SlideShare ist ein Scribd-Unternehmen logo
1 von 62
What is Business Intelligence? Business intelligence is a broad category of applications and technologies for gathering, providing access to, and analyzing data for the purpose of helping enterprise users make better business decisions.  Ekta  Pardhi
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Data, Data everywhere yet ... ,[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],[object Object],[object Object],[object Object],[object Object],[object Object]
Online Analytical Processing (OLAP ) It enables analysts, managers and executives to gain insight into data through fast, consistent, interactive access to a wide variety of possible views of information that has been transformed from raw data to reflect the real dimensionality of the enterprise as understood by the user. Time Product Region SQL 2000 Oracle Access SQL 2005 1KEY OLAP
OLAP Applications - multi-dimensional views of data ,[object Object],[object Object],[object Object]
Dimensions:  Product, Region, Time Hierarchical summarization paths Product  Region  Time Industry  Country  Year Category  Region  Quarter  Product  City  Month  Week   Office  Day Conceptual Data Model Multi-dimensional view of Data ,[object Object],Month 1  2 3  4  7 6  5  Product Toothpaste  Juice Cola Milk  Cream Soap  Region W S  N
[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object],Ekta  Pardhi
Graphically Data Warehouse Subject Oriented Credit Risk Interest Rate Risk Forex Risk  ALM Subject Area OLTP  Systems Integrated Credit Risk Code: XXXX Interest Rate Risk Code: CXXYY Forex  Risk Code: XX/XX.XX Common Code for various source codes ALM Subject Area Non Volatile OLTP U S E R S Data Warehouse U S E R S Read Write Read Time variant Dec 98 1995 1996 1997 1998 OLTP OLAP
[object Object],[object Object],[object Object],[object Object]
OLTP/OLAP ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
OLTP vs. OLAP
Examples of OLAP applications in various functional areas
Nature of OLAP Analysis ,[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]
[object Object],[object Object]
Dimension
[object Object],[object Object]
Attribute
[object Object],[object Object]
Fact Table
[object Object],[object Object]
Measure
[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object],[object Object]
Aggregation Hierarchies
[object Object],[object Object]
T i m e p r o d c u s t p r o m o f a c t date, custno, prodno, cityname, sales
Region Scheme Time East  West  North  South 1997 1998 1999 2000 Housing Car Edu. Industry Cell 200 Measure Dimension Components of a Data Cube (3D)
1KEY OLAP console
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Star Schema ,[object Object],[object Object],f a c t T i m e p r o d c u s t p r o m o f a c t date, custno, prodno, cityname, sales
Snowflake Schema ,[object Object],[object Object],f a c t T i m e p r o d c u s t p r o m o f a c t date, custno, prodno, cityname, sales r e g i o n
Components of a star schema Excellent for ad-hoc queries,  but bad for online transaction processing
Star schema example
Star Schema – Example 1 OrderNo SalespersonID CustomerNo ProdNo DateKey CityName Quantity TotalPrice Fact Table CityName State Country City DateKey Date Month Year Date ProdNo ProdName ProdDescr Category CategoryDescr UnitPrice QOH Product OrderNo OrderDate Order SalespersonID SalespersonName City Quota Salesperson CustomerNo CustomerName CustomerAddress City Customer
Snowflake  – Example 1
Star Schema – Example 2 Sales Fact Table time_key item_key branch_key location_key units_sold dollars_sold avg_sales Measures time_key day day_of_the_week month quarter year time location_key street city province_or_street country location item_key item_name brand type supplier_type item branch_key branch_name branch_type branch
Snowflake Schema –Example  Sales Fact Table time_key item_key branch_key location_key units_sold dollars_sold avg_sales Measures time_key day day_of_the_week month quarter year time location_key street city_key location item_key item_name brand type supplier_key item branch_key branch_name branch_type branch supplier_key supplier_type supplier city_key city province_or_street country city
[object Object],[object Object],[object Object],[object Object],[object Object]
Some variants
[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Enterprise Data Warehouse vs. Data Mart
DW and Data Mart: some other issues Characteristics Data Mart Enterprise DW Time to build Months Years Complexity to build Low to medium High Shared Shared in Dept. Shared across Update Frequently Less Frequently Type of user Subject focused Corporate and top executives
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Strengths of OLAP ,[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],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object]

Weitere ähnliche Inhalte

Was ist angesagt?

