Once entities are extracted, scored, and disambiguated via NLP, Google doesn’t just index them—it contextualizes them across:
This is not keyword-based indexing. It is entity-based search understanding, where meaning, relationships, and contextual alignment matter more than match counts.
Google uses structured formats (e.g., schema.org) and NLP outputs to assign each entity a type:
| Term | Classified As |
|---|---|
| Sundar Pichai | Person |
| Organization | |
| iPhone 16 | Product |
| Washington | Ambiguous → Location / Person / Event |
After extraction, entities are ranked by:
For example, in an article about Sundar Pichai, entities like Alphabet, Google, India, and CEO are tightly clustered and heavily weighted.
Once identified and scored, entities are mapped to nodes in Google’s Knowledge Graph, a massive interconnected network with:
| Entity | Attribute | Value |
|---|---|---|
| Sundar Pichai | Title | CEO of Alphabet |
| Mount Everest | Height | 8,848 meters |
| Tesla | Founder | Elon Musk |
| Washington | Located In | USA |
This creates triples or Entity-Attribute-Value (EAV) data structures that power search panels, featured snippets, and zero-click answers.
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Entities extracted from your content appear in:
Example: Searching “Sundar Pichai” shows an About panel with connected data (CEO of Alphabet, Indian-American, Born in Madurai, etc.) pulled from multiple sources like Wikipedia, Crunchbase, and your site—if properly marked up.
Google uses context to disambiguate homonyms:
| Term | Contextual Clue | Interpreted As |
|---|---|---|
| Washington | “White House” nearby | Washington, D.C. |
| Apple | “iPhone 16 Launch” | Apple Inc. |
| Jordan | “NBA Finals” | Michael Jordan (Person) |
This is done using models like:
Google uses multi-modal transformers like MUM (Multitask Unified Model) and RAG to:
Entities don’t exist in isolation—they are connected. This is called entity relationship modeling.
| Entity A | Relationship | Entity B |
|---|---|---|
| Sundar Pichai | CEO of | Alphabet |
| Alphabet | Owns | |
| Developed | Android | |
| Android | Competes With | iOS |
These connections are stored as graphs and used to:
The newest phase is RAG, a hybrid of:
For example: Searching “Washington Monument nearest coffee shop” → pulls location data + business listings + context → generates a result set.
| Concept | SEO Impact |
|---|---|
| Entities in Content | Improve indexing, ranking, and visibility |
| Knowledge Graph Linking | Enables Knowledge Panels, Snippets, and Visual SERPs |
| Structured Data Markup | Helps Google classify entities faster and more accurately |
| Salience & Sentiment | Influence snippet eligibility and query match precision |
| RAG & MUM | Power conversational and voice search |
“Google is not a search engine. It’s a knowledge engine.”
To align with Google’s evolution, your content must move from keyword matching to entity modeling.
So, you’re no longer writing for users alone—you’re also educating machines, one semantic structure at a time.
In the next part 22: How to Help Google Find Entities on Your Content Page
Disclaimer: This [embedded] video is recorded in Bengali Language. You can watch with auto-generated English Subtitle (CC) by YouTube. It may have some errors in words and spelling. We are not accountable for it.
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