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AI & LLMs @am-will Updated 2/26/2026

Gemini Computer Use OpenClaw Skill - ClawHub

Do you want your AI agent to automate Gemini Computer Use workflows? This free skill from ClawHub helps with ai & llms tasks without building custom tools from scratch.

What this skill does

Build and run Gemini 2.5 Computer Use browser-control agents with Playwright. Use when a user wants to automate web browser tasks via the Gemini Computer Use model, needs an agent loop (screenshot → function_call → action → function_response), or asks to integrate safety confirmation for risky UI actions.

Install

npx clawhub@latest install gemini-computer-use

Full SKILL.md

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namedescription
gemini-computer-useBuild and run Gemini 2.5 Computer Use browser-control agents with Playwright. Use when a user wants to automate web browser tasks via the Gemini Computer Use model, needs an agent loop (screenshot → function_call → action → function_response), or asks to integrate safety confirmation for risky UI actions.

Gemini Computer Use

Quick start

  1. Source the env file and set your API key:

    cp env.example env.sh
    $EDITOR env.sh
    source env.sh
    
  2. Create a virtual environment and install dependencies:

    python -m venv .venv
    source .venv/bin/activate
    pip install google-genai playwright
    playwright install chromium
    
  3. Run the agent script with a prompt:

    python scripts/computer_use_agent.py \
      --prompt "Find the latest blog post title on example.com" \
      --start-url "https://example.com" \
      --turn-limit 6
    

Browser selection

  • Default: Playwright's bundled Chromium (no env vars required).
  • Choose a channel (Chrome/Edge) with COMPUTER_USE_BROWSER_CHANNEL.
  • Use a custom Chromium-based executable (e.g., Brave) with COMPUTER_USE_BROWSER_EXECUTABLE.

If both are set, COMPUTER_USE_BROWSER_EXECUTABLE takes precedence.

Core workflow (agent loop)

  1. Capture a screenshot and send the user goal + screenshot to the model.
  2. Parse function_call actions in the response.
  3. Execute each action in Playwright.
  4. If a safety_decision is require_confirmation, prompt the user before executing.
  5. Send function_response objects containing the latest URL + screenshot.
  6. Repeat until the model returns only text (no actions) or you hit the turn limit.

Operational guidance

  • Run in a sandboxed browser profile or container.
  • Use --exclude to block risky actions you do not want the model to take.
  • Keep the viewport at 1440x900 unless you have a reason to change it.

Resources

  • Script: scripts/computer_use_agent.py
  • Reference notes: references/google-computer-use.md
  • Env template: env.example
Original URL: https://github.com/openclaw/skills/blob/main/skills/am-will/gemini-computer-use

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