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A neural model for processor-throughput using hardware parameters and software's dynamic behavior

机译:使用硬件参数和软件动态行为的处理器吞吐量的神经模型

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Design space exploration of a processor system, prior to its hardware implementation, usually involves cycle-accurate simulations. The simulations provide a good measure of performance but require long periods of time even when a small set of design variations are assessed. An alternative is to use empirically-developed models which are much faster than actual simulations. In this paper, we have proposed an NN model for processor performance (IPC) prediction. The model uses a larger set of input parameters (especially the software parameters) than the prior models. For dimension reduction, we found PCA to be a more useful technique than correlation and graphical analysis. For the purpose of training the NNs, we used the data from a large number of simulations of industry-standard SPEC CPU 2000 and SPEC CPU 2006 benchmark suites In order to collect the NN training data in a reasonable period of time, we utilized two well-known techniques, namely, benchmark-subsetting and SPs.
机译:在硬件实现之前,对处理器系统的设计空间探索通常涉及精确周期的仿真。仿真可以很好地衡量性能,但即使评估了少量设计变化,也需要较长的时间。一种替代方法是使用根据经验开发的模型,该模型比实际模拟快得多。在本文中,我们提出了用于处理器性能(IPC)预测的NN模型。与以前的模型相比,该模型使用更大的输入参数集(尤其是软件参数)。对于降维,我们发现PCA是比相关和图形分析更有用的技术。为了训练NN,我们使用了来自大量行业标准SPEC CPU 2000和SPEC CPU 2006基准套件仿真的数据。为了在合理的时间内收集NN训练数据,我们利用了两个已知技术,即基准设置和SP。

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