah, he's trying to "Whoa, whoa, settle down everybody, (Dave laughs) it's not that great." because he doesn't want to fall into that, you know, hero and then get taken down, so. >> It may take a 100 million or 150 or 200 million to train the model. But to, for the inference to, yeah to for the inference machine, It will take a lot more, I believe. >> Give it, so imagine, >> Because- >> Go ahead, sorry. >> Go ahead. But because it consumes a lot more compute cycles and it's certain level of storage and everything, right, which they already have. So I think to compute is different. To frame the model is a different cost. But to run the business is different, because I think 100 million can go into just fighting the Fed. >> Well there's a flywheel too. >> Oh that's (indistinct) >> (indistinct) >> We are running the business, right? >> It's an interesting number, but it's also kind of, like, context to it. So here, a hundred million spend it, you get there, but you got to factor in the fact that the ways companies win these days is critical mass scale, hitting a flywheel. If they can keep that flywheel of the value that they got going on and get better, you can almost imagine a marketplace where, hey, we have proprietary data, we're SiliconANGLE in theCUBE. We have proprietary content, CUBE videos, transcripts. Well wouldn't it be great if someone in a marketplace could sell a module for us, right? We buy that, Amazon's thing and things like that. So if they can get a marketplace going where you can apply to data sets that may be proprietary, you can start to see this become bigger. And so I think the key barriers to entry is going to be success. I'll give you an example, Reddit. Reddit is successful and it's hard to copy, not because of the software. >> They built the moat. >> Because you can, buy Reddit open source software and try To compete. >> They built the moat with their community. >> Their community, their scale, their user expectation. Twitter, we referenced earlier, that thing should have gone under the first two years, but there was such a great emotional product. People would tolerate the fail whale. And then, you know, well that was a whole 'nother thing. >> Then a plane landed in (John laughs) the Hudson and it was over. >> I think verticals, a lot of verticals will build applications using these models like for lawyers, for doctors, for scientists, for content creators, for- >> So you'll have many hundreds of millions of dollars investments that are going to be seeping out. If, all right, we got to wrap, if you had to put odds on it that that OpenAI is going to be the leader, maybe not a winner take all leader, but like you look at like Amazon and cloud, they're not winner take all, these aren't necessarily winner take all markets. It's not necessarily a zero sum game, but let's call it winner take most. What odds would you give that open AI 10 years from now will be in that position. >> If I'm 0 to 10 kind of thing? >> Yeah, it's like horse race, 3 to 1, 2 to 1, even money, 10 to 1, 50 to 1. >> Maybe 2 to 1, >> 2 to 1, that's pretty low odds. That's basically saying they're the favorite, they're the front runner. Would you agree with that? >> I'd say 4 to 1. >> Yeah, I was going to say I'm like a 5 to 1, 7 to 1 type of person, 'cause I'm a skeptic with, you know, there's so much competition, but- >> I think they're definitely the leader. I mean you got to say, I mean. >> Oh there's no question. There's no question about it. >> The question is can they execute? >> They're not Friendster, is what you're saying. >> They're not Friendster and they're more like Twitter and Reddit where they have momentum. If they can execute on the product side, and if they don't stumble on that, they will continue to have the lead. >> If they say stay neutral, as Sam is, has been saying, that, hey, Microsoft is one of our partners, if you look at their company model, how they have structured the company, then they're going to pay back to the investors, like Microsoft is the biggest one, up to certain, like by certain number of years, they're going to pay back from all the money they make, and after that, they're going to give the money back to the public, to the, I don't know who they give it to, like non-profit or something. (indistinct) >> Okay, the odds are dropping. (group talks over each other) That's a good point though >> Actually they might have done that to fend off the criticism of this. But it's really interesting to see the model they have adopted. >> The wildcard in all this, My last word on this is that, if there's a developer shift in how developers and data can come together again, we have conferences around the future of data, Supercloud and meshs versus, you know, how the data world, coding with data, how that evolves will also dictate, 'cause a wild card could be a shift in the landscape around how developers are using either machine learning or AI like techniques to code into their apps, so. >> That's fantastic insight. I can't thank you enough for your time, on the heels of Supercloud 2, really appreciate it. All right, thanks to John and Sarbjeet for the outstanding conversation today. Special thanks to the Palo Alto studio team. My goodness, Anderson, this great backdrop. You guys got it all out here, I'm jealous. And Noah, really appreciate it, Chuck, Andrew Frick and Cameron, Andrew Frick switching, Cameron on the video lake, great job. And Alex Myerson, he's on production, manages the podcast for us, Ken Schiffman as well. Kristen Martin and Cheryl Knight help get the word out on social media and our newsletters. Rob Hof is our editor-in-chief over at SiliconANGLE, does some great editing, thanks to all. Remember, all these episodes are available as podcasts. All you got to do is search Breaking Analysis podcast, wherever you listen. Publish each week on wikibon.com and siliconangle.com. Want to get in touch, email me directly, david.vellante@siliconangle.com or DM me at dvellante, or comment on our LinkedIn post. And by all means, check out etr.ai. They got really great survey data in the enterprise tech business. This is Dave Vellante for theCUBE Insights powered by ETR. Thanks for watching, We'll see you next time on Breaking Analysis. (electronic music)

