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FAZ: A flexible auto-tuned modular error-bounded compression framework for scientific data

Jinyang Liu, Sheng Di, Kai Zhao, Xin Liang, Zizhong Chen, Franck Cappello

202320 citationsDOI

Abstract

Error-bounded lossy compression has been effective to resolve the big scientific data issue because it has a great potential to significantly reduce the data volume while allowing users to control data distortion based on specified error bounds. However, none of the existing error-bounded lossy compressors can always obtain the best compression quality because of the diverse characteristics of different datasets. In this paper, we develop FAZ, a flexible and adaptive error-bounded lossy compression framework, which projects a fairly high capability of adapting to diverse datasets. FAZ can always keep the compression quality at the best level compared with other state-of-the-art compressors for different datasets. We perform a comprehensive evaluation using 6 real-world scientific applications and 6 other state-of-the-art error-bounded lossy compressors. Experiments show that compared with the other existing lossy compressors, FAZ can improve the compression ratio by up to 120%, 190%, and 75% when setting the same error bound, the same PSNR and the same SSIM, respectively.

Topics & Concepts

Lossy compressionBounded functionGas compressorComputer scienceData compressionCompression (physics)Distortion (music)Modular designCompression ratioAlgorithmMathematicsArtificial intelligenceEngineeringOperating systemComputer networkInternal combustion engineMaterials scienceAmplifierMathematical analysisMechanical engineeringBandwidth (computing)Automotive engineeringComposite materialAdvanced Data Storage TechnologiesParallel Computing and Optimization TechniquesAlgorithms and Data Compression
FAZ: A flexible auto-tuned modular error-bounded compression framework for scientific data | Litcius