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experience. Knowledge of machine learning. Notes: Appointment Type: This is a full-time, 2-year, postdoctoral appointment with the possibility of renewal based upon satisfactory job performance, continuing
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VAPs teach no more than three quarter classes per year, and will receive research support for conference travel and other needs. Strong promise in research and teaching is required. Appointments will be
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performed at Lawrence Berkeley National Lab, 1 Cyclotron Road, Berkeley, CA. A REAL ID or other acceptable form of identification is required to access Berkeley Lab sites. Want to learn more about working at
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communication skills, both oral and written as well as technical writing. Ability to learn rapidly and integrate new fields to demonstrate creative problem-solving skills. Ability and willingness to work in a
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An exciting postdoctoral position is available in the exciting field of mathematics of deep learning, under the joint supervision of Prof. Alex Cloninger and Prof. Gal Mishne at UC San Diego. This NSF-funded
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; no new applications will be accepted after 2025/09/23 11:59PM US Eastern Time. Position Description An exciting postdoctoral position is available in the exciting field of mathematics of deep learning
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of Berkeley Lab. Work schedules are dependent on business needs. A REAL ID or other acceptable form of identification is required to access Berkeley Lab sites. Want to learn more about working at Berkeley Lab
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Prof. Yuan Cao, and focus on utilizing cross-disciplinary techniques to study fundamental properties and potential applications of 2D materials. To learn more about the lab, please visit https
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, California 95616, United States of America [map ] Subject Areas: Physics / Astronomy , Astrophysics Computational , Machine Learning Salary Range: Starting at $71,491/year or higher depending on experience
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, particularly on measurements and searches using jet substructure and development of advanced techniques in particle tagging, including applications using machine learning, and are expected to take leading roles