Generating large volume hydrodynamical simulations for cosmological observables is a computationally demanding task necessary for next generation observations. In this work, we construct a novel fully convolutional variational auto-encoder (VAE) to synthesize hydrodynamic fields conditioned on dark matter fields from N-body simulations. After training the model on a single hydrodynamical simulation, we are able to probabilistically map new dark matter only simulations to corresponding full hydrodynamical outputs. By sampling over the latent space of our VAE, we can generate posterior samples and study the variance of the mapping. We find that our reconstructed field provides an accurate representation of the target hydrodynamical fields as ...
Cosmological N-body simulations of galaxies operate at the level of "star particles" with a mass res...
We perform three-dimensional simulations of homogeneous and inhomogeneous cosmologies via the coupli...
Generative adversarial networks (GANs) are frequently utilized in astronomy to construct an emulator...
We investigate the possibility of learning the representations of cosmological multifield dataset fr...
From 1,000 hydrodynamic simulations of the CAMELS project, each with a different value of the cosmol...
Full-physics cosmological simulations are powerful tools for studying the formation and evolution of...
Score-based generative models have emerged as alternatives to generative adversarial networks (GANs)...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
Fields in cosmology, such as the matter distribution, are observed by experiments up to experimental...
Applying the representational power of machine learning to the prediction of complex fluid dynamics ...
We present a Bayesian hierarchical modelling approach to reconstruct the initial cosmic matter densi...
The standard approach to inference from cosmic large-scale structure data employs summary statistics...
We present {\sc slick} (the Scalable Line Intensity Computation Kit), a software package that calcul...
Producing thousands of simulations of the dark matter distribution in the Universe with increasing p...
Running hydrodynamical simulations to produce mock data of large-scale structure and baryonic probes...
Cosmological N-body simulations of galaxies operate at the level of "star particles" with a mass res...
We perform three-dimensional simulations of homogeneous and inhomogeneous cosmologies via the coupli...
Generative adversarial networks (GANs) are frequently utilized in astronomy to construct an emulator...
We investigate the possibility of learning the representations of cosmological multifield dataset fr...
From 1,000 hydrodynamic simulations of the CAMELS project, each with a different value of the cosmol...
Full-physics cosmological simulations are powerful tools for studying the formation and evolution of...
Score-based generative models have emerged as alternatives to generative adversarial networks (GANs)...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
Fields in cosmology, such as the matter distribution, are observed by experiments up to experimental...
Applying the representational power of machine learning to the prediction of complex fluid dynamics ...
We present a Bayesian hierarchical modelling approach to reconstruct the initial cosmic matter densi...
The standard approach to inference from cosmic large-scale structure data employs summary statistics...
We present {\sc slick} (the Scalable Line Intensity Computation Kit), a software package that calcul...
Producing thousands of simulations of the dark matter distribution in the Universe with increasing p...
Running hydrodynamical simulations to produce mock data of large-scale structure and baryonic probes...
Cosmological N-body simulations of galaxies operate at the level of "star particles" with a mass res...
We perform three-dimensional simulations of homogeneous and inhomogeneous cosmologies via the coupli...
Generative adversarial networks (GANs) are frequently utilized in astronomy to construct an emulator...