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Can Wikipedia Help Offline RL?

Machel Reid, Yutaro Yamada and Shixiang Shane Gu.

Our paper is up on arXiv.

Overview

Official codebase for Can Wikipedia Help Offline Reinforcement Learning?. Contains scripts to reproduce experiments. (This codebase is based on that of https://github.com/kzl/decision-transformer)

image info

Instructions

We provide code our code directory containing code for our experiments.

Installation

Experiments require MuJoCo. Follow the instructions in the mujoco-py repo to install. Then, dependencies can be installed with the following command:

conda env create -f conda_env.yml

Downloading datasets

Datasets are stored in the data directory. LM co-training and vision experiments can be found in lm_cotraining and vision directories respectively. Install the D4RL repo, following the instructions there. Then, run the following script in order to download the datasets and save them in our format:

python download_d4rl_datasets.py

Downloading ChibiT

ChibiT can be downloaded with gdown as follows:

gdown --id $ID #we will add it soon!

Example usage

Experiments can be reproduced with the following:

python experiment.py --env hopper --dataset medium --model_type dt --pretrained_lm gpt2 \ # or path to chibiT
--gpt_kmeans --gpt_kmeans-const 0.1 
--

The run.sh file has example commands.

Adding -w True will log results to Weights and Biases.

Citation

Please cite our paper as:

@misc{reid2022wikipedia,
      title={Can Wikipedia Help Offline Reinforcement Learning?}, 
      author={Machel Reid and Yutaro Yamada and Shixiang Shane Gu},
      year={2022},
      eprint={2201.12122},
      archivePrefix={arXiv},
      primaryClass={cs.LG}
}

License

MIT

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