ArchDB:迈向大规模归档数据库的并行恢复

Kai Du, Zhijian Yuan, Shuqiang Yang, Huaimin Wang
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引用次数: 0

摘要

监控网上交易或跟踪用户行为将在科学实验、内网审计日志等方面产生大规模的存档流数据。这些归档系统可以扩展到pb(1015字节)。如此大规模的结构化数据的存储和分析至少提出了三个具有挑战性的问题:数据可靠性,数据存储和分析性能,以及高可靠性和高性能之间的权衡。在分析归档流数据特点的基础上,提出了一种新的高可靠无日志数据库架构——ArchDB。为了应对这三个挑战,本文设计了优化的数据放置策略、数据块大小和数据归档场合、流水线化和并行化归档过程。实验结果表明,ArchDB可以将插入性能提高一倍,并将并行恢复程度提高一倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ArchDB: Towards Parallelized Recovery in Massive Archived Databases
Monitoring online transactions or tracking users' behavior will generate large-scale archived streaming data in scientific experiments, inner-network audit logs and so on. These archived systems may scale up to petabytes (1015 Bytes). Storing and analyzing the structural data in such scale calls forth at least three challenging issues: data reliability, data storing and analyzing performance, and tradeoff between high reliability and high performance. Based on analyzing the characteristics of the archived streaming data, we propose a novel high reliable log-free database architecture, ArchDB. In order to meet the three challenges, this paper designs optimized data placement policy, data block size and data archiving occasion, pipelining and parallelizing archiving procedure. The experimental results show ArchDB can double the insertion performance and speed up the recovery process by a factor of the parallel recovery degree.
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