Agent skill
yq
Portable command-line YAML, JSON, and XML processor with an interactive REPL for exploring data. Core Scenario: When the user needs to query, extract, or interactively browse YAML configurations or structured data.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/yq
SKILL.md
yq - YAML, JSON & XML Processor
The yq module is a versatile tool for handling structured data formats, primarily YAML. The x-cmd version adds an interactive REPL powered by FZF to make browsing complex configuration files intuitive.
When to Activate
- When the user needs to query or modify YAML configuration files.
- When converting between YAML, JSON, and other formats.
- When interactively exploring nested YAML structures with live feedback.
- When extracting specific values from deeply nested keys.
Core Principles & Rules
- Interactive Exploration: Use the
repl(orr) subcommand for a searchable TUI to browse YAML data. - Multiformat: Supports YAML, JSON, XML, and properties files as output or input formats.
- In-place Edits: Support for modifying files directly via the
-iflag.
Patterns & Examples
Interactively Explore Config
# Browse a complex configuration file with FZF
x yq r config.yml
Extract Value
# Get a specific nested value from a YAML file
x yq '.database.host' config.yml
Convert Formats
# Output a YAML file as JSON
x yq -o json config.yml
Checklist
- Confirm if the target file is YAML, JSON, or XML.
- Verify if an interactive view or a specific extraction is needed.
- Check if the file should be modified in-place (
-i).
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