2018-00574 - HPC-Big Data convergence at processing level by bridging in situ/in transit processing with Big Data analytics
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چکیده
This PhD will be done in the context of the Inria Project Lab (IPL) HPC-BigData: High Performance Computing and Big Data. The goal of this IPL is to gather teams from HPC, Big Data and Machine Learning (ML) areas to work at the intersection between these domains. External partners include: ATOS/Bull, Argonne National Lab (ANL), Laboratoire de Biochimie Théoerique (LBT), CNRS, ESI-Group, Grid’5000.
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