32 parallel-processing PhD positions at Delft University of Technology (TU Delft) in Netherlands
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information If you would like more information about this vacancy or the selection procedure, please contact Marc Rovira Navarro, via M.RoviraNavarro@tudelft.nl . Application procedure Are you interested in
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technology with world-changing potential. We are developing scalable prototypes of a quantum computer and a secure quantum internet. We believe quantum technology will be a game changer in many social and
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PhD candidates, postdocs, and faculty members. Our group focuses on understanding and mitigating corrosion processes, and on the development of electrocatalysts and electrochemical sensors through
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available, to support your accompanying partner with their job search in the Netherlands. Additional information For more information about this vacancy or the application procedure, please contact Kenneth
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, processes and (mechanical) systems. ME is a dynamic and innovative faculty with high-tech lab facilities and international reach. It’s a large faculty but also versatile, so we can often make unique
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Description Job description High-tech greenhouses play a crucial role in ensuring sustainable, affordable, and reliable local food production. The construction and operation of high-tech greenhouses is
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transportation systems may include a fleet autonomous cars, vans, and buses. This PhD position within FlexMobility will focus on the underlaying assignment and routing algorithms for real-time operation of
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to discover the qubits that build the quantum information processing machines of the future? Do you want to embed qubits in scalable systems and help bring quantum technology to real-world applications? We
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complex phenomenon. The behavioral understanding will guide the representation of supply-demand interactions in the next step. A baseline methodology will be an iterative process between supply and demand
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, development of data (pre-)processing pipelines, and machine learning model training to identify relevant biological states of the liver (e.g., healthy, recovering, not healthy). The (soft) sensor development