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video explaining why you are the ideal candidate for this position Incomplete applications will not be considered. The intended start date is November/December 2025. Contact Information For more details
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biology and nutritional condition, providing critical insights into the overall health and sustainability of marine mammal populations. There is abundant archival data and samples available, collected
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Your suitability is ideally demonstrated by: • Expertise in survey statistics and methodology • Experience with data integration methods • Knowledge of small area estimation Our offer a job for six
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for partners of new faculty members moving to Groningen. Unsolicited marketing is not appreciated. Information For information you can contact: Prof. dr. Iris Vis, i.f.a.vis@rug.nl (please do not use the email
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database of ca. 8 million stories, including information extracted from the full text of the stories via NLP techniques. Some information is already available in structured format, some other can be imported
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-derived organoid models. You will work closely with in-house technology platforms, including the Single Cell Genomics Facility, Big Data Core and High Throughput Screening Facility. Our research is embedded
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biology and systems chemistry/complex molecular systems. The research programme of the Feringa group focuses on synthetic and physical organic chemistry, inspired by Nature's principles of molecular
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, transport options and CO2 sources, as well as data on local regulation, (market ready) technologies and associated costs. The aim is to develop a (semi-)automated data acquisition workflow that will allow
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of mechanical and physical properties of thin carbon/boron-nitride nanotube (CNT/BNNT) films. The goal of the project is to calibrate an existing numerical model and reproduce the realistic mechanical properties
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develop a simplified model focusing on the leader stage. You will: Analyze experimental data and microscopic simulations Identify relevant physical features and parameters Apply machine learning techniques