63 parallel-computing-numerical-methods positions at Wageningen University and Research Center
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innovation and the development of courses at Bachelor’s, Master’s, and PhD levels including the use of innovative teaching methods; you have proven experience in leading multidisciplinary teams. Your
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found here . Preferred but not required: Experience with behavioral data analysis, 3D tracking, or video analysis Familiarity with comparative methods, phylogenetic analyses, or statistical modelling
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co-design adapted and new methods to enhance reflection and learning in and adaptive capacity of learning-oriented experiments. The intended start date of your employment is 1 November 2025 and the
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interdisciplinary research. In addition, you possess: a completed MSc degree in economics, environmental science, or a related field; a solid foundation in applied quantitative methods (e.g., econometrics, spatial
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, support of animals during critical transition periods, development of indicators of positive and negative affective states, and resilience. In addition, there is a growing emphasis on non-invasive methods
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administration (MBA), or willingness to obtain it (training costs covered by us). Extensive knowledge and experience in managing within the fisheries sector. Strong numerical skills, experience with digital
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. Strong numerical skills, experience with digital accounting systems and/or financial automation processes, meticulous working methods, and attention to detail. Ability to work independently as
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or more agricultural sectors, such as dairy, poultry, pigs, goats, or sheep. Strong numerical skills, experience with digital accounting systems and/or financial automation processes, meticulous
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the operations of greenhouse horticulture businesses and/or other horticultural sectors; you are numerically strong, experienced with digital bookkeeping systems and/or financial automation processes, work
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, Industrial Engineering, Computer Science, or Machine Learning. Solid experience with quantitative optimization methods, including (but not limited to) mathematical programming and stochastic dynamic