Sort by
Refine Your Search
-
-of-the-art facilities as well as development of a mass spectrometry-based assay for detection of binding to the target protein, the human elongation factor eEF1A. This will be followed by structural
-
blastocysts. A range of temperatures (representing extremes of core-body temperature) will be assessed during in vitro embryo culture. State-of-the-art techniques include morphokinetic assessments undertaken
-
from different disciplines cutting across Arts, Engineering, Medicine and Health Sciences, Science and Social Sciences. The University of Nottingham Faculty of Science AI DTC offers the opportunity
-
. A range of temperatures (representing extremes of core-body temperature) will be assessed during in vitro embryo culture. State-of-the-art techniques include morphokinetic assessments undertaken using
-
/clinical trials and state-of-the-art wet-lab techniques. PhD 2 - Robust evidence regarding the biological mechanisms responsible for the health benefits of physical activity, and the detrimental impacts
-
for Additive Manufacturing (CfAM)'s expertise in applying computational materials science techniques to laser AM. The PhD student will be able to conduct research using a state-of-the-art multi-beam laser powder
-
target protein. The research will be conducted using state-of-the-art equipment, including both commercial tools and bespoke in-house apparatus. As a key member of our team, you will play a pivotal role in
-
Technology (https://www.nottingham.ac.uk/utc/index.aspx ) at the University of Nottingham. Having state-of-the-art purpose built facilities, the UTC offers a world-class environment for the realisation
-
sponsors own security checks prior to the commencement of the PhD. Vision We are seeking a motivated PhD candidate with enthusiasm to learn about state-of-the-art developments in machine learning and AI
-
sponsors own security checks prior to the commencement of the PhD. Vision We are seeking a motivated PhD candidate with enthusiasm to learn about state-of-the-art developments in statistical machine learning