大规模并行无损数据解压缩

Evangelia A. Sitaridi, René Müller, T. Kaldewey, G. Lohman, K. A. Ross
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引用次数: 52

摘要

如今,数据量呈指数级增长,存储成本高,压缩对大数据行业至关重要。尽管研究集中在高效压缩上,但快速解压缩对于重复读取压缩数据的分析查询至关重要。虽然可以通过将每个数据块分配给不同的进程来实现解压缩的并行化,但突破性的加速需要利用现代多核处理器和gpu的大量并行性来进行块内的数据解压缩。我们提出了两种新技术来增加解压过程中的并行度。第一种技术利用了GPU和SIMD架构的大规模并行性。第二种方法牺牲了一些压缩效率,以消除在解压缩期间限制并行性的数据依赖关系。我们在基于LZ77压缩和霍夫曼编码的DEFLATE方案的解压器(称为inflation)上评估了这些技术。与几个基于多核cpu的库相比,我们实现了2倍的加速,同时在压缩比相当的情况下实现了17%的节能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Massively-Parallel Lossless Data Decompression
Today's exponentially increasing data volumes and the high cost of storage make compression essential for the Big Data industry. Although research has concentrated on efficient compression, fast decompression is critical for analytics queries that repeatedly read compressed data. While decompression can be parallelized somewhat by assigning each data block to a different process, break-through speed-ups require exploiting the massive parallelism of modern multi-core processors and GPUs for data decompression within a block. We propose two new techniques to increase the degree of parallelism during decompression. The first technique exploits the massive parallelism of GPU and SIMD architectures. The second sacrifices some compression efficiency to eliminate data dependencies that limit parallelism during decompression. We evaluate these techniques on the decompressor of the DEFLATE scheme, called Inflate, which is based on LZ77 compression and Huffman encoding. We achieve a 2× speed-up in a head-to-head comparison with several multi core CPU-based libraries, while achieving a 17% energy saving with comparable compression ratios.
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