Files
crawl4ai/docs/examples/link_head_extraction_example.py
UncleCode 8a04351406 feat(crawl4ai): Update to version 0.7.1 with improvements and new tests
This commit includes several updates to the crawl4ai package, including changes to the browser manager and content scraping strategy. The version number has been updated to 0.7.1. Significant modifications have been made to the documentation, including updates to the release notes for version 0.7.0 and the addition of release notes for version 0.7.1. Examples and core documentation have also been updated to reflect the changes in this version. Additionally, a new simple API test has been added to the Docker tests.

These changes were made to improve the functionality of the crawl4ai package and to provide clearer, more up-to-date documentation for users. The new test will help ensure the API is working as expected.

BREAKING CHANGE: The updates to the browser manager and content scraping strategy may affect how these components interact with the rest of the package. Users should review the updated documentation for details on these changes.
2025-07-18 16:27:19 +08:00

376 lines
14 KiB
Python

#!/usr/bin/env python3
"""
Link Head Extraction & Scoring Example
This example demonstrates Crawl4AI's advanced link analysis capabilities:
1. Basic link head extraction
2. Three-layer scoring system (intrinsic, contextual, total)
3. Pattern-based filtering
4. Multiple practical use cases
Requirements:
- crawl4ai installed
- Internet connection
Usage:
python link_head_extraction_example.py
"""
import asyncio
from crawl4ai import AsyncWebCrawler, CrawlerRunConfig
from crawl4ai import LinkPreviewConfig
async def basic_link_head_extraction():
"""
Basic example: Extract head content from internal links with scoring
"""
print("🔗 Basic Link Head Extraction Example")
print("=" * 50)
config = CrawlerRunConfig(
# Enable link head extraction
link_preview_config=LinkPreviewConfig(
include_internal=True, # Process internal links
include_external=False, # Skip external links for this demo
max_links=5, # Limit to 5 links
concurrency=3, # Process 3 links simultaneously
timeout=10, # 10 second timeout per link
query="API documentation guide", # Query for relevance scoring
verbose=True # Show detailed progress
),
# Enable intrinsic link scoring
score_links=True,
only_text=True
)
async with AsyncWebCrawler() as crawler:
result = await crawler.arun("https://docs.python.org/3/", config=config)
if result.success:
print(f"\n✅ Successfully crawled: {result.url}")
internal_links = result.links.get("internal", [])
links_with_head = [link for link in internal_links
if link.get("head_data") is not None]
print(f"🧠 Links with head data: {len(links_with_head)}")
# Show detailed results
for i, link in enumerate(links_with_head[:3]):
print(f"\n📄 Link {i+1}: {link['href']}")
print(f" Text: '{link.get('text', 'No text')[:50]}...'")
# Show all three score types
intrinsic = link.get('intrinsic_score')
contextual = link.get('contextual_score')
total = link.get('total_score')
print(f" 📊 Scores:")
if intrinsic is not None:
print(f" • Intrinsic: {intrinsic:.2f}/10.0")
if contextual is not None:
print(f" • Contextual: {contextual:.3f}")
if total is not None:
print(f" • Total: {total:.3f}")
# Show head data
head_data = link.get("head_data", {})
if head_data:
title = head_data.get("title", "No title")
description = head_data.get("meta", {}).get("description", "")
print(f" 📰 Title: {title[:60]}...")
if description:
print(f" 📝 Description: {description[:80]}...")
