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A machine learning approach for accelerating DNA sequence analysis

机译:一种用于加速DNA序列分析的机器学习方法

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摘要

The DNA sequence analysis is a data and computationally intensive problem and therefore demands suitable parallel computing resources and algorithms. In this paper, we describe an optimized approach for DNA sequence analysis on a heterogeneous platform that is accelerated with the Intel Xeon Phi. Such platforms commonly comprise one or two general purpose host central processing units (CPUs) and one or more Xeon Phi devices. We present a parallel algorithm that shares the work of DNA sequence analysis between the host CPUs and the Xeon Phi device to reduce the overall analysis time. For automatic worksharing we use a supervised machine learning approach, which predicts the performance of DNA sequence analysis on the host and device and accordingly maps fractions of the DNA sequence to the host and device. We evaluate our approach empirically using real-world DNA segments for human and various animals on a heterogeneous platform that comprises two 12-core Intel Xeon E5 CPUs and an Intel Xeon Phi 7120P device with 61 cores.
机译:DNA序列分析是一个数据和计算密集型问题,因此需要合适的并行计算资源和算法。在本文中,我们描述了一种在异构平台上进行DNA序列分析的优化方法,该平台通过Intel Xeon Phi得以加速。这样的平台通常包括一个或两个通用主机中央处理单元(CPU)和一个或多个Xeon Phi设备。我们提出了一种并行算法,该算法在主机CPU和Xeon Phi设备之间共享DNA序列分析的工作,以减少总体分析时间。对于自动工作共享,我们使用有监督的机器学习方法,该方法可预测主机和设备上DNA序列分析的性能,并相应地将DNA序列的一部分映射到主机和设备上。我们在包含两个12核Intel Xeon E5 CPU和一个具有61核内核的Intel Xeon Phi 7120P设备的异构平台上,使用人类和各种动物的真实DNA片段,通过经验方法评估我们的方法。

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