SlideShare uma empresa Scribd logo
1 de 96
DATA WAREHOUSING   AND DATA MINING M.Mageshwari,Lecturer M.S.P.V.L Polytechnic College
Course Overview ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
0. Introduction ,[object Object],[object Object],[object Object],[object Object]
A producer wants to know…. Which are our  lowest/highest margin  customers ? Who are my customers  and what products  are they buying? Which customers  are most likely to go  to the competition ?   What impact will  new products/services  have on revenue  and margins? What product prom- -otions have the biggest  impact on revenue? What is the most  effective distribution  channel?
Data, Data everywhere yet ... ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
What is a Data Warehouse? ,[object Object]
What are the users saying... ,[object Object],[object Object],[object Object],[object Object]
What is Data Warehousing? ,[object Object],Data Information
Evolution ,[object Object],[object Object],[object Object],[object Object],[object Object]
Data Warehouse Structure ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Time is  part of  key of  each table
Definition of DSS  ,[object Object],[object Object]
Definition of EIS  ,[object Object],[object Object]
Evolution ,[object Object],[object Object],[object Object],[object Object]
Data Warehousing --  It is a process ,[object Object],[object Object]
Characteristics of Data Warehouse ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
subject-oriented ,[object Object],[object Object]
Integrated: ,[object Object],[object Object]
Time Variant ,[object Object],[object Object]
Non Volatile ,[object Object]
Explorers, Farmers and Tourists Explorers:  Seek out the unknown and previously unsuspected rewards hiding in the detailed data Farmers:  Harvest information from known access paths Tourists:  Browse information about Tourists
Application-Orientation vs. Subject-Orientation Application-Orientation Operational Database Loans Credit  Card Trust Savings Subject-Orientation Data Warehouse Customer Vendor Product Activity
Functioning of Data warehousing Data Source cleaning Transformation Data Warehouse New Update
Collection data ,[object Object],[object Object],[object Object]
Integration ,[object Object],[object Object]
Star Schema ,[object Object],[object Object],T i m e p r o d c u s t c i t y f a c t date, custno, prodno, cityname,  ...
Snowflake schema ,[object Object],[object Object],T i m e p r o d c u s t c i t y f a c t date, custno, prodno, cityname,  ... r e g i o n
Data transformation and cleaning ,[object Object],[object Object]
Update of data  ,[object Object],[object Object]
Summarizing data ,[object Object],[object Object]
Data Warehouse for Decision Support & OLAP ,[object Object],[object Object],[object Object],[object Object]
Decision Support ,[object Object],[object Object],[object Object],[object Object],[object Object]
OLAP(Online analytical processing) ,[object Object],[object Object]
OLAP DATA WAREHOUSE OLAP SERVER FRONT END TOOL User Result Result set Request SQL
OLAP OPERATION on the multidimensional data ,[object Object],[object Object],[object Object],[object Object]
TYPES OF OLAP ,[object Object],[object Object]
Multi-dimensional Data ,[object Object],Dimensions:  Product, Region, Time Hierarchical summarization paths Product  Region  Time Industry  Country  Year Category  Region  Quarter  Product  City  Month  Week   Office  Day Month 1  2 3  4  7 6  5  Product Toothpaste  Juice Cola Milk  Cream Soap  Region W S  N
Data Warehouse Architecture Data Warehouse  Engine Optimized Loader Extraction Cleansing Analyze Query Metadata Repository Relational Databases Legacy Data Purchased  Data ERP Systems
Architecture of data warehousing External data Data Acquisition Data Manager Warehouse data External data Data Dictionary Information Directiory Warehouse data Middleware Design Management Data Access
Architecture of
Design Component ,[object Object],[object Object]
Types of design ,[object Object],[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object]
Data Manager Component ,[object Object],[object Object],[object Object]
Management Component ,[object Object],[object Object],[object Object],[object Object],[object Object]
Data Acquisition Component ,[object Object],[object Object]
The operation performed during data clean up ,[object Object],[object Object],[object Object],[object Object]
The operation performed on the data for enhancement are ,[object Object],[object Object],[object Object]
Information directory Component ,[object Object],[object Object],[object Object],[object Object]
Middleware Component ,[object Object],[object Object],[object Object]
Data mart ,[object Object],[object Object],[object Object]
Different between data warehouse and data mart Data warehouse Data Mart Data mart is therefore useful for small organizations with very few departments data warehousing is suitable to support an entire corporate environment. If you listen to some vendors, you may be left thinking that building data warehouses is a waste of time.  data mart vendor that tells you this are looking out for their own best interests.  This supports the entire information requirement of an organization. This support the information requirement of a department in an organization This has large model, wider implementation, large data and more number of users. This has small data model, shorter implementation, less data and some users.
