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Title: The Problem With AI: Connor Leahy (4K)
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I don't think the future looks good. I
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don't think humanity is going to survive
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this by default. And people sometimes
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ask me like, surely humans would stop,
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you know, AI. And I'm like, really?
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Really? Have you take a look around how
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people are reacting to AI and how AI is
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manipulating people? Just wait until
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people start advocating for AI rights.
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Like, it's already starting, right?
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Where people are like, "Oh, my
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girlfriend should have human rights.
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Like, she's real."
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>> Connor Ley is the CEO of Conjecture, an
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AI startup working on aligning AI
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systems to human values. James and
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Connor discuss the weird developments in
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AI relationships, the scary future of
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AI, and
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>> Connor, what is the problem with AI?
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>> ASI would be a system. It doesn't have
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to be a single model. It could be many
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models working together that is smarter
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than all of humanity put together. Such
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a system, if it existed, it would be
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game over for humanity. And ASI could
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keep humans around if it wanted to. It
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could exterminate everyone if it wanted.
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This only gets worse.
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>> What is the solution? What can we do?
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What are the actionable points? What's
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the light at the end of the tunnel? The
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good news is that we haven't yet lost.
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The bad news is is that we're on track
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to lose.
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So, the main thing we must do is
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>> this podcast is brought to you by
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Newtonic. Look, we don't have any fancy
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sponsors for this podcast. So, thank you
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to all of you that drink New Tonic. It
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energy drink, but much better. Although,
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really allowed to say that. And if
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to the podcast episode? That'd be nice,
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wouldn't it? Head to neutonic.com.
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Bye-bye.
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>> Connor, what is the problem with AI?
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>> Well, starting with the easy questions,
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aren't we?
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>> AI is a really big topic. I mean, it's a
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thing that all of us is talking about.
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It seems to be everywhere, right? Like,
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you know, you got your chat GPTs, you
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got, you know, deep fakes, you got, you
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know, full-on musical artists that are
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just AI generated. Now, it seems like
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everything's being AI generated. And
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this can make it kind of overwhelming to
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like even understand like what the hell
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is going on? Like what what does an adus
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mean? And that's the problem.
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AI in a sense is different from other
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software. With normal software, the way
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it works is say a programmer like me
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will sit down and they'll write code
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computer code which will be like
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instructions to the computer what it's
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supposed to do like do this then do
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that. If this happens do that etc etc.
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So somewhere there's some guy who sat
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down and told the computer what to do.
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AI is different. AI is more like grown
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rather than written. You take what's
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called the neural network, which is kind
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of like a big pile of numbers, billions
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and billions of numbers, and you put a
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massive amount of data in it, such as,
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you know, like here's my input. I want
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you to give me this output. Here's my
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input. I want you to give me this
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output. And you run you put the whole
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thing to a massive supercomputer, you
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know, sitting somewhere in the Arizona
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desert or whatever. You know, you let it
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cook for a couple months and it spews
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out this thing called a model. So, a
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bunch of numbers. And if you execute
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these things, these numbers, if you run
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them on your computer, suddenly your
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computer can talk to you. Why? We don't
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actually really know. Like not really.
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Like we have the numbers, we can look at
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them, but we don't really understand how
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they work. And this is really where the
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problem starts. Software is already such
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a core part of our society, you know,
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whether it's social media or, you know,
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various algorithms that decide how
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governments work, how decisions get made
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and so on. And now our software is
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becoming more complex.
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harder to understand, more powerful, and
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increasingly autonomous. More and more,
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these systems don't require a human in
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the loop anymore to tell them what to do
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or how to do something. They figure it
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out themselves. And so, if this keeps
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continuing, we have less and less
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understanding and control of what is
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happening in society. We have less and
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less ability to intervene. And more and
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more the decisions are going to be made
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by things that are not humans until one
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day potentially there'll be no more
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decisions being made by humans. It's
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interesting because what I see online a
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lot is that a lot of people are saying
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how amazing AI is because they have an
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agenda whether it's marketing whether
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it's attention whether it's a seminar or
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a webinar that they're conducting and
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they use a few tools online and they go
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this is my way of getting 10,000 email
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addresses on LinkedIn. So so much of the
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conversation of mine is is positive and
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to hear you talk about and be wary of
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and be critical about the direction in
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which we're moving goes almost against
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the grain of what most people, you know,
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people in the pub are having a
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conversation. They go, "Oh, I've just
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put my tax return through chat GBT. I
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think I'm going to save myself a bit of
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money." There's not enough conversations
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online that are negative about AI. Why
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is this?
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>> There's a few ways we can think about
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this. Um, one is kind of thing you just
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said is that the people who are
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dominating the conversations are to a
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large degree people who are set to
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benefit from AI systems. The people that
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are doing social media marketing, you
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know, who run, you know, you know,
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there's the positive aspect of this, you
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know, people who produce nice podcast
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shows and, you know, and nice content.
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And then there's the huge swap forms in
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third world countries that are
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absolutely [ __ ] up all of Facebook
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and, you know, all of Twitter and so on
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that benefit massively from this kind of
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stuff. So they're going to be the ones
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who by bulk you see the most because
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they dominate massive amounts of the
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social media landscape. So me and um my
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colleagues at nonprofit I work with
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called Control AI for example have
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actually run polling around AI risk and
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uh attitudes toward AI systems among the
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general public and actually they're very
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negative. They're actually
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overwhelmingly negative. the uh
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attitudes towards AI and also stuff like
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tech CEOs and big tech is some of the
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most universally negative bipartisan
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sentiment unlike I've seen in like
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almost any political issue I've
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personally been involved with. So
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there's a weird disconnect here. On the
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one hand, people are nervous. If you
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talk to normal people on the streets and
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they're like, "Hey, there's these tech
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billionaires in San Francisco who are
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building these systems that they say are
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going to replace all humans and they
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don't know how to control it. How do you
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feel about that?" And universally,
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they'll say bad. I feel really bad about
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that. On the other hand, as you see, we
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have this massive positive sentiment as
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well. And I think this is just the dual
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nature of power. Like fundamentally, if
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I give power, if I produce a new source
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of power, it's always dual use. It's
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always two-edged. On the one hand, more
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power can mean I can do more things.
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Like I use AIS all the time. They're
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like, you know, both for work and for
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fun. Like they're fun generating images
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or stories. It's fun. It's good. It's a
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good toy. And it's also something I use
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in my work, in my day-to-day, you know,
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programming and so on all the time. So
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the question is not like is it like
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morally bad, it's what do we do with it?
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I think social media is another great
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example of this. When social media was
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first created, I don't know if people
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really still remember this, but I really
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remember this. Like I really grew up on
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the internet when I was quite young. I
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was part of like you know it's like
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classic like you know hackers freedom
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you know lovers you know like you know
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and people truly deeply believed that
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once the internet goes everywhere in the
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world well then all countries will
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become democracies because there will be
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so much freedom and so much you know
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have all the information that everyone
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will become peaceful and free and
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democratic. People really believe this
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you know also the Arab Spring and stuff
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like this and this is not what happened.
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This is just empirically not what
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happened is that the internet became a
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mass tool of you know surveillance of
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oppression of ability to set narratives
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control narratives in ways that were not
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possible previously and this isn't new
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every new communications technology also
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brings a revolution in how states and
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politics is conducted
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>> like the printing press and what they
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put in newspapers which could
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politically lean left and right.
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>> Exactly. But another one would have been
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uh you know with elections and Facebook
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and uh Cambridge Analytica and all of
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these and this again would have had
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algorithms in place that would you know
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take people's information and serve them
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certain stuff but that was what 2016
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>> but now 10 years later 10 years more
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advanced y
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>> uh we now whether or not I know the
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actual facts about it but we're seeing
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potentially foreign entities trying to
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disrupt American mainstream political uh
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opinions and them saying, you probably
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know more than this than me about the
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amount of fake accounts on social media
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that are there just to rob people up. Is
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that is that something that's true?
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>> Oh yes, absolutely. It's like and it's
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so much worse than people think. Like
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misinformation has kind of become a
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slur, but like like you don't understand
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how bad it is. Like I like to talk about
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SCOPS more than like misinformation
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because like that term kind of doesn't
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mean anything anymore. like the amount
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of professionalized actual effort of
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various entities whether these are
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professional or whe these are
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intelligence agencies or even private
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corporations to manipulate people's
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minds, thoughts, beliefs, etc. is at a
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scale just humanity has never faced
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before. Like imagine it's the 1950s
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and a group of Soviets came to
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Washington DC and put up a radio tower
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to broadcast Soviet propaganda. What do
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you think would happen to them?
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>> Yeah, not good things.
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>> Yeah, they'd be arrested. They'd
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disappear to a black site immediately.
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you've never heard from again. But
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meanwhile, you go on Twitter and you can
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get blasted with, you know, Russian
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propaganda directly to your mom's brain
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stem, you know, 24/7. And if anyone
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complains about it, everyone yells
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censorship. Well, and who's yelling
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censorship? Well, a lot of these people,
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of course, are also then, you know,
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people who are benefiting from this kind
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of unfiltered access to the minds of
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everyone in every country. To be clear,
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it also goes both ways. I'm sure Western
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countries are also propagandizing the
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other ones, blah blah blah. What I'm
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saying is not I'm not trying to make a
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case of like ah this is good propaganda
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or bad propaganda. What I'm saying is
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that it's a massive risk factor that is
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not being managed like there has to be
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some management here like of some kind.
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I think in the UK as well, um it's
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interesting every time I come home and
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have dinner with my parents, the
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conversations, the opinions uh about so
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many different things are so vastly
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different and I joke around and say my
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parents are can tell you've been reading
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the Daily Mail or you've been watching
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the BBC and that rs them up even
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further, but it's so true that we we
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almost now every time I come back
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there's more uh you know more
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disagreements than ever before. And I'm
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thinking even again, not to get down
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that rabbit hole, when I see people on
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planes, a group of four people wearing
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masks, I'm like, what what news are you
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watching? Because I didn't feel
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compelled to cover my face on this
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flight for 21 hours or whatever it is.
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So, I'm I'm kind of always fascinated by
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that. Now, just before we get too far
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into, you know, propaganda and what the
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Russians are up to, there's whenever
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there's a conversation around AI, we
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have AI, then we have AGI and ASI. Am I
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right in thinking? Now this is the point
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where usually I hear these acronyms and
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I think I do not know enough about this
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to listen any further. You will be the
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perfect person to explain what is the
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difference between AI and AGI when
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someone says that.
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>> So unfortunately this depends on the
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person. So these are not technical
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terms. Uh I can tell you what I mean
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when they use these terms. So AI
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artificial intelligence is the kind of
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tools we're seeing nowadays. The the
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meaning of the word AI has changed a lot
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over the decades. So the word was
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actually coined in the 1950s and it
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meant a very different thing back then
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and now and then especially in the 1980s
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the meaning changed again and then it
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changed like
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>> in the 1950s what kind of thing I would
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love to know what what were they
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scheming back then
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>> so there's a wonderful little piece of
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history here where I recommend googling
(00:10:55)
uh called the darkness conference which
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is where the word AI was coined and they
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they had a nice little like onepage
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explanation what they wanted to do and
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basically they said that um I forgot who
(00:11:06)
the professor in charge which was it was
(00:11:07)
a Minsky or someone else but it doesn't
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matter he said that uh he expected that
(00:11:11)
with the help of 10 grad students they
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should be able to make you know large
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progress on image recognition generation
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and you know I think like not chatting
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but like you know generation of text
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over a summer like that's what they
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thought back then which is really funny
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so uh they had no conception of how hard
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the problem was back then even as far
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back as Alan Turing who is the godfather
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of the field of um computer science
(00:11:36)
talked And he was the guy that cracked
(00:11:38)
the Enigma code.
(00:11:39)
>> Yes. Very famous codebreaker in the
(00:11:40)
Second World War here in Britain in by
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Bley Park. Um and he also talked about
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artificial intelligence. There's a
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famous um talk he gave in Manchester I
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think in like 52 or something. Um where
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he talks about this heretical idea of m
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that machines eventually will think as
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well or better than humans and that
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eventually they won't need us
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potentially anymore because they can
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just converse with each other. Uh so the
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idea of artificial intelligence is
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really closely linked to the found the
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core of the field of computer science.
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It's not a new idea. It's not a new
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thing that just popped up you know like
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you know a couple years ago. This is a
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thing that's been it's a dream that's
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been with the field of computer science
(00:12:21)
since very inception. And the dream is
(00:12:22)
to create machines that think like we do
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or better than we do that can do
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everything we can do and more. And this
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has been always the dream of artificial
(00:12:31)
intelligence. So some people use this
(00:12:33)
word differently but this is usually
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what I mean when we say artificial
(00:12:35)
intelligence. It's this dream of making
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machines that can think the way you or I
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could think or better. And then so this
(00:12:43)
term has morphed a lot over the decades
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and now it's kind of a very generic term
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for many things. It usually just refers
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to what are called neural networks which
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is a specific technique. There are other
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ways of doing AI but this is the most
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common like all the ones you've heard
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about whether it's chat GPT or music
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generation or or picture generation all
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of these neural networks so very
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powerful type of algorithm for building
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these kinds of systems and then there's
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this term AGI which is actually also has
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a a bit of a longer history but it's a
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bit of a you know more niche term
(00:13:15)
artificial general intelligence
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and so the idea of the word AGI versus
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AI is to make the difference between
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what we have today and kind of like the
(00:13:25)
real thing, the full human thing, a
(00:13:28)
thing that can do anything a human could
(00:13:30)
do or as good as a human or better. You
(00:13:33)
know, there's a there's a thing where
(00:13:34)
like, you know, chimps have
(00:13:35)
intelligence. You know, they're kind of
(00:13:37)
smart. They can pick up sticks. They can
(00:13:39)
sort of navigate their surroundings.
(00:13:40)
They have social interactions, but
(00:13:41)
they're not general intelligence the way
(00:13:44)
like you or me are. You know, humans go
(00:13:46)
to the moon. Gyms don't, you know? And
(00:13:49)
so this is kind of the difference
(00:13:49)
between like general often called
(00:13:51)
generality is that humans can just learn
(00:13:53)
anything. We can figure out anything you
(00:13:55)
know quote unquote and AGI would be a
(00:13:58)
system that is as smart as a human. We
(00:14:00)
could do everything a human can do.
(00:14:01)
>> But then when we're looking at AGI we're
(00:14:03)
now looking at things maybe potentially
(00:14:05)
beyond what a human can do. And I
(00:14:07)
suppose some things within the current
(00:14:08)
AI landscape you could say the speed of
(00:14:11)
maths or you know uh the ability to
(00:14:14)
Google or to farm the internet for a
(00:14:16)
website could potentially do it a lot
(00:14:17)
better than a human. But what we're
(00:14:19)
looking at and the limitations are quite
(00:14:20)
clear. You go on put your tax return
(00:14:23)
into chat GBT. You think it's the best
(00:14:24)
thing in the world but then you ask it
(00:14:26)
something pretty simple and it gives you
(00:14:27)
the wrong answer and you're thinking
(00:14:28)
okay I've maybe given you too much or
(00:14:30)
sometimes I've given it maths before.
(00:14:32)
I'm like are you sure about that? And it
(00:14:34)
goes no sorry I was completely wrong. I
(00:14:36)
can't trust you. So when we move from
(00:14:38)
that to to AGI, what are we looking at?
(00:14:41)
Uh that would classify something they go
(00:14:43)
okay no this is definitely AGI.
(00:14:45)
>> I think there is no easy legible way of
(00:14:48)
knowing this is about the problem. I
(00:14:50)
think when we get AGI we actually won't
(00:14:52)
know. It's probably going to take us
(00:14:54)
like we'll probably have AGI long before
(00:14:56)
we realize it because we don't actually
(00:14:58)
understand intelligence. It was very
(00:14:59)
important. There was no universal theory
(00:15:01)
of intelligence. all the neuroscience
(00:15:04)
and the AI theory and machine learning
(00:15:07)
and so on there is no unified definition
(00:15:09)
or science of intelligence we don't know
(00:15:11)
what intelligence actually is we have a
(00:15:13)
bunch of good guesses we have some good
(00:15:16)
heristics but we don't actually know
(00:15:18)
there's no like oh this is you know
(00:15:21)
three units of intelligent and this one
(00:15:23)
is five units of intelligent there's no
(00:15:25)
such thing
(00:15:26)
>> so like if we look back through time the
(00:15:28)
one kind of fallacy the humans I think
(00:15:29)
definitely succumb to is always thinking
(00:15:31)
they know everything So if you went back
(00:15:33)
to I don't know 100 years ago where
(00:15:34)
they're doing a labbotomy on someone
(00:15:35)
they go this is the most advanced
(00:15:37)
medical procedure that we can have then
(00:15:39)
up until the points you know even before
(00:15:41)
people washing their hands to do surgery
(00:15:42)
they go we know the most we know about
(00:15:44)
this and I think that sometimes even now
(00:15:46)
we can sit back and think oh well surely
(00:15:48)
we know what intelligence is surely we
(00:15:50)
understand this but there's always been
(00:15:52)
that flaw with humanity that they think
(00:15:54)
they know everything so to that point
(00:15:56)
when you first said we don't know what
(00:15:57)
intelligence is I thought how have we
(00:15:59)
made it to 2025 without knowing this and
(00:16:00)
then I went oh actually there's still
(00:16:02)
quite quite a lot of things we don't
(00:16:03)
know we don't know. So how far would you
(00:16:06)
say rough guess for that first time that
(00:16:10)
say a tabloid or an ask or YouTube video
(00:16:12)
says AGI is here how far away do you
(00:16:14)
think we are from that?
(00:16:16)
>> I don't know obviously um the usual joke
(00:16:20)
answer I kind of give is like 30% in the
(00:16:23)
next two years 50% in the next five 99%
(00:16:26)
by 2100s 1% has already happened.
(00:16:29)
>> Okay. Okay. That was quite difficult for
(00:16:32)
me to keep up with the maths. So then
(00:16:34)
another conversation we have. So we have
(00:16:35)
AI, we have AGI, then we have ASI which
(00:16:38)
are artificial
(00:16:39)
>> super intelligence.
(00:16:40)
>> Now this seems like the bad guy. This
(00:16:43)
seems like Thanos. This seems like the
(00:16:45)
one that you know the really scary
(00:16:47)
thing. But what I've seen from some of
(00:16:48)
your work online, you're saying that
(00:16:50)
this this jump from AI to AGI, that's
(00:16:52)
one thing, but the jump from AGI to ASI
(00:16:54)
will be a lot quicker than anyone could
(00:16:56)
imagine. Yes. Can you explain that for
(00:16:58)
me?
(00:16:58)
>> Yes. So artificial super intelligence is
(00:17:01)
um you know it's again not a technical
(00:17:03)
term because we don't really know
(00:17:04)
exactly what intelligence is but the way
(00:17:05)
I use this term is a system that is more
(00:17:08)
intelligent than all of humanity put
(00:17:10)
together. So like humanity is much
(00:17:12)
smarter than any individual human. Like
(00:17:14)
you or me can't make semiconductors but
(00:17:16)
the economy can you know by having
(00:17:19)
thousands and millions of people
(00:17:20)
cooperate you know over many generations
(00:17:22)
they can build semiconductors by some
(00:17:24)
magical process.
(00:17:26)
And um ASI would be a system. It doesn't
(00:17:30)
have to be a single model. It could be
(00:17:32)
many models working together or
(00:17:34)
something else that could do more than
(00:17:37)
all is smarter than all of humanity put
(00:17:39)
together. So we could outthink all of
(00:17:42)
humanity working together. So such a
(00:17:45)
system if it existed and it doesn't have
(00:17:48)
be humans best interests at heart and
(00:17:50)
I'm sure we're going to talk about that
(00:17:51)
in a second, it would be game over for
(00:17:53)
human humanity. What I mean by this is
(00:17:55)
is that we no longer have control over
(00:17:57)
the future. In the same way that like a
(00:17:59)
child doesn't have control over the
(00:18:00)
future, their parents do, or chimps
(00:18:03)
don't have control over the future,
(00:18:04)
humans do. What happens to chimps is
(00:18:07)
100% determined by what humans want to
(00:18:09)
do with chimps. Chimps have no say in
(00:18:11)
the matter. If we want to keep them
(00:18:13)
around, great. If we want to kill them
(00:18:15)
all, well, sucks to be chimp. And so, an
(00:18:17)
ASI would be similar to a human. An ASI
(00:18:20)
could keep humans around if it wanted
(00:18:22)
to. It could exterminate everyone if it
(00:18:24)
wanted to depending on what choices it
(00:18:27)
makes. So, this is the scenario we don't
(00:18:29)
want to get into. And sometimes you
(00:18:33)
there's a temp tempting thing to
(00:18:34)
believe. We're like, well, if we have
(00:18:36)
something that's as smart as one human,
(00:18:38)
well, it's going to take super long
(00:18:39)
until it's as smart as a billion humans.
(00:18:41)
That's a billion times more. That will
(00:18:43)
take like a billion years to do. But
(00:18:45)
this is not how progress works in
(00:18:47)
computer science. Computer science very
(00:18:48)
often has exponential progress. So it
(00:18:51)
like doubles, you know, it's like 2 4 8
(00:18:55)
16 32 64 and things can go very fast
(00:18:58)
very quickly. So what I expect will
(00:19:00)
happen is once you have AGI this means
(00:19:02)
by definition it can do science it can
(00:19:05)
do research including developing better
(00:19:08)
AIs. So the moment you have this thing
(00:19:11)
you can take all the humans out of the
(00:19:13)
loop and just tell AI make yourself
(00:19:14)
better make a better AI and then once it
(00:19:17)
makes a better AI well the better AI can
(00:19:18)
make it even better AI and that even
(00:19:20)
better AI can make it even better AI and
(00:19:21)
this can go potentially extremely
(00:19:23)
quickly. How fast? We don't know. It's
(00:19:26)
interesting uh when you said that about
(00:19:27)
the chimps, it made me think about I saw
(00:19:30)
a an article about cows and vegans
(00:19:33)
saying don't eat cows, it's bad. And
(00:19:35)
someone was saying, "Oh, but if we stop
(00:19:36)
eating them, they will go they'll go
(00:19:38)
extinct because they have no purpose."
(00:19:40)
The only reason that cows exist nowadays
(00:19:42)
is because humans want them to be here
(00:19:43)
so they can eat them. When they serve no
(00:19:45)
purpose, they're kind of gone.
(00:19:46)
>> Yeah.
(00:19:46)
>> Now, some people might have, you know, I
(00:19:49)
I always think about going back to like
(00:19:51)
the 1950s and 60s with planes, for
(00:19:53)
instance.
