Review and open research issues

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The rise of big dataon cloud computing: Review and open
research issues
Ibrahim Abaker Targio Hashem a,n, Ibrar Yaqoob a, Nor Badrul Anuar a,
Salimah Mokhtar
a, Abdullah Gani a, Samee Ullah Khan b
a Faculty of Computer Science and information Technology, University of Malaya, 50603 Kuala Lumpur, Malaysia
b NDSU-CIIT Green Computing and Communications Laboratory, North Dakota State University, Fargo, ND 58108, USA
a r t i c l e i n f o
Article history:
Received 11 June 2014
Received in revised form
22 July 2014
Accepted 24 July 2014
Recommended by: Prof. D. Shasha
Available online 10 August 2014
Keywords:
Big data
Cloud computing
Hadoop
a b s t r a c t
Cloud computing is a powerful technology to perform massive-scale and complex
computing. It eliminates the need to maintain expensive computing hardware, dedicated
space, and software. Massive growth in the scale of data or big data generated through
cloud computing has been observed. Addressing big data is a challenging and timedemanding task that requires a large computational infrastructure to ensure successful
data processing and analysis. The rise of big data in cloud computing is reviewed in this
study. The definition, characteristics, and classification of big data along with some
discussions on cloud computing are introduced. The relationship between big data and
cloud computing, big data storage systems, and Hadoop technology are also discussed.
Furthermore, research challenges are investigated, with focus on scalability, availability,
data integrity, data transformation, data quality, data heterogeneity, privacy, legal and
regulatory issues, and governance. Lastly, open research issues that require substantial
research efforts are summarized.
& 2014 Elsevier Ltd. All rights reserved.
Contents
1. Introduction . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 99
2. Definition and characteristics of big data. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 99
2.1. Classification of big data . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 100
3. Cloud computing . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 101
4. Relationship between cloud computing and big data . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 102
5. Case studies . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 104
5.1. Organization case Studies from vendors . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 104
5.1.1. A. SwiftKey. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 104
5.1.2. B. 343 Industries . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 105
5.1.3. C. redBus . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 105
5.1.4. D. Nokia . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 105
5.1.5. E. Alacer . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 105
Contents lists available at ScienceDirect
journal homepage: www.elsevier.com/locate/infosys
Information Systems
http://dx.doi.org/10.1016/j.is.2014.07.006
0306-4379/& 2014 Elsevier Ltd. All rights reserved.
n Corresponding author. Tel.: +60 173946811.
E-mail addresses: [email protected] (I.A.T. Hashem), [email protected] (I. Yaqoob), [email protected] (N.B. Anuar),
[email protected] (S. Mokhtar), [email protected] (A. Gani), [email protected] (S. Ullah Khan).
Information Systems 47 (2015) 98115
6. Big data storage system. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 106
7. Hadoop background . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 106
7.1. MapReduce in clouds . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 107
8. Research challenges. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 109
8.1. Scalability. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 109
8.2. Availability . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 109
8.3. Data integrity. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 110
8.4. Transformation . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 110
8.5. Data quality . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 110
8.6. Heterogeneity . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 111
8.7. Privacy . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 111
8.8. Legal/regulatory issues . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 111
8.9. Governance . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 112
9. Open research issues . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 112
9.1. Data staging . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 112
9.2. Distributed storage systems . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 112
9.3. Data analysis . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 112
9.4. Data security . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 112
10. Conclusion . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 113
Acknowledgment. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 113
References . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 113
1. Introduction
The continuous increase in the volume and detail of data
captured by organizations, such as the rise of social media,
Internet of Things (IoT), and multimedia, has produced an
overwhelming flow of data in either structured or unstructured format. Data creation is occurring at a record rate
[1],
referred to herein as big data, and has emerged as a widely
recognized trend. Big data is eliciting attention from the
academia, government, and industry. Big data are characterized by three aspects: (a) data are numerous, (b) data cannot
be categorized into regular relational databases, and (c) data
are generated, captured, and processed rapidly. Moreover,
big data is transforming healthcare, science, engineering,
finance, business, and eventually, the society. The advancements in data storage and mining technologies allow for the
preservation of increasing amounts of data described by a
change in the nature of data held by organizations
[2]. The
rate at which new data are being generated is staggering
[3].
A major challenge for researchers and practitioners is that
this growth rate exceeds their ability to design appropriate
cloud computing platforms for data analysis and update
intensive workloads.
Cloud computing is one of the most significant shifts in
modern ICT and service for enterprise applications and has
become a powerful architecture to perform large-scale and
complex computing. The advantages of cloud computing
include virtualized resources, parallel processing, security,
and data service integration with scalable data storage. Cloud
computing can not only minimize the cost and restriction for
automation and computerization by individuals and enterprises but can also provide reduced infrastructure maintenance cost, efficient management, and user access
[4]. As a
result of the said advantages, a number of applications that
leverage various cloud platforms have been developed and
resulted in a tremendous increase in the scale of data
generated and consumed by such applications. Some of the
first adopters of big data in cloud computing are users that
deployed Hadoop clusters in highly scalable and elastic
computing environments provided by vendors, such as
IBM, Microsoft Azure, and Amazon AWS
[5]. Virtualization
is one of the base technologies applicable to the implementation of cloud computing. The basis for many platform
attributes required to access, store, analyze, and manage
distributed computing components in a big data environment is achieved through virtualization.
Virtualization is a process of resource sharing and
isolation of underlying hardware to increase computer
resource utilization, efficiency, and scalability.
The goal of this study is to implement a comprehensive
investigation of the status of big data in cloud computing
environments and provide the definition, characteristics,
and classification of big data along with some discussions
on cloud computing. The relationship between big data
and cloud computing, big data storage systems, and
Hadoop technology are discussed. Furthermore, research
challenges are discussed, with focus on scalability, availability, data integrity, data transformation, data quality,
data heterogeneity, privacy, legal and regulatory issues,
and governance. Several open research issues that require
substantial research efforts are likewise summarized.
The rest of this paper is organized as follows.
Section 2
presents the definition, characteristics, and classification of
big data.
Section 3 provides an overview of cloud computing. The relationship between cloud computing and big
data is presented in
Section 4. Section 5 presents the
storage systems of big data.
Section 6 presents the Hadoop
background and MapReduce. Several issues, research challenges, and studies that have been conducted in the
domain of big data are reviewed in
Section 7. Section 8
provides a summary of current open research issues and
presents the conclusions.
Table 1 shows the list of abbreviations used in the paper.
2. Definition and characteristics of big data
Big data is a term utilized to refer to the increase in the
volume of data that are difficult to store, process, and analyze
I.A.T. Hashem et al. / Information Systems 47 (2015) 98115 99
through traditional database technologies. The nature of big
data is indistinct and involves considerable processes to
identify and translate the data into new insights. The term
big datais relatively new in IT and business. However,
several researchers and practitioners have utilized the term
in previous literature. For instance,
[6] referred to big data as
a large volume of scientific data for visualization. Several
definitions of big data currently exist. For instance,
[7]
defined big data as the amount of data just beyond
technology’s capability to store, manage, and process efficiently.
Meanwhile, [8] and [9] defined big data as characterized by three Vs: volume, variety, and velocity. The
terms volume, variety, and velocity were originally introduced by Gartner to describe the elements of big data
challenges. IDC also defined big data technologies as
a
new generation of technologies and architectures, designed
to economically extract value from very large volumes of a
wide variety of data, by enabling the high velocity capture,
discovery, and/or analysis.
[10] specified that big data is not
only characterized by the three Vs mentioned above but may
also extend to four Vs, namely, volume, variety, velocity, and
value (
Fig. 1, Fig. 2). This 4V definition is widely recognized
because it highlights the meaning and necessity of big data.
The following definition is proposed based on the abovementioned definitions and our observation and analysis of
the essence of big data.
Big data is a set of techniques and
technologies that require new forms of integration to uncover
large hidden values from large datasets that are diverse,
complex, and of a massive scale
.
(1)
Volume refers to the amount of all types of data
generated from different sources and continue to
expand. The benefit of gathering large amounts of data
includes the creation of hidden information and patterns
through data analysis. Laurila et al.
[11] provided a
unique collection of longitudinal data from smart mobile
devices and made this collection available to the research
community. The aforesaid initiative is called mobile data
challenge motivated by Nokia
[11]. Collecting longitudinal data requires considerable effort and underlying
investments. Nevertheless, such mobile data challenge
produced an interesting result similar to that in the
examination of the predictability of human behavior
patterns or means to share data based on human
mobility and visualization techniques for complex data.
(2)
Variety refers to the different types of data collected
via sensors, smartphones, or social networks. Such
data types include video, image, text, audio, and data
logs, in either structured or unstructured format. Most
of the data generated from mobile applications are in
unstructured format. For example, text messages,
online games, blogs, and social media generate different types of unstructured data through mobile devices
and sensors. Internet users also generate an extremely
diverse set of structured and unstructured data
[12].
(3)
Velocity refers to the speed of data transfer. The contents
of data constantly change because of the absorption of
complementary data collections, introduction of previously archived data or legacy collections, and streamed
data arriving from multiple sources
[9].
(4)
Value is the most important aspect of big data; it refers to
the process of discovering huge hidden values from large
datasets with various types and rapid generation
[13].
2.1. Classification of big data
Big data are classified into different categories to better
understand their characteristics.
Fig. 2 shows the numerous categories of big data. The classification is important
because of large-scale data in the cloud. The classification
is based on five aspects: (i) data sources, (ii) content
format, (iii) data stores, (iv) data staging, and (v) data
processing.
Each of these categories has its own characteristics and
complexities as described in
Table 2. Data sources include
internet data, sensing and all stores of transnational
information, ranges from unstructured to highly
Fig. 1. Four Vs of big data.
Table 1
List of abbreviations.
Abbreviations Full meaning

