Reinforcement Learning For Stock Prediction
This is the code for "Reinforcement Learning for Stock Prediction" By Siraj Raval on Youtube
README
Overview
This is the code for this video on Youtube by Siraj Raval. The author of this code is edwardhdlu . It's implementation of Q-learning applied to (short-term) stock trading. The model uses n-day windows of closing prices to determine if the best action to take at a given time is to buy, sell or sit.
As a result of the short-term state representation, the model is not very good at making decisions over long-term trends, but is quite good at predicting peaks and troughs.
Results
Some examples of results on test sets:

S&P 500, 2015. Profit of $431.04.

Alibaba Group Holding Ltd, 2015. Loss of $351.59.

Apple, Inc, 2016. Profit of $162.73.

Google, Inc, August 2017. Profit of $19.37.
Running the Code
To train the model, download a training and test csv files from Yahoo! Finance into data/
mkdir model
python train ^GSPC 10 1000
Then when training finishes (minimum 200 episodes for results):
python evaluate.py ^GSPC_2011 model_ep1000
References
Deep Q-Learning with Keras and Gym - Q-learning overview and Agent skeleton code
MongoDB - Build AI That Scales
