Publication | Closed Access
FeatGraph: A Flexible and Efficient Backend for Graph Neural Network Systems
54
Citations
43
References
2020
Year
Unknown Venue
Graph Representation LearningMachine LearningEngineeringNetwork AnalysisEfficient BackendGraph ProcessingData ScienceSparse Neural NetworkParallel ComputingGraph AlgorithmsSparse TemplatesComputer ScienceDeep LearningFeature TensorGraph Neural NetworksGraph TheoryParallel ProgrammingGraph AnalysisGraph Neural Network
Graph neural networks (GNNs) are gaining popularity as a promising approach to machine learning on graphs. Unlike traditional graph workloads where each vertex/edge is associated with a scalar, GNNs attach a feature tensor to each vertex/edge. This additional feature dimension, along with consequently more complex vertex- and edge-wise computations, has enormous implications on locality and parallelism, which existing graph processing systems fail to exploit. This paper proposes FeatGraph to accelerate GNN workloads by co-optimizing graph traversal and feature dimension computation. FeatGraph provides a flexible programming interface to express diverse GNN models by composing coarse-grained sparse templates with fine-grained user-defined functions (UDFs) on each vertex/edge. FeatGraph incorporates optimizations for graph traversal into the sparse templates and allows users to specify optimizations for UDFs with a feature dimension schedule (FDS). FeatGraph speeds up end-to-end GNN training and inference by up to 32× on CPU and 7× on GPU.
| Year | Citations | |
|---|---|---|
Page 1
Page 1