Steps To Build A Datawarehouse
Steps To Build A DatawarehouseSteps To Build A Datawarehouse
Steps To Build A DatawarehouseHendra Saputra
 
2 data warehouse life cycle golfarelli
2 data warehouse life cycle golfarelli2 data warehouse life cycle golfarelli
2 data warehouse life cycle golfarellitruongthuthuy47
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSINGKing Julian
 
Warehouse components
Warehouse componentsWarehouse components
Warehouse componentsganblues
 
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-AshishGuleria
 
My Microsoft Business Intelligence Portfolio
My Microsoft Business Intelligence PortfolioMy Microsoft Business Intelligence Portfolio
My Microsoft Business Intelligence Portfoliomnkashama
 
Multidimentional data model
Multidimentional data modelMultidimentional data model
Multidimentional data modeljagdish_93
 
BISMART Bihealth. Microsoft Business Intelligence in health
BISMART Bihealth. Microsoft Business Intelligence in healthBISMART Bihealth. Microsoft Business Intelligence in health
BISMART Bihealth. Microsoft Business Intelligence in healthalbertisern
 
DATA MART APPROCHES TO ARCHITECTURE
DATA MART APPROCHES TO ARCHITECTUREDATA MART APPROCHES TO ARCHITECTURE
DATA MART APPROCHES TO ARCHITECTURESachin Batham
 
Designing high performance datawarehouse
Designing high performance datawarehouseDesigning high performance datawarehouse
Designing high performance datawarehouseUday Kothari
 
Bi Dw Presentation
Bi Dw PresentationBi Dw Presentation
Bi Dw Presentationvickyc
 
Business process modeling and analysis for data warehouse design
Business process modeling and analysis for data warehouse designBusiness process modeling and analysis for data warehouse design
Business process modeling and analysis for data warehouse designSlava Kokaev
 
Data Warehouse Design on Cloud ,A Big Data approach Part_One
Data Warehouse Design on Cloud ,A Big Data approach Part_OneData Warehouse Design on Cloud ,A Big Data approach Part_One
Data Warehouse Design on Cloud ,A Big Data approach Part_OnePanchaleswar Nayak
 
Data ware house architecture
Data ware house architectureData ware house architecture
Data ware house architectureDeepak Chaurasia
 
Data Warehousing - in the real world
Data Warehousing - in the real worldData Warehousing - in the real world
Data Warehousing - in the real worldukc4
 
Introduction To Data Warehousing
Introduction To Data WarehousingIntroduction To Data Warehousing
Introduction To Data WarehousingAlex Meadows
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureJames Serra
 
Big Data Testing- Verify Structured and Unstructured Data Sets
Big Data Testing- Verify Structured and Unstructured Data SetsBig Data Testing- Verify Structured and Unstructured Data Sets
Big Data Testing- Verify Structured and Unstructured Data SetsBugRaptors
 

Was ist angesagt? (20)

Steps To Build A Datawarehouse
Steps To Build A DatawarehouseSteps To Build A Datawarehouse
Steps To Build A Datawarehouse
 
2 data warehouse life cycle golfarelli
2 data warehouse life cycle golfarelli2 data warehouse life cycle golfarelli
2 data warehouse life cycle golfarelli
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
Warehouse components
Warehouse componentsWarehouse components
Warehouse components
 
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-
 
My Microsoft Business Intelligence Portfolio
My Microsoft Business Intelligence PortfolioMy Microsoft Business Intelligence Portfolio
My Microsoft Business Intelligence Portfolio
 
Multidimentional data model
Multidimentional data modelMultidimentional data model
Multidimentional data model
 
BISMART Bihealth. Microsoft Business Intelligence in health
BISMART Bihealth. Microsoft Business Intelligence in healthBISMART Bihealth. Microsoft Business Intelligence in health
BISMART Bihealth. Microsoft Business Intelligence in health
 
DATA MART APPROCHES TO ARCHITECTURE
DATA MART APPROCHES TO ARCHITECTUREDATA MART APPROCHES TO ARCHITECTURE
DATA MART APPROCHES TO ARCHITECTURE
 
