Lex Fridman Podcast - #412 – Marc Raibert: Boston Dynamics and the Future of Robotics

Episode Date: February 16, 2024

Marc Raibert is founder and former long-time CEO of Boston Dynamics, and recently Executive Director of the newly-created Boston Dynamics AI Institute. Please support this podcast by checking out our ...sponsors: - HiddenLayer: https://hiddenlayer.com/ and use code LEX - Babbel: https://babbel.com/lexpod and use code Lexpod to get 55% off - MasterClass: https://masterclass.com/lexpod to get 15% off - NetSuite: http://netsuite.com/lex to get free product tour - ExpressVPN: https://expressvpn.com/lexpod to get 3 months free EPISODE LINKS: Boston Dynamics AI Institute: https://theaiinstitute.com/ Boston Dynamics YouTube: https://youtube.com/@bostondynamics Boston Dynamics X: https://x.com/BostonDynamics Boston Dynamics Instagram: https://instagram.com/bostondynamicsofficial Boston Dynamics Website: https://bostondynamics.com/ PODCAST INFO: Podcast website: https://lexfridman.com/podcast Apple Podcasts: https://apple.co/2lwqZIr Spotify: https://spoti.fi/2nEwCF8 RSS: https://lexfridman.com/feed/podcast/ YouTube Full Episodes: https://youtube.com/lexfridman YouTube Clips: https://youtube.com/lexclips SUPPORT & CONNECT: - Check out the sponsors above, it's the best way to support this podcast - Support on Patreon: https://www.patreon.com/lexfridman - Twitter: https://twitter.com/lexfridman - Instagram: https://www.instagram.com/lexfridman - LinkedIn: https://www.linkedin.com/in/lexfridman - Facebook: https://www.facebook.com/lexfridman - Medium: https://medium.com/@lexfridman OUTLINE: Here's the timestamps for the episode. On some podcast players you should be able to click the timestamp to jump to that time. (00:00) - Introduction (10:12) - Early robots (15:15) - Legged robots (33:55) - Boston Dynamics (37:13) - BigDog (45:20) - Hydraulic actuation (47:12) - Natural movement (52:59) - Leg Lab (59:51) - AI Institute (1:03:09) - Athletic intelligence (1:11:04) - Building a team (1:14:05) - Videos (1:21:53) - Engineering (1:25:21) - Dancing robots (1:30:08) - Hiring (1:34:00) - Optimus robot (1:42:30) - Future of robotics (1:47:24) - Advice for young people

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Starting point is 00:00:00 The following is a conversation with Mark Reibert, a legendary roboticist, founder and long-time CEO of Boston Dynamics and recently the executive director of the newly created Boston Dynamics AI Institute that focuses on research and the cutting edge, on creating future generations of robots that are far better than anything that exists today. He has been leading the creation of incredible legged robots for over 40 years at CMU, at MIT, the legendary MIT Leg Lab, and then of course, Boston Dynamics with amazing robots
Starting point is 00:00:37 like Big Dog, Atlas, Spot, and Handel. This was a big honor and pleasure for me. And now a quick few second mention of a sponsor. Check them out in the description. It's the best way to support this podcast. We got hidden layer for securing your AI and machine learning models, Babble for learning new languages,
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Starting point is 00:01:20 As always, no ads in the middle. I tried to make these interesting, but if you skip them, please still check out the sponsors. I enjoy their stuff. Maybe you will too. This episode is brought to you by a new sponsor, an amazing sponsor called Hidden Layer. It's a platform that provides security for your machine learning models. If you've been paying any attention, it's obvious that generative AI, machine learning,
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Starting point is 00:03:13 look functional and correct at first, but then the kind of malware inside the machine will emerge down the line. So you want experts to be considering this rapidly evolving security threat that is laden within machine learning systems. Visit hiddenlayer.com slash Lex to learn more about hidden layer. These guys are great. They're great sponsors of this podcast. They do a really important service for the whole machine learning community. So check them out. This episode is brought to you by Babbel, an app and website that gives you speaking in a new language within weeks. Russian, Spanish, French, German, Italian, Portuguese and more. I can keep going, but those are the ones I want to speak. German, Italian. I want to
Starting point is 00:04:00 at least order stuff in Italian or a restaurant. And that's the kind of stuff you can learn with Babel really quick It's like practical conversational stuff. So when you're traveling you can use it Portuguese obviously, you know, I Practiced a martial art called Brazilian Jiu Jitsu Portuguese Brazil. I got to do it Spanish same thing I'm a huge fan of soccer aka football and of, dream of one day interviewing some of these said soccer players. And the other languages like Russian. We're going to try to do a much different translation and overdubbing very, very soon the various podcast conversations that I've been doing.
Starting point is 00:04:41 I think one of the most powerful way to bridge barriers between people is breaking through the wall that language creates, automated translation. And then when you actually meet them in person to speak their language or to attempt to speak their language, that's what, again, Babel is great for. I use it. All the languages I mentioned, I've used it to learn that even to practice my Russian. For a limited time, get 50% off a one-time payment for a lifetime Babel subscription at babel.com slash Lex pod. That's 50% off at babel.com slash Lex pod spelled B-A-B-B-E-L dot com slash Lex pod. Rules and
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Starting point is 00:08:04 for free at netsuiteuite.com slash Lex. That's netsuite.com slash Lex for your own KPI checklist. This episode is brought to you by ExpressVPN. I use them to protect my privacy on the internet. I've used them for many years. You know, it's the privacy thing for sure. It's also the happiness thing. I press the button turns on I pick a location instantaneously space time travel solved. I don't understand what all the hoopla is about like Fasten the Light travels not possible. You click a button if you click it fast enough right there You're a different location, a different country.
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Starting point is 00:09:24 You should be using Linux to this day Ubuntu is my go-to Linux flavor used to be gen 2 and the reason I say that is because it rhymes with go-to so you should go to ExpressVPN.com slash Lexbaud for an extra three months free This is the Lex Friedman podcast. To support it, please check out our sponsors in the description. And now, dear friends, here's Mark Reibert. When did you first fall in love with robotics? Well, I was always a builder from a young age. I was lucky. My father was a frustrated engineer. And by that, I mean, he wanted to be an aerospace engineer, but his mom from the old country thought that that would be like a grease monkey.
Starting point is 00:10:34 And so she said, no. So he became an accountant. But the result of that was our basement was always full of tools and equipment and electronics. From a young age, I would watch him assembling an ICO kit or something like that. I still have a couple of his old ICO kits. But it was really during graduate school when I followed a professor back from class, it was Bertolt Horner at MIT and I was taking an interim class, it's IAP, Independent Activities Period. And I followed him back to his lab and on the table was a vikarm robot arm taken apart in probably a thousand pieces.
Starting point is 00:11:22 And when I saw that, you know, from that day on, I was a roboticist. Do you remember the year? 1974. 1974. So there's just this arm and pieces. Yeah. And you saw the pieces and you saw in your vision, the arm when it's put back together and the possibilities that holds. Somehow it spurred my imagination. I was in the Brain and Cognitive Sciences Department as a graduate student doing neurophysiology. I'd been an electrical engineer as an undergrad at Northeastern. And the neurophysiology wasn't really working for me. It wasn't conceptual enough. I couldn't see really how by looking at single neurons you were going to get to a place where you could
Starting point is 00:12:05 understand control systems or thought or anything like that. The AI lab was always an appealing, this was before C-sale, right? This was in the 70s. So the AI lab was always an appealing idea. And so when I went back to the AI lab with following you know, following him, and I saw the arm, I just thought, you know, this is it. It's so interesting. The tension between the BCS, Brain Cognitive Science approach to understanding intelligence
Starting point is 00:12:35 and the robotics approach to understanding intelligence. Well, BCS is now morphed a bit, right? They have the Center for Brains, Minds and Mach machines, which is trying to bridge that gap. Even when I was there, David Marr was in the AI lab. David Marr had models of the brain that were appealing both to biologists but also to computer people. He was a visitor in the AI lab at the time. I guess he became full-time there.
Starting point is 00:13:02 That was the first time a bridge was made between those two groups. Then the bridge kind of went away and then there was another time in the 80s and then recently, you know, the last five or so years there's been a stronger connection. You said you were always kind of a builder. What stands out to you in memory of a thing you've built? Maybe a trivial thing that just kind of like inspired you in the possibilities that this direction of work might hold. I mean, we were just doing gadgets when we were kids. I have a friend we were taking.
Starting point is 00:13:36 You know the, I don't know if everybody remembers, but fluorescent lights had this little aluminum cylinder. I can't even remember what it's called now, that you needed a starter, I think it was. And we would take those apart, fill them with match heads, put a tail on it and make it into little rockets. So it wasn't always about function. It was, well-
Starting point is 00:13:58 Well, rocket was pretty much- I guess that is pretty functional. But I guess that is a question. How much was it about function versus just creating something cool? I think it's still a balance between those two. There was a time though when I was, I guess I was probably already a professor
Starting point is 00:14:15 or maybe late in graduate school when I thought that function was everything and that mobility, dexterity, perception and intelligence, those are sort of the key functionalities for robotics. That's what mattered and nothing else mattered. I even had this Platonic ideal that a robot, if you just looked at a robot and it wasn't doing anything, it would look like a pilot junk, which a lot of my robots looked like in those days.
