Challenges of Infrastructure in Cloud Computing for Education
Field: A Systemmatic Literature Review
Nurma Ayu Wigati, Ari Wibisono and Achmad Nizar Hidayanto
Faculty of Computer Science, Universitas Indonesia, Depok, Indonesia
Keywords: Cloud Computing, Eductional Sector, Infrastructure as a Service (IaaS), Resource, Security, Finance,
Kitchenham, Challenges.
Abstract: The usage of cloud computing is needed for educational sector, especially in universities to ease all of
administration and learning access to everyone. So that, the development infrastructure cloud computing need
to concern the aim of the university. Infrastructure as a Service (IaaS) in cloud computing has problems, like
resource, security, and finance. This study follows Kitchenham protocol to explore the challenges in the cloud
computing as a infrastructure service for education field literature systematically, then reviewed their
techniques which can use to all of university in Indonesia. This study recommends that the management of
IaaS should be considered well to get result development of cloud computing optimally.
1 INTRODUCTION
Cloud computing is defined as a services that together
provide ways to deliver cloud services. In higher
education, cloud computing services are commonly
used to provide the means for students to collaborate
and interact in a distributed learning space (Al-
Samarraie & Saeed, 2018). Cloud computing
technology is one of the services provided by the use
of IT in it to facilitate human work in various fields
to be more efficient and effective, such as in
education (Njenga, Garg, Bhardwaj, Prakash, &
Bawa, 2019). Universities and colleges usually do not
have sufficient fund to install and continuously
maintain state-of-the-art ICT technologies for
learning environment that can support students, staff,
researchers and developer (Elamir, Jailani, & Bakar,
2013). Thus, cloud computing and its applications are
vital to the future of distance education worldwide.
The rate at which ICT technologies change, will
continue to place pressure on institutions’ budget.
Increasing bandwidth availability has enable cloud
computing to be a potential solution in reducing ICT
cost and freeing them from the expense and hassle of
hardware and software maintenance. Several
universities in UK have adopted Google Apps due to
cost and unreliable in-house email systems. Even
universities and schools in poor countries in Africa
are using cloud computing supported by Google and
Microsoft.
Based on the conditions and problems that have
been described, the output of study is expected to
identify and map the right solutions to be carried out
when implementing cloud computing infrastructure
in educational sector. To answer the expected
research objectives, our work is organized as follows:
Section 1 shows why we choose to raise the issue of
the challenges faced in cloud computing
infrastructure as a service, Section 2’s regarding the
theoretical basis of cloud computing infrastructure as
a service (IaaS) and its chalenges. Section 3 is about
research methodology which tells the workmanship
of the research on how the research was conducted.
Section 4’s regarding the results and analysis that
shows the results of research that has been done and
how the analysis of the outputs on these results. In
Section 5, the authors provide conclusions from this
literature study.
2 RELATED WORKS
Cloud computing (CC) also presents new security
challenges (A. M. Ibrahim & Hemayed, 2019). In
education field, we have some problems about cloud
computing. Education institutions will continue to
enhance infrastructure and curriculum to attract
Wigati, N., Wibisono, A. and Hidayanto, A.
Challenges of Infrastructure in Cloud Computing for Education Field: A Systemmatic Literature Review.
DOI: 10.5220/0010522603510358
In Proceedings of the 23rd International Conference on Enterprise Information Systems (ICEIS 2021) - Volume 1, pages 351-358
ISBN: 978-989-758-509-8
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
351
students (Sun, 2020). Scholars and researchers have
done lots of studies concern the cloud computing
adoption model and proposed a suitable way for
different categories of cloud computing such as
layout, implementing, challenges and so many.
Students, staff and lecturers in the studied area suffer
enough due to the problem of data storage for their
academic purposes (Juma & Tjahyanto, 2019).
Unfortunately, these methods require the suspension
of the cloud computing applications due to the
mandatory shutdown of the associated virtual
machines (Lin, Wang, Liang, & Qi, 2011).
