imitation 1.0.0

Creator: bradpython12

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Description:

imitation 1.0.0

Imitation Learning Baseline Implementations
This project aims to provide clean implementations of imitation and reward learning algorithms.
Currently, we have implementations of the algorithms below. 'Discrete' and 'Continous' stands for whether the algorithm supports discrete or continuous action/state spaces respectively.



Algorithm (+ link to paper)
API Docs
Discrete
Continuous




Behavioral Cloning
algorithms.bc




DAgger
algorithms.dagger




Density-Based Reward Modeling
algorithms.density




Maximum Causal Entropy Inverse Reinforcement Learning
algorithms.mce_irl




Adversarial Inverse Reinforcement Learning
algoritms.airl




Generative Adversarial Imitation Learning
algorithms.gail




Deep RL from Human Preferences
algorithms.preference_comparisons




Soft Q Imitation Learning
algorithms.sqil





You can find the documentation here.
Installation
Prerequisites

Python 3.8+
(Optional) OpenGL (to render Gym environments)
(Optional) FFmpeg (to encode videos of renders)
(Optional) MuJoCo (follow instructions to install mujoco_py v1.5 here)

Installing PyPI release
Installing the PyPI release is the standard way to use imitation, and the recommended way for most users.
pip install imitation

Install from source
If you like, you can install imitation from source to contribute to the project or access the very last features before a stable release. You can do this by cloning the GitHub repository and running the installer directly. First run:
git clone http://github.com/HumanCompatibleAI/imitation && cd imitation.
For development mode, then run:
pip install -e ".[dev]"

This will run setup.py in development mode, and install the additional dependencies required for development. For regular use, run instead
pip install .

Additional extras are available depending on your needs. Namely, tests for running the test suite, docs for building the documentation, parallel for parallelizing the training, and atari for including atari environments. The dev extra already installs the tests, docs, and atari dependencies automatically, and tests installs the atari dependencies.
For macOS users, some packages are required to run experiments (see ./experiments/README.md for details). First, install Homebrew if not available (see Homebrew). Then, run:
brew install coreutils gnu-getopt parallel

CLI Quickstart
We provide several CLI scripts as a front-end to the algorithms implemented in imitation. These use Sacred for configuration and replicability.
From examples/quickstart.sh:
# Train PPO agent on pendulum and collect expert demonstrations. Tensorboard logs saved in quickstart/rl/
python -m imitation.scripts.train_rl with pendulum environment.fast policy_evaluation.fast rl.fast fast logging.log_dir=quickstart/rl/

# Train GAIL from demonstrations. Tensorboard logs saved in output/ (default log directory).
python -m imitation.scripts.train_adversarial gail with pendulum environment.fast demonstrations.fast policy_evaluation.fast rl.fast fast demonstrations.path=quickstart/rl/rollouts/final.npz demonstrations.source=local

# Train AIRL from demonstrations. Tensorboard logs saved in output/ (default log directory).
python -m imitation.scripts.train_adversarial airl with pendulum environment.fast demonstrations.fast policy_evaluation.fast rl.fast fast demonstrations.path=quickstart/rl/rollouts/final.npz demonstrations.source=local

Tips:

Remove the "fast" options from the commands above to allow training run to completion.
python -m imitation.scripts.train_rl print_config will list Sacred script options. These configuration options are documented in each script's docstrings.

For more information on how to configure Sacred CLI options, see the Sacred docs.
Python Interface Quickstart
See examples/quickstart.py for an example script that loads CartPole-v1 demonstrations and trains BC, GAIL, and AIRL models on that data.
Density reward baseline
We also implement a density-based reward baseline. You can find an example notebook here.
Citations (BibTeX)
@misc{gleave2022imitation,
author = {Gleave, Adam and Taufeeque, Mohammad and Rocamonde, Juan and Jenner, Erik and Wang, Steven H. and Toyer, Sam and Ernestus, Maximilian and Belrose, Nora and Emmons, Scott and Russell, Stuart},
title = {imitation: Clean Imitation Learning Implementations},
year = {2022},
howPublished = {arXiv:2211.11972v1 [cs.LG]},
archivePrefix = {arXiv},
eprint = {2211.11972},
primaryClass = {cs.LG},
url = {https://arxiv.org/abs/2211.11972},
}

Contributing
See Contributing to imitation for more information.

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

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