Lex Fridman Podcast XX
[0] The following is a conversation with Elon Musk.
[1] He's a CEO of Tesla, SpaceX, Neurlink, and a co -founder of several other companies.
[2] This conversation is part of the Artificial Intelligence Podcast.
[3] The series includes leading researchers in academia and industry, including CEOs and CTOs of automotive, robotics, AI, and technology companies.
[4] This conversation happened after the release of the paper from our group at MIT on driver functional vigilance.
[5] during use of Tesla's autopilot.
[6] The Tesla team reached out to me offering a podcast conversation with Mr. Musk.
[7] I accepted, with full control of questions I could ask and the choice of what is released publicly.
[8] I ended up editing out nothing of substance.
[9] I've never spoken with Elon before this conversation, publicly or privately.
[10] Neither he nor his companies have any influence on my opinion, nor on the rigor and integrity of the scientific method that I practiced in my epitably.
[11] in MIT.
[12] Tesla has never financially supported my research, and I've never owned a Tesla vehicle.
[13] I've never owned Tesla stock.
[14] This podcast is not a scientific paper.
[15] It is a conversation.
[16] I respect Elon, as I do all other leaders and engineers I've spoken with.
[17] We agree on some things and disagree on others.
[18] My goal is always with these conversations is to understand the way the guest sees the world.
[19] One particular point of disagreement in this conversation was the extent to which camera -based driver monitoring will improve outcomes and for how long it will remain relevant for AI -assisted driving.
[20] As someone who works on and is fascinated by human -centered artificial intelligence, I believe that if implemented and integrated effectively, camera -based driver monitoring is likely to be of benefit in both the short -term and the long -term.
[21] In contrast, Elon and Tesla's focus is on the improvement of autopilot such that its statistical safety benefits override any concern of human behavior and psychology.
[22] Elon and I may not agree on everything, but I deeply respect the engineering and innovation behind the efforts that he leads.
[23] My goal here is to catalyze a rigorous, nuanced and objective discussion in industry and academia on AI -assisted driving, one that ultimately makes for a safer and better world.
[24] And now, here's my conversation with Elon Musk.
[25] What was the vision, the dream of autopilot, when in the beginning, the big picture system level when it was first conceived and started being installed in 2014 in the hardware and the cars?
[26] What was the vision, the dream?
[27] I wouldn't characterize the vision of a dream, simply that there were obviously two massive revolutions in the automobile industry.
[28] One is the transition to electrification, and then the other is autonomy.
[29] And it became obvious to me that in the future, any car that does not have autonomy would be about as useful as a horse, which is not to say that there's no use, it's just rare and somewhat idiosyncratic if somebody has a horse at this point.
[30] It's just obvious that cars will drive themselves completely.
[31] It's just a question of time.
[32] And if we did not participate in the autonomy revolution, then our cars would not be useful to people relative to cars that are autonomous.
[33] I mean, an autonomous car is arguably worth five to ten times more than a car which is not autonomous.
[34] in the long term it depends what you mean by a long term but let's say at least for the next five years past 10 years so there are a lot of very interesting design choices with autopilot early on first is showing on the instrument cluster or in the model 3 on the center stack display what the combined sensor suite sees what was the thinking behind that choice was there debate what was the process the whole point of the display is to provide a health check on the vehicle's perception of reality.
[35] So the vehicle's taking information from a bunch of sensors, primarily cameras, but also radar and ultrasonics, GPS, and so forth.
[36] And then that information is then rendered into vector space and that, you know, with a bunch of objects, with properties like lane lines and traffic lights and other cars, and then in vector space, that is re -rendered onto a display, so you can confirm whether the car knows what's going on or not by looking out the window.
[37] Right.
[38] I think that's an extremely powerful thing for people to get an understanding, so it become one with the system and understanding what the system is capable of.
[39] Now, have you considered showing more?
[40] So if we look at the computer vision, you know, like road segmentation, lane detection, vehicle detection, object detection, underlying the system, there is at the edges some uncertainty.
[41] Have you considered revealing the parts, the uncertainty in the system, the sort of - Probability associated with, say, image recognition or something like that?
[42] Yeah, so right now it shows like the vehicles in the vicinity of very clean, crisp image, and people do confirm that there's a car in front of me and the system sees there's a car in front of me, but to help people build an intuition, of what computer vision is by showing some of the uncertainty?
[43] Well, I think it's, in my car, I always look at the debug view.
[44] And there's two debug views.
