Walmart contains valuable data — product listings, prices, ratings, review counts, and more. Scraping this data directly means dealing with anti-bot detection, CAPTCHAs, IP rotation, and constantly breaking selectors. The Scavio API handles all of that and returns clean, structured JSON from a single POST request.
This tutorial shows you how to scrape Walmart using Python and the Scavio API. By the end, you will have a working Python script that fetches real-time Walmart data and parses the results.
Prerequisites
- Python installed on your machine
- A Scavio API key (free tier includes 500 credits/month — no credit card required)
Step 1: Install Dependencies
Install requests to make HTTP requests:
pip install requestsStep 2: Make Your First Walmart Search
Send a POST request to the Scavio Walmart API endpoint with your query. The API returns structured JSON with product listings, prices, ratings, and more.
import requests
API_KEY = "your_scavio_api_key"
response = requests.post(
"https://api.scavio.dev/api/v1/walmart/search",
headers={
"x-api-key": API_KEY,
"Content-Type": "application/json",
},
json={"query": query},
)
data = response.json()
for product in data.get("products", [])[:5]:
print(f"{product['title']} — {product.get('price', 'N/A')} ({product.get('rating', 'N/A')}⭐)")Step 3: Example Response
The API returns structured JSON. Here is an example response for a Walmart search:
{
"search_metadata": { "status": "success" },
"products": [
{
"position": 1,
"title": "FlexiSpot E7 Standing Desk",
"product_id": "1234567890",
"price": "$349.99",
"rating": 4.5,
"reviews_count": 1823,
"fulfillment": "Free delivery",
"pickup": "Available for pickup"
}
]
}Every field is structured and typed — no HTML parsing, no CSS selectors, no regex extraction. Your Python code can access any field directly.
Step 4: Full Working Example
Here is a complete, runnable Python script that searches Walmart and prints the results:
"""
Scrape Walmart search results using Scavio API.
Returns structured JSON with product listings, prices, ratings, and more.
"""
import requests
import json
API_KEY = "your_scavio_api_key"
def search_walmart(query: str) -> dict:
response = requests.post(
"https://api.scavio.dev/api/v1/walmart/search",
headers={
"x-api-key": API_KEY,
"Content-Type": "application/json",
},
json={"query": query},
)
response.raise_for_status()
return response.json()
if __name__ == "__main__":
results = search_walmart("standing desk")
print(json.dumps(results, indent=2))Why Use Scavio Instead of Scraping Walmart Directly?
- No proxy management. Direct scraping requires rotating proxies to avoid IP bans. Scavio handles all of this server-side.
- No CAPTCHA solving. Walmart aggressively blocks automated requests. Scavio returns clean data every time.
- Structured JSON output. No HTML parsing or CSS selector maintenance. Get typed, consistent data from every request.
- Multi-platform in one API. Search Google, Amazon, YouTube, and Walmart from the same API key with the same authentication pattern.
- Free tier included. 500 credits/month with no credit card required. Each search costs 1 credit.