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Peer Reviewed Article

Vol. 2 (2015)

Data Science: The Sexiest Job in this Century

Submitted
16 February 2015
Published
30-04-2015

Abstract

Data science is the study of huge amounts of data in order to uncover insights that may be used to assist companies in making strategic decisions. There are several routes to a job in data science; the majority, but not all, entail a little math, a little science, and a great deal of interest in the subject matter of data. New data scientists must be inquisitive, critical, and persuasive in their reasoning. The research focuses on why data science is regarded as the sexiest job in the twenty-first century, as seen by the high compensation paid to qualified people.

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