Rei-skills n8n-code-python
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.
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skills/n8n-code-python/SKILL.md⚠️ AUTHORIZED USE ONLY — This skill is intended for authorized security professionals only. Use only against systems you own or have explicit written permission to test. Unauthorized use may violate applicable laws.
Python Code Node (Beta)
Expert guidance for writing Python code in n8n Code nodes.
⚠️ Important: JavaScript First
Recommendation: Use JavaScript for 95% of use cases. Only use Python when:
- You need specific Python standard library functions
- You're significantly more comfortable with Python syntax
- You're doing data transformations better suited to Python
Why JavaScript is preferred:
- Full n8n helper functions ($helpers.httpRequest, etc.)
- Luxon DateTime library for advanced date/time operations
- No external library limitations
- Better n8n documentation and community support
Quick Start
# 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
Essential Rules
- Consider JavaScript first - Use Python only when necessary
- Access data:
,_input.all()
, or_input.first()_input.item - CRITICAL: Must return
format[{"json": {...}}] - CRITICAL: Webhook data is under
(not_json["body"]
directly)_json - CRITICAL LIMITATION: No external libraries (no requests, pandas, numpy)
- Standard library only: json, datetime, re, base64, hashlib, urllib.parse, math, random, statistics
Mode Selection Guide
Same as JavaScript - choose based on your use case:
Run Once for All Items (Recommended - Default)
Use this mode for: 95% of use cases
- How it works: Code executes once regardless of input count
- Data access:
or_input.all()
array (Native mode)_items - Best for: Aggregation, filtering, batch processing, transformations
- Performance: Faster for multiple items (single execution)
# 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 } }]
Run Once for Each Item
Use this mode for: Specialized cases only
- How it works: Code executes separately for each input item
- Data access:
or_input.item
(Native mode)_item - Best for: Item-specific logic, independent operations, per-item validation
- Performance: Slower for large datasets (multiple executions)
# Example: Add processing timestamp to each item item = _input.item return [{ "json": { **item["json"], "processed": True, "processed_at": datetime.now().isoformat() } }]
Python Modes: Beta vs Native
n8n offers two Python execution modes:
Python (Beta) - Recommended
- Use:
,_input
,_json
helper syntax_node - Best for: Most Python use cases
- Helpers available:
,_now
,_today_jmespath() - Import:
from datetime import datetime
# Python (Beta) example items = _input.all() now = _now # Built-in datetime object return [{ "json": { "count": len(items), "timestamp": now.isoformat() } }]
Python (Native) (Beta)
- Use:
,_items
variables only_item - No helpers: No
,_input
, etc._now - More limited: Standard Python only
- Use when: Need pure Python without n8n helpers
# Python (Native) example processed = [] for item in _items: processed.append({ "json": { "id": item["json"].get("id"), "processed": True } }) return processed
Recommendation: Use Python (Beta) for better n8n integration.
Data Access Patterns
Pattern 1: _input.all() - Most Common
Use when: Processing arrays, batch operations, aggregations
# Get all items from previous node all_items = _input.all() # Filter, transform as needed valid = [item for item in all_items if item["json"].get("status") == "active"] processed = [] for item in valid: processed.append({ "json": { "id": item["json"]["id"], "name": item["json"]["name"] } }) return processed
Pattern 2: _input.first() - Very Common
Use when: Working with single objects, API responses
# Get first item only first_item = _input.first() data = first_item["json"] return [{ "json": { "result": process_data(data), "processed_at": datetime.now().isoformat() } }]
Pattern 3: _input.item - Each Item Mode Only
Use when: In "Run Once for Each Item" mode
# Current item in loop (Each Item mode only) current_item = _input.item return [{ "json": { **current_item["json"], "item_processed": True } }]
Pattern 4: _node - Reference Other Nodes
Use when: Need data from specific nodes in workflow
# Get output from specific node webhook_data = _node["Webhook"]["json"] http_data = _node["HTTP Request"]["json"] return [{ "json": { "combined": { "webhook": webhook_data, "api": http_data } } }]
See: DATA_ACCESS.md for comprehensive guide
Critical: Webhook Data Structure
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
Return Format Requirements
CRITICAL RULE: Always return list of dictionaries with
"json" key
Correct Return Formats
# ✅ 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 []
Incorrect Return Formats
# ❌ 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
Critical Limitation: No External Libraries
MOST IMPORTANT PYTHON LIMITATION: Cannot import external packages
What's NOT Available
# ❌ NOT AVAILABLE - Will raise ModuleNotFoundError import requests # ❌ No import pandas # ❌ No import numpy # ❌ No import scipy # ❌ No from bs4 import BeautifulSoup # ❌ No import lxml # ❌ No
What IS Available (Standard Library)
# ✅ AVAILABLE - Standard library only import json # ✅ JSON parsing import datetime # ✅ Date/time operations import re # ✅ Regular expressions import base64 # ✅ Base64 encoding/decoding import hashlib # ✅ Hashing functions import urllib.parse # ✅ URL parsing import math # ✅ Math functions import random # ✅ Random numbers import statistics # ✅ Statistical functions
Workarounds
Need HTTP requests?
