SlideShare a Scribd company logo
Targetj Solutions 
 REAL TIME PROJECTS 
 IEEE BASED PROJECTS 
 EMBEDDED SYSTEMS 
 PAPER PUBLICATIONS 
MATLAB PROJECTS 
 targetjsolutions@gmail.com 
 (0)9611582234, (0)9945657526
Scalable 
Scheduling of 
Updates 
in Streaming 
Data 
Warehouses
Abstract 
 We then propose a scheduling framework that handles 
the complications encountered by a stream warehouse: 
view hierarchies and priorities, data consistency, inability 
to preempt updates, heterogeneity of update jobs 
caused by different interarrival times and data volumes 
among different sources, and transient overload. 
 A novel feature of our framework is that scheduling 
decisions do not depend on properties of update jobs 
(such as deadlines), but rather on the effect of update 
jobs on data staleness. Finally, we present a suite of 
update scheduling algorithms and extensive simulation 
experiments to map out factors which affect their 
performance
Existing System 
 Recent work on streaming warehouses has focused on 
speeding up the Extract-Transform-Load (ETL) process . There 
has also been work on supporting various warehouse 
maintenance policies, such as immediate (update views 
whenever the base data change), deferred (update views only 
when queried), and periodic [10]. 
 However, there has been a little work on choosing, of all the 
tables that are now out-of-date due to the arrival of new data, 
which one should be updated next
Disadvantages 
 The problem with this approach is that new data may arrive on 
multiple streams, but there is no mechanism for limiting the 
number of tables that can be updated simultaneously. Running 
too many parallel updates can degrade performance due to 
memory and CPU-cache thrashing (multiple memoryintensive 
ETL processes are likely to exhaust virtual memory), disk-arm 
thrashing, context switching,
Proposed System 
 Many metrics have been considered in the real-time scheduling 
literature. In a typical hard realtime system, jobs must be completed 
before their deadlines a simple metric to understand and to prove 
results about. 
 In a firm real-time system, jobs can miss their deadlines, and if they do, 
they are discarded. The performance metric in a firm real-time system 
is the fraction of jobs that meet their deadlines. However, a streaming 
warehouse must load all of the data that arrive; therefore no updates 
can be discarded. 
 In a soft real-time system, late jobs are allowed to stay in the system, 
and the performance metric is lateness (or tardiness), which is the 
difference between the completion times of late jobs and their 
deadlines. 
 We are not concerned about properties of the update jobs. Instead, 
we will define a scheduling metric in terms of data staleness, roughly 
defined as the difference between the current time and the time 
stamp of the most recent record in a table
Proposed System 
 Associated with the accountability feature, we also develop two 
distinct modes for auditing: push mode and pull mode. The push mode 
refers to logs being periodically sent to the data owner or stakeholder 
while the pull mode refers to an alternative approach whereby the user 
(or another authorized party) can retrieve the logs as needed. In 
summary, our main contributions are as follows: We propose a novel 
automatic and enforceable logging mechanism in the cloud. To our 
knowledge, this is the first time a systematic approach to data 
accountability through the novel usage of JAR files is proposed. . Our 
proposed architecture is platform independent and highly 
decentralized, in that it does not require any dedicated authentication 
or storage system in place. We go beyond traditional access control in 
that we provide a certain degree of usage control for the protected 
data after these are delivered to the receiver. We conduct 
experiments on a real cloud testbed. The results demonstrate the 
efficiency, scalability, and granularity of our approach. We also provide 
a detailed security analysis and discuss the reliability and strength of our 
architecture.
Advantages 
 The goal of a streaming warehouse is to propagate new data 
across all the relevant tables and views as quickly as possible. 
Once new data are loaded, the applications and triggers 
defined on the warehouse can take immediate action. This 
allows businesses to make decisions in nearly real time, which 
may lead to increased profits, improved customer satisfaction, 
and prevention of serious problems that could develop if no 
action was taken
Software Requirements 
 Operating System : Windows XP Professional 
 Environment : Visual Studio .NET 2010 
 Language : C#.NET 
Web Technology : Active Server Pages.Net 
 Back end : MS-SQL-Server 2008
Hardware Requirements: 
Processor : Pentium III / IV 
Hard Disk : 40 GB 
Ram : 256 MB 
Monitor : 15VGA Color 
Mouse : Ball / Optical 
Keyboard : 102 Keys
Reference 
 [1] B. Adelberg, H. Garcia-Molina, and B. Kao, “Applying Update 
Streams in a Soft Real-Time Database System,” Proc. ACM SIGMOD 
Int’l Conf. Management of Data, pp. 245-256, 1995. 
 [2] B. Babcock, S. Babu, M. Datar, and R. Motwani, “Chain: 
Operator Scheduling for Memory Minimization in Data Stream 
Systems,” Proc. ACM SIGMOD Int’l Conf. Management of Data, pp. 
253-264, 2003. 
 [3] S. Babu, U. Srivastava, and J. Widom, “Exploiting K-constraints to 
Reduce Memory Overhead in Continuous Queries over Data 
Streams,” ACM Trans. Database Systems, vol. 29, no. 3, pp. 545- 580, 
2004. 
 [4] S. Baruah, “The Non-preemptive Scheduling of Periodic Tasks 
upon Multiprocessors,” Real Time Systems, vol. 32, nos. 1/2, pp. 9- 
20, 2006. 
 [5] S. Baruah, N. Cohen, C. Plaxton, and D. Varvel, “Proportionate 
Progress: A Notion of Fairness in Resource Allocation,” Algorithmica, 
vol. 15, pp. 600-625, 1996.

