Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
are seeking a highly-motivated and ambitious researcher with a strong background and experience in RF/microwave engineering, additive manufacturing, and AI modelling to work on cutting-edge research in
-
Etchells at Durham Biosciences and Dr Natasha Savage at the University of Liverpool, aimed at understanding cambium development in the model species Arabidopsis. The position is based in Durham in the lab
-
automated emails from our e-recruitment system. Please check your spam/junk folder periodically to make sure you have not missed any of our updates. What to Submit All applicants are asked to submit: a CV and
-
. The Student and Academic Services Directorate operate a hybrid working model with the opportunity to split working at home and in the Student Registry office, which is in the Palatine Centre, South Road
-
progression within the Department and the University. A hybrid working model is in operation and roughly 60% of time (3 days per week) will be worked on site and 40% of time (2 days per week) will be worked
-
Contracted Hours per Week: 35 Working Arrangements: The team opperates a hybrid working model where the post holder has the option of working remote Closing Date : 03-Feb-2026, 11:59:00 PM Disclosure and
-
, including deciding and planning appropriate solutions, and working with complex data sets for the purpose of modelling in support of option appraisals. 19. Knowledge and experience of health and safety
-
model of working where there is a requirement to work at least two days per week in the office, these days are flexible, but the expectation is that the whole team would be in together on these days
-
matter (LCDM) model, and has continued to be at the forefront of cosmology research. We are particularly interested in candidates with research interests in the following areas: • ERC post: Cosmological
-
, management and analysis of large physiological, fMRI and behavioural data sets, using appropriate tools (R, Matlab, FSL, SPM) and advanced statistical techniques (e.g. linear mixed-effects models). The PDRA