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Improving CADNA Performance on GPUs

机译:改善GPU上的CADNA性能

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摘要

The quantification of rounding errors is crucial for numerical simulations on massively parallel architectures such as GPUs. The CADNA library enables one to estimate rounding errors in simulation programs. A version of CADNA for GPUs had been proposed to show the feasibility of numerical validation on such architectures. In this paper we show how the performance of CADNA on GPUs has been improved. Thanks to various optimizations that have been validated on several benchmarks, the performance gain is up to 61% with respect to the original prototype. Furthermore the GPU version of CADNA has been completed with features such as the accuracy estimation for double precision computation.
机译:舍入误差的量化对于大规模并行架构(例如GPU)上的数值模拟至关重要。 CADNA库使人们能够估计模拟程序中的舍入误差。已经提出了用于GPU的CADNA版本,以显示在此类架构上进行数值验证的可行性。在本文中,我们展示了如何提高CADNA在GPU上的性能。由于已在多个基准测试中进行了各种优化,因此与原始原型相比,性能提升高达61%。此外,CADNA的GPU版本已经完成,并具有诸如用于双精度计算的精度估计之类的功能。

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