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Course Outline
Introduction to Privacy-Preserving ML
- Motivations and risks in sensitive data environments
- Overview of privacy-preserving ML techniques
- Threat models and regulatory considerations (e.g., GDPR, HIPAA)
Federated Learning
- Concept and architecture of federated learning
- Client-server synchronization and aggregation
- Implementation using PySyft and Flower
Differential Privacy
- Mathematics of differential privacy
- Applying DP in data queries and model training
- Using Opacus and TensorFlow Privacy
Secure Multiparty Computation (SMPC)
- SMPC protocols and use cases
- Encryption-based vs secret-sharing approaches
- Secure computation workflows with CrypTen or PySyft
Homomorphic Encryption
- Fully vs partially homomorphic encryption
- Encrypted inference for sensitive workloads
- Hands-on with TenSEAL and Microsoft SEAL
Applications and Industry Case Studies
- Privacy in healthcare: federated learning for medical AI
- Secure collaboration in finance: risk models and compliance
- Defense and government use cases
Summary and Next Steps
Requirements
- An understanding of machine learning principles
- Experience with Python and ML libraries (e.g., PyTorch, TensorFlow)
- Familiarity with data privacy or cybersecurity concepts is helpful
Audience
- AI researchers
- Data protection and privacy compliance teams
- Security engineers working in regulated industries
14 Hours