SlideShare une entreprise Scribd logo
1  sur  10
QoS Ranking Prediction for Cloud Services
ABSTRACT:
Cloud computing is becoming popular. Building high-quality cloud applications is
a critical research problem. QoS rankings provide valuable information for making
optimal cloud service selection from a set of functionally equivalent service
candidates. To obtain QoS values, real-world invocations on the service candidates
are usually required. To avoid the time-consuming and expensive real-world
service invocations, this paper proposes a QoS ranking prediction framework for
cloud services by taking advantage of the past service usage experiences of other
consumers. Our proposed framework requires no additional invocations of cloud
services when making QoS ranking prediction. Two personalized QoS ranking
prediction approaches are proposed to predict the QoS rankings directly.
Comprehensive experiments are conducted employing real-world QoS data,
including 300 distributed users and 500 real world web services all over the world.
The experimental results show that our approaches outperform other competing
approaches.
EXISTING SYSTEM:
QoS is an important research topic in cloud computing. When making optimal
cloud service selection from a set of functionally equivalent services, QoS values
of cloud services provide valuable information to assist decision making. In
traditional component-based systems, software components are invoked locally,
while in cloud applications, cloud services are invoked remotely by Internet
connections. Client-side performance of cloud services is thus greatly influenced
by the unpredictable Internet connections. Therefore, different cloud applications
may receive different levels of quality for the same cloud service. In other words,
the QoS ranking of cloud services for a user (e.g.,cloud application1) cannot be
transferred directly to another user (e.g.,cloud application2), since the locations of
the cloud applications are quite different. Personalized cloud service QoS ranking
is thus required for different cloud applications.
DISADVANTAGES OF EXISTING SYSTEM:
This approach is impractical in reality, since invocations of cloud services may be
charged. Even if the invocations are free, executing a large number of service
invocations is time consuming and resource consuming, and some service
invocations may produce irreversible effects in the real world.
When the number of candidate services is large, it is difficult for the cloud
application designers to evaluate all the cloud services efficiently.
PROPOSED SYSTEM:
In this paper, we propose a personalized ranking prediction framework, named
Cloud Rank, to predict the QoS ranking of a set of cloud services without requiring
additional real-world service invocations from the intended users. Our approach
takes advantage of the past usage experiences of other users for making
personalized ranking prediction for the current user.
ADVANTAGES OF PROPOSED SYSTEM:
This paper identifies the critical problem of personalized QoS ranking for cloud
services and proposes a QoS ranking prediction framework to address the problem.
Extensive real-world experiments are conducted to study the ranking prediction
accuracy of our ranking prediction algorithms compared with other competing
ranking algorithms
SYSTEM ARCHITECTURE:
ALGORITHMS USED:
SYSTEM REQUIREMENTS:
HARDWARE REQUIREMENTS:
System : Pentium IV 2.4 GHz.
Hard Disk : 40 GB.
Monitor : 15 inch VGA Colour.
Mouse : Logitech Mouse.
Ram : 512 MB
Keyboard : Standard Keyboard
SOFTWARE REQUIREMENTS:
Operating System : Windows XP.
Coding Language : ASP.NET, C#.Net.
Database : SQL Server 2005
REFERENCE:
Zibin Zheng,Member, IEEE, Xinmiao Wu, Yilei Zhang, Student Member, IEEE,
Michael R. Lyu,Fellow, IEEE, and Jianmin Wang “QoS Ranking Prediction for
Cloud Services”- IEEE TRANSACTIONS ON PARALLEL AND
DISTRIBUTED SYSTEMS, VOL. 24, NO. 6, JUNE 2013.

Contenu connexe

En vedette

A decentralized service discovery approach on peer to-peer networks
A decentralized service discovery approach on peer to-peer networksA decentralized service discovery approach on peer to-peer networks
A decentralized service discovery approach on peer to-peer networksJPINFOTECH JAYAPRAKASH
 
A secure protocol for spontaneous wireless ad hoc networks creation
A secure protocol for spontaneous wireless ad hoc networks creationA secure protocol for spontaneous wireless ad hoc networks creation
A secure protocol for spontaneous wireless ad hoc networks creationJPINFOTECH JAYAPRAKASH
 
