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Training Graph Neural Networks for Mesh-based Physics Simulations
Overview
This repository let's you train Graph Neural Networks on meshes (e.g. fluid dynamics, material simulations, etc). It is based on the work from different papers:
- Learning Mesh-Based Simulation with Graph Networks
- Multi-Grid Graph Neural Networks with Self-Attention for Computational Mechanics
- MeshMask: Physics Simulations with Masked Graph Neural Networks
- Training Transformers to Simulate Complex Physics
We offer a simple training script to:
- Setup your model's architecture
- Define your dataset with different augmentation functions
- Follow the training live, including live vizualisations
The code is based on Pytorch, and a JAX extension might follow at some point.
At the moment, the repository supports the following:
- architecture:- Mesh Graph Net
- Transformers
- Multigrid
 
- dataset:- matrix based, using .h5
- .xdmf based (if you have .vtu, .vtk etc, you can easily convert them to .xdmf)
 
- training methods and augmentations- K-hop neighbours
- Nodes Masking
- Augmented Adjacency Matrix
- Sub-meshs
 
Feel free to open a PR if you want to implement a new feature, or an issue to request one.
Datasets
You can access the 3D Coarse Aneurysm dataset here !
Tutorials
We offer 2 Google colab to showcase training on:
- a Flow past a Cylinder Dataset with message passing- Colab
- dataset is from Learning Mesh-Based Simulation with Graph Networks
 
- a blood flow inside a 3D Aneurysm with Transformers
Vizualisations
We use Weights and Biases to log most information during training. This includes:
- training and validation loss- per step
- per epoch
 
- All Rollout RMSE on validation dataset
We also save:
- Images of ground truth and 1-step prediction for specific indices- LogPyVistaPredictionsCallback(dataset=val_dataset, indices=[1, 2, 3])in train.py
 
