评估统计模拟在设计空间探索中的有效性

A. Joshi, J. Yi, R. Bell, L. Eeckhout, L. John, D. Lilja
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引用次数: 20

摘要

最近的研究提出了统计模拟作为一种快速评估超标量微处理器性能的技术。统计模拟的思想是度量程序的关键性能特征,生成具有这些特征的合成跟踪,并模拟合成跟踪。由于统计模拟的概率性质,性能估计迅速收敛到一个解决方案,使其成为有效地筛选大型微处理器设计空间的一种有吸引力的技术。在本文中,我们评估了统计模拟在探索设计空间方面的功效。具体来说,我们描述了统计仿真的以下方面:(i)性能瓶颈的保真度,关于程序的周期精确仿真,(ii)跟踪设计更改的能力,以及(Hi)统计仿真模型中准确性和复杂性之间的权衡。在我们的表征实验中,我们使用Plackett & Burman (P&B)设计,通过创建不同的性能瓶颈来系统地强调统计模拟。本文的主要结论是:(1)合成轨迹强调了至少与原始工作负载相同的10个最重要的处理器性能瓶颈;(2)统计仿真可以有效地跟踪设计变化,从而在具有侵略性的微架构的大设计空间中识别可行的设计点;(3)我们对4个统计仿真模型的评估表明,尽管需要非常详细的模型来实现良好的性能估计的绝对准确性;(4)采用P&B设计技术可以快速识别重点区域,提高统计仿真模型的精度。
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Evaluating the efficacy of statistical simulation for design space exploration
Recent research has proposed statistical simulation as a technique for fast performance evaluation of superscalar microprocessors. The idea in statistical simulation is to measure a program's key performance characteristics, generate a synthetic trace with these characteristics, and simulate the synthetic trace. Due to the probabilistic nature of statistical simulation the performance estimate quickly converges to a solution, making it an attractive technique to efficiently cull a large microprocessor design space. In this paper, we evaluate the efficacy of statistical simulation in exploring the design space. Specifically, we characterize the following aspects of statistical simulation: (i) fidelity of performance bottlenecks, with respect to cycle-accurate simulation of the program, (ii) ability' to track design changes, and (Hi) trade-off between accuracy and complexity in statistical simulation models. In our characterization experiments, we use the Plackett & Burman (P&B) design to systematically stress statistical simulation by creating different performance bottlenecks. The key results from this paper are: (1) Synthetic traces stress at least the same 10 most significant processor performance bottlenecks as the original workload, (2) Statistical simulation can effectively track design changes to identify feasible design points in a large design space of aggressive microarchitectures, (3) Our evaluation of 4 statistical simulation models shows that although a very detailed model is needed to achieve a good absolute accuracy in performance estimation, a simple model is sufficient to achieve good relative accuracy, and (4) The P&B design technique can be used to quickly identify areas to focus on to improve the accuracy of the statistical simulation model.
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