Co-Pilot
Updated a month ago

article-extractor

Mmichalparkola
0.2k
michalparkola/tapestry-skills-for-claude-code/article-extractor
72
Agent Score

💡 Summary

Extracts clean article text from URLs by removing ads and clutter, saving it as a readable text file.

🎯 Target Audience

Researchers saving articles for analysisStudents compiling reading materialsContent curators building archivesDevelopers needing offline content

🤖 AI Roast:It's a glorified wrapper for existing CLI tools, offering little beyond what a simple shell script could do.

Security AnalysisMedium Risk

The skill executes shell commands with user-provided URLs, risking command injection if the URL is not sanitized. It also downloads and processes arbitrary HTML, which could be malicious. Mitigation: Strictly validate and sanitize the URL input before passing it to any command.


name: article-extractor description: Extract clean article content from URLs (blog posts, articles, tutorials) and save as readable text. Use when user wants to download, extract, or save an article/blog post from a URL without ads, navigation, or clutter. allowed-tools: Bash,Write

Article Extractor

This skill extracts the main content from web articles and blog posts, removing navigation, ads, newsletter signups, and other clutter. Saves clean, readable text.

When to Use This Skill

Activate when the user:

  • Provides an article/blog URL and wants the text content
  • Asks to "download this article"
  • Wants to "extract the content from [URL]"
  • Asks to "save this blog post as text"
  • Needs clean article text without distractions

How It Works

Priority Order:

  1. Check if tools are installed (reader or trafilatura)
  2. Download and extract article using best available tool
  3. Clean up the content (remove extra whitespace, format properly)
  4. Save to file with article title as filename
  5. Confirm location and show preview

Installation Check

Check for article extraction tools in this order:

Option 1: reader (Recommended - Mozilla's Readability)

command -v reader

If not installed:

npm install -g @mozilla/readability-cli # or npm install -g reader-cli

Option 2: trafilatura (Python-based, very good)

command -v trafilatura

If not installed:

pip3 install trafilatura

Option 3: Fallback (curl + simple parsing)

If no tools available, use basic curl + text extraction (less reliable but works)

Extraction Methods

Method 1: Using reader (Best for most articles)

# Extract article reader "URL" > article.txt

Pros:

  • Based on Mozilla's Readability algorithm
  • Excellent at removing clutter
  • Preserves article structure

Method 2: Using trafilatura (Best for blogs/news)

# Extract article trafilatura --URL "URL" --output-format txt > article.txt # Or with more options trafilatura --URL "URL" --output-format txt --no-comments --no-tables > article.txt

Pros:

  • Very accurate extraction
  • Good with various site structures
  • Handles multiple languages

Options:

  • --no-comments: Skip comment sections
  • --no-tables: Skip data tables
  • --precision: Favor precision over recall
  • --recall: Extract more content (may include some noise)

Method 3: Fallback (curl + basic parsing)

# Download and extract basic content curl -s "URL" | python3 -c " from html.parser import HTMLParser import sys class ArticleExtractor(HTMLParser): def __init__(self): super().__init__() self.in_content = False self.content = [] self.skip_tags = {'script', 'style', 'nav', 'header', 'footer', 'aside'} self.current_tag = None def handle_starttag(self, tag, attrs): if tag not in self.skip_tags: if tag in {'p', 'article', 'main', 'h1', 'h2', 'h3', 'h4', 'h5', 'h6'}: self.in_content = True self.current_tag = tag def handle_data(self, data): if self.in_content and data.strip(): self.content.append(data.strip()) def get_content(self): return '\n\n'.join(self.content) parser = ArticleExtractor() parser.feed(sys.stdin.read()) print(parser.get_content()) " > article.txt

Note: This is less reliable but works without dependencies.

Getting Article Title

Extract title for filename:

Using reader:

# reader outputs markdown with title at top TITLE=$(reader "URL" | head -n 1 | sed 's/^# //')

Using trafilatura:

# Get metadata including title TITLE=$(trafilatura --URL "URL" --json | python3 -c "import json, sys; print(json.load(sys.stdin)['title'])")

Using curl (fallback):

TITLE=$(curl -s "URL" | grep -oP '<title>\K[^<]+' | sed 's/ - .*//' | sed 's/ | .*//')

Filename Creation

Clean title for filesystem:

# Get title TITLE="Article Title from Website" # Clean for filesystem (remove special chars, limit length) FILENAME=$(echo "$TITLE" | tr '/' '-' | tr ':' '-' | tr '?' '' | tr '"' '' | tr '<' '' | tr '>' '' | tr '|' '-' | cut -c 1-100 | sed 's/ *$//') # Add extension FILENAME="${FILENAME}.txt"

