International audienceWe introduce a new bottom-up method for the optimization of dissipative coarse-grain models. The method is based on Bayesian optimization of the likelihood to reproduce a coarse-grained reference trajectory obtained from analysis of a higher resolution molecular dynamics trajectory. This new method is related to force matching techniques, but using the total force on each grain averaged on a coarse time step instead of instantaneous forces. It has the advantage of not being limited to pairwise short-range interactions in the coarse-grain model and also yields an estimation of the friction parameter controlling the dynamics. The theory supporting the method is exposed in a practical perspective, with an analytical solut...
textThe present work addresses issues related to the derivation of reduced models of atomistic syste...
We discuss a data-driven, coarse-graining formulation in the context of equilibrium statistical mech...
Machine-learned coarse-grained (CG) models have the potential for simulating large molecular complex...
International audienceA new Bayesian method was recently introduced for developing coarse-grain (CG)...
The enormous amount of molecular dynamics data available calls for an ever-growing need for extracti...
Hierarchical coarse graining of atomistic molecular systems at equilibrium has been an intensive res...
The development of systematic coarse-grained mesoscopic models for complex molecular systems is an i...
We derive a systematic and general method for parameterizing coarse-grained molecular models consist...
The statistical trajectory matching (STM) method was applied successfully to derive coarse grain (CG...
We use Bayesian inference to derive the rate coefficients of a coarse master equation from molecular...
The demands on the accuracy of force fields for classical molecular dynamics simulations are steadil...
ABSTRACT Coarse-graining has become an area of tremendous importance within many different research...
In this work, we investigate the application of coarse-graining (CG) methods to molecular dynamics (...
The enormous number of atoms in biological and macromolecular systems can prohibit the direct applic...
Deriving potentials for coarse-grained Molecular Dynamics (MD) simulations is frequently done by sol...
textThe present work addresses issues related to the derivation of reduced models of atomistic syste...
We discuss a data-driven, coarse-graining formulation in the context of equilibrium statistical mech...
Machine-learned coarse-grained (CG) models have the potential for simulating large molecular complex...
International audienceA new Bayesian method was recently introduced for developing coarse-grain (CG)...
The enormous amount of molecular dynamics data available calls for an ever-growing need for extracti...
Hierarchical coarse graining of atomistic molecular systems at equilibrium has been an intensive res...
The development of systematic coarse-grained mesoscopic models for complex molecular systems is an i...
We derive a systematic and general method for parameterizing coarse-grained molecular models consist...
The statistical trajectory matching (STM) method was applied successfully to derive coarse grain (CG...
We use Bayesian inference to derive the rate coefficients of a coarse master equation from molecular...
The demands on the accuracy of force fields for classical molecular dynamics simulations are steadil...
ABSTRACT Coarse-graining has become an area of tremendous importance within many different research...
In this work, we investigate the application of coarse-graining (CG) methods to molecular dynamics (...
The enormous number of atoms in biological and macromolecular systems can prohibit the direct applic...
Deriving potentials for coarse-grained Molecular Dynamics (MD) simulations is frequently done by sol...
textThe present work addresses issues related to the derivation of reduced models of atomistic syste...
We discuss a data-driven, coarse-graining formulation in the context of equilibrium statistical mech...
Machine-learned coarse-grained (CG) models have the potential for simulating large molecular complex...