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RNN-Stock-Price-Prediction

Stock Price prediction by RNN

How to use Keras TimeseriesGenerator for time series data

This quick tutorial shows you how to use Keras TimeseriesGenerator to alleviate work when dealing with time series prediction task.

How to Run

Require Python 3.5+ and Jupyter notebook installed

Clone or download this repo

git clone https://github.com/Tony607/Keras_TimeseriesGenerator

Install required libraries

pip3 install -r requirements.txt

In the project start a command line run

jupyter notebook

In the opened browser window open

TimeseriesGenerator.ipynb

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