International audienceData-intensive science offers new opportunities for innovation and discoveries, provided that large datasets can be handled efficiently. Data management for data-intensive science applications is challenging; requiring support for complex data life cycles, coordination across multiple sites, fault tolerance, and scalability to support tens of sites and petabytes of data. In this paper, we argue that data management for data-intensive science applications requires a fundamentally different management approach than the current ad-hoc task centric approach. We propose Active Data, a fundamentally novel paradigm for data life cycle management. Active Data follows two principles: data-centric and event-driven. We report on ...
Scientific data life cycles define how data is created, handled, accessed, and analyzed by users. Su...
Data life cycle and research data managemet plans are just two of many key-terms used in the present...
Throughout history, the life sciences have been revolutionised by technological advances; in our era...
International audienceData-intensive science offers new opportunities for innovation and discoveries...
International audienceThe Big Data challenge consists in managing, storing, analyzing and visualizin...
In all domains, scientific progress relies more and more on our ability to exploit ever growing volu...
International audienceModern scientific experiments often involve multiple storage and computing pla...
Scientific applications often involve computation intensive workflows and may generate large amount ...
Over the past several years, rapid growth of data has affected many fields of science. This has ofte...
Modern science is most often driven by data. Improvements in state-of-the-art technologies and metho...
Most of the data-intensive scientific domains, e.g., life-, natural-, and geo-sciences have come up ...
Data play a central role in most fields of science. In recent years, the amount of data from experim...
Scientific data life cycles define how data is created, handled, accessed, and analyzed by users. Su...
Data life cycle and research data managemet plans are just two of many key-terms used in the present...
Throughout history, the life sciences have been revolutionised by technological advances; in our era...
International audienceData-intensive science offers new opportunities for innovation and discoveries...
International audienceThe Big Data challenge consists in managing, storing, analyzing and visualizin...
In all domains, scientific progress relies more and more on our ability to exploit ever growing volu...
International audienceModern scientific experiments often involve multiple storage and computing pla...
Scientific applications often involve computation intensive workflows and may generate large amount ...
Over the past several years, rapid growth of data has affected many fields of science. This has ofte...
Modern science is most often driven by data. Improvements in state-of-the-art technologies and metho...
Most of the data-intensive scientific domains, e.g., life-, natural-, and geo-sciences have come up ...
Data play a central role in most fields of science. In recent years, the amount of data from experim...
Scientific data life cycles define how data is created, handled, accessed, and analyzed by users. Su...
Data life cycle and research data managemet plans are just two of many key-terms used in the present...
Throughout history, the life sciences have been revolutionised by technological advances; in our era...