统计仿真中的控制流建模用于精确高效的处理器设计研究

L. Eeckhout, R. Bell, Bastiaan Stougie, K. D. Bosschere, L. John
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引用次数: 127

摘要

设计一种新的微处理器非常耗时。其中一个原因是,计算机设计师严重依赖于详细的架构模拟,这非常耗时。最近的工作集中在统计模拟来解决这个问题。统计仿真的基本思想是在程序执行过程中测量特征,生成具有这些特征的合成跟踪,然后模拟合成跟踪。统计生成的合成轨迹比原始程序序列小几个数量级,因此可以显著加快模拟速度。本文对统计模拟方法做出了以下贡献。首先,我们建议使用统计流图来描述程序执行的控制流。其次,在分析程序执行特征时,我们对分支预测器的延迟更新进行了建模。实验结果表明,采用这种改进的控制流模型进行统计仿真,其精度明显优于先前提出的HLS系统。我们评估了我们的方法对超标量微架构的功率/性能建模的绝对和相对准确性。结果表明,我们的统计仿真框架可以有效地探索处理器设计空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control flow modeling in statistical simulation for accurate and efficient processor design studies
Designing a new microprocessor is extremely time-consuming. One of the contributing reasons is that computer designers rely heavily on detailed architectural simulations, which are very time-consuming. Recent work has focused on statistical simulation to address this issue. The basic idea of statistical simulation is to measure characteristics during program execution, generate a synthetic trace with those characteristics and then simulate the synthetic trace. The statistically generated synthetic trace is orders of magnitude smaller than the original program sequence and hence results in significantly faster simulation. This paper makes the following contributions to the statistical simulation methodology. First, we propose the use of a statistical flow graph to characterize the control flow of a program execution. Second, we model delayed update of branch predictors while profiling program execution characteristics. Experimental results show that statistical simulation using this improved control flow modeling attains significantly better accuracy than the previously proposed HLS system. We evaluate both the absolute and the relative accuracy of our approach for power/performance modeling of superscalar microarchitectures. The results show that our statistical simulation framework can be used to efficiently explore processor design spaces.
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