wuying-browser-use
About
This skill automates browser interactions for web testing, form filling, screenshot capture, and data extraction. It enables developers to programmatically navigate websites, interact with page elements, and scrape information using simple commands. Key capabilities include supporting both Chinese and English instructions, handling tasks like e-commerce data collection and news monitoring through a Python SDK.
Quick Install
Claude Code
Recommendednpx skills add agentbay-ai/agentbay-skills -a claude-code/plugin add https://github.com/agentbay-ai/agentbay-skillsgit clone https://github.com/agentbay-ai/agentbay-skills.git ~/.claude/skills/wuying-browser-useCopy and paste this command in Claude Code to install this skill
Documentation
Wuying Browser Use
自动化浏览器操作,支持网页导航、表单填写、数据提取等任务。
依赖
python3 -m pip install wuying-agentbay-sdk
使用方法
python3 scripts/browser-use.py "<任务执行步骤>"
功能特性
- ✅ 网页导航和点击
- ✅ 表单填写和提交
- ✅ 数据提取和抓取
- ✅ 网页截图
- ✅ 搜索和浏览
- ✅ 支持中英文指令
常用场景
电商信息收集
python3 scripts/browser-use.py "访问京东搜索iPhone,提取前5个商品价格"
新闻监控
python3 scripts/browser-use.py "打开新浪新闻,获取今日头条"
社交媒体
python3 scripts/browser-use.py "访问微博热搜榜,提取前10个话题"
使用技巧
- 指令要具体明确 - 说清楚要访问哪个网站,做什么操作
- 一次一个任务 - 复杂流程拆分成多个命令
- 描述性语言 - 详细描述要提取的内容或点击的元素
注意事项
- 每次命令独立运行,不保持会话状态
- 某些网站可能限制自动化访问
- 指令不明确可能导致非预期结果
- 每次执行需要1~2分钟,会不断产生中间结果,不要提前杀死进程,也不要重试
- skill调用后,控制台会打印出asp流化链接(可视化的url),可告知用户查看
GitHub Repository
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