Saurabh SinghalNakul GuptaParveen BerwalQuadri Noorulhasan NaveedAyodele LasisiAnteneh Wogasso Wodajo
Utility-based computing popularly known as “cloud computing” offers several computing services to the users. Due to the proliferation in the users of cloud computing, there is an unprecedented increase in the demand for computation resources to execute cloud services. Thus, there is a requirement to investigate currently available resources like virtual machines, CPU, RAM, and storage to allocate cloud services. The allocation and QoS of cloud services are highly dependent on allocation schemes. The optimized solutions allocate resources to submitted jobs to reduce the overall cost to the end-users/service provider without degrading the performance of virtual machines. The allocation techniques also consider the harvesting of energy consumption required for running the cloud services. In this paper, we have utilized a Rock Hyrax-based optimization technique to allocate resources to the submitted jobs with reduced energy consumption. The proposed Rock Hyrax algorithm has been simulated on the CloudSim simulator for various scenarios. The performance of the proposed algorithm has been measured over various Quality of Service (QoS) parameters such as makespan, energy efficiency, response time, throughput, and cost. The gathered results validate the proposed algorithm that improves the QoS parameters by 3%-8% as compared to algorithms when both jobs and resources are considered to be dynamic in nature.
Fahd N. Al‐WesabiMarwa ObayyaManar Ahmed HamzaJaber S. AlzahraniDeepak GuptaSachin Kumar
Weiwei LinLiang TanJames Z. Wang
Weiwei LinLiang TanJames Z. Wang
M AbinashV. VasudevanN BobroffA KochutK BeatyD BreitgandA EpsteinMing ChenHui ZhangYa-Yunn SuXiaorui WangGuofei JiangKenji YoshihiraChristopher ClarkKeir FraserSteven HandJacob HansenEric JulChristian LimpachIan PrattAndrew WarfieldZhenhuan GongXiaohui GuD JayasingheC PuT EilamM SteinderI WhalleyE SnibleM KorupoluA SinghB BambaWubin LiJohan TordssonErik ElmrothXiaoqiao MengCanturk IsciJeffrey KephartLi ZhangEric BouilletDimitrios PendarakisV Xiaoqiao MengLi PappasZhangMurugan Saranya
Pasnur DeeplaxmiCholleti VikasSanthosh Kumar Medishetti