ARTIFICIAL INTELLIGENCE AND DATA ANALYTICS IN HUMAN RESOURCE MANAGEMENT: DIGITAL TRANSFORMATION AND COMPETITIVE ADVANTAGE OF ENTERPRISES

Authors

  • Aleksandar M. Damnjanović Faculty of Business and Law, MB University, Belgrade Author
  • Milan D. Rašković Faculty of Business and Law, MB University, Belgrade Author
  • Volodymyr N. Skoropad Faculty of Business and Law, MB University, Belgrade Author

DOI:

https://doi.org/10.35120/sciencej0402033d

Keywords:

HRM, transformation, SME

Abstract

In the digital age, human resource management (HRM) increasingly relies on artificial intelligence (AI) and data analytics to enhance key processes and enable strategic decision-making. This dissertation explores how the integration of AI technologies, including machine learning and big data analytics, can improve essential HR functions such as recruitment and selection, talent retention, employee performance evaluation, and professional development. Special emphasis is placed on identifying patterns in employee data that facilitate proactive decision-making in HR. The empirical part of the research utilizes predictive analytics to model factors influencing employee performance and organizational efficiency. By analyzing real-world business data, this study examines how AI can assist managers in making better decisions and optimizing workforce management. The findings provide insights into the practical benefits of AI applications in HRM, demonstrating how companies can refine their human capital management strategies to strengthen their competitive position. This dissertation contributes to existing literature in HRM, data analytics, and AI by offering an innovative approach to data-driven strategic HR management. The proposed model serves as a guide for organizations seeking to leverage AI to improve business performance and achieve sustainable competitive advantage. The methodological framework is based on the integration of quantitative research methods, with a particular focus on applying data analytics and AI in HRM to develop and validate a model that enhances HR processes.

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References

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Published

2025-05-20

How to Cite

M. Damnjanović , A., D. Rašković , M., & N. Skoropad , V. (2025). ARTIFICIAL INTELLIGENCE AND DATA ANALYTICS IN HUMAN RESOURCE MANAGEMENT: DIGITAL TRANSFORMATION AND COMPETITIVE ADVANTAGE OF ENTERPRISES. SCIENCE International Journal, 4(2), 33-38. https://doi.org/10.35120/sciencej0402033d

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