Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing

Smartphones and other mobile device users are becoming increasingly susceptible to malicious applications or apps that compromise user privacy. Malicious applications are more invasive than required because they require less authorization to operate them. The Android platform is more vulnerable to a...

Full description

Saved in:
Bibliographic Details
Main Authors: Matheen Fathima G, Shakkeera L
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Results in Control and Optimization
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666720725000104
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841545510115082240
author Matheen Fathima G
Shakkeera L
author_facet Matheen Fathima G
Shakkeera L
author_sort Matheen Fathima G
collection DOAJ
description Smartphones and other mobile device users are becoming increasingly susceptible to malicious applications or apps that compromise user privacy. Malicious applications are more invasive than required because they require less authorization to operate them. The Android platform is more vulnerable to attacks since it is open-source, allows third-party app stores and it has extensive app screening. Thus the usage of mobile cloud applications has also expanded due to android platform. The mobile apps are useful for e-transportation, augmented reality, 2D and 3D games, e-health care and education. Consequently, maintaining MCC security and optimization of resources according to the task becomes significant task. Though recent research has been focused in the area of task scheduling, supporting multiple objectives still becomes a significant issue due to the Non-deterministic Polynomial (NP) hard problem. In this paper, Federated Learning with Blockchain Technology (FLBCT) is introduced for Microservice-based Mobile Cloud Computing Applications (MSCMCC). Mobile app permissions dataset has to be offloaded to a mobile cloud and protected using FL and BCT. FL permit mobile users to train models without sending raw data to third-party servers. FL is also used to trains the data across various decentralized devices holding of samples without exchanging them. BCT is introduced for enhancing data traceability, trust, security and transparency among participating companies. Resource matching, task sequencing, and task scheduling are major steps of Optimization Task Scheduling based Computational Offloading (OTSCO) framework. OTSCO framework increases application efficiency and gives the successful resource constraints to increase application-based efficiency, tasks are executed under deadline, and minimize application cost. The proposed system has a lower overhead of 20.14%, lesser boot time of 20.47 ms, lesser CPU usage of 0.45%, failure task ratio of the suggested system is 2.52%. It shows that the proposed system is easily applicable to Task Scheduling, and gives more security on MCC.
format Article
id doaj-art-6a20d7cd9f884de08ed3623b95340bcb
institution Kabale University
issn 2666-7207
language English
publishDate 2025-03-01
publisher Elsevier
record_format Article
series Results in Control and Optimization
spelling doaj-art-6a20d7cd9f884de08ed3623b95340bcb2025-01-12T05:26:08ZengElsevierResults in Control and Optimization2666-72072025-03-0118100524Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computingMatheen Fathima G0Shakkeera L1Corresponding author.; Presidency School of Computer Science and Engineering, Presidency University, Bengaluru, Karnataka, IndiaPresidency School of Computer Science and Engineering, Presidency University, Bengaluru, Karnataka, IndiaSmartphones and other mobile device users are becoming increasingly susceptible to malicious applications or apps that compromise user privacy. Malicious applications are more invasive than required because they require less authorization to operate them. The Android platform is more vulnerable to attacks since it is open-source, allows third-party app stores and it has extensive app screening. Thus the usage of mobile cloud applications has also expanded due to android platform. The mobile apps are useful for e-transportation, augmented reality, 2D and 3D games, e-health care and education. Consequently, maintaining MCC security and optimization of resources according to the task becomes significant task. Though recent research has been focused in the area of task scheduling, supporting multiple objectives still becomes a significant issue due to the Non-deterministic Polynomial (NP) hard problem. In this paper, Federated Learning with Blockchain Technology (FLBCT) is introduced for Microservice-based Mobile Cloud Computing Applications (MSCMCC). Mobile app permissions dataset has to be offloaded to a mobile cloud and protected using FL and BCT. FL permit mobile users to train models without sending raw data to third-party servers. FL is also used to trains the data across various decentralized devices holding of samples without exchanging them. BCT is introduced for enhancing data traceability, trust, security and transparency among participating companies. Resource matching, task sequencing, and task scheduling are major steps of Optimization Task Scheduling based Computational Offloading (OTSCO) framework. OTSCO framework increases application efficiency and gives the successful resource constraints to increase application-based efficiency, tasks are executed under deadline, and minimize application cost. The proposed system has a lower overhead of 20.14%, lesser boot time of 20.47 ms, lesser CPU usage of 0.45%, failure task ratio of the suggested system is 2.52%. It shows that the proposed system is easily applicable to Task Scheduling, and gives more security on MCC.http://www.sciencedirect.com/science/article/pii/S2666720725000104Cloud computingMobile cloud computingTask offloadingTask sequencingFederated learning with blockchain technology (FLBCT)Optimization task scheduling computational offloading (OTSCO) and microservices
spellingShingle Matheen Fathima G
Shakkeera L
Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
Results in Control and Optimization
Cloud computing
Mobile cloud computing
Task offloading
Task sequencing
Federated learning with blockchain technology (FLBCT)
Optimization task scheduling computational offloading (OTSCO) and microservices
title Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
title_full Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
title_fullStr Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
title_full_unstemmed Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
title_short Efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
title_sort efficient task scheduling and computational offloading optimization with federated learning and blockchain in mobile cloud computing
topic Cloud computing
Mobile cloud computing
Task offloading
Task sequencing
Federated learning with blockchain technology (FLBCT)
Optimization task scheduling computational offloading (OTSCO) and microservices
url http://www.sciencedirect.com/science/article/pii/S2666720725000104
work_keys_str_mv AT matheenfathimag efficienttaskschedulingandcomputationaloffloadingoptimizationwithfederatedlearningandblockchaininmobilecloudcomputing
AT shakkeeral efficienttaskschedulingandcomputationaloffloadingoptimizationwithfederatedlearningandblockchaininmobilecloudcomputing