Evaluating Lossy Compression on Climate Data

2013-06 | conference paper

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Evaluating Lossy Compression on Climate Data​
Hübbe, N.; Wegener, A.; Kunkel, J. ; Ling, Y. & Ludwig, T.​ (2013)
In:Kunkel, Julian Martin; Ludwig, Thomas; Meuer, Hans Werner​ (Eds.), ​Supercomputing pp. 343​-356. ​ISC​, Leipzig.
Berlin, Heidelberg​: Springer. DOI: https://doi.org/10.1007/978-3-642-38750-0_26 

License

Author's Version

GRO License GRO License

Details

Authors
Hübbe, Nathanael; Wegener, Al; Kunkel, Julian ; Ling, Yi; Ludwig, Thomas
Editors
Kunkel, Julian Martin; Ludwig, Thomas; Meuer, Hans Werner
Abstract
While the amount of data used by today’s high-performance computing (HPC) codes is huge, HPC users have not broadly adopted data compression techniques, apparently because of a fear that compression will either unacceptably degrade data quality or that compression will be too slow to be worth the effort. In this paper, we examine the effects of three lossy compression methods (GRIB2 encoding, GRIB2 using JPEG 2000 and LZMA, and the commercial Samplify APAX algorithm) on decompressed data quality, compression ratio, and processing time. A careful evaluation of selected lossy and lossless compression methods is conducted, assessing their influence on data quality, storage requirements and performance. The differences between input and decoded datasets are described and compared for the GRIB2 and APAX compression methods. Performance is measured using the compressed file sizes and the time spent on compression and decompression. Test data consists both of 9 synthetic data exposing compression behavior and 123 climate variables output from a climate model. The benefits of lossy compression for HPC systems are described and are related to our findings on data quality.
Issue Date
June-2013
Publisher
Springer
Conference
ISC
ISBN
978-3-642-38749-4
Conference Place
Leipzig
Event start
2013-06-20
ISSN
0302-9743
Language
English

Reference

Citations


Social Media