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the robot's physical embodiment suffer from poor generalization, weak explainability, and limited transferability; (ii) sample-inefficient learning requires large volumes of annotated, domain-specific data; and
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enthusiastic candidates to join our dynamic team. Whether you're at the beginning of your academic journey or further along, we offer a rich learning experience tailored to your level of expertise. What you will
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systems, exploiting whole-body contacts with the environment. The main platforms will be robot manipulators or humanoids completely covered with sensitive electronic skin, learning their controllers in a
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inertia has decreased. However, the industry has to learn how to operate synchronous generators in a system with a larger share of solar and wind that does not utilize SGs with large inertia. The candidate
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, dimensionality reduction and/or machine learning methods (e.g., Lasso, ridge regression) is highly desirable. Familiarity with neurostimulation, Parkinson’s disease, or neuropsychological assessment tools is
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that preserves object identity or style. They should have a solid publication record in top-tier computer vision conferences such as CVPR, ICCV, or ECCV, and demonstrate proficiency in deep learning frameworks
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experiments assessing zooplankton–cyanobacteria interactions., Learn to prepare samples for mass spectrometry analysis, Bioactivity guided fractionation and isolation of the cyanopeptides Collaborate with
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optics and related models and techniques, or interest to learn them Programming skills (e.g., Python, Matlab, FORTRAN, C, C++) Advanced English (written and spoken) Will to learn new techniques and
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assessing zooplankton–cyanobacteria interactions., Analyse cyanobacterial morphology using microscopy, Learn to prepare samples for mass spectrometry analysis, Assess strain-specific effects of zooplankton
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excitations in nanoscale structures (e.g. methods of computational chemistry) or related techniques. Programming skills (e.g., Python, Matlab, FORTRAN, C, C++) Will to learn new techniques and approaches