Accelerating outlier detection with intra- and inter-node parallelism

F. Angiulli, S. Basta, Stefano Lodi, Claudio Sartori
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引用次数: 3

Abstract

Outlier detection is a data mining task consisting in the discovery of observations which deviate substantially from the rest of the data, and has many important practical applications. Outlier detection in very large data sets is however computationally very demanding and the size limit of the data that can be elaborated is considerably pushed forward by mixing three ingredients: efficient algorithms, intra-cpu parallelism of high-performance architectures, network level parallelism. In this paper we propose an outlier detection algorithm able to exploit the internal parallelism of a GPU and the external parallelism of a cluster of GPU. The algorithm is the evolution of our previous solutions which considered either GPU or network level parallelism. We discuss a set of large scale experiments executed in a supercomputing facility and show the speedup obtained with varying number of nodes.
利用节点内和节点间并行性加速异常点检测
异常值检测是一种数据挖掘任务,包括发现与其他数据有很大偏差的观测值,并且具有许多重要的实际应用。然而,在非常大的数据集中进行离群值检测在计算上是非常苛刻的,并且可以详细阐述的数据的大小限制通过混合三种成分而大大推进:高效算法,高性能架构的cpu内并行性,网络级并行性。本文提出了一种能够利用GPU内部并行性和GPU集群外部并行性的离群点检测算法。该算法是我们之前考虑GPU或网络级并行性的解决方案的进化。我们讨论了一组在超级计算设施中执行的大规模实验,并展示了不同节点数量所获得的加速。
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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