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of compressible flow regimes, including supersonic and hypersonic flows, as demonstrated by application materials. Familiarity with machine learning or data-driven modeling approaches in fluid dynamics, as
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machine learning methods. Provide theoretical predictions to guide experiments, and atomic-scale physical understanding to experimental observations. Publishing findings in peer-reviewed journals
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% - Carry out primary, NIGMS-relevant research in a supportive, mentored environment. Projects will vary depending on the research group the successful candidate joins. Candidates will learn both domain
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