OpenAI MCP Server
An MCP server for integrating with the OpenAI API.
OpenAI MCP Server
Query OpenAI models directly from Claude using MCP protocol. This fork adds support for o3-mini and gpt-4o-mini models with improved message handling.
Cline Auto Install
Set up the MCP server from https://github.com/thadius83/mcp-server-openai.
Use "github.com/thadius83/mcp-server-openai" as the server name in cline_mcp_settings.json.
Analyse the readme and instructions below. Do not create new files in the repo, utilise the findings from pyproject.toml, src/mcp_server_openai/server.py, src/mcp_server_openai/llm.py
Once installed, demonstrate the server's capabilities by using one of its tools.
Installation Steps:
# Clone the repository
git clone https://github.com/thadius83/mcp-server-openai
cd mcp-server-openai
# Install the package
pip install .`
MCP Settings Configuration: The cline_mcp_settings.json should be configured with:
Correct server name format: "github.com/thadius83/mcp-server-openai"
Python module path structure for the server
PYTHONPATH environment variable pointing to the project directory
OpenAI API key passed as a command line argument
Example configuration:
{
"mcpServers": {
"github.com/thadius83/mcp-server-openai": {
"command": "python",
"args": [
"-m",
"src.mcp_server_openai.server",
"--openai-api-key",
"your-openai-api-key"
],
"env": {
"PYTHONPATH": "/path/to/mcp-server-openai"
},
"disabled": false,
"autoApprove": []
}
}
}
Requirements:
Python >= 3.10
OpenAI API key
Dependencies installed via pip (mcp>=0.9.1, openai>=1.0.0, click>=8.0.0, pytest-asyncio)
Available Tools:
Tool Name: ask-openai
Description: Ask OpenAI assistant models a direct question
Models Available:
o3-mini (default)
gpt-4o-mini
Input Schema:
{
"query": "Your question here",
"model": "o3-mini" // optional, defaults to o3-mini
}
Features
- Direct integration with OpenAI's API
- Support for multiple models:
- o3-mini (default): Optimized for concise responses
- gpt-4o-mini: Enhanced model for more detailed responses
- Configurable message formatting
- Error handling and logging
- Simple interface through MCP protocol
Installation
Installing via Smithery
To install OpenAI MCP Server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @thadius83/mcp-server-openai --client claude
Manual Installation
- Clone the Repository:
git clone https://github.com/thadius83/mcp-server-openai.git
cd mcp-server-openai
# Install dependencies
pip install -e .
- Configure Claude Desktop:
Add this server to your existing MCP settings configuration. Note: Keep any existing MCP servers in the configuration - just add this one alongside them.
Location:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%/Claude/claude_desktop_config.json - Linux: Check your home directory (
~/) for the default MCP settings location
{
"mcpServers": {
// ... keep your existing MCP servers here ...
"github.com/thadius83/mcp-server-openai": {
"command": "python",
"args": ["-m", "src.mcp_server_openai.server", "--openai-api-key", "your-key-here"],
"env": {
"PYTHONPATH": "/path/to/your/mcp-server-openai"
}
}
}
}
-
Get an OpenAI API Key:
- Visit OpenAI's website
- Create an account or log in
- Navigate to API settings
- Generate a new API key
- Add the key to your configuration file as shown above
-
Restart Claude:
- After updating the configuration, restart Claude for the changes to take effect
Usage
The server provides a single tool ask-openai that can be used to query OpenAI models. You can use it directly in Claude with the use_mcp_tool command:
<use_mcp_tool>
<server_name>github.com/thadius83/mcp-server-openai</server_name>
<tool_name>ask-openai</tool_name>
<arguments>
{
"query": "What are the key features of Python's asyncio library?",
"model": "o3-mini" // Optional, defaults to o3-mini
}
</arguments>
</use_mcp_tool>
Model Comparison
-
o3-mini (default)
- Best for: Quick, concise answers
- Style: Direct and efficient
- Example response:
Python's asyncio provides non-blocking, collaborative multitasking. Key features: 1. Event Loop – Schedules and runs asynchronous tasks 2. Coroutines – Functions you can pause and resume 3. Tasks – Run coroutines concurrently 4. Futures – Represent future results 5. Non-blocking I/O – Efficient handling of I/O operations
-
gpt-4o-mini
- Best for: More comprehensive explanations
- Style: Detailed and thorough
- Example response:
Python's asyncio library provides a comprehensive framework for asynchronous programming. It includes an event loop for managing tasks, coroutines for writing non-blocking code, tasks for concurrent execution, futures for handling future results, and efficient I/O operations. The library also provides synchronization primitives and high-level APIs for network programming.
Response Format
The tool returns responses in a standardized format:
{
"content": [
{
"type": "text",
"text": "Response from the model..."
}
]
}
Troubleshooting
-
Server Not Found:
- Verify the PYTHONPATH in your configuration points to the correct directory
- Ensure Python and pip are properly installed
- Try running
python -m src.mcp_server_openai.server --openai-api-key your-key-heredirectly to check for errors
-
Authentication Errors:
- Check that your OpenAI API key is valid
- Ensure the key is correctly passed in the args array
- Verify there are no extra spaces or characters in the key
-
Model Errors:
- Confirm you're using supported models (o3-mini or gpt-4o-mini)
- Check your query isn't empty
- Ensure you're not exceeding token limits
Development
# Install development dependencies
pip install -e ".[dev]"
# Run tests
pytest -v test_openai.py -s
Changes from Original
- Added support for o3-mini and gpt-4o-mini models
- Improved message formatting
- Removed temperature parameter for better compatibility
- Updated documentation with detailed usage examples
- Added model comparison and response examples
- Enhanced installation instructions
- Added troubleshooting guide
License
MIT License
İlgili Sunucular
HashiCorp Vault
Securely manage secrets and policies in HashiCorp Vault through an MCP interface.
SharePoint MCP Server
Integrates with Microsoft SharePoint, allowing interaction with documents, folders, and other SharePoint resources.
Freshservice
Interact with Freshservice modules for IT service management operations.
MCP Hive
MCP-Hive is a gateway to commerical-grade MCP Servers which can be only be accessed via paid subscriptions or pay-as-you-go access. AI applications pay for access to trusted and well-known industry data providers.
Salesforce MCP Server
Provides AI agents with secure access to Salesforce data and operations.
Agent-Memo.AI
Cloud memory for Claude Code, Cursor, and any MCP-compatible agent. Context persists across sessions, projects, and teams.
CData LinkedIn Ads
MCP Server for LinkedIn Ads, powered by the CData JDBC Driver. Requires a separate license and configuration.
GetYourGuide
Integrate with the GetYourGuide Partner API to access travel activities and experiences.
Google Ad Manager MCP Server
A read-only MCP server for querying live Google Ad Manager data, powered by CData.
Maestro MCP Server
Interact with the Bitcoin blockchain using the Maestro API to explore blocks, transactions, and addresses.