719 embedded-system "https:" "https:" "https:" "https:" "UCL" positions at University of Sheffield
Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
Project Competition Funded UK Students Prof Viktor Fedun Application Deadline: 16 March 2026 Details The solar atmosphere is full of magnetic fields alive with enormous, twisting tornadoes. These huge
-
approaches and technological solutions that would take into account the diverse needs of contributors, curators, and end users. The research is meant to privilege a user perspective, reflecting critically
-
on the research conducted as part of an NIHR funded grant which comes to an end in July 2026 “Improving access to cervical screening for physically Disabled people” (https://www.dev.fundingawards.nihr.ac.uk/award
-
is therefore essential. You will have the opportunity to be part of the NIHR Sheffield Biomedical Research Centre (Translational Neuroscience for Chronic Neurological Disorders) Junior Academy and gain
-
present the optimisation of the printing parameters for these films is commonly achieved through a trial and error process rather than systematic intelligent control. Individual processes are being optimised in isolation
-
developed as novel antimicrobials is of great interest currently. Among the bacteriophage a class of large, widespread, antibacterial viruses known as Jumbophage are receiving much attention due to the novel
-
expertise of the wider lab including staff and students. Please see our website for more information about the lab: https://sites.google.com/sheffield.ac.uk/sheffieldcogdev/home Funding Notes Our entry
-
Disabled Students’ Allowances (DSA) costs for postgraduate research students (PGR) from UK Research and Innovation (UKRI). The role is customer focused, requiring excellent communication skills
-
will be embedded in a vibrant, supportive community of microbiologists in Sheffield. You can find the primary supervisor on Bluesky: https://bsky.app/profile/robfagan.bsky.social And visit our lab
-
Digitalising populations of structural systems using machine learning (S3.5-MAC-Dardeno) School of Mechanical, Aerospace and Civil Engineering PhD Research Project Competition Funded Students