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Human resource management in the age of generative artificial intelligence: Perspectives and research directions on ChatGPT
685
Zitationen
23
Autoren
2023
Jahr
Abstract
Abstract ChatGPT and its variants that use generative artificial intelligence (AI) models have rapidly become a focal point in academic and media discussions about their potential benefits and drawbacks across various sectors of the economy, democracy, society, and environment. It remains unclear whether these technologies result in job displacement or creation, or if they merely shift human labour by generating new, potentially trivial or practically irrelevant, information and decisions. According to the CEO of ChatGPT, the potential impact of this new family of AI technology could be as big as “the printing press”, with significant implications for employment, stakeholder relationships, business models, and academic research, and its full consequences are largely undiscovered and uncertain. The introduction of more advanced and potent generative AI tools in the AI market, following the launch of ChatGPT, has ramped up the “AI arms race”, creating continuing uncertainty for workers, expanding their business applications, while heightening risks related to well‐being, bias, misinformation, context insensitivity, privacy issues, ethical dilemmas, and security. Given these developments, this perspectives editorial offers a collection of perspectives and research pathways to extend HRM scholarship in the realm of generative AI. In doing so, the discussion synthesizes the literature on AI and generative AI, connecting it to various aspects of HRM processes, practices, relationships, and outcomes, thereby contributing to shaping the future of HRM research.
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Autoren
- Pawan Budhwar
- Soumyadeb Chowdhury
- Geoffrey Wood
- Herman Aguinis
- Greg J. Bamber
- Jose R. Beltran
- Paul Boselie
- Fang Lee Cooke
- Stephanie Decker
- Angelo S. DeNisi
- Prasanta Kumar Dey
- David Guest
- Andrew J. Knoblich
- Ashish Malik
- Jaap Paauwe
- Savvas Papagiannidis
- Charmi Patel
- Vijay Pereira
- Shuang Ren
- Steven G. Rogelberg
- Mark N. K. Saunders
- Rosalie L. Tung
- Arup Varma
Institutionen
- Aston University(GB)
- TBS Education(FR)
- Western University(CA)
- Trinity College Dublin(IE)
- University of Bath(GB)
- Cranfield University(GB)
- George Washington University(US)
- Rutgers, The State University of New Jersey(US)
- Tilburg University(NL)
- Monash University(AU)
- Monash Institute of Medical Research(AU)
- Utrecht University(NL)
- Birmingham City University(GB)
- University of Birmingham(GB)
- Tulane University(US)
- King's College London(GB)
- King's College School(GB)
- University of North Carolina at Charlotte(US)
- Hunter Water(AU)
- Newcastle University(GB)
- University of Reading(GB)
- NEOMA Business School(FR)
- Queen's University Belfast(GB)
- University College Birmingham(GB)
- Simon Fraser University(CA)
- Loyola University Chicago(US)