SlideShare a Scribd company logo
1 of 32
Presented By 
Quontra SSoolluuttiioonnss 
Email : info@quontrasolutions.com 
Contact : 404-900-9988 
Website : www.quontrasolutions.com
DataBase (DB) – 
A place where the collection of records will be maintained in a structured format so that It 
can be easily retrieved when ever required is known as a database. 
One of the most popularly used database model is the 
relational model. It was developed by Edgar Codd in 
1969. 
Example : 
How do you think the Organizations store their 
employee and customer information? they store it in 
a database. 
where do you think the website maintains the login 
information about their users? 
they store it in a database.
ERP– 
ERP, which is an abbreviation for Enterprise 
Resource Planning, is principally an integration 
of business management practices and modern 
technology. 
ERP is a business tool that management uses to 
operate the business day-in and day-out. 
OLTP– 
OLTP, which is an abbreviation for Online Transaction 
processing, handle real time transactions which inherently 
have some special requirements. If your running a Bank, for 
instance, you need to ensure that as people withdrawing 
money from ATM’S they are properly and efficiently updating 
the database also those transactions are properly effecting to 
their Accounts.
6 
Data, Data everywhere yet ... 
• I can’t find the data I need 
– data is scattered over the network 
• I can’t get the data I need 
• need an expert to get the data 
• I can’t understand the data I 
found 
• available • I can’t use d tahtae pdoaotraly Id ofocuumnednted 
• results are unexpected 
• data needs to be transformed from 
one form to other
7 
What are the users saying... 
• Data should be integrated across 
the enterprise 
• Summary data has a real value to 
the organization 
• Historical data holds the key to 
understanding data over time 
• What-if capabilities are required
In What way I can Answer the above question with 
8 
my OLTP system... 
Is Data Warehousing is the Solution ?? YES 
Can I Improve my 
business using Data 
warehousing ?? 
YES.. How ??
9 
Data warehouse helps any Business in Many 
Which are our 
lowest/highest margin 
customers ? 
Which are our 
lowest/highest margin 
customers ? 
Who are my customers 
and what products 
are they buying? 
Who are my customers 
and what products 
are they buying? 
Which customers 
are most likely to go 
to the competition ? 
Which customers 
are most likely to go 
to the competition ? 
What impact will 
new products/services 
have on revenue 
and margins? 
What impact will 
new products/services 
have on revenue 
and margins? 
What is the most 
effective distribution 
channel? 
What is the most 
effective distribution 
channel? 
What product prom- 
-otions have the biggest 
impact on revenue? 
What product prom- 
-otions have the biggest 
impact on revenue? 
Ways 
Let’s say A producer wants to know….
DWH – (Data Warehousing) 
It usually contains historical data derived from transaction data, but it can include data 
from other sources. It separates analysis workload from transaction workload and 
enables an organization to consolidate data from several sources. 
Raugh kimball – 
In simplest terms Data Warehouse can be 
defined as collection of Data marts. 
-Data marts : Subjective collection of Data. 
Bill Inmon – 
A data warehouse is a “subject-oriented, 
integrated, time variant and nonvolatile” collection of 
data in support of management’s decision-making 
process.”
OLAP – (Online Analytical Processing) 
The ability to analyze metrics in different dimensions such as time, geography, gender, 
product, etc. For example, sales for the company is up. What region is most responsible for 
this increase? Which store in this region is most responsible for the increase? What 
particular product category or categories contributed the most to the increase? Answering 
these types of questions in order means that you are performing an OLAP analysis. 
OLAP servers provides better performance for 
accessing multidimensional data. The most important 
mechanism in OLAP which allows it to achieve such 
performance is the use of aggregations. 
Aggregations are built from the fact table by 
changing the granularity on specific dimensions and 
aggregating up data along these dimensions. 
OLAP systems gives analytical capabilities that are 
not in SQL or are more difficult to obtain.
1. OLTP (on-line transaction processing) 
2. Day-to-day operations: purchasing, 
inventory, banking, manufacturing, payroll, 
registration, accounting, etc. 
1. OLAP (on-line analytical processing) 
2. Data analysis and decision making 
