pFPC: A Parallel Compressor for Floating-Point Data

Martin Burtscher, P. Ratanaworabhan
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引用次数: 18

Abstract

This paper describes and evaluates pFPC, a parallel implementation of the lossless FPC compression algorithm for 64-bit floating-point data. pFPC can trade off compression ratio for throughput. For example, on a 4-core 3 GHz Xeon system, it compresses our nine datasets by 18% at a throughput of 1.36 gigabytes per second and by 41% at a throughput of 570 megabytes per second. Decompression is even faster. Our experiments show that the thread count should match or be a small multiple of the data's dimensionality to maximize the compression ratio and the chunk size should be at least equal to the system's page size to maximize the throughput.
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pFPC:浮点数据的并行压缩器
本文描述并评价了一种并行实现的64位浮点数据无损FPC压缩算法pFPC。pFPC可以权衡压缩比的吞吐量。例如,在4核3 GHz至强系统上,它以每秒1.36千兆字节的吞吐量将我们的9个数据集压缩18%,以每秒570兆字节的吞吐量将我们的9个数据集压缩41%。解压甚至更快。我们的实验表明,线程数应该匹配或是数据维数的一个小倍数,以最大化压缩比,而块大小应该至少等于系统的页面大小,以最大化吞吐量。
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