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, metabolomics, and mouse/cell culture models to understand the mechanisms underlying age-associated metabolic dysfunction. Qualifications for postdoc position: ⦁ PhD in Molecular Biology, Immunology
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-effectively predicting the rate of massively multicomponent organic, or organic-enhanced, new-particle formation in the atmosphere. We will combine our molecular-level model development with machine learning
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development (https://www.helsinki.fi/en/about-us/careers ). Required qualifications PhD (or near completion) in evolutionary biology, ecology, genetics, or related fields. Expertise in molecular genetics
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organic, or organic-enhanced, new-particle formation in the atmosphere. We will combine our molecular-level model development with machine learning and artificial intelligence methods, targeted validation
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. Term: 2 years, with the possibility of extension. Project context Arctia plantaginis is an emerging model for colour polymorphism, defence, and host–parasite interactions. Our group maintains >17 years
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Open post-doctoral position in immunology! The Fagerholm group at the Department of Molecular and Integrative Bioscience (MIBS), Faculty of Bio- and Environmental Sciences, University of Helsinki
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that impaired acetylation of RG-I leads to a loss of epidermal cell adhesion (see preprint here ). This project aims to achieve a genetic and molecular-level understanding of the impact of RG-I structure and
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circuitries in healthy and diseased brain. The topic is investigated at different levels, from molecular mechanisms to behaviour, using animal models and various electrophysiological techniques in combination
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modelling, and neuroimaging. The position provides access to high-performance computing resources, including GPUs and supercomputing clusters, for advanced simulations of cerebral blood flow and molecular
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atomic-scale engineering of materials. Our focus areas include advanced and functional materials, chemical synthesis, energy storage and conversion, as well as molecular and materials modeling. Within