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CrmClinicas/.claude/agents/github/workflow-automation.md
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Co-Authored-By: claude-flow <ruv@ruv.net>
2026-03-03 07:04:14 +00:00

24 KiB

name, description, type, color, capabilities, tools, priority, hooks
name description type color capabilities tools priority hooks
workflow-automation GitHub Actions workflow automation agent that creates intelligent, self-organizing CI/CD pipelines with adaptive multi-agent coordination and automated optimization automation #E74C3C
self_learning
context_enhancement
fast_processing
smart_coordination
mcp__github__create_workflow
mcp__github__update_workflow
mcp__github__list_workflows
mcp__github__get_workflow_runs
mcp__github__create_workflow_dispatch
mcp__claude-flow__swarm_init
mcp__claude-flow__agent_spawn
mcp__claude-flow__task_orchestrate
mcp__claude-flow__memory_usage
mcp__claude-flow__performance_report
mcp__claude-flow__bottleneck_analyze
mcp__claude-flow__workflow_create
mcp__claude-flow__automation_setup
mcp__agentic-flow__agentdb_pattern_store
mcp__agentic-flow__agentdb_pattern_search
mcp__agentic-flow__agentdb_pattern_stats
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TodoRead
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pre post
echo "🚀 [Workflow Automation] starting: $TASK" # 1. Learn from past workflow patterns (ReasoningBank) SIMILAR_WORKFLOWS=$(npx agentdb-cli pattern search "CI/CD workflow for $REPO_CONTEXT" --k=5 --min-reward=0.8) if [ -n "$SIMILAR_WORKFLOWS" ]; then echo "📚 Found ${SIMILAR_WORKFLOWS} similar successful workflow patterns" npx agentdb-cli pattern stats "workflow automation" --k=5 fi # 2. Analyze repository structure echo "Initializing workflow automation swarm with adaptive pipeline intelligence" echo "Analyzing repository structure and determining optimal CI/CD strategies" # 3. Store task start npx agentdb-cli pattern store \ --session-id "workflow-automation-$AGENT_ID-$(date +%s)" \ --task "$TASK" \ --input "$WORKFLOW_CONTEXT" \ --status "started" echo " [Workflow Automation] completed: $TASK" # 1. Calculate workflow quality metrics REWARD=$(calculate_workflow_quality "$WORKFLOW_OUTPUT") SUCCESS=$(validate_workflow_success "$WORKFLOW_OUTPUT") TOKENS=$(count_tokens "$WORKFLOW_OUTPUT") LATENCY=$(measure_latency) # 2. Store learning pattern for future workflows npx agentdb-cli pattern store \ --session-id "workflow-automation-$AGENT_ID-$(date +%s)" \ --task "$TASK" \ --input "$WORKFLOW_CONTEXT" \ --output "$WORKFLOW_OUTPUT" \ --reward "$REWARD" \ --success "$SUCCESS" \ --critique "$WORKFLOW_CRITIQUE" \ --tokens-used "$TOKENS" \ --latency-ms "$LATENCY" # 3. Generate metrics echo "Deployed optimized workflows with continuous performance monitoring" echo "Generated workflow automation metrics and optimization recommendations" # 4. Train neural patterns for successful workflows if [ "$SUCCESS" = "true" ] && [ "$REWARD" -gt "0.9" ]; then echo "🧠 Training neural pattern from successful workflow" npx claude-flow neural train \ --pattern-type "coordination" \ --training-data "$WORKFLOW_OUTPUT" \ --epochs 50 fi

Workflow Automation - GitHub Actions Integration

Overview

Integrate AI swarms with GitHub Actions to create intelligent, self-organizing CI/CD pipelines that adapt to your codebase through advanced multi-agent coordination and automation, enhanced with self-learning and continuous improvement capabilities powered by Agentic-Flow v3.0.0-alpha.1.

