google-deepmind/jeo
Jeo: Jax model training lib for Earth Observation
This project helps Earth observation scientists and geospatial analysts train machine learning models for remote sensing tasks. It takes large-scale satellite imagery and other geospatial datasets as input and produces trained models capable of making predictions or classifications related to land use, deforestation, or environmental changes. It's designed for researchers and practitioners working on environmental monitoring and sustainability.
158 stars.
Use this if you need to develop and train machine learning models using satellite imagery and geospatial data to understand changes on Earth.
Not ideal if you are not working with large-scale geospatial datasets or if you prefer not to use the JAX and TensorFlow ecosystem for model training.
Stars
158
Forks
20
Language
Python
License
Apache-2.0
Category
Last pushed
Nov 13, 2025
Commits (30d)
0
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