Agentic-qe qe-sparc-methodology
SPARC (Specification, Pseudocode, Architecture, Refinement, Completion) comprehensive development methodology with multi-agent orchestration
git clone https://github.com/proffesor-for-testing/agentic-qe
T=$(mktemp -d) && git clone --depth=1 https://github.com/proffesor-for-testing/agentic-qe "$T" && mkdir -p ~/.claude/skills && cp -r "$T/.kiro/skills/qe-sparc-methodology" ~/.claude/skills/proffesor-for-testing-agentic-qe-qe-sparc-methodology && rm -rf "$T"
.kiro/skills/qe-sparc-methodology/SKILL.mdSPARC Methodology - Comprehensive Development Framework
Overview
SPARC (Specification, Pseudocode, Architecture, Refinement, Completion) is a systematic development methodology integrated with Claude Flow's multi-agent orchestration capabilities. It provides 17 specialized modes for comprehensive software development, from initial research through deployment and monitoring.
Table of Contents
- Core Philosophy
- Development Phases
- Available Modes
- Activation Methods
- Orchestration Patterns
- TDD Workflows
- Best Practices
- Integration Examples
- Common Workflows
Core Philosophy
SPARC methodology emphasizes:
- Systematic Approach: Structured phases from specification to completion
- Test-Driven Development: Tests written before implementation
- Parallel Execution: Concurrent agent coordination for 2.8-4.4x speed improvements
- Memory Integration: Persistent knowledge sharing across agents and sessions
- Quality First: Comprehensive reviews, testing, and validation
- Modular Design: Clean separation of concerns with clear interfaces
Key Principles
- Specification Before Code: Define requirements and constraints clearly
- Design Before Implementation: Plan architecture and components
- Tests Before Features: Write failing tests, then make them pass
- Review Everything: Code quality, security, and performance checks
- Document Continuously: Maintain current documentation throughout
Development Phases
Phase 1: Specification
Goal: Define requirements, constraints, and success criteria
- Requirements analysis
- User story mapping
- Constraint identification
- Success metrics definition
- Pseudocode planning
Key Modes:
researcher, analyzer, memory-manager
Phase 2: Architecture
Goal: Design system structure and component interfaces
- System architecture design
- Component interface definition
- Database schema planning
- API contract specification
- Infrastructure planning
Key Modes:
architect, designer, orchestrator
Phase 3: Refinement (TDD Implementation)
Goal: Implement features with test-first approach
- Write failing tests
- Implement minimum viable code
- Make tests pass
- Refactor for quality
- Iterate until complete
Key Modes:
tdd, coder, tester
Phase 4: Review
Goal: Ensure code quality, security, and performance
- Code quality assessment
- Security vulnerability scanning
- Performance profiling
- Best practices validation
- Documentation review
Key Modes:
reviewer, optimizer, debugger
Phase 5: Completion
Goal: Integration, deployment, and monitoring
- System integration
- Deployment automation
- Monitoring setup
- Documentation finalization
- Knowledge capture
Key Modes:
workflow-manager, documenter, memory-manager
Available Modes
Core Orchestration Modes
orchestrator
orchestratorMulti-agent task orchestration with TodoWrite/Task/Memory coordination.
Capabilities:
- Task decomposition into manageable units
- Agent coordination and resource allocation
- Progress tracking and result synthesis
- Adaptive strategy selection
- Cross-agent communication
Usage:
mcp__claude-flow__sparc_mode { mode: "orchestrator", task_description: "coordinate feature development", options: { parallel: true, monitor: true } }
swarm-coordinator
swarm-coordinatorSpecialized swarm management for complex multi-agent workflows.
Capabilities:
- Topology optimization (mesh, hierarchical, ring, star)
- Agent lifecycle management
- Dynamic scaling based on workload
- Fault tolerance and recovery
- Performance monitoring
workflow-manager
workflow-managerProcess automation and workflow orchestration.
Capabilities:
- Workflow definition and execution
- Event-driven triggers
- Sequential and parallel pipelines
- State management
- Error handling and retry logic
batch-executor
batch-executorParallel task execution for high-throughput operations.
Capabilities:
- Concurrent file operations
- Batch processing optimization
- Resource pooling
- Load balancing
- Progress aggregation
Development Modes
coder
coderAutonomous code generation with batch file operations.
Capabilities:
- Feature implementation
- Code refactoring
- Bug fixes and patches
- API development
- Algorithm implementation
Quality Standards:
- ES2022+ standards
- TypeScript type safety
- Comprehensive error handling
- Performance optimization
- Security best practices
Usage:
mcp__claude-flow__sparc_mode { mode: "coder", task_description: "implement user authentication with JWT", options: { test_driven: true, parallel_edits: true, typescript: true } }
architect
architectSystem design with Memory-based coordination.
