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Beginnt 5 June 2026 03:54

Endet 5 June 2026

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Veridical Data Science Towards Trustworthy AI

Delve into the realm of veridical data science with esteemed expert Bin Yu from UC Berkeley. Discover how foundational principles of data science can be applied to develop trustworthy AI systems. Ideal for enthusiasts and professionals in Artificial Intelligence and Computer Science, this course offers valuable insights and knowledge to adva.
Simons Institute via YouTube

Simons Institute

6076 Kurse


53 minutes

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Übersicht

Delve into the realm of veridical data science with esteemed expert Bin Yu from UC Berkeley. Discover how foundational principles of data science can be applied to develop trustworthy AI systems.

Ideal for enthusiasts and professionals in Artificial Intelligence and Computer Science, this course offers valuable insights and knowledge to advance your understanding of reliable AI solutions.

Lehrplan

  • Introduction to Veridical Data Science
  • Definition and relevance
    Historical context and evolution
    Overview of the course structure
  • Principles of Veridical Data Science
  • Clarity and transparency
    Predictability and reliability
    Reproducibility and replicability
  • Data Collection and Preprocessing
  • Data quality and integrity
    Handling bias in data
    Data cleaning techniques
  • Statistical Inference for Trustworthy AI
  • Concepts of statistical inference
    Ensuring validity and reliability
    Managing uncertainty
  • Machine Learning for Trustworthy AI
  • Understanding model interpretability
    Balancing complexity and simplicity
    Avoiding overfitting and underfitting
  • Model Evaluation and Validation
  • Performance metrics and evaluation
    Cross-validation techniques
    Bias-variance trade-off
  • Ethical Considerations and Bias Mitigation
  • Identifying and mitigating algorithmic bias
    Ensuring fairness and equity
    Ethical frameworks in AI
  • Case Studies and Real-World Applications
  • Analysis of successful deployment of trustworthy AI systems
    Lessons learned from failures
    Exemplars of veridical data science
  • Tools and Technologies for Veridical Data Science
  • Software platforms and libraries
    Data visualization techniques
    Open-source tools and resources
  • Future Trends in Trustworthy AI
  • Emerging challenges and opportunities
    Innovations in veridical data science
    Next steps for research and development
  • Course Review and Capstone Project
  • Integration of learned concepts
    Project design and implementation
    Student presentations and feedback

Fachgebiete

Computer Science