

BSc Mathematics with Data Science
About this course
Mathematics with data science combines the abstract analytical power of mathematics with the practical tools and techniques that are now at the centre of how organisations understand and use information. Mathematics provides the theoretical foundations, from calculus and linear algebra through to statistics and probability, that underpin rigorous quantitative reasoning. Data science builds on those foundations to develop the computational skills, machine learning techniques, and analytical methods needed to extract insight from the large and complex datasets that are now generated in every domain of human activity. At the University of Southampton, this three-year, full-time BSc degree develops both dimensions of the combination in a programme that takes mathematical rigour seriously as the foundation for practical data science capability. You will study core mathematical concepts including calculus, linear algebra, and statistical theory, alongside programming, data analysis, machine learning, and statistical modelling. Southampton is a research-intensive university with particular strengths in mathematics and computer science, and the programme benefits from that scholarly environment. The combination of mathematical depth and data science capability is one of the most sought-after graduate profiles in the current labour market, and the degree is designed to prepare you for roles where both matter. The typical entry tariff of 168 points reflects strong academic expectations for a demanding quantitative programme. Mathematics with data science graduates are highly employable across a wide range of sectors. Finance, technology, healthcare, government, retail, manufacturing, and research organisations all need graduates who can build and interpret quantitative models, handle large datasets, and communicate their findings clearly. Roles include data scientist, quantitative analyst, statistician, machine learning engineer, and data engineer. Many graduates also go on to postgraduate study in data science, statistics, machine learning, or applied mathematics, developing specialist expertise for research or advanced professional roles. The combination of mathematical foundation and practical data science training is genuinely powerful in an economy increasingly shaped by data.
Syllabus & Modules
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