SlideShare a Scribd company logo
Hyperion Essbase & Planning Training
www.adivaconsulting.com1
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Raw Data
2
Raw Data will be no use until it will become information
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Raw Data -> Information
3
How do you
find out the
profit of
Product
“Electronics
” from 100’
s of Excel
sheets
Metadata
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Then what is OLTP
In general, All Database Systems are OLTP
• Most RDBMS systems are OLTP
• Detailed, Up to Date Data
• Read/Update of few records
• Run the business in real time
• Historical Data will be archived for performance reasons
Eg: Walk into Reliance Store you will find OLTP
Walk into ATM you will find OLTP
Buy TV in electronic shops
Buy Stocks in Broker like Etrade -> OLTP
4
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Current Challenges
• I can’t find the data I need
– data is scattered over the network
– many versions, subtle differences
– No Single source for Information
• I cant understand the data I found
– available data poorly documented
• I can’t use the data I found
– results are unexpected
– data needs to be transformed from one
form to other
What's certain about today's business
climate is uncertainty
5
Hyperion Essbase & Planning Training
www.adivaconsulting.com
What is Data Warehouse
• 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 Delvin
6
Hyperion Essbase & Planning Training
www.adivaconsulting.com
In Other Words
• A data warehouse is a
subject-oriented
Integrated
time-varying
non-volatile
collection of data that is used primarily in
organizational decision making.
--------Bill Inmon
7
Hyperion Essbase & Planning Training
www.adivaconsulting.com
OLTP -> OLAP
8
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Why do you need the history
9
 Study the past if you define the future
Hyperion Essbase & Planning Training
www.adivaconsulting.com10
Data Warehouse
Relational Detail Star Schemas
Common Dimensions Common Transformations
Data Models
GL
Excel Sheets/Flat
Files
HR
Dashboard Reporting
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Data Mart
11
Marketing
Mart
HR Data Mart
Sales Data Mart
Data Marts
DataWarehouse
Data grouped for a specific subject area and considered as subset of
data warehouse
Can contain atomic data and summarized data.
Generally Each data mart is designed for each department like
Marketing, Sales etc.
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Dimension Tables
• Dimension tables establish the context of the facts
• In other words, Dimensional tables store fields that
describe the facts
• Eg: Time Periods, Products, Customers etc
12
Fact Table
Fact tables are used to record actual facts or measures
in the business.
Facts are the numeric data items that are of interest to
the business Access via dimensions
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Types of Measures-Facts
• Additive: Valid to SUM up to any Dimensional level
-SUM(Sales_Amount)
• Semi-Additive: Semi-Additive measures are measures
that can be added across some, but not all dimensions.
For example the bank account balance is simply a
snapshot in time and cannot be summed over time.
-Sum(balance) where month=2011-12-12
• Non-Additive=never used in a Sum
• Eg: Gross-Margin , Ratios etc...;
13
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Slowly Changing Dimensions
• Type-I SCD (Over write)
• Type-II SCD (Maintain History)
• Type-III SCD(Alternate Realities)
Cust ID Cust Name Cust City
10 XYZ New York
Cust ID Cust Name Cust City
10 XYZ Seattle
Change of Attributes
No History
Maintained
Cust ID Cust Name Cust City Date
10 XYZ New York 1-Jan-2000
Change of Attributes
ALL History
Maintained
Cust ID Cust Name Cust City Date
10 XYZ New York 1-Jan-2000
10 XYZ Seattle 1-Jan-2005
Cust ID Cust Name Cust City
10 XYZ New York
Cust ID Cust Name Cust City1 Cust City 2
10 XYZ New York Seattle
Change of Attributes
History In
Separate
columns
14
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Schema Design
Schema Types
 Star Schema
Snow-Flake Schema
Fact Constellation schema or Galaxy Schema
15
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Star Schema
• A single fact table and for each dimension one
dimension table
16
Fact Table
(or)
Measures
Time
Product Scenario
Customers
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Snow Flake Schema
• Represent dimensional hierarchy directly
by normalizing tables.
• Gives more Detailed Information
17
Fact Table
(or)
Measures
Time
Product Scenario
Countries Cities
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Fact Constellation
• Multiple Fact Tables that share multiple
dimensional tables
18
Fact Table
(or)
Measures
Time
Product Scenario
Customer
s
Revenue
Hyperion Essbase & Planning Training
www.adivaconsulting.com
DWH Cycle
19
Oracl
e
Flat
Files
DB2
Staging
Area ETL Enterprise
DWH
DM1
DM3
DM2
OLAP
Business
Decision
Reports
Hyperion
Resource
MDM /
DRM
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Dimensional Modeling Design Process
• Choose a business process to model
- Business activity that is valuable to analyze
-Set of transactions that can be collected in a fact table
