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: Västerås School: Faculty of Engineering and Health Sciences Third-cycle subject: Energy and Environmental Engineering Admission to third-cycle (doctoral) education is regulated by Mälardalen University’s
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for a doctoral studentship leading to a PhD in Public Health Science at the Department of Health Sciences. As a doctoral student, you will work in environmental epidemiology within an interdisciplinary
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participation in environmental epidemiology studies experience with advanced statistical modelling in R or SAS experience with genetic and epigenetic analyses any scientific publications in relevant areas
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, bioinformatics, and ecological modeling. Results will inform future biodiversity monitoring frameworks, adaptive forest management, and conservation policy. At the Department of Wildlife, Fish and Environmental
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Department of Wildlife, Fish, and Environmental Studies WIFORCE Research School Do you want to contribute to the future sustainable use of forests? Apply to join WIFORCE Research School
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2 Dec 2025 Job Information Organisation/Company Lunds universitet Department Lunds universitet Research Field Environmental science » Global change Researcher Profile First Stage Researcher (R1
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applied statistical models, and will be part of a growing conservation technology hub at the department. The Department of Wildlife, Fish, and Environmental Studies offers a creative, stimulating, and
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sampling, forest mathematical statistics and landscape studies. The department is also responsible for the implementation of the ongoing environmental monitoring programs the National Forest Inventory
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. The research in the PhD project will focus on core spatio-temporal machine learning method development, including: generative models for grid-based and particle-based spatio-temporal data; controlled generation
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adaptive responses, but increase the range of environmental conditions an individual will experience across their lifespan, making plastic responses – individual responses to external environmental cues