关于了解基于arm的多核服务器的能耗

B. Tudor, Y. M. Teo
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引用次数: 56

摘要

人们对用低功耗多核系统(如ARM Cortex-A9)取代传统服务器越来越感兴趣。然而,这样的系统通常是为具有比服务器应用程序更低内存和I/O需求的移动应用程序配置的。因此,应用程序和系统资源之间的不平衡在利用服务器工作负载的节能执行方面的影响和程度尚不清楚。本文提出了一个跟踪驱动的分析模型,用于理解ARM Cortex-A9多核系统上服务器工作负载的能源性能。我们方法的关键是对CPU核心、内存和I/O资源重叠程度的建模,以及在不影响执行时间的情况下估计优化能源性能的核心数量和时钟频率。由于能源使用是已使用功率和执行时间的乘积,因此该模型首先估计程序的执行时间。CPU时间考虑了内核和内存响应时间,建模为M/G/1排队系统。高性能计算、web托管和金融计算应用的工作负载特征表明,突发内存流量符合Pareto分布,而非突发内存流量呈指数分布。我们对这些服务器工作负载的分析表明,并非所有服务器工作负载都可以从更高的内核数量或时钟频率中受益。应用我们的模型,我们预测配置可以在不关闭核心的情况下将能源效率提高10%,在关闭未使用核心的情况下将能源效率提高三分之一。对于内存有限的程序,我们展示了有限的内存带宽可能会增加执行时间和能源使用,以至于能源成本可能高于典型的x64多核系统。最后,我们展示了增加内存和I/O带宽可以改善ARM Cortex-A9系统上服务器工作负载的执行时间和能源使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On understanding the energy consumption of ARM-based multicore servers
There is growing interest to replace traditional servers with low-power multicore systems such as ARM Cortex-A9. However, such systems are typically provisioned for mobile applications that have lower memory and I/O requirements than server application. Thus, the impact and extent of the imbalance between application and system resources in exploiting energy efficient execution of server workloads is unclear. This paper proposes a trace-driven analytical model for understanding the energy performance of server workloads on ARM Cortex-A9 multicore systems. Key to our approach is the modeling of the degrees of CPU core, memory and I/O resource overlap, and in estimating the number of cores and clock frequency that optimizes energy performance without compromising execution time. Since energy usage is the product of utilized power and execution time, the model first estimates the execution time of a program. CPU time, which accounts for both cores and memory response time, is modeled as an M/G/1 queuing system. Workload characterization of high performance computing, web hosting and financial computing applications shows that bursty memory traffic fits a Pareto distribution, and non-bursty memory traffic is exponentially distributed. Our analysis using these server workloads reveals that not all server workloads might benefit from higher number of cores or clock frequencies. Applying our model, we predict the configurations that increase energy efficiency by 10% without turning off cores, and up to one third with shutting down unutilized cores. For memory-bounded programs, we show that the limited memory bandwidth might increase both execution time and energy usage, to the point where energy cost might be higher than on a typical x64 multicore system. Lastly, we show that increasing memory and I/O bandwidth can improve both the execution time and the energy usage of server workloads on ARM Cortex-A9 systems.
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