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with Prof. Aditya Vashistha and collaborate with faculty and students participating in the Cornell Global AI Initiative Qualifications Applicants should have: A PhD in HCI, AI, NLP, Information Science
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of the experiment, from data analysis to detector operations and HL-LHC detector upgrades. The successful candidate is expected to engage actively in CMS measurements as well as the smart pixels program (https
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Track Trigger or Forward Pixel Detector for the HL-LHC upgrades. A PhD in experimental high energy physics is required by the start of the appointment. Candidates also should demonstrate a strong record
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developing this program. We are also particularly interested in strengthening the group working the CMS Track Trigger or Forward Pixel Detector for the HL-LHC upgrades. A PhD in experimental high energy
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related to learning engineering and AI in education, working with a team of postdoctoral researchers, PhD students, and Master’s/undergraduate researchers across multiple universities and organizations
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Department activities and events. The Postdoctoral Associate is required to be in residence in person at Cornell during the semesters of their tenure. Applicants must have a PhD in Psychology, Human
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to candidates whose PhD will be conferred by August 1, 2026. Application Procedures: The following application materials must be submitted via Academic Jobs Online (position #31797) by April 10: 1. Cover letter 2
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, http://www.ilr.cornell.edu and CAROW at https://www.ilr.cornell.edu/carow . Requirements: Applicant must have a PhD in labor relations, sociology, management, economics, applied statistics or related
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about the ILR School can be obtained at our web site, http://www.ilr.cornell.edu and CAROW at https://www.ilr.cornell.edu/carow . Requirements: Applicant must have a PhD in labor relations, sociology
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comparative genomics, chromatin architecture, gene expression, protein abundance, and metabolite profiling—combined with computational biology, machine learning, and advanced statistical methods. Supported by