36 parallel-computing-numerical-methods-"Multiple" Postdoctoral positions at Technical University of Denmark
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of advanced methods for activity-based simulation models and machine learning methods in transportation. You will work in close collaboration with colleagues, and with academic partners in Europe. Your primary
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ultrasound scanner capable of performing real-time 3-D super-resolution imaging of the microcirculation in humans. The scanner is based on the methods developed in the SURE ERC synergy grant project for Super
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will involve developing and applying advanced data analysis methods to investigate ionospheric electrodynamics using novel datasets, including those from the EISCAT 3D radar system and NASA's Electrojet
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background in thermodynamics and phase behavior of complex mixtures Excellent programming skills (e.g., Python, C++, Fortran, or similar) Experience with COSMO-based methods, including parameterization, model
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electroluminescence and photoluminescence imaging, preferably daylight and field-based methods. Proven skills in data analysis, image processing and machine learning. Experience with PV performance modelling, power
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bipolar plates (BPPs) in PEM stacks. Using advanced, scalable manufacturing methods, you will tailor the internal microstructure to improve mass transport, mechanical robustness, and interfacial behaviour
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Nordisk Foundation and led by Associate Professor Mikkel Schmidt (DTU Compute). In LightTrap , we will use AI to accelerate the discovery of new optical materials and that enhance the performance of thin
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the Villum Experiment project “Engineering an extracellular vesicles-based transfection method for challenging-to-transfect cells” led by Dr. Weihua Tian. This position offers an exciting opportunity
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such as mechanical exfoliation and stacking, as well as characterization methods including AFM, SEM, and optical microscopy. Experience with advanced nanofabrication techniques such as e-beam lithography
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challenges, particularly in low- and middle-income countries (LMICs) where surveillance systems are often limited or lacking. Traditional laboratory-based methods, widely used in high-income countries