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investor-agent

ferdousbhai/investor-agent
🔗 Latest commit:5f9ab04
🕒 Updated:Sep 9, 2025, 01:06 PM
Python
Finance

A Model Context Protocol server for building an investor agent

MCP Trust Score
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🤖 Evaluated by gemini-2.5-flashFix
Trust Score56/100
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⭐ GitHub Stars:228
👥 Contributors:5
📋 Total Issues:0
📦 Has Releases:No
🔧 Has CI/CD Pipeline:Yes
Configuration
Configuration example extracted from README.md for Claude Desktop and other clients.
🤖 Evaluated by gemini-2.5-flashFix
{
  "investor-agent": {
    "command": "uvx",
    "args": [
      "investor-agent"
    ],
    "env": {}
  },
  "investor-agent-ta": {
    "command": "uvx",
    "args": [
      "investor-agent[ta]"
    ],
    "env": {}
  }
}
MCP Protocol Support
Implemented MCP protocol features
🤖 Evaluated by gemini-2.5-flashFix
Tools:
Prompts:
Resources:
Sampling:
Roots:
Logging:
STDIO Transport:
HTTP Transport:
OAuth2 Auth:
Dependencies
9 dependencies
Libraries and frameworks used by this MCP server
🤖 Evaluated by gemini-2.5-flashFix
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README.md

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investor-agent: A Financial Analysis MCP Server

Overview

The investor-agent is a Model Context Protocol (MCP) server that provides comprehensive financial insights and analysis to Large Language Models. It leverages real-time market data, fundamental and technical analysis to deliver:

  • Market Movers: Top gainers, losers, and most active stocks with support for different market sessions
  • Ticker Analysis: Company overview, news, metrics, analyst recommendations, and upgrades/downgrades
  • Options Data: Filtered options chains with customizable parameters
  • Historical Data: Price trends and earnings history
  • Financial Statements: Income, balance sheet, and cash flow statements
  • Ownership Analysis: Institutional holders and insider trading activity
  • Earnings Calendar: Upcoming earnings announcements with date filtering (optional)
  • Market Sentiment: CNN Fear & Greed Index, Crypto Fear & Greed Index, and Google Trends sentiment analysis
  • Technical Analysis: SMA, EMA, RSI, MACD, BBANDS indicators (optional)

The server integrates with yfinance for market data and automatically optimizes data volume for better performance.

Prerequisites

  • Python: 3.12 or higher
  • Package Manager: uv. Install if needed:
    curl -LsSf https://astral.sh/uv/install.sh | sh
    

Optional Dependencies

  • TA-Lib C Library: Required for technical indicators. Follow official installation instructions.
  • Playwright: Required for earnings calendar functionality. Installed automatically with the playwright optional dependency.

Installation

Quick Start

# Core features only
uvx investor-agent

# With technical indicators (requires TA-Lib)
uvx "investor-agent[ta]"

# With earnings calendar (requires Playwright)
uvx "investor-agent[playwright]"
# Note: After first installation, run:
#   playwright install-deps chromium
#   playwright install chromium

# With both technical indicators and earnings calendar
uvx "investor-agent[ta,playwright]"
# Note: After first installation, run:
#   playwright install-deps chromium
#   playwright install chromium

Tools

Market Data

  • get_market_movers(category="most-active", count=25, market_session="regular") - Market movers data including top gainers, losers, or most active stocks. Supports different market sessions (regular/pre-market/after-hours) for most-active category. Returns up to 100 stocks with cleaned percentage changes, volume, and market cap data
  • get_ticker_data(ticker, max_news=5, max_recommendations=5, max_upgrades=5) - Comprehensive ticker report with essential field filtering and configurable limits for news, analyst recommendations, and upgrades/downgrades
  • get_options(ticker_symbol, num_options=10, start_date, end_date, strike_lower, strike_upper, option_type) - Options data with advanced filtering by date range (YYYY-MM-DD), strike price bounds, and option type (C=calls, P=puts)
  • get_price_history(ticker, period="1mo") - Historical OHLCV data with intelligent interval selection: daily intervals for periods ≤1y, monthly intervals for periods ≥2y to optimize data volume
  • get_financial_statements(ticker, statement_type="income", frequency="quarterly", max_periods=8) - Financial statements (income/balance/cash) with period limiting for context optimization
  • get_institutional_holders(ticker, top_n=20) - Major institutional and mutual fund holders data
  • get_earnings_history(ticker, max_entries=8) - Historical earnings data with configurable entry limits
  • get_insider_trades(ticker, max_trades=20) - Recent insider trading activity with configurable trade limits
  • get_earnings_calendar(start=None, end=None, limit=100) - Upcoming earnings announcements with optional date filtering (YYYY-MM-DD format). Requires Playwright dependency.

Market Sentiment

  • get_cnn_fear_greed_index(days=0, indicators=None) - CNN Fear & Greed Index with support for up to 30 days of historical data and selective indicator filtering. Available indicators: fear_and_greed, fear_and_greed_historical, put_call_options, market_volatility_vix, market_volatility_vix_50, junk_bond_demand, safe_haven_demand
  • get_crypto_fear_greed_index(days=7) - Crypto Fear & Greed Index with configurable historical data period
  • get_google_trends(keywords, period_days=7) - Google Trends relative search interest for market-related keywords. Requires a list of keywords to track (e.g., ["stock market crash", "bull market", "recession", "inflation"]). Returns relative search interest scores that can be used as sentiment indicators.

Technical Analysis

  • calculate_technical_indicator(ticker, indicator, period="1y", timeperiod=14, ...) - Calculate technical indicators (SMA, EMA, RSI, MACD, BBANDS) with configurable parameters and result limiting. Returns time-aligned data with price history and indicator values. Requires TA-Lib library.

Usage with MCP Clients

Add to your claude_desktop_config.json:

{
  "mcpServers": {
    "investor": {
      "command": "uvx",
      "args": ["investor-agent"]
    }
  }
}

Debugging

npx @modelcontextprotocol/inspector uvx investor-agent

Log locations:

  • macOS: ~/Library/Logs/Claude/mcp*.log
  • Windows: %APPDATA%\Claude\logs\mcp*.log

License

MIT License. See LICENSE file for details.

investor-agent MCP Server | Documentation & Integration | Archestra