24 postdoctoral-plant-molecular positions at Queen's University Belfast in United Kingdom
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monitoring pathogen levels and antimicrobial resistance within selected wastewater treatment plants and nursing home sites across Northern Ireland. The project will involve the routine sampling of wastewater
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candidate will expand the research excellence and strengthen the academic base within the Wellcome-Wolfson Institute for Experimental Medicine, employing multidisciplinary and innovative approaches to advance
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candidate will expand the research excellence and strengthen the academic base within the Wellcome-Wolfson Institute for Experimental Medicine, employing multidisciplinary and innovative approaches to advance
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infection biology team led by Prof Jose Bengoechea in the Wellcome-Wolfson Institute for Experimental Medicine. We focus on understanding how antibiotic resistant infections counteract our defences to inform
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to undertake advanced research in scientific or high performance computing, develop and contribute to our ambitious research agenda and lead University-wide efforts to establish Queen’s as an international
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& Compilers to undertake advanced research, develop and contribute to our ambitious research agenda, lead University-wide efforts to establish Queen’s as an international leader in programming languages
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to undertake advanced research, develop and contribute to our ambitious research agenda and lead University-wide efforts to establish Queen’s as an international leader in distributed computing and computing
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Technologies to undertake advanced research, develop and contribute to our ambitious research agenda and lead University-wide efforts to establish Queen’s as an international leader in next-generation computing
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similar discipline) Demonstrate postdoctoral research experience in a relevant area, including but not limited to, securing networked Cyber-Physical Systems (CPS) related to Critical National Infrastructure
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, Industrial IoT, and data-driven modelling and simulation (digital twins) for system optimisation, and contribute to our ambitious research agenda and University-wide efforts to establish Queen’s as an