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mechanisms that drive stress contagion. In addition to teaching two lower-division mathematics classes per year, the postdoc will also be responsible for writing academic publications, including grant reports
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; generating CFD datasets using new models for specific applications. This position is based at Virginia Tech's main campus in Blacksburg, VA and offers opportunities for teaching and service-related activities
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The School of Animal Sciences (SAS) at Virginia Tech is searching for a post-doctoral associate to develop a novel research line and carry out extension efforts that are focused on human- and animal
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and data-driven modeling approaches to understand mechanisms that drive stress contagion. In addition to teaching two lower-division mathematics classes per year, the postdoc will also be responsible
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. The Postdoctoral Associate is expected to lead research projects from experimental design, data analysis, to presentations in lab meetings, conferences, and seminars, as well as prepare manuscripts for peer-reviewed
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opportunities for teaching and service-related activities to successful candidates. Required Qualifications • Ph.D. in Aerospace or Mechanical Engineering by the time of appointment • Demonstrated expertise in
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. - Strong quantitative skills and experience coding in MATLAB or Python - Track record of publications and presentations. - Experience in mentorship and/or teaching. Preferred Qualifications • Demonstrated
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gathered will help define present-day coastal hazards and be incorporated into hazards assessments, such as tsunami inundation maps, that help prepare coastal communities for future catastrophic events
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experiments combined with optogenetic, chemogenetic, and pharmacological manipulation of neural circuit function. • Experimental Setup: Develop and maintain behavioral and recording systems. • Data Analysis
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leveraging advanced computational methods to address critical questions in pandemic prediction and prevention. Key Responsibilities: - Develop and apply modern machine learning algorithms and computational