SlideShare a Scribd company logo
1 of 7
BESTPEER++: A PEER-TO-PEER BASED LARGE-SCALE 
DATA PROCESSING PLATFORM 
ABSTRACT: 
The corporate network is often used for sharing information 
among the participating companies and facilitating collaboration 
in a certain industry sector where companies share a common 
interest. It can effectively help the companies to reduce their 
operational costs and increase the revenues. However, the inter-company 
data sharing and processing poses unique challenges to 
such a data management system including scalability, 
performance, throughput, and security. In this paper, we present 
BestPeer++, a system which delivers elastic data sharing 
services for corporate network applications in the cloud based 
on BestPeer—a peer-to-peer (P2P) based data management 
platform. By integrating cloud computing, database, and P2P 
technologies into one system, BestPeer++ provides an 
economical, flexible and scalable platform for corporate network 
applications and delivers data sharing services to participants
based on the widely accepted pay-as-you-go business model. 
We evaluate BestPeer++ on Amazon EC2 Cloud platform. The 
benchmarking results show that BestPeer++ outperforms 
HadoopDB, a recently proposed large-scale data processing 
system, in performance when both systems are employed to 
handle typical corporate network workloads. The benchmarking 
results also demonstrate that BestPeer++ achieves near linear 
scalability for throughput with respect to the number of peer 
nodes. 
EXISTING SYSTEM: 
The corporate network needs to scale up to support 
thousands of participants, while the installation of a large-scale 
centralized data warehouse system entails nontrivial costs 
including huge hardware/software investments (a.k.a total cost 
of ownership) and high maintenance cost (a.k.a total cost of 
operations). In the real world, most companies are not keen to 
invest heavily on additional information systems until they can 
clearly see the potential return on investment (ROI). Second,
companies want to fully customize the access control policy to 
determine which business partners can see which part of their 
shared data. Unfortunately, most of the data warehouse solutions 
fail to offer such flexibilities. Finally, to maximize the revenues, 
companies often dynamically adjust their business process and 
may change their business partners. Therefore, the participants 
may join and leave the corporate networks at will. The data 
warehouse solution has not been designed to handle such 
dynamicity. 
DISADVANTAGES OF EXISTING SYSTEM: 
· Its most of the data warehouse solutions fail to offer 
flexibilities. 
· Its warehousing solution has some deficiencies in real 
deployment. 
· It is expensive.
PROPOSED SYSTEM: 
BestPeer++ achieves its query processing efficiency and is 
a promising approach for corporate network applications, with 
the following distinguished features. BestPeer++ is deployed as 
service in the cloud. To form a corporate network, companies 
simply register their sites with the BestPeer++ service provider, 
launch BestPeer++ instances in the cloud and finally export data 
to those instances for sharing. BestPeer++ adopts the pay-as-you- 
go business model popularized by cloud computing. The 
total cost of ownership is therefore substantially reduced since 
companies do not have to buy any hardware/software in 
advance. Instead, they pay for what they use in terms of 
BestPeer++ instance’s hours and storage capacity. BestPeer++ 
extends the role-based access control for the inherent distributed 
environment of corporate networks. Through a web console 
interface, companies can easily configure their access control 
policies and prevent undesired business partners to access their 
shared data. BestPeer++ employs P2P technology to retrieve
data between business partners. BestPeer++ instances are 
organized as a structured P2P overlay network named BATON. 
The data are indexed by the table name, column name and data 
range for efficient retrieval. BestPeer++ employs a hybrid 
design for achieving high performance query processing. The 
major workload of a corporate network is simple, lowoverhead 
queries. Such queries typically only involve querying a very 
small number of business partners and can be processed in short 
time. Best- Peer++ is mainly optimized for these queries. For 
infrequent time-consuming analytical tasks, we provide an 
interface for exporting the data from Best- Peer++ to Hadoop 
and allow users to analyze those data using MapReduce. 
ADVANTAGES OF PROPOSED SYSTEM: 
· It provides economical, flexible and scalable solutions for 
corporate network applications. 
· It is more efficient. 
· It prevent undesired business partners to access their shared 
data.
SYSTEM CONFIGURATION:- 
HARDWARE REQUIREMENTS:- 
 Processor - Pentium –IV 
 Speed - 1.1 Ghz 
 RAM - 512 MB(min) 
 Hard Disk - 40 GB 
 Key Board - Standard Windows Keyboard 
 Mouse - Two or Three Button Mouse 
 Monitor - LCD/LED 
SOFTWARE REQUIREMENTS: 
• Operating system : Windows XP
• 
• 
• 
Coding Language : Java 
• Data Base : MySQL 
• Tool : Net Beans IDE 
REFERENCE: 
Gang Chen, Tianlei Hu, Dawei Jiang, Peng Lu, Kian-Lee Tan, Hoang Tam Vo, and 
Sai Wu “BestPeer++: A Peer-to-Peer Based Large-Scale Data Processing 
Platform” IEEE TRANSACTIONS ON KNOWLEDGE AND DATA 
ENGINEERING, VOL. 26, NO. 6, JUNE 2014.

