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information science. You should have a genuine interest in interdisciplinary research at the interface of social, environmental, data sciences, and policy research. You also possess: A PhD in Geo-information
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Interface & Partnerships (15%) Act as day-to-day interface to sponsors, Commons nodes, national labs, foundries/OSATs, and EDA vendors; coordinate PMRs/IPRs, site visits, tech exchanges, and fab/test access
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the management of interfaces to other ESA directorates and to partnering space agencies, including platform federation activities. Technical competencies Strong background in computer science or software
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clinical trials, advanced computational methods, neuroimaging, brain stimulation, body-machine interfacing, gamification of therapy, assistive technology design, development and evaluation, outcome measure
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modalities. Specific areas of high interest include Image Guided Therapy and Interventions, as well as AI and Computational Imaging. The applicant is anticipated to have a secondary or adjunct appointment in
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article 7 of the Regulation, namely: a) Conducting research in the One Health area, particularly in fields that are relevant for strengthening research at the interface between Human Health/Environmental
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. Interdisciplinary research is actively promoted by the Faculty of Science, fostered under the University-wide six Interdisciplinary Labs (https://interdisciplinary-research.hkbu.edu.hk/), and supported by state
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in hiring/human resources processes - perform other inherent administrative tasks Employer: Champalimaud Foundation Department: Champalimaud Research Program, International Brain Laboratory Core
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Overview We seek a PhD-level investigator with an established, externally funded research program in hearing loss, cochlear implants, auditory neuroscience, vestibular function, or related neural interface
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paradigms centered on human perception. Finally, the recent rise of foundation models and multimodal artificial intelligence opens up new perspectives at the interface between coding and machine learning