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    639 Odonata of Australia

    Title
    Odonata of Australia
    Description

    Study site: Australia.

    Authors: Alex Bush, Günther Theischinger, Vincent Kalkman & Dennis R. Paulson.

    Contact details:

    Alex Bush. E-mail: alex.bush@lancaster.ac.uk. ORCID: https:/orcid.org/0000-0002-0679-6666. Affiliation: Lancaster University.

    Günther Theischinger. E-mail: theischingergunther@gmail.com. ORCID: https:/orcid.org/0000-0002-5207-2626. Affiliation: Australian Museum -Research Associate.

    Vincent Kalkman. E-mail: vincent.kalkman@naturalis.nl. ORCID: https://orcid.org/0000-0002-1484-786. Affiliation: Naturalis Biodiversity Center.

    Dennis R. Paulson. E-mail: dennispaulson@comcast.net. Affiliation: Slater Museum of Natural History, University of Puget Sound (now retired).

    Data contributors: The metadata file 'table1.pdf' includes all the data sources in detail.

    Study site
    _global
    GeoNode references

    GeoNode layers

    • Odonata_of_Australia
    Contact
    Afroditi Grigoropoulou
    Licence for data
    This data are made available under the Open Database License:Open Data Commons Attribution License

    Machine Readable Metadata Files

    FRED provides all metadata of this package in a maschine readable format. There is a pure XML file and one EML file in Ecological Metadata Language. Both files are published under the freeODC-ByLicence.

    • Odonata_of_Australia.xml
    • Odonata_of_Australia.eml

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    Parsing data File

    Estimated Time:

    Why does it take so much time?

    While parsing a file, the database has to perform various tasks, some of them needs a lot of CPU and memory for larger files.

    • preprocessing: means automatic detection of headlines, table body, format values or csv-separators
    • copying: means read the file cell by cell and copy all elements to the database. During this format settings can be calculated (for example iso-time)
    • analyzing: check out for different data types (can be time, numeric or text)