The wonderful and terrifying implications of computers that can learn | Jeremy Howard

597,885 views ・ 2014-12-16

TED


Please double-click on the English subtitles below to play the video.

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It used to be that if you wanted to get a computer to do something new,
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you would have to program it.
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Now, programming, for those of you here that haven't done it yourself,
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requires laying out in excruciating detail
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every single step that you want the computer to do
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in order to achieve your goal.
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Now, if you want to do something that you don't know how to do yourself,
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then this is going to be a great challenge.
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So this was the challenge faced by this man, Arthur Samuel.
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In 1956, he wanted to get this computer
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to be able to beat him at checkers.
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How can you write a program,
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lay out in excruciating detail, how to be better than you at checkers?
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So he came up with an idea:
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he had the computer play against itself thousands of times
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and learn how to play checkers.
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And indeed it worked, and in fact, by 1962,
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this computer had beaten the Connecticut state champion.
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So Arthur Samuel was the father of machine learning,
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and I have a great debt to him,
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because I am a machine learning practitioner.
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I was the president of Kaggle,
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a community of over 200,000 machine learning practictioners.
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Kaggle puts up competitions
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to try and get them to solve previously unsolved problems,
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and it's been successful hundreds of times.
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So from this vantage point, I was able to find out
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a lot about what machine learning can do in the past, can do today,
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and what it could do in the future.
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Perhaps the first big success of machine learning commercially was Google.
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Google showed that it is possible to find information
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by using a computer algorithm,
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and this algorithm is based on machine learning.
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Since that time, there have been many commercial successes of machine learning.
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Companies like Amazon and Netflix
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use machine learning to suggest products that you might like to buy,
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movies that you might like to watch.
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Sometimes, it's almost creepy.
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Companies like LinkedIn and Facebook
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sometimes will tell you about who your friends might be
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and you have no idea how it did it,
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and this is because it's using the power of machine learning.
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These are algorithms that have learned how to do this from data
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rather than being programmed by hand.
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This is also how IBM was successful
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in getting Watson to beat the two world champions at "Jeopardy,"
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answering incredibly subtle and complex questions like this one.
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["The ancient 'Lion of Nimrud' went missing from this city's national museum in 2003 (along with a lot of other stuff)"]
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This is also why we are now able to see the first self-driving cars.
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If you want to be able to tell the difference between, say,
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a tree and a pedestrian, well, that's pretty important.
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We don't know how to write those programs by hand,
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but with machine learning, this is now possible.
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And in fact, this car has driven over a million miles
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without any accidents on regular roads.
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So we now know that computers can learn,
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and computers can learn to do things
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that we actually sometimes don't know how to do ourselves,
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or maybe can do them better than us.
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One of the most amazing examples I've seen of machine learning
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happened on a project that I ran at Kaggle
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where a team run by a guy called Geoffrey Hinton
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from the University of Toronto
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won a competition for automatic drug discovery.
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Now, what was extraordinary here is not just that they beat
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all of the algorithms developed by Merck or the international academic community,
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but nobody on the team had any background in chemistry or biology or life sciences,
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and they did it in two weeks.
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How did they do this?
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They used an extraordinary algorithm called deep learning.
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So important was this that in fact the success was covered
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in The New York Times in a front page article a few weeks later.
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This is Geoffrey Hinton here on the left-hand side.
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Deep learning is an algorithm inspired by how the human brain works,
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and as a result it's an algorithm
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which has no theoretical limitations on what it can do.
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The more data you give it and the more computation time you give it,
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the better it gets.
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The New York Times also showed in this article
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another extraordinary result of deep learning
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which I'm going to show you now.
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It shows that computers can listen and understand.
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(Video) Richard Rashid: Now, the last step
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that I want to be able to take in this process
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is to actually speak to you in Chinese.
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Now the key thing there is,
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we've been able to take a large amount of information from many Chinese speakers
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and produce a text-to-speech system
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that takes Chinese text and converts it into Chinese language,
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and then we've taken an hour or so of my own voice
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and we've used that to modulate
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the standard text-to-speech system so that it would sound like me.
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Again, the result's not perfect.
