arcade-mcp/libs/arcade-mcp-server/docs/examples/01_tools.md
Eric Gustin a11f79b32d
Update arcade-mcp-server docs (#597)
1. Updates docs to prefer `uv run server.py` instead of `arcade mcp` or
`python -m arcade_mcp_server`
2. Found a bug with running stdio servers while updating the docs, so i
snuck that in this PR
2025-10-02 17:16:38 -07:00

131 lines
3.5 KiB
Markdown

# 01 - Tools
Learn how to create tools with different parameter types and how arcade_mcp_server discovers them automatically.
## Running the Example
- **Run (HTTP default)**: `uv run 01_tools.py`
- **Run (stdio for Claude Desktop)**: `uv run 01_tools.py stdio`
## Source Code
```python
--8<-- "docs/examples/01_tools.py"
```
## Creating Tools
### 1. Simple Tools
Basic tools with simple parameter types:
```python
@app.tool
def hello(name: Annotated[str, "Name to greet"]) -> str:
"""Say hello to someone."""
return f"Hello, {name}!"
@app.tool
def add(
a: Annotated[float, "First number"],
b: Annotated[float, "Second number"]
) -> Annotated[float, "Sum of the numbers"]:
"""Add two numbers together."""
return a + b
```
### 2. List Parameters
Working with lists of values:
```python
@app.tool
def calculate_average(
numbers: Annotated[list[float], "List of numbers to average"]
) -> Annotated[float, "Average of all numbers"]:
"""Calculate the average of a list of numbers."""
if not numbers:
return 0.0
return sum(numbers) / len(numbers)
```
### 3. Complex Types with TypedDict
Using TypedDict for structured input and output:
```python
class PersonInfo(TypedDict):
name: str
age: int
email: str
is_active: bool
@tool
def create_user_profile(
person: Annotated[PersonInfo, "Person's information"]
) -> Annotated[str, "Formatted user profile"]:
"""Create a formatted user profile from person information."""
# Implementation here
```
## Managing Tools in MCPApp
With the direct Python approach, you have full control over your tools:
### 1. Defining Tools Directily
Use `@app.tool` to define tools directly on your MCPApp instance:
```python
@app.tool
def my_tool(param: str) -> str:
"""Tool description."""
return f"Processed: {param}"
```
### 2. Importing Tools from Files
You can import tools from other files and add them explicitly:
```python
from my_tools import calculate, process_data
# Add imported tools to the app
app.add_tool(calculate)
app.add_tool(process_data)
```
### 3. Project Organization
Example project structure:
```
my_project/
├── server.py # Main MCPApp
├── tools/
│ ├── math.py # Tools using @tool decorator
│ └── utils.py # More tools
└── pyproject.toml # Dependencies
```
This approach gives you explicit control over which tools are loaded and how they're organized.
## Best Practices
### Parameter Annotations
- **Always use `Annotated`**: Provide descriptions for all parameters
- **Clear descriptions**: Help the AI understand what each parameter does
- **Type hints**: Use proper Python type hints for validation
### Tool Design
- **Single purpose**: Each tool should do one thing well
- **Error handling**: Add validation and helpful error messages
- **Return types**: Always annotate return types with descriptions
### Organization
- **Group related tools**: Use directories to organize by functionality
- **Naming conventions**: Use clear, descriptive names
- **Documentation**: Write clear docstrings for each tool
## Key Concepts
- **Explicit Control**: Use `@app.tool` decorators and `app.add_tool()` for precise tool management
- **Type Safety**: Full type annotation support with runtime validation
- **TypedDict Support**: Use TypedDict for complex structured data
- **Import Flexibility**: Import tools from your own files and external packages
- **Direct Execution**: Run servers directly with `uv run` for better development experience