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crawl4aivsdataflowkit

Apache-2.0 54 5 63,373
1.5 million (month) May 01 2024 0.8.6(2026-03-24 15:07:50 ago)
711 3 4 BSD-3-Clause
Feb 09 2017 2026-03-21(2026-03-21 09:11:03 ago)

Crawl4AI is an open-source AI-powered web crawling and data extraction library for Python. It uses large language models (LLMs) to intelligently extract structured data from web pages with minimal code. Unlike traditional scraping frameworks that rely on CSS selectors or XPath, Crawl4AI can understand page content semantically and extract data based on natural language descriptions of what you want.

Key features include:

  • LLM-based extraction Define what data you want in plain English and Crawl4AI uses LLMs to find and extract it from the page content. Supports multiple LLM providers including OpenAI, Anthropic, and local models.
  • Automatic crawling Built-in crawler with support for JavaScript rendering, parallel crawling, and session management.
  • Structured output Returns data in structured formats (JSON, Pydantic models) making it easy to integrate into data pipelines.
  • Markdown conversion Can convert web pages to clean markdown format, useful for feeding content to LLMs.
  • Chunking strategies Multiple strategies for breaking down large pages into processable chunks for LLM extraction.
  • Async support Built on async Python for efficient concurrent crawling and extraction.

Crawl4AI is particularly useful for scraping unstructured content where writing traditional CSS/XPath selectors would be tedious or fragile. It excels at content extraction, article parsing, and data mining from diverse page layouts.

Dataflow kit ("DFK") is a Web Scraping framework for Gophers. It extracts data from web pages, following the specified CSS Selectors. You can use it in many ways for data mining, data processing or archiving.

Web-scraping pipeline consists of 3 general components:

  • Downloading an HTML web-page. (Fetch Service)
  • Parsing an HTML page and retrieving data we're interested in (Parse Service)
  • Encoding parsed data to CSV, MS Excel, JSON, JSON Lines or XML format.

For fetching dataflowkit has several types of page fetchers:

  • Base fetcher uses standard golang http client to fetch pages as is. It works faster than Chrome fetcher. But Base fetcher cannot render dynamic javascript driven web pages.
  • Chrome fetcher is intended for rendering dynamic javascript based content. It sends requests to Chrome running in headless mode.

For parsing dataflowkit extracts data from downloaded web page following the rules listed in configuration JSON file. Extracted data is returned in CSV, MS Excel, JSON or XML format.

Some dataflowkit features:

  • Scraping of JavaScript generated pages;
  • Data extraction from paginated websites;
  • Processing infinite scrolled pages.
  • Sсraping of websites behind login form;
  • Cookies and sessions handling;
  • Following links and detailed pages processing;
  • Managing delays between requests per domain;
  • Following robots.txt directives;
  • Saving intermediate data in Diskv or Mongodb. Storage interface is flexible enough to add more storage types easily;
  • Encode results to CSV, MS Excel, JSON(Lines), XML formats;
  • Dataflow kit is fast. It takes about 4-6 seconds to fetch and then parse 50 pages.
  • Dataflow kit is suitable to process quite large volumes of data. Our tests show the time needed to parse appr. 4 millions of pages is about 7 hours.

Highlights


ai-poweredasyncpopular

Example Use


```python from crawl4ai import AsyncWebCrawler, CrawlerRunConfig from crawl4ai.extraction_strategy import LLMExtractionStrategy import asyncio async def main(): # Basic crawling - get page as markdown async with AsyncWebCrawler() as crawler: result = await crawler.arun(url="https://example.com") print(result.markdown) # clean markdown content # AI-powered extraction with structured output strategy = LLMExtractionStrategy( instruction="Extract all product names and prices from this page", ) config = CrawlerRunConfig(extraction_strategy=strategy) async with AsyncWebCrawler() as crawler: result = await crawler.arun( url="https://example.com/products", config=config, ) print(result.extracted_content) # structured JSON output asyncio.run(main()) ```
Dataflowkit uses JSON configuration like: ```json { "name": "collection", "request": { "url": "https://example.com" }, "fields": [ { "name": "Title", "selector": ".product-container a", "extractor": { "types": [ "text", "href" ], "filters": [ "trim", "lowerCase" ], "params": { "includeIfEmpty": false } } }, { "name": "Image", "selector": "#product-container img", "extractor": { "types": [ "alt", "src", "width", "height" ], "filters": [ "trim", "upperCase" ] } }, { "name": "Buyinfo", "selector": ".buy-info", "extractor": { "types": [ "text" ], "params": { "includeIfEmpty": false } } } ], "paginator": { "selector": ".next", "attr": "href", "maxPages": 3 }, "format": "json", "fetcherType": "chrome", "paginateResults": false } ``` which is then ingested through CLI command.

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