# πŸ”₯πŸ•·οΈ Crawl4AI: LLM Friendly Web Crawler & Scrapper unclecode%2Fcrawl4ai | Trendshift [![GitHub Stars](https://img.shields.io/github/stars/unclecode/crawl4ai?style=social)](https://github.com/unclecode/crawl4ai/stargazers) ![PyPI - Downloads](https://img.shields.io/pypi/dm/Crawl4AI) [![GitHub Forks](https://img.shields.io/github/forks/unclecode/crawl4ai?style=social)](https://github.com/unclecode/crawl4ai/network/members) [![GitHub Issues](https://img.shields.io/github/issues/unclecode/crawl4ai)](https://github.com/unclecode/crawl4ai/issues) [![GitHub Pull Requests](https://img.shields.io/github/issues-pr/unclecode/crawl4ai)](https://github.com/unclecode/crawl4ai/pulls) [![License](https://img.shields.io/github/license/unclecode/crawl4ai)](https://github.com/unclecode/crawl4ai/blob/main/LICENSE) Crawl4AI simplifies asynchronous web crawling and data extraction, making it accessible for large language models (LLMs) and AI applications. πŸ†“πŸŒ ## 🌟 Meet the Crawl4AI Assistant: Your Copilot for Crawling Use the [Crawl4AI GPT Assistant](https://tinyurl.com/crawl4ai-gpt) as your AI-powered copilot! With this assistant, you can: - πŸ§‘β€πŸ’» Generate code for complex crawling and extraction tasks - πŸ’‘ Get tailored support and examples - πŸ“˜ Learn Crawl4AI faster with step-by-step guidance ## New in 0.3.73 ✨ - 🐳 Docker Ready: Full API server with seamless deployment & scaling - 🎯 Browser Takeover: Use your own browser with cookies & history intact (CDP support) - πŸ“ Mockdown+: Enhanced tag preservation & content extraction - ⚑️ Parallel Power: Supercharged multi-URL crawling performance - 🌟 And many more exciting updates... ## Try it Now! ✨ Play around with this [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/drive/1SgRPrByQLzjRfwoRNq1wSGE9nYY_EE8C?usp=sharing) ✨ Visit our [Documentation Website](https://crawl4ai.com/mkdocs/) ## Features ✨ - πŸ†“ Completely free and open-source - πŸš€ Blazing fast performance, outperforming many paid services - πŸ€– LLM-friendly output formats (JSON, cleaned HTML, markdown) - 🌐 Multi-browser support (Chromium, Firefox, WebKit) - 🌍 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 - πŸ•΅οΈ User-agent customization - πŸ–ΌοΈ Takes screenshots of pages with enhanced error handling - πŸ“œ Executes multiple custom JavaScripts before crawling - πŸ“Š Generates structured output without LLM using JsonCssExtractionStrategy - πŸ“š Various chunking strategies: topic-based, regex, sentence, and more - 🧠 Advanced extraction strategies: cosine clustering, LLM, and more - 🎯 CSS selector support for precise data extraction - πŸ“ Passes instructions/keywords to refine extraction - πŸ”’ Proxy support with authentication for enhanced access - πŸ”„ Session management for complex multi-page crawling - 🌐 Asynchronous architecture for improved performance - πŸ–ΌοΈ Improved image processing with lazy-loading detection - πŸ•°οΈ Enhanced handling of delayed content loading - πŸ”‘ Custom headers support for LLM interactions - πŸ–ΌοΈ iframe content extraction for comprehensive analysis - ⏱️ Flexible timeout and delayed content retrieval options ## Installation πŸ› οΈ Crawl4AI offers flexible installation options to suit various use cases. You can install it as a Python package or use Docker. ### Using pip 🐍 Choose the installation option that best fits your needs: #### Basic Installation For basic web crawling and scraping tasks: ```bash pip install crawl4ai ``` By default, this will install the asynchronous version of Crawl4AI, using Playwright for web crawling. πŸ‘‰ Note: When you install Crawl4AI, the setup script should automatically install and set up Playwright. However, if you encounter any Playwright-related errors, you can manually install it using one of these methods: 1. Through the command line: ```bash playwright install ``` 2. If the above doesn't work, try this more specific command: ```bash python -m playwright install chromium ``` This second method has proven to be more reliable in some cases. #### Installation with Synchronous Version If you need the synchronous version using Selenium: ```bash pip install crawl4ai[sync] ``` #### Development Installation For contributors who plan to modify the source code: ```bash