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A Planetary Intensity Code for Atmospheric Spectroscopy Observations

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picaso enables the: 1) computation of exoplanet and brown dwarf spectroscopy in transmission, emission or reflected light, 2) 1D climate modeling of brown dwarfs and exoplanets, 3) fitting spectroscopic data to models with grids and retrievals.

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Contributing

Contributions are always welcome no matter the code level you are at. We value anything from small typos in our documentations page to larger feature changes. We follow the all-contributors specification. This means that contributions of any kind welcome! If you are a new to GitHub and conda environments you can read our instructions here: https://natashabatalha.github.io/picaso/contribution.html

Additionally all contributors agree to adhere to this project's code of conduct

Anyone is free to use the contributor bot to add their contribution. Simply comment on an issue or pull request with:

@all-contributors please add @<username> for <contributions>

Contributors

All Contributors

Thanks goes to these wonderful people (emoji key):

Natasha Batalha
Natasha Batalha

💻 🧑‍🏫 🚧
Roman St. Gerard
Roman St. Gerard

💻
Kappibw
Kappibw

🐛 📖
Laura C. Mayorga
Laura C. Mayorga

🐛 💻
Ehsan Gharib-Nezhad
Ehsan Gharib-Nezhad

🔣
Caoimhe Rooney
Caoimhe Rooney

🔬 💻
Sagnick Mukherjee
Sagnick Mukherjee

🔬 💻
Nina Robbins Blanch
Nina Robbins Blanch

💻
Ryan MacDonald
Ryan MacDonald

🐛
Peter Gao
Peter Gao

🐛
Nikole Lewis
Nikole Lewis

🐛 🧑‍🏫
Mark Marley
Mark Marley

🧑‍🏫 🤔 🔬
Tiffany Kataria
Tiffany Kataria

🐛 🧑‍🏫
jjfplanet
jjfplanet

🤔 🧑‍🏫 🔍
Ziva18t
Ziva18t

💻
James
James

💻 🔬
astrocaroline
astrocaroline

🧑‍🏫 🤔 🔍 🔬

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