SlideShare a Scribd company logo
1 of 20
Data Warehousing
Prepared By:
Dr. Radhika Kotecha
Case Study: The Need for Data Warehousing
• Pallav Raj is the CEO of a large garments retail chain
called JRTs.
• JRTs has approximately 100 stores spread
throughout the country.
• Pallav Raj asks one of his employees to provide him:
1) A status report on the business as he wishes to
know if the company was making an overall profit or
loss
2) A detailed product report of the previous year as
he wishes to know which products sold well and
those that did not even have a marginal sale
Case Study: The Need for Data Warehousing
• How does the employee calculate if the company
was making an overall profit or loss ???
– Manually !!
– Tedious task !!
• And further, how does the employee find a
detailed product report of the previous year ???
– ???
Increasing Demand for Strategic Information
• Strategic information: The information needed for
formulating and executing business objectives.
• Critical for the survival of the corporation in a highly
competitive world
• Example business objectives:
– Retain the current customers of the business.
– ƒAdd to the customer base by at least 10% over the next 3
years.
– ƒEnhance the market share by 15% in the next 2 years.
– ƒLaunch new and better products in the market by the next
year.
– ƒImprove product quality of top five selling products.
– ƒIncrease sales in the north west region.
Information Crisis
• Organizations have a huge amount of data.
• Information systems that they have are
ineffective at turning this into useful strategic
information
Inability of Past Decision-support Systems
• Most of these attempts by IT in the past ended in failure as the
users could not clearly define what they wanted in the first
place.
• The users indulged themselves into the spiral of asking for
more and more supplementary reports thereby increasing the
IT load even further.
• ƒThe users depended on IT professional to provide the
information as they could not access the information directly in
!an interactive manner.
• IT received too many ad hoc requests for a variety of reports. IT
was not able to generate all the reports in the requested
manner within the assigned timeframe.
• Requests were not only numerous, but also kept changing over
time with users wanting more reports subsequently to expand
and understand earlier reports
Expectations from the Decision-support System
• Designed for analyzing large volumes of data
• Data extracted from multiple applications
• ƒUser friendliness
• Periodically updating of data content
• Contain current as well as historical data
• ƒAbility for users to formulate and execute queries
and get results online
Operational vs. Decision-support System
• Identify the differences between the two systems:
Attribute Operational
System
Decision-support
System
Data Content
Access Frequency
Access Type
Response Time
Users
No. of Users
Summarization
Database Size
Database Design
Data Warehouse Defined
• Data warehouse is a:
– Subject-oriented (for example, customer, product)
– Integrated (data cleansing & transformation)
– Non-volatile (Read-only)
– Time-variant (current + historical)
collection of data in support of management’s
decisions
Data Warehouse Elaborated
• The data warehouse is an informational environment
which:
– ƒprovides an integrated view of the enterprise
– renders the enterprise’s current as well as historical data
readily
– available for making strategic decisions
– ƒmakes decision making possible without hindering
operational systems
– ƒmakes the organization’s information consistent and easily
accessible
– provides a flexible, conducive and interactive source of
strategic information
What Can a Data Warehouse Do?
• Immediate information delivery
• Integration of data from within and outside the
organization
• Provides an insight into the future
• Enables users to look at the same data in different
ways
• Provides freedom from the dependency on IT
professionals
What Can a Data Warehouse NOT Do?
• Cannot create additional data on its own.
• For example, if a manager wants to analyze the
sales of a product based on customer’s income
level, and if the income of the customer is not
captured by the source systems, then the data
warehouse will not be able to help the manager
Data Warehouse—An Environment or a Product
• An Environment: That needs to be created
• Not a Product: That can be purchased
Industry Applications
Retail Customer Loyalty Categorization, Target Marketing
Finance & Banking Risk Management, Fraud Detection
Airlines Route Profitability Identification, Promotional Schemes
Identification
Manufacturing Cost Reduction, Resource Management
Applications of Data Warehouse System
Benefits of Data Warehousing
• Data warehouses enable end-users to access a wide
variety of data
• Business analysts and decision makers can analyze
the current trends in the market to predict future
trends
• Data warehouse provides consistent data
• ƒIt helps to increase productivity and decrease
computing costs
• Data warehouses contain data that has been
integrated from a number of different sources
• The results obtained can be presented in a variety of
formats in the form of reports, graphs, etc.
Benefits of Data Warehousing [Contd.]
• Tangible Benefits
– For a retail business with $200 million in annual sales,
a 1% improvement in sales can yield additional annual
revenue of $2 million
• Intangible Benefits
– Enhanced customer relations through improved
knowledge of individual customer’s requirements and
trends in the market
Case Study [Contd.]
• Should Pallav Raj go for data warehouse?
Case Study [Contd.]
• Suppose Mr. Pallav Raj decides to go for data
warehouse - Maintains monthly basis data
granularity
– Efforts are now reduced, but issues don’t end here
• If Pallav Raj asks one of his employees to provide:
1) Sales of particular brand of T-shirt for 2nd
quarter: Possible Easily
2) Sales of particular brand of T-shirt in last week
of December: ?????
Case Study [Contd.]
• Next Lecture:
– Discussion on data warehouse need & fundamentals
described in previous slides
– Discussion on solution for the issue of data
warehouse highlighted in previous slide
– Architecture of Data Warehouse
Reference:
• Reema Thareja, “Data Warehousing”, Oxford
University Press, 1st Edition, 2009.

