Our MSc Data Science will prepare you with the skills you need to work in the rapidly growing data science sector.
As technology advances, the ability to generate, capture and analyse data from various sources and applications is vital across numerous industries. Our MSc Data Science teaches you how to apply critical mathematical thinking to several data types. You will have skills valuable to financial, social, policy and commercial settings.
The programme will cover data analysis, machine learning, and visualisation, as well as the necessary technical skills to thrive in industry. We will also equip you with the skills needed to stay abreast of data science changes and work in commercially, ethically, and legally appropriate ways.
You will begin by taking modules in programming, data analytics techniques and the fundamentals of mathematics for data science. You further apply these skills in machine learning and data visualisation. You will benefit from emphasising real-world workflows and applying techniques, using case studies, and working with real data sets. You will then have a chance to consolidate and demonstrate the skills you have acquired throughout the year in your final project.
How you'll learn
We deliver all computing programmes in an active blended learning style, with most lectures replaced by workshops and seminars. Our approach provides a learning environment focused on collaborative working in practical lab spaces, immersed in an environment based on working in the IT industry.
After the programme, you can undertake an industrial placement year, allowing you to gain valuable work experience relevant to your career aspirations.
*Price shown is for indicative purposes, please
January 2025
University of Roehampton
Erasmus House,
Roehampton Lane,
Wandsworth,
SW15 5PU, SOUTHERN ENGLAND, England
*There may be different IELTS requirements depending on your chosen course.
Roehampton is London鈥檚 best modern university and has a reputation for world-leading research across all of its academic departments.