The incredible inventions of intuitive AI | Maurice Conti

5,573,255 views ・ 2017-02-28

TED


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Translator: Leslie Gauthier Reviewer: Camille Martínez
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How many of you are creatives,
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designers, engineers, entrepreneurs, artists,
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or maybe you just have a really big imagination?
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Show of hands? (Cheers)
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That's most of you.
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I have some news for us creatives.
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Over the course of the next 20 years,
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more will change around the way we do our work
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than has happened in the last 2,000.
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In fact, I think we're at the dawn of a new age in human history.
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Now, there have been four major historical eras defined by the way we work.
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The Hunter-Gatherer Age lasted several million years.
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And then the Agricultural Age lasted several thousand years.
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The Industrial Age lasted a couple of centuries.
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And now the Information Age has lasted just a few decades.
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And now today, we're on the cusp of our next great era as a species.
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Welcome to the Augmented Age.
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In this new era, your natural human capabilities are going to be augmented
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by computational systems that help you think,
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robotic systems that help you make,
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and a digital nervous system
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that connects you to the world far beyond your natural senses.
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Let's start with cognitive augmentation.
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How many of you are augmented cyborgs?
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(Laughter)
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I would actually argue that we're already augmented.
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Imagine you're at a party,
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and somebody asks you a question that you don't know the answer to.
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If you have one of these, in a few seconds, you can know the answer.
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But this is just a primitive beginning.
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Even Siri is just a passive tool.
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In fact, for the last three-and-a-half million years,
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the tools that we've had have been completely passive.
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They do exactly what we tell them and nothing more.
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Our very first tool only cut where we struck it.
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The chisel only carves where the artist points it.
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And even our most advanced tools do nothing without our explicit direction.
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In fact, to date, and this is something that frustrates me,
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we've always been limited
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by this need to manually push our wills into our tools --
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like, manual, literally using our hands,
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even with computers.
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But I'm more like Scotty in "Star Trek."
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(Laughter)
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I want to have a conversation with a computer.
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I want to say, "Computer, let's design a car,"
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and the computer shows me a car.
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And I say, "No, more fast-looking, and less German,"
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and bang, the computer shows me an option.
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(Laughter)
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That conversation might be a little ways off,
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probably less than many of us think,
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but right now,
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we're working on it.
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Tools are making this leap from being passive to being generative.
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Generative design tools use a computer and algorithms
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to synthesize geometry
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to come up with new designs all by themselves.
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All it needs are your goals and your constraints.
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I'll give you an example.
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In the case of this aerial drone chassis,
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all you would need to do is tell it something like,
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it has four propellers,
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you want it to be as lightweight as possible,
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and you need it to be aerodynamically efficient.
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Then what the computer does is it explores the entire solution space:
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every single possibility that solves and meets your criteria --
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millions of them.
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It takes big computers to do this.
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But it comes back to us with designs
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that we, by ourselves, never could've imagined.
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And the computer's coming up with this stuff all by itself --
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no one ever drew anything,
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and it started completely from scratch.
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And by the way, it's no accident
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that the drone body looks just like the pelvis of a flying squirrel.
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(Laughter)
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It's because the algorithms are designed to work
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the same way evolution does.
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What's exciting is we're starting to see this technology
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out in the real world.
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We've been working with Airbus for a couple of years
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on this concept plane for the future.
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It's a ways out still.
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But just recently we used a generative-design AI
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to come up with this.
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This is a 3D-printed cabin partition that's been designed by a computer.
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It's stronger than the original yet half the weight,
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and it will be flying in the Airbus A320 later this year.
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So computers can now generate;
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they can come up with their own solutions to our well-defined problems.
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But they're not intuitive.
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They still have to start from scratch every single time,
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and that's because they never learn.
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Unlike Maggie.
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(Laughter)
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Maggie's actually smarter than our most advanced design tools.
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What do I mean by that?
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If her owner picks up that leash,
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Maggie knows with a fair degree of certainty
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it's time to go for a walk.
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And how did she learn?
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Well, every time the owner picked up the leash, they went for a walk.
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And Maggie did three things:
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she had to pay attention,
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she had to remember what happened