Starting point is 00:14:44 But then when it started moving, you'd get the idea that it had some kind of life or some kind of interest in its movement. And I think it would be purposely even design the machines, not worrying about the aesthetics of the structure itself. But then it turns out that the aesthetics of the thing itself add and combine with the lifelike things that the robots can do. But the heart of it is, you know, making them do things that are interesting. So, one of the things that underlies a lot of your work is that the robots that create
Starting point is 00:15:22 the systems you have created for 40 years now have a kind of, they're not cautious. So a lot of robots that people know about move about this world very cautiously, carefully, very afraid of the world. A lot of the robots you built, especially in the early days, were very aggressive, underexuated, they're hopping. They're wild, moving quickly. So what is their philosophy underlying that? Well, let me tell you about how I got started on legs at all. When I was still a graduate student, I went to a conference and was a biological legged locomotion conference. I think it was in Philadelphia. So it was all biomechanics people, researchers who would look at muscle and maybe neurons
Starting point is 00:16:07 and things like that. They weren't so much computational people, but they were more biomechanics. And maybe there were a thousand people there. And I went to a talk, one of the talks. All the talks were about the body of either animals or people and respiration, things like that. But one talk was by a robotics guy and he showed a six-legged robot that walked very slowly. It always had at least three feet on the ground, so it worked like a table or a chair with
Starting point is 00:16:37 tripod stability and it moved really slowly. And I just looked at that and said, wow, that's wrong. That's not anything like how people and animals work because we bounce and fly. We have to predict what's gonna happen in order to keep our balance when we're taking a running step or something like that. We use the springiness in our legs,
Starting point is 00:17:00 our muscles and our tendons and things like that as part of the story, the energy circulates, we don't just throw it away every time. So I'm not sure I understood all that when I first thought, but I definitely got inspired to say, you know, let's try the opposite. And I didn't have a clue as to how to make a hopping robot work, not really, you know, not balance in 3D. In fact, when I started, it was all just about the energy of bouncing. And I was going to have a springy thing in the leg and some actuator
Starting point is 00:17:31 so that you could get an energy regime going of bouncing. And the idea that balance was an important part of it didn't come until a little later. And then, you know, I made the one like the Pogostick robots. Now I think that we need to do that in manipulation. If you look at robot manipulation, we a community has been working on it for 50 years. We're nowhere near human levels of manipulation. I mean, it's come along, but I think it's all too safe.
Starting point is 00:18:03 And I think trying to break out of that safety thing of static grasping, you know, if you look at the, a lot of work that goes on, it's about the geometry of the part and then you figure out how to move your hand so that you can position it with respect to that. And then you grasp it carefully and then you move it. Well, that's not anything like how people and animals work, you know. We juggle in our hands, we hug multiple objects and can sort them. Now, to be fair, being more aggressive is going to mean things aren't going to work very well for a while. So it's
Starting point is 00:18:39 a longer term approach to the problem. That's just theory now. Maybe that won't pay off, but that's sort of how I'm trying to think about it, trying to encourage our group to go at it. Well, yeah, I mean, we'll talk about what it means to, what is the actual thing we're trying to optimize for a robot. Sometimes, especially with human-robot interaction, maybe flaws is a good thing. Perfection is not necessarily the right thing to be chasing, just like you said, maybe being good at fumbling an object, being good at fumbling might be the right thing
Starting point is 00:19:13 to optimize versus perfect modeling of the object and perfect movement of the arm to grasp that object because maybe perfection is not supposed to exist in the real world. I don't know if you know my friend Matt Mason, who is the director of the Robotics Institute at Carnegie Mellon, and we go back to graduate school together. But he analyzed a movie of Julia Childs doing a cooking thing. And she did, I think he said something like, there were 40 different ways that she handled the thing
Starting point is 00:19:46 and none of them was grasping. She would nudge, roll, flatten with her knife, things like that. And none of them was grasping. So, okay, let's go back to the early days. First of all, you've created and led the leg lab, the legendary leg lab at MIT. So what was that first hopping robot? But first of all, the leg lab, the legendary leg lab at MIT. So what was that first hopping robot?
Starting point is 00:20:06 Can you... But first of all, the leg lab actually started at Carnegie Mellon. So I was a professor there starting in 1980, about 1986. And so that's where the first hopping machines were built, starting, I guess we got the first one working in about 1982, something like that. That was a simplified one. Then we got a three-dimensional one in 1983. The quadruped that we built at the Leg Lab, the first version, was built in about 1984 or five and really only got going about 86 or so. Took years of development to get it to really good.
Starting point is 00:20:45 Let's just pause here. For people who don't know, I'm talking to Mark Weber, founder of Boston Dynamics. But before that, you were a professor developing some of the most incredible robots for 15 years. And before that, of course, a grad student and all that. So you've been doing this for a really long time. So you like skipped over this, but like go to the first hopping robot. There's videos of some of this.
Starting point is 00:21:06 I mean, these are incredible robots. So you talked about the first, the very first step was to get a thing hopping up and down. Right. And then you realized, well, balancing is the thing you should care about. And it's actually a solvable problem. So can you just go through how to create that robot? What was, what was,? What was involved in creating that robot? Well, I'm going to start on the, not the technical side, but the, I guess we could call it the motivational side or the funding side. So before Carnegie Mellon, I was actually at JPL
Starting point is 00:21:40 at the Jet Propulsion Lab for three years. And while I was there, I connected up with Ivan Sutherland, who is sometimes regarded as the father of computer graphics because of work he did both at MIT and then University of Utah and Evan Sutherland. Anyway, I got to know him. And at one point he said he encouraged me to do some kind of project at Caltech, even though I was at JPL, those are kind of related institutions.
Starting point is 00:22:12 And so I thought about it and I made up a list of three possible projects. And I purposely made the top one and the bottom one really boring sounding. And in the middle, I put Pogo Stick Robot. When he looked at it, Ivan is a brilliant guy, brilliant engineer and real cultivator of people. He looked at it and knew right away what the thing that was worth doing. He had an endowed chair. He had about $3,000 that he gave
Starting point is 00:22:45 me to build the first model, which I went to the shop and with my own hands kind of made a first model, which didn't work and was just a beginning shot at it. And Ivan and I took that to Washington. And in those days, you could just walk into DARPA and walk down the hallway and see who's there. Ivan who had been there in his previous life. And so we walked around and we looked in the offices, because I didn't know anything. I was basically a kid, but Ivan knew his way around. And we found Craig Fields in his office.
Starting point is 00:23:22 Craig later became the director of DARPA, but in those days he was a program manager. And so we went in, I had a little Samsonite suitcase which we opened and it had just the skeleton of this one-legged hopping robot and we showed it to him. And you could almost see the drill going down his chin. It was exciting. Excitement. And he sent me $250,000. He said, okay, I want to fund this. And I was
Starting point is 00:23:48 between institutions. I was just about to leave JPL and I hadn't decided yet where I was going next. And then when I landed at CMU, he sent $250,000, which in 1980 was a lot of research money. Did you see the possibility of where this is going? Why this is an important problem? No. The balance, I mean, it has to do with leg and locomotion. I mean, it has to do with all these problems that the human body solves when we're walking, for example.
Starting point is 00:24:18 Like all the fundamentals are there. Yeah, I mean, I think that was the motivation to try and get more at the fundamentals of how animals work. But the idea that it would result in, I mean, I think that was the motivation to try and get more at the fundamentals of how animals work. But the idea that it would result in machines that were anything like practical like we're making now, that wasn't anywhere in my head. Now, as an academic, I was mostly just trying to do the next thing, make some progress, impress my colleagues if I could.
Starting point is 00:24:43 And have fun. And have fun. Pogo stick robot. Pogo stick robot. So what was on the technical side, what are some of the challenges of getting up, getting to the point where we saw like in the video, the Pogo stick robot that's actually successfully hopping and then eventually doing flips and all this kind of stuff.
Starting point is 00:24:59 Well in the very early days, I needed some better engineering than I had, than I could do myself. And I hired Ben Brown. We each had our way of contributing to the design and we came up with a thing that could start to work. I had some stupid ideas about how the actuation system should work and we started that out. It wasn't that hard to make it balanced once you get the physical machine
Starting point is 00:25:25 to be working well enough and have enough control over the degrees of freedom. Then we very quickly, we started out by having it floating on an inclined air table. Then that only gave us six foot of travel. Once it started working, we switched to a thing that could run around the room on another device. It's hard to explain these without you seeing them, but you probably know what I'm talking about, a planarizer. And then the next big step was to make it work in 3D, which that was really the scary part with these simple things.
Starting point is 00:25:58 People had inverted pendulums at the time for years and they could control them by driving a cart back and forth. But could you make it work in three dimensions while it's bouncing and all that? And, but it turned out, you know, not to be that hard to do, at least at the level of performance we achieved at the time. So, okay, you mentioned inverted pendulum,
Starting point is 00:26:16 but like, can you explain how a hopping stick in 3D can control, can balance itself. Yes. What does the actuation look like? The simple story is that there's three things going on. There's something making it bounce. And we had a system that was estimating how high the robot was off the ground.
Starting point is 00:26:42 And using that, there's energy that can be in three places in a PogoStick. One is in the spring, one is in the altitude, and the other is in the velocity. And so when at the top of the hop, it's all in the height. And so you could just measure how high you're going, and thereby have an idea of a lot about the cycle, and you could decide whether to put more energy in or less. So that's one element. Then there's a part that you decide where to put the foot. And if you think when you're landing on the ground with respect to the center mass, so if you think of a polevolter, the key thing the polevolter has to do
Starting point is 00:27:20 is get its body to the right place when the pole gets stuck. If they're too far forward, they kind of get thrown backwards. If they're too far back, they go over. And what they need to do is get it so that they go mostly up to get over the thing. And high jumpers is the same kind of thing. So there's a calculation about where to put the foot, and we did something relatively simple. And then there's a third part to keep the foot and we did something relatively simple. And then there's a third part to keep the body at an attitude that's upright because if it gets too far, you could hop and just keep rotating around.
Starting point is 00:27:52 But if it gets too far, then you run out of motion of the joints at the hips. So you have to do that. And we did that by applying a torque between the legs and the body every time the foot's on the ground. You only can do every time the foot's on the ground. You only can do it while the foot's on the ground in the air. The physics don't work out. How far does it have to tilt before it's too late to be able to balance itself or it's impossible to balance itself, correct itself?
Starting point is 00:28:18 Well, you're asking an interesting question because in those days, we didn't actually optimize things. They probably could have gone much further than we did and then had higher performance. We just kind of got a sketch of a solution and worked on that. In years since, some people working for us, some people working for others, people came up with all kinds of equations for or algorithms for how to do a better job, be able to go faster. One of my students worked on getting things to go faster. Another one worked on climbing over obstacles.