Designing high performance datawarehouse
Designing high performance datawarehouseDesigning high performance datawarehouse
Designing high performance datawarehouse
 
Bi Dw Presentation
Bi Dw PresentationBi Dw Presentation
Bi Dw Presentation
 
Data management
Data managementData management
Data management
 
Business process modeling and analysis for data warehouse design
Business process modeling and analysis for data warehouse designBusiness process modeling and analysis for data warehouse design
Business process modeling and analysis for data warehouse design
 
Data Warehouse Design on Cloud ,A Big Data approach Part_One
Data Warehouse Design on Cloud ,A Big Data approach Part_OneData Warehouse Design on Cloud ,A Big Data approach Part_One
Data Warehouse Design on Cloud ,A Big Data approach Part_One
 
Data ware house architecture
Data ware house architectureData ware house architecture
Data ware house architecture
 
Data Warehousing - in the real world
Data Warehousing - in the real worldData Warehousing - in the real world
Data Warehousing - in the real world
 
Introduction To Data Warehousing
Introduction To Data WarehousingIntroduction To Data Warehousing
Introduction To Data Warehousing
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse Architecture
 
Retail Data Warehouse
Retail Data WarehouseRetail Data Warehouse
Retail Data Warehouse
 
Big Data Testing- Verify Structured and Unstructured Data Sets
Big Data Testing- Verify Structured and Unstructured Data SetsBig Data Testing- Verify Structured and Unstructured Data Sets
Big Data Testing- Verify Structured and Unstructured Data Sets
 

Andere mochten auch

TBR ODS EDW Planning 2007
TBR ODS EDW Planning 2007TBR ODS EDW Planning 2007
TBR ODS EDW Planning 2007Thomas Danford
 
Dw Concepts
Dw ConceptsDw Concepts
Dw Conceptsdataware
 
Agile BI Demystified
Agile BI DemystifiedAgile BI Demystified
Agile BI DemystifiedSenturus
 
Summit 2011 ods edw technical
Summit 2011 ods edw technicalSummit 2011 ods edw technical
Summit 2011 ods edw technicalGreg Turmel
 
Data Warehouse Best Practices
Data Warehouse Best PracticesData Warehouse Best Practices
Data Warehouse Best PracticesEduardo Castro
 
Agile Data Warehouse Design for Big Data Presentation
Agile Data Warehouse Design for Big Data PresentationAgile Data Warehouse Design for Big Data Presentation
Agile Data Warehouse Design for Big Data PresentationVishal Kumar
 
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball ApproachMicrosoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball ApproachMark Ginnebaugh
 
Architecting a Data Warehouse: A Case Study
Architecting a Data Warehouse: A Case StudyArchitecting a Data Warehouse: A Case Study
Architecting a Data Warehouse: A Case StudyMark Ginnebaugh
 

Andere mochten auch (8)

TBR ODS EDW Planning 2007
TBR ODS EDW Planning 2007TBR ODS EDW Planning 2007
TBR ODS EDW Planning 2007
 
Dw Concepts
Dw ConceptsDw Concepts
Dw Concepts
 
Agile BI Demystified
Agile BI DemystifiedAgile BI Demystified
Agile BI Demystified
 
Summit 2011 ods edw technical
Summit 2011 ods edw technicalSummit 2011 ods edw technical
Summit 2011 ods edw technical
 
Data Warehouse Best Practices
Data Warehouse Best PracticesData Warehouse Best Practices
Data Warehouse Best Practices
 
Agile Data Warehouse Design for Big Data Presentation
Agile Data Warehouse Design for Big Data PresentationAgile Data Warehouse Design for Big Data Presentation
Agile Data Warehouse Design for Big Data Presentation
 
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball ApproachMicrosoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
Microsoft Data Warehouse Business Intelligence Lifecycle - The Kimball Approach
 
Architecting a Data Warehouse: A Case Study
Architecting a Data Warehouse: A Case StudyArchitecting a Data Warehouse: A Case Study
Architecting a Data Warehouse: A Case Study
 

Ähnlich wie Become BI Architect with 1KEY Agile BI Suite - OLAP

Data Warehouse
Data WarehouseData Warehouse
Data Warehouseganblues
 
OLAP Cubes in Datawarehousing
OLAP Cubes in DatawarehousingOLAP Cubes in Datawarehousing
OLAP Cubes in DatawarehousingPrithwis Mukerjee
 
