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首页> 外文期刊>Informatica Economica >On the Performance of Three In-Memory Data Systems for On Line Analytical Processing
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On the Performance of Three In-Memory Data Systems for On Line Analytical Processing

机译:在线分析处理中三个内存数据系统的性能

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In-memory database systems are among the most recent and most promising Big Data technologies, being developed and released either as brand new distributed systems or as extensions of old monolith (centralized) database systems. As name suggests, in-memory systems cache all the data into special memory structures. Many are part of the NewSQL strand and target to bridge the gap between OLTP and OLAP into so-called Hybrid Transactional Analytical Systems (HTAP). This paper aims to test the performance of using such type of systems for TPCH analytical workloads. Performance is analyzed in terms of data loading, memory footprint and execution time of the TPCH query set for three in-memory data systems: Oracle, SQL Server and MemSQL. Tests are subsequently deployed on classical on-disk architectures and results compared to in-memory solutions. As in-memory is an enterprise edition feature, associated costs are also considered.
机译:内存数据库系统是最新和最有前途的大数据技术之一,它们正在开发和发布为全新的分布式系统或作为旧的整体(集中式)数据库系统的扩展。顾名思义,内存系统会将所有数据缓存到特殊的内存结构中。许多功能是NewSQL链的一部分,其目标是将OLTP和OLAP之间的鸿沟弥合到所谓的混合事务分析系统(HTAP)中。本文旨在测试将此类系统用于TPCH分析工作负载的性能。根据三个内存数据系统(Oracle,SQL Server和MemSQL)的数据加载,内存占用量和TPCH查询集的执行时间来分析性能。随后将测试部署在经典的磁盘体系结构上,并将结果与​​内存中的解决方案进行比较。由于内存是企业版功能,因此也要考虑相关的成本。

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