55 postdoc-in-thermal-network-of-the-physical-building PhD positions at Technical University of Munich in Germany
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collaboration, we aim to promote biodiversity-based health interventions. The research is funded by the Research Initiative for the Conservation of Biodiversity (FEdA), the Federal Ministry of Education and
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scale Research budget for conference attendance and professional development. Opportunities to collaborate with leading industry partners. Access to world-class academic resources. Application Process
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deep networks for solving inverse problems, learning robust models from few and noisy samples, and DNA data storage. We are seeking a researcher to join our team in an ERC project on DNA data storage
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) for performing fundamental research in the frame of the project DrawOn funded by the Bavarian State Ministry for Economic Affairs, Regional Development and Energy. The candidate has the opportunity to pursue a
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and amounts to at least 2300 Euro net per month). Please submit your electronic application as a single PDF file and include the reference "Application Algorithms and compexity" in the subject line. For
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/CAROUSEL) and its application for developing new materials and adapting the additive manufacturing process parameters, we are looking for support as soon as possible. The Chair of Materials Engineering of
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TEA of a defined process for cultivated meat with material cycling - Optimize the process, also applying mathematic modeling, to improve yield and sustainability - Independent work on research projects
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personal profile, potential tasks include but are not limited to: - Development of a recirculation system for culture medium in a perfusion bioreactor system - Implementation of process control, soft sensor
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facilities and resources, as well as a stimulating and dynamic research environment. Application Process: Interested candidates should send the following documents to gjergji.kasneci@tum.de by May 15th
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include: Literature research Designing, implementing, and evaluating novel machine learning approaches to retrieve buildings in 3D, building settlement types, and distribution of construction sites at very