Over the last years, the Semantic Web has been growing steadily. Today, we count more than 10,000 datasets made available online following Semantic Web standards. Nevertheless, many applications, such as data integration, search, and interlinking, may not take the full advantage of the data without having a priori statistical information about its internal structure and coverage. In fact, there are already a number of tools, which offer such statistics, providing basic information about RDF datasets and vocabularies. However, those usually show severe deficiencies in terms of performance once the dataset size grows beyond the capabilities of a single machine. In this paper, we introduce a software component for statistical calculations of l...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
A major research challenge is to perform scalable analysis of large-scale knowledge graphs to facili...
Many RDF systems support reasoning with Datalog rules via materialisation, where all conclusions of ...
. Over the last years, the Semantic Web has been growing steadily. To- count more than 10,000 datase...
The increasing adoption of the Linked Data format, RDF, over the last two decades has brought new op...
Over the last years, Linked Data has grown continuously. Today, we than 10,000 datasets being avail...
Abstract—In this paper RDFStats is introduced, which is a generator for statistics of RDF sources li...
International audienceQuerying very large RDF data sets in an efficient and scalable manner requires...
In distributed RDF stores triples are assigned to one or several storage and compute nodes. In order...
International audienceThe number of linked data sources and the size of the linked open data graph k...
In this paper we present Sparklify: a scalable software component for efficient evaluation of SPARQL...
With the growth of the Semantic Web, the availability of RDF datasets from multiple domains as Link...
This paper presents DistRDF2ML, the generic, scalable, and distributed framework for creating in-mem...
Resource Description Framework (RDF) is a commonly used data model in the Semantic Web environment. ...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
A major research challenge is to perform scalable analysis of large-scale knowledge graphs to facili...
Many RDF systems support reasoning with Datalog rules via materialisation, where all conclusions of ...
. Over the last years, the Semantic Web has been growing steadily. To- count more than 10,000 datase...
The increasing adoption of the Linked Data format, RDF, over the last two decades has brought new op...
Over the last years, Linked Data has grown continuously. Today, we than 10,000 datasets being avail...
Abstract—In this paper RDFStats is introduced, which is a generator for statistics of RDF sources li...
International audienceQuerying very large RDF data sets in an efficient and scalable manner requires...
In distributed RDF stores triples are assigned to one or several storage and compute nodes. In order...
International audienceThe number of linked data sources and the size of the linked open data graph k...
In this paper we present Sparklify: a scalable software component for efficient evaluation of SPARQL...
With the growth of the Semantic Web, the availability of RDF datasets from multiple domains as Link...
This paper presents DistRDF2ML, the generic, scalable, and distributed framework for creating in-mem...
Resource Description Framework (RDF) is a commonly used data model in the Semantic Web environment. ...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
As more and more data is provided in RDF format, storing huge amounts of RDF data and efficiently pr...
A major research challenge is to perform scalable analysis of large-scale knowledge graphs to facili...
Many RDF systems support reasoning with Datalog rules via materialisation, where all conclusions of ...