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Generative AI and Empirical Research Methods in Operations Management
Journal article   Peer reviewed

Generative AI and Empirical Research Methods in Operations Management

Timofey Shalpegin, Tyson R. Browning, Ajay Kumar, Guangzhi Shang, Jason Thatcher, Jan C. Fransoo, Matthias Holweg and Benn Lawson
Journal of Operations Management, Vol.71(5), pp.578-587
01/07/2025

Abstract

Artificial Intelligence or Cybernetics Production or Operations Management
Generative Artificial Intelligence (Gen-AI) is arguably the fastest-adopted technology in history (Mariani and Dwivedi 2024). Like past transformative technologies—such as computers and the Internet—Gen-AI brings new opportunities and challenges to research. However, its distinctive features may result in an adoption pattern and impact that differ from those of earlier technologies. Anthony et al. (2023) offered a novel perspective on studying AI. Traditionally, technologies are viewed either as tools to improve performance or as mediums to enhance collaboration; however, AI can be seen as a counterpart or an agent interacting with human agents (c.f. Bendoly et al. 2024; Angelopoulos et al. 2023). Along these lines, the popular press has already labeled Gen-AI models as a “superhuman research assistant” in the research process (The Economist 2023). With the formation of such hybrid teams in research, it is more critical than ever to define the roles of team members.
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6 Social Sciences
6.185 Communication
6.185.2797 AI Ethics
Web of Science research areas
Management
Operations Research & Management Science
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