ACID Atomicity, Consistency, Isolation, Durability
ASF Apache Software Foundation
DAS Direct Attached Storage
Doc Document
DSMS Data Stream Management System
EC2 Amazon Elastic Compute Cloud
GFS Google File System
HDDs Hard Disk Drives
HDFS Hadoop Distributed File System
IaaS Infrastructure as a Service
ICT Information Communication Technology
IoT Internet of Things
IT Information Technology
JSON JavaScript Object Notation
KV Key Value
NAS Network Attached Storage
NoSQL Not Only SQL
OLM Online Lazy Migration
PaaS Platform as a Service
PDF Portable Document Format
RDBMS Relational Database Management System
SAN Storage Area Network
SQL Structured Query Language
SDLM Scientific Data Lifecycle Management
S3 Simple Storage Service
SaaS Software as a Service
URL Uniform Resource Locator
XML Extensible Markup Language

100 I.A.T. Hashem et al. / Information Systems 47 (2015) 98115
structured are stored in various formats. Most popular is
the relational database that come in a large number of
varieties
[29]. As the result of the wide variety of data
srouces, the captured data differ in zise with respect to
redundancy, consisteny and noise, etc.
3. Cloud computing
Cloud computing is a fast-growing technology that has
established itself in the next generation of IT industry and
business. Cloud computing promises reliable software,
hardware, and IaaS delivered over the Internet and remote
data centers
[30]. Cloud services have become a powerful
architecture to perform complex large-scale computing
tasks and span a range of IT functions from storage and
computation to database and application services. The
need to store, process, and analyze large amounts of
datasets has driven many organizations and individuals
to adopt cloud computing
[31]. A large number of scientific
applications for extensive experiments are currently
deployed in the cloud and may continue to increase
because of the lack of available computing facilities in
local servers, reduced capital costs, and increasing volume
of data produced and consumed by the experiments
[32].
In addition, cloud service providers have begun to integrate frameworks for parallel data processing in their
services to help users access cloud resources and deploy
their programs
[33].
Cloud computing
is a model for allowing ubiquitous,
convenient, and on-demand network access to a number of
configured computing resources (e.g., networks, server,
storage, application, and services) that can be rapidly
provisioned and released with minimal management effort
or service provider interaction
[34]. Cloud computing has a
number of favorable aspects to address the rapid growth of
economies and technological barriers. Cloud computing
provides total cost of ownership and allows organizations
to focus on the core business without worrying about
issues, such as infrastructure, flexibility, and availability of
resources
[35]. Moreover, combining the cloud computing
utility model and a rich set of computations, infrastructures,
and storage cloud services offers a highly attractive environment where scientists can perform their experiments
[36]. Cloud service models typically consist of PaaS, SaaS,
and IaaS.
 PaaS, such as Google’s Apps Engine, Salesforce.com,
Force platform, and Microsoft Azure, refers to different
resources operating on a cloud to provide platform
computing for end users.
 SaaS, such as Google Docs, Gmail, Salesforce.com, and
Online Payroll, refers to applications operating on a
remote cloud infrastructure offered by the cloud provider as services that can be accessed through the
Internet
[37].
 IaaS, such as Flexiscale and Amazon’s EC2, refers to
hardware equipment operating on a cloud provided by
service providers and used by end users upon demand.
The increasing popularity of wireless networks and
mobile devices has taken cloud computing to new heights
because of the limited processing capability, storage capacity, and battery lifetime of each device
[126]. This condition has led to the emergence of a mobile cloud computing
paradigm. Mobile cloud facilities allow users to outsource
tasks to external service providers. For example, data can
be processed and stored outside of a mobile device
[38].
Mobile cloud applications, such as Gmail, iCloud, and
Dropbox, have become prevalent recently. Juniper research
predicts that cloud-based mobile applications will increase
to approximately 9.5$ billion by 2014
[39]. Such applications improve mobile cloud performance and user experience. However, the limitations associated with wireless
networks and the intrinsic nature of mobile devices have
imposed computational and data storage restrictions
[
40,127].
Big Data classification
Data Stores Data Staging Data processing
Document-oriented
Graph based
Column-oriented
Batch
Real time
Content Format
Structured
Unstructured
Semi-structured
Data Sources
Sensing
Web & Social
Machine
Transactions
IoT
Cleaning
Transform
Normalization
Key-value
Fig. 2. Big data classification.
I.A.T. Hashem et al. / Information Systems 47 (2015) 98115 101
4. Relationship between cloud computing and big data
Cloud computing and big data are conjoined. Big data
provides users the ability to use commodity computing to
process distributed queries across multiple datasets and
return resultant sets in a timely manner. Cloud computing
provides the underlying engine through the use of
Hadoop, a class of distributed data-processing platforms.
The use of cloud computing in big data is shown in
Fig. 3.
Large data sources from the cloud and Web are stored in a
distributed fault-tolerant database and processed through
a programing model for large datasets with a parallel
distributed algorithm in a cluster. The main purpose of
data visualization, as shown in
Fig. 3, is to view analytical
results presented visually through different graphs for
decision making.
Big data utilizes distributed storage technology based on
cloud computing rather than local storage attached to a
computer or electronic device. Big data evaluation is driven
by fast-growing cloud-based applications developed using
Table 2
Various categories of big data.
Classification Description
Data sources
Social media Social media is the source of information generated via URL to share or exchange information and ideas in virtual communities
and networks, such as collaborative projects, blogs and microblogs, Facebook, and Twitter.
Machine-generated
data
Machine data are information automatically generated from a hardware or software, such as computers, medical devices, or
other machines, without human intervention.
Sensing Several sensing devices exist to measure physical quantities and change them into signals.
Transactions Transaction data, such as financial and work data, comprise an event that involves a time dimension to describe the data.
IoT IoT represents a set of objects that are uniquely identifiable as a part of the Internet. These objects include smartphones, digital
cameras, and tablets. When these devices connect with one another over the Internet, they enable more smart processes and
services that support basic, economic, environmental, and health needs. A large number of devices connected to the Internet
provides many types of services and produces huge amounts of data and information
[14].
Content format
Structured Structured data are often managed SQL, a programming language created for managing and querying data in RDBMS.
Structured data are easy to input, query, store, and analyze. Examples of structured data include numbers, words, and dates.
Semi-structured Semi-structured data are data that do not follow a conventional database system. Semi-structured data may be in the form of
structured data that are not organized in relational database models, such as tables. Capturing semi-structured data for analysis
is different from capturing a fixed file format. Therefore, capturing semi-structured data requires the use of complex rules that
dynamically decide the next process after capturing the data
[15].
Unstructured Unstructured data, such as text messages, location information, videos, and social media data, are data that do not follow a
specified format. Considering that the size of this type of data continues to increase through the use of smartphones, the need
to analyze and understand such data has become a challenge.
Data stores
Document-oriented Document-oriented data stores are mainly designed to store and retrieve collections of documents or information and support
complex data forms in several standard formats, such as JSON, XML, and binary forms (e.g., PDF and MS Word). A documentoriented data store is similar to a record or row in a relational database but is more flexible and can retrieve documents based
on their contents (e.g., MongoDB, SimpleDB, and CouchDB).
Column-oriented A column-oriented database stores its content in columns aside from rows, with attribute values belonging to the same column
stored contiguously. Column-oriented is different from classical database systems that store entire rows one after the other
[16], such as BigTable [17].
Graph database A graph database, such as Neo4j, is designed to store and represent data that utilize a graph model with nodes, edges, and
properties related to one another through relations
[18].
Key-value Key-value is an alternative relational database system that stores and accesses data designed to scale to a very large size
[19].
Dynamo
[20] is a good example of a highly available key-value storage system; it is used by amazon.com in some of its services.
Similarly,
[21] proposed a scalable key-value store to support transactional multi-key access using a single key access supported
by key-value for use in G-store designs.
[22] presented a scalable clustering method to perform a large task in datasets. Other
examples of key-value stores are Apache Hbase
[23], Apache Cassandra [24], and Voldemort. Hbase uses HDFS, an open-source
version of Google’s BigTable built on Cassandra. Hbase stores data into tables, rows, and cells. Rows are sorted by row key, and
each cell in a table is specified by a row key, a column key, and a version, with the content contained as an un-interpreted array
of bytes.
Data staging
Cleaning Cleaning is the process of identifying incomplete and unreasonable data [25].
Transform Transform is the process of transforming data into a form suitable for analysis.
Normalization Normalization is the method of structuring database schema to minimize redundancy
[26].
Data processing
Batch MapReduce-based systems have been adopted by many organizations in the past few years for long-running batch jobs [27].
Such system allows for the scaling of applications across large clusters of machines comprising thousands of nodes.
Real time One of the most famous and powerful real time process-based big data tools is simple scalable streaming system (S4)
[28]. S4 is
a distributed computing platform that allows programmers to conveniently develop applications for processing continuous
unbounded streams of data. S4 is a scalable, partially fault tolerant, general purpose, and pluggable platform.
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virtualized technologies. Therefore, cloud computing not
only provides facilities for the computation and processing
of big data but also serves as a service model.
Table 3 shows
the comparison of several big data cloud providers.
Talia
[41] discussed the complexity and variety of data
types and processing power to perform analysis on large
datasets. The author stated that cloud computing infrastructure can serve as an effective platform to address
the data storage required to perform big data analysis.
Cloud computing is correlated with a new pattern for the
provision of computing infrastructure and big data processing method for all types of resources available in the
cloud through data analysis. Several cloud-based technologies have to cope with this new environment because
dealing with big data for concurrent processing has
become increasingly complicated
[42]. MapReduce [43] is
a good example of big data processing in a cloud environment; it allows for the processing of large amounts of
datasets stored in parallel in the cluster. Cluster computing
exhibits good performance in distributed system environments, such as computer power, storage, and network
communications. Likewise, Bollier and Firestone
[44]
emphasized the ability of cluster computing to provide a
hospitable context for data growth. However, Miller
[45]
argued that the lack of data availability is expensive
because users offload more decisions to analytical methods; incorrect use of the methods or inherent weaknesses
in the methods may produce wrong and costly decisions.
DBMSs are considered a part of the current cloud computing architecture and play an important role to ensure the
easy transition of applications from old enterprise infrastructures to new cloud infrastructure architectures. The
pressure for organizations to quickly adopt and implement
technologies, such as cloud computing, to address the
challenge of big data storage and processing demands
entails unexpected risks and consequences.
Table 4 presents several related studies that deal with
big data through the use of cloud computing technology.
The table provides a general overview of big data and
cloud computing technologies based on the area of study
and current challenges, techniques, and technologies that
restrict big data and cloud computing.
Data sources
Storage
Web
Programming model for processing large data
sets with a parallel, distributed algorithm on a
cluster like MapReduce.
Query Engine e.g. Hive, Mahout
Distributed configuration and
synchronization service
Analytics/Reports
Decision making
APIs
Data visualization
Hadoop Distributed File System (HDFS)
Distributed fault tolerant database for large
unstructured data sets like NOSQL.
Fig. 3. Cloud computing usage in big data.
Table 3
Comparison of several big data cloud platforms.
Google Microsoft Amazon Cloudera
Big data storage Google cloud services Azure S3
MapReduce AppEngine Hadoop on Azure Elastic MapReduce (Hadoop) MapReduce YARN
Big data analytics BigQuery Hadoop on Azure Elastic MapReduce (Hadoop) Elastic MapReduce (Hadoop)
Relational database Cloud SQL SQL Azure MySQL or Oracle MySQL, Oracle, PostgreSQL
NoSQL database AppEngine Datastore Table storage DynamoDB Apache Accumulo
Streaming processing Search API Streaminsight Nothing prepackaged Apache Spark
Machine learning Prediction API Hadoop
þMahout HadoopþMahout HadoopþOryx
Data import Network Network Network Network
Data sources A few sample datasets Windows Azure marketplace Public Datasets Public Datasets
Availability Some services in private beta Some services in private beta Public production Industries
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5. Case studies
Our discussion on the relationship between big data
and cloud computing is complemented by reported case
studies on big data using cloud computing technology.
Our discussion of the case studies was divided into two
parts. The first part describes a number of reported case
studies provided by different vendors who integrate big
data technologies into their cloud environment. The second part describes a number of case studies that have been
published by scholarly/academic sources.
5.1. Organization case Studies from vendors
Customer case studies from vendors, such as Google,
Amazon, and Microsoft, were obtained. These case studies
show the use of cloud computing technologies in big data
analytics and in managing the increasing volume, variety,
and velocity of digital information. We selected this
collection of five cases because they demonstrate the
extensive variety of research communities that use cloud
computing.
Table 5 summarizes the case studies of big
data implemented by using existing cloud computing
platforms.
5.1.1. A. SwiftKey
SwiftKey is a language technology founded in London
in 2008. This language technology aids touchscreen typing
by providing personalized predictions and corrections. The
company collects and analyzes terabytes of data to create
language models for many active users. Thus, the company
needs a highly scalable, multilayered model system that
can keep pace with steadily increasing demand and that
has a powerful processing engine for the artificial intelligence technology used in prediction generation. To
achieve its goals, the company uses Apatche Hadoop
Table 5
Summary of Organization case studies from Vendors.
Case Business needs Cloud service models Big data solution Assessment Reference
SwiftKey Language technology IaaS Amazon Elastic MapReduce Success [59]
343 Industries Video game developer IaaS Apache Hadoop Success [60]
redBus Online travel agency IaaS, PaaS BigQuery Success [61]
Nokia Mobile communications IaaS Apache Hadoop, Enterprise Data Warehouse Success [62]
Alacer Big data solution IaaS Big data algorithms Success [63]
Table 4
Several related studies that deal with big data through the use of cloud computing technology.
Reference Title of paper Objectives
[46] Data quality management, data usage experience and
acquisition intention of big data analytics