More Related Content

What's hot

Dw & etl concepts
Dw & etl conceptsDw & etl concepts
Dw & etl conceptsjeshocarme
 
Data Warehousing and Data Mining
Data Warehousing and Data MiningData Warehousing and Data Mining
Data Warehousing and Data Miningidnats
 
Data Warehousing Trends, Best Practices, and Future Outlook
Data Warehousing Trends, Best Practices, and Future OutlookData Warehousing Trends, Best Practices, and Future Outlook
Data Warehousing Trends, Best Practices, and Future OutlookJames Serra
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecturepcherukumalla
 
Data Warehouse Fundamentals
Data Warehouse FundamentalsData Warehouse Fundamentals
Data Warehouse FundamentalsRashmi Bhat
 
Snowflake essentials
Snowflake essentialsSnowflake essentials
Snowflake essentialsqureshihamid
 
Data Warehouse Concepts and Architecture
Data Warehouse Concepts and ArchitectureData Warehouse Concepts and Architecture
Data Warehouse Concepts and ArchitectureMohd Tousif
 
1.4 data warehouse
1.4 data warehouse1.4 data warehouse
1.4 data warehouseKrish_ver2
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureJames Serra
 
Zero to Snowflake Presentation
Zero to Snowflake Presentation Zero to Snowflake Presentation
Zero to Snowflake Presentation Brett VanderPlaats
 
Big data architectures and the data lake
Big data architectures and the data lakeBig data architectures and the data lake
Big data architectures and the data lakeJames Serra
 

What's hot (20)

Data warehouse
Data warehouseData warehouse
Data warehouse
 
What is ETL?
What is ETL?What is ETL?
What is ETL?
 
Dw & etl concepts
Dw & etl conceptsDw & etl concepts
Dw & etl concepts
 
Data Warehousing and Data Mining
Data Warehousing and Data MiningData Warehousing and Data Mining
Data Warehousing and Data Mining
 
Data Warehousing Trends, Best Practices, and Future Outlook
Data Warehousing Trends, Best Practices, and Future OutlookData Warehousing Trends, Best Practices, and Future Outlook
Data Warehousing Trends, Best Practices, and Future Outlook
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data Warehouse Fundamentals
Data Warehouse FundamentalsData Warehouse Fundamentals
Data Warehouse Fundamentals
 
Ppt
PptPpt
Ppt
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Snowflake essentials
Snowflake essentialsSnowflake essentials
Snowflake essentials
 
