Smart City Gnosys

Smart city article details

Title Enhancing Task Management In Apache Spark Through Energy-Efficient Data Segregation And Time-Based Scheduling
ID_Doc 24003
Authors MIRZA N.M.; Ali A.; Musa N.S.; Ishak M.K.
Year 2024
Published IEEE Access, 12
DOI http://dx.doi.org/10.1109/ACCESS.2024.3435705
Abstract The rise of smart cities as solutions to urban challenges has garnered significant attention in recent years. With technological advancements, particularly in wireless communication and artificial intelligence, smart cities aim to optimize decision-making processes and improve citizen services. This study explores the integration of extensive infrastructure and networked Internet of Things (IoT) devices to collect data and enhance city performance. With urban populations steadily increasing, the need for efficient resource management and sustainability practices becomes paramount. However, challenges such as energy trading, privacy concerns, and security issues persist. To address these challenges, big data analytics (BDA) systems are crucial, necessitating efficient task scheduling strategies. This study proposes a Dynamic Smart Flow Scheduler (DSFS) system for Apache Spark, showcasing significant improvements in resource efficiency and task optimization. By reducing resource consumption and task execution, the proposed approach enhances system performance, scalability, and sustainability. © 2013 IEEE.
Author Keywords Apache spark; data segregation; dynamic scheduler; energy efficient; smart cities


Similar Articles


Id Similarity Authors Title Published
56704 View0.92Mirza N.M.; Ali A.; Ishak M.K.The Scheduling Techniques In The Hadoop And Spark Of Smart Cities Environment: A Systematic ReviewBulletin of Electrical Engineering and Informatics, 13, 1 (2024)
24778 View0.902Nasiri, H; Nasehi, S; Goudarzi, MEvaluation Of Distributed Stream Processing Frameworks For Iot Applications In Smart CitiesJOURNAL OF BIG DATA, 6, 1 (2019)
44300 View0.888Khanderi 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 View0.887Rathore, 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)
60109 View0.882Silva, BN; Khan, M; Jung, C; Seo, J; Muhammad, D; Han, J; Yoon, Y; Han, KUrban Planning And Smart City Decision Management Empowered By Real-Time Data Processing Using Big Data AnalyticsSENSORS, 18, 9 (2018)
13791 View0.882Alsaig, A; Alagar, V; Chammaa, Z; Shiri, NCharacterization And Efficient Management Of Big Data In Iot-Driven Smart City DevelopmentSENSORS, 19, 11 (2019)
57200 View0.881Jayanthi 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)
23575 View0.881Raptis, TP; Cicconetti, C; Falelakis, M; Kalogiannis, G; Kanellos, T; Lobo, TPEngineering Resource-Efficient Data Management For Smart Cities With Apache KafkaFUTURE INTERNET, 15, 2 (2023)
5278 View0.879Sasaki Y.A Survey On Iot Big Data Analytic Systems: Current And FutureIEEE Internet of Things Journal, 9, 2 (2022)
7820 View0.879Nasser 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)