In this repository we implement reduced order models for cardiovascular simulations using Graph Neural Networks (GNNs).
Let us first install virtualenv:
pip install virtualenv
Then, from the root of the project:
bash create_venv.sh
This will create a virtual environment gromenv with the required dependencies.
The data can be downloaded here.
Next, duplicate or rename data_location_example.txt as data_location.txt and set in it the location of the downloaded gromdata folder.
Note: .vtp files can be inspected with Paraview.
The gromdata contains all the data necessary to train the GNN. However, it is possible to regenerate the data by launching python graph1d/generate_graphs.py from the root of the project.
From root, type
python network1d/training.py
The parameters of the trained model and hyperparameters will be saved in models, in a folder named as the date and time when the training was launched.
Within the directory graphs, type
python network1d/tester.py $NETWORKPATH
For example,
python network1d/tester.py models/01.01.1990_00.00.00
This compute errors for all train and test geometries.
In the example, models/01.01.1990_00.00.00 is a model generated after training (see Train a GNN).
Some already-trained models are included in gromdata
