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English as required in the daily work Very good ability to express yourself Swedish or the ability and desire to learn Swedish quickly. Preferred qualifications Senior administrative and managerial
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courses, including several master’s programmes. Learn more at: www.chalmers.se/en/departments/e2 Qualifications To qualify, you must: Hold a Master’s degree (or equivalent, 240 ECTS) in Engineering Physics
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a non-Swedish-speaking employee to acquire sufficient knowledge of Swedish within three years to be able to teach in Swedish and communicate with the university's units/ functions in Swedish
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. Use advanced data processing services to perform bioinformatic analysis. Apply machine learning methods to complex sequencing and protein structure data. Qualifications You should have a minimum a high
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fusion to address key environmental challenges. Strategically positioned to impact Earth observation science, we collaborate on satellite development, NewSpace technologies, and apply machine learning
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. The position is limited to four years, with the possibility to teach up to 20%, which extends the position to five years. Doctoral studies require physical presence throughout the entire study period. A valid
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accepted. The following experience will strengthen your application: Familiarity with Federated Learning We value a collaborative attitude and an interest in working both in teams and independently. Self
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on developing methods for the verification and validation of systems that embed machine learning or generative models, addressing challenges such as non-determinism, data drift, and explainability. The project
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research team in the subject area participate in postgraduate education as co-supervisor teach at first, second and third cycle level, including doctoral level further develop their pedagogical skills
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other research groups within SLU to strengthen the university's interdisciplinary activities, especially linked to the development of sustainable agricultural systems teach at first, second and third