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systems) is a strong plus. Familiarity with data tooling for scale and reproducibility (e.g., SQL, Docker, AutoML, cloud infrastructure, CI/CD) is a plus. Experience with NonDestructiveTesting/Inspection
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to curate, analyze and share imaging data in a national cloud solution. You will get the opportunity to contribute to a variety of levels, dividing the work within the team based on interest and expertise
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experimental security (FSec Group: https://vu.nl/en/about-vu/faculties/faculty-of-science/more-about/found… ), with a focus on Cloud computing, the use of data analysis and AI techniques to quantify, evaluate
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temperatures across a unique buoy array. Combining the in situ buoy data with rain and cloud observations, you’ll quantify spatial and temporal heterogeneity and link atmospheric drivers to lake responses
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. Duties Within the Data Science Section, you will be responsible for: supporting the definition and implementation of the architecture for a hybrid-cloud science platform (expanding ESA Datalabs - https
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executive MBA programmes. For more information about the group: https://www.rsm.nl/research/departments/technology-and-operations-management/business-information/ Job description You educate and inspire
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, privacy, and resilience. Today’s Transformers models scale poorly and assume abundant cloud resources. The research program FIND aims to deliver architectural and algorithmic breakthroughs that enable
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on-device AI to ensure low latency, privacy, and resilience. Today’s Transformers models scale poorly and assume abundant cloud resources. The research program FIND aims to deliver architectural and
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) Familiarity with data portals, metadata catalogs, FAIR principles, and data governance models Experience with cloud data platforms (e.g. Azure, Google Cloud Platform) is a plus Excellent communication and
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observational, simulated, or laboratory data sets Efficient use of high-performance computing (HPC) and cloud-based platforms (Near) real-time analysis of large or streaming data Data management, archiving, and