Decomposing Federated Queries in presence of Replicated Fragments

Abstract : Federated query engines allow for linked data consumption using SPARQL endpoints. Replicating data fragments from different sources enables data reorganization and provides the basis for more effective and efficient federated query processing. However, existing federated query engines are not designed to support replication. In this paper, we propose a replication-aware framework named LILAC, sparqL query decomposItion against federations of repLicAted data sourCes, that relies on replicated fragment descriptions to accurately identify sources that provide replicated data. We defined the query decomposition problem with fragment replication (QDP-FR). QDP-FR corresponds to the problem of finding the sub-queries to be sent to the endpoints that allows the federated query engine to compute the query answer, while the number of tuples to be transferred from endpoints to the federated query engine is minimized. An approximation of QDP-FR is implemented by the LILAC replication-aware query decomposition algorithm. Further, LILAC techniques have been included in the state-of-the-art federated query engines FedX and ANAPSID to evaluate the benefits of the proposed source selection and query decomposition techniques in different engines. Experimental results suggest that LILAC efficiently solves QDP-FR and is able to reduce the number of transferred tuples and the execution time of the studied engines.
Document type :
Journal articles
Complete list of metadatas

Cited literature [32 references]  Display  Hide  Download
Contributor : Hala Skaf-Molli <>
Submitted on : Wednesday, December 13, 2017 - 5:12:24 PM
Last modification on : Tuesday, June 25, 2019 - 5:13:33 PM


Files produced by the author(s)


  • HAL Id : hal-01663116, version 1


Gabriela Montoya, Hala Skaf-Molli, Pascal Molli, Maria-Esther Vidal. Decomposing Federated Queries in presence of Replicated Fragments. Web Semantics: Science, Services and Agents on the World Wide Web, Elsevier, 2017. ⟨hal-01663116⟩



Record views


Files downloads