SlideShare ist ein Scribd-Unternehmen logo
1 von 25
Data Warehouse
DefinitionDefinition
Importance of Data WarehouseImportance of Data Warehouse
Its ComponentsIts Components
Two Data Warehousing StrategiesTwo Data Warehousing Strategies
ETL ProcessesETL Processes
For a Successful WarehouseFor a Successful Warehouse
Data Warehouse PitfallsData Warehouse Pitfalls
Data Warehouse
 A subject oriented, integrated, time-variant, non-volatile
collection of data in support of management decisions (Bill
Inmon)
 Subject oriented -- data are organized around sales,
products, etc.
 Integrated -- data are integrated to provide a
comprehensive view
 Time variant -- historical data are maintained
 Nonvolatile -- data are not updated by users
Limitations of Traditional
Databases
 lack of on-line historical data
 residing in different operational systems
 extremely poor query performance
 operational database designs not suited for
decision support
The Importance of Data
Warehousing
 More cost – effective decision making
 Increase quality and flexibility of enterprise analysis as
data warehouse contain accurate and reliable data
 Ability to maintain better customer relationships
 Unlimited analyses of enterprise information
Components of Data warehouse
 Summarized data
 Basically of two type: 1) Lightly (departmental information)
2) Highly (enterprise wide decision)
 Current detail
 Comes directly from operational system
 But stored by subject area and represent entire organization not a department
 System of record
 Maintaining the source of record
 Integration and transformation Programs
 Programs that convert an application – specific data to enterprise data
Cont..
 Performs many function like
 Reformatting, recalculating
 Adding time element
 Identifying the default value
 Summarizing and merging the data
 Filling up the blank fields
 Archives
 Contain old data which hold some amount of significance to the organization
 Used for trend analysis
 Metadata
 Control access and analysis of the data warehouse contents

To manage and control data warehouse creation and maintenance
Two Data Warehousing
Strategies
 Enterprise-wide warehouse, top down, the
Inmon methodology
 Data mart, bottom up, the Kimball
methodology
 When properly executed, both result in an
enterprise-wide data warehouse
The Data Mart Strategy
 The most common approach
 Begins with a single mart and are added over
time for more subject areas
 Relatively inexpensive and easy to implement
 Can be used as a proof of concept for data
warehousing
 Requires an overall integration plan
The Enterprise-wide Strategy
 A comprehensive warehouse is built initially
 An initial dependent data mart is built using a
subset of the data in the warehouse
 Additional data marts are built using subsets of the
data in the warehouse
 Like all complex projects, it is expensive, time
consuming, and prone to failure
 When successful, it results in an integrated, scalable
warehouse
ETL Processes
 Extraction, Transformation, and Loading Process
 The “plumbing” work of data warehousing
 Data are moved from source to target data
bases
 A very costly, time consuming part of data
warehousing
Sample ETL Tools
 Teradata Warehouse Builder from Teradata
 DataStage from Ascential Software
 SAS System from SAS Institute
 Power Mart/Power Center from Informatica
 Sagent Solution from Sagent Software
Reasons for “Dirty” Data
• Dummy Values
• Absence of Data
• Multipurpose Fields
• Inappropriate Use of Address Lines
• Violation of Business Rules
• Non-Unique Identifiers
• Data Integration Problems
I. Data Cleansing and
Extracting
 Source systems contain “dirty data” that must be cleansed
 ETL software contains rudimentary data cleansing capabilities
 Specialized data cleansing software is often used. Important
for performing name and address correction and householding
functions
 Leading data cleansing vendors include Vality (Integrity),
Harte-Hanks (Trillium), and Firstlogic (i.d.Centric)
Steps in Data Cleansing
 Parsing
 Correcting
 Standardizing
 Matching
 Consolidating
Parsing
 Parsing locates and identifies individual data
elements in the source files and then isolates
these data elements in the target files.
 Examples include parsing the first, middle,
and last name; street number and street
name; and city and state.
Correcting
 Corrects parsed individual data components
using sophisticated data algorithms and
secondary data sources.
 Example include replacing a vanity address
and adding a zip code.
Standardizing
 Standardizing applies conversion routines to
transform data into its preferred (and
consistent) format using both standard and
custom business rules.
 Examples include adding a pre name,
replacing a nickname, and using a preferred
street name
Matching
 Searching and matching records within and
across the parsed, corrected and standardized
data based on predefined business rules to
eliminate duplications.
 Examples include identifying similar names
and addresses.
Consolidating
• Analyzing and identifying relationships between
matched records and consolidating/merging
them into ONE representation.
II. Data Transformation
 Transforms the data in accordance with the
business rules and standards that have been
established
 Example include: format changes,
deduplication, splitting up fields,
replacement of codes, derived values, and
aggregates
III. Data Loading
 Data are physically moved to the data
warehouse
 The loading takes place within a “load
window”
 The trend is to near real time updates of the
data warehouse as the warehouse is
increasingly used for operational applications
For a Successful Warehouse
 From day one establish that warehousing is a joint
user/builder project
 Establish that maintaining data quality will be an
ONGOING joint user/builder responsibility
 Train the users one step at a time
 Consider doing a high level corporate data model in no
more than three weeks
 Look closely at the data extracting, cleaning, and loading
tools
Cont..
 Determine a plan to test the integrity of the data in the
warehouse
 From the start get warehouse users in the habit of 'testing'
complex queries
 Coordinate system roll-out with network administration
personnel
 Implement a user accessible automated directory to information
stored in the warehouse
Data Warehouse Pitfalls
 Many warehouse end users will be trained and never or
seldom apply their training
 Large scale data warehousing can become an exercise in
data homogenizing
 Loading information only because it is available
 Providing no maintenance to the data warehouse
Contact Us
Business Name: Skyline Business School
Address: Hauz Khas Enclave, 
New Delhi ­ 110 016, India.
Phone: 91­11­26864848,:91­11­26866968
E­mail: info@skylinecollege.com
Resource: 
www.skylinecollege.com/our­programmes/pgp­data­warehousing

