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Start 5 June 2026 21:39

Einde 5 June 2026

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Trust and Distrust in ML: Privacy, Verification and Robustness

Immerse yourself in a thought-provoking exploration of trust and distrust in machine learning with the esteemed Shafi Goldwasser. This Emmy Noether Lecture addresses the pressing issues of privacy, the critical methods for verification, and the robust challenges present in today's AI landscape. Stream the lecture now on YouTube and deepen you.
Institute for Advanced Study via YouTube

Institute for Advanced Study

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1 hour 5 minutes

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Overzicht

Immerse yourself in a thought-provoking exploration of trust and distrust in machine learning with the esteemed Shafi Goldwasser. This Emmy Noether Lecture addresses the pressing issues of privacy, the critical methods for verification, and the robust challenges present in today's AI landscape.

Stream the lecture now on YouTube and deepen your understanding of these pivotal topics within Artificial Intelligence and Computer Science.

Lesprogramma

  • Introduction to Trust in Machine Learning
  • Definition and Importance of Trust in ML
    Overview of Privacy, Verification, and Robustness
  • Privacy Concerns in Machine Learning
  • Understanding Privacy Implications
    Differential Privacy
    Federated Learning and Privacy
    Techniques for Anonymization and Data Sanitization
  • Verification Methods in Machine Learning
  • Overview of Verification in ML Systems
    Formal Verification Techniques
    Runtime Verification and Monitoring
    Tools and Frameworks for ML Model Verification
  • Robustness Challenges in Machine Learning
  • Defining Robustness in ML Systems
    Adversarial Attacks and Defense Mechanisms
    Generalization and Overfitting
    Robustness in Model Deployment and Maintenance
  • Case Studies and Real-world Applications
  • Analysis of Trust in ML Applications
    Lessons Learned from Industry and Research
  • Ethical and Societal Implications
  • Bias and Fairness in Machine Learning
    Ethical Considerations in ML Deployment
    Future Directions and Open Research Questions
  • Conclusion and Recap
  • Integrating Privacy, Verification, and Robustness in ML
    Key Takeaways and Best Practices
  • Guest Lecture with Shafi Goldwasser
  • Insights from Research and Applications
    Q&A Session with Participants
  • Final Evaluation and Project
  • Practical Application of Course Concepts
    Student Presentations and Peer Feedback

Vakgebieden

Computer Science