预算区域采样(啤酒):不要将采样与热身分开,然后明智地使用您的模拟预算

D. G. Pérez, H. Berry, O. Temam
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引用次数: 4

摘要

虽然最近关于抽样的研究文章激增,从相当大的样本量开始,后来转向非常小的间隔,现在收敛到中等大小,甚至是不同的大小。对于100M的样本,预热不是问题,至少对于当前的缓存大小来说是这样。然而,对于非常小的样本,预热变得至关重要,特别是当采样目标精度为几个百分点时。然而,在大多数抽样研究工作中,热身在很大程度上被视为一个单独的问题。在本文中,我们提倡在(基于模拟器的)预热和采样中采用集成的方法。我们没有将热身和采样分开,而是采取了完全相反的方法,为热身和采样提供了一个通用的指令预算,并且我们试图尽可能明智地在其中任何一个上花费它。在26个Spec基准测试中,平均采样大小为2.88亿指令,这种预算和集成的预热和采样方法实现了1.68%的平均CPI误差,同时,由于集成的预热+采样和区域划分方法,它使用户免于设置采样或预热大小等任何微妙的决策
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Budgeted region sampling (BeeRS): do not separate sampling from warm-up, and then spend wisely your simulation budget
While the recent surge of research articles on sampling started with rather large sample sizes, it has later shifted to very small intervals, and it is now converging to intermediate sizes, and even to varying sizes. With 100M samples, warm-up is not an issue, at least with current cache sizes. However, with significantly smaller samples, warm-up becomes critical, especially when the sampling target accuracy is of the order of a few percent. However, in most sampling research works, warm-up has largely been treated as a separate issue. In this article, we advocate for an integrated approach at (simulator-based) warm-up and sampling. Instead of separating warm-up and sampling, we take exactly the opposite approach, provide a common instruction budget for warm-up and sampling, and we attempt to spend it as wisely as possible on either one. This budget and integrated approach at warm-up and sampling achieves an average CPI error of 1.68% on the 26 Spec benchmarks with an average sampling size of 288 millions instructions, and at the same time, it relieves the user from any delicate decision such as setting the sampling or warm-up sizes, thanks to the integrated warm-up+sampling and the region partitioning approaches
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