Data Product Quality Best Practices : a white paper from the observatory best practices/lessons learned series.
View/ Open
Average rating
votes
Date
2019Author
Kearney, Thomas D
Smith, Leslie M
Rutherford, Christopher
Status
UnpublishedPages
62pp.
Metadata
Show full item recordAbstract
Data Product Quality is broadly defined based on the fitness for use of data in a particular application. In this way the needs of the user dictate whether data can be considered of sufficient quality. With the increase in digital data and the separation between data generators and data users, it is important for observatories and aggregators to be clear about what their data represent and how the data have been processed. By clearly articulating these steps and utilizing community standards, data repositories can increase the trustworthiness of themselves as a resource and of their data. In this paper, we focus on this concept of trustworthiness, reliability, and user support. Specifically, this white paper examines the current trends and drivers for data quality by focusing on four key best practice topic areas: Data Quality Control Practices, Data Support Services, Metadata, and Interoperability......
Publisher
Consortium for Ocean LeadershipWashington, DC
Document Language
enBest Practice Type
Best PracticeCitation
Kearney, T.D.; Smith, L.M. and Rutherford, C. (2019) Data Product Quality Best Practices: a white paper from the observatory best practices/lessons learned series. Washington, DC, Consortium for Ocean Leadership, 62pp. DOI: http://dx.doi.org/10.25607/OBP-507Collections
The following license files are associated with this item:
Except where otherwise noted, this item's license is described as Attribution-NonCommercial-NoDerivs 4.0