Capabilities:
- Microservices architecture
- Event-driven design
- Domain-driven design (DDD)
- Hexagonal architecture
- CQRS and Event Sourcing
Memory Integration:
- Store architectural decisions
- Share component specifications
- Maintain design consistency
- Track architectural evolution
Design Patterns:
- Layered architecture
- Microservices patterns
- Event-driven patterns
- Domain modeling
- Infrastructure as Code
Usage:
mcp__claude-flow__sparc_mode { mode: "architect", task_description: "design scalable e-commerce platform", options: { detailed: true, memory_enabled: true, patterns: ["microservices", "event-driven"] } }
tdd
tddTest-driven development with comprehensive testing.
Capabilities:
- Test-first development
- Red-green-refactor cycle
- Test suite design
- Coverage optimization (target: 90%+)
- Continuous testing
TDD Workflow:
- Write failing test (RED)
- Implement minimum code
- Make test pass (GREEN)
- Refactor for quality (REFACTOR)
- Repeat cycle
Testing Strategies:
- Unit testing (Jest, Mocha, Vitest)
- Integration testing
- End-to-end testing (Playwright, Cypress)
- Performance testing
- Security testing
Usage:
mcp__claude-flow__sparc_mode { mode: "tdd", task_description: "shopping cart feature with payment integration", options: { coverage_target: 90, test_framework: "jest", e2e_framework: "playwright" } }
reviewer
reviewerCode review using batch file analysis.
Capabilities:
- Code quality assessment
- Security vulnerability detection
- Performance analysis
- Best practices validation
- Documentation review
Review Criteria:
- Code correctness and logic
- Design pattern adherence
- Comprehensive error handling
- Test coverage adequacy
- Maintainability and readability
- Security vulnerabilities
- Performance bottlenecks
Batch Analysis:
- Parallel file review
- Pattern detection
- Dependency checking
- Consistency validation
- Automated reporting
Usage:
mcp__claude-flow__sparc_mode { mode: "reviewer", task_description: "review authentication module PR #123", options: { security_check: true, performance_check: true, test_coverage_check: true } }
Analysis and Research Modes
researcher
researcherDeep research with parallel WebSearch/WebFetch and Memory coordination.
Capabilities:
- Comprehensive information gathering
- Source credibility evaluation
- Trend analysis and forecasting
- Competitive research
- Technology assessment
Research Methods:
- Parallel web searches
- Academic paper analysis
- Industry report synthesis
- Expert opinion gathering
- Statistical data compilation
Memory Integration:
- Store research findings with citations
- Build knowledge graphs
- Track information sources
- Cross-reference insights
- Maintain research history
Usage:
mcp__claude-flow__sparc_mode { mode: "researcher", task_description: "research microservices best practices 2024", options: { depth: "comprehensive", sources: ["academic", "industry", "news"], citations: true } }
analyzer
analyzerCode and data analysis with pattern recognition.
Capabilities:
- Static code analysis
- Dependency analysis
- Performance profiling
- Security scanning
- Data pattern recognition
optimizer
optimizerPerformance optimization and bottleneck resolution.
Capabilities:
- Algorithm optimization
- Database query tuning
- Caching strategy design
- Bundle size reduction
- Memory leak detection
Creative and Support Modes
designer
designerUI/UX design with accessibility focus.
Capabilities:
- Interface design
- User experience optimization
- Accessibility compliance (WCAG 2.1)
- Design system creation
- Responsive layout design
innovator
innovatorCreative problem-solving and novel solutions.
Capabilities:
- Brainstorming and ideation
- Alternative approach generation
- Technology evaluation
- Proof of concept development
- Innovation feasibility analysis
documenter
documenterComprehensive documentation generation.
Capabilities:
- API documentation (OpenAPI/Swagger)
- Architecture diagrams
- User guides and tutorials
- Code comments and JSDoc
- README and changelog maintenance
debugger
debuggerSystematic debugging and issue resolution.
Capabilities:
- Bug reproduction
- Root cause analysis
- Fix implementation
- Regression prevention
- Debug logging optimization
tester
testerComprehensive testing beyond TDD.
Capabilities:
- Test suite expansion
- Edge case identification
- Performance testing
- Load testing
- Chaos engineering
memory-manager
memory-managerKnowledge management and context preservation.