Starting point is 00:28:54 Because when you're running, it's one on the open ground, it's one thing. If you're running up a stair, you have to adjust where you are. Otherwise, things don't work out right. You land your foot on the edge of the step. So there's other degrees of freedom to control if you're getting to, you know, more realistic practical situations. I think it's really interesting to ask about the early days, because, you know, believing in yourself, believing that
Starting point is 00:29:18 there's something interesting here. And then you mentioned finding somebody else, Ben Brown. What's that like finding other people with whom you can build this crazy idea and actually make it work? Probably the smartest thing I ever did is to find the other people. I mean, when I look at it now, you know, I look at Boston Dynamics
Starting point is 00:29:35 and all the really excellent engineering there, you know, people who really make stuff work. You know, I'm only the dreamer. So when you talk about PogoStick robot or legged robots, whether it's Squadra Peds or humanoid robots, did people doubt that this is possible? Did you experience a lot of people around you kind of? I don't know if they doubted whether it was possible, but I think they thought it was a waste of time.
Starting point is 00:30:02 Oh, it's not even an interesting problem. I think for a waste of time. Oh, it's not even an interesting problem. I think for a lot of people, you know, people who were, I think it's been both though. Some people, I think, I felt like they were saying, oh, you know, why are you wasting your time on this stupid problem? And then, but then I've been at many things
Starting point is 00:30:19 where people have told me it's been an inspiration to go out and, you out and attack these harder things. And I think it has turned out, I think Legged Locomotion has turned out to be a useful thing. Did you ever have doubt about bringing Atlas to life, for example, or with Big Dog, just every step of the way? Did you have doubt? This is too hard of a problem. I mean at first I wasn't an enthusiast for the human rights because again it goes back to saying what's the functionality and the form wasn't as important as the functionality
Starting point is 00:30:58 and I and also you know that there's an aspect to humanoid robots that's about There's an aspect to humanoid robots that's about all about the cosmetics where there isn't really other functionality and that kind of is off-putting for me as a roboticist. I think the functionality really matters. So probably that's why I avoided humanoid robots to start with. But I'll tell you, now after we started working on them, you could see that the connection and the impact with other people, whether they're laypeople or even other technical people, there's a special thing that goes on.
Starting point is 00:31:36 Even though most of the humanoid robots aren't that much like a person. But we anthropomorphize and we see the humanity. But also like with the spot, you can see not the humanity, but whatever we find compelling about social interactions there in spot as well. I'll tell you, I go around giving talks and take spot to a lot of them. And it's amazing.
Starting point is 00:31:59 The media likes to say that they're terrifying and that people are afraid. And YouTube commenters like to say that it's frightening. But when you take a spot out there, now maybe it's self-selecting, but you get a crowd of people who wanna take pictures, wanna pose for selfies, wanna operate the robot, wanna pet it, wanna put clothes on it, it's amazing.
Starting point is 00:32:21 Yeah, love spot. So if we move around history a little bit, so you said, I think in the early days of Boston Dynamics that you quietly worked on making a running version of I-Bone. Sony's Robot Dog. Yeah. It's just an interesting little tidbit of history for me. What stands out to you in memory from that task? For people who don't know that little dog robot moves slowly,
Starting point is 00:32:47 how did that become big dog? What was involved there? What was the dance between how do we make this cute little dog versus a thing that can actually carry a lot of payload and move fast and stuff like that? What the connection was is that at that point, Boston Dynamics was mostly a physics-based simulation company.
Starting point is 00:33:03 So when I left MIT to start Boston Dynamics, there was a few years of overlap, but the concept wasn't to start a robot company. The concept was to use this dynamic simulation tool that we developed to do robotics for other things. But working with Sony, we got back into robotics by doing the IBO runner by we programmed we made some tools for programming curio. Which was a small humanoid this big that could do some dancing and other kinds of fun stuff and I don't think it ever reached the market even though they did show it. You know when I look back I say that we got us back where we belonged. Yeah. You rediscovered the soul of the company. That's right.
Starting point is 00:33:47 And so from there, it was always about robots. Yeah. So you started Boston Dynamics in 1992. Right. What are some fond memories from the early days? One of the robots that we built wasn't actually a robot. It was a surgical simulator, but it had force feedback. So it had all the techniques of robotics.
Starting point is 00:34:12 And you look down into this mirror, it actually was. And it looked like you were looking down onto the body you were working on. Your hands were underneath the mirror, so they were where you were looking. And you had tools in your hands that were connected up to these force feedback devices made by another MIT spin out sensible technologies. They made the force feedback device. We attached the tools and we wrote all the software and did all the graphics. We had 3D computer graphics.
Starting point is 00:34:40 It was in the old days when this was in the late 90s. When you had the silicon graphics computer that was about this big. It was the heater in the office basically. And we were doing surgical operations, anastomosis which was stitching tubes together, tubes like blood vessels or other things in their body. And you could feel and you could see the tissues move and it was really exciting. The idea was to make a trainer to teach surgeons how to do stuff.
Starting point is 00:35:11 We built a scoring system because we interviewed surgeons that told us what you're supposed to do, what you're not supposed to do, you're not supposed to tear the tissue, you're not supposed to touch it in any place except for where you're trying to engage. There were a bunch of rules. So we built this thing and took it to a trade show, a surgical trade show. And the surgeons were practically lined up. Well, we kept the score and we posted their scores like on a video game. And those guys are so competitive that they really love doing it.
Starting point is 00:35:42 And they would come around and they see someone's score was higher there, so they would come back. really love doing it. And they would come around and they see someone's score was higher there, so they would come back. But we figured out shortly after that we thought surgeons were going to pay us to get trained on these things. And the surgeons thought we should pay them in order to, so they could teach us about the thing. And there was no money from the surgeons.
Starting point is 00:36:02 And we looked at it and thought, well, maybe we could sell it to hospitals that would train their surgeons. And then we said, well, we're this, at the time, we were probably a 12-person company, or maybe 15 people, I don't remember. There's no way we could go after a marketing activity. The company was all bootstrapped in those years. We never had investors until Google bought us,
Starting point is 00:36:22 which was after 20 years. So we didn't have any resources to go after hospitals. At one day, Rob and I were looking at that and we said, we'd built another simulator for knee arthroscopy and we said, this isn't going to work. We killed it and we moved on. That was really a milestone in the company because we sort of understood who we were and what would work and what wouldn't.
Starting point is 00:36:50 Even though technically it was really a fascinating thing. What was that meaning like? Were you just like sitting at a table? You know what? Probably. We're going to pivot completely. We're going to let go of this thing we put so much hard work into and then go back to
Starting point is 00:37:06 the thing. It just always felt right once we did it. Just look at each other and say, let's build robots. What was the first robot you built under the flag of Boston Dynamics? Big dog? Well, there was the IBO runner, but it wasn't even a whole robot. It was just legs that we took off the legs on IBOs and attached legs we'd made. We got that working and showed it to the Sony people. We worked pretty closely with Sony in those years.
Starting point is 00:37:37 One of the interesting things is that it was before the internet and Zoom and anything like that. So we had six ISDN lines installed and we would have a telecon every week that worked at very low frame rate, something like 10 hertz. English across the boundary with Japan was a challenge, trying to understand what each of us was saying and have meetings every week for several years doing that. And it was a pleasure working with them. They were really supporters. They seemed to like us and what we were doing. That was the real transition from us being a simulation company into being a robotics company again. It was a quadruped. The legs were four legs or two legs?
Starting point is 00:38:23 Yeah, no, four legs. Yeah. And what did you learn from that experience of building it, basically a fast moving quadruped? Mostly we learned that something that small doesn't look very exciting when it's running. It's like it's scampering. And you had to watch a slow-mo for it to look like it was interesting. If you watch it fast, it was just like a... That's funny.
Starting point is 00:38:46 One of my things was to show stuff in video from the very early days of the hopping machines. And so I was always focused on how this is going to look through the viewfinder. And running IBO didn't look so cool through the viewfinder. So what came next in terms of what was a big next milestone in terms of the robot you built? I mean, you got to say that Big Dog was, you know, sort of put us on the map and got our heads really pulled together. We scaled up the company. Big Dog was the result of Alan Rudolph at DARPA starting a biodynautics program. He put out a request for proposals. I think there were 42 proposals written and three got funded.
Starting point is 00:39:35 One was Big Dog. One was a climbing robot, Rise. That put things in motion. We hired Martin Bueller. He was a professor in Montreal at McGill. He was incredibly important for getting Big Dog out of the lab and into the mud, which was a key step to really be willing to go out there and build it, break it, fix it, which is sort of one of our mottoes at the company.
Starting point is 00:40:00 So testing it in the real world. For people who don't know Big Dog, maybe you can correct me, but it's a big quadruped four-legged robot. It looks big, it could probably carry a lot of weight. Not the most weight that Boston Dynamics have built, but a lot. Well, it's the first thing that works. So let's see, if we go back to the leg lab, we'd built a quadruped that could do many of the things that BigDog did, but it had a hydraulic pump sitting in the room with hoses connected to the robot. It had a vax computer in the next room. It needed its own room because it was this giant thing with air conditioning, and it had this very complicated bus connected to the robot. The robot itself just had the actuators that had gyroscopes for sensing and some other
Starting point is 00:40:45 sensors, but all the power and computing was off-board. Big Dog had all that stuff integrated on the platform. It had a gasoline engine for power, which was a very complicated thing to undertake. It had to convert the rotation of the engine into hydraulic power, which is how we actuated it. So there was a lot of learning just on the, you know, building the physical robot and the system integration for that. And then there was the controls of it. So for Big Dog, we brought it all together onto one platform.
Starting point is 00:41:21 And then so you could take it out in the woods. Yeah. And you so you can take it out in the woods. Yeah, and you did. We did. We spent a lot of time down at the Marine Corps base in Quantico where there was a trail called the Guadalcanal Trail. And our milestone that DARPA had specified was that we could go on this one particular trail that involved a lot of challenge. And we spent a lot of time, our team spent a lot of time
Starting point is 00:41:46 down there. Those were fun days. Hiking with the robot. So what did you learn about like what it takes to balance a robot like that on a trail? On a hiking trail in the woods. Basically, if you get the woods, just the real world. That's the big leap into testing in the real world.
