收敛感知神经网络训练

Hyungjun Oh, Yongseung Yu, G. Ryu, Gunjoo Ahn, Yuri Jeong, Yongjun Park, Jiwon Seo
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引用次数: 2

摘要

深度神经网络(DNN)的训练成本很高,需要大量的计算时间。虽然训练开销很高,但DNN训练中并非所有的计算都是相等的。有些参数收敛较快,其梯度计算对参数更新贡献不大;在近平稳点上,参数子集的变化可能很小。本文利用参数收敛性来优化深度神经网络训练中的梯度计算。我们设计了一种轻量级的监测技术来跟踪参数的收敛;我们对一组语义相关参数的梯度计算进行随机修剪,利用它们的收敛相关性。这些技术可以在现有的GPU内核中有效地实现。在我们的评估中,优化技术显著提高了四个DNN模型在三个公共数据集上的训练吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convergence-Aware Neural Network Training
Training a deep neural network(DNN) is expensive, requiring a large amount of computation time. While the training overhead is high, not all computation in DNN training is equal. Some parameters converge faster and thus their gradient computation may contribute little to the parameter update; in nearstationary points a subset of parameters may change very little. In this paper we exploit the parameter convergence to optimize gradient computation in DNN training. We design a light-weight monitoring technique to track the parameter convergence; we prune the gradient computation stochastically for a group of semantically related parameters, exploiting their convergence correlations. These techniques are efficiently implemented in existing GPU kernels. In our evaluation the optimization techniques substantially and robustly improve the training throughput for four DNN models on three public datasets.
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