Neural network for stock price prediction

Overview

neural_network_for_stock_price_prediction

Neural networks for stock price prediction.

requirements

  • python == 3.8.12
  • tensorflow == 2.3.0
  • numpy == 1.19.5
  • scikit-learn == 1.0.1
  • pandas == 1.3.4
  • matplotlib == 3.5.0

quick start

python import_data.py
python gru.py
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