This project is base on freqtrade
The project is in very early stage, so there are a lot of inconvenient part that you have to set up manually. I am working on the improvements.
Follow the freqtrade documentation to install freqtrade
Initialize the user_directory
freqtrade create-userdir --userdir user_data/
pip install pandas
pip install gym
IndicatorforRL.py -> [freqtrade home]/user_data/strategies/IndicatorforRL.py
config_rl.json -> [freqtrade home]/config_rl.json
freqtradegym.py -> [freqtrade home]/freqtradegym.py
deep_rl.py -> [freqtrade home]/deep_rl.py
Copy first the baseline files.
LoadRLModel.py -> [freqtrade home]/user_data/strategies/LoadRLModel.py
rllib_example.py -> [freqtrade home]/rllib_example.py
The usage example is deep_rl.py and the config for freqtrade and freqtrade-gym is config_rl.json and uses IndicatorforRL.py as feature extraction.
This demo is using openai baseline library to train reinforcement learning agents.
Baseline can install by
sudo apt-get update && sudo apt-get install cmake libopenmpi-dev python3-dev zlib1g-dev
pip install stable-baselines[mpi]
Download historical data
(Remember to download a little bit more data than the timerange in config file just in case.)
freqtrade download-data -c <config file> --days <Int> -t {1m,3m,5m...}
To match the example config_rl.json
freqtrade download-data -c config_rl.json --timerange 20201119-20201201 -t 15m
Move the IndicatorforRL.py into user_data/strategies (you should have user_data/strategies/IndicatorforRL.py)
Run the demo to train an agent.
python deep_rl.py
You can use tensorboard to monior the training process
logdir is defined in deep_rl.py when initializing the rl model
tensorboard --logdir <logdir>
This will look like
The usage example is rllib_example.py and the config for freqtrade and freqtrade-gym is config_rl.json and uses IndicatorforRL.py as feature extraction.
This demo is using RLlib to train reinforcement learning agents.
Baseline can install by
pip install 'ray[rllib]'
Run the demo to train an agent.
python rllib_example.py
Move the LoadRLModel.py into user_data/strategies (you should have user_data/strategies/LoadRLModel.py)
Modified the class intial load model part to your model type and path.
Modified the populate_indicators and rl_model_redict method for your gym settings.
Run the backtesting
freqtrade backtesting -c config_rl.json -s LoadRLModel
Dry-run trading (remove --dry-run for real deal!)
freqtrade trade --dry-run -c config_rl.json -s LoadRLModelgProto
This software is for educational purposes only. Do not risk money which you are afraid to lose. USE THE SOFTWARE AT YOUR OWN RISK. THE AUTHORS AND ALL AFFILIATES ASSUME NO RESPONSIBILITY FOR YOUR TRADING RESULTS.