The FAIR principles for scientific data (Findable, Accessible, Interoperable, Reusable) are also relevant to other digital objects such as research software and scientific workflows that operate on scientific data. The FAIR principles can be applied to the data being handled by a scientific workflow as well as the processes, software, and other infrastructure which are necessary to specify and execute a workflow. The FAIR principles were designed as guidelines, rather than rules, that would allow for differences in standards for different communities and for different degrees of compliance. There are many practical considerations which impact the level of FAIR-ness that can actually be achieved, including policies, traditions, and technolog...
Chue Hong NP, Katz DS, Barker M, et al. FAIR Principles for Research Software (FAIR4RS Principles). ...
Research data is accumulating rapidly and with it the challenge of fully reproducible science. As a ...
As the FAIR Principles about findability, accessiblity, interoperability and reusability of research...
Computational workflows are an increasingly important part of the research landscape, and a key tool...
The FAIR principles have been accepted globally as guidelines for improving data-driven science and ...
Research data is accumulating rapidly, and with it the challenge of irreproducible science. As a con...
The FAIR Principles have two aspects: They were written specifically for research data and they also...
The current amount of scientific scholarly output is immense. In order to make further progress we h...
For open science to flourish, data and any related digital outputs should be discoverable and re-usa...
In recent years, the scholarly community has examined its culture and practices, and found a set of ...
In recent years, digital object management practices to support findability, accessibility, interope...
The FAIR Data Principles propose that all scholarly output should be Findable, Accessible, Interoper...
Researchers are increasingly asked to make their research open and FAIR, but what does this mean in ...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
Chue Hong NP, Katz DS, Barker M, et al. FAIR Principles for Research Software (FAIR4RS Principles). ...
Research data is accumulating rapidly and with it the challenge of fully reproducible science. As a ...
As the FAIR Principles about findability, accessiblity, interoperability and reusability of research...
Computational workflows are an increasingly important part of the research landscape, and a key tool...
The FAIR principles have been accepted globally as guidelines for improving data-driven science and ...
Research data is accumulating rapidly, and with it the challenge of irreproducible science. As a con...
The FAIR Principles have two aspects: They were written specifically for research data and they also...
The current amount of scientific scholarly output is immense. In order to make further progress we h...
For open science to flourish, data and any related digital outputs should be discoverable and re-usa...
In recent years, the scholarly community has examined its culture and practices, and found a set of ...
In recent years, digital object management practices to support findability, accessibility, interope...
The FAIR Data Principles propose that all scholarly output should be Findable, Accessible, Interoper...
Researchers are increasingly asked to make their research open and FAIR, but what does this mean in ...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
Chue Hong NP, Katz DS, Barker M, et al. FAIR Principles for Research Software (FAIR4RS Principles). ...
Research data is accumulating rapidly and with it the challenge of fully reproducible science. As a ...
As the FAIR Principles about findability, accessiblity, interoperability and reusability of research...