Course Level
Master Degree (By Coursework)
CRICOS
102711J
Master of Data Analytics
Imagine a career in an industry so new it
Campus | Duration | Fees | ATAR |
---|---|---|---|
Melbourne | Full-time - 2 years | N/A | N/A |
Sydney | Full-time - 2 years | N/A | N/A |
Structure
The Master of Data Analytics requires 9 core units and three electives from the IoT Data Analytics or Cloud Networks. A full time study load is 60 credit points per trimester. Successful completion of the course requires 240 credit points, made up of 12 units of 20 credit points.
Subjects
- AIM100 Academic Integrity Module
- MDA511 Mathematical and Statistical Methods
- MDA512 Data Science
- MDA513 ICT Practices
- MDA521 Data Security and Privacy
- MDA522 Artificial Intelligence (Prerequisite: MDA512 Data Science)
- MDA611 Predictive Analytics (Prerequisite: MDA511 Mathematical and Statistical Methods)
- MDA691 Project Management and Research Methods (Prerequisite: 4 Core units)
- MDA621 Software Practice for Big Data Analytics (Prerequisite: MDA512 Data Science)
- MDA692 Data Analytics Capstone Project (Prerequisite: MDA691 Project Management and Research Methods)
- MDA541 IOT and Sensor Networks
- MDA641 Smart Environments (Prerequisite: MDA541 IOT and Sensor Networks)
- MDA642 IoT Data Analytics Platforms (Prerequisite: MDA541 IOT and Sensor Networks)
- MN503 Overview of Internetworking
- ME605 Cloud Engineering (Prerequisite: MN503 Overview of Internetworking)
- MN622 Software Defined Networking (Prerequisite: MN503 Overview of Internetworking)
Entry requirements
- Successful completion of Australian Bachelor degree or equivalent.
- For the cognate stream: An Australian bachelor degree or equivalent in Information Technology or a related discipline such as computer science, software engineering, computer engineering or networking.
- For the non-cognate stream: An Australian bachelor degree or equivalent in any other discipline.