SlideShare a Scribd company logo
1 of 6
Download to read offline
International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016]
Infogain Publication (Infogainpublication.com) ISSN : 2454-1311
www.ijaems.com Page | 1495
Revenue Maximization with Good Quality of
Service in Cloud Computing
Prof. Ms. Poonam Lad, Prof. Ms. Rohini Bhosale, Prof. Rajesh Bhise
PHCET, Rasayani, Khalapur, Raigad, Maharashtra, India
Abstract—Cloud computing enables people to use resources
and services without implementing them on their systems.
Profit and quality of service is the most important factor for
service providers and it is mainly determined by the
configuration of a cloud service platform under given market
demand. Single long term renting scheme is usually adopted to
design a cloud platform which leads to resource waste and
having more renting charges. The novel double renting scheme
which is combination of short term and long term renting is
aiming at existing issue. This double renting scheme will
effectively and efficiently promises a good quality of service of
all request and reduces the resource waste significantly. It also
provides services with lower cost compared to short term
renting scheme. It uses optimal queuing model to maximize the
profit. That means the users can access the services
simultaneously. The main objective of proposed system is, to
maximize profit of service provider by providing efficient and
effective services to user.
Keywords—cloud computing, revenue maximization, quality
of service, service level agreement.
I. INTRODUCTION
Cloud computing has becomes one of the emerging technology
in today’s Internet world. Number of IT dealers offering the
services like computation, storage and application hosting .It
provides access to user according to user demand. Now a days
cloud computing is used in many fields like education,
manufacturing, e-commerce, social networking etc. It gives
access to store personal and business information without
storing it on users system. The new computing and
communications paradigms based on these technologies uses
different techniques to give service to the user.
The pricing model takes such factors into considerations as
the amount of a service, the workload of an application
environment, the configuration of a multiserver system, the
service-level agreement(SLA), the satisfaction of a consumer,
the QoS, the penalty of a low-quality service, the cost of
renting and energy consumption, and a service provider’s
margin and profit. Cloud Computing [1] is Internet based
computing where virtual pooled servers provides
software/hardwares, infrastructure platform, devices and other
resources are hosting to consumers on a renting basis. The
cloud makes it possible for user to access your information
from anywhere at any time Cloud computing is a model
which allows suitable, on demand network access to a
networks, servers, storage, applications, and services that can
be rapidly provisioned and released with minimal
management effort or service provider interaction. More
specifically, cloud describes the use of a collection of services,
applications, information, and infrastructure comprised of
pools of computer, network, information, and storage
resources. These components can be quickly composed,
provisioned, implemented and withdrew, and scaled up or
down; providing for an on demand utility-like model of
allocation and consumption. Cloud enhances collaboration,
agility, scaling, and availability, and provides the potential for
cost reduction through optimized and efficient computing. In
business concepts the profit is the main factor to be exist in the
field of cloud computing environment is required. Such
services were initially offered by commercial providers such
as Amazon, Google, and Microsoft and over the years, several
technologies such as Virtualization, Grid computing[2], and
Service-Oriented Architecture (SOA) significantly contributed
to make cloud computing.
II. RELATED WORK
It includes the relative mechanisms and the methods which are
implemented earlier and also the merits and demerits of each
method is defined concisely. We first focus on Pricing Policies
which are based on the demand from the users and the supply
of resources from service provider. The user competes with
other users and a resource owner with other resource owners.
The resource owner must provide good QoS with and must
gain good revenue.
A. Pricing:
Pricing is the process of determining the rate or fee the
provider will receive in exchange for offering services or
selling resources. Cloud providers can use a variety of pricing
International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016]
Infogain Publication (Infogainpublication.com) ISSN : 2454-1311
www.ijaems.com Page | 1496
Strategies when selling their services[3] or resources. Finding
the right pricing strategy is an important factor in running a
successful business.
B.Pricing Factors:
The main pricing factors are cost of service, market
competition and value to the costomer.Cost of service can be
defined as to set final price to achieve good revenue.
The following figure shows Factors affecting the price. When
providers understand how much it costs to provide the service,
how much competitors are charging for the same service
Fig.1: Pricing Factor
C.Pricing Models:
The most commonly used pricing models in cloud markets[5],
especially in infrastructure as-a-service cloud marketplaces,
are usage-based, subscription-based, and demand-oriented
Pricing A usage-based pricing model (also known as
consumption-based) relies on the scheme that customers pay
according to the amounts of services that they use or consume.
models Subscription-based pricing model: is a pricing model
that allows customers to pay a subscription fee to use the
service for a particular time period.
D.Cloud Computing Pricing Model classification:
1.Static Pricing Model:In this model the pricing strategy
doesn’t change.It is fixed.Cloud providers announced the price
of resource-constrained in advance.Clients already acquainted
with how much they will pay.
2.Dynamic Pricing Model: In this model the pricing strategy
changes according to market demand. It is not fixed.The user
is not familiar with the changing pricing strategy of the
services. It is also called as market dependant pricing model.
E.Examples of Cloud Pricing Models:
Pay-as-you-go Model:It is static model. User pays fixed price
for reserved resources. Pricing strategy is determined by cloud
service provider.
Subscription Model :It is static model. Cloud providers sets the
price depends upon lease period. Sometimes user may pay
more than utilization.[8]
Dynamic Resource Pricing on Federated Clouds: It is dynamic
pricing strategy. This is theoretical approach .The price is
depends upon supply and demand.
Competition based Pricing Model:It is dynamic approach.The
pricing strategy is depending upon market competition.It does
not take customer’s satisfaction into account.
III. LITERATURE SURVEY
Cloud platform provides an effective solution for analytics; the
developed model can be hosted on the Cloud and consumed by
customers in a pay-as-you-go manner. For this delivery model
to become reality, this work focuses on the technical aspects
and evaluate developed protocol model to provide analytics
capabilities for Big Data on the Cloud. This work focuses on
the key issues in phases of an analytics solution. With Big data
many of the challenges of Cloud analytics concern with data
management, integration, and processing. This system
enhanced on previously existing models to provide and
evaluate data models in the Cloud platform. It provides a
solution for data visualization and analytics model over the
Cloud.
Commercial products
In this section, we provide a survey of some of the dominant
cloud computing products.
Amazon EC2: Amazon Web Services (AWS) [3] is a set of
cloud services, providing cloud-based computation, storage
and other functionality that enable organizations and
individuals to deploy applications and services on an on-
demand basis and at commodity prices. Amazon Web
Services’ offerings are accessible over HTTP, using REST and
SOAP protocols. Amazon Elastic Compute Cloud (Amazon
EC2) enables cloud users to launch and manage server
instances in data centers using APIs or available tools and
utilities. EC2 instances are virtual machines running on top of
the Xen virtualization engine [5]. After creating and starting an
instance, users can upload software and make changes to it.
When changes are finished, they can be bundled as a new
machine image. An identical copy can then be launched at any
time. Users have nearly full control of the entire software stack
on the EC2 instances that look like hardware to them.
Microsoft Windows Azure platform: Microsoft’s Windows
Azure platform [3] consists of three components and each of
them provides a specific set of services to cloud users.
Windows Azure provides a Windows based environment for
running applications and storing data on servers in data
centers; SQL Azure provides data services in the cloud based
on SQL Server; and .NET Services offer distributed
infrastructure services to cloud-based and local applications.
Windows Azure platform can be used both by applications
running in the cloud and by applications running on local
systems. Windows Azure also supports applications built on
the .NET Framework and other ordinary languages supported
Pricing
Service Cost
Market Competition
Value to the costumer
International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016]
Infogain Publication (Infogainpublication.com) ISSN : 2454-1311
www.ijaems.com Page | 1497
in Windows systems, like C#, Visual Basic, C++, and others.
Windows Azure supports general-purpose programs, rather
than a single class of computing. With each application, the
users upload a configuration file that provides an XML-based
description of what the application needs. Based on this file,
the fabric controller decides where new applications should
run, choosing physical servers to optimize hardware
utilization.
Google App Engine: Google App Engine is a platform for
traditional web applications in Google-managed data centers.
Currently, the supported programming languages are Python
and Java. Web frameworks that run on the Google App
Engine include Django, CherryPy, Pylons, and web2py, as
well as a custom Google-written web application framework
similar to JSP or ASP.NET. Google handles deploying code to
a cluster, monitoring, failover, and launching application
instances as necessary. Current APIs support features such as
storing and retrieving data from a Big Table [10] non-
relational database, making HTTP requests and caching.
Developers have read-only access to the file system on App
Engine. Table 1 summarizes the three examples of popular
cloud offerings in terms of the classes of utility computing,
target types of application, and more importantly their models
of computation, storage and auto-scaling. Apparently, these
cloud offerings are based on different levels of abstraction.
and management of the resources. Users can choose one type
or combinations of several types of cloud are offed.
Problem Statement
In cloud model, client, cloud service provider and
infrastructure provider are participant.While providing a
service the main aim of cloud service provider is how to gain
profit with good quality of service and customer satisfaction.
Often the service provider uses ,the single long term renting
scheme in which servers are long term rented. The number of
servers in this scheme are less. The pricing strategy in this
system is static. Means if the user wont be able to buy the plan
according to requirement. Though he needs less space for
storage, it was compulsory to buy the plan which gives more
storage space and apply more charges. On the other hand it
was wastage of memory from providers side as it gives more
space than needed was not able to share that space with
different users. If request are more then due to less number of
servers the request are not served within given period of
time.Thus the customer may get unsatisfied and service
provider may loose the customer.To overcome this problem
the combination of short term renting and long term renting
i.e. double quality renting scheme is proposed. In this system
the user can choose the space required and duration of the
service according to need. If the user is satis_ed then the
service provider is successful to attract the customer which
