Jeremy Howard: The wonderful and terrifying implications of computers that can learn
傑瑞米.霍華德: 有學習能力的電腦帶來的美好但駭人影響
Jeremy Howard imagines how advanced machine learning can improve our lives. Full bio
Double-click the English transcript below to play the video.
to get a computer to do something new,
that haven't done it yourself,
你們可能沒做過程式設計這件事,
the computer to do
that you don't know how to do yourself,
to be a great challenge.
by this man, Arthur Samuel.
how to be better than you at checkers?
如何讓電腦比你還會下棋?
against itself thousands of times
and in fact, by 1962,
the Connecticut state champion.
the father of machine learning,
成為了機器學習之父,
learning practitioner.
machine learning practictioners.
機器學習實踐者的社群。
previously unsolved problems,
過去無法解決的問題,
hundreds of times.
I was able to find out
我發現
can do in the past, can do today,
過去和現在可以做到的事情,
machine learning commercially was Google.
商業成功案例是谷歌。
possible to find information
on machine learning.
commercial successes of machine learning.
有很多的商業成功例子,
products that you might like to buy,
你可能想買的商品,
who your friends might be
誰會是你的朋友
the power of machine learning.
機器學習這強大的功能。
learned how to do this from data
the two world champions at "Jeopardy,"
打敗兩屆世界冠軍。
and complex questions like this one.
from this city's national museum in 2003
(along with a lot of other stuff)"]
國家博物館消失了(連同其他物品)」
to see the first self-driving cars.
自行駕駛汽車的原因。
the difference between, say,
well, that's pretty important.
那顯得非常重要。
those programs by hand,
this is now possible.
over a million miles
這部汽車已經行駛一百萬英哩
don't know how to do ourselves,
I've seen of machine learning
called Geoffrey Hinton
automatic drug discovery.
is not just that they beat
不只打敗了
or the international academic community,
所研發的演算法,
in chemistry or biology or life sciences,
生物或生命科學的背景,
called deep learning.
叫做「深度學習」。
the success was covered
article a few weeks later.
被刊登在紐約時報頭版。
here on the left-hand side.
inspired by how the human brain works,
受到人類大腦啟發的演算法,
on what it can do.
computation time you give it,
運算時間,
showed in this article
result of deep learning
can listen and understand.
現在,最後一步是
to take in this process
of information from many Chinese speakers
收集大量的資訊
and converts it into Chinese language,
an hour or so of my own voice
so that it would sound like me.
聽起來像我的聲音。
a machine learning conference in China.
機器學習研討會。
at academic conferences
在學術會議上
at TEDx conferences, feel free.
TEDx 講座不拘泥形式。
was happening with deep learning.
was deep learning.
in the top right, deep learning,
也是出於深度學習,
was deep learning as well.
this extraordinary thing.
can seem to do almost anything,
似乎可以完成任何事情,
it had also learned to see.
Recognition Benchmark,
to recognize traffic signs like this one.
recognize the traffic signs
it was better than people,
better than people.
they had a deep learning algorithm
使用深度學習演算法
on 16,000 computers for a month,
about concepts such as people and cats
人或貓的概念
that humans learn.
by being told what they see,
what these things are.
who we saw earlier,
我們之前看到的人,
from one and a half million images
to a six percent error rate
圖像辨識的錯誤率
an extraordinarily good job of this,
真可以做到如此非凡的成就,
location in France in two hours,
法國每一個位置繪成地圖,
that they fed street view images
把街景圖像
to recognize and read street numbers.
來辨認和讀取街道號碼。
it would have taken before:
the Chinese Google, I guess,
to Baidu's deep learning system,
百度深度學習系統的圖片,
has understood what that picture is
系統可以理解這張圖片
have similar backgrounds,
也就是有相似的背景,
at the text of a web page.
really understand what they see
of images in real time.
now that computers can see?
是表示什麼意思呢?
that computers can see.
has done more than that.
with deep learning algorithms.
showing the red dot at the top
顯示上面的紅點
is expressing negative sentiment.
is near human performance
and what it is saying about those things.
been used to read Chinese,
Chinese speaker level.
out of Switzerland
or understand any Chinese.
in the world for this,
對完成這任務來說,
human understanding.
put together at my company
all this stuff together.
have no text attached,
these pictures
to the text that I'm writing.
understanding my sentences
它真的能理解我的句子。
something like this on Google,
and it will show you pictures,
而它會顯示圖片,
searching the webpage for the text.
understanding the images.
have only been able to do
can not only see but they can also read,
也能閱讀,
can understand what they hear.
I'm going to tell you they can write.
我要告訴你們電腦也能書寫。
using a deep learning algorithm yesterday.
所產生的文字。
out of Stanford generated.
所產生的文字。
to describe each of those pictures.
對圖片進行描述。
a man in a black shirt playing a guitar.
一個穿黑襯衫的男子彈吉他。
it's seen black before,
看過黑色,
this novel description of this picture.
performance here, but we're close.
不過很接近了。
the computer-generated caption
電腦的圖片說明
well past human performance
to very exciting opportunities.
讓它來引導到一個令人振奮的時機。
that they had discovered
宣佈他們發現了
make a prognosis of a cancer.
looking at tissues under magnification,
在放大鏡下觀察組織,
a machine learning-based system
一個以機器學習為基礎的系統
than human pathologists
for cancer sufferers.
were the predictions more accurate,
不但能更準確地預測,
that humans can understand.
that the cells around the cancer
the cancer cells themselves
had been taught for decades.
