.claude/skills/process-builder/SKILL.md
Scaffold new babysitter process definitions following SDK patterns, proper structure, and best practices. Guides the 3-phase workflow from research to implementation.
npx skillsauth add a5c-ai/babysitter process-builderInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Create new process definitions for the babysitter event-sourced orchestration framework.
Processes live in: plugins/babysitter/skills/babysit/process/
├── methodologies/ # Reusable development approaches (TDD, BDD, Scrum, etc.)
│ └── [name]/
│ ├── README.md # Documentation
│ ├── [name].js # Main process
│ └── examples/ # Sample inputs
│
└── specializations/ # Domain-specific processes
├── [category]/ # Engineering specializations (direct children)
│ └── [process].js
└── domains/
└── [domain]/ # Business, Science, Social Sciences
└── [spec]/
├── README.md
├── references.md
├── processes-backlog.md
└── [process].js
Create foundational documentation:
# Check existing specializations
ls plugins/babysitter/skills/babysit/process/specializations/
# Check methodologies
ls plugins/babysitter/skills/babysit/process/methodologies/
Create:
README.md - Overview, roles, goals, use cases, common flowsreferences.md - External references, best practices, links to sourcesCreate processes-backlog.md with identified processes:
# Processes Backlog - [Specialization Name]
## Identified Processes
- [ ] **process-name** - Short description of what this process accomplishes
- Reference: [Link to methodology or standard]
- Inputs: list key inputs
- Outputs: list key outputs
- [ ] **another-process** - Description
...
Create .js process files following SDK patterns (see below).
Every process file follows this pattern:
/**
* @process [category]/[process-name]
* @description Clear description of what the process accomplishes end-to-end
* @inputs { inputName: type, optionalInput?: type }
* @outputs { success: boolean, outputName: type, artifacts: array }
*
* @example
* const result = await orchestrate('[category]/[process-name]', {
* inputName: 'value',
* optionalInput: 'optional-value'
* });
*
* @references
* - Book: "Relevant Book Title" by Author
* - Article: [Title](https://link)
* - Standard: ISO/IEEE reference
*/
import { defineTask } from '@a5c-ai/babysitter-sdk';
/**
* [Process Name] Process
*
* Methodology: Brief description of the approach
*
* Phases:
* 1. Phase Name - What happens
* 2. Phase Name - What happens
* ...
*
* Benefits:
* - Benefit 1
* - Benefit 2
*
* @param {Object} inputs - Process inputs
* @param {string} inputs.inputName - Description of input
* @param {Object} ctx - Process context (see SDK)
* @returns {Promise<Object>} Process result
*/
export async function process(inputs, ctx) {
const {
inputName,
optionalInput = 'default-value',
// ... destructure with defaults
} = inputs;
const artifacts = [];
// ============================================================================
// PHASE 1: [PHASE NAME]
// ============================================================================
ctx.log?.('info', 'Starting Phase 1...');
const phase1Result = await ctx.task(someTask, {
// task inputs
});
artifacts.push(...(phase1Result.artifacts || []));
// Breakpoint for human review (when needed)
await ctx.breakpoint({
question: 'Review the results and approve to continue?',
title: 'Phase 1 Review',
context: {
runId: ctx.runId,
files: [
{ path: 'artifacts/output.md', format: 'markdown', label: 'Output' }
]
}
});
// ============================================================================
// PHASE 2: [PHASE NAME] - Parallel Execution Example
// ============================================================================
const [result1, result2, result3] = await ctx.parallel.all([
() => ctx.task(task1, { /* args */ }),
() => ctx.task(task2, { /* args */ }),
() => ctx.task(task3, { /* args */ })
]);
// ============================================================================
// PHASE 3: [ITERATION EXAMPLE]
// ============================================================================
let iteration = 0;
let targetMet = false;
while (!targetMet && iteration < maxIterations) {
iteration++;
const iterResult = await ctx.task(iterativeTask, {
iteration,
previousResults: /* ... */
});
targetMet = iterResult.meetsTarget;
if (!targetMet && iteration % 3 === 0) {
// Periodic checkpoint
await ctx.breakpoint({
question: `Iteration ${iteration}: Target not met. Continue?`,
title: 'Progress Checkpoint',
context: { /* ... */ }
});
}
}
// ============================================================================
// COMPLETION
