Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of contemporary atomistic modeling in chemistry, biology, and materials science. However, the predictive power of these simulations is only as good as the underlying interatomic potential. Classical potentials often fail to faithfully capture key quantum effects in molecules and materials. Here we enable the direct construction of flexible molecular force fields from high-level ab initio calculations by incorporating spatial and temporal physical symmetries into a gradient-domain machine learning (sGDML) model in an automatic data-driven way. The developed sGDML approach faithfully reproduces global force fields at quantum-chemical CCSD(T) level ...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
Using conservation of energy — a fundamental property of closed classical and quantum mechanical sys...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
peer reviewedMolecular dynamics (MD) simulations employing classical force fields constitute the cor...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
Highly accurate force fields are a mandatory requirement to generate predictive simulations. Here we...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
peer reviewedUsing conservation of energy — a fundamental property of closed classical and quantum m...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
Using conservation of energy — a fundamental property of closed classical and quantum mechanical sys...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
peer reviewedMolecular dynamics (MD) simulations employing classical force fields constitute the cor...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
Highly accurate force fields are a mandatory requirement to generate predictive simulations. Here we...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
peer reviewedUsing conservation of energy — a fundamental property of closed classical and quantum m...
Using conservation of energy - a fundamental property of closed classical and quantum mechanical sys...
Using conservation of energy — a fundamental property of closed classical and quantum mechanical sys...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...