A professional, applied manual for designing, building, and operationalizing knowledge graphs that materially improve LLM-driven systems. This book provides the end-to-end technical roadmap data ingestion, entity/relation extraction, schema design, storage, querying, and LLM integration required to create explainable, high-precision hybrid AI systems.
What’s inside- Fundamentals of graph modeling, schema & ontology design, and graph theory essentials.
- Practical pipelines for extracting structured facts from unstructured text using NLP and embeddings.
- Integration patterns for Neo4j/RDF/graph stores, vector databases, and RAG architectures.
- Querying and analytics: SPARQL, Cypher, and hybrid retrieval approaches.
- Performance optimization, versioning, governance, and visualization techniques.
- Domain case studies (healthcare, finance, enterprise search) demonstrating measurable ROI.
Key topics;knowledge graphs, graph databases, ontology design, entity extraction, SPARQL, Cypher, RAG, embeddings, semantic search, graph-augmented LLMs, information retrieval, data governance.
Who should read thisData engineers, knowledge engineers, ML/AI practitioners, and technical product managers tasked with building authoritative retrieval systems or explainable AI features. A working knowledge of databases and basic NLP is helpful.
Deliverables & format- Reproducible projects that convert raw text into production-ready graph assets.
- Query recipes, integration blueprints, and operational guidelines for graph maintenance and scaling.