Without prior knowledge about victoria university data science, it can be difficult to grasp or to wrap your head around victoria university data science. Obtaining the right information may also prove difficult.
Do not worry; reading this article will put your mind at ease. Continue reading to learn more about master of data science victoria university of wellington, ryerson university data science, master of data science uoa, university of victoria data science fees and university of victoria masters in computer science. You can also find up to date information on victoria university data science in related articles on Collegelearners.
Interpret the rapidly changing world
Fifteen years ago, the role of data scientist was unheard of. Today, it’s an established role in business and government departments around the world. The nature of the role is constantly shifting as data sources, software tools, and techniques change. Equip yourself with the skills and knowledge to move and adapt to these changes.
Our graduates leave with an advanced understanding of techniques in data science, including machine learning and statistical methods and their uses in the world of big data. You will be able to critically analyse data requirements and sources in a variety of areas of application from the sciences, humanities, and social sciences to business and government.
Study Data Science
Master of Data Science
Duration
5-6 trimesters
2 years
Complete
240 points
11–15 courses
Location
Kelburn campus, Wellington
Schedule
Daytime lectures
Type
Coursework, practicum, and research project
Key dates
- 2022, Trimester 1: Apply by 20 Jan 2022 to start studying 28 Feb 2022
Estimated domestic fees for 2021
NZ$9,996 per year
Approximately‐ Choose preferred currency ‐Afghan afghaniAlbanian lekAlgerian dinarAngolan kwanzaArgentine pesoArmenian dramAruban florinAustralian dollarAzerbaijani manatBahamian dollarBahraini dinarBangladeshi takaBarbadian dollarBelize dollarBermudian dollarBhutanese ngultrumBolivian bolivianoBosnia and Herzegovina convertible markBotswana pulaBrazilian realBritish poundBrunei dollarBulgarian levBurmese kyatBurundian francCambodian rielCanadian dollarCape Verdean escudoCayman Islands dollarCentral African CFA francCFP francChilean pesoChinese yuanColombian pesoComorian francCongolese francCosta Rican colónCroatian kunaCuban convertible pesoCzech korunaDanish kroneDjiboutian francDominican pesoEast Caribbean dollarEgyptian poundEritrean nakfaEthiopian birrEuroFalkland Islands poundFijian dollarGambian dalasiGeorgian LariGhanaian cediGibraltar poundGuatemalan quetzalGuinean francGuyanese dollarHaitian gourdeHonduran lempiraHong Kong dollarHungarian forintIcelandic krónaIndian rupeeIndonesian rupiahIranian rialIraqi dinarIsraeli new sheqelJamaican dollarJapanese yenJordanian dinarKazakhstani tengeKenyan shillingKuwaiti dinarKyrgyzstani somLao kipLebanese poundLesotho lotiLiberian dollarLibyan dinarMacanese patacaMacedonian denarMalagasy ariaryMalawian kwachaMalaysian ringgitMaldivian rufiyaaMauritanian ouguiyaMauritian rupeeMexican pesoMoldovan leuMongolian tögrögMoroccan dirhamMozambican meticalNamibian dollarNepalese rupeeNetherlands Antillean guilderNew Belarusian rubleNew Taiwan dollarNew Zealand dollarNicaraguan córdobaNigerian nairaNorth Korean wonNorwegian kroneOmani rialPakistani rupeePanamanian balboaPapua New Guinean kinaParaguayan guaraníPeruvian solPhilippine pesoPolish złotyQatari riyalRomanian leuRussian rubleRwandan francSaint Helena poundSamoan tālāSaudi riyalSerbian dinarSeychellois rupeeSierra Leonean leoneSingapore DollarSolomon Islands dollarSomali shillingSouth African randSouth Korean wonSouth Sudanese poundSri Lankan rupeeSudanese poundSurinamese dollarSwazi lilangeniSwedish kronaSwiss francSyrian poundSão Tomé and Príncipe dobraTajikistani somoniTanzanian shillingThai bahtTongan paʻangaTrinidad and Tobago dollarTunisian dinarTurkish liraTurkmenistan manatUgandan shillingUkrainian hryvniaUnited Arab Emirates dirhamUnited States dollarUruguayan pesoUzbekistani so’mVanuatu vatuVenezuelan bolívarVietnamese đồngWest African CFA francYemeni rialZambian kwachaNZ$9,995.80 at today’s exchange rate*
Entry
A Bachelor’s degree with a major in Data Science, Computer Science, or Statistics, with an average grade of B+ or better in courses in those subjects. Candidates with a major in Data Science or a double major in Computer Science and Statistics may be exempted Part 1 (60 points) and can complete the degree in 3 trimesters (12 months).
