openai-agents-sdk-mcp

openai-agents-sdk-mcp

Provides MCP tools to list and search OpenAI Agents SDK documentation, enabling LLMs to retrieve documentation topics and content via natural language queries.

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README

OpenAI Agents SDK MCP Tool

A Model Context Protocol (MCP) server that provides documentation for the OpenAI Agents SDK by extracting and indexing content from the official documentation website: https://openai.github.io/openai-agents-python/

This package can be installed as a Python library and used with any MCP-compatible LLM client (Claude Desktop, VS Code, Cursor, etc.).

Installation

From PyPI (Recommended)

pip install openai-agents-sdk-mcp

From Source

git clone https://github.com/gavinz0228/openai-agents-sdk-mcp.git
cd openai-agents-sdk-mcp
pip install -e .

See INSTALLATION.md for detailed installation instructions.

Overview

This project provides both a standalone CLI tool and an MCP server that allows LLMs to access and query the OpenAI Agents SDK documentation intelligently.

Quick Start (MCP Server)

  1. Install the package:

    pip install openai-agents-sdk-mcp
    
  2. Set up API key:

    export OPENAI_API_KEY="sk-your-api-key-here"
    
  3. Configure your MCP client (e.g., Claude Desktop):

    {
      "mcpServers": {
        "openai-agents-sdk-docs": {
          "command": "openai-agents-sdk-mcp",
          "env": {
            "OPENAI_API_KEY": "sk-your-api-key-here"
          }
        }
      }
    }
    
  4. Start using it - Ask your LLM:

    • "List all OpenAI Agents SDK documentation topics"
    • "Get documentation for handoffs"
    • "How do I use streaming in OpenAI Agents?"

See INSTALLATION.md and MCP_CONFIGURATION.md for detailed setup instructions.

Features

1. MCP Server (Primary Interface)

Exposes two tools for LLMs:

  • list_documentation_topics: Get a complete list of all available documentation topics with their URLs
  • get_documentation: Search for and retrieve documentation using natural language queries

2. Automatic Documentation Indexing

  • Fetches and parses the OpenAI Agents SDK documentation website
  • Extracts all navigation links and topics
  • Creates a structured JSON map of topics to URLs
  • Saves to docs_index.json for quick access

2. Smart Index Management

The tool automatically manages the documentation index with intelligent caching:

  • Missing Index Detection: Automatically fetches fresh index if docs_index.json doesn't exist
  • Staleness Check: Refreshes index if older than 1 day (configurable)
  • Link Validation: Verifies all documentation links are working
  • Broken Link Recovery: Automatically re-fetches index if any links are broken

3. AI-Powered Feature Search

Uses OpenAI's GPT-4o-mini to intelligently match user queries to documentation:

  • Accepts natural language queries (e.g., "how do I trace my agent")
  • Finds the closest matching documentation topic
  • Fetches and displays relevant documentation content
  • Works with fuzzy matching and conversational queries

Installation

  1. Clone the repository:
git clone https://github.com/gavinz0228/openai-agents-sdk-mcp.git
cd openai-agents-sdk-mcp
  1. Install the package:
pip install -e .
  1. Configure API key: Create a .env file in your working directory:
OPENAI_API_KEY=sk-your-api-key-here

Or set as environment variable:

export OPENAI_API_KEY="sk-your-api-key-here"

See INSTALLATION.md for more installation options.

Usage

MCP Server (Recommended)

The MCP server allows LLMs to access the documentation through standardized tool calls.

Start the Server

openai-agents-sdk-mcp

Or if running from source:

python -m openai_agents_sdk_mcp.server

Configure MCP Client

Add to your MCP client configuration (e.g., Claude Desktop's config):

{
  "mcpServers": {
    "openai-agents-sdk-docs": {
      "command": "openai-agents-sdk-mcp"
    }
  }
}

Or use the absolute path if installed in a virtual environment:

{
  "mcpServers": {
    "openai-agents-sdk-docs": {
      "command": "/path/to/.venv/bin/openai-agents-sdk-mcp"
    }
  }
}

Available MCP Tools

list_documentation_topics

  • Lists all available documentation topics
  • Optional parameter: force_refresh (boolean) - Force refresh the index

Example:

