Requirements
- Target platform
- OpenClaw
- Install method
- Manual import
- Extraction
- Extract archive
- Prerequisites
- OpenClaw
- Primary doc
- SKILL.md
Scrape, analyze, and summarize product reviews from multiple platforms (Amazon, Google, Yelp, TripAdvisor). Extract key insights, sentiment analysis, pros/cons, and recommendations. Use when researching products for arbitrage, creating affiliate content, or making purchasing decisions.
Scrape, analyze, and summarize product reviews from multiple platforms (Amazon, Google, Yelp, TripAdvisor). Extract key insights, sentiment analysis, pros/cons, and recommendations. Use when researching products for arbitrage, creating affiliate content, or making purchasing decisions.
Hand the extracted package to your coding agent with a concrete install brief instead of figuring it out manually.
I downloaded a skill package from Yavira. Read SKILL.md from the extracted folder and install it by following the included instructions. Tell me what you changed and call out any manual steps you could not complete.
I downloaded an updated skill package from Yavira. Read SKILL.md from the extracted folder, compare it with my current installation, and upgrade it while preserving any custom configuration unless the package docs explicitly say otherwise. Summarize what changed and any follow-up checks I should run.
Automatically scrape and analyze product reviews from multiple platforms to extract actionable insights. Generate comprehensive summaries with sentiment analysis, pros/cons identification, and data-driven recommendations.
Supported Platforms: Amazon (product reviews) Google (Google Maps, Google Shopping) Yelp (business and product reviews) TripAdvisor (hotels, restaurants, attractions) Custom platforms (via URL pattern matching) Scrape Options: All reviews or specific time ranges Verified purchases only Filter by rating (1-5 stars) Include images and media Max review count limits
Analyzes: Overall sentiment score (-1.0 to +1.0) Sentiment distribution (positive/neutral/negative) Key sentiment drivers (what causes positive/negative reviews) Trend analysis (sentiment over time) Aspect-based sentiment (battery life, quality, shipping, etc.)
Automatically identifies: Top pros mentioned in reviews Common complaints and cons Frequently asked questions Use cases and applications Competitive comparisons mentioned Feature-specific feedback
Output formats: Executive summary (150-200 words) Detailed breakdown by category Pros/cons lists with frequency counts Statistical summary (avg rating, review count, etc.) CSV export for analysis Markdown report for documentation
Generates recommendations based on: Overall sentiment score Review quantity and recency Verified purchase ratio Aspect-based ratings Competitive comparison
# Use scripts/scrape_reviews.py python3 scripts/scrape_reviews.py \ --url "https://amazon.com/product/dp/B0XXXXX" \ --platform amazon \ --max-reviews 100 \ --output amazon_summary.md
# Use scripts/compare_reviews.py python3 scripts/compare_reviews.py \ --product "Sony WH-1000XM5" \ --platforms amazon,google,yelp \ --output comparison_report.md
# Use scripts/quick_summary.py python3 scripts/quick_summary.py \ --url "https://amazon.com/product/dp/B0XXXXX" \ --brief \ --output summary.txt
Scrape and analyze reviews from a single URL. Parameters: --url: Product or business review URL (required) --platform: Platform (amazon, google, yelp, tripadvisor) (auto-detected if omitted) --max-reviews: Maximum reviews to fetch (default: 100) --verified-only: Filter to verified purchases only --min-rating: Minimum rating to include (1-5) --time-range: Time filter (7d, 30d, 90d, all) (default: all) --output: Output file (default: summary.md) --format: Output format (markdown, json, csv) Example: python3 scripts/scrape_reviews.py \ --url "https://amazon.com/dp/B0XXXXX" \ --platform amazon \ --max-reviews 200 \ --verified-only \ --format markdown \ --output product_summary.md
Compare reviews for a product across multiple platforms. Parameters: --product: Product name or keyword (required) --platforms: Comma-separated platforms (default: all) --max-reviews: Max reviews per platform (default: 50) --output: Output file --format: Output format (markdown, json) Example: python3 scripts/compare_reviews.py \ --product "AirPods Pro 2" \ --platforms amazon,google,yelp \ --max-reviews 75 \ --output comparison.md
Analyze sentiment of review text. Parameters: --input: Input file or text (required) --type: Input type (file, text, url) --aspects: Analyze specific aspects (comma-separated) --output: Output file Example: python3 scripts/sentiment_analysis.py \ --input reviews.txt \ --type file \ --aspects battery,sound,quality \ --output sentiment_report.md
Generate a brief executive summary. Parameters: --url: Review URL (required) --brief: Brief summary only (no detailed breakdown) --words: Summary word count (default: 150) --output: Output file Example: python3 scripts/quick_summary.py \ --url "https://yelp.com/biz/example-business" \ --brief \ --words 100 \ --output summary.txt
Export review data for further analysis. Parameters: --input: Summary file or JSON data (required) --format: Export format (csv, json, excel) --output: Output file Example: python3 scripts/export_data.py \ --input product_summary.json \ --format csv \ --output reviews_data.csv
Compare across platforms - Check Amazon vs eBay seller ratings Look for red flags - High return rates, quality complaints Check authenticity - Verified purchases only Analyze trends - Recent review sentiment vs older reviews
Extract real quotes - Use actual customer feedback Identify use cases - How people use the product Find pain points - Problems the product solves Build credibility - Use data from many reviews
Check recent reviews - Last 30-90 days Look at 1-star reviews - Understand worst-case scenarios Consider your needs - Match features to your use case Compare alternatives - Use compare_reviews.py
Use review summaries to validate arbitrage opportunities: # 1. Find arbitrage opportunity price-tracker/scripts/compare_prices.py --keyword "Sony WH-1000XM5" # 2. Validate with reviews review-summarizer/scripts/scrape_reviews.py --url [amazon_url] review-summarizer/scripts/scrape_reviews.py --url [ebay_url] # 3. Make informed decision
Generate content from review insights: # 1. Summarize reviews review-summarizer/scripts/scrape_reviews.py --url [amazon_url] # 2. Use insights in article seo-article-gen --keyword "[product name] review" --use-insights review_summary.json # 3. Recycle across platforms content-recycler/scripts/recycle_content.py --input article.md
# Monitor competitor products 0 9 * * 1 /path/to/review-summarizer/scripts/compare_reviews.py \ --product "competitor-product" \ --platforms amazon,google \ --output /path/to/competitor_analysis.md
# Check for sentiment drops below threshold if [ $(grep -o "Sentiment: -" summary.md | wc -l) -gt 0 ]; then echo "Negative sentiment alert" | mail -s "Review Alert" user@example.com fi
Only scrape publicly available reviews Respect robots.txt and rate limits Don't store PII (personal information) Aggregate data, don't expose individual reviewers Follow platform terms of service
Rate limiting on some platforms Cannot access verified purchase status on all platforms Fake reviews may skew analysis Language support varies by platform Some platforms block scraping Make data-driven decisions. Automate research. Scale intelligence.
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