27 maynooth-university-programmable-city-project research jobs at University of Liverpool
Sort by
Refine Your Search
-
There is an exciting opportunity for two students to pursue a funded PhD with Angelo Pirrone, Nathan Evans, Giovanni Sala and Konstantinos Tsetsos at the University of Liverpool, starting in October
-
We are looking for a Research assistant to join the Institute of Population health Dementia Health and Social Care Inequalities Research group for 10 months on an NIHR-funded Programme Development
-
We are looking for a postdoctoral researcher to work on two peatlands projects. 1) ¿Enhanced understanding of CarbOn and groundWAter Dynamics in European peatlands and their related ecosystem
-
Glaucoma UK Project Grant in the Department of Eye and Vision Science at the University of Liverpool. You will join the research groups of Dr Lucy Bosworth (biomaterials and tissue engineering), Dr Carl
-
You will work as a Postdoctoral Researcher on the ESRC Impact Accelerator Account funded project MUSIC.ME under the supervision of Dr Eduardo Coutinho (PI) and Professor Atif Rahman (Co-I). MUSIC.ME
-
at the University of Liverpool. You will be part of an exciting Liverpool-based UKRI-funded programme of research called ¿SCHOUSE: Supporting Communities in social Housing and Optimising Urban food System
-
We are seeking one enthusiastic and motivated individual to work within the Zero-G AstroLab, School of Engineering, on a project funded by the UK Research and Innovation (UKRI) in planetary defence
-
the University of Liverpool sector leading in postdoctoral researcher development programmes such as Prosper. The post is initially available until 31 May 2026 and is expected to start as soon as possible
-
Department of Psychology and be based in the Appetite & Obesity research group. The project is led by Professor Eric Robinson and Dr Jenna Cummings, University of Liverpool. Project partners include Imperial
-
This is a Research Fellow post to support the NIHR funded programmes OPtimal Timing of Induction of labour to improve Maternal and perinatAL outcomes (OPTIMAL): An individual participant data meta