Data Science and Analytics MSc

Year of entry

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Start date
September 2024
Delivery type
On campus
Duration
12 months full time
Entry requirements
A bachelor degree with a high 2:1 (hons) in a subject containing a substantial mathematical, statistical and/or computing component. All your key modules should have strong grades (mainly firsts with no key marks below 2:1).
Full entry requirements
English language requirements
IELTS 6.5 overall, with no less than 6.0 in all components
UK fees
£14,000 (Total)
International fees
£31,750 (Total)

Course overview

Students in a computer lab looking at data visualisations

We’re surrounded by data. The variety and amount we collect and store grows every day, from the simplest of retail transactions to the complex and intimate medical records of millions.

There is an increasing demand for people who can manage, control and provide insight into the way data is used. These individuals require an understanding of computer science and mathematics, as well as a familiarity with the data needs and processes of a number of different areas, including healthcare, business, government and the environment.

Our Data Science and Analytics Masters degree offers you the opportunity to develop a range of relevant skills including:

  • analysing structured and unstructured data
  • analysing large datasets
  • critically evaluating results in context
  • getting insights from data

The course combines expertise from the Schools of Computing, Geography and Mathematics with that of Leeds University Business School.

This collaboration allows you to benefit from a range of data science perspectives and applications, allowing you to tailor the course to match your own career ambitions.

Why study at Leeds:

  • Our globally-renowned research conducted right here on campus feeds directly into the course, shaping your learning with the latest thinking in areas such as probability and financial mathematics, modern applied statistics and analysis.
  • Benefit from our School’s close links with organisations like Leeds Institute for Data Analytics, Leeds Institute for Fluid Dynamics and the Alan Turing Institute, the UK’s national institute for data science and artificial intelligence.
  • Advance your knowledge and skills in key areas of data science, both theoretically and practically.
  • Tailor the degree to suit your specific interests with a broad selection of optional modules to choose from such as machine learning, programming and GIS.
  • Put theory into practice by conducting a project which focuses on a real-world problem, giving you the chance to apply the knowledge acquired throughout the course and demonstrate independent research skills necessary for a professional or academic career.
  • Access excellent teaching facilities and computing equipment throughout the school, complemented by social areas and communal problem-solving spaces.
  • Experience expert theoretical and practical teaching delivered by a programme team made up of academics from the Schools of Mathematics, Computing, Geography and Business.

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Study online

We also offer a fully online Data Science (Statistics) MSc, covering an extensive range of in-demand data skills such as data acquisition, data preparation, data wrangling, modelling and analysis, and how to deal with missing data.

Course details

The course will equip you with the knowledge and skills you need to meet the challenges of data science in the modern world.

You can choose modules from the School of Mathematics, the School of Computing, the School of Geography and Leeds University Business School.

Mathematics modules are available for students who are not from a mathematics/statistics background, while computing modules will be suitable for students on this programme who are not from a computer science background.

The course will introduce you to different perspectives on data science, including the mathematical and computational underpinnings of the subject and its applications in specific contexts.

Project work

The dissertation gives you the opportunity to demonstrate independent research skills necessary for a professional or academic career. It allows you to deepen your knowledge and understanding of practical issues whilst applying skills acquired throughout the programme.

The list of topics to choose for your project is wide-ranging, dealing with a real-world problem. It will typically require a literature review, project planning, data collection, analysis and interpretation. Many recent projects have involved co-supervision with the Leeds Clinical Trials Unit, Leeds Institute for Data Analytics (LIDA) and the MET office.

It is possible to involve an industrial partner in your dissertation, subject to the approval of the programme manager. We would expect students interested in partnering with industry to have an existing connection with their partner of choice.

Course structure

The list shown below represents typical modules/components studied and may change from time to time. Read more in our terms and conditions.

For more information and a full list of typical modules available on this course, please read Data Science and Analytics MSc in the course catalogue

Year 1 compulsory modules

Module Name Credits
Data Science 15
Learning Skills through Case Studies 15
Dissertation in Data Science and Analytics 60

Year 1 optional modules (selection of typical options shown below)

Module Name Credits
Information Visualization 10
Knowledge Representation and Reasoning 15
Machine Learning 15
Deep Learning 15
Programming for Data Science 15
Data Mining and Text Analytics 15
Geographic Data Visualisation & Analysis 15
Geodemographics and Neighbourhood Analysis 15
Big Data and Consumer Analytics 15
Predictive Analytics 15
Applied GIS and Retail Modelling 15
Business Analytics and Decision Science 15
Forecasting and Advanced Business Analytics 15
Machine Learning in Practice 15
Mixed Models 10
Linear Regression and Robustness 15
Statistical Theory 15
Time Series 10
Generalised Linear Models 10
Mixed Models with Medical Applications 15
Linear Regression, Robustness and Smoothing 20
Statistical Theory and Methods 15
Statistical Learning 15
Multivariate Methods 15
Multivariate and Cluster Analysis 15
Time Series and Spectral Analysis 15
Generalised Linear and Additive Models 15
Statistical Computing 15
Transport Data Science 15

Want to find out more about your modules?

Take a look at the Data Science and Analytics module descriptions for more detail on what you will study.

Learning and teaching

Teaching is through lectures, tutorials, seminars and supervised research projects.

