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of the University community on copyright, fair use, authors’ rights, content rights for text and data mining, Creative Commons licensing, permissions, public performance rights, WU IP Policy, and related rights
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health literacy resources, using data mining and web scraping techniques to collect and categorize content from national and international websites and educational tools. Additionally, they will support
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SCIENCE Is this split and/or fully grant funded? No Duties and Responsibilities Salary Range: $105,000 – $115,000 Benefits Information: https://www.luc.edu/hr/benefits/ The Department of Computer Science in
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desktop, web, and mobile applications that apply modern software engineering and machine learning to advance the usability of medical AI tools. Working under direct supervision, the programmer will take on
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mining and information retrieval, for adaptation into and use in our system, under guidance from the Data Science manager. The candidate will work towards ensuring system compliance with the university’s
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application process can be found at https://lib.utah.edu/faculty-faq.php . Come work in a student-centered library with a team that excels in supporting the teaching and research mission of the University
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areas include but are not limited to Artificial Intelligence in the contexts of: · Extended reality (VR/AR/MR) · E-gaming and/or video games · Data mining · Web 3.0 · Computer vision · User-facing bots
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bioinformatics data using software packages, statistical applications, or data mining techniques. Extend existing software programs, web-based interactive tools, or database queries as sequence management and
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project management, basic web development, database management and integration or related experience. Preferred Qualifications Experience and familiarity with PeopleSoft System Schedule Variable work
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are encouraged to visit the ESA website: http://www.esa.int Field(s) of activity for the internship You can choose between the following topics: 1) Topic 1: Machine Learning for recognition of planetary materials