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linguistic insights into computational models and help build open-source tools and resources that will support future research in historical semantics and NLP. You will be responsible to the Principal
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response, and patient stratification. As clinical diagnostics move toward more personalised and preventative models, it is increasingly vital that sampling approaches are minimally invasive and patient
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stratification. As clinical diagnostics move toward more personalised and preventative models, it is increasingly vital that sampling approaches are minimally invasive and patient friendly. This role contributes
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structural properties of nanostructures and nanoparticles. We combine expertise in nanofabrication, laser science, nonlinear optics, sensing, advanced imaging techniques and numerical modelling. About the role
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conducting case studies on Latin lexical semantics. You will work closely with computational linguists to integrate linguistic insights into computational models and help build open-source tools and resources
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in a computational model of paranoia may be influenced by THC administration or in support-seeking participants under sober conditions. The postholder will collect a range of psychopharmacology
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of international collaborations. Research experience with modelling organic molecules or polymers. Downloading a copy of our Job Description Full details of the role and the skills, knowledge and experience required
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innovative EU-funded project at the intersection of polymer chemistry, computational modelling, and machine learning. The primary role is to develop a complete in silico framework to accelerate the discovery
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for analysis of large-scale bulk and single cell data sets Strong understanding of statistical modelling, data normalisation and machine learning methods applied to biological datasets Experience with data
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proteins — offering unprecedented insight into disease mechanisms, therapeutic response, and patient stratification. As clinical diagnostics move toward more personalised and preventative models, it is