| name | hive-mind-advanced |
| description | Advanced Hive Mind collective intelligence system for queen-led multi-agent coordination with consensus mechanisms and persistent memory |
| version | 1.0.0 |
| category | coordination |
| tags | ["hive-mind","swarm","queen-worker","consensus","collective-intelligence","multi-agent","coordination"] |
| author | Claude Flow Team |
Hive Mind Advanced Skill
Master the advanced Hive Mind collective intelligence system for sophisticated multi-agent coordination using queen-led architecture, Byzantine consensus, and collective memory.
Overview
The Hive Mind system represents the pinnacle of multi-agent coordination in Claude Flow, implementing a queen-led hierarchical architecture where a strategic queen coordinator directs specialized worker agents through collective decision-making and shared memory.
Core Concepts
Architecture Patterns
Queen-Led Coordination
- Strategic queen agents orchestrate high-level objectives
- Tactical queens manage mid-level execution
- Adaptive queens dynamically adjust strategies based on performance
Worker Specialization
- Researcher agents: Analysis and investigation
- Coder agents: Implementation and development
- Analyst agents: Data processing and metrics
- Tester agents: Quality assurance and validation
- Architect agents: System design and planning
- Reviewer agents: Code review and improvement
- Optimizer agents: Performance enhancement
- Documenter agents: Documentation generation
Collective Memory System
- Shared knowledge base across all agents
- LRU cache with memory pressure handling
- SQLite persistence with WAL mode
- Memory consolidation and association
- Access pattern tracking and optimization
Consensus Mechanisms
Majority Consensus
Simple voting where the option with most votes wins.
Weighted Consensus
Queen vote counts as 3x weight, providing strategic guidance.
Byzantine Fault Tolerance
Requires 2/3 majority for decision approval, ensuring robust consensus even with faulty agents.
Getting Started
1. Initialize Hive Mind
npx claude-flow hive-mind init
npx claude-flow hive-mind init --force
npx claude-flow hive-mind init --config hive-config.json
2. Spawn a Swarm
npx claude-flow hive-mind spawn "Build microservices architecture"
npx claude-flow hive-mind spawn "Research AI patterns" --queen-type strategic
npx claude-flow hive-mind spawn "Implement API" --queen-type tactical --max-workers 12
npx claude-flow hive-mind spawn "Optimize system" --queen-type adaptive --consensus byzantine
npx claude-flow hive-mind spawn "Build full-stack app" --claude
3. Monitor Status
npx claude-flow hive-mind status
npx claude-flow hive-mind metrics
npx claude-flow hive-mind memory
Advanced Workflows
Session Management
Create and Manage Sessions
npx claude-flow hive-mind sessions
npx claude-flow hive-mind pause <session-id>
npx claude-flow hive-mind resume <session-id>
npx claude-flow hive-mind stop <session-id>
Session Features
- Automatic checkpoint creation
- Progress tracking with completion percentages
- Parent-child process management
- Session logs with event tracking
- Export$import capabilities
Consensus Building
The Hive Mind builds consensus through structured voting:
const decision = await hiveMind.buildConsensus(
'Architecture pattern selection',
['microservices', 'monolith', 'serverless']
);
Consensus Algorithms
- Majority - Simple democratic voting
- Weighted - Queen has 3x voting power
- Byzantine - 2/3 supermajority required
Collective Memory
Storing Knowledge
await memory.store('api-patterns', {
rest: { pros: [...], cons: [...] },
graphql: { pros: [...], cons: [...] }
}, 'knowledge', { confidence: 0.95 });
Memory Types
knowledge: Permanent insights (no TTL)
context: Session context (1 hour TTL)
task: Task-specific data (30 min TTL)
result: Execution results (permanent, compressed)
error: Error logs (24 hour TTL)
metric: Performance metrics (1 hour TTL)
consensus: Decision records (permanent)
system: System configuration (permanent)
Searching and Retrieval
const results = await memory.search('api*', {
type: 'knowledge',
minConfidence: 0.8,
limit: 50
});
