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Turn any SKILL.md into a runnable AI Agent

Project description

agenthatch

Turn any SKILL.md into a runnable AI Agent.

Python License Status

agenthatch is an Agent Factory that transforms declarative SKILL.md files into fully functional, standalone AI agents. Inspired by the Claude Code SKILL.md specification, agenthatch goes further: it analyzes, reasons about, and generates production-ready agents with tool calling, MCP integration, and multi-turn conversation capabilities.


Why agenthatch?

Claude Code + SKILL.md agenthatch
Agent format Inline prompt injection Standalone runnable agent
Tool calling Built-in tools only MCP + custom tools + sandbox
Multi-turn Single-shot context Full conversation loop
Deployment Requires Claude Code Self-contained Python package
Customization None Full harness pipeline
Quality control Manual Automated fidelity checks

Quick Start

1. Install

pip install agenthatch

2. Initialize

agenthatch init

3. Add a Skill

agenthatch skill add path/to/SKILL.md

4. Hatch an Agent

agenthatch hatch my-skill

This runs the full pipeline:

  • Phase 1 — Parse SKILL.md frontmatter and content
  • Phase 2 — 6-harness LLM reasoning pipeline (identity, intent, interface, base, assembly, MCP servers)
  • Phase 3 — Generate standalone agent code
  • Phase 4 — Readiness verification

5. Run the Agent

agenthatch run my-skill

How It Works

The Harness Pipeline

agenthatch uses a chain of specialized LLM agents ("harnesses") to analyze and reason about your skill:

SKILL.md
  │
  ├─ Harness A: Identity     → Who is this agent?
  ├─ Harness B: Intent       → What triggers and satisfies it?
  ├─ Harness C: Interface    → What capabilities does it provide/require?
  ├─ Harness F: MCP Servers  → What MCP connections does it need?
  ├─ Harness D: Base         → What runtime environment?
  ├─ Harness E: Assembly     → Cross-validate and produce AHSSPEC
  │
  ▼
agenthatch.yaml (AHSSPEC)
  │
  ▼
Generated Agent (standalone Python package)

Fidelity Protection

Every generated agent includes:

  • Fidelity Anchors — SHA256 hashes of constraints extracted from the original SKILL.md
  • Fidelity Manifest — Verification file in the agent directory
  • Quality Review — Harness E validates intent fidelity, capability coverage, and MCP integrity

Skill Management

# List all skills
agenthatch skill list

# Add a new skill
agenthatch skill add path/to/SKILL.md

# Delete a skill
agenthatch skill delete my-skill

# Search skills
agenthatch search "data analysis"

SKILL.md Format

agenthatch follows the Claude Code SKILL.md specification:

---
name: My Skill
description: What this skill does
---

# Skill Instructions

Detailed instructions for the agent...

## Workflow

1. Step one
2. Step two

## MCP Tools

This skill uses mcp__my-server__my-tool for data access.

MCP Support

agenthatch automatically detects MCP server references in your SKILL.md:

  • mcp__SERVER__TOOL patterns
  • mcporter call Server.Tool syntax
  • Frontmatter mcpServers declarations

Architecture

agenthatch/
├── src/agenthatch/          # CLI, skill engine, harness, generation
│   ├── cli/                 # Typer CLI commands
│   ├── skill/               # Skill parsing, harness, validation
│   ├── generate/            # Agent code generation + templates
│   ├── agent/               # Runtime, builtins, MCP
│   ├── house/               # Skillhouse index, discovery
│   └── config/              # Configuration management
├── agenthatch-core/         # Universal agent runtime
│   └── src/agenthatch_core/ # LLM client, sandbox, conversation loop
└── tests/                   # Test suite

Requirements

  • Python 3.11+
  • LLM API access (OpenAI, DeepSeek, or custom provider)
  • Optional: mcporter for MCP server support (npm install -g mcporter)

Contributing

agenthatch is in active development. Contributions are welcome!

# Development setup
git clone https://github.com/agenthatch/agenthatch
cd agenthatch
pip install -e ".[dev]"

# Run tests
pytest

# Quality checks
hatch run quality:check

License

MIT — see LICENSE for details.

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