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GWEN IFILL: Have you ever worried you might lose your job to a robot? I have.
Hari Sreenivasan finds it could well happen with advances in artificial intelligence, or A.I., transforming the work force.
That’s the latest report in our series on invention and innovation, Breakthroughs.
MAN: Oh, all in?
HARI SREENIVASAN: In a closely watched brains vs. artificial intelligence poker1 match held in Pittsburgh earlier this month, humans pulled off a slim win over a computer program called Claudico.
MAN: All right. Good job.
MAN: Good game, guys. Good game.
MAN: Good game.
HARI SREENIVASAN: Tuomas Sandholm, a computer scientist at Carnegie Mellon University, created the algorithms that run Claudico’s A.I.
TUOMAS SANDHOLM, Carnegie Mellon University: Those algorithms figure out how you should act strategically, how do you avoid or deal with humans trying to deceive you, and how do you deceive humans?
HARI SREENIVASAN: Sandholm predicts Claudico will be able to beat its human opponents within one to five years, much to the chagrin3 of Bjorn Li, the leading poker player in this tournament.
BJORN LI: When that happens, poker will pretty much be dead.
HARI SREENIVASAN: But putting pro2 poker players out of work is not what Sandholm focuses all his time on. There are other things that Claudico can already do better than humans.
TUOMAS SANDHOLM: In my lab, we have developed an algorithm for solving the matching problem for the nationwide kidney exchange for 60 percent of the transplant centers in the U.S. And there, twice a week, our algorithms make the transplantation plan for the whole country without any manual intervention4. When there is scarcity5 of organs, the A.I. is making those decisions in an optimal6 way.
HARI SREENIVASAN: Matching the right kidney to the right patient is one example of an algorithmic artificial intelligence. But there are much larger demonstrations7 hitting the road, quite literally8.
Daimler has developed a prototype dubbed9 the Freightliner Inspiration Truck that’s being test-driven across Nevada. The hope is that computer-driven trucks can reduce the number of accidents. There are currently 5,000 fatalities10 a year involving trucks. Drivers would function more like pilots, overseeing computerized systems.
But it begs the question: What jobs will survive in a new economy driven by automation?
Remember Ken11 Jennings, the “Jeopardy” game show champion who lost to IBM’s Watson in 2011? He says the writing is on the wall. Here he is in a TEDx talk.
KEN JENNINGS: And I remember standing12 there behind the podium, as I could hear that little insectoid thumb. And you could hear that little tick, tick, tick, tick, tick, tick.
KEN JENNINGS: And I remember thinking, you know, this is it. I felt obsolete13. I felt like a Detroit factory worker of the ’80s seeing a robot that could now do his job on the assembly line. And it was frigging demoralizing.
HARI SREENIVASAN: It’s not just quiz show contestants14 that are at risk. As more and more jobs are automated15, Jennings’ experience could be a harbinger of things to come for American workers.
That’s the argument made in a new book, “Rise of the Robots: Technology and the Threat of a Jobless Future,” by Martin Ford16.
MARTIN FORD, Author, “Rise of the Robots”: Going forward, we may see automation kind of unfold in a top-heavy pattern, where a lot of the best jobs are the ones to get impacted. Lawyers, pharmacists, certain areas of medicine like pathology and radiology, any kind of white-collar job where you are sitting at a computer at a desk, well, the people who you might call office drones, those are going to be very susceptible17 to this.
HARI SREENIVASAN: And there could be major disruptions to the U.S. economy, says Daphne Koller. She’s an A.I. scientist, and also president of the massive online learning company Coursera.
DAPHNE KOLLER, Coursera: We are already starting to see jobs that were thought of as intelligent being outsourced to computers.
So, for example, a large part of a paralegal’s job, which is hunting down the relevant references for a particular problem, is something that you would have thought requires intelligence. And now there are pretty good software systems that do not 100 percent of a paralegal’s job, but 80 to 90 percent.
HARI SREENIVASAN: Will artificial intelligence software do to the paralegal what the tractor did to the farmer?
DAPHNE KOLLER: It is quite likely that that will happen. And I think that there will be entire job categories that will go away.
HARI SREENIVASAN: We humans have always been resilient. With each industrial revolution, we have adapted, creating new jobs with new technologies.
DAPHNE KOLLER: The optimistic perspective is that this will happen here, and that the jobs that will be created will by nature be higher and more cognitively18 interesting jobs that are beyond the spectrum19 of what an artificial intelligence program can do.
HARI SREENIVASAN: Leaving the less interesting jobs to robotic helpers like Botlr, an automated bellhop who cruises the halls of this Aloft Hotel. Is that such a bad thing?
Stuart Russell, who directs the A.I. lab at the University of California at Berkeley, doesn’t think so.
