At a Glance
- Tasks: Develop and apply statistical methods for multivariate extremes and publish your findings.
- Company: Join the School of Mathematical Sciences at Lancaster University.
- Benefits: Competitive salary, collaborative environment, and opportunities for professional growth.
- Other info: Dynamic research team with a commitment to diversity and equality.
- Why this job: Make a real impact in cutting-edge research on multivariate extreme value theory.
- Qualifications: PhD in statistics or related field, strong programming skills, and experience with multivariate extremes.
The predicted salary is between 39906 - 46049 £ per year.
We are seeking applications for a 5‐month Senior Research Associate to work within the Department of Mathematics and Statistics at Lancaster University, as part of the EPSRC grant "Exploring and exploiting new representations for multivariate extremes". This grant focuses on developing understanding of geometric representations of extremes, and how these can be used to provide state‐of‐the‐art statistical methodology for multivariate extreme value problems. The Principal Investigator on the grant is Jennifer Wadsworth and the postdoc position will be based in Lancaster.
Role
- Work, both independently and with the PI and collaborators, on statistical methodology for, and applications of, multivariate extreme value theory.
- Publish and disseminate results via journal articles, conference presentations and open‐source computer code.
Responsibilities
- Develop and apply statistical methods for multivariate extremes.
- Collaborate with the PI and research team on theoretical and applied projects.
- Publish findings in peer‐reviewed journals and present at conferences.
- Produce and maintain reproducible, open‐source code.
Qualifications
- Completed or close to completing a PhD in statistics, data science or a closely related discipline.
- Strong record of research, including submitted and draft publications.
- Excellent programming skills, e.g. R, MATLAB, C++.
- Experience with multivariate extreme value theory (essential).
- Experience with the geometric approach to multivariate extremes (highly advantageous).
Employment details
The position is available from 1 September 2026 and will run for a maximum of 5 months.
Application and Contact
Interested candidates may informally contact Dr Jennifer Wadsworth (j.wadsworth@lancaster.ac.uk) if they have any queries about the position.
Diversity
We welcome applications from people in all diversity groups, including those of different ages, religions, gender identities or expressions, races, disabilities, and sexual orientations. The University is committed to promoting diversity and equality of opportunity.
Senior Research Associate in Statistics - 0508-26 in Burnley employer: Lancaster University
Lancaster University is an exceptional employer, offering a vibrant work culture that fosters collaboration and innovation within the School of Mathematical Sciences. As a Senior Research Associate in Statistics, you will have access to cutting-edge research opportunities, professional development, and a supportive environment that values diversity and inclusion. Located in the picturesque city of Lancaster, employees enjoy a balanced lifestyle with access to beautiful surroundings and a strong academic community.
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