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multidisciplinary topics from signal processing to machine learning to software design with a focus on sonar systems. The goal of our group is to leverage all of the available acoustic physics to generate data
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, Python, C++ Object-oriented software design Vehicle autonomy Object tracking and classification Machine learning Intelligent control and fuzzy logic You working location will be full on-site located in
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experiential learning for students. The Healthcare Simulation Operations Specialist will work with faculty and simulation center staff to develop simulation-based educational programs. This includes helping
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.), payment processing, and tracking of event invitation and registration process. The successful candidate will have: Strong computer skills, specifically Excel, Microsoft 365, Teams, Zoom, and willingness
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development, cyber security, and/or cloud-native tool management. We will provide you with the opportunity to work on cutting edge technologies driving the future of our military, DoD and Intel communities
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REQUIREMENTS Penn State is seeking a dynamic and experienced instructor to lead an eight week experiential, hands-on course titled “Turfgrass Machines & Maintenance” within the Agricultural Systems Management
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REQUIREMENTS Penn State Shenango invites applications for Adjunct Lecturers in Information Technology and Management Information Systems, starting August 2025. Job Duties Teach classes supporting our
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with programming, and a strong mathematical background. Experience with Machine Learning/AI a plus. Schedule: up to 20 hours per week Compensation: The starting rate for this job is $15.00 BACKGROUND
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—and develop relevant educational programming. Design and deliver research-based learning experiences for producers and stakeholders using diverse formats (in-person, online, digital publications, videos
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of interest include, but are not limited to: Novel food processing technologies (e.g., nonthermal, extrusion, 3D printing, fermentation engineering). Machine learning for predictive modeling in food safety