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Master of Science
On Campus
University of Oxford Logo
University of Oxford
Oxford
United Kingdom

Statistics

About

The Master of Science in Statistics at the University of Oxford is a two-year, full-time program designed to provide students with a deep understanding of both theoretical and applied statistics. This program equips students with the necessary skills to solve complex problems in data analysis, statistical modeling, and statistical inference. The course covers a wide range of statistical techniques, from Bayesian methods to statistical computing, and is designed for those interested in pursuing careers in academia, industry, or government, where data-driven decision-making is key.

Oxford’s MSc in Statistics is ideal for students who wish to apply statistical theory to real-world problems in fields such as finance, biostatistics, social sciences, and engineering. The program combines advanced coursework in probability theory, regression analysis, and statistical software with hands-on experience in data analysis and computational techniques, ensuring that graduates are highly skilled in modern statistical practices.

Key information

Duration
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Tuition fee
$44,393.00/year
Start dates & application deadlines
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More details
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Key Facts

Program Title: Master of Science in Statistics
Degree Type: Master of Science (MSc)
Duration: 2 Years
Mode of Study: Full-time, On Campus
Start Date: 1st March 2026
Application Deadline: Refer to university website
Location: University of Oxford, United Kingdom
Field of Study: Statistics
Language of Instruction: English

Program Structure

The MSc in Statistics is structured to provide both theoretical foundations and practical skills in the field of statistics. The first year focuses on core modules, including probability theory, mathematical statistics, and statistical methods. Students will also begin to develop their skills in statistical computing using tools such as R and Python. In the second year, students specialize in areas such as statistical inference, Bayesian methods, and multivariate analysis, while engaging in more advanced computational techniques. The program culminates in a dissertation, allowing students to apply their statistical expertise to a real-world problem, often in collaboration with industry or research projects.

Career Opportunities

Graduates of the MSc in Statistics are well-prepared for careers in data analysis, statistical modeling, biostatistics, and financial modeling. The program’s emphasis on both theoretical knowledge and practical application equips students with the skills needed to work in a wide range of industries, including finance, healthcare, technology, government, and academia. Many graduates pursue roles as data scientists, statistical analysts, biostatisticians, or research statisticians. The program’s strong foundation in computational statistics also prepares graduates for roles in machine learning and artificial intelligence. Oxford’s global reputation and extensive network further enhance graduates' career prospects in top-tier organizations.

Why Choose This Program

The University of Oxford provides a unique opportunity to study Statistics in a world-class academic environment. The program combines cutting-edge statistical theory, practical data analysis, and advanced computational methods, providing students with a comprehensive education in modern statistics. Oxford’s distinguished faculty, state-of-the-art facilities, and industry connections ensure that students receive top-tier training, preparing them for a wide range of careers in data science, statistical research, and policy analysis. The program’s interdisciplinary approach also allows students to apply statistical techniques to real-world problems across various fields, from healthcare to economics to social sciences.

Contact Information

For further information, please contact the admissions office at:
Phone: +44 (0)1865 270000
Email: admissions@ox.ac.uk
Address: University of Oxford, University Parks, Oxford OX1 2JD, United Kingdom