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Researcher or experienced Data Scientist to harness AI, machine learning, and statistical modeling on cutting-edge datasets in precision feeding, animal behavior and welfare, multi-omics and environmental
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, machine learning, and statistical modeling on cutting-edge datasets in precision feeding, animal behavior and welfare, multi-omics and environmental impact. Join our interdisciplinary team to drive real
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) specializing in Artificial Intelligence for Design to build and lead a research group as part of the newly formed Manufacturing4X Center. The initial appointment will be made at either the Post-Doctoral
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institution fostering excellence and diversity. It has a highly international campus with world-class infrastructure, including high performance computing. The EPFL environment is multi-lingual and multi
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Science, or related fields, Highly motivated, self-driven, and shows excellent performance Demonstrated project management experience (multi-partner projects, work-package ownership, milestone delivery). Proven student
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research in earthquake physics, seismic instrumentation, and geothermal energy. A dense, multi-scale seismic network consisting of standard seismological instruments, borehole piezoelectric acoustic emission
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passionate about science, technology, collaboration, and communication. The candidate must have a strong motivation and interest in collaboration with multi-disciplinary scientists. Extensive prior experience
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80%-100%, Zurich, permanent inspire AG is the leading Swiss competence centre for product innovation and advanced manufacturing. As a strategic partner of ETH Zurich, our mission is to transfer
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University of Bern, Albert Einstein Center for fundamental Physics Position ID: University of Bern -Albert Einstein Center for fundamental Physics -PHD25 [#29878] Position Title: Position Location
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Metagenomics, meta-transcriptomics and metabolomics data analysis and familiarity with gut microbiome research. Machine learning for genomics (representation learning, generative models, causal inference). Multi