Adaptive data partition for sorting using probability distribution

Xipeng Shen, C. Ding
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引用次数: 8

Abstract

Many computing problems benefit from dynamic partition of data into smaller chunks with better parallelism and locality. However, it is difficult to partition all types of inputs with the same high efficiency. This paper presents a new partition method in sorting scenario based on probability distribution, an idea first studied by Janus and Lamagna in early 1980's on a mainframe computer. The new technique makes three improvements. The first is a rigorous sampling technique that ensures accurate estimate of the probability distribution. The second is an efficient implementation on modern, cache-based machines. The last is the use of probability distribution in parallel sorting. Experiments show 10-30% improvement in partition balance and 20-70% reduction in partition overhead, compared to two commonly used techniques. The new method reduces the parallel sorting time by 33-50% and outperforms the previous fastest sequential sorting technique by up to 30%.
基于概率分布的自适应数据分区排序
许多计算问题都得益于将数据动态划分为具有更好并行性和局部性的小块。然而,很难以同样的高效率划分所有类型的投入。本文提出了一种新的基于概率分布的场景排序划分方法,这是Janus和Lamagna于20世纪80年代初在大型计算机上首次研究的思想。这项新技术有三个改进。首先是严格的抽样技术,确保对概率分布的准确估计。第二种是在基于缓存的现代机器上的高效实现。最后是概率分布在并行排序中的应用。实验表明,与两种常用技术相比,分区平衡改善了10-30%,分区开销减少了20-70%。新方法将并行排序时间减少了33-50%,并且比以前最快的顺序排序技术性能高出30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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