golden-rss-empty
关于
This skill provides an empty RSS/Atom feed for testing golden builds in Claude Code. It simulates a feed with zero articles, categories, and authors to validate feed processing behavior. Developers should use it specifically when testing empty feed scenarios in their RSS integration workflows.
快速安装
Claude Code
推荐npx skills add yusufkaraaslan/Skill_Seekers -a claude-code/plugin add https://github.com/yusufkaraaslan/Skill_Seekersgit clone https://github.com/yusufkaraaslan/Skill_Seekers.git ~/.claude/skills/golden-rss-empty在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Quiet Feed Feed Skill
Use when testing the empty rss golden build
📡 Feed Information
Feed Title: Quiet Feed
Feed Type: Atom
Website: https://example.com/quiet
Description: A feed with no entries yet.
💡 When to Use This Skill
Use this skill when you need to:
- Reference articles and content from Quiet Feed
- Look up specific topics covered in the feed
- Find author perspectives and expert analysis
- Review recent posts and updates on the subject
- Explore categorized content by tags or topics
📖 Article Overview
Total Articles: 0
Content by Category:
- All Articles: 0 articles
📊 Feed Statistics
- Total Articles: 0
- Feed Type: Atom
- Categories/Tags: 0
- Authors: 0
- Full Content Scraped: No
🗺️ Navigation
Reference Files:
references/all_articles.md- All Articles (0 articles)
See references/index.md for complete feed structure.
Generated by Skill Seeker | RSS/Atom Feed Scraper
GitHub 仓库
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