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Efficient Concurrency Control in Multidimensional Access Methods

机译:多维访问方法中的高效并发控制

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The importance of multidimensional index structures to numerous emerging database applications is well established. However, before these index structures can be supported as access methods (AMs) in a "commercial-strength" database management system (DBMS), efficient techniques to provide transactional access to data via the index structure must be developed. Concurrent accesses to data via index structures introduce the problem of protecting ranges specified in the retrieval from phantom insertions and deletions (the phantom problem). This paper presents a dynamic granular locking approach to phantom protection in Generalized Search Trees (GiSTs), an index structure supporting an extensible set of queries and data types. The granular locking technique offers a high degree of concurrency and has a low lock overhead. Our experiments show that the granular locking technique (1) scales well under various system loads and (2) similar to the B-tree case, provides a significantly more efficient implementation compared to predicate locking for multidimensional AMs as well. Since a wide variety of multidimensional index structures can be implemented using GiST, the developed algorithms provide a general solution to concurrency control in multidimensional AMs. To the best of our knowledge, this paper provides the first such solution based on granular locking.
机译:多维指数结构对多种新兴数据库应用的重要性得到了很好的成熟。然而,在“商业强度”数据库管理系统(DBMS)中可以支持这些索引结构作为访问方法(AMS),必须开发有效的技术来通过索引结构提供对数据的交易访问。通过索引结构对数据的并发访问介绍从幻像插入和删除(Phantom问题)中检索中指定的范围的问题。本文介绍了广义搜索树(GISTS)中的幻影保护的动态粒状锁定方法,索引结构支持可扩展的查询和数据类型。粒状锁定技术提供高度的并发性,并且具有低锁开销。我们的实验表明,在各种系统负载和(2)中的粒状锁定技术(1)刻度较好,与B树盒相似,与谓词锁定的多维AMS相比,提供了明显更有效的实施。由于可以使用GIST实现各种各样的多维指数结构,因此开发的算法提供了多维AMS中的并发控制的一般解决方案。据我们所知,本文提供了基于粒状锁定的第一种解决方案。

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