SlideShare une entreprise Scribd logo
1  sur  22
1 May 2009 Experts in  Data warehousing, BI and  Data Mining
About Kaizentric ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Kaizentric’s Business
Experience in Data Warehousing Technology focus Project Duration Data Warehouse Photons – Insurance Data Warehouse 7 months Data Warehouse Hornet – HR Repository 12 months Data Warehouse Group Benefits Insurance 9 months Data Integration Marketing and Sales Linkage 4 months Data Warehousing and Data Mining Mortgage Backed Securities 6 months Data Integration Services Data Integration Center of Excellence 2 years Data Warehousing and Data Mining Be InformEd – Education Industry 4 months
Kaizentric’s Products
Kaizentric’s Products - WIP
Photons – Insurance DW ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Photons – Architecture Data  Standardization Source Staging Area Oracle  DWH Interfaces & BI  reports Data Sources  Identification Data Mapping Data Validation Data Unification components Code Admin for Data Consolidation ACORD Data Standard Rectify data errors and enrich data Data Audit,  Data Quality  definition Implement business rules for data integrity, validation rules for cleansing, transformation rules for formatting and consolidation Physical  Components Process  Components DWH  Staging Area Data Sources OpCo POS EDI Sibel Master Data
Hornet – HR Data Warehouse ,[object Object],[object Object],[object Object],[object Object],[object Object]
Hornet – Architecture Data  Standardization Source Staging Area Oracle  DWH Jobs vs. Candidates  Reports Data Sources  Identification Data Mapping Data Validation Data Unification components Code Admin for Data Consolidation Data Sources Rectify data errors and enrich data Data Audit,  Data Quality  definition Implement business rules for data integrity, validation rules for cleansing, transformation rules for formatting and consolidation Physical  Components Process  Components DWH  Staging Area Reports Pdf Flat files documents Hotlists Emails
Insurance - Claims Mining ,[object Object],[object Object],[object Object],[object Object],[object Object]
Insurance – High level Design Source A Source B Source C Maps Mart Kalido iStage Stage Maps Spreadsheets  Maps Access Databases The Enterprise Logical Data Model will not be built in a single effort; instead projects requiring data will incrementally contribute to its build out The logical data model allows users to locate which systems contain particular data entities.  It also has attribute mappings that allow a user to know which tables and attributes in the sources map to the enterprise logical data model; the mapping would reference all sources that have that type of data.  In addition, the system of record would be identified for each type (and possibly segment) of data. The logical data model allows users to know if data elements are in the data warehouse and where in the environment they are located Other business owned data sources (such as spreadsheets and access databases) will also be mapped to the enterprise data model.  This will give the organization a better understanding of data that is not part of the application portfolio or where duplicate data is being stored by the business. Enterprise Logical Data Model First Name Last Name Street Address City Phone Number Date of Birth Social Security Age Employer First Name Last Name Phone Number Street Address Date of Birth City Social Security Age Employer First Name Last Name Phone Number Street Address Date of Birth City Social Security Age Employer
MSL – Marketing and Sales Link ,[object Object],[object Object],[object Object],[object Object],[object Object]
MSL Business Rules People who respond to Marketing campaigns (~800k Responses per year) 2-5% end-user interest is qualified via live agent 95-98% who have Interest with company Populated in myleads portal or lead tab in  SFDC (Salesforce.com)  Responded to Marketing Recently Not Already in SFDC New Contacts (Send to SFDC) Contacts who show interest in products based on flexible filtering rules ,[object Object],[object Object],[object Object],Example Filter Rules Already in SFDC  (Go to Marketing History)
MBS – Innovative Research ,[object Object],[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],MBS – Business Requirement Return Risk Cost
Data Integration COE ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
DI COE – Technical Architecture
Be InformEd – DW for Colleges and Schools ,[object Object],[object Object],[object Object],[object Object],[object Object]
Be InformEd– Architecture Data  Standardization Source Staging Area Oracle  DWH Interfaces & BI  reports Data Sources  Identification Data Mapping Data Validation Data Unification components Code Admin for Data Consolidation Educational Institute Rectify data errors and enrich data Data Audit,  Data Quality  definition Implement business rules for data integrity, validation rules for cleansing, transformation rules for formatting and consolidation Physical  Components Process  Components DWH  Staging Area Kaizentric’s location Data Sources Student Staff Marks Attendance Others
Our Team
For clarifications, please contact Azhagarasan Annadorai Kaizentric Technologies Pvt Ltd +91-90947-98789 azhagarasan@kaizentric.com  www.kaizentric.com Thank   you Head office:   New #126, Old#329, Arcot Road, Kodambakkam, Chennai 600 024 India Phone: +91-44-64990787

