论文标题
从联合到雾学习:通过异质无线网络分布式机器学习
From Federated to Fog Learning: Distributed Machine Learning over Heterogeneous Wireless Networks
论文作者
论文摘要
机器学习(ML)任务在当今的网络应用程序中变得无处不在。最近,通过利用收集数据的节点的处理能力来利用处理能力,成为一种用于培训网络边缘的ML模型的技术。由于在设备之间存在的计算和通信能力上存在明显的异质性,因此在当代网络中采用常规联合学习的挑战存在一些挑战。为了解决这个问题,我们主张一种称为雾气学习的新学习范式,该范式将在从边缘设备到云服务器的节点连续分发ML模型培训。雾学习增强了三个主要维度的联合学习:网络,异质性和接近性。它考虑了一个多层混合学习框架,该框架由具有各种接近的异质设备组成。它说明了每个网络层的异质节点之间本地网络的拓扑结构,并通过设备对设备(D2D)通信进行协作/合作学习。这是从用于联合学习中的参数传输的星网拓扑转移到大规模分布式拓扑的。我们讨论了几个开放研究方向,以实现雾化学习。
Machine learning (ML) tasks are becoming ubiquitous in today's network applications. Federated learning has emerged recently as a technique for training ML models at the network edge by leveraging processing capabilities across the nodes that collect the data. There are several challenges with employing conventional federated learning in contemporary networks, due to the significant heterogeneity in compute and communication capabilities that exist across devices. To address this, we advocate a new learning paradigm called fog learning which will intelligently distribute ML model training across the continuum of nodes from edge devices to cloud servers. Fog learning enhances federated learning along three major dimensions: network, heterogeneity, and proximity. It considers a multi-layer hybrid learning framework consisting of heterogeneous devices with various proximities. It accounts for the topology structures of the local networks among the heterogeneous nodes at each network layer, orchestrating them for collaborative/cooperative learning through device-to-device (D2D) communications. This migrates from star network topologies used for parameter transfers in federated learning to more distributed topologies at scale. We discuss several open research directions to realizing fog learning.