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16 Sep 2025 Job Information Organisation/Company KU LEUVEN Department ProcESS Research Field Engineering » Chemical engineering Researcher Profile First Stage Researcher (R1) Country Belgium
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position within a Research Infrastructure? No Offer Description PRIME LEAP (“Next-generation intensified chemical processes integrating plasma and single-atom catalysis”) is a European research and training
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Department: Molecular Imaging – Pathology – Radiotherapy – Oncology Regime Full-time Let’s shape the future - University of Antwerp The University of Antwerp is a dynamic, forward-thinking
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are highly anisotropic and non-linear. Furthermore, the dynamics of high-speed manufacturing processes need to be included in the modelling framework, ensuring its applicability to industrial processes
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you will do in English. Procedure for Applying If you are motivated, mail us your application, which should include a full CV, study transcripts, a motivation letter, copies of your publications (incl
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principles that regulate host-pathogen interactions and feedback, using a combination of quantitative imaging, microfluidics, statistical analysis and machine learning tools. A specific focus will be put
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the selection procedure. If you have any questions about the online application form, please check the frequently asked questions or send an email to jobs@uantwerpen.be . For more information, you are welcome
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calibration, electronics (e.g. image sensors), … PhD applicants should hold a MSc degree in astrophysics, physics, or engineering, or have obtained an equivalent diploma. Proficiency in English is required
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the genetic and clinical variability of PRPH2-IRD by studying a large patient cohort with detailed genetic analysis and advanced imaging techniques. The project will focus on identifying genotype–phenotype
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image sequences. As a benchmark, end-to-end deep learning models will be developed using raw image data. In parallel, shallow learning models (e.g., Gaussian processes) will be explored based on insights