3 METHODOLOGY
The need for cloud computing infrastucture as a
service is needed to support the profits to be obtained
by university (Lis & Paula, 2015). This study needs
to map the problems arising from cloud computing
infrastructure as a service (IaaS) implementation over
the past 5 years using Kitchenham’s SLR and are
expected to be grouped in a more structured way in
Figure 1 (Suryono, Purwandari, & Budi, 2019).
Figure 1: Methodology by Kitchenham.
3.1 Identification Requirement and
Organization of Review Protocol
It is categotized as the planning stage to search for
keywords of the problems, the research questions to
be submitted in this study is “What are the challenges
that have been proposed in the paper article that is
reviewed in the implementation infrastructure using
cloud computing in the education field?”
Meanwhile, the Review Protocol is used to map
keywords such as what will be used and not used in
the SLR that is done and this looks like in table 1.
Table 1: Research Question Structure.
Review Protocol Scope
Population cloud computing, education
filed
Intervention challenges, implication,
infrastructure
Comparison n/a
Outcome challenges of infrastructure
in cloud computing
3.2 Selection Database
The selection process can be shown in table 2. The
inclusion criteria are should be relevant with the
search keywords, written in English, published in
2015 2020, include all of education domain, contain
the impact or challenge of cloud computing, and
accesible. The exclusion criteria are articles that have
no relevance with the search keyword, not include
education domain, not contain the cloud computing
topics, not accessible, duplicate articles, and review
articles.
Table 2: Database Result.
Database
Initiation
Stage
1st Stage 2nd Stage
ACM
Digital
Library
915 120 14
Emerald
Insight
43 23 4
IEEE
Xplore
36 7 2
Science
Direct
83 55 10
Scopus 773 145 23
3.3 Measurement of Paper Quality
This paper quality test measurement is used to select
the final paper used as an analysis, this can be seen in
table 3.
Plannin
g
Im
p
lementation
Re
p
ort
1. Synthesis Data
1. Selection Database
2. Measurement of Paper Quality
3. Extraction Data
1. Identification Requirement of Systemmatic
Literatur Review (SLR)
2. Or
g
anization of Review Protocol
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352
Table 3: Article Quality Assessment Checklist.
Checklist Checklist Question
C1
Does the article describe the objectives of
the research clearly?
C2
Does the article provide literature review,
background, and context of the research?
C3
Does the article show related works from
previous studies in order to highlight the
main contributions of the research?
C4
Does the article explain the architecture of
the idea or method used?
C5 Does the article deliver results?
C6
Does the article produce relevant
conclusion with the objective of the
research?
C7
Does the article recommend future work or
improvement?
C8 Indexes (Q1/Q2/Q3/Q4/conf)
3.4 Extraction Data & Synthesis Data
Result of extraction data with summary and analysis
with implication or impact, challenges, and solution.
4 RESULTS & DISCUSSION
We reviewed the paper and determined the database
that we used, then qualified it. Table 4 showed the
resource and database we reviewed in the 2nd stage,
but we could not use them. The quality of articles
result with did not have 4.5 scores can be seen in table
5. For that purpose, an 8-item checklist on a five-point
scale:” not at all” (0), “very little” (0.25), “a little”
(0.5), “yes, but not adequate enough” (0.75), and
“adequately” (1). Therefore, the possible range of
scores is 0–8. We choose to include articles that
scored more than 4.5 for further analysis in Figure 2.
Table 4: Database and Paper Resource.
Database Resource Paper
Scopus (Peniak, Franekova, & Zolotova, 2016)
Scopus (X. He & Tian, 2017)
Scopus (Yong, Zhang, Chen, & Zhou, 2017)
Table 5: Article Quality Assesment Result.
Source 1 2 3 4 5 6 7 8 Total
(Peniak
et al.,
2016)
1 1 0 0 0 0,25 0,5 1 3,75
(X. He
& Tian,
2017)
1 1 0,5 0,5 0,25 0 0 1 4,25
(Yong
et al.,
2017)
1 1 0,25 0 0,25 0 0,25 1 3,75
We got total all of the documents with
Kitchenham methodology were 1850 for initiation
stage, 350 for 1st stage, and 53 for 2nd stage. This
final stage, we used as an analysis. There are 3
literatures which do not fulfill the requirements. The
techniques used in IaaS are convolutional neural
networks, genetic algorithms, SDN approaches,
LSTM-RNN networks, deep neural networks, cloud
e-learning for technology (CLEM), GPU accelerated
algorithm, CMBA, and SVM approach.
