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deadline: 9 January 2026 Apply now The largest uncertainty in the Global Carbon Budget (GCB) is in emissions from land-use and land-cover change (LULCC), which has an uncertainty of approximately 60%. This
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, speed, storage security, and uncertainties. In a world where we are also nearing critical tipping points in the carbon cycle, understanding when impacts and benefits of CDR will occur is crucial
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dimension of uncertainty in power system operations, necessitating more complex and adaptive decision-making processes for system operators. While some prototypical power system optimization problems have
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solar scales to multi-hectare deployments offshore, evaluating their performance and environmental impact under uncertainty becomes a critical scientific and engineering challenge. The DigiOcean4Solar
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control and state (and parameter) estimation algorithms capable of effectively managing corrupted measurement data, communication constraints and modelling uncertainties. You will be joining the team of Dr
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? Which disruptive technologies or paradigms (specific architectures, lightweight adaptation methods, xAI, interpretable-physic awareness, uncertainty quantification, etc.) will you explore? Why is this
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uncertainties about viable business models and reward structures. Your job This postdoctoral position is part of ReGeNL , a large national inter- and transdisciplinary research programme aimed at accelerating
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materials and their thermo-mechanical behavior; experience with PEEK or polyamides is an advantage. Experience with explainable AI, uncertainty quantification, or physics-informed learning. Familiarity with
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the context of the Energy Transition. Transitioning to a power system heavily reliant on weather-dependent renewable energy to achieve environmental targets introduces a critical dimension of uncertainty in
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, onboard AI, explainable AI (xAI), and uncertainty quantification, can unlock new insights for environmental sustainability and climate resilience. For example, AI-driven methodologies might be deployed