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About us At the Centre for Developmental Neurobiology (CDN), we investigate the mechanisms governing the formation of the brain during embryonic development and in early postnatal life. This is
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programme on children and young people attending the UK Gender Services because of gender incongruence. PATHWAYS is a research programme with multiple workstreams whose aim is to understand young people with
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. Research staff at King’s are entitled to at least 10 days per year (pro-rata) for professional development. This entitlement, from the Concordat to Support the Career Development of Researchers , applies
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challenges and pressing environmental, geopolitical, urban and rural issues. Our research findings contribute to public debates and policy development at national and international scales, making important
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(ideally in neuroscience) Ability to trouble shoot laboratory problems Ability to work collaboratively Ability to manage multiple tasks concurrently A commitment to creating an engaging and supportive
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class of signalling molecule that acts during embryonic development to generate a variety of cell states. In response to distinct threshold levels of morphogen signalling, cells follow different fates and
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This exciting research role will be responsible for the successful delivery and future development of a newepilepsy research project jointly run by King’s College London and Swansea University and funded by
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with epilepsy across multiple NHS hospitals. They are expected to have some experience working with NLP in general and LLMs in particular. They will also help to further develop machine learning models
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A morphogen is a special class of signalling molecule that acts during embryonic development to generate a variety of cell states. In response to distinct threshold levels of morphogen signalling
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, the development and fine-tuning of vision foundation models, multiple instance learning, survival analysis, and interpretable model development. You will also lead efforts in building multimodal deep learning