3. The tables are in the Normalized form. 3. The tables are in the De-Normalized 
form. 
5. For Designing OLTP we used data 
modeling. 
5. For Designing OLAP we used 
Dimension modeling. 
OLAP is classified into two i.e., 
MOLAP & ROLAP 
4. We Called the Storage objects as 
Tables. i.e., All the masters and the 
Transactions are stored in the tables. 
4. We Called the Storage objects as 
Dimension and Facts. i.e., All the masters 
Are dimension and the Transactions are 
Facts.
Product 
Prod_Id 
Prod_Nam 
e 
Base_Rate 
Cat_Id 
Category 
Cat_Id 
Cat_Name 
Cat_Desc 
Group_Id 
Group 
Group_Id 
Group_Name 
Group_Desc 
Product_Dim 
Prod_Id 
Prod_Name 
Base_Rate 
Cat_Name 
Cat_Desc 
Group_Name 
Group_Desc 
Topics Later We will Cover 
1. Types of Dimensions 
3. Hierarchies 
2. Slowly changing Dimensions 
Normalized Tables 
De-Normalized 
Tables
SalesOrderDetails 
SalesOrder_Fact 
Cust_Id 
Cust_Id 
SalesPerson 
Prod_Id 
Prod_Id 
Order_Date 
Order_Date 
Delivery_Date 
Booked_Date 
Unit_Price 
Delivery_Date 
Qty 
Unit_Price 
Total_Amount 
Qty 
Tax 
Tax 
Created_By Qty*Unit_Price+Tax=Total Amount 
Reference 
keys of 
Dimensions 
Numeric 
fields 
called as 
Fact or 
measure 
Usually calculate all the calculations 
before storing into OLAP
Prod_Di 
m 
Prod_Id 
……… 
Cust_Di 
m 
Cust_Id 
……… 
Org_Dim 
Org_Id 
SalesOrder_F ……… 
act 
Cust_Id 
Prod_Id 
Order_Date 
Delivery_Date 
Org_Id 
Unit_Price 
Qty 
Total_Amount 
Tax 
Time_Di 
m 
Date 
Year 
Month 
……… 
STAR Schema
Product_Di 
m 
Prod_Id 
Prod_Name 
Base_Rate 
Cat_Name 
Cat_Desc 
Group_Na 
me 
Group_Des 
c 
SalesOrder_Fact 
Cust_Id 
Prod_Id 
Order_Date 
Delivery_Date 
Unit_Price 
Qty 
Total_Amount 
Tax
1. Dimensions will have only 
relation with the Fact. 
(Normalized model) 
1. Dimension will have a 
relation other than Fact. (De- 
Normalized model) 
2. One to many or One to 
One relation will Occur. 
2. Used for many to many 
relation. 
3. Performance is fast but 
required huge storage space. 
3. Performance is Low but 
required Less storage space.
18 
A single, complete and 
consistent store of data 
obtained from a variety of 
different sources made 
available to end users in a 
what they can understand 
and use in a business 
context. 
[Barry Devlin]
19 
Data Warehousing -- 
It is a process 
• Technique for assembling and 
managing data from various 
sources for the purpose of 
answering business questions. 
Thus making decisions that were 
not previous possible 
• A decision support database 
maintained separately from the 
organization’s operational 
database
20 
Also Data Mining works with 
Warehouse Data 
Data Warehousing provides the 
Enterprise with a memory 
Data Mining provides the 
Enterprise with 
intelligence
BBaassee PPrroodduucctt 
Oracle 10g 
IBM DB2 
$ 25K $ 40K $ 25K
MMaannaaggeeaabbiilliittyy 
BBaassee PPrroodduucctt 
((iinncclluuddeedd)) 
Tuning 
$3K 
Diagnostics 
$3K 
Partitioning 
$10K Performance 
Expert 
$10K 
$ 25K $$ 4506KK $$ 2355KK
MMaannaaggeeaabbiilliittyy 
BBaassee PPrroodduucctt 
((iinncclluuddeedd)) 
$ 25K $$ 15166KK $ $1 5345.K5 K 
BBuussiinneessss 
IInntteelllliiggeennccee 
OLAP 
$20k 
Mining 
$20k 
BI Bundle 
$20k 
DB2 OLAP 
$35K 
DB2 
Warehouse 
$75K 
Cube Views 
$9.5K
HHiigghh AAvvaaiillaabbiilliittyy 
MMaannaaggeeaabbiilliittyy 
BBaassee PPrroodduucctt 
((iinncclluuddeedd)) 
$ 25K $$ 121362KK $$ 115644..55KK 
BBuussiinneessss 
IInntteelllliiggeennccee 
Data Guard 
$116K Recovery 
Expert 
$10k
MMuullttii--ccoorree 
MMaannaaggeeaabbiilliittyy 
BBaassee PPrroodduucctt 
((iinncclluuddeedd)) 
HHiigghh AAvvaaiillaabbiilliittyy 
BBuussiinneessss 
IInntteelllliiggeennccee 
$116K - $164.5K 
$232K 
$348k - 
$464k $ 25K $ 232K $$ 1 36249.5KK
Data 
Storage 
Data-Migration Middleware (Populations-Tools) 
Operational 
Data Sources 
Repository 
Data 
Analysis 
Reporting, OLAP, 
Data Mining
Additional Benefit 
What 
happened? 
Number of Users 
Why did 
it happen? 
What will 
happen? 
What happened 
why and how?
Stage DB 
Optional 
O L A P 
ROLAP 
OLTP 
MOLAP 
SSIS 
CUBE 
Integration Services Analysis 
Services 
Reporting 
Services 
SSAS 
SSRS 
SSIS 
Data Marts
OLTP – Online Transaction Processing 
OLAP – Online Analytical Processing 
MOLAP – Multidimensional OLAP 
ROLAP – Relational OLAP 
HOLAP – Hybrid OALP 
Dimensions – De-normalized master tables 
Attributes – Columns of Dimensions 
Hierarchies – sequential order of attributes 
Facts (Measure group) – Transactions tables in DWH 
Fact (Measures) 
Cubes – Multidimensional storage of Data 
KPI’s – Key performance indicator 
Dashboards – combination of reports,kpis,charts 
Data Marts – Subjective Collection of Data 
SCD’s – Slowly changing Dimensions 
Perspectives – Child Cube
Msbi by quontra us

