Orion: Scaling Genomic Sequence Matching with Fine-Grained Parallelization

K. Mahadik, S. Chaterji, Bowen Zhou, Milind Kulkarni, S. Bagchi
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引用次数: 22

Abstract

Gene sequencing instruments are producing huge volumes of data, straining the capabilities of current database searching algorithms and hindering efforts of researchers analyzing large collections of data to obtain greater insights. In the space of parallel genomic sequence search, most of the popular software packages, like mpiBLAST, use the database segmentation approach, wherein the entire database is sharded and searched on different nodes. However this approach does not scale well with the increasing length of individual query sequences as well as the rapid growth in size of sequence databases. In this paper, we propose a fine-grained parallelism technique, called Orion, that divides the input query into an adaptive number of fragments and shards the database. Our technique achieves higher parallelism (and hence speedup) and load balancing than database sharding alone, while maintaining 100% accuracy. We show that it is 12.3X faster than mpiBLAST for solving a relevant comparative genomics problem.
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猎户座:缩放基因组序列匹配与细粒度并行
基因测序仪器正在产生大量的数据,使当前数据库搜索算法的能力变得紧张,并阻碍了研究人员分析大量数据以获得更深入的见解的努力。在并行基因组序列搜索领域,大多数流行的软件包,如mpiBLAST,都采用了数据库分割的方法,将整个数据库分片,在不同的节点上进行搜索。然而,随着单个查询序列长度的增加以及序列数据库规模的快速增长,这种方法不能很好地扩展。在本文中,我们提出了一种称为Orion的细粒度并行技术,该技术将输入查询划分为自适应数量的片段并对数据库进行分片。我们的技术实现了比单独的数据库分片更高的并行性(因此加速)和负载平衡,同时保持了100%的准确性。我们表明,在解决相关的比较基因组学问题时,它比mpiBLAST快12.3倍。
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