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on their scientific merit and potential as researchers. Emphasis will be placed on scientific ability within the subject area. Experience in validation, performance evaluation and maintenance of acoustofluidic devices
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evaluates adaptive and transformative management approaches. Research will assess vulnerability and resilience across forest types, considering stand structure, species composition, management legacy, and
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to chemical pesticides and test and evaluate those alternatives empirically. The postdoc will coordinate a synthesis of scientific and stakeholder knowledge and possible innovations, as well as design, conduct
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with researchers and stakeholders identify the most effective and feasible alternatives to chemical pesticides and test and evaluate those alternatives empirically. The postdoc will coordinate a synthesis of
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technologies. The OEM group is part of the Laboratory of Organic Electronics (LOE) (https://liu.se/LOE ), an internationally renowned research environment comprising more than 150 researchers from diverse
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quantitative and semi-quantitative chemical analysis in relevant case studies; (iv) apply the framework using results from the case studies and existing monitoring data and evaluate the effectiveness; (v
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it effect engagement and learning. For more information about the Akelius Math Learning Lab, see: https://www.chalmers.se/institutioner/mv/akelius-math-learning-lab/ Who we are looking
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from vehicle- and bridge-mounted sensors - Develop and validate condition indicators and decision-support tools - Collaborate with external partners in the planning, implementation, and evaluation
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evaluation of algorithms for early drought stress detection by integrating interactive manipulation strategies with learning-based monitoring methods. This includes designing interaction primitives, processing
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on commercial farms, and evaluating piglet welfare, health, microbiota, behavioural, and economic impacts in real-world settings. Together, the projects address a central challenge in commercial pig production