# crawl4ai **Repository Path**: lisbitid/crawl4ai ## Basic Information - **Project Name**: crawl4ai - **Description**: Crawl4AI 是排名第一的 GitHub 存储库,由充满活力的社区积极维护。它提供专为LLMs 、人工智能代理和数据管道量身定制的超快、人工智能就绪的网络爬行。 Crawl4AI 开源、灵活且专为实时性能而构建,为开发人员提供了无与伦比的速度、精度和部署简便性。 - **Primary Language**: Unknown - **License**: Apache-2.0 - **Default Branch**: main - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 2 - **Forks**: 2 - **Created**: 2024-12-31 - **Last Updated**: 2025-03-31 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # 🚀🤖 Crawl4AI: Open-source LLM Friendly Web Crawler & Scraper. 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 is the #1 trending GitHub repository, actively maintained by a vibrant community. It delivers blazing-fast, AI-ready web crawling tailored for LLMs, AI agents, and data pipelines. Open source, flexible, and built for real-time performance, Crawl4AI empowers developers with unmatched speed, precision, and deployment ease. [✨ Check out latest update v0.4.2](#-recent-updates) 🎉 **Version 0.4.2 is out!** Introducing our experimental PruningContentFilter - a powerful new algorithm for smarter Markdown generation. Test it out and [share your feedback](https://github.com/unclecode/crawl4ai/issues)! [Read the release notes →](https://crawl4ai.com/mkdocs/blog) ## 🧐 Why Crawl4AI? 1. **Built for LLMs**: Creates smart, concise Markdown optimized for RAG and fine-tuning applications. 2. **Lightning Fast**: Delivers results 6x faster with real-time, cost-efficient performance. 3. **Flexible Browser Control**: Offers session management, proxies, and custom hooks for seamless data access. 4. **Heuristic Intelligence**: Uses advanced algorithms for efficient extraction, reducing reliance on costly models. 5. **Open Source & Deployable**: Fully open-source with no API keys—ready for Docker and cloud integration. 6. **Thriving Community**: Actively maintained by a vibrant community and the #1 trending GitHub repository. ## 🚀 Quick Start 1. Install Crawl4AI: ```bash pip install crawl4ai crawl4ai-setup # Setup the browser ``` 2. Run a simple web crawl: ```python import asyncio from crawl4ai import AsyncWebCrawler, CacheMode async def main(): async with AsyncWebCrawler(verbose=True) as crawler: result = await crawler.arun(url="https://www.nbcnews.com/business") # Soone will be change to result.markdown print(result.markdown_v2.raw_markdown) if __name__ == "__main__": asyncio.run(main()) ``` ## ✨ Features
📝 Markdown Generation - 🧹 **Clean Markdown**: Generates clean, structured Markdown with accurate formatting. - 🎯 **Fit Markdown**: Heuristic-based filtering to remove noise and irrelevant parts for AI-friendly processing. - 🔗 **Citations and References**: Converts page links into a numbered reference list with clean citations. - 🛠️ **Custom Strategies**: Users can create their own Markdown generation strategies tailored to specific needs. - 📚 **BM25 Algorithm**: Employs BM25-based filtering for extracting core information and removing irrelevant content.
📊 Structured Data Extraction - 🤖 **LLM-Driven Extraction**: Supports all LLMs (open-source and proprietary) for structured data extraction. - 🧱 **Chunking Strategies**: Implements chunking (topic-based, regex, sentence-level) for targeted content processing. - 🌌 **Cosine Similarity**: Find relevant content chunks based on user queries for semantic extraction. - 🔎 **CSS-Based Extraction**: Fast schema-based data extraction using XPath and CSS selectors. - 🔧 **Schema Definition**: Define custom schemas for extracting structured JSON from repetitive patterns.
🌐 Browser Integration - 🖥️ **Managed Browser**: Use user-owned browsers with full control, avoiding bot detection. - 🔄 **Remote Browser Control**: Connect to Chrome Developer Tools Protocol for remote, large-scale data extraction. - 🔒 **Session Management**: Preserve browser states and reuse them for multi-step crawling. - 🧩 **Proxy Support**: Seamlessly connect to proxies with authentication for secure access. - ⚙️ **Full Browser Control**: Modify headers, cookies, user agents, and more for tailored crawling setups. - 🌍 **Multi-Browser Support**: Compatible with Chromium, Firefox, and WebKit. - 📐 **Dynamic Viewport Adjustment**: Automatically adjusts the browser viewport to match page content, ensuring complete rendering and capturing of all elements.
