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N. Jagadish Kumar
Assistant Professor
Velammal Institute of technology
 In today’s competitive global business environment,
understanding and managing enterprises wide
information is crucial for making timely decisions and
responding to changing business conditions.
 There is a tremendous amount of data generated by
day today business operational applications. Studies
indicate that the amount of data in a given
organizations doubles Every Five Years. so it is difficult
to analyse this data’s to make better decission.
 In order to solve this problem DATAWAREHOUSE as
emerged
INTRODUCTION TO DATA
WAREHOUSE
Datawarehousing is a popular and powerful concept of
applying information technology to turn this huge island
of data into meaningful information for better business
decisions.
 A Data warehouse is a subject
oriented, integrated ,time-varient
& non-volatile collection of data
in support of managements
decision making process.
 Bill Inmon designs Top-Down
approach
 A warehouse is a copy of
transaction data specifically
structured for query & analysis.
 Ralph Kimball designs Bottom-
Up approach
Bill Inmon
Ralph Kimball
oAn OLTP system is an application that modifies data
and has a large number of concurrent users.
oThis environment is the source for Data warehouse
which consist of current day to day data’s and it is
normalised.
LIST OF OPERATIONAL DATABASE:
Relational Database.
Eg: Oracle,SQL server,Sybase,Teradata
Files
CRM
ERP
External sources & Legacy systems.
Extract : Get the data out of the source systems
Transform : Convert the data into a useful format for
analysis.
Load : Get the data into the data warehouse
POPULAR ETL TOOLS ARE:
 Informatica
 Datastage
 Abinitio
 Oracle warehouse builder
OLAP is computer processing that enables a user to
easily and selectively extract and view data from different
points of view.
This environment helps the Business users to view the
Data’s in multidimensional format that makes the users
to take better decisions easily.
POPULAR OLAP TOOL ARE:
Cognos
Business objects
Micro Strategy
SAS
Crystal Report
Hyperion
 Generic Two-Level Architecture
 Independent Data Mart
 Dependent Data Mart and Operational
Data Store.
One company-
wide warehouse
Periodic extraction  data is not completely current in
warehouse
Data marts:Data marts:
Mini-warehouses, limited in scope
E
T
L
Separate ETL for each independent
data mart
Data access complexity due
to multiple data marts
ODSODS provides option for
obtaining current data
Single ETL for
enterprise data warehouse (EDW)(EDW)
E
T
L
Dependent data marts loaded
from EDW
 Data mining, the extraction of hidden predictive
information from large databases, is a powerful new
technology with great potential to help companies focus
on the most important information in their data
warehouses.
 Data Mining predicts future trends and behaviors,
allowing businesses to make proactive, knowledge driven
decisions.
Data mining is the process of analyzing business data in
the data warehouse to find unknown partners or rules of
information that you can use to tailor business
operations.
Data mining software is one of a number of
analytical tools for analyzing data. It allows
users to analyze data from many different
dimensions or angles, categorize it, and
summarize the relationships identified.
Clustering - is the task of discovering groups and
structures in the data that are in some way or another
"similar", without using known structures in the data.
Classification - is the task of generalizing known
structure to apply to new data.
Regression - Attempts to find a function which
models the data with the least error.
Association rule learning - Searches for
relationships between variables.
Artificial neural networks: Non-linear predictive models
that learn through training and resemble biological neural
networks in structure.
Genetic algorithms: Optimization techniques that use
processes such as genetic combination, mutation, and natural
selection in a design based on the concepts of natural
evolution.
Decision trees: Tree-shaped structures that represent sets of
decisions.
Nearest neighbor method: A technique that classifies each
record in a dataset based on a combination of the classes of the
k record(s) most similar to it in a historical dataset (where k 1).
Rule induction: The extraction of useful if-then rules from
data based on statistical significance.
Data visualization: The visual interpretation of complex
relationships in multidimensional data. Graphics tools are
used to illustrate data relationships.
The data warehouse is the hub for decision support data.
A good data warehouse will provide the RIGHT data to
the RIGHT people at the RIGHT time: RIGHT NOW!
