ralph
Convert PRDs to prd.json format for the Ralph autonomous agent system. Use when you have an existing PRD and need to convert it to Ralph's JSON format. Triggers on: convert this prd, turn this into ralph format, create prd.json from this, ralph json.
What this skill does
# Ralph PRD Converter
Converts existing PRDs to the prd.json format that Ralph uses for autonomous execution.
---
## The Job
Take a PRD (markdown file or text) and convert it to `prd.json` in your ralph directory.
---
## Output Format
```json
{
"project": "[Project Name]",
"branchName": "ralph/[feature-name-kebab-case]",
"description": "[Feature description from PRD title/intro]",
"userStories": [
{
"id": "US-001",
"title": "[Story title]",
"description": "As a [user], I want [feature] so that [benefit]",
"acceptanceCriteria": [
"Criterion 1",
"Criterion 2",
"Typecheck passes"
],
"priority": 1,
"passes": false,
"notes": ""
}
]
}
```
---
## Story Size: The Number One Rule
**Each story must be completable in ONE Ralph iteration (one context window).**
Ralph spawns a fresh Amp instance per iteration with no memory of previous work. If a story is too big, the LLM runs out of context before finishing and produces broken code.
### Right-sized stories:
- Add a database column and migration
- Add a UI component to an existing page
- Update a server action with new logic
- Add a filter dropdown to a list
### Too big (split these):
- "Build the entire dashboard" - Split into: schema, queries, UI components, filters
- "Add authentication" - Split into: schema, middleware, login UI, session handling
- "Refactor the API" - Split into one story per endpoint or pattern
**Rule of thumb:** If you cannot describe the change in 2-3 sentences, it is too big.
---
## Story Ordering: Dependencies First
Stories execute in priority order. Earlier stories must not depend on later ones.
**Correct order:**
1. Schema/database changes (migrations)
2. Server actions / backend logic
3. UI components that use the backend
4. Dashboard/summary views that aggregate data
**Wrong order:**
1. UI component (depends on schema that does not exist yet)
2. Schema change
---
## Acceptance Criteria: Must Be Verifiable
Each criterion must be something Ralph can CHECK, not something vague.
### Good criteria (verifiable):
- "Add `status` column to tasks table with default 'pending'"
- "Filter dropdown has options: All, Active, Completed"
- "Clicking delete shows confirmation dialog"
- "Typecheck passes"
- "Tests pass"
### Bad criteria (vague):
- "Works correctly"
- "User can do X easily"
- "Good UX"
- "Handles edge cases"
### Always include as final criterion:
```
"Typecheck passes"
```
For stories with testable logic, also include:
```
"Tests pass"
```
### For stories that change UI, also include:
```
"Verify in browser using dev-browser skill"
```
Frontend stories are NOT complete until visually verified. Ralph will use the dev-browser skill to navigate to the page, interact with the UI, and confirm changes work.
---
## Conversion Rules
1. **Each user story becomes one JSON entry**
2. **IDs**: Sequential (US-001, US-002, etc.)
3. **Priority**: Based on dependency order, then document order
4. **All stories**: `passes: false` and empty `notes`
5. **branchName**: Derive from feature name, kebab-case, prefixed with `ralph/`
6. **Always add**: "Typecheck passes" to every story's acceptance criteria
---
## Splitting Large PRDs
If a PRD has big features, split them:
**Original:**
> "Add user notification system"
**Split into:**
1. US-001: Add notifications table to database
2. US-002: Create notification service for sending notifications
3. US-003: Add notification bell icon to header
4. US-004: Create notification dropdown panel
5. US-005: Add mark-as-read functionality
6. US-006: Add notification preferences page
Each is one focused change that can be completed and verified independently.
---
## Example
**Input PRD:**
```markdown
# Task Status Feature
Add ability to mark tasks with different statuses.
## Requirements
- Toggle between pending/in-progress/done on task list
- Filter list by status
- Show status badge on each task
- Persist status in database
```
**Output prd.json:**
```json
{
"project": "TaskApp",
"branchName": "ralph/task-status",
"description": "Task Status Feature - Track task progress with status indicators",
"userStories": [
{
"id": "US-001",
"title": "Add status field to tasks table",
"description": "As a developer, I need to store task status in the database.",
"acceptanceCriteria": [
"Add status column: 'pending' | 'in_progress' | 'done' (default 'pending')",
"Generate and run migration successfully",
"Typecheck passes"
],
"priority": 1,
"passes": false,
"notes": ""
},
{
"id": "US-002",
"title": "Display status badge on task cards",
"description": "As a user, I want to see task status at a glance.",
"acceptanceCriteria": [
"Each task card shows colored status badge",
"Badge colors: gray=pending, blue=in_progress, green=done",
"Typecheck passes",
"Verify in browser using dev-browser skill"
],
"priority": 2,
"passes": false,
"notes": ""
},
{
"id": "US-003",
"title": "Add status toggle to task list rows",
"description": "As a user, I want to change task status directly from the list.",
"acceptanceCriteria": [
"Each row has status dropdown or toggle",
"Changing status saves immediately",
"UI updates without page refresh",
"Typecheck passes",
"Verify in browser using dev-browser skill"
],
"priority": 3,
"passes": false,
"notes": ""
},
{
"id": "US-004",
"title": "Filter tasks by status",
"description": "As a user, I want to filter the list to see only certain statuses.",
"acceptanceCriteria": [
"Filter dropdown: All | Pending | In Progress | Done",
"Filter persists in URL params",
"Typecheck passes",
"Verify in browser using dev-browser skill"
],
"priority": 4,
"passes": false,
"notes": ""
}
]
}
```
---
## Archiving Previous Runs
**Before writing a new prd.json, check if there is an existing one from a different feature:**
1. Read the current `prd.json` if it exists
2. Check if `branchName` differs from the new feature's branch name
3. If different AND `progress.txt` has content beyond the header:
- Create archive folder: `archive/YYYY-MM-DD-feature-name/`
- Copy current `prd.json` and `progress.txt` to archive
- Reset `progress.txt` with fresh header
**The ralph.sh script handles this automatically** when you run it, but if you are manually updating prd.json between runs, archive first.
---
## Checklist Before Saving
Before writing prd.json, verify:
- [ ] **Previous run archived** (if prd.json exists with different branchName, archive it first)
- [ ] Each story is completable in one iteration (small enough)
- [ ] Stories are ordered by dependency (schema to backend to UI)
- [ ] Every story has "Typecheck passes" as criterion
- [ ] UI stories have "Verify in browser using dev-browser skill" as criterion
- [ ] Acceptance criteria are verifiable (not vague)
- [ ] No story depends on a later story
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