GPU设计空间探索:基于神经网络的模型

A. Jooya, N. Dimopoulos, A. Baniasadi
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引用次数: 5

摘要

不同的应用程序有不同的内存和计算需求。因此,GPU上可获得的性能和能效取决于GPU资源和应用需求的平衡程度。在这项研究中,我们提出了一个基于神经网络的预测器来模拟GPGPU应用程序的功耗和性能。该模型可以准确预测设计空间中大多数配置的功率和性能,平均预测误差小于6.5%。对于具有高预测误差的配置,我们开发了一种异常值检测方法来从模型的输出中过滤掉它们。该滤波器捕获了大多数极端异常值,提高了模型的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GPU design space exploration: NN-based models
Different applications have different memory and computational demands. Therefore, obtainable performance and energy efficiency on a GPU depends on how well the GPU resources and application demands are balanced. In this study, we are presenting a Neural Network based predictor to model power and performance of GPGPU applications. The proposed model accurately predicts power and performance for most of the configurations in the design space with average prediction error of less than 6.5%. For configurations with high prediction errors, we have developed an outlier detection method to filter them out from the output of the model. The proposed filter captures most of the extreme outliers and improves the accuracy of the model.
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