51 postdoc-parallel-computing Postdoctoral research jobs at Carnegie Mellon University
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you through the process of transitioning from a postdoc to an independent researcher. Our postdocs have been successful in their career development, such as earning the NSF postdoc fellowship. We
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mechanical properties. The postdoc is to build and successfully execute the project within the lab’s research program through collaboration with the PI and the group members. At least a PhD in Chemistry
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, faculty members, researchers, and students are revolutionizing focus areas in advanced manufacturing, bioengineering, computational engineering, energy and the environment, product design, and robotics. In
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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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Postdoctoral Fellowship Program, and ongoing support for Carnegie Bosch Chaired Professorships. Carnegie Bosch Fellowships are two-year awards supporting outstanding postdoctoral researchers conducting high
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seeks applicants to fill the position of Post Doctoral Fellow in the Computer Science Department. The G-CLef Lab at CMU is hiring one postdoctoral scholar to pursue research on multimodal AI
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, faculty members, researchers, and students are revolutionizing focus areas in advanced manufacturing, bioengineering, computational engineering, energy and the environment, product design, and robotics. In
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, faculty members, researchers, and students are revolutionizing focus areas in advanced manufacturing, bioengineering, computational engineering, energy and the environment, product design, and robotics. In
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Responsibilities Include: Develop computational methods for inference and control that improve the reliable and efficient operation of autonomous agents in complex, uncertain environments. Modeling dynamical systems
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for the Pitkow Lab. Core Responsibilities Include: Develop computational methods for inference and control that improve the reliable and efficient operation of autonomous agents in complex, uncertain environments