Published Date : Jan 20 2023

SUMMARY :

bringing you data-driven and ChatGPT have taken the world by storm. So I asked it, give it to the large language models to do that. So to your point, it's So one of the problems with ChatGPT, and he simply gave the system the prompts, or the OS to help it do but it kind of levels the playing- and the answers were coming as the data you can get. Yeah, and leveled to certain extent. I check the facts, save me about maybe- and then I write a killer because like if the it's, the law is we, you know, I think that's true and I ask the set of similar question, What's your counter point? and not it's underestimated long term. That's what he said. for the first time, wow. the overhyped at the No, it was, it was I got, right I mean? the internet in the early days, and it's only going to get better." So you're saying it's bifurcated. and possibly the debate the first mobile device. So I mean. on the right with ChatGPT, and convicted by the Department of Justice the scrutiny from the Fed, right, so- And the privacy and thing to do what Sam Altman- So even though it'll get like, you know, it's- It's more than clever. I mean you write- I think that's a big thing. I think he was doing- I was not impressed because You know like. And he did the same thing he's got a lot of hyperbole. the browser moment to me, So OpenAI could stay on the right side You're right, it was terrible, They could be the Netscape Navigator, and in the horizontal axis's So I guess that's the other point is, I mean to quote IBM's So the data problem factors and the government's around the world, and they're slow to catch up. Yeah, and now they got years, you know, OpenAI. But the problem with government to kill Big Tech, and the 20% is probably relevant, back in the day, right? are they going to apply it? and also to write code as well, that the marketplace I don't, I don't see you had an interesting comment. No, no. First of all, the AI chops that Google has, right? are off the scales, right? I mean they got to be and the capacity to process that data, on some of the thinking So Lina Kahn is looming, and this is the third, could be a third rail. But the first thing What they will do out the separate company Is it to charge you for a query? it's cool to type stuff in natural language is the way and how many cents the and they're going through Google search results. It will, because there were It'll be like, you know, I mean. I never input the transcript. Wow, But it was a big lie. but I call it the vanilla content. Make your point, cause we And on the danger side as well, So the data By the way, that means at the Supercloud event, So one of the VCs actually What do you make of it? you were like "Hundreds of millions." not 10, not a billion. Clearly, the CapEx spending to build all But I think it's not that hard. It's, what, you know This is the new economics Look at the amount of And Sam is depositioning all the success, or 150 or 200 million to train the model. So I think to compute is different. not because of the software. Because you can, buy They built the moat And then, you know, well that the Hudson and it was over. that are going to be seeping out. Yeah, it's like horse race, 3 to 1, 2 to 1, that's pretty low odds. I mean you got to say, I mean. Oh there's no question. is what you're saying. and if they don't stumble on that, the money back to the public, to the, Okay, the odds are dropping. the model they have adopted. Supercloud and meshs versus, you know, on the heels of Supercloud

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
JohnPERSON

0.99+

SarbjeetPERSON

0.99+

Brian GracelyPERSON

0.99+

Lina KhanPERSON

0.99+

Dave VellantePERSON

0.99+

IBMORGANIZATION

0.99+

Reid HoffmanPERSON

0.99+

Alex MyersonPERSON

0.99+

Lena KhanPERSON

0.99+

Sam AltmanPERSON

0.99+

AppleORGANIZATION

0.99+

AWSORGANIZATION

0.99+

AmazonORGANIZATION

0.99+

Rob ThomasPERSON

0.99+

MicrosoftORGANIZATION

0.99+

Ken SchiffmanPERSON

0.99+

GoogleORGANIZATION

0.99+

David FlynnPERSON

0.99+

SamPERSON

0.99+

NoahPERSON

0.99+

Ray AmaraPERSON

0.99+

10 billionQUANTITY

0.99+

150QUANTITY

0.99+

Rob HofPERSON

0.99+

ChuckPERSON

0.99+

Palo AltoLOCATION

0.99+

Howie XuPERSON

0.99+

AndersonPERSON

0.99+

Cheryl KnightPERSON

0.99+

John FurrierPERSON

0.99+

Hewlett PackardORGANIZATION

0.99+

Santa CruzLOCATION

0.99+

1995DATE

0.99+

Lina KahnPERSON

0.99+

Zhamak DehghaniPERSON

0.99+

50 wordsQUANTITY

0.99+

Hundreds of millionsQUANTITY

0.99+

CompaqORGANIZATION

0.99+

10QUANTITY

0.99+

Kristen MartinPERSON

0.99+

two sentencesQUANTITY

0.99+

DavePERSON

0.99+

hundreds of millionsQUANTITY

0.99+

Satya NadellaPERSON

0.99+

CameronPERSON

0.99+

100 millionQUANTITY

0.99+

Silicon ValleyLOCATION

0.99+

one sentenceQUANTITY

0.99+

10 millionQUANTITY

0.99+

yesterdayDATE

0.99+

Clay ChristensenPERSON

0.99+

Sarbjeet JohalPERSON

0.99+

NetscapeORGANIZATION

0.99+

Ali Ghodsi, Databricks | Supercloud22


 

