Write Python code in n8n Code nodes. Use when writing Python in n8n, using _input/_json/_node syntax, working with standard library, or need to understand Python limitations in n8n Code nodes. Use this skill when the user specifically requests Python for an n8n Code node. Note — JavaScript is recommended for 95% of use cases — only use Python when the user explicitly prefers it or the task requires Python-specific standard library capabilities (regex, hashlib, statistics). EXCEPTION — for Python in the AI-agent-callable Custom Code Tool (@n8n/n8n-nodes-langchain.toolCode), use the n8n-code-tool skill instead (input is _query, return must be a string).
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Expert guidance for writing Python code in n8n Code nodes.
Recommendation: Use JavaScript for 95% of use cases. Only use Python when:
Why JavaScript is preferred:
this.helpers.httpRequest, etc.)# Basic template for Python Code nodes
items = _input.all()
# Process data
processed = []
for item in items:
processed.append({
"json": {
**item["json"],
"processed": True,
"timestamp": datetime.now().isoformat()
}
})
return processed_input.all(), _input.first(), or _input.item[{"json": {...}}] format_json["body"] (not _json directly)Same as JavaScript - choose based on your use case:
Use this mode for: 95% of use cases
_input.all() or _items array (Native mode)# Example: Calculate total from all items
all_items = _input.all()
total = sum(item["json"].get("amount", 0) for item in all_items)
return [{
"json": {
"total": total,
"count": len(all_items),
"average": total / len(all_items) if all_items else 0
}
}]Use this mode for: Specialized cases only
_input.item or _item (Native mode)# Example: Add processing timestamp to each item
item = _input.item
return [{
"json": {
**item["json"],
"processed": True,
"processed_at": datetime.now().isoformat()
}
}]n8n offers two Python execution modes:
_input, _json, _node helper syntax_now, _today, _jmespath()from datetime import datetime# Python (Beta) example
items = _input.all()
now = _now # Built-in datetime object
return [{
"json": {
"count": len(items),
"timestamp": now.isoformat()
}
}]_items, _item variables only_input, _now, etc.# Python (Native) example
processed = []
for item in _items:
processed.append({
"json": {
"id": item["json"].get("id"),
"processed": True
}
})
return processedRecommendation: Use Python (Beta) for better n8n integration.
Access input data through underscore-prefixed variables. Each item is a dict shaped {"json": {...}}, so the actual fields live under ["json"].
# Pattern 1: _input.all() - Most common. Arrays, batch ops, aggregations
all_items = _input.all() # list of {"json": {...}} dicts
# Pattern 2: _input.first() - Very common. Single objects, API responses
data = _input.first()["json"] # built-in safety vs all_items[0]
# Pattern 3: _input.item - "Run Once for Each Item" mode ONLY
current = _input.item["json"] # None/error in All Items mode
# Pattern 4: _node - Reference a specific named node
webhook_data = _node["Webhook"]["json"]
http_data = _node["HTTP Request"]["json"]See: DATA_ACCESS.md for the comprehensive guide — six _input.all() recipes (filter, transform, aggregate, sort, group, deduplicate), _input.first() and _input.item examples, multi-node combining, the JS-vs-Python variable table, and the decision tree.
MOST COMMON MISTAKE: Webhook data is nested under ["body"]
# ❌ WRONG - Will raise KeyError
name = _json["name"]
email = _json["email"]
# ✅ CORRECT - Webhook data is under ["body"]
name = _json["body"]["name"]
email = _json["body"]["email"]
# ✅ SAFER - Use .get() for safe access
webhook_data = _json.get("body", {})
name = webhook_data.get("name")Why: Webhook node wraps all request data under body property. This includes POST data, query parameters, and JSON payloads.
See: DATA_ACCESS.md for full webhook structure details
CRITICAL RULE: Always return list of dictionaries with "json" key
# ✅ Single result
return [{
"json": {
"field1": value1,
"field2": value2
}
}]
# ✅ Multiple results
return [
{"json": {"id": 1, "data": "first"}},
{"json": {"id": 2, "data": "second"}}
]
# ✅ List comprehension
transformed = [
{"json": {"id": item["json"]["id"], "processed": True}}
for item in _input.all()
if item["json"].get("valid")
]
return transformed
# ✅ Empty result (when no data to return)
return []
# ✅ Conditional return
if should_process:
return [{"json": processed_data}]
else:
return []# ❌ WRONG: Dictionary without list wrapper
return {
"json": {"field": value}
}
# ❌ WRONG: List without json wrapper
return [{"field": value}]
# ❌ WRONG: Plain string
return "processed"
# ❌ WRONG: Incomplete structure
return [{"data": value}] # Should be {"json": value}Why it matters: Next nodes expect list format. Incorrect format causes workflow execution to fail.
