Great computational effort is invested in generating equilibrium states for molecular systems using, for example, Markov chain Monte Carlo. We present a probabilistic model that generates statistically independent samples for molecules from their graph representations. Our model learns a low-dimensional manifold that preserves the geometry of local atomic neighborhoods through a principled learning representation that is based on Euclidean distance geometry. In a new benchmark for molecular conformation generation, we show experimentally that our generative model achieves state-of-the-art accuracy. Finally, we show how to use our model as a proposal distribution in an importance sampling scheme to compute molecular properties
Geometric deep learning (GDL) has demonstrated huge power and enormous potential in molecular data a...
We discuss the geometrical interpretation of a well-known smoothing operator applied to the Molecula...
International audienceWe consider the Molecular Distance Geometry Problem (MDGP), which is the probl...
Machine learning has been playing an increasingly important role in many fields of computational phys...
This paper proposes a machine learning (ML) method to predict stable molecular geometries from their...
<p>Atomistic simulations of the conformational dynamics of proteins can be performed using either Mo...
Small organic molecules are often flexible, i.e., they can adopt a variety of low-energy conformatio...
In recent years, deep generative models for graphs have been used to generate new molecules. These m...
International audienceWe discuss a discretization-based solution approach for a classic problem in g...
International audienceThe Distance Geometry Problem (DGP) consists of finding the coordinates of a g...
Collective variables (CVs) are a fundamental tool to understand molecular flexibility, to compute fr...
The molecule problem is that of determining the coordinates of a set of points in space from a (usu...
We study a fundamental problem in structure-based drug design -- generating molecules that bind to s...
International audienceWe discuss a discretization-based solution approach for a classic problem in g...
NMR experiments are able to provide some of the distances between pairs of hydrogen atoms in molecul...
Geometric deep learning (GDL) has demonstrated huge power and enormous potential in molecular data a...
We discuss the geometrical interpretation of a well-known smoothing operator applied to the Molecula...
International audienceWe consider the Molecular Distance Geometry Problem (MDGP), which is the probl...
Machine learning has been playing an increasingly important role in many fields of computational phys...
This paper proposes a machine learning (ML) method to predict stable molecular geometries from their...
<p>Atomistic simulations of the conformational dynamics of proteins can be performed using either Mo...
Small organic molecules are often flexible, i.e., they can adopt a variety of low-energy conformatio...
In recent years, deep generative models for graphs have been used to generate new molecules. These m...
International audienceWe discuss a discretization-based solution approach for a classic problem in g...
International audienceThe Distance Geometry Problem (DGP) consists of finding the coordinates of a g...
Collective variables (CVs) are a fundamental tool to understand molecular flexibility, to compute fr...
The molecule problem is that of determining the coordinates of a set of points in space from a (usu...
We study a fundamental problem in structure-based drug design -- generating molecules that bind to s...
International audienceWe discuss a discretization-based solution approach for a classic problem in g...
NMR experiments are able to provide some of the distances between pairs of hydrogen atoms in molecul...
Geometric deep learning (GDL) has demonstrated huge power and enormous potential in molecular data a...
We discuss the geometrical interpretation of a well-known smoothing operator applied to the Molecula...
International audienceWe consider the Molecular Distance Geometry Problem (MDGP), which is the probl...