SlideShare uma empresa Scribd logo
1 de 26
By,
S. Moni Sindhu
 Collection of conceptual tools for describing data, data
relationships, data semantics and consistency
constraint.
 Conceptual representation of data structures required
for database
 Model for data management where the
databases are developed according to user's
preferences, in order to be used for specific
types of retrievals.
 Multidimensional database (MDB) is mainly
optimized for data warehouse and online
analytical processing (OLAP) applications
 Multidimensional data-base technology is a
key factor in the interactive analysis of large
amounts of data for decision-making
purposes
 MDB mainly useful for sales and marketing
applications that involve time series.
 Enables interactive analyses of large amounts
of data for decision-making purposes
 Rapidly process the data in the database so
that answers can be generated quickly.
 Provides “just-in-time” information for
effective decision-making in a successful
OLAP application
 View data as multidimensional cubes , which
have been particularly well suited for data
analyses
 Enforces simplicity
 Data Cube Model
 Star Schema Model
 Snow Flake Schema Model
Fact Constellations Schema Model
(Global Schema)
 Data is grouped or combined together in
multidimensional matrices called Data Cubes.
 In two Dimension :-
row & column or products.
 In three Dimension :-
one regions, products and fiscal quarters.
 data cubes have categories of data called
dimensions and measures.
 measure
◦ represents some fact (or number) such as cost or
units of service.
 dimension
◦ represents descriptive categories of data such as
time or location.
 Slicing :
Refers to two- dimensional page selected
from the cube.
 Dicing :
Dicing provides you the smallest available
slice.
Define a sub-cube of the original space.
 Rotation :
Rotating changes the dimensional orientation
of the report from the cube data.
Slicing Dicing
Rotation
 It is the simplest form of data warehousing
schema.
 It consists one large central table (fact)
containing the bulk of data and a set of
smaller dimension tables one for each
dimension .
 Its entity relationship diagram between
dimensions and fact table resembles a star
where one fact table is connected to multiple
dimensions or table.
 It is difficult from a star schema .
 In this dimensional table are organized into
hierarchy by normalization them.
 The Snow Flake Schema is represented by
centralized fact table which are connected to
multiple dimensions.
 It is a set of fact tables that shares some
dimensional tables.
 It limits the possible queries for the data
warehouse.
multi dimensional data model

Mais conteúdo relacionado

Mais procurados

Query processing and optimization (updated)
Query processing and optimization (updated)Query processing and optimization (updated)
Query processing and optimization (updated)Ravinder Kamboj
 
Data cube computation
Data cube computationData cube computation
Data cube computationRashmi Sheikh
 
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALASaikiran Panjala
 
Multidimensional data models
Multidimensional data  modelsMultidimensional data  models
Multidimensional data models774474
 
Data mining & data warehousing (ppt)
Data mining & data warehousing (ppt)Data mining & data warehousing (ppt)
Data mining & data warehousing (ppt)Harish Chand
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional ModelingSunita Sahu
 
Spatial data mining
Spatial data miningSpatial data mining
Spatial data miningMITS Gwalior
 
OLAP OnLine Analytical Processing
OLAP OnLine Analytical ProcessingOLAP OnLine Analytical Processing
OLAP OnLine Analytical ProcessingWalid Elbadawy
 
Data warehousing and data mart
Data warehousing and data martData warehousing and data mart
Data warehousing and data martAmit Sarkar
 
Mining Frequent Patterns, Association and Correlations
Mining Frequent Patterns, Association and CorrelationsMining Frequent Patterns, Association and Correlations
Mining Frequent Patterns, Association and CorrelationsJustin Cletus
 
Major issues in data mining
Major issues in data miningMajor issues in data mining
Major issues in data miningSlideshare
 

Mais procurados (20)

Query processing and optimization (updated)
Query processing and optimization (updated)Query processing and optimization (updated)
Query processing and optimization (updated)
 
Data warehouse
Data warehouse Data warehouse
Data warehouse
 
Data cubes
Data cubesData cubes
Data cubes
 
Data cube computation
Data cube computationData cube computation
Data cube computation
 
