hackthemarket / Gym Trading
Licence: mit
Environment for reinforcement-learning algorithmic trading models
Stars: ✭ 574
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OpenAI Gym Environment for Trading
Environment for reinforcement-learning algorithmic trading models
The Trading Environment provides an environment for single-instrument trading using historical bar data.
See here for a jupyter notebook describing basic usage and illustrating a (sometimes) winning strategy based on policy gradients implemented on tensorflow.
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