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c-display

daxaur
Updated Yesterday
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Otherdisplaybrightnesstrashsafety

About

This skill provides display brightness control and safe file deletion by moving items to the macOS Trash instead of permanent removal. It offers commands to get/set brightness levels and a `trash` utility as a safer alternative to `rm`. Use it to prevent accidental data loss and manage display settings from the command line.

Quick Install

Claude Code

Recommended
Primary
npx skills add daxaur/openpaw -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/daxaur/openpaw
Git CloneAlternative
git clone https://github.com/daxaur/openpaw.git ~/.claude/skills/c-display

Copy and paste this command in Claude Code to install this skill

Documentation

Display & Safety

brightness

# Get current brightness (0.0 to 1.0)
brightness -l

# Set brightness to 80%
brightness 0.8

# Set brightness to minimum
brightness 0.0

# Set brightness to maximum
brightness 1.0

trash (macos-trash)

Safe alternative to rm — moves files to macOS Trash:

# Move file to trash
trash file.txt

# Move multiple files
trash file1.txt file2.txt dir/

# Move with confirmation prompt
trash --interactive file.txt

Guidelines

  • Use trash instead of rm when the user might want to recover files
  • Use rm only for temporary/generated files where recovery isn't needed
  • Brightness value is 0.0 (off) to 1.0 (max)
  • brightness -l lists all displays when multiple monitors connected

GitHub Repository

daxaur/openpaw
Path: skills/c-display
0
ai-agentanthropicautomationclaudeclaude-codecli

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