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Details Posted: Unknown Location: Salary: Summary: Summary here. Details Posted: 10-Apr-26 Location: Pittsburgh, PA Categories: Academic/Faculty Internal Number: 184586 The Software and Societal
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, presentations, software) A combination of education and relevant experience from which comparable knowledge is demonstrated may be considered. Preferred Qualifications: Knowledge of early modern European history
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Carnegie Mellon University. The position is available immediately and must be filled by July 1, 2026. The successful candidate will contribute to cutting-edge research in the design, fabrication, and testing
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Institute, and School of Computer Science, with extensive opportunities for collaboration, mentorship, and professional development. Project Overview: Our projects try to understand the needs for, develop
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the microfluidic sample delivery system and apply the surface chemistry for the overall system integration. In particular, the postdoctoral associate is expected to perform benchtop testing of the system
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Responsibilities: Develop and apply computational models of uterine vascular growth and remodeling (G&R). Integrate Doppler ultrasound data with hemodynamic simulations to test hypotheses related to uterine vascular
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members. Participate in traffic scenario generation project and pedestrian modeling project. Develop sophisticated AI-driven algorithms that create realistic, safety-critical test scenarios for autonomous
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-acquisition and control routines; perform calibration and maintain measurement logs. Build and validate benchtop test setups; design fixtures and manage relevant environmental conditions. Plan and execute
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- Proficiency in experimental design, statistical analysis, and relevant software - Strong motivation to pursue an independent academic career that includes post-secondary teaching - Good humor
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demand within firms and business processes; develop and test theoretical mechanisms for adoption and diffusion of technology and reorganization of tasks; connect empirical quantitative evidence to theory