Deep Learning Applications and Their Worth: A Short Review

Authors

  • Maad M. Mijwil Computer Techniques Engineering Department, Baghdad College of Economic Sciences University, Baghdad, Iraq https://orcid.org/0000-0002-2884-2504
  • Dhamyaa Salim Mutar Business Administration Department, Baghdad College of Economic Sciences, University Baghdad, Iraq
  • Enas Sh. Mahmood Electrical Technique Engineering, Al-Mamoon University College, Baghdad, Iraq
  • Murat Gök Department of Computer Engineering, Yalova University, Yalova, Turkey
  • Süleyman Uzun Department of Computer Engineering, Faculty of Technology, Sakarya University of Applied Sciences, Sakarya, Turkey
  • Ruchi Doshi Department of Computer Science and Engineering, Universidad Azteca, Chalco, Mexico

DOI:

https://doi.org/10.24203/ajas.v10i5.7078

Keywords:

Deep learning, Machine Learning, Applications, Artificial intelligence, Analysis

Abstract

Deep learning has become a favoured trend in many applications serving humanity in the past few years. Since deep learning seeks useful investigation and can learn and train huge amounts of unlabelled data, deep learning has been applied in many fields including the medical field. In this article, the most noteworthy applications of deep learning are presented shortly and positively, they are image recognition, automatic speech recognition, natural language processing, drug discovery and toxicology, customer relationship management, recommendation systems and bioinformatics. The report concluded that these applications have a significant and vital role in all areas of life.

Author Biography

Maad M. Mijwil, Computer Techniques Engineering Department, Baghdad College of Economic Sciences University, Baghdad, Iraq

Maad M. Mijwil received B.Sc. degree in Software Engineering from Software Engineering Department at Baghdad College of Economics Sciences University, Iraq in 2008/2009 and M.Sc. degree in Wireless sensor network of computer science from University of Baghdad, Iraq in 2015. Currently he is working Assistant Lecturer at Baghdad College of Economics Sciences University.

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Published

2022-11-04

How to Cite

Mijwil, M. M., Mutar, D. S. ., Mahmood, E. S. ., Gök, M. ., Uzun, S. ., & Doshi, R. (2022). Deep Learning Applications and Their Worth: A Short Review. Asian Journal of Applied Sciences, 10(5). https://doi.org/10.24203/ajas.v10i5.7078