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Compute pairwise Manhattan distance and Pearson correlation coefficient of data points with GPU

机译:使用GPU计算成对曼哈顿距离和Pearson相关系数的数据点

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Graphics processing units (GPUs) are powerful computational devices tailored towards the needs of the 3-D gaming industry for high-performance, real-time graphics engines. Nvidia Corporation released a new generation of GPUs designed for general-purpose computing in 2006, and it released a GPU programming language called CUDA in 2007. The DNA microarray technology is a high throughput tool for assaying mRNA abundance in cell samples. In data analysis, scientists often apply hierarchical clustering of the genes, where a fundamental operation is to calculate all pairwise distances. If there are n genes, it takes O(n~2) time. In this work, GPUs and the CUDA language are used to calculate pairwise distances. For Manhattan distance, GPU/CUDA achieves a 40 to 90 times speed-up compared to the central processing unit implementation; for Pearson correlation coefficient, the speed-up is 28 to 38 times.
机译:图形处理单元(GPU)是针对三维游戏行业的需求而定制的强大的计算设备,用于高性能,实时图形发动机。 Nvidia Corporation发布了2006年为通用计算为普通目的计算的新一代GPU,并于2007年发布了一种名为CUDA的GPU编程语言。DNA微阵列技术是一种高通量工具,用于测定细胞样品中的mRNA丰度。在数据分析中,科学家们经常应用基因的分层聚类,其中基本操作是计算所有成对距离。如果有n个基因,则需要O(n〜2)时间。在这项工作中,GPU和CUDA语言用于计算成对距离。对于曼哈顿距离,与中央处理单元实施相比,GPU / CUDA达到了40至90倍的加速;对于Pearson相关系数,速度为28〜38次。

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