Publication | Open Access
TorchMD: A Deep Learning Framework for Molecular Simulations
218
Citations
46
References
2021
Year
EngineeringMolecular BiologyMachine Learning PotentialsComputational ChemistryChemistryMolecular DynamicsMolecular ComputingMolecular DesignNeural Network PotentialsMolecular SimulationBiophysicsMolecular MechanicMolecular ModelingDeep Learning FrameworkNatural SciencesMolecular PropertyMolecular BiophysicsEmpirical PotentialsComputational Biophysics
Molecular dynamics simulations provide a mechanistic description of molecules by relying on empirical potentials. The quality and transferability of such potentials can be improved leveraging data-driven models derived with machine learning approaches. Here, we present TorchMD, a framework for molecular simulations with mixed classical and machine learning potentials. All force computations including bond, angle, dihedral, Lennard-Jones, and Coulomb interactions are expressed as PyTorch arrays and operations. Moreover, TorchMD enables learning and simulating neural network potentials. We validate it using standard Amber all-atom simulations, learning an ab initio potential, performing an end-to-end training, and finally learning and simulating a coarse-grained model for protein folding. We believe that TorchMD provides a useful tool set to support molecular simulations of machine learning potentials. Code and data are freely available at github.com/torchmd.
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