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# Getting Started with Crawl4AI | |
Welcome to **Crawl4AI**, an open-source LLM friendly Web Crawler & Scraper. In this tutorial, you’ll: | |
1. **Install** Crawl4AI (both via pip and Docker, with notes on platform challenges). | |
2. Run your **first crawl** using minimal configuration. | |
3. Generate **Markdown** output (and learn how it’s influenced by content filters). | |
4. Experiment with a simple **CSS-based extraction** strategy. | |
5. See a glimpse of **LLM-based extraction** (including open-source and closed-source model options). | |
--- | |
## 1. Introduction | |
Crawl4AI provides: | |
- An asynchronous crawler, **`AsyncWebCrawler`**. | |
- Configurable browser and run settings via **`BrowserConfig`** and **`CrawlerRunConfig`**. | |
- Automatic HTML-to-Markdown conversion via **`DefaultMarkdownGenerator`** (supports additional filters). | |
- Multiple extraction strategies (LLM-based or “traditional” CSS/XPath-based). | |
By the end of this guide, you’ll have installed Crawl4AI, performed a basic crawl, generated Markdown, and tried out two extraction strategies. | |
--- | |
## 2. Installation | |
### 2.1 Python + Playwright | |
#### Basic Pip Installation | |
```bash | |
pip install crawl4ai | |
crawl4ai-setup | |
# Verify your installation | |
crawl4ai-doctor | |
``` | |
If you encounter any browser-related issues, you can install them manually: | |
```bash | |
python -m playwright install --with-deps chrome chromium | |
``` | |
- **`crawl4ai-setup`** installs and configures Playwright (Chromium by default). | |
We cover advanced installation and Docker in the [Installation](#installation) section. | |
--- | |
## 3. Your First Crawl | |
Here’s a minimal Python script that creates an **`AsyncWebCrawler`**, fetches a webpage, and prints the first 300 characters of its Markdown output: | |
```python | |
import asyncio | |
from crawl4ai import AsyncWebCrawler | |
async def main(): | |
async with AsyncWebCrawler() as crawler: | |
result = await crawler.arun("https://example.com") | |
print(result.markdown[:300]) # Print first 300 chars | |
if __name__ == "__main__": | |
asyncio.run(main()) | |
``` | |
**What’s happening?** | |
- **`AsyncWebCrawler`** launches a headless browser (Chromium by default). | |
- It fetches `https://example.com`. | |
- Crawl4AI automatically converts the HTML into Markdown. | |
You now have a simple, working crawl! | |
--- | |
## 4. Basic Configuration (Light Introduction) | |
Crawl4AI’s crawler can be heavily customized using two main classes: | |
1. **`BrowserConfig`**: Controls browser behavior (headless or full UI, user agent, JavaScript toggles, etc.). | |
2. **`CrawlerRunConfig`**: Controls how each crawl runs (caching, extraction, timeouts, hooking, etc.). | |
Below is an example with minimal usage: | |
```python | |
import asyncio | |
from crawl4ai import AsyncWebCrawler, BrowserConfig, CrawlerRunConfig | |
async def main(): | |
browser_conf = BrowserConfig(headless=True) # or False to see the browser | |
run_conf = CrawlerRunConfig(cache_mode="BYPASS") | |
async with AsyncWebCrawler(config=browser_conf) as crawler: | |
result = await crawler.arun( | |
url="https://example.com", | |
config=run_conf | |
) | |
print(result.markdown) | |
if __name__ == "__main__": | |
asyncio.run(main()) | |
``` | |
We’ll explore more advanced config in later tutorials (like enabling proxies, PDF output, multi-tab sessions, etc.). For now, just note how you pass these objects to manage crawling. | |
--- | |
## 5. Generating Markdown Output | |
By default, Crawl4AI automatically generates Markdown from each crawled page. However, the exact output depends on whether you specify a **markdown generator** or **content filter**. | |
- **`result.markdown`**: | |
The direct HTML-to-Markdown conversion. | |
- **`result.markdown.fit_markdown`**: | |
The same content after applying any configured **content filter** (e.g., `PruningContentFilter`). | |
### Example: Using a Filter with `DefaultMarkdownGenerator` | |
```python | |
from crawl4ai import AsyncWebCrawler, CrawlerRunConfig | |
from crawl4ai.content_filter_strategy import PruningContentFilter | |
from crawl4ai.markdown_generation_strategy import DefaultMarkdownGenerator | |
md_generator = DefaultMarkdownGenerator( | |
content_filter=PruningContentFilter(threshold=0.4, threshold_type="fixed") | |
) | |
config = CrawlerRunConfig(markdown_generator=md_generator) | |
async with AsyncWebCrawler() as crawler: | |
result = await crawler.arun("https://news.ycombinator.com", config=config) | |
print("Raw Markdown length:", len(result.markdown.raw_markdown)) | |
print("Fit Markdown length:", len(result.markdown.fit_markdown)) | |
``` | |
**Note**: If you do **not** specify a content filter or markdown generator, you’ll typically see only the raw Markdown. We’ll dive deeper into these strategies in a dedicated **Markdown Generation** tutorial. | |
--- | |
## 6. Simple Data Extraction (CSS-based) | |
Crawl4AI can also extract structured data (JSON) using CSS or XPath selectors. Below is a minimal CSS-based example: | |
