The emergence of foundation models in Computer Vision and Natural Language Processing have resulted in immense progress on downstream tasks. This progress was enabled by datasets with billions of training examples. Similar benefits are yet to be unlocked for quantum chemistry, where the potential of deep learning is constrained by comparatively small datasets with 100k to 20M training examples. These datasets are limited in size because the labels are computed using the accurate (but computationally demanding) predictions of Density Functional Theory (DFT). Notably, prior DFT datasets were created using CPU supercomputers without leveraging hardware acceleration. In this paper, we take a first step towards utilising hardware accelerators by...
The demonstrated success of transfer learning has popularized approaches that involve pretraining mo...
We analyze how accurately supervised machine learning techniques can predict the lowest energy level...
SchNetPack is a toolbox for the development and application of deep neural networks that predict pot...
Molecular property calculations are the bedrock of chemical physics. High-fidelity \textit{ab initio...
We investigate 3D deep learning methods for predicting quantum mechanical energies at high-theory-le...
We demonstrate how a deep neural network (NN) trained on a data set of quantum mechanical (QM) DFT c...
Recently, pre-trained foundation models have enabled significant advancements in multiple fields. In...
Solving electronic structure problems represents a promising field of application for quantum comput...
Inspired by Pople diagrams popular in quantum chemistry, we introduce a hierarchical scheme, based o...
Machine-learned force fields combine the accuracy of ab initio methods with the efficiency of conven...
Chemically accurate and comprehensive studies of the virtual space of all possible molecules are sev...
PySCF is a Python-based general-purpose electronic structure platform that supports first-principles...
Deep learning has led to a paradigm shift in artificial intelligence, including web, text, and image...
PySCF is a Python-based general-purpose electronic structure platform that supports first-principles...
Models that combine quantum mechanics (QM) with machine learning (ML) promise to deliver the accurac...
The demonstrated success of transfer learning has popularized approaches that involve pretraining mo...
We analyze how accurately supervised machine learning techniques can predict the lowest energy level...
SchNetPack is a toolbox for the development and application of deep neural networks that predict pot...
Molecular property calculations are the bedrock of chemical physics. High-fidelity \textit{ab initio...
We investigate 3D deep learning methods for predicting quantum mechanical energies at high-theory-le...
We demonstrate how a deep neural network (NN) trained on a data set of quantum mechanical (QM) DFT c...
Recently, pre-trained foundation models have enabled significant advancements in multiple fields. In...
Solving electronic structure problems represents a promising field of application for quantum comput...
Inspired by Pople diagrams popular in quantum chemistry, we introduce a hierarchical scheme, based o...
Machine-learned force fields combine the accuracy of ab initio methods with the efficiency of conven...
Chemically accurate and comprehensive studies of the virtual space of all possible molecules are sev...
PySCF is a Python-based general-purpose electronic structure platform that supports first-principles...
Deep learning has led to a paradigm shift in artificial intelligence, including web, text, and image...
PySCF is a Python-based general-purpose electronic structure platform that supports first-principles...
Models that combine quantum mechanics (QM) with machine learning (ML) promise to deliver the accurac...
The demonstrated success of transfer learning has popularized approaches that involve pretraining mo...
We analyze how accurately supervised machine learning techniques can predict the lowest energy level...
SchNetPack is a toolbox for the development and application of deep neural networks that predict pot...