Agent Skills: Saving Code Actions as Reusable Tools

Save executed Python code as reusable tools in the gentools package. Use when preserving successful code executions for later reuse. Covers creating package structure (api.py, impl.py), defining Pydantic output models, and implementing the run() interface.

UncategorizedID: gradion-ai/freeact/saving-codeacts

Repository

gradion-aiLicense: Apache-2.0
1289

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pnpm dlx add-skill https://github.com/gradion-ai/freeact/tree/HEAD/freeact/config/templates/skills/saving-codeacts

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freeact/config/templates/skills/saving-codeacts/SKILL.md

Skill Metadata

Name
saving-codeacts
Description
Save executed Python code as reusable tools in the gentools package. Use when preserving successful code executions for later reuse. Covers creating package structure (api.py, impl.py), defining Pydantic output models, and implementing the run() interface.

Saving Code Actions as Reusable Tools

Save executed Python code as a tool for later reuse.

Package Structure

{generated_rel_dir}/gentools/<category>/<tool>/
├── __init__.py          # Empty file
├── api.py              # Public interface with structured models
└── impl.py             # Implementation details

Procedure

1. Create Package Directory

mkdir -p {generated_rel_dir}/gentools/<category>/<tool>

Create empty __init__.py files in both <category> and <tool> directories.

2. Define Tool API (api.py)

from __future__ import annotations

from pydantic import BaseModel, Field


class OutputModel(BaseModel):
    """Description of output."""
    field: type = Field(..., title="Description")


def run(param1: type, param2: type = default) -> OutputModel:
    """Tool description.

    Args:
        param1: Description
        param2: Description (default: value)

    Returns:
        OutputModel with structured data
    """
    from .impl import implementation_function
    return implementation_function(param1, param2)

Requirements:

  • Define Pydantic models for structured output
  • Create run() function with typed parameters
  • Use lazy import from impl.py inside run()
  • Include comprehensive docstring
  • Export OutputModel and run in {generated_rel_dir}/gentools/<category>/<tool>/__init__.py:
from .api import OutputModel, run

__all__ = ["OutputModel", "run"]

3. Implement Details (impl.py)

from __future__ import annotations

from mcptools.<category>.<tool> import Params, run_parsed
from .api import OutputModel


def implementation_function(param1: type, param2: type) -> OutputModel:
    """Implementation description."""
    # Use tools from mcptools or gentools packages
    result = run_parsed(Params(...))

    # Transform and return structured output
    return OutputModel(field=result.data)

Requirements:

  • Import tools from mcptools or gentools packages
  • Import models from api.py
  • Return structured models defined in api.py

4. Test the Tool

from gentools.<category>.<tool>.api import run

result = run(param1=value1, param2=value2)
print(result)

Best Practices

  • Separation: Keep API clean; hide complexity in implementation
  • Type Safety: Use Pydantic models for all outputs
  • Modularity: Break complex logic into smaller functions
  • Defaults: Provide sensible defaults for optional parameters