Agent skill
cht
CLI client for cheat.sh, providing concise "cheat sheets" and code snippets for developers. Core Scenario: When the user needs short, practical examples for programming languages or CLI tools.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/cht
SKILL.md
cht - Developer Cheat Sheets & Snippets
The cht module leverages the cheat.sh platform to provide high-quality, community-vetted code snippets and command usage examples. It is designed for developers who need "how-to" answers instantly.
When to Activate
- When the user needs a code example for a specific programming language (e.g.,
python/hello). - When seeking a concise "cheat sheet" for a command (e.g.,
ls). - When the user wants to learn a language quickly using "learn-x-in-minutes" content (
--learn). - When searching across multiple cheat sheets using keywords.
Core Principles & Rules
- Example-Driven: Focus on providing runnable code snippets or direct command examples.
- Breadth of Content: Covers hundreds of CLI tools and dozens of programming languages.
- Search Capability: Use
-sfor keyword-based search within the cheat.sh ecosystem.
Patterns & Examples
Language Snippet
# Get a Python 'hello world' example from cheat.sh
x cht python/hello
Command Cheat Sheet
# View a concise summary of common 'sed' patterns
x cht sed
Quick Learning
# Display the beginner cheat sheet for the Go language
x cht --learn go
Checklist
- Confirm if the user needs a command reference or a language snippet.
- Verify if a specific task (like
hello) should be appended to the language query.
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