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to be involved in ultra-processed foods in chronic disease. Located within the Division of Program Coordination, Planning, and Strategic Initiatives in the Office of the Director, National Institutes
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software platforms, smoke emission factors and total smoke production by factor will be accounted for and differenced for the range of burn conditions as above. This research will involve a collaborative
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conditions and changes occurring over the 20th and 21st centuries and expected changes in conditions and disturbance processes over 21st century. Together the Forests and the Lab also build decision support
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in agricultural soil microbiology. The participant will also have active exposure to statistical data analytics using R, Python, and current bioinformatic software. The participant will gain or enhance
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of Surgery at USUHS and WRNMMC. The EACE Regenerative Biosciences Laboratory primarily focuses on the development and evaluation of next generation technologies and approaches for the treatment of combat
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professional goals. Along the way, you will engage in activities and research in several area. These, include, but are not limited to: Process and analyze data from various biomechanical sources including
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coastal wetlands; learn to use and maintain scientific instrumentation, including operation of surveying equipment and data loggers. This project seeks to analyze the effectiveness of marsh restoration
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one another; and delivering world-class science, technology and land management. Research Project: The fellow will contribute their PhD-level social science research skills to understand how project
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of federal land managers, have a few different way of modeling complex restoration treatments in the software. However there is not much guidance on which is most accurate, or how examples of calibrating
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(MPH, MS, PhD). Highly competitive applicants will have experience or skills in the following: U.S. Citizenship is required, must be able to pass a background investigation. SAS 9.4 experience is desired