Efficient Implementation of the Overlap Operator on Multi-GPUs

A. Alexandru, M. Lujan, C. Pelissier, B. Gamari, F. Lee
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引用次数: 30

Abstract

Lattice QCD calculations were one of the first applications to show the potential of GPUs in the area of high performance computing. Our interest is to find ways to effectively use GPUs for lattice calculations using the overlap operator. The large memory footprint of these codes requires the use of multiple GPUs in parallel. In this paper we show the methods we used to implement this operator efficiently. We run our codes both on a GPU cluster and a CPU cluster with similar interconnects. We find that to match performance the CPU cluster requires 20-30 times more CPU cores than GPUs.
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多gpu上重叠算子的高效实现
晶格QCD计算是显示gpu在高性能计算领域潜力的首批应用之一。我们的兴趣是找到使用重叠运算符有效地使用gpu进行晶格计算的方法。这些代码的大内存占用要求并行使用多个gpu。本文给出了有效实现该算子的方法。我们在GPU集群和具有相似互连的CPU集群上运行代码。我们发现,为了匹配性能,CPU集群需要比gpu多20-30倍的CPU内核。
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