Wikipedia Search Result Scraper

By
Extract structured data from Wikipedia search results to quickly gather topic details for research or content analysis.
Chrome Store Rating
PRODUCT HUNT#1 Product of the Week
Accenture logoCriteo logoGrammarly logoVerisk logoklook logoPuma logoRingCentral logoAccenture logoCriteo logoGrammarly logoVerisk logoklook logoPuma logoRingCentral logoAccenture logoCriteo logoGrammarly logoVerisk logoklook logoPuma logoRingCentral logoAccenture logoCriteo logoGrammarly logoVerisk logoklook logoPuma logoRingCentral logoAccenture logoCriteo logoGrammarly logoVerisk logoklook logoPuma logoRingCentral logoAccenture logoCriteo logoGrammarly logoVerisk logoklook logoPuma logoRingCentral logo
Collect Wikipedia Search Results FastScrape Wikipedia search result pages and export structured topic data in seconds—no manual copy-paste required.
chrome-web-store
Install fromChrome Web Store

Collect Wikipedia Search Results Fast

Thunderbit’s Wikipedia Result Scraper lets you pull titles, URLs, descriptions, last modified dates, and word counts from Wikipedia search results in a single step. Just enter the search result URL, and Thunderbit organizes the information into a clean, exportable table—ideal for research, SEO, or content planning. You can further enrich your dataset by scraping subpages or related articles, then export everything to Google Sheets, Airtable, or Notion. Thunderbit’s AI-powered extraction ensures accuracy and saves you hours on manual data collection.

How to Extract Wikipedia Results Using Thunderbit

step_01.png
STEP 1Download and InstallDownload and install the Thunderbit Chrome Extension from the Thunderbit Chrome Extension Download Page. Once installed, log in or create a free account to get started.
step_02.png
STEP 2Open ExtensionNavigate to the Wikipedia search result page you want to extract data from. Open the Thunderbit Chrome Extension and select the "Wikipedia Result Scraper" tool from the menu. Paste the URL of the Wikipedia search result page into the provided field.
step03.png
STEP 3Click the Extract Wikipedia Results ButtonClick the "Extract Wikipedia Results" button. Thunderbit will process the page and extract structured data, including the result title, URL, description, last modified date, and result size in words. You can export the results to Excel, Google Sheets, Airtable, Notion, or download them as CSV or JSON.

Learn how to extract structured data from Wikipedia search results

Collect Topic Data from Wikipedia Search Pages

The Wikipedia Result Scraper enables you to extract structured information from Wikipedia search result pages. By simply entering the search result URL, you can gather details such as article titles, URLs, descriptions, last modified dates, and word counts. This tool is especially useful for researchers, SEO specialists, and content creators who need to analyze multiple topics or trends efficiently without manually copying data.
Get Started Free
wikipedia_scraper_illustration.png

Analyze and Organize Large Sets of Wikipedia Results

With the ability to process entire search result pages, the tool helps you quickly build datasets around related topics or trending subjects. It streamlines the process of collecting and comparing information, making it easier to identify patterns, analyze search intent, or discover new concepts. This feature is valuable for anyone conducting large-scale research or content planning based on Wikipedia data.
Get Started Free
wikipedia_analyze_organize_illustration.png

Export Wikipedia Data to Spreadsheets and Databases

After extracting the data, you can export the results as a table to Excel, Google Sheets, Airtable, or Notion. The output includes all key fields—title, URL, description, last modified date, and word count—making it simple to integrate the information into your existing research or workflow. This ensures your data is organized and ready for further analysis or reporting.
Get Started Free
wikipedia_export_illustration.png

Support Content Strategy and SEO Research

Use the extracted Wikipedia data to inform your content strategy, keyword research, or competitive analysis. By having access to structured information about multiple topics at once, you can identify content gaps, track trending subjects, or build comprehensive knowledge bases. This capability is ideal for SEO professionals, marketers, and writers looking to enhance their research with reliable, up-to-date Wikipedia insights.
Get Started Free
wikipedia_content_strategy_illustration.png

