A Comprehensive Study of Artificial Intelligence and Machine Learning Algorithms for Intelligent Decision-Making Systems in Modern Digital Environments

Authors

  • Edward Steven Andrew, Artificial Intelligence Research Scientist, France. Author

Keywords:

Artificial Intelligence, Machine Learning, Decision-Making, Algorithms, Intelligent Systems

Abstract

Artificial Intelligence (AI) and Machine Learning (ML) have become integral to intelligent decision-making in various digital environments. This paper provides a comprehensive study of major AI and ML algorithms, their applications, and impacts on real-world decision-making systems. The research highlights trends, challenges, and the effectiveness of different algorithms across diverse domains. Two diagrams illustrate algorithmic complexity and application impacts, while two tables summarize key algorithm features and application domains.

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Published

2025-12-16

How to Cite

Edward Steven Andrew,. (2025). A Comprehensive Study of Artificial Intelligence and Machine Learning Algorithms for Intelligent Decision-Making Systems in Modern Digital Environments. ISCSITR- INTERNATIONAL JOURNAL OF ARTIFICIAL INTELLIGENCE (ISCSITR-IJAI), 6(2), 76-80. https://iscsitr.in/index.php/ISCSITR-IJAI/article/view/ISCSITR-IJAI_2025_06_02_02