Erik Brynjolfsson: The key to growth? Race with the machines

152,189 views ・ 2013-04-23

TED


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Translator: Joseph Geni Reviewer: Morton Bast
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Growth is not dead.
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(Applause)
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Let's start the story 120 years ago,
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when American factories began to electrify their operations,
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igniting the Second Industrial Revolution.
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The amazing thing is
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that productivity did not increase in those factories
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for 30 years. Thirty years.
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That's long enough for a generation of managers to retire.
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You see, the first wave of managers
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simply replaced their steam engines with electric motors,
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but they didn't redesign the factories to take advantage
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of electricity's flexibility.
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It fell to the next generation to invent new work processes,
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and then productivity soared,
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often doubling or even tripling in those factories.
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Electricity is an example of a general purpose technology,
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like the steam engine before it.
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General purpose technologies drive most economic growth,
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because they unleash cascades of complementary innovations,
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like lightbulbs and, yes, factory redesign.
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Is there a general purpose technology of our era?
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Sure. It's the computer.
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But technology alone is not enough.
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Technology is not destiny.
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We shape our destiny,
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and just as the earlier generations of managers
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needed to redesign their factories,
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we're going to need to reinvent our organizations
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and even our whole economic system.
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We're not doing as well at that job as we should be.
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As we'll see in a moment,
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productivity is actually doing all right,
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but it has become decoupled from jobs,
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and the income of the typical worker is stagnating.
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These troubles are sometimes misdiagnosed
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as the end of innovation,
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but they are actually the growing pains
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of what Andrew McAfee and I call the new machine age.
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Let's look at some data.
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So here's GDP per person in America.
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There's some bumps along the way, but the big story
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is you could practically fit a ruler to it.
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This is a log scale, so what looks like steady growth
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is actually an acceleration in real terms.
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And here's productivity.
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You can see a little bit of a slowdown there in the mid-'70s,
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but it matches up pretty well with the Second Industrial Revolution,
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when factories were learning how to electrify their operations.
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After a lag, productivity accelerated again.
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So maybe "history doesn't repeat itself,
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but sometimes it rhymes."
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Today, productivity is at an all-time high,
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and despite the Great Recession,
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it grew faster in the 2000s than it did in the 1990s,
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the roaring 1990s, and that was faster than the '70s or '80s.
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It's growing faster than it did during the Second Industrial Revolution.
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And that's just the United States.
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The global news is even better.
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Worldwide incomes have grown at a faster rate
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in the past decade than ever in history.
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If anything, all these numbers actually understate our progress,
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because the new machine age
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is more about knowledge creation
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than just physical production.
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It's mind not matter, brain not brawn,
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ideas not things.
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That creates a problem for standard metrics,
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because we're getting more and more stuff for free,
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like Wikipedia, Google, Skype,
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and if they post it on the web, even this TED Talk.
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Now getting stuff for free is a good thing, right?
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Sure, of course it is.
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But that's not how economists measure GDP.
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Zero price means zero weight in the GDP statistics.
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According to the numbers, the music industry
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is half the size that it was 10 years ago,
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but I'm listening to more and better music than ever.
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You know, I bet you are too.
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In total, my research estimates
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that the GDP numbers miss over 300 billion dollars per year
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in free goods and services on the Internet.
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Now let's look to the future.
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There are some super smart people
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who are arguing that we've reached the end of growth,
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but to understand the future of growth,
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we need to make predictions
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about the underlying drivers of growth.
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I'm optimistic, because the new machine age
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is digital, exponential and combinatorial.
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When goods are digital, they can be replicated
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with perfect quality at nearly zero cost,
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and they can be delivered almost instantaneously.
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Welcome to the economics of abundance.
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But there's a subtler benefit to the digitization of the world.
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Measurement is the lifeblood of science and progress.
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In the age of big data,
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we can measure the world in ways we never could before.
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Secondly, the new machine age is exponential.
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Computers get better faster than anything else ever.
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A child's Playstation today is more powerful
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than a military supercomputer from 1996.
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But our brains are wired for a linear world.
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As a result, exponential trends take us by surprise.
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I used to teach my students that there are some things,
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you know, computers just aren't good at,
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like driving a car through traffic.
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(Laughter)
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That's right, here's Andy and me grinning like madmen
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because we just rode down Route 101
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in, yes, a driverless car.
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Thirdly, the new machine age is combinatorial.
