Sort by
Refine Your Search
-
Listed
-
Country
-
Program
-
Employer
- ;
- ; City, University of London
- ; Imperial College London
- ; UCL
- ; University of Greenwich
- University of London
- Leverhulme Trust
- UNIVERSITY OF EAST LONDON
- University of East London
- University of Greenwich
- ; Brunel University London
- ; King's College London
- ; Lancaster University
- ; Northeastern University London
- ; Royal Holloway, University of London
- ; The Francis Crick Institute
- ; University of Southampton
- Imperial College London
- King's College London
- The Design Society
- University College London
- 11 more »
- « less
-
Field
-
Department: School of Electronic Engineering & Computer Science Salary: £49,785 - £58,595 per annum (Grade 5) Reference: 1921 Location: Mile End Date posted: 22 April 2024 Closing date: 20 May 2024
-
Faculty of Computing, Mathematics, Engineering & Natural Sciences Funded PhD Project (UK or International Students) Funding provider: Northeastern University London (NU London) Subject areas
-
Informatics (ACHI) PhD Studentship Programme aims to fund two highly motivated non-clinical Health Data Science PhD studentships to support the training and development of the next generation of informatics
-
high-impact publications will be generated during the project, to be presented both in computer science-related venues (e.g. CVPR, NeurIPS, MICCAI) as well as at medical conferences (e.g. ISMRM, ESMRMB
-
are expected to gain) a first-class honours degree or equivalent in a suitable field such as engineering, computer science, physics, or atmospheric science. Funding This studentship is for 3.5 years and will
-
when the project commences. Applications are invited from candidates with (or who are expected to gain) a first-class honours degree or equivalent in a suitable field such as engineering, computer science
-
Civil Engineering or Computational Physics. They should demonstrate aptitude for original research. The candidate should possess a good understanding of construction processes and data processing
-
methods could alleviate this limitation by leveraging large amounts of un-annotated datasets. These techniques remain however largely unexplored in the field of medical video analysis. The School of Science
-
sports sciences. The training and research programme: The successful candidate will join the EPSRC Centre for Doctoral Training programme in Photonic and Electronic Systems programme (PES CDT). Further
-
to power engineering, mathematics, computing and energy economics. The successful candidate will have excellent understanding in the fields of power system operations and economics. Experience in data