Multi-Language Project Analysis with PMAT
关于
This skill analyzes multi-language codebases using PMAT to assess cross-language integration, architecture, and quality. It supports 25+ languages and provides unified quality metrics and best-practice violations across the entire project. Use it when working with polyglot projects to understand language distribution and compare ecosystem quality.
快速安装
Claude Code
推荐npx skills add mattnigh/skills_collection -a claude-code/plugin add https://github.com/mattnigh/skills_collectiongit clone https://github.com/mattnigh/skills_collection.git ~/.claude/skills/Multi-Language Project Analysis with PMAT在 Claude Code 中复制并粘贴此命令以安装该技能
GitHub 仓库
Frequently asked questions
What is the Multi-Language Project Analysis with PMAT skill?
Multi-Language Project Analysis with PMAT is a Claude Skill by mattnigh. Skills package instructions and resources that Claude loads on demand, so Claude can perform Multi-Language Project Analysis with PMAT-related tasks without extra prompting.
How do I install Multi-Language Project Analysis with PMAT?
Use the install commands on this page: add Multi-Language Project Analysis with PMAT to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does Multi-Language Project Analysis with PMAT belong to?
Multi-Language Project Analysis with PMAT is in the Meta category, tagged ai and mcp.
Is Multi-Language Project Analysis with PMAT free to use?
Yes. Multi-Language Project Analysis with PMAT is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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