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AI Fuzz Testing MCP Server

AI Fuzz Testing MCP Server

A Model Context Protocol (MCP) server for LLM fuzzing and testing, providing secure access to multiple AI providers through a standardized interface.

Overview

This MCP server enables:

  • Multi-provider AI access: Support for Cerebras and Anthropic APIs

  • Comprehensive testing: Full parameter support for fuzzing and testing LLMs

  • Dynamic documentation: Real-time SDK documentation access

  • Multiple transport modes: stdio, HTTP, and Server-Sent Events (SSE)

  • Secure configuration: Environment-based API key management

Related MCP server: RL-MCP

Features

AI Provider Support

  • Cerebras Cloud SDK: Complete chat completion API with streaming support

  • Anthropic API: Full Claude model access with message completions

  • Unified interface: Consistent API across all providers

  • Model enumeration: List available models for each provider

MCP Tools

  • chat_completion: Create chat completions with any supported provider

  • get_models: List available models for a provider

  • get_client_info: Get client configuration and status

  • list_providers: Show all available providers and their status

Documentation Resources

  • docs://{provider}/sdk/{path}: Dynamic SDK documentation browser

  • Real-time introspection of provider SDKs

  • Hierarchical navigation through SDK components

Installation

Prerequisites

  • Python 3.11+

  • Poetry (recommended) or pip

Install Dependencies

Using Poetry:

poetry install

Using pip:

pip install -e .

API Key Configuration

Copy the example environment file and add your API keys:

cp .env.example .env

Edit .env and add your API keys:

ANTHROPIC_API_KEY=your_anthropic_api_key_here
CEREBRAS_API_KEY=your_cerebras_api_key_here

Usage

MCP Client Integration

The server supports multiple transport modes for different MCP client requirements:

stdio Mode (Default)

For local MCP clients:

python src/main.py
# or
mcp dev src/main.py

HTTP Mode

For web-based or remote clients:

python src/main.py --transport http --port 8000
# Test with:
mcp dev src/main.py

Server-Sent Events (SSE) Mode

For real-time streaming applications:

python src/main.py --transport sse --port 8000
# Test with:
mcp dev src.main.py

Command Line Options

python src/main.py [OPTIONS]

Options:
  -t, --transport {stdio,sse,http}  Transport mode (default: stdio)
  -p, --port PORT                   Port for HTTP/SSE modes (default: 8000)
  --host HOST                       Host address (default: localhost)
  --log-level {DEBUG,INFO,WARNING,ERROR}  Logging level (default: INFO)
  --cors                            Enable CORS for HTTP/SSE modes
  --timeout SECONDS                 Server timeout for testing

Tool Usage Examples

Chat Completion

{
  "name": "chat_completion",
  "arguments": {
    "provider": "cerebras",
    "kwargs": {
      "messages": [{"role": "user", "content": "Hello!"}],
      "model": "llama3.1-8b",
      "stream": true,
      "temperature": 0.7,
      "max_tokens": 100
    }
  }
}

List Models

{
  "name": "get_models", 
  "arguments": {
    "provider": "anthropic"
  }
}

Provider Status

{
  "name": "list_providers",
  "arguments": {}
}

Resource Access

Browse SDK documentation dynamically:

  • docs://cerebras/sdk/ - List all Cerebras SDK components

  • docs://anthropic/sdk/Anthropic - Anthropic client documentation

  • docs://cerebras/sdk/chat.completions - Chat completions module docs

Development

Project Structure

src/
├── main.py                     # MCP server entry point
└── basic_mcp_example/
    ├── __init__.py
    ├── base_client.py          # Abstract base client
    ├── cerebras.py             # Cerebras implementation
    └── anthropic.py            # Anthropic implementation

Adding New Providers

  1. Create a new client module in src/basic_mcp_example/

  2. Implement the BaseClient abstract class

  3. Add provider instantiation in main.py

  4. Update the get_client_by_provider function

Testing

Run the development server:

mcp dev src/main.py

Test specific transport modes:

# Test HTTP mode
python src/main.py --transport http --port 8000 &
mcp dev src.main.py

# Test SSE mode  
python src/main.py --transport sse --port 8001 &
mcp dev src.main.py

Security Considerations

  • API keys are loaded from environment variables only

  • No API keys are logged or exposed in responses

  • Client configurations validate required credentials

  • Transport modes support secure connection options

Dependencies

Core dependencies:

  • mcp: Model Context Protocol implementation

  • python-dotenv: Environment variable management

  • cerebras_cloud_sdk: Cerebras AI provider

  • anthropic: Anthropic AI provider

Optional dependencies for HTTP/SSE modes:

  • uvicorn: ASGI server

  • starlette: Web framework

Contributing

This is an example project. For production use, consider:

  • Enhanced error handling and logging

  • Rate limiting and quota management

  • Authentication and authorization

  • Monitoring and observability

  • Extended provider support

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