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Beginnt 5 June 2026 18:58

Endet 5 June 2026

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Security, Scorpions, AI, Wilds and Coding: The Unexpected - Privacy-Aware Machine Learning and Data Science

Explore the evolving intersection of privacy-aware machine learning, data science, and security through innovative hacking approaches and emerging AI resilience strategies.
Ekoparty Security Conference via YouTube

Ekoparty Security Conference

6076 Kurse


40 minutes

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Übersicht

Explore the evolving intersection of privacy-aware machine learning, data science, and security through innovative hacking approaches and emerging AI resilience strategies.

Lehrplan

  • Introduction to Privacy-Aware Machine Learning
  • Overview of Privacy and Security in AI
    Key Concepts: Confidentiality, Integrity, and Availability
  • Data Science Fundamentals
  • Data Collection and Pre-processing with Privacy Considerations
    Statistical Analysis and Its Role in Ensuring Data Privacy
  • Privacy-Aware Machine Learning Techniques
  • Differential Privacy
    Federated Learning
    Homomorphic Encryption
  • Security in Machine Learning
  • Vulnerabilities and Threat Models
    Adversarial Machine Learning
  • Innovative Hacking Approaches in AI
  • Ethical Hacking in Data Science
    Case Studies of AI Systems Under Attack
  • Building Resilient AI Systems
  • Robustness and Generalization
    Defensive Distillation
  • Scorpions and the Wilds: Real-World Applications
  • Case Studies: Privacy-Aware ML in Healthcare
    Case Studies: Security in Financial Services
  • Coding Privacy-Aware ML Models
  • Practical Implementation of Privacy Techniques
    Hands-On Exercises: Developing Secure ML Models
  • Emerging Trends and Future Directions
  • AI Governance and Policy Frameworks
    Evolving Privacy Regulations and Their Impact on AI
  • Conclusion and Ethical Considerations
  • Balancing Innovation with Ethical Responsibility
    The Role of AI Engineers in Shaping Privacy Standards

Fachgebiete

Data Science