agent-rules
Use when creating or updating AGENTS.md files, .github/copilot-instructions.md, or other AI agent rule files, onboarding AI agents to a project, standardizing agent documentation, or when anyone mentions AGENTS.md, agent rules, project onboarding, or codebase documentation for AI agents.
What this skill does
# AGENTS.md Generator Skill Generate and maintain AGENTS.md files following the [agents.md convention](https://agents.md/). AGENTS.md is FOR AGENTS, not humans. ## When to Use - Creating or updating AGENTS.md for new/existing projects - Standardizing agent documentation across repositories - Checking if AGENTS.md files are current with recent code changes - Onboarding AI agents to an unfamiliar codebase ## Scripts | Script | Purpose | |--------|---------| | `scripts/generate-agents.sh PATH` | Generate AGENTS.md files | | `scripts/validate-structure.sh PATH` | Validate structure compliance | | `scripts/check-freshness.sh PATH` | Check if files are outdated | | `scripts/verify-content.sh PATH` | Verify documented files/commands match codebase | | `scripts/verify-commands.sh PATH` | Verify documented commands execute | | `scripts/score-agents.sh PATH` | Grade AGENTS.md quality, worst-first | | `scripts/detect-project.sh PATH` | Detect language, version, build tools | | `scripts/detect-scopes.sh PATH` | Identify directories needing scoped files | | `scripts/extract-commands.sh PATH` | Extract commands from build configs | | `scripts/extract-ci-rules.sh PATH` | Extract CI quality gates and version matrix | | `scripts/extract-architecture-rules.sh PATH` | Extract module boundaries | | `scripts/extract-adrs.sh PATH` | Extract architectural decision records | | `scripts/extract-github-rulesets.sh PATH` | Extract GitHub rulesets and merge rules | See `references/scripts-guide.md` for full options. ## Workflow 1. **Detect**: `detect-project.sh` + `detect-scopes.sh` to identify stacks and subsystems 2. **Extract**: `extract-commands.sh`, `extract-ci-rules.sh`, etc. to gather facts 3. **Generate**: `generate-agents.sh` with `--style=thin` (default) or `--verbose` 4. **Verify**: `verify-content.sh` + `verify-commands.sh` -- MANDATORY before done Use `--update` to preserve human-curated content outside `<!-- GENERATED -->` markers. ## Core Principles - **Structured over Prose** -- tables parse faster than paragraphs - **Never Fabricate** -- only document what exists; verify every command and path - **Pointer Principle** -- point to files, don't duplicate content - **Auto Symlinks** -- CLAUDE.md/GEMINI.md symlinks by default (see [`ai-tool-compatibility.md`](references/ai-tool-compatibility.md)) ## References | File | Contents | |------|----------| | [`verification-guide.md`](references/verification-guide.md) | Verification steps, design principles, anti-bloat | | [`scripts-guide.md`](references/scripts-guide.md) | Script options, validation checklist | | [`quality-rubric.md`](references/quality-rubric.md) | Quality grading rubric | | [`ai-tool-compatibility.md`](references/ai-tool-compatibility.md) | 16-agent compatibility matrix | | [`output-structure.md`](references/output-structure.md) | Root/scoped sections | | [`git-hooks-setup.md`](references/git-hooks-setup.md) | Hook framework detection and setup | | [`examples/`](references/examples/) | Complete examples | | [`ai-contribution-guidelines.md`](references/ai-contribution-guidelines.md) | "3 Cs" framework for AI contributions | | [`directory-coverage.md`](references/directory-coverage.md) | Scoped-file coverage rationale | ## Templates Root: `assets/root-thin.md` (default) or `root-verbose.md`. Scoped: `assets/scoped/`, one per stack (Go/PHP/Python/TYPO3/Symfony/Oro/CLI/TS/skill-repo). ## Supported Projects Go, PHP (Composer/Laravel/Symfony/TYPO3/Oro), TypeScript (React/Next/Vue/Node), Python (pip/poetry/ruff/mypy), Skill repos, Hybrid (multi-stack with auto-scoping). ## See Also - [`agent-harness-skill`](https://github.com/netresearch/agent-harness-skill) — broader agent-readiness harness (CI verification, enforcement). - [`skill-repo-skill`](https://github.com/netresearch/skill-repo-skill) — skill-repo structure (plugin.json, split licensing, release workflows).
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