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Open-Source Multi Wavelength Galaxy Structure & Morphology

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Installation Guide | readthedocs | Introduction on Colab | HowToGalaxy

PyAutoGalaxy is software for analysing the morphologies and structures of galaxies:

https://github.com/Jammy2211/PyAutoGalaxy/blob/main/paper/hstcombined.png?raw=true

PyAutoGalaxy also fits interferometer data from observatories such as ALMA:

https://github.com/Jammy2211/PyAutoGalaxy/blob/main/paper/almacombined.png?raw=true

Getting Started

The following links are useful for new starters:

Core Aims

PyAutoGalaxy has three core aims:

  • Big Data: Scaling automated Sérsic fitting to extremely large datasets, accelerated with JAX on GPUs and using tools like an SQL database to **build a scalable scientific workflow**.

  • Model Complexity: Fitting complex galaxy morphology models (e.g. Multi Gaussian Expansion, Shapelets, Ellipse Fitting, Irregular Meshes) that go beyond just simple Sérsic fitting.

  • Data Variety: Support for many data types (e.g. CCD imaging, interferometry, multi-band imaging) which can be fitted independently or simultaneously.

A complete overview of the software’s aims is provided in our Journal of Open Source Software paper.

Community & Support

Support for PyAutoGalaxy is available via our Slack workspace, where the community shares updates, discusses galaxy modeling and analysis, and helps troubleshoot problems.

Slack is invitation-only. If you’d like to join, please send an email requesting an invite.

For installation issues, bug reports, or feature requests, please raise an issue on the GitHub issues page.

HowToGalaxy

For users less familiar with galaxy analysis, Bayesian inference, and scientific analysis, you may wish to read through the HowToGalaxy lectures. These introduce the basic principles of galaxy modeling and Bayesian inference, with the material pitched at undergraduate level and above.

A complete overview of the lectures is provided on the HowToGalaxy readthedocs page, and the notebooks themselves live in the PyAutoLabs/HowToGalaxy repository.

Citations

Information on how to cite PyAutoGalaxy in publications can be found on the citations page.

Contributing

Information on how to contribute to PyAutoGalaxy can be found on the contributing page.

Hands on support for contributions is available via our Slack workspace, again please email to request an invite.

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