Smart Warehousing: AI Applications in Inventory Management

Prof. Kin kong

Abstract


The concept of smart warehousing involves using AI technologies to optimize inventory management processes. This chapter explores the role of AI in automating inventory tracking, managing stock levels, and predicting reorder points. It discusses the implementation of AI-driven systems such as robotic process automation (RPA) and Internet of Things (IoT) sensors to enhance operational efficiency and accuracy in warehouses.


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