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duties as assigned. REQUIREMENTS: REQUIRED: PhD in in computer vision, machine learning, artificial intelligence, or a closely related field. Strong programming skills. Strong background in machine
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following fields: Cognitive Science, Psychology, Computer Science, Mathematics or Philosophy PhD Degree We are particularly interested in candidates with demonstrated abilities to conduct interdisciplinary
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one or more of the following fields: Cognitive Science, Psychology, Computer Science, Mathematics or Philosophy PhD Degree We are particularly interested in candidates with demonstrated abilities
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, Computer Science, Mathematics or Philosophy PhD Degree We are particularly interested in candidates with demonstrated abilities to conduct interdisciplinary work across these fields, with an interest in
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Carnegie Mellon University, Institute for Computer-Aided Reasoning in Mathematics Position ID: 3637-PF [#27988] Position Title: Position Type: Postdoctoral Position Location: Pittsburgh
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of computer graphics, human-computer interaction, computer vision, and machine learning. Conducting comprehensive literature reviews in related areas, including deep generative models, image and video synthesis
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, creative start-ups, big data, big ambitions, hands-on learning, and a whole lot of robots, CMU doesn’t imagine the future, we invent it. If you’re passionate about joining a community that challenges the
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Postdoctoral Fellow to join the team. This is an excellent opportunity if you thrive in an exciting and challenging environment. Core responsibilities include: Collecting and analyzing data, including periodical
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depth knowledge of a specialized field, process, or discipline and may involve organizing and implementing complex research plans, the development of methods of research, testing and data collection
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depth knowledge of a specialized field, process, or discipline and may involve organizing and implementing complex research plans, the development of methods of research, testing and data collection