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phenotypic plasticity and/or genetic adaptation. As our model system, we study springtails (Collembola), key terrestrial ectothermic invertebrates of the soil community. The postdoc will be mainly responsible
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or several of the following areas: Groundwater hydrogeochemistry (e.g., reactive transport, tracers, biogeochemical processes), Groundwater flow modelling, Noble gas isotope mass spectrometry, Carbon
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: Conduct catalytic experiments using advanced transient methods based on mass-spectrometry and surface spectroscopy Develop mathematical models to interpret these data in terms of molecular reaction
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-spectrometry Develop mathematical models to interpret these data in terms of molecular reaction mechanisms Engage in regular internal meetings, seminars, and journal clubs Engage in international collaborations
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in foundational neural models that learn from large unlabeled image datasets, also incorporating context from additional data such as wireline logs or well reports. You are suited for this position
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of Norway. GREP’s objective is to take exoplanet and exoplanetary system formation modelling to the next level. Several thousands of exoplanets have been discovered in more than 5000 stellar systems, and
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, multilevel modeling, event history analysis, or panel data methods. Experience with interdisciplinary research and collaboration across social sciences, health sciences, or related fields. Prior involvement in
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-AI systems. You will gain skills in custom chip design, artificial neural networks and edge-AI system implementation. The work combines circuit-level simulation, system modeling, and in-silicon
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of more of the following is desired: software engineering and systems design, formal methods, verification, and/or modelling, design and techniques for resilient and reliable systems (e.g. decentralised
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memory complexity when performing encrypted inference, and explore to what extent machine learning models can be simplified and made FHE-friendly while still being useful. The project will also investigate