Graph data representation delivers strong capabilities in customer profiling, intelligence, security and many other fields - everywhere where you can find interconnected or cross-referenced entities. And in the field of AI, progressing from Retrieval-Augmented Generation (GAR) to GraphRAG (Microsoft: Welcome to GraphRAG )can bring performance of a Large Language Model (like GPT-5) over the threshold of practical usability.
There are good online courses on using different graph databases, that are recommended for technical staff involved. However before the technical staff can start coding, everyone including higher management, Business Architects & Analysts, and in some cases even end-users, together with the technical staff, need to learn to see data as graphs.
This course is designed to bring the teams together, give them common understanding and common language, ensuring effective project definition, analysis and progress through development.
While a course is always customised to your needs, the following is used as the starting point for custiomisation:
Attendance of everyone is expected, including management/executives
Introduction to graph data
Lab: Identifying graphs in data
Graph analytics overview
Lab: experimenting with graph analytics
Attendance of everyone is expected, management/executives optional
Graph database schema (customised to fit the client's platform)
Lab: modelling
Mostly for technical staff, and hands-on analysts.
Introduction to query language: navigation and pattern-matching
Lab: running basic queries
Defining models for queries
Lab: review and optimise the model produced on Day 2. Write queries.
Technical staff only. Use the database of choice
Whichever database you are going to use. There are two choices: you either use Neo4j, or one of the Gremlin-compatible databases, most of which are open source. You will advise us on your choice of database, we'll customised the project accordingly