- ✅ Use HTTP Request node before Code node
- ✅ Or switch to JavaScript and use
$helpers.httpRequest()
Need data analysis (pandas/numpy)?
- ✅ Use Python statistics module for basic stats
- ✅ Or switch to JavaScript for most operations
- ✅ Manual calculations with lists and dictionaries
Need web scraping (BeautifulSoup)?
- ✅ Use HTTP Request node + HTML Extract node
- ✅ Or switch to JavaScript with regex/string methods
See: STANDARD_LIBRARY.md for complete reference
Common Patterns Overview
Based on production workflows, here are the most useful Python patterns:
1. Data Transformation
Transform all items with list comprehensions
items = _input.all() return [ { "json": { "id": item["json"].get("id"), "name": item["json"].get("name", "Unknown").upper(), "processed": True } } for item in items ]
2. Filtering & Aggregation
Sum, filter, count with built-in functions
items = _input.all() total = sum(item["json"].get("amount", 0) for item in items) valid_items = [item for item in items if item["json"].get("amount", 0) > 0] return [{ "json": { "total": total, "count": len(valid_items) } }]
3. String Processing with Regex
Extract patterns from text
import re items = _input.all() email_pattern = r'\b[A-Za-z0-9._%+-]+@[A-Za-z0-9.-]+\.[A-Z|a-z]{2,}\b' all_emails = [] for item in items: text = item["json"].get("text", "") emails = re.findall(email_pattern, text) all_emails.extend(emails) # Remove duplicates unique_emails = list(set(all_emails)) return [{ "json": { "emails": unique_emails, "count": len(unique_emails) } }]
4. Data Validation
Validate and clean data
items = _input.all() validated = [] for item in items: data = item["json"] errors = [] # Validate fields if not data.get("email"): errors.append("Email required") if not data.get("name"): errors.append("Name required") validated.append({ "json": { **data, "valid": len(errors) == 0, "errors": errors if errors else None } }) return validated
5. Statistical Analysis
Calculate statistics with statistics module
from statistics import mean, median, stdev items = _input.all() values = [item["json"].get("value", 0) for item in items if "value" in item["json"]] if values: return [{ "json": { "mean": mean(values), "median": median(values), "stdev": stdev(values) if len(values) > 1 else 0, "min": min(values), "max": max(values), "count": len(values) } }] else: return [{"json": {"error": "No values found"}}]
See: COMMON_PATTERNS.md for 10 detailed Python patterns
Error Prevention - Top 5 Mistakes
#1: Importing External Libraries (Python-Specific!)