See: ERROR_PATTERNS.md #2 for detailed error solutions
MOST IMPORTANT PYTHON LIMITATION: Cannot import external packages on default installs.
Self-hosted exception: external package availability depends entirely on the instance's Python runner configuration. If the user states their self-hosted instance has specific packages available in the Python runner environment, use them — don't refuse. When unsure, ask or write standard-library-only code.
❌ NOT available (raise ModuleNotFoundError): requests, pandas, numpy, scipy, bs4/BeautifulSoup, lxml.
✅ Available (standard library only): json, datetime, re, base64, hashlib, urllib.parse, math, random, statistics.
Need HTTP requests?
this.helpers.httpRequest() (the bare $helpers global is undefined in the task-runner sandbox)Need data analysis (pandas/numpy)?
Need web scraping (BeautifulSoup)?
See: STANDARD_LIBRARY.md for complete reference
Based on production workflows, the most useful Python patterns are:
restatistics moduleCopy-ready snippets for all five live in COMMON_PATTERNS.md, alongside 10 fully detailed production patterns (multi-source aggregation, markdown parsing, JSON comparison, CRM normalization, dictionary lookup, top-N filtering, and more).
import requests raises ModuleNotFoundError. Use the HTTP Request node or JavaScript instead.return [{"json": ...}].{"json": {...}} becomes [{"json": {...}}]..get(): _json.get("user", {}).get("name", "Unknown").["body"]: _json.get("body", {}).get("email", "no-email").See: ERROR_PATTERNS.md for the comprehensive guide — each error with wrong-vs-right code, error messages, nested-access fixes, an AttributeError bonus case, a prevention checklist, and a quick-fix table.
Most useful modules: json (parse/generate), datetime (dates + timedelta), re (regex), base64 (encode/decode), hashlib (hashing), urllib.parse (URL ops), and statistics (mean/median/stdev). Also available: math, random, collections, itertools, functools.
For a condensed cheat sheet plus full per-module examples, see STANDARD_LIBRARY.md.
# ✅ SAFE: Won't crash if field missing
value = item["json"].get("field", "default")
# ❌ RISKY: Crashes if field doesn't exist
value = item["json"]["field"]# ✅ GOOD: Default to 0 if None
amount = item["json"].get("amount") or 0
# ✅ GOOD: Check for None explicitly
text = item["json"].get("text")
if text is None:
text = ""# ✅ PYTHONIC: List comprehension
valid = [item for item in items if item["json"].get("active")]
# ❌ VERBOSE: Manual loop
valid = []
for item in items:
if item["json"].get("active"):
valid.append(item)# ✅ CONSISTENT: Always list with "json" key
return [{"json": result}] # Single result
return results # Multiple results (already formatted)
return [] # No results# Debug statements appear in browser console (F12)
items = _input.all()
print(f"Processing {len(items)} items")
print(f"First item: {items[0] if items else 'None'}")The SplitInBatches node has two outputs:
main[0] = done — fires ONCE after all batches completemain[1] = each batch — fires for every batch (the loop body)Always add a Limit 1 node after the done output.
# ❌ WRONG
data = _node['HTTP Request']['json']
# ✅ CORRECT - call .first() then access json
data = _node['HTTP Request'].first()['json']$getWorkflowStaticData('global') may not be available in Python Beta mode. If you need to accumulate data across SplitInBatches iterations, use a JavaScript Code node for the accumulation logic instead.
statistics module for statistical operationsthis.helpers.httpRequest())n8n Expression Syntax:
{{ }} syntax in other nodes{{ }})n8n MCP Tools Expert:
search_nodes({query: "code"})get_node({nodeType: "nodes-base.code"})validate_node({nodeType: "nodes-base.code", config: {...}})n8n Node Configuration:
n8n Workflow Patterns:
n8n Validation Expert:
n8n Code JavaScript:
Before deploying Python Code nodes, verify:
{"json": {...}}_input.all(), _input.first(), or _input.item.get() to avoid KeyError["body"] if from webhookReady to write Python in n8n Code nodes - but consider JavaScript first! Use Python for specific needs, reference the error patterns guide to avoid common mistakes, and leverage the standard library effectively.
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