Atomistic Simulations for Reactions and Spectroscopy in the Era of Machine Learning – Quo Vadis?

01/11/2022
by   M. Meuwly, et al.
16

Atomistic simulations using accurate energy functions can provide molecular-level insight into functional motions of molecules in the gas- and in the condensed phase. Together with recently developed and currently pursued efforts in integrating and combining this with machine learning techniques provides a unique opportunity to bring such dynamics simulations closer to reality. This perspective delineates the present status of the field from efforts of others in the field and some of your own work and discusses open questions and future prospects.

READ FULL TEXT

page 8

page 10

page 20

research
06/07/2013

Orbital-free Bond Breaking via Machine Learning

Machine learning is used to approximate the kinetic energy of one dimens...
research
05/18/2023

Multi-Fidelity Machine Learning for Excited State Energies of Molecules

The accurate but fast calculation of molecular excited states is still a...
research
05/29/2022

CP2K on the road to exascale

The CP2K program package, which can be considered as the swiss army knif...
research
01/12/2023

Kinematic Evidence of an Embedded Protoplanet in HD 142666 Identified by Machine Learning

Observations of protoplanetary discs have shown that forming exoplanets ...
research
02/17/2020

Combining SchNet and SHARC: The SchNarc machine learning approach for excited-state dynamics

In recent years, deep learning has become a part of our everyday life an...
research
03/23/2017

Perspective: Energy Landscapes for Machine Learning

Machine learning techniques are being increasingly used as flexible non-...
research
08/18/2023

Machine-Learning Solutions for the Analysis of Single-Particle Diffusion Trajectories

Single-particle traces of the diffusive motion of molecules, cells, or a...

Please sign up or login with your details

Forgot password? Click here to reset