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(NYU) invite applications for a postdoctoral or research associate position to lead scientific machine learning research as part of a new multi-institution international project, M²LInES , The scientific
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Biostatistics, Categorical Data, Computationally Intensive Methodology, Econometrics, High-Dimensional Statistics, Multivariate Statistics, Statistical Machine Learning, Stochastic Processes, and Time Series
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, marital status, military status, national origin, parental status, partnership status, predisposing genetic characteristics, pregnancy, race, religion, reproductive health decision making, sex, sexual
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Details Posted: 15-Jun-24 Location: 726 Broadway Salary: Open Categories: Academic/Faculty Internal Number: 148041 The postdoctoral associate will be conducting research on topics in machine
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identity or expression, marital status, military status, national origin, parental status, partnership status, predisposing genetic characteristics, pregnancy, race, religion, reproductive health decision
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fabrication equipment. Preferred Experience: Experience with Sewing Machines, CNC machines. Experience working in educational and experimental art studio environment. Experience with microcontrollers, soldering
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and Abilities: Basic knowledge of types of dental instruments. Ability to operate basic office equipment (e.g., personal computer, photocopy/fax machine). In compliance with NYC's Pay Transparency Act
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-making, machine learning, market research, pricing, new product development, high-tech marketing, international marketing, and digital marketing. In compliance with NYC's Pay Transparency Act, the annual
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to Divisional stakeholders. The assistant dean will be a leading collaborator with the Associate Dean in the launch and implementation of the Division's strategic growth plan, new Prior Learning Assessment
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, transmittal form, checks, etc.) and external stakeholders (review discrepancies and answer inquiries from the banks, schedule services with armored car). Required Education: Bachelor's Degree or equivalent