Starting point is 00:42:03 Yeah. As challenging as the woods were, working inside of a home or in an office is really harder. Because when you're in the woods, you can actually take any path up the hill. All you have to do is avoid the obstacles. There's no such thing as damaging the woods at least you know the first order Whereas if you're in a house you can't leave scuff marks You can't bang into the walls the robots aren't very comfortable bumping into the walls especially in the early days
Starting point is 00:42:33 So I think those were actually bigger challenges once once we faced them It was mostly you know getting the systems To work well enough together the the hardware systems to work, and the controls. In those days, we did have a human operator who did all the visual perception going up the Guadalcanal trail. So there was an operator who was right there who was very skilled at, even though the robot was balancing itself and placing its own feet, if the operator didn't do the right thing, it wouldn't go. But years later, we went back with one of the electric, the precursor to spot. And we had
Starting point is 00:43:10 advanced the controls and everything so much that an amateur, complete amateur, could operate the robot the first time up and down and up and down, whereas it had taken us years to get there in the previous robot. So if you fast forward, Big Dog eventually became spot. So Big Dog became LS3, which is the big load carrying one. Just a quick pause. It can carry 400 pounds. It was designed to carry 400, but we had it carrying about 1,000 pounds. Of course you did.
Starting point is 00:43:42 We had one carrying the other one. We had two of them. So we had one carrying the other one. We had two of them. So we had one carrying the other one. There's a little clip of that. We should put that out somewhere. That's from like 20 years ago. Wow. Wow.
Starting point is 00:43:53 And it can go for very long distances. You can travel 20 miles. Yeah. Gasoline. Gasoline, yeah. And that adventure is just, okay, sorry. So LS3, then how did that lead to the spot? So BigDog and LS3 had engine power and hydraulic actuation.
Starting point is 00:44:15 Then we made a robot that was electric power. So there's a battery driving a motor, driving a pump, but still hydraulic actuation. Larry sort of asked us, could you make something that weighed 60 pounds that would not be so intimidating if you had it in a house where there were people? And that was the inspiration behind the spot pretty much as it exists today. We did a prototype the same size that was the first all-electric non-hydraulic robot. What was the conversation with Larry Page like about, so here's a guy that kind of is very product focused and can see a vision for what the future holds.
Starting point is 00:44:57 That's just interesting kind of aside. What was the brainstorm about the future robotics with him like? I mean, it was almost as simple as what I just said. He, you know, we're having a meeting. He said, yeah, she's, you know, do you think you could make a smaller one that wouldn't be so intimidating? Well, he'll like a big dog.
Starting point is 00:45:13 Yeah. If it was in your house and I said, yeah, we could do that. And we started and did. Is there a lot of technical challenges to go from hydraulic to electric? You know, I had been in love with hydraulics and still love hydraulics. You know, it's a great technology. It's too bad that somehow the world out there looks at it like it's old fashioned or that
Starting point is 00:45:38 it's icky. And it's true that you do, it is very hard to keep it from having some amount of dripping from time to time. But if you look at the performance, how strong you can get in a lightweight package, and of course we did a huge amount of innovation. Most of hydraulic control, that is the valve that controls the flow of oil, had been designed in the 50s for airplanes. It had been made robust enough, safe enough that you could count on it so that humans could fly in airplanes. Very little innovation had happened. That might not be fair to the people who make the valves. I'm sure that they did innovate, but the basic design had stayed the same, and there was so much more you could do. And so our engineers designed valves, the ones that are in Atlas, for instance, that
Starting point is 00:46:32 had new kinds of circuits. They sort of did some of the computing that could get you much more efficient use. They were much smaller and lighter, so the whole robot could be smaller and lighter. We made a hydraulic power supply that had a bunch of components integrated in this tiny package. It's about this big, the size of a football weighs five kilograms and it produces five kilowatts of power. Of course, it has to have a battery operating, but it's got a motor, a pump, filters, heat
Starting point is 00:47:02 exchanger to keep it cool, some valves, all in this tiny little package. So, hydraulics could still have a ways to go. One of the things that stands out about the robots Boston Dynamics have created is how beautiful the movement is, how natural the walking is and running is, even flipping is, throwing is. So maybe you can talk about what's involved in making it look natural. Well, I think having good hardware is part of the story and people who think you don't need to innovate hardware anymore are wrong, in my opinion.
Starting point is 00:47:41 So I think one of the things certainly in the early years for me, taking a dynamic approach where you think about what's the evolution of the motion of the thing going to be in the future and having a prediction of that that's used at the time that you're giving signals to it. As opposed to it all being servoing, which is servoing is sort of backward looking. It says, okay, where am I now? I'm gonna try and adjust for that. But you really need to think about what's coming. So how far ahead do you have to look in time? It's interesting.
Starting point is 00:48:13 I think that the number is only a couple of seconds for spot, so there's a limited horizon type approach where you're recalculating, assuming what's gonna happen in the next second or second and a half. And then you keep iterating, you know, the next, even though a tenth of a second later, you'll say, okay, let's do that again and see what's happening. And you're looking at what the obstacles are, where the feet are going to be placed, how to, you know, you have to coordinate a lot of things if you have obstacles and you're balancing at the same time.
Starting point is 00:48:44 And it's that limited horizon type calculation that's doing a lot of things if you have obstacles and you're balancing at the same time. It's that limited horizon type calculation that's doing a lot of that. But if you're doing something like a somersault, you're looking out a lot further. If you want to stick the landing, you have to get the... At the time of launch, have momentum and rotation, all those things coordinated so that a landing is within reach. How hard is it to stick a landing? I mean, it's very much under-actuated. Like you, once you've in the air,
Starting point is 00:49:15 you don't have as much control about anything. So how hard is it to get that to work? First of all, did flips with a hopping robot. If you look at the first time we ever made a robot do a somersault, it was in a planar robot. It had a boom, so it was restricted to the surface of a sphere. We call that planar. So it could move for an aft, it could go up and down, and it could rotate.
Starting point is 00:49:41 And so the calculation of what you need to do to stick a landing isn't all that complicated. You have to get time to make the rotation. So how hard you jump gives you time. You look at how quickly you can rotate. If you get those two right, then when you land, you have the feet in the right place. You have to get rid of all that rotational and linear momentum. But that's not too hard to figure out. And we made, back in about 1985 or six, I can't remember, we had a simple robot doing
Starting point is 00:50:17 somersaults. To do it in 3D, really the calculation is the same. You just have to be balancing in the other degrees of freedom. If you're just doing a somersault, it's just a planar thing. Roy Meraba was my graduate student and we were at MIT, which is when we made a two-legged robot do a 3D somersault for the first time. There, in order to get enough rotation rate, you needed to do tucking also. We draw the legs in order to accelerate it.
Starting point is 00:50:45 He did some really fascinating work on how you stabilize more complicated maneuvers. You remember he was a gymnast, a champion gymnast before he'd come to me. So he had the physical abilities and he was an engineer, so he could translate some of that into the math and the algorithms that need to do that. He knew how humans do it. He just had to get robots to do the same. Unfortunately, though, humans don't really know how they do it. Right?
Starting point is 00:51:14 We're coached. We have ways of learning, but do we really understand in a physics way what we're doing? Probably most gymnasts and athletes don't know. So in some way, by building robots, you are in part understanding how humans do like walking. Most of us walk without considering how we walk really. Right. And how we make it so natural and efficient
Starting point is 00:51:38 and all those kinds of things. Atlas still doesn't walk like a person. And it still doesn't walk quite as gracefully as a person, even though it's been getting closer and closer. The running might be close to a human but the walking is still a challenge. That's interesting, right? That running is closer to a human. It just shows that the more aggressive and kind of the more you leap into the unknown the more natural it is. I mean walking is kind of falling always, right?
Starting point is 00:52:06 And something weird about the knee that you can kind of do this folding and unfolding and get it to work out just, a human can get it to work out just right. There's compliances, compliance, main springiness in the design that are important to how it all works. Well, we used to have a motto at the Boss Dynamics
Starting point is 00:52:23 in the early days, which was the, you have to run before you can walk. That's a good motto. Because you also had Wildcat, which was one of the along the way towards spot, which is a quadruped that went 19 miles an hour on flat terrain. Is that the fastest you've ever built? Oh, yeah. Might be the fastest quadruped in the world.
Starting point is 00:52:44 I don't know. For a quadruped probablyped probably of course it was probably the loudest too So we had this little racing go-kart engine on it and we would get people from you know three buildings away Sending us, you know Complaining about how loud it was So at the leg lab, I believe most the robots didn't have knees So, at the leg lab, I believe most of the robots didn't have knees. What's the, how do you figure out what is the right number of actuators? What are the joints to have? What do you need to have, you know, we humans have knees and all kinds of interesting stuff
Starting point is 00:53:18 on the feet. The toe is an important part, I guess, for humans. Or maybe it's not. I injured my toe recently and it made running very unpleasant. So that seems to be kind of important. So how do you figure out for efficiency, for function, for aesthetics, how many joints to have, how many actuaries to have? Well, it's always a balance between wanting to get where you really want to get and what's practical to do based on your resources
Starting point is 00:53:46 or what you know and all that. So I mean the whole idea of the Pogostick was to do a simplification. Obviously it didn't look like a human. I think a technical scientist could appreciate that we were capturing some of the things that are important in human locomotion without it looking like it, without having a knee, an ankle. I'll tell you the first sketch that Ben Brown made when we were talking about building this thing was a very complicated thing with zillions of springs, lots of joints. It looked much more like a kangaroo or an ostrich or something like that, things we were paying
Starting point is 00:54:26 a lot of attention to at the time. So my job was to say, okay, well, let's do something simpler to get started and maybe we'll get there at some point. I just love the idea that you two were studying kangaroos and ostriches. Oh, yeah. You two were studying kangaroos and ostriches. Oh yeah, we filmed and digitized data from horses. I did a dissection of an ostrich at one point, which has absolutely remarkable legs. Dumb question. Do ostriches have a lot of musculature on the legs or no?
Starting point is 00:55:02 Most of it's up in the feathers, but there's a huge amount going on in the feathers, including a knee joint. The knee joint's way up there. The thing that's halfway down the leg that looks like a backwards knee is actually the ankle. The thing on the ground, which looks like the foot, is actually the toes. It's an extended toe. But the basic morphology is the same in all these animals.
Starting point is 00:55:27 What do you think is the most beautiful movement of an animal? What animal do you think is the coolest? Land animal. Because fish is pretty cool. The fish moves to water, but like a leggy locomotion. The slow-mo's of cheetahs running are incredible. You know, there's so much back motion and grace and of course, they're moving very fast. The animals running away from the cheetah are pretty exciting.
