Skip to content

The Clay Foundation Model - An open source AI model and interface for Earth

License

Apache-2.0, Unknown licenses found

Licenses found

Apache-2.0
LICENSE
Unknown
LICENSE-MODEL.md
Notifications You must be signed in to change notification settings

Clay-foundation/model

Clay Foundation Model

Jupyter Book Badge Deploy Book Status Continuous Integration Tests Status

An open source AI model and interface for Earth.

Quickstart

Launch into a JupyterLab environment on

Binder SageMaker Studio Lab
Binder Open in SageMaker Studio Lab

Installation

Basic

To help out with development, start by cloning this repo-url

git clone <repo-url>
cd model

Then we recommend using mamba to install the dependencies. A virtual environment will also be created with Python and JupyterLab installed.

mamba env create --file environment.yml

Note

The command above will only work for Linux devices with CUDA GPUs. For installation on macOS devices (either Intel or ARM chips), follow the 'Advanced' section in https://clay-foundation.github.io/model/getting-started/installation.html#advanced

Activate the virtual environment first.

mamba activate claymodel

Finally, double-check that the libraries have been installed.

mamba list

Usage

Running jupyter lab

mamba activate claymodel
python -m ipykernel install --user --name claymodel  # to install virtual env properly
jupyter kernelspec list --json                       # see if kernel is installed
jupyter lab &

Running the model

The neural network model can be ran via LightningCLI v2. To check out the different options available, and look at the hyperparameter configurations, run:

python trainer.py --help

To quickly test the model on one batch in the validation set:

python trainer.py fit --model ClayMAEModule --data ClayDataModule --config configs/config.yaml --trainer.fast_dev_run=True

To train the model:

python trainer.py fit --model ClayMAEModule --data ClayDataModule --config configs/config.yaml

More options can be found using python trainer.py fit --help, or at the LightningCLI docs.

Contributing

Writing documentation

Our Documentation uses Jupyter Book.

Install it with:

pip install -U jupyter-book

Then build it with:

jupyter-book build docs/

You can preview the site locally with:

python -m http.server --directory _build/html

There is a GitHub Action on ./github/workflows/deploy-docs.yml that builds the site and pushes it to GitHub Pages.