Security analysis of a single sign on mechanism for distributed computer netw...
Security analysis of a single sign on mechanism for distributed computer netw...Security analysis of a single sign on mechanism for distributed computer netw...
Security analysis of a single sign on mechanism for distributed computer netw...JPINFOTECH JAYAPRAKASH
 
A neighbor coverage based probabilistic rebroadcast for reducing routing over...
A neighbor coverage based probabilistic rebroadcast for reducing routing over...A neighbor coverage based probabilistic rebroadcast for reducing routing over...
A neighbor coverage based probabilistic rebroadcast for reducing routing over...JPINFOTECH JAYAPRAKASH
 
A privacy leakage upper bound constraint based approach for cost-effective pr...
A privacy leakage upper bound constraint based approach for cost-effective pr...A privacy leakage upper bound constraint based approach for cost-effective pr...
A privacy leakage upper bound constraint based approach for cost-effective pr...JPINFOTECH JAYAPRAKASH
 
Privacy preserving data sharing with anonymous id assignment
Privacy preserving data sharing with anonymous id assignmentPrivacy preserving data sharing with anonymous id assignment
Privacy preserving data sharing with anonymous id assignmentJPINFOTECH JAYAPRAKASH
 
Optimal client server assignment for internet distributed systems
Optimal client server assignment for internet distributed systemsOptimal client server assignment for internet distributed systems
Optimal client server assignment for internet distributed systemsJPINFOTECH JAYAPRAKASH
 
Protecting sensitive labels in social network data anonymization
Protecting sensitive labels in social network data anonymizationProtecting sensitive labels in social network data anonymization
Protecting sensitive labels in social network data anonymizationJPINFOTECH JAYAPRAKASH
 
Dcim distributed cache invalidation method for maintaining cache consistency ...
Dcim distributed cache invalidation method for maintaining cache consistency ...Dcim distributed cache invalidation method for maintaining cache consistency ...
Dcim distributed cache invalidation method for maintaining cache consistency ...JPINFOTECH JAYAPRAKASH
 
A system for denial of-service attack detection based on multivariate correla...
A system for denial of-service attack detection based on multivariate correla...A system for denial of-service attack detection based on multivariate correla...
A system for denial of-service attack detection based on multivariate correla...JPINFOTECH JAYAPRAKASH
 
Optimizing cloud resources for delivering iptv services through virtualization
Optimizing cloud resources for delivering iptv services through virtualizationOptimizing cloud resources for delivering iptv services through virtualization
Optimizing cloud resources for delivering iptv services through virtualizationJPINFOTECH JAYAPRAKASH
 
A method for mining infrequent causal associations and its application in fin...
A method for mining infrequent causal associations and its application in fin...A method for mining infrequent causal associations and its application in fin...
A method for mining infrequent causal associations and its application in fin...JPINFOTECH JAYAPRAKASH
 
An efficient and robust addressing protocol for node auto configuration in ad...
An efficient and robust addressing protocol for node auto configuration in ad...An efficient and robust addressing protocol for node auto configuration in ad...
An efficient and robust addressing protocol for node auto configuration in ad...JPINFOTECH JAYAPRAKASH
 
Mobi sync efficient time synchronization for mobile underwater sensor networks
Mobi sync efficient time synchronization for mobile underwater sensor networksMobi sync efficient time synchronization for mobile underwater sensor networks
Mobi sync efficient time synchronization for mobile underwater sensor networksJPINFOTECH JAYAPRAKASH
 
Cloud ftp a case study of migrating traditional applications to the cloud
Cloud ftp a case study of migrating traditional applications to the cloudCloud ftp a case study of migrating traditional applications to the cloud
Cloud ftp a case study of migrating traditional applications to the cloudJPINFOTECH JAYAPRAKASH
 
Query adaptive image search with hash codes
Query adaptive image search with hash codesQuery adaptive image search with hash codes
Query adaptive image search with hash codesJPINFOTECH JAYAPRAKASH
 

En vedette (17)

A decentralized service discovery approach on peer to-peer networks
A decentralized service discovery approach on peer to-peer networksA decentralized service discovery approach on peer to-peer networks
A decentralized service discovery approach on peer to-peer networks
 
A secure protocol for spontaneous wireless ad hoc networks creation
A secure protocol for spontaneous wireless ad hoc networks creationA secure protocol for spontaneous wireless ad hoc networks creation
A secure protocol for spontaneous wireless ad hoc networks creation
 
Security analysis of a single sign on mechanism for distributed computer netw...
Security analysis of a single sign on mechanism for distributed computer netw...Security analysis of a single sign on mechanism for distributed computer netw...
Security analysis of a single sign on mechanism for distributed computer netw...
 
