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on mutation influx and in how we can identify cancer driver events from observed mutation data. To this end, we develop mathematical and computational approaches to estimate mutation rates, tumor growth
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, metabolomics, evolutionary theory, quantitative genetics, data science, toxicology, and law. Within this project, our group at the CRG focuses on the analysis of bulk and single cell RNA-seq from five different
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31 May 2024 Job Information Organisation/Company Centre for Genomic Regulation Department COMPUTATIONAL BIOLOGY AND HEALTH GENOMICS Research Field Other Researcher Profile First Stage Researcher (R1
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31 May 2024 Job Information Organisation/Company Centre for Genomic Regulation Department COMPUTATIONAL BIOLOGY AND HEALTH GENOMICS Research Field Other Researcher Profile First Stage Researcher (R1
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31 May 2024 Job Information Organisation/Company Centre for Genomic Regulation Department COMPUTATIONAL BIOLOGY AND HEALTH GENOMICS Research Field Other Researcher Profile First Stage Researcher (R1
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in biodiversity genomics Interest in web application development Interest in data and project management Education and training Bachelor's degree or higher in bioinformatics, computer science, or a
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of living cells organizes itself. The lab uses a bottom-up synthetic biology approach and computer simulations to gain insight into the molecular mechanisms and physical principles underlying microtubule
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17 May 2024 Job Information Organisation/Company Centre for Genomic Regulation Department Core Technologies Programme Research Field Other Researcher Profile First Stage Researcher (R1) Recognised
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10 May 2024 Job Information Organisation/Company Centre for Genomic Regulation Research Field Other Researcher Profile First Stage Researcher (R1) Recognised Researcher (R2) Country Spain
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sequence data. Explore graph neural network architectures for capturing complex relationships in protein sequences. Investigate contrastive learning techniques to improve representation learning for protein