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the Faculty of Life Sciences & Medicine Hub for Applied Bioinformatics. This post is jointly funded by the Borne Foundation (50%) and King’s Health Partner’s Centre for Translational Medicine (CTM) (50
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backgrounds, including computational chemistry, bioinformatics, systems biology, and machine learning. The project offers a unique opportunity to collaborate closely with experimental scientists and contribute
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infectious diseases and population health), close ties with NHS partners, and a commitment to translational research and high-quality teaching. The Hub for Applied Bioinformatics (HAB) is the Faculty’s focal
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-quality teaching. The Hub for Applied Bioinformatics (HAB) is the Faculty’s focal point for computational biology, delivering bespoke bioinformatics support and training across genomics, transcriptomics
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-quality teaching. The Hub for Applied Bioinformatics (HAB) is the Faculty’s focal point for computational biology, delivering bespoke bioinformatics support and training across genomics, transcriptomics
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-of-the-art core facilities for flow cytometry, genomics, and bioinformatics. This role provides a unique opportunity for an ambitious scientist to advance their career in translational immunology. This is a
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, biochemistry, cell biology, bioinformatics and structural biology, with rich clinical resources in microbiology, virology, sexually transmitted diseases and clinical trials. A major thread running through our
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techniques are essential. The position is based at Guy's Hospital, giving you access to state-of-the-art core facilities for flow cytometry, genomics, and bioinformatics. This role provides a unique
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that combine deep learning, computer vision, and bioinformatics to extract actionable insights from complex, multi-modal data, including medical imaging, genomics, and clinical records. A central theme of our
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bioinformatic workflows. Familiarity with biomedical ontologies and text mining on Electronic Health Records and biomedical literature Knowledge of machine learning / deep learning with an interest in