Migrating scientific workflows to the cloud: Through graph-partitioning, scheduling and peer-to-peer data sharing
Migrating scientific workflows to the cloud: Through graph-partitioning, scheduling and peer-to-peer data sharing
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Date
2014-03-09
Authors
Srirama, Satish Narayana
Viil, Jaagup
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Abstract
In recent years cloud computing has raised significant interest in the scientific community. Running scientific experiments in the cloud has its advantages such as elasticity, scalability and software maintenance. However, the communication latencies added by the virtualization, the technology behind the cloud's service provisioning in general, is observed to be the major hindrance for migrating scientific computing applications to the cloud. The problem escalates further when we consider scientific workflows, where significant data is exchanged across different tasks. So to migrate scientific workflows to the cloud, we propose a way to reduce the data communication by partitioning and scheduling the workflow and adapting a peer-to-peer data sharing among the nodes. Different size Montage workflows were considered for the analysis of the approach. From the study, we observed that the partitioning along with the peer-to-peer file sharing reduced the data communication in cloud up to 80%.
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Keywords
cloud,
graph partitioning,
METIS,
Montage,
peer-to-peer,
Scientific workflows
Citation
Proceedings - 16th IEEE International Conference on High Performance Computing and Communications, HPCC 2014, 11th IEEE International Conference on Embedded Software and Systems, ICESS 2014 and 6th International Symposium on Cyberspace Safety and Security, CSS 2014