Group-Scheme: SIMD-based compression algorithms for web text data

BigData Conference(2013)

引用 4|浏览28
暂无评分
摘要
Compression algorithms have been quite important for data oriented tasks, especially in the era of Big Data. The rapid development of modern processors facilitates us with powerful SIMD instruction sets, which provides an opportunity for better performance. Although SIMD based optimization on compression have been explored in some studies [2, 7], these studies usually focus on modifying the existing algorithms to fit into the SIMD instruction. In this paper, we propose a compression framework with a novel storage layout format, which aims to improve instruction-level parallelizability of compression algorithms. By instantiating the framework, we design a novel compression algorithm family, called Group-Scheme, and present a parallelized version of Group-Scheme, called SIMD-Group-Scheme. We evaluate the proposed algorithms on two public TREC data sets. With very competitive performance on compression ratio and encoding speed, SIMD-Group-Scheme significantly outperforms the implementation without SIMD instructions and state-of-the-art algorithm (i.e. SIMD-G8IU [7]), w.r.t decoding speed.
更多
查看译文
关键词
parallel processing,compression ratio,simd,inverted index,data compression,indexing,encoding speed,integer encoding,public trec data sets,instruction-level parallelizability,index compression,simd-group-scheme,simd-based compression algorithms,simd instruction sets,text analysis,web text data,storage layout format
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