2013 IEEE Ninth World Congress on Services 2013
DOI: 10.1109/services.2013.13
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Exploring Cloud Computing for Large-Scale Scientific Applications

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Cited by 6 publications
(2 citation statements)
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“…Several works have addressed the opportunities of shifting scientific workflows from traditional HPC and HTC infrastructures to CC platforms. In particular, authors have focused on exploring data-intensive workflows, since they are the most tightly related to conventional BD applications in terms of data volumes [55,27]. Experimentation with well known workflows, like Montage, shows that running costs could be significantly decreased with CC infrastructures, but performance would suffer from virtualization and latency overheads [15,22,3].…”
Section: Cloud Computingmentioning
confidence: 99%
“…Several works have addressed the opportunities of shifting scientific workflows from traditional HPC and HTC infrastructures to CC platforms. In particular, authors have focused on exploring data-intensive workflows, since they are the most tightly related to conventional BD applications in terms of data volumes [55,27]. Experimentation with well known workflows, like Montage, shows that running costs could be significantly decreased with CC infrastructures, but performance would suffer from virtualization and latency overheads [15,22,3].…”
Section: Cloud Computingmentioning
confidence: 99%
“…Several works have addressed the opportunities of shifting scientific workflows from traditional HPC and HTC infrastructures to BDA computing infrastructures such as clouds. In particular, authors have focused on exploring data-intensive workflows, since they are the most tightly related to conventional BDA applications in terms of data volumes [126], [127]. Experimentation with well known workflows shows that running costs could be significantly decreased with BDA infrastructures, but performance would suffer from virtualization and latency overheads [128]- [130].…”
Section: ) Infrastructure: Distributed Storage and Cloud Computingmentioning
confidence: 99%