Towards Efficient Federated Learning: Layer-Wise Pruning-Quantization Scheme and Coding Design

Author:

Zhu Zheqi12,Shi Yuchen12,Xin Gangtao12ORCID,Peng Chenghui3,Fan Pingyi12ORCID,Letaief Khaled B.4

Affiliation:

1. Department of Electronic Engineering, Tsinghua University, Beijing 100084, China

2. Beijing National Research Center for Information Science and Technology (BNRist), Tsinghua University, Beijing 100084, China

3. Wireless Technology Laboratory, Huawei Technologies, Shanghai 200121, China

4. Department of Electronic and Computer Engineering, Hong Kong University of Science and Technology, Hong Kong

Abstract

As a promising distributed learning paradigm, federated learning (FL) faces the challenge of communication–computation bottlenecks in practical deployments. In this work, we mainly focus on the pruning, quantization, and coding of FL. By adopting a layer-wise operation, we propose an explicit and universal scheme: FedLP-Q (federated learning with layer-wise pruning-quantization). Pruning strategies for homogeneity/heterogeneity scenarios, the stochastic quantization rule, and the corresponding coding scheme were developed. Both theoretical and experimental evaluations suggest that FedLP-Q improves the system efficiency of communication and computation with controllable performance degradation. The key novelty of FedLP-Q is that it serves as a joint pruning-quantization FL framework with layer-wise processing and can easily be applied in practical FL systems.

Funder

National Key Research and Development Program of China

Research Grants Council

Publisher

MDPI AG

Subject

General Physics and Astronomy

Reference28 articles.

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