How AI Is Unlocking the Secrets of Nature and the Universe | Demis Hassabis | TED

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2024-04-29 ・ TED


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How AI Is Unlocking the Secrets of Nature and the Universe | Demis Hassabis | TED

419,491 views ・ 2024-04-29

TED


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00:04
Chris Anderson: Demis, so good to have you here.
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Demis Hassabis: It's fantastic to be here, thanks, Chris.
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Now, you told Time Magazine,
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"I want to understand the big questions,
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the really big ones that you normally go into philosophy or physics
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if you're interested in them.
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I thought building AI
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would be the fastest route to answer some of those questions."
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Why did you think that?
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DH: (Laughs)
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Well, I guess when I was a kid,
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my favorite subject was physics,
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and I was interested in all the big questions,
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fundamental nature of reality,
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what is consciousness,
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you know, all the big ones.
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And usually you go into physics, if you're interested in that.
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But I read a lot of the great physicists,
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some of my all-time scientific heroes like Feynman and so on.
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And I realized, in the last, sort of 20, 30 years,
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we haven't made much progress
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in understanding some of these fundamental laws.
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So I thought, why not build the ultimate tool to help us,
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which is artificial intelligence.
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And at the same time,
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we could also maybe better understand ourselves
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and the brain better, by doing that too.
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So not only was it incredible tool,
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it was also useful for some of the big questions itself.
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CA: Super interesting.
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So obviously AI can do so many things,
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but I think for this conversation,
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I'd love to focus in on this theme of what it might do
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to unlock the really big questions, the giant scientific breakthroughs,
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because it's been such a theme driving you and your company.
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DH: So I mean, one of the big things AI can do,
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and I've always thought about,
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is we're getting, you know, even back 20, 30 years ago,
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the beginning of the internet era and computer era,
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the amount of data that was being produced
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and also scientific data,
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just too much for the human mind to comprehend in many cases.
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And I think one of the uses of AI is to find patterns and insights
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in huge amounts of data and then surface that
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to the human scientists to make sense of
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and make new hypotheses and conjectures.
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So it seems to me very compatible with the scientific method.
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CA: Right.
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But game play has played a huge role in your own journey
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in figuring this thing out.
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Who is this young lad on the left there?
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Who is that?
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DH: So that was me, I think I must have been about around nine years old.
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I'm captaining the England Under 11 team,
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and we're playing in a Four Nations tournament,
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that's why we're all in red.
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I think we're playing France, Scotland and Wales, I think it was.
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CA: That is so weird, because that happened to me too.
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In my dreams.
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(Laughter)
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And it wasn't just chess,
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you loved all kinds of games.
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DH: I loved all kinds of games, yeah.
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CA: And when you launched DeepMind,
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pretty quickly, you started having it tackle game play.
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Why?
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DH: Well, look, I mean, games actually got me into AI in the first place
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because while we were doing things like,
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we used to go on training camps with the England team and so on.
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And actually back then,
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I guess it was in the mid '80s,
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we would use the very early chess computers,
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if you remember them, to train against,
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as well as playing against each other.
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And they were big lumps of plastic,
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you know, physical boards that you used to,
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some of you remember, used to actually press the squares down
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and there were LED lights, came on.
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And I remember actually, not just thinking about the chess,
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I was actually just fascinated by the fact that this lump of plastic,
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someone had programmed it to be smart
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and actually play chess to a really high standard.
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And I was just amazed by that.
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And that got me thinking about thinking.
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And how does the brain come up with these thought processes,
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these ideas,
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and then maybe how we could mimic that with computers.
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So yeah, it's been a whole theme for my whole life, really.
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CA: But you raised all this money to launch DeepMind,
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and pretty soon you were using it to do, for example, this.
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I mean, this is an odd use of it.
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What was going on here?
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DH: Well, we started off with games at the beginning of DeepMind.
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This was back in 2010, so this is from about 10 years ago,
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it was our first big breakthrough.
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Because we started off with classic Atari games from the 1970s,
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the simplest kind of computer games there are out there.
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And one of the reasons we used games is they're very convenient
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to test out your ideas and your algorithms.
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They're really fast to test.
