The Science and Information (SAI) Organization
  • Home
  • About Us
  • Journals
  • Conferences
  • Contact Us

Publication Links

  • IJACSA
  • Author Guidelines
  • Publication Policies
  • Digital Archiving Policy
  • Promote your Publication
  • Metadata Harvesting (OAI2)

IJACSA

  • About the Journal
  • Call for Papers
  • Editorial Board
  • Author Guidelines
  • Submit your Paper
  • Current Issue
  • Archives
  • Indexing
  • Fees/ APC
  • Reviewers
  • Apply as a Reviewer

IJARAI

  • About the Journal
  • Archives
  • Indexing & Archiving

Special Issues

  • Home
  • Archives
  • Proposals
  • Guest Editors
  • SUSAI-EE 2025
  • ICONS-BA 2025
  • IoT-BLOCK 2025

Future of Information and Communication Conference (FICC)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Computing Conference

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Intelligent Systems Conference (IntelliSys)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Future Technologies Conference (FTC)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact
  • Home
  • Call for Papers
  • Editorial Board
  • Guidelines
  • Submit
  • Current Issue
  • Archives
  • Indexing
  • Fees
  • Reviewers
  • Subscribe

DOI: 10.14569/IJACSA.2025.0160367
PDF

Machine Learning Applications in Workforce Management: Strategies for Enhancing Productivity and Employee Engagement

Author 1: Mano Ashish Tripathi
Author 2: Joel Osei-Asiamah
Author 3: Avanti Chinmulgund
Author 4: Aanandha Saravanan
Author 5: T Subha Mastan Rao
Author 6: Ramya H P
Author 7: Yousef A. Baker El-Ebiary

International Journal of Advanced Computer Science and Applications(IJACSA), Volume 16 Issue 3, 2025.

  • Abstract and Keywords
  • How to Cite this Article
  • {} BibTeX Source

Abstract: Workforce management is a critical component of organizational success, encompassing employee scheduling, task allocation, and engagement strategies. Traditional methods rely heavily on rule-based systems and manual supervision, leading to inefficiencies and suboptimal workforce utilization. Existing machine learning (ML) approaches, such as supervised learning and statistical models, have improved certain aspects but often fail to dynamically adapt to evolving workforce demands. Additionally, these models struggle with real-time decision-making, requiring constant retraining and manual intervention. This study introduces a reinforcement learning (RL)-based workforce management framework to optimize productivity and employee engagement. Unlike conventional ML models, RL enables adaptive decision-making by continuously learning from interactions within the workforce environment. The proposed method employs deep Q-networks (DQN) and policy gradient techniques to enhance scheduling, task distribution, and incentive structures, leading to a more efficient and responsive workforce management system. The methodology involves collecting real-time workforce data, pre-processing it for feature extraction, and training the RL model using simulated and historical workforce scenarios. The model’s performance is evaluated based on efficiency gains, employee satisfaction, and task completion rates compared to traditional workforce management techniques. Experimental results demonstrate that the RL-based approach significantly improves task allocation accuracy by 18%, reduces scheduling conflicts by 22%, and enhances employee satisfaction scores by 15%. These findings underscore the potential of reinforcement learning in revolutionizing workforce management by fostering data-driven, real-time optimization, ultimately leading to enhanced organizational productivity and employee well-being.

Keywords: Machine learning; workforce management; employee engagement; task allocation; productivity optimization

Mano Ashish Tripathi, Joel Osei-Asiamah, Avanti Chinmulgund, Aanandha Saravanan, T Subha Mastan Rao, Ramya H P and Yousef A. Baker El-Ebiary, “Machine Learning Applications in Workforce Management: Strategies for Enhancing Productivity and Employee Engagement” International Journal of Advanced Computer Science and Applications(IJACSA), 16(3), 2025. http://dx.doi.org/10.14569/IJACSA.2025.0160367

@article{Tripathi2025,
title = {Machine Learning Applications in Workforce Management: Strategies for Enhancing Productivity and Employee Engagement},
journal = {International Journal of Advanced Computer Science and Applications},
doi = {10.14569/IJACSA.2025.0160367},
url = {http://dx.doi.org/10.14569/IJACSA.2025.0160367},
year = {2025},
publisher = {The Science and Information Organization},
volume = {16},
number = {3},
author = {Mano Ashish Tripathi and Joel Osei-Asiamah and Avanti Chinmulgund and Aanandha Saravanan and T Subha Mastan Rao and Ramya H P and Yousef A. Baker El-Ebiary}
}



Copyright Statement: This is an open access article licensed under a Creative Commons Attribution 4.0 International License, which permits unrestricted use, distribution, and reproduction in any medium, even commercially as long as the original work is properly cited.

IJACSA

Upcoming Conferences

IntelliSys 2025

28-29 August 2025

  • Amsterdam, The Netherlands

Future Technologies Conference 2025

6-7 November 2025

  • Munich, Germany

Healthcare Conference 2026

21-22 May 2026

  • Amsterdam, The Netherlands

Computing Conference 2026

9-10 July 2026

  • London, United Kingdom

IntelliSys 2026

3-4 September 2026

  • Amsterdam, The Netherlands

Computer Vision Conference 2026

15-16 October 2026

  • Berlin, Germany
The Science and Information (SAI) Organization
BACK TO TOP

Computer Science Journal

  • About the Journal
  • Call for Papers
  • Submit Paper
  • Indexing

Our Conferences

  • Computing Conference
  • Intelligent Systems Conference
  • Future Technologies Conference
  • Communication Conference

Help & Support

  • Contact Us
  • About Us
  • Terms and Conditions
  • Privacy Policy

© The Science and Information (SAI) Organization Limited. All rights reserved. Registered in England and Wales. Company Number 8933205. thesai.org