FlexReduce: Flexible All-reduce for Distributed Deep Learning on Asymmetric Network Topology

Jinho Lee, Inseok Hwang, Soham Shah, Minsik Cho
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引用次数: 6

Abstract

We propose FlexReduce, an efficient and flexible all-reduce algorithm for distributed deep learning under irregular network hierarchies. With ever-growing deep neural networks, distributed learning over multiple nodes is becoming imperative for expedited training. There are several approaches leveraging the symmetric network structure to optimize the performance over different hierarchy levels of the network. However, the assumption of symmetric network does not always hold, especially in shared cloud environments. By allocating an uneven portion of gradients to each learner (GPU), FlexReduce outperforms conventional algorithms on asymmetric network structures, and still performs even or better on symmetric networks.
FlexReduce:用于非对称网络拓扑上分布式深度学习的灵活全约简
FlexReduce是一种高效灵活的全约简算法,用于不规则网络层次下的分布式深度学习。随着深度神经网络的不断发展,多节点的分布式学习对于快速训练变得势在必行。有几种方法利用对称网络结构在网络的不同层次上优化性能。然而,对称网络的假设并不总是成立,特别是在共享云环境中。通过将不均匀的梯度分配给每个学习器(GPU), FlexReduce在非对称网络结构上优于传统算法,并且在对称网络上仍然表现均匀或更好。
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