Supply Chain Using Artificial Intelligence Technology

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Supply Chain Using Artificial Intelligence Technology
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L2377

Madrid (Spain)

09 Feb 2026 -13 Feb 2026

5850

Overview

Introduction:

Supply chain using artificial intelligence technology focuses on the structured integration of intelligent systems to enhance planning, procurement, logistics, and operational functions. AI technologies support predictive forecasting, dynamic optimization, and data driven decision structures that improve coordination and transparency across supply chain networks. Their value lies in enabling operational agility, cost reduction, and strategic alignment through institutional frameworks and digital integration. This training program presents AI strategies, analytical tools, and governance models that drive innovation and elevate supply chain performance.

Program Objectives:

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

  • Analyze the institutional role of AI in transforming supply chain structures.

  • Evaluate strategic approaches for integrating AI into supply chain operations.

  • Classify AI tools and technologies applied to forecasting, logistics, and inventory.

  • Explore AI based analytical methods for decision making and risk management.

  • Use innovation frameworks that sustain AI driven performance improvements.

Targeted Audience:

  • Supply chain managers and professionals.

  • Operations managers and supervisors.

  • Data analysts and IT professionals in the supply chain sector.

  • Logistics and procurement specialists.

  • Organizations aiming to leverage AI technology in their supply chain operations.

Program Outline:

Unit 1:

Introduction to AI in Supply Chain Management:

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

  • Core components and structures of AI integration in supply chains.

  • Strategic benefits and operational challenges of adopting AI.

  • Role of data ecosystems in enabling AI driven supply chain solutions.

  • Institutional implications of digital transformation in supply chain contexts.

Unit 2:

Developing AI Driven Supply Chain Strategies:

  • Strategic frameworks for integrating AI into supply chain operations.

  • Identifying high impact opportunities for AI application across functions.

  • Aligning AI strategies with organizational priorities and performance targets.

  • Structured roadmaps for AI adoption and scaling.

  • Governance mechanisms for managing AI driven supply chain initiatives.

Unit 3:

Utilizing AI Tools and Technologies:

  • Overview of key AI tools supporting supply chain functions.

  • Machine learning and predictive analytics frameworks for demand forecasting.

  • AI applications for inventory planning and optimization.

  • Role of digital automation in logistics and transportation management.

  • Integration structures between AI systems and ERP platforms.

Unit 4:

Data Analysis and Decision Making with AI:

  • Data collection and structuring techniques for AI driven supply chains.

  • Analytical models supporting informed decision making.

  • AI applications for risk detection and supply chain resilience.

  • AI  enabled procurement and supplier performance oversight.

  • Institutional mechanisms for continuous monitoring and performance improvement.

Unit 5:

Driving Innovation and Improving Supply Chain Performance:

  • Strategic role of AI in fostering supply chain innovation.

  • Institutional engagement models for employees and stakeholders in AI adoption.

  • Performance measurement frameworks for AI driven supply chains.

  • Continuous improvement methodologies for long term AI integration.

  • Structures supporting sustainable innovation and operational excellence.