Combining machine learning and computational chemistry for predictive insights into chemical systems
Machine learning models are poised to make a transformative impact on chemical sciences
by dramatically accelerating computational algorithms and amplifying insights available from …
by dramatically accelerating computational algorithms and amplifying insights available from …
Machine learning for electronically excited states of molecules
J Westermayr, P Marquetand - Chemical Reviews, 2020 - ACS Publications
Electronically excited states of molecules are at the heart of photochemistry, photophysics,
as well as photobiology and also play a role in material science. Their theoretical description …
as well as photobiology and also play a role in material science. Their theoretical description …
Neural network potential energy surfaces for small molecules and reactions
S Manzhos, T Carrington Jr - Chemical Reviews, 2020 - ACS Publications
We review progress in neural network (NN)-based methods for the construction of
interatomic potentials from discrete samples (such as ab initio energies) for applications in …
interatomic potentials from discrete samples (such as ab initio energies) for applications in …
Quantum chemistry in the age of machine learning
PO Dral - The journal of physical chemistry letters, 2020 - ACS Publications
As the quantum chemistry (QC) community embraces machine learning (ML), the number of
new methods and applications based on the combination of QC and ML is surging. In this …
new methods and applications based on the combination of QC and ML is surging. In this …
Choosing the right molecular machine learning potential
Quantum-chemistry simulations based on potential energy surfaces of molecules provide
invaluable insight into the physicochemical processes at the atomistic level and yield such …
invaluable insight into the physicochemical processes at the atomistic level and yield such …
The TensorMol-0.1 model chemistry: a neural network augmented with long-range physics
Traditional force fields cannot model chemical reactivity, and suffer from low generality
without re-fitting. Neural network potentials promise to address these problems, offering …
without re-fitting. Neural network potentials promise to address these problems, offering …
High-fidelity potential energy surfaces for gas-phase and gas–surface scattering processes from machine learning
In this Perspective, we review recent advances in constructing high-fidelity potential energy
surfaces (PESs) from discrete ab initio points, using machine learning tools. Such PESs …
surfaces (PESs) from discrete ab initio points, using machine learning tools. Such PESs …
Neural network potentials for chemistry: concepts, applications and prospects
Artificial Neural Networks (NN) are already heavily involved in methods and applications for
frequent tasks in the field of computational chemistry such as representation of potential …
frequent tasks in the field of computational chemistry such as representation of potential …
Machine Learning of Reactive Potentials
In the past two decades, machine learning potentials (MLPs) have driven significant
developments in chemical, biological, and material sciences. The construction and training …
developments in chemical, biological, and material sciences. The construction and training …
Permutationally invariant potential energy surfaces
Over the past decade, about 50 potential energy surfaces (PESs) for polyatomics with 4–11
atoms and for clusters have been calculated using the permutationally invariant polynomial …
atoms and for clusters have been calculated using the permutationally invariant polynomial …