Learning system dynamics directly from observations is a promising direction in machine learning due to its potential to significantly enhance our ability to understand physical systems. However, the dynamics of many real-world systems are challenging to learn due to the presence of nonlinear potentials and a number of interactions that scales quadratically with the number of particles N, as in the case of the N-body problem. In this work we introduce an approach that transforms a fully-connected interaction graph into a hierarchical one which reduces the number of edges to O(N). This results in a linear time and space complexity while the pre-computation of the hierarchical graph requires O(N log (N)) time and O(N) space. Using our approac...
This article introduces a novel approach to increase the performances of N-body simulations. In an N...
We explore the use of graph networks to deal with irregular-geometry detectors in the context of par...
Simulations of interacting particles are common in science and engineering, appearing in such divers...
Interacting particle systems play a key role in science and engineering. Access to the governing par...
International audienceThe purpose of the software GASIP is to simulate the gravitational interaction...
Regional-scale landslide modeling is critical to assess the runout risk on communities. Landslide ru...
Molecular dynamics (MD) simulation is the workhorse of various scientific domains but is limited by ...
Motivated by the successes in the field of deep learning, the scientific community has been increasi...
Self-Organized Criticality (SOC) is a ubiquitous dynamical phenomenon believed to be responsible for...
We train a neural network model to predict the full phase space evolution of cosmological N-body sim...
Recent works on learning-based frameworks for Lagrangian (i.e., particle-based) fluid simulation, th...
One of the main challenges in using deep learning-based methods for simulating physical systems and ...
Abstract. The simulation of N particles interacting in a gravitational force field is useful in astr...
Dynamics always exist in complex systems. Graphs (complex networks) are a mathematical form for desc...
We present a physically-motivated topology of a deep neural network that can efficiently infer exten...
This article introduces a novel approach to increase the performances of N-body simulations. In an N...
We explore the use of graph networks to deal with irregular-geometry detectors in the context of par...
Simulations of interacting particles are common in science and engineering, appearing in such divers...
Interacting particle systems play a key role in science and engineering. Access to the governing par...
International audienceThe purpose of the software GASIP is to simulate the gravitational interaction...
Regional-scale landslide modeling is critical to assess the runout risk on communities. Landslide ru...
Molecular dynamics (MD) simulation is the workhorse of various scientific domains but is limited by ...
Motivated by the successes in the field of deep learning, the scientific community has been increasi...
Self-Organized Criticality (SOC) is a ubiquitous dynamical phenomenon believed to be responsible for...
We train a neural network model to predict the full phase space evolution of cosmological N-body sim...
Recent works on learning-based frameworks for Lagrangian (i.e., particle-based) fluid simulation, th...
One of the main challenges in using deep learning-based methods for simulating physical systems and ...
Abstract. The simulation of N particles interacting in a gravitational force field is useful in astr...
Dynamics always exist in complex systems. Graphs (complex networks) are a mathematical form for desc...
We present a physically-motivated topology of a deep neural network that can efficiently infer exten...
This article introduces a novel approach to increase the performances of N-body simulations. In an N...
We explore the use of graph networks to deal with irregular-geometry detectors in the context of par...
Simulations of interacting particles are common in science and engineering, appearing in such divers...