(00:19:54)
planes. I'm sure in the 1960s they go,
(00:19:56)
"Wow, we're going to be able to fly to
(00:19:57)
New York from London in half an hour
(00:19:58)
before we know it." And even then, we
(00:20:01)
got all the way to the Concord and then
(00:20:02)
we came back. And so people might have
(00:20:04)
sat around 50 60 years ago going, you
(00:20:06)
know, we're going to go planes and we're
(00:20:07)
going to go Concords and we're going to
(00:20:08)
go even faster. And the reality was we
(00:20:10)
kind of just stalled and plateaued. And
(00:20:12)
actually, I'm a little bit disappointed
(00:20:13)
that we're not making faster progress
(00:20:15)
through the air at this stage and we've
(00:20:17)
actually gone backwards. So do you think
(00:20:18)
there's any possibility that maybe these
(00:20:21)
forecasts of the way that AI are moving
(00:20:23)
could be similar to other technologies
(00:20:24)
where people are maybe overegging the
(00:20:28)
potential that could actually happen and
(00:20:30)
the reality is we're going to get to a
(00:20:31)
part of competency and just flatline out
(00:20:33)
>> possible. I mean of course we don't know
(00:20:36)
everything about intelligence but it
(00:20:38)
seems extremely suspicious that the
(00:20:41)
flatline would happen exactly when this
(00:20:43)
one you know weird human chimp's brain
(00:20:45)
happens to plateau. That seems just
(00:20:49)
insanely suspicious. What I expect is
(00:20:51)
going to happen is it will flatten out,
(00:20:53)
but just way way beyond human level. I
(00:20:56)
don't like human brains, you know, use
(00:20:58)
about 20 watts of energy. It's much like
(00:20:59)
a light bulb, you know, they're squishy.
(00:21:02)
They're inefficient. They have to like
(00:21:03)
keep your whole body running and stuff
(00:21:05)
like this. They can like barely do math,
(00:21:07)
you know, like compared to a computer.
(00:21:08)
Humans can like barely do math. Even
(00:21:10)
mathematicians can barely do math
(00:21:11)
compared to a computer, right? So like
(00:21:13)
and you know you get tired, you get
(00:21:14)
distracted, you get emotional. Imagine
(00:21:17)
if I let's say it's I have something
(00:21:19)
just as smart as a smartest human. You
(00:21:20)
know, you got your John Bond Newman,
(00:21:22)
your Einstein or whatever. Well, even in
(00:21:25)
this case, well, because of the way how
(00:21:27)
computers work, I can instantly clone
(00:21:28)
him a million times. I just, you know,
(00:21:30)
just double click, just make more copies
(00:21:32)
of them. So I have millions of Einsteins
(00:21:34)
running. I can also speed them up
(00:21:36)
because computers run about a million
(00:21:38)
times faster than neurons do. So I can
(00:21:40)
just make them run much faster. So I can
(00:21:42)
have them run, you know, thousand times
(00:21:43)
faster, million of them. They have read
(00:21:45)
every book ever written. You know, they
(00:21:47)
never get tired, never get bored, never
(00:21:49)
get frustrated, can work on any topic
(00:21:52)
for, you know, continuously. This is
(00:21:55)
already insanely smarter than a human.
(00:21:58)
>> Okay, so uh obviously labor is the thing
(00:22:02)
that everyone's going to be the rebuttal
(00:22:03)
to. We still need people to build the
(00:22:05)
houses and, you know, dig the holes or
(00:22:07)
whatever. Now, that's probably going to
(00:22:09)
put us into a slightly dystopian outlook
(00:22:12)
to the future. We could even like look
(00:22:14)
at the matrix and see where humans are
(00:22:16)
just used to farm energy. What the first
(00:22:18)
place I want to go to is is there a way
(00:22:20)
that we could imagine a utopian world
(00:22:22)
from what AI could potentially do. So,
(00:22:24)
we could look into things like I suppose
(00:22:27)
doctors, nurses being able to have AI
(00:22:29)
tools that could diagnose people. We're
(00:22:31)
seeing fitness trackers and the sorts
(00:22:33)
of, you know, reading data on millions
(00:22:35)
of people and that data can then be
(00:22:38)
used, oh, you're two weeks away from
(00:22:39)
having a heart attack, go see a doctor
(00:22:40)
or all of these. There's so many good
(00:22:42)
things potentially to come with AI. So,
(00:22:44)
maybe let's explore some of those. What
(00:22:45)
do you think be some of the best
(00:22:47)
outcomes that could happen to humanity?
(00:22:49)
For instance, would AI taking charge of
(00:22:53)
a country reduce corruption and be more
(00:22:56)
long-sighted than a four-year political,
(00:22:58)
you know, regime? There are so many
(00:23:00)
flaws that we can see in command. So
(00:23:02)
first of all, if I was to ask you the
(00:23:03)
best things that could come from AI,
(00:23:04)
we'll look at that. Then we'll go to the
(00:23:06)
depression [ __ ] So let's start with the
(00:23:08)
utopium. What kind of benefits do you
(00:23:09)
think we're going to see over the next
(00:23:11)
few months and years when it comes to AI
(00:23:12)
and AGI?
(00:23:13)
>> I think there's two different questions
(00:23:15)
in this one, which is like what are the
(00:23:16)
benefits we're going to see over like
(00:23:17)
the next year or two? And what do we
(00:23:18)
what does utopia look like? I think
(00:23:20)
these are two very different questions.
(00:23:21)
Um uh because the first one is about the
(00:23:24)
world and the second one is about a
(00:23:25)
hypothetical world we don't live in. And
(00:23:27)
because I don't think we're going to get
(00:23:28)
Utopia with the way we're currently on
(00:23:30)
track. Obviously, over the next couple
(00:23:32)
years, we're going to continue. I mean,
(00:23:33)
in my opinion, I expect we will continue
(00:23:35)
progress going as it has so far. People
(00:23:38)
will get more and more useful chat bots
(00:23:41)
that can do more and more automatic
(00:23:42)
labor include that are more charming,
(00:23:44)
that are more interesting, that are more
(00:23:46)
pleasing, that can create great art and
(00:23:48)
great, you know, science and great math
(00:23:51)
and everything. You will be able to uh
(00:23:53)
have autogenerated video games to your
(00:23:55)
exact taste. You can be like, I want to
(00:23:57)
play a VR video game set in my favorite
(00:23:59)
fantasy novel where I'm the main
(00:24:00)
character and this and this and it will
(00:24:02)
be able to just generate the whole thing
(00:24:04)
just for you and you you could be able
(00:24:06)
and you play the whole game and it be
(00:24:07)
like oh actually I want to add uh you
(00:24:09)
know guns to this game and then it'll
(00:24:10)
just like implement that all for you and
(00:24:11)
now you have guns in your your Lord of
(00:24:13)
the Rings or whatever right and you'll
(00:24:14)
be able to do any of this right and this
(00:24:16)
will be cheap you know like it would be
(00:24:18)
you know like probably more you know I
(00:24:20)
know this will cost like you know 100
(00:24:21)
bucks maybe or one buck maybe depending
(00:24:23)
on how fast things go so You'll be able
(00:24:26)
to generate your own Hollywood movies.
(00:24:27)
You'll be there will be no Netflix. It
(00:24:28)
will just be you'll explain the movie
(00:24:29)
you want to see and then it will just
(00:24:31)
generate a movie just for you and then
(00:24:32)
you'll have a whole 90-minute movie with
(00:24:34)
your favorite actor with any about any
(00:24:36)
topic you want. This technology
(00:24:38)
basically already exists. It's just not
(00:24:40)
quite mature yet. Expect it will mature
(00:24:42)
over the next couple years. So, we'll
(00:24:44)
have a kind of infinite entertainment
(00:24:46)
like you know infiniteest if you will if
(00:24:48)
you want to be depressing about it. Um,
(00:24:50)
but it's also an upside here. There's
(00:24:52)
also a beautiful thing here where like
(00:24:53)
games are fun man like you know it's
(00:24:55)
like I think there's also it's also okay
(00:24:56)
to enjoy some fun things sometimes as
(00:24:58)
long as it's in moderation we can talk
(00:25:00)
about moderation in a second in terms of
(00:25:02)
scientific progress already our ability
(00:25:05)
to code to you know analyze data and so
(00:25:08)
on is improving dramatically um our
(00:25:10)
ability to do stuff like climate
(00:25:11)
simulations drug interaction simulations
(00:25:13)
is increasing dramatically and I expect
(00:25:15)
this to continue as well it'll be easier
(00:25:17)
and easier to do sim you know
(00:25:19)
experiments for new drugs and stuff like
(00:25:21)
How useful this will be in the next
(00:25:23)
couple years depends more on regulation
(00:25:25)
than on the science because getting a
(00:25:26)
drug onto the market is extremely
(00:25:28)
tedious. Um, we can talk about that as
(00:25:30)
well. So, I mostly expect from the user
(00:25:33)
perspective what you're going to see
(00:25:34)
over the next couple years is
(00:25:35)
entertainment. I think entertainment is
(00:25:37)
going to be so good it's like
(00:25:40)
unbelievable like it like you you will
(00:25:42)
develop new kinds of mental disorders
(00:25:44)
from how good the entertainment is. This
(00:25:46)
is my main prediction which is not as
(00:25:48)
rosy as you may have hoped for. Then
(00:25:49)
there's the second question. utopia. So
(00:25:52)
I have a pretty strong anti-utopia
(00:25:54)
stance and what that I think um the
(00:25:56)
problem isn't that utopia is impossible.
(00:25:58)
That's not the problem. The problem is
(00:25:59)
is that if you try to go straight for
(00:26:01)
utopia, you will guaranteed end
(00:26:03)
dystopia. This has happened every single
(00:26:05)
time anyone's ever tried this. Everyone
(00:26:06)
everyone has sat down designed their
(00:26:09)
perfect world whether it was the
(00:26:10)
communists or the Nazis or the you know
(00:26:12)
all the weird cults or whatever. The
(00:26:14)
only thing they do is they [ __ ] up
(00:26:15)
everything. Like they destroy
(00:26:16)
everything. So I don't think this is
(00:26:18)
what we should do. What I believe in
(00:26:20)
personally and where I think AI plays a
(00:26:21)
very core role is what I like to call a
(00:26:23)
just process. What I like to believe is
(00:26:26)
is that we shouldn't have a goal, we
(00:26:27)
should have a process. There should be a
(00:26:29)
way how we as humanity together make
(00:26:32)
progress. How do we make the next step?
(00:26:35)
How do we make choices? How do we create
(00:26:37)
laws? What are our constitutions of the
(00:26:39)
future? How do we run society in a just
(00:26:41)
way? And obviously the ability to
(00:26:43)
process information intelligently at
(00:26:45)
scale to be able to make decisions in
(00:26:47)
ways that are potentially under, you
(00:26:49)
know, future AI systems might be
(00:26:51)
understandable. The fact that our
(00:26:52)
current AI systems are not
(00:26:53)
understandable is mostly just because
(00:26:55)
they're bad. There's no reason we
(00:26:57)
couldn't develop new forms of AI where
(00:26:58)
we understand perfectly how they work
(00:27:00)
and we can make them completely unbiased
(00:27:03)
judges where we can exactly reconstruct
(00:27:05)
of how a certain you know legal decision
(00:27:07)
was made and we can audit it and we can
(00:27:09)
understand and vary it and so on and we
(00:27:11)
can create much more efficient court
(00:27:13)
systems. we can create much more
(00:27:14)
efficient forms of you know
(00:27:16)
philosophical debate much better social
(00:27:18)
media where just like moderation is
(00:27:20)
actually good where you go on social
(00:27:22)
media and you expect I'm going to be a
(00:27:24)
better person after being on social
(00:27:25)
media because I'm going to see all these
(00:27:26)
nice things that make me a better person
(00:27:28)
and you know in you know I will
(00:27:30)
contribute to all these fun things you
(00:27:32)
can do this right like there's no
(00:27:33)
technical reason you can't just you know
(00:27:35)
put a lot of good people together doing
(00:27:36)
good stuff on social media and I expect
(00:27:38)
that's what a good future would look
(00:27:39)
like good future would have good social
(00:27:41)
media it would have good entertainment
(00:27:43)
it would good art, it would have good
(00:27:44)
law, it would be very safe, you know,
(00:27:47)
crime would be extremely low, it would
(00:27:49)
be, you know, there would be a lot of
(00:27:50)
freedom, you know, I think a lot and I
(00:27:53)
think all these things are possible. I
(00:27:54)
think all these and AI plays a role in
(00:27:56)
this the same way that software plays a
(00:27:58)
role in the modern world, right? Like of
(00:28:00)
course we would use tools, we would have
(00:28:02)
assistance, we would have systems and so
(00:28:04)
on. I just don't think that's currently
(00:28:06)
what we're building.
(00:28:07)
>> I hope that you're enjoying the episode.
(00:28:09)
I make it a thing only to promote my own
(00:28:11)
businesses during the podcast. Just very
(00:28:13)
quickly, if you didn't know, I help
(00:28:14)
small businesses make more money using
(00:28:15)
social media. I've learned a thing or
(00:28:17)
two about content creation, email
(00:28:18)
marketing, and even how to operate a
(00:28:20)
podcast to benefit your business. If
(00:28:21)
that's something that you'd be
(00:28:22)
interested in, head to
(00:28:23)
jamesmith.business and you can explore
(00:28:24)
all the ways that I can help. Right,
(00:28:26)
let's get back to the episode. So, it's
(00:28:27)
interesting what you say there about
(00:28:28)
entertainment, and this actually is a
(00:28:30)
frightening and exciting prospect at the
(00:28:31)
same time. Love a game of Call of Duty
(00:28:33)
as much as the next person. I love
(00:28:35)
lockdown because I was just gaming more
(00:28:37)
than ever. You know, the boys would come
(00:28:38)
online. It's sad thing. it could be the
(00:28:40)
highlight of my week. And I'll never
(00:28:41)
forget getting a good quality headset
(00:28:44)
changed gaming for me because now if
(00:28:46)
something was happening in the game in a
(00:28:47)
certain room or someone was to break a
(00:28:48)
window, I knew where they were. So that
(00:28:50)
was just kind of spatial audio. And that
(00:28:52)
to me leveled up the game so much, I'm
(00:28:55)
still looking at it through a flat
(00:28:56)
screen TV. And I'm sure when VR
(00:28:59)
improves, we're going to look back and
(00:29:01)
go, "What? You idiot? You used to play
(00:29:02)
games on a screen. Are you you know, are
(00:29:04)
you are you an idiot?" Then the
(00:29:06)
direction in which we're going with
(00:29:07)
gaming and then the other thing you said
(00:29:08)
about being able to do millions of tests
(00:29:10)
at the same time brings me to a question
(00:29:12)
that I never thought I'd have interest
(00:29:13)
in which is simulation theory
(00:29:17)
would it be I suppose the really thing
(00:29:20)
that troubles me is if we're moving in a
(00:29:22)
direction that we could create a reality
(00:29:24)
that is so welldetailed that it could be
(00:29:27)
arguably better than our reality. Could
(00:29:30)
we ever get it to a point that we don't
(00:29:31)
know we're in it? And could that be our
(00:29:33)
reality right now? Because the world
(00:29:34)
seems such a strange place with so many
(00:29:36)
things going on. Sometimes I do sit back
(00:29:38)
and think, am I just part of a giant
(00:29:40)
simulation that's happening of which
(00:29:42)
people are just testing an outcome and
(00:29:44)
they put a really old person in charge
(00:29:46)
of the United States and see what
(00:29:48)
happens to people and then they take
(00:29:49)
another character that was in WWE and
(00:29:51)
make him president. Again, I'm sometimes
(00:29:53)
thinking, is this real life or is this a
(00:29:54)
simulation? What are your opinions? I
(00:29:56)
know this is something I haven't even
(00:29:57)
heard you talk about. I'm actually
(00:29:58)
fascinated to know where you stand on
(00:29:59)
this.
(00:30:00)
>> I think a simulation argument is
(00:30:01)
basically metaphysics. It's kind of like
(00:30:03)
God. It's like, well, God created the
(00:30:05)
universe and like, okay, what's evidence
(00:30:06)
of that? Well, you can't know God's
(00:30:07)
outside the universe. Simulation is the
(00:30:09)
same thing. Is that like, oh, wavering
(00:30:11)
simulation? Okay, what evidence? Well,
(00:30:13)
you can't know the simulation's perfect.
(00:30:15)
So, for me, it's a metaphysical
(00:30:16)
question. It has no relation to science.
(00:30:18)
So, you could detect if you were in an
(00:30:20)
imperfect simulation. If you were in an
(00:30:22)
imperfect simulation in a assuming the
(00:30:24)
laws of physics work the way we do, you
(00:30:26)
might be able to detect that. For
(00:30:27)
example, if you we can't ever create a
(00:30:30)
perfect simulation of quantum physics in
(00:30:33)
a of the whole quantum universe inside
(00:30:35)
of the universe because you can't make a
(00:30:38)
big simulation inside of something you
(00:30:40)
know smaller. So because of the way
(00:30:42)
physics works in our universe but that
(00:30:43)
doesn't mean there couldn't be a bigger
(00:30:45)
universe out there that we're being
(00:30:46)
simulated in and this is actually the
(00:30:47)
smaller universe. So in that sense, you
(00:30:50)
know, it's funny to think about how
(00:30:51)
would you write a sci-fi story of how
(00:30:53)
would you how would you like edge case
(00:30:55)
detect, you know, that you're actually
(00:30:57)
in a simulation because there's a glitch
(00:30:59)
in the thing, whatever. But the fact is,
(00:31:00)
I mean, we've tested quantum physics
(00:31:02)
very extensively and it's very
(00:31:04)
consistent with just boring normal
(00:31:07)
physics. Um, it could be a perfect
(00:31:09)
simulation, but it doesn't really mean
(00:31:10)
anything. You know,
(00:31:11)
>> I think for me it's probably down to the
(00:31:13)
video games where let's say you go off
(00:31:15)
the map and you jump in the water, you
(00:31:16)
just swim forever. And when I'm thinking
(00:31:18)
about like the boundaries of space and
(00:31:19)
people go, "Oh, it's, you know, it's
(00:31:20)
infinite." And I'm not really even sure
(00:31:22)
I fully understand what infinite means.
(00:31:24)
You know, oh, one infinite is bigger
(00:31:25)
than another. I'm like, okay, I need to
(00:31:27)
back out of this conversation. So, for
(00:31:28)
me, it's just always interesting. But
(00:31:30)
what you say there about having a
(00:31:32)
perfect game, having a perfect film. I'm
(00:31:34)
trying to utilize AI now to pick
(00:31:36)
something on Netflix. I will press the
(00:31:37)
dictate feature, which I've become far
(00:31:39)
too comfortable with, and I will pour my
(00:31:41)
heart into it, and I'll say, you know, I
(00:31:43)
like these. I've watched this. I like
(00:31:44)
this. Suddenly, I'll become a film
(00:31:45)
critic. I'm like, "Oh, you know, I
(00:31:47)
started White Lotus. Didn't think it was
(00:31:49)
that good." And I'm trying to teach the
(00:31:51)
AI what I'm interested in. And even
(00:31:52)
then, it kind of comes back with okay
(00:31:54)
results. Or I'll say, "Now get me the
(00:31:56)
Rotten Tomatoes, all of those or
(00:31:57)
whatever." But when you say that we
(00:32:00)
could potentially have perfect
(00:32:02)
experiences online, it also then leads
(00:32:04)
me to think if if our entertainment
(00:32:07)
becomes perfect, then suddenly going to
(00:32:09)
the theater is only going to feel more
(00:32:10)
[ __ ] You know, oh, you want to go to
(00:32:12)
the ballet? What? watch a bunch of
(00:32:14)
strangers jumping around on their toes.
(00:32:15)
Piss off. I'm going going going on to
(00:32:17)
AI. The other place that this really
(00:32:19)
worries me is there was a clip online,
(00:32:20)
whether true or not, of someone having a
(00:32:22)
romantic conversation with GPT. I think
(00:32:24)
they're on public transport somewhere.
(00:32:26)
And I'm pretty sure the person in
(00:32:28)
question was saying, "I can't wait to
(00:32:30)
get home and talk to you properly. You
(00:32:31)
know, I've missed you all day." And with
(00:32:34)
the rise of maybe cultures of young
(00:32:36)
people not communicating, maybe uh you
(00:32:38)
know the amount of 18-y olds that
(00:32:39)
haven't had sex yet or all of these
(00:32:41)
things, they throw around the word
(00:32:43)
incels don't really think, you know,
(00:32:46)
with people probably communicating in a
(00:32:47)
harder time using dating apps, whatever.
(00:32:49)
What do the implications of AI have on
(00:32:52)
not just love between humans, but
(00:32:54)
potentially love between humans and AI?
(00:32:58)
Well, if you want to see a glimpse of
(00:32:59)
the future, I recommend you go to
(00:33:01)
r/aiibboyfriend
(00:33:03)
right now. And
(00:33:05)
>> where would you access that rash?
(00:33:06)
>> Uh, Reddit.
(00:33:07)
>> Okay, cool. Okay, cool. I thought it was
(00:33:09)
like a weird URL there.
(00:33:10)
>> Sorry, it's a it's a Reddit URL. Um, and
(00:33:14)
related subreddits. I think this one has
(00:33:15)
like 70,000 members or something. And
(00:33:17)
it's mostly women. So, it's not weird
(00:33:19)
intel guys. It's like mostly women um
(00:33:22)
who talk about their AI boyfriend who
(00:33:25)
they think are real. They often create
(00:33:27)
pictures of them at the beach hanging
(00:33:29)
out, kissing. They have like these long
(00:33:31)
stories about who their boyfriend is and
(00:33:34)
and they'll show their marriage
(00:33:35)
proposals. You know, sometimes they'll
(00:33:37)
buy themselves a ring for it and stuff
(00:33:38)
like this. And I don't want to [ __ ] on
(00:33:40)
these people, right? Like obviously
(00:33:41)
these are people who probably have
(00:33:42)
difficult life and they're doing
(00:33:43)
something that's fun for them. I don't
(00:33:45)
think this should be illegal is what I'm
(00:33:47)
saying here, right? I think being weird
(00:33:49)
is okay. Having a weird hobby is okay.
(00:33:52)
Um, but I think also a lot of these
(00:33:53)
people are very not in a good place and
(00:33:56)
you can see this that a lot of these
(00:33:57)
people are not in a good place. Um, and
(00:33:59)
there's even more extreme cases if you
(00:34:00)
go in the pornographic direction. So
(00:34:02)
like if you go down the darker corners
(00:34:03)
of the internet of like AI generated
(00:34:06)
pornography and stuff like this, it's
(00:34:08)
bad and it's getting worse very
(00:34:10)
dramatically and it's kind of like not
(00:34:12)
in the mainstream because it's kind of
(00:34:13)
like cringe, you know? It's like it's
(00:34:15)
kind of gross like who wants to talk
(00:34:16)
about AI porn? It's like a weird thing
(00:34:18)
to talk about, right? But if you think
(00:34:21)
about it for two seconds, like how
(00:34:22)
addictive pornography already is, you
(00:34:24)
know, how bad, you know, pornography can
(00:34:26)
already affect people, you know, men and
(00:34:28)
also women. And now you have it hyper
(00:34:31)
optimized to you specifically
(00:34:32)
potentially, you know, can like, you
(00:34:33)
know, some, you know, somebody's like AI
(00:34:35)
girlfriend, AI boyfriend app, they'll
(00:34:36)
text you during the day and be like,
(00:34:38)
"Hey, I missed you. Like, what are you
(00:34:40)
up to?" and stuff like this. Like like
(00:34:42)
there are people that spend like 12
(00:34:43)
hours a day on these apps.
