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). Inference tools for interpretive analysis of experimental and simulation data. Foundational research in Machine Learning for partial differential equations (PDEs). Innovative algorithmic and methodological
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partners with internal and external stakeholders to track and review requested modifications and plays a key role in the formal contract modification review and negotiation process. Princeton seeks a
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Princeton University, Ludwig Princeton Branch Position ID: Princeton University -Ludwig Princeton Branch -AAFP [#30359] Position Title: Position Type: Tenured/Tenure-track faculty Position Location
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The Department of Psychology and the Princeton Neuroscience Institute at Princeton University invite applications for a tenure-track Assistant Professor position in the area of human cognitive
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selected will be appointed to a tenured or tenure-track position in an academic department at Princeton appropriate for the candidate's area of specialization, and will also hold a corresponding membership
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: 277293806 Position: Assistant Professor Description: The Department of Psychology and the Princeton Neuroscience Institute at Princeton University invite applications for a tenure-track Assistant Professor
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, chemistry, computer science, engineering, physics or an M.D. with a track record of outstanding research accomplishments and high independent work capacity. Appointment will be to a postdoctoral rank, with a
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(even if they have not explicitly worked on cancer prevention before). Candidate selected will be appointed to a tenured or tenure-track position in an academic department at Princeton appropriate
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the Creativity Labs, cleaning up after activities and restocking materials as needed. Track the inventory of supplies and communicate with the Creativity Lab Team as needed. Support groups and programs
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coupled discharges employed in plasma processing, coupled with a proven track record of kinetic modeling of such discharges. The candidate should be familiar with machine-learning principles for science