helps the cloud provider to maximize revenue with good QoS
and customer satisfaction.This is achieved by new proposed
model.
IV. PROPOSED SYSTEM
In this section, a new model has been proposed which avail the
a novel renting scheme for service providers, which provides
best QoS that satisfies customers service requirements, and will
give more profit to service provider. This system proposes a
new solution which combines long-term renting with short-
term renting under the varying system workload and it also
reduce the resource waste greatly. It uses a multiserver system
with optimal queuing model and the performance will be
analyse with the help of average service charge, the ratio of
requests that need short term servers, and so forth.The system
provides services[6] such as searching, video encryption and
decryption to provide security. The results show that the
proposed Double-Quality renting system will give good
revenue than the compared single renting scheme with
guaranteed service. It also provides security to maintain trust
between consumer and service provider.
• Each request must be completed within given time
period.
• The revenue of the service provider increases.
• It increases the quality of service .
• It provides a trusted relationship between consumers
and service providers.
4.1Methodology
4.1.1 Introduction
Cloud is made up of both infrastructure and software. Cloud
computing enables people to use the services without installing
them on their machines. It becomes a highly demanded service
due to advantages of high computing power, cheap cost of
services, high performance, availability and accessibility. It is
also called as on-demand computing. Due to this this service is
attracted a lot of interest. The things provided on clients
machine by using the process of virtualization. For the process
of virtualization it uses resource pooling in which number of
virtual and physical resources are dynamically assigned and
reassigned according to users need.It provides broad network
access i.e. the services can be accessible on cell phones,
laptops,tablets or workstations[5].The cloud provisioned for
single organization is called as private cloud.It is managed by
that organization, or third party or combination of both. The
cloud which is designed to use for common people is called as
public cloud. The cloud which combines either public, private
or community cloud is called hybrid cloud.
International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016]
Infogain Publication (Infogainpublication.com) ISSN : 2454-1311
www.ijaems.com Page | 1498
4.1.2 System Architecture and Implementation
Three different modules area as follows:
1)Client module: It could be either individual customer or
associations.The client will buy the plan according to his/her
requirements. According to the plan the If the client is
registered user then he will login by username and password.
The client will buy the plan according to his requirements i.e.
required space and time duration will be provided by user. This
request will send to BSP.BSP approves the request and send it
to ISP for approval.
Fig.4.1: System Model
After approval of BSP and ISP he can upload the files
according to desired plan orhe/she can download the files
whenever required.
2)Business Service Provider (BSP) module: It is an entity
which rents resources from infrastructure provider. After user
registration the request of plan will sent to the BSP.It sends
this request to ISP for space allocation. It can be a single
entity or an organization.
3)Infrastructure Service Provider(ISP) module: It is an entity
which is used to store a large amount of data.The ISP will
assign either long term or short term rented servers.If the user
requirement is less than 250MB the users file will be stored
into short term rented servers.If more than 250MB the long
term rented servers get assigned.ISP provides resources to
BSP.
4.1.3 System Flow
Our system is divided into following phases
Fig.4.2: Flow of the System
.
1. Registration Phase:
Whenever the new user wants to access the system he or she
has to do registration first.After registration the OTP get
generated which can be used as optional security enhancement
to the client.The OTP will send on users registered mobile
number.For login into the system the user will enter the OTP
first then only he is able to use the services.
2. Buy the Plan
After login the user can use the system after buying the
plan.The plan is buy according to required space and
time.Whatever space user wants he enters it in the multiple of
10MB.He will choose the required time in number of
days.The minimum buying plan is 1 day per 10MB.
3. Approval of BSP and ISP
When the ISP and BSP will approve the plan then only user is
able to access the services.When client request for service it
_rst go to BSP.After approval of BSP it goes to ISP.ISP
allocates the server according to space and time duration.
4. Upload and Download Phase
After the approval of BSP and ISP the user is able to upload
and download the files.User can access the files upto
specified duration. The files are secured by using AES
algorithm.When the duration is expired the user is unable to
access the file
4.2 Algorithms
1 Algorithm for Costing:
• Input: Storage Space in multple of 10MB(Sn),
Storage price for 10MB(St),time price for
1day(Tm),Time in multiple of one day(Tn)
Scientific
Computin
g
File
Storage
Image
Processin
g
User
BSP
ISP
Client
registratio
n by user
name and
password
Client login
by entering
OTP
Exit
Choose and
buy the
plan
Request
approved
by ISP
Request
approved
by BSP
Client can
access the
services
Want
to
contin
Buy
plan
N Y
International Journal of Advanced Engineering, Management and Science (IJAEMS)
Infogain Publication (Infogainpublication.com
www.ijaems.com
• Output: Total cost of the plan for each user do
• Calculate storage in multiple of 10MB by using
equation A;
• Calculate time in multiple of 1 day by using
B;
• Calculate total cost by adding equation A and B;
Total Cost=A+B
2 AES Algorithm
AES is a symmetric block cipher algorithm. It is utilize
securing data. It acknowledges a 128, 192 or 256
has acceptably quick key setup time and moderately little
memory requirements and encodes 128 bits of information at
once. Whenever any client or an application uploads any data
on the cloud, the data is stored in an encoded format by using
AES algorithm at the storage server.
V. RESULT ANALYSIS
This chapter gives detail description of implemented system.
It shows step by step procedure of application. It also includes
the difference between an existing system and an implemented
system.
The existing system provides a service in which the plan was
static.User has to buy the plan which was predefined
other hand in current system the user will choose the plan
according to requirement. Following table shows the
comparative analysis of both the systems.
Table.1: Pricing Plan for Existing System
Space in Multiple
of 10Mb
Time in Multiple
of Days
50 60
100 90
250 180
350 180
Table 1 shows the fix pricing strategy of existing
existing system the space and duration is fixed. Means
the user wants to buy less space for less time,
International Journal of Advanced Engineering, Management and Science (IJAEMS)
Infogainpublication.com)
for each user do
Calculate storage in multiple of 10MB by using
Calculate time in multiple of 1 day by using equation
Calculate total cost by adding equation A and B;
AES is a symmetric block cipher algorithm. It is utilized for
edges a 128, 192 or 256-bit key. It
ick key setup time and moderately little
memory requirements and encodes 128 bits of information at
once. Whenever any client or an application uploads any data
on the cloud, the data is stored in an encoded format by using
ANALYSIS
This chapter gives detail description of implemented system.
It shows step by step procedure of application. It also includes
the difference between an existing system and an implemented
service in which the plan was
static.User has to buy the plan which was predefined.On the
other hand in current system the user will choose the plan
Following table shows the
ng System
Cost
1025
1925
920
1640
Table 1 shows the fix pricing strategy of existing system. In
fixed. Means though
for less time, he is not able to
buy it .User has to select one of the above plan which was
nearest to his requirement. Thus
requirement. On the other hand the cloud provider was not
able to give allocated unused space to other
wastage of space also.
Table 2: Pricing Plan for Current
Space in Multiple
of 10Mb
Time in Multiple
of Days
70 30
120 50
230 100
360 100
Table 2 shows the figures which enter by the user according to
his requirement. Thus in current system the plan is of users
choice. The user will choose require space and time and will
only for usage, not more than that.
Fig.4.3: Storage Graph
Fig.4.4:
[Vol-2, Issue-9, Sept- 2016]
ISSN : 2454-1311
Page | 1499
.User has to select one of the above plan which was
requirement. Thus he has to pay more than
the other hand the cloud provider was not
give allocated unused space to other user. Thus it was
Pricing Plan for Current System
Time in Multiple
of Days
Cost
185
310
615
544
Table 2 shows the figures which enter by the user according to
in current system the plan is of users
user will choose require space and time and will
more than that.
Storage Graph
: Price Graph
International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016]
Infogain Publication (Infogainpublication.com) ISSN : 2454-1311
www.ijaems.com Page | 1500
VI. CONCLUSION
The proposed system is successfully designed in order to
provide a solution to solve the problem of revenue
intensification. Additionally the system made it possible to
improve the quality of service. As this system is combination
of short-term renting with long-term renting, which can reduce
the resource waste greatly and adapt to the dynamical demand
of computing capacity. It enables user to select the plan
according to requirement. The charges apply for the services
are fixed. They does not get change according to demand. Thus
user is aware of of the cost. The system uses multi-server
system in which the servers are allocated as short term rented
and long term rented servers. The system outperforms in terms
of both quality of service and revenue. This system considers
the requirement of both service provider and end user in terms
of costing. Thus to get good profit with customer satisfaction
this system scheme can be a precious solution. In this paper, I
only consider the revenue maximization problem in a
homogeneous cloud environment, because the invention in
heterogeneous environment is difficult .
REFERENCES
[1] Jing Mei, Kenli Li, Aijia Ouyang and Keqin Li, "A Profit
Maximization Scheme with Guaranteed Quality of
Service in Cloud computing"IEEE trans. Vol.75 ,Pp. 1-14
2015.
[2] A. Fox, R. Grifth, A. Joseph, R. Katz, A. Konwinski,G.
Lee, D. Patterson, A. Rabkin,and I. Stoica, "Above the
clouds: A berkeley view of cloud computing,"
Dept.Electrical Eng. and Computer. Sciences, Vol. 28,Pp.
1-10, 2009.
[3] J. Cao, K. Hwang, K. Li, and A. Y. Zomaya,"Optimal
multiserver configuration for profit maximization in cloud
computing," IEEE Trans. Parallel Distrib. Syst., Vol.
24,no. 6,Pp. 1087, 2013.
[4] R. Buyya, C. S. Yeo, S. Venugopal, J. Broberg, andI.
Brandic, “Cloud computing and emerging it
platforms:Vision, hype, and reality for delivering
computing as the5th utility,” Future Gener. Comp. Sy.,
vol. 25, no. 6, pp. 599–616, 2009.
[5] P. Mell and T. Grance, “The NIST definition of cloud
computing. National institute of standards and
technology, “Information Technology Laboratory, vol.
15, p. 2009, 2009.
[6] J. Chen, C. Wang, B. B. Zhou, L. Sun, Y. C. Lee, andA.
Y. Zomaya, “Tradeoffs between profit and customer
satisfaction for service provisioning in the cloud,” in
Proc.20th Int’l Symp. High Performance Distributed
Computing.ACM, 2011, pp. 229–238.
[7] J. Mei, K. Li, J. Hu, S. Yin, and E. H.-M. Sha, “Energy
aware preemptive scheduling algorithm for sporadic tasks
on dvs platform,” MICROPROCESS MICROSY., vol.
37,no. 1, pp. 99–112, 2013.
[8] Taj Eldin Suliman M. Ali, “Pricing Models for Cloud
Computing Services, a Survey,” International Journal of
Computer Applications Technology and Researc,Vol 5
2008.
[9] May Al-Roomi, Shaikha Al-Ebrahim, Sabika Buqrais and
Imtiaz Ahmad,“Cloud Computing Pricing Models: A
Survey”, International Journal of Grid and Distributed
Computing,Vol.6,Pp.93-106, 2013

