cursor-ai-chat
About
This skill helps developers master Cursor AI's chat interface for code assistance, triggered by phrases like "cursor chat" or "ask cursor." It covers effective prompting, context management with @-mentions, and techniques for optimal AI responses. Use it when working within Cursor to improve code-related queries and interactions.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/cursor-ai-chatCopy and paste this command in Claude Code to install this skill
Documentation
Cursor Ai Chat
Overview
This skill helps you master the Cursor AI chat interface for code assistance. It covers effective prompting patterns, context management with @-mentions, model selection, and techniques for getting the best responses from AI.
Prerequisites
- Cursor IDE installed and authenticated
- Project workspace with code files
- Understanding of @-mention syntax
- Basic familiarity with AI prompting
Instructions
- Open AI Chat panel (Cmd+L or Ctrl+L)
- Select relevant code before asking questions
- Use @-mentions to add file context
- Ask specific, clear questions
- Review and apply suggested code
- Use multi-turn conversations for iterative work
Output
- Code explanations and documentation
- Generated code snippets
- Debugging assistance
- Refactoring suggestions
- Code review feedback
Error Handling
See {baseDir}/references/errors.md for comprehensive error handling.
Examples
See {baseDir}/references/examples.md for detailed examples.
Resources
GitHub Repository
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