Optimizing Supply Chain Agility and Sustainability: Machine Learning Approaches for Inventory and Logistics Efficiency
DOI:
https://doi.org/10.5281/Keywords:
Supply chain, machine learning, agility, sustainability, inventory management, logistics, efficiency, predictive analytics, deep learning, and carbon footprint.Abstract
The modern supply chain landscape has evolved significantly, driven by increasing customer expectations, volatile markets, and the pressing need for sustainability. As global commerce expands, organizations face the challenge of maintaining agility while ensuring environmental responsibility. Machine learning (ML) presents a compelling solution to this dilemma, offering the potential to optimize both agility and sustainability across the supply chain. This research paper explores the role of ML in enhancing supply chain agility and sustainability, focusing on inventory and logistics efficiency. By reviewing state-of-the-art machine learning techniques, such as predictive analytics, reinforcement learning, and deep learning, we analyze how these approaches can streamline inventory management, reduce carbon footprints, and improve decision-making in real time. Furthermore, the study examines the synergistic relationship between agility and sustainability, demonstrating how ML can bridge the gap between rapid adaptability and long-term environmental objectives.
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