Resource Consumption for Supporting Federated Learning Enabled Network Edge Intelligence

Yijing Liu, Gang Feng, Yao Sun, Xiaoqian Li, Jianhong Zhou, Shuang Qin
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引用次数: 1

Abstract

Federated learning (FL) has recently become one of the hottest focuses in network edge intelligence. In the FL framework, user equipments (UEs) train local machine learning (ML) models and transmit the trained models to an aggregator where a global model is formed and then sent back to UEs, such that FL can enable collaborative model training. In large-scale and dynamic edge networks, both local model training and transmission may not be always successful due to constrained power and computing resources at mobile devices, wireless channel impairments, bandwidth limitations, etc., which directly degrades FL performance in terms of model accuracy and/or training time. On the other hand, we need to quantify the benefits and cost of deploying edge intelligence when we plan to improve network performance by using artificial intelligence (AI) techniques which definitely incur certain cost. Therefore, it is imperative to deeply understand the relationship between the required multiple-dimensional resources and FL performance to facilitate FL enabled edge intelligence. In this paper, we construct an analytical model for investigating the relationship between the accuracy of ML model and consumed network resources in FL enabled edge networks. Based on the analytical model, we can explicitly quantify the trained model accuracy given spatial-temporal domain distribution, available user computing and communication resources. Numerical results validate the effectiveness of our theoretical modeling and analysis. Our analytical model in this paper provides some useful guidelines for appropriately promoting FL enabled edge network intelligence.
支持联邦学习支持的网络边缘智能的资源消耗
近年来,联邦学习(FL)已成为网络边缘智能研究的热点之一。在FL框架中,用户设备(ue)训练局部机器学习(ML)模型,并将训练好的模型传输到聚合器,聚合器形成全局模型,然后发送回ue,这样FL就可以实现协作模型训练。在大规模和动态边缘网络中,由于移动设备的功率和计算资源受限、无线信道受损、带宽限制等,本地模型训练和传输可能并不总是成功的,这直接降低了FL在模型准确性和/或训练时间方面的性能。另一方面,当我们计划通过使用人工智能(AI)技术来提高网络性能时,我们需要量化部署边缘智能的收益和成本,这肯定会产生一定的成本。因此,必须深入了解所需的多维资源与FL性能之间的关系,以促进FL支持的边缘智能。在本文中,我们构建了一个分析模型,用于研究FL支持的边缘网络中ML模型的准确性与消耗的网络资源之间的关系。在分析模型的基础上,我们可以在给定时空分布、可用用户计算和通信资源的情况下,明确量化训练模型的精度。数值结果验证了理论建模和分析的有效性。本文的分析模型为适当提升FL支持的边缘网络智能提供了一些有用的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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