We build a field level emulator for cosmic structure formation that is accurate in the nonlinear regime. Our emulator consists of two convolutional neural networks trained to output the nonlinear displacements and velocities of N-body simulation particles based on their linear inputs. Cosmology dependence is encoded in the form of style parameters at each layer of the neural network, enabling the emulator to effectively interpolate the outcomes of structure formation between different flat $\Lambda$CDM cosmologies over a wide range of background matter densities. The neural network architecture makes the model differentiable by construction, providing a powerful tool for fast field level inference. We test the accuracy of our method by cons...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
In this paper we propose that artificial neural network, the basis of machine learning, is useful to...
In this paper we propose that artificial neural network, the basis of machine learning, is useful to...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train a neural network model to predict the full phase space evolution of cosmological N-body sim...
Studying the impact of systematic effects, optimizing survey strategies, assessing tensions between ...
ii We investigate the interpolation of power spectra of matter fluctuations using ar-tificial neural...
Large sets of matter density simulations are becoming increasingly important in large scale structur...
International audienceMany different studies have shown that a wealth of cosmological information re...
The linear matter power spectrum is an essential ingredient in all theoretical models for interpreti...
We make use of neural networks to accelerate the calculation of power spectra required for the analy...
We assess a neural network (NN) method for reconstructing 3D cosmological density and velocity field...
We present an extension of our recently developed Wasserstein optimized model to emulate accurate hi...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
In this paper we propose that artificial neural network, the basis of machine learning, is useful to...
In this paper we propose that artificial neural network, the basis of machine learning, is useful to...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train a neural network model to predict the full phase space evolution of cosmological N-body sim...
Studying the impact of systematic effects, optimizing survey strategies, assessing tensions between ...
ii We investigate the interpolation of power spectra of matter fluctuations using ar-tificial neural...
Large sets of matter density simulations are becoming increasingly important in large scale structur...
International audienceMany different studies have shown that a wealth of cosmological information re...
The linear matter power spectrum is an essential ingredient in all theoretical models for interpreti...
We make use of neural networks to accelerate the calculation of power spectra required for the analy...
We assess a neural network (NN) method for reconstructing 3D cosmological density and velocity field...
We present an extension of our recently developed Wasserstein optimized model to emulate accurate hi...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
In this paper we propose that artificial neural network, the basis of machine learning, is useful to...
In this paper we propose that artificial neural network, the basis of machine learning, is useful to...