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Continuous query processing in data streams using duality of data and queries

机译:使用数据和查询的二元性在数据流中进行连续查询处理

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Recent data stream systems such as TelegraphCQ have employed the well-known property of duality between data and queries. In these systems, query processing methods are classified into two dual categories -- data-initiative and query-initiative -- depending on whether query processing is initiated by selecting a data element or a query. Although the duality property has been widely recognized, previous data stream systems do not fully take advantages of this property since they use the two dual methods independently: data-initiative methods only for continuous queries and query-initiative methods only for ad-hoc queries. We contend that continuous query processing can be better optimized by adopting an approach that integrates the two dual methods. Our primary contribution is based on the observation that spatial join is a powerful tool for achieving this objective. In this paper, we first present a new viewpoint of transforming the continuous query processing problem to a multi-dimensional spatial join problem. We then present a continuous query processing algorithm based on spatial join, which we name Spatial Join CQ. This algorithm processes continuous queries by finding the pairs of overlapping regions from a set of data elements and a set of queries, both defined as regions in the multi-dimensional space. The algorithm achieves the advantages of the two dual methods simultaneously. Experimental results show that the proposed algorithm outperforms earlier algorithms by up to 36 times for simple selection continuous queries and by up to 7 times for sliding window join queries.
机译:诸如TelegraphCQ之类的最新数据流系统已经采用了数据和查询之间的对偶性的众所周知的属性。在这些系统中,查询处理方法分为两个双重类别- data-initiative query-initiative -取决于是否通过选择数据元素来启动查询处理或查询。尽管对偶属性已得到广泛认可,但是以前的数据流系统没有完全利用此属性,因为它们独立使用两种对偶方法:仅用于连续查询的数据启动方法和仅用于即席查询的查询启动方法。我们认为,通过采用将两种对偶方法集成在一起的方法,可以更好地优化连续查询处理。我们的主要贡献基于以下观察结果:空间连接是实现此目标的强大工具。在本文中,我们首先提出了将连续查询处理问题转换为多维空间连接问题的新观点。然后,我们提出一种基于空间联接的连续查询处理算法,我们将其命名为 Spatial Join CQ 。该算法通过从一组数据元素和一组查询中找到重叠区域对来处理连续查询,这两个数据元素和一组查询都定义为多维空间中的区域。该算法同时实现了两种对偶方法的优点。实验结果表明,对于简单选择连续查询,该算法的性能比早期算法高36倍,对于滑动窗口联接查询,其性能最高可达7倍。

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