Agent skill

n8n

Manage n8n workflows and automations via API. Use when working with n8n workflows, executions, or automation tasks - listing workflows, activating/deactivating, checking execution status, manually triggering workflows, or debugging automation issues.

Stars 1,878
Forks 294

Install this agent skill to your Project

npx add-skill https://github.com/LeoYeAI/openclaw-master-skills/tree/main/skills/n8n

Metadata

Additional technical details for this skill

openclaw
{
    "emoji": "\u2699\ufe0f",
    "requires": {
        "env": [
            "N8N_API_KEY",
            "N8N_BASE_URL"
        ]
    },
    "primaryEnv": "N8N_API_KEY"
}

SKILL.md

n8n Workflow Management

Comprehensive workflow automation management for n8n platform with creation, testing, execution monitoring, and performance optimization capabilities.

⚠️ CRITICAL: Workflow Creation Rules

When creating n8n workflows, ALWAYS:

  1. Generate COMPLETE workflows with all functional nodes
  2. Include actual HTTP Request nodes for API calls (ImageFX, Gemini, Veo, Suno, etc.)
  3. Add Code nodes for data transformation and logic
  4. Create proper connections between all nodes
  5. Use real node types (n8n-nodes-base.httpRequest, n8n-nodes-base.code, n8n-nodes-base.set)

NEVER:

  • ❌ Create "Setup Instructions" placeholder nodes
  • ❌ Generate workflows with only TODO comments
  • ❌ Make incomplete workflows requiring manual node addition
  • ❌ Use text-only nodes as substitutes for real functionality

Example GOOD workflow:

Manual Trigger → Set Config → HTTP Request (API call) → Code (parse) → Response

Example BAD workflow:

Manual Trigger → Code ("Add HTTP nodes here, configure APIs...")

Always build the complete, functional workflow with all necessary nodes configured and connected.

Setup

Required environment variables:

  • N8N_API_KEY — Your n8n API key (Settings → API in the n8n UI)
  • N8N_BASE_URL — Your n8n instance URL

Configure credentials via OpenClaw settings:

Add to ~/.config/openclaw/settings.json:

json
{
  "skills": {
    "n8n": {
      "env": {
        "N8N_API_KEY": "your-api-key-here",
        "N8N_BASE_URL": "your-n8n-url-here"
      }
    }
  }
}

Or set per-session (do not persist secrets in shell rc files):

bash
export N8N_API_KEY="your-api-key-here"
export N8N_BASE_URL="your-n8n-url-here"

Verify connection:

bash
python3 scripts/n8n_api.py list-workflows --pretty

Security note: Never store API keys in plaintext shell config files (~/.bashrc, ~/.zshrc). Use the OpenClaw settings file or a secure secret manager.

Quick Reference

Workflow Management

List Workflows

bash
python3 scripts/n8n_api.py list-workflows --pretty
python3 scripts/n8n_api.py list-workflows --active true --pretty

Get Workflow Details

bash
python3 scripts/n8n_api.py get-workflow --id <workflow-id> --pretty

Create Workflows

bash
# From JSON file
python3 scripts/n8n_api.py create --from-file workflow.json

Activate/Deactivate

bash
python3 scripts/n8n_api.py activate --id <workflow-id>
python3 scripts/n8n_api.py deactivate --id <workflow-id>

Testing & Validation

Validate Workflow Structure

bash
# Validate existing workflow
python3 scripts/n8n_tester.py validate --id <workflow-id>

# Validate from file
python3 scripts/n8n_tester.py validate --file workflow.json --pretty

# Generate validation report
python3 scripts/n8n_tester.py report --id <workflow-id>

Dry Run Testing

bash
# Test with data
python3 scripts/n8n_tester.py dry-run --id <workflow-id> --data '{"email": "test@example.com"}'

# Test with data file
python3 scripts/n8n_tester.py dry-run --id <workflow-id> --data-file test-data.json

# Full test report (validation + dry run)
python3 scripts/n8n_tester.py dry-run --id <workflow-id> --data-file test.json --report

Test Suite

bash
# Run multiple test cases
python3 scripts/n8n_tester.py test-suite --id <workflow-id> --test-suite test-cases.json

Execution Monitoring

List Executions

bash
# Recent executions (all workflows)
python3 scripts/n8n_api.py list-executions --limit 10 --pretty

# Specific workflow executions
python3 scripts/n8n_api.py list-executions --id <workflow-id> --limit 20 --pretty

Get Execution Details

bash
python3 scripts/n8n_api.py get-execution --id <execution-id> --pretty

Manual Execution

bash
# Trigger workflow
python3 scripts/n8n_api.py execute --id <workflow-id>

# Execute with data
python3 scripts/n8n_api.py execute --id <workflow-id> --data '{"key": "value"}'

Performance Optimization

Analyze Performance

bash
# Full performance analysis
python3 scripts/n8n_optimizer.py analyze --id <workflow-id> --pretty

