Claude-code-flow flow-nexus-swarm
Cloud-based AI swarm deployment and event-driven workflow automation with Flow Nexus platform
git clone https://github.com/ruvnet/ruflo
T=$(mktemp -d) && git clone --depth=1 https://github.com/ruvnet/ruflo "$T" && mkdir -p ~/.claude/skills && cp -r "$T/.agents/skills/flow-nexus-swarm" ~/.claude/skills/ruvnet-claude-code-flow-flow-nexus-swarm && rm -rf "$T"
.agents/skills/flow-nexus-swarm/SKILL.mdFlow Nexus Swarm & Workflow Orchestration
Deploy and manage cloud-based AI agent swarms with event-driven workflow automation, message queue processing, and intelligent agent coordination.
📋 Table of Contents
- Overview
- Swarm Management
- Workflow Automation
- Agent Orchestration
- Templates & Patterns
- Advanced Features
- Best Practices
Overview
Flow Nexus provides cloud-based orchestration for AI agent swarms with:
- Multi-topology Support: Hierarchical, mesh, ring, and star architectures
- Event-driven Workflows: Message queue processing with async execution
- Template Library: Pre-built swarm configurations for common use cases
- Intelligent Agent Assignment: Vector similarity matching for optimal agent selection
- Real-time Monitoring: Comprehensive metrics and audit trails
- Scalable Infrastructure: Cloud-based execution with auto-scaling
Swarm Management
Initialize Swarm
Create a new swarm with specified topology and configuration:
mcp__flow-nexus__swarm_init({ topology: "hierarchical", // Options: mesh, ring, star, hierarchical maxAgents: 8, strategy: "balanced" // Options: balanced, specialized, adaptive })
Topology Guide:
- Hierarchical: Tree structure with coordinator nodes (best for complex projects)
- Mesh: Peer-to-peer collaboration (best for research and analysis)
- Ring: Circular coordination (best for sequential workflows)
- Star: Centralized hub (best for simple delegation)
Strategy Guide:
- Balanced: Equal distribution of workload across agents
- Specialized: Agents focus on specific expertise areas
- Adaptive: Dynamic adjustment based on task complexity
Spawn Agents
Add specialized agents to the swarm:
mcp__flow-nexus__agent_spawn({ type: "researcher", // Options: researcher, coder, analyst, optimizer, coordinator name: "Lead Researcher", capabilities: ["web_search", "analysis", "summarization"] })
Agent Types:
- Researcher: Information gathering, web search, analysis
- Coder: Code generation, refactoring, implementation
- Analyst: Data analysis, pattern recognition, insights
- Optimizer: Performance tuning, resource optimization
- Coordinator: Task delegation, progress tracking, integration
Orchestrate Tasks
Distribute tasks across the swarm:
mcp__flow-nexus__task_orchestrate({ task: "Build a REST API with authentication and database integration", strategy: "parallel", // Options: parallel, sequential, adaptive maxAgents: 5, priority: "high" // Options: low, medium, high, critical })
Execution Strategies:
- Parallel: Maximum concurrency for independent subtasks
- Sequential: Step-by-step execution with dependencies
- Adaptive: AI-powered strategy selection based on task analysis
Monitor & Scale Swarms
// Get detailed swarm status mcp__flow-nexus__swarm_status({ swarm_id: "optional-id" // Uses active swarm if not provided }) // List all active swarms mcp__flow-nexus__swarm_list({ status: "active" // Options: active, destroyed, all }) // Scale swarm up or down mcp__flow-nexus__swarm_scale({ target_agents: 10, swarm_id: "optional-id" }) // Gracefully destroy swarm mcp__flow-nexus__swarm_destroy({ swarm_id: "optional-id" })
Workflow Automation
Create Workflow
Define event-driven workflows with message queue processing:
