Spaces:
Running
Running
# Position-based Equivariant Graph Neural Network (`pos-egnn`) | |
This repository contains PyTorch source code for loading and performing inference using the `pos-egnn`, a foundation model for Chemistry and Materials. | |
**GitHub**: https://github.com/ibm/materials | |
**HuggingFace**: https://huggingface.co/ibm-research/materials.pos-egnn | |
<p align="center"> | |
<img src="../../img/posegnn.svg"> | |
</p> | |
## Introduction | |
We present `pos-egnn`, a Position-based Equivariant Graph Neural Network foundation model for Chemistry and Materials. The model was pre-trained on 1.4M samples (i.e., 90%) from the Materials Project Trajectory (MPtrj) dataset to predict energies, forces and stress. `pos-egnn` can be used as a machine-learning potential, as a feature extractor, or can be fine-tuned for specific downstream tasks. | |
Besides the model weigths `pos-egnn.v1-6M.pt` (download from [HuggingFace](https://huggingface.co/ibm-research/materials.pos-egnn)), we also provide an `example.ipynb` notebook (download from [GitHub](https://github.com/ibm/materials)), which demonstrates how to perform inference, feature extraction and molecular dynamics simulation with the model. | |
For more information, please reach out to [email protected] and/or [email protected] | |
## Table of Contents | |
1. [**Getting Started**](#getting-started) | |
2. [**Example**](#example) | |
## Getting Started | |
Follow these steps to replicate our environment and install the necessary libraries: | |
First, make sure to have Python 3.11 installed. Then, to create the virtual environment, run the following commands: | |
```bash | |
python3.11 -m venv env | |
source env/bin/activate | |
``` | |
Run the following command to install the library dependencies. | |
```bash | |
pip install -r requirements.txt | |
``` | |
## Example | |
Please refer to the `example.ipynb` for a step-by-step demonstration on how to perform inference, feature extraction and molecular dynamics simulation with the model. | |