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Metadata-Version: 2.1 | |
Name: mhg-gnn | |
Version: 0.0 | |
Summary: Package for mhg-gnn | |
Author: team | |
License: TBD | |
Classifier: Programming Language :: Python :: 3 | |
Classifier: Programming Language :: Python :: 3.9 | |
Description-Content-Type: text/markdown | |
Requires-Dist: networkx>=2.8 | |
Requires-Dist: numpy<2.0.0,>=1.23.5 | |
Requires-Dist: pandas>=1.5.3 | |
Requires-Dist: rdkit-pypi<2023.9.6,>=2022.9.4 | |
Requires-Dist: torch>=2.0.0 | |
Requires-Dist: torchinfo>=1.8.0 | |
Requires-Dist: torch-geometric>=2.3.1 | |
# mhg-gnn | |
This repository provides PyTorch source code assosiated with our publication, "MHG-GNN: Combination of Molecular Hypergraph Grammar with Graph Neural Network" | |
**Paper:** [Arxiv Link](https://arxiv.org/pdf/2309.16374) | |
For more information contact: [email protected] | |
![mhg-gnn](images/mhg_example1.png) | |
## Introduction | |
We present MHG-GNN, an autoencoder architecture | |
that has an encoder based on GNN and a decoder based on a sequential model with MHG. | |
Since the encoder is a GNN variant, MHG-GNN can accept any molecule as input, and | |
demonstrate high predictive performance on molecular graph data. | |
In addition, the decoder inherits the theoretical guarantee of MHG on always generating a structurally valid molecule as output. | |
## Table of Contents | |
1. [Getting Started](#getting-started) | |
1. [Pretrained Models and Training Logs](#pretrained-models-and-training-logs) | |
2. [Replicating Conda Environment](#replicating-conda-environment) | |
2. [Feature Extraction](#feature-extraction) | |
## Getting Started | |
**This code and environment have been tested on Intel E5-2667 CPUs at 3.30GHz and NVIDIA A100 Tensor Core GPUs.** | |
### Pretrained Models and Training Logs | |
We provide checkpoints of the MHG-GNN model pre-trained on a dataset of ~1.34M molecules curated from PubChem. (later) For model weights: [HuggingFace Link]() | |
Add the MHG-GNN `pre-trained weights.pt` to the `models/` directory according to your needs. | |
### Replacicating Conda Environment | |
Follow these steps to replicate our Conda environment and install the necessary libraries: | |
``` | |
conda create --name mhg-gnn-env python=3.8.18 | |
conda activate mhg-gnn-env | |
``` | |
#### Install Packages with Conda | |
``` | |
conda install -c conda-forge networkx=2.8 | |
conda install numpy=1.23.5 | |
# conda install -c conda-forge rdkit=2022.9.4 | |
conda install pytorch=2.0.0 torchvision torchaudio -c pytorch | |
conda install -c conda-forge torchinfo=1.8.0 | |
conda install pyg -c pyg | |
``` | |
#### Install Packages with pip | |
``` | |
pip install rdkit torch-nl==0.3 torch-scatter torch-sparse | |
``` | |
## Feature Extraction | |
The example notebook [mhg-gnn_encoder_decoder_example.ipynb](notebooks/mhg-gnn_encoder_decoder_example.ipynb) contains code to load checkpoint files and use the pre-trained model for encoder and decoder tasks. | |
To load mhg-gnn, you can simply use: | |
```python | |
import torch | |
import load | |
model = load.load() | |
``` | |
To encode SMILES into embeddings, you can use: | |
```python | |
with torch.no_grad(): | |
repr = model.encode(["CCO", "O=C=O", "OC(=O)c1ccccc1C(=O)O"]) | |
``` | |
For decoder, you can use the function, so you can return from embeddings to SMILES strings: | |
```python | |
orig = model.decode(repr) | |
``` | |