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The stagnationist view is that ideas get used up,
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like low-hanging fruit,
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but the reality is that each innovation
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creates building blocks for even more innovations.
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Here's an example. In just a matter of a few weeks,
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an undergraduate student of mine
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built an app that ultimately reached 1.3 million users.
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He was able to do that so easily
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because he built it on top of Facebook,
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and Facebook was built on top of the web,
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and that was built on top of the Internet,
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and so on and so forth.
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Now individually, digital, exponential and combinatorial
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would each be game-changers.
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Put them together, and we're seeing a wave
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of astonishing breakthroughs,
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like robots that do factory work or run as fast as a cheetah
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or leap tall buildings in a single bound.
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You know, robots are even revolutionizing
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cat transportation.
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(Laughter)
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But perhaps the most important invention,
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the most important invention is machine learning.
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Consider one project: IBM's Watson.
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These little dots here,
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those are all the champions on the quiz show "Jeopardy."
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At first, Watson wasn't very good,
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but it improved at a rate faster than any human could,
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and shortly after Dave Ferrucci showed this chart
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to my class at MIT,
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Watson beat the world "Jeopardy" champion.
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At age seven, Watson is still kind of in its childhood.
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Recently, its teachers let it surf the Internet unsupervised.
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The next day, it started answering questions with profanities.
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Damn. (Laughter)
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But you know, Watson is growing up fast.
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It's being tested for jobs in call centers, and it's getting them.
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It's applying for legal, banking and medical jobs,
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and getting some of them.
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Isn't it ironic that at the very moment
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we are building intelligent machines,
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perhaps the most important invention in human history,
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some people are arguing that innovation is stagnating?
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Like the first two industrial revolutions,
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the full implications of the new machine age
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are going to take at least a century to fully play out,
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but they are staggering.
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So does that mean we have nothing to worry about?
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No. Technology is not destiny.
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Productivity is at an all time high,
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but fewer people now have jobs.
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We have created more wealth in the past decade than ever,
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but for a majority of Americans, their income has fallen.
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This is the great decoupling
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of productivity from employment,
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of wealth from work.
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You know, it's not surprising that millions of people
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have become disillusioned by the great decoupling,
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but like too many others,
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they misunderstand its basic causes.
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Technology is racing ahead,
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but it's leaving more and more people behind.
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Today, we can take a routine job,
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codify it in a set of machine-readable instructions,
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and then replicate it a million times.
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You know, I recently overheard a conversation
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that epitomizes these new economics.
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This guy says, "Nah, I don't use H&R Block anymore.
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TurboTax does everything that my tax preparer did,
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but it's faster, cheaper and more accurate."
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How can a skilled worker
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compete with a $39 piece of software?
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She can't.
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Today, millions of Americans do have faster,
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cheaper, more accurate tax preparation,
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and the founders of Intuit
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have done very well for themselves.
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But 17 percent of tax preparers no longer have jobs.
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That is a microcosm of what's happening,
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not just in software and services, but in media and music,
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in finance and manufacturing, in retailing and trade --
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in short, in every industry.
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People are racing against the machine,
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and many of them are losing that race.
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What can we do to create shared prosperity?
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The answer is not to try to slow down technology.
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Instead of racing against the machine,
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we need to learn to race with the machine.
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That is our grand challenge.
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The new machine age
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can be dated to a day 15 years ago
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when Garry Kasparov, the world chess champion,
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played Deep Blue, a supercomputer.
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The machine won that day,
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and today, a chess program running on a cell phone
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can beat a human grandmaster.
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It got so bad that, when he was asked
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what strategy he would use against a computer,
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Jan Donner, the Dutch grandmaster, replied,
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"I'd bring a hammer."
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(Laughter)
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But today a computer is no longer the world chess champion.
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Neither is a human,
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because Kasparov organized a freestyle tournament
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where teams of humans and computers
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could work together,
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and the winning team had no grandmaster,
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and it had no supercomputer.
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What they had was better teamwork,
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and they showed that a team of humans and computers,
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working together, could beat any computer
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or any human working alone.
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Racing with the machine
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beats racing against the machine.
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Technology is not destiny.
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We shape our destiny.
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Thank you.
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(Applause)
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