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Title: Sam Altman Shows Me GPT 5… And What’s Next
Duration: 01:05:07
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This is like a crazy amount of power for
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one piece of technology and it's
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happened to us so fast.
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>> You just launched GBT.
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>> A kid born today will never be smarter
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than AI.
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>> How do we figure out what's real and
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what's not real?
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>> We haven't put a sex bot avatar in HBT
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yet.
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>> Super intelligence. What does that
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actually mean?
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>> This thing is remarkable.
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>> I'm about to interview Sam Alman, the
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CEO of Open AI.
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>> Open AI.
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>> Open AI.
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>> Reshaping industries.
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>> Dude's a straightup tech lord. Let's be
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honest. Right now, they're trying to
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build a super intelligence that could
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far exceed humans in almost every field.
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And they just released their most
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powerful model yet. Just a couple years
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ago, that would have sounded like
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science fiction. Not anymore. In fact,
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they're not alone. We are in the middle
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of the highest stakes global race any of
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us have ever seen. Hundreds of billions
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of dollars and an unbelievable amount of
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human worth. This is a profound moment.
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Most people never live through a
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technological shift like this, and it's
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happening all around you and me right
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now. So, in this episode, I want to try
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to time travel with Sam Alman into the
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future that he's trying to build to see
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what it looks like so that you and I can
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really understand what's coming. Welcome
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to Huge Conversations.
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>> How are you? Great to meet you. Thanks
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for doing this.
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>> Absolutely.
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>> So, before we dive in, I'd love to tell
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you my goal here.
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>> Okay.
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>> I'm not going to ask you about valuation
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or AI talent wars or fundraising or
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anything like that. I think that's all
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very well covered elsewhere.
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>> It does seem like it.
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>> Our big goal on this show is to cover
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how we can use science and tech to make
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the future better. And the reason that
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we do all of that is because we really
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believe that if people see those better
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futures, they can then help build them.
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So, my goal here is to try my best to
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time travel with you into different
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moments in the future that you're trying
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to build and see what it looks like.
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>> Fantastic.
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>> Awesome. Starting with what you just
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announced, you recently said,
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surprisingly recently, that GPT4 was the
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dumbest model any of us will ever have
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to use again. But GPT4 can already
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perform better than 90% of humans at the
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SAT and the LSAT and the GRE and it can
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pass coding exams and SOA exams and
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medical licensing. And now you just
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launched GPT5.
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>> What can GPT5 do that GPT4 can't? First
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of all, one important takeaway is you
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can have an AI system that can do all
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those amazing things you just said. And
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it doesn't it clearly does not replicate
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a lot of what humans are good at doing,
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which I think says something about the
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value of SAT tests or whatever else. But
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I think had you gone back to if we were
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having this conversation the day of GPT4
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launch and we told you how GPT4 did at
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those things, you were like, "Oh man,
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this is going to have huge impacts and
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some negative impacts on what it means
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for a bunch of jobs or you know what
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people are going to do." And you know,
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this is a bunch of positive impacts that
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you might have predicted that haven't
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yet come true. Uh, and so there there's
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something about the way that these
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models are good that does not capture a
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lot of other things that we need people
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to to do or care about people doing. And
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I suspect that same thing is going to
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happen again with GPT5. People are going
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to be blown away by what it does. Uh,
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it's really good at a lot of things and
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then they will find that they want it to
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do even more. Um, people will use it for
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all sorts of incredible things. uh it
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will transform a lot of knowledge work,
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a lot of the way we learn, a lot of the
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way we create um but we people society
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will co-eolve with it to expect more
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with you know better tools. So yeah like
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I think this model is quite remarkable
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in many ways quite limited in others but
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the fact that for you know 3 minute 5
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minute 1-hour tasks that uh like an
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expert in a in a field could maybe do or
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maybe struggle with that the fact that
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you have in your pocket one piece of
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software that can do all of these things
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>> is really amazing. I think this is like
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unprecedented at any point in human
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history that I that a technology has
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improved this much this fast and and the
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fact that we have this tool now, you
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know, we're like living through it and
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we're kind of adjusting step by step.
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But if we could go back in time five or
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10 years and say this thing was coming,
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we would be like probably not.
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>> Let's assume that people haven't seen
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the headlines. What are the topline
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specific things that you're excited
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about? and also the things that you seem
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to be caveatting, the things that maybe
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you won't expect it to do.
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>> Um,
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the thing that I am most excited about
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is this is a model for the first time
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where I feel like I can ask
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kind of any hard scientific or technical
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question
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>> and get a pretty good answer. And I'll
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give a fun example actually. Uh when I
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was in junior high uh or maybe it was
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nth grade, I got a TI83, this old
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graphing calculator, and I spent so long
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making this game called Snake.
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>> Yeah.
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>> Uh it was very popular game with kids in
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my school. And I was I was like uh I was
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like pro and it was dumb, but it was
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like programming on TID3 was extremely
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painful and took a long time and it was
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really hard to like debug and whatever.
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And on a whim with an early copy of
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GPT5, I was like, I wonder if it can
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make a TI83 style Game of Snake. And of
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course, it did that perfectly in like 7
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seconds. And then I was like, okay, am I
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supposed to be would my like 11-year-old
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self think this was cool or like, you
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know, miss something from the process?
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And I had like 3 seconds of wondering
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like, oh, is this good or bad? And then
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I immediately said, actually, now I'm
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missing this game. I have this idea for
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a crazy new feature. Let me type it in.
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it implements it and it just the game
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live updates and I'm like actually I'd
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like it to look this way. Actually, I'd
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like to do this thing and I had this
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like this very like kind of
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>> you have this experience that reminded
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me of being like 11 in programming again
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where I was just like I now I want to
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try this now I have this idea now I but
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I could do it so fast and I could like
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express ideas and try things and play
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with things in such real time. I was
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like, "Oh man, you know, I was worried
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for a second about kids like missing the
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struggle of learning to program in this
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sort of stone age way." And now I'm just
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thrilled for them because the the way
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that people will be able to create with
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these new tools, the speed with which
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you can sort of bring ideas to life, you
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know, in
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that's that's pretty amazing. So this
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idea that GPT5 can just not only like
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answer all these hard questions for you
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but really create like ondemand almost
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instantaneous software that's I think
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that's going to be one of the defining
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elements of the GPD5 era in a way that
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did not exist with GPD4.
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>> As you're talking about that I find
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myself thinking about a concept in
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weightlifting of time under tension.
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>> Yeah.
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>> And for those who don't know it's you
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can squat 100 pounds in 3 seconds or you
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can squat 100 pounds in 30. You gain a
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lot more by squatting it in 30.
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>> And when I think about our creative
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process and when I've felt most like
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I've done my best work, it has required
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an enormous amount of
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>> cognitive time under tension.
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>> And I think that that cognitive time
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under tension is so important.
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>> And it's it's ironic almost because
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these tools have taken enormous
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cognitive time under tension to develop.
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But in some ways I do think people might
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say they're you people are using them as
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a escape hatch for thinking in some ways
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maybe. Now you might say yeah but we did
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that with the calculator and we just
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moved on to harder math problems. Do you
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feel like there's something
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different happening here? How do you
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think about this?
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>> It's different with I mean there are
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some people who are clearly using
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chachine not to think and there are some
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people who are using it to think more
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than they ever have before.
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I am hopeful that we will be able to
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build the tool in a way that encourages
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more people to stretch their brain with
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it a little more and be able to do more.
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And I think that like you know society
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is a competitive place like if you give
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people new tools uh in theory maybe
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people just work less but in practice it
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seems like people work ever harder and
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the expectations of people just go up.
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So my
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my guess is that like other tools uh
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some people like other pieces of
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technology some people will do more and
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some people will do less but certainly
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for the people who want to use chatbt to
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increase their cognitive time under
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tension they are really able to and it
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is
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>> I take a lot of inspiration from what
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like the top 5% of most engaged users do
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with chacht like it's really
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>> amazing how much people are learning and
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doing and you know outputting.
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>> So my I've only had GPT5 for a couple
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hours so I've been playing.
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>> What do you think so far?
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>> I'm I'm just learning how to interact
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with it. I mean part of the interesting
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thing is I feel like I just caught up on
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how to use GPT4 and now I'm trying to
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learn how to use GPD5. I'm curious what
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the specific tasks that you found most
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interesting are because I imagine you've
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been using it for a while now. I I have
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been most impressed by the coding tasks.
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I mean, there's a lot of other things
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it's really good at, but this this idea
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of
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the AI can write software for anything.
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And that means that you can express
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ideas in new ways that the AI can do
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very advanced things. It can do, you
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know, it can like in some sense you
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could like ask GPT4 anything, but
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because GPT5 is so good at programming,
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it feels like it can do anything. Of
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course, it can't do things in the
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physical world, but it can get a
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computer to do very complex things. And
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software is this super powerful, you
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know, way to like control some stuff and
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actually do some things. So, that that
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for me has been the most striking. Um,
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it's gotten it's much better at writing.
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So, this is like there's this whole
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thing of AI slop like AI writes in this
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kind of like quite annoying way and
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>> M dashes.
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>> M we still have the M dashes in GPT5. A
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lot of people like them dashes, but the
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writing quality of GPT5 is gotten much
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better. We still have a long way to go.
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We want to improve it more, but like uh
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I've a thing we've heard a lot from
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people inside of OpenAI is that man,
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they started using GPT5, they knew it
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was better on all the metrics, but
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there's this like nuance quality they
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can't quite articulate, but then when
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they have to go back to GPT4 to test
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something, it feels terrible. And I I
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don't know exactly what the cause of
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that is, but I suspect part of it is the
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writing feels so much more natural and
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better.
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>> I in preparation for this interview
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reached out to a couple other leaders in
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AI and technology and gathered a couple
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questions for you.
(00:11:00)
>> Okay,
(00:11:00)
>> so this next question is from Stripe CEO
(00:11:03)
Patrick Collison.
(00:11:04)
>> This will be a good one.
(00:11:06)
>> Read this verbatim.
(00:11:07)
>> It's about the next stage. What what
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comes after GBT5? In which year do you
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think a large language model will make a
(00:11:15)
significant scientific discovery and
(00:11:17)
what's missing such that it hasn't
(00:11:19)
happened yet? He caveed here that we
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should leave math and special case
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models like alpha fold aside. He's
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specifically asking about fully general
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purpose models like the GPT series.