🔎 Crawling & Scraping - 🖼️ **Media Support**: Extract images, audio, videos, and responsive image formats like `srcset` and `picture`. - 🚀 **Dynamic Crawling**: Execute JS and wait for async or sync for dynamic content extraction. - 📸 **Screenshots**: Capture page screenshots during crawling for debugging or analysis. - 📂 **Raw Data Crawling**: Directly process raw HTML (`raw:`) or local files (`file://`). - 🔗 **Comprehensive Link Extraction**: Extracts internal, external links, and embedded iframe content. - 🛠️ **Customizable Hooks**: Define hooks at every step to customize crawling behavior. - 💾 **Caching**: Cache data for improved speed and to avoid redundant fetches. - 📄 **Metadata Extraction**: Retrieve structured metadata from web pages. - 📡 **IFrame Content Extraction**: Seamless extraction from embedded iframe content. - 🕵️ **Lazy Load Handling**: Waits for images to fully load, ensuring no content is missed due to lazy loading. - 🔄 **Full-Page Scanning**: Simulates scrolling to load and capture all dynamic content, perfect for infinite scroll pages.
🚀 Deployment - 🐳 **Dockerized Setup**: Optimized Docker image with API server for easy deployment. - 🔄 **API Gateway**: One-click deployment with secure token authentication for API-based workflows. - 🌐 **Scalable Architecture**: Designed for mass-scale production and optimized server performance. - ⚙️ **DigitalOcean Deployment**: Ready-to-deploy configurations for DigitalOcean and similar platforms.
🎯 Additional Features - 🕶️ **Stealth Mode**: Avoid bot detection by mimicking real users. - 🏷️ **Tag-Based Content Extraction**: Refine crawling based on custom tags, headers, or metadata. - 🔗 **Link Analysis**: Extract and analyze all links for detailed data exploration. - 🛡️ **Error Handling**: Robust error management for seamless execution. - 🔐 **CORS & Static Serving**: Supports filesystem-based caching and cross-origin requests. - 📖 **Clear Documentation**: Simplified and updated guides for onboarding and advanced usage. - 🙌 **Community Recognition**: Acknowledges contributors and pull requests for transparency.
## 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/) ## Installation 🛠️ 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 crawl4ai-setup # Setup the browser ``` By default, this will install the asynchronous version of Crawl4AI, using Playwright for web crawling. 👉 **Note**: When you install Crawl4AI, the `crawl4ai-setup` 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 The sync version is deprecated and will be removed in future versions. 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 . # Basic installation in editable mode ``` Install optional features: ```bash pip install -e ".[torch]" # With PyTorch features pip install -e ".[transformer]" # With Transformer features pip install -e ".[cosine]" # With cosine similarity features pip install -e ".[sync]" # With synchronous crawling (Selenium) pip install -e ".[all]" # Install all optional features ```
🚀 One-Click Deployment Deploy your own instance of Crawl4AI with one click: [![DigitalOcean Referral Badge](https://web-platforms.sfo2.cdn.digitaloceanspaces.com/WWW/Badge%203.svg)](https://www.digitalocean.com/?repo=https://github.com/unclecode/crawl4ai/tree/0.3.74&refcode=a0780f1bdb3d&utm_campaign=Referral_Invite&utm_medium=Referral_Program&utm_source=badge) > 💡 **Recommended specs**: 4GB RAM minimum. Select "professional-xs" or higher when deploying for stable operation. The deploy will: - Set up a Docker container with Crawl4AI - Configure Playwright and all dependencies - Start the FastAPI server on port `11235` - Set up health checks and auto-deployment
