This applied statistics course is ideal if you are considering a career move into statistics, or if your work already involves aspects of data collection and exploration, interpretation of statistics, or modelling and forecasting time-dependent phenomena. It delivers a strong theoretical background but is also practically oriented to develop your ability to tackle new and non-standard problems with confidence.
**Why choose this course?**
- This course offers you a comprehensive curriculum covering frequentist and Bayesian methods, statistical machine learning ...
This applied statistics course is ideal if you are considering a career move into statistics, or if your work already involves aspects of data collection and exploration, interpretation of statistics, or modelling and forecasting time-dependent phenomena. It delivers a strong theoretical background but is also practically oriented to develop your ability to tackle new and non-standard problems with confidence.<br/><br/>**Why choose this course?**<br/><br/><br/>- This course offers you a comprehensive curriculum covering frequentist and Bayesian methods, statistical machine learning and advanced computational techniques.<br/><br/><br/>- It has a favourable staff-student ratio to ensure high-quality teaching and support.<br/><br/><br/>- It is accredited by the Royal Statistical Society, so that our graduates may be eligible to attain Graduate Statistician status.<br/><br/><br/>- It is led by experienced statisticians and mathematicians with active research interests in theoretical and applied statistics.<br/><br/><br/>**What you will learn**<br/><br/>We emphasise the mutual dependence of practice and theory throughout the course, with a focus on hands-on application through real-world datasets to equip you with the skills to analyse and interpret complex data and communicate findings effectively.<br/><br/>You will learn to formulate real-world problems as statistical models and implement them using statistical software. You will also gain a solid grounding in core statistical methodologies, including:<br/><br/><br/>- regression<br/><br/><br/>- ANOVA<br/><br/><br/>- generalised linear models along with an introduction to Bayesian modelling<br/><br/><br/>- a wide variety of advanced computational statistics and machine learning methods.<br/><br/><br/>**How you will learn**<br/><br/>Teaching on this course is through a combination of lectures (pre-recorded), seminars and practical computing sessions. In lectures an overview of the topic engages you with the material through theory worked problems and example applications. Seminars are focused around discussion and problem-solving while computing sessions allow you to gain practical experience in the analysis and modelling of data.<br/><br/>This course is available to study full- or part-time. **It has an evening timetable with classes taking place in the evening**. You will also be supported by comprehensive resources, including a dedicated subject librarian and high-quality recordings of lectures.<br/><br/>We offer this course as a Master’s and a Postgraduate Certificate. For the Certificate, you study fewer modules and do not complete a dissertation. <br/><br/>**Highlights**<br/><br/><br/>- We have active research groups in Algorithms, Data Science and Artificial Intelligence, Logical Methods, and two research centres: Birkbeck Institute for Data Analytics and Birkbeck Knowledge Lab. <br/><br/><br/>- You will have access to a wide range of study resources, including University of London seminar programmes in probability and statistics. Extensive computing facilities include PCs and UNIX platforms.<br/><br/><br/>- You will be studying alongside a diverse group of passionate and enthusiastic students from various backgrounds, including professionals in data science, finance, economics and computer science.<br/><br/><br/>**Careers and employability**<br/><br/>On successfully graduating from this MSc, you will have gained an array of important transferable skills, including the ability to:<br/><br/><br/>- understand and apply computationally intensive statistical methodology <br/><br/><br/>- abstract the essentials of a practical problem and formulate an appropriate statistical or mathematical model<br/><br/><br/>- solve problems using an analytical and systematic approach<br/><br/><br/>- understand advanced, abstract material<br/><br/><br/>- learn independently<br/><br/><br/>- develop self-motivation, time management and organisation.<br/><br/><br/>Studying this course will prepare you for a career path in roles in a range of professions including:<br/><br/><br/>- actuary<br/><br/><br/>- data analyst<br/><br/><br/>- data scientist<br/><br/><br/>- economist<br/><br/><br/>- financial manager<br/><br/><br/>- financial risk analyst<br/><br/><br/>- machine learning engineer<br/><br/><br/>- operational researcher<br/><br/><br/>- research scientist<br/><br/><br/>- statistician.<br/>
3 options available
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Course Details
Information
Study Mode
Part-time
Duration
2 Years
Start Date
10/2025
Campus
Main Site
Varied
Application deadline
Provider Details
Codes/info
Course Code
Unknown
Institution Code
B24
Points of Entry
Unknown
Take the next steps at Birkbeck, University of London with our postgraduate course search.
Region | Costs | Academic Year | Year |
---|---|---|---|
England, Northern Ireland, Scotland, Wales | £5,850 | 2025/26 | Year 1 |
International | £10,170 | 2025/26 | Year 1 |