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Researcher Profile First Stage Researcher (R1) Positions PhD Positions Country United Kingdom Application Deadline 16 Oct 2025 - 23:59 (Europe/London) Type of Contract Temporary Job Status Full-time Offer
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. Yet, many stellar and planetary parameters remain systematically uncertain due to limitations in stellar modelling and data interpretation. This PhD project will develop Bayesian Hierarchical Models
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avenues by enabling chronic, gut-based monitoring of neuroendocrine activity for applications such as closed loop therapeutics. The proposed PhD project sits at the interface of biomedical engineering
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its first two years of science operations. However, new modelling efforts are needed to fully interpret these datasets. In this PhD project, the researcher will use atmospheric modelling techniques
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coherence bandwidth and thus bit rate are maximised. The PhD project will explore new techniques to overcome incoherent scattering in THz communications. The overall research aim is to lay down a measurement
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. This PhD project will explore a novel approach: leveraging polymeric microelectromechanical systems (MEMS) technology to create a miniaturised micropump-based ingestible capsule that can actively deliver
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between these molecules to engineer new quantum states. However, so far it is not well known how to achieve entanglement with molecules with such plasmonic systems. This PhD project will focus on developing
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, please see: https://www.sr.bham.ac.uk/phd/index.php Funding Notes The project is Research Council funded (STFC) and only covers tuition fees for UK students plus the usual stipend. The position is open to
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. This PhD will design methods that enable robots to achieve more robust, accurate perception and perception-driven planning for complex processes. You will investigate solutions like multi-sensing fusion (e.g
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the corrosion of reinforcing steel, which compromises safety, durability, and sustainability. Current corrosion prediction models often fall short because they rely on oversimplified assumptions and