Smart City Gnosys

Smart city article details

Title Goal-Driven Scheduling Model In Edge Computing For Smart City Applications
ID_Doc 28118
Authors Kim Y.; Park S.; Shahkarami S.; Sankaran R.; Ferrier N.; Beckman P.
Year 2022
Published Journal of Parallel and Distributed Computing, 167
DOI http://dx.doi.org/10.1016/j.jpdc.2022.04.024
Abstract A formidable challenge in scheduling user applications lies in collecting and representing the user's goals and requirements. We introduce a “science goal” as a mechanism for users to define scientific objectives and conditions of interest. To provide an abstraction to run applications on an ensemble of edge computing nodes, we implement a two-layered scheduler—cloud and edge scheduler. In this scheduling model, the users submit their goals to the cloud scheduler. These goals are conveyed to the appropriate nodes based on a variety of constraints including geographical area, resource availability, node capabilities, and applicability. The edge scheduler, with complete understanding of the current conditions, assumes the responsibility for executing the applications on the nodes so that the users' science goals are met. This paper provides a framework for the two-layered scheduling model for goal-driven edge computing and motivates and informs its architecture through a case study. © 2022 The Author(s)
Author Keywords Context-aware scheduling; Edge computing; Goal-driven scheduling; Logical reasoning


Similar Articles


Id Similarity Authors Title Published
27955 View0.878Chen Y.; Ding Y.; Hu Z.-Z.; Ren Z.Geometrized Task Scheduling And Adaptive Resource Allocation For Large-Scale Edge Computing In Smart CitiesIEEE Internet of Things Journal (2025)
21768 View0.872Rajagopal S.; Tripathi P.K.; Deshmukh M.; Choudari S.; Kumar A.; Long C.S.Edge Computing- Smart Cities: Optimizing Data Processing & Resource Management In Urban EnvironmentsJournal of Information Systems Engineering and Management, 10 (2025)
21732 View0.871Trigka M.; Dritsas E.Edge And Cloud Computing In Smart CitiesFuture Internet, 17, 3 (2025)
40897 View0.87Alhaizaey Y.; Singer J.; Michala A.L.Optimizing Task Allocation For Edge Micro-Clusters In Smart CitiesProceedings - 2021 IEEE 22nd International Symposium on a World of Wireless, Mobile and Multimedia Networks, WoWMoM 2021 (2021)
45588 View0.869Wang Y.; Wang D.; Lin G.; Zheng B.; Luo L.; Li S.Research On Resource Scheduling And Optimization Strategies Of Edge Computing-Based 5G Networks In Smart City Applications2023 4th International Symposium on Computer Engineering and Intelligent Communications, ISCEIC 2023 (2023)
14443 View0.864di Martino B.; Di Sivo D.; Amato A.Cloud, Edge, And Mobile Computing: Synergies For The Future Of Smart CitiesLecture Notes on Data Engineering and Communications Technologies, 250 (2025)
5521 View0.862Zhou J.; Liu B.; Gao J.A Task Scheduling Algorithm With Deadline Constraints For Distributed Clouds In Smart CitiesPeerJ Computer Science, 9 (2023)
21766 View0.862Teng Y.; Liu Z.Edge Computing Task Scheduling Method Based On User’S Social Relations: A Construction And Solution For Smart City LibraryPeerJ Computer Science, 10 (2024)
40867 View0.859Neto A.R.; Silva T.P.; Batista T.V.; Lopes F.; Delicato F.C.; Pires P.F.Optimizing Resource Allocation In Edge-Distributed Stream ProcessingInternational Conference on Web Information Systems and Technologies, WEBIST - Proceedings, 2021-October (2021)
3946 View0.857Sharifi M.; Abhari A.; Taghipour S.A Queueing Model For Video Analytics Applications Of Smart CitiesProceedings - Winter Simulation Conference, 2021-December (2021)