The International Master’s in Statistical Data Science develops your practical, statistical and computing skills to prepare you for a professional career in statistics or as a solid basis for further research in the area.
The programme has been designed to provide a deep understanding of the modern statistical methods required to model and analyse data. You will benefit from a thorough grounding in the ideas underlying these methods and develop your skills in key areas such as practical data analysis and data modelling.
It has been accredited by the Royal Statistical Society (RSS) and equips aspiring professional statisticians with the skills they need for posts in industry, government, research and teaching. It also enables you to develop a range of transferable skills that are attractive to employers within the public and private sectors.
Students whose mathematical and statistical background is insufficient for direct entry on to the appropriate programme, may apply for this course. The first year of the programme gives you a strong background in statistics, including its mathematical aspects, equivalent to the Graduate Diploma in Statistical Data Science. This is followed by the MSc in Statistical Data Science.
Industrial placements may be undertaken in the UK or overseas. The University does not guarantee every student will find a placement. Those who do not secure a placement will be transferred to the MSc programme without a placement.
About the School of Mathematics, Statistics and Actuarial Science (SMSAS)
The School has a strong reputation for world-class research and a well-established system of support and training, with a high level of contact between staff and research students. Postgraduate students develop analytical, communication and research skills. Developing computational skills and applying them to mathematical problems forms a significant part of the postgraduate training in the School. We encourage all postgraduate statistics students to take part in statistics seminars and to help in tutorial classes.
The Statistics Group is forward-thinking, with varied research, and received consistently high rankings in the last two Research Assessment Exercises.
Statistical Data Science at Kent provides:
- a programme that gives you the opportunity to develop practical, mathematical and computing skills in statistics, while working on challenging and important problems relevant to a broad range of potential employers
- teaching and supervision by staff who are research-active, with established reputations and who are accessible, supportive and genuinely interested in your work
- advanced and accessible computing and other facilities
- a congenial work atmosphere with pleasant surroundings, where you can socialise and discuss issues with a community of other students.
In the Research Excellence Framework (REF) 2014, research by the School of Mathematics, Statistics and Actuarial Science was ranked 25th in the UK for research power and 100% or our research was judged to be of international quality.
An impressive 92% of our research-active staff submitted to the REF and the School’s environment was judged to be conducive to supporting the development of world-leading research.
The following modules are indicative of those offered on this programme. This list is based on the current curriculum and may change year to year in response to new curriculum developments and innovation. Most programmes will require you to study a combination of compulsory and optional modules. You may also have the option to take modules from other programmes so that you may customise your programme and explore other subject areas that interest you.
No modules information available for this delivery.
Teaching and Assessment
Assessment will be via complex theoretical questions, analysis of real-world data using appropriate computing packages with a range of levels of guidance appropriate to postgraduate level and over a range of areas of application. You will be expected to orally present initial work on their projects and during the Practical Statistics module, and will also be assessed on your Dissertation.
Additionally, for this programme with industrial placement, the experience of applying skills in a working environment will be assessed through the two placement modules.
- To give students the depth of technical appreciation and skills appropriate to masters' level students in Statistics.
- To equip students with a comprehensive and systematic understanding of theoretical and practical Statistics.
- To develop students’ capacity for rigorous reasoning and precise expression.
- To develop students’ capabilities to formulate and solve problems relevant to Statistics.
- To develop in students appreciation of recent developments in Statistics, and of the links between the theory of Statistics and their practical application.
- To develop in students a logical, mathematical approach to solving problems.
- To develop in students an enhanced capacity for independent thought and work.
- To ensure students are competent in the use of information technology, and are familiar with computers, together with the relevant software.
- To provide students with opportunities to study advanced topics in Statistics, engage in research at some level, and develop communication and personal skills.
- To provide successful students with the depth of knowledge of the subject sufficient to enter a career as a professional statistician. To provide successful students with eligibility for exemptions from examinations of the Royal Statistical Society.
Knowledge and understanding
- Systematic understanding of probability and statistics and the range of principles involved.
- Awareness of links between different statistical concepts and methods.
- Advanced information technology skills relevant to statisticians.
- A comprehensive range of methods and techniques appropriate to statistics at the postgraduate level.
- The role of logical mathematical argument and deductive reasoning.
- Appreciation of particular subject areas to which statistics is applied, and the importance of the role of statistics in those areas.
- Ability to demonstrate a comprehensive understanding of the main body of statistical knowledge.
- Ability to demonstrate skill in calculation and manipulation of data.
- Ability to apply a range of statistical concepts and principles in various challenging contexts.
- Ability for logical argument.
- Ability to demonstrate skill in solving complex statistical problems using appropriate and advanced methods.
- Ability in relevant computer skills and usage.
- Ability to work with relatively little guidance.
- Ability to evaluate research work critically.
- Ability to demonstrate knowledge of advanced statistical concepts and topics, both explicitly and by applying them to the solution of problems.
- Ability to demonstrate knowledge of statistical modelling techniques and their application.
- Ability to abstract the essentials of problems so as to facilitate modelling, statistical analysis and interpretation.
