Sort by
Refine Your Search
-
Listed
-
Employer
- ;
- University of Birmingham
- Nature Careers
- SINGAPORE INSTITUTE OF TECHNOLOGY (SIT)
- CRANFIELD UNIVERSITY
- University of Nottingham
- KINGS COLLEGE LONDON
- Queen's University Belfast
- UNIVERSITY OF MELBOURNE
- UNIVERSITY OF SOUTHAMPTON
- University of Exeter
- ; Technical University of Denmark
- King's College London
- ; University of Exeter
- Brunel University
- Cardiff University
- Cranfield University
- Durham University
- Nottingham Trent University
- Nuffield College
- QUEENS UNIVERSITY BELFAST
- Technical University of Denmark
- University of Bristol
- University of Cambridge
- University of Glasgow
- University of Leicester
- University of Oxford
- 17 more »
- « less
-
Field
-
(or be close to completing one) with strong quantitative and computational skills in high-performance computing environments. Your expertise should be in one or more of the following areas: hydrological
-
Birmingham Professional programme which provides all professional services staff with development opportunities and the encouragement to reach their full potential. With almost 5,000 professional services jobs
-
different climate change scenarios on the thermal performance of the outdoor environment in schools. The Research Fellow is expected to contribute to monitoring in case-study schools which will generate data
-
oncology grouping sees close to 550 new cases of these cancers a year. There is a large active clinical trials programme that spans phase 1 to phase 3. These patients have a poor prognosis, and this clinic
-
providing specialist support for external engagement and development Our Exeter Academic initiative supporting high performing academics to achieve their potential and develop their career A multitude of
-
tools to create manufacturable and high-performance ship forms. We are looking for candidates with a background in maritime engineering, marine CFD, hydrodynamics, or related areas. Experience or interest
-
, bioinformatics or related discipline Strong computational skills, with expertise in scripting in BASH and either R or Python Experience with analysing complex datasets on high-performance compute clusters A track
-
Limited. The Knowledge Transfer Partnership project will focus on developing technically and commercially viable gas diffusion layers for high-volume applications using recycled carbon fibre, creating a
-
Supervised Machine Learning and Reinforcement Learning. The objective is to significantly enhance battery performance and longevity. While conventional methods rely on either physics-based models or high-level
-
in the UK. We pride ourselves on delivering high-quality teaching and diverse, real-world research. We specialise in biosciences, chemistry, computing and technology, as well as engineering, forensic