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and modeling infrastructures, as well as IAT research groups for methods development. The services support the research of ZALF and the three partner universities in Hesse (Giessen, Kassel, Geisenheim
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across five departments—Physical Oceanography, Marine Chemistry, Biological Oceanography, Marine Geosciences, and Marine Observations—in an interdisciplinary framework as part of a joint research program
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mechanisms. Job description: • Research and development in the field of AI-supported analysis of biomedical data • Implementation and evaluation of methods for AI validation and model interpretability
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tasks, the work could also involve modeling if there is interest. You can write your master thesis on the topic. Your Profile: Proven hands-on experience in laboratory work (internships, courses
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. Recent work of our group includes: o Robustness of neural networks (https://proceedings.mlr.press/v162/schwinn22a.html) o Novel threat models in LLMs (https://arxiv.org/pdf/2402.09063) o Efficient
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, public relations, and outreach activities. Your profile You hold a Master’s or PhD degree in the natural sciences, engineering, physics, medical technology, biomedical computing – or a related field. You
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to the table You are an enrolled student in Chemnitz, Mittweida, Freiberg, Dresden or the surrounding area. You are studying economics, industrial engineering, computer science, physics or a comparable course
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training methods such as insufficient time and resources, other industries have explored alternative learning models such as micro-learning. In this learning model, the content is broken into smaller pieces
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-hydroelastic simulation of wind turbines. The focus lies on improving simulation and validation methods for onshore, offshore and floating wind turbines with our developed simulation model »Modelica Library
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biological samples' 3D structure and molecular identity. At iBIO, we bring together cutting-edge science from biology, chemistry, engineering, and computer applications. Our overarching aim is to obtain a