The U.S. manufacturing sector faces unprecedented challenges in sustaining operational resilience amidst global disruptions, demand fluctuations, and logistical uncertainties. Traditional supply chain management techniques often fail to provide real-time adaptability, resulting in inefficiencies and revenue losses. This paper proposes an AI-driven predictive analytics framework integrated with Management Information Systems (MIS) to enhance decision-making and improve supply chain resilience. Using machine learning (ML) and advanced statistical modeling, the proposed approach enables real-time demand forecasting, risk assessment, and inventory optimization. The research highlights experimental results derived from U.S.-based manufacturing datasets, demonstrating a 35% improvement in demand prediction accuracy and a 22% reduction in operational delays. The findings establish that integrating MIS with AI-powered predictive models significantly enhances supply chain visibility, agility, and overall manufacturing resilience.
Mohammed Tafiqur Rahman (Mon,) studied this question.
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