International audienceMachine learning techniques, specifically gradient-enhanced Kriging (GEK), have been implemented for molecular geometry optimization. GEK-based optimization has many advantages compared to conventional-step-restricted second-order truncated expansion-molecular optimization methods. In particular, the surrogate model given by GEK can have multiple stationary points, will smoothly converge to the exact model as the number of sample points increases, and contains an explicit expression for the expected error of the model function at an arbitrary point. Machine learning is, however, associated with abundance of data, contrary to the situation desired for efficient geometry optimizations. In this paper, we demonstrate how t...
International audienceNumerical optimization has been widely used to solve design engineering proble...
In the robust shape optimization context, the evaluation cost of numerical models is reduced by the ...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
Machine learning techniques, specifically gradient-enhanced Kriging (GEK), have been implemented for...
The use of Kriging surrogate models has become popular in approximating computation-intensive determ...
This work proposes a sequential optimization algorithm, EORKS, combining a Kriging surrogate from an...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
The machine learning method kriging is an attractive tool to construct next-generation force fields....
Based on a series of energy minimizations with starting structures obtained from the Baker test set ...
International audienceWithin the context of robust shape optimization, the computational estimation ...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
Gradient-enhanced Kriging (GE-Kriging) is a well-established surrogate modelling technique for appro...
The use of surrogate models for approximating computationally expensive simulations has been on the ...
International audienceNumerical optimization has been widely used to solve design engineering proble...
In the robust shape optimization context, the evaluation cost of numerical models is reduced by the ...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...
Machine learning techniques, specifically gradient-enhanced Kriging (GEK), have been implemented for...
The use of Kriging surrogate models has become popular in approximating computation-intensive determ...
This work proposes a sequential optimization algorithm, EORKS, combining a Kriging surrogate from an...
Geometry optimization is a crucial step in computational chemistry, and the efficiency of optimizati...
The machine learning method kriging is an attractive tool to construct next-generation force fields....
Based on a series of energy minimizations with starting structures obtained from the Baker test set ...
International audienceWithin the context of robust shape optimization, the computational estimation ...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
Gradient-enhanced Kriging (GE-Kriging) is a well-established surrogate modelling technique for appro...
The use of surrogate models for approximating computationally expensive simulations has been on the ...
International audienceNumerical optimization has been widely used to solve design engineering proble...
In the robust shape optimization context, the evaluation cost of numerical models is reduced by the ...
International audienceThe optimization of expensive-to-evaluate functions generally relies on metamo...