Sort by
Refine Your Search
-
Employer
- ;
- Imperial College London
- Nature Careers
- University of Birmingham
- SINGAPORE INSTITUTE OF TECHNOLOGY (SIT)
- CRANFIELD UNIVERSITY
- University of Nottingham
- ; University of Warwick
- Birmingham City University
- Cranfield University
- Glasgow School of Art;
- King's College London
- QUEENS UNIVERSITY BELFAST
- UNIVERSITY OF SOUTHAMPTON
- University of Lincoln
- University of Liverpool
- 6 more »
- « less
-
Field
-
(microscopic or mechanical). The successful candidate will carry out research and manufacturing process evaluation to produce structural metallic materials. The applicant will work on a research project
-
Faculty or Department: Faculty of Engineering and Applied Sciences Based at: Cranfield Campus, Cranfield, Bedfordshire Hours of work: 37 hours per week, normally worked Monday to Friday. Flexible
-
Science. These fellowships have the aim of identifying excellent researchers and accelerating them in using AI to advance and disrupt Science or Engineering. Here ‘AI’ is interpreted very broadly, e.g
-
Science. These fellowships have the aim of identifying excellent researchers and accelerating them in using AI to advance and disrupt Science or Engineering. Here ‘AI’ is interpreted very broadly, e.g
-
fellowships have the aim of identifying excellent researchers and accelerating them in using AI to advance and disrupt Science or Engineering. Here ‘AI’ is interpreted very broadly, e.g.: topics in Bayesian
-
fellowships have the aim of identifying excellent researchers and accelerating them in using AI to advance and disrupt Science or Engineering. Here ‘AI’ is interpreted very broadly, e.g.: topics in Bayesian
-
Organisation Cranfield University Faculty or Department Faculty of Engineering and Applied Sciences Based at Cranfield Campus, Cranfield, Bedfordshire Hours of work 37 hours per week, normally
-
relevant projects and for the development of future group research strategy. MAS has a large intra-disciplinary team of researchers, engineers, technicians, support staff and academics who work together to
-
training and fine-tuning large language models (LLMs) to extract structured clinical concepts from unstructured EHR, pathology, and radiology reports. The role involves publishing in high-impact, peer