SlideShare une entreprise Scribd logo
1  sur  18
Télécharger pour lire hors ligne
2
   The major components of a data
    warehousing process
     Data sources
     Data extraction
     Data loading
     Comprehensive database
     Metadata
     Middleware tools

                                     3
4
   Three parts of the data warehouse
     The data warehouse that contains the data and
      associated software
     Data acquisition (back-end) software that extracts
      data from legacy systems and external sources,
      consolidates and summarizes them, and loads
      them into the data warehouse
     Client (front-end) software that allows users to
      access and analyze data from the warehouse

                                                           5
Architecture of a three-tier
data warehouse




                               6
Architecture of a two tier data
warehouse




                                  7
Architecture of web based data warehousing.


                                              8
   Issues to consider when deciding which
    architecture to use:
     Which database management system (DBMS) should
      be used?
     Will parallel processing and/or partitioning be used?
     Will data migration tools be used to load the data
      warehouse?
     What tools will be used to support data retrieval and
      analysis?
Alternative Data Warehouse Architectures:
• EDW Architecture




                                            10
Alternative Data Warehouse Architectures:
• Data Mart Architecture




                                            11
Alternative Data Warehouse Architectures:
• Hub-and-Spoke Data Mart Architecture




                                            12
Alternative Data Warehouse Architectures:
• EDW and ODS (real time access support)




                                            13
Alternative Data Warehouse Architectures:
•Distributed Data Warehouse Architecture




                                            14
Alternative Architectures for Data Warehouse Efforts




                                                       15
Teradata Corp.’s EDW




                       16
Ten factors that potentially affect the architecture selection
decision:

 1.   Information                  5.  Constraints on resources
      interdependence between      6.  Strategic view of the data
      organizational units             warehouse prior to
 2.   Upper management’s               implementation
      information needs            7. Compatibility with existing
 3.   Urgency of need for a data       systems
      warehouse                    8. Perceived ability of the in-
 4.   Nature of end-user tasks         house IT staff
                                   9. Technical issues
                                   10. Social/political factors
   DECISION SUPPORT SYSTEMS AND
    BUSINESS INTELLIGENCE. Turban
   Modern Data Warehousing, Mining, and
    Visualization: Core Concepts. George M.
    Marakas
   Modern Database Management.9th
    Edition.Jeffrey A. Hoffer, Mary B. Prescott,
    Heikki Topi

Contenu connexe

Tendances

Introduction to data warehousing
Introduction to data warehousing   Introduction to data warehousing
Introduction to data warehousing
Girish Dhareshwar
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
pcherukumalla
 

Tendances (20)

DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
Data literacy
Data literacyData literacy
Data literacy
 
Data Mining Concepts
Data Mining ConceptsData Mining Concepts
Data Mining Concepts
 
Data Preprocessing
Data PreprocessingData Preprocessing
Data Preprocessing
 
Data warehouse
Data warehouse Data warehouse
Data warehouse
 
Introduction to data warehousing
Introduction to data warehousing   Introduction to data warehousing
Introduction to data warehousing
 
Olap, oltp and data mining
Olap, oltp and data miningOlap, oltp and data mining
Olap, oltp and data mining
 
Data analytics
Data analyticsData analytics
Data analytics
 
Data Cleaning
Data CleaningData Cleaning
Data Cleaning
 
Introduction to database & sql
Introduction to database & sqlIntroduction to database & sql
Introduction to database & sql
 
Introduction to data analytics
Introduction to data analyticsIntroduction to data analytics
Introduction to data analytics
 
The Growing Importance of Data Cleaning
The Growing Importance of Data CleaningThe Growing Importance of Data Cleaning
The Growing Importance of Data Cleaning
 
Introduction to basic data analytics tools
Introduction to basic data analytics toolsIntroduction to basic data analytics tools
Introduction to basic data analytics tools
 
Data Warehousing
Data WarehousingData Warehousing
Data Warehousing
 
Power BI: Accessibility Tips
Power BI: Accessibility TipsPower BI: Accessibility Tips
Power BI: Accessibility Tips
 
Data Warehouse Concepts and Architecture
Data Warehouse Concepts and ArchitectureData Warehouse Concepts and Architecture
Data Warehouse Concepts and Architecture
 
Data mining presentation.ppt
Data mining presentation.pptData mining presentation.ppt
Data mining presentation.ppt
 
Metadata ppt
Metadata pptMetadata ppt
Metadata ppt
 
Data Modeling PPT
Data Modeling PPTData Modeling PPT
Data Modeling PPT
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
 

En vedette

Convergence and Interoperability (IFLA 2011)
Convergence and Interoperability (IFLA 2011)Convergence and Interoperability (IFLA 2011)
Convergence and Interoperability (IFLA 2011)
Figoblog
 