Data warehousing ppt
Data warehousing pptData warehousing ppt
Data warehousing ppt
 
Data Warehouse Concepts and Architecture
Data Warehouse Concepts and ArchitectureData Warehouse Concepts and Architecture
Data Warehouse Concepts and Architecture
 
1.4 data warehouse
1.4 data warehouse1.4 data warehouse
1.4 data warehouse
 
Introduction to ETL and Data Integration
Introduction to ETL and Data IntegrationIntroduction to ETL and Data Integration
Introduction to ETL and Data Integration
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse Architecture
 
Zero to Snowflake Presentation
Zero to Snowflake Presentation Zero to Snowflake Presentation
Zero to Snowflake Presentation
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Big data architectures and the data lake
Big data architectures and the data lakeBig data architectures and the data lake
Big data architectures and the data lake
 

Similar to Data Warehousing for Strategic Decision Making

Data warehousev2.1
Data warehousev2.1Data warehousev2.1
Data warehousev2.1Tuan Luong
 
Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...
Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...
Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...VMware Tanzu
 
Business intelligence for manufacturing
Business intelligence for manufacturingBusiness intelligence for manufacturing
Business intelligence for manufacturinge-Zest Solutions
 
When the business needs intelligence (15Oct2014)
When the business needs intelligence   (15Oct2014)When the business needs intelligence   (15Oct2014)
When the business needs intelligence (15Oct2014)Dipti Patil
 
BIG DATA CHAPTER 2 IN DSS.pptx
BIG DATA CHAPTER 2 IN DSS.pptxBIG DATA CHAPTER 2 IN DSS.pptx
BIG DATA CHAPTER 2 IN DSS.pptxmuflehaljarrah
 
Lesson 6 value & importance of information
Lesson 6 value & importance of informationLesson 6 value & importance of information
Lesson 6 value & importance of informationOneil Powers
 
presentationofism-complete-1-100227093028-phpapp01.pptx
presentationofism-complete-1-100227093028-phpapp01.pptxpresentationofism-complete-1-100227093028-phpapp01.pptx
presentationofism-complete-1-100227093028-phpapp01.pptxvipush1
 
1.1-Introduction to Data Warehouse.pptx
1.1-Introduction to Data Warehouse.pptx1.1-Introduction to Data Warehouse.pptx
1.1-Introduction to Data Warehouse.pptxAbdulHameed994435
 
Lecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptx
Lecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptxLecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptx
Lecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptxRATISHKUMAR32
 
Inspire2015 Bank of America Merrill Lynch
Inspire2015 Bank of America Merrill LynchInspire2015 Bank of America Merrill Lynch
Inspire2015 Bank of America Merrill LynchAltan Atabarut, MSc.
 
Business Intelligence Data Warehouse System
Business Intelligence Data Warehouse SystemBusiness Intelligence Data Warehouse System
Business Intelligence Data Warehouse SystemKiran kumar
 
Cognos datawarehouse
Cognos datawarehouseCognos datawarehouse
Cognos datawarehousessuser7fc7eb
 
Big data
Big dataBig data
Big dataRiya
 
About Business Intelligence
About Business IntelligenceAbout Business Intelligence
About Business IntelligenceAshish Kargwal
 
Introduction to Big Data Analytics
Introduction to Big Data AnalyticsIntroduction to Big Data Analytics
Introduction to Big Data AnalyticsUtkarsh Sharma
 

Similar to Data Warehousing for Strategic Decision Making (20)

Big data
Big dataBig data
Big data
 
Data warehousev2.1
Data warehousev2.1Data warehousev2.1
Data warehousev2.1
 
Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...
Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...
Webinar - The Science of Segmentation: What Questions You Should be Asking Yo...
 
