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Must haves for postdocs (all tracks): PhD degree in Materials Science, Mechanical Engineering, Electrical Engineering or related field from a top university Strong experimental background with
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bottom-up approach to robotics and develop soft materials and devices that would enable unusual form and unconventional functions for broader robotic applications. Job description Track 1: Fiber-based soft
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cell-fate tracking tracking and studying various stages of the metastatic cascade, we set out to follow tumour cell-niche interactions to reveal how distant sites shape cancer progression-and where we
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. We take a bottom-up approach to robotics and develop soft materials and devices that would enable unusual form and unconventional functions for broader robotic applications. Job description Track 1
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EPFL - Ecole Polytechnique Fédérale de Lausanne, EPFL Faculty Affairs Position ID: 2244-TTAP [#27524] Position Title: Position Type: Tenured/Tenure-track faculty Position Location: Lausanne, Vaud
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Doctoral Candidate in computer vision and machine learning for developing novel deep learning method
Machine Learning (DM3L) Doctoral Candidate in computer vision and machine learning for developing novel deep learning methods for satellite-based tracking of global CO2 and NOX emissions of point sources 80
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understanding of travel behavior and mobility. Our research has strong conceptual and theoretical foundations, is ideally based on primary data, uses a mix of methods, and tries to infer causality as strongly as
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-time position as Full, Associate or Assistant Professor (Tenure track) in Accounting and Control Information Start date: August 1st , 2026 or on a mutually agreed date. Activity rate: 100% Workplace
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the project will be the assessment of the model results with atmospheric measurements, as well the use of statistical inference methods for hypothesis testing. Finally the improved model will be used to provide
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The position is initially funded for one year, with potential extension. The ideal starting date is 01 December 2025 but can be negotiated. We are looking for a researcher with a track record in OPM