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SE(3)-equivariant prediction of molecular wavefunctions and electronic densities

About

Machine learning has enabled the prediction of quantum chemical properties with high accuracy and efficiency, allowing to bypass computationally costly ab initio calculations. Instead of training on a fixed set of properties, more recent approaches attempt to learn the electronic wavefunction (or density) as a central quantity of atomistic systems, from which all other observables can be derived. This is complicated by the fact that wavefunctions transform non-trivially under molecular rotations, which makes them a challenging prediction target. To solve this issue, we introduce general SE(3)-equivariant operations and building blocks for constructing deep learning architectures for geometric point cloud data and apply them to reconstruct wavefunctions of atomistic systems with unprecedented accuracy. Our model achieves speedups of over three orders of magnitude compared to ab initio methods and reduces prediction errors by up to two orders of magnitude compared to the previous state-of-the-art. This accuracy makes it possible to derive properties such as energies and forces directly from the wavefunction in an end-to-end manner. We demonstrate the potential of our approach in a transfer learning application, where a model trained on low accuracy reference wavefunctions implicitly learns to correct for electronic many-body interactions from observables computed at a higher level of theory. Such machine-learned wavefunction surrogates pave the way towards novel semi-empirical methods, offering resolution at an electronic level while drastically decreasing computational cost. Additionally, the predicted wavefunctions can serve as initial guess in conventional ab initio methods, decreasing the number of iterations required to arrive at a converged solution, thus leading to significant speedups without any loss of accuracy or robustness.

Oliver T. Unke, Mihail Bogojeski, Michael Gastegger, Mario Geiger, Tess Smidt, Klaus-Robert M\"uller• 2021

Related benchmarks

TaskDatasetResultRank
Hamiltonian PredictionMD17 Ethanol PBE/def2-SVP
MAE (H)12.15
6
Hamiltonian PredictionMD17 Malonaldehyde PBE/def2-SVP
MAE Hamiltonian (H)12.32
6
Hamiltonian PredictionMD17 Uracil PBE/def2-SVP
MAE Hamiltonian (H)10.73
6
Hamiltonian PredictionMD17 Water PBE def2-SVP
MAE (Hamiltonian)15.67
6
Electronic structure evaluation timeMalondialdehyde
Avg Iteration Reduction71.5
3
SCF convergenceMD17 Ethanol
Avg Iteration Reduction68.6
3
SCF convergenceMD17 Uracil
Avg Iteration Reduction67.1
3
SCF convergenceAspirin
Avg Iteration Reduction55.6
3
Electronic Property PredictionWater
MAE (K)17.59
2
Electronic Property PredictionEthanol
MAE (K) (10^-6 Eh)12.15
2
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