面向联邦学习的计算能力网络体系结构:范式与视角

Jie Mei, Min Wei, Yukun Sun, Jiacong Li, Gefan Zhou, Xing Zhang
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引用次数: 1

摘要

计算能力网络(CPN)是下一代通信系统的一种新的网络范式。与此同时,联邦学习也越来越受到人们的关注。然而,对计算能力网络中联邦学习的资源调度问题的研究却很少。在计算能力网络中存在大量的异构计算资源,因此有效利用CPN中的资源进行联邦学习是非常重要的。因此,我们的研究重点是计算能力网络中联邦学习的资源调度问题,以弥补目前相关研究的不足。本文提出了一种结合CPN和联邦学习的框架和功能体系结构,用于联邦学习中的资源优化。此外,我们还表明,使用分裂学习的任务卸载可以显著提高联邦学习的计算性能,特别是在本地计算方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Architecture of Computing Power Network Towards Federated Learning: Paradigms and Perspectives
Computing Power Network (CPN) is a new network paradigm for next generation communication systems. Meanwhile, Federated Learning (FL) has attracted more and more attention nowadays. However, there are few researches on the resource scheduling problem of federated learning in computing power network. There are a large number of heterogeneous computing resources available in the computing power network, so efficient utilization of resources in CPN for federated learning is very important. Therefore, our research focuses on the resource scheduling problem of federated learning in computing power networks to make up for the shortcomings of current related research. In this paper, we propose a framework and functional architecture combining CPN and federated learning for the purpose of resource optimization in federated learning. Besides, we show that task offloading using split learning can significantly improve the computational performance of federated learning, especially on local computing.
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