Role of Artificial Intelligence in Business Management across Various Sectors

International Journal of Emerging Research in Science, Engineering, and Management
Vol. 2, SI1 (2026), pp. 270278
Proceedings of Selected Papers from the
National Conference on Emerging Trends in Commerce and Management
NCETCM-2K26
2026-03-30 to 2026-03-31
Vijayawada, Andhra Pradesh, India
Organized by Andhra Loyola College, Vijayawada, India
eISSN: 3107-9075

This work is licensed under a Creative Commons Attribution 4.0 International License .

Role of Artificial Intelligence in Business Management across Various Sectors

1Md S Rahaman, 2Siva Naga Lakshmi Alluri, 2Chigurupati Keerthana

1Associate Professor, Dept. of Business Administration, PB Siddhartha College of Arts and Science, Vijayawada, India
2Assistant Professor, Dept. of Business Administration, PB Siddhartha College of and Science, Vijayawada, India

Abstract

Artificial Intelligence (AI) in Management is rapidly evolving and is significantly transforming the way businesses operate and make decisions. AI is highly effective in handling repetitive and data-driven tasks that are often time-consuming for managers. These tasks include scheduling, data entry, report generation, and basic customer service inquiries. By automating such activities, AI enables managers to allocate more time to strategic initiatives, creative problem-solving, and employee development. Furthermore, Artificial Intelligence plays a pivotal role in helping organizations achieve their objectives by optimizing processes, enhancing customer experiences, and unlocking new growth opportunities. It is fundamentally changing the way organizations address challenges and foster innovation. As AI technology continues to advance, its impact is expanding across various sectors, providing businesses with new strategies to improve efficiency and gain a competitive advantage. This research paper examines the role and implications of Artificial Intelligence in the management of operations across diverse sectors.

Keywords: Artificial Intelligence (AI), Business Management, Various Sectors, AI Technology, AI-Driven Business Transformation.

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DOI: 10.66710/ijersem.v2si1.34

Open Access • Peer Reviewed Article

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