Sort by
Refine Your Search
-
An exciting opportunity has arisen for two Research Assistants (RAs) within the Institute of Mental Health. The RAs will be working on the ESRC/NIHR funded DETERMIND programme (www.determind.org.uk
-
Hourly Rate £16.78 plus holiday pay. Closing Date 29 June 2025 Job Reference Research Assistant in Classics and Archaeology About the Role Total number of hours for this assignment is 200, to be
-
We are seeking to recruit a highly motivated Research Assistant to work with a research group based in the Centre of Membrane Proteins and Receptors (COMPARE) within the Division of Pharmacology
-
motivated PhD student to join our interdisciplinary team to help address critical challenges in high-speed electrical machine design for electrified transportation and power generation. Together, we will make
-
of the proposed replacement approaches will form an integral part of the proposed multi-objective optimisation approach. Such a methodology should help asset managers and system operators to make practical
-
for this studentship, please include the reference number (beginning ENG and supervisors name) within the personal statement section of the application. This will help in ensuring your application is sent directly to
-
diseases. This project will help to make a substantial difference towards automated drug discovery and helping to reduce suffering worldwide. The research will be conducted using state-of-the-art equipment
-
supercritical water systems to generate samples that will help optimise a process that will then be scaled into pilot and large scale pilot systems with partners in the consortium. Aim This project will focus
-
Hospitals NHS Trust;) Dr Matthew Jones (Assistant Professor of Health Economics, School of Medicine, University of Nottingham) CV and Cover letters for application and Informal inquiries can be made
-
in a more accurate analysis of optimizing the service performance. Computer vision approaches such as ones for object identification and action recognition can help to automatically identify deviations