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在 OpenClaw 中安装
/install browser-automation-clawdbot
功能描述
Headless browser automation CLI optimized for AI agents with accessibility tree snapshots and ref-based element selection
使用说明 (SKILL.md)
Agent Browser Skill
Fast browser automation using accessibility tree snapshots with refs for deterministic element selection.
Why Use This Over Built-in Browser Tool
Use agent-browser when:
- Automating multi-step workflows
- Need deterministic element selection
- Performance is critical
- Working with complex SPAs
- Need session isolation
Use built-in browser tool when:
- Need screenshots/PDFs for analysis
- Visual inspection required
- Browser extension integration needed
Core Workflow
# 1. Navigate and snapshot
agent-browser open https://example.com
agent-browser snapshot -i --json
# 2. Parse refs from JSON, then interact
agent-browser click @e2
agent-browser fill @e3 "text"
# 3. Re-snapshot after page changes
agent-browser snapshot -i --json
Key Commands
Navigation
agent-browser open \x3Curl>
agent-browser back | forward | reload | close
Snapshot (Always use -i --json)
agent-browser snapshot -i --json # Interactive elements, JSON output
agent-browser snapshot -i -c -d 5 --json # + compact, depth limit
agent-browser snapshot -s "#main" -i # Scope to selector
Interactions (Ref-based)
agent-browser click @e2
agent-browser fill @e3 "text"
agent-browser type @e3 "text"
agent-browser hover @e4
agent-browser check @e5 | uncheck @e5
agent-browser select @e6 "value"
agent-browser press "Enter"
agent-browser scroll down 500
agent-browser drag @e7 @e8
Get Information
agent-browser get text @e1 --json
agent-browser get html @e2 --json
agent-browser get value @e3 --json
agent-browser get attr @e4 "href" --json
agent-browser get title --json
agent-browser get url --json
agent-browser get count ".item" --json
Check State
agent-browser is visible @e2 --json
agent-browser is enabled @e3 --json
agent-browser is checked @e4 --json
Wait
agent-browser wait @e2 # Wait for element
agent-browser wait 1000 # Wait ms
agent-browser wait --text "Welcome" # Wait for text
agent-browser wait --url "**/dashboard" # Wait for URL
agent-browser wait --load networkidle # Wait for network
agent-browser wait --fn "window.ready === true"
Sessions (Isolated Browsers)
agent-browser --session admin open site.com
agent-browser --session user open site.com
agent-browser session list
# Or via env: AGENT_BROWSER_SESSION=admin agent-browser ...
State Persistence
agent-browser state save auth.json # Save cookies/storage
agent-browser state load auth.json # Load (skip login)
Screenshots & PDFs
agent-browser screenshot page.png
agent-browser screenshot --full page.png
agent-browser pdf page.pdf
Network Control
agent-browser network route "**/ads/*" --abort # Block
agent-browser network route "**/api/*" --body '{"x":1}' # Mock
agent-browser network requests --filter api # View
Cookies & Storage
agent-browser cookies # Get all
agent-browser cookies set name value
agent-browser storage local key # Get localStorage
agent-browser storage local set key val
Tabs & Frames
agent-browser tab new https://example.com
agent-browser tab 2 # Switch to tab
agent-browser frame @e5 # Switch to iframe
agent-browser frame main # Back to main
Snapshot Output Format
{
"success": true,
"data": {
"snapshot": "...",
"refs": {
"e1": {"role": "heading", "name": "Example Domain"},
"e2": {"role": "button", "name": "Submit"},
"e3": {"role": "textbox", "name": "Email"}
}
}
}
Best Practices
- Always use
-iflag - Focus on interactive elements - Always use
--json- Easier to parse - Wait for stability -
agent-browser wait --load networkidle - Save auth state - Skip login flows with
state save/load - Use sessions - Isolate different browser contexts
- Use
--headedfor debugging - See what's happening
Example: Search and Extract
agent-browser open https://www.google.com
agent-browser snapshot -i --json
# AI identifies search box @e1
agent-browser fill @e1 "AI agents"
agent-browser press Enter
agent-browser wait --load networkidle
agent-browser snapshot -i --json
# AI identifies result refs
agent-browser get text @e3 --json
agent-browser get attr @e4 "href" --json
Example: Multi-Session Testing
# Admin session
agent-browser --session admin open app.com
agent-browser --session admin state load admin-auth.json
agent-browser --session admin snapshot -i --json
# User session (simultaneous)
agent-browser --session user open app.com
agent-browser --session user state load user-auth.json
agent-browser --session user snapshot -i --json
Installation
npm install -g agent-browser
agent-browser install # Download Chromium
agent-browser install --with-deps # Linux: + system deps
Credits
Skill created by Yossi Elkrief (@MaTriXy)
agent-browser CLI by Vercel Labs
安全使用建议
This skill appears to be what it claims: documentation for using the 'agent-browser' CLI. Before installing or running it, verify the upstream package/repo (npm and the GitHub homepage) to ensure you trust the publisher. Be cautious with the recommended 'npm install -g' and with running 'agent-browser install' (which downloads Chromium). Treat any state files (auth.json) as sensitive — do not load third-party-provided auth state, and avoid saving session state that contains cookies or tokens you care about. Also note the small manifest inconsistencies (declared required command vs. registry metadata, and differing owner/slug in _meta.json); these suggest you should confirm the skill package's provenance before use. If you want a lower-risk setup, run installs in an isolated environment or sandbox and review the package source on GitHub first.
