The increasing availability and usage of Knowledge Graphs (KGs) on the Web calls for scalable and general-purpose solutions to store this type of data structures. We propose Trident, a novel storage architecture for very large KGs on centralized systems. Trident uses several interlinked data structures to provide fast access to nodes and edges, with the physical storage changing depending on the topology of the graph to reduce the memory footprint. In contrast to single architectures designed for single tasks, our approach offers an interface with few low-level and general-purpose primitives that can be used to implement tasks like SPARQL query answering, reasoning, or graph analytics. Our experiments show that Trident can handle graphs wit...
Searching and mining large graphs today is critical to a variety of application domains, ranging fro...
The Knowledge Discovery Toolbox (KDT) enables domain experts to perform complex analyses of huge dat...
WWW 2015: 24th International World Wide Web Conference, Florence, Italy, 18-22 May 2015Analyzing and...
The increasing availability and usage of Knowledge Graphs (KGs) on the Web calls for scalable and ge...
The label “Knowledge Graph” (KG) has been used in the literature for over four decades, typically to...
Part 3: StorageInternational audienceA growing number of applications store and analyze graph-struct...
This paper presents a middleware framework for storing, accessing and analyzing massive-scale semant...
Graph databases are applied in many applications, including science and business, due to their low-c...
Large graphs abound around us – online social networks, Web graphs, the In-ternet, citation networks...
We propose a new data structure, Parallel Adjacency Lists (PAL), for efficiently managing graphs wit...
Computations performed by graph algorithms are data driven, and require a high degree of random data...
We are witnessing an enormous growth in social networks as well as in the volume of data generated b...
Abstract. Modern large-scale knowledge graphs, such as DBpedia, are datasets which require large co...
Graphs appear in numerous applications including cyber-security, the Internet, social networks, prot...
Abstract—Graph analysis performs many random reads and writes, thus these workloads are typically pe...
Searching and mining large graphs today is critical to a variety of application domains, ranging fro...
The Knowledge Discovery Toolbox (KDT) enables domain experts to perform complex analyses of huge dat...
WWW 2015: 24th International World Wide Web Conference, Florence, Italy, 18-22 May 2015Analyzing and...
The increasing availability and usage of Knowledge Graphs (KGs) on the Web calls for scalable and ge...
The label “Knowledge Graph” (KG) has been used in the literature for over four decades, typically to...
Part 3: StorageInternational audienceA growing number of applications store and analyze graph-struct...
This paper presents a middleware framework for storing, accessing and analyzing massive-scale semant...
Graph databases are applied in many applications, including science and business, due to their low-c...
Large graphs abound around us – online social networks, Web graphs, the In-ternet, citation networks...
We propose a new data structure, Parallel Adjacency Lists (PAL), for efficiently managing graphs wit...
Computations performed by graph algorithms are data driven, and require a high degree of random data...
We are witnessing an enormous growth in social networks as well as in the volume of data generated b...
Abstract. Modern large-scale knowledge graphs, such as DBpedia, are datasets which require large co...
Graphs appear in numerous applications including cyber-security, the Internet, social networks, prot...
Abstract—Graph analysis performs many random reads and writes, thus these workloads are typically pe...
Searching and mining large graphs today is critical to a variety of application domains, ranging fro...
The Knowledge Discovery Toolbox (KDT) enables domain experts to perform complex analyses of huge dat...
WWW 2015: 24th International World Wide Web Conference, Florence, Italy, 18-22 May 2015Analyzing and...