Variational Monte Carlo on a Budget – Fine-tuning pre-trained Neural Wavefunctions

07/15/2023
by   Michael Scherbela, et al.
0

Obtaining accurate solutions to the Schrödinger equation is the key challenge in computational quantum chemistry. Deep-learning-based Variational Monte Carlo (DL-VMC) has recently outperformed conventional approaches in terms of accuracy, but only at large computational cost. Whereas in many domains models are trained once and subsequently applied for inference, accurate DL-VMC so far requires a full optimization for every new problem instance, consuming thousands of GPUhs even for small molecules. We instead propose a DL-VMC model which has been pre-trained using self-supervised wavefunction optimization on a large and chemically diverse set of molecules. Applying this model to new molecules without any optimization, yields wavefunctions and absolute energies that outperform established methods such as CCSD(T)-2Z. To obtain accurate relative energies, only few fine-tuning steps of this base model are required. We accomplish this with a fully end-to-end machine-learned model, consisting of an improved geometry embedding architecture and an existing SE(3)-equivariant model to represent molecular orbitals. Combining this architecture with continuous sampling of geometries, we improve zero-shot accuracy by two orders of magnitude compared to the state of the art. We extensively evaluate the accuracy, scalability and limitations of our base model on a wide variety of test systems.

READ FULL TEXT
research
06/16/2022

Zero-Shot AutoML with Pretrained Models

Given a new dataset D and a low compute budget, how should we choose a p...
research
05/18/2021

Solving the electronic Schrödinger equation for multiple nuclear geometries with weight-sharing deep neural networks

Accurate numerical solutions for the Schrödinger equation are of utmost ...
research
05/19/2022

Gold-standard solutions to the Schrödinger equation using deep learning: How much physics do we need?

Finding accurate solutions to the Schrödinger equation is the key unsolv...
research
09/16/2019

Deep neural network solution of the electronic Schrödinger equation

The electronic Schrödinger equation describes fundamental properties of ...
research
06/12/2020

TorsionNet: A Reinforcement Learning Approach to Sequential Conformer Search

Molecular geometry prediction of flexible molecules, or conformer search...
research
03/17/2023

Towards a Foundation Model for Neural Network Wavefunctions

Deep neural networks have become a highly accurate and powerful wavefunc...
research
08/11/2022

Scalable neural quantum states architecture for quantum chemistry

Variational optimization of neural-network representations of quantum st...

Please sign up or login with your details

Forgot password? Click here to reset