Stock Analysis
An MCP server for stock analysis, offering tools for chip distribution, pattern analysis, trend reversal detection, and market scanning.
Stock Analysis MCP Server
This is a Model Context Protocol (MCP) server that provides stock analysis tools for Claude Desktop. The server integrates existing stock analysis features, including chip distribution analysis, pattern analysis, trend reversal detection, and market scanning capabilities.
- Stock data query: Yahoo Finance
- Company fundamental data query: Requires FMP API_KEY (https://site.financialmodelingprep.com/)
Features
- Fully compatible with Claude Desktop's MCP interface
- Provides various stock analysis tools:
get-stock-analysis: Analyze specific stockscompany-fundamental: Query company fundamental datastart-bull-bear-scan: Scan the market for bullish and bearish signals (asynchronous task)start-strong-signal-scan: Scan the market for strong momentum stocks (asynchronous task)start-hot-stock-scan: Scan the market for top trending stocks (asynchronous task)get-task-status: Query the status and results of asynchronous tasksmarket-performance: Today's market performance, query stocks with biggest gains/losses and highest volume
- Support for long-running asynchronous analysis tasks
- Integration of comprehensive stock analysis functions
- Generation of detailed trading plan reports
Installation and Configuration
Prerequisites
- Node.js >= 16.0.0
- npm >= 7.0.0
- Claude Desktop
Local Installation and Running
-
Clone the repository:
git clone https://github.com/yourusername/claude-stock-mcp.git cd claude-stock-mcp -
Install dependencies:
npm install -
Test the server in development mode:
npm run devOr use MCP Inspector:
npm run inspect -
Build the project:
npm run build -
Start the server:
npm start
Configure Claude Desktop
-
Create or edit the Claude Desktop configuration file:
# macOS open -a "TextEdit" ~/Library/Application\ Support/Claude/claude_desktop_config.json -
Add the server configuration:
{ "mcpServers": { "stock-analysis": { "command": "npx", "args": [ "@gabriel3615/claude-stock-analysis-mcp@latest" ], "env": { "FMP_API_KEY": "KEY_HERE", "APLPVANTAGE_API_KEY": "KEY_HERE" } } } }Note: You must use absolute paths and replace "yourusername" with your actual username.
-
Save the configuration file and restart Claude Desktop.
Usage
Once the server is configured, you can access the stock analysis features in Claude Desktop using the following approaches:
Analyze Stocks
Example questions:
- "Please analyze Apple's stock performance"
- "I want to understand the trading signals for Tesla stock (TSLA)"
- "Help me analyze entry points and stop-loss levels for NVDA"
Claude will use the get-stock-analysis tool to analyze specific stocks.
Using Asynchronous Market Scanning Features
Example questions:
- "Please scan the market for bullish signal stocks currently at support levels"
- "Help me find the strongest momentum stocks in the market"
- "Scan and list recent hot stocks"
Claude will use the appropriate asynchronous task tools, such as start-bull-bear-scan, and return a task ID. You can use this ID to query task status and results.
How to use asynchronous tasks:
- Start an asynchronous scan task and get a task ID
- Use
get-task-statusto check the task status - When the task is complete, retrieve the analysis results
This asynchronous approach can handle complex market analyses that run for an extended period, avoiding request timeout issues.
Development Testing
fastmcp provides two convenient ways to test:
-
Using command line mode:
npm run dev -
Using web interface:
npm run inspect
These commands will start the respective test environments, allowing you to interact directly with the MCP server without requiring Claude Desktop.
Project Structure
claude-stock-mcp/
├── src/
│ ├── index.ts # MCP server main file
│ ├── analysis/ # Stock analysis related code
│ │ ├── IntegratedAnalysis.ts
│ │ ├── IntegratedAnalysisTypes.ts
│ │ ├── chip/ # Chip distribution analysis
│ │ ├── patterns/ # Pattern analysis
│ │ └── trendReversal/ # Trend reversal analysis
│ ├── finance/ # Financial data related
│ │ ├── Conditions.ts
│ │ ├── Evaluator.ts
│ │ ├── FMPQuery.ts # Financial Modeling Prep API query
│ │ ├── MarketQuery.ts # Market data query
│ │ └── __tests__/ # Test files
│ ├── strategy/ # Strategy analysis
│ │ ├── BreakoutDetector.ts
│ │ ├── BullOrBearDetector.ts
│ │ └── StrategyAnalysisAgent.ts
│ ├── types.ts # Type definitions
│ ├── config.ts # Configuration file
│ └── util/ # Utility functions
│ ├── TaskManager.ts # Asynchronous task management
│ ├── Logger.ts # Log handling
│ └── util.ts # Common utility functions
├── dist/ # Compiled output
├── logs/ # Log file directory
├── package.json
└── tsconfig.json
Logging System
To avoid console output interfering with Claude Desktop, the project uses a custom logging system:
- All console outputs are redirected to log files
- Log files are located in the
logs/directory - Silent mode is enabled in the Claude Desktop environment, preventing all console output
License
MIT
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