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on previous employment with start and end dates Copy of PhD certificate. If awaiting PhD, provide a written statement from the supervisor List of publications A description of your research interests in
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, which makes it ideal for ecological simulations where precise mathematical descriptions of key processes are lacking but data for training are available. The MCL methodology will be applied on critical
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microscopy, optical interferometry, vacuum technology, finite element method simulations will be involved. Applicants should hold a PhD in Physics, Nano-science, Engineering or similar, experience with optics
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-reviewed publications considered by the candidate as most important for this position. Please note that a copy of each publication must be attached as a pdf file. It is permitted to merge copies
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be developed and implemented in the GEOS-Chem chemical transport model, coupled to the Community Earth System Model. Standardized large wildfire events will be simulated based on historical data and
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following thematic areas: • AREA 1: Machine learning and AI-driven methods for design, simulation, and optimisation in architectural and construction engineering. • AREA 2: Robotic and additive
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opportunity to join the ERC-funded project “ALPS - AI-based Learning for Physical Simulation”. Expected start date and duration of employment These are 1–year positions from 1 May 2026 or as soon possible. Job
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. The candidate is hence expected to have most of the following qualifications: Expert knowledge in the control of robots Experience in simulation of robotic systems Experience in design and development of robotic
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(2026–2029) focused on creating digital twins and AI-driven models for solid state quantum devices. The position is placed in the Theory & Simulation and Data teams of NQCP. Role Description We
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no solution. The project has two aims: Rigorous feasibility analysis: Theoretically and via simulations, characterize the conditions under which RCAL is infeasible or otherwise faces limitations. New robust