Overview
The Applied Data Science programme from University of Canterbury will equip you with the skills to identify and describe data trends using statistics and specialised software, helping you drive success and enhance productivity.
Key Facts
In our rapidly changing world, data is constantly being captured, stored, and shared. Understanding and using this vast information effectively can drive productivity, improve efficiency, and support strong decision-making.
The Applied Data Science programme from University of Canterbury equips you with in-demand skills in data science and management, helping you stand out with applied expertise, technical know-how, and analytical capability. You'll gain a broad understanding of data science principles, learn to use software tools to track and describe data trends, and develop essential analytical skills — all in a fast-tracked timeframe.
Programme Structure
Courses include:
- Data Science
- Computer Programming
- Data Management
- Scalable Data Science
- Big Data
Key information
Duration
- Full-time
- 12 months
- Part-time
- 24 months
Start dates & application deadlines
- StartingApplication deadline not specified.
- StartingApplication deadline not specified.
Language
Prepare for Your English Test
AI-powered IELTS feedback. Clear, actionable, and tailored to boost your writing & speaking score. No credit card or upfront payment required.
- Trusted by 300k learners
- 98 accuracy using real exam data
- 4.9/5 student rating
Credits
Delivered
Campus Location
- Christchurch, New Zealand
Disciplines
Data Science & Big Data View 3 other Masters in Data Science & Big Data in New ZealandWhat students do after studying
Academic requirements
We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.
English requirements
Prepare for Your English Test
AI-powered IELTS feedback. Clear, actionable, and tailored to boost your writing & speaking score. No credit card or upfront payment required.
- Trusted by 300k learners
- 98 accuracy using real exam data
- 4.9/5 student rating
Other requirements
General requirements
- Qualified for a university degree in an area which is relevant to data science - e.g. biological sciences, computer science, digital humanities, economics, environmental science, finance, geography, geology, mathematics, physics, psychology, statistics, or any other relevant degree subject to approval of the Amo Matua, Pūtaiao | Executive Dean of Science or delegate; and
- Passed 90 points in relevant 300-level courses with at least a B Grade Point Average; and
- Been approved as a student for the degree by the Amo Matua, Pūtaiao | Executive Dean of Science or delegate; and
- Met any other prerequisites specified in the Regulations for the Postgraduate Diploma in Applied Data Science.
Tuition Fees
-
International Applies to you
Applies to youNon-residents5175 NZD / module≈ 5175 NZD / module -
Domestic Applies to you
Applies to youCitizens or residents1176 NZD / module≈ 1176 NZD / module
Additional Details
- Domestic learners
- International learners
Funding
In order for us to give you accurate scholarship information, we ask that you please confirm a few details and create an account with us.
Scholarships Information
Below you will find Master's scholarship opportunities for Applied Data Science.
Available Scholarships
You are eligible to apply for these scholarships but a selection process will still be applied by the provider.
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility