Taught course

Applied Statistics and Data Science

Institution
University of Liverpool · Department of Mathematical Sciences
Qualifications
MSc

Entry requirements

We accept a 2:2 honours degree from a UK university, or an equivalent academic qualification from a similar non-UK institution. This degree should be in a STEM subject (Science, Technology, Engineering, or Maths) with a significant numerical component.

Months of entry

September

Course content

This programme will equip STEM graduates with the ability to apply methods of statistics and data science to solve complex real-world problems across a broad range of fields, from global health and epidemiology to finance and investment. You will acquire the knowledge and skills required to lead innovation and spearhead change in a data-driven world.

Introduction
Every organisation, in every industry, needs to know how to analyse and translate data into meaningful insights, to drive innovation and positive outcomes. The Applied Statistics and Data Science MSc programme will develop your knowledge and skills to enable you to meet the needs of modern society. The MSc will take you from the foundations of data science, statistical models, and stochastic processes to the mastery of contemporary machine learning methods and programming skills. You will learn how to use powerful statistical and data science methods to create systems capable of extracting compelling insights from big data and predicting outcomes in real-world applications.
In semester two, you will develop specialist knowledge in selected areas of applied statistics and data science by choosing one of the following pathways:
  • Global Health and Epidemiology: This pathway will equip you with a unique set of skills to tackle global heath challenges and optimise responses to epidemiological threats. Modules include Infectious Disease Modelling, Spatial and Structural Heterogeneity in Infectious Disease Modelling, and Statistics for Epidemiology.
  • Machine Learning for Investment Science: This pathway will enable you to employ the power of machine learning to understand how to model, predict, and interpret international financial trends and economic forces. Modules include Quantitative Risk Management, Mathematical Finance, and Machine Learning for Finance.
  • Statistics: This pathway will provide you with a broad understanding of the applications of statistical methods and machine learning, while also offering a deep dive into the mathematical methods of data science. (This pathway is only suitable for entrants holding a BSc in Mathematics, Theoretical Physics, or equivalent.) Modules include Machine Learning for Finance, Statistics for Epidemiology, and Stochastic Theory and Methods in Data Science.
This exciting and stimulating programme is offered by the Department of Mathematical Sciences and delivered by world-leading experts in their field who are accomplished teachers and researchers, working to tackle real-world problems in epidemiology, financial mathematics, and more! The Department hosts the Mathematics Centre of Enhancement in Education, which supports colleagues to develop innovative teaching methods and ensure that you are taught in the most effective and engaging way.
The degree is expected to be accredited by the Institute of Mathematics and its Applications (IMA)* and Royal Statistical Society (RSS)*.
*Accreditation is pending approval.
Who is this course for
The MSc is suitable for graduates who have a STEM degree (Science, Technology, Engineering, or Maths) with a significant numerical component.
This MSc is ideal for those wanting to pursue a career in statistics and data science across a broad range of sectors, from global health organisations to governments, financial sector, and food industries.
What you'll learn
  • The fundamental concepts in statistical modelling, data science and stochastic processes.
  • How to use statistics and data science to create systems that can extract insights from big data and predict future outcomes in real-world applications.
  • Effectively communicate with a range of stakeholders.
  • Key transferable skills for employability: working in teams, digital fluency, and problem-solving.
In semester 2, you can choose one of the specialist pathways, on which you will develop expertise in a specific area.
  • Global Health and Epidemiology Pathway
  • Machine Learning for Investment Science Pathway
  • Statistics Pathway

Information for international students

Applications from international students are welcomed. Country specific information on entry requirements is listed on our website: https://www.liverpool.ac.uk/international/countries/. All applicants must have reached a minimum required standard of English language and are required to provide evidence of this, unless you’re from a majority English speaking country. We accept a variety of international language tests and country-specific qualifications which can be found on our international webpages. International applicants who do not meet the minimum required standard of English language can complete one of our Pre-Sessional English courses to achieve the required level.

Fees and funding

Please visit the course page on the University website to find more information about fees.

Qualification, course duration and attendance options

  • MSc
    full time
    12 months
    • Campus-based learningis available for this qualification

Course contact details

Name
University of Liverpool
Email
pgrecruitment@liverpool.ac.uk