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dependent educational benefits Life insurance coverage Employee discounts programs For detailed information on benefits and eligibility, please visit: http://uhr.rutgers.edu/benefits/benefits-overview
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: 262971 Minimum Education and Experience: Applicants must have a doctoral degree in statistics, computer science, or a related field. City: Piscataway State: NJ Location: Busch (RU-New Brunswick) Create a
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dependent educational benefits Life insurance coverage Employee discounts programs For detailed information on benefits and eligibility, please visit: http://uhr.rutgers.edu/benefits/benefits-overview
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dependent educational benefits Life insurance coverage Employee discounts programs For detailed information on benefits and eligibility, please visit: http://uhr.rutgers.edu/benefits/benefits-overview
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Qualifications Minimum Education and Experience Currently enrolled Rutgers undergraduate or graduate student in computer science, information science, computer engineering, or a related field. Certifications
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Posting Open Date Posting Close Date Qualifications Minimum Education and Experience The candidate should hold a PhD degree in Computer Science, Information Systems, Computer Engineering, or a related field
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for innovation in digital health, fitness, and rehabilitation. Preferred Qualifications Working towards a Bachelor’s degree in Rutgers, preferred. Background in computer science, or a closely related discipline
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Utilized Physical Demands and Work Environment Overview Statement Posting Details Special Instructions to Applicants Quick Link to Posting https://jobs.rutgers.edu/postings/264079 Campus Rutgers University
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engineering, computer science, applied mathematics, systems biology, or a related field. Strong background in computational modeling, data science, or machine learning. Candidates in ABD (all but degree) status
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, please visit: http://uhr.rutgers.edu/benefits/benefits-overview . Posting Summary Title: Northeast Climate Integrated Modeling: Defining biological references and setting catch advice in a dynamic