Visual Adversarial Imitation Learning using Variational Models (VMAIL)

Related tags

Deep LearningVMAIL
Overview

Visual Adversarial Imitation Learning using Variational Models (VMAIL)

This is the official implementation of the NeurIPS 2021 paper.

Method

VMAIL

VMAIL simultaneously learns a variational dynamics model and trains an on-policy adversarial imitation learning algorithm in the latent space using only model-based rollouts. This allows for stable and sample efficient training, as well as zero-shot imitation learning by transfering the learned dynamics model

Instructions

Get dependencies:

conda env create -f vmail.yml
conda activate vmail
cd robel_claw/robel
pip install -e .

To train agents for each environmnet download the expert data from the provided link and run:

python3 -u vmail.py --logdir .logdir --expert_datadir expert_datadir

The training will generate tensorabord plots and GIFs in the log folder:

tensorboard --logdir ./logdir

Citation

If you find this code useful, please reference in your paper:

@article{rafailov2021visual,
      title={Visual Adversarial Imitation Learning using Variational Models}, 
      author={Rafael Rafailov and Tianhe Yu and Aravind Rajeswaran and Chelsea Finn},
      year={2021},
      journal={Neural Information Processing Systems}
}
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