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Title: AI Is Already Replacing ENTIRE Company Functions
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you know at some big companies that are
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very tech forward you know 50% plus of
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customer support is already done by AI
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and that's a $400 billion industry and
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then if you know what AI is great about
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is persuasion that's sales and customer
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support and so of the functions of a
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company if you think about them them
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they're to make stuff sell stuff and
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then support the customers so right now
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maybe you're in late 26 you're going to
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be pretty good at two of them
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>> so that's Gavin Baker a legendary
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investor who spends most of his time
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these days studying semiconductors,
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compute, and the realworld economics of
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AI. And in this podcast episode with
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Patrick Oshanosy, he talks about the
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coming wave of AI labor disruption, the
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companies and countries set to benefit
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the most, the industries that are about
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to get obliterated, and the surprising
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way compute itself is being redefined.
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Let's get into it. All right, so for the
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first 20 minutes or so of the podcast,
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they mostly talk about chips. Gavin says
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Nvidia's new Blackwell chips, which
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should start coming online next year,
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are going to be genuinely game-changing.
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According to him, Blackwell is what
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finally allows us to scale pre-training
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again, which has been stalled up for a
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while now given the compute constraints.
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So this is when Patrick asks, "Okay, but
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so what? What does the scaling of
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pre-training even further even mean? And
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what might it unlock, especially as all
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this new infrastructure comes online
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over the next few years? Here's his
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response.
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>> If I were to posit like an event path, I
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think the Blackwell models are going to
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be amazing. the dramatic reduction in
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per token cost enabled by the GB300 and
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probably [clears throat] more the MI450
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than the MI355, you know, will lead to
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these models being allowed to think for
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much longer,
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>> which means they're going to be able to,
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you know, do new things. Like I was very
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impressed Gemini 3 made me a restaurant
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reservation.
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>> It's the first time it's done something
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for me. And I mean, other than like go
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research something and teach me stuff,
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>> but you know, if you can make a
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restaurant reservation, you're not that
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far from being able to make a hotel
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reservation and an airplane reservation
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and order me an Uber and
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>> all of a sudden you got an assistant.
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>> Yeah. And you could just imagine,
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everybody talks about that, but you can
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just imagine it's on your phone. I think
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that's that's pretty near- term, but you
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know, it's you know, it's some big
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companies that are very tech forward,
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you know, 50% plus of customer support
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is already done by AI. And that's a $400
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billion industry. And then [snorts] if
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you know what AI is great about is
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persuasion, that's sales and customer
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support. And so of the functions of a
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company, if you think about them,
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they're to make stuff, sell stuff, and
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then support the customers. So, right
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now, maybe you're in late 26, you're
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going to be pretty good at two of them.
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Um, I do think it's going to have a big
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impact on media. Like, I think robotics,
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you know, we talked about the last time
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are going to finally start to be real.
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You know, there's an explosion and kind
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of exciting robot robotic startups. I do
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still think that the main battle is
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going to be between uh Tesla's Optimus
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and the Chinese because, you know, it's
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easy to make prototypes. It's hard to
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massproduce them. But then it goes back
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to that what Andre Karpathy said about
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AI can automate anything that can be
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verified. So any function where there's
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a right or wrong answer, a right or
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wrong outcome, you can apply
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reinforcement learning and make the AI
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really good at.
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>> So this is where they start talking
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about reinforcement learning which
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became a much bigger focus right around
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the time pre-training started running
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into real constraints. This shift is
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what gave rise to reasoning models like
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OpenAI's 01 and 03. Although at this
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point reasoning is basically just
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embedded into every frontier model.
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Reinforcement learning is also what
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enables systems like Alph Go and Alpha
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Fold where the model is effectively
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learning on its own through trial and
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error guided by a clear objective. And
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this is why Carpathy says AI can
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automate anything that's verifiable,
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anything where there's a clear signal
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for success or failure. We've already
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seen this with how good these models are
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at math and coding, where there's a
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right answer and the model can
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iteratively improve toward it. But this
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logic extends way beyond math. Customer
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support is verifiable. Did you solve the
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user's problem or not? Sales is
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verifiable. Did you close the deal or
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not? Accounting is verifiable. Did the
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books balance or not? And what makes
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this especially important is that we're
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still extremely early. Not only will we
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see a ton of jobs in these verifiable
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domains be automated, but if you think
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about it, the models themselves will
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also keep getting better the more
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they're used in the real world. Did I
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actually do what the user wanted or not?
