Reporting
by githubnext
Guidelines for formatting reports using HTML details/summary tags
Skill Details
Repository Files
1 file in this skill directory
name: reporting description: Guidelines for formatting reports using HTML details/summary tags
Report Format Guidelines
This skill provides guidelines for formatting reports with collapsible sections.
Use HTML Details/Summary Tags
To prevent excessive scrolling and improve readability, wrap your reports in HTML <details> and <summary> tags. This allows users to expand and collapse sections as needed.
Basic Structure:
<details>
<summary>📊 Report Title - [Date]</summary>
## Report Content
Your detailed report content goes here...
### Section 1
Content for section 1...
### Section 2
Content for section 2...
</details>
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