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On the energy efficiency of graphics processing units for scientific computing

机译:论用于科学计算的图形处理单元的能源效率

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The graphics processing unit (GPU) has emerged as a computational accelerator that dramatically reduces the time to discovery in high-end computing (HEC). However, while today's state-of-the-art GPU can easily reduce the execution time of a parallel code by many orders of magnitude, it arguably comes at the expense of significant power and energy consumption. For example, the NVIDIA GTX 280 video card is rated at 236 watts, which is as much as the rest of a compute node, thus requiring a 500-W power supply. As a consequence, the GPU has been viewed as a ldquonon-greenrdquo computing solution. This paper seeks to characterize, and perhaps debunk, the notion of a ldquopower-hungry GPUrdquo via an empirical study of the performance, power, and energy characteristics of GPUs for scientific computing. Specifically, we take an important biological code that runs in a traditional CPU environment and transform and map it to a hybrid CPU+GPU environment. The end result is that our hybrid CPU+GPU environment, hereafter referred to simply as GPU environment, delivers an energy-delay product that is multiple orders of magnitude better than a traditional CPU environment, whether unicore or multicore.
机译:图形处理单元(GPU)已成为一种计算加速器,可显着减少高端计算(HEC)中的发现时间。但是,尽管当今最先进的GPU可以轻松地将并行代码的执行时间减少许多数量级,但是可以说,这是以大量功耗和能耗为代价的。例如,NVIDIA GTX 280视频卡的额定功率为236瓦,与计算节点的其余部分一样大,因此需要500瓦电源。因此,GPU被视为一种“绿色”计算解决方案。本文旨在通过对科学计算用GPU的性能,功耗和能源特性的实证研究,来描述“耗电量巨大”的GPUrdquo的概念,或者或许将其揭穿。具体来说,我们采用了在传统CPU环境中运行的重要生物代码,并将其转换并映射到混合CPU + GPU环境。最终结果是我们的混合CPU + GPU环境(以下简称GPU环境)提供的能源延迟产品比传统的CPU环境(单核或多核)好多个数量级。

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