(light hearted music) >> Okay, welcome back to Supercloud '22. I'm John Furrier, host of theCUBE. We got Ali Ghodsi here, co-founder and CEO of Databricks. Ali, Great to see you. Thanks for spending your valuable time to come on and talk about Supercloud and the future of all the structural change that's happening in cloud computing. >> My pleasure, thanks for having me. >> Well, first of all, congratulations. We've been talking for many, many years, and I still go back to the video that we have in archive, you talking about cloud. And really, at the beginning of the big reboot, I called the post Hadoop, a revitalization of data. Congratulations, you've been cloud-first, now on multiple clouds. Congratulations to you and your team for achieving what looks like a billion dollars in annualized revenue as reported by the Wall Street Journal, so first, congratulations. >> Thank you so much, appreciate it. >> So I was talking to some young developers and I asked a random poll, what do you think about Databricks? Oh, we love those guys, they're AI and ML-native, and that's their advantage over the competition. So I pressed why. I don't think they knew why, but that's an interesting perspective. This idea of cloud native, AI/ML-native, ML Ops, this has been a big trend and it's continuing. This is a big part of how this change and this structural change is happening. How do you react to that? And how do you see Databricks evolving into this new Supercloud-like multi-cloud environment? >> Yeah, look, I think it's a continuum. It starts with having data, but they want to clean it, you know, and they want to get insights out of it. But then, eventually, you'd like to start asking questions, doing reports, maybe ask questions about what was my revenue yesterday, last week, but soon you want to start using the crystal ball, predictive technology. Okay, but what will my revenue be next week? Next quarter? Who's going to churn? And if you can finally automate that completely so that you can act on the predictions, right? So this credit card that got swiped, the AI thinks it's fraud, we're going to deny it. That's when you get real value. So we're trying to help all these organizations move through this data AI maturity curve, all the way to that, the prescriptive, automated AI machine learning. That's when you get real competitive advantage. And you know, we saw that with the fans, right? I mean, Google wouldn't be here today if it wasn't for AI. You know, we'd be using AltaVista or something. We want to help all organizations to be able to leverage data and AI that way that the fans did. >> One of the things we're looking at with supercloud and why we call it supercloud versus other things like multi-cloud is that today a lot of the successful companies have started in the cloud have been successful, but have realized and even enterprises who have gotten by accident, and maybe have done nothing with cloud have just some cloud projects on multiple clouds. So, people have multiple cloud operational things going on but it hasn't necessarily been a strategy per se. It's been more of kind of a default reaction to things but the ones that are innovating have been successful in one native cloud because the use cases that drove that got scale got value, and then they're making that super by bringing it on premise, putting in a modern data stack, for the modern application development, and kind of dealing with the things that you guys are in the middle of with data bricks is that, that is where the action is, and they don't want to go, lose the trajectory in all the economies of scale. So we're seeing another structural change where the evolutionary nature of the cloud has solved a bunch of use cases, but now other use cases are emerging that's on premises and edge that have been driven by applications because of the developer boom, that's happening. You guys are in the middle of it. What is happening with this structural change? Are people looking for the modern data stack? Are they looking for more AI? What's the, what's your perspective on this supercloud kind of position? >> Look, it started with not AR on multiple clouds, right? So multi-cloud has been a thing. It became a thing 70, 80% of our customers when you ask them, they're more than one cloud. But then soon to start realizing that, hey, you know, if I'm on multiple clouds, this data stuff is hard enough as it is. Do I want to redo it again and again with different proprietary technologies, on each of the clouds. And that's when I started thinking about let's standardize this, let's figure out a way which just works across them. That's where I think open source comes in, becomes really important. Hey, can we leverage open standards because then we can make it work in these different environments, as we said so that we can actually go super, as you said, that's one. The second thing is, can we simplify it? You know, and I think today, the data landscape is complicated. Conceptually it's simple. You have data which is essentially customer data that you have, maybe employee data. And you want to get some kind of insights from that. But how you do that is very complicated. You have to buy data warehouse, hire data analysts. You have to buy, store stuff in the Delta Lake you know, get your data engineers. If you want streaming real time thing that's another complete different set of technologies you have to buy. And then you have to stitch all these together, and you have to do again and again on every cloud. So they just want simplification. So that's why we're big believers in this Delta Lakehouse concept. Which is an open standard to simplifying this data stack and help people to just get value out of their data in any environment. So they can do that in this sort of supercloud as you call it. >> You know, we've been talking about that in previous interviews, do the heavy lifting let them get the value. I have to ask you about how you see that going forward, Because if I'm a customer, I have a lot of operational challenges. Cause the developers are are kicking butt right now. We see that clearly. Open sources growing at, and continue to be great. But ops and security teams they really care about this stuff. And most companies don't want to spin up multiple ops teams to deal with different stacks. This is one big problem that I think that's leading into the multi-cloud viability. How do you guys deal with that? How do you talk to customers when they say, I want to have less complications on operations? >> Yeah, you're absolutely right. You know, it's easy for a developer to adopt all these technologies and new things are coming out all the time. The ops teams are the ones that have to make sure this works. Doing that in multiple different environments is super hard. especially when there's a proprietary stack in each environment that's different. So they just want standardization. They want open source, that's super important. We hear that all the time from them. They want open the source technologies. They believe in the communities around it. You know, they know that source code is open. So you can also see if there's issues with it. If there's security breaches, those kind of things that they can have a community around it. So they can actually leverage that. So they're the ones that are really pushing this, and we're seeing it across the board. You know, it starts first with the digital natives you know, the companies that are, but slowly it's also now percolating to the other organizations, we're hearing across the board. >> Where are we, Ali on the innovation strategies for customers? Where are they on the trajectory around how they're building out their teams? How are they looking at the open source? How are they extending the value proposition of Databricks, and data at scale, as they start to build out their teams and operations, because some are like kind of starting, crawl, walk, run, kind of vibe. Some are big companies, they're dealing with data all the time. Where are they in their journey? What's the core issues that they're solving? What are some of the use cases that you see that are most pressing in customer? >> Yeah, what I've seen, that's really exciting about this Delta Lakehouse concept is that we're now seeing a lot of use cases around real time. So real time fraud detection, real time stock ticker pricing, anyone that's doing trading, they want that to work real time. Lots of use cases around that. Lots of use cases around how do we in real time drive more engagement