Welcome to Scholar Publishing Group

Distributed Processing System, 2021, 2(1); doi: 10.38007/DPS.2021.020107.

Design and Implementation of Distributed Resource Management and Platform Deployment Based on Logical Clock

Author(s)

Saravannan Sriddevi

Corresponding Author:
Saravannan Sriddevi
Affiliation(s)

Tamale Technical University, Ghana

Abstract

With the rise of cloud computing technology and the continuous improvement and progress, at the same time, in the environment of technological innovation, the demand for information construction is becoming more and more urgent. The purpose of this paper is the design and implementation of distributed resource management and platform deployment based on logical clocks. After comparing container technology and virtual machine technology, this paper uses cloud computing-related technologies such as containers and orchestration tools to analyze scheduling strategies within the laboratory, platform design and service deployment to build a resource management platform. After studying the scheduling strategy, this paper designs, implements and deploys the platform and services. The hardware, network and other environments of the laboratory are configured and planned, and then the overall architecture of the resource management platform is designed. Latency test results for business deployments show that when the data grows significantly, the time taken by the system also increases, especially when the data goes from 500 MB to 1 GB. The delay test results of service unloading show that the size of the data does not have a great impact on the delay of unloading services, but the overall efficiency of the distributed resource management.

Keywords

Logical Clock, Distributed Systems, Resource Management, Platform Deployment

Cite This Paper

Saravannan Sriddevi. Design and Implementation of Distributed Resource Management and Platform Deployment Based on Logical Clock. Distributed Processing System (2021), Vol. 2, Issue 1: 83-91. https://doi.org/10.38007/DPS.2021.020107.

References

[1] Hoff J R. Conflux--An Asynchronous Two-to-One Multiplexor for Time-Division Multiplexing and Clockless, Tokenless Readout. IEEE Transactions on Very Large Scale Integration (VLSI) Systems, 2019, PP(99):1-13.

[2] Bagchi S. Design and topological analysis of probabilistic distributed mutual exclusion algorithm with unbiased refined ordering. Future Generation Computer Systems, 2019, 95(JUN.):175-186.

[3] Schwenkreis F. A Logical Clock Based Discovery of Patterns. International Journal of Data Science and Analysis, 2021, 7(4):98-108.

[4] Pozzetti T, Kshemkalyani A D. Resettable Encoded Vector Clock for Causality Analysis With an Application to Dynamic Race Detection. IEEE Transactions on Parallel and Distributed Systems, 2021, 32(4):772-785.

[5] Drozd O, Nowakowski G, Sachenko A, et al. Power-Oriented Monitoring of Clock Signals in FPGA Systems for Critical Application. Sensors, 2021, 21(792):1-17.

[6] Kirichenko A F, Vernik I V, Kamkar M Y, et al. ERSFQ 8-bit Parallel Arithmetic Logic Unit. IEEE Transactions on Applied Superconductivity, 2019, PP(99):1-1.

[7] Gamayani U, Calista C, Ong A, et al. Cognitive Examination In Thalassemia Patients. The Open Psychology Journal, 2020, 13(1):95-100.

[8] Hameed M, Shakor H. Design and Implementation of Low Power Clock GatingTechnique in 16 bit ALU Circuit. Journal of Engineering and Applied Sciences, 2018, 13(9):2767-2772.

[9] Danielsson P, Postema T, Munir H. Heroku-Based Innovative Platform for Web-Based Deployment in Product Development at Axis. IEEE Access, 2021, PP(99):1-1.

[10] Wirasinghe C, Perera S, Ganepola D, et al. Frugal development and deployment of an innovative mobile health platform for COVID-19 in Sri Lanka: the case of SelfShield app. BMJ Innovations, 2021, 7(4):604-608.

[11] Iyer S. Automata processing in reconfigurable architectures: in-the-cloud deployment, cross-platform evaluation, and fast symbol-only reconfiguration. Computing reviews, 2020, 61(2):69-69.

[12] Galanis I, Anagnostopoulos I, Nguyen C, et al. Efficient Deployment of Spiking Neural Networks on SpiNNaker Neuromorphic Platform. Circuits and Systems II: Express Briefs, IEEE Transactions on, 2020, PP(99):1-1.

[13] Kim B. Big Data Platform Case Analysis and Deployment Strategies to Revitalize the Data Economy. Jouranl of Information and Security, 2021, 21(1):73-78.

[14] Santiago G V, Alvares A J. Deployment framework for the Internet of water meters using computer vision on ARM platform. Journal of Ambient Intelligence and Smart Environments, 2020, 12(1):35-60.

[15] Pedersen A, Valla M, Bofin A M, et al. FastPathology: An open-source platform for deep learning-based research and decision support in digital pathology. IEEE Access, 2021, PP(99):1-1.

[16] Aloi G, Fortino G, Gravina R, et al. Simulation-driven platform for Edge-based AAL systems. IEEE Journal on Selected Areas in Communications, 2020, PP(99):1-1.

[17] Hernandez M P, Mcfarlane D, Parlikad A K, et al. Relaxing Platform Dependencies in Agent-Based Control Systems. IEEE Access, 2021, PP(99):1-1.

[18] Sousa B M, Fonseca V, Cordeiro L, et al. EMPATIA: A Multichannel Platform for Participatory Budgeting. International Journal of Electronic Government Research, 2020, 15(2):58-89.