When Spark Meets FPGAs: A Case Study for Next-Generation DNA Sequencing Acceleration

Yu-Ting Chen, J. Cong, Zhenman Fang, Jie Lei, Peng Wei
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引用次数: 46

Abstract

FPGA-enabled datacenters have shown great potential for providing performance and energy efficiency improvement, and captured a great amount of attention from both academia and industry. In this paper we aim to answer one key question: how can we efficiently integrate FPGAs into state-of-the-art big-data computing frameworks? Although very important, this problem has not been well studied, especially for the integration of fine-grained FPGA accelerators that have short execution time but will be invoked many times. To provide a generalized methodology and insight for efficient integration, we conduct an in-depth analysis of challenges and corresponding solutions of integration at single-thread, single-node multi-thread, and multi-node levels. With a step-by-step case study for the next-generation DNA sequencing application, we demonstrate how a straightforward integration with 1000x slowdown can be tuned into an efficient integration with 2.6x overall system speedup and 2.4x energy efficiency improvement.
当Spark遇到fpga:下一代DNA测序加速的案例研究
支持fpga的数据中心在提供性能和能效改进方面显示出了巨大的潜力,并引起了学术界和工业界的极大关注。在本文中,我们的目标是回答一个关键问题:我们如何有效地将fpga集成到最先进的大数据计算框架中?虽然这个问题非常重要,但目前还没有得到很好的研究,特别是对于执行时间短但会被多次调用的细粒度FPGA加速器的集成。为了提供有效集成的通用方法和见解,我们深入分析了单线程、单节点多线程和多节点级别集成的挑战和相应的解决方案。通过对下一代DNA测序应用程序的逐步案例研究,我们演示了如何将具有1000倍减速的直接集成调整为具有2.6倍整体系统加速和2.4倍能效改进的高效集成。
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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