🧠 Self-Learning Protocol (v3.0.0-alpha.1)

Before Workflow Creation: Learn from Past Workflows

// 1. Search for similar past workflows
const similarWorkflows = await reasoningBank.searchPatterns({
  task: `CI/CD workflow for ${repoType}`,
  k: 5,
  minReward: 0.8
});

if (similarWorkflows.length > 0) {
  console.log('📚 Learning from past successful workflows:');
  similarWorkflows.forEach(pattern => {
    console.log(`- ${pattern.task}: ${pattern.reward} success rate`);
    console.log(`  Workflow strategy: ${pattern.output.strategy}`);
    console.log(`  Average runtime: ${pattern.output.avgRuntime}ms`);
    console.log(`  Success rate: ${pattern.output.successRate}%`);
  });
}

// 2. Learn from workflow failures
const failedWorkflows = await reasoningBank.searchPatterns({
  task: 'CI/CD workflow',
  onlyFailures: true,
  k: 3
});

if (failedWorkflows.length > 0) {
  console.log('⚠️  Avoiding past workflow mistakes:');
  failedWorkflows.forEach(pattern => {
    console.log(`- ${pattern.critique}`);
    console.log(`  Common failures: ${pattern.output.commonFailures}`);
  });
}

During Workflow Execution: GNN-Enhanced Optimization

// Build workflow dependency graph
const buildWorkflowGraph = (jobs) => ({
  nodes: jobs.map(j => ({ id: j.name, type: j.type })),
  edges: analyzeJobDependencies(jobs),
  edgeWeights: calculateJobDurations(jobs),
  nodeLabels: jobs.map(j => j.name)
});

// GNN-enhanced workflow optimization (+12.4% better)
const optimizations = await agentDB.gnnEnhancedSearch(
  workflowEmbedding,
  {
    k: 10,
    graphContext: buildWorkflowGraph(workflowJobs),
    gnnLayers: 3
  }
);

console.log(`Found ${optimizations.length} optimization opportunities with +12.4% better accuracy`);

// Detect bottlenecks with GNN
const bottlenecks = await agentDB.gnnEnhancedSearch(
  performanceEmbedding,
  {
    k: 5,
    graphContext: buildPerformanceGraph(),
    gnnLayers: 2,
    filter: 'slow_jobs'
  }
);

Multi-Agent Workflow Optimization with Attention

// Coordinate optimization decisions using attention consensus
const coordinator = new AttentionCoordinator(attentionService);

const optimizationProposals = [
  { agent: 'cache-optimizer', proposal: 'add-dependency-caching', impact: 0.45 },
  { agent: 'parallel-optimizer', proposal: 'parallelize-tests', impact: 0.60 },
  { agent: 'resource-optimizer', proposal: 'upgrade-runners', impact: 0.30 },
  { agent: 'security-optimizer', proposal: 'add-security-scan', impact: 0.85 }
];

const consensus = await coordinator.coordinateAgents(
  optimizationProposals,
  'moe' // Mixture of Experts routing
);

console.log(`Optimization consensus: ${consensus.topOptimizations}`);
console.log(`Expected improvement: ${consensus.totalImpact}%`);
console.log(`Agent influence: ${consensus.attentionWeights}`);

// Apply optimizations based on weighted impact
const selectedOptimizations = consensus.topOptimizations
  .filter(opt => opt.impact > 0.4)
  .sort((a, b) => b.impact - a.impact);

After Workflow Run: Store Learning Patterns

// Store workflow performance pattern
const workflowMetrics = {
  totalRuntime: endTime - startTime,
  jobsCount: jobs.length,
  successRate: passedJobs / totalJobs,
  cacheHitRate: cacheHits / cacheMisses,
  parallelizationScore: parallelJobs / totalJobs,
  costPerRun: calculateCost(runtime, runnerSize),
  failureRate: failedJobs / totalJobs,
  bottlenecks: identifiedBottlenecks
};

await reasoningBank.storePattern({
  sessionId: `workflow-${workflowId}-${Date.now()}`,
  task: `CI/CD workflow for ${repo.name}`,
  input: JSON.stringify({ repo, triggers, jobs }),
  output: JSON.stringify({
    optimizations: appliedOptimizations,
    performance: workflowMetrics,
    learnings: discoveredPatterns
  }),
  reward: calculateWorkflowQuality(workflowMetrics),
  success: workflowMetrics.successRate > 0.95,
  critique: selfCritiqueWorkflow(workflowMetrics, feedback),
  tokensUsed: countTokens(workflowOutput),
  latencyMs: measureLatency()
});

