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Field
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modeling techniques. This ERC project aims to bridge this gap by leveraging the flexibility and power of statistical models to accurately represent intervention effects or facets of the causal data
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-visible-spectrum reflectance). This project brings together statistical modelling of the data-generating process with machine learning, including deep learning, techniques, to model and predict bumblebee
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combination of mechanism-based mathematical models to describe drug concentrations and effects, and statistical models such as nonlinear mixed effect models to quantify and predict variability between patients
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master degree in electrical engineering or computer science, with experience or skills in the following areas: Skills in C, C++, Python (required), VHDL or Verilog (required) Statistical models
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such as Python, R, C++, or Java and intermediate skills in a statistical modeling or analysis environment like R or Python scipy/scikit learn Prior experience with Unix and bash scripting, previous
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Institute. The main focus of the group’s research programme is on combining approaches from experimental psychology, cognitive neuroscience (e.g. neuroimaging), computational modelling and statistical
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, MASLD, and disease phenotypes (Obesity, Type-2-diabetes) collected in European population studies. You will apply multivariate statistical models and AI-assisted knowledge graphs to guide
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combining approaches from experimental psychology, cognitive neuroscience (e.g. neuroimaging), computational modelling and statistical modelling methods to study how impairments in neurobiological and
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and experimental and clinical oncology, is committed to develop novel methodologies combining mechanistic and statistical modeling to be ultimately applied at bedside. The PhD theme and datasets The aim
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PhD fellowship in conservation science - developing and validating indicators of ecosystem integrity
experience in field, database and GIS work on biodiversity and ecosystem processes, such as ecohydrology, nutrient dynamics and carbon pools, as well as statistical modelling will be considered assets.Fluency