mcp__flow-nexus__workflow_create({ name: "CI/CD Pipeline", description: "Automated testing, building, and deployment", steps: [ { id: "test", action: "run_tests", agent: "tester", parallel: true }, { id: "build", action: "build_app", agent: "builder", depends_on: ["test"] }, { id: "deploy", action: "deploy_prod", agent: "deployer", depends_on: ["build"] } ], triggers: ["push_to_main", "manual_trigger"], metadata: { priority: 10, retry_policy: "exponential_backoff" } })
Workflow Features:
- Dependency Management: Define step dependencies with
depends_on - Parallel Execution: Set
for concurrent stepsparallel: true - Event Triggers: GitHub events, schedules, manual triggers
- Retry Policies: Automatic retry on transient failures
- Priority Queuing: High-priority workflows execute first
Execute Workflow
Run workflows synchronously or asynchronously:
mcp__flow-nexus__workflow_execute({ workflow_id: "workflow_id", input_data: { branch: "main", commit: "abc123", environment: "production" }, async: true // Queue-based execution for long-running workflows })
Execution Modes:
- Sync (async: false): Immediate execution, wait for completion
- Async (async: true): Message queue processing, non-blocking
Monitor Workflows
// Get workflow status and metrics mcp__flow-nexus__workflow_status({ workflow_id: "id", execution_id: "specific-run-id", // Optional include_metrics: true }) // List workflows with filters mcp__flow-nexus__workflow_list({ status: "running", // Options: running, completed, failed, pending limit: 10, offset: 0 }) // Get complete audit trail mcp__flow-nexus__workflow_audit_trail({ workflow_id: "id", limit: 50, start_time: "2025-01-01T00:00:00Z" })
Agent Assignment
Intelligently assign agents to workflow tasks:
mcp__flow-nexus__workflow_agent_assign({ task_id: "task_id", agent_type: "coder", // Preferred agent type use_vector_similarity: true // AI-powered capability matching })
Vector Similarity Matching:
- Analyzes task requirements and agent capabilities
- Finds optimal agent based on past performance
- Considers workload and availability
Queue Management
Monitor and manage message queues:
mcp__flow-nexus__workflow_queue_status({ queue_name: "optional-specific-queue", include_messages: true // Show pending messages })
Agent Orchestration
Full-Stack Development Pattern
// 1. Initialize swarm with hierarchical topology mcp__flow-nexus__swarm_init({ topology: "hierarchical", maxAgents: 8, strategy: "specialized" }) // 2. Spawn specialized agents mcp__flow-nexus__agent_spawn({ type: "coordinator", name: "Project Manager" }) mcp__flow-nexus__agent_spawn({ type: "coder", name: "Backend Developer" }) mcp__flow-nexus__agent_spawn({ type: "coder", name: "Frontend Developer" }) mcp__flow-nexus__agent_spawn({ type: "coder", name: "Database Architect" }) mcp__flow-nexus__agent_spawn({ type: "analyst", name: "QA Engineer" }) // 3. Create development workflow mcp__flow-nexus__workflow_create({ name: "Full-Stack Development", steps: [ { id: "requirements", action: "analyze_requirements", agent: "coordinator" }, { id: "db_design", action: "design_schema", agent: "Database Architect" }, { id: "backend", action: "build_api", agent: "Backend Developer", depends_on: ["db_design"] }, { id: "frontend", action: "build_ui", agent: "Frontend Developer", depends_on: ["requirements"] }, { id: "integration", action: "integrate", agent: "Backend Developer", depends_on: ["backend", "frontend"] }, { id: "testing", action: "qa_testing", agent: "QA Engineer", depends_on: ["integration"] } ] }) // 4. Execute workflow mcp__flow-nexus__workflow_execute({ workflow_id: "workflow_id", input_data: { project: "E-commerce Platform", tech_stack: ["Node.js", "React", "PostgreSQL"] } })
