Article contents
AI in Supply Chain Management: Revolutionizing Efficiency, Resilience, and Sustainability
Abstract
Artificial Intelligence has introduced transformative changes in supply chain management by providing predictive capabilities, instantaneous visibility, and self-directed decision-making throughout worldwide operations. Technologies encompassing machine learning, natural language processing, computer vision, and robotics have converted conventional reactive supply chains into intelligent, self-refining ecosystems that anticipate disruptions, model outcomes, and implement decisions with limited human involvement. These applications extend across demand forecasting, intelligent procurement, logistics optimization, inventory management, and risk mitigation, yielding observable improvements in operational efficiency, accuracy, and sustainability. Major organizations, including Amazon, DHL, and IBM illustrate how AI-powered systems lower costs, elevate service quality, and reduce waste through information-driven insights. Despite considerable advantages, implementation encounters obstacles including data quality issues, substantial initial investments, workforce skill deficiencies, cybersecurity threats, and ethical questions regarding algorithmic bias. Current trends indicate movement toward autonomous supply chains, digital twin simulations, explainable AI frameworks, collaborative ecosystems, and quantum computing applications. The progression toward intelligent, sustainable, and resilient supply chain networks signifies a permanent transformation in how organizations generate and deliver value within an increasingly complex global marketplace.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (12)
Pages
98-109
Published
Copyright
Open access

This work is licensed under a Creative Commons Attribution 4.0 International License.

Aims & scope
Call for Papers
Article Processing Charges
Publications Ethics
Google Scholar Citations
Recruitment