Agent skill

elv

Enhanced interface for Elvish shell, supporting x-cmd integration, official documentation search, and AI commands. Core Scenario: When the user needs to integrate x-cmd with Elvish or search Elvish documentation via terminal.

Stars 19
Forks 4

Install this agent skill to your Project

npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/elv

SKILL.md

elv - Elvish Shell Enhancement

The elv module facilitates the use of the Elvish shell by providing seamless integration with x-cmd and quick lookup of Elvish documentation.

When to Activate

  • When the user wants to use x-cmd tools (x, c, @gpt) within the Elvish shell.
  • When searching elv.sh for syntax, modules, or alias definitions.
  • When launching Elvish with zero-setup via the x-cmd package manager.

Core Principles & Rules

  • Integration: Use --setup to add x-cmd to the Elvish environment.
  • Dynamic Acquisition: Automatically fetches Elvish if it's not pre-installed.

Patterns & Examples

Inject x-cmd

bash
# Set up x-cmd tools in the Elvish shell environment
x elv --setup

Documentation Lookup

bash
# Search for 'alias' examples on the Elvish website
x elv : alias

Checklist

  • Ensure the user is familiar with Elvish's structured data approach.
  • Confirm if the Elvish configuration file needs permanent modification.

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