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EchoPFL: Asynchronous Personalized Federated Learning on Mobile Devices with On-Demand Staleness Control

  • Xiaochen Li
  • , Sicong Liu*
  • , Zimu Zhou
  • , Bin Guo
  • , Yuan Xu
  • , Zhiwen Yu
  • *Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

The rise of mobile devices with abundant sensory data and local computing capabilities has driven the trend of federated learning (FL) on these devices. And personalized FL (PFL) emerges to train specific deep models for each mobile device to address data heterogeneity and varying performance preferences. However, mobile training times vary significantly, resulting in either delay (when waiting for slower devices for aggregation) or accuracy decline (when aggregation proceeds without waiting). In response, we propose a shift towards asynchronous PFL, where the server aggregates updates as soon as they are available. Nevertheless, existing asynchronous protocols are unfit for PFL because they are devised for federated training of a single global model. They suffer from slow convergence and decreased accuracy when confronted with severe data heterogeneity prevalent in PFL. Furthermore, they often exclude slower devices for staleness control, which notably compromises accuracy when these devices possess critical personalized data. Therefore, we propose EchoPFL, a coordination mechanism for asynchronous PFL. Central to EchoPFL is to include updates from all mobile devices regardless of their latency. To cope with the inevitable staleness from slow devices, EchoPFL revisits model broadcasting. It intelligently converts the unscalable broadcast to on-demand broadcast, leveraging the asymmetrical bandwidth in wireless networks and the dynamic clustering-based PFL. Experiments show that compared to status quo approaches, EchoPFL achieves a reduction of up to 88.2% in convergence time, an improvement of up to 46% in accuracy, and a decrease of 37% in communication costs.

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Original languageEnglish
Article number41
JournalProceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Volume8
Issue number1
Online published6 Mar 2024
DOIs
Publication statusPublished - Mar 2024

Funding

This work was partially supported by the National Science Fund for Distinguished Young Scholars (62025205) the National Natural Science Foundation of China (No. 62032020, 62102317), and CityU APRC grant No. 9610633. The authors thank Lei Wu for the mathematical discussions about EchoPFL and the anonymous reviewers for their constructive feedback that has made the work stronger.

Research Keywords

  • Asynchronous personalized federated learning
  • data heterogeneity
  • dynamic clustering
  • on-demand broadcast

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