DYNAMIC INVENTORY MANAGEMENT USING AI
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DYNAMIC INVENTORY MANAGEMENT USING AI
Authors:
MR.REGULAGADDA RAMAKRISHNA, CHAKIRI SHANMUKHA SAI, NISHTALA PHANINDRA ARUN, R.HAREEN, M.SATYA
Department of Computer Science and Engineering,
Koneru Lakshmaiah Education Foundation, Guntur, A.P. India shanmukhasaic@gmail.com, phanindraarun@gmail.com
Abstract: Efficient inventory management remains a critical challenge for organizations operating in fast-paced and uncertain supply chain environments. Traditional static inventory systems are increasingly insufficient in responding to fluctuating demand, supply variability, and dynamic market conditions. This paper presents a comprehensive study on the application of artificial intelligence (AI) techniques to enable dynamic inventory management systems. Leveraging machine learning algorithms, time-series forecasting, and reinforcement learning models, the proposed system adapts to real-time data inputs for accurate demand prediction, optimal replenishment decisions, and inventory cost minimization. The paper outlines the design and implementation of an AI-driven architecture integrating predictive analytics, sensor-based monitoring, and decision automation. Experimental validation demonstrates that the AI-enhanced system achieves significant improvements in forecast accuracy, reduces stockouts, lowers holding costs, and enhances responsiveness across varying supply chain scenarios. The findings suggest that AI-driven inventory systems offer a scalable and adaptive solution to meet the demands of modern, data-intensive logistics operations. The research contributes a novel framework for integrating AI in inventory control and provides insights into deployment challenges and strategic implications for businesses transitioning to intelligent supply chain solutions.
Keywords: Artificial intelligence, inventory management, demand forecasting, dynamic systems, machine learning, supply chain optimization, reinforcement learning.
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