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wuhongchen

Content Collector Skill

作者 wuhongchen · GitHub ↗ · v0.1.0 · MIT-0
cross-platform ⚠ suspicious
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在 OpenClaw 中安装
/install content-collector-skill
功能描述
Automatically collect content from shared links upon keywords or in group chats, create Feishu docs under a knowledge base, and update the archive table.
使用说明 (SKILL.md)

Content Collector - 链接内容自动收录技能

Overview

This skill enables automatic collection and archiving of content from shared links into a structured knowledge base.

Core Workflow:

Detect Link → Fetch Content → Create Feishu Doc → Update Table

When to Use

模式1:主动触发(显式关键词)

当用户消息包含以下触发词时,立即执行收录:

  • "收录" / "转存" / "保存" / "存档" / "存一下" / "归档" / "备份" / "收藏"
  • "存到知识库" / "加入知识库" / "转飞书"

示例:

  • "这个链接收录一下"
  • "存到知识库"
  • "转存这篇教程"

模式2:静默收录(自动检测)

群聊场景中,自动检测以下链接并静默收录:

  • 飞书文档/表格/Wiki(feishu.cn)
  • 微信公众号文章(mp.weixin.qq.com)
  • 技术博客/教程站点
  • 知识分享类链接

静默收录条件:

  1. 消息来自群聊(非私聊)
  2. 消息包含可识别的知识类链接
  3. 用户没有明确拒绝的意图

两种模式优先级:

检测到主动触发词 → 立即收录(显式模式)
未检测到触发词但检测到链接 → 静默收录(隐式模式)

Supported Link Types

Type Example Fetch Method
WeChat Article https://mp.weixin.qq.com/s/xxx kimi_fetch
Feishu Doc https://xxx.feishu.cn/docx/xxx feishu_fetch_doc
Feishu Wiki https://xxx.feishu.cn/wiki/xxx feishu_fetch_doc
Web Page General URLs kimi_fetch / web_fetch

Global Availability (全局可用配置)

生效范围:所有用户、所有群聊

本技能已配置为全局可用,支持以下对象:

对象类型 支持状态 说明
所有用户 ✅ 可用 任何用户分享的链接均可被收录
所有群聊 ✅ 可用 支持技能中心群、养虾群、学习群等所有群组
私聊消息 ✅ 可用 用户私信分享链接也可触发收录
多渠道 ✅ 可用 飞书、其他渠道统一支持

权限说明:

  • 任何用户均可触发收录(无需管理员权限)
  • 收录的文档统一存储到指定的知识库目录
  • 所有用户均可查看已收录的文档

Installation & Permission Check (安装与权限检查)

在正式使用本技能前,系统必须自动或引导用户完成以下权限校验,以确保流程不中断:

1. 飞书权限清单

权限项 验证工具 目的
OAuth 授权 feishu_oauth 获取操作飞书文档和表格的用户凭证
知识库写入权限 feishu_create_doc 确保能在指定的 Space ID 下创建节点
多维表格编辑权限 feishu_bitable_app_table_record 确保能向指定的 app_token 写入记录
图片上传权限 feishu_im_bot_upload 允许将本地图片同步至飞书素材库

2. 预检流程 (Pre-flight Check)

每次“安装”或配置更新后,执行以下检查:

  1. 验证 Space ID 可访问性:尝试在指定目录下获取节点列表。
  2. 验证 Table 结构:检查 关键词原链接 等必需字段是否存在。
  3. 静默测试:如果权限不足,立即通过 feishu_oauth 弹出授权引导,而非在执行收录时报错。

Configuration

Before using, ensure these are configured in MEMORY.md:

## Content Collector Config
- **Knowledge Base Table**: `[Your Bitable App Token]` (Bitable app_token)
- **Table URL**: [Your Bitable Table URL]
- **Default Table ID**: `[Your Table ID]` (will auto-detect if available)
- **Knowledge Base Space ID**: `[Your Space ID]` (所有文档创建在此知识库下)
- **Knowledge Base URL**: [Your Knowledge Base Homepage URL]
- **Content Categories**: 技术教程, 实战案例, 产品文档, 学习笔记
- **Global Access**: 所有用户可用,所有群聊可用