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And also, as your systems get more powerful,
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you can choose harder and harder games.
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And this was actually the first time ever that our machine surprised us,
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the first of many times,
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which, it figured out in this game called Breakout,
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that you could send the ball round the back of the wall,
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and actually, it would be much safer way to knock out all the tiles of the wall.
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It's a classic Atari game there.
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And that was our first real aha moment.
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CA: So this thing was not programmed to have any strategy.
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It was just told, try and figure out a way of winning.
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You just move the bat at the bottom and see if you can find a way of winning.
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DH: It was a real revolution at the time.
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So this was in 2012, 2013
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where we coined these terms "deep reinforcement learning."
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And the key thing about them is that those systems were learning
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directly from the pixels, the raw pixels on the screen,
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but they weren't being told anything else.
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So they were being told, maximize the score,
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here are the pixels on the screen,
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30,000 pixels.
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The system has to make sense on its own from first principles
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what’s going on, what it’s controlling,
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how to get points.
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And that's the other nice thing about using games to begin with.
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They have clear objectives, to win, to get scores.
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So you can kind of measure very easily that your systems are improving.
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CA: But there was a direct line from that to this moment
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a few years later,
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where country of South Korea and many other parts of Asia
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and in fact the world went crazy over -- over what?
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DH: Yeah, so this was the pinnacle of -- this is in 2016 --
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the pinnacle of our games-playing work,
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where, so we'd done Atari,
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we'd done some more complicated games.
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And then we reached the pinnacle, which was the game of Go,
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which is what they play in Asia instead of chess,
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but it's actually more complex than chess.
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And the actual brute force algorithms
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that were used to kind of crack chess were not possible with Go
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because it's a much more pattern-based game,
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much more intuitive game.
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So even though Deep Blue beat Garry Kasparov in the '90s,
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it took another 20 years for our program, AlphaGo,
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to beat the world champion at Go.
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And we always thought,
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myself and the people working on this project for many years,
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if you could build a system that could beat the world champion at Go,
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it would have had to have done something very interesting.
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And in this case, what we did with AlphaGo,
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is it basically learned for itself,
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by playing millions and millions of games against itself,
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ideas about Go, the right strategies.
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And in fact invented its own new strategies
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that the Go world had never seen before,
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even though we've played Go for more than,
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you know, 2,000 years,
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it's the oldest board game in existence.
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So, you know, it was pretty astounding.
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Not only did it win the match,
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it also came up with brand new strategies.
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CA: And you continued this with a new strategy
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of not even really teaching it anything about Go,
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but just setting up systems
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that just from first principles would play
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so that they could teach themselves from scratch, Go or chess.
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Talk about AlphaZero and the amazing thing that happened in chess then.
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DH: So following this, we started with AlphaGo
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by giving it all of the human games that are being played on the internet.
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So it started that as a basic starting point for its knowledge.
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And then we wanted to see what would happen if we started from scratch,
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from literally random play.
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So this is what AlphaZero was.
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That's why it's the zero in the name,
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because it started with zero prior knowledge
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And the reason we did that is because then we would build a system
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that was more general.
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So AlphaGo could only play Go,
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but AlphaZero could play any two-player game,
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and it did it by playing initially randomly
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and then slowly, incrementally improving.
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Well, not very slowly, actually, within the course of 24 hours,
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going from random to better than world-champion level.
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CA: And so this is so amazing to me.
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So I'm more familiar with chess than with Go.
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And for decades,
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thousands and thousands of AI experts worked on building
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incredible chess computers.
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Eventually, they got better than humans.
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You had a moment a few years ago,
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where in nine hours,
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AlphaZero taught itself to play chess better than any of those systems ever did.
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Talk about that.
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DH: It was a pretty incredible moment, actually.
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So we set it going on chess.
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And as you said, there's this rich history of chess and AI
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where there are these expert systems that have been programmed
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with these chess ideas, chess algorithms.
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And you have this amazing, you know,
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I remember this day very clearly, where you sort of sit down with the system
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starting off random, you know, in the morning,
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you go for a cup of coffee, you come back.
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I can still just about beat it by lunchtime, maybe just about.
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And then you let it go for another four hours.