Weitere ähnliche Inhalte

Was ist angesagt?

Basic Introduction of Data Warehousing from Adiva Consulting
Basic Introduction of  Data Warehousing from Adiva ConsultingBasic Introduction of  Data Warehousing from Adiva Consulting
Basic Introduction of Data Warehousing from Adiva Consultingadivasoft
 
Data Warehousing and Data Mining
Data Warehousing and Data MiningData Warehousing and Data Mining
Data Warehousing and Data Miningidnats
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEZalpa Rathod
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecturepcherukumalla
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data WarehousingEyad Manna
 
Introduction To Data Warehousing
Introduction To Data WarehousingIntroduction To Data Warehousing
Introduction To Data WarehousingAlex Meadows
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional ModelingSunita Sahu
 
Warehousing dimension star-snowflake_schemas
Warehousing dimension star-snowflake_schemasWarehousing dimension star-snowflake_schemas
Warehousing dimension star-snowflake_schemasEric Matthews
 
Data Warehouse Architectures
Data Warehouse ArchitecturesData Warehouse Architectures
Data Warehouse ArchitecturesTheju Paul
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSINGKing Julian
 
1.4 data warehouse
1.4 data warehouse1.4 data warehouse
1.4 data warehouseKrish_ver2
 

Was ist angesagt? (20)

Basic Introduction of Data Warehousing from Adiva Consulting
Basic Introduction of  Data Warehousing from Adiva ConsultingBasic Introduction of  Data Warehousing from Adiva Consulting
Basic Introduction of Data Warehousing from Adiva Consulting
 
Data warehousing ppt
Data warehousing pptData warehousing ppt
Data warehousing ppt
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Data Warehousing and Data Mining
Data Warehousing and Data MiningData Warehousing and Data Mining
Data Warehousing and Data Mining
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSE
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
 
Data warehouse
Data warehouse Data warehouse
Data warehouse
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
 
Introduction To Data Warehousing
Introduction To Data WarehousingIntroduction To Data Warehousing
Introduction To Data Warehousing
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional Modeling
 
Warehousing dimension star-snowflake_schemas
Warehousing dimension star-snowflake_schemasWarehousing dimension star-snowflake_schemas
Warehousing dimension star-snowflake_schemas
 