More Related Content

What's hot

Cloud Computing for Agent-Based Urban Transport Structure
Cloud Computing for Agent-Based Urban Transport StructureCloud Computing for Agent-Based Urban Transport Structure
Cloud Computing for Agent-Based Urban Transport StructureIRJET Journal
 
Exploring the cloud deployment and service delivery models
Exploring the cloud deployment and service delivery modelsExploring the cloud deployment and service delivery models
Exploring the cloud deployment and service delivery modelscloudresearcher
 
Cloud Computing- future framework for e- management of NGO's
Cloud Computing- future framework for e- management of NGO'sCloud Computing- future framework for e- management of NGO's
Cloud Computing- future framework for e- management of NGO'sThe Kalgidar Society - Baru Sahib
 
Basics of Cloud Computing
Basics of Cloud ComputingBasics of Cloud Computing
Basics of Cloud Computingijsrd.com
 
T04503113118
T04503113118T04503113118
T04503113118IJERA Editor
 
Profit Driven Decision Assist System to Select Efficient IaaS Providers
Profit Driven Decision Assist System to Select Efficient  IaaS Providers Profit Driven Decision Assist System to Select Efficient  IaaS Providers
Profit Driven Decision Assist System to Select Efficient IaaS Providers IJECEIAES
 
A Journey to the Future of Cloud-native Media Microservices
A Journey to the Future of Cloud-native Media MicroservicesA Journey to the Future of Cloud-native Media Microservices
A Journey to the Future of Cloud-native Media MicroservicesWashington Cabral
 
