Open Access Open Access  Restricted Access Subscription or Fee Access

Implementation of Improved Throttled Load Balancing Algorithm Using Cloud Analyst

C. R. Durga Devi, Dr. R. Manicka Chezian

Abstract


Big Data Applications are handled using Cloud. Cloud computing contains an important area of resource management. The resources are of two types as physical resources and logical resources. Resource management refers to the operations used to control how capabilities provided by Cloud resources and services can be made available to other entities, whether users, applications, services in an efficient manner. Scheduling of Virtual Machines to Data Centers should conserve energy.  Task scheduling to Virtual machine also focuses on reducing the time delay and cost. Load balancing plays a vital role in making the usage of resources in an efficient manner. There are many algorithms used for load balancing. In this paper, comparative study is performed for existing Round robin algorithm, Throttle algorithm and proposed Dynamic load balancing algorithm in cloud computing. Proposed algorithm is implemented and tested. All of these algorithms are compared in terms of Response time Datacenter Request Servicing time and Cost in Cloud Analyst and Results prove the performance of proposed algorithm.


Keywords


Big Data, Cloud Computing, Virtual Machine, Dynamic Load Balancing, Response Time.

Full Text:

PDF

References


Feilong Tang , Laurence T. Yang , Can Tang , Jie Li ; Minyi Guo, “A Dynamical and Load-Balanced Flow Scheduling Approach for

Big Data Centers in Clouds”, IEEE Transactions on Cloud Computing, Volume 6 , Issue 4 , 2018, Pages 915 – 928

Shivani Dubey, Mamta Dahiya, Sunaya Jain “Implementation of Load Balancing Algorithm with Cloud Coloboration for Logistics”, Journal of Engineering and Applied Science, 2019, pp. 507–515.

Slesha Nayak,Pragnesh Patel,” Analytical Study for Throttled and Proposed Throttled Algorithm of Load Balancing in Cloud Computing using Cloud Analyst”, International Journal of Science Technology & Engineering, Volume 1, Issue 12,June 2015,, pp. 90–100.

C.R.Durga Devi and R.Manicka Chezian, “Resource optimized ensemble gradient boosting classifier for traffic aware big data analytics”, Journal of Advanced Research in Dynamical & Control Systems , Volume 10 , Issue 3, 2018, Pages 839-852

C.R.Durga Devi and R.Manicka Chezian, “Multivariate Logistic Regression based Gradient Descent Firefly Optimized Round Robin Scheduling with Big Data”, Journal of Advanced Research in Dynamical & Control Systems , Volume 11 , Issue 1, 2019, Pages 179-192

M. Vaidehi, T.R. Gopalakrishnan Nair and V. Suma, An Efficient Job Classification Technique to Enhance Scheduling in Cloud to Accelerate the Performance. ICT and Critical Infrastructure: Proceedings of the 48th Annual Convention of Computer Society of India- Vol I: Chapter (pp.593-603)

Said Ben Alla, Hicham Ben Alla, Abdellah Touhafi and Abdellah Ezzati, An Efficient Energy-Aware Tasks Scheduling With Deadline-Constrained In Cloud Computing, Computers, Vol 8, issue 2,2019

Naoufal Er-raji , Faouzia Benabbou Priority Task Scheduling Strategy for Heterogeneous Multi-Datacenters in Cloud Computing, International Journal of Advanced Computer Science and Applications, Vol. 8, No. 2, 2017

Shyamala Loganathan1, Renuka Devi Saravanan1, Saswati Mukherjee, Energy Aware Resource Management and Job Scheduling in Cloud Datacenter, International Journal of Intelligent Engineering and Systems, Vol.10, No.4, 2017

Lailah M.Mustafa, Mohamed K. Elmahy, Mohamed H.Haggag Improve Scheduling Task based Task Grouping in Cloud Computing System, International Journal of Computer Applications (0975 – 8887), Volume 93 – No.8, May 2014


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.