HADAS - Heterogeneous and Adaptive distributed DAta management Systems.
Ancienne Joint research team between CNRS, Grenoble INP, UGA
The HADAS research project addresses new challenges raised by continuous generation of huge, distributed, and heterogeneous data. These challenges concern collection/harvesting, integration, lookup and querying, filtering and indexing and many more. Our research focuses on new efficient and largely distributed, scalable, adaptive and intelligent data and knowledge management infrastructures. More specifically, our research goals concern:
  • Management of massive datasets:
    • Adaptive and distributed storage and cache for storing large heterogeneous datasets.
    • Indexing data on the fly to facilitate efficient data manipulation.
    • Economy and energy oriented integration of big datasets management: economic cost model.
    • Quality-based continuous data/event stream processing and composition.
  • Adaptive querying systems:
    • Declarative hybrid languages for expressing data (streams) processing.
    • Learning-based distributed query optimization for efficient (continuous) query evaluation with scarce metadata.
    • Query operators for on-the-fly data reorganization facilitating future data manipulations.
    • Service Level Agreement guided optimization of continuous and mobile queries.
We aim at deploying the data technologies in different types of architectures and environments: grids, peer-to-peer networks, sensor networks, cloud, HPC, GPU, ARM/Raspberry. Sustainable mobility and urban systems like smart cities, energy, clean, safe and efficient technologies like Smart Grids, smart energy, clean technologies and data markets for extracting business value from data, are examples of applications we explore.

Non-permanent members

Last name First name Status Phone
FAROKHNEJAD Mehrdad PhD Student +33 4 57 42 16 39
ROMDHANI Senda PhD Student +33 4 57 42 16 39
Subscribe to RSS - HADAS