基于异构边缘的动态资源感知模型聚合

Hung T. Nguyen, Roberto Morabito, Kwang Taik Kim, M. Chiang
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引用次数: 2

摘要

边缘计算以其灵活、安全和高性能的特点彻底改变了移动和无线网络世界。最近,我们看到越来越多的人使用它来部署机器学习(ML)技术,如联邦学习(FL)。与传统的分布式机器学习(ML)相比,FL的出现是为了提高通信效率。最初的FL假定有一个中央聚合服务器来聚合本地优化的参数,这可能会带来可靠性和延迟问题。在本文中,我们深入研究了在每一轮FL优化中,基于当前参与者和/或可用资源动态选择的飞行主人来取代中央服务器的策略。具体来说,我们比较不同的指标来选择这个飞行大师,并评估共识算法来执行选择。我们的研究结果表明,与在我们的EdgeAI测试平台和使用操作边缘测试平台在真实5G网络上进行的测量结果相比,使用我们的飞行主FL框架可以显着减少运行时间。
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On-the-fly Resource-Aware Model Aggregation for Federated Learning in Heterogeneous Edge
Edge computing has revolutionized the world of mobile and wireless networks world thanks to its flexible, secure, and performing characteristics. Lately, we have witnessed the increasing use of it to make more performing the deployment of machine learning (ML) techniques such as federated learning (FL). FL was debuted to improve communication efficiency compared to conventional distributed machine learning (ML). The original FL assumes a central aggregation server to aggregate locally optimized parameters and might bring reliability and latency issues. In this paper, we conduct an in-depth study of strategies to replace this central server by a flying master that is dynamically selected based on the current participants and/or available resources at every FL round of optimization. Specifically, we compare different metrics to select this flying master and assess consensus algorithms to perform the selection. Our results demonstrate a significant reduction of runtime using our flying master FL framework compared to the original FL from measurements results conducted in our EdgeAI testbed and over real 5G networks using an operational edge testbed.
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