The FAIR principles have been accepted globally as guidelines for improving data-driven science and data management practices, yet the incentives for researchers to change their practices are presently weak. In addition, data-driven science has been slow to embrace workflow technology despite clear evidence of recurring practices. To overcome these challenges, the Canonical Workflow Frameworks for Research (CWFR) initiative suggests a large-scale introduction of self-documenting workflow scripts to automate recurring processes or fragments thereof. This standardised approach, with FAIR Digital Objects as anchors, will be a significant milestone in the transition to FAIR data without adding additional load onto the researchers who stand to b...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
The Implementing FAIR Workflows project is a 3-year project to implement exemplar workflows in cogni...
Data science is facing the following major challenges: (1) developing scalable cross-disciplinary ca...
With this paper we want to describe the motivation and basic ideas behind CWFR. Two working meetings...
Computational workflows describe the complex multi-step methods that are used for data collection, d...
Researchers are increasingly asked to make their research open and FAIR, but what does this mean in ...
Research data is accumulating rapidly, and with it the challenge of irreproducible science. As a con...
The FAIR principles for scientific data (Findable, Accessible, Interoperable, Reusable) are also rel...
As the FAIR Principles about findability, accessiblity, interoperability and reusability of research...
Research data is accumulating rapidly and with it the challenge of fully reproducible science. As a ...
Machine learning (ML) applications in weather and climate are gaining momentum as big data and the i...
Harvard Data Commons (HDC) is a university-wide initiative at Harvard University to support the life...
One idea of the Canonical Workflow Framework for Research (CWFR) is to improve the reusability and a...
The lack of interoperability between tools presents a significant barrier to streamlining workflows ...
The practice of performing computational processes using workflows has taken hold in the biosciences...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
The Implementing FAIR Workflows project is a 3-year project to implement exemplar workflows in cogni...
Data science is facing the following major challenges: (1) developing scalable cross-disciplinary ca...
With this paper we want to describe the motivation and basic ideas behind CWFR. Two working meetings...
Computational workflows describe the complex multi-step methods that are used for data collection, d...
Researchers are increasingly asked to make their research open and FAIR, but what does this mean in ...
Research data is accumulating rapidly, and with it the challenge of irreproducible science. As a con...
The FAIR principles for scientific data (Findable, Accessible, Interoperable, Reusable) are also rel...
As the FAIR Principles about findability, accessiblity, interoperability and reusability of research...
Research data is accumulating rapidly and with it the challenge of fully reproducible science. As a ...
Machine learning (ML) applications in weather and climate are gaining momentum as big data and the i...
Harvard Data Commons (HDC) is a university-wide initiative at Harvard University to support the life...
One idea of the Canonical Workflow Framework for Research (CWFR) is to improve the reusability and a...
The lack of interoperability between tools presents a significant barrier to streamlining workflows ...
The practice of performing computational processes using workflows has taken hold in the biosciences...
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A dive...
The Implementing FAIR Workflows project is a 3-year project to implement exemplar workflows in cogni...
Data science is facing the following major challenges: (1) developing scalable cross-disciplinary ca...