diBELLA: Distributed Long Read to Long Read Alignment

Marquita Ellis, Giulia Guidi, A. Buluç, L. Oliker, K. Yelick
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引用次数: 17

Abstract

We present a parallel algorithm and scalable implementation for genome analysis, specifically the problem of finding overlaps and alignments for data from "third generation" long read sequencers [29]. While long sequences of DNA offer enormous advantages for biological analysis and insight, current long read sequencing instruments have high error rates and therefore require different approaches to analysis than their short read counterparts. Our work focuses on an efficient distributed-memory parallelization of an accurate single-node algorithm for overlapping and aligning long reads. We achieve scalability of this irregular algorithm by addressing the competing issues of increasing parallelism, minimizing communication, constraining the memory footprint, and ensuring good load balance. The resulting application, diBELLA, is the first distributed memory overlapper and aligner specifically designed for long reads and parallel scalability. We describe and present analyses for high level design trade-offs and conduct an extensive empirical analysis that compares performance characteristics across state-of-the-art HPC systems as well as a commercial cloud architectures, highlighting the advantages of state-of-the-art network technologies.
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diBELLA:分布式长读对长读对齐
我们提出了一种用于基因组分析的并行算法和可扩展实现,特别是发现来自“第三代”长读测序仪[29]的数据重叠和对齐的问题。虽然长DNA序列为生物分析和洞察提供了巨大的优势,但目前的长读测序仪器有很高的错误率,因此需要与短读测序仪器不同的分析方法。我们的工作重点是一个精确的单节点算法的高效分布式内存并行化,用于重叠和对齐长读取。我们通过解决增加并行性、最小化通信、限制内存占用和确保良好负载平衡等竞争问题来实现这种不规则算法的可伸缩性。由此产生的应用程序diBELLA是第一个专门为长读取和并行可伸缩性设计的分布式内存重叠和对齐器。我们对高级设计权衡进行了描述和分析,并进行了广泛的实证分析,比较了最先进的高性能计算系统和商业云架构的性能特征,突出了最先进的网络技术的优势。
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