Mr. Scan: Extreme scale density-based clustering using a tree-based network of GPGPU nodes

Benjamin Welton, Evan Samanas, B. Miller
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引用次数: 54

Abstract

Density-based clustering algorithms are a widely-used class of data mining techniques that can find irregularly shaped clusters and cluster data without prior knowledge of the number of clusters it contains. DBSCAN is the most wellknown density-based clustering algorithm. We introduce our version of DBSCAN, called Mr. Scan, which uses a hybrid parallel implementation that combines the MRNet tree-based distribution network with GPGPU-equipped nodes. Mr. Scan avoids the problems of existing implementations by effectively partitioning the point space and by optimizing DBSCAN's computation over dense data regions. We tested Mr. Scan on both a geolocated Twitter dataset and image data obtained from the Sloan Digital Sky Survey. At its largest scale, Mr. Scan clustered 6.5 billion points from the Twitter dataset on 8,192 GPU nodes on Cray Titan in 17.3 minutes. All other parallel DBSCAN implementations have only demonstrated the ability to cluster up to 100 million points.
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Mr. Scan:使用基于GPGPU节点的树状网络的基于极端规模密度的集群
基于密度的聚类算法是一种广泛使用的数据挖掘技术,它可以发现不规则形状的聚类和聚类数据,而无需事先知道它包含的聚类数量。DBSCAN是最著名的基于密度的聚类算法。我们介绍我们的DBSCAN版本,称为Mr. Scan,它使用混合并行实现,将基于MRNet树的分布网络与配备gpgpu的节点相结合。Mr. Scan通过有效地划分点空间和优化DBSCAN在密集数据区域上的计算,避免了现有实现的问题。我们在Twitter的地理定位数据集和斯隆数字巡天(Sloan Digital Sky Survey)获得的图像数据上对Scan先生进行了测试。在最大规模的情况下,Scan在17.3分钟内在Cray Titan的8,192个GPU节点上从Twitter数据集中聚集了65亿个点。所有其他并行DBSCAN实现都只展示了最多可集群1亿个点的能力。
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