More Related Content

What's hot

Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data Warehouse
Shanthi Mukkavilli
 
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
gulab sharma
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
Edureka!
 
Date warehousing concepts
Date warehousing conceptsDate warehousing concepts
Date warehousing concepts
pcherukumalla
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
pcherukumalla
 
Data warehouse-dimensional-modeling-and-design
Data warehouse-dimensional-modeling-and-designData warehouse-dimensional-modeling-and-design
Data warehouse-dimensional-modeling-and-design
Sarita Kataria
 

What's hot (20)

Data warehouse
Data warehouseData warehouse
Data warehouse
 
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 warehouse
Data warehouseData warehouse
Data warehouse
 
Introduction to data warehousing
Introduction to data warehousingIntroduction to data warehousing
Introduction to data warehousing
 
Data warehousing - Dr. Radhika Kotecha
Data warehousing - Dr. Radhika KotechaData warehousing - Dr. Radhika Kotecha
Data warehousing - Dr. Radhika Kotecha
 
Introduction to Data Warehouse
Introduction to Data WarehouseIntroduction to Data Warehouse
Introduction to Data Warehouse
 
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
 
Datawarehouse & bi introduction
Datawarehouse & bi introductionDatawarehouse & bi introduction
Datawarehouse & bi introduction
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)Business Intelligence Presentation (1/2)
Business Intelligence Presentation (1/2)
 
Date warehousing concepts
Date warehousing conceptsDate warehousing concepts
Date warehousing concepts
 
DATA MART APPROCHES TO ARCHITECTURE
DATA MART APPROCHES TO ARCHITECTUREDATA MART APPROCHES TO ARCHITECTURE
DATA MART APPROCHES TO ARCHITECTURE
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
 
Data warehousing Demo PPTS | Over View | Introduction
Data warehousing Demo PPTS | Over View | Introduction Data warehousing Demo PPTS | Over View | Introduction
Data warehousing Demo PPTS | Over View | Introduction
 
Data warehouse architecture
Data warehouse architectureData warehouse architecture
Data warehouse architecture
 
