Article ID Journal Published Year Pages File Type
425634 Future Generation Computer Systems 2015 14 Pages PDF
Abstract

•A framework for the deployment of SaaS clouds aimed at supporting scientific research.•A novel resource selection approach which can automate complex deployment methodologies such as cloud bursting.•Simplified deployment of Software as a Services through the publication of attributes.•The automated development of hybrid HPC clouds.•Framework and cloud feasibility and performance proofs demonstrated through a bio-informatics workflow.

Cloud and service computing has started to change the way research in science, in particular biology and medicine, is being carried out. Researchers that have taken advantage of this technology (making use of public and private cloud compute resources) can process large amounts of data (big data) and speed up discovery. However, this requires researchers to acquire a solid knowledge and skills in the development of sequential and high performance computing (HPC), and cloud development and deployment background. In response a technology exposing HPC applications as services through the development and deployment of a SaaS cloud, and its proof of concept in the form of implementation of a cloud environment, Uncinus, has been developed and implemented to allow researchers easy access to cloud computing resources. The new technology offers and Uncinus supports the development of applications as services and the sharing of compute resources to speed up applications’ execution. Users access these cloud resources and services through web interfaces. Using the Uncinus platform, a bio-informatics workflow was executed on a private (HPC) cloud, server and public cloud (Amazon EC2) resources, performance results showing a 3 fold improvement compared to local resources’ performance. Biology and medicine specialists with no programming and application deployment on clouds background could run the case study applications with ease.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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