Corpus ID: 121195332

State of the Art on : Deep Learning for Video Games AI Development

@inproceedings{Capo2018StateOT,
  title={State of the Art on : Deep Learning for Video Games AI Development},
  author={Emilio Capo},
  year={2018}
}
  • Emilio Capo
  • Published 2018
  • With the recent advancements in machine learning and, specifically, deep learning techniques, video games applications for AI research are becoming more and more popular, as they prove to be very useful testbeds for general AI algorithms evaluation [1]. At the same time, the need for a step forward in AI development, considering that the videogame industry has now reached an audience comparable to that of music and movies, is strongly perceived by both game developers and players. The former… CONTINUE READING
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