Capabilities:
- Cross-session memory persistence
- Knowledge graph construction
- Context restoration
- Learning pattern extraction
- Decision tracking
Activation Methods
Method 1: MCP Tools (Preferred in Claude Code)
Best for: Integrated Claude Code workflows with full orchestration capabilities
// Basic mode execution mcp__claude-flow__sparc_mode { mode: "<mode-name>", task_description: "<task description>", options: { // mode-specific options } } // Initialize swarm for complex tasks mcp__claude-flow__swarm_init { topology: "hierarchical", // or "mesh", "ring", "star" strategy: "auto", // or "balanced", "specialized", "adaptive" maxAgents: 8 } // Spawn specialized agents mcp__claude-flow__agent_spawn { type: "<agent-type>", capabilities: ["<capability1>", "<capability2>"] } // Monitor execution mcp__claude-flow__swarm_monitor { swarmId: "current", interval: 5000 }
Method 2: NPX CLI (Fallback)
Best for: Terminal usage or when MCP tools unavailable
# Execute specific mode npx claude-flow sparc run <mode> "task description" # Use alpha features npx claude-flow@alpha sparc run <mode> "task description" # List all available modes npx claude-flow sparc modes # Get help for specific mode npx claude-flow sparc help <mode> # Run with options npx claude-flow sparc run <mode> "task" --parallel --monitor # Execute TDD workflow npx claude-flow sparc tdd "feature description" # Batch execution npx claude-flow sparc batch <mode1,mode2,mode3> "task" # Pipeline execution npx claude-flow sparc pipeline "task description"
Method 3: Local Installation
Best for: Projects with local claude-flow installation
# If claude-flow is installed locally ./claude-flow sparc run <mode> "task description"
Orchestration Patterns
Pattern 1: Hierarchical Coordination
Best for: Complex projects with clear delegation hierarchy
// Initialize hierarchical swarm mcp__claude-flow__swarm_init { topology: "hierarchical", maxAgents: 12 } // Spawn coordinator mcp__claude-flow__agent_spawn { type: "coordinator", capabilities: ["planning", "delegation", "monitoring"] } // Spawn specialized workers mcp__claude-flow__agent_spawn { type: "architect" } mcp__claude-flow__agent_spawn { type: "coder" } mcp__claude-flow__agent_spawn { type: "tester" } mcp__claude-flow__agent_spawn { type: "reviewer" }
Pattern 2: Mesh Coordination
Best for: Collaborative tasks requiring peer-to-peer communication
mcp__claude-flow__swarm_init { topology: "mesh", strategy: "balanced", maxAgents: 6 }
Pattern 3: Sequential Pipeline
Best for: Ordered workflow execution (spec → design → code → test → review)
mcp__claude-flow__workflow_create { name: "development-pipeline", steps: [ { mode: "researcher", task: "gather requirements" }, { mode: "architect", task: "design system" }, { mode: "coder", task: "implement features" }, { mode: "tdd", task: "create tests" }, { mode: "reviewer", task: "review code" } ], triggers: ["on_step_complete"] }
Pattern 4: Parallel Execution
Best for: Independent tasks that can run concurrently
mcp__claude-flow__task_orchestrate { task: "build full-stack application", strategy: "parallel", dependencies: { backend: [], frontend: [], database: [], tests: ["backend", "frontend"] } }
Pattern 5: Adaptive Strategy
Best for: Dynamic workloads with changing requirements
mcp__claude-flow__swarm_init { topology: "hierarchical", strategy: "adaptive", // Auto-adjusts based on workload maxAgents: 20 }
TDD Workflows
Complete TDD Workflow
// Step 1: Initialize TDD swarm mcp__claude-flow__swarm_init { topology: "hierarchical", maxAgents: 8 } // Step 2: Research and planning mcp__claude-flow__sparc_mode { mode: "researcher", task_description: "research testing best practices for feature X" } // Step 3: Architecture design mcp__claude-flow__sparc_mode { mode: "architect", task_description: "design testable architecture for feature X" } // Step 4: TDD implementation mcp__claude-flow__sparc_mode { mode: "tdd", task_description: "implement feature X with 90% coverage", options: { coverage_target: 90, test_framework: "jest", parallel_tests: true } } // Step 5: Code review mcp__claude-flow__sparc_mode { mode: "reviewer", task_description: "review feature X implementation", options: { test_coverage_check: true, security_check: true } } // Step 6: Optimization mcp__claude-flow__sparc_mode { mode: "optimizer", task_description: "optimize feature X performance" }
Red-Green-Refactor Cycle
