Publication | Closed Access
EnGN: A High-Throughput and Energy-Efficient Accelerator for Large Graph Neural Networks
162
Citations
29
References
2020
Year
Cluster ComputingSpecialized Accelerator ArchitectureEngineeringComputer ArchitectureGraph Signal ProcessingGraph ProcessingData ScienceEnergy-efficient AcceleratorParallel ComputingComputer EngineeringComputer ScienceDeep LearningGpu ClusterGraph Neural NetworksHardware AccelerationGraph TheoryEdge ComputingDomain-specific AcceleratorParallel ProgrammingGraph Neural NetworkGnn Propagation
Graph neural networks (GNNs) emerge as a powerful approach to process non-euclidean data structures and have been proved powerful in various application domains such as social networks and e-commerce. While such graph data maintained in real-world systems can be extremely large and sparse, thus employing GNNs to deal with them requires substantial computational and memory overhead, which induces considerable energy and resource cost on CPUs and GPUs. In this article, we present a specialized accelerator architecture, EnGN, to enable high-throughput and energy-efficient processing of large-scale GNNs. The proposed EnGN is designed to accelerate the three key stages of GNN propagation, which is abstracted as common computing patterns shared by typical GNNs. To support the key stages simultaneously, we propose the ring-edge-reduce(RER) dataflow that tames the poor locality of sparsely-and-randomly connected vertices, and the RER PE-array to practice RER dataflow. In addition, we utilize a graph tiling strategy to fit large graphs into EnGN and make good use of the hierarchical on-chip buffers through adaptive computation reordering and tile scheduling. Overall, EnGN achieves performance speedup by 1802.9X, 19.75X, and 2.97X and energy efficiency by 1326.35X, 304.43X, and 6.2X on average compared to CPU, GPU, and a state-of-the-art GCN accelerator HyGCN, respectively.
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