434 data-"https:"-"https:"-"https:"-"https:"-"BioData" positions at University of Oxford
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will also be part of the Data Analytics and Epidemiology (DAE) group (PSI) with opportunities for collaboration and career development. The position is suitable for a highly motivated computational
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to determine whether the Hubble tension arises from observational issues or from limitations in the current cosmological model by combining lensing information and dynamics of the lens to measure H0
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during field trials; working with on-site teams to oversee robotic platforms from both a technical and health and safety standpoint. For more information about the ORI, please see: ori.ox.ac.uk Informal
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delivering multiple trials concurrently across different clinical phases, with full operational oversight encompassing regulatory submissions, governance, data storage and archiving, participant recruitment
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Licence (PIL A, B & C) to conduct or assist with intracranial surgery in animal models. Assist with obtaining research data, such as immunocytochemistry and microscopy in brain tissue, molecular or chemical
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of Paediatrics at the University of Oxford. The goal of our research is to understand the information that shapes the complex physical architecture of the heart wall, and how it can be disrupted to produce
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and data-led insight to colleagues, agency partners and senior stakeholders. Key Responsibilities Lead the development and implementation of a multi-channel paid media strategy across platforms
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, e.g. weekly meetings, journal clubs, seminars etc. There has been progress using GenAI, like diffusion models & flow maps, for inverse problems. The GenAI models act as data-derived priors, while
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to prioritise tasks and meet deadlines, excellent attention to detail and a high level of accuracy in data entry and record keeping; strong written and verbal communication skills and excellent interpersonal
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to the design and analysis of normative frameworks and aggregation rules, and develop scalable solutions for handling ambiguity and incomplete information in stakeholder inputs. About Us The University of Oxford