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首页> 外文期刊>BioMed research international >Improving the Mapping of Smith-Waterman Sequence Database Searches onto CUDA-Enabled GPUs
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Improving the Mapping of Smith-Waterman Sequence Database Searches onto CUDA-Enabled GPUs

机译:改进Smith-Waterman序列数据库搜索到支持CUDA的GPU的映射

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Sequence alignment lies at heart of the bioinformatics. The Smith-Waterman algorithm is one of the key sequence search algorithms and has gained popularity due to improved implementations and rapidly increasing compute power. Recently, the Smith-Waterman algorithm has been successfully mapped onto the emerging general-purpose graphics processing units (GPUs). In this paper, we focused on how to improve the mapping, especially for short query sequences, by better usage of shared memory. We performed and evaluated the proposed method on two different platforms (Tesla C1060 and Tesla K20) and compared it with two classic methods in CUDASW++. Further, the performance on different numbers of threads and blocks has been analyzed. The results showed that the proposed method significantly improves Smith-Waterman algorithm on CUDA-enabled GPUs in proper allocation of block and thread numbers.
机译:序列比对是生物信息学的核心。 Smith-Waterman算法是关键序列搜索算法之一,由于改进的实现方式和快速增长的计算能力而受到欢迎。最近,Smith-Waterman算法已成功地映射到新兴的通用图形处理单元(GPU)上。在本文中,我们集中于如何通过更好地使用共享内存来改善映射,尤其是对于短查询序列。我们在两个不同的平台(Tesla C1060和Tesla K20)上执行并评估了该方法,并将其与CUDASW ++中的两种经典方法进行了比较。此外,已经分析了不同数量的线程和块的性能。结果表明,该方法在适当分配块和线程数方面显着改进了支持CUDA的GPU上的Smith-Waterman算法。

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