The world is becoming very unpredictable, uncertain, and its demands are rapidly changing along with its operations, that has presented a challenge to the supply chain management (SCM). The concept of predictive analytics powered with Artificial Intelligence (AI) has become a groundbreaking innovation to automate predicting, inventory management, design of transportation, as well as coordination with suppliers. In this paper, attention will be devoted to the discussion of how AI-driven models, such as machine learning, natural language processing, and deep learning could be applied in better decision-making in the sphere of the supply chain, with the help of these models helping identify the patterns and predict the future more precisely than the traditional approaches. The findings show there is a growth in the accuracy of demand forecasting, low operation cost, and stability in unpredictable circumstances. Nonetheless, economic aspects of the technology integration of risks like high cost, data quality, and cyber security and need as well as incorporation immensely qualified workforce are feasible constraints. The route to take in future studies is to develop explainable models of AI, to intertwine real-time informational streams of the IoT (where collaborations among IoT systems and exploration of system characteristics are integrated) and to construct resilient supply chains that are adaptive and sustainable.
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Sathish krishna Anumula (Thu,) studied this question.
synapsesocial.com/papers/68d466b531b076d99fa65632 — DOI: https://doi.org/10.61336/jiclt/25-01-20
Sathish krishna Anumula
Journal of international commercial law and technology
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