Smart City Gnosys

Smart city article details

Title The Scheduling Techniques In The Hadoop And Spark Of Smart Cities Environment: A Systematic Review
ID_Doc 56704
Authors Mirza N.M.; Ali A.; Ishak M.K.
Year 2024
Published Bulletin of Electrical Engineering and Informatics, 13, 1
DOI http://dx.doi.org/10.11591/eei.v13i1.5841
Abstract Processing extensive and diverse data in real-time is a significant challenge in the context of smart cities. Timely access to information and efficient analytics is essential for smart city services to make data-driven decisions and enhance urban living. Scheduling algorithms play a crucial role in ensuring the prompt delivery of services and efficient task completion. This paper explores various scheduling techniques, including static, dynamic, and hybrid schedulers, and compares their objectives and performance. Additionally, the study examines two prominent data processing frameworks, Hadoop and Spark, and compares their capabilities in handling big data in smart cities. With its ability to process large amounts of data quickly and efficiently, Spark has shown superiority over Hadoop in real-time data processing and performance optimization. The paper concludes by highlighting the strengths and limitations of each framework. It discusses the need for further research in optimizing scheduling techniques and exploring hybrid artificial intelligence scheduling for Spark. Overall, the findings contribute to a better understanding of data processing in real-time and provide insights for researchers and practitioners in smart cities. © 2024, Institute of Advanced Engineering and Science. All rights reserved.
Author Keywords Big data; Hadoop; Scheduling; Smart city; Spark


Similar Articles


Id Similarity Authors Title Published
24003 View0.92MIRZA N.M.; Ali A.; Musa N.S.; Ishak M.K.Enhancing Task Management In Apache Spark Through Energy-Efficient Data Segregation And Time-Based SchedulingIEEE Access, 12 (2024)
53139 View0.898Rai A.; Kumar R.; Kumar N.; Fatima S.Strategies And Tools For Big Data Analytics In Smart City Environments: Algorithms And Data TypesAdvances in Electronics, Computer, Physical and Chemical Sciences (2025)
7820 View0.896Nasser N.; Khan N.; Elattar M.; Saleh K.; Abujamous A.An Efficient Data Scheduling Scheme For Cloud- Based Big Data Framework For Smart CityProceedings - IEEE Global Communications Conference, GLOBECOM (2019)
24778 View0.892Nasiri, H; Nasehi, S; Goudarzi, MEvaluation Of Distributed Stream Processing Frameworks For Iot Applications In Smart CitiesJOURNAL OF BIG DATA, 6, 1 (2019)
44300 View0.882Khanderi A.; Rajaram G.; Hussein R.R.; Johri P.; Mohanraj T.; Balamurugan M.Real-Time Analytics For Big Data In Smart City Applications: Transforming Urban Environments With Data-Driven Insights2025 International Conference on Automation and Computation, AUTOCOM 2025 (2025)
60106 View0.88Rathore, MM; Ahmad, A; Paul, A; Rho, SUrban Planning And Building Smart Cities Based On The Internet Of Things Using Big Data AnalyticsCOMPUTER NETWORKS, 101 (2016)
57200 View0.879Jayanthi M.; Pravallika Reddy C.Theoretical Design And Experimental Study For Urban Data Management Using Energy-Saved Iot Big DataLecture Notes in Networks and Systems, 119 (2020)
5903 View0.878De Camargo Magano F.; Braghetto K.R.Abstracting Big Data Processing Tools For Smart CitiesProceedings - 2018 IEEE 37th International Symposium on Reliable Distributed Systems Workshops, SRDSW 2018 (2019)
5521 View0.877Zhou J.; Liu B.; Gao J.A Task Scheduling Algorithm With Deadline Constraints For Distributed Clouds In Smart CitiesPeerJ Computer Science, 9 (2023)
8418 View0.873Chilipirea, C; Petre, AC; Groza, LM; Dobre, C; Pop, FAn Integrated Architecture For Future Studies In Data Processing For Smart CitiesMICROPROCESSORS AND MICROSYSTEMS, 52 (2017)