AI-Driven Safety Analytics for Cost Reduction and Operational Efficiency in High-Risk Environments

Authors

  • Mehidi Hasan Suvo School of Business, San Francisco Bay University, Fremont, CA, USA Author
  • Md Faysal Ahmed Shaikh Borhanuddin Postgraduate College, Affiliated by National University, Dhaka-1100, Bangladesh Author
  • Md. Kwosar Institute of Cost and Management Accountants of Bangladesh (ICMAB), Dhaka-1205, Bangladesh Author

DOI:

https://doi.org/10.32628/IJSRST2613354

Keywords:

safety analytics, training prioritization, cost reduction, operational efficiency, gradient boosting, decision support

Abstract

Reducing workplace incidents is both a safety priority and a business objective because incidents create direct costs, downtime, and productivity losses. This paper presents a business-oriented safety analytics framework that predicts whether a training intervention will be effective for a given worker and then uses that prediction to prioritize training under a fixed budget. Using a structured dataset of 4,000 training records, Gradient Boosting achieved ROC-AUC of 0.916 and F1-score of 0.884 on a held-out test set. We then simulate a budget-aware policy that selects workers with the highest expected benefit, combining incident-risk proxies and predicted training success. Under scenario assumptions, the proposed policy avoids approximately $414,122 of expected incident cost at a $150,000 budget while covering 170 workers. The results show how even straightforward predictive models can support practical training investment decisions when paired with transparent scenario analysis.

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Published

12-04-2026

Issue

Section

Research Articles

How to Cite

[1]
Mehidi Hasan Suvo, Md Faysal Ahmed, and Md. Kwosar, Trans., “AI-Driven Safety Analytics for Cost Reduction and Operational Efficiency in High-Risk Environments”, Int J Sci Res Sci & Technol, vol. 13, no. 2, pp. 762–767, Apr. 2026, doi: 10.32628/IJSRST2613354.