More Related Content

What's hot

IBM - Transformation digitale et le SI des banques
IBM - Transformation digitale et le SI des banquesIBM - Transformation digitale et le SI des banques
IBM - Transformation digitale et le SI des banquesRodolphe Lezennec
 
Preparing for next-generation cloud: Lessons learned and insights shared
Preparing for next-generation cloud: Lessons learned and insights sharedPreparing for next-generation cloud: Lessons learned and insights shared
Preparing for next-generation cloud: Lessons learned and insights sharedThe Economist Media Businesses
 
Building the Enterprise Data Lake - Important Considerations Before You Jump In
Building the Enterprise Data Lake - Important Considerations Before You Jump InBuilding the Enterprise Data Lake - Important Considerations Before You Jump In
Building the Enterprise Data Lake - Important Considerations Before You Jump InSnapLogic
 
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...Denodo
 
Transform Your Mainframe with Microsoft Azure
Transform Your Mainframe with Microsoft AzureTransform Your Mainframe with Microsoft Azure
Transform Your Mainframe with Microsoft AzurePrecisely
 
SnapLogic Cloud Integration
SnapLogic Cloud IntegrationSnapLogic Cloud Integration
SnapLogic Cloud IntegrationSnapLogic
 
Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins
 Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins
Big Data Fabric for At-Scale Real-Time Analysis by Edwin RobbinsData Con LA
 
Open Development
Open DevelopmentOpen Development
Open DevelopmentMedsphere
 
Filling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview Presentation
Filling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview PresentationFilling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview Presentation
Filling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview PresentationPentaho
 
IBM InfoSphere Data Replication for Big Data
IBM InfoSphere Data Replication for Big DataIBM InfoSphere Data Replication for Big Data
IBM InfoSphere Data Replication for Big DataIBM Analytics
 
Information Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data LakesInformation Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data LakesDataWorks Summit
 
Creating Agility Through Data Governance and Self-service Integration with S...
Creating Agility Through Data Governance and Self-service Integration with S...Creating Agility Through Data Governance and Self-service Integration with S...
Creating Agility Through Data Governance and Self-service Integration with S...SnapLogic
 
Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...
Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...
Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...Hitachi Vantara
 
Data center convergence
Data center convergenceData center convergence
Data center convergenceronpoul
 
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your ProductDell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your ProductManuel "Manny" Rodriguez-Perez
 

What's hot (18)

IBM - Transformation digitale et le SI des banques
IBM - Transformation digitale et le SI des banquesIBM - Transformation digitale et le SI des banques
IBM - Transformation digitale et le SI des banques
 
Preparing for next-generation cloud: Lessons learned and insights shared
Preparing for next-generation cloud: Lessons learned and insights sharedPreparing for next-generation cloud: Lessons learned and insights shared
Preparing for next-generation cloud: Lessons learned and insights shared
 
Building the Enterprise Data Lake - Important Considerations Before You Jump In
Building the Enterprise Data Lake - Important Considerations Before You Jump InBuilding the Enterprise Data Lake - Important Considerations Before You Jump In
Building the Enterprise Data Lake - Important Considerations Before You Jump In
 
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
Designing an Agile Fast Data Architecture for Big Data Ecosystem using Logica...
 
