Corpus ID: 212582590

RDFSpark: a new solution for querying massive RDF data using spark

@inproceedings{Banane2019RDFSparkAN,
  title={RDFSpark: a new solution for querying massive RDF data using spark},
  author={Mouad Banane and A. Belangour},
  year={2019}
}
  • Mouad Banane, A. Belangour
  • Published 2019
  • The invasion of semantic data, the rapid growth of RDF data has brought significant new challenges in the querying of RDF data. On the other hand, Apache Spark is an open source distributed computing framework, characterized by its speed as MapReduce, Big Data processing has never been easier. In last years MapReduce solves problems at scales unimaginable a few years ago. But like any other tool, it remains limited. Several research works propose the querying of large volumes of RDF data using… CONTINUE READING
    1 Citations

    Figures and Tables from this paper

    References

    SHOWING 1-10 OF 20 REFERENCES
    RDF Data Storage Techniques for Efficient SPARQL Query Processing Using Distributed Computation Engines
    • M. Hassan, S. Bansal
    • Computer Science
    • 2018 IEEE International Conference on Information Reuse and Integration (IRI)
    • 2018
    • 3
    H2RDF: adaptive query processing on RDF data in the cloud.
    • 119
    • Highly Influential
    • PDF
    NoSQL Databases for RDF: An Empirical Evaluation
    • 101
    • PDF
    A Survey on RDF Data Store Based on NoSQL Systems for the Semantic Web Applications
    • 8
    Storing RDF Data into Big Data NoSQL Databases
    • 11
    New Approach based on Model Driven Engineering for Processing Complex SPARQL Queries on Hive
    • 5
    • PDF
    Jena-HBase: A Distributed, Scalable and Effcient RDF Triple Store
    • 87
    • Highly Influential
    • PDF
    Spark: Cluster Computing with Working Sets
    • 4,358
    • PDF
    Hadoop: The Definitive Guide
    • 3,876
    • PDF
    CumulusRDF: Linked Data Management on Nested Key-Value Stores
    • 112
    • Highly Influential
    • PDF