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multidimensional nature of emotional disorders. Many of the statistical techniques emphasized in the lab span disciplines such as network theory, dynamical systems, and machine learning, among others. Accordingly
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for a part-time faculty position to teach Applied Machine Intelligence courses offered within the Master of Professional Studies Analytics program, located on-ground in Toronto, Canada. Responsibilities
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, Edge and Fog Computing SDN/NFV IoT protocols IoT architectures Digital Twin Network Security Smart Applications Device/Edge and Cloud based Machine Learning Position Type Academic Position Type Academic
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at Northeastern. (10%) Required Qualifications: - Ph.D. in Human-Computer Interaction, Information Science, Computer Science, Design, or related fields - Strong record of published research in HCI, CSCW, DIS
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range of projects involving machine learning (ML) and artificial intelligence (AI), including autonomy, sensing and communication, and decision support systems, among others. The R&D Engineer will work
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, dynamical systems, and machine learning, among others. Accordingly, the objectives of the lab include 1) characterizing the temporal dynamics of symptoms and affect using self-reported ecological momentary
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presenting in-service training. Demonstrated knowledge of computer and assistive technologies; disability practices and procedures including applicable federal and state laws, policies, regulations, and
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Number: 5269929 Distinguished Research Fellow- Khoury College of Computer Sciences About the Opportunity Khoury College of Computer Sciences is looking for a Distinguished Research Fellow. Responsibilities
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(including AI and machine learning). Cultivate a culture of innovation across the organization. Drive strategic initiatives in product development and tech innovation. Collaborate with senior leadership
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. Other necessary skills: MLOps Experience: Demonstrated experience in operationalizing and maintaining machine learning models in production environments, including deployment, monitoring, and lifecycle