STUART RUSSELL, University of California, Berkeley: Some people think that, inevitably20, every robot that does any task is a bad thing for the human race, because it could be taking a job away.
But that isn’t necessarily true. You can also think of the robot as making a person more productive and enabling people to do things that are currently economically infeasible. But a person plus a robot or a fleet of robots could do things that would be really useful.
HARI SREENIVASAN: A perhaps simple example, cleaning up graffiti.
STUART RUSSELL: In many, many cities, the graffiti is just left because it’s too expensive. But if I had a team of robots that I could take around the city with me and point them to what needed to be cleaned up, I could get 10 times as much done. And there will be positions for graffiti-cleaning supervisors21, which didn’t exist before.
HARI SREENIVASAN: Graffiti-cleaning supervising robots might exist in the future, but our economy is already evolving. There are plenty of jobs that didn’t exist 10 years ago that are now in high demand in fields like digital marketing22 and data analysis.
In fact, according to McKinsey & Company, the United States faces a shortage of data analysts23. Almost 190,000 people are needed to analyze24 and understand big data. But will those jobs ultimately be filled by people or by deep learning machines?
Deep learning is a new type of A.I. that relies on neural25 networks. They’re computer programs modeled after the human brain and nervous system.
MAN: Hey, guys. How’s the training page looking?
HARI SREENIVASAN: At the Palo Alto office of MetaMind, engineers are using the technology to help computers see by quickly identifying images and placing them in categories.
Richard Socher is co-founder and CTO. He says the technology will aid humans, not replace them.
RICHARD SOCHER, MetaMind: If you can bring the intelligence of the smartest people in a field, instill it in an algorithm with deep learning, you could really help a lot of people.
HARI SREENIVASAN: One example, he says, is in the field of medicine.
RICHARD SOCHER: If the best doctors in the world train an algorithm to find various different problems in C.T. scans or in X-rays, mammograms, for instance, you could build an algorithm that is almost as good as the best doctors in the world.
A human can only look at so many mammograms in their lifetime. An algorithm could look at millions and millions, and eventually find subtle things that may have not even been that obvious to the human eye.
HARI SREENIVASAN: So, how will society adapt to a computer intelligence that can do work which, until now, only humans could?
DAPHNE KOLLER: What people have going for them that computers as of yet don’t is the incredible adaptability27 of the human mind, the ability to learn new skills, the ability to really adapt to unexpected situations.
And so what we really need to do is to help people become even better at that.
HARI SREENIVASAN: Just like in a poker game, we don’t know what the outcome will be. We humans are raising the stakes as we continue to drive advances in A.I. technology. So, it will be up to us to stay at the table.
For the PBS NewsHour, I’m Hari Sreenivasan.
JUDY WOODRUFF: And you can watch more stories from our Thinking Machines series on our Web site, PBS.org/NewsHour.
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1 poker | |
n.扑克;vt.烙制 | |
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2 pro | |
n.赞成,赞成的意见,赞成者 | |
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3 chagrin | |
n.懊恼;气愤;委屈 | |
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4 intervention | |
n.介入,干涉,干预 | |
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5 scarcity | |
n.缺乏,不足,萧条 | |
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6 optimal | |
adj.最适宜的;最理想的;最令人满意的 | |
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7 demonstrations | |
证明( demonstration的名词复数 ); 表明; 表达; 游行示威 | |
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8 literally | |
adv.照字面意义,逐字地;确实 | |
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9 dubbed | |
v.给…起绰号( dub的过去式和过去分词 );把…称为;配音;复制 | |
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10 fatalities | |
n.恶性事故( fatality的名词复数 );死亡;致命性;命运 | |
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11 ken | |
n.视野,知识领域 | |
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12 standing | |
n.持续,地位;adj.永久的,不动的,直立的,不流动的 | |
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13 obsolete | |
adj.已废弃的,过时的 | |
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14 contestants | |
n.竞争者,参赛者( contestant的名词复数 ) | |
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15 automated | |
a.自动化的 | |
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16 Ford | |
n.浅滩,水浅可涉处;v.涉水,涉过 | |
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17 susceptible | |
adj.过敏的,敏感的;易动感情的,易受感动的 | |
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18 cognitively | |
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19 spectrum | |
n.谱,光谱,频谱;范围,幅度,系列 | |
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20 inevitably | |
adv.不可避免地;必然发生地 | |
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21 supervisors | |
n.监督者,管理者( supervisor的名词复数 ) | |
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22 marketing | |
n.行销,在市场的买卖,买东西 | |
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23 analysts | |
分析家,化验员( analyst的名词复数 ) | |
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24 analyze | |
vt.分析,解析 (=analyse) | |
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25 neural | |
adj.神经的,神经系统的 | |
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26 nuance | |
n.(意义、意见、颜色)细微差别 | |
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27 adaptability | |
n.适应性 | |
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