Artificial Intelligence-Driven Predictive Analytics and Optimization Algorithms for Enhancing End-to-End Visibility and Resilience in Global Supply Chain Networks

Authors

  • Mohammad Faizal Ahamed Program Studi Magister Teknologi Informasi, Indonesia Author

Keywords:

AI-Driven Supply Chain, Predictive Analytics, Optimization Algorithms, End-To-End Visibility, Resilience, Supply Chain Networks

Abstract

Global supply chain networks have become increasingly complex due to globalization, fluctuating demand, and unpredictable disruptions. Artificial Intelligence (AI)-driven predictive analytics and optimization algorithms offer real-time insights, risk mitigation, and enhanced resilience in supply chain operations. This paper explores AI methodologies for optimizing supply chain networks, improving visibility, and ensuring robustness against uncertainties. It includes a review of relevant literature, examines AI-based predictive models, optimization techniques, and discusses practical applications through case studies. The study highlights AI's role in enhancing supply chain decision-making, reducing costs, and fostering sustainability.

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Published

15-03-2025

How to Cite

Mohammad Faizal Ahamed. (2025). Artificial Intelligence-Driven Predictive Analytics and Optimization Algorithms for Enhancing End-to-End Visibility and Resilience in Global Supply Chain Networks. International Journal of Computer Science and Information Technology Research , 6(2), 28-34. https://ijcsitr.com/index.php/home/article/view/IJCSITR_2025_06_02_003