A revolution in information technology cloud computing.
A revolution in information technology   cloud computing.A revolution in information technology   cloud computing.
A revolution in information technology cloud computing.Minor33
 
Cloud Computing in Resource Management
Cloud Computing in Resource ManagementCloud Computing in Resource Management
Cloud Computing in Resource ManagementDr. Amarjeet Singh
 
A SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTING
A SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTINGA SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTING
A SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTINGijccsa
 
Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...
Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...
Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...Eswar Publications
 
Self-Tuning Data Centers
Self-Tuning Data CentersSelf-Tuning Data Centers
Self-Tuning Data CentersReza Rahimi
 
Clound computing
Clound computingClound computing
Clound computingWGroup
 

What's hot (14)

Cloud Computing for Agent-Based Urban Transport Structure
Cloud Computing for Agent-Based Urban Transport StructureCloud Computing for Agent-Based Urban Transport Structure
Cloud Computing for Agent-Based Urban Transport Structure
 
E42053035
E42053035E42053035
E42053035
 
Exploring the cloud deployment and service delivery models
Exploring the cloud deployment and service delivery modelsExploring the cloud deployment and service delivery models
Exploring the cloud deployment and service delivery models
 
Cloud Computing- future framework for e- management of NGO's
Cloud Computing- future framework for e- management of NGO'sCloud Computing- future framework for e- management of NGO's
Cloud Computing- future framework for e- management of NGO's
 
Basics of Cloud Computing
Basics of Cloud ComputingBasics of Cloud Computing
Basics of Cloud Computing
 
T04503113118
T04503113118T04503113118
T04503113118
 
Profit Driven Decision Assist System to Select Efficient IaaS Providers
Profit Driven Decision Assist System to Select Efficient  IaaS Providers Profit Driven Decision Assist System to Select Efficient  IaaS Providers
Profit Driven Decision Assist System to Select Efficient IaaS Providers
 
A Journey to the Future of Cloud-native Media Microservices
A Journey to the Future of Cloud-native Media MicroservicesA Journey to the Future of Cloud-native Media Microservices
A Journey to the Future of Cloud-native Media Microservices
 
A revolution in information technology cloud computing.
A revolution in information technology   cloud computing.A revolution in information technology   cloud computing.
A revolution in information technology cloud computing.
 
Cloud Computing in Resource Management
Cloud Computing in Resource ManagementCloud Computing in Resource Management
Cloud Computing in Resource Management
 
A SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTING
A SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTINGA SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTING
A SURVEY ON RESOURCE ALLOCATION IN CLOUD COMPUTING
 
Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...
Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...
Advance Computing Paradigm with the Perspective of Cloud Computing-An Analyti...
 
Self-Tuning Data Centers
Self-Tuning Data CentersSelf-Tuning Data Centers
Self-Tuning Data Centers
 
Clound computing
Clound computingClound computing
Clound computing
 

Viewers also liked

The Waiting Game
The Waiting GameThe Waiting Game
The Waiting GameAaron Fenton
 
Potestad tributaria
Potestad tributariaPotestad tributaria
Potestad tributariamarianacobelo
 
List of edited documents
List of edited documentsList of edited documents
List of edited documentsMaureen C. Walsh
 
Odonto 2da clase tablas y grĂĄficos
Odonto 2da clase tablas y grĂĄficosOdonto 2da clase tablas y grĂĄficos
Odonto 2da clase tablas y grĂĄficosUniv Peruana Los Andes
 
Gender Differences in Learners’ Perceptions of an Ideal Primary School
Gender Differences in Learners’ Perceptions of an Ideal Primary School Gender Differences in Learners’ Perceptions of an Ideal Primary School
Gender Differences in Learners’ Perceptions of an Ideal Primary School INFOGAIN PUBLICATION
 
Elisa Ferri Covers Industrie Magazine
Elisa Ferri Covers Industrie MagazineElisa Ferri Covers Industrie Magazine
Elisa Ferri Covers Industrie MagazineSEE Management
 
Film conventions
Film conventionsFilm conventions
Film conventionsemilycockayne
 
Bridgeport 3105
Bridgeport 3105Bridgeport 3105
Bridgeport 3105savomir
 
Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...
Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...
Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...IJCMESJOURNAL
 
Prediction of Case Loss Due to Machine Downtime in Nigerian Bottling Company
Prediction of Case Loss Due to Machine Downtime in Nigerian Bottling CompanyPrediction of Case Loss Due to Machine Downtime in Nigerian Bottling Company
Prediction of Case Loss Due to Machine Downtime in Nigerian Bottling CompanyIJCMESJOURNAL
 
effect of environmental variables on photovoltaic performance based on experi...
effect of environmental variables on photovoltaic performance based on experi...effect of environmental variables on photovoltaic performance based on experi...
effect of environmental variables on photovoltaic performance based on experi...IJCMESJOURNAL
 
Carla pina sociologia
Carla pina sociologiaCarla pina sociologia
Carla pina sociologiacarlaPi
 
Rajab dua 03
Rajab dua 03Rajab dua 03
Rajab dua 03Duas Org
 
Porque El Amor Existe[1]
Porque El Amor Existe[1]Porque El Amor Existe[1]
Porque El Amor Existe[1]guestd4ea2b
 
Amparo 11.02.13
Amparo 11.02.13Amparo 11.02.13
Amparo 11.02.13feudifusion
 
Dinasti ayyubiyah
Dinasti ayyubiyahDinasti ayyubiyah
Dinasti ayyubiyahRizqina Aulia
 

Viewers also liked (20)

The Waiting Game
The Waiting GameThe Waiting Game
The Waiting Game
 
Potestad tributaria
Potestad tributariaPotestad tributaria
Potestad tributaria
 
List of edited documents
List of edited documentsList of edited documents
List of edited documents
 
Odonto 2da clase tablas y grĂĄficos
Odonto 2da clase tablas y grĂĄficosOdonto 2da clase tablas y grĂĄficos
Odonto 2da clase tablas y grĂĄficos
 
Gender Differences in Learners’ Perceptions of an Ideal Primary School
Gender Differences in Learners’ Perceptions of an Ideal Primary School Gender Differences in Learners’ Perceptions of an Ideal Primary School
Gender Differences in Learners’ Perceptions of an Ideal Primary School
 
Elisa Ferri Covers Industrie Magazine
Elisa Ferri Covers Industrie MagazineElisa Ferri Covers Industrie Magazine
Elisa Ferri Covers Industrie Magazine
 
Film conventions
Film conventionsFilm conventions
Film conventions
 
Bridgeport 3105
Bridgeport 3105Bridgeport 3105
Bridgeport 3105
 
Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...
Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...
Effect on Concrete by Partial Replacement of Cement by Colloidal Nano Alumina...
 
Prediction of Case Loss Due to Machine Downtime in Nigerian Bottling Company
Prediction of Case Loss Due to Machine Downtime in Nigerian Bottling CompanyPrediction of Case Loss Due to Machine Downtime in Nigerian Bottling Company
Prediction of Case Loss Due to Machine Downtime in Nigerian Bottling Company
 
effect of environmental variables on photovoltaic performance based on experi...
effect of environmental variables on photovoltaic performance based on experi...effect of environmental variables on photovoltaic performance based on experi...
effect of environmental variables on photovoltaic performance based on experi...
 