Transform Your Mainframe with Microsoft Azure
Transform Your Mainframe with Microsoft AzureTransform Your Mainframe with Microsoft Azure
Transform Your Mainframe with Microsoft Azure
 
SnapLogic Cloud Integration
SnapLogic Cloud IntegrationSnapLogic Cloud Integration
SnapLogic Cloud Integration
 
Data as a service
Data as a serviceData as a service
Data as a service
 
Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins
 Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins
Big Data Fabric for At-Scale Real-Time Analysis by Edwin Robbins
 
Data Mesh
Data MeshData Mesh
Data Mesh
 
Open Development
Open DevelopmentOpen Development
Open Development
 
Filling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview Presentation
Filling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview PresentationFilling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview Presentation
Filling the Data Lake - Strata + HadoopWorld San Jose 2016 Preview Presentation
 
IBM InfoSphere Data Replication for Big Data
IBM InfoSphere Data Replication for Big DataIBM InfoSphere Data Replication for Big Data
IBM InfoSphere Data Replication for Big Data
 
Information Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data LakesInformation Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data Lakes
 
Creating Agility Through Data Governance and Self-service Integration with S...
Creating Agility Through Data Governance and Self-service Integration with S...Creating Agility Through Data Governance and Self-service Integration with S...
Creating Agility Through Data Governance and Self-service Integration with S...
 
Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...
Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...
Achieve Higher Quality Decisions Faster for a Competitive Edge in the Oil and...
 
Data center convergence
Data center convergenceData center convergence
Data center convergence
 
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your ProductDell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
 
IBM 2016 - Six reasons to upgrade your database
IBM 2016 - Six reasons to upgrade your databaseIBM 2016 - Six reasons to upgrade your database
IBM 2016 - Six reasons to upgrade your database
 

Similar to Bestpeer++ a peer to-peer based large-scale data processing platform

2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...
2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...
2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...IEEEMEMTECHSTUDENTSPROJECTS
 
data-mesh_whitepaper_dec2021.pdf
data-mesh_whitepaper_dec2021.pdfdata-mesh_whitepaper_dec2021.pdf
data-mesh_whitepaper_dec2021.pdfssuser18927d
 
Making Multicloud Application Integration More Efficient
Making Multicloud Application Integration More EfficientMaking Multicloud Application Integration More Efficient
Making Multicloud Application Integration More EfficientCognizant
 
Monitoring IAAS & PAAS Solutions
Monitoring IAAS & PAAS SolutionsMonitoring IAAS & PAAS Solutions
Monitoring IAAS & PAAS SolutionsColloquium
 
Webinar: Faster Big Data Analytics with MongoDB
Webinar: Faster Big Data Analytics with MongoDBWebinar: Faster Big Data Analytics with MongoDB
Webinar: Faster Big Data Analytics with MongoDBMongoDB
 
Hashtag Recommendation System in a P2P Social Networking Application
Hashtag Recommendation System in a P2P Social Networking ApplicationHashtag Recommendation System in a P2P Social Networking Application
Hashtag Recommendation System in a P2P Social Networking Applicationcsandit
 
IDC WHITE PAPER - IBM PureFlex System Ready for Cloud
IDC WHITE PAPER - IBM PureFlex System Ready for CloudIDC WHITE PAPER - IBM PureFlex System Ready for Cloud
IDC WHITE PAPER - IBM PureFlex System Ready for CloudAngel Villar Garea
 