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and she had to retain and create a pattern in her mind.
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Interestingly, that's exactly what
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computer scientists have been trying to get AIs to do
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for the last 60 or so years.
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Back in 1952,
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they built this computer that could play Tic-Tac-Toe.
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Big deal.
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Then 45 years later, in 1997,
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Deep Blue beats Kasparov at chess.
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2011, Watson beats these two humans at Jeopardy,
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which is much harder for a computer to play than chess is.
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In fact, rather than working from predefined recipes,
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Watson had to use reasoning to overcome his human opponents.
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And then a couple of weeks ago,
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DeepMind's AlphaGo beats the world's best human at Go,
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which is the most difficult game that we have.
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In fact, in Go, there are more possible moves
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than there are atoms in the universe.
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So in order to win,
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what AlphaGo had to do was develop intuition.
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And in fact, at some points, AlphaGo's programmers didn't understand
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why AlphaGo was doing what it was doing.
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And things are moving really fast.
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I mean, consider -- in the space of a human lifetime,
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computers have gone from a child's game
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to what's recognized as the pinnacle of strategic thought.
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What's basically happening
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is computers are going from being like Spock
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to being a lot more like Kirk.
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(Laughter)
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Right? From pure logic to intuition.
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Would you cross this bridge?
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Most of you are saying, "Oh, hell no!"
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(Laughter)
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And you arrived at that decision in a split second.
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You just sort of knew that bridge was unsafe.
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And that's exactly the kind of intuition
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that our deep-learning systems are starting to develop right now.
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Very soon, you'll literally be able
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to show something you've made, you've designed,
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to a computer,
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and it will look at it and say,
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"Sorry, homie, that'll never work. You have to try again."
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Or you could ask it if people are going to like your next song,
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or your next flavor of ice cream.
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Or, much more importantly,
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you could work with a computer to solve a problem
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that we've never faced before.
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For instance, climate change.
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We're not doing a very good job on our own,
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we could certainly use all the help we can get.
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That's what I'm talking about,
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technology amplifying our cognitive abilities
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so we can imagine and design things that were simply out of our reach
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as plain old un-augmented humans.
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So what about making all of this crazy new stuff
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that we're going to invent and design?
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I think the era of human augmentation is as much about the physical world
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as it is about the virtual, intellectual realm.
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How will technology augment us?
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In the physical world, robotic systems.
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OK, there's certainly a fear
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that robots are going to take jobs away from humans,
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and that is true in certain sectors.
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But I'm much more interested in this idea
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that humans and robots working together are going to augment each other,
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and start to inhabit a new space.
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This is our applied research lab in San Francisco,
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where one of our areas of focus is advanced robotics,
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specifically, human-robot collaboration.
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And this is Bishop, one of our robots.
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As an experiment, we set it up
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to help a person working in construction doing repetitive tasks --
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tasks like cutting out holes for outlets or light switches in drywall.
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(Laughter)
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So, Bishop's human partner can tell what to do in plain English
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and with simple gestures,
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kind of like talking to a dog,
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and then Bishop executes on those instructions
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with perfect precision.
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We're using the human for what the human is good at:
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awareness, perception and decision making.
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And we're using the robot for what it's good at:
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precision and repetitiveness.
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Here's another cool project that Bishop worked on.
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The goal of this project, which we called the HIVE,
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was to prototype the experience of humans, computers and robots
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all working together to solve a highly complex design problem.
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The humans acted as labor.
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They cruised around the construction site, they manipulated the bamboo --
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which, by the way, because it's a non-isomorphic material,
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is super hard for robots to deal with.
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But then the robots did this fiber winding,
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which was almost impossible for a human to do.
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And then we had an AI that was controlling everything.
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It was telling the humans what to do, telling the robots what to do
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and keeping track of thousands of individual components.
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What's interesting is,
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building this pavilion was simply not possible
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without human, robot and AI augmenting each other.
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OK, I'll share one more project. This one's a little bit crazy.
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We're working with Amsterdam-based artist Joris Laarman and his team at MX3D
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to generatively design and robotically print
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the world's first autonomously manufactured bridge.
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So, Joris and an AI are designing this thing right now, as we speak,
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in Amsterdam.
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And when they're done, we're going to hit "Go,"
