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interested in consumer behaviour, cross-cultural research, sustainability, and experimental methods. Supervisors Primary supervisor: Ruby Appiah Campbell Secondary supervisor: Dr Kemefasu Ifie Entry
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that conduct research with academic leaders across leading UK institutions. Engage in online and face-to-face activities, including cohort-building events and collaborative learning exercises • Funding: A
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that may be used in a variety of consumer and industrial application. You'll leverage your expertise in organic chemistry to modify polymers using green chemistry and hydrogen/electrons/photons, enabling
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, manufacturing technologies, and circular economy. The primary objective of FAST is to establish the scientific and technological knowledge base required to enable the large-scale use of post-consumer scrap (PCS
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industries, including transportation, consumer electronics, and industrial automation. This PhD project focuses on the design and optimization of intelligent systems with an emphasis on energy efficiency and
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, with direct industrial relevance to consumer product formulation and process optimization. This project aims to enhance the accuracy of surfactant behaviour predictions by integrating molecular dynamics
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students that conduct research with academic leaders across leading UK institutions. Engage in online and face-to-face activities, including cohort-building events and collaborative learning exercises
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of analytical methods, digestion models, dietary modelling, and conducting consumer surveys will form part of the Doctoral Network’s tasks. The 12 PhD candidates will be based across seven different universities
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of analytical methods, digestion models, dietary modelling, and conducting consumer surveys will form part of the Doctoral Network’s tasks. The 12 PhD candidates will be based across seven different universities
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, these contaminants may be consumed from the operating environment; as in the case of NaCl, marine atmosphere plays the part while the industrial environment can be attributed to the presence of Sulphur. These factors