Get started
Product
Back
Start here!
Ready-to-run tools for your AI agents and apps. Just pick one and go.
Browse 52,511 Actors
Apify platform
Apify Store
Actors for any job on the web
Actors
Build and run serverless programs
Integrations
Connect with apps and services
MCP
Give your AI access to Actors
Anti-blocking
Scrape without getting blocked
Proxy
Rotate scraper IP addresses
Open source
Crawlee
Web scraping and crawling library
Solutions
MCP server configuration
Configure your Apify MCP server with Actors and tools for seamless integration with MCP clients.
Start building
Apify for
Enterprise
Startups
Universities
Nonprofits
Use cases
Data for generative AI
Data for AI agents
Lead generation
Market research
View more →
Consulting
Apify Professional Services
Apify Partners
Developers
Documentation
Full reference for the Apify platform
Actor templates
Python, JavaScript, and TypeScript
Web scraping academy
Courses for beginners and experts
Monetize your code
Publish your Actors and get paid
Learn
API reference
CLI
SDK
Earn from your code
$1.4M paid out last month. Many developers earn over $3k.
Start earning now
Resources
Help and support
Advice and answers about Apify
Actor ideas
Get inspired to build Actors
Changelog
See what’s new on Apify
Customer stories
Find out how others use Apify
Company
About Apify
Contact us
Blog
Live events
Partners
Jobs
We're hiring!
Join our Discord
Talk to other builders
Pricing
Contact sales
Wikipedia Article Scraper
Pay per usage
kayhermes/wikipedia-scraper
Rating
0.0
(0)
Developer
Khoa Nguyen
Actor stats
0
Bookmarked
2
Total users
1
Monthly active users
2 days ago
Last modified
Categories
News
Share
v1.0: Initial release
santamaria-automations/wikipedia-scraper
Extract Wikipedia articles including full content, summary, thumbnails, categories, external links, coordinates, and Wikidata IDs. Multi-language support for 12+ languages. Export data, run via API, schedule and monitor runs, or integrate with other tools.
NanoScrape
12
crawlerbros/wikipedia-scraper
Extract structured data from Wikipedia articles. Get summaries, categories, images, metadata, and descriptions using Wikipedia's official API. Supports 300+ languages.
Crawler Bros
8
glassventures/wikipedia-article-extractor
Extract Wikipedia articles via MediaWiki API. Get full text, summaries, sections, categories, images, links. Multi-language. Perfect for AI/ML training data and RAG.
Glass Ventures
7
changeable_acacia/wikipedia-article-extractor-ai-ready
Extracts clean JSON from any Wikipedia article for AI/RAG use.
SABYASACHI TRIPATHY
3
cloud9_ai/wikipedia-scraper
Scrape Wikipedia articles by search keyword or exact title. Returns summaries, full article text, categories, and links. Supports 300+ languages.
cloud9
openclawmara/wikipedia-scraper
Scrape Wikipedia across 300+ languages. Modes: full articles, summaries, search, random, recent changes, category browse. Extracts text, sections, references, images, links, infobox. Official MediaWiki API — stable, no auth. Great for research, knowledge graphs, content enrichment.
OpenClaw Mara
flash_scraper/wikipedia-scraper
Search Wikipedia in any language and get clean article rows via the free MediaWiki API: title, URL, intro summary or full plaintext content, word count, categories, thumbnail & last-edited date. Perfect for RAG, LLM training data & research. No API key. Export CSV/JSON/Excel.
Flash Scrape
ninhothedev/wikipedia-scraper
$0.5/1K 🔥 Fast Wikipedia scraper! Article title, summary, full text, links, images & categories in any language. JSON, CSV, Excel or API in seconds. Search or list titles & pull thousands of articles for research & AI training ⚡
ninhothedev
hipersoft/wikipedia-scraper
Search Wikipedia or look up exact articles and get the full plain-text content, summary, categories, image, Wikidata ID and monthly pageview trends. Any language. Great for research, RAG and AI datasets. No key.
hiper soft
rambunctious_fingerprint/wikipedia-extractor
Casey Marsh
johnlenflure/wikipedia-extractor
Extract structured content from Wikipedia articles. Get summaries, sections, categories, infobox data, images, and internal links in any language.
Sinan Donmez