Skip to content
Lenny's PodcastLenny's Podcast

A rational conversation on where AI is actually going | Benedict Evans

Benedict Evans is an independent analyst and former partner at Andreessen Horowitz, where he spent years as their in-house “thinker” tracking the most important technology trends. For the past six years, he’s been publishing deeply researched presentations on where tech is heading, most recently focused on AI’s transformation of the economy. His work is read by founders, investors, and operators trying to make sense of a noisy field. His most controversial opinion: AI is as big a deal as the internet or mobile—and only as big. *In our in-depth conversation, we discuss:* 1. Why we’re in “1997” for AI—early, exciting, and deeply uncertain about what comes next 2. Where value will actually accrue in the AI stack 3. The anti-AI backlash, and where it may lead 4. The surprising boom in consulting and professional services at AI companies 5. Why distribution is becoming the ultimate moat as software gets easier to build 6. Why the right question about your job isn’t “What percent can AI do?” but “Is this a task or a job?” 7. Why things will probably be okay—and what you need to do to prepare *Brought to you by:* WorkOS—Make your app enterprise-ready, with SSO, SCIM, RBAC, and more: https://workos.com/lenny Vanta—Automate compliance, manage risk, and accelerate trust with AI: https://vanta.com/lenny *Episode transcript:* https://www.lennysnewsletter.com/p/a-rational-conversation-on-where *Archive of all Lenny's Podcast transcripts:* https://www.dropbox.com/scl/fo/yxi4s2w998p1gvtpu4193/AMdNPR8AOw0lMklwtnC0TrQ?rlkey=j06x0nipoti519e0xgm23zsn9&st=ahz0fj11&dl=0 *Where to find Benedict Evans:* • LinkedIn: https://www.linkedin.com/in/benedictevans • Newsletter: https://www.ben-evans.com/newsletter • Website: https://www.ben-evans.com *Where to find Lenny:* • Newsletter: https://www.lennysnewsletter.com • X: https://twitter.com/lennysan • LinkedIn: https://www.linkedin.com/in/lennyrachitsky/ *In this episode, we cover:* (00:00) Introduction to Benedict Evans (02:19) What people aren’t pricing in about AI’s impact (06:24) Why we’re in the 1997 moment of AI (09:44) The unexpected boom in professional services and consultants (17:44) Why distribution is becoming the ultimate moat (23:17) The coming job transformation: what’s real vs. panic (27:33) Why AGI definitions keep shifting (38:11) Where value will accrue: models vs. applications (42:55) Distribution wars: Google, Meta, Apple, and OpenAI (48:12) The anti-AI sentiment and backlash (53:11) How to raise kids in an AI future (58:27) What jobs to steer toward or away from (59:20) The question nobody’s asking about AI (1:06:25) How to be successful in this coming future (1:08:43) AI corner (1:11:43) Lightning round *Referenced:* • Andreessen Horowitz: https://a16z.com • AI Eats the World: https://youtu.be/niJpDnNtNp4 • VisiCalc: https://en.wikipedia.org/wiki/VisiCalc • McKinsey & Company: https://www.mckinsey.com • Bain & Company: https://www.bain.com • Accenture: https://www.accenture.com • Jevons paradox: https://en.wikipedia.org/wiki/Jevons_paradox • Benedict’s post on LinkedIn about Excel: https://www.linkedin.com/posts/benedictevans_younger-people-may-not-believe-this-but-activity-7303217994459938816-PNqu • The AI-native startup: 5 products, 7-figure revenue, 100% AI-written code | Dan Shipper (co-founder/CEO of Every): https://www.lennysnewsletter.com/p/inside-every-dan-shipper • Dario Amodei on X: https://x.com/DarioAmodei • Marc Andreessen: The real AI boom hasn’t even started yet: https://www.lennysnewsletter.com/p/marc-andreessen-the-real-ai-boom • Frame.io: https://frame.io • Food Marketing Institute: https://en.wikipedia.org/wiki/Food_Marketing_Institute • Llama: https://www.llama.com • Steven Sinofsky on X: https://x.com/stevesi • Drake meme: https://imgflip.com/memegenerator/343699919/Drake-Hotline-Bling-Transparent-Background • Ex-Google CEO Gets Booed While Discussing AI in Commencement Speech | WSJ News: https://www.youtube.com/watch?v=tNH43a1EI7s • Jonathan Swift’s quote: https://www.goodreads.com/quotes/9838985-you-cannot-reason-a-person-out-of-a-position-he • George Carlin’s quote: https://www.brainyquote.com/quotes/george_carlin_391403 • Fujitsu: https://global.fujitsu • O*NET OnLine: https://www.onetonline.org • Pete Holmes’s website: https://peteholmes.com • The Seventh Seal: https://www.imdb.com/title/tt0050976 • Ericsson R310s phone: https://en.wikipedia.org/wiki/Ericsson_R310s • i-mate phone: https://en.wikipedia.org/wiki/I-mate *Recommended books:* • Three Men in a Boat: https://www.amazon.com/Three-Men-Boat-Jerome-K/dp/1512099899 • Nature’s Metropolis: Chicago and the Great West: https://www.amazon.com/Natures-Metropolis-Chicago-Great-West/dp/0393308731 _Production and marketing by https://penname.co/._ _For inquiries about sponsoring the podcast, email podcast@lennyrachitsky.com._ Lenny may be an investor in the companies discussed.

Benedict EvansguestLenny Rachitskyhost
May 31, 20261h 19mWatch on YouTube ↗

EVERY SPOKEN WORD

  1. 0:002:19

    Introduction to Benedict Evans

    1. BE

      My most controversial opinion is that I think that AI is as big a deal as the internet or mobile, and only as big a deal as the internet or mobile.

    2. LR

      What's your gist on the coming jobpocalypse?

    3. BE

      Every time we have a new technology, it automates away a bunch of jobs, and then that automation unlocks a bunch of new jobs. And you don't know the new job because it doesn't exist yet. We've had that process over and over again.

    4. LR

      Even just looking at the most advanced AI companies, uh, Anthropic, OpenAI, everyone's increasing headcount.

    5. BE

      You talk to these doomers on Twitter, and they would act like every big company is going to buy ChatGPT tomorrow, and then in two weeks time they'll fire all their staff. These people are morons. You can't predict which things are going to be exposed. You can't look at a senior partner at a law firm and say, "Well, 17% of their work could be automated." This is horseshit.

    6. LR

      I'm curious if you're following the anti-AI sentiment.

    7. BE

      It's a big, fuzzy mess. Yes, this will change a bunch of stuff, and we'll need to worry about it, but that's kind of a constant. We've always had that.

    8. LR

      What would be a couple things you recommend people do to be more successful in this future?

    9. BE

      Don't stick your head in the sand and say, "I hate all of this stuff." That gives you a great feeling of moral superiority, and you can go on Bluesky and shout at everybody about how evil AI is. Like, great. I'm happy for you, but that's not gonna help. What helps is you diving into this and coming out understanding what you can do with it.

    10. LR

      Today my guest is Benedict Evans. Benedict was a longtime partner at a16z as their in-house analyst and resident thinker. Before that, he was a longtime equity researcher. And for the past six years, he's been an independent analyst tracking the most important tech trends and sharing what he's learning. Most recently, as you'd expect, he's spending all his time on how AI is changing our lives, and in his words, "AI is eating the world." In this conversation, we go deep on what we're still not pricing in on the impact that AI is going to have on our lives and our work, the rise of anti-AI sentiment, the impact on jobs, where in the value chain most of the value will accrue, and tons more. If you're worried about AI or just confused about where things are heading, this conversation will teach you a lot and also make you feel better. Before we get into it, don't forget to check out lennysproductpass.com for a year free of some of the most amazing, hottest, most well-crafted AI products in the world, available exclusively to Lenny's Newsletter subscribers. With that, I bring you Benedict

  2. 2:196:24

    What people aren’t pricing in about AI’s impact

    1. LR

      Evans. [gentle music] Benedict, thank you so much for being here. Welcome to the podcast.

    2. BE

      Thank you for inviting me.

    3. LR

      You just put out this deck called AI is Eating the World. I wanna ask you kinda the, the flip side of this, of we all know it's a big deal. Like, knowing that, what do you think people are still not fully pricing in when they think about the change that they're gonna experience to their lives and their work?

    4. BE

      Um, an interesting way of thinking about it, I did a, um, a podcast last year with someone where I said, you know, I... My most controversial opinion is that I think that AI is as big a deal as the internet or mobile, and only as big a deal as the internet or mobile. 'Cause clearly there's a bunch of people in tech who think that this is more like the Industrial Revolution or something. And there are a whole bunch of people underneath saying, "Well, he thinks this is just as big as... Does he not understand how big this is?" And I'm like, smartphones were quite a big deal. The internet was quite a big deal. We wouldn't be doing this if it wasn't for the internet. So there's, like, one layer of... But then if you dig into that, like, if you're gonna make the internet comparison, it's like we're in 1997. Like, it's very exciting. Most stuff kind of doesn't work yet. Most of the stuff that people are going to do hasn't been built yet, and it's not really clear how any of it's going to work when it does work. And the people who have, who have already got it, who have already taken whichever pill it is, I forget which, sort of just imagine that everybody in the world is already there. And the truth is you've got this kind of very wide distribution, so there's people in tech who bought their cluster of Mac Minis and, you know, don't use Google anymore. And then you look outside tech, and setting aside the idiots who think that this isn't real, um, you know, most people are using... who are using this are using this every week or two maybe. Um, so you've got that kind of spread of adoption and that spread of maturity of how well this works. And then within that, you can make sort of specific points about, well, how are the models gonna work, and do the model labs have pricing power, and where's the value going to be, and, you know, has OpenAI won the whole thing or, you know, has Anthropic got it this week? And so then you can kind of get into calling those races where, again, it's like being in 1997 and saying, "Well, is it gonna be Excite or Yahoo?" And the answer was no, generally. So there's a sort of a fractal point here. There's, like, the sort of the super high level that, like, this is gonna change absolutely everything. I don't think it's particularly productive to say, "Well, is it 20% bigger than the internet or 100%?" Like, they, they... those aren't productive conversations. But it's one of those fundamental changes. But then you don't know how any of it's gonna work. Um, in fact, I just published it this... I do a presentation every six months, and I just published one yesterday. And one of the comments was, "Benedict, this is 80 slides of saying we don't know," which is, like, slightly facetious, but also kinda true.

    5. LR

      This episode is brought to you by our season's presenting sponsor, WorkOS. What do OpenAI, Anthropic, Cursor, Vercel, Replit, Sierra, Clay, and hundreds of other winning companies all have in common? They are all powered by WorkOS. If you're building a product for the enterprise, you've felt the pain of integrating single sign-on, SCIM, RBAC, audit logs, and other features required by large companies. WorkOS turns those deal blockers into drop-in APIs with a modern developer platform built specifically for B2B SaaS. Literally every startup that I'm an investor in that starts to expand upmarket ends up working with WorkOS, and that's because they are the best. Whether you are a seed-stage startup trying to land your first enterprise customer or a unicorn expanding globally, WorkOS is the fastest path to becoming enterprise-ready and unblocking growth. It's essentially Stripe for enterprise features. Visit workos.com to get started or just hit up their Slack where they have actual engineers waiting to answer your questions. WorkOS allows you to build faster with delightful APIs, comprehensive docs, and a smooth developer experience. Go to workos.com to make your app enterprise-ready

  3. 6:249:44

    Why we’re in the 1997 moment of AI

    1. LR

      today.So if we're in this 1997 timeline, uh, for AI, I know it's-- I know [laughs] so much of your message is we don't know where it's going exactly yet. I don't know, do you have a sense of just, like, the timeline to, okay, now things are gonna be radically changing? Like, where are we in that cycle? You talk about all these different cycles we've been through, like how fl- far are we from just like, wow, it's all different now?

    2. BE

      Well, unquestionably, we're already in that moment in software, and then there's a conversation about, well, what does agentic and AI software development, two separate things that merge together, mean for the future of the software industry? You know, there's one extreme which is no one really believes, which is, you know, hey, you'll just, like, vibe code your own Stripe. And no one actually believes that, although very few don't believe that, but, like, clearly there's a whole bunch of questions about what this means for the software industry and how much stuff you'll be able to do yourself, or how much more software there will be, and that's, you know, whole... that's one whole conversation. But the other extreme is, you know, if you're in a law firm, this is all very interesting, um, but what am I s- how, what, how exactly do we use this, and how do we work out how not to be the next story that we've submitted something with hallucinations in it? And how many associates are we gonna hire next year? Uh, what does this mean for us? One of the analogies I used in, in the presentation is, like, imagine you're seeing... imagine you're an accountant seeing the first software spreadsheets in the late '70s, and this is mind-blowing. You know, you change the interest rate here, and all the other numbers change, and it does a week of work for you in, like, 30 seconds. And we can talk about what that meant for the accounting industry, but clearly, if you're an accountant, this is obviously mind-blowing. But if you were a lawyer looking at that or a journalist looking at that, you'd think, "Well, that's very clever and my accountant should see this, but that's not what I do. I might use it for my time sheet next week if it didn't cost $10,000 or $15,000 to get the Apple II and the monitor and the printer to run it," which is what it cost if you adjust for inflation. "But that's not what I do." And you need a word processor, which actually came, like, very shortly afterwards. And so that's sort of the moment that we're in of there's some people, like software development are develop- software developers are the accountant seeing VisiCalc, like, "Oh my God, this changes everything." Like, before VisiCalc and after VisiCalc, before, before code and after code. A lot of other people are picking it up, using it to varying degrees, but slightly puzzled. So, you know, there's a bunch of survey data that I put in the, in the, in the presentation that, like, even if you look at, like, 13 to 18-year-olds or something, it's still, like, kind of 15%, 20% of people are daily active users, and another 20% are weekly active users. And then the other 60% of pe- of those people in that demographic, how long you say they are not using this. So there's a sort of very wide spread of who gets it and a very wide s- which I think also maps, this is kind of a almost a separate point, maps to the sort of jagged frontier question of where does this work? Where does it not work? Can you tell where it's gonna work? Is it intuitive to know where it would work? Can you tell after it worked? Can you, can you, um, can you, can you work out for yourself what you would do with this? And all of those intersect. If you're a software developer, there's a lot of other people where, like, people are having a moment or they're not, or we- we're in, again, we're in that kind of 1997 moment of, "Okay,

  4. 9:4417:44

    The unexpected boom in professional services and consultants

    1. BE

      what is this?"

    2. LR

      Along those lines, something you've been writing a bit about is this, like, unexpected investment in professional services/consulting services/forward-deployed engineers. Uh, all the AI labs, at least the two big ones, OpenAI and Anthropic, are, like, investing in buying massive com- like, consultancies and PE firms. Talk about just what is happening there, why is, why that's happening.

    3. BE

      Well, it's funny, I was kind of groping for a joke last night when I, I wrote my newsletter and couldn't quite get to land it. But it's, you know, something like, you know, you know the joke that a, a machine learning scientist is a statistician who lives in San Francisco. And there's something in there of, like, a forward deployed engineer is, like, an Accenture outsourced software developer who lives in San Francisco or works in San Francisco. I mean, you know, joking apart, if you have any experience of professional services, like, companies do not have lots of people sitting around waiting to do a b- build a big new project or do a big new piece of analysis or build a big new setech- piece of technology or a new product or work out how they're gonna redesign their stores or, you know, work out where the stores should be or try and work out why the churn is too high. You know, all of those kinds of questions are things, reasons why you hire Bain, BCG, McKinsey on one side or Accenture, Infosys, whoever on the other, or you hire a branding agency, or you hire an arch- firm of architects or whatever. And it's always like, well, we could hire some architects, but why on earth would we wanna have 15 architects on staff when we could just go and hire an architecture firm? We just go and hire an ad agency. And so you're supposed to, like, completely reimagine all of the internal workflows of your company and work out which of them could be automated really quickly with AI. That's a project. That's a project that needs, like, five or 10 people to sit down and spend a month or two working it out, and then actually doing it is another project. Okay, so you need to plug these three vertical systems into these two horizontal systems and build a bunch of new workflows and train people to do that. Well, guess what? Who's gonna do that? Because you don't have a bunch of people sitting around not doing anything. So on the one side, this is part of the, the model of some PE firms, which is that they provide support to their portfolio companies to do stuff, and on the other side, that's why you hire, depending on what you're trying to do, you hire Bain, or you hire Accenture, or you hire publicists to help you work that out.

    4. LR

      What's really just funny about this trend is you would think AI is going... like, consultants were gonna be gone. No, we don't need a- all these people anymore. AI is gonna do their work. Instead, like, the most cutting-edge AI labs are the ones most investing in these folks. It's, it, I think it's pretty surprising.

    5. BE

      Well, one of the strands in my presentation... So I split the presentation into three sections. There's a section on capital, which is basically where is all this CapEx going and are the model labs gonna have differentiation? And then there's a section on deployment, which is basically what does it mean for the software industry. And then the third section is how does this change stuff. And one of the sort of, sort of strands I tried to pull together in the section on change is, um, what's the hard part of the job? Is the hard part of the job writing the code line by line? Is the hard part of the job, like, giving you the SKU or making the PowerPoint? Or is the hard part of the job something else? Is it the task or the job? And, you know, pulling that apart, sometimes the task is the job. Like, the classic example is, like, a, a- an elevator attendant, because I live in a building that has an attended elevator. We have a manual elevator. It's... There's no button. There's a, there's a, there's a lever and the doorman drives you to your floor. It's a vertical speed cart. Um, it's like one of those trams in San Francisco. They drive you to the store, to your floor. Um, and then those all got automated after the '50s, and now you get... And you press a button, and pressing the button is the job. So there were some things where the d- the, the button, the job was a task and the task got automated. Well, but what happens much more, and this is why people talked about, like, the Jevons paradox, is this price elasticity, because Jevons paradox is just price elasticity, applied price elasticity. If you make it cheaper to do something, what happens? Do you do the same for less money, or do you do more for the same amount of money, or do you do more for more money because you've got new ROI? And if you look at something like the history of accounting or indeed professional services, like, you know, this is a joke I made on Twitter back when it was Twitter, was like young people won't believe this, but before invest- b- before Excel, junior investment bankers worked really long hours. And now thanks to Excel, Goldman's associates all leave work at lunchtime on Fridays. It's like, well, why is that not what happened? You could make the same point in software development, you know. Before IDEs and libraries and operating systems, developers had to write all the code. Now, if you write an iPhone app, 90% of the code is written for you by Apple. Like, Apple wrote the modem driver and the graphics drivers and, you know, the file system. You don't need to write any of that. So we've got, like, a tenth as many engineers now. Well, no. And so then you kind of have to look at an industry and work out, well, which is it and what is the hard part? One of the an- the analogies that occurred to me here is to look at the history of e-commerce, which is that what Amazon does is it gets you the SKU if you know what the SKU is. If you know what SKU you want, you want that microphone stand, you know, this part number, you can go to Amazon and get it. If you don't know what microphone to get, probably shouldn't start on Amazon. Multiply that by many, many, many product categories. And so what Amazon does is get you the SKU, but knowing what SKU you want is another job. You know, the Claude code can write you the code, but what code do you want? It can make you the features, sure, but what features do you want? Who's your customer? What's the right product for that customer? How are you gonna take it to market? And long way of answering a question, why do you hire McKinsey? Are you hiring them to get a 75-slide deck? Well, narrowly, Claude Cowork will make a really, really crappy version of that. And, you know, you get all these kind of AI grifters on LinkedIn and, and Twitter and so on saying, "Hey, I made a McKinsey deck with Claude." And you look at it and you think, "Yeah, that's a bunch of dog crap." That's not what you'd get if you... From McKinsey. But even if it was, that's not what you pay them for. What you actually pay Bain to do is to go and walk all over your en- enterprise, your company and work out, "Yes, but why is it that you didn't do that? And how do the politics of this work? And what do you actually need to do? And let's go and talk to your customers and work out what they actually think as opposed to what's on the first page of Google." It's all the other stuff, and the PowerPoint is just like the task, but that's not what you hired them for. The same with, you know, Amazon versus a retailer, the same with software development. So you've got that kind of split. The an- other analogy that occurred to me here was looking at, like, the sort of class of industry that got steamrollered by the internet because they had those two things and you could split apart. So you had the physical manufacturing or physical distribution, and then you had the other, the th- the thing, what was the actual thing? Like, classic examples here would be newspapers and recorded music. So record companies, uh, do not think of themselves as being in the business of manufacturing small pieces of plastic, but that was, that was what they actually did, and when that went away, they were screwed. Um, same thing for newspapers. Newspapers did not think of themselves as like manufacturing and trucking companies. When you decouple that, then that becomes a problem. But unfa- often you kind of can't decouple that, or that wasn't really the problem, or you make that thing cheap and then all this other stuff happens as well. And so all of this is just vastly more complicated than saying, "Well, hey, you know, we're just gonna automate the accountants, or we're gonna automate the, the consultants." Um, I mean, there's, there's two charts in the presentation of the number of people employed as accountants, which went up right the way through the 20th century and has gone up again since the beginning of the 21st century. So you have adding machines and punch cards and mainframes and databases and ERP and cloud and spreadsheets and PCs, and the number of accountants keeps going up. And so why is that? Well, it's not... It must be more... It's more complicated

