基于rns浮点表示的CPU-GPU混合平台多精度求和

K. Isupov, A. Kuvaev
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引用次数: 1

摘要

我们考虑在CPU-GPU混合平台上使用MPRES(一种用于cpu和CUDA兼容gpu上的多精度计算的新软件库)对大型浮点数集进行求和。该库使用基于RNS的浮点表示法,根据该表示法,多精度有效位数在剩余数系统(RNS)中表示。这种表示允许以并行方式计算有效位数(残数),并且没有进位传播延迟。我们提出了基于神经网络表示的加法算法,以及三种多精度求和算法:递归求和、成对求和和块并行混合求和。混合算法表现出更好的性能,因为它可以充分利用GPU的资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple-Precision Summation on Hybrid CPU-GPU Platforms Using RNS-based Floating-Point Representation
We consider the summation of large sets of floating-point numbers on hybrid CPU-GPU platforms using MPRES, a new software library for multiple-precision computations on CPUs and CUDA compatible GPUs. This library uses an RNSbased floating-point representation, in accordance with which the multiple-precision significands are represented in a residue number system (RNS). This representation allows the computation of digits (residues) of significands in a parallel way and without carry propagation delay. We present the addition algorithm for RNS-based representations, as well as three multiple-precision summation algorithms: recursive summation, pairwise summation, and block-parallel hybrid summation. The hybrid algorithm demonstrates better performance, as it allows the full utilization of the GPU's resources.
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