Materialisation is often used in RDF systems as a preprocessing step to derive all facts implied by given RDF triples and rules. Although widely used, materialisation considers all possible rule applications and can use a lot of memory for storing the derived facts, which can hinder performance. We present a novel materialisation technique that compresses the RDF triples so that the rules can sometimes be applied to multiple facts at once, and the derived facts can be represented using structure sharing. Our technique can thus require less space, as well as skip certain rule applications. Our experiments show that our technique can be very effective: when the rules are relatively simple, our system is both faster and requires less memory th...
International audienceIn this paper we present WaterFowl, a novel approach for the storage of RDF tr...
Massive publication eorts have enriched theWeb with huge amounts of semantic data represented in RDF...
A cluster of servers is often used to reason over RDF graphs whose size exceeds the capacity of a si...
Many RDF systems support reasoning with Datalog rules via materialisation, where all conclusions of ...
Abstract. Linked data has experienced accelerated growth in recent years. With the continuing prolif...
Linked data has experienced accelerated growth in recent years. With the continuing proliferation of...
Abstract. Linked data has experienced accelerated growth in recent years. With the continuing prolif...
Abstract. One of the main advantages of using semantically annotated data is that machines can reaso...
One of the main advantages of using semantically annotated data is that machines can reason on it, d...
The number and volume of semantic data have grown impressively over the last decade, promoting compr...
rousset2017aInternational audienceLinked Data provides access to huge, continuously growing amounts ...
Datalog is a prominent knowledge representation language whose popularity is mainly due to its abili...
We present a novel approach to parallel materialisation (i.e., fixpoint computation) of OWL RL Knowl...
Abstract. We present a novel approach to parallel materialisation (i.e., fixpoint computation) of OW...
We present a novel approach to parallel materialisation (i.e., fixpoint computation) of datalog prog...
International audienceIn this paper we present WaterFowl, a novel approach for the storage of RDF tr...
Massive publication eorts have enriched theWeb with huge amounts of semantic data represented in RDF...
A cluster of servers is often used to reason over RDF graphs whose size exceeds the capacity of a si...
Many RDF systems support reasoning with Datalog rules via materialisation, where all conclusions of ...
Abstract. Linked data has experienced accelerated growth in recent years. With the continuing prolif...
Linked data has experienced accelerated growth in recent years. With the continuing proliferation of...
Abstract. Linked data has experienced accelerated growth in recent years. With the continuing prolif...
Abstract. One of the main advantages of using semantically annotated data is that machines can reaso...
One of the main advantages of using semantically annotated data is that machines can reason on it, d...
The number and volume of semantic data have grown impressively over the last decade, promoting compr...
rousset2017aInternational audienceLinked Data provides access to huge, continuously growing amounts ...
Datalog is a prominent knowledge representation language whose popularity is mainly due to its abili...
We present a novel approach to parallel materialisation (i.e., fixpoint computation) of OWL RL Knowl...
Abstract. We present a novel approach to parallel materialisation (i.e., fixpoint computation) of OW...
We present a novel approach to parallel materialisation (i.e., fixpoint computation) of datalog prog...
International audienceIn this paper we present WaterFowl, a novel approach for the storage of RDF tr...
Massive publication eorts have enriched theWeb with huge amounts of semantic data represented in RDF...
A cluster of servers is often used to reason over RDF graphs whose size exceeds the capacity of a si...