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Assistant Professor (Tenure Track) of Inorganic Chemistry The Laboratory of Inorganic Chemistry (LAC) (www.lac.ethz.ch) of the Department of Chemistry and Applied Biosciences (www.chab.ethz.ch
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encourages excellence, individual recognition and responsibility. T he Faculty of Biology and Medicine ( FBM ) of the University of Lausanne is inviting applications for position of: Tenure-track Assistant
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excellence, individual recognition and responsibility. The Faculty of Biology and Medicine ( FBM ) and the Lausanne University Hospital ( CHUV ) are inviting applications for a position of: Tenure track
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encourages excellence, individual recognition and responsibility. T he Faculty of Biology and Medicine ( FBM ) of the University of Lausanne is inviting applications for position of: Tenure-track Assistant
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The Institute of Cell Biology (ICB) at the University of Bern is seeking to appoint an Assistant Professor with tenure track in Quantitative Cell Biology. The successful candidate will investigate
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/Seurat, count models, batch correction, differential analyses). Strong grounding in statistics (GLMs, hierarchical/Bayesian modeling, multiple testing) and experimental-design principles. Bioinformatics
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/Seurat, count models, batch correction, differential analyses). Strong grounding in statistics (GLMs, hierarchical/Bayesian modeling, multiple testing) and experimental-design principles. Bioinformatics
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, multi-objective optimisation (e.g., genetic algorithms), gait analysis/biomechanics. Proven track record in deploying machine learning models into production (preferred) Proficiency in programming in
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the admission requirements for a PhD at ETH Zurich Experience in machine learning, optimization, or AI-driven decision-making Preferably with knowledge of Bayesian optimization or Gaussian processes
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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