Learning Outcomes
In an increasingly data-driven world, making sense of complex, interconnected information is a key challenge across domains such as robotics, smart cities, automotive, and digital twins. Knowledge Graphs (KGs) have emerged as a powerful paradigm for structuring and reasoning over semantic data, enabling intelligent systems to integrate, interpret, and act upon diverse sources of information. This course offers a comprehensive introduction to the foundations, construction, storage, and AI-driven applications of Knowledge Graphs. Students will explore both theoretical underpinnings and practical implementations, gaining the skills needed to apply knowledge graphs effectively in cutting-edge AI systems powered by large language models (LLMs) and foundation models. Through real-world examples and hands-on exercises, participants will learn how to build scalable, dynamic, and context-aware knowledge systems that bridge symbolic reasoning and machine learning. In summary, learning objectives include: - Demonstrate fundamental and practical knowledge of Knowledge Graphs. - Demonstrate skills in applying Knowledge Graphs in AI-driven applications in Robotics, Automotive, Smartcities.
Lesson Plan:
Lesson 1: Introduction and logistics
Lesson 2: Foundation and Concepts (RDF, SPARQL, SCHACL, Reasoning)
Lesson 3: Knowledge representation, Query and Storage
Lesson 4. Commonsense Knowledge and Perception
Lesson 5. Industrial Ontologies and Standards
Lesson 6. KG in Robotics
Lesson 7. KG Automotive
Lesson 8. KG Smart Cities and Digital Twins
Lesson 9. Uncertainty and Learning
Lesson 10. Knowledge Acquisition and Construction
Lesson 11. Advanced applications and Challenges
Lesson 12. Project presentations and Oral exams
- Trainer/in: Manfred Hauswirth
- Trainer/in: Melanie Lahrkamp
- Trainer/in: Tuan Anh Le
- Trainer/in: Danh Le Phuoc
- Trainer/in: Manh Nguyen Duc
- Trainer/in: Jicheng Yuan