Contribute to society
Data Science can assist equitable social and economic outcomes through the interpretation and dissemination of information, enabling communities to learn about themselves and others.
You’ll learn about the unique characteristics of working with data collected by, for, and about Māori, and how the principles of the Treaty of Waitangi apply: in particular, the considerations of Māori sovereignty in data collection, transfer, storage, and publication.
You have to remember the people behind it and what you’re doing it for. There’s always a story behind the data—it’s not just numbers.
Nikki Wilkinson
Data Scientist at Dragonfly Data Science
Gain practical experience
Demand for data scientists in the commercial and state sectors is rapidly growing, and the role of data scientist has been consistently ranked among the top jobs of recent years.
The MDataSc has a professional focus and involves you completing a five-week work placement with one of our industry partners. These partners include a range of data science consultancies, government departments and agencies, and private companies. Here, you will have the opportunity to apply what you have learned to a professional environment, developing your practical competence and honing your professional skills.
The practicum placement allowed me to gain real-world experience and apply my studies to a project that was relevant at the time.
Flynn Owen
Junior Data Scientist at Spotlight Reporting
Research-led
The Master’s programme is grounded in academic staff research expertise in the areas of statistics, data analysis, and machine learning. During your studies you’ll undertake a research project in a real-world setting and gain valuable experience working alongside experts in the Wellington Faculties of Science and Engineering.
Degree structure
The 240-point MDataSc comprises two parts.
In Part 1 (60 points), you will take courses that address fundamental techniques of data science, statistical methods, and machine learning.
Part 2 (180 points) includes a compulsory core of statistical methods and computational techniques; a research component made up of a research preparation course and an individual research project; and a five-week workplace practicum.
Course assessments include a combination of assignments, group work projects, oral presentations, a written research project report, term tests, written examinations, workplace reports, and self-reflections.
Find out more about the full range of postgraduate qualifications in the area of Data Science.
Find out more about the full range of postgraduate qualifications in the area of Data Science.Postgraduate Data Science
Scholarships
You can look for other scholarships based on your level of study, subject area, and background.
Entry requirements
To be accepted into this programme you will need:
- A Bachelor’s degree with a major in Data Science, Computer Science, or Statistics with an average grade of B+ or better in the courses for those subjects.
- To be accepted by the head of school or nominee as capable of proceeding with the proposed course of study.
Important information
- With the approval of the Associate Dean, candidates with extensive practical, professional, or scholarly experience may gain entry to the programme without a Bachelor’s degree with the required major and grade average.
- If you want to enrol in this programme but don’t meet some of the entry requirements, you should contact the programme director or administrator to discuss your options.
- For more programme details and requirements, see the University Calendar. It’s an annual publication and an authoritative source for planning your degree.
Programme requirements
For this programme you’ll need to:
- Complete 240 points:
- Part 1—Complete 60 points in:
- Machine Learning Tools and Techniques (AIML 421)
- Practical Data Science (Practical Data Science (DATA 471))
- Programming and Data Management (Data Management and Programming (DATA 472))
- Statistical Modelling for Data Science (Statistical Modelling for Data Science (DATA 473))
- Simulation and Stochastic Models (Simulation & Stochastic Models (DATA 474))
- Part 2—Complete 180 points in:
- Big Data (AIML 427)
- One course from:
- Research Preparation for Data Science (Research Preparation for Data Science (DATA 480))
- Either Research Project (15 points) (Research Project (DATA 487)) or Research Project (30 points) (Research Project (DATA 489))
- Advanced Techniques for Data Science (Advanced Techniques in Data Science (DATA 501))
- Data Science Practicum (Data Science Practicum (DATA 581))
- Computational Statistics (STAT 432)
- Generalised Linear Models (STAT 438)
- 30 or 45 further points from:
Important information
- Students will have an individual course of study approved, appropriate to their level of preparation.
- A candidate who has completed a Bachelor’s degree in Data Science or a double major in Computer Science and Statistics shall be exempted from Part 1 and admitted directly to Part 2.
- The Head of School of the School of Mathematics and Statistics may exempt a student from any 400-level DATA course in Part 1 for which the student has mastered the material through prior study.
- The Head of School of the School of Mathematics and Statistics may approve the substitution of DATA 588 for DATA 487 or DATA 581.
- The MDataSc may be awarded with Distinction or Merit as described in sections 20 and 22 of the Personal Courses of Study Regulations.