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develop methods for the synthesis and analysis of systems producing renewable fuels and chemicals; and use these methods, in collaboration with other researchers at Princeton and other institutions
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to allow permanent maintenance of invertebrates (also used for behavior experiments). Assist with maintenance and propagation of plant collection, used for plant physiology studies. Prepare reference
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technology challenges using plasma, the fourth state of matter. With more than 70 years of history, PPPL is a leader in the science and engineering behind the development of fusion energy, a potentially
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artists. Participate in ideation sessions to develop new activities and programs in the Creativity Labs, working closely with the Creativity Lab Supervisor and Manager of Visitor Experience. Conduct visitor
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their intellectual horizons, and prepare work for publication. They will have biweekly meetings with the faculty director to share their work, and monthly meetings with faculty fellows from various social sciences
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term position with the possibility of renewal based on funding and performance. Responsibilities train mice and rats on operant tasks, perform optogenetic experiments, and histological analysis of brain
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. In keeping with this mission, the role of the Assistant Football Coach is to provide a quality varsity program that will challenge and develop the physical, mental and personal abilities of student
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: 277226291 Department Princeton Neuroscience Inst Category Research and Laboratory Job Type Full-Time Overview The Pena lab primarily studies the molecular mechanisms of brain development and the impact of
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in laboratory sessions, leading precepts or discussion sections, holding regular office hours, collaborating with course instructors, and assisting with exam development and grading. Princeton
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interested in computational materials design and discovery. The successful candidate will develop new, openly accessible datasets and machine learning models for modeling redox-active solid-state materials