• Declare the Grain of the fact table
-level of detail that you will record in the fact table
• Choose the Dimensions
-Descriptive information about transactions
-Usually want to limit number of dimensions
• Choose the Metrics
-Numeric fields tagged to each fact table row
20
Hyperion Essbase & Planning Training
www.adivaconsulting.com
EPM
Enterprise Performance Management
A set of processes that help organizations optimize
their business performance. It is a framework for
organizing, automating and analyzing business
methodologies , metrics, processes and systems that
drive business performance
The products formerly known as Hyperion provide
Enterprise Performance Management ("EPM")
capabilities
21
Hyperion Essbase & Planning Training
www.adivaconsulting.com22
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Multi Dimensional Analysis
• Query tool caches pre-computed aggregates in memory or on
mid-tier server for extra-fast response time.
• Used to Analyze the future business based on past and
present sales
Eg: Sales Analysis
• Avoid spending time in analyzing huge numbers of daily
transactions data
• Essbase stands for Extended Spreadsheet Analysis
• Used to Analyze data in multiple view of perspective so that
business users can take decision for forecast analysis
23
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Advantages of MOLAP
Hyperion is multi Slice Dice
dimensional database
24
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Drill-Down/Up
25
Rollup
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Essbase History
Arbor
Corporation
Essbase
1992
Hyperion
Solutions
1998
Essbase
Hyperion
Enterprise
Hyperion
Reporting
Planning and
Budgeting
Oracle
Corporation
Oracle EPM System
BI Foundation
Essbase
2007
26
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Cube means
27
Intersecting Dimensions
-- Form Data Cells
OLAP Storage Paradigm
-- Multidimensional
databases are
array structures , not
related tables
-- Will concentrate about
cells not fields
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Essbase is tuned for Analysis
• Which customers are most profitable
• What is the customer likely to buy next
• What if demand falls short of forecast
28
Why Essbase
• Richest business users experience
• Highly Advanced Calculation Engine
• Write-Back Capability Feature
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Essbase Introduction
 Part of Business Intelligence Foundation in Oracle EPM System widely
considered to be the industry leading OLAP (On-Line Analytical Processing)
server
 It is a multidimensional database that enables Business Users to analyze
business data in multiple views/prospective and at different consolidation
levels. It stores the data in a multi dimensional array
Essbase
Planning
&
Budgeting
Forecas
ting
Product
Analysis
Customer
Analysis
Essbase Usage
Minute->Day->Week->Month->Qtr->Year
Product Line->Product Family->Product Cat-
>Product sub Cat
29
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Essbase Architecture
30
Essbase
Server
Essbase
Database
Provider
Services
Smart-View
Essbase Excel-
Add-in, MaxL
, MDX
TCP/IP
TCP/IP HTTP
Administration
Services
Essbase
Studio ServicesRDMS
ODBC
A
B
D E
C
F
A
B
D E
C
F
TCP/IP
HTTP
EAS Console
Essbase Studio
Console
Database
Tier
Middle
Tier
Client
Tier
Hyperion Essbase & Planning Training
www.adivaconsulting.com
How Essbase Thinks
31
 Multidimensional Cubes
 Dimensions
 Common grouping of
master data
like Organization , Products,
Accounts
Optimized Data Storage
 Block Storage
 Aggregate Storage
 XOLAP
 Drill Through Reporting
Hyperion Essbase & Planning Training
www.adivaconsulting.com
How Essbase Cubes Looks Like
32
Hyperion Essbase & Planning Training
www.adivaconsulting.com
ESSBASE STUDIO
• Single graphical modeling environment and single setup for
Essbase app building and administration
33
Hyperion Essbase & Planning Training
www.adivaconsulting.com
How business users Analyze Data
34
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Oracle EPM Workspace
• Single thin client environment bringing all of the EPM
system and BI tools together in one access point
35
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Integration with BI Tools – Smart View Addin
• Common add-in to provide integration with Microsoft office
for oracle EPM system and BI tools like Essbase, Planning,
OBIEE, HFR
36
Hyperion Essbase & Planning Training
www.adivaconsulting.com
User Security – Shared Services Console
37
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Life Cycle Management – Migration Tool
38
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Complete EPM System
39
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Life Cycle of Essbase
Database Objects
- Outline File
- Rule Files
- Calculation Scripts
40
 Create an Application(ASO or BSO)
 Create an Database
Dimension Modeling
Data Loading
Report Generation
Hyperion Daily Maintenance Activities
Hyperion Essbase & Planning Training
www.adivaconsulting.com
Continuation
• Hyperion Essbase Installation
• Hyperion Services Order
• Essbase Log Files
• Essbase Applications Path
41
Hyperion Essbase & Planning Training
www.adivaconsulting.com42
Thank you

