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CLQLMRS: improving cache locality in MapReduce job...
Journal article

CLQLMRS: improving cache locality in MapReduce job scheduling using Q-learning

Abstract

Scheduling of MapReduce jobs is an integral part of Hadoop and effective job scheduling has a direct impact on Hadoop performance. Data locality is one of the most important factors to be considered in order to improve efficiency, as it affects data transmission through the system. A number of researchers have suggested approaches for improving data locality, but few have considered cache locality. In this paper, we present a state-of-the-art job scheduler, CLQLMRS (Cache Locality with Q-Learning in MapReduce Scheduler) for improving both data locality and cache locality using reinforcement learning. The proposed algorithm is evaluated by various experiments in a heterogeneous environment. Experimental results show significantly decreased execution time compared with FIFO, Delay, and the Adaptive Cache Local scheduler.

Authors

Ghazali R; Adabi S; Rezaee A; Down DG; Movaghar A

Journal

Journal of Cloud Computing, Vol. 11, No. 1,

Publisher

Springer Nature

Publication Date

December 1, 2022

DOI

10.1186/s13677-022-00322-5

ISSN

2192-113X

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