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Accelerating Metric Space Similarity Joins with Multi-core and Many-core Processors

机译:加速度量空间相似性与多核和多核处理器连接

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The similarity join finds all pairs of similar objects in a large collection. This search problem could be successfully divided into many sub-problems by an algorithm called Quickjoin recently. Besides, this algorithm could be extended to a wide range of application areas as it is based on metric spaces instead of vector spaces only. When the volume of a dataset reaches to a certain degree or the distance measure of the similarity is complex enough, however, Quickjoin still takes much time to accomplish the similarity join task, which leads us to develop a parallel version of the algorithm. In this paper, we present two parallel versions of the Quickjoin algorithm exploiting multi-core and many-core processors respectively as well as evaluate them. Experiments show that the parallelization of this algorithm in our many-core processor yields speedup to 22 at most compared with its non-parallel version.
机译:相似性连接在大集合中查找所有类似的对象。该搜索问题可以通过最近被称为QuickJoin的算法成功分为许多子问题。此外,该算法可以扩展到广泛的应用领域,因为它基于度量空间而不是矢量空间。然而,当数据集的卷达到一定​​程度或相似度的距离测量是复杂的时候,QuickJoin仍然需要花费很多时间来完成相似关系加入任务,这导致我们开发算法的并行版本。在本文中,我们分别介绍了两个并行版本的QuickJoin算法,分别利用多核和许多核心处理器以及评估它们。实验表明,与其非平行版本相比,该算法在我们的许多核心处理器中的并行化产生加速至22。

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