To propose a model for the acquisition intention of big data analytics
[47] Big Data Analytics Framework for Peer-to-Peer Botnet
Detection Using Random Forests

To develop open-source tools, such as Hadoop, to provide a scalable
implementation of a quasi-real-time intrusion detection system
[48] MERRA Analytic Services: Meeting the Big Data Challenges of
Climate4 Science through Cloud-enabled Climate Analytics-as-aService

To address big data challenges in climate science
[49] System of Systems and Big Data Analytics Bridging the GapTo demonstrate the construction of a bridge between System of
Systems and Data Analytics to develop reliable models
[50] Symbioses of Big Data and Cloud Computing: Opportunities &
Challenges

To highlight big data opportunity
[51] A Special Issue of Journal of Parallel and Distributed Computing:
Scalable Systems for Big Data Management and Analytics

To address special issues in big data management and analytics
[52] Smarter fraud investigations with big data analyticsTo investigate smarter fraud with big data analytics
[53] Moving Big Data to the Cloud: An Online Cost-Minimizing
Approach
To upload data into the cloud from different geographical locations
with minimum cost of data migration. Two algorithms (OLM, RFHC)
are proposed. These algorithms provide optimization for data
aggregation and processing and a route for data.
[54] Leveraging the capabilities of service-oriented decision
support systems: putting analytics and big data in cloud

To propose a framework for decision support systems in a cloud
[32] Cloud Computing and Scientific Applications Big Data,
Scalable Analytics, and Beyond

To review some of the papers published in Cloud Computing and
Scientific Applications (CCSA2012) event
[41] Clouds for Scalable Big Data AnalyticsTo discuss the use of cloud for scalable big data analytics
[55] Cloud Computing Availability: Multi-clouds for Big Data
Service

To overcome the issue of single cloud
[56] Adapting scientific computing problems to clouds using
MapReduce

To review the challenges of reducing the number of iterative
algorithms in the MapReduce model
[57] p-PIC: Parallel Power Iteration Clustering for Big Data;
Journal of Parallel and Distributed Computing
To explore different parallelization strategies
[58] Cloud and heterogeneous computing solutions exist today for
the emerging big data problems in biology

