ZENITH Team
Scientific Data Management
Staff
Esther Pacitti, Professeur des universités, UM
Florent Masseglia, Directeur de recherche, INRIA
Alexis Joly, Directeur de recherche, INRIA
Reza Akbarinia, Chargé de recherche, INRIA
Cathy Desseaux, Assistant ingénieur, INRIA
Benjamin Bourel, Chargé de recherche, INRIA
Christophe Botella, Chargé de recherche, INRIA
Jean-Christophe Lombardo, Ingénieur de recherche, INRIA
Antoine Affouard, Ingénieur d’étude, INRIA
Associates & Students
Matteo Contini, IFREMER
Tanguy Lefort, UM
Kawtar Zaher, INA (Institut National de l’Audiovisuel)
Guillaume Coulaud, UM
Cesar Leblanc, INRIA
Ananthu Aniraj, INRIA
Regular Co-workers
Thomas Paillot, CDD Ingénieur-Technicien, INRIA
Julien Thomazo, CDD Ingénieur-Technicien, CNRS
Nadine Jacquet, CDD Ingénieur-Technicien, CNRS
Maxime Ryckewaert, CDD Chercheur, INRIA
Rebecca Pontes Salles, CDD Chercheur, INRIA
Konstantinos Panousis, CDD Chercheur, INRIA
Pierre Leroy, CDD Ingénieur-Technicien, INRIA
Jules Vandeputte, CDD Chercheur, INRIA
Hugo Gresse, CDD Ingénieur-Technicien, INRIA
Théo Larcher, CDD Ingénieur-Technicien, INRIA
Lukas Picek, CDD Chercheur, INRIA
Patrick Valduriez, Invité longue durée Eméritat, INRIA
Maxime Fromholtz, CDD Ingénieur-Technicien, INRIA
Raphael De Freitas Saldanha, CDD Chercheur, INRIA
Our approach is to capitalise on the principles of distributed and parallel data management. In particular, we exploit: high-level languages as a basis for data independence and automatic optimisation; data semantics to improve information retrieval and automate data integration; declarative languages (algebra, calculus) to manipulate data and workflows; and highly distributed and parallel environments such as P2P, cluster and cloud. To reflect our approach, we organise our research programme into five complementary themes:
- Data integration, including polystores;
- Query processing, including indexing and privacy; and
- Management of scientific workflows;
- Data analysis, including data mining and statistics;
- Machine learning for high-dimensional data processing and retrieval.