Business intelligence for manufacturing
Business intelligence for manufacturingBusiness intelligence for manufacturing
Business intelligence for manufacturing
 
When the business needs intelligence (15Oct2014)
When the business needs intelligence   (15Oct2014)When the business needs intelligence   (15Oct2014)
When the business needs intelligence (15Oct2014)
 
BIG DATA CHAPTER 2 IN DSS.pptx
BIG DATA CHAPTER 2 IN DSS.pptxBIG DATA CHAPTER 2 IN DSS.pptx
BIG DATA CHAPTER 2 IN DSS.pptx
 
Lesson 6 value & importance of information
Lesson 6 value & importance of informationLesson 6 value & importance of information
Lesson 6 value & importance of information
 
CHAPTER 2.ppt
CHAPTER 2.pptCHAPTER 2.ppt
CHAPTER 2.ppt
 
presentationofism-complete-1-100227093028-phpapp01.pptx
presentationofism-complete-1-100227093028-phpapp01.pptxpresentationofism-complete-1-100227093028-phpapp01.pptx
presentationofism-complete-1-100227093028-phpapp01.pptx
 
Bi sysco
Bi syscoBi sysco
Bi sysco
 
1.1-Introduction to Data Warehouse.pptx
1.1-Introduction to Data Warehouse.pptx1.1-Introduction to Data Warehouse.pptx
1.1-Introduction to Data Warehouse.pptx
 
Lecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptx
Lecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptxLecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptx
Lecture 1.13 & 1.14 &1.15_Business Profiles in Big Data.pptx
 
Inspire2015 Bank of America Merrill Lynch
Inspire2015 Bank of America Merrill LynchInspire2015 Bank of America Merrill Lynch
Inspire2015 Bank of America Merrill Lynch
 
Business Intelligence Data Warehouse System
Business Intelligence Data Warehouse SystemBusiness Intelligence Data Warehouse System
Business Intelligence Data Warehouse System
 
Cognos datawarehouse
Cognos datawarehouseCognos datawarehouse
Cognos datawarehouse
 
Data mining wrhousing-lec
Data mining wrhousing-lecData mining wrhousing-lec
Data mining wrhousing-lec
 
Big data
Big dataBig data
Big data
 
Erp and related technologies
Erp and related technologiesErp and related technologies
Erp and related technologies
 
About Business Intelligence
About Business IntelligenceAbout Business Intelligence
About Business Intelligence
 
Introduction to Big Data Analytics
Introduction to Big Data AnalyticsIntroduction to Big Data Analytics
Introduction to Big Data Analytics
 

Recently uploaded

CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfCCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfAsst.prof M.Gokilavani
 
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfgUnit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfgsaravananr517913
 
Introduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECHIntroduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECHC Sai Kiran
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AIabhishek36461
 
complete construction, environmental and economics information of biomass com...
complete construction, environmental and economics information of biomass com...complete construction, environmental and economics information of biomass com...
complete construction, environmental and economics information of biomass com...asadnawaz62
 
Indian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.pptIndian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.pptMadan Karki
 
welding defects observed during the welding
welding defects observed during the weldingwelding defects observed during the welding
welding defects observed during the weldingMuhammadUzairLiaqat
 
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionSachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionDr.Costas Sachpazis
 
Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...121011101441
 
Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)
Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)
Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)dollysharma2066
 
US Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionUS Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionMebane Rash
 
Correctly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleCorrectly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleAlluxio, Inc.
 
IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024Mark Billinghurst
 
lifi-technology with integration of IOT.pptx
lifi-technology with integration of IOT.pptxlifi-technology with integration of IOT.pptx
lifi-technology with integration of IOT.pptxsomshekarkn64
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024hassan khalil
 
Solving The Right Triangles PowerPoint 2.ppt
Solving The Right Triangles PowerPoint 2.pptSolving The Right Triangles PowerPoint 2.ppt
Solving The Right Triangles PowerPoint 2.pptJasonTagapanGulla
 
Class 1 | NFPA 72 | Overview Fire Alarm System
Class 1 | NFPA 72 | Overview Fire Alarm SystemClass 1 | NFPA 72 | Overview Fire Alarm System
Class 1 | NFPA 72 | Overview Fire Alarm Systemirfanmechengr
 
