1 Master of Science in Business Analytics, Trine University, 1 University Avenue, Angola, IN-46703, USA.
2 Master of Science in Engineering Management, Trine University, 1 University Avenue, Angola, IN-46703, USA.
3 Master of Science in Computer Science (Major in Data Analytics), Westcliff University, Irvine, California 92614, USA.
4 Doctorate in Management, International American University, Los Angeles, California 90010, USA.
5 MBA in Management Information Systems, International American University, Los Angeles, California 90010, USA.
International Journal of Science and Research Archive, 2025, 17(03), 857–876
Article DOI: 10.30574/ijsra.2025.17.3.3251
Received 11 November 2025; revised on 20 December 2025; accepted on 22 December 2025
The resilience of the United States supply chain has been critically tested by recent global disruptions, revealing systemic vulnerabilities in forecasting, logistics, and inventory management. This research proposes a robust, data-driven framework that leverages Machine Learning (ML) and Structured Query Language (SQL) to enhance supply chain process optimization and bolster resilience. We developed an integrated data pipeline where SQL was utilized for the efficient extraction, transformation, and loading (ETL) of large-scale, multi-modal data from disparate sources, including ERP systems, IoT sensors, and logistics feeds. Subsequently, ML models, including a Gradient Boosting Regressor for demand forecasting and a Random Forest classifier for risk prediction, were trained on this consolidated dataset. The results demonstrate a significant improvement in forecasting accuracy, with a 23% reduction in Mean Absolute Percentage Error (MAPE) compared to traditional statistical methods. Furthermore, the risk classification model achieved an F1-score of 0.89, enabling proactive identification of potential disruptions in the logistics network. The SQL-driven data infrastructure allowed for real-time querying and monitoring of key resilience indicators, such as inventory turnover and supplier lead time variability. The discussion highlights how this synergistic use of ML for predictive analytics and SQL for scalable data management creates a closed-loop system for continuous process improvement. We conclude that the adoption of such a data-centric approach is imperative for building agile, transparent, and resilient supply chains capable of withstanding future shocks.
Supply Chain Resilience; Machine Learning; SQL; Predictive Analytics; Process Optimization; Demand Forecasting
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Babul Sarker, Kamana Parvej Mishu, Mohammad Tahmid Ahmed, Afia Khanom, Tanjima Rahman and Farhad Uddin Mahmud. Data-Driven Process Optimization for US Supply Chain Resilience Using Machine Learning and SQL. International Journal of Science and Research Archive, 2025, 17(03), 857–876. Article DOI: https://doi.org/10.30574/ijsra.2025.17.3.3251.
Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0







