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to join our research team focused on the development of SatCom system analysis and design. The research will focus on modelling satellite constellation simulations for Danish/Nordic Defence & Emergency
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dynamicsthatshape urban and regional development. Teachingwillprimarilybe in the master programme of Urban Planning and Management (in English) as well as the Bachelor programme in Urban, Energy and Environmental
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, and professional development. Learn more about AAU Energy at www.energy.aau.dk . How to apply Your application must include the following: Application, stating reasons for applying, qualifications in
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the development of innovative and energy-efficient thermochemical processes that enable a sustainable, de-fossilized carbon economy. We explore renewable carbon sources and investigate optimal conversion pathways
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explore large genomic datasets. Your tasks will include quantitative data analysis, sequence processing and evaluation, and pipeline development and automation. It is expected that you will lead the writing
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well as collaborating on adjacent research topics. As a Post-Doctoral Researcher, an additional and greater emphasis is placed on the development of independent research that can benefit both the field and the project
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expected evolution of these critical properties as the basis for safe reinforcement learning (RL) for on-line optimal control”. In particular, the stipend will investigate enhancement of RL controllers in
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professional development. Learn more about AAU Energy at www.energy.aau.dk . How to apply Your application must include the following: Application, stating reasons for applying, qualifications in relation
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change over the course of KOA development. This process includes conducting ex vivo experiments on cartilage samples from both healthy and osteoarthritic samples and subsequent numerical modelling to study
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on the development of AI models for analysis of cardiac CT scans, with the aim to explore how machine learning models can quantify cardiovascular disease and predict future events from CT scans. The project will