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/benefits/benefits-overview . Posting Summary The Modeling Equitable and Accessible Spaces for Everyone (M-EASE) project in the Department of Psychology and Center for Cognitive Science is seeking a post
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metabolic tracing, metabolomics, and mouse models to explore metabolic pathways influencing heart function and disease progression. Among the key duties of this position are the following: Design and lead
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experiences and individual differences, as well as cognitive modeling of decision-making in both lab and realworld settings. Successful candidates will be supported in building a research program at the
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combining these tools with theoretical models, we aim to understand how the brain supports thoughts, emotions, and decisions—and how disruptions or biases in these processes impact mental health. CAHBIR
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Department at Rutgers University, New Jersey. We study reproduction, specifically molecular mechanisms of the meiotic cell cycle. Our work involves genetic mouse models, combined with molecular, cellular, and
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: 241369 Minimum Education and Experience: All requirements for the PhD or other terminal degree in the relevant field must be completed by August 1, 2025. A record of publication and scholarly engagement
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25FA0694 Posting Open Date Posting Close Date Qualifications Minimum Education and Experience This position requires a PhD in civil engineering, mechanical engineering, or related engineering fields
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, the National Science Foundation and others that include a mix of research design, fieldwork, data science, simulation modeling, writing, and presentations. The overarching goal of the Postdoctoral Associate will
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Education and Experience This position requires a PhD (or other doctoral degree) in education, public policy, social work or related field. In addition, it requires: • Strong data analysis skills; • Ability
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provides robust learning experiences related to the science and application of HEOR, including cost studies, data analytics, economic models, real-world evidence, services utilization analysis, systematic