LCP: Enhancing Scientific Data Management with Lossy Compression for Particles
Longtao Zhang, Ruoyu Li, Congrong Ren, Sheng Di, Jinyang Liu, Jiajun, Huang, Robert Underwood, Pascal Grosset, Dingwen Tao, Xin Liang, Hanqi Guo,, Franck Capello, Kai Zhao

TL;DR
LCP is a novel lossy compression method tailored for particle-based scientific data, significantly improving compression ratios and speed across diverse domains compared to existing solutions.
Contribution
We introduce LCP, a hybrid lossy compressor for particle data with error-bound control, optimized for multi-frame datasets and applicable across scientific disciplines.
Findings
Achieves up to 104% better compression ratios
Provides up to 593% faster compression speed
Outperforms eight state-of-the-art methods on real datasets
Abstract
Many scientific applications opt for particles instead of meshes as their basic primitives to model complex systems composed of billions of discrete entities. Such applications span a diverse array of scientific domains, including molecular dynamics, cosmology, computational fluid dynamics, and geology. The scale of the particles in those scientific applications increases substantially thanks to the ever-increasing computational power in high-performance computing (HPC) platforms. However, the actual gains from such increases are often undercut by obstacles in data management systems related to data storage, transfer, and processing. Lossy compression has been widely recognized as a promising solution to enhance scientific data management systems regarding such challenges, although most existing compression solutions are tailored for Cartesian grids and thus have sub-optimal results on…
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Taxonomy
TopicsAdvanced Data Storage Technologies · Distributed and Parallel Computing Systems
