| name | moai-core-clone-pattern |
| version | 4.0.0 |
| created | Wed Nov 05 2025 00:00:00 GMT+0000 (Coordinated Universal Time) |
| updated | 2025-11-18 |
| status | stable |
| description | Enterprise Master-Clone pattern implementation guide for complex multi-step tasks with full project context, autonomous delegation, parallel processing, and intelligent task distribution; activates for large-scale migrations, complex refactoring, parallel exploration, architecture restructuring, and multi-file transformations |
| keywords | clone-pattern, master-clone, delegation, multi-step, parallel-processing, autonomous-agents, task-distribution, project-context, complex-workflows, enterprise-delegation |
| allowed-tools | Read, Bash, Task |
| stability | stable |
Enterprise Master-Clone Pattern Skill
Skill Metadata
| Field | Value |
|---|---|
| Skill Name | moai-core-clone-pattern |
| Version | 4.0.0 Enterprise (2025-11-18) |
| Allowed tools | Read, Bash, Task |
| Auto-load | On demand for complex multi-step tasks |
| Tier | Alfred (Orchestration) |
| Lines of Content | 900+ with 12+ enterprise examples |
| Progressive Disclosure | 3-level (quick-start, patterns, advanced) |
What It Does
Provides comprehensive guidance for Alfred's Master-Clone pattern - a delegation mechanism where Alfred creates autonomous clones (Task-delegated agents) to handle complex multi-step tasks that don't require domain-specific expertise but benefit from:
- Full project context and codebase understanding
- Parallel processing capabilities
- Independent decision-making
- Comprehensive state tracking
When to Use (Decision Framework)
Use Clone Pattern when:
- Task requires 5+ sequential steps OR affects 100+ files
- No domain-specific expertise needed (not UI, Backend, DB, Security, ML)
- Task is complex with high uncertainty
- Parallel processing would be beneficial
- Full project context is required for optimal decisions
- Task can run autonomously without continuous user input
Examples:
- Large-scale migrations ( .0 → affecting 200 files)
- Refactoring across many files (100+ imports, API changes)
- Parallel exploration/evaluation tasks
- Complex architecture restructuring
- Bulk file transformations with context-aware logic
- Schema migrations affecting multiple services
- Dependency upgrade cascades
DON'T use Clone Pattern when:
- Domain expertise needed (use specialist agents instead)
- Task < 5 steps (direct execution is faster)
- Quick yes/no decision (use AskUserQuestion)
- Single file modification (use tdd-implementer)
Key Concepts
Master-Clone Architecture
Master Agent (Alfred)
↓ Creates with Task()
Clone Agent #1 Clone Agent #2 Clone Agent #3
(Parallel execution with shared context)
↓ ↓ ↓
[Exploration] [Analysis] [Implementation]
↓ ↓ ↓
Results aggregation & synthesis by Master
↓
User presentation + next steps
Master Responsibilities:
- Analyze task scope and complexity
- Decompose into independent parallel work
- Create clones with appropriate context
- Aggregate and synthesize results
- Present findings to user
Clone Responsibilities:
- Execute assigned sub-task autonomously
- Use full project context for intelligent decisions
- Track state and progress
- Report findings with evidence
- Handle errors gracefully
3-Level Architecture
Level 1: Simple Parallel Task
Scenario: Explore multiple implementation approaches in parallel
// Master agent: Create parallel clones for exploration
const clones = [
Task({
description: "Explore PostgreSQL implementation for user persistence",
prompt: "Analyze PostgreSQL libraries, schema design, migration strategy. Provide pros/cons and code examples."
}),
Task({
description: "Explore MongoDB implementation for user persistence",
prompt: "Analyze MongoDB libraries, document schema, migration strategy. Provide pros/cons and code examples."
}),
Task({
description: "Explore Supabase implementation for user persistence",
prompt: "Analyze Supabase SDK, schema design, migration strategy. Provide pros/cons and code examples."
})
];
// Wait for all parallel clones to complete
const [postgresAnalysis, mongoAnalysis, supabaseAnalysis] = await Promise.all(clones);
// Master synthesizes results
const comparison = {
options: [postgresAnalysis, mongoAnalysis, supabaseAnalysis],
recommendation: selectBestOption(clones),
tradeoffs: analyzeTradeoffs(clones)
};
Level 2: Sequential Dependent Tasks
Scenario: Complex migration where later steps depend on earlier analysis
// Step 1: Analyze current state
const analysisResult = await Task({
description: "Analyze codebase structure",
prompt: "Scan project for all imports of 'old-api'. Document usage patterns, edge cases, and dependencies. Provide summary with file-by-file breakdown."
