Custom FPGA-based soft-processors for sparse graph acceleration

Nachiket Kapre
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引用次数: 32

Abstract

FPGA-based soft processors customized for operations on sparse graphs can deliver significant performance improvements over conventional organizations (ARMv7 CPUs) for bulk synchronous sparse graph algorithms. We develop a stripped-down soft processor ISA to implement specific repetitive operations on graph nodes and edges that are commonly observed in sparse graph computations. In the processing core, we provide hardware support for rapidly fetching and processing state of local graph nodes and edges through spatial address generators and zero-overhead loop iterators. We interconnect a 2D array of these lightweight processors with a packet-switched network-on-chip to enable fine-grained operand routing along the graph edges and provide custom send/receive instructions in the soft processor. We develop the processor RTL using Vivado High-Level Synthesis and also provide an assembler and compilation flow to configure the processor instruction and data memories. We outperform a Microblaze (100MHz on Zedboard) and an NIOS-II/f (100MHz on DE2-115) by 6× (single processor design) as well as the ARMv7 dual-core CPU on the Zynq SoCs by as much as 10× on the Xilinx ZC706 board (100 processor design) across a range of matrix datasets.
自定义基于fpga的稀疏图形加速软处理器
针对稀疏图的操作定制的基于fpga的软处理器可以为批量同步稀疏图算法提供比传统组织(ARMv7 cpu)显著的性能改进。我们开发了一个精简的软处理器ISA来实现在稀疏图计算中常见的图节点和边上的特定重复操作。在处理核心中,我们通过空间地址生成器和零开销循环迭代器为局部图节点和边的快速获取和处理状态提供硬件支持。我们将这些轻量级处理器的2D阵列与数据包交换的片上网络互连,以实现沿着图边缘的细粒度操作数路由,并在软处理器中提供自定义的发送/接收指令。我们使用Vivado高级合成技术开发了处理器RTL,并提供了一个汇编和编译流程来配置处理器指令和数据存储器。我们在一系列矩阵数据集上优于Microblaze(在Zedboard上100MHz)和NIOS-II/f(在DE2-115上100MHz) 6倍(单处理器设计)以及Zynq soc上的ARMv7双核CPU在Xilinx ZC706板上(100处理器设计)多达10倍。
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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