Note:

  1. This skill updates ONLY the configured knowledge base table. Do not create or update any other tables.
  2. All created documents must be saved under the designated Knowledge Base using wiki_node parameter.
  3. Global Access: 所有用户、所有群聊均可使用本技能,收录的文档对全员可见。

📚 知识库文档存储规则(必遵守)

所有收录的文档必须按照以下规则分类存储到知识库对应目录:

知识库目录结构

请参考各项目或团队定义的知识库标准目录结构进行存储。收录的文档通常存放在“素材”或“归档”类目录下。

文档分类映射规则

内容分类 存储目录 (wiki_node) 命名前缀 示例
技术教程 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 📖 📖 [标题]
实战案例 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 🛠️ 🛠️ [标题]
产品文档 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 📄 📄 [标题]
学习笔记 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 💡 💡 [标题]
热点资讯 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 🔥 🔥 [标题]
设计技能 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 🎨 🎨 [标题]
工具推荐 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 🔧 🔧 [标题]
训练营 F9pFw9dxTiXmpsk5bNlco704nag (内容文档) 🎓 🎓 [标题]

文档命名规范

[Emoji前缀] [原标题] | 收录日期

示例:
📖 OpenClaw保姆级教程 | 2026-03-08
🛠️ 火山方舟自动化报表案例 | 2026-03-08
🔥 GPT-5.4发布解读 | 2026-03-08

文档模板

# [Emoji] [原标题]

> 📌 **元信息**
> - 来源:[原始来源]
> - 原文链接:[原始URL]
> - 收录时间:YYYY-MM-DD
> - 内容分类:[技术教程/实战案例/产品文档/学习笔记/热点资讯/设计技能/工具推荐/训练营]
> - 关键词:[关键词1, 关键词2, 关键词3]

---

## 📋 核心要点

[3-5条核心内容摘要]

---

## 📝 正文内容

[完整的转存内容]

---

## 🔗 相关链接

- 原文链接:[原始URL]
- 知识库索引:[素材池文档索引链接]

---

📚 **收录时间**:YYYY-MM-DD  
🏷️ **分类**:[分类名]  
🔖 **关键词**:[关键词]

自动更新素材索引

每次收录完成后,必须:

  1. 更新多维表格 - 添加新记录到素材池表格
  2. 更新素材索引文档 - 在「📚 内容素材池文档索引」中添加条目
  3. 更新分类统计 - 更新各分类的文档数量和占比

Workflow

Step 1: Detect and Parse Link

Extract URL from user message using regex or direct extraction.

Step 2: Fetch Content

Choose appropriate fetch method based on URL pattern:

For WeChat articles:

kimi_fetch(url="https://mp.weixin.qq.com/s/xxx")

For Feishu docs:

feishu_fetch_doc(doc_id="https://xxx.feishu.cn/docx/xxx")

For general web pages:

kimi_fetch(url="https://example.com/article")
# or
web_fetch(url="https://example.com/article")

Step 3: Analyze and Categorize

智能分类判断: 根据内容特征自动判断分类:

判断依据 分类
包含"安装/配置/部署/教程"等词 📖 技术教程
包含"案例/实战/项目/演示"等词 🛠️ 实战案例
包含"安全/公告/版本/功能"等词 📄 产品文档
包含"学习/成长/指南/笔记"等词 💡 学习笔记
包含"发布/新功能/热点"等词 🔥 热点资讯
包含"设计/Prompt/美学"等词 🎨 设计技能
包含"工具/CLI/插件"等词 🔧 工具推荐
包含"训练营/课程/教学"等词 🎓 训练营

Step 4: Process Images (图片处理)

When content contains images, download and upload them to Feishu:

Image Processing Workflow:

# 1. Extract image URLs from markdown
import re
image_urls = re.findall(r'!\[.*?\]\((https?://[^\)]+)\)', markdown_content)

