Improving I/O Throughput with PRIMACY: Preconditioning ID-Mapper for Compressing Incompressibility

CLUSTER(2012)

引用 8|浏览57
暂无评分
摘要
The ability to efficiently handle massive amounts of data is necessary for the continuing development towards exascale scientific data-mining applications and database systems. Unfortunately, recent years have shown a growing gap between the size and complexity of data produced from scientific applications and the limited I/O bandwidth available on modern high-performance computing systems. Utilizing data compression in order to lower the degree of I/O activity offers a promising means to addressing this problem. However, the standard compression algorithms previously explored for such use offer limited gains on both the end-to-end throughput and storage fronts. In this paper, we introduce an in-situ compression scheme aimed at improving end-to-end I/O throughput as well as reduction of dataset size. Our technique, PRIMACY (Preconditioning Id-MApper for Compressing incompressibility), acts as a preconditioner for standard compression libraries by modifying representation of original floating-point scientific data to increase byte-level repeatability, allowing standard loss less compressors to take advantage of their entropy-based byte-level encoding schemes. We additionally present a theoretical model for compression efficiency in high-performance computing environments and evaluate the efficiency of our approach via comparative analysis. Based on our evaluations on 20 real-world scientific datasets, PRIMACY achieved up to 38% and 22% improvements upon standard end-to-end write and read throughputs respectively in addition to a 25% increase in compression ratios paired with 3-to-4-fold improvement in both compression and decompression throughput over general purpose compressors.
更多
查看译文
关键词
o throughput,real-world scientific datasets,original floating-point scientific data,compression ratio,compressing incompressibility,utilizing data compression,scientific application,standard compression library,exascale scientific data-mining application,compression efficiency,preconditioning id-mapper,standard compression,in-situ compression scheme,throughput,lossless compression,pipelines,compressors,encoding,data structures,bandwidth,i o,data reduction,data mining,data models,entropy,data compression
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要