English

Accelerating DNN Training in Wireless Federated Edge Learning Systems

Machine Learning 2020-10-27 v3 Signal Processing

Abstract

Training task in classical machine learning models, such as deep neural networks, is generally implemented at a remote cloud center for centralized learning, which is typically time-consuming and resource-hungry. It also incurs serious privacy issue and long communication latency since a large amount of data are transmitted to the centralized node. To overcome these shortcomings, we consider a newly-emerged framework, namely federated edge learning, to aggregate local learning updates at the network edge in lieu of users' raw data. Aiming at accelerating the training process, we first define a novel performance evaluation criterion, called learning efficiency. We then formulate a training acceleration optimization problem in the CPU scenario, where each user device is equipped with CPU. The closed-form expressions for joint batchsize selection and communication resource allocation are developed and some insightful results are highlighted. Further, we extend our learning framework to the GPU scenario. The optimal solution in this scenario is manifested to have the similar structure as that of the CPU scenario, recommending that our proposed algorithm is applicable in more general systems. Finally, extensive experiments validate the theoretical analysis and demonstrate that the proposed algorithm can reduce the training time and improve the learning accuracy simultaneously.

Keywords

Cite

@article{arxiv.1905.09712,
  title  = {Accelerating DNN Training in Wireless Federated Edge Learning Systems},
  author = {Jinke Ren and Guanding Yu and Guangyao Ding},
  journal= {arXiv preprint arXiv:1905.09712},
  year   = {2020}
}

Comments

To be published in IEEE Journal on Selected Areas in Communications

R2 v1 2026-06-23T09:19:59.215Z