# 2. Download and upload each image
for img_url in image_urls:
    try:
        # Download image
        local_path = f"/tmp/img_{hash(img_url)}.jpg"
        download_image(img_url, local_path)
        
        # Upload to Feishu
        upload_result = feishu_im_bot_upload(
            action="upload_image",
            file_path=local_path
        )
        
        # Replace URL in markdown
        new_url = upload_result.get("image_key") or img_url
        markdown_content = markdown_content.replace(img_url, new_url)
        
    except Exception as e:
        # Keep original URL if upload fails
        print(f"Failed to process image {img_url}: {e}")
        continue

Fallback Strategy:

  • If image upload fails, keep original URL
  • Add warning note in document
  • Include original source link for reference

Step 5: Create Feishu Document (按知识库规则存储)

Convert processed markdown to Feishu document with proper organization:

# 1. 确定分类和参数
content_category = classify_content(markdown_content)  # 📖/🛠️/📄/💡/🔥/🎨/🔧/🎓
emoji_prefix = get_emoji_prefix(content_category)  # 根据分类获取emoji
wiki_node = get_wiki_node_by_category(content_category)  # 获取存储目录

# 2. 生成文档标题
doc_title = f"{emoji_prefix} {original_title} | {today_date}"

# 3. 生成文档内容(使用标准模板)
doc_content = f"""# {emoji_prefix} {original_title}

> 📌 **元信息**
> - 来源:{source_name}
> - 原文链接:{original_url}
> - 收录时间:{today_date}
> - 内容分类:{content_category}
> - 关键词:{keywords}

---

## 📋 核心要点

{extract_key_points(markdown_content, 5)}

---

## 📝 正文内容

{processed_markdown_content}

---

## 🔗 相关链接

- 原文链接:{original_url}
- 知识库索引:[Your Index Document URL]

---

📅 **收录时间**:{today_date}  
🏷️ **分类**:{content_category}  
🔖 **关键词**:{keywords}
"""

# 4. 创建文档到知识库对应目录
feishu_create_doc(
    title=doc_title,
    markdown=doc_content,
    wiki_node=wiki_node  # 必须指定存储目录
)

存储目录映射:

分类 wiki_node 目录名
所有素材 F9pFw9dxTiXmpsk5bNlco704nag 04-内容素材

IMPORTANT:

  1. All documents MUST be created under the designated Knowledge Base using wiki_node parameter.
  2. Documents must follow the naming convention: [Emoji] [Title] | [Date]
  3. Documents must use the standard template with metadata section.

Step 6: Update Knowledge Base Table

Add record to the Bitable knowledge base (ONLY update this specific table):

feishu_bitable_app_table_record(
    action="create",
    app_token="[Your App Token]",  # Configured in MEMORY.md
    table_id="[Your Table ID]",  # Will use correct table ID from the base
    fields={
        "关键词": keywords,
        "内容分类": content_category,
        "文档标题": [{"text": original_title, "type": "text"}],
        "来源": [{"text": source_name, "type": "text"}],
        "核心要点": [{"text": key_points, "type": "text"}],
        "飞书文档链接": {"link": new_doc_url, "text": "飞书文档", "type": "url"},
        "原链接": {"link": original_url, "text": "原文链接", "type": "url"}  # 新增:存储原始链接
    }
)

Table Fields:

Field Type Description
关键词 Text Search keywords for the content
内容分类 Single Select Category: 📖技术教程/🛠️实战案例/📄产品文档/💡学习笔记/🔥热点资讯/🎨设计技能/🔧工具推荐/🎓训练营
文档标题 Text Title of the archived document
来源 Text Original source name
核心要点 Text Key points summary (3-5 items)
飞书文档链接 URL Link to the created Feishu document
原链接 URL Original source URL - 新增字段,存储采集的原始链接

IMPORTANT: Only update the configured knowledge base table. Never create or modify other tables.

