Large-scale maximum likelihood-based phylogenetic analysis on the IBM BlueGene/L

M. Ott, J. Zola, A. Stamatakis, S. Aluru
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引用次数: 159

Abstract

Phylogenetic inference is a grand challenge in Bioinformatics due to immense computational requirements. The increasing popularity of multi-gene alignments in biological studies, which typically provide a stable topological signal due to a more favorable ratio of the number of base pairs to the number of sequences, coupled with rapid accumulation of sequence data in general, poses new challenges for high performance computing. In this paper, we demonstrate how state-of-the-art Maximum Likelihood (ML) programs can be efficiently scaled to the IBM BlueGene/L (BG/L) architecture, by porting RAxML, which is currently among the fastest and most accurate programs for phylogenetic inference under the ML criterion. We simultaneously exploit coarse-grained and fine-grained parallelism that is inherent in every ML-based biological analysis. Performance is assessed using datasets consisting of 212 sequences and 566,470 base pairs, and 2,182 sequences and 51,089 base pairs, respectively. To the best of our knowledge, these are the largest datasets analyzed under ML to date. The capability to analyze such datasets will help to address novel biological questions via phylogenetic analyses. Our experimental results indicate that the fine-grained parallelization scales well up to 1, 024 processors. Moreover, a larger number of processors can be efficiently exploited by a combination of coarse-grained and fine-grained parallelism. Finally, we demonstrate that our parallelization scales equally well on an AMD Opteron cluster with a less favorable network latency to processor speed ratio. We recorded super-linear speedups in several cases due to increased cache efficiency.
基于IBM BlueGene/L的大规模最大似然系统发育分析
在生物信息学中,系统发育推理是一个巨大的挑战,因为它需要大量的计算。多基因比对在生物学研究中的日益普及,由于碱基对数量与序列数量的比例更有利,通常提供稳定的拓扑信号,再加上序列数据的快速积累,对高性能计算提出了新的挑战。在本文中,我们展示了最先进的最大似然(ML)程序如何通过移植RAxML有效地扩展到IBM BlueGene/L (BG/L)架构,RAxML是目前在ML标准下最快和最准确的系统发育推断程序之一。我们同时利用了每个基于ml的生物分析中固有的粗粒度和细粒度并行性。性能评估使用的数据集分别包含212个序列和566,470个碱基对,以及2182个序列和51,089个碱基对。据我们所知,这些是迄今为止在ML下分析的最大数据集。分析这些数据集的能力将有助于通过系统发育分析解决新的生物学问题。我们的实验结果表明,细粒度的并行化可以扩展到1024个处理器。此外,可以通过粗粒度和细粒度并行性的组合有效地利用更多的处理器。最后,我们证明了我们的并行化在AMD Opteron集群上同样可以很好地扩展,并且网络延迟与处理器速度比不太有利。由于缓存效率的提高,我们在几个情况下记录了超线性加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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