بنقرة واحدة
aeo-optimization
AI Engine Optimization - semantic triples, page templates, content clusters for AI citations
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
AI Engine Optimization - semantic triples, page templates, content clusters for AI citations
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Multi-model validation council — auto-validate plans, architecture changes, and PRs via validate-plan/review before executing
Task-scoped memory lifecycle — typed MnemoGraph prevents lossy context compaction by treating facts/decisions/code-refs/handoffs as distinct node types with per-type eviction policies
Mandatory code reviews via /code-review before commits and deploys
Claude Code Agent Teams - default team-based development with strict TDD pipeline enforcement
Maggy is a local AI engineering command center. AI-prioritized inbox across issue trackers (GitHub Issues/Asana), one-click TDD execute with iCPG context enrichment, daily competitor intelligence briefing.
Dynamic multi-repo and monorepo awareness for Claude Code. Analyze workspace topology, track API contracts, and maintain cross-repo context.
| name | aeo-optimization |
| description | AI Engine Optimization - semantic triples, page templates, content clusters for AI citations |
| when-to-use | When optimizing content for AI engine discovery and citations |
| user-invocable | false |
| effort | medium |
Purpose: Optimize content for AI engines (ChatGPT, Claude, Perplexity, Google AI Overviews) so your brand gets cited in AI-generated answers.
Source: Based on HubSpot's AEO Guide and industry best practices.
┌────────────────────────────────────────────────────────────────┐
│ THE GREAT DECOUPLING │
│ ──────────────────────────────────────────────────────────── │
│ Impressions ≠ Clicks anymore. │
│ AI engines compile answers from multiple sources. │
│ More buyer journey happens inside chat experiences. │
│ 58% of Google searches = zero clicks (AI overviews). │
├────────────────────────────────────────────────────────────────┤
│ THE OPPORTUNITY │
│ ──────────────────────────────────────────────────────────── │
│ Shape what AI engines say about your category and product. │
│ Get cited as the authoritative source. │
│ Best answer > Best page ranking. │
└────────────────────────────────────────────────────────────────┘
Key Stats:
AI engines use three main signals to select content for answers:
Facts that appear across multiple credible sources get trusted and reused.
How to build consensus:
Net-new insight beats generic advice. AI engines prefer content that adds value.
How to add information gain:
Clear entities and tidy structure reduce ambiguity and boost quotability.
How to optimize structure:
What they are: Compact facts that AI engines (and humans) can't misread.
Pattern: [Subject] [verb] [object].
✅ GOOD (clear triples):
- HubSpot CRM syncs contact and company data.
- Lead Scoring assigns priority based on engagement.
- Workflows trigger email sequences from events.
❌ BAD (vague, no clear entity):
- The system helps with various tasks.
- It can do many things for users.
- This improves overall performance.
For every key claim, ask:
Every substantive paragraph should follow this structure:
[Feature] helps [User/Role] with [Job].
It [mechanism/inputs] to [process].
Teams see [metric/result] in [timeframe/context].
Triples:
- [Subject] [verb] [object].
- [Subject] [verb] [object].
Lead Scoring helps sales teams prioritize prospects. It combines
page views, email engagement, and firmographic data to assign a
numeric score, then auto-enrolls high scorers into follow-up
sequences. Reps focus on qualified accounts and book 40% more
meetings.
- Lead Scoring assigns scores from engagement data.
- High scorers trigger automated follow-up sequences.
Goal: Define the category, tie it to your product, earn citations.
# What is [Category]? — [1-2 line value promise]
## What is [Category]? (~80 words)
[Plain definition in everyday language. Name adjacent entities.]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
## Why it matters now (~60 words)
[One paragraph. Mention shift to answers over links; tie to buyer outcomes.]
## How to apply it (3-5 bullets)
- [Action 1]
- [Action 2]
- [Action 3]
## FAQ
**Q: [Question]?**
A: [~1 sentence answer]
**Q: [Question]?**
A: [~1 sentence answer]
**Q: [Question]?**
A: [~1 sentence answer]
---
**Links:** [Category hub] | [Product/Feature] | [Credible source 1] | [Credible source 2]
**CTA:** [Demo / Template / Signup]
**Schema:** Article + FAQ. Author + last updated.
Goal: Clarify capability, fit, and next step; reinforce category linkage.
# [Product/Feature] — [Outcome in 3-5 words]
**[Product/Feature] enables [Outcome] for [User/Role].**
## [Feature Area 1]
[2-4 sentences using Feature → How → Outcome]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
## [Feature Area 2]
[2-4 sentences using Feature → How → Outcome]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
## [Feature Area 3]
[2-4 sentences using Feature → How → Outcome]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
## FAQ
**Q: [Question]?**
A: [~1 sentence]
**Q: [Question]?**
A: [~1 sentence]
**Q: [Question]?**
A: [~1 sentence]
---
**Links:** Back to [Category Explainer] | Forward to [Demo/Trial]
**Proof:** [Benchmark/Analyst/Customer proof]
**Notes:** Requirements/limits (pricing tier, integrations)
**Schema:** Article + FAQ. Author + last updated.
Goal: Help readers decide with clear criteria; earn fair citations.
# [Product] vs. [Alternative] — Which fits [Use case]?
## Comparison Table
| Criterion | [Product] | [Alt A] | [Alt B] | Source |
|-----------|-----------|---------|---------|--------|
| [Feature/Limit] | [value] | [value] | [value] | [link] |
| [Requirement] | [value] | [value] | [value] | [link] |
| [Best for] | [value] | [value] | [value] | [link] |
*Source-back all claims in the table or footnotes.*
## Fit Statements
1. **[Product]** suits [Team/Use case] when [Condition].