More Related Content

What's hot (20)

PPT
Data warehouse
krishna kumar singh
 
PPTX
Data warehouse
Sonali Chawla
 
PDF
ETL and its impact on Business Intelligence
IshaPande
 
PPSX
Data warehouse
Rishabh Dogra
 
PDF
Data warehousing
Juhi Mahajan
 
PPT
Data Warehouse Basic Guide
thomasmary607
 
PPTX
OLAP operations
kunj desai
 
PPTX
Ppt
bullsrockr666
 
PPT
Data Warehousing and Data Mining
idnats
 
PPT
data warehousing
Jagnesh Chawla
 
PPTX
Data warehouse,data mining & Big Data
Ravinder Kamboj
 
PPTX
Data warehouse implementation design for a Retail business
Arsalan Qadri
 
PDF
Multidimentional data model
jagdish_93
 
PPTX
Building an Effective Data Warehouse Architecture
James Serra
 
PPT
Data warehousing and online analytical processing
VijayasankariS
 
PPTX
Data warehouse architecture
janani thirupathi
 
PPTX
Data warehouse and olap technology
DataminingTools Inc
 
PPTX
Traditional data warehouse vs data lake
BHASKAR CHAUDHURY
 
PPT
1.4 data warehouse
Krish_ver2
 
PPTX
Oltp vs olap
Mr. Fmhyudin
 
Data warehouse
krishna kumar singh
 
Data warehouse
Sonali Chawla
 
ETL and its impact on Business Intelligence
IshaPande
 
Data warehouse
Rishabh Dogra
 
Data warehousing
Juhi Mahajan
 
Data Warehouse Basic Guide
thomasmary607
 
OLAP operations
kunj desai
 
Data Warehousing and Data Mining
idnats
 
data warehousing
Jagnesh Chawla
 
Data warehouse,data mining & Big Data
Ravinder Kamboj
 
Data warehouse implementation design for a Retail business
Arsalan Qadri
 
Multidimentional data model
jagdish_93
 
Building an Effective Data Warehouse Architecture
James Serra
 
Data warehousing and online analytical processing
VijayasankariS
 
Data warehouse architecture
janani thirupathi
 
Data warehouse and olap technology
DataminingTools Inc
 
Traditional data warehouse vs data lake
BHASKAR CHAUDHURY
 
1.4 data warehouse
Krish_ver2
 
Oltp vs olap
Mr. Fmhyudin
 

Similar to Basic Introduction of Data Warehousing from Adiva Consulting (20)

