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learning and proven to result in positive youth development; we foster sustainability and resilience by building community-wide knowledge, capacity, and networks that support the healthy development of youth
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manage Princeton University's $36 billion Endowment through a global network of top-tier investment firms that span both traditional and alternative asset classes such as public equities, private equity
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private sector customers and a stream of recurring revenue, the AUO is well-positioned for commercial scale. The next stage requires expanding this customer base, refining the go-to-market approach, and
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network capacity and strengthen academic-community linkages in four core mission areas: health careers and workforce diversity; health professions student education; health professions continuing education
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needs and external factors. Current Georgetown Employees: If you currently work at Georgetown University, please exit this website and login to GMS (gms.georgetown.edu ) using your Net ID and password
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University, please exit this website and log in to Workday using your Net ID and password. Select the Career icon on your Home dashboard to view jobs at Cornell. Online Submission Guidelines: Most positions
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will close at 12:01 a.m. CT on the specified Closing Date (if designated). If you close the browser or exit your application prior to submitting, the application process will be saved as a draft. You
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(Faculty of Civil Engineering and Geosciences) and work closely with Dr Louise Nuijens and an (inter)national network of collaborators. QUASI offers a unique opportunity to combine cutting edge observations
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cyber-physical systems, System-on-Chip (SoC), multi-die architectures, accelerator-based computing, brain-inspired/quantum computing, emerging device technologies, low-power/reliable design, and secure
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techniques to solving complex problems within the energy systems. The candidate should have a strong foundation in deep learning techniques (including convolutional neural networks, recurrent neural networks