
Fairness and Robustness in Federated Learning with Virginia Smith -#504
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
00:00
Federated Clustering Insights
This chapter explores clustering techniques in the realm of federated learning, particularly a one-shot communication scheme based on k-means clustering. It emphasizes the advantages of data heterogeneity across devices for enhancing clustering performance while addressing challenges related to fairness, robustness, and convergence. The discussion further highlights multitask learning potentials and the role of hierarchical model tiering in optimizing communication and privacy in personalized model training.
Transcript
Play full episode