Course Details
Topic 1 Neo4j Fundamentals
- Basic graph theory and the elements that make a graph
- Graph structures
- Common graph database use cases
- Elements of a Neo4j graph database
- How Neo4j implements index-free-adjacency
- The Movie graph’s data model and data
Topic 2 Cypher Fundamentals
- Reading Data from Neo4j
- Introduction to Cypher
- Retrieving Nodes
- Finding Relationships
- Traversing Relationships
- Filtering Queries
- Writing Data to Neo4j
- Creating Nodes
- Creating a Node
- Creating Relationships
- Updating Properties
- Adding Properties to a Movie
- Merge Processing
- Deleting Data
Topic 3 Importing CSV Data into Neo4j
- Preparing for importing data
- Using the Neo4j Data Importer
- Post-processing for imported data
- Using Cypher to import data
Topic 4 Graph Data Modeling Fundamentals
- What is a graph data model?
- Modeling nodes and creating nodes for an instance model.
- Modeling relationships and creating relationships for an instance model.
- Testing the graph data model.
- Why refactor a graph data model and how labels help.
- Eliminating duplicate data in the graph.
- Using specific relationship types.
- Adding intermediate nodes.
Topic 5 Intermediate Cypher Queries
- Filtering queries
- Controlling results returned
- Working with Cypher data
- Graph traversal
- Pipelining queries
- Subqueries
- Using parameters
Topic 6 Neo4j Graph Data Science
- Basics for how Neo4j GDS works to enable analytics
- How to install GDS and the different licensing options
- Graph projection patterns
Topic 7 Neo4j Applications with Python
- The lifecycle of the Neo4j Driver and how it relates to your application
- How to install and instantiate the Neo4j Python Driver to your Python project
- How read and write transactions work with Neo4j
- Best practices on how to use Neo4j within your Python project.
Course Info
Promotion Code
Your will get 10% discount voucher for 2nd course onwards if you write us a Google review.
Minimum Entry Requirement
Knowledge and Skills
- Able to operate using computer functions
- Minimum 3 GCE ‘O’ Levels Passes including English or WPL Level 5 (Average of Reading, Listening, Speaking & Writing Scores)
Attitude
- Positive Learning Attitude
- Enthusiastic Learner
Experience
- Minimum of 1 year of working experience.
Target Age Group: 18-65 years old
Minimum Software/Hardware Requirement
Software:
TBD
Hardware: Window or Mac Laptops
Job Roles
- Database Administrator (specializing in graph databases)
- Data Scientist (working with graph data)
- Neo4j Developer
- Graph Database Consultant
- Data Engineer (focusing on graph technologies)
- Data Architect (implementing graph solutions)
- Backend Developer (integrating graph databases)
- Graph Data Analyst
- Machine Learning Engineer (using graph-based algorithms)
- Data Integration Specialist (for graph databases)
- Recommendation System Developer
- Research Scientist (working on graph theory)
- Social Network Analyst
- Fraud Detection Specialist (using graph patterns)
- Bioinformatics Researcher (using graph databases).
Trainers
Marcel Leng: Marcel Leng is a ACTA certified. Marcel graduated with majors in Applied Mathematics and Physics from the National University of Singapore.
His core specialisation skills are R, Python, Machine Learning, Statistical Analysis, and Data Visualisation in Tableau. His current interests include Machine Learning, Deep Learning, Artificial Intelligence, Internet of Things, Robotics and Programming.
Quah Chee Yong: Quah Chee Yong is a ACTA trainer. Chee Yong is an experienced professional who has held various Technical, Operations and Commercial positions across several industries A firm believer that AI can create a better world, he has equipped himself with the Knowledge and Skills in the fields of Data Science, Machine Learning, Deep Learning and Cloud Deployment He has a deep passion for training & facilitating and is currently a Singapore WSQ certified Adult Educator. He particularly enjoys the interactive engagements with his fellow trainers and learners.