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CODAS

The Official Code for "Cross-Modal Domain Adaptation for Cost-Efficient Visual Reinforcement Learning"

Torch version code is available in https://github.com/yixiaoshenghua/CODAS-pytorch

Code Structure

CODAS

|- codas: code for CODAS

|- data: the precollect dataset, pre-trained dynamics model, environments are saved here

|- mj_envs: environment related code for CODAS

|- rla_scripts: some scripts to deal with log files

|- scripts: scripts to run codas

    |- env_config_map.py: task configurations

    |- private.py: configuration for RLA

    |- run_data_collect.py: script to collect data of MuJoCo in the target domain

    |- run_data_collect_robot.py: script to collect data of Hand DAPG in the target domain

    |- run_var_seq.py: script to train codas

|- rla_config.yaml: configuration for RLA

|- setup.py: python script to set up environment

Quick Start

# install python environment for CODAS
git clone https://github.com/xionghuichen/RLAssistant
git clone --recursive https://github.com/jiangsy/mj_envs
git clone https://github.com/xionghuichen/CODAS
git clone https://github.com/jiangsy/mjrl
cd RLAssistant
pip install -e .
cd ../mj_envs/
pip install -e .
cd ../mjrl
pip install -e .
cd ../CODAS
pip install -e .

# the working directory is ./scripts
cd scripts

# run data collection in the target domain
python run_data_collect(_robot).py --env_id {task name} # to run data collect in hand DAPG envs, use the run_data_collect_robot.py script
# train codas
python run_var_seq.py --env_id {task_name}

We use RLAssistant to manage our experiments. The training logs can be found in {your CODAS path}/log. You can use tensorbard to check and also use the tools in RLA to visualize (e.g., RLA.easy_plot.plot_func.plot_res_func). You can check plot_demo.ipynb for more details. The figure of the simplest setting will be something like this:

There are also some scrips in ./rla_scrips to manage the experimental logs.

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The Official Code for Cross-Modal Domain Adaptation for Cost-Efficient Visual Reinforcement Learning (NeurIPS'21))

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