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Skip to main content. Profile Sign Out View More Jobs Postdoc position in advancing chemical impact assessment through machine learning - DTU Sustain Kgs. Lyngby, Denmark Be the First to Apply Job
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, relevant to the position: An internationally oriented research profile within fields such as child-computer interaction, human-computer interaction, interaction design, learning sciences or computer
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) epidemiology, bioinformatics, statistical genetics, data science, machine learning, or a closely related discipline, and have experience with research in obesity, diabetes, cardiovascular disease, and/or life
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Description Are you enthusiastic about basic human pain research? The Center for Neuroplasticity and Pain (CNAP) at Aalborg University is recruiting one or more postdoctoral fellows, to start 1st August 2024
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, relevant to the position: an internationally oriented research profile within fields such as child-computer interaction, human-computer interaction, interaction design, learning sciences or computer
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Research, University of Copenhagen, Denmark. Candidates should have a strong background in (genetic) epidemiology, bioinformatics, statistical genetics, data science, machine learning, or a closely related
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Skip to main content. Profile Sign Out View More Jobs Postdoc in Computer Vision with Deep Learning for Material and Computational Design – DTU Compute Kgs. Lyngby, Denmark Job Description Do you
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or entirely novel properties with respect to any single component (for instance, a functional entity in a biosystem). Extensions to decomposed machine-learning models developed in our lab will furthermore be
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analyses using Danish register data and/or large genetic datasets. This may include genetic analyses, causal inference, epidemiological analyses, and clinical prediction modelling using machine learning
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modelling in physical systems and life sciences. Focus on advanced techniques and methodological advancements with real-world impact. Requires PhD in machine learning, experience in deep generative models