Contenu connexe

Tendances

Forrester wave enterprise datawarehouseing platforms 2011
Forrester wave enterprise datawarehouseing platforms 2011Forrester wave enterprise datawarehouseing platforms 2011
Forrester wave enterprise datawarehouseing platforms 2011divjeev
 
Teradata Aster: Big Data Discovery Made Easy
Teradata Aster: Big Data Discovery Made EasyTeradata Aster: Big Data Discovery Made Easy
Teradata Aster: Big Data Discovery Made EasyTIBCO Spotfire
 
Data Warehouse Application Of Insurance Industry
Data Warehouse Application Of Insurance IndustryData Warehouse Application Of Insurance Industry
Data Warehouse Application Of Insurance Industryinfoarup
 
Understanding Reference Data with Aaron Zornes
Understanding Reference Data with Aaron ZornesUnderstanding Reference Data with Aaron Zornes
Understanding Reference Data with Aaron ZornesOrchestra Networks
 
Data-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse StrategiesData-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse StrategiesDATAVERSITY
 
MDM Institute: Why is Reference data mission critical now?
MDM Institute: Why is Reference data mission critical now?MDM Institute: Why is Reference data mission critical now?
MDM Institute: Why is Reference data mission critical now?Orchestra Networks
 
Business Intelligence Priorities, Products and Services required in Enterprise
Business Intelligence Priorities, Products and Services required in EnterpriseBusiness Intelligence Priorities, Products and Services required in Enterprise
Business Intelligence Priorities, Products and Services required in EnterpriseSaubhik Mandal
 
bigdatasqloverview21jan2015-2408000
bigdatasqloverview21jan2015-2408000bigdatasqloverview21jan2015-2408000
bigdatasqloverview21jan2015-2408000Kartik Padmanabhan
 
Teradata Overview
Teradata OverviewTeradata Overview
Teradata OverviewTeradata
 
Analyst Webinar: Discover how a logical data fabric helps organizations avoid...
Analyst Webinar: Discover how a logical data fabric helps organizations avoid...Analyst Webinar: Discover how a logical data fabric helps organizations avoid...
Analyst Webinar: Discover how a logical data fabric helps organizations avoid...Denodo
 
Credit Suisse, Reference Data Management on a Global Scale
Credit Suisse, Reference Data Management on a Global ScaleCredit Suisse, Reference Data Management on a Global Scale
Credit Suisse, Reference Data Management on a Global ScaleOrchestra Networks
 
CDI-MDMSummit.290213824
CDI-MDMSummit.290213824CDI-MDMSummit.290213824
CDI-MDMSummit.290213824ypai
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Jeffrey T. Pollock
 
Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...
Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...
Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...Aaron Zornes
 
Enterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and OptionsEnterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and OptionsBoris Otto
 
Business objects data services in an sap landscape
Business objects data services in an sap landscapeBusiness objects data services in an sap landscape
Business objects data services in an sap landscapePradeep Ketoli
 

Tendances (20)

Forrester wave enterprise datawarehouseing platforms 2011
Forrester wave enterprise datawarehouseing platforms 2011Forrester wave enterprise datawarehouseing platforms 2011
Forrester wave enterprise datawarehouseing platforms 2011
 
Teradata Aster: Big Data Discovery Made Easy
Teradata Aster: Big Data Discovery Made EasyTeradata Aster: Big Data Discovery Made Easy
Teradata Aster: Big Data Discovery Made Easy
 
Data Warehouse Application Of Insurance Industry
Data Warehouse Application Of Insurance IndustryData Warehouse Application Of Insurance Industry
Data Warehouse Application Of Insurance Industry
 
Vendor comparisons: the end game in business intelligence
Vendor comparisons: the end game in business intelligenceVendor comparisons: the end game in business intelligence
Vendor comparisons: the end game in business intelligence
 
Understanding Reference Data with Aaron Zornes
Understanding Reference Data with Aaron ZornesUnderstanding Reference Data with Aaron Zornes
Understanding Reference Data with Aaron Zornes
 
Data-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse StrategiesData-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse Strategies
 
MDM Institute: Why is Reference data mission critical now?
MDM Institute: Why is Reference data mission critical now?MDM Institute: Why is Reference data mission critical now?
MDM Institute: Why is Reference data mission critical now?
 
