Use when the user asks to "optimize entity presence"; builds Knowledge Graph, Wikidata, sameAs, and AI recognition signals. 实体优化/知识图谱
---
name: entity-optimizer
description: 'Use when the user asks to "optimize entity presence"; builds Knowledge Graph, Wikidata, sameAs, and AI recognition signals. 实体优化/知识图谱'
version: "9.9.9"
license: Apache-2.0
compatibility: "Claude Code, skills.sh, ClawHub, Vercel Labs, Cursor, Windsurf, Codex CLI, Amp, Gemini CLI, Kimi Code, Qwen Code, CodeBuddy"
homepage: "https://github.com/aaron-he-zhu/seo-geo-claude-skills"
when_to_use: "Use when optimizing entity presence for Knowledge Graph, Wikidata, or AI engine disambiguation. Also for brand entity canonicalization."
argument-hint: "<entity name or brand>"
metadata:
author: aaron-he-zhu
version: "9.9.9"
geo-relevance: "high"
tags:
- seo
- geo
- entity-optimization
- knowledge-graph
- knowledge-panel
- brand-entity
- wikidata
- entity-disambiguation
- 实体优化
- エンティティ
- 엔티티
- entidad-seo
triggers:
# EN-formal
- "optimize entity presence"
- "build knowledge graph"
- "entity audit"
- "establish brand entity"
- "entity disambiguation"
# EN-casual
- "Google doesn't know my brand"
- "no knowledge panel"
- "establish my brand as an entity"
- "get a Google knowledge card"
# EN-question
- "how to get a knowledge panel"
- "how to build brand entity"
# ZH-pro
- "实体优化"
- "知识图谱"
- "品牌实体"
- "知识面板"
- "品牌词"
- "品牌词优化"
# ZH-casual
- "品牌搜不到"
- "没有知识面板"
- "Google不认识我的品牌"
# JA
- "エンティティ最適化"
- "ナレッジパネル"
# KO
- "엔티티 최적화"
- "지식 패널"
- "구글이 내 브랜드 모르는데?"
- "지식 패널 만들려면?"
# ES
- "optimización de entidad"
- "panel de conocimiento"
# PT
- "otimização de entidade"
---
# 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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/references/skill-contract.md).
### 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](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 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/`, and `memory/open-loops.md`.
This skill is the sole writer of canonical entity profiles at `memory/entities/<name>.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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/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.
- **Primary next skill**: use the `Next Best Skill` below once the entity truth is clear.
### Handoff Summary
> Emit the standard shape from [skill-contract.md §Handoff Summary Format](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/references/skill-contract.md).
## 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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/CONNECTORS.md).
## Instructions
When a user requests entity optimization:
2. **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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/memory-management/SKILL.md).
### Step 1: Entity Discovery
Establish the entity's current state across all systems.
```markdown
### 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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/references/entity-signal-checklist.md).
Evaluate each signal as Pass / Fail / Partial with a specific action for each gap. The 6 categories are:
1. **Structured Data Signals** -- Organization/Person schema, sameAs links, @id consistency, author schema
2. **Knowledge Base Signals** -- Wikidata, Wikipedia, CrunchBase, industry directories
3. **Consistent NAP+E Signals** -- Name/description/logo/social consistency across platforms
4. **Content-Based Entity Signals** -- About page, author pages, topical authority, branded backlinks
5. **Third-Party Entity Signals** -- Authoritative mentions, co-citation, reviews, press coverage
6. **AI-Specific Entity Signals** -- Clear definitions, disambiguation, verifiable claims, crawlability
> **Reference**: Use the audit template in [references/entity-signal-checklist.md](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/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/<entity-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-<topic>.md` pattern.
Before writing any canonical profile, check `memory/privacy/tombstones.md` for a matching salted fingerprint or redacted label. If `reingest_blocked: true`, do not recreate the profile; return `NEEDS_INPUT` and ask the user to resolve the privacy block.
## 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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/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](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/references/entity-signal-checklist.md) — Complete signal checklist with verification methods, Step 3 report template, and Tips for Success
- [references/knowledge-graph-guide.md](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/cross-cutting/entity-optimizer/references/knowledge-graph-guide.md) — Wikidata, Wikipedia, and Knowledge Graph optimization playbook
## Next Best Skill
Primary: [schema-markup-generator](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/build/schema-markup-generator/SKILL.md). Also consider: [geo-content-optimizer](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/build/geo-content-optimizer/SKILL.md) (AI recognition gap) or [seo-content-writer](https://github.com/aaron-he-zhu/seo-geo-claude-skills/blob/main/build/seo-content-writer/SKILL.md) (new About/founder page needed).
don't have the plugin yet? install it then click "run inline in claude" again.