  5. 17:4423:17

    Why distribution is becoming the ultimate moat

    1. BE

      than automation.

    2. LR

      Even just looking at the most advanced AI companies, Anthropic, OpenAI, I just had Dan Shipper from Every on the podcast, everyone's just increasing headcount. Like, the companies you would think would be least likely to add humans are adding many, many humans. And to your point, it's really complicated. What's your just kind of gist on the job, the coming jobpocalypse, you know? Like Dario's talking about all the entry level people are no more jobs, just like-

    3. BE

      Yeah. Um, I mean, there's a narrow point here, which is that I would place... I don't like argument from authority, and I don't think the fact that you run an AI lab suddenly gives you... Or rather, uh, and, and if you're going to use argument from authority, then it should be relevant to the field. So, like, uh, I'm interested in Dario's opinions on where models are gonna go in the next 6 to 12 months. I'm not particularly interested in his opinions on theories of labor and market value and competitive, comparative advantage. Like, yeah, maybe he had a course on that at university, so did ISo I think one needs to be a little bit cautious on like what Dario says, um, and that's setting aside like the cynical view that he's, you know, he's just doing that to pump the stock, which I don't, I don't believe at all. So, you know, this kind of comes back to my point about, you know, platform shifts. Um, every time we have a new technology, um, it automates away a bunch of jobs, and then that automation, whether it's price elasticity and the enablement of the fact that they became automated, unlocks a bunch of new jobs. And so, you know, you go back to 1800, like 90% of us were peasants, and our major concern was, would like, are the crops gonna fail? Because then we'll all go hungry or worse. And so ever since then, we've been automating jobs and creating new jobs, and you can always see the job that's gonna go, gonna go away, and you don't know the new job because it doesn't exist yet, and it's like something that sounds dumb anyway, like, you know, like railway engineer. What's a railway? Um, why would that be a thing? Who would care-- Who would want to go that fast? Um, and so we've had that process over and over again. This is what any first-year economics student would tell you. Um, we've had this process over and over again since 1800, and each time you go through it, you get a bunch of frictional pain and dislocation and a bunch of people lose their jobs and a bunch of towns get hollowed out, and it's all, it all sucks. But, you know, when you come through on the other side, we're all richer and we're not worried about the crops failing anymore. And, you know, this is the process of the last 200 years. So then the question is, is there some a priori reason why this would be different to those? Because like the internet removed a bunch of jobs, PCs removed a bunch of jobs. There aren't many people working as typesetters anymore, um, or telephone operators or typists. Um, the internet removed a bunch of jobs, and generally the jobs that go away are crap jobs seen retrospectively, and the new jobs are better because, you know, GDP keeps going up. So is AI different? And so then there's kind of a couple of answers to this. One theory is, well, this is gonna be way quicker. And certainly the adoption of AI is quicker than previous technologies because-- But this is kind of because you're standing on the shoulders of giants. So like you don't need to wait for everyone to buy a piece of expensive hardware to like buy, buy a phone or a PC or wait for the telco to deploy broadband. It's already there. So of course, ChatGPT can get 900 million WeChat users because there's already 900 million people on the internet. Like in, like when Marc Andreessen launched Netscape in, what was it, '93, '94, there were like 50 to 100 million PCs on Earth. So no, you didn't have 900 million users then. But, and so the... But the point is then he didn't need to wait for like phone networks or microchips. And before that, you didn't need to wait for electricity, and you didn't need to wait for like mass production. So there's al- you're always kind of standing on the shoulders of giants. There's always like a compounding effect. So yeah, this is faster, but the internet was faster too. Um, I think the other answer to this, and this kind of comes, comes back to the professional services point, is like, you know, you talk to these doomers on Twitter and they would like act like, you know, every big company is going to buy ChatGPT tomorrow, and then in two weeks' time they'll fire all their staff, and these people are morons. And this is one of many reasons why, why the doomers were morons, but like a complete failure to understand the way the world works. And that was like the starting point why they then didn't understand anything else. You know, a typical big company, you know, enterprise software sales cycle, you'll know this better than me. Enterprise software sales cycle is like 18 months if you're lucky. You know, this is always the problem. The enterprise sales cycle is shorter than the, the, the venture-backed software funding cycle. Longer, longer rather. Longer. Like it takes you longer to get an enterprise deal than it takes you to go between wraps. And this was always the problem of, you know, particularly for, you know, sectors like aerospace or healthcare or something. So like, no, people aren't gonna-- just gonna tear out SAP and replace it with XYZ. Maybe in five, in like three, five, 10 years, yes, that whole estate will look radically different and all those jobs will have changed. But it will take, you know, two, three, four, five, 10 years and it will take time sector by sector, and it will take time for people to work out, "Oh, you could do that thing with this." And one of the companies I always remember w- that we looked at when I was at Andreessen Horowitz is a company called, um, Frame.io, which is video editing, video, video collaboration. And there's nothing there that you couldn't have done at least five years earlier and maybe 10 years earlier. And actually that's kind of a bad example because that relies on a bunch of like, well, a, a bunch of stuff like web, cutting-edge web technologies. Like if you go out and like pick, pick 10 random SaaS companies that were started the day before ChatGPT launched, how many of them could have been founded at any point in the previous 15 years? Like somebody, it took... The, the delay was somebody realizing, "Oh, we could... That problem exists inside that industry, and oh, this is the way that we would solve it." It didn't all happen the day after Google Docs. It took like 10, 15, 20 years for people to invent all that stuff and work out that you could do that with this. And so all of that is like the way of saying, "Well, yes, it is gonna be quick," but actually no, it will kind of take a while for people to work out how to completely change

  6. 23:1727:33

    The coming job transformation: what’s real vs. panic

    1. BE

      how their business works.

    2. LR

      Your view is so comforting because [chuckles] it's, you know, basically it's like, okay, this is a huge deal, but we've been through many transformations before and it's gonna be okay.

    3. BE

      Well, I have a slide towards the end of the presentation which... And I know the, the, the title is something like, you know, "This Is Going to Be Completely Different From Everything Else, Just Like Everything Else." And then the next slide is an IBM ad from the '50s, which has got this sea of white men holding up with, in white shirts and ties, all holding up flood rules. And the, the, the ad, it said that the slogan on the title of the ad is, it's an IBM ad. It says, "An IBM electronic calculator..." This is before it was called a computer. It's an electronic calculator. It's the size of a fridge. "... is like having 150 extra engineers."

    4. LR

      [chuckles]

    5. BE

      Like how many people listening to this comfort list like their company slogan is basically we'll give you 150 extra engineers. I mean, isn't that like the whole pitch of Claude Code? Like 150 extra engineers for free or not free. For, it's like a lot of money. Um, so, and yeah, that's what it gave you. And so yes, we keep going through this over and over and over again just to kind of make that tangible. I mean, obviously we couldn't be doing this with the, without the internet. So there's a slide in my presentation which is, we could maybe talk about, but it's a slide or chart showing how many products are stocked in supermarkets in America since the '50s. And the point of the slide is to say that barcodes allowed supermarkets to stock way more stuff because they could keep track of it.But making that chart, I had to know there was a thing called the Food Marketing Institute, and I had to have found out that they published a number for how many SKUs there were in supermarkets every year. And then I had to realize they've been around since the '50s, and if I, like, dug long enough, I might be able to make a whole time series and I could make a whole chart. Now imagine doing that in 1994. First of all, you would have no idea that exists. You really need to go and find a library where they public-- where they... And that they publish that number and that the number's in that report. You'd have no idea. Then you'd need to find a library that had them. So you're gonna spend, like, three days on the phone and spend, like, $50 on, like, long-distance phone calls to find a library that has these. Or maybe you call the Food Marketing Institute and they say, "Yeah, sure. If you buy a, you know, uh... We'll sell them to you for $500 each." So then, you know, you're gonna get on a tr- maybe you live in New York or, like, somewhere that has this and you... Two weeks later you've got the chart and you look at it and then the other side of this is the life of an analyst is you spend all day making a chart and you look at it and go, "Oh, that's not very interesting." So you've spent two weeks to make the chart and then you look at it and go, "Yeah, I'm not gonna use that."

    6. LR

      [laughs]

    7. BE

      And for me this was, like, two hours in Google. And so we, like, we, we, like, forget how big a deal the internet was. That's a long way of saying it but, like, we forget we've had these absolutely enormous changes and then we don't see it, 'cause it's like that's the world as the world's always been.