const related = await memory.getRelated('api-patterns', 10);
await memory.associate('rest-api', 'authentication', 0.9);
Task Distribution
Automatic Worker Assignment
The system intelligently assigns tasks based on:
- Keyword matching with agent specialization
- Historical performance metrics
- Worker availability and load
- Task complexity analysis
const task = await hiveMind.createTask(
'Implement user authentication',
priority: 8,
{ estimatedDuration: 30000 }
);
Auto-Scaling
const config = {
autoScale: true,
maxWorkers: 12,
scaleUpThreshold: 2,
scaleDownThreshold: 2
};
Integration Patterns
With Claude Code
Generate Claude Code spawn commands directly:
npx claude-flow hive-mind spawn "Build REST API" --claude
Output:
Task("Queen Coordinator", "Orchestrate REST API development...", "coordinator")
Task("Backend Developer", "Implement Express routes...", "backend-dev")
Task("Database Architect", "Design PostgreSQL schema...", "code-analyzer")
Task("Test Engineer", "Create Jest test suite...", "tester")
With SPARC Methodology
npx claude-flow sparc tdd "User authentication" --hive-mind
With GitHub Integration
npx claude-flow hive-mind spawn "Analyze repo quality" --objective "owner$repo"
npx claude-flow hive-mind spawn "Review PR #123" --queen-type tactical
Performance Optimization
Memory Optimization
The collective memory system includes advanced optimizations:
LRU Cache
- Configurable cache size (default: 1000 entries)
- Memory pressure handling (default: 50MB)
- Automatic eviction of least-used entries
Database Optimization
- WAL (Write-Ahead Logging) mode
- 64MB cache size
- 256MB memory mapping
- Prepared statements for common queries
- Automatic ANALYZE and OPTIMIZE
Object Pooling
- Query result pooling
- Memory entry pooling
- Reduced garbage collection pressure
Performance Metrics
const insights = hiveMind.getPerformanceInsights();
Task Execution
Parallel Processing
- Batch agent spawning (5 agents per batch)
- Concurrent task orchestration
- Async operation optimization
- Non-blocking task assignment
Benchmarks
- 10-20x faster batch spawning
- 2.8-4.4x speed improvement overall
- 32.3% token reduction
- 84.8% SWE-Bench solve rate
Configuration
Hive Mind Config
{
"objective": "Build microservices",
"name": "my-hive",
"queenType": "strategic",
"maxWorkers": 8,
"consensusAlgorithm": "byzantine",
"autoScale": true,
"memorySize": 100,
"taskTimeout": 60,
"encryption": false
}
Memory Config
{
"maxSize": 100,
"compressionThreshold": 1024,
"gcInterval": 300000,
"cacheSize": 1000,
"cacheMemoryMB": 50,
"enablePooling": true,
"enableAsyncOperations": true
}
Hooks Integration
Hive Mind integrates with Claude Flow hooks for automation:
Pre-Task Hooks
- Auto-assign agents by file type
- Validate objective complexity
- Optimize topology selection
- Cache search patterns
Post-Task Hooks
- Auto-format deliverables
- Train neural patterns
- Update collective memory
- Analyze performance bottlenecks
Session Hooks
- Generate session summaries
- Persist checkpoint data
- Track comprehensive metrics
- Restore execution context
Best Practices
1. Choose the Right Queen Type
Strategic Queens - For research, planning, and analysis
npx claude-flow hive-mind spawn "Research ML frameworks" --queen-type strategic
Tactical Queens - For implementation and execution
npx claude-flow hive-mind spawn "Build authentication" --queen-type tactical
Adaptive Queens - For optimization and dynamic tasks
npx claude-flow hive-mind spawn "Optimize performance" --queen-type adaptive
2. Leverage Consensus
Use consensus for critical decisions:
- Architecture pattern selection
- Technology stack choices
- Implementation approach
- Code review approval
- Release readiness
3. Utilize Collective Memory
Store Learnings
await memory.store('auth-pattern', {
approach: 'JWT with refresh tokens',
pros: ['Stateless', 'Scalable'],
cons: ['Token size', 'Revocation complexity'],
implementation: {...}
}, 'knowledge', { confidence: 0.95 });
Build Associations
await memory.associate('jwt-auth', 'refresh-tokens', 0.9);
await memory.associate('jwt-auth', 'oauth2', 0.7);
4. Monitor Performance
npx claude-flow hive-mind status
