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promotes inter- and transdisciplinary knowledge exchange. If that sounds like something for you, then we are looking forward to your application! Your personal sphere of influence: As a university assistant
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programme FADOS, which comprises 17 PhD students positioned at eight universities, four research institutes, and four companies. We expect that the qualified applicant (at the time of employment) has a
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The University of Marburg, founded in 1527, offers a variety of excellent programs of study for around 22,000 students and confronts the important topics of our time through excellent research
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National Institute for Materials Science (NIMS, Tsukuba, Japan) invites international applications from researchers who can conduct research in materials science. NIMS employs outstanding scientists
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live in. Your role The PhD position is embedded within the MICRO-PATH Doctoral Training Programme, funded by the Luxembourg National Research Fund. MICRO-PATH, or Pathogenesis in the Age of
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Via Multiple Noncovalent Interactions” in the second funding phase at the Martin Luther University Halle-Wittenberg will start with a highly interdisciplinary and ambitious research program in November
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). Understanding these immune-modulating effects is essential to optimize ADC-based therapies. In our study, we plan to systematically investigate two clinically relevant HER2-targeting ADCs, each bearing distinct
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for pre-clinical and clinical application. These will support the development and validation of the cell tracking algorithms. The present project is embedded in a DFG Clinical Research Centre, entitled
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interdisciplinary, and together we contribute to science and society. Your role Multi-omics data integration and workflow improvement Development and application of machine learning-based algorithms
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complete) an M.Sc. (or equivalent) in Computer Science or a related discipline ML expertise: You have strong programming and deep learning experience (e.g., PyTorch, TensorFlow), backed by a substantial