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streamlit-extras 0.4.7

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A library to discover, try, install and share Streamlit extras

A library to discover, try, install and share Streamlit extras

Stars: 731, Watchers: 731, Forks: 124, Open Issues: 36

The arnaudmiribel/streamlit-extras repo was created 2 years ago and the last code push was 1 weeks ago.
The project is popular with 731 github stars!

How to Install streamlit-extras

You can install streamlit-extras using pip

pip install streamlit-extras

or add it to a project with poetry

poetry add streamlit-extras

Package Details

Author
Arnaud Miribel
License
Apache-2.0
Homepage
None
PyPi:
https://pypi.org/project/streamlit-extras/
GitHub Repo:
https://github.com/arnaudmiribel/streamlit-extras

Classifiers

No  streamlit-extras  pypi packages just yet.

Errors

A list of common streamlit-extras errors.

Code Examples

Here are some streamlit-extras code examples and snippets.

GitHub Issues

The streamlit-extras package has 36 open issues on GitHub

  • 🐛 [BUG] - dataframe sort by date column seems broken
  • 🐛 [BUG] - <title>dataframe_explorer bad filter
  • 🐛 [BUG] - https://extras.streamlit.app/ is not working
  • ✨ [IDEA] - expose filename in chart_container
  • 🐛 [BUG] - Buy Me A Coffee Button Font only works with Cookie
  • Adding IO capture tools

See more issues on GitHub

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