Data warehouse
Data warehouseData warehouse
Data warehouse_123_
 
Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data WarehouseShanthi Mukkavilli
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional ModelingSunita Sahu
 
Datawarehouse Overview
Datawarehouse OverviewDatawarehouse Overview
Datawarehouse Overviewashok kumar
 
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALASaikiran Panjala
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysWhat is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysNEWYORKSYS-IT SOLUTIONS
 
Oracle Hyperion overview
Oracle Hyperion overviewOracle Hyperion overview
Oracle Hyperion overviewClick4learning
 
Overview of business intelligence
Overview of business intelligenceOverview of business intelligence
Overview of business intelligenceAhsan Kabir
 
dw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptdw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptDougSchoemaker
 
3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.ppt3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.pptBsMath3rdsem
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processingVijayasankariS
 
Data Warehouse Modeling
Data Warehouse ModelingData Warehouse Modeling
Data Warehouse Modelingvivekjv
 

Ähnlich wie Become BI Architect with 1KEY Agile BI Suite - OLAP (20)

3dw
3dw3dw
3dw
 
3dw
3dw3dw
3dw
 
Data Warehouse
Data WarehouseData Warehouse
Data Warehouse
 
OLAP Cubes in Datawarehousing
OLAP Cubes in DatawarehousingOLAP Cubes in Datawarehousing
OLAP Cubes in Datawarehousing
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Date Analysis .pdf
Date Analysis .pdfDate Analysis .pdf
Date Analysis .pdf
 
Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data Warehouse
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional Modeling
 
Datawarehouse Overview
Datawarehouse OverviewDatawarehouse Overview
Datawarehouse Overview
 
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysWhat is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
 
Oracle Hyperion overview
Oracle Hyperion overviewOracle Hyperion overview
Oracle Hyperion overview
 
Overview of business intelligence
Overview of business intelligenceOverview of business intelligence
Overview of business intelligence
 
dw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptdw_concepts_2_day_course.ppt
dw_concepts_2_day_course.ppt
 
3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.ppt3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.ppt
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processing
 
Chapter 2
Chapter 2Chapter 2
Chapter 2
 
Data Warehouse Modeling
Data Warehouse ModelingData Warehouse Modeling
Data Warehouse Modeling
 
ITReady DW Day2
ITReady DW Day2ITReady DW Day2
ITReady DW Day2
 

Mehr von Dhiren Gala

Big Data for Retail
Big Data for RetailBig Data for Retail
Big Data for RetailDhiren Gala
 
Microsoft SQL Server 2012
Microsoft SQL Server 2012 Microsoft SQL Server 2012
Microsoft SQL Server 2012 Dhiren Gala
 
MAIA Intelligence profiled on DQ Channel Tree
MAIA Intelligence profiled on DQ Channel TreeMAIA Intelligence profiled on DQ Channel Tree
MAIA Intelligence profiled on DQ Channel TreeDhiren Gala
 
XBRL on SaaS Platform
XBRL on SaaS PlatformXBRL on SaaS Platform
XBRL on SaaS PlatformDhiren Gala
 
Barriers to Business Intelligence (BI)
Barriers to Business Intelligence (BI)Barriers to Business Intelligence (BI)
Barriers to Business Intelligence (BI)Dhiren Gala
 
Compliance to Compete
Compliance to CompeteCompliance to Compete
Compliance to CompeteDhiren Gala
 
An Introduction To XBRL
An Introduction To XBRLAn Introduction To XBRL
An Introduction To XBRLDhiren Gala
 
XBRL Presentation
XBRL PresentationXBRL Presentation
XBRL PresentationDhiren Gala
 
Financial Consolidation Management
Financial Consolidation ManagementFinancial Consolidation Management
Financial Consolidation ManagementDhiren Gala
 
Experiments with Social Media & Networking
Experiments with Social Media & NetworkingExperiments with Social Media & Networking
Experiments with Social Media & NetworkingDhiren Gala
 