on our web assets if we're a media company, right? We have all these assets how do we get people to get engaged? Stay on our sites. Continue engaging with the material we have. Those are real time use cases. And the interesting thing is, they're real time. So, you know, it's really important that you that now you don't want to recommend someone, hey, you should go check out this restaurant if they just came from that restaurant, half an hour ago. So you want it to be real time, but B, that it's also all based on machine learning. These are a lot of this is trying to predict what you want to see, what you want to do, is it fraudulent? And that's also interesting because basically more and more machine learning is coming in. So that's super exciting to see, the combination of real time and machine learning on the Lakehouse. And finally, I would say the Lakehouse is really important for this because that's where the data is flowing in. If they have to take that data that's flowing into the lake and actually copy it into a separate warehouse, that delays the real time use cases. And then it can't hit those real time deadlines. So that's another catalyst for this Lakehouse pattern. >> Would that be an example of how the metrics are changing? Cause I've been looking at some people saying, well you can tell if someone's doing well there's a lot of data being transferred. And then I was saying, well, wait a minute. Data transfer costs money, right? And time. So this is interesting dynamic, in a way you don't want to have a lot of movement, right? >> Yeah, movement actually decreases for a lot of these real time use cases. 'Cause what we saw in the past was that they would run a batch processing to process all the data. So once they process all the data. But actually if you look at the things that have changed since the data that we have yesterday it's actually not that much. So if you can actually incrementally process it in real time, you can actually reduce the cost of transfers and storage and processing. So that's actually a great point. That's also one of the main things that we're seeing with the use cases, the bill shrinks and the cost goes down, and they can process less. >> Yeah, and it'd be interesting to see how those KPIs evolve into industry metrics down the road around the supercloud of evolution. I got to ask you about the open source concept of data platforms. You guys have been a pioneer in there doing great work, kind of picking the baton off where the Hadoop World left off as Dave Vellante always points out. But if working across clouds is super important. How are you guys looking at the ability to work across the different clouds with data bricks? Are you going to build that abstraction yourself? Does data sharing and model sharing kind of come into play there? How do you see this data bricks capability across the clouds? >> Yeah, I mean, let me start by saying, we just we're big fans of open source. We think that open source is a force in software. That's going to continue for, decades, hundreds of years, and it's going to slowly replace all proprietary code in its way. We saw that, it could do that with the most advanced technology. Windows, you know proprietary operating system, very complicated, got replaced with Linux. So open source can pretty much do anything. And what we're seeing with the Delta Lakehouse is that slowly the open source community is building a replacement for the proprietary data warehouse, Delta Lake, machine learning, real time stack in open source. And we're excited to be part of it. For us, Delta Lake is a very important project that really helps you standardize how you layout your data in the cloud. And when it comes a really important protocol called data sharing, that enables you in a open way actually for the first time ever share large data sets between organizations, but it uses an open protocol. So the great thing about that is you don't need to be a Databricks customer. You don't need to even like Databricks, you just need to use this open source project and you can now securely share data sets between organizations across clouds. And it actually does so really efficiently just one copy of the data. So you don't have to copy it if you're within the same cloud. >> So you're playing the long game on open source. >> Absolutely. I mean, this is a force it's going to be there if if you deny it, before you know it there's going to be, something like Linux, that is going to be a threat to your propriety. >> I totally agree by the way. I was just talking to somebody the other day and they're like hey, the software industry someone made the comment, the software industry, the software industry is open source. There's no more software industry, it's called open source. It's integrations that become interesting. And I was looking at integrations now is really where the action is. And we had a panel with the Clouderati we called it, the people have been around for a long time. And it was called the innovator's dilemma. And one of the comments was it's the integrator's dilemma, not the innovator's dilemma. And this is a big part of this piece of supercloud. Can you share your thoughts on how cloud and integration need to be tightened up to really make it super? >> Actually that's a great point. I think the beauty of this is, look the ecosystem of data today is vast, there's this picture that someone puts together every year of all the different vendors and how they relate, and it gets bigger and bigger and messy and messier. So, we see customers use all kinds of different aspects of what's existing in the ecosystem and they want it to be integrated in whatever you're selling them. And that's where I think the power of open source comes in. Open source, you get integrations that people will do without you having to push it. So us, Databricks as a vendor, we don't have to go tell people please integrate with Databricks. The open source technology that we contribute to, automatically, people are integrating with it. Delta Lake has integrations with lots of different software out there and Databricks as a company doesn't have to push that. So I think open source is also another thing that really helps with the ecosystem integrations. Many of these companies in this data space actually have employees that are full-time dedicated to make sure make sure our software works well with Spark. Make sure our software works well with Delta and they contribute back to that community. And that's the way you get this sort of ecosystem to further sort of flourish. >> Well, I really appreciate your time. And I, my final question for you is, as we're kind of unpack and and kind of shape and frame supercloud for the future, how would you see a roadmap or architecture or outcome for companies that are going to clearly be in the cloud where it's open source is going to be dominating. Integrations has got to be seamless and frictionless. Abstraction layer make things super easy and take away the complexity. What is supercloud to them? What does the outcome look like? How would you define a supercloud environment for an enterprise? >> Yeah, for me, it's the simplification that you get where you standardize an open source. You get your data in one place, in one format in one standardized way, and then you can get your insights from it, without having to buy lots of different idiosyncratic proprietary software from different vendors. That's different in each environment. So it's this slow standardization that's happening. And I think it's going to happen faster than we think. And I think in a couple years it's going to be a requirement that, does your software work on all these different departments? Is it based on open source? Is it using this Delta Lake house pattern? And if it's not, I think they're going to demand it. >> Yeah, I feel like we're close to some sort of defacto standard coming and you guys are a big part of it, once that clicks in, it's going to highly accelerate in the open, and I think it's going to be super valuable. Ali, thank you so much for your time, and congratulations to you and your team. Like we've been following you guys since the beginning. Remember the early days and look how far it's come. And again, you guys are really making a big difference in making a super cool environment out there. Thanks for coming on sharing. >> Thank you so much John. >> Okay, this is supercloud 22. I'm John Furrier stay with more for more coverage and more commentary after this break. (light hearted music)

