Metadata-Version: 2.4
Name: ez-mcp-toolbox
Version: 1.1.0
Summary: Utilities for creating and debugging MCP tools
Author-email: Opik Team <support@comet.com>
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Keywords: opik,mcp,model-context-protocol,llm,observability,debugging
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Dynamic: license-file

# EZ MCP Toolbox

*A Comet ML Open Source Project*

This Python toolbox contains three command-line easy to use utilities:

1. `ez-mcp-server` - turns a file of Python functions into a MCP server
2. `ez-mcp-chatbot` - interactively debug MCP servers, with traces logged to [Opik](https://www.comet.com/site/products/opik/)
3. `ez-mcp-eval` - evaluate LLM applications using Opik's evaluation framework

## Why?

The `ez-mcp-server` allows a quick way to examine tools, signatures, descriptions, latency, and return values. Combined with the chatbot, you can create a fast workflow to interate on your MCP tools.

The `ez-mcp-chatbot` allows a quick method to examine and debug LLM and MCP tool interactions, with observability available through [Opik](https://github.com/comet-ml/opik). Although the [Opik Playground](https://www.comet.com/docs/opik/opik-university/prompt-engineering/prompt-playground) gives you the ability to test your prompts on datasets, do A/B testing, and more, this chatbot gives you a command-line interaction, debugging tools, combined with Opik observability.

## Installation

```
pip install ez-mcp-toolbox --upgrade
```

## Quick start

### Interactive Chat with MCP Tools
```
ez-mcp-chatbot
```

That will start a `ez-mcp-server` (using example tools below) and the `ez-mcp-chatbot` configured to use those tools.

### Evaluate LLM Applications
```
ez-mcp-eval --prompt "Answer the question" --dataset "my-dataset" --metric "Hallucination"
```

This will evaluate your LLM application using Opik's evaluation framework with your dataset and chosen metrics.

### Customize the chatbot

You can customize the chatbot's behavior with a custom system prompt:

```bash
# Use a custom system prompt
ez-mcp-chatbot --system-prompt "You are a helpful coding assistant"

# Create a default configuration
ez-mcp-chatbot --init
```

Example dialog:

![ez-mcp-video](https://github.com/user-attachments/assets/296d7084-becd-467c-878c-16daec714b65)

This interaction of the LLM with the MCP tools will be logged, and available for examination and debugging in Opik:

<img width="800" alt="chatbot interaction as logged to opik" src="https://github.com/user-attachments/assets/3ad0d79a-7f99-4211-aede-5e0cd81d80c3" />

The rest of this file describes these three commands.

## ez-mcp-server

A command-line utility for turning a regular file of Python functions or classes into a full-fledged MCP server.

### Example

Take an existing Python file of functions, such as this file, `my_tools.py`:

```python
# my_tools.py
def add_numbers(a: float, b: float) -> float:
    """
    Add two numbers together.
    
    Args:
        a: First number to add
        b: Second number to add
        
    Returns:
        The sum of a and b
    """
    return a + b

def greet_user(name: str) -> str:
    """
    Greet a user with a welcoming message.
    
    Args:
        name: The name of the person to greet
        
    Returns:
        A personalized greeting message
    """
    return f"Welcome to ez-mcp-server, {name}!"
```

Then run the server with your custom tools:

```bash
ez-mcp-server my_tools.py
```

The server will automatically:
- Load all functions from your file (no ez_mcp_toolbox imports required)
- Convert them to MCP tools
- Generate JSON schemas from your function signatures
- Use your docstrings as tool descriptions

Note: if you just launch the server, it will wait for stdio input. This is designed
to run from inside a system that will dynamically start the server (see below).

### Command-line Options

```
ez-mcp-server [-h] [--transport {stdio,sse}] [--host HOST] [--port PORT] [tools_file]
```

Positional arguments:
  * `tools_file` - Path to the tools file containing functions to serve as MCP tools (default: tools.py)

Options:
  * `-h`, `--help` - show this help message and exit
  * `--transport {stdio,sse}` - Transport method to use (default: `stdio`)
  * `--host HOST` - Host for SSE transport (default: `localhost`)
  * `--port PORT` - Port for SSE transport (default: `8000`)

# Ez MCP Chatbot

A powerful AI chatbot that integrates with Model Context Protocol (MCP) servers and provides observability through Opik tracing. This chatbot can connect to various MCP servers to access specialized tools and capabilities, making it a versatile assistant for different tasks.

## Features

- **MCP Integration**: Connect to multiple Model Context Protocol servers for specialized tool access
- **Opik Observability**: Built-in tracing and observability with Opik integration
- **Interactive Chat Interface**: Rich console interface with command history and auto-completion
- **Python Code Execution**: Execute Python code directly in the chat environment
- **Tool Management**: Discover and use tools from connected MCP servers
- **Configurable**: JSON-based configuration for models and MCP servers
- **Async Support**: Full asynchronous operation for better performance

### MCP Integration

The server implements the full MCP specification:

- **Tool Discovery**: Dynamic tool listing and metadata
- **Tool Execution**: Asynchronous tool calling with proper error handling
- **Protocol Compliance**: Full compatibility with MCP clients
- **Extensibility**: Easy addition of new tools and capabilities

## Example

Create a default configuration file:

```bash
ez-mcp-chatbot --init
```

This creates a `config.json` file with default settings.

