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equipment, supplies and reagents. In addition, this technician will be expected to contribute to research efforts and analysis of data. The ideal candidate is one who seeks professional development and is
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subject participants via multiple modalities, including in-person and on the phone. - Designing research surveys and experiments, which includes programming, developing, testing, and implementing online
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considered when there is evidence of sustained experience teaching Spanish at the university level. Proven experience in coordination (course, level, or program) and curriculum development will be a plus
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The Director of Special Projects leads special projects, programs, and content development initiatives. The Director is on the leadership team of the Office of Communications, which is responsible
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vendor relationships. Uphold Princeton's diversity, equity and inclusion goals and principles. The ideal candidate will excel at team development, clarifying common goals among diverse stakeholders
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, wellness, sustainability, procurement and hospitality to develop innovative programs in support of our diverse community. Our award winning food program is based on scientific and evidence-based principles
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family members, at the U.S. Department of State/U.S. Agency for International Development are not eligible. Please see this Eligibility Rules document for more information about previous program
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. The scholarship’s core concern is to encourage the development of individuals whose life’s work is likely to benefit the public interest. Students majoring in the sciences, engineering, and the humanities may fit
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graduation to an independent project of extraordinary merit that will widen the recipient’s experience of the world and significantly enhance his or her personal growth and intellectual development
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Postdoctoral Research Associate - Improving Sea Ice and Coupled Climate Models with Machine Learning
to develop hybrid models for sea ice that combine coupled climate models and machine learning. Our previous work has demonstrated that neural networks can skillfully predict sea ice data assimilation