3. mining frequent patterns
3. mining frequent patterns3. mining frequent patterns
3. mining frequent patterns
 
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
 
Multidimensional data models
Multidimensional data  modelsMultidimensional data  models
Multidimensional data models
 
Data mining & data warehousing (ppt)
Data mining & data warehousing (ppt)Data mining & data warehousing (ppt)
Data mining & data warehousing (ppt)
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional Modeling
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Spatial data mining
Spatial data miningSpatial data mining
Spatial data mining
 
OLAP OnLine Analytical Processing
OLAP OnLine Analytical ProcessingOLAP OnLine Analytical Processing
OLAP OnLine Analytical Processing
 
Data warehousing and data mart
Data warehousing and data martData warehousing and data mart
Data warehousing and data mart
 
Mining Frequent Patterns, Association and Correlations
Mining Frequent Patterns, Association and CorrelationsMining Frequent Patterns, Association and Correlations
Mining Frequent Patterns, Association and Correlations
 
Parallel Database
Parallel DatabaseParallel Database
Parallel Database
 
Data mining primitives
Data mining primitivesData mining primitives
Data mining primitives
 
DATA WAREHOUSING AND DATA MINING
DATA WAREHOUSING AND DATA MININGDATA WAREHOUSING AND DATA MINING
DATA WAREHOUSING AND DATA MINING
 
Major issues in data mining
Major issues in data miningMajor issues in data mining
Major issues in data mining
 
Big Data Ecosystem
Big Data EcosystemBig Data Ecosystem
Big Data Ecosystem
 
Star schema
Star schemaStar schema
Star schema
 

Destaque

Multidimentional data model
Multidimentional data modelMultidimentional data model
Multidimentional data modeljagdish_93
 
Multi dimensional modeling
Multi dimensional modelingMulti dimensional modeling
Multi dimensional modelingnoviari sugianto
 
Zackman frame work
Zackman frame workZackman frame work
Zackman frame workganblues
 
Transactional database
Transactional database Transactional database
Transactional database Ahsan Abbasi
 
Dimensional Fact Model @ BI Academy Launch
Dimensional Fact Model @ BI Academy LaunchDimensional Fact Model @ BI Academy Launch
Dimensional Fact Model @ BI Academy Launchcaccio
 
Informatica Designer Module
Informatica Designer ModuleInformatica Designer Module
Informatica Designer Moduleganblues
 
Why create a Data Mart with Dimensional Fact Model
Why create a Data Mart with Dimensional Fact ModelWhy create a Data Mart with Dimensional Fact Model
Why create a Data Mart with Dimensional Fact Modelcaccio
 
Informatica Server Manager
Informatica Server ManagerInformatica Server Manager
Informatica Server Managerganblues
 
Data Warehouses and Multi-Dimensional Data Analysis
Data Warehouses and Multi-Dimensional Data AnalysisData Warehouses and Multi-Dimensional Data Analysis
Data Warehouses and Multi-Dimensional Data AnalysisRaimonds Simanovskis
 
Informatica Power Center 7.1
Informatica Power Center 7.1Informatica Power Center 7.1
Informatica Power Center 7.1ganblues
 
Business Intelligence Data Warehouse System
Business Intelligence Data Warehouse SystemBusiness Intelligence Data Warehouse System
Business Intelligence Data Warehouse SystemKiran kumar
 
Data warehouse usage in retail sector
Data warehouse usage in retail sector Data warehouse usage in retail sector
Data warehouse usage in retail sector Santho Sh
 
Informatica student meterial
Informatica student meterialInformatica student meterial
Informatica student meterialSunil Kotthakota
 
Pantaloons Shipra Mall ppt
Pantaloons Shipra Mall pptPantaloons Shipra Mall ppt
Pantaloons Shipra Mall pptRupali Singh
 
How Committed Content Marketers Get Real Results
How Committed Content Marketers Get Real ResultsHow Committed Content Marketers Get Real Results
How Committed Content Marketers Get Real ResultsTomorrow People
 
Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...
Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...
Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...SIBM Bangalore
 

Destaque (20)

Multidimentional data model
Multidimentional data modelMultidimentional data model
Multidimentional data model
 
