Abstract — Data-intensive applications in e-Science require scalable solutions for storage as well as interactive tools for analysis of scientific data. It is important to be able to query the data in a storage-independent way, and to be able to obtain the results of the data-analysis incrementally (in contrast to traditional batch solutions). We use the RDF data model extended with multidimensional numeric arrays to represent the results, parameters, and other metadata describing scientific experiments, and SciSPARQL, an extension of the SPARQL language, to combine massive numeric array data and metadata in queries. To address the scalability problem we present an architecture that enables the same SciSPARQL queries to be executed on the R...
We present an approach for scalable processing of SPARQL queries to RDF views of numerical data stor...
Abstract—The emerging need for conducting complex analysis over big RDF datasets calls for scale-out...
To benefit from the Cloud platform's unlimited resources, managing and evaluating huge volume of RDF...
Semantic Web and Linked Open Data provide a potential platform for interoperability of scientific da...
Abstract. We present an integrated solution for storing and querying scientific data and metadata, u...
Many science archive centres publish very large volumes of image, simulation, and experiment data. I...
The generation of RDF data has accelerated to the point where many data sets need to be partitioned ...
Abstract. Database integration of a wide variety of life-science data is an important issue for comp...
Scientific communities are increasingly publishing datasets on the Web following the Linked Data pri...
During the last decades the demand for large-scale computational and storage resources in science ha...
The use of RDF to expose semantic data on the Web has seen a dramatic increase over the last few yea...
Nowadays many scientific experiment results involve multi-dimensional arrays. It is desirable to sto...
In this paper we present Sparklify: a scalable software component for efficient evaluation of SPARQL...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
We present an approach for scalable processing of SPARQL queries to RDF views of numerical data stor...
Abstract—The emerging need for conducting complex analysis over big RDF datasets calls for scale-out...
To benefit from the Cloud platform's unlimited resources, managing and evaluating huge volume of RDF...
Semantic Web and Linked Open Data provide a potential platform for interoperability of scientific da...
Abstract. We present an integrated solution for storing and querying scientific data and metadata, u...
Many science archive centres publish very large volumes of image, simulation, and experiment data. I...
The generation of RDF data has accelerated to the point where many data sets need to be partitioned ...
Abstract. Database integration of a wide variety of life-science data is an important issue for comp...
Scientific communities are increasingly publishing datasets on the Web following the Linked Data pri...
During the last decades the demand for large-scale computational and storage resources in science ha...
The use of RDF to expose semantic data on the Web has seen a dramatic increase over the last few yea...
Nowadays many scientific experiment results involve multi-dimensional arrays. It is desirable to sto...
In this paper we present Sparklify: a scalable software component for efficient evaluation of SPARQL...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
We present an approach for scalable processing of SPARQL queries to RDF views of numerical data stor...
Abstract—The emerging need for conducting complex analysis over big RDF datasets calls for scale-out...
To benefit from the Cloud platform's unlimited resources, managing and evaluating huge volume of RDF...