Edit `config.json` to specify your model and MCP servers. For example:

```json
{
  "model": "openai/gpt-4o-mini",
  "model_kwargs": {
    "temperature": 0.2
  },
  "mcp_servers": [
    {
      "name": "ez-mcp-server",
      "description": "Ez MCP server from Python files",
      "command": "ez-mcp-server",
      "args": ["/path/to/my_tools.py"]
    }
  ]
}
```

Supported model formats:

- `openai/gpt-4o-mini`
- `anthropic/claude-3-sonnet`
- `google/gemini-pro`
- And many more through LiteLLM

### Basic Commands

Inside the `ez-mcp-chatbot`, you can have a normal LLM conversation.

In addition, you have access to the following meta-commands:

- `/clear` - Clear the conversation history
- `/help` - Show available commands
- `/debug on` or `/debug off` to toggle debug output
- `/show tools` - to list all available tools
- `/show tools SERVER` - to list tools for a specific server
- `/run SERVER.TOOL` - to execute a tool
- `! python_code` - to execute Python code (e.g., '! print(2+2)')
- `quit` or `exit` - Exit the chatbot


### Python Code Execution

Execute Python code by prefixing with `!`:

```
! print(self.messages)
! import math
! math.sqrt(16)
```

### Tool Usage

The chatbot automatically discovers and uses tools from connected MCP servers. Simply ask questions that require tool usage, and the chatbot will automatically call the appropriate tools.

## System Prompts

The chatbot uses a system prompt to define its behavior and personality. You can customize this using the `--system-prompt` command line option.

### Default System Prompt

By default, the chatbot uses this system prompt:

```
You are a helpful AI system for answering questions that can be answered
with any of the available tools.
```

### Custom System Prompts

You can override the default system prompt to customize the chatbot's behavior:

```bash
# Make it a coding assistant
ez-mcp-chatbot --system-prompt "You are an expert Python developer who helps with coding tasks."

# Make it a data analyst
ez-mcp-chatbot --system-prompt "You are a data scientist who specializes in analyzing datasets and creating visualizations."

# Make it more conversational
ez-mcp-chatbot --system-prompt "You are a friendly AI assistant who loves to help users with their questions and tasks."
```

The system prompt affects how the chatbot:
- Interprets user requests
- Decides which tools to use
- Structures its responses
- Maintains conversation context

## Opik Integration

The chatbot includes built-in Opik observability integration:

### Opik Modes

For the command-line flag `--opik`:

- `hosted` (default): Use hosted Opik service
- `local`: Use local Opik instance
- `disabled`: Disable Opik tracing

### Configure Opik

Set environment variables for Opik:

```bash
# For hosted mode
export OPIK_API_KEY=your_opik_api_key

# For local mode
export OPIK_LOCAL_URL=http://localhost:8080
```

### Command Line Options

```bash
# Use hosted Opik (default)
ez-mcp-chatbot --opik hosted

# Use local Opik
ez-mcp-chatbot --opik local

# Disable Opik
ez-mcp-chatbot --opik disabled

# Use custom system prompt
ez-mcp-chatbot --system-prompt "You are a helpful coding assistant"

# Combine options
ez-mcp-chatbot --system-prompt "You are a data analysis expert" --opik local --debug
```

#### Available Options

- `--opik {local,hosted,disabled}` - Opik tracing mode (default: hosted)
- `--system-prompt TEXT` - Custom system prompt for the chatbot (overrides default)
- `--debug` - Enable debug output during processing
- `--init` - Create a default config.json file and exit
- `config_path` - Path to the configuration file (default: config.json)

## ez-mcp-eval

A command-line utility for evaluating LLM applications using Opik's evaluation framework. This tool provides a simple interface to run evaluations on datasets with various metrics, enabling you to measure and improve your LLM application's performance.

### Features

- **Dataset Evaluation**: Run evaluations on your datasets using Opik's evaluation framework
- **Multiple Metrics**: Support for various evaluation metrics (Hallucination, LevenshteinRatio, etc.)
- **Opik Integration**: Full integration with Opik for observability and tracking
- **Flexible Configuration**: Customizable prompts, models, and evaluation parameters
- **Rich Output**: Beautiful console output with progress tracking and results display

### Basic Usage

```bash
ez-mcp-eval --prompt "Answer the question" --dataset "my-dataset" --metric "Hallucination"
```

### Command-line Options

```
ez-mcp-eval [-h] --prompt PROMPT --dataset DATASET --metric METRIC 
            [--experiment-name EXPERIMENT_NAME] [--opik {local,hosted,disabled}] 
            [--debug] [--input INPUT] [--output OUTPUT] [--list-metrics] 
            [--model MODEL] [--model-kwargs MODEL_KWARGS]
```

