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Advancing molecular simulation with equivariant interatomic potentials

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Deep learning has the potential to accelerate atomistic simulations, but existing models suffer from a lack of robustness, sample efficiency, and accuracy. Simon Batzner, Albert Musaelian, and Boris Kozinsky outline how exploiting the symmetry of Euclidean space offers a new way to address these challenges.

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Fig. 1: Equivariant message passing interatomic potentials.

References

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Acknowledgements

The authors are indebted to many contributions from A. Johansson, L. Sun, M. Geiger, and T. Smidt in developing the ideas and their software implementation.

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Correspondence to Simon Batzner or Albert Musaelian.

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Batzner, S., Musaelian, A. & Kozinsky, B. Advancing molecular simulation with equivariant interatomic potentials. Nat Rev Phys 5, 437–438 (2023). https://doi.org/10.1038/s42254-023-00615-x

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