Ontology & Knowledge Graph Cookbook: From Semantic Web to GraphRAG in 9 Weeks
A 9-week curriculum from RDF/OWL basics to Neo4j, LLM integration, and GraphRAG.

Ontology & Knowledge Graph Cookbook: From Semantic Web to GraphRAG in 9 Weeks
Curious about what ontology is, how to build Knowledge Graphs, and how to implement the trending GraphRAG? This Cookbook has the answers. Master RDF/OWL to Neo4j and LLM integration in a 9-week curriculum.
Curriculum Overview
Phase 1: Semantic Modeling Foundation (Week 1-3)
- History of knowledge representation and upper ontologies
- RDF/RDFS fundamentals and triple models
- OWL, class hierarchies, constraints, and inference
Phase 2: Knowledge Graph Construction (Week 4-5)
- Named Entity Recognition and relationship extraction
- LLM-based entity resolution
- Neo4j and Labeled Property Graphs
- Cypher query optimization
Phase 3: LLM Integration (Week 6-7)
- Hybrid vector-graph search
- Subgraph context injection
- Ontology-guided action planning
- Multi-agent collaboration
Phase 4: Production Deployment (Week 8-9)
- Domain-specific case studies (healthcare, legal, finance)
- Graph visualization and API servers
- Performance optimization
Key Features
- Hands-on movie recommendation project
- Using Protege, rdflib, Neo4j
- Bilingual support (Korean/English)
- Real-world domain applications
Who Is This For?
- Developers interested in Knowledge Graphs
- Those wanting to improve RAG performance
- Beginners to ontology
- Anyone wanting to learn graph databases
Get Started
Enter the world of semantic web and Knowledge Graphs with this free Cookbook.
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