Slides binar-hec
Slides binar-hecSlides binar-hec
Slides binar-hec
 
Carla pina sociologia
Carla pina sociologiaCarla pina sociologia
Carla pina sociologia
 
FDC - Estudo de Caso da marca UPMAN
FDC - Estudo de Caso da marca UPMANFDC - Estudo de Caso da marca UPMAN
FDC - Estudo de Caso da marca UPMAN
 
Rajab dua 03
Rajab dua 03Rajab dua 03
Rajab dua 03
 
Porque El Amor Existe[1]
Porque El Amor Existe[1]Porque El Amor Existe[1]
Porque El Amor Existe[1]
 
Miba
MibaMiba
Miba
 
Amparo 11.02.13
Amparo 11.02.13Amparo 11.02.13
Amparo 11.02.13
 
Dinasti ayyubiyah
Dinasti ayyubiyahDinasti ayyubiyah
Dinasti ayyubiyah
 
Pascua
PascuaPascua
Pascua
 

Similar to Revenue Maximization with Good Quality of Service in Cloud Computing

Pricing Models for Cloud Computing Services, a Survey
Pricing Models for Cloud Computing Services, a SurveyPricing Models for Cloud Computing Services, a Survey
Pricing Models for Cloud Computing Services, a SurveyEditor IJCATR
 
A Profit Maximization Scheme with Guaranteed1 (1)
A Profit Maximization Scheme with Guaranteed1 (1)A Profit Maximization Scheme with Guaranteed1 (1)
A Profit Maximization Scheme with Guaranteed1 (1)nelampati ramanjaneyulu
 
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...ASAITHAMBIRAJAA
 
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...ASAITHAMBIRAJAA
 
Cloud computing charecteristics and types altanai bisht , 2nd year, part iii
Cloud computing charecteristics and types   altanai bisht , 2nd year,  part iiiCloud computing charecteristics and types   altanai bisht , 2nd year,  part iii
Cloud computing charecteristics and types altanai bisht , 2nd year, part iiiALTANAI BISHT
 
International Journal of Engineering Research and Development
International Journal of Engineering Research and DevelopmentInternational Journal of Engineering Research and Development
International Journal of Engineering Research and DevelopmentIJERD Editor
 
A Framework for Multicloud Environment Services
A Framework for Multicloud Environment ServicesA Framework for Multicloud Environment Services
A Framework for Multicloud Environment ServicesEswar Publications
 
Jayant Ghorpade - Cloud Computing White Paper
Jayant Ghorpade - Cloud Computing White PaperJayant Ghorpade - Cloud Computing White Paper
Jayant Ghorpade - Cloud Computing White PaperJayant Ghorpade
 
Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017
Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017
Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017Amazon Web Services
 
Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...IJECEIAES
 
An Efficient MDC based Set Partitioned Embedded Block Image Coding
An Efficient MDC based Set Partitioned Embedded Block Image CodingAn Efficient MDC based Set Partitioned Embedded Block Image Coding
An Efficient MDC based Set Partitioned Embedded Block Image CodingDr. Amarjeet Singh
 
Oe2423112320
Oe2423112320Oe2423112320
Oe2423112320IJERA Editor
 
Design & Development of a Trustworthy and Secure Billing System for Cloud Com...
Design & Development of a Trustworthy and Secure Billing System for Cloud Com...Design & Development of a Trustworthy and Secure Billing System for Cloud Com...
Design & Development of a Trustworthy and Secure Billing System for Cloud Com...iosrjce
 
Job Placement and Staffing VA
Job Placement and Staffing VAJob Placement and Staffing VA
Job Placement and Staffing VAIntellectualpoint
 
International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)IJERD Editor
 
A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...
A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...
A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...cscpconf
 
Task Performance Analysis in Virtual Cloud Environment
Task Performance Analysis in Virtual Cloud EnvironmentTask Performance Analysis in Virtual Cloud Environment
Task Performance Analysis in Virtual Cloud EnvironmentRSIS International
 

Similar to Revenue Maximization with Good Quality of Service in Cloud Computing (20)

Pricing Models for Cloud Computing Services, a Survey
Pricing Models for Cloud Computing Services, a SurveyPricing Models for Cloud Computing Services, a Survey
Pricing Models for Cloud Computing Services, a Survey
 
A Profit Maximization Scheme with Guaranteed1 (1)
A Profit Maximization Scheme with Guaranteed1 (1)A Profit Maximization Scheme with Guaranteed1 (1)
A Profit Maximization Scheme with Guaranteed1 (1)
 
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...
 
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...Ieeepro techno solutions   2014 ieee dotnet project - assessing collaboration...
Ieeepro techno solutions 2014 ieee dotnet project - assessing collaboration...
 
Cloud computing charecteristics and types altanai bisht , 2nd year, part iii
Cloud computing charecteristics and types   altanai bisht , 2nd year,  part iiiCloud computing charecteristics and types   altanai bisht , 2nd year,  part iii
Cloud computing charecteristics and types altanai bisht , 2nd year, part iii
 
International Journal of Engineering Research and Development
International Journal of Engineering Research and DevelopmentInternational Journal of Engineering Research and Development
International Journal of Engineering Research and Development
 
A Framework for Multicloud Environment Services
A Framework for Multicloud Environment ServicesA Framework for Multicloud Environment Services
A Framework for Multicloud Environment Services
 
Jayant Ghorpade - Cloud Computing White Paper
Jayant Ghorpade - Cloud Computing White PaperJayant Ghorpade - Cloud Computing White Paper
Jayant Ghorpade - Cloud Computing White Paper
 
Cloud Computing
Cloud ComputingCloud Computing
Cloud Computing
 
Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017
Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017
Get Started Today with Cloud-Ready Contracts | AWS Public Sector Summit 2017
 
Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...Cloud service ranking with an integration of k-means algorithm and decision-m...
Cloud service ranking with an integration of k-means algorithm and decision-m...
 
An Efficient MDC based Set Partitioned Embedded Block Image Coding
An Efficient MDC based Set Partitioned Embedded Block Image CodingAn Efficient MDC based Set Partitioned Embedded Block Image Coding
An Efficient MDC based Set Partitioned Embedded Block Image Coding
 
Oe2423112320
Oe2423112320Oe2423112320
Oe2423112320
 
Design & Development of a Trustworthy and Secure Billing System for Cloud Com...
Design & Development of a Trustworthy and Secure Billing System for Cloud Com...Design & Development of a Trustworthy and Secure Billing System for Cloud Com...
Design & Development of a Trustworthy and Secure Billing System for Cloud Com...
 
A017620123
A017620123A017620123
A017620123
 
internship paper
internship paperinternship paper
internship paper
 
Job Placement and Staffing VA
Job Placement and Staffing VAJob Placement and Staffing VA
Job Placement and Staffing VA
 
International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)
 
A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...
A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...
A CLOUD BROKER APPROACH WITH QOS ATTENDANCE AND SOA FOR HYBRID CLOUD COMPUTIN...
 
