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. The researcher will lead the automation of image acquisition on the aberration-corrected Spectra 200 (S)TEM located in the Cardiff Catalysis Institute (CCI). They will write code to automatically acquire hundreds
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Criteria Qualifications and Education 1. Postgraduate degree at PhD level or equivalent in applied maths, computational modelling, biomedical engineering, medical physics, imaging science, or a closely
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astrocyte physiology and neuron–glia signalling, is launching his new research programme at UK DRI Cardiff University in summer 2026. The lab will integrate molecular genetics, advanced imaging
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scientist with proven intellectual and technical abilities to work on a synthetic organic chemistry project. The project, funded by the Leverhulme Trust, aims to develop a new paradigm in organic synthesis
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members who will conduct brain imaging in these adolescent participants. Participants and their families will travel to Cardiff University to take part in the research. Assessments may take place during
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-doctoral staff, PhD, MSc and undergraduate students. Excellent communication skills, time management, and self-motivation will be essential for this role. For enquiries about this position please contact Dr
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with adolescents measuring how social isolation impacts the processing of aversive and rewarding cues. The successful applicant will already have some experience with brain imaging (either collecting
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into the function of intracortical feedback pathways in learning and memory. The candidates should have a Postgraduate degree at PhD level (or nearing completion / submission) in the area of Neuroscience and an
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relation to the recruitment / application process can be sent to Leah Fowler, HR Administrator - SHARE-HR@cardiff.ac.uk. Salary: £33,951 - £36,636 per annum (Grade 5). We anticipate that this post will start
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advanced computer modelling (in silico), through robot driven testing of implanted knees (in vitro), to 3-dimensional X-ray imaging of moving patients (in vivo) with Machine Learning driven analysis