47 requirements-engineering-"https:" "https:" "https:" "UCL" "UCL" PhD positions at Leibniz
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CANCER (F/M/D) Starting on May 1st, 2026 (with flexibility). We have pioneered the development of synthetic tumor immune microenvironments, engineered from artificial cells that mimic immune functions
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/biomedical engineering or of relevant scientific field A solid background in machine learning Extensive experience with either computer vision or image analysis Good knowledge of deep learning packages
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related fire regimes by conducting factorial experiments using multiple climate-change scenarios Requirements: a master’s degree in biophysical, environmental and/or ecological sciences ability to work with
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at: https://www.isas.de/en/datenschutz . The closing date for applications is April 18, 2026. Please apply via our applicant portal . If you have any questions (reference number 393_2026), feel free
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-L. If you need further information, please feel free to contact Dr. Anna Backhaus Tel.: +49 (0) 39482 5202 What you need to know: For us, your qualifications and strengths count. Therefore, everyone
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The Bernhard Nocht Institute for Tropical Medicine (http://www.bnitm.de/en ) is the largest Research Institute for Tropical Medicine in Germany and is the National Reference Centre for Tropical
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) Personalabteilung Martinistraße 52, 20251 Hamburg https://jobs.leibniz-liv.de/jobposting/4eb2e658751a065d61aa2c3c40e370b128d0e0800?ref=homepage
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Familiarity with neurophysiology, particularly electrophysiological recording (coursework counts) Comfort working in an empirical, hands-on research environment You don’t need to tick every box. If the research
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programming, preferably Python and R, is required. Experience with mass spectrometry data, in particular metabolomics, and geometric machine learning is a plus. In addition to above-average interest in
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well as experience in omics data analysis, and possesses solid English-language skills. Experience with programming, preferably Python and R, is required. Experience with deep learning frameworks, such as JAX