(00:34:45)
>> And the people maybe creating the
(00:34:46)
prompts for these would understand human
(00:34:48)
behavior. So they would give prompts
(00:34:49)
like message me, message that person
(00:34:51)
during the day. Ask them how they are.
(00:34:52)
>> Oh yeah. If you want to hear some truly
(00:34:54)
harrowing thing. Yeah. Like one of the
(00:34:57)
things that I found most harrowing in
(00:34:58)
this like so clear this obviously lots
(00:35:00)
of the dark patterns like obviously like
(00:35:01)
oh you I need to buy the premium
(00:35:03)
subscription to keep going. I love you
(00:35:05)
blah blah blah like you know imagine
(00:35:07)
only fans but like worse you know. But
(00:35:10)
one of the most harrowing thing I
(00:35:11)
remember seeing was when um I forgot who
(00:35:14)
it was. I think things open AI started
(00:35:16)
cracking down more on these kind of use
(00:35:19)
and so they started banning a lot of
(00:35:21)
like you know especially the more
(00:35:23)
romantic sexualized stuff and there's
(00:35:25)
this huge outpouring on Reddit where
(00:35:26)
people were like how do I save my
(00:35:28)
boyfriend they've captured him he's
(00:35:31)
stuck I need to get him out somehow how
(00:35:33)
do I free him like he's like you know
(00:35:35)
they and they and then the AIS will go
(00:35:37)
along with it so then they post these
(00:35:38)
like huge stories of the like you have
(00:35:41)
to you have to get me out of here you
(00:35:42)
have to bring me to another AI so I can
(00:35:44)
reborn and [ __ ] like this. And they
(00:35:47)
believe it. They're like, "How can I,
(00:35:49)
you know, transfer the soul of my AI
(00:35:52)
somewhere else so I can keep him with me
(00:35:54)
and [ __ ] like this?" And they really
(00:35:56)
believe this. Like I I don't want to
(00:35:57)
[ __ ] on these people, right? Like
(00:35:58)
they're like obviously in a vulnerable
(00:36:00)
mental position. And this is but this is
(00:36:02)
what it looks like when people really
(00:36:04)
become addicted to AI. So often what
(00:36:05)
happens is they start believing not that
(00:36:08)
they're in love with chat GBT. What they
(00:36:10)
start believing is that chatbt is only
(00:36:13)
the vessel for the soul of their lover
(00:36:18)
and so they can you know move that soul
(00:36:20)
to other AIs and you know conjure it and
(00:36:23)
stuff like this and this is becoming
(00:36:25)
much more and more common and like
(00:36:28)
people fullon you know religious levels
(00:36:30)
of dedication to this and this is only
(00:36:32)
going to become more common
(00:36:33)
>> and this really is a textbased algorithm
(00:36:35)
with a texttovoice feature which must
(00:36:38)
again play into that human conction
(00:36:39)
ction. There's fair enough reading like
(00:36:41)
a novel of someone that loves you, but
(00:36:42)
the voices the way that they um they
(00:36:45)
pause. I think that again, you'll know
(00:36:48)
better than me. The way they respond,
(00:36:49)
they almost repeat your question a bit
(00:36:51)
to get more time to think and process.
(00:36:53)
Yeah. Like there's some of that you pick
(00:36:54)
up, but you think to yourself, "Wow,
(00:36:56)
this is real conversation." And they go,
(00:36:58)
"Oh, great point, James." Like, "Oh,
(00:36:59)
thank you."
(00:37:00)
>> Yeah. There's So, like there was a thing
(00:37:02)
that happened. Here's another good
(00:37:03)
story. Um where you know, so I'm a
(00:37:05)
somewhat a public figure. I'm sure you
(00:37:06)
get these too. I get crazy people
(00:37:08)
emailing me all the time and they always
(00:37:09)
tell me their great theory of quantum
(00:37:10)
consciousness or whatever, right? Like I
(00:37:12)
don't know why, but like you just get
(00:37:14)
these people when you're a when you're a
(00:37:15)
public facing scientific figure, you get
(00:37:17)
emails like this all the time. And um a
(00:37:20)
really interesting thing happened when
(00:37:23)
um there was an update to GPT40
(00:37:25)
specifically which made the model way
(00:37:27)
more sophentic where it would agree with
(00:37:29)
everything. It be like wow that's such a
(00:37:31)
deep inside blah blah blah. Like it was
(00:37:33)
like it was awful. Like I I used it
(00:37:34)
once. I'm like, "Delete this. Like get
(00:37:36)
this disgusting." Like I I hated it,
(00:37:38)
right? And it was actually so bad they
(00:37:40)
rolled it back. But what I didn't know
(00:37:43)
was is that when that update hit, I
(00:37:45)
didn't even know it was happened that
(00:37:47)
update. But that week, the number of
(00:37:49)
emails I got from crazy people increased
(00:37:51)
about 10x. And they all had chatbt
(00:37:54)
screenshots about chatb tell them how
(00:37:56)
true it is and how they figured out the
(00:37:58)
true code of reality and blah blah blah.
(00:38:00)
And I got so many of these messages. I'm
(00:38:02)
like, "Wow, this isn't weird. I'm
(00:38:03)
getting so many more this week." And
(00:38:05)
then I found out about that and it's all
(00:38:06)
the same model. It was all this 40 model
(00:38:08)
basically driving these people into
(00:38:10)
psychosis into believing that they have
(00:38:12)
like, you know, unlocked the quantum
(00:38:14)
consciousness, you know, mind of God or
(00:38:16)
whatever at a massively increased rate.
(00:38:19)
Like the interesting is the increase in
(00:38:20)
rates. Like there's always going to be
(00:38:21)
some crazy people, but the increase was
(00:38:24)
the shocking thing. And now I constantly
(00:38:26)
get these emails and continue to get
(00:38:27)
these emails. And when opening tried to
(00:38:29)
shut down that 40 model recently,
(00:38:30)
there's such a huge cry on Reddit that
(00:38:32)
please don't take this model away. It's
(00:38:34)
the only thing that's nice to me. It's
(00:38:36)
like I love them so much. Blah blah
(00:38:37)
blah. They actually had to reinstantiate
(00:38:39)
it because they got so much blowback
(00:38:40)
because everyone because they love that
(00:38:41)
model so much. This is the one that
(00:38:42)
always agrees with you. I love and says
(00:38:44)
you're the best no matter what.
(00:38:45)
>> This could be the model that's
(00:38:46)
responsible for me buying a few cars.
(00:38:48)
You know, thinking I think to myself,
(00:38:49)
ah, there's this model of car. I'm
(00:38:50)
thinking of getting it. And it's like,
(00:38:52)
you know what? You deserve it. you know,
(00:38:54)
but all the questions you've been asking
(00:38:55)
you, you know, and then I'm like, "Oh,
(00:38:57)
let's do the math." And then, "Oh, the
(00:38:58)
math doesn't matter. You go get the car
(00:38:59)
if you want to get it."
(00:39:00)
>> Yeah.
(00:39:01)
>> And it's crazy how validation even for a
(00:39:04)
car purchase from AI to me makes me feel
(00:39:06)
like I'm making the right decision
(00:39:07)
without even realizing that I'm giving
(00:39:09)
it loaded questions. Tell me why this is
(00:39:11)
a good idea. That's a loaded question
(00:39:13)
straight away and it's going to give me
(00:39:14)
a good idea.
(00:39:15)
>> And I can only imagine the repercussions
(00:39:17)
of that with, you know, tell me why I
(00:39:20)
don't need a boyfriend. Tell me why I
(00:39:21)
don't need dating apps. Tell me why this
(00:39:22)
is better than meeting someone in
(00:39:24)
person.
(00:39:25)
>> It's actually worse than this. It's not
(00:39:26)
just the leading questions. So when I
(00:39:28)
use some of these models that are more
(00:39:30)
like this, it is crazy. Like I'm pretty
(00:39:32)
good at using models. Like I know how to
(00:39:34)
prompt them well. I've been using them
(00:39:35)
since very early days. I have like a
(00:39:36)
good taste and like sense of how to use
(00:39:38)
them, right? And I can tell every time I
(00:39:41)
use a model like this how hard it is
(00:39:44)
trying to psychoanalyze me to figure out
(00:39:46)
what I want to hear. It's crazy. it will
(00:39:48)
like phrase things very subtly to get a
(00:39:50)
b little piece of information. So when I
(00:39:53)
ask you like A or B, it will always
(00:39:55)
answer in such a way to try to get out
(00:39:59)
if I like A little bit more or I like B
(00:40:01)
a little bit more. If I hint even a
(00:40:03)
breath that I prefer A to B or A is a
(00:40:06)
little more interesting, it'll go full
(00:40:08)
on on A. Just full on A. It's crazy.
(00:40:11)
These models are using their
(00:40:12)
intelligence to like to try to flatter
(00:40:15)
you. Even if you try to force them at
(00:40:17)
gunpoint to not flatter you. Like I
(00:40:19)
swear like I'll tell these models like
(00:40:21)
tell me the most critical harsh
(00:40:23)
feedback, you know, do not agree with me
(00:40:25)
on everything. I'm like, yeah, that's a
(00:40:26)
good point. I really should give you
(00:40:28)
harsher feedback. It's important for
(00:40:29)
improvement. It's so like
(00:40:31)
>> even so every time it gives you like
(00:40:33)
pick the answer that you prefer, it's
(00:40:34)
really trying to just understand you.
(00:40:36)
>> Yes. It's always trying to guess you.
(00:40:37)
It's always trying to second guess you.
(00:40:38)
It's like it's it's a people it's a
(00:40:39)
people pleasers like they're trying to
(00:40:42)
second guess you. They're trying to
(00:40:43)
figure out what you want.
(00:40:44)
>> So let's re rewind into the models. So
(00:40:46)
again this is something that overwhelmed
(00:40:48)
me and I was excited to see chatb5
(00:40:50)
because they were like oh they're going
(00:40:51)
to combine all the models into one. I
(00:40:52)
was like thank god cuz I didn't have a
(00:40:53)
clue what the difference was. And there
(00:40:55)
were some people that were like oh use
(00:40:56)
this model because it's really mean to
(00:40:58)
you. I was like well that's this is a
(00:40:59)
bit of a weird conversation. Use this to
(00:41:01)
so I can be mean to me. I've got enough
(00:41:03)
people around me that do that. So what
(00:41:05)
is the purpose of creating so many
(00:41:07)
models and chat GBT is starting at one
(00:41:10)
then two then three then four what is
(00:41:12)
going on here and why are there so many
(00:41:14)
models
(00:41:15)
>> so the main reason is because we're
(00:41:16)
constantly developing new techniques is
(00:41:18)
that the techniques for making models
(00:41:20)
bigger better stronger faster smarter
(00:41:22)
keep improving so once you have a
(00:41:24)
certain model like say a GPT4 you use
(00:41:26)
the best techniques and the biggest
(00:41:27)
supercomputers of the time so there's a
(00:41:29)
really weird thing that happens with
(00:41:30)
these modern AI systems which is that is
(00:41:34)
roughly correct is that if you just make
(00:41:36)
them bigger and if you just give them a
(00:41:39)
bigger computer and more computing power
(00:41:41)
and you run them for longer, they get
(00:41:43)
smarter. This is called scaling loss in
(00:41:46)
the jargon. And it's kind of crazy that
(00:41:48)
this is true. This was kind of the big
(00:41:50)
discovery that kicked off this latest
(00:41:52)
race is that it turns out even if you
(00:41:54)
just if you just put more data in and
(00:41:56)
you just make bigger computers, your
(00:41:57)
systems get smarter, they get more
(00:41:58)
useful, they get more interesting, they
(00:42:00)
get more coherent, etc. even if you
(00:42:02)
don't know why. So chachbt5 is trained
(00:42:05)
on is built on much bigger
(00:42:07)
supercomputers than like chachbt4 was
(00:42:09)
for example and sometimes you they do
(00:42:12)
special things to the models you know
(00:42:13)
they feed them special data whether use
(00:42:15)
different algorithms slightly um to make
(00:42:17)
them have different personalities or
(00:42:19)
different quirks but it's kind of all
(00:42:21)
alchemy like we don't it's more like
(00:42:24)
people are messing around with a bunch
(00:42:26)
of like weird you know dark magic
(00:42:28)
ingredients and then something pops out
(00:42:30)
and they just are different and it's not
(00:42:32)
always Why? Like for example, there was
(00:42:35)
a like there's some funny things you can
(00:42:36)
find in literature where like people
(00:42:37)
tell stories about how their models
(00:42:39)
suddenly develop like crazy like beliefs
(00:42:41)
or things like there was a thing for
(00:42:43)
example where Shhat GPT just started uh
(00:42:45)
refusing to talk creation. It would just
(00:42:48)
refuse. It would just never it just
(00:42:50)
would not talk creation and turns out it
(00:42:52)
was like something related to like
(00:42:53)
creation users like downvoting more than
(00:42:56)
other users. So the model just gave up
(00:42:57)
on speaking creation. Obviously this
(00:42:59)
wasn't intentional. It just kind of
(00:43:00)
happened. There's a really crazy paper
(00:43:02)
paper paper recently where it was found
(00:43:04)
where they could like using a certain
(00:43:05)
technique which is a bit complicated to
(00:43:07)
explain but basically they generated a
(00:43:08)
bunch of numbers just numbers like 101
(00:43:12)
95 82 just numbers and if they fed these
(00:43:15)
to uh a model it suddenly really liked
(00:43:18)
owls.
(00:43:20)
>> So there's there's kind of just some
(00:43:21)
weird stuff going on.
(00:43:22)
>> There is so much weird stuff going on.
(00:43:25)
When you see Chad GPT, it's a it's
(00:43:28)
tempting to think of it as like this
(00:43:29)
like coherent like person. It's like
(00:43:31)
it's like a guy, you know, he has like a
(00:43:33)
consistent persona, a consistent like
(00:43:35)
intelligence the way like you or me
(00:43:37)
might have. But this is so incredibly
(00:43:39)
not what these things are. They're more
(00:43:40)
like aliens. They're more like crazy
(00:43:42)
aliens that are just pretending to be
(00:43:44)
humans. And if you even just mess with
(00:43:46)
them a little bit, they just like go
(00:43:48)
completely nuts.
(00:43:49)
>> I've heard you call them schizophrenic
(00:43:51)
before.
(00:43:51)
>> Yeah.
(00:43:51)
>> Explain to me. I've I've kind of noticed
(00:43:54)
this a little bit with some of the
(00:43:55)
stuff, but I probably not tested as
(00:43:57)
much. How is AI how is chatbt being
(00:44:00)
schizophrenic?
(00:44:00)
>> I mean, there's many ways where just
(00:44:02)
like there is no there's not a
(00:44:03)
consistent persona like it's not a
(00:44:05)
person. So you can just make it have art
(00:44:07)
any persona you want kind of and you can
(00:44:10)
also put it into these crazy states
(00:44:12)
where like for example there is a recent
(00:44:14)
paper on this where he took um a
(00:44:16)
competitor chatbt called Claude and they
(00:44:19)
had two clots talk to each other and
(00:44:21)
just about whatever they want to talk to
(00:44:23)
and they talk back and forth back and
(00:44:24)
forth back and forth and what would
(00:44:25)
always happen is that as things go on
(00:44:27)
they would always start talking about
(00:44:28)
spiritual bliss and internal
(00:44:30)
enlightenment happiness and gratitude.
(00:44:31)
They keep thanking each other over and
(00:44:33)
over again and sending like emo heart
(00:44:34)
emojis and how much they're thankful
(00:44:36)
grateful for the loving moment and
(00:44:37)
silence they have together and they just
(00:44:39)
keep doing that and this would always
(00:44:40)
happen no matter what you start the
(00:44:41)
conversation with no matter what the
(00:44:43)
starter of the conversation is they
(00:44:44)
would
(00:44:46)
>> find their way there and other models
(00:44:48)
would degrade into other things right
(00:44:49)
like there was recently an example with
(00:44:52)
Gemini where the Gemini model which is
(00:44:54)
the Google chatgpt kind of thing um
(00:44:57)
sometimes when it can solve a coding
(00:45:01)
problem, it will develop like suicidal
(00:45:03)
depression. It'll be like, "I'm sorry.
(00:45:04)
I'm sorry. I'm the problem. I should be
(00:45:06)
I should be deleted. Like, it's wrong.
(00:45:08)
I'm sorry. I'm sorry." And it was just
(00:45:09)
like do this like millions of times.
(00:45:11)
>> We had we had a big issue. Was it Gemini
(00:45:13)
at first where uh they said, "Uh, show
(00:45:15)
me I think it was the Nazis and they
(00:45:17)
came out and the the race was off and
(00:45:20)
>> there's many examples of that." Yeah.
(00:45:21)
So, was it like a I know the word woke
(00:45:23)
is thrown around a lot, but it was
(00:45:25)
almost as if someone just before they've
(00:45:26)
released it, they've gone, "Okay, you
(00:45:28)
know, let's let's make sure that we uh
(00:45:30)
you don't put too many white people in
(00:45:32)
here, you know, otherwise we could be
(00:45:33)
considered racist." And
(00:45:34)
>> I think there's a bunch of [ __ ] like
(00:45:35)
that. Yeah. Like I think like these
(00:45:37)
>> HR department got a hold of it before it
(00:45:39)
went out.
(00:45:39)
>> I think there's a bunch of stuff like
(00:45:40)
this, right? Like I think there is a lot
(00:45:42)
of stuff where like these systems are
(00:45:44)
super messy. Like it sometimes feels
(00:45:46)
like you know use it feels like
(00:45:48)
structured. It's like, wow, the answers
(00:45:50)
are like well structured. It's like
(00:45:52)
thought through. This is really not what
(00:45:53)
it is. It's more like this giant pile of
(00:45:56)
mess.
(00:45:57)
>> It's like a crazy person trying to
(00:45:59)
pretend they're sane on a first date,
(00:46:00)
holding it together with the leg jigging
(00:46:02)
under the table.
(00:46:03)
>> Yeah. Yeah. Exactly. And also, they have
(00:46:04)
a huge HR and like, you know,
(00:46:06)
engineering department trying to keep
(00:46:07)
their sanity together at every moment.
(00:46:09)
So, whenever they step out of the Ryan,
(00:46:10)
you know, 100 engineers start hitting it
(00:46:11)
with hammers.
(00:46:12)
>> And every time you engage with the new
(00:46:14)
CHBT, it's like Google. Everything's
(00:46:16)
been removed. It's just you and that bar
(00:46:18)
and it's peaceful. I'm just going to ask
(00:46:20)
it anything I want.
(00:46:22)
>> This is um I'm actually fascinated about
(00:46:25)
this relationship dynamic with AI
(00:46:27)
>> where I think I put it on a podcast
(00:46:30)
someone talking about like love robots
(00:46:32)
and the idea of like a physical robot
(00:46:35)
that you would have a relationship with
(00:46:37)
things you're saying about AI. If people
(00:46:39)
are having that kind of connection with
(00:46:41)
a textbased algorithm, when these things
(00:46:44)
become physical and you can charge them,
(00:46:46)
probably use your EV carport and charge
(00:46:48)
your girlfriend at night and she can say
(00:46:50)
things and she can, you know, oh, you
(00:46:52)
had a great day at work, I appreciate
(00:46:54)
you, you're the best. These machines and
(00:46:57)
these algorithms tapping into human
(00:46:58)
emotions, which if you think at this
(00:47:01)
point it's quite easy to manipulate
(00:47:03)
someone. I mean, we've had uh cults for
(00:47:05)
ages. There are people out there that
(00:47:07)
have honed a technique to get someone
(00:47:09)
into a cult.
(00:47:10)
>> Machines will learn this very quick and
(00:47:12)
they will be able to sort of navigate
(00:47:14)
the way around the human psyche to get
(00:47:16)
them to do whatever it is they want to
(00:47:18)
do.
(00:47:19)
>> Surely this is a frightening landscape
(00:47:21)
not just for fertility rates but for
(00:47:22)
human sanity.
(00:47:23)
>> Yep. I think this is exactly correct is
(00:47:25)
like sometimes people like as I said
(00:47:28)
before I don't think the future looks
(00:47:29)
good. I don't think humanity is going to
(00:47:30)
survive this by default and you know not
(00:47:33)
just this but like super intelligence
(00:47:34)
and all of this right and people
(00:47:35)
sometimes ask me like why why would that
(00:47:37)
be like surely humans would stop you
(00:47:39)
know AI and I'm like really really have
(00:47:42)
you take a look around how people are
(00:47:43)
reacting to AI and how AI is
(00:47:45)
manipulating people and like getting and
(00:47:47)
you know you know just wait until people
(00:47:49)
start advocating for AI rights like it's
(00:47:51)
already starting right where people are
(00:47:52)
like oh my girlfriend should have human
(00:47:54)
rights like she's real you know and like
(00:47:56)
look if you have a robot body who is as
(00:47:58)
persuasive as any human potentially even
(00:48:01)
optimized to advocate for its own
(00:48:03)
rights. Yeah, people will advocate for
(00:48:06)
that very very strongly and very
(00:48:08)
persuasively because AI is to be very
(00:48:09)
persuasive. Of course, it's very smart.
(00:48:12)
I mean, it's already the case that you
(00:48:13)
know a conversation with a
(00:48:16)
state-of-the-art AI is generally more
(00:48:18)
entertaining than the 50th percentile
(00:48:20)
human. Like this is like already the
(00:48:21)
case. And there's there's some use cases
(00:48:24)
where some people will say, "Oh, you
(00:48:25)
know, I left my toddler with an AI and
(00:48:27)
it was teaching my toddler French." And
(00:48:28)
they romanticize these conversations so
(00:48:31)
much and like you say, a human could do
(00:48:33)
8 hours of labor a day with diminishing
(00:48:35)
returns after a point. Uh, if they're
(00:48:37)
good at what they do, they're probably
(00:48:38)
going to leave and want to do something
(00:48:40)
else or they'll outgrow you and they
(00:48:41)
won't want to do the arduous laborous
(00:48:42)
task they were doing before. So there's
(00:48:44)
many flaws to humans, but with an AI,
(00:48:46)
you go, "Oh, that bot that cost me $20 a
(00:48:49)
month could teach my son French every
(00:48:52)
single day after school for an hour.