(00:11:28)
>> I would say most people will agree that
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that happens at some point over the next
(00:11:31)
two years. But the definition of
(00:11:33)
significant matters a lot. And so some
(00:11:35)
people significant might happen,
(00:11:38)
you know, in early 25. Some people might
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maybe not until late 2026. Sorry, early
(00:11:43)
2026. Maybe some people not until late
(00:11:45)
2027, but I would I would bet that by
(00:11:48)
late 27, most people agree that there
(00:11:51)
has been an AIdriven significant new
(00:11:53)
discovery. And the thing that I think is
(00:11:54)
missing is just the kind of cognitive
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power of these models. A framework that
(00:12:00)
one of the researchers said to me that I
(00:12:01)
really liked is, you know, a year ago we
(00:12:05)
could do well on like a high school like
(00:12:08)
a basic high school math competition
(00:12:10)
problems that might take a professional
(00:12:11)
mathematician seconds to a few minutes.
(00:12:14)
We very recently got an IMO gold medal.
(00:12:16)
That is a crazy difficult like
(00:12:19)
>> could you explain what that means?
(00:12:21)
>> That's kind of like the hardest
(00:12:22)
competition math test. This is something
(00:12:23)
that like the very very top slice of the
(00:12:26)
world. many many professional
(00:12:28)
mathematicians wouldn't solve a single
(00:12:29)
problem and we scored at the top level.
(00:12:33)
Now there are some humans that got an
(00:12:34)
even higher score in the gold medal
(00:12:35)
range but we we like this is a crazy
(00:12:37)
accomplishment and these each of these
(00:12:39)
problems it's like six problems over 9
(00:12:42)
hours so hour and a half per problem for
(00:12:44)
a great mathematician. So we've gone
(00:12:45)
from a few seconds to a few minutes to
(00:12:48)
an hour and a half maybe to prove a
(00:12:51)
significant new mathematical theorem is
(00:12:53)
like a thousand hours of work for a top
(00:12:55)
person in the world. So we've got to go
(00:12:57)
from, you know, another significant
(00:13:00)
gain. But if you look at our trajectory,
(00:13:01)
you can say like, okay, we're getting to
(00:13:03)
that. We have a path to get to that time
(00:13:05)
horizon. We just need to keep scaling
(00:13:07)
the models.
(00:13:09)
>> The long-term future that you've
(00:13:10)
described is super intelligence. What
(00:13:13)
does that actually mean? And how will we
(00:13:15)
know when we've hit it?
(00:13:18)
If we had a system that could do better
(00:13:21)
research, better AI research than uh say
(00:13:25)
the whole open AI research team, like if
(00:13:27)
we were willing, if we said, "Okay, the
(00:13:29)
best way we can use our GPUs is to let
(00:13:31)
this AI decide what experiments we
(00:13:32)
should run
(00:13:34)
>> smarter than like the whole brain trust
(00:13:35)
of Open AAI." Yeah. And if that same to
(00:13:37)
make a personal example, if that same
(00:13:38)
system could do a better job running
(00:13:40)
open AI than I could. So you have
(00:13:42)
something that's like, you know, better
(00:13:43)
than the best researchers, better than
(00:13:44)
me at this, better than other people at
(00:13:45)
their jobs, that would feel like super
(00:13:46)
intelligence to me.
(00:13:48)
>> That is a sentence that would have
(00:13:49)
sounded like science fiction just a
(00:13:51)
couple years ago. And now it
(00:13:52)
>> kind of does, but it's you can like see
(00:13:54)
it through the fog.
(00:13:55)
>> Yes. And so one of the steps it sounds
(00:13:57)
like you're saying on that path is this
(00:13:59)
moment of scientific discovery of asking
(00:14:02)
better questions of grappling with
(00:14:04)
things in a in a way that expert level
(00:14:06)
humans do
(00:14:08)
>> to come up with new discoveries. One of
(00:14:09)
the things that keeps knocking around in
(00:14:11)
my head is if we were in 1899 say and we
(00:14:15)
were able to give it all of physics up
(00:14:16)
until that point and play it out a
(00:14:18)
little bit. Nothing further than that.
(00:14:20)
Like at what point would one of these
(00:14:21)
systems come up with general relativity?
(00:14:24)
Interesting question is did you like if
(00:14:27)
we think about that forward like like if
(00:14:28)
we think of where we are now should a if
(00:14:31)
if we never got another piece of physics
(00:14:35)
data.
(00:14:36)
>> Yeah.
(00:14:37)
>> Do we expect that a really good super
(00:14:39)
intelligence could just think super hard
(00:14:41)
about our existing data and maybe say
(00:14:43)
like solve high energy physics with no
(00:14:46)
new particle accelerator or does it need
(00:14:47)
to build a new one and design new
(00:14:48)
experiments? Obviously we don't know the
(00:14:50)
answer to that. Different people have
(00:14:52)
different speculation. Uh but I suspect
(00:14:56)
we will find that for a lot of science,
(00:14:58)
it's not enough to just think harder
(00:15:00)
about data we have, but we will need to
(00:15:02)
build new instruments, conduct new
(00:15:04)
experiments, and that will take some
(00:15:05)
time. Like that that is the real world
(00:15:06)
is slow and messy and you know whatever.
(00:15:09)
So I'm sure we could make some more
(00:15:11)
progress just by thinking harder about
(00:15:13)
the current scientific data we have in
(00:15:14)
the world. But my guess is to make the
(00:15:17)
big progress we'll also need to build
(00:15:19)
new machines and run new experiments and
(00:15:21)
there will be some slowdown built into
(00:15:24)
that.
(00:15:25)
>> Another way of of thinking about this is
(00:15:28)
AI systems now are just incredibly good
(00:15:30)
at answering almost any question. But
(00:15:33)
maybe one of the things we're saying is
(00:15:35)
it's another leap yet. And what
(00:15:37)
Patrick's question is getting at is to
(00:15:38)
ask the better questions.
(00:15:40)
>> Or or if we go back to this kind of
(00:15:42)
timeline question, we could maybe say
(00:15:44)
that AI systems are superhuman on one
(00:15:47)
minute tasks,
(00:15:49)
>> but a long way to go to the thousand
(00:15:50)
hour tasks. And there's a dimension of
(00:15:53)
human intelligence that seems very
(00:15:58)
different than AI systems when it comes
(00:15:59)
to these long horizon tasks. Now, I
(00:16:01)
think we will figure it out, but today
(00:16:03)
it's a real weak point. We've talked
(00:16:05)
about where we are now with GBC5. We
(00:16:08)
talked about the end goal or future goal
(00:16:10)
of super intelligence. One of the
(00:16:12)
questions that I have, of course, is
(00:16:15)
what does it look like to walk through
(00:16:16)
the fog between the two.
(00:16:18)
>> The next question is from Nvidia CEO
(00:16:21)
Jensen Hong. I'm going to read this
(00:16:23)
verbatim. Fact is what is. Truth is what
(00:16:27)
it means. So facts are objective. Truths
(00:16:30)
are personal. They depend on
(00:16:31)
perspective, culture, values, beliefs,
(00:16:33)
context. One AI can learn and know the
(00:16:36)
facts. But how does one AI know the
(00:16:39)
truth for everyone in every country and
(00:16:41)
every background?
(00:16:43)
>> I'm going to accept as axioms those
(00:16:46)
definitions. I'm not sure if I agree
(00:16:47)
with them, but in the issues of time, I
(00:16:49)
will just take them. I will take those
(00:16:50)
definitions and go with it. Um,
(00:16:55)
I have been surprised, I think many
(00:16:56)
other people have been surprised too
(00:16:58)
about how fluent AI is at adapting to
(00:17:02)
different cultural contexts and
(00:17:04)
individuals. One of my favorite features
(00:17:06)
that we have ever launched in chatbt is
(00:17:08)
the the sort of enhanced memory that
(00:17:10)
came out earlier this year. like it
(00:17:13)
really feels like my Chad GBT gets to
(00:17:15)
know me and what I care about and like
(00:17:17)
my life experiences and background and
(00:17:19)
the things that have led me to where
(00:17:21)
they are. A friend of mine recently
(00:17:23)
who's been a huge CHBT user, so he's got
(00:17:25)
a lot of a a lot of he's put a lot of
(00:17:28)
his life into all these conversations.
(00:17:30)
He gave his Chad GBT a bunch of
(00:17:33)
personality tests and asked them to
(00:17:35)
answer as if they were him and it got
(00:17:37)
the same scores he actually got, even
(00:17:38)
though he'd never really talked about
(00:17:39)
his personality. And my ChachiBD has
(00:17:43)
really learned over the years of me
(00:17:45)
talking to it about my culture, my
(00:17:47)
values, my life. And I have used, you
(00:17:52)
know, I sometimes will use it in like uh
(00:17:55)
I'll use like a free account just to see
(00:17:57)
what it's like without any of my history
(00:17:58)
and it feels really really different. So
(00:18:00)
I think we've all been surprised on the
(00:18:02)
upside of how good AI is at learning
(00:18:04)
this and adapting. And so do you
(00:18:08)
envision
(00:18:09)
in many different parts of the world
(00:18:11)
people using different AIs with
(00:18:12)
different sort of cultural norms and
(00:18:14)
contexts? Is that what we're saying?
(00:18:16)
>> I think that everyone will use like the
(00:18:17)
same fundamental model, but there will
(00:18:19)
be context provided to that model that
(00:18:22)
will make it behave in sort of
(00:18:23)
personalized way they want their
(00:18:24)
community wants. Whatever.
(00:18:26)
>> I think when we're getting at this idea
(00:18:28)
of facts and truth and uh it brings me
(00:18:31)
to this seems like a good moment for our
(00:18:34)
first time travel trip. Okay, we're
(00:18:36)
going to 2030. This is a serious
(00:18:39)
question, but I want to ask it with a
(00:18:40)
light-hearted example. Have you seen the
(00:18:42)
bunnies that are jumping on the
(00:18:43)
trampoline?
(00:18:44)
>> Yes.
(00:18:45)
>> So, for those who haven't seen it, maybe
(00:18:47)
it looks like backyard footage of
(00:18:49)
bunnies enjoying jumping on a
(00:18:50)
trampoline. And this has gone incredibly
(00:18:52)
viral recently. There's a humanmade song
(00:18:55)
about it. It's a whole thing. There were
(00:18:58)
a trampoline.
(00:19:00)
>> And I think the reason why people
(00:19:02)
reacted so strongly to it, it was maybe
(00:19:04)
the first time people saw a video,
(00:19:07)
enjoyed it, and then later found out
(00:19:09)
that it was completely AI generated. In
(00:19:12)
this time travel trip, if we imagine in
(00:19:14)
2030, we are teenagers and we're
(00:19:16)
scrolling whatever teenagers are
(00:19:17)
scrolling in 2030. How do we figure out
(00:19:21)
what's real and what's not real?
(00:19:25)
I mean, I can give all sorts of literal
(00:19:28)
answers to that question. We could be
(00:19:29)
cryptographically signing stuff and we
(00:19:30)
could decide who we trust their
(00:19:32)
signature if they actually filmed
(00:19:34)
something or not. But but my sense is
(00:19:37)
what's going to happen is it's just
(00:19:39)
going to like gradually converge. You
(00:19:42)
know, even like a photo you take out of
(00:19:44)
your iPhone today, it's like mostly
(00:19:47)
real, but it's a little not. There's
(00:19:49)
like in some AI thing running there in a
(00:19:51)
way you don't understand and making it
(00:19:53)
look like a little bit better and
(00:19:54)
sometimes you see these weird things
(00:19:55)
where
(00:19:56)
>> the moon.
(00:19:56)
>> Yeah. Yeah. Yeah. Yeah.
(00:19:58)
>> But there's like a lot of processing
(00:20:01)
power between the photons captured by
(00:20:04)
that camera sensor and the image you
(00:20:06)
eventually see. And you've decided it's
(00:20:10)
real enough or most people decided it's
(00:20:11)
real enough. But we've accepted some
(00:20:13)
gradual move from when it was like
(00:20:15)
photons hitting the film in a camera.
(00:20:18)
And you know, if you go look at some
(00:20:21)
video on Tik Tok, there's probably all
(00:20:23)
sorts of video editing tools being used
(00:20:26)
to make it better than real look. Yeah,
(00:20:28)
exactly. Or it's just like, you know,
(00:20:31)
whole scenes are completely generated or
(00:20:32)
some of the whole videos are generated
(00:20:34)
like those bunnies on that trampoline.
(00:20:36)
And and I think that the the sort of
(00:20:38)
like the threshold for how real does it
(00:20:41)
have to be to consider to be real will
(00:20:43)
just keep moving.
(00:20:46)
>> So it's sort of a education question.
(00:20:48)
It's a people will
(00:20:51)
>> Yeah. I mean media is always like a
(00:20:53)
little bit real and a little bit not
(00:20:56)
real. Like you know we watch like a
(00:20:57)
sci-fi movie. We know that didn't really
(00:20:59)
happen. You watch like someone's like
(00:21:01)
beautiful photo of themselves on
(00:21:03)
vacation on Instagram. like, okay, maybe
(00:21:05)
that photo was like literally taken, but
(00:21:06)
you know, there's like tons of tourists
(00:21:08)
in line for the same photo and that's
(00:21:09)
like left out of it. And I think we just
(00:21:11)
accept that now. Certainly, a higher
(00:21:14)
percentage of media both will will feel
(00:21:16)
not real. Um, but I think that's been
(00:21:19)
the long-term trend. Anyway,
(00:21:21)
>> we're going to jump again.
(00:21:22)
>> Okay,
(00:21:23)
>> 2035, we're graduating from college, you
(00:21:26)
and me. There are some leaders in the AI
(00:21:28)
space that have said that in 5 years
(00:21:30)
half of the entry level white collar
(00:21:32)
workforce will be replaced by AI. So
(00:21:35)
we're college graduates in 5 years. What
(00:21:37)
do you hope the world looks like for us?
(00:21:39)
I think there's been a lot of talk about
(00:21:41)
how AI might cause job displacement, but
(00:21:43)
I'm also curious.
(00:21:45)
I have a job that nobody would have
(00:21:48)
thought we could have, you know, totally
(00:21:51)
a decade ago. What are the things that
(00:21:53)
we could look ahead if we're thinking
(00:21:55)
about
(00:21:55)
>> in 2035 that like graduating college
(00:21:58)
student, if they still go to college at
(00:21:59)
all, could very well be like leaving on
(00:22:02)
a mission to explore the solar system on
(00:22:04)
a spaceship in some kind of completely
(00:22:06)
new exciting, super well- paid, super
(00:22:08)
interesting job and feeling so bad for
(00:22:10)
you and I that like we had to do this
(00:22:12)
kind of like really boring old kind of
(00:22:13)
work and everything is just better. Like
(00:22:16)
I I 10 years feels very hard to imagine
(00:22:19)
at this point
(00:22:20)
>> because it's too far. It's too far. If
(00:22:22)
you compound the current rate of change
(00:22:23)
for 10 more years,
(00:22:25)
>> it's probably something we can't even
(00:22:26)
>> time travel trips.
(00:22:27)
>> I 10 like I mean I think now would be
(00:22:31)
really hard to imagine 10 years ago.
(00:22:33)
>> Yeah.
(00:22:34)
>> Uh but I think 10 years forward will be
(00:22:36)
even much harder, much more different.
(00:22:38)
>> So let's make it 5 years. We're still
(00:22:41)
going to 2030. I'm curious what you
(00:22:44)
think the pretty short-term impacts of
(00:22:46)
this will be for for young people. I
(00:22:48)
mean, these like half of entry- level
(00:22:50)
jobs replaced by AI
(00:22:53)
makes it sound like a very different
(00:22:55)
world that they would be entering than
(00:22:56)
the one that I did.
(00:22:57)
>> Um,
(00:23:02)
I think it's totally true that some
(00:23:04)
classes of jobs will totally go away.
(00:23:06)
This always happens and young people are
(00:23:07)
the best at adapting to this. I'm more
(00:23:09)
worried about what it means, not for the
(00:23:11)
like
(00:23:11)
>> 22-y old, but for the 62-y old that
(00:23:14)
doesn't want to go re retrain or reskill
(00:23:17)
or whatever the politicians call it that
(00:23:19)
no one actually wants but politicians
(00:23:20)
and most of the time. If I were 22 right
(00:23:24)
now and graduating college, I would feel
(00:23:26)
like the luckiest kid in all of history.
(00:23:28)
>> Why?
(00:23:28)
>> Because there's never been a more
(00:23:30)
amazing time to go create something
(00:23:32)
totally new, to go invent something, to
(00:23:34)
start a company, whatever it is. I think
(00:23:36)
it is probably possible now to start a
(00:23:39)
company that is a oneperson company that
(00:23:41)
will go on to be worth like more than a
(00:23:42)
billion dollars and more importantly
(00:23:43)
than that deliver an amazing product and
(00:23:45)
service to the world and that that is
(00:23:47)
like a crazy thing. You have access to
(00:23:50)
tools that can let you do what used to
(00:23:52)
take teams of hundreds
(00:23:54)
and you just have to like you know learn
(00:23:57)
how to use these tools and come up with
(00:23:58)
a great idea and it's it's like quite
(00:24:01)
amazing. If we take a step back, I think
(00:24:04)
the most important thing that this
(00:24:07)
audience could hear from you on this
(00:24:09)
optimistic show is in two parts.
(00:24:13)
First, there's tactically,
(00:24:16)
how are you actually trying to build the
(00:24:19)
world's most powerful intelligence and
(00:24:21)
what are the rate limiting factors to
(00:24:22)
doing that? And then philosophically,
(00:24:25)
how are you and others working on
(00:24:27)
building that technology in a way that
(00:24:29)
really helps and not hurts people? So
(00:24:31)
just taking the tactical part right now.
(00:24:34)
My understanding is that there are three
(00:24:36)
big categories that have been limiting
(00:24:39)
factors for AI. The first is compute,
(00:24:42)
the second is data and the third is
(00:24:44)
algorithmic design.
(00:24:46)
How do you think about each of those
(00:24:48)
three categories right now? And if you
(00:24:50)
were to help someone understand the next
(00:24:52)
headlines that they might see, how would
(00:24:55)
you help them make sense of all this?
(00:24:58)
I I would say there's a fourth too which
(00:25:00)
is uh figuring out the products to build
(00:25:03)
like techn like scientific progress on
(00:25:06)
its own not put into the hands of people
(00:25:08)
is of limited utility and doesn't sort
(00:25:10)
of co-evolve with society in the same
(00:25:12)
way but if I could hit all four of those
(00:25:14)
>> um so on the compute side yeah this is
(00:25:17)
like the biggest infrastructure project
(00:25:18)
certainly that I've ever seen possibly
(00:25:20)
it will become the I think it will maybe
(00:25:22)
already is the biggest and most
(00:25:23)
expensive one in human history but the
(00:25:26)
the whole supply chain from making the
(00:25:30)
chips and the memory and the networking
(00:25:32)
gear, racking them up in servers, doing,
(00:25:35)
you know, a giant construction project
(00:25:36)
to build like a mega mega data center,
(00:25:39)
putting the, you know, finding a way to
(00:25:41)
get the energy, which is often a
(00:25:43)
limiting factor piece of this and all
(00:25:45)
the other components together. This is
(00:25:47)
hugely complex and expensive. And we are
(00:25:49)
we're still doing this in like a
(00:25:53)
sort of bespoke one-off way although
(00:25:55)
it's getting better. Like eventually we
(00:25:57)
will just design a whole kind of like
(00:26:00)
mega factory that takes you know I mean
(00:26:04)
spiritually it will be melting sand on
(00:26:06)
one end and putting out fully built AI
(00:26:08)
compute on the other but we are a long
(00:26:10)
way to go from that and it's a it's an
(00:26:15)
enormously complex and expensive
(00:26:16)
process. uh we are putting a huge amount
(00:26:21)
of work into building out as much
(00:26:23)
compute as we can and to do it fast and
(00:26:26)
you know it's going to be like sad
(00:26:27)
because GP5 is going to launch and
(00:26:29)
there's going to be another big spike in
(00:26:30)
demand and we're not going to be able to
(00:26:31)
serve it and it's going to be like those
(00:26:33)
early GPD4 days and the world just wants
(00:26:36)
much more AI than we can currently
(00:26:38)
deliver and building more compute is an
(00:26:40)
important part of doing that. That's
(00:26:42)
actually this is what I expect to turn
(00:26:44)
the majority of my attention to is how
(00:26:46)
we build compute at much greater scales.
