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. Activities · Conduct extensive background literature analysis, including works in both computer science, psychology and automated control. · Develop testing approaches and undertake extensive
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literature analysis, including works in both computer science, psychology and automated control. · Develop testing approaches and undertake extensive simulator studies. · Writing of research
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learning-based workflows for diatoms species identification and trait quantification (e.g. size, deformation intensity). · Benchmarking and validation: Compare automated approaches with traditional
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Applications should include: Curriculum Vitae Cover letter indicating the research area of interest Description of past research experience and future interests (max one page) Transcript of grades from all university-level courses taken Contact information for 2-3 referees Early application is...
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The SnT Automation & Robotics Research Group is hiring a motivated PhD candidate for the bi-national project DOMINANTS (Dexterity-Oriented Methodology in Optimized Design and Control of Soft Aerial
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I-2503 – PHD IN EXPLAINABLE AI FOR DATA-DRIVEN PHYSIOLOGICAL AND BEHAVIORAL MODELLING OF CAR DRIVERS
participate in planning data collection studies under controlled conditions. · Automate processes and explore state-of-the-art solutions for filtering, noise reduction, and kernel-based techniques
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for Digitalization. This project aims to advance privacy-preserving techniques for data analysis and task automation, ensuring robust protection of sensitive information. The focus will be on developing
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, Statistics, or Geography ;Strong proficiency in Python is required ;Knowledge of remote sensing, GIS, and Copernicus data is a plus ;Excellent command of English.LISER particularly encourage female
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digital euro. It will analyze how digital finance evolves alongside EUDIW features, assessing its impact on functionalities and user control over financial and payment data. The candidate will perform
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-specific challenges in deploying distributed AI for power system control. The outcomes will be invaluable to electricity system operators, flexibility aggregators, and the broader energy research community