/install entity-optimizer
Entity Optimizer
Audits, builds, and maintains entity identity across search engines and AI systems. Entities — the people, organizations, products, and concepts that search engines and AI systems recognize as distinct things — are the foundation of how both Google and LLMs decide what a brand is and whether to cite it.
Why entities matter for SEO + GEO:
- SEO: Google's Knowledge Graph powers Knowledge Panels, rich results, and entity-based ranking signals. A well-defined entity earns SERP real estate.
- GEO: AI systems resolve queries to entities before generating answers. If an AI cannot identify an entity, it cannot cite it — no matter how good the content is.
What This Skill Does
Audits entity presence across Knowledge Graph, Wikidata, Wikipedia, and AI systems; maps all 6 signal categories (47 signals); produces a gap analysis, building plan, and disambiguation strategy.
Quick Start
Start with one of these prompts. Finish with a canonical entity profile and a handoff summary using the repository format in Skill Contract.
Entity Audit
Audit entity presence for [brand/person/organization]
How well do search engines and AI systems recognize [entity name]?
Build Entity Presence
Build entity presence for [new brand] in the [industry] space
Establish [person name] as a recognized expert in [topic]
Fix Entity Issues
My Knowledge Panel shows incorrect information — fix entity signals for [entity]
AI systems confuse [my entity] with [other entity] — help me disambiguate
Skill Contract
Expected output: an entity audit, a canonical entity profile, and a short handoff summary ready for memory/entities/.
- Reads: the entity name, primary domain, known profiles, topic associations, and prior brand context from CLAUDE.md and the shared State Model when available.
- Writes: a user-facing entity report plus a reusable profile that can be stored under
memory/entities/. - Promotes: canonical names, sameAs links, disambiguation notes, and entity gaps to
memory/hot-cache.md,memory/entities/, andmemory/open-loops.md.
This skill is the sole writer of canonical entity profiles at memory/entities/\x3Cname>.md. Other skills write entity candidates to memory/entities/candidates.md only. When 3+ candidates accumulate, this skill should be recommended.
Profile schema: the frontmatter of every canonical entity profile follows the authoritative contract in references/entity-geo-handoff-schema.md. That schema defines which fields downstream skills (geo-content-optimizer, schema-markup-generator, meta-tags-optimizer, ai-overview-recovery) depend on. Do not omit required fields — the consumers will degrade gracefully to DONE_WITH_CONCERNS and surface an open_loop pointing back here.
- Next handoff: use the
Next Best Skillbelow once the entity truth is clear.
Handoff Summary
Emit the standard shape from skill-contract.md §Handoff Summary Format.
Data Sources
With tools: query Knowledge Graph API, ~~SEO tool, ~~AI monitor, ~~brand monitor. Without tools: ask the user for entity name/type, domain, profiles, topics, and disambiguation context. See CONNECTORS.md.
Instructions
When a user requests entity optimization:
- GDPR Art 6 lawful-basis prompt (for third-party persons, EU/EEA/UK data subjects) — if the entity being canonicalized is an individual (founder, author, public figure) and may be an EU/EEA/UK resident, the skill MUST prompt the user before writing to
memory/entities/: "You are about to create a canonical profile for a person. If this person is or may be an EU/EEA/UK resident, GDPR Art 6 requires a lawful basis: (1) consent, (2) legitimate interest, (3) contract, (4) other. For non-EU subjects, check local regimes (CCPA/CPRA, PIPEDA, LGPD, etc.). If unsure, skip and return NEEDS_INPUT." Only proceed if user confirms a basis. Advisory only — not legal advice. Reference: memory-management §GDPR / Privacy Compliance.
Step 1: Entity Discovery
Establish the entity's current state across all systems.
### Entity Profile
**Entity Name**: [name]
**Entity Type**: [Person / Organization / Brand / Product / Creative Work / Event]
**Primary Domain**: [URL]
**Target Topics**: [topic 1, topic 2, topic 3]
#### Current Entity Presence
| Platform | Status | Details |
|----------|--------|---------|
| Google Knowledge Panel | ✅ Present / ❌ Absent / ⚠️ Incorrect | [details] |
| Wikidata | ✅ Listed / ❌ Not listed | [QID if exists] |
| Wikipedia | ✅ Article / ⚠️ Mentioned only / ❌ Absent | [notability assessment] |
| Google Knowledge Graph API | ✅ Entity found / ❌ Not found | [entity ID, types, score] |
| Schema.org on site | ✅ Complete / ⚠️ Partial / ❌ Missing | [Organization/Person/Product schema] |
#### AI Entity Resolution Test
**Note**: Claude cannot directly query other AI systems or perform real-time web searches without tool access. When running without ~~AI monitor or ~~knowledge graph tools, ask the user to run these test queries and report the results, or use the user-provided information to assess entity presence.
Test how AI systems identify this entity by querying:
- "What is [entity name]?"
