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                dynamic soil moisture map that reflects weather changes. By developing digital dynamic soil moisture maps, decision support systems for route planning can be used to optimize the balance between forest 
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                dysfunction. The research group has recently received major and prestigious grants that provide longer-term resources and opportunities for high impact publications. More information can be found on google 
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                that provide longer-term resources and opportunities for high impact publications. More information can be found on google scholar. Duties The main duties of PhD students are to devote themselves 
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                applications until September 19 2025 using the button below. Candidates are encouraged to review research by Francisco X. Aguilar, Professor, available here and on Google Scholar before applying. To qualify 
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                -planning of timber production and nature conservation, two important objectives in forestry. The work involves developing knowledge and tools for habitat modelling through 1) mapping existing habitats, 2 
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                forests with high conservation value, and map small streams. The student will be admitted to a doctoral program at the Department of Forest Ecology and Management at SLU in Umeå. The position includes 
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                resolved gene expression without the need for extensive experimental data. By learning the underlying mappings between these domains, synthetic data will be generated that reflects potential drug responses