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, As his field of research relates to Internet security issues, he is currently working on building a new network anomaly detector that provides a more autonomous detection. His researches lead him to investigate techniques that are able to deal with networks big data, 2018.
, Philippe Owezarski is director of research at CNRS (the French center for scientific research), working at LAAS (Laboratory for Analysis and Architecture of Systems)