internal-linking-optimizer

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Use when improving internal link structure, anchor text, orphan pages, crawl depth, site architecture, or link equity flow. 内链优化/站内架构

AI & Automation 509 stars 46 forks Updated 6 days ago MIT

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Skill Content

# Internal Linking Optimizer Analyzes internal link structure, authority flow, orphan pages, anchor text, and topic clusters, then delivers a prioritized linking plan with source/target/anchor recommendations. ## Quick Start Start with one of these prompts, then finish with the standard handoff summary from [Skill Contract](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/references/skill-contract.md). ```text Analyze internal linking structure for [domain/sitemap] Find internal linking opportunities for [URL] Create internal linking plan for topic cluster about [topic] Suggest internal links for this new article: [content/URL] Find orphan pages on [domain] Optimize anchor text across the site ``` ## Skill Contract **Expected output**: a scored diagnosis, prioritized repair plan, and a short handoff summary ready for `memory/audits/`. - **Reads**: the current page or site state, symptoms, prior audits, and current priorities from [CLAUDE.md](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/CLAUDE.md) and the shared [State Model](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/references/state-model.md) when available. - **Writes**: a user-facing audit or optimization plan plus a reusable summary that can be stored under `memory/audits/`. - **Promotes**: blocking defects, repeated weaknesses, and fix priorities to `memory/open-loops.md` and `memory/decisions.md`. - **Next handoff**: use the `Next Best Skill` below when the r...

Details

Author
ViryaZheng
Repository
ViryaZheng/recomby-geo
Created
2 months ago
Last Updated
6 days ago
Language
Python
License
MIT

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