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Imagine when you scale that across
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companies, across products, and across
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consumers worldwide. you know, in in
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2023 and 24, I was fond of quoting Eric
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Visria and Eric Fishria's statement, our
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friend, um, brilliant man. And Eric
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would always say, "Foundation models are
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the fastest appreciating assets in
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history."
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>> And I would say he was 90% right. I
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modified the statement. I said,
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"Foundation models without unique data
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and internet scale distribution are the
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fastest appreciating assets in history."
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But reasoning fundamentally changed that
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in a really profound way. There was a
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loop, a flywheel to quote Jeff Bezos
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that it was at the heart of every great
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internet company and it was you made a
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good product, you got users, those users
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using the product generated data that
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could be fed back into the product to
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make it better. And that flywheel has
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been spinning at Netflix, at Amazon, at
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Meta, at Google, you know, for over a
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decade. And that's an incredibly
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powerful flywheel. And it's why those
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internet businesses were so tough to
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compete with. It's why they're
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increasing returns to scale. You
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everybody talks about network effects
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much more and you know network effects
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are they were important for social
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networks. I I don't know to what extent
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meta is a social network anymore. It's
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more like a content distribution
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>> but they just had increasing returns to
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scale because of that
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>> flywheel. And that dynamic was not
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present in the pre-reasoning world of
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AI. You pre-trained a model, you let it
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out in the world and it was what it was.
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And it was actually pretty hard. They
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would do RLHF, reinforcement learning
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with human feedback. And you try and
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make the bot model better, and maybe
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you'd get a sense from Twitter vibes
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that people didn't like this, and so
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you'd tweak it. And you know, there were
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the little up and down arrows, but it
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was actually pretty hard to feed that
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back into the model. With reasoning,
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it's early, but that flywheel started to
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spin. And that is really profound for
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these frontier labs. So one reasoning
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fundamentally changed the industry
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dynamics of Frontier Labs.
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>> And just explain why specifically that
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is like what what is going on?
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>> Because if a lot of people are asking a
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similar question and
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they're consistently either liking or
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not liking the answer, then you can kind
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of use that like that as a verifiable
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reward. That's a good outcome. And then
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you can kind of use feed those good
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answers back into the model. And we're
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very early at this flywheel spinning.
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>> Like it's hard to do now,
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>> but you can see it beginning to spin.
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>> So yeah, this is the part people still
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seem to miss. Obviously, the real world
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is way more complex and abstract than
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something like a game of Go. But when
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you zoom in on company functions and
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cognitive labor more broadly, a
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surprising amount of it is verifiable.
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There's usually a clear outcome. Did the
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task get done? Did it work or not?
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That's why these companies believe a
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large share of this work can be
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automated over time. They just need a
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lot more data and realworld experience.
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This flywheel Gavin is describing though
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honestly sounds very close to
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self-improvement. Not in a sci-fi sense,
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but in the very literal sense that the
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system gets better the more it's used.
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Now, this is where the conversation
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really zooms out. If this reinforcement
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learning flywheel has only just begun,
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then the obvious question is who
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actually gets to run it? Because
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learning at this scale isn't free.
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Reasoning models are expensive. Long
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horizon tasks are expensive. And
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learning from realworld use at global
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scale is extremely compute inensive.
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Which means the AI race stops being
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about who has the best models and starts
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being about who controls the
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infrastructure. And this is where Gavin
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makes a pretty strong claim about China
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and Nvidia. Check this out.