More Related Content

What's hot

Capacity Management of an ETL System
Capacity Management of an ETL SystemCapacity Management of an ETL System
Capacity Management of an ETL System
ASHOK BHATLA
 
VMworld 2013: Health Care Applications Characterization in VMware Horizon View
VMworld 2013: Health Care Applications Characterization in VMware Horizon View VMworld 2013: Health Care Applications Characterization in VMware Horizon View
VMworld 2013: Health Care Applications Characterization in VMware Horizon View
VMworld
 
Datastage
DatastageDatastage
Performance testing wreaking balls
Performance testing wreaking ballsPerformance testing wreaking balls
Performance testing wreaking balls
Leonid Grinshpan, Ph.D.
 
Sql 2005 high availability
Sql 2005 high availabilitySql 2005 high availability
Sql 2005 high availability
Information Technology
 
Database performance and memory capacity with the Intel Xeon processor E5-266...
Database performance and memory capacity with the Intel Xeon processor E5-266...Database performance and memory capacity with the Intel Xeon processor E5-266...
Database performance and memory capacity with the Intel Xeon processor E5-266...
Principled Technologies
 
Sql server performance tuning
Sql server performance tuningSql server performance tuning
Sql server performance tuning
ngupt28
 
MYSQL_Basic_Performance_Tuning_Guidelines_-_V2
MYSQL_Basic_Performance_Tuning_Guidelines_-_V2MYSQL_Basic_Performance_Tuning_Guidelines_-_V2
MYSQL_Basic_Performance_Tuning_Guidelines_-_V2
Shelton Reese
 
SQL Server and System Center Advisor
SQL Server and System Center AdvisorSQL Server and System Center Advisor
SQL Server and System Center Advisor
Eduardo Castro
 
Patrick_Rebrook_Resume
Patrick_Rebrook_ResumePatrick_Rebrook_Resume
Patrick_Rebrook_Resume
Patrick Rebrook
 
Database performance management
Database performance managementDatabase performance management
Database performance management
scottaver
 
1 Pdfsam
1 Pdfsam1 Pdfsam
1 Pdfsam
Emanuel Mateus
 
Whitepaper Exchange 2007 Changes, Resilience And Storage Management
Whitepaper   Exchange 2007 Changes, Resilience And Storage ManagementWhitepaper   Exchange 2007 Changes, Resilience And Storage Management
Whitepaper Exchange 2007 Changes, Resilience And Storage Management
Alan McSweeney
 
Sql good practices
Sql good practicesSql good practices
Sql good practices
Deepak Mehtani
 
201 Pdfsam
201 Pdfsam201 Pdfsam
201 Pdfsam
Emanuel Mateus
 
Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...
Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...
Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...
Principled Technologies
 
שבוע אורקל 2016
שבוע אורקל 2016שבוע אורקל 2016
שבוע אורקל 2016
Aaron Shilo
 
Application-Driven Virtualization: Architectural Considerations
Application-Driven Virtualization: Architectural ConsiderationsApplication-Driven Virtualization: Architectural Considerations
Application-Driven Virtualization: Architectural Considerations
Bob Rhubart
 

What's hot (18)

Capacity Management of an ETL System
Capacity Management of an ETL SystemCapacity Management of an ETL System
Capacity Management of an ETL System
 
VMworld 2013: Health Care Applications Characterization in VMware Horizon View
VMworld 2013: Health Care Applications Characterization in VMware Horizon View VMworld 2013: Health Care Applications Characterization in VMware Horizon View
VMworld 2013: Health Care Applications Characterization in VMware Horizon View
 
Datastage
DatastageDatastage
Datastage
 
Performance testing wreaking balls
Performance testing wreaking ballsPerformance testing wreaking balls
Performance testing wreaking balls
 
Sql 2005 high availability
Sql 2005 high availabilitySql 2005 high availability
Sql 2005 high availability
 
Database performance and memory capacity with the Intel Xeon processor E5-266...
Database performance and memory capacity with the Intel Xeon processor E5-266...Database performance and memory capacity with the Intel Xeon processor E5-266...
Database performance and memory capacity with the Intel Xeon processor E5-266...
 
Sql server performance tuning
Sql server performance tuningSql server performance tuning
Sql server performance tuning
 
MYSQL_Basic_Performance_Tuning_Guidelines_-_V2
MYSQL_Basic_Performance_Tuning_Guidelines_-_V2MYSQL_Basic_Performance_Tuning_Guidelines_-_V2
MYSQL_Basic_Performance_Tuning_Guidelines_-_V2
 
SQL Server and System Center Advisor
SQL Server and System Center AdvisorSQL Server and System Center Advisor
SQL Server and System Center Advisor
 
Patrick_Rebrook_Resume
Patrick_Rebrook_ResumePatrick_Rebrook_Resume
Patrick_Rebrook_Resume
 
Database performance management
Database performance managementDatabase performance management
Database performance management
 
1 Pdfsam
1 Pdfsam1 Pdfsam
1 Pdfsam
 
Whitepaper Exchange 2007 Changes, Resilience And Storage Management
Whitepaper   Exchange 2007 Changes, Resilience And Storage ManagementWhitepaper   Exchange 2007 Changes, Resilience And Storage Management
Whitepaper Exchange 2007 Changes, Resilience And Storage Management
 
Sql good practices
Sql good practicesSql good practices
Sql good practices
 
201 Pdfsam
201 Pdfsam201 Pdfsam
201 Pdfsam
 
Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...
Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...
Resource balancing comparison: VMware vSphere 6 vs. Red Hat Enterprise Virtua...
 
