基于GPU的hmm加速优化策略评估

Samuel Ferraz, N. Moreano
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引用次数: 2

摘要

将一个生物序列与一个序列家族进行比较是生物信息学中的一项重要任务,通常使用诸如HMMer之类的工具进行比较。采用Viterbi算法作为HMMer的主要步骤来计算序列与族之间的相似度。由于生物序列数据库呈指数级增长,Viterbi算法已在多个高性能平台上实现。然而,很少有Viterbi算法的实现使用gpu作为主要平台。在本文中,我们提出了一个用于gpu生物序列分析的Viterbi算法加速器的开发和优化。分析的一些优化方法在文献中首次应用于序列比较问题,而对其他优化方法进行了比相关工作更深入的评估。我们的主要贡献是:(a)在通用计算机上相对于HMMer2和HMMer3的执行速度分别达到102.90和60.46的加速器,(b)对加速器使用多平台OpenCL编程模型,(c)对内存、控制流、执行空间、指令调度和循环优化等几种优化进行了详细评估,(d)优化和评估的方法,也可以应用于其他序列比较算法,如HMMer3 MSV。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Optimization Strategies for HMMer Acceleration on GPU
Comparing a biological sequence to a family of sequences is an important task in Bioinformatics, commonly performed using tools such as HMMer. The Viterbi algorithm is applied as HMMer main step to compute the similarity between the sequence and the family. Due to the exponential growth of biological sequence databases, implementations of the Viterbi algorithm on several high performance platforms have been proposed. Nevertheless, few implementations of the Viterbi algorithm use GPUs as main platform. In this paper, we present the development and optimization of an accelerator for the Viterbi algorithm applied to biological sequence analysis on GPUs. Some of the optimizations analyzed are applied to the sequence comparison problem for the first time in the literature and others are evaluated in more depth than in related works. Our main contributions are: (a) an accelerator that achieves speedups up to 102.90 and 60.46, with respect to HMMer2 and HMMer3 execution on a general purpose computer, respectively, (b) the use of the multi-platform OpenCL programming model for the accelerator, (c) a detailed evaluation of several optimizations such as memory, control flow, execution space, instruction scheduling, and loop optimizations, and (d) a methodology of optimizations and evaluation that can also be applied to other sequence comparison algorithms, such as the HMMer3 MSV.
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