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, manipulation, mobility, perception and autonomy architectures are desired. The successful applicant will be required to teach, advise and mentor graduate students, develop an independent, externally funded
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members with careers that leverage the skills and unique experience they gained while serving our country, learn more at BNL | Opportunities for Veterans at Brookhaven National Laboratory . Equal
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for modelling various cognitive processes on a neuroscientific basis, which are tested using robots. Areas of study include perception, memory, learning, cognitive development, attention, motor control and
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. Expertise may include systems-level investigations of perception, cognition, or motor control; application of machine learning to neural data analysis and neural decoding; the development of biologically
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buildings, including reality capture using laser scanning and photogrammetry, automatic anomalies identification with Deep Learning techniques, and anomalies mapping using Ray Casting techniques. Requirement
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involvement in system setup, on-site validation, or scientific publications will be highly valued. (40%) Criterion 3. Strong proficiency in Python and machine learning/computer vision libraries (e.g., PyTorch
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manuscripts. Assists in drafting presentations on research findings. The Attention, Perception, and EXperience (APEX lab) as part of the Center for Practical Wisdom in the Department of Psychology
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approaches, including human perceptual experiments, machine learning, digital signal processing, and computational models of hearing. UConn has a vibrant neuroscience community, and there are opportunities
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, Outlook, Access, Teams, and PowerPoint, HRIS databases, electronic timekeeping, and cloud-based storage systems. Able to quickly learn and train others to use new computer technology. Able to manage all
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well as experience in automated fabrication and mechanical characterization. A solid background in modelling and system identification is essential, with particular emphasis on data-driven and machine-learning–based