שבוע אורקל 2016
שבוע אורקל 2016שבוע אורקל 2016
שבוע אורקל 2016
 
Application-Driven Virtualization: Architectural Considerations
Application-Driven Virtualization: Architectural ConsiderationsApplication-Driven Virtualization: Architectural Considerations
Application-Driven Virtualization: Architectural Considerations
 

Viewers also liked

A Semantic Web Platform for Automating the Interpretation of Finite Element ...
A Semantic Web Platform for Automating the Interpretation of Finite Element ...A Semantic Web Platform for Automating the Interpretation of Finite Element ...
A Semantic Web Platform for Automating the Interpretation of Finite Element ...
Andre Freitas
 
HAMS - Product and Prototype
HAMS - Product and PrototypeHAMS - Product and Prototype
HAMS - Product and Prototype
HAMSproject
 
Project management
Project managementProject management
Project management
Avay Minni
 
Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...
Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...
Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...
Mohamed Khaleeel
 
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLABDesign of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
ijsrd.com
 
2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS, EMBEDDED, POWER E...
2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS,  EMBEDDED, POWER E...2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS,  EMBEDDED, POWER E...
2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS, EMBEDDED, POWER E...
Irissolution
 
Real-Time Scheduling Algorithms
Real-Time Scheduling AlgorithmsReal-Time Scheduling Algorithms
Real-Time Scheduling Algorithms
AJAL A J
 
Speed control of dc motor using matlab
Speed control of dc motor using matlabSpeed control of dc motor using matlab
Speed control of dc motor using matlab
Shridhar kulkarni
 
Sun Tracker
Sun TrackerSun Tracker
Sun Tracker
Ajnas KC
 
BLDC control using PID & FUZZY logic controller-CSD PPT
BLDC control using PID & FUZZY logic controller-CSD PPTBLDC control using PID & FUZZY logic controller-CSD PPT
BLDC control using PID & FUZZY logic controller-CSD PPT
Amiya Ranjan Behera
 
Speed Controller for DC Motor
Speed Controller for DC MotorSpeed Controller for DC Motor
Speed Controller for DC Motor
Bhagwat Singh Rathore
 
Statcom control scheme for power quality improvement of grid connected wind e...
Statcom control scheme for power quality improvement of grid connected wind e...Statcom control scheme for power quality improvement of grid connected wind e...
Statcom control scheme for power quality improvement of grid connected wind e...
Kinnera Kin
 
IEEE Embedded Project Titles 2016
IEEE Embedded Project Titles 2016IEEE Embedded Project Titles 2016
IEEE Embedded Project Titles 2016
Spiro Projects
 
Design and Implementation of DC Motor Speed Control using Fuzzy Logic
Design and Implementation of DC Motor Speed Control using Fuzzy LogicDesign and Implementation of DC Motor Speed Control using Fuzzy Logic
Design and Implementation of DC Motor Speed Control using Fuzzy Logic
Waleed El-Badry
 
Automatic Train Control System using Wireless Sensor Networks
Automatic Train Control System using Wireless Sensor NetworksAutomatic Train Control System using Wireless Sensor Networks
Automatic Train Control System using Wireless Sensor Networks
Prakhar Bansal
 

Viewers also liked (15)

A Semantic Web Platform for Automating the Interpretation of Finite Element ...
A Semantic Web Platform for Automating the Interpretation of Finite Element ...A Semantic Web Platform for Automating the Interpretation of Finite Element ...
A Semantic Web Platform for Automating the Interpretation of Finite Element ...
 
HAMS - Product and Prototype
HAMS - Product and PrototypeHAMS - Product and Prototype
HAMS - Product and Prototype
 
Project management
Project managementProject management
Project management
 
Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...
Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...
Enhancement Power Quality with Sugeno-type Fuzzy Logic and Mamdani-type Fuzzy...
 
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLABDesign of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
 
2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS, EMBEDDED, POWER E...
2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS,  EMBEDDED, POWER E...2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS,  EMBEDDED, POWER E...
2015 ME BE ECE EEE PROJECT TITLES, ABSTRACTS, BASE PAPERS, EMBEDDED, POWER E...
 
Real-Time Scheduling Algorithms
Real-Time Scheduling AlgorithmsReal-Time Scheduling Algorithms
Real-Time Scheduling Algorithms
 
Speed control of dc motor using matlab
Speed control of dc motor using matlabSpeed control of dc motor using matlab
Speed control of dc motor using matlab
 
Sun Tracker
Sun TrackerSun Tracker
Sun Tracker
 
BLDC control using PID & FUZZY logic controller-CSD PPT
BLDC control using PID & FUZZY logic controller-CSD PPTBLDC control using PID & FUZZY logic controller-CSD PPT
BLDC control using PID & FUZZY logic controller-CSD PPT
 
Speed Controller for DC Motor
Speed Controller for DC MotorSpeed Controller for DC Motor
Speed Controller for DC Motor
 
Statcom control scheme for power quality improvement of grid connected wind e...
Statcom control scheme for power quality improvement of grid connected wind e...Statcom control scheme for power quality improvement of grid connected wind e...
Statcom control scheme for power quality improvement of grid connected wind e...
 