Task Performance Analysis in Virtual Cloud Environment
Task Performance Analysis in Virtual Cloud EnvironmentTask Performance Analysis in Virtual Cloud Environment
Task Performance Analysis in Virtual Cloud Environment
 

Recently uploaded

HARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IVHARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IVRajaP95
 
Current Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCLCurrent Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCLDeelipZope
 
Heart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptxHeart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptxPoojaBan
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...Soham Mondal
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AIabhishek36461
 
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2RajaP95
 
INFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETE
INFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETEINFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETE
INFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETEroselinkalist12
 
Introduction-To-Agricultural-Surveillance-Rover.pptx
Introduction-To-Agricultural-Surveillance-Rover.pptxIntroduction-To-Agricultural-Surveillance-Rover.pptx
Introduction-To-Agricultural-Surveillance-Rover.pptxk795866
 
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionSachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionDr.Costas Sachpazis
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024hassan khalil
 
Artificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptxArtificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptxbritheesh05
 
🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...
🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...
🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfCCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfAsst.prof M.Gokilavani
 
Concrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptxConcrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptxKartikeyaDwivedi3
 
main PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfidmain PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfidNikhilNagaraju
 
Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...VICTOR MAESTRE RAMIREZ
 
What are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxWhat are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxwendy cai
 

Recently uploaded (20)

HARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IVHARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IV
 
Current Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCLCurrent Transformer Drawing and GTP for MSETCL
Current Transformer Drawing and GTP for MSETCL
 
Heart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptxHeart Disease Prediction using machine learning.pptx
Heart Disease Prediction using machine learning.pptx
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AI
 
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
 
INFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETE
INFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETEINFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETE
INFLUENCE OF NANOSILICA ON THE PROPERTIES OF CONCRETE
 
Introduction-To-Agricultural-Surveillance-Rover.pptx
Introduction-To-Agricultural-Surveillance-Rover.pptxIntroduction-To-Agricultural-Surveillance-Rover.pptx
Introduction-To-Agricultural-Surveillance-Rover.pptx
 
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionSachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024
 
Artificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptxArtificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptx
 
🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...
🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...
🔝9953056974🔝!!-YOUNG call girls in Rajendra Nagar Escort rvice Shot 2000 nigh...
 
9953056974 Call Girls In South Ex, Escorts (Delhi) NCR.pdf
9953056974 Call Girls In South Ex, Escorts (Delhi) NCR.pdf9953056974 Call Girls In South Ex, Escorts (Delhi) NCR.pdf
9953056974 Call Girls In South Ex, Escorts (Delhi) NCR.pdf
 
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfCCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
 
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptxExploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
Exploring_Network_Security_with_JA3_by_Rakesh Seal.pptx
 
Concrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptxConcrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptx
 
main PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfidmain PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfid
 
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
 
Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...Software and Systems Engineering Standards: Verification and Validation of Sy...
Software and Systems Engineering Standards: Verification and Validation of Sy...
 
What are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxWhat are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptx
 

