Accelerating Parallel Maximum Likelihood-Based Phylogenetic Tree Calculations Using Subtree Equality Vectors

A. Stamatakis, T. Ludwig, H. Meier, Marty J. Wolf
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引用次数: 33

Abstract

Heuristics for calculating phylogenetic trees for a large sets of aligned rRNA sequences based on the maximum likelihood method are computationally expensive. The core of most parallel algorithms, which accounts for the greatest part of computation time, is the tree evaluation function, that calculates the likelihood value for each tree topology. This paper describes and uses Subtree Equality Vectors (SEVs) to reduce the number of required floating point operations during topology evaluation. We integrated our optimizations into various sequential programs and into parallel fastDNAml, one of the most common and efficient parallel programs for calculating large phylogenetic trees. Experimental results for our parallel program, which renders exactly the same output as parallel fastDNAml show global runtime improvements of 26% to 65%. The optimization scales best on clusters of PCs, which also implies a substantial cost saving factor for the determination of large trees.
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利用子树相等向量加速基于并行最大似然的系统发育树计算
基于最大似然法计算大量排列rRNA序列的系统发育树的启发式方法计算成本很高。大多数并行算法的核心是树评价函数,它计算每个树拓扑的似然值,占计算时间的大部分。本文描述并使用子树相等向量(sev)来减少拓扑计算过程中所需的浮点运算次数。我们将我们的优化集成到各种顺序程序和并行fastDNAml中,fastDNAml是用于计算大型系统发育树的最常见和最有效的并行程序之一。我们的并行程序的实验结果显示,与并行fastDNAml呈现完全相同的输出,全局运行时间改善了26%到65%。这种优化在pc集群上的可伸缩性最好,这也意味着在确定大型树时可以节省大量成本。
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