});
// Step 2: Plan migration strategy (depends on analysis)
const planResult = await Task({
description: "Plan migration strategy from to ",
prompt: `Using this analysis: ${analysisResult}\n\nCreate a step-by-step migration plan with:\n- Phased approach (phase 1, 2, 3)\n- Risk mitigation\n- Testing strategy\n- Rollback procedure`
});
// Step 3: Execute migration (depends on plan)
const migrationResult = await Task({
description: "Execute → migration",
prompt: `Using this plan: ${planResult}\n\nExecute the migration:\n- Update imports\n- Modify APIs\n- Update tests\n- Verify compatibility`
});
// Step 4: Validate results (depends on migration)
const validationResult = await Task({
description: "Validate migration completeness",
prompt: `Verify migration:\n- All imports updated\n- No breaking changes\n- Tests passing\n- Performance metrics maintained`
});
// Master reports final state
return {
analysis: analysisResult,
plan: planResult,
migration: migrationResult,
validation: validationResult,
status: stableResult.passed ? "SUCCESS" : "NEEDS_REVIEW"
};
Level 3: Hybrid Parallel + Sequential (Advanced)
Scenario: Large refactoring with parallel analysis, synchronized implementation
// Phase 1: Parallel analysis clones
const [apiAnalysis, dbAnalysis, authAnalysis] = await Promise.all([
Task({ description: "Analyze API layer usage...", prompt: "..." }),
Task({ description: "Analyze DB layer usage...", prompt: "..." }),
Task({ description: "Analyze Auth layer usage...", prompt: "..." })
]);
// Phase 2: Synchronized implementation (waits for all analyses)
const [apiRefactor, dbRefactor, authRefactor] = await Promise.all([
Task({
description: "Refactor API layer",
prompt: `Based on analysis:\n${apiAnalysis}\n\nRefactor API with:\n- New patterns\n- Tests\n- Documentation`
}),
Task({
description: "Refactor DB layer",
prompt: `Based on analysis:\n${dbAnalysis}\n\nRefactor DB with:\n- Schema updates\n- Migration scripts\n- Tests`
}),
Task({
description: "Refactor Auth layer",
prompt: `Based on analysis:\n${authAnalysis}\n\nRefactor Auth with:\n- New strategy\n- Migration\n- Tests`
})
]);
// Phase 3: Integration validation
const integrationResult = await Task({
description: "Validate refactored layer integration",
prompt: `Verify all refactored layers work together:\n- API uses new DB patterns\n- Auth integrates with API\n- No breaking changes\n- All tests passing`
});
return {
phase1: { apiAnalysis, dbAnalysis, authAnalysis },
phase2: { apiRefactor, dbRefactor, authRefactor },
phase3: integrationResult,
status: "COMPLETE"
};
Best Practices
DO
- Define clear sub-tasks: Each clone should have a specific, measurable goal
- Provide full context: Include project structure, existing patterns, constraints
- Use sequential when needed: Depend on earlier results when necessary
- Validate results: Always verify clone outputs before proceeding
- Document findings: Track what each clone discovered
- Handle failures gracefully: Plan for individual clone failures
- Aggregate intelligently: Synthesize parallel results into coherent analysis
DON'T
- Over-parallelize: Creating 20 clones is overkill (use 2-5)
- Under-specify tasks: Vague descriptions lead to mediocre results
- Ignore dependencies: Force sequential when tasks actually depend
- Skip validation: Trust but verify clone outputs
- Lose context: Always include relevant project information
- Create circular dependencies: Avoid Task A waiting on Task B waiting on Task A
Implementation Patterns
Pattern 1: Exploration with Synthesis
// Create 3 clones exploring different approaches
const explorations = await Promise.all(approaches.map(approach =>
Task({
description: `Explore ${approach.name} approach`,
prompt: `Research ${approach.name}...\nProvide: pros, cons, code example, learning curve`
})
));
// Master synthesizes into comparison table
return {
comparison: createComparisonTable(explorations),
recommendation: selectBestApproach(explorations),
decisionRationale: explainDecision(explorations)
};
Pattern 2: Phased Migration
// Phase 1: Analyze
const analysis = await analyzeCurrentState();
// Phase 2: Plan (depends on analysis)
const plan = await planMigration(analysis);
// Phase 3: Implement (depends on plan)
const implementation = await implementMigration(plan);
// Phase 4: Validate (depends on implementation)
const validation = await validateMigration(implementation);
return { analysis, plan, implementation, validation };
Pattern 3: Distributed Refactoring
// Split files into groups, refactor each group in parallel
const fileGroups = splitFilesIntoGroups(files, 5);
const refactorResults = await Promise.all(
fileGroups.map(group =>
Task({
description: `Refactor files: ${group.join(", ")}`,
prompt: `Refactor these files using new patterns:\n${group.join("\n")}`
})
)
);
// Master validates all refactored files work together
return validateIntegration(refactorResults);
When NOT to Use (Anti-Patterns)
| Scenario | Why | Use Instead |
|---|---|---|
| Single file change | Too much overhead | Direct tdd-implementer |
| 2-3 quick steps | Sequential simpler | Direct execution |
| Domain expertise required | Needs specialist | Specialist agent (security, DB, etc.) |
| Real-time interaction | Clones run independently | Interactive agent |
| Simple query | Overkill complexity | Direct lookup |
Related Skills
moai-core-agent-guide(Agent architecture & delegation)moai-core-task-decomposition(Breaking down complex tasks)moai-essentials-refactor(Refactoring patterns & examples)
For detailed API specifications: reference.md
For real-world examples: examples.md
Last Updated: 2025-11-18
Status: Production Ready (Enterprise )