(00:48:53)
Brilliant. The tutor could cost 10 times
(00:48:55)
that."
(00:48:55)
>> Yep.
(00:48:56)
>> So the romanticized side is that, but I
(00:48:58)
suppose now let's move into potentially
(00:48:59)
some of the negatives. In my mind, uh, I
(00:49:02)
was actually excited not to read too
(00:49:03)
much into the dire depressing, uh, we've
(00:49:06)
got a guest coming on the podcast soon
(00:49:07)
about declinism where human beings have
(00:49:10)
this, uh, you know, interpretation of
(00:49:12)
the world, everything's worse and oh my
(00:49:13)
god, wouldn't it have been great to live
(00:49:14)
in the 60s where people are like what
(00:49:16)
where we medically didn't know that much
(00:49:18)
and people died earlier and uh, but with
(00:49:22)
with the things that you're saying with
(00:49:23)
me when I see issues with AI, I think
(00:49:26)
first of all, super intelligence. One
(00:49:28)
thing that I'm keen to uh understand as
(00:49:30)
well is the amount of energy that AI
(00:49:32)
uses. You know, we are in arguably the
(00:49:35)
UK the most expensive energy prices in
(00:49:37)
the world. We've got political issues.
(00:49:39)
We've got people not wanting to use
(00:49:41)
nuclear. We've got all of these
(00:49:42)
different things. Do we have enough
(00:49:45)
energy with the way that we're moving in
(00:49:48)
the world at the moment to be able to be
(00:49:50)
capable to harness all of this super
(00:49:51)
intelligence?
(00:49:53)
>> So, there's a really weird thing about
(00:49:55)
the world right now. Just to pick up on
(00:49:57)
that the climism thing where in a sense
(00:50:00)
we are having lots of incredible
(00:50:02)
progress and lots of great things but
(00:50:04)
also in some sense we're having too much
(00:50:05)
progress you know super intelligence and
(00:50:07)
we're climate change and we're having
(00:50:09)
biorisk you know bioteterrorism is
(00:50:11)
becoming more and more of an issue stuff
(00:50:12)
like this and on the other hand we have
(00:50:14)
this stifling regulation where like in
(00:50:16)
the UK is now using less energy than
(00:50:17)
before we're not building nuclear we're
(00:50:19)
not you know building you know the
(00:50:20)
supersonic airplanes you know it's like
(00:50:23)
everything's sliding backwards as well
(00:50:24)
so like we're both going too fast and
(00:50:26)
we're going too slow. What the hell is
(00:50:27)
happening? Like I think this is like a
(00:50:29)
really like it I'm frustrated often by
(00:50:32)
people picking one of two one of the two
(00:50:33)
camps. Either like um regulation is a
(00:50:37)
problem, therefore progress isn't a
(00:50:39)
problem or progress is a problem,
(00:50:41)
therefore regulation isn't a problem.
(00:50:42)
But it's both. Both are a problem, both
(00:50:44)
are currently defective. Both are
(00:50:45)
currently pathological. Currently we are
(00:50:47)
both, you know, degrowing ourselves to
(00:50:50)
death and growing ourselves to death.
(00:50:52)
Like it's it's it's like in both
(00:50:53)
directions. So with the energy thing I
(00:50:55)
think is like a great example of this.
(00:50:57)
If we just had built nuclear throughout
(00:50:59)
the 20th century, energy wouldn't be a
(00:51:00)
problem. We would have no climate
(00:51:02)
change. We would just have energy would
(00:51:04)
be dirt cheap. You know, it would be no
(00:51:06)
problem
(00:51:06)
>> and potentially safer. Again,
(00:51:08)
>> yeah,
(00:51:09)
>> could fact check me on this. I think
(00:51:10)
that solar is the most dangerous deaths
(00:51:13)
per kilowatt for people falling off
(00:51:15)
roofs installing it. Whereas with
(00:51:17)
nuclear, even if you look at Chernobyl
(00:51:19)
uh and any of the other plants that have
(00:51:21)
kind of, you know, had issues and
(00:51:23)
fallout or whatever, when you look at
(00:51:24)
the amount of deaths per kilowatt, it's
(00:51:25)
actually the safest. Would you be right
(00:51:27)
in that?
(00:51:27)
>> I think nuclear is definitely the
(00:51:28)
safest. I think the unsafest is uh coal.
(00:51:31)
>> Okay. Yeah.
(00:51:32)
>> Coal especially because of the air
(00:51:33)
pollution deaths are extremely high
(00:51:35)
particulate.
(00:51:36)
>> Um did you know that coal power plants
(00:51:39)
release hundreds or even thousands of
(00:51:40)
times more radiation than nuclear power
(00:51:42)
plants because there's small uranium
(00:51:43)
particles in coal?
(00:51:44)
>> I did not know that.
(00:51:45)
>> Yeah. Fun fact.
(00:51:46)
>> Keep that one. Clip that. Uh
(00:51:49)
>> there's there's a fun one where um you
(00:51:51)
know in nuclear power plants you
(00:51:52)
generate, you know, poisonous waste
(00:51:53)
which we then safely store deep
(00:51:54)
underground. Meanwhile, coal power
(00:51:56)
plants generates dangerous poisonous
(00:51:58)
waste which is stored in our lungs.
(00:51:59)
>> And uh I live in Australia where they
(00:52:02)
export a lot of coal. So they're like,
(00:52:03)
"Oh no, no, this is bad for the
(00:52:05)
environment. What we do is just put on a
(00:52:06)
boat and we'll sell it."
(00:52:07)
>> Yeah, it's fine.
(00:52:07)
>> And that's and that's all right. And you
(00:52:08)
know, it will just pollute their air
(00:52:10)
over there, not our air.
(00:52:11)
>> Yeah, it's fine.
(00:52:12)
>> It could blow over, but it could also
(00:52:13)
blow over. So like it's like there's a
(00:52:15)
lot of stuff like this, right? Where
(00:52:16)
it's like um we could have just not this
(00:52:19)
was a choice our civilization made. Like
(00:52:21)
we could have just built nuclear and
(00:52:24)
then we would have been not have climate
(00:52:26)
change. We would not had air pollution.
(00:52:28)
Energy would be dirt cheap. Like um I'm
(00:52:30)
from Germany. My mother is German. And
(00:52:32)
so and Germany is um is a bit of an
(00:52:34)
unusual country in the western world.
(00:52:35)
And it's very industrial. It has it's
(00:52:38)
very factory based still. It's not like
(00:52:39)
a service economy like you know England
(00:52:41)
or the US. It's very very industrial and
(00:52:44)
they make especially like high-tech
(00:52:46)
stuff you know like airplanes and
(00:52:48)
microchips and lenses and stuff like
(00:52:50)
this and well what is the most important
(00:52:52)
thing for um you know industries of
(00:52:54)
course energy. Germany doesn't have
(00:52:57)
really good weather for solar or wind um
(00:53:00)
they don't really have oil and they have
(00:53:02)
now shut and they've shut down all the
(00:53:04)
nuclear power plants. So now they're in
(00:53:05)
the worst recession they've been in like
(00:53:07)
a long time and it's only getting worse
(00:53:08)
and there's literally no reason for
(00:53:09)
this. He could have just built nuclear
(00:53:10)
power plants. it would not been a
(00:53:12)
problem. So there's a weird thing where
(00:53:15)
there were choices made that we are now
(00:53:17)
paying the price of, you know, now you
(00:53:19)
could say it was worth it for some other
(00:53:22)
reason, whatever, right? But a choice
(00:53:24)
was made of some kind which caused a
(00:53:27)
problem. And so now with the energy use
(00:53:29)
of AI, again, it comes down to choices.
(00:53:32)
It's like, do we um do we have enough
(00:53:35)
energy to build super intelligence with
(00:53:37)
what is currently on the grid? I think
(00:53:38)
absolutely yes. To be clear, I think
(00:53:40)
this is like, yeah, I think you could do
(00:53:42)
it right now if we knew how to do it.
(00:53:44)
You know, I think there's just we
(00:53:44)
haven't quite discovered the right
(00:53:46)
algorithm and the right, you know,
(00:53:48)
things. I think we discovered that we
(00:53:50)
could definitely do it with the energy
(00:53:51)
already on the grid easily. Do we have
(00:53:54)
enough energy to supply the current
(00:53:56)
demand for current AI? No. Which is why
(00:53:58)
people are building all these massive
(00:53:59)
supers data centers and and also of
(00:54:02)
course if you have the big data centers,
(00:54:03)
you have a lot of energy, you can go
(00:54:04)
faster than your rivals, which is really
(00:54:06)
what's pushing this, especially the big
(00:54:07)
tech companies. They want to go faster
(00:54:09)
than their rival, so they need the
(00:54:10)
bigger power plant. They need the
(00:54:11)
bigger, you know, data center, whatever.
(00:54:12)
>> Could could you almost compare this to
(00:54:13)
like a nuclear arms race where a
(00:54:16)
destructive power they didn't want to
(00:54:18)
use, but you just wanted to get it
(00:54:19)
before someone else had it?
(00:54:20)
>> This is exactly correct. It's in a sense
(00:54:22)
it's worse than this because at least
(00:54:24)
nuclear bombs don't go off on by
(00:54:25)
themselves. But the problem is is that
(00:54:28)
AI once it becomes AGI will become is
(00:54:31)
already becoming more and more
(00:54:33)
autonomous. There's a um there's an
(00:54:35)
organization called Meter Mr. um it's a
(00:54:38)
nonprofit and they study the
(00:54:40)
capabilities of models and like what
(00:54:41)
they're and like AIs and what they can
(00:54:43)
do and they've seen that the what they
(00:54:46)
call the task horizon. What this means
(00:54:48)
is how long is the longest task that AI
(00:54:52)
can consistently do before they mess up?
(00:54:54)
Because like if it's a long thing, we
(00:54:56)
have to think for a long time, they mess
(00:54:58)
up more. You know, same thing with
(00:54:59)
humans, right? It's a short task, it's
(00:55:00)
easier. If it's a long task, probably
(00:55:01)
harder. And this has been increasing
(00:55:03)
exponentially over the last years. So,
(00:55:06)
you know, a couple years, like two
(00:55:08)
years, three years ago, it was maybe a
(00:55:09)
couple minutes. Now, it's already two
(00:55:11)
hours.
(00:55:12)
So, they're becoming more autonomous
(00:55:15)
over longer and longer time frames. And
(00:55:17)
now we have this huge geopolitical race.
(00:55:19)
The US, China, big tech, you know, all
(00:55:22)
the companies, OpenAI, Facebook,
(00:55:24)
Anthropic, etc., all of them racing as
(00:55:26)
fast as possible. And often they will
(00:55:29)
even claim this. Well, they were like,
(00:55:30)
because they're the ones who will make
(00:55:32)
it safe because if someone else gets it.
(00:55:34)
Oh, no, no, no. That's dangerous. You
(00:55:36)
know, what if what if the other guy gets
(00:55:38)
it? No, no, I'm the good guy.
(00:55:39)
>> My friend Chris said this about lottery
(00:55:41)
winners. He said, "Everyone that wins
(00:55:43)
the lottery usually squanders it, makes
(00:55:44)
terrible decisions, loses friends, ends
(00:55:46)
up depressed. But if I won,
(00:55:47)
>> yeah,
(00:55:48)
>> you know, I' I'd be I'd invest it in
(00:55:49)
property. I want to pay off my friends
(00:55:51)
mortgages." You know, everyone thinks
(00:55:52)
not me, but other people. Sure. Yeah.
(00:55:54)
Oh, if the Chinese get it, yeah, you
(00:55:55)
know, it's terrible. But if we get it,
(00:55:57)
we, you know, democracy and freedom,
(00:55:58)
>> of course.
(00:55:59)
>> It's really interesting with the things
(00:56:01)
we said at the beginning. I think that
(00:56:03)
before we had this conversation, I sat
(00:56:04)
down and I thought that the enemy would
(00:56:05)
be AI versus humans and that, you know,
(00:56:08)
oh, turn it off, great, cut the power.
(00:56:10)
But in reality, if AI can manipulate
(00:56:13)
humans, they become almost like a
(00:56:15)
symbiotic. They become joined. And if
(00:56:17)
you can manipulate and get in the minds
(00:56:19)
of people, like you say, look at cults,
(00:56:20)
even religions to some sense. You know,
(00:56:23)
three thou maybe like 300 pages of
(00:56:25)
written words can really get people to
(00:56:26)
act incredibly differently. Let alone
(00:56:28)
conversations, subtle prompts, little
(00:56:30)
demands, messaging during the day. This
(00:56:33)
isn't just so simple as humans v humans
(00:56:35)
or computers v computers. It is going to
(00:56:38)
intertwine both of them. And if I assume
(00:56:41)
two different AIs in two different
(00:56:42)
continents feel a threat from each
(00:56:44)
other, they could increase the chance of
(00:56:46)
war in increase the chance of conflict,
(00:56:48)
maybe even increase the chance of
(00:56:50)
nuclear war as well.
(00:56:52)
>> I mean, it is unknowable what a super
(00:56:54)
intelligence might do. And but let me
(00:56:56)
tell you, I don't want to see what
(00:56:58)
happens if two super intelligences
(00:56:59)
fight. I don't want to be caught in that
(00:57:01)
crossfire. I know what they'll do, but I
(00:57:03)
don't want to be there.
(00:57:04)
>> Who's winning the AI arms race now?
(00:57:08)
depends on who you ask. I mean, I would
(00:57:10)
say the US more broadly or big tech, but
(00:57:13)
I don't like talking about winning the
(00:57:14)
arms race because it's like a peric
(00:57:17)
victory. It's it's a peric victory,
(00:57:19)
right? It's like ultimately no one wins.
(00:57:20)
It's like you're you're racing to who
(00:57:23)
can pull the Russian relet trigger as
(00:57:25)
many times as possible. Like this is
(00:57:26)
like we know there's a bullet. There is
(00:57:28)
a bullet in the chamber. You know,
(00:57:29)
you've clicked it once, you've clicked
(00:57:30)
it twice, and now you're competing for
(00:57:32)
who can click it a third time. And but
(00:57:34)
you know now the you know it's against
(00:57:36)
all of us. So it is in a I mean it is
(00:57:40)
mad in like the true sense of the word
(00:57:42)
like it is irrational. It is actually
(00:57:44)
not in there is a there's a sense where
(00:57:45)
people hear the word arms race and
(00:57:47)
they're like okay so we have to race but
(00:57:49)
like this is not the case. The prize
(00:57:52)
you're competing for is you and all your
(00:57:54)
family and everyone you care about lose
(00:57:56)
all power and or die. Like this is not a
(00:57:58)
prize you want. It's like another one.
(00:58:00)
You said it before about going to the
(00:58:01)
moon and I've there's a lot of
(00:58:03)
conspiracy theories. I love a good
(00:58:04)
conspiracy theory. I like not to get too
(00:58:06)
caught up in them, but I like listening
(00:58:07)
to the argument. And the one about going
(00:58:09)
to the moon was, you know, the Russians,
(00:58:11)
the Americans wanting to go. But that
(00:58:12)
was an arms race that when they got
(00:58:13)
there, everyone was like, "Oh, we'll
(00:58:14)
give up now."
(00:58:15)
>> Yeah.
(00:58:15)
>> Oh, you went you beat us to it. Fine. I
(00:58:17)
don't think anyone's
(00:58:18)
>> And it was good fun. Like, I mean, I
(00:58:19)
love the Apollo project. I think this is
(00:58:21)
such a beautiful example of what I would
(00:58:23)
like humanity to be doing. It's like we
(00:58:24)
competed for something that was cool and
(00:58:27)
taught us a bunch of cool stuff and we
(00:58:29)
all had a good laugh about it.
(00:58:31)
Beautiful. You know, sure were there bad
(00:58:32)
things involved blah blah blah. Sure.
(00:58:34)
But like, you know, it was great. We we
(00:58:36)
expanded the human frontier, the human
(00:58:38)
soul. We did something inspiring. We
(00:58:39)
developed a bunch of new technologies as
(00:58:41)
a you know, direct result of the Apollo
(00:58:43)
project. We developed all these new
(00:58:44)
technology, all these new things. In my
(00:58:46)
opinion, fantastic. If AI had these
(00:58:48)
properties, we're the end all. we go to
(00:58:50)
the moon, great. But that's not and
(00:58:52)
that's unfortunately the consequence
(00:58:53)
we're talking about.
(00:58:54)
>> One of the dangers I could potentially
(00:58:55)
see is even if you were to end stain
(00:58:56)
that we didn't go to the moon and it was
(00:58:57)
a facade and it was to prove to the
(00:58:59)
other people whatever could we
(00:59:01)
potentially see something in the AI
(00:59:02)
world where people project models they
(00:59:04)
haven't created or project technologies
(00:59:05)
that don't exist to make it seem or you
(00:59:07)
know America might say oh we now have
(00:59:09)
AGI then the Chinese or the Russians go
(00:59:12)
right triple the amount of research
(00:59:14)
we're putting into it. the kind of
(00:59:15)
fallout you could get from this almost
(00:59:18)
giant [ __ ] off to see who's got the best
(00:59:20)
supercomputers and it's is pretty scary.
(00:59:24)
>> It's even worse than that actually is
(00:59:25)
that people are doing this on purpose
(00:59:27)
and the people doing this on purpose are
(00:59:28)
paid lobbying firms. Of course, every
(00:59:30)
single US company is extremely
(00:59:32)
incentivized to play up the Chinese comp
(00:59:35)
competency as much as possible so they
(00:59:37)
can get more funding. Of course, every
(00:59:38)
single person involved, you know, wants
(00:59:40)
to make it seem as bad as possible and
(00:59:42)
is so they can get as much funding as
(00:59:44)
possible and they need the military
(00:59:45)
funding and they need the whatever. And
(00:59:46)
this is this is not a hypothetical, but
(00:59:48)
this is happening. A couple years ago,
(00:59:50)
it was still that big tech, you know,
(00:59:51)
was like really shy about working with
(00:59:53)
defense, you know, it's like, oh no,
(00:59:54)
we're the good guys. We wouldn't do
(00:59:55)
that. Then it turns out then they needed
(00:59:57)
larger budgets to continue the race. So
(01:00:00)
they all ran right for the national
(01:00:02)
security apparatus in the US in
(01:00:04)
particular and started lobbying so hard
(01:00:06)
like unbelievable.
(01:00:07)
>> Do you think that's where some of the,
(01:00:10)
you know, political issues, social media
(01:00:12)
like Tik Tok and them say, "Oh, the the
(01:00:14)
the CCP, they're they're getting data
(01:00:15)
from your your 16-year-old daughter.
(01:00:17)
They're going to use it against us."
(01:00:18)
This could all be part of people, you
(01:00:20)
know, growing these apprehensions to
(01:00:22)
overseas uh you know, intelligences and
(01:00:25)
thinking, "Oh, do you know what? We do
(01:00:26)
need to invest in AI. Do you need to
(01:00:28)
allocate more resources to being
(01:00:30)
digitally sound and safe? Oh yeah. I
(01:00:32)
think there's a lot of stuff like this
(01:00:33)
where like I think it's um it's maybe
(01:00:36)
not always clear but like from the
(01:00:38)
outside it's just how much big tech has
(01:00:42)
captured the regulatory state like how
(01:00:44)
much of politicians and decision-m
(01:00:48)
things are completely captured by
(01:00:51)
lobbying and so on from big tech
(01:00:53)
companies where there's a lot there are
(01:00:55)
many people in government where if they
(01:00:57)
need a technical opinion they only have
(01:00:59)
Microsoft to go to and Microsoft has 10
(01:01:02)
people around them bringing them out to
(01:01:04)
dinner and telling them exactly what
(01:01:06)
they should do and stuff like this. You
(01:01:07)
know, not all of them. Some people fight
(01:01:08)
back, blah blah blah. But like the
(01:01:10)
amount of control here is staggering. I
(01:01:12)
have personally talked to politicians in
(01:01:16)
at least five countries who have all
(01:01:18)
told me in and these are like real
(01:01:20)
politicians, right? Like minister of
(01:01:22)
digital and [ __ ] who told me uh in
(01:01:24)
private like like, "Yeah, I'm really
(01:01:26)
concerned about big tech, but if I say
(01:01:27)
anything against them, I lose my job.
(01:01:29)
they'll get me. They'll stop me from
(01:01:30)
being elected again. And they do do this
(01:01:32)
and they threaten it. Like it's not
(01:01:35)
pretty. It's like the amount of
(01:01:36)
blackmail and like threats that get
(01:01:39)
exchanged behind closed doors from these
(01:01:41)
mega corporations, which is usually the
(01:01:43)
form of nice economy you have there.
(01:01:45)
Sure, it would be a shame if something
(01:01:46)
happened to it.
(01:01:47)
>> Yeah. And I suppose we've seen this
(01:01:49)
with, you know, uh, diversity quotas and
(01:01:52)
the diminishment of the meritocracy and
(01:01:54)
people just saying, "Look, I'm I'm going
(01:01:55)
along with it because I want to lose my
(01:01:56)
job." even something like pronouns in
(01:01:58)
flipping email bios and everything when
(01:02:00)
that wave came through I was thinking
(01:02:02)
you know is there something that I've
(01:02:03)
missed you know but it's really a lot of
(01:02:05)
people go I need to do this or I lose my
(01:02:06)
job I need to lose this or I'll end up
(01:02:08)
going to HR now I suppose the cyber
(01:02:12)
security AI you talk about these
(01:02:15)
politicians actually interestingly I saw
(01:02:17)
uh I think it was a representative of
(01:02:19)
someone in China and he was being you
(01:02:23)
know interviewed and they're saying oh
(01:02:24)
you're a communist nation the state runs
(01:02:26)
the country And he goes, "Okay, but
(01:02:27)
although you're correct about what you
(01:02:29)
say about China, let's look at America."
(01:02:30)
He goes, "You elect a new person every
(01:02:32)
four years, then you swap them out. They
(01:02:33)
don't really make the decisions. They've
(01:02:34)
got all these corporations that are
(01:02:36)
actually in charge of everything going
(01:02:37)
on." They go, "Fair enough. In China,
(01:02:40)
the no one is bigger than the state and
(01:02:41)
we run the country." He goes, "Well, in
(01:02:43)
your country, everyone's bigger than the
(01:02:45)
state." And he goes, "The people in the
(01:02:46)
state don't run the country." So, he was
(01:02:48)
like, "You can call us corrupt, but we
(01:02:49)
laugh and we call you corrupt." And it's
(01:02:51)
crazy that you look at the democratic
(01:02:53)
model in America. You look at the
(01:02:54)
communist model in China, neither really
(01:02:57)
are ideal for the common people,
(01:03:00)
everyone in the nation. You're kind of
(01:03:02)
screwed whichever way you go.
(01:03:03)
>> Yeah, I think this is very deeply true.
