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Characterizing Input-sensitivity in Tightly-Coupled Collaborative Graph Algorithms

机译:在紧密耦合的协作图算法中表征输入灵敏度

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This paper conducts a study of input-sensitivity in collaborative graph algorithms for CPU-GPU systems with support for Unified Memory. The study, conducted on an extensive set of real-world graphs from the Koblenz Network, identifies three main sources of performance inefficiencies that are influenced by characteristics of the input graph. We develop autotuning methods to specifically address these inefficiencies. We then explore machine learning approaches to characterize the relationship between input graph properties, performance, and optimization parameters. In applying our learned models to a test dataset of 70 real-world graphs on the problems of breadth-first search (BFS) and single-source shortest path (SSSP), we are able to attain 96.33% of the peak performance on BFS, and 99.40% on SSSP when using the top-3 predictions of a neural network. We also attain 95.63% of the peak performance on BFS when using three decision trees trained on different categories of graphs. The performance of the learned models is superior to selecting the most frequent optimal configuration, indicating that the machine learning models were able to successfully correlate our selected configuration parameters with graph attributes.
机译:本文对CPU-GPU系统的协作图算法中的输入灵敏度进行了研究,支持统一存储器。该研究在来自Koblenz网络的广泛的实际图表中进行的研究,识别了由输入图的特征影响的性能低效率的三个主要来源。我们开发自动调整方法,以具体解决这些效率低下。然后,我们探索机器学习方法,以表征输入图形属性,性能和优化参数之间的关系。在将我们的学习模型应用于70个真实图表的测试数据集上,在宽度第一搜索(BFS)和单源最短路径(SSP)问题上,我们能够在BFS上获得96.33%的峰值性能,使用神经网络的前3个预测时,SSSP的99.40%。在使用在不同类别的图表上培训的三个决定树,我们还可以获得95.63%的BFS峰值性能。学习型号的性能优于选择最常见的最佳配置,指示机器学习模型能够通过图形属性成功地关联我们所选配置参数。

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