IEEE Embedded Project Titles 2016
IEEE Embedded Project Titles 2016IEEE Embedded Project Titles 2016
IEEE Embedded Project Titles 2016
 
Design and Implementation of DC Motor Speed Control using Fuzzy Logic
Design and Implementation of DC Motor Speed Control using Fuzzy LogicDesign and Implementation of DC Motor Speed Control using Fuzzy Logic
Design and Implementation of DC Motor Speed Control using Fuzzy Logic
 
Automatic Train Control System using Wireless Sensor Networks
Automatic Train Control System using Wireless Sensor NetworksAutomatic Train Control System using Wireless Sensor Networks
Automatic Train Control System using Wireless Sensor Networks
 

Similar to REAL TIME PROJECTS IEEE BASED PROJECTS EMBEDDED SYSTEMS PAPER PUBLICATIONS MATLAB PROJECTS targetjsolutions@gmail.com (0)9611582234, (0)9945657526Scalable scheduling of updates in streaming data warehouses

Real-Time Data Warehouse Loading Methodology Ricardo Jorge S.docx
Real-Time Data Warehouse Loading Methodology Ricardo Jorge S.docxReal-Time Data Warehouse Loading Methodology Ricardo Jorge S.docx
Real-Time Data Warehouse Loading Methodology Ricardo Jorge S.docx
sodhi3
 
Oracle database performance diagnostics - before your begin
Oracle database performance diagnostics  - before your beginOracle database performance diagnostics  - before your begin
Oracle database performance diagnostics - before your begin
Hemant K Chitale
 
IRJET - Efficient Load Balancing in a Distributed Environment
IRJET -  	  Efficient Load Balancing in a Distributed EnvironmentIRJET -  	  Efficient Load Balancing in a Distributed Environment
IRJET - Efficient Load Balancing in a Distributed Environment
IRJET Journal
 
IRJET - The 3-Level Database Architectural Design for OLAP and OLTP Ops
IRJET - The 3-Level Database Architectural Design for OLAP and OLTP OpsIRJET - The 3-Level Database Architectural Design for OLAP and OLTP Ops
IRJET - The 3-Level Database Architectural Design for OLAP and OLTP Ops
IRJET Journal
 
Using Semi-supervised Classifier to Forecast Extreme CPU Utilization
Using Semi-supervised Classifier to Forecast Extreme CPU UtilizationUsing Semi-supervised Classifier to Forecast Extreme CPU Utilization
Using Semi-supervised Classifier to Forecast Extreme CPU Utilization
gerogepatton
 
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATIONUSING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
ijaia
 
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATIONUSING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
gerogepatton
 
Migration to Oracle 12c Made Easy Using Replication Technology
Migration to Oracle 12c Made Easy Using Replication TechnologyMigration to Oracle 12c Made Easy Using Replication Technology
Migration to Oracle 12c Made Easy Using Replication Technology
Donna Guazzaloca-Zehl
 
Survey of streaming data warehouse update scheduling
Survey of streaming data warehouse update schedulingSurvey of streaming data warehouse update scheduling
Survey of streaming data warehouse update scheduling
eSAT Journals
 
Approved TPA along with Integrity Verification in Cloud
Approved TPA along with Integrity Verification in CloudApproved TPA along with Integrity Verification in Cloud
Approved TPA along with Integrity Verification in Cloud
Editor IJCATR
 
Comparison of Reporting architectures
Comparison of Reporting architecturesComparison of Reporting architectures
Comparison of Reporting architectures
Rajendran Avadaiappan
 
Capacity management for ETL System
Capacity management for ETL SystemCapacity management for ETL System
Capacity management for ETL System
ASHOK BHATLA
 
Conspectus data warehousing appliances – fad or future
Conspectus   data warehousing appliances – fad or futureConspectus   data warehousing appliances – fad or future
Conspectus data warehousing appliances – fad or future
David Walker
 
Scalable scheduling of updates in streaming data warehouses
Scalable scheduling of updates in streaming data warehousesScalable scheduling of updates in streaming data warehouses
Scalable scheduling of updates in streaming data warehouses
IRJET Journal
 
best-practices-for-realtime-data-wa-132882.pdf
best-practices-for-realtime-data-wa-132882.pdfbest-practices-for-realtime-data-wa-132882.pdf
best-practices-for-realtime-data-wa-132882.pdf
aliramezani30
 
Updating and Scheduling of Streaming Web Services in Data Warehouses
Updating and Scheduling of Streaming Web Services in Data WarehousesUpdating and Scheduling of Streaming Web Services in Data Warehouses
Updating and Scheduling of Streaming Web Services in Data Warehouses
International Journal of Science and Research (IJSR)
 
Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...
Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...
Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...
Prolifics
 
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
cscpconf
 
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATANEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
csandit
 
Computers in management
Computers in managementComputers in management
Computers in management
Kinshook Chaturvedi
 

Similar to REAL TIME PROJECTS IEEE BASED PROJECTS EMBEDDED SYSTEMS PAPER PUBLICATIONS MATLAB PROJECTS targetjsolutions@gmail.com (0)9611582234, (0)9945657526Scalable scheduling of updates in streaming data warehouses (20)

Real-Time Data Warehouse Loading Methodology Ricardo Jorge S.docx
Real-Time Data Warehouse Loading Methodology Ricardo Jorge S.docxReal-Time Data Warehouse Loading Methodology Ricardo Jorge S.docx
Real-Time Data Warehouse Loading Methodology Ricardo Jorge S.docx
 
Oracle database performance diagnostics - before your begin
Oracle database performance diagnostics  - before your beginOracle database performance diagnostics  - before your begin
Oracle database performance diagnostics - before your begin
 
