Reconstructing the Gaussian initial conditions at the beginning of the Universe from the survey data in a forward modeling framework is a major challenge in cosmology. This requires solving a high dimensional inverse problem with an expensive, non-linear forward model: a cosmological N-body simulation. While intractable until recently, we propose to solve this inference problem using an automatically differentiable N-body solver, combined with a recurrent networks to learn the inference scheme and obtain the maximum-a-posteriori (MAP) estimate of the initial conditions of the Universe. We demonstrate using realistic cosmological observables that learnt inference is 40 times faster than traditional algorithms such as ADAM and LBFGS, which re...
In order to better understand the history of the universe and dark matter distributions, cosmologist...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
The formation of the large-scale structure, the evolution and distribution of galaxies, quasars, and...
Reconstructing the Gaussian initial conditions at the beginning of the Universe from the survey data...
The large scale structures (LSS) of the Universe contain a vast amount of information about the birt...
Cosmological probes pose an inverse problem where the measurement result is obtained through observa...
Reconstructing the density fluctuations in the early Universe that evolved into the distribution of ...
International audienceWe leverage powerful mathematical tools stemming from optimal transport theory...
Cosmological data is comprised of dark matter and ordinary matter forming halos, filaments, sheets a...
International audienceRapid advances in deep learning have brought not only myriad powerful neural n...
In this contribution a broad overview of the methodologies of cosmological N-body simulations and a ...
International audienceWe make use of snapshots taken from the Quijote suite of simulations, consisti...
Cosmological simulations aim to understand the matter distribution in the universe either by followi...
We leverage powerful mathematical tools stemming from optimal transport theory and transform them in...
Abstract We present the Cosmology and Astrophysics with Machine Learning Simulations...
In order to better understand the history of the universe and dark matter distributions, cosmologist...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
The formation of the large-scale structure, the evolution and distribution of galaxies, quasars, and...
Reconstructing the Gaussian initial conditions at the beginning of the Universe from the survey data...
The large scale structures (LSS) of the Universe contain a vast amount of information about the birt...
Cosmological probes pose an inverse problem where the measurement result is obtained through observa...
Reconstructing the density fluctuations in the early Universe that evolved into the distribution of ...
International audienceWe leverage powerful mathematical tools stemming from optimal transport theory...
Cosmological data is comprised of dark matter and ordinary matter forming halos, filaments, sheets a...
International audienceRapid advances in deep learning have brought not only myriad powerful neural n...
In this contribution a broad overview of the methodologies of cosmological N-body simulations and a ...
International audienceWe make use of snapshots taken from the Quijote suite of simulations, consisti...
Cosmological simulations aim to understand the matter distribution in the universe either by followi...
We leverage powerful mathematical tools stemming from optimal transport theory and transform them in...
Abstract We present the Cosmology and Astrophysics with Machine Learning Simulations...
In order to better understand the history of the universe and dark matter distributions, cosmologist...
Matter evolved under the influence of gravity from minuscule density fluctuations. Nonperturbative s...
The formation of the large-scale structure, the evolution and distribution of galaxies, quasars, and...