Multi dimensional modeling
Multi dimensional modelingMulti dimensional modeling
Multi dimensional modeling
 
Zackman frame work
Zackman frame workZackman frame work
Zackman frame work
 
Transactional database
Transactional database Transactional database
Transactional database
 
Dimensional Fact Model @ BI Academy Launch
Dimensional Fact Model @ BI Academy LaunchDimensional Fact Model @ BI Academy Launch
Dimensional Fact Model @ BI Academy Launch
 
Informatica Designer Module
Informatica Designer ModuleInformatica Designer Module
Informatica Designer Module
 
Why create a Data Mart with Dimensional Fact Model
Why create a Data Mart with Dimensional Fact ModelWhy create a Data Mart with Dimensional Fact Model
Why create a Data Mart with Dimensional Fact Model
 
Informatica Server Manager
Informatica Server ManagerInformatica Server Manager
Informatica Server Manager
 
Data Warehouses and Multi-Dimensional Data Analysis
Data Warehouses and Multi-Dimensional Data AnalysisData Warehouses and Multi-Dimensional Data Analysis
Data Warehouses and Multi-Dimensional Data Analysis
 
Informatica Power Center 7.1
Informatica Power Center 7.1Informatica Power Center 7.1
Informatica Power Center 7.1
 
Business Intelligence Data Warehouse System
Business Intelligence Data Warehouse SystemBusiness Intelligence Data Warehouse System
Business Intelligence Data Warehouse System
 
Data warehouse usage in retail sector
Data warehouse usage in retail sector Data warehouse usage in retail sector
Data warehouse usage in retail sector
 
sip ppt
sip pptsip ppt
sip ppt
 
PPT PANTALOONS
PPT PANTALOONSPPT PANTALOONS
PPT PANTALOONS
 
Master Degree Program in Fashion Merchandising & Retail Management
Master Degree Program in Fashion Merchandising & Retail ManagementMaster Degree Program in Fashion Merchandising & Retail Management
Master Degree Program in Fashion Merchandising & Retail Management
 
Cloudempiere WMS productsheet
Cloudempiere WMS productsheetCloudempiere WMS productsheet
Cloudempiere WMS productsheet
 
Informatica student meterial
Informatica student meterialInformatica student meterial
Informatica student meterial
 
Pantaloons Shipra Mall ppt
Pantaloons Shipra Mall pptPantaloons Shipra Mall ppt
Pantaloons Shipra Mall ppt
 
How Committed Content Marketers Get Real Results
How Committed Content Marketers Get Real ResultsHow Committed Content Marketers Get Real Results
How Committed Content Marketers Get Real Results
 
Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...
Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...
Retail & Warehouse transactions, design and analytic for FMCG, Grocery and fr...
 

Semelhante a multi dimensional data model

11666 Bitt I 2008 Lect3
11666 Bitt I 2008 Lect311666 Bitt I 2008 Lect3
11666 Bitt I 2008 Lect3ambujm
 
11667 Bitt I 2008 Lect4
11667 Bitt I 2008 Lect411667 Bitt I 2008 Lect4
11667 Bitt I 2008 Lect4ambujm
 
Dataware house multidimensionalmodelling
Dataware house multidimensionalmodellingDataware house multidimensionalmodelling
Dataware house multidimensionalmodellingmeghu123
 
Business Intelligence and Multidimensional Database
Business Intelligence and Multidimensional DatabaseBusiness Intelligence and Multidimensional Database
Business Intelligence and Multidimensional DatabaseRussel Chowdhury
 
OLAP Cubes in Datawarehousing
OLAP Cubes in DatawarehousingOLAP Cubes in Datawarehousing
OLAP Cubes in DatawarehousingPrithwis Mukerjee
 
MSBI and Data WareHouse techniques by Quontra
MSBI and Data WareHouse techniques by Quontra MSBI and Data WareHouse techniques by Quontra
MSBI and Data WareHouse techniques by Quontra QUONTRASOLUTIONS
 
Technical Research Document - Anurag
Technical Research Document - AnuragTechnical Research Document - Anurag
Technical Research Document - Anuraganuragrajandekar
 
