Enhancing Managerial Decision-Making through AI: Opportunities, Challenges, and Operational Impact (Systematic Literature Review)
DOI:
https://doi.org/10.58192/ebismen.v4i2.3395Keywords:
Systematic Literature Review, Artificial Intelligence, Decision-MakingAbstract
Artificial Intelligence (AI) has become an essential tool in the world of management for decision-making. This article examines the ways in which AI can be used to improve the quality and speed of decision-making, and how AI can improve the operational efficiency of companies. In addition, this article also examines the challenges and opportunities that companies face in adopting AI.
In the rapidly evolving digital era, AI has become an essential component of modern business strategies. Today's managers are often faced with the challenge of analyzing very large and complex volumes of data. To make good and timely decisions, AI offers a potential solution with fast and precise data analysis capabilities.
The use of AI in decision-making involves machine learning algorithms and models to efficiently process and analyze large amounts of data. This helps managers gain deeper and more accurate insights, enabling more effective decision-making.
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