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The SMEM Seeding Acceleration for DNA Sequence Alignment

机译:DNA序列比对的SMEM播种加速

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The advance of next-generation sequencing technology has dramatically reduced the cost of genome sequencing. However, processing and analyzing huge amounts of data collected from sequencers introduces significant computation challenges, these have become the bottleneck in many research and clinical applications. For such applications, read alignment is usually one of the most compute-intensive steps. Billions of reads generated from the sequencer need to be aligned to the long reference genome. Recent state-of-the-art software read aligners follow the seed-andextend model. In this paper we focus on accelerating the first seeding stage, which generates the seeds using the supermaximal exact match (SMEM) seeding algorithm. The two main challenges for accelerating this process are 1) how to process a huge number of short reads with high throughput, and 2) how to hide the frequent and long random memory access when we try to fetch the value of the reference genome. In this paper, we propose a scalable array-based architecture, which is composed by many processing engines (PEs) to process large amounts of data simultaneously for the demand of high throughput. Furthermore, we provide a tight software/hardware integration that realizes the proposed architecture on the Intel-Altera HARP system. With a 16-PE accelerator engine, we accelerate the SMEM algorithm by 4x, and the overall SMEM seeding stage by 26% when compared with 16-thread CPU execution. We further analyze the performance bottleneck of the design due to extensive DRAM accesses and discuss the possible improvements that are worthwhile to be explored in the future.
机译:下一代测序技术的进步极大地降低了基因组测序的成本。但是,处理和分析从定序器收集的大量数据带来了重大的计算挑战,这些挑战已成为许多研究和临床应用的瓶颈。对于此类应用程序,读取对齐通常是计算量最大的步骤之一。测序仪产生的数十亿条读数需要与长参考基因组比对。最新的最新软件读取对齐器遵循种子和扩展模型。在本文中,我们专注于加速第一个播种阶段,该阶段使用超最大精确匹配(SMEM)播种算法生成种子。加快此过程的两个主要挑战是:1)如何以高吞吐量处理大量的短读操作,以及2)当我们尝试获取参考基因组的值时,如何隐藏频繁且长时间的随机内存访问。在本文中,我们提出了一种基于数组的可伸缩体系结构,该体系结构由许多处理引擎(PE)组成,可以同时处理大量数据,以满足高吞吐量的需求。此外,我们提供了紧密的软件/硬件集成,可在Intel-Altera HARP系统上实现建议的体系结构。与16线程CPU执行相比,借助16-PE加速器引擎,我们将SMEM算法加速了4倍,整个SMEM播种阶段提高了26%。我们进一步分析了由于广泛的DRAM访问而导致的设计性能瓶颈,并讨论了将来值得探索的可能的改进。

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