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relationships; medical and community partnerships; and real time ecological momentary assessment of health via data from sensors, accelerometers, and smartphone technology. The successful candidate will join a
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. Managing research projects (task management and timelines). Additional Information: Application materials should include a single pdf with (i) a cover letter summarizing relevant experience and reasons
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submitted electronically and include a cover letter and CV. Applicants may be asked to provide two reference letters to be submitted to jxz26@psu.edu , indicating “PSU postdoc” in the subject line. This is a
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related field, with experience in single-crystal growth and characterization preferred. Applicants must submit a cover letter, curriculum vitae, and a statement of research interests electronically
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edges of quantum matter. Candidates should have a Ph.D. in physics or a related field, with experience in topological materials and optical spectroscopy/imaging preferred. Applicants must submit a cover
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, techno-economic analysis, and/or life-cycle assessment. The postdoc will be working on a large team and will be expected to communicate across teams to integrate project-specific data into modeling
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vitae. • Cover letter detailing research interests. • Contact information for up to three references. The expected start date is September 1st, 2025, although alternative start dates will also be
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expected to communicate across teams to integrate project-specific data into modeling. The post-doc will lead projects, collaborate with graduate students and researchers from inside and outside Penn State
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or related discipline by appointment start date Demonstrated effective writing skills through high-quality reports and publications Application Instructions Interested Candidates should submit a cover letter
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IAQ. Designing and conducting energy, IAQ, and economic simulations of novel control systems. Aggregating, synthesizing, and interpreting HVAC system data from field sites. Developing data-driven models