444 data-"https:"-"https:"-"https:"-"https:"-"https:"-"Simons-Foundation" positions in Denmark
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area of expertise. Collaboration will involve joint problem-solving, the integration of data streams, and the development of decision-support tools to inform large-scale restoration policy. Your profile
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background in AI/ML technologies, including algorithm development, optimization, and data-driven modeling. Candidates are expected to demonstrate research leadership, with experience in national and
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graduated ("ranks as no. 6 out of 111" or "ranks as among the best 8 percent") or if that is not possible, general information from your University as to how grades were distributed in the year of your
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technology. For this reason, many research projects are conducted in close collaboration with industry on the basis of new data and new technologies. These projects are generously supported by the ERC, Horizon
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and UUV to support autonomous coordination and mission execution. This includes using relative measurements, shared environmental representations, and synchronized data exchange to enable precise and
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, and Maintenance Software Reliability Engineering Systems Engineering Model-Driven Engineering Modeling, Simulation and Data Analytics Human-Computer Interaction and Design Interactive Systems
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qualifications, prior experience of corrosion of electronics or similar topics is an advantage. A combination of knowledge in electronics, materials, corrosion, and reliability is preferred. Further information
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professor, but may also be obtained in other ways. The applicant is required to have completed a university pedagogical programme or an equivalent programme. Further information on the appointment procedure
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. In parallel, you will assist with in silico analysis of transcriptomic data. Your main tasks will consist of: Research within stem cell biology (Standard wet lab procedures include tissue histology
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on in vivo release of LAI suspensions in nonclinical models using the obtained data to generate a risk matrix for in vivo impact of potential particle size variations. A successful outcome of this