Revenue Maximization with Good Quality of Service in Cloud Computing

  • 1. International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016] Infogain Publication (Infogainpublication.com) ISSN : 2454-1311 www.ijaems.com Page | 1495 Revenue Maximization with Good Quality of Service in Cloud Computing Prof. Ms. Poonam Lad, Prof. Ms. Rohini Bhosale, Prof. Rajesh Bhise PHCET, Rasayani, Khalapur, Raigad, Maharashtra, India Abstract—Cloud computing enables people to use resources and services without implementing them on their systems. Profit and quality of service is the most important factor for service providers and it is mainly determined by the configuration of a cloud service platform under given market demand. Single long term renting scheme is usually adopted to design a cloud platform which leads to resource waste and having more renting charges. The novel double renting scheme which is combination of short term and long term renting is aiming at existing issue. This double renting scheme will effectively and efficiently promises a good quality of service of all request and reduces the resource waste significantly. It also provides services with lower cost compared to short term renting scheme. It uses optimal queuing model to maximize the profit. That means the users can access the services simultaneously. The main objective of proposed system is, to maximize profit of service provider by providing efficient and effective services to user. Keywords—cloud computing, revenue maximization, quality of service, service level agreement. I. INTRODUCTION Cloud computing has becomes one of the emerging technology in today’s Internet world. Number of IT dealers offering the services like computation, storage and application hosting .It provides access to user according to user demand. Now a days cloud computing is used in many fields like education, manufacturing, e-commerce, social networking etc. It gives access to store personal and business information without storing it on users system. The new computing and communications paradigms based on these technologies uses different techniques to give service to the user. The pricing model takes such factors into considerations as the amount of a service, the workload of an application environment, the configuration of a multiserver system, the service-level agreement(SLA), the satisfaction of a consumer, the QoS, the penalty of a low-quality service, the cost of renting and energy consumption, and a service provider’s margin and profit. Cloud Computing [1] is Internet based computing where virtual pooled servers provides software/hardwares, infrastructure platform, devices and other resources are hosting to consumers on a renting basis. The cloud makes it possible for user to access your information from anywhere at any time Cloud computing is a model which allows suitable, on demand network access to a networks, servers, storage, applications, and services that can be rapidly provisioned and released with minimal management effort or service provider interaction. More specifically, cloud describes the use of a collection of services, applications, information, and infrastructure comprised of pools of computer, network, information, and storage resources. These components can be quickly composed, provisioned, implemented and withdrew, and scaled up or down; providing for an on demand utility-like model of allocation and consumption. Cloud enhances collaboration, agility, scaling, and availability, and provides the potential for cost reduction through optimized and efficient computing. In business concepts the profit is the main factor to be exist in the field of cloud computing environment is required. Such services were initially offered by commercial providers such as Amazon, Google, and Microsoft and over the years, several technologies such as Virtualization, Grid computing[2], and Service-Oriented Architecture (SOA) significantly contributed to make cloud computing. II. RELATED WORK It includes the relative mechanisms and the methods which are implemented earlier and also the merits and demerits of each method is defined concisely. We first focus on Pricing Policies which are based on the demand from the users and the supply of resources from service provider. The user competes with other users and a resource owner with other resource owners. The resource owner must provide good QoS with and must gain good revenue. A. Pricing: Pricing is the process of determining the rate or fee the provider will receive in exchange for offering services or selling resources. Cloud providers can use a variety of pricing
  • 2. International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016] Infogain Publication (Infogainpublication.com) ISSN : 2454-1311 www.ijaems.com Page | 1496 Strategies when selling their services[3] or resources. Finding the right pricing strategy is an important factor in running a successful business. B.Pricing Factors: The main pricing factors are cost of service, market competition and value to the costomer.Cost of service can be defined as to set final price to achieve good revenue. The following figure shows Factors affecting the price. When providers understand how much it costs to provide the service, how much competitors are charging for the same service Fig.1: Pricing Factor C.Pricing Models: The most commonly used pricing models in cloud markets[5], especially in infrastructure as-a-service cloud marketplaces, are usage-based, subscription-based, and demand-oriented Pricing A usage-based pricing model (also known as consumption-based) relies on the scheme that customers pay according to the amounts of services that they use or consume. models Subscription-based pricing model: is a pricing model that allows customers to pay a subscription fee to use the service for a particular time period. D.Cloud Computing Pricing Model classification: 1.Static Pricing Model:In this model the pricing strategy doesn’t change.It is fixed.Cloud providers announced the price of resource-constrained in advance.Clients already acquainted with how much they will pay. 2.Dynamic Pricing Model: In this model the pricing strategy changes according to market demand. It is not fixed.The user is not familiar with the changing pricing strategy of the services. It is also called as market dependant pricing model. E.Examples of Cloud Pricing Models: Pay-as-you-go Model:It is static model. User pays fixed price for reserved resources. Pricing strategy is determined by cloud service provider. Subscription Model :It is static model. Cloud providers sets the price depends upon lease period. Sometimes user may pay more than utilization.[8] Dynamic Resource Pricing on Federated Clouds: It is dynamic pricing strategy. This is theoretical approach .The price is depends upon supply and demand. Competition based Pricing Model:It is dynamic approach.The pricing strategy is depending upon market competition.It does not take customer’s satisfaction into account. III. LITERATURE SURVEY Cloud platform provides an effective solution for analytics; the developed model can be hosted on the Cloud and consumed by customers in a pay-as-you-go manner. For this delivery model to become reality, this work focuses on the technical aspects and evaluate developed protocol model to provide analytics capabilities for Big Data on the Cloud. This work focuses on the key issues in phases of an analytics solution. With Big data many of the challenges of Cloud analytics concern with data management, integration, and processing. This system enhanced on previously existing models to provide and evaluate data models in the Cloud platform. It provides a solution for data visualization and analytics model over the Cloud. Commercial products In this section, we provide a survey of some of the dominant cloud computing products. Amazon EC2: Amazon Web Services (AWS) [3] is a set of cloud services, providing cloud-based computation, storage and other functionality that enable organizations and individuals to deploy applications and services on an on- demand basis and at commodity prices. Amazon Web Services’ offerings are accessible over HTTP, using REST and SOAP protocols. Amazon Elastic Compute Cloud (Amazon EC2) enables cloud users to launch and manage server instances in data centers using APIs or available tools and utilities. EC2 instances are virtual machines running on top of the Xen virtualization engine [5]. After creating and starting an instance, users can upload software and make changes to it. When changes are finished, they can be bundled as a new machine image. An identical copy can then be launched at any time. Users have nearly full control of the entire software stack on the EC2 instances that look like hardware to them. Microsoft Windows Azure platform: Microsoft’s Windows Azure platform [3] consists of three components and each of them provides a specific set of services to cloud users. Windows Azure provides a Windows based environment for running applications and storing data on servers in data centers; SQL Azure provides data services in the cloud based on SQL Server; and .NET Services offer distributed infrastructure services to cloud-based and local applications. Windows Azure platform can be used both by applications running in the cloud and by applications running on local systems. Windows Azure also supports applications built on the .NET Framework and other ordinary languages supported Pricing Service Cost Market Competition Value to the costumer
  • 3. International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016] Infogain Publication (Infogainpublication.com) ISSN : 2454-1311 www.ijaems.com Page | 1497 in Windows systems, like C#, Visual Basic, C++, and others. Windows Azure supports general-purpose programs, rather than a single class of computing. With each application, the users upload a configuration file that provides an XML-based description of what the application needs. Based on this file, the fabric controller decides where new applications should run, choosing physical servers to optimize hardware utilization. Google App Engine: Google App Engine is a platform for traditional web applications in Google-managed data centers. Currently, the supported programming languages are Python and Java. Web frameworks that run on the Google App Engine include Django, CherryPy, Pylons, and web2py, as well as a custom Google-written web application framework similar to JSP or ASP.NET. Google handles deploying code to a cluster, monitoring, failover, and launching application instances as necessary. Current APIs support features such as storing and retrieving data from a Big Table [10] non- relational database, making HTTP requests and caching. Developers have read-only access to the file system on App Engine. Table 1 summarizes the three examples of popular cloud offerings in terms of the classes of utility computing, target types of application, and more importantly their models of computation, storage and auto-scaling. Apparently, these cloud offerings are based on different levels of abstraction. and management of the resources. Users can choose one type or combinations of several types of cloud are offed. Problem Statement In cloud model, client, cloud service provider and infrastructure provider are participant.While providing a service the main aim of cloud service provider is how to gain profit with good quality of service and customer satisfaction. Often the service provider uses ,the single long term renting scheme in which servers are long term rented. The number of servers in this scheme are less. The pricing strategy in this system is static. Means if the user wont be able to buy the plan according to requirement. Though he needs less space for storage, it was compulsory to buy the plan which gives more storage space and apply more charges. On the other hand it was wastage of memory from providers side as it gives more space than needed was not able to share that space with different users. If request are more then due to less number of servers the request are not served within given period of time.Thus the customer may get unsatisfied and service provider may loose the customer.To overcome this problem the combination of short term renting and long term renting i.e. double quality renting scheme is proposed. In this system the user can choose the space required and duration of the service according to need. If the user is satis_ed then the service provider is successful to attract the customer which helps the cloud provider to maximize revenue with good QoS and customer satisfaction.This is achieved by new proposed model. IV. PROPOSED SYSTEM In this section, a new model has been proposed which avail the a novel renting scheme for service providers, which provides best QoS that satisfies customers service requirements, and will give more profit to service provider. This system proposes a new solution which combines long-term renting with short- term renting under the varying system workload and it also reduce the resource waste greatly. It uses a multiserver system with optimal queuing model and the performance will be analyse with the help of average service charge, the ratio of requests that need short term servers, and so forth.The system provides services[6] such as searching, video encryption and decryption to provide security. The results show that the proposed Double-Quality renting system will give good revenue than the compared single renting scheme with guaranteed service. It also provides security to maintain trust between consumer and service provider. • Each request must be completed within given time period. • The revenue of the service provider increases. • It increases the quality of service . • It provides a trusted relationship between consumers and service providers. 