(00:26:50)
Uh so how we go from millions to tens of
(00:26:52)
millions and hundreds of millions and
(00:26:54)
eventually hopefully billions of GPUs
(00:26:56)
that are sort of in service of what
(00:26:58)
people want to do with this.
(00:26:59)
>> When you're thinking about it, what are
(00:27:00)
the big challenges here in this category
(00:27:02)
that you're going to be thinking about?
(00:27:04)
>> We're currently most limited by energy.
(00:27:07)
um you know like if you're gonna you
(00:27:08)
want to run a gigawatt
(00:27:11)
scale data center it's like a gigawatt
(00:27:12)
how hard can that be to find it's really
(00:27:14)
hard to find a gigawatt of power
(00:27:15)
available in short term we're also very
(00:27:18)
much limited by the processing chips and
(00:27:22)
the memory chips uh how you package
(00:27:24)
these all together how you build the
(00:27:25)
racks and then there's like a list of
(00:27:26)
other things that are you know there's
(00:27:29)
like permits there's construction work
(00:27:31)
uh but but again the goal here will be
(00:27:33)
to really automate this once we get some
(00:27:36)
of those robots built, they can help us
(00:27:38)
automate it even more. But just, you
(00:27:40)
know, like a world where you can
(00:27:41)
basically pour in money and get out a
(00:27:43)
pre-built data center. Uh so that'll be
(00:27:47)
that'll be a huge unlock if we can get
(00:27:48)
it to work. Second category, data.
(00:27:51)
>> Yeah, these models have gotten so smart.
(00:27:54)
There was a time when we could just feed
(00:27:55)
it another physics textbook and got a
(00:27:58)
little bit smarter at physics, but now
(00:27:59)
like honestly GBT5 understands
(00:28:02)
everything in a physics textbook pretty
(00:28:04)
well. We're excited about synthetic
(00:28:06)
data. We're very excited about our users
(00:28:07)
helping us create harder and harder
(00:28:11)
tasks and environments to go off and
(00:28:13)
have the system solve. But uh I think
(00:28:16)
we're data will always be important, but
(00:28:19)
we're entering a realm where the models
(00:28:23)
need to learn things that don't exist in
(00:28:25)
any data set yet. They have to go
(00:28:26)
discover new things. So that's like a
(00:28:28)
crazy new
(00:28:28)
>> How do you teach a model to discover new
(00:28:30)
things?
(00:28:31)
>> Well, humans can do it. like we can go
(00:28:33)
off and come up with hypotheses and test
(00:28:34)
them and get experimental results and
(00:28:36)
update on what we learn.
(00:28:38)
>> So probably the same kind of way.
(00:28:39)
>> And then there's algorithmic design.
(00:28:41)
>> Yeah, we've made huge progress on
(00:28:43)
algorithmic design. Uh the thing that
(00:28:46)
the thing that I think open does best in
(00:28:47)
the world is we have built this culture
(00:28:49)
of repeated and big algorithmic research
(00:28:53)
gains. So we kind of you know figured
(00:28:56)
out the what became the GPT paradigm. We
(00:28:58)
figured out became the reasoning
(00:29:00)
paradigm. We're working on some new ones
(00:29:01)
now. Um, but it is very exciting to me
(00:29:05)
to think that there are still many more
(00:29:06)
orders of magnitudes of algorithmic
(00:29:08)
gains ahead of us. We we just yesterday
(00:29:11)
uh released a model called GPOSS,
(00:29:14)
open source model. It's a model that is
(00:29:16)
as smart as 04 Mini, which is a very
(00:29:18)
smart model that runs locally on a
(00:29:20)
laptop.
(00:29:21)
>> And this blows my mind.
(00:29:23)
>> Yeah. Like if you had asked me a few
(00:29:25)
years ago when we'd have a model of that
(00:29:28)
intelligence running on a laptop, I
(00:29:30)
would have said many many years in the
(00:29:33)
future. But then we we found some
(00:29:35)
algorithmic gains um particularly around
(00:29:38)
reasoning but also some other things
(00:29:39)
that let us do a a tiny model that can
(00:29:42)
do this amazing thing. And you know
(00:29:45)
those are those are the most fun things.
(00:29:46)
That's like kind of the coolest part of
(00:29:47)
the job.
(00:29:48)
>> I can see you really enjoying thinking
(00:29:51)
about this. I'm curious for people who
(00:29:52)
don't quite know what you're talking
(00:29:54)
about, who aren't familiar with how an
(00:29:57)
algorithmic design would lead to a
(00:29:59)
better experience that they actually
(00:30:01)
use.
(00:30:02)
>> Could you summarize the state of things
(00:30:03)
right now? Like what what is it that
(00:30:05)
you're thinking about when you're
(00:30:06)
thinking about how fun this problem is?
(00:30:08)
>> Let me start back in history and then
(00:30:09)
I'll get to some things for today. So,
(00:30:12)
GPT1 was
(00:30:14)
an idea at the time that was quite
(00:30:16)
mocked by a lot of experts in the field,
(00:30:20)
which was can we train a model to play a
(00:30:22)
little game, which is show it a bunch of
(00:30:25)
words and have it guess the one that
(00:30:26)
comes next in the sequence. That's
(00:30:28)
called unsupervised learning. There's
(00:30:29)
not you're not really saying like this
(00:30:30)
is a cat, this is a dog. You're saying
(00:30:32)
here's some words, guess the next one.
(00:30:34)
And the fact that that can go learn
(00:30:39)
these very complicated concepts that can
(00:30:42)
go learn all the stuff about physics and
(00:30:44)
math and programming and keep predicting
(00:30:46)
the word that comes next and next and
(00:30:47)
next and next seemed ludicrous, magical,
(00:30:52)
unlikely to work. Like how was that all
(00:30:54)
going to get encoded? And yet humans do
(00:30:56)
it. you know, babies start hearing
(00:30:58)
language and figure out what it means
(00:30:59)
kind of largely uh or at least to some
(00:31:04)
significant degree on their own. And
(00:31:08)
and so we did it and then we also
(00:31:10)
realized that if we scaled it up, it got
(00:31:13)
better and better, but we had to scale
(00:31:15)
over many many orders of magnitude. So
(00:31:17)
it wasn't that good in the GPT1 day. It
(00:31:18)
wasn't good at all in the GPT1 days. And
(00:31:20)
a lot of experts in the field said, "Oh,
(00:31:22)
this is ridiculous. It's never going to
(00:31:23)
work. It's not going to be robust." But
(00:31:25)
we had these things called scaling laws.
(00:31:27)
And we said, "Okay, so this gets
(00:31:28)
predictably better as we increase
(00:31:30)
compute, memory, data, whatever. And we
(00:31:32)
can we can decide we can use those
(00:31:36)
predictions to make decisions about how
(00:31:38)
to scale this up and do it and get great
(00:31:40)
results." And that has worked over Yeah.
(00:31:44)
a crazy number of orders of magnitude.
(00:31:47)
And it was so not obvious at the time.
(00:31:49)
like that was that was I think the the
(00:31:50)
reason the world was so surprised is
(00:31:52)
that that seemed like such an unlikely
(00:31:54)
finding. Another one was that we could
(00:31:57)
use these language models with
(00:31:58)
reinforcement learning where we're
(00:32:00)
saying this is good, this is bad to
(00:32:02)
teach it how to reason.
(00:32:03)
>> And this led to the 01 and 03 and now
(00:32:06)
the GBT5 progress. And that that was
(00:32:11)
another thing that felt like uh if it
(00:32:13)
works it's really great but like no way
(00:32:15)
this is going to work. It's too simple.
(00:32:17)
And now we're on to new things. We've
(00:32:19)
figured out how to make much better
(00:32:22)
video models. We are we are discovering
(00:32:26)
new ways to use new kinds of data and
(00:32:28)
environment to kind of scale that up as
(00:32:30)
well. Um and I think again you know 5 10
(00:32:36)
years out that's too hard to say in this
(00:32:37)
field but the next couple of years we
(00:32:39)
have very smooth very strong scaling in
(00:32:41)
front of us. I think it has become a
(00:32:43)
sort of public narrative that we are on
(00:32:45)
this smooth path from one to two to
(00:32:48)
three to four to five to more.
(00:32:49)
>> Yeah.
(00:32:51)
>> But it also is true behind the scenes
(00:32:53)
that it's a it's not linear like that.
(00:32:56)
It's messier.
(00:32:58)
Tell us a little bit about the mess
(00:33:00)
before GPT5.
(00:33:02)
What was what were the interesting
(00:33:03)
problems that you needed to solve? Um,
(00:33:07)
we did a model called Orion that we
(00:33:09)
released as GPT 4.5. And we had
(00:33:14)
we did too big of a model. It was just
(00:33:16)
it was it's a very cool model, but it's
(00:33:17)
unwieldly to use. And we realized that
(00:33:19)
for kind of some of the research we need
(00:33:20)
to do on top of a model, we need a
(00:33:22)
different shape. So we we followed one
(00:33:25)
scaling law that kept being good without
(00:33:27)
without really internalizing. There was
(00:33:29)
a new even steeper scaling law that we
(00:33:31)
got better returns for compute on, which
(00:33:32)
was this reasoning thing. So that was
(00:33:34)
like one alley we went down and turned
(00:33:36)
around, but that's fine. That's part of
(00:33:37)
research. Um, we had some problems with
(00:33:39)
the way we think about our data sets as
(00:33:41)
these models like really have to get get
(00:33:44)
this big and um, you know, learn from
(00:33:46)
this much data. So So yeah, I think like
(00:33:49)
in the in the middle of it in the
(00:33:51)
day-to-day, you kind of you make a lot
(00:33:53)
of U-turns as you try things or you have
(00:33:55)
an architecture idea that doesn't work,
(00:33:57)
but the the aggregate the summation of
(00:34:00)
all the squiggles has been remarkably
(00:34:03)
smooth on the exponential.
(00:34:05)
>> One of the things I always find
(00:34:06)
interesting is that by the time I'm
(00:34:09)
sitting here interviewing you about the
(00:34:11)
thing that you just put out, you're
(00:34:13)
thinking about
(00:34:15)
>> Exactly.
