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span over the physical, media access control, and network layers. Methods from networking, communication theory, machine learning, signal processing, and optimization will likely play an important role
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prediction and personalized treatment in child and adolescent psychiatry. The projects will involve advanced epidemiology, pharmacoepidemiology, and machine learning methods. You will be part of a well-funded
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11 Feb 2025 Job Information Organisation/Company KTH Royal Institute of Technology Research Field Computer science » Computer architecture Computer science » Programming Computer science » Other
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fields, from core to applied computer sciences. Its vast scope also benefits our undergraduate and graduate programmes, and we now teach courses in several engineering programmes at Bachelor’s and Master’s
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Research expertise and background in data management and ML, knowledge graphs, graph neural networks and machine learning. Knowledge and experience in working with medical or clinical data is a plus Ability
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science skills (e.g., machine learning). Prior experience in professional analysis of register data will be a plus. Applicants should be highly collegial and experienced in working effectively in “team
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26 Feb 2025 Job Information Organisation/Company KTH Royal Institute of Technology Research Field Computer science » Other Engineering » Computer engineering Engineering » Systems engineering
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/machine learning methods applied to medical imaging Excellent knowledge of English, both verbal and written, is required to present and publish research results. Research expertise. Preferred qualifications
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stroboscopic re-integration to allow the study of processes at time scales down to ms. In this PostDoc project you will study flow properties in polymers and soft matter and relate macroscopic emergence, e.g
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-constrained models. Currently, we are advancing the development of single-cell models, machine learning approaches based on cultivation data, and the integration of metabolic models with computational fluid