What users say about Thunderbit

Taryn W.Growth Strategist@Thunderbit changed how I run competitor research. I click 'AI Suggest Fields,' and it builds a clean table across paginated results—no coding, no CSS. Huge time-saver when analyzing product data from long-tail marketplaces.
Miles T.Sales Development ConsultantI use Thunderbit to grab emails and phone numbers from directories. It extracts clean contact info in one click, and exporting to Sheets or Notion takes seconds. No extra setup, no coding—just usable data ready to work with.
Rhea C.E-commerce AnalystThunderbit helps me monitor SKU data across multiple pages. I scrape the listings, then use Subpage Scraping to pull full product specs, pricing, reviews, and stock. The AI organizes everything into columns I define.
Cassian B.Real Estate AdvisorThunderbit's Scheduled Scraper makes real estate tracking easier. I describe the interval in plain English, and it automatically pulls updated listings, prices, and links without touching the setup again. Simple and very practical.
Dorian B.Content & SEO SpecialistI use Thunderbit's Field AI Prompts to clean and tag scraped blog content. It extracts titles, authors, and even suggests categories. Works great across dynamic sites and subpages—perfect for building structured SEO datasets.
Lina K.Marketplace Operations LeadWe track SKUs from niche stores using Thunderbit. Cloud Scraping handles 50 pages at a time, and for login-required sites, we switch to browser mode. It’s fast, flexible, and doesn’t need ongoing maintenance or manual edits.
Jorge F.Inbound Sales ManagerThunderbit’s AI Autofill is a lifesaver. After scraping contact info, I use it to fill lead forms directly in my browser. I just select the tab, and it fills everything using the scraped row. No manual input needed.
Alina D.Freelance ResearcherI rely on Thunderbit for extracting data from PDFs, image-based sites, and infinite scroll pages. It handles messy formats with AI and delivers ready-to-export tables I can send to Google Sheets or Airtable in seconds.
Taryn W.Growth Strategist@Thunderbit changed how I run competitor research. I click 'AI Suggest Fields,' and it builds a clean table across paginated results—no coding, no CSS. Huge time-saver when analyzing product data from long-tail marketplaces.
Miles T.Sales Development ConsultantI use Thunderbit to grab emails and phone numbers from directories. It extracts clean contact info in one click, and exporting to Sheets or Notion takes seconds. No extra setup, no coding—just usable data ready to work with.
Rhea C.E-commerce AnalystThunderbit helps me monitor SKU data across multiple pages. I scrape the listings, then use Subpage Scraping to pull full product specs, pricing, reviews, and stock. The AI organizes everything into columns I define.
Cassian B.Real Estate AdvisorThunderbit's Scheduled Scraper makes real estate tracking easier. I describe the interval in plain English, and it automatically pulls updated listings, prices, and links without touching the setup again. Simple and very practical.
Dorian B.Content & SEO SpecialistI use Thunderbit's Field AI Prompts to clean and tag scraped blog content. It extracts titles, authors, and even suggests categories. Works great across dynamic sites and subpages—perfect for building structured SEO datasets.
Lina K.Marketplace Operations LeadWe track SKUs from niche stores using Thunderbit. Cloud Scraping handles 50 pages at a time, and for login-required sites, we switch to browser mode. It’s fast, flexible, and doesn’t need ongoing maintenance or manual edits.
Jorge F.Inbound Sales ManagerThunderbit’s AI Autofill is a lifesaver. After scraping contact info, I use it to fill lead forms directly in my browser. I just select the tab, and it fills everything using the scraped row. No manual input needed.
Alina D.Freelance ResearcherI rely on Thunderbit for extracting data from PDFs, image-based sites, and infinite scroll pages. It handles messy formats with AI and delivers ready-to-export tables I can send to Google Sheets or Airtable in seconds.

Frequently Asked Questions

Extract Data using AI
Easily transfer data to Google Sheets, Airtable, or Notion
Chrome Store Rating
PRODUCT HUNT#1 Product of the Week