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codes, finite element or finite different methods, peridynamics, phase field models, multi-objective optimisation methods, CAD. Demonstrated ability to adapt to fast-changing project direction and learn
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at the academic-industry interface. Key Responsibilities Lead and manage multi-disciplinary academic-industry collaborative research projects in pharmaceutical sciences, with a focus on drug development, delivery
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programs that enhance the university's mission of fostering innovation at the academic-industry interface. Key Responsibilities Lead and manage multi-disciplinary academic-industry collaborative research
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National Aeronautics and Space Administration (NASA) | Greenbelt, Maryland | United States | 31 minutes ago
and combined polarimeter and lidar observations for atmospheric data assimilation Utilize plume object tracking algorithms to characterize the source, transformation, and sinks of aerosols Field
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equipment. You will join an international multidisciplinary team. You will apply simulation, multi-objective optimization, and data-driven analytics to evaluate and compare material intralogistics handling
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the following field: Circuit-Based Model Systems of Anhedonia If you hold a PhD or master’s degree with an outstanding track record or strong interest in this field, we invite you to apply with a project proposal
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, remote object ranging and tracking in LEO constellations, and monostatic and bistatic SAR imaging using communication waveforms Design and evaluate self-interference cancellation (analog/digital) and
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methods to ultimately let dermatologists continually update multi-modal machine learning models. Our research objectives are to 1) develop novel model editing methods for multi-modal models, with a focus on
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radial velocity spectrometer, wide-field imagers, the Hydra multi-object spectrograph, and other instrumentation. They will also have direct use of the outstanding IU information technology infrastructure
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multi-agent pathfinding (MAPF) algorithms - Experience across multiple areas is a strong plus; Experience developing ML-based optimization approaches is a strong plus; A strong publication track record is