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Accuracy analysis of machine learning-based performance modeling for microprocessors

机译:基于机器学习的微处理器性能建模的精度分析

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This paper analyzes accuracy of performance models generated by machine learning-based empirical modeling methodology. Although the accuracy strongly depends on the quality of learning procedure, it is not clear what kind of learning algorithms and training data set (or feature) should be used. This paper inclusively explores the learning space of processor performance modeling as a case study. We focus on static architectural parameters as training data set such as cache size and clock frequency. Experimental results show that a tree-based non-linear regression modeling is superior to a stepwise linear regression modeling. Another observation is that clock frequency is the most important feature to improve prediction accuracy.
机译:本文分析了基于机器学习的经验建模方法生成的性能模型的准确性。尽管准确性在很大程度上取决于学习过程的质量,但尚不清楚应使用哪种学习算法和训练数据集(或功能)。本文以案例研究的方式探索了处理器性能建模的学习空间。我们专注于静态架构参数作为训练数据集,例如缓存大小和时钟频率。实验结果表明,基于树的非线性回归建模优于逐步线性回归建模。另一个观察结果是时钟频率是提高预测精度的最重要特征。

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