So customers can use data warehouses to improve their
decision making and their competitive advantage
Data warehouse also plays a major role in DATA
MINING to predict future trends and behaviours and
knowledge Driven Decision

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Datawarehouse

  • 1. N. Jagadish Kumar Assistant Professor Velammal Institute of technology
  • 2.  In today’s competitive global business environment, understanding and managing enterprises wide information is crucial for making timely decisions and responding to changing business conditions.  There is a tremendous amount of data generated by day today business operational applications. Studies indicate that the amount of data in a given organizations doubles Every Five Years. so it is difficult to analyse this data’s to make better decission.  In order to solve this problem DATAWAREHOUSE as emerged INTRODUCTION TO DATA WAREHOUSE
  • 3. Datawarehousing is a popular and powerful concept of applying information technology to turn this huge island of data into meaningful information for better business decisions.
  • 4.  A Data warehouse is a subject oriented, integrated ,time-varient & non-volatile collection of data in support of managements decision making process.  Bill Inmon designs Top-Down approach  A warehouse is a copy of transaction data specifically structured for query & analysis.  Ralph Kimball designs Bottom- Up approach Bill Inmon Ralph Kimball
  • 5.
  • 6. oAn OLTP system is an application that modifies data and has a large number of concurrent users. oThis environment is the source for Data warehouse which consist of current day to day data’s and it is normalised. LIST OF OPERATIONAL DATABASE: Relational Database. Eg: Oracle,SQL server,Sybase,Teradata Files CRM ERP External sources & Legacy systems.
  • 7. Extract : Get the data out of the source systems Transform : Convert the data into a useful format for analysis. Load : Get the data into the data warehouse POPULAR ETL TOOLS ARE:  Informatica  Datastage  Abinitio  Oracle warehouse builder
  • 8. OLAP is computer processing that enables a user to easily and selectively extract and view data from different points of view. This environment helps the Business users to view the Data’s in multidimensional format that makes the users to take better decisions easily. POPULAR OLAP TOOL ARE: Cognos Business objects Micro Strategy SAS Crystal Report Hyperion
  • 9.  Generic Two-Level Architecture  Independent Data Mart  Dependent Data Mart and Operational Data Store.
  • 10. One company- wide warehouse Periodic extraction  data is not completely current in warehouse
  • 11. Data marts:Data marts: Mini-warehouses, limited in scope E T L Separate ETL for each independent data mart Data access complexity due to multiple data marts
  • 12. ODSODS provides option for obtaining current data Single ETL for enterprise data warehouse (EDW)(EDW) E T L Dependent data marts loaded from EDW
  • 13.
  • 14.  Data mining, the extraction of hidden predictive information from large databases, is a powerful new technology with great potential to help companies focus on the most important information in their data warehouses.  Data Mining predicts future trends and behaviors, allowing businesses to make proactive, knowledge driven decisions. Data mining is the process of analyzing business data in the data warehouse to find unknown partners or rules of information that you can use to tailor business operations.
  • 15. Data mining software is one of a number of analytical tools for analyzing data. It allows users to analyze data from many different dimensions or angles, categorize it, and summarize the relationships identified.
  • 16. Clustering - is the task of discovering groups and structures in the data that are in some way or another "similar", without using known structures in the data. Classification - is the task of generalizing known structure to apply to new data. Regression - Attempts to find a function which models the data with the least error. Association rule learning - Searches for relationships between variables.
  • 17. Artificial neural networks: Non-linear predictive models that learn through training and resemble biological neural networks in structure. Genetic algorithms: Optimization techniques that use processes such as genetic combination, mutation, and natural selection in a design based on the concepts of natural evolution. Decision trees: Tree-shaped structures that represent sets of decisions. Nearest neighbor method: A technique that classifies each record in a dataset based on a combination of the classes of the k record(s) most similar to it in a historical dataset (where k 1). Rule induction: The extraction of useful if-then rules from data based on statistical significance. Data visualization: The visual interpretation of complex relationships in multidimensional data. Graphics tools are used to illustrate data relationships.
  • 18. The data warehouse is the hub for decision support data. A good data warehouse will provide the RIGHT data to the RIGHT people at the RIGHT time: RIGHT NOW! So customers can use data warehouses to improve their decision making and their competitive advantage Data warehouse also plays a major role in DATA MINING to predict future trends and behaviours and knowledge Driven Decision