To review cloud and heterogeneous computing solutions existing
today for the emerging big data problem in biology
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running on Amazon Simple Storage Service and Amazon
Elastic Compute Cloud to manage the processing of multiple terabytes of data. By using this new solution, SwiftKey
is able to scale services on demand during peak time.
5.1.2. B. 343 Industries
The Halo is science fiction media franchise that has
grown into a global entertainment phenomenon. More
than 50 million copies of the Halo video games have been
sold worldwide. Before launching Halo 4, the developers
analyzed data to obtain insights into player preferences
and online tournaments. To complete this task, the team
used Windows Azure HDInsight Service, which is based on
the Apache Hadoop big data framework. The team was
able to provide game statistics to tournament operators,
which used the data to rank players based on game play,
by using HDInsight Service to process and analyze raw
data from Windows Azure. The team also used HDInsight
Service to update Halo 4 every week and to support daily
e-mail campaigns designed to increase player retention.
Organizations can also utilize data to make prompt business decisions.
5.1.3. C. redBus
The online travel agency redBus introduced Internet
bus ticketing in India in 2006, thus unifying tens of
thousands of bus schedules into a single booking operation. The company needed a powerful tool to analyze
inventory and booking data across their system of hundreds of bus operators serving more than 10,000 routes.
They considered using clusters of Hadoop servers to
process the data but decided that the system would take
considerable time and resources to maintain. Furthermore,
the use of clusters of Hadoop servers would not provide
the lightning-fast analysis needed by the company. Thus,
redBus implemented GoogleQuery to analyze large datasets by using the Google data processing infrastructure.
The insights rapidly gained through BigQuery have made
redBus a strong company. By minimizing the time needed
for staff members to solve technical problems, BigQuery
helps improve customer service and reduce lost sales.
5.1.4. D. Nokia
Nokia is a mobile communications company whose
products comes to be an integral part of the people live.
Many people around the world use Nokia mobile phones
to communicate, capture photos and share experiences.
Thus, Nokia gathers and analyzes large amounts of data
from mobile phones. However, in order to support its
extensive use of big data, Nokia relies on a technology
ecosystem that includes a Teradata Enterprise Data Warehouse, numerous Oracle and MySQL data marts, visualization technologies, and Hadoop. Nokia has over 100
terabytes of structured data on Teradata and petabytes of
multistructured data on the Hadoop Distributed File System (HDFS). The HDFS data warehouse allows the storage
of all semi/multistructured data and offers data processing
at the petabyte scale.
5.1.5. E. Alacer
An online retailer was experiencing revenue leakage
because of unreliable real-time notifications of service
problems within its cloud-based e-commerce platform.
Alacer used big data algorithms to create a cloud monitoring system that delivers reactive and proactive notifications. By using cloud computing with Alacer’s monitoring
platform, the incident response time was reduced from
one hour to seconds, thus dramatically improving customer satisfaction and eliminating service level agreement
penalties.
5.1.5.1. Case studies from scholarly/academic sources. The
following case studies provide recent example of how
researchers have used cloud computing technology for
their big data projects.
Table 6 details the five case report
studies which explored the use of cloud for big data.
5.1.5.2. Case study 1: cloud computing in genome informatics. Reid et al. [64] have investigated the growth of
next-generation sequencing data in laboratories and hospitals.
This growth has shifted the bottleneck in clinical genetics
from DNA sequence production to DNA sequence analysis.
However, accurate and reproducible genomic results at a scale
ranging from individuals to large cohorts should be provided.
They developed a Mercury analysis pipeline and deployed it
in the Amazon web service cloud via the DNAnexus platform.
Thus, they established a powerful combination of a robust and
fully validated software pipeline and a scalable computational
resource that have been applied to more than 10,000 whole
genome and whole exome samples.
5.1.5.3. Case study 2: mining Twitter in the cloud. Noordhuis
et al.
[65] used cloud computing to analyze of large
amounts of data on Twitter. The author applied the
PageRank algorithm on the Twitter user base to obtain
user rankings. The Amazon cloud infrastructure was used
to host all related computations. Computations were
conducted in a two-phase process: in the crawling phase,
all data were retrieved from Twitter. In the processing
phase, the PageRank algorithm was applied to compute
the acquired data. During the crawling stage, the author
web crawled a graph containing 50 million nodes and 1.8
billion edges, which is approximately two-thirds of the
estimated user base of Twitter. Thus, a relatively cheap
solution for data acquisition and analysis is implemented
by using the Amazon cloud infrastructure.
5.1.5.4. Case study 3: scientific data processing. Zhang et al.
[66] developed a Hadoop-based cloud computing application that processes sequences of microscopic images of
lives cells by using MATLAB. The project was a collaboration
between groups in Genome Quebec/McGill University in
Montreal and at the University of Waterloo. The goal was
to study the complex molecular interactions that regulate
biological systems. The application, which was built on the
basis of Hadoop, allows users to submit data processing
jobs in the cloud. The authors used a homogeneous cluster
to conduct initial system development and proof-of-concept
tests. The cluster comprises 21 Sun Fire X4100 servers with
I.A.T. Hashem et al. / Information Systems 47 (2015) 98115 105
two dual-core AMD Opteron 280 CPUs interconnected by
gigabit Ethernet.
5.1.5.5. Case study 4: failure scenario as a service (FSaaS) for
Hadoop Clusters.
Faghri et al. [67] have created a series of
failure scenarios on a Amazon cloud computing platform
to provide Hadoop service with the means to test their
applications against the risk of massive failure. They
developed a set failure scenarios for Hadoop clusters
with 10 Amazon web service EC2 machines. These types
of failures could happen inside Hadoop jobs include
CPU intensive, namely I/O-intensive and network-intensive.
Thus, running such scenario against Hadoop applications
can help to identify failure vulnerabilities in these applications.
6. Big data storage system
The rapid growth of data has restricted the capability of
existing storage technologies to store and manage data.
Over the past few years, traditional storage systems have
been utilized to store data through structured RDBMS
[13].
However, almost storage systems have limitations and are
inapplicable to the storage and management of big data.
A storage architecture that can be accessed in a highly
efficient manner while achieving availability and reliability
is required to store and manage large datasets. The storage
media currently employed in enterprises are discussed and
compared in
Table 7.
Several storage technologies have been developed to
meet the demands of massive data. Existing technologies
can be classified as direct attached storage (DAS), network
attached storage (NAS), and storage area network (SAN). In
DAS, various hard disk drives (HDDs) are directly connected to the servers. Each HDD receives a certain amount
of input/output (I/O) resource, which is managed by
individual applications. Therefore, DAS is suitable only
for servers that are interconnected on a small scale. Given
the aforesaid low scalability, storage capacity is increased
but expandability and upgradeability are limited significantly. NAS is a storage device that supports a network.
NAS is connected directly to a network through a switch or
hub via TCP/IP protocols. In NAS, data are transferred as
files. Given that the NAS server can indirectly access a
storage device through networks, the I/O burden on a NAS
server is significantly lighter than that on a DAS server.
NAS can orient networks, particularly scalable and
bandwidth-intensive networks. Such networks include
high-speed networks of optical-fiber connections. The
SAN system of data storage is independent with respect
to storage on the local area network (LAN). Multipath data
