Efficient Parallel Data Processing in the Cloud
Journal Title: International Journal on Computer Science and Engineering - Year 2013, Vol 5, Issue 5
Abstract
Cloud computing is a distributed computing technology which is the combination of hardware and software and delivered as a service to store, manage and process data. A new system is proposed to allocate resources dynamically for task scheduling and execution. Virtual machines are introduced in the proposed architecture for efficient parallel data processing in the cloud. Various virtual machines are introduced to automatically instantiate and terminate in execution of job. An extended evaluation of MapReduce is also used in this approach.
Authors and Affiliations
THANAPAL. P , NISHANTHI. S. P
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