Demystifying memory access patterns of FPGA-based graph processing accelerators

Jonas Dann, Daniel Ritter, H. Fröning
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引用次数: 7

Abstract

Recent advances in reprogrammable hardware (e. g., FPGAs) and memory technology (e. g., DDR4, HBM) promise to solve performance problems inherent to graph processing like irregular memory access patterns on traditional hardware (e. g., CPU). While several of these graph accelerators were proposed in recent years, it remains difficult to assess their performance and compare them on common graph workloads and accelerator platforms, due to few open source implementations and excessive implementation effort. In this work, we build on a simulation environment for graph processing accelerators, to make several existing accelerator approaches comparable. This allows us to study relevant performance dimensions such as partitioning schemes and memory technology, among others. The evaluation yields insights into the strengths and weaknesses of current graph processing accelerators along these dimensions, and features a novel in-depth comparison.
揭示基于fpga的图形处理加速器的存储器访问模式
可编程硬件(如fpga)和存储技术(如DDR4、HBM)的最新进展有望解决图形处理固有的性能问题,如传统硬件(如CPU)上的不规则内存访问模式。虽然近年来提出了一些这样的图形加速器,但由于很少有开源实现和过多的实现工作,仍然很难评估它们的性能并在常见的图形工作负载和加速器平台上进行比较。在这项工作中,我们建立了一个图形处理加速器的仿真环境,使几种现有的加速器方法具有可比性。这使我们能够研究相关的性能维度,例如分区方案和内存技术等。该评估深入了解了当前图形处理加速器在这些方面的优势和劣势,并进行了新颖的深入比较。
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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