switching is conducted among internal nodes to maximize
data management and sharing. The organizational systems
of data storages (DAS, NAS, and SAN) can be divided into
three parts: (i) disc array, where the foundation of a
storage system provides the fundamental guarantee, (ii)
connection and network subsystems, which connect one
or more disc arrays and servers, and (iii) storage management software, which oversees data sharing, storage
management, and disaster recovery tasks for multiple
servers.
7. Hadoop background
Hadoop [73] is an open-source Apache Software Foundation project written in Java that enables the distributed
processing of large datasets across clusters of commodity.
Hadoop has two primary components, namely, HDFS and
MapReduce programming framework. The most significant feature of Hadoop is that HDFS and MapReduce
are closely related to each other; each are co-deployed
such that a single cluster is produced
[73]. Therefore, the
storage system is not physically separated from the processing system.
Table 6
Summary of case studies from scholarly/academic sources.
Case Situation/context Objective Approach Result
1 Massively parallel DNA
sequencing generates
staggering amounts of data.
To provide accurate and
reproducible genomic results at
a scale ranging from individuals
to large cohorts.
Develop a Mercury analysis
pipeline and deploy it in the
Amazon web service cloud via
the DNAnexus platform.
Established a powerful
combination of a robust and
fully validated software
pipeline and a scalable
computational resource that
have been applied to more
than 10,000 whole genome
and whole exome samples.
2 Given that conducting analyses
on large social networks such
as Twitter requires
considerable resources because
of the large amounts of data
involved, such activities are
usually expensive.
To use cloud services as a
possible solution for the
analysis of large amounts of
data.
Use PageRank algorithm on the
Twitter user base to obtain user
rankings. Use the Amazon
cloud infrastructure to host all
related computations.
Implemented a relatively
cheap solution for data
acquisition and analysis by
using the Amazon cloud
infrastructure.
3 To study the complex
molecular interactions that
regulate biological systems.
To develop a Hadoop-based
cloud computing application
that processes sequences of
microscopic images of live cells.
Use Hadoop cloud computing
framework.
Allows users to submit data
processing jobs in the cloud
4 Applications running on cloud
computing likely may fail.
Design a failure scenario Create a series of failure
scenarios on a Amazon cloud
computing platform
Help to identify failure
vulnerabilities in Hadoop
applications running in cloud.
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HDFS [74] is a distributed file system designed to run
on top of the local file systems of the cluster nodes and
store extremely large files suitable for streaming data
access. HDFS is highly fault tolerant and can scale up from
a single server to thousands of machines, each offering
local computation and storage. HDFS consists of two types
of nodes, namely, a namenode called
masterand several
datanodes called
slaves.HDFS can also include secondary
namenodes. The namenode manages the hierarchy of file
systems and director namespace (i.e., metadata). File
systems are presented in a form of namenode that registers attributes, such as access time, modification, permission, and disk space quotas. The file content is split into
large blocks, and each block of the file is independently
replicated across datanodes for redundancy and to periodically send a report of all existing blocks to the
namenode.
MapReduce
[43] is a simplified programming model for
processing large numbers of datasets pioneered by Google
for data-intensive applications. The MapReduce model was
developed based on GFS
[75] and is adopted through
open-source Hadoop implementation, which was popularized by Yahoo. Apart from the MapReduce framework,
several other current open-source Apache projects are
related to the Hadoop ecosystem, including Hive, Hbase,
Mahout, Pig, Zookeeper, Spark, and Avro. Twister
[76]
provides support for efficient and iterative MapReduce
computations. An overview of current MapReduce projects
and related software is shown in
Table 9. MapReduce
allows an unexperienced programmer to develop parallel
programs and create a program capable of using computers in a cloud. In most cases, programmers are required to
specify two functions only: the map function (mapper)
and the reduce function (reducer) commonly utilized in
functional programming. The mapper regards the key/
value pair as input and generates intermediate key/value
pairs. The reducer merges all the pairs associated with the
same (intermediate) key and then generates an output.
Table 8 summarizes the process of the map/reduce function.
The map function is applied to each input (key1,
value1), where the input domain is different from the
generated output pairs list (key2, value2). The elements of
the list (key2, value2) are then grouped by a key. After
grouping, the list (key2, value2) is divided into several lists
[key2, list (value2)], and the reduce function is applied to
each [key2, list (value2)] to generate a final result list
(key3, value3).
7.1. MapReduce in clouds
MapReduce accelerates the processing of large amounts
of data in a cloud; thus, MapReduce, is the preferred
computation model of cloud providers
[86]. MapReduce
is a popular cloud computing framework that robotically performs scalable distributed applications
[56] and
provides an interface that allows for parallelization and
distributed computing in a cluster of servers
[12]. Srirama
Table 8
Summary of the process of the map/reduce function.
Mapper (key1, value1)
List [(key2, value2)]
Reducer [key2, list (value2)]
List (key3, value3)
Table 7
Comparison of storage media.
Storage type Specific use Advantages Limitations Reference
Hard drives To store data up to four
terabytes
Density, cost per bit storage, and speedy
start up that may only take several seconds
Require special cooling and
high read latency time; the
spinning of the platters can
sometimes result in vibration
and produce more heat than
solid state memory
[68]
Solid-state
memory
To store data up to two
terabytes
Fast access to data, fast movement of huge
quantities of data, start-up time only takes
several milliseconds, no vibration, and
produces less heat than hard drives
Ten times more expensive than
hard drives in terms of per
gigabyte capacity
[69]
Object storage To store data as
variable-size objects
rather than fixed-size
blocks
Scales with ease to find information and
has a unique identifier to identify data
objects; ensures security because
information on physical location cannot be
obtained from disk drives; supports
indexing access
Complexity in tracking indices.
[70]
Optical storage To store data at
different angles
throughout the storage
medium
Least expensive removable storage medium Complex; its ability to produce
multiple optical disks in a
single unit is yet to be proven
[71]
Cloud storage To serve as a
provisioning and
storage model and
provide on-demand
access to services, such
as storage
Useful for small organizations that do not
have sufficient storage capacity; cloud
storage can store large amounts of data, but
its services are billable
Security is the primary
challenge because of data
outsourcing
[72]
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et al. [56] presented an approach to apply scientific
computing problems to the MapReduce framework where
scientists can efficiently utilize existing resources in the
cloud to solve computationally large-scale scientific data.
Currently, many alternative solutions are available to
deploy MapReduce in cloud environments; these solutions
include using cloud MapReduce runtimes that maximize
cloud infrastructure services, using MapReduce as a service, or setting up one’s own MapReduce cluster in cloud
instances
[87]. Several strategies have been proposed to
improve the performance of big data processing. Moreover, effort has been exerted to develop SQL interfaces in
the MapReduce framework to assist programmers who
prefer to use SQL as a high-level language to express their
task while leaving all of the execution optimization details
to the backend engine
[88]. Table 10 shows a summary of
several SQL interfaces in the MapReduce framework available in existing literature.
Table 10
Summary of several SQL interfaces in the MapReduce framework in related literature.
Author(s) Title of paper Result/techniques/algorithm Objective/description
[89] Jaql: A scripting language for large scale
semi-structured data analysis

