2.5

CiteScore

8.8

Global Impact Factor

A Brief Review on Artificial Intelligence Acts


Paper ID: EIJTEM_2025_12_3_75-82

Author's Name: Dr. Shakti Pandey , Dr. Savya Sachi

Volume: 12

Issue: 3

Year: 2025

Page No: 75-82

Abstract:

Research on artificial intelligence in the last two decades has greatly improved perfor- mance of both manufacturing and service systems. Currently, there is a dire need for an article that presents a holistic literature survey of worldwide, theoretical frameworks and practical experiences in the field of artificial intelligence. This paper reports the state-of-the-art on artificial intelligence in an integrated, concise, and elegantly distilled manner to show the experiences in the field. In particular, this paper provides a broad review of recent developments within the field of artificial intelligence (AI) and its applications. The work is targeted at new entrants to the artificial intelligence field.

Keywords: AI, Neural Network, Business Efficiency, Genetic Algorithms, Fuzzy Logic.

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