Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- University of Nottingham
- The University of Manchester
- Cranfield University
- Newcastle University
- University of Birmingham
- University of Warwick
- Harper Adams University
- Imperial College London
- University of Newcastle
- University of Sheffield
- University of Exeter;
- University of Plymouth
- Manchester Metropolitan University;
- University of Exeter
- University of Greenwich
- ;
- Abertay University
- Cardiff University
- Edge Hill University
- Lancaster University;
- Loughborough University;
- Newcastle University;
- Swansea University
- Swansea University;
- The University of Edinburgh
- The University of Manchester;
- UCL
- UNIVERSITY OF VIENNA
- University of Dundee;
- University of East Anglia
- University of Liverpool
- University of Oxford
- University of Strathclyde
- University of Surrey
- University of Surrey;
- University of Sussex
- University of Warwick;
- 27 more »
- « less
-
Field
-
intelligent systems aim to optimize power usage without compromising performance, employing strategies like power-aware computing and thermal-aware optimization. These systems are crucial in extending
-
these extreme events across a series of complex flows. This will entail performing high-fidelity simulations of a range of flows exhibiting extreme events, developing hybrid physics-based/machine learning
-
Electrophysical remanufacturing of aerospace gas turbine components for performance restoration and critical material safeguarding This exciting opportunity is based within the Advanced
-
to assess feasibility and optimise performance under uncertain subsurface conditions. Two principal configurations are employed: closed-loop systems, commonly referred to as deep borehole heat exchangers
-
are invited for a fully funded Industrial Doctoral Landscape Award in partnership with Siemens Digital Industry Software, focused on advancing the next generation of industrial Computational Fluid Dynamics (CFD
-
for manufacturing. • Pioneered metal-free processes Reducing reliance on costly and hazardous precious metal catalysts. • Delivered high-performing biocatalysts Engineered industry-ready enzymes suitable for large
-
Research Assistant to investigate digital reading comprehension through large-scale data analysis. This role, funded by the John Fell Fund, sits at the fascinating intersection of computational
-
AI techniques for damage analysis in advanced composite materials due to high velocity impacts - PhD
to cutting-edge facilities including High-velocity impact testing, Advanced composite manufacturing labs, X-ray computed tomography and High-performance computing resources for AI model training This project
-
, characterization and the development of miniaturized devices. Experience with multivariate analysis, computational methods or statistical techniques is highly desirable. The PhD projects are highly interdisciplinary
-
learning, control theory, and embodied autonomous systems. The successful candidate will contribute to the development of learning-based control methods that are not only high-performing, but also safe