Advantages of data mart ,[object Object],[object Object],[object Object],[object Object]
Data warehousing life cycle Design Enhance prototype Operate deploy
Data Modeling(Multi-dimensional Database) ,[object Object],Dimensions:  Product, Region, periods Hierarchical summarization paths Product  Region  Period Industry  Country  Year Category  Region  Quarter  Product  City  Month  Week   Office  Day Month 1  2 3  4  7 6  5  Product Toothpaste  Juice Cola Milk  Cream Soap  Region W S  N
Building of data warehouse ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Data warehouse and views ,[object Object],[object Object],[object Object]
Different between data warehouse and views Data warehouse Views Data warehouse is a permanent storage data. Views are created from warehouse data when needed and it is not permanent Data warehouse are multidimensional Views are relational Data warehouse can be indexed to maximize performance. Views cannot be indexed. Data warehouse provides specific support to a functionality Views cannot give specific support to a functionality. Data warehouse provide large amount of data. Views are created  by extracting minimum data from data warehouse.
Data warehouse Future ,[object Object],[object Object],[object Object]
Data Mining ,[object Object]
Data Mining (cont.)
Data Mining works with Warehouse Data ,[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object],Data Mining Motivation PHOTO:  LUCINDA DOUGLAS-MENZIES PHOTO:  HULTON-DEUTSCH COLL
Application Areas Industry Application Finance Credit Card Analysis Insurance Claims, Fraud Analysis Telecommunication Call record analysis Consumer goods promotion analysis Data Service providers Value added data Utilities Power usage analysis
Data Mining in Use ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
What is data mining technology ,[object Object],[object Object],data information
[object Object],Cleaning and Integration Databases Data Warehouse Flat Files Patterns Knowledge Selection and transformation Data Mining
The various step ,[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object]
Loading the Warehouse Cleaning the data before it is loaded
Data Integration Across Sources Trust Credit card Savings Loans Same data  different name Different data  Same name Data found here  nowhere else Different keys same data
Data Transformation Example encoding unit field appl A - balance appl B - bal appl C - currbal appl D - balcurr appl A - pipeline - cm appl B - pipeline - in appl C - pipeline - feet appl D - pipeline - yds appl A - m,f appl B - 1,0 appl C - x,y appl D - male, female Data Warehouse
Structuring/Modeling Issues
Data Warehouse vs. Data Marts
From the Data Warehouse to Data Marts Departmentally Structured Individually Structured Data Warehouse Organizationally Structured Less More History Normalized Detailed Data Information
Data Warehouse and Data Marts OLAP Data Mart Lightly summarized Departmentally structured Organizationally structured Atomic Detailed Data Warehouse Data
Characteristics of the Departmental Data Mart ,[object Object],[object Object],[object Object],[object Object],[object Object]
Techniques for Creating Departmental Data Mart ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Sales Mktg. Finance
Data Mart Centric Data Marts Data Sources Data Warehouse
True Warehouse Data Marts Data Sources Data Warehouse
II.  On-Line Analytical Processing (OLAP) Making Decision Support Possible
What Is OLAP? ,[object Object],[object Object],[object Object],[object Object],[object Object]
The OLAP Market  ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Strengths of OLAP ,[object Object],[object Object],[object Object],[object Object],[object Object]
OLAP Is FASMI ,[object Object],[object Object],[object Object],[object Object],[object Object]
Data Cube Lattice ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Visualizing Neighbors is simpler
A Visual Operation:  Pivot (Rotate) 10 47 30 12 Juice Cola Milk  Cream NY LA SF 3/1  3/2  3/3 3/4 Date Month Region Product
“ Slicing and Dicing” Product Sales Channel Regions Retail Direct Special Household Telecomm Video Audio India Far East Europe The Telecomm Slice
Roll-up and Drill Down ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Roll Up Higher Level of Aggregation Low-level Details Drill-Down
Nature of OLAP Analysis ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Organizationally Structured Data ,[object Object],marketing manufacturing sales finance
Multidimensional Spreadsheets ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
OLAP Operations © Prentice Hall Single Cell Multiple Cells Slice Dice Roll Up Drill Down
Relational OLAP:  3 Tier DSS Store atomic data in industry standard RDBMS. Generate SQL execution plans in the ROLAP engine to obtain OLAP functionality. Obtain multi-dimensional reports from the DSS Client. Data Warehouse ROLAP Engine Decision Support Client Database Layer Application Logic Layer Presentation Layer
MD-OLAP: 2 Tier DSS MDDB Engine MDDB Engine Decision Support Client Database Layer Application Logic Layer Presentation Layer Store atomic data in a proprietary data structure (MDDB), pre-calculate as many outcomes as possible, obtain OLAP functionality via proprietary algorithms running against this data. Obtain multi-dimensional reports from the DSS Client.
MSPVL Polytechnic College Pavoorchatram

