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Course Outline

Introduction to Federated Learning

  • Comparison of traditional AI training versus federated learning.
  • Key principles and benefits of federated learning.
  • Application scenarios of federated learning in Edge AI.

Federated Learning Architecture and Workflow

  • Exploring client-server and peer-to-peer federated learning models.
  • Data partitioning and decentralized model training processes.
  • Communication protocols and aggregation strategies.

Implementing Federated Learning with TensorFlow Federated

  • Configuring TensorFlow Federated for distributed AI training.
  • Constructing federated learning models using Python.
  • Simulating federated learning on edge devices.

Federated Learning with PyTorch and OpenFL

  • Introduction to OpenFL for federated learning.
  • Developing PyTorch-based federated models.
  • Customizing federated aggregation techniques.

Optimizing Performance for Edge AI

  • Hardware acceleration techniques for federated learning.
  • Minimizing communication overhead and latency.
  • Adaptive learning strategies tailored for resource-constrained devices.

Data Privacy and Security in Federated Learning

  • Privacy-preserving techniques (Secure Aggregation, Differential Privacy, Homomorphic Encryption).
  • Mitigating data leakage risks in federated AI models.
  • Regulatory compliance and ethical considerations.

Deploying Federated Learning Systems

  • Setting up federated learning on actual edge devices.
  • Monitoring and updating federated models.
  • Scaling federated learning deployments in enterprise environments.

Future Trends and Case Studies

  • Emerging research areas in federated learning and Edge AI.
  • Real-world case studies from healthcare, finance, and IoT sectors.
  • Next steps for advancing federated learning solutions.

Summary and Next Steps

Requirements

  • Proficient understanding of machine learning and deep learning concepts.
  • Experience with Python programming and AI frameworks (such as PyTorch, TensorFlow, or comparable tools).
  • Fundamental knowledge of distributed computing and networking.
  • Familiarity with data privacy and security concepts in the context of AI.

Target Audience

  • AI researchers.
  • Data scientists.
  • Security specialists.
 21 Hours

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