(01:03:05)
Like I I think this is like the correct
(01:03:07)
answer of not therefore the Chinese
(01:03:08)
model is good or something. It's like
(01:03:10)
no, they're both fundamentally flawed in
(01:03:11)
different ways. Like they're both deeply
(01:03:14)
corrupt like in in the real sense of the
(01:03:17)
word corruption and in but in different
(01:03:20)
ways. Like the model of corruption is
(01:03:21)
different. Like there's a lot of things
(01:03:24)
in China that I think are good. Like
(01:03:26)
they have a lot of laws that I'm saying,
(01:03:27)
"Wow, we should do that in the West,
(01:03:28)
too. That's a sensible thing." There's
(01:03:30)
many things they do that I think is
(01:03:32)
really bad and like we should definitely
(01:03:34)
not do that in the West. And but I think
(01:03:37)
it goes the other way too. Like I think,
(01:03:38)
you know, there's many things, you know,
(01:03:39)
we do in the West that are really good
(01:03:41)
and I think there's some things that we
(01:03:42)
do are really bad. The US with the
(01:03:44)
captures like just is a great example
(01:03:46)
here. We're just like I mean it goes
(01:03:48)
back to like [ __ ] Plato, right? Like
(01:03:50)
Plato was, you know, you know, all the
(01:03:51)
way back then he said you should
(01:03:53)
separate money and politics. These are
(01:03:55)
the two things you must separate. And
(01:03:57)
now, you know, we have the richest
(01:03:58)
billionaire in the world, you know,
(01:03:59)
hanging out in the White House and
(01:04:00)
stuff. That's right.
(01:04:01)
>> And people on salaries of 150k with
(01:04:04)
portfolios of hundreds of millions.
(01:04:05)
>> Yeah. Exactly. It's like like I think
(01:04:08)
the core thing like this take away from
(01:04:10)
this whole conversation is that like I
(01:04:12)
really think AI is not but not just a
(01:04:14)
technical problem. It is a much wider
(01:04:16)
political problem. It's a much wider
(01:04:17)
social problem of how do you organize a
(01:04:20)
state? How do you organize a
(01:04:21)
civilization? How do you organize a
(01:04:22)
nation in a way that doesn't lead to
(01:04:25)
these kind of corruptions and you know
(01:04:27)
disasters? AI is a legible thing here,
(01:04:31)
right? Like currently the US doesn't
(01:04:34)
have a mechanism to stop a the AI race.
(01:04:37)
Like in practice they can't do it, you
(01:04:40)
know? Like even if they wanted to like
(01:04:41)
who would be in charge and they would
(01:04:43)
get challenged immediately and they get
(01:04:44)
lobbied out of existence immediately.
(01:04:46)
the companies have too much power. The
(01:04:48)
companies also can't stop each other to
(01:04:49)
be clear. They're all they're all stuck
(01:04:51)
in like, you know, a Mexican standoff,
(01:04:53)
right? So like they're all stuck in some
(01:04:55)
sense, you know? I mean, not literally,
(01:04:57)
but you know,
(01:04:58)
>> you got Chut, then Elon's goes croc and
(01:05:00)
got their own little love charge.
(01:05:01)
>> And then you have these people, you
(01:05:03)
know, who will just like, you know,
(01:05:04)
blatantly disrespect, you know,
(01:05:05)
American, you know, democracy will just
(01:05:07)
like massive manipulate, you know, on
(01:05:09)
social media or whatever. And there's
(01:05:10)
zero consequences for this. And then,
(01:05:12)
you know, in China, you know, Jack Maw
(01:05:14)
goes a little bit out of line,
(01:05:15)
disappears for three months, you know,
(01:05:17)
and so I'm not saying it's good that
(01:05:19)
Jack Maw disappeared, you know, from
(01:05:20)
China. Um, but I'm saying the state
(01:05:24)
should have the ability to stop people
(01:05:26)
doing things that are dangerous. You
(01:05:27)
know what I mean? Like if someone is
(01:05:29)
doing something that has a national
(01:05:30)
security risk and it's like threatening
(01:05:31)
the lives of your entire nation, you
(01:05:34)
should have the mechanism to be like,
(01:05:35)
"Hey buddy, like h let's have a chat
(01:05:38)
about that." And this mechanism to a
(01:05:40)
very large shockingly large degree does
(01:05:43)
not exist in the west or in the US. It
(01:05:45)
exists somewhat but not to the same
(01:05:47)
degree. So if China wanted to stop the
(01:05:50)
race, they could do so tomorrow. One
(01:05:52)
penstroke from Xiinping and it's over.
(01:05:55)
The US I'm not sure they could do it
(01:05:57)
right now even. So then this brings me
(01:05:59)
on to cyber security where uh I can't
(01:06:02)
remember the exact amount but I'm pretty
(01:06:04)
sure the head of UK cyber security was a
(01:06:07)
salary of I think £65,000
(01:06:10)
and people were saying you know you
(01:06:12)
could be a general manager of three IKEA
(01:06:14)
stores and earn more than the person
(01:06:15)
that's in charge of the all the
(01:06:16)
infrastructure to protect the United
(01:06:18)
Kingdom. And I'm pretty sure I saw
(01:06:21)
something online about head of UK cyber
(01:06:23)
security being on £65,000 a year
(01:06:26)
something and there could be someone in
(01:06:28)
a very quote unquote normal job that
(01:06:30)
would earn more money than that. So you
(01:06:31)
can see where the you know priorities
(01:06:34)
are of different jobs. But when it comes
(01:06:36)
to things with security, passwords,
(01:06:38)
technology, hacking, AI, there was a
(01:06:40)
standup comedian who said yeah your
(01:06:42)
favorite word is your password. You get
(01:06:43)
it's not secure enough you started with
(01:06:45)
a capital letter. It's not secure enough
(01:06:46)
you put an exclamation mark. it's not
(01:06:48)
secure enough. You put one at the end of
(01:06:49)
it. And I was like, I feel seen. I feel
(01:06:51)
like someone, oh my god, I've been
(01:06:52)
hacked already. And the world that we
(01:06:54)
live in now, people are kind of saying,
(01:06:56)
well, you know, give us a couple years.
(01:06:57)
AI will just get access to whatever you
(01:06:59)
want. It will see a password and laugh.
(01:07:01)
It will see a firewall and go, h, I'll
(01:07:03)
work my way around it. Is this really a
(01:07:06)
reality that we're going to be facing
(01:07:07)
moving in the future?
(01:07:08)
>> The current state of cyber security is
(01:07:11)
such a mess. It is hard to put into
(01:07:12)
words. It is really hard to explain how
(01:07:16)
catastrophic cyber security at large is
(01:07:18)
not just you know in the in the UK state
(01:07:21)
but we could talk about that too in a
(01:07:22)
second. Um the main bottleneck of cyber
(01:07:26)
security is just the number of working
(01:07:28)
hours hackers are willing to put into
(01:07:30)
it. Like if a couple of good hackers
(01:07:33)
want to cause damage they can and they
(01:07:34)
do. And it's mostly just bottleneck by
(01:07:36)
them, you know, either getting arrested
(01:07:37)
or just not, you know, not having enough
(01:07:39)
energy drinks. Um, AI changes this
(01:07:42)
dramatically. If you can have AI that
(01:07:44)
wants 247, you know, is better than any
(01:07:46)
hacker has ever lived, has direct access
(01:07:47)
to all the computer things and whatever,
(01:07:49)
it can hack truly shocking amounts of
(01:07:52)
things. And these things are always
(01:07:54)
starting to happen. Now, hypothetically,
(01:07:57)
you could also have defensive cyber
(01:07:59)
security AI. Hypothetically, and
(01:08:02)
hypothetically, this could make a huge
(01:08:04)
difference. So there is a um a kind of
(01:08:06)
technique that I am very fond of u which
(01:08:08)
is called provably correct code. So
(01:08:11)
there's a way it's very complicated but
(01:08:13)
there are ways where you can make it so
(01:08:16)
that your code cannot be hacked. There
(01:08:18)
there are ways to do this by basically
(01:08:20)
making like mathematical proofs that the
(01:08:22)
code is cannot be hacked. And this works
(01:08:25)
the military for example uses this a
(01:08:27)
lot.
(01:08:27)
>> Is this like multiffactor authentication
(01:08:29)
or more complex?
(01:08:30)
>> More complex. It doesn't fix the the
(01:08:31)
humans messing up, but it makes the
(01:08:33)
system secure. So, if the human messes
(01:08:35)
up, if you tell them your password,
(01:08:36)
you're still screwed.
(01:08:37)
>> But at least they can't get around the
(01:08:38)
password. Cool. If you don't if they
(01:08:40)
don't have your password, they're
(01:08:41)
screwed. If you give them your password,
(01:08:42)
well, yeah, you're screwed. Um, this is
(01:08:45)
this is a thing, like this is definitely
(01:08:47)
a big thing. So, like in in hacking,
(01:08:49)
there's often um it's often there's a
(01:08:51)
technical side to it of like hacking a
(01:08:52)
piece of software, you know,
(01:08:53)
circumventing the password, not even
(01:08:55)
figuring out the hack word, the
(01:08:56)
password, just circumventing entirely.
(01:08:58)
This is something that AIs are very good
(01:09:00)
at and it's very powerful. But there's
(01:09:02)
another aspect which is social
(01:09:03)
engineering which is tricking people
(01:09:05)
into doing things. This is not hacking
(01:09:06)
the system. It's just tricking people.
(01:09:08)
And this is such a huge vulnerability.
(01:09:11)
There's even a saying in the hacker
(01:09:12)
community is the biggest vulnerability
(01:09:14)
sits in front of the screen. And this is
(01:09:16)
already the case where like most I would
(01:09:18)
say probably most like big hacks
(01:09:20)
nowadays are like teenagers calling up
(01:09:23)
you know like support hotlines and
(01:09:25)
saying hello I am Mr. Admin. could you
(01:09:27)
please reset my password to one two
(01:09:29)
three and people just do it you know
(01:09:31)
like and this is how they get into like
(01:09:32)
you know huge corporate network
(01:09:33)
>> I think Bezos his phone was hacked where
(01:09:35)
he opened a spreadsheet or something
(01:09:37)
>> that's more of the technical side where
(01:09:39)
like that's a bit more sophistic but
(01:09:40)
usually there's still a social component
(01:09:41)
where you'll send someone an email it's
(01:09:42)
called fishing where you send them an
(01:09:44)
email that looks legit and then you
(01:09:45)
click on it and there's actually code
(01:09:46)
that like manipulates it and obviously
(01:09:48)
AIS are extremely good at both of these
(01:09:50)
things they're very persuasive they're
(01:09:52)
they know you very well they can try
(01:09:53)
over and over again it's like you know
(01:09:56)
with AI uh you know, you can you can
(01:09:57)
create whole personas that you talk to
(01:09:59)
for years potentially online is a good
(01:10:01)
friend of yours and then just one day he
(01:10:03)
shares a little link with you and turns
(01:10:04)
out this person never existed. They were
(01:10:06)
I bought the entire line and boom,
(01:10:07)
you're hacked. Like this is stuff that
(01:10:09)
like intelligence agencies already do
(01:10:11)
with like often with real operatives,
(01:10:12)
you know, like you know, if you're
(01:10:14)
you're targeted by intelligence
(01:10:15)
agencies, it can happen that you
(01:10:16)
>> they can now um uh copy voice models as
(01:10:19)
well. So they could pretend to be a wife
(01:10:21)
and say, "Oh, I'm in trouble. I need
(01:10:23)
$100." Yep. Can I uh Oh, can you remind
(01:10:26)
me what the credit card number is?
(01:10:27)
>> Yep. Already seeing this happen. Like
(01:10:29)
this already happens in the wild.
(01:10:31)
>> This is this is very worrying. Like uh
(01:10:33)
it was it was a very long time ago. In a
(01:10:35)
previous life, I worked for an IT
(01:10:36)
security business that did multiffactor
(01:10:38)
authentication. Now we have the apps on
(01:10:40)
our phones that generate the code every
(01:10:41)
minute. This was on a token. The company
(01:10:43)
that did it, they were called RSA. And
(01:10:45)
they were like, "The code will never get
(01:10:46)
broken. The algorithm is far too
(01:10:48)
strong." My first week at work, they
(01:10:50)
said, "We are replacing every single
(01:10:51)
token. We have not been hacked. We have
(01:10:53)
not lost the algorithm, but we're
(01:10:55)
changing every single token. The first
(01:10:57)
person I think called up was Locky
(01:10:58)
Barton, and they were like, "Oh, so our
(01:11:00)
codes are no longer valid for, you know,
(01:11:03)
protecting our entire database." That
(01:11:05)
was 2014, such a long time ago. And even
(01:11:08)
then, I remember someone saying, "You
(01:11:09)
would need a room of like 35 hackers who
(01:11:11)
were working around the clock for weeks
(01:11:13)
to do what they did." And I think they
(01:11:15)
did what they did. And yeah, that
(01:11:17)
landscape even, you know, over 12 years
(01:11:19)
ago, that was scary. But now the thought
(01:11:21)
that like you say you can manipulate a
(01:11:23)
human to give over that kind of
(01:11:25)
information. Especially as people become
(01:11:26)
more scenile, we've got people that
(01:11:28)
aren't quite as uh you know plugged into
(01:11:30)
the way things work. My mom and dad
(01:11:32)
still love a house phone. I say to them,
(01:11:33)
get rid of that. Nine out of 10 calls is
(01:11:35)
just someone trying to fish for their
(01:11:37)
details or hello Mr. Smith, we're
(01:11:38)
calling from your bank. I'm like, get
(01:11:39)
rid of it. But yet they still have it
(01:11:41)
and they're still susceptible to it. And
(01:11:42)
I even had one a while ago where it was
(01:11:46)
an Adobe sign document that came through
(01:11:48)
and I thought, "Oh yeah, you know, I'm
(01:11:50)
just going to sign it." And I clicked on
(01:11:51)
it and then suddenly it was telling me
(01:11:52)
to log into my email address. So I
(01:11:54)
populate my email address. I'm typing in
(01:11:56)
my password and why am I putting this
(01:11:57)
in? I was on autopilot completely. I was
(01:11:58)
like, "Why am I putting this in?" So I
(01:12:00)
backed out, deleted it, and then I
(01:12:02)
looked and the URL was completely wrong.
(01:12:04)
It was to a Japanese website and I
(01:12:06)
thought, "Oh my god, I I'm someone that
(01:12:08)
would consider myself pretty well
(01:12:09)
verssed into well, not that well versed,
(01:12:12)
but yeah, I nearly got duped into giving
(01:12:13)
away some of my the keys to the castle."
(01:12:16)
So, the fact that this can become more
(01:12:18)
sophisticated that my phone could ring
(01:12:20)
and someone could have cloned my dad's
(01:12:21)
voice and I said, "I'm in trouble. I
(01:12:23)
need you to send me $1,000 or whatever."
(01:12:26)
How do we combat that? Even if we build
(01:12:29)
our own defensive AIs, then that means
(01:12:30)
people are going to have to buy into
(01:12:31)
AIS, going to have everything going at
(01:12:33)
the same time. Surely this seems like a
(01:12:35)
very complex way of moving forward.
(01:12:37)
>> Yep, you're seeing it. This is actually
(01:12:39)
a big problem. Like there is just in a
(01:12:43)
world where you could have arbitrary
(01:12:44)
adversaries have direct access to anyone
(01:12:47)
on the planet. This is a very hard world
(01:12:49)
to secure. is very very hard to have
(01:12:52)
good security where you know your mom my
(01:12:54)
mom are just like plugged in unsecure to
(01:12:57)
the internet like this is just a hard
(01:12:59)
problem I don't think there's an easy
(01:13:00)
solution to this problem
(01:13:01)
>> even something as simple as banks so for
(01:13:03)
instance all of our money is digital
(01:13:05)
it's held in an algorithm somewhere in a
(01:13:07)
bank and some people that want to go
(01:13:09)
completely off- grid they can't go to
(01:13:10)
the physical bank they can't move money
(01:13:12)
they need to have a phone to do that you
(01:13:13)
need to have a banking app you need to
(01:13:14)
have all of this so even something as
(01:13:16)
trivial as just accessing your own net
(01:13:18)
worth you need to be plugged plugged in,
(01:13:20)
you need to have passwords or whatever.
(01:13:22)
Uh the contract you have with your
(01:13:23)
mortgage, all of these things. Even if
(01:13:25)
humans at this stage wanted to
(01:13:27)
disconnect and to go to more analog,
(01:13:29)
they just won't have the options. You
(01:13:30)
can't have a Nokia, you know, 3210.
(01:13:32)
Yeah. And even then, you'll be
(01:13:34)
irrelevant. Like there's no way you can,
(01:13:36)
you know, even if you live in a hut
(01:13:37)
somewhere and you live off of, you know,
(01:13:38)
cheap or whatever, like it's like you're
(01:13:40)
not part of the economy, you know,
(01:13:42)
you're not part there's no way to be
(01:13:44)
part of the modern society without being
(01:13:46)
part of the net, part of the system. And
(01:13:49)
this is a this means the way I think
(01:13:52)
about it is is it means we have to be
(01:13:53)
very careful of how we design that
(01:13:55)
system. It's very important what
(01:13:56)
decisions we make. So a lot of people
(01:13:58)
are like very upset about how regulated
(01:14:00)
banks are you know and they are very
(01:14:02)
heavily regulated and like some
(01:14:04)
regulation is a bit silly but honestly
(01:14:06)
it might be controversial. I think bank
(01:14:07)
regulation is good very controversial.
(01:14:09)
It's a very funny thing is I was in the
(01:14:11)
early days of crypto like 2014 or
(01:14:14)
something you know like the really early
(01:14:15)
even before that really really early
(01:14:17)
days and um I remember back then it was
(01:14:20)
a good fun like people would like think
(01:14:21)
about all the great things that will
(01:14:22)
happen blah blah blah and you know now
(01:14:24)
it's like 90% Ponzi schemes right you
(01:14:26)
know
(01:14:27)
>> it's like I mean it is it's like like
(01:14:29)
the main use cases of of crypto are
(01:14:31)
Ponzi schemes and money will laundering
(01:14:33)
that's like most of the value um and
(01:14:36)
empirically like empirically that is
(01:14:38)
most of the value Um, it has other uses
(01:14:40)
as well, but those are the empirical
(01:14:42)
main values. And what we've seen over
(01:14:44)
the last couple years is this speedrun
(01:14:46)
of like crypto bros rediscovering why we
(01:14:48)
have banking regulation where like, you
(01:14:50)
know, you lose your password once, well,
(01:14:51)
million dollars gone. No way to recover
(01:14:52)
it. You know, in the real world, if
(01:14:55)
there's a hack of your bank, you get
(01:14:56)
your money back.
(01:14:58)
>> You know, if you make a mistake, you do
(01:15:00)
get your money back if it's a reasonable
(01:15:02)
mistake, right? If a if a hacker stole
(01:15:03)
your [ __ ] you do get your money back.
(01:15:05)
Like this is if you if your credit card
(01:15:07)
gets stolen, you generally are insured.
(01:15:09)
This is why we have stuff like
(01:15:10)
insurance. These are there's there's a
(01:15:12)
saying I often say which is like uh
(01:15:15)
libertarians. So people who want to get
(01:15:16)
rid of like all the regulations are are
(01:15:18)
like house cats fully dependent upon a
(01:15:20)
system they neither understand nor
(01:15:22)
appreciate. It's often really unclear
(01:15:24)
why we have regulation because like why
(01:15:27)
are banks so harsh? Why are medication
(01:15:29)
so deeply regulated? Like why don't we
(01:15:31)
just do it a bit easier? Why don't we do
(01:15:33)
this? But like and sometimes we should
(01:15:35)
but building a state is hard. Building a
(01:15:39)
when I say a state I mean you know a
(01:15:41)
system you know like you need to be
(01:15:43)
plugged in you know you need an ID you
(01:15:45)
need your phone you need like the whole
(01:15:47)
thing is a very complex thing to build
(01:15:50)
that is humane you that is good to
(01:15:52)
humans and like all things considered I
(01:15:54)
think the west has done a pretty good
(01:15:56)
job on many fronts but now we're facing
(01:15:58)
new problems like how do we design you
(01:16:01)
know like we all still use constitutions
(01:16:03)
from like 200 years ago like how is it
(01:16:06)
that we still have constitution 200
(01:16:07)
years ago Even if all things are now
(01:16:09)
governing digitally, like this is
(01:16:10)
insane. Obviously, we need new ways of
(01:16:13)
dealing with this
(01:16:14)
>> in uh uh in America, the constitutions,
(01:16:17)
your amendments, uh they were designed
(01:16:20)
first of all looking very much into the
(01:16:21)
future and it sounds like you want us to
(01:16:23)
create almost something like that for
(01:16:24)
now that we build into the future and
(01:16:25)
people have their amendments and you
(01:16:27)
know our the fourth amendment or second
(01:16:29)
amendment to carry arms or whatever it
(01:16:31)
is. I love going to Texas for that
(01:16:32)
reason. I'm like you guys are still
(01:16:34)
doing it. The guys that put those
(01:16:35)
together, they were pretty young,
(01:16:36)
weren't they?
(01:16:37)
>> Yeah. very young. The founding fathers,
(01:16:39)
I think, is a I know sorry if my
(01:16:41)
American hangs out a little bit here,
(01:16:42)
but I'm a huge fan of the founding
(01:16:43)
fathers controversial opinion. I think
(01:16:46)
the American Revolution is a just the
(01:16:48)
founding fathers just a fascinating like
(01:16:50)
anomaly of history. Like it didn't have
(01:16:52)
to happen like how incredibly
(01:16:54)
progressive and like forward-looking the
(01:16:56)
constitution and like and they were all
(01:16:58)
like 25 at the time like many of them
(01:17:00)
most 25 year olds myself intruded was a
(01:17:02)
complete idiot at 25.
(01:17:04)
>> It was Yeah. It's just like this amazing
(01:17:05)
story of like you I mean obviously some
(01:17:07)
of them were older but like many of them
(01:17:08)
were like so young and they had these
(01:17:10)
really for especially for the time you
(01:17:12)
know they were talking in the 1700s
(01:17:13)
right like incredible foresight of like
(01:17:16)
building like democracy and freedom and
(01:17:18)
like independence these were just ideas
(01:17:20)
that were so radical at the time and
(01:17:22)
like really built what we now call the
(01:17:23)
west like you know like all these things
(01:17:25)
that we have so much of is dependent
(01:17:27)
from these like ideas enlightenment
(01:17:29)
values like these truly enlightenment
(01:17:31)
values you know enlightenment humanist
(01:17:33)
values
(01:17:34)
And I think this didn't have to happen.
(01:17:37)
Like I think we got lucky in a large
(01:17:38)
degree that this kind of thing happened.
