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Accelerating Smith-Waterman Alignment for Protein Database Search Using Frequency Distance Filtration Scheme Based on CPU-GPU Collaborative System

机译:基于CPU-GPU协同系统的频率距离过滤方案加速Smith-Waterman比对用于蛋白质数据库搜索

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摘要

The Smith-Waterman (SW) algorithm has been widely utilized for searching biological sequence databases in bioinformatics. Recently, several works have adopted the graphic card with Graphic Processing Units (GPUs) and their associated CUDA model to enhance the performance of SW computations. However, these works mainly focused on the protein database search by using the intertask parallelization technique, and only using the GPU capability to do the SW computations one by one. Hence, in this paper, we will propose an efficient SW alignment method, called CUDA-SWfr, for the protein database search by using the intratask parallelization technique based on a CPU-GPU collaborative system. Before doing the SW computations on GPU, a procedure is applied on CPU by using the frequency distance filtration scheme (FDFS) to eliminate the unnecessary alignments. The experimental results indicate that CUDA-SWfr runs 9.6 times and 96 times faster than the CPU-based SW method without and with FDFS, respectively.
机译:Smith-Waterman(SW)算法已被广泛用于搜索生物信息学中的生物序列数据库。最近,几项工作采用了带有图形处理单元(GPU)的图形卡及其相关的CUDA模型,以增强软件计算的性能。但是,这些工作主要集中在使用任务间并行化技术进行蛋白质数据库搜索上,并且仅使用GPU功能来逐一进行SW计算。因此,在本文中,我们将使用基于CPU-GPU协作系统的任务内并行化技术,为蛋白质数据库搜索提出一种有效的SW对齐方法,称为CUDA-SWfr。在GPU上进行SW计算之前,通过使用频率距离过滤方案(FDFS)在CPU上应用一个过程以消除不必要的对齐。实验结果表明,CUDA-SWfr的运行速度分别比不使用FDFS和使用FDFS的基于CPU的SW方法快9.6倍和96倍。

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