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and big data analyses related to One Health, with a focus on the integration of animal and human health, including environmental and GIS data. Evidence of teaching skills is expected. The successful
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of several large-scale field experiments in collaboration with policy makers in Switzerland. You will be involved and can develop your skills in: Collection of large scale administrative and survey data
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with the Department of Physics and with the Paul Scherrer Institute (PSI) and its various large-scale research facilities. The successful candidate will develop an internationally recognized competititve
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university near Zurich. You have an interest in law or policy diffusion, privacy law, and international comparative law. Knowledge of privacy / data protection law is highly desirable. You have excellent
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. Profile The ideal candidate will be a computer science student or a student with extensive practical programming experience. Interest in the social sciences and law is a big advantage. Workplace Workplace
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of large data analyses as well as very good English language skills are mandatory. Knowledge of the German language and experiences with stakeholder interactions are a plus. Workplace Workplace We offer Your
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operated by ETH Zurich and has offices in Lugano (headquarters) and Zurich. Project background As HPC and cloud technologies converge, CSCS strives to improve its service portfolio that focuses on large
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understanding of the past. This doctoral project aims to integrate diverse historical resources—primarily maps and texts—to enhance spatio-temporal information retrieval using GeoAI and Large Language Models
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candidate with a strong background geology/geomorphology, or a related discipline, a strong interest for evolutionary biology, and who is interested in bridging field data, computational modeling, and large
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for decentralized and distributed data-driven methods for Federated Learning on resource-constrained networks. Your research within the project will contribute towards your doctoral degree at ETH Zurich. You will be