| name | n8n-builder |
| type | standard |
| depth | base |
| description | Generates valid n8n workflow JSON with nodes, connections, settings, credentials. Use when creating workflow automations programmatically, scaffolding AI agent workflows with LangChain nodes, or converting requirements into n8n JSON. |
[H1][N8N-BUILDER]
Dictum: Schema compliance enables n8n import without runtime validation errors.
Generate valid n8n workflow JSON.
Tasks:
- Read schema.md — Root structure, settings
- Read nodes.md — Node definition, typeVersion
- Read connections.md — Graph topology, AI types
- (dynamic values) Read expressions.md — Variables, functions
- (specific nodes) Read integrations.md — Node parameters
- Generate JSON — Apply template from workflow.template.md
- Validate — Run
uv run .claude/skills/n8n-builder/scripts/validate-workflow.py
REFERENCE: index.md — File listing.
[0][N8N_2.0]
Dictum: Breaking changes invalidate pre-2025 patterns.
Breaking Changes (December 2025):
Database — PostgreSQL required; MySQL/MariaDB support dropped.
Python — "language": "python" removed; use "pythonNative" with task runners.
Security — ExecuteCommand and LocalFileTrigger disabled by default.
Code Isolation — Environment variable access blocked in Code nodes (N8N_BLOCK_ENV_ACCESS_IN_NODE=true).
Agent Type — Agent type selection removed (v1.82+); all agents are Tools Agent.
[1][SCHEMA]
Dictum: Root structure enables n8n parser recognition and execution.
Guidance:
AI Workflows — Require executionOrder: "v1" in settings; async node ordering fails without.
Portability — Credential IDs and errorWorkflow UUIDs are instance-specific; expect reassignment post-import.
Optional Fields — Include empty objects ("pinData": {}) over omission; prevents import edge cases.
Sub-Workflow Typing — Use workflowInputs schema on trigger nodes to validate caller payloads before execution.
pinData Limits — Keep under 12MB; large payloads slow editor rendering and cannot contain binary data.
Best-Practices:
- [ALWAYS] Set
"active": false on generation; activation is a deployment decision.
- [NEVER] Hardcode credential IDs; use placeholder names for cross-instance transfer.
[2][NODES]
Dictum: Unique identity enables deterministic cross-node references.
Guidance:
Name Collisions — n8n auto-renames duplicates (Set→Set1); breaks $('NodeName') expressions silently.
Version Matching — typeVersion must match target n8n instance; newer versions may lack backward compatibility.
Error Strategy — Use onError: "continueErrorOutput" for fault-tolerant pipelines; default stops execution.
Node Documentation — Use notes field for inline documentation; notesInFlow: true displays on canvas.
Best-Practices:
- [ALWAYS] Generate UUID per node before building connections; connections reference node.name.
- [ALWAYS] Space nodes 200px horizontal, 150px vertical for canvas readability.
[3][CONNECTIONS]
Dictum: Connection types enable workflow mode distinction at parse time.
Guidance:
AI vs Main — AI nodes require specialized types (ai_tool, ai_languageModel); main causes silent tool invisibility.
Fan-out — Single output to multiple nodes executes in parallel; order within array is non-deterministic.
Multi-output — Array index maps to output port; IF node: index 0 = true branch, index 1 = false branch.
Single Model — Agent accepts exactly one ai_languageModel connection; multiple models conflict silently.
Memory Scope — ai_memory persists within single trigger execution only; no cross-session persistence.
Best-Practices:
- [ALWAYS] Match connection key AND
type property; mismatches cause silent failures.
- [NEVER] Connect AI tools via
main type; agent cannot discover them.
- [NEVER] Connect multiple language models to single agent; use Model Selector node for dynamic selection.
[4][EXPRESSIONS]
Dictum: Dynamic evaluation eliminates hardcoded parameters.
Guidance:
Static vs Dynamic — Prefix = signals evaluation; without it, value is literal string including {{ }}.
Pinned Data — Test mode pins lack execution context; .item fails, use .first() or .all()[0] instead.
Complex Logic — IIFE pattern {{(function(){ return ... })()}} enables multi-statement evaluation.
Scope Confusion — $json accesses current node input only; use $('NodeName').item.json for other nodes.
Best-Practices:
- [ALWAYS] Use
$('NodeName') for cross-node data; $json only accesses current node input.
- [ALWAYS] Escape quotes in JSON strings or use template literals to prevent invalid JSON.
- [NEVER] Assume
.item works in all contexts; pinned data testing requires explicit accessors.
[5][INTEGRATIONS]
Dictum: Node type selection determines integration capability.
Guidance:
Trigger Selection — Webhook for external calls, scheduleTrigger for periodic; choose based on initiation source.
AI Tool Visibility — Sub-workflow tools require description parameter; agent uses it for tool selection reasoning.
Code Language — Use "pythonNative" for Python; "python" is deprecated.
Error Propagation — Use stopAndError node for controlled failures; triggers designated error workflow.
2025 Features — MCP nodes enable cross-agent interoperability; Guardrails nodes enforce AI output safety.
Output Parser — outputParserStructured jsonSchema must be static; expressions in schema are ignored silently.
Batch Processing — Use splitInBatches for large datasets to prevent memory exhaustion; process in chunks.
Best-Practices:
- [ALWAYS] Set
responseMode: "lastNode" for webhook→response patterns; ensures output reaches caller.
- [ALWAYS] Include
description on HTTP nodes used as AI tools; undocumented tools are invisible to agent.
- [ALWAYS] Include unique
webhookId per workflow to prevent path collisions across workflows.
[6][RAG]
Dictum: RAG pipelines ground LLM responses in domain-specific knowledge.
Guidance:
Vector Store Selection — Simple for development; PGVector/Pinecone/Qdrant for production persistence.
Embedding Consistency — Same embedding model required for insert and query; mismatch causes semantic drift.
Chunk Strategy — Recursive Character splitter recommended; splits Markdown/HTML/code before character fallback.
Memory vs Chains — Only agents support memory; chains are stateless single-turn processors.
Retriever Modes — MultiQuery for complex questions; Contextual Compression for noise reduction.
Best-Practices:
- [ALWAYS] Match embedding model between document insert and query operations.
- [ALWAYS] Use
ai_memory connection type for memory nodes; main silently fails.
- [NEVER] Use Simple Vector Store in production; data lost on restart, global user access.
[7][VALIDATION]
Dictum: Pre-export validation prevents n8n import failures.
Script:
uv run .claude/skills/n8n-builder/scripts/validate-workflow.py workflow.json
uv run .claude/skills/n8n-builder/scripts/validate-workflow.py workflow.json --strict
Checks (12 automated):
root_required — name, nodes, connections present
node_id_unique / node_name_unique — no duplicates
node_id_uuid — valid UUID format
conn_targets_exist — connection targets reference existing nodes
conn_ai_type_match — AI connection key matches type property
settings_exec_order_ai — LangChain workflows require executionOrder: "v1"
settings_caller_policy / node_on_error — enum value validation
Guidance:
API Deployment — Use POST then PUT pattern; single POST may ignore settings due to API bug.
Performance — saveExecutionProgress: true triggers DB I/O per node; disable for high-throughput (>1000 RPM).
Source Control — Strip instanceId when sharing; credential files contain stubs only, not secrets.