- Ability to present statistical analyses, including model-fitting, and draw conclusions with clarity and accuracy.
- Problem-solving skills; ability to work independently to solve problems involving qualitative or quantitative information.
- Communication skills, including the capacity to report to others on analyses undertaken.
- Computational skills.
- Information-retrieval skills involving a range of resources.
- Information technology skills including scientific word-processing.
- Time-management and organisational skills, as evidenced by the ability to plan and implement efficient and effective modes of working.
- Skills needed for continuing professional development.
Students often go into careers as professional statisticians in industry, government, research and teaching but our programmes also prepare you for careers in other fields requiring a strong statistical background. You have the opportunity to attend careers talks from professional statisticians working in industry and to attend networking meetings with employers.
Recent graduates have started careers in diverse areas such as the pharmaceutical industry, financial services and sports betting.
Kent’s Computing Service central facility runs Windows. Within the School, postgraduate students can use a range of UNIX servers and workstations. Packages available include R, SAS, MATLAB, SPSS and MINITAB.
Dynamic publishing culture
Staff publish regularly and widely in journals, conference proceedings and books. Among others, they have recently contributed to: Annals of Statistics; Biometrics; Biometrika; Journal of Royal Society, Series B; Statistics and Computing. Details of recently published books can be found within our staff research interests.
Global Skills Award
All students registered for a taught Master's programme are eligible to apply for a place on our Global Skills Award Programme. The programme is designed to broaden your understanding of global issues and current affairs as well as to develop personal skills which will enhance your employability.
All applicants are considered on an individual basis and additional qualifications, professional qualifications and experience will also be taken into account.
Please see our International Student website for entry requirements by country and other relevant information for your country. Please note that international fee-paying students cannot undertake a part-time programme due to visa restrictions.
English language entry requirements
The University requires all non-native speakers of English to reach a minimum standard of proficiency in written and spoken English before beginning a postgraduate degree. Certain subjects require a higher level.
For detailed information see our English language requirements web pages.
Need help with English?
Please note that if you are required to meet an English language condition, we offer a number of pre-sessional courses in English for Academic Purposes through Kent International Pathways.
Biometry and ecological statistics
Specific interests are in biometry, cluster analysis, stochastic population processes, analysis of discrete data, analysis of quantal assay data, overdispersion, and we enjoy good links within the University, including the School of Biosciences and the Durrell Institute of Conservation and Ecology. A recent major joint research project involves modelling the behaviour of yeast prions and builds upon previous work in this area. We also work in collaboration with many external institutions.
Current work includes non-parametric Bayes, inference robustness, modelling with non-normal distributions, model uncertainty, variable selection and functional data analysis.
Bioinformatics, statistical genetics and medical statistics Research covers bioinformatics (eg DNA microarray data), involving collaboration with the School of Biosciences. Other interests include population genetics, clinical trials and survival analysis.
Research focuses on empirical likelihood, high-dimensional data analysis, nonlinear dynamic analysis, semi-parametric modelling, survival analysis, risk insurance, functional data analysis, spatial data analysis, longitudinal data analysis, feature selection and wavelets.
Staff research interests
Full details of staff research interests can be found on the School's website.
Dr Diana Cole: Senior Lecturer in Statistics
Branching processes in biology; cell division models; ecological statistics; generalised linear mixed models; identifiability.; parameter redundancy.View Profile
Dr Alfred Kume: Senior Lecturer in Statistics
Shape analysis; directional statistics; image analysis.View Profile
Dr Alexa Laurence: Lecturer in Statistics
Medical statistics and applied statistics.View Profile
Dr Fabrizio Leisen: Senior Lecturer in Statistics
Bayesian nonparametrics; MCMC, Urn models; Markov and Levy processes; Move-to-Front and Move-to-Root allocation rules.View Profile
Dr Owen Lyne: Lecturer in Statistics
Stochastic epidemic models; applied probability; simulation; statistical inference; goodness of fit; branching processes; martingales; medical education.View Profile
Dr Rachel McCrea: Research Associate
Integrated population modelling of dependent data structures.View Profile
Professor Byron Morgan: Professor of Applied Statistics
Biometry; cluster analysis; stochastic population processes; psychological applications of statistics; multivariate analysis; simulation; analysis of quantal assay data; medical statistics; ecological statistics; overdispersion; estimation using transforms.View Profile
Professor Martin S Ridout: Professor of Applied Statistics
Analysis of discrete data in biology; generalised linear models; overdispersion; stochastic models; transform methods.View Profile
Dr Xue Wang: Lecturer in Statistics
Bayesian nonparametric methods; copula function with its applications in finance; wavelet estimation methods.View Profile
Professor Jian Zhang: Professor of Statistics
Semi and non-parametric statistical modelling; statistical genetics with medical applications; Bayesian modelling; mixture models; neuroimaging.View Profile
The 2019/20 annual tuition fees for this programme are:
|Statistical Data Science with an Industrial Placement (International Masters) - MSc at Canterbury:|
For students continuing on this programme fees will increase year on year by no more than RPI + 3% in each academic year of study except where regulated.* If you are uncertain about your fee status please contact email@example.com
General additional costs
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