Published Date : Aug 7 2022

SUMMARY :

and the future of all Congratulations to you and your team And how do you see Databricks evolving And if you can finally One of the things we're And then you have to I have to ask you about how We hear that all the time from them. What are some of the use cases that delays the real time use cases. in a way you don't want to So if you can actually incrementally I got to ask you about So you don't have to copy it So you're playing the that is going to be a And one of the comments was And that's the way you and take away the complexity. simplification that you get and congratulations to you and your team. Okay, this is supercloud 22.

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Ali GhodsiPERSON

0.99+

Dave VellantePERSON

0.99+

GoogleORGANIZATION

0.99+

DatabricksORGANIZATION

0.99+

JohnPERSON

0.99+

last weekDATE

0.99+

next weekDATE

0.99+

AliPERSON

0.99+

Next quarterDATE

0.99+

yesterdayDATE

0.99+

John FurrierPERSON

0.99+

DeltaORGANIZATION

0.99+

one formatQUANTITY

0.99+

firstQUANTITY

0.99+

todayDATE

0.98+

second thingQUANTITY

0.98+

oneQUANTITY

0.98+

LinuxTITLE

0.98+

one copyQUANTITY

0.98+

Delta LakehouseORGANIZATION

0.98+

supercloud 22ORGANIZATION

0.98+

more than one cloudQUANTITY

0.98+

each environmentQUANTITY

0.98+

ClouderatiORGANIZATION

0.98+

Supercloud22ORGANIZATION

0.98+

hundreds of yearsQUANTITY

0.97+

Delta LakeLOCATION

0.97+

one big problemQUANTITY

0.97+

70, 80%QUANTITY

0.97+

WindowsTITLE

0.96+

one placeQUANTITY

0.96+

first timeQUANTITY

0.96+

billion dollarsQUANTITY

0.95+

decadesQUANTITY

0.95+

Delta LakeORGANIZATION

0.95+

OneQUANTITY

0.94+

supercloudORGANIZATION

0.94+

SupercloudORGANIZATION

0.94+

half an hour agoDATE

0.93+

Delta LakeTITLE

0.92+

LakehouseORGANIZATION

0.92+

SparkTITLE

0.91+

eachQUANTITY

0.91+

a minuteQUANTITY

0.85+

one ofQUANTITY

0.73+

one nativeQUANTITY

0.72+

supercloudTITLE

0.7+

couple yearsQUANTITY

0.66+

AltaVistaORGANIZATION

0.65+

Wall Street JournalORGANIZATION

0.63+

theCUBEORGANIZATION

0.63+

LakehouseTITLE

0.51+

LakeLOCATION

0.46+

Hadoop WorldTITLE

0.41+

'22EVENT

0.24+

Jim McCarthy - Girls in Tech Catalyst Conference - #GITCatalyst - #theCUBE


 

