首页> 外文会议>Twenty-ninth International Conference on Very Large Databases; Sep 9-12, 2003; Berlin, Germany >AniPQO: Almost Non-intrusive Parametric Query Optimization for Nonlinear Cost Functions
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AniPQO: Almost Non-intrusive Parametric Query Optimization for Nonlinear Cost Functions

机译:AniPQO:非线性成本函数的几乎非介入式参数查询优化

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The cost of a query plan depends on many parameters, such as predicate selectivities and available memory, whose values may not be known at optimization time. Parametric query optimization (PQO) optimizes a query into a number of candidate plans, each optimal for some region of the parameter space. We propose a heuristic solution for the PQO problem for the case when the cost functions may be nonlinear in the given parameters. This solution is minimally intrusive in the sense that an existing query optimizer can be used with minor modifications. We have implemented the heuristic and the results of the tests on the TPCD benchmark indicate that the heuristic is very effective. The minimal intrusiveness, generality in terms of cost functions and number of parameters and good performance (up to 4 parameters) indicate that our solution is of significant practical importance.
机译:查询计划的成本取决于许多参数,例如谓词选择性和可用内存,这些参数的值在优化时可能未知。参数查询优化(PQO)将查询优化为多个候选计划,每个计划对于参数空间的某些区域都是最佳的。当成本函数在给定参数中可能是非线性的情况下,我们提出了一种针对PQO问题的启发式解决方案。在可以对现有查询优化器进行少量修改的情况下,该解决方案的干扰最小。我们已经实施了启发式方法,并且在TPCD基准上的测试结果表明启发式方法非常有效。最小的介入性,成本函数和参数数量的通用性以及良好的性能(最多4个参数)表明我们的解决方案具有重要的实践意义。

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