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are hotspots of microbial activity, including microbial processes that are sources or sinks of greenhouse gases. For example, aerobic methanotrophic and ammonia-oxidizing microbes are frequently found in
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problems, please contact hcm-support@sdu.dk. Application procedure Applicants are advised to read the SDU information on how to apply . Assessment of the candidates is based on the application material, and
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protected. The assessment process Applications will be assessed by an assessment committee and the applicant will receive the part of the evaluation that concerns him/her. The assessment report will
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students and contribute to a welcoming academic environment, we'd love to hear from you! Do you have any questions about the role or the application process? Please contact our Study Start Team at studystart
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Associate Professor Ramkrishan Maheshwari, phone: +45 65 50 16 86, email: ramkrishan@sdu.dk If you experience technical problems, please contact hcm-support@sdu.dk . Application procedure Applicants
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experience technical problems, please contact hcm-support@sdu.dk . Application procedure Applicants are advised to read the SDU information on how to apply and Faculty information for prospective PhD students
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available Professor Thomas Ebel, Head of CIE, phone: +45 6550 1288, email: ebel@sdu.dk . If you experience technical problems, please contact hcm-support@sdu.dk. Application procedure Before applying
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-support@sdu.dk. Application procedure Applicants are advised to read the SDU information on how to apply . Assessment of the candidates is based on the application material, and an application must include
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cases uses organic solvent containing the polymer that will form the MAP solubilized and LNG suspended in them. This process may in principle influence the size of the incorporated LNG, hence a critical
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thermomechanical process simulations such as casting and welding. The research activities at SDU-ME spans widely from fluid mechanics, condition monitoring, machine learning, fatigue, maritime structures