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And by dinner,
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it's the greatest chess-playing entity that's ever existed.
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And, you know, it's quite amazing,
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like, looking at that live on something that you know well,
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you know, like chess, and you're expert in
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and actually just seeing that in front of your eyes.
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And then you extrapolate to what it could then do in science or something else,
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which of course, games were only a means to an end.
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They were never the end in themselves.
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They were just the training ground for our ideas
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and to make quick progress in a matter of, you know,
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less than five years actually went from Atari to Go.
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CA: I mean, this is why people are in awe of AI
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and also kind of terrified by it.
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I mean, it's not just incremental improvement.
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The fact that in a few hours you can achieve
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what millions of humans over centuries have not been able to achieve.
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That gives you pause for thought.
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DH: It does, I mean, it's a hugely powerful technology.
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It's going to be incredibly transformative.
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And we have to be very thoughtful about how we use that capability.
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CA: So talk about this use of it because this is again,
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this is another extension of the work you've done,
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where now you're turning it to something incredibly useful for the world.
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What are all the letters on the left, and what’s on the right?
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DH: This was always my aim with AI from a kid,
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which is to use it to accelerate scientific discovery.
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And actually, ever since doing my undergrad at Cambridge,
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I had this problem in mind one day for AI,
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it's called the protein-folding problem.
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And it's kind of like a 50-year grand challenge in biology.
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And it's very simple to explain.
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Proteins are essential to life.
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They're the building blocks of life.
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Everything in your body depends on proteins.
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A protein is sort of described by its amino acid sequence,
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which you can think of as roughly the genetic sequence
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describing the protein, so that are the letters.
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CA: And each of those letters represents in itself a complex molecule?
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DH: That's right, each of those letters is an amino acid.
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And you can think of them as a kind of string of beads
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there at the bottom, left, right?
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But in nature, in your body or in an animal,
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this string, a sequence,
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turns into this beautiful shape on the right.
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That's the protein.
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Those letters describe that shape.
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And that's what it looks like in nature.
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And the important thing about that 3D structure is
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the 3D structure of the protein goes a long way to telling you
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what its function is in the body, what it does.
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And so the protein-folding problem is:
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Can you directly predict the 3D structure just from the amino acid sequence?
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So literally if you give the machine, the AI system,
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the letters on the left,
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can it produce the 3D structure on the right?
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And that's what AlphaFold does, our program does.
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CA: It's not calculating it from the letters,
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it's looking at patterns of other folded proteins that are known about
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and somehow learning from those patterns
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that this may be the way to do this?
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DH: So when we started this project, actually straight after AlphaGo,
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I thought we were ready.
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Once we'd cracked Go,
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I felt we were finally ready after, you know,
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almost 20 years of working on this stuff
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to actually tackle some scientific problems,
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including protein folding.
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And what we start with is painstakingly,
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over the last 40-plus years,
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experimental biologists have pieced together
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around 150,000 protein structures
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using very complicated, you know, X-ray crystallography techniques
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and other complicated experimental techniques.
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And the rule of thumb is
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that it takes one PhD student their whole PhD,
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so four or five years, to uncover one structure.
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But there are 200 million proteins known to nature.
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So you could just, you know, take forever to do that.
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And so we managed to actually fold, using AlphaFold, in one year,
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all those 200 million proteins known to science.
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So that's a billion years of PhD time saved.
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(Applause)
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CA: So it's amazing to me just how reliably it works.
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I mean, this shows, you know,
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here's the model and you do the experiment.
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And sure enough, the protein turns out the same way.
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Times 200 million.
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DH: And the more deeply you go into proteins,
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you just start appreciating how exquisite they are.
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I mean, look at how beautiful these proteins are.
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And each of these things do a special function in nature.
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And they're almost like works of art.
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And it's still astounds me today that AlphaFold can predict,
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the green is the ground truth, and the blue is the prediction,
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how well it can predict, is to within the width of an atom on average,
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is how accurate the prediction is,
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which is what is needed for biologists to use it,
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and for drug design and for disease understanding,
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which is what AlphaFold unlocks.
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CA: You made a surprising decision,
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which was to give away the actual results of your 200 million proteins.
