探索应用特性以提高自适应网格细化的有损压缩比

Huizhang Luo, Junqi Wang, Qing Liu, Jieyang Chen, S. Klasky, N. Podhorszki
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引用次数: 9

摘要

在高性能计算系统上进行科学模拟会产生大量需要高效存储和分析的数据。有损压缩通过牺牲精度换取性能显著减少了数据量。尽管有损压缩最近取得了成功,如ZFP和SZ,但压缩性能仍然远远不能跟上数据的指数级增长。本文旨在进一步利用应用特性,这是一个经常未被开发的领域,以提高自适应网格细化(AMR)的压缩比-一种广泛使用的数值求解器,允许在有限区域内提高分辨率。我们提出了一种级别重新排序技术zMesh,以减少AMR应用程序的存储占用。特别是,我们将映射到相同或相邻几何坐标的数据点分组,使数据集更平滑,更可压缩。与之前的压缩性能受元数据开销影响的工作不同,这项工作使用链式树结构重新生成恢复配方,因此不涉及压缩数据的额外存储开销,从而大大提高了压缩比。结果表明,zMesh对z - ordered和Hilbert的数据平滑度分别提高67.9%和71.3%。总的来说,zMesh将ZFP和SZ的压缩比分别提高了16.5%和133.7%。尽管zMesh涉及到树和恢复配方构建的额外计算开销,但我们表明,成本可以随着要压缩的数量的增加而平摊。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
zMesh: Exploring Application Characteristics to Improve Lossy Compression Ratio for Adaptive Mesh Refinement
Scientific simulations on high-performance computing systems produce vast amounts of data that need to be stored and analyzed efficiently. Lossy compression significantly reduces the data volume by trading accuracy for performance. Despite the recent success of lossy compression, such as ZFP and SZ, the compression performance is still far from being able to keep up with the exponential growth of data. This paper aims to further take advantage of application characteristics, an area that is often under-explored, to improve the compression ratios of adaptive mesh refinement (AMR) - a widely used numerical solver that allows for an improved resolution in limited regions. We propose a level reordering technique zMesh to reduce the storage footprint of AMR applications. In particular, we group the data points that are mapped to the same or adjacent geometric coordinates such that the dataset is smoother and more compressible. Unlike the prior work where the compression performance is affected by the overhead of metadata, this work re-generates restore recipe using a chained tree structure, thus involving no extra storage overhead for compressed data, which substantially improves the compression ratios. The results demonstrate that zMesh can improve the smoothness of data by 67.9% and 71.3% for Z-ordering and Hilbert, respectively. Overall, zMesh improves the compression ratios by up to 16.5% and 133.7% for ZFP and SZ, respectively. Despite that zMesh involves additional compute overhead for tree and restore recipe construction, we show that the cost can be amortized as the number of quantities to be compressed increases.
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