This is a trial implementation of DeepMind's Oct19th publication: Mastering the Game of Go without Human Knowledge.
DeepMind release AlphaZero Teaching Go. It's a lot of fun!
Pure RL has outperformed supervised learning+RL agent
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https://drive.google.com/drive/folders/1Xs8Ly3wjMmXjH2agrz25Zv2e5-yqQKaP?usp=sharing
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Place under ./savedmodels/large20/
python 3.6 tensorflow/tensorflow-gpu
pip install -r requirement.txt
Under repo's root dir
cd data/download
chmod +x download.sh
./download.sh
It is only an example, feel free to assign your local dataset directory
python preprocess.py preprocess ./data/SGFs/kgs-*
python main.py --mode=train
python main.py --mode=gtp —-gtp_poliy=mctspolicy --model_path='./savedmodels/your_model.ckpt'
- In console:
which python
add result to the headline of main.py
with #!
prefix.
- Add the path of
main.py
to Sabaki's manage Engine with argument--mode=gtp
- AlphaGo Zero Architecture
- Supervised Training
- Self Play pipeline
- Go Text Protocol
- Sabaki Engine enabled
- Tabula rasa (failed)
- Distributed learning
*Brain Lee *Ritchie Ng *Samuel Graván *森下 健 *yuanfengpang