else:
print(f"❌ Crawl failed: {result.error_message}")
async def research_assistant_example():
"""
Research Assistant: Find highly relevant documentation pages
"""
print("\n\n🔍 Research Assistant Example")
print("=" * 50)
config = CrawlerRunConfig(
link_preview_config=LinkPreviewConfig(
include_internal=True,
include_external=True,
include_patterns=["*/docs/*", "*/tutorial/*", "*/guide/*"],
exclude_patterns=["*/login*", "*/admin*"],
query="machine learning neural networks deep learning",
max_links=15,
score_threshold=0.4, # Only include high-relevance links
concurrency=8,
verbose=False # Clean output for this example
),
score_links=True
)
# Test with scikit-learn documentation
async with AsyncWebCrawler() as crawler:
result = await crawler.arun("https://scikit-learn.org/stable/", config=config)
if result.success:
print(f"✅ Analyzed: {result.url}")
all_links = result.links.get("internal", []) + result.links.get("external", [])
# Filter for high-scoring links
high_scoring_links = [link for link in all_links
if link.get("total_score", 0) > 0.6]
# Sort by total score (highest first)
high_scoring_links.sort(key=lambda x: x.get("total_score", 0), reverse=True)
print(f"\n🎯 Found {len(high_scoring_links)} highly relevant links:")
print(" (Showing top 5 by relevance score)")
for i, link in enumerate(high_scoring_links[:5]):
score = link.get("total_score", 0)
title = link.get("head_data", {}).get("title", "No title")
print(f"\n{i+1}. ⭐ {score:.3f} - {title[:70]}...")
print(f" 🔗 {link['href']}")
# Show score breakdown
intrinsic = link.get('intrinsic_score', 0)
contextual = link.get('contextual_score', 0)
print(f" 📊 Quality: {intrinsic:.1f}/10 | Relevance: {contextual:.3f}")
else:
print(f"❌ Research failed: {result.error_message}")
async def api_discovery_example():
"""
API Discovery: Find API endpoints and references
"""
print("\n\n🔧 API Discovery Example")
print("=" * 50)
config = CrawlerRunConfig(
link_preview_config=LinkPreviewConfig(
include_internal=True,
include_patterns=["*/api/*", "*/reference/*", "*/endpoint/*"],
exclude_patterns=["*/deprecated/*", "*/v1/*"], # Skip old versions
max_links=25,
concurrency=10,
timeout=8,
verbose=False
),
score_links=True
)
# Example with a documentation site that has API references
async with AsyncWebCrawler() as crawler:
result = await crawler.arun("https://httpbin.org/", config=config)
if result.success:
print(f"✅ Discovered APIs at: {result.url}")
api_links = result.links.get("internal", [])
# Categorize by detected content
endpoints = {"GET": [], "POST": [], "PUT": [], "DELETE": [], "OTHER": []}
for link in api_links:
if link.get("head_data"):
title = link.get("head_data", {}).get("title", "").upper()
text = link.get("text", "").upper()
# Simple categorization based on content
if "GET" in title or "GET" in text:
endpoints["GET"].append(link)
elif "POST" in title or "POST" in text:
endpoints["POST"].append(link)
elif "PUT" in title or "PUT" in text:
endpoints["PUT"].append(link)
elif "DELETE" in title or "DELETE" in text:
endpoints["DELETE"].append(link)
else:
endpoints["OTHER"].append(link)
# Display results
total_found = sum(len(links) for links in endpoints.values())
print(f"\n📡 Found {total_found} API-related links:")
for method, links in endpoints.items():
if links:
print(f"\n{method} Endpoints ({len(links)}):")
for link in links[:3]: # Show first 3 of each type
title = link.get("head_data", {}).get("title", "No title")
score = link.get("intrinsic_score", 0)
print(f" • [{score:.1f}] {title[:50]}...")
