Sort by
Refine Your Search
-
-weather perception for which Radar sensing/imaging is essential. This project focuses on developing algorithms, using signal processing/machine learning techniques, to realise all-weather perception in
-
on biological tissues and medical image processing. The studentship includes many opportunities for the candidate to build their professional network by presenting their work at conferences and discussing
-
will also work closely with our industrial partner on process engineering for a scalable prototype facility and product output testing. The successful PhD student will be supervised by Prof Anh Phan from
-
prototype facility and product output testing. The successful PhD student will be supervised by Prof Anh Phan from the Process Intensification Group at Newcastle University. There will also be an industrial
-
the structure and robustness of the ecological networks supporting reef fish communities at different positions along depth, latitude, and longitude gradients; challenging these networks under hypothesized future
-
communities at different positions along depth, latitude, and longitude gradients; challenging these networks under hypothesized future assemblage changes. Determining how coral reef fish food webs and energy
-
have the opportunity to develop their computational modelling capabilities in this project, alongside learning new skills such as testing on biological tissues and medical image processing
-
found here . A minimum 2:1 Honours degree or international equivalent in a subject relevant to the proposed PhD project is our standard entry, however we place value on prior experience, enthusiasm
-
research training support grant of £20,000 and 100% fees paid. Overview Globally, drought and water scarce events pose a significant threat to water security, resulting in catastrophic direct and indirect
-
innovative, place-based strategies that move communities towards fair and democratic low carbon futures. The successful candidate will join the North East England Place-Based Research Team (led by Prof. Danny