Ppt
PptPpt
Ppt
 
Data warehouse-dimensional-modeling-and-design
Data warehouse-dimensional-modeling-and-designData warehouse-dimensional-modeling-and-design
Data warehouse-dimensional-modeling-and-design
 
Data Ware Housing And Data Mining
Data Ware Housing And Data MiningData Ware Housing And Data Mining
Data Ware Housing And Data Mining
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 

Viewers also liked

Bruna l. e Gabrielle
Bruna l. e GabrielleBruna l. e Gabrielle
Bruna l. e Gabrielle
Nute Jpa
 
Clara b e duda c.
Clara b e duda c.Clara b e duda c.
Clara b e duda c.
Nute Jpa
 
Miguel e Pedro
Miguel e Pedro Miguel e Pedro
Miguel e Pedro
Nute Jpa
 

Viewers also liked (20)

Nebraska Title VI Civil Rights Administrative Training Slides
Nebraska Title VI Civil Rights Administrative Training SlidesNebraska Title VI Civil Rights Administrative Training Slides
Nebraska Title VI Civil Rights Administrative Training Slides
 
Project Zephyr: Screenshots
Project Zephyr: ScreenshotsProject Zephyr: Screenshots
Project Zephyr: Screenshots
 
100 days of happy
100 days of happy 100 days of happy
100 days of happy
 
CASE Network Studies and Analyses 382 - European Neighbourhood Policy and Eco...
CASE Network Studies and Analyses 382 - European Neighbourhood Policy and Eco...CASE Network Studies and Analyses 382 - European Neighbourhood Policy and Eco...
CASE Network Studies and Analyses 382 - European Neighbourhood Policy and Eco...
 
Ranking Internetowych Sklepów Odzieżowych 2014
Ranking Internetowych Sklepów Odzieżowych 2014Ranking Internetowych Sklepów Odzieżowych 2014
Ranking Internetowych Sklepów Odzieżowych 2014
 
Kelina
KelinaKelina
Kelina
 
Amdocs cdu
Amdocs  cduAmdocs  cdu
Amdocs cdu
 
Malditos sean
Malditos seanMalditos sean
Malditos sean
 
CASE Network Studies and Analyses 381 - Experience in Implementing Social Ben...
CASE Network Studies and Analyses 381 - Experience in Implementing Social Ben...CASE Network Studies and Analyses 381 - Experience in Implementing Social Ben...
CASE Network Studies and Analyses 381 - Experience in Implementing Social Ben...
 
Jesús benítez guerrero aprendizaje colaborativo
Jesús benítez guerrero  aprendizaje colaborativoJesús benítez guerrero  aprendizaje colaborativo
Jesús benítez guerrero aprendizaje colaborativo
 
Bruna l. e Gabrielle
Bruna l. e GabrielleBruna l. e Gabrielle
Bruna l. e Gabrielle
 
Cert kseniya tarasova (1)
Cert kseniya tarasova (1)Cert kseniya tarasova (1)
Cert kseniya tarasova (1)
 
Investimentos na Bahia
Investimentos na BahiaInvestimentos na Bahia
Investimentos na Bahia
 
Nebraska Department of Roads 5310 Non-Profit Sub-Recipient Checklist
Nebraska Department of Roads 5310 Non-Profit Sub-Recipient ChecklistNebraska Department of Roads 5310 Non-Profit Sub-Recipient Checklist
Nebraska Department of Roads 5310 Non-Profit Sub-Recipient Checklist
 
Clara b e duda c.
Clara b e duda c.Clara b e duda c.
Clara b e duda c.
 
Kotel Katan
Kotel KatanKotel Katan
Kotel Katan
 
Miguel e Pedro
Miguel e Pedro Miguel e Pedro
Miguel e Pedro
 
Rent Is The New Buy (Infographic)
Rent Is The New Buy (Infographic)Rent Is The New Buy (Infographic)
Rent Is The New Buy (Infographic)
 
Teacher version: Are You Coming or Going?, Lesson 6 of Misused and Misunderst...
Teacher version: Are You Coming or Going?, Lesson 6 of Misused and Misunderst...Teacher version: Are You Coming or Going?, Lesson 6 of Misused and Misunderst...
Teacher version: Are You Coming or Going?, Lesson 6 of Misused and Misunderst...
 