```python | |
import asyncio | |
import json | |
from crawl4ai import AsyncWebCrawler, CrawlerRunConfig | |
from crawl4ai.extraction_strategy import JsonCssExtractionStrategy | |
async def main(): | |
schema = { | |
"name": "Example Items", | |
"baseSelector": "div.item", | |
"fields": [ | |
{"name": "title", "selector": "h2", "type": "text"}, | |
{"name": "link", "selector": "a", "type": "attribute", "attribute": "href"} | |
] | |
} | |
async with AsyncWebCrawler() as crawler: | |
result = await crawler.arun( | |
url="https://example.com/items", | |
config=CrawlerRunConfig( | |
extraction_strategy=JsonCssExtractionStrategy(schema) | |
) | |
) | |
# The JSON output is stored in 'extracted_content' | |
data = json.loads(result.extracted_content) | |
print(data) | |
if __name__ == "__main__": | |
asyncio.run(main()) | |
``` | |
**Why is this helpful?** | |
- Great for repetitive page structures (e.g., item listings, articles). | |
- No AI usage or costs. | |
- The crawler returns a JSON string you can parse or store. | |
--- | |
## 7. Simple Data Extraction (LLM-based) | |
For more complex or irregular pages, a language model can parse text intelligently into a structure you define. Crawl4AI supports **open-source** or **closed-source** providers: | |
- **Open-Source Models** (e.g., `ollama/llama3.3`, `no_token`) | |
- **OpenAI Models** (e.g., `openai/gpt-4`, requires `api_token`) | |
- Or any provider supported by the underlying library | |
Below is an example using **open-source** style (no token) and closed-source: | |
```python | |
import os | |
import json | |
import asyncio | |
from pydantic import BaseModel, Field | |
from crawl4ai import AsyncWebCrawler, CrawlerRunConfig | |
from crawl4ai.extraction_strategy import LLMExtractionStrategy | |
class PricingInfo(BaseModel): | |
model_name: str = Field(..., description="Name of the AI model") | |
input_fee: str = Field(..., description="Fee for input tokens") | |
output_fee: str = Field(..., description="Fee for output tokens") | |
async def main(): | |
# 1) Open-Source usage: no token required | |
llm_strategy_open_source = LLMExtractionStrategy( | |
provider="ollama/llama3.3", # or "any-other-local-model" | |
api_token="no_token", # for local models, no API key is typically required | |
schema=PricingInfo.schema(), | |
extraction_type="schema", | |
instruction=""" | |
From this page, extract all AI model pricing details in JSON format. | |
Each entry should have 'model_name', 'input_fee', and 'output_fee'. | |
""", | |
temperature=0 | |
) | |
# 2) Closed-Source usage: API key for OpenAI, for example | |
openai_token = os.getenv("OPENAI_API_KEY", "sk-YOUR_API_KEY") | |
llm_strategy_openai = LLMExtractionStrategy( | |
provider="openai/gpt-4", | |
api_token=openai_token, | |
schema=PricingInfo.schema(), | |
extraction_type="schema", | |
instruction=""" | |
From this page, extract all AI model pricing details in JSON format. | |
Each entry should have 'model_name', 'input_fee', and 'output_fee'. | |
""", | |
temperature=0 | |
) | |
# We'll demo the open-source approach here | |
config = CrawlerRunConfig(extraction_strategy=llm_strategy_open_source) | |
async with AsyncWebCrawler() as crawler: | |
result = await crawler.arun( | |
url="https://example.com/pricing", | |
config=config | |
) | |
print("LLM-based extraction JSON:", result.extracted_content) | |
if __name__ == "__main__": | |
asyncio.run(main()) | |
``` | |
**What’s happening?** | |
- We define a Pydantic schema (`PricingInfo`) describing the fields we want. | |
- The LLM extraction strategy uses that schema and your instructions to transform raw text into structured JSON. | |
- Depending on the **provider** and **api_token**, you can use local models or a remote API. | |
--- | |
## 8. Next Steps | |
Congratulations! You have: | |
1. Installed Crawl4AI (via pip, with Docker as an option). | |
2. Performed a simple crawl and printed Markdown. | |
3. Seen how adding a **markdown generator** + **content filter** can produce “fit” Markdown. | |
4. Experimented with **CSS-based** extraction for repetitive data. | |
5. Learned the basics of **LLM-based** extraction (open-source and closed-source). | |
If you are ready for more, check out: | |
- **Installation**: Learn more on how to install Crawl4AI and set up Playwright. | |
- **Focus on Configuration**: Learn to customize browser settings, caching modes, advanced timeouts, etc. | |
- **Markdown Generation Basics**: Dive deeper into content filtering and “fit markdown” usage. | |
- **Dynamic Pages & Hooks**: Tackle sites with “Load More” buttons, login forms, or JavaScript complexities. | |
- **Deployment**: Run Crawl4AI in Docker containers and scale across multiple nodes. | |
- **Explanations & How-To Guides**: Explore browser contexts, identity-based crawling, hooking, performance, and more. | |
Crawl4AI is a powerful tool for extracting data and generating Markdown from virtually any website. Enjoy exploring, and we hope you build amazing AI-powered applications with it! | |