Deep learning: the Artificial Intelligence that dominates 21st century life

Authors

  • Dora Kaufman Pontifical Catholic University of São Paulo, Faculty of Exact Sciences and Technology, Postgraduate Program in Intelligence Technologies and Digital Design, São Paulo, São Paulo, Brazil.

DOI:

https://doi.org/10.23925/1984-3585.2018i17p44-58

Keywords:

Artificial Intelligence, Technologies, Data society

Abstract

Artificial Intelligence (AI) is present in our daily lives: Google's search
algorithms, Netflix and Spotify music and movie recommendations, social networks, the Waze, personal assistants, video games, surveillance and security systems, and more in a set of blessings that make life easier for the 21st century. There are negative impacts to be understood and equated. Multiplying protection initiatives with focus on the transparency of mathematical models, and the use of data. In parallel, AI technologies transform the economy (migration from financial capitalism to data capitalism), and business (at least, impacting cost and efficiency). These and other issues will be addressed in the article.

Author Biography

Dora Kaufman, Pontifical Catholic University of São Paulo, Faculty of Exact Sciences and Technology, Postgraduate Program in Intelligence Technologies and Digital Design, São Paulo, São Paulo, Brazil.

Postdoctoral student at TIDD/PUC-SP, postdoctoral fellow at COPPE-UFRJ, PhD ECA-USP with a period at Université Paris - Sorbonne IV. Visiting researcher and lecturer at the Computer Science Department, Courant Institute of Mathematical Sciences, NYU (2009, 2010), and at the Alexander von Humboldt Institute for Internet and Society, Berlin (2015). Researcher at Atopos ECA/USP (since 2011), participates in the Artificial Intelligence Study Group of the Institute for Advanced Studies at USP

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Published

2018-05-29