/pytorch-a2c-ppo-acktr

PyTorch implementation of Advantage Actor Critic (A2C), Proximal Policy Optimization (PPO) and Scalable trust-region method for deep reinforcement learning using Kronecker-factored approximation (ACKTR).

Primary LanguagePythonMIT LicenseMIT

pytorch-a2c-ppo-acktr

Update 10/06/2017: added enjoy.py and a link to pretrained models!

Update 09/27/2017: now supports both Atari and MuJoCo/Roboschool!

This is a PyTorch implementation of

  • Advantage Actor Critic (A2C), a synchronous deterministic version of A3C
  • Proximal Policy Optimization PPO
  • Scalable trust-region method for deep reinforcement learning using Kronecker-factored approximation ACKTR

Also see the OpenAI posts: A2C/ACKTR and PPO for more information.

This implementation is inspired by the OpenAI baselines for A2C, ACKTR and PPO. It uses the same hyper parameters and the model since they were well tuned for Atari games.

Supported (and tested) environments (via OpenAI Gym)

I highly recommend PyBullet as a free open source alternative to MuJoCo for continuous control tasks.

All environments are operated using exactly the same Gym interface. See their documentations for a comprehensive list.

Requirements

In order to install requirements, follow:

# PyTorch
conda install pytorch torchvision -c soumith

# Baselines for Atari preprocessing
git clone https://github.com/openai/baselines.git
cd baselines
pip install -e .

# Other requirements
pip install -r requirements.txt

Contributions

Contributions are very welcome. If you know how to make this code better, please open an issue. If you want to submit a pull request, please open an issue first. Also see a todo list below.

Also I'm searching for volunteers to run all experiments on Atari and MuJoCo (with multiple random seeds).

Disclaimer

It's extremely difficult to reproduce results for Reinforcement Learning methods. See "Deep Reinforcement Learning that Matters" for more information. I tried to reproduce OpenAI results as closely as possible. However, majors differences in performance can be caused even by minor differences in TensorFlow and PyTorch libraries.

TODO

  • Improve this README file. Rearrange images.
  • Improve performance of KFAC, see kfac.py for more information
  • Run evaluation for all games and algorithms

Training

Start a Visdom server with python -m visdom.server, it will serve http://localhost:8097/ by default.

Atari

A2C

python main.py --env-name "PongNoFrameskip-v4"

PPO

python main.py --env-name "PongNoFrameskip-v4" --algo ppo --use-gae --lr 2.5e-4 --clip-param 0.1 --num-processes 8 --num-steps 128 --num-mini-batch 4 --vis-interval 1 --log-interval 1

ACKTR

python main.py --env-name "PongNoFrameskip-v4" --algo acktr --num-processes 32 --num-steps 20

MuJoCo

A2C

python main.py --env-name "Reacher-v1" --num-stack 1 --num-frames 1000000

PPO

python main.py --env-name "Reacher-v1" --algo ppo --use-gae --vis-interval 1  --log-interval 1 --num-stack 1 --num-steps 2048 --num-processes 1 --lr 3e-4 --entropy-coef 0 --ppo-epoch 10 --num-mini-batch 32 --gamma 0.99 --tau 0.95 --num-frames 1000000

ACKTR

ACKTR requires some modifications to be made specifically for MuJoCo. But at the moment, I want to keep this code as unified as possible. Thus, I'm going for better ways to integrate it into the codebase.

Enjoy

Load a pretrained model from my Google Drive.

Also pretrained models for other games are available on request. Send me an email or create an issue, and I will upload it.

Disclaimer: I might have used different hyper-parameters to train these models.

Atari

python enjoy.py --load-dir trained_models/a2c --env-name "PongNoFrameskip-v4" --num-stack 4

MuJoCo

python enjoy.py --load-dir trained_models/ppo --env-name "Reacher-v1" --num-stack 1

Results

A2C

BreakoutNoFrameskip-v4

SeaquestNoFrameskip-v4

QbertNoFrameskip-v4

beamriderNoFrameskip-v4

PPO

BreakoutNoFrameskip-v4

SeaquestNoFrameskip-v4

QbertNoFrameskip-v4

beamriderNoFrameskip-v4

ACKTR

BreakoutNoFrameskip-v4

SeaquestNoFrameskip-v4

QbertNoFrameskip-v4

beamriderNoFrameskip-v4