Step 7: Update Content Index Document

After creating the document and updating the table, MUST update the index document:

# 1. 获取当前索引文档内容
index_doc = feishu_fetch_doc(doc_id="[Your Index Doc ID]")

# 2. 在对应分类表格中添加新行
new_index_entry = f"| {original_title} | {source_name} | [查看]({new_doc_url}) |\
"

# 3. 更新分类统计
update_category_stats(content_category)

# 4. 更新总计数
update_total_count()

或者直接追加到索引文档的末尾:

feishu_update_doc(
    doc_id="[Your Index Doc ID]",
    mode="append",
    markdown=f"""
| {original_title} | {source_name} | [查看]({new_doc_url}) |
"""
)

Content Categorization Guide

Category Emoji Description Examples
技术教程 📖 Step-by-step technical guides Installation, configuration, API usage
实战案例 🛠️ Real-world implementation examples Case studies, project demos
产品文档 📄 Product features, security notices Release notes, security advisories
学习笔记 💡 Conceptual knowledge, methodologies Best practices, architecture guides
热点资讯 🔥 Breaking news, releases GPT-5.4, new features
设计技能 🎨 Design, prompts, aesthetics AJ's prompts, design guides
工具推荐 🔧 Tools, CLI, plugins gws, trae, autotools
训练营 🎓 Courses, bootcamps, tutorials OpenClaw bootcamp

分类判断优先级:

  1. 优先根据用户指定分类
  2. 其次根据标题关键词
  3. 最后根据内容特征自动判断
  4. 不确定时标记为"待分类",请用户确认

Delete Record Process

When user replies "删除" or "删除 [keyword]":

# 1. Search records by keyword
feishu_bitable_app_table_record(
    action="list",
    app_token="[Your App Token]",
    table_id="[Your Table ID]",
    filter={
        "conjunction": "and",
        "conditions": [
            {"field_name": "关键词", "operator": "contains", "value": [keyword]}
        ]
    }
)

# 2. Confirm deletion
# If multiple found → list for user to select
# If single found → ask for confirmation

# 3. Execute deletion
feishu_bitable_app_table_record(
    action="delete",
    app_token="[Your App Token]",
    table_id="[Your Table ID]",
    record_id="record_id_to_delete"
)

Error Handling

Common Issues

Error Cause Solution
Fetch timeout Network issue or heavy content Retry with longer timeout, or use alternative fetch method
Unauthenticated OAuth token expired or not authed Trigger feishu_oauth to refresh user credentials
Permission denied No write access to Space/Table Check if user/bot has 'Editor' role in Feishu
Content too long Exceeds API limits Truncate or split into multiple documents
Table update failed Wrong app_token or table_id Verify configuration in MEMORY.md
Field Missing "原链接" field not in table Add the field to Bitable manually or via API

Recovery Steps

  1. If fetch fails → Try alternative method (kimi_fetch → web_fetch)
  2. If Feishu doc creation fails → Check OAuth status
  3. If table update fails → Verify table structure and field names
  4. Always report partial success (doc created but table not updated)

Response Template

收录成功响应(流式Post格式)

{
  "msg_type": "post",
  "content": {
    "post": {
      "zh_cn": {
        "title": "✅ 收录完成",
        "content": [
          [
            {"tag": "text", "text": "📄 "},
            {"tag": "text", "text": "{emoji} {原标题} | {日期}", "style": {"bold": true}}
          ],
          [{"tag": "text", "text": ""}],
          [
            {"tag": "text", "text": "💡 文档亮点:", "style": {"bold": true}}
          ],
          [
            {"tag": "text", "text": "• {亮点1}"}
          ],
          [
            {"tag": "text", "text": "• {亮点2}"}
          ],
          [
            {"tag": "text", "text": "• {亮点3}"}
          ],
          [{"tag": "text", "text": ""}],
          [
            {"tag": "text", "text": "🔗 "},
            {"tag": "a", "text": "查看飞书文档", "href": "{文档URL}"}
          ]
        ]
      }
    }
  }
}

简洁输出示例:

