Kind: captions Language: en [Music] you've written advice saying don't get fooled by people who claim to have a solution to artificial general intelligence who claim to have an AI system that worked just like the human brain or who claimed to have figured out how the brain works ask them what the error rate they get on em 'no store imagenet you know this is a little dated by the way that mean five years who's counting okay but i think your opinion is to understand imagenet yes maybe data there may be new benchmarks right but i think that philosophy is one you still and and somewhat hold that benchmarks and the practical testing the practical application is where you really get to test the ideas well it may not be completely practical like for example you know it could be a toy data set but it has to be some sort of task that the community as a whole as accepted as some sort of standard you know kind of benchmark if you want it doesn't need to be real so for example many years ago here at fair people you know justin west on board and a few others proposed the the babbitt asks which were kind of a toy problem to test the ability of machines to reason actually to access working memory and things like this and it was very useful even though it wasn't a real task at least is kind of halfway a real task so you know toy problems can be very useful it's just that I was really struck by the fact that a lot of people particularly our people with money to invest would be fooled by people telling them oh we have you know the algorithm of the cortex and you should give us 50 million yes absolutely so there's a lot of people who who try to take advantage of the hype for business reasons and so on but let me sort of talk to this idea that new ideas the ideas that push the field forward may not yet have a benchmark or it may be very difficult to establish a benchmark I agree that's part of the process it's definition benchmarks as part of the process so what are your thoughts about so we have these benchmarks on around stuff we can do with images from classification to captioning to just every kind of information can pull off from images in the surface level there's audio datasets there's some video what can we start natural language what kind of stuff what kind of benchmarks do you see they start creeping on to more something like intelligence like reasoning like maybe you don't like the term but AGI echoes of that kind of yes formulation a lot of people are working on interactive environments in which you can you can train and test intelligent systems so so there for example you know it's the classical paradigm of supervised learning is that you you have a data set you partition it into a training set validation set test set and there's a clear protocol right but what if the that assumes that the samples are statistically independent you can exchange them the order in which you see them doesn't shouldn't matter you know things like that but what if the answer you give determines the next sample you see which is the case for example in robotics right you robot does something and then it gets exposed to a new room and depending on where it goes the room would be different so that's the decrease the exploration problem the what if the samples so that creates also a dependency between samples right you you if you move if you can only move it in in space the next sample you're going to see is going to be probably in the same building most likely so so so the all the assumptions about the validity of this training set test set hypothesis break whatever a machine can take an action that has an influence in the in the world and it's what is going to see so people are setting up artificial environments where what that takes place right the robot runs around 3d model of a house and can interact with objects and things like this are you do robotic space simulation you have those you know opening a gym type thing or mu Joko kind of simulated robots and you have games you know things like that so that that's where the field is going really this kind of environment now back to the question of a GI like I don't like the term a GI because it implies that human intelligence is general and human intelligence is nothing like general it's very very specialized we think it's general we like to think of ourselves as having general surgeons we don't we're very specialized we're only slightly more general than why does it feel general so you kind of the term general I think what's impressive about humans is ability to learn as we were talking about learning to learn in just so many different domains it's perhaps not arbitrarily general but just you can learn in many domains and integrate that knowledge somehow ok the knowledge persists so let me take a very specific example yes it's not an example it's more like a a quasi mathematical demonstration so you have about 1 million fibers coming out of one of your eyes ok 2 million total but let's let's talk about just one of them it's 1 million nerve fibers your optical nerve let's imagine that they are binary so they can be active or inactive right so the input to your visual cortex is 1 million bits now they connected to your brain in a particular way on your brain has connections that are kind of a little bit like accomplish on that they're kind of local you know in space and things like this I imagine I play a trick on you it's a pretty nasty trick I admit I I cut your optical nerve and I put a device that makes a random perturbation of a permutation of all the nerve fibers so now what comes to your to your brain is a fixed but random permutation of all the pixels there's no way in hell that your visual cortex even if I do this to you in infancy will actually learn vision to the same level of quality that you can got it and you're saying there's no way you ever learn that no because now two pixels that on your body in the world will end up in very different places in your visual cortex and your neurons there have no connections with each other because they only connect it locally so this whole our entire the hardware is built in many ways to support the locality of the real world yeah yes that's specialization yep it's still now really damn impressive so it's not perfect generalizations not even close no no it's it's it's it's it's not that it's not even close it's not at all yes it's all sighs so how many boolean functions so let's imagine you want to train your visual system to you know recognize particular patterns of those 1 million bits ok so that's a boolean function right either the pattern is here or not here is the to to a classification with 1 million binary inputs how many such boolean functions are there okay if you have 2 to the 1 million combinations of inputs for each of those you have an output bit and so you have 2 to the 2 to the 1 million boolean functions of this type okay which is an unimaginably large number how many of those functions can actually be computed by your visual cortex and the answer is a tiny tiny tiny tiny tiny tiny sliver like an enormous be tiny sliver yeah yeah so we are ridiculously specialized you know okay but okay that's an argument against the word general I think there's there's a I there's I agree with your intuition but I'm not sure it's it seems the breath the the brain is impressively capable of adjusting to things so it's because we can't imagine tasks that are outside of our comprehension right we think we think we're general because we're general of all the things that we can apprehend so yeah but there is a huge world out there of things that we have no idea we call that heat by the way heat heat so at least physicists call that heat or they call it entropy which is okay you have a thing full of gas right call system for gas right clothes on our coast it has you know pressure it has temperature has you know and you can write the equations PV equal NRT you know things like that right when you reduce a volume the temperature goes up the pressure goes up you know things like that right for perfect gas at least those are the things you can know about that system and it's a tiny tiny number of bits compared to the complete information of the state of the entire system because the state minute our system will give you the position of momentum of every every molecule of the gas and what you don't know about it is the entropy and you interpret it as heat the energy contained in that thing is is what we call heat now it's very possible that in fact there is some very strong structure in how those molecules are moving is just that they are in a way that we are just not wired to perceive a Waggoner to it and there's in your infinite amount of things we're not wired to perceive any right that's a nice way to put it well general to all the things we can imagine which is a very tiny a subset of all things that are possible it was like Colonel Goffe complexity or the komova charge in someone of complexity you know every bit string or every integer is random except for all the ones that you can actually write down yeah ok so beautifully put but you know so we can just call it artificial intelligence we don't you to have a general whatever novel human of all Nutella transmissible oh you know you'll start anytime you touch human it gets it gets interesting because you know is this because we attach ourselves to human and it's difficult to define with human intelligences yeah nevertheless my definition is maybe damn impressive intelligence ok damn impressive demonstration of intelligence whatever you