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Adaptive Continuous Query Reoptimization over Data Streams

机译:数据流上的自适应连续查询重新优化

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摘要

A data stream is a series of massive unbounded tuples continuously generated at a rapid rate. Continuous queries for data streams should be processed continuously, so that a strict time constraint is required. In most previous research studies, in order to guarantee this constraint, the evaluation order of join predicates in a continuous query is optimized using a greedy strategy. However, because a greedy strategy traces only the first promising plan, it often finds a suboptimal plan. To reduce the possibility of producing a suboptimal plan, in this paper, we propose an improved scheme, k-Extended Greedy Algorithm (k-EGA), that simultaneously examines a set of promising plans and reoptimize an execution plan adaptively. The number of promising plans is flexibly controlled by a user-defined range variable. The scheme verifies the performance of the current plan periodically. If the plan is no longer efficient, a newly optimized plan is generated. The performance of the proposed scheme is verified through various experiments to identify its various characteristics.
机译:数据流是连续快速生成的一系列庞大的无界元组。对数据流的连续查询应被连续处理,因此需要严格的时间限制。在大多数以前的研究中,为了保证这一约束,使用贪婪策略优化了连续查询中联接谓词的评估顺序。但是,由于贪心策略仅跟踪第一个有前途的计划,因此它常常会找到次优计划。为了减少产生次优计划的可能性,在本文中,我们提出了一种改进的方案,即k扩展贪婪算法(k-EGA),该方案同时检查了一组有前途的计划并自适应地重新优化了执行计划。有希望的计划的数量由用户定义的范围变量灵活控制。该计划会定期验证当前计划的执行情况。如果该计划不再有效,则将生成新优化的计划。通过各种实验验证了该方案的性能,以识别其各种特性。

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