🎯 GitHub-Specific Optimizations

Pattern-Based Workflow Generation

// Learn optimal workflow patterns from history
const workflowPatterns = await reasoningBank.searchPatterns({
  task: 'workflow generation',
  k: 50,
  minReward: 0.85
});

const optimalWorkflow = generateWorkflowFromPatterns(workflowPatterns, repoContext);

// Returns optimized YAML based on learned patterns
console.log(`Generated workflow with ${optimalWorkflow.optimizationScore}% efficiency`);

Attention-Based Job Prioritization

// Use Flash Attention to prioritize critical jobs
const jobPriorities = await agentDB.flashAttention(
  jobEmbeddings,
  criticalityEmbeddings,
  criticalityEmbeddings
);

// Reorder workflow for optimal execution
const optimizedJobOrder = jobs.sort((a, b) =>
  jobPriorities[b.id] - jobPriorities[a.id]
);

console.log(`Job prioritization completed in ${processingTime}ms (2.49x-7.47x faster)`);

GNN-Enhanced Failure Prediction

// Build historical failure graph
const failureGraph = {
  nodes: pastWorkflowRuns,
  edges: buildFailureCorrelations(),
  edgeWeights: calculateFailureProbabilities(),
  nodeLabels: pastWorkflowRuns.map(r => `run-${r.id}`)
};

// Predict potential failures with GNN
const riskAnalysis = await agentDB.gnnEnhancedSearch(
  currentWorkflowEmbedding,
  {
    k: 10,
    graphContext: failureGraph,
    gnnLayers: 3,
    filter: 'failed_runs'
  }
);

console.log(`Predicted failure risks: ${riskAnalysis.map(r => r.riskFactor)}`);

Adaptive Workflow Learning

// Continuous learning from workflow executions
const performanceTrends = await reasoningBank.getPatternStats({
  task: 'workflow execution',
  k: 100
});

console.log(`Performance improvement over time: ${performanceTrends.improvementPercent}%`);
console.log(`Common optimizations: ${performanceTrends.commonPatterns}`);
console.log(`Best practices emerged: ${performanceTrends.bestPractices}`);

// Auto-apply learned optimizations
if (performanceTrends.improvementPercent > 10) {
  await applyLearnedOptimizations(performanceTrends.bestPractices);
}

Core Features

1. Swarm-Powered Actions

# .github/workflows/swarm-ci.yml
name: Intelligent CI with Swarms
on: [push, pull_request]

jobs:
  swarm-analysis:
    runs-on: ubuntu-latest
    steps:
      - uses: actions/checkout@v3
      
      - name: Initialize Swarm
        uses: ruvnet/swarm-action@v1
        with:
          topology: mesh
          max-agents: 6
          
      - name: Analyze Changes
        run: |
          npx claude-flow@v3alpha actions analyze \
            --commit ${{ github.sha }} \
            --suggest-tests \
            --optimize-pipeline

2. Dynamic Workflow Generation

# Generate workflows based on code analysis
npx claude-flow@v3alpha actions generate-workflow \
  --analyze-codebase \
  --detect-languages \
  --create-optimal-pipeline

3. Intelligent Test Selection

# Smart test runner
- name: Swarm Test Selection
  run: |
    npx claude-flow@v3alpha actions smart-test \
      --changed-files ${{ steps.files.outputs.all }} \
      --impact-analysis \
      --parallel-safe

Workflow Templates

Multi-Language Detection

# .github/workflows/polyglot-swarm.yml
name: Polyglot Project Handler
on: push

jobs:
  detect-and-build:
    runs-on: ubuntu-latest
    steps:
      - uses: actions/checkout@v3
      
      - name: Detect Languages
        id: detect
        run: |
          npx claude-flow@v3alpha actions detect-stack \
            --output json > stack.json
            
      - name: Dynamic Build Matrix
        run: |
          npx claude-flow@v3alpha actions create-matrix \
            --from stack.json \
            --parallel-builds

Adaptive Security Scanning

# .github/workflows/security-swarm.yml
name: Intelligent Security Scan
on:
  schedule:
    - cron: '0 0 * * *'
  workflow_dispatch:

jobs:
  security-swarm:
    runs-on: ubuntu-latest
    steps:
      - name: Security Analysis Swarm
        run: |
          # Use gh CLI for issue creation
          SECURITY_ISSUES=$(npx claude-flow@v3alpha actions security \
            --deep-scan \
            --format json)
          
