SlideShare ist ein Scribd-Unternehmen logo
1 von 17
By: RAVI RANJAN




                  DATA
              WAREHOUSE
                  By: Ravi Ranjan
DEFINITION
 Data Warehouse
 A collection of corporate
 information, derived directly
 from operational systems
 and some external data
 sources. Its specific purpose
 is to support business
 decisions, not business
 operations.
THE PURPOSE OF DATA WAREHOUSING

     Realize    the value of data
          Data / information is an asset
          Methods to realize the
          value, (Reporting, Analysis, etc.)


     Make    better decisions
         Turn data into information
         Create competitive advantage
         Methods to support the decision making
          process, (EIS, DSS, etc.)
Data Warehouse Components

• Staging Area
      • A preparatory repository where transaction data
        can be transformed for use in the data warehouse
• Data Mart
      • Traditional dimensionally modeled set of dimension
        and fact tables
      • Per Kimball, a data warehouse is the union of a set
        of data marts
• Operational Data Store (ODS)
      • Modeled to support near real-time reporting needs.
DATA WAREHOUSE FUNCTIONALITY


Relational
Databases
                            Optimized Loader
               Extraction
ERP
Systems        Cleansing
                            Data Warehouse
                            Engine         Analyze
Purchased                                      Query
Data



Legacy
Data            Metadata Repository
EVOLUTION ARCHITECTURE OF DATA WAREHOUSE


                                      GO TO
 Top-Down Architecture               DIAGRAM

                                      GO TO
 Bottom-Up Architecture              DIAGRAM

                                      GO TO
 Enterprise Data Mart Architecture   DIAGRAM

                                      GO TO
 Data Stage/Data Mart Architecture   DIAGRAM
VERY LARGE DATA BASES

  WAREHOUSES ARE VERY LARGE DATABASES

 Terabytes   -- 10^12 bytes: Wal-Mart -- 24 Terabytes

 Petabytes -- 10^15 bytes: Geographic Information
                             Systems
 Exabytes -- 10^18 bytes:  National Medical Records

 Zettabytes   -- 10^21 bytes: Weather images

 Zottabytes   -- 10^24 bytes: Intelligence Agency Videos
COMPLEXITIES OF CREATING A DATA WAREHOUSE

     Incomplete errors
        Missing Fields
        Records or Fields That, by Design, are not
         Being Recorded

     Incorrecterrors
        Wrong Calculations, Aggregations
        Duplicate Records
        Wrong Information Entered into Source
         System
SUCCESS & FUTURE OF DATA WAREHOUSE

 The    Data Warehouse has successfully supported the
    increased needs of the State over the past eight years.
   The need for growth continues however, as the desire for
    more integrated data increases.
 The   Data Warehouse has software and tools in place to
    provide the functionality needed to support new
    enterprise Data Warehouse projects.
 The   future capabilities of the Data Warehouse can be
    expanded to include other programs and agencies.
DATA WAREHOUSE PITFALLS


 You are going to spend much time
 extracting, cleaning, and loading data
 Youare going to find problems with systems feeding the
 data warehouse
 Youwill find the need to store/validate data not being
 captured/validated by any existing system
 Large scale data warehousing can become an exercise
 in data homogenizing
DATA WAREHOUSE PITFALLS…

 The  time it takes to load the warehouse will expand
  to the amount of the time in the available window...
  and then some
 You are building a HIGH maintenance system

 You will fail if you concentrate on resource
  optimization to the neglect of project, data, and
  customer management issues and an understanding
  of what adds value to the customer
BEST PRACTICES


 Complete     requirements and design

 Prototyping    is key to business understanding

 Utilizing   proper aggregations and detailed data

 Training    is an on-going process

 Build   data integrity checks into your system.
Top-Down Architecture




                      BACK TO
                    ARCHITECTURE
Bottom-Up Architecture




                           BACK TO
                         ARCHITECTURE
Enterprise Data Mart Architecture




                                 BACK TO
                               ARCHITECTURE
Data Stage/Data Mart Architecture




                                BACK TO
                              ARCHITECTURE

Weitere ähnliche Inhalte

Was ist angesagt?

Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecturepcherukumalla
 
Data warehouse architecture
Data warehouse architecture Data warehouse architecture
Data warehouse architecture janani thirupathi
 
Data warehousing and data mart
Data warehousing and data martData warehousing and data mart
Data warehousing and data martAmit Sarkar
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSINGKing Julian
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data WarehousingEyad Manna
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processingVijayasankariS
 
Date warehousing concepts
Date warehousing conceptsDate warehousing concepts
Date warehousing conceptspcherukumalla
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEZalpa Rathod
 
data warehouse , data mart, etl
data warehouse , data mart, etldata warehouse , data mart, etl
data warehouse , data mart, etlAashish Rathod
 
Data warehouse concepts
Data warehouse conceptsData warehouse concepts
Data warehouse conceptsobieefans
 
Etl - Extract Transform Load
Etl - Extract Transform LoadEtl - Extract Transform Load
Etl - Extract Transform LoadABDUL KHALIQ
 
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
 
OLAP in Data Warehouse
OLAP in Data WarehouseOLAP in Data Warehouse
OLAP in Data WarehouseSOMASUNDARAM T
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional ModelingSunita Sahu
 
OLAP operations
OLAP operationsOLAP operations
OLAP operationskunj desai
 

Was ist angesagt? (20)

Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
 
Data warehouse architecture
Data warehouse architecture Data warehouse architecture
Data warehouse architecture
 
Data warehousing and data mart
Data warehousing and data martData warehousing and data mart
Data warehousing and data mart
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processing
 
Date warehousing concepts
Date warehousing conceptsDate warehousing concepts
Date warehousing concepts
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSE
 
OLAP
OLAPOLAP
OLAP
 
data warehouse , data mart, etl
data warehouse , data mart, etldata warehouse , data mart, etl
data warehouse , data mart, etl
 
Data warehouse concepts
Data warehouse conceptsData warehouse concepts
Data warehouse concepts
 
Etl - Extract Transform Load
Etl - Extract Transform LoadEtl - Extract Transform Load
Etl - Extract Transform Load
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
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
 
OLAP in Data Warehouse
OLAP in Data WarehouseOLAP in Data Warehouse
OLAP in Data Warehouse
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional Modeling
 
Data warehouse
Data warehouse Data warehouse
Data warehouse
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
OLAP operations
OLAP operationsOLAP operations
OLAP operations
 

Ähnlich wie Ppt

Data warehousing
Data warehousingData warehousing
Data warehousingVarun Jain
 
Oracle: Fundamental Of Dw
Oracle: Fundamental Of DwOracle: Fundamental Of Dw
Oracle: Fundamental Of Dworacle content
 
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAININGDATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAININGDatawarehouse Trainings
 
What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?RTTS
 
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Hortonworks
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureJames Serra
 
Introducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & TalendIntroducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & TalendCaserta
 
professional informatica trainer
professional informatica trainerprofessional informatica trainer
professional informatica trainervibrantuser
 
the Data World Distilled
the Data World Distilledthe Data World Distilled
the Data World DistilledRTTS
 
Dw Concepts
Dw ConceptsDw Concepts
Dw Conceptsdataware
 
Anexinet Big Data Solutions
Anexinet Big Data SolutionsAnexinet Big Data Solutions
Anexinet Big Data SolutionsMark Kromer
 
Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)James Serra
 
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityBeyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityDataconomy Media
 
Take Action: The New Reality of Data-Driven Business
Take Action: The New Reality of Data-Driven BusinessTake Action: The New Reality of Data-Driven Business
Take Action: The New Reality of Data-Driven BusinessInside Analysis
 
Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS
Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS
Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS Amazon Web Services LATAM
 

Ähnlich wie Ppt (20)

Data warehousing
Data warehousingData warehousing
Data warehousing
 
Oracle: Fundamental Of DW
Oracle: Fundamental Of DWOracle: Fundamental Of DW
Oracle: Fundamental Of DW
 
Oracle: Fundamental Of Dw
Oracle: Fundamental Of DwOracle: Fundamental Of Dw
Oracle: Fundamental Of Dw
 
DWBASIC.ppt
DWBASIC.pptDWBASIC.ppt
DWBASIC.ppt
 
Dwh basics datastage online training
Dwh basics datastage online trainingDwh basics datastage online training
Dwh basics datastage online training
 
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAININGDATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
DATASTAGE AND QUALITY STAGE 9.1 ONLINE TRAINING
 
What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?
 
