windows Azure云中windows和linux平台的性能与成本

S. Ristov, M. Gusev
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引用次数: 9

摘要

使用不同的并行化方法和技术可以有效地利用云资源。但是,它们中的大多数依赖于操作系统及其运行时环境。本文在Windows Azure的不同平台(即不同的操作系统和运行时环境)上使用并行线程,通过一系列实验来分析密集矩阵-矩阵乘法算法在相同硬件基础设施上的性能。与Linux平台提供更好的性能的假设相反,实验结果表明,Windows平台的运行性能提高了3.01倍,特别是对于可以放在最后一级缓存中并且不会产生大量缓存丢失的问题大小。如果考虑到成本或性能,我们还会确定特定操作系统在哪些区域是更好的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance vs cost for windows and linux platforms in Windows Azure cloud
The cloud resources can be efficiently utilized using different parallelization methods and techniques. However, most of them depend on the operating system and its runtime environment. In this paper we perform series of experiments to analyze the performance of dense matrix-matrix multiplication algorithm on the same hardware infrastructure using parallel threads on different platforms in Windows Azure, i.e., different operating systems and runtime environments. Contrary to the hypothesis that Linux platform provides better performance, the results of the experiments show that Windows platform runs up to 3.01 times better, especially for problem size that can be placed in last level cache and will not generate a lot of cache misses. We also determine the regions where a particular operating system is a better solution if cost or performance are considered.
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