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There are in fact quite a few errors.
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(In Chinese)
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(Applause)
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There's much work to be done in this area.
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(In Chinese)
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(Applause)
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Jeremy Howard: Well, that was at a machine learning conference in China.
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It's not often, actually, at academic conferences
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that you do hear spontaneous applause,
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although of course sometimes at TEDx conferences, feel free.
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Everything you saw there was happening with deep learning.
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(Applause) Thank you.
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The transcription in English was deep learning.
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The translation to Chinese and the text in the top right, deep learning,
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and the construction of the voice was deep learning as well.
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So deep learning is this extraordinary thing.
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It's a single algorithm that can seem to do almost anything,
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and I discovered that a year earlier, it had also learned to see.
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In this obscure competition from Germany
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called the German Traffic Sign Recognition Benchmark,
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deep learning had learned to recognize traffic signs like this one.
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Not only could it recognize the traffic signs
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better than any other algorithm,
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the leaderboard actually showed it was better than people,
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about twice as good as people.
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So by 2011, we had the first example
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of computers that can see better than people.
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Since that time, a lot has happened.
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In 2012, Google announced that they had a deep learning algorithm
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watch YouTube videos
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and crunched the data on 16,000 computers for a month,
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and the computer independently learned about concepts such as people and cats
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just by watching the videos.
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This is much like the way that humans learn.
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Humans don't learn by being told what they see,
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but by learning for themselves what these things are.
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Also in 2012, Geoffrey Hinton, who we saw earlier,
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won the very popular ImageNet competition,
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looking to try to figure out from one and a half million images
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what they're pictures of.
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As of 2014, we're now down to a six percent error rate
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in image recognition.
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This is better than people, again.
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So machines really are doing an extraordinarily good job of this,
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and it is now being used in industry.
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For example, Google announced last year
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that they had mapped every single location in France in two hours,
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and the way they did it was that they fed street view images
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into a deep learning algorithm to recognize and read street numbers.
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Imagine how long it would have taken before:
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dozens of people, many years.
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This is also happening in China.
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Baidu is kind of the Chinese Google, I guess,
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and what you see here in the top left
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is an example of a picture that I uploaded to Baidu's deep learning system,
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and underneath you can see that the system has understood what that picture is
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and found similar images.
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The similar images actually have similar backgrounds,
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similar directions of the faces,
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even some with their tongue out.
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This is not clearly looking at the text of a web page.
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All I uploaded was an image.
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So we now have computers which really understand what they see
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and can therefore search databases
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of hundreds of millions of images in real time.
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So what does it mean now that computers can see?
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Well, it's not just that computers can see.
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In fact, deep learning has done more than that.
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Complex, nuanced sentences like this one
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are now understandable with deep learning algorithms.
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As you can see here,
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this Stanford-based system showing the red dot at the top
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has figured out that this sentence is expressing negative sentiment.
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Deep learning now in fact is near human performance
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at understanding what sentences are about and what it is saying about those things.
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Also, deep learning has been used to read Chinese,
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again at about native Chinese speaker level.
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This algorithm developed out of Switzerland
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by people, none of whom speak or understand any Chinese.
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As I say, using deep learning
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is about the best system in the world for this,
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even compared to native human understanding.
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This is a system that we put together at my company
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which shows putting all this stuff together.
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These are pictures which have no text attached,
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and as I'm typing in here sentences,
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in real time it's understanding these pictures
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and figuring out what they're about
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and finding pictures that are similar to the text that I'm writing.
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So you can see, it's actually understanding my sentences
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and actually understanding these pictures.
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I know that you've seen something like this on Google,
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where you can type in things and it will show you pictures,
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but actually what it's doing is it's searching the webpage for the text.
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This is very different from actually understanding the images.
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This is something that computers have only been able to do
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for the first time in the last few months.
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So we can see now that computers can not only see but they can also read,
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and, of course, we've shown that they can understand what they hear.
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Perhaps not surprising now that I'm going to tell you they can write.
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Here is some text that I generated using a deep learning algorithm yesterday.
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And here is some text that an algorithm out of Stanford generated.
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Each of these sentences was generated
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by a deep learning algorithm to describe each of those pictures.
