313 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"BioData"-"BioData" positions at University of Sheffield
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. This will include data collection, data analysis, and leading the development of outputs and dissemination strategies. We are a growing, diverse team of researchers with a strong focus on equality and
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duties and responsibilities Make an active contribution to the establishment of novel instrumented external test beds, and in developing suitable tools for the data analysis activities planned in
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other members of the study team (e.g. the clinical research fellow, research nurses, the statistician, the data manager and clinical studies associate) to ensure the implementation of all aspects
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engineering. Recent advances in large language models (LLMs), such as ChatGPT, GitHub Copilot, and similar systems, have shown that these models can generate computer code from short pieces of text (i.e
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industries where property gradients are required; these will include automotive, aerospace, and chemical industries. Our method is iterative and data-driven, with a strong emphasis on optimisation
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). The Spatial Living Biobank leverages unique cell models, tissue and data to capture complex spatial differences within solid tumours and improve cancer drug development. This Fellowship is focused on furthering
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experimental work, undertake data analysis, prepare results for publication and communicate findings in workshops and conferences. This appointment will be subject to advanced pre-employment screening (via
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applicable in real time or without availability of case-specific data in terms of machine types. To address such problems, recent works have proposed machine learning techniques and data which can be easily
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characteristics of devices. Data analyses will include device simulations and comparisons with other technologies. In addition, there will be device fabrication activities to produce suitable samples
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for designing everything from longer-lasting batteries to more effective medicines. However, a major roadblock exists: understanding the complex data from these experiments is a slow, manual process that can