print(f" {link['href']}")
else:
print(f"❌ API discovery failed: {result.error_message}")
async def link_quality_analysis():
"""
Link Quality Analysis: Analyze website structure and link quality
"""
print("\n\n📊 Link Quality Analysis Example")
print("=" * 50)
config = CrawlerRunConfig(
link_preview_config=LinkPreviewConfig(
include_internal=True,
max_links=30, # Analyze more links for better statistics
concurrency=15,
timeout=6,
verbose=False
),
score_links=True
)
async with AsyncWebCrawler() as crawler:
# Test with a content-rich site
result = await crawler.arun("https://docs.python.org/3/", config=config)
if result.success:
print(f"✅ Analyzed: {result.url}")
links = result.links.get("internal", [])
# Extract intrinsic scores for analysis
scores = [link.get('intrinsic_score', 0) for link in links if link.get('intrinsic_score') is not None]
if scores:
avg_score = sum(scores) / len(scores)
high_quality = len([s for s in scores if s >= 7.0])
medium_quality = len([s for s in scores if 4.0 <= s < 7.0])
low_quality = len([s for s in scores if s < 4.0])
print(f"\n📈 Quality Analysis Results:")
print(f" 📊 Average Score: {avg_score:.2f}/10.0")
print(f" 🟢 High Quality (≥7.0): {high_quality} links")
print(f" 🟡 Medium Quality (4.0-6.9): {medium_quality} links")
print(f" 🔴 Low Quality (<4.0): {low_quality} links")
# Show best and worst links
scored_links = [(link, link.get('intrinsic_score', 0)) for link in links
if link.get('intrinsic_score') is not None]
scored_links.sort(key=lambda x: x[1], reverse=True)
print(f"\n🏆 Top 3 Quality Links:")
for i, (link, score) in enumerate(scored_links[:3]):
text = link.get('text', 'No text')[:40]
print(f" {i+1}. [{score:.1f}] {text}...")
print(f" {link['href']}")
print(f"\n⚠️ Bottom 3 Quality Links:")
for i, (link, score) in enumerate(scored_links[-3:]):
text = link.get('text', 'No text')[:40]
print(f" {i+1}. [{score:.1f}] {text}...")
print(f" {link['href']}")
else:
print("❌ No scoring data available")
else:
print(f"❌ Analysis failed: {result.error_message}")
async def pattern_filtering_example():
"""
Pattern Filtering: Demonstrate advanced filtering capabilities
"""
print("\n\n🎯 Pattern Filtering Example")
print("=" * 50)
# Example with multiple filtering strategies
filters = [
{
"name": "Documentation Only",
"config": LinkPreviewConfig(
include_internal=True,
max_links=10,
concurrency=5,
verbose=False,
include_patterns=["*/docs/*", "*/documentation/*"],
exclude_patterns=["*/api/*"]
)
},
{
"name": "API References Only",
"config": LinkPreviewConfig(
include_internal=True,
max_links=10,
concurrency=5,
verbose=False,
include_patterns=["*/api/*", "*/reference/*"],
exclude_patterns=["*/tutorial/*"]
)
},
{
"name": "Exclude Admin Areas",
"config": LinkPreviewConfig(
include_internal=True,
max_links=10,
concurrency=5,
verbose=False,
exclude_patterns=["*/admin/*", "*/login/*", "*/dashboard/*"]
)
}
]
async with AsyncWebCrawler() as crawler:
for filter_example in filters:
print(f"\n🔍 Testing: {filter_example['name']}")
config = CrawlerRunConfig(
link_preview_config=filter_example['config'],
score_links=True
)
result = await crawler.arun("https://docs.python.org/3/", config=config)
if result.success:
links = result.links.get("internal", [])
links_with_head = [link for link in links if link.get("head_data")]
print(f" 📊 Found {len(links_with_head)} matching links")
if links_with_head:
# Show sample matches
for link in links_with_head[:2]:
title = link.get("head_data", {}).get("title", "No title")
print(f"{title[:50]}...")
print(f" {link['href']}")
else:
print(f" ❌ Failed: {result.error_message}")
async def main():
"""
Run all examples
"""
print("🚀 Crawl4AI Link Head Extraction Examples")
print("=" * 60)
print("This will demonstrate various link analysis capabilities.\n")
try:
# Run all examples
await basic_link_head_extraction()
await research_assistant_example()
await api_discovery_example()
await link_quality_analysis()
await pattern_filtering_example()
print("\n" + "=" * 60)
print("✨ All examples completed successfully!")
print("\nNext steps:")
print("1. Try modifying the queries and patterns above")
print("2. Test with your own websites")
print("3. Experiment with different score thresholds")
print("4. Check out the full documentation for more options")
except KeyboardInterrupt:
print("\n⏹️ Examples interrupted by user")
except Exception as e:
print(f"\n💥 Error running examples: {str(e)}")
import traceback
traceback.print_exc()
if __name__ == "__main__":
asyncio.run(main())