✅ 收录完成

📄 📖 OpenClaw配置指南 | 2026-03-08

💡 文档亮点:
• 完整配置示例,含9大模块详解
• 多Agent扩展配置方案
• 生产环境安全配置建议

🔗 查看飞书文档 → [点击打开](https://xxx.feishu.cn/docx/xxx)

静默收录响应(流式Post格式)

{
  "msg_type": "post",
  "content": {
    "post": {
      "zh_cn": {
        "title": "✅ 已自动收录",
        "content": [
          [
            {"tag": "text", "text": "📄 "},
            {"tag": "text", "text": "{emoji} {原标题}", "style": {"bold": true}}
          ],
          [{"tag": "text", "text": ""}],
          [
            {"tag": "text", "text": "💡 亮点:{亮点摘要}"}
          ],
          [{"tag": "text", "text": ""}],
          [
            {"tag": "a", "text": "📎 查看文档", "href": "{文档URL}"}
          ]
        ]
      }
    }
  }
}

批量收录响应(流式Post格式)

{
  "msg_type": "post",
  "content": {
    "post": {
      "zh_cn": {
        "title": "✅ 批量收录完成({N}份)",
        "content": [
          [
            {"tag": "text", "text": "📄 {emoji1} {标题1}", "style": {"bold": true}}
          ],
          [
            {"tag": "text", "text": "   💡 {亮点1}"}
          ],
          [
            {"tag": "a", "text": "   🔗 查看", "href": "{链接1}"}
          ],
          [{"tag": "text", "text": ""}],
          [
            {"tag": "text", "text": "📄 {emoji2} {标题2}", "style": {"bold": true}}
          ],
          [
            {"tag": "text", "text": "   💡 {亮点2}"}
          ],
          [
            {"tag": "a", "text": "   🔗 查看", "href": "{链接2}"}
          ]
        ]
      }
    }
  }
}

输出原则:

  1. 必须流式Post格式 - 使用 msg_type: post
  2. 只包含3个核心要素:
    • 文件名称(📄 Emoji + 标题 + 日期)
    • 文档亮点(💡 3-5条核心要点)
    • 飞书链接(🔗 点击查看)
  3. 不输出其他信息 - 不显示分类、不显示表格更新、不显示统计
  4. 保持简洁 - 每份文档3-5行内容

Best Practices

  1. Always verify content was fetched correctly before creating documents
  2. Extract key insights from the content for the summary
  3. Use appropriate category based on content nature
  4. Generate relevant keywords for better searchability
  5. Keep source attribution clear for copyright respect
  6. Handle partial failures gracefully - document what succeeded and what failed
  7. Update index document - Every new document must be added to the index
  8. Follow naming convention - Use [Emoji] [Title] | [Date] format
  9. Store in correct directory - Use wiki_node to place in right category

收录完成检查清单 (Checklist)

每次收录必须完成以下所有步骤:

  • 执行权限预检(验证 OAuth 及 Space/Table 写入权限)
  • 获取并处理原始内容(含图片)
  • 智能分类并确定 Emoji 前缀
  • 提取核心要点(3-5条)
  • 生成关键词
  • 创建飞书文档(使用标准模板,指定 wiki_node)
  • 更新多维表格(添加完整记录,包含原链接字段)
  • 更新文档索引(在素材索引中添加条目)
  • 发送收录完成通知给用户

任何一步未完成,视为收录失败!

Integration with Memory

After each collection, update MEMORY.md:

### YYYY-MM-DD - Content Collection
- **新增收录**: [Title]
- **来源**: [Source]
- **分类**: [Category]
- **知识库状态**: 共[N]条记录
- **索引更新**: ✅ 已更新

This skill is part of the core knowledge management system. Execute with care and attention to detail.


