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also benefits our undergraduate and graduate programmes, and we now teach courses in several engineering programmes at bachelor’s and master’s levels, as well as the programmes in statistics, cognitive
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at bachelor’s and master’s levels, as well as the programmes in statistics, cognitive science and innovative programming. Read more at https://liu.se/ida . The postdoc will join Linköping University’s Cognition
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experience of quantitative environmental data analysis, including climate data, ecological or forest inventory data, and/or spatial data sets, and skills in statistical analysis and data processing using tools
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approaches, specifically in the fields of artificial intelligence and/or statistical analysis methods, to identify novel approaches of relevance with respect to the project's results. You will help documenting
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postdoctoral position at the Division of Applied Mathematics and Statistics, Department of Mathematical Sciences. About us The Department of Mathematical Sciences is a joint department of the University
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statistical skills (R preferred). Practical experience working with farm animals, ideally pigs. Ability to independently plan and conduct research, manage fieldwork, and collaborate within multidisciplinary
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relevant medical science. Strong skills in data management and the ability to work with large datasets. Strong statistical analysis skills. Strong programming skills in a relevant statistical software
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of behavioural biology are required. You should also have solid experience working with large datasets, as well as documented skills in statistical analysis and data visualisation, for example work with regression
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statistics and machine-learning–assisted approaches, in close interaction with data science collaborators Active collaboration across disciplines spanning spectroscopy, soft matter and nanomaterials
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. Documented research experience and knowledge of behavioural biology are required. You should also have solid experience working with large datasets, as well as documented skills in statistical analysis and