‹ › ×

    FRED
    • Contact
    • GDPR policy
    • Imprint
    • About
    • Sign Up
    • Login
    • SEARCH
    • Search and find
    • Packages
    • Map
    • By Category ...
      • Study sites
      • Sampling sites
      • Parameters
      • Sampling types
      • Species groups
      • Current DOIs

    647 EPTO of Nepal-Himalaya

    Title
    EPTO of Nepal-Himalaya
    Description
    Study site: Nepal. Authors: Deep Narayan SHAH & Ram Devi Tachamo-Shah. Dataset available upon communication with the authors. Contact details: Deep Narayan Shah. E-mail: dnshah@cdes.edu.np. ORCID: https://orcid.org/0000-0001-8436-7560. Affiliation: Central Department of Environmental Science, Tribhuvan University. Ram Devi Tachamo-Shah. E-mail: ramdevi.shah@ku.edu.np. ORCID: https://orcid.org/0000-0002-1061-2903. Affiliation: Department of Life Sciences, Kathmandu University.
    Study site
    _global
    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.

    • EPTO_of_Nepal-Himalaya.xml
    • EPTO_of_Nepal-Himalaya.eml

    You are about to leaving FRED and visting a third party website. We are not responsible for the content or availability of linked sites.

    To remain on our site, click Cancel.

    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)