Welcome to Scholar Publishing Group

Distributed Processing System, 2020, 1(4); doi: 10.38007/DPS.2020.010403.

Distributed System Computation Model Based on Mobile Agent Development Platform

Author(s)

Hassan Mumad

Corresponding Author:
Hassan Mumad
Affiliation(s)

Philippine Christian University Center for International Education, Philippines

Abstract

With the advancement of Internet technology, people's requirements for data computing and processing are getting higher and higher, and it is difficult for a single computer to meet efficient task computing and data transmission. Therefore, multiple computers are connected to complete a large-scale project. The needs of the task are becoming more and more urgent. With the increase of this demand, the distributed system(DS) emerges as the times require, and the mobile agent technology provides a new way to solve the distributed computing(DC) problem. For the system proposed in this paper, the service quality of computing tasks is evaluated by the transparent memory(TM) usage effect of the DC system. The experiments show that the TM algorithm is the most robust to the amount of memory contributed by nodes; and then through the multi-queue node scheduling experiment, it is found that the low priority The response time of the task is higher than that of the high priority task.

Keywords

Mobile Agent Technology, Distributed System, Computing Model, Transparent Memory Algorithm

Cite This Paper

Hassan Mumad. Distributed System Computation Model Based on Mobile Agent Development Platform. Distributed Processing System (2020), Vol. 1, Issue 4: 18-24. https://doi.org/10.38007/DPS.2020.010403.

References

[1] Fujikawa J, Shiokawa S. Information-Centric Architecture Using Mobile Agent for MANET. Journal of Signal Processing, 2018, 22(4):179-183.

[2] Adegbite G, Emuoyibofarhe J, Ajala F A, et al. Development of a Multi-level Mobile Agent Security Model for Online Shopping Systems. International Journal of Wireless and Mobile Computing, 2019, 4(4):87-93.

[3] Salah-Ddine K, Laassiri J. Mobile Agent Security Based on Mutual Authentication and Elliptic Curve Cryptography. International Journal of Innovative Technology and Exploring Engineering, 2019, 08(12):2509-2517.

[4] Arora P K, Bhatia R. Mobile Agent Based Regression Test Case Generation using Model and Formal Specifications. Iet Software, 2018, 12(1):30-40.

[5] Chaudhary S, Kumar U, Gambhir M. Review and comparison of Mobile Agent Itinerary Planning Algorithms in WSN. International Journal Of Computer Sciences And Engineering, 2019, 7(6):209-219.

[6] Osero B O, Abade E, Mburu S. Mobile Agent Based Distributed Network Architecture with Map Reduce Programming Model. Computer Science and Information Technology, 2019, 7(5):129-161.

[7] Yadav S, Mohan R, Yadav P K. Fuzzy based task allocation technique in DC system. International Journal of Information Technology, 2019, 11(1):13-20.

[8] Saxena K, Abhyankar A R. Agent-Based DC for Power System State Estimation. IEEE Transactions on Smart Grid, 2020, PP(99):1-1.

[9] Zak M, Ware J A. Cloud based Distributed Denial of Service Alleviation System. Annals of Emerging Technologies in Computing, 2020, 4(1):44-53.

[10] Khandelwal A. Fuzzy based Amalgamated Technique for Optimal Service Time in DC System. International Journal of Recent Technology and Engineering, 2019, 8(3):6763-6768.

[11] Lenzen C, Patt-Shamir B, Peleg D. Distributed distance computation and routing with small messages. DC, 2019, 32(3):1-25.

[12] Firouzi R, Rahmani R, Kanter T. Federated Learning for Distributed Reasoning on Edge Computing. Procedia Computer Science, 2020, 184(6):419-427.

[13] Memon K A. Analyzing distributed denial of service attacks in cloud computing towards the Pakistan information technology industry. Indian Journal of Science and Technology, 2020, 13(29):2062-2072.

[14] Ketu S, Mishra P K, Agarwal S. Performance Analysis of DC Frameworks for Big Data Analytics: Hadoop Vs Spark. Computacion y Sistemas, 2020, 24(2):669–686.

[15] Samidurai R, Sriraman R, Zhu S. Leakage delay-dependent stability analysis for complex-valued neural networks with discrete and distributed time-varying delays. Neurocomputing, 2019, 338(APR.21):262-273.

[16] Jarraya A, Bouzeghoub A, Borgi A, et al. DCR: A new distributed model for human activity recognition in smart homes. Expert Systems with Application, 2020, 140(Feb.):112849.1-112849.19.

[17] Froelicher D, Troncoso-Pastoriza J R, Sousa J S, et al. Drynx: Decentralized, Secure, Verifiable System for Statistical Queries andMachine Learning on Distributed Datasets. IEEE Transactions on Information Forensics and Security, 2020, PP(99):1-1.

[18] Malaviya A. DCDedupe: selective deduplication and delta compression with effective routing for distributed storage. Computing reviews, 2019, 60(2):75-75.

[19] Hakeem A, Curtmola R, Ding X, et al. DFPS: A Distributed Mobile System for Free Parking Assignment. IEEE Transactions on Mobile Computing, 2020, PP(99):1-1.