sparc-methodology
关于
The SPARC methodology provides a systematic development framework with 17 specialized modes for comprehensive software development from specification to completion. It integrates multi-agent orchestration to handle complex development workflows including architecture design, testing, and deployment. Use this skill when you need structured guidance throughout the entire development lifecycle with automated agent coordination.
技能文档
SPARC 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
Multi-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
Specialized 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
Process 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
Parallel task execution for high-throughput operations.
Capabilities:
- Concurrent file operations
- Batch processing optimization
- Resource pooling
- Load balancing
- Progress aggregation
Development Modes
coder
Autonomous 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
System 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
Test-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
Code 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
Deep 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
Code and data analysis with pattern recognition.
Capabilities:
- Static code analysis
- Dependency analysis
- Performance profiling
- Security scanning
- Data pattern recognition
optimizer
Performance optimization and bottleneck resolution.
Capabilities:
- Algorithm optimization
- Database query tuning
- Caching strategy design
- Bundle size reduction
- Memory leak detection
Creative and Support Modes
designer
UI/UX design with accessibility focus.
Capabilities:
- Interface design
- User experience optimization
- Accessibility compliance (WCAG 2.1)
- Design system creation
- Responsive layout design
innovator
Creative problem-solving and novel solutions.
Capabilities:
- Brainstorming and ideation
- Alternative approach generation
- Technology evaluation
- Proof of concept development
- Innovation feasibility analysis
documenter
Comprehensive documentation generation.
Capabilities:
- API documentation (OpenAPI/Swagger)
- Architecture diagrams
- User guides and tutorials
- Code comments and JSDoc
- README and changelog maintenance
debugger
Systematic debugging and issue resolution.
Capabilities:
- Bug reproduction
- Root cause analysis
- Fix implementation
- Regression prevention
- Debug logging optimization
tester
Comprehensive testing beyond TDD.
Capabilities:
- Test suite expansion
- Edge case identification
- Performance testing
- Load testing
- Chaos engineering
memory-manager
Knowledge 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__memory_triple__memory_store {
text: "...",
metadata: {
key: "...",
namespace: "default",
layer: "mid_term"
}
}
Remember: SPARC = Systematic, Parallel, Agile, Refined, Complete
快速安装
/plugin add https://github.com/DNYoussef/ai-chrome-extension/tree/main/sparc-methodology在 Claude Code 中复制并粘贴此命令以安装该技能
GitHub 仓库
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