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, with strong emphasis on Hydraulics and Geomechanics Genuine interest in modelling erosion processes in sensitive clay slopes and willingness to work with simulations at boundary value level to enable
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of simulated data. As an assistant professor, you are also expected to explore application areas within material and life science as well as security and digital forensics. You are active in the research
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, evidence of prior teaching and/or industry experience). A copy of your Master thesis (if not finished at the time of application, please send a current draft or an executive summary of it) and, where
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institution. Applicants who are not Swedish citizens need to submit an attested copy of their passport’s information page containing their photograph and personal details. Read about the PhD education at SLU
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the National Archives of Sweden (Riksarkivet), we are required to deposit one file copy of the application documents, excluding publications, for a period of two years after the appointment decision has gained
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position you are applying for (Department of Chemistry or Department of Molecular Biology) and a motivation for why you are applying for the job. You should also include a CV, a copy of the relevant diploma
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, list of published works and names and contact details of two references Copy of diploma, as well as other relevant certificates. To qualify for third-cycle (Doctoral) courses and study programmes, you
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ability. Additional requirements Very good oral and written proficiency in English. Documented research in advanced process engineering and applied computing technology, e.g. modeling, simulation
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Networks. The project encompasses several challenges in the gene regulatory network (GRN) field, from simulating realistic networks and data to accurate inference of GRNs from noisy gene expression data
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simulated and available experimental datasets. This role offers a unique opportunity to translate transformative theoretical insights into a practical framework for understanding how new phenotypic variation