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Glint: Decentralized Federated Graph Learning with Traffic Throttling and Flow Scheduling

机译:闪光:具有交通限制和流量调度的分散联盟图学习

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Federated learning has been proposed as a promising distributed machine learning paradigm with strong privacy protection on training data. Existing work mainly focuses on training convolutional neural network (CNN) models good at learning on image/voice data. However, many applications generate graph data and graph learning cannot be efficiently supported by existing federated learning techniques. In this paper, we study federated graph learning (FGL) under the cross-silo setting where several servers are connected by a wide-area network, with the objective of improving the Quality-of-Service (QoS) of graph learning tasks. We find that communication becomes the main system bottleneck because of frequent information exchanges among federated severs and limited network bandwidth. To conquer this challenge, we design Glint, a decentralized federated graph learning system with two novel designs: network traffic throttling and priority-based flows scheduling. To evaluate the effectiveness of Glint, we conduct both experiments on a testbed and trace-driven simulations. The results show that Glint can significantly outperform existing federated learning solutions.
机译:已提出联合学习作为一个有前途的分布式机器学习范式,具有对培训数据的强大隐私保护。现有工作主要侧重于培训卷积神经网络(CNN)型号擅长在图像/语音数据上学习。但是,通过现有的联合学习技术无法有效地支持许多应用程序生成图数据和图形学习。在本文中,我们研究了在跨筒仓设置下的联合图形学习(FGL),其中多个服务器通过广域网连接,目的是提高图表学习任务的服务质量(QoS)。我们发现,由于联邦的服务和网络带宽有限的信息交换,通信成为主要系统瓶颈。为了征服这一挑战,我们设计闪烁,一个具有两种新设计的分散联盟图形学习系统:网络流量节流和优先级的流量调度。为了评估闪光的有效性,我们对测试平台和追踪仿真进行了两种实验。结果表明,闪光可以显着优于现有联合学习解决方案。

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