Business Intelligence Priorities, Products and Services required in Enterprise
Business Intelligence Priorities, Products and Services required in EnterpriseBusiness Intelligence Priorities, Products and Services required in Enterprise
Business Intelligence Priorities, Products and Services required in Enterprise
 
MDM and Reference Data
MDM and Reference DataMDM and Reference Data
MDM and Reference Data
 
bigdatasqloverview21jan2015-2408000
bigdatasqloverview21jan2015-2408000bigdatasqloverview21jan2015-2408000
bigdatasqloverview21jan2015-2408000
 
Teradata Overview
Teradata OverviewTeradata Overview
Teradata Overview
 
Analyst Webinar: Discover how a logical data fabric helps organizations avoid...
Analyst Webinar: Discover how a logical data fabric helps organizations avoid...Analyst Webinar: Discover how a logical data fabric helps organizations avoid...
Analyst Webinar: Discover how a logical data fabric helps organizations avoid...
 
Credit Suisse, Reference Data Management on a Global Scale
Credit Suisse, Reference Data Management on a Global ScaleCredit Suisse, Reference Data Management on a Global Scale
Credit Suisse, Reference Data Management on a Global Scale
 
CDI-MDMSummit.290213824
CDI-MDMSummit.290213824CDI-MDMSummit.290213824
CDI-MDMSummit.290213824
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!
 
Vw sachin 2
Vw sachin 2Vw sachin 2
Vw sachin 2
 
Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...
Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...
Analyst field reports on top 20 multi domain MDM solutions - Aaron Zornes (NY...
 
Enterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and OptionsEnterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and Options
 
Data Flux
Data FluxData Flux
Data Flux
 
Business objects data services in an sap landscape
Business objects data services in an sap landscapeBusiness objects data services in an sap landscape
Business objects data services in an sap landscape
 

En vedette

01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BIAchmad Solichin
 
Bi presentation Designing and Implementing Business Intelligence Systems
Bi presentation   Designing and Implementing Business Intelligence SystemsBi presentation   Designing and Implementing Business Intelligence Systems
Bi presentation Designing and Implementing Business Intelligence SystemsVispi Munshi
 
MS SQL SERVER: Using the data mining tools
MS SQL SERVER: Using the data mining toolsMS SQL SERVER: Using the data mining tools
MS SQL SERVER: Using the data mining toolsDataminingTools Inc
 
Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Bernardo Najlis
 
Introduction to Business Intelligence
Introduction to Business IntelligenceIntroduction to Business Intelligence
Introduction to Business IntelligenceAlmog Ramrajkar
 
TEDx Manchester: AI & The Future of Work
TEDx Manchester: AI & The Future of WorkTEDx Manchester: AI & The Future of Work
TEDx Manchester: AI & The Future of WorkVolker Hirsch
 

En vedette (7)

01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI
 
Bi presentation Designing and Implementing Business Intelligence Systems
Bi presentation   Designing and Implementing Business Intelligence SystemsBi presentation   Designing and Implementing Business Intelligence Systems
Bi presentation Designing and Implementing Business Intelligence Systems
 
MS SQL SERVER: Using the data mining tools
MS SQL SERVER: Using the data mining toolsMS SQL SERVER: Using the data mining tools
MS SQL SERVER: Using the data mining tools
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)
 
Introduction to Business Intelligence
Introduction to Business IntelligenceIntroduction to Business Intelligence
Introduction to Business Intelligence
 
TEDx Manchester: AI & The Future of Work
TEDx Manchester: AI & The Future of WorkTEDx Manchester: AI & The Future of Work
TEDx Manchester: AI & The Future of Work
 

Similaire à Kaizentric Presentation

Overview of business intelligence
Overview of business intelligenceOverview of business intelligence
Overview of business intelligenceAhsan Kabir
 
Aen004 Thorpe 091807
Aen004 Thorpe 091807Aen004 Thorpe 091807
Aen004 Thorpe 091807Dreamforce07
 
Rev_3 Components of a Data Warehouse
Rev_3 Components of a Data WarehouseRev_3 Components of a Data Warehouse
Rev_3 Components of a Data WarehouseRyan Andhavarapu
 
Data quality and bi
Data quality and biData quality and bi
Data quality and bijeffd00
 
