XAheli/Predicting-Indian-Stocks-Price-with-Stacked-LSTM
Predicting Indian stock prices using Stacked LSTM model. Analysing Reliance, Tata Steel, HDFC Bank, Infosys data. Data prep, EDA, hyperparameter tuning.
This project helps financial analysts and traders predict future stock prices for major Indian companies like Reliance and HDFC Bank. It takes historical stock data as input and provides visualizations of trends, trading volumes, and correlations, along with predictions of future stock prices. It's designed for anyone needing to forecast Indian stock market movements.
No commits in the last 6 months.
Use this if you are a financial analyst or trader focused on the Indian stock market and want to forecast stock prices based on historical data.
Not ideal if you are looking for real-time trading signals or predictions for markets outside of India, or if you prefer fundamental analysis over technical and time-series methods.
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Apache-2.0
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Last pushed
Sep 21, 2023
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