npx claude-flow hive-mind metrics
npx claude-flow hive-mind memory
5. Session Management
Checkpoint Frequently
await sessionManager.saveCheckpoint(
sessionId,
'api-routes-complete',
{ completedRoutes: [...], remaining: [...] }
);
Resume Sessions
npx claude-flow hive-mind resume <session-id>
Troubleshooting
Memory Issues
High Memory Usage
npx claude-flow hive-mind memory --gc
npx claude-flow hive-mind memory --optimize
npx claude-flow hive-mind memory --export --clear
Low Cache Hit Rate
{
"cacheSize": 2000,
"cacheMemoryMB": 100
}
Performance Issues
Slow Task Assignment
High Queue Utilization
{
"asyncQueueConcurrency": 20
}
Consensus Failures
No Consensus Reached (Byzantine)
npx claude-flow hive-mind spawn "..." --consensus weighted
npx claude-flow hive-mind spawn "..." --consensus majority
Advanced Topics
Custom Worker Types
Define specialized workers in .claude.agents/:
name: security-auditor
type: specialist
capabilities:
- vulnerability-scanning
- security-review
- penetration-testing
- compliance-checking
priority: high
Neural Pattern Training
The system trains on successful patterns:
Multi-Hive Coordination
Run multiple hive minds simultaneously:
npx claude-flow hive-mind spawn "Build UI" --name frontend-hive
npx claude-flow hive-mind spawn "Build API" --name backend-hive
Export/Import Sessions
npx claude-flow hive-mind export <session-id> --output backup.json
npx claude-flow hive-mind import backup.json
API Reference
HiveMindCore
const hiveMind = new HiveMindCore({
objective: 'Build system',
queenType: 'strategic',
maxWorkers: 8,
consensusAlgorithm: 'byzantine'
});
await hiveMind.initialize();
await hiveMind.spawnQueen(queenData);
await hiveMind.spawnWorkers(['coder', 'tester']);
await hiveMind.createTask('Implement feature', 7);
const decision = await hiveMind.buildConsensus('topic', options);
const status = hiveMind.getStatus();
await hiveMind.shutdown();
CollectiveMemory
const memory = new CollectiveMemory({
swarmId: 'hive-123',
maxSize: 100,
cacheSize: 1000
});
await memory.store(key, value, type, metadata);
const data = await memory.retrieve(key);
const results = await memory.search(pattern, options);
const related = await memory.getRelated(key, limit);
await memory.associate(key1, key2, strength);
const stats = memory.getStatistics();
const analytics = memory.getAnalytics();
const health = await memory.healthCheck();
HiveMindSessionManager
const sessionManager = new HiveMindSessionManager();
const sessionId = await sessionManager.createSession(
swarmId, swarmName, objective, metadata
);
await sessionManager.saveCheckpoint(sessionId, name, data);
const sessions = await sessionManager.getActiveSessions();
const session = await sessionManager.getSession(sessionId);
await sessionManager.pauseSession(sessionId);
await sessionManager.resumeSession(sessionId);
await sessionManager.stopSession(sessionId);
await sessionManager.completeSession(sessionId);
Examples
Full-Stack Development
npx claude-flow hive-mind init
npx claude-flow hive-mind spawn "Build e-commerce platform" \
--queen-type strategic \
--max-workers 10 \
--consensus weighted \
--claude
Research and Analysis
npx claude-flow hive-mind spawn "Research GraphQL vs REST" \
--queen-type adaptive \
--consensus byzantine
Code Review
npx claude-flow hive-mind spawn "Review PR #456" \
--queen-type tactical \
--max-workers 6
Skill Progression
Beginner
- Initialize hive mind
- Spawn basic swarms
- Monitor status
- Use majority consensus
Intermediate
- Configure queen types
- Implement session management
- Use weighted consensus
- Access collective memory
- Enable auto-scaling
Advanced
- Byzantine fault tolerance
- Memory optimization
- Custom worker types
- Multi-hive coordination
- Neural pattern training
- Session export$import
- Performance tuning
Related Skills
swarm-orchestration: Basic swarm coordination
consensus-mechanisms: Distributed decision making
memory-systems: Advanced memory management
sparc-methodology: Structured development workflow
github-integration: Repository coordination
References
Skill Version: 1.0.0
Last Updated: 2025-10-19
Maintained By: Claude Flow Team
License: MIT