    8. LR

      What's different potentially this time just to... [chuckles] even though your quote is it's different, this is everything's gonna change, like, just like, literally like last time. Like, the big difference obviously is, uh, AGI might emerge and superintelligence where that is, uh... Could, you know, does the work of humans, can do a lot of this stuff for us, can actually replace jobs. Just, like, thoughts on that element of this transformation we're going through.

    9. BE

      I don't know. This is one of the, the, the ways I've struggled to write about AI is, like, certainly in like 2023, early '24, like, all the questions were questions you could have asked in, like, December 2022. Like, the questions didn't really change and the strategies didn't really change. And I think the AGI question is kind of the same. Um, I mean, the thing that the, the, the observation one can make, like, you know, we have no theory of what human intelligence is, we have no theory of why these models work so well, we have no theory of how much better they will get, so we're all just kind of vibes forecasting as to what will happen. Um, and then you can have, like, the 2:00 AM, you know, doped out philosophy students talking about, "Hey man, like, is this consciousness? Maybe we aren't conscious either, we just think we are." Like, yeah great. Thank you. I think the one thing one can observe today is... So we have no idea. We don't know. We can guess but we don't really know how the... where this is gonna end up. What I think you can say today is that there's a lot of kind of redefinition of terms. So I think a quote I used in my presentation, uh, late last year was, there's an AI scientist called Larry Tesler who said AI is whatever machines can't do yet because once machines can do it people say, "Well, that's just software."

  7. 27:3338:11

    Why AGI definitions keep shifting

    1. BE

      And so certainly, I mean, I, I did a, do a poll on, on social media every now and then asking, "Is machine learning still AI?" 'Cause I've certainly heard people say, "Oh, that's not AI, that's just image recognition. That's not AI, that's just sentiment analysis." So AI is a bit like the word technology. It's like if it's new then it's technology but in the '60s airliners, jet airliners were technology, now a jet airliner isn't tech. And so there's a sort of sense of AI is like a moving target, is whatever just started working and I think the m- the point here is now clearly you can see people redefining AGI to mean the stuff that works now. So is AGI... What's the definition now? It's like it can do a certain percentage of economically valuable work. Well, that's a very different thing to it has a soul and it's fucking alive. Um, 'cause a database can do that. Like, you know, an IBM mainframe in 1975 could do a meaningful percentage of economically valuable work that was previously done by people. And it turned out there was a whole bunch of other stuff that it couldn't do that we didn't do then and we didn't know existed. So there's a lot of, like, kind of creative redefinition here. Superintelligence, I'm not sure, is superintelligence more than AGI or less than AGI? 'Cause last year I thought superintelligence was, like, really good but not as good, not actual AGI and now it's like, oh no, no, we've already got AGI but superintelligence, that's really hard. So all these terms are like what are... I don't even... What even... It's funny I was, I was having an argument on Hacking News this morning. We remember the id- you remember the arg- which is never, never a good use of time, but you, you remember the argument of, like, you know, people would argue about whether crypto is blockchain or whether blockchain is crypto? There isn't a right answer to that let's just be sure. You know, it's important to understand what you mean when you say that but there isn't, like, a correct answer to this. Are we gonna get to something that has human level intelligence? I... We don't know. I don't think we have any way of answering that question. Maybe. Maybe not. You can, uh, make arguments either way. Meantime does, does it mean... In the meanwhile we've got this thing that's clearly kind of a, you know, completely transformed your technology and maybe the serious point here is you, like, you don't have to believe even if, like, the models stopped getting better tomorrow. If this is it and we hit a brick wall tomorrow, this is an incredibly useful technology that's going to change the world and get well that over the next 10 years. So you don't have to believe in any of that stuff to believe that this is a giant deal.

    2. LR

      Something that's definitely changed. I had, um, your former boss Marc Andreessen on the podcast and we didn't actually talk about this during the conversation and he brought it up before we started recording and I never got to it, is he had this insight that the, the opportunity set for companies now is so much larger. We used to have no trillion dollar companies now we have... We're gonna have dozens of trillion dollar companies. Just like the size companies can grow to is going up so much and valuations also go up along with that and his point is just people haven't really grokked just how large companies can get now. Like, everyone's hitting 100 million ARR in like five mo- five months, six months. Just thoughts on that.

    3. BE

      Yeah. I mean this was his whole software is eating the world thesis from, you know, 15 years ago whenever it was. Yeah, you know, the TAM it gets progressively bigger because you can address larger and larger parts of the economy and so, you know, if you think about the kind of the classic platform shift framing that, you know, mainframes are... I think peak mainframe install base was something like 70,000, 80,000 units.I mean, slightly fuzzy term. What exactly is a mainframe and what's the differ-- at what point does it become two mainframes as one? But something like that, that order of magnitude. And then when the internet kicks off, there are, as I said, 50 to 100 million PCs on Earth, maybe. Today, there are something over a billion, one to one and a half billion, but obviously a lot of those are corporate. It's like 700, 800 million consumer PCs in the world. There's about five and a half, six billion mobile smartphones in the world, which is... And which is why you can have 900 million weekly active users on ChatGPT.

    4. SP

      Mm-hmm.

    5. BE

      And so there was this narrative like five years ago, right? Well, we've run out of people, so like this, the next thing can't be an order of magnitude bigger. Um, which was true up to a point, but that was like the wrong model because clearly what's happening now is you're moving in another direction, is you're just, you know, branching out and automating big, big new swathes of the economy. Um, now the, you know, the back to your job point, you know, you could argue, well, we're just gonna replace all the people with AI and like all the money will go to, to, to, to Sam Altman and, you know, Mark, Mark can buy himself another Gulfstream. I think the... Add to the fleet. I think the kind of the, the, the other answer is, you know, it's back to the lump of labor fallacy and, you know, the, the last 200 years that, you know, each of these technologies removes a bunch of jobs, creates a bunch of new jobs, creates a bunch of new value, unlocks prosperity for all of us, and that's painful as you go through it, but it, it always creates more value. And so here you could, you could certainly make an analog to, you know, the useful analog to the electricity industry is just saying how that electricity became part of absolutely everything. And software has been kind of slowly working its way out. You know, the analog here would be electricity in factories, and then electricity sort of slowly spreads out. And so that would be the point again, that, you know, it slowly spreads out to do more and more things. Um, and so, you know, more and more value and a bigger, bigger and bigger, um, contribution to the economy. Um, it also, of course, disappears, disappears inside things. And, you know, the other side, you know, this is the, the point of my capital section in the presentation is, um, you know, there's this quote from Sam Altman where he said, you know, "We're gonna be selling electricity... Uh, we're gonna be selling AI, AI intelligence on a meter like water or electricity." And you look at this and think, you know, "My dear sweet child, you need me to explain the margin structure of the utility industry to you." Um, because guess what? When you watch television, the TV company isn't paying a percentage of your monthly bill to the electricity company. You know, when you wash your clothes, Bosch isn't paying a percentage of the price of the washing machine. Um, and you know, clearly this is like the much more kind of specific tactical question at the moment is, do we even end up with three giant models or does big, does it become hundreds of models and open models and local models and so on? And even if we do end up with, you know, say, pick a number, three to six to 10 giant foundation models that cost hundreds of billions of dollars a year, um, fine, do they get all the value from that? Now, I started my career as a telecoms analyst, and so, you know, still pay attention to it a bit. Global mobile industry has a revenue of about a trillion dollars a year, maybe a bit more now, and it spends about $200 billion a year on CapEx every year. Total telecoms is about 300. Mobile is about 200. It's about 15 to 20% of revenue every year. And if you look at a chart of mobile data consumption, it's an exponential curve, like perfect curve going straight up. And at the number now, I think it's about, you know, 1,500 to 2,000 times what it was in 2010 globally. And the stocks have gone nowhere in 25 years because it's an ex-growth, low margin ut- commodity utility, where they're selling this incri- this objectively amazing piece of global technology infrastructure that has enormous complexity and enormous sophistication, but all the cool stuff is made by you. It's made by the people listening to this podcast. It's made by somebody else. This was that like kind of pivotal moment where the telcos thought that they would do all the stuff that you did on your iPhone. And not only do they not do it, but Apple doesn't do it either. It's all further up the stack. [lips smack] Um, and so this is, you know, the kind of the elemental question right now around foundation models is, does the model do the whole thing? Can you... Do you just go to the chatbot and get the chatbot to do the whole thing? Can the model companies keep building these like Claude for X, Claude for Y things, which to me look very much like what you see if you hit File, New in Excel. It's like the templates, but like all of those are actually billion-dollar companies as well. And if not, no, does it all have to be apps, quote unquote, whatever app means? And if it all has to be apps, who builds those? Well, they can't all get built by the model labs, just as they didn't all get built by Microsoft. And so if they're all built by other companies, does the models, foundation models have leverage up the stack the way Windows did? Or is this more like AWS, where like if you're a, I don't know, an engineering company or a law firm buying a piece of software, you don't care which cloud it runs on, and you don't have to like standardize on AWS because that's where all the software is, and like the developers all standardize on AWS because all the customers use AWS. That's not how it works. That's how Windows OS works, but that's not how, how cloud works. And so it does sort of seem to me that like if, if the chatbot isn't the UX and it needs to be apps, and the model companies aren't gonna build that, and the models themselves are basically commodities as, at least as you can see them as users, then why would the model companies have pricing power? And wouldn't all the value be further up the stack? Aren't you basically... Have you got like three to six companies selling a commodity at marginal cost? Now, obviously, the semi-analyst guys are like, "No, no, no, no, no, there's gonna be infinite pricing power forever." I'm sorry, I'm exaggerating. But like, I think you have to... Really important to kind of draw a distinction between where are we now, where you have radical price disequilibrium and, you know, you've got these, you know, what's the guy? The OpenClaw guy spent $1.5 million on tokens last, last month. Um, but that's like somebody getting like a 50 grand mobile data bill in 2010. [lips smack] Um, that's temporary. What is the steady state equilibrium point where all of these lines, the lines on the chart kind of get lined up and we don't have this kind of weird, crazy stuff going on?And then will you have pricing power, or have you got like three or four or five companies kind of all selling the same thing? And so then you should have a pricing, price dis- you should have lower pricing and lower margins, and the value should go up stack.