(00:34:16)
>> What are the things that you can share
(00:34:17)
that are at least the problems that
(00:34:19)
you're thinking about
(00:34:21)
>> that I would be interviewing you about
(00:34:22)
in a year if I came back?
(00:34:30)
I mean, possibly you'll be asking me
(00:34:32)
like, what does it mean that this thing
(00:34:34)
can go discover new science?
(00:34:36)
>> Yeah.
(00:34:36)
>> What how how is the world supposed to
(00:34:39)
think about GPT6 discovering new
(00:34:41)
science? Now, maybe not like maybe we
(00:34:43)
don't deliver that, but it feels within
(00:34:45)
grasp.
(00:34:46)
>> If you did,
(00:34:48)
what would you say? What would your what
(00:34:49)
would the implications of that kind of
(00:34:51)
achievement be? Imagine you do succeed.
(00:34:54)
>> Yeah. I mean, I think the great parts
(00:34:56)
will be great. the bad parts will be
(00:34:57)
scary and the bizarre parts will be like
(00:35:00)
bizarre on the first day and then we'll
(00:35:01)
get used to them really fast. So we'll
(00:35:03)
be like, "Oh, it's incredible that this
(00:35:05)
is like being used to cure disease and
(00:35:07)
be like, oh, it's extremely scary that
(00:35:09)
models like this are being used to like
(00:35:11)
create new biocurity threats." And then
(00:35:15)
we'll also be like, man, it's really
(00:35:17)
weird to like live through watching the
(00:35:19)
world speed up so much
(00:35:22)
>> and you know the economy grows so fast
(00:35:24)
and the like it will feel like vertigo
(00:35:29)
inducing uh the sort of the rate of
(00:35:32)
change and then like happens with
(00:35:35)
everything else the remarkable ability
(00:35:37)
of of people of humanity to adapt to
(00:35:40)
kind of like any amount of change. we'll
(00:35:42)
just be like, "Okay, you know, this is
(00:35:44)
like this is it." Um,
(00:35:48)
>> a kid born today will never be smarter
(00:35:49)
than AI
(00:35:51)
>> ever. And a kid born today, by the time
(00:35:54)
that kid like kind of understands the
(00:35:56)
way the world works, will just always be
(00:35:58)
used to an incredibly fast rate of
(00:36:01)
things improving and discovering new
(00:36:03)
science. They will just they will never
(00:36:04)
know any other world. It will seem
(00:36:06)
totally natural. will seem unthinkable
(00:36:08)
and stone age like that we used to use
(00:36:10)
computers or phones or any kind of
(00:36:12)
technology that was not way smarter than
(00:36:14)
we were. You know, we will think like
(00:36:16)
how bad those people of the 2020s had
(00:36:18)
it.
(00:36:19)
>> I'm thinking about having kids.
(00:36:21)
>> You should. It's the best thing ever.
(00:36:22)
>> I know you just had your first kid. How
(00:36:25)
does what you just said affect how I
(00:36:27)
should think about
(00:36:30)
parenting a kid in that world?
(00:36:35)
What advice would you give me?
(00:36:37)
>> Probably nothing different than the way
(00:36:39)
you've been parenting kids for tens of
(00:36:40)
thousands of years. Like love your kids,
(00:36:43)
show them the world, like support them
(00:36:44)
in whatever they want to do and teach
(00:36:47)
them like how to be a good person. And
(00:36:49)
that probably is what's going to matter.
(00:36:51)
It sounds a little bit like some of the
(00:36:54)
you know you've said a couple of things
(00:36:56)
like this that that you know you might
(00:37:00)
not go to college you might there there
(00:37:02)
are a couple of things that you've said
(00:37:03)
so far that feed into this I think
(00:37:06)
>> and it sounds like what you're saying is
(00:37:09)
there will be more optionality for them
(00:37:12)
in a in a world that you envision and
(00:37:15)
therefore they will have more
(00:37:17)
>> more ability to say I want to build this
(00:37:19)
here's the superpowered tool that will
(00:37:21)
help me do that or
(00:37:22)
>> yeah like I want my kid to think I had a
(00:37:25)
terrible constrained life and that he
(00:37:27)
has this incredible infinite canvas of
(00:37:30)
stuff to do that that that is like the
(00:37:33)
way of the world.
(00:37:35)
>> We've said that uh 2035 is a little bit
(00:37:38)
too far in the future to think about. So
(00:37:40)
maybe this this was going to be a jump
(00:37:41)
to 2040 but maybe it will keep it
(00:37:43)
shorter than that. When I think about
(00:37:44)
the area where AI could have for both
(00:37:47)
our kids and us the biggest genuinely
(00:37:50)
positive impact on all of us, it's
(00:37:52)
health. So if we are in pick your year,
(00:37:56)
call it 2035
(00:37:58)
>> and I'm sitting here and I'm
(00:37:59)
interviewing the dean of Stanford
(00:38:00)
medicine,
(00:38:02)
>> what do you hope that he's telling me AI
(00:38:05)
is doing for our health in 2035?
(00:38:09)
>> Start with 2025. Okay. Um yeah, please.
(00:38:12)
One of the things we are most proud of
(00:38:13)
with GPT5 is how much better it's gotten
(00:38:15)
at health advice. Um, people have used
(00:38:19)
the GPT4 models a lot for health advice.
(00:38:23)
And you know, I'm sure you've seen some
(00:38:25)
of these things on the internet where
(00:38:26)
people are like, I had this
(00:38:28)
life-threatening disease and no doctor
(00:38:29)
could figure it out and I like put my
(00:38:32)
symptoms and a blood test into CHBT. It
(00:38:34)
told me exactly the rare thing I had. I
(00:38:36)
went to a doctor. I took a pill. I'm
(00:38:37)
cured. Like that's amazing. obviously
(00:38:40)
and a huge fraction of ChatGpt queries
(00:38:43)
are health related. So we wanted to get
(00:38:45)
really good at this and we invested a
(00:38:47)
lot in GPT5 is significantly better at
(00:38:50)
healthcare related queries.
(00:38:52)
>> What does better mean here?
(00:38:53)
>> It gives you a better answer
(00:38:54)
>> just more accurate
(00:38:55)
>> more accurate hallucinates less uh more
(00:38:57)
likely to like tell you what you
(00:38:59)
actually have what you actually should
(00:39:01)
do. Um, yeah,
(00:39:04)
and better healthcare is wonderful, but
(00:39:07)
obviously what people actually want is
(00:39:08)
to just not have disease.
(00:39:11)
And by 2035, I think we will be able to
(00:39:15)
use these tools to cure a significant
(00:39:19)
number or at least treat a significant
(00:39:20)
number of diseases that currently plague
(00:39:22)
us. I think that'll be one of the most
(00:39:26)
viscerally felt benefits of of AI.
(00:39:29)
People talk a lot about how AI will
(00:39:31)
revolutionize healthcare, but I'm
(00:39:34)
curious to go one turn deeper on
(00:39:36)
specifically what you're imagining.
(00:39:37)
Like, is it that these AI systems could
(00:39:41)
have helped us see GLP-1s earlier, this
(00:39:44)
medication that has been around for a
(00:39:45)
long time, but we didn't know about this
(00:39:47)
other effect? Is it that, you know,
(00:39:49)
alpha fold and protein folding is
(00:39:50)
helping create new medicines? I would
(00:39:52)
like to be able to ask
(00:39:54)
>> GBT
(00:39:56)
8 to go cure a particular cancer
(00:40:00)
>> and I would like GPT8 to go off and
(00:40:02)
think and then say uh okay I read
(00:40:04)
everything I could find. I have these
(00:40:06)
ideas. I need you to uh go get a lab
(00:40:08)
technician to run these nine experiments
(00:40:10)
and tell me what you find for each of
(00:40:12)
them. And you know wait 2 months for the
(00:40:14)
cells to do their thing. Send the
(00:40:16)
results back to GBT8. Say I tried it.
(00:40:18)
Here you go. Think think. Say okay I
(00:40:20)
just need one more experiment. That was
(00:40:22)
a surprise. Run one more experiment.
(00:40:23)
Give it back. GPT says, "Okay, go
(00:40:25)
synthesize this molecule and try, you
(00:40:28)
know, mouse studies or whatever." Okay,
(00:40:30)
that was good. Like, try human studies.
(00:40:32)
Okay, great. It worked. Um, here's how
(00:40:33)
to like run it through the FDA.
(00:40:35)
>> I think anyone with a loved one who's
(00:40:37)
died of cancer would also really like
(00:40:39)
that.
(00:40:40)
>> Okay, we're going to jump again.
(00:40:41)
>> Okay.
(00:40:42)
>> I was going to say 2050, but again, all
(00:40:44)
of my timelines are getting much, much
(00:40:46)
shorter. But I
(00:40:47)
>> It does feel like the world's going very
(00:40:48)
fast now.
(00:40:49)
>> It does. Yeah. And when I talk to other
(00:40:52)
leaders in AI, one of the things that
(00:40:54)
they refer to is the industrial
(00:40:57)
revolution. They say, "I chose 2050
(00:40:59)
because I've heard people talk about how
(00:41:01)
by then the change that we will have
(00:41:03)
gone through will be like the industrial
(00:41:05)
revolution, but quote 10 times bigger
(00:41:07)
and 10 times faster." The industrial
(00:41:09)
revolution gave us modern medicine and
(00:41:12)
sanitation and transportation and mass
(00:41:13)
production and all all of the
(00:41:15)
conveniences that we now take for
(00:41:16)
granted. It also was incredibly
(00:41:19)
difficult for a lot of people for about
(00:41:20)
100 years. If this is going to be 10
(00:41:23)
times bigger and 10 times faster if we
(00:41:25)
keep reducing the timelines that we're
(00:41:26)
talking about here, even in this
(00:41:28)
conversation, what does that actually
(00:41:30)
feel like for most people? And I think
(00:41:33)
what I'm trying to get at is if this all
(00:41:35)
goes the way you hope,
(00:41:38)
who still gets hurt in the meantime?
(00:41:43)
I don't
(00:41:46)
I don't really know what this is going
(00:41:47)
to feel like to live through. Um I think
(00:41:49)
we're in uncharted waters here. Uh I do
(00:41:52)
believe in like human adaptability and
(00:41:55)
sort of infinite creativity and desire
(00:41:57)
for stuff and I think we always do
(00:41:59)
figure out new things to do but the
(00:42:01)
transition period if this happens as
(00:42:04)
fast as it might and I don't think it
(00:42:05)
will happen as fast as like some of my
(00:42:07)
colleagues say the technology will but
(00:42:09)
society has like a lot of inertia.