2. **[Alt A]** fits [Team/Use case] when [Condition].
3. **[Alt B]** works for [Team/Use case] when [Condition].
---
**Links:** [Category Explainer] | [Feature pages]
**CTA:** [Try / Demo / Talk to Sales]
**Schema:** Article. Author + last updated.
Goal: Connect product to outcomes in a context readers recognize.
# [Industry/Use Case] — [Outcome KPI]
**Teams reduce [Metric] by [Y%] in [Timeframe].**
## Mini Case Study
[Company/Role] used [Product/Feature] to [Action], resulting in
[Metric improvement] within [Timeframe].
## How It Works
### [Feature 1]
[Feature → How → Outcome paragraph]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
### [Feature 2]
[Feature → How → Outcome paragraph]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
## Who Uses This
**Roles:** [Role 1], [Role 2], [Role 3]
**Workflows:** [Workflow 1], [Workflow 2]
**Integrations:** [Integration 1], [Integration 2]
---
**Links:** [Product/Feature pages] | [Supporting blog]
**CTA:** [Industry template / Demo variant]
**Schema:** Article. Author + last updated.
Goal: Add information gain and support your content cluster.
# [Topic] — [Specific promise]
## Opening (~60-80 words)
[State the problem. Align terminology with Category Explainer. Preview outcome.]
## [Section 1 Heading] (~120 words max)
[Feature → How → Outcome]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
**Internal link:** [Related page]
**External citation:** [Credible source]
## [Section 2 Heading] (~120 words max)
[Feature → How → Outcome]
Triples:
1. [Subject] [verb] [object].
2. [Subject] [verb] [object].
**Internal link:** [Related page]
**External citation:** [Credible source]
## Key Takeaway
[1-2 lines summarizing the main point]
**CTA:** [Single primary action]
---
**Schema:** Article. Author + last updated.
| Element | Implementation |
|---|---|
| Schema markup | Article + FAQ (if FAQ exists) |
| Author attribution | Name, bio, credentials, photo |
| Last updated date | Visible, machine-readable |
| Internal links | 3-5 per page (upstream/downstream) |
| External citations | 1-2 credible sources per section |
| Single CTA | Demo, template, or signup (repeated once near end) |
<!-- Article Schema -->
<script type="application/ld+json">
{
"@context": "https://schema.org",
"@type": "Article",
"headline": "[Page Title]",
"author": {
"@type": "Person",
"name": "[Author Name]",
"url": "[Author Bio URL]"
},
"datePublished": "[ISO Date]",
"dateModified": "[ISO Date]",
"publisher": {
"@type": "Organization",
"name": "[Company]",
"logo": "[Logo URL]"
}
}
</script>
<!-- FAQ Schema (if FAQ section exists) -->
<script type="application/ld+json">
{
"@context": "https://schema.org",
"@type": "FAQPage",
"mainEntity": [
{
"@type": "Question",
"name": "[Question 1]",
"acceptedAnswer": {
"@type": "Answer",
"text": "[Answer 1]"
}
},
{
"@type": "Question",
"name": "[Question 2]",
"acceptedAnswer": {
"@type": "Answer",
"text": "[Answer 2]"
}
}
]
}
</script>
┌─────────────────────┐
│ Category Explainer │
│ "What is AEO?" │
└──────────┬──────────┘
│
┌──────────────────────┼──────────────────────┐
│ │ │
▼ ▼ ▼
┌───────────────┐ ┌───────────────┐ ┌───────────────┐
│ Product Page │ │ Product Page │ │ Product Page │
│ "Feature A" │ │ "Feature B" │ │ "Feature C" │
└───────┬───────┘ └───────┬───────┘ └───────┬───────┘
│ │ │
▼ ▼ ▼
┌───────────────┐ ┌───────────────┐ ┌───────────────┐
│ Blog Post │ │ Use Case │ │ Comparison │
│ (supports) │ │ (industry) │ │ (vs. alt) │
└───────────────┘ └───────────────┘ └───────────────┘
Linking Rules:
| Metric | How to Track |
|---|---|
| AI citations | Manual checks in ChatGPT, Claude, Perplexity |
| Brand mentions in AI | Search "[brand] + [category]" in AI engines |
| Share of answer | How often you're cited vs competitors |
| LLM traffic | GA4 referral from chatgpt.com, claude.ai, perplexity.ai |
| Impressions-to-clicks gap | GSC impressions vs actual clicks |
| Mistake | Fix |
|---|---|
| Vague language ("it helps with things") | Use specific entities and triples |
| No clear structure | Use Feature → How → Outcome |
| Missing schema | Add Article + FAQ schema |
| No author attribution | Add author name, bio, credentials |
| Generic content | Add original data, examples, POV |
| Orphan pages | Link into content cluster |
| Fence-sitting ("it depends") | Take a clear position |
| No external citations | Add 1-2 credible sources per section |
| Aspect | Traditional SEO | AEO |
|---|---|---|
| Goal | Rank on page 1 | Get cited in AI answers |
| Success metric | Click-through rate | Share of answer |
| Content focus | Keywords | Entities + facts |
| Structure | Headers for scanning | Triples for extraction |
| Links | Backlinks for authority | Citations for consensus |
| Updates | Periodic refresh | Continuous accuracy |
[Entity/Product] [active verb] [concrete object/result].
[Feature] helps [User] with [Job].
It [mechanism] to [process].
Teams see [result] in [timeframe].