tessa – simple, hassle-free access to price information of financial assets 📉🤓📈
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Updated
Oct 16, 2023 - Python
tessa – simple, hassle-free access to price information of financial assets 📉🤓📈
This project is about predicting stock prices with more accuracy using LSTM algorithm. For this project we have fetched real-time data from yfinance library.
Application to finance
Fundamental analysis using python
Automated stock trading strategy using deep reinforcement learning and recurrent neural networks
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Tried my hands on yfinance library for analyzing stock prices and data. Here are some examples to demonstrate the working of this library.
This project combines Python and yfinance, leveraging LSTM in Keras for stock price predictions, hosted via a user-friendly platform with Streamlit for accurate, interactive stock market forecasting.
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