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Ecommerce Listing

by BrowserAct · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install ecommerce-listing
Description
Extract product list from any e-commerce category page, search results page, or keyword search with filters. Returns paginated product arrays with URL, name,...
README (SKILL.md)

E-commerce — Product Listing

Category/search URL or keyword + filters → paginated product list (URL, name, price, image, rating per item)

Language

All process output to user (progress updates, process notifications) follows the user's language.

Objective

Extract a structured list of products from any e-commerce category, search results, or keyword search page, with support for price/brand/rating filters and multi-page pagination.

Prerequisites

  • Target browser is open and connected
  • No login required for public listing pages

Pre-execution Checks

1. Tool Readiness

If browser-act has been confirmed available in the current session → skip this step.

Invoke browser-act via Skill tool to load usage. If installation or configuration issues arise, follow its guidance to resolve then retry.

Capability Components

This Skill's operational boundary = what the user can manually do in their browser. It only reads data already displayed to the user on the page. JS code is encapsulated in Python files under the scripts/ directory, invoked via eval "$(python scripts/xxx.py {params})". Use the bash tool for execution.

DOM: Extract product list from current page

Navigate to the listing/search page first, then extract:

eval "$(python scripts/extract-listing.py --max-results 20)"

Parameters:

  • --max-results: max items to return per page, default 20

Output example:

{
  "count": 20,
  "items": [
    {
      "url": "https://www.amazon.com/dp/B09WNK39JN",
      "name": "Amazon Echo Pop",
      "price": 39.99,
      "currency": "USD",
      "image": "https://m.media-amazon.com/images/I/...jpg",
      "rating": 4.7,
      "review_count": 103789,
      "asin": "B09WNK39JN"
    }
  ]
}

DOM: Get next page URL

After extracting a page, get the URL to navigate to for the next page:

eval "$(python scripts/extract-listing-next-page.py)"

Output example:

{"next_url": "https://www.amazon.com/s?k=headphones&page=2", "has_next": true, "method": "amazon"}

When has_next is false, pagination is complete.

Composite: Keyword search with filters → product list

Step 1 — Build search URL with filters:

Construct the URL based on target site and desired filters using the patterns below, then navigate:

Amazon (amazon.com):

https://www.amazon.com/s?k={keyword_urlencoded}&s={sort}&rh={filter_params}
  • Sort (s): price-asc-rank | price-desc-rank | review-rank | date-desc-rank (omit for relevance)
  • Price filter: append p_36:{min_cents}-{max_cents} to rh (dollars × 100, e.g. $50–$200 → p_36:5000-20000)
  • Rating filter: append avg_customer_review:four-and-above | three-and-above | two-and-above to rh
  • In-stock: append p_n_availability:1248801011 to rh
  • Multiple rh values: comma-separate (e.g. rh=p_36:5000-20000,avg_customer_review:four-and-above)

eBay (ebay.com):

https://www.ebay.com/sch/i.html?_nkw={keyword_urlencoded}&_udlo={min_price}&_udhi={max_price}&_sop={sort_num}
  • Sort: 12=BestMatch | 15=PriceLow | 16=PriceHigh | 24=NewlyListed

Walmart (walmart.com):

https://www.walmart.com/search?q={keyword_urlencoded}&min_price={min}&max_price={max}&sort={sort}
  • Sort: best_match | price_low | price_high | rating_high

Google Shopping (cross-site, no --site):

https://www.google.com/search?tbm=shop&q={keyword_urlencoded}&tbs=p_ord:{sort}
  • Sort: rv=relevance | pd=price ascending | prd=price descending

Any site with --site (generic):

https://{site}/search?q={keyword_urlencoded}

Step 2 — Navigate and extract:

  1. navigate {constructed_url}wait stable
  2. eval "$(python scripts/extract-listing.py --max-results {n})"

Step 3 — Paginate (repeat until done):

  1. eval "$(python scripts/extract-listing-next-page.py)"
  2. If has_next is true: navigate {next_url}wait stable → re-run extract-listing.py
  3. If has_next is false: stop

Pagination

URL Pagination: extract-listing-next-page.py detects rel=next link, platform-specific pagination controls, and URL page parameters. Returns next_url for navigation.