Starting point is 00:55:55 The pronghorn, which, you know, they do this all four legs at once jump called a prank to kind of confuse the, especially if there's a group of them to confuse whoever's chasing them. So they do like a misdirection type of thing? Yep, they do a misdirection thing. The front on views of the cheetahs running fast where the tail is whipping around to help in the turns, to help stabilize in the turns. That's pretty exciting.
Starting point is 00:56:20 Because they spend a lot of time in the air, I guess, as they're running that fast. But they also turn very fast. Is that a tail thing or is it, do you have to have contact with ground? They spent a lot of time in the air, I guess, as they're running that fast. But they also turned very fast. Is that a tail thing or do you have to have contact with ground? Everything in the body is probably helping turn, because they're chasing something that's trying to get away that's also zigzagging around. But I would be remiss if I didn't say, you know, humans are pretty good too. You know, you watch gymnasts, especially these days. They're doing just incredible
Starting point is 00:56:46 stuff. Well, like especially like Olympic level gymnasts. See, but there could be, I think there could be cheetahs there Olympic level. We might be watching the average cheetah versus like, there could be like a really special cheetah that can do like- You're right. When did the knees first come into play in you building Legged Robots? In Big Dog. Big Dog. Yeah, Big Dog came first and then Little Dog was later. And you know, there's a big compromise there.
Starting point is 00:57:15 Human knees have multiple muscles and you could argue that there's... I mean, it's a technical thing about negative work. When you're contracting a joint, but you're pushing out, that's negative work. And if you don't have a place to store that, it can be very expensive to do negative work. And in Big Dog, there was no place to store negative work in the knees. But Big Dog also had pogo stick springs down below. So part of the action was to comply in a bouncing motion. You know, later on in spot we took that out. As we got further and further away from the leg lab, we had more, you know, energy-driven controls.
Starting point is 00:58:02 Is there something to be said about like knees that go forward versus backward? Sure. There's this idea called passive dynamics, which says that although you can use computers and actuators to make a motion, a mechanical system can make a motion just by itself if it gets stimulated the right way. So Tad McGeer in the, I think in the mid-80s, maybe it was in the late 80s, started to work on that. And he made this legged system that could walk down an inclined plane where the legs
Starting point is 00:58:40 folded and unfolded and swung forward, you know, do the whole walking motion, where there was no computer. There were some adjustments to the mechanics so that there were dampers and springs in some places that helped the mechanical action happen. It was essentially a mechanical computer. And the idea, the interesting idea there is that it's not all about the brain The interesting idea there is that it's not all about the brain dictating to the body what the body should do. The body is a participant in the motion. So a great design for a robot has a mechanical component where the movement is efficient even without a brain.
Starting point is 00:59:17 Yes. How do you design that? I think that these days most robots aren't doing that. Most robots are basically using the computer to govern the motion. Now, the brain though is taking into account what the mechanical thing can do and how it's going to behave. Otherwise, it would have to really forcefully move everything around all the time, which probably some solutions do, but I think you end up with a more efficient and more graceful thing if you're taking into account what the what the machine wants to do. So this might be a good place to mention that you're now
Starting point is 00:59:56 leading up the the Boston Dynamics AI Institute, newly formed, which is focused more on designing the robots of the future. I think one of the things, maybe you can tell me the big vision for what's going on, but one of the things is this idea that hardware still matters with organic design and so on. Maybe before that, can you zoom out and tell me what the vision is for the AI Institute. I like to talk about intelligence having two parts, an athletic part and a cognitive part. I think Boston Dynamics, in my view, has set the standard for what athletic intelligence can be.
Starting point is 01:00:40 It has to do with all the things we've been talking about, the mechanical design, the real-time control, the energetics, and that kind of stuff. But obviously, people have another kind of intelligence, and animals have another kind of intelligence. You know, we can make a plan. Our meeting started at 9.30. I looked up on Google Maps how long it took to walk over here. It was, you It was 20 minutes. So I decided, okay, I'd leave my house at nine, which is what I did. Simple intelligence,
Starting point is 01:01:12 but we use that kind of stuff all the time. It's sort of what we think of as going on in our heads. And I think that's in short supply for robots. Most robots are pretty dumb. And as a result, it takes a lot of skilled people to program them to do everything they do. It takes a long time. If robots are going to satisfy our dreams, they need to be smarter. The AI Institute is designed to combine that physicality of the athletic side with the cognitive side. So for instance, we're trying to make robots that can watch a human do a task, understand
Starting point is 01:01:56 what it's seeing, and then do the task itself. So, sort of OJT for on-the-job training for robots as a paradigm. Now, that's pretty hard and it's sort of science fiction, but our idea is to work on a longer time frame and work on solving those kinds of problems. And I have a whole list of things that are kind of like in that vein. Maybe we can just take many of the things you mentioned and just take it as a tangent. First of all, athletic intelligence is a super cool term.
Starting point is 01:02:31 And that really is intelligence. We humans kind of take it for granted that we're so good at walking and moving about the world. And using our hands, you know, the mechanics of interacting with all these parts, these two things, you know.'ve never touched those things before. I'm not looking, never touched. Well, I've touched ones like this. Look at all the things I can do, right? I can juggle and rotate. This way I can rotate it without looking. I
Starting point is 01:02:54 could fetch these things out of my pocket and figure out which one was which and all that kind of stuff. Yeah. And I don't think we have much of a clue how all that works yet. Right. And that's, I really like putting that under the banner of athletic intelligence. What are the big open problems in athletic intelligence? So Boston Dynamics with Spot, with Atlas, just have shown time and time again, like push the limits of what we think is possible with robots. But where do we stand actually actually if we kind of zoom out? What are the big open problems on the athletic intelligence side? I mean, one question you could ask isn't my question, but are they commercially viable?
Starting point is 01:03:36 Will they increase productivity? And I think we're getting very close to that. I don't think we're quite there still. Most of the robotics companies, it's a struggle. It's really the lack of the cognitive side that probably is the biggest barrier at the moment, even for the physically successful robots. But your question's good. I mean, you can always do a thing that's more efficient, lighter, more reliable.
Starting point is 01:04:03 I'd say reliability. I know that spot they've been working very hard on getting the tail of the reliability curve up, and they've made huge progress. So, the robots, there's 1,500 of them out there now. Many of them being used in practical applications day in and day out where they have to work reliably. It's very exciting that they've done that, but it takes a huge effort to get that kind of reliability in the robot. There's cost too. You'd like to get the cost down.
Starting point is 01:04:39 Spots are still pretty expensive, and I don't think that they have to be, but it takes a different kind of activity to do that. Now that, I think that Boston Dynamics is owned primarily by Hyundai now, and I think that the skills of Hyundai in making cars can be brought to bear in making robots that are less expensive and more reliable and those kinds of things. So on the cognitive side, for the I Institute, what's the trade off between moonshot projects for you and maybe incremental progress? That's a good question.
Starting point is 01:05:20 I think we're using the paradigm called stepping stones to moonshots. I don't believe that was in my original proposal for the Institute, stepping stones to moonshots. I think if you go more than a year without seeing a tangible status report of where you are, which is the stepping stone, and it could be a simplification, you don't necessarily have to solve all the problems of your target goal, even though your target goal is going to take several years. The stepping stone results give you feedback, give motivation, because usually there's some success in there.
Starting point is 01:05:58 And so that's the mantra we've been working on. And that's pretty much how I'd say Boston Dynamics has worked, you know, where you make progress and show it as you go. Show it to yourself, if not to the world. What does success look like? What are some of the milestones you're chasing? Well, we've, with Watch Understand Do, the project I mentioned before, we've broken that down into getting some progress with what is meaningfully watching something mean,
Starting point is 01:06:32 breaking down an observation of a person doing something into the components. Segmenting, you watch me do something. I'm going to pick up this thing and put it down here and stack this on it. Well, it's not obvious if you just look at the raw data, what the sequence of acts are. It's really a creative intelligent act for you to break that down into the pieces and understand them in a way so you could say, okay, what skill do I need to accomplish each of those things? So we're working on the front end of that kind of a problem where we observe and translate the, if it may be video, it may be live, into a description of what we think is going on and then trying to map that into skills to accomplish
Starting point is 01:07:17 that and may have been developing skills as well. So we have multiple stabs at the pieces of doing that. And this is usually video of humans manipulating objects with their have kind of multiple stabs at the pieces of doing that. And this is usually video of humans, manipulating objects with their hands kind of thing. Mm-hmm. We're starting out with bicycle repair, some simple bicycle repair tasks. Oh, no. That seems complicated. That seems really complicated. Well, it is. But there's some parts of it that aren't,
Starting point is 01:07:38 like putting the seat in, you know, into the, you know, you have a tube that goes inside of another tube and there's a latch, that should be within range. Is it possible to observe, to watch a video like this without having an explicit model of what a bicycle looks like? I think it is. I think that's the kind of thing that people don't recognize. Let me translate it to navigation.
Starting point is 01:08:03 I think the basic paradigm for navigating a space is to get some kind of sensor that tells you where an obstacle is and what's open, build a map, and then go through the space. But if we were doing on-the-job training where I was giving you a task, I wouldn't have to say anything about the room. We came in here. All we did is adjust the chair, but we didn't say anything about the room and we could navigate it. So I think there's opportunities to build that kind of navigation skill into robots and we're hoping to be able to do that.
Starting point is 01:08:35 So operate successfully under a lot of uncertainty. Yeah. And lack of specification. Lack of specification. I mean, that's what sort of intelligence is, right? Kind of dealing with understanding a situation even though it wasn't explained. So how big of a role does machine learning play in all of this?
