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of ultra-diffuse galaxies; extragalactic tidal phenomena; intra-cluster diffuse light; and galactic cirrus clouds. These measurements will also be compared with other deep-field photometric data (with
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applications for the process industries with particular emphasis on delivering step change improvements in process performance; Informatics for process and product development with a background in big data
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of Computer Science. Led by Prof. Dr. Martin Pawelczyk, who recently joined the University of Vienna from Harvard University, our research sits at the intersection of AI Safety and Data-Centric AI. We aim to make large
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applications in AI and data analytics. Performance evaluation and scalability analysis of frameworks used to process large-scale datasets (NET4EXA). Stakeholder mapping and engagement activities in WP6 RI-SCALE
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/f/d) starting October 1, 2027 The position will be created in the framework of the Cluster of Excellence 3121 “TERRA: Terrestrial Geo-Biosphere Interactions in a Changing World” , a large research
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healthcare, IIoT, computational fintech, robot-human interaction, trustworthy AI, explainable AI, large language models, quantum computing. Where to apply Website https://www.timeshighereducation.com/unijobs
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of Computer Science. Led by Prof. Dr. Martin Pawelczyk, who recently joined the University of Vienna from Harvard University, our research sits at the intersection of AI Safety and Data-Centric AI. We aim to make large
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Stanford University is seeking a Research Data Analyst 2 to manage and analyze large amounts of information, typically technical or scientific in nature, independently with minimal supervision. Duties
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chart the future directions for resource management for OSCs large-scale cluster systems. These systems include the Slurm resource manager for the HPC clusters and Kubernetes clusters for container
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heterogeneous cyber data. While traditional techniques such as Principal Component Analysis (PCA), clustering, and autoencoders help reduce dimensionality and improve detection performance, they remain