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Accelerating BWA Aligner Using Multistage Data Parallelization on Multicore and Manycore Architectures

机译:在多核和Manycore架构上使用多级数据并行化来加速BWA Aligner

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Nowadays, rapid progress in next generation sequencing (NGS) technologies has drastically decreased the cost and time required to obtain genome sequences. A series of powerful computing accelerators, such as GPUs and Xeon Phi MIC, are becoming a common platform to reduce the computational cost of the most demanding processes when genomic data is analyzed. GPU has received more attention at literature so far. However, Xeon Phi constitutes a very attractive approach to improve performance because applications don’t need to be rewritten in a different programming language specifically oriented to it. Sequence alignment is a fundamental step in any variant analysis study and there are many tools that cope with this problem. We have selected BWA, one of the most popular sequence aligner, and studied different data management strategies to improve its execution time on hybrid systems made of multicore CPUs and Xeon Phi accelerators. Our main contributions are focused on designing new strategies that combine data splitting and index replication in order to achieve a better balance in the use of system memory and reduce latency penalties. Our experimental results show significant speed-up improvements when such strategies are executed in our hybrid platform, taking advantage of the combined computing power of a standard multicore CPU and a Xeon Phi accelerator.
机译:如今,下一代测序(NGS)技术的快速发展已大大降低了获得基因组序列所需的成本和时间。一系列功能强大的计算加速器,例如GPU和Xeon Phi MIC,正在成为一种通用平台,可在分析基因组数据时降低最苛刻过程的计算成本。到目前为止,GPU在文学上已受到更多关注。但是,至强融核是提高性能的一种非常有吸引力的方法,因为不需要使用专门针对它的编程语言来重写应用程序。序列比对是任何变异分析研究的基本步骤,有许多工具可以解决此问题。我们选择了BWA(最流行的序列比对器之一),并研究了不同的数据管理策略以改善其在由多核CPU和Xeon Phi加速器组成的混合系统上的执行时间。我们的主要贡献集中在设计结合数据拆分和索引复制的新策略上,以便在使用系统内存方面达到更好的平衡并减少延迟损失。我们的实验结果表明,当在混合平台中执行此类策略时,可以充分利用标准多核CPU和Xeon Phi加速器的综合计算能力,从而显着提高速度。

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