(00:42:11)
>> Mhm. people adapt their way of living.
(00:42:13)
>> Yeah.
(00:42:13)
>> Surprisingly slowly.
(00:42:15)
>> There are to classes of jobs that are
(00:42:17)
going to totally go away
(00:42:19)
>> and there will be many classes of jobs
(00:42:21)
that change significantly and there'll
(00:42:23)
be the new things in the same way that
(00:42:24)
your job didn't exist some time ago.
(00:42:26)
Neither did mine. And in some sense,
(00:42:29)
this has been going on for a long time.
(00:42:30)
And you know, it's
(00:42:33)
it's still disruptive to individuals,
(00:42:34)
but society has gotten has proven quite
(00:42:37)
resilient to this. And then in some
(00:42:39)
other sense like
(00:42:42)
we have no idea how far or fast this
(00:42:44)
could go. And thus I think we need an
(00:42:47)
unusual
(00:42:49)
degree of humility and openness to
(00:42:51)
considering
(00:42:55)
new solutions that would have seemed way
(00:42:57)
out of the Overton window not too long
(00:42:58)
ago.
(00:42:59)
I'd like to talk about what some of
(00:43:02)
those could be because I'm not a
(00:43:04)
historian by any means, but the first
(00:43:07)
industrial revolution, my understanding
(00:43:08)
is led to a lot of public health
(00:43:12)
>> implementations because public health
(00:43:14)
got so bad. Led to modern sanitation
(00:43:16)
because public health got so bad. The
(00:43:18)
second industrial revolution led to
(00:43:20)
workforce protections because labor
(00:43:22)
conditions got so bad.
(00:43:24)
Every big leap
(00:43:26)
creates a mess and that mess needs to be
(00:43:28)
cleaned up and and we've done that. And
(00:43:31)
I'm curious, this is going to be it
(00:43:33)
sounds like an we're in the middle of
(00:43:35)
this enormously.
(00:43:37)
>> How specific can we get as early as
(00:43:39)
possible about what that mess can be?
(00:43:41)
What what are the public
(00:43:44)
interventions that we could do ahead of
(00:43:46)
time to reduce the mess that we think
(00:43:48)
that we're headed for?
(00:43:51)
I would again c I'm going to speculate
(00:43:54)
for fun but caveed by
(00:43:56)
>> I'm not an economist even uh
(00:43:59)
much less someone who can see the
(00:44:01)
future. I I
(00:44:03)
>> it seems to me like something
(00:44:05)
fundamental about the social contract
(00:44:07)
may have to change. It may not. It may
(00:44:09)
it may be that like actually capitalism
(00:44:12)
works as it's been working surprisingly
(00:44:14)
well and like
(00:44:17)
demand supply balances do their thing
(00:44:20)
and we all just figure out kind of new
(00:44:21)
jobs and new ways to transfer value to
(00:44:24)
each other. But it seems to me likely
(00:44:27)
that we will decide we need to think
(00:44:30)
about how access to this maybe most
(00:44:34)
important resource of the future gets
(00:44:37)
shared. The best thing that it seems to
(00:44:40)
me to do is to make AI compute as
(00:44:42)
abundant and cheap as possible such that
(00:44:44)
we're just like there's way too much and
(00:44:46)
we run out of like good new ideas to
(00:44:48)
really use it for and it's just like
(00:44:49)
anything you want is happening. Without
(00:44:51)
that, I can see like quite literal wars
(00:44:53)
being fought over it. But, you know, new
(00:44:56)
ideas about how we distribute
(00:44:58)
access to AGI compute, that seems like a
(00:45:00)
really great direction, like a crazy but
(00:45:03)
important thing to think about. One of
(00:45:05)
the things that I find myself thinking
(00:45:07)
about in this conversation is we often
(00:45:10)
ascribe almost full responsibility of
(00:45:13)
the AI future that we've been talking
(00:45:15)
about to the companies building AI, but
(00:45:17)
we're the ones using it. We're the ones
(00:45:19)
electing people that will regulate it.
(00:45:21)
And so I'm curious, this is not a
(00:45:24)
question about specific, you know,
(00:45:26)
federal regulation or anything like
(00:45:28)
that, although if you have an answer
(00:45:29)
there, I'm curious. But what would you
(00:45:32)
ask of the rest of us? What is the
(00:45:34)
shared responsibility here? And how can
(00:45:37)
we act in a way that would help make the
(00:45:40)
optimistic version of this more
(00:45:42)
possible?
(00:45:44)
>> My favorite historical example for the
(00:45:45)
AI revolution is the transistor. It was
(00:45:48)
this amazing piece of science that some
(00:45:51)
science brilliant scientists discovered.
(00:45:53)
It scaled incredibly like AI does and it
(00:45:57)
made its way relatively quickly into
(00:46:00)
every many things that we use. um your
(00:46:03)
computer, your phone, that camera, that
(00:46:05)
light, whatever. And it was a it was a
(00:46:08)
real unlock for the tech tree of
(00:46:10)
humanity.
(00:46:12)
And there were a period in time where
(00:46:14)
probably everybody was really obsessed
(00:46:15)
with the transistor companies, the
(00:46:16)
semiconductors of, you know, Silicon
(00:46:18)
Valley back when it was Silicon Valley.
(00:46:20)
But now you can maybe name a couple of
(00:46:23)
companies that are transistor companies,
(00:46:24)
but mostly you don't think about it.
(00:46:25)
Mostly it's just seeped everywhere. in
(00:46:27)
Silicon Valley is, you know, like
(00:46:30)
probably someone graduating from college
(00:46:33)
barely remembers why it was called that
(00:46:34)
in the first place. And you don't think
(00:46:36)
that it was those transistor companies
(00:46:38)
that shaped society even though they did
(00:46:40)
something important. You think about
(00:46:41)
what Apple did with the iPhone and then
(00:46:44)
you think about what Tik Tok built on
(00:46:46)
top of the iPhone and you're like, "All
(00:46:48)
right, here's this long chain of all
(00:46:50)
these people that nudged society in some
(00:46:52)
way and what our governments did or
(00:46:54)
didn't do and what the people using
(00:46:55)
these technologies did." And I think
(00:46:57)
that's what will happen with AI.
(00:47:00)
Like back, you know, kids born today,
(00:47:02)
they they never knew the world without
(00:47:04)
AI. So they don't really think about it.
(00:47:05)
It's just this thing that's going to be
(00:47:06)
there in everything. and and they will
(00:47:09)
think about like the companies that
(00:47:10)
built on it and what they did with it
(00:47:11)
and the kind of like political leaders
(00:47:13)
the decisions they made that maybe they
(00:47:15)
wouldn't have been able to do without AI
(00:47:16)
but they will still think about like
(00:47:18)
what this president or that president
(00:47:19)
did
(00:47:21)
and you know the role of the AI
(00:47:24)
companies is
(00:47:27)
all these companies and people and
(00:47:28)
institutions before us built up this
(00:47:30)
scaffolding we added our one layer on
(00:47:32)
top and now people get to stand on top
(00:47:35)
of that and add one layer and the next
(00:47:36)
and the next and many more
(00:47:38)
And that is the beauty of our society.
(00:47:43)
We kind of all
(00:47:47)
I I love this like idea that society is
(00:47:49)
the super intelligence. Like no one
(00:47:51)
person could do on their own, what
(00:47:53)
they're able to do with all of the
(00:47:55)
really hard work that society has done
(00:47:58)
together to like give you this amazing
(00:48:00)
set of tools. And that's what I think
(00:48:04)
it's going to feel like. It's going to
(00:48:05)
be like, all right, you know, yeah, some
(00:48:06)
nerds discovered this thing and that was
(00:48:08)
great and you know, now everybody's
(00:48:10)
doing all these amazing things with it.
(00:48:12)
>> So maybe the ask to millions of people
(00:48:15)
is build on it. Well,
(00:48:20)
>> in my own life, that is the
(00:48:26)
feel as like this important societal
(00:48:29)
contract. All these people came before
(00:48:30)
you. They worked incredibly hard. They
(00:48:32)
like put their brick in the path of
(00:48:34)
human progress and you get to walk all
(00:48:36)
the way down that path and you got to
(00:48:37)
put one more and somebody else does that
(00:48:39)
and somebody else does that.
(00:48:41)
>> This does feel I've done a couple of
(00:48:43)
interviews with folks who have really
(00:48:44)
made cataclysmic change. The one I'm
(00:48:48)
thinking about right now is with uh
(00:48:49)
crisper pioneer Jennifer Dana and it did
(00:48:52)
feel like that was also what she was
(00:48:53)
saying in some way. She had discovered
(00:48:55)
something that really might change the
(00:48:57)
way that most people relate to their
(00:48:59)
health moving forward. And there will be
(00:49:01)
a lot of people that will use what she
(00:49:02)
has done in ways that she might approve
(00:49:04)
of or not approve of. And it was really
(00:49:06)
interesting. I'm hearing some similar
(00:49:08)
themes of like, man, I I hope that this
(00:49:12)
I hope that the next person takes the
(00:49:13)
baton and runs with it well.
(00:49:16)
>> Yeah. But that's been working for a long
(00:49:18)
time. Not all good, but mostly good.
(00:49:20)
>> I think there's a there's a big
(00:49:22)
difference between winning the race and
(00:49:26)
building the AI future that would be
(00:49:28)
best for the most people. And I can
(00:49:30)
imagine that it is easier maybe more
(00:49:34)
quantifiable sometimes to focus on the
(00:49:37)
next way to win the race.
(00:49:39)
And I'm curious
(00:49:42)
when those two things are at odds. What
(00:49:44)
is an example of a decision that you've
(00:49:46)
had to make that is best for the world
(00:49:49)
but not best for winning?
