Parallel neural network training on Multi-Spert

P. Farber, K. Asanović
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引用次数: 35

Abstract

Multi-Spert is a scalable parallel system built from multiple Spert-II nodes which we have constructed to speed error backpropagation neural network training for speech recognition research. We present the Multi-Spert hardware and software architecture, and describe our implementation of two alternative parallelization strategies for the backprop algorithm. We have developed detailed analytic models of the two strategies which allow us to predict performance over a range of network and machine parameters. The models' predictions are validated by measurements for a prototype five node Multi-Spert system. This prototype achieves a neural network training performance of over 530 million connection updates per second (MCUPS) while training a realistic speech application neural network. The model predicts that performance will scale to over 800 MCUPS for eight nodes.
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基于Multi-Spert的并行神经网络训练
Multi-Spert是由多个Spert-II节点构建而成的可扩展并行系统,旨在加快语音识别研究中错误反向传播神经网络的训练速度。我们提出了Multi-Spert硬件和软件架构,并描述了我们对backprop算法的两种可选并行化策略的实现。我们已经开发了两种策略的详细分析模型,使我们能够预测网络和机器参数范围内的性能。模型的预测通过一个原型5节点Multi-Spert系统的测量得到了验证。该原型在训练真实语音应用神经网络的同时,实现了每秒超过5.3亿次连接更新(MCUPS)的神经网络训练性能。该模型预测,8个节点的性能将扩展到800 MCUPS以上。
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