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in innovative research that includes: Geometric Control Algorithms: Develop and refine control strategies utilizing differential geometric methods, particularly Riemannian manifolds, to optimize robot
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for electronics or optoelectronics. The candidate will use methods that include but are not limited to optical and spectroscopic characterization, electrical characterization, and mechanical characterization
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well in quantitative research methods; and has experience in managing and analyzing data. Experience in survey research is not mandatory but is appreciated. Example focus areas include, but not limited
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the field experiment, analyzing the data and estimating users’ preferences for Automated Taxis. Successful applicants must have a PhD in a field related to survey methods techniques and transport demand
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modeling and machine learning approaches for forward and inverse problems in radiation and fire research. The research associate will be responsible for simulation-based analysis for object detection methods
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characterization of a variety of novel organic materials for electronics or optoelectronics. The candidate will use methods that include but are not limited to optical and spectroscopic characterization, electrical
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. Successful applicants must have a PhD in a field related to survey methods techniques and transport demand modelling and demonstrated experience with state choice experiments, discrete choice models, virtual
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and fire research. The research associate will be responsible for simulation-based analysis for object detection methods and for optimization of solar energy applications. The applicant must be able
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(Center for Smart Engineering Materials (NYUAD-CSEM) ) on preparation of materials and devices for sensing of organic and inorganic chemical components by using electrochemical, optical or other methods
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strategies utilizing differential geometric methods, particularly Riemannian manifolds, to optimize robot trajectories and enhance interaction safety and robustness. Learning for Human-Robot Interaction