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首页> 外文期刊>Journal of computational science >A low-cost-memory CUDA implementation of the conjugate gradient method applied to globally supported radial basis functions implicits
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A low-cost-memory CUDA implementation of the conjugate gradient method applied to globally supported radial basis functions implicits

机译:共轭梯度方法的低成本内存CUDA实现应用于全局支持的径向基函数隐式

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摘要

Hermitian radial basis functions implicits is a method capable of reconstructing implicit surfaces from first-order Hermitian data. When globally supported radial functions are used, a dense symmetric linear system must be solved. In this work, we aim at exploring and computing a matrix-free implementation of the Conjugate Gradients Method on the GPU in order to solve such linear system. The proposed method parallelly rebuilds the matrix on demand for each iteration. As a result, it is able to compute the Hermitian-based interpolant for datasets that otherwise could not be handled due to the high memory demanded by their linear systems.
机译:Hermitian径向基函数隐式是一种能够从一阶Hermitian数据重建隐式曲面的方法。使用全局支持的径向函数时,必须求解一个密集的对称线性系统。在这项工作中,我们旨在探索和计算GPU上共轭梯度方法的无矩阵实现,以解决此类线性系统。所提出的方法为每次迭代按需并行重建矩阵。结果,它能够为数据集计算基于Hermitian的插值,而这些数据由于其线性系统要求的高存储量而无法处理。

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