44 optimization-nonlinear-functions-"Prof" Postdoctoral research jobs at Aarhus University
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. The selected applicants will be informed about the composition of the committee, and each applicant is given the opportunity to comment on the part of the assessment that concerns him/her self. Once the
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is important that you are able to work in a team and work for the overall goal in the project. Your profile The applicant should have demonstrated excellence and have a relevant PhD degree in chemical
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is modeling of multiphase flows with application in green technologies; what will give you a chance to be a part of a collaborative research environment and boost your research productivity. What we
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Do you have a passion and vision for developing new platforms for scalable microbial electrosynthesis of CO2 to methane? Come and be part of the team of Profs. Alfred Spormann at the NNF CO2
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work of the research group, it will include elements of method development within sample preparation, instrumental and data analysis, quality assurance/control and semi-quantification, in the context
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headed by Prof. Henrik Birkedal uses a broad selection of tools with special emphasis on X-ray imaging techniques and diffraction, both done in house and at synchrotrons. Our research group uses a variety
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; Collaborating closely with the ENGREENIT’s PhD candidate (starting 12 months later than the PostDoc researcher), supervised by the Assoc. Prof. Emil Dražević, and will jointly develop the heterogeneous
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twin to obtain more optimal performance of the CO2-to-protein pilot factory. Collaborate closely with our research partners to create an ontology capturing the biochemical process variables and
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The project will be part of the new DREAM (Dermatology Research Across Multiple Disciplines) Center financed by the LEO Foundation. You will be part of building this new center which spans over Aarhus
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will work with data collected from the field to the spatial scale, and investigate spatial optimization approaches to improve the model parameterization at the spatial scale. We expect that you will be