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combines top-tier expertise in CFPS systems and NN world class proficiency in yeast engineering and cultivation. Your primary tasks will be to: Design and conduct experiments to optimize the production
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reaction pathways, particularly scaling relationships and their implications for catalyst design. Spectroscopy and Instrumentation: Hands-on experience in the design, construction, and operation of in-situ
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emphasis on material design, reactor integration, and mechanisms investigation. Responsibilities: Design, synthesize, and immobilize advanced catalytic materials for plastic depolymerization and
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this project, we will develop neural diffusion techniques to design materials with targeted optical properties, scaling to large systems through efficient representations and GPU parallelization. We will also
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. The funding body is the Novo Nordisk Foundation. In parallel with research, you have the opportunity to take part in innovation activities with Copenhagen Microsystems , and this could be up to 20% of your time
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Interaction. The position is funded by the Innovation Fund Denmark grant titled “Personas and behaviours of AI for social skills and mental health ”. You will primarily be involved in working within the social
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analysis Validation of turbine response models against measurements Inflow and wake modelling Wind turbine controller design Aero- and hydro-dynamic modelling Structural dynamics, beam models and cross
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for leading the following efforts: Design, build, and characterize engineered yeast strains and synthetic biology systems (e.g., DNA design, cloning, PCR, plasmid building, genetic engineering, mutagenesis
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, innovation, and scientific advice of the highest quality within building design and processes, building construction and safety, building energy and installation, solid mechaanics, fluid mechanics, materials
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/or high-temperature heat pumps based on power cycles. Design thermal and/or thermochemical energy storage systems. Implementing and validating advanced thermodynamic models for performance prediction