IRJET - Efficient Load Balancing in a Distributed Environment
IRJET -  	  Efficient Load Balancing in a Distributed EnvironmentIRJET -  	  Efficient Load Balancing in a Distributed Environment
IRJET - Efficient Load Balancing in a Distributed Environment
 
IRJET - The 3-Level Database Architectural Design for OLAP and OLTP Ops
IRJET - The 3-Level Database Architectural Design for OLAP and OLTP OpsIRJET - The 3-Level Database Architectural Design for OLAP and OLTP Ops
IRJET - The 3-Level Database Architectural Design for OLAP and OLTP Ops
 
Using Semi-supervised Classifier to Forecast Extreme CPU Utilization
Using Semi-supervised Classifier to Forecast Extreme CPU UtilizationUsing Semi-supervised Classifier to Forecast Extreme CPU Utilization
Using Semi-supervised Classifier to Forecast Extreme CPU Utilization
 
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATIONUSING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
 
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATIONUSING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
USING SEMI-SUPERVISED CLASSIFIER TO FORECAST EXTREME CPU UTILIZATION
 
Migration to Oracle 12c Made Easy Using Replication Technology
Migration to Oracle 12c Made Easy Using Replication TechnologyMigration to Oracle 12c Made Easy Using Replication Technology
Migration to Oracle 12c Made Easy Using Replication Technology
 
Survey of streaming data warehouse update scheduling
Survey of streaming data warehouse update schedulingSurvey of streaming data warehouse update scheduling
Survey of streaming data warehouse update scheduling
 
Approved TPA along with Integrity Verification in Cloud
Approved TPA along with Integrity Verification in CloudApproved TPA along with Integrity Verification in Cloud
Approved TPA along with Integrity Verification in Cloud
 
Comparison of Reporting architectures
Comparison of Reporting architecturesComparison of Reporting architectures
Comparison of Reporting architectures
 
Capacity management for ETL System
Capacity management for ETL SystemCapacity management for ETL System
Capacity management for ETL System
 
Conspectus data warehousing appliances – fad or future
Conspectus   data warehousing appliances – fad or futureConspectus   data warehousing appliances – fad or future
Conspectus data warehousing appliances – fad or future
 
Scalable scheduling of updates in streaming data warehouses
Scalable scheduling of updates in streaming data warehousesScalable scheduling of updates in streaming data warehouses
Scalable scheduling of updates in streaming data warehouses
 
best-practices-for-realtime-data-wa-132882.pdf
best-practices-for-realtime-data-wa-132882.pdfbest-practices-for-realtime-data-wa-132882.pdf
best-practices-for-realtime-data-wa-132882.pdf
 
Updating and Scheduling of Streaming Web Services in Data Warehouses
Updating and Scheduling of Streaming Web Services in Data WarehousesUpdating and Scheduling of Streaming Web Services in Data Warehouses
Updating and Scheduling of Streaming Web Services in Data Warehouses
 
Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...
Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...
Architecting and Tuning IIB/eXtreme Scale for Maximum Performance and Reliabi...
 
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
 
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATANEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
NEAR-REAL-TIME PARALLEL ETL+Q FOR AUTOMATIC SCALABILITY IN BIGDATA
 
Computers in management
Computers in managementComputers in management
Computers in management
 

More from Finalyear Projects

Emotion recognition from facial expression using fuzzy logic
Emotion recognition from facial expression using fuzzy logicEmotion recognition from facial expression using fuzzy logic
Emotion recognition from facial expression using fuzzy logic
Finalyear Projects
 
Energy efficient reverse skyline query processing over wireless sensor networks
Energy efficient reverse skyline query processing over wireless sensor networksEnergy efficient reverse skyline query processing over wireless sensor networks
Energy efficient reverse skyline query processing over wireless sensor networks
Finalyear Projects
 
Single sign on assistant an authentication brokers
Single sign on assistant an authentication brokersSingle sign on assistant an authentication brokers
Single sign on assistant an authentication brokers
Finalyear Projects
 
IEEE Projects 2014-2015
IEEE Projects 2014-2015IEEE Projects 2014-2015
IEEE Projects 2014-2015
Finalyear Projects
 
Detection and localization of multiple spoofing attacks in
Detection and localization of multiple spoofing attacks inDetection and localization of multiple spoofing attacks in
Detection and localization of multiple spoofing attacks in
Finalyear Projects
 
A novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highlyA novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highly
Finalyear Projects
 
A novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highlyA novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highly
Finalyear Projects
 
Fpga implementation of truncated multiplier for array multiplication
Fpga implementation of truncated multiplier for array multiplicationFpga implementation of truncated multiplier for array multiplication
Fpga implementation of truncated multiplier for array multiplication
Finalyear Projects
 
Keyword query routing
Keyword query routingKeyword query routing
Keyword query routing
Finalyear Projects
 
Towards energy efficient big data gathering
Towards energy efficient big data gatheringTowards energy efficient big data gathering
Towards energy efficient big data gathering
Finalyear Projects
 
Java ieee projects titles 2014 2015
Java ieee projects  titles 2014 2015Java ieee projects  titles 2014 2015
Java ieee projects titles 2014 2015
Finalyear Projects
 
System proposal and crs model design applying
System proposal and crs model design applyingSystem proposal and crs model design applying
System proposal and crs model design applying
Finalyear Projects
 