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse Architecture
 
Introducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & TalendIntroducing the Big Data Ecosystem with Caserta Concepts & Talend
Introducing the Big Data Ecosystem with Caserta Concepts & Talend
 
professional informatica trainer
professional informatica trainerprofessional informatica trainer
professional informatica trainer
 
the Data World Distilled
the Data World Distilledthe Data World Distilled
the Data World Distilled
 
Dw Concepts
Dw ConceptsDw Concepts
Dw Concepts
 
Anexinet Big Data Solutions
Anexinet Big Data SolutionsAnexinet Big Data Solutions
Anexinet Big Data Solutions
 
Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)Data Lakehouse, Data Mesh, and Data Fabric (r1)
Data Lakehouse, Data Mesh, and Data Fabric (r1)
 
DW 101
DW 101DW 101
DW 101
 
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityBeyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
 
The BI Sandbox
The BI SandboxThe BI Sandbox
The BI Sandbox
 
Take Action: The New Reality of Data-Driven Business
Take Action: The New Reality of Data-Driven BusinessTake Action: The New Reality of Data-Driven Business
Take Action: The New Reality of Data-Driven Business
 
Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS
Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS
Innovation Track AWS Cloud Experience Argentina - Data Lakes & Analytics en AWS
 

Kürzlich hochgeladen

Fun Call Girls In Goa 7028418221 Call Girl Service In Panaji Escorts
Fun Call Girls In Goa 7028418221 Call Girl Service In Panaji EscortsFun Call Girls In Goa 7028418221 Call Girl Service In Panaji Escorts
Fun Call Girls In Goa 7028418221 Call Girl Service In Panaji EscortsApsara Of India
 
8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR
8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR
8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCRdollysharma2066
 
1681275559_haunting-adeline and hunting.pdf
1681275559_haunting-adeline and hunting.pdf1681275559_haunting-adeline and hunting.pdf
1681275559_haunting-adeline and hunting.pdfTanjirokamado769606
 
Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...
Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...
Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...Riya Pathan
 
VIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts Service
VIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts ServiceVIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts Service
VIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts ServiceApsara Of India
 
Call Girl Price Andheri WhatsApp:+91-9833363713
Call Girl Price Andheri WhatsApp:+91-9833363713Call Girl Price Andheri WhatsApp:+91-9833363713
Call Girl Price Andheri WhatsApp:+91-9833363713Sonam Pathan
 
Air-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment Booking
Air-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment BookingAir-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment Booking
Air-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment BookingRiya Pathan
 
5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...
5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...
5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...Apsara Of India
 
QUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzers
QUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzersQUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzers
QUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzersSJU Quizzers
 
Call Girls in Faridabad 9000000000 Faridabad Escorts Service
Call Girls in Faridabad 9000000000 Faridabad Escorts ServiceCall Girls in Faridabad 9000000000 Faridabad Escorts Service
Call Girls in Faridabad 9000000000 Faridabad Escorts ServiceTina Ji
 
The Fine Line Between Honest and Evil Comics by Salty Vixen
The Fine Line Between Honest and Evil Comics by Salty VixenThe Fine Line Between Honest and Evil Comics by Salty Vixen
The Fine Line Between Honest and Evil Comics by Salty VixenSalty Vixen Stories & More
 
定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一
定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一
定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一lvtagr7
 
Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...
Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...
Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...First NO1 World Amil baba in Faisalabad
 
Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...
Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...
Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...Amil Baba Company
 
Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝soniya singh
 
Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...
Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...
Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...Amil Baba Company
 
Hi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort Services
Hi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort ServicesHi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort Services
Hi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort ServicesApsara Of India
 
Hot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtS
Hot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtSHot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtS
Hot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtSApsara Of India
 
