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Power-Efficiency Analysis of Accelerated BWA-MEM Implementations on Heterogeneous Computing Platforms

机译:异构计算平台上的加速BWA-MEM实现的功效分析

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摘要

Next Generation Sequencing techniques have dramatically reduced the cost of sequencing genetic material, resulting in huge amounts of data being sequenced. The processing of this data poses huge challenges, both from a performance perspective, as well as from a power-efficiency perspective. Heterogeneous computing can help on both fronts, by enabling more performant and more power-efficient solutions. In this paper, power-efficiency of the BWA-MEM algorithm, a popular tool for genomic data mapping, is studied on two heterogeneous architectures. The performance and power-efficiency of an FPGA-based implementation using a single Xilinx Virtex-7 FPGA on the Alpha Data add-in card is compared to a GPU-based implementation using an NVIDIA GeForce GTX 970 and against the software-only baseline system. By offloading the Seed Extension phase on an accelerator, both implementations are able to achieve a two-fold speedup in overall application-level performance over the software-only implementation. Moreover, the highly customizable nature of the FPGA results in much higher power-efficiency, as the FPGA power consumption is less than one fourth of that of the GPU. To facilitate platform and tool-agnostic comparisons, the base pairs per Joule unit is introduced as a measure of power-efficiency. The FPGA design is able to map up to 44 thousand base pairs per Joule, a 2.1x gain in power-efficiency as compared to the software-only baseline.
机译:下一代测序技术已大大降低了遗传物质测序的成本,从而导致对大量数据进行测序。从性能角度以及从功率效率角度来看,这些数据的处理都面临着巨大的挑战。通过实现更高性能和更节能的解决方案,异构计算可以在两个方面提供帮助。在本文中,BWA-MEM算法(一种用于基因组数据映射的流行工具)的功效在两个异构体系结构上进行了研究。将使用Alpha Data附加卡上的单个Xilinx Virtex-7 FPGA的基于FPGA的实施的性能和功率效率与使用NVIDIA GeForce GTX 970并基于纯软件的基准系统的基于GPU的实施进行了比较。通过在加速器上卸载“种子扩展”阶段,与仅使用软件的实现相比,这两种实现都可以将整体应用程序级性能提高两倍。此外,由于FPGA的功耗不到GPU功耗的四分之一,因此FPGA的高度可定制性导致了更高的功率效率。为了促进平台和工具不可知的比较,引入了每焦耳单位的碱基对,以衡量功率效率。 FPGA设计每焦耳最多可映射4.4万个碱基对,与纯软件基准相比,功率效率提高2.1倍。

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