汇总多来源每日或每周动态,快速掌握提及、待办与项目进展
复制安装指令,让 AI 自动完成配置 · 推荐新手
请帮我安装 askskill 上的 "digest" 技能: 1. 下载 https://raw.githubusercontent.com/anthropics/knowledge-work-plugins/main/enterprise-search/skills/digest/SKILL.md 2. 保存为 ~/.claude/skills/digest/SKILL.md 3. 装好后重载技能,告诉我可以用了
请整理我过去24小时在所有已连接来源中的动态,按项目分组,总结重要提及、待办事项、截止日期和文档更新,并按优先级排序。
一份按项目分类的每日摘要,突出高优先级提及、待办和最新文档变化。
我休假了三天,请汇总这段时间所有连接来源中的关键活动,告诉我哪些决定已做出、哪些任务需要我跟进、哪些讨论最值得先看。
一份补进度摘要,包含关键决策、待跟进事项和建议优先阅读内容。
请生成本周摘要,按项目汇总所有连接来源中的进展,列出本周重要决定、文档更新、未完成行动项,以及下周需要关注的风险。
一份结构化周报,帮助回顾项目进展、未结事项与下周关注重点。
If you see unfamiliar placeholders or need to check which tools are connected, see CONNECTORS.md.
Scan recent activity across all connected sources and generate a structured digest highlighting what matters.
Determine the time window from the user's input:
--daily — Last 24 hours (default if no flag specified)--weekly — Last 7 daysThe user may also specify a custom range:
--since yesterday--since Monday--since 2025-01-20Identify which MCP sources are connected (same approach as the search command):
If no sources are connected, guide the user:
To generate a digest, you'll need at least one source connected.
Check your MCP settings to add ~~chat, ~~email, ~~cloud storage, or other tools.
~~chat:
to:me)~~email:
~~cloud storage:
~~project tracker:
~~CRM:
~~knowledge base:
From all gathered activity, extract and categorize:
Action Items:
Decisions:
Mentions:
Updates:
Organize the digest by topic, project, or theme rather than by source. Merge related activity across sources:
## Project Aurora
- ~~chat: Design review thread concluded — team chose Option B (#design, Tuesday)
- ~~email: Sarah sent updated spec incorporating feedback (Wednesday)
- ~~cloud storage: "Aurora API Spec v3" updated by Sarah (Wednesday)
- ~~project tracker: 3 tasks moved to In Progress, 2 completed
## Budget Planning
- ~~email: Finance team requesting Q2 projections by Friday
- ~~chat: Todd shared template in #finance (Monday)
- ~~cloud storage: "Q2 Budget Template" shared with you (Monday)
Structure the output clearly:
# [Daily/Weekly] Digest — [Date or Date Range]
Sources scanned: ~~chat, ~~email, ~~cloud storage, [others]
## Action Items (X items)
- [ ] [Action item 1] — from [person], [source] ([date])
- [ ] [Action item 2] — from [person], [source] ([date])
## Decisions Made
- [Decision 1] — [context] ([source], [date])
- [Decision 2] — [context] ([source], [date])
## [Topic/Project Group 1]
[Activity summary with source attribution]
## [Topic/Project Group 2]
[Activity summary with source attribution]
## Mentions
- [Mention context] — [source] ([date])
## Documents Updated
…
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