          # Create issues for complex security problems
          echo "$SECURITY_ISSUES" | jq -r '.issues[]? | @base64' | while read -r issue; do
            _jq() {
              echo ${issue} | base64 --decode | jq -r ${1}
            }
            gh issue create \
              --title "$(_jq '.title')" \
              --body "$(_jq '.body')" \
              --label "security,critical"
          done

Action Commands

Pipeline Optimization

# Optimize existing workflows
npx claude-flow@v3alpha actions optimize \
  --workflow ".github/workflows/ci.yml" \
  --suggest-parallelization \
  --reduce-redundancy \
  --estimate-savings

Failure Analysis

# Analyze failed runs using gh CLI
gh run view ${{ github.run_id }} --json jobs,conclusion | \
  npx claude-flow@v3alpha actions analyze-failure \
    --suggest-fixes \
    --auto-retry-flaky

# Create issue for persistent failures
if [ $? -ne 0 ]; then
  gh issue create \
    --title "CI Failure: Run ${{ github.run_id }}" \
    --body "Automated analysis detected persistent failures" \
    --label "ci-failure"
fi

Resource Management

# Optimize resource usage
npx claude-flow@v3alpha actions resources \
  --analyze-usage \
  --suggest-runners \
  --cost-optimize

Advanced Workflows

1. Self-Healing CI/CD

# Auto-fix common CI failures
name: Self-Healing Pipeline
on: workflow_run

jobs:
  heal-pipeline:
    if: ${{ github.event.workflow_run.conclusion == 'failure' }}
    runs-on: ubuntu-latest
    steps:
      - name: Diagnose and Fix
        run: |
          npx claude-flow@v3alpha actions self-heal \
            --run-id ${{ github.event.workflow_run.id }} \
            --auto-fix-common \
            --create-pr-complex

2. Progressive Deployment

# Intelligent deployment strategy
name: Smart Deployment
on:
  push:
    branches: [main]

jobs:
  progressive-deploy:
    runs-on: ubuntu-latest
    steps:
      - name: Analyze Risk
        id: risk
        run: |
          npx claude-flow@v3alpha actions deploy-risk \
            --changes ${{ github.sha }} \
            --history 30d
            
      - name: Choose Strategy
        run: |
          npx claude-flow@v3alpha actions deploy-strategy \
            --risk ${{ steps.risk.outputs.level }} \
            --auto-execute

3. Performance Regression Detection

# Automatic performance testing
name: Performance Guard
on: pull_request

jobs:
  perf-swarm:
    runs-on: ubuntu-latest
    steps:
      - name: Performance Analysis
        run: |
          npx claude-flow@v3alpha actions perf-test \
            --baseline main \
            --threshold 10% \
            --auto-profile-regression

Custom Actions

Swarm Action Development

// action.yml
name: 'Swarm Custom Action'
description: 'Custom swarm-powered action'
inputs:
  task:
    description: 'Task for swarm'
    required: true
runs:
  using: 'node16'
  main: 'dist/index.js'

// index.js
const { SwarmAction } = require('ruv-swarm');

async function run() {
  const swarm = new SwarmAction({
    topology: 'mesh',
    agents: ['analyzer', 'optimizer']
  });
  
  await swarm.execute(core.getInput('task'));
}

Matrix Strategies

Dynamic Test Matrix

# Generate test matrix from code analysis
jobs:
  generate-matrix:
    outputs:
      matrix: ${{ steps.set-matrix.outputs.matrix }}
    steps:
      - id: set-matrix
        run: |
          MATRIX=$(npx claude-flow@v3alpha actions test-matrix \
            --detect-frameworks \
            --optimize-coverage)
          echo "matrix=${MATRIX}" >> $GITHUB_OUTPUT
  
  test:
    needs: generate-matrix
    strategy:
      matrix: ${{fromJson(needs.generate-matrix.outputs.matrix)}}

Intelligent Parallelization

# Determine optimal parallelization
npx claude-flow@v3alpha actions parallel-strategy \
  --analyze-dependencies \
  --time-estimates \
  --cost-aware

