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A Performance Model for GPU Architectures that Considers On-Chip Resources: Application to Medical Image Registration

机译:考虑片内资源的GPU架构性能模型:在医学图像配准中的应用

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Graphics processing units (GPUs) have become extremely important devices for accelerating computing performance in many applications. However, there have been few accurate models to estimate the performance of such applications running on modern GPUs. In this paper, we propose a performance model to estimate the execution times for massively parallel programs running on NVIDIA GPUs, one that takes on-chip resources and cost of data transfer between CPU and GPU into consideration. Four different GPUs with different architectures were used to evaluate our model. We demonstrated the effectiveness of the proposed model by applying it to various tasks in medical image registration. Experiments have demonstrated that by capturing on-chip GPU resources and data transfer time with our model, we were able to obtain a more accurate prediction of the actual running time, compared to the traditional model. Moreover, by using the optimal value of the block size parameter, estimated by our model, to accelerate the landmark tracking task on GPU devices, speedups of approximately 80 x, 100 x, 200 x and 800 x, on the C2050, K20c, M5000 and P100 can be achieved, making it possible to track massive numbers of landmarks and thereby improving the registration accuracy.
机译:图形处理单元(GPU)已成为在许多应用中提高计算性能的极其重要的设备。但是,几乎没有准确的模型来估计在现代GPU上运行的此类应用程序的性能。在本文中,我们提出了一种性能模型,用于估计在NVIDIA GPU上运行的大规模并行程序的执行时间,该模型考虑了片上资源以及CPU和GPU之间的数据传输成本。使用四个具有不同架构的不同GPU来评估我们的模型。我们通过将其应用于医学图像配准的各种任务,证明了该模型的有效性。实验证明,通过使用我们的模型捕获片上GPU资源和数据传输时间,与传统模型相比,我们能够获得对实际运行时间的更准确的预测。此外,通过使用由我们的模型估算的块大小参数的最佳值来加速GPU设备上的界标跟踪任务,在C2050,K20c,M5000上的加速约为80 x,100 x,200 x和800 x可以实现P100和P100,从而可以跟踪大量地标,从而提高注册精度。

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