writing-skills
About
This skill helps developers create and update SKILL.md documentation by explaining when and how to build effective skills. It provides guidelines for structuring skill documentation with proper front matter and concise markdown content. Skills are designed to provide targeted context to coding agents only when needed, preventing unnecessary LLM context bloat.
Documentation
Skills are used to for context that may be useful to a coding agent, without bloating LLM context at times theyre not useful.
Skills are only worthwhile if the coding agent fails a task without the skill.
Skills live in /.skills, with each skill having its own directory.
SKILL.md
Front matter
- Match the
nameto the directory name exactly. - Write the
descriptionas "Use when <scenario> - <what it does>" in under 30 words and third person. - Quote the description if it includes punctuation that could break YAML.
Markdown body
- Write concise instructions for the skill topic.
- Keep headings and bullet lists structured so readers can scan quickly.
Aditional files
Other files, like scripts or data, may live in the directory and be referenced by the skill.
AGENTS.md
A GitHub Action automatically regenerates the skills list in AGENTS.md.
Quick Install
/plugin add https://github.com/dave1010/tools/tree/main/writing-skillsCopy and paste this command in Claude Code to install this skill
GitHub 仓库
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