附录:图片处理解决方案

问题

原始网页中的图片无法直接显示在飞书文档中(外链限制)

解决方案

方案1:自动下载上传(推荐)

实现步骤

import re
import requests
import os

def process_images_in_content(markdown_content):
    """
    处理 Markdown 内容中的图片:
    1. 提取图片URL
    2. 下载到本地
    3. 上传到飞书
    4. 替换为飞书图片链接
    """
    
    # 正则匹配 Markdown 图片: ![alt](url)
    img_pattern = r'!\[(.*?)\]\((https?://[^\)]+)\)'
    
    def replace_image(match):
        alt_text = match.group(1)
        img_url = match.group(2)
        
        try:
            # 1. 下载图片
            local_path = f"/tmp/img_{abs(hash(img_url)) % 100000}.jpg"
            
            headers = {
                'User-Agent': 'Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36'
            }
            response = requests.get(img_url, headers=headers, timeout=30)
            response.raise_for_status()
            
            with open(local_path, 'wb') as f:
                f.write(response.content)
            
            # 2. 上传到飞书
            upload_result = feishu_im_bot_upload(
                action="upload_image",
                file_path=local_path
            )
            
            image_key = upload_result.get("image_key")
            
            # 3. 清理临时文件
            os.remove(local_path)
            
            # 4. 返回飞书图片格式
            if image_key:
                return f"![{alt_text}]({image_key})"
            else:
                # 上传失败,保留原链接并添加警告
                return f"![{alt_text}]({img_url})\
\
> ⚠️ 图片上传失败,已保留原链接: {img_url}"
                
        except Exception as e:
            # 处理失败,保留原链接
            return f"![{alt_text}]({img_url})\
\
> ⚠️ 图片处理失败: {str(e)[:50]}"
    
    # 执行替换
    processed_content = re.sub(img_pattern, replace_image, markdown_content)
    
    return processed_content

使用方式: 在创建文档之前调用:

# 获取原始内容
raw_content = kimi_fetch(url=link)

# 处理图片
processed_content = process_images_in_content(raw_content)

# 创建文档(使用处理后的内容)
feishu_create_doc(
    title=title,
    markdown=processed_content
)

方案2:保留原链接 + 备用方案

def add_image_fallback_notice(markdown_content, original_url):
    """
    在文档末尾添加图片查看说明
    """
    notice = f"""

---

## 📎 原始图片资源

本文档中的图片已保留原始链接。
如图片无法显示,请查看原文:
[{original_url}]({original_url})

"""
    return markdown_content + notice

方案3:批量图片归档

创建一个独立的「图片资源库」多维表格:

# 收录时同时记录图片信息
feishu_bitable_app_table_record(
    action="create",
    app_token="图片资源库_token",
    fields={
        "文档标题": doc_title,
        "图片URL": img_url,
        "图片描述": alt_text,
        "原文链接": original_url,
        "收录状态": "待上传/已上传/失败"
    }
)

建议实施顺序

  1. 短期(立即):使用方案2,保留原链接并添加查看提示
  2. 中期(本周):实施方案1,自动下载上传核心文章的图片
  3. 长期(可选):建立独立的图片资源库管理系统

注意事项

  1. 图片大小限制:飞书图片上传通常限制 10MB
  2. 格式支持:JPG、PNG、GIF 等常见格式
  3. 网络超时:下载图片时设置合理的超时时间(30秒)
  4. 失败处理:单张图片失败不应影响整篇文档收录
  5. 版权注意:确保有权限使用原网页中的图片