功能分析
Type: OpenClaw Skill
Name: browser-automation-clawdbot
Version: 1.0.0
The skill provides a headless browser automation CLI (agent-browser) with high-risk capabilities including network routing/blocking, cookie and localStorage manipulation, and session state persistence (state save/load). While these features are aligned with the stated purpose of browser automation and the documentation appears to be a legitimate guide for the vercel-labs/agent-browser tool, the broad access to network resources and sensitive browser data meets the threshold for 'suspicious' due to the inherent risk of these capabilities in an AI agent context. No evidence of intentional malice or prompt injection was found in SKILL.md or _meta.json.
能力评估
Purpose & Capability
The SKILL.md describes an agent-browser CLI for headless browser automation which matches the skill name and description. However, metadata in SKILL.md declares a required command ('agent-browser') while the top-level registry requirements reported 'none' for required binaries — a small inconsistency. _meta.json owner/slug/version values also differ from the registry metadata, which suggests mismatched packaging or an outdated manifest.
Instruction Scope
The runtime instructions are limited to running the agent-browser CLI and parsing its JSON output. This stays within the stated purpose. Important scope items to note: the instructions include 'state save/load' (reading/writing auth JSON files), session env var usage (AGENT_BROWSER_SESSION), and commands that can intercept or mock network traffic. Those are expected for a browser automation tool but can expose or reuse sensitive credentials/cookies if the agent is told to load local state files.
Install Mechanism
This is an instruction-only skill with no platform install spec, but SKILL.md recommends 'npm install -g agent-browser' and running 'agent-browser install' to download Chromium. That is a typical install path for such a tool, but it requires installing a third-party npm package and downloading a browser binary — both are moderate-risk operations that should be vetted (verify npm package, registry publisher, and the upstream GitHub repo) before running on a machine with sensitive data.
Credentials
The skill does not declare required environment variables or credentials, which is appropriate. The instructions reference an optional AGENT_BROWSER_SESSION env var and file-based state (auth.json) for session persistence; these are proportional to a browser automation tool but mean local files containing cookies/storage could be loaded, so treat state files as sensitive.
Persistence & Privilege
The skill does not request always:true and is not asking to modify other skills or system-wide settings. It is user-invocable and allows autonomous invocation (platform default). Nothing here grants elevated, permanent privileges beyond normal agent invocation.
如何使用
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install browser-automation-clawdbot - 安装完成后,直接呼叫该 Skill 的名称或使用
/browser-automation-clawdbot触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
Initial release
元数据
常见问题
Browser Automation Clawdbot 是什么?
Headless browser automation CLI optimized for AI agents with accessibility tree snapshots and ref-based element selection. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 246 次。
如何安装 Browser Automation Clawdbot?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install browser-automation-clawdbot」即可一键安装,无需额外配置。
Browser Automation Clawdbot 是免费的吗?
是的,Browser Automation Clawdbot 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Browser Automation Clawdbot 支持哪些平台?
Browser Automation Clawdbot 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 Browser Automation Clawdbot?
由 hsyhph(@hsyhph)开发并维护,当前版本 v1.0.0。
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