Agent skill
onsh
Enhanced interface for xonsh, providing x-cmd integration, documentation search, and AI capabilities. Core Scenario: When the user needs to integrate x-cmd with xonsh or search xonsh documentation via CLI.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/onsh
SKILL.md
onsh - xonsh Python-Powered Shell Enhancement
The onsh module enhances the xonsh shell experience, enabling a hybrid Python/Shell workflow integrated with the x-cmd toolset.
When to Activate
- When the user wants to inject x-cmd tools (x, c, @gpt) into the xonsh environment.
- When searching xon.sh for syntax, alias, or Python-integration tips.
- When launching xonsh with automatic setup via x-cmd pkg.
Core Principles & Rules
- Integration: Use
setupto modify.xonshrcfor permanent x-cmd support. - Xonsh Quirks: Remind users that
@<name>aliases need a trailing;if no arguments are provided (e.g.,@gemini ;).
Patterns & Examples
Setup xonsh
# Inject x-cmd utilities into the xonsh configuration
x onsh setup
Search xonsh Docs
# Search xon.sh for 'alias' information interactively
x onsh : alias
Checklist
- Verify if the user is aware of xonsh's Python-hybrid nature.
- Confirm if the
.xonshrcfile needs permanent modification.
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