- Rename frontend_analyzer.py → codebase_analyzer.py — now detects backend frameworks via package.json (NestJS, Express, Fastify) and project files (manage.py, requirements.txt for Django, FastAPI, Flask) - Add backend route extraction: NestJS @Controller/@Get decorators, Django urls.py path() patterns - Add model/entity extraction: Django models.Model fields, NestJS @Entity and DTO classes - Add stack_type detection (frontend / backend / fullstack) to analysis output - SKILL.md: add Supported Stacks table, backend directory guide, backend endpoint inventory template, backend page type strategies, backend pitfalls - references/framework-patterns.md: add NestJS, Express, Django, DRF, FastAPI pattern tables + database model patterns + backend validation patterns - references/prd-quality-checklist.md: add backend-specific checks (endpoints, DTOs, models, admin, middleware, migrations) - Update all descriptions and keywords across plugin.json, settings.json, marketplace.json, and /code-to-prd command Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2.5 KiB
2.5 KiB
name: code-to-prd
description: Reverse-engineer a frontend codebase into a PRD. Usage: /code-to-prd [path]
/code-to-prd
Reverse-engineer a frontend codebase into a complete Product Requirements Document.
Usage
/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
- Scan — Run
codebase_analyzer.pyto detect framework, routes, APIs, enums, and project structure - Scaffold — Run
prd_scaffolder.pyto createprd/directory with README.md, per-page stubs, and appendix files - Analyze — Walk through each page following the Phase 2 workflow: fields, interactions, API dependencies, page relationships
- 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:
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:
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 foundprd/appendix/api-inventory.md— consolidated API referenceprd/appendix/page-relationships.md— navigation and data coupling map
Clean up the temporary analysis file:
rm .code-to-prd-analysis.json
Output
A prd/ directory containing:
README.md— system overview, module map, page inventorypages/*.md— one file per page with fields, interactions, APIsappendix/*.md— enum dictionary, API inventory, page relationships
Skill Reference
product-team/code-to-prd/SKILL.mdproduct-team/code-to-prd/scripts/codebase_analyzer.pyproduct-team/code-to-prd/scripts/prd_scaffolder.pyproduct-team/code-to-prd/references/prd-quality-checklist.md