EMBER-2: Emulating baryons from dark matter across cosmic time with deep modulation networks
Mauro Bernardini, Robert Feldmann, Jindra Gensior, Daniel, Angl\'es-Alc\'azar, Luigi Bassini, Rebekka Bieri, Elia Cenci, Lucas Tortora,, Claude-Andr\'e Faucher-Gigu\`ere

TL;DR
EMBER-2 is a deep learning framework that efficiently emulates baryonic properties across cosmic time from dark matter simulations, enabling faster and more accurate galaxy formation modeling over large redshift ranges.
Contribution
It introduces a novel context-based styling network with modulated convolutions, reducing parameters and improving accuracy in emulating multiple baryon channels over a broad redshift range.
Findings
Fewer than 1/6 the parameters of previous models
Improved accuracy in gas mass conservation and cross-correlation metrics
Capable of interpolating the entire redshift range with a single CNN
Abstract
Galaxy formation is a complex problem that connects large scale cosmology with small scale astrophysics over cosmic timescales. Hydrodynamical simulations are the most principled approach to model galaxy formation, but have large computational costs. Recently, emulation techniques based on Convolutional Neural Networks (CNNs) have been proposed to predict baryonic properties directly from dark matter simulations. The advantage of these emulators is their ability to capture relevant correlations, but at a fraction of the computational cost compared to simulations. However, training basic CNNs over large redshift ranges is challenging, due to the increasing non-linear interplay between dark matter and baryons paired with the memory inefficiency of CNNs. This work introduces EMBER-2, an improved version of the EMBER (EMulating Baryonic EnRichment) framework, to simultaneously emulate…
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Taxonomy
TopicsDark Matter and Cosmic Phenomena · Computational Physics and Python Applications · Cosmology and Gravitation Theories