git clone https://github.com/unclecode/crawl4ai.git cd crawl4ai pip install -e . ``` ### Using Docker 🐳 Crawl4AI is available as Docker images for easy deployment. You can either pull directly from Docker Hub (recommended) or build from the repository. #### Option 1: Docker Hub (Recommended) ```bash # Pull and run from Docker Hub (choose one): docker pull unclecode/crawl4ai:basic # Basic crawling features docker pull unclecode/crawl4ai:all # Full installation (ML, LLM support) docker pull unclecode/crawl4ai:gpu # GPU-enabled version # Run the container docker run -p 11235:11235 unclecode/crawl4ai:basic # Replace 'basic' with your chosen version ``` #### Option 2: Build from Repository ```bash # Clone the repository git clone https://github.com/unclecode/crawl4ai.git cd crawl4ai # Build the image docker build -t crawl4ai:local \ --build-arg INSTALL_TYPE=basic \ # Options: basic, all . # Run your local build docker run -p 11235:11235 crawl4ai:local ``` Quick test (works for both options): ```python import requests # Submit a crawl job response = requests.post( "http://localhost:11235/crawl", json={"urls": "https://example.com", "priority": 10} ) task_id = response.json()["task_id"] # Get results result = requests.get(f"http://localhost:11235/task/{task_id}") ``` For advanced configuration, environment variables, and usage examples, see our [Docker Deployment Guide](https://crawl4ai.com/mkdocs/basic/docker-deployment/). ## Quick Start πŸš€ ```python import asyncio from crawl4ai import AsyncWebCrawler async def main(): async with AsyncWebCrawler(verbose=True) as crawler: result = await crawler.arun(url="https://www.nbcnews.com/business") print(result.markdown) if __name__ == "__main__": asyncio.run(main()) ``` ## Advanced Usage πŸ”¬ ### Executing JavaScript and Using CSS Selectors ```python import asyncio from crawl4ai import AsyncWebCrawler async def main(): async with AsyncWebCrawler(verbose=True) as crawler: js_code = ["const loadMoreButton = Array.from(document.querySelectorAll('button')).find(button => button.textContent.includes('Load More')); loadMoreButton && loadMoreButton.click();"] result = await crawler.arun( url="https://www.nbcnews.com/business", js_code=js_code, css_selector=".wide-tease-item__description", bypass_cache=True ) print(result.extracted_content) if __name__ == "__main__": asyncio.run(main()) ``` ### Using a Proxy ```python import asyncio from crawl4ai import AsyncWebCrawler async def main(): async with AsyncWebCrawler(verbose=True, proxy="http://127.0.0.1:7890") as crawler: result = await crawler.arun( url="https://www.nbcnews.com/business", bypass_cache=True ) print(result.markdown) if __name__ == "__main__": asyncio.run(main()) ``` ### Extracting Structured Data without LLM The `JsonCssExtractionStrategy` allows for precise extraction of structured data from web pages using CSS selectors. ```python import asyncio import json from crawl4ai import AsyncWebCrawler from crawl4ai.extraction_strategy import JsonCssExtractionStrategy async def extract_news_teasers(): schema = { "name": "News Teaser Extractor", "baseSelector": ".wide-tease-item__wrapper", "fields": [ { "name": "category", "selector": ".unibrow span[data-testid='unibrow-text']", "type": "text", }, { "name": "headline", "selector": ".wide-tease-item__headline", "type": "text", }, { "name": "summary", "selector": ".wide-tease-item__description", "type": "text", }, { "name": "time", "selector": "[data-testid='wide-tease-date']", "type": "text", }, { "name": "image", "type": "nested", "selector": "picture.teasePicture img", "fields": [ {"name": "src", "type": "attribute", "attribute": "src"}, {"name": "alt", "type": "attribute", "attribute": "alt"}, ], }, { "name": "link", "selector": "a[href]", "type": "attribute", "attribute": "href", }, ], } extraction_strategy = JsonCssExtractionStrategy(schema, verbose=True) async with AsyncWebCrawler(verbose=True) as crawler: result = await crawler.arun( url="https://www.nbcnews.com/business", extraction_strategy=extraction_strategy, bypass_cache=True, ) assert result.success, "Failed to crawl the page" news_teasers = json.loads(result.extracted_content) print(f"Successfully extracted {len(news_teasers)} news