Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Cranfield University
- University of Nottingham
- Newcastle University
- University of Exeter
- The University of Manchester
- University of Warwick
- Imperial College London
- Loughborough University;
- UNIVERSITY OF VIENNA
- University College London
- University of Surrey
- AALTO UNIVERSITY
- Cranfield University;
- Edge Hill University
- Imperial College London;
- Newcastle University;
- Oxford Brookes University
- Queen Mary University of London;
- Swansea University
- The Medicines And Healthcare Products Regulatory Agency;
- The University of Manchester;
- UCL
- University of Birmingham
- University of Cambridge
- University of Essex;
- University of Newcastle
- University of Nottingham;
- University of Oxford;
- University of Plymouth
- University of Surrey;
- 20 more »
- « less
-
Field
-
homogenisation and energy group structure. Investigate the use of AI/ML algorithms to predict or generate cross sections, enabling deterministic solvers to better capture strong heterogeneities and flux gradients
-
on developing the simulation models, data models and algorithms required to enable connected cross-disciplinary design and optimisation, laying the foundations for more integrated and intelligent engineering
-
problems, developing algorithms which have appropriate accuracy, precision, and speed. Write up and present results from own research activity and provide input into the project’s dissemination (technical
-
to run these algorithms, i.e., the AI data centers, are extremely power hungry, thus significantly increasing the burden on the electrical grid. More importantly, the unique AI data centres load patterns
-
to improve our understanding of disease and the effectiveness of treatments, and implementing AI algorithms to deliver safer and more efficient care. The student will have access to a unique training programme
-
event-based cameras. 2. Developing the first-ever AI/ML algorithm to predict the transition in real time. This will be implemented in benchmark transient multiphase flows, such as bubbly flows, turbulent
-
, nonlinear dynamical systems, robotics, and formal methods to develop principled models and algorithms for distributed decision-making in complex and uncertain environments. Your research The candidate will
-
) algorithms in realistic network settings and explore hybrid approaches that combine classical and post-quantum techniques. The project will involve protocol design, system-level evaluation, and performance
-
functional theory. In collaboration with Phasecraft, a leading quantum algorithms company, this project will explore the generation of new quantum computing datasets and the development of machine learning
-
collaborators. Tasks include formulating optimisation problems, developing algorithms for optimisation with Bayesian models, and implementing solutions in relevant software. Further tasks include the formulation