Sort by
Refine Your Search
-
Listed
-
Field
-
continuing tradition of excellence in the subject. The Professor will be expected to provide outstanding research leadership in statistical methods development, bringing with them a vision for the discipline
-
University of Oxford’s continuing tradition of excellence in the subject. The Professor will be expected to provide outstanding research leadership in statistical methods development, bringing with them a
-
workshops or fabrication facilities. You must also have experience in high technology research and development and Experience of Computer Numerical Controlled machining. You must also have experience in
-
Brian Nicholson (Cancer Theme). The successful applicant will be Stats lead for the EBHC DPhil programme and Methodological lead for the Cancer Theme. Responsibilities will include providing strategic
-
of marketing materials and contribute to applicant yield and retention initiatives. Take ownership of specific recruitment or programme-related projects and events, managing budgets and timelines. You will
-
an important role in the Oxford Cancer Clinical Trials Unit providing an effective administrative support service for the team running our clinical cancer research programme. This post is largely office/computer
-
(for example BTEC ND, NVQ Level 3 or equivalent) and/or significant work experience at a similar level, is also essential. You will have demonstrated experience showing ability to be numerate and accurate, with
-
social, cultural, and sports clubs. About the Role The Data Quality Team is responsible for monitoring the quality of the student record, programme set-up, system data configuration, and compiling and
-
. In addition to the NIHR funded post available, locally funded posts may also be awarded in parallel, subject to funding and assessment against the stated criteria for the role. Applicants should be
-
) position on the project Aggregating Safety Preferences for AI Systems: A Social Choice Approach, funded by ARIA under the Safeguarded AI TA1.4 call. The project explores novel aggregation methods