Picture for Tess E. Smidt

Tess E. Smidt

Relaxed Octahedral Group Convolution for Learning Symmetry Breaking in 3D Physical Systems

Oct 14, 2023
Figure 1 for Relaxed Octahedral Group Convolution for Learning Symmetry Breaking in 3D Physical Systems
Figure 2 for Relaxed Octahedral Group Convolution for Learning Symmetry Breaking in 3D Physical Systems
Figure 3 for Relaxed Octahedral Group Convolution for Learning Symmetry Breaking in 3D Physical Systems
Figure 4 for Relaxed Octahedral Group Convolution for Learning Symmetry Breaking in 3D Physical Systems
Viaarxiv icon

SE(3)-Equivariant Graph Neural Networks for Data-Efficient and Accurate Interatomic Potentials

Add code
Jan 08, 2021
Figure 1 for SE(3)-Equivariant Graph Neural Networks for Data-Efficient and Accurate Interatomic Potentials
Figure 2 for SE(3)-Equivariant Graph Neural Networks for Data-Efficient and Accurate Interatomic Potentials
Figure 3 for SE(3)-Equivariant Graph Neural Networks for Data-Efficient and Accurate Interatomic Potentials
Figure 4 for SE(3)-Equivariant Graph Neural Networks for Data-Efficient and Accurate Interatomic Potentials
Viaarxiv icon

Relevance of Rotationally Equivariant Convolutions for Predicting Molecular Properties

Add code
Aug 22, 2020
Figure 1 for Relevance of Rotationally Equivariant Convolutions for Predicting Molecular Properties
Figure 2 for Relevance of Rotationally Equivariant Convolutions for Predicting Molecular Properties
Figure 3 for Relevance of Rotationally Equivariant Convolutions for Predicting Molecular Properties
Figure 4 for Relevance of Rotationally Equivariant Convolutions for Predicting Molecular Properties
Viaarxiv icon

Finding Symmetry Breaking Order Parameters with Euclidean Neural Networks

Add code
Jul 04, 2020
Figure 1 for Finding Symmetry Breaking Order Parameters with Euclidean Neural Networks
Figure 2 for Finding Symmetry Breaking Order Parameters with Euclidean Neural Networks
Figure 3 for Finding Symmetry Breaking Order Parameters with Euclidean Neural Networks
Viaarxiv icon