High performance, easy-to-use, and scalable package for learning large-scale knowledge graph embeddings.
-
Updated
Aug 8, 2025 - Python
High performance, easy-to-use, and scalable package for learning large-scale knowledge graph embeddings.
This is an open-source toolkit for Heterogeneous Graph Neural Network(OpenHGNN) based on DGL.
Python package for graph neural networks in chemistry and biology
GraphGallery is a gallery for benchmarking Graph Neural Networks
Implementation of Principal Neighbourhood Aggregation for Graph Neural Networks in PyTorch, DGL and PyTorch Geometric
Source code for EMNLP 2020 paper: Double Graph Based Reasoning for Document-level Relation Extraction
Implementation of Directional Graph Networks in PyTorch and DGL
Code for "Heterogeneous Graph Transformer" (WWW'20), which is based on Deep Graph Library (DGL)
Reimplementation of Graph Autoencoder by Kipf & Welling with DGL.
NebulaGraph DGL(Deep Graph Library) Integration Package. (WIP)
MAXP 命题赛 任务一:基于DGL的图机器学习任务。队伍:Graph@ICT,🥉rank6。https://www.biendata.xyz/competition/maxp_dgl/
DGL implementation of EGES
Space4HGNN: A Novel, Modularized and Reproducible Platform to Evaluate Heterogeneous Graph Neural Network
Set of PyTorch modules for developing and evaluating different algorithms for embedding trees.
A DGL implementation of "Graph Neural Networks with convolutional ARMA filters". (PAMI 2021)
DGL implementation of GNN-CCA: Graph Neural Networks for Cross-Camera Data Association [arXiv:2201.06311]
Implementation of "Denoise Pretraining on Non-equilibrium Molecular Conformations for Accurate and Transferable Neural Potentials" in PyTorch.
Add a description, image, and links to the dgl topic page so that developers can more easily learn about it.
To associate your repository with the dgl topic, visit your repo's landing page and select "manage topics."