DOM Pagination: For sites with load-more buttons (some Shopify themes):

  1. state to find "Load more" or "Show more" button
  2. click \x3Cindex>wait stable → re-run extract-listing.py
  3. Termination: button no longer present, or item count stops increasing

Success Criteria

result.count >= 1 AND items[0].url != null

Known Limitations

  • Amazon: direct navigation may trigger bot detection on fresh sessions — navigate from https://www.amazon.com first
  • eBay listing pages may require navigating from https://www.ebay.com first
  • Google Shopping results have complex SPA structure and may have reduced accuracy; prefer direct site search when --site is specified
  • Filter URL parameters are site-specific; unsupported filter parameters are silently ignored by some sites
  • Shopify themes vary widely; if the generic DOM strategies miss items, check if the page has JSON-LD ItemList or Product array in page source

Execution Efficiency

  • Batch orchestration: Loop through pages serially within a single session; add 1–2 second intervals between page navigations
  • Test before batch execution: Test with 1 page before running multi-page extraction
  • Error resumption: Record page number; on failure, resume from the last successful page

Experience Notes

Path: {working-directory}/browser-act-skill-forge-memories/ecommerce-scraper-ecommerce-listing.memory.md

Before execution: If the file exists, read it first — it records unexpected situations encountered during past executions; adjust strategy order accordingly.

After execution: If an unexpected situation is encountered (strategy became ineffective, page redesigned, anti-scraping upgraded, better path discovered), append a line: {YYYY-MM-DD}: {what happened} → {conclusion}

Usage Guidance
Install only if you want an agent to navigate public e-commerce listing pages and extract visible product fields. Be aware it may keep a small local troubleshooting memory file in the working directory, and its advertised search/filter coverage may be broader than what the included scripts actually handle.
Capability Assessment
Purpose & Capability
The stated purpose is to extract product data from public e-commerce listing pages, and the scripts implement DOM-based product and pagination extraction. The description overstates some automation, filters, and site support compared with the scripts, but this is a capability/quality mismatch rather than a security mismatch.
Instruction Scope
The invocation phrases are broad enough to trigger for general product-search tasks, but the runtime instructions stay focused on public listing/search pages and user-directed navigation/extraction.
Install Mechanism
No package installer, remote download, auto-update, or privileged install behavior is present. The skill contains a markdown file and two local Python scripts that print browser-side JavaScript.
Credentials
Browser access and DOM reading are proportionate to extracting products already visible on public pages. The scripts do not read credentials, environment variables, local files, or make independent network calls.
Persistence & Privilege
The skill asks the agent to read and append execution notes to a memory file under the working directory when unexpected situations occur. This is disclosed with a path and limited purpose, though it should be described earlier because the main boundary text says the skill only reads displayed page data.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install ecommerce-listing
  3. After installation, invoke the skill by name or use /ecommerce-listing
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
- Initial release of ecommerce-listing skill for extracting product lists from public e-commerce category or search result pages. - Supports Amazon, eBay, Walmart, Shopify collections, WooCommerce shops, Google Shopping, and generic product listing pages. - Enables keyword search with advanced filters (price, brand, category, rating, in-stock only, sort order) and returns structured arrays of product data (URL, name, price, currency, image, rating, review count). - Implements multi-page (paginated) extraction and navigation. - Includes DOM-based product extraction scripts and platform-specific URL-building guidance. - Provides process notifications and output in the user's language.
Metadata
Slug ecommerce-listing
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Ecommerce Listing?

Extract product list from any e-commerce category page, search results page, or keyword search with filters. Returns paginated product arrays with URL, name,... It is an AI Agent Skill for Claude Code / OpenClaw, with 11 downloads so far.

How do I install Ecommerce Listing?

Run "/install ecommerce-listing" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Ecommerce Listing free?

Yes, Ecommerce Listing is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Ecommerce Listing support?

Ecommerce Listing is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Ecommerce Listing?

It is built and maintained by BrowserAct (@browseractskills); the current version is v1.0.0.

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