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of 8%. High-quality training programs and other support to grow into a self-aware, autonomous scientific researcher. At TU/e we challenge you to take charge of your own learning process . An excellent
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the stochastic modelling and reliability assessment process will provide valuable insights into the impact of uncertainties on grid reliability. Finally, in conjunction with the developed edge intelligence
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of the relevant challenges in communication and sensing systems. The group expertise spans from the fundamentals and physics of photonics, optics, the design and fabrication of photonic integrated circuits (PICs
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Development Scientific Staff Vacancies PhD EngD Support staff Professional Development Support Staff Vacancies Why TU/e Compensation and benefits Application process Support for internationals Working at TU/e
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%. High-quality training programs and other support to grow into a self-aware, autonomous scientific researcher. At TU/e we challenge you to take charge of your own learning process . An excellent technical
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be changed over time. Accordingly, the computation resources may need to be rescheduled to fulfill dynamic needs for processing sensory data. This process of reconfiguration must be efficient, real
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scientific researcher. At TU/e we challenge you to take charge of your own learning process . Especially for PhD students, TU/e also grants opportunities for personal development, such as offering every PhD
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the stochastic modelling and reliability assessment process will provide valuable insights into the impact of uncertainties on grid reliability. Finally, in conjunction with the developed edge intelligence
-
the stochastic modelling and reliability assessment process will provide valuable insights into the impact of uncertainties on grid reliability. Finally, in conjunction with the developed edge intelligence
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adaptation, and synthetic data generation. 2. Domain Knowledge-Augmented Representation Learning: Development of techniques for incorporating clinical domain knowledge with physics-informed neural networks