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and robots will start 3D printing in stainless steel,
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and then they're going to keep printing, without human intervention,
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until the bridge is finished.
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So, as computers are going to augment our ability
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to imagine and design new stuff,
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robotic systems are going to help us build and make things
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that we've never been able to make before.
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But what about our ability to sense and control these things?
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What about a nervous system for the things that we make?
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Our nervous system, the human nervous system,
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tells us everything that's going on around us.
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But the nervous system of the things we make is rudimentary at best.
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For instance, a car doesn't tell the city's public works department
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that it just hit a pothole at the corner of Broadway and Morrison.
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A building doesn't tell its designers
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whether or not the people inside like being there,
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and the toy manufacturer doesn't know
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if a toy is actually being played with --
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how and where and whether or not it's any fun.
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Look, I'm sure that the designers imagined this lifestyle for Barbie
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when they designed her.
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(Laughter)
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But what if it turns out that Barbie's actually really lonely?
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(Laughter)
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If the designers had known
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what was really happening in the real world
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with their designs -- the road, the building, Barbie --
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they could've used that knowledge to create an experience
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that was better for the user.
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What's missing is a nervous system
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connecting us to all of the things that we design, make and use.
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What if all of you had that kind of information flowing to you
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from the things you create in the real world?
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With all of the stuff we make,
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we spend a tremendous amount of money and energy --
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in fact, last year, about two trillion dollars --
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convincing people to buy the things we've made.
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But if you had this connection to the things that you design and create
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after they're out in the real world,
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after they've been sold or launched or whatever,
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we could actually change that,
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and go from making people want our stuff,
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to just making stuff that people want in the first place.
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The good news is, we're working on digital nervous systems
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that connect us to the things we design.
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We're working on one project
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with a couple of guys down in Los Angeles called the Bandito Brothers
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and their team.
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And one of the things these guys do is build insane cars
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that do absolutely insane things.
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These guys are crazy --
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(Laughter)
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in the best way.
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And what we're doing with them
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is taking a traditional race-car chassis
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and giving it a nervous system.
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So we instrumented it with dozens of sensors,
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put a world-class driver behind the wheel,
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took it out to the desert and drove the hell out of it for a week.
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And the car's nervous system captured everything
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that was happening to the car.
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We captured four billion data points;
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all of the forces that it was subjected to.
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And then we did something crazy.
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We took all of that data,
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and plugged it into a generative-design AI we call "Dreamcatcher."
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So what do get when you give a design tool a nervous system,
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and you ask it to build you the ultimate car chassis?
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You get this.
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This is something that a human could never have designed.
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Except a human did design this,
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but it was a human that was augmented by a generative-design AI,
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a digital nervous system
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and robots that can actually fabricate something like this.
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So if this is the future, the Augmented Age,
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and we're going to be augmented cognitively, physically and perceptually,
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what will that look like?
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What is this wonderland going to be like?
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I think we're going to see a world
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where we're moving from things that are fabricated
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to things that are farmed.
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Where we're moving from things that are constructed
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to that which is grown.
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We're going to move from being isolated
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to being connected.
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And we'll move away from extraction
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to embrace aggregation.
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I also think we'll shift from craving obedience from our things
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to valuing autonomy.
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Thanks to our augmented capabilities,
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our world is going to change dramatically.
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We're going to have a world with more variety, more connectedness,
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more dynamism, more complexity,
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more adaptability and, of course,
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more beauty.
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The shape of things to come
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will be unlike anything we've ever seen before.
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Why?
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Because what will be shaping those things is this new partnership
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between technology, nature and humanity.
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That, to me, is a future well worth looking forward to.
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Thank you all so much.
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(Applause)
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About this website

This site will introduce you to YouTube videos that are useful for learning English. You will see English lessons taught by top-notch teachers from around the world. Double-click on the English subtitles displayed on each video page to play the video from there. The subtitles scroll in sync with the video playback. If you have any comments or requests, please contact us using this contact form.

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