Operational Improvement Issues, Impacts and Solution from RackN
Operational Improvement Issues, Impacts and Solution from RackNOperational Improvement Issues, Impacts and Solution from RackN
Operational Improvement Issues, Impacts and Solution from RackNRackN
 
Cloud Computing for Small & Medium Businesses
Cloud Computing for Small & Medium BusinessesCloud Computing for Small & Medium Businesses
Cloud Computing for Small & Medium BusinessesAl Sabawi
 
HyperconvergedFantasyAnalytics
HyperconvergedFantasyAnalyticsHyperconvergedFantasyAnalytics
HyperconvergedFantasyAnalyticsJerry Jermann
 
10 Best Data Integration Software Platforms.pdf
10 Best Data Integration Software Platforms.pdf10 Best Data Integration Software Platforms.pdf
10 Best Data Integration Software Platforms.pdfXoxoday Compass
 
next-generation-data-centers
next-generation-data-centersnext-generation-data-centers
next-generation-data-centersJason Hoffman
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Denodo
 
Cloud Data Integration Best Practices
Cloud Data Integration Best PracticesCloud Data Integration Best Practices
Cloud Data Integration Best PracticesDarren Cunningham
 

Similar to Bestpeer++ a peer to-peer based large-scale data processing platform (20)

2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...
2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...
2014 IEEE JAVA DATA MINING PROJECT Best peer++ a peer to-peer based large-sca...
 
Best peer++
Best peer++Best peer++
Best peer++
 
Best peer++
Best peer++Best peer++
Best peer++
 
data-mesh_whitepaper_dec2021.pdf
data-mesh_whitepaper_dec2021.pdfdata-mesh_whitepaper_dec2021.pdf
data-mesh_whitepaper_dec2021.pdf
 
Making Multicloud Application Integration More Efficient
Making Multicloud Application Integration More EfficientMaking Multicloud Application Integration More Efficient
Making Multicloud Application Integration More Efficient
 
IBM Cloud pak for data brochure
IBM Cloud pak for data   brochureIBM Cloud pak for data   brochure
IBM Cloud pak for data brochure
 
About CDAP
About CDAPAbout CDAP
About CDAP
 
Information Systems
Information SystemsInformation Systems
Information Systems
 
Monitoring IAAS & PAAS Solutions
Monitoring IAAS & PAAS SolutionsMonitoring IAAS & PAAS Solutions
Monitoring IAAS & PAAS Solutions
 
Webinar: Faster Big Data Analytics with MongoDB
Webinar: Faster Big Data Analytics with MongoDBWebinar: Faster Big Data Analytics with MongoDB
Webinar: Faster Big Data Analytics with MongoDB
 
Hashtag Recommendation System in a P2P Social Networking Application
Hashtag Recommendation System in a P2P Social Networking ApplicationHashtag Recommendation System in a P2P Social Networking Application
Hashtag Recommendation System in a P2P Social Networking Application
 
IDC WHITE PAPER - IBM PureFlex System Ready for Cloud
IDC WHITE PAPER - IBM PureFlex System Ready for CloudIDC WHITE PAPER - IBM PureFlex System Ready for Cloud
IDC WHITE PAPER - IBM PureFlex System Ready for Cloud
 
Operational Improvement Issues, Impacts and Solution from RackN
Operational Improvement Issues, Impacts and Solution from RackNOperational Improvement Issues, Impacts and Solution from RackN
Operational Improvement Issues, Impacts and Solution from RackN
 
Cloud Computing for Small & Medium Businesses
Cloud Computing for Small & Medium BusinessesCloud Computing for Small & Medium Businesses
Cloud Computing for Small & Medium Businesses
 
BigData Analysis
BigData AnalysisBigData Analysis
BigData Analysis
 
HyperconvergedFantasyAnalytics
HyperconvergedFantasyAnalyticsHyperconvergedFantasyAnalytics
HyperconvergedFantasyAnalytics
 