# Analyze specific period
python3 scripts/n8n_optimizer.py analyze --id <workflow-id> --days 30 --pretty

Get Optimization Suggestions

bash
# Priority-ranked suggestions
python3 scripts/n8n_optimizer.py suggest --id <workflow-id> --pretty

Generate Optimization Report

bash
# Human-readable report with metrics, bottlenecks, and suggestions
python3 scripts/n8n_optimizer.py report --id <workflow-id>

Get Workflow Statistics

bash
# Execution statistics
python3 scripts/n8n_api.py stats --id <workflow-id> --days 7 --pretty

Python API

Basic Usage

python
from scripts.n8n_api import N8nClient

client = N8nClient()

# List workflows
workflows = client.list_workflows(active=True)

# Get workflow
workflow = client.get_workflow('workflow-id')

# Create workflow
new_workflow = client.create_workflow({
    'name': 'My Workflow',
    'nodes': [...],
    'connections': {...}
})

# Activate/deactivate
client.activate_workflow('workflow-id')
client.deactivate_workflow('workflow-id')

# Executions
executions = client.list_executions(workflow_id='workflow-id', limit=10)
execution = client.get_execution('execution-id')

# Execute workflow
result = client.execute_workflow('workflow-id', data={'key': 'value'})

Validation & Testing

python
from scripts.n8n_api import N8nClient
from scripts.n8n_tester import WorkflowTester

client = N8nClient()
tester = WorkflowTester(client)

# Validate workflow
validation = tester.validate_workflow(workflow_id='123')
print(f"Valid: {validation['valid']}")
print(f"Errors: {validation['errors']}")
print(f"Warnings: {validation['warnings']}")

# Dry run
result = tester.dry_run(
    workflow_id='123',
    test_data={'email': 'test@example.com'}
)
print(f"Status: {result['status']}")

# Test suite
test_cases = [
    {'name': 'Test 1', 'input': {...}, 'expected': {...}},
    {'name': 'Test 2', 'input': {...}, 'expected': {...}}
]
results = tester.test_suite('123', test_cases)
print(f"Passed: {results['passed']}/{results['total_tests']}")

# Generate report
report = tester.generate_test_report(validation, result)
print(report)

Performance Optimization

python
from scripts.n8n_optimizer import WorkflowOptimizer

optimizer = WorkflowOptimizer()

# Analyze performance
analysis = optimizer.analyze_performance('workflow-id', days=7)
print(f"Performance Score: {analysis['performance_score']}/100")
print(f"Health: {analysis['execution_metrics']['health']}")

# Get suggestions
suggestions = optimizer.suggest_optimizations('workflow-id')
print(f"Priority Actions: {len(suggestions['priority_actions'])}")
print(f"Quick Wins: {len(suggestions['quick_wins'])}")

# Generate report
report = optimizer.generate_optimization_report(analysis)
print(report)

Common Workflows

1. Validate and Test Workflow

bash
# Validate workflow structure
python3 scripts/n8n_tester.py validate --id <workflow-id> --pretty

# Test with sample data
python3 scripts/n8n_tester.py dry-run --id <workflow-id> \
  --data '{"email": "test@example.com", "name": "Test User"}'

# If tests pass, activate
python3 scripts/n8n_api.py activate --id <workflow-id>

2. Debug Failed Workflow

bash
# Check recent executions
python3 scripts/n8n_api.py list-executions --id <workflow-id> --limit 10 --pretty

# Get specific execution details
python3 scripts/n8n_api.py get-execution --id <execution-id> --pretty

# Validate workflow structure
python3 scripts/n8n_tester.py validate --id <workflow-id>

# Generate test report
python3 scripts/n8n_tester.py report --id <workflow-id>

# Check for optimization issues
python3 scripts/n8n_optimizer.py report --id <workflow-id>

3. Optimize Workflow Performance

bash
# Analyze current performance
python3 scripts/n8n_optimizer.py analyze --id <workflow-id> --days 30 --pretty

# Get actionable suggestions
python3 scripts/n8n_optimizer.py suggest --id <workflow-id> --pretty

# Generate comprehensive report
python3 scripts/n8n_optimizer.py report --id <workflow-id>

# Review execution statistics
python3 scripts/n8n_api.py stats --id <workflow-id> --days 30 --pretty

# Test optimizations with dry run
python3 scripts/n8n_tester.py dry-run --id <workflow-id> --data-file test-data.json

4. Monitor Workflow Health

bash
# Check active workflows
python3 scripts/n8n_api.py list-workflows --active true --pretty

# Review recent execution status
python3 scripts/n8n_api.py list-executions --limit 20 --pretty

# Get statistics for each critical workflow
python3 scripts/n8n_api.py stats --id <workflow-id> --pretty

# Generate health reports
python3 scripts/n8n_optimizer.py report --id <workflow-id>

Validation Checks

The testing module performs comprehensive validation:

Structure Validation

  • ✓ Required fields present (nodes, connections)
  • ✓ All nodes have names and types
  • ✓ Connection targets exist
  • ✓ No disconnected nodes (warning)