Discovering emerging topics in social streams via link anomaly detection
Discovering emerging topics in social streams via link anomaly detectionDiscovering emerging topics in social streams via link anomaly detection
Discovering emerging topics in social streams via link anomaly detection
Finalyear Projects
 
Navigation by the soles of your feet
Navigation by the soles of your feetNavigation by the soles of your feet
Navigation by the soles of your feet
Finalyear Projects
 
Android Mobile - Home Automation
Android Mobile - Home Automation Android Mobile - Home Automation
Android Mobile - Home Automation
Finalyear Projects
 
Home automation
Home automationHome automation
Home automation
Finalyear Projects
 

More from Finalyear Projects (16)

Emotion recognition from facial expression using fuzzy logic
Emotion recognition from facial expression using fuzzy logicEmotion recognition from facial expression using fuzzy logic
Emotion recognition from facial expression using fuzzy logic
 
Energy efficient reverse skyline query processing over wireless sensor networks
Energy efficient reverse skyline query processing over wireless sensor networksEnergy efficient reverse skyline query processing over wireless sensor networks
Energy efficient reverse skyline query processing over wireless sensor networks
 
Single sign on assistant an authentication brokers
Single sign on assistant an authentication brokersSingle sign on assistant an authentication brokers
Single sign on assistant an authentication brokers
 
IEEE Projects 2014-2015
IEEE Projects 2014-2015IEEE Projects 2014-2015
IEEE Projects 2014-2015
 
Detection and localization of multiple spoofing attacks in
Detection and localization of multiple spoofing attacks inDetection and localization of multiple spoofing attacks in
Detection and localization of multiple spoofing attacks in
 
A novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highlyA novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highly
 
A novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highlyA novel vlsi dht algorithm for a highly
A novel vlsi dht algorithm for a highly
 
Fpga implementation of truncated multiplier for array multiplication
Fpga implementation of truncated multiplier for array multiplicationFpga implementation of truncated multiplier for array multiplication
Fpga implementation of truncated multiplier for array multiplication
 
Keyword query routing
Keyword query routingKeyword query routing
Keyword query routing
 
Towards energy efficient big data gathering
Towards energy efficient big data gatheringTowards energy efficient big data gathering
Towards energy efficient big data gathering
 
Java ieee projects titles 2014 2015
Java ieee projects  titles 2014 2015Java ieee projects  titles 2014 2015
Java ieee projects titles 2014 2015
 
System proposal and crs model design applying
System proposal and crs model design applyingSystem proposal and crs model design applying
System proposal and crs model design applying
 
Discovering emerging topics in social streams via link anomaly detection
Discovering emerging topics in social streams via link anomaly detectionDiscovering emerging topics in social streams via link anomaly detection
Discovering emerging topics in social streams via link anomaly detection
 
Navigation by the soles of your feet
Navigation by the soles of your feetNavigation by the soles of your feet
Navigation by the soles of your feet
 
Android Mobile - Home Automation
Android Mobile - Home Automation Android Mobile - Home Automation
Android Mobile - Home Automation
 
Home automation
Home automationHome automation
Home automation
 

Recently uploaded

Leveraging Generative AI to Drive Nonprofit Innovation
Leveraging Generative AI to Drive Nonprofit InnovationLeveraging Generative AI to Drive Nonprofit Innovation
Leveraging Generative AI to Drive Nonprofit Innovation
TechSoup
 
BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...
BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...
BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...
Nguyen Thanh Tu Collection
 
PIMS Job Advertisement 2024.pdf Islamabad
PIMS Job Advertisement 2024.pdf IslamabadPIMS Job Advertisement 2024.pdf Islamabad
PIMS Job Advertisement 2024.pdf Islamabad
AyyanKhan40
 
Wound healing PPT
Wound healing PPTWound healing PPT
Wound healing PPT
Jyoti Chand
 
The Diamonds of 2023-2024 in the IGRA collection
The Diamonds of 2023-2024 in the IGRA collectionThe Diamonds of 2023-2024 in the IGRA collection
The Diamonds of 2023-2024 in the IGRA collection
Israel Genealogy Research Association
 
Présentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptx
Présentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptxPrésentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptx
Présentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptx
siemaillard
 
clinical examination of hip joint (1).pdf
clinical examination of hip joint (1).pdfclinical examination of hip joint (1).pdf
clinical examination of hip joint (1).pdf
Priyankaranawat4
 
ANATOMY AND BIOMECHANICS OF HIP JOINT.pdf
ANATOMY AND BIOMECHANICS OF HIP JOINT.pdfANATOMY AND BIOMECHANICS OF HIP JOINT.pdf
ANATOMY AND BIOMECHANICS OF HIP JOINT.pdf
Priyankaranawat4
 
Hindi varnamala | hindi alphabet PPT.pdf
Hindi varnamala | hindi alphabet PPT.pdfHindi varnamala | hindi alphabet PPT.pdf
Hindi varnamala | hindi alphabet PPT.pdf
Dr. Mulla Adam Ali
 
UGC NET Exam Paper 1- Unit 1:Teaching Aptitude
UGC NET Exam Paper 1- Unit 1:Teaching AptitudeUGC NET Exam Paper 1- Unit 1:Teaching Aptitude
UGC NET Exam Paper 1- Unit 1:Teaching Aptitude
S. Raj Kumar
 
C1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptx
C1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptxC1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptx
C1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptx
mulvey2
 
Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...
Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...
Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...
Diana Rendina
 
