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(BARC) in Beltsville, Maryland conducts integrated experimental and modeling research to understand how crops respond to key abiotic factors such as weather, soil conditions, and management practices. Our
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to develop and train custom autoencoders (AE). These models will be used to identify movement patterns characteristic of chronic wasting disease (CWD) infected wild cervids. Learning Objectives: The selected
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the projected production associated with an increase in the pace and scale of restoration under wildfire risk reduction WRR) activities. New supply chain models are needed for fuel treatment and forest
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Research Laboratory (AFRL) Cognition and Modeling Branch is offering a Research Fellowship at Wright-Patterson Air Force Base, Ohio. What will I be doing? As an Oak Ridge Institute for Science and Education
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a wide variety of conditions. But the current generation of these models struggle to accurately capture interactions between watershed hydrology and crop performance. In collaboration with the mentor
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computing, software development, geospatial or time series modeling, and mathematical modeling, or other areas of interest. This opportunity represents a unique window into the food safety regulatory
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level change, and to better understand hydrologic extremes like flood and drought. A postdoctoral fellow will participate in observation and/or modeling of the terrestrial water cycle. Generally, this
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. Research Project: A Postdoctoral Fellow will participate in a project focused on analyzing forest change and disturbances on U.S. forests. In this project, we will collaboratively develop one or more models
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for follow-up actions. Research Project: The fellow will collaborate with veterinary medical officers, statisticians, economists and ecologists specializing in epidemiology, risk analysis, disease modeling
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inference (otherwise known as spectral retrieval), which involves using forward models in conjuction with Bayesian or machine learning-based techniques in order to derive posteriors on parameters of interest