A neighbor coverage based probabilistic rebroadcast for reducing routing over...
A neighbor coverage based probabilistic rebroadcast for reducing routing over...A neighbor coverage based probabilistic rebroadcast for reducing routing over...
A neighbor coverage based probabilistic rebroadcast for reducing routing over...
 
A privacy leakage upper bound constraint based approach for cost-effective pr...
A privacy leakage upper bound constraint based approach for cost-effective pr...A privacy leakage upper bound constraint based approach for cost-effective pr...
A privacy leakage upper bound constraint based approach for cost-effective pr...
 
Privacy preserving data sharing with anonymous id assignment
Privacy preserving data sharing with anonymous id assignmentPrivacy preserving data sharing with anonymous id assignment
Privacy preserving data sharing with anonymous id assignment
 
Optimal client server assignment for internet distributed systems
Optimal client server assignment for internet distributed systemsOptimal client server assignment for internet distributed systems
Optimal client server assignment for internet distributed systems
 
Protecting sensitive labels in social network data anonymization
Protecting sensitive labels in social network data anonymizationProtecting sensitive labels in social network data anonymization
Protecting sensitive labels in social network data anonymization
 
Dcim distributed cache invalidation method for maintaining cache consistency ...
Dcim distributed cache invalidation method for maintaining cache consistency ...Dcim distributed cache invalidation method for maintaining cache consistency ...
Dcim distributed cache invalidation method for maintaining cache consistency ...
 
A system for denial of-service attack detection based on multivariate correla...
A system for denial of-service attack detection based on multivariate correla...A system for denial of-service attack detection based on multivariate correla...
A system for denial of-service attack detection based on multivariate correla...
 
2013 2014 ieee dotnet project titles
2013 2014 ieee dotnet project titles2013 2014 ieee dotnet project titles
2013 2014 ieee dotnet project titles
 
Optimizing cloud resources for delivering iptv services through virtualization
Optimizing cloud resources for delivering iptv services through virtualizationOptimizing cloud resources for delivering iptv services through virtualization
Optimizing cloud resources for delivering iptv services through virtualization
 
A method for mining infrequent causal associations and its application in fin...
A method for mining infrequent causal associations and its application in fin...A method for mining infrequent causal associations and its application in fin...
A method for mining infrequent causal associations and its application in fin...
 
An efficient and robust addressing protocol for node auto configuration in ad...
An efficient and robust addressing protocol for node auto configuration in ad...An efficient and robust addressing protocol for node auto configuration in ad...
An efficient and robust addressing protocol for node auto configuration in ad...
 
Mobi sync efficient time synchronization for mobile underwater sensor networks
Mobi sync efficient time synchronization for mobile underwater sensor networksMobi sync efficient time synchronization for mobile underwater sensor networks
Mobi sync efficient time synchronization for mobile underwater sensor networks
 
Cloud ftp a case study of migrating traditional applications to the cloud
Cloud ftp a case study of migrating traditional applications to the cloudCloud ftp a case study of migrating traditional applications to the cloud
Cloud ftp a case study of migrating traditional applications to the cloud
 
Query adaptive image search with hash codes
Query adaptive image search with hash codesQuery adaptive image search with hash codes
Query adaptive image search with hash codes
 

Similaire à Qos ranking prediction for cloud services

Qo s ranking prediction for cloud services abstract
Qo s ranking prediction for cloud services abstractQo s ranking prediction for cloud services abstract
Qo s ranking prediction for cloud services abstractravi778787
 
DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...
DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...
DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...IEEEGLOBALSOFTTECHNOLOGIES
 
Qo s ranking prediction for cloud services
Qo s ranking prediction for cloud servicesQo s ranking prediction for cloud services
Qo s ranking prediction for cloud servicesIEEEFINALYEARPROJECTS
 
JAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud services
JAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud servicesJAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud services
JAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud servicesIEEEGLOBALSOFTTECHNOLOGIES
 
Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...
Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...
Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...redpel dot com
 
