Decentralized Learning Made Easy with DecentralizePy

Akash Dhasade, Anne-Marie Kermarrec, Rafael Pires, Rishi Sharma, Milos Vujasinovic
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引用次数: 2

Abstract

Decentralized learning (DL) has gained prominence for its potential benefits in terms of scalability, privacy, and fault tolerance. It consists of many nodes that coordinate without a central server and exchange millions of parameters in the inherently iterative process of machine learning (ML) training. In addition, these nodes are connected in complex and potentially dynamic topologies. Assessing the intricate dynamics of such networks is clearly not an easy task. Often in literature, researchers resort to simulated environments that do not scale and fail to capture practical and crucial behaviors, including the ones associated to parallelism, data transfer, network delays, and wall-clock time. In this paper, we propose decentralizepy, a distributed framework for decentralized ML, which allows for the emulation of large-scale learning networks in arbitrary topologies. We demonstrate the capabilities of decentralizepy by deploying techniques such as sparsification and secure aggregation on top of several topologies, including dynamic networks with more than one thousand nodes.
使用DecentralizePy使分散学习变得容易
去中心化学习(DL)因其在可扩展性、隐私性和容错性方面的潜在优势而备受关注。它由许多节点组成,这些节点在没有中央服务器的情况下进行协调,并在机器学习(ML)训练的固有迭代过程中交换数百万个参数。此外,这些节点以复杂且可能动态的拓扑结构连接。评估这类网络的复杂动态显然不是一件容易的事。通常在文献中,研究人员求助于无法扩展的模拟环境,并且无法捕获实际和关键的行为,包括与并行性、数据传输、网络延迟和挂钟时间相关的行为。在本文中,我们提出了去中心化机器学习的分布式框架decentralizepy,它允许在任意拓扑中模拟大规模学习网络。我们通过在多个拓扑(包括超过一千个节点的动态网络)上部署诸如稀疏化和安全聚合之类的技术来演示去中心化的功能。
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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