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This algorithm before has never seen a man in a black shirt playing a guitar.
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It's seen a man before, it's seen black before,
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it's seen a guitar before,
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but it has independently generated this novel description of this picture.
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We're still not quite at human performance here, but we're close.
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In tests, humans prefer the computer-generated caption
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one out of four times.
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Now this system is now only two weeks old,
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so probably within the next year,
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the computer algorithm will be well past human performance
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at the rate things are going.
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So computers can also write.
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So we put all this together and it leads to very exciting opportunities.
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For example, in medicine,
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a team in Boston announced that they had discovered
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dozens of new clinically relevant features
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of tumors which help doctors make a prognosis of a cancer.
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Very similarly, in Stanford,
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a group there announced that, looking at tissues under magnification,
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they've developed a machine learning-based system
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which in fact is better than human pathologists
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at predicting survival rates for cancer sufferers.
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In both of these cases, not only were the predictions more accurate,
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but they generated new insightful science.
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In the radiology case,
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they were new clinical indicators that humans can understand.
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In this pathology case,
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the computer system actually discovered that the cells around the cancer
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are as important as the cancer cells themselves
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in making a diagnosis.
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This is the opposite of what pathologists had been taught for decades.
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In each of those two cases, they were systems developed
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by a combination of medical experts and machine learning experts,
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but as of last year, we're now beyond that too.
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This is an example of identifying cancerous areas
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of human tissue under a microscope.
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The system being shown here can identify those areas more accurately,
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or about as accurately, as human pathologists,
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but was built entirely with deep learning using no medical expertise
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by people who have no background in the field.
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Similarly, here, this neuron segmentation.
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We can now segment neurons about as accurately as humans can,
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but this system was developed with deep learning
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using people with no previous background in medicine.
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So myself, as somebody with no previous background in medicine,
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I seem to be entirely well qualified to start a new medical company,
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which I did.
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I was kind of terrified of doing it,
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but the theory seemed to suggest that it ought to be possible
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to do very useful medicine using just these data analytic techniques.
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And thankfully, the feedback has been fantastic,
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not just from the media but from the medical community,
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who have been very supportive.
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The theory is that we can take the middle part of the medical process
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and turn that into data analysis as much as possible,
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leaving doctors to do what they're best at.
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I want to give you an example.
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It now takes us about 15 minutes to generate a new medical diagnostic test
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and I'll show you that in real time now,
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but I've compressed it down to three minutes by cutting some pieces out.
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Rather than showing you creating a medical diagnostic test,
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I'm going to show you a diagnostic test of car images,
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because that's something we can all understand.
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So here we're starting with about 1.5 million car images,
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and I want to create something that can split them into the angle
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of the photo that's being taken.
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So these images are entirely unlabeled, so I have to start from scratch.
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With our deep learning algorithm,
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it can automatically identify areas of structure in these images.
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So the nice thing is that the human and the computer can now work together.
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So the human, as you can see here,
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is telling the computer about areas of interest
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which it wants the computer then to try and use to improve its algorithm.
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Now, these deep learning systems actually are in 16,000-dimensional space,
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so you can see here the computer rotating this through that space,
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trying to find new areas of structure.
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And when it does so successfully,
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the human who is driving it can then point out the areas that are interesting.
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So here, the computer has successfully found areas,
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for example, angles.
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So as we go through this process,
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we're gradually telling the computer more and more
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about the kinds of structures we're looking for.
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You can imagine in a diagnostic test
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this would be a pathologist identifying areas of pathosis, for example,
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or a radiologist indicating potentially troublesome nodules.
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And sometimes it can be difficult for the algorithm.
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In this case, it got kind of confused.
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The fronts and the backs of the cars are all mixed up.
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So here we have to be a bit more careful,
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manually selecting these fronts as opposed to the backs,
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then telling the computer that this is a type of group
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that we're interested in.
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So we do that for a while, we skip over a little bit,
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and then we train the machine learning algorithm
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based on these couple of hundred things,
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and we hope that it's gotten a lot better.
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You can see, it's now started to fade some of these pictures out,
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showing us that it already is recognizing how to understand some of these itself.
