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mathematically or by conducting experiments, disseminating findings via writing and oral presentations, etc. Experience in publishing academic papers in peer-reviewed journals and/or conferences. Professional
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(internationally-comparative) surveys, qualitative interviews, and experimental studies. The core tasks will include: Carrying out research within the scope of the research programme; Translating and communicating
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synthesis, mu-analysis and model-predictive control Experience in model identification, validation and uncertainty quantification based on experimental results Expert proficiency in the use of MATLAB/Simulink
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communicating research findings and scientific insights to different types of audiences, including scientific, professional and community audiences; Collaborating with the chair holders and colleagues in the team
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research combines large, (longitudinal) quantitative (internationally-comparative) surveys, qualitative interviews, and experimental studies. The core tasks will include: Carrying out research within
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from the areas of few-shot learning, continual learning and modular deep learning, as well as different LLM alignment frameworks, based on reinforcement learning and direct preference optimisation
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chemistry, or a closely related subject is required for this project. You have to enjoy working with optics and ultrafast lasers and have some affinity with electronics. If you have experience with one
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of ultracold atom experiments to new reals of AMO physics. You also should have a recent PhD in experimental ultracold atom or trapped ion physics. great team working skills. initiative and good time management
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where you feel at home and can flourish. We value different perspectives and qualities. We believe this makes our work more innovative, the TU Delft community more vibrant and the world more just
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, and fairness attacks, as well as to increase the trust that their users have in these systems, while accounting for different phases of the AI life cycle, starting from data collection through training