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GDR-HGNN: A Heterogeneous Graph Neural Networks Accelerator Frontend with Graph Decoupling and Recoupling
DescriptionHeterogeneous Graph Neural Networks (HGNNs) have broadened the applicability of graph representation learning to heterogeneous graphs. However, the irregular memory access pattern of HGNNs leads to the buffer thrashing issue in HGNN accelerators.

In this work, we identify an opportunity to address buffer thrashing in HGNN acceleration through an analysis of the topology of heterogeneous graphs. To harvest this opportunity, we propose a graph restructuring method and map it into a hardware frontend named GDR-HGNN.
GDR-HGNN dynamically restructures the graph on the fly to enhance data locality for HGNN accelerators.
Experimental results demonstrate that, with the assistance of GDR-HGNN, a leading HGNN accelerator achieves an average speedup of 14.6$\times$ and 1.78$\times$ compared to the state-of-the-art software framework running on A100 GPU and itself, respectively.
Event Type
Research Manuscript
TimeTuesday, June 2511:00am - 11:15am PDT
Location3003, 3rd Floor
Topics
AI
Design
Keywords
AI/ML Architecture Design