A quality-aware cloud selection service for computational modellers
نویسنده
چکیده
This research sets out to help computational modellers, to select the most cost effective Cloud service provider. This is when they opt to use Cloud computing in preference to using the in-house High Performance Computing (HPC) facilities. A novel Quality-aware computational Cloud Selection (QAComPS) service is proposed and evaluated. This selects the best (cheapest) Cloud provider‟s service. After selection it automatically sets-up and runs the selected service. QaComPS includes an integrated ontology that makes use of OWL 2 features. The ontology provides a standard specification and a common vocabulary for describing different Cloud provider‟s services. The semantic descriptions are processed by the QaComPS Information Management service. These provider descriptions are then used by a filter and the MatchMaker to automatically select the highest ranked service that meets the user‟s requirements. A SAWSDL interface is used to transfer semantic information to/from the QAComPS Information Management service and the non semantic selection and run services. QAComPS selection service has been quantitatively evaluated for accuracy and efficiency against Quality Matchmaking Process (QMP) and Analytical Hierarchy Process (AHP). The service was also evaluated qualitatively by a group of computational modellers. The results for the evaluation were very promising and demonstrated QaComPS‟s potential to make Cloud computing more accessible and cost effective for computational modellers.
منابع مشابه
QAComPS: A Quality-aware Federated Computational Semantic Web Service for Computational Modellers
This research sets out to help computational modellers to select the most cost effective Cloud service provider. This is when they opt to use cloud computing in preference to in-house HPC facilities. Cloud computing is a pay-per-use model for accessing computing resources from a variety of service providers such as Amazon EC2. Increasingly cloud providers are offering the high performance compu...
متن کاملEnergy Aware Resource Management of Cloud Data Centers
Cloud Computing, the long-held dream of computing as a utility, has the potential to transform a large part of the IT industry, making software even more attractive as a service and shaping the way IT hardware is designed and purchased. Virtualization technology forms a key concept for new cloud computing architectures. The data centers are used to provide cloud services burdening a significant...
متن کاملFuzzy-GA Optimized Multi-Cloud Multi-Task Scheduler For Cloud Storage And Service Applications
Computing clusters have been one of the most popular platforms for solving Many Task Computing(MTC) problems, especially in the case of loosely coupled tasks. However, building and managing physical clusters exhibits several drawbacks:1)Major investments in hardware, specialized installations, and qualified personal; 2) Long periods of cluster under-utilization; 3)Cluster overloading and insuff...
متن کاملIdentification and Prioritization of Factors Contributing in Cloud Service Selection Using Fuzzy Best-worst Method (FBWM)
The introduction of cloud computing techniques revolutionized the current of information processing and storing. Cloud computing as a competitive edge provides easy and automated access to the vast ocean of resources through standard network mechanisms to businesses and organizations. Due to the vast diversity of service providers and their respective variety of available services with differen...
متن کاملA Data Quality-aware Cloud Service
Data Quality Monitoring (DQM) is the continuous process that evaluates a set of data to determine if they meet the planning objectives of a project. In practice, business managers may prefer to outsource the overall process of DQM, due to either operational or financial reasons. Nowadays, hardwareand service-level outsourcing is usually done by using cloud computing technologies. In this scenar...
متن کامل