Jaql Declarative query language designed for
JavaScript Object Notation
[90] Tenzing an SQL implementation in the
MapReduce framework

Tenzing An SQL query execution engine
[91] HadoopDB: an architectural hybrid of
MapReduce and DBMS technologies for
analytical workloads

HadoopDB Comparison between Hadoop
implementation of MapReduce
framework and parallel SQL database
management systems
[92] SQL/MapReduce: A practical approach to
self-describing, polymorphic, and
parallelizable user-defined functions

SQL/MapReduce Provides a parallel computation of
procedural functions across hundreds of
servers working together as a single
relational database
[77] Hive – A Warehousing Solution Over a
Map-Reduce Framework

Data summarization and ad hoc
querying
Presents an open-source warehouse
Hive solution built on top of Hadoop
[80] Pig latin: a not-so-foreign language for
data processing

Pig Latin The software takes a middle position
between expressing tasks using the
high-level declarative querying model
in the spirit of SQL and the low-level/
procedural programming model using
MapReduce
[93] Interpreting the data: Parallel analysis
with Sawzall

Sawzall Sawzall defines the operations to be
performed in a single record of the data
used at Google on top of MapReduce
Table 9
Current MapReduce projects and related software.
Reference Software Brief description
[77] Hive Hive offers a warehouse structure in HDFS
[78] Hbase Scalable distributed database that supports structured data storage for large tables
[79] MadoutTM Mahout is a machine-learning and data-mining library that has four main groups: collective filtering,
categorization, clustering, and parallel frequent pattern mining; compared with other pre-existing
algorithms, the Mahout library belongs to the subset that can be executed in a distributed mode and is
executable by MapReduce
[80] Pig Pig framework involves a high-level scripting language (Pig Latin) and offers a run-time platform that
allows users to execute MapReduce on Hadoop
[81] ZookeeperTM High-performance service to coordinate the processes of distributed applications; ZooKeeper allows
distributed processes to manage and contribute to one another through a shared hierarchical namespace of
data registers (z-nodes) similar to a file system; ZooKeeper is a distributed service with
master and slave
nodes and stores configuration information
[82] SparkTM A fast and general computation engine for Hadoop data
[83] Chukwa Chukwa has just passed its development stage; it is a data collection and analysis framework incorporated
with MapReduce and HDFS; the workflow of Chukwa allows for data collection from distributed systems,
data processing, and data storage in Hadoop; as an independent module, Chukwa is included in the Apache
Hadoop distribution
[76] TwisterTM Provides support for iterative MapReduce computations and Twister; extremely faster than Hadoop
MAPR Comprehensive distribution processing for Apache Hadoop and Hbase
YARN A new Apache
HadoopMapReduce framework
[84] Cassandra A scalable multi-master database with no single point of failure
[85] Avro The tasks performed by Avro include data serialization, remote procedure calls, and data passing from one
program or language to another; in the Avro framework, data are self-describing and are always stored with
their own schema; this software is suitable for application to scripting language, such as Pig, because of
these qualities.
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8. Research challenges
Although cloud computing has been broadly accepted
by many organizations, research on big data in the cloud
remains in its early stages. Several existing issues have not
been fully addressed. Moreover, new challenges continue
to emerge from applications by organization. In the subsequent sections, some of the key research challenges,
such as scalability, availability, data integrity, data transformation, data quality, data heterogeneity, privacy and
legal issues, and regulatory governance, are discussed.
8.1. Scalability
Scalability is the ability of the storage to handle
increasing amounts of data in an appropriate manner.
Scalable distributed data storage systems have been a
critical part of cloud computing infrastructures
[34]. The
lack of cloud computing features to support RDBMSs
associated with enterprise solutions has made RDBMSs
less attractive for the deployment of large-scale applications in the cloud. This drawback has resulted in the
popularity of NoSQL
[94].
A NoSQL database provides the mechanism to store and
retrieve large volumes of distributed data. The features of
NoSQL databases include schema-free, easy replication
support, simple API, and consistent and flexible modes.
Different types of NoSQL databases, such as key-value
[21],
column-oriented, and document-oriented, provide support
for big data.
Table 11 shows a comparison of various
NoSQL database technologies that provide support for
large datasets.
The characteristics of scalable data storage in a cloud
environment are shown in
Table 12. Yan et al. [57]
attempted to expend power iteration clustering (PIC) data
scalability by implementing parallel power iteration
clustering (p-PIC). The implementation considers two key
components, namely, similarity matrix calculation and
normalization and iterative matrix
vector multiplication.
The process begins with the master processor indicating
the beginning and ending indices for the remote data
chunk. Therefore, each processor reads data from the input
file and provides a similarity sub-matrix by performing the
following calculation.
Ai ðr; cÞ ¼ J xr Jx2r:xJcxc J 2, where rac//from the input [57]
Ai ðr; : Þ ¼ Ai ðr; : Þ=
c
Ai ðr; cÞ//normalizes by row sum [57]
The master processor collects all row runs from the
other processors and concatenates them into an overall
row sum. Each processor that interacts with the main
processor updates its vector by performing matrix
vector
multiplication.
Wang et al.
[95] proposed a new scalable data cube
analysis technique called HaCube in big data clusters to
overcome the challenges of large-scale data. HaCube is an
extension of MapReduce; it incorporates some of MapReduce’s features, such as scalability and parallel DBMS. The
experimental results provided in the study indicated that
HaCube performs at least 1.6
 to 2.8  faster than
Hadoop in terms of view maintenance. However, some
improvements in performance, such as integrating more
techniques from DBMS (e.g., indexing techniques), are still
required.
8.2. Availability
Availability refers to the resources of the system accessible on demand by an authorized individual [98]. In a
cloud environment, one of the main issues concerning
cloud service providers is the availability of the data stored
in the cloud. For example, one of the pressing demands on
cloud service providers is to effectively serve the needs of
the mobile user who requires single or multiple data
Table 11
Comparison of NoSQL databases.
Feature/
capability
NoSQL database name
DynamoDB Redis Voldemort Cassandra Hbase MangoDB SimpleDB CouchDB BigTable Apache
Jackrabbit

KV Doc
2010
2009

 