Data Warehouse Architectures
Data Warehouse ArchitecturesData Warehouse Architectures
Data Warehouse Architectures
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
OLAP v/s OLTP
OLAP v/s OLTPOLAP v/s OLTP
OLAP v/s OLTP
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
1.4 data warehouse
1.4 data warehouse1.4 data warehouse
1.4 data warehouse
 

Andere mochten auch

Gamma Soft and NuoDB Speed Up Data Consolidation And Cloud Migration
Gamma Soft and NuoDB Speed Up Data Consolidation And Cloud MigrationGamma Soft and NuoDB Speed Up Data Consolidation And Cloud Migration
Gamma Soft and NuoDB Speed Up Data Consolidation And Cloud MigrationNuoDB
 
Distributed databases
Distributed databasesDistributed databases
Distributed databasessourabhdave
 
Enabling Clinical Data Reuse with openEHR Data Warehouse Environments
Enabling Clinical Data Reuse with openEHR Data Warehouse EnvironmentsEnabling Clinical Data Reuse with openEHR Data Warehouse Environments
Enabling Clinical Data Reuse with openEHR Data Warehouse EnvironmentsLuis Marco Ruiz
 
Data warehouse and data mining
Data warehouse and data miningData warehouse and data mining
Data warehouse and data miningRohit Kumar
 
Coding serbia 2015
Coding serbia 2015Coding serbia 2015
Coding serbia 2015Matija Gobec
 
ScaleBase Webinar: Methods and Challenges to Scale Out a MySQL Database
ScaleBase Webinar: Methods and Challenges to Scale Out a MySQL DatabaseScaleBase Webinar: Methods and Challenges to Scale Out a MySQL Database
ScaleBase Webinar: Methods and Challenges to Scale Out a MySQL DatabaseScaleBase
 
2012 10 24_briefing room
2012 10 24_briefing room2012 10 24_briefing room
2012 10 24_briefing roomNuoDB
 
Industry experts webinar slides (final v1.0)
Industry experts webinar slides (final   v1.0)Industry experts webinar slides (final   v1.0)
Industry experts webinar slides (final v1.0)NuoDB
 
Difference between data warehouse and data mining
Difference between data warehouse and data miningDifference between data warehouse and data mining
Difference between data warehouse and data miningmaxonlinetr
 
Breakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data StoreBreakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data StoreCloudera, Inc.
 
The Data Warehouse Lifecycle
The Data Warehouse LifecycleThe Data Warehouse Lifecycle
The Data Warehouse Lifecyclebartlowe
 
Must taitung team
Must taitung teamMust taitung team
Must taitung teamMUSTHoover
 
Lecture 4.2 c++(comlete reference book)
Lecture 4.2 c++(comlete reference book)Lecture 4.2 c++(comlete reference book)
Lecture 4.2 c++(comlete reference book)Abu Saleh
 
Vittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o Oscar
Vittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o OscarVittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o Oscar
Vittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o OscarVittorioTedeschi
 
Introduction to NOSQL And MongoDB
Introduction to NOSQL And MongoDBIntroduction to NOSQL And MongoDB
Introduction to NOSQL And MongoDBBehrouz Bakhtiari
 
06module 16 building-lan
06module 16 building-lan06module 16 building-lan
06module 16 building-lansetioaribowo
 

Andere mochten auch (20)

Gamma Soft and NuoDB Speed Up Data Consolidation And Cloud Migration
Gamma Soft and NuoDB Speed Up Data Consolidation And Cloud MigrationGamma Soft and NuoDB Speed Up Data Consolidation And Cloud Migration
Gamma Soft and NuoDB Speed Up Data Consolidation And Cloud Migration
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Distributed databases
Distributed databasesDistributed databases
Distributed databases
 
Enabling Clinical Data Reuse with openEHR Data Warehouse Environments
Enabling Clinical Data Reuse with openEHR Data Warehouse EnvironmentsEnabling Clinical Data Reuse with openEHR Data Warehouse Environments
Enabling Clinical Data Reuse with openEHR Data Warehouse Environments
 
