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Cornell University, Information Science Position ID: Cornell-IS-POSTDOC [#31821] Position Title: Position Type: Postdoctoral Position Location: Ithaca, New York 14850-4623, United States of America
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moves. Success will be measured by having published or contributed to papers in top venues (e.g., Nature Science of Learning, Computers and Education, ACM Learning at Scale, Educational Data Mining) and
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, United States of America [map ] Subject Areas: Information Science / Artificial Intelligence (AI) , education , Data science Appl Deadline: 2026/02/02 04:59 AM UnitedKingdomTime (posted 2025/12/19 05:00 AM
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N Efficiency Genomic Informatics Post-Doctoral Associate Postdoctoral Associate, Buckler/Romay Lab Cornell Institute of Biotechnology Cornell Research and Innovation The Buckler/Romay Lab
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Program Postdoctoral Associate Call for Applications: Milstein Program Postdoctoral Associate Open to Cornell PhD Candidates and Recent Cornell PhDs We seek scholars with a PhD in any discipline with a
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Milstein Program Postdoctoral Associate Call for Applications: Milstein Program Postdoctoral Associate Open to Cornell PhD Candidates and Recent Cornell PhDs The Milstein Program in Technology and
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York 14853, United States of America [map ] Subject Areas: Genomics / Plant Genetics / Quantitative Bioinformatics Computational Biology Appl Deadline: none Position Description: Apply Position
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, computer science, or a closely related field by the appointment start date; demonstrate strong expertise in computational biology or data-driven modeling, with experience in one or more of the following areas
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, computer science, electrical engineering, or a related field. 3+ years of experience achieving impactful results including publications using relevant AI/ML/related techniques and genomic data analysis. Background
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the appointment start date; demonstrate strong expertise in computational biology or data-driven modeling, with experience in one or more of the following areas: machine learning or deep learning, structural