Real-Time Supply Chain Visibility Through AI and IoT Integration

Prof. syham sunder

Abstract


Achieving real-time visibility in supply chains is crucial for responsive decision-making. This chapter explores the integration of AI and IoT to provide real-time visibility into supply chain operations. It discusses how AI algorithms can process data from IoT sensors to monitor and manage supply chain activities, predict disruptions, and enhance operational efficiency. Practical implementation strategies and real-world examples are included.


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