Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Cranfield University
- University of Birmingham
- Loughborough University;
- The University of Manchester;
- University of Sheffield
- The University of Edinburgh;
- University of Cambridge
- University of East Anglia;
- University of Nottingham
- Durham University;
- Imperial College London;
- Loughborough University
- Manchester Metropolitan University
- The University of Manchester
- Ulster University
- University of Birmingham;
- University of Bradford;
- University of East Anglia
- University of Leeds
- University of Newcastle
- University of Nottingham;
- University of Warwick;
- 12 more »
- « less
-
Field
-
change accelerate, we urgently need smart, evidence-based tools to plan, manage, and protect our marine ecosystems. At the forefront of this innovation is machine learning. Its ability to process complex
-
Primary Supervisor - Prof Kate Kemsley Scientific Background Deforestation is a major global issue, destroying biodiversity and accelerating climate change by removing vital carbon sinks. The newly
-
increasing pressure to reduce its carbon footprint while ensuring long-term performance of infrastructure, particularly in environments that accelerate material degradation. This PhD aims to develop and
-
Deterioration of earthworks slopes (cuttings and embankments), which support transport infrastructure and act as flood defences, is accelerating under increasing weather extremes resulting from
-
, integrity-aware multi-domain navigation benchmark and associated algorithms, tested in realistic operational environments. The outputs will support standardisation efforts, accelerate cross-domain navigation
-
Deterioration of earthworks slopes (cuttings and embankments), which support transport infrastructure and act as flood defences, is accelerating under increasing weather extremes resulting from
-
force actuator,[4] that rotaxanes under tension act as a lever that accelerate the dissociation of interlocked covalent bonds,[5] and that catenanes can act as mechanical protecting groups.[5] In
-
both sites. The project sits at the interface of cell line engineering, protein science and machine learning and you will receive advanced training in these areas while developing methods to accelerate
-
the development of specialized hardware architectures capable of efficient, real-time processing. Embedded AI hardware architectures, including neuromorphic processors and low-power AI accelerators
-
Are you ready to push the boundaries of engineering innovation and accelerate the world’s transition to carbon-neutral energy systems? Join the Thermofluids Group in the School of Mechanical