Best Deployment: Raymond opts for 1KEY FCM - Financial Consolidation
Best Deployment: Raymond opts for 1KEY FCM - Financial ConsolidationBest Deployment: Raymond opts for 1KEY FCM - Financial Consolidation
Best Deployment: Raymond opts for 1KEY FCM - Financial ConsolidationDhiren Gala
 
KPI Dashboard for Port Terminals
KPI Dashboard for Port TerminalsKPI Dashboard for Port Terminals
KPI Dashboard for Port TerminalsDhiren Gala
 
Business Intelligence in Logistics
Business Intelligence in LogisticsBusiness Intelligence in Logistics
Business Intelligence in LogisticsDhiren Gala
 
Business Intelligence in Pharma
Business Intelligence in PharmaBusiness Intelligence in Pharma
Business Intelligence in PharmaDhiren Gala
 
Marketing Analytics with Business Intelligence
Marketing Analytics with Business IntelligenceMarketing Analytics with Business Intelligence
Marketing Analytics with Business IntelligenceDhiren Gala
 
BI at work for Port Operations
BI at work for Port OperationsBI at work for Port Operations
BI at work for Port OperationsDhiren Gala
 
Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010
Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010
Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010Dhiren Gala
 
India's first Business Intelligence (BI)
India's first Business Intelligence (BI)India's first Business Intelligence (BI)
India's first Business Intelligence (BI)Dhiren Gala
 
Business Intelligence (BI) for Manufacturing
Business Intelligence (BI) for ManufacturingBusiness Intelligence (BI) for Manufacturing
Business Intelligence (BI) for ManufacturingDhiren Gala
 

Mehr von Dhiren Gala (20)

Big Data for Retail
Big Data for RetailBig Data for Retail
Big Data for Retail
 
Microsoft SQL Server 2012
Microsoft SQL Server 2012 Microsoft SQL Server 2012
Microsoft SQL Server 2012
 
MAIA Intelligence profiled on DQ Channel Tree
MAIA Intelligence profiled on DQ Channel TreeMAIA Intelligence profiled on DQ Channel Tree
MAIA Intelligence profiled on DQ Channel Tree
 
XBRL on SaaS Platform
XBRL on SaaS PlatformXBRL on SaaS Platform
XBRL on SaaS Platform
 
Barriers to Business Intelligence (BI)
Barriers to Business Intelligence (BI)Barriers to Business Intelligence (BI)
Barriers to Business Intelligence (BI)
 
Compliance to Compete
Compliance to CompeteCompliance to Compete
Compliance to Compete
 
XBRL Overview
XBRL OverviewXBRL Overview
XBRL Overview
 
An Introduction To XBRL
An Introduction To XBRLAn Introduction To XBRL
An Introduction To XBRL
 
XBRL Presentation
XBRL PresentationXBRL Presentation
XBRL Presentation
 
Financial Consolidation Management
Financial Consolidation ManagementFinancial Consolidation Management
Financial Consolidation Management
 
Experiments with Social Media & Networking
Experiments with Social Media & NetworkingExperiments with Social Media & Networking
Experiments with Social Media & Networking
 
Best Deployment: Raymond opts for 1KEY FCM - Financial Consolidation
Best Deployment: Raymond opts for 1KEY FCM - Financial ConsolidationBest Deployment: Raymond opts for 1KEY FCM - Financial Consolidation
Best Deployment: Raymond opts for 1KEY FCM - Financial Consolidation
 
KPI Dashboard for Port Terminals
KPI Dashboard for Port TerminalsKPI Dashboard for Port Terminals
KPI Dashboard for Port Terminals
 
Business Intelligence in Logistics
Business Intelligence in LogisticsBusiness Intelligence in Logistics
Business Intelligence in Logistics
 
Business Intelligence in Pharma
Business Intelligence in PharmaBusiness Intelligence in Pharma
Business Intelligence in Pharma
 
Marketing Analytics with Business Intelligence
Marketing Analytics with Business IntelligenceMarketing Analytics with Business Intelligence
Marketing Analytics with Business Intelligence
 
BI at work for Port Operations
BI at work for Port OperationsBI at work for Port Operations
BI at work for Port Operations
 
Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010
Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010
Confluent - Monthly magazine by Symbiosis Centre for IT - September 2010
 