// ============================================================================
return {
success: targetMet,
iterations: iteration,
artifacts,
// ... other outputs matching @outputs
};
}
// ============================================================================
// TASK DEFINITIONS
// ============================================================================
/**
* Task: [Task Name]
* Purpose: What this task accomplishes
*/
const someTask = defineTask({
name: 'task-name',
description: 'What this task does',
// Task definition - executed externally by orchestrator
// This returns a TaskDef that describes HOW to run the task
inputs: {
inputName: { type: 'string', required: true },
optionalInput: { type: 'number', default: 10 }
},
outputs: {
result: { type: 'object' },
artifacts: { type: 'array' }
},
async run(inputs, taskCtx) {
const effectId = taskCtx.effectId;
return {
kind: 'node', // or 'agent', 'skill', 'shell', 'breakpoint'
title: `Task: ${inputs.inputName}`,
node: {
entry: 'scripts/task-runner.js',
args: ['--input', inputs.inputName, '--effect-id', effectId]
},
io: {
inputJsonPath: `tasks/${effectId}/input.json`,
outputJsonPath: `tasks/${effectId}/result.json`
},
labels: ['category', 'subcategory']
};
}
});
The ctx object provides these intrinsics:
| Method | Purpose | Behavior |
|--------|---------|----------|
| ctx.task(taskDef, args, opts?) | Execute a task | Returns result or throws typed exception |
| ctx.breakpoint(payload) | Human approval gate | Pauses until approved via human |
| ctx.sleepUntil(isoOrEpochMs) | Time-based gate | Pauses until specified time |
| ctx.parallel.all([...thunks]) | Parallel execution | Runs independent tasks concurrently |
| ctx.parallel.map(items, fn) | Parallel map | Maps items through task function |
| ctx.now() | Deterministic time | Returns current Date (or provided time) |
| ctx.log?.(level, msg, data?) | Logging | Optional logging helper |
| ctx.runId | Run identifier | Current run's unique ID |
| Kind | Use Case | Executor |
|------|----------|----------|
| node | Scripts, builds, tests | Node.js process |
| agent | LLM-powered analysis, generation | Claude Code agent |
| skill | Claude Code skills | Skill invocation |
| shell | System commands | Shell execution |
| breakpoint | Human approval | Breakpoints UI/service |
| sleep | Time gates | Orchestrator scheduling |
| orchestrator_task | Internal orchestrator work | Self-routed |
await ctx.breakpoint({
question: 'Approve to continue?',
title: 'Checkpoint',
context: { runId: ctx.runId }
});
await ctx.breakpoint({
question: 'Review the generated specification. Does it meet requirements?',
title: 'Specification Review',
context: {
runId: ctx.runId,
files: [
{ path: 'artifacts/spec.md', format: 'markdown', label: 'Specification' },
{ path: 'artifacts/spec.json', format: 'json', label: 'JSON Schema' },
{ path: 'src/implementation.ts', format: 'code', language: 'typescript', label: 'Implementation' }
]
}
});
if (qualityScore < targetScore) {
await ctx.breakpoint({
question: `Quality score ${qualityScore} is below target ${targetScore}. Continue iterating or accept current result?`,
title: 'Quality Gate',
context: {
runId: ctx.runId,
data: { qualityScore, targetScore, iteration }
}
});
}
let quality = 0;
let iteration = 0;
const targetQuality = inputs.targetQuality || 85;
const maxIterations = inputs.maxIterations || 10;
while (quality < targetQuality && iteration < maxIterations) {
iteration++;
ctx.log?.('info', `Iteration ${iteration}/${maxIterations}`);
// Execute improvement tasks
const improvement = await ctx.task(improveTask, { iteration });
// Score quality (parallel checks)
const [coverage, lint, security, tests] = await ctx.parallel.all([
() => ctx.task(coverageTask, {}),
() => ctx.task(lintTask, {}),
() => ctx.task(securityTask, {}),
() => ctx.task(runTestsTask, {})
]);
// Agent scores overall quality
const score = await ctx.task(agentScoringTask, {
coverage, lint, security, tests, iteration
});
quality = score.overall;
ctx.log?.('info', `Quality: ${quality}/${targetQuality}`);
if (quality >= targetQuality) {
ctx.log?.('info', 'Quality target achieved!');
break;
}
}
return {
success: quality >= targetQuality,
quality,
iterations: iteration
};
// Phase 1: Research
const research = await ctx.task(researchTask, { topic: inputs.topic });
await ctx.breakpoint({
question: 'Review research findings before proceeding to planning.',
title: 'Research Review',
context: { runId: ctx.runId }
});
// Phase 2: Planning
const plan = await ctx.task(planningTask, { research });
await ctx.breakpoint({
question: 'Review plan before implementation.',
title: 'Plan Review',
context: { runId: ctx.runId }