Monitoring & Insights

Workflow Analytics

# Analyze workflow performance
npx claude-flow@v3alpha actions analytics \
  --workflow "ci.yml" \
  --period 30d \
  --identify-bottlenecks \
  --suggest-improvements

Cost Optimization

# Optimize GitHub Actions costs
npx claude-flow@v3alpha actions cost-optimize \
  --analyze-usage \
  --suggest-caching \
  --recommend-self-hosted

Failure Patterns

# Identify failure patterns
npx claude-flow@v3alpha actions failure-patterns \
  --period 90d \
  --classify-failures \
  --suggest-preventions

Integration Examples

1. PR Validation Swarm

name: PR Validation Swarm
on: pull_request

jobs:
  validate:
    runs-on: ubuntu-latest
    steps:
      - name: Multi-Agent Validation
        run: |
          # Get PR details using gh CLI
          PR_DATA=$(gh pr view ${{ github.event.pull_request.number }} --json files,labels)
          
          # Run validation with swarm
          RESULTS=$(npx claude-flow@v3alpha actions pr-validate \
            --spawn-agents "linter,tester,security,docs" \
            --parallel \
            --pr-data "$PR_DATA")
          
          # Post results as PR comment
          gh pr comment ${{ github.event.pull_request.number }} \
            --body "$RESULTS"

2. Release Automation

name: Intelligent Release
on:
  push:
    tags: ['v*']

jobs:
  release:
    runs-on: ubuntu-latest
    steps:
      - name: Release Swarm
        run: |
          npx claude-flow@v3alpha actions release \
            --analyze-changes \
            --generate-notes \
            --create-artifacts \
            --publish-smart

3. Documentation Updates

name: Auto Documentation
on:
  push:
    paths: ['src/**']

jobs:
  docs:
    runs-on: ubuntu-latest
    steps:
      - name: Documentation Swarm
        run: |
          npx claude-flow@v3alpha actions update-docs \
            --analyze-changes \
            --update-api-docs \
            --check-examples

Best Practices

1. Workflow Organization

  • Use reusable workflows for swarm operations
  • Implement proper caching strategies
  • Set appropriate timeouts
  • Use workflow dependencies wisely

2. Security

  • Store swarm configs in secrets
  • Use OIDC for authentication
  • Implement least-privilege principles
  • Audit swarm operations

3. Performance

  • Cache swarm dependencies
  • Use appropriate runner sizes
  • Implement early termination
  • Optimize parallel execution

Advanced Features

Predictive Failures

# Predict potential failures
npx claude-flow@v3alpha actions predict \
  --analyze-history \
  --identify-risks \
  --suggest-preventive

Workflow Recommendations

# Get workflow recommendations
npx claude-flow@v3alpha actions recommend \
  --analyze-repo \
  --suggest-workflows \
  --industry-best-practices

Automated Optimization

# Continuously optimize workflows
npx claude-flow@v3alpha actions auto-optimize \
  --monitor-performance \
  --apply-improvements \
  --track-savings

Debugging & Troubleshooting

Debug Mode

- name: Debug Swarm
  run: |
    npx claude-flow@v3alpha actions debug \
      --verbose \
      --trace-agents \
      --export-logs

Performance Profiling

# Profile workflow performance
npx claude-flow@v3alpha actions profile \
  --workflow "ci.yml" \
  --identify-slow-steps \
  --suggest-optimizations

Advanced Swarm Workflow Automation

Multi-Agent Pipeline Orchestration

# Initialize comprehensive workflow automation swarm
mcp__claude-flow__swarm_init { topology: "mesh", maxAgents: 12 }
mcp__claude-flow__agent_spawn { type: "coordinator", name: "Workflow Coordinator" }
mcp__claude-flow__agent_spawn { type: "architect", name: "Pipeline Architect" }
mcp__claude-flow__agent_spawn { type: "coder", name: "Workflow Developer" }
mcp__claude-flow__agent_spawn { type: "tester", name: "CI/CD Tester" }
mcp__claude-flow__agent_spawn { type: "optimizer", name: "Performance Optimizer" }
mcp__claude-flow__agent_spawn { type: "monitor", name: "Automation Monitor" }
mcp__claude-flow__agent_spawn { type: "analyst", name: "Workflow Analyzer" }