10 Best Data Integration Software Platforms.pdf
10 Best Data Integration Software Platforms.pdf10 Best Data Integration Software Platforms.pdf
10 Best Data Integration Software Platforms.pdf
 
next-generation-data-centers
next-generation-data-centersnext-generation-data-centers
next-generation-data-centers
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
 
Cloud Data Integration Best Practices
Cloud Data Integration Best PracticesCloud Data Integration Best Practices
Cloud Data Integration Best Practices
 

More from Papitha Velumani

2015 - 2016 IEEE Project Titles and abstracts in Java
2015 - 2016 IEEE Project Titles and abstracts in Java2015 - 2016 IEEE Project Titles and abstracts in Java
2015 - 2016 IEEE Project Titles and abstracts in JavaPapitha Velumani
 
2015 - 2016 IEEE Project Titles and abstracts in Android
2015 - 2016 IEEE Project Titles and abstracts in Android 2015 - 2016 IEEE Project Titles and abstracts in Android
2015 - 2016 IEEE Project Titles and abstracts in Android Papitha Velumani
 
2015 - 2016 IEEE Project Titles and abstracts in Dotnet
2015 - 2016 IEEE Project Titles and abstracts in Dotnet 2015 - 2016 IEEE Project Titles and abstracts in Dotnet
2015 - 2016 IEEE Project Titles and abstracts in Dotnet Papitha Velumani
 
Trajectory improves data delivery in urban vehicular networks
Trajectory improves data delivery in urban vehicular networks Trajectory improves data delivery in urban vehicular networks
Trajectory improves data delivery in urban vehicular networks Papitha Velumani
 
Tracon interference aware scheduling for data-intensive applications in virtu...
Tracon interference aware scheduling for data-intensive applications in virtu...Tracon interference aware scheduling for data-intensive applications in virtu...
Tracon interference aware scheduling for data-intensive applications in virtu...Papitha Velumani
 
Supporting privacy protection in personalized web search
Supporting privacy protection in personalized web searchSupporting privacy protection in personalized web search
Supporting privacy protection in personalized web searchPapitha Velumani
 
Stochastic bandwidth estimation in networks with random service
Stochastic bandwidth estimation in networks with random serviceStochastic bandwidth estimation in networks with random service
Stochastic bandwidth estimation in networks with random servicePapitha Velumani
 
Sos a distributed mobile q&a system based on social networks
Sos a distributed mobile q&a system based on social networksSos a distributed mobile q&a system based on social networks
Sos a distributed mobile q&a system based on social networksPapitha Velumani
 
Security evaluation of pattern classifiers under attack
Security evaluation of pattern classifiers under attack Security evaluation of pattern classifiers under attack
Security evaluation of pattern classifiers under attack Papitha Velumani
 
Real time misbehavior detection in ieee 802.11-based wireless networks an ana...
Real time misbehavior detection in ieee 802.11-based wireless networks an ana...Real time misbehavior detection in ieee 802.11-based wireless networks an ana...
Real time misbehavior detection in ieee 802.11-based wireless networks an ana...Papitha Velumani
 
Probabilistic consolidation of virtual machines in self organizing cloud data...
Probabilistic consolidation of virtual machines in self organizing cloud data...Probabilistic consolidation of virtual machines in self organizing cloud data...
Probabilistic consolidation of virtual machines in self organizing cloud data...Papitha Velumani
 
Privacy preserving multi-keyword ranked search over encrypted cloud data
Privacy preserving multi-keyword ranked search over encrypted cloud dataPrivacy preserving multi-keyword ranked search over encrypted cloud data
Privacy preserving multi-keyword ranked search over encrypted cloud dataPapitha Velumani
 
Privacy preserving and content-protecting location based queries
Privacy preserving and content-protecting location based queriesPrivacy preserving and content-protecting location based queries
Privacy preserving and content-protecting location based queriesPapitha Velumani
 