PPTX
Oracle Hyperion overview
Click4learning
 
PPTX
BI Introduction
Taras Panchenko
 
PPTX
Data warehousing Concepts and Design.pptx
Dr.S.Kiruba Devi
 
PPTX
introduction & conceptsdatawarehousing.pptx
BanuPriya900461
 
PPTX
sap hana|sap hana database| Introduction to sap hana
James L. Lee
 
PPTX
Traditional Data-warehousing / BI overview
Nagaraj Yerram
 
PPTX
DATA WAREHOUSING
Rishikese MR
 
PPTX
Analyzing Billions of Data Rows with Alteryx, Amazon Redshift, and Tableau
DATAVERSITY
 
PDF
HANA a PoV
Prem M Desai
 
PPTX
OLAP
Rashmi Bhat
 
PPTX
Business Intelligence Overview
netpeachteam
 
PPTX
Oracle hyperion essbase
Timothy J. Simkiss, CPA
 
PPTX
Oracle hyperion essbase
Timothy J. Simkiss, CPA
 
PDF
Case Study: Lessons from Newell Rubbermaid's SAP HANA Proof of Concept
SAPinsider Events
 
PPT
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
NEWYORKSYS-IT SOLUTIONS
 
PDF
Business Intelligence Architecture
Philippe Julio
 
PDF
Business Intelligence Presentation 1 (15th March'16)
Muhammad Fahad
 
PDF
Data Warehouse approaches with Dynamics AX
Alvin You
 
PPTX
Evolution from SAP ECC6 to SAP S/4HANA.pptx
RiponKumarPaul
 
PPTX
Introduction to HANA in-memory from SAP
ugur candan
 
Oracle Hyperion overview
Click4learning
 
BI Introduction
Taras Panchenko
 
Data warehousing Concepts and Design.pptx
Dr.S.Kiruba Devi
 
introduction & conceptsdatawarehousing.pptx
BanuPriya900461
 
sap hana|sap hana database| Introduction to sap hana
James L. Lee
 
Traditional Data-warehousing / BI overview
Nagaraj Yerram
 
DATA WAREHOUSING
Rishikese MR
 
Analyzing Billions of Data Rows with Alteryx, Amazon Redshift, and Tableau
DATAVERSITY
 
HANA a PoV
Prem M Desai
 
Business Intelligence Overview
netpeachteam
 
Oracle hyperion essbase
Timothy J. Simkiss, CPA
 
Oracle hyperion essbase
Timothy J. Simkiss, CPA
 
Case Study: Lessons from Newell Rubbermaid's SAP HANA Proof of Concept
SAPinsider Events
 
What is OLAP -Data Warehouse Concepts - IT Online Training @ Newyorksys
NEWYORKSYS-IT SOLUTIONS
 
Business Intelligence Architecture
Philippe Julio
 
Business Intelligence Presentation 1 (15th March'16)
Muhammad Fahad
 
Data Warehouse approaches with Dynamics AX
Alvin You
 
Evolution from SAP ECC6 to SAP S/4HANA.pptx
RiponKumarPaul
 
Introduction to HANA in-memory from SAP
ugur candan
 
Ad

More from adivasoft (7)

