655 machine-learning "https:" "https:" "https:" "https:" "https:" "UCL" "UCL" "UCL" uni jobs at Northeastern University
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Engineering and Electrical and Computer Engineering, including but not limited to navigating the contract process and understanding the requirements for different payment types and requests for Chemical
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part time faculty lecturer for the Fall 2025 semester. The successful candidate will teach on-campus graduate courses at the Northeastern University Oakland campus. Responsibilities: Part-time lecturers
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: Teach selected graduate courses within the multidisciplinary masters degree programs. See website for details of programs: http://www.coe.neu.edu/graduate-school/multidisciplinary Responsibilities include
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-on exposure to experimental skills in gene editing, gene augmentation, CRISPR technologies, immunotherapy, and CAR-T cell therapy. Teaching responsibilities include: Reviewing and learning key teaching points
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opportunity to teach in the area of pharmaceutical industry, and translate their experience for students into the classroom. Additionally the position will work within the pharmaceutical industry fellowship
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to teach in-person undergraduate courses on the Oakland Campus in one or more of the following fields: International Relations, Comparative Politics, American Politics, Political Theory, or Public Policy
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About the Opportunity School of Nursing Part-time Lecturer positions are available to teach online and at clinical sites for our Charlotte, North Carolina campus in the following areas: Adult
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, retirement- as well as commuting & transportation. Visit https://hr.northeastern.edu/benefits/ for more information. All qualified applicants are encouraged to apply and will receive consideration
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About the Opportunity Summary/Responsibilities The Communication Studies Department at Northeastern University seeks part-time faculty to teach courses on Public Speaking, Business and Professional
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requires significant experience in classical machine learning methods such as decision trees, gradient boosting machines, and both shallow and deep learning networks. A demonstrated ability to interface with