Time-sensitive Learning for Heterogeneous Federated Edge Intelligence
Yong Xiao, Xiaohan Zhang, Guangming Shi, Marwan Krunz, Diep N. Nguyen,, Dinh Thai Hoang

TL;DR
This paper introduces a time-sensitive federated learning framework for heterogeneous edge systems, significantly reducing training time by optimizing server participation and coordination methods.
Contribution
It proposes a novel TS-FL framework with solutions for both synchronous and asynchronous coordination, including server dropping and joint optimization to improve training efficiency.
Findings
TS-FL-SC reduces training time by up to 63%.
TS-FL-ASC reduces training time by up to 28%.
Proposed methods effectively address straggler and staleness effects.
Abstract
Real-time machine learning has recently attracted significant interest due to its potential to support instantaneous learning, adaptation, and decision making in a wide range of application domains, including self-driving vehicles, intelligent transportation, and industry automation. We investigate real-time ML in a federated edge intelligence (FEI) system, an edge computing system that implements federated learning (FL) solutions based on data samples collected and uploaded from decentralized data networks. FEI systems often exhibit heterogenous communication and computational resource distribution, as well as non-i.i.d. data samples, resulting in long model training time and inefficient resource utilization. Motivated by this fact, we propose a time-sensitive federated learning (TS-FL) framework to minimize the overall run-time for collaboratively training a shared ML model. Training…
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