Preparing Archive
apify-ecommerce
Scrape e-commerce data for pricing intelligence, customer reviews, and seller discovery across Amazon, Walmart, eBay, IKEA, and 50+ marketplaces. Use when user asks to monitor prices, track competi...
Architectural Overview
"This module is grounded in ai engineering patterns and exposes 1 core capabilities across 1 execution phases."
E-commerce Data Extraction
Extract product data, prices, reviews, and seller information from any e-commerce platform using Apify's E-commerce Scraping Tool.
Prerequisites
.envfile withAPIFY_TOKEN(at~/.claude/.env)- Node.js 20.6+ (for native
--env-filesupport)
Workflow Selection
| User Need | Workflow | Best For |
|---|---|---|
| Track prices, compare products | Workflow 1: Products & Pricing | Price monitoring, MAP compliance, competitor analysis. Add AI summary for insights. |
| Analyze reviews (sentiment or quality) | Workflow 2: Reviews | Brand perception, customer sentiment, quality issues, defect patterns |
| Find sellers across stores | Workflow 3: Sellers | Unauthorized resellers, vendor discovery via Google Shopping |
Progress Tracking
Task Progress:
- [ ] Step 1: Select workflow and determine data source
- [ ] Step 2: Configure Actor input
- [ ] Step 3: Ask user preferences (format, filename)
- [ ] Step 4: Run the extraction script
- [ ] Step 5: Summarize results
Workflow 1: Products & Pricing
Use case: Extract product data, prices, and stock status. Track competitor prices, detect MAP violations, benchmark products, or research markets.
Best for: Pricing analysts, product managers, market researchers.
Input Options
| Input Type | Field | Description |
|---|---|---|
| Product URLs | detailsUrls |
Direct URLs to product pages (use object format) |
| Category URLs | listingUrls |
URLs to category/search result pages |
| Keyword Search | keyword + marketplaces |
Search term across selected marketplaces |
Example - Product URLs
{
"detailsUrls": [
{"url": "https://www.amazon.com/dp/B09V3KXJPB"},
{"url": "https://www.walmart.com/ip/123456789"}
],
"additionalProperties": true
}
Example - Keyword Search
{
"keyword": "Samsung Galaxy S24",
"marketplaces": ["www.amazon.com", "www.walmart.com"],
"additionalProperties": true,
"maxProductResults": 50
}
Optional: AI Summary
Add these fields to get AI-generated insights:
| Field | Description |
|---|---|
fieldsToAnalyze |
Data points to analyze: ["name", "offers", "brand", "description"] |
customPrompt |
Custom analysis instructions |
Example with AI summary:
{
"keyword": "robot vacuum",
"marketplaces": ["www.amazon.com"],
"maxProductResults": 50,
"additionalProperties": true,
"fieldsToAnalyze": ["name", "offers", "brand"],
"customPrompt": "Summarize price range and identify top brands"
}
Output Fields
name- Product nameurl- Product URLoffers.price- Current priceoffers.priceCurrency- Currency code (may vary by seller region)brand.slogan- Brand name (nested in object)image- Product image URL- Additional seller/stock info when
additionalProperties: true
Note: Currency may vary in results even for US searches, as prices reflect different seller regions.
Workflow 2: Customer Reviews
Use case: Extract reviews for sentiment analysis, brand perception monitoring, or quality issue detection.
Best for: Brand managers, customer experience teams, QA teams, product managers.
Input Options
| Input Type | Field | Description |
|---|---|---|
| Product URLs | reviewListingUrls |
Product pages to extract reviews from |
| Keyword Search | keywordReviews + marketplacesReviews |
Search for product reviews by keyword |
Example - Extract Reviews from Product
{
"reviewListingUrls": [
{"url": "https://www.amazon.com/dp/B09V3KXJPB"}
],
"sortReview": "Most recent",
"additionalReviewProperties": true,
"maxReviewResults": 500
}
Example - Keyword Search
{
"keywordReviews": "wireless earbuds",
"marketplacesReviews": ["www.amazon.com"],
"sortReview": "Most recent",
"additionalReviewProperties": true,
"maxReviewResults": 200
}
Sort Options
Most recent- Latest reviews first (recommended)Most relevant- Platform default relevanceMost helpful- Highest voted reviewsHighest rated- 5-star reviews firstLowest rated- 1-star reviews first
Note: The
sortReview: "Lowest rated"option may not work consistently across all marketplaces. For quality analysis, collect a large sample and filter by rating in post-processing.