Figure 2: Requirement by Keyword.
After that, we collected the article which we done
with synthesis that development of infrastructure in
cloud computing as a service still has problems, such
as security can not accomodate maximal yet (no
backup), amount of the data used is greater, of course
server development increase by complex, and the cost
is expensive when using complex data because it
requires a lot of space.
Cloud computing has delivered services
efficiently (Ashouraie & Jafari Navimipour, 2015),
(Rao, Ma, & He, 2018), (Singh & Chen, 2019),
(Jayanetti & Buyya, 2019). Data centers application
(“challenges” or “issue”) and (“education” or
“university”) and (“cloud computing”) and
(“solution”) and (“infrastructure as a service”)
and (“storage” or “data center” or “network”)
Challenges of Infrastructure in Cloud Computing for Education Field: A Systemmatic Literature Review
353
play important role to support network diverse to
array of requirements from latency-sensitive
application such as web servers with a distributed
data processing and virtual machine live-migration
(Sharma, Javadi, Si, & Sun, 2017), (Chaufournier,
Ali-Eldin, Sharma, Shenoy, & Towsley, 2019). One
of algorithm such as PLBA and SVM algorithm can
be implemented (Hamza, Abderaouf, Abdelhak, &
Okba, 2017), (Gao & Yu, 2017). Another algorithm
like GPU for allocating virtual infrastructure in cloud
data centers can be handle large data center (Nesi,
Pillon, de Assunção, & Koslovski, 2018). The
technology of cloud computing virtualization
provides efficient resources for end users (Metwally,
Jarray, & Karmouch, 2015). The characteristics of
cloud computing include manageability, scalability
and availability (Jun, Jie, & DingHong, 2019),
(Allison, Turner, & Allen, 2015). Cloud computing
mainly provides three service delivery models and
one of the type’s IaaS (Shaik & Baskiyar, 2018).
There are several problems to be considered while
managing resources, such as, type of resource
required (physical/logical), allocation, brokering,
provisioning, mapping, adaptation and estimation
(Diouani & Medromi, 2019), (Alqahtany, Clarke,
Furnell, & Reich, 2016), (J. He & Zhang, 2017),
(Manvi & Krishna Shyam, 2014). Virtual machine
introspection (VMI) is a technique whereby an
observer can interact with a virtual machine client
from the outside through the hypervisor (Dykstra &
Sherman, 2012).
Capabilities complexity can be handled by the
traffic scheduling detection to fix the problem
(Yazidi, Abdi, & Feng, 2018). Many resources need
to build the architecture the cloud computing data
servers (Ataie et al., 2019). So, we can minimalized
the financial by concerned with acquiring broadband
connectivity to the cloud (Atiewi, Abuhussein, &
Saleh, 2018). The efficiency allocation cloud
computing also offers the usage of CPU core,
memory, and disk storage based on cloud providers
(Alshamrani, 2018). On the e-learning development,
the role of cloud computing about availability,
reliability, cost, flexibility, ease of use, and waiting
time must be considered (Yuvaraj, 2016). Because it
has the high influence and significant to teachers and
students who use it (Rajabion, Wakil, Badfar, Nazif,
& Ehsani, 2019).
Low cost computing can be integrated with web
services to optimum the cost (Yuvaraj, 2015). Private
cloud design still need (Makori, 2016), (E. A. Ahmed
& Ahmed, 2019). Configuration and availability can
be build by combination deep neural network (Chiba,
Abghour, Moussaid, omri], & Rida, 2019). There are
potential benefits of adopting cloud computing
technology in higher education institutions
(Tashkandi & Al-Jabri, 2015), (F. F. Ahmed, 2015),
such as Google Docs (Amron, Ibrahim, & Chuprat,
2017), (Farzai, Shirvani, & Rabbani, 2020) and
consultation services in addition to the cloud
solutions offered to higher education institutions
(Shorfuzzaman, Alelaiwi, Masud, Hassan, &
Hossain, 2015). Collaboration solutions,
infrastructure computing or virtual desktops solutions
(Couto et al., 2018) offers a shift from computing as
a product that is owned to as a service that is delivered
from large-scale data centers or clouds (Kumar,
Goomer, & Singh, 2018).
