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News

Our GNN acceleration library for PyTorch is now available. https://github.com/alibaba/graphlearn-for-pytorch

Documentation

简体中文 | English

Graph-Learn (formerly AliGraph) is a distributed framework designed for the development and application of large-scale graph neural networks. It has been successfully applied to many scenarios within Alibaba, such as search recommendation, network security, and knowledge graph. After Graph-Learn 1.0, we added online inference services to the Graph-Learn framework, providing a complete solution including training and inference for GNNs to be used in real business.

Use GraphLearn-Training and Dynamic-Graph-Service for training and inference.

overview

  1. A user initiates a request on the Web (0), samples in real time on the dynamic graph via the Client side (1), uses the samples as model input, and requests the prediction results from the Model service (3).
  2. the prediction results, feedback, and some context on the Web are sent to the Data Hub (0, 3), eg, Log Service.
  3. data updates streamingly flow into the Dynamic Graph Service as graph updates (4).
  4. GraphLearn-Training hourly loads window of graph data, incremental trains models, and updates model on tensorflow Model service.

Citation

Please cite the following paper in your publications if Graph-Learn helps your research.

@article{zhu2019aligraph,
  title={AliGraph: a comprehensive graph neural network platform},
  author={Zhu, Rong and Zhao, Kun and Yang, Hongxia and Lin, Wei and Zhou, Chang and Ai, Baole and Li, Yong and Zhou, Jingren},
  journal={Proceedings of the VLDB Endowment},
  volume={12},
  number={12},
  pages={2094--2105},
  year={2019},
  publisher={VLDB Endowment}
}

License

Apache License 2.0.