Optimal top-K queries processing: Sampling and dynamic scheduling approach

L. Saranya
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引用次数: 2

Abstract

An effective query processing plays an important role in the uncertain data streams. Specifically, multiple top-k queries processing on uncertain data streams obtained from large applications of several fields such as sensor network monitoring and internet traffic control requires periodic execution of queries and sharing results among them. The system that monitors uncertain events in such data streams manipulates the top-k queries. Here the problem is that systems were not designed to allow query results sharing which in turn leads to high computation cost and inaccurate response from the system. To overcome these issues (Queries results sharing), the system using a sampling algorithm for sample the top possible worlds from well-known possible worlds based on their high probability. System uses an optimal dynamic programming approach that split the multiple queries into number of groups. Then the query groups are scheduled and planned for sharing results to yield minimum computation cost. A faster greedy algorithm is used to reduce the time and storage space of the top-k queries based on the greedy rule. Thus the proposed approach allows sharing computation among multiple top-k queries and generates best plan of query execution.
最优top-K查询处理:采样和动态调度方法
有效的查询处理在不确定数据流中起着重要的作用。具体而言,在传感器网络监控和互联网流量控制等多个领域的大型应用中获得的不确定数据流上进行多个top-k查询处理需要定期执行查询并在它们之间共享结果。监控此类数据流中不确定事件的系统会操纵top-k查询。这里的问题是系统没有设计成允许查询结果共享,这反过来导致高计算成本和系统的不准确响应。为了克服这些问题(查询结果共享),系统使用基于高概率的采样算法从已知的可能世界中抽取顶级可能世界。系统采用最优动态规划方法,将多个查询拆分为若干组。然后调度和计划查询组以共享结果,以产生最小的计算成本。在贪心规则的基础上,采用更快的贪心算法减少top-k查询的时间和存储空间。因此,该方法允许在多个top-k查询之间共享计算,并生成查询执行的最佳计划。
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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