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megaBEAST

Hierarchical Bayesian Model of Ensembles of Dust Extinguished Stellar Populations

The megaBEAST is a hierarchical Bayesian model for ensembles of dust extinguished stellar populations. This model uses the results of the BEAST (Bayesian Extinction and Stellar Tool) to determine ensemble properties including dust grain properties. More detail to be added when the megaBEAST development matures.

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Documentation

Details of installing, running, and contributing to the megaBEAST are at <http://megabeast.readthedocs.io>.

Contributors

Direct code contributors: <https://github.com/BEAST-fitting/megabeast/graphs/contributors>

In Development!

This code is currently in active development.

Contributing

Please open a new issue or new pull request for bugs, feedback, or new features you would like to see. If there is an issue you would like to work on, please leave a comment and we will be happy to assist. New contributions and contributors are very welcome!

New to github or open source projects? If you are unsure about where to start or haven't used github before, please feel free to contact @karllark. Want more information about how to make a contribution? Take a look at the astropy contributing and developer documentation.

Feedback and feature requests? Is there something missing you would like to see? Please open an issue or send an email to @karllark. BEAST follows the Astropy Code of Conduct and strives to provide a welcoming community to all of our users and contributors.

License

This project is Copyright (c) Karl Gordon and BEAST Team and licensed under the terms of the BSD 3-Clause license. This package is based upon the Astropy package template which is licensed under the BSD 3-clause licence. See the licenses folder for more information.

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  • Python 100.0%