TL;DR
SacFL is a novel federated continual learning framework that enables resource-constrained end devices to autonomously detect data shifts and update models efficiently, addressing privacy and resource limitations.
Contribution
It introduces an Encoder-Decoder architecture with contrastive learning for autonomous data shift detection in federated continual learning on end devices.
Findings
Effective in class-incremental scenarios
Reduces storage requirements significantly
Demonstrated practicality through a demo system
Abstract
The proliferation of end devices has led to a distributed computing paradigm, wherein on-device machine learning models continuously process diverse data generated by these devices. The dynamic nature of this data, characterized by continuous changes or data drift, poses significant challenges for on-device models. To address this issue, continual learning (CL) is proposed, enabling machine learning models to incrementally update their knowledge and mitigate catastrophic forgetting. However, the traditional centralized approach to CL is unsuitable for end devices due to privacy and data volume concerns. In this context, federated continual learning (FCL) emerges as a promising solution, preserving user data locally while enhancing models through collaborative updates. Aiming at the challenges of limited storage resources for CL, poor autonomy in task shift detection, and difficulty in…
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Taxonomy
MethodsContrastive Learning