Data warehouse and data mining
Data warehouse and data miningData warehouse and data mining
Data warehouse and data mining
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
Coding serbia 2015
Coding serbia 2015Coding serbia 2015
Coding serbia 2015
 
ScaleBase Webinar: Methods and Challenges to Scale Out a MySQL Database
ScaleBase Webinar: Methods and Challenges to Scale Out a MySQL DatabaseScaleBase Webinar: Methods and Challenges to Scale Out a MySQL Database
ScaleBase Webinar: Methods and Challenges to Scale Out a MySQL Database
 
2012 10 24_briefing room
2012 10 24_briefing room2012 10 24_briefing room
2012 10 24_briefing room
 
Industry experts webinar slides (final v1.0)
Industry experts webinar slides (final   v1.0)Industry experts webinar slides (final   v1.0)
Industry experts webinar slides (final v1.0)
 
Difference between data warehouse and data mining
Difference between data warehouse and data miningDifference between data warehouse and data mining
Difference between data warehouse and data mining
 
Breakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data StoreBreakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data Store
 
The Data Warehouse Lifecycle
The Data Warehouse LifecycleThe Data Warehouse Lifecycle
The Data Warehouse Lifecycle
 
Presentación1 rodrigo
Presentación1 rodrigoPresentación1 rodrigo
Presentación1 rodrigo
 
Must taitung team
Must taitung teamMust taitung team
Must taitung team
 
Lecture 4.2 c++(comlete reference book)
Lecture 4.2 c++(comlete reference book)Lecture 4.2 c++(comlete reference book)
Lecture 4.2 c++(comlete reference book)
 
Vittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o Oscar
Vittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o OscarVittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o Oscar
Vittorio Tedeschi aponta motivos para Dicaprio ainda não ter conquistado o Oscar
 
Introduction to NOSQL And MongoDB
Introduction to NOSQL And MongoDBIntroduction to NOSQL And MongoDB
Introduction to NOSQL And MongoDB
 
06module 16 building-lan
06module 16 building-lan06module 16 building-lan
06module 16 building-lan
 

Ähnlich wie Data Warehouse Basic Guide

Etl data processing system which is very useful for the engineering students
Etl data processing system which is very useful for the engineering studentsEtl data processing system which is very useful for the engineering students
Etl data processing system which is very useful for the engineering studentsutsav25khel
 
extract, transform, load_Data Analyt.ppt
extract, transform, load_Data Analyt.pptextract, transform, load_Data Analyt.ppt
extract, transform, load_Data Analyt.pptNeerupa Chauhan
 
Chapter 2-data-warehousingppt2517 vero
Chapter 2-data-warehousingppt2517 veroChapter 2-data-warehousingppt2517 vero
Chapter 2-data-warehousingppt2517 veroangshuman2387
 
Data warehouse-testing
Data warehouse-testingData warehouse-testing
Data warehouse-testingraianup
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousingsumit621
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.pptSamPrem3
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.pptPalaniKumarR2
 
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 businessJawaherAlbaddawi
 
Data warehouse concepts
Data warehouse conceptsData warehouse concepts
Data warehouse conceptsobieefans
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.pptSumathiG8
 
Data warehouse
Data warehouseData warehouse
Data warehouseRajThakuri
 
Warehouse Planning and Implementation
Warehouse Planning and ImplementationWarehouse Planning and Implementation
Warehouse Planning and ImplementationSHIKHA GAUTAM
 
Informatica and datawarehouse Material
Informatica and datawarehouse MaterialInformatica and datawarehouse Material
Informatica and datawarehouse Materialobieefans
 
Data Ware House Testing
Data Ware House TestingData Ware House Testing
Data Ware House Testingmanojpmat
 
Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data WarehouseSOMASUNDARAM T
 

Ähnlich wie Data Warehouse Basic Guide (20)

D01 etl
D01 etlD01 etl
D01 etl
 
Etl data processing system which is very useful for the engineering students
Etl data processing system which is very useful for the engineering studentsEtl data processing system which is very useful for the engineering students
Etl data processing system which is very useful for the engineering students
 
extract, transform, load_Data Analyt.ppt
extract, transform, load_Data Analyt.pptextract, transform, load_Data Analyt.ppt
extract, transform, load_Data Analyt.ppt
 
