Principles
Scientific Data is a peer-reviewed open-access journal for descriptions of datasets and research that advances the sharing and reuse of research data. Our primary content-type, the Data Descriptor, combines traditional narrative content with structured descriptions of data to provide a framework for data-sharing to accelerate the pace of scientific discovery. These principles are designed to align with and support the FAIR Principles for scientific data management and stewardship, which declare that research data should be Findable, Accessible, Interoperable and Reusable.
Scientific Data is founded on six key principles
Credit
|
Scientists who share their data in a FAIR manner deserve appropriate credit and recognition. Publishing at Scientific Data:
|
Reuse
|
Standardized and detailed descriptions make research data easier to find and reuse. Data Descriptors:
|
Quality
|
If released data are to be truly reusable, critical evaluation is needed to verify experimental rigour and the completeness of their description.
|
Discovery
|
Scientists should be able to easily find datasets that are relevant to their research. Content at Scientific Data:
|
Open
|
We believe scientists work best when they can easily connect and collaborate with their peers, so Scientific Data aims to:
|
Service
|
Scientific Data is committed to providing excellent service to both authors and readers.
|