odoo-shopify-integration
Connect Odoo with Shopify: sync products, inventory, orders, and customers using the Shopify API and Odoo's external API or connector modules.
What this skill does
# Odoo ↔ Shopify Integration
## Overview
This skill guides you through integrating Odoo with Shopify — syncing your product catalog, real-time inventory levels, incoming orders, and customer data. It covers both using the official Odoo Shopify connector (Enterprise) and building a custom integration via Shopify REST + Odoo XMLRPC APIs.
## When to Use This Skill
- Selling on Shopify while managing inventory in Odoo.
- Automatically creating Odoo sales orders from Shopify purchases.
- Keeping Odoo stock levels in sync with Shopify product availability.
- Mapping Shopify product variants to Odoo product templates.
## How It Works
1. **Activate**: Mention `@odoo-shopify-integration` and describe your sync scenario.
2. **Design**: Receive the data flow architecture and field mapping.
3. **Build**: Get code snippets for the Shopify webhook receiver and Odoo API caller.
## Data Flow Architecture
```
SHOPIFY ODOO
-------- ----
Product Catalog <──────sync────── Product Templates + Variants
Inventory Level <──────sync────── Stock Quants (real-time)
New Order ───────push──────> Sale Order (auto-confirmed)
Customer ───────push──────> res.partner (created if new)
Fulfillment <──────push────── Delivery Order validated
```
## Examples
### Example 1: Push an Odoo Sale Order for a Shopify Order (Python)
```python
import xmlrpc.client, requests
# Odoo connection
odoo_url = "https://myodoo.example.com"
db, uid, pwd = "my_db", 2, "api_key"
models = xmlrpc.client.ServerProxy(f"{odoo_url}/xmlrpc/2/object")
def create_odoo_order_from_shopify(shopify_order):
# Find or create customer
partner = models.execute_kw(db, uid, pwd, 'res.partner', 'search_read',
[[['email', '=', shopify_order['customer']['email']]]],
{'fields': ['id'], 'limit': 1}
)
partner_id = partner[0]['id'] if partner else models.execute_kw(
db, uid, pwd, 'res.partner', 'create', [{
'name': shopify_order['customer']['first_name'] + ' ' + shopify_order['customer']['last_name'],
'email': shopify_order['customer']['email'],
}]
)
# Create Sale Order
order_id = models.execute_kw(db, uid, pwd, 'sale.order', 'create', [{
'partner_id': partner_id,
'client_order_ref': f"Shopify #{shopify_order['order_number']}",
'order_line': [(0, 0, {
'product_id': get_odoo_product_id(line['sku']),
'product_uom_qty': line['quantity'],
'price_unit': float(line['price']),
}) for line in shopify_order['line_items']],
}])
return order_id
def get_odoo_product_id(sku):
result = models.execute_kw(db, uid, pwd, 'product.product', 'search_read',
[[['default_code', '=', sku]]], {'fields': ['id'], 'limit': 1})
return result[0]['id'] if result else False
```
### Example 2: Shopify Webhook for Real-Time Orders
```python
from flask import Flask, request
app = Flask(__name__)
@app.route('/webhook/shopify/orders', methods=['POST'])
def shopify_order_webhook():
shopify_order = request.json
order_id = create_odoo_order_from_shopify(shopify_order)
return {"odoo_order_id": order_id}, 200
```
## Best Practices
- ✅ **Do:** Use Shopify's **webhook system** for real-time order sync instead of polling.
- ✅ **Do:** Match products using **SKU / Internal Reference** as the unique key between both systems.
- ✅ **Do:** Validate Shopify webhook HMAC signatures before processing any payload.
- ❌ **Don't:** Sync inventory from both systems simultaneously without a "master system" — pick one as the source of truth.
- ❌ **Don't:** Use Shopify product IDs as the key — use SKUs which are stable across platforms.
## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
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