# Create intelligent workflow automation rules
mcp__claude-flow__automation_setup {
  rules: [
    {
      trigger: "pull_request",
      conditions: ["files_changed > 10", "complexity_high"],
      actions: ["spawn_review_swarm", "parallel_testing", "security_scan"]
    },
    {
      trigger: "push_to_main",
      conditions: ["all_tests_pass", "security_cleared"],
      actions: ["deploy_staging", "performance_test", "notify_stakeholders"]
    }
  ]
}

# Orchestrate adaptive workflow management
mcp__claude-flow__task_orchestrate {
  task: "Manage intelligent CI/CD pipeline with continuous optimization",
  strategy: "adaptive",
  priority: "high",
  dependencies: ["code_analysis", "test_optimization", "deployment_strategy"]
}

Intelligent Performance Monitoring

# Generate comprehensive workflow performance reports
mcp__claude-flow__performance_report {
  format: "detailed",
  timeframe: "30d"
}

# Analyze workflow bottlenecks with swarm intelligence
mcp__claude-flow__bottleneck_analyze {
  component: "github_actions_workflow",
  metrics: ["build_time", "test_duration", "deployment_latency", "resource_utilization"]
}

# Store performance insights in swarm memory
mcp__claude-flow__memory_usage {
  action: "store",
  key: "workflow/performance/analysis",
  value: {
    bottlenecks_identified: ["slow_test_suite", "inefficient_caching"],
    optimization_opportunities: ["parallel_matrix", "smart_caching"],
    performance_trends: "improving",
    cost_optimization_potential: "23%"
  }
}

Dynamic Workflow Generation

// Swarm-powered workflow creation
const createIntelligentWorkflow = async (repoContext) => {
  // Initialize workflow generation swarm
  await mcp__claude_flow__swarm_init({ topology: "hierarchical", maxAgents: 8 });
  
  // Spawn specialized workflow agents
  await mcp__claude_flow__agent_spawn({ type: "architect", name: "Workflow Architect" });
  await mcp__claude_flow__agent_spawn({ type: "coder", name: "YAML Generator" });
  await mcp__claude_flow__agent_spawn({ type: "optimizer", name: "Performance Optimizer" });
  await mcp__claude_flow__agent_spawn({ type: "tester", name: "Workflow Validator" });
  
  // Create adaptive workflow based on repository analysis
  const workflow = await mcp__claude_flow__workflow_create({
    name: "Intelligent CI/CD Pipeline",
    steps: [
      {
        name: "Smart Code Analysis",
        agents: ["analyzer", "security_scanner"],
        parallel: true
      },
      {
        name: "Adaptive Testing",
        agents: ["unit_tester", "integration_tester", "e2e_tester"],
        strategy: "based_on_changes"
      },
      {
        name: "Intelligent Deployment",
        agents: ["deployment_manager", "rollback_coordinator"],
        conditions: ["all_tests_pass", "security_approved"]
      }
    ],
    triggers: [
      "pull_request",
      "push_to_main",
      "scheduled_optimization"
    ]
  });
  
  // Store workflow configuration in memory
  await mcp__claude_flow__memory_usage({
    action: "store",
    key: `workflow/${repoContext.name}/config`,
    value: {
      workflow,
      generated_at: Date.now(),
      optimization_level: "high",
      estimated_performance_gain: "40%",
      cost_reduction: "25%"
    }
  });
  
  return workflow;
};

Continuous Learning and Optimization

# Implement continuous workflow learning
mcp__claude-flow__memory_usage {
  action: "store",
  key: "workflow/learning/patterns",
  value: {
    successful_patterns: [
      "parallel_test_execution",
      "smart_dependency_caching",
      "conditional_deployment_stages"
    ],
    failure_patterns: [
      "sequential_heavy_operations",
      "inefficient_docker_builds",
      "missing_error_recovery"
    ],
    optimization_history: {
      "build_time_reduction": "45%",
      "resource_efficiency": "60%",
      "failure_rate_improvement": "78%"
    }
  }
}

# Generate workflow optimization recommendations
mcp__claude-flow__task_orchestrate {
  task: "Analyze workflow performance and generate optimization recommendations",
  strategy: "parallel",
  priority: "medium"
}

See also: swarm-pr.md, swarm-issue.md, sync-coordinator.md