Mais conteúdo relacionado

Mais procurados

Data Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | Edureka
Data Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | EdurekaData Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | Edureka
Data Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | EdurekaEdureka!
 
Data warehouse 21 snowflake schema
Data warehouse 21 snowflake schemaData warehouse 21 snowflake schema
Data warehouse 21 snowflake schemaVaibhav Khanna
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecturepcherukumalla
 
Introduction to structured query language (sql)
Introduction to structured query language (sql)Introduction to structured query language (sql)
Introduction to structured query language (sql)Dhani Ahmad
 
Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewJohn Bao Vuu
 
Dw & etl concepts
Dw & etl conceptsDw & etl concepts
Dw & etl conceptsjeshocarme
 
Database fundamentals(database)
Database fundamentals(database)Database fundamentals(database)
Database fundamentals(database)welcometofacebook
 
Complete dbms notes
Complete dbms notesComplete dbms notes
Complete dbms notesTanya Makkar
 
Requirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - PresentationRequirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - PresentationVicki McCracken
 
Introduction to Business Intelligence
Introduction to Business IntelligenceIntroduction to Business Intelligence
Introduction to Business IntelligenceAlmog Ramrajkar
 
Knowledge Discovery and Data Mining
Knowledge Discovery and Data MiningKnowledge Discovery and Data Mining
Knowledge Discovery and Data MiningAmritanshu Mehra
 

Mais procurados (20)

Data Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | Edureka
Data Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | EdurekaData Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | Edureka
Data Warehouse Concepts | Data Warehouse Tutorial | Data Warehousing | Edureka
 
Data Engineering Basics
Data Engineering BasicsData Engineering Basics
Data Engineering Basics
 
Data warehouse 21 snowflake schema
Data warehouse 21 snowflake schemaData warehouse 21 snowflake schema
Data warehouse 21 snowflake schema
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
 
Introduction to structured query language (sql)
Introduction to structured query language (sql)Introduction to structured query language (sql)
Introduction to structured query language (sql)
 
Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework Overview
 
Dw & etl concepts
Dw & etl conceptsDw & etl concepts
Dw & etl concepts
 
Ppt
PptPpt
Ppt
 
Data Governance
Data GovernanceData Governance
Data Governance
 
Database fundamentals(database)
Database fundamentals(database)Database fundamentals(database)
Database fundamentals(database)
 
OLTP vs OLAP
OLTP vs OLAPOLTP vs OLAP
OLTP vs OLAP
 
Lecture 01 mis
Lecture 01 misLecture 01 mis
Lecture 01 mis
 
Complete dbms notes
Complete dbms notesComplete dbms notes
Complete dbms notes
 
Requirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - PresentationRequirements for a Master Data Management (MDM) Solution - Presentation
Requirements for a Master Data Management (MDM) Solution - Presentation
 
Data Base Management System
Data Base Management SystemData Base Management System
Data Base Management System
 
Introduction to Business Intelligence
Introduction to Business IntelligenceIntroduction to Business Intelligence
Introduction to Business Intelligence
 
Knowledge Discovery and Data Mining
Knowledge Discovery and Data MiningKnowledge Discovery and Data Mining
Knowledge Discovery and Data Mining
 
Data mining notes
Data mining notesData mining notes
Data mining notes
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Foundation Of Information Systems In Business
Foundation Of Information Systems In BusinessFoundation Of Information Systems In Business
Foundation Of Information Systems In Business
 

Destaque

Destaque (10)

Marketing Pipeline Intelligence: A Dimensional Model
Marketing Pipeline Intelligence: A Dimensional ModelMarketing Pipeline Intelligence: A Dimensional Model
Marketing Pipeline Intelligence: A Dimensional Model
 
11 Database Concepts
11 Database Concepts11 Database Concepts
11 Database Concepts
 
14 e commerce,water pollution,positive and negative effect of technology
14 e commerce,water pollution,positive and negative effect of technology14 e commerce,water pollution,positive and negative effect of technology
14 e commerce,water pollution,positive and negative effect of technology
 
