Scalable Exploration of Physical Database Design

A. König, Shubha U. Nabar
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引用次数: 13

Abstract

Physical database design is critical to the performance of a large-scale DBMS. The corresponding automated design tuning tools need to select the best physical design from a large set of candidate designs quickly. However, for large workloads, evaluating the cost of each query in the workload for every candidate does not scale. To overcome this, we present a novel comparison primitive that only evaluates a fraction of the workload and provides an accurate estimate of the likelihood of selecting correctly. We show how to use this primitive to construct accurate and scalable selection procedures. Furthermore, we address the issue of ensuring that the estimates are conservative, even for highly skewed cost distributions. The proposed techniques are evaluated through a prototype implementation inside a commercial physical design tool.
物理数据库设计的可扩展探索
物理数据库设计对大型DBMS的性能至关重要。相应的自动化设计调优工具需要从大量候选设计中快速选择最佳物理设计。然而,对于大型工作负载,评估每个候选工作负载中每个查询的成本是不可伸缩的。为了克服这个问题,我们提出了一种新的比较原语,它只评估工作负载的一小部分,并提供正确选择可能性的准确估计。我们将展示如何使用这个原语来构建准确且可伸缩的选择过程。此外,我们解决了确保估算是保守的问题,即使对于高度倾斜的成本分布也是如此。提出的技术通过商业物理设计工具内的原型实现进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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