India's first Business Intelligence (BI)
India's first Business Intelligence (BI)India's first Business Intelligence (BI)
India's first Business Intelligence (BI)
 
Business Intelligence (BI) for Manufacturing
Business Intelligence (BI) for ManufacturingBusiness Intelligence (BI) for Manufacturing
Business Intelligence (BI) for Manufacturing
 

Kürzlich hochgeladen

Phases of Negotiation .pptx
 Phases of Negotiation .pptx Phases of Negotiation .pptx
Phases of Negotiation .pptxnandhinijagan9867
 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with CultureSeta Wicaksana
 
joint cost.pptx COST ACCOUNTING Sixteenth Edition ...
joint cost.pptx  COST ACCOUNTING  Sixteenth Edition                          ...joint cost.pptx  COST ACCOUNTING  Sixteenth Edition                          ...
joint cost.pptx COST ACCOUNTING Sixteenth Edition ...NadhimTaha
 
Lucknow Housewife Escorts by Sexy Bhabhi Service 8250092165
Lucknow Housewife Escorts  by Sexy Bhabhi Service 8250092165Lucknow Housewife Escorts  by Sexy Bhabhi Service 8250092165
Lucknow Housewife Escorts by Sexy Bhabhi Service 8250092165meghakumariji156
 
Pre Engineered Building Manufacturers Hyderabad.pptx
Pre Engineered  Building Manufacturers Hyderabad.pptxPre Engineered  Building Manufacturers Hyderabad.pptx
Pre Engineered Building Manufacturers Hyderabad.pptxRoofing Contractor
 
Getting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAI
Getting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAIGetting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAI
Getting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAITim Wilson
 
Structuring and Writing DRL Mckinsey (1).pdf
Structuring and Writing DRL Mckinsey (1).pdfStructuring and Writing DRL Mckinsey (1).pdf
Structuring and Writing DRL Mckinsey (1).pdflaloo_007
 
Arti Languages Pre Seed Teaser Deck 2024.pdf
Arti Languages Pre Seed Teaser Deck 2024.pdfArti Languages Pre Seed Teaser Deck 2024.pdf
Arti Languages Pre Seed Teaser Deck 2024.pdfwill854175
 
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All TimeCall 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All Timegargpaaro
 
TVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdf
TVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdfTVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdf
TVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdfbelieveminhh
 
Falcon Invoice Discounting: Unlock Your Business Potential
Falcon Invoice Discounting: Unlock Your Business PotentialFalcon Invoice Discounting: Unlock Your Business Potential
Falcon Invoice Discounting: Unlock Your Business PotentialFalcon investment
 
Cracking the 'Career Pathing' Slideshare
Cracking the 'Career Pathing' SlideshareCracking the 'Career Pathing' Slideshare
Cracking the 'Career Pathing' SlideshareWorkforce Group
 
Rice Manufacturers in India | Shree Krishna Exports
Rice Manufacturers in India | Shree Krishna ExportsRice Manufacturers in India | Shree Krishna Exports
Rice Manufacturers in India | Shree Krishna ExportsShree Krishna Exports
 
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...daisycvs
 
Paradip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDING
Paradip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDINGParadip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDING
Paradip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDINGpr788182
 
New 2024 Cannabis Edibles Investor Pitch Deck Template
New 2024 Cannabis Edibles Investor Pitch Deck TemplateNew 2024 Cannabis Edibles Investor Pitch Deck Template
New 2024 Cannabis Edibles Investor Pitch Deck TemplateCannaBusinessPlans
 
Falcon Invoice Discounting: Aviate Your Cash Flow Challenges
Falcon Invoice Discounting: Aviate Your Cash Flow ChallengesFalcon Invoice Discounting: Aviate Your Cash Flow Challenges
Falcon Invoice Discounting: Aviate Your Cash Flow Challengeshemanthkumar470700
 
Power point presentation on enterprise performance management
Power point presentation on enterprise performance managementPower point presentation on enterprise performance management
Power point presentation on enterprise performance managementVaishnaviGunji
 
The Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai Kuwait
The Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai KuwaitThe Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai Kuwait
The Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai Kuwaitdaisycvs
 

Kürzlich hochgeladen (20)

Phases of Negotiation .pptx
 Phases of Negotiation .pptx Phases of Negotiation .pptx
Phases of Negotiation .pptx
 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with Culture
 
joint cost.pptx COST ACCOUNTING Sixteenth Edition ...
joint cost.pptx  COST ACCOUNTING  Sixteenth Edition                          ...joint cost.pptx  COST ACCOUNTING  Sixteenth Edition                          ...
joint cost.pptx COST ACCOUNTING Sixteenth Edition ...
 
