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of targeted delivery strategies of oligonucleotide therapeutics to B cells Host institution: Uppsala University, Department of Pharmacy Supervisor: Prof. Sara Mangsbo, Uppsala University Project 2: Delivery
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with researchers at Chalmers and the University of Gothenburg. You will explore how Bayesian methods can enable risk-aware, real-time trajectory planning and contribute to the development of autonomous
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University of Gothenburg. You will explore how Bayesian methods can enable risk-aware, real-time trajectory planning and contribute to the development of autonomous vehicles that are both safe and trustworthy
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Institute of Neuroscience and Physiology, Sahlgrenska Academy, University of Gothenburg | Sweden | 21 days ago
new knowledge and new perspectives, the University contributes to a better future. Doctoral position in Medical Science Project title: Modeling and targeting pacemaker cells in glioblastoma
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Bayesian framework and two specific proposed lines of research: (1) constructing suitable priors via neural networks approximations, and (2) enhancing the sensitivity and efficiency of posterior diagnostics
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theories from tractable models (probabilistic circuits) and Bayesian statistics to tackle the reliability of machine learning models, touching topics such as uncertainty quantification in large-scale models
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presentation of analysis results. The ability to work with large and complex datasets. Excellent spoken and written English skills. Experience in machine learning, predictive modeling, and/or Bayesian methods
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version control and containerization (Docker/Singularity) Statistical Modeling: Quantitative data analysis using GLMs, Bayesian methods, or mixed-effect models to interpret complex perturbation datasets
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Description of the workplace At the Division of Clinical Genetics , Department of Laboratory Medicine , we are seeking an Associate Researcher to join a project aimed at identifying new target
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levels for different target groups. Experience of outreach activities, such as participating in and giving presentations at conferences, and in national or international networks Experience of cooperating