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., crowd sourced data or from mobile and distributed instrument networks) Assess the performance of next-generation predictive urban climate models using observations Develop new visualization strategies
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supported research experience with top-caliber scientists and access to state-of-the- art instrumentation. The CFN mission is advancing nanoscience through frontier fundamental research and technique
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The CFN is seeking an exceptional Postdoctoral Research Associate to conduct research directed to developing state-of-the-art electron microscopy techniques particularly to probe amorphous materials
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supported research experience with top-caliber scientists and access to state-of-the- art instrumentation. The CFN mission is advancing nanoscience through frontier fundamental research and technique
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, Laboratory for Biomolecular Structure (LBMS) cryo-EM/ET facility, and Center for Functional Nanomaterials, which provide state of the art facilities and techniques for bioimaging, structural and material
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materials and their unique physical phenomena, such as metal-insulator transitions, charge-spin-lattice correlations, and the critical role of defects and interfaces. Utilizing state-of-the-art electron
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scattering experiments on correlated quantum materials. The results will be interpreted alongside state-of-the-art theory and advanced data science methods. Essential Duties and Responsibilities: Performing
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. Molecular tools include mass spectrometry, protein chromatography, biochemical methods to study protein phase separation. The candidate will benefit from state-of-the-art research facilities at BNL, including
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, monochromaticity, and flux uniformity. For validating the developed methods, the candidate is expected to conduct x-ray characterizations, using state-of-the-art microscopy techniques like coherent scattering and
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-of-the-art foundation models and large vision-language models. Experience in large-scale deep learning systems and/or large foundation model, and the ability to train models using GPU/TPU parallelization