Anti-pattern specification and correction recommendations for semantic cloud services - Archive ouverte HAL Accéder directement au contenu
Communication Dans Un Congrès Année : 2017

Anti-pattern specification and correction recommendations for semantic cloud services

Résumé

The lack of standardized descriptions of cloud services hinders their discovery. In an effort to standardize cloud service descriptions, several works propose to use ontologies. Nevertheless, the adoption of any of the proposed ontologies calls for an evaluation to show its efficiency in cloud service discovery. Indeed, the existing cloud providers describe, their similar offered services in different ways. Thus, various existing works aim at standardizing the representation of cloud computing services by proposing ontologies. Since the existing proposals were not evaluated, they might be less adopted and considered. Indeed, the ontology evaluation has a direct impact on its understandability and reusability. In this paper, we propose an evaluation approach to validate our proposed Cloud Service Ontology (CSO), to guarantee an adequate cloud service discovery. To this end, this paper has a three-fold contribution. First, we specify a set of patterns and anti-patterns in order to evaluate our CSO. Second, we define an antipattern detection algorithm based on SPARQL queries which provides a set of correction recommendations to help ontologists revise their ontology. Finally, tests were conducted in relation to: (i) the algorithm efficiency and (ii) anti-pattern detection of design anomalies as well as taxonomic and domain errors within CSO
Fichier non déposé

Dates et versions

hal-01696837 , version 1 (30-01-2018)

Identifiants

  • HAL Id : hal-01696837 , version 1

Citer

Molka Rekik, Khouloud Boukadi, Walid Gaaloul, Hanene Ben-Abdallah. Anti-pattern specification and correction recommendations for semantic cloud services. HICSS 2017 : 50th Hawaii International Conference on System Sciences, Jan 2017, Waikoloa Village, United States. pp.4231 - 4240. ⟨hal-01696837⟩
38 Consultations
0 Téléchargements

Partager

Gmail Facebook X LinkedIn More