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geoai

December 14, 20252,116295

Summary

geoai is a Python package from the opengeos ecosystem that integrates deep-learning frameworks (PyTorch, Transformers, segmentation models) with geospatial tooling to handle everything from remote-sensing data download and tiling to training, inference, and interactive map visualization. It’s aimed at practitioners who want a higher-level, batteries-included stack for tasks like land-cover classification, building footprint extraction, and change detection, without reinventing all the GIS + ML plumbing. ([github.com](https://github.com/opengeos/geoai?utm_source=openai))

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