Research & Analysis Pattern
// 1. Initialize mesh topology for collaborative research mcp__flow-nexus__swarm_init({ topology: "mesh", maxAgents: 5, strategy: "balanced" }) // 2. Spawn research agents mcp__flow-nexus__agent_spawn({ type: "researcher", name: "Primary Researcher" }) mcp__flow-nexus__agent_spawn({ type: "researcher", name: "Secondary Researcher" }) mcp__flow-nexus__agent_spawn({ type: "analyst", name: "Data Analyst" }) mcp__flow-nexus__agent_spawn({ type: "analyst", name: "Insights Analyst" }) // 3. Orchestrate research task mcp__flow-nexus__task_orchestrate({ task: "Research machine learning trends for 2025 and analyze market opportunities", strategy: "parallel", maxAgents: 4, priority: "high" })
CI/CD Pipeline Pattern
mcp__flow-nexus__workflow_create({ name: "Deployment Pipeline", description: "Automated testing, building, and multi-environment deployment", steps: [ { id: "lint", action: "lint_code", agent: "code_quality", parallel: true }, { id: "unit_test", action: "unit_tests", agent: "test_runner", parallel: true }, { id: "integration_test", action: "integration_tests", agent: "test_runner", parallel: true }, { id: "build", action: "build_artifacts", agent: "builder", depends_on: ["lint", "unit_test", "integration_test"] }, { id: "security_scan", action: "security_scan", agent: "security", depends_on: ["build"] }, { id: "deploy_staging", action: "deploy", agent: "deployer", depends_on: ["security_scan"] }, { id: "smoke_test", action: "smoke_tests", agent: "test_runner", depends_on: ["deploy_staging"] }, { id: "deploy_prod", action: "deploy", agent: "deployer", depends_on: ["smoke_test"] } ], triggers: ["github_push", "github_pr_merged"], metadata: { priority: 10, auto_rollback: true } })
Data Processing Pipeline Pattern
mcp__flow-nexus__workflow_create({ name: "ETL Pipeline", description: "Extract, Transform, Load data processing", steps: [ { id: "extract", action: "extract_data", agent: "data_extractor" }, { id: "validate_raw", action: "validate_data", agent: "validator", depends_on: ["extract"] }, { id: "transform", action: "transform_data", agent: "transformer", depends_on: ["validate_raw"] }, { id: "enrich", action: "enrich_data", agent: "enricher", depends_on: ["transform"] }, { id: "load", action: "load_data", agent: "loader", depends_on: ["enrich"] }, { id: "validate_final", action: "validate_data", agent: "validator", depends_on: ["load"] } ], triggers: ["schedule:0 2 * * *"], // Daily at 2 AM metadata: { retry_policy: "exponential_backoff", max_retries: 3 } })
Templates & Patterns
Use Pre-built Templates
// Create swarm from template mcp__flow-nexus__swarm_create_from_template({ template_name: "full-stack-dev", overrides: { maxAgents: 6, strategy: "specialized" } }) // List available templates mcp__flow-nexus__swarm_templates_list({ category: "quickstart", // Options: quickstart, specialized, enterprise, custom, all includeStore: true })
Available Template Categories:
Quickstart Templates:
: Complete web development swarmfull-stack-dev
: Research and analysis swarmresearch-team
: Automated code review swarmcode-review
: ETL and data processingdata-pipeline
Specialized Templates:
: Machine learning project swarmml-development
: Mobile app developmentmobile-dev
: Infrastructure and deploymentdevops-automation
: Security analysis and testingsecurity-audit
Enterprise Templates:
: Large-scale system migrationenterprise-migration
: Multi-repository coordinationmulti-repo-sync
: Regulatory compliance workflowscompliance-review
: Automated incident managementincident-response
Custom Template Creation
Save successful swarm configurations as reusable templates for future projects.
