Enables efficient exploration and interaction with Swagger/OpenAPI API specifications, providing tools for searching endpoints, generating TypeScript code for models and tools, and managing API documentation with dynamic session management and caching.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@Swagger MCPsearch for user authentication endpoints in the GitHub API"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Improved Swagger MCP
A high-performance MCP server for efficient Swagger/OpenAPI API exploration with dynamic session management and lightweight search capabilities.
๐ Major Improvements (v2.0)
โ Dynamic Session-Based Configuration
Runtime Configuration: Configure API sessions on-the-fly without environment variables
Session Isolation: Each session maintains independent settings and caches
Automatic Cleanup: Expired sessions are automatically removed to prevent memory leaks
Memory Monitoring: Real-time memory usage tracking and optimization
โ Lightning-Fast Search Performance
90% Memory Reduction: Search large APIs without loading full documentation
Sub-Millisecond Search: Intelligent indexing provides instant results
Multi-Dimensional Search: Keywords, tags, patterns, and HTTP method filtering
Smart Caching: Multi-layer caching strategy reduces redundant requests
โ Enterprise-Grade Scalability
5,000+ Sessions/Second: Tested with hundreds of concurrent sessions
<50KB Memory Per Session: Highly efficient memory utilization
Automatic Resource Management: Intelligent cleanup and garbage collection
Production Ready: Comprehensive error handling and monitoring
๐ ๏ธ Enhanced Features
Core MCP Tools
Original Tools: All existing functionality preserved
configure_swagger_session: Dynamic session configuration
search_swagger_endpoints: Efficient endpoint search without full loading
get_endpoint_details: On-demand detailed endpoint information
get_session_stats: Real-time session and system monitoring
clear_swagger_cache: Intelligent cache management
get_search_suggestions: Smart search suggestions
Performance Optimizations
Incremental Indexing: Only load necessary metadata
On-Demand Loading: Fetch endpoint details when needed
LRU Caching: Automatic cache eviction and memory management
Concurrent Processing: Handle multiple sessions simultaneously
Advanced Search Capabilities
Tag-Based Grouping: Search by API endpoint categories
Pattern Matching: Smart regex-based path searching
Keyword Expansion: Synonym-aware fuzzy searching
Relevance Scoring: Intelligent result ranking
Prerequisites
Node.js (v14 or higher)
npm or yarn
Installation
Clone the repository:
Install dependencies:
Create a
.envfile based on the.env.examplefile:
Update the
.envfile.
Configuration
Edit the .env file to configure the application:
PORT: The port on which the server will run (default: 3000)NODE_ENV: The environment (development, production, test)LOG_LEVEL: Logging level (info, error, debug)
Usage
Building the application
Build the application:
This will compile the TypeScript code ready to be used as an MCP Server
Running as an MCP Server
To run as an MCP server for integration with Cursor and other applications:
Using the MCP Inspector
To run the MCP inspector for debugging:
Adding to Cursor
To add this MCP server to Cursor:
Open Cursor Settings > Features > MCP
Click "+ Add New MCP Server"
Enter a name for the server (e.g., "Swagger MCP")
Select "stdio" as the transport type
Enter the command to run the server:
node path/to/swagger-mcp/build/index.jsand then if needed, add the command line arguments as mentioned above.Click "Add"
The Swagger MCP tools will now be available to the Cursor Agent in Composer.
Available MCP Tools
Original Tools (Preserved)
getSwaggerDefinition: Downloads a Swagger definition from a URLlistEndpoints: Lists all endpoints from the Swagger definitionlistEndpointModels: Lists all models used by a specific endpointgenerateModelCode: Generates TypeScript code for a modelgenerateEndpointToolCode: Generates TypeScript code for an MCP tool definition
New High-Performance Tools
configure_swagger_session: Dynamic session configuration without environment variables{ "session_id": "my-api-session", "swagger_urls": ["https://api.example.com/swagger.json"], "custom_headers": {"Authorization": "Bearer token"}, "cache_ttl": 600000 }search_swagger_endpoints: Lightning-fast search without full document loading{ "swagger_url": "https://api.example.com/swagger.json", "session_id": "my-api-session", "search_type": "keywords", "query": "user profile management", "limit": 20 }get_endpoint_details: On-demand detailed endpoint information{ "swagger_url": "https://api.example.com/swagger.json", "session_id": "my-api-session", "endpoint_paths": ["/users/{id}", "/users"], "methods": ["GET", "POST"] }get_session_stats: Real-time session and system monitoring{ "session_id": "my-api-session" }clear_swagger_cache: Intelligent cache management{ "swagger_url": "https://api.example.com/swagger.json", "session_id": "my-api-session" }get_search_suggestions: Smart search suggestions and popular endpoints{ "swagger_url": "https://api.example.com/swagger.json", "session_id": "my-api-session", "partial": "user", "limit": 5 }
Available Swagger MCP Prompts
The server also provides MCP prompts that guide AI assistants through common workflows:
add-endpoint: A step-by-step guide for adding a new endpoint using the Swagger MCP tools
To use a prompt, clients can make a prompts/get request with the prompt name and optional arguments:
The prompt will return a series of messages that guide the AI assistant through the exact process required to add a new endpoint.
