Amazon Seller Data Extractor avatar

Amazon Seller Data Extractor

Try for free

2 hours trial then $5.00/month - No credit card required now

Go to Store
Amazon Seller Data Extractor

Amazon Seller Data Extractor

pratikdani/amazon-seller-extractor
Try for free

2 hours trial then $5.00/month - No credit card required now

This actor efficiently scrapes Amazon seller data, including storefront details, ratings, product listings, and contact information. It helps analyze competition and identify potential partners on the Amazon marketplace.

You can access the Amazon Seller Data Extractor programmatically from your own Python applications by using the Apify API. You can also choose the language preference from below. To use the Apify API, you’ll need an Apify account and your API token, found in Integrations settings in Apify Console.

1from apify_client import ApifyClient
2
3# Initialize the ApifyClient with your Apify API token
4# Replace '<YOUR_API_TOKEN>' with your token.
5client = ApifyClient("<YOUR_API_TOKEN>")
6
7# Prepare the Actor input
8run_input = { "url": "https://www.amazon.com/sp?seller=A33W53J5GVPZ8K" }
9
10# Run the Actor and wait for it to finish
11run = client.actor("pratikdani/amazon-seller-extractor").call(run_input=run_input)
12
13# Fetch and print Actor results from the run's dataset (if there are any)
14print("💾 Check your data here: https://console.apify.com/storage/datasets/" + run["defaultDatasetId"])
15for item in client.dataset(run["defaultDatasetId"]).iterate_items():
16    print(item)
17
18# 📚 Want to learn more 📖? Go to → https://docs.apify.com/api/client/python/docs/quick-start

Amazon Seller Data Extractor API in Python

The Apify API client for Python is the official library that allows you to use Amazon Seller Data Extractor API in Python, providing convenience functions and automatic retries on errors.

Install the apify-client

pip install apify-client

Other API clients include:

Developer
Maintained by Community

Actor Metrics

  • 4 monthly users

  • 0 No stars yet

  • >99% runs succeeded

  • Created in Feb 2025

  • Modified 5 days ago