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cuSZ-iii: High-Ratio Scientific Lossy Compression on GPUs with Optimized Multi-Level Interpolation

9 December 2023
Jinyang Liu
Jiannan Tian
Shixun Wu
Sheng Di
Bo Zhang
Robert Underwood
Yafan Huang
Jiajun Huang
Kai Zhao
Guanpeng Li
Dingwen Tao
Zizhong Chen
Franck Cappello
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Abstract

Error-bounded lossy compression is a critical technique for significantly reducing scientific data volumes. Compared to CPU-based compressors, GPU-based compressors exhibit substantially higher throughputs, fitting better for today's HPC applications. However, the critical limitations of existing GPU-based compressors are their low compression ratios and qualities, severely restricting their applicability. To overcome these, we introduce a new GPU-based error-bounded scientific lossy compressor named cuSZ-iii, with the following contributions: (1) A novel GPU-optimized interpolation-based prediction method significantly improves the compression ratio and decompression data quality. (2) The Huffman encoding module in cuSZ-iii is optimized for better efficiency. (3) cuSZ-iii is the first to integrate the NVIDIA Bitcomp-lossless as an additional compression-ratio-enhancing module. Evaluations show that cuSZ-iii significantly outperforms other latest GPU-based lossy compressors in compression ratio under the same error bound (hence, the desired quality), showcasing a 476% advantage over the second-best. This leads to cuSZ-iii's optimized performance in several real-world use cases.

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