Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
- Computer Science
- Engineering
- Biology
- Economics
- Materials Science
- Medical Sciences
- Chemistry
- Business
- Mathematics
- Arts and Literature
- Electrical Engineering
- Linguistics
- Psychology
- Science
- Physics
- Humanities
- Law
- Education
- Philosophy
- Earth Sciences
- Social Sciences
- Sports and Recreation
- 12 more »
- « less
-
EPSRC CDT in Developing National Capability for Materials 4.0, with the Henry Royce Institute EPSRC Centre for Doctoral Training Funding Available Students Worldwide View DetailsApply Online
-
Micro/Milli-Robots and Systems: developing mechanisms and systems that supports sensing and action of micro/milli-robots School of Electrical and Electronic Engineering PhD Research Project Self
-
Investigation of the biological behaviour and genetic regulation of rare cancers, to develop new therapies. School of Medicine and Population Health PhD Research Project Self Funded Dr Karen Sisley
-
responsibilities Research: Contribute to or lead on the statistical aspects of the development of high quality research bids to evaluate the effectiveness of new health technologies, which is recognised both
-
for application to fusion reactors, considering factors such as muon flux, detector sensitivity, and data analysis algorithms. PhD candidates will be tasked with developing simulations of complete detectors and
-
of data from in-Situ AM Process Monitoring tools, machine agnostic algorithms will be generated for quality control. Knowledge transfer of the methods developed onto industrial machine platforms will be a
-
experimental research as well as data analysis and algorithm development. Students with either an undergraduate honours degree (1st) or MSc (Merit or Distinction) in engineering, mathematics, neuroscience
-
year round Details Research at Sheffield has been developing models of the railway network from a range of perspectives including smart-grid energy consumption, passenger satisfaction, and integration
-
at the University of Sheffield within the consortium is to lead nationally the development of quantum machine learning (QML) algorithms. The research will involve designing innovative QML approaches and collaborating
-
participate in developing algorithms for tau lepton identification, and will also have the opportunity to assist with silicon module construction for the ATLAS tracker upgrade. Instructions for applying can be