Risk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdfRisk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdfROCENODodongVILLACER
 
Vishratwadi & Ghorpadi Bridge Tender documents
Vishratwadi & Ghorpadi Bridge Tender documentsVishratwadi & Ghorpadi Bridge Tender documents
Vishratwadi & Ghorpadi Bridge Tender documentsSachinPawar510423
 
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube ExchangerStudy on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube ExchangerAnamika Sarkar
 

Recently uploaded (20)

CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfCCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
 
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfgUnit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
 
Introduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECHIntroduction to Machine Learning Unit-3 for II MECH
Introduction to Machine Learning Unit-3 for II MECH
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AI
 
complete construction, environmental and economics information of biomass com...
complete construction, environmental and economics information of biomass com...complete construction, environmental and economics information of biomass com...
complete construction, environmental and economics information of biomass com...
 
Indian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.pptIndian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.ppt
 
welding defects observed during the welding
welding defects observed during the weldingwelding defects observed during the welding
welding defects observed during the welding
 
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionSachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
 
Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...Instrumentation, measurement and control of bio process parameters ( Temperat...
Instrumentation, measurement and control of bio process parameters ( Temperat...
 
Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)
Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)
Call Us ≽ 8377877756 ≼ Call Girls In Shastri Nagar (Delhi)
 
US Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionUS Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of Action
 
Correctly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleCorrectly Loading Incremental Data at Scale
Correctly Loading Incremental Data at Scale
 
IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024
 
lifi-technology with integration of IOT.pptx
lifi-technology with integration of IOT.pptxlifi-technology with integration of IOT.pptx
lifi-technology with integration of IOT.pptx
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024
 
Solving The Right Triangles PowerPoint 2.ppt
Solving The Right Triangles PowerPoint 2.pptSolving The Right Triangles PowerPoint 2.ppt
Solving The Right Triangles PowerPoint 2.ppt
 
Class 1 | NFPA 72 | Overview Fire Alarm System
Class 1 | NFPA 72 | Overview Fire Alarm SystemClass 1 | NFPA 72 | Overview Fire Alarm System
Class 1 | NFPA 72 | Overview Fire Alarm System
 
Risk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdfRisk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdf
 
Vishratwadi & Ghorpadi Bridge Tender documents
Vishratwadi & Ghorpadi Bridge Tender documentsVishratwadi & Ghorpadi Bridge Tender documents
Vishratwadi & Ghorpadi Bridge Tender documents
 
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube ExchangerStudy on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
 

