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Parallel optimization of large join queries with set operators and aggregates in a parallel environment supporting pipeline

机译:在支持管道的并行环境中使用集合运算符和聚合并行优化大型联接查询

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Proposes a parallel optimizer for queries containing a large number of joins, as well as set operators and aggregate functions. The platform for the execution is a shared-disk multiprocessor machine supporting bushy parallelism and pipeline processing. Our model partitions the query into almost independent subtrees that can be optimized simultaneously, and it applies an enhanced variation of the iterative improvement technique on those subtrees which contain a large number of joins; this technique is parallelized, too. In order to estimate the cost of the states constructed during the optimization of join subtrees, cost formulae are developed that estimate the cost of relational algebra operators when executed across coalescing pipes.
机译:为包含大量联接以及集合运算符和聚合函数的查询提出了并行优化器。执行平台是共享磁盘多处理器计算机,支持丛集并行性和管道处理。我们的模型将查询划分为几乎可以独立优化的几乎独立的子树,并且在包含大量联接的那些子树上应用了迭代改进技术的增强型变体。该技术也被并行化。为了估计在优化连接子树期间构造的状态的成本,开发了成本公式,用于估算在跨合并管道执行时关系代数算子的成本。

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