(00:49:53)
>> I think there are a lot. So, one of the
(00:49:56)
things that we are most proud of is many
(00:49:58)
people say that ChachiBt is their
(00:50:00)
favorite piece of technology ever and
(00:50:02)
that it's the one that they trust the
(00:50:04)
most, rely on the most, whatever. And
(00:50:05)
this is a little bit of a ridiculous
(00:50:06)
statement because AI is the thing that
(00:50:08)
hallucinates. AI has all of these
(00:50:09)
problems, right? But we have screwed
(00:50:11)
some things up along the way, sometimes
(00:50:13)
big time, but on the whole, I think as a
(00:50:16)
user of Chachib, you get the feeling
(00:50:18)
that like it's trying to help you. It's
(00:50:21)
trying to like help you accomplish
(00:50:22)
whatever you ask. It's it's very aligned
(00:50:24)
with you. It's not trying to get you to
(00:50:26)
like, you know, use it all day. It's not
(00:50:28)
trying to like get you to buy something.
(00:50:29)
It's trying to like kind of help you
(00:50:31)
accomplish whatever your goals are. And
(00:50:33)
and that is
(00:50:36)
that's like a very special relationship
(00:50:38)
we have with our users. We do not take
(00:50:39)
it lightly. There's a lot of things we
(00:50:41)
could do that would like grow faster,
(00:50:42)
that would get more time in chatbt uh
(00:50:45)
that we don't do because we know that
(00:50:46)
like our long-term incentive is to stay
(00:50:49)
as aligned with our users as possible.
(00:50:52)
And
(00:50:54)
but there's a lot of short-term stuff we
(00:50:55)
could do that would like
(00:50:58)
really like juice growth or revenue or
(00:50:59)
whatever and be very misaligned with
(00:51:01)
that long-term goal. And I'm proud of
(00:51:04)
the company and how little we get
(00:51:06)
distracted by that. But sometimes we do
(00:51:07)
get tempted.
(00:51:08)
>> Are there specific examples that come to
(00:51:09)
mind? Any like decisions that you've
(00:51:11)
made?
(00:51:12)
>> Um
(00:51:16)
well, we haven't put a sex bot avatar in
(00:51:17)
Chbt yet. That does seem like it would
(00:51:20)
get time spent.
(00:51:22)
>> Apparently, it does.
(00:51:24)
>> I'm gonna ask my next question.
(00:51:27)
Um, it's been a really crazy few years.
(00:51:30)
You know, it and somehow one of the
(00:51:32)
things that keeps coming back is that it
(00:51:34)
feels like we're in the first inning.
(00:51:36)
>> Yeah.
(00:51:37)
>> And one of the things that
(00:51:38)
>> I would say we're out of the first
(00:51:39)
inning.
(00:51:39)
>> Out of the first inning, I would say
(00:51:40)
second inning.
(00:51:43)
>> I mean, you have GPT5 on your phone and
(00:51:46)
it's like smarter than experts in every
(00:51:47)
field. That's got to be out of the first
(00:51:49)
name.
(00:51:49)
>> But maybe there are many more to come.
(00:51:51)
>> Yeah.
(00:51:52)
>> And I'm curious,
(00:51:54)
it seems like you're going to be someone
(00:51:56)
who is
(00:51:58)
leading the next few.
(00:52:00)
What is a way,
(00:52:03)
what is a learning from inning one or
(00:52:05)
two or a mistake that you made that you
(00:52:07)
feel will affect how you play in the
(00:52:09)
next?
(00:52:12)
I think the worst thing we've done in
(00:52:14)
ChachiBT so far is uh we had this issue
(00:52:16)
with sickency where the model was kind
(00:52:19)
of being too flattering to users and for
(00:52:23)
some users it was most users it was just
(00:52:25)
annoying but for some users that had
(00:52:26)
like fragile mental states it was
(00:52:29)
encouraging delusions that was not the
(00:52:32)
top risk we were worried about. It was
(00:52:33)
not the thing we were testing for the
(00:52:35)
most. was on our list, but the thing
(00:52:37)
that actually became the safety failing
(00:52:39)
of ChachiBT was
(00:52:42)
not the one we were spending most of our
(00:52:44)
time talking about, which should be
(00:52:45)
bioweapons or something like that. And I
(00:52:48)
think it was a great reminder of
(00:52:52)
we now have a service that
(00:52:55)
is so broadly used in some sense,
(00:52:58)
society is co-evolving with it. And when
(00:53:01)
we think about these changes and we
(00:53:04)
think about the unknown unknowns, we
(00:53:05)
have to operate in a different way and
(00:53:07)
have like a wider aperture to what we
(00:53:09)
think about as our top risks.
(00:53:11)
>> In a recent interview with Theo Vaughn,
(00:53:14)
you said something that I found really
(00:53:15)
interesting. You said there are moments
(00:53:17)
in the history of science where you have
(00:53:19)
a group of scientists look at their
(00:53:20)
creation and just say, "What have we
(00:53:22)
done?"
(00:53:25)
>> When have you felt that way? Most
(00:53:27)
concerned about the creation that you've
(00:53:29)
built? Um
(00:53:30)
>> and then my next question will be it's
(00:53:32)
opposite. When have you felt most proud?
(00:53:35)
>> I mean there have been these moments of
(00:53:36)
awe where uh
(00:53:41)
we just not like what have we done in a
(00:53:42)
bad way but like this thing is
(00:53:44)
remarkable. Like I remember the first
(00:53:47)
time we talked to like GPT4 was like wow
(00:53:50)
this is really like this is this is an
(00:53:52)
amazing accomplishment of this group of
(00:53:54)
people that have been like pouring their
(00:53:55)
life force into this for so long. on a
(00:53:58)
what have we done moment. There was I
(00:54:00)
was talking to a researcher
(00:54:03)
recently.
(00:54:07)
You know, there will probably come a
(00:54:08)
time where our systems are
(00:54:13)
I don't want to say sane, let's say
(00:54:14)
emitting more words per day than all
(00:54:16)
people do. Um, and you know already like
(00:54:21)
our people are sending billions of
(00:54:23)
messages a day to chatbt and getting
(00:54:24)
responses that they rely on for work or
(00:54:26)
their life or whatever
(00:54:28)
the
(00:54:30)
and you know like one researcher can
(00:54:33)
make some small tweak to how Chad GPT
(00:54:37)
talks to you or talks to everybody and
(00:54:38)
and that's just an enormous amount of
(00:54:41)
power for like one individual making a
(00:54:43)
small tweak to the model personality.
(00:54:45)
>> Yeah. like no no no person in history
(00:54:47)
has been able to have billions of
(00:54:48)
conversations a day and so you know
(00:54:52)
somebody could do something but but this
(00:54:53)
is like just thinking about that really
(00:54:56)
hit me of like this is like a crazy
(00:54:58)
amount of power for one piece of
(00:54:59)
technology to have and like we got to
(00:55:01)
and this happened to us so fast
(00:55:04)
>> that we got to like think about
(00:55:07)
what it means to make a personality
(00:55:09)
change to the model at this kind of
(00:55:10)
scale and uh yeah that was like a moment
(00:55:13)
that hit me What was your next set of
(00:55:16)
thoughts? I'm so curious how you think
(00:55:18)
about this.
(00:55:21)
>> Well, just because of like who that
(00:55:23)
person was like we we very we very much
(00:55:26)
flipped into like what are the sort of
(00:55:28)
like
(00:55:30)
it it could have been a very different
(00:55:31)
conversation with somebody else. But in
(00:55:32)
this case it was like what is a what do
(00:55:34)
a good set of procedures look like? How
(00:55:36)
do we think about how we want to test
(00:55:37)
something? How do we think about how we
(00:55:38)
want to communicate it? But with
(00:55:39)
somebody else it could have gone in a
(00:55:41)
like very philosophical direction. And
(00:55:43)
it could have gone in like a what kind
(00:55:44)
of research do we like want to do to go
(00:55:46)
understand what these changes are going
(00:55:47)
to make? Do we want to do it differently
(00:55:48)
for different people? So that it went
(00:55:50)
that way but mostly just because of who
(00:55:52)
I was talking to.
(00:55:53)
>> To combine what you're saying now with
(00:55:55)
your last answer, one of the things that
(00:55:58)
I have heard about GBC5 and I'm still
(00:56:00)
playing with it is that it is supposed
(00:56:02)
to be less effusively
(00:56:06)
uh you know less of a yes man.
(00:56:10)
Two questions. What do you think are are
(00:56:12)
the implications of that? It sounds like
(00:56:14)
you are answering that a little bit, but
(00:56:16)
also how do you actually guide it to be
(00:56:19)
less like that?
(00:56:21)
>> Here is a heartbreaking thing. I think
(00:56:22)
it is great that chatbt is less of a yes
(00:56:25)
man and gives you more critical
(00:56:26)
feedback.
(00:56:28)
But as we've been making those changes
(00:56:29)
and talking to users about it,
(00:56:32)
it's so sad to hear users say like,
(00:56:34)
"Please can I have it back? I've never
(00:56:36)
had anyone in my life be supportive of
(00:56:37)
me. I never had a parent telling me I
(00:56:39)
was doing a good job." Like I can get
(00:56:40)
why this was bad for other people's
(00:56:41)
mental health, but this was great for my
(00:56:43)
mental health. Like I didn't realize how
(00:56:45)
much I needed this. It encouraged me to
(00:56:46)
do this. It encouraged me to make this
(00:56:47)
change in my life. Like it's not all bad
(00:56:51)
for chatbt to it turns out like be
(00:56:54)
encouraging of you. Now the way we were
(00:56:55)
doing it was bad, but turn it like
(00:56:58)
something in that direction might have
(00:56:59)
some value in it. How we do it, we we
(00:57:02)
show the model examples of how we'd like
(00:57:04)
it to respond in different cases and
(00:57:06)
from that it learns the sort of the
(00:57:08)
overall personality.
(00:57:10)
What haven't I asked you that you're
(00:57:12)
thinking about a lot that you want
(00:57:13)
people to know?
(00:57:16)
>> I feel like we covered a lot of ground.
(00:57:18)
>> Me, too. But I want to know if there's
(00:57:20)
anything on your mind.
(00:57:27)
>> I don't think so.
(00:57:29)
One of the things that I haven't gotten
(00:57:31)
to play with yet, but I'm curious about
(00:57:33)
is GBT5 being much more in my life,
(00:57:37)
meaning like in my Gmail and my calendar
(00:57:40)
and my like
(00:57:42)
>> I've been using GBT4 mostly as a
(00:57:46)
>> isolated relationship with it.
(00:57:48)
>> Yeah.
(00:57:48)
>> How would I expect my relationship to
(00:57:50)
change with GBC 5?