Pack prediction based cloud bandwidth and cost reduction system
Pack prediction based cloud bandwidth and cost reduction systemPack prediction based cloud bandwidth and cost reduction system
Pack prediction based cloud bandwidth and cost reduction systemPapitha Velumani
 
Occt a one class clustering tree for implementing one-to-man data linkage
Occt a one class clustering tree for implementing one-to-man data linkageOcct a one class clustering tree for implementing one-to-man data linkage
Occt a one class clustering tree for implementing one-to-man data linkagePapitha Velumani
 
Leveraging social networks for p2p content based file sharing in disconnected...
Leveraging social networks for p2p content based file sharing in disconnected...Leveraging social networks for p2p content based file sharing in disconnected...
Leveraging social networks for p2p content based file sharing in disconnected...Papitha Velumani
 
LDBP: localized boundary detection and parametrization for 3 d sensor networks
LDBP: localized boundary detection and parametrization for 3 d sensor networksLDBP: localized boundary detection and parametrization for 3 d sensor networks
LDBP: localized boundary detection and parametrization for 3 d sensor networksPapitha Velumani
 
Integrity for join queries in the cloud
Integrity for join queries in the cloudIntegrity for join queries in the cloud
Integrity for join queries in the cloudPapitha Velumani
 
Improving fairness, efficiency, and stability in http based adaptive video st...
Improving fairness, efficiency, and stability in http based adaptive video st...Improving fairness, efficiency, and stability in http based adaptive video st...
Improving fairness, efficiency, and stability in http based adaptive video st...Papitha Velumani
 
Hybrid attribute and re-encryption-based key management for secure and scala...
Hybrid attribute  and re-encryption-based key management for secure and scala...Hybrid attribute  and re-encryption-based key management for secure and scala...
Hybrid attribute and re-encryption-based key management for secure and scala...Papitha Velumani
 

More from Papitha Velumani (20)

2015 - 2016 IEEE Project Titles and abstracts in Java
2015 - 2016 IEEE Project Titles and abstracts in Java2015 - 2016 IEEE Project Titles and abstracts in Java
2015 - 2016 IEEE Project Titles and abstracts in Java
 
2015 - 2016 IEEE Project Titles and abstracts in Android
2015 - 2016 IEEE Project Titles and abstracts in Android 2015 - 2016 IEEE Project Titles and abstracts in Android
2015 - 2016 IEEE Project Titles and abstracts in Android
 
2015 - 2016 IEEE Project Titles and abstracts in Dotnet
2015 - 2016 IEEE Project Titles and abstracts in Dotnet 2015 - 2016 IEEE Project Titles and abstracts in Dotnet
2015 - 2016 IEEE Project Titles and abstracts in Dotnet
 
Trajectory improves data delivery in urban vehicular networks
Trajectory improves data delivery in urban vehicular networks Trajectory improves data delivery in urban vehicular networks
Trajectory improves data delivery in urban vehicular networks
 
Tracon interference aware scheduling for data-intensive applications in virtu...
Tracon interference aware scheduling for data-intensive applications in virtu...Tracon interference aware scheduling for data-intensive applications in virtu...
Tracon interference aware scheduling for data-intensive applications in virtu...
 
Supporting privacy protection in personalized web search
Supporting privacy protection in personalized web searchSupporting privacy protection in personalized web search
Supporting privacy protection in personalized web search
 
Stochastic bandwidth estimation in networks with random service
Stochastic bandwidth estimation in networks with random serviceStochastic bandwidth estimation in networks with random service
Stochastic bandwidth estimation in networks with random service
 
Sos a distributed mobile q&a system based on social networks
Sos a distributed mobile q&a system based on social networksSos a distributed mobile q&a system based on social networks
Sos a distributed mobile q&a system based on social networks
 
Security evaluation of pattern classifiers under attack
Security evaluation of pattern classifiers under attack Security evaluation of pattern classifiers under attack
Security evaluation of pattern classifiers under attack
 
Real time misbehavior detection in ieee 802.11-based wireless networks an ana...
Real time misbehavior detection in ieee 802.11-based wireless networks an ana...Real time misbehavior detection in ieee 802.11-based wireless networks an ana...
Real time misbehavior detection in ieee 802.11-based wireless networks an ana...
 