Chapter 2-data-warehousingppt2517 vero
Chapter 2-data-warehousingppt2517 veroChapter 2-data-warehousingppt2517 vero
Chapter 2-data-warehousingppt2517 vero
 
Unit 1
Unit 1Unit 1
Unit 1
 
Data warehouse-testing
Data warehouse-testingData warehouse-testing
Data warehouse-testing
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousing
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt
 
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
 
Data warehouse concepts
Data warehouse conceptsData warehouse concepts
Data warehouse concepts
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Warehouse Planning and Implementation
Warehouse Planning and ImplementationWarehouse Planning and Implementation
Warehouse Planning and Implementation
 
Informatica and datawarehouse Material
Informatica and datawarehouse MaterialInformatica and datawarehouse Material
Informatica and datawarehouse Material
 
Data Warehouse
Data Warehouse Data Warehouse
Data Warehouse
 
Data Ware House Testing
Data Ware House TestingData Ware House Testing
Data Ware House Testing
 
Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data Warehouse
 
Data Warehouse 101
Data Warehouse 101Data Warehouse 101
Data Warehouse 101
 

Mehr von thomasmary607

Economic, Environmental & Socio-cultural Considerations
Economic, Environmental & Socio-cultural ConsiderationsEconomic, Environmental & Socio-cultural Considerations
Economic, Environmental & Socio-cultural Considerationsthomasmary607
 
Destination Branding: Building Brand Equity
Destination Branding: Building Brand EquityDestination Branding: Building Brand Equity
Destination Branding: Building Brand Equitythomasmary607
 
SOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATION
SOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATIONSOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATION
SOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATIONthomasmary607
 
Health Benefits of Chamomile Tea
Health Benefits of Chamomile TeaHealth Benefits of Chamomile Tea
Health Benefits of Chamomile Teathomasmary607
 
Importance of Tourism Planning in Skyline College Delhi
Importance of Tourism Planning in Skyline College DelhiImportance of Tourism Planning in Skyline College Delhi
Importance of Tourism Planning in Skyline College Delhithomasmary607
 
Way To Manage Standards Of Your Business
Way To Manage Standards Of Your BusinessWay To Manage Standards Of Your Business
Way To Manage Standards Of Your Businessthomasmary607
 
GET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATION
GET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATIONGET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATION
GET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATIONthomasmary607
 
Seven C'S For Effective Communication India
Seven C'S For Effective Communication IndiaSeven C'S For Effective Communication India
Seven C'S For Effective Communication Indiathomasmary607
 
Secret Guide of Internet marketing
Secret Guide of Internet marketingSecret Guide of Internet marketing
Secret Guide of Internet marketingthomasmary607
 
Call Center Management
Call Center ManagementCall Center Management
Call Center Managementthomasmary607
 

Mehr von thomasmary607 (11)

Economic, Environmental & Socio-cultural Considerations
Economic, Environmental & Socio-cultural ConsiderationsEconomic, Environmental & Socio-cultural Considerations
Economic, Environmental & Socio-cultural Considerations
 
Destination Branding: Building Brand Equity
Destination Branding: Building Brand EquityDestination Branding: Building Brand Equity
Destination Branding: Building Brand Equity
 
SOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATION
SOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATIONSOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATION
SOME POINTS YOU SHOULD KNOW ABOUT BUSINESS COMMUNICATION
 
Health Benefits of Chamomile Tea
Health Benefits of Chamomile TeaHealth Benefits of Chamomile Tea
Health Benefits of Chamomile Tea
 
Importance of Tourism Planning in Skyline College Delhi
Importance of Tourism Planning in Skyline College DelhiImportance of Tourism Planning in Skyline College Delhi
Importance of Tourism Planning in Skyline College Delhi
 
Way To Manage Standards Of Your Business
Way To Manage Standards Of Your BusinessWay To Manage Standards Of Your Business
Way To Manage Standards Of Your Business
 
GET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATION
GET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATIONGET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATION
GET TO KNOW ABOUT BARRIERS TO EFFECTIVE COMMUNICATION
 