Configuration Validation

  • ✓ Nodes requiring credentials are configured
  • ✓ Required parameters are set
  • ✓ HTTP nodes have URLs
  • ✓ Webhook nodes have paths
  • ✓ Email nodes have content

Flow Validation

  • ✓ Workflow has trigger nodes
  • ✓ Proper execution flow
  • ✓ No circular dependencies
  • ✓ End nodes identified

Optimization Analysis

The optimizer analyzes multiple dimensions:

Execution Metrics

  • Total executions
  • Success/failure rates
  • Health status (excellent/good/fair/poor)
  • Error patterns

Performance Metrics

  • Node count and complexity
  • Connection patterns
  • Expensive operations (API calls, database queries)
  • Parallel execution opportunities

Bottleneck Detection

  • Sequential expensive operations
  • High failure rates
  • Missing error handling
  • Rate limit issues

Optimization Opportunities

  • Parallel Execution: Identify nodes that can run concurrently
  • Caching: Suggest caching for repeated API calls
  • Batch Processing: Recommend batching for large datasets
  • Error Handling: Add error recovery mechanisms
  • Complexity Reduction: Split complex workflows
  • Timeout Settings: Configure execution limits

Performance Scoring

Workflows receive a performance score (0-100) based on:

  • Success Rate: Higher is better (50% weight)
  • Complexity: Lower is better (30% weight)
  • Bottlenecks: Fewer is better (critical: -20, high: -10, medium: -5)
  • Optimizations: Implemented best practices (+5 each)

Score interpretation:

  • 90-100: Excellent - Well-optimized
  • 70-89: Good - Minor improvements possible
  • 50-69: Fair - Optimization recommended
  • 0-49: Poor - Significant issues

Best Practices

Development

  1. Plan Structure: Design workflow nodes and connections before building
  2. Validate First: Always validate before deployment
  3. Test Thoroughly: Use dry-run with multiple test cases
  4. Error Handling: Add error nodes for reliability
  5. Documentation: Comment complex logic in Code nodes

Testing

  1. Sample Data: Create realistic test data files
  2. Edge Cases: Test boundary conditions and errors
  3. Incremental: Test each node addition
  4. Regression: Retest after changes
  5. Production-like: Use staging environment that mirrors production

Deployment

  1. Inactive First: Deploy workflows in inactive state
  2. Gradual Rollout: Test with limited traffic initially
  3. Monitor Closely: Watch first executions carefully
  4. Quick Rollback: Be ready to deactivate if issues arise
  5. Document Changes: Keep changelog of modifications

Optimization

  1. Baseline Metrics: Capture performance before changes
  2. One Change at a Time: Isolate optimization impacts
  3. Measure Results: Compare before/after metrics
  4. Regular Reviews: Schedule monthly optimization reviews
  5. Cost Awareness: Monitor API usage and execution costs

Maintenance

  1. Health Checks: Weekly execution statistics review
  2. Error Analysis: Investigate failure patterns
  3. Performance Monitoring: Track execution times
  4. Credential Rotation: Update credentials regularly
  5. Cleanup: Archive or delete unused workflows

Troubleshooting

Authentication Error

Error: N8N_API_KEY not found in environment

Solution: Set environment variable:

bash
export N8N_API_KEY="your-api-key"

Connection Error

Error: HTTP 401: Unauthorized

Solution:

  1. Verify API key is correct
  2. Check N8N_BASE_URL is set correctly
  3. Confirm API access is enabled in n8n

Validation Errors

Validation failed: Node missing 'name' field

Solution: Check workflow JSON structure, ensure all required fields present

Execution Timeout

Status: timeout - Execution did not complete

Solution:

  1. Check workflow for infinite loops
  2. Reduce dataset size for testing
  3. Optimize expensive operations
  4. Set execution timeout in workflow settings

Rate Limiting

Error: HTTP 429: Too Many Requests

Solution:

  1. Add Wait nodes between API calls
  2. Implement exponential backoff
  3. Use batch processing
  4. Check API rate limits

Missing Credentials

Warning: Node 'HTTP_Request' may require credentials

Solution:

  1. Configure credentials in n8n UI
  2. Assign credentials to node
  3. Test connection before activating

File Structure

~/clawd/skills/n8n/
├── SKILL.md                    # This file
├── scripts/
│   ├── n8n_api.py             # Core API client (extended)
│   ├── n8n_tester.py          # Testing & validation
│   └── n8n_optimizer.py       # Performance optimization
└── references/
    └── api.md                 # n8n API reference

API Reference

For detailed n8n REST API documentation, see references/api.md or visit: https://docs.n8n.io/api/

Support

Documentation:

Debugging:

  1. Use validation: python3 scripts/n8n_tester.py validate --id <workflow-id>
  2. Check execution logs: python3 scripts/n8n_api.py get-execution --id <execution-id>
  3. Review optimization report: python3 scripts/n8n_optimizer.py report --id <workflow-id>
  4. Test with dry-run: python3 scripts/n8n_tester.py dry-run --id <workflow-id> --data-file test.json

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