40 parallel-and-distributed-computing-phd PhD positions at University of Cambridge in United Kingdom
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the cerebral cortex. fUS ultrasound waves are similar to CUS but using novel image reconstruction techniques and parallel computing technologies reaching 10,000 frames per second, enables very sensitive mapping
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Developing novel patient centred pathways, following acute presentation with mild traumatic brain injury A fully funded PhD at the University of Cambridge, under the supervision of Dr Virginia
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materials and electronics. The PhD student in Cambridge will work on switching in oxide films and will involve film growth by pulsed laser deposition as well as use of a wide variety of characterisation tools
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catalytically active metals to drive chemical reactions with light [3-4]. The specific goals of this PhD project are to 1) understand how plasmonic Mg nanoparticles and their surface oxide layer attract and
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the University's Applicant Portal for a PhD in PhD in Medicine. Please apply via the application portal here - https://www.postgraduate.study.cam.ac.uk/courses/directory/cvmdpdmed Please quote reference RC45508
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AHRC Collections & Communities in the East of England Collaborative Doctoral Partnership (CDP) PhD studentship: Reimagining Caribbean Collections: Unveiling Histories of Identity and Wellbeing
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We are seeking an applicant for a fully-funded ERC Research Assistant position with the opportunity to undertake PhD studies in statistical methodology and theory led by Professor Richard Samworth
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Fixed-term: The funds for this post are available for 4 years in the first instance. AHRC Collections & Communities in the East of England Collaborative Doctoral Partnership (CDP) PhD studentship
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for the award, applicants must be accepted onto the doctoral programme. Candidates must apply for the PhD in Social Anthropology through the University's Graduate Admissions application portal by no later than
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or sensor arrays. Experience generating, processing and analysing large material property datasets including correlating between multiple techniques, or developing computational reconstruction techniques