🐳 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) Choose the appropriate image based on your platform and needs: ### For AMD64 (Regular Linux/Windows): ```bash # Basic version (recommended) docker pull unclecode/crawl4ai:basic-amd64 docker run -p 11235:11235 unclecode/crawl4ai:basic-amd64 # Full ML/LLM support docker pull unclecode/crawl4ai:all-amd64 docker run -p 11235:11235 unclecode/crawl4ai:all-amd64 # With GPU support docker pull unclecode/crawl4ai:gpu-amd64 docker run -p 11235:11235 unclecode/crawl4ai:gpu-amd64 ``` ### For ARM64 (M1/M2 Macs, ARM servers): ```bash # Basic version (recommended) docker pull unclecode/crawl4ai:basic-arm64 docker run -p 11235:11235 unclecode/crawl4ai:basic-arm64 # Full ML/LLM support docker pull unclecode/crawl4ai:all-arm64 docker run -p 11235:11235 unclecode/crawl4ai:all-arm64 # With GPU support docker pull unclecode/crawl4ai:gpu-arm64 docker run -p 11235:11235 unclecode/crawl4ai:gpu-arm64 ``` Need more memory? Add `--shm-size`: ```bash docker run --shm-size=2gb -p 11235:11235 unclecode/crawl4ai:basic-amd64 ``` Test the installation: ```bash curl http://localhost:11235/health ``` ### For Raspberry Pi (32-bit) (coming soon): ```bash # Pull and run basic version (recommended for Raspberry Pi) docker pull unclecode/crawl4ai:basic-armv7 docker run -p 11235:11235 unclecode/crawl4ai:basic-armv7 # With increased shared memory if needed docker run --shm-size=2gb -p 11235:11235 unclecode/crawl4ai:basic-armv7 ``` Note: Due to hardware constraints, only the basic version is recommended for Raspberry Pi.
🐳 Option 2: Build from Repository Build the image locally based on your platform: ```bash # Clone the repository git clone https://github.com/unclecode/crawl4ai.git cd crawl4ai # For AMD64 (Regular Linux/Windows) docker build --platform linux/amd64 \ --tag crawl4ai:local \ --build-arg INSTALL_TYPE=basic \ . # For ARM64 (M1/M2 Macs, ARM servers) docker build --platform linux/arm64 \ --tag crawl4ai:local \ --build-arg INSTALL_TYPE=basic \ . ``` Build options: - INSTALL_TYPE=basic (default): Basic crawling features - INSTALL_TYPE=all: Full ML/LLM support - ENABLE_GPU=true: Add GPU support Example with all options: ```bash docker build --platform linux/amd64 \ --tag crawl4ai:local \ --build-arg INSTALL_TYPE=all \ --build-arg ENABLE_GPU=true \ . ``` Run your local build: ```bash # Regular run docker run -p 11235:11235 crawl4ai:local # With increased shared memory docker run --shm-size=2gb -p 11235:11235 crawl4ai:local ``` Test the installation: ```bash curl http://localhost:11235/health ```
🐳 Option 3: Using Docker Compose Docker Compose provides a more structured way to run Crawl4AI, especially when dealing with environment variables and multiple configurations. ```bash # Clone the repository git clone https://github.com/unclecode/crawl4ai.git cd crawl4ai ``` ### For AMD64 (Regular Linux/Windows): ```bash # Build and run locally docker-compose --profile local-amd64 up # Run from Docker Hub VERSION=basic docker-compose --profile hub-amd64 up # Basic version VERSION=all docker-compose --profile hub-amd64 up # Full ML/LLM support VERSION=gpu docker-compose --profile hub-amd64 up # GPU support ``` ### For ARM64 (M1/M2 Macs, ARM servers): ```bash # Build and run locally docker-compose --profile local-arm64 up # Run from Docker Hub VERSION=basic docker-compose --profile hub-arm64 up # Basic version VERSION=all docker-compose --profile hub-arm64 up # Full ML/LLM support VERSION=gpu docker-compose --profile hub-arm64 up # GPU support ``` Environment variables (optional): ```bash # Create a .env file CRAWL4AI_API_TOKEN=your_token OPENAI_API_KEY=your_openai_key CLAUDE_API_KEY=your_claude_key ``` The compose file includes: - Memory management (4GB limit, 1GB reserved) - Shared memory volume for browser support - Health checks - Auto-restart policy - All necessary port mappings Test the installation: ```bash curl http://localhost:11235/health ```
--- ### Quick Test Run a quick test (works for both Docker 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"] # Continue polling until the task is complete (status="completed") result = requests.get(f"http://localhost:11235/task/{task_id}") ``` For more examples, see our [Docker Examples](https://github.com/unclecode/crawl4ai/blob/main/docs/examples/docker_example.py). For advanced configuration, environment variables, and usage examples, see our [Docker Deployment Guide](https://crawl4ai.com/mkdocs/basic/docker-deployment/).