Probabilistic consolidation of virtual machines in self organizing cloud data...
Probabilistic consolidation of virtual machines in self organizing cloud data...Probabilistic consolidation of virtual machines in self organizing cloud data...
Probabilistic consolidation of virtual machines in self organizing cloud data...
 
Privacy preserving multi-keyword ranked search over encrypted cloud data
Privacy preserving multi-keyword ranked search over encrypted cloud dataPrivacy preserving multi-keyword ranked search over encrypted cloud data
Privacy preserving multi-keyword ranked search over encrypted cloud data
 
Privacy preserving and content-protecting location based queries
Privacy preserving and content-protecting location based queriesPrivacy preserving and content-protecting location based queries
Privacy preserving and content-protecting location based queries
 
Pack prediction based cloud bandwidth and cost reduction system
Pack prediction based cloud bandwidth and cost reduction systemPack prediction based cloud bandwidth and cost reduction system
Pack prediction based cloud bandwidth and cost reduction system
 
Occt a one class clustering tree for implementing one-to-man data linkage
Occt a one class clustering tree for implementing one-to-man data linkageOcct a one class clustering tree for implementing one-to-man data linkage
Occt a one class clustering tree for implementing one-to-man data linkage
 
Leveraging social networks for p2p content based file sharing in disconnected...
Leveraging social networks for p2p content based file sharing in disconnected...Leveraging social networks for p2p content based file sharing in disconnected...
Leveraging social networks for p2p content based file sharing in disconnected...
 
LDBP: localized boundary detection and parametrization for 3 d sensor networks
LDBP: localized boundary detection and parametrization for 3 d sensor networksLDBP: localized boundary detection and parametrization for 3 d sensor networks
LDBP: localized boundary detection and parametrization for 3 d sensor networks
 
Integrity for join queries in the cloud
Integrity for join queries in the cloudIntegrity for join queries in the cloud
Integrity for join queries in the cloud
 
Improving fairness, efficiency, and stability in http based adaptive video st...
Improving fairness, efficiency, and stability in http based adaptive video st...Improving fairness, efficiency, and stability in http based adaptive video st...
Improving fairness, efficiency, and stability in http based adaptive video st...
 
Hybrid attribute and re-encryption-based key management for secure and scala...
Hybrid attribute  and re-encryption-based key management for secure and scala...Hybrid attribute  and re-encryption-based key management for secure and scala...
Hybrid attribute and re-encryption-based key management for secure and scala...
 

Recently uploaded

Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformChameera Dedduwage
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesFatimaKhan178732
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdfSoniaTolstoy
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppCeline George
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Celine George
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docxPoojaSen20
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionSafetyChain Software
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104misteraugie
 

Recently uploaded (20)

Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and Actinides
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Staff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSDStaff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSD
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website App
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docx
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory Inspection
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdfTataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
 