teasers") print(json.dumps(news_teasers[0], indent=2)) if __name__ == "__main__": asyncio.run(extract_news_teasers()) ``` For more advanced usage examples, check out our [Examples](https://crawl4ai.com/mkdocs/extraction/css-advanced/) section in the documentation. ### Extracting Structured Data with OpenAI ```python import os import asyncio from crawl4ai import AsyncWebCrawler 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 for the OpenAI model.") async def main(): async with AsyncWebCrawler(verbose=True) as crawler: result = await crawler.arun( url='https://openai.com/api/pricing/', 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) if __name__ == "__main__": asyncio.run(main()) ``` ### Session Management and Dynamic Content Crawling Crawl4AI excels at handling complex scenarios, such as crawling multiple pages with dynamic content loaded via JavaScript. Here's an example of crawling GitHub commits across multiple pages: ```python import asyncio import re from bs4 import BeautifulSoup from crawl4ai import AsyncWebCrawler async def crawl_typescript_commits(): first_commit = "" async def on_execution_started(page): nonlocal first_commit try: while True: await page.wait_for_selector('li.Box-sc-g0xbh4-0 h4') commit = await page.query_selector('li.Box-sc-g0xbh4-0 h4') commit = await commit.evaluate('(element) => element.textContent') commit = re.sub(r'\s+', '', commit) if commit and commit != first_commit: first_commit = commit break await asyncio.sleep(0.5) except Exception as e: print(f"Warning: New content didn't appear after JavaScript execution: {e}") async with AsyncWebCrawler(verbose=True) as crawler: crawler.crawler_strategy.set_hook('on_execution_started', on_execution_started) url = "https://github.com/microsoft/TypeScript/commits/main" session_id = "typescript_commits_session" all_commits = [] js_next_page = """ const button = document.querySelector('a[data-testid="pagination-next-button"]'); if (button) button.click(); """ for page in range(3): # Crawl 3 pages result = await crawler.arun( url=url, session_id=session_id, css_selector="li.Box-sc-g0xbh4-0", js=js_next_page if page > 0 else None, bypass_cache=True, js_only=page > 0 ) assert result.success, f"Failed to crawl page {page + 1}" soup = BeautifulSoup(result.cleaned_html, 'html.parser') commits = soup.select("li") all_commits.extend(commits) print(f"Page {page + 1}: Found {len(commits)} commits") await crawler.crawler_strategy.kill_session(session_id) print(f"Successfully crawled {len(all_commits)} commits across 3 pages") if __name__ == "__main__": asyncio.run(crawl_typescript_commits()) ``` This example demonstrates Crawl4AI's ability to handle complex scenarios where content is loaded asynchronously. It crawls multiple pages of GitHub commits, executing JavaScript to load new content and using custom hooks to ensure data is loaded before proceeding. For more advanced usage examples, check out our [Examples](https://crawl4ai.com/mkdocs/tutorial/episode_12_Session-Based_Crawling_for_Dynamic_Websites/) section in the documentation. ## Speed Comparison πŸš€ Crawl4AI is designed with speed as a primary focus. Our goal is to provide the fastest possible response with high-quality data extraction, minimizing abstractions between the data and the user. We've conducted a speed comparison between Crawl4AI and Firecrawl, a paid service. The results demonstrate Crawl4AI's superior performance: ```bash Firecrawl: Time taken: 7.02 seconds Content length: 42074 characters Images found: 49 Crawl4AI (simple crawl): Time taken: 1.60 seconds Content length: 18238 characters Images found: 49 Crawl4AI (with JavaScript execution): Time taken: 4.64 seconds Content length: 40869 characters Images found: 89 ``` As you can see, Crawl4AI outperforms Firecrawl significantly: - Simple crawl: Crawl4AI is over 4 times faster than Firecrawl. - With JavaScript execution: Even when executing JavaScript to load more content (doubling the number of images found), Crawl4AI is still faster than Firecrawl's simple crawl. You can find the full comparison code in our repository at `docs/examples/crawl4ai_vs_firecrawl.py`. ## Documentation πŸ“š For detailed documentation, including installation instructions, advanced features, and