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, the sustainable use of the world's coastal systems and the resource-compatible enhancement of the quality of life. From fundamental research to practical applications, the interdisciplinary research spectrum covers
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highly motivated doctoral student to join an ambitious project aimed at building machine and deep learning models to study the genetics of human disease. Funded as part of the Helmholtz AI program, the
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sustainably use forests and safeguard forest biodiversity, a coherent basic science research program is needed that addresses large and complex issues and develops new analytical tools. That’s why the WIFORCE
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Application(s) are invited from suitably qualified candidates for full-time funded PhD scholarship(s) starting in September 2025 affiliated to the School of English, Media & Creative Arts
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: 01.10.2025 Application deadline: 03.09.2025 Tasks Execution of experimental work in a mouse model of cortical multiple sclerosis Application of in vivo imaging and quantitative analysis methods Investigation
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written and spoken English are required. Most importantly, you should strive toward scientific excellence, be highly motivated, ambitious, and hard-working. Only applicants who seek to be among
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relevant state-of-the-art technologies. S/He will benefit from an active seminar program, international conference attendances, opportunities for professional growth. The project will be carried out in
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period.The applicant is expected to apply for their own fellowship, and will be fully supported during the processAccess to state-of-the-art infrastructure and core facilities in a vibrant, world-class
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of material science and industrial application. The successful candidate will be responsible for: Developing an experimental strategy for investigating the main parameters influencing the weld quality between
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Dortmund, we invite applications for a PhD Candidate (m/f/d): Analysis of Microscopic BIOMedical Images (AMBIOM) You will be responsible for Developing new machine learning algorithms for microscopy image