PDF
OBIEE 11g: Configuring LDAP Server
adivasoft
 
PDF
BI Publisher 11g : Data Model Design document
adivasoft
 
PDF
BI Publisher Data model design document
adivasoft
 
PDF
An Introduction on BI Publisher & JD Edwards Integration
adivasoft
 
PDF
Oracle BI Publisher 11g Certification Program
adivasoft
 
PDF
OBIEE11g Multi User Development - MUD
adivasoft
 
PPT
Hyperion Planning Security
adivasoft
 
OBIEE 11g: Configuring LDAP Server
adivasoft
 
BI Publisher 11g : Data Model Design document
adivasoft
 
BI Publisher Data model design document
adivasoft
 
An Introduction on BI Publisher & JD Edwards Integration
adivasoft
 
Oracle BI Publisher 11g Certification Program
adivasoft
 
OBIEE11g Multi User Development - MUD
adivasoft
 
Hyperion Planning Security
adivasoft
 
Ad

Recently uploaded (20)

PDF
Timothy Rottach - Ramp up on AI Use Cases, from Vector Search to AI Agents wi...
AWS Chicago
 
PPTX
WooCommerce Workshop: Bring Your Laptop
Laura Hartwig
 
PDF
Transcript: New from BookNet Canada for 2025: BNC BiblioShare - Tech Forum 2025
BookNet Canada
 
PPTX
Building Search Using OpenSearch: Limitations and Workarounds
Sease
 
PPTX
"Autonomy of LLM Agents: Current State and Future Prospects", Oles` Petriv
Fwdays
 
PDF
Python basic programing language for automation
DanialHabibi2
 
PDF
Bitcoin for Millennials podcast with Bram, Power Laws of Bitcoin
Stephen Perrenod
 
PDF
Presentation - Vibe Coding The Future of Tech
yanuarsinggih1
 
PDF
Using FME to Develop Self-Service CAD Applications for a Major UK Police Force
Safe Software
 
PPTX
✨Unleashing Collaboration: Salesforce Channels & Community Power in Patna!✨
SanjeetMishra29
 
PDF
"Beyond English: Navigating the Challenges of Building a Ukrainian-language R...
Fwdays
 
PDF
CIFDAQ Market Insights for July 7th 2025
CIFDAQ
 
PPTX
Q2 FY26 Tableau User Group Leader Quarterly Call
lward7
 
PPTX
Webinar: Introduction to LF Energy EVerest
DanBrown980551
 
PDF
Fl Studio 24.2.2 Build 4597 Crack for Windows Free Download 2025
faizk77g
 
PDF
Jak MŚP w Europie Środkowo-Wschodniej odnajdują się w świecie AI
dominikamizerska1
 
PDF
New from BookNet Canada for 2025: BNC BiblioShare - Tech Forum 2025
BookNet Canada
 
PDF
July Patch Tuesday
Ivanti
 
PPTX
Top iOS App Development Company in the USA for Innovative Apps
SynapseIndia
 
PDF
"AI Transformation: Directions and Challenges", Pavlo Shaternik
Fwdays
 
Timothy Rottach - Ramp up on AI Use Cases, from Vector Search to AI Agents wi...
AWS Chicago
 
WooCommerce Workshop: Bring Your Laptop
Laura Hartwig
 
Transcript: New from BookNet Canada for 2025: BNC BiblioShare - Tech Forum 2025
BookNet Canada
 
Building Search Using OpenSearch: Limitations and Workarounds
Sease
 
"Autonomy of LLM Agents: Current State and Future Prospects", Oles` Petriv
Fwdays
 
Python basic programing language for automation
DanialHabibi2
 
Bitcoin for Millennials podcast with Bram, Power Laws of Bitcoin
Stephen Perrenod
 
Presentation - Vibe Coding The Future of Tech
yanuarsinggih1
 
Using FME to Develop Self-Service CAD Applications for a Major UK Police Force
Safe Software
 
✨Unleashing Collaboration: Salesforce Channels & Community Power in Patna!✨
SanjeetMishra29
 
"Beyond English: Navigating the Challenges of Building a Ukrainian-language R...
Fwdays
 
