Parallel Training of a Back-Propagation Neural Network Using CUDA

Xavier Sierra-Canto, Francisco Madera-Ramirez, Víctor Uc Cetina
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引用次数: 58

Abstract

The Artificial Neural Networks (ANN) training represents a time-consuming process in machine learning systems. In this work we provide an implementation of the back-propagation algorithm on CUDA, a parallel computing architecture developed by NVIDIA. Using CUBLAS, a CUDA implementation of the Basic Linear Algebra Subprograms library (BLAS), the process is simplified, however, the use of kernels was necessary since CUBLAS does not have all the required operations. The implementation was tested with two standard benchmark data sets and the results show that the parallel training algorithm runs 63 times faster than its sequential version.
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基于CUDA的反向传播神经网络并行训练
在机器学习系统中,人工神经网络(ANN)的训练是一个耗时的过程。在这项工作中,我们提供了在CUDA上的反向传播算法的实现,CUDA是由NVIDIA开发的并行计算架构。使用CUBLAS(基本线性代数子程序库(BLAS)的CUDA实现),该过程得到了简化,但是,由于CUBLAS不具备所有所需的操作,因此必须使用内核。在两个标准基准数据集上对实现进行了测试,结果表明并行训练算法的运行速度比顺序训练算法快63倍。
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