Multidimensional Database Design & Architecture
Multidimensional Database Design & ArchitectureMultidimensional Database Design & Architecture
Multidimensional Database Design & Architecturehasanshan
 
SALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCE
SALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCESALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCE
SALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCEcscpconf
 
Data mining 3 - Data Models and Data Warehouse Design (cheat sheet - printable)
Data mining  3 - Data Models and Data Warehouse Design (cheat sheet - printable)Data mining  3 - Data Models and Data Warehouse Design (cheat sheet - printable)
Data mining 3 - Data Models and Data Warehouse Design (cheat sheet - printable)yesheeka
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processingVijayasankariS
 
Data Warehousing AWS 12345
Data Warehousing AWS 12345Data Warehousing AWS 12345
Data Warehousing AWS 12345AkhilSinghal21
 

Semelhante a multi dimensional data model (20)

Data warehouse logical design
Data warehouse logical designData warehouse logical design
Data warehouse logical design
 
Data Warehousing
Data WarehousingData Warehousing
Data Warehousing
 
Data Warehouse Designing: Dimensional Modelling and E-R Modelling
Data Warehouse Designing: Dimensional Modelling and E-R ModellingData Warehouse Designing: Dimensional Modelling and E-R Modelling
Data Warehouse Designing: Dimensional Modelling and E-R Modelling
 
Date Analysis .pdf
Date Analysis .pdfDate Analysis .pdf
Date Analysis .pdf
 
11666 Bitt I 2008 Lect3
11666 Bitt I 2008 Lect311666 Bitt I 2008 Lect3
11666 Bitt I 2008 Lect3
 
Data Warehouse_Architecture.pptx
Data Warehouse_Architecture.pptxData Warehouse_Architecture.pptx
Data Warehouse_Architecture.pptx
 
11667 Bitt I 2008 Lect4
11667 Bitt I 2008 Lect411667 Bitt I 2008 Lect4
11667 Bitt I 2008 Lect4
 
My2dw
My2dwMy2dw
My2dw
 
Dataware house multidimensionalmodelling
Dataware house multidimensionalmodellingDataware house multidimensionalmodelling
Dataware house multidimensionalmodelling
 
Business Intelligence and Multidimensional Database
Business Intelligence and Multidimensional DatabaseBusiness Intelligence and Multidimensional Database
Business Intelligence and Multidimensional Database
 
Cs1011 dw-dm-1
Cs1011 dw-dm-1Cs1011 dw-dm-1
Cs1011 dw-dm-1
 
OLAP Cubes in Datawarehousing
OLAP Cubes in DatawarehousingOLAP Cubes in Datawarehousing
OLAP Cubes in Datawarehousing
 
MSBI and Data WareHouse techniques by Quontra
MSBI and Data WareHouse techniques by Quontra MSBI and Data WareHouse techniques by Quontra
MSBI and Data WareHouse techniques by Quontra
 
Technical Research Document - Anurag
Technical Research Document - AnuragTechnical Research Document - Anurag
Technical Research Document - Anurag
 
Multidimensional Database Design & Architecture
Multidimensional Database Design & ArchitectureMultidimensional Database Design & Architecture
Multidimensional Database Design & Architecture
 
SALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCE
SALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCESALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCE
SALES BASED DATA EXTRACTION FOR BUSINESS INTELLIGENCE
 
Data mining 3 - Data Models and Data Warehouse Design (cheat sheet - printable)
Data mining  3 - Data Models and Data Warehouse Design (cheat sheet - printable)Data mining  3 - Data Models and Data Warehouse Design (cheat sheet - printable)
Data mining 3 - Data Models and Data Warehouse Design (cheat sheet - printable)
 
Data warehousing and online analytical processing
Data warehousing and online analytical processingData warehousing and online analytical processing
Data warehousing and online analytical processing
 
Dw concepts
Dw conceptsDw concepts
Dw concepts
 
Data Warehousing AWS 12345
Data Warehousing AWS 12345Data Warehousing AWS 12345
Data Warehousing AWS 12345
 

