Simplest, Cleanest and Efficient Python Library to Scrape Stocks, FnO & Indices Data From The NSEIndia(New) and NiftyIndices Website.
nsemine is a Python library designed to provide a clean and straightforward interface for scraping data from the National Stock Exchange of India (NSE) and the Nifty Indices website. It aims to simplify the process of retrieving various market data, including indices, stock information, futures & options data, and general NSE-related utilities. This library is built to be efficient and user-friendly, catering to developers, traders, investors who need reliable NSE data for financial analysis, algorithmic trading, and data visualization.
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Asynchronous Data Retrieval: Experience non-blocking, asynchronous data retrieval for optimal performance. Leverage the power of
asyncioto fetch market data without delays, ensuring your applications remain responsive. -
High-Speed Data Acquisition: Utilize the speed and efficiency of
aiohttpandrequestsunder the hood. This library is designed for rapid data acquisition, enabling you to get the latest market insights quickly. -
Unparalleled Data Flexibility:
nsemineempowers you with the complete data manipulation. Choose between the raw, unfiltered API response for maximum customization, OR leverage our intelligently processed data structures for streamlined analysis and immediate insights. -
Intelligent Built-in Caching: Minimize API requests with the intelligent built-in caching mechanism. Reduce your reliance on the NSE API and save you from getting blocked by the NSE Anti-Scraper Robots.
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Clean and Intuitive API: Designed for simplicity and ease of use, the library provides a clean and intuitive API, allowing developers to quickly integrate NSE data into their projects.
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Comprehensive Data Coverage: Access a wide range of NSE data, including indices, stocks, futures, and options, all within a single, unified library.
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Robust Error Handling: Built with robust error handling to ensure your applications remain stable and resilient, even in challenging network conditions.
You can install nsemine by pip or via github.
pip install nsemine
OR
pip install git+https://github.com/kbizme/nsemine.git
Well, there are several Python libraries available for scraping NSE data, I developed this library to address specific needs that were not adequately met by the existing solutions. I have used this library in my project. You can use it in yours.
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Custom Data Requirements:
nsemineis tailored to retrieve specific data points and formats that were essential for the project, which may not be available in other libraries. -
Unique Data Structures: The project required data in a particular structure and format, which this library delivers directly, eliminating the need for extensive post-processing.
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Data Availability:
nsemineis designed to access and provide data that may not be available or easily accessible through other existing NSE scraping libraries. -
Performance and Reliability: Optimized for speed and stability, ensuring reliable data retrieval, especially for real-time and high-frequency data. It uses
numpyandpandasvectorized operations for faster data pre-processing. Most of the possible errors are handled with Exceptions, thus, even if any error occurs the application will remain stable. -
Ease of Use:
nsemineaims to provide a simple and intuitive interface, making it easy for developers to integrate NSE data into their applications. This library is designed to offer a more specialized and efficient solution for users who require precise and customized NSE data.
Contributions are welcome! Please feel free to submit pull requests or open issues for bug fixes, feature requests, or improvements.
Work in progress... Meanwhile, you may explore the library. ReadTheDocs style documentation will be added upon complete library build.
Basic Usage Example:
from nsemine import nse, live, historical, fno
- get live stock and index quotes
- quotes =
live.get_stock_live_quotes(stock_symbol='TCS') - index_quote =
live.get_index_live_price(index='NIFTY 50')
- You can download stock and index historical data from the
historicalmodule. - NSE related any data is available on the
nsemodule. - FNO related data functions are available on
fnomodule [in development].
TIP: You may get all the available function in each modules, by using a dot afte the module name, like this -> live. or -> nse. [Your IDE may highlight all the available functions, all functions contains comprehensive docstring] This is a workaround while the full documentation is ready.