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Hybrid Approach for Resource Allocation in Cloud Infrastructure Using Random Forest and Genetic Algorithm

H. S. MadhusudhanDepartment of Computer Science and Engineering, NIE Institute of Technology, Mysuru, Karnataka, IndiaT. Satish KumarS. M. F. D. Syed MustaphaCollege of Technological Innovation, Zayed University, Dubai, UAEPunit GuptaDepartment of Computer and Communication Engineering, Manipal University Jaipur, Jaipur, IndiaRajan Prasad TripathiDepartment of Electronics and Communication, Amity University Tashkent, Tashkent, Uzbekistan
Scientific Programmingjournal2021en
ABI

Аннотация

In cloud computing, the virtualization technique is a significant technology to optimize the power consumption of the cloud data center. In this generation, most of the services are moving to the cloud resulting in increased load on data centers. As a result, the size of the data center grows and hence there is more energy consumption. To resolve this issue, an efficient optimization algorithm is required for resource allocation. In this work, a hybrid approach for virtual machine allocation based on genetic algorithm (GA) and the random forest (RF) is proposed which belongs to a class of supervised machine learning techniques. The aim of the work is to minimize power consumption while maintaining better load balance among available resources and maximizing resource utilization. The proposed model used a genetic algorithm to generate a training dataset for the random forest model and further get a trained model. The real-time workload traces from PlanetLab are used to evaluate the approach. The results showed that the proposed GA-RF model improves energy consumption, execution time, and resource utilization of the data center and hosts as compared to the existing models. The work used power consumption, execution time, resource utilization, average start time, and average finish time as performance metrics.

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