一种增强稀疏网格算法并行性和向量化的非静态数据布局

G. Buse, D. Pflüger, A. Murarasu, R. Jacob
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引用次数: 13

摘要

稀疏网格的名称表示一种高度空间效率的、基于网格的数值技术来近似高维函数。尽管在不同领域的广泛应用中使用了它,但由于复杂的数据结构和较长的算法运行时间,在实时可视化(例如b[1])中使用它的尝试很少。在这项工作中,我们提出了一种受I/0高效算法原理启发的新方法。局部应用的系数排列提高了缓存性能,并促进了向量寄存器在稀疏网格基准问题分层中的使用。基于[2]中提出的正则稀疏网格的紧凑数据结构,我们开发了一种新的算法,该算法在1.27亿点的网格大小下比现代多核系统上的现有实现性能高出37倍。对于更大的问题,加速甚至会增加,并且执行时间低于1秒,稀疏网格非常适合可视化应用程序。此外,我们指出了广泛的稀疏网格算法如何从我们的方法中受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Non-static Data Layout Enhancing Parallelism and Vectorization in Sparse Grid Algorithms
The name sparse grids denotes a highly space-efficient, grid-based numerical technique to approximate high-dimensional functions. Although employed in a broad spectrum of applications from different fields, there have only been few tries to use it in real time visualization (e.g. [1]), due to complex data structures and long algorithm runtime. In this work we present a novel approach inspired by principles of I/0-efficient algorithms. Locally applied coefficient permutations lead to improved cache performance and facilitate the use of vector registers for our sparse grid benchmark problem hierarchization. Based on the compact data structure proposed for regular sparse grids in [2], we developed a new algorithm that outperforms existing implementations on modern multi-core systems by a factor of 37 for a grid size of 127 million points. For larger problems the speedup is even increasing, and with execution times below 1 s, sparse grids are well-suited for visualization applications. Furthermore, we point out how a broad class of sparse grid algorithms can benefit from our approach.
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