Internet threats and its effect on E-commerce
Internet threats and its effect on E-commerceInternet threats and its effect on E-commerce
Internet threats and its effect on E-commerce
 
Database management system chapter12
Database management system chapter12Database management system chapter12
Database management system chapter12
 
Internet & Its Impact in E-Commerce
Internet & Its Impact in E-CommerceInternet & Its Impact in E-Commerce
Internet & Its Impact in E-Commerce
 
8 E-Commerce
8 E-Commerce8 E-Commerce
8 E-Commerce
 
Chapter 1 Fundamentals of Database Management System
Chapter 1 Fundamentals of Database Management SystemChapter 1 Fundamentals of Database Management System
Chapter 1 Fundamentals of Database Management System
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
E-COMMERCE
E-COMMERCEE-COMMERCE
E-COMMERCE
 

Semelhante a Datawarehousing

Dataware housing
Dataware housingDataware housing
Dataware housingwork
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSINGKing Julian
 
Data warehouse
Data warehouseData warehouse
Data warehouseMR Z
 
Datawarehouse Overview
Datawarehouse OverviewDatawarehouse Overview
Datawarehouse Overviewashok kumar
 
Data Warehousing Datamining Concepts
Data Warehousing Datamining ConceptsData Warehousing Datamining Concepts
Data Warehousing Datamining Conceptsraulmisir
 
Gulabs Ppt On Data Warehousing And Mining
Gulabs Ppt On Data Warehousing And MiningGulabs Ppt On Data Warehousing And Mining
Gulabs Ppt On Data Warehousing And Mininggulab sharma
 
dw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptdw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptDougSchoemaker
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introductionShivmohan Purohit
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introductionguest7b34c2
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introductionShivmohan Purohit
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysWhat is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysNEWYORKSYS-IT SOLUTIONS
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.pptPalaniKumarR2
 
DATAWAREHOUSE MAIn under data mining for
DATAWAREHOUSE MAIn under data mining forDATAWAREHOUSE MAIn under data mining for
DATAWAREHOUSE MAIn under data mining forAyushMeraki1
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousingsumit621
 
Date warehousing concepts
Date warehousing conceptsDate warehousing concepts
Date warehousing conceptspcherukumalla
 
UNIT - 1 : Part 1: Data Warehousing and Data Mining
UNIT - 1 : Part 1: Data Warehousing and Data MiningUNIT - 1 : Part 1: Data Warehousing and Data Mining
UNIT - 1 : Part 1: Data Warehousing and Data MiningNandakumar P
 

Semelhante a Datawarehousing (20)

Dataware housing
Dataware housingDataware housing
Dataware housing
 
IT Ready - DW: 1st Day
IT Ready - DW: 1st Day IT Ready - DW: 1st Day
IT Ready - DW: 1st Day
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Datawarehouse Overview
Datawarehouse OverviewDatawarehouse Overview
Datawarehouse Overview
 
Data Warehousing Datamining Concepts
Data Warehousing Datamining ConceptsData Warehousing Datamining Concepts
Data Warehousing Datamining Concepts
 
Gulabs Ppt On Data Warehousing And Mining
Gulabs Ppt On Data Warehousing And MiningGulabs Ppt On Data Warehousing And Mining
Gulabs Ppt On Data Warehousing And Mining
 
dw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptdw_concepts_2_day_course.ppt
dw_concepts_2_day_course.ppt
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introduction
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introduction
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introduction
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ NewyorksysWhat is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
 
20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt20IT501_DWDM_PPT_Unit_I.ppt
20IT501_DWDM_PPT_Unit_I.ppt
 
DATAWAREHOUSE MAIn under data mining for
DATAWAREHOUSE MAIn under data mining forDATAWAREHOUSE MAIn under data mining for
DATAWAREHOUSE MAIn under data mining for
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousing
 
Date warehousing concepts
Date warehousing conceptsDate warehousing concepts
Date warehousing concepts
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
CTP Data Warehouse
CTP Data WarehouseCTP Data Warehouse
CTP Data Warehouse
 
UNIT - 1 : Part 1: Data Warehousing and Data Mining
UNIT - 1 : Part 1: Data Warehousing and Data MiningUNIT - 1 : Part 1: Data Warehousing and Data Mining
UNIT - 1 : Part 1: Data Warehousing and Data Mining
 

