Agent skill
sudo
Execute commands with elevated privileges (sudo/doas/su) while preserving PATH and x-cmd environment. Core Scenario: When the user needs to run system commands or x-cmd tools with root or specific user privileges.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/sudo
SKILL.md
sudo - Enhanced Privilege Elevation
The sudo module provides a smarter way to escalate privileges, automatically choosing between sudo, doas, or su. It ensures that custom PATH settings and the x-cmd environment are preserved in the elevated session.
When to Activate
- When the user needs to perform system-level tasks (e.g., editing
/etc/hosts). - When running x-cmd modules that require root access while keeping the x-cmd environment intact.
- When an automatic fallback between different privilege elevation tools is required.
Core Principles & Rules
- PATH Preservation: Always use
x sudoinstead of rawsudoto ensure x-cmd commands and custom binaries remain available. - Auto-Fallback: The tool automatically tries
sudo→doas→suto find the best available method. - Environment Consistency: Variables like
___X_CMD_ROOTare retained for seamless operation.
Patterns & Examples
Run System Command
# Update package index with root privileges
x sudo apt update
Edit System Files
# Open a system file with root privileges
x sudo vim /etc/hosts
Run as Specific User
# Execute a command as 'admin' using su
x sudo --suuser admin whoami
Checklist
- Confirm if the command requires elevated privileges.
- Verify if the user has the necessary permissions to use sudo/su.
- Ensure specific environment variables are needed or should be preserved.
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