65 programming-"Multiple"-"Prof"-"O.P"-"U"-"Humboldt-Stiftung-Foundation" positions at New York University
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: 275042414 Senior Associate Director, Experiential Learning US-NY-New York Job ID: 2025-14699 Type: Stern School of Business (SB1071) # of Openings: 1 Category: Academic Program Support New York University
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of DNA libraries containing multiple variants of synthetic gene constructs, which are then tested using the model organism E. coli. Candidates are also welcome to propose projects related to the work done
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undergraduate and graduate students during academic semesters (including January terms and summers). In addition to mental health support, the counselor spearheads programs promoting the mental and physical well
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for immediate, long-range, and future financial support, through gifts and pledges to the University, for critical operations such as student aid, faculty support, academic and research program development, and
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to handle multiple tasks in a high volume, deadline-driven environment. Preferred Skills, Knowledge and Abilities: In addition to English, fluency in at least one of the following languages: Mandarin, Korean
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multiple projects simultaneously. Ability to clearly articulate goals, strategies, and direction. Excellent collaboration and interpersonal skills. Proven track record of meeting critical deadlines. Capable
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, project management, and program development. May represent the CFO at selected internal and external meetings with faculty, staff, students, alumni, senior university administrators, consultants, as
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Information Systems, Business Administration or related field with specialization in electronic data processing, programming, systems analysis, and system design, or equivalent. Preferred Experience: In-depth
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team structure to complete tasks in a timely manner, monitor the work program, manage multiple research projects simultaneously, and communicate ideas effectively Ability to work effectively under tight
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project focused on the development machine-learning powered digital twin system for the structural performance of civil engineering structures. The project is a collaboration between multiple research