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3 Repos

Awesome GitHub RepositoriesIndustry Classification Systems

Frameworks for categorizing companies and market data into standardized industry sectors.

Distinct from Industry Knowledge Sources: Distinct from IoT or media industry sources: focuses on financial market classification standards.

Explore 3 awesome GitHub repositories matching data & databases · Industry Classification Systems. Refine with filters or upvote what's useful.

Awesome Industry Classification Systems GitHub Repositories

Finde die besten Repos mit KI.Wir suchen mit KI nach den am besten passenden Repositories.
  • stefan-jansen/machine-learning-for-tradingAvatar von stefan-jansen

    stefan-jansen/machine-learning-for-trading

    16,552Auf GitHub ansehen↗

    This project is a comprehensive framework for engineering financial data pipelines, designed to automate the collection, cleaning, and synchronization of large-scale market datasets. It functions as a quantitative trading data engine, providing the infrastructure necessary to manage historical and real-time asset pricing information for research and machine learning workflows. The system distinguishes itself through a configuration-driven approach to orchestration, allowing users to manage complex data acquisition tasks across multiple financial providers. It features resilient middleware tha

    Downloads historical performance data for industry-specific portfolios to analyze sector-based market trends.

    Jupyter Notebookartificial-intelligencedata-sciencedeep-learning
    Auf GitHub ansehen↗16,552
  • akfamily/akshareAvatar von akfamily

    akfamily/akshare

    16,358Auf GitHub ansehen↗

    This project is a Python library designed for the programmatic retrieval and analysis of diverse financial datasets. It functions as a comprehensive toolkit for quantitative research, providing a unified interface to fetch historical and real-time market data across asset classes including equities, futures, bonds, cryptocurrencies, and foreign exchange. By abstracting complex network requests into simple, parameter-driven functions, it enables users to integrate financial data into research workflows and automated trading systems. The library distinguishes itself through its scraper-based ag

    Enables categorization of financial data based on standard industry classification systems.

    Pythonacademicakshareasset-pricing
    Auf GitHub ansehen↗16,358
  • 1nchaos/adataAvatar von 1nchaos

    1nchaos/adata

    4,632Auf GitHub ansehen↗

    This project is a financial market data API and quantitative analysis tool designed to aggregate metrics, scrape web data, and monitor market sentiment. It functions as a financial indicator aggregator and stock market web scraper that provides a programmatic interface for retrieving stock prices, indices, and ETF metadata from multiple data providers. The system differentiates itself through a dedicated market sentiment monitor and investment risk assessment capabilities. It tracks investor behavior via northbound capital flows, dragon-tiger lists, popularity rankings, and security margin ba

    Returns first- and second-level industry classifications for specific stocks based on standardized systems.

    Python3000achina
    Auf GitHub ansehen↗4,632
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