Agent skill
zig
Enhanced Zig language module for package management, project building, and ZON format conversion. Core Scenario: When the user needs to manage Zig projects, convert ZON to JSON/YAML, or initialize C compilation with Zig.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/zig
SKILL.md
zig - Zig Language Enhancement
The zig module extends the capabilities of the Zig toolchain, providing simplified package management, powerful format conversion for build.zig.zon, and integrated C compilation utilities.
When to Activate
- When managing Zig packages and searching for common libraries (
pm). - When converting
build.zig.zonfiles to JSON or YAML for analysis. - When initializing C compilation using Zig as a drop-in replacement for standard compilers (
initcc). - When performing standard Zig tasks like building, formatting, or testing projects.
Core Principles & Rules
- Format Conversion: Use the
zonsubcommand to transform Zig's internal format into machine-readable JSON/YAML. - C Integration: Leverage
cc,c++, andarto use Zig's built-in toolchain for C projects. - Package Management: Use
pm lato discover frequently used Zig packages.
Patterns & Examples
Convert ZON to YAML
# Output the build.zig.zon content as YAML
cat build.zig.zon | x zig zon toyml
Discover Packages
# List all available Zig packages in the x-cmd collection
x zig pm la
Initialize C Compilation
# Setup Zig for C project compilation
x zig initcc
Checklist
- Confirm if the user needs Zig-native tasks or C-integration utilities.
- Verify the target file paths for building or formatting.
- Check if JSON or YAML is preferred for ZON data conversion.
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