Webservicerecommendationviaexploitinglocationandqosinformation
WebservicerecommendationviaexploitinglocationandqosinformationWebservicerecommendationviaexploitinglocationandqosinformation
WebservicerecommendationviaexploitinglocationandqosinformationShakas Technologies
 
JPJ1453 Web Service Recommendation via Exploiting Location and QoS Information
JPJ1453 Web Service Recommendation via Exploiting Location and QoS InformationJPJ1453 Web Service Recommendation via Exploiting Location and QoS Information
JPJ1453 Web Service Recommendation via Exploiting Location and QoS Informationchennaijp
 
web service recommendation via exploiting location and qo s information
web service recommendation via exploiting location and qo s informationweb service recommendation via exploiting location and qo s information
web service recommendation via exploiting location and qo s informationswathi78
 
Location aware and personalized
Location aware and personalizedLocation aware and personalized
Location aware and personalizedjpstudcorner
 
Hire some ii towards privacy-aware cross-cloud service composition for big da...
Hire some ii towards privacy-aware cross-cloud service composition for big da...Hire some ii towards privacy-aware cross-cloud service composition for big da...
Hire some ii towards privacy-aware cross-cloud service composition for big da...ieeepondy
 
Personalized qos aware web service recommendation and visualization
Personalized qos aware web service recommendation and visualizationPersonalized qos aware web service recommendation and visualization
Personalized qos aware web service recommendation and visualizationJPINFOTECH JAYAPRAKASH
 
A Cloud Service Selection Model Based on User-Specified Quality of Service Level
A Cloud Service Selection Model Based on User-Specified Quality of Service LevelA Cloud Service Selection Model Based on User-Specified Quality of Service Level
A Cloud Service Selection Model Based on User-Specified Quality of Service Levelcsandit
 
A cloud service selection model based
A cloud service selection model basedA cloud service selection model based
A cloud service selection model basedcsandit
 
Score based deadline constrained workflow scheduling algorithm for cloud systems
Score based deadline constrained workflow scheduling algorithm for cloud systemsScore based deadline constrained workflow scheduling algorithm for cloud systems
Score based deadline constrained workflow scheduling algorithm for cloud systemsijccsa
 
QOS Aware Formalized Model for Semantic Web Service Selection
QOS Aware Formalized Model for Semantic Web Service SelectionQOS Aware Formalized Model for Semantic Web Service Selection
QOS Aware Formalized Model for Semantic Web Service SelectionIJwest
 
A ranking mechanism for better retrieval of data from cloud
A ranking mechanism for better retrieval of data from cloudA ranking mechanism for better retrieval of data from cloud
A ranking mechanism for better retrieval of data from cloudeSAT Publishing House
 
Compatibility aware cloud service composition under fuzzy preferences of users
Compatibility aware cloud service composition under fuzzy preferences of usersCompatibility aware cloud service composition under fuzzy preferences of users
Compatibility aware cloud service composition under fuzzy preferences of usersNexgen Technology
 
REVIEW 2 PDC 20BCE1577.pptx
REVIEW 2 PDC 20BCE1577.pptxREVIEW 2 PDC 20BCE1577.pptx
REVIEW 2 PDC 20BCE1577.pptxpraful91
 
Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...
Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...
Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...Microsoft Private Cloud
 

Similaire à Qos ranking prediction for cloud services (20)

Qo s ranking prediction for cloud services abstract
Qo s ranking prediction for cloud services abstractQo s ranking prediction for cloud services abstract
Qo s ranking prediction for cloud services abstract
 
DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...
DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...
DOTNET 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud serv...
 
Qo s ranking prediction for cloud services
Qo s ranking prediction for cloud servicesQo s ranking prediction for cloud services
Qo s ranking prediction for cloud services
 
JAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud services
JAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud servicesJAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud services
JAVA 2013 IEEE CLOUDCOMPUTING PROJECT Qos ranking prediction for cloud services
 
Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...
Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...
Web Service QoS Prediction Based on Adaptive Dynamic Programming Using Fuzzy ...
 