Call Girls Near Delhi Pride Hotel New Delhi 9873777170
Call Girls Near Delhi Pride Hotel New Delhi 9873777170Call Girls Near Delhi Pride Hotel New Delhi 9873777170
Call Girls Near Delhi Pride Hotel New Delhi 9873777170Sonam Pathan
 

Kürzlich hochgeladen (20)

Fun Call Girls In Goa 7028418221 Call Girl Service In Panaji Escorts
Fun Call Girls In Goa 7028418221 Call Girl Service In Panaji EscortsFun Call Girls In Goa 7028418221 Call Girl Service In Panaji Escorts
Fun Call Girls In Goa 7028418221 Call Girl Service In Panaji Escorts
 
8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR
8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR
8377087607 Full Enjoy @24/7 Call Girls in Patel Nagar Delhi NCR
 
1681275559_haunting-adeline and hunting.pdf
1681275559_haunting-adeline and hunting.pdf1681275559_haunting-adeline and hunting.pdf
1681275559_haunting-adeline and hunting.pdf
 
Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...
Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...
Housewife Call Girls Sonagachi - 8250192130 Booking and charges genuine rate ...
 
VIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts Service
VIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts ServiceVIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts Service
VIP Call Girls In Goa 7028418221 Call Girls In Baga Beach Escorts Service
 
Call Girl Price Andheri WhatsApp:+91-9833363713
Call Girl Price Andheri WhatsApp:+91-9833363713Call Girl Price Andheri WhatsApp:+91-9833363713
Call Girl Price Andheri WhatsApp:+91-9833363713
 
Air-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment Booking
Air-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment BookingAir-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment Booking
Air-Hostess Call Girls Shobhabazar | 8250192130 At Low Cost Cash Payment Booking
 
5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...
5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...
5* Hotel Call Girls In Goa 7028418221 Call Girls In Calangute Beach Escort Se...
 
QUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzers
QUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzersQUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzers
QUIZ BOLLYWOOD ( weekly quiz ) - SJU quizzers
 
Call Girls in Faridabad 9000000000 Faridabad Escorts Service
Call Girls in Faridabad 9000000000 Faridabad Escorts ServiceCall Girls in Faridabad 9000000000 Faridabad Escorts Service
Call Girls in Faridabad 9000000000 Faridabad Escorts Service
 
The Fine Line Between Honest and Evil Comics by Salty Vixen
The Fine Line Between Honest and Evil Comics by Salty VixenThe Fine Line Between Honest and Evil Comics by Salty Vixen
The Fine Line Between Honest and Evil Comics by Salty Vixen
 
定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一
定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一
定制(UofT毕业证书)加拿大多伦多大学毕业证成绩单原版一比一
 
young call girls in Hari Nagar,🔝 9953056974 🔝 escort Service
young call girls in Hari Nagar,🔝 9953056974 🔝 escort Serviceyoung call girls in Hari Nagar,🔝 9953056974 🔝 escort Service
young call girls in Hari Nagar,🔝 9953056974 🔝 escort Service
 
Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...
Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...
Authentic No 1 Amil Baba In Pakistan Authentic No 1 Amil Baba In Karachi No 1...
 
Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...
Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...
Real NO1 Amil baba in Faisalabad Kala jadu in faisalabad Aamil baba Faisalaba...
 
Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝
Call Girls in Najafgarh Delhi 💯Call Us 🔝8264348440🔝
 
Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...
Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...
Amil baba in Pakistan amil baba Karachi amil baba in pakistan amil baba in la...
 
