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Job Posting Title: Computational Postdoctoral Fellow For AI-driven Seismic Imaging ---- Hiring Department: Bureau of Economic Geology ---- Position Open To: All Applicants ---- Weekly Scheduled
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in multi-day field expeditions as needed Manage day-to-day operations of the BRG Tree-Ring Laboratory, which includes a high-resolution ‘Skippy’ image capture system and specialized tree-ring analysis
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experimental expertise in large-scale fluorescence data collection and analyses. Ideal candidates will have additional experience in flow cytometry, imaging, cell culture, next-generation sequencing, and
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Start Date: Immediately ---- Position Duration: Expected to Continue Until Feb 24, 2027 ---- Location: AUSTIN, TX ---- Job Details: General Notes PhD must have been received within the past 3 years
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learning, computer vision, and automated microscope control for autonomous imaging, focusing, and data acquisition. Advance AI-assisted image interpretation, including atomic structure recognition, defect
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the Department of Human Development and Family Sciences at the University of Texas at Austin is seeking a qualified PhD-level researcher for a postdoctoral fellow position. The position involves work on several
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medical applications. The appointment begins February 2026. Responsibilities Design and implement wet-spinning processes to produce multicomponent fibers Conduct mechanical, thermal, biological, and image
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collaborators to ensure timely progress and high-quality deliverables. Required Qualifications PhD (or equivalent doctoral degree) in epidemiology, pharmacoepidemiology, health services research, public health
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is 1-0); and (3) a faculty mentor in the substantive subfield. The ideal candidate will hold a PhD in political science or an adjacent field by August 1, 2026. For more details on benefits, please see
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supporting research efforts. Required Qualifications · PhD in engineering, economics, or related field obtained within 3 years of hire. · Experience with energy markets or energy technology research