4.1Methodology 4.1.1 Introduction Cloud is made up of both infrastructure and software. Cloud computing enables people to use the services without installing them on their machines. It becomes a highly demanded service due to advantages of high computing power, cheap cost of services, high performance, availability and accessibility. It is also called as on-demand computing. Due to this this service is attracted a lot of interest. The things provided on clients machine by using the process of virtualization. For the process of virtualization it uses resource pooling in which number of virtual and physical resources are dynamically assigned and reassigned according to users need.It provides broad network access i.e. the services can be accessible on cell phones, laptops,tablets or workstations[5].The cloud provisioned for single organization is called as private cloud.It is managed by that organization, or third party or combination of both. The cloud which is designed to use for common people is called as public cloud. The cloud which combines either public, private or community cloud is called hybrid cloud.
  • 4. International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016] Infogain Publication (Infogainpublication.com) ISSN : 2454-1311 www.ijaems.com Page | 1498 4.1.2 System Architecture and Implementation Three different modules area as follows: 1)Client module: It could be either individual customer or associations.The client will buy the plan according to his/her requirements. According to the plan the If the client is registered user then he will login by username and password. The client will buy the plan according to his requirements i.e. required space and time duration will be provided by user. This request will send to BSP.BSP approves the request and send it to ISP for approval. Fig.4.1: System Model After approval of BSP and ISP he can upload the files according to desired plan orhe/she can download the files whenever required. 2)Business Service Provider (BSP) module: It is an entity which rents resources from infrastructure provider. After user registration the request of plan will sent to the BSP.It sends this request to ISP for space allocation. It can be a single entity or an organization. 3)Infrastructure Service Provider(ISP) module: It is an entity which is used to store a large amount of data.The ISP will assign either long term or short term rented servers.If the user requirement is less than 250MB the users file will be stored into short term rented servers.If more than 250MB the long term rented servers get assigned.ISP provides resources to BSP. 4.1.3 System Flow Our system is divided into following phases Fig.4.2: Flow of the System . 1. Registration Phase: Whenever the new user wants to access the system he or she has to do registration first.After registration the OTP get generated which can be used as optional security enhancement to the client.The OTP will send on users registered mobile number.For login into the system the user will enter the OTP first then only he is able to use the services. 2. Buy the Plan After login the user can use the system after buying the plan.The plan is buy according to required space and time.Whatever space user wants he enters it in the multiple of 10MB.He will choose the required time in number of days.The minimum buying plan is 1 day per 10MB. 3. Approval of BSP and ISP When the ISP and BSP will approve the plan then only user is able to access the services.When client request for service it _rst go to BSP.After approval of BSP it goes to ISP.ISP allocates the server according to space and time duration. 4. Upload and Download Phase After the approval of BSP and ISP the user is able to upload and download the files.User can access the files upto specified duration. The files are secured by using AES algorithm.When the duration is expired the user is unable to access the file 4.2 Algorithms 1 Algorithm for Costing: • Input: Storage Space in multple of 10MB(Sn), Storage price for 10MB(St),time price for 1day(Tm),Time in multiple of one day(Tn) Scientific Computin g File Storage Image Processin g User BSP ISP Client registratio n by user name and password Client login by entering OTP Exit Choose and buy the plan Request approved by ISP Request approved by BSP Client can access the services Want to contin Buy plan N Y
  • 5. International Journal of Advanced Engineering, Management and Science (IJAEMS) Infogain Publication (Infogainpublication.com www.ijaems.com • Output: Total cost of the plan for each user do • Calculate storage in multiple of 10MB by using equation A; • Calculate time in multiple of 1 day by using B; • Calculate total cost by adding equation A and B; Total Cost=A+B 2 AES Algorithm AES is a symmetric block cipher algorithm. It is utilize securing data. It acknowledges a 128, 192 or 256 has acceptably quick key setup time and moderately little memory requirements and encodes 128 bits of information at once. Whenever any client or an application uploads any data on the cloud, the data is stored in an encoded format by using AES algorithm at the storage server. V. RESULT ANALYSIS This chapter gives detail description of implemented system. It shows step by step procedure of application. It also includes the difference between an existing system and an implemented system. The existing system provides a service in which the plan was static.User has to buy the plan which was predefined other hand in current system the user will choose the plan according to requirement. Following table shows the comparative analysis of both the systems. Table.1: Pricing Plan for Existing System Space in Multiple of 10Mb Time in Multiple of Days 50 60 100 90 250 180 350 180 Table 1 shows the fix pricing strategy of existing existing system the space and duration is fixed. Means the user wants to buy less space for less time, International Journal of Advanced Engineering, Management and Science (IJAEMS) Infogainpublication.com) for each user do Calculate storage in multiple of 10MB by using Calculate time in multiple of 1 day by using equation Calculate total cost by adding equation A and B; AES is a symmetric block cipher algorithm. It is utilized for edges a 128, 192 or 256-bit key. It ick key setup time and moderately little memory requirements and encodes 128 bits of information at once. Whenever any client or an application uploads any data on the cloud, the data is stored in an encoded format by using ANALYSIS This chapter gives detail description of implemented system. It shows step by step procedure of application. It also includes the difference between an existing system and an implemented service in which the plan was static.User has to buy the plan which was predefined.On the other hand in current system the user will choose the plan Following table shows the ng System Cost 1025 1925 920 1640 Table 1 shows the fix pricing strategy of existing system. In fixed. Means though for less time, he is not able to buy it .User has to select one of the above plan which was nearest to his requirement. Thus requirement. On the other hand the cloud provider was not able to give allocated unused space to other wastage of space also. Table 2: Pricing Plan for Current Space in Multiple of 10Mb Time in Multiple of Days 70 30 120 50 230 100 360 100 Table 2 shows the figures which enter by the user according to his requirement. Thus in current system the plan is of users choice. The user will choose require space and time and will only for usage, not more than that. Fig.4.3: Storage Graph Fig.4.4: [Vol-2, Issue-9, Sept- 2016] ISSN : 2454-1311 Page | 1499 .User has to select one of the above plan which was requirement. Thus he has to pay more than the other hand the cloud provider was not give allocated unused space to other user. Thus it was Pricing Plan for Current System Time in Multiple of Days Cost 185 310 615 544 Table 2 shows the figures which enter by the user according to in current system the plan is of users user will choose require space and time and will more than that. Storage Graph : Price Graph
  • 6. International Journal of Advanced Engineering, Management and Science (IJAEMS) [Vol-2, Issue-9, Sept- 2016] Infogain Publication (Infogainpublication.com) ISSN : 2454-1311 www.ijaems.com Page | 1500 VI. CONCLUSION The proposed system is successfully designed in order to provide a solution to solve the problem of revenue intensification. Additionally the system made it possible to improve the quality of service. As this system is combination of short-term renting with long-term renting, which can reduce the resource waste greatly and adapt to the dynamical demand of computing capacity. It enables user to select the plan according to requirement. The charges apply for the services are fixed. They does not get change according to demand. Thus user is aware of of the cost. The system uses multi-server system in which the servers are allocated as short term rented and long term rented servers. The system outperforms in terms of both quality of service and revenue. This system considers the requirement of both service provider and end user in terms of costing. Thus to get good profit with customer satisfaction this system scheme can be a precious solution. In this paper, I only consider the revenue maximization problem in a homogeneous cloud environment, because the invention in heterogeneous environment is difficult . REFERENCES [1] Jing Mei, Kenli Li, Aijia Ouyang and Keqin Li, "A Profit Maximization Scheme with Guaranteed Quality of Service in Cloud computing"IEEE trans. Vol.75 ,Pp. 1-14 2015. [2] A. Fox, R. Grifth, A. Joseph, R. Katz, A. Konwinski,G. Lee, D. Patterson, A. Rabkin,and I. Stoica, "Above the clouds: A berkeley view of cloud computing," Dept.Electrical Eng. and Computer. Sciences, Vol. 28,Pp. 1-10, 2009. [3] J. Cao, K. Hwang, K. Li, and A. Y. Zomaya,"Optimal multiserver configuration for profit maximization in cloud computing," IEEE Trans. Parallel Distrib. Syst., Vol. 24,no. 6,Pp. 1087, 2013. [4] R. Buyya, C. S. Yeo, S. Venugopal, J. Broberg, andI. Brandic, “Cloud computing and emerging it platforms:Vision, hype, and reality for delivering computing as the5th utility,” Future Gener. Comp. Sy., vol. 25, no. 6, pp. 599–616, 2009. [5] P. Mell and T. Grance, “The NIST definition of cloud computing. National institute of standards and technology, “Information Technology Laboratory, vol. 15, p. 2009, 2009. [6] J. Chen, C. Wang, B. B. Zhou, L. Sun, Y. C. Lee, andA. Y. Zomaya, “Tradeoffs between profit and customer satisfaction for service provisioning in the cloud,” in Proc.20th Int’l Symp. High Performance Distributed Computing.ACM, 2011, pp. 229–238. [7] J. Mei, K. Li, J. Hu, S. Yin, and E. H.-M. Sha, “Energy aware preemptive scheduling algorithm for sporadic tasks on dvs platform,” MICROPROCESS MICROSY., vol. 37,no. 1, pp. 99–112, 2013. [8] Taj Eldin Suliman M. Ali, “Pricing Models for Cloud Computing Services, a Survey,” International Journal of Computer Applications Technology and Researc,Vol 5 2008. [9] May Al-Roomi, Shaikha Al-Ebrahim, Sabika Buqrais and Imtiaz Ahmad,“Cloud Computing Pricing Models: A Survey”, International Journal of Grid and Distributed Computing,Vol.6,Pp.93-106, 2013