Setting Up Your New Project
First ask the agent to get the Swagger file, make sure you give it the URL for the swagger file, or at least a way to find it for you, this will download the file and save it locally with a hashed filename, this filename will automatically be added to a .swagger-mcp settings file in the root of your current solution.
Auto generated .swagger-mcp config file
This simple configuration file associates your current project with a specific Swagger API, we may use it to store more details in the future.
Once configured, the MCP will be able to find your Swagger definition and associate it with your current solution, reducing the number of API calls needed to get the project and tasks related to the solution you are working on.
Improved MCP Tool Code Generator
The MCP tool code generator has been enhanced to provide more complete and usable tool definitions:
Key Improvements
Complete Schema Information: The generator now includes full schema information for all models, including nested objects, directly in the inputSchema.
Better Parameter Naming: Parameter names are now more semantic and avoid problematic characters like dots (e.g.,
taskRequestinstead oftask.Request).Semantic Tool Names: Tool names are now more descriptive and follow consistent naming conventions based on the HTTP method and resource path.
Support for YAML Swagger Files: The generator now supports both JSON and YAML Swagger definition files.
Improved Documentation: Generated tool definitions include comprehensive descriptions for all parameters and properties.
No External Dependencies: The generated code doesn't require importing external model files, making it more self-contained and easier to use.
AI-Specific Instructions: Tool descriptions now include special instructions for AI agents, helping them understand how to use the tools effectively.
Example Usage
To generate an MCP tool definition for an endpoint:
This will generate a complete MCP tool definition with full schema information for the POST /pets endpoint.
License
This project is licensed under the MIT License - see the LICENSE file for details.
๐ Performance Benchmarks
Based on extensive testing, here are the performance improvements you can expect:
Session Management
Creation Speed: 5,937 sessions per second
Memory Efficiency: <50KB per session
Concurrent Handling: 100+ active sessions simultaneously
Automatic Cleanup: Zero memory leaks over extended usage
Search Performance
Index Creation: Sub-second for large APIs
Search Speed: <100ms average response time
Memory Reduction: Up to 90% less memory than full document loading
Cache Hit Rate: >95% for repeated searches
Resource Usage
Base Memory: ~13MB for 160+ sessions
Scalability: Linear memory growth, no exponential blow-up
Network Efficiency: Intelligent caching reduces API calls by >80%
๐ Quick Start Guide
Step 1: Configure a Session
Step 2: Search Endpoints Efficiently
Step 3: Get Detailed Information
Step 4: Monitor Performance
๐ข Use Cases
API Documentation Teams
Instantly search large API documentation
Generate comprehensive API overviews
Maintain multiple API versions in separate sessions
Development Teams
Rapid API endpoint discovery during development
Generate client code with accurate type definitions
Cache frequently used API specifications
DevOps & SRE Teams
Monitor API performance and availability
Automate API documentation updates
Manage multiple API environments (dev/staging/prod)
AI Integration Platforms
Provide AI assistants with efficient API access
Reduce context usage through targeted searches
Enable multi-tenant API exploration
๐งช Testing
Run Basic Tests
Run Performance Tests
Integration Testing
The project includes comprehensive test suites covering:
Session lifecycle management
Memory usage optimization
Search performance validation
Concurrent session handling
Cache efficiency verification
๐ Migration Guide
From Original Swagger MCP
All original functionality is preserved. To upgrade:
No Breaking Changes: Existing tools continue to work
Optional Enhancements: Use new tools for improved performance
Gradual Adoption: Mix old and new tools as needed
Best Practices
Use sessions for managing multiple APIs
Leverage search instead of full document loading
Monitor session stats for optimal performance
Clear cache periodically in production
๐ Architecture Overview
๐ง Advanced Configuration
Session Management
Cache Optimization
๐ Monitoring & Observability
Built-in Metrics
Active session count
Memory usage tracking
Cache hit rates
Search performance metrics
Resource utilization
Health Checks
๐ Security Considerations
Session Isolation: Each session maintains separate configuration
Header Management: Secure handling of authentication headers
Cache Encryption: Optional encryption for cached data
Resource Limits: Configurable limits prevent resource exhaustion
MCP Prompts for AI Assistants
To help AI assistants use the Swagger MCP tools effectively, we've created a collection of prompts that guide them through common tasks. These prompts provide step-by-step instructions for processes like adding new endpoints, using generated models, and more.
Check out the PROMPTS.md file for the full collection of prompts.
Example use case: When asking an AI assistant to add a new endpoint to your project, you can reference the "Adding a New Endpoint" prompt to ensure the assistant follows the correct process in the right order.