Último

Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxcallscotland1987
 
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in DelhiRussian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhikauryashika82
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.MaryamAhmad92
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptxMaritesTamaniVerdade
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17Celine George
 
Third Battle of Panipat detailed notes.pptx
Third Battle of Panipat detailed notes.pptxThird Battle of Panipat detailed notes.pptx
Third Battle of Panipat detailed notes.pptxAmita Gupta
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxAreebaZafar22
 
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxSKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxAmanpreet Kaur
 
Mixin Classes in Odoo 17 How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17  How to Extend Models Using Mixin ClassesMixin Classes in Odoo 17  How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17 How to Extend Models Using Mixin ClassesCeline George
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
PROCESS RECORDING FORMAT.docx
PROCESS      RECORDING        FORMAT.docxPROCESS      RECORDING        FORMAT.docx
PROCESS RECORDING FORMAT.docxPoojaSen20
 
ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701bronxfugly43
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfAdmir Softic
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxRamakrishna Reddy Bijjam
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introductionMaksud Ahmed
 
Magic bus Group work1and 2 (Team 3).pptx
Magic bus Group work1and 2 (Team 3).pptxMagic bus Group work1and 2 (Team 3).pptx
Magic bus Group work1and 2 (Team 3).pptxdhanalakshmis0310
 

Último (20)

Dyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptxDyslexia AI Workshop for Slideshare.pptx
Dyslexia AI Workshop for Slideshare.pptx
 
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in DelhiRussian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
2024-NATIONAL-LEARNING-CAMP-AND-OTHER.pptx
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17
 
Third Battle of Panipat detailed notes.pptx
Third Battle of Panipat detailed notes.pptxThird Battle of Panipat detailed notes.pptx
Third Battle of Panipat detailed notes.pptx
 
Asian American Pacific Islander Month DDSD 2024.pptx
Asian American Pacific Islander Month DDSD 2024.pptxAsian American Pacific Islander Month DDSD 2024.pptx
Asian American Pacific Islander Month DDSD 2024.pptx
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptx
 
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptxSKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
SKILL OF INTRODUCING THE LESSON MICRO SKILLS.pptx
 
Mixin Classes in Odoo 17 How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17  How to Extend Models Using Mixin ClassesMixin Classes in Odoo 17  How to Extend Models Using Mixin Classes
Mixin Classes in Odoo 17 How to Extend Models Using Mixin Classes
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
PROCESS RECORDING FORMAT.docx
PROCESS      RECORDING        FORMAT.docxPROCESS      RECORDING        FORMAT.docx
PROCESS RECORDING FORMAT.docx
 
ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701ComPTIA Overview | Comptia Security+ Book SY0-701
ComPTIA Overview | Comptia Security+ Book SY0-701
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docx
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Magic bus Group work1and 2 (Team 3).pptx
Magic bus Group work1and 2 (Team 3).pptxMagic bus Group work1and 2 (Team 3).pptx
Magic bus Group work1and 2 (Team 3).pptx
 