[45] One is augmented vision, which I'm sure you've seen, where basically we draw boxes and labels around objects that are recognized.
[46] And then there's what we're called the visualizer, which is basically a vector space representation, summing up the input from all sensors.
[47] That does not show any pictures, but it shows all of the, it basically shows the class view of the world in vector space.
[48] But I think this is very difficult for people to, normal people to understand.
[49] They would not know what they were looking at.
[50] So it's almost an HMI challenge to.
[51] The current things that are being displayed is optimized for the general public understanding of what the system is capable of.
[52] It's like if you've no idea how computer vision works or anything, you can still look at the screen and see if the car knows what's going on.
[53] And then if you're a development engineer or if you have the development build like I do, then you can see all the debug information.
[54] But those would just be like total deprivation to most people.
[55] What's your view on how to best distribute effort?
[56] So there's three, I would say, technical aspects of all.
[57] autopilot that are really important.
[58] So it's the underlying algorithms, like the neural network architecture.
[59] There's the data that it's trained on, and then there's the hardware development.
[60] There may be others, but, so look, algorithm, data, hardware, you only have so much money, only have so much time.
[61] What do you think is the most important thing to allocate resources to?
[62] Or do you see it as pretty evenly distributed between those three?
[63] we automatically get fast amounts of data because all of our cars have eight external facing cameras and radar and usually 12 ultrasonic sensors GPS obviously and IMU and so we basically have a fleet that has and we've got about 400 ,000 cars on the road that have that level of data I think you keep quite close track of it actually.
[64] Yes.
[65] Yeah.
[66] So we're approaching half a million cars on the road that have the full sensor suite.
[67] Yeah.
[68] So this is, I'm not sure how many other cars on the road have the sensor suite, but I'd be surprised if it's more than 5 ,000, which means that we have 99 % of all the data.
[69] So there's this huge inflow of data?
[70] Absolutely, massive inflow of data.
[71] And then it's taken about three years, but now we've finally developed our full self -driving computer, which can process in order of magnitude as much as the NVIDIA system that we currently have in the cars.
[72] And it's really just to use it, you unplug the NVIDIA computer and plug the Tesla computer in.
[73] And it's, in fact, we're not even, we're still exploring the boundaries of its capabilities, but we're able to run the cameras at full frame rate, full resolution, not even crop the images.
[74] And it's still got a headroom, even on one of the systems.
[75] The full -soft driving computer is really two computers, two systems on a chip that are fully redundant.
[76] So you could put it both through basically any part of that system, and it still works.
[77] The redundancy, are they perfect copies of each other?
[78] Yeah.
[79] So it's purely for redundancy as opposed to an arguing machine kind of architecture where they're both making decisions.
[80] This is purely for redundancy.
[81] If you ever say a twin -engine aircraft, commercial aircraft, the system will operate best if both systems are operating, but it's capable of operating safely on one.
[82] So, but as it is right now, we can just run, we haven't even hit the edge of performance, so there's no need to actually distribute functionality across both.
[83] SOCs, we can actually just run a full duplicate on each one.
[84] Do you haven't really explored or hit the limit of this?
[85] Not yet, hit the limit now.
[86] So the magic of deep learning is that it gets better with data.
[87] You said there's a huge inflow of data.
[88] But the thing about driving, the really valuable data to learn from is the edge cases.
[89] So how do you, I mean, I've heard you talk somewhere.
[90] about autopilot disengagement being an important moment of time to use.
[91] Is there other edge cases, or perhaps can you speak to those edge cases, what aspects of them might be valuable, or if you have other ideas how to discover more and more and more edge cases in driving?
[92] Well, there's a lot of things that are learned.
[93] There are certainly edge cases where, say, somebody's on autopilot, and they take over, and then, okay, that's a trigger that, goes to our system that says, okay, did they take over for convenience, or do they take over because the autopilot wasn't working properly?
[94] There's also, like, let's say we're trying to figure out, what is the optimal spline for traversing an intersection?
[95] Then the ones where there are no interventions and are the right ones.
[96] So you then say, okay, when it looks like this, do the following.
[97] And then you get the optimal spline for a complex, navigating a complex intersection.
[98] So that's for this, so there's kind of the common case you're trying to capture a huge amount of samples of a particular intersection, how when things went right, and then there's the edge case where, as you said, not for convenience, but something didn't go exactly right.
[99] Somebody took over, somebody sort of manual control from autopilot.
[100] And really, like the way to look at this is view all input is error.
