Aprendizaje profundo: una nueva vía para convertir el dato en conocimiento

  1. José Antonio Lagares 1
  2. Norberto Díaz Díaz 1
  3. Carlos D. Barranco González 1
  1. 1 Universidad Pablo de Olavide
    info

    Universidad Pablo de Olavide

    Sevilla, España

    ROR https://ror.org/02z749649

Journal:
Economía industrial

ISSN: 0422-2784

Year of publication: 2022

Issue Title: Economía del dato

Issue: 423

Pages: 25-38

Type: Article

More publications in: Economía industrial

Abstract

Most of the traditional techniques within the field of Artificial Intelligence have a limited capacity in terms of the volume of data that can be processed, or their performance does not improve despite being able to count on voluminous data sets. Deep Learning is a new technique that, together with innovations in parallelization and Cloud Computing, overcomes these limitations. In this article, the most innovative current techniques within Deep Learning are collected, highlighting the capacity of this approach as an alternative to analyze, understand and convert data into knowledge

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