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community samples using a photographic system Contribute to data management tasks, such as working with Excel tables and editing sample labels Help with data annotation tasks (image editing) Your Profile We
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Invertebrates I (sponges, cnidarians, matelids and comb jellies) Targeted sorting and preparation of samples Technical assistance for digital imaging and documentation including the use of microscopes. Supporting
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molecular cell identification and single-/two-photon imaging techniques. You will work at the Leibniz Institute for Neurobiology (LIN) with Prof. Stefan Remy and in close cooperation with Dr. Janelle Pakan
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cutting-edge research project within a highly interdisciplinary and international team and a supportive research environment Access to state-of-the-art imaging and analytical facilities Opportunities
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-learning algorithms Versatile data-science knowledge, including image and DNA sequences processing Programming skills in Python or other modern programming languages supporting AI and bioinformatics
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, both written and verbal Knowledge of German and/or a willingness to learn Computer/programming literacy, for example in R, and/or software used in image processing (Adobe Photoshop, ImageJ etc.) Ability
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phenotyping, including image analysis evaluations, for trait quantification Handle NGS datasets for RNAseq or SNP detection and linkage analysis using R Your qualifications and skills: You have a PhD or
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. The letters will then be added to your application in our system and forwarded to the appropriate persons. Please ensure that you only use .pdf files, Word documents and images in .jpg format. Please also
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in the project, including experts in genetics, genomics, rhizosphere biology, and shoot biology to use a whole-plant-systems approach. Your tasks: Root anatomical phenotyping using imaging and
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complex databases of global beach attributes Formulate conceptual models of subterranean estuaries (STEs) in beaches Use AI-based image recognition techniques to automatically classify results from