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theory, estimation theory, and statistical learning, with the aim of generating new ideas that can be applied to a broad range of dynamical systems. The theoretical development will be grounded in key
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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 science and innovative programming. Read more at The
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statistical software applications, such as SPSS, are essential. Experience in preparing and delivering scientific presentations and writing scientific publications is an advantage. We are looking
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, medicine, biomedicine, statistics or computer science, or a similar background. - have completed at least 240 credits in higher education, with at least 60 credits at Master’s level including an independent
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Cambridge ESOL). More information is available on universityadmissions.se . Knowledge in statistical analysis, programming, quantitative genetic and breeding theory and Nordic (boreal) forestry are desirable
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position, Forest Science, Genetics or similar. Knowledge in statistical analysis, programming, quantitative genetic and breeding theory and Nordic (boreal) forestry are desirable Place of work: Umeå Forms
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remote sensing. A MSc degree, or equivalent is required, in a subject relevant for the project position in, biology, bioinformatics, plant physiology, genetics, or statistics. Applicants must meet certain
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well as the programmes in statistics, cognitive science and innovative programming. Read more at https://liu.se/en/organisation/liu/ida You will belong to the Division of Database and Information Techniques (ADIT) within
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a significant amount of fieldwork in relatively inaccessible locations. Analysis of collected and existing data will be carried out using statistical and dynamic models, GIS, and computational tools
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sets and statistical analysis, manuscripts preparation. The student will receive a thorough education in molecular biology, zebrafish husbandry, fluorescence microscopy and handling of large datasets