CIFDAQ Market Insights for July 7th 2025
CIFDAQ
 
Q2 FY26 Tableau User Group Leader Quarterly Call
lward7
 
Webinar: Introduction to LF Energy EVerest
DanBrown980551
 
Fl Studio 24.2.2 Build 4597 Crack for Windows Free Download 2025
faizk77g
 
Jak MŚP w Europie Środkowo-Wschodniej odnajdują się w świecie AI
dominikamizerska1
 
New from BookNet Canada for 2025: BNC BiblioShare - Tech Forum 2025
BookNet Canada
 
July Patch Tuesday
Ivanti
 
Top iOS App Development Company in the USA for Innovative Apps
SynapseIndia
 
"AI Transformation: Directions and Challenges", Pavlo Shaternik
Fwdays
 

Basic Introduction of Data Warehousing from Adiva Consulting

  • 1. Hyperion Essbase & Planning Training www.adivaconsulting.com1
  • 2. Hyperion Essbase & Planning Training www.adivaconsulting.com Raw Data 2 Raw Data will be no use until it will become information
  • 3. Hyperion Essbase & Planning Training www.adivaconsulting.com Raw Data -> Information 3 How do you find out the profit of Product “Electronics ” from 100’ s of Excel sheets Metadata
  • 4. Hyperion Essbase & Planning Training www.adivaconsulting.com Then what is OLTP In general, All Database Systems are OLTP • Most RDBMS systems are OLTP • Detailed, Up to Date Data • Read/Update of few records • Run the business in real time • Historical Data will be archived for performance reasons Eg: Walk into Reliance Store you will find OLTP Walk into ATM you will find OLTP Buy TV in electronic shops Buy Stocks in Broker like Etrade -> OLTP 4
  • 5. Hyperion Essbase & Planning Training www.adivaconsulting.com Current Challenges • I can’t find the data I need – data is scattered over the network – many versions, subtle differences – No Single source for Information • I cant understand the data I found – available data poorly documented • I can’t use the data I found – results are unexpected – data needs to be transformed from one form to other What's certain about today's business climate is uncertainty 5
  • 6. Hyperion Essbase & Planning Training www.adivaconsulting.com What is Data Warehouse • 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 Delvin 6
  • 7. Hyperion Essbase & Planning Training www.adivaconsulting.com In Other Words • A data warehouse is a subject-oriented Integrated time-varying non-volatile collection of data that is used primarily in organizational decision making. --------Bill Inmon 7
  • 8. Hyperion Essbase & Planning Training www.adivaconsulting.com OLTP -> OLAP 8
  • 9. Hyperion Essbase & Planning Training www.adivaconsulting.com Why do you need the history 9  Study the past if you define the future
  • 10. Hyperion Essbase & Planning Training www.adivaconsulting.com10 Data Warehouse Relational Detail Star Schemas Common Dimensions Common Transformations Data Models GL Excel Sheets/Flat Files HR Dashboard Reporting
  • 11. Hyperion Essbase & Planning Training www.adivaconsulting.com Data Mart 11 Marketing Mart HR Data Mart Sales Data Mart Data Marts DataWarehouse Data grouped for a specific subject area and considered as subset of data warehouse Can contain atomic data and summarized data. Generally Each data mart is designed for each department like Marketing, Sales etc.
  • 12. Hyperion Essbase & Planning Training www.adivaconsulting.com Dimension Tables • Dimension tables establish the context of the facts • In other words, Dimensional tables store fields that describe the facts • Eg: Time Periods, Products, Customers etc 12 Fact Table Fact tables are used to record actual facts or measures in the business. Facts are the numeric data items that are of interest to the business Access via dimensions
