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shifts and geochemical fluxes within the vadose and groundwater zones. Learning Objectives: This summer program provides an opportunity to gain hands-on experience with Forest Service monitoring protocols
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findings will be encouraged and supported. Learning Objectives: The fellow will have the opportunity to gain or expand skillsets over a range of computational techniques needed for modern agricultural
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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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program that introduces middle and high school students to AI and its applications. Students will engage in exciting and challenging activities over the three-day period to develop skills and knowledge
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: This opportunity is available to U.S. citizens only. ORISE Information: This program, administered by ORAU through its contract with the U.S. Department of Energy (DOE) to manage the Oak Ridge Institute for Science
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and gene therapies. Research Project: You will join a research program that broadly investigates unwanted immune responses to proteins used in therapeutic applications. The specific focus will be immune
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(FABADRU) and public databases. Learn to prioritize and rank candidate host proteins involved in arbovirus replication using computational and statistical approaches. Develop skills in computational
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bioinformatics pipelines for virus detection. Previous experience with NGS data analysis using high performance computing as well as knowledge of cell culture and molecular assays can facilitate your training
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specimen-based research and long-term curation. Bioinformatics and computational analyses will be supported by USDA’s SCINet high-performance computing infrastructure, which provides large-scale computing
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protocols using aerial and ground-based platforms for agricultural safety monitoring. Apply advanced image analysis and computer vision techniques to identify and classify food safety risks in agricultural