[101] If the user had to do input, there's something all input is error that's a powerful line to think of it that way because it may very well be error but if you want to exit the highway or if you want to it's a navigation decision that all autopilot is not currently designed to do then the driver takes over how do you know that that's going to change with navigate an autopilot which we're just released and without still confirmed so the navigation like lane change based it like a certain control in order to change, do a lane change, or exit a freeway, or doing a highway interchange, the vast majority that will go away with the release that just went out.
[102] Yeah, so that, that, I don't think people quite understand how big of a step that is.
[103] Yeah, they don't.
[104] So if you drive the car, then you do.
[105] So you still have to keep your hands on the steering wheel currently when it does the automatic lane change.
[106] What are, so there's these big leaps through the development of autopilot?
[107] through its history and what stands out to you as the big leaps i would say this one navigate an autopile without uh confirm without having to confirm is a huge leap it is a huge leap what it also automatically overtake slow cars so it's it's both navigation um and seeking the fastest lane so it'll it'll you know overtake a slow cause um and exit the freeway and take highway interchanges And then we have traffic lights, recognition, which is introduced initially as a warning.
[108] I mean, on the development version that I'm driving, the car fully stops and goes at traffic lights.
[109] So those are the steps, right?
[110] You just mentioned something, sort of an inkling of a step towards full autonomy.
[111] What would you say are the biggest technological roadblocks to full cell driving?
[112] Actually, I don't think we just, the full self driving computer that we just the Tesla what we call the FSD computer that's now in production.
[113] So if you order any model SRX or any model 3 that has the full self -driving package, you'll get the FSD computer.
[114] That's important to have enough base computation.
[115] Then refining the neural net and the control software, but all of that can just be provided as an over there update.
[116] The thing that's really profound, and while I'll be emphasizing at the sort of what that investor data that we're having focused on autonomy, is that the car's currently being produced, but the hardware currently being produced, is capable of full self -driving.
[117] But capable is an interesting word, because, like the hardware is.
[118] And as we refine the software, it, it, the capabilities will increase dramatically, and then the reliability will increase dramatically, and then it will receive regulatory approval.
[119] So essentially, buying a car today is an investment in the future.
[120] You're essentially buying a car.
[121] You're buying, I think the most profound thing is that if you buy a Tesla today, I believe you are buying an appreciating asset, not a depreciating asset.
[122] So that's a really important statement there, because if hardware is capable enough, that's the hard thing to upgrade.
[123] Yes, usually.
[124] So then the rest is a software problem.
[125] Software has no marginal cost, really.
[126] But what's your intuition on the software side?
[127] How hard are the remaining steps to get it to where, you know, the experience, not just the safety, but the full experience is something that people would enjoy.
[128] I think people would enjoy it very much on the highways.
[129] It's a total game changer for quality of life for using Tesla autopilot on the highways.
[130] So it's really just extending that functionality to city streets, adding in the traffic light recognition, navigating complex intersections.
[131] and then being able to navigate a complicated parking lot so the car can exit a parking space and come and find you even if it's in a complete maze of a parking lot and then if it can just drop you off and find a parking spot by itself yeah in terms of enjoyability and something that people would actually find a lot of use from the parking lot is a really you know, it's rich of annoyance when you have to do it manually, so there's a lot of benefit to be gained from automation there.
[132] So let me start injecting the human into this discussion a little bit.
[133] So let's talk about full autonomy.
[134] If you look at the current level four vehicles being tested on road, like Waymo and so on, they're only technically autonomous.
[135] They're really level two systems with just a different design philosophy, because there's always a safety driver in almost all cases and they're monitoring the system, do you see Tesla's full self -driving as still for a time to come requiring supervision of the human being?
[136] So it's capabilities that powerful enough to drive, but nevertheless requires a human to still be supervising just like a safety driver is in other fully autonomous vehicles.
[137] I think it will require a detecting hands -on -wheel for at least six months or something like that from here.
[138] Really, it's a question of, like, from a regulatory standpoint, how much safer than a person does autopilot need to be for it to be okay to not monitor the car?
[139] And this is a debate that one can have it.
[140] And then, but you need a large sample, a large amount of data so you can prove with high confidence, statistically speaking, that the car is dramatically safer than a person.
[141] And that adding in the person monitoring does not materially affect the safety.
[142] So it might need to be like two or three hundred percent safer than a person.
[143] And how do you prove that?
[144] Incidents per mile.
[145] Incidents per mile.
[146] So crashes and fatalities.