    6. LR

      I am so excited to tell you about this season's supporting sponsor, Vanta. Vanta helps over 15,000 companies like Cursor, Ramp, Duolingo, Snowflake, and Atlassian earn and prove trust with their customers. Teams are building and shipping products faster than ever, thanks to AI. But as a result, the amount of risk being introduced into your product and your business is higher than it's ever been. Every security leader that I talk to is feeling the increasing weight of protecting their organization, their business, and not to mention their customer data. Because things are moving so fast, they are constantly reacting, having to guess at priorities, and having to make do with outdated solutions. Vanta automates compliance and risk management with over 35 security and privacy frameworks, including SOC 2, ISO 27001, and HIPAA. This helps companies get compliant fast and stay compliant. More than ever before, trust has the power to make or break your business. Learn more at vanta.com/lenny. And as a listener of this podcast, you get $1,000 off Vanta. That's vanta.com/lenny.

  8. 38:1142:55

    Where value will accrue: models vs. applications

    1. LR

      A really interesting takeaway here is that your sense is over time, the foundational model companies, Anthropic, OpenAI, others will... Their margins will get squeezed. They will not be as successful as they are today, and the bigger opportunity is in the application layer, the people building on the models, the wrappers.

    2. BE

      Yeah. I mean, this is a very sort of deterministic thesis, which is, uh, the models companies, crucially, what I said is the models don't seem to have network effects. So there doesn't seem to be a winner-takes-all effect where one of these will run away ahead of the others. So you should have competition indefinitely. If you have competition indefinitely, you don't have co- you don't have differentia- primary, like, really radical differentiation in what the product is, then why would you have pricing power? And meanwhile, if the, if you need to have thousands of applications that are all different, built by different people, those can't all be built by the model people. So it should end up looking more like cloud than it looks like Windows. Now, that may be completely wrong, and, you know, one of the points I make in the presentation is, like, imagine having this conversation about the internet in 1997. Like, what would you have got right? And, or indeed having it about mobile in 2000. You know, you would not, you know, most- you would have missed almost all of it. You certainly would have said that, like, a has-been PC company from Cupertino would win the whole thing, and no one would have said that. Um, and a search company with, like, a weird logo. Like, search? What's that got to do with mobile? Like, no, forget it. You're an idiot. So I... We should presume we don't know. But they're all, you know, these sort of basic building blocks of like, well, but why would they have pricing power? Um, I don't know. I had a... When I was a baby analyst in, like, '99, we went to see a dot-com company in the UK that was trying to do online, selling computer parts, components online. Like... And, um, like, they had this whole model and this whole story and the brand and, like, the whole thing, and we went up to see them. And we're on the train back from Birmingham, and this, this sort of, sort of senior banker called David Tate, um, we're all sitting talking about it, and Tatey says, "It's a low-margin reseller, one-time sales." Like, you can say dot-com all you like, it's a low-margin reseller with... And I think that's the, kind of the crux of this is they're, they're undifferentiated commodity infrastructure providers. There's a lot of science to it, but there's a lot of science in mobile. I mean, what do you pay for a flat panel screen? Like, there's, there's no real prices in flat panel screens. They're still a low-margin commodity. I look forward to be proving wrong, proven wrong, but, like, hey, that's, that's what it looks like now.

    3. LR

      This is great. So I know you, I know you're not an investor. I know you didn't actually do investing at a16z, even though you work for a16z.

    4. BE

      Partner.

    5. LR

      Partner. [chuckles] Just sit around and pontificate. Partner. Would you... Are there companies you would invest in? Like, if there are a couple companies you'd invest in now, is, is there some on that list or categories even?

    6. BE

      You know, I, I, I mentioned briefly that I was an analyst. I was a, I was a sell-side equity analyst. I was not a very good sell-side equity analyst, but partly because I was not interested in talking to clients, partly because I was not interested in share prices, which would seem to be, like, a disqualification to be an equity analyst. Um, and, you know, I don't... You know, there's, there's, there's, like, a huge difference between being right and being early, and there's a huge difference between the right company and the right price. Now, you know, deterministically, you can look across the market and say, "Well," you know, it's like, you know, like, the bell curve IQ meme, and, you know, the guy with 50 and the guy with 200 are both saying, like, "Jeff Bezos, smart guy. I'd buy stock." And, you know, [chuckles] you can certainly, like, overthink all of this. And, you know, you can look at, you know, Google, Apple, Facebook, Amazon and say, "Hard to see a problem for them really with all of this." You know, you can certainly see questions for all of them, um, and one of them may drop the ball, but it's worth, you know, kind of remembering what happened in mobile. You know, the internet was this, like, a big obvious platform shift. The funny thing about mobile is that some companies missed it completely, and for some of them it really didn't change anything. So for, for Google, it didn't change anything. For Meta, this was great. Like, this is a way better way to do social than on PC because, like, you've got a camera and notifications, and it's on your phone all the time with you. Um, Amazon, like, what does this change? Like, doesn't change anything. I mean, I'm, I'm, I'm massively oversimplifying here, but the point is, now meanwhile, Yahoo Mail fails to make the jump. There are companies that were already kind of dying that failed to make the jump. Maybe eBay, you kind of... You can argue about individual names. The point is that, like, we went through that shift, and it didn't change anything for half the industry, um, half the internet industry. And so I think, you know, that you could kind of propose a little bit of that here. Um, it's what, what Steven Sinofsky at, at a16z, he used to run Windows, would, would always say is, you know, "Incumbents always try and make the new thing a feature." And, and sometimes

  9. 42:5548:12

    Distribution wars: Google, Meta, Apple, and OpenAI

    1. BE

      they're right. Sometimes it's a feature.

    2. LR

      Actually, along those lines, something I wanted to get your take onThere's this thread that's been happening across a bunch of guests, which is around distribution becoming a bigger and bigger moat because as software is easier to build, everyone's launching products, uh, everyone's trying to compete for attention. It's getting harder and har... It's always been hard to get people's attention, but it's just, like, the noise in the market is just going up like crazy. And to me, that tells me distribution is becoming a more and more, uh, valuable, uh, skill and asset, and it also tells me incumbents are gonna be a lot more successful because they already have distribution versus a startup that's trying to break through.

    3. BE

      Yeah. I mean, there's like a version of, you know, the Drake meme of like, he says, "I don't like that. I do like this." It's like-

    4. LR

      Yeah

    5. BE

      ... you know, I don't like thin GPT wrappers. I do like harnesses. [laughs] So yeah, I, I did, I did spend some time talking about this in the presentation I did at the end of last year, that if the product is a commodity, then distribution is what matters. And you know, so I wrote a thing about, about ChatGPT earlier this year, OpenAI earlier this year, like how do they compete? Well, it's, it's, you know, the, the, there's an obvious comparison here that a lot of people made is with web browsers. That fundamentally web browser... And you know, there's a distinction here I think between the web browser as product and the web browser rendering engine, and the rendering engine can be better or worse. But the browser product is just like a really thin wrapper for a rendering engine. Like, there's an input box and an output box, and like what else? And which is like, what's the last innovation in browser design? Like tab browsing, which was 20 years ago, 25 years ago, 'cause like... And every now and then somebody tries to innovate in browser design and it never works, 'cause like you found the platonic ideal. It's like trying to innovate in smartphone design. Like, you know, it's a, you know, it's a gl- it's a glass rectangle. Like there's nothing you can do there. And so what happened, of course, is that Microsoft uses distribution to break their-- to break in. Um, then of course what also happens is, setting aside the lawsuit, is that it turns out that winning browsers doesn't matter anyway because the value is further up stack. And so Microsoft wins browsers for like five, six years and it doesn't matter and it doesn't get them anything. Um, and so clearly what's happening now is that Google is using distribution to drive, um, to drive Gemini and like what's the difference between Gemini and Claude? You know, and, and, and like if you're, you know, if you're using this stuff all day then you know, but like normal person there's no difference. And the same thing with Meta. Like if you look at survey data on which, which LLMs people use even before like the new sh- new thing, like the Llama thing, like Meta was like be- behind... It was up there between ChatGPT and Gemini, which if you're in tech you-- people have completely written it off, but it was like they've sprayed it on every service, surface. It wasn't that bad. It was fine. So distribution of an adequate product when the field is basically commodity distribution on brand become a big deal. You can see that in... You could see that in the like the strategy, OpenAI strategy late last year was, you know, people called it, you know, everything everywhere yesterday. Um, and so they were just kind of trying everything to kind of work out how they would get that. Like, how can we get a flywheel? How can we get distribution? How can we get something that sticks? How can we get people some- something that people uses before Google and Meta and Amazon spray it everywhere and get everybody using that one, and then you've got like this inertia and the power of the default and like why would you switch? Obviously Meta, Apple is kind of the last penny to drop here. Um, there was this sort of slightly weird opening ideal and now there's even weirder story that OpenAI want to sue Apple. Like, like good luck with that. Um, the funny thing about the Apple deal thing is, just not to go off on a tangent, but like if you go back and watch the WWDC from 2024, like the whole second half of it is Apple intelligence. That was like the most compelling vision of a personal AI assistant I've still... Still the most compelling vision I've seen. They then couldn't ship it, but then neither has anybody else. And you watch it again and you're like, "Okay, so you want tool using agentic on device AI with no prompt injection and no hallucinations and a completely standardized U- API system across 10,000 apps with intents that all work perfectly" and like, like, well, that sounds good to me, but like I'm not surprised they couldn't ship it. But yeah, nobody, nobody else has shipped that. But like that vision was great. You know, I really wanna see what happens at WWDC in a month. Like do they actually ship that now powered by Gemini? But that's also another point is like, okay, there's gonna be the, the AI intelligence, whatever we call it, Gemini intelligence on Android, and then there's going to be Apple intelligence on iOS which is powered by Gemini, but it's not gonna be the same set of products. The, the model's just like the dumb thing underneath the... Funny way of putting it, the dumb thing underneath that powers the feature. The model's the commodity that powers different decisions about what the feature should be and what different distribution. And in that situation, of course, um, Apple's got like a billion devices that can run this on edge and, and Google has this wonderful marketing slogan, "Coming soon to our most powerful devices," meaning it won't work on most Androids. So again, distribution questions.

