Solving fully dynamic bin packing problem for virtual machine allocation in the cloud environment by the futuristic greedy algorithm

Author:

Bakhthemmat Ali1,Izadi Mohammad2

Affiliation:

1. Kish International Campus, Sharif University of Technology, Tehran, Iran

2. Department of Computer Engineering, Sharif University of Technology, Tehran, Iran

Abstract

Many scientists apply fully dynamic bin packing problem solving for resource allocation of virtual machines in cloud environments. The goal of problem-solving is to reduce the number of allocated hosts (bins) and virtual machines (items) migration rates for reducing energy consumption. This study demonstrates a greedy futuristic algorithm (proposed algorithm) for fully dynamic bin packaging with an average asymptotic approximation ratio of 1.231, better than other existing algorithms. The proposed algorithm identifies inappropriate local selections using special futuristic conditions to prevent them as much as possible. Eventually, suitable choices determine and discard the improper ones. The proposed algorithm illustrates an asymptotic approximation ratio of (t/ (t-1)) OPT, where the value of t depends on the distribution of the arrived and departed items. Also, OPT is the number of bins by an optimal solution. Finally, in experiments of datasets using a maximum utilization of 80% of each bin, the average migration rate is 0.338. Using the proposed method for allocating resources in the cloud environment can allocate hosts to a virtual machine using almost optimal use. This allocation can reduce the cost of maintaining and purchasing hosts. Also, this method can reduce the migration rate of virtual machines. As a result, decreasing migration improves the energy consumption cost in the cloud environment.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

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1. Towards optimal virtual machine placement methods in cloud environments;Journal of Intelligent & Fuzzy Systems;2023-05-04

2. Brain-Inspired Experience Reinforcement Model for Bin Packing in Varying Environments;IEEE Transactions on Neural Networks and Learning Systems;2022-05

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