Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI

Abstract While the integration of generative AI into employees’ workflows is increasingly prevalent in organizations, little is known about its implications for employees’ organizational behavior. This study applies the Conservation of Resources theory to examine how generative AI adoption affects e...

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Published in:Humanities & Social Sciences Communications
Main Authors: Yanyan Liu, Fan Sheng, Ruyue Liu
Format: Article
Language:English
Published: Springer Nature 2025-08-01
Online Access:https://doi.org/10.1057/s41599-025-05656-4
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author Yanyan Liu
Fan Sheng
Ruyue Liu
author_facet Yanyan Liu
Fan Sheng
Ruyue Liu
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container_title Humanities & Social Sciences Communications
description Abstract While the integration of generative AI into employees’ workflows is increasingly prevalent in organizations, little is known about its implications for employees’ organizational behavior. This study applies the Conservation of Resources theory to examine how generative AI adoption affects employee outcomes—specifically voice quality, cyberloafing, and cheating behaviors—through the sequential mediating roles of job crafting and career commitment, while also considering the moderating effect of liking of AI. Data collected from 291 pairs of participants across two waves in Chinese enterprises reveal that generative AI adoption positively influences job crafting, expressed through three dimensions: seeking resources, seeking challenges, and optimizing demands. These dimensions individually mediate the positive relationship between generative AI adoption and career commitment, which in turn shapes employee outcomes. Notably, liking of AI amplifies the positive effects of seeking resources and optimizing demands on career commitment, with this effect being more pronounced among employees with higher liking of AI. However, this moderation does not hold for seeking challenges. The study concludes by discussing its theoretical and practical contributions.
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spelling doaj-art-77d80e8078ef44e49e2b054e933dddc92025-08-24T11:14:09ZengSpringer NatureHumanities & Social Sciences Communications2662-99922025-08-0112111710.1057/s41599-025-05656-4Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AIYanyan Liu0Fan Sheng1Ruyue Liu2Qingdao University of Science and TechnologyHarbin Engineering UniversityShandong Academy of Social SciencesAbstract While the integration of generative AI into employees’ workflows is increasingly prevalent in organizations, little is known about its implications for employees’ organizational behavior. This study applies the Conservation of Resources theory to examine how generative AI adoption affects employee outcomes—specifically voice quality, cyberloafing, and cheating behaviors—through the sequential mediating roles of job crafting and career commitment, while also considering the moderating effect of liking of AI. Data collected from 291 pairs of participants across two waves in Chinese enterprises reveal that generative AI adoption positively influences job crafting, expressed through three dimensions: seeking resources, seeking challenges, and optimizing demands. These dimensions individually mediate the positive relationship between generative AI adoption and career commitment, which in turn shapes employee outcomes. Notably, liking of AI amplifies the positive effects of seeking resources and optimizing demands on career commitment, with this effect being more pronounced among employees with higher liking of AI. However, this moderation does not hold for seeking challenges. The study concludes by discussing its theoretical and practical contributions.https://doi.org/10.1057/s41599-025-05656-4
spellingShingle Yanyan Liu
Fan Sheng
Ruyue Liu
Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI
title Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI
title_full Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI
title_fullStr Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI
title_full_unstemmed Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI
title_short Generative AI adoption and employee outcomes: a conservation of resources perspective on job crafting, career commitment, and the moderating role of liking of AI
title_sort generative ai adoption and employee outcomes a conservation of resources perspective on job crafting career commitment and the moderating role of liking of ai
url https://doi.org/10.1057/s41599-025-05656-4
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