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(Kiana) #1
Ready for Robots?

July/August 2019 193

A MIND OF ITS OWN?
Ironically, even though McCarthy and
Minsky’s term entered the lexicon, the
most promising  technique today,
called “deep learning,” is based on a
statistical approach that was anathema
to them. From the 1950s to the 1990s,
most o€  was about programming
computers with hand-coded rules. The
statistical approach, by contrast, uses
data to make inferences based on
probabilities. In other words,  went
from trying to describe all the features
o€ a cat so that a computer could recog-
nize one in an image to feeding tens o€
thousands o€ cat images to an algo-
rithm so the computer can †gure out the
relevant patterns for itself. This “ma-
chine learning” technique dates back to
the 1950s but worked only in limited
cases then. Today’s much more elabo-
rate version—deep learning—works
exceptionally well, owing to staggering

Wiener later backed away from his
most apocalyptic warnings. But today,
as  has begun to invade almost every
aspect oŠ life in developed societies,
many thinkers have returned to the big
questions Wiener started asking more
than hal€ a century ago. In Possible Minds,
25 contributors, including a number o€
the most prominent names in the †eld,
explore some o€ the eye-opening possi-
bilities and profound dilemmas that 
presents. The book provides a fascinat-
ing map o€ ’s likely future and an
overview o€ the diŒcult choices that will
shape it. How societies decide to weigh
caution against the speed o€ innovation,
accuracy against explainability, and
privacy against performance will deter-
mine what kind o€ relationships human
beings develop with intelligent ma-
chines. The stakes are high, and there
will be no way forward in  without
confronting those tradeo‘s.

DENIS
BALIBOUSE

/ REUTERS

Thought experiment: an AI robot at a summit in Geneva, Switzerland, June 2017

23_Cukier_Blues.indd 193 5/20/19 3:37 PM

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