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). The post is funded by NIHR and is fixed-term for 24 months, with a possible extension. This project is about creating novel AI models to predict patient outcomes following acceptance or refusal of an offer
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response to DNA damage-induced transcription stress; develop an interdisciplinary skillset by acquiring a practical knowledge of protein purification, ensemble biochemistry, and sample preparation to support
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analysis routines to analyze your data; develop an interdisciplinary skillset by acquiring a practical knowledge of protein purification, ensemble biochemistry, and sample preparation to support your
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). The post is funded by NIHR and is fixed-term for 24 months, with a possible extension. This project is about creating novel AI models to predict patient outcomes following acceptance or refusal of an offer
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practical knowledge of protein purification, ensemble biochemistry, and sample preparation to support your biophysical studies; • interact with biochemist and structural biology collaborators based
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acquiring a practical knowledge of protein purification, ensemble biochemistry, and sample preparation to support your biophysical studies; • come up with suggestions to expand the interdisciplinary
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analyses of viral proteins using AI-based prediction tools will also be integrated to support evolutionary inference. This work lies at the intersection of evolutionary biology, bioinformatics, and data
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of quantitative genetics, performing GWAS, QTL detection, genomic prediction and previous work experience with whole genome sequence data and imputation. A prior knowledge of functional variant prioritisation
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. Responsibilities include: Developing blockchain-enabled digital passports for industrial robots Designing predictive maintenance systems using AI Leading system integration and validation with consortium partners
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evolution during infection, vaccination and autoimmunity. Aim: To decipher the sequence grammar underlying SHM, we will use an AI-based machine learning approach to make predictions about genomic features