87 machine-learning "https:" "https:" "https:" positions at University of Texas at Austin
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, such as algorithms, web applications, cybersecurity, and topics related to artificial intelligence, computer systems, and UI/UX. We have opportunities to teach classes dedicated to CS majors as
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, and is known for its leadership in high performance computing, visualization, big data analytics, and machine learning. UT Austin hosts a broad range of Centers and interdisciplinary initiative
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model or machine-learning-enabled assets at a company or University). Basic understanding of early-stage technology development. Knowledge of basic principles of intellectual property and licensing
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Sheltered Annuity 403(b) and a Deferred Compensation program 457(b) Flexible spending account options for medical and childcare expenses Robust free training access through LinkedIn Learning plus professional
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becoming a member of the Facilities Services team at UT. With Facilities Services, you’ll have opportunities to grow and learn. We believe that everyone has the potential to be a leader, and we offer
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questions about the fellowship or the application process, please contact Tim Rogers, Director of Education & Engagement at trogers@texasperformingarts.org . More information is available at: https
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for full-time professional track positions (Assistant/Associate Professor of Instruction and Assistant/Associate Professor of Practice). We seek candidates qualified to teach a range of courses in
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) and a Deferred Compensation program 457(b) Flexible spending account options for medical and childcare expenses Robust free training access through LinkedIn Learning plus professional conference
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to: · 100% employer-paid basic medical coverage · Retirement contributions · Paid vacation and sick time · Paid holidays Please visit UT Austin's Human Resources (HR) website at https
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at the Oden Institute are diverse and build upon the mathematical foundations for predictive science, data science, machine learning, and (in particular) physics-based modeling using state-of-the-art computing