Agent skill
gitconfig
Manage Git configurations using YAML files for structured and portable setup. Core Scenario: When the user needs to apply complex Git configurations or migrate settings via YAML.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/gitconfig
SKILL.md
gitconfig - YAML-Based Git Configuration
The gitconfig module allows users to manage their Git settings through structured YAML files, providing a more readable and portable way to configure Git aliases, user info, and behaviors.
When to Activate
- When applying a set of Git configurations from a YAML template.
- When managing multiple Git profiles or complex alias sets.
Core Principles & Rules
- Portability: Focuses on using YAML as the source of truth for Git settings.
- Batch Application: Use the
applysubcommand to set multiple Git options at once.
Patterns & Examples
Apply Config
# Update Git settings based on a YAML configuration file
x gitconfig apply my-config.yml
Checklist
- Verify the YAML configuration file format.
- Confirm the target Git scope (global/local).
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