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Reinforcement Learning for Crystal Structure Design

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Offline Reinforcement Learning for Crystal Design

Introduction

In this work, we adopt conservative Q-learning, a popular offline reinforcement learning approach to learning a conditional policy that can design new and stable crystals having the desired band gap. Our targeted formulation of the reward function for offline RL is crafted from formation energy (per atom) and band gap values computed using first-principles DFT calculations, widely used in computational chemistry. Refer to our paper for more details about our methodology.

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Documentation

Installation

To install, clone the repository

git clone https://github.com/chandar-lab/crystal-design.git
cd crystal-design
pip install -r requirements.txt
pip install -e .
cd crystal_design

If dgl installation fails, please refer https://www.dgl.ai/pages/start.html.

Training

We use the crystal_cql.py in the runner folder for training and generation. Use this command for the list of arguments.

python crystal_cql.py -h

To train a conditional CQL model from scratch for 250000 steps, execute

python crystal_cql.py --data_path <path to trajectory data> --p_hat <target property> --max_timesteps 250000

To train an unconditional CQL model for 250000 steps, execute

python crystal_cql.py --data_path <path to trajectory data> --max_timesteps 250000 --nocondition True

To train a behavioral cloning model for 250000 steps, execute

python crystal_cql.py --data_path <path to trajectory data> --max_timesteps 250000 --bc True --nocondition True

Generating Crystals

To generate crystal using a learned model, whose checkpoint (.pt) is stored in a directory, follow the command

python crystal_cql.py --mode eval --model_path <path to checkpoint> --p_hat <target property>

A recommended way to do the same is to directly provide the path to the wandb run, in which case it will run the checkpoint file named checkpoint_250000.pt (this can be modified)

python crystal_cql.py --mode eval --eval_wandb_path <path to wandb run> --no_condition <True/False>

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