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>> And what's even more important, every
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one of those labs, XAI, Gemini, OpenAI,
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and Enthropic, they have a more advanced
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checkpoint
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internally of the model. Checkpoint is
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just um you're kind of continuously
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working on these models and then you
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release kind of a checkpoint and then
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the reason these models get fast
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>> the one they're using internally is for
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>> better and they're using that model to
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train the next model
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>> and if you do not have
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>> that latest checkpoint it's
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>> you're behind
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>> you're it's getting really hard to catch
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up. Chinese open source is a gift from
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God to meta
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>> because you can use Chinese open source
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>> to try and that can be your checkpoint
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and you can use that
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>> as a way to kind of bootstrap this and
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that's what I'm sure they're trying to
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do and everybody else um the big problem
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and the big a giant swing factor I think
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China's made a terrible mistake with
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this rarest thing you know I think China
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because you know they have the Huawei a
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sin and it's a decent chip and verse
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something you know like you know the the
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deprecated hop reserving something. It
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looks okay. So, they're trying to force
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Chinese open source to use their Chinese
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chips. Uh they're domestically designed
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chips. The problem is Blackwell is going
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to come out now and the gap between
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these American frontier labs and Chinese
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open source is going to blow out because
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of Blackwell. And actually, DeepSeek in
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their most recent technical paper v3.2
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said like one of the reasons we struggle
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to compete with the American Frontier
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Labs is we don't have enough compute.
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That was their very politically correct,
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still a little bit risky way of saying,
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you know, because China said, "We don't
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want the black wells, right?" And
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they're saying, "Guys, that might be a
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big mistake. That might be a big
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mistake." And so, if you just kind of
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play this out, these four American labs
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are going to start to widen their gap
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versus Chinese open source, which then
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makes it harder for anyone else to catch
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up because that gap is growing. So, you
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can't use Chinese open source to
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bootstrap. And then geopolitically,
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China thought they had the leverage.
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They're going to realize, oh, whoopsy
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daisy. We do need the black wells. And
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unfortunately, they'll probably for them
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um they'll probably realize that in late
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26. And at that point, there's an
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enormous effort underway. DARPA has
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there's all sorts of really cool DARPA
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and DoD programs to incentivize really
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clever technological solutions for rare
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earths, you know, like using enzymes to
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refine them or there's all sorts of
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really cool things happening, you know,
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and then, you know, there's a lot of
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rare earth deposits in countries that
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are very friendly to America that, you
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know, don't mind actually refining it in
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the, you know, traditional way. So, I
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think rare earths are going to be solved
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way faster than anyone thinks. You know,
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they're obviously not that rare. They're
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just misnamed. they're rare because you
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know they're really messy to refine and
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so geopolitically I actually think
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blackwell is pretty significant um and
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it's going to give America a lot of
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leverage as this gap widens so this is
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why infrastructure ends up deciding so
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much of the AI race I mean if learning
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depends on scale and scale depends on
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compute then whoever controls the
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infrastructure will just compound faster
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that's why a company like OpenAI which
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is only generating tens of billions in
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revenue today is willing to commit to
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infrastructure deals that are in the
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trillions. And it's also why Gavin
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thinks China risks falling behind unless
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it continues to rely on Nvidia's most
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advanced chips. So that's the story at
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the geopolitical level. But the same
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mistakes are being made at the industry
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level, too. And according to Gavin, one
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group of companies is especially
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vulnerable right now. Take a look.
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applications ask companies are making
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the exact same mistake that
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brick-and-mortar retailers did with
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e-commerce. So brick and mortar
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retailers um you know particularly after
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the um you know the the telecom bubble
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crashed you know they looked at Amazon
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and they said oh it's losing money you
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know e-commerce is going to be a low
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margin business you know how how can
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just you know from first principles how
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can it ever be more efficient as a
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business right now our customers pay to
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transport themselves to the store and
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then they pay to transport the goods
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home. How could it ever be more
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efficient if we're, you know, sending
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shipments out, you know, to individual
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customers, you know, and Amazon's
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vision, of course, well, eventually
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we're just going to go down a street and
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drop off a package at every house. And
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so, they did not invest in e-commerce.
