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About the Opportunity About this opportunity: Northeastern University is a global leader in experiential learning and cooperative education in which students alternate between academic study and
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About the Opportunity The Khoury College of Computer Sciences at Northeastern University invites applications for the position of Part-time teaching faculty in the Computer Science Masters Program
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. Additional background in renewable energy, surface science, catalysis, and/or machine learning. Strong programming skills in Python and some exposure to machine learning. Ph.D. in Materials Science, Physics
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/Associate/Full Teaching Professor (a non-Tenure-Track faculty position) in Boston, MA with general areas of focus in Artificial Intelligence, Machine Learning, and Natural Language Processing. In this role
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to participate in building machine learning models, co-author publications, and contribute to grant proposals. Tentative start date: January 2024 for the Spring 2024 semester with possibilities of renewal
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(internal and external) service focus. Highly organized and detail oriented; and ability to problem solve effectively. Strong computer and IT knowledge and skills, especially in MS Office suite products, and
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Details Posted: Unknown Location: Salary: Summary: Summary here. Details Posted: 14-May-25 Location: Boston, Massachusetts Type: Full-time Categories: Academic/Faculty Computer/Information Sciences
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About the Opportunity About Northeastern Founded in 1898, Northeastern is a global research university and the recognized leader in experience-driven lifelong learning. Our world-renowned
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expected to develop and lead projects. Ideal candidates will have knowledge of population genomics, machine learning, and evolutionary theory. Candidates should have a strong track record of publication; be
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Boston, MA, campus. Instructional areas included, but are not limited to, analytics, with particular expertise in data exploration and data engineering, probability and statistics, machine learning, data