Abstract:
Deep Learning (DL), as a pivotal component of artificial intelligence, has emerged as a keystone technology in the Fourth Industrial Revolution (Industry 4.0), transforming various sectors including healthcare, visual recognition, and cyber security. This paper provides a comprehensive overview of DL, beginning with the historical context of artificial neural networks, leading to recent advancements and innovative techniques. This paper explore a structured taxonomy of DL methods, distinguishing between supervised, unsupervised, and hybrid approaches based on their applications in real-world scenarios. The ability of DL to generate highlevel data representations from extensive datasets enables its application across a broad spectrum of industries, facilitating intelligent decisionmaking processes. Despite its extensive utility, DL presents challenges, primarily due to its ?black-box? nature, which complicates the understanding of its internal workings and decision processes. This review not only outlines the current applications and effectiveness of DL models but also discusses significant challenges and potential research directions. Future research aimed at enhancing the interpretability and reliability of DL models could revolutionize DL applications, leading to more robust and insightful solutions. This paper serves as an essential reference for both academic research and practical implementations, guiding future innovations in the field of deep learning.
Page(s):
1-1
DOI:
DOI not available
Published:
Journal: Second International Conference on Computing Technologies, Tools and Applications (ICTAPP-24), June 4-6,2024 (Abstract Book), Volume: 0, Issue: 0, Year: 2024
Keywords:
artificial neural networks
,
Healthcare
,
Artificial Intelligence
,
Deep learning
,
Visual Recognition
,
Cybersecurity