    6. LR

      Interesting. Google I/O's next week, so we'll see what they launch, uh-

    7. BE

      Oh, no, they launched-

    8. LR

      ... tomorrow or the day

    9. BE

      ... they launched App- they launched a, um, Android... It just shows how, how, how like how-

    10. LR

      Oh, it was, module was it today? Yeah. [laughs]

    11. BE

      Well, no, they launched it last week. I mean, it, which is-

    12. LR

      Oh, okay

    13. BE

      ... it's like it just illustrates how much we've, we've stopped paying attention to Android and iPh- and iPhone.

    14. LR

      Mm-hmm.

    15. BE

      Like Google did had a whole big thing last week. They've got... They're replacing Chromebooks with Google Books, and they've got a new Android intelligence powered by Gemini that will roll out to like the five people who bought a Pixel phone [laughs] who don't work for Google.

    16. LR

      Yeah.

  10. 48:1253:11

    The anti-AI sentiment and backlash

    1. LR

      Um, I wanna go in a slightly different direction. Something that I'm curious if you're following is just the anti-AI sentiment that is, feels like is growing. Feels like if you've seen these surveys, AI is like less popular than ice. People are trying to stop data centers from being built. I think Eric Schmidt just did a commencement speech and people were booing him every time he mentioned AI. Just like where do you think, what do you think is going on? Where do you think this ho- this goes over time?

    2. BE

      It's interesting, and it's a big sort of fuzzy mass of different stuff, I think. There is like tangible, like my electricity bill went up, which applies actually in a very small number of places, objectively, but it did, and this is a question. The water thing is weird because it's just like completely fake. Um, and I should qualify, explain what I mean here. Um, data centers use water for cooling. It's mostly closed loop.But the number of data centers relative to the total amount of water use in the USA is tiny. I actually went and dug into this at the Livermore Lab. Done-- They did a study at the end of 2024 where they estimated US data center water consumption, and it came out at about 0.017% of US water consumption. Now, obviously, if you live in a small town and you've got one well, and, like, they capped the well and gave all the water to the data center, then you're really pissed off. But, like, that's, like, that's a planning problem. That's not a data center problem. You know, in generality, yes, this is, you know, data centers are, what, like 5% of US energy and might grow at 1% a year for the next five years, f- one percentage point a year. But the water stuff is just nonsense. And then you get into more tangible, like, well, what is happening with this? Is it taking jobs away? Where you can watch a bunch of three-hour podcasts of economic, economists talking to each o- talking to each other, and the main answer is, we really don't know yet. There's a bunch of charts that kind of say yes and a bunch of charts that kind of say no, and clearly there's a slowdown in employment of, you know, 18 to 24-year-olds, but that seems to be the same for people who do and don't have degrees, and the same for people in fields that are... look exposed to AI and fields that don't look exposed to AI. So there's a lot of, like, econometric argument about this. And, and I mean, there's a, there's a broader point here, in fact, which is a different point here, that, like, we have very little data on what's going on in AI from anyone. The model labs don't tell us anything. Like, they don't give us any meaningful usage information. They give us these weird studies of, like, people, how many people use this for this and that. They don't give us a daily active use number. We do not have a daily active user number for, for ChatGPT. It's crazy. Um, and all the data comes from academic economists trying to back stuff out of BLS surveys or consultancies and r- and, and marketing agencies, like spending a whole bunch of money to survey 20,000 people and saying, "What are you doing with this stuff?" Like, we don't have, like, good data on what's going on and how many people are really using this. But, but, but to the employment question, hence, like, there's a lot of people, like, looking through all the stuff that the US Census collects and trying to work out, well, where can we see this? Can we see productivity? Like, what can we see? And the answer right now, I think, is, like, there's no clear consensus that we're seeing an impact on jobs. But of course, politically, that doesn't matter. Like, if you're, if you're a student and you can't get a job, and that clearly is an issue, whether it's because of AI or whether it's because of Trump and tariffs is a different question. Um, then you get, like, like, kind of niche things like, you know, people who draw book covers for, um, young adult romance novels are very upset that now you can get a picture of a naked woman on the back of a dragon flying through, over a volcano, um, without paying them. So there's, there's... I'm, I'm sorry, I'm being deliberately unkind, but there's a little... You know, there's a, there's a... And, you know, people, particularly, like, novelists, people who write e-books, uh, there's a huge culture war over whether it's okay to use AI. There's this whole sort of AI slop question and, you know, you saw the number that, like, 30, 40% of new podcasts are generated by AI. So there's a lot of... There's a big fuzzy mass of questions. Some of this, I think, is, is a little bit like the backlash we had around social, but much more compressed. And like social, some of the backlash around social was true, and some of it was sort of true, and some of it wasn't. You know, always, like, exemplified in the whole, like, Facebook sells your data thing, which is just, A, not true, and B, the people who believe it are absolutely adamant that of course it's true and you're, you're obviously a lunatic for suggesting otherwise. You know, it's like the line from, from Jonathan Swift that you can't reason somebody out of an idea they weren't reasoned into. Um, so you get this kind of wide... It was a long way of answering, answering your question, but you've got this kind of wide kind of spread of ideas, just as you kind of did with social. There's like 20 different things, some of which are really real and some of which are really not real, and a lot of which are kind of a fuzzy mess in the middle. All of which means that, that meanwhile, you've got Trump saying he wants a new executive order on d- on dangerous models, which I actually don't think is, is the thing that drives the backlash. You know, the worrying about myth or cyber, I don't feel like that's, you know, a Main Street America conversation. But that's the thing that got Trump

  11. 53:1158:27

    How to raise kids in an AI future

    1. BE

      interested in this stuff again.

    2. LR

      Let me go kind of in a tangential direction. Something that I, I like to ask fo- ask folks that have kids that come on the podcast, especially people that are thinking so deeply about where things are going. Knowing what you know about just where the world is heading, what AI is gonna do to the future, how are you changing the way you raise your kids? Just what are you teaching them differently potentially that might help them in the future?

    3. BE

      I don't know. I think there's a curve here in that if you've got kids who are going onto the job market in the next year or two, then everything is up in the air and no one knows how, knows how this is gonna work. If you've got kids who are going onto the job market in, like, five years, then who knows? Um, but stuff will have settled down a lot by then in pr- probably unpredictable ways. So I could be a mu- a lot more worried if I had a 21-year-old. You know, I don't. I've got, you know, a kid in his sort of early teens. So it's a diff- those, those questions vary. Then you've got a lot of the questions that were the same before ChatGPT around, you know, the collapse of gatekeepers, the, you know, you know, should you really believe what that influencer on TikTok says? And, you know, where exactly are you getting your understanding of what's going on in Israel? And all of those kinds of social mediary, internety, media consumption kinds of questions. Um, I don't know. There are people who are, like, super, super intentional about, you know, every minute of their child's life. Um, I'm not. I kind of recall, you know, the George Carlin line, you know, that anyone who drives faster than you is a maniac, and anyone, anyone who drives slower is an idiot, and that certainly applies to parenting. Um, so I'm, you know, like everybody thinks they're somewhere in the middle. But, you know, I don't have, you know, a, a deeply systematic and widespread and coherent, like, plan for this is what my child is going to be doing in three, six, 12, 18 months' time. Um, I'd, I'd settle for him not breaking his Chromebook again. [chuckles]

    4. LR

      I like that your just general vibe is, "It's gonna be okay, guys. It's gonna be okay."

    5. BE

      Yeah. I don't know if you s- I think if you, you know, maybe this is because I'm British and we haven't had political violence in 500 years, and, um, I think, you know, maybe if I came from Iran, I'd have a different attitude to, to being calm about the future. Um, I think there's a layer of like, yes, this will change a bunch of stuff and we'll need to worry about it, but that's kind of a constant. We've always had that. I remember in the whole wave of, um, the panic around social media, I dug up... So a whole bunch of books in the late '70s about databases. There was a whole panic about databases, and again, half of it was true. Like, um, you know, if everybody's like police records and arrest re- or if all police records and all government records are online, then that's different. If you think about, for example, the deep news, deepfake news issue, for example, there's like a dumb reaction to this, which is to say, um, "Haven't you heard of Photoshop?"

    6. LR

      [chuckles]

    7. BE

      Which is true, but a 15-year-old kid couldn't use Photoshop to make hardcore pornographic nudes of every girl in their high school and send them to the whole school in one afternoon.

    8. LR

      And turn them into video.

    9. BE

      Exactly. Even more. Yeah, even more. And now they can. So, like, that is different. It's kind of like, you know, the challenge of social, you know, the thing people would say in the '90s is, "It's great. You can be, you know, the only gay kid in your village and you can find other gay people and you can find your tribe." And guess what? It turned out you could also be the only Nazi in your village or the only pedophile in your village or the only, you know, somebody who wanted to look at child porn and like, yeah, now you can find the other people who like looking at child porn and they'll tell you it's great. So, oops. Um, we connected everybody and unfortunately that meant we connected all the bad people and all of our own worst instincts and every problem in society. And so that will happen again with AI. You know, the, we can... Deepfake news are like the obvious thing we can see now. There will be a whole bunch more of this stuff. Um, but there's also, and you know, something a kind of technical audience should know about. Have, do you, do you know about the post office scandal in the UK?

    10. LR

      Nope.