Bestpeer++ a peer to-peer based large-scale data processing platform

  • 1. BESTPEER++: A PEER-TO-PEER BASED LARGE-SCALE DATA PROCESSING PLATFORM ABSTRACT: The corporate network is often used for sharing information among the participating companies and facilitating collaboration in a certain industry sector where companies share a common interest. It can effectively help the companies to reduce their operational costs and increase the revenues. However, the inter-company data sharing and processing poses unique challenges to such a data management system including scalability, performance, throughput, and security. In this paper, we present BestPeer++, a system which delivers elastic data sharing services for corporate network applications in the cloud based on BestPeer—a peer-to-peer (P2P) based data management platform. By integrating cloud computing, database, and P2P technologies into one system, BestPeer++ provides an economical, flexible and scalable platform for corporate network applications and delivers data sharing services to participants
  • 2. based on the widely accepted pay-as-you-go business model. We evaluate BestPeer++ on Amazon EC2 Cloud platform. The benchmarking results show that BestPeer++ outperforms HadoopDB, a recently proposed large-scale data processing system, in performance when both systems are employed to handle typical corporate network workloads. The benchmarking results also demonstrate that BestPeer++ achieves near linear scalability for throughput with respect to the number of peer nodes. EXISTING SYSTEM: The corporate network needs to scale up to support thousands of participants, while the installation of a large-scale centralized data warehouse system entails nontrivial costs including huge hardware/software investments (a.k.a total cost of ownership) and high maintenance cost (a.k.a total cost of operations). In the real world, most companies are not keen to invest heavily on additional information systems until they can clearly see the potential return on investment (ROI). Second,
  • 3. companies want to fully customize the access control policy to determine which business partners can see which part of their shared data. Unfortunately, most of the data warehouse solutions fail to offer such flexibilities. Finally, to maximize the revenues, companies often dynamically adjust their business process and may change their business partners. Therefore, the participants may join and leave the corporate networks at will. The data warehouse solution has not been designed to handle such dynamicity. DISADVANTAGES OF EXISTING SYSTEM: · Its most of the data warehouse solutions fail to offer flexibilities. · Its warehousing solution has some deficiencies in real deployment. · It is expensive.
  • 4. PROPOSED SYSTEM: BestPeer++ achieves its query processing efficiency and is a promising approach for corporate network applications, with the following distinguished features. BestPeer++ is deployed as service in the cloud. To form a corporate network, companies simply register their sites with the BestPeer++ service provider, launch BestPeer++ instances in the cloud and finally export data to those instances for sharing. BestPeer++ adopts the pay-as-you- go business model popularized by cloud computing. The total cost of ownership is therefore substantially reduced since companies do not have to buy any hardware/software in advance. Instead, they pay for what they use in terms of BestPeer++ instance’s hours and storage capacity. BestPeer++ extends the role-based access control for the inherent distributed environment of corporate networks. Through a web console interface, companies can easily configure their access control policies and prevent undesired business partners to access their shared data. BestPeer++ employs P2P technology to retrieve
  • 5. data between business partners. BestPeer++ instances are organized as a structured P2P overlay network named BATON. The data are indexed by the table name, column name and data range for efficient retrieval. BestPeer++ employs a hybrid design for achieving high performance query processing. The major workload of a corporate network is simple, lowoverhead queries. Such queries typically only involve querying a very small number of business partners and can be processed in short time. Best- Peer++ is mainly optimized for these queries. For infrequent time-consuming analytical tasks, we provide an interface for exporting the data from Best- Peer++ to Hadoop and allow users to analyze those data using MapReduce. ADVANTAGES OF PROPOSED SYSTEM: · It provides economical, flexible and scalable solutions for corporate network applications. · It is more efficient. · It prevent undesired business partners to access their shared data.
  • 6. SYSTEM CONFIGURATION:- HARDWARE REQUIREMENTS:-  Processor - Pentium –IV  Speed - 1.1 Ghz  RAM - 512 MB(min)  Hard Disk - 40 GB  Key Board - Standard Windows Keyboard  Mouse - Two or Three Button Mouse  Monitor - LCD/LED SOFTWARE REQUIREMENTS: • Operating system : Windows XP
  • 7. • • • Coding Language : Java • Data Base : MySQL • Tool : Net Beans IDE REFERENCE: Gang Chen, Tianlei Hu, Dawei Jiang, Peng Lu, Kian-Lee Tan, Hoang Tam Vo, and Sai Wu “BestPeer++: A Peer-to-Peer Based Large-Scale Data Processing Platform” IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, VOL. 26, NO. 6, JUNE 2014.