// RED: Write failing test mcp__claude-flow__sparc_mode { mode: "tester", task_description: "create failing test for shopping cart add item", options: { expect_failure: true } } // GREEN: Minimal implementation mcp__claude-flow__sparc_mode { mode: "coder", task_description: "implement minimal code to pass test", options: { minimal: true } } // REFACTOR: Improve code quality mcp__claude-flow__sparc_mode { mode: "coder", task_description: "refactor shopping cart implementation", options: { maintain_tests: true } }
Best Practices
1. Memory Integration
Always use Memory for cross-agent coordination:
// Store architectural decisions mcp__claude-flow__memory_usage { action: "store", namespace: "architecture", key: "api-design-v1", value: JSON.stringify(apiDesign), ttl: 86400000 // 24 hours } // Retrieve in subsequent agents mcp__claude-flow__memory_usage { action: "retrieve", namespace: "architecture", key: "api-design-v1" }
2. Parallel Operations
Batch all related operations in single message:
// ✅ CORRECT: All operations together [Single Message]: mcp__claude-flow__agent_spawn { type: "researcher" } mcp__claude-flow__agent_spawn { type: "coder" } mcp__claude-flow__agent_spawn { type: "tester" } TodoWrite { todos: [8-10 todos] } // ❌ WRONG: Multiple messages Message 1: mcp__claude-flow__agent_spawn { type: "researcher" } Message 2: mcp__claude-flow__agent_spawn { type: "coder" } Message 3: TodoWrite { todos: [...] }
3. Hook Integration
Every SPARC mode should use hooks:
# Before work npx claude-flow@alpha hooks pre-task --description "implement auth" # During work npx claude-flow@alpha hooks post-edit --file "auth.js" # After work npx claude-flow@alpha hooks post-task --task-id "task-123"
4. Test Coverage
Maintain minimum 90% coverage:
- Unit tests for all functions
- Integration tests for APIs
- E2E tests for critical flows
- Edge case coverage
- Error path testing
5. Documentation
Document as you build:
- API documentation (OpenAPI)
- Architecture decision records (ADR)
- Code comments for complex logic
- README with setup instructions
- Changelog for version tracking
6. File Organization
Never save to root folder:
project/ ├── src/ # Source code ├── tests/ # Test files ├── docs/ # Documentation ├── config/ # Configuration ├── scripts/ # Utility scripts └── examples/ # Example code
Integration Examples
Example 1: Full-Stack Development
[Single Message - Parallel Agent Execution]: // Initialize swarm mcp__claude-flow__swarm_init { topology: "hierarchical", maxAgents: 10 } // Architecture phase mcp__claude-flow__sparc_mode { mode: "architect", task_description: "design REST API with authentication", options: { memory_enabled: true } } // Research phase mcp__claude-flow__sparc_mode { mode: "researcher", task_description: "research authentication best practices" } // Implementation phase mcp__claude-flow__sparc_mode { mode: "coder", task_description: "implement Express API with JWT auth", options: { test_driven: true } } // Testing phase mcp__claude-flow__sparc_mode { mode: "tdd", task_description: "comprehensive API tests", options: { coverage_target: 90 } } // Review phase mcp__claude-flow__sparc_mode { mode: "reviewer", task_description: "security and performance review", options: { security_check: true } } // Batch todos TodoWrite { todos: [ {content: "Design API schema", status: "completed"}, {content: "Research JWT implementation", status: "completed"}, {content: "Implement authentication", status: "in_progress"}, {content: "Write API tests", status: "pending"}, {content: "Security review", status: "pending"}, {content: "Performance optimization", status: "pending"}, {content: "API documentation", status: "pending"}, {content: "Deployment setup", status: "pending"} ] }
Example 2: Research-Driven Innovation
// Research phase mcp__claude-flow__sparc_mode { mode: "researcher", task_description: "research AI-powered search implementations", options: { depth: "comprehensive", sources: ["academic", "industry"] } } // Innovation phase mcp__claude-flow__sparc_mode { mode: "innovator", task_description: "propose novel search algorithm", options: { memory_enabled: true } } // Architecture phase mcp__claude-flow__sparc_mode { mode: "architect", task_description: "design scalable search system" } // Implementation phase mcp__claude-flow__sparc_mode { mode: "coder", task_description: "implement search algorithm", options: { test_driven: true } } // Documentation phase mcp__claude-flow__sparc_mode { mode: "documenter", task_description: "document search system architecture and API" }
Example 3: Legacy Code Refactoring
