Machine Learning systems rely on data for training, input and ongoing feedback and validation. Data in the field can come from varied sources, often anonymous or unknown to the ultimate users of the data. Whenever data is sourced and used, its consumers need assurance that the data accuracy is as described, that the data has been obtained legitimately, and they need to understand the terms under which the data is made available so that they can honour them. Similarly, suppliers of data require assurances that their data is being used legitimately by authorised parties, in accordance with their terms, and that usage is appropriately recompensed. Furthermore, both parties may want to agree on a specific set of quality of service (QoS) metrics...
Easy access to data is one of the main avenues to accelerate scientific research. As a key element o...
In support of the trend towards ever more complex supply chain collaboration for the physical Intern...
Trust is the main barrier preventing widespread data sharing. The lack of transparent infrastructure...
Machine Learning systems rely on data for training, input and ongoing feedback and validation. Data ...
Adopting shared data resources requires scientists to place trust in the originators of the data. Wh...
Data is the lifeblood of many organizations. Compared to the centralized mechanisms of data sharing ...
Researchers and scientists use aggregations of data from a diverse combination of sources, including...
Data-driven economies on the World Wide Web are based on coordination mechanisms for exhange and AI-...
Actual challenges with data in physical infrastructure include: 1) the adversity of its velocity bas...
Lack of trust is the main barrier preventing more widespread data sharing. The lack of transparent a...
[EN] A typical analytical lifecycle in data science projects starts with the process of data generat...
Research data centres (RDCs) in environmental science are currently facing challenges due to a numbe...
As data analytics is used in business to increase profits, organizations use it to pursue their goal...
Data-intensive environments enable us to capture information and knowledge about the physical surrou...
Easy access to data is one of the main avenues to accelerate scientific research. As a key element o...
Easy access to data is one of the main avenues to accelerate scientific research. As a key element o...
In support of the trend towards ever more complex supply chain collaboration for the physical Intern...
Trust is the main barrier preventing widespread data sharing. The lack of transparent infrastructure...
Machine Learning systems rely on data for training, input and ongoing feedback and validation. Data ...
Adopting shared data resources requires scientists to place trust in the originators of the data. Wh...
Data is the lifeblood of many organizations. Compared to the centralized mechanisms of data sharing ...
Researchers and scientists use aggregations of data from a diverse combination of sources, including...
Data-driven economies on the World Wide Web are based on coordination mechanisms for exhange and AI-...
Actual challenges with data in physical infrastructure include: 1) the adversity of its velocity bas...
Lack of trust is the main barrier preventing more widespread data sharing. The lack of transparent a...
[EN] A typical analytical lifecycle in data science projects starts with the process of data generat...
Research data centres (RDCs) in environmental science are currently facing challenges due to a numbe...
As data analytics is used in business to increase profits, organizations use it to pursue their goal...
Data-intensive environments enable us to capture information and knowledge about the physical surrou...
Easy access to data is one of the main avenues to accelerate scientific research. As a key element o...
Easy access to data is one of the main avenues to accelerate scientific research. As a key element o...
In support of the trend towards ever more complex supply chain collaboration for the physical Intern...
Trust is the main barrier preventing widespread data sharing. The lack of transparent infrastructure...