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Research Ireland and POI2 partners, Trinity Development & Alumni (supported by philanthropic donations received through TDA) and RCSI. Recruitment into these Ph.D. scholarships will take place over 2 years
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development plan, alongside the production of a substantial thesis to include some element of creative production. More information on doctoral study at UCD is in the Graduate Prospectus: https://www.ucd.ie
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-neutrality by 2050. About this PhD Project Within the Nutrition and Health Platform, jointly led by Ulster University and University College Cork, this PhD position will contribute to the development of a
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inclusive atmosphere and your personal development and wellbeing will be supported. We invite you to join us to help deliver on our exciting mission “To educate, nurture and discover for the benefit of human
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International Relations, and to provide them with the training, experience and mentorship necessary to their professional development. We welcome applications from all areas of the discipline including political
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highly-international school offering an exciting and professionally-valuable environment for academic development. Our staff are engaged in cutting-edge research across the whole spectrum of political
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to study the time evolution of battery electrolytes and interphases. This project will involve developing multi-scale simulation methods, but technical aims related to mitigating electrolyte degradation and
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: There is significant interest in the use of mRNAs as vaccines since the development of the novel Covid vaccines during the pandemic, but also as potential therapeutics in their own right, or as a means to
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group. The rapid evolution of additive manufacturing has opened unprecedented opportunities in the design and fabrication of functional biomaterials that can mimic, repair, and regenerate human tissues
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preprocessing of high-quality data essential for training advanced machine learning models. Task 2: Development and training of a deep learning model to accurately predict the bioprinting input parameters