Active listeningandtalkingtousers
Active listeningandtalkingtousersActive listeningandtalkingtousers
Active listeningandtalkingtousers
 

Similar to Msbi by quontra us

Datawarehousing
DatawarehousingDatawarehousing
Datawarehousing
work
 
Dataware housing
Dataware housingDataware housing
Dataware housing
work
 
What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?
RTTS
 

Similar to Msbi by quontra us (20)

Introduction To Msbi By Yasir
Introduction To Msbi By YasirIntroduction To Msbi By Yasir
Introduction To Msbi By Yasir
 
Traditional Data-warehousing / BI overview
Traditional Data-warehousing / BI overviewTraditional Data-warehousing / BI overview
Traditional Data-warehousing / BI overview
 
Business Intelligence Overview
Business Intelligence OverviewBusiness Intelligence Overview
Business Intelligence Overview
 
Introduction To Msbi By Yasir
Introduction To Msbi By YasirIntroduction To Msbi By Yasir
Introduction To Msbi By Yasir
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
Datawarehousing
DatawarehousingDatawarehousing
Datawarehousing
 
IT Ready - DW: 1st Day
IT Ready - DW: 1st Day IT Ready - DW: 1st Day
IT Ready - DW: 1st Day
 
Kushal Data Warehousing PPT
Kushal Data Warehousing PPTKushal Data Warehousing PPT
Kushal Data Warehousing PPT
 
Dataware housing
Dataware housingDataware housing
Dataware housing
 
Introduction to data mining and data warehousing
Introduction to data mining and data warehousingIntroduction to data mining and data warehousing
Introduction to data mining and data warehousing
 
dw_concepts_2_day_course.ppt
dw_concepts_2_day_course.pptdw_concepts_2_day_course.ppt
dw_concepts_2_day_course.ppt
 
DWDM Unit 1 (1).pptx
DWDM Unit 1 (1).pptxDWDM Unit 1 (1).pptx
DWDM Unit 1 (1).pptx
 
Data Warehousing Datamining Concepts
Data Warehousing Datamining ConceptsData Warehousing Datamining Concepts
Data Warehousing Datamining Concepts
 
What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?What is a Data Warehouse and How Do I Test It?
What is a Data Warehouse and How Do I Test It?
 
Chapter 2
Chapter 2Chapter 2
Chapter 2
 
Data Warehouse-Final
Data Warehouse-FinalData Warehouse-Final
Data Warehouse-Final
 
Online analytical processing
Online analytical processingOnline analytical processing
Online analytical processing
 
Data warehousing interview questions
Data warehousing interview questionsData warehousing interview questions
Data warehousing interview questions
 
Data warehousing and Data mining
Data warehousing and Data mining Data warehousing and Data mining
Data warehousing and Data mining
 
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
 

More from QUONTRASOLUTIONS

Business analyst overview by quontra solutions
Business analyst overview by quontra solutionsBusiness analyst overview by quontra solutions
Business analyst overview by quontra solutions
QUONTRASOLUTIONS
 
Business analyst overview by quontra solutions
Business analyst overview by quontra solutionsBusiness analyst overview by quontra solutions
Business analyst overview by quontra solutions
QUONTRASOLUTIONS
 
Saas overview by quontra solutions
Saas overview  by quontra solutionsSaas overview  by quontra solutions
Saas overview by quontra solutions
QUONTRASOLUTIONS
 

More from QUONTRASOLUTIONS (20)

Big data introduction by quontra solutions
Big data introduction by quontra solutionsBig data introduction by quontra solutions
Big data introduction by quontra solutions
 
Java constructors
Java constructorsJava constructors
Java constructors
 
Cognos Online Training with placement Assistance - QuontraSolutions
Cognos Online Training with placement Assistance - QuontraSolutionsCognos Online Training with placement Assistance - QuontraSolutions
Cognos Online Training with placement Assistance - QuontraSolutions
 
Business analyst overview by quontra solutions
Business analyst overview by quontra solutionsBusiness analyst overview by quontra solutions
Business analyst overview by quontra solutions
 