En vedette (10)

Self-Service Access and Exploration of Big Data
Self-Service Access and Exploration of Big DataSelf-Service Access and Exploration of Big Data
Self-Service Access and Exploration of Big Data
 
10 razones para quiebran un emprendimiento (2)
10 razones para quiebran un emprendimiento (2)10 razones para quiebran un emprendimiento (2)
10 razones para quiebran un emprendimiento (2)
 
Data Harmony Thesaurus Master®
Data Harmony Thesaurus Master®Data Harmony Thesaurus Master®
Data Harmony Thesaurus Master®
 
Big Data Madison: Architecting for Big Data (with notes)
Big Data Madison: Architecting for Big Data (with notes)Big Data Madison: Architecting for Big Data (with notes)
Big Data Madison: Architecting for Big Data (with notes)
 
Inline Tagging and Dictionary Connection
Inline Tagging and Dictionary ConnectionInline Tagging and Dictionary Connection
Inline Tagging and Dictionary Connection
 
Convergence and Interoperability (IFLA 2011)
Convergence and Interoperability (IFLA 2011)Convergence and Interoperability (IFLA 2011)
Convergence and Interoperability (IFLA 2011)
 
Data Lake vs. Data Warehouse: Which is Right for Healthcare?
Data Lake vs. Data Warehouse: Which is Right for Healthcare?Data Lake vs. Data Warehouse: Which is Right for Healthcare?
Data Lake vs. Data Warehouse: Which is Right for Healthcare?
 
Enterprise Data Hub: The Next Big Thing in Big Data
Enterprise Data Hub: The Next Big Thing in Big DataEnterprise Data Hub: The Next Big Thing in Big Data
Enterprise Data Hub: The Next Big Thing in Big Data
 
Big Data = Bigger Metadata
Big Data = Bigger MetadataBig Data = Bigger Metadata
Big Data = Bigger Metadata
 
Master Data Management methodology
Master Data Management methodologyMaster Data Management methodology
Master Data Management methodology
 

Similaire à 3 dw architectures

BI Chapter 03.pdf business business business business business business
BI Chapter 03.pdf business business business business business businessBI Chapter 03.pdf business business business business business business
BI Chapter 03.pdf business business business business business business
JawaherAlbaddawi
 
6 - Foundations of BI: Database & Info Mgmt
6 - Foundations of BI: Database & Info Mgmt6 - Foundations of BI: Database & Info Mgmt
6 - Foundations of BI: Database & Info Mgmt
Hemant Nagwekar
 
HEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptx
HEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptxHEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptx
HEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptx
ssuser0d9ec0
 
Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...
Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...
Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...
inside-BigData.com
 

Similaire à 3 dw architectures (20)

Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
 
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
 
BI Chapter 03.pdf business business business business business business
BI Chapter 03.pdf business business business business business businessBI Chapter 03.pdf business business business business business business
BI Chapter 03.pdf business business business business business business
 
6 - Foundations of BI: Database & Info Mgmt
6 - Foundations of BI: Database & Info Mgmt6 - Foundations of BI: Database & Info Mgmt
6 - Foundations of BI: Database & Info Mgmt
 
Data wirehouse
Data wirehouseData wirehouse
Data wirehouse
 
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)
 
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
 
Unlock Your Data for ML & AI using Data Virtualization
Unlock Your Data for ML & AI using Data VirtualizationUnlock Your Data for ML & AI using Data Virtualization
Unlock Your Data for ML & AI using Data Virtualization
 
Database administration
Database administrationDatabase administration
Database administration
 
Data Mining
Data MiningData Mining
Data Mining
 
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
 
Database Systems
Database SystemsDatabase Systems
Database Systems
 
Data Integration Alternatives: When to use Data Virtualization, ETL, and ESB
Data Integration Alternatives: When to use Data Virtualization, ETL, and ESBData Integration Alternatives: When to use Data Virtualization, ETL, and ESB
Data Integration Alternatives: When to use Data Virtualization, ETL, and ESB
 
Navigating the World of User Data Management and Data Discovery
Navigating the World of User Data Management and Data DiscoveryNavigating the World of User Data Management and Data Discovery
Navigating the World of User Data Management and Data Discovery
 
Shaping the Role of a Data Lake in a Modern Data Fabric Architecture
Shaping the Role of a Data Lake in a Modern Data Fabric ArchitectureShaping the Role of a Data Lake in a Modern Data Fabric Architecture
Shaping the Role of a Data Lake in a Modern Data Fabric Architecture
 
J0212065068
J0212065068J0212065068
J0212065068
 
Information Technology 104
Information Technology 104Information Technology 104
Information Technology 104
 
HEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptx
HEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptxHEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptx
HEDW-2020-Using-Data-Virtualization-to-Break-Down-Data-Silos.pptx
 
Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...
Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...
Building a Tiered Digital Storage Environment on User-Defined Metadata to Ena...
 