Starting point is 01:08:55 Is this more and more learning based? You know, since chat GBT, which is a year ago, basically, Since chat GBT, which is a year ago, basically, there's a huge interest in that and a huge optimism about it. I think that there's a lot of things that machine learn, that kind of machine learning. Now, of course, there's lots of different kinds of machine learning. I think there's a lot of interest and optimism about it. I think the facts on the ground are that doing physical things with physical robots is a little bit different than language. The tokens don't exist. Pixel values aren't
Starting point is 01:09:35 like words. But I think that there's a lot that can be done there. We have several people working on machine learning approaches. I don't know if you know, but we opened an office in Zurich recently, and Marco Hutter, who's one of the real leaders in reinforcement learning for robots, is the director of that office. He's still half-time at the ETH, the university there, where he has an unbelievably fantastic lab, and then he's half time leading, will be leading off efforts in the Zurich office. So we have a healthy learning component, but there's part of me that still says if you look out in the world at what the most impressive performances are, there's still pretty much,
Starting point is 01:10:27 that what the most impressive performances are, they're still pretty much, I hate to use the word traditional, but that's what everybody's calling it, traditional controls, like model predictive control. The Atlas performances that you've seen are mostly model predictive control. They've started to do some learning stuff that's really incredible. I don't know if it's all been shown yet, but you'll see it over time. And then Marco has done some great stuff and others. So, especially for the athletic intelligence piece, the traditional approach seems to be the one that still performs the best. I think we're going to find a mating of the two, and we'll have the best of both worlds. And we're working on that at the Institute too.
Starting point is 01:11:04 If I can talk to you about teams, you've built an incredible team of boss dynamics. Before at MIT and CMU and boss dynamics and now at the AI Institute, and you said that there's four components to a great team. Technical fearlessness, diligence, and trepidness and fun, technical fun. Can you explain each technical fearlessness?
Starting point is 01:11:25 What do you mean by that? Sure? Technical fearlessness means being willing to take on a problem that you don't know how to solve and You know study it figure out an act an entry point, you know, maybe a simplified version or a simplified solution or something learn from the stepping stone and go back and eventually make a solution that meets your goals. And I think that's really important.
Starting point is 01:11:56 The fearlessness comes into play because some of it has never been done before. Yeah. And you don't know how to do it. And you know, there's the easier stuff to do in life. So, you know, I mean, I don't know, watch, understand, do. It's a mountain of a challenge. So that's the really big challenge you're tackling now. Can we watch humans at scale and have robots by watching humans become effective actors in the world. Yeah.
Starting point is 01:12:26 I mean, we have others like that. We have one called Inspect Diagnose Fix. Like you call up the Maytag repairman. Okay. He's the one who you don't have to call. You call up the dishwasher repair person and they come to your house and they look at your machine. It's already been actually figured out that something doesn't work, but they come to your house and they look at your machine, it's already
Starting point is 01:12:45 been actually figured out that something doesn't work, but they have to kind of examine it and figure out what's wrong and then fix it. And I think robots should be able to do that. We already, Boston Dynamics already has spot robots collecting data on machines, things like thermal data, reading the gauges, listening to them, getting sounds. That data are used to determine whether they're healthy or not. But the interpretation isn't done by the robots yet.
Starting point is 01:13:17 Certainly, the diagnosing and the fixing isn't done yet, but I think it could be. That's bringing the AI and combining it with the physical skills to do it. Yeah, and you're referring to the fixing in the physical world. I can't wait until you can fix the psychological problems of humans and show up and just talk, do therapy. Yeah, that's a different thing. Yeah, it's different. Well, that's all part of the same thing.
Starting point is 01:13:42 Again, humanity. Maybe, maybe. You mean convincing you it's okay that the dishwasher is broken? Just do the math. Oh yeah. The marketing approach. Yeah, exactly.
Starting point is 01:13:53 It's all, yeah. Don't sweat the small stuff. Yeah, as opposed to fixing the dishwasher, it'll convince you that it's okay that the dishwasher is broken. It's a different approach. Diligence. Why is diligence important? Well, if you want a real robot solution, it can't be a very narrow solution that's going to break
Starting point is 01:14:16 at the first variation in what the robot does or the environment if it wasn't exactly as you expected it. So how do you get there? I think having an approach that leaves you unsatisfied until you've embraced the bigger problem is the diligence I'm talking about. And again, I'll point at Boss Dynamics. I think they've done some of the videos that we had showing the engineer making it hard for the robot to do its task. Spot opening a door and then the guy gets there and pushes on the door so it doesn't open the way it's supposed to pulling on the rope that's attached to the robot so its navigation has been screwed up.
Starting point is 01:14:58 We have one where the robot's climbing stairs and engineer is tugging on a rope that's pulling it back down the stairs. That's totally different than just the robot seeing the stairs, making a model, putting its feet carefully on each step. But that's what probably robotics needs to succeed. And having that broader idea that you want to come up with a robust solution is what I meant by diligence. So really testing it in all conditions, perturbing the system in all kinds of ways.
Starting point is 01:15:27 And as a result creating some epic videos, the legendary... The fun part, the hockey stick. And then yes, tugging on spot is just trying to open the door. I mean, it's great testing, but it's also, I don't know, it's just somehow extremely compelling demonstration of robotics in video form. I learned something very early on with the first three-dimensional hopping machine. If you just show a video of it hopping, it's a so what.
Starting point is 01:15:59 If you show it falling over a couple of times and you can see how easily and fast it falls over, then you appreciate what the robot's doing when it's doing its thing. So I think the reaction you just gave to the robot getting kind of interfered with or tested while it's going through the door, it's showing you the scope of the solution. The limits of the system, the challenges involved in failure. If you're showing both failure and success, it makes you appreciate the success. And then just the way the videos are done in boss analytics are incredible because there's no flash, there's no extra production.
Starting point is 01:16:38 It's just raw testing of the robot. Well, I was the final edit for most of the videos up until about three years ago or four years ago. My theory of the video is no explanation. If they can't see it, then it's not the right thing. If you do something worth showing, then let them see it. Don't interfere with a bunch of titles that slow you down or a bunch of distraction. Just do something worth showing and then show it. That's brilliant.
Starting point is 01:17:17 It's hard though for people to buy into that. Yeah. I mean, people always want to add more stuff, but the simplicity of just do something worth showing and show it, that's brilliant. And don't add extra stuff. People have criticized, especially the big dog videos where there's a human driving the robot. And I understand the criticism now.
Starting point is 01:17:41 At the time, we wanted to just show, look, this thing's using its legs to get up the hill. So we focused on showing that, which was we thought the story, the fact that there was a human. So they were thinking about autonomy, whereas we were thinking about the mobility. And so we've adjusted to a lot of things that we see that people care about trying to be honest.
Starting point is 01:18:04 We've always tried to be honest. We've always tried to be honest. But also just show cool stuff in this raw form, the limits of the system, to see the system be perturbed and be robust and resilient and all that kind of stuff. And dancing with some music. Intrepidness and fun. So, intrepid. I mean, it might be the most important ingredient. And that is, robotics is hard.
Starting point is 01:18:31 It's not going to work right away. So don't be discouraged is all it really means. So usually when I talk about these things, I show videos and I show a long string of outtakes. You have to have courage to be intrepid when you work so hard, you built your machine, and then you're trying and it just doesn't do what you thought it would do, what you want it to do. You have to stick to it and keep trying. How long, I mean, we don't often see that, the story behind Spot and Atlas.
Starting point is 01:19:10 How many failures was there along the way to get a working Atlas, a working Spot in the early days, even working Big Dog? There's a video of Atlas climbing three big steps and it's very dynamic and it's really exciting, real accomplishment. It took 109 tries and we have video of every one of them. We shoot everything.
Starting point is 01:19:31 Again, we, this is at Boston Dynamics. So it took 109 tries. But once it did it, it had a high percentage of success. So it's not like we're cheating by just showing the best one, but we do show the evolved performance, not everything along the way. But everything along the way is informative and it shows stupid things that go wrong, like the robot just when you say go and it collapses right there on the start. That doesn't have to do with the steps. say go and it collapses right there on the start, that doesn't have to do with the steps or the perception didn't work right. So you miss the target when you jump or something
Starting point is 01:20:10 breaks and there's oil flying everywhere. But that's fun. Yeah. So the hardware failures and then maybe some soft stuff. Lots of control of evolution during that time. I think it took six weeks to get those 109 trials. You know, because there was programming going on. It was actually robot learning, but there were human in the loop helping with the learning. So all data driven. Okay. And you always are learning from that failure. Right. that failure. How do you protect Atlas from not getting damaged from 109 attempts? It's remarkable. One of the accomplishments of Atlas is that the engineers have made a
Starting point is 01:20:57 machine that's robust enough that it can take that kind of testing where it's falling and stuff and it doesn't break every time. It still breaks. Part of the paradigm is to have people to repair stuff. You got to figure that in if you're going to do this kind of work. I sometimes criticize the people who have their gold-plated thing and they keep it on the shelf and they're afraid to use it. I don't think you can make progress if you're working that way. You need to be ready to have it break
Starting point is 01:21:27 and go in there and fix it. It's part of the thing. You know, plan your budget so you have spare parts and a crew and all that stuff. Yeah, if it falls 109 times, it's okay. Wow. So intrepid, truly. And that applies to spot,
Starting point is 01:21:44 that applies to all the other ones. It applies to everything. I think it applies to everything anybody tries to do that's worth doing. Yeah. And especially with systems in the real world, right? Yeah. And so fun.
Starting point is 01:21:55 Fun. Technical fun, I usually say. I have technical fun. I think that life as an engineer is really satisfying. I think you get to, to some degree, it can be like craft's work where you get to do things with your own hands or your own design or whatever your media is. And it's very satisfying to be able to just do the work unlike a lot of people who have to do something that they don't like doing.
Starting point is 01:22:22 I think engineers typically get to do something that they like, and there's a lot of satisfaction from that. Then there's, you know, in many cases you can have impact on the world somehow because you've done something that other people admire, which is different from the craft fun of building a thing. So that's the second way that being engineer is good. I think the third thing is that if you're lucky to be working in a team where you're getting the benefit
Starting point is 01:22:54 of other people's skills that are helping you do your thing, none of us has all the skills needed to do most of these projects. And if you have a team where you're working well with the others, that can be very satisfying. And then if you're an engineer, you also usually get paid. And so you kind of get paid four times, in my view of the world.