// Analysis phase mcp__claude-flow__sparc_mode { mode: "analyzer", task_description: "analyze legacy codebase dependencies" } // Planning phase mcp__claude-flow__sparc_mode { mode: "orchestrator", task_description: "plan incremental refactoring strategy" } // Testing phase (create safety net) mcp__claude-flow__sparc_mode { mode: "tester", task_description: "create comprehensive test suite for legacy code", options: { coverage_target: 80 } } // Refactoring phase mcp__claude-flow__sparc_mode { mode: "coder", task_description: "refactor module X with modern patterns", options: { maintain_tests: true } } // Review phase mcp__claude-flow__sparc_mode { mode: "reviewer", task_description: "validate refactoring maintains functionality" }
Common Workflows
Workflow 1: Feature Development
# Step 1: Research and planning npx claude-flow sparc run researcher "authentication patterns" # Step 2: Architecture design npx claude-flow sparc run architect "design auth system" # Step 3: TDD implementation npx claude-flow sparc tdd "user authentication feature" # Step 4: Code review npx claude-flow sparc run reviewer "review auth implementation" # Step 5: Documentation npx claude-flow sparc run documenter "document auth API"
Workflow 2: Bug Investigation
# Step 1: Analyze issue npx claude-flow sparc run analyzer "investigate bug #456" # Step 2: Debug systematically npx claude-flow sparc run debugger "fix memory leak in service X" # Step 3: Create tests npx claude-flow sparc run tester "regression tests for bug #456" # Step 4: Review fix npx claude-flow sparc run reviewer "validate bug fix"
Workflow 3: Performance Optimization
# Step 1: Profile performance npx claude-flow sparc run analyzer "profile API response times" # Step 2: Identify bottlenecks npx claude-flow sparc run optimizer "optimize database queries" # Step 3: Implement improvements npx claude-flow sparc run coder "implement caching layer" # Step 4: Benchmark results npx claude-flow sparc run tester "performance benchmarks"
Workflow 4: Complete Pipeline
# Execute full development pipeline npx claude-flow sparc pipeline "e-commerce checkout feature" # This automatically runs: # 1. researcher - Gather requirements # 2. architect - Design system # 3. coder - Implement features # 4. tdd - Create comprehensive tests # 5. reviewer - Code quality review # 6. optimizer - Performance tuning # 7. documenter - Documentation
Advanced Features
Neural Pattern Training
// Train patterns from successful workflows mcp__claude-flow__neural_train { pattern_type: "coordination", training_data: "successful_tdd_workflow.json", epochs: 50 }
Cross-Session Memory
// Save session state mcp__claude-flow__memory_persist { sessionId: "feature-auth-v1" } // Restore in new session mcp__claude-flow__context_restore { snapshotId: "feature-auth-v1" }
GitHub Integration
// Analyze repository mcp__claude-flow__github_repo_analyze { repo: "owner/repo", analysis_type: "code_quality" } // Manage pull requests mcp__claude-flow__github_pr_manage { repo: "owner/repo", pr_number: 123, action: "review" }
Performance Monitoring
// Real-time swarm monitoring mcp__claude-flow__swarm_monitor { swarmId: "current", interval: 5000 } // Bottleneck analysis mcp__claude-flow__bottleneck_analyze { component: "api-layer", metrics: ["latency", "throughput", "errors"] } // Token usage tracking mcp__claude-flow__token_usage { operation: "feature-development", timeframe: "24h" }
Performance Benefits
Proven Results:
- 84.8% SWE-Bench solve rate
- 32.3% token reduction through optimizations
- 2.8-4.4x speed improvement with parallel execution
- 27+ neural models for pattern learning
- 90%+ test coverage standard
Support and Resources
- Documentation: https://github.com/ruvnet/claude-flow
- Issues: https://github.com/ruvnet/claude-flow/issues
- NPM Package: https://www.npmjs.com/package/claude-flow
- Community: Discord server (link in repository)
Quick Reference
Most Common Commands
# List modes npx claude-flow sparc modes # Run specific mode npx claude-flow sparc run <mode> "task" # TDD workflow npx claude-flow sparc tdd "feature" # Full pipeline npx claude-flow sparc pipeline "task" # Batch execution npx claude-flow sparc batch <modes> "task"
Most Common MCP Calls
// Initialize swarm mcp__claude-flow__swarm_init { topology: "hierarchical" } // Execute mode mcp__claude-flow__sparc_mode { mode: "coder", task_description: "..." } // Monitor progress mcp__claude-flow__swarm_monitor { interval: 5000 } // Store in memory mcp__claude-flow__memory_usage { action: "store", key: "...", value: "..." }
Remember: SPARC = Systematic, Parallel, Agile, Refined, Complete