Artificial
intelligence, Big Data could power a new war on poverty by Elisabeth A Mason
We ought to consider their potential to work to society's advantage by
When it comes to artificial
intelligence and jobs, the prognostications are grim. The conventional wisdom
is that A.I. might soon put millions of people out of work — that it stands
poised to do to clerical and white collar workers over the next two decades
what mechanisation did to factory workers over the past two. And that is to say
nothing of the truckers and taxi drivers who will find themselves unemployed or
underemployed as self-driving cars take over our roads.
But it’s time we start thinking about
A.I.’s potential benefits for society as well as its drawbacks. The big-data
and A.I. revolutions could also help fight poverty and promote economic
stability. Poverty, of course, is a multifaceted phenomenon. But the condition
of poverty often entails one or more of these realities: a lack of income
(joblessness); a lack of preparedness (education); and a dependency on
government services (welfare). A.I. can address all three.
First, even as A.I. threatens to put
people out of work, it can simultaneously be used to match them to good
middle-class jobs that are going unfilled. This is precisely the kind of
matching problem at which A.I. excels. Likewise, A.I. can predict where the job
openings of tomorrow will lie, and which skills and training will be needed for
them.
Historically we have tended to shy
away from this kind of social planning and job matching, perhaps because it
smacks to us of a command economy. No one, however, is suggesting that the
government should force workers to train for and accept particular jobs. The
point is that we now have the tools to take the guesswork out of which jobs are
available and which skills workers need to fill them.
Second, we can bring what is known as
differentiated education — based on the idea that students master skills in
different ways and at different speeds — to every student in the country. A
2013 study by the National Institutes of Health found that nearly 40 per cent
of medical students held a strong preference for one mode of learning: Some
were listeners; others were visual learners; still others learned best by
doing.
Our school system effectively assumes
precisely the opposite. We bundle students into a room, use the same method of
instruction and hope for the best. A.I. can improve this state of affairs. A.I.
“tutors” can home in on and correct for each student’s weaknesses, adapt
coursework to his or her learning style and keep the student engaged. Today’s
dominant type of A.I., also known as machine learning, permits computer
programs to become more accurate — to learn, if you will — as they absorb data
and correlate it with known examples from other data sets.
Third, a concerted effort to drag
education and job training and matching into the 21st century ought to remove
the reliance of a substantial portion of the population on government programs
designed to assist struggling Americans. With 21st-century technology, we could
plausibly reduce the use of government assistance services to levels where they
serve the function for which they were originally intended.
Big data sets can now be harnessed to
better predict which programs help certain people at a given time and to
quickly assess whether programs are having the desired effect. As for the
poisonous effect of ideology on the debate over public assistance: Big data
promises something closer to an unbiased, ideology-free evaluation of the
effectiveness of these social programs. We could come closer to the vision of a
meritocratic, technocratic society that politicians from both parties at state
and local levels — those closest to the practical problems their constituents
face — have begun to embrace.
Source | Business Standard | 5th January 2018
Regards!
Librarian
Rizvi
Institute of Management
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