Awesome
Learning Multimodal Graph-to-Graph Translation for Molecular Optimization
This is the official implementation of junction tree encoder-decoder model in https://arxiv.org/abs/1812.01070
Requirements
- Python == 2.7
- RDKit >= 2017.09
- PyTorch >= 0.4.0
- Numpy
- scikit-learn
The code has been tested under python 2.7 with pytorch 0.4.1.
Quick Start
The tutorial of training and testing our variational junction tree encoder-decoder is in diff_vae/README.md.
A quick summary of different folders:
data/
contains the training, validation and test set of logP, QED and DRD2 tasks described in the paper.fast_jtnn/
contains the implementation of junction tree encoder-decoder.diff_vae/
includes the training and decoding script of variational junction tree encoder-decoder (README).diff_vae_gan/
includes the training and decoding script of adversarial training module (README).props/
is the property evaluation module, including penalized logP, QED and DRD2 property calculation.scripts/
provides evaluation and data preprocessing scripts.
Contact
Wengong Jin (wengong@csail.mit.edu)