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Beginnt 5 June 2026 18:21
Endet 5 June 2026
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49 minutes
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Übersicht
Lehrplan
- Introduction to Risk Management in AI
- Fundamentals of Machine Learning Classifiers
- Understanding Confidence Estimation
- Geometric Properties of Training Data
- Techniques for Confidence Prediction
- Evaluating Classifier Certainty
- Managing Risk in AI Systems
- Case Studies and Applications
- Ethical Considerations in Risk Management
- Tools and Frameworks for Confidence Estimation
- Future Trends and Developments
- Final Project and Assessment
- Course Summary and Wrap-Up
Overview of Risk in AI Decision-Making
Importance of Confidence Estimation
Types of Classifiers
Decision Boundaries and Margin
Definition and Purpose
Common Techniques for Confidence Estimation
Geometry in High-Dimensional Spaces
Data Distribution and Its Impact
Probabilistic Methods
Ensembles and Bootstrap Methods
Bayesian Approaches
Metrics and Evaluation Methods
Visualizing Confidence
Threshold Setting and Decision Strategies
Balancing Precision and Recall
Real-World Examples of Confidence Estimation
Industry Applications and Best Practices
Bias and Fairness
Transparency in AI Systems
Introduction to Software and Libraries
Hands-On Practice with Selected Tools
Advances in Confidence Estimation
Emerging Risks in AI Systems
Design and Implement a Confidence Estimation Module
Peer Review and Feedback
Recap of Key Concepts
Discussion on Future Learning Paths
Fachgebiete
Computer Science