>> From Phoenix, Arizona, The Cube at Catalyst Contracts. Here's your host, Jeff Frick. >> Hey welcome back everybody, Jeff Frick here with The Cube. We are in Phoenix, Arizona at the Girls in Tech Catalyst Conference. It's funny, seems something about Phoenix that this is where all the great women in tech conferences are. We were here two years ago for our first Grace Hopper and it's really fun to return now to this one, the Girls in Tech Catalyst Conference, which, a little bit smaller, about 400 people, their fourth year, but again it's all about empowering girls, empowering women to think differently, to take charge and to be more successful so really excited for our next guest, Jim McCarthy, brought in to motivate the troops. >> That's right. >> So first off, welcome. >> Thank you. >> So-- >> Thanks Jeff. >> Your keynote was all about a career without regret, have a great impact on what you care about. That is so topical right now, and especially these people that talk about, you know, the millennials and you know, kind of the younger generation coming up, they want to do things that they care about >> Yeah, I think all the research indicates millennials, more than maybe prior generations, really are looking for work that has impact and has meaning. >> Is it because they can? You know, that things are a little bit easier, they know they're not necessarily y'know, suffering to get by? Why do you think there's the change and then once you've made that decision, how do you implement that in kind of your day to day life? >> Well I'm not sure I could explain how the millennials are perhaps different, maybe they just see some of the challenges in our world like climate change for example and realize wow, there's some very serious challenges we face. That might be why they're looking for more of an impact, but in terms of what to do to find more meaning in life I always encourage people to do work that they really love, that they're passionate about, and in this conference a lot of the women have talked about passion and what you're good at and really doing that 'cause that's what you're going to be most successful at. >> Right, but that's a really common theme >> Yeah. >> We've heard that forever, to close your parachute, y'know, if you could find something that you get paid well and you're passionate about, but often times there's a conflict, right? Sometimes it's just harder, people get stuck in something that they're not happy with, but they're not really willing to make the change, not really willing to make the investment or take the chance so what are some of the things you tell people that are specific actionable, that will help them y'know, make those changes to get some place where they're y'know, feeling better about what they're working on? >> Well, so for me part of my talk was I talk about how I had a career in Silicone Valley, early employee at Yahoo! and different internet companies and then about three and a half years ago I was diagnosed with cancer and that was a big wake up call for me. And even though my health seems to be okay right now, it really sort of helped me realize that wow, I'm not going to live forever and by embracing my mortality I've started living much more fully and I decided okay, if I wanted to be a motivational speaker, I always wanted to, never had the courage to do it, I thought okay, I'm not going to live forever, I might as well dive into it, have the courage to try even if I fail. But at least I'll be happy and I'm not living a life with regrets. >> Right. >> So that was part of my workshop yesterday. >> So that's really interesting and a powerful story I mean, we often hear when there's these, y'know, kind of life changing events, these big moments, y'know that is the catalyst. Does it take that to make the change? Can people do it without the change? I mean, we can't hardly get anyone to lift up their face out of email. (laughing) I mean, how do we do it without that or does it really take that? I mean, is that really what happens, whether it's yourself or a loved one or someone you care about, it's interesting 'cause that's powerful catalyst >> Yeah so, I think for some people it does take getting, y'know, hit with a ton of bricks like that in order to really realize what they need to do and have the courage to do it and just realize y'know, this may not work out but I'm just going to go for it. In part of my workshops I try to help people think about their mortality, think about if you were to die today, how would you feel about your relationships. If you were to die today, how would you feel about the work that you've done. And then I always have them write out action plans for okay, based on what I wrote, based on what we discussed, what do you want to change in your life and what's the deadline to do it? So that's kind of the process that I use in my workshops so it's not just nice story and inspiration but it's really okay, how can we bring this back to what am I going to do with my career, what am I going to do with my relationships and there's also very practical things that people can do that I think will help them a lot, one is mindfulness to reduce their stress, one is affirmation in which you can actually train your brain to be much more positive thinking and there's a lot of neuroscience behind that today which shows that you can actually sculpt your brain to have a much more positive attitude. So those are some and then the goal setting is important too. So -- and then gratitude, I'm sorry, there's another practice. So these are very, this is not just nice ideas but actually daily practices you can do, mindfulness and meditation, gratitude and affirmations, these are all things that can really have a daily impact in a very positive way. >> Right, and I'm sure people say, "Jim, that sounds great, I printed it out, it's on my fridge, but jeez, I wake up, I have 472 unread emails, the boss is calling me," how do I really actually do it? I want to do it but I'm drowning in email, whoever invented email is problematic, I'm glad that young kids don't use it 'cause it's going to die soon. (laughing) But y'know, practically, what do you tell folks? >> What I tell people is if you meditated 10 minutes a day, that's about 1% of your waking hours and that 1% would improve the other 99% of your waking hours and meditation used to be very weird and funky and new-agey and now you see more and more people saying, "No actually, 10 minutes of mindfulness or meditation or breathing or whatever can make a huge positive impact on your health both physically and mentally". There's all sorts of very serious scientific research, neuroscience, which underscores that. So if you invest 10 minutes of your day in being at peace, reducing