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At the Technical Faculty of IT and Design, Department of Sustainability and Planning (PLAN), a Postdoc position in Satellite Data Processing and Machine/Deep Learning is open for appointment from
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Measurements and Data Processing as per December 15, 2025, or as soon as possible thereafter. The position is available for a period of 1 year, with the possibility of extension. In electronic engineering
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. The Postdoc will conduct research on methods to enhance the performance, safety, and lifetime of lithium-ion batteries by integrating physics-based modeling with data-driven approaches. The work will include
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programming skills in Python are essential, along with the ability to design experiments, analyze results, and interpret findings. Knowledge of optimization techniques, statistical modeling, and data management
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professional information, please contact Professor Pooya Davari, pda@energy.aau.dk . Other questions, please contact HR AAU Energy: hr@energy.aau.dk . Further information Read more about our recruitment process
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stronginterest and experience with GIS data and tools for urban mobility with someprogrammingskills of Python/R, JavaScript, database management environments, Geographical AI and machine learning workflows
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of the jobpost. Further information Read more about our recruitment process here The appointment process at Aalborg University involves a shortlisting process. You can read more about the shortlisting and
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have any questions? If you have any questions about the position, you are more than welcome to contact us. For professional information, please contact Professor Pooya Davari, pda@energy.aau.dk . Other
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The project may address national or international problems, and should do so using appropriate methods, qualitative and/or quantitative. Access to Danish data sources, such as registry data, respondents
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understanding thermodynamic and structural aspects of non-crystalline phases. Excellent analytical and problem-solving skills, with the ability to interpret complex experimental data and draw meaningful