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, communicate complex information, orally, in writing and electronically and prepare proposals and applications to external bodies. Applicants will possess a relevant PhD and a strong background related to
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IoT, sensors, Blockchain, AI, and Machine Learning tailored to address these needs. The role may require the postholder to develop a comprehensive strategy for investigating the role of testbeds in
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presentations at conferences and other events. Applicants will possess a relevant PhD or equivalent qualification/experience in a related field of study. They will have proven expertise in many of the following
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events. Applicants will possess a relevant PhD (or nearing completion for PDRA role) or equivalent qualification/experience in a related field of study. The successful applicant will be a nationally
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. Applicants will possess a relevant PhD or equivalent qualification/experience in a related field of study. The successful applicant will be a nationally recognised authority in neuroimaging and
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presentations at conferences and other events. Applicants will possess a relevant PhD or equivalent qualification/experience in a related field of study. The successful applicant will be a nationally recognised
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deliver research, consultancy or similar programmes and actively seek and secure research funding. The successful applicant will possess a PhD in social-personality psychology, organisational behaviour
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generated from DFT calculations. About you Applicants will possess a relevant PhD or equivalent qualification/experience in materials, physics, chemistry, or a related field of study. For Fellow level the
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PhD or equivalent qualification/experience in materials, physics, chemistry, or a related field of study. For Fellow level the successful applicant will likely to be a nationally recognised authority in
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implement algorithms, analysis methods, visualisation tools and machine learning approaches to interrogate multimodal ‘omics datasets. You will create mathematical and/or computational models