Designing TCS e-Infrastructure: data, metadata and architecture
Designing TCS e-Infrastructure: data, metadata and architecture Designing TCS e-Infrastructure: data, metadata and architecture
Designing TCS e-Infrastructure: data, metadata and architecture
 

Plus de Claudia Gomez (20)

Olapsql
OlapsqlOlapsql
Olapsql
 
3 olap storage
3 olap storage3 olap storage
3 olap storage
 
3 olap storage
3 olap storage3 olap storage
3 olap storage
 
2 olap operaciones
2 olap operaciones2 olap operaciones
2 olap operaciones
 
1 introba
1 introba1 introba
1 introba
 
Diseño fisico particiones_3
Diseño fisico particiones_3Diseño fisico particiones_3
Diseño fisico particiones_3
 
Diseño fisico indices_2
Diseño fisico indices_2Diseño fisico indices_2
Diseño fisico indices_2
 
Diseño fisico 1
Diseño fisico 1Diseño fisico 1
Diseño fisico 1
 
Agreggates iii
Agreggates iiiAgreggates iii
Agreggates iii
 
Agreggates ii
Agreggates iiAgreggates ii
Agreggates ii
 
Agreggates i
Agreggates iAgreggates i
Agreggates i
 
Dw design hierarchies_7
Dw design hierarchies_7Dw design hierarchies_7
Dw design hierarchies_7
 
Dw design fact_tables_types_6
Dw design fact_tables_types_6Dw design fact_tables_types_6
Dw design fact_tables_types_6
 
Dw design date_dimension_1_1
Dw design date_dimension_1_1Dw design date_dimension_1_1
Dw design date_dimension_1_1
 
Dw design 4_bus_architecture
Dw design 4_bus_architectureDw design 4_bus_architecture
Dw design 4_bus_architecture
 
Dw design 3_surro_keys
Dw design 3_surro_keysDw design 3_surro_keys
Dw design 3_surro_keys
 
Dw design 2_conceptual_model
Dw design 2_conceptual_modelDw design 2_conceptual_model
Dw design 2_conceptual_model
 
Dw design 1_dim_facts
Dw design 1_dim_factsDw design 1_dim_facts
Dw design 1_dim_facts
 
2 dw requeriments
2 dw requeriments2 dw requeriments
2 dw requeriments
 
1 dw projectplanning
1 dw projectplanning1 dw projectplanning
1 dw projectplanning
 

3 dw architectures

  • 1.
  • 2. 2
  • 3. The major components of a data warehousing process  Data sources  Data extraction  Data loading  Comprehensive database  Metadata  Middleware tools 3
  • 4. 4
  • 5. Three parts of the data warehouse  The data warehouse that contains the data and associated software  Data acquisition (back-end) software that extracts data from legacy systems and external sources, consolidates and summarizes them, and loads them into the data warehouse  Client (front-end) software that allows users to access and analyze data from the warehouse 5
  • 6. Architecture of a three-tier data warehouse 6
  • 7. Architecture of a two tier data warehouse 7
  • 8. Architecture of web based data warehousing. 8
  • 9. Issues to consider when deciding which architecture to use:  Which database management system (DBMS) should be used?  Will parallel processing and/or partitioning be used?  Will data migration tools be used to load the data warehouse?  What tools will be used to support data retrieval and analysis?
  • 10. Alternative Data Warehouse Architectures: • EDW Architecture 10
  • 11. Alternative Data Warehouse Architectures: • Data Mart Architecture 11
  • 12. Alternative Data Warehouse Architectures: • Hub-and-Spoke Data Mart Architecture 12
  • 13. Alternative Data Warehouse Architectures: • EDW and ODS (real time access support) 13
  • 14. Alternative Data Warehouse Architectures: •Distributed Data Warehouse Architecture 14
  • 15. Alternative Architectures for Data Warehouse Efforts 15
  • 17. Ten factors that potentially affect the architecture selection decision: 1. Information 5. Constraints on resources interdependence between 6. Strategic view of the data organizational units warehouse prior to 2. Upper management’s implementation information needs 7. Compatibility with existing 3. Urgency of need for a data systems warehouse 8. Perceived ability of the in- 4. Nature of end-user tasks house IT staff 9. Technical issues 10. Social/political factors
  • 18. DECISION SUPPORT SYSTEMS AND BUSINESS INTELLIGENCE. Turban  Modern Data Warehousing, Mining, and Visualization: Core Concepts. George M. Marakas  Modern Database Management.9th Edition.Jeffrey A. Hoffer, Mary B. Prescott, Heikki Topi