A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency

Computer clouds generally comprise large power-consuming data centers as they are designed to support the elasticity and scalability required by customers. However, while cloud computing reduces energy consumption for customers, it is an issue for providers who have to deal with increasing demand an...

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Main Author: Ruzan, Iza'in Nurfateha
Format: Thesis
Language:English
Published: 2015
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Online Access:http://eprints.utm.my/id/eprint/79329/1/Iza%27inNurfatehaRuzanMFC2015.pdf
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spelling my-utm-ep.793292018-10-14T08:44:28Z A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency 2015 Ruzan, Iza'in Nurfateha QA75 Electronic computers. Computer science Computer clouds generally comprise large power-consuming data centers as they are designed to support the elasticity and scalability required by customers. However, while cloud computing reduces energy consumption for customers, it is an issue for providers who have to deal with increasing demand and performance expectations. This creates the need for mechanisms to improve the energy-efficiency of cloud computing data centers while maintaining desired levels of performance. This research seeks to formulate a hybrid algorithm based on Genetic algorithm and MapReduce algorithm techniques to further promote energy efficiency in the cloud computing platform. The function of the MapReduce algorithm is to optimize scheduling performance which is one of the more efficient techniques for handling large data in servers. Genetic algorithm is effective in optimally measuring the value of operations and allows for the minimization of energy efficiency where it includes the formula for single optimization energy efficiency. A series of simulations were developed to evaluate the effectiveness of the proposed algorithm. The evaluation results show the amount of Information Technology equipment power required for Power Usage Effectiveness values to optimize energy usage where the performance of the proposed algorithm is 6% better than the previous genetic algorithm and 5% better than Hadoop MapReduce scheduling on low load conditions. On the other hand, the proposed algorithm improved energy efficiency in comparison with the previous work. 2015 Thesis http://eprints.utm.my/id/eprint/79329/ http://eprints.utm.my/id/eprint/79329/1/Iza%27inNurfatehaRuzanMFC2015.pdf application/pdf en public masters Universiti Teknologi Malaysia, Faculty of Computing Faculty of Computing
institution Universiti Teknologi Malaysia
collection UTM Institutional Repository
language English
topic QA75 Electronic computers
Computer science
spellingShingle QA75 Electronic computers
Computer science
Ruzan, Iza'in Nurfateha
A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
description Computer clouds generally comprise large power-consuming data centers as they are designed to support the elasticity and scalability required by customers. However, while cloud computing reduces energy consumption for customers, it is an issue for providers who have to deal with increasing demand and performance expectations. This creates the need for mechanisms to improve the energy-efficiency of cloud computing data centers while maintaining desired levels of performance. This research seeks to formulate a hybrid algorithm based on Genetic algorithm and MapReduce algorithm techniques to further promote energy efficiency in the cloud computing platform. The function of the MapReduce algorithm is to optimize scheduling performance which is one of the more efficient techniques for handling large data in servers. Genetic algorithm is effective in optimally measuring the value of operations and allows for the minimization of energy efficiency where it includes the formula for single optimization energy efficiency. A series of simulations were developed to evaluate the effectiveness of the proposed algorithm. The evaluation results show the amount of Information Technology equipment power required for Power Usage Effectiveness values to optimize energy usage where the performance of the proposed algorithm is 6% better than the previous genetic algorithm and 5% better than Hadoop MapReduce scheduling on low load conditions. On the other hand, the proposed algorithm improved energy efficiency in comparison with the previous work.
format Thesis
qualification_level Master's degree
author Ruzan, Iza'in Nurfateha
author_facet Ruzan, Iza'in Nurfateha
author_sort Ruzan, Iza'in Nurfateha
title A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
title_short A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
title_full A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
title_fullStr A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
title_full_unstemmed A hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
title_sort hybrid genetic algorithm with mapreduce technique for cloud computing energy efficiency
granting_institution Universiti Teknologi Malaysia, Faculty of Computing
granting_department Faculty of Computing
publishDate 2015
url http://eprints.utm.my/id/eprint/79329/1/Iza%27inNurfatehaRuzanMFC2015.pdf
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