This is a trading gym for any agent to trade for short term trading. We have enermous data for short term trading. We have been gathering for every Korean equities order and quote data every tick moment and also reflected data to our trading gym. In this environment, you can testify your own agent which beat market and results in making you rich someday.
It's is simple architecture that you motivate follow and run this repo easily.
Here can be reference. Those are that we built in temporary.
You can clone two repository into your local computer or cloud whatever. And you can run agent after including traidng gym as submodule or add gym's root into Python Path and then you can run trading agent itself. so simple!
- Trading gym followed by OpenAI Gym architecture, spread trading
- Trading gym followed by OpenAI Gym architecture, easy to look around with ipython example
- https://github.com/hackthemarket/gym-trading
- https://github.com/hackthemarket/gym-trading/blob/master/gym_trading/envs/TradingEnv.ipynb
- Sairen
- Trading gym using API of Interative Broker
- It is such a good reference for us. we will adapt live/paper mode feature of it.
- https://doctorj.gitlab.io/sairen/
- edemo / demouser
- TWS configuration . TWS session will be set for socket port 7496 (live), . a paper account session will listen on socket port 7497 (paper) . https://interactivebrokers.github.io/tws-api/initial_setup.html#gsc.tab=0
- deep trader
Algorithms collections based on OpenAI Gym best article to make trading gym on Discourse
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Packaging
setup.py, Upload package into pip repo -
Run this on cloud and allow every agent can access through REST API to train