Geometric Graph Neural Networks (GNNs) are specialized architectures that capture physical symmetries in 3D atomic systems. They learn latent representations of atoms through message passing, respecting Euclidean transformations. The pipeline involves input preparation, embedding block initialization, and interaction blocks for learning geometric and relational features. Different approaches like cutoff graphs and long-range connections are used to construct the initial geometric graph. Geometric GNNs categorize into invariant, equivariant in Cartesian basis, equivariant in spherical basis, and unconstrained models. The output block makes task-specific predictions at node or graph levels.
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