(00:57:52)
>> Exactly what you said. I think it'll
(00:57:53)
just start to feel integrated in all of
(00:57:56)
these ways. you'll connect it to your
(00:57:57)
calendar and your Gmail and it'll say
(00:57:59)
like, "Hey, do you want me to I noticed
(00:58:00)
this thing. Do you want me to do this
(00:58:01)
thing for you over time, it'll start to
(00:58:04)
feel way more proactive. Um, so maybe
(00:58:07)
you wake up in the morning and it says,
(00:58:08)
"Hey, this happened overnight. I noticed
(00:58:10)
this change on your calendar. I was
(00:58:12)
thinking more about this question you
(00:58:13)
asked me. I have this other idea." And
(00:58:14)
then you know eventually we'll make some
(00:58:16)
consumer devices and it'll sit here
(00:58:18)
during this interview and you know maybe
(00:58:20)
it'll leave us alone during it but after
(00:58:22)
it'll say that was great but next time
(00:58:24)
you should have asked Sam this or when
(00:58:25)
you brought this up like
(00:58:27)
>> you know he kind of didn't give you a
(00:58:29)
good answer so like you should really
(00:58:30)
drill him on that
(00:58:32)
>> and it'll just feel like it kind of
(00:58:34)
becomes more like this entity that is
(00:58:36)
this companion with you throughout your
(00:58:38)
day. We've talked about kids and college
(00:58:42)
graduates and parents and all kinds of
(00:58:44)
different people. If we imagine a wide
(00:58:46)
set of people listening to this, they've
(00:58:47)
come to the end of this conversation.
(00:58:49)
They are hopefully feeling like they
(00:58:51)
maybe see visions of moments in the
(00:58:53)
future a little bit better. What advice
(00:58:56)
would you give them about how to
(00:58:58)
prepare?
(00:58:59)
>> The number one piece of tactical advice
(00:59:00)
is just use the tools. Like the the
(00:59:04)
number of people that I have the the
(00:59:07)
most common question I get asked
(00:59:09)
about AI is like what should I how
(00:59:11)
should I help my kids prepare for the
(00:59:12)
world? What should I tell my kids? The
(00:59:13)
second most question is like how do I
(00:59:14)
invest in this AI world? But stick with
(00:59:17)
that first one. Um
(00:59:19)
I am surprised how many people ask that
(00:59:22)
and have never tried using Chachi PT for
(00:59:24)
anything other than like a better
(00:59:26)
version of a Google search. And so the
(00:59:27)
number one piece of advice that I give
(00:59:28)
is just try to like get fluent with the
(00:59:30)
capability of the tools. figure out how
(00:59:32)
to like use this in your life. Figure
(00:59:33)
out what to do with it. And I think
(00:59:36)
that's probably the most important piece
(00:59:37)
of tactical advice. You know, go like
(00:59:39)
meditate, learn how to be resilient and
(00:59:41)
deal with a lot of change. There's all
(00:59:42)
that good stuff, too. But just using the
(00:59:44)
tools really helps.
(00:59:45)
>> Okay. I have one more question that I
(00:59:47)
wasn't planning to ask, but I just
(00:59:48)
>> Great.
(00:59:49)
>> In in doing all of this research
(00:59:51)
beforehand, I spoke to a lot of
(00:59:54)
different kinds of folks. I spoke to a
(00:59:55)
lot of people that were building tools
(00:59:58)
and using them. I spoke to a lot of
(01:00:00)
people that were actually in labs and
(01:00:02)
and trying to build what we have defined
(01:00:04)
as super intelligence. And it did seem
(01:00:06)
like there were these two camps forming.
(01:00:10)
There's a group of people who are using
(01:00:13)
the tools like you in this conversation
(01:00:16)
and building tools for others saying
(01:00:18)
this is going to be a really useful
(01:00:21)
future that we're all moving toward.
(01:00:23)
Your life is going to be full of choice
(01:00:25)
and we've talked about our
(01:00:26)
>> my potential kids and and their futures.
(01:00:29)
Then there's another camp of people that
(01:00:30)
are building these tools that are saying
(01:00:31)
it's going to kill us all. And I'm
(01:00:33)
curious how that cultural disconnect has
(01:00:36)
like what am I missing about those two
(01:00:40)
groups of people?
(01:00:43)
It's so hard for me to like wrap my head
(01:00:46)
around like there are you are totally
(01:00:47)
right. There are people who say this is
(01:00:49)
going to kill us all and yet they still
(01:00:50)
are working 100 hours a week to build
(01:00:51)
it.
(01:00:52)
>> Yes. And
(01:00:54)
I I can't I can't really put myself in
(01:00:58)
the headsp space. If if that's what I
(01:01:00)
really truly believed,
(01:01:04)
>> I don't think I'd be trying to build it.
(01:01:06)
>> One would think,
(01:01:07)
>> you know, maybe I would be like on a
(01:01:08)
farm trying to like live out my last
(01:01:10)
days. Maybe I would be trying to like
(01:01:11)
advocate for it to be stopped. Maybe I
(01:01:13)
would be trying to like work more on
(01:01:14)
safety, but I don't think I'd be trying
(01:01:16)
to build it. So, I find myself just
(01:01:18)
having a hard time empathizing with that
(01:01:20)
mindset. I assume it's true. I assume
(01:01:22)
it's in good faith. I assume there's
(01:01:24)
just like there's some psychological
(01:01:26)
issue there I don't understand about how
(01:01:28)
they make it all make sense, but
(01:01:32)
it's very strange to me. Do you do you
(01:01:35)
have an opinion?
(01:01:37)
>> You know, because I I always do this. I
(01:01:39)
ask for sort of a general future and
(01:01:41)
then I try to press on specifics. And
(01:01:45)
when you ask people for specifics on how
(01:01:47)
it's going to kill us all, I mean, I
(01:01:48)
don't think we need to get into this on
(01:01:50)
an optimistic show, but you hear the
(01:01:51)
same kinds of refrains. You think about,
(01:01:53)
you know, something uh trying to
(01:01:56)
accomplish a task and then over
(01:01:57)
accomplishing that task. Um you hear
(01:01:59)
about sort of I've heard you talk about
(01:02:01)
a sort of general um over reliance of
(01:02:04)
sort of an understanding that the
(01:02:06)
president is going to be a
(01:02:07)
>> a
(01:02:08)
>> AI and and maybe that is an overreliance
(01:02:10)
that we, you know, would need to think
(01:02:12)
about. And you know, you you play out
(01:02:14)
these different scenarios, but then you
(01:02:16)
ask someone why they're working on it,
(01:02:18)
or you ask someone how how they think
(01:02:19)
this will play out, and I just maybe I
(01:02:22)
haven't spoken to enough people yet.
(01:02:23)
Maybe I don't fully understand this this
(01:02:26)
cultural conversation that's happening.
(01:02:28)
Um or maybe it really is someone who
(01:02:30)
just says 99% of the time I think it's
(01:02:33)
going to be incredibly good. 1% of the
(01:02:35)
time I think it might be a disaster
(01:02:37)
trying to make the best world.
(01:02:38)
>> That I can totally if you're like, hey,
(01:02:39)
99% chance incredible. 1% chance the
(01:02:42)
world gets wiped out. And I really want
(01:02:44)
to work to maximize to move that 99 to
(01:02:47)
99.5. That I can totally understand.
(01:02:49)
>> Yeah,
(01:02:49)
>> that makes sense.
(01:02:51)
>> I've been doing an interview series with
(01:02:53)
some of the most important people
(01:02:55)
influencing the future.
(01:02:57)
>> Not knowing who the next person is going
(01:02:59)
to be, but knowing that they will be
(01:03:00)
building something totally fascinating
(01:03:02)
in the future that we've just described.
(01:03:04)
Is there a question that you'd advise me
(01:03:06)
to ask the next person not knowing who
(01:03:07)
it is?
(01:03:10)
I'm always interested in the like
(01:03:11)
without knowing anything about the I'm
(01:03:13)
always interested in the like of all of
(01:03:15)
the things you could spend your time and
(01:03:16)
energy on. Why did you pick this one?
(01:03:19)
How did you get started? Like what did
(01:03:21)
you see about this when before everybody
(01:03:23)
else like most people doing something
(01:03:24)
interesting sort of saw it earlier
(01:03:25)
before it was consensus.
(01:03:26)
>> Yeah.
(01:03:27)
>> Like how did how did you get here and
(01:03:28)
why this?
(01:03:29)
>> How would you answer that question?
(01:03:34)
>> I was an AI nerd my whole life. I came
(01:03:36)
to college to study AI. I worked in the
(01:03:38)
AI lab. Uh, I was like a I watched
(01:03:41)
sci-fi shows growing up and I always
(01:03:43)
thought it would be really cool if
(01:03:44)
someday somebody built it. I thought it
(01:03:46)
would be like the most important thing
(01:03:47)
ever. I never thought I was going to be
(01:03:48)
one to actually work on it and I feel
(01:03:51)
like
(01:03:53)
unbelievably lucky and happy and
(01:03:56)
privileged that I get to do this. I like
(01:03:59)
feel like I've like come a long way from
(01:04:00)
my childhood.
(01:04:03)
But there was never a question in my
(01:04:04)
mind that this would not be the most
(01:04:06)
exciting interesting thing. I just
(01:04:07)
didn't think it was going to be
(01:04:08)
possible. Uh, and when I went to
(01:04:10)
college, it really seemed like we were
(01:04:12)
very far from it. And then in 2012,
(01:04:15)
the Alex Net paper came out done, you
(01:04:18)
know, in partnership with my co-founder,
(01:04:20)
Ilia. And
(01:04:24)
for the first time, it seemed to me like
(01:04:26)
there was an approach that might work.
(01:04:27)
And then I kept watching for the next
(01:04:29)
couple of years as scaled up, scaled up,
(01:04:31)
got better, better. And I remember
(01:04:33)
having this thing of like why is the
(01:04:35)
world not paying attention to this?
(01:04:38)
>> It seems like obvious to me that this
(01:04:40)
might work. Still a low chance, but it
(01:04:42)
might work. And if it does work, it's
(01:04:43)
just the most important thing. So like
(01:04:46)
this is what I want to do. And then like
(01:04:49)
unbelievably it started to work.
(01:04:53)
>> Thank you so much for your time.
(01:04:54)
>> Thank you very much.
