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As a great University in a great global city, we offer outstanding career opportunities to great people. Join us as a Post Doctoral Research Associate and experience well-structured development
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within the crystal structure of a host. Even at minute quantities, this can significantly alter the properties of crystals. Although solid solutions in metals and inorganic materials are well-studied
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As a great University in a great global city, we offer outstanding career opportunities to great people. Join us as a Post Doctoral Research Associate and experience well-structured development
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; Demonstrable expertise in thermal and/or electromagnetic NDE (optical, inductive thermography or electromagnetic sensing) or heat‑transfer modelling of composite structures; Hands‑on experience with IR cameras
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for carrying out research to develop iPSC-derived lung cell models. Working within a team of biochemists, cell and structural biologists, you will perform experimental work to apply omics technologies, advanced
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and apply cutting-edge techniques in crystal synthesis, characterisation and modelling to study and generate a new understanding of MoSS. These advances will have applications across multiple sectors
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Postdoctoral Research Associate in Solid-State Modelling ( Job Number: 25001351) Department of Chemistry Grade 7: - £38,784 - £46,049 per annum Fixed Term - Full Time Contract Duration: 36 Months
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the delivery of the 3-year EPSRC Funded ‘Digitally Enabled Circular Healthcare Innovation’ (DECHI) research programme. The aim of the programme is to investigate how advances in digital technologies and digital
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, advanced characterisation and materials modelling. The ambition for this project is to carry out multidisciplinary research that will explore Li-rich three-dimensional cathodes free from Co and Ni and with
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learning architectures including generative models, particularly for sequence or structural data (e.g. transformers, graph neural networks) Proved experience in working independently and as part of a