从综合实验调查到基于代价的轻量级整数压缩算法选择策略

Patrick Damme, A. Ungethüm, Juliana Hildebrandt, Dirk Habich, Wolfgang Lehner
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引用次数: 32

摘要

轻量级整数压缩算法经常应用于内存数据库系统中,以解决处理器速度和主存带宽之间日益增长的差距。近年来,诸如增量编码和零抑制等基本技术的矢量化极大地扩大了可用算法的语料。因此,今天有大量的算法可供选择,而不同的算法针对不同的数据特征而量身定制。然而,文献中对这些算法在不同数据和硬件特性下的比较评价从未充分进行过。为了缩小这一差距,我们进行了一项详尽的实验调查,评估了几种最先进的轻量级整数压缩算法以及一系列基本技术。我们系统地研究了数据和硬件属性对性能和压缩率的影响。评估的算法基于公开可用的实现以及我们自己的矢量化重新实现。我们总结了我们的实验发现,得出了一些新的见解,并得出了没有单一最佳算法的结论。此外,在本文中,我们还介绍并评估了一种新的成本模型,用于为给定数据集选择合适的轻量级整数压缩算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From a Comprehensive Experimental Survey to a Cost-based Selection Strategy for Lightweight Integer Compression Algorithms
Lightweight integer compression algorithms are frequently applied in in-memory database systems to tackle the growing gap between processor speed and main memory bandwidth. In recent years, the vectorization of basic techniques such as delta coding and null suppression has considerably enlarged the corpus of available algorithms. As a result, today there is a large number of algorithms to choose from, while different algorithms are tailored to different data characteristics. However, a comparative evaluation of these algorithms with different data and hardware characteristics has never been sufficiently conducted in the literature. To close this gap, we conducted an exhaustive experimental survey by evaluating several state-of-the-art lightweight integer compression algorithms as well as cascades of basic techniques. We systematically investigated the influence of data as well as hardware properties on the performance and the compression rates. The evaluated algorithms are based on publicly available implementations as well as our own vectorized reimplementations. We summarize our experimental findings leading to several new insights and to the conclusion that there is no single-best algorithm. Moreover, in this article, we also introduce and evaluate a novel cost model for the selection of a suitable lightweight integer compression algorithm for a given dataset.
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