Course Outline

Review of Core Federated Learning Concepts

  • Recap of basic Federated Learning methodologies
  • Challenges in Federated Learning: communication, computation, and privacy
  • Introduction to advanced Federated Learning techniques

Optimization Algorithms for Federated Learning

  • Overview of optimization challenges in Federated Learning
  • Advanced optimization algorithms: Federated Averaging (FedAvg), Federated SGD, and more
  • Implementing and tuning optimization algorithms for large-scale federated systems

Handling Non-IID Data in Federated Learning

  • Understanding non-IID data and its impact on Federated Learning
  • Strategies for handling non-IID data distributions
  • Case studies and real-world applications

Scaling Federated Learning Systems

  • Challenges in scaling Federated Learning systems
  • Techniques for scaling up: architecture design, communication protocols, and more
  • Deploying large-scale Federated Learning applications

Advanced Privacy and Security Considerations

  • Privacy-preserving techniques in advanced Federated Learning
  • Secure aggregation and differential privacy
  • Ethical considerations in large-scale Federated Learning

Case Studies and Practical Applications

  • Case study: Large-scale Federated Learning in healthcare
  • Hands-on practice with advanced Federated Learning scenarios
  • Real-world project implementation

Future Trends in Federated Learning

  • Emerging research directions in Federated Learning
  • Technological advancements and their impact on Federated Learning
  • Exploring future opportunities and challenges

Summary and Next Steps

Requirements

  • Experience with machine learning and deep learning techniques
  • Understanding of basic Federated Learning concepts
  • Proficiency in Python programming

Audience

  • Experienced AI researchers
  • Machine learning engineers
  • Data scientists
 21 Hours

Number of participants


Price per participant

Provisional Upcoming Courses (Require 5+ participants)

Related Categories