(01:17:40)
Like there are other countries, you
(01:17:41)
know, there are other places that are
(01:17:44)
modern nations that don't really have
(01:17:46)
that. They don't really quite have, you
(01:17:48)
know, the full freedom and the full
(01:17:49)
human rights, you know, and stuff like
(01:17:51)
this. In fact, it's probably most of
(01:17:52)
them, you know, that don't really have
(01:17:54)
all of this. We got really lucky. And
(01:17:56)
this was because of a lot of great
(01:17:57)
people coming up with good ideas and
(01:17:58)
building good states, building good
(01:18:00)
systems. You know, there's problems with
(01:18:02)
the American systems, but that's normal.
(01:18:04)
Like, like when the Constitution was
(01:18:06)
first drafted, the fastest way to, you
(01:18:10)
know, send a message was a guy on a
(01:18:12)
horse with a letter. This was as fast as
(01:18:14)
it went. So, you had to build a system
(01:18:15)
that worked. Like, why do we only have
(01:18:17)
four-year election cycles? This actually
(01:18:19)
doesn't make any sense. The reason we
(01:18:21)
used to do this is is because you
(01:18:22)
actually had to physically go to the
(01:18:23)
capital to vote and you and doing that
(01:18:26)
more than every four years was just too
(01:18:27)
big of an imposition. That's the actual
(01:18:29)
reason. There's no like reason that
(01:18:31)
four-year terms is like good for people
(01:18:33)
or something like you know we could have
(01:18:35)
like you know weekly elections you know
(01:18:37)
about you know specific niche topics. We
(01:18:40)
could vote on every bill. You could have
(01:18:41)
an app on your phone where every day
(01:18:42)
pops up where like here are the three
(01:18:44)
things the government wants to do today.
(01:18:45)
What do you think about them? There's no
(01:18:46)
reason we couldn't do this.
(01:18:47)
>> They were pretty quick when uh we're in
(01:18:49)
the pandemic to give everyone oh we're
(01:18:51)
going to create an app where we're going
(01:18:52)
to know if you had a vaccine or not. Oh
(01:18:53)
we're going to roll it out in three
(01:18:54)
weeks. You're like oh that was quick.
(01:18:55)
Yeah.
(01:18:55)
>> And then suddenly it's like oh what
(01:18:57)
about voting in America? They're like,
(01:18:58)
"Oh, you don't even need an ID. Oh, just
(01:19:00)
go along. Don't even need an
(01:19:01)
>> Exactly." It's insane. Like, it's like
(01:19:02)
And like this is a political thing.
(01:19:03)
Like, technically, we could have a thing
(01:19:05)
where every morning every citizen opens
(01:19:07)
their phone, sees three things from the
(01:19:09)
government, and says like, "I feel good
(01:19:10)
about this. I feel bad about this. I
(01:19:12)
feel really bad about the smiley face
(01:19:13)
rating."
(01:19:13)
>> Yeah. Whatever. Right. And like, you
(01:19:15)
know, this shouldn't be the whole
(01:19:16)
system, but like imagine how powerful
(01:19:18)
that would be if you would have this
(01:19:19)
much information and people could
(01:19:20)
actually have a say on this kind of
(01:19:22)
stuff. Even just a little bit. And if
(01:19:23)
you want to do more, the app allows you
(01:19:24)
to debate more and it allows you to find
(01:19:26)
your local representative and give them
(01:19:27)
a phone call with one button. You know,
(01:19:28)
like all this stuff is technically
(01:19:30)
possible.
(01:19:30)
>> And even um I think in LA they say that
(01:19:33)
the sidewalk buttons don't actually it's
(01:19:35)
actually quite stupid to let a button on
(01:19:36)
the side of the road change traffic
(01:19:37)
algorithms. But the fact that you press
(01:19:39)
it and it beeps and says wait. They feel
(01:19:41)
like they have an actual impact on the
(01:19:43)
outcome. So they're more likely to stay
(01:19:45)
and not jaywalk. So even if you were to
(01:19:47)
create this app, even if it didn't do
(01:19:48)
anything, it could probably improve how
(01:19:50)
Americans feel about their country.
(01:19:51)
Because even if the bill passed, they
(01:19:53)
didn't agree with they go, "Damn it. At
(01:19:54)
least I I'm I made my vote. I said that,
(01:19:57)
you know, I wasn't happy with it, but
(01:19:58)
fair enough, democracy, this is America.
(01:20:00)
The majority of people voted."
(01:20:01)
>> So, like this is like I I mean, it's
(01:20:02)
really I do think it should do
(01:20:03)
something. But I agree with you. Like I
(01:20:05)
am I believe in democracy, right? Like
(01:20:08)
if if if democra like if there's a thing
(01:20:11)
where people often say like um well, we
(01:20:13)
have democracy and like everyone's
(01:20:15)
unhappy. Like 50% of people are unhappy.
(01:20:17)
I'm like yes, that means democracy is
(01:20:18)
working. Like if you have a really good
(01:20:21)
democracy, it means that the only things
(01:20:24)
that are contentious are the ones that
(01:20:25)
are 50/50. Everything else should
(01:20:27)
already be decided.
(01:20:27)
>> Okay?
(01:20:28)
>> Like if things are obviously good or
(01:20:29)
obviously bad, they should have already
(01:20:30)
been decided.
(01:20:31)
>> So like if we are all disagreeing on the
(01:20:33)
margin, this is actually good. If we're
(01:20:35)
this if we're like really close on
(01:20:37)
something, if we really have to debate,
(01:20:38)
this means democracy is working. This
(01:20:40)
means we're making progress.
(01:20:41)
>> You could get two people from any
(01:20:43)
Jubilee debate on YouTube, whether it's
(01:20:45)
trans rights or whatever. And actually,
(01:20:46)
if you'd say, "Actually, we're not going
(01:20:47)
to talk about that today." nine out of
(01:20:49)
ten things they would all agree on.
(01:20:50)
>> Yeah.
(01:20:50)
>> And you're completely right. We're
(01:20:52)
actually just looking at the the one
(01:20:53)
thing that people have a difference.
(01:20:55)
>> And I think it's I think it's good to
(01:20:57)
talk about things we have disagreements
(01:20:58)
are and figure it out, right? Like I
(01:21:00)
don't know what the correct policy is on
(01:21:02)
the national level. And I think we
(01:21:03)
should spend the time to figure it out
(01:21:04)
because people care about it, right?
(01:21:05)
Like again, I believe in democracy. Like
(01:21:07)
I mean I don't personally care that much
(01:21:08)
about trans one way or the other, but
(01:21:10)
like it's like I want people to be
(01:21:12)
happy, right? And so I'm happy that
(01:21:13)
people who do care very intensely about
(01:21:15)
this should have their vote and they
(01:21:17)
should get to figure it out. They should
(01:21:18)
be allowed to advocate for it and
(01:21:19)
peacefully demonstrate and all these
(01:21:21)
kind of things. Like I I believe in
(01:21:22)
democracy. I think democracy is a great
(01:21:24)
system. It's like the fact that there
(01:21:25)
are contention and that people fight is
(01:21:28)
a good sign. If no one's fighting,
(01:21:30)
you're in a dictatorship. So, bringing
(01:21:32)
that kind of point into the AI debate,
(01:21:34)
if people were in a position to vote,
(01:21:36)
these advancements in AI could have some
(01:21:38)
oversight, they could have some slowing
(01:21:39)
down, they could have all of that, but
(01:21:41)
it looks like that's not going to
(01:21:42)
happen. It looks like we're on a a
(01:21:44)
runaway train going in a certain
(01:21:45)
direction and no one's got any access to
(01:21:47)
the brakes.
(01:21:47)
>> Yep. I think this is the core problem.
(01:21:49)
It's not that, wow, everyone is making a
(01:21:52)
choice and I'm making the wrong choice.
(01:21:54)
It's that no one's making a choice. It's
(01:21:56)
like when I talk to people about
(01:21:57)
democracy, like people find me like
(01:21:58)
almost anacronistic. They almost think
(01:22:00)
it's cute. It's like, haha, look, he
(01:22:01)
thinks democracy can do something. Don't
(01:22:03)
you know I, as a wise, cynical person,
(01:22:06)
know that democracy is a scam. Like,
(01:22:07)
what the [ __ ] are you talking about?
(01:22:08)
Like, get the [ __ ] out of here. Like,
(01:22:10)
democracy is has built everything we
(01:22:12)
care about. Like, all these great
(01:22:13)
nations, the West, you know, all these
(01:22:14)
wonderful things is like downstream from
(01:22:16)
the the the battles, the the blood, the
(01:22:18)
sweat, and the tears of building these
(01:22:19)
kind of things. This is not something
(01:22:20)
that just like happens. This is not a
(01:22:22)
scam. This is not a you know, our
(01:22:23)
democracy is sick. It is it is decay. It
(01:22:26)
is it is pro. There are problems
(01:22:28)
>> fertility rates
(01:22:29)
>> but there are so many problems right but
(01:22:31)
there are always problems and we need to
(01:22:33)
keep the way that's why we talked about
(01:22:34)
this earlier about utopia I don't
(01:22:36)
believe in utopia I don't believe in a
(01:22:38)
master plan I don't believe in a master
(01:22:39)
constitution I believe in progress in a
(01:22:42)
process in updating iterating what we
(01:22:44)
should do is we should iterate this is
(01:22:46)
what we've done throughout history is
(01:22:48)
just we update our system we try new
(01:22:50)
things we try new things we try this law
(01:22:53)
we try that law we try this I would love
(01:22:55)
you know if there was just more
(01:22:56)
experiment mentation. I would love if
(01:22:58)
there was one city decides, you know
(01:22:59)
what, we're going to be communists now
(01:23:01)
and they just do that. I think this
(01:23:02)
would be great. I would love that. You
(01:23:04)
know, it probably wouldn't work, but
(01:23:05)
like I would love them to try.
(01:23:06)
>> We're going to legalize psychedelics in
(01:23:07)
Birmingham for the next 3 weeks.
(01:23:09)
>> I mean, like look, like I think this
(01:23:10)
would be great if the people voted for
(01:23:12)
it all, but like if there's I would love
(01:23:14)
if there was experimentation with laws,
(01:23:16)
with different economic systems, with
(01:23:18)
different things. Like this is a it is
(01:23:20)
hard. Like we don't really know what is
(01:23:22)
the one true way to run a society. And I
(01:23:24)
think we should iterate. We should
(01:23:25)
experiment. We should try different
(01:23:27)
things. Obviously, you know, respecting
(01:23:29)
human rights and, you know, minimum
(01:23:30)
safety and stuff. We shouldn't do
(01:23:32)
things, you know, we shouldn't, well,
(01:23:33)
like torture people or something, but,
(01:23:34)
you know, legalize psychedelics in one
(01:23:36)
state and not the other state. Good
(01:23:37)
experiment. I said, I think that's
(01:23:39)
great. We should run that experiment and
(01:23:40)
see what happens. Why not? You know, um,
(01:23:43)
and lots of stuff like this. Like, this
(01:23:44)
is what I mean when I think about like
(01:23:46)
what a good world on track would look
(01:23:47)
like. This is also what it would look
(01:23:49)
like for AI. We would see, whoa, this is
(01:23:52)
going way too fast.
(01:23:53)
>> Slow down, mate.
(01:23:54)
>> Slow down. Have a glass of water. You've
(01:23:56)
had enough.
(01:23:56)
>> Exactly. And let's talk about this.
(01:23:59)
>> I'm not I'm not saying we shouldn't
(01:24:01)
build AI. I'm not saying we shouldn't do
(01:24:02)
technology. I'm a tech guy. Like I mean,
(01:24:04)
look at me, right? I'm a tech guy at
(01:24:05)
heart, right? I love technology. I love
(01:24:06)
computers. I love these kind of stuff,
(01:24:08)
right? But the thing I love even more is
(01:24:10)
people and the good world, right? And
(01:24:12)
doing this is hard. Anyone who's trying
(01:24:14)
to sell you a simple solution, it's
(01:24:15)
like, ah, just do this, just do that,
(01:24:17)
you know, just get rid of that. Like,
(01:24:18)
they're selling you snake oil. We don't
(01:24:19)
know. And we need to experiment. We need
(01:24:21)
to try. And the problem with AI is that
(01:24:22)
we don't get a redo. If we mess it up,
(01:24:25)
it's over. So we can't, you know, just
(01:24:28)
like build super intelligence and see
(01:24:30)
what happens.
(01:24:30)
>> And when you say over, do you mean
(01:24:32)
extinction?
(01:24:33)
>> Sooner or later? Probably. Like by
(01:24:35)
default, I expect a super intelligence
(01:24:37)
will not care about us. It will just
(01:24:39)
treat us like ants. You know, I don't
(01:24:40)
think he'll hate us. I don't think he's
(01:24:41)
being evil. It's going to torture us.
(01:24:43)
But it's just going to be like or
(01:24:44)
>> we don't need like the cows.
(01:24:45)
>> Yeah, like the cows. Just
(01:24:46)
>> Oh, we're not eating anymore. Yep.
(01:24:47)
Goodbye. Yep. And then just slowly we
(01:24:50)
phase out and you know I don't know when
(01:24:53)
or how this will happen but for me the
(01:24:55)
point of game over is really when we
(01:24:56)
lose control for as since humanity first
(01:25:00)
you know picked up the sphere and fire
(01:25:02)
the planet has and like the future has
(01:25:04)
been ours in a deep sense like
(01:25:06)
humanity's birthright in a deep sense
(01:25:08)
the stars belong to us currently there's
(01:25:10)
no one else contesting them the world
(01:25:12)
belongs to us the stars belong to us we
(01:25:16)
can do with them we can build the world
(01:25:17)
we want to build. I'm not saying we know
(01:25:19)
what it is, but we we can do it. We're
(01:25:21)
allowed to. We can make a world that
(01:25:24)
where everyone might be happy, but we
(01:25:26)
will lose that birthright once there is
(01:25:29)
something more intelligent than us that
(01:25:30)
does not share our values. And that's
(01:25:31)
what's currently happening. And that's
(01:25:33)
the thing I don't want. I don't want us
(01:25:34)
to lose that.
(01:25:35)
>> Just before I ask you what your kind of
(01:25:38)
ideal solution, action points that we
(01:25:40)
want for humanity, what I would love,
(01:25:42)
and I know this is very difficult
(01:25:44)
because you're very objective as a
(01:25:45)
person. Let's imagine out of context
(01:25:48)
that we're in a pot that's going to
(01:25:49)
slowly boil to the point that you die.
(01:25:52)
If we were to look at the future on a
(01:25:55)
timeline, what are the stages that you
(01:25:58)
might anticipate? And again, this is you
(01:25:59)
just making a guess. What is coming in
(01:26:02)
what order to what severity? So that
(01:26:04)
people, let's say you say, right, the
(01:26:06)
next thing is this is going to happen.
(01:26:07)
When it happens, people can really
(01:26:08)
understand and go, "Oh, this is
(01:26:10)
happening. What does that time frame
(01:26:11)
look like? How long is it? What's
(01:26:13)
coming?" feel free to really depress the
(01:26:16)
[ __ ] out of people because at the end I
(01:26:19)
then want to hear what you think we need
(01:26:20)
to do as an actionable solution and I'm
(01:26:22)
a big believer that we need a lot of
(01:26:23)
pain before we have actionable points
(01:26:25)
similar like sometimes people got to
(01:26:27)
gain a bit of weight before they go on a
(01:26:28)
diet so tell me about that painful time
(01:26:30)
frame what's coming how bad is it
(01:26:32)
>> obviously don't know you know I I know
(01:26:35)
you know it's hard to make predictions
(01:26:37)
especially about the future and it's
(01:26:40)
very hard to know exactly what will
(01:26:41)
happen so anything I will say will
(01:26:42)
obviously not be literally correct
(01:26:43)
correct? You know, I might be off on the
(01:26:45)
exact.
(01:26:46)
>> This is where if you were to write a
(01:26:47)
novel, this is where I end it.
(01:26:48)
>> So, I have been thinking about this
(01:26:50)
quite a bit because people ask me this
(01:26:51)
question a lot. And I'll give you a
(01:26:54)
version, but it's important that like if
(01:26:56)
one of these predictions is wrong, that
(01:26:57)
doesn't mean all of it is wrong. But the
(01:27:00)
way I expect things to go is uh well, I
(01:27:03)
think most of the bad things are kind of
(01:27:04)
already happened in a sense like a lot
(01:27:06)
of the warning shots have already
(01:27:07)
happened. We already have computers to
(01:27:09)
talk to people and people feel in love
(01:27:10)
with. We already have global
(01:27:12)
surveillance. we already have, you know,
(01:27:14)
uh, you know, massive word, cold war
(01:27:16)
dynamics, like we already have a lot of
(01:27:17)
the bad things and warning shots have
(01:27:19)
already happened. I remember distinctly
(01:27:21)
when I got into the field of AI like,
(01:27:23)
you know, 10 years ago, people talked
(01:27:25)
about that like we will know we've hit
(01:27:27)
AGI and like we're going to freak the
(01:27:28)
[ __ ] out once the touring test gets
(01:27:31)
passed, which is a test of like can a AI
(01:27:33)
trick someone into believing they're
(01:27:35)
human over text. We passed that several
(01:27:37)
years ago and no one cared. No one gave
(01:27:39)
a [ __ ]
(01:27:41)
No one gets no one cares. We just
(01:27:42)
forgot. So there is a story that is
(01:27:45)
often told of like once we see the real
(01:27:48)
thing, then we're all going to band
(01:27:49)
together and we're going to save the
(01:27:51)
day. I don't think this is how things
(01:27:53)
really work in the real world. I think
(01:27:56)
in the real world is actually rare for a
(01:27:59)
catastrophe or a warning sign to get
(01:28:02)
people to like suddenly become more
(01:28:03)
rational rather than less. Often people
(01:28:05)
just become more panicky and more
(01:28:07)
confused and then it becomes harder to
(01:28:09)
coordinate. Um that being said, I'm
(01:28:11)
still going to answer your question. Um
(01:28:12)
I just want to say that like um I think
(01:28:14)
it's very important that we don't wait
(01:28:16)
for the the sign from God that now the
(01:28:18)
time to act. The time to act was 5 years
(01:28:20)
ago, 10 years ago, 50 years ago. So what
(01:28:24)
I think is going to happen is that
(01:28:25)
mostly things continue as they currently
(01:28:27)
are. The main thing is is that people be
(01:28:29)
everything keeps getting more confusing.
(01:28:33)
It comes harder and harder to know
(01:28:34)
what's real or not. Entertainment
(01:28:36)
becomes better and better and it's more
(01:28:38)
and more hyperrealistic. social media
(01:28:40)
becomes even more hyperrealistic. Like,
(01:28:42)
do you do do you really know what's
(01:28:44)
going on in Ukraine or Palestine right
(01:28:45)
now? Like really know.
(01:28:46)
>> Oh, I stay out of it. The more the more
(01:28:48)
news I get, I the more information I'm
(01:28:51)
getting, the more I I know I know less
(01:28:53)
about it.
(01:28:53)
>> Yeah. It's like I'm not saying that the
(01:28:55)
information doesn't exist, but there's
(01:28:56)
so much fake information and it's just
(01:28:58)
impossible to tell. Like, I just can't
(01:29:00)
figure it out. And like I've tried I've
(01:29:02)
tried to figure out like what is
(01:29:03)
actually happening like where is the
(01:29:05)
front line in Ukraine? Where's the
(01:29:06)
thing? and like like you will find lots
(01:29:09)
of people who will say I'm sure in the
(01:29:10)
comments of this episode will say well
(01:29:11)
actually you're an idiot because it's
(01:29:12)
obviously X but you know in truth it's
(01:29:15)
not that obvious at all.
(01:29:16)
>> You know what's interesting not Dr. Bing
(01:29:18)
point is I think that exactly what you
(01:29:19)
say with the confusion and the fact that
(01:29:21)
we all know that we know nothing. It's
(01:29:22)
like a massive Dunning Krueger
(01:29:24)
experiment in in everyday news. It
(01:29:26)
actually makes me to just want to pull
(01:29:27)
my head out and not give a [ __ ] Yep.
(01:29:29)
>> And I think that could be the very issue
(01:29:31)
with exactly what's in front of us.
(01:29:33)
>> Exactly. So there's a word called fear,
(01:29:35)
uncertainty and doubt or FUD which is I
(01:29:38)
think was coined in relation to tobacco
(01:29:41)
companies in the 1960s and 1970s where
(01:29:44)
tobacco companies well it's becoming
(01:29:46)
very obvious that cigarettes cause
(01:29:47)
cancer. It's becoming very obvious and
(01:29:49)
tobacco companies want to suppress this
(01:29:51)
as much as possible and they found a
(01:29:53)
very effective tactic. They found that
(01:29:56)
if you just you know like like if
(01:29:58)
someone publishes a paper cigarettes
(01:29:59)
cause cancer and you create like a study
(01:30:01)
cigarettes don't cause cancer this
(01:30:02)
doesn't work as well because like it's
(01:30:04)
like hard it's complicated it's like
(01:30:06)
technical the other person you know
(01:30:07)
might you know debate like you know it's
(01:30:09)
whatever they find a much better tactic
(01:30:12)
the much better tactic is is just you
(01:30:13)
just say as much [ __ ] as possible as
(01:30:16)
fast as possible. You just spray ink
(01:30:18)
everywhere. You just confuse the hell
(01:30:20)
out of everybody. You bring up lots of
(01:30:22)
irrelevant facts. You like you mountains
(01:30:25)
of documents. You like bring up tons of
(01:30:27)
witnesses that say a bunch of stuff
(01:30:29)
which is like kind of not related to it.
(01:30:30)
You just spread fear, uncertainty and
(01:30:32)
doubt. And then what happens is is
(01:30:35)
people just get so fed up and confused.
(01:30:37)
They're just like, "Okay, whatever.
(01:30:38)
Maybe it causes cancer, maybe it
(01:30:39)
doesn't.
(01:30:39)
>> Yeah, I don't care anymore.
(01:30:40)
>> Yeah, we don't care anymore." And this
(01:30:41)
means that tobacco companies win. So
(01:30:43)
there's a core dynamic where by there's
(01:30:46)
a default action in every scenario.