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DH: We open-sourced AlphaFold and gave everything away
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on a huge database with our wonderful colleagues,
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the European Bioinformatics Institute.
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(Applause)
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CA: I mean, you're part of Google.
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Was there a phone call saying, "Uh, Demis, what did you just do?"
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DH: You know, I'm lucky we have very supportive,
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Google's really supportive of science
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and understand the benefits this can bring to the world.
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And, you know, the argument here
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was that we could only ever have even scratched the surface
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of the potential of what we could do with this.
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This, you know, maybe like a millionth
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of what the scientific community is doing with it.
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There's over a million and a half biologists around the world
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have used AlphaFold and its predictions.
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14:27
We think that's almost every biologist in the world
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14:29
is making use of this now, every pharma company.
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14:32
So we'll never know probably what the full impact of it all is.
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CA: But you're continuing this work in a new company
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that's spinning out of Google called Isomorph.
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DH: Isomorphic.
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CA: Isomorphic.
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Give us just a sense of the vision there.
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What's the vision?
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DH: AlphaFold is a sort of fundamental biology tool.
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Like, what are these 3D structures,
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and then what might they do in nature?
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And then if you, you know,
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the reason I thought about this and was so excited about this,
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is that this is the beginnings of understanding disease
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and also maybe helpful for designing drugs.
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So if you know the shape of the protein,
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and then you can kind of figure out
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which part of the surface of the protein
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you're going to target with your drug compound.
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15:16
And Isomorphic is extending this work we did in AlphaFold
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into the chemistry space,
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where we can design chemical compounds
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that will bind exactly to the right spot on the protein
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and also, importantly, to nothing else in the body.
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So it doesn't have any side effects and it's not toxic and so on.
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And we're building many other AI models,
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sort of sister models to AlphaFold
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to help predict,
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make predictions in chemistry space.
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CA: So we can expect to see
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some pretty dramatic health medicine breakthroughs
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in the coming few years.
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DH: I think we'll be able to get down drug discovery
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from years to maybe months.
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CA: OK. Demis, I'd like to change direction a bit.
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Our mutual friend, Liv Boeree, gave a talk last year at TEDAI
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that she called the “Moloch Trap.”
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The Moloch Trap is a situation
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where organizations,
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16:09
companies in a competitive situation can be driven to do things
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16:14
that no individual running those companies would by themselves do.
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I was really struck by this talk,
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and it's felt, as a sort of layperson observer,
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that the Moloch Trap has been shockingly in effect in the last couple of years.
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So here you are with DeepMind,
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sort of pursuing these amazing medical breakthroughs
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and scientific breakthroughs,
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and then suddenly, kind of out of left field,
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OpenAI with Microsoft releases ChatGPT.
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And the world goes crazy and suddenly goes, “Holy crap, AI is ...”
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you know, everyone can use it.
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And there’s a sort of, it felt like the Moloch Trap in action.
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I think Microsoft CEO Satya Nadella actually said,
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"Google is the 800-pound gorilla in the search space.
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We wanted to make Google dance."
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How ...?
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And it did, Google did dance.
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There was a dramatic response.
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17:18
Your role was changed,
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17:20
you took over the whole Google AI effort.
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17:24
Products were rushed out.
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You know, Gemini, some part amazing, part embarrassing.
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I’m not going to ask you about Gemini because you’ve addressed it elsewhere.
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But it feels like this was the Moloch Trap happening,
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that you and others were pushed to do stuff
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that you wouldn't have done without this sort of catalyzing competitive thing.
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17:45
Meta did something similar as well.
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17:47
They rushed out an open-source version of AI,
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17:50
which is arguably a reckless act in itself.
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17:55
This seems terrifying to me.
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17:57
Is it terrifying?
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DH: Look, it's a complicated topic, of course.
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18:01
And, first of all, I mean, there are many things to say about it.
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First of all, we were working on many large language models.
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18:10
And in fact, obviously, Google research actually invented Transformers,
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18:13
as you know,
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18:14
which was the architecture that allowed all this to be possible,
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five, six years ago.
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18:19
And so we had many large models internally.