- "Who founded [entity name]?" (for organizations)
- "What does [entity name] do?"
- "[entity name] vs [competitor]"
| AI System | Recognizes Entity? | Description Accuracy | Cites Entity's Content? |
|-----------|-------------------|---------------------|------------------------|
| ChatGPT | ✅ / ⚠️ / ❌ | [accuracy notes] | [yes/no/partially] |
| Claude | ✅ / ⚠️ / ❌ | [accuracy notes] | [yes/no/partially] |
| Perplexity | ✅ / ⚠️ / ❌ | [accuracy notes] | [yes/no/partially] |
| Google AI Overview | ✅ / ⚠️ / ❌ | [accuracy notes] | [yes/no/partially] |
Step 2: Entity Signal Audit
Evaluate entity signals across 6 categories. For the detailed 47-signal checklist with verification methods, see references/entity-signal-checklist.md.
Evaluate each signal as Pass / Fail / Partial with a specific action for each gap. The 6 categories are:
- Structured Data Signals -- Organization/Person schema, sameAs links, @id consistency, author schema
- Knowledge Base Signals -- Wikidata, Wikipedia, CrunchBase, industry directories
- Consistent NAP+E Signals -- Name/description/logo/social consistency across platforms
- Content-Based Entity Signals -- About page, author pages, topical authority, branded backlinks
- Third-Party Entity Signals -- Authoritative mentions, co-citation, reviews, press coverage
- AI-Specific Entity Signals -- Clear definitions, disambiguation, verifiable claims, crawlability
Reference: Use the audit template in references/entity-signal-checklist.md for the full 47-signal checklist with verification methods for each category.
Step 3: Report & Action Plan
Produce an Entity Optimization Report with: overview (entity/type/date), signal category summary (6-category ✅/⚠️/❌ table with findings), critical issues, top 5 priority actions (impact × effort), entity building roadmap (Week 1-2 → Month 1 → Month 2-3 → Ongoing), and CORE-EEAT A07/A08 + CITE I01-I10 cross-reference.
Reference: See references/entity-signal-checklist.md for the full Step 3 report template.
Save Results
Ask "Save these results for future sessions?" — if yes, write the canonical entity profile to memory/entities/\x3Centity-slug>.md using the Profile schema above. If the entity is project-critical, also add a 1-3 line pointer to memory/hot-cache.md; do not save canonical profiles to the generic memory/YYYY-MM-DD-\x3Ctopic>.md pattern.
Example
User: "Audit entity presence for Acme Analytics, our B2B SaaS analytics platform at acme-analytics.example"
Output (abbreviated): AI resolution test shows partial recognition — ChatGPT described it as a generic "analytics tool" without B2B specificity; not listed among enterprise analytics players; founder unknown to AI systems. Health summary flags missing Wikidata entry, no Knowledge Panel, and 3 priority actions — Wikidata submission, sameAs links, and a founder-bio page.
Reference: See references/example-audit-report.md for the full entity audit report including AI resolution test results, entity health summary, top 3 priority actions, and CORE-EEAT/CITE cross-references.
Tips for Success
Reference: See references/entity-signal-checklist.md for the full 7-item Tips for Success list (start with Wikidata, leverage sameAs, test AI recognition before/after, compounding signals, consistency > completeness, disambiguation-first, pair with CITE I-dimension).
Entity Type Reference
Reference: See references/entity-type-reference.md for entity types with key signals, schemas, and disambiguation strategies by situation.
Knowledge Panel & Wikidata Optimization
Reference: See references/knowledge-panel-wikidata-guide.md for Knowledge Panel claiming/editing, common issues and fixes, Wikidata entry creation, key properties by entity type, and AI entity resolution optimization.
Reference Materials
Detailed guides for entity optimization:
- references/entity-signal-checklist.md — Complete signal checklist with verification methods, Step 3 report template, and Tips for Success
- references/knowledge-graph-guide.md — Wikidata, Wikipedia, and Knowledge Graph optimization playbook
Next Best Skill
Primary: schema-markup-generator. Also consider: geo-content-optimizer (AI recognition gap) or seo-content-writer (new About/founder page needed).
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install entity-optimizer - After installation, invoke the skill by name or use
/entity-optimizer - Provide required inputs per the skill's parameter spec and get structured output
What is Entity Optimizer?
Build entity presence in Knowledge Graph, Wikidata, AI systems for brand recognition and citations. 实体优化/知识图谱. It is an AI Agent Skill for Claude Code / OpenClaw, with 1563 downloads so far.
How do I install Entity Optimizer?
Run "/install entity-optimizer" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Entity Optimizer free?
Yes, Entity Optimizer is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Entity Optimizer support?
Entity Optimizer is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Entity Optimizer?
It is built and maintained by Aaron Zhu (@aaron-he-zhu); the current version is v9.9.5.