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, Netherlands (Kingdom of the) [map ] Subject Area: PDE and Mathematical Physics Appl Deadline: 2025/07/20 11:59PM (posted 2025/07/04, listed until 2026/01/04) Position Description: Apply Position Description
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PhD Position in PDE and Mathematical Physics Faculty: Faculty of Science Department: Department of Mathematics Hours per week: 36 to 40 Application deadline: 20 July 2025 Apply now An
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procedures to be applied to RNPU networks in combination with memristive materials and applying the theoretical hysteron concept. Information and application Are you interested in this position? Please send
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PhD position on Closed-loop testing for faster and better EM evaluation of complex high-tech systems
position? Please apply before August 13, 2025, and include the following documents: a detailed CV (Europass), an application/motivation letter, a publication list, contact details of referees an academic
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. Screening is part of the selection procedure. About the department The position will be in the Applied Mathematics department. The Applied Mathematics department has an active research portfolio in stochastic
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application and policy influence. Information and application Are you interested in this position? Please send your application via the 'Apply now' button below before July 26, 2025, and include: A Curriculum
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August 2025 Apply now Atmospheric science and climate change assessments often focus on winter and summer. In this fully funded PhD position you will instead study the weather of spring and autumn. Your
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. Organisation The Engineering and Technology institute Groningen (ENTEG) in which this position is embedded is the engineering science and technology institute of the University of Groningen, The Netherlands
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2025/07/14) Position Description: Apply Position Description The Amsterdam String Theory Group is part of the Faculty of Science and is one of the largest and most prominent groups in the world
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, Industrial Engineering, Computer Science, or Machine Learning. Solid experience with quantitative optimization methods, including (but not limited to) mathematical programming and stochastic dynamic