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The thing was, I think what the ChatGPT moment did that changed was,
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18:25
and fair play to them to do that, was they demonstrated,
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18:28
I think somewhat surprisingly to themselves as well,
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2795
18:31
that the public were ready to,
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18:34
you know, the general public were ready to embrace these systems
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3003
18:37
and actually find value in these systems.
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1960
18:39
Impressive though they are, I guess, when we're working on these systems,
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18:43
mostly you're focusing on the flaws and the things they don't do
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18:46
and hallucinations and things you're all familiar with now.
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We're thinking, you know,
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would anyone really find that useful given that it does this and that?
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3587
18:54
And we would want them to improve those things first,
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2503
18:56
before putting them out.
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18:58
But interestingly, it turned out that even with those flaws,
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3754
19:01
many tens of millions of people still find them very useful.
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2919
19:04
And so that was an interesting update on maybe the convergence of products
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4922
19:09
and the science that actually,
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3712
19:13
all of these amazing things we've been doing in the lab, so to speak,
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3253
19:16
are actually ready for prime time for general use,
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3003
19:19
beyond the rarefied world of science.
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2002
19:21
And I think that's pretty exciting in many ways.
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2627
19:24
CA: So at the moment, we've got this exciting array of products
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19:27
which we're all enjoying.
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1210
19:29
And, you know, all this generative AI stuff is amazing.
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2586
19:31
But let's roll the clock forward a bit.
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2086
19:34
Microsoft and OpenAI are reported to be building
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3962
19:38
or investing like 100 billion dollars
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19:40
into an absolute monster database supercomputer
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5005
19:45
that can offer compute at orders of magnitude
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3212
19:49
more than anything we have today.
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2544
19:52
It takes like five gigawatts of energy to drive this, it's estimated.
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19:56
That's the energy of New York City to drive a data center.
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4254
20:00
So we're pumping all this energy into this giant, vast brain.
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3420
20:04
Google, I presume is going to match this type of investment, right?
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4046
20:09
DH: Well, I mean, we don't talk about our specific numbers,
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2795
20:11
but you know, I think we're investing more than that over time.
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20:15
So, and that's one of the reasons
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1960
20:17
we teamed up with Google back in 2014,
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2169
20:19
is kind of we knew that in order to get to AGI,
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20:23
we would need a lot of compute.
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20:24
And that's what's transpired.
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20:26
And Google, you know, had and still has the most computers.
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3420
20:30
CA: So Earth is building these giant computers
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2961
20:33
that are going to basically, these giant brains,
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2294
20:35
that are going to power so much of the future economy.
446
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2878
20:38
And it's all by companies that are in competition with each other.
447
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3878
20:42
How will we avoid the situation where someone is getting a lead,
448
1242362
5589
20:47
someone else has got 100 billion dollars invested in their thing.
449
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4213
20:52
Isn't someone going to go, "Wait a sec.
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20:54
If we used reinforcement learning here
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20:57
to maybe have the AI tweak its own code
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2919
21:00
and rewrite itself and make it so [powerful],
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2252
21:03
we might be able to catch up in nine hours over the weekend
454
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3212
21:06
with what they're doing.
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1167
21:07
Roll the dice, dammit, we have no choice.
456
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1960
21:09
Otherwise we're going to lose a fortune for our shareholders."
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21:12
How are we going to avoid that?
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21:14
DH: Yeah, well, we must avoid that, of course, clearly.
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21:16
And my view is that as we get closer to AGI,
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21:20
we need to collaborate more.
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21:22
And the good news is that most of the scientists involved in these labs
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4879
21:27
know each other very well.
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21:29
And we talk to each other a lot at conferences and other things.
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3546
21:32
And this technology is still relatively nascent.
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2503
21:35
So probably it's OK what's happening at the moment.
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2419
21:37
But as we get closer to AGI, I think as a society,
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4421
21:42
we need to start thinking about the types of architectures that get built.
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4713
21:46
So I'm very optimistic, of course,
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1793
21:48
that's why I spent my whole life working on AI and working towards AGI.
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4838
21:53
But I suspect there are many ways to build the architecture safely, robustly,
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6507
22:00
reliably and in an understandable way.
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3170
22:03
And I think there are almost certainly going to be ways of building architectures
473
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3837
22:07
that are unsafe or risky in some form.
