HomeJournalsJITMBVol. 1, Iss. 2Machine Learning Applications in U.S. Manufacturin
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Research ArticleJournal of Information Technology Management and Business Horizons

Volume 1, Issue 2 · 25 October 2025

ISSN: 3067-5308 · E-ISSN: 3067-5316

Machine Learning Applications in U.S. Manufacturing: Predictive Maintenance and Supply Chain Optimization

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Rakibul Hasan:Department of Technology & Engineering, Westcliff University, Irvine, CA 92614, USA
Rakibul Hasan:Department of Technology & Engineering, Westcliff University, Irvine, CA 92614, USA
Jakir Hossain Ridoy:Department of Technology & Engineering, Westcliff University, Irvine, CA 92614, USA
Adib Hossain:Department of Technology & Engineering, Westcliff University, Irvine, CA 92614, USA
Article ID:jitmbh_25002

Abstract

Machine learning (ML) technologies are swiftly coming into the U.S. manufacturing industry to solve the old issues of equipment upkeep and supply chain management. There is a transformative research study about ML and its application to improve predictive maintenance 25 October, 2025 (Published Online) and plan inventory and logistics decisions. The study makes use of actual data and variable set Machine Learning (ML), Supply random forest) to forecast the failure of equipment and supply blockades. The methodology Chain, Industrial IoT, Predictive involves elaborate feature engineering as well as a breakdown of demand with model calibration Maintenance. to account for lead-time variability and heterogeneity of operations. It is also observed that, compared to conventional regression methods, XGBoost is better in predictive maintenance and has higher adaptability to nonlinear trends in demand prediction. Additionally, the paper examines model robustness, distribution regional impact, as well as anomaly identification in order to demonstrate how ML is to be utilized to reduce operational downtime and enhance inventory turnover. The most significant implementation issues are discussed, such as integrating previous generation equipment, data imbalance, and cybersecurity. This paper ends with a discussion of what can be expected in the future in terms of Edge AI and Federated Learning, and the importance of those technologies in securing and sustainable smart manufacturing systems. This study will provide practical results to manufacturers aiming to transform to smart and resilient models and data-driven manufacturing.

Keywords

Machine Learning (ML)Supply ChainIndustrial IoTPredictive Maintenance
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Article Information

Received

8 September 2025

Accepted

19 October 2025

Published

25 October 2025

ISSN

3067-5308

E-ISSN

3067-5316

Article Type

Research Article

Open Access

Yes – Open Access