How to deliver Powerpoint Presentations.pptx
How to deliver Powerpoint  Presentations.pptxHow to deliver Powerpoint  Presentations.pptx
How to deliver Powerpoint Presentations.pptx
HajraNaeem15
 
Liberal Approach to the Study of Indian Politics.pdf
Liberal Approach to the Study of Indian Politics.pdfLiberal Approach to the Study of Indian Politics.pdf
Liberal Approach to the Study of Indian Politics.pdf
WaniBasim
 
বাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdf
বাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdfবাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdf
বাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdf
eBook.com.bd (প্রয়োজনীয় বাংলা বই)
 
Digital Artefact 1 - Tiny Home Environmental Design
Digital Artefact 1 - Tiny Home Environmental DesignDigital Artefact 1 - Tiny Home Environmental Design
Digital Artefact 1 - Tiny Home Environmental Design
amberjdewit93
 
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
GeorgeMilliken2
 
MARY JANE WILSON, A “BOA MÃE” .
MARY JANE WILSON, A “BOA MÃE”           .MARY JANE WILSON, A “BOA MÃE”           .
MARY JANE WILSON, A “BOA MÃE” .
Colégio Santa Teresinha
 
BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...
BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...
BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...
Nguyen Thanh Tu Collection
 
Pengantar Penggunaan Flutter - Dart programming language1.pptx
Pengantar Penggunaan Flutter - Dart programming language1.pptxPengantar Penggunaan Flutter - Dart programming language1.pptx
Pengantar Penggunaan Flutter - Dart programming language1.pptx
Fajar Baskoro
 

Recently uploaded (20)

Leveraging Generative AI to Drive Nonprofit Innovation
Leveraging Generative AI to Drive Nonprofit InnovationLeveraging Generative AI to Drive Nonprofit Innovation
Leveraging Generative AI to Drive Nonprofit Innovation
 
BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...
BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...
BÀI TẬP DẠY THÊM TIẾNG ANH LỚP 7 CẢ NĂM FRIENDS PLUS SÁCH CHÂN TRỜI SÁNG TẠO ...
 
PIMS Job Advertisement 2024.pdf Islamabad
PIMS Job Advertisement 2024.pdf IslamabadPIMS Job Advertisement 2024.pdf Islamabad
PIMS Job Advertisement 2024.pdf Islamabad
 
Wound healing PPT
Wound healing PPTWound healing PPT
Wound healing PPT
 
The Diamonds of 2023-2024 in the IGRA collection
The Diamonds of 2023-2024 in the IGRA collectionThe Diamonds of 2023-2024 in the IGRA collection
The Diamonds of 2023-2024 in the IGRA collection
 
Présentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptx
Présentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptxPrésentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptx
Présentationvvvvvvvvvvvvvvvvvvvvvvvvvvvv2.pptx
 
clinical examination of hip joint (1).pdf
clinical examination of hip joint (1).pdfclinical examination of hip joint (1).pdf
clinical examination of hip joint (1).pdf
 
ANATOMY AND BIOMECHANICS OF HIP JOINT.pdf
ANATOMY AND BIOMECHANICS OF HIP JOINT.pdfANATOMY AND BIOMECHANICS OF HIP JOINT.pdf
ANATOMY AND BIOMECHANICS OF HIP JOINT.pdf
 
Hindi varnamala | hindi alphabet PPT.pdf
Hindi varnamala | hindi alphabet PPT.pdfHindi varnamala | hindi alphabet PPT.pdf
Hindi varnamala | hindi alphabet PPT.pdf
 
UGC NET Exam Paper 1- Unit 1:Teaching Aptitude
UGC NET Exam Paper 1- Unit 1:Teaching AptitudeUGC NET Exam Paper 1- Unit 1:Teaching Aptitude
UGC NET Exam Paper 1- Unit 1:Teaching Aptitude
 
C1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptx
C1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptxC1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptx
C1 Rubenstein AP HuG xxxxxxxxxxxxxx.pptx
 
Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...
Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...
Reimagining Your Library Space: How to Increase the Vibes in Your Library No ...
 
How to deliver Powerpoint Presentations.pptx
How to deliver Powerpoint  Presentations.pptxHow to deliver Powerpoint  Presentations.pptx
How to deliver Powerpoint Presentations.pptx
 
Liberal Approach to the Study of Indian Politics.pdf
Liberal Approach to the Study of Indian Politics.pdfLiberal Approach to the Study of Indian Politics.pdf
Liberal Approach to the Study of Indian Politics.pdf
 
বাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdf
বাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdfবাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdf
বাংলাদেশ অর্থনৈতিক সমীক্ষা (Economic Review) ২০২৪ UJS App.pdf
 
Digital Artefact 1 - Tiny Home Environmental Design
Digital Artefact 1 - Tiny Home Environmental DesignDigital Artefact 1 - Tiny Home Environmental Design
Digital Artefact 1 - Tiny Home Environmental Design
 
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
 
MARY JANE WILSON, A “BOA MÃE” .
MARY JANE WILSON, A “BOA MÃE”           .MARY JANE WILSON, A “BOA MÃE”           .
MARY JANE WILSON, A “BOA MÃE” .
 
BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...
BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...
BÀI TẬP BỔ TRỢ TIẾNG ANH LỚP 9 CẢ NĂM - GLOBAL SUCCESS - NĂM HỌC 2024-2025 - ...
 
