Agent skill
uname
Enhanced system information display with structured key-value output. Core Scenario: When the user needs a quick, readable summary of kernel version, architecture, and OS name.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/uname
SKILL.md
uname - Structured System Information
The uname module provides a colorful, structured summary of common system information, including hostname, OS name, kernel details, and architecture.
When to Activate
- When the user wants to identify their system environment details.
- When verifying kernel versions or system architecture for software compatibility.
Core Principles & Rules
- Clarity: Consolidates key system data into an easy-to-read format.
- TTY Awareness: Automatically disables colors when the output is piped.
Patterns & Examples
System Summary
# Display hostname, system name, kernel, and architecture
x uname
Checklist
- Confirm if the user needs specific uname flags or just a general summary.
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