Abstract

Large-scale distributed systems have advantages of high processing speeds and large communication bandwidths over the network. The processing of huge real-world data through distributed computing system becomes obscure because the major concern in large-scale distributed systems is to guarantee the completion of data processing task to be done within a budget and time constraints. This paper proposes a cost-optimized data parallel task scheduling in multi-core resources to address the above issue. By running concurrent executions on a multi-core resource, the number of parallel executions could be increased correspondingly, thereby it is able to finish the task within the deadline. A model is developed here to optimize the operational cost of data parallel task by feasibly assigning load fractions to each multi-core resource. This work experimented with data parallel task. The outcome of the work gives better solutions in terms of processing task by deadline at optimised computational cost.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call