International audienceWe present a new scheme to compensate for the small-scales approximations resulting from Particle-Mesh (PM) schemes for cosmological N-body simulations. This kind of simulations are fast and low computational cost realizations of the large scale structures, but lack resolution on small scales. To improve their accuracy, we introduce an additional effective force within the differential equations of the simulation, parameterized by a Fourier-space Neural Network acting on the PM-estimated gravitational potential. We compare the results for the matter power spectrum obtained to the ones obtained by the PGD scheme (Potential gradient descent scheme). We notice a similar improvement in term of power spectrum, but we find t...
We describe a hybrid technique for carrying out large N-Body simulations to study formation and evol...
We demonstrate the acceleration obtained from using GPU/CPU hybrid clusters and supercomputers for ...
The field of machine learning has drawn increasing interest from various other fields due to the suc...
International audienceWe present a new scheme to compensate for the small-scales approximations resu...
We present FlowPM, a Particle-Mesh (PM) cosmological N-body code implemented in Mesh-TensorFlow for ...
We provide a novel and efficient algorithm for computing accelerations in theperiodic large-N-body p...
We build a field level emulator for cosmic structure formation that is accurate in the nonlinear reg...
During the last decades, Multigrid methods have been extensively used for solving large sparse linea...
We describe a nested-grid particle-mesh (NGPM) code designed to study gravitational instability in t...
We present mg-glam, a code developed for the very fast production of full N-body cosmological simula...
ii We investigate the interpolation of power spectra of matter fluctuations using ar-tificial neural...
This is an Open Access article distributed under the terms of the Creative Commons Attribution Licen...
We present an extension of our recently developed Wasserstein optimized model to emulate accurate hi...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We present MG-GLAM, a code developed for the very fast production of full $N$-body cosmological simu...
We describe a hybrid technique for carrying out large N-Body simulations to study formation and evol...
We demonstrate the acceleration obtained from using GPU/CPU hybrid clusters and supercomputers for ...
The field of machine learning has drawn increasing interest from various other fields due to the suc...
International audienceWe present a new scheme to compensate for the small-scales approximations resu...
We present FlowPM, a Particle-Mesh (PM) cosmological N-body code implemented in Mesh-TensorFlow for ...
We provide a novel and efficient algorithm for computing accelerations in theperiodic large-N-body p...
We build a field level emulator for cosmic structure formation that is accurate in the nonlinear reg...
During the last decades, Multigrid methods have been extensively used for solving large sparse linea...
We describe a nested-grid particle-mesh (NGPM) code designed to study gravitational instability in t...
We present mg-glam, a code developed for the very fast production of full N-body cosmological simula...
ii We investigate the interpolation of power spectra of matter fluctuations using ar-tificial neural...
This is an Open Access article distributed under the terms of the Creative Commons Attribution Licen...
We present an extension of our recently developed Wasserstein optimized model to emulate accurate hi...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We present MG-GLAM, a code developed for the very fast production of full $N$-body cosmological simu...
We describe a hybrid technique for carrying out large N-Body simulations to study formation and evol...
We demonstrate the acceleration obtained from using GPU/CPU hybrid clusters and supercomputers for ...
The field of machine learning has drawn increasing interest from various other fields due to the suc...