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hymenopteran evolutionary venomics Apply for this job See advertisement About the position Position as a researcher in hymenopteran evolutionary venomics is available in the Undheim group (Eivind Andreas Baste
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on JavaScript in your browser and try again. Ulla Schildt/NHM 10th August 2025 Languages English English English Natural History Museum PhD Research Fellow in Plant Evolutionary Genomics Apply for this job See
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31st May 2025 Languages English English Norsk Nynorsk English Postdoctoral Research Fellow position within Algorithms and Extremal Combinatorics Apply for this job See advertisement UiB - Knowledge
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mathematical modelling tools. Excellent knowledge of programming languages such as R, Python, Julia, etc. Familiarity with AI algorithms and Machine Learning Fluent oral and written communication skills in
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. Familiarity with AI algorithms and Machine Learning Fluent oral and written communication skills in English Desired qualifications: Experience with research on epidemiological modelling, with an emphasis
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, algorithms and systems architecture. Interest in functional programming and other programming paradigms is also relevant. ETL, data wrangling and data analytics Competence in mathematics/statistics
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hypothesis that evolutionary selection on 3D genome organizationdrives gene regulatory evolution following whole-genome duplication (WGD) High-throughput 3D genome mapping with Hi-C will be performed across
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the interface between different scientific disciplines including ecology, evolutionary biology, mathematics and statistics, informatics, economics and social sciences. We aim to apply advanced statistical and
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neurotechnologies. The goal is to contribute broadly to research on applications of AI in medicine, and in particular to the development and validation of novel computational language models, algorithms, and tools
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in five sections covering topics within biochemistry, molecular biology, physiology, cell biology, genetics, aquatic biology, toxicology, ecology, and evolutionary biology. The Department also operates