Pengantar Penggunaan Flutter - Dart programming language1.pptx
Pengantar Penggunaan Flutter - Dart programming language1.pptxPengantar Penggunaan Flutter - Dart programming language1.pptx
Pengantar Penggunaan Flutter - Dart programming language1.pptx
 

REAL TIME PROJECTS IEEE BASED PROJECTS EMBEDDED SYSTEMS PAPER PUBLICATIONS MATLAB PROJECTS targetjsolutions@gmail.com (0)9611582234, (0)9945657526Scalable scheduling of updates in streaming data warehouses

  • 1. Targetj Solutions  REAL TIME PROJECTS  IEEE BASED PROJECTS  EMBEDDED SYSTEMS  PAPER PUBLICATIONS MATLAB PROJECTS  targetjsolutions@gmail.com  (0)9611582234, (0)9945657526
  • 2. Scalable Scheduling of Updates in Streaming Data Warehouses
  • 3. Abstract  We then propose a scheduling framework that handles the complications encountered by a stream warehouse: view hierarchies and priorities, data consistency, inability to preempt updates, heterogeneity of update jobs caused by different interarrival times and data volumes among different sources, and transient overload.  A novel feature of our framework is that scheduling decisions do not depend on properties of update jobs (such as deadlines), but rather on the effect of update jobs on data staleness. Finally, we present a suite of update scheduling algorithms and extensive simulation experiments to map out factors which affect their performance
  • 4. Existing System  Recent work on streaming warehouses has focused on speeding up the Extract-Transform-Load (ETL) process . There has also been work on supporting various warehouse maintenance policies, such as immediate (update views whenever the base data change), deferred (update views only when queried), and periodic [10].  However, there has been a little work on choosing, of all the tables that are now out-of-date due to the arrival of new data, which one should be updated next
  • 5. Disadvantages  The problem with this approach is that new data may arrive on multiple streams, but there is no mechanism for limiting the number of tables that can be updated simultaneously. Running too many parallel updates can degrade performance due to memory and CPU-cache thrashing (multiple memoryintensive ETL processes are likely to exhaust virtual memory), disk-arm thrashing, context switching,
  • 6. Proposed System  Many metrics have been considered in the real-time scheduling literature. In a typical hard realtime system, jobs must be completed before their deadlines a simple metric to understand and to prove results about.  In a firm real-time system, jobs can miss their deadlines, and if they do, they are discarded. The performance metric in a firm real-time system is the fraction of jobs that meet their deadlines. However, a streaming warehouse must load all of the data that arrive; therefore no updates can be discarded.  In a soft real-time system, late jobs are allowed to stay in the system, and the performance metric is lateness (or tardiness), which is the difference between the completion times of late jobs and their deadlines.  We are not concerned about properties of the update jobs. Instead, we will define a scheduling metric in terms of data staleness, roughly defined as the difference between the current time and the time stamp of the most recent record in a table
  • 7. Proposed System  Associated with the accountability feature, we also develop two distinct modes for auditing: push mode and pull mode. The push mode refers to logs being periodically sent to the data owner or stakeholder while the pull mode refers to an alternative approach whereby the user (or another authorized party) can retrieve the logs as needed. In summary, our main contributions are as follows: We propose a novel automatic and enforceable logging mechanism in the cloud. To our knowledge, this is the first time a systematic approach to data accountability through the novel usage of JAR files is proposed. . Our proposed architecture is platform independent and highly decentralized, in that it does not require any dedicated authentication or storage system in place. We go beyond traditional access control in that we provide a certain degree of usage control for the protected data after these are delivered to the receiver. We conduct experiments on a real cloud testbed. The results demonstrate the efficiency, scalability, and granularity of our approach. We also provide a detailed security analysis and discuss the reliability and strength of our architecture.
  • 8. Advantages  The goal of a streaming warehouse is to propagate new data across all the relevant tables and views as quickly as possible. Once new data are loaded, the applications and triggers defined on the warehouse can take immediate action. This allows businesses to make decisions in nearly real time, which may lead to increased profits, improved customer satisfaction, and prevention of serious problems that could develop if no action was taken
  • 9. Software Requirements  Operating System : Windows XP Professional  Environment : Visual Studio .NET 2010  Language : C#.NET Web Technology : Active Server Pages.Net  Back end : MS-SQL-Server 2008
  • 10. Hardware Requirements: Processor : Pentium III / IV Hard Disk : 40 GB Ram : 256 MB Monitor : 15VGA Color Mouse : Ball / Optical Keyboard : 102 Keys
  • 11. Reference  [1] B. Adelberg, H. Garcia-Molina, and B. Kao, “Applying Update Streams in a Soft Real-Time Database System,” Proc. ACM SIGMOD Int’l Conf. Management of Data, pp. 245-256, 1995.  [2] B. Babcock, S. Babu, M. Datar, and R. Motwani, “Chain: Operator Scheduling for Memory Minimization in Data Stream Systems,” Proc. ACM SIGMOD Int’l Conf. Management of Data, pp. 253-264, 2003.  [3] S. Babu, U. Srivastava, and J. Widom, “Exploiting K-constraints to Reduce Memory Overhead in Continuous Queries over Data Streams,” ACM Trans. Database Systems, vol. 29, no. 3, pp. 545- 580, 2004.  [4] S. Baruah, “The Non-preemptive Scheduling of Periodic Tasks upon Multiprocessors,” Real Time Systems, vol. 32, nos. 1/2, pp. 9- 20, 2006.  [5] S. Baruah, N. Cohen, C. Plaxton, and D. Varvel, “Proportionate Progress: A Notion of Fairness in Resource Allocation,” Algorithmica, vol. 15, pp. 600-625, 1996.