Gammapy: A Python package for gamma-ray astronomy
Axel Donath, R\'egis Terrier, Quentin Remy, Atreyee Sinha, Cosimo, Nigro, Fabio Pintore, Bruno Kh\'elifi, Laura Olivera-Nieto, Jose Enrique, Ruiz, Kai Br\"ugge, Maximilian Linhoff, Jose Luis Contreras, Fabio Acero,, Arnau Aguasca-Cabot, David Berge, Pooja Bhattacharjee

TL;DR
Gammapy is an open-source Python package that streamlines gamma-ray data analysis, enabling reduction, modeling, and multi-instrument fitting for high-energy astrophysics research.
Contribution
It introduces a comprehensive, interoperable platform for gamma-ray data analysis built on Python, supporting multiple analysis scenarios and data conventions.
Findings
Successfully applied to real gamma-ray data for spectral and morphological analysis.
Demonstrated multi-instrument data fitting with a unified astrophysical flux model.
Provides tools for background estimation, flux calculation, and light curve generation.
Abstract
In this article, we present Gammapy, an open-source Python package for the analysis of astronomical -ray data, and illustrate the functionalities of its first long-term-support release, version 1.0. Built on the modern Python scientific ecosystem, Gammapy provides a uniform platform for reducing and modeling data from different -ray instruments for many analysis scenarios. Gammapy complies with several well-established data conventions in high-energy astrophysics, providing serialized data products that are interoperable with other software packages. Starting from event lists and instrument response functions, Gammapy provides functionalities to reduce these data by binning them in energy and sky coordinates. Several techniques for background estimation are implemented in the package to handle the residual hadronic background affecting -ray instruments. After the…
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