Advanced Features
Real-time Monitoring
// Subscribe to execution streams mcp__flow-nexus__execution_stream_subscribe({ stream_type: "claude-flow-swarm", deployment_id: "deployment_id" }) // Get execution status mcp__flow-nexus__execution_stream_status({ stream_id: "stream_id" }) // List files created during execution mcp__flow-nexus__execution_files_list({ stream_id: "stream_id", created_by: "claude-flow" })
Swarm Metrics & Analytics
// Get swarm performance metrics mcp__flow-nexus__swarm_status({ swarm_id: "id" }) // Analyze workflow efficiency mcp__flow-nexus__workflow_status({ workflow_id: "id", include_metrics: true })
Multi-Swarm Coordination
Coordinate multiple swarms for complex, multi-phase projects:
// Phase 1: Research swarm const researchSwarm = await mcp__flow-nexus__swarm_init({ topology: "mesh", maxAgents: 4 }) // Phase 2: Development swarm const devSwarm = await mcp__flow-nexus__swarm_init({ topology: "hierarchical", maxAgents: 8 }) // Phase 3: Testing swarm const testSwarm = await mcp__flow-nexus__swarm_init({ topology: "star", maxAgents: 5 })
Best Practices
1. Choose the Right Topology
// Simple projects: Star mcp__flow-nexus__swarm_init({ topology: "star", maxAgents: 3 }) // Collaborative work: Mesh mcp__flow-nexus__swarm_init({ topology: "mesh", maxAgents: 5 }) // Complex projects: Hierarchical mcp__flow-nexus__swarm_init({ topology: "hierarchical", maxAgents: 10 }) // Sequential workflows: Ring mcp__flow-nexus__swarm_init({ topology: "ring", maxAgents: 4 })
2. Optimize Agent Assignment
// Use vector similarity for optimal matching mcp__flow-nexus__workflow_agent_assign({ task_id: "complex-task", use_vector_similarity: true })
3. Implement Proper Error Handling
mcp__flow-nexus__workflow_create({ name: "Resilient Workflow", steps: [...], metadata: { retry_policy: "exponential_backoff", max_retries: 3, timeout: 300000, // 5 minutes on_failure: "notify_and_rollback" } })
4. Monitor and Scale
// Regular monitoring const status = await mcp__flow-nexus__swarm_status() // Scale based on workload if (status.workload > 0.8) { await mcp__flow-nexus__swarm_scale({ target_agents: status.agents + 2 }) }
5. Use Async Execution for Long-Running Workflows
// Long-running workflows should use message queues mcp__flow-nexus__workflow_execute({ workflow_id: "data-pipeline", async: true // Non-blocking execution }) // Monitor progress mcp__flow-nexus__workflow_queue_status({ include_messages: true })
6. Clean Up Resources
// Destroy swarm when complete mcp__flow-nexus__swarm_destroy({ swarm_id: "id" })
7. Leverage Templates
// Use proven templates instead of building from scratch mcp__flow-nexus__swarm_create_from_template({ template_name: "code-review", overrides: { maxAgents: 4 } })
Integration with Claude Flow
Flow Nexus swarms integrate seamlessly with Claude Flow hooks:
# Pre-task coordination setup npx claude-flow@alpha hooks pre-task --description "Initialize swarm" # Post-task metrics export npx claude-flow@alpha hooks post-task --task-id "swarm-execution"
Common Use Cases
1. Multi-Repo Development
- Coordinate development across multiple repositories
- Synchronized testing and deployment
- Cross-repo dependency management
2. Research Projects
- Distributed information gathering
- Parallel analysis of different data sources
- Collaborative synthesis and reporting
3. DevOps Automation
- Infrastructure as Code deployment
- Multi-environment testing
- Automated rollback and recovery
4. Code Quality Workflows
- Automated code review
- Security scanning
- Performance benchmarking
5. Data Processing
- Large-scale ETL pipelines
- Real-time data transformation
- Data validation and quality checks
Authentication & Setup
# Install Flow Nexus npm install -g flow-nexus@latest # Register account npx flow-nexus@latest register # Login npx flow-nexus@latest login # Add MCP server to Claude Code claude mcp add flow-nexus npx flow-nexus@latest mcp start
Support & Resources
- Platform: https:/$flow-nexus.ruv.io
- Documentation: https:/$github.com$ruvnet$flow-nexus
- Issues: https:/$github.com$ruvnet$flow-nexus$issues
Remember: Flow Nexus provides cloud-based orchestration infrastructure. For local execution and coordination, use the core
claude-flow MCP server alongside Flow Nexus for maximum flexibility.