Seven C'S For Effective Communication India
Seven C'S For Effective Communication IndiaSeven C'S For Effective Communication India
Seven C'S For Effective Communication India
 
Secret Guide of Internet marketing
Secret Guide of Internet marketingSecret Guide of Internet marketing
Secret Guide of Internet marketing
 
Call Center Management
Call Center ManagementCall Center Management
Call Center Management
 
Benefits of ERP
Benefits of ERPBenefits of ERP
Benefits of ERP
 

Kürzlich hochgeladen

Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night StandCall Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfAccredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfadriantubila
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionfulawalesam
 
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceDelhi Call girls
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...amitlee9823
 
Invezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz1
 
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...SUHANI PANDEY
 
BigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxBigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxolyaivanovalion
 
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% SecureCall me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% SecurePooja Nehwal
 
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...amitlee9823
 
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...amitlee9823
 
Call Girls In Attibele ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Attibele ☎ 7737669865 🥵 Book Your One night StandCall Girls In Attibele ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Attibele ☎ 7737669865 🥵 Book Your One night Standamitlee9823
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Researchmichael115558
 
Midocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxMidocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxolyaivanovalion
 
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightCheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightDelhi Call girls
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxolyaivanovalion
 
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...only4webmaster01
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Valters Lauzums
 
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...amitlee9823
 

Kürzlich hochgeladen (20)

Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night StandCall Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Hsr Layout ☎ 7737669865 🥵 Book Your One night Stand
 
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfAccredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interaction
 
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
 
Invezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signals
 
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
VIP Model Call Girls Hinjewadi ( Pune ) Call ON 8005736733 Starting From 5K t...
 
BigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxBigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptx
 
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% SecureCall me @ 9892124323  Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
Call me @ 9892124323 Cheap Rate Call Girls in Vashi with Real Photo 100% Secure
 
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
Escorts Service Kumaraswamy Layout ☎ 7737669865☎ Book Your One night Stand (B...
 
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
 
Call Girls In Attibele ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Attibele ☎ 7737669865 🥵 Book Your One night StandCall Girls In Attibele ☎ 7737669865 🥵 Book Your One night Stand
Call Girls In Attibele ☎ 7737669865 🥵 Book Your One night Stand
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
Midocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFxMidocean dropshipping via API with DroFx
Midocean dropshipping via API with DroFx
 
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightCheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptx
 
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
Call Girls Indiranagar Just Call 👗 9155563397 👗 Top Class Call Girl Service B...
 
Sampling (random) method and Non random.ppt
Sampling (random) method and Non random.pptSampling (random) method and Non random.ppt
Sampling (random) method and Non random.ppt
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
 
