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background in mechatronics engineering, chemical engineering or related fields. Experience in process synthesis, product design, modelling and optimisation, automation, robotics, and material science are
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fertilisers and soil enhancers for indoor farming through process optimisation. The candidate will also assess the environmental and technoeconomic feasibility in both developed and developing societies
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, mechanical engineering, process engineering, or equivalent competence that provides necessary scientific understanding and technical skills for this role. To succeed in the role, we assess that you have good
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, physics, music and opera as well as the preparatory technical foundation year. MDU's research specialisation educational sciences and mathematics is part of the School. We collaborate with the surrounding
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this recruitment process, we will also emphasize humility and ability to listen to others' perspectives, ability to meet set goals within a limited time, ability to work independently and in collaboration with
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. Equivalent knowledge acquired in Sweden or abroad through other means. We are looking for someone with a degree in process development, mechanical engineering, industrial economics, production, logistics
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the operation of CO2 capture and its integration in different bioenergy based processes and systems, such as the biomass fired combined heat and power plants (CHPs). The work mainly includes process modeling and
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of Science in Engineering in a relevant technical field (for example, in energy engineering, electrical engineering, technical physics, energy systems) Completed a four-year natural science program
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requirements The applicant is required to have a PhD degree in product and process development, mechanical engineering, industrial economics, supply and operations management, production (systems), logistics
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discrimination for AI algorithms that can manifest in AI systems due to reasons such as the data collection process, uncertainty in underlying data distributions, and inherent biases in the underlying AI models