Stock Price Prediction Using LSTM & GRU

Project Code :TCMAPY625

Objective

The main objective of the project is to predict the stock price using LSTM and GRU Machine Learning methods.

Abstract

The stock market is a highly complex nonlinear movement system, and its fluctuation law is affected by many factors, so the prediction of the stock price index is a very challenging task. There are many examples showing that Neural Network algorithms are well suited for such time series predictions and often achieve satisfactory results. In this paper, based on the existing models, we proposed a Regularized GRULSTM neural network model and applied it to the short-term forecast of closing price of the two stocks. The experimental results show that our proposed model is superior to the existing GRU and LSTM network models in stock time series prediction.

Keywords - LSTM; GRU; Time series prediction

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

Hardware:

  • Operating system:  Windows 7 or 7+
  • RAM:  8 GB
  • Hard disc or SSD :  More than 500 GB  
  • Processor :  Intel 3rd generation or high or Ryzen with 8 GB Ram

Software:

  • Software’s :  Python 3.6 or high version
  • IDE :  PyCharm.
  • Framework:  Flask

Learning Outcomes

·         About Python.

·         About PyCharm.

·         About Pandas.

·         About Numpy.

·         About HTML.

·         About CSS.

About JavaScript.

Demo Video

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