Back to Search Start Over

HyGCN: A GCN Accelerator with Hybrid Architecture

Authors :
Yan, Mingyu
Deng, Lei
Hu, Xing
Liang, Ling
Feng, Yujing
Ye, Xiaochun
Zhang, Zhimin
Fan, Dongrui
Xie, Yuan
Publication Year :
2020

Abstract

In this work, we first characterize the hybrid execution patterns of GCNs on Intel Xeon CPU. Guided by the characterization, we design a GCN accelerator, HyGCN, using a hybrid architecture to efficiently perform GCNs. Specifically, first, we build a new programming model to exploit the fine-grained parallelism for our hardware design. Second, we propose a hardware design with two efficient processing engines to alleviate the irregularity of Aggregation phase and leverage the regularity of Combination phase. Besides, these engines can exploit various parallelism and reuse highly reusable data efficiently. Third, we optimize the overall system via inter-engine pipeline for inter-phase fusion and priority-based off-chip memory access coordination to improve off-chip bandwidth utilization. Compared to the state-of-the-art software framework running on Intel Xeon CPU and NVIDIA V100 GPU, our work achieves on average 1509$\times$ speedup with 2500$\times$ energy reduction and average 6.5$\times$ speedup with 10$\times$ energy reduction, respectively.<br />Comment: To Appear in 2020 IEEE International Symposium on High Performance Computer Architecture

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.02514
Document Type :
Working Paper