Webservicerecommendationviaexploitinglocationandqosinformation
WebservicerecommendationviaexploitinglocationandqosinformationWebservicerecommendationviaexploitinglocationandqosinformation
Webservicerecommendationviaexploitinglocationandqosinformation
 
JPJ1453 Web Service Recommendation via Exploiting Location and QoS Information
JPJ1453 Web Service Recommendation via Exploiting Location and QoS InformationJPJ1453 Web Service Recommendation via Exploiting Location and QoS Information
JPJ1453 Web Service Recommendation via Exploiting Location and QoS Information
 
web service recommendation via exploiting location and qo s information
web service recommendation via exploiting location and qo s informationweb service recommendation via exploiting location and qo s information
web service recommendation via exploiting location and qo s information
 
Location aware and personalized
Location aware and personalizedLocation aware and personalized
Location aware and personalized
 
Hire some ii towards privacy-aware cross-cloud service composition for big da...
Hire some ii towards privacy-aware cross-cloud service composition for big da...Hire some ii towards privacy-aware cross-cloud service composition for big da...
Hire some ii towards privacy-aware cross-cloud service composition for big da...
 
Personalized qos aware web service recommendation and visualization
Personalized qos aware web service recommendation and visualizationPersonalized qos aware web service recommendation and visualization
Personalized qos aware web service recommendation and visualization
 
A Cloud Service Selection Model Based on User-Specified Quality of Service Level
A Cloud Service Selection Model Based on User-Specified Quality of Service LevelA Cloud Service Selection Model Based on User-Specified Quality of Service Level
A Cloud Service Selection Model Based on User-Specified Quality of Service Level
 
A cloud service selection model based
A cloud service selection model basedA cloud service selection model based
A cloud service selection model based
 
Score based deadline constrained workflow scheduling algorithm for cloud systems
Score based deadline constrained workflow scheduling algorithm for cloud systemsScore based deadline constrained workflow scheduling algorithm for cloud systems
Score based deadline constrained workflow scheduling algorithm for cloud systems
 
65 72
65 7265 72
65 72
 
QOS Aware Formalized Model for Semantic Web Service Selection
QOS Aware Formalized Model for Semantic Web Service SelectionQOS Aware Formalized Model for Semantic Web Service Selection
QOS Aware Formalized Model for Semantic Web Service Selection
 
A ranking mechanism for better retrieval of data from cloud
A ranking mechanism for better retrieval of data from cloudA ranking mechanism for better retrieval of data from cloud
A ranking mechanism for better retrieval of data from cloud
 
Compatibility aware cloud service composition under fuzzy preferences of users
Compatibility aware cloud service composition under fuzzy preferences of usersCompatibility aware cloud service composition under fuzzy preferences of users
Compatibility aware cloud service composition under fuzzy preferences of users
 
REVIEW 2 PDC 20BCE1577.pptx
REVIEW 2 PDC 20BCE1577.pptxREVIEW 2 PDC 20BCE1577.pptx
REVIEW 2 PDC 20BCE1577.pptx
 
Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...
Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...
Microsoft Windows Azure - SAOSTA Professional Services Simulate Real World In...
 

Dernier

Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfTechSoup
 
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)lakshayb543
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
What is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERPWhat is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERPCeline George
 
Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Celine George
 
Judging the Relevance and worth of ideas part 2.pptx
Judging the Relevance  and worth of ideas part 2.pptxJudging the Relevance  and worth of ideas part 2.pptx
Judging the Relevance and worth of ideas part 2.pptxSherlyMaeNeri
 
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...Postal Advocate Inc.
 
Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Mark Reed
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYKayeClaireEstoconing
 
Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Celine George
 
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdfLike-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdfMr Bounab Samir
 
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...JhezDiaz1
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfphamnguyenenglishnb
 
ENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomnelietumpap1
 
Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17Celine George
 

Dernier (20)

YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptxYOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
 
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
 
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
 
What is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERPWhat is Model Inheritance in Odoo 17 ERP
What is Model Inheritance in Odoo 17 ERP
 
Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17
 
LEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptx
LEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptxLEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptx
LEFT_ON_C'N_ PRELIMS_EL_DORADO_2024.pptx
 
Judging the Relevance and worth of ideas part 2.pptx
Judging the Relevance  and worth of ideas part 2.pptxJudging the Relevance  and worth of ideas part 2.pptx
Judging the Relevance and worth of ideas part 2.pptx
 
Raw materials used in Herbal Cosmetics.pptx
Raw materials used in Herbal Cosmetics.pptxRaw materials used in Herbal Cosmetics.pptx
Raw materials used in Herbal Cosmetics.pptx
 
