StockScreener-MCP-with-Ollama-and-Langchain
This project demonstrates how to build a fully local AI assistant that provides detailed stock analysis using MCP. It leverages Ollama and LangChain for seamless operation, allowing users to scrape financial data and analyze company details, profit trends, and shareholding patterns.
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🧠 Stock Analysis using MCP Local LLM (Ollama Qwen3) with LangChain
This project demonstrates how to build a fully local AI assistant that provides detailed stock analysis using:
MCP (Model Context Protocol): Enables structured tool usage by the language model.
Ollama: A tool for running large language models locally.(Qwen3)
LangChain: A framework for developing applications powered by language models and run as MCP Client
BeautifulSoup: For web scraping financial data from Screener.in.
📦 Features
🔍 Company Details: Retrieve company name, current price, market cap, PE ratio, ROE, ROCE, and more.
📈 Profit Analysis: Extract quarterly and yearly net profit data.
👥 Shareholding Patterns: Analyze holdings by promoters, DIIs, FIIs, and the public.
🔧 Tool Integration: Seamless integration with MCP tools for enhanced functionality.
⚙️ Configuration
MCP Server Setup
The MCP server is defined in mcp_config.json.
{
"mcpServers": {
"stock": {
"command": "python",
"args": ["StockMcp.py"],
"transport": "stdio"
}
}
}
Give me the company details of CREDITACC.NS
🛠️ Project Structure
├── StockMcp.py # MCP server with tool definitions
├── requirements.txt # Python dependencies
├── README.md # Project documentation
📚 Resources
MCP Github
Ollama Documentation
LangChain MCP Documentation
BeautifulSoup Documentation