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behavioural data collection and welfare assessment. Strong statistical skills (R preferred). Practical experience working with farm animals, ideally pigs. Ability to independently plan and conduct research
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programming, computational biology, and statistics as well as experience in analyses of high-dimensional data sets, e.g. high-throughput sequence and gene expression data analysis, will also be considered a
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data using multivariate statistics and machine-learning–assisted approaches, in close interaction with data science collaborators Active collaboration across disciplines spanning spectroscopy, soft
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for machine and statistical learning. It is well known that data can be highly sensitive, and that naive anonymization is not sufficient to avoid disclosure. Models and aggregates can also lead to disclosure as
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machine learning at a scale. The Privacy-aware transparency decisions research group (led by Prof. Vicenç Torra) conducts research in data privacy for data to be used for machine and statistical learning
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of knowledge gaps, statistical processing and analysis of existing data, and writing both scientific and popular science articles. Course leadership and teaching within the Master’s program in Public Health
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. The Department of Mathematics at KTH offers a high-class, active research environment within a broad spectrum of mathematical fields, including (applied) algebraic geometry, algebraic statistics, discrete geometry
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. Documented knowledge and experience in computational metabolomics, computational biostatistics, statistical and machine learning, involving analysis of biological multi-modal and multivariate data, or related
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statistical) of benthic foraminifera and/or other microeukaryotes. Experience of colorimetric and chemoluminescence analysis techniques for pore-water and intracellular nutrient content. Experience using
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from national health registers. You will work independently with study design, programming, analysis, and reporting, with input from experts in clinical, biomedical, and statistical aspects. Your profile