Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emission lines have been widely used to this aim. Retrieving the full information encoded in the spectra is therefore essential. This can be efficiently and reliably done using Machine Learning (ML) algorithms. Here, we apply the ML code GAME to MUSE (Multi Unit Spectroscopic Explorer) and PMAS (Potsdam Multi Aperture Spectrophotometer) integral field unit observations of two nearby blue compact galaxies: Henize 2-10 and IZw18. We derive spatially resolved maps of several key ISM physical properties. We find that both galaxies show a remarkably uniform metallicity distribution. Henize 2-10 is a star-forming-dominated galaxy, with a star formation ra...
The application of machine learning (ML) techniques to simulated cosmological data aids in the devel...
<p>To understand how star-formation properties in galaxies evolve, a better characterization of thei...
International audienceThe sensitive infrared telescopes, Spitzer and Herschel, have been used to tar...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
Understanding the structure and physical properties of the Interstellar Medium (ISM) in galaxies, es...
We present an updated, optimized version of GAME (GAlaxy Machine learning for Emission lines), a cod...
We present a new approach based on Supervised Machine Learning algorithms to infer key physical prop...
Accepted for publication in A&AInternational audience(abridged) Spectroscopic observations of high-r...
In this work, we present a machine learning (ML) clustering algorithm for the classification of the ...
This thesis is an observational study of the impact of star formation on the interstellar medium. Em...
Modern galaxy formation and evolution models are able to match the statistical properties of galaxy ...
Although our knowledge on stellar evolution has improved dramatically over the last decades, both re...
Dwarf galaxies present interesting observational challenges for the studies of various galaxy proper...
The properties of the Interstellar Medium (ISM) strongly influence the environment and processes tha...
The application of machine learning (ML) techniques to simulated cosmological data aids in the devel...
<p>To understand how star-formation properties in galaxies evolve, a better characterization of thei...
International audienceThe sensitive infrared telescopes, Spitzer and Herschel, have been used to tar...
Dwarf galaxies are ideal laboratories to study the physics of the interstellar medium (ISM). Emissio...
Understanding the structure and physical properties of the Interstellar Medium (ISM) in galaxies, es...
We present an updated, optimized version of GAME (GAlaxy Machine learning for Emission lines), a cod...
We present a new approach based on Supervised Machine Learning algorithms to infer key physical prop...
Accepted for publication in A&AInternational audience(abridged) Spectroscopic observations of high-r...
In this work, we present a machine learning (ML) clustering algorithm for the classification of the ...
This thesis is an observational study of the impact of star formation on the interstellar medium. Em...
Modern galaxy formation and evolution models are able to match the statistical properties of galaxy ...
Although our knowledge on stellar evolution has improved dramatically over the last decades, both re...
Dwarf galaxies present interesting observational challenges for the studies of various galaxy proper...
The properties of the Interstellar Medium (ISM) strongly influence the environment and processes tha...
The application of machine learning (ML) techniques to simulated cosmological data aids in the devel...
<p>To understand how star-formation properties in galaxies evolve, a better characterization of thei...
International audienceThe sensitive infrared telescopes, Spitzer and Herschel, have been used to tar...