From Decision-Maker to Decision Architect: AI-Augmented Leadership in Complex Organisations
Authors
Department of Management, Infomage, Johannesburg, Gauteng (South Africa)
Article Information
DOI: 10.47772/IJRISS.2026.1014MG0057
Subject Category: Management
Volume/Issue: 10/14 | Page No: 720-735
Publication Timeline
Submitted: 2026-03-02
Accepted: 2026-03-07
Published: 2026-03-25
Abstract
Artificial intelligence (AI) is increasingly embedded within organisational decision-making processes, transforming how information is generated, analysed, and interpreted. While traditional leadership theories assume that strategic authority rests primarily on human cognition and managerial judgment, the growing integration of intelligent systems creates hybrid environments in which organisational decisions emerge through interactions between human expertise and machine intelligence. This shift challenges conventional understandings of leadership authority and raises important questions about how executives govern AI-enabled decision systems.
Keywords
Artificial intelligence, leadership, decision-making, distributed cognition
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References
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