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for specific activities. Veterinary BSL-4 activities may require a quarantine period in line with EU regulations. This means employees may not keep cloven-hoofed animals and must avoid contact with
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options for sports and cultural activities . You can also tailor your employment conditions through our Terms of Employment Options Model. In this way, we encourage you to keep investing in your personal
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the final pre-launch validation phases of a key Dutch space mission but in the continuation of the project you will also be involved in the early integration phases for three new scientific instruments
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Options Model. In this way, we encourage you to keep investing in your personal and professional development. For more information, please visit Working at Utrecht University . Selection process As Utrecht
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The Cardiovascular and Respiratory Physiology (CRPH) group advances intensive care medicine toward physiology-informed precision critical care, where continuous monitoring data and mechanistic models enable
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handled continuously. If the vacancy is filled, it will be closed prematurely. If you are interested in this position, please contact Dr. W. van de Berg via wdj.vandeberg@amsterdamumc.nl . For more
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. You can also tailor your employment conditions through our Terms of Employment Options Model. In this way, we encourage you to keep investing in your personal and professional development. For more
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plasma edge simulations using SOLPS-ITER to generate data for machine-learning based surrogates such as SOLPS-NN Continued development of ML/AI based fast surrogate models at increased fidelity
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sweat continuously and unobtrusively during everyday activities. This can be achieved by weaving the sensors into the material and using a small clip-on electronics unit. With that we can help patients
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physical signatures of learned tasks. Exploring expressiveness, capacity, and continual learning in physical systems. This position is theoretical and computational in nature, with opportunities