Efficient and Structural Gradient Compression with Principal Component Analysis for Distributed Training

Jiaxin Tan, Chao Yao, Zehua Guo
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Abstract

Distributed machine learning is a promising machine learning approach for academia and industry. It can generate a machine learning model for dispersed training data via iterative training in a distributed fashion. To speed up the training process of distributed machine learning, it is essential to reduce the communication load among training nodes. In this paper, we propose a layer-wise gradient compression scheme based on principal component analysis and error accumulation. The key of our solution is to consider the gradient characteristics and architecture of neural networks by taking advantage of the compression ability enabled by PCA and the feedback ability enabled by error accumulation. The preliminary results on image classification task show that our scheme achieves good performance and reduces 97% of the gradient transmission.
基于主成分分析的高效结构梯度压缩分布式训练
对于学术界和工业界来说,分布式机器学习是一种很有前途的机器学习方法。它可以通过分布式方式的迭代训练,为分散的训练数据生成机器学习模型。为了加快分布式机器学习的训练过程,必须减少训练节点之间的通信负荷。本文提出了一种基于主成分分析和误差积累的分层梯度压缩方案。该解决方案的关键是利用主成分分析的压缩能力和误差积累的反馈能力,充分考虑神经网络的梯度特性和结构。在图像分类任务上的初步实验结果表明,该方法达到了较好的分类效果,减少了97%的梯度传输。
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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