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Recent Advances in Computer Science and Communications

Editor-in-Chief

ISSN (Print): 2666-2558
ISSN (Online): 2666-2566

Systematic Review Article

YARN Schedulers for Hadoop MapReduce Jobs: Design Goals, Issues and Taxonomy

Author(s): Gnanendra Kotikam* and Lokesh Selvaraj

Volume 16, Issue 6, 2023

Published on: 23 December, 2022

Article ID: e310822208349 Pages: 12

DOI: 10.2174/2666255816666220831125012

Price: $65

Abstract

Objective: Big Data processing is a demanding task, and several big data processing frameworks have emerged in recent decades. The performance of these frameworks is greatly dependent on resource management models.

Methods: YARN is one of such models which acts as a resource management layer and provides computational resources for execution engines (Spark, MapReduce, storm, etc.) through its schedulers. The most important aspect of resource management is job scheduling.

Results: In this paper, we first present the design goal of YARN real-life schedulers (FIFO, Capacity, and Fair) for the MapReduce engine. Later, we discuss the scheduling issues of the Hadoop MapReduce cluster.

Conclusion: Many efforts have been carried out in the literature to address issues of data locality, heterogeneity, straggling, skew mitigation, stragglers and fairness in Hadoop MapReduce scheduling. Lastly, we present the taxonomy of different scheduling algorithms available in the literature based on some factors like environment, scope, approach, objective and addressed issues.

Keywords: Hadoop map reduce, YARN schedulers, scheduling issues, fair scheduling, energy consumption, virtualization.

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