torch-geometric
PyTorch Geometric (PyG)
Overview
PyTorch Geometric is a library built on PyTorch for developing and training Graph Neural Networks (GNNs). Apply this skill for deep learning on graphs and irregular structures, including mini-batch processing, multi-GPU training, and geometric deep learning applications.
When to Use This Skill
This skill should be used when working with:
- Graph-based machine learning: Node classification, graph classification, link prediction
- Molecular property prediction: Drug discovery, chemical property prediction
- Social network analysis: Community detection, influence prediction
- Citation networks: Paper classification, recommendation systems
- 3D geometric data: Point clouds, meshes, molecular structures
- Heterogeneous graphs: Multi-type nodes and edges (e.g., knowledge graphs)
- Large-scale graph learning: Neighbor sampling, distributed training
Quick Start
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