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They they clearly saw customer demand
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for it, but they did not like the margin
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structure of e-commerce. That is the
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fundamental reason that essentially
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every brick brick-and-mortar retailer
(00:13:07)
was really slow to invest in e-commerce.
(00:13:09)
And now here we are and you know Amazon
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has higher margins in their North
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American retail business than a lot of
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retailers that are mass market retailers
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you know so margins can change and if
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there's a fundamental transformative
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kind of um new new technology that
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customers are demanding it's always a
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mistake not to embrace it
(00:13:29)
>> and that's exactly what the SAS
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companies are doing they have their 70
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80 90% gross margins and they are
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reluctant to accept AI gross margins you
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know the very nature of AI is you know
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software you write it once and it's
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written very efficiently and then you
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can distribute it broadly at very low
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cost and that's why it was a great
(00:13:47)
business AI is the exact opposite where
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you have to recomputee the answer every
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time and so you know a good AI company
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might have gross margins of 40%.
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Now, the crazy thing is because of those
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efficiency gains, they're generating
(00:14:03)
cash way earlier than other people, you
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know, than other than SAS companies did
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historically, but they're generating
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cash earlier, not because they have high
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gross margins, but because they have
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very few human employees. And it's just
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tragic to watch all of these companies
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like you want to have an agent, it's
(00:14:20)
never going to succeed if you're not
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willing to run it at a sub 35% gross
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margin
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>> because that's what the AI natives are
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running it at. Maybe they're running it
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at 40. So if you are trying to preserve
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an 80% gross margin structure, you are
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guaranteeing that you will not succeed
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in AI.
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>> Absolute guarantee. So yeah, what this
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all essentially boils down to is if
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you're not first, you're last. If you
(00:14:46)
wait, you fall behind. And if you fall
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far enough behind, you don't get to
(00:14:51)
catch up, especially when it comes to
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AI. That's true for companies and for
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countries. Now, toward the end of the
(00:14:58)
interview, Gavin brings up one last
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idea, and it's not really a prediction.
(00:15:03)
It's more like a consequence. If
(00:15:05)
intelligence really compounds on
(00:15:06)
compute, then eventually the constraint
(00:15:09)
isn't software. It's energy. It's land.
(00:15:12)
It's cooling. And that's where things
(00:15:15)
get a little wild. Just take a look at
(00:15:17)
this.
(00:15:18)
>> What other I'm I'm always so curious
(00:15:19)
about the polls of things. Like one poll
(00:15:21)
would be the other breakthroughs that
(00:15:22)
you have your your mind on things in the
(00:15:24)
data center that aren't chips that we've
(00:15:26)
talked about before. as as one example.
(00:15:28)
>> I think the most important thing that's
(00:15:29)
going to happen in the world in this
(00:15:31)
world in the next 3 to four years is
(00:15:34)
data centers in space.
(00:15:36)
>> And this has really profound
(00:15:37)
implications for everyone building a
(00:15:40)
power plant or a data center on planet
(00:15:43)
Earth. Okay?
(00:15:45)
>> And there is a giant gold rush into
(00:15:46)
this.
(00:15:47)
>> I haven't heard anything about this. So
(00:15:48)
please
(00:15:49)
>> Yeah. You know, it's like everybody
(00:15:49)
thinks like, hey, AI is risky, you know,
(00:15:52)
uh but you know what? I'm going to build
(00:15:53)
a data center. I'm going to build a
(00:15:55)
power plant that's going to do a data
(00:15:56)
center. We will need that. But if you
(00:15:57)
think about it from first principles,
(00:15:59)
data centers should be in space. Okay.
(00:16:03)
What are the fundamental inputs to
(00:16:05)
running a data center? There are power
(00:16:07)
and there are cooling
(00:16:09)
>> and then there are the chips.
(00:16:10)
>> That's like the total if you think about
(00:16:11)
it from a total cost perspective.
(00:16:13)
>> Yeah. And just the the inputs to making
(00:16:15)
the tokens come out of the magic
(00:16:17)
machines.
(00:16:17)
>> Yeah.
