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for detailed information about acceptable transcripts A current resume/CV, including academic history, employment history, relevant experiences, and publication list Two educational or professional
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. Description: This opportunity is closed to applicants who are Senior Fellows (5-years or more past PhD). The Goddard Earth Observing System (GEOS), developed by NASA’s Global Modeling and Assimilation Office
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improve federal transit operations and oversight. Projects may include: Performing exploratory data analysis across diverse FTA datasets. Building and evaluating statistical and machine learning models
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molecular data. Participate in scenario-based modeling to evaluate the potential impact of interventions such as vector control, vaccination, or movement restrictions. Collaborate with USDA scientists
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, and geospatial large language model (LLM) network architecture. Why should I apply? This fellowship provides the opportunity to independently utilize your skills and engage with experts in innovative
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technologies to improve our Nation's transportation system. The Bureau of Transportation Statistics is the Principal Federal Statistical Agency that provides objective, comprehensive, and relevant information
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to power systems modeling and physics-informed neural networks. This research requires hands-on knowledge in science and engineering across a range of data analytics topics, as well as the ability
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to power systems modeling and physics-informed neural networks. This research requires hands-on knowledge in science and engineering across a range of data analytics topics, as well as the ability
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areas. These include, but are not limited to: Developing, optimizing, and implementing multiple In Vitro lung models to evaluate the compounds that cannot be assessed using traditional animal models
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improve federal transit operations and oversight. Projects may include: Performing exploratory data analysis across diverse FTA datasets. Building and evaluating statistical and machine learning models