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DEVELOPMENT OF AI-DRIVEN PREDICTIVE ANALYTICS SYSTEMS TO IMPROVE SUPPLY CHAIN RESILIENCE AND STRENGTHEN THE STABILITY OF CRITICAL U.S. INDUSTRIES

Authors
  • Priyanka Singh

    Department of MSIT, WestCliff University, California, USA
  • Mulayam Singh Patel

    Department of MSIT, WestCliff University, California, USA
Keywords:
Artificial intelligence, Predictive analytics, Supply chain resilience, Machine learning, Critical infrastructure
Abstract

Objective: This paper presents a comprehensive framework for developing AI-driven predictive analytics systems designed to enhance supply chain resilience in critical U.S. industries. Method: The proposed methodology integrates machine learning algorithms with real-time data processing capabilities to forecast disruptions, optimize inventory management, and strengthen supply chain stability. Results: Our experimental results demonstrate significant improvements in demand forecasting accuracy (up to 23%) and reduction in supply chain disruption response time by 35%. Novelty: The findings contribute to the growing body of knowledge on intelligent supply chain management and provide practical insights for industry practitioners seeking to leverage AI technologies for operational excellence.

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Published
2025-12-12
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How to Cite

DEVELOPMENT OF AI-DRIVEN PREDICTIVE ANALYTICS SYSTEMS TO IMPROVE SUPPLY CHAIN RESILIENCE AND STRENGTHEN THE STABILITY OF CRITICAL U.S. INDUSTRIES. (2025). International Journal of Business, Law and Political Science, 2(12), 649-657. https://doi.org/10.61796/ijblps.v2i12.461

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