90 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:"-"UCL"-"UCL" positions at Harvard University
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training activities focused on biomedical research methods in healthcare. Under the close supervision and mentorship of Dr. Zitnik, the Associate will: 1) Explore and learn about state-of-the-art techniques
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research assistants (RAs); Machine learning skills; Writing papers for management and economics journals; Interest in reskilling initiatives; Working with partner organizations or companies. Basic
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network engineering and angiogenesis 3). Applications of machine learning in cell and tissue engineering Candidates should have demonstrated publication records in cardiac and vascular engineering or
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native peoples, or peoples of African, Asian, or Hispanic descent. The fellowship includes the requirement to teach one course per year (ideally in the fall term), to participate in a fellowship program
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for data science, artificial intelligence, and machine learning courses. The Preceptor will be responsible for assisting instructors of large AI-related courses for master’s and undergraduate students
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Details Title Postdoctoral Fellowship Position in Visual Computing at Harvard University School Harvard John A. Paulson School of Engineering and Applied Sciences Department/Area Computer Sciences
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hiring instructors to teach junior tutorial (PSY 980) seminars during the 2026–27 academic year. These positions are open to PhD-level instructors with prior teaching experience, which may include
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hiring instructors to teach junior tutorial (PSY 980) seminars during the 2026–27 academic year. These positions are open to PhD-level instructors with prior teaching experience, which may include
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where innovation, continuous learning, and work-life balance are valued. Learn more about the School’s mission, objectives, and core values , our Principles of Citizenship , and about the Dean’s AAA
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) seeks to transform education through quality research and evidence. CEPR and its partners believe all students will learn and thrive when education leaders make decisions using facts and findings, rather