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stakeholders in non-engineering fields is required. Basic knowledge in mathematical optimization (e.g. first-order optimality, gradient descent algorithms, and basic linear or nonlinear programming) is required
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engineering. We develop cutting-edge technologies, promoting the sustainable and economical use of resources, and meeting the technological demands of Luxembourg, the Greater Region, and beyond. Nearly all
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to: Experimental characterization of four-wave mixing processes in nonlinear X(3) resonators Generation and optimization of dissipative structures and ultrashort pulses What you bring to the table
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, supervising, motivating, and leading of staff; in analyzing workflow and determining optimal staff configurations to meet operational and service needs; and in resolving performance problems and other personnel
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in seismic data processing and inversion High level competence in statistics and nonlinear optimization Strong track record of publications in high impact scientific journals Demonstrated written and
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a robust and safe dynamic hopping. The problem will be formulated in an optimal control framework which will consider all challenges and provide an optimised solution which can be implemented in real
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, biophysics, condensed matter physics, controlled fusion & plasma physics, elementary particle physics, nanoscience, and nonlinear dynamics. Research activity occurs both on-campus and in multiple off-campus
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positioned team of experts in the field of photonic components, laser sources, and nonlinear converters. You will contribute to the improvement of fiber components and new designs. You will independently work
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to dissociate memories. Finally, it proposes to use this information to come up with novel strategies to make machines unlearn better, more efficiently, and more safely. The potential impact of this project is
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interest. They include but are not limited to 1) innovative use of AI/ML for designing and optimizing photonic materials, devices, and systems, 2) enabling photonic technologies for AI computing and