PARSEC基准输入的保真度和缩放

Christian Bienia, Kai Li
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引用次数: 43

摘要

一个好的基准测试套件应该为用户提供具有多种保真度的输入,以适应不同的用例,比如在真实机器上运行、寄存器级模拟或门级模拟。虽然过去已经探索了输入减少,但缺乏对如何系统地扩展基准套件的输入集的理解。本文提出了一个框架,该框架采用了一种新颖的观点,即基准输入应被视为其原始全尺寸输入的近似值。它将基准的输入选择问题表述为在时间约束下使基准的准确性最大化的优化问题。本文演示了如何使用所提出的方法为PARSEC基准创建几个模拟输入集,以及如何量化和测量它们的近似误差。论文还显示了输入的哪些部分更有可能扭曲其原始特征。最后,本文为用户创建自己的自定义输入集提供了指导方针。
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Fidelity and scaling of the PARSEC benchmark inputs
A good benchmark suite should provide users with inputs that have multiple levels of fidelity for different use cases such as running on real machines, register level simulations, or gate-level simulations. Although input reduction has been explored in the past, there is a lack of understanding how to systematically scale input sets for a benchmark suite. This paper presents a framework that takes the novel view that benchmark inputs should be considered approximations of their original, full-sized inputs. It formulates the input selection problem for a benchmark as an optimization problem that maximizes the accuracy of the benchmark subject to a time constraint. The paper demonstrates how to use the proposed methodology to create several simulation input sets for the PARSEC benchmarks and how to quantify and measure their approximation error. The paper also shows which parts of the inputs are more likely to distort their original characteristics. Finally, the paper provides guidelines for users to create their own customized input sets.
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