Quality Analysis Tips
- Set high
maxReviewResultsfor statistical significance - Look for recurring keywords: "broke", "defect", "quality", "returned"
- Filter results by rating if sorting doesn't work as expected
- Cross-reference with competitor products for benchmarking
Workflow 3: Seller Intelligence
Use case: Find sellers across stores, discover unauthorized resellers, evaluate vendor options.
Best for: Brand protection teams, procurement, supply chain managers.
Note: This workflow uses Google Shopping to find sellers across stores. Direct seller profile URLs are not reliably supported.
Input Configuration
{
"googleShoppingSearchKeyword": "Nike Air Max 90",
"scrapeSellersFromGoogleShopping": true,
"countryCode": "us",
"maxGoogleShoppingSellersPerProduct": 20,
"maxGoogleShoppingResults": 100
}
Options
| Field | Description |
|---|---|
googleShoppingSearchKeyword |
Product name to search |
scrapeSellersFromGoogleShopping |
Set to true to extract sellers |
scrapeProductsFromGoogleShopping |
Set to true to also extract product details |
countryCode |
Target country (e.g., us, uk, de) |
maxGoogleShoppingSellersPerProduct |
Max sellers per product |
maxGoogleShoppingResults |
Total result limit |
Supported Marketplaces
Amazon (20+ regions)
www.amazon.com, www.amazon.co.uk, www.amazon.de, www.amazon.fr, www.amazon.it, www.amazon.es, www.amazon.ca, www.amazon.com.au, www.amazon.co.jp, www.amazon.in, www.amazon.com.br, www.amazon.com.mx, www.amazon.nl, www.amazon.pl, www.amazon.se, www.amazon.ae, www.amazon.sa, www.amazon.sg, www.amazon.com.tr, www.amazon.eg
Major US Retailers
www.walmart.com, www.costco.com, www.costco.ca, www.homedepot.com
European Retailers
allegro.pl, allegro.cz, allegro.sk, www.alza.cz, www.alza.sk, www.alza.de, www.alza.at, www.alza.hu, www.kaufland.de, www.kaufland.pl, www.kaufland.cz, www.kaufland.sk, www.kaufland.at, www.kaufland.fr, www.kaufland.it, www.cdiscount.com
IKEA (40+ country/language combinations)
Supports all major IKEA regional sites with multiple language options.
Google Shopping
Use for seller discovery across multiple stores.
Running the Extraction
Step 1: Set Skill Path
SKILL_PATH=~/.claude/skills/apify-ecommerce
Step 2: Run Script
Quick answer (display in chat):
node --env-file=~/.claude/.env $SKILL_PATH/reference/scripts/run_actor.js \
--actor "apify/e-commerce-scraping-tool" \
--input 'JSON_INPUT'
CSV export:
node --env-file=~/.claude/.env $SKILL_PATH/reference/scripts/run_actor.js \
--actor "apify/e-commerce-scraping-tool" \
--input 'JSON_INPUT' \
--output YYYY-MM-DD_filename.csv \
--format csv
JSON export:
node --env-file=~/.claude/.env $SKILL_PATH/reference/scripts/run_actor.js \
--actor "apify/e-commerce-scraping-tool" \
--input 'JSON_INPUT' \
--output YYYY-MM-DD_filename.json \
--format json
Step 3: Summarize Results
Report:
- Number of items extracted
- File location (if exported)
- Key insights based on workflow:
- Products: Price range, outliers, MAP violations
- Reviews: Average rating, sentiment trends, quality issues
- Sellers: Seller count, unauthorized sellers found
Error Handling
| Error | Solution |
|---|---|
APIFY_TOKEN not found |
Ensure ~/.claude/.env contains APIFY_TOKEN=your_token |
Actor not found |
Verify Actor ID: apify/e-commerce-scraping-tool |
Run FAILED |
Check Apify console link in error output |
Timeout |
Reduce maxProductResults or increase --timeout |
No results |
Verify URLs are valid and accessible |
Invalid marketplace |
Check marketplace value matches supported list exactly |
Primary Stack
TypeScript
Tooling Surface
Guide only
Workspace Path
.agents/skills/apify-ecommerce
Operational Ecosystem
The complete hardware and software toolchain required.
Module Topology
Antigravity Core
Principal Engineering Agent
Recommended for this workflow
Adjacent modules that complement this skill surface
An error occurred. Please try again later.