Lucknow Housewife Escorts by Sexy Bhabhi Service 8250092165
Lucknow Housewife Escorts  by Sexy Bhabhi Service 8250092165Lucknow Housewife Escorts  by Sexy Bhabhi Service 8250092165
Lucknow Housewife Escorts by Sexy Bhabhi Service 8250092165
 
Pre Engineered Building Manufacturers Hyderabad.pptx
Pre Engineered  Building Manufacturers Hyderabad.pptxPre Engineered  Building Manufacturers Hyderabad.pptx
Pre Engineered Building Manufacturers Hyderabad.pptx
 
Getting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAI
Getting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAIGetting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAI
Getting Real with AI - Columbus DAW - May 2024 - Nick Woo from AlignAI
 
Structuring and Writing DRL Mckinsey (1).pdf
Structuring and Writing DRL Mckinsey (1).pdfStructuring and Writing DRL Mckinsey (1).pdf
Structuring and Writing DRL Mckinsey (1).pdf
 
unwanted pregnancy Kit [+918133066128] Abortion Pills IN Dubai UAE Abudhabi
unwanted pregnancy Kit [+918133066128] Abortion Pills IN Dubai UAE Abudhabiunwanted pregnancy Kit [+918133066128] Abortion Pills IN Dubai UAE Abudhabi
unwanted pregnancy Kit [+918133066128] Abortion Pills IN Dubai UAE Abudhabi
 
Arti Languages Pre Seed Teaser Deck 2024.pdf
Arti Languages Pre Seed Teaser Deck 2024.pdfArti Languages Pre Seed Teaser Deck 2024.pdf
Arti Languages Pre Seed Teaser Deck 2024.pdf
 
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All TimeCall 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
Call 7737669865 Vadodara Call Girls Service at your Door Step Available All Time
 
TVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdf
TVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdfTVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdf
TVB_The Vietnam Believer Newsletter_May 6th, 2024_ENVol. 006.pdf
 
Falcon Invoice Discounting: Unlock Your Business Potential
Falcon Invoice Discounting: Unlock Your Business PotentialFalcon Invoice Discounting: Unlock Your Business Potential
Falcon Invoice Discounting: Unlock Your Business Potential
 
Cracking the 'Career Pathing' Slideshare
Cracking the 'Career Pathing' SlideshareCracking the 'Career Pathing' Slideshare
Cracking the 'Career Pathing' Slideshare
 
Rice Manufacturers in India | Shree Krishna Exports
Rice Manufacturers in India | Shree Krishna ExportsRice Manufacturers in India | Shree Krishna Exports
Rice Manufacturers in India | Shree Krishna Exports
 
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
Quick Doctor In Kuwait +2773`7758`557 Kuwait Doha Qatar Dubai Abu Dhabi Sharj...
 
Paradip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDING
Paradip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDINGParadip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDING
Paradip CALL GIRL❤7091819311❤CALL GIRLS IN ESCORT SERVICE WE ARE PROVIDING
 
New 2024 Cannabis Edibles Investor Pitch Deck Template
New 2024 Cannabis Edibles Investor Pitch Deck TemplateNew 2024 Cannabis Edibles Investor Pitch Deck Template
New 2024 Cannabis Edibles Investor Pitch Deck Template
 
Falcon Invoice Discounting: Aviate Your Cash Flow Challenges
Falcon Invoice Discounting: Aviate Your Cash Flow ChallengesFalcon Invoice Discounting: Aviate Your Cash Flow Challenges
Falcon Invoice Discounting: Aviate Your Cash Flow Challenges
 
Power point presentation on enterprise performance management
Power point presentation on enterprise performance managementPower point presentation on enterprise performance management
Power point presentation on enterprise performance management
 
The Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai Kuwait
The Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai KuwaitThe Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai Kuwait
The Abortion pills for sale in Qatar@Doha [+27737758557] []Deira Dubai Kuwait
 

