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Beginnt 4 June 2026 14:39

Endet 4 June 2026

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Veridical Data Science Towards Trustworthy AI

Simons Institute via YouTube

Simons Institute

6076 Kurse


50 minutes

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Free Video

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Übersicht

Lehrplan

  • Introduction to Veridical Data Science
  • Definition and Principles of Veridical Data Science
    Importance in AI and Machine Learning
    Overview of Statistical Thinking in Veridical Data Science
  • Foundations of Trustworthy AI
  • Characteristics of Trustworthy AI Systems
    Challenges in Building Trustworthy AI
    Real-world Applications and Case Studies
  • Data Quality and Reliability
  • Data Collection and Preprocessing
    Assessing Data Quality: Metrics and Methods
    Techniques for Ensuring Data Reliability
  • Model Transparency and Explainability
  • Importance of Model Interpretability
    Techniques for Interpretability: LIME, SHAP, etc.
    Balancing Complexity and Transparency
  • Fairness and Bias in AI
  • Identifying Bias in AI Models
    Strategies for Mitigating Bias
    Ethical Considerations in AI Development
  • Robustness and Robust Statistics
  • Definition and Importance of Robustness in AI
    Techniques for Building Robust Models
    Evaluating Robustness: Stress Testing and Adversarial Examples
  • Reproducibility in Data Science
  • Importance of Reproducibility in Research
    Best Practices for Reproducible Workflows
    Tools and Frameworks for Reproducibility
  • AI Safety and Security
  • Identifying Security Risks in AI Systems
    Techniques for Building Secure AI Models
    Response Strategies for AI Failures
  • Evaluation and Validation of AI Systems
  • Frameworks for Evaluating AI Performance
    Validation Techniques: Cross-Validation, A/B Testing
    Continuous Monitoring and Feedback Systems
  • Future Directions for Veridical Data Science
  • Innovations in Trustworthy AI Techniques
    The Role of Policy and Regulation
    Envisioning the Future of Veridical Data Science and AI
  • Course Wrap-up and Final Project
  • Reviewing Key Concepts and Ideas
    Final Project: Designing a Trustworthy AI System
    Discussion of Real-World Implementations and Career Applications

Fachgebiete

Computer Science