AI in Supply Chain and Operations Management

RegisterInquiry
AI in Supply Chain and Operations Management
Loading...

B2851

Madrid (Spain)

16 Nov 2026 -20 Nov 2026

5850

Overview

Introduction:

AI in supply chain and operations management focuses on the structured integration of intelligent technologies to optimize planning, procurement, logistics, and execution processes. These technologies enable predictive forecasting, automated decision making, and real-time visibility across supply chain functions. Their strategic value lies in improving efficiency, reducing costs, and enhancing operational resilience through data driven models and governance structures. This training program explores institutional frameworks, system applications, and strategic approaches that support the adoption and scaling of AI across supply chain and operational environments.

Program Objectives:

By the end of this program, participants will be able to:

  • Analyze the institutional role of AI in enhancing supply chain visibility and decision-making.

  • Evaluate AI based forecasting models and their impact on inventory optimization.

  • Classify AI applications in logistics, transportation, and warehouse operations.

  • Use  AI driven methods for supplier evaluation and procurement governance.

  • Explore strategic frameworks for AI integration to improve operational performance.

Target Audience:

  • Supply Chain Managers and Professionals.

  • Operations Managers and Analysts.

  • Logistics Coordinators.

  • AI and Data Science Specialists.

  • Business Leaders overseeing supply chain transformation.

Program Outline:

Unit 1:

The Role of AI in Modern Supply Chain Management:

  • AI technologies and their institutional relevance in supply chain management.

  • Strategic advantages of AI in visibility and transparency across operations.

  • Core applications including machine learning, predictive analytics, and automation.

  • Governance and decision frameworks supported by AI integration.

  • Institutional implications of AI adoption in supply chain structures.

Unit 2:

AI Driven Demand Forecasting and Inventory Management:

  • Predictive analytics frameworks for accurate demand forecasting.

  • AI systems for balancing stock levels and optimizing inventory structures.

  • Institutional mechanisms for automated replenishment.

  • How to forcast seasonal and dynamic demand using AI.

  • Integration of AI forecasting tools within ERP environments.

Unit 3:

AI in Logistics and Transportation Optimization:

  • AI models for route planning and logistics optimization.

  • Dynamic pricing strategies to reduce transportation costs.

  • Predictive maintenance frameworks for logistics fleets.

  • Automation structures for warehouse management using AI.

  • AI methods for improving last-mile delivery performance.

Unit 4:

Supplier and Procurement Management with AI:

  • Data based supplier evaluation and selection models.

  • AI driven insights for strategic procurement decisions.

  • Contract management automation through AI systems.

  • AI tools for supplier risk assessment and relationship governance.

  • AI contributions to sustainability objectives in supply chains.

Unit 5:

AI Strategies for Streamlining Operations and Reducing Costs:

  • Strategic frameworks for AI implementation in operations.

  • Institutional alignment between AI strategies and business goals.

  • How to address operational and organizational challenges in AI adoption.

  • Monitoring structures for AI driven performance improvement.

  • Long term operational and financial impact of AI integration.