Files
claude-skills-reference/docs/commands/code-to-prd.md
Reza Rezvani 920e8547af feat(commands): add /plugin-audit — 8-phase validation pipeline for skills and plugins
- Add commands/plugin-audit.md (distributable) + .claude/commands/plugin-audit.md (local invocation)
- 8 phases: discovery, structure validation, quality scoring, script testing,
  security audit, marketplace compliance, ecosystem integration, domain code review
- Auto-fixes non-critical issues, only prompts user for breaking changes
- Integrates skill_validator.py, quality_scorer.py, script_tester.py, skill_security_auditor.py
- Domain-appropriate review via cs-* agents (engineering, product, marketing, etc.)
- Update product-team counts: 12→14 skills, 13→16 tools, 7→8 commands
- Add /code-to-prd and /plugin-audit to mkdocs.yml nav
- Regenerate docs (248 pages, 19 commands)

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-03-17 15:38:00 +01:00

85 lines
2.8 KiB
Markdown

---
title: "/code-to-prd — Slash Command for AI Coding Agents"
description: "Reverse-engineer a frontend codebase into a PRD. Usage: /code-to-prd [path]. Slash command for Claude Code, Codex CLI, Gemini CLI."
---
# /code-to-prd
<div class="page-meta" markdown>
<span class="meta-badge">:material-console: Slash Command</span>
<span class="meta-badge">:material-github: <a href="https://github.com/alirezarezvani/claude-skills/tree/main/commands/code-to-prd.md">Source</a></span>
</div>
Reverse-engineer a frontend codebase into a complete Product Requirements Document.
## Usage
```bash
/code-to-prd # Analyze current project
/code-to-prd ./src # Analyze specific directory
/code-to-prd /path/to/project # Analyze external project
```
## What It Does
1. **Scan** — Run `codebase_analyzer.py` to detect framework, routes, APIs, enums, and project structure
2. **Scaffold** — Run `prd_scaffolder.py` to create `prd/` directory with README.md, per-page stubs, and appendix files
3. **Analyze** — Walk through each page following the Phase 2 workflow: fields, interactions, API dependencies, page relationships
4. **Generate** — Produce the final PRD with all pages, enum dictionary, API inventory, and page relationship map
## Steps
### Step 1: Analyze
Determine the project path (default: current directory). Run the frontend analyzer:
```bash
python3 {skill_path}/scripts/codebase_analyzer.py {project_path} -o .code-to-prd-analysis.json
```
Display a summary of findings: framework, page count, API count, enum count.
### Step 2: Scaffold
Generate the PRD directory skeleton:
```bash
python3 {skill_path}/scripts/prd_scaffolder.py .code-to-prd-analysis.json -o prd/
```
### Step 3: Fill
For each page in the inventory, follow the SKILL.md Phase 2 workflow:
- Read the page's component files
- Document fields, interactions, API dependencies, page relationships
- Fill in the corresponding `prd/pages/` stub
Work in batches of 3-5 pages for large projects (>15 pages). Ask the user to confirm after each batch.
### Step 4: Finalize
Complete the appendix files:
- `prd/appendix/enum-dictionary.md` — all enums and status codes found
- `prd/appendix/api-inventory.md` — consolidated API reference
- `prd/appendix/page-relationships.md` — navigation and data coupling map
Clean up the temporary analysis file:
```bash
rm .code-to-prd-analysis.json
```
## Output
A `prd/` directory containing:
- `README.md` — system overview, module map, page inventory
- `pages/*.md` — one file per page with fields, interactions, APIs
- `appendix/*.md` — enum dictionary, API inventory, page relationships
## Skill Reference
- `product-team/code-to-prd/SKILL.md`
- `product-team/code-to-prd/scripts/codebase_analyzer.py`
- `product-team/code-to-prd/scripts/prd_scaffolder.py`
- `product-team/code-to-prd/references/prd-quality-checklist.md`