Starting point is 01:23:16 So what could be better than that? Get paid to have fun. I mean, what do you love about engineering? When you say engineering, what does that mean to you exactly? What is this kind of big thing that we call engineering? I think it's both being a scientist or getting to use science at the same time as being kind of an artist or a creator because you're making some. Scientists only get to study what's out there and engineers get to make stuff that didn't
Starting point is 01:23:43 exist before. And so it's really, I think, a higher calling, even though I think most, you know, the public out there thinks science is top and engineering is somehow secondary, but I think it's the other way around. And at the cutting edge, I think when we talk about robotics, there is a possibility to do art in that you do like the first of its kind thing. So then there's the production at scale, which is a so to do art in that you do the first of its kind thing.
Starting point is 01:24:05 So then there's the production at scale, which is so beautiful thing, but when you do the first new robot or the first new thing, that's a possibility to create something totally new. Bringing metal to life or a machine to life is fun. It was fun doing the dancing videos where we got a huge public response. We're going to do more. We're doing some at the Institute and we'll do more. With that metal to life moment, to me that's still magical. When inanimate objects comes to life, that's still, me, to this day is still an incredible moment.
Starting point is 01:24:46 The human intelligence can create systems that instill life or whatever that is into inanimate objects. It's really, it's truly magical, especially when it's at the scale of the humans can perceive and appreciate like directly. But I think sort of with it going back to the pieces of that, you know, you design a linkage
Starting point is 01:25:11 that turns out to be half the weight and just as strong. That's very satisfying. And you know, there are people who do that and it's a creative act. What to you is the most beautiful about robotics? Sorry for the big romantic question. I think having the robots move in a way that's Evocative of life is is pretty exciting for the elegance of movement. Yeah, or if it's a high performance act We're doing it, you know faster bigger than than other robots
Starting point is 01:25:44 Usually we're not doing it bigger faster than people but we know we're getting there in a few narrow dimensions. So faster bigger smoother More elegant more graceful. I mean, I'd like to do dancing that that starts, you know, we're nowhere near the Dancing capabilities of a human we've been having a ballerina in who's kind of a well-known ballerina, and she's been programming the robot. We've been working on the tools that can make it so that she can use her way of talking, way of doing a choreography or something like that, more accessible to get the robot to do things.
Starting point is 01:26:23 She's starting to produce some interesting stuff. Well, we should mention that there is a choreography tool. There is. I mean, I guess I saw versions of it, which is pretty cool. You can kinda, at slices of time, control different parts at the high level, the movement of the robot. We hope to take that forward and make it more tuned to how the dance world wants to talk, wants to communicate, and get better performances.
Starting point is 01:26:53 I mean, we've done a lot, but there's still a lot possible. And I'd like to have performances where the robots are dancing with people. So right now, almost everything that we've done on dancing Is to a fixed time base so once you press go the robot does its thing and plays that thing It's not listening. It's not watching But I think it should do those things. I think I would love to see a professional ballerina Like alone in a room with a robot slowly teaching the robot a pressure ballerina, like a loner in a room with a robot, slowly teaching the robot.
Starting point is 01:27:25 Just actually the process of a clueless robot trying to figure out a small little piece of a dance. So it's not like, because right now Atlas and Spot have done like perfect dancing to a beat and so on. One, so, you know, to a degree. But like the learning process of interacting with a human would be incredible to watch. One of the cool things going on, you know that there's a class at Brown University called
Starting point is 01:27:52 Corio Robotics. Sydney Skybetter is a dancer, a choreographer, and he teamed up with Stephanie Tellax, who's a computer science professor, and they taught this class, and I think they have some graduate students helping teach it, where they have two spots and people come in. I think it's 50-50 of computer science people and dance people, and they program performances that are very interesting. I show some of them sometimes when I give a talk. And making that process of a human teaching the robot more efficient and more intuitive,
Starting point is 01:28:26 maybe language part movement. That'd be fascinating. That'd be really fascinating. Because I mean, one of the things I've kind of realized is humans communicate with movement a lot. It's not just language. There's a lot of this body language. There's so many intricate little things and Totally.
Starting point is 01:28:46 And like that, you know, to watch a human and spot communicate back and forth with movement I mean, there's just so many wonderful possibilities there. But it's also a challenge, you know, we get asked to have our robots perform with famous get asked to have our robots perform with famous dancers. And they can, you know, they have 200 degrees of freedom or something, right? Every little ripple and thing. And they have all this head and neck and shoulders and stuff. And the robots mostly don't have all that stuff.
Starting point is 01:29:18 And it's a daunting challenge to not look stupid, you know, physically stupid next to them. So we've pretty much avoided that kind of performance, but we'll get to it. I think even with the limited degrees of freedom, we could still have some sass and flavor and so on. You can figure out your own thing even if you can't. And we can reverse things like if you watch a human do robot animation, which is a dance style where you know You jerk around sort of and you pop you pop and pop and lock and all that stuff
Starting point is 01:29:50 I think the robots could show up to date the humans by you know doing unstable Oscillations and things that are faster than a person. So that's sort of on my you know my Plan, but we haven't quite gotten there yet. You mentioned about building teams and robotics teams and so on. How do you find great engineers? How do you hire great engineers? I think you even need to have an environment where interesting engineering, well, it's a chicken-necked. If you have an environment where interesting engineering is going on, then engineers want to work there. I think it took a long time to develop that at Boston Dynamics. In fact, when we started, although I had the experience of building things in the leg lab,
Starting point is 01:30:37 both at CMU and at MIT, we weren't that sophisticated of an engineering thing compared to what Boston Dynamics is now. But it was our ambition to do that. And Sarkos was another robot company. So I always thought of us as being this much on the computing side and this much on the hardware side, and they were like this. And then over the years, I think we achieved the same or better levels of engineering. Meanwhile, Sarkar's got acquired and then they went through all kinds of changes. I don't know exactly what their current status is, but so it took many years as part of the answer. I think you got to find people who love it. In the early days, we paid a little less, so we only got people who were doing it because
Starting point is 01:31:29 they really loved it. We also hired people who might not have professional degrees, people who were building bicycles and building kayaks. We have some people who come from that kind of the maker world. That's really important for the kind of work we do to have that be part of the mix. Whatever that is, whatever the magic ingredient that makes a great builder, maker,
Starting point is 01:31:53 that's the big part of it. People who repaired the cars or built or motorcycles or whatever in their garages when they were kids. There's a kind of like the robotics students, grad students and just roboticists that I know and hang out with. There's a kind of endless energy and like, there's just, there's just happy.
Starting point is 01:32:15 Like say, I compare it and other group of people that are like that are people that skydive professionally. There's just like excitement and general energy that I think probably has to do with the fact that they're just constantly, first of all, fail a lot. And then the joy of building a thing that you eventually works. Yeah, talking about being happy, there used to be a time when I was doing the machine shop work myself back in those JPL and Caltech days.
Starting point is 01:32:43 When if I came home smelling like the machine shop, cause it's an oily place, my wife would say, oh, you had a good day today, you had a good day, you could tell, but that's where I'd been. You've done something, yeah, you've actually built something, you've done something in the physical world. Yeah, and probably the videos help, right? The videos help show off what robotics is.
Starting point is 01:33:03 Oh, you know, at Boston Dynamics, it put us on the map. I remember interviewing some sales guy and he was from a company and he said, well, no one's ever heard of my company, but we have products, really good products. You guys, everybody knows who you are, but you don't have any products at all, which was true. And we thank YouTube for that. YouTube came, we caught the YouTube wave, and it had a huge impact on our company. I mean, it's a big impact not just on your company, but on robotics in general, helping people understand and inspire what is possible with robots. They inspire imagination, fear, and everything.
Starting point is 01:33:49 The full spectrum of human emotion was aroused, which is great for the entirety of humanity and also probably inspiring for young people that want to get into AI robotics. Let me ask you about some competitors. Sure. You've been complimentary of Elon and Tesla's work on Optimus Robot with their humanoid robot. What do you think of their efforts there with the humanoid robot? I really admire Elon as a technologist. I think that what he did with Tesla was just totally mind-boggling, that he could go from this totally niche area that less than 1% of anybody seemed to be interested to making it so that essentially every car company in the world is trying to do what he's done. So,
Starting point is 01:34:42 you got to give it to him. Then look at SpaceX. He's basically replaced NASA, if you could. That might be a little exaggeration, but not by much. So, you got to admire the guy and I wouldn't count him out for anything. I don't think Optimus today is where Atlas is, for instance. I don't know. It's a little hard to compare them to the other companies. I visited Figure. I think they're doing well and they have a good team. I visited Atronic and I think they have a good team and they're doing well. But Elon has a lot of resources. He has a lot of ambition. I'd like to take some credit for his ambition.
Starting point is 01:35:31 I think if I read between the lines, it's hard not to think that him seeing what Atlas is doing is a little bit of an inspiration. I hope so. Do you think Atlas and Optimus will hang out at some point? I would love to host that. Now that I'm not at Boston Dynamics, I'm not officially connected. I am on the board, but I'm not officially connected.
Starting point is 01:35:54 I would love to host a... Robot meetups. A wrote up meetup, yeah. Does the AI Institute work with spots and Atlas is focused on spots mostly right now. We have a bunch of different robots. We bought everything we could buy. So we have spots. I think we have a good size fleet of them. I don't know how many it is, but a good size fleet. We have a couple of animal robots. Animal is a company founded by Marco Hutter, even though he's not that involved anymore, but we have a couple of those.
Starting point is 01:36:25 We have a bunch of arms like Frank is and US robotics. Cause you know, even though we have ambitions to build stuff and we are starting to build stuff, day one getting off the ground, we just bought stuff. I love this robot playground you've built. You can come over and take a look at your, right? That's great. So it's like all these kinds of robots, legged, arms.
Starting point is 01:36:51 It doesn't feel that much like, well, there's some areas that feel like a playground, but it's not like they're all frolic together. Hey, again, maybe you'll arrange it, a robot meetup. But in general, what's your view on competition in this space for especially like humanoid and like robots? Are you are you excited by the competition or the friendly competition? I think that It doesn't you know, I don't think I don't think about competition that much
Starting point is 01:37:22 You know, I'm not a commercial guy. I think for many years, the many years I was at Boston Dynamics, we didn't think about competition. We were just doing our thing. There wasn't like there were products out there that we were competing with. Maybe there was some competition for DARPA funding, which we got a lot of, got very good at getting. But even there, in a couple of cases where we might have competed, we ended up just being the robot provider.