  • 13. Hyperion Essbase & Planning Training www.adivaconsulting.com Types of Measures-Facts • Additive: Valid to SUM up to any Dimensional level -SUM(Sales_Amount) • Semi-Additive: Semi-Additive measures are measures that can be added across some, but not all dimensions. For example the bank account balance is simply a snapshot in time and cannot be summed over time. -Sum(balance) where month=2011-12-12 • Non-Additive=never used in a Sum • Eg: Gross-Margin , Ratios etc...; 13
  • 14. Hyperion Essbase & Planning Training www.adivaconsulting.com Slowly Changing Dimensions • Type-I SCD (Over write) • Type-II SCD (Maintain History) • Type-III SCD(Alternate Realities) Cust ID Cust Name Cust City 10 XYZ New York Cust ID Cust Name Cust City 10 XYZ Seattle Change of Attributes No History Maintained Cust ID Cust Name Cust City Date 10 XYZ New York 1-Jan-2000 Change of Attributes ALL History Maintained Cust ID Cust Name Cust City Date 10 XYZ New York 1-Jan-2000 10 XYZ Seattle 1-Jan-2005 Cust ID Cust Name Cust City 10 XYZ New York Cust ID Cust Name Cust City1 Cust City 2 10 XYZ New York Seattle Change of Attributes History In Separate columns 14
  • 15. Hyperion Essbase & Planning Training www.adivaconsulting.com Schema Design Schema Types  Star Schema Snow-Flake Schema Fact Constellation schema or Galaxy Schema 15
  • 16. Hyperion Essbase & Planning Training www.adivaconsulting.com Star Schema • A single fact table and for each dimension one dimension table 16 Fact Table (or) Measures Time Product Scenario Customers
  • 17. Hyperion Essbase & Planning Training www.adivaconsulting.com Snow Flake Schema • Represent dimensional hierarchy directly by normalizing tables. • Gives more Detailed Information 17 Fact Table (or) Measures Time Product Scenario Countries Cities
  • 18. Hyperion Essbase & Planning Training www.adivaconsulting.com Fact Constellation • Multiple Fact Tables that share multiple dimensional tables 18 Fact Table (or) Measures Time Product Scenario Customer s Revenue
  • 19. Hyperion Essbase & Planning Training www.adivaconsulting.com DWH Cycle 19 Oracl e Flat Files DB2 Staging Area ETL Enterprise DWH DM1 DM3 DM2 OLAP Business Decision Reports Hyperion Resource MDM / DRM
  • 20. Hyperion Essbase & Planning Training www.adivaconsulting.com Dimensional Modeling Design Process • Choose a business process to model - Business activity that is valuable to analyze -Set of transactions that can be collected in a fact table • Declare the Grain of the fact table -level of detail that you will record in the fact table • Choose the Dimensions -Descriptive information about transactions -Usually want to limit number of dimensions • Choose the Metrics -Numeric fields tagged to each fact table row 20
  • 21. Hyperion Essbase & Planning Training www.adivaconsulting.com EPM Enterprise Performance Management A set of processes that help organizations optimize their business performance. It is a framework for organizing, automating and analyzing business methodologies , metrics, processes and systems that drive business performance The products formerly known as Hyperion provide Enterprise Performance Management ("EPM") capabilities 21
  • 22. Hyperion Essbase & Planning Training www.adivaconsulting.com22
  • 23. Hyperion Essbase & Planning Training www.adivaconsulting.com Multi Dimensional Analysis • Query tool caches pre-computed aggregates in memory or on mid-tier server for extra-fast response time. • Used to Analyze the future business based on past and present sales Eg: Sales Analysis • Avoid spending time in analyzing huge numbers of daily transactions data • Essbase stands for Extended Spreadsheet Analysis • Used to Analyze data in multiple view of perspective so that business users can take decision for forecast analysis 23
  • 24. Hyperion Essbase & Planning Training www.adivaconsulting.com Advantages of MOLAP Hyperion is multi Slice Dice dimensional database 24
  • 25. Hyperion Essbase & Planning Training www.adivaconsulting.com Drill-Down/Up 25 Rollup
