Research Associate - DASS

Lancaster University, Bailrigg, Lancashire

Research Associate - DASS

£39906-£46049

Lancaster University, Bailrigg, Lancashire

  • Full time
  • Temporary
  • Onsite working

Posted 4 days ago, 20 Apr | Get your application in now to be included in the first week's applications.

Closing date: Closing date not specified

Job ref: 2384a4ca3d8e40678db16a22819be7f0

Location ref: Bailrigg, Lancashire

Full Job Description

We invite applications for a Post-Doctoral Research Associate position to join the Statistical Foundations for Detecting Anomalous Structure in Stream Settings (DASS) Programme, based at Lancaster University. The DASS Programme will consider the foundational statistical challenges of identifying anomalous structure in streams within constrained environments, handling the realities of contemporary data streams, and identifying and tracking dependence across streams.
This £4M programme is funded by EPSRC and brings together research groups from the Universities of Lancaster, Bristol, Warwick and the London School of Economics together with a committed group of industrial and public sector partners.
Interaction between the research groups at the universities will be strongly encouraged and resourced; our philosophy is to tackle the methodological, theoretical and computational aspects of these statistical problems together. This integrated approach is essential to achieving the substantive fundamental advances in statistics envisaged, and to ensuring that our new methods are sufficiently robust and efficient to be widely adopted by academics, industry and society more generally.
The programme is led by Idris Eckley (Lancaster University), Haeran Cho (University of Bristol), Paul Fearnhead (Lancaster University), Qiwei Yao (London School of Economics) and Yi Yu (University of Warwick).

This 2-year position is available at Lancaster University. You should have, or be close to completing, a PhD in Statistics or a closely related discipline. Throughout, you should have demonstrated an ability to develop new statistical theory and methods in one of the relevant areas, including but not limited to: anomaly detection; changepoint analysis; non-stationary time series analysis, high dimensional statistics, statistical-computational tradeoffs, scalable statistical methods. You will also have shown a demonstrable ability to produce academic writing of the highest publishable quality.
These are full-time positions, though we will consider applicants requesting part-time or other flexible working arrangements.

Direct job link

https://www.jobs24.co.uk/job/research-associate-dass-126716670