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endomembrane biology, with a focus on how secretory organelles establish and maintain their function and morphology during growth and stress. These studies aim to enable the translation of fundamental
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layered semiconductor characterized by an anisotropic crystalstructure and quasi-one-dimensional ribbon-like morphology. Its electronic structure is predicted to host relatively flat bands associated with
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a model liquid metal battery (LMB) cell and characterize its electrochemical properties. LMBs consist of three superimposed liquid layers: a molten salt (electrolyte) sandwiched between two liquid
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. Expertise in laser plasma spectroscopy (e.g., LIBS), pump-probe experimentation, or filament air lasing. Prior experience with optics modeling. Experience with basic surface morphology characterization
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) for in vitro and in vivo models, including flow cytometry and immunocytochemical analyses. Executing functional assays to evaluate the immunomodulatory and angiogenic properties of cells. Planning and
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for 2 years The research group of Dr. Shahram Eivazi at the University of Tübingen is working on the Autonomous Design Systems and Embodied Intelligence, leveraging generative models such as diffusion
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Natural History. The researcher will develop deep learning models to predict individual bee age based on wing morphology. This model will be trained of existing wing images and applied to images of museum
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establishing reliable, multimodal methods that connect interphase chemistry and morphology to electrochemical performance, stability, and degradation mechanisms. Join us in shaping the future of advanced
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Helmholtz Zentrum München - Deutsches Forschungszentrum für Gesundheit und Umwelt | Germany | about 1 month ago
measurements. Implement physics-informed machine learning models to predict mechanical properties from cell morphology. Collaborate closely with experimental teams to integrate transcriptomic and imaging data
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to staff position within a Research Infrastructure? No Offer Description The Laboratory of Morphological Sciences and Inflammation (LACIMI) at the Federal University of São Paulo's Medical School (EPM