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to the design of the upwelling academy programme - could contribute to delivery and coordination of some of the above-mentioned training and contribute to assessing the hackathons to determine who will
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, and generate high-quality datasets for predictive microbial modelling and risk assessment. Responsibilities include contributing to the design and execution of food challenge studies, integrating
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, the candidate will design and implement a robust impact assessment framework to evaluate how the digital LCA platform influences sustainability performance across dairy supply chains, including changes in
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regeneration and Nature-based Solutions in disadvantaged areas through the development of innovative co-analysis, co-design, and co-monitoring tools and methodologies for engaging with the community
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challenges at the interface of food systems, sustainability, and bioeconomy innovation. The successful candidate will have primary responsibility for leading life cycle assessment (LCA) and sustainability
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& Environment for Sustainability and Innovation Centre (IRESI), is a research centre housed in the School of Business. IRESI's research focuses on propelling sustainable energy systems into the future by helping
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pilot a robust, replicable, and sector-sensitive framework for quantifying realised emissions outcomes across key policy domains, aligned with EU reporting requirements and national Climate Action Plan
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Electronics Concepts, operation and maintenance GHz bandwidth, high signal/noise data acquisition and storage. Instrument Design and Fabrication Principles of, and experience with, scientific instrument design
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they will focus on developing microneedle skin patches to deliver next generation malaria vaccines based on newly identified antigens and newly licensed adjuvants. The research will involve designing, testing
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production lines can reconfigure in real-time, in collaboration with domain experts (e.g. operators, planners, designers) that are supported by digital twins, AI, and predictive analytics. Process equipment