AN ENHANCED TASK ALLOCATION STRATEGY IN CLOUD ENVIRONMENT

Journal Title: INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY - Year 2017, Vol 16, Issue 6

Abstract

Cloud computing is a vigorous technology by which a user can get software, application, operating system and hardware as a service without actually possessing it and paying only according to the usage. Cloud Computing is a hot topic of research for the researchers these days. With the rapid growth of Interne technology cloud computing have become main source of computing for small as well big IT companies. In the cloud computing milieu the cloud data centers and the users of the cloud-computing are globally situated, therefore it is a big challenge for cloud data centers to efficiently handle the requests which are coming from millions of users and service them in an efficient manner. Load balancing ensures that no single node will be overloaded and used to distribute workload among multiple nodes. It helps to improve system performance and proper utilization of resources. We propose an improved load balancing algorithm for job scheduling in the cloud environment using K-Means clustering of cloudlets and virtual machines in the cloud environment. All the cloudlets given by the user are divided into 3 clusters depending upon client’s priority, cost and instruction length of the cloudlet. The virtual machines inside the datacenter hosts are also grouped into multiple clusters depending upon virtual machine capacity in terms of processor, memory, and bandwidth. Sorting is applied at both the ends to reduce the latency. Multiple number of experiments have been conducted by taking different configurations of cloudlets and virtual machine. Various parameters like waiting time, execution time, turnaround time and the usage cost have been computed inside the cloudsim environment to demonstrate the results. Compared with the other job scheduling algorithms, the improved load balancing algorithm can outperform them according to the experimental results.

Authors and Affiliations

Kavita Redishettywar, Prof. Rafik Juber Thekiya

Keywords

Related Articles

SOFTWARE CODE CLONE DETECTION MODEL USING HYBRID APPROACH

The aspiration of this study is to understand and analyze the concept of software Cloning and its detection. Software cloning is an acuity in which source code is duplicated. Software cloning and its detection is one of...

Modeling and implementation of sequencing of tasks to Maximize the Processing in an organization

The main objective of this work is to conceive a practical approach to improve customer’s satisfaction which is generally considered as the pillar of the development of customer fidelity for the company. It is necessar...

NLP TOKEN MATCHING ON DATABASE USING BINARY SEARCH

Natural Language Processing (NLP) is an area of research and application that explores how computers can be used to understand and manipulate natural language text or speech to do useful things. The paper deals with the...

Diagnosis of Dynamic Topology MANETs in Faulty Environment

In this paper we describe here the diagnosis the dynamic topology in a faulty environment. In this paper we have optimize that type of network in which less nodes are used to reach source to destination so that data loss...

Three Factor Authentication using Webcam for securing Online Transaction

There are a continuously growing number of customers who use Online Transaction facility due to its convenience. But the security and privacy of Information may be one of the biggest concerns to the users. In face of the...

Download PDF file
  • EP ID EP650942
  • DOI 10.24297/ijct.v16i6.6304
  • Views 83
  • Downloads 0

How To Cite

Kavita Redishettywar, Prof. Rafik Juber Thekiya (2017). AN ENHANCED TASK ALLOCATION STRATEGY IN CLOUD ENVIRONMENT. INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY, 16(6), 6953-6961. https://europub.co.uk/articles/-A-650942