## 🔬 Advanced Usage Examples 🔬 You can check the project structure in the directory [https://github.com/unclecode/crawl4ai/docs/examples](docs/examples). Over there, you can find a variety of examples; here, some popular examples are shared.
📝 Heuristic Markdown Generation with Clean and Fit Markdown ```python import asyncio from crawl4ai import AsyncWebCrawler, CacheMode from crawl4ai.content_filter_strategy import PruningContentFilter, BM25ContentFilter from crawl4ai.markdown_generation_strategy import DefaultMarkdownGenerator async def main(): async with AsyncWebCrawler( headless=True, verbose=True, ) as crawler: result = await crawler.arun( url="https://docs.micronaut.io/4.7.6/guide/", cache_mode=CacheMode.ENABLED, markdown_generator=DefaultMarkdownGenerator( content_filter=PruningContentFilter(threshold=0.48, threshold_type="fixed", min_word_threshold=0) ), # markdown_generator=DefaultMarkdownGenerator( # content_filter=BM25ContentFilter(user_query="WHEN_WE_FOCUS_BASED_ON_A_USER_QUERY", bm25_threshold=1.0) # ), ) print(len(result.markdown)) print(len(result.fit_markdown)) print(len(result.markdown_v2.fit_markdown)) if __name__ == "__main__": asyncio.run(main()) ```
🖥️ Executing JavaScript & Extract Structured Data without LLMs ```python import asyncio from crawl4ai import AsyncWebCrawler, CacheMode from crawl4ai.extraction_strategy import JsonCssExtractionStrategy import json async def main(): schema = { "name": "KidoCode Courses", "baseSelector": "section.charge-methodology .w-tab-content > div", "fields": [ { "name": "section_title", "selector": "h3.heading-50", "type": "text", }, { "name": "section_description", "selector": ".charge-content", "type": "text", }, { "name": "course_name", "selector": ".text-block-93", "type": "text", }, { "name": "course_description", "selector": ".course-content-text", "type": "text", }, { "name": "course_icon", "selector": ".image-92", "type": "attribute", "attribute": "src" } ] } extraction_strategy = JsonCssExtractionStrategy(schema, verbose=True) async with AsyncWebCrawler( headless=False, verbose=True ) as crawler: # Create the JavaScript that handles clicking multiple times js_click_tabs = """ (async () => { const tabs = document.querySelectorAll("section.charge-methodology .tabs-menu-3 > div"); for(let tab of tabs) { // scroll to the tab tab.scrollIntoView(); tab.click(); // Wait for content to load and animations to complete await new Promise(r => setTimeout(r, 500)); } })(); """ result = await crawler.arun( url="https://www.kidocode.com/degrees/technology", extraction_strategy=JsonCssExtractionStrategy(schema, verbose=True), js_code=[js_click_tabs], cache_mode=CacheMode.BYPASS ) companies = json.loads(result.extracted_content) print(f"Successfully extracted {len(companies)} companies") print(json.dumps(companies[0], indent=2)) if __name__ == "__main__": asyncio.run(main()) ```
📚 Extracting Structured Data with LLMs ```python import os import asyncio from crawl4ai import AsyncWebCrawler, CacheMode 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( # Here you can use any provider that Litellm library supports, for instance: ollama/qwen2 # provider="ollama/qwen2", api_token="no-token", 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"}.""" ), cache_mode=CacheMode.BYPASS, ) print(result.extracted_content) if __name__ == "__main__": asyncio.run(main()) ```
🤖 Using You own Browswer with Custome User Profile ```python import os, sys from pathlib import Path import asyncio, time from crawl4ai import AsyncWebCrawler async def test_news_crawl(): # Create a persistent user data directory user_data_dir = os.path.join(Path.home(), ".crawl4ai", "browser_profile") os.makedirs(user_data_dir, exist_ok=True) async with AsyncWebCrawler( verbose=True, headless=True, user_data_dir=user_data_dir, use_persistent_context=True, headers={ "Accept": "text/html,application/xhtml+xml,application/xml;q=0.9,image/webp,*/*;q=0.8", "Accept-Language": "en-US,en;q=0.5", "Accept-Encoding": "gzip, deflate, br", "DNT": "1", "Connection": "keep-alive", "Upgrade-Insecure-Requests": "1", "Sec-Fetch-Dest": "document", "Sec-Fetch-Mode": "navigate", "Sec-Fetch-Site": "none", "Sec-Fetch-User": "?1", "Cache-Control": "max-age=0", } ) as crawler: url = "ADDRESS_OF_A_CHALLENGING_WEBSITE" result = await crawler.arun( url, cache_mode=CacheMode.BYPASS, magic=True, ) print(f"Successfully crawled {url}") print(f"Content length: {len(result.markdown)}") ```
