Optimal Batch-Size Control for Low-Latency Federated Learning with Device Heterogeneity
Huiling Yang, Zhanwei Wang, and Kaibin Huang

TL;DR
This paper introduces a C$^2$-aware framework for optimal batch-size control in federated learning, reducing latency in heterogeneous IoT devices while maintaining convergence, crucial for time-sensitive applications.
Contribution
It presents a novel latency minimization framework that balances communication and computation tradeoffs, tailored to device heterogeneity and fading scenarios in federated learning.
Findings
Proposed strategies outperform conventional batch-size schemes.
Framework effectively balances accuracy and latency.
Validated with real datasets in IoT scenarios.
Abstract
Federated learning (FL) has emerged as a popular approach for collaborative machine learning in sixth-generation (6G) networks, primarily due to its privacy-preserving capabilities. The deployment of FL algorithms is expected to empower a wide range of Internet-of-Things (IoT) applications, e.g., autonomous driving, augmented reality, and healthcare. The mission-critical and time-sensitive nature of these applications necessitates the design of low-latency FL frameworks that guarantee high learning performance. In practice, achieving low-latency FL faces two challenges: the overhead of computing and transmitting high-dimensional model updates, and the heterogeneity in communication-and-computation (C) capabilities across devices. To address these challenges, we propose a novel C-aware framework for optimal batch-size control that minimizes end-to-end (E2E) learning latency while…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Age of Information Optimization · IoT and Edge/Fog Computing