Microsoft SQL Server 2008 R2 and BizTalk Server Presentation
Microsoft SQL Server 2008 R2 and BizTalk Server PresentationMicrosoft SQL Server 2008 R2 and BizTalk Server Presentation
Microsoft SQL Server 2008 R2 and BizTalk Server PresentationMicrosoft Private Cloud
 
Bi presentation to bkk
Bi presentation to bkkBi presentation to bkk
Bi presentation to bkkguest4e975e2
 
BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...
BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...
BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...Big Data Week
 
Processing Big Data At-Scale in the App Cloud
Processing Big Data At-Scale in the App CloudProcessing Big Data At-Scale in the App Cloud
Processing Big Data At-Scale in the App CloudSalesforce Developers
 
Data lake benefits
Data lake benefitsData lake benefits
Data lake benefitsRicky Barron
 
DAS Slides: Metadata Management From Technical Architecture & Business Techni...
DAS Slides: Metadata Management From Technical Architecture & Business Techni...DAS Slides: Metadata Management From Technical Architecture & Business Techni...
DAS Slides: Metadata Management From Technical Architecture & Business Techni...DATAVERSITY
 
Business Intelligence and Analytics Capability
Business Intelligence and Analytics CapabilityBusiness Intelligence and Analytics Capability
Business Intelligence and Analytics CapabilityALTEN Calsoft Labs
 
Complexities of Separating Data in an ERP Environment
Complexities of Separating Data in an ERP EnvironmentComplexities of Separating Data in an ERP Environment
Complexities of Separating Data in an ERP Environmenteprentise
 
Fbdl enabling comprehensive_data_services
Fbdl enabling comprehensive_data_servicesFbdl enabling comprehensive_data_services
Fbdl enabling comprehensive_data_servicesCindy Irby
 
Datawarehousing & DSS
Datawarehousing & DSSDatawarehousing & DSS
Datawarehousing & DSSDeepali Raut
 
Three Dimensions of Data as a Service
Three Dimensions of Data as a ServiceThree Dimensions of Data as a Service
Three Dimensions of Data as a ServiceDenodo
 

Similaire à Kaizentric Presentation (20)

Overview of business intelligence
Overview of business intelligenceOverview of business intelligence
Overview of business intelligence
 
Aen004 Thorpe 091807
Aen004 Thorpe 091807Aen004 Thorpe 091807
Aen004 Thorpe 091807
 
Rev_3 Components of a Data Warehouse
Rev_3 Components of a Data WarehouseRev_3 Components of a Data Warehouse
Rev_3 Components of a Data Warehouse
 
Data quality and bi
Data quality and biData quality and bi
Data quality and bi
 
Microsoft SQL Server 2008 R2 and BizTalk Server Presentation
Microsoft SQL Server 2008 R2 and BizTalk Server PresentationMicrosoft SQL Server 2008 R2 and BizTalk Server Presentation
Microsoft SQL Server 2008 R2 and BizTalk Server Presentation
 
Bi presentation to bkk
Bi presentation to bkkBi presentation to bkk
Bi presentation to bkk
 
Business intelligence
Business intelligenceBusiness intelligence
Business intelligence
 
BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...
BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...
BDW Chicago 2016 - Ramu Kalvakuntla, Sr. Principal - Technical - Big Data Pra...
 
Processing Big Data At-Scale in the App Cloud
Processing Big Data At-Scale in the App CloudProcessing Big Data At-Scale in the App Cloud
Processing Big Data At-Scale in the App Cloud
 
Data lake benefits
Data lake benefitsData lake benefits
Data lake benefits
 
DAS Slides: Metadata Management From Technical Architecture & Business Techni...
DAS Slides: Metadata Management From Technical Architecture & Business Techni...DAS Slides: Metadata Management From Technical Architecture & Business Techni...
DAS Slides: Metadata Management From Technical Architecture & Business Techni...
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Business Intelligence and Analytics Capability
Business Intelligence and Analytics CapabilityBusiness Intelligence and Analytics Capability
Business Intelligence and Analytics Capability
 
Complexities of Separating Data in an ERP Environment
Complexities of Separating Data in an ERP EnvironmentComplexities of Separating Data in an ERP Environment
Complexities of Separating Data in an ERP Environment
 
Fbdl enabling comprehensive_data_services
Fbdl enabling comprehensive_data_servicesFbdl enabling comprehensive_data_services
Fbdl enabling comprehensive_data_services
 
