AI Implementation Impact on Workforce Productivity : The Role of AI Training and Organizational Adaptation

Authors

  • Nurlia Nurlia Universitas Balikpapan
  • Ilzar Daud Universitas Tanjungpura
  • Muhammad Edya Rosadi Universitas Islam Kalimantan Muhammad Arsyad Al Banjari Banjarmasin

DOI:

https://doi.org/10.61536/escalate.v1i01.6

Keywords:

workforce productivity, AI Implementation, organizational adaptation, AI training

Abstract

This study investigates the impact of AI implementation on workforce productivity, focusing on the mediating roles of Organizational Adaptation and AI Training. The purpose of the research is to analyze how AI Implementation influences Organizational Adaptation and AI Training, and subsequently, how these factors impact Workforce Productivity within the context of the Regional Secretariat Pontianak. A quantitative approach is employed, using a sample of 70 employees through total sampling. Structural Equation Modeling (SEM) with Partial Least Squares (PLS) is used for data analysis. The findings reveal significant and positive relationships between AI Implementation, AI Training, Organizational Adaptation, and Workforce Productivity. The implications highlight the importance of comprehensive strategies that integrate AI technologies, training initiatives, and organizational flexibility to enhance productivity

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Published

2023-08-31

How to Cite

Nurlia, N., Daud, I., & Rosadi, M. E. (2023). AI Implementation Impact on Workforce Productivity : The Role of AI Training and Organizational Adaptation. Escalate : Economics and Business Journal, 1(01), 01–13. https://doi.org/10.61536/escalate.v1i01.6

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Articles