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A novel parallel Markov clustering method in biological interaction network analysis under multi-GPU computing environment

机译:多GPU计算环境下的生物交互网络分析中的一种新的并行马尔可夫聚类方法

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摘要

The various clustering methods are widely applied in analyzing biological interaction networks, such as the protein-protein interaction and the genetic interaction networks. With the rapid growth of these biological datasets in scale, much longer runtime is required to make cluster analyses on them. In this paper, we propose a novel parallel Markov clustering (MCL) method based on the ELLPACK-R sparse matrix format that can run on multiple graphic processing units (GPUs) equipped standalone computers. The method is implemented using the Compute Unified Device Architecture (CUDA) programming framework, and fine-grained warp-level optimization is introduced for improving the performance. The BioGRID, a large-scale and freely accessible database of protein and genetic interactions, is adopted as the dataset in the experiment. The method has been assessed on a desktop computer equipped with two NVIDIA GTX 1070 GPUs. The results show that the proposed multi-GPU method can conduct MCL clustering on the full-size BioGRID database with about 6.5 min, that is much faster than the CPU serial MCL implementation which needs almost an hour and a half execution time.
机译:各种聚类方法广泛应用于分析生物相互作用网络,例如蛋白质 - 蛋白质相互作用和遗传相互作用网络。随着这些生物数据集的快速增长,规模较长,需要更长的运行时来对其进行群集分析。在本文中,我们提出了一种基于ELLPACK-R稀疏矩阵格式的新颖的并行Markov聚类(MCL)方法,该矩阵格式可以在多个图形处理单元(GPU)上配备的独立计算机。该方法是使用计算统一设备架构(CUDA)编程框架实现的方法,并引入了细粒度的经线级优化来提高性能。 BioGrid,蛋白质和遗传相互作用的大规模和可自由的数据库,作为实验中的数据集。该方法已在配备有两个NVIDIA GTX 1070 GPU的台式计算机上进行评估。结果表明,所提出的多GPU方法可以在具有大约6.5分钟的全尺寸BioGrid数据库上对MCL聚类进行MCL聚类,这比CPU串行MCL实现更快,需要几乎一个小时和半执行时间。

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