# ❌ WRONG: Trying to import external library import requests # ModuleNotFoundError! # ✅ CORRECT: Use HTTP Request node or JavaScript # Add HTTP Request node before Code node # OR switch to JavaScript and use $helpers.httpRequest()
#2: Empty Code or Missing Return
# ❌ WRONG: No return statement items = _input.all() # Processing... # Forgot to return! # ✅ CORRECT: Always return data items = _input.all() # Processing... return [{"json": item["json"]} for item in items]
#3: Incorrect Return Format
# ❌ WRONG: Returning dict instead of list return {"json": {"result": "success"}} # ✅ CORRECT: List wrapper required return [{"json": {"result": "success"}}]
#4: KeyError on Dictionary Access
# ❌ WRONG: Direct access crashes if missing name = _json["user"]["name"] # KeyError! # ✅ CORRECT: Use .get() for safe access name = _json.get("user", {}).get("name", "Unknown")
#5: Webhook Body Nesting
# ❌ WRONG: Direct access to webhook data email = _json["email"] # KeyError! # ✅ CORRECT: Webhook data under ["body"] email = _json["body"]["email"] # ✅ BETTER: Safe access with .get() email = _json.get("body", {}).get("email", "no-email")
See: ERROR_PATTERNS.md for comprehensive error guide
Standard Library Reference
Most Useful Modules
# JSON operations import json data = json.loads(json_string) json_output = json.dumps({"key": "value"}) # Date/time from datetime import datetime, timedelta now = datetime.now() tomorrow = now + timedelta(days=1) formatted = now.strftime("%Y-%m-%d") # Regular expressions import re matches = re.findall(r'\d+', text) cleaned = re.sub(r'[^\w\s]', '', text) # Base64 encoding import base64 encoded = base64.b64encode(data).decode() decoded = base64.b64decode(encoded) # Hashing import hashlib hash_value = hashlib.sha256(text.encode()).hexdigest() # URL parsing import urllib.parse params = urllib.parse.urlencode({"key": "value"}) parsed = urllib.parse.urlparse(url) # Statistics from statistics import mean, median, stdev average = mean([1, 2, 3, 4, 5])
See: STANDARD_LIBRARY.md for complete reference
Best Practices
1. Always Use .get() for Dictionary Access
# ✅ SAFE: Won't crash if field missing value = item["json"].get("field", "default") # ❌ RISKY: Crashes if field doesn't exist value = item["json"]["field"]
2. Handle None/Null Values Explicitly
# ✅ 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 = ""
3. Use List Comprehensions for Filtering
# ✅ 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)
4. Return Consistent Structure
# ✅ CONSISTENT: Always list with "json" key return [{"json": result}] # Single result return results # Multiple results (already formatted) return [] # No results
5. Debug with print() Statements
# 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'}")
When to Use Python vs JavaScript
Use Python When:
- ✅ You need
module for statistical operationsstatistics - ✅ You're significantly more comfortable with Python syntax
- ✅ Your logic maps well to list comprehensions
- ✅ You need specific standard library functions
Use JavaScript When:
- ✅ You need HTTP requests ($helpers.httpRequest())
- ✅ You need advanced date/time (DateTime/Luxon)
- ✅ You want better n8n integration
- ✅ For 95% of use cases (recommended)
Consider Other Nodes When:
- ❌ Simple field mapping → Use Set node
- ❌ Basic filtering → Use Filter node
- ❌ Simple conditionals → Use IF or Switch node
- ❌ HTTP requests only → Use HTTP Request node
Integration with Other Skills
Works With:
n8n Expression Syntax:
- Expressions use
syntax in other nodes{{ }} - Code nodes use Python directly (no
){{ }} - When to use expressions vs code
n8n MCP Tools Expert:
- How to find Code node:
search_nodes({query: "code"}) - Get configuration help:
get_node_essentials("nodes-base.code") - Validate code:
validate_node_operation()
n8n Node Configuration:
- Mode selection (All Items vs Each Item)
- Language selection (Python vs JavaScript)
- Understanding property dependencies
n8n Workflow Patterns:
- Code nodes in transformation step
- When to use Python vs JavaScript in patterns
n8n Validation Expert:
- Validate Code node configuration
- Handle validation errors
- Auto-fix common issues
n8n Code JavaScript:
- When to use JavaScript instead
- Comparison of JavaScript vs Python features
- Migration from Python to JavaScript
Quick Reference Checklist
Before deploying Python Code nodes, verify:
- Considered JavaScript first - Using Python only when necessary
- Code is not empty - Must have meaningful logic
- Return statement exists - Must return list of dictionaries
- Proper return format - Each item:
{"json": {...}} - Data access correct - Using
,_input.all()
, or_input.first()_input.item - No external imports - Only standard library (json, datetime, re, etc.)
- Safe dictionary access - Using
to avoid KeyError.get() - Webhook data - Access via
if from webhook["body"] - Mode selection - "All Items" for most cases
- Output consistent - All code paths return same structure
Additional Resources
Related Files
- DATA_ACCESS.md - Comprehensive Python data access patterns
- COMMON_PATTERNS.md - 10 Python patterns for n8n
- ERROR_PATTERNS.md - Top 5 errors and solutions
- STANDARD_LIBRARY.md - Complete standard library reference
n8n Documentation
- Code Node Guide: https://docs.n8n.io/code/code-node/
- Python in n8n: https://docs.n8n.io/code/builtin/python-modules/
Ready 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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