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Code for paper 'From deterministic to stochastic: an interpretable stochastic model-free reinforcement learning framework for portfolio optimization'

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Built Environment

  • python: 3.6.12
  • tensorflow: 1.14.0
  • CUDA: 10.0
  • gym: 0.17.2

Train your own model

python train.py -w=[window size]
                -m=[model number]
                -e=[num. episode]
                -s=[num. steps in one episode]
                -v=[StockTradingEnv number]
                -r=[stock region 'us' or 'cn']
                --device=[cpu or gpu]
                --gpu=[which gpu to use]

Use Trained model

Please check the notebook.

Deploy model to Docker

Build Docker image from Dockerfile

docker build -t finrl:latest .

Run Docker Container

docker run -v .../results/:/home/results \
           -v .../weights/:/home/weights \
           -v .../reward_results/:/home/reward_results \
           -p 6006:6006 \
           --gpus all \
           -ti finrl:latest /bin/bash

Export Docker image

docker save finrl:latest | gzip > finrl.tar.gz

Loaded Saved Docker image

docker image load -i finrl.tar.gz

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Code for paper 'From deterministic to stochastic: an interpretable stochastic model-free reinforcement learning framework for portfolio optimization'

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