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Optimization of Industrial Neural Network Simulators for GPGPUs

机译:GPGPU工业神经网络模拟器的优化

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This paper introduces the porting of an industrial neural network simulator onto GPUs used in a tool-chain to sort massive amounts of E-mails and other textual data. Compared to other previous work, all steps are being executed on the GPU, achieving overall up to 33 × speedup without using any cuBLAS functionality. All the time-consuming routines have been ported onto the GPU, i.e. the training-, the simulation- and the verification-phases, the training being the most time-consuming. It is planned to include these GPU-kernels into the product for special costumer's demands.
机译:本文介绍了工业神经网络模拟器的移植到工具链中使用的GPU,以对大量的电子邮件和其他文本数据进行分类。与其他以前的工作相比,所有步骤都在GPU上执行,在不使用任何Cublas功能的情况下,在不使用任何Cublas功能的情况下实现最多33倍的总体增速。所有耗时的例程都已移植到GPU上,即培训 - ,仿真和验证阶段,培训是最耗时的。计划将这些GPU-内核包含在产品中,以进行特殊客户的需求。

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