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22:09
So I see a sort of,
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2127
22:11
a kind of bottleneck that we have to get humanity through,
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3087
22:14
which is building safe architectures as the first types of AGI systems.
477
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6340
22:20
And then after that, we can have a sort of,
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2502
22:23
a flourishing of many different types of systems
479
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2753
22:26
that are perhaps sharded off those safe architectures
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3712
22:29
that ideally have some mathematical guarantees
481
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3337
22:33
or at least some practical guarantees around what they do.
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3003
22:36
CA: Do governments have an essential role here
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2252
22:38
to define what a level playing field looks like
484
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2210
22:40
and what is absolutely taboo?
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1418
22:42
DH: Yeah, I think it's not just about --
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22:44
actually I think government and civil society
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22:46
and academia and all parts of society have a critical role to play here
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3379
22:49
to shape, along with industry labs,
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2878
22:52
what that should look like as we get closer to AGI
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2711
22:55
and the cooperation needed and the collaboration needed,
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3546
22:58
to prevent that kind of runaway race dynamic happening.
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2669
23:01
CA: OK, well, it sounds like you remain optimistic.
493
1381752
2419
23:04
What's this image here?
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23:05
DH: That's one of my favorite images, actually.
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23:07
I call it, like, the tree of all knowledge.
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2044
23:09
So, you know, we've been talking a lot about science,
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2544
23:12
and a lot of science can be boiled down to
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23:15
if you imagine all the knowledge that exists in the world
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23:18
as a tree of knowledge,
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23:19
and then maybe what we know today as a civilization is some, you know,
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23:24
small subset of that.
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23:26
And I see AI as this tool that allows us,
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23:29
as scientists, to explore, potentially, the entire tree one day.
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3920
23:33
And we have this idea of root node problems
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3503
23:36
that, like AlphaFold, the protein-folding problem,
506
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2336
23:38
where if you could crack them,
507
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1459
23:40
it unlocks an entire new branch of discovery or new research.
508
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4713
23:45
And that's what we try and focus on at DeepMind
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2252
23:47
and Google DeepMind to crack those.
510
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2377
23:50
And if we get this right, then I think we could be, you know,
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3545
23:53
in this incredible new era of radical abundance,
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2711
23:56
curing all diseases,
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1543
23:58
spreading consciousness to the stars.
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2210
24:01
You know, maximum human flourishing.
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1919
24:03
CA: We're out of time,
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1168
24:04
but what's the last example of like, in your dreams,
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2461
24:06
this dream question that you think there is a shot
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2962
24:09
that in your lifetime AI might take us to?
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2670
24:12
DH: I mean, once AGI is built,
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2294
24:14
what I'd like to use it for is to try and use it to understand
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3295
24:18
the fundamental nature of reality.
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2252
24:20
So do experiments at the Planck scale.
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2836
24:23
You know, the smallest possible scale, theoretical scale,
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3295
24:26
which is almost like the resolution of reality.
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2253
24:29
CA: You know, I was brought up religious.
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2002
24:31
And in the Bible, there’s a story about the tree of knowledge
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2878
24:34
that doesn't work out very well.
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1543
24:36
(Laughter)
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1544
24:37
Is there any scenario
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3628
24:41
where we discover knowledge that the universe says,
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5297
24:46
"Humans, you may not know that."
532
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2753
24:49
DH: Potentially.
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1210
24:51
I mean, there might be some unknowable things.
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2210
24:53
But I think scientific method is the greatest sort of invention
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5089
24:58
humans have ever come up with.
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24:59
You know, the enlightenment and scientific discovery.
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3545
25:03
That's what's built this incredible modern civilization around us
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3336
25:06
and all the tools that we use.
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2002
25:08
So I think it's the best technique we have
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2669
25:11
for understanding the enormity of the universe around us.
541
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3545
25:15
CA: Well, Demis, you've already changed the world.
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2378
25:18
I think probably everyone here will be cheering you on
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3211
25:21
in your efforts to ensure that we continue to accelerate
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3086
25:24
in the right direction.
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1252
25:25
DH: Thank you.
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1168
25:26
CA: Demis Hassabis.
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1210
25:28
(Applause)
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5338
About this website

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