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webapp-testing — Categories.community

v0.1.0
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About this Skill

Perfect for Automation Agents needing native Python web application testing capabilities with Playwright. Toolkit for interacting with and testing local web applications using Playwright. Supports verifying frontend functionality, debugging UI behavior, capturing browser screenshots, and viewing browser logs.

Galaxy-Dawn Galaxy-Dawn
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Updated: 2/20/2026

Quality Score

Top 5%
50
Excellent
Based on code quality & docs
Installation
SYS Universal Install (Auto-Detect)
Cursor IDE Windsurf IDE VS Code IDE
> npx killer-skills add Galaxy-Dawn/claude-scholar/webapp-testing

Agent Capability Analysis

The webapp-testing MCP Server by Galaxy-Dawn is an open-source Categories.community integration for Claude and other AI agents, enabling seamless task automation and capability expansion.

Ideal Agent Persona

Perfect for Automation Agents needing native Python web application testing capabilities with Playwright.

Core Value

Empowers agents to test local web applications using native Python Playwright scripts, managing server lifecycles with helper scripts like `with_server.py`, and supporting multiple servers through protocols like HTTP.

Capabilities Granted for webapp-testing MCP Server

Automating web application testing with Playwright
Debugging local web applications using Python scripts
Managing multiple server lifecycles for testing purposes

! Prerequisites & Limits

  • Requires Python environment
  • Native Playwright script writing needed
  • Limited to local web application testing
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Web Application Testing

To test local web applications, write native Python Playwright scripts.

Helper Scripts Available:

  • scripts/with_server.py - Manages server lifecycle (supports multiple servers)

Always run scripts with --help first to see usage. DO NOT read the source until you try running the script first and find that a customized solution is abslutely necessary. These scripts can be very large and thus pollute your context window. They exist to be called directly as black-box scripts rather than ingested into your context window.

Decision Tree: Choosing Your Approach

User task → Is it static HTML?
    ├─ Yes → Read HTML file directly to identify selectors
    │         ├─ Success → Write Playwright script using selectors
    │         └─ Fails/Incomplete → Treat as dynamic (below)
    │
    └─ No (dynamic webapp) → Is the server already running?
        ├─ No → Run: python scripts/with_server.py --help
        │        Then use the helper + write simplified Playwright script
        │
        └─ Yes → Reconnaissance-then-action:
            1. Navigate and wait for networkidle
            2. Take screenshot or inspect DOM
            3. Identify selectors from rendered state
            4. Execute actions with discovered selectors

Example: Using with_server.py

To start a server, run --help first, then use the helper:

Single server:

bash
1python scripts/with_server.py --server "npm run dev" --port 5173 -- python your_automation.py

Multiple servers (e.g., backend + frontend):

bash
1python scripts/with_server.py \ 2 --server "cd backend && python server.py" --port 3000 \ 3 --server "cd frontend && npm run dev" --port 5173 \ 4 -- python your_automation.py

To create an automation script, include only Playwright logic (servers are managed automatically):

python
1from playwright.sync_api import sync_playwright 2 3with sync_playwright() as p: 4 browser = p.chromium.launch(headless=True) # Always launch chromium in headless mode 5 page = browser.new_page() 6 page.goto('http://localhost:5173') # Server already running and ready 7 page.wait_for_load_state('networkidle') # CRITICAL: Wait for JS to execute 8 # ... your automation logic 9 browser.close()

Reconnaissance-Then-Action Pattern

  1. Inspect rendered DOM:

    python
    1page.screenshot(path='/tmp/inspect.png', full_page=True) 2content = page.content() 3page.locator('button').all()
  2. Identify selectors from inspection results

  3. Execute actions using discovered selectors

Common Pitfall

Don't inspect the DOM before waiting for networkidle on dynamic apps ✅ Do wait for page.wait_for_load_state('networkidle') before inspection

Best Practices

  • Use bundled scripts as black boxes - To accomplish a task, consider whether one of the scripts available in scripts/ can help. These scripts handle common, complex workflows reliably without cluttering the context window. Use --help to see usage, then invoke directly.
  • Use sync_playwright() for synchronous scripts
  • Always close the browser when done
  • Use descriptive selectors: text=, role=, CSS selectors, or IDs
  • Add appropriate waits: page.wait_for_selector() or page.wait_for_timeout()

Reference Files

  • examples/ - Examples showing common patterns:
    • element_discovery.py - Discovering buttons, links, and inputs on a page
    • static_html_automation.py - Using file:// URLs for local HTML
    • console_logging.py - Capturing console logs during automation

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