Genome sequencing using mapreduce on FPGA with multiple hardware accelerators (abstract only)

Chao Wang, Xi Li, Xuehai Zhou, Jim Martin, R. Cheung
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引用次数: 6

Abstract

The genome sequencing problem with short reads is an emerging field with seemingly limitless possibilities for advances in numerous scientific research and application domains. It has been the hot topic during the past few years. Growing with the data population and the ease to access for personal users, how to shorten the response interval for short read mapping at a large scale computing domain is extremely important. In this paper we propose a novel FPGA-based acceleration solution with Map-Reduce framework on multiple hardware acceleration engines. The combination of hardware accelerators and Map-Reduce execution flow could greatly expedite the task of aligning short length reads to a known reference genome. Our approach is based on preprocessing the reference genomes and iterative jobs for aligning the continuous incoming reads. The read-mapping algorithm is modeled after the creditable RMAP software approach. Furthermore, theoretical speedup analysis on a MapReduce programming platform is presented, which demonstrates that our proposed architecture has efficient potential to reduce the average waiting time for large scale short reads applications.
基于FPGA的mapreduce基因组测序与多硬件加速器(仅摘要)
基因组短序列问题是一个新兴的领域,在许多科学研究和应用领域的进步似乎具有无限的可能性。在过去的几年里,这一直是一个热门话题。随着数据量的增长和个人用户访问的便捷性的提高,如何在大规模计算领域缩短短读映射的响应间隔显得尤为重要。本文提出了一种基于fpga的基于Map-Reduce框架的多硬件加速引擎加速解决方案。硬件加速器和Map-Reduce执行流程的结合可以极大地加快将短长度读数与已知参考基因组对齐的任务。我们的方法是基于预处理参考基因组和迭代工作,以对准连续的传入读取。读映射算法是在可信RMAP软件方法的基础上建模的。此外,在MapReduce编程平台上进行了理论加速分析,证明了我们提出的架构在减少大规模短读应用的平均等待时间方面具有有效的潜力。
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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