/crawl4ai

πŸ”₯πŸ•·οΈ Crawl4AI: Open-source LLM Friendly Web Crawler & Scrapper

Primary LanguagePythonApache License 2.0Apache-2.0

Crawl4AI v0.2.71 πŸ•·οΈπŸ€–

GitHub Stars GitHub Forks GitHub Issues GitHub Pull Requests License

Crawl4AI simplifies web crawling and data extraction, making it accessible for large language models (LLMs) and AI applications. πŸ†“πŸŒ

Try it Now!

  • Use as REST API: Open In Colab
  • Use as Python library: Open In Colab

✨ visit our Documentation Website

Features ✨

  • πŸ†“ Completely free and open-source
  • πŸ€– LLM-friendly output formats (JSON, cleaned HTML, markdown)
  • 🌍 Supports crawling multiple URLs simultaneously
  • 🎨 Extracts and returns all media tags (Images, Audio, and Video)
  • πŸ”— Extracts all external and internal links
  • πŸ“š Extracts metadata from the page
  • πŸ”„ Custom hooks for authentication, headers, and page modifications before crawling
  • πŸ•΅οΈ User-agent customization
  • πŸ–ΌοΈ Takes screenshots of the page
  • πŸ“œ Executes multiple custom JavaScripts before crawling
  • πŸ“š Various chunking strategies: topic-based, regex, sentence, and more
  • 🧠 Advanced extraction strategies: cosine clustering, LLM, and more
  • 🎯 CSS selector support
  • πŸ“ Passes instructions/keywords to refine extraction

Cool Examples πŸš€

Quick Start

from crawl4ai import WebCrawler

# Create an instance of WebCrawler
crawler = WebCrawler()

# Warm up the crawler (load necessary models)
crawler.warmup()

# Run the crawler on a URL
result = crawler.run(url="https://www.nbcnews.com/business")

# Print the extracted content
print(result.markdown)

Speed-First Design πŸš€

Perhaps the most important design principle for this library is speed. We need to ensure it can handle many links and resources in parallel as quickly as possible. By combining this speed with fast LLMs like Groq, the results will be truly amazing.

import time
from crawl4ai.web_crawler import WebCrawler
crawler = WebCrawler()
crawler.warmup()

start = time.time()
url = r"https://www.nbcnews.com/business"
result = crawler.run( url, word_count_threshold=10, bypass_cache=True)
end = time.time()
print(f"Time taken: {end - start}")

Let's take a look the calculated time for the above code snippet:

[LOG] πŸš€ Crawling done, success: True, time taken: 1.3623387813568115 seconds
[LOG] πŸš€ Content extracted, success: True, time taken: 0.05715131759643555 seconds
[LOG] πŸš€ Extraction, time taken: 0.05750393867492676 seconds.
Time taken: 1.439958095550537

Fetching the content from the page took 1.3623 seconds, and extracting the content took 0.0575 seconds. πŸš€

Extract Structured Data from Web Pages πŸ“Š

Crawl all OpenAI models and their fees from the official page.

import os
from crawl4ai import WebCrawler
from crawl4ai.extraction_strategy import LLMExtractionStrategy
from pydantic import BaseModel, Field

class OpenAIModelFee(BaseModel):
    model_name: str = Field(..., description="Name of the OpenAI model.")
    input_fee: str = Field(..., description="Fee for input token for the OpenAI model.")
    output_fee: str = Field(..., description="Fee for output token ßfor the OpenAI model.")

url = 'https://openai.com/api/pricing/'
crawler = WebCrawler()
crawler.warmup()

result = crawler.run(
        url=url,
        word_count_threshold=1,
        extraction_strategy= LLMExtractionStrategy(
            provider= "openai/gpt-4o", api_token = os.getenv('OPENAI_API_KEY'), 
            schema=OpenAIModelFee.schema(),
            extraction_type="schema",
            instruction="""From the crawled content, extract all mentioned model names along with their fees for input and output tokens. 
            Do not miss any models in the entire content. One extracted model JSON format should look like this: 
            {"model_name": "GPT-4", "input_fee": "US$10.00 / 1M tokens", "output_fee": "US$30.00 / 1M tokens"}."""
        ),            
        bypass_cache=True,
    )

print(result.extracted_content)

Execute JS, Filter Data with CSS Selector, and Clustering

from crawl4ai import WebCrawler
from crawl4ai.chunking_strategy import CosineStrategy

js_code = ["const loadMoreButton = Array.from(document.querySelectorAll('button')).find(button => button.textContent.includes('Load More')); loadMoreButton && loadMoreButton.click();"]

crawler = WebCrawler()
crawler.warmup()

result = crawler.run(
    url="https://www.nbcnews.com/business",
    js=js_code,
    css_selector="p",
    extraction_strategy=CosineStrategy(semantic_filter="technology")
)

print(result.extracted_content)

Documentation πŸ“š

For detailed documentation, including installation instructions, advanced features, and API reference, visit our Documentation Website.

Contributing 🀝

We welcome contributions from the open-source community. Check out our contribution guidelines for more information.

License πŸ“„

Crawl4AI is released under the Apache 2.0 License.

Contact πŸ“§

For questions, suggestions, or feedback, feel free to reach out:

Happy Crawling! πŸ•ΈοΈπŸš€

Star History

Star History Chart