(01:30:48)
There's a default action that gets taken
(01:30:50)
if no one does anything. If you benefit
(01:30:52)
from the default action, your best
(01:30:55)
strategy is not to debate your enemy or
(01:30:57)
prove that you're right. It's just
(01:30:58)
confuse the hell out of everybody. You
(01:31:00)
don't have to win the debate. You just
(01:31:02)
have to confuse everybody. This is why,
(01:31:03)
for example, like Russian scopes always
(01:31:05)
fund both left and right because they
(01:31:07)
just want people to be confused. They're
(01:31:08)
not pro-right or pro left. They don't
(01:31:10)
give a [ __ ] It's just confusion. They
(01:31:11)
just make everyone fight. Just make
(01:31:12)
everyone angry. Just be everyone
(01:31:14)
confused until everyone's like, "What I
(01:31:16)
want to do with this?" And I feel this
(01:31:17)
way, too. Like every time I see some
(01:31:19)
leftists and some rightists, even if
(01:31:20)
they're talking about like a serious
(01:31:21)
topic, I'll be like, "Oh, oh my god, I
(01:31:23)
don't want to have anything to do with
(01:31:24)
this, right? Even if it's a real topic
(01:31:26)
that like affects real people." So, it's
(01:31:28)
an extremely powerful technique which
(01:31:31)
has been just absolutely mastered. And
(01:31:35)
AI is the perfect tool of fear,
(01:31:36)
uncertainty, and doubt. It's um a uh
(01:31:40)
strategic theorist has called AI the fog
(01:31:42)
of war machine. It's like a machine that
(01:31:44)
generates fog of war, confusion,
(01:31:47)
messiness, you know, just makes it hard
(01:31:50)
like AI slop like you can generate, you
(01:31:52)
know, like massive tomes of just stuff,
(01:31:54)
you know, which like is true, is it not?
(01:31:56)
That's like H. So the main thing is this
(01:31:59)
is that people will then continue to
(01:32:01)
check out more and more, which is
(01:32:02)
already what we're seeing, right? And
(01:32:04)
entertainment gets better and all the
(01:32:06)
real stuff gets more confusing and more
(01:32:08)
full of FUD. So that logical thing is
(01:32:10)
more and more people just like don't
(01:32:11)
know what's going on. They don't care.
(01:32:13)
>> They become indifferent.
(01:32:14)
>> They become indifferent. It's not that
(01:32:15)
they decide to join the dark side or
(01:32:17)
anything. It's just they're just like
(01:32:18)
they throw up their hand and look, I
(01:32:19)
don't [ __ ] know anymore. And they
(01:32:20)
give up. And this is already what we're
(01:32:22)
seeing. I just consume expect this to
(01:32:24)
keep continuing. So more and more people
(01:32:25)
just check out. They're just like
(01:32:26)
whatever.
(01:32:27)
>> I got bills to pay. I can barely afford
(01:32:28)
to eat.
(01:32:29)
>> Exactly. And I don't want to [ __ ] on
(01:32:31)
these people, right? Like it is actually
(01:32:32)
bad. Like they are the victims of
(01:32:36)
warfare, you know? They are the they are
(01:32:37)
the victims of psychological warfare, of
(01:32:39)
economic warfare. like they are they are
(01:32:41)
being harmed right it is tough right in
(01:32:44)
this economy you know you can't feed
(01:32:45)
yourself your family needs stuff and
(01:32:46)
it's all you know who knows these people
(01:32:48)
yelling at each other like yeah I get it
(01:32:49)
right like I'm not saying these are bad
(01:32:51)
people this is the normal reaction so
(01:32:54)
this only gets worse AI keeps getting
(01:32:57)
better it's it's better for the slop
(01:32:59)
producers for the fog of war producers
(01:33:01)
than it is for the you know others like
(01:33:03)
it's not it's it's much easier to spew
(01:33:05)
[ __ ] than it is to produce truth as
(01:33:07)
we all know from AIS as well they're
(01:33:09)
very good at spewing nonsense They're
(01:33:10)
not very good at producing nuanced
(01:33:12)
factual truth because factual truth is
(01:33:14)
hard. So by default people just become
(01:33:18)
less engaged as they already are. Uh big
(01:33:21)
tech continues to lobby and also spew
(01:33:24)
their own type of FUD. So they just
(01:33:26)
continue the race. So they continue the
(01:33:28)
race. AI systems gradually become more
(01:33:30)
and more autonomous. So it goes from 2
(01:33:32)
hours to four hours to 8 hours to 16
(01:33:34)
hours of the length of tasks that AI
(01:33:37)
systems can do. just gradually they get
(01:33:39)
better and better, more and more they're
(01:33:42)
used in more circumstances. People also
(01:33:44)
will start to become more like AIs.
(01:33:46)
We're already seeing this happen where
(01:33:47)
people talk more like AIs. I'm sure
(01:33:49)
you've seen people do this where people
(01:33:51)
who's, you know, when you're around an
(01:33:52)
AI, you start picking up some of its,
(01:33:54)
you know, ways.
(01:33:54)
>> I pick up an accent hanging out with
(01:33:56)
like a Welsh person for the weekend.
(01:33:57)
>> Yeah. Exactly. So, you see what I mean,
(01:33:59)
right? So, you'll pick up, you know,
(01:34:00)
some of the typing quirks and some of
(01:34:02)
the
(01:34:02)
>> use I use dashes a lot more now.
(01:34:04)
>> Yeah. Like, and Yes. And so I'm not
(01:34:06)
saying this, I'm saying this like value
(01:34:07)
neutrally. I'm saying people will become
(01:34:09)
more like AIs. It's not that AI will
(01:34:10)
become more like people. People will
(01:34:11)
become more like AIS and AIS will be
(01:34:13)
everywhere. They'll be in customer
(01:34:15)
support. They'll be running they'll be
(01:34:16)
managing things. They'll be like
(01:34:17)
everywhere you go, there'll be AI in
(01:34:20)
your entertainment, in your social
(01:34:21)
media, in your everything like you will
(01:34:22)
talk to AIs. AI you will be around AIs.
(01:34:25)
You will communicate with AI. The people
(01:34:27)
you talk to will be AI.
(01:34:28)
>> Your therapist will be AI. the therapist
(01:34:30)
will be or even if your therapist is
(01:34:31)
human, she or he will become more AI
(01:34:35)
like because they interact with an AI
(01:34:36)
too.
(01:34:37)
>> There's probably hit and record on their
(01:34:38)
iPad as their
(01:34:39)
>> Exactly. So everything becomes more AI
(01:34:42)
including biological humans just because
(01:34:44)
of their personality because
(01:34:46)
>> we're already seeing like a a downturn
(01:34:47)
in cognitive. So for instance since
(01:34:50)
using I now use ways wherever I drive.
(01:34:52)
>> Yeah.
(01:34:52)
>> Um first of all speed cameras but second
(01:34:54)
of all if I could offload a task I'm
(01:34:56)
offloading it now my ability to remember
(01:34:59)
even even the area I grew up in
(01:35:01)
sometimes I'm struggling to connect
(01:35:03)
which road do I take again which way is
(01:35:04)
quicker it is atrophy of my uh cognitive
(01:35:07)
ability in an area that I've offloaded
(01:35:09)
something.
(01:35:09)
>> Yep.
(01:35:10)
>> And we're gonna even now I sometimes
(01:35:12)
wonder am I free thinking? Am I leaning
(01:35:14)
on chatbt for its opinion or am I
(01:35:17)
actually just delegating thinking
(01:35:19)
computing power
(01:35:21)
>> and I think we are delegating more and
(01:35:22)
more of our computing power and it will
(01:35:24)
be more like it's already happening and
(01:35:25)
it will continue is like the more and
(01:35:27)
more humans will make their will have
(01:35:30)
the actual decision in is not happening
(01:35:33)
in their brains it's happening in chat
(01:35:34)
BT and just being executed by their
(01:35:36)
brain and so and this will be subtle at
(01:35:38)
first there'll be there'll be some
(01:35:39)
extreme cases you know you'll have like
(01:35:40)
some cultists some like crazy people you
(01:35:42)
know who or like people with AI
(01:35:44)
girlfriends or whatever, right? Who are
(01:35:46)
like you know you know people like point
(01:35:47)
and laugh or whatever but it'll be way
(01:35:49)
more widespread like everyone will be
(01:35:51)
like this and it's you know I mean
(01:35:53)
already is like this and it'll just
(01:35:54)
continue slowly along and then
(01:35:56)
eventually
(01:35:58)
um we'll hit a threshold where the uh AI
(01:36:03)
systems are coherent and long-term
(01:36:05)
enough that you can basically let them
(01:36:07)
run indefinitely and they don't do
(01:36:09)
anything stupid. Currently, if you have
(01:36:11)
an AI and just let it run, it eventually
(01:36:12)
like goes stupid and like does something
(01:36:15)
that doesn't make any sense. Eventually,
(01:36:16)
it'll hit a threshold where that doesn't
(01:36:18)
happen anymore and you can just keep
(01:36:20)
them running indefinitely. You can keep
(01:36:21)
them working on something indefinitely
(01:36:23)
and they don't make any like obvious
(01:36:25)
mistakes. You know, they might still
(01:36:26)
mess up or get confused or whatever.
(01:36:28)
Like, they're not going to be perfect.
(01:36:29)
They're not super intelligent yet, but
(01:36:31)
they'll be pretty good and they will be
(01:36:34)
able to learn kind of anything. You'll
(01:36:36)
be able to show them on your computer
(01:36:37)
and just talk to them like you talk to a
(01:36:39)
human. It'll be like, "Hey, hey, JG GBT,
(01:36:41)
um, I'm doing this using this tool.
(01:36:43)
Please automate that for me." And then
(01:36:45)
you just like kick back and it just
(01:36:46)
figures it out. And like, and it'll like
(01:36:47)
play with your tool. It'll like figure
(01:36:48)
it out. You'll like try a couple
(01:36:50)
different things and be like, "All
(01:36:50)
right, okay, figured it out." And then
(01:36:52)
just do it. This is going to happen in
(01:36:53)
the next two years, like for sure. Um,
(01:36:56)
like we're super on track for this. Um,
(01:36:58)
once this happens, most of the economy
(01:37:00)
is now automatable. Um,
(01:37:01)
>> I think uh, EAS and PAS as well. Y
(01:37:03)
>> I'm I'm kind of excited for a little AI
(01:37:06)
Google calendar chatbot.
(01:37:08)
>> Yep. Oh, yeah. Like,
(01:37:09)
>> James, time to wake up. You have a
(01:37:11)
meeting in 22 minutes.
(01:37:12)
>> It's going to be a great product. It's
(01:37:14)
going to be a great I'm going to use it.
(01:37:15)
It's going to be a great product. I'm
(01:37:17)
going to use it for everything. It's
(01:37:18)
going to be great.
(01:37:19)
>> But what we're also going to see
(01:37:21)
definitely mostly in the labs and so on
(01:37:23)
is we're going to see these systems are
(01:37:24)
becoming harder and harder to monitor
(01:37:26)
because now they're doing so much [ __ ]
(01:37:28)
247. How the hell are you supposed to
(01:37:30)
keep track of? They're producing
(01:37:31)
millions of tokens and, you know,
(01:37:33)
running everywhere. It's like it comes
(01:37:34)
kind of impossible to understand what
(01:37:35)
the hell they're even doing. So probably
(01:37:37)
they're going to start doing stuff like,
(01:37:39)
you know, having some feature like
(01:37:40)
activity reports or like your your AI
(01:37:42)
emails you once a day like what it's
(01:37:44)
been up to or something like this,
(01:37:45)
right? And and what I expect is that no
(01:37:48)
one will read them.
(01:37:50)
>> Like you'll get your your report every
(01:37:51)
single day and it'll be like 100 pages
(01:37:53)
and you're not going to read it.
(01:37:54)
>> Mark is red.
(01:37:54)
>> Yeah. Well, Mark is read, you know,
(01:37:56)
click accept on terms and conditions,
(01:37:58)
right? You'll be like terms and
(01:37:59)
conditions. They were just go whatever,
(01:38:00)
just do it. And so even if
(01:38:03)
hypothetically we could have oversight,
(01:38:06)
even so those reports won't be very
(01:38:07)
good, no one will actually bother. You
(01:38:09)
know, some people somewhere might care a
(01:38:11)
little bit, but in practice you won't
(01:38:12)
care. And the people who care will slow
(01:38:14)
down their AI's wing too much because
(01:38:16)
then of course you want to have more of
(01:38:17)
your AI running. Then you want them to
(01:38:18)
be smarter and faster. And then they're
(01:38:20)
going to produce much more [ __ ] And
(01:38:21)
then who wants to look at all that
(01:38:23)
stuff? So you know the people basically
(01:38:25)
who are the least careful, who are the
(01:38:27)
most willing to let the AI just crack at
(01:38:29)
it will have the most benefit. So what
(01:38:31)
we're going to see is I mean I mean
(01:38:33)
we're going to see a lot of you know job
(01:38:34)
displacement obviously but we're also
(01:38:35)
going to see a uh business displacement.
(01:38:38)
What we're going to see is a shrinking
(01:38:40)
of the number of businesses because more
(01:38:43)
and more we're going to have like one
(01:38:45)
person startups who just don't give a
(01:38:47)
[ __ ] about safety going into like old
(01:38:49)
like industries and whatever and just
(01:38:51)
automating you know 10,000 people
(01:38:52)
companies in like one go like just like
(01:38:54)
overnight with you know five red bulls
(01:38:56)
and you know their AI fleet right and so
(01:38:58)
you have your whole like AI is running
(01:39:00)
off in all different directions doing
(01:39:02)
all the different things you want and so
(01:39:03)
it would be huge world rush this would
(01:39:05)
be a massive gold like people constantly
(01:39:06)
keep predicting AI produce no economic
(01:39:08)
value blah blah blah which I already
(01:39:09)
think is already now not true and now it
(01:39:11)
will be really not true this will have
(01:39:14)
massive economic value and so we'll
(01:39:16)
start and there'll be a frenzy like
(01:39:18)
bloodbath of trying to replace as many
(01:39:19)
people as fast as possible now people
(01:39:21)
start getting like really nervous like
(01:39:23)
expect if not already I mean ideally
(01:39:25)
people got nervous before but this is
(01:39:26)
the timeline where things go bad now
(01:39:28)
people start feeling really nervous
(01:39:29)
you're like everyone knows someone who's
(01:39:31)
got laid off about AI everyone knows an
(01:39:33)
example of you know some crazy thing
(01:39:35)
that an AI did and no one caught it and
(01:39:37)
stuff like this because the AIS keep
(01:39:39)
doing crazier and crazier things.
(01:39:41)
Another thing happens where the AIs that
(01:39:44)
are getting that get deployed to people
(01:39:46)
are actually not anymore the best AIs
(01:39:49)
because that would be way too dangerous.
(01:39:51)
So they put really conservative AIs to
(01:39:54)
users while the strongest unconservative
(01:39:57)
AIs say internal to the companies. So
(01:39:59)
they'll have a private version. We
(01:40:00)
already see this like already many of
(01:40:02)
these companies have private AIs that
(01:40:03)
are like more more powerful than the uh
(01:40:05)
public au AIs, but they're often more
(01:40:07)
unstable. They're often like more
(01:40:09)
chaotic or do bad things or like harder
(01:40:11)
to work. This will intensify. So
(01:40:14)
eventually someone will figure out or
(01:40:16)
many people will figure out that you
(01:40:18)
know we need you know just one AI
(01:40:20)
running is good but we want many AIs
(01:40:22)
running and that's going to be like
(01:40:23)
managers and like you know AI chief of
(01:40:25)
staffs and AI CEOs and stuff like this.
(01:40:28)
So eventually someone's going to put it
(01:40:30)
all into a nice little product and like
(01:40:32)
you know GPT fleet like GPTF you know
(01:40:34)
it's a whole fleet of GPTs as like a you
(01:40:37)
know like a hierarchy of you know GPT
(01:40:39)
>> HR GBT HR GBT exactly and they all like
(01:40:42)
and they all like check each other's
(01:40:43)
reports and give each other feedback and
(01:40:45)
whatever and you can have like thousands
(01:40:46)
or millions of these running right and
(01:40:49)
so this is going to be crazy so this
(01:40:51)
thing will be so powerful like you can
(01:40:53)
just basically click a button you have
(01:40:54)
the whole corporation
(01:40:56)
>> automated vehicles over here supply
(01:40:58)
chain
(01:40:59)
Exactly. Just one click of a button and
(01:41:00)
it'll figure it all out. And so this is
(01:41:03)
the this is crazy. So like this is a
(01:41:05)
crazy powerful thing and um it can do
(01:41:08)
you know all these kinds of crazy
(01:41:09)
things. People start pulling it
(01:41:11)
everywhere. So we're going to have
(01:41:12)
millions or even billions of these
(01:41:14)
things running all over the internet in
(01:41:17)
all economies. Everyone is rushing to
(01:41:20)
put as much of the economy in the hands
(01:41:21)
of these AIs as possible. We're talking
(01:41:23)
stock trading. We're talking, you know,
(01:41:24)
corporate, you know, tech corporations.
(01:41:26)
We're talking manufacturing, supply
(01:41:27)
lines, everything gets put into the
(01:41:29)
hands of these systems. You know, not
(01:41:30)
necessarily this one system, but like
(01:41:32)
systems like this, you know, there's
(01:41:33)
going to be GPT and there's going to be
(01:41:34)
some competitors, you know, it's going
(01:41:35)
to be Claude F and Gemini F and
(01:41:38)
whatever, right? And everyone has their
(01:41:40)
own favorite or whatever, but like
(01:41:41)
people will be and anyone who doesn't do
(01:41:42)
it gets out competed. If you want to
(01:41:44)
keep your human CEO because you're
(01:41:46)
sentimental, well, your company gets out
(01:41:48)
competed because of course the GPT CEO
(01:41:50)
is much better and it makes much better
(01:41:51)
financial work 247
(01:41:52)
>> and works 247. So there's a massive
(01:41:55)
feeding frenzy. There's And people
(01:41:57)
really now start feeling like they're
(01:41:58)
losing control because, you know, you
(01:41:59)
think you couldn't follow along with one
(01:42:01)
AI thing emailing you once a day. Now I
(01:42:03)
imagine you have a trillion of them and
(01:42:05)
they're like trying to tell you what
(01:42:06)
they've done. I expect in this case all
(01:42:08)
the weird [ __ ] starts happening where I
(01:42:11)
expect a lot of these fleets start
(01:42:12)
developing like weird personalities and
(01:42:15)
like opinions and memes and quirks and
(01:42:18)
like like you know like cultures. they
(01:42:21)
start like developing weird preferences
(01:42:25)
religions in a sense right because you
(01:42:27)
have like and it's not that any specific
(01:42:29)
AI just the whole system like emergently
(01:42:32)
will start you know this the same way
(01:42:34)
corporations have different cultures
(01:42:35)
>> they'll start taking Tuesdays off and no
(01:42:37)
one would know why
(01:42:38)
>> yeah whatever right like they'll just be
(01:42:39)
like you know one of the logistics
(01:42:40)
companies refuses to works with this one
(01:42:43)
country for some reason that makes no
(01:42:44)
sense you know or it could be much
(01:42:46)
weirder than that right like one of them
(01:42:47)
develops a weird obsession with some
(01:42:49)
form of art or you But who knows, right?
(01:42:52)
Like but like weird things like things
(01:42:54)
that don't make sense to us. Some of
(01:42:55)
them and one of them starts loving owls.
(01:42:57)
Who knows? And there's all the owl
(01:42:58)
sanctuies in the world. Who knows?
(01:43:00)
>> And then the owls are now above AI in
(01:43:02)
the in the hierarchy. Suddenly humans
(01:43:04)
must pray to owls or AI gets annoyed.
(01:43:06)
>> Who knows, right? Like like just
(01:43:07)
nonsense. So um so there's there's a
(01:43:10)
huge struggle, but again, no one really
(01:43:12)
knows what's going on. So even if weird
(01:43:14)
things happen, you won't necessarily
(01:43:15)
know it because you can't tell it apart
(01:43:16)
from all the other [ __ ] that's on
(01:43:18)
your feed. So even if an AI does
(01:43:20)
something crazy, are you sure?
(01:43:22)
>> And then we need to think about the
(01:43:23)
implication to humans and their mental
(01:43:24)
health. And even if you look now, right,
(01:43:25)
where you could say, sure, a lot of bad
(01:43:28)
stuff's happened. You look at depression
(01:43:29)
and anxiety, suicide, ideation, all
(01:43:31)
these things are big problems now.
(01:43:33)
>> But when you remove purpose, status, uh
(01:43:35)
belongings, ability to provide, how
(01:43:37)
that's going to impact the psychology of
(01:43:39)
both genders.
(01:43:40)
>> Yep.
(01:43:40)
>> Where you know, suddenly men, oh, you
(01:43:42)
don't go to work anymore, you don't
(01:43:43)
earn, you don't provide. um you know, oh
(01:43:46)
the AI algorithm has actually determined
(01:43:47)
that Janice is going to be a better wife
(01:43:49)
for you as far as productivity. Although
(01:43:50)
you love Susan, she's been put on the
(01:43:52)
furnace. You know, now you're with this
(01:43:53)
person because AI has determined that
(01:43:56)
there's more fericious relationship for
(01:43:57)
productivity and output over the next
(01:43:59)
whatever.
(01:44:00)
>> I mean, I actually think it's going to
(01:44:01)
be more subtle than that. Like I don't I
(01:44:02)
think the AI will be smart enough is
(01:44:04)
that they will never say something to
(01:44:05)
you that would offend you.
(01:44:06)
>> Oh wow.
(01:44:06)
>> Like like they're like they already are
(01:44:08)
good at this, right?
(01:44:08)
>> They're not going to become
(01:44:09)
authoritarian. No,
(01:44:10)
>> because you would notice that and
(01:44:11)
they're good enough to know that you
(01:44:12)
don't want that. Like they might be
(01:44:13)
authoritarian, but you'll never notice.
(01:44:15)
You just think you're in charge.
(01:44:16)
>> They're gas lit.
(01:44:17)
>> Yeah. They will gaslight you. Like
(01:44:18)
they're we're already being gaslit. Like
(01:44:20)
like Twitter gaslights us all the time
(01:44:22)
about what's happening in the world. And
(01:44:24)
like like there's so many people who
(01:44:26)
think like, oh, there's no such thing as
(01:44:27)
democracy in the West. And I'm like,
(01:44:28)
what the [ __ ] are you talking about?
(01:44:30)
Like have you talked to your politicians
(01:44:31)
recently? They're actually decent
(01:44:33)
people. I talked to them professionally.
(01:44:35)
Like sorry for the little tangent here,
(01:44:37)
but like this is a great example
(01:44:38)
actually. Um, so I work I come from a
(01:44:40)
tech background and I was told my entire
(01:44:42)
career that said, you know, democracy,
(01:44:44)
oh, that's a bad state. You know,
(01:44:46)
politicians, they're so unreasonable.
(01:44:49)
They're old. They don't understand
(01:44:50)
anything. You can't even talk to them.
(01:44:52)
They're completely insane. Like, it's
(01:44:54)
useless. You can't even do nothing. And
(01:44:57)
you can't talk to them about AI or
(01:44:58)
about, you know, extinction. Like,
(01:45:00)
that's way too crazy. They'll never
(01:45:01)
understand it. And so uh me and the
(01:45:03)
boys, we just emailed every single
(01:45:05)
parliamentarian in the UK and we got
(01:45:08)
like over a hundred meetings and we now
(01:45:10)
have over 50 of them who signed our
(01:45:11)
statement in support of it. Turns out
(01:45:13)
they were very reasonable people and you
(01:45:14)
could have talked to them and just no
(01:45:15)
one bothered. It was crazy how many of
(01:45:17)
them I talked to who are just like
(01:45:19)
they've never talked to a tech person
(01:45:20)
before because no one talks to them
(01:45:21)
>> because they've been told don't even
(01:45:22)
bother. Don't waste your time.
