工作满意度
工作设计
工作投入
自动化
考试(生物学)
工作(物理)
知识管理
供应链
工作态度
业务
工作表现
运营管理
计算机科学
心理学
营销
工程类
社会心理学
机械工程
古生物学
生物
作者
Ashley Braganza,Weifeng Chen,Ana Isabel Canhoto,Serap Sap
标识
DOI:10.1080/09537287.2021.1882692
摘要
Innovative and highly efficient Artificial Intelligence System Automation (AI-SA) is reshaping jobs and the nature of work throughout supply chain and operations management. It can have one of three effects on existing jobs: no effect, eliminate whole jobs, or eliminate those parts of a job that are automated. This paper focuses on the jobs that remain after the effects of AI-SA, albeit with alterations. We use the term Gigification to describe these jobs, as we posit that the jobs that remain share characteristics of gig work. Our study examines the relationship between Gigification, job engagement and job satisfaction. We develop a theoretical framework to examine the impact of system automation on job satisfaction and job engagement, which we test via 232 survey responses. Our findings show that, while Gigification increases job satisfaction and engagement, AI-SA weakens the positive impact of Gigification on these important worker outcomes. We posit that, over time, the effects of AI-SA on workers is that full-time, permanent jobs will give way to gigified jobs. For future research, we suggest further theory development and testing of the Gigification of operations and supply chain work.
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