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and determination? We are currently seeking a/an PhD in AI-assisted proteomic data analysis applied to Human Health 50 Faculty of Life Sciences Job vacancy starting: 01.09.2025 (MM-DD-YYYY) | Working
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Artificial Intelligence, META Center for Host-Microbe Systems Biology, the Center for Genome Function, and the Materials Science Institute. The Department’s educational mission focuses on undergraduate and
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Responsibilities Lead and co-author peer-reviewed publications, funding applications, and reports Design and facilitate workshops, public talks, and community engagement activities Conduct a meta-study on
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workshops, public talks, and community engagement activities Conduct a meta-study on collaborative transdisciplinary PhD cohort Co-develop energy literacy and communication projects Collaborate with academic
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. Key Responsibilities Lead and co-author peer-reviewed publications, funding applications, and reports Design and facilitate workshops, public talks, and community engagement activities Conduct a meta
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cooperative, competitive, and mixed settings. Collaborative decision-making frameworks and decentralized learning algorithms. Adaptive, meta-learning, and context-aware strategies to enhance policy
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This project will utilise the internationally unique pathogen genomic and associated meta data for all TB cases in the UK, numbering in the tens of thousands over more than a decade. This data set
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meta-epidemiological study to investigate the impact of placebo blinding in randomised trials of respiratory infections in primary care. The postholder will identify eligible studies and assist with data
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2025 Reference: RD-PHD-02-LS-MH-25 Project Title: Dietary strategies to reduce methane production in dairy cows and their effects on the rumen microbiome and metabolism Primary supervisor: Prof. Liam
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As part of the Restoration Ecology And Dynamics (READY) Doctoral Focal Award, we invite applications to the following PhD project: Harnessing ecosystem resilience to inform woodland restoration