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internal-comms

mpazaryna
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Metaai

About

The internal-comms skill provides Claude with company-specific templates and guidelines for writing various internal communications. It should be used when creating devlog reports, leadership updates, project status reports, incident reports, and formatted updates like 22A/22B. The skill ensures all internal communications follow standardized formats by loading appropriate templates from its examples directory.

Documentation

When to use this skill

To write internal communications, use this skill for:

  • 22A full updates (Progress, Plans, Problems)
  • 22B condensed (Progress, Plans, Problems)
  • devlog updates
  • Status reports
  • Leadership updates
  • Project updates
  • Incident reports

How to use this skill

To write any internal communication:

  1. Identify the communication type from the request
  2. Load the appropriate guideline file from the examples/ directory:
    • examples/form-22a.md - For Progress/Plans/Problems team updates
    • examples/devlog.md - For devlogs
    • examples/form-22b.md - Baby version of the 22A
    • examples/general-comms.md - For anything else that doesn't explicitly match one of the above
  3. Follow the specific instructions in that file for formatting, tone, and content gathering

If the communication type doesn't match any existing guideline, ask for clarification or more context about the desired format.

Keywords

22A updates, 22B variant, devlogs, company newsletter, company comms, weekly update, faqs, common questions, updates, internal comms

Quick Install

/plugin add https://github.com/mpazaryna/claude-toolkit/tree/main/internal-comms

Copy and paste this command in Claude Code to install this skill

GitHub 仓库

mpazaryna/claude-toolkit
Path: generated-skills/internal-comms
agentic-frameworkagentic-workflowclaude-code

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