Utilizing Artificial Intelligence to Mitigate Employee Attrition in Organizational Settings

Authors

  •   Basu Choudhury S. Asst. Professor, Dept. of Business Analytics, ISMS, Pune, Maharashtra
  •   Majumder S. PhD Scholar, Dept. of Management, Rani Durgawati University, Jabalpur, Madhya Pradesh
  •   Taval V. Asst. Professor, Dept of Finance, Unique Institute of Management, Pune, Maharashtra
  •   Dhadve A. Asst. Professor, Dept. of Management, ISMS, Pune, Maharashtra

DOI:

https://doi.org/10.17697/ibmrd/2025/v14i2/174488

Keywords:

Artificial Intelligence, Employee Attrition, Predictive Analytics, Human Resource Management, Workforce Retention, Explainable AI.

Abstract

Employee attrition poses a significant challenge for organizations, adversely affecting productivity, operational efficiency, and workforce stability. Traditional methods of addressing attrition are often reactive and lack predictive capabilities.

This study examines how AI can reduce employee attrition in organizational settings through advanced mechanisms. By analyzing extensive datasets, including employee performance metrics, engagement surveys, and organizational culture indicators, AI models can identify early signs of potential attrition. These insights empower HR professionals to design targeted retention strategies, improve employee experience, and minimize voluntary turnover.

This research offers a comprehensive exploration of AI applications in mitigating employee attrition, supported by case studies from multinational corporations that have successfully implemented AI-driven workforce retention strategies. The findings highlight AI’s transformative potential in Human Resource Management (HRM), enabling organizations to transition from reactive to proactive attrition management approaches. The paper concludes with recommendations for future research, focusing on the evolving role of AI in predictive HR analytics and its integration with emerging technologies such as blockchain and the metaverse for advanced workforce planning.

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Published

2025-09-30

How to Cite

S., B. C., S., M., V., T., & A., D. (2025). Utilizing Artificial Intelligence to Mitigate Employee Attrition in Organizational Settings. IBMRD’s Journal of Management & Research, 14(2), 73–79. https://doi.org/10.17697/ibmrd/2025/v14i2/174488

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