Starting point is 01:37:53 That is, for the Little Dog Program, we just made the robots. We didn't participate as developers except for developing the robot. In the DARPA Robotics Challenge, we did compete. We provided the robot. In the AI world now, now that we're working on cognitive stuff, it feels much more like a competition. The entry requirements in terms of computing hardware and the skills of the team are, and hiring talent, it's a much tougher place. So I think much more about competition now on the cognitive side. On the physical side, it doesn't feel like it's that much about competition yet. Obviously, with 10 humanoid companies out there, 10 or 12. I mean, there's probably others that I don't know about. They're definitely in competition,
Starting point is 01:38:48 will be in competition. How much room is there for a quadruped and especially a humanoid robot to become cheaper? So like cutting costs and like how low can you go? And how much of it is just mass production? Questions of Hyundai, how to produce versus engineering innovation, how to simplify? I think there's a huge way to go. I don't think we've seen the bottom of it or the bottom internals lower prices.
Starting point is 01:39:24 I think you should be totally optimistic that at Asimtot, things don't have to be anything like as expensive as they are now. Back to competition, I wanted to say one thing. I think in the quadruped space, having other people selling quadrupeds is a great thing for Boston Dynamics because the question, I believe the question in the user's minds is, which quadruped do I want? It's to quadruped do I want a quadruped can a quadruped do my job. It's much more like that which is a great place for it to be. Yeah then you just you know doing doing the things you normally do to make your product better and compete selling and all that stuff.
Starting point is 01:40:02 And that'll be the way it is with humanoids at some point. Well, there's a lot of humanoids and you're just not even, it's like iPhone versus Android and people just buying both and it's kind of just, yeah, you're not really. You're creating the category. Yeah, creating a category.
Starting point is 01:40:19 Or the category is happening. I mean, right now the use cases, you know, that's the key thing. Having realistic use cases that are money making in robotics is a big challenge. There's the warehouse use case. That's probably the only thing that makes anybody any money in robotics at this point. There's got to be a moment. There's old fashioned, I mean, there's fixed arms doing manufacturing. I don't want to say that they're not making money.
Starting point is 01:40:45 There's industrial robotics, yes. But there's got to be a moment when social robotics starts making real money, meaning like a spot type robot in the home. And there's tens of millions of them in the home. And they're like, you know, I don't know how many dogs there are in the United States as pets. Many. But this feels many. It feels like there's something we love about having an intelligent companion with us that remembers us, that's excited to see us, all that kind of stuff. But it's also true that the company's making those things.
Starting point is 01:41:15 There have been a lot of failures in recent times, right? There's that one year when I think three of them went under. So it's not that easy to do that, right? Getting performance, safety, and cost, all to be where they need to be at the same time is, that's hard. But also some of it is, like you said, you can have a product, but people might not be aware of it.
Starting point is 01:41:41 So also part of it is the videos or however you connect with the public, the culture and create the category. That make people realize this is the thing you want. Because from a, you know, there's a lot of negative perceptions you can have. Do you really want a system with a camera in your home walking around, right? If it's presented correctly and if there's like, right kind of boundaries around it, that you understand how it works and so on, that a lot of people would want to. And if they don't, that might be suspicious of it.
Starting point is 01:42:11 So that's important. Like we, while you smart phones and as a camera that's looking at us. Yeah, it has two or three or four. And it's listening. Isn't that very few people are, you know, suspicious about it. They kind of take it for granted and so on.
Starting point is 01:42:26 I think robots would be the same kind of way. I agree. So as you work on the cognitive aspect of these robots, do you think we'll ever get to human level or superhuman level intelligence? There's been a lot of conversations about this recently given the rapid development in large language models.
Starting point is 01:42:49 I think that intelligence is a lot of different things. And I think some things, computers are already smarter than people. And some things, they're not even close. And I think you'd need a menu of detailed categories to come up with that. But I also think that the conversation that seems to be happening about AGI puzzles me. So I ask you a question. Do you think there's anybody smarter than you in the world? Absolutely, yes. Does it, do you find that threatening? No.
Starting point is 01:43:27 So I don't understand even if computers were smarter than people, why we should assume that that's a threat, especially since they could easily be smarter but still available to us or under our control, which is basically how computers generally are. I think the fears that they would be 10x, 100x smarter and operating under different morals and ethical codes than humans like naturally do. And so almost become misaligned in unintended ways and therefore harm humans in ways we just can't predict. Even if we program them to do a thing, on the way of doing that thing, they would cause a lot of harm.
Starting point is 01:44:15 When they're a thousand times smarter than us, we won't be able to stop it or we won't be able to even see the harm as it's happening until it's too late. That kind of stuff. So you can construct all kinds of like possible trajectories of how the world ends because of super-intelligent systems. It's a little bit like that line in the Oppenheimer movie where they contemplate whether the first time they set off a reaction, all matter on Earth is going to go up. I don't remember what the verb they used was for the chain reaction. Yeah, I guess it's possible, but I personally don't think it's worth worrying about that. I think that the, you know, it's an opportunity, balancing opportunities and risk. I think if you take any technology,
Starting point is 01:45:11 there's opportunity and risk. And you know, it's easy to, I'll point at the car. They pollute and they, about what, 1.25 million people get killed every year around the world because of them. Despite that, I think they're a boon to humankind, very useful. Many of us love them. Those technical problems can be solved. I think they are becoming safer. I think they're becoming less polluting, at least some of them are. Every technology you can name has a story like that
Starting point is 01:45:47 in my opinion. What's the story behind the Hawaiian shirt? Is it a fashion statement, philosophical statement? Is it just a statement of rebellion? Engineering statement. It was born of me being a contrarian. Yes. Someone told me once that I was wearing one
Starting point is 01:46:08 when I only had one or two. And they said, oh, those things are so old fashioned, you can't wear that, Mark. And I stopped wearing them for about a week. And then I said, I'm not gonna let them tell me what to do. And so every day since, pretty much. So it's like a symbol. That was years ago, that was 20 years ago.
Starting point is 01:46:26 20 years. 15 years ago probably. Ah, that says something about your personality. That's great, because you're not. It took me a while to realize I was a contrarian, but you know, it can be a useful tool. Have you had people tell you about on the robotic side that like, I don't think you could do this,
Starting point is 01:46:43 the kind of negative motivation. I'd rather talk about this guy, when we were doing a lot of DARPA work, there was a Marine Ed Tovar who's still around, who his, what he would always say is when someone would say, oh, you can't do that, he'd say, why not? Yeah. And it's a great question. I ask all the time when I'm thinking, oh, that's going, we're not going to do that. And I say, why not? And I give him credit for opening my eyes to, to, to resisting that. So yeah, yeah. The Hawaiian shirt is almost like a symbol of why not. Okay, what advice would you give to young folks
Starting point is 01:47:27 that are trying to figure out what they wanna do with their life, how to have a life they can be proud of, they can have a career they can be proud of? When I was teaching at MIT, for a while, I had undergraduate advisees where people would have to meet with me once a semester or something. They frequently would ask what they should do. I think the advice I used to give was something like, well, if you had no constraints on you,
Starting point is 01:47:56 no resource constraints, no opportunity constraints, and no skill constraints, what could you imagine doing? I said, well, start there and see how close you can get. What's realistic for how close you can get. And the other version of that is, try and figure out what you want to do and do that. Because I don't think, a lot of people think that they're in a channel, right? And there's only limited opportunities, but it's usually wider than they think. Yeah, the opportunities really are limitless, but like at the same time, you want to pick a thing, right?
Starting point is 01:48:32 And it's the diligence. And really, really pursue it, right? Really pursue it. Because sometimes like the really special stuff happens after years of pursuit. Yeah. Oh, absolutely. It can take a while. I mean, you've been doing this for 40 plus years.
Starting point is 01:48:53 Some people think I'm in a rut, right? Why don't I do it? And in fact, some of the inspiration for the AI Institute is to say, okay, I've been working on locomotion for however many years it was, let's do something else. And it's a really fascinating and interesting challenge. And you're hoping to show it off also in the same way as just about to start showing some stuff off, yeah?
Starting point is 01:49:20 I hope we have a YouTube channel. I mean, one of the challenges is it's one thing to show athletic skills on YouTube. Showing cognitive function is a lot harder. And I haven't quite figured out yet how that's gonna work. There might be a way. There's a way. There's a way.
Starting point is 01:49:38 Why not? I also do think sucking at a task is also compelling. Like the incremental improvement, a robot being like really terrible at a task is also compelling. Like the incremental improvement, a robot being like really terrible at a task and then slowly becoming better, even in athletic intelligence, honestly, like learning to walk and falling
Starting point is 01:49:55 and slowly figuring that out. I think there's something extremely compelling about that. Like we like flaws, especially with the cognitive task. It's okay to be clumsy. It's okay to be clumsy. It's okay to be confused and a little silly and all that kind of stuff. It feels like in that space is where we can... There's charm.
Starting point is 01:50:14 There's charm. There's charm and there's something inspiring about a robot sucking and then becoming less terrible slowly. At a test. I think you're right. That kind of reveals something about ourselves. Ultimately that's what's one of the coolest things about robots is it's kind of a mirror about
Starting point is 01:50:35 what makes humans special. Just by watching a heart is just to make a robot do the things that humans do. You realize how special we are. What do you think is the meaning of this whole thing? Why are we here? Mark, do you ever ask about the big questions as you try to create these humanoid,
Starting point is 01:50:57 human-like intelligence systems? I don't know, I think you have to have fun while you're here. That's about all I know. It would be a waste waste not to, right? The ride is pretty short. So might as well have fun. Mark, I'm a huge fan of yours. It's a huge honor that you would talk with me. This is really amazing and your work for many decades has been amazing. I can't wait to see what you do at the AI Institute. I'm going to be waiting impatiently for the videos and the demos and the next robot meetup for maybe
Starting point is 01:51:32 Atlas and Optimus to hang out. I would love to do that. That would be fun. Thank you so much for talking to me. Thank you. It was fun talking to you. Thanks for listening to this conversation with Mark Reibert. To support this podcast, please check out our sponsors in the description. And now, let me leave you with some words from Arthur C. Clark. Whether we're based on carbon or on silicon makes no fundamental difference. We should each be treated with appropriate respect. Thank you for listening and hope to see you next time.

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