Become BI Architect with 1KEY Agile BI Suite - OLAP

  • 1. What is Business Intelligence? Business intelligence is a broad category of applications and technologies for gathering, providing access to, and analyzing data for the purpose of helping enterprise users make better business decisions. Ekta Pardhi
  • 2.
  • 3.
  • 4.
  • 5. Online Analytical Processing (OLAP ) It enables analysts, managers and executives to gain insight into data through fast, consistent, interactive access to a wide variety of possible views of information that has been transformed from raw data to reflect the real dimensionality of the enterprise as understood by the user. Time Product Region SQL 2000 Oracle Access SQL 2005 1KEY OLAP
  • 6.
  • 7.
  • 8.
  • 9.
  • 10.
  • 11. Graphically Data Warehouse Subject Oriented Credit Risk Interest Rate Risk Forex Risk ALM Subject Area OLTP Systems Integrated Credit Risk Code: XXXX Interest Rate Risk Code: CXXYY Forex Risk Code: XX/XX.XX Common Code for various source codes ALM Subject Area Non Volatile OLTP U S E R S Data Warehouse U S E R S Read Write Read Time variant Dec 98 1995 1996 1997 1998 OLTP OLAP
  • 12.
  • 13.
  • 15. Examples of OLAP applications in various functional areas
  • 16.
  • 17.
  • 18.
  • 20.
  • 22.
  • 24.
  • 26.
  • 27.
  • 29.
  • 30. T i m e p r o d c u s t p r o m o f a c t date, custno, prodno, cityname, sales
  • 31. Region Scheme Time East West North South 1997 1998 1999 2000 Housing Car Edu. Industry Cell 200 Measure Dimension Components of a Data Cube (3D)
  • 33.
  • 34.
  • 35.
  • 36. Components of a star schema Excellent for ad-hoc queries, but bad for online transaction processing
  • 38. Star Schema – Example 1 OrderNo SalespersonID CustomerNo ProdNo DateKey CityName Quantity TotalPrice Fact Table CityName State Country City DateKey Date Month Year Date ProdNo ProdName ProdDescr Category CategoryDescr UnitPrice QOH Product OrderNo OrderDate Order SalespersonID SalespersonName City Quota Salesperson CustomerNo CustomerName CustomerAddress City Customer
  • 39. Snowflake – Example 1
  • 40. Star Schema – Example 2 Sales Fact Table time_key item_key branch_key location_key units_sold dollars_sold avg_sales Measures time_key day day_of_the_week month quarter year time location_key street city province_or_street country location item_key item_name brand type supplier_type item branch_key branch_name branch_type branch
  • 41. Snowflake Schema –Example Sales Fact Table time_key item_key branch_key location_key units_sold dollars_sold avg_sales Measures time_key day day_of_the_week month quarter year time location_key street city_key location item_key item_name brand type supplier_key item branch_key branch_name branch_type branch supplier_key supplier_type supplier city_key city province_or_street country city
  • 42.
  • 44.
  • 45.
  • 46. Enterprise Data Warehouse vs. Data Mart
  • 47. DW and Data Mart: some other issues Characteristics Data Mart Enterprise DW Time to build Months Years Complexity to build Low to medium High Shared Shared in Dept. Shared across Update Frequently Less Frequently Type of user Subject focused Corporate and top executives
  • 48.
  • 49.
  • 50.
  • 51.
  • 52.  
  • 53.  
  • 54.  
  • 55.  
  • 56.  
  • 57.  
  • 58.  
  • 59.  
  • 60.  
  • 61.
  • 62.

Hinweis der Redaktion

  1. Hello to everybody and Welcome to Maia developer events.. my name is ekta pardhi in this session we are going to target 1KEY OLAP and related technonology .i believe most of the people knows what is BI ,data warehouse and OLAP concept ? BI is a decision supporting application for decision makers. But Why business need to be intelligence? Let a take a example, of mobile company (everybody is having mobile or not just joking I know everybody is having)..in market, many service provider are available But we want best and better one .. Which gives us proper network ,service.. But Why we want best one ? In business also we want always growth. It seeks to help you to analyze and make better business decisions, to improve sales or customer satisfaction .It presents the information you need.. when you need it .