CO Doc
2005
2010

Consistency N/A N/A N/A N/A N/A Partition
Tolerance
N/A
✓ ✓ ✓ ✓ ✓ N/A ✓ ✓ N/A
Persistence
✓ ✓ ✓ ✓ ✓ ✓ ✓ N/A ✓ ✓
High
Availability
✓ ✓ ✓ ✓ ✓ ✓ ✓ N/A ✓ ✓

Durability
Scalability

High

High

High

High

High

High

High

High

High

High
Performance
Schema-free
High
High
High
High
High
High
High
High
High
High

Programming
Language
Java Ansi-C Java Java Java C
þ þ Erlang Erlang C, Cþ þ Java
Platform Linux Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS X
Windows,
Linux, OS
Open Source X


Salvatore

LinkedIn

ASF

ASF

10gen

Amazon

ASF

Google

Apache

Sanfilippo

ASF¼Apache Software Foundation, Doc¼Document, KV¼Key-Value, N/A¼No Answer, ¼Support, ¼Not support.
I.A.T. Hashem et al. / Information Systems 47 (2015) 98115 109
within a short amount of time. Therefore, services must
remain operational even in the case of a security breach
[98]. In addition, with the increasing number of cloud
users, cloud service providers must address the issue of
making the requested data available to users to deliver
high-quality services. Lee et al.
[55] introduced a multicloud model called rain cloudsto support big data
exploitation.
Rain cloudsinvolves cooperation among
single clouds to provide accessible resources in an emergency. Schroeck et al.
[99] predicted that the demand for
more real time access to data may continue to increase as
business models evolve and organizations invest in technologies required for streaming data and smartphones.
8.3. Data integrity
A key aspect of big data security is integrity. Integrity
means that data can be modified only by authorized
parties or the data owner to prevent misuse. The proliferation of cloud-based applications provides users the
opportunity to store and manage their data in cloud data
centers. Such applications must ensure data integrity.
However, one of the main challenges that must be
addressed is to ensure the correctness of user data in the
cloud. Given that users may not be physically able to
access the data, the cloud should provide a mechanism
for the user to check whether the data is maintained
[100].
8.4. Transformation
Transforming data into a form suitable for analysis is an
obstacle in the adoption of big data
[101]. Owing to the
variety of data formats, big data can be transformed into
an analysis workflow in two ways as shown in
Fig. 4.
In the case of structured data, the data is pre-processed
before they are stored in relational databases to meet the
constraints of schema-on-write. The data can then be
retrieved for analysis. However, in unstructured data, the
data must first be stored in distributed databases, such as
HBase, before they are processed for analysis. Unstructured
data are retrieved from distributed databases after meeting the schema-on-read constraints.
8.5. Data quality
In the past, data processing was typically performed on
clean datasets from well-known and limited sources.
Therefore, the results were accurate
[102]. However, with
the emergence of big data, data originate from many
different sources; not all of these sources are well-known
or verifiable. Poor data quality has become a serious
problem for many cloud service providers because data
are often collected from different sources. For example,
huge amounts of data are generated from smartphones,
where inconsistent data formats can be produced as a
result of heterogeneous sources. The data quality problem
is usually defined as
any difficulty encountered along one
or more quality dimensions that render data completely or
largely unfit for use
[103]. Therefore, obtaining highquality data from vast collections of data sources is a
challenge. High-quality data in the cloud is characterized
by data consistency. If data from new sources are consistent with data from other sources, then the new data are
of high quality
[104].
Fig. 4. Transforming big data for analysis.
Table 12
Characteristics of scalable data storage in a cloud environment.
Reference Characteristic Advantage Disadvantage
[96] DBMS Faster data access Less attractive for the deployment of large-scale data
Faster processing Limited
[20] Key Value Scales to a very large size
Limitless
[97] Google file system (GFS) Scalable distributed file system for large distributed
data-intensive applications
Garbage collection could become a problem
Performance might degrade if the number of writers
Delivers high aggregate performance and random writers increases
File data is stored in different chunk servers
[74] Hadoop distributed file
system (HDFS)
Stores large amounts of datasets
Uses a large cluster
110
I.A.T. Hashem et al. / Information Systems 47 (2015) 98115
8.6. Heterogeneity
Variety, one of the major aspects of big data characterization, is the result of the growth of virtually unlimited
different sources of data. This growth leads to the heterogeneous nature of big data. Data from multiple sources are
generally of different types and representation forms and
significantly interconnected; they have incompatible formats and are inconsistently represented
[105].
In a cloud environment, users can store data in structured, semi-structured, or unstructured format. Structured
data formats are appropriate for today’s database systems,
whereas semi-structured data formats are appropriate
only to some extent. Unstructured data are inappropriate
[105] because they have a complex format that is difficult
to represent in rows and columns. According to Kocarev
and Jakimoski
[110], the challenge is how to handle
multiple data sources and types.
8.7. Privacy
Privacy concerns continue to hamper users who outsource their private data into the cloud storage. This
concern has become serious with the development of big
data mining and analytics, which require personal information to produce relevant results, such as personalized
and location-based services
[105]. Information on individuals is exposed to scrutiny, a condition that gives rise to
concerns on profiling, stealing, and loss of control
[106].
Currently, encryption is utilized by most researchers to
ensure data privacy in the cloud
[107,108]. Encryption
algorithms are usually written in the form of transformations, such as
Y¼EZ (X) [109], where (X) refers to plaintext,
(
Y) is a cryptogram, and (Z) is the secret key. Encryption
algorithms have a special case called block algorithms as
proposed by Kocarev and Jakimoski
[110], where EZ is
defined as
fZ: fZ: X, X¼[0, 1………..,2m1], and m¼64.
Xuyun et al.
[111] discussed the problem of preserving
the privacy of intermediate datasets in cloud computing;
they argued that encrypting all intermediate datasets in
the cloud is neither computationally effective nor cost
effective because much time is required to encrypt or
decrypt data. The researchers also performed experiments
to reduce the cost of encryption by investigating which
part of the intermediate datasets must be encrypted and
which part must not.
Fan and Huang
[112] proposed a variant of symmetric
predicate encryption in cloud storage to control privacy
and preserve search-based functionalities, such as undecrypt and revocable delegated search. Therefore, controlling the lifetime and search privileges of cloud data
could become easy for the owner of the cloud storage.
Li et al.
[113] proposed a flexible multi-keyword query
scheme (MKQE) that significantly reduces the maintenance
overhead during keyword dictionary expansion. MKQE considers the keyword weights and user access history to
generate query results. MKQE improves the performance of
multi-keyword ranked query over encrypted data to prevent
information leakage and solve the data indexing problem.
Squicciarini et al.
[114] presented a three-tier data protection architecture to provide multiple levels of privacy to
cloud users. Bhagat et al.
[115] investigated the issue of social
networks, such as Facebook and Twitter, in which users
share sensitive information over the Internet. They presented
a method to deal with privacy leakages of an anonymous
user’s information. Itani et al.
[116] presented privacy as a
service model that involves a set of security protocols to
ensure the confidentiality of customer data in the cloud.
Agarwal and Aggarwal
[117] proposed a privacy measure based on differential entropy. Differential entropy h
(A)
of a random variable A is defined as follows [119]:
HðAÞ ¼ Z ΩAƒA ðaÞlog2 ƒA ðaÞ da
where ΩA is the domain of A.h(A)¼log2 a is a measure of
uncertainty inherent in the value of
Aproposed to randomize variable Abetween 0 and (A). Therefore, the random
variable with less uncertainty than
Ain [0, 1] has negative
differential entropy, whereas the random variable with more
uncertainty has positive differential entropy. An overview of
privacy preservation and their proposed solutions, techniques, and limitations are presented in
Table 13.
8.8. Legal/regulatory issues
Specific laws and regulations must be established to
preserve the personal and sensitive information of users.
Different countries have different laws and regulations to
achieve data privacy and protection. In several countries,
monitoring of company staff communications is not
allowed. However, electronic monitoring is permitted
under special circumstances
[120]. Therefore, the question
is whether such laws and regulations offer adequate
Table 13
Overview of privacy preservation in a cloud.
References Proposed solution Technique Description Limitation
[117] Reconstruction algorithm for
privacy-preserving data mining
Expectation
maximization
algorithm
Measurement of privacy preservation Efficiency of
randomization
