FORECASTING PERFORMANCE INDICATORS WITH THE HELP OF ARTIFICIAL INTELLIGENCE: TSUE PRACTICE
Keywords:
KPI, artificial intelligence, employee performance, prediction model, KPIup platform, business analytics, Gradient Boosting, HR technologiesAbstract
This article presents an AI-driven approach for predicting employee performance within the KPIup digital platform, designed to enhance staff evaluation processes in higher education institutions. Multidimensional HR data were analyzed and predictive models were developed using Gradient Boosting, Random Forest, and regression algorithms to forecast future employee productivity. Data preprocessing, normalization, and feature engineering significantly improved prediction accuracy. The results demonstrate that integrating AI analytics into the KPIup platform increases the speed and reliability of managerial decision-making, reduces subjectivity in performance evaluation, and enables full automation of HR processes.
References
1. Breiman L. Random Forests // Machine Learning. – 2001. – Vol. 45, No. 1. – P. 5–32.
2. Friedman J. H. Greedy Function Approximation: A Gradient Boosting Machine // Annals of Statistics. – 2001. – Vol. 29, No. 5. – P. 1189–1232.
3. Choi S. L., Goh C. F., Adam M. B., Tan O. K. The Impact of Human Resource Management Practices on Firm Performance in a Highly Regulated Emerging Market // International Journal of Human Resource Management. – 2016. – Vol. 27, No. 9. – P. 987–1008.
4. Poddar A., Chattopadhyay S. Predicting Employee Performance Using Machine Learning Techniques // International Journal of Advanced Computer Science. – 2021. – Vol. 12, No. 4. – P. 45–53.
5. Gupta A., Mittal V., Agarwal P. Machine Learning Approaches for Employee Performance Prediction: A Review // Journal of Data Science and Analytics. – 2023. – Vol. 2, No. 1. – P. 33–48.
6. Jennifer M. Business Analytics Trends in Human Resource Management // Human Capital Review. – 2023. – Vol. 18, No. 2. – P. 112–128.
7. Rockwood K. Predictive Analytics in HR: Applications and Challenges // Journal of HR Analytics. – 2023. – Vol. 5, No. 3. – P. 145–162.
Downloads
Published
Issue
Section
License
Copyright (c) 2025 Shuhratov Mamurjon Shuhrat o‘g‘li

This work is licensed under a Creative Commons Attribution 4.0 International License.







