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breeder to transfer their endophytic microbes to susceptible cultivars, akin to the “fecal transplant” concept. Once the microbial symbiont is isolated that contributes to disease resistance, methods
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academic and professional goals. Along the way, you will engage in activities and research in several areas. These include, but are not limited to: Develop descriptive models and software for data
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organizational structure Learning industry standard software implementation Identifying, evaluating and synthesizing business data and other information relevant to MWR Activities Analyzing I-MENU sales to help
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developing new approach methodologies (NAMs) for in vitro skin sensitization test methods. Why should I apply? Under the guidance of a mentor, you will gain hands-on experience to complement your education and
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, you will join a community of scientists and researchers in an effort to explore security implications in trusted and secure systems at the application, hardware, firmware, and software levels
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and prepare for readiness during operational tasks. The team is further exploring novel AI method developments, including applied mathematical and machine learning solutions for real-time use. Why
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production using state-of-the-art data science methods, leading to improved research in forestry and economics. Additionally, the fellow will be invited to participate in the broader research goals using
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conditions they are likely to be useful. For this reason, we have assembled a research team to explore new methods and new data that will improve foundational fuel structure and flammability information
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will have the opportunity to expand your knowledge by collaborating on the following activities: Applying existing software tools to model, analyze, and design microgrids for designated applications
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for the U.S. energy future. Resource estimation methods to determine tonnage and grade of these unconventional feedstocks is still evolving, and requires refined approaches that leverage probabilistic modeling