Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
As part of the UKRI funded `Glaciers and Ice Sheets in a Warming World¿ project, we have an exciting opportunity for a postdoctoral researcher who has expertise in image analysis to join the project
-
stakeholders across all levels of the organisation and can balance multiple priorities across a wide range of activities. You will take pride in maintaining professional integrity and have a positive attitude to
-
of transactional systems, and the ability to work cross-functionally across multiple workstreams. You will have ISTQB or equivalent experience. This position is offered on a fixed term basis until March 2027
-
-hospital. You will be predominantly based in theatre and diagnostic imaging, providing the delivery of anaesthesia and analgesia to our diverse referral caseload, from Soft Tissue Surgery, Neurology
-
of project outputs. The role is based in the Department of Geography and Planning and working closely with the wider project team that spans multiple institutions and partner organisations. The role is part
-
development with multiple stakeholders and will be able to integrate quickly into the team. You will have a proven ability to design, develop and deliver collaborative programmes which make a demonstrable
-
services, or facilities team and possess strong organisational skills and the ability to prioritise and manage multiple tasks. You must display a proactive and hands-on approach with excellent communication
-
. This post is suitable for a trainee interested in cardiology research with the interplay of themes of amyloidosis, imaging, heart failure and AI. You will be registered for the Doctor of Medicine (MD) degree
-
This clinical training post will be based in the Small Animal Teaching Hospital at Leahurst on the Wirral Peninsula. Facilities include a state-of-the-art imaging suite and theatres. There is
-
genomic variation and phenotypic traits, predict gene essentiality, and model evolutionary trajectories. The role involves using large language models as coding assistants for efficient pipeline development