  • 26. Hyperion Essbase & Planning Training www.adivaconsulting.com Essbase History Arbor Corporation Essbase 1992 Hyperion Solutions 1998 Essbase Hyperion Enterprise Hyperion Reporting Planning and Budgeting Oracle Corporation Oracle EPM System BI Foundation Essbase 2007 26
  • 27. Hyperion Essbase & Planning Training www.adivaconsulting.com Cube means 27 Intersecting Dimensions -- Form Data Cells OLAP Storage Paradigm -- Multidimensional databases are array structures , not related tables -- Will concentrate about cells not fields
  • 28. Hyperion Essbase & Planning Training www.adivaconsulting.com Essbase is tuned for Analysis • Which customers are most profitable • What is the customer likely to buy next • What if demand falls short of forecast 28 Why Essbase • Richest business users experience • Highly Advanced Calculation Engine • Write-Back Capability Feature
  • 29. Hyperion Essbase & Planning Training www.adivaconsulting.com Essbase Introduction  Part of Business Intelligence Foundation in Oracle EPM System widely considered to be the industry leading OLAP (On-Line Analytical Processing) server  It is a multidimensional database that enables Business Users to analyze business data in multiple views/prospective and at different consolidation levels. It stores the data in a multi dimensional array Essbase Planning & Budgeting Forecas ting Product Analysis Customer Analysis Essbase Usage Minute->Day->Week->Month->Qtr->Year Product Line->Product Family->Product Cat- >Product sub Cat 29
  • 30. Hyperion Essbase & Planning Training www.adivaconsulting.com Essbase Architecture 30 Essbase Server Essbase Database Provider Services Smart-View Essbase Excel- Add-in, MaxL , MDX TCP/IP TCP/IP HTTP Administration Services Essbase Studio ServicesRDMS ODBC A B D E C F A B D E C F TCP/IP HTTP EAS Console Essbase Studio Console Database Tier Middle Tier Client Tier
  • 31. Hyperion Essbase & Planning Training www.adivaconsulting.com How Essbase Thinks 31  Multidimensional Cubes  Dimensions  Common grouping of master data like Organization , Products, Accounts Optimized Data Storage  Block Storage  Aggregate Storage  XOLAP  Drill Through Reporting
  • 32. Hyperion Essbase & Planning Training www.adivaconsulting.com How Essbase Cubes Looks Like 32
  • 33. Hyperion Essbase & Planning Training www.adivaconsulting.com ESSBASE STUDIO • Single graphical modeling environment and single setup for Essbase app building and administration 33
  • 34. Hyperion Essbase & Planning Training www.adivaconsulting.com How business users Analyze Data 34
  • 35. Hyperion Essbase & Planning Training www.adivaconsulting.com Oracle EPM Workspace • Single thin client environment bringing all of the EPM system and BI tools together in one access point 35
  • 36. Hyperion Essbase & Planning Training www.adivaconsulting.com Integration with BI Tools – Smart View Addin • Common add-in to provide integration with Microsoft office for oracle EPM system and BI tools like Essbase, Planning, OBIEE, HFR 36
  • 37. Hyperion Essbase & Planning Training www.adivaconsulting.com User Security – Shared Services Console 37
  • 38. Hyperion Essbase & Planning Training www.adivaconsulting.com Life Cycle Management – Migration Tool 38
  • 39. Hyperion Essbase & Planning Training www.adivaconsulting.com Complete EPM System 39
  • 40. Hyperion Essbase & Planning Training www.adivaconsulting.com Life Cycle of Essbase Database Objects - Outline File - Rule Files - Calculation Scripts 40  Create an Application(ASO or BSO)  Create an Database Dimension Modeling Data Loading Report Generation Hyperion Daily Maintenance Activities
  • 41. Hyperion Essbase & Planning Training www.adivaconsulting.com Continuation • Hyperion Essbase Installation • Hyperion Services Order • Essbase Log Files • Essbase Applications Path 41
  • 42. Hyperion Essbase & Planning Training www.adivaconsulting.com42 Thank you