能源效率的自适应核心特定运行时

Sridutt Bhalachandra, Allan Porterfield, Stephen L. Olivier, J. Prins
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引用次数: 25

摘要

高性能计算(HPC)的能源效率对于限制未来超级计算中心的运营成本和碳足迹至关重要。可以通过减少完成时间而不大幅增加功耗或通过减少功耗而稍微增加完成时间来提高计算的能源效率。我们提出了一个特定于核心的自适应运行时(ACR),它可以根据工作负载特征动态地调整核心频率,并展示了功耗降低和平均性能提高的示例。这种能源效率的提高是在不改变应用程序的情况下获得的。在运行时中嵌入的自适应策略使用了现有的特定于核心的功率控制,如英特尔Haswell中引入的软件控制时钟调制和单核动态电压频率缩放(DVFS)。在六个标准MPI基准测试和一个实际应用程序上进行的实验表明,使用每核DVFS在32个节点(1024核)上,能源效率总体提高了20%,执行时间增加了不到1%。通过加速和降低功耗的结合,ParaDis在实际应用中获得了高达42%的能源效率提高。对于一种配置,ParaDis实现了11%的平均加速,而功耗降低了约31%。性能的平均改善是减少运行到运行的变化和在涡轮频率下运行的直接结果。
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An Adaptive Core-Specific Runtime for Energy Efficiency
Energy efficiency in high performance computing (HPC) will be critical to limit operating costs and carbon footprints in future supercomputing centers. Energy efficiency of a computation can be improved by reducing time to completion without a substantial increase in power drawn or by reducing power with a little increase in time to completion. We present an Adaptive Core-specific Runtime (ACR) that dynamically adapts core frequencies to workload characteristics, and show examples of both reductions in power and improvement in the average performance. This improvement in energy efficiency is obtained without changes to the application. The adaptation policy embedded in the runtime uses existing core-specific power controls like software-controlled clock modulation and per-core Dynamic Voltage Frequency Scaling (DVFS) introduced in Intel Haswell. Experiments on six standard MPI benchmarks and a real world application show an overall 20% improvement in energy efficiency with less than 1% increase in execution time on 32 nodes (1024 cores) using per-core DVFS. An improvement in energy efficiency of up to 42% is obtained with the real world application ParaDis through a combination of speedup and power reduction. For one configuration, ParaDis achieves an average speedup of 11%, while the power is lowered by about 31%. The average improvement in the performance seen is a direct result of the reduction in run-to-run variation and running at turbo frequencies.
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