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Compacting Transactional Data in Hybrid OLTPOLAP Databases

机译:在混合动力OLTP和OLAP数据库中压缩事务数据

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Growing main memory sizes have facilitated database management systems that keep the entire database in main memory. The drastic performance improvements that came along with these in-memory systems have made it possible to reunite the two areas of online transaction processing (OLTP) and online analytical processing (OLAP): An emerging class of hybrid OLTP and OLAP database systems allows to process analytical queries directly on the transactional data. By offering arbitrarily current snapshots of the transactional data for OLAP, these systems enable real-time business intelligence. Despite memory sizes of several Terabytes in a single commodity server, RAM is still a precious resource: Since free memory can be used for intermediate results in query processing, the amount of memory determines query performance to a large extent. Consequently, we propose the compaction of memory-resident databases. Compaction consists of two tasks: First, separating the mutable working set from the immutable "frozen" data. Second, compressing the immutable data and optimizing it for efficient, memory-consumption-friendly snapshotting. Our approach reorganizes and compresses transactional data online and yet hardly affects the mission-critical OLTP throughput. This is achieved by unburdening the OLTP threads from all additional processing and performing these tasks asynchronously.
机译:生长主要内存大小具有促进的数据库管理系统,可将整个数据库保留在主内存中。随着这些内存系统的急剧性能改进使得能够重聚在线事务处理(OLTP)和在线分析处理(OLAP)的两个领域:新兴类混合OLTP和OLAP数据库系统允许处理分析查询直接在事务数据上。通过为OLAP的事务数据提供任意当前的快照,这些系统可以实现实时商业智能。尽管在单个商品服务器中有几个Tberytes的内存大小,RAM仍然是一个珍贵的资源:由于自由​​存储器可以用于查询处理中的中间结果,因此存储器的量在很大程度上决定查询性能。因此,我们提出了内存驻留数据库的压实。 Compaction由两个任务组成:首先,将可变工作集与Unmutable“冻结”数据分开。其次,压缩不变的数据并优化它以获得高效,内存友好的快照。我们的方法重新组织并压缩在线交易数据,但几乎不影响关键任务的OLTP吞吐量。这是通过从所有额外处理中的OLTP线程从所有额外处理和异步执行这些任务来实现的。

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