Mr-Moose: An advanced SED-fitting tool for heterogeneous multi-wavelength datasets
Guillaume Drouart, Theresa Falkendal

TL;DR
MrMoose is a versatile, Bayesian SED-fitting tool capable of handling complex, multi-wavelength, multi-object datasets, including blended sources and upper limits, with high user control and applicability to real astronomical data.
Contribution
It introduces a flexible, user-friendly Bayesian SED-fitting procedure that manages heterogeneous datasets and blends without requiring data deconvolution, enhancing analysis of complex astronomical sources.
Findings
Successfully applied to artificial and real datasets.
Effectively handles blended sources and upper limits.
Demonstrates versatility across different observational data.
Abstract
We present the public release of MrMoose, a fitting procedure that is able to perform multi-wavelength and multi-object spectral energy distribution (SED) fitting in a Bayesian framework. This procedure is able to handle a large variety of cases, from an isolated source to blended multi-component sources from an heterogeneous dataset (i.e. a range of observation sensitivities and spectral/spatial resolutions). Furthermore, MrMoose handles upper-limits during the fitting process in a continuous way allowing models to be gradually less probable as upper limits are approached. The aim is to propose a simple-to-use, yet highly-versatile fitting tool fro handling increasing source complexity when combining multi-wavelength datasets with fully customisable filter/model databases. The complete control of the user is one advantage, which avoids the traditional problems related to the "black…
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