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Bayesian risk quantification for accelerated clinical development plans (C4-MPS-Oakley)
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networks, Bayesian inference, computational neuroscience, mathematics.
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Application documents: Brief cover letter, explaining your motivation for applying, Detailed curriculum vitae (including your email address), Complete transcript of grades from all your university-level studies. We do not ask for more information/documents at this point (but you can provide more...
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a Bayesian perspective, the use of skew error distributions from well-known skewing mechanisms (eg Azzalini, 1985; Ley 2010), while allowing the parameter(s) controlling the skewness to vary over time
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Lecturer (BIOS 691) Winter 2026 BIOS 691 Special Topics in Biostatistics (4 credits) Winter 2026 BIOS 691: The aim of this course is to provide researchers with an introduction to practical Bayesian methods
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The Medicines And Healthcare Products Regulatory Agency; | Canary Wharf, England | United Kingdom | 22 days ago
any line management responsibilities. Areas of interest include, but are not limited to, novel approaches to Bayesian methods, causal inference, dynamic benefit-risk assessment, genetic and molecular
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reinforcement learning, Bayesian neural networks, and Theory of Mind reasoning. They will engage in collaborative system design with DSTL and defence stakeholders to ensure that research outputs are both
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opportunities for better design. AI-driven optimisation offers a promising parallel route forward. Techniques such as Bayesian optimisation have already proven successful in related contexts, such as optimising
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induction, nearest neighbour classification, Bayesian learning, neural networks, association rules, and clustering are explored. The course also addresses approaches for handling unstructured data, including
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description Third-cycle subject: Applied and computational mathematics The Department of Mathematics at KTH is announcing a PhD position in Mathematics with a specialization in AI, focusing on Bayesian inverse