    11. BE

      Okay. So sidebar here. So in the UK, post offices are mostly franchises run by small business people, so they're run by like pharmacies classically. T- t- very often Indian b- Indian immigrants, second generation Indian people. Um, and the post office, like 15 years ago, rolled out a new com- point-of-sale computer system. So they have a separate counter in the back that's the post office. And so the post office rolled out this new computer system built by them Fujit- by Fu- Fujitsu that had a bunch of bugs in it that showed shortfalls in cash. And the post office looks at this and says, "Aha, we knew these people were stealing from us." Hundreds of people go to prison, bunch of suicides, bunch of bankruptcies, people lose their homes. Meanwhile, people from the post office and people from Fujitsu are going to court and swearing there's no bugs in the system and nobody else has had this problem. This is 1970s technology. That's really the point, that every wave of technology comes with ways that you can ruin people's lives, either deliberately or by accident. This is... The whole thing of Chinese mass surveillance is deliberate. This is maybe people should go to prison, maybe not, but like we have this with every technology. We have a bunch of ways that you can ruin people's lives, and you have to be conscious of that and also kind of not

  12. 58:2759:20

    What jobs to steer toward or away from

    1. BE

      panic about it.

    2. LR

      So maybe following that thread and coming back to the kids thing and the jobs thing. Are there, is there like a job you are steering your kid away from? And is there a job you kind of think you wanna steer them towards?

    3. BE

      I don't know about that. It's, it's, it's probably a little bit early yet. He's not quite-

    4. LR

      Mm-hmm

    5. BE

      ... at the, like, I want to be a fireman stage. Um, but-

    6. LR

      [chuckles] That might be a great job.

    7. BE

      Um, yeah. And certainly, you know, if I look at my career, you know, I started as an equity analyst, and then I went and worked in industry, and then I was a consultant. Like, you know, the, the days when you kind of knew what your career would g- was going to be are over. You know, there were certainly some people where, like, you wanna be an architect, you wanna be a software engineer, you know, you wanna be X or Y. I don't know. I think, you know, the only, the only kind of thinking I have here is that you have... Like, you slowly work out there's a bunch of skills that you have and there's a bunch of, like, jobs that make, that makes you good at, and then there's a bunch of stuff that people will pay you for, and you wanna get at least two of

  13. 59:201:06:25

    The question nobody’s asking about AI

    1. BE

      those, and preferably all three.

    2. LR

      Okay. So zooming out a little bit, let me ask you a, a meta question. What's a question about AI that you think nobody's asking y- yet or not enough people are asking that we should be asking ourselves?

    3. BE

      Sure. I mean, we talked about like value capture. Like obviously this is a whole... Everyone is, is, is asking like, you know... I'm not sure how many people are asking whether model labs have pricing power. I think a lot of people are just presuming that the situation today will continue or that of course they will. So I think that's maybe a question that, that not enough people ask. I think the question I pose towards the end of my presentation, which we talked about earlier, is like what's the task and what's job or what is just the thing that becomes a button or make the SKU versus what are people actually hiring you for, is like kind of a useful way of thinking about this. And clearly there are gonna be some jobs where, no, that is just a task and that job gets automated away. But there's a bunch where that kind of isn't the question. The way I actually pull that together at the end of the deck was a chart of global recorded music revenue, which as you may know, is kind of a U-shaped curve more or less. And so it's dropped by about half from 2000 to 2015 or so, and since then has come back about to about 75% of the peak, um, adjusted for inflation. And the way that I look at this is to s- and that's driven by streaming. And I kind of looked at this and said, "Well, the first half of this chart is saying what happens if I don't have to pay $15 to get a CD to get that track?" And the second half of the chart is saying, "What happens if $15 a month gets you all the music that there is?" So it's kind of a completely different sort of question and you could, you know, that's a way that you could look at Uber or the way you could look at, at, at Airbnb, all these kinds of companies. Is it to begin with you do the old thing but more? With every new technology you do the old thing but more of it on the new place. So, you know, you put Flickr on mobile, you print out your emails, and then you make new things that are only possible with the new thing. And then maybe you go a bit further and you kind of completely redefine the question and you make something that isn't that at all.You know, Spotify is not an online music store. It's something else. And right now, you know those questions, you don't even know what the question is after it's been asked and you've built a billion-dollar thing that lots of people use, because like obviously Spotify looked crazy and Uber looked crazy and Airbnb looked crazy. But that's the sort of, I think, the, the way to get at what this means is you have to get past, "We do the old stuff, but more," and you have to get to, what do you do that's different that's because of this? What does this change? What wasn't possible before? What gets unlocked as opposed to just doing the old thing but more of it?

    4. LR

      Yeah. Just to support this kind of general theme you have of it's like we don't know what is going to happen, like this is unprecedented. If you, if you were to zoom out like a few years ago, maybe three years ago, four years ago, the last profession you think would be automated is engineering and coding. It's like that feels like the hardest thing that's like we're gonna need people to build these things. Now it's like the most transformed role of any role. Like you went from writing all your code to 0% of your code is AI.

    5. BE

      It's almost like you didn't realize, you didn't realize it was boring manual labor that could be automated. You thought it was something else. It's funny, I mean, I, I was looking at this, this whole... There's a sort of US government called Own... data set called O*NET or something like that, which tries to kind of analyze every single job and then people try and kind of score it and they try and say, "Well, you know, this p- profession is X or Y percent exposed to AI, and AI can do Z percent of it today." I think this is just the most ridiculous bunch of deluded horseshit, and there's two reasons for this. The first reason is that this is like, ironically, this is the logical systems problem, the expert systems problem. The problem with expert systems is like for anyone who doesn't know, like you try to recognize a picture of a cat and so you start building up logical steps. So you'd make an H detector and then you make a fur detector and you make an eye detector and you make an ear detector, and 15 years later you've got 700 steps and it doesn't work. Um, and this is what happens when you try and look at a profession and sort of break it down by which bits can be automated and which can't. You can't describe a profession like that, or at any rate we can't. You can't kind of look at a senior partner at a law firm and say, "Well, 17% of their work could be automated." Like this is horseshit. You can't do that. Um, I think the other side of the, the fallacy though is to talk about taxi drivers. So, um, you know, if we'd been having this conversation in 1997, it's like the Uber test. Imagine we're in 1997. What will be crushed by the internet? Well, newspapers will be fine. They'll just... 'Cause they'll save money on the printing bills. This is like a joke, but people said that. Newspaper, the internet will be great for newspapers. Their printing bills will go down. Well, yes, but no. But the other side is, well, obviously like taxi drivers, you couldn't automate that with the internet. It's got nothing to do with the internet. Maybe you'd have internet booking, but like, no, that's not gonna change anything. And of course it completely changes the whole thing. And so, like the, the example I saw the other day was like things that won't be affected by AI, personal trainers. Okay. So I take my iPhone and I balance it on the metal piece with the camera pointed at me, and I ask an AI to build me a training routine and watch me and tell me if I'm doing it right. Why do I need a personal trainer? Now, that might be complete nonsense, um, but that's how these things work. Like the stuff that you don't think is ex- You can't predict which things are going to be exposed necessarily or, you know, a lot of the big companies are things that didn't look like that would work and didn't like look like that was exposed. The other side of this, of course, is this is one of the charts at the end of my presentation, is comparing Uber and Airbnb, because this is like the cliché from Marc Andreessen that like Uber doesn't sell software to taxi companies, Airbnb doesn't sell software to hotels. Okay, now let's go and look at the market impact. Well, a whole bunch of cities where Uber demolished the taxi business w- and made it much bigger as well. Made, made the, the TAM became much bigger when everyone switched. Airbnb's impact hotel, hotels, if you actually go and look at the numbers, is pretty marginal. They carved out this whole other business and maybe they slowed down the growth of hotels a bit. But, you know, my wife flies to Milwaukee next week. She's gonna land at eight o'clock at night. She wants to go to a hotel. She wants to have room service. She needs a bath, a bath. She needs, you know, needs a gym at 6:00 in the morning, and then she's... at 7:00 in the morning, she's gonna drive to the client site. She's not gonna stay in an Airbnb. Like absolutely zero chance she's gonna stay in an Airbnb. And half of the hotel business is travel, is business travel. And you know, you can, as soon, as soon as you actually get into anything, then it gets complicated. I remember somebody on social media said, "The problem with Benedict is everything, his answer to everything is, 'It depends.'" It's like, yeah, [chuckles] it does. It depends. So there were, you know, it's, it's back to my 1997 point. You can say some of this, um, but you have to have that humility.

    6. LR

      Yeah. And coming back to this, uh, phrase you used, r- presume radical uncertainty is

  14. 1:06:251:08:43

    How to be successful in this coming future

    1. LR

      a nice, uh, core thesis here. So knowing all this, just it's hard to tell. We don't know exactly where it's going. Uh, things are gonna change a lot, but it'll probably be okay broadly. Just a lot of people listening are pretty worried about their jobs and their careers and how much the world changes. What would be a couple things you recommend people do, knowing what you know, to be more successful in this future?

    2. BE

      Well, I, I should sort of just kind of wind back on what you just said. It's like, as Keynes tells us, in the long run, we're all dead. So, you know, it's all, you know, like on average, um, you know, on average, nobody died in World War I. Great. But if, you know, if you're a, if you're a 19-year-old in 1914, you, you've got a, you know, one in three chance of, of not coming back. So, um, yes, you know, clearly there's a bunch of professions where this is a major question, and particularly if you're an associate or want... would, would have been thinking about being an associate, this is a major question. And it's very unclear how those professions are gonna play out. It's very unclear what the, you know, happens to the pyramid structure of professional services. The answer I... The only answer I think one can have is, you know-Don't stick your head in the sand and say, "I hate all of this stuff," 'cause that gives you a great feeling of moral superiority, and you can go on Bluesky and shout at everybody, shout at each other about how evil AI is. Like, great, I'm happy for you, but that's not gonna help. What helps is you diving into this, completely submerging yourself in it and coming out understanding what you can do with it, how this changes things, how can you... how you can be a great hire. And that may still not help, but, you know, if you're going into a law firm and they're like, "Well, we hired 100 associates last year, and this year we're only gonna hire 50," go into the interview and say, "Well, I think AI is bullshit and I'm never gonna use it," is probably not the right move. So, you know, you can... That, that, that may not be particularly comforting, but I don't think there's, there's an alternative, is, you know, you have to dive into this and absorb it and internalize it and think about what it means, just as, you know, you and I did with mobile and with, with the internet.

