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Exploration of Energy Consumption Using the Intel Running Average Power Limit Interface

机译:使用英特尔运行平均功率限量界面的能耗探索

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With the rising need for computational power, High Performance Computing (HPC) systems are finding their way into various frameworks such as Spaceborne applications. Achieving an optimum combination between performance and power utilization for HPCtype systems in harsh environments can be a challenge. In order to combat these challenges, it is essential to understand the characteristics of the system hardware and software. In this project, the Intel Running Average Power Limit (RAPL) interface provides measurements of energy consumption for two HPC applications, Weather Research and Forecasting (WRF) and TensorFlow. Applications were based on popularity in the HPC community and potential uses in space missions. A way to understand performance on a multi-core system is through affinity. Affinity, or pinning tasks and threads to cores, is needed to ensure workloads are distributed to the desired cores on the chip. Various affinity settings were applied to the WRF and TensorFlow applications in order to assess the performance and power efficiency at the single node level.
机译:随着计算能力的不断上升,高性能计算(HPC)系统正在进入各种框架,例如空间载体。在恶劣环境中实现HPCTYPE系统的性能和电力利用之间的最佳组合可能是一个挑战。为了解决这些挑战,必须了解系统硬件和软件的特征。在该项目中,Intel运行平均电源限量(RAPL)接口为两个HPC应用,天气研究和预测(WRF)和TensorFlow提供了测量。申请基于HPC社区的普及和太空特派团的潜在用途。一种了解多核系统上性能的方法是通过亲和力。需要对核心的亲和力,或固定任务和线程,以确保工作负载分布到芯片上所需的核心。将各种关联设置应用于WRF和TensorFlow应用程序,以便在单节点级别评估性能和功率效率。

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