How can you use ML to optimize supply chain management?
Supply chain management (SCM) is the process of planning, coordinating, and controlling the flow of materials, products, and information from suppliers to customers. SCM involves many complex decisions and trade-offs, such as inventory levels, transportation modes, demand forecasting, and supplier selection. Machine learning (ML) is a branch of artificial intelligence that enables computers to learn from data and improve their performance without explicit programming. ML can help SCM optimize its operations, reduce costs, and enhance customer satisfaction by providing data-driven insights and solutions. In this article, you will learn how you can use ML to optimize SCM in four key areas: demand forecasting, inventory optimization, transportation routing, and supplier management.
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Shivani Paunikar, MSBAData Engineer @Tucson Police Department | ASU Grad Medallion | Snowflake Certified | BGS Member
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Shalini KumariMicrosoft Certified Data Scientist | Data Science & Business Analytics Specialist | Educator l 6x Oracle Certified | 4x…
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Akshita GorPharma Quality and Supply chain management