LLM Readability Checker
/llm-readCheck how well AI language models can parse and extract information from your content. Scores content on LLM-friendly formatting, structure, and extractability.
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$ cp -r seo-skills/llm-readability ~/.claude/skills/llm-readabilityWhat it does
The LLM Readability Checker skill evaluates how effectively large language models can parse, understand, and extract information from your content. It scores pages on structural clarity, section independence, entity definition quality, and answer extractability. Unlike human readability scores, this focuses on patterns that AI models use to identify and cite source material.
Key features
- Scores content on LLM extractability (distinct from human readability)
- Checks section independence (can each section stand alone as a citation?)
- Evaluates entity definition clarity for AI comprehension
- Tests content against common AI extraction patterns
- Provides specific rewrites for low-scoring sections
How to use LLM Readability Checker
Run the command
Type /llm-read with your page URL or paste content. The skill evaluates every section against LLM readability criteria.
Review the scores
Each section gets an extractability score with specific feedback: whether it can stand alone as a citation, whether entities are clear, and whether the answer pattern is recognizable.
Improve low-scoring sections
Apply the suggested rewrites for sections scoring below the threshold. Focus on making each section self-contained with clear entity references.
When to use it
Pre-publishing check for AEO-optimized content
Auditing existing content for AI extractability
Training content teams on LLM-friendly writing patterns
Comparing your content's AI-readability against competitors
Frequently asked questions
How does LLM readability differ from human readability?
Human readability focuses on sentence complexity, vocabulary, and paragraph length. LLM readability focuses on section independence, entity clarity, and structured answer patterns. Content can score well on one metric and poorly on the other.
What makes content easy for LLMs to extract?
Self-contained paragraphs that answer a clear question, explicit entity definitions, consistent terminology, and structured formats (definitions, lists, tables). Content that requires reading multiple sections for context is harder for LLMs to extract.
Can I use this alongside the Content Readability Scorer?
Yes. The Content Readability Scorer (/readability) optimizes for human readers. The LLM Readability Checker (/llm-read) optimizes for AI extraction. Use both together for content that performs well with both audiences.
Does LLM readability affect organic search rankings?
Not directly. But as Google integrates more AI features (AI Overviews, SGE), content that AI systems can easily parse and extract is more likely to appear in these features. LLM-readable content also tends to be well-structured for traditional SEO.
Related skills
Content Readability Scorer
/readabilityScore your content's readability using Flesch-Kincaid, sentence length analysis, and paragraph structure checks. Get specific suggestions to improve scannability.
AI VisibilityAEO Content Formatter
/aeo-formatFormat your content for Answer Engine Optimization. Restructures pages with citation blocks, entity definitions, and structured answer patterns that AI engines extract.
AI VisibilityCitation Optimizer
/citation-optimizeOptimize your content to get cited by AI answer engines. Restructures paragraphs into citation-ready blocks that AI models prefer to extract and reference.
AI VisibilityAI Snippet Optimizer
/ai-snippetOptimize content specifically for Google AI Overview inclusion. Analyzes what content format Google extracts for your target queries and tailors your pages to match.
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