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(python) and AI/ML frameworks (pytorch, tensorflow or similar) - Experience with predictive models, ideally for image analysis, evidenced by publications - An understanding of and interest in basic
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focus lies on a complementary approach of compression testing and high-pressure torsion deformation. The experiments are performed on hydrogen pre-charged, nanostructured metals and require analysis
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the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Philological analysis of opera scores from
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cellular communities ultimately aiming at the ambitious goal of single cell analysis. The position is limited until 30.09.2027, with the possibility of extension for a further year. Your responsibilities
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with stable-isotope labeled substrates Stable isototope probing experiments Data analysis Publications in peer-reviewed journals and presentations at international conferences Supervision of trainees and
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organelles, small cellular communities ultimately aiming at the ambitious goal of single cell analysis. The position is limited until 30.09.2027, with the possibility of extension for a further year. Your
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cellular communities ultimately aiming at the ambitious goal of single cell analysis. The position is limited until 30.09.2027, with the possibility of extension for a further year. Your responsibilities
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analysis with practically motivated case studies, offering a strong foundation for researchers interested in advancing the mathematical understanding of geometric deep learning. Your Qualifications PhD