Submitted by chaitjo t3_10r31eo in MachineLearning
Geometric GNNs are an emerging class of GNNs for spatially embedded graphs in scientific and engineering applications, s.a. biomolecular structure, material science, and physical simulations. Notable examples include SchNet, DimeNet, Tensor Field Networks, and E(n) Equivariant GNNs.
How powerful are geometric GNNs? How do key design choices influence expressivity and how to build maximally powerful ones?
Check out this recent paper for more:
📄 PDF: http://arxiv.org/abs/2301.09308
💻 Code: http://github.com/chaitjo/geometric-gnn-dojo
💡Key findings: https://twitter.com/chaitjo/status/1617812402632019968Â
P.S. Are you new to Geometric GNNs, GDL, PyTorch Geometric, etc.? Want to understand how theory/equations connect to real code?
Try this Geometric GNN 101 notebook before diving in:
https://github.com/chaitjo/geometric-gnn-dojo/blob/main/geometric_gnn_101.ipynb
CatalyzeX_code_bot t1_j6tavkj wrote
Found relevant code at https://github.com/chaitjo/geometric-gnn-dojo + all code implementations here
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