127 information-security "https:" "https:" "https:" "https:" "https:" "U.S" "U.S" positions at University of Leeds
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
**Open to current University of Leeds employees only** Salary: Grade 7 (£41,064 - £48,822 p.a. depending on experience). This role is campus based, 5 days per week. Are you a dynamic, enthusiastic
-
operational efficiency in the Faculty of Arts, Humanities & Cultures which is part of a highly rated Russell Group university? Do you want to be part of a dynamic professional service that partners with
-
, Langendorrf preparation, and cell isolation. You will bring an outstanding record of internationally excellent publications, success in securing competitive research funding, and evidence of delivering impact
-
comparable clinical standards are maintained in the clinical skills settings, with special reference to health and safety and infection prevention, and that this learning is transferred to clinical placement
-
model (UKESM2). The key aim of PROMOTE is to develop and apply a high-resolution ESM to investigate the risks, consequences, and potential interactions between abrupt changes in the North Atlantic
-
of a new hybrid-resolution version of the 2nd UK Earth system model (UKESM2). The key aim of PROMOTE is to develop and apply a high-resolution ESM to investigate the risks, consequences, and potential
-
, inspiring system-level action locally, nationally, and internationally. The University of Leeds is one of the top 80 universities in the world. We have a truly global community, with more than 39,000
-
The interviews are expected to be held on the week commencing the 27 April 2026 This role will be based on the university campus with scope for it to be undertaken in a hybrid manner. We are also
-
techniques to observe droplet shape and contact-line motion. Working with an existing high-pressure experimental setup, you will carry out laboratory experiments and collect image and interfacial data
-
@leeds.ac.uk Project summary The project focuses on developing new statistical methods for detecting unusual patterns in healthcare-associated infections. This is a fully funded 3.5-year PhD project supported by