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integrated sensor arrays. The project combines several different concepts: Progress in understanding insect neurobiology that provides proven circuit designs to solve significant problems such as autonomous
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to a dynamic research environment Merits: Bioinformatics Hands-on experience in protein design or structural bioinformatics Hands-on experience in biophysical techniques used in structural analysis Prior
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protein design or structural bioinformatics Hands-on experience in biophysical techniques used in structural analysis Prior experience with chemical cross-linking (XL-MS) and hydrogen–deuterium exchange
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based separation of blood from animal experiments experience of 3D-design in Fusion 360 and 3D-manufacturing of microfluidic systems experience of statsitical assessment of clinical chemistry data
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Malmö. We are united in our efforts to understand, explain and improve our world and the human condition. Lund University welcomes applicants with diverse backgrounds and experiences. We regard gender
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data (e.g., synchrotron X-ray microtomography), Design and use of autoencoders (VAEs, GANs), diffusion models, and other ML methods for analyzing and discovering patterns in probability distributions in
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and written proficiency in English Additional requirements: experience of acoustofluidic based separation of blood from animal experiments experience of 3D-design in Fusion 360 and 3D-manufacturing
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corresponding knowledge in another way. Experience in one or more of the following areas is considered meritorious, Self-supervised learning, image denoising, or inverse problems, Transformer-based architectures
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nanotechnology, with access to state-of-the-art instrumentation for HAADF-STEM imaging and in situ experiments. The project will be pursued in close collaboration with the Materials Design Division (also at IFM
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innovation. We believe that knowledge and new perspectives are best attained and reached together in collaboration with others – our colleagues, students, the private and public sectors, both nationally and