Business analyst overview by quontra solutions
Business analyst overview by quontra solutionsBusiness analyst overview by quontra solutions
Business analyst overview by quontra solutions
 
Cognos Overview
Cognos Overview Cognos Overview
Cognos Overview
 
Hibernate online training
Hibernate online trainingHibernate online training
Hibernate online training
 
Java j2eeTutorial
Java j2eeTutorialJava j2eeTutorial
Java j2eeTutorial
 
Software Quality Assurance training by QuontraSolutions
Software Quality Assurance training by QuontraSolutionsSoftware Quality Assurance training by QuontraSolutions
Software Quality Assurance training by QuontraSolutions
 
Introduction to software quality assurance by QuontraSolutions
Introduction to software quality assurance by QuontraSolutionsIntroduction to software quality assurance by QuontraSolutions
Introduction to software quality assurance by QuontraSolutions
 
.Net introduction by Quontra Solutions
.Net introduction by Quontra Solutions.Net introduction by Quontra Solutions
.Net introduction by Quontra Solutions
 
Introduction to j2 ee patterns online training class
Introduction to j2 ee patterns online training classIntroduction to j2 ee patterns online training class
Introduction to j2 ee patterns online training class
 
Saas overview by quontra solutions
Saas overview  by quontra solutionsSaas overview  by quontra solutions
Saas overview by quontra solutions
 
Sharepoint taxonomy introduction us
Sharepoint taxonomy introduction   usSharepoint taxonomy introduction   us
Sharepoint taxonomy introduction us
 
Introduction to the sharepoint 2013 userprofile service By Quontra
Introduction to the sharepoint 2013 userprofile service By QuontraIntroduction to the sharepoint 2013 userprofile service By Quontra
Introduction to the sharepoint 2013 userprofile service By Quontra
 
Introduction to SharePoint 2013 REST API
Introduction to SharePoint 2013 REST APIIntroduction to SharePoint 2013 REST API
Introduction to SharePoint 2013 REST API
 
Performance Testing and OBIEE by QuontraSolutions
Performance Testing and OBIEE by QuontraSolutionsPerformance Testing and OBIEE by QuontraSolutions
Performance Testing and OBIEE by QuontraSolutions
 
Obiee introduction building reports by QuontraSolutions
Obiee introduction building reports by QuontraSolutionsObiee introduction building reports by QuontraSolutions
Obiee introduction building reports by QuontraSolutions
 
Sharepoint designer workflow by quontra us
Sharepoint designer workflow by quontra usSharepoint designer workflow by quontra us
Sharepoint designer workflow by quontra us
 
Qa by quontra us
Qa by quontra   usQa by quontra   us
Qa by quontra us
 

Recently uploaded

The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
heathfieldcps1
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
ciinovamais
 
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
QucHHunhnh
 
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
ZurliaSoop
 

Recently uploaded (20)

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
 
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
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
 
PROCESS RECORDING FORMAT.docx
PROCESS      RECORDING        FORMAT.docxPROCESS      RECORDING        FORMAT.docx
PROCESS RECORDING FORMAT.docx
 
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
 
How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POS
 
Introduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The BasicsIntroduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The Basics
 
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
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptx
 
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
 
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
 
psychiatric nursing HISTORY COLLECTION .docx
psychiatric  nursing HISTORY  COLLECTION  .docxpsychiatric  nursing HISTORY  COLLECTION  .docx
psychiatric nursing HISTORY COLLECTION .docx
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
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
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.ppt
 
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxBasic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
 
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Hongkong ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan Fellows
 
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
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 

