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will plan program content, recruit expert speakers, and market the events to students. This position will also support communications and student outcomes data tracking. These projects will include
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institutional strategy, uncover new opportunities, and drive long-term growth. Oversees and tracks progress toward annual and campaign-specific fundraising goals for the region, leveraging data to drive
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, recruit expert speakers, and market the events to students. This position will also support communications and student outcomes data tracking. These projects will include writing reports, presentations
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the Department of Psychology (https://psychology.uchicago.edu/ ) and the College. This is a full-time, career-track teaching position expected to begin on or after July 1, 2026. The initial appointment term is
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statistical inference. Provides expertise for high level or complex data-related requests and engages other IT resources as needed. Partners with other campus teams to assist faculty with data science related
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, 2025 Description The University of Chicago Department of Statistics invites applications for a tenure-track faculty position in Computational and Applied Mathematics (CAM) at the rank of Assistant
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in-person communications on high-level and confidential topics. This role will organize, track, and manage a wide range of innovative programs to ensure operational excellence for the Willett Research
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projects underway, track budgets, and keep a current roster of SSD units and departments and contacts within each SSD building. Responsibilities Leads the development of complex and highly technical space
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and statistical inference. Provide expertise for high level or complex data-related requests and engage other IT resources as needed. Partner with other campus teams to assist faculty with data science
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the University's various internal data systems as well as from external sources. Maintains and analyzes statistical models using general knowledge of best practices in machine learning and statistical inference