61 multiple-sequence-alignment positions at University of Cambridge in United Kingdom
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presence by creating content that connects with a broad audience. They will draft and review documents before publication to ensure clarity, alignment, accessibility, and alignment with the ARC's core values
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hundreds of samples from multiple independent marine transmissible cancer clones. The role provides an exciting opportunity to combine single-cell cancer genomics with molecular cytogenetics and statistical
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samples and data. The project integrates whole-genome sequencing, transcriptomics, epigenetic profiling, and clinical information to uncover the key molecular drivers that underpin tumour progression and
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of codon usage bias in gene regulation using various approaches including machine learning and AI, evolutionary genomics, and sequencing data analysis. Your project will focus on using deep learning and
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: Align CCGE programme activities with emerging research priorities to guide and enhance the prioritisation of study activities. Project manage specific activities across the programme. Examples of key
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cells (iPSC), whole genome sequencing, genome wide association studies, epidemiology, experimental psychology, psychometrics, gaze-tracking, and obstetrics. We welcome applications from highly motivated
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methods for analysing paleogenomic data, including sequence evolution modelling. Organise and lead field expeditions to collect sediment cores and carry out subsequent subsampling for ancient DNA extraction
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, and next generation sequencing techniques. This position is available for an immediate appointment. Candidates must have a PhD in a relevant biological subject with expertise in either the DNA or RNA
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death. Vibrio natriegens is one of the fastest-growing organisms ever known, as it can double in about 10 minutes. That said, if we look simply at its protein sequences, it is more than 97% similar
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for personalised breast cancer treatments. Analyse data from cutting-edge technologies (e.g. matched tumour-normal whole genome sequencing, bulk and single-cell RNA sequencing of the tumour microenvironment, spatial