442 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "https:" "Univ" "Univ" positions at University of Pittsburgh
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competitive salaries and generous benefits. Interested candidates should apply to Requisition #24003586 at https://www.join.pitt.edu/ . The University of Pittsburgh is an equal opportunity employer / disability
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instructor to teach Basic Computer Forensics beginning in fall 2026. Doctoral degree in Computer Science or Criminology preferred, master's degree in Computer Science, Criminology, or related field, or a J.D
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their field through scholarship, professional practice, and leadership in professional and learned organizations. Applicants should submit a curriculum vitae and apply to requisition number 24000519 via: https
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five to seven years as Associate Professor. The rank of professor recognizes the attainment of authoritative knowledge and reputation in a recognized field of learning and the achievement of effective
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Research Assistant LRDC - Pennsylvania-Pittsburgh - (26001621) This position is at the Learning Research and Development Center (LRDC), a multi-disciplinary center for research to advance
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data scientists, providing summary reports, regression analysis, application of publicly available signal processing methods, and executing machine learning training processes. Familiarity with R
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Growth: Opportunities for continuous learning, professional development, and career advancement. Competitive Benefits: Enjoy a comprehensive benefits package, including health insurance, retirement plans
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positions offer highly competitive salaries and generous benefits. Interested candidates should apply to Requisition # 23003551 at https://www.join.pitt.edu/ . The University of Pittsburgh is an equal
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response to electrical stimulation. Develop axonal conduction models to study nerve conduction and block by complex electrical stimulation waveform. Develop neural network and machine learning models
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the guidance of the PI. The project aims to compare neural representations in artificial and biological neural networks. The candidate will learn to implement artificial neural networks, conduct