[114] Three-tier data protection
architecture
Portable data binding Addresses the issue of privacy caused by data
indexing
Protection from
malicious attempts
[118] Privacy-preserving layer (PPL)
over a MapReduce framework
Ensure data privacy preservation before data are
further processed by MapReduce subsequence tasks
Integration with
other data
processing
[111] Upper bound privacy leakage
constraint-based
Privacy-preserving costreducing heuristic
algorithm
Identify which intermediate datasets need to be
encrypted
Efficiency of the
proposed
technique
I.A.T. Hashem et al. / Information Systems 47 (2015) 98115 111
protection for individuals’ data while enjoying the many
benefits of big data in the society at large
[2].
8.9. Governance
Data governance embodies the exercise of control and
authority over data-related rules of law, transparency, and
accountabilities of individuals and information systems to
achieve business objectives
[121]. The key issues of big
data in cloud governance pertain to applications that
consume massive amounts of data streamed from external
sources
[122]. Therefore, a clear and acceptable data policy
with regard to the type of data that need to be stored, how
quickly an individual needs to access the data, and how to
access the data must be defined
[50].
Big data governance involves leveraging information by
aligning the objectives of multiple functions, such as
telecommunication carriers having access to vast troves
of customer information in the form of call detail records
and marketing seeking to monetize this information by
selling it to third parties
[123].
Moreover, big data provides significant opportunities to
service providers by making information more valuable.
However, policies, principles, and frameworks that strike a
stability between risk and value in the face of increasing
data size and deliver better and faster data management
technology can create huge challenges
[124].
Cloud governance recommends the use of various policies together with different models of constraints that limit
access to underlying resources. Therefore, adopting governance practices that maintain a balance between risk exposure and value creation is a new organizational imperative
to unlock competitive advantages and maximize value from
the application of big data in the cloud
[124].
9. Open research issues
Numerous studies have addressed a number of significant problems and issues pertaining to the storage and
processing of big data in clouds. The amount of data
continues to increase at an exponential rate, but the
improvement in the processing mechanisms is relatively
slow. Only a few tools are available to address the issues of
big data processing in cloud environments. State-of-theart techniques and technologies in many important big
data applications (i.e., MapReduce, Dryad, Pregel, PigLatin,
MangoDB, Hbase, SimpleDB, and Cassandra) cannot solve
the actual problems of storing and querying big data. For
example, Hadoop and MapReduce lack query processing
strategies and have low-level infrastructures with respect
to data processing and management. Despite the plethora
of work performed to address the problem of storing and
processing big data in cloud computing environments,
certain important aspects of storing and processing big
data in cloud computing are yet to be solved. Some of
these issues are discussed in the subsequent subsections.
9.1. Data staging
The most important open research issue regarding data
staging is related to the heterogeneous nature of data. Data
gathered from different sources do not have a structured
format. For instance, mobile cloud-based applications,
blogs, and social networking are inadequately structured
similar to pieces of text messages, videos, and images.
Transforming and cleaning such unstructured data before
loading them into the warehouse for analysis are challenging tasks. Efforts have been exerted to simplify the
transformation process by adopting technologies such as
Hadoop and MapReduce to support the distributed processing of unstructured data formats. However, understanding the context of unstructured data is necessary,
particularly when meaningful information is required.
MapReduce programming model is the most common
model that operates in clusters of computers; it has been
utilized to process and distribute large amounts of data.
9.2. Distributed storage systems
Numerous solutions have been proposed to store and
retrieve massive amounts of data. Some of these solutions
have been applied in a cloud computing environment.
However, several issues hinder the successful implementation of such solutions, including the capability of current
cloud technologies to provide necessary capacity and high
performance to address massive amounts of data
[68],
optimization of existing file systems for the volumes
demanded by data mining applications, and how data
can be stored in such a manner that they can be easily
retrieved and migrated between servers.
9.3. Data analysis
The selection of an appropriate model for large-scale
data analysis is critical. Talia
[41] pointed out that obtaining useful information from large amounts of data requires
scalable analysis algorithms to produce timely results.
However, current algorithms are inefficient in terms of
big data analysis. Therefore, efficient data analysis tools
and technologies are required to process such data. Each
algorithm performance ceases to increase linearly with
increasing computational resources. As researchers continue to probe the issues of big data in cloud computing,
new problems in big data processing arise from the
transitional data analysis techniques. The speed of stream
data arriving from different data sources must be processed and compared with historical information within a
certain period of time. Such data sources may contain
different formats, which makes the integration of multiple
sources for analysis a complex task
[125].
9.4. Data security
Although cloud computing has transformed modern
ICT technology, several unresolved security threats exist in
cloud computing. These security threats are magnified by
the volume, velocity, and variety of big data. Moreover,
several threats and issues, such as privacy, confidentiality,
integrity, and availability of data, exist in big data using
cloud computing platforms. Therefore, data security must
be measured once data are outsourced to cloud service
providers. The cloud must also be assessed at regular
112 I.A.T. Hashem et al. / Information Systems 47 (2015) 98115
intervals to protect it against threats. Cloud vendors must
ensure that all service level agreements are met. Recently,
some controversies have revealed how some security
agencies use data generated by individuals for their own
benefit without permission. Therefore, policies that cover
all user privacy concerns should be developed. Traditionally, the most common technique for privacy and data
control is to protect the systems utilized to manage data
rather than the data itself; however, such systems have
proven to be vulnerable. Utilizing strong cryptography to
encapsulate sensitive data in a cloud computing environment and developing a novel algorithm that efficiently
allows for key management and secure key exchange are
important to manage access to big data, particularly as
they exist in the cloud independent of any platform.
Moreover, the issue with integrity is that previously
developed hashing schemes are no longer applicable to
large amounts of data. Integrity verification is also difficult
because of the lack of support, given remote data access
and the lack of information on internal storage.
10. Conclusion
The size of data at present is huge and continues to
increase every day. The variety of data being generated is
also expanding. The velocity of data generation and
growth is increasing because of the proliferation of mobile
devices and other device sensors connected to the Internet. These data provide opportunities that allow businesses across all industries to gain real-time business
insights. The use of cloud services to store, process, and
analyze data has been available for some time; it has
changed the context of information technology and has
turned the promises of the on-demand service model into
reality. In this study, we presented a review on the rise of
big data in cloud computing. We proposed a classification
for big data, a conceptual view of big data, and a cloud
services model. This model was compared with several
representative big data cloud platforms. We discussed the
background of Hadoop technology and its core components, namely, MapReduce and HDFS. We presented current MapReduce projects and related software. We also
reviewed some of the challenges in big data processing.
The review covered volume, scalability, availability, data
integrity, data protection, data transformation, data quality/heterogeneity, privacy and legal/regulatory issues, data
access, and governance. Furthermore, the key issues in big
data in clouds were highlighted. In the future, significant
challenges and issues must be addressed by the academia
and industry. Researchers, practitioners, and social science
scholars should collaborate to ensure the long-term success of data management in a cloud computing environment and to collectively explore new territories.
Acknowledgment
This paper is financially supported by the Malaysian
Ministry of Education under the University of Malaya High
Impact Research Grant UM.C/625/1/HIR/MoE/FCSIT/03.
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