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Inclusion, fostering an environment where each and every one of us is appreciated for who we are, regardless of our differences. If you consider that you do not meet all the requirements, we encourage you to
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neuroanatomy, theories, and methods related to the involvement of thalamocortical networks in language and memory, as well as in behavioral and MRI methods, and statistics. Also, s/he will have the opportunity
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biology and bioinformatics, as well as in Machine Learning (including Large Language Models). Good understanding of evolutionary and molecular biology concepts, and good statistical (data analysis) and
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light on the human brain’s unique vulnerability to vascular disorders. What you do Develop scalable, robust, and reproducible data-analysis pipelines (statistics, mathematical modeling, and ML
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Machine Learning software, e.g. PyTorch / TensorFlow / Scikit Learn Highly knowledgeable in mathematical and statistical concepts Proficient in English for technical writing, oral presentations, and general
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-analysis pipelines (statistics, mathematical modeling, and ML) for terabyte-scale 3D histology images, from preprocessing to analysis and validation. Handle and visualize large 3D microscopy datasets. Image
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qualifications: A degree in Biology, Geology and Earth Science, Physics, Mathematics, Geography, Soil Science, Atmospheric Science, Environmental Science, or related fields Good knowledge and skills in statistics
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of upscaling of permafrost thaw and greenhouse gas emissions. The candidate will work with ample of existing observational data at different levels to upscale the processes and quantify larger scale greenhouse
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research. Successful applicants will ideally have: A relevant MSc degree in computer science, data sciences, applied mathematics, statistics, operations research, control, electrical engineering, energy
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function. Deriving design principles for neural networks performing complex tasks. We employ computational and analytical methods from applied mathematics and physics – particularly statistical mechanics