A Python Script To Fetch The Nifty, BankNifty And FinNifty Contracts Allowed For Trading At Zerodha Kite Platform.
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Updated
Oct 18, 2024 - Python
A Python Script To Fetch The Nifty, BankNifty And FinNifty Contracts Allowed For Trading At Zerodha Kite Platform.
Symphony Fintech XTS API Instrument / Contract Masters CSV's.
Stock data analysis
It is fully automated algo trading , It trades for you in Nifty options using Zerodha kite . You don't need to pay 4000 indian rupees monthly for kite api because this program uses selenium to access zerodha kite website
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The Nifty 50 Stock Price Prediction project aims to forecast the stock prices of companies listed on India's Nifty 50 index. The Nifty 50 represents the top 50 companies across diverse sectors on the National Stock Exchange (NSE), reflecting the overall performance of the Indian stock market.
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1. First we fetch data of stocks in realtime from nse India website, perform basis data visualizations using python to analyze the stock. 2. Then we use machine learning LSTM technique to predict the future stock price and at last create an interactive web-app using Streamlit in python.
This repository contains code and videos related to financial data analysis using python.
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