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06-Jun-2025 Campus Services 65692BR Job Summary The High Tension Electrician will work as part of the Campus Services Electrical Distribution Group. The position is involved in all aspects
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applications to teach in the Sophomore Tutorial program. Tutor positions are open to advanced graduate student and postdocs/PhD-level early career instructors with prior teaching experience. Sophomore Tutorial
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requirements: CV Cover letter summarizing their past work, why they want to join the lab, their goals for the postdoc, and their longer-term career goals. Contact Information Anana Charles Contact Email acharles
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design and reinforcement learning algorithms. We combine statistical methods with online reinforcement learning algorithms to provide inferential tools. The successful applicant will be expected to develop
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Guidelines for full criteria. For assistance, please contact: KingAwards@hria.org Want to be added to the King Trust distribution list? HRiA manages a variety of biomedical research grant programs. Sign up
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platform. The ideal candidate will possess significant expertise in data architecture, data warehousing, and data pipeline and ETL processes, and will excel in navigating complex, distributed environments
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of underground utility infrastructure with minimum impact to the University’s community and its activities. Assume complete engineering responsibility for utility plant and distribution systems to ensure system
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Details Title Postdoctoral Fellow School Faculty of Arts and Sciences Department/Area Molecular and Cellular Biology Position Description A postdoc position is immediately available in the Uchida
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of underground utility infrastructure with minimum impact to the University’s community and its activities. Assume complete engineering responsibility for utility distribution systems to ensure system capability
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and Machine Learning, with a focus on studying geometric structures in data and models and how to leverage such structure for the design of efficient machine learning algorithms with provable guarantees