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facilities conducting research in DHS relevant areas? If you answered “Yes”, to the above questions, the HS-POWER program is for you! The U.S. Department of Homeland Security (DHS) Science and Technology
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performance, increasing the effective lift-to-drag ratio and keeping benign thermal exposure to the hypersonic vehicle structures. Under this research program, focus will be to innovate advanced gas turbine
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exposures to blast. For more information about WRAIR, please Army Home . About ORISE This program, administered by Oak Ridge Associated Universities (ORAU) through its contract with the U.S. Department
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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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extended depending on funding availability, project assignment, program rules, and availability of the participant. What are the appointment provisions? You will receive a stipend to be determined by USAG
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research are computational models ranging in complexity from semi-empirical aero prediction models to CFD models of varying complexity. Windtunnel and free flight experiments serve to complement and validate
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as well as to understand and mitigate the harmful effects of repeated exposures to blast. This research opportunity is within our blast overpressure medical research program and systems biology. Under
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Networks (DNNs) sparsity. The compute-intensive floating-point 32-bit representation represents remaining non-zero valued network parameters. These approaches need to be improved to develop a real-time
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intelligence. ARL Advisor: Aaron St. Leger ARL Advisor Email: aaron.stleger@westpoint.edu About CISD The Computational and Information Sciences Directorate (CISD) conducts research in a variety of disciplines
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stochastic process. ARL Advisor: Jade L. Freeman ARL Advisor Email: jade.l.freeman2.civ@army.mil KEYWORDS: AI, Reinforcement Learning, Graphical Neural Network, Computational modeling, Optimization, Bayesian