We present a method to accurately predict the Helmholtz harmonic free energies of molecular crystals in high-throughput settings. This is achieved by devising a computationally efficient framework that employs a Gaussian Process Regression model based on local atomic environments. The cost to train the model with ab initio potentials is reduced by starting the optimization of the framework parameters, as well as the training and validation sets, with an empirical potential. This is then transferred to train the model based on density-functional theory potentials, including dispersion-corrections. We benchmarked our framework on a set of 444 hydrocarbon crystal structures, comprising 38 polymorphs and 406 crystal structures either measured i...
We provide an introduction to Gaussian process regression (GPR) machine-learning methods in computat...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Abstract We present a method to accurately predict the Helmholtz harmonic free energies of molecular...
Vibrational properties of molecular crystals are constantly used as structural fingerprints, in orde...
Predictions of relative stabilities of (competing) molecular crystals are of great technological rel...
Vibrational properties of molecular crystals are constantly used as structural fingerprints, in orde...
We present a new program implementation of the Gaussian process regression adaptive density-guided a...
peer reviewedReliable prediction of the polymorphic energy landscape of a molecular crystal would yi...
Understanding the structure and stability, as well as response properties of molecular crystals at c...
The combination of modern machine learning (ML) approaches with high-quality data from quantum mecha...
We present the implementation of GAtor, a massively parallel, first-principles genetic algorithm (GA...
We present an assessment of the performance of several force fields for modelling intermolecular int...
The application of Crystal Structure Prediction (CSP) to industrially-relevant molecules requires th...
Molecular crystal structure prediction (CSP) requires evaluating differences in lattice energy betwe...
We provide an introduction to Gaussian process regression (GPR) machine-learning methods in computat...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Abstract We present a method to accurately predict the Helmholtz harmonic free energies of molecular...
Vibrational properties of molecular crystals are constantly used as structural fingerprints, in orde...
Predictions of relative stabilities of (competing) molecular crystals are of great technological rel...
Vibrational properties of molecular crystals are constantly used as structural fingerprints, in orde...
We present a new program implementation of the Gaussian process regression adaptive density-guided a...
peer reviewedReliable prediction of the polymorphic energy landscape of a molecular crystal would yi...
Understanding the structure and stability, as well as response properties of molecular crystals at c...
The combination of modern machine learning (ML) approaches with high-quality data from quantum mecha...
We present the implementation of GAtor, a massively parallel, first-principles genetic algorithm (GA...
We present an assessment of the performance of several force fields for modelling intermolecular int...
The application of Crystal Structure Prediction (CSP) to industrially-relevant molecules requires th...
Molecular crystal structure prediction (CSP) requires evaluating differences in lattice energy betwe...
We provide an introduction to Gaussian process regression (GPR) machine-learning methods in computat...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Crystal structure prediction involves a search of a complex configurational space for local minima c...