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industrial domains. The scientific outcomes are expected to be significant in: Earth system science – by improving models of Earth surface evolution and enabling better predictions of landscape response
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project RECLESS (Recycling versus loss in the marine nitrogen cycle: controls, feedbacks, and the impact of expanding low oxygen regions). RECLESS aims to predict how ongoing ocean deoxygenation impacts
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Denmark as well as abroad. Your primary tasks will be to: Develop, test, analyse, simulate and predict the capture performance of new fishing gears. Produce high quality scientific and/or engineering papers
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. Responsibilities and qualifications Your overarching responsibility in the project will be to investigate large-scale ultrasound foundation models catering to various predictive tasks relating to fetal development
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potential for exploiting temperature gradients for producing electricity and predict their long-term performance under real operating conditions. The project also includes modeling of heat transfer and
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RISC-V ISA. Your project will be on developing time-predictable RISC-V architectures to support multicore systems as a basis for real-time automotive functionalities. Responsibilities: Conduct research
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, and to develop predictive models that can guide the rational design of next-generation BioAg products tailored for diverse agricultural systems around the world. Responsibilities The postdoc position
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immobilization, biocatalytic reactor design, flow biocatalysis, and computational tools for mutation predictions, Self-motivated, pro-active, team- and goal-oriented personality, Full command
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immobilization, biocatalytic reactor design, flow biocatalysis, and computational tools for mutation predictions, Self-motivated, pro-active, team- and goal-oriented personality, Full command
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, protocols, and data standards across collaborating institutions and scales. This collaboration will support the generation of coherent, high-quality datasets and enable the development of predictive models