[147] Yeah, fatalities would be a factor, but there are just not enough fatalities to be statistically significant at scale.
[148] But there are enough crashes, there are far more crashes than there are fatalities.
[149] So you can assess where is the probability of a crash, then there's another step which is probability of injury, then probability of permanent injury, then probability of death.
[150] and all of those need to be much better than a person by at least perhaps 200%.
[151] And you think there's the ability to have a healthy discourse with the regulatory bodies on this topic?
[152] I mean, there's no question that regulators pay disproportionate amount of attention to that which generates press.
[153] This is just an objective fact.
[154] And Tesla generates a lot of press.
[155] So, you know, in the United States, there's, I think, almost 40 ,000 automotive deaths per year.
[156] But if there are four in Tesla, they'll probably receive a thousand times more press than anyone else.
[157] So the psychology of that is actually fascinating.
[158] I don't think we'll have enough time to talk about that, but I have to talk to you about the human side of things.
[159] So myself and our team at MIT recently released the paper on functional vigilance of drivers.
[160] while using autopilot.
[161] This is work we've been doing since autopilot was first released publicly over three years ago.
[162] Collecting video of driver faces and driver body.
[163] So I saw that you tweeted a quote from the abstract, so I can at least guess that you've glanced at it.
[164] Yeah, right.
[165] Can I talk you through what we found?
[166] Sure.
[167] Okay.
[168] So it appears that in the data that we've collected, that drivers are maintaining functional vigilance such that we're looking at 18 ,000 disengagement from autopilot, 18 ,900, and annotating were they able to take over control in a timely manner?
[169] So they were there present, looking at the road, to take over control.
[170] Okay, so this goes against what many would predict from the body of literature on vigilance with automation.
[171] Now, the question is, do you think these results hold across the broader population?
[172] So ours is just a small subset.
[173] Do you think one of the criticism is that, you know, there's a small minority of drivers that may be highly responsible where their vigilance decrement would increase with autopilot use?
[174] I think this is all really going to be swept.
[175] I mean, the system's improving so much, so fast, that this is going to be a moot point very soon.
[176] where vigilance is like if something's many times safer than a person then adding a person does the effect on safety is is limited and in fact it could be negative that's really interesting so the so the fact that a human may some percent of the population may exhibit a vigilance decrement will not affect overall statistics numbers of safety.
[177] No, in fact, I think it will become very, very quickly, maybe even towards the end of this year, but I'd say I'd be shocked if it's not next year at the latest, that having the person, having a human intervene will decrease safety, decrease.
[178] I can imagine if you're an elevator.
[179] Now, it used to be that there were elevator operators, and you couldn't go in an elevator by yourself and work the lever to move between floors and now nobody wants it an elevator operator because the automated elevator that stops the floors is much safer than the elevator operator and in fact it would be quite dangerous to have someone with a lever that can move the elevator between floors so that's a that's a really powerful statement and really interesting one but i also have to ask from a user experience and from a safety person perspective.
[180] One of the passions for me algorithmically is camera -based detection of just sensing the human, but detecting what the driver is looking at, cognitive load, body pose.
[181] On the computer vision side, that's a fascinating problem.
[182] And there's many in industry believe you have to have camera -based driver monitoring.
[183] Do you think there could be benefit gained from driver monitoring?
[184] if you have a system that's that's out or below human level reliability then driver monitoring makes sense but if your system is dramatically better more reliable than a human then drive monitoring monitoring is not just not help much and like said you just like as an you wouldn't want someone in the elevator if you're in an elevator do you really want someone with a big lever some random person operating elevator between floors, I wouldn't trust that.
[185] I would rather have the buttons.
[186] Okay, you're optimistic about the pace of improvement of the system.
[187] From what you've seen with a full self -driving car computer, the rate of improvement is exponential.
[188] So one of the other very interesting design choices early on that connects to this is the operational design domain of autopilot so where autopilot is able to be turned on the so contrast another vehicle system that we're studying is the Cadillac supercru system that's in terms of ODD very constrained to particular kinds of highways well mapped tested but it's much narrower than the ODD of Tesla vehicles what's there's there's like ADD that's good that's a good line what was a design decision in that different philosophy of thinking where there's pros and cons what we see with a wide ODD is Tesla drivers are able to explore more the limitations of the system at least early on and they understand together with the instrument cluster display they start to understand what are the capabilities so that's a benefit the con is you're letting drivers use it basically Anywhere.
[189] Well, anywhere that could detect lanes with confidence.