Data Warehousing for Strategic Decision Making

  • 2. Case Study: The Need for Data Warehousing • Pallav Raj is the CEO of a large garments retail chain called JRTs. • JRTs has approximately 100 stores spread throughout the country. • Pallav Raj asks one of his employees to provide him: 1) A status report on the business as he wishes to know if the company was making an overall profit or loss 2) A detailed product report of the previous year as he wishes to know which products sold well and those that did not even have a marginal sale
  • 3. Case Study: The Need for Data Warehousing • How does the employee calculate if the company was making an overall profit or loss ??? – Manually !! – Tedious task !! • And further, how does the employee find a detailed product report of the previous year ??? – ???
  • 4. Increasing Demand for Strategic Information • Strategic information: The information needed for formulating and executing business objectives. • Critical for the survival of the corporation in a highly competitive world • Example business objectives: – Retain the current customers of the business. – ƒAdd to the customer base by at least 10% over the next 3 years. – ƒEnhance the market share by 15% in the next 2 years. – ƒLaunch new and better products in the market by the next year. – ƒImprove product quality of top five selling products. – ƒIncrease sales in the north west region.
  • 5. Information Crisis • Organizations have a huge amount of data. • Information systems that they have are ineffective at turning this into useful strategic information
  • 6. Inability of Past Decision-support Systems • Most of these attempts by IT in the past ended in failure as the users could not clearly define what they wanted in the first place. • The users indulged themselves into the spiral of asking for more and more supplementary reports thereby increasing the IT load even further. • ƒThe users depended on IT professional to provide the information as they could not access the information directly in !an interactive manner. • IT received too many ad hoc requests for a variety of reports. IT was not able to generate all the reports in the requested manner within the assigned timeframe. • Requests were not only numerous, but also kept changing over time with users wanting more reports subsequently to expand and understand earlier reports
  • 7. Expectations from the Decision-support System • Designed for analyzing large volumes of data • Data extracted from multiple applications • ƒUser friendliness • Periodically updating of data content • Contain current as well as historical data • ƒAbility for users to formulate and execute queries and get results online
  • 8. Operational vs. Decision-support System • Identify the differences between the two systems: Attribute Operational System Decision-support System Data Content Access Frequency Access Type Response Time Users No. of Users Summarization Database Size Database Design
  • 9. Data Warehouse Defined • Data warehouse is a: – Subject-oriented (for example, customer, product) – Integrated (data cleansing & transformation) – Non-volatile (Read-only) – Time-variant (current + historical) collection of data in support of management’s decisions
  • 10. Data Warehouse Elaborated • The data warehouse is an informational environment which: – ƒprovides an integrated view of the enterprise – renders the enterprise’s current as well as historical data readily – available for making strategic decisions – ƒmakes decision making possible without hindering operational systems – ƒmakes the organization’s information consistent and easily accessible – provides a flexible, conducive and interactive source of strategic information
  • 11. What Can a Data Warehouse Do? • Immediate information delivery • Integration of data from within and outside the organization • Provides an insight into the future • Enables users to look at the same data in different ways • Provides freedom from the dependency on IT professionals
  • 12. What Can a Data Warehouse NOT Do? • Cannot create additional data on its own. • For example, if a manager wants to analyze the sales of a product based on customer’s income level, and if the income of the customer is not captured by the source systems, then the data warehouse will not be able to help the manager
  • 13. Data Warehouse—An Environment or a Product • An Environment: That needs to be created • Not a Product: That can be purchased
  • 14. Industry Applications Retail Customer Loyalty Categorization, Target Marketing Finance & Banking Risk Management, Fraud Detection Airlines Route Profitability Identification, Promotional Schemes Identification Manufacturing Cost Reduction, Resource Management Applications of Data Warehouse System
  • 15. Benefits of Data Warehousing • Data warehouses enable end-users to access a wide variety of data • Business analysts and decision makers can analyze the current trends in the market to predict future trends • Data warehouse provides consistent data • ƒIt helps to increase productivity and decrease computing costs • Data warehouses contain data that has been integrated from a number of different sources • The results obtained can be presented in a variety of formats in the form of reports, graphs, etc.
  • 16. Benefits of Data Warehousing [Contd.] • Tangible Benefits – For a retail business with $200 million in annual sales, a 1% improvement in sales can yield additional annual revenue of $2 million • Intangible Benefits – Enhanced customer relations through improved knowledge of individual customer’s requirements and trends in the market
  • 17. Case Study [Contd.] • Should Pallav Raj go for data warehouse?
  • 18. Case Study [Contd.] • Suppose Mr. Pallav Raj decides to go for data warehouse - Maintains monthly basis data granularity – Efforts are now reduced, but issues don’t end here • If Pallav Raj asks one of his employees to provide: 1) Sales of particular brand of T-shirt for 2nd quarter: Possible Easily 2) Sales of particular brand of T-shirt in last week of December: ?????
  • 19. Case Study [Contd.] • Next Lecture: – Discussion on data warehouse need & fundamentals described in previous slides – Discussion on solution for the issue of data warehouse highlighted in previous slide – Architecture of Data Warehouse
  • 20. Reference: • Reema Thareja, “Data Warehousing”, Oxford University Press, 1st Edition, 2009.