Specialist facilities

Extensive use is made of IT and a wide range of materials are available to enhance and extend the material taught formally.

Programme team

Programme leader Dr Luisa Cutillo's current research interests are related to networks and networks applications. In particular, she is interested in studying and validating networks structures and in biomedical networks application. Additionally, Dr Cutillo was part of a team that organised a COST action event, Women in Networks (WiN). It brought together women from around the world working in networks modelling and applications and was hosted at the School of Mathematics.

On this course you’ll be taught by our expert academics, from lecturers through to professors. You may also be taught by industry professionals with years of experience, as well as trained postgraduate researchers, connecting you to some of the brightest minds on campus.

Assessment

Assessment is by a range of methods, including formal examination, assignments, coursework, reports and practical activities.

Applying

Entry requirements

To be considered you will need to provide evidence of:

  • A bachelor degree with a first or high 2:1 (Hons) in a subject containing a substantial mathematical, statistical and/or computing component.
  • All your key modules should have strong grades (mainly firsts with no key marks below 2:1).
  • You must provide a list of the type and level of maths/computing modules that you have studied if this is not obvious from your transcript.

We do not normally accept degrees in accountancy or finance for this MSc.

Please check your marks using international equivalent qualifications. We will ask for further detailed module information if these are not clear on your transcript. For more information, please contact the Admissions Team.

This is an extremely popular MSc and places are limited. You may be interested in applying for these data science and analytics degrees:

English language requirements

IELTS 6.5 overall, with no less than 6.0 in all components. For other English qualifications, read English language equivalent qualifications.

Improve your English

International students who do not meet the English language requirements for this programme may be able to study our postgraduate pre-sessional English course, to help improve your English language level.

This pre-sessional course is designed with a progression route to your degree programme and you’ll learn academic English in the context of your subject area. To find out more, read Language for Science (6 weeks) and Language for Science: General Science (10 weeks)

We also offer online pre-sessionals alongside our on-campus pre-sessionals. Find out more about our six week online pre-sessional.

You can also study pre-sessionals for longer periods – read about our postgraduate pre-sessional English courses.

How to apply

Application deadlines

We operate a staged admissions process for this course with selection deadlines throughout the year.

Please read our Staged Admissions page for full details, including application deadlines and what to include with your application.

Click below to access the University’s online application system and find out more about the application process.

If you're still unsure about the application process, contact the admissions team for help.

Read about visas, immigration and other information in International students. We recommend that international students apply as early as possible to ensure that they have time to apply for their visa.

Admissions policy

University of Leeds Taught Admissions Policy 2024

This course is taught by

School of Mathematics
Leeds University Business School
School of Computing
School of Geography

Contact us

School of Mathematics Admissions Team

Email: maths-msc@leeds.ac.uk
Telephone:

Fees

UK: £14,000 (Total)

International: £31,750 (Total)

Read more about paying fees and charges.

For fees information for international taught postgraduate students, read Masters fees.

Additional cost information

There may be additional costs related to your course or programme of study, or related to being a student at the University of Leeds. Read more on our living costs and budgeting page.

Scholarships and financial support

If you have the talent and drive, we want you to be able to study with us, whatever your financial circumstances. There may be help for students in the form of loans and non-repayable grants from the University and from the government.  Find out more at Masters funding overview.

Career opportunities

There is an increasing demand for individuals who can manage and control the way data is used. These individuals require an understanding of computer science and mathematics as well as a range of sector-specific skills.

The emerging era of ‘big data’ brought about by the digital technology revolution shows no signs of abating. With the modern world producing ever-growing amounts of new information, data scientists will become increasingly important to help governments, businesses, researchers, NGOs and many other organisations make sense of it all.

Plus, the University of Leeds is in the top 10 most targeted universities in the UK by graduate recruiters, according to High Fliers’ The Graduate Market in 2023 report.

Here’s an insight into some of the job positions and organisations previous data science graduates have secured:

  • Product SME, Shell UK
  • Senior Software Engineer, London Stock Exchange Group (LSEG)
  • Data Integration Lead, Stainless Games

Careers support

At Leeds, we help you to prepare for your future from day one. We have a wide range of careers resources — including our award-winning Employability team who are in contact with many employers around the country and advertise placements and jobs. They are also on hand to provide guidance and support, ensuring you are prepared to take your next steps after graduation and get you where you want to be.

  • Employability events — we run a full range of events including careers fairs in specialist areas and across broader industries — all with employers who are actively recruiting for roles.
  • MyCareer system — on your course and after you graduate, you’ll have access to a dedicated careers portal where you can book appointments with our team, get information on careers and see job vacancies and upcoming events.
  • Qualified careers consultants — gain guidance, support and information to help you choose a career path. You’ll have access to 1-2-1 meetings and events to learn how to find employers to target, write your CV and cover letter, research before interviews and brush up on your interview skills.
  • Opportunities at Leeds — there are plenty of exciting opportunities offered by our Leeds University Union, including volunteering and over 300 clubs and societies to get involved in.

Find out more about career support.

Student profile: Aindrila Basu

I felt that the course was well rounded with mathematical as well as computing modules, and therefore I would gain all the skills required to be a Data Scientist.
Find out more about Aindrila Basu's time at Leeds