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computational fluid dynamics and numerical modelling will be used to simulate performance under varying runoff scenarios, pollution loads and climate conditions. By developing advanced road gully designs with
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PhD Studentship: Distributed and Lightweight Large Language Models for Aerial 6G Spectrum Management
operate in spectrum environments that are scarce, heterogeneous, and highly dynamic, which makes the traditional static and centralised spectrum management strategies inadequate for ensuring reliable, low
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candidate for developing high-performance sensors. By integrating wireless capabilities, the device can achieve untethered, continuous monitoring of DA, improving its potential for clinical and research
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operators in a cycle of designing bespoke, inflexible models. Large Language Models (LLMs) represent a paradigm shift, offering a path to a more sustainable and intelligent approach. Their emergent
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to propose permitting reforms and ensure environmental and community benefits. (Years 1–2). Objective 2: Optimize FPV system designs for electricity yield, module cooling, operational stability, using
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about the system and its operational context. However, as environmental conditions evolve, these assumptions may no longer hold, leading to inaccurate predictions of adaptation impacts and suboptimal
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on their knowledge and assumptions about the system and its operational context. However, as environmental conditions evolve, these assumptions may no longer hold, leading to inaccurate predictions of adaptation
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analyse the behaviour of individual animals under natural conditions are therefore vital not only for fundamental research to understand why animals behave in the ways they do, but also for applied work
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Methods Marine bivalves such as mussels and oysters are vital for UK coastal ecosystems and support multi-million-pound aquaculture industries. However, their survival and performance are increasingly
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focus (degree of emphasis on prediction by numerical modelling versus machine learning); optional inclusion of (non-essential) field work within the project. Supervisors will provide training in river