This repository contains an RL environment based on open-source game Gameplay
Football.
It was created by the Google Brain team for research purposes.
Useful links:
- Run in Colab - start training in less that 2 minutes.
- Google Research Football Paper
- GoogleAI blog post
- Google Research Football on Cloud
- GRF Kaggle competition - take part in the competition playing games against others, win prizes and become the GRF Champion!
We'd like to thank Bastiaan Konings Schuiling, who authored and open-sourced the original version of this game.
Open our example Colab, that will allow you to start training your model in less than 2 minutes.
This method doesn't support game rendering on screen - if you want to see the game running, please use the method below.
This is the recommended way for Linux-based systems to avoid incompatible package versions. Instructions are available here.
sudo apt-get install git cmake build-essential libgl1-mesa-dev libsdl2-dev \
libsdl2-image-dev libsdl2-ttf-dev libsdl2-gfx-dev libboost-all-dev \
libdirectfb-dev libst-dev mesa-utils xvfb x11vnc python3-pip
python3 -m pip install --upgrade pip setuptools psutil wheel
First install brew. It should automatically install Command Line Tools. Next install required packages:
brew install git python3 cmake sdl2 sdl2_image sdl2_ttf sdl2_gfx boost boost-python3
python3 -m pip install --upgrade pip setuptools psutil wheel
Install Git and Python 3.
Update pip in the Command Line (here and for the next steps type python
instead of python3
)
python -m pip install --upgrade pip setuptools psutil wheel
python3 -m pip install gfootball
(On Windows you have to install additional tools and set an environment variable, see Compiling Engine for detailed instructions.)
git clone https://github.com/google-research/football.git
cd football
Optionally you can use virtual environment:
python3 -m venv football-env
source football-env/bin/activate
Next, build the game engine and install dependencies:
python3 -m pip install .
This command can run for a couple of minutes, as it compiles the C++ environment in the background. If you face any problems, first check Compiling Engine documentation and search GitHub issues.
python3 -m gfootball.play_game --action_set=full
Make sure to check out the keyboard mappings. To quit the game press Ctrl+C in the terminal.
- Running training
- Playing the game
- Environment API
- Observations & Actions
- Scenarios
- Multi-agent support
- Running in docker
- Saving replays, logs, traces
- Imitation Learning
In order to run TF training, you need to install additional dependencies
- Update PIP, so that tensorflow 1.15 is available:
python3 -m pip install --upgrade pip setuptools wheel
- TensorFlow:
python3 -m pip install tensorflow==1.15.*
orpython3 -m pip install tensorflow-gpu==1.15.*
, depending on whether you want CPU or GPU version; - Sonnet and psutil:
python3 -m pip install dm-sonnet==1.* psutil
; - OpenAI Baselines:
python3 -m pip install git+https://github.com/openai/baselines.git@master
.
Then:
- To run example PPO experiment on
academy_empty_goal
scenario, runpython3 -m gfootball.examples.run_ppo2 --level=academy_empty_goal_close
- To run on
academy_pass_and_shoot_with_keeper
scenario, runpython3 -m gfootball.examples.run_ppo2 --level=academy_pass_and_shoot_with_keeper
In order to train with nice replays being saved, run
python3 -m gfootball.examples.run_ppo2 --dump_full_episodes=True --render=True
In order to reproduce PPO results from the paper, please refer to:
- gfootball/examples/repro_checkpoint_easy.sh
- gfootball/examples/repro_scoring_easy.sh
Please note that playing the game is implemented through an environment, so human-controlled players use the same interface as the agents. One important implication is that there is a single action per 100 ms reported to the environment, which might cause a lag effect when playing.
The game defines following keyboard mapping (for the keyboard
player type):
ARROW UP
- run to the top.ARROW DOWN
- run to the bottom.ARROW LEFT
- run to the left.ARROW RIGHT
- run to the right.S
- short pass in the attack mode, pressure in the defense mode.A
- high pass in the attack mode, sliding in the defense mode.D
- shot in the attack mode, team pressure in the defense mode.W
- long pass in the attack mode, goalkeeper pressure in the defense mode.Q
- switch the active player in the defense mode.C
- dribble in the attack mode.E
- sprint.
Run python3 -m gfootball.play_game --action_set=full
. By default, it starts
the base scenario and the left player is controlled by the keyboard. Different
types of players are supported (gamepad, external bots, agents...). For possible
options run python3 -m gfootball.play_game -helpfull
.
In particular, one can play against agent trained with run_ppo2
script with
the following command (notice no action_set flag, as PPO agent uses default
action set):
python3 -m gfootball.play_game --players "keyboard:left_players=1;ppo2_cnn:right_players=1,checkpoint=$YOUR_PATH"
We provide trained PPO checkpoints for the following scenarios:
In order to see the checkpoints playing, run
python3 -m gfootball.play_game --players "ppo2_cnn:left_players=1,policy=gfootball_impala_cnn,checkpoint=$CHECKPOINT" --level=$LEVEL
,
where $CHECKPOINT
is the path to downloaded checkpoint. Please note that the checkpoints were trained with Tensorflow 1.15 version. Using
different Tensorflow version may result in errors. The easiest way to run these checkpoints is through provided Dockerfile_examples
image.
See running in docker for details (just override the default Docker definition with -f Dockerfile_examples
parameter).
In order to train against a checkpoint, you can pass 'extra_players' argument to create_environment function. For example extra_players='ppo2_cnn:right_players=1,policy=gfootball_impala_cnn,checkpoint=$CHECKPOINT'.