Hi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort Services
Hi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort ServicesHi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort Services
Hi Class Call Girls In Goa 7028418221 Call Girls In Anjuna Beach Escort Services
 
Hot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtS
Hot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtSHot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtS
Hot Call Girls In Goa 7028418221 Call Girls In Vagator Beach EsCoRtS
 
Call Girls Near Delhi Pride Hotel New Delhi 9873777170
Call Girls Near Delhi Pride Hotel New Delhi 9873777170Call Girls Near Delhi Pride Hotel New Delhi 9873777170
Call Girls Near Delhi Pride Hotel New Delhi 9873777170
 

Ppt

  • 1. By: RAVI RANJAN DATA WAREHOUSE By: Ravi Ranjan
  • 2. DEFINITION Data Warehouse A collection of corporate information, derived directly from operational systems and some external data sources. Its specific purpose is to support business decisions, not business operations.
  • 3. THE PURPOSE OF DATA WAREHOUSING  Realize the value of data  Data / information is an asset  Methods to realize the value, (Reporting, Analysis, etc.)  Make better decisions  Turn data into information  Create competitive advantage  Methods to support the decision making process, (EIS, DSS, etc.)
  • 4. Data Warehouse Components • Staging Area • A preparatory repository where transaction data can be transformed for use in the data warehouse • Data Mart • Traditional dimensionally modeled set of dimension and fact tables • Per Kimball, a data warehouse is the union of a set of data marts • Operational Data Store (ODS) • Modeled to support near real-time reporting needs.
  • 5. DATA WAREHOUSE FUNCTIONALITY Relational Databases Optimized Loader Extraction ERP Systems Cleansing Data Warehouse Engine Analyze Purchased Query Data Legacy Data Metadata Repository
  • 6. EVOLUTION ARCHITECTURE OF DATA WAREHOUSE GO TO Top-Down Architecture DIAGRAM GO TO Bottom-Up Architecture DIAGRAM GO TO Enterprise Data Mart Architecture DIAGRAM GO TO Data Stage/Data Mart Architecture DIAGRAM
  • 7. VERY LARGE DATA BASES WAREHOUSES ARE VERY LARGE DATABASES  Terabytes -- 10^12 bytes: Wal-Mart -- 24 Terabytes  Petabytes -- 10^15 bytes: Geographic Information Systems  Exabytes -- 10^18 bytes: National Medical Records  Zettabytes -- 10^21 bytes: Weather images  Zottabytes -- 10^24 bytes: Intelligence Agency Videos
  • 8. COMPLEXITIES OF CREATING A DATA WAREHOUSE  Incomplete errors  Missing Fields  Records or Fields That, by Design, are not Being Recorded  Incorrecterrors  Wrong Calculations, Aggregations  Duplicate Records  Wrong Information Entered into Source System
  • 9. SUCCESS & FUTURE OF DATA WAREHOUSE  The Data Warehouse has successfully supported the increased needs of the State over the past eight years.  The need for growth continues however, as the desire for more integrated data increases.  The Data Warehouse has software and tools in place to provide the functionality needed to support new enterprise Data Warehouse projects.  The future capabilities of the Data Warehouse can be expanded to include other programs and agencies.
  • 10. DATA WAREHOUSE PITFALLS  You are going to spend much time extracting, cleaning, and loading data  Youare going to find problems with systems feeding the data warehouse  Youwill find the need to store/validate data not being captured/validated by any existing system  Large scale data warehousing can become an exercise in data homogenizing
  • 11. DATA WAREHOUSE PITFALLS…  The time it takes to load the warehouse will expand to the amount of the time in the available window... and then some  You are building a HIGH maintenance system  You will fail if you concentrate on resource optimization to the neglect of project, data, and customer management issues and an understanding of what adds value to the customer
  • 12. BEST PRACTICES  Complete requirements and design  Prototyping is key to business understanding  Utilizing proper aggregations and detailed data  Training is an on-going process  Build data integrity checks into your system.
  • 13.
  • 14. Top-Down Architecture BACK TO ARCHITECTURE
  • 15. Bottom-Up Architecture BACK TO ARCHITECTURE
  • 16. Enterprise Data Mart Architecture BACK TO ARCHITECTURE
  • 17. Data Stage/Data Mart Architecture BACK TO ARCHITECTURE

Hinweis der Redaktion

  1. Legacy data is historical dataThe working information of a staff member Working hours or time-off hours within the fiscal period, up to the current dateWorking Hours = Overtime, etc.Time-Off Hours = Vacation, Sick Leave, etc.
  2. DataStage database, toolA tool set for designing, developing, and runnin.gapplications that populate one or more tables in a data warehouse