May 18, 2020

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denisyarats/drq

denisyarats/drq

DrQ: Data regularized Q

repo name denisyarats/drq
repo link https://github.com/denisyarats/drq
homepage https://sites.google.com/view/data-regularized-q
language Jupyter Notebook
size (curr.) 10546 kB
stars (curr.) 183
created 2020-04-29
license MIT License

DrQ: Data regularized Q

This is a PyTorch implementation of DrQ from

Image Augmentation Is All You Need: Regularizing Deep Reinforcement Learning from Pixels by

Denis Yarats*, Ilya Kostrikov*, Rob Fergus.

*Equal contribution. Author ordering determined by coin flip.

[Paper] [Webpage]

Citation

If you use this repo in your research, please consider citing the paper as follows

@article{kostrikov2020image,
    title={Image Augmentation Is All You Need: Regularizing Deep Reinforcement Learning from Pixels},
    author={Ilya Kostrikov and Denis Yarats and Rob Fergus},
    year={2020},
    eprint={2004.13649},
    archivePrefix={arXiv},
    primaryClass={cs.LG}
}

Requirements

We assume you have access to a gpu that can run CUDA 9.2. Then, the simplest way to install all required dependencies is to create an anaconda environment by running

conda env create -f conda_env.yml

After the instalation ends you can activate your environment with

source activate drq

Instructions

To train the DrQ agent on the Cartpole Swingup task run

python train.py env=cartpole_swingup

you can get the state-of-the-art performance in under 3 hours.

To reproduce the results from the paper run

python train.py env=cartpole_swingup batch_size=512

This will produce the runs folder, where all the outputs are going to be stored including train/eval logs, tensorboard blobs, and evaluation episode videos. To launch tensorboard run

tensorboard --logdir runs

The console output is also available in a form:

| train | E: 5 | S: 5000 | R: 11.4359 | D: 66.8 s | BR: 0.0581 | ALOSS: -1.0640 | CLOSS: 0.0996 | TLOSS: -23.1683 | TVAL: 0.0945 | AENT: 3.8132

a training entry decodes as

train - training episode
E - total number of episodes 
S - total number of environment steps
R - episode return
D - duration in seconds
BR - average reward of a sampled batch
ALOSS - average loss of the actor
CLOSS - average loss of the critic
TLOSS - average loss of the temperature parameter
TVAL - the value of temperature
AENT - the actor's entropy

while an evaluation entry

| eval  | E: 20 | S: 20000 | R: 10.9356

contains

E - evaluation was performed after E episodes
S - evaluation was performed after S environment steps
R - average episode return computed over `num_eval_episodes` (usually 10)

The PlaNet Benchmark

DrQ demonstrates the state-of-the-art performance on a set of challenging image-based tasks from the DeepMind Control Suite (Tassa et al., 2018). We compare against PlaNet (Hafner et al., 2018), SAC-AE (Yarats et al., 2019), SLAC (Lee et al., 2019), CURL (Srinivas et al., 2020), and an upper-bound performance SAC States (Haarnoja et al., 2018). This follows the benchmark protocol established in PlaNet (Hafner et al., 2018). The PlaNet Benchmark

The Dreamer Benchmark

DrQ demonstrates the state-of-the-art performance on an extended set of challenging image-based tasks from the DeepMind Control Suite (Tassa et al., 2018), following the benchmark protocol from Dreamer (Hafner et al., 2019). We compare against Dreamer (Hafner et al., 2019) and an upper-bound performance SAC States (Haarnoja et al., 2018). The Dreamer Benchmark

Acknowledgements

We used kornia for data augmentation.

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