Datawarehousing

  • 1. DATA WAREHOUSING AND DATA MINING M.Mageshwari,Lecturer M.S.P.V.L Polytechnic College
  • 2.
  • 3.
  • 4. A producer wants to know…. Which are our lowest/highest margin customers ? Who are my customers and what products are they buying? Which customers are most likely to go to the competition ? What impact will new products/services have on revenue and margins? What product prom- -otions have the biggest impact on revenue? What is the most effective distribution channel?
  • 5.
  • 6.
  • 7.
  • 8.
  • 9.
  • 10.
  • 11.
  • 12.
  • 13.
  • 14.
  • 15.
  • 16.
  • 17.
  • 18.
  • 19.
  • 20. Explorers, Farmers and Tourists Explorers: Seek out the unknown and previously unsuspected rewards hiding in the detailed data Farmers: Harvest information from known access paths Tourists: Browse information about Tourists
  • 21. Application-Orientation vs. Subject-Orientation Application-Orientation Operational Database Loans Credit Card Trust Savings Subject-Orientation Data Warehouse Customer Vendor Product Activity
  • 22. Functioning of Data warehousing Data Source cleaning Transformation Data Warehouse New Update
  • 23.
  • 24.
  • 25.
  • 26.
  • 27.
  • 28.
  • 29.
  • 30.
  • 31.
  • 32.
  • 33. OLAP DATA WAREHOUSE OLAP SERVER FRONT END TOOL User Result Result set Request SQL
  • 34.
  • 35.
  • 36.
  • 37. Data Warehouse Architecture Data Warehouse Engine Optimized Loader Extraction Cleansing Analyze Query Metadata Repository Relational Databases Legacy Data Purchased Data ERP Systems
  • 38. Architecture of data warehousing External data Data Acquisition Data Manager Warehouse data External data Data Dictionary Information Directiory Warehouse data Middleware Design Management Data Access
  • 40.
  • 41.
  • 42.
  • 43.
  • 44.
  • 45.
  • 46.
  • 47.
  • 48.
  • 49.
  • 50.
  • 51. Different between data warehouse and data mart Data warehouse Data Mart Data mart is therefore useful for small organizations with very few departments data warehousing is suitable to support an entire corporate environment. If you listen to some vendors, you may be left thinking that building data warehouses is a waste of time. data mart vendor that tells you this are looking out for their own best interests. This supports the entire information requirement of an organization. This support the information requirement of a department in an organization This has large model, wider implementation, large data and more number of users. This has small data model, shorter implementation, less data and some users.
  • 52.
  • 53. Data warehousing life cycle Design Enhance prototype Operate deploy
  • 54.
  • 55.
  • 56.
  • 57. Different between data warehouse and views Data warehouse Views Data warehouse is a permanent storage data. Views are created from warehouse data when needed and it is not permanent Data warehouse are multidimensional Views are relational Data warehouse can be indexed to maximize performance. Views cannot be indexed. Data warehouse provides specific support to a functionality Views cannot give specific support to a functionality. Data warehouse provide large amount of data. Views are created by extracting minimum data from data warehouse.
  • 58.
  • 59.
  • 61.
  • 62.
  • 63. Application Areas Industry Application Finance Credit Card Analysis Insurance Claims, Fraud Analysis Telecommunication Call record analysis Consumer goods promotion analysis Data Service providers Value added data Utilities Power usage analysis
  • 64.
  • 65.
  • 66.
  • 67.
  • 68.
  • 69. Loading the Warehouse Cleaning the data before it is loaded
  • 70. Data Integration Across Sources Trust Credit card Savings Loans Same data different name Different data Same name Data found here nowhere else Different keys same data
  • 71. Data Transformation Example encoding unit field appl A - balance appl B - bal appl C - currbal appl D - balcurr appl A - pipeline - cm appl B - pipeline - in appl C - pipeline - feet appl D - pipeline - yds appl A - m,f appl B - 1,0 appl C - x,y appl D - male, female Data Warehouse
  • 73. Data Warehouse vs. Data Marts
  • 74. From the Data Warehouse to Data Marts Departmentally Structured Individually Structured Data Warehouse Organizationally Structured Less More History Normalized Detailed Data Information
  • 75. Data Warehouse and Data Marts OLAP Data Mart Lightly summarized Departmentally structured Organizationally structured Atomic Detailed Data Warehouse Data
  • 76.
  • 77.
  • 78. Data Mart Centric Data Marts Data Sources Data Warehouse
  • 79. True Warehouse Data Marts Data Sources Data Warehouse
  • 80. II. On-Line Analytical Processing (OLAP) Making Decision Support Possible
  • 81.
  • 82.
  • 83.
  • 84.
  • 85.
  • 87. A Visual Operation: Pivot (Rotate) 10 47 30 12 Juice Cola Milk Cream NY LA SF 3/1 3/2 3/3 3/4 Date Month Region Product
  • 88. “ Slicing and Dicing” Product Sales Channel Regions Retail Direct Special Household Telecomm Video Audio India Far East Europe The Telecomm Slice
  • 89.
  • 90.
  • 91.
  • 92.
  • 93. OLAP Operations © Prentice Hall Single Cell Multiple Cells Slice Dice Roll Up Drill Down
  • 94. Relational OLAP: 3 Tier DSS Store atomic data in industry standard RDBMS. Generate SQL execution plans in the ROLAP engine to obtain OLAP functionality. Obtain multi-dimensional reports from the DSS Client. Data Warehouse ROLAP Engine Decision Support Client Database Layer Application Logic Layer Presentation Layer
  • 95. MD-OLAP: 2 Tier DSS MDDB Engine MDDB Engine Decision Support Client Database Layer Application Logic Layer Presentation Layer Store atomic data in a proprietary data structure (MDDB), pre-calculate as many outcomes as possible, obtain OLAP functionality via proprietary algorithms running against this data. Obtain multi-dimensional reports from the DSS Client.
  • 96. MSPVL Polytechnic College Pavoorchatram