#### Required Arguments

- `--prompt PROMPT` - The prompt to use for evaluation (can be a prompt name in Opik or direct text)
- `--dataset DATASET` - Name of the dataset to evaluate on (must exist in Opik)
- `--metric METRIC` - Name of the metric(s) to use for evaluation (comma-separated for multiple)

#### Optional Arguments

- `--experiment-name EXPERIMENT_NAME` - Name for the evaluation experiment (default: ez-mcp-evaluation)
- `--opik {local,hosted,disabled}` - Opik tracing mode (default: hosted)
- `--debug` - Enable debug output during processing
- `--input INPUT` - Input field name in the dataset (default: input)
- `--output OUTPUT` - Output field mapping in format reference=DATASET_FIELD (default: reference=answer)
- `--list-metrics` - List all available metrics and exit
- `--model MODEL` - LLM model to use for evaluation (default: gpt-3.5-turbo)
- `--model-kwargs MODEL_KWARGS` - JSON string of additional keyword arguments for the LLM model

### Examples

#### Basic Evaluation
```bash
# Simple evaluation with Hallucination metric
ez-mcp-eval --prompt "Answer the question" --dataset "qa-dataset" --metric "Hallucination"
```

#### Multiple Metrics
```bash
# Evaluate with multiple metrics
ez-mcp-eval --prompt "Summarize this text" --dataset "summarization-dataset" --metric "Hallucination,LevenshteinRatio"
```

#### Custom Experiment Name
```bash
# Use a custom experiment name
ez-mcp-eval --prompt "Translate to French" --dataset "translation-dataset" --metric "LevenshteinRatio" --experiment-name "french-translation-test"
```

#### Custom Model and Parameters
```bash
# Use a different model with custom parameters
ez-mcp-eval --prompt "Answer the question" --dataset "qa-dataset" --metric "LevenshteinRatio" --model "gpt-4" --model-kwargs '{"temperature": 0.7, "max_tokens": 1000}'
```

#### Custom Field Mappings
```bash
# Custom input and output field mappings
ez-mcp-eval --prompt "Answer the question" --dataset "qa-dataset" --metric "LevenshteinRatio" --input "question" --output "reference=answer"
```

#### List Available Metrics
```bash
# See all available metrics
ez-mcp-eval --list-metrics
```

#### Debug Mode
```bash
# Enable debug output for troubleshooting
ez-mcp-eval --prompt "Answer the question" --dataset "qa-dataset" --metric "Hallucination" --debug
```

### Opik Integration

The `ez-mcp-eval` tool integrates seamlessly with Opik for:

- **Dataset Management**: Load datasets from your Opik workspace
- **Prompt Management**: Use prompts stored in Opik or provide direct text
- **Experiment Tracking**: Track evaluation experiments with custom names
- **Observability**: Full tracing of LLM calls and evaluation processes

### Environment Setup

For Opik integration, set up your environment:

```bash
# For hosted Opik
export OPIK_API_KEY=your_opik_api_key

# For local Opik
export OPIK_LOCAL_URL=http://localhost:8080
```

### Available Metrics

The tool supports all metrics available in Opik's evaluation framework. Use `--list-metrics` to see the complete list, which includes:

- **Hallucination**: Detect hallucinated content in responses
- **LevenshteinRatio**: Measure text similarity using Levenshtein distance
- **ExactMatch**: Check for exact string matches
- **F1Score**: Calculate F1 score for classification tasks
- And many more...

### Output

The tool provides rich console output including:

- Progress tracking during evaluation
- Dataset information and statistics
- Evaluation results and metrics
- Error handling and debugging information
- Integration with Opik's experiment tracking

## License

This project is licensed under the Apache License 2.0 - see the [LICENSE](LICENSE) file for details.

## Support

- **Documentation**: [GitHub Repository](https://github.com/comet-ml/ez-mcp-toolbox)
- **Issues**: [GitHub Issues](https://github.com/comet-ml/ez-mcp-toolbox/issues)

## Acknowledgments

- Built with [Model Context Protocol (MCP)](https://modelcontextprotocol.io/)
- Powered by [LiteLLM](https://github.com/BerriAI/litellm)
- Observability by [Opik](https://opik.ai/)
- Rich console interface by [Rich](https://github.com/Textualize/rich)

## Development

1. Fork the repository
2. Create a feature branch: `git checkout -b feature-name`
3. Make your changes
4. Run tests: `pytest`
5. Format code: `black . && isort .`
6. Commit your changes: `git commit -m "Add feature"`
7. Push to the branch: `git push origin feature-name`
8. Submit a pull request

### Prerequisites

- Python 3.8 or higher
- OpenAI, Anthropic, or other LLM provider API key (for chatbot functionality)

### Install from Source

```bash
# Clone the repository
git clone https://github.com/comet-ml/ez-mcp-toolbox.git
cd ez-mcp-toolbox

# Install in development mode
pip install -e .

# Or install with development dependencies
pip install -e ".[dev]"
```

### Manually Install Dependencies

```bash
pip install -r requirements.txt
```
