185 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "U.S" "U.S" positions at University of Nevada Las Vegas
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for Las Vegas and Nevada. For more information, visit us on line at: http://www.unlv.edu EEO/AA STATEMENT The University of Nevada - Las Vegas (UNLV) is committed to providing a place of work and learning
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. Applications must be submitted electronically through Workday. Please note that emailed materials will not be accepted. Veterans are encouraged to apply. UNLV values the skills of those who have served. Learn
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. For more information, visit us on line at: http://www.unlv.edu EEO/AA STATEMENT The University of Nevada - Las Vegas (UNLV) is committed to providing a place of work and learning free of discrimination
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hospitals. For more information, visit us on line at: https://www.unlv.edu/medicine . MINIMUM QUALIFICATIONS This position requires an MD or DO from an accredited college or university as recognized by
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Engineering, Electrical Engineering, or a closely related field, along with a demonstrated passion for teaching and meaningful industry experience. This faculty in residence position reports to both colleges
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The Department of Accounting is supplementally accredited by the AACSB and is one of 33 U.S. universities to be endorsed by the Institute of Internal Auditors. The department has 17 full-time faculty members and
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are a veteran or eligible family member, we encourage you to apply. Learn more about resources and support for veterans at UNLV Veterans Services (https://www.unlv.edu/jobs/veterans ), or reach out
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System of Higher Education facilities in the Las Vegas Metropolitan area. For more information, please visit: https://www.unlv.edu/police . TESTING NOTICE ALL qualified candidates will be required
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troubleshooting and/or repair of malfunctioning parking meters, pay-to-park machines and hand-held writers; coordinate with appropriate vendor for more complex repairs; perform basic troubleshooting and/or
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Remote Sensing; Machine Learning Models for Predicting Wildfire Spread; Wildfire Risk Assessment Through Multi-Modal Data Integration; Automated Vegetation and Fuel Load Mapping Using Computer Vision; AI