Server Scalability Using Kubernetes

Dewi, Lily Puspa and Noertjahyana, Agustinus and Palit, Henry Novianus and YEDUTUN, KEZIA (2020) Server Scalability Using Kubernetes. [UNSPECIFIED]

[thumbnail of Publikasi1_98011_6134.pdf] PDF
Publikasi1_98011_6134.pdf

Download (453kB)
[thumbnail of Publikasi4_98011_6134.pdf] PDF
Publikasi4_98011_6134.pdf

Download (2MB)
[thumbnail of paper - Agustinus]
Preview
PDF (paper - Agustinus)
15._Server_Scalability_Using_-_PAPER.pdf

Download (736kB)

Abstract

An enterprise that has implemented virtualization can consolidate multiple servers into fewer host servers and get the benefits of reduced space, power, and administrative requirements. Sharing their hosts’ operating system resources,
containerization significantly reduces workloads, and is known as a lightweight virtualization. Kubernetes is commonly used to
automatically deploy and scale application containers. The
scalability of these application containers can be applied to
Kubernetes with several supporting parameters. It is expected
that the exploitation of scalability will improve performance and
server response time to users without reducing server utility
capabilities. This research focuses on applying the scalability in
Kubernetes and evaluating its performance on overcoming the
increasing number of concurrent users accessing academic data.
This research employed 3 computers: one computer as the master node and two others as worker nodes. Simulations are performed by an application that generates multiple user behaviors accessing various microservice URLs. Two scenarios were designed to evaluate the CPU load on single and multiple servers.
On multiple servers, the server scalability was enabled to serve the user requests. Implementation of scalability to the containers (on multiple servers) reduces the CPU usage pod due to the distribution of loads to containers that are scattered in many workers. Besides CPU load, this research also measured the server’s response time in responding user requests. Response time on multiple servers takes longer time than that on single server due to the overhead delay of scaling containers

Item Type: UNSPECIFIED
Subjects: Z Bibliography. Library Science. Information Resources > ZA Information resources
Divisions: Faculty of Industrial Technology > Informatics Engineering Department
Depositing User: Admin
Date Deposited: 14 Apr 2020 16:02
Last Modified: 20 Jun 2023 09:24
URI: https://repository.petra.ac.id/id/eprint/18705

Actions (login required)

View Item
View Item