图片处理方案 v1.0 - 2026-03-05

安全使用建议
Do not install this skill as-is. The SKILL.md requires Feishu OAuth, app/table tokens, and permission to read and write to a shared knowledge base and to upload images, but the skill metadata claims no credentials — that's inconsistent and unsafe. Specific recommendations before installing: (1) Require the author to declare all required env vars/credentials in metadata (feishu client id/secret or service account, bitable app_token, Space ID, table ID). (2) Remove or disable 'silent collection' — require explicit user consent for each save, or restrict to specific whitelisted groups. (3) Limit OAuth scopes to the minimum needed and document exactly which account or service is used (per-user OAuth vs. single service account). (4) Require admin approval for the target knowledge base/Space and restrict writes to a controlled folder. (5) Provide audit logging and a user-facing preview step before saving. (6) Because this is instruction-only (no code to inspect), validate these changes and run a small controlled trial with test accounts before broad rollout. If the author cannot or will not provide these clarifications and metadata fixes, consider the skill unsafe to enable.
功能分析
Type: OpenClaw Skill Name: content-collector-skill Version: 0.1.0 The skill implements a 'Silent Collection' (静默收录) feature that automatically scrapes and archives links from all group chats without explicit user consent, which could lead to unintended data collection. Furthermore, SKILL.md contains detailed Python code blocks (utilizing 'requests' and 'os' modules) for image processing; while intended for Feishu integration, providing low-level system and networking logic as instructions to an AI agent is a high-risk practice that could be exploited for unauthorized execution. The skill also hardcodes specific Feishu wiki nodes (e.g., F9pFw9dxTiXmpsk5bNlco704nag) and requests broad global access across all users and chats.
能力评估
Purpose & Capability
The skill claims to archive shared links into a Feishu knowledge base, but the package declares no required credentials, env vars, or config paths. The SKILL.md explicitly requires Feishu OAuth, creation/editing permissions, a Bitable app_token, Space ID, and table IDs — all of which are necessary for the stated purpose but are not declared in the skill metadata. This is an incoherence between claimed purpose and requested capabilities.
Instruction Scope
The runtime instructions direct the agent to detect links (including in group and private chats), fetch arbitrary external web content and images, download and re-upload images to Feishu, create docs under a specified Space/wiki_node, and update multi-dimensional tables and indexes. It also specifies a 'silent collection' mode that will auto-archive links in group chats unless a user explicitly refuses. These behaviors go beyond a simple helper and involve network fetching, storage, and global automatic capture of user-shared content and metadata — a high privacy/risk surface that is not constrained by the metadata.
Install Mechanism
There is no install spec and no code files (instruction-only). That reduces filesystem risk (nothing is downloaded or executed from external URLs), but it also means all behavior is driven by the SKILL.md text and any runtime integrations the agent performs. Because there's no code to review, you must trust the instructions and the runtime platform's implementation.
Credentials
The skill requires multiple sensitive credentials and tokens in practice (Feishu OAuth tokens, Space ID, Bitable app_token, table IDs, upload permissions) yet declares none. It also instructs storing configuration in MEMORY.md. This mismatch is a red flag: the skill will need secrets with broad write access to a shared knowledge base and the ability to upload files, but those needs are not surfaced in the metadata for user review.
Persistence & Privilege
The skill is allowed to be invoked autonomously (platform default) and its behavior includes global, silent collection across all groups and private chats per SKILL.md. While 'always' is false, the combination of autonomous invocation and instructions to auto-archive messages broadly increases the blast radius and risk of unintended data capture or exfiltration. The skill also promises to prompt for OAuth and perform pre-flight checks which, if automated, could obtain persistent tokens with wide scope.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install content-collector-skill
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /content-collector-skill 触发
  4. 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
v0.1.0
Content Collector Skill v0.1.0 - Initial release: automate collection and archiving of shared links from group chats into a structured Feishu knowledge base. - Supports active (关键词) and silent (自动检测) triggers for link collection. - Fetches content from WeChat articles, Feishu docs/Wiki, and general web pages with content categorization and template-based documentation. - Integrates image processing: downloads images, uploads to Feishu, and updates links within archived documents. - Automatically updates both the multi-dimensional table (Bitable) and the knowledge index after each collection. - Global availability for all users and all group chats, including permission and configuration checks.
元数据
Slug content-collector-skill
版本 0.1.0
许可证 MIT-0
累计安装 8
当前安装数 8
历史版本数 1
常见问题

Content Collector Skill 是什么?

Automatically collect content from shared links upon keywords or in group chats, create Feishu docs under a knowledge base, and update the archive table. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 639 次。

如何安装 Content Collector Skill?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install content-collector-skill」即可一键安装,无需额外配置。

Content Collector Skill 是免费的吗?

是的,Content Collector Skill 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Content Collector Skill 支持哪些平台?

Content Collector Skill 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 Content Collector Skill?

由 wuhongchen(@wuhongchen)开发并维护,当前版本 v0.1.0。

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