Msbi by quontra us

  • 1. Presented By Quontra SSoolluuttiioonnss Email : info@quontrasolutions.com Contact : 404-900-9988 Website : www.quontrasolutions.com
  • 2.
  • 3.
  • 4. DataBase (DB) – A place where the collection of records will be maintained in a structured format so that It can be easily retrieved when ever required is known as a database. One of the most popularly used database model is the relational model. It was developed by Edgar Codd in 1969. Example : How do you think the Organizations store their employee and customer information? they store it in a database. where do you think the website maintains the login information about their users? they store it in a database.
  • 5. ERP– ERP, which is an abbreviation for Enterprise Resource Planning, is principally an integration of business management practices and modern technology. ERP is a business tool that management uses to operate the business day-in and day-out. OLTP– OLTP, which is an abbreviation for Online Transaction processing, handle real time transactions which inherently have some special requirements. If your running a Bank, for instance, you need to ensure that as people withdrawing money from ATM’S they are properly and efficiently updating the database also those transactions are properly effecting to their Accounts.
  • 6. 6 Data, Data everywhere yet ... • I can’t find the data I need – data is scattered over the network • I can’t get the data I need • need an expert to get the data • I can’t understand the data I found • available • I can’t use d tahtae pdoaotraly Id ofocuumnednted • results are unexpected • data needs to be transformed from one form to other
  • 7. 7 What are the users saying... • Data should be integrated across the enterprise • Summary data has a real value to the organization • Historical data holds the key to understanding data over time • What-if capabilities are required
  • 8. In What way I can Answer the above question with 8 my OLTP system... Is Data Warehousing is the Solution ?? YES Can I Improve my business using Data warehousing ?? YES.. How ??
  • 9. 9 Data warehouse helps any Business in Many Which are our lowest/highest margin customers ? Which are our lowest/highest margin customers ? Who are my customers and what products are they buying? Who are my customers and what products are they buying? Which customers are most likely to go to the competition ? Which customers are most likely to go to the competition ? What impact will new products/services have on revenue and margins? What impact will new products/services have on revenue and margins? What is the most effective distribution channel? What is the most effective distribution channel? What product prom- -otions have the biggest impact on revenue? What product prom- -otions have the biggest impact on revenue? Ways Let’s say A producer wants to know….
  • 10. DWH – (Data Warehousing) It usually contains historical data derived from transaction data, but it can include data from other sources. It separates analysis workload from transaction workload and enables an organization to consolidate data from several sources. Raugh kimball – In simplest terms Data Warehouse can be defined as collection of Data marts. -Data marts : Subjective collection of Data. Bill Inmon – A data warehouse is a “subject-oriented, integrated, time variant and nonvolatile” collection of data in support of management’s decision-making process.”
  • 11. OLAP – (Online Analytical Processing) The ability to analyze metrics in different dimensions such as time, geography, gender, product, etc. For example, sales for the company is up. What region is most responsible for this increase? Which store in this region is most responsible for the increase? What particular product category or categories contributed the most to the increase? Answering these types of questions in order means that you are performing an OLAP analysis. OLAP servers provides better performance for accessing multidimensional data. The most important mechanism in OLAP which allows it to achieve such performance is the use of aggregations. Aggregations are built from the fact table by changing the granularity on specific dimensions and aggregating up data along these dimensions. OLAP systems gives analytical capabilities that are not in SQL or are more difficult to obtain.
