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interact with to facilitate the research process and increase the synergetic effects. You will also have the opportunity to meet other KIRI postdocs, present your work at scientific events, and take part in
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orthotopic surgery. Experience with single-cell sequencing and bioinformatics. Background in tumor biology. Experience in supervising PhD students and/or undergraduate students. The assessment of applicants
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Description: Broadleafification, i.e. the process of increasing the share of broadleaf tree species within conifer-dominated forests, is a promising strategy for biodiversity conservation in managed (hemi
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Postdoctoral studies, employing Bioinformatic gene-expression analysis in Neurobiology (scholarship)
acceptable. Application process AnapplicationmustcontainthefollowingdocumentsinEnglishorSwedish: A complete curriculum vitae, including date of the thesis defence, title of the thesis, previous academic
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regulatory processes, focusing on the design of, oversight over and compliance with rules. The PhD student will be part of the cluster and be placed at the Department of Law but will design and conduct
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algorithms to enhance the design optimization process Create predictive models using Python-based frameworks (e.g. scikit-learn, PyMC) to accelerate design iterations Integrate ML approaches with finite
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biochemical process engineering. The environment encompasses expertise in a wide range of fields within materials science, materials chemistry, mechanics, and manufacturing technology, and offers excellent
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have the opportunity to contribute to a learning environment that promotes students' responsibility for their learning in a dynamic and stimulating environment in close co-operation with colleagues from
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processes and procedures for efficient information management. Administrative and communication support for programme-related events and sessions. Booking travel and accommodation. Contributing to event
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, including finite-element simulation and topological optimization of light guidance in HCFs, and numerical simulation of thermo- and fluid dynamics under fiber-drawing processes. Apart from the main tasks