Datawarehousing & DSS
Datawarehousing & DSSDatawarehousing & DSS
Datawarehousing & DSS
 
CTP Data Warehouse
CTP Data WarehouseCTP Data Warehouse
CTP Data Warehouse
 
IT Ready - DW: 1st Day
IT Ready - DW: 1st Day IT Ready - DW: 1st Day
IT Ready - DW: 1st Day
 
Three Dimensions of Data as a Service
Three Dimensions of Data as a ServiceThree Dimensions of Data as a Service
Three Dimensions of Data as a Service
 
Abdul ETL Resume
Abdul ETL ResumeAbdul ETL Resume
Abdul ETL Resume
 

Kaizentric Presentation

  • 1. 1 May 2009 Experts in Data warehousing, BI and Data Mining
  • 2.
  • 4. Experience in Data Warehousing Technology focus Project Duration Data Warehouse Photons – Insurance Data Warehouse 7 months Data Warehouse Hornet – HR Repository 12 months Data Warehouse Group Benefits Insurance 9 months Data Integration Marketing and Sales Linkage 4 months Data Warehousing and Data Mining Mortgage Backed Securities 6 months Data Integration Services Data Integration Center of Excellence 2 years Data Warehousing and Data Mining Be InformEd – Education Industry 4 months
  • 7.
  • 8. Photons – Architecture Data Standardization Source Staging Area Oracle DWH Interfaces & BI reports Data Sources Identification Data Mapping Data Validation Data Unification components Code Admin for Data Consolidation ACORD Data Standard Rectify data errors and enrich data Data Audit, Data Quality definition Implement business rules for data integrity, validation rules for cleansing, transformation rules for formatting and consolidation Physical Components Process Components DWH Staging Area Data Sources OpCo POS EDI Sibel Master Data
  • 9.
  • 10. Hornet – Architecture Data Standardization Source Staging Area Oracle DWH Jobs vs. Candidates Reports Data Sources Identification Data Mapping Data Validation Data Unification components Code Admin for Data Consolidation Data Sources Rectify data errors and enrich data Data Audit, Data Quality definition Implement business rules for data integrity, validation rules for cleansing, transformation rules for formatting and consolidation Physical Components Process Components DWH Staging Area Reports Pdf Flat files documents Hotlists Emails
  • 11.
  • 12. Insurance – High level Design Source A Source B Source C Maps Mart Kalido iStage Stage Maps Spreadsheets Maps Access Databases The Enterprise Logical Data Model will not be built in a single effort; instead projects requiring data will incrementally contribute to its build out The logical data model allows users to locate which systems contain particular data entities. It also has attribute mappings that allow a user to know which tables and attributes in the sources map to the enterprise logical data model; the mapping would reference all sources that have that type of data. In addition, the system of record would be identified for each type (and possibly segment) of data. The logical data model allows users to know if data elements are in the data warehouse and where in the environment they are located Other business owned data sources (such as spreadsheets and access databases) will also be mapped to the enterprise data model. This will give the organization a better understanding of data that is not part of the application portfolio or where duplicate data is being stored by the business. Enterprise Logical Data Model First Name Last Name Street Address City Phone Number Date of Birth Social Security Age Employer First Name Last Name Phone Number Street Address Date of Birth City Social Security Age Employer First Name Last Name Phone Number Street Address Date of Birth City Social Security Age Employer
  • 13.
  • 14.
  • 15.
  • 16.
  • 17.
  • 18. DI COE – Technical Architecture
  • 19.
  • 20. Be InformEd– Architecture Data Standardization Source Staging Area Oracle DWH Interfaces & BI reports Data Sources Identification Data Mapping Data Validation Data Unification components Code Admin for Data Consolidation Educational Institute Rectify data errors and enrich data Data Audit, Data Quality definition Implement business rules for data integrity, validation rules for cleansing, transformation rules for formatting and consolidation Physical Components Process Components DWH Staging Area Kaizentric’s location Data Sources Student Staff Marks Attendance Others
  • 22. For clarifications, please contact Azhagarasan Annadorai Kaizentric Technologies Pvt Ltd +91-90947-98789 azhagarasan@kaizentric.com www.kaizentric.com Thank you Head office: New #126, Old#329, Arcot Road, Kodambakkam, Chennai 600 024 India Phone: +91-44-64990787