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for Li- and Na-ion Batteries using Deep Learning-based Models (Deep-Solo). Area of research Currently, liquid electrolyte-based batteries are the most used batteries in portable devices and electric
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the Job related to staff position within a Research Infrastructure? No Offer Description Two phd positions are open. They are both focused on deep learning for images. Position 1 focuses on earth
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UiO/Anders Lien 28th February 2025 Languages English English English PhD Research Fellow in Deep learning for imaging Apply for this job See advertisement About the position Two (2) positions as PhD
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Research Fellow in Deep learning for imaging Apply for this job See advertisement About the position Two (2) positions as PhD Research Fellow in machine learning available at the Department for Informatics
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programme Is the Job related to staff position within a Research Infrastructure? No Offer Description You are keen on contributing to new advances in deep learning methodology for cardiac ultrasound imaging
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the field of geoscience? Improve deep learning methods for multi-modal image data applied to industrial challenges in the energy sector? Contribute to a deeper understanding of the composition of the crust
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UiO/Anders Lien 28th February 2025 Languages English English English PhD Research Fellow in Deep learning on image data for subsurface imaging Apply for this job See advertisement About the position
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Research Fellow in Deep learning on image data for subsurface imaging Apply for this job See advertisement About the position Position as PhD Research Fellow in machine learning available at Department
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-time fault prediction. ML models, such as deep learning, reinforcement learning, and ensemble techniques, can analyze large-scale operational datasets from hydroelectric power plants, identifying
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, training deep learning models to adapt designs to boundary conditions, and integrating FEM workflows within parametric modeling environments like Grasshopper. The candidate will contribute to building a