- Video of ground truth and auto regressive prediction between the first and the last index of the same indiceslist as above
- Meshes of auto regressive prediction as .xdmffile for the first trajectory of the validation dataset.
If saving thoses meshes takes too much space, you can 1. monitor the disk usage using Weights and Biases, 2. Remove this functionnality in lightning_module.py (see the code below)
Setup
Default requirements
import torch
def format_pytorch_version(version):
  return version.split('+')[0]
TORCH_version = torch.__version__
TORCH = format_pytorch_version(TORCH_version)
def format_cuda_version(version):
  return 'cu' + version.replace('.', '')
CUDA_version = torch.version.cuda
CUDA = format_cuda_version(CUDA_version)
pip install torch-scatter     -f https://pytorch-geometric.com/whl/torch-{TORCH}+{CUDA}.html
pip install torch-sparse      -f https://pytorch-geometric.com/whl/torch-{TORCH}+{CUDA}.html
pip install torch-cluster     -f https://pytorch-geometric.com/whl/torch-{TORCH}+{CUDA}.html
pip install torch-spline-conv -f https://pytorch-geometric.com/whl/torch-{TORCH}+{CUDA}.html
pip install torch-geometric
pip install loguru==0.7.2
pip install autoflake==2.3.0
pip install pytest==8.0.1
pip install meshio==5.3.5
pip install h5py==3.10.0
!pip install pyvista lightning==2.5.0 wandb "wandb[media]"
!pip install pytorch-lightning==2.5.0 torchmetrics==1.6.3
DGL
You will need to install DGL. You can find information on how to set it up for your environnement here.
In the case of a google colab, you can use:
pip install  dgl -f https://data.dgl.ai/wheels/torch-2.4/cu124/repo.html
WandB
We use Weights and Bias to log most of our metrics and vizualizations during the trainig. Make sure you create and account, and log in before you start training.
import wandb
wandb.login()
Vizualization in Colab
Note that if you train inside a notebook, you will need a specific set-up to allow for Pyvista to work
apt-get install -qq xvfb
pip install pyvista panel -q
and run
import os
os.system('/usr/bin/Xvfb :99 -screen 0 1024x768x24 &')
os.environ['DISPLAY'] = ':99'
import panel as pn
pn.extension('vtk')
in the same call as your training.
Documentation
Most of setting up a new use case depends on two .json files: one to define the dataset details, and one for the training settings.
Let's start with the training settings. An exemple is available here.
Dataset
"dataset": {
    "extension": "h5",
    "h5_path": "dataset/h5_dataset/cylinder_flow/train.h5",
    "meta_path": "dataset/h5_dataset/cylinder_flow/meta.json",
    "khop": 1
}
- extension: If the dataset used is h5 or xdmf.
- h5_path(- xdmf_folderfor an xdmf dataset): Path to the dataset.
You will need a dataset at the same location with
testinstead oftrainin its name for the validation step to work. Otherwise, you can specify its name directly intraining.py
- meta_path: Location to the .json file with the dataset details (see below)
- khop: K-hop neighbours size to use. You should start with 1.
You also need to define a few other parameters:
"index": {
    "feature_index_start": 0,
    "feature_index_end": 2,
    "output_index_start": 0,
    "output_index_end": 2,
    "node_type_index": 2
}
- feature_index_: This is to define where we should look for nodes features. The end is excluded. For example, if you have 2D velocities at index 0 and 1, and pressure at index 2. If you want to use the pressure you should set- feature_index_start=0and- feature_index_end=3, otherwise,- feature_index_end=2.
- output_index_: We define our architectures to predict one of your feature for the enxt time steps. So you need to tell us where to look. For example, if you want to predict the velocity at the next step, since the velocity is at index 0 and 1, you will set- output_index_start=0and- output_index_end=2.
- node_type_index: Finally, we use a node type classification for each node:
NORMAL = 0
OBSTACLE = 1
AIRFOIL = 2
HANDLE = 3
INFLOW = 4
OUTFLOW = 5
WALL_BOUNDARY = 6
SIZE = 9
You should modify this if this is not at all representative of your use case. Those are taken from Meshgraphnet and we found them to be general enough for all of our use cases.
This means that you either need to have such feature in your dataset, or to define a python function to build them (see below). After that, you need to tell us where to look. For example, if we only have velocity and node type, we will have  node_type_index=2. If we also had the pressure, we would set node_type_index=3
H5-based dataloader does not support multiple workers. XDMF can.
Custom Processing Functions
First, we allow you to add noise to your inputs to make the prediction of a trajectory more robust.
"preprocessing": {
    "noise": 0.02,
    "noise_index_start": [0],
    "noise_index_end": [2],
    "masking": 0
},
Masking is not implemented yet.
def add_noise(
    graph: Data,
    noise_index_start: Union[int, List[int]],
    noise_index_end: Union[int, List[int]],
    noise_scale: Union[float, List[float]],
    node_type_index: int,
) -> Data:
    """
    Adds Gaussian noise to the specified features of the graph's nodes.
    Parameters:
        graph (Data): The graph to modify.
        noise_index_start (Union[int, List[int]]): The starting index or indices for noise addition.
        noise_index_end (Union[int, List[int]]): The ending index or indices for noise addition.
        noise_scale (Union[float, List[float]]): The standard deviation(s) of the Gaussian noise.
        node_type_index (int): The index of the node type feature.
    Returns:
        Data: The modified graph with noise added to node features.
    """
Second, in the case of dealing with multiple meshes, you can add extra edges based on closeness of those different meshes:
"world_pos_parameters": {
    "use": false,
    "world_pos_index_start": 0,
    "world_pos_index_end": 3
}
See the description regarding world edges.
Finally, in the case where:
- you need to build the node type
- you need to build extra features that were not in your dataset
In train.py:
# Build preprocessing function
preprocessing = get_preprocessing(
    param=parameters,
    device=device,
    use_edge_feature=use_edge_feature,
    extra_node_features=None,
)
where:
extra_node_features: Optional[
        Union[Callable[[Data], Data], List[Callable[[Data], Data]]]
    ] = None
You can define one or several functions that takes a graph as an input, and returns another graph with the new features.
In the case where you might need the previous graph as well (to compute acceleration for example, you can pass
get_previous_datain theget_datasetfunction, and you will be able to access it using theprevious_dataattribute:graph.previous_data) You can check build_features where we useprevious_velocity = torch.tensor(graph.previous_data["Vitesse"], device=device)It's important to note to if you do so, those previous data also need to be updated autoregressively during the validation steps. To do so, we added 2 parameters intrain.py:previous_data_startandprevious_data_end. By default, they are set to 4 and 7. This works if for example, you set the acceleration (computed using the previous velocity) at indexes 4, 5 and 6.
For example, let's imagine we want to add the nodes position as a feature, one could define the following function:
def add_pos(graph: Data) -> Data:
    graph.x = torch.cat(
        (
            graph.pos,
            graph.x,
        ),
        dim=1,
    )
    return graph
In that case, the settings would need to be updated.
```json "index": { "feature_index_start": 0, "feature_index_end": 4, "output_index_start": 2, "output_index_end": 4, "node_type_index": 4 } ```You can find more examples regarding adding features and building node type here.
We simply then call the function add_pos in get_preprocessing:
# Build preprocessing function
preprocessing = get_preprocessing(
    param=parameters,
    device=device,
    use_edge_feature=use_edge_feature,
    extra_node_features=add_pos,
)
Architecture
"model": {
    "type": "transformer",
    "message_passing_num": 5,
    "hidden_size": 32,
    "node_input_size": 2,
    "output_size": 2,
    "edge_input_size": 0,
    "num_heads": 4
}
- type: Type of the model, either- transformeror- epd(message passing)
- message_passing_num: Number of Layers
- hidden_size: Number of hidden neurons
- node_input_size: Number of node features
This should not count the node type feature.
- edge_input_size: Size of the edge features. 3 in 2D and 4 in 3D. 0 for transformer based model.
- output_size: Size of the output
- num_heads: Number of heads for transformer based model.
Dataset Settings
You will also need to design a .json to define the dataset details. Those meta.json files are inspired from Meshgraphnet.
You will need to define:
- dt: the time step of your simulation
- features: a set of features used, including at least- cellsand- mesh_posfor the .h5 dataset.
- field_names: the list of all features
- trajectory_length: the number of time steps per trajectory
Examples can be found here.
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