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We can then use this concept of similar images,
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and using similar images, you can now see,
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the computer at this point is able to entirely find just the fronts of cars.
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So at this point, the human can tell the computer,
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okay, yes, you've done a good job of that.
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Sometimes, of course, even at this point
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it's still difficult to separate out groups.
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In this case, even after we let the computer try to rotate this for a while,
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we still find that the left sides and the right sides pictures
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are all mixed up together.
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So we can again give the computer some hints,
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and we say, okay, try and find a projection that separates out
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the left sides and the right sides as much as possible
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using this deep learning algorithm.
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And giving it that hint -- ah, okay, it's been successful.
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It's managed to find a way of thinking about these objects
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that's separated out these together.
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So you get the idea here.
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This is a case not where the human is being replaced by a computer,
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but where they're working together.
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What we're doing here is we're replacing something that used to take a team
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of five or six people about seven years
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and replacing it with something that takes 15 minutes
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for one person acting alone.
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So this process takes about four or five iterations.
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You can see we now have 62 percent
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of our 1.5 million images classified correctly.
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And at this point, we can start to quite quickly
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grab whole big sections,
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check through them to make sure that there's no mistakes.
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Where there are mistakes, we can let the computer know about them.
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And using this kind of process for each of the different groups,
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we are now up to an 80 percent success rate
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in classifying the 1.5 million images.
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And at this point, it's just a case
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of finding the small number that aren't classified correctly,
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and trying to understand why.
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And using that approach,
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by 15 minutes we get to 97 percent classification rates.
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So this kind of technique could allow us to fix a major problem,
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which is that there's a lack of medical expertise in the world.
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The World Economic Forum says that there's between a 10x and a 20x
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shortage of physicians in the developing world,
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and it would take about 300 years
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to train enough people to fix that problem.
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So imagine if we can help enhance their efficiency
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using these deep learning approaches?
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So I'm very excited about the opportunities.
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I'm also concerned about the problems.
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The problem here is that every area in blue on this map
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is somewhere where services are over 80 percent of employment.
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What are services?
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These are services.
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These are also the exact things that computers have just learned how to do.
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So 80 percent of the world's employment in the developed world
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is stuff that computers have just learned how to do.
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What does that mean?
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Well, it'll be fine. They'll be replaced by other jobs.
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For example, there will be more jobs for data scientists.
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Well, not really.
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It doesn't take data scientists very long to build these things.
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For example, these four algorithms were all built by the same guy.
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So if you think, oh, it's all happened before,
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we've seen the results in the past of when new things come along
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and they get replaced by new jobs,
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what are these new jobs going to be?
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It's very hard for us to estimate this,
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because human performance grows at this gradual rate,
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but we now have a system, deep learning,
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that we know actually grows in capability exponentially.
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And we're here.
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So currently, we see the things around us
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and we say, "Oh, computers are still pretty dumb." Right?
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But in five years' time, computers will be off this chart.
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So we need to be starting to think about this capability right now.
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We have seen this once before, of course.
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In the Industrial Revolution,
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we saw a step change in capability thanks to engines.
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The thing is, though, that after a while, things flattened out.
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There was social disruption,
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but once engines were used to generate power in all the situations,
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things really settled down.
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The Machine Learning Revolution
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is going to be very different from the Industrial Revolution,
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because the Machine Learning Revolution, it never settles down.
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The better computers get at intellectual activities,
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the more they can build better computers to be better at intellectual capabilities,
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so this is going to be a kind of change
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that the world has actually never experienced before,
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so your previous understanding of what's possible is different.
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This is already impacting us.
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In the last 25 years, as capital productivity has increased,
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labor productivity has been flat, in fact even a little bit down.
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So I want us to start having this discussion now.
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I know that when I often tell people about this situation,
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people can be quite dismissive.
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Well, computers can't really think,
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they don't emote, they don't understand poetry,
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we don't really understand how they work.
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So what?
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Computers right now can do the things
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that humans spend most of their time being paid to do,
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so now's the time to start thinking
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about how we're going to adjust our social structures and economic structures
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to be aware of this new reality.
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Thank you.
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(Applause)
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