Close

Presentation

Resilient Federated Learning on Embedded Devices with Constrained Network Connectivity
DescriptionFederated learning enables decentralized model training while preserving data privacy. However, since the learning process overlays the physical network infrastructure, the efficiency of learning can be impacted by network connectivity. In this work, we conducted extensive experiments to empirically characterize the impacts and leverage the insights to propose an adaptive federation protocol, where clients with limited bandwidth are only prompted to transmit adaptively compressed gradient updates when the gradient similarity score is similar between the local and global models. Our evaluation in simulated environments and on real hardware devices shows bandwidth savings of 60% to 78% compared to state-of-the-art methods.
Event Type
Research Manuscript
TimeTuesday, June 2410:30am - 10:45am PDT
Location3006, Level 3
Topics
Security
Tracks
SEC1: AI/ML Security/Privacy