This Python script reads product data from an Excel file, processes it through Google's Gemini LLM to generate WooCommerce-compatible descriptions and attributes, and then adds the products to a WooCommerce store via API.
- Reads product data from Excel files with flexible column naming
 - Uses Google Gemini AI to generate product descriptions and attributes
 - Converts raw product features into structured WooCommerce attributes
 - Adds products to WooCommerce via REST API
 - Comprehensive error handling and logging
 - Rate limiting to avoid API throttling
 
- Python 3.8+
 - WooCommerce store with REST API enabled
 - Google Gemini AI API key
 - Excel file with product data
 
- 
Clone or download this repository
 - 
Install dependencies:
pip install -r requirements.txt
 - 
Edit
.envfile with your actual credentials:WOOCOMMERCE_URL=https://yourstore.com WOOCOMMERCE_CONSUMER_KEY=ck_your_consumer_key WOOCOMMERCE_CONSUMER_SECRET=cs_your_consumer_secret GEMINI_API_KEY=your_gemini_api_key 
Your Excel file should have these columns (column names are flexible):
- Product Name (or "name", "product_name")
 - Raw Features (or "features", "raw_features")
 - Price (numeric)
 - Regular Price (or "regular_price", numeric)
 
- 
Place your Excel file in the same directory as the script and name it
data/products.xlsx(or modify the script to use a different filename) - 
Run the script:
python product_loader.py
 
The script will:
- Read products from the Excel file
 - Process each product through Gemini AI to generate:
- Slug
 - Detailed description
 - Short description
 - Structured attributes
 
 - Add each product to your WooCommerce store
 
- Go to your WordPress admin panel
 - Navigate to WooCommerce > Settings > Advanced > REST API
 - Click "Add Key"
 - Set permissions to "Read/Write"
 - Copy the Consumer Key and Consumer Secret to your 
.envfile 
- Go to Google AI Studio
 - Create a new API key
 - Copy the API key to your 
.envfile 
Note: This script uses the new google-genai package with the Gemini 2.5 Flash model for improved performance.
This project is open source and available under the MIT License.