stress, focusing on your breathing, then the other 99% of your day is going to be calmer, you're not going to be freaking out so much, you get an email in your inbox that you may not like but you can say, "okay, let me breath, okay let me think about this, okay", don't have to do an immediate flame mail response and then you're doing a lot less damage control in your life and you're being much more focused on how do I want to spend my day. And so that is one way to reduce your stress and yet still get stuff done, the most important stuff done. >> It's interesting, I have an unwritten book that I always wanted to write, kind of on some of the things you said before about y'know, don't forget your death bed, 'cause at some point you're going to be laying on your death bed-- >> That would be the title of your book? >> And you're going to have those questions. >> Yeah >> Yeah Y'know, did I do what I want to do? Did I spend too much time at the office, or too much time at the beach or too much time with the kids or not? >> Well if I can say, there's a woman who wrote a book named "The Top Five Regrets of the Dying" and regret number two was "I wish I had worked less". And every single man in her survey that she talked to said "I wish I had worked less". And these are men on their deathbeds. But it applies to a lot of women as well. >> So I want to shift gears a little bit, back to your tech days, >> Yeah (laughing) >> Just looking at your background, obviously some of our homework and you y'know, you did a summer at McKenzie, you're kind of at the leading edge of business and smart people and you -- >> You're too kind Jeff, okay? (laughing) >> No, and then you decide I haven't finished the story, and then you go to San Jose Mercury News to work in classifieds. >> Actually to do marketing. >> To do marketing >> Yeah >> But you were involved in classifieds and I only bring up the classifieds 'cause it's interesting because then you left and went to Yahoo!, right at the main, I mean really at a pivotal time in the transformation of classifieds moving from the newspaper to online. >> Yes >> So you lived kind of this digital transformation long before Uber and some of the other examples that are so often cited. >> Yeah. >> So I'd just love to get kind of your perspective on, y'know, kind of digital transformation, it happened, this was 97 so what 20 years ago, I can't believe it's 20 years ago, to now and then in the context of what you're doing now. >> So I graduated from business school in 1996, and went to the San Jose Mercury News and was doing marketing things. But right when I was graduating I was like, "Oh jeez, y'know this internet thing is going to be huge!", and after a few months at the Mercury News, I said, "Look, I really want to do something with internet", and they said, "Sorry, can't do that, keep helping us sell papers." And I said, "Well screw this!", and so I went to Yahoo! In July 1997, I was employee number 258 and I was hired to be a product manager for Yahoo! classifieds, so realizing, 'cause I remember sitting in the Mercury News at my computer and looking at, wow, Yahoo! has some like, online classifieds for autos? And careers? And this is way better than the newspaper! I can have long descriptions here and you can even see pictures of things, so I went to Yahoo! classifieds and out of that we created Yahoo! Autos, Yahoo! Careers Yahoo! Personals, Yahoo! Real Estate. And yes, this absolutely-- And then later there was the category killers where there was Match.com, where there was Monster or Monster Board, and on down the line-- >> Monster Park, remember Monster Park, one of the first sponsored stadiums back in the day. >> Yeah, yeah. >> After 3Com. Excuse me, I'm sorry to interrupt. >> No it's okay. So it was an amazing transformation and it was one of these things where the internet just does things so much better and you could say it also sort of helped destroy an industry, right? I mean, I'm certainly a big believer in the power of local newspapers and investigative journalism, and that's really been damaged a lot from the last 20 years, but sometimes it's like this technological imperative where the web is so much better, people have to figure out different business models, different ways to fund their journalism, different revenue models that work. But I mean it's just amazing to see what's gone on with how classifieds has developed, e-commerce has developed. I worked later on Yahoo! Auctions and Shopping, you can talk about that more if you want. >> Yeah, a friend of mine works at the Yellow Pages, I was like dude, you probably need to get a new job. >> Really? Still? >> It's YP.com now. Well turns out they have a huge online business which is good for them. No still, I was like c'mon, (laughing) You need to get out of that. >> Gosh (laughing). >> So, anyway. It's just interesting, the digital transformation that we're under now y'know, has happened over and over again, we just happen to be kind of in the current iteration, sometimes people forget-- >> Yes, yeah. >> That there was a time before Google, it was called AltaVista (laughing) or WebCrawler if you want to go back even further. Anyway, we regress. So Jim, what're you working on now, what're you looking forward to in the next six months, any special projects? You just traveling the country and spreading good word? >> I travel the country and I travel internationally doing my workshop. So basically the workshop's where I teach companies how to build happy, high performance teams. >> Awesome. >> And in the workshop, some of them are a little bit more, much more sort of inspirational and about mortality and about what you want to do for life purpose, I have a workshop called, "Happiness Workshop: Keep Calm and Get Stuff Done" and then so there's ones which are much more goal setting, there's more which are inspirational and yeah, I travel and teach companies how to -- whether it's an hour workshop or a six hour workshop, that's what I do. >> Jim, thanks for stopping by, it's a great story and I think it's just so important, y'know there's a lot of great inspirational stories out there but really y'know, how you do you help people, give them actionable things that they can put on the fridge, put on their calender and-- >> And have in their daily routine. >> Right and do it right, and do change behavior 'cause it's hard to change attitude, really hard, and the way you do it is you change behavior, that you can actually change. Thanks for-- >> Yeah, yeah. >> Thanks for sharing a few minutes with us. >> Thank you Jeff, very kind of you. >> Absolutely >> Thank you >> Jim McCarthy, I'm Jeff Frick, we're in Phoenix, Arizona at the Girls in Tech Catalyst Conference, you're watching The Cube. Thanks for watching.

