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Energy efficiency in cloud-based MapReduce applications through better performance estimation

机译:通过更好的性能估算,在基于云的MapReduce应用程序中提高能效

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An important issue for efficient execution of MapReduce jobs on a cloud platform is selecting the best fitting virtual machine (VM) configuration(s) among the miscellany of choices that cloud providers offer. Wise selection of VM configurations can lead to better performance, cost and energy consumption. Therefore, it is crucial to explore the available configurations and choose the best one for each given MapReduce application. Executing the given application on all the configurations for comparison is a costly, time and energy consuming process. An alternative is to run the application on a subset of configurations (sample configurations) and estimate its performance on other configurations based on the obtained values on those sample configurations. We show that the choice of these sample configurations highly affects accuracy of later estimations. Our Smart Configuration Selection (SCS) scheme chooses better representatives from among all configurations by once-off analysis of given performance figures of the benchmarks so as to increase the accuracy of estimations of missing values, and consequently, to more accurately choose the configuration providing the highest performance. The results show that the SCS choice of sample configurations is very close to the best choice, and can reduce estimation error to 7.11% from the original 16.02% of random configuration selection. Furthermore, this more accurate performance estimation saves 24.3% energy on average.
机译:在云平台上有效执行MapReduce作业的一个重要问题是,在云提供商提供的各种选择中,选择最合适的虚拟机(VM)配置。明智地选择VM配置可以带来更好的性能,成本和能耗。因此,至关重要的是探索可用的配置,并为每个给定的MapReduce应用程序选择最佳的配置。在所有配置上执行给定的应用程序进行比较是一个昂贵,耗时和耗能的过程。一种替代方法是在配置的子集(样本配置)上运行该应用程序,并根据在这些样本配置上获得的值来估计其在其他配置上的性能。我们表明,这些样本配置的选择会极大地影响以后估算的准确性。我们的智能配置选择(SCS)方案通过对基准的给定性能指标进行一次分析,从所有配置中选择更好的代表,从而提高了缺失值估算的准确性,从而更准确地选择了提供以下配置的配置:最高的性能。结果表明,样本配置的SCS选择非常接近最佳选择,并且可以将估计误差从随机配置选择的原始16.02%减少到7.11%。此外,这种更准确的性能估计平均可节省24.3%的能量。

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