});
// Phase 3: Implementation
const implementation = await ctx.task(implementTask, { plan });
// Phase 4: Verification
const verification = await ctx.task(verifyTask, { implementation, plan });
await ctx.breakpoint({
question: 'Final review before completion.',
title: 'Final Approval',
context: { runId: ctx.runId }
});
return { success: verification.passed, plan, implementation };
// Fan out to multiple parallel analyses
const analyses = await ctx.parallel.map(components, component =>
ctx.task(analyzeTask, { component }, { label: `analyze:${component.name}` })
);
// Aggregate results
const aggregated = await ctx.task(aggregateTask, { analyses });
return { analyses, summary: aggregated.summary };
# Create a new run
babysitter run:create \
--process-id methodologies/my-process \
--entry ./plugins/babysitter/skills/babysit/process/methodologies/my-process.js#process \
--inputs ./test-inputs.json \
--json
# Iterate the run
babysitter run:iterate .a5c/runs/<runId> --json
# List pending tasks
babysitter task:list .a5c/runs/<runId> --pending --json
# Post a task result
babysitter task:post .a5c/runs/<runId> <effectId> \
--status ok \
--value ./result.json
# Check run status
babysitter run:status .a5c/runs/<runId>
# View events
babysitter run:events .a5c/runs/<runId> --limit 20 --reverse
{
"feature": "User authentication with JWT",
"acceptanceCriteria": [
"Users can register with email and password",
"Users can login and receive a JWT token",
"Invalid credentials are rejected"
],
"testFramework": "jest",
"targetQuality": 85,
"maxIterations": 5
}
Ask the user:
| Question | Purpose | |----------|---------| | Domain/Category | Determines directory location | | Process Name | kebab-case identifier | | Goal | What should the process accomplish? | | Inputs | What data does the process need? | | Outputs | What artifacts/results does it produce? | | Phases | What are the major steps? | | Quality Gates | Where should humans review? | | Iteration Strategy | Fixed phases vs. convergence loop? |
# Find similar processes
ls plugins/babysitter/skills/babysit/process/methodologies/
ls plugins/babysitter/skills/babysit/process/specializations/
# Read similar process for patterns
cat plugins/babysitter/skills/babysit/process/methodologies/atdd-tdd/atdd-tdd.js | head -200
# Check methodology README structure
cat plugins/babysitter/skills/babysit/process/methodologies/atdd-tdd/README.md
cat plugins/babysitter/skills/babysit/process/methodologies/backlog.md
For Methodologies:
methodologies/[name]/README.md (comprehensive documentation)methodologies/[name]/[name].js (process implementation)methodologies/[name]/examples/ (sample inputs)For Specializations:
specializations/domains/[domain]/[spec]/specializations/[category]/[process].jsChecklist:
@a5c-ai/babysitter-sdkexport async function process(inputs, ctx)// === PHASE N: NAME ===)ctx.log?.('info', message)ctx.task(taskDef, inputs)/**
* @process methodologies/my-methodology
* @description My development methodology with quality convergence
* @inputs { feature: string, targetQuality?: number }
* @outputs { success: boolean, quality: number, artifacts: array }
*/
export async function process(inputs, ctx) {
const { feature, targetQuality = 85 } = inputs;
// ... implementation
}
/**
* @process specializations/game-development/core-mechanics-prototyping
* @description Prototype and validate core gameplay mechanics through iteration
* @inputs { prototypeName: string, mechanicsToTest: array, engine?: string }
* @outputs { success: boolean, mechanicsValidated: array, playtestResults: object }
*/
export async function process(inputs, ctx) {
const { prototypeName, mechanicsToTest, engine = 'Unity' } = inputs;
// ... implementation
}
/**
* @process specializations/domains/science/bioinformatics/sequence-analysis
* @description Analyze genomic sequences using standard bioinformatics workflows
* @inputs { sequences: array, analysisType: string, referenceGenome?: string }
* @outputs { success: boolean, alignments: array, variants: array, report: object }
*/
export async function process(inputs, ctx) {
const { sequences, analysisType, referenceGenome = 'GRCh38' } = inputs;
// ... implementation
}
plugins/babysitter/skills/babysit/process/reference/sdk.mdplugins/babysitter/skills/babysit/process/methodologies/backlog.mdplugins/babysitter/skills/babysit/process/specializations/backlog.mdplugins/babysitter/skills/babysit/process/methodologies/atdd-tdd/plugins/babysitter/skills/babysit/process/methodologies/spec-driven-development.jsREADME.md for full framework documentationdevelopment
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