Lab Review
by rhpds
AI review of Showroom labs for content, correctness, and quality. Use when reviewing lab content, checking for errors, or validating lab structure.
Skill Details
name: lab-review description: AI review of Showroom labs for content, correctness, and quality. Use when reviewing lab content, checking for errors, or validating lab structure.
Lab Review
Review Showroom labs for content quality, technical correctness, and adherence to best practices.
Usage
Provide the path to a Showroom lab directory or specific content files to review.
Review Checklist
- Content accuracy and technical correctness
- Clear and consistent formatting
- Proper Asciidoc syntax
- Working code examples
- Appropriate difficulty level
- Logical flow and progression
Output
The review will provide:
- Summary of findings
- Specific issues with line references
- Recommendations for improvement
- Overall quality score
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