BÜYÜK VERİLER İÇİN HADOOP İŞ ÇİZELGELEME ALGORİTMALARINA GENEL BAKIŞ
Author:
ZAMEEL Akhtari1, ZENGİN Ahmet2
Affiliation:
1. SAKARYA UNIVERSITY, FACULTY OF ENGINEERING 2. SAKARYA UNIVERSITY
Abstract
Rapid advancements in Big data systems have occurred over the last several decades. The significant element for attaining high performance is "Job Scheduling" in Big data systems which requires more utmost attention to resolve some challenges of scheduling. To obtain higher performance when processing the big data, proper scheduling is required. Apache Hadoop is most commonly used to manage immense data volumes in an efficient way and also proficient in handling the issues associated with job scheduling. To improve performance of big data systems, we significantly analyzed various Hadoop job scheduling algorithms. To get an overall idea about the scheduling algorithm, this paper presents a rigorous background. This paper made an overview on the fundamental architecture of Hadoop Big data framework, job scheduling and its issues, then reviewed and compared the most important and fundamental Hadoop job scheduling algorithms. In addition, this paper includes a review of other improved algorithms. The primary objective is to present an overview of various scheduling algorithms to improve performance when analyzing big data. This study will also provide appropriate direction in terms of job scheduling algorithm to the researcher according to which characteristics are most significant
Publisher
Mugla Journal of Science and Technology
Subject
Industrial and Manufacturing Engineering,Surfaces, Coatings and Films
Reference65 articles.
1. Zameel, A., Najmuldeen, M., and Gormus, S., “Context-Aware Caching in Wireless IoT Networks”, 11th International Conference on Electrical and Electronics Engineering (ELECO), IEEE, 2019, pp. 712-717. 2. Seethalakshmi, V., Govindasamy, V., & Akila, V., “Job scheduling in big data-a survey”, International Conference on Computation of Power, Energy, Information and Communication (ICCPEIC) IEEE, 2018, pp. 023-031. 3. Deshai, N., Venkataramana, S., Hemalatha, I., & Varma, G. P. S., “A Study on Big Data Hadoop Map Reduce Job Scheduling”, International Journal of Engineering & Technology, 7(3), 59-65, 2017. 4. Mohamed, E., & Hong, Z., “Hadoop-MapReduce job scheduling algorithms survey”, 7th International Conference on Cloud Computing and Big Data (CCBD), IEEE, 2016, pp. 237-242. 5. Singh, D., Reddy, C.K., “A survey on platforms for big data analytics”, Journal of big data, 2(1): p. 1-20, 2015.
|
|