42 parallel-computing-numerical-methods-"Prof" Postdoctoral positions at Carnegie Mellon University
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supervised by, Prof. Granger Morgan at CMU as well as by Prof. David Victor in the School of Global Policy and Strategy at UC San Diego (UCSD). Occasional travel to UCSD may be required. Applicants should
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the School of Computer Science) will contribute his expertise in artificial intelligence, while Prof. Lorrie Cranor (Director and Bosch Distinguished Professor in Security and Privacy Technologies of the CyLab
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design, robotics, computational engineering, advanced manufacturing, and bioengineering. In addition, they are using their expertise in interdisciplinary research centers across the university. We
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Mohadeseh Taheri-Mousavi’s group. The postdoc will develop and conduct advanced machine learning techniques combined with computational research to study the mechanical behavior of welds. Responsibilities
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Khair welcome applications for a postdoctoral researcher who will investigate biological oil interactions with and transport within aqueous foams under confinement. Experimental methods emphasize optical
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Bryan Webler’s group. The postdoc will conduct research on the fabrication of refractory alloys by additive manufacturing methods. Responsibilities: Design build plans and use powder-feed direct energy
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, or academic librarianship? Join the team of the Open Science & Data Collaborations program at Carnegie Mellon University Libraries to help foster a more open, reproducible, and collaborative research landscape
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discipline and may involve organizing and implementing complex research plans, the development of methods of research, testing and data collection, analysis and evaluation, and writing reports which contain
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discipline and may involve organizing and implementing complex research plans, the development of methods of research, testing and data collection, analysis and evaluation, and writing reports which contain
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, or academic librarianship? Join the team of the Open Science & Data Collaborations program at Carnegie Mellon University Libraries to help foster a more open, reproducible, and collaborative research landscape