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Beginnt 6 June 2026 10:37
Endet 6 June 2026
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40 minutes
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Übersicht
Lehrplan
- Introduction to Trustworthy AI Systems
- Balancing Autonomy and Accountability
- Risk Alignment in AI Systems
- Multi-Agent Orchestration
- Governance Frameworks for AI
- Designing for Safe Deployment
- Case Studies and Practical Applications
- Course Summary and Future Directions
Overview and motivation for trustworthy AI
Key challenges in AI system trustworthiness
Defining autonomy and accountability in AI
Strategies for achieving balance
Case studies of autonomous systems
Understanding risks in AI deployment
Frameworks for risk assessment and management
Tools for risk mitigation
Principles of multi-agent systems
Coordination and communication between agents
Managing dependencies and interactions
Regulatory requirements and compliance
Ethical considerations in AI system design
Best practices for governance and oversight
Safety protocols and testing methodologies
Continuous monitoring and feedback loops
Examples of safe deployment in various domains
Real-world applications of trustworthy AI systems
Lessons learned from past implementations
Future trends and emerging technologies
Recap of key concepts
Discussion of ongoing challenges and research areas
Opportunities for advancing trustworthy AI systems
Fachgebiete
Computer Science