Knowledge graphs represented as RDF datasets are integral to many machine learning applications. RDF is supported by a rich ecosystem of data management systems and tools, most notably RDF database systems that provide a SPARQL query interface. Surprisingly, machine learning tools for knowledge graphs do not use SPARQL, despite the obvious advantages of using a database system. This is due to the mismatch between SPARQL and machine learning tools in terms of data model and programming style. Machine learning tools work on data in tabular format and process it using an imperative programming style, while SPARQL is declarative and has as its basic operation matching graph patterns to RDF triples. We posit that a good interface to knowledge gr...
From the perspective of machine learning and data mining applications, expressing data in RDF rather...
An Efficient RML-Compliant Engine for Knowledge Graph Construction This project presents the SDM-RD...
Due to the expansion of semantic web technologies, Resource Description frameworks (RDFs) and triple...
Semantic Web technologies and other open standards have the potential of allowing current open datas...
Data integration is the dominant use case for RDF Knowledge Graphs. However, Web resources come in f...
Data integration is the dominant use case for RDF Knowledge Graphs. However, Web resources come in f...
alkhateeb2009aInternational audienceRDF is a knowledge representation language dedicated to the anno...
alkhateeb2009aInternational audienceRDF is a knowledge representation language dedicated to the anno...
The last decades have witnessed significant advancements in terms of data generation, management, an...
This paper presents DistRDF2ML, the generic, scalable, and distributed framework for creating in-mem...
RDF is a knowledge representation language dedicated to the annotation of resources within the frame...
RDF is a knowledge representation language dedicated to the annotation of resources within the Seman...
RDF is a knowledge representation language dedicated to the annotation of resources within the Seman...
RDF knowledge graphs have attracted increasing attentions these years. However, due to the schema-fr...
Abstract. From the perspective of machine learning and data mining applications, expressing data in ...
From the perspective of machine learning and data mining applications, expressing data in RDF rather...
An Efficient RML-Compliant Engine for Knowledge Graph Construction This project presents the SDM-RD...
Due to the expansion of semantic web technologies, Resource Description frameworks (RDFs) and triple...
Semantic Web technologies and other open standards have the potential of allowing current open datas...
Data integration is the dominant use case for RDF Knowledge Graphs. However, Web resources come in f...
Data integration is the dominant use case for RDF Knowledge Graphs. However, Web resources come in f...
alkhateeb2009aInternational audienceRDF is a knowledge representation language dedicated to the anno...
alkhateeb2009aInternational audienceRDF is a knowledge representation language dedicated to the anno...
The last decades have witnessed significant advancements in terms of data generation, management, an...
This paper presents DistRDF2ML, the generic, scalable, and distributed framework for creating in-mem...
RDF is a knowledge representation language dedicated to the annotation of resources within the frame...
RDF is a knowledge representation language dedicated to the annotation of resources within the Seman...
RDF is a knowledge representation language dedicated to the annotation of resources within the Seman...
RDF knowledge graphs have attracted increasing attentions these years. However, due to the schema-fr...
Abstract. From the perspective of machine learning and data mining applications, expressing data in ...
From the perspective of machine learning and data mining applications, expressing data in RDF rather...
An Efficient RML-Compliant Engine for Knowledge Graph Construction This project presents the SDM-RD...
Due to the expansion of semantic web technologies, Resource Description frameworks (RDFs) and triple...