Cloud computing technology has revolutionized
to make the cost become effective and resource
efficient (Kertesz, Dombi, & Benyi, 2016), (Njenga
et al., 2019). The deployment of a data-intensive
application to a cloud poses a number of serious
challenges, mainly concerning the provider and
resources selection process, based on the Quality of
Service expected, as well as the management of the
Virtual Machines in the provider premises (Psychas
et al., 2020) and Control system can use by
mechatronics (Chao et al., 2015), (Cerroni et al.,
2015). Component failures within the cloud
infrastructure are common, but large cloud data
centres should be designed to guarantee a certain
level of availability to the business system (Cheng,
Cao, Yu, & Ma, 2017).
Cloud systems have a high failure rate because
they have many servers, which are geographically
dispersed and have a large workload (Patel, Patel, &
Patel, 2016). In order to ensure that cloud users can
use the service, the cloud infrastructure should be
designed so that their system downtime is minimal or
irrelevant. The latest advances in machine learning
and cloud storage provide an excellent opportunity to
take advantage of the large amounts of data generated
from cloud infrastructure, which provides room for
predicting when components may fail or fail (Peng &
Ho, 2018). Currently, mathematical and statistical
modelling are the prominent approaches used for
failure predictions, these are based on equipment
degradation, physical models and machine learning
techniques respectively (Mollajafari & Shahhoseini,
2016), (Mohammed et al., 2018), (Xu, Chen, &
Alcaraz Calero, 2017), (Chawki, Ahmed, & Zakariae,
2018).
To ensure the security of business-sensitive data
and information, organizations must understand the
type of cloud used (Vogel, Griebler, Maron, Schepke,
& Fernandes, 2016). In terms of data storage and
access security (Jain, Tyagi, & Kalra, 2016), (Rahouti
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354
& Xiong, 2019) or cloudStack (Abdulhamid, Abd
Latiff, Abdul-Salaam, & Madni, 2016). Regarding
optimization and cost minimization, we can also build
smartphones to release SDKs for Apple iOS or
Android (Ilyas, Khan, Saleem, & Alowibdi, 2019).
On a comprehensive basis, current technological
advancements play a key role in the development of
formal education by providing a variety of learning
delivery and communication modes that can meet the
needs of continuing education at low cost. Ultimately,
the issue of interest to decision makers is how to use
modern technology to attract distance learners to
participate in collaborative learning courses. In
addition, given the continuing need for universities to
build capacity to take advantage of technological and
teaching advances in the formal education sector.
Information security in the cloud is based on the
fact that no one can access client information from the
cloud, so they will not be able to understand the
essence of the information. These lines ensure
information security, which is the most important
prerequisite for cloud clients, and can actually avoid
hardware costs, and there is little understanding of
configuration software. When using cloud computing
in the education sector, transparency and audit control
are still not working optimally, so we need a system
that can use innovative technologies to read business
performance requirements.
5 CONCLUSION
The aim of this work was to present a comprehensive
overview of cloud computing implementation
research in the education field. A systemmatic review
has been conducted which included planning,
implementation, and reporting phases. Various
technique of cloud computing infrastructure as a
service implementation in education field have been
identified from 53 selected literatures. In this study
also identified the challenges, such as security, data
server complexity, and financial problems in
educational sector.
To take on these challenges, there are several
solutions are proposed, such as the selection of the
best technology approach for effective and efficient
use, regular and routine checks and backups, and
infrastructure management to manage as effectively
and efficiently as possible as needed. So that, the
costs incurred will be optimal.
However, the author only about technical aspects
such as security, complexity, or financial.
Meanwhile, non-technical aspects also need to be
considered (eg human factors). Development can
continue when people can have a lot of professional
experience for cloud computing adoption maximal.
So, the next study deeply discusses user interest and
user research on cloud computing issues.
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