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TerraTorch: The Geospatial Foundation Models Toolkit

TerraTorch is a toolkit for fine-tuning and benchmarking Geospatial Foundation Models using PyTorch Lightning, with features for no-code configuration and integration with GEO-Bench.

Year
2025
Venue
arXiv 2025
Authors
10
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2503.20563ARXIV-DEFAULT
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Abstract

TerraTorch is a fine-tuning and benchmarking toolkit for Geospatial Foundation Models built on PyTorch Lightning and tailored for satellite, weather, and climate data. It integrates domain-specific data modules, pre-defined tasks, and a modular model factory that pairs any backbone with diverse decoder heads. These components allow researchers and practitioners to fine-tune supported models in a no-code fashion by simply editing a training configuration. By consolidating best practices for model development and incorporating the automated hyperparameter optimization extension Iterate, TerraTorch reduces the expertise and time required to fine-tune or benchmark models on new Earth Observation use cases. Furthermore, TerraTorch directly integrates with GEO-Bench, allowing for systematic and reproducible benchmarking of Geospatial Foundation Models. TerraTorch is open sourced under Apache 2.0, available at https://github.com/IBM/terratorch, and can be installed via pip install terratorch.

Authors

10