Using conservation of energy - a fundamental property of closed classical and quantum mechanical systems - we develop an efficient gradient-domain machine learning (GDML) approach to construct accurate molecular force fields using a restricted number of samples from ab initio molecular dynamics (AIMD) trajectories. The GDML implementation is able to reproduce global potential energy surfaces of intermediate-sized molecules with an accuracy of 0.3 kcal mol−1 for energies and 1 kcal mol−1 Å̊−1 for atomic forces using only 1000 conformational geometries for training. We demonstrate this accuracy for AIMD trajectories of molecules, including benzene, toluene, naphthalene, ethanol, uracil, and aspirin. The challenge of constructing conservative ...
We present the construction of molecular force fields for small molecules (less than 25 atoms) using...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
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...
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...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
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...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
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...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
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...
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...
Molecular dynamics (MD) simulations employing classical force fields constitute the cornerstone of c...
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...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...
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...
Molecular dynamics (MD) simulations constitute the cornerstone of contemporary atomistic modeling in...
We present an optimized implementation of the recently proposed symmetric gradient domain machine le...