How to Scrape Product Price Data from eBay?

applyScraping product pricing data is among the most general methods utilized by both individuals and companies to set the pricing on newer websites or list newer products. What makes eBay different from other online stores like Walmart and Amazon is that the products are listed by sellers as well as by individuals. Many eBay products are used with the objective of collection or auction. Therefore price data for different items in various conditions could be scraped from eBay.

  • You need to sell some limited edition products as well as don’t have any idea about the pricing. You could extract pricing data for related products that have been formerly registered on eBay.
  • One person sells unlocked mobile phones, which are in unused condition. You are certain to find related items on eBay so that it’s easy to compare prices.
  • A website wishes to sell refurbished and used electronic goods. This may refer to scraped data from eBay as a base point to set its pricing.

How to Use Python to Scrape Pricing from eBay?

Scraping product pricing data from eBay might not be that difficult task. Let’s see a DIY solution for scraping data from eBay product pages.


This code is written using Python as well as we have utilized BeautifulSoup, a common HTML parsing library. We get the HTML content of webpage links, which are supplied, and parse it in the BeautifulSoup object. When it is completed, we will pull definite data points from web pages. A vital thing to notice is that an HTML page needs to get studied manually before we write any code to scrape eBay pricing data points. Moreover, this code might work for a few eBay pages as well as not others as not all the pages on eBay are having a similar layout.


The JSON given is just what would be generated if you run the given code and provide the link, which was given earlier. We have scraped 4 data fields hare:

  • Title
  • Image
  • Price
  • Reviews

All the data points are required, although you may have empty arrays for reviews if nobody has reviewed the products yet.


You can change the code for scraping new data fields, running it over the products given on the search result pages, and more! While studying HTML content, get the data fields, which you need to scrape as well as work out the attributes and tags related to it that are distinctive. Those would help you scrape particular data fields without any errors.

Best Practices with eBay Price Data Scraper


If we try and fetch data using too many pages within a shorter time, the server is expected to recognize as this is an automatic data fetching and might block the IP address. Therefore, it is suggested to keep the time gap while extracting data from different pages on websites like eBay.

When taking a large-scale price extraction project that might be utilized for profitable objectives, you could be served better if you have utilized a DaaS solution like Actowiz Solutions. You just need to share the sites, categories, as well as data fields you want, and you might be having data done whichever means you need– API integration, S3, and more. You just concentrate on integrating pricing data using your system as well as deciding on the usage. As the data experts fetch clean price data regularly, your team could decide on the algorithms, which will scrape the data.

Looking to scrape eBay product pricing data? Contact Actowiz Solutions now!

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