API reference, visit our [Documentation Website](https://crawl4ai.com/mkdocs/). ## Crawl4AI Roadmap πŸ—ΊοΈ For detailed information on our development plans and upcoming features, check out our [Roadmap](https://github.com/unclecode/crawl4ai/blob/main/ROADMAP.md). ### Advanced Crawling Systems πŸ”§ - [x] 0. Graph Crawler: Smart website traversal using graph search algorithms for comprehensive nested page extraction - [ ] 1. Question-Based Crawler: Natural language driven web discovery and content extraction - [ ] 2. Knowledge-Optimal Crawler: Smart crawling that maximizes knowledge while minimizing data extraction - [ ] 3. Agentic Crawler: Autonomous system for complex multi-step crawling operations ### Specialized Features πŸ› οΈ - [ ] 4. Automated Schema Generator: Convert natural language to extraction schemas - [ ] 5. Domain-Specific Scrapers: Pre-configured extractors for common platforms (academic, e-commerce) - [ ] 6. Web Embedding Index: Semantic search infrastructure for crawled content ### Development Tools πŸ”¨ - [ ] 7. Interactive Playground: Web UI for testing, comparing strategies with AI assistance - [ ] 8. Performance Monitor: Real-time insights into crawler operations - [ ] 9. Cloud Integration: One-click deployment solutions across cloud providers ### Community & Growth 🌱 - [ ] 10. Sponsorship Program: Structured support system with tiered benefits - [ ] 11. Educational Content: "How to Crawl" video series and interactive tutorials ## Contributing 🀝 We welcome contributions from the open-source community. Check out our [contribution guidelines](https://github.com/unclecode/crawl4ai/blob/main/CONTRIBUTING.md) for more information. ## License πŸ“„ Crawl4AI is released under the [Apache 2.0 License](https://github.com/unclecode/crawl4ai/blob/main/LICENSE). ## Contact πŸ“§ For questions, suggestions, or feedback, feel free to reach out: - GitHub: [unclecode](https://github.com/unclecode) - Twitter: [@unclecode](https://twitter.com/unclecode) - Website: [crawl4ai.com](https://crawl4ai.com) Happy Crawling! πŸ•ΈοΈπŸš€ # Mission Our mission is to unlock the untapped potential of personal and enterprise data in the digital age. In today's world, individuals and organizations generate vast amounts of valuable digital footprints, yet this data remains largely uncapitalized as a true asset. Our open-source solution empowers developers and innovators to build tools for data extraction and structuring, laying the foundation for a new era of data ownership. By transforming personal and enterprise data into structured, tradeable assets, we're creating opportunities for individuals to capitalize on their digital footprints and for organizations to unlock the value of their collective knowledge. This democratization of data represents the first step toward a shared data economy, where willing participation in data sharing drives AI advancement while ensuring the benefits flow back to data creators. Through this approach, we're building a future where AI development is powered by authentic human knowledge rather than synthetic alternatives. ![Mission Diagram](./docs/assets/pitch-dark.svg) For a detailed exploration of our vision, opportunities, and pathway forward, please see our [full mission statement](./MISSION.md). ## Key Opportunities - **Data Capitalization**: Transform digital footprints into valuable assets that can appear on personal and enterprise balance sheets - **Authentic Data**: Unlock the vast reservoir of real human insights and knowledge for AI advancement - **Shared Economy**: Create new value streams where data creators directly benefit from their contributions ## Development Pathway 1. **Open-Source Foundation**: Building transparent, community-driven data extraction tools 2. **Data Capitalization Platform**: Creating tools to structure and value digital assets 3. **Shared Data Marketplace**: Establishing an economic platform for ethical data exchange For a detailed exploration of our vision, challenges, and solutions, please see our [full mission statement](./MISSION.md). ## Star History [![Star History Chart](https://api.star-history.com/svg?repos=unclecode/crawl4ai&type=Date)](https://star-history.com/#unclecode/crawl4ai&Date)