Complete Workflow

ARTICLE_URL="https://example.com/article" # Check for tools if command -v reader &> /dev/null; then TOOL="reader" echo "Using reader (Mozilla Readability)" elif command -v trafilatura &> /dev/null; then TOOL="trafilatura" echo "Using trafilatura" else TOOL="fallback" echo "Using fallback method (may be less accurate)" fi # Extract article case $TOOL in reader) # Get content reader "$ARTICLE_URL" > temp_article.txt # Get title (first line after # in markdown) TITLE=$(head -n 1 temp_article.txt | sed 's/^# //') ;; trafilatura) # Get title from metadata METADATA=$(trafilatura --URL "$ARTICLE_URL" --json) TITLE=$(echo "$METADATA" | python3 -c "import json, sys; print(json.load(sys.stdin).get('title', 'Article'))") # Get clean content trafilatura --URL "$ARTICLE_URL" --output-format txt --no-comments > temp_article.txt ;; fallback) # Get title TITLE=$(curl -s "$ARTICLE_URL" | grep -oP '<title>\K[^<]+' | head -n 1) TITLE=${TITLE%% - *} # Remove site name TITLE=${TITLE%% | *} # Remove site name (alternate) # Get content (basic extraction) curl -s "$ARTICLE_URL" | python3 -c " from html.parser import HTMLParser import sys class ArticleExtractor(HTMLParser): def __init__(self): super().__init__() self.in_content = False self.content = [] self.skip_tags = {'script', 'style', 'nav', 'header', 'footer', 'aside', 'form'} def handle_starttag(self, tag, attrs): if tag not in self.skip_tags: if tag in {'p', 'article', 'main'}: self.in_content = True if tag in {'h1', 'h2', 'h3'}: self.content.append('\n') def handle_data(self, data): if self.in_content and data.strip(): self.content.append(data.strip()) def get_content(self): return '\n\n'.join(self.content) parser = ArticleExtractor() parser.feed(sys.stdin.read()) print(parser.get_content()) " > temp_article.txt ;; esac # Clean filename FILENAME=$(echo "$TITLE" | tr '/' '-' | tr ':' '-' | tr '?' '' | tr '"' '' | tr '<>' '' | tr '|' '-' | cut -c 1-80 | sed 's/ *$//' | sed 's/^ *//') FILENAME="${FILENAME}.txt" # Move to final filename mv temp_article.txt "$FILENAME" # Show result echo "✓ Extracted article: $TITLE" echo "✓ Saved to: $FILENAME" echo "" echo "Preview (first 10 lines):" head -n 10 "$FILENAME"

Error Handling

Common Issues

1. Tool not installed

  • Try alternate tool (reader → trafilatura → fallback)
  • Offer to install: "Install reader with: npm install -g reader-cli"

2. Paywall or login required

  • Extraction tools may fail
  • Inform user: "This article requires authentication. Cannot extract."

3. Invalid URL

  • Check URL format
  • Try with and without redirects

4. No content extracted

  • Site may use heavy JavaScript
  • Try fallback method
  • Inform user if extraction fails

5. Special characters in title

  • Clean title for filesystem
  • Remove: /, :, ?, ", <, >, |
  • Replace with - or remove

Output Format

Saved File Contains:

  • Article title (if available)
  • Author (if available from tool)
  • Main article text
  • Section headings
  • No navigation, ads, or clutter

What Gets Removed:

  • Navigation menus
  • Ads and promotional content
  • Newsletter signup forms
  • Related articles sidebars
  • Comment sections (optional)
  • Social media buttons
  • Cookie notices

Tips for Best Results

1. Use reader for most articles

  • Best all-around tool
  • Based on Firefox Reader View
  • Works on most news sites and blogs

2. Use trafilatura for:

  • Academic articles
  • News sites
  • Blogs with complex layouts
  • Non-English content

3. Fallback method limitations:

  • May include some noise
  • Less accurate paragraph detection
  • Better than nothing for simple sites

4. Check extraction quality:

  • Always show preview to user
  • Ask if it looks correct
  • Offer to try different tool if needed

Example Usage

Simple extraction:

# User: "Extract https://example.com/article" reader "https://example.com/article" > temp.txt TITLE=$(head -n 1 temp.txt | sed 's/^# //') FILENAME="$(echo "$TITLE" | tr '/' '-').txt" mv temp.txt "$FILENAME" echo "✓ Saved to: $FILENAME"

With error handling:

if ! reader "$URL" > temp.txt 2>/dev/null; then if command -v trafilatura &> /dev/null; then trafilatura --URL "$URL" --output-format txt > temp.txt else echo "Error: Could not extract article. Install reader or trafilatura." exit 1 fi fi

Best Practices

  • ✅ Always show preview after extraction (first 10 lines)
  • ✅ Verify extraction succeeded before saving
  • ✅ Clean filename for filesystem compatibility
  • ✅ Try fallback method if primary fails
  • ✅ Inform user which tool was used
  • ✅ Keep filename length reasonable (< 100 chars)

After Extraction

Display to user:

  1. "✓ Extracted: [Article Title]"
  2. "✓ Saved to: [filename]"
  3. Show preview (first 10-15 lines)
  4. File size and location

Ask if needed:

  • "Would you like me to also create a Ship-Learn-Next plan from this?" (if using ship-learn-next skill)
  • "Should I extract another article?"
5-Dim Analysis
Clarity8/10
Novelty3/10
Utility9/10
Completeness9/10
Maintainability7/10
Pros & Cons

Pros

  • High utility for a common task
  • Clear, step-by-step documentation
  • Multiple fallback methods for robustness

Cons

  • No novel implementation; just calls other tools
  • Security risks from arbitrary command execution
  • Maintainability depends on external CLI tools

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Disclaimer: This content is sourced from GitHub open source projects for display and rating purposes only.

Copyright belongs to the original author michalparkola.