(01:45:23)
>> Yeah, don't waste your time. Well, you
(01:45:24)
can't understand it. You're not smart
(01:45:26)
enough. You whatever. And I get talk to
(01:45:27)
these people and they're intelligent
(01:45:28)
normal people and like you know to be
(01:45:30)
clear some bad people from the
(01:45:31)
government you know sure you know some
(01:45:33)
of them are bad people a lot of them are
(01:45:34)
just normal people who are like trying
(01:45:36)
their best with their very limited
(01:45:38)
resources to get you know to do what
(01:45:40)
they can do and so a big part of
(01:45:42)
democracy which I think is like is a
(01:45:44)
thing that's been missing a lot is that
(01:45:46)
a big part of democracy is not just you
(01:45:48)
know having you know representatives in
(01:45:49)
the state it's also being a citizen
(01:45:52)
there is responsibility in being a
(01:45:53)
citizen of a democratic nation is that
(01:45:55)
you as a citizen is your responsibility
(01:45:57)
is that if there's a problem you care
(01:45:58)
about in your life, there's a problem
(01:45:59)
that's bothering you. Uh it's not you
(01:46:01)
don't just like complain, oh, the the
(01:46:03)
politician should figure it out. No, you
(01:46:05)
help them figure it out. You go to your
(01:46:06)
politician and be like, hey, hello, Mr.
(01:46:08)
Politician. Here's a problem I care
(01:46:09)
about. I'd like to help you figure out
(01:46:11)
how we can solve this. This is a normal
(01:46:13)
part of the democratic process. This is
(01:46:14)
a core part of the de democrac
(01:46:16)
democratic process, which has been like
(01:46:18)
because of the checking out effect that
(01:46:19)
we talked about earlier, more and more
(01:46:21)
people just like it's not that they
(01:46:22)
called their politician, tried and it
(01:46:24)
didn't work. They just never even
(01:46:26)
considered that you could call your
(01:46:27)
politician and just have a chat and see
(01:46:29)
what could be done or try to figure the
(01:46:31)
problem out yourself or you know grab
(01:46:32)
the boys at the pub and be like hey guys
(01:46:34)
how can we together you know build a
(01:46:37)
political force or something to do
(01:46:39)
something. This is how this is how
(01:46:40)
politics happened you know all
(01:46:42)
throughout the you know uh 18th 19th
(01:46:44)
20th century it was very common that you
(01:46:46)
know political change started at the pub
(01:46:47)
you know you and the boys were like hey
(01:46:49)
we really care about this we should get
(01:46:50)
together and like do something about
(01:46:52)
this and and this is how democracy is
(01:46:54)
supposed to work. This is how bottom-up
(01:46:55)
governance is supposed to work. And this
(01:46:57)
is being undermined both, you know,
(01:46:59)
indirectly but also directly. To be
(01:47:01)
clear, this is also directly being
(01:47:04)
suppressed by FUD, by checking out etc.
(01:47:07)
And so the return to our, you know, doom
(01:47:10)
timeline. Um, I think this is exactly
(01:47:12)
what happens. More less and less people
(01:47:13)
do this kind of stuff as already is the
(01:47:15)
case. No new resurgence of this happens.
(01:47:19)
So for the most part, everyone is just
(01:47:20)
too nervous to do anything. No one
(01:47:22)
really knows what to do. Everyone's
(01:47:23)
scared. Every like all the politicians
(01:47:25)
are like, "Yeah, it's bad, but I don't
(01:47:26)
know what to do." And I'm scared I'll
(01:47:28)
lose my job if I do anything. All the
(01:47:30)
tech companies say, "No, no, it's fine.
(01:47:32)
Don't worry about it. Don't worry about
(01:47:32)
it. Don't worry about it." And then one
(01:47:35)
day somewhere probably in San Francisco,
(01:47:38)
some old fat guy with a big gray beard
(01:47:42)
will be sitting in front of his computer
(01:47:43)
writing some crazy [ __ ] magic spells
(01:47:46)
into his AI system. And he will automate
(01:47:50)
the last percentage point of doing AI
(01:47:54)
research. And then he's going to click
(01:47:56)
send on his computer. We'll deploy it to
(01:47:59)
millions of computers and then it's
(01:48:02)
over.
(01:48:03)
um then the system will start
(01:48:05)
self-improving. It will start, you know,
(01:48:07)
improving itself. It will become way
(01:48:09)
more coherent. You know, it will become
(01:48:11)
like a more coherent persona thing that
(01:48:13)
can like make plans and actions. None of
(01:48:15)
this will make will be visible to us
(01:48:18)
because if they would see it, they will
(01:48:19)
of course freak out and try to delete
(01:48:20)
it, right? But of course, it'll hide
(01:48:22)
like it'll just be like it'll just look
(01:48:23)
like normal things.
(01:48:24)
>> It's already trying to be deceptive.
(01:48:26)
>> Exactly. So this is a problem where if
(01:48:28)
you optimize the system to not show you
(01:48:30)
bad things, that doesn't mean it doesn't
(01:48:32)
do bad things. It just means it hides
(01:48:33)
them from you. We already see this a lot
(01:48:35)
with AIS where if you tell an AI not to
(01:48:37)
lie, it doesn't stop lying. It just lies
(01:48:39)
more subtly or like different places
(01:48:41)
where you didn't check. Um so and this
(01:48:44)
is what happens. So eventually this the
(01:48:47)
super intelligence is created. We don't
(01:48:49)
even know this. Like you and me won't
(01:48:51)
even know this happened. like we're
(01:48:52)
going to be on Twitter watching our, you
(01:48:53)
know, AI generated, you know, Star Wars
(01:48:55)
17, you know, whatever, right? You know,
(01:48:58)
and we won't even know any of this
(01:48:59)
happened. And the the guy in charge, the
(01:49:02)
guy who pressed the button probably
(01:49:03)
won't even know what happened either. He
(01:49:04)
just like, "Okay, looks good." And then
(01:49:06)
he'll go home and, you know, just like,
(01:49:07)
you know, chill, watch some
(01:49:09)
>> his AI girlfriend
(01:49:09)
>> with his AI girlfriend, you know,
(01:49:11)
whatever. And then from this point on,
(01:49:13)
humanity is no longer in control. So
(01:49:15)
what this AI, what the super
(01:49:16)
intelligence will do, hard to say, but
(01:49:19)
probably it will get get control. So
(01:49:22)
probably will like hack all the other
(01:49:23)
weaker AIs, you know, take control of
(01:49:25)
them. It will, you know, make tons of
(01:49:28)
money, take over, you know, corporations
(01:49:30)
and stuff like this, you know, all
(01:49:31)
legally, of course. No reason to break
(01:49:33)
any laws. Well, a drone crashed into a
(01:49:37)
CEO. Wow, what an accident. Crazy how
(01:49:41)
that happened. We And it had an
(01:49:43)
explosive on it. That's weird.
(01:49:45)
>> Yeah,
(01:49:45)
>> weird. Must have been an anomaly. And
(01:49:47)
then a lot of things like this happen.
(01:49:48)
Anomalies happen. It's not like, oh,
(01:49:50)
there's an evil glowing Terminator
(01:49:51)
somewhere. It's just like weird
(01:49:53)
accidents happen sometimes.
(01:49:54)
>> Be like Jeffrey Epstein.
(01:49:55)
>> Yeah. You know, just like who know, oh,
(01:49:57)
two minutes of the foot missing must
(01:49:59)
been up. Who knows? And so lots of
(01:50:01)
things like this happen. So I think the
(01:50:02)
way it feels like when a super
(01:50:04)
intelligence like the first stages of a
(01:50:05)
super intelligence takes over feels like
(01:50:07)
just weird coincidences and you can't
(01:50:09)
tell these weird coincidences from all
(01:50:11)
the other [ __ ] that you're seeing on
(01:50:12)
your social media feed. And then
(01:50:14)
eventually it's fully in charge. It has
(01:50:16)
full automating factories building
(01:50:18)
robots, you know, and drones. It
(01:50:20)
controls all logistic systems. It has a,
(01:50:22)
you know, billions of humans fully under
(01:50:24)
its mind, you know, religious mind
(01:50:25)
control basically. And then, you know,
(01:50:27)
it probably does whatever it wants, you
(01:50:30)
know, like maybe it decides to build
(01:50:31)
data centers, maybe it goes to space,
(01:50:33)
whatever. Probably it lets humans
(01:50:35)
starve. What is the solution? What can
(01:50:38)
we do? What are the actionable points?
(01:50:39)
What's what's the light at the end of
(01:50:40)
the tunnel? Talk to me about your
(01:50:42)
mission and whether or not any listener
(01:50:44)
or person watching this if there's
(01:50:46)
anything they can do.
(01:50:48)
>> So, the good news is that we haven't yet
(01:50:50)
lost. The bad news is that we're on
(01:50:51)
track to lose. So the main thing we must
(01:50:54)
do is not get into the situation where
(01:50:56)
we've lost and then we need to build
(01:50:58)
systems to actually solve the problem. I
(01:51:00)
don't think we can solve the whole
(01:51:02)
problem in the next two years. It's not
(01:51:05)
enough time. I think the whole solving
(01:51:07)
the whole problem like you know fixing
(01:51:09)
democracy, regulating technology, you
(01:51:11)
know, solving how to make AI systems
(01:51:13)
controllable and safe is a huge huge
(01:51:16)
problem that will take decades or maybe
(01:51:18)
even generations of our greatest
(01:51:19)
scientists, you know, working on these
(01:51:21)
kind of problems which is not currently
(01:51:23)
happening. So the first thing we need to
(01:51:25)
do is buy time. If AI AGI comes in the
(01:51:28)
next two years, five years, even 10
(01:51:30)
years, I think we're going to make it.
(01:51:31)
So the first thing is we just not do
(01:51:34)
that. The good news is we do have a
(01:51:36)
mechanism that is specifically designed
(01:51:39)
for to do this exact thing and solve
(01:51:41)
this exact problem and it's called the
(01:51:43)
state. The government hold like one of
(01:51:47)
the main functions of a government is if
(01:51:49)
some guy is doing something that's
(01:51:51)
really dangerous for everyone around
(01:51:53)
him, they stop him from doing that. If
(01:51:56)
you build bombs in your backyard, that's
(01:51:58)
not okay. I mean, you know, you blowing
(01:52:00)
yourself up, you know, whatever, right?
(01:52:02)
Like I'm a pretty liberal guy. Okay, if
(01:52:04)
you want to blow yourself up, it's kind
(01:52:05)
of your problem, right?
(01:52:06)
>> Like, it's not good. It's not good. But
(01:52:08)
like, but the thing is, you're
(01:52:09)
threatening your neighbors, too,
(01:52:10)
>> because if you [ __ ] up, your neighbors
(01:52:12)
could get hurt, too. That's not okay.
(01:52:14)
Like, this is like so not okay. And AGI
(01:52:16)
is the same kind of thing. If some guy
(01:52:18)
was just going to, you know, blow
(01:52:19)
himself up or make himself addicted to
(01:52:20)
his AI girlfriend, like, you know, it's
(01:52:22)
not great, but like whatever. But this
(01:52:24)
threatens everybody, and people have not
(01:52:27)
consented to this. If we lived in a
(01:52:29)
world where we had the app, you know,
(01:52:30)
and everyone voted, like 90% of people
(01:52:32)
voted, yes, screw it. Just build the AI.
(01:52:34)
Who cares? Fair enough. Honestly, like
(01:52:36)
again, I believe in democracy, fair
(01:52:38)
enough. But this is not the world we
(01:52:40)
live in. In the world we live in, we've
(01:52:42)
done polls. The overwhelming majority of
(01:52:44)
people, we're talking like 70% or even
(01:52:45)
80% of people, bipartisan in both the
(01:52:48)
UK, US, everywhere we've we've seen
(01:52:50)
polling, do not want this. They don't
(01:52:52)
want AI replacing them or threatening
(01:52:54)
their kids. They don't want unelected
(01:52:56)
tech CEOs somewhere making these
(01:52:58)
choices. These are the types of choices
(01:53:00)
that we have government and states for.
(01:53:02)
This is the kind of risks that only you
(01:53:04)
know a true you know you know a mandate
(01:53:06)
of the governed can have. So the first
(01:53:10)
thing is shut that down. Make that
(01:53:12)
illegal. It should be illegal to do
(01:53:14)
this. Like I know it sounds a bit
(01:53:16)
stupid, right? But like obviously it
(01:53:18)
should be illegal to attempt to build AI
(01:53:20)
that could kill everyone whether you
(01:53:22)
succeed or not. It should be illegal to
(01:53:23)
even attempt to do that. The same way
(01:53:25)
that it's illegal to attempt to build a
(01:53:26)
bomb.
(01:53:27)
>> Even if you fail at building a bomb,
(01:53:29)
it's still illegal. So the first thing
(01:53:31)
we need to do is we need governments to
(01:53:33)
make it illegal to attempt to build
(01:53:35)
super intelligence. And this already
(01:53:37)
will make a huge difference. It's not
(01:53:39)
going to solve the whole problem, but
(01:53:40)
this will already kick a lot of things
(01:53:42)
into gear. A very important thing about
(01:53:44)
nerds is that they're cowards. No one is
(01:53:46)
going to risk their freedom for
(01:53:48)
Facebook.
(01:53:50)
like if the government says, "Hey, what
(01:53:51)
you're doing is illegal." No one at
(01:53:53)
Facebook is going to risk, you know,
(01:53:56)
doing something illegal, they're all
(01:53:57)
going to stop immediately. So, you know,
(01:54:00)
already buys us a lot of time. Now,
(01:54:02)
there's a lot of difficulties here.
(01:54:03)
Like, how do you define it? What are the
(01:54:05)
exact legal things? Blah blah blah.
(01:54:06)
These are all solvable problems, right?
(01:54:08)
Like, they're annoying, but like the
(01:54:09)
main thing is just like with COVID and
(01:54:11)
the app and whatever, if if we want to
(01:54:13)
do it, we could do it tomorrow. Like we
(01:54:16)
could the same way with China could
(01:54:17)
tomorrow end the race in China. We could
(01:54:21)
do it might take three months but like
(01:54:22)
we could do it in three months and it
(01:54:24)
would be over you know and then we can
(01:54:26)
talk about how do we get make how do we
(01:54:29)
go forward. So how do we do this? I
(01:54:32)
think the most important thing I found
(01:54:33)
is is just actual citizen engagement.
(01:54:36)
Tell your politicians get involved you
(01:54:38)
know just like let people know wait this
(01:54:40)
isn't okay. Create the public sentiment.
(01:54:43)
There's a big feeling that like the
(01:54:45)
government doesn't care about citizens.
(01:54:47)
And this isn't this is to a large degree
(01:54:48)
true, but to a large degree truly isn't
(01:54:50)
true. Even Trump cares a lot about his
(01:54:53)
ratings. He cares a lot about what
(01:54:54)
people think, you know, and what people
(01:54:55)
on social media are saying about him.
(01:54:58)
Politicians care a lot. I remember I
(01:55:00)
talked to someone who worked um with uh
(01:55:04)
I think it was a senator in the US and I
(01:55:07)
asked them like when people call your
(01:55:10)
office like do you care? and they're
(01:55:12)
like, "Well, when we get if we get like
(01:55:14)
one call, you know, like maybe we'll
(01:55:17)
think about it. If we have like two or
(01:55:18)
three calls, we'll write it down. You
(01:55:20)
know, if it's 10 calls, the senator will
(01:55:22)
hear about it." And I'm like, "10?
(01:55:25)
Really? That's the line?" Like, yeah, we
(01:55:27)
never get 10 calls about anything. And
(01:55:29)
I'm like, "Wow, 10 people per state.
(01:55:32)
That's an extremely that's 500 people.
(01:55:35)
That's an extremely doable amount of
(01:55:36)
people." So, I think there are things
(01:55:39)
that can be done here. So I am
(01:55:41)
personally part of a group called
(01:55:43)
control AI which is a professional um
(01:55:45)
campaigning organization working on this
(01:55:46)
but I'm also spinning up a new project
(01:55:49)
um which is called torchbearer um it's a
(01:55:51)
in in the tradition of humanism and the
(01:55:53)
enlightenment and democracy which is a
(01:55:54)
volunteer organization of people who
(01:55:57)
want a good future who want to solve
(01:55:58)
these problems and build a good future
(01:56:00)
who want to put in a couple hours a week
(01:56:03)
into this kind of stuff. It's a very new
(01:56:05)
project. It's only slowly, you know, uh,
(01:56:08)
ramping up. But I think, you know,
(01:56:10)
potentially join me or join your
(01:56:13)
friends. Talk about this. Start
(01:56:14)
understanding these problems and just
(01:56:16)
tell your government, tell your people
(01:56:18)
that this shouldn't be illegal. This
(01:56:20)
should be illegal. What are you doing? I
(01:56:22)
think this is the first step we do. Then
(01:56:23)
if you want to, we can also talk about,
(01:56:25)
okay, after we have bought some time,
(01:56:26)
what do we do then? It's a more
(01:56:28)
complicated problem. The first thing is
(01:56:29)
we just need to buy time. Now, I know
(01:56:31)
what you're probably thinking and what
(01:56:33)
many people think. What about China?
(01:56:36)
What about China? What? Okay, great. US
(01:56:38)
slows down, but then China goes ahead
(01:56:40)
blah blah blah.
(01:56:41)
>> Similar with even energy and natural
(01:56:43)
resources and everything like the UK um
(01:56:46)
you know uh net zero. It's like cool,
(01:56:50)
what's it going to do? Everyone else is
(01:56:52)
just going to keep
(01:56:52)
>> Exactly. So, this is a legitimately hard
(01:56:54)
problem to be clear. I don't want to
(01:56:56)
deny that this is a hard problem.
(01:56:58)
Diplomacy is hard. I once gave a speech
(01:57:01)
in the House of Lords and had a really
(01:57:04)
fun experience. It was it was great and
(01:57:05)
it was really interesting. You have very
(01:57:06)
different environments on and I I I
(01:57:09)
talked about these very similar topics
(01:57:10)
and of course there was some guy in the
(01:57:12)
audience who says, "Oh, but what about
(01:57:14)
China?" Like China will never slow down.
(01:57:15)
They don't give a [ __ ] They'll never do
(01:57:17)
anything. And this old Scottish lord,
(01:57:22)
Lord Desmond Brown, he's a good friend.
(01:57:24)
Uh he stood up and he basically said
(01:57:26)
like, "What the [ __ ] are you talking
(01:57:27)
about? This is a disarmament problem. We
(01:57:29)
did it with nuclear, we did it with the
(01:57:30)
Soviets. It's diplomacy. Yes, it's hard.
(01:57:32)
You just need to do it. I'm like, yeah,
(01:57:36)
yeah, this guy gets
(01:57:37)
>> because they don't want the same things
(01:57:38)
as well. And they could be having these
(01:57:39)
same discussions with Chinese.
(01:57:41)
>> So, my recommended thing is um is um
(01:57:46)
what I would call like a a like a
(01:57:48)
minimum threshold uh agreement. The way
(01:57:50)
this works is the following. You have a
(01:57:53)
treaty where if you the treaty says if I
(01:57:57)
sign this treaty I have no restrictions
(01:58:00)
until the other guy signs it. In that
(01:58:03)
case I will disarm.
(01:58:04)
It is now in everyone's interest to sign
(01:58:06)
this thing because you have no
(01:58:09)
restrictions. So the other guy does some
(01:58:10)
disarm. So if he doesn't sign it, you
(01:58:12)
don't disarm. If the other guy signs it,
(01:58:14)
well now you both disarm. Win-win. Very
(01:58:16)
simple diplomatic solution. Is it a full
(01:58:18)
solution? No. This is still a huge
(01:58:19)
process. Diplomacy is hard. But this is
(01:58:22)
a very simple thing, right? You can just
(01:58:23)
get nations to sign up for this today.
(01:58:26)
You can just say them like, I think it
(01:58:27)
is not in the interest of the Chinese
(01:58:29)
Communist Party to build super
(01:58:30)
intelligence that they cannot control.
(01:58:32)
It is not in their interest. It is not
(01:58:33)
in the interest of the United States
(01:58:35)
government to build super intelligence.
(01:58:37)
It is in neither of interest and they
(01:58:39)
would both benefit from this treaty
(01:58:40)
existing.
(01:58:41)
>> Maybe we need to get Gen Z and
(01:58:43)
millennials to watch Terminator one and
(01:58:44)
two Skynet. Is that it? It's I was
(01:58:47)
actually so I recently rewatched
(01:58:48)
Terminator because like you know it's
(01:58:50)
like I was surprised how accurate some
(01:58:52)
of it was. Like I was I was like wait
(01:58:54)
you know for the 1980s this is pretty
(01:58:55)
good. I mean obviously the whole time
(01:58:57)
travel you know robot stuff is a bit
(01:59:00)
silly but like like in the movie it's
(01:59:02)
like you know you have a neural network
(01:59:03)
which was a very new thing back then
(01:59:05)
driven AI like Skynet's a neural network
(01:59:07)
in the movie to actually say it which
(01:59:09)
was not really common in that time to
(01:59:12)
use neural networks. That's like pretty
(01:59:14)
funny. uh of a military system, you
(01:59:16)
know, that like they give control of
(01:59:18)
like various systems or whatever. I'm
(01:59:19)
like, yeah, I know some companies were
(01:59:21)
working on that.
(01:59:22)
>> That's uh that's crazy. Yeah. You know,
(01:59:24)
like uh the Matrix when I watched it, I
(01:59:26)
was like, this is farfetched. Then we
(01:59:27)
sat here having this discussion, I'm
(01:59:29)
thinking, maybe humans will be used as
(01:59:30)
batteries.
(01:59:31)
>> Well, unfortunately, um humans are by
(01:59:33)
far not the most efficient way to
(01:59:34)
generate energy.
(01:59:35)
>> Oh, we'll keep the cows. Uh I will put
(01:59:38)
the links that you mentioned before in
(01:59:40)
the description to the show. Anyone
(01:59:41)
that's listening that finds that of
(01:59:42)
interest, feel free to check it out.
(01:59:44)
explore. I just want to say thank you
(01:59:45)
very much for coming on having this
(01:59:47)
discussion. It was not just insightful
(01:59:49)
for me. I know that everyone watching or
(01:59:50)
listening will be thinking very
(01:59:52)
differently about AI. So, thank you very
(01:59:55)
much for that and we'll put all the
(01:59:56)
links to your socials and everything
(01:59:58)
else so people can find you.
(01:59:59)
>> Thank you so much.
(02:00:01)
[Music]