(00:16:18)
So in space you can keep a satellite in
(00:16:22)
the sun 24 hours a day
(00:16:24)
>> and the sun is 30% more intense. You
(00:16:27)
know you can keep it in the sun just
(00:16:28)
because like if the sun's here's this
(00:16:31)
you know you can have the satellite you
(00:16:33)
know always kind of catching
(00:16:34)
>> catching the light
(00:16:35)
>> catching the light. The sun is 30% more
(00:16:37)
intense and this results in six times
(00:16:39)
more irradiance in outer space than the
(00:16:42)
high than on planet earth. So you're
(00:16:44)
getting a lot of solar energy. Point
(00:16:45)
number one. Point number two, because
(00:16:48)
you're in the sun 24 hours a day, you
(00:16:49)
don't need a battery. And this is a
(00:16:51)
giant percentage of the cost. So the
(00:16:54)
lowest cost energy um available in our
(00:16:58)
solar system is solar energy and space.
(00:17:01)
Okay.
(00:17:03)
Second, for cooling in one of these
(00:17:05)
racks, a majority of the mass and the
(00:17:07)
weight is cooling.
(00:17:09)
>> And the cooling in these data centers is
(00:17:13)
incredibly complicated. You know, I
(00:17:14)
mean, the HVAC, the CDUs, the liquid
(00:17:17)
cooling.
(00:17:19)
In space, cooling is free. You just put
(00:17:21)
a radiator on the dark side of the
(00:17:23)
satellite
(00:17:25)
[laughter]
(00:17:25)
>> and it's as close to absolute zero as
(00:17:28)
you can get.
(00:17:29)
>> So, all that goes away and that is a
(00:17:31)
vast amount of cost. Okay, let's think
(00:17:34)
about um how this these, you know, maybe
(00:17:37)
each satellite is kind of a rack. It's
(00:17:39)
one way to think of it. Maybe some
(00:17:40)
people make bigger satellites that are
(00:17:42)
three racks. Well, how are you going to
(00:17:44)
collect connect those racks? Well, it's
(00:17:46)
funny. In the data center, the racks are
(00:17:49)
over a certain distance um connected
(00:17:51)
with fiber optics. And that just means a
(00:17:53)
laser going through a cable. The only
(00:17:55)
thing faster than a laser going through
(00:17:57)
a fiber optic cable is a laser going
(00:17:59)
through absolute vacuum. So, if you can
(00:18:02)
link these satellites in space together
(00:18:05)
using lasers, you actually have a faster
(00:18:08)
and more coherent network than in a data
(00:18:11)
center on Earth. Okay,
(00:18:13)
>> so yeah, I guess this isn't really a
(00:18:15)
wild take anymore. I mean, we're already
(00:18:17)
seeing some of the biggest names
(00:18:19)
seriously pursuing this, like Google,
(00:18:21)
Nvidia, and others. But if you bring up
(00:18:24)
space data centers to the average
(00:18:26)
person, they'll probably look at you
(00:18:27)
like you're crazy, even though this is
(00:18:29)
very much a real thing that's actively
(00:18:31)
being worked on. And it makes you wonder
(00:18:33)
how far off are we really from fullon
(00:18:36)
Dyson spheres? Because this seems like
(00:18:39)
the path we're clearly headed toward.
(00:18:41)
Anyways, huge shout out to Patrick
(00:18:43)
Oshanesy and Gavin Baker for this
(00:18:45)
incredibly insightful conversation. They
(00:18:47)
did a great job capturing where AI
(00:18:49)
actually is right now and where it might
(00:18:51)
be heading. But I'm curious what you
(00:18:53)
guys think about all this and what part
(00:18:55)
stood out to you the most. Was it the
(00:18:57)
part about China's mistake, the
(00:18:59)
reinforcement learning flywheel, or of
(00:19:01)
course the space data centers? Let me
(00:19:03)
know in the comments. Also, if you
(00:19:05)
enjoyed this breakdown, please consider
(00:19:07)
dropping a like, hit that subscribe
(00:19:09)
button, and as always, I'll be catching
(00:19:11)
you guys in the next
