A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

719 stars 313 forks 719 watchers Python BSD 3-Clause "New" or "Revised" License
data-analysis earth-science grib iris meteorology netcdf oceanography python spaceweather visualisation
7 Open Issues Need Help Last updated: Jul 2, 2026

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A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation
Type: Testing Good First Issue

A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation
Type: Bug Good First Issue

A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation

A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation

A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation
Type: Infrastructure Good First Issue

A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation

AI Summary: The task is to improve Iris's handling of internal attributes. Currently, special attributes (e.g., `iris_extended_grid_mapping`) are handled individually to prevent them from being displayed or saved. The goal is to create a generic mechanism, likely using a namespacing convention (e.g., attributes starting with `iris_` or `_iris_`), to automatically exclude these internal attributes from output without requiring manual code changes for each new attribute.

Complexity: 4/5
Good First Issue

A powerful, format-agnostic, and community-driven Python package for analysing and visualising Earth science data

Python
#data-analysis#earth-science#grib#iris#meteorology#netcdf#oceanography#python#spaceweather#visualisation