Agent skill
lua
Enhanced Lua development module, supporting project initialization, module installation via Luarocks, and static compilation. Core Scenario: When the user needs to set up Lua projects, manage libraries, or compile Lua scripts to static binaries.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/lua
SKILL.md
lua - Enhanced Lua Development
The lua module provides a comprehensive suite of tools for Lua developers, simplifying project setup, dependency management, and script execution.
When to Activate
- When initializing a new Lua project structure (
init). - When installing Lua modules and libraries using Luarocks integration (
install). - When formatting, checking, or linting Lua source code.
- When compiling Lua scripts into standalone static binaries.
Core Principles & Rules
- Luarocks Integration: Use the
install(ori) subcommand to manage dependencies easily. - Static Compilation: Leverage the
staticsubcommand for creating zero-dependency Lua executables. - Code Quality: Supports
checkandformatfor maintaining Lua code standards.
Patterns & Examples
Install Library
# Install the 'lua-cjson' module using the integrated Luarocks
x lua i lua-cjson
Static Build
# Compile a Lua script into a single static binary
x lua static main.lua
Initialize Project
# Set up a new Lua project environment
x lua init
Checklist
- Confirm if the user needs to manage dependencies or execute a script.
- Verify the target platform for static compilation.
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