基于多维预测和误差控制量化的科学数据集有损压缩显著改进

Dingwen Tao, S. Di, Zizhong Chen, F. Cappello
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引用次数: 199

摘要

当今的高性能计算应用产生了大量的数据,这使得数据存储和分析对科学研究来说变得更加具有挑战性。在这项工作中,我们设计了一种新的误差控制的大规模科学数据有损压缩算法。我们的主要贡献是显著提高了每个数据点的预测命中率(或预测精度),这些数据点基于其附近的多维数据值。在数据压缩的背景下,导出了一系列多层预测公式及其统一公式。一个严重的挑战是,为了保证误差范围,在压缩过程中必须基于前面的解压缩值来执行数据预测,这反过来可能会降低预测精度。我们通过考虑压缩误差对预测精度的影响来探索预测的最佳层。此外,我们还提出了一种自适应误差控制量化编码器,可以进一步提高预测命中率。由于我们的量化编码器产生的不均匀分布,在进行变长编码后,数据大小可以显着减少。我们在生产科学数据集上评估了新压缩机,并将其与许多其他最先进的压缩机进行了比较:GZIP, FPZIP, ZFP, SZ-1.1和ISABELA。实验表明,我们的压缩器是同类中最好的,特别是在压缩因子(或比特率)和压缩误差(包括RMSE、NRMSE和PSNR)方面。我们的解决方案比第二好的解决方案更好,压缩系数增加了2倍以上,标准化均方根误差平均减少了3.8倍,并且具有合理的错误界限和用户期望的比特率。
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Significantly Improving Lossy Compression for Scientific Data Sets Based on Multidimensional Prediction and Error-Controlled Quantization
Today's HPC applications are producing extremely large amounts of data, such that data storage and analysis are becoming more challenging for scientific research. In this work, we design a new error-controlled lossy compression algorithm for large-scale scientific data. Our key contribution is significantly improving the prediction hitting rate (or prediction accuracy) for each data point based on its nearby data values along multiple dimensions. We derive a series of multilayer prediction formulas and their unified formula in the context of data compression. One serious challenge is that the data prediction has to be performed based on the preceding decompressed values during the compression in order to guarantee the error bounds, which may degrade the prediction accuracy in turn. We explore the best layer for the prediction by considering the impact of compression errors on the prediction accuracy. Moreover, we propose an adaptive error-controlled quantization encoder, which can further improve the prediction hitting rate considerably. The data size can be reduced significantly after performing the variable-length encoding because of the uneven distribution produced by our quantization encoder. We evaluate the new compressor on production scientific data sets and compare it with many other state-of-the-art compressors: GZIP, FPZIP, ZFP, SZ-1.1, and ISABELA. Experiments show that our compressor is the best in class, especially with regard to compression factors (or bit-rates) and compression errors (including RMSE, NRMSE, and PSNR). Our solution is better than the second-best solution by more than a 2x increase in the compression factor and 3.8x reduction in the normalized root mean squared error on average, with reasonable error bounds and user-desired bit-rates.
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