{
  "name": "list_documentation_topics",
  "arguments": {
    "force_refresh": false
  }
}

get_documentation

  • Search and retrieve documentation for a specific feature
  • Parameters:
    • query (string, required) - Feature name or natural language question
    • include_content (boolean, optional) - Whether to include full content (default: true)

Example:

{
  "name": "get_documentation",
  "arguments": {
    "query": "handoffs",
    "include_content": true
  }
}

Test the Server

python test_mcp.py

Command Line Interface

Use the CLI tool for quick documentation queries:

# List all documentation topics
openai-agents-docs

# Search for specific documentation
openai-agents-docs "handoffs"
openai-agents-docs "streaming"
openai-agents-docs "how to use guardrails"

As a Python Library

from openai_agents_sdk_mcp import (
    load_or_refresh_index,
    get_documentation_for_feature
)

# Load documentation index
doc_map = load_or_refresh_index()
print(f"Found {len(doc_map)} topics")

# Find documentation for a feature
topic, url = get_documentation_for_feature("handoffs")
if topic:
    print(f"Topic: {topic}")
    print(f"URL: {url}")

Standalone CLI Tool (Legacy)

If running from source without installation:

Generate/Refresh Documentation Index

python openai_agents_sdk_mcp.py

This will:

  • Fetch the latest documentation structure
  • Extract all topics and links
  • Save to docs_index.json
  • Display all available topics

Search for Documentation

python openai_agents_sdk_mcp.py "feature name or query"

Examples:

# Simple feature name
python openai_agents_sdk_mcp.py "handoffs"

# Natural language query
python openai_agents_sdk_mcp.py "how do I stream responses"

# Topic search
python openai_agents_sdk_mcp.py "tracing and debugging"

# Multiple words
python openai_agents_sdk_mcp.py "realtime voice"

The tool will:

  1. Load or refresh the documentation index (if stale)
  2. Use AI to find the best matching topic
  3. Display the matched topic and URL
  4. Fetch and show a preview of the documentation content

How It Works

Index Management

# The index is automatically managed:
# 1. Checks if docs_index.json exists
if not exists:
    fetch_fresh_index()

# 2. Checks if index is older than 1 day
if age > 1_day:
    fetch_fresh_index()

# 3. Validates all links are working
if broken_links_found:
    fetch_fresh_index()

AI-Powered Matching

The tool uses OpenAI's GPT-4o-mini to match user queries to documentation topics:

  1. Loads all available topics from the index
  2. Sends user query + topic list to the LLM
  3. LLM identifies the most relevant topic
  4. Returns the matching topic and URL

This provides intelligent matching even for:

  • Typos and misspellings
  • Natural language questions
  • Partial or fuzzy matches
  • Related concepts

Configuration

Constants (in openai_agents_sdk_mcp.py)

DOCS_INDEX_FILE = "docs_index.json"  # Index file name
INDEX_MAX_AGE_DAYS = 1               # Maximum age before refresh

Environment Variables

  • OPENAI_API_KEY - Required for AI-powered search functionality

Files

  • server.py - MCP server implementation
  • openai_agents_sdk_mcp.py - Core functionality and CLI tool
  • test_mcp.py - Test script for the MCP server
  • mcp_config.json - Example MCP client configuration
  • docs_index.json - Cached documentation index (auto-generated)
  • requirements.txt - Python dependencies
  • .env - Environment variables (create this)
  • .gitignore - Git ignore rules (protects API key)

Dependencies

  • requests - HTTP requests for fetching web pages
  • beautifulsoup4 - HTML parsing
  • lxml - XML/HTML parser
  • openai - OpenAI API client for AI-powered search
  • python-dotenv - Environment variable management
  • mcp - Model Context Protocol SDK

Example Output

Index Generation

Fetching OpenAI Agents SDK documentation index...
Fetching fresh documentation index...
Index refreshed with 80 topics and saved to 'docs_index.json'.

Found 80 documentation topics/features:
...

Feature Search

Searching for documentation on: handoffs

Loaded existing index with 80 topics.
Verifying documentation links...
  ✓ All links are valid
✓ Found matching topic: Handoffs
  URL: https://openai.github.io/openai-agents-python/handoffs/

Fetching documentation content...
================================================================================
Handoffs - OpenAI Agents SDK
...

License

This project is designed to work with the OpenAI Agents SDK documentation. Please refer to OpenAI's terms of service for API usage.

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