    3. LR

      I think that is actually very actionable and, and very consistent advice on the podcast is just, just do stuff, build it. Don't just sit around and pontificate and be, be pissed at what's happening.

  15. 1:08:431:11:43

    AI corner

    1. LR

      To, uh, close us out, I'm gonna take us to AI Corner, a recurring corner of the podcast. Uh, and the question to you is just what's one way you've used AI and use AI in your work or life that, uh, is really interesting, something that other people might, might, uh, be inspired by?

    2. BE

      I don't know. I, I struggle with this question because I'm sort of the lawyer looking at ChatGPT. So, you know, the stuff that I would do, that I would automate are sort of precise information retrieval task, which is, uh, precisely the thing that this is kind of worst at. And, you know, that's not a criticism, it's just an observation. The kind of, the, the kind of stuff that I would want a machine to do for me is the stuff that AI kind of can't do for me very, very, very well at the moment. I use it for proofreading. I use it, you know, for images. I used it redecorating my apartment. That worked fantastically well at that. "Here's a picture of this room, repaint it, add this light and this table and this rug. Um, no, change the color of the rug." There's a kind of plants of stuff where it works. Um, but I mean, a couple of years ago somebody said AI is good at stuff that computers are bad at and bad at stuff that computers are good at, and that's... I'm, I, I, I struggle to find many k- many examples of those where I need it. But then, you know, I'm a kind of a unique, weird job. You know, I, you know, sit at my desk all day, you know, trying to synthesize a whole bunch of other stuff into a whole bunch of new ideas. That's not a particularly common way for people to spend their time. I struggle to find AI use cases. I am the accountant looking at the spreadsheet and thinking, "Well, that's very clever and this is clearly gonna completely transform everything," but I actually don't make spreadsheets every day.

    3. LR

      I went to a stand-up comedy show at, uh, of Pete Holmes, I don't know if you know him, and he made this joke that, uh, we want AI to do, like, clean the poop off the street and do all these, like, hard things that nobody wants to do, but instead it's like, "Oh, let me help you write. Let me help you create imagery." It's like this bohemian. It's like, "No, I don't wanna, I don't wanna do all these ugly things. I wanna be creative, make, make art."

    4. BE

      Yeah. Well, I mean, there's, there's, there's, you know, variations of all of this. You know, it's like I don't want the AI to do the stuff I do for fun. I want it to do the stuff that... the boring stuff-

    5. LR

      Yeah

    6. BE

      ... that I don't do for fun.

    7. LR

      Yeah.

    8. BE

      Um, and, you know, finding that mesh... I mean, you know, joking apart, this kind of comes back to kind of my, my chatbot, chatbot point, that, you know, the chatbot is a blank screen and a jagged edge, like, what am I supposed to do and what will work? And that's a big problem. And the solution to that problem is to wrap it in, in use cases. Part of it is also, like, AI just disappears. So most of what I write now, I dictate. I dictate as a voice memo, and that's automatically transcribed. Is that still AI or is that just voice recognition? It's probably an LL, LLM... There's probably an LLM in there. Okay, so maybe that's AI. Well, okay, so, so what? Um, at a certain point it's just automation.

    9. LR

      What do you use for that, for voice, voice transcription?

    10. BE

      So I actually find that Apple Notes, the Apple... the one built into the iPhone works fine. I mean, I'm conscious of that people want others, but, like, I mean, I dictate it, there it is, it worked, so I'm, I'm happy with that.

    11. LR

      All right.

  16. 1:11:431:19:49

    Lightning round

    1. LR

      Final question before we get to our very exciting lightning round. Is there anything else that you wanted to share, anything else you wanna leave listeners with?

    2. BE

      No, I think, you know, I've, I've, I've monologued plenty and I've gone through a bunch of stuff in the deck. Go read the deck and, um, sign up to my newsletter and then you will get many more mags of brilliant Benedict Evans wisdom, um, some of which may even be useful. Somebody unsub- someone unsubscribed from my newsletter and they said, "You didn't, you didn't give me any actionable stock ideas." And I'm like, "Well, on one level that's completely true. On the other level, maybe not."

    3. LR

      Well, with that, Benedict, we've reached our very exciting Lightning round. I've got five questions for you. Are you ready?

    4. BE

      Sure.

    5. LR

      First question: What are two or three books that you find yourself recommending most to other people?

    6. BE

      It's a tough one for me 'cause I just read an enormous amount of books, and then I can't remember which ones I've read. Um, I, I, I, I sometimes often joke that the, the, the classic British comedy from the late 19th century called Three Men in a Boat, which is like my I Ching. It's like we're having trouble hanging a picture. Well, there's a section about that. You know, we're having trouble doing this. Ah, well, there's a success story about that, all of which are hilarious. Um, so Three Men in a Boat is my I Ching. There's a book by, I think, William Cronon about the economic history of Chicago, which is fascinating and actually very relevant to technology because it's talking basically about standardization and packetization and logistics and channel conflict and, uh, network dynamics and, um, network neutrality. So, like, when the meat packers of Chicago, um, reach the point that it's cheaper to ship a cow from New York to Chicago, kill it, pack it, and then ship it back to New York than to kill it in New York, and, you know, the pricing of refrigerator cars, and it's exactly like reading about broadband. It's all the same kind of... so it's those kind of business issues, which is fascinating. What else have I read? I don't know. Read books. Read different books. Generally read books for grown-ups. Please read something other than Lord of the Rings if you're going to name another company.And it's like, that's why I saw this sign, and what was the latest like Peter Thiel company? I was like, "Read another book."

    7. LR

      [laughs]

    8. BE

      Everything is named after a character from this one book. There is more than one book in the world. There is more than one book than all about science fiction. Read, read about different things. Read about things you don't know about.

    9. LR

      Kind of along those lines, do you have a favorite recent movie or TV show that you've really enjoyed?

    10. BE

      I don't know. I've dropped so badly off the, the, the, the current media treadmill, and I just spend most of my time watching classics, which are like always the ones that you're supposed to have seen and that all seem intimidating, and then you watch them and you're like, "Oh, that was actually really good." Um, I watched The Seventh Seal recently, which is like one of those Jake, Woody Allen terrifying, boring movies, and it was brilliant. It was really interesting, and it's like, it's only like an hour. So go wa- go watch one of those movies that you are supposed to have seen or hadn't seen.

    11. LR

      Favorite recent product that you've recently discovered that, uh, you really love? Could be a gadget, could be an app.

    12. BE

      I was speaking at a partner meeting for a company earlier this, this week. What's today? Monday. No, last week, and, um, met the founder of the company who has a very famous net-- Well, the CEO of the company has a very famous name and admired his shoes and didn't say anything, but then went and Googled like half an hour later, "Yeah, okay, I'll buy a pair of those."

    13. LR

      You wanna share the brand or you wanna keep it, keep it secret?

    14. BE

      Okay. [laughs]

    15. LR

      We'll keep it secret.

    16. BE

      I don't know. I think one comes in, one comes in waves of new products and, you know, you get into waves of new things and, um, like when's the last time there was a cool app? Like iPhone apps, that was, you know, all that white space went. I mean, it's partly a, a function of product ships, uh, uh, platform ships. Like all the white space went for, for cool new apps, and now we haven't quite got... Actually, this is a, to the earlier point, we don't have breakout AI consumer AI apps yet because, I think because of marginal cost more than anything else. You can't make it free and get 50 million users and then have a revenue model. Um, but we don't have those breakout things yet.

    17. LR

      For consumer. Yeah.

    18. BE

      For consumer, no. I just... Wait, I keep getting these ads for voice recorders, like somebody's selling like a business card sized, like hardware voice recorder. I'm like, but, but, but like I don't get it. Like, I've got a voice recorder on my phone.

    19. LR

      Yeah. All kinds of cool stuff coming. Okay, two more questions. Uh, do you have a favorite life motto that you find yourself coming back to often in work or in life?

    20. BE

      I suppose I've mentioned earlier, apparently I mostly say it depends. Um-

    21. LR

      [laughs] That's, that's gonna be the title. [laughs]

    22. BE

      It'll probably be okay.

    23. LR

      Yeah. Okay. I, that's, that's the vibe I get. I like that. I like that it's probably gonna be okay. Not for sure. Um, okay, final question. I saw somewhere that you own a lot of old phones. Is that true?

    24. BE

      Uh, it is, yes. There's a, um, I kept... I mean, I was a telecoms analyst and a mobile analyst, and I, I kept all my phones up to a point. Now they're kind of un- un- uninteresting. But as you, you may remember, like before the iPhone, particularly outside the USA, there was this huge creativity and expansion in what phones looked like because everyone was basically innovating around a little teeny-tiny gray square. So everyone was trying to differentiate from everything else, um, before it kind of result... It's kind of like cars actually. It's like cars before street, before like wind tunnels. Cars all look different, and everyone's trying to innovate around because you've got the same four wheels and the same engine, and everyone's trying to like differentiate based on like the shape and it's, and then everything converges on one shape, and it's kind of the same with phones. Like everyone, everything converged on one shape, but before that there was all this innovation. So yeah, like I, I have like, like a whole bunch of PDAs and, and smartphones and things from like-

    25. LR

      Like how many phones are we talking about?

    26. BE

      I, I don't know, like 20 or 30.

    27. LR

      Okay. Okay.

    28. BE

      Like, not that many.

    29. LR

      It's not so crazy.

    30. BE

      Yeah.

Episode duration: 1:19:50

Install uListen for AI-powered chat & search across the full episode — Get Full Transcript

Transcript of episode BD3vLtWhT5A

Get more out of YouTube videos.

High quality summaries for YouTube videos. Accurate transcripts to search & find moments. Powered by ChatGPT & Claude AI.