Work-in-Progress: HeteroRW: A Generalized and Efficient Framework for Random Walks in Graph Analysis

Yingxue Gao, Lei Gong, Chao Wang, Xuehai Zhou
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Abstract

Random walk (RW) is a common graph analysis algorithm that consists of two phases: construction and sampling. The construction phase is responsible for generating the sampling table. The sampling phase contains many walkers which wander through the whole graph to sample. However, RW is notorious for its dynamic and sparse memory access pattern, which makes existing research suffer low throughput and memory bottleneck. In addition, the variety of RW algorithms in different scenarios also brings new design challenges.This paper proposes HeteroRW, a generalized framework to accelerate RWs on FPGAs. HeteroRW first identifies the two phases’ computation characteristics and presents corresponding hardware acceleration designs, respectively. Then, HeteroRW achieves the template-based design to support a variety of RW algorithms. Finally, HeteroRW integrates a novel scheduling layer to partition the input data and perform design space exploration (DSE). Experimental results show that HeteroRW achieves 4.3x speedup over the recent FPGA implementation while effectively simplifying the accelerator customization process.
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在研:HeteroRW:图分析中随机游走的一个广义和有效的框架
随机漫步(Random walk, RW)是一种常用的图分析算法,它由构造和抽样两个阶段组成。构造阶段负责生成抽样表。采样阶段包含许多漫步者,它们在整个图中漫游以进行采样。然而,RW以其动态和稀疏的内存访问模式而臭名昭著,这使得现有的研究存在低吞吐量和内存瓶颈。此外,不同场景下RW算法的多样性也带来了新的设计挑战。本文提出了一种用于fpga上RWs加速的通用框架——HeteroRW。HeteroRW首先识别了这两个阶段的计算特点,并分别给出了相应的硬件加速设计。然后,实现基于模板的RW设计,支持多种RW算法。最后,集成了一种新的调度层来划分输入数据并执行设计空间探索(DSE)。实验结果表明,与目前的FPGA实现相比,HeteroRW的加速速度提高了4.3倍,同时有效地简化了加速器的定制过程。
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