10 年來的說法相反。
they were systems developed
系統的開發人員
and machine learning experts,
和機器學習專家所組成,
we're now beyond that too.
我們也超越了這些。
identifying cancerous areas
can identify those areas more accurately,
as human pathologists,
using no medical expertise
來建構整套深度學習系統
no background in the field.
沒有專業背景的人完成。
about as accurately as humans can,
精確地分裂神經細胞,
with deep learning
background in medicine.
no previous background in medicine,
to start a new medical company,
that it ought to be possible
這是可行的
using just these data analytic techniques.
製作有效的藥物。
has been fantastic,
回應也挺不錯,
but from the medical community,
而且還有醫藥社群,
the middle part of the medical process
as much as possible,
what they're best at.
to generate a new medical diagnostic test
來創造一項新的醫學診斷測試
three minutes by cutting some pieces out.
壓縮成三分鐘。
creating a medical diagnostic test,
創造出來的醫學診斷測試,
a diagnostic test of car images,
一項汽車圖片的診斷測試,
we can all understand.
about 1.5 million car images,
的汽車圖片開始,
that can split them into the angle
把圖片分類
so I have to start from scratch.
我必需從零開始。
areas of structure in these images.
這些圖片的結構。
and the computer can now work together.
人和電腦可以合作
about areas of interest
關於感興趣的範圍
to try and use to improve its algorithm.
來改善電腦的演算法。
are in 16,000-dimensional space,
有 16,000 個立體空間,
rotating this through that space,
讓他們在這空間旋轉,
point out the areas that are interesting.
指出有興趣的地方。
successfully found areas,
the computer more and more
we're looking for.
areas of pathosis, for example,
病症的範圍,
potentially troublesome nodules.
潛在的腫瘤。
difficult for the algorithm.
是有些困難。
of the cars are all mixed up.
都混淆不清了。
as opposed to the backs,
跟背面有相反效果的文字,
that this is a type of group
這是一種
we skip over a little bit,
所以我們跳過,
machine learning algorithm
機器學習演算法
some of these pictures out,
刪除一些圖片,
how to understand some of these itself.
可以自己理解這些圖片。
of similar images,
entirely find just the fronts of cars.
完全找到正面的汽車。
can tell the computer,
人類可以告訴電腦,
a good job of that.
to separate out groups.
computer try to rotate this for a while,
電腦嘗試旋轉圖片一陣子,
and the right sides pictures
和右邊的圖片
the computer some hints,
給電腦一些提示,
a projection that separates out
as much as possible
ah, okay, it's been successful.
好,它已經完成了。
of thinking about these objects
想像這些目標
is being replaced by a computer,
something that used to take a team
在過去需要
花 7 年時間完成的事情
that takes 15 minutes
four or five iterations.
classified correctly.
有 62% 是正確分類。
can start to quite quickly
that there's no mistakes.
let the computer know about them.
讓電腦知道錯誤的地方。
for each of the different groups,
我們都使用這種程序來做,
an 80 percent success rate
在分辨 150 萬張的圖片時
that aren't classified correctly,
to 97 percent classification rates.
could allow us to fix a major problem,
解決一個重要的問題,
of medical expertise in the world.
that there's between a 10x and a 20x
in the developing world,
有 10 倍到 20 倍的短缺。
to fix that problem.
來處理這個問題。
enhance their efficiency
我們是否可以幫助提高效率
about the opportunities.
every area in blue on this map
are over 80 percent of employment.
computers have just learned how to do.
in the developed world
have just learned how to do.
They'll be replaced by other jobs.
他們將會被其他的職業取代。
more jobs for data scientists.
very long to build these things.
不需要花很久的時間去做這些事情。
were all built by the same guy.
it's all happened before,
以前都發生過,
of when new things come along
新事物出現的結果
grows at this gradual rate,
以這個速度逐漸成長,
in capability exponentially.
以指數的方式增長。
are still pretty dumb." Right?
computers will be off this chart.
電腦將會超越這張圖表。
about this capability right now.
in capability thanks to engines.
that after a while, things flattened out.
事情轉為平靜。
to generate power in all the situations,
產生動力,
from the Industrial Revolution,
it never settles down.
永遠不會停下來。
at intellectual activities,
to be better at intellectual capabilities,
去運作更好的智能活動,
never experienced before,
of what's possible is different.
as capital productivity has increased,
資本生產力一直在增長,
in fact even a little bit down.
事實上已有一點點下降。
having this discussion now.
about this situation,
they don't understand poetry,
也不了解詩,
of their time being paid to do,
得到報酬所做的事情,
social structures and economic structures
ABOUT THE SPEAKER
Jeremy Howard - Data scientistJeremy Howard imagines how advanced machine learning can improve our lives.
Why you should listen
Jeremy Howard is the CEO of Enlitic, an advanced machine learning company in San Francisco. Previously, he was the president and chief scientist at Kaggle, a community and competition platform of over 200,000 data scientists. Howard is a faculty member at Singularity University, where he teaches data science. He is also a Young Global Leader with the World Economic Forum, and spoke at the World Economic Forum Annual Meeting 2014 on "Jobs for the Machines."
Howard advised Khosla Ventures as their Data Strategist, identifying opportunities for investing in data-driven startups and mentoring portfolio companies to build data-driven businesses. He was the founding CEO of two successful Australian startups, FastMail and Optimal Decisions Group.
Jeremy Howard | Speaker | TED.com