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
 
Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)
 
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITYISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
ISYU TUNGKOL SA SEKSWLADIDA (ISSUE ABOUT SEXUALITY
 
Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17
 
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdfLike-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
Like-prefer-love -hate+verb+ing & silent letters & citizenship text.pdf
 
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
ENGLISH 7_Q4_LESSON 2_ Employing a Variety of Strategies for Effective Interp...
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
 
ENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choomENGLISH6-Q4-W3.pptxqurter our high choom
ENGLISH6-Q4-W3.pptxqurter our high choom
 
Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17Computed Fields and api Depends in the Odoo 17
Computed Fields and api Depends in the Odoo 17
 
OS-operating systems- ch04 (Threads) ...
OS-operating systems- ch04 (Threads) ...OS-operating systems- ch04 (Threads) ...
OS-operating systems- ch04 (Threads) ...
 

Qos ranking prediction for cloud services

  • 1. QoS Ranking Prediction for Cloud Services ABSTRACT: Cloud computing is becoming popular. Building high-quality cloud applications is a critical research problem. QoS rankings provide valuable information for making optimal cloud service selection from a set of functionally equivalent service candidates. To obtain QoS values, real-world invocations on the service candidates are usually required. To avoid the time-consuming and expensive real-world service invocations, this paper proposes a QoS ranking prediction framework for cloud services by taking advantage of the past service usage experiences of other consumers. Our proposed framework requires no additional invocations of cloud services when making QoS ranking prediction. Two personalized QoS ranking prediction approaches are proposed to predict the QoS rankings directly. Comprehensive experiments are conducted employing real-world QoS data, including 300 distributed users and 500 real world web services all over the world. The experimental results show that our approaches outperform other competing approaches.
  • 2. EXISTING SYSTEM: QoS is an important research topic in cloud computing. When making optimal cloud service selection from a set of functionally equivalent services, QoS values of cloud services provide valuable information to assist decision making. In traditional component-based systems, software components are invoked locally, while in cloud applications, cloud services are invoked remotely by Internet connections. Client-side performance of cloud services is thus greatly influenced by the unpredictable Internet connections. Therefore, different cloud applications may receive different levels of quality for the same cloud service. In other words, the QoS ranking of cloud services for a user (e.g.,cloud application1) cannot be transferred directly to another user (e.g.,cloud application2), since the locations of the cloud applications are quite different. Personalized cloud service QoS ranking is thus required for different cloud applications. DISADVANTAGES OF EXISTING SYSTEM: This approach is impractical in reality, since invocations of cloud services may be charged. Even if the invocations are free, executing a large number of service invocations is time consuming and resource consuming, and some service invocations may produce irreversible effects in the real world.
  • 3. When the number of candidate services is large, it is difficult for the cloud application designers to evaluate all the cloud services efficiently. PROPOSED SYSTEM: In this paper, we propose a personalized ranking prediction framework, named Cloud Rank, to predict the QoS ranking of a set of cloud services without requiring additional real-world service invocations from the intended users. Our approach takes advantage of the past usage experiences of other users for making personalized ranking prediction for the current user. ADVANTAGES OF PROPOSED SYSTEM: This paper identifies the critical problem of personalized QoS ranking for cloud services and proposes a QoS ranking prediction framework to address the problem. Extensive real-world experiments are conducted to study the ranking prediction accuracy of our ranking prediction algorithms compared with other competing ranking algorithms
  • 6.
  • 7.
  • 8.
  • 9. SYSTEM REQUIREMENTS: HARDWARE REQUIREMENTS: System : Pentium IV 2.4 GHz. Hard Disk : 40 GB. Monitor : 15 inch VGA Colour. Mouse : Logitech Mouse. Ram : 512 MB Keyboard : Standard Keyboard SOFTWARE REQUIREMENTS: Operating System : Windows XP. Coding Language : ASP.NET, C#.Net. Database : SQL Server 2005 REFERENCE: Zibin Zheng,Member, IEEE, Xinmiao Wu, Yilei Zhang, Student Member, IEEE, Michael R. Lyu,Fellow, IEEE, and Jianmin Wang “QoS Ranking Prediction for
  • 10. Cloud Services”- IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, VOL. 24, NO. 6, JUNE 2013.