Deep graph library: A graph-centric, highly-performant package for graph neural networks M Wang, D Zheng, Z Ye, Q Gan, M Li, X Song, J Zhou, C Ma, L Yu, Y Gai, ... arXiv preprint arXiv:1909.01315, 2019 | 1193 | 2019 |
Distdgl: distributed graph neural network training for billion-scale graphs D Zheng, C Ma, M Wang, J Zhou, Q Su, X Song, Q Gan, Z Zhang, ... 2020 IEEE/ACM 10th Workshop on Irregular Applications: Architectures and …, 2020 | 209* | 2020 |
Dgl-lifesci: An open-source toolkit for deep learning on graphs in life science M Li, J Zhou, J Hu, W Fan, Y Zhang, Y Gu, G Karypis ACS omega 6 (41), 27233-27238, 2021 | 128 | 2021 |
Graph neural networks inspired by classical iterative algorithms Y Yang, T Liu, Y Wang, J Zhou, Q Gan, Z Wei, Z Zhang, Z Huang, D Wipf International Conference on Machine Learning, 11773-11783, 2021 | 69 | 2021 |
Dgi: An easy and efficient framework for gnn model evaluation P Yin, X Yan, J Zhou, Q Fu, Z Cai, J Cheng, B Tang, M Wang Proceedings of the 29th ACM SIGKDD Conference on Knowledge Discovery and …, 2023 | 6* | 2023 |