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real-world challenges faced by industry, governments, and society within the international STRUCTURE project? Information The PhD candidate will work within the international research project STRUCTURE
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stability of the material. As PhD candidate you will develop a model framework which dynamically links the pore space dynamics with the pore flow phenomena and vice versa. The topics you will delve
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recrystallization and control nucleation for biomedical applications in e.g. heart and kidney cryopreservation. Where to apply Website https://www.academictransfer.com/en/jobs/359905/phd-in-de-novo-design-of-ice-bi
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mental illness. We are hiring a technically strong and socially motivated PhD candidate to join our collaboration between Eindhoven University of Technology (www.tue.nl ), TNO (www.tno.nl ), and project
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cartilage tissue engineering? Are you driven to develop novel in silico frameworks that deepen mechanistic understanding of tissue growth and inform in vitro experiments? Then you might be our next PhD
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Eindhoven, and the section for Engineering Design and Product Development of DTU jointly invite applications for a 4-year EuroTech PhD project. Information The aim of this exciting, creative, critical and
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Listen Published Tuesday 17 Mar 2026 Deadline Tuesday 21 Apr 2026 Work area PhD Organisational unit Erasmus School of History, Culture and Communication (ESHCC) Salary € 3.059 - € 3.881 Employment 1
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are offering a PhD position to join our research team for an interdepartmental project focused on solving cutting-edge design automation questions that will drive innovation in the Brainport region and beyond
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strategies that strengthen skills, jobs, and workforce resilience towards 2050. Join our team to drive innovations that support urban resilience. This is your chance to make a real impact! Information As a PhD
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team as a PhD candidate to work on beyond the state-of-the-art model distillation and robustness methods, enabling efficient, reliable inference for challenging real-world problems in the semiconductor