78 linked-data-"https:" "https:" "https:" positions at Technical University of Denmark
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reviewed based on their research and other activities in the scientific community. The position is linked to a project focusing on acceptance and preferences for CCS on the Faroe Islands, led by Professor
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career paths at DTU here . Further information Further information may be obtained from Prof. Wei Yan, email: weya@kemi.dtu.dk , website: https://www.kemi.dtu.dk/english/research/physical-chemistry/wei-yan
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of Biotechnology and Biomedicine at https://www.bioengineering.dtu.dk/ If you are applying from abroad, you may find useful information on working in Denmark and at DTU at DTU – Moving to Denmark . Application
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process here . You can read more about career paths at DTU here . Further information Further information may be obtained from Prof. Søren Stobbe, DTU Electro, ssto@dtu.dk . You can read more about DTU
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innovations in the bio/pharma domain can be translated into industrial, commercial, or societal value. Information about the course can be found in the DTU course catalogue: https: //kurser.dtu.dk/course/22179
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coupled systems. We offer a stimulating role in an international, interdisciplinary environment with strong links to industry and public stakeholders. You will join a research team working at
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, robust, and trustworthy robotic technologies. Your research will span core challenges such as robot control, decision-making under uncertainty, multimodal information fusion, and foundational models
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. AT-CERE is closely connected with the center CERE of DTU (www.cere.dtu.dk ) and KT Consortium (https://www.kt.dtu.dk/research/kt-consortium ) which is a cross-disciplinary and cross-center activity of
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7346. Applications cannot be sent to this e-mail address, only applications sent via the online link as described below will be considered. You can read more about DTU Learning Lab at https
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, as well as other sustainability relevant endeavours Integrating advanced machine learning methods in thermodynamics for computer-aided property predictions, molecular and product design and