Sort by
Refine Your Search
-
Program
-
Employer
- ; Manchester Metropolitan University
- ; Loughborough University
- Cranfield University
- ;
- ; Cranfield University
- ; Swansea University
- ; The University of Manchester
- University of Aberdeen
- University of Sheffield
- ; Royal Institute of British Architects
- ; University of Bradford
- ; University of Bristol
- ; University of Sheffield
- ; University of Southampton
- Harper Adams University
- 5 more »
- « less
-
Field
-
the exploration of viable opportunities for the application of immersive learning environments to address key performance questions in sport. The successful candidate will work with a range of existing and new high
-
-based solutions (NbS) for water and wastewater treatment. The research will explore sustainable engineering strategies to boost their performance to deliver benefits for the environment and society. The
-
This project has a start date of October 2024. There is a growing body of research describing the benefits of exposure to natural environments for human physiology and psychology. Nature, therefore
-
. The scheme intends to focus on developing the skills and competencies of the successful applicants and on generating practical solutions or considered recommendations that improve the physical environment and
-
joining this ambitious effort, you will contribute to improve the natural environment, the state of our rivers, and help shape future funding and policy strategies in the UK and abroad. Water infrastructure
-
which is part of the Suttie Centre for Teaching and Learning in Healthcare, on the Foresterhill site and support the delivery of high-quality clinical education in the simulated environment in
-
-based solutions (NbS) for water and wastewater treatment. The research will explore sustainable engineering strategies to boost their performance to deliver benefits for the environment and society. The
-
environmental benefit, and enable smarter investments in water infrastructure and management. By joining this ambitious effort, you will contribute to improve the natural environment, the state of our rivers, and
-
experiences, rather than interacting directly with the environment in real-time. Off-line reinforcement learning can be beneficial in scenarios where online exploration is costly, dangerous, or impractical
-
semiconductor, glass and optoelectronics sectors, then UK-SIFS is your opportunity. Application areas: IOT, imaging and artificial / machine vision, monitoring the built environment, extreme environment