StreamGCN: Accelerating Graph Convolutional Networks with Streaming Processing

Atefeh Sohrabizadeh, Yuze Chi, J. Cong
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引用次数: 5

Abstract

While there have been many studies on hardware acceleration for deep learning on images, there has been a rather limited focus on accelerating deep learning applications involving graphs. The unique characteristics of graphs, such as the irregular memory access and dynamic parallelism, impose several challenges when the algorithm is mapped to a CPU or GPU. To address these challenges while exploiting all the available sparsity, we propose a flexible architecture called StreamGCN for accelerating Graph Convolutional Networks (GCN), the core computation unit in deep learning algorithms on graphs. The architecture is specialized for streaming processing of many small graphs for graph search and similarity computation. The experimental results demonstrate that StreamGCN can deliver a high speedup compared to a multi-core CPU and a GPU implementation, showing the efficiency of our design.
StreamGCN:使用流处理加速图卷积网络
虽然有很多关于图像上深度学习的硬件加速的研究,但对加速涉及图形的深度学习应用的关注相当有限。图的独特特性,如不规则的内存访问和动态并行性,在将算法映射到CPU或GPU时带来了一些挑战。为了应对这些挑战,同时利用所有可用的稀疏性,我们提出了一种名为StreamGCN的灵活架构,用于加速图卷积网络(GCN),这是图上深度学习算法的核心计算单元。该架构专门用于许多小图的流处理,用于图搜索和相似度计算。实验结果表明,与多核CPU和GPU实现相比,StreamGCN可以提供较高的加速,显示了我们设计的效率。
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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