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Energy and SLA-driven MapReduce Job Scheduling Framework for Cloud-based Cyber-Physical Systems

Published: 03 May 2021 Publication History

Abstract

Energy consumption minimization of cloud data centers (DCs) has attracted much attention from the research community in the recent years; particularly due to the increasing dependence of emerging Cyber-Physical Systems on them. An effective way to improve the energy efficiency of DCs is by using efficient job scheduling strategies. However, the most challenging issue in selection of efficient job scheduling strategy is to ensure service-level agreement (SLA) bindings of the scheduled tasks. Hence, an energy-aware and SLA-driven job scheduling framework based on MapReduce is presented in this article. The primary aim of the proposed framework is to explore task-to-slot/container mapping problem as a special case of energy-aware scheduling in deadline-constrained scenario. Thus, this problem can be viewed as a complex multi-objective problem comprised of different constraints. To address this problem efficiently, it is segregated into three major subproblems (SPs), namely, deadline segregation, map and reduce phase energy-aware scheduling. These SPs are individually formulated using Integer Linear Programming. To solve these SPs effectively, heuristics based on Greedy strategy along with classical Hungarian algorithm for serial and serial-parallel systems are used. Moreover, the proposed scheme also explores the potential of splitting Map/Reduce phase(s) into multiple stages to achieve higher energy reductions. This is achieved by leveraging the concepts of classical Greedy approach and priority queues. The proposed scheme has been validated using real-time data traces acquired from OpenCloud. Moreover, the performance of the proposed scheme is compared with the existing schemes using different evaluation metrics, namely, number of stages, total energy consumption, total makespan, and SLA violated. The results obtained prove the efficacy of the proposed scheme in comparison to the other schemes under different workload scenarios.

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  • (2022)Metaheuristics Based Energy Efficient Task Scheduling Scheme for Cyber-Physical Systems EnvironmentSustainability10.3390/su14241653914:24(16539)Online publication date: 9-Dec-2022

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Published In

cover image ACM Transactions on Internet Technology
ACM Transactions on Internet Technology  Volume 21, Issue 2
June 2021
599 pages
ISSN:1533-5399
EISSN:1557-6051
DOI:10.1145/3453144
  • Editor:
  • Ling Liu
Issue’s Table of Contents
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

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Association for Computing Machinery

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Publication History

Published: 03 May 2021
Accepted: 01 July 2020
Revised: 01 June 2020
Received: 01 April 2020
Published in TOIT Volume 21, Issue 2

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Author Tags

  1. Cyber-physical systems
  2. energy optimization
  3. job scheduling
  4. greedy approach
  5. Hungarian algorithm
  6. and MapReduce

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  • Research-article
  • Refereed

Funding Sources

  • Tata Consultancy Services (TCS), India
  • Natural Sciences and Engineering Research Council of Canada (NSERC)
  • Fonds de recherche du Quebec—Nature et technologies (FRQNT) through PBEEE
  • Tier 2 Canada Research Chair on the Next Generations of Wireless IoT Networks

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  • (2022)Metaheuristics Based Energy Efficient Task Scheduling Scheme for Cyber-Physical Systems EnvironmentSustainability10.3390/su14241653914:24(16539)Online publication date: 9-Dec-2022

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