## ✨ Recent Updates - 🔧 **Configurable Crawlers and Browsers**: Simplified crawling with `BrowserConfig` and `CrawlerRunConfig`, making setups cleaner and more scalable. - 🔐 **Session Management Enhancements**: Import/export local storage for personalized crawling with seamless session reuse. - 📸 **Supercharged Screenshots**: Take lightning-fast, full-page screenshots of very long pages. - 📜 **Full-Page PDF Export**: Convert any web page into a PDF for easy sharing or archiving. - 🖼️ **Lazy Load Handling**: Improved support for websites with lazy-loaded images. The crawler now waits for all images to fully load, ensuring no content is missed. - ⚡ **Text-Only Mode**: New mode for fast, lightweight crawling. Disables images, JavaScript, and GPU rendering, improving speed by 3-4x for text-focused crawls. - 📐 **Dynamic Viewport Adjustment**: Automatically adjusts the browser viewport to fit page content, ensuring accurate rendering and capturing of all elements. - 🔄 **Full-Page Scanning**: Added scrolling support for pages with infinite scroll or dynamic content loading. Ensures every part of the page is captured. - 🧑‍💻 **Session Reuse**: Introduced `create_session` for efficient crawling by reusing the same browser session across multiple requests. - 🌟 **Light Mode**: Optimized browser performance by disabling unnecessary features like extensions, background timers, and sync processes. Read the full details of this release in our [0.4.2 Release Notes](https://github.com/unclecode/crawl4ai/blob/main/docs/md_v2/blog/releases/0.4.2.md). ## 📖 Documentation & Roadmap > 🚨 **Documentation Update Alert**: We're undertaking a major documentation overhaul next week to reflect recent updates and improvements. Stay tuned for a more comprehensive and up-to-date guide! For current documentation, including installation instructions, advanced features, and API reference, visit our [Documentation Website](https://crawl4ai.com/mkdocs/). To check our development plans and upcoming features, visit our [Roadmap](https://github.com/unclecode/crawl4ai/blob/main/ROADMAP.md).
📈 Development TODOs - [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 - [ ] 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 - [ ] 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 - [ ] 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 Crawl4AI is released under the [Apache 2.0 License](https://github.com/unclecode/crawl4ai/blob/main/LICENSE). ## 📧 Contact 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! 🕸️🚀 ## 🗾 Mission Our mission is to unlock the value of personal and enterprise data by transforming digital footprints into structured, tradeable assets. Crawl4AI empowers individuals and organizations with open-source tools to extract and structure data, fostering a shared data economy. We envision a future where AI is powered by real human knowledge, ensuring data creators directly benefit from their contributions. By democratizing data and enabling ethical sharing, we are laying the foundation for authentic AI advancement.
🔑 Key Opportunities - **Data Capitalization**: Transform digital footprints into measurable, valuable assets. - **Authentic AI Data**: Provide AI systems with real human insights. - **Shared Economy**: Create a fair data marketplace that benefits data creators.
🚀 Development Pathway 1. **Open-Source Tools**: Community-driven platforms for transparent data extraction. 2. **Digital Asset Structuring**: Tools to organize and value digital knowledge. 3. **Ethical Data Marketplace**: A secure, fair platform for exchanging structured data. For more details, 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)