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Handling very large workloads to effectively partition data warehouses: New approach and experimental study

机译:处理非常大的工作负载以有效地分区数据仓库:新方法和实验研究

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A data warehouse (DW) is continuously subjected to large and complex workloads of queries. These queries often require very long response time. To reduce the execution cost of these queries, the DW administrator selects optimization structures as horizontal partitioning which offers performances and manageability advantages without consumption of extra storage space. The partitioning selection problem is known NP-Complete. Several approaches have been proposed in the literature to manage the complexity of the problem and generate valuable partitioning schema. The proposed approaches consider a workload of most frequent queries to optimize. However, the majority of them do not take into account the size of the workload which can be very large. A very large workload can drastically increases the time needed to select partitioning schema and the size of the search space. To tackle this problem, we propose a new approach to handle very large workloads in order to partition effectively a DW. We conduct an experimental study on the ABP-1 benchmark to test the effectiveness and scalability of our approach. We have also conducted validation in Oracle 11g.
机译:数据仓库(DW)不断遭受疑问的大型和复杂工作量。这些查询通常需要很长的响应时间。为了减少这些查询的执行成本,DW管理员选择优化结构作为水平分区,在没有额外的存储空间消耗的情况下提供性能和可管理性优势。分区选择问题是已知的np-complete。在文献中提出了几种方法来管理问题的复杂性并产生有价值的分区模式。建议的方法考虑最常见的查询的工作量来优化。然而,其中大多数人没有考虑到工作量的大小,这可能非常大。非常大的工作量可以大大增加选择分区模式和搜索空间大小所需的时间。为了解决这个问题,我们提出了一种新的方法来处理非常大的工作负载,以便有效地分配DW。我们对ABP-1基准测试进行实验研究,以测试我们方法的有效性和可扩展性。我们还在Oracle 11g中进行了验证。

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