Abstract

NoC (Network-on-Chip) in recent times has been broadly used in majority of present multi-core (MC) processing environment (i.e., processor) (especially in cloud computing servers). Then, SoCs (System-on-Chips), as a scalable and flexible strategy to the widespread integration of higher number of element in the chips. Nonetheless, a main issue is reliable processing, performance efficiency and energy efficacy perquisite of BigData processing framework. This work assume self-aware MC architectures that autonomously adjust or optimize their performance to accommodate users quality of service (QoS) performance requirement, job execution performance, energy efficiency, and resource accessibility. Numerous researchers are concerned about the lack of energy conservation in cloud computing environment and hence numerous power efficient technologies are introduced by different researchers to protect environment by enormous amount of power dissipation and enhance the performance of the environment. However, these power efficient technologies requires enormous amount of interaction cost between inter-processors. Moreover, these technologies provides insufficient results and energy consumption of cloud computing devices cannot be reduced largely due to enormous amount of memory utilization, routing etc. For overcoming research challenges, this work present a novel performance and energy balanced scheduling (PEBS) approach in cloud environment based on Dynamic voltage and Frequency Scaling (DVFS) technique is proposed. Experiment outcome shows PEBS_DVFS model attains good trade-off between system performance and energy consumption in multicore cloud computing (CC) architectures when compared with existing model.

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