VOOZH about

URL: https://apify.com/changeable_acacia/wikipedia-article-extractor-ai-ready

โ‡ฑ Wikipedia Article Extractor (AI-ready) ยท Apify


๐Ÿ‘ Wikipedia Article Extractor (AI-ready) avatar

Wikipedia Article Extractor (AI-ready)

Pricing

$0.05 / actor start

Go to Apify Store

Wikipedia Article Extractor (AI-ready)

Extracts clean JSON from any Wikipedia article for AI/RAG use.

Pricing

$0.05 / actor start

Rating

0.0

(0)

Developer

๐Ÿ‘ SABYASACHI TRIPATHY

SABYASACHI TRIPATHY

Maintained by Community

Actor stats

0

Bookmarked

3

Total users

0

Monthly active users

5 months ago

Last modified

Share

TypeScript Crawlee & CheerioCrawler Actor Template

This template example was built with Crawlee to scrape data from a website using Cheerio wrapped into CheerioCrawler.

Quick Start

Once you've installed the dependencies, start the Actor:

$apify run

Once your Actor is ready, you can push it to the Apify Console:

apify login # first, you need to log in if you haven't already done so
apify push

Project Structure

.actor/
โ”œโ”€โ”€ actor.json # Actor config: name, version, env vars, runtime settings
โ”œโ”€โ”€ dataset_schena.json # Structure and representation of data produced by an Actor
โ”œโ”€โ”€ input_schema.json # Input validation & Console form definition
โ””โ”€โ”€ output_schema.json # Specifies where an Actor stores its output
src/
โ””โ”€โ”€ main.ts # Actor entry point and orchestrator
storage/ # Local storage (mirrors Cloud during development)
โ”œโ”€โ”€ datasets/ # Output items (JSON objects)
โ”œโ”€โ”€ key_value_stores/ # Files, config, INPUT
โ””โ”€โ”€ request_queues/ # Pending crawl requests
Dockerfile # Container image definition

For more information, see the Actor definition documentation.

How it works

This code is a TypeScript script that uses Cheerio to scrape data from a website. It then stores the website titles in a dataset.

  • The crawler starts with URLs provided from the input startUrls field defined by the input schema. Number of scraped pages is limited by maxPagesPerCrawl field from the input schema.
  • The crawler uses requestHandler for each URL to extract the data from the page with the Cheerio library and to save the title and URL of each page to the dataset. It also logs out each result that is being saved.

What's included

  • Apify SDK - toolkit for building Actors
  • Crawlee - web scraping and browser automation library
  • Input schema - define and easily validate a schema for your Actor's input
  • Dataset - store structured data where each object stored has the same attributes
  • Cheerio - a fast, flexible & elegant library for parsing and manipulating HTML and XML
  • Proxy configuration - rotate IP addresses to prevent blocking

Resources

Creating Actors with templates

Getting started

For complete information see this article. In short, you will:

  1. Build the Actor
  2. Run the Actor

Pull the Actor for local development

If you would like to develop locally, you can pull the existing Actor from Apify console using Apify CLI:

  1. Install apify-cli

    Using Homebrew

    $brew install apify-cli

    Using NPM

    $npm-ginstall apify-cli
  2. Pull the Actor by its unique <ActorId>, which is one of the following:

    • unique name of the Actor to pull (e.g. "apify/hello-world")
    • or ID of the Actor to pull (e.g. "E2jjCZBezvAZnX8Rb")

    You can find both by clicking on the Actor title at the top of the page, which will open a modal containing both Actor unique name and Actor ID.

    This command will copy the Actor into the current directory on your local machine.

    $apify pull <ActorId>

Documentation reference

To learn more about Apify and Actors, take a look at the following resources:

You might also like

Wikipedia Article Scraper

crawlerbros/wikipedia-scraper

Extract structured data from Wikipedia articles. Get summaries, categories, images, metadata, and descriptions using Wikipedia's official API. Supports 300+ languages.

Wikipedia Scraper

devilscrapes/wikipedia-article-scraper

Extract Wikipedia article text, summary, infobox, references, and categories via the Wikipedia API โ€” one row per article, in any language โ€” export to JSON or CSV. We handle title normalisation, redirects, retries, and rate-limit pacing so your dataset arrives clean.

๐Ÿ“š Wikipedia Scraper โ€” Articles & Knowledge Data

nexgendata/wikipedia-scraper

Extract structured data from Wikipedia โ€” article text, infoboxes, categories, references & links. Build knowledge bases, AI training datasets & research tools. Pay per article.

Wikipedia To Markdown

extremescrapes/wikipedia-to-markdown

Convert any Wikipedia article into clean, distraction-free Markdown. Strips infoboxes, references, navboxes, and edit links, leaving only the article content ready for AI/LLM consumption

๐Ÿ‘ User avatar

Extreme Scrapes

1