To unlock the value of increasingly available data in high volumes, we need flexible ways to integrate data across different sources. While semantic integration can be provided through RDF generation, current generators insufficiently scale in terms of volume. Generators are limited by memory constraints. Therefore, we developed the RMLStreamer, a generator that parallelizes the ingestion and mapping tasks of RDF generation across multiple instances. In this paper, we analyze what aspects are parallelizable and we introduce an approach for parallel RDF generation. We describe how we implemented our proposed approach, in the frame of the RMLStreamer, and how the resulting scaling behavior compares to other RDF generators. The RMLStreamer ing...
We propose an efficient method for fast processing large RDF data over distributed memory. Our appro...
We demonstrate RDFpro (RDF Processor), an extensible, generalpurpose, open source tool for processin...
Abstract. One of the main advantages of using semantically annotated data is that machines can reaso...
To unlock the value of increasingly available data in high volumes, we need flexible ways to integra...
With the growth of the Semantic Web, the availability of RDF datasets from multiple domains as Link...
Abstract. We introduce the design of a fully parallel framework for quickly ana-lyzing large-scale R...
Stream-reasoning query languages such as CQELS and C-SPARQL enable query answering over RDF streams....
The SemanticWeb comprises enormous volumes of semi-structured data elements. For interoperability, t...
The exponential growth in the amount of data retained by today’s systems is fostered by a recent par...
The Semantic Web comprises enormous volumes of semi-structured data elements. For interoperability, ...
The Semantic Web comprises enormous volumes of semi-structured data elements. For interoperability,...
In recent years, the amount of data has increased exponentially, and knowledge graphs have gained at...
In the Big Data era, RDF data are produced in high volumes. While there exist proposals for reasonin...
We consider the feasibility of processing billions of RDF triples on a single commodity machine usi...
One of the main advantages of using semantically annotated data is that machines can reason on it, d...
We propose an efficient method for fast processing large RDF data over distributed memory. Our appro...
We demonstrate RDFpro (RDF Processor), an extensible, generalpurpose, open source tool for processin...
Abstract. One of the main advantages of using semantically annotated data is that machines can reaso...
To unlock the value of increasingly available data in high volumes, we need flexible ways to integra...
With the growth of the Semantic Web, the availability of RDF datasets from multiple domains as Link...
Abstract. We introduce the design of a fully parallel framework for quickly ana-lyzing large-scale R...
Stream-reasoning query languages such as CQELS and C-SPARQL enable query answering over RDF streams....
The SemanticWeb comprises enormous volumes of semi-structured data elements. For interoperability, t...
The exponential growth in the amount of data retained by today’s systems is fostered by a recent par...
The Semantic Web comprises enormous volumes of semi-structured data elements. For interoperability, ...
The Semantic Web comprises enormous volumes of semi-structured data elements. For interoperability,...
In recent years, the amount of data has increased exponentially, and knowledge graphs have gained at...
In the Big Data era, RDF data are produced in high volumes. While there exist proposals for reasonin...
We consider the feasibility of processing billions of RDF triples on a single commodity machine usi...
One of the main advantages of using semantically annotated data is that machines can reason on it, d...
We propose an efficient method for fast processing large RDF data over distributed memory. Our appro...
We demonstrate RDFpro (RDF Processor), an extensible, generalpurpose, open source tool for processin...
Abstract. One of the main advantages of using semantically annotated data is that machines can reaso...