International audienceWe present a deep learning model trained to emulate the radiative transfer during the epoch of cosmological reionization. CRADLE (Cosmological Reionization And Deep LEarning) is an auto-encoder convolutional neural network that uses 2D maps of the star number density and the gas density field at z = 6 as inputs and that predicts 3D maps of the times of reionization t_reion as outputs. These predicted single fields are sufficient to describe the global reionization history of the intergalactic medium in a given simulation. We trained the model on a given simulation and tested the predictions on another simulation with the same parameters but with different initial conditions. The model is successful at predicting t_reio...
We use a fully self-consistent cosmological simulation including dark matter dynamics, multi-species...
To fully understand the non-linear evolution of the large scale structure of the Universe and to ext...
We explore the capability of deep learning to classify cosmic structures. In cosmological simulation...
International audienceWe present a deep learning model trained to emulate the radiative transfer dur...
We present an efficient method to generate large simulations of the epoch of reionization without th...
The Epoch of Reionization (EoR) was a phase transition from a neutral state to an ionized state wher...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
We use the photon flux and absorption tracer algorithm presented in Katz et al. 2018, to characteris...
International audienceCosmic Dawn II (CoDa II) is a new, fully coupled radiation-hydrodynamics simul...
We present a new hybrid code for large volume, high resolution simulations of cosmic reionization, w...
International audienceToday’s galaxies experienced cosmic reionization at different times in differe...
This thesis covers three projects, all centred around using computational simulations to theoretical...
Next generation radio experiments such as LOFAR, HERA and SKA are expected to probe the Epoch of Rei...
Hydrodynamic simulations provide a powerful, but computationally expensive, approach to study the in...
We build a field level emulator for cosmic structure formation that is accurate in the nonlinear reg...
We use a fully self-consistent cosmological simulation including dark matter dynamics, multi-species...
To fully understand the non-linear evolution of the large scale structure of the Universe and to ext...
We explore the capability of deep learning to classify cosmic structures. In cosmological simulation...
International audienceWe present a deep learning model trained to emulate the radiative transfer dur...
We present an efficient method to generate large simulations of the epoch of reionization without th...
The Epoch of Reionization (EoR) was a phase transition from a neutral state to an ionized state wher...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
We use the photon flux and absorption tracer algorithm presented in Katz et al. 2018, to characteris...
International audienceCosmic Dawn II (CoDa II) is a new, fully coupled radiation-hydrodynamics simul...
We present a new hybrid code for large volume, high resolution simulations of cosmic reionization, w...
International audienceToday’s galaxies experienced cosmic reionization at different times in differe...
This thesis covers three projects, all centred around using computational simulations to theoretical...
Next generation radio experiments such as LOFAR, HERA and SKA are expected to probe the Epoch of Rei...
Hydrodynamic simulations provide a powerful, but computationally expensive, approach to study the in...
We build a field level emulator for cosmic structure formation that is accurate in the nonlinear reg...
We use a fully self-consistent cosmological simulation including dark matter dynamics, multi-species...
To fully understand the non-linear evolution of the large scale structure of the Universe and to ext...
We explore the capability of deep learning to classify cosmic structures. In cosmological simulation...