Published Date : Apr 22 2016

SUMMARY :

Here's your host, Jeff Frick. and it's really fun to and you know, kind of the that has impact and has meaning. and really doing that and that was a big wake up call for me. So that was part of Does it take that to make the change? have the courage to do it what do you tell folks? and now you see more And you're going to survey that she talked to No, and then you decide I moving from the newspaper to online. So you lived to get kind of your perspective on, and you can even see pictures of things, one of the first sponsored Excuse me, I'm sorry to interrupt. and you could say I was like dude, you probably You need to get out of that. in the current iteration, So Jim, what're you working on now, and I travel internationally and about what you want and the way you do it a few minutes with us. at the Girls in Tech Catalyst Conference,

SENTIMENT ANALYSIS :

ENTITIES

EntityCategoryConfidence
Jim McCarthyPERSON

0.99+

JeffPERSON

0.99+

JimPERSON

0.99+

Jeff FrickPERSON

0.99+

July 1997DATE

0.99+

1996DATE

0.99+

10 minutesQUANTITY

0.99+

The Top Five Regrets of the DyingTITLE

0.99+

MonsterORGANIZATION

0.99+

99%QUANTITY

0.99+

1%QUANTITY

0.99+

PhoenixLOCATION

0.99+

fourth yearQUANTITY

0.99+

Silicone ValleyLOCATION

0.99+

Mercury NewsORGANIZATION

0.99+

The CubeORGANIZATION

0.99+

Yahoo!ORGANIZATION

0.99+

Phoenix, ArizonaLOCATION

0.99+

San Jose Mercury NewsORGANIZATION

0.99+

todayDATE

0.99+

firstQUANTITY

0.99+

Monster BoardORGANIZATION

0.99+

yesterdayDATE

0.99+

UberORGANIZATION

0.99+

six hourQUANTITY

0.99+

YahooORGANIZATION

0.99+

472 unread emailsQUANTITY

0.98+

Match.comORGANIZATION

0.98+

an hourQUANTITY

0.98+

The CubeTITLE

0.98+

20 years agoDATE

0.98+

one wayQUANTITY

0.98+

GoogleORGANIZATION

0.98+

two years agoDATE

0.98+

10 minutes a dayQUANTITY

0.97+

97QUANTITY

0.96+

Yahoo! AuctionsORGANIZATION

0.96+

oneQUANTITY

0.96+

258OTHER

0.95+

Grace HopperPERSON

0.95+

Tech Catalyst ConferenceEVENT

0.95+

Yellow PagesORGANIZATION

0.94+

Catalyst ContractsORGANIZATION

0.94+

bothQUANTITY

0.94+

about 400 peopleQUANTITY

0.93+

about three and a half years agoDATE

0.91+

last 20 yearsDATE

0.9+

next six monthsDATE

0.88+

Girls in Tech Catalyst ConferenceEVENT

0.88+

#theCUBEORGANIZATION

0.88+

ShoppingORGANIZATION

0.87+

about 1%QUANTITY

0.85+

Yahoo! PersonalsORGANIZATION

0.82+

McKenzieORGANIZATION

0.8+

Calm andTITLE

0.79+

AltaVistaORGANIZATION

0.76+

GirlsEVENT

0.7+

YP.comORGANIZATION

0.67+

every single manQUANTITY

0.66+

number twoQUANTITY

0.64+

Girls inEVENT

0.64+

DoneTITLE

0.63+

Monster ParkORGANIZATION

0.58+

millennialsPERSON

0.54+

#GITCatalystORGANIZATION

0.53+

3ComORGANIZATION

0.46+

WebCrawlerORGANIZATION

0.43+