  • 12. 1. OLTP (on-line transaction processing) 2. Day-to-day operations: purchasing, inventory, banking, manufacturing, payroll, registration, accounting, etc. 1. OLAP (on-line analytical processing) 2. Data analysis and decision making 3. The tables are in the Normalized form. 3. The tables are in the De-Normalized form. 5. For Designing OLTP we used data modeling. 5. For Designing OLAP we used Dimension modeling. OLAP is classified into two i.e., MOLAP & ROLAP 4. We Called the Storage objects as Tables. i.e., All the masters and the Transactions are stored in the tables. 4. We Called the Storage objects as Dimension and Facts. i.e., All the masters Are dimension and the Transactions are Facts.
  • 13. Product Prod_Id Prod_Nam e Base_Rate Cat_Id Category Cat_Id Cat_Name Cat_Desc Group_Id Group Group_Id Group_Name Group_Desc Product_Dim Prod_Id Prod_Name Base_Rate Cat_Name Cat_Desc Group_Name Group_Desc Topics Later We will Cover 1. Types of Dimensions 3. Hierarchies 2. Slowly changing Dimensions Normalized Tables De-Normalized Tables
  • 14. SalesOrderDetails SalesOrder_Fact Cust_Id Cust_Id SalesPerson Prod_Id Prod_Id Order_Date Order_Date Delivery_Date Booked_Date Unit_Price Delivery_Date Qty Unit_Price Total_Amount Qty Tax Tax Created_By Qty*Unit_Price+Tax=Total Amount Reference keys of Dimensions Numeric fields called as Fact or measure Usually calculate all the calculations before storing into OLAP
  • 15. Prod_Di m Prod_Id ……… Cust_Di m Cust_Id ……… Org_Dim Org_Id SalesOrder_F ……… act Cust_Id Prod_Id Order_Date Delivery_Date Org_Id Unit_Price Qty Total_Amount Tax Time_Di m Date Year Month ……… STAR Schema
  • 16. Product_Di m Prod_Id Prod_Name Base_Rate Cat_Name Cat_Desc Group_Na me Group_Des c SalesOrder_Fact Cust_Id Prod_Id Order_Date Delivery_Date Unit_Price Qty Total_Amount Tax
  • 17. 1. Dimensions will have only relation with the Fact. (Normalized model) 1. Dimension will have a relation other than Fact. (De- Normalized model) 2. One to many or One to One relation will Occur. 2. Used for many to many relation. 3. Performance is fast but required huge storage space. 3. Performance is Low but required Less storage space.
  • 18. 18 A single, complete and consistent store of data obtained from a variety of different sources made available to end users in a what they can understand and use in a business context. [Barry Devlin]
  • 19. 19 Data Warehousing -- It is a process • Technique for assembling and managing data from various sources for the purpose of answering business questions. Thus making decisions that were not previous possible • A decision support database maintained separately from the organization’s operational database
  • 20. 20 Also Data Mining works with Warehouse Data Data Warehousing provides the Enterprise with a memory Data Mining provides the Enterprise with intelligence
  • 21.
  • 22.
  • 23. BBaassee PPrroodduucctt Oracle 10g IBM DB2 $ 25K $ 40K $ 25K
  • 24. MMaannaaggeeaabbiilliittyy BBaassee PPrroodduucctt ((iinncclluuddeedd)) Tuning $3K Diagnostics $3K Partitioning $10K Performance Expert $10K $ 25K $$ 4506KK $$ 2355KK
  • 25. MMaannaaggeeaabbiilliittyy BBaassee PPrroodduucctt ((iinncclluuddeedd)) $ 25K $$ 15166KK $ $1 5345.K5 K BBuussiinneessss IInntteelllliiggeennccee OLAP $20k Mining $20k BI Bundle $20k DB2 OLAP $35K DB2 Warehouse $75K Cube Views $9.5K
  • 26. HHiigghh AAvvaaiillaabbiilliittyy MMaannaaggeeaabbiilliittyy BBaassee PPrroodduucctt ((iinncclluuddeedd)) $ 25K $$ 121362KK $$ 115644..55KK BBuussiinneessss IInntteelllliiggeennccee Data Guard $116K Recovery Expert $10k
  • 27. MMuullttii--ccoorree MMaannaaggeeaabbiilliittyy BBaassee PPrroodduucctt ((iinncclluuddeedd)) HHiigghh AAvvaaiillaabbiilliittyy BBuussiinneessss IInntteelllliiggeennccee $116K - $164.5K $232K $348k - $464k $ 25K $ 232K $$ 1 36249.5KK
  • 28. Data Storage Data-Migration Middleware (Populations-Tools) Operational Data Sources Repository Data Analysis Reporting, OLAP, Data Mining
  • 29. Additional Benefit What happened? Number of Users Why did it happen? What will happen? What happened why and how?
  • 30. Stage DB Optional O L A P ROLAP OLTP MOLAP SSIS CUBE Integration Services Analysis Services Reporting Services SSAS SSRS SSIS Data Marts
  • 31. OLTP – Online Transaction Processing OLAP – Online Analytical Processing MOLAP – Multidimensional OLAP ROLAP – Relational OLAP HOLAP – Hybrid OALP Dimensions – De-normalized master tables Attributes – Columns of Dimensions Hierarchies – sequential order of attributes Facts (Measure group) – Transactions tables in DWH Fact (Measures) Cubes – Multidimensional storage of Data KPI’s – Key performance indicator Dashboards – combination of reports,kpis,charts Data Marts – Subjective Collection of Data SCD’s – Slowly changing Dimensions Perspectives – Child Cube