The metadata-profile-discovery library is able to build java objects parsing the ‘gCube Metadata Profiles’ models (XML-based)
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README.md

Metadata Profile Discovery

The metadata-profile-discovery library is able to build java objects parsing the 'gCube Metadata Profiles' models:

  • defined in the contexts (scopes) of the D4Science Infrastructure;

  • passed as an input stream;

Built With

Documentation

You can find the D4Science Catalogue documentation at GCat Background Wiki Page

Change log

See the Releases

Authors

License

This project is licensed under the EUPL V.1.1 License - see the LICENSE.md file for details.

About the gCube Framework

This software is part of the gCubeFramework: an open-source software toolkit used for building and operating Hybrid Data Infrastructures enabling the dynamic deployment of Virtual Research Environments by favouring the realisation of reuse oriented policies.

The projects leading to this software have received funding from a series of European Union programmes including:

  • the Sixth Framework Programme for Research and Technological Development
    • DILIGENT (grant no. 004260).
  • the Seventh Framework Programme for research, technological development and demonstration
    • D4Science (grant no. 212488);
    • D4Science-II (grant no.239019);
    • ENVRI (grant no. 283465);
    • EUBrazilOpenBio (grant no. 288754);
    • iMarine(grant no. 283644).
  • the H2020 research and innovation programme
    • BlueBRIDGE (grant no. 675680);
    • EGIEngage (grant no. 654142);
    • ENVRIplus (grant no. 654182);
    • PARTHENOS (grant no. 654119);
    • SoBigData (grant no. 654024);
    • DESIRA (grant no. 818194);
    • ARIADNEplus (grant no. 823914);
    • RISIS2 (grant no. 824091);
    • PerformFish (grant no. 727610);
    • AGINFRAplus (grant no. 731001).