通过数据转换对商用机器进行排名

Beau Piccart, A. Georges, H. Blockeel, L. Eeckhout
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引用次数: 13

摘要

基准测试联盟和公司报告的性能数字很少或根本没有提供对不属于基准测试套件的应用程序的性能的洞察。本文描述了数据转换,这是一种解决这种普遍存在的基准问题的新方法。数据转置根据目标机器上的应用程序与有限数量的预测机器上的行业标准基准的性能相似性来预测目标机器上的应用程序的性能。数据转置的关键思想是利用机器相似性,而不是像以前的工作那样利用工作负载相似性,即,数据转置识别与感兴趣的目标机器最相似的预测机器,用于预测感兴趣应用程序的性能。我们使用SPEC CPU2006基准测试和117台商用机器验证了数据转换的准确性和有效性。我们报告说,通过数据置换获得的机器排名与使用测量性能数字获得的机器排名具有良好的相关性(平均相关系数为0.93)。数据转置不仅提高了平均相关性,我们还证明了数据转置对异常基准的鲁棒性更强,即最差相关系数从现有技术的0.59提高到0.71。更具体地说,使用数据置换来预测某个应用程序的前1名机器会导致大多数工作负载下性能最佳的机器(一个基准测试的平均缺陷为1.2%,最大缺陷为24.8%),而先前的工作导致某些工作负载的缺陷超过100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ranking commercial machines through data transposition
The performance numbers reported by benchmarking consortia and corporations provide little or no insight into the performance of applications of interest that are not part of the benchmark suite. This paper describes data transposition, a novel methodology for addressing this ubiquitous benchmarking problem. Data transposition predicts the performance for an application of interest on a target machine based on its performance similarities with the industry-standard benchmarks on a limited number of predictive machines. The key idea of data transposition is to exploit machine similarity rather than workload similarity as done in prior work, i.e., data transposition identifies a predictive machine that is most similar to the target machine of interest for predicting performance for the application of interest. We demonstrate the accuracy and effectiveness of data transposition using the SPEC CPU2006 benchmarks and a set of 117 commercial machines. We report that the machine ranking obtained through data transposition correlates well with the machine ranking obtained using measured performance numbers (average correlation coefficient of 0.93). Not only does data transposition improve average correlation, we also demonstrate that data transposition is more robust towards outlier benchmarks, i.e., the worst-case correlation coefficient improves from 0.59 by prior art to 0.71. More concretely, using data transposition to predict the top-1 machine for an application of interest leads to the best performing machine for most workloads (average deficiency of 1.2% and max deficiency of 24.8% for one benchmark), whereas prior work leads to deficiencies over 100% for some workloads.
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