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
 

Data Warehouse Basic Guide

  • 1. Data Warehouse DefinitionDefinition Importance of Data WarehouseImportance of Data Warehouse Its ComponentsIts Components Two Data Warehousing StrategiesTwo Data Warehousing Strategies ETL ProcessesETL Processes For a Successful WarehouseFor a Successful Warehouse Data Warehouse PitfallsData Warehouse Pitfalls
  • 2. Data Warehouse  A subject oriented, integrated, time-variant, non-volatile collection of data in support of management decisions (Bill Inmon)  Subject oriented -- data are organized around sales, products, etc.  Integrated -- data are integrated to provide a comprehensive view  Time variant -- historical data are maintained  Nonvolatile -- data are not updated by users
  • 3. Limitations of Traditional Databases  lack of on-line historical data  residing in different operational systems  extremely poor query performance  operational database designs not suited for decision support
  • 4. The Importance of Data Warehousing  More cost – effective decision making  Increase quality and flexibility of enterprise analysis as data warehouse contain accurate and reliable data  Ability to maintain better customer relationships  Unlimited analyses of enterprise information
  • 5. Components of Data warehouse  Summarized data  Basically of two type: 1) Lightly (departmental information) 2) Highly (enterprise wide decision)  Current detail  Comes directly from operational system  But stored by subject area and represent entire organization not a department  System of record  Maintaining the source of record  Integration and transformation Programs  Programs that convert an application – specific data to enterprise data
  • 6. Cont..  Performs many function like  Reformatting, recalculating  Adding time element  Identifying the default value  Summarizing and merging the data  Filling up the blank fields  Archives  Contain old data which hold some amount of significance to the organization  Used for trend analysis  Metadata  Control access and analysis of the data warehouse contents  To manage and control data warehouse creation and maintenance
  • 7. Two Data Warehousing Strategies  Enterprise-wide warehouse, top down, the Inmon methodology  Data mart, bottom up, the Kimball methodology  When properly executed, both result in an enterprise-wide data warehouse
  • 8. The Data Mart Strategy  The most common approach  Begins with a single mart and are added over time for more subject areas  Relatively inexpensive and easy to implement  Can be used as a proof of concept for data warehousing  Requires an overall integration plan
  • 9. The Enterprise-wide Strategy  A comprehensive warehouse is built initially  An initial dependent data mart is built using a subset of the data in the warehouse  Additional data marts are built using subsets of the data in the warehouse  Like all complex projects, it is expensive, time consuming, and prone to failure  When successful, it results in an integrated, scalable warehouse
  • 10. ETL Processes  Extraction, Transformation, and Loading Process  The “plumbing” work of data warehousing  Data are moved from source to target data bases  A very costly, time consuming part of data warehousing
  • 11. Sample ETL Tools  Teradata Warehouse Builder from Teradata  DataStage from Ascential Software  SAS System from SAS Institute  Power Mart/Power Center from Informatica  Sagent Solution from Sagent Software
  • 12. Reasons for “Dirty” Data • Dummy Values • Absence of Data • Multipurpose Fields • Inappropriate Use of Address Lines • Violation of Business Rules • Non-Unique Identifiers • Data Integration Problems
  • 13. I. Data Cleansing and Extracting  Source systems contain “dirty data” that must be cleansed  ETL software contains rudimentary data cleansing capabilities  Specialized data cleansing software is often used. Important for performing name and address correction and householding functions  Leading data cleansing vendors include Vality (Integrity), Harte-Hanks (Trillium), and Firstlogic (i.d.Centric)
  • 14. Steps in Data Cleansing  Parsing  Correcting  Standardizing  Matching  Consolidating
  • 15. Parsing  Parsing locates and identifies individual data elements in the source files and then isolates these data elements in the target files.  Examples include parsing the first, middle, and last name; street number and street name; and city and state.
  • 16. Correcting  Corrects parsed individual data components using sophisticated data algorithms and secondary data sources.  Example include replacing a vanity address and adding a zip code.
  • 17. Standardizing  Standardizing applies conversion routines to transform data into its preferred (and consistent) format using both standard and custom business rules.  Examples include adding a pre name, replacing a nickname, and using a preferred street name
  • 18. Matching  Searching and matching records within and across the parsed, corrected and standardized data based on predefined business rules to eliminate duplications.  Examples include identifying similar names and addresses.
  • 19. Consolidating • Analyzing and identifying relationships between matched records and consolidating/merging them into ONE representation.
  • 20. II. Data Transformation  Transforms the data in accordance with the business rules and standards that have been established  Example include: format changes, deduplication, splitting up fields, replacement of codes, derived values, and aggregates
  • 21. III. Data Loading  Data are physically moved to the data warehouse  The loading takes place within a “load window”  The trend is to near real time updates of the data warehouse as the warehouse is increasingly used for operational applications
  • 22. For a Successful Warehouse  From day one establish that warehousing is a joint user/builder project  Establish that maintaining data quality will be an ONGOING joint user/builder responsibility  Train the users one step at a time  Consider doing a high level corporate data model in no more than three weeks  Look closely at the data extracting, cleaning, and loading tools
  • 23. Cont..  Determine a plan to test the integrity of the data in the warehouse  From the start get warehouse users in the habit of 'testing' complex queries  Coordinate system roll-out with network administration personnel  Implement a user accessible automated directory to information stored in the warehouse
  • 24. Data Warehouse Pitfalls  Many warehouse end users will be trained and never or seldom apply their training  Large scale data warehousing can become an exercise in data homogenizing  Loading information only because it is available  Providing no maintenance to the data warehouse