Último

Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxHimangsuNath
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfblazblazml
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectBoston Institute of Analytics
 
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBoston Institute of Analytics
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Cathrine Wilhelmsen
 
Real-Time AI Streaming - AI Max Princeton
Real-Time AI  Streaming - AI Max PrincetonReal-Time AI  Streaming - AI Max Princeton
Real-Time AI Streaming - AI Max PrincetonTimothy Spann
 
Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Seán Kennedy
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Boston Institute of Analytics
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxaleedritatuxx
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...Amil Baba Dawood bangali
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Thomas Poetter
 
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis modelDecoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis modelBoston Institute of Analytics
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxSimranPal17
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataTecnoIncentive
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data VisualizationKianJazayeri1
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksdeepakthakur548787
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our WorldEduminds Learning
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Seán Kennedy
 
Rithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfRithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfrahulyadav957181
 

Último (20)

Insurance Churn Prediction Data Analysis Project
Insurance Churn Prediction Data Analysis ProjectInsurance Churn Prediction Data Analysis Project
Insurance Churn Prediction Data Analysis Project
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptx
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis Project
 
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)
 
Real-Time AI Streaming - AI Max Princeton
Real-Time AI  Streaming - AI Max PrincetonReal-Time AI  Streaming - AI Max Princeton
Real-Time AI Streaming - AI Max Princeton
 
Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
 
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis modelDecoding Movie Sentiments: Analyzing Reviews with Data Analysis model
Decoding Movie Sentiments: Analyzing Reviews with Data Analysis model
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptx
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded data
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data Visualization
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing works
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our World
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...
 
Rithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfRithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdf
 

multi dimensional data model

  • 2.
  • 3.  Collection of conceptual tools for describing data, data relationships, data semantics and consistency constraint.  Conceptual representation of data structures required for database
  • 4.
  • 5.  Model for data management where the databases are developed according to user's preferences, in order to be used for specific types of retrievals.  Multidimensional database (MDB) is mainly optimized for data warehouse and online analytical processing (OLAP) applications
  • 6.  Multidimensional data-base technology is a key factor in the interactive analysis of large amounts of data for decision-making purposes  MDB mainly useful for sales and marketing applications that involve time series.
  • 7.
  • 8.  Enables interactive analyses of large amounts of data for decision-making purposes  Rapidly process the data in the database so that answers can be generated quickly.  Provides “just-in-time” information for effective decision-making in a successful OLAP application  View data as multidimensional cubes , which have been particularly well suited for data analyses  Enforces simplicity
  • 9.
  • 10.
  • 11.  Data Cube Model  Star Schema Model  Snow Flake Schema Model Fact Constellations Schema Model (Global Schema)
  • 12.
  • 13.  Data is grouped or combined together in multidimensional matrices called Data Cubes.  In two Dimension :- row & column or products.  In three Dimension :- one regions, products and fiscal quarters.
  • 14.  data cubes have categories of data called dimensions and measures.  measure ◦ represents some fact (or number) such as cost or units of service.  dimension ◦ represents descriptive categories of data such as time or location.
  • 15.
  • 16.  Slicing : Refers to two- dimensional page selected from the cube.  Dicing : Dicing provides you the smallest available slice. Define a sub-cube of the original space.  Rotation : Rotating changes the dimensional orientation of the report from the cube data.
  • 18.
  • 19.  It is the simplest form of data warehousing schema.  It consists one large central table (fact) containing the bulk of data and a set of smaller dimension tables one for each dimension .  Its entity relationship diagram between dimensions and fact table resembles a star where one fact table is connected to multiple dimensions or table.
  • 20.
  • 21.
  • 22.  It is difficult from a star schema .  In this dimensional table are organized into hierarchy by normalization them.  The Snow Flake Schema is represented by centralized fact table which are connected to multiple dimensions.
  • 23.
  • 24.
  • 25.  It is a set of fact tables that shares some dimensional tables.  It limits the possible queries for the data warehouse.

Notas do Editor

  1. Helps Analysts to know which business measures they are interested in examining, which dimensions and attributes make the data meaningful, and how the dimensions of their business are organized into levels and hierarchies.