[190] Was there a philosophy design decisions that were challenging that were being made there?
[191] Or from the very beginning, was that done on purpose with intent?
[192] Well, I mean, I think, frankly, it's pretty crazy letting people drive a two -ton death machine manually.
[193] That's crazy.
[194] like in the future of people were like I can't believe anyone was just allowed to drive for one of these two -ton death machines and they just drive wherever they wanted just like elevators you just like move the elevator with the lever wherever you want it can stop it halfway between floors if you want it's pretty crazy so it's going to seem like a mad thing in the future that people were driving cars so I have a bunch of questions about the human psychology, about behavior and so on, that would become that...
[195] Because you have faith in the AI system, not faith, but both on the hardware side and the deep learning approach of learning from data will make it just far safer than humans.
[196] Yeah, exactly.
[197] Recently, there are a few hackers who tricked autopilot to act in unexpected ways of the adversarial examples.
[198] So we all know that neural network systems are very sensitive to minor disturbances to these adversarial examples on input.
[199] Do you think it's possible to defend against something like this for the broader, for the industry?
[200] Sure.
[201] Yeah.
[202] Can you elaborate on the confidence behind that answer?
[203] Well, the, you know, a neural net is just like a basic bunch of matrix math.
[204] You have to be like a very sophisticated, somebody who really understands neural nets.
[205] and like basically reverse engineer how the matrix is being built and then create a little thing that just exactly causes the matrix math to be slightly off.
[206] But it's very easy to then block that by having basically anti -negative recognition.
[207] It's like if the system sees something that looks like a matrix hack excluded.
[208] It's such an easy thing to do.
[209] so learn both on the valid data and the invalid data so basically learn on the adversarial examples to be able to exclude them yeah like you basically want to both know what is what is a car and what is definitely not a car and you train for this is a car and this is definitely not a car those are two different things people have no idea of neural nets really they probably think neural nets involves like you know fishing net or something so as you know So taking a step beyond just Tesla and autopilot, current deep learning approaches still seem in some ways to be far from general intelligence systems.
[210] Do you think the current approaches will take us to general intelligence, or do totally new ideas need to be invented?
[211] I think we're missing a few key ideas for general intelligence, general artificial general intelligence but it's going to be upon us very quickly and then we'll need to figure out what shall we do if we even have that choice but it's amazing how people can't differentiate between say the narrow AI that you know allows a car to figure out what a lane line is and and you know and navigate streets versus general intelligence like these are just very different things.
[212] Like your toaster and your computer are both machines, but one's much more sophisticated than another.
[213] You're confident with Desil that you can create the world's best toaster.
[214] The world's best toaster, yes.
[215] The world's best self -driving.
[216] I'm, yes.
[217] To me, right now this seems game set match.
[218] I don't, I mean, that's how, I don't want to be complacent of confident, but that's what it appears.
[219] That is just literally how it appears right now.
[220] I could be wrong, but it appears to be the case that Tesla is vastly ahead of everyone.
[221] Do you think we will ever create an AI system that we can love and loves us back in a deep meaningful way like in the movie her?
[222] I think AI will be capable of convincing you to fall in love with it very well.
[223] And that's different than us humans.
[224] You know, we start getting into a metaphysical question of like, do emotions and thoughts exist in a different realm than the physical?
[225] And maybe they do, maybe they don't.
[226] I don't know.
[227] But from a physics standpoint, I tend to think of things, you know, like physics was my main sort of training.
[228] And from a physics standpoint, essentially, if it loves you in a way that you can't tell whether it's real or not, It is real.
[229] It's a physics view of love.
[230] Yeah.
[231] If you cannot prove that it does not, if there's no test that you can apply that would make it, allow you to tell the difference, then there is no difference.
[232] And it's similar to seeing our world of simulation.
[233] There may not be a test to tell the difference between what the real world and the simulation, and therefore, from a physics perspective, it might as well be the same thing.
[234] Yes.
[235] There may be ways to test whether it's a simulation.
[236] There might be.
[237] I'm not saying they aren't.
[238] But you could certainly imagine that a simulation could correct that once an entity in the simulation found a way to detect the simulation, it could either restart, you know, pause the simulation, start a new simulation or do one of any other things that then corrects for that error.
[239] So when maybe you or somebody else creates an AGI system, and you get to ask her one question.
[240] What would that question be?
[241] What's outside the simulation?
[242] Elon, thank you so much for talking today.
[243] It's a pleasure.
[244] All right.
[245] Thank you.