Tags


Click a tag to remove it from package

Edit Species Groups of Package

Edit Parameter of Package

Edit DOI Package

Choose a project for this package

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

880 A desiccating saline lakebed is a significant source of anthropogenic greenhouse gas emissions

Title
A desiccating saline lakebed is a significant source of anthropogenic greenhouse gas emissions
Description

Original data published in: Cobo, Melissa, Goldhammer, Tobias, and Brothers, Soren (accepted) A desiccating saline lakebed is a significant source of anthropogenic greenhouse gas emissions. One Earth

Species Groups
Study site
Great Salt Lake
Contact
Tobias Goldhammer, Soren Brothers
Licence for data
All rights reserved. Please send a request to Tobias Goldhammer, Soren Brothers if you like to use this data. Mind our data policy: IGB Data Policy
Current doi
10.18728/igb-fred-881.0

Data files (e.g. excel)

TitlecreatedFiletypeActions
Cobo_et_al_Data_.xlsx 21. May. 2024 15:49 datatable: .